Files
siemens_ragas/webapp/static/js/api.js

69 lines
2.2 KiB
JavaScript
Raw Blame History

This file contains ambiguous Unicode characters

This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

// api.js — 控制台后端 HTTP 接口的轻量封装。
const API = {
// 通用 JSON GET失败时抛出带状态码的错误。
async get(path) {
const resp = await fetch(path);
if (!resp.ok) {
const detail = await API._extractError(resp);
throw new Error(detail);
}
return resp.json();
},
// 通用 JSON POST。
async post(path, body) {
const resp = await fetch(path, {
method: "POST",
headers: { "Content-Type": "application/json" },
body: JSON.stringify(body || {}),
});
if (!resp.ok) {
const detail = await API._extractError(resp);
throw new Error(detail);
}
return resp.json();
},
// 从错误响应中尽量解析出 detail 文本。
async _extractError(resp) {
try {
const data = await resp.json();
return data.detail || `请求失败 (${resp.status})`;
} catch (_e) {
return `请求失败 (${resp.status})`;
}
},
health() { return API.get("/api/health"); },
runs() { return API.get("/api/runs"); },
runDetail(runId) { return API.get(`/api/runs/${encodeURIComponent(runId)}`); },
scenarios() { return API.get("/api/scenarios"); },
triggerEvaluation(scenarioPath) {
return API.post("/api/evaluations", { scenario_path: scenarioPath });
},
taskStatus(taskId) { return API.get(`/api/evaluations/${encodeURIComponent(taskId)}`); },
// LLM Profile API
profiles() { return API.get("/api/llm-profiles"); },
createProfile(body) { return API.post("/api/llm-profiles", body); },
updateProfile(id, body) {
return fetch(`/api/llm-profiles/${encodeURIComponent(id)}`, {
method: "PUT",
headers: { "Content-Type": "application/json" },
body: JSON.stringify(body),
}).then(async r => {
if (!r.ok) { const d = await API._extractError(r); throw new Error(d); }
return r.json();
});
},
deleteProfile(id) {
return fetch(`/api/llm-profiles/${encodeURIComponent(id)}`, { method: "DELETE" })
.then(async r => {
if (!r.ok) { const d = await API._extractError(r); throw new Error(d); }
return r.json();
});
},
applyProfiles(body) { return API.post("/api/llm-profiles/apply", body); },
};