Cuts the PPIS-enumeration universe from 102K rows to ~11.5K rows by dropping products from non-row-crop-ag registrants BEFORE the per- product API call. This is the biggest cost lever we have on the EPA scraper — full backfill drops from ~28 h to ~3.5 h. scrape/sources/epa_registrant_allowlist.json holds the 34 verified ag-chem company numbers (Syngenta, Bayer, BASF, Corteva, FMC, Nufarm, ADAMA, UPL, Albaugh, Loveland, AMVAC, Helena, Drexel, Atticus, etc.). Each entry was verified by querying the EPA PPLS API for the first active product registered under that company number. Edit the JSON freely — scraper loads it at run time. Bypass with --no-registrant-filter when you suspect a row-crop product registered to a specialty company not on the list. Why a curated allowlist rather than blacklist consumer brands: the 102K PPIS rows are 89% non-ag-relevant; an allowlist is shorter to maintain and harder to false-positive. Excluded with intent (not omissions): Bayer Environmental Science (turf/ornamental), Scotts (consumer lawn & garden), Wellmark/Zoecon (animal flea/tick), Control Solutions (structural pest), Cleary (turf), PBI/Gordon (mostly turf), Buckman Labs (industrial water). Smoke test --limit 100: - 1239 PPIS rows considered (in first slice of file) - 1139 skipped by registrant filter (no API call paid) - 100 hit API, 81 filtered by row-crop sites, 19 written - = 91% API-call reduction over the prior version Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
scrape/
Per-source scrapers for pesticide / herbicide product labels. Each
module under scrape/sources/ pulls a single upstream catalog and
writes its results into corpus/<source_id>/ using the canonical
sidecar schema documented below.
Architecture
sources.json — registry of active sources
scrape/runner.py — thin dispatcher (--source <id> | --all)
scrape/sources/<id>.py — one source per file
corpus/<id>/<key>.md — extracted label text (markdown)
corpus/<id>/<key>.json — canonical metadata sidecar
<key> is the per-source primary key — a slug for manufacturer
sources (e.g. warrant, roundup-powermax-3) or an EPA Reg No
for regulator sources (e.g. 524-475). The sidecar's
epa_reg_no field is the cross-source join key that lets the
corpus consumer reconcile records from different sources for the
same product.
CLI
# Run a single source
python -m scrape.runner --source bayer --limit 20
python -m scrape.runner --source epa_ppls --reg-no 524-475
# Run every source registered in sources.json
python -m scrape.runner --all --limit 50
# Per-source modules also run standalone
python -m scrape.sources.bayer --class herbicide --limit 5
python -m scrape.sources.epa_ppls --seed-file seeds.txt
Every scraper is idempotent by default — re-running with the
same arguments skips records already on disk. Use --force to
re-fetch.
Corpus location
Default: corpus/ at the repo root. Override with the
PPLS_CORPUS_ROOT env var to route the corpus to external storage
(USB drive, NAS mount, secondary partition):
export PPLS_CORPUS_ROOT=/mnt/big-disk/ppls-corpus
python -m scrape.runner --source bayer --limit 20
# writes to /mnt/big-disk/ppls-corpus/bayer/...
All sources honor the same env var; each creates its own
<source_id>/ subdirectory beneath it. Per-source code paths
still resolve CORPUS_DIR correctly whether the env var is set
or not.
Scope: corn / soybeans / wheat
The corpus is scoped to the three crops the consumer app focuses on:
corn (incl. maize, popcorn), soybeans, and wheat. The EPA PPLS
scraper enforces this by inspecting the sites array on each
product's PPLS API response and dropping anything without a matching
site (word-boundary match against ROW_CROP_KEYWORDS).
Empirically (random N=100 sample): this narrow allowlist matches ~16% of all PPLS products and only loses ~6% of the broader "all US row crops" hit set, because corn/soy/wheat dominate ag chemistry registrations — products registered for cotton/sorghum/ rice/etc. are almost always also registered for one of corn, soy, or wheat.
The Bayer scraper doesn't filter — its catalog is implicitly ag-focused, and the catalog product names + descriptions don't expose enough crop metadata for a pre-API filter to be reliable. Add per-source filters as needed if other manufacturer sources turn up non-ag products.
Override the EPA filter for a one-off broader pull:
python -m scrape.sources.epa_ppls --no-row-crop-filter --reg-no 100-1486
EPA registrant allowlist
The EPA scraper applies a second filter at PPIS enumeration time:
only consider products from companies on the row-crop ag-chem
allowlist at scrape/sources/epa_registrant_allowlist.json.
This is a pre-API filter — products from non-allowlist registrants
are dropped before paying the per-product API call cost.
Effect: the 102,378-row PPIS universe shrinks to ~11,500 rows (~89% reduction). Full backfill drops from ~28 h to ~5–6 h.
The allowlist covers the major US row-crop ag-chem registrants (Syngenta, Bayer, BASF, Corteva, FMC, Nufarm, ADAMA, UPL, Albaugh, Loveland, AMVAC, Helena, Drexel, Atticus, etc.) — see the JSON file for the full set with verified company names. Edit it freely; the scraper loads it at run time. Each entry was verified by querying the EPA PPLS API for the first active product registered under that company number.
Bypass with --no-registrant-filter to enumerate the full universe
(useful if you suspect a row-crop product is registered to a small
or specialty company not on the list).
Canonical sidecar schema
Every corpus/<source>/<key>.json conforms to this shape. Fields
that don't apply to a given source are null (not omitted) so the
JSON is uniform across sources.
{
"source": "bayer",
"source_key": "warrant",
"epa_reg_no": "524-591",
"product_name": "Warrant Herbicide",
"product_class": "herbicide",
"registrant": null,
"active_ingredients": [
{"name": "acetochlor", "cas": "34256-82-1", "percent": 35.4}
],
"signal_word": "Caution",
"label": {
"url": "https://cs-assets.bayer.com/is/content/bayer/Warrant_2025pdf",
"filename": "Warrant_2025pdf",
"accepted_date": "2024-01-15",
"last_modified": "2026-05-15T20:21:54+00:00",
"page_count": 24,
"text_layer": true
},
"supplemental_documents": [
{"kind": "2EE", "title": "Warrant tank-mix 2EE — cotton",
"url": "https://cs-assets.bayer.com/.../...pdf",
"last_modified": "2026-04-01T12:00:00+00:00"}
],
"source_urls": {
"product_page": "https://www.cropscience.bayer.us/products/herbicides/warrant/label-msds",
"label_api": null,
"label_index": null
},
"fetched_at": "2026-05-23T22:05:29+00:00",
"scraper_version": "0.1.0"
}
Field reference
| Field | Type | Required | Notes |
|---|---|---|---|
source |
string | yes | Matches an id in sources.json. |
source_key |
string | yes | Per-source primary key. Filesystem-safe. |
epa_reg_no |
string | null | best-effort | Canonical EPA registration (e.g. 524-591, or 524-591-12345 with distributor suffix). The cross-source join key. |
product_name |
string | null | yes | Display name. |
product_class |
string | null | best-effort | One of herbicide, fungicide, insecticide, seed-treatment, rodenticide, other. EPA PPLS leaves this null; manufacturer sources usually know. |
registrant |
string | null | best-effort | Required-ish for regulator sources, often null for MFR sources where redundant. |
active_ingredients |
array of objects | yes (may be empty) | [{name, cas, percent}]. cas and percent are null when the source doesn't expose them. |
signal_word |
string | null | best-effort | Danger, Warning, Caution, or null. Operationally critical for the farmer advisor. |
label.url |
string | null | yes | Direct URL of the current label PDF. |
label.filename |
string | null | best-effort | Last URL segment, useful for diffing revisions. |
label.accepted_date |
ISO date | null | best-effort | EPA-stamped acceptance date. MFR sources may not expose this. |
label.last_modified |
ISO 8601 datetime | null | best-effort | From the PDF's HTTP Last-Modified header. Always normalized to ISO 8601 UTC. |
label.page_count |
int | null | best-effort | After download. |
label.text_layer |
bool | null | best-effort | false for scanned PDFs that need OCR. |
supplemental_documents |
array | yes (may be empty) | 24(c) labels, 2(ee) bulletins, MSDS/SDS, product bulletins. EPA PPLS leaves this empty (those are separate API calls). |
source_urls.product_page |
string | null | best-effort | The HTML product page on the source site. |
source_urls.label_api |
string | null | best-effort | The JSON API endpoint that returned this record (for traceability). |
source_urls.label_index |
string | null | best-effort | The human-readable index/search URL. |
fetched_at |
ISO 8601 datetime | yes | When this sidecar was generated. |
scraper_version |
string | yes | Source module's SCRAPER_VERSION constant. |
Sources may add their own extra fields beyond the canonical schema
(EPA's sidecars carry registration_status and
registrant_company_number, for instance). Consumers should ignore
unknown fields.
Adding a new source
- Write
scrape/sources/<id>.pyexposing amain(argv: list[str]) -> intthat accepts at minimum--limit Nand--force. - Conform to the canonical sidecar schema. Add source-specific extras as additional top-level keys if they don't fit.
- Add an entry to
sources.json(id,title,type,homepage,scraper,scraper_version,license_note). - Scrapers MUST be polite: rate-limit to ≤1 req/sec, set a real User-Agent identifying the project, retry with backoff on 429/5xx, and respect robots.txt unless an explicit carve-out exists (e.g. Bayer's RAG allowlist).
- Scrapers MUST be idempotent: skip records already on disk unless
--forceis set.