Repo/project rename to better reflect scope. PPLS is EPA's term for
their Pesticide Product Label System — accurate when the corpus was
EPA-only, narrow now that it also pulls from Bayer's own catalog
(and may expand to Syngenta/Corteva/BASF/FMC labels in the future).
crop-chem-docs scopes flexibly without acronyms to explain.
Renames:
- directory: ppls-docs → crop-chem-docs
- PRODUCT_NAME: ppls → crop_chem
- Chroma collection: ppls_docs → crop_chem_docs (in-place via .modify(), no re-embed)
- BM25 db: bm25/ppls_docs.db → bm25/crop_chem_docs.db
- MCP tool name: ppls_api_lessons → crop_chem_api_lessons
- FastMCP server name: ppls-docs → crop-chem-docs
- Env vars: PPLS_CORPUS_ROOT → CORPUS_ROOT
PPLS_CHROMA_DIR → CHROMA_DIR_OVERRIDE
- User-Agent: ppls-docs-scraper → crop-chem-docs-scraper
Preserved (intentional, correct):
- epa_ppls (source id) — refers specifically to EPA's PPLS database
- "EPA PPLS" mentions in regulatory text (lessons.md, server docstrings)
- PPLS_API_BASE / PPLS_PDF_BASE / PPLS_INDEX_URL_TEMPLATE in
scrape/sources/epa_ppls.py — these point at EPA's actual endpoints
Memory entries get updated in a follow-up commit so the rename is
isolated.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
## Phase 11 — Curated agronomy / label-handling knowledge layer
docs_mcp/lessons.md: 13 topic-anchored markdown sections covering
the LLM-side context a farmer-advisor needs alongside the raw
label corpus —
- how-to-use-this-corpus
- epa-signal-words
- rei-phi-fundamentals
- rup-handling
- supplemental-labels-24c-2ee
- tank-mix-fundamentals
- resistance-management-hrac-frac-irac
- glufosinate-application-rules
- dicamba-application-rules
- lake-erie-watershed-ohio
- scn-and-other-seed-treatment-context
- drift-management-essentials
- how-to-format-recommendations
Each Topic block is independently retrievable via the new MCP tool:
ppls_api_lessons(topic="rup-handling")
Or with no topic to get the full TOC, or with a substring to
match-and-return matching sections ("dicamba" → dicamba-application-rules).
Tool docstring instructs the LLM to call this proactively before any
pesticide recommendation so the recommendation lands with regulatory
framing, resistance-group callouts, RUP applicator language, and the
canonical recommendation format — not just a rate from a label.
## Phase 6 — Reranker moved to GPU on trashpanda
Stopped the local CPU container and started on trashpanda's Tesla P4
(8 GB VRAM) via:
docker run -d --name llama-rerank --restart unless-stopped --gpus all \
-p 8082:8080 \
ghcr.io/ggml-org/llama.cpp:server-cuda \
-hf gpustack/jina-reranker-v2-base-multilingual-GGUF:Q8_0 \
--reranking --host 0.0.0.0 --port 8080 -ngl 99
The :server-cuda image variant (not :server) is required for CUDA
backend; -ngl 99 offloads all layers to GPU.
Latency: 50-doc rerank dropped from ~23 s on CPU to ~0.7-1.5 s on
the Tesla P4 — production-grade interactive speeds.
deploy/rerank-docker.md updated with the trashpanda deploy recipe,
troubleshooting (mostly "did you use server-cuda?"), and a perf
reference table. The MCP server's RERANK_URL just points at
http://10.10.1.65:8082 now.
GPU eval still completing in background; results land in
eval/results/with_rerank_gpu.md as a follow-up commit.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>