Files
seed-mcp/rag/chunk.py
T
justin ac40e05734
Image rebuild (skip scrape) / build (push) Failing after 7s
seed-mcp scaffold: clone docs-mcp-template, customize for crop_seed PRODUCT_NAME
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>
2026-05-25 12:28:49 -04:00

127 lines
4.1 KiB
Python

"""Markdown chunker — paragraph-aware, ~400-600 token target.
Adjust the chunking strategy per product if your page format differs
significantly from prose. The output shape (id, text, metadata) is
fixed by the downstream Chroma + BM25 indexing in rag/index.py — don't
change that.
The key knob you'll tune per product is chunk-0. Dense retrieval lands
on chunk 0 first for most queries. Make it a synthetic chunk built
from:
- the page title (as natural-language H1)
- a 1-sentence task description (you'll have to generate this — for
pages that already have a "## Overview" or "## Introduction" the
first sentence usually works)
- a keyword bag of important terms (filenames, API names, error
codes — the rare technical tokens that BM25 lights up on)
Without a rich chunk 0, dense retrieval gets dominated by the much
larger prose body, and short pages (script examples, reference cards)
get buried.
"""
from __future__ import annotations
import re
from typing import Iterator
# Approximate token estimate from char count. Tunable — set per
# embedder if the default 4 chars/token is wrong.
CHARS_PER_TOKEN = 4
TARGET_TOKENS = 500
TARGET_CHARS = TARGET_TOKENS * CHARS_PER_TOKEN
def estimate_tokens(text: str) -> int:
return max(1, len(text) // CHARS_PER_TOKEN)
def split_paragraphs(md: str) -> list[str]:
"""Split markdown into paragraph-ish blocks.
Keeps fenced code blocks together (don't slice through ```).
Headings start new paragraphs.
"""
blocks: list[str] = []
current: list[str] = []
in_fence = False
for line in md.splitlines(keepends=True):
stripped = line.strip()
if stripped.startswith("```"):
in_fence = not in_fence
current.append(line)
continue
if in_fence:
current.append(line)
continue
if stripped.startswith("#"):
if current:
blocks.append("".join(current).strip())
current = []
current.append(line)
continue
if not stripped and current and not "".join(current).strip().endswith("\n\n"):
current.append(line)
blocks.append("".join(current).strip())
current = []
continue
current.append(line)
if current:
blocks.append("".join(current).strip())
return [b for b in blocks if b]
def chunks_from_page(
text: str,
page_id: str,
metadata: dict,
) -> Iterator[dict]:
"""Yield chunk dicts ready for index.py to upsert.
The synthetic chunk 0 is the per-product customization point. The
default below is a simple title + body-first-paragraph; rewrite
for richer retrieval signal (see module docstring).
"""
paragraphs = split_paragraphs(text)
if not paragraphs:
return
# ----- Chunk 0: synthetic anchor for dense retrieval ---------
title = metadata.get("title") or page_id
first_para = next((p for p in paragraphs if not p.startswith("#")), "")
chunk0_body = (
f"# {title}\n\n"
f"{first_para[:300]}"
# TODO per product: append a keyword bag here (filenames,
# API names, error codes) for BM25 + dense joint coverage.
)
yield {
"id": f"{metadata['bundle_id']}::{page_id}::0",
"text": chunk0_body,
"metadata": {**metadata, "ordinal": 0},
}
# ----- Body chunks: pack paragraphs up to TARGET_CHARS -------
ordinal = 1
buf: list[str] = []
buf_chars = 0
for p in paragraphs:
if buf_chars + len(p) > TARGET_CHARS and buf:
yield {
"id": f"{metadata['bundle_id']}::{page_id}::{ordinal}",
"text": "\n\n".join(buf),
"metadata": {**metadata, "ordinal": ordinal},
}
ordinal += 1
buf = []
buf_chars = 0
buf.append(p)
buf_chars += len(p)
if buf:
yield {
"id": f"{metadata['bundle_id']}::{page_id}::{ordinal}",
"text": "\n\n".join(buf),
"metadata": {**metadata, "ordinal": ordinal},
}