133 lines
4.3 KiB
Python
133 lines
4.3 KiB
Python
from __future__ import annotations
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import json
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from typing import Any, Callable
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from urllib.error import HTTPError
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from .llm import parse_json_object
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from .models import NewsItem
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RewriteLlmCall = Callable[[str], str]
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def _chunks(items: list[NewsItem], size: int) -> list[list[NewsItem]]:
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return [items[index : index + size] for index in range(0, len(items), size)]
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def _build_prompt(batch: list[NewsItem]) -> str:
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payload = {
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"task": (
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"Rewrite AI news titles and summaries into concise Chinese. Preserve brand/model/API names "
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"such as GPT-5, Codex, Gemini, Claude, API, MCP. Do not add facts."
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),
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"items": [
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{
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"id": item.id,
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"title_raw": item.title_raw,
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"summary_raw": item.summary_raw,
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"source": item.source_label,
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"language_hint": item.language_hint,
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}
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for item in batch
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],
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"output_schema": {
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"rewrites": [
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{
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"id": "item id",
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"title": "display title",
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"summary": "display summary",
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"flags": [],
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}
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]
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},
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}
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return json.dumps(payload, ensure_ascii=False)
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def _fallback(item: NewsItem) -> None:
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item.title = item.title_raw
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item.summary = item.summary_raw or "该条目暂无摘要。"
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def _is_transient_llm_error(exc: Exception) -> bool:
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if isinstance(exc, TimeoutError):
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return True
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if isinstance(exc, HTTPError):
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return exc.code in {429, 500, 502, 503, 504}
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return False
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def _apply_rewrite_batch(batch: list[NewsItem], llm_call: RewriteLlmCall) -> int:
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obj = parse_json_object(llm_call(_build_prompt(batch)))
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rewrites = obj.get("rewrites", [])
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if not isinstance(rewrites, list):
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raise ValueError("rewrites is not a list")
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by_id = {item.id: item for item in batch}
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seen_ids: set[str] = set()
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for entry in rewrites:
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item_id = entry.get("id")
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title = str(entry.get("title") or "").strip()
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summary = str(entry.get("summary") or "").strip()
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if item_id in by_id and title and summary:
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by_id[item_id].title = title
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by_id[item_id].summary = summary
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seen_ids.add(item_id)
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for item in batch:
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if item.id not in seen_ids:
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raise ValueError(f"missing_rewrite_for_item: {item.id}")
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return len(seen_ids)
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def rewrite_items(
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items: list[NewsItem],
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*,
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llm_call: RewriteLlmCall,
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batch_size: int = 30,
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max_fallback_ratio: float = 0.2,
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retry_single_items: bool = False,
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) -> tuple[list[NewsItem], dict[str, Any]]:
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rewritten_count = 0
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fallback_count = 0
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errors: list[str] = []
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for batch in _chunks(items, max(1, batch_size)):
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try:
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rewritten_count += _apply_rewrite_batch(batch, llm_call)
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except Exception as exc:
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errors.append(f"batch:{type(exc).__name__}: {exc}")
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if _is_transient_llm_error(exc):
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for item in batch:
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_fallback(item)
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fallback_count += 1
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continue
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if not retry_single_items:
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for item in batch:
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_fallback(item)
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fallback_count += 1
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continue
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for item in batch:
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try:
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rewritten_count += _apply_rewrite_batch([item], llm_call)
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except Exception as item_exc:
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errors.append(f"item:{item.id}:{type(item_exc).__name__}: {item_exc}")
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_fallback(item)
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fallback_count += 1
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fallback_ratio = fallback_count / len(items) if items else 0
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blocking_errors: list[str] = []
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if fallback_ratio > max_fallback_ratio:
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blocking_errors.append("rewrite_fallback_ratio_exceeded")
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report = {
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"input_count": len(items),
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"rewritten_count": rewritten_count,
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"fallback_count": fallback_count,
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"fallback_ratio": round(fallback_ratio, 4),
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"batch_count": len(_chunks(items, max(1, batch_size))),
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"errors": errors,
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"blocking_errors": blocking_errors,
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"quality_gate_failed": bool(blocking_errors),
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}
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return items, report
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