Dataset Viewer
The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.
LEGEX Code, Scrapers, Inference and Evaluation Pipeline
Python source for the LEGEX benchmark of civil-judgment review-table extraction. This repository contains:
- Scrapers for 19 jurisdictions (per-court HTML / API / HuggingFace
pull) in
legex/scrapers/. - Inference pipeline that calls Harvey, Gemini and OpenAI APIs against
a schema-constrained 14-field review table
(
legex/inference.py,legex/harvey.py,legex/models/classification.py). - Evaluation that compares system outputs against expert-coded gold
cells (
legex/evaluation.py), aggregates across jurisdictions (legex/analysis.py), and renders paper tables (legex/quant_results.py). - Conversion script
convert_goldenset_to_jsonl.py— turns the source XLSX goldensets into the JSONL format used bylegexbenchmark/goldensets.
Setup
git clone https://huggingface.co/datasets/legexbenchmark/code legex-code
cd legex-code
uv sync
cp .env.template .env
Required tokens depend on which scrapers / models you run, see
.env.template.
End-to-end workflow
# Acquire raw judgments per jurisdiction.
uv run legex-run
# Run inference for one system on one jurisdiction, Harvey has do be done separately as this is a commercial tool
uv run legex-classify --country us --model gpt-5.4-mini --full_text
# Evaluate one system on one jurisdiction.
uv run legex-evaluate --country us --system gpt
# Aggregate across all 12 evaluated jurisdictions and 3 systems.
uv run legex-analysis --out data/analysis
# Render the paper-headline LaTeX table.
uv run legex-quant-results \
--input data/analysis/per_country_per_column.csv \
--out data/analysis/quant_results.tex
To evaluate against the published goldensets and inference outputs, pull the two data repos into the expected layout:
huggingface-cli download legexbenchmark/goldensets --repo-type dataset --local-dir data --include "data/*"
huggingface-cli download legexbenchmark/inference-results --repo-type dataset --local-dir data --include "data/*"
# After these, data/<cc>/ contains goldenset_<cc>.jsonl + inference_*.csv
uv run legex-analysis --out data/analysis
CLI entrypoints
| Command | Module | Purpose |
|---|---|---|
legex-run |
legex.main:main |
Top-level scrape + filter + sample pipeline. |
legex-classify |
legex.inference:main |
Run an LLM over the goldenset and write predictions to CSV. |
legex-harvey-ingest |
legex.harvey:main |
Ingest a Harvey Vault Review export into the per-jurisdiction CSV format. |
legex-evaluate |
legex.evaluation:main |
Per-country, per-field bucket counts and recall / hallucination. |
legex-analysis |
legex.analysis:main |
Cross-jurisdiction analysis → CSV + LaTeX tables. |
legex-quant-results |
legex.quant_results:main |
Paper-headline summary from the analysis CSV. |
legex-pdf |
legex.pdf_export.cli:main |
Render per-row PDFs from a goldenset workbook. |
legex-plots |
legex.plots:main |
Plot helpers used in the paper. |
License
MIT.
- Downloads last month
- 88