ac40e05734
Image rebuild (skip scrape) / build (push) Failing after 7s
Sibling project to crop-chem-docs, same MCP-template lineage. Corpus is
seed/hybrid varieties across 6 vendors instead of pesticide labels.
What's customized vs. the template:
- CLAUDE.md: vendor matrix, build priority, Pioneer fallback policy,
canonical sidecar schema (per-crop), Golden Harvest disease-scale
reversal gotcha, no-IPv6 / HTTPS-clone note
- README.md: vendor coverage table, tool list, phase status
- Dockerfile: PRODUCT_NAME=crop_seed default, sources.json (not
bundles.json), HYBRID_SEARCH=true, OLLAMA_URL + RERANK_URL Docker
DNS defaults (same llama-rerank sidecar as crop-chem-docs)
- .gitea/workflows/refresh.yml: monthly cron (seed catalogs move
slowly), 5 GREEN scraper steps, corpus-YYYY.MM.DD tag for Drawbar
pinning, continue-on-error on GC step
- .gitea/workflows/image-only.yml: paths filter + cancel-in-progress
concurrency group
- scripts/registry_gc.py: lifted from crop-chem-docs (correct Gitea
packages API URL + UA header to bypass CF block on default
Python-urllib UA)
- sources.json: catalog of 6 sources + scope_filter + per-source
schema notes + Pioneer-exclusion rationale
- scrape/runner.py: dispatcher with --all = GREEN-only
- scrape/sources/{bayer_seeds,golden_harvest,nk,agripro,becks_pfr,
becks_products}.py: stub modules with implementation notes
- docs_mcp/server.py: PRODUCT_NAME default → crop_seed,
PRODUCT_DOCS_URL → repo URL
Pioneer is intentionally NOT a source. ToS bans automation; dealer
locator is login-gated. The MCP returns a curated fallback lesson
directing the user to pioneer.com.
Next phases:
- Phase 1: implement bayer_seeds (lift-and-shift from crop-chem-docs
Bayer scraper; same __NEXT_DATA__ infra)
- Phase 7: curate eval/queries.jsonl
- Phase 11: lessons.md with Pioneer fallback + disease-scale notes
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
252 lines
9.6 KiB
Python
252 lines
9.6 KiB
Python
"""Summarize usage logs from docs_mcp.usage into a quick scan.
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Reads one or more usage.jsonl* files and prints sections for:
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- per-tool call counts
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- top search_docs queries by frequency
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- 0-hit queries (where we returned nothing — high-signal for tuning)
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- filter usage histogram (which version / platform / bundle filters get hit)
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- reranker effectiveness (calls where the reranker fired vs not)
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- hybrid retrieval top-1 attribution (dense vs bm25 vs both)
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Usage:
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# Default: read /app/var/logs in the production container
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python scripts/usage_report.py --logs-dir /path/to/usage/logs
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# Last N days only:
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python scripts/usage_report.py --logs-dir <dir> --since 7d
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# Markdown output (for piping into a weekly digest email, etc):
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python scripts/usage_report.py --logs-dir <dir> --format markdown
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The script doesn't depend on anything in the docs_mcp package — it's a
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standalone tool that can run anywhere with the log files available
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(scp them off the host, point it at the directory).
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----------------------------------------------------------------------
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FOLLOW-UP CHECKS
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----------------------------------------------------------------------
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Pattern: when you ship a retrieval change with a hypothesis attached
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(e.g. "hybrid will rescue queries dense misses"), add a note HERE
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describing what the usage report should show and at what threshold
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the change earns its keep. Future-you running the report a month
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later will be glad. Example:
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Q: Does the dense leg of hybrid retrieval earn its keep on
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real traffic, or could we simplify to BM25-only?
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- bm25_only >= 80%% --> dense not doing much; consider
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simplifying to BM25 mode
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- both >= 50%% --> hybrid is tie-breaking; keep it
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- dense_only > bm25_only --> dense is the workhorse; keep
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Also worth a glance every month:
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- 0-hit queries list (tuning candidates)
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- reranker p95 latency drift (slow reranker = bad UX)
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- filter usage (does anyone actually use version/platform
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filters? if not, simplify the tool surface)
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"""
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from __future__ import annotations
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import argparse
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import json
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import re
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import sys
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from collections import Counter, defaultdict
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from datetime import datetime, timedelta, timezone
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from pathlib import Path
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from typing import Any, Iterable
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def parse_since(s: str | None) -> datetime | None:
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"""Accept '7d', '24h', '30m', or an ISO timestamp. None → no cutoff."""
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if not s:
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return None
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m = re.fullmatch(r"(\d+)([dhm])", s)
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if m:
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n, unit = int(m.group(1)), m.group(2)
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delta = {"d": timedelta(days=n), "h": timedelta(hours=n), "m": timedelta(minutes=n)}[unit]
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return datetime.now(timezone.utc) - delta
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return datetime.fromisoformat(s.replace("Z", "+00:00"))
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def load_events(logs_dir: Path, since: datetime | None) -> Iterable[dict[str, Any]]:
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"""Yield every JSONL record across all files in logs_dir."""
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if not logs_dir.exists():
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print(f"warning: logs dir {logs_dir} does not exist", file=sys.stderr)
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return
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# usage.jsonl is the active file; usage.jsonl.YYYY-MM-DD are rotated.
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files = sorted(logs_dir.glob("usage.jsonl*"))
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for f in files:
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with open(f) as fh:
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for ln, line in enumerate(fh, start=1):
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line = line.strip()
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if not line:
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continue
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try:
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rec = json.loads(line)
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except json.JSONDecodeError as e:
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print(f" ! skipping {f}:{ln}: {e}", file=sys.stderr)
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continue
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if since:
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ts = rec.get("ts", "")
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try:
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rec_ts = datetime.fromisoformat(ts.replace("Z", "+00:00"))
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except ValueError:
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continue
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if rec_ts < since:
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continue
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yield rec
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def main() -> int:
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p = argparse.ArgumentParser(description=__doc__)
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p.add_argument("--logs-dir", type=Path, default=Path("/app/var/logs"),
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help="directory with usage.jsonl* files")
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p.add_argument("--since", default=None,
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help="time window: '7d', '24h', '30m', or ISO timestamp")
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p.add_argument("--top", type=int, default=25,
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help="how many top queries / filters to show")
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p.add_argument("--format", choices=("text", "markdown"), default="text")
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args = p.parse_args()
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since = parse_since(args.since)
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events = list(load_events(args.logs_dir, since))
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if not events:
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print("(no events in window)")
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return 0
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print(f"# Usage report — {len(events)} events"
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+ (f" since {since.isoformat()}" if since else "")
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+ f" from {args.logs_dir}")
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print()
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# 1. Per-tool counts
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by_tool = Counter(e["tool"] for e in events)
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print("## Per-tool call counts")
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print()
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if args.format == "markdown":
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print("| tool | calls |")
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print("|---|---|")
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for tool, n in by_tool.most_common():
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print(f"| `{tool}` | {n} |")
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else:
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for tool, n in by_tool.most_common():
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print(f" {tool:<25s} {n:>6d}")
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print()
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# 2. Top search_docs queries
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search_events = [e for e in events if e["tool"] == "search_docs"]
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queries = Counter(e["args"].get("query", "") for e in search_events)
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print(f"## Top {args.top} search_docs queries (of {len(search_events)} searches)")
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print()
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if args.format == "markdown":
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print("| count | query |")
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print("|---|---|")
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for q, n in queries.most_common(args.top):
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print(f"| {n} | `{q}` |")
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else:
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for q, n in queries.most_common(args.top):
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print(f" {n:>5d} {q!r}")
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print()
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# 3. 0-hit queries — the highest-signal data for tuning
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zero_hit = [e for e in search_events if e.get("hits_returned") == 0]
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zero_q = Counter(e["args"].get("query", "") for e in zero_hit)
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print(f"## 0-hit queries ({len(zero_hit)} of {len(search_events)} searches returned nothing)")
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print()
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if zero_q:
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if args.format == "markdown":
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print("| count | query | filters |")
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print("|---|---|---|")
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# Group by query, show filter examples for each
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examples_by_query: dict[str, list[dict]] = defaultdict(list)
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for e in zero_hit:
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examples_by_query[e["args"].get("query", "")].append(e["args"])
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for q, n in zero_q.most_common(args.top):
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ex = examples_by_query[q][0]
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f = {k: v for k, v in ex.items()
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if k in ("version", "platform", "bundle_id") and v}
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print(f"| {n} | `{q}` | `{f}` |")
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else:
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for q, n in zero_q.most_common(args.top):
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print(f" {n:>5d} {q!r}")
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else:
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print(" _(no 0-hit queries in window)_")
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print()
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# 4. Filter usage
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filter_use = Counter()
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for e in search_events:
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a = e["args"]
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v = a.get("version")
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p_ = a.get("platform")
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b = a.get("bundle_id")
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if v:
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filter_use[f"version={v}"] += 1
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if p_:
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filter_use[f"platform={p_}"] += 1
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if b:
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filter_use[f"bundle_id={b}"] += 1
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if not (v or p_ or b):
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filter_use["(no filter)"] += 1
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print(f"## search_docs filter usage")
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print()
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if args.format == "markdown":
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print("| filter | count |")
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print("|---|---|")
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for f, n in filter_use.most_common(args.top):
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print(f"| `{f}` | {n} |")
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else:
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for f, n in filter_use.most_common(args.top):
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print(f" {n:>5d} {f}")
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print()
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# 5. Reranker effectiveness
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reranked = [e for e in search_events if e.get("reranked") is True]
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dense_only = [e for e in search_events if e.get("reranked") is False]
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print(f"## Reranker activity")
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print()
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print(f" reranked: {len(reranked):>5d}")
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print(f" dense only: {len(dense_only):>5d} (filter too narrow or 0 results)")
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if reranked:
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elapsed = [e["elapsed_ms"] for e in reranked if e.get("elapsed_ms") is not None]
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if elapsed:
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elapsed.sort()
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p50 = elapsed[len(elapsed) // 2]
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p95 = elapsed[int(len(elapsed) * 0.95)]
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print(f" reranked latency p50: {p50:.0f} ms, p95: {p95:.0f} ms")
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print()
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# 6. Hybrid retrieval activity — which retriever contributed the top-1?
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# Empty unless HYBRID_SEARCH=true is set on the MCP container.
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hybrid_events = [e for e in search_events if e.get("retrieval_mode") == "hybrid"]
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if hybrid_events:
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by_source = Counter(e.get("top1_source") for e in hybrid_events
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if e.get("top1_source"))
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print("## Hybrid retrieval — top-1 attribution")
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print()
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print(f" hybrid mode events: {len(hybrid_events)}")
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total = sum(by_source.values()) or 1
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for src in ("both", "dense_only", "bm25_only"):
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n = by_source.get(src, 0)
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pct = 100.0 * n / total
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label = {
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"both": "in BOTH retrievers' top-N",
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"dense_only": "dense found it, BM25 didn't",
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"bm25_only": "BM25 found it, dense didn't",
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}[src]
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print(f" {src:<11s} {n:>5d} ({pct:5.1f}%) — {label}")
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rescued = by_source.get("bm25_only", 0)
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if rescued and total:
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print(f"\n → {rescued} ({100.0 * rescued / total:.1f}%) of hybrid queries had the top-1 "
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"result that ONLY BM25 surfaced. Without hybrid those would have been dense-misses.")
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return 0
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if __name__ == "__main__":
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sys.exit(main())
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