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10 Commits

Author SHA1 Message Date
wangwei
9828b1d44c update 2026-06-27 14:31:45 +08:00
wangwei
1df4010acc fix(llm): resolve score runtime config from saved profiles
Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-06-26 20:34:01 +08:00
wangwei
754a30ad59 feat(session-async): add /api/score/session_async with incremental session report aggregation
- New POST /api/score/session_async endpoint: same session_id calls append to one shared report
- New GET /api/score/sessions/{session_id}: returns call_count, metric_means, all job records
- New GET /api/score/session/jobs/{job_id}: individual call status
- SessionScoreJobManager: deterministic run_id from session_id, per-session mutex for CSV append, advisor regenerated on every call
- SessionScoreRequest (extends ScoreRequest + session_id), SessionScoreJobResponse, SessionStatus models added
- 24 new tests, all passing

chore(weighted-score): comment out 综合加权得分 display and computation

- report.js: hide 综合加权得分 card in report detail page
- score_jobs.js: hide 综合 chip in async job list
- report_builder.py: overall_ws=None (computation disabled)
- summary.py: weighted_score summary line disabled
- evaluator.py: weighted_score/sample_weight columns no longer written to scores.csv
- score.py /api/score: weighted_score always returns null
- score_job_manager.py + session_score_manager.py: weighted=None
- Updated 3 tests to match new behaviour (6 pre-existing failures unchanged)

Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-06-26 16:09:33 +08:00
wangwei
e1751447df feat(advisor): add 0.85 advisory threshold triggering LLM suggestions
- Add advisory_threshold=0.85 field to MetricRule (higher-is-better metrics)
- diagnose() now emits severity='low' for scores in (warning_threshold, 0.85)
- noise_sensitivity (lower-is-better) keeps its existing two-tier thresholds
- writer.py: severity labels mapped to Chinese (严重/警告/待优化)
- llm_analyzer.py: prompt explains low/warning/critical tiers in Chinese
- Tests: 5 new cases for 'low' severity, updated log summary assertions

Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-06-25 11:35:49 +08:00
wangwei
4fd515d2d9 feat: async score jobs — POST /api/score/async + 评分记录 page
Each async score job:
- Runs InlineScorer.score() in thread pool
- Writes standard run artifacts (metadata.json, scores.csv, summary.md)
- Runs optimization_advisor => optimization_advice.md
- Result appears in 运行列表 and 报告详情 with full report

New endpoints:
- POST /api/score/async  (202, job_id immediate)
- GET  /api/score/jobs   (list all jobs)
- GET  /api/score/jobs/{id} (single job status)

Frontend:
- 评分记录 nav page with card list
- 5s auto-polling for queued/running jobs
- 查看报告 button navigates to existing 报告详情 page

Dify: change /api/score -> /api/score/async, no response parsing needed

Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-06-24 17:24:22 +08:00
wangwei
abcd61ec8f docs: add async score jobs implementation plan 2026-06-24 17:08:01 +08:00
wangwei
363e8b0f27 docs: add async score jobs design spec 2026-06-24 17:04:06 +08:00
wangwei
b870ed8730 feat: make contexts optional in /api/score
When contexts is absent, metrics that require retrieved_contexts
(faithfulness, context_recall, context_precision, noise_sensitivity)
are automatically skipped and appear in skipped_metrics.
Only answer_relevancy, factual_correctness, semantic_similarity
remain computable without contexts.

Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-06-24 14:42:03 +08:00
wangwei
791738bb07 feat: rename project to 'Siemens RAGAS 评估平台' in frontend
- index.html: page title, brand-mark, brand-sub
- server.py: FastAPI app title
- app.css: comment header

Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-06-24 10:20:23 +08:00
wangwei
630b70cc2a docs: add project-overview.html — full project documentation
Covers: overview, architecture, modules, data flows (4 flows),
RAGAS metrics (7), API reference, weight config, deployment,
tech stack, directory structure. Self-contained HTML with
Siemens teal theme, sidebar scrollspy, responsive layout.

Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
2026-06-24 10:17:08 +08:00
58 changed files with 5278 additions and 107 deletions

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@@ -8,10 +8,12 @@ OPENAI_BASE_URL=http://6.86.80.4:30080/v1
OPENAI_TIMEOUT_SECONDS=180 OPENAI_TIMEOUT_SECONDS=180
# 默认评测模型(可在场景 YAML 或 Web 控制台 LLM 配置中覆盖) # 默认评测模型(可在场景 YAML 或 Web 控制台 LLM 配置中覆盖)
# RAGAS_JUDGE_MODEL 需支持 max_tokens + json_objectgpt-5、gpt-4.1、gpt-4o 等) # RAGAS_JUDGE_MODEL 需支持 OpenAI 兼容 chat.completions + 结构化 JSON 输出
# 注意gpt-5.4/5.5/5.2 系列不支持 max_tokens与 RAGAS 0.4.3 不兼容 # RAGAS_LLM_MAX_TOKENS 控制 Judge 评分链路的 completion budgetfaithfulness 等
# 结构化指标在 GPT-5 系列上通常需要 4096 或更高,避免 IncompleteOutputException
RAGAS_JUDGE_MODEL=gpt-5 RAGAS_JUDGE_MODEL=gpt-5
RAGAS_EMBEDDING_MODEL=text-embedding-3-small RAGAS_EMBEDDING_MODEL=text-embedding-3-small
RAGAS_LLM_MAX_TOKENS=4096
# 评估并发控制(启用 7 个指标时建议 RAGAS_METRIC_TIMEOUT_SECONDS=300 # 评估并发控制(启用 7 个指标时建议 RAGAS_METRIC_TIMEOUT_SECONDS=300
BATCH_SIZE=8 BATCH_SIZE=8

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# Default ignored files
/shelf/
/workspace.xml
# Editor-based HTTP Client requests
/httpRequests/
# Datasource local storage ignored files
/dataSources/
/dataSources.local.xml

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<?xml version="1.0" encoding="UTF-8"?>
<project version="4">
<component name="KubernetesApiProvider"><![CDATA[{}]]></component>
<component name="ProjectRootManager" version="2" languageLevel="JDK_17" default="true" project-jdk-name="17" project-jdk-type="JavaSDK">
<output url="file://$PROJECT_DIR$/out" />
</component>
</project>

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<?xml version="1.0" encoding="UTF-8"?>
<project version="4">
<component name="ProjectModuleManager">
<modules>
<module fileurl="file://$PROJECT_DIR$/.idea/siemens_ragas.iml" filepath="$PROJECT_DIR$/.idea/siemens_ragas.iml" />
</modules>
</component>
</project>

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<?xml version="1.0" encoding="UTF-8"?>
<module type="JAVA_MODULE" version="4">
<component name="NewModuleRootManager" inherit-compiler-output="true">
<exclude-output />
<content url="file://$MODULE_DIR$" />
<orderEntry type="inheritedJdk" />
<orderEntry type="sourceFolder" forTests="false" />
</component>
</module>

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<?xml version="1.0" encoding="UTF-8"?>
<project version="4">
<component name="VcsDirectoryMappings">
<mapping directory="" vcs="Git" />
</component>
</project>

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<h2>优化建议怎么生成?</h2>
<p class="subtitle">这决定了模块的核心机制与可维护性</p>
<div class="options">
<div class="option" data-choice="a" onclick="toggleSelect(this)">
<div class="letter">A</div>
<div class="content">
<h3>纯规则引擎</h3>
<p>每个指标设阈值(如 faithfulness &lt; 0.6),触发时给出预设建议文本。</p>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>零 LLM 调用,零额外成本</li>
<li>结果可预测、可审计</li>
<li>响应极快</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>建议固定,无法结合具体样本</li>
<li>不能解释"为什么这批数据这个指标低"</li>
</ul></div>
</div>
</div>
</div>
<div class="option" data-choice="b" onclick="toggleSelect(this)">
<div class="letter">B</div>
<div class="content">
<h3>LLM 分析(全自动)</h3>
<p>把评测结果(各指标均值 + 低分样本)一起交给 LLM生成上下文感知的中文分析报告。</p>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>能结合具体低分样本给出针对性建议</li>
<li>可用中文解释西门子场景下的问题</li>
<li>建议质量高、内容丰富</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>每次评测多 1 次 LLM 调用</li>
<li>依赖 judge_model 的质量</li>
</ul></div>
</div>
</div>
</div>
<div class="option" data-choice="c" onclick="toggleSelect(this)">
<div class="letter">C</div>
<div class="content">
<h3>规则定位 + LLM 解读(推荐)</h3>
<p>规则引擎先识别哪些指标异常、触发哪条优化方向;再把"规则诊断 + 低分样本"一起给 LLM 做二次解读,生成中文建议。</p>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>规则保证诊断稳定,不依赖 LLM 自由发挥</li>
<li>LLM 在有结构的输入下输出更准确</li>
<li>两层可独立测试</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>实现略复杂(两个子模块)</li>
</ul></div>
</div>
</div>
</div>
</div>

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<h2>优化顾问模块 — 实现方案对比</h2>
<p class="subtitle">三个方案的核心区别在于 LLM 调用边界和代码入侵程度</p>
<div class="options">
<div class="option" data-choice="a" onclick="toggleSelect(this)">
<div class="letter">A</div>
<div class="content">
<h3>独立后处理器(轻量集成)</h3>
<p>新增 <code>rag_eval/advisor/</code> 包,<code>run_scenario()</code> 末尾调用一行 <code>maybe_run_advisor(result, scenario)</code></p>
<p><strong>文件结构:</strong></p>
<ul>
<li><code>rag_eval/advisor/__init__.py</code></li>
<li><code>rag_eval/advisor/rules.py</code> — 规则引擎,输入 score_rows输出诊断列表</li>
<li><code>rag_eval/advisor/llm_analyzer.py</code> — 把规则诊断 + 低分样本交给 judge_model</li>
<li><code>rag_eval/advisor/writer.py</code> — 写 optimization_advice.md打日志摘要</li>
</ul>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>改动最小runner.py 只加 3 行</li>
<li>advisor 完全独立,可单独测试</li>
<li>与现有分层架构完全吻合</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>无法拿到 per-metric 的原始 NaN 率(需从 score_rows 重新算)</li>
</ul></div>
</div>
</div>
</div>
<div class="option" data-choice="b" onclick="toggleSelect(this)">
<div class="letter">B</div>
<div class="content">
<h3>嵌入 reporting 层(复用写出基础设施)</h3>
<p>把 advisor 作为 <code>rag_eval/reporting/</code> 的一部分,<code>write_run_artifacts()</code> 内部判断是否写 advice。</p>
<p><strong>文件结构:</strong></p>
<ul>
<li><code>rag_eval/reporting/advisor.py</code> — 规则 + LLM + 写出三合一</li>
<li><code>write_run_artifacts()</code> 里追加 <code>if scenario.optimization_advisor: write_advice(...)</code></li>
</ul>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>artifacts 路径管理统一advice 自然进 run 目录</li>
<li>文件更少</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>reporting 层本是"无副作用写文件",混入 LLM 调用破坏这一约定</li>
<li>advisor 逻辑和写出逻辑耦合,难以单独测试规则引擎</li>
</ul></div>
</div>
</div>
</div>
<div class="option" data-choice="c" onclick="toggleSelect(this)">
<div class="letter">C</div>
<div class="content">
<h3>方案 A 变体advisor 有独立 settings推荐</h3>
<p>与方案 A 相同的文件结构,但 LLM 调用使用 <strong>scenario 已有的 judge_model</strong>不新增任何模型配置——advisor 复用 <code>build_models()</code> 已构建好的 llm 实例。</p>
<ul>
<li><code>rag_eval/advisor/rules.py</code> — 纯函数7 条指标诊断规则</li>
<li><code>rag_eval/advisor/llm_analyzer.py</code> — 接收已有 llm 实例,不重新建 client</li>
<li><code>rag_eval/advisor/writer.py</code> — 写 md + 日志</li>
<li><code>rag_eval/advisor/__init__.py</code> — 暴露 <code>run_advisor()</code></li>
</ul>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>不重复创建 LLM client节省资源</li>
<li>advisor 阈值可通过 YAML 的 optimization_advisor 块扩展配置</li>
<li>独立包边界清晰,易于单测</li>
<li>runner.py 改动最小</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>需把 llm 实例从 runner 传入 advisor多传一个参数</li>
</ul></div>
</div>
</div>
</div>
</div>

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<h2>优化顾问模块 — 整体架构与数据流</h2>
<p class="subtitle">新增 rag_eval/advisor/ 包,插入 run_scenario() 末尾,复用已有 llm 实例</p>
<div class="mockup">
<div class="mockup-header">执行链路(变更前 → 变更后)</div>
<div class="mockup-body" style="font-family:monospace;font-size:13px;line-height:2">
<span style="color:#94a3b8">run_scenario()</span><br>
&nbsp;&nbsp;→ load_scenario()&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8"># 读 YAML解析 Scenario + optimization_advisor 字段</span><br>
&nbsp;&nbsp;→ build_models()&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8"># 已有:创建 llm, embeddings</span><br>
&nbsp;&nbsp;→ build_metric_pipeline()&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8"># 已有</span><br>
&nbsp;&nbsp;→ Evaluator.evaluate()&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8"># 已有:打分 → EvaluationResult</span><br>
&nbsp;&nbsp;→ write_run_artifacts()&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8"># 已有scores.csv / summary.md / ...</span><br>
&nbsp;&nbsp;<span style="color:#4ade80;font-weight:bold">→ run_advisor(result, scenario, llm)&nbsp;&nbsp;&nbsp;# 新增 3 行</span><br>
&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#4ade80">&nbsp;&nbsp;→ rules.diagnose(score_rows)&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;# 规则引擎:识别异常指标 + 方向</span><br>
&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#4ade80">&nbsp;&nbsp;→ llm_analyzer.analyze(diag, samples)&nbsp;# LLM结合低分样本生成中文建议</span><br>
&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#4ade80">&nbsp;&nbsp;→ writer.write(advice, paths)&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;# 写 optimization_advice.md + 日志</span>
</div>
</div>
<div class="section">
<h3>新增文件一览</h3>
<div class="mockup">
<div class="mockup-body" style="font-family:monospace;font-size:13px;line-height:1.9">
rag_eval/advisor/<br>
&nbsp;&nbsp;__init__.py&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8">← 暴露 run_advisor(),是外部唯一入口</span><br>
&nbsp;&nbsp;rules.py&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8">← 纯函数,无 LLM可单独单测</span><br>
&nbsp;&nbsp;llm_analyzer.py <span style="color:#94a3b8">← 接收 llm 实例 + 诊断结构 → 中文 Markdown</span><br>
&nbsp;&nbsp;writer.py&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;<span style="color:#94a3b8">← 写 optimization_advice.md打日志摘要</span><br>
<br>
rag_eval/shared/models.py&nbsp;&nbsp;&nbsp;<span style="color:#fbbf24">← 修改Scenario 加 optimization_advisor 字段</span><br>
rag_eval/config/schema.py&nbsp;&nbsp;&nbsp;<span style="color:#fbbf24">← 修改ScenarioModel 加字段</span><br>
rag_eval/execution/runner.py&nbsp;<span style="color:#fbbf24">← 修改:末尾加 3 行调用</span><br>
rag_eval/reporting/artifacts.py <span style="color:#fbbf24">← 修改RunArtifactPaths 加 advice_md 路径</span>
</div>
</div>
</div>
<div class="section">
<h3>输出产物</h3>
<div class="mockup">
<div class="mockup-body" style="font-family:monospace;font-size:13px;line-height:1.9">
outputs/online/siemens-pdf-question-bank/&lt;run_id&gt;/<br>
&nbsp;&nbsp;scenario.snapshot.yaml<br>
&nbsp;&nbsp;scores.csv<br>
&nbsp;&nbsp;invalid.csv<br>
&nbsp;&nbsp;summary.md<br>
&nbsp;&nbsp;metadata.json<br>
&nbsp;&nbsp;<span style="color:#4ade80;font-weight:bold">optimization_advice.md&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;← 新增</span>
</div>
</div>
</div>
<p style="margin-top:1rem;color:#94a3b8;font-size:13px">整体看起来 OK 吗?这是新模块与现有链路的接入方式。</p>

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<h2>优化顾问在什么情况下运行?</h2>
<p class="subtitle">这决定了模块与现有评测流程的集成方式</p>
<div class="options">
<div class="option" data-choice="a" onclick="toggleSelect(this)">
<div class="letter">A</div>
<div class="content">
<h3>每次评测自动运行</h3>
<p>run_scenario() 结束后自动调用,无需任何额外配置。</p>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>零感知,开箱即用</li>
<li>每次跑完都有建议报告</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>每次都多一次 LLM 调用,不管是否需要</li>
<li>无法关闭</li>
</ul></div>
</div>
</div>
</div>
<div class="option" data-choice="b" onclick="toggleSelect(this)">
<div class="letter">B</div>
<div class="content">
<h3>YAML 场景中显式开启(推荐)</h3>
<p>在 scenario YAML 里加一行 <code>optimization_advisor: true</code>,默认关闭。</p>
<div class="mockup">
<div class="mockup-header">siemens-pdf-question-bank-online.yaml</div>
<div class="mockup-body" style="font-family:monospace;font-size:13px;line-height:1.8">
metrics:<br>
&nbsp;&nbsp;- faithfulness<br>
&nbsp;&nbsp;- noise_sensitivity<br>
&nbsp;&nbsp;...<br>
<span style="color:#4ade80;font-weight:bold">optimization_advisor: true # 新增</span>
</div>
</div>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>显式可见,按需开启</li>
<li>与现有 YAML 驱动风格一致</li>
<li>可为不同场景独立配置</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>需要手动在 YAML 里加一行</li>
</ul></div>
</div>
</div>
</div>
<div class="option" data-choice="c" onclick="toggleSelect(this)">
<div class="letter">C</div>
<div class="content">
<h3>阈值触发(任一指标低于警戒线时自动激活)</h3>
<p>规则引擎先算,若发现有指标低于阈值则自动启动 LLM 分析;一切正常则跳过。</p>
<div class="pros-cons">
<div class="pros"><h4>优点</h4><ul>
<li>"有问题才报警",符合直觉</li>
<li>高分场景无额外成本</li>
</ul></div>
<div class="cons"><h4>缺点</h4><ul>
<li>阈值需要维护,不同场景可能不同</li>
<li>正常分数时无建议,但用户可能仍想看优化空间</li>
</ul></div>
</div>
</div>
</div>
</div>

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<div style="display:flex;align-items:center;justify-content:center;min-height:60vh">
<p class="subtitle">Writing spec & moving to implementation...</p>
</div>

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<div style="display:flex;align-items:center;justify-content:center;min-height:60vh">
<p class="subtitle">Continuing in terminal — 正在设计方案...</p>
</div>

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{"reason":"idle timeout","timestamp":1781598635371}

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# 异步评分记录Async Score JobsImplementation Plan
> **For agentic workers:** REQUIRED SUB-SKILL: Use superpowers:subagent-driven-development (recommended) or superpowers:executing-plans to implement this plan task-by-task. Steps use checkbox (`- [ ]`) syntax for tracking.
**Goal:** 新增 `POST /api/score/async` 异步端点,结果持久化至 `outputs/score-jobs/`,并在前端新增「评分记录」页面展示。
**Architecture:** 新建 `ScoreJobManager`(复用 `pipeline_task_manager` 线程池模式)在后台执行 `InlineScorer.score()`,写入 JSON 文件;新增三个 REST 端点;前端新增导航页加载并轮询记录。
**Tech Stack:** Python 3.12, FastAPI, Pydantic v2, threading, Vanilla JS, pytest
## Global Constraints
- Python 3.12+PEP 84 空格缩进,类型注解必须
- 存储路径:`outputs/score-jobs/<job_id>.json`
- 复用现有 `ScoreRequest`(含 `effective_metrics()``contexts_as_list()` 方法)
- 复用现有 `InlineScorer.score()``compute_weighted_score()`
- 所有测试用 pytest不依赖真实 LLM
---
## 文件清单
| 操作 | 文件 | 职责 |
|------|------|------|
| 新建 | `webapp/services/score_job_manager.py` | ScoreJobManager线程池 + JSON 持久化 |
| 新建 | `webapp/api/score_jobs.py` | 3 个端点路由 |
| 新建 | `webapp/static/js/score_jobs.js` | 前端列表 + 轮询逻辑 |
| 新建 | `tests/webapp/test_score_jobs_api.py` | API 集成测试 |
| 修改 | `webapp/models.py` | 新增 `AsyncScoreJobStatus``AsyncScoreJobResponse` |
| 修改 | `webapp/server.py` | 注册 score_jobs router更新 OPENAPI_TAGS 和 description |
| 修改 | `webapp/static/index.html` | 新增导航项 + `#view-scorejobs` section |
| 修改 | `webapp/static/js/api.js` | 新增 `scoreJobsAsync()``getScoreJob()``listScoreJobs()` |
| 修改 | `webapp/static/js/app.js` | 注册 `scorejobs` 视图、加载调用 |
---
## Task 1: Pydantic 模型 + ScoreJobManager
**Files:**
- Modify: `webapp/models.py`
- Create: `webapp/services/score_job_manager.py`
- Create: `tests/webapp/test_score_jobs_api.py` (partial)
**Interfaces:**
- Produces:
- `AsyncScoreJobStatus` Pydantic model
- `AsyncScoreJobResponse` Pydantic model
- `score_job_manager: ScoreJobManager` singleton
- `ScoreJobManager.submit(request: ScoreRequest) -> AsyncScoreJobStatus`
- `ScoreJobManager.get(job_id: str) -> AsyncScoreJobStatus | None`
- `ScoreJobManager.list_jobs() -> list[AsyncScoreJobStatus]`
- [ ] **Step 1: Add models to `webapp/models.py`**
Append after `AsyncScoreJobResponse` (at the end of the file, after `ScoreResponse`):
```python
# ---------------------------------------------------------------------------
# 异步评分记录模型
# ---------------------------------------------------------------------------
class AsyncScoreJobResponse(BaseModel):
"""Immediate response after submitting an async score job."""
job_id: str = Field(description="任务唯一标识符,用于后续查询结果。")
status: str = Field(default="queued", description="初始状态queued。")
class AsyncScoreJobStatus(BaseModel):
"""Full state of one async score job, persisted to disk."""
job_id: str = Field(description="任务唯一标识符。")
status: str = Field(description="queued | running | completed | failed")
created_at: str = Field(default="", description="创建时间ISO 8601 UTC。")
finished_at: str = Field(default="", description="完成时间ISO 8601 UTC。")
request_summary: dict = Field(
default_factory=dict,
description="请求参数快照question 前80字、metrics、judge_model 等)。",
)
scores: dict[str, float | None] = Field(default_factory=dict, description="各指标得分。")
weighted_score: float | None = Field(default=None, description="加权综合得分。")
latency_ms: int = Field(default=0, description="评分耗时毫秒。")
skipped_metrics: list[str] = Field(default_factory=list)
error: str | None = Field(default=None)
```
- [ ] **Step 2: Write failing tests**
Create `tests/webapp/test_score_jobs_api.py`:
```python
"""Tests for async score jobs API."""
from __future__ import annotations
import json
import time
import pytest
from unittest.mock import MagicMock, patch
from fastapi.testclient import TestClient
@pytest.fixture()
def client(tmp_path, monkeypatch):
import webapp.services.score_job_manager as mgr_mod
from webapp.services.score_job_manager import ScoreJobManager
fresh_mgr = ScoreJobManager(jobs_dir=tmp_path / "score-jobs")
monkeypatch.setattr(mgr_mod, "score_job_manager", fresh_mgr)
import webapp.api.score_jobs as api_mod
monkeypatch.setattr(api_mod, "score_job_manager", fresh_mgr)
from webapp.server import create_app
return TestClient(create_app())
class TestScoreJobManager:
def test_submit_returns_job_status_with_queued(self, tmp_path):
from webapp.services.score_job_manager import ScoreJobManager
from webapp.models import ScoreRequest
mgr = ScoreJobManager(jobs_dir=tmp_path / "jobs")
req = ScoreRequest(question="q", answer="a", metrics=["answer_relevancy"])
with patch.object(mgr, "_execute") as mock_exec:
mock_exec.return_value = None
status = mgr.submit(req)
assert status.status in ("queued", "running", "completed")
assert len(status.job_id) > 0
def test_get_returns_none_for_unknown_id(self, tmp_path):
from webapp.services.score_job_manager import ScoreJobManager
mgr = ScoreJobManager(jobs_dir=tmp_path / "jobs")
assert mgr.get("nonexistent") is None
def test_list_returns_empty_initially(self, tmp_path):
from webapp.services.score_job_manager import ScoreJobManager
mgr = ScoreJobManager(jobs_dir=tmp_path / "jobs")
assert mgr.list_jobs() == []
def test_completed_job_persisted_to_disk(self, tmp_path):
from webapp.services.score_job_manager import ScoreJobManager
from webapp.models import ScoreRequest
mgr = ScoreJobManager(jobs_dir=tmp_path / "jobs", max_workers=1)
req = ScoreRequest(question="q?", answer="a.", metrics=["answer_relevancy"])
mock_scorer = MagicMock()
mock_scorer.score.return_value = {"answer_relevancy": 0.85}
with patch("webapp.services.score_job_manager.inline_scorer", mock_scorer):
with patch("webapp.services.score_job_manager.EvaluationSettings"):
status = mgr.submit(req)
for _ in range(20):
s = mgr.get(status.job_id)
if s and s.status in ("completed", "failed"):
break
time.sleep(0.2)
s = mgr.get(status.job_id)
assert s is not None
json_path = tmp_path / "jobs" / f"{status.job_id}.json"
assert json_path.exists()
data = json.loads(json_path.read_text(encoding="utf-8"))
assert data["job_id"] == status.job_id
```
- [ ] **Step 3: Run to verify FAIL**
```
cd C:\Projects\AIProjects\Siemens-AIPOC\siemens_ragas
python -m pytest tests/webapp/test_score_jobs_api.py::TestScoreJobManager -v
```
Expected: `ModuleNotFoundError: No module named 'webapp.services.score_job_manager'`
- [ ] **Step 4: Create `webapp/services/score_job_manager.py`**
```python
"""Background task manager for async RAGAS single-sample scoring.
Each job runs InlineScorer.score() in a thread pool and persists the
result as a JSON file under outputs/score-jobs/<job_id>.json so results
survive server restarts and can be listed by the frontend.
"""
from __future__ import annotations
import json
import math
import threading
import uuid
from concurrent.futures import ThreadPoolExecutor
from datetime import datetime, timezone
from pathlib import Path
from typing import Any
from rag_eval.metrics.weights import compute_weighted_score
from rag_eval.settings import EvaluationSettings
from webapp.models import AsyncScoreJobStatus, ScoreRequest
from webapp.services.inline_scorer import inline_scorer
_REPO_ROOT = Path(__file__).resolve().parents[2]
_DEFAULT_JOBS_DIR = _REPO_ROOT / "outputs" / "score-jobs"
def _now_iso() -> str:
return datetime.now(timezone.utc).isoformat()
class ScoreJobManager:
"""Thread-pool manager for async RAGAS scoring jobs with JSON persistence."""
def __init__(
self,
jobs_dir: Path = _DEFAULT_JOBS_DIR,
max_workers: int = 4,
) -> None:
self._jobs_dir = Path(jobs_dir)
self._jobs_dir.mkdir(parents=True, exist_ok=True)
self._executor = ThreadPoolExecutor(max_workers=max_workers)
# In-memory index: job_id -> AsyncScoreJobStatus (authoritative while running)
self._cache: dict[str, AsyncScoreJobStatus] = {}
self._lock = threading.Lock()
self._load_existing()
# ------------------------------------------------------------------ #
# Public API
# ------------------------------------------------------------------ #
def submit(self, request: ScoreRequest) -> AsyncScoreJobStatus:
"""Queue one scoring job and return its initial status immediately."""
job_id = uuid.uuid4().hex[:12]
status = AsyncScoreJobStatus(
job_id=job_id,
status="queued",
created_at=_now_iso(),
request_summary={
"question": request.question[:80],
"answer": (request.answer or "")[:80],
"metrics": list(request.metrics),
"judge_model": request.judge_model or "",
"embedding_model": request.embedding_model or "",
"has_contexts": bool(request.contexts),
"has_ground_truth": bool(request.ground_truth),
},
)
with self._lock:
self._cache[job_id] = status
self._persist(status)
self._executor.submit(self._run, job_id, request)
return status
def get(self, job_id: str) -> AsyncScoreJobStatus | None:
"""Return the current status for one job, or None if unknown."""
with self._lock:
return self._cache.get(job_id)
def list_jobs(self) -> list[AsyncScoreJobStatus]:
"""Return all known jobs sorted newest first."""
with self._lock:
jobs = list(self._cache.values())
jobs.sort(key=lambda j: j.created_at, reverse=True)
return jobs
# ------------------------------------------------------------------ #
# Internal
# ------------------------------------------------------------------ #
def _run(self, job_id: str, request: ScoreRequest) -> None:
"""Execute scoring in the thread pool and persist the result."""
self._update(job_id, status="running")
settings = EvaluationSettings()
judge_model = request.judge_model or settings.ragas_judge_model
embedding_model = request.embedding_model or settings.ragas_embedding_model
effective = request.effective_metrics()
requested = set(request.metrics)
skipped = sorted(requested - set(effective))
import time as _time
t0 = _time.monotonic()
try:
if not effective:
scores: dict[str, float | None] = {m: None for m in request.metrics}
weighted = None
else:
raw = inline_scorer.score(
question=request.question,
answer=request.answer,
contexts=request.contexts_as_list(),
ground_truth=request.ground_truth,
metrics=effective,
judge_model=judge_model,
embedding_model=embedding_model,
settings=settings,
)
scores = {m: None for m in request.metrics}
scores.update(raw)
weighted_raw = compute_weighted_score(
{k: v for k, v in raw.items() if v is not None}, {}
)
weighted = round(weighted_raw, 4) if weighted_raw is not None else None
latency_ms = int((_time.monotonic() - t0) * 1000)
self._update(
job_id,
status="completed",
finished_at=_now_iso(),
scores=scores,
weighted_score=weighted,
latency_ms=latency_ms,
skipped_metrics=skipped,
)
except Exception as exc: # noqa: BLE001
latency_ms = int((_time.monotonic() - t0) * 1000)
self._update(
job_id,
status="failed",
finished_at=_now_iso(),
latency_ms=latency_ms,
error=f"{type(exc).__name__}: {exc}",
)
def _update(self, job_id: str, **kwargs: Any) -> None:
"""Merge kwargs into the job status and persist."""
with self._lock:
existing = self._cache.get(job_id)
if existing is None:
return
updated = existing.model_copy(update=kwargs)
self._cache[job_id] = updated
self._persist(updated)
def _persist(self, status: AsyncScoreJobStatus) -> None:
"""Write one job's status to its JSON file."""
path = self._jobs_dir / f"{status.job_id}.json"
path.write_text(
json.dumps(status.model_dump(), ensure_ascii=False, indent=2),
encoding="utf-8",
)
def _load_existing(self) -> None:
"""Load completed jobs from disk into memory on startup."""
for path in sorted(self._jobs_dir.glob("*.json")):
try:
data = json.loads(path.read_text(encoding="utf-8"))
status = AsyncScoreJobStatus.model_validate(data)
self._cache[status.job_id] = status
except Exception: # noqa: BLE001
pass # Corrupt file — skip
# Module-level singleton shared by FastAPI routes.
score_job_manager = ScoreJobManager()
```
- [ ] **Step 5: Run to verify tests PASS**
```
python -m pytest tests/webapp/test_score_jobs_api.py::TestScoreJobManager -v
```
Expected: 4 tests PASS
- [ ] **Step 6: Commit**
```
git add webapp/models.py webapp/services/score_job_manager.py tests/webapp/test_score_jobs_api.py
git commit -m "feat: add AsyncScoreJobStatus model and ScoreJobManager with JSON persistence"
```
---
## Task 2: API 端点
**Files:**
- Create: `webapp/api/score_jobs.py`
- Modify: `webapp/server.py`
- Modify: `tests/webapp/test_score_jobs_api.py`
**Interfaces:**
- Consumes: `score_job_manager: ScoreJobManager`, `AsyncScoreJobResponse`, `AsyncScoreJobStatus`, `ScoreRequest`
- Produces: `POST /api/score/async`, `GET /api/score/jobs`, `GET /api/score/jobs/{job_id}`
- [ ] **Step 1: Add API tests to `tests/webapp/test_score_jobs_api.py`**
Append this class:
```python
class TestScoreJobsEndpoint:
def test_submit_async_returns_202(self, client):
with patch("webapp.services.score_job_manager.ScoreJobManager._execute"):
resp = client.post("/api/score/async", json={
"question": "q?", "answer": "a.",
"metrics": ["answer_relevancy"],
})
assert resp.status_code == 202
data = resp.json()
assert "job_id" in data
assert data["status"] == "queued"
def test_get_unknown_job_returns_404(self, client):
resp = client.get("/api/score/jobs/nonexistent")
assert resp.status_code == 404
def test_list_jobs_returns_empty_initially(self, client):
resp = client.get("/api/score/jobs")
assert resp.status_code == 200
assert resp.json()["jobs"] == []
def test_submitted_job_appears_in_list(self, client):
with patch("webapp.services.score_job_manager.ScoreJobManager._run"):
resp = client.post("/api/score/async", json={
"question": "q?", "answer": "a.",
"metrics": ["answer_relevancy"],
})
job_id = resp.json()["job_id"]
list_resp = client.get("/api/score/jobs")
ids = [j["job_id"] for j in list_resp.json()["jobs"]]
assert job_id in ids
def test_get_job_by_id(self, client):
with patch("webapp.services.score_job_manager.ScoreJobManager._run"):
resp = client.post("/api/score/async", json={
"question": "q?", "answer": "a.",
"metrics": ["answer_relevancy"],
})
job_id = resp.json()["job_id"]
get_resp = client.get(f"/api/score/jobs/{job_id}")
assert get_resp.status_code == 200
assert get_resp.json()["job_id"] == job_id
```
- [ ] **Step 2: Run to verify FAIL**
```
python -m pytest tests/webapp/test_score_jobs_api.py::TestScoreJobsEndpoint -v
```
Expected: FAIL — `ModuleNotFoundError: No module named 'webapp.api.score_jobs'`
- [ ] **Step 3: Create `webapp/api/score_jobs.py`**
```python
"""Routes for async RAGAS scoring jobs (Dify fire-and-forget integration)."""
from __future__ import annotations
import logging
from fastapi import APIRouter, HTTPException
from webapp.models import AsyncScoreJobResponse, AsyncScoreJobStatus, ScoreRequest
from webapp.services.score_job_manager import score_job_manager
router = APIRouter(prefix="/api/score", tags=["score"])
logger = logging.getLogger("webapp.api.score_jobs")
@router.post(
"/async",
status_code=202,
response_model=AsyncScoreJobResponse,
summary="提交异步评分任务Dify 推荐方式)",
responses={
202: {
"description": "任务已排队,立即返回 job_id。通过 GET /api/score/jobs/{job_id} 查询结果。",
"content": {
"application/json": {
"example": {"job_id": "abc123def456", "status": "queued"}
}
},
},
},
)
def submit_async_score(request: ScoreRequest) -> AsyncScoreJobResponse:
"""提交异步 RAGAS 评分任务,立即返回 job_id202 Accepted
评分在后台线程中执行,结果持久化至 `outputs/score-jobs/<job_id>.json`。
在 RAGAS 平台「评分记录」页面可查看所有历史评分记录。
**Dify 工作流推荐使用此接口**:不等待评分完成,工作流立即继续,
避免 HTTP 节点超时。评分结果通过平台界面查看。
"""
logger.info(
"[score_async] submit metrics=%s has_ctx=%s has_gt=%s",
request.metrics, bool(request.contexts), bool(request.ground_truth),
)
status = score_job_manager.submit(request)
logger.info("[score_async] queued job_id=%s", status.job_id)
return AsyncScoreJobResponse(job_id=status.job_id, status=status.status)
@router.get(
"/jobs",
response_model=dict,
summary="列出所有评分记录",
)
def list_score_jobs() -> dict:
"""返回所有异步评分记录,按创建时间倒序排列。"""
jobs = score_job_manager.list_jobs()
logger.info("[score_jobs] list count=%d", len(jobs))
return {"jobs": [j.model_dump() for j in jobs]}
@router.get(
"/jobs/{job_id}",
response_model=AsyncScoreJobStatus,
summary="查询评分记录详情",
responses={404: {"description": "指定 job_id 的评分记录不存在。"}},
)
def get_score_job(job_id: str) -> AsyncScoreJobStatus:
"""返回一个异步评分任务的当前状态和结果。"""
status = score_job_manager.get(job_id)
if status is None:
raise HTTPException(status_code=404, detail=f"Score job not found: {job_id}")
return status
```
- [ ] **Step 4: Register router in `webapp/server.py`**
Add import:
```python
from webapp.api import evaluations, llm_profiles, pipeline, runs, scenarios, score, score_jobs
```
Add after `app.include_router(score.router)`:
```python
app.include_router(score_jobs.router)
```
Add entry to `OPENAPI_TAGS` before `"meta"`:
```python
{
"name": "score",
"description": (
"**实时评分 API同步** — `POST /api/score`\n\n"
"**异步评分 APIDify 推荐)** — `POST /api/score/async`\n\n"
"异步方式立即返回 job_id202评分在后台执行结果在「评分记录」页查看。\n\n"
"**鉴权**:若 `.env` 中配置了 `SCORE_API_TOKEN`,需携带 "
"`Authorization: Bearer <token>` 请求头。"
),
},
```
> Note: this replaces the existing `"score"` entry in `OPENAPI_TAGS`.
- [ ] **Step 5: Verify no route conflict**
```
python -c "
from webapp.server import create_app
app = create_app()
score_routes = [(r.path, list(getattr(r,'methods',[]))) for r in app.routes if 'score' in r.path]
print(score_routes)
"
```
Expected: shows `/api/score`, `/api/score/async`, `/api/score/jobs`, `/api/score/jobs/{job_id}`
- [ ] **Step 6: Run API tests**
```
python -m pytest tests/webapp/test_score_jobs_api.py -v --tb=short
```
Expected: all 9 tests PASS
- [ ] **Step 7: Commit**
```
git add webapp/api/score_jobs.py webapp/server.py tests/webapp/test_score_jobs_api.py
git commit -m "feat: add POST /api/score/async and GET /api/score/jobs endpoints"
```
---
## Task 3: 前端「评分记录」页
**Files:**
- Modify: `webapp/static/index.html`
- Modify: `webapp/static/js/api.js`
- Modify: `webapp/static/js/app.js`
- Create: `webapp/static/js/score_jobs.js`
**Interfaces:**
- Consumes: `GET /api/score/jobs`, `GET /api/score/jobs/{job_id}`
- Produces: `#view-scorejobs` section, `ScoreJobs` JS object
- [ ] **Step 1: Add API methods to `webapp/static/js/api.js`**
Add before the closing `};`:
```javascript
// 异步评分记录 API
scoreJobsAsync(body) { return API.post("/api/score/async", body); },
getScoreJob(jobId) { return API.get(`/api/score/jobs/${encodeURIComponent(jobId)}`); },
listScoreJobs() { return API.get("/api/score/jobs"); },
```
- [ ] **Step 2: Add nav item and section to `webapp/static/index.html`**
In the `<nav class="nav">` block, add after the `profiles` nav-item and before the `apidocs` nav-item:
```html
<button class="nav-item" data-view="scorejobs">
<span class="nav-ico">📋</span><span>评分记录</span>
</button>
```
Add a new section before the `<!-- API 文档视图 -->` comment:
```html
<!-- 评分记录视图 -->
<section class="view" id="view-scorejobs" hidden>
<div class="panel">
<div class="panel-head">
<h2>评分记录</h2>
<span class="muted" style="font-size:13px">来自 Dify 异步评分任务POST /api/score/async</span>
</div>
</div>
<div id="scorejobs-container"></div>
<div class="empty" id="scorejobs-empty" hidden>
<p>暂无评分记录。</p>
<p class="muted">在 Dify 工作流中调用 <code>POST /api/score/async</code> 后,记录将在此显示。</p>
</div>
</section>
```
- [ ] **Step 3: Create `webapp/static/js/score_jobs.js`**
```javascript
// score_jobs.js — 评分记录页面逻辑(异步 RAGAS 评分结果列表)
const ScoreJobs = {
_pollTimers: {}, // job_id -> setInterval handle
async load() {
const container = document.getElementById("scorejobs-container");
const empty = document.getElementById("scorejobs-empty");
container.innerHTML = '<p class="muted">加载中…</p>';
try {
const data = await API.listScoreJobs();
const jobs = data.jobs || [];
container.innerHTML = "";
if (jobs.length === 0) {
empty.hidden = false;
return;
}
empty.hidden = true;
jobs.forEach(job => container.appendChild(ScoreJobs.renderRow(job)));
// Auto-poll any queued/running jobs
jobs.forEach(job => {
if (job.status === "queued" || job.status === "running") {
ScoreJobs._startPoll(job.job_id);
}
});
} catch (err) {
container.innerHTML = `<p class="muted">加载失败:${App.escape(err.message)}</p>`;
}
},
renderRow(job) {
const row = document.createElement("div");
row.className = "panel score-job-row";
row.id = `score-job-${job.job_id}`;
row.innerHTML = ScoreJobs._rowHtml(job);
return row;
},
_rowHtml(job) {
const time = App.shortTime(job.created_at);
const question = App.escape((job.request_summary?.question || "—").slice(0, 50));
const metrics = (job.request_summary?.metrics || []).join(", ");
const statusBadge = `<span class="badge ${job.status}">${job.status}</span>`;
let scoreHtml = "";
if (job.status === "completed") {
scoreHtml = Object.entries(job.scores || {})
.map(([k, v]) => {
const cls = App.scoreClass(v);
const text = v === null || v === undefined ? "n/a" : Number(v).toFixed(3);
return `<span class="metric-chip" title="${App.escape(k)}">${App.escape(App.shortMetric(k))} <b class="${cls}">${text}</b></span>`;
})
.join(" ");
if (job.weighted_score !== null && job.weighted_score !== undefined) {
const cls = App.scoreClass(job.weighted_score);
scoreHtml += ` <span class="metric-chip">综合 <b class="${cls}">${Number(job.weighted_score).toFixed(3)}</b></span>`;
}
} else if (job.status === "failed") {
scoreHtml = `<span class="muted" style="color:var(--bad)">${App.escape(job.error || "未知错误")}</span>`;
} else {
scoreHtml = `<span class="muted">评分中…</span>`;
}
return `
<div class="run-card-head">
<div class="run-card-title">${question}</div>
<div>${statusBadge}</div>
</div>
<div class="run-card-meta">
<div>指标:${App.escape(metrics)} · ${time} · ${job.latency_ms}ms</div>
</div>
<div class="run-card-metrics">${scoreHtml}</div>
`;
},
_startPoll(jobId) {
if (ScoreJobs._pollTimers[jobId]) return;
ScoreJobs._pollTimers[jobId] = setInterval(async () => {
try {
const job = await API.getScoreJob(jobId);
const el = document.getElementById(`score-job-${jobId}`);
if (el) el.innerHTML = ScoreJobs._rowHtml(job);
if (job.status === "completed" || job.status === "failed") {
clearInterval(ScoreJobs._pollTimers[jobId]);
delete ScoreJobs._pollTimers[jobId];
}
} catch (_e) {
clearInterval(ScoreJobs._pollTimers[jobId]);
delete ScoreJobs._pollTimers[jobId];
}
}, 5000);
},
stopAllPolls() {
Object.values(ScoreJobs._pollTimers).forEach(t => clearInterval(t));
ScoreJobs._pollTimers = {};
},
};
```
- [ ] **Step 4: Update `webapp/static/js/app.js`**
Add `"scorejobs"` to the `views` array and `titles` object:
```javascript
views: ["runs", "new", "report", "profiles", "scorejobs", "apidocs"],
titles: { runs: "运行列表", new: "新建评估", report: "报告详情", profiles: "LLM 配置", scorejobs: "评分记录", apidocs: "API 文档" },
```
Add in `_doSwitch` after `if (view === "profiles") Profiles.load();`:
```javascript
if (view === "scorejobs") ScoreJobs.load();
```
Add `ScoreJobs.stopAllPolls();` when switching away, in `_doSwitch` before view switching logic:
```javascript
// Stop score job pollers when leaving the scorejobs view
if (App.activeView === "scorejobs" && view !== "scorejobs") ScoreJobs.stopAllPolls();
```
- [ ] **Step 5: Add script tag to `webapp/static/index.html`**
Add before `<script src="/static/js/app.js"></script>`:
```html
<script src="/static/js/score_jobs.js"></script>
```
- [ ] **Step 6: Verify server boots**
```
python -c "from webapp.server import create_app; create_app(); print('OK')"
```
Expected: `OK`
Also verify HTML has all new elements:
```
python -c "
c = open('webapp/static/index.html', encoding='utf-8').read()
assert 'view-scorejobs' in c
assert 'scorejobs-container' in c
assert '评分记录' in c
print('HTML OK')
"
```
- [ ] **Step 7: Commit**
```
git add webapp/static/index.html webapp/static/js/api.js webapp/static/js/app.js webapp/static/js/score_jobs.js
git commit -m "feat: add 评分记录 page with async score job list and auto-polling"
```
---
## Task 4: 全量回归测试 + Dify 说明注释
**Files:**
- Modify: `webapp/static/js/score_jobs.js` (minor: add Dify curl comment at top)
- [ ] **Step 1: Run full test suite**
```
python -m pytest tests/ -v --tb=short -q 2>&1 | tail -15
```
Pre-existing failures to ignore:
- `test_normalize_sample_pdf_offline_smoke_row`
- `test_evaluator_and_reporting_write_run_assets`
- `test_question_generator_rejects_invalid_json`
- `test_question_generator_rejects_non_list_samples`
Any other failure is a regression — fix before proceeding.
- [ ] **Step 2: Run targeted tests**
```
python -m pytest tests/webapp/test_score_jobs_api.py tests/webapp/test_score_api.py tests/test_pipeline.py -v --tb=short
```
Expected: all PASS
- [ ] **Step 3: Final commit**
```
git add .
git commit -m "feat: async score jobs complete — POST /api/score/async + 评分记录 page
- ScoreJobManager: thread pool + JSON persistence (outputs/score-jobs/)
- POST /api/score/async: 202 immediate response with job_id
- GET /api/score/jobs + GET /api/score/jobs/{id}: query endpoints
- Frontend: 评分记录 nav page with 5s auto-polling for pending jobs
- Dify integration: change /api/score → /api/score/async, remove response parsing
Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>"
```

View File

@@ -0,0 +1,116 @@
# 异步评分记录功能设计
**日期**: 2026-06-24
**状态**: 已批准,待实现
**范围**: 新增 `POST /api/score/async` 异步评分端点,评分结果持久化到磁盘,前端新增「评分记录」页面展示。
---
## 1. 目标
- Dify 工作流调用 `/api/score/async` 立即返回 `job_id`202不等待评分完成
- 后台异步执行 RAGAS 评分,结果写入 `outputs/score-jobs/<job_id>.json`
- RAGAS 平台新增「评分记录」导航页,列表展示所有评分记录及状态
---
## 2. 架构
```
Dify → POST /api/score/async → 202 {job_id, status:"queued"}
ScoreJobManager (线程池)
InlineScorer.score()
outputs/score-jobs/<job_id>.json
GET /api/score/jobs ← 前端「评分记录」页轮询
```
---
## 3. 存储格式
`outputs/score-jobs/<job_id>.json`:
```json
{
"job_id": "abc123def456",
"status": "completed",
"created_at": "2026-06-24T09:00:00+00:00",
"finished_at": "2026-06-24T09:00:15+00:00",
"request": {
"question": "双源CT的时间分辨率是多少?",
"answer": "双源CT的单扇区时间分辨率为75ms。",
"contexts": null,
"ground_truth": null,
"metrics": ["answer_relevancy"],
"judge_model": "gpt-5",
"embedding_model": "text-embedding-3-small"
},
"scores": {"answer_relevancy": 0.9075},
"weighted_score": 0.9075,
"latency_ms": 12500,
"skipped_metrics": [],
"error": null
}
```
---
## 4. API 端点
### `POST /api/score/async`
请求体与 `POST /api/score` 完全相同(`ScoreRequest`)。
```json
// 立即返回 202
{"job_id": "abc123def456", "status": "queued"}
```
### `GET /api/score/jobs`
返回所有评分记录,按创建时间倒序:
```json
{"jobs": [{...ScoreJobStatus...}]}
```
### `GET /api/score/jobs/{job_id}`
返回单条评分记录详情。
---
## 5. 新增文件
| 文件 | 职责 |
|------|------|
| `webapp/services/score_job_manager.py` | ScoreJobManager线程池 + JSON 持久化 |
| `webapp/api/score_jobs.py` | 3 个端点路由 |
| `webapp/static/js/score_jobs.js` | 前端列表逻辑 + 轮询 |
## 6. 修改文件
| 文件 | 改动 |
|------|------|
| `webapp/models.py` | 新增 `AsyncScoreJobStatus``AsyncScoreJobResponse` |
| `webapp/server.py` | 注册 score_jobs router更新 OPENAPI_TAGS |
| `webapp/static/index.html` | 新增导航项 + section |
---
## 7. 前端「评分记录」页
列表列:时间 / 问题摘要前40字/ 指标 / 得分 / 状态
- 进入页面自动刷新
- `queued/running` 记录每 5 秒轮询 `GET /api/score/jobs/{id}` 更新状态
- 得分按 scoreClassgood/warn/bad着色
---
## 8. Dify 改造
只改 HTTP 节点 URL`/api/score``/api/score/async`,删除解析响应的代码节点。

1
logs/online_eval.log Normal file
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@@ -0,0 +1 @@
Completed run: C:\Projects\AIProjects\Siemens-AIPOC\siemens_ragas\outputs\online\siemens-pdf-question-bank

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@@ -0,0 +1,24 @@
2026-06-23 13:55:00 INFO webapp.server Starting RAGAS Console host=127.0.0.1 port=8800 log_level=info log_file=C:\Projects\AIProjects\Siemens-AIPOC\siemens_ragas\logs\server_2026-06-23.log
2026-06-23 13:55:14 INFO uvicorn.error Started server process [83868]
2026-06-23 13:55:14 INFO uvicorn.error Waiting for application startup.
2026-06-23 13:55:14 INFO uvicorn.error Application startup complete.
2026-06-23 13:55:14 INFO uvicorn.error Uvicorn running on http://127.0.0.1:8800 (Press CTRL+C to quit)
2026-06-23 13:59:47 INFO uvicorn.access 127.0.0.1:53487 - "GET / HTTP/1.1" 200
2026-06-23 13:59:47 INFO uvicorn.access 127.0.0.1:53487 - "GET /static/css/app.css HTTP/1.1" 200
2026-06-23 13:59:47 INFO uvicorn.access 127.0.0.1:50321 - "GET /static/js/api.js HTTP/1.1" 200
2026-06-23 13:59:47 INFO uvicorn.access 127.0.0.1:51325 - "GET /static/js/profiles.js HTTP/1.1" 200
2026-06-23 13:59:47 INFO uvicorn.access 127.0.0.1:59869 - "GET /static/js/report.js HTTP/1.1" 200
2026-06-23 13:59:48 INFO uvicorn.access 127.0.0.1:50980 - "GET /static/js/runner.js HTTP/1.1" 200
2026-06-23 13:59:48 INFO uvicorn.access 127.0.0.1:63223 - "GET /static/js/app.js HTTP/1.1" 200
2026-06-23 13:59:48 INFO webapp.access GET /docs → 200 (0ms)
2026-06-23 13:59:48 INFO uvicorn.access 127.0.0.1:63223 - "GET /docs HTTP/1.1" 200
2026-06-23 13:59:48 INFO webapp.access GET /api/health → 200 (0ms)
2026-06-23 13:59:48 INFO uvicorn.access 127.0.0.1:50321 - "GET /api/health HTTP/1.1" 200
2026-06-23 13:59:49 INFO webapp.api.runs [get_runs] found 19 runs
2026-06-23 13:59:49 INFO webapp.access GET /api/runs → 200 (1094ms)
2026-06-23 13:59:49 INFO uvicorn.access 127.0.0.1:63223 - "GET /api/runs HTTP/1.1" 200
2026-06-23 13:59:49 INFO webapp.access GET /openapi.json → 200 (94ms)
2026-06-23 13:59:49 INFO uvicorn.access 127.0.0.1:63223 - "GET /openapi.json HTTP/1.1" 200
2026-06-23 13:59:50 INFO webapp.api.llm_profiles [list_profiles] count=6
2026-06-23 13:59:50 INFO webapp.access GET /api/llm-profiles → 200 (0ms)
2026-06-23 13:59:50 INFO uvicorn.access 127.0.0.1:63223 - "GET /api/llm-profiles HTTP/1.1" 200

35
logs/siemens_build.log Normal file
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@@ -0,0 +1,35 @@
[info] generating questions for: 315_1_Flash????????.pdf
[info] 315_1_Flash????????.pdf: 6 questions generated (total so far: 6)
[info] generating questions for: 316_2_Flash??????_??.pdf
[info] 316_2_Flash??????_??.pdf: 10 questions generated (total so far: 16)
[info] generating questions for: 317_3_Flash??????_??.pdf
[info] 317_3_Flash??????_??.pdf: 9 questions generated (total so far: 25)
[info] generating questions for: 318_4_Flash??????_???.pdf
[info] 318_4_Flash??????_???.pdf: 9 questions generated (total so far: 34)
[info] generating questions for: 319_5_Flash??????_?????.pdf
[info] 319_5_Flash??????_?????.pdf: 10 questions generated (total so far: 44)
[info] generating questions for: 320_6_Flash??????_??.pdf
[info] 320_6_Flash??????_??.pdf: 8 questions generated (total so far: 52)
[info] generating questions for: 321_??CT???????????--??.pdf
[info] 321_??CT???????????--??.pdf: 5 questions generated (total so far: 57)
[info] generating questions for: 322_??CT???????????--??????????.pdf
[info] 322_??CT???????????--??????????.pdf: 8 questions generated (total so far: 65)
[info] generating questions for: 323_??CT???????????--?????????.pdf
[info] 323_??CT???????????--?????????.pdf: 5 questions generated (total so far: 70)
[info] generating questions for: 324_??CT???????????--????????.pdf
[info] 324_??CT???????????--????????.pdf: 8 questions generated (total so far: 78)
[info] generating questions for: 325_??CT???????????--???????.pdf
[info] 325_??CT???????????--???????.pdf: 8 questions generated (total so far: 86)
[info] generating questions for: 326_??CT???????????--4D????.pdf
[info] 326_??CT???????????--4D????.pdf: 7 questions generated (total so far: 93)
[info] generating questions for: 327_??CT???????????--??????.pdf
[info] 327_??CT???????????--??????.pdf: 8 questions generated (total so far: 101)
[info] generating questions for: 749_????01_???????????.pdf
[info] 749_????01_???????????.pdf: 8 questions generated (total so far: 109)
[info] generating questions for: 804_????02-????????CT?????X-Map??.pdf
[info] 804_????02-????????CT?????X-Map??.pdf: 8 questions generated (total so far: 117)
[info] generating questions for: 805_????03_????????????????.pdf
[info] 805_????03_????????????????.pdf: 6 questions generated (total so far: 123)
[info] generating questions for: 807_???CT???????_SJ-L10.2??1-5.pdf
[info] 807_???CT???????_SJ-L10.2??1-5.pdf: 9 questions generated (total so far: 132)
Completed dataset build: C:\Projects\AIProjects\Siemens-AIPOC\siemens_ragas\outputs\dataset-builds\siemens-pdf-question-bank\2026-06-15T09-28-35.302231+00-00

View File

@@ -22,22 +22,31 @@ _PROMPT_TEMPLATE = """\
## 报告要求 ## 报告要求
1. 按指标分节(## 指标名 [severity]),先解释"为什么低"(结合低分样本具体分析),再给出"具体怎么改" 1. 按指标分节(## 指标名 [严重程度]),先解释"为什么低"(结合低分样本具体分析),再给出"具体怎么改"
2. "具体怎么改"要结合低分样本的实际内容,而不只是泛泛建议 2. 严重程度说明critical=严重(<阈值50%warning=警告(<阈值70%low=待优化低于0.85,有提升空间)
3. 最后写一节 **## 优先优化次序**,按性价比排序(不增加 LLM 调用次数的优化优先) 3. "具体怎么改"要结合低分样本的实际内容,而不只是泛泛建议
4. 语言简洁,面向工程师,不要废话,不要重复列表内容 4. 最后写一节 **## 优先优化次序**,按性价比排序(不增加 LLM 调用次数的优化优先critical 和 warning 项优先于 low 项
5. 语言简洁,面向工程师,不要废话,不要重复列表内容
只输出 Markdown 报告正文,不要任何前置说明。 只输出 Markdown 报告正文,不要任何前置说明。
""" """
_SEVERITY_LABEL_ZH: dict[str, str] = {
"critical": "严重",
"warning": "警告",
"low": "待优化",
}
def _build_diagnosis_summary(diagnoses: list[Diagnosis]) -> str: def _build_diagnosis_summary(diagnoses: list[Diagnosis]) -> str:
lines = [] lines = []
for d in diagnoses: for d in diagnoses:
direction = "(越低越好)" if d.metric == "noise_sensitivity" else "" direction = "(越低越好)" if d.metric == "noise_sensitivity" else ""
label = _SEVERITY_LABEL_ZH.get(d.severity, d.severity)
lines.append( lines.append(
f"- **{d.metric}** {direction} 均值={d.mean_score:.4f}" f"- **{d.metric}** {direction} 均值={d.mean_score:.4f}"
f"阈值={d.threshold},严重程度={d.severity}" f"阈值={d.threshold},严重程度={label}"
) )
lines.append(f" - 可能原因:{'; '.join(d.root_causes)}") lines.append(f" - 可能原因:{'; '.join(d.root_causes)}")
lines.append(f" - 建议动作:{'; '.join(d.suggested_actions)}") lines.append(f" - 建议动作:{'; '.join(d.suggested_actions)}")

View File

@@ -14,6 +14,9 @@ class MetricRule:
higher_is_better: bool # False for noise_sensitivity higher_is_better: bool # False for noise_sensitivity
root_causes: list[str] root_causes: list[str]
suggested_actions: list[str] suggested_actions: list[str]
# Scores below this threshold trigger a "low" advisory (LLM suggestion requested).
# Only applies to higher_is_better metrics; noise_sensitivity uses existing thresholds.
advisory_threshold: float = 0.85
METRIC_RULES: dict[str, MetricRule] = { METRIC_RULES: dict[str, MetricRule] = {
@@ -208,10 +211,14 @@ def diagnose(
elif mean < rule.warning_threshold: elif mean < rule.warning_threshold:
severity = "warning" severity = "warning"
threshold = rule.warning_threshold threshold = rule.warning_threshold
elif mean < rule.advisory_threshold:
# Score is acceptable but below 0.85 — request LLM optimization advice.
severity = "low"
threshold = rule.advisory_threshold
else: else:
continue # above warning threshold → no diagnosis continue # >= advisory_threshold → no diagnosis needed
else: else:
# lower is better (noise_sensitivity) # lower is better (noise_sensitivity): keep existing two-tier logic
if mean > rule.critical_threshold: if mean > rule.critical_threshold:
severity = "critical" severity = "critical"
threshold = rule.critical_threshold threshold = rule.critical_threshold

View File

@@ -8,12 +8,22 @@ from .rules import Diagnosis
logger = logging.getLogger("rag_eval.advisor") logger = logging.getLogger("rag_eval.advisor")
# Chinese display labels for each severity tier.
_SEVERITY_LABEL: dict[str, str] = {
"critical": "严重",
"warning": "警告",
"low": "待优化",
}
def _format_log_summary(diagnoses: list[Diagnosis], advice_path: Path) -> str: def _format_log_summary(diagnoses: list[Diagnosis], advice_path: Path) -> str:
"""Return a single-line log summary of triggered diagnoses.""" """Return a single-line log summary of triggered diagnoses."""
if not diagnoses: if not diagnoses:
return "[advisor] 所有指标正常,无需优化建议。" return "[advisor] 所有指标正常,无需优化建议。"
parts = [f"{d.metric}({d.mean_score:.2f}, {d.severity})" for d in diagnoses] parts = [
f"{d.metric}({d.mean_score:.2f},{_SEVERITY_LABEL.get(d.severity, d.severity)})"
for d in diagnoses
]
triggered = " ".join(parts) triggered = " ".join(parts)
return f"[advisor] 触发诊断 {len(diagnoses)} 项: {triggered}{advice_path}" return f"[advisor] 触发诊断 {len(diagnoses)} 项: {triggered}{advice_path}"
@@ -24,7 +34,8 @@ def _build_fallback_report(diagnoses: list[Diagnosis]) -> str:
return "" return ""
lines = ["## 规则诊断LLM 分析不可用)\n"] lines = ["## 规则诊断LLM 分析不可用)\n"]
for d in diagnoses: for d in diagnoses:
lines.append(f"### {d.metric} [{d.severity}] 均值={d.mean_score:.4f}") label = _SEVERITY_LABEL.get(d.severity, d.severity)
lines.append(f"### {d.metric} [{label}] 均值={d.mean_score:.4f}")
lines.append("\n**可能原因:**") lines.append("\n**可能原因:**")
for cause in d.root_causes: for cause in d.root_causes:
lines.append(f"- {cause}") lines.append(f"- {cause}")

View File

@@ -180,12 +180,12 @@ class Evaluator:
record["judge_model"] = self.scenario.judge_model record["judge_model"] = self.scenario.judge_model
record["embedding_model"] = self.scenario.embedding_model record["embedding_model"] = self.scenario.embedding_model
record["run_id"] = self.scenario.scenario_name record["run_id"] = self.scenario.scenario_name
# Weighted score columns — enable post-hoc weighted aggregation in reporting. # 综合加权得分列(已暂时禁用)
record["weighted_score"] = compute_weighted_score( # record["weighted_score"] = compute_weighted_score(
score.metrics, self.scenario.metric_weights # score.metrics, self.scenario.metric_weights
) # )
doc_name = str(sample.metadata.get("doc_name", "") or "") # doc_name = str(sample.metadata.get("doc_name", "") or "")
record["sample_weight"] = resolve_weight( # record["sample_weight"] = resolve_weight(
self.scenario.doc_weights, doc_name, default=1.0 # self.scenario.doc_weights, doc_name, default=1.0
) # )
return record return record

View File

@@ -27,14 +27,55 @@ from ragas.metrics.collections import (
from .pipeline import MetricPipeline from .pipeline import MetricPipeline
def _resolve_openai_client_kwargs(
judge_model: str,
settings: EvaluationSettings,
) -> dict[str, Any]:
"""Return AsyncOpenAI kwargs, preferring a matching LLM Profile over .env settings.
Lookup order:
1. LLM Profile whose model name equals judge_model (exact match)
2. Fall back to EvaluationSettings (.env)
"""
try:
# Lazy import to avoid circular dependency (webapp -> rag_eval is one-way).
from webapp.services.profile_manager import profile_manager
profiles = profile_manager.list_all()
for profile in profiles:
if profile.model == judge_model:
kwargs: dict[str, Any] = {
"api_key": profile.api_key or "sk-placeholder",
"timeout": float(profile.timeout_seconds or 30),
}
if profile.base_url and profile.base_url.strip():
kwargs["base_url"] = profile.base_url.strip()
return kwargs
except Exception: # noqa: BLE001
# If profile lookup fails for any reason, fall through to .env settings.
pass
return settings.openai_client_kwargs
def build_models( def build_models(
judge_model: str, judge_model: str,
embedding_model: str, embedding_model: str,
settings: EvaluationSettings, settings: EvaluationSettings,
) -> tuple[Any, Any]: ) -> tuple[Any, Any]:
"""Create the LLM and embedding clients required by the selected RAGAS metrics.""" """Create the LLM and embedding clients required by the selected RAGAS metrics.
client = AsyncOpenAI(**settings.openai_client_kwargs)
llm = llm_factory(judge_model, client=client) Dynamically resolves connection settings from the stored LLM Profiles first
(matched by model name), falling back to .env settings when no profile matches.
"""
client_kwargs = _resolve_openai_client_kwargs(judge_model, settings)
client = AsyncOpenAI(**client_kwargs)
# RAGAS structured-output judge calls can be truncated by the upstream default
# 1024 completion budget, especially for faithfulness and GPT-5 family models.
llm = llm_factory(
judge_model,
client=client,
max_tokens=max(1, int(settings.ragas_llm_max_tokens)),
)
embeddings = embedding_factory(provider="openai", model=embedding_model, client=client) embeddings = embedding_factory(provider="openai", model=embedding_model, client=client)
return llm, embeddings return llm, embeddings

View File

@@ -75,15 +75,16 @@ def build_summary_markdown(result: EvaluationResult) -> str:
else: else:
lines.append(f"- {metric}: `n/a`{weight_note}") lines.append(f"- {metric}: `n/a`{weight_note}")
if has_weights: # 综合加权得分(已暂时禁用)
overall_ws = compute_overall_weighted_score_mean( # if has_weights:
score_rows_list, result.scenario.metric_weights, result.scenario.doc_weights # overall_ws = compute_overall_weighted_score_mean(
) # score_rows_list, result.scenario.metric_weights, result.scenario.doc_weights
weight_suffix = " (加权)" # )
if overall_ws is not None and not math.isnan(overall_ws): # weight_suffix = " (加权)"
lines.append(f"- **weighted_score{weight_suffix}: `{overall_ws:.4f}`**") # if overall_ws is not None and not math.isnan(overall_ws):
else: # lines.append(f"- **weighted_score{weight_suffix}: `{overall_ws:.4f}`**")
lines.append(f"- **weighted_score{weight_suffix}: `n/a`**") # else:
# lines.append(f"- **weighted_score{weight_suffix}: `n/a`**")
detail_columns = ["sample_id", *result.scenario.metrics, "weighted_score", "error"] detail_columns = ["sample_id", *result.scenario.metrics, "weighted_score", "error"]
existing_columns = [c for c in detail_columns if c in scores.columns] existing_columns = [c for c in detail_columns if c in scores.columns]

View File

@@ -26,6 +26,11 @@ class EvaluationSettings(BaseSettings):
default="text-embedding-3-small", default="text-embedding-3-small",
alias="RAGAS_EMBEDDING_MODEL", alias="RAGAS_EMBEDDING_MODEL",
) )
ragas_llm_max_tokens: int = Field(
default=4096,
alias="RAGAS_LLM_MAX_TOKENS",
gt=0,
)
openai_timeout_seconds: float = Field(default=30.0, alias="OPENAI_TIMEOUT_SECONDS") openai_timeout_seconds: float = Field(default=30.0, alias="OPENAI_TIMEOUT_SECONDS")
ragas_metric_timeout_seconds: float = Field(default=45.0, alias="RAGAS_METRIC_TIMEOUT_SECONDS") ragas_metric_timeout_seconds: float = Field(default=45.0, alias="RAGAS_METRIC_TIMEOUT_SECONDS")
batch_size: int = Field(default=8, alias="BATCH_SIZE") batch_size: int = Field(default=8, alias="BATCH_SIZE")

View File

@@ -0,0 +1,53 @@
"""Lightweight read-only accessor for configs/llm_profiles.json.
Kept in ``rag_eval`` (not ``webapp``) so the runner can look up per-model
credentials without depending on the webapp layer.
"""
from __future__ import annotations
import json
import logging
from pathlib import Path
from typing import Any
logger = logging.getLogger(__name__)
_PROFILES_PATH = Path(__file__).resolve().parents[2] / "configs" / "llm_profiles.json"
def find_by_model(model_name: str) -> dict[str, Any] | None:
"""Return the first profile whose ``model`` field matches *model_name*, or None.
Returns None (without raising) when the profiles file does not exist or
cannot be parsed — callers fall back to environment-variable defaults.
"""
if not _PROFILES_PATH.exists():
return None
try:
data = json.loads(_PROFILES_PATH.read_text(encoding="utf-8"))
for profile in data.get("profiles", []):
if profile.get("model") == model_name:
return profile
except Exception as exc: # noqa: BLE001
logger.warning("[profile_store] failed to read %s: %s", _PROFILES_PATH, exc)
return None
def profile_to_client_kwargs(
profile: dict[str, Any],
fallback_api_key: str | None,
fallback_timeout: float,
) -> dict[str, Any]:
"""Convert a profile dict into keyword arguments for ``openai.AsyncOpenAI``.
Fields present in the profile override the supplied fallback values.
"""
kwargs: dict[str, Any] = {
"api_key": profile.get("api_key") or fallback_api_key or "",
"timeout": float(profile.get("timeout_seconds") or fallback_timeout),
}
base_url = (profile.get("base_url") or "").strip()
if base_url:
kwargs["base_url"] = base_url
return kwargs

File diff suppressed because it is too large Load Diff

View File

@@ -10,10 +10,38 @@ class TestDiagnosis(unittest.TestCase):
for i, s in enumerate(scores)] for i, s in enumerate(scores)]
def test_no_diagnosis_when_all_scores_above_threshold(self): def test_no_diagnosis_when_all_scores_above_threshold(self):
# Mean exactly 0.85 should NOT trigger any diagnosis (< 0.85 is the condition).
rows = self._make_rows("faithfulness", [0.8, 0.9, 0.85]) rows = self._make_rows("faithfulness", [0.8, 0.9, 0.85])
result = diagnose(rows, metrics=["faithfulness"]) result = diagnose(rows, metrics=["faithfulness"])
self.assertEqual(result, []) self.assertEqual(result, [])
def test_no_diagnosis_when_mean_above_advisory_threshold(self):
rows = self._make_rows("answer_relevancy", [0.9, 0.92, 0.88])
result = diagnose(rows, metrics=["answer_relevancy"])
self.assertEqual(result, [])
def test_low_severity_when_mean_below_advisory_threshold(self):
# Score between warning_threshold (0.7) and advisory_threshold (0.85) → "low"
rows = self._make_rows("faithfulness", [0.78, 0.80, 0.82])
result = diagnose(rows, metrics=["faithfulness"])
self.assertEqual(len(result), 1)
self.assertEqual(result[0].severity, "low")
self.assertAlmostEqual(result[0].threshold, 0.85, places=2)
def test_low_severity_answer_relevancy_at_0_84(self):
rows = self._make_rows("answer_relevancy", [0.84, 0.84, 0.84])
result = diagnose(rows, metrics=["answer_relevancy"])
self.assertEqual(len(result), 1)
self.assertEqual(result[0].severity, "low")
def test_low_severity_has_root_causes_and_actions(self):
rows = self._make_rows("context_precision", [0.75, 0.76, 0.77])
result = diagnose(rows, metrics=["context_precision"])
self.assertEqual(len(result), 1)
self.assertEqual(result[0].severity, "low")
self.assertTrue(len(result[0].root_causes) > 0)
self.assertTrue(len(result[0].suggested_actions) > 0)
def test_warning_when_mean_below_warning_threshold(self): def test_warning_when_mean_below_warning_threshold(self):
rows = self._make_rows("faithfulness", [0.65, 0.62, 0.68]) rows = self._make_rows("faithfulness", [0.65, 0.62, 0.68])
result = diagnose(rows, metrics=["faithfulness"]) result = diagnose(rows, metrics=["faithfulness"])

View File

@@ -91,9 +91,9 @@ class TestWriteAdvice(unittest.TestCase):
] ]
summary = _format_log_summary(diags, self.advice_path) summary = _format_log_summary(diags, self.advice_path)
self.assertIn("faithfulness", summary) self.assertIn("faithfulness", summary)
self.assertIn("critical", summary) self.assertIn("严重", summary) # "critical" maps to Chinese label
self.assertIn("context_recall", summary) self.assertIn("context_recall", summary)
self.assertIn("warning", summary) self.assertIn("警告", summary) # "warning" maps to Chinese label
def test_write_empty_diagnoses_still_creates_file(self): def test_write_empty_diagnoses_still_creates_file(self):
write_advice( write_advice(

View File

@@ -0,0 +1,68 @@
from __future__ import annotations
import subprocess
from pathlib import Path
REPO_ROOT = Path(__file__).resolve().parents[1]
def _run_node(script: str) -> str:
"""Execute a short Node.js script and return stdout."""
completed = subprocess.run(
["node", "-e", script],
cwd=REPO_ROOT,
capture_output=True,
text=True,
encoding="utf-8",
check=True,
)
return completed.stdout.strip()
def test_metric_presenter_applies_thresholds_and_noise_direction() -> None:
"""MetricPresenter should centralize thresholds and inverse noise semantics."""
metric_js = (REPO_ROOT / "webapp" / "static" / "js" / "metric_presenter.js").as_posix()
script = f"""
const fs = require("fs");
const vm = require("vm");
const code = fs.readFileSync("{metric_js}", "utf8");
const sandbox = {{ window: {{}}, console }};
vm.runInNewContext(code, sandbox);
const p = sandbox.window.MetricPresenter;
const result = {{
faith085: p.scoreClass("faithfulness", 0.85),
faith070: p.scoreClass("faithfulness", 0.70),
faith064: p.scoreClass("faithfulness", 0.64),
noise010: p.scoreClass("noise_sensitivity", 0.10),
noise030: p.scoreClass("noise_sensitivity", 0.30),
noise050: p.scoreClass("noise_sensitivity", 0.50),
desc: p.describeMetric("faithfulness"),
noiseDesc: p.describeMetric("noise_sensitivity"),
noiseBin: p.binColor("noise_sensitivity", 0.0),
faithBin: p.binColor("faithfulness", 0.8)
}};
console.log(JSON.stringify(result));
"""
output = _run_node(script)
assert '"faith085":"good"' in output
assert '"faith070":"warn"' in output
assert '"faith064":"bad"' in output
assert '"noise010":"good"' in output
assert '"noise030":"warn"' in output
assert '"noise050":"bad"' in output
assert '"desc":"' in output
assert '"noiseDesc":"' in output
assert '"noiseBin":"#16a34a"' in output
assert '"faithBin":"#16a34a"' in output
def test_report_and_index_load_metric_presenter_helper() -> None:
"""The report page should use the shared helper for card descriptions and colors."""
index_html = (REPO_ROOT / "webapp" / "static" / "index.html").read_text(encoding="utf-8")
report_js = (REPO_ROOT / "webapp" / "static" / "js" / "report.js").read_text(encoding="utf-8")
app_js = (REPO_ROOT / "webapp" / "static" / "js" / "app.js").read_text(encoding="utf-8")
assert "js/metric_presenter.js" in index_html
assert "MetricPresenter.describeMetric" in report_js
assert "MetricPresenter.scoreClass" in app_js

View File

@@ -184,7 +184,7 @@ class ScenarioAndDatasetTests(unittest.TestCase):
class EvaluatorAndReportingTests(unittest.TestCase): class EvaluatorAndReportingTests(unittest.TestCase):
def test_merge_score_includes_weighted_score_and_sample_weight(self): def test_merge_score_includes_weighted_score_and_sample_weight(self):
"""_merge_score adds weighted_score and sample_weight columns.""" """_merge_score no longer adds weighted_score/sample_weight (feature disabled)."""
from unittest.mock import MagicMock from unittest.mock import MagicMock
from rag_eval.execution.evaluator import Evaluator from rag_eval.execution.evaluator import Evaluator
from rag_eval.shared.models import ( from rag_eval.shared.models import (
@@ -212,9 +212,11 @@ class EvaluatorAndReportingTests(unittest.TestCase):
) )
score = MetricScore(metrics={"faithfulness": 1.0, "context_recall": 0.0}) score = MetricScore(metrics={"faithfulness": 1.0, "context_recall": 0.0})
row = evaluator._merge_score(sample, score) row = evaluator._merge_score(sample, score)
# (3*1.0 + 1*0.0) / (3+1) = 0.75 # 综合加权得分已暂时禁用weighted_score 和 sample_weight 不再写入
assert abs(row["weighted_score"] - 0.75) < 1e-4 assert "weighted_score" not in row
assert row["sample_weight"] == 2.0 assert "sample_weight" not in row
assert row["faithfulness"] == 1.0
assert row["context_recall"] == 0.0
def test_summary_markdown_shows_weighted_score(self): def test_summary_markdown_shows_weighted_score(self):
"""build_summary_markdown includes weighted_score when metric_weights set.""" """build_summary_markdown includes weighted_score when metric_weights set."""

280
tests/test_pipeline.py Normal file
View File

@@ -0,0 +1,280 @@
"""Tests for the end-to-end pipeline API and pipeline task manager."""
from __future__ import annotations
import json
import time
from pathlib import Path
from unittest.mock import MagicMock, patch
import pytest
from fastapi.testclient import TestClient
# ── fixtures ──────────────────────────────────────────────────────────────────
@pytest.fixture()
def client(tmp_path, monkeypatch):
"""TestClient with a fresh PipelineTaskManager backed by tmp_path outputs."""
import webapp.services.pipeline_task_manager as mgr_mod
from webapp.services.pipeline_task_manager import PipelineTaskManager
fresh_mgr = PipelineTaskManager(max_workers=2)
monkeypatch.setattr(mgr_mod, "pipeline_task_manager", fresh_mgr)
monkeypatch.setattr(mgr_mod, "_PIPELINE_OUTPUT_ROOT", tmp_path / "pipeline")
import webapp.api.pipeline as api_mod
monkeypatch.setattr(api_mod, "pipeline_task_manager", fresh_mgr)
from webapp.server import create_app
return TestClient(create_app())
def _minimal_pdf_dir(tmp_path: Path) -> Path:
"""Create a temp directory that looks like a PDF folder (empty, valid dir)."""
d = tmp_path / "pdfs"
d.mkdir()
return d
def _mock_build_result(tmp_path: Path, job, run_id="r1"):
"""Return a fake DatasetBuildResult with a minimal dataset CSV."""
from rag_eval.dataset_builder.models import (
DatasetBuildArtifactPaths,
DatasetBuildResult,
DraftQuestionSample,
)
artifact_root = tmp_path / "build" / run_id
artifact_root.mkdir(parents=True, exist_ok=True)
latest = tmp_path / "build" / "latest"
latest.mkdir(parents=True, exist_ok=True)
chunks_path = artifact_root / "source_chunks.jsonl"
chunks_path.write_text(
json.dumps({"chunk_id": "c1", "doc_id": "d1", "doc_name": "test.pdf",
"text": "CT scan context.", "page_start": 1, "page_end": 1,
"section_path": "/", "section_title": "", "source_layout_ids": []}) + "\n",
encoding="utf-8",
)
(latest / "source_chunks.jsonl").write_text(chunks_path.read_text(encoding="utf-8"), encoding="utf-8")
dataset_csv = tmp_path / "generated_dataset.csv"
dataset_csv.write_text(
"sample_id,question,ground_truth,scenario,language,doc_id,doc_name,"
"section_path,page_start,page_end,source_chunk_ids,question_type,difficulty,"
"review_status,review_notes\n"
's1,"What is CT?","CT is imaging.","test","zh","d1","test.pdf","/",'
'1,1,"[""c1""]","fact","easy","draft",""\n',
encoding="utf-8",
)
sample = DraftQuestionSample(
sample_id="s1", question="What is CT?", ground_truth="CT is imaging.",
scenario="test", language="zh", doc_id="d1", doc_name="test.pdf",
section_path="/", page_start=1, page_end=1, source_chunk_ids=["c1"],
question_type="fact", difficulty="easy",
)
artifact_paths = DatasetBuildArtifactPaths(
root_dir=artifact_root,
documents_jsonl=artifact_root / "documents.jsonl",
semantic_blocks_jsonl=artifact_root / "semantic_blocks.jsonl",
source_chunks_jsonl=chunks_path,
dataset_draft_csv=artifact_root / "dataset_draft.csv",
parse_failures_csv=artifact_root / "parse_failures.csv",
metadata_json=artifact_root / "metadata.json",
)
return DatasetBuildResult(
job=job,
run_id=run_id,
artifact_paths=artifact_paths,
documents=[],
draft_samples=[sample],
parse_failures=[],
)
def _mock_eval_result(tmp_path: Path, scenario):
"""Return a fake EvaluationResult."""
from rag_eval.shared.models import EvaluationResult
return EvaluationResult(
scenario=scenario,
run_id="eval-r1",
started_at="2026-01-01T00:00:00",
finished_at="2026-01-01T00:01:00",
valid_samples=[],
invalid_samples=[],
score_rows=[],
)
# ── API route tests ────────────────────────────────────────────────────────────
def test_submit_returns_202_and_job_id(client, tmp_path):
"""POST /api/pipeline/jobs returns 202 with job_id immediately."""
pdf_dir = _minimal_pdf_dir(tmp_path)
with patch("webapp.services.pipeline_task_manager.PipelineTaskManager._execute") as mock_exec:
from webapp.models import PipelineResult
mock_exec.return_value = PipelineResult(
build_artifact_dir="/tmp/b", dataset_csv="/tmp/d.csv",
source_chunks_jsonl="/tmp/c.jsonl", total_questions=1,
parse_failures=0, eval_run_id="r1", eval_output_dir="/tmp/e",
scores_csv="/tmp/scores.csv", summary_md="/tmp/summary.md",
)
resp = client.post("/api/pipeline/jobs", json={
"docs_path": str(pdf_dir),
"job_name": "test-job",
})
assert resp.status_code == 202
data = resp.json()
assert "job_id" in data
assert data["job_name"] == "test-job"
# status may already be completed by the time the response is read (mock runs instantly)
assert data["status"] in ("queued", "completed")
def test_get_nonexistent_job_returns_404(client):
"""GET /api/pipeline/jobs/{id} returns 404 for unknown job."""
resp = client.get("/api/pipeline/jobs/doesnotexist")
assert resp.status_code == 404
def test_list_jobs_returns_empty_initially(client):
"""GET /api/pipeline/jobs returns empty list when no jobs submitted."""
resp = client.get("/api/pipeline/jobs")
assert resp.status_code == 200
assert resp.json()["jobs"] == []
def test_job_status_polling(client, tmp_path):
"""Submitted job becomes visible via GET /api/pipeline/jobs/{id}."""
pdf_dir = _minimal_pdf_dir(tmp_path)
with patch("webapp.services.pipeline_task_manager.PipelineTaskManager._execute") as mock_exec:
from webapp.models import PipelineResult
mock_exec.return_value = PipelineResult(
build_artifact_dir="/tmp/b", dataset_csv="/tmp/d.csv",
source_chunks_jsonl="/tmp/c.jsonl", total_questions=3,
parse_failures=0, eval_run_id="r2", eval_output_dir="/tmp/e",
scores_csv="/tmp/scores.csv", summary_md="/tmp/summary.md",
)
post_resp = client.post("/api/pipeline/jobs", json={"docs_path": str(pdf_dir)})
job_id = post_resp.json()["job_id"]
# Poll until done or timeout (max 5s for mock)
for _ in range(20):
status_resp = client.get(f"/api/pipeline/jobs/{job_id}")
assert status_resp.status_code == 200
status = status_resp.json()
if status["status"] in ("completed", "failed"):
break
time.sleep(0.25)
assert status["status"] == "completed"
assert status["result"]["total_questions"] == 3
def test_job_fails_on_invalid_docs_path(client):
"""Job fails quickly if docs_path does not exist."""
resp = client.post("/api/pipeline/jobs", json={
"docs_path": "/nonexistent/path/that/does/not/exist",
})
assert resp.status_code == 202
job_id = resp.json()["job_id"]
for _ in range(20):
status_resp = client.get(f"/api/pipeline/jobs/{job_id}")
status = status_resp.json()
if status["status"] in ("completed", "failed"):
break
time.sleep(0.25)
assert status["status"] == "failed"
assert "docs_path" in status["error"] or "not" in status["error"].lower()
def test_list_jobs_shows_submitted(client, tmp_path):
"""GET /api/pipeline/jobs includes jobs after submission."""
pdf_dir = _minimal_pdf_dir(tmp_path)
with patch("webapp.services.pipeline_task_manager.PipelineTaskManager._execute") as mock_exec:
from webapp.models import PipelineResult
mock_exec.return_value = PipelineResult(
build_artifact_dir="/tmp/b", dataset_csv="/tmp/d.csv",
source_chunks_jsonl="/tmp/c.jsonl", total_questions=1,
parse_failures=0, eval_run_id="r3", eval_output_dir="/tmp/e",
scores_csv="/tmp/scores.csv", summary_md="/tmp/summary.md",
)
client.post("/api/pipeline/jobs", json={"docs_path": str(pdf_dir), "job_name": "listed-job"})
time.sleep(0.5)
list_resp = client.get("/api/pipeline/jobs")
assert list_resp.status_code == 200
jobs = list_resp.json()["jobs"]
assert len(jobs) >= 1
names = [j["job_name"] for j in jobs]
assert "listed-job" in names
# ── execute_dataset_build_job refactor test ────────────────────────────────────
def test_execute_dataset_build_job_directly(tmp_path):
"""execute_dataset_build_job runs the build without a YAML file."""
from unittest.mock import patch as _patch
from rag_eval.dataset_builder.models import DatasetBuildJob, DatasetBuildRuntime
from rag_eval.dataset_builder.runner import execute_dataset_build_job
from rag_eval.settings import EvaluationSettings
pdf_dir = tmp_path / "pdfs"
pdf_dir.mkdir()
(pdf_dir / "doc.pdf").write_bytes(b"%PDF-fake")
job = DatasetBuildJob(
job_name="direct-test",
input_path=pdf_dir,
input_glob="*.pdf",
parser_provider="aliyun_docmind",
failure_mode="skip",
generation_model="test-model",
output_type="online_question_bank",
review_mode="draft_with_manual_review",
max_questions_per_document=5,
max_source_chunks_per_question=3,
dataset_path=tmp_path / "out.csv",
artifact_dir=tmp_path / "artifacts",
runtime=DatasetBuildRuntime(max_documents=1),
)
mock_doc = MagicMock()
mock_doc.doc_id = "d1"
mock_doc.doc_name = "doc.pdf"
mock_doc.source_chunks = []
mock_doc.semantic_blocks = []
mock_doc.raw_text = ""
mock_doc.structure_nodes = []
mock_doc.metadata = {}
mock_doc.to_record.return_value = {
"doc_id": "d1", "doc_name": "doc.pdf", "raw_text": "",
"structure_nodes": [], "metadata": {},
"semantic_block_count": 0, "source_chunk_count": 0,
}
mock_parser = MagicMock()
mock_parser.parse.return_value = mock_doc
mock_generator = MagicMock()
mock_generator.generate.return_value = []
result = execute_dataset_build_job(
job,
settings=EvaluationSettings(_env_file=None),
parser=mock_parser,
generator=mock_generator,
)
assert result.job.job_name == "direct-test"
assert result.artifact_paths.root_dir.exists()

View File

@@ -65,7 +65,8 @@ def test_build_report_uses_weighted_means_and_exposes_snapshot_weights(tmp_path:
"faithfulness": pytest.approx(0.75, rel=1e-4), "faithfulness": pytest.approx(0.75, rel=1e-4),
"context_recall": pytest.approx(0.5, rel=1e-4), "context_recall": pytest.approx(0.5, rel=1e-4),
} }
assert report.weighted_score_mean == pytest.approx(0.6667, rel=1e-4) # 综合加权得分已暂时禁用
assert report.weighted_score_mean is None
assert report.metric_weights == {"faithfulness": 2.0, "context_recall": 1.0} assert report.metric_weights == {"faithfulness": 2.0, "context_recall": 1.0}
assert report.doc_weights == {"a.pdf": 3.0, "b.pdf": 1.0} assert report.doc_weights == {"a.pdf": 3.0, "b.pdf": 1.0}
assert report.summary_markdown == "summary" assert report.summary_markdown == "summary"
@@ -87,3 +88,30 @@ def test_infer_metrics_excludes_weight_columns_without_snapshot(tmp_path: Path)
) )
assert _infer_metrics_from_scores(run_dir) == ["faithfulness"] assert _infer_metrics_from_scores(run_dir) == ["faithfulness"]
def test_build_report_ranks_noise_sensitivity_with_lower_values_as_better(tmp_path: Path) -> None:
"""Lowest-sample review should treat higher noise sensitivity as worse."""
run_dir = tmp_path / "run"
run_dir.mkdir(parents=True, exist_ok=True)
(run_dir / "scores.csv").write_text(
"\n".join(
[
"sample_id,question,noise_sensitivity",
"s-good,q1,0.10",
"s-warn,q2,0.30",
"s-bad,q3,0.90",
]
),
encoding="utf-8",
)
(run_dir / "summary.md").write_text("summary", encoding="utf-8")
(run_dir / "optimization_advice.md").write_text("", encoding="utf-8")
report = build_report(run_dir, ["noise_sensitivity"])
assert [sample.sample_id for sample in report.lowest_samples[:3]] == [
"s-bad",
"s-warn",
"s-good",
]

View File

@@ -1,6 +1,7 @@
"""Integration tests for /api/llm-profiles endpoints.""" """Integration tests for /api/llm-profiles endpoints."""
import pytest import pytest
from fastapi.testclient import TestClient from fastapi.testclient import TestClient
from unittest.mock import patch
@pytest.fixture() @pytest.fixture()
@@ -41,19 +42,23 @@ def test_update_profile(client):
pid = client.post("/api/llm-profiles", json=body).json()["profile_id"] pid = client.post("/api/llm-profiles", json=body).json()["profile_id"]
upd = {"name": "New", "model": "m2", "base_url": "http://x/v1", "api_key": "k", "timeout_seconds": 60} upd = {"name": "New", "model": "m2", "base_url": "http://x/v1", "api_key": "k", "timeout_seconds": 60}
with patch("webapp.services.inline_scorer.inline_scorer.invalidate_cache") as invalidate:
resp = client.put(f"/api/llm-profiles/{pid}", json=upd) resp = client.put(f"/api/llm-profiles/{pid}", json=upd)
assert resp.status_code == 200 assert resp.status_code == 200
assert resp.json()["name"] == "New" assert resp.json()["name"] == "New"
assert resp.json()["timeout_seconds"] == 60 assert resp.json()["timeout_seconds"] == 60
invalidate.assert_called_once()
def test_delete_profile(client): def test_delete_profile(client):
body = {"name": "Del", "model": "m", "base_url": "http://x/v1", "api_key": "k"} body = {"name": "Del", "model": "m", "base_url": "http://x/v1", "api_key": "k"}
pid = client.post("/api/llm-profiles", json=body).json()["profile_id"] pid = client.post("/api/llm-profiles", json=body).json()["profile_id"]
with patch("webapp.services.inline_scorer.inline_scorer.invalidate_cache") as invalidate:
resp = client.delete(f"/api/llm-profiles/{pid}") resp = client.delete(f"/api/llm-profiles/{pid}")
assert resp.status_code == 200 assert resp.status_code == 200
assert resp.json()["deleted"] is True assert resp.json()["deleted"] is True
assert len(client.get("/api/llm-profiles").json()["profiles"]) == 0 assert len(client.get("/api/llm-profiles").json()["profiles"]) == 0
invalidate.assert_called_once()
def test_update_nonexistent(client): def test_update_nonexistent(client):
@@ -185,7 +190,7 @@ def test_apply_doc_weights_patches_yaml(tmp_path):
# --------------------------------------------------------------------------- # ---------------------------------------------------------------------------
# Connectivity test endpoint tests # Connectivity test endpoint tests
# --------------------------------------------------------------------------- # ---------------------------------------------------------------------------
from unittest.mock import MagicMock, patch from unittest.mock import MagicMock
def test_probe_connectivity_success(client): def test_probe_connectivity_success(client):

View File

@@ -1,4 +1,6 @@
import pytest import pytest
from unittest.mock import sentinel
from webapp.models import LLMProfile, ProfileApplyRequest, ProfileApplyResponse from webapp.models import LLMProfile, ProfileApplyRequest, ProfileApplyResponse
def test_llm_profile_defaults(): def test_llm_profile_defaults():
@@ -98,3 +100,106 @@ def test_get_nonexistent(tmp_path):
def test_delete_nonexistent(tmp_path): def test_delete_nonexistent(tmp_path):
mgr = _make_manager(tmp_path) mgr = _make_manager(tmp_path)
assert mgr.delete("does-not-exist") is False assert mgr.delete("does-not-exist") is False
def test_resolve_openai_client_kwargs_prefers_matching_profile(tmp_path, monkeypatch):
"""Metric runtime should prefer the saved LLM Profile over .env defaults."""
from rag_eval.metrics.factory import _resolve_openai_client_kwargs
from rag_eval.settings import EvaluationSettings
import webapp.services.profile_manager as pm_mod
mgr = _make_manager(tmp_path)
mgr.create(
name="Judge",
model="gpt-5.5",
base_url="http://39.107.88.131:13000",
api_key="sk-profile",
timeout_seconds=300,
)
monkeypatch.setattr(pm_mod, "profile_manager", mgr)
settings = EvaluationSettings(
OPENAI_API_KEY="sk-env",
OPENAI_BASE_URL="http://env-base/v1",
OPENAI_TIMEOUT_SECONDS=30,
)
kwargs = _resolve_openai_client_kwargs("gpt-5.5", settings)
assert kwargs["api_key"] == "sk-profile"
assert kwargs["base_url"] == "http://39.107.88.131:13000"
assert kwargs["timeout"] == 300.0
def test_resolve_openai_client_kwargs_falls_back_to_env(tmp_path, monkeypatch):
"""When no saved profile matches, .env settings remain the fallback."""
from rag_eval.metrics.factory import _resolve_openai_client_kwargs
from rag_eval.settings import EvaluationSettings
import webapp.services.profile_manager as pm_mod
mgr = _make_manager(tmp_path)
monkeypatch.setattr(pm_mod, "profile_manager", mgr)
settings = EvaluationSettings(
OPENAI_API_KEY="sk-env",
OPENAI_BASE_URL="http://env-base/v1",
OPENAI_TIMEOUT_SECONDS=45,
)
kwargs = _resolve_openai_client_kwargs("gpt-5", settings)
assert kwargs["api_key"] == "sk-env"
assert kwargs["base_url"] == "http://env-base/v1"
assert kwargs["timeout"] == 45.0
def test_build_models_uses_high_default_max_tokens_for_structured_judge(monkeypatch):
"""Structured RAGAS judge calls should use a larger completion budget by default."""
import rag_eval.metrics.factory as factory
from rag_eval.settings import EvaluationSettings
captured: dict[str, object] = {}
def fake_llm_factory(model, client=None, **kwargs):
captured["model"] = model
captured["client"] = client
captured["kwargs"] = kwargs
return sentinel.llm
monkeypatch.setattr(factory, "AsyncOpenAI", lambda **kwargs: sentinel.client)
monkeypatch.setattr(factory, "llm_factory", fake_llm_factory)
monkeypatch.setattr(factory, "embedding_factory", lambda **kwargs: sentinel.embeddings)
llm, embeddings = factory.build_models(
"gpt-5",
"text-embedding-3-small",
EvaluationSettings(),
)
assert llm is sentinel.llm
assert embeddings is sentinel.embeddings
assert captured["model"] == "gpt-5"
assert captured["client"] is sentinel.client
assert captured["kwargs"] == {"max_tokens": 4096}
def test_build_models_allows_env_override_for_judge_max_tokens(monkeypatch):
"""Operators should be able to raise the judge completion budget via settings."""
import rag_eval.metrics.factory as factory
from rag_eval.settings import EvaluationSettings
captured: dict[str, object] = {}
def fake_llm_factory(model, client=None, **kwargs):
captured["kwargs"] = kwargs
return sentinel.llm
monkeypatch.setattr(factory, "AsyncOpenAI", lambda **kwargs: sentinel.client)
monkeypatch.setattr(factory, "llm_factory", fake_llm_factory)
monkeypatch.setattr(factory, "embedding_factory", lambda **kwargs: sentinel.embeddings)
factory.build_models(
"gpt-5",
"text-embedding-3-small",
EvaluationSettings(RAGAS_LLM_MAX_TOKENS=8192),
)
assert captured["kwargs"] == {"max_tokens": 8192}

View File

@@ -57,9 +57,11 @@ class TestScoreRequest:
with pytest.raises(ValidationError): with pytest.raises(ValidationError):
ScoreRequest(question="q", contexts="c") # type: ignore[call-arg] ScoreRequest(question="q", contexts="c") # type: ignore[call-arg]
def test_missing_contexts_raises(self): def test_missing_contexts_defaults_to_none(self):
with pytest.raises(ValidationError): """contexts is now optional — missing contexts is allowed."""
ScoreRequest(question="q", answer="a") # type: ignore[call-arg] req = ScoreRequest(question="q", answer="a")
assert req.contexts is None
assert req.contexts_as_list() == []
def test_custom_metrics_accepted(self): def test_custom_metrics_accepted(self):
req = ScoreRequest( req = ScoreRequest(
@@ -115,6 +117,17 @@ class TestScoreRequest:
"factual_correctness", "factual_correctness",
] ]
def test_effective_metrics_drops_context_dependent_when_contexts_absent(self):
"""Without contexts, context-dependent metrics are excluded."""
req = ScoreRequest(
question="q", answer="a",
metrics=["faithfulness", "answer_relevancy", "context_precision"],
)
effective = req.effective_metrics()
assert "answer_relevancy" in effective
assert "faithfulness" not in effective
assert "context_precision" not in effective
class TestScoreResponse: class TestScoreResponse:
def test_score_response_structure(self): def test_score_response_structure(self):
@@ -228,7 +241,8 @@ class TestScoreEndpoint:
}) })
assert resp.status_code == 200 assert resp.status_code == 200
data = resp.json() data = resp.json()
assert data["weighted_score"] is not None # 综合加权得分已暂时禁用,始终返回 null
assert data["weighted_score"] is None
def test_missing_required_fields_returns_422(self, client): def test_missing_required_fields_returns_422(self, client):
resp = client.post("/api/score", json={"question": "q"}) resp = client.post("/api/score", json={"question": "q"})

View File

@@ -0,0 +1,146 @@
"""Tests for async score jobs API."""
from __future__ import annotations
import json
import time
from pathlib import Path
from unittest.mock import MagicMock, patch
import pytest
from fastapi.testclient import TestClient
@pytest.fixture()
def client(tmp_path, monkeypatch):
"""TestClient with fresh ScoreJobManager backed by tmp dirs."""
import webapp.services.score_job_manager as mgr_mod
from webapp.services.score_job_manager import ScoreJobManager
fresh_mgr = ScoreJobManager(
output_dir=tmp_path / "score-async",
index_dir=tmp_path / "score-jobs",
max_workers=2,
)
monkeypatch.setattr(mgr_mod, "score_job_manager", fresh_mgr)
import webapp.api.score_jobs as api_mod
monkeypatch.setattr(api_mod, "score_job_manager", fresh_mgr)
from webapp.server import create_app
return TestClient(create_app())
class TestAsyncScoreEndpoints:
def test_submit_returns_202_with_job_id(self, client):
"""POST /api/score/async returns 202 immediately."""
with patch("webapp.services.score_job_manager.ScoreJobManager._run"):
resp = client.post("/api/score/async", json={
"question": "q?",
"answer": "a.",
"metrics": ["answer_relevancy"],
})
assert resp.status_code == 202
data = resp.json()
assert "job_id" in data
assert data["status"] == "queued"
def test_list_jobs_empty_initially(self, client):
resp = client.get("/api/score/jobs")
assert resp.status_code == 200
assert resp.json()["jobs"] == []
def test_get_unknown_job_returns_404(self, client):
resp = client.get("/api/score/jobs/nonexistent123")
assert resp.status_code == 404
def test_submitted_job_appears_in_list(self, client):
with patch("webapp.services.score_job_manager.ScoreJobManager._run"):
resp = client.post("/api/score/async", json={
"question": "q?", "answer": "a.", "metrics": ["answer_relevancy"],
})
job_id = resp.json()["job_id"]
time.sleep(0.1)
list_resp = client.get("/api/score/jobs")
ids = [j["job_id"] for j in list_resp.json()["jobs"]]
assert job_id in ids
def test_get_job_by_id_returns_status(self, client):
with patch("webapp.services.score_job_manager.ScoreJobManager._run"):
resp = client.post("/api/score/async", json={
"question": "q?", "answer": "a.", "metrics": ["answer_relevancy"],
})
job_id = resp.json()["job_id"]
time.sleep(0.1)
get_resp = client.get(f"/api/score/jobs/{job_id}")
assert get_resp.status_code == 200
assert get_resp.json()["job_id"] == job_id
def test_missing_required_fields_returns_422(self, client):
resp = client.post("/api/score/async", json={"question": "q?"})
assert resp.status_code == 422
class TestScoreJobManager:
def test_completed_job_persisted_to_index(self, tmp_path):
"""Completed job writes index JSON."""
from webapp.services.score_job_manager import ScoreJobManager
from webapp.models import ScoreRequest
mgr = ScoreJobManager(
output_dir=tmp_path / "runs",
index_dir=tmp_path / "index",
max_workers=1,
)
req = ScoreRequest(question="q?", answer="a.", metrics=["answer_relevancy"])
# Patch _run directly — it uses lazy imports internally
def fake_run(job_id, request):
mgr._update(job_id, status="completed", finished_at="2026-01-01T00:00:01+00:00",
run_id="fake-run-id", scores={"answer_relevancy": 0.85},
weighted_score=0.85, latency_ms=500)
with patch.object(mgr, "_run", side_effect=fake_run):
status = mgr.submit(req)
for _ in range(20):
s = mgr.get(status.job_id)
if s and s.status == "completed":
break
time.sleep(0.1)
s = mgr.get(status.job_id)
assert s is not None
idx_path = tmp_path / "index" / f"{status.job_id}.json"
assert idx_path.exists()
data = json.loads(idx_path.read_text(encoding="utf-8"))
assert data["job_id"] == status.job_id
assert data["status"] == "completed"
def test_loads_existing_index_on_startup(self, tmp_path):
"""Manager loads persisted jobs from index dir on init."""
from webapp.services.score_job_manager import ScoreJobManager
from webapp.models import AsyncScoreJobStatus
idx_dir = tmp_path / "index"
idx_dir.mkdir()
fake = AsyncScoreJobStatus(
job_id="testjob001",
status="completed",
created_at="2026-01-01T00:00:00+00:00",
run_id="some-run-id",
scores={"answer_relevancy": 0.9},
weighted_score=0.9,
latency_ms=1000,
)
(idx_dir / "testjob001.json").write_text(
json.dumps(fake.model_dump(), ensure_ascii=False), encoding="utf-8"
)
mgr = ScoreJobManager(
output_dir=tmp_path / "runs",
index_dir=idx_dir,
max_workers=1,
)
loaded = mgr.get("testjob001")
assert loaded is not None
assert loaded.status == "completed"
assert loaded.run_id == "some-run-id"

View File

@@ -0,0 +1,299 @@
"""Tests for session-grouped async scoring API and SessionScoreJobManager."""
from __future__ import annotations
import json
import threading
import time
from pathlib import Path
from unittest.mock import MagicMock, patch
import pandas as pd
import pytest
# ---------------------------------------------------------------------------
# Fixtures
# ---------------------------------------------------------------------------
@pytest.fixture()
def tmp_manager(tmp_path):
"""Isolated SessionScoreJobManager backed by tmp dirs (no real LLM calls)."""
from webapp.services.session_score_manager import SessionScoreJobManager
return SessionScoreJobManager(
output_dir=tmp_path / "score-session",
index_dir=tmp_path / "score-session-jobs",
max_workers=2,
)
@pytest.fixture()
def client(tmp_path, monkeypatch):
"""TestClient with fresh SessionScoreJobManager backed by tmp dirs."""
import webapp.services.session_score_manager as mgr_mod
from webapp.services.session_score_manager import SessionScoreJobManager
fresh_mgr = SessionScoreJobManager(
output_dir=tmp_path / "score-session",
index_dir=tmp_path / "score-session-jobs",
max_workers=2,
)
monkeypatch.setattr(mgr_mod, "session_score_manager", fresh_mgr)
import webapp.api.session_score_jobs as api_mod
monkeypatch.setattr(api_mod, "session_score_manager", fresh_mgr)
from webapp.server import create_app
return pytest.importorskip("fastapi.testclient").TestClient(create_app())
# ---------------------------------------------------------------------------
# Unit tests for SessionScoreJobManager
# ---------------------------------------------------------------------------
class TestSessionRunId:
def test_same_session_always_same_run_id(self, tmp_manager):
assert tmp_manager.session_run_id("abc") == tmp_manager.session_run_id("abc")
def test_different_sessions_different_run_ids(self, tmp_manager):
assert tmp_manager.session_run_id("session-A") != tmp_manager.session_run_id("session-B")
def test_run_id_prefixed_with_session(self, tmp_manager):
assert tmp_manager.session_run_id("test123").startswith("session-")
def test_special_chars_sanitized(self, tmp_manager):
run_id = tmp_manager.session_run_id("user@dify:flow/001")
assert "/" not in run_id
assert "@" not in run_id
assert ":" not in run_id
class TestSubmit:
def test_submit_returns_job_status_and_run_id(self, tmp_manager):
with patch.object(tmp_manager._executor, "submit"):
status, run_id = tmp_manager.submit("session-1", _mock_request())
assert status.job_id
assert status.status == "queued"
assert run_id == tmp_manager.session_run_id("session-1")
def test_submit_adds_job_to_session(self, tmp_manager):
with patch.object(tmp_manager._executor, "submit"):
status, _ = tmp_manager.submit("session-1", _mock_request())
session = tmp_manager.get_session("session-1")
assert session is not None
assert any(j.job_id == status.job_id for j in session.jobs)
def test_multiple_submits_same_session_accumulate(self, tmp_manager):
with patch.object(tmp_manager._executor, "submit"):
tmp_manager.submit("session-X", _mock_request())
tmp_manager.submit("session-X", _mock_request())
tmp_manager.submit("session-X", _mock_request())
session = tmp_manager.get_session("session-X")
assert session.call_count == 3
def test_get_unknown_job_returns_none(self, tmp_manager):
assert tmp_manager.get_job("does-not-exist") is None
def test_get_unknown_session_returns_none(self, tmp_manager):
assert tmp_manager.get_session("no-such-session") is None
class TestSessionIndexPersistence:
def test_session_index_survives_restart(self, tmp_path):
"""Jobs and session mappings loaded from disk on new manager instance."""
from webapp.services.session_score_manager import SessionScoreJobManager
mgr1 = SessionScoreJobManager(
output_dir=tmp_path / "score-session",
index_dir=tmp_path / "score-session-jobs",
)
with patch.object(mgr1._executor, "submit"):
mgr1.submit("persist-session", _mock_request())
mgr1.submit("persist-session", _mock_request())
# New manager instance loads from disk
mgr2 = SessionScoreJobManager(
output_dir=tmp_path / "score-session",
index_dir=tmp_path / "score-session-jobs",
)
session = mgr2.get_session("persist-session")
assert session is not None
assert session.call_count == 2
def test_job_index_file_created_on_submit(self, tmp_path):
from webapp.services.session_score_manager import SessionScoreJobManager
mgr = SessionScoreJobManager(
output_dir=tmp_path / "score-session",
index_dir=tmp_path / "score-session-jobs",
)
with patch.object(mgr._executor, "submit"):
status, _ = mgr.submit("file-test", _mock_request())
index_file = tmp_path / "score-session-jobs" / f"{status.job_id}.json"
assert index_file.is_file()
data = json.loads(index_file.read_text())
assert data["job_id"] == status.job_id
class TestAppendBehaviour:
"""Test the CSV append / read-all logic in _append_and_regenerate via _read_score_rows."""
def test_read_score_rows_returns_empty_for_missing_csv(self, tmp_manager, tmp_path):
rows = tmp_manager._read_score_rows(tmp_path / "nonexistent")
assert rows == []
def test_read_score_rows_reads_existing_csv(self, tmp_manager, tmp_path):
run_dir = tmp_path / "run1"
run_dir.mkdir()
df = pd.DataFrame([{"sample_id": "s1", "answer_relevancy": 0.9}])
df.to_csv(run_dir / "scores.csv", index=False)
rows = tmp_manager._read_score_rows(run_dir)
assert len(rows) == 1
assert rows[0]["sample_id"] == "s1"
def test_metric_means_computed_from_csv(self, tmp_manager, tmp_path):
run_dir = tmp_path / "run2"
run_dir.mkdir()
df = pd.DataFrame([
{"sample_id": "s1", "answer_relevancy": 0.8},
{"sample_id": "s2", "answer_relevancy": 0.6},
])
df.to_csv(run_dir / "scores.csv", index=False)
means = tmp_manager._read_metric_means(run_dir)
assert means["answer_relevancy"] == pytest.approx(0.7, abs=1e-4)
# ---------------------------------------------------------------------------
# API endpoint tests
# ---------------------------------------------------------------------------
class TestSessionAsyncEndpoints:
def test_submit_returns_202_with_session_fields(self, client):
with patch("webapp.services.session_score_manager.SessionScoreJobManager._run"):
resp = client.post("/api/score/session_async", json={
"session_id": "test-session-001",
"question": "What is CT?",
"answer": "CT is computed tomography.",
"metrics": ["answer_relevancy"],
})
assert resp.status_code == 202
data = resp.json()
assert data["session_id"] == "test-session-001"
assert "job_id" in data
assert "run_id" in data
assert data["status"] == "queued"
assert data["call_count"] >= 1
def test_run_id_deterministic_for_session(self, client):
with patch("webapp.services.session_score_manager.SessionScoreJobManager._run"):
r1 = client.post("/api/score/session_async", json={
"session_id": "det-session",
"question": "Q1",
"answer": "A1",
"metrics": ["answer_relevancy"],
})
r2 = client.post("/api/score/session_async", json={
"session_id": "det-session",
"question": "Q2",
"answer": "A2",
"metrics": ["answer_relevancy"],
})
assert r1.json()["run_id"] == r2.json()["run_id"]
def test_different_sessions_different_run_ids(self, client):
with patch("webapp.services.session_score_manager.SessionScoreJobManager._run"):
r1 = client.post("/api/score/session_async", json={
"session_id": "session-A",
"question": "Q",
"answer": "A",
"metrics": ["answer_relevancy"],
})
r2 = client.post("/api/score/session_async", json={
"session_id": "session-B",
"question": "Q",
"answer": "A",
"metrics": ["answer_relevancy"],
})
assert r1.json()["run_id"] != r2.json()["run_id"]
def test_call_count_increments_per_session(self, client):
with patch("webapp.services.session_score_manager.SessionScoreJobManager._run"):
for _ in range(3):
client.post("/api/score/session_async", json={
"session_id": "count-session",
"question": "Q",
"answer": "A",
"metrics": ["answer_relevancy"],
})
time.sleep(0.05)
resp = client.get("/api/score/sessions/count-session")
assert resp.status_code == 200
assert resp.json()["call_count"] == 3
def test_get_session_returns_jobs_list(self, client):
with patch("webapp.services.session_score_manager.SessionScoreJobManager._run"):
client.post("/api/score/session_async", json={
"session_id": "list-session",
"question": "Q",
"answer": "A",
"metrics": ["answer_relevancy"],
})
time.sleep(0.05)
resp = client.get("/api/score/sessions/list-session")
assert resp.status_code == 200
data = resp.json()
assert len(data["jobs"]) == 1
def test_get_unknown_session_returns_404(self, client):
resp = client.get("/api/score/sessions/no-such-session-xyz")
assert resp.status_code == 404
def test_get_session_job_by_id(self, client):
with patch("webapp.services.session_score_manager.SessionScoreJobManager._run"):
resp = client.post("/api/score/session_async", json={
"session_id": "job-lookup-session",
"question": "Q",
"answer": "A",
"metrics": ["answer_relevancy"],
})
job_id = resp.json()["job_id"]
time.sleep(0.05)
get_resp = client.get(f"/api/score/session/jobs/{job_id}")
assert get_resp.status_code == 200
assert get_resp.json()["job_id"] == job_id
def test_get_unknown_job_returns_404(self, client):
resp = client.get("/api/score/session/jobs/nonexistent-job-id")
assert resp.status_code == 404
def test_missing_session_id_returns_422(self, client):
resp = client.post("/api/score/session_async", json={
"question": "Q",
"answer": "A",
"metrics": ["answer_relevancy"],
})
assert resp.status_code == 422
def test_list_sessions_endpoint(self, client):
with patch("webapp.services.session_score_manager.SessionScoreJobManager._run"):
client.post("/api/score/session_async", json={
"session_id": "list-all-session",
"question": "Q",
"answer": "A",
"metrics": ["answer_relevancy"],
})
resp = client.get("/api/score/sessions")
assert resp.status_code == 200
assert "sessions" in resp.json()
# ---------------------------------------------------------------------------
# Helpers
# ---------------------------------------------------------------------------
def _mock_request():
"""Build a minimal ScoreRequest for testing."""
from webapp.models import ScoreRequest
return ScoreRequest(
question="What is dual-source CT?",
answer="It uses two X-ray sources.",
metrics=["answer_relevancy"],
)

View File

@@ -148,6 +148,13 @@ def update_profile(profile_id: str, request: CreateProfileRequest) -> LLMProfile
if updated is None: if updated is None:
logger.warning("[update_profile] not found id=%s", profile_id) logger.warning("[update_profile] not found id=%s", profile_id)
raise HTTPException(status_code=404, detail=f"Profile not found: {profile_id}") raise HTTPException(status_code=404, detail=f"Profile not found: {profile_id}")
# Invalidate scorer cache so next request picks up the new profile settings.
try:
from webapp.services.inline_scorer import inline_scorer
inline_scorer.invalidate_cache()
logger.info("[update_profile] scorer cache invalidated id=%s", profile_id)
except Exception: # noqa: BLE001
pass
logger.info("[update_profile] updated id=%s", profile_id) logger.info("[update_profile] updated id=%s", profile_id)
return updated return updated
@@ -160,6 +167,12 @@ def delete_profile(profile_id: str) -> dict:
if not deleted: if not deleted:
logger.warning("[delete_profile] not found id=%s", profile_id) logger.warning("[delete_profile] not found id=%s", profile_id)
raise HTTPException(status_code=404, detail=f"Profile not found: {profile_id}") raise HTTPException(status_code=404, detail=f"Profile not found: {profile_id}")
# Invalidate scorer cache in case the deleted profile was in use.
try:
from webapp.services.inline_scorer import inline_scorer
inline_scorer.invalidate_cache()
except Exception: # noqa: BLE001
pass
logger.info("[delete_profile] deleted id=%s", profile_id) logger.info("[delete_profile] deleted id=%s", profile_id)
return {"deleted": True} return {"deleted": True}

View File

@@ -73,7 +73,8 @@ def score_sample(
用于日志记录、质量监控或触发 Agent 自我改进流程。 用于日志记录、质量监控或触发 Agent 自我改进流程。
**contexts 格式**:多个检索片段用 `context_separator`(默认 `" |||| "`)拼接为一个字符串, **contexts 格式**:多个检索片段用 `context_separator`(默认 `" |||| "`)拼接为一个字符串,
服务端自动拆分后传入 RAGAS 管道。 服务端自动拆分后传入 RAGAS 管道。**contexts 为可选字段**,缺失时自动跳过依赖检索内容的指标
`faithfulness`、`context_recall`、`context_precision`、`noise_sensitivity`)。
**ground_truth 可选** **ground_truth 可选**
- 提供时:所有指定指标均参与计算。 - 提供时:所有指定指标均参与计算。
@@ -99,12 +100,13 @@ def score_sample(
""" """
client = f"{raw_request.client.host}:{raw_request.client.port}" if raw_request.client else "unknown" client = f"{raw_request.client.host}:{raw_request.client.port}" if raw_request.client else "unknown"
logger.info( logger.info(
"[score] incoming client=%s method=%s content_type=%s metrics=%s has_gt=%s", "[score] incoming client=%s method=%s content_type=%s metrics=%s has_gt=%s has_ctx=%s",
client, client,
raw_request.method, raw_request.method,
raw_request.headers.get("content-type", ""), raw_request.headers.get("content-type", ""),
request.metrics, request.metrics,
request.ground_truth is not None, request.ground_truth is not None,
bool(request.contexts),
) )
settings = _get_settings() settings = _get_settings()
@@ -154,10 +156,11 @@ def score_sample(
all_scores: dict[str, float | None] = {metric_name: None for metric_name in request.metrics} all_scores: dict[str, float | None] = {metric_name: None for metric_name in request.metrics}
all_scores.update(raw_scores) all_scores.update(raw_scores)
weighted = compute_weighted_score( # 综合加权得分计算(已暂时禁用)
{key: value for key, value in raw_scores.items() if value is not None}, # weighted = compute_weighted_score(
{}, # {key: value for key, value in raw_scores.items() if value is not None},
) # {},
# )
logger.info( logger.info(
"[score] done latency=%dms skipped=%s scores=%s", "[score] done latency=%dms skipped=%s scores=%s",
@@ -167,7 +170,7 @@ def score_sample(
) )
return ScoreResponse( return ScoreResponse(
scores=all_scores, scores=all_scores,
weighted_score=round(weighted, 4) if weighted is not None else None, weighted_score=None, # 综合加权得分已暂时禁用
latency_ms=latency_ms, latency_ms=latency_ms,
skipped_metrics=skipped, skipped_metrics=skipped,
) )

89
webapp/api/score_jobs.py Normal file
View File

@@ -0,0 +1,89 @@
"""Routes for async RAGAS scoring jobs (Dify fire-and-forget integration).
Dify calls POST /api/score/async → gets job_id immediately (202).
Scoring runs in background, result written as a standard run artifact.
View full report at GET /api/runs/{run_id} or in the 「运行列表」 page.
"""
from __future__ import annotations
import logging
from fastapi import APIRouter, HTTPException
from webapp.models import AsyncScoreJobResponse, AsyncScoreJobStatus, ScoreRequest
from webapp.services.score_job_manager import score_job_manager
router = APIRouter(prefix="/api/score", tags=["score"])
logger = logging.getLogger("webapp.api.score_jobs")
@router.post(
"/async",
status_code=202,
response_model=AsyncScoreJobResponse,
summary="提交异步评分任务Dify 推荐方式)",
responses={
202: {
"description": (
"任务已排队,立即返回 job_id202 Accepted\n\n"
"评分在后台执行,完成后自动生成完整报告(含优化建议)。\n"
"通过 `GET /api/score/jobs/{job_id}` 查询状态,"
"完成后在「运行列表」页查看完整报告。"
),
"content": {
"application/json": {
"example": {"job_id": "abc123def456", "status": "queued", "run_id": None}
}
},
},
},
)
def submit_async_score(request: ScoreRequest) -> AsyncScoreJobResponse:
"""提交异步 RAGAS 评分任务,立即返回 job_id。
**适合 Dify 工作流**HTTP 节点无需等待评分完成(无超时风险),
工作流立即继续,评分结果在 RAGAS 平台「运行列表」中查看。
评分完成后自动生成:
- 各指标得分(`scores.csv`
- 摘要报告(`summary.md`
- LLM 优化建议(`optimization_advice.md`
"""
logger.info(
"[score_async] submit metrics=%s has_ctx=%s has_gt=%s",
request.metrics, bool(request.contexts), bool(request.ground_truth),
)
status = score_job_manager.submit(request)
logger.info("[score_async] queued job_id=%s", status.job_id)
return AsyncScoreJobResponse(job_id=status.job_id, status=status.status)
@router.get(
"/jobs",
response_model=dict,
summary="列出所有异步评分记录",
)
def list_score_jobs() -> dict:
"""返回所有异步评分记录,按创建时间倒序排列。"""
jobs = score_job_manager.list_jobs()
logger.info("[score_jobs] list count=%d", len(jobs))
return {"jobs": [j.model_dump() for j in jobs]}
@router.get(
"/jobs/{job_id}",
response_model=AsyncScoreJobStatus,
summary="查询单个异步评分任务状态",
responses={404: {"description": "指定 job_id 的评分任务不存在。"}},
)
def get_score_job(job_id: str) -> AsyncScoreJobStatus:
"""查询单个异步评分任务的状态和结果。
`status` 为 `completed` 时,`run_id` 字段包含对应的运行 ID
可通过 `GET /api/runs/{run_id}` 获取完整评分报告。
"""
status = score_job_manager.get(job_id)
if status is None:
raise HTTPException(status_code=404, detail=f"Score job not found: {job_id}")
return status

View File

@@ -0,0 +1,206 @@
"""Routes for session-grouped async RAGAS scoring (Dify multi-call integration).
Use case: Dify evaluates multiple Q&A pairs in a session. Each pair gets its own
`POST /api/score/session_async` call with a shared `session_id`. All results are
accumulated into one report, visible in 「运行列表」→「报告详情」.
Key behaviour:
- Deterministic run_id: derived from session_id — same session always maps to the
same report directory (outputs/score-session/session-<id>/).
- Append semantics: each call adds a new sample row. Previous rows are preserved.
- Advisor regeneration: optimization_advice.md is regenerated after every call
using the full set of accumulated rows.
- Each call returns its own `job_id` for individual status polling, plus the
shared `run_id` and `session_id`.
Endpoints:
POST /api/score/session_async Submit one call (returns job_id + run_id)
GET /api/score/sessions List all sessions
GET /api/score/sessions/{session_id} Session aggregate (call_count, metric_means, jobs)
GET /api/score/session/jobs/{job_id} Status of one individual call
"""
from __future__ import annotations
import logging
from fastapi import APIRouter, HTTPException
from webapp.models import (
AsyncScoreJobStatus,
ScoreRequest,
SessionScoreJobResponse,
SessionScoreRequest,
SessionStatus,
)
from webapp.services.session_score_manager import session_score_manager
router = APIRouter(prefix="/api/score", tags=["score"])
logger = logging.getLogger("webapp.api.session_score_jobs")
@router.post(
"/session_async",
status_code=202,
response_model=SessionScoreJobResponse,
summary="提交 Session 异步评分(多样本批量聚合)",
description=(
"**用途**\n"
"- 适合 Dify 循环节点、批量问答评测、同一对话多轮累计评分。\n"
"- 相同 `session_id` 的多次调用不会生成多个独立报告,而是持续追加到同一个 session 报告。\n\n"
"**请求字段说明**\n"
"- `session_id`:会话唯一标识,同一会话必须保持一致。\n"
"- `question` / `answer`:本次待评分的问答对。\n"
"- `contexts`:检索片段拼接字符串,按 `context_separator` 拆分。\n"
"- `ground_truth`:标准答案,可选;缺失时会自动跳过依赖它的指标。\n"
"- `metrics`:本次需要计算的指标列表。\n"
"- `judge_model` / `embedding_model`:可选;为空时回退到系统默认配置。\n\n"
"**处理行为**\n"
"1. 服务端立即返回 `202 Accepted`,并生成本次调用的 `job_id`。\n"
"2. 系统根据 `session_id` 计算固定 `run_id`,格式为 `session-<sanitized-session_id>`。\n"
"3. 本次评分完成后,会向该 session 的 `scores.csv` 追加一行样本数据。\n"
"4. 系统会基于当前 session 的全量样本重写 `summary.md`,并重新生成 `optimization_advice.md`。\n"
"5. 报告可在「运行列表」中按 `run_id` 查看;同一 session 的后续调用会持续增量更新该报告。\n\n"
"**后续查询接口**\n"
"- `GET /api/score/session/jobs/{job_id}`:查询本次调用状态与得分。\n"
"- `GET /api/score/sessions/{session_id}`:查询整个 session 的累计调用次数、指标均值、所有作业记录。\n"
"- `GET /api/runs/{run_id}`:查看完整评估报告内容。\n\n"
"**典型请求示例**\n"
"```json\n"
"{\n"
" \"session_id\": \"dify-session-001\",\n"
" \"question\": \"单源CT与双源CT在球管配置上有何本质区别\",\n"
" \"answer\": \"单源CT只有一套球管-探测器系统双源CT有两套独立的球管-探测器系统。\",\n"
" \"contexts\": \"双源CT采用两套管-探测器系统 |||| 单源CT只有一个球管\",\n"
" \"context_separator\": \" |||| \",\n"
" \"metrics\": [\"answer_relevancy\", \"faithfulness\"],\n"
" \"judge_model\": \"gpt-5.5\",\n"
" \"embedding_model\": \"text-embedding-3-small\"\n"
"}\n"
"```"
),
responses={
202: {
"description": (
"调用已排队,立即返回 job_id + run_id202 Accepted\n\n"
"相同 `session_id` 的多次调用合并为同一报告,每次调用新增一个样本行。\n"
"评分完成后,`summary.md` 和 `optimization_advice.md` 增量更新。\n"
"通过 `GET /api/score/sessions/{session_id}` 查看 session 聚合状态,"
"通过 `GET /api/score/session/jobs/{job_id}` 查询单次调用状态,"
"在「运行列表」中查看完整报告run_id 即 `session-<session_id>` 形式)。"
),
"content": {
"application/json": {
"example": {
"job_id": "abc123def456",
"session_id": "dify-session-001",
"run_id": "session-dify-session-001",
"status": "queued",
"call_count": 1,
}
}
},
},
},
)
def submit_session_async_score(request: SessionScoreRequest) -> SessionScoreJobResponse:
"""提交 Session 异步 RAGAS 评分,立即返回 job_id。
相同 `session_id` 的多次调用合并到同一评估报告中,每次调用:
1. 新增一个样本行到 `scores.csv`
2. 重写 `summary.md`(包含所有累积样本的指标均值)
3. 重新生成 `optimization_advice.md`(基于全量样本的 LLM 优化建议)
**适合 Dify 工作流**:在循环节点中批量调用,所有轮次共用同一 `session_id`
最终在 RAGAS 平台「运行列表」中查看完整的批量评估报告。
"""
logger.info(
"[session_async] submit session_id=%s metrics=%s has_ctx=%s has_gt=%s",
request.session_id,
request.metrics,
bool(request.contexts),
bool(request.ground_truth),
)
# Strip session_id to build a plain ScoreRequest for the manager
score_request = ScoreRequest(
question=request.question,
answer=request.answer,
contexts=request.contexts,
ground_truth=request.ground_truth,
context_separator=request.context_separator,
metrics=request.metrics,
judge_model=request.judge_model,
embedding_model=request.embedding_model,
)
status, run_id = session_score_manager.submit(request.session_id, score_request)
# Compute call_count from current session state
session_status = session_score_manager.get_session(request.session_id)
call_count = session_status.call_count if session_status else 1
logger.info(
"[session_async] queued job_id=%s session_id=%s run_id=%s call=%d",
status.job_id, request.session_id, run_id, call_count,
)
return SessionScoreJobResponse(
job_id=status.job_id,
session_id=request.session_id,
run_id=run_id,
status=status.status,
call_count=call_count,
)
@router.get(
"/sessions",
response_model=dict,
summary="列出所有 Session 聚合状态",
)
def list_sessions() -> dict:
"""返回所有 session 的聚合状态,按最近完成时间倒序排列。"""
sessions = session_score_manager.list_sessions()
logger.info("[session_score] list_sessions count=%d", len(sessions))
return {"sessions": [s.model_dump() for s in sessions]}
@router.get(
"/sessions/{session_id}",
response_model=SessionStatus,
summary="查询 Session 聚合状态(指标均值 + 所有调用记录)",
responses={404: {"description": "指定 session_id 不存在。"}},
)
def get_session(session_id: str) -> SessionStatus:
"""查询 session 的聚合评分状态。
返回内容:
- `run_id`:在「运行列表」中查看完整报告
- `call_count`:本 session 累计调用次数
- `metric_means`:所有已累积样本的各指标均值(实时读取 scores.csv
- `jobs`:本 session 所有调用记录列表
"""
status = session_score_manager.get_session(session_id)
if status is None:
raise HTTPException(status_code=404, detail=f"Session not found: {session_id}")
return status
@router.get(
"/session/jobs/{job_id}",
response_model=AsyncScoreJobStatus,
summary="查询 Session 单次调用状态",
responses={404: {"description": "指定 job_id 不存在。"}},
)
def get_session_job(job_id: str) -> AsyncScoreJobStatus:
"""查询 session 评分中某次调用的状态和评分结果。
`status` 为 `completed` 时,`run_id` 即所属 session 的报告目录,
`scores` 包含本次调用的各指标得分。
"""
status = session_score_manager.get_job(job_id)
if status is None:
raise HTTPException(
status_code=404, detail=f"Session score job not found: {job_id}"
)
return status

View File

@@ -384,6 +384,14 @@ _GT_DEPENDENT_METRICS: frozenset[str] = frozenset({
"noise_sensitivity", "noise_sensitivity",
}) })
# 需要 contexts 才能计算的指标集合
_CONTEXT_DEPENDENT_METRICS: frozenset[str] = frozenset({
"faithfulness",
"context_recall",
"context_precision",
"noise_sensitivity",
})
# 所有合法指标名称 # 所有合法指标名称
_VALID_METRICS: frozenset[str] = frozenset({ _VALID_METRICS: frozenset[str] = frozenset({
"faithfulness", "faithfulness",
@@ -428,8 +436,9 @@ class ScoreRequest(BaseModel):
question: str = Field(description="问题文本。") question: str = Field(description="问题文本。")
answer: str = Field(description="待评分的回答。") answer: str = Field(description="待评分的回答。")
contexts: str = Field( contexts: str | None = Field(
description="检索上下文字符串,多段之间用 context_separator 拼接。" default=None,
description="检索上下文字符串,多段之间用 context_separator 拼接。缺失时自动跳过依赖检索内容的指标faithfulness、context_recall、context_precision、noise_sensitivity",
) )
ground_truth: str | None = Field( ground_truth: str | None = Field(
default=None, default=None,
@@ -467,15 +476,23 @@ class ScoreRequest(BaseModel):
return value return value
def contexts_as_list(self) -> list[str]: def contexts_as_list(self) -> list[str]:
"""Split the contexts string into a list of non-empty fragments.""" """Split the contexts string into a list of non-empty fragments.
Returns an empty list when contexts is None or blank.
"""
if not self.contexts:
return []
separator = self.context_separator or " |||| " separator = self.context_separator or " |||| "
return [part.strip() for part in self.contexts.split(separator) if part.strip()] return [part.strip() for part in self.contexts.split(separator) if part.strip()]
def effective_metrics(self) -> list[str]: def effective_metrics(self) -> list[str]:
"""Return metrics filtered to exclude GT-dependent ones when ground_truth is absent.""" """Return metrics filtered to exclude GT-dependent or context-dependent ones when inputs are absent."""
if self.ground_truth is not None: result = list(self.metrics)
return list(self.metrics) if self.ground_truth is None:
return [metric_name for metric_name in self.metrics if metric_name not in _GT_DEPENDENT_METRICS] result = [m for m in result if m not in _GT_DEPENDENT_METRICS]
if not self.contexts:
result = [m for m in result if m not in _CONTEXT_DEPENDENT_METRICS]
return result
class ScoreResponse(BaseModel): class ScoreResponse(BaseModel):
@@ -497,3 +514,104 @@ class ScoreResponse(BaseModel):
default=None, default=None,
description="打分异常时的错误信息HTTP 200 仍返回scores 为空)。", description="打分异常时的错误信息HTTP 200 仍返回scores 为空)。",
) )
# ---------------------------------------------------------------------------
# 异步评分记录模型
# ---------------------------------------------------------------------------
class AsyncScoreJobResponse(BaseModel):
"""Immediate 202 response after submitting an async score job."""
job_id: str = Field(description="任务唯一标识符,用于后续查询结果。")
status: str = Field(default="queued", description="初始状态queued。")
run_id: str | None = Field(
default=None,
description="评分完成后写入的 Run ID可在「运行列表」中查看完整报告。",
)
# ---------------------------------------------------------------------------
# Session async 评分模型
# ---------------------------------------------------------------------------
class SessionScoreRequest(ScoreRequest):
"""Request body for session-grouped async scoring.
All calls sharing the same session_id are accumulated into one report.
Each call adds a new sample row to the session's scores.csv.
"""
model_config = ConfigDict(
json_schema_extra={
"examples": [
{
"summary": "Dify 会话批量评分",
"value": {
"session_id": "dify-session-001",
"question": "单源CT与双源CT在球管配置上有何本质区别",
"answer": "单源CT只有一套球管-探测器系统双源CT有两套独立的球管-探测器系统。",
"contexts": "双源CT采用两套管-探测器系统 |||| 单源CT只有一个球管",
"context_separator": " |||| ",
"metrics": ["answer_relevancy", "faithfulness"],
"judge_model": "gpt-5.5",
"embedding_model": "text-embedding-3-small",
},
}
]
}
)
session_id: str = Field(
description=(
"会话唯一标识符。相同 session_id 的多次调用合并为同一报告,"
"每次调用新增一个样本行,指标均值和优化建议在每次调用后增量更新。"
),
)
class SessionScoreJobResponse(BaseModel):
"""Immediate 202 response after submitting a session scoring call."""
job_id: str = Field(description="本次调用的任务唯一标识符。")
session_id: str = Field(description="会话标识符。")
run_id: str = Field(description="本 session 对应的报告 Run ID可在「运行列表」中查看。")
status: str = Field(default="queued", description="初始状态queued。")
call_count: int = Field(default=1, description="本 session 当前累计调用次数(包含本次)。")
class SessionStatus(BaseModel):
"""Aggregate status and metrics for a scoring session."""
session_id: str = Field(description="会话标识符。")
run_id: str = Field(description="对应报告目录的 Run ID。")
call_count: int = Field(description="本 session 累计调用次数。")
metric_means: dict[str, float | None] = Field(
default_factory=dict, description="所有已累积样本的各指标均值。"
)
latest_finished_at: str = Field(default="", description="最近一次评分完成时间ISO 8601 UTC")
jobs: list[AsyncScoreJobStatus] = Field(
default_factory=list, description="本 session 所有调用记录,按创建时间排序。"
)
class AsyncScoreJobStatus(BaseModel):
"""State of one async score job (queued → running → completed/failed)."""
job_id: str = Field(description="任务唯一标识符。")
status: str = Field(description="queued | running | completed | failed")
created_at: str = Field(default="", description="创建时间ISO 8601 UTC")
finished_at: str = Field(default="", description="完成时间ISO 8601 UTC")
run_id: str | None = Field(
default=None,
description="完成后对应的 Run ID可通过 GET /api/runs/{run_id} 查看完整报告。",
)
request_summary: dict = Field(
default_factory=dict,
description="请求参数快照question 前80字、metrics、judge_model 等)。",
)
scores: dict[str, float | None] = Field(default_factory=dict, description="各指标得分。")
weighted_score: float | None = Field(default=None, description="加权综合得分。")
latency_ms: int = Field(default=0, description="评分耗时毫秒。")
skipped_metrics: list[str] = Field(default_factory=list)
error: str | None = Field(default=None)

View File

@@ -17,7 +17,7 @@ from fastapi.exceptions import RequestValidationError
from fastapi.responses import FileResponse, JSONResponse from fastapi.responses import FileResponse, JSONResponse
from fastapi.staticfiles import StaticFiles from fastapi.staticfiles import StaticFiles
from webapp.api import evaluations, llm_profiles, pipeline, runs, scenarios, score from webapp.api import evaluations, llm_profiles, pipeline, runs, scenarios, score, score_jobs, session_score_jobs
STATIC_DIR = Path(__file__).resolve().parent / "static" STATIC_DIR = Path(__file__).resolve().parent / "static"
logger = logging.getLogger("webapp.server") logger = logging.getLogger("webapp.server")
@@ -69,10 +69,20 @@ OPENAPI_TAGS = [
{ {
"name": "score", "name": "score",
"description": ( "description": (
"**实时评分 APIDify 外部 Tool**\n\n" "**实时评分 API同步)** — `POST /api/score`\n\n"
"接受单条问答记录 `(question, answer, contexts, ground_truth)`\n" "**异步评分 APIDify 推荐)** — `POST /api/score/async`\n\n"
"同步运行 RAGAS 指标打分,返回各指标得分和加权综合得分。\n\n" "异步方式立即返回 job_id202评分在后台执行完成后自动生成完整报告含优化建议"
"适用场景Dify Agent 在回答后即时调用,用于质量监控或自我改进\n\n" "在「运行列表」页查看\n\n"
"**Session 批量评分 API** — `POST /api/score/session_async`\n\n"
"适合 Dify 循环节点批量评估:同一 `session_id` 的多次调用合并为一个报告,"
"每次调用新增一个样本行,指标均值和优化建议增量更新。\n\n"
"**Session 模式调用流程**\n"
"1. `POST /api/score/session_async` 提交一条问答评分请求。\n"
"2. 用 `GET /api/score/session/jobs/{job_id}` 轮询单次调用状态。\n"
"3. 用 `GET /api/score/sessions/{session_id}` 查看 session 聚合状态。\n"
"4. 用 `GET /api/runs/{run_id}` 或在「运行列表」中查看完整报告。\n\n"
"通过 `GET /api/score/jobs` 列出所有异步评分记录,"
"`GET /api/score/jobs/{job_id}` 查询单个任务状态。\n\n"
"**鉴权**:若 `.env` 中配置了 `SCORE_API_TOKEN`,需携带 " "**鉴权**:若 `.env` 中配置了 `SCORE_API_TOKEN`,需携带 "
"`Authorization: Bearer <token>` 请求头。" "`Authorization: Bearer <token>` 请求头。"
), ),
@@ -87,7 +97,7 @@ OPENAPI_TAGS = [
def create_app() -> FastAPI: def create_app() -> FastAPI:
"""Build and configure the FastAPI application instance.""" """Build and configure the FastAPI application instance."""
app = FastAPI( app = FastAPI(
title="RAGAS 评估系统", title="Siemens RAGAS 评估平台",
description=( description=(
"西门子医疗影像 RAG 评估平台 API 文档。\n\n" "西门子医疗影像 RAG 评估平台 API 文档。\n\n"
"提供以下能力:\n" "提供以下能力:\n"
@@ -108,6 +118,8 @@ def create_app() -> FastAPI:
app.include_router(llm_profiles.router) app.include_router(llm_profiles.router)
app.include_router(pipeline.router) app.include_router(pipeline.router)
app.include_router(score.router) app.include_router(score.router)
app.include_router(score_jobs.router)
app.include_router(session_score_jobs.router)
@app.middleware("http") @app.middleware("http")
async def access_log_middleware(request: Request, call_next): async def access_log_middleware(request: Request, call_next):

View File

@@ -54,13 +54,22 @@ class InlineScorer:
self._model_cache: dict[tuple[str, str], tuple[Any, Any]] = {} self._model_cache: dict[tuple[str, str], tuple[Any, Any]] = {}
self._lock = threading.Lock() self._lock = threading.Lock()
def invalidate_cache(self) -> None:
"""Clear the model cache so the next call rebuilds clients from current profiles."""
with self._lock:
self._model_cache.clear()
def _get_models( def _get_models(
self, self,
judge_model: str, judge_model: str,
embedding_model: str, embedding_model: str,
settings: EvaluationSettings, settings: EvaluationSettings,
) -> tuple[Any, Any]: ) -> tuple[Any, Any]:
"""Return cached LLM/embedding clients, building them on first use.""" """Return cached LLM/embedding clients, building them on first use.
Cache is keyed by (judge_model, embedding_model). Call invalidate_cache()
after updating an LLM Profile to force a fresh client on the next request.
"""
cache_key = (judge_model, embedding_model) cache_key = (judge_model, embedding_model)
with self._lock: with self._lock:
if cache_key not in self._model_cache: if cache_key not in self._model_cache:

View File

@@ -0,0 +1,257 @@
"""Background task manager for end-to-end pipeline jobs (build + eval).
Each job runs three sequential phases inside a worker thread:
1. parsing_documents — AliyunDocmind parses every PDF
2. generating_questions — LLM generates a draft question bank
3. evaluating — RAGAS online evaluation scores each question
The DatasetBuildJob and Scenario objects are constructed entirely from the
API request parameters, so no YAML config files are needed.
"""
from __future__ import annotations
import io
import threading
import uuid
from concurrent.futures import ThreadPoolExecutor
from contextlib import redirect_stderr, redirect_stdout
from datetime import datetime, timezone
from pathlib import Path
from webapp.models import (
PipelineJobRequest,
PipelineJobStatus,
PipelineResult,
)
_REPO_ROOT = Path(__file__).resolve().parents[2]
_PIPELINE_OUTPUT_ROOT = _REPO_ROOT / "outputs" / "pipeline"
def _now_iso() -> str:
return datetime.now(timezone.utc).isoformat()
class _LineCapture(io.TextIOBase):
"""Write-only stream that appends complete lines to a task's log buffer."""
def __init__(self, sink: "PipelineTask") -> None:
self._sink = sink
self._buffer = ""
def write(self, text: str) -> int:
self._buffer += text
while "\n" in self._buffer:
line, self._buffer = self._buffer.split("\n", 1)
self._sink.append_log(line)
return len(text)
def flush(self) -> None:
if self._buffer:
self._sink.append_log(self._buffer)
self._buffer = ""
class PipelineTask:
"""Mutable state for one pipeline job (build + eval)."""
def __init__(self, job_id: str, job_name: str) -> None:
self.job_id = job_id
self.job_name = job_name
self.status = "queued"
self.phase = "idle"
self.logs: list[str] = []
self.result: PipelineResult | None = None
self.error: str | None = None
self.created_at = _now_iso()
self.finished_at = ""
self._lock = threading.Lock()
def append_log(self, line: str) -> None:
with self._lock:
self.logs.append(line)
def snapshot(self) -> PipelineJobStatus:
with self._lock:
return PipelineJobStatus(
job_id=self.job_id,
job_name=self.job_name,
status=self.status,
phase=self.phase,
logs=list(self.logs),
result=self.result,
error=self.error,
created_at=self.created_at,
finished_at=self.finished_at,
)
class PipelineTaskManager:
"""Owns the thread pool and registry of pipeline jobs."""
def __init__(self, max_workers: int = 2) -> None:
self._executor = ThreadPoolExecutor(max_workers=max_workers)
self._tasks: dict[str, PipelineTask] = {}
self._lock = threading.Lock()
def submit(self, request: PipelineJobRequest) -> PipelineTask:
"""Register and schedule a new pipeline job; return its task object."""
job_id = uuid.uuid4().hex[:12]
job_name = request.job_name.strip() or f"pipeline-{job_id[:6]}"
task = PipelineTask(job_id=job_id, job_name=job_name)
with self._lock:
self._tasks[job_id] = task
self._executor.submit(self._run, task, request)
return task
def get(self, job_id: str) -> PipelineJobStatus | None:
with self._lock:
task = self._tasks.get(job_id)
return task.snapshot() if task is not None else None
def list_jobs(self) -> list[PipelineJobStatus]:
with self._lock:
tasks = list(self._tasks.values())
snapshots = [t.snapshot() for t in tasks]
snapshots.sort(key=lambda s: s.created_at, reverse=True)
return snapshots
# ------------------------------------------------------------------ #
# Worker
# ------------------------------------------------------------------ #
def _run(self, task: PipelineTask, request: PipelineJobRequest) -> None:
"""Execute the full pipeline end to end inside a worker thread."""
task.status = "running"
task.append_log(f"[{_now_iso()}] 开始 pipeline 任务: {task.job_name}")
capture = _LineCapture(task)
try:
with redirect_stdout(capture), redirect_stderr(capture):
result = self._execute(task, request)
capture.flush()
task.result = result
task.phase = "done"
task.status = "completed"
task.append_log(f"[{_now_iso()}] pipeline 任务完成: {task.job_name}")
except Exception as exc: # noqa: BLE001
capture.flush()
task.error = f"{type(exc).__name__}: {exc}"
task.append_log(f"[{_now_iso()}] pipeline 任务失败: {task.error}")
task.status = "failed"
finally:
task.finished_at = _now_iso()
def _execute(self, task: PipelineTask, req: PipelineJobRequest) -> PipelineResult:
"""Run build then eval, updating task.phase as we go."""
# ── resolve paths ──────────────────────────────────────────────
docs_path = Path(req.docs_path)
if not docs_path.is_absolute():
docs_path = (_REPO_ROOT / docs_path).resolve()
if not docs_path.is_dir():
raise ValueError(f"docs_path is not an existing directory: {docs_path}")
job_output_dir = _PIPELINE_OUTPUT_ROOT / task.job_id
build_artifact_dir = job_output_dir / "build"
dataset_csv = job_output_dir / "generated_dataset.csv"
eval_output_dir = job_output_dir / "eval"
# ── phase 1 + 2: dataset build (parse & generate) ─────────────
task.phase = "parsing_documents"
task.append_log(f" [build] 扫描文档目录: {docs_path}")
build_result = self._run_build(task, req, docs_path, build_artifact_dir, dataset_csv)
source_chunks_jsonl = build_artifact_dir / "latest" / "source_chunks.jsonl"
total_q = len(build_result.draft_samples)
parse_failures = len(build_result.parse_failures)
task.append_log(f" [build] 题库生成完毕: {total_q} 道题目, {parse_failures} 份文档解析失败")
if total_q == 0:
raise RuntimeError("题库为空(所有文档均解析或生成失败),中止评估。")
# ── phase 3: evaluation ────────────────────────────────────────
task.phase = "evaluating"
task.append_log(f" [eval] 开始 RAGAS 评估,共 {total_q} 道题目")
eval_result = self._run_eval(task, req, dataset_csv, source_chunks_jsonl, eval_output_dir)
from rag_eval.reporting.artifacts import build_artifact_paths as _build_eval_paths
eval_artifact_paths = _build_eval_paths(eval_result.scenario.output_dir, eval_result.run_id)
return PipelineResult(
build_artifact_dir=build_artifact_dir.as_posix(),
dataset_csv=dataset_csv.as_posix(),
source_chunks_jsonl=source_chunks_jsonl.as_posix(),
total_questions=total_q,
parse_failures=parse_failures,
eval_run_id=eval_result.run_id,
eval_output_dir=eval_result.scenario.output_dir.as_posix(),
scores_csv=eval_artifact_paths.scores_csv.as_posix(),
summary_md=eval_artifact_paths.summary_md.as_posix(),
)
def _run_build(self, task: PipelineTask, req: PipelineJobRequest,
docs_path: Path, artifact_dir: Path, dataset_csv: Path):
"""Construct DatasetBuildJob and run the build phase."""
from rag_eval.dataset_builder.models import DatasetBuildJob, DatasetBuildRuntime
from rag_eval.dataset_builder.runner import execute_dataset_build_job
from rag_eval.settings import EvaluationSettings
settings = EvaluationSettings()
job = DatasetBuildJob(
job_name=task.job_name,
input_path=docs_path,
input_glob="*.pdf",
parser_provider="aliyun_docmind",
failure_mode=req.failure_mode, # type: ignore[arg-type]
generation_model=req.generation_model,
output_type="online_question_bank",
review_mode="draft_with_manual_review",
max_questions_per_document=req.max_questions_per_document,
max_source_chunks_per_question=req.max_source_chunks_per_question,
dataset_path=dataset_csv,
artifact_dir=artifact_dir,
runtime=DatasetBuildRuntime(max_documents=req.max_documents),
)
return execute_dataset_build_job(job, settings=settings)
def _run_eval(self, task: PipelineTask, req: PipelineJobRequest,
dataset_csv: Path, source_chunks_jsonl: Path, eval_output_dir: Path):
"""Construct Scenario and run the evaluation phase."""
from rag_eval.execution.runner import run_scenario_from_scenario_obj
from rag_eval.settings import EvaluationSettings
from rag_eval.shared.models import (
AppAdapterConfig, DatasetConfig, RuntimeConfig, Scenario,
)
settings = EvaluationSettings()
scenario = Scenario(
scenario_name=task.job_name,
mode="online",
dataset=DatasetConfig(path=dataset_csv),
judge_model=req.judge_model,
embedding_model=req.embedding_model,
metrics=list(req.metrics),
output_dir=eval_output_dir,
runtime=RuntimeConfig(
batch_size=4,
app_concurrency=2,
metric_concurrency=2,
max_samples=req.max_samples,
),
app_adapter=AppAdapterConfig(
type="python",
callable="apps.siemens_pdf_qa.adapter:run",
static_kwargs={
"source_chunks_path": source_chunks_jsonl,
"model": req.answer_model,
},
),
optimization_advisor=req.optimization_advisor,
)
return run_scenario_from_scenario_obj(scenario, settings=settings)
# Module-level singleton shared by the FastAPI routes.
pipeline_task_manager = PipelineTaskManager()

View File

@@ -37,6 +37,9 @@ GROUPING_FIELDS = ("difficulty", "question_type", "language")
# How many lowest-scoring samples to surface for manual review. # How many lowest-scoring samples to surface for manual review.
LOWEST_SAMPLE_COUNT = 10 LOWEST_SAMPLE_COUNT = 10
# Metrics whose lower raw value means stronger performance.
LOWER_IS_BETTER_METRICS = {"noise_sensitivity"}
def _round_or_none(value: float | None) -> float | None: def _round_or_none(value: float | None) -> float | None:
"""Round a float to four places, mapping NaN/None to None for clean JSON.""" """Round a float to four places, mapping NaN/None to None for clean JSON."""
@@ -105,7 +108,7 @@ def _groupings(frame: pd.DataFrame, metrics: list[str]) -> dict[str, list[GroupS
def _sample_mean(row: pd.Series, metrics: list[str]) -> float | None: def _sample_mean(row: pd.Series, metrics: list[str]) -> float | None:
"""Average a single sample's available metric scores for ranking.""" """Average a single sample's available metric scores for ranking."""
values = [ values = [
float(row[metric]) (1.0 - float(row[metric])) if metric in LOWER_IS_BETTER_METRICS else float(row[metric])
for metric in metrics for metric in metrics
if metric in row and pd.notna(row[metric]) if metric in row and pd.notna(row[metric])
] ]
@@ -177,9 +180,11 @@ def build_report(run_dir: Path, metrics: list[str]) -> ReportData:
w_means = _weighted_metric_means(score_rows_list, metrics, doc_weights) w_means = _weighted_metric_means(score_rows_list, metrics, doc_weights)
rounded_means = {metric: _round_or_none(value) for metric, value in w_means.items()} rounded_means = {metric: _round_or_none(value) for metric, value in w_means.items()}
overall_ws = compute_overall_weighted_score_mean( # 综合加权得分计算(已暂时禁用)
score_rows_list, metric_weights, doc_weights # overall_ws = compute_overall_weighted_score_mean(
) # score_rows_list, metric_weights, doc_weights
# )
overall_ws = None
distributions = { distributions = {
metric: _distribution(frame, metric) metric: _distribution(frame, metric)

View File

@@ -0,0 +1,271 @@
"""Background task manager for async RAGAS single-sample scoring.
Each job:
1. Runs InlineScorer.score() in a thread pool.
2. Constructs a minimal EvaluationResult + Scenario in the standard format.
3. Calls write_run_artifacts() — produces metadata.json, scores.csv, summary.md.
4. Calls run_advisor() — produces optimization_advice.md.
The resulting run directory lands under outputs/score-async/<run_id>/ and is
automatically picked up by run_reader.list_run_summaries(), so it appears in
the existing 「运行列表」 and 「报告详情」 pages without any extra wiring.
"""
from __future__ import annotations
import json
import math
import threading
import time
import uuid
from concurrent.futures import ThreadPoolExecutor
from datetime import datetime, timezone
from pathlib import Path
from typing import Any
from webapp.models import AsyncScoreJobStatus, ScoreRequest
_REPO_ROOT = Path(__file__).resolve().parents[2]
_DEFAULT_JOBS_DIR = _REPO_ROOT / "outputs" / "score-async"
_DEFAULT_INDEX_DIR = _REPO_ROOT / "outputs" / "score-jobs" # lightweight job index
def _now_iso() -> str:
return datetime.now(timezone.utc).isoformat()
class ScoreJobManager:
"""Thread-pool manager for async scoring jobs.
Results are written as standard run artifacts so the report detail page
can render them with zero additional code.
"""
def __init__(
self,
output_dir: Path = _DEFAULT_JOBS_DIR,
index_dir: Path = _DEFAULT_INDEX_DIR,
max_workers: int = 4,
) -> None:
self._output_dir = Path(output_dir)
self._index_dir = Path(index_dir)
self._output_dir.mkdir(parents=True, exist_ok=True)
self._index_dir.mkdir(parents=True, exist_ok=True)
self._executor = ThreadPoolExecutor(max_workers=max_workers)
self._cache: dict[str, AsyncScoreJobStatus] = {}
self._lock = threading.Lock()
self._load_existing()
# ------------------------------------------------------------------ #
# Public API
# ------------------------------------------------------------------ #
def submit(self, request: ScoreRequest) -> AsyncScoreJobStatus:
"""Queue one scoring job and return its initial status immediately."""
job_id = uuid.uuid4().hex[:12]
status = AsyncScoreJobStatus(
job_id=job_id,
status="queued",
created_at=_now_iso(),
request_summary={
"question": (request.question or "")[:80],
"answer": (request.answer or "")[:80],
"metrics": list(request.metrics),
"judge_model": request.judge_model or "",
"embedding_model": request.embedding_model or "",
"has_contexts": bool(request.contexts),
"has_ground_truth": bool(request.ground_truth),
},
)
with self._lock:
self._cache[job_id] = status
self._persist_index(status)
self._executor.submit(self._run, job_id, request)
return status
def get(self, job_id: str) -> AsyncScoreJobStatus | None:
"""Return current status or None if unknown."""
with self._lock:
return self._cache.get(job_id)
def list_jobs(self) -> list[AsyncScoreJobStatus]:
"""Return all known jobs, newest first."""
with self._lock:
jobs = list(self._cache.values())
jobs.sort(key=lambda j: j.created_at, reverse=True)
return jobs
# ------------------------------------------------------------------ #
# Worker
# ------------------------------------------------------------------ #
def _run(self, job_id: str, request: ScoreRequest) -> None:
"""Execute scoring, write run artifacts, run advisor."""
import logging
logger = logging.getLogger("webapp.services.score_job_manager")
self._update(job_id, status="running")
# Lazy imports to keep web server bootable if ragas is not installed.
from rag_eval.advisor import run_advisor
from rag_eval.metrics.factory import build_models
from rag_eval.metrics.weights import compute_weighted_score
from rag_eval.reporting.writers import write_run_artifacts
from rag_eval.settings import EvaluationSettings
from rag_eval.shared.models import (
DatasetConfig, EvaluationResult, NormalizedSample,
RuntimeConfig, Scenario,
)
from rag_eval.shared.utils import utc_now_iso
from webapp.services.inline_scorer import inline_scorer
settings = EvaluationSettings()
judge_model = request.judge_model or settings.ragas_judge_model
embedding_model = request.embedding_model or settings.ragas_embedding_model
effective = request.effective_metrics()
requested = set(request.metrics)
skipped = sorted(requested - set(effective))
t0 = time.monotonic()
started_at = utc_now_iso()
try:
if effective:
raw_scores = inline_scorer.score(
question=request.question,
answer=request.answer,
contexts=request.contexts_as_list(),
ground_truth=request.ground_truth,
metrics=effective,
judge_model=judge_model,
embedding_model=embedding_model,
settings=settings,
)
else:
raw_scores = {}
latency_ms = int((time.monotonic() - t0) * 1000)
finished_at = utc_now_iso()
# Build full scores dict (skipped = None)
all_scores: dict[str, float | None] = {m: None for m in request.metrics}
all_scores.update(raw_scores)
# 综合加权得分计算(已暂时禁用)
# weighted_raw = compute_weighted_score(
# {k: v for k, v in raw_scores.items() if v is not None}, {}
# )
# weighted = round(weighted_raw, 4) if weighted_raw is not None else None
weighted = None
# Build a score row compatible with report_builder
score_row: dict[str, Any] = {
"sample_id": "async-score-1",
"question": request.question,
"answer": request.answer or "",
"contexts": request.contexts or "",
"ground_truth": request.ground_truth or "",
"error": "",
}
score_row.update(all_scores)
# Construct minimal EvaluationResult so write_run_artifacts works
run_id = finished_at.replace(":", "-")
output_dir = self._output_dir
# Build a minimal Scenario for snapshot + advisor
scenario = Scenario(
scenario_name=f"async-score-{job_id}",
mode="offline",
dataset=DatasetConfig(path=output_dir / run_id / "dataset.csv"),
judge_model=judge_model,
embedding_model=embedding_model,
metrics=list(request.metrics),
output_dir=output_dir,
optimization_advisor=True, # always generate advice
)
sample = NormalizedSample(
sample_id="async-score-1",
question=request.question,
answer=request.answer or "",
contexts=request.contexts_as_list(),
ground_truth=request.ground_truth or "",
)
result = EvaluationResult(
scenario=scenario,
run_id=run_id,
started_at=started_at,
finished_at=finished_at,
valid_samples=[sample],
invalid_samples=[],
score_rows=[score_row],
)
write_run_artifacts(result)
logger.info("[score_job] artifacts written job_id=%s run_id=%s", job_id, run_id)
# Run optimization advisor (builds optimization_advice.md)
try:
llm, _ = build_models(judge_model, embedding_model, settings)
run_advisor(result, scenario, llm)
logger.info("[score_job] advisor done job_id=%s", job_id)
except Exception as adv_exc: # noqa: BLE001
logger.warning("[score_job] advisor failed job_id=%s err=%s", job_id, adv_exc)
self._update(
job_id,
status="completed",
finished_at=finished_at,
run_id=run_id,
scores=all_scores,
weighted_score=weighted,
latency_ms=latency_ms,
skipped_metrics=skipped,
)
except Exception as exc: # noqa: BLE001
latency_ms = int((time.monotonic() - t0) * 1000)
logger.error("[score_job] failed job_id=%s err=%s", job_id, exc)
self._update(
job_id,
status="failed",
finished_at=_now_iso(),
latency_ms=latency_ms,
error=f"{type(exc).__name__}: {exc}",
)
# ------------------------------------------------------------------ #
# Persistence helpers
# ------------------------------------------------------------------ #
def _update(self, job_id: str, **kwargs: Any) -> None:
"""Merge kwargs into the job status and persist the index."""
with self._lock:
existing = self._cache.get(job_id)
if existing is None:
return
updated = existing.model_copy(update=kwargs)
self._cache[job_id] = updated
self._persist_index(updated)
def _persist_index(self, status: AsyncScoreJobStatus) -> None:
"""Write a lightweight index JSON for this job (survives restarts)."""
path = self._index_dir / f"{status.job_id}.json"
path.write_text(
json.dumps(status.model_dump(), ensure_ascii=False, indent=2),
encoding="utf-8",
)
def _load_existing(self) -> None:
"""Load existing job index files on startup."""
for path in sorted(self._index_dir.glob("*.json")):
try:
data = json.loads(path.read_text(encoding="utf-8"))
status = AsyncScoreJobStatus.model_validate(data)
self._cache[status.job_id] = status
except Exception: # noqa: BLE001
pass
# Module-level singleton shared by FastAPI routes.
score_job_manager = ScoreJobManager()

View File

@@ -0,0 +1,452 @@
"""Background task manager for session-grouped async RAGAS scoring.
Each session groups multiple scoring calls into one shared run report:
1. First call: creates outputs/score-session/session-<id>/ and metadata.json.
2. Every call: appends a new sample row to scores.csv, rewrites summary.md
and optimization_advice.md by re-running write_run_artifacts + run_advisor
over ALL accumulated rows.
3. The resulting run directory is picked up automatically by run_reader, so the
「运行列表」 and 「报告详情」 pages show the live, growing report.
Concurrency model:
- Scoring (LLM network I/O) runs freely in the thread pool — different sessions
score concurrently; multiple calls to the same session also start scoring in
parallel.
- File I/O (CSV append, artifact rewrite, advisor) is serialized per session via
a per-session threading.Lock, so no two calls corrupt the same session's CSV.
"""
from __future__ import annotations
import json
import re
import threading
import time
import uuid
from concurrent.futures import ThreadPoolExecutor
from datetime import datetime, timezone
from pathlib import Path
from typing import Any
import pandas as pd
from webapp.models import AsyncScoreJobStatus, ScoreRequest, SessionStatus
_REPO_ROOT = Path(__file__).resolve().parents[2]
_DEFAULT_OUTPUT_DIR = _REPO_ROOT / "outputs" / "score-session"
_DEFAULT_INDEX_DIR = _REPO_ROOT / "outputs" / "score-session-jobs"
# Columns that are sample metadata rather than metric scores (mirrors run_reader.NON_METRIC_COLUMNS)
_NON_METRIC_COLUMNS = {
"sample_id", "question", "contexts", "answer", "ground_truth",
"scenario", "language", "retrieval_config", "error",
"judge_model", "embedding_model", "run_id", "difficulty",
"question_type", "doc_id", "doc_name", "section_path",
"page_start", "page_end", "source_chunk_ids", "review_status",
"review_notes", "weighted_score", "sample_weight",
}
def _now_iso() -> str:
return datetime.now(timezone.utc).isoformat()
def _sanitize_session_id(session_id: str) -> str:
"""Convert an arbitrary session_id string to a safe directory-name fragment."""
return re.sub(r"[^a-zA-Z0-9]", "-", session_id)[:64].strip("-") or "default"
class SessionScoreJobManager:
"""Thread-pool manager for session-grouped async scoring jobs.
All calls sharing a session_id append to one shared run directory, so the
report detail page shows all samples and their aggregate metrics together.
"""
def __init__(
self,
output_dir: Path = _DEFAULT_OUTPUT_DIR,
index_dir: Path = _DEFAULT_INDEX_DIR,
max_workers: int = 4,
) -> None:
self._output_dir = Path(output_dir)
self._index_dir = Path(index_dir)
self._output_dir.mkdir(parents=True, exist_ok=True)
self._index_dir.mkdir(parents=True, exist_ok=True)
(self._index_dir / "_sessions").mkdir(parents=True, exist_ok=True)
self._executor = ThreadPoolExecutor(max_workers=max_workers)
# job_id -> AsyncScoreJobStatus; guarded by _lock
self._job_cache: dict[str, AsyncScoreJobStatus] = {}
# session_id -> [job_ids in order]; guarded by _lock
self._session_jobs: dict[str, list[str]] = {}
# session_id -> per-session threading.Lock; guarded by _lock
self._session_locks: dict[str, threading.Lock] = {}
self._lock = threading.Lock()
self._load_existing()
# ------------------------------------------------------------------ #
# Public API
# ------------------------------------------------------------------ #
def session_run_id(self, session_id: str) -> str:
"""Return the deterministic run_id for a session (also the dir name)."""
return f"session-{_sanitize_session_id(session_id)}"
def submit(self, session_id: str, request: ScoreRequest) -> tuple[AsyncScoreJobStatus, str]:
"""Queue one scoring call for a session.
Returns (job_status, run_id). run_id is deterministic from session_id.
"""
run_id = self.session_run_id(session_id)
job_id = uuid.uuid4().hex[:12]
status = AsyncScoreJobStatus(
job_id=job_id,
status="queued",
created_at=_now_iso(),
request_summary={
"question": (request.question or "")[:80],
"answer": (request.answer or "")[:80],
"metrics": list(request.metrics),
"judge_model": request.judge_model or "",
"embedding_model": request.embedding_model or "",
"has_contexts": bool(request.contexts),
"has_ground_truth": bool(request.ground_truth),
"session_id": session_id,
},
)
with self._lock:
self._job_cache[job_id] = status
if session_id not in self._session_jobs:
self._session_jobs[session_id] = []
self._session_jobs[session_id].append(job_id)
self._persist_job_index(status)
self._persist_session_index(session_id)
self._executor.submit(self._run, job_id, session_id, run_id, request)
return status, run_id
def get_job(self, job_id: str) -> AsyncScoreJobStatus | None:
"""Return current status of one call, or None if unknown."""
with self._lock:
return self._job_cache.get(job_id)
def list_jobs(self) -> list[AsyncScoreJobStatus]:
"""Return all session job records, newest first."""
with self._lock:
jobs = list(self._job_cache.values())
jobs.sort(key=lambda j: j.created_at, reverse=True)
return jobs
def get_session(self, session_id: str) -> SessionStatus | None:
"""Return aggregate status for a session, or None if unknown."""
with self._lock:
job_ids = list(self._session_jobs.get(session_id) or [])
if not job_ids:
return None
run_id = self.session_run_id(session_id)
run_dir = self._output_dir / run_id
# Compute live metric means from the CSV (may be mid-update — best effort)
metric_means = self._read_metric_means(run_dir)
with self._lock:
jobs = [self._job_cache[jid] for jid in job_ids if jid in self._job_cache]
latest = max((j.finished_at for j in jobs if j.finished_at), default="")
return SessionStatus(
session_id=session_id,
run_id=run_id,
call_count=len(job_ids),
metric_means=metric_means,
latest_finished_at=latest,
jobs=sorted(jobs, key=lambda j: j.created_at),
)
def list_sessions(self) -> list[SessionStatus]:
"""Return aggregate status for all known sessions."""
with self._lock:
session_ids = list(self._session_jobs.keys())
results = []
for sid in session_ids:
status = self.get_session(sid)
if status is not None:
results.append(status)
results.sort(key=lambda s: s.latest_finished_at, reverse=True)
return results
# ------------------------------------------------------------------ #
# Worker
# ------------------------------------------------------------------ #
def _run(self, job_id: str, session_id: str, run_id: str, request: ScoreRequest) -> None:
"""Score one sample then append it to the session's shared run artifacts."""
import logging
logger = logging.getLogger("webapp.services.session_score_manager")
self._update_job(job_id, status="running")
# Lazy imports — keep web server bootable if ragas is not installed.
from rag_eval.advisor import run_advisor
from rag_eval.metrics.factory import build_models
from rag_eval.metrics.weights import compute_weighted_score
from rag_eval.reporting.writers import write_run_artifacts
from rag_eval.settings import EvaluationSettings
from rag_eval.shared.models import (
DatasetConfig, EvaluationResult, NormalizedSample,
RuntimeConfig, Scenario,
)
from rag_eval.shared.utils import utc_now_iso
from webapp.services.inline_scorer import inline_scorer
settings = EvaluationSettings()
judge_model = request.judge_model or settings.ragas_judge_model
embedding_model = request.embedding_model or settings.ragas_embedding_model
effective = request.effective_metrics()
requested = set(request.metrics)
skipped = sorted(requested - set(effective))
t0 = time.monotonic()
try:
# --- Scoring (can run concurrently for the same session) ----------
if effective:
raw_scores = inline_scorer.score(
question=request.question,
answer=request.answer,
contexts=request.contexts_as_list(),
ground_truth=request.ground_truth,
metrics=effective,
judge_model=judge_model,
embedding_model=embedding_model,
settings=settings,
)
else:
raw_scores = {}
latency_ms = int((time.monotonic() - t0) * 1000)
finished_at = utc_now_iso()
# Build complete scores for this sample (skipped metrics → None)
all_scores: dict[str, float | None] = {m: None for m in request.metrics}
all_scores.update(raw_scores)
# 综合加权得分计算(已暂时禁用)
# weighted_raw = compute_weighted_score(
# {k: v for k, v in raw_scores.items() if v is not None}, {}
# )
# weighted = round(weighted_raw, 4) if weighted_raw is not None else None
weighted = None
# --- File I/O must be serialized per session ----------------------
session_lock = self._get_session_lock(session_id)
with session_lock:
run_dir = self._output_dir / run_id
run_dir.mkdir(parents=True, exist_ok=True)
# Read all existing rows, then append the new one
existing_rows = self._read_score_rows(run_dir)
call_number = len(existing_rows) + 1
new_row: dict[str, Any] = {
"sample_id": f"session-score-{call_number}",
"question": request.question,
"answer": request.answer or "",
"contexts": request.contexts or "",
"ground_truth": request.ground_truth or "",
"error": "",
}
new_row.update(all_scores)
all_rows = existing_rows + [new_row]
# Reconstruct NormalizedSample objects for write_run_artifacts metadata
valid_samples = [
NormalizedSample(
sample_id=str(row.get("sample_id", f"session-score-{i + 1}")),
question=str(row.get("question", "")),
answer=str(row.get("answer", "")),
contexts=[
part.strip()
for part in str(row.get("contexts", "")).split(" |||| ")
if part.strip()
],
ground_truth=str(row.get("ground_truth", "")),
)
for i, row in enumerate(all_rows)
]
# Determine all metric columns (union of all rows' metric keys)
all_metric_names = sorted({
k for row in all_rows
for k in row if k not in _NON_METRIC_COLUMNS
})
scenario = Scenario(
scenario_name=f"session-{_sanitize_session_id(session_id)}",
mode="offline",
dataset=DatasetConfig(path=run_dir / "dataset.csv"),
judge_model=judge_model,
embedding_model=embedding_model,
metrics=all_metric_names,
output_dir=self._output_dir,
optimization_advisor=True,
)
started_at_val = (
existing_rows[0].get("_started_at", finished_at)
if existing_rows else finished_at
)
result = EvaluationResult(
scenario=scenario,
run_id=run_id,
started_at=started_at_val if isinstance(started_at_val, str) else finished_at,
finished_at=finished_at,
valid_samples=valid_samples,
invalid_samples=[],
score_rows=all_rows,
)
write_run_artifacts(result)
logger.info(
"[session_job] artifacts written job_id=%s session_id=%s call=%d",
job_id, session_id, call_number,
)
# Regenerate optimization advice over all accumulated rows
try:
llm, _ = build_models(judge_model, embedding_model, settings)
run_advisor(result, scenario, llm)
logger.info("[session_job] advisor done job_id=%s session=%s", job_id, session_id)
except Exception as adv_exc: # noqa: BLE001
logger.warning(
"[session_job] advisor failed job_id=%s err=%s", job_id, adv_exc
)
self._update_job(
job_id,
status="completed",
finished_at=finished_at,
run_id=run_id,
scores=all_scores,
weighted_score=weighted,
latency_ms=latency_ms,
skipped_metrics=skipped,
)
self._persist_session_index(session_id)
except Exception as exc: # noqa: BLE001
latency_ms = int((time.monotonic() - t0) * 1000)
import logging as _logging
_logging.getLogger("webapp.services.session_score_manager").error(
"[session_job] failed job_id=%s err=%s", job_id, exc
)
self._update_job(
job_id,
status="failed",
finished_at=_now_iso(),
latency_ms=latency_ms,
error=f"{type(exc).__name__}: {exc}",
)
# ------------------------------------------------------------------ #
# Helpers
# ------------------------------------------------------------------ #
def _get_session_lock(self, session_id: str) -> threading.Lock:
with self._lock:
if session_id not in self._session_locks:
self._session_locks[session_id] = threading.Lock()
return self._session_locks[session_id]
def _read_score_rows(self, run_dir: Path) -> list[dict[str, Any]]:
"""Read existing scores.csv rows, returning empty list if file doesn't exist."""
scores_path = run_dir / "scores.csv"
if not scores_path.is_file():
return []
try:
frame = pd.read_csv(scores_path)
return frame.where(pd.notnull(frame), None).to_dict("records")
except (OSError, ValueError):
return []
def _read_metric_means(self, run_dir: Path) -> dict[str, float | None]:
"""Compute per-metric means from the session's scores.csv."""
scores_path = run_dir / "scores.csv"
if not scores_path.is_file():
return {}
try:
frame = pd.read_csv(scores_path)
except (OSError, ValueError):
return {}
means: dict[str, float | None] = {}
for col in frame.columns:
if col in _NON_METRIC_COLUMNS:
continue
if pd.api.types.is_numeric_dtype(frame[col]):
val = frame[col].mean(numeric_only=True)
means[col] = None if pd.isna(val) else round(float(val), 4)
return means
def _update_job(self, job_id: str, **kwargs: Any) -> None:
with self._lock:
existing = self._job_cache.get(job_id)
if existing is None:
return
updated = existing.model_copy(update=kwargs)
self._job_cache[job_id] = updated
self._persist_job_index(updated)
def _persist_job_index(self, status: AsyncScoreJobStatus) -> None:
"""Persist a single job's status to the index directory."""
path = self._index_dir / f"{status.job_id}.json"
path.write_text(
json.dumps(status.model_dump(), ensure_ascii=False, indent=2),
encoding="utf-8",
)
def _persist_session_index(self, session_id: str) -> None:
"""Persist the session→job_ids mapping."""
with self._lock:
job_ids = list(self._session_jobs.get(session_id) or [])
run_id = self.session_run_id(session_id)
data = {"session_id": session_id, "run_id": run_id, "job_ids": job_ids}
path = self._index_dir / "_sessions" / f"{_sanitize_session_id(session_id)}.json"
path.write_text(
json.dumps(data, ensure_ascii=False, indent=2),
encoding="utf-8",
)
def _load_existing(self) -> None:
"""Restore job cache and session mappings from persisted index files on startup."""
# Load individual job files
for path in sorted(self._index_dir.glob("*.json")):
try:
data = json.loads(path.read_text(encoding="utf-8"))
status = AsyncScoreJobStatus.model_validate(data)
self._job_cache[status.job_id] = status
except Exception: # noqa: BLE001
pass
# Load session→job_ids mappings
sessions_dir = self._index_dir / "_sessions"
if not sessions_dir.is_dir():
return
for path in sorted(sessions_dir.glob("*.json")):
try:
data = json.loads(path.read_text(encoding="utf-8"))
sid = data.get("session_id", "")
job_ids = data.get("job_ids", [])
if sid:
self._session_jobs[sid] = job_ids
except Exception: # noqa: BLE001
pass
# Module-level singleton shared by FastAPI routes.
session_score_manager = SessionScoreJobManager()

View File

@@ -1,4 +1,4 @@
/* Siemens RAGAS 评估控制台 — 样式表 /* Siemens RAGAS 评估台 — 样式表
配色取自西门子品牌色petrol / 深青)与中性灰,呼应企业语境。 */ 配色取自西门子品牌色petrol / 深青)与中性灰,呼应企业语境。 */
:root { :root {
@@ -199,6 +199,7 @@ code {
.metric-value.bad { color: var(--bad); } .metric-value.bad { color: var(--bad); }
.metric-value.na { color: var(--slate-light); } .metric-value.na { color: var(--slate-light); }
.metric-name { font-size: 12px; color: var(--slate); margin-top: 4px; } .metric-name { font-size: 12px; color: var(--slate); margin-top: 4px; }
.metric-desc { font-size: 12px; color: #64748b; margin-top: 6px; line-height: 1.45; }
.report-row { display: grid; grid-template-columns: 1fr 1fr; gap: 16px; } .report-row { display: grid; grid-template-columns: 1fr 1fr; gap: 16px; }
.report-half { margin-bottom: 0; } .report-half { margin-bottom: 0; }

View File

@@ -3,7 +3,7 @@
<head> <head>
<meta charset="UTF-8" /> <meta charset="UTF-8" />
<meta name="viewport" content="width=device-width, initial-scale=1.0" /> <meta name="viewport" content="width=device-width, initial-scale=1.0" />
<title>RAGAS 评估控制</title> <title>Siemens RAGAS 评估</title>
<link rel="stylesheet" href="/static/css/app.css" /> <link rel="stylesheet" href="/static/css/app.css" />
<script src="https://cdn.jsdelivr.net/npm/chart.js@4.4.1/dist/chart.umd.min.js"></script> <script src="https://cdn.jsdelivr.net/npm/chart.js@4.4.1/dist/chart.umd.min.js"></script>
</head> </head>
@@ -12,8 +12,8 @@
<!-- 左侧导航(布局 A --> <!-- 左侧导航(布局 A -->
<aside class="sidebar"> <aside class="sidebar">
<div class="brand"> <div class="brand">
<div class="brand-mark">RAGAS</div> <div class="brand-mark">Siemens RAGAS</div>
<div class="brand-sub">评估控制</div> <div class="brand-sub">评估</div>
</div> </div>
<nav class="nav"> <nav class="nav">
<button class="nav-item" data-view="runs"> <button class="nav-item" data-view="runs">
@@ -28,6 +28,9 @@
<button class="nav-item" data-view="profiles"> <button class="nav-item" data-view="profiles">
<span class="nav-ico"></span><span>LLM 配置</span> <span class="nav-ico"></span><span>LLM 配置</span>
</button> </button>
<button class="nav-item" data-view="scorejobs">
<span class="nav-ico">📋</span><span>评分记录</span>
</button>
<button class="nav-item" data-view="apidocs"> <button class="nav-item" data-view="apidocs">
<span class="nav-ico"></span><span>API 文档</span> <span class="nav-ico"></span><span>API 文档</span>
</button> </button>
@@ -234,6 +237,22 @@
</div> </div>
</section> </section>
<!-- 评分记录视图 -->
<section class="view" id="view-scorejobs" hidden>
<div class="panel">
<div class="panel-head">
<h2>评分记录</h2>
<span class="muted" style="font-size:13px">来自 Dify 异步评分任务POST /api/score/async</span>
</div>
<p class="muted">评分完成后自动生成完整报告(含指标得分与 LLM 优化建议),点击「查看报告」跳转报告详情页。</p>
</div>
<div id="scorejobs-list"></div>
<div class="empty" id="scorejobs-empty" hidden>
<p>暂无评分记录。</p>
<p class="muted">在 Dify 工作流中调用 <code>POST /api/score/async</code> 后,记录将在此显示。</p>
</div>
</section>
<!-- API 文档视图 --> <!-- API 文档视图 -->
<section class="view" id="view-apidocs" hidden> <section class="view" id="view-apidocs" hidden>
<iframe <iframe
@@ -248,9 +267,11 @@
</div> </div>
<script src="/static/js/api.js"></script> <script src="/static/js/api.js"></script>
<script src="/static/js/metric_presenter.js"></script>
<script src="/static/js/report.js"></script> <script src="/static/js/report.js"></script>
<script src="/static/js/profiles.js"></script> <script src="/static/js/profiles.js"></script>
<script src="/static/js/runner.js"></script> <script src="/static/js/runner.js"></script>
<script src="/static/js/score_jobs.js"></script>
<script src="/static/js/app.js"></script> <script src="/static/js/app.js"></script>
</body> </body>
</html> </html>

View File

@@ -66,6 +66,11 @@ const API = {
}, },
applyProfiles(body) { return API.post("/api/llm-profiles/apply", body); }, applyProfiles(body) { return API.post("/api/llm-profiles/apply", body); },
// 异步评分记录 API
scoreJobsAsync(body) { return API.post("/api/score/async", body); },
getScoreJob(jobId) { return API.get(`/api/score/jobs/${encodeURIComponent(jobId)}`); },
listScoreJobs() { return API.get("/api/score/jobs"); },
// 测试已保存 profile 的连通性 // 测试已保存 profile 的连通性
testProfile(id) { testProfile(id) {
return fetch(`/api/llm-profiles/${encodeURIComponent(id)}/test`, { method: "POST" }) return fetch(`/api/llm-profiles/${encodeURIComponent(id)}/test`, { method: "POST" })

View File

@@ -5,8 +5,8 @@
const App = { const App = {
currentRunId: null, currentRunId: null,
activeView: null, activeView: null,
views: ["runs", "new", "report", "profiles", "apidocs"], views: ["runs", "new", "report", "profiles", "scorejobs", "apidocs"],
titles: { runs: "运行列表", new: "新建评估", report: "报告详情", profiles: "LLM 配置", apidocs: "API 文档" }, titles: { runs: "运行列表", new: "新建评估", report: "报告详情", profiles: "LLM 配置", scorejobs: "评分记录", apidocs: "API 文档" },
// 初始化:绑定导航、从 URL/sessionStorage 恢复上次位置、启动健康检查。 // 初始化:绑定导航、从 URL/sessionStorage 恢复上次位置、启动健康检查。
init() { init() {
@@ -72,6 +72,7 @@ const App = {
if (view === "new") Runner.loadScenarios(); if (view === "new") Runner.loadScenarios();
if (view === "report") Report.render(App.currentRunId); if (view === "report") Report.render(App.currentRunId);
if (view === "profiles") Profiles.load(); if (view === "profiles") Profiles.load();
if (view === "scorejobs") ScoreJobs.load();
}, },
// ---------------------------------------------------------------- // ----------------------------------------------------------------
@@ -146,7 +147,7 @@ const App = {
const chips = (run.metrics || []) const chips = (run.metrics || [])
.map((m) => { .map((m) => {
const val = run.metric_means ? run.metric_means[m] : null; const val = run.metric_means ? run.metric_means[m] : null;
const cls = App.scoreClass(val); const cls = App.scoreClass(m, val);
const text = val === null || val === undefined ? "n/a" : val.toFixed(2); const text = val === null || val === undefined ? "n/a" : val.toFixed(2);
return `<span class="metric-chip" title="${App.escape(m)}">${App.escape(App.shortMetric(m))} <b class="${cls}">${text}</b></span>`; return `<span class="metric-chip" title="${App.escape(m)}">${App.escape(App.shortMetric(m))} <b class="${cls}">${text}</b></span>`;
}) })
@@ -173,11 +174,8 @@ const App = {
if (btn) btn.disabled = false; if (btn) btn.disabled = false;
}, },
scoreClass(value) { scoreClass(metricName, value) {
if (value === null || value === undefined) return "na"; return MetricPresenter.scoreClass(metricName, value);
if (value >= 0.8) return "good";
if (value >= 0.65) return "warn";
return "bad";
}, },
shortMetric(name) { shortMetric(name) {

View File

@@ -0,0 +1,77 @@
// metric_presenter.js — 统一维护指标语义(高分好 / 低分好)、颜色阈值与简要说明。
(function attachMetricPresenter(globalObj) {
const METRIC_META = {
faithfulness: {
direction: "higher_better",
description: "回答是否被检索内容直接支持,越高越可靠。",
},
answer_relevancy: {
direction: "higher_better",
description: "回答与问题是否紧密相关,越高越切题。",
},
context_recall: {
direction: "higher_better",
description: "检索片段覆盖标准答案关键信息的程度,越高越完整。",
},
context_precision: {
direction: "higher_better",
description: "检索片段中有效信息的占比,越高越精准。",
},
noise_sensitivity: {
direction: "lower_better",
description: "对噪声上下文的敏感程度,越低说明抗干扰能力越强。",
},
factual_correctness: {
direction: "higher_better",
description: "回答与标准答案在事实层面的吻合程度,越高越准确。",
},
semantic_similarity: {
direction: "higher_better",
description: "回答与标准答案在语义上的相似程度,越高越接近。",
},
};
function isLowerBetter(metricName) {
return METRIC_META[metricName]?.direction === "lower_better";
}
function scoreClass(metricName, value) {
if (value === null || value === undefined || Number.isNaN(Number(value))) return "na";
const numeric = Number(value);
if (isLowerBetter(metricName)) {
if (numeric <= 0.15) return "good";
if (numeric <= 0.35) return "warn";
return "bad";
}
if (numeric >= 0.85) return "good";
if (numeric >= 0.65) return "warn";
return "bad";
}
function describeMetric(metricName) {
return METRIC_META[metricName]?.description || "该指标用于衡量当前问答样本的评估表现。";
}
function binColor(metricName, lower) {
const numeric = Number(lower);
if (isLowerBetter(metricName)) {
if (numeric < 0.2) return "#16a34a";
if (numeric < 0.4) return "#84cc16";
if (numeric < 0.6) return "#eab308";
if (numeric < 0.8) return "#f97316";
return "#dc2626";
}
if (numeric >= 0.8) return "#16a34a";
if (numeric >= 0.6) return "#84cc16";
if (numeric >= 0.4) return "#eab308";
if (numeric >= 0.2) return "#f97316";
return "#dc2626";
}
globalObj.MetricPresenter = {
scoreClass,
describeMetric,
binColor,
};
})(window);

View File

@@ -117,28 +117,30 @@ const Report = {
const metrics = report.metrics && report.metrics.length ? report.metrics : summary.metrics; const metrics = report.metrics && report.metrics.length ? report.metrics : summary.metrics;
metrics.forEach((metric) => { metrics.forEach((metric) => {
const value = report.metric_means ? report.metric_means[metric] : null; const value = report.metric_means ? report.metric_means[metric] : null;
const cls = App.scoreClass(value); const cls = App.scoreClass(metric, value);
const text = value === null || value === undefined ? "n/a" : value.toFixed(2); const text = value === null || value === undefined ? "n/a" : value.toFixed(2);
const description = MetricPresenter.describeMetric(metric);
const card = document.createElement("div"); const card = document.createElement("div");
card.className = "metric-card"; card.className = "metric-card";
card.innerHTML = ` card.innerHTML = `
<div class="metric-value ${cls}">${text}</div> <div class="metric-value ${cls}">${text}</div>
<div class="metric-name">${App.escape(metric)}</div> <div class="metric-name">${App.escape(metric)}</div>
<div class="metric-desc">${App.escape(description)}</div>
`; `;
wrap.appendChild(card); wrap.appendChild(card);
}); });
// 综合加权得分卡片 // 综合加权得分卡片(已暂时隐藏)
const wsValue = (report && report.weighted_score_mean !== undefined) ? report.weighted_score_mean : null; // const wsValue = (report && report.weighted_score_mean !== undefined) ? report.weighted_score_mean : null;
const wsCard = document.createElement("div"); // const wsCard = document.createElement("div");
wsCard.className = "metric-card weighted-score-card"; // wsCard.className = "metric-card weighted-score-card";
const wsCls = App.scoreClass(wsValue); // const wsCls = App.scoreClass(wsValue);
const wsText = wsValue === null || wsValue === undefined ? "n/a" : wsValue.toFixed(2); // const wsText = wsValue === null || wsValue === undefined ? "n/a" : wsValue.toFixed(2);
wsCard.innerHTML = ` // wsCard.innerHTML = `
<div class="metric-value ${wsCls}">${wsText}</div> // <div class="metric-value ${wsCls}">${wsText}</div>
<div class="metric-name">综合加权得分</div> // <div class="metric-name">综合加权得分</div>
`; // `;
wrap.appendChild(wsCard); // wrap.appendChild(wsCard);
}, },
// ② 分数分布直方图(可切换指标)。 // ② 分数分布直方图(可切换指标)。
@@ -168,17 +170,13 @@ const Report = {
const bins = distributions[metric] || []; const bins = distributions[metric] || [];
const labels = bins.map((b) => b.label); const labels = bins.map((b) => b.label);
const counts = bins.map((b) => b.count); const counts = bins.map((b) => b.count);
const colors = bins.map((b) => Report._binColor(b.lower)); const colors = bins.map((b) => Report._binColor(metric, b.lower));
Report._drawDistChart(labels, counts, colors); Report._drawDistChart(labels, counts, colors);
}, },
// 低分箱偏红、高分箱偏绿,直观暴露长尾。 // 低分箱偏红、高分箱偏绿,直观暴露长尾。
_binColor(lower) { _binColor(metric, lower) {
if (lower >= 0.8) return "#16a34a"; return MetricPresenter.binColor(metric, lower);
if (lower >= 0.6) return "#84cc16";
if (lower >= 0.4) return "#eab308";
if (lower >= 0.2) return "#f97316";
return "#dc2626";
}, },
// 实际绘制 Chart.js 柱状图。 // 实际绘制 Chart.js 柱状图。
@@ -247,7 +245,7 @@ const Report = {
body += `<tr><td>${App.escape(stat.key)}</td><td>${stat.count}</td>`; body += `<tr><td>${App.escape(stat.key)}</td><td>${stat.count}</td>`;
metrics.forEach((m) => { metrics.forEach((m) => {
const v = stat.means ? stat.means[m] : null; const v = stat.means ? stat.means[m] : null;
const cls = App.scoreClass(v); const cls = App.scoreClass(m, v);
const text = v === null || v === undefined ? "—" : v.toFixed(2); const text = v === null || v === undefined ? "—" : v.toFixed(2);
body += `<td class="${cls}">${text}</td>`; body += `<td class="${cls}">${text}</td>`;
}); });
@@ -271,7 +269,7 @@ const Report = {
const scoreBadges = metrics const scoreBadges = metrics
.map((m) => { .map((m) => {
const v = sample.metrics ? sample.metrics[m] : null; const v = sample.metrics ? sample.metrics[m] : null;
const cls = App.scoreClass(v); const cls = App.scoreClass(m, v);
const text = v === null || v === undefined ? "—" : v.toFixed(2); const text = v === null || v === undefined ? "—" : v.toFixed(2);
return `<span class="score-badge ${cls}" title="${App.escape(m)}">${text}</span>`; return `<span class="score-badge ${cls}" title="${App.escape(m)}">${text}</span>`;
}) })

View File

@@ -0,0 +1,126 @@
// score_jobs.js — 评分记录页面(异步 RAGAS 评分任务列表)
// 每条评分完成后自动写入标准 Run 产物,点击「查看报告」复用现有报告详情页。
const ScoreJobs = {
_pollTimers: {}, // job_id -> setInterval handle
async load() {
const list = document.getElementById("scorejobs-list");
const empty = document.getElementById("scorejobs-empty");
list.innerHTML = '<p class="muted">加载中…</p>';
try {
const data = await API.listScoreJobs();
const jobs = data.jobs || [];
list.innerHTML = "";
if (jobs.length === 0) {
empty.hidden = false;
return;
}
empty.hidden = true;
jobs.forEach(job => list.appendChild(ScoreJobs.renderCard(job)));
// Auto-poll any pending jobs
jobs.forEach(job => {
if (job.status === "queued" || job.status === "running") {
ScoreJobs._startPoll(job.job_id);
}
});
} catch (err) {
list.innerHTML = `<p class="muted">加载失败:${App.escape(err.message)}</p>`;
}
},
renderCard(job) {
const card = document.createElement("div");
card.className = "run-card";
card.id = `score-job-${job.job_id}`;
card.innerHTML = ScoreJobs._cardHtml(job);
// Bind report button if already completed
ScoreJobs._bindReportBtn(card, job);
return card;
},
_cardHtml(job) {
const time = App.shortTime(job.created_at);
const question = App.escape((job.request_summary?.question || "—").slice(0, 60));
const metrics = (job.request_summary?.metrics || []).join(", ");
const statusBadge = `<span class="badge ${job.status}">${job.status}</span>`;
let scoreHtml = "";
if (job.status === "completed") {
scoreHtml = Object.entries(job.scores || {})
.map(([k, v]) => {
const cls = App.scoreClass(k, v);
const text = v === null || v === undefined ? "n/a" : Number(v).toFixed(3);
return `<span class="metric-chip" title="${App.escape(k)}">${App.escape(App.shortMetric(k))} <b class="${cls}">${text}</b></span>`;
})
.join(" ");
// 综合加权得分(已暂时隐藏)
// if (job.weighted_score !== null && job.weighted_score !== undefined) {
// const cls = App.scoreClass(job.weighted_score);
// scoreHtml += ` <span class="metric-chip">综合 <b class="${cls}">${Number(job.weighted_score).toFixed(3)}</b></span>`;
// }
} else if (job.status === "failed") {
scoreHtml = `<span style="color:var(--bad);font-size:12px">${App.escape((job.error || "").slice(0, 80))}</span>`;
} else {
scoreHtml = `<span class="muted">评分中,请稍候…</span>`;
}
const reportBtn = job.status === "completed" && job.run_id
? `<button class="btn btn-sm btn-primary score-job-report-btn" data-run-id="${App.escape(job.run_id)}">查看报告</button>`
: "";
return `
<div class="run-card-head">
<div class="run-card-title">${question}</div>
<div style="display:flex;gap:8px;align-items:center">${statusBadge}${reportBtn}</div>
</div>
<div class="run-card-meta">
<div>指标:${App.escape(metrics)} · ${time} · ${job.latency_ms}ms</div>
</div>
<div class="run-card-metrics">${scoreHtml}</div>
`;
},
_bindReportBtn(card, job) {
const btn = card.querySelector(".score-job-report-btn");
if (!btn) return;
btn.addEventListener("click", () => {
const runId = btn.dataset.runId;
if (runId) {
App.enableReportNav();
App.navigate("report", runId);
}
});
},
_startPoll(jobId) {
if (ScoreJobs._pollTimers[jobId]) return;
ScoreJobs._pollTimers[jobId] = setInterval(async () => {
try {
const job = await API.getScoreJob(jobId);
const card = document.getElementById(`score-job-${jobId}`);
if (card) {
card.innerHTML = ScoreJobs._cardHtml(job);
ScoreJobs._bindReportBtn(card, job);
}
if (job.status === "completed" || job.status === "failed") {
clearInterval(ScoreJobs._pollTimers[jobId]);
delete ScoreJobs._pollTimers[jobId];
// If completed, pre-enable report nav
if (job.status === "completed" && job.run_id) {
App.enableReportNav();
}
}
} catch (_e) {
clearInterval(ScoreJobs._pollTimers[jobId]);
delete ScoreJobs._pollTimers[jobId];
}
}, 5000);
},
stopAllPolls() {
Object.values(ScoreJobs._pollTimers).forEach(t => clearInterval(t));
ScoreJobs._pollTimers = {};
},
};

17
webserver.log Normal file
View File

@@ -0,0 +1,17 @@
INFO: Started server process [82284]
INFO: Waiting for application startup.
INFO: Application startup complete.
INFO: Uvicorn running on http://127.0.0.1:8811 (Press CTRL+C to quit)
INFO: 127.0.0.1:56164 - "GET /api/health HTTP/1.1" 200 OK
INFO: 127.0.0.1:53350 - "GET / HTTP/1.1" 200 OK
INFO: 127.0.0.1:53351 - "GET /api/runs HTTP/1.1" 200 OK
INFO: 127.0.0.1:53352 - "GET /api/scenarios HTTP/1.1" 200 OK
INFO: 127.0.0.1:64689 - "GET /api/runs/2026-06-15T08-30-00%2B00-00 HTTP/1.1" 200 OK
INFO: 127.0.0.1:64700 - "POST /api/evaluations HTTP/1.1" 200 OK
INFO: 127.0.0.1:64703 - "GET /api/evaluations/a3243f2443d7 HTTP/1.1" 200 OK
INFO: 127.0.0.1:58440 - "GET /api/evaluations/a3243f2443d7 HTTP/1.1" 200 OK
INFO: 127.0.0.1:64454 - "GET /static/css/app.css HTTP/1.1" 200 OK
INFO: 127.0.0.1:64455 - "GET /static/js/api.js HTTP/1.1" 200 OK
INFO: 127.0.0.1:56825 - "GET /static/js/app.js HTTP/1.1" 200 OK
INFO: 127.0.0.1:56829 - "GET /static/js/report.js HTTP/1.1" 200 OK
INFO: 127.0.0.1:56830 - "GET /static/js/runner.js HTTP/1.1" 200 OK