license: apache-2.0
tags:
- uv-script
- ner
- zero-shot
- gliner
- hf-jobs
GLiNER UV Scripts
Zero-shot named-entity recognition over Hugging Face datasets using GLiNER. Pass a list of entity types at runtime — no fine-tuning required.
| Script | What it does | Output |
|---|---|---|
extract-entities.py |
Extract entities from a text column with a custom set of types | New entities column (list of {start, end, text, label, score}) |
Quick start
Run on any HF dataset with a text column. No setup — uv resolves dependencies inline.
# Local CPU (small samples)
uv run extract-entities.py \
librarian-bots/model_cards_with_metadata \
yourname/model-cards-entities \
--text-column card \
--entity-types Person Organization Dataset Model Framework \
--max-samples 100
On HF Jobs
# CPU job — fine for small/medium datasets, free or near-free
hf jobs uv run --flavor cpu-basic --secrets HF_TOKEN \
https://huggingface.co/datasets/uv-scripts/gliner/raw/main/extract-entities.py \
librarian-bots/model_cards_with_metadata \
yourname/model-cards-entities \
--text-column card \
--entity-types Person Organization Dataset Model Framework \
--max-samples 1000
# GPU job — worth it once you're processing >~1000 samples
hf jobs uv run --flavor t4-small --secrets HF_TOKEN \
https://huggingface.co/datasets/uv-scripts/gliner/raw/main/extract-entities.py \
librarian-bots/model_cards_with_metadata \
yourname/model-cards-entities \
--text-column card \
--entity-types Person Organization Dataset Model Framework \
--device cuda \
--batch-size 32
Reading from local files or a mounted bucket
The input_dataset argument also accepts local file paths (parquet, jsonl, json, csv). Useful when the input is staged in a Storage Bucket — typical pattern for multi-stage pipelines where an upstream Job has prepared the data:
hf jobs uv run --flavor t4-small --secrets HF_TOKEN \
-v hf://buckets/yourname/working-data:/input \
https://huggingface.co/datasets/uv-scripts/gliner/raw/main/extract-entities.py \
/input/data.parquet \
yourname/output-entities \
--text-column text --entity-types Person Organization Location \
--device cuda --batch-size 32
Local paths are detected heuristically — anything starting with /, ./, ../, or ending in a known data extension is treated as a file path; otherwise the argument is interpreted as a HF dataset ID.
Recommended entity-type vocabularies
GLiNER is open-vocabulary, so any string works. Some starting points:
- General news/web text:
Person Organization Location Date Event - ML/AI text (e.g. model cards):
Person Organization Dataset Model Framework Metric License - Legal/policy:
Person Organization Court Statute Date Jurisdiction - Biomedical:
Drug Disease Gene Protein Symptom
Quality drops on very abstract or polysemous types — start simple, iterate.
Models
Default: urchade/gliner_multi-v2.1 (multilingual, ~600 MB). Override with --gliner-model.
Other useful checkpoints:
urchade/gliner_small-v2.1— English, fasterurchade/gliner_large-v2.1— English, larger / higher qualityknowledgator/gliner-multitask-large-v0.5— multitask (NER + classification + relation)
See the Knowledgator org and urchade's models for the full set.
Pairing with Label Studio
Output of this script is a Hugging Face dataset of texts + extracted entities. To put those entities in front of human reviewers, see the bootstrap-labels skill (or the workflow it documents): pull this dataset's predictions into a Label Studio project for review, then export a corrected dataset back to the Hub.
Caveats
- GLiNER predictions are bootstrap labels — useful as a starting point, not as ground truth. Plan a review pass before downstream training.
- Texts longer than
--max-text-chars(default 8000) are truncated. Long-form documents may need chunking + reassembly. - Entity types are case-sensitive labels in output. Pass them as you want them to appear.