GLiNER is a Named Entity Recognition (NER) model capable of identifying any entity type using a bidirectional transformer encoder (BERT-like). It provides a practical alternative to traditional NER models, which are limited to predefined entities, and Large Language Models (LLMs) that, despite their flexibility, are costly and large for resource-constrained scenarios.
- Paper: 📄 GLiNER: Generalist Model for Named Entity Recognition using Bidirectional Transformer
- Getting Started:
- Demo: 🤗 Hugging Face
- 🔍 Join the GLiNER discord server: https://discord.gg/Y2yVxpSQnG
- Synthetic data generation example is available (examples/synthetic_data_generation.ipynb).
- 🆕
gliner_multi_pii-v1
is available. This version has been optimized to recognize and classify Personally Identifiable Information (PII) within text. This version has been finetuned on six languages (English, French, German, Spanish, Italian, Portugese). - 🚀
gliner_multi-v2.1
,gliner_small-v2.1
,gliner_medium-v2.1
, andgliner_large-v2.1
are available under the Apache 2.0 license. - 🆕 gliner-spacy is available. Install it with
pip install gliner-spacy
. See Example of usage below. - 🧬
gliner_large_bio-v0.1
is a gliner model specialized for biomedical text. It is available under the Apache 2.0 license. - 📚 Training dataset preprocessing scripts are now available in the
data/
directory, covering both Pile-NER and NuNER datasets.
- 📘 See this directory
-
GLiNER Base:
urchade/gliner_base
(CC BY NC 4.0) -
GLiNER Small:
urchade/gliner_small
(CC BY NC 4.0) -
GLiNER Small v2:
urchade/gliner_small-v2
(Apache 2.0) -
GLiNER Small v2.1:
urchade/gliner_small-v2.1
(Apache 2.0) -
GLiNER Medium:
urchade/gliner_medium
(CC BY NC 4.0) -
GLiNER Medium v2:
urchade/gliner_medium-v2
(Apache 2.0) -
GLiNER Medium v2.1:
urchade/gliner_medium-v2.1
(Apache 2.0) -
GLiNER Large:
urchade/gliner_large
(CC BY NC 4.0) -
GLiNER Large v2:
urchade/gliner_large-v2
(Apache 2.0) -
GLiNER Large v2.1:
urchade/gliner_large-v2.1
(Apache 2.0) -
GLiNER NuNerZero span:
numind/NuNER_Zero-span
(MIT) - +4.5% more powerful GLiNER Large v2.1 -
GLiNER News:
EmergentMethods/gliner_medium_news-v2.1
(Apache 2.0) 9.5% improvement over GLiNER Large v2.1 on 18 benchmark datasets
Word-level models work better for finding multi-word entities, highlighting sentences or paragraphs. They require additional output postprocessing that can be found in the corresponding model card.
- GLiNER NuNerZero:
numind/NuNER_Zero
(MIT) - +3% more powerful GLiNER Large v2.1, better suitable to detect multi-word entities - GLiNER NuNerZero 4k context:
numind/NuNER_Zero-4k
(MIT) - 4k-long-context NuNerZero
- Korean: 🇰🇷
taeminlee/gliner_ko
- Italian: 🇮🇹
DeepMount00/universal_ner_ita
- Multilingual: 🌐
urchade/gliner_multi
(CC BY NC 4.0) andurchade/gliner_multi-v2.1
(Apache 2.0)
- Personally Identifiable Information: 🔍
urchade/gliner_multi_pii-v1
(Apache 2.0)- This model is capable of recognizing various types of personally identifiable information (PII), including but not limited to these entity types:
person
,organization
,phone number
,address
,passport number
,email
,credit card number
,social security number
,health insurance id number
,date of birth
,mobile phone number
,bank account number
,medication
,cpf
,driver's license number
,tax identification number
,medical condition
,identity card number
,national id number
,ip address
,email address
,iban
,credit card expiration date
,username
,health insurance number
,registration number
,student id number
,insurance number
,flight number
,landline phone number
,blood type
,cvv
,reservation number
,digital signature
,social media handle
,license plate number
,cnpj
,postal code
,passport_number
,serial number
,vehicle registration number
,credit card brand
,fax number
,visa number
,insurance company
,identity document number
,transaction number
,national health insurance number
,cvc
,birth certificate number
,train ticket number
,passport expiration date
, andsocial_security_number
.
- This model is capable of recognizing various types of personally identifiable information (PII), including but not limited to these entity types:
- Biomedical: 🧬
urchade/gliner_large_bio-v0.1
(Apache 2.0) - Birds attribute extraction: 🐦
wjbmattingly/gliner-large-v2.1-bird
(Apache 2.0)
- GLiNER multi-task large
knowledgator/gliner-multitask-large-v0.5
(Apache 2.0) - +4.5% on NER benchmarks over GLiNER Large v2.1, supports prompting, relation extraction, summarization and question-answering tasks.
To provide instructions on how to install the GLiNER model from source, you can add steps for cloning the repository and installing it manually. Here’s how you can incorporate those instructions:
To begin using the GLiNER model, you can install the GLiNER Python library through pip, conda, or directly from the source.
!pip install gliner
conda install -c conda-forge gliner
To install the GLiNER library from source, follow these steps:
-
Clone the Repository:
First, clone the GLiNER repository from GitHub:
git clone https://github.com/urchade/GLiNER
-
Navigate to the Project Directory:
Change to the directory containing the cloned repository:
cd GLiNER
-
Install Dependencies:
It's a good practice to create and activate a virtual environment before installing dependencies:
python -m venv venv source venv/bin/activate # On Windows use: venv\Scripts\activate
Install the required dependencies listed in the
requirements.txt
file:pip install -r requirements.txt
-
Install the GLiNER Package:
Finally, install the GLiNER package using the setup script:
pip install .
-
Verify Installation:
You can verify the installation by importing the library in a Python script:
import gliner print(gliner.__version__)
After the installation of the GLiNER library, import the GLiNER
class. Following this, you can load your chosen model with GLiNER.from_pretrained
and utilize predict_entities
to discern entities within your text.
from gliner import GLiNER
# Initialize GLiNER with the base model
model = GLiNER.from_pretrained("urchade/gliner_mediumv2.1")
# Sample text for entity prediction
text = """
Cristiano Ronaldo dos Santos Aveiro (Portuguese pronunciation: [kɾiʃˈtjɐnu ʁɔˈnaldu]; born 5 February 1985) is a Portuguese professional footballer who plays as a forward for and captains both Saudi Pro League club Al Nassr and the Portugal national team. Widely regarded as one of the greatest players of all time, Ronaldo has won five Ballon d'Or awards,[note 3] a record three UEFA Men's Player of the Year Awards, and four European Golden Shoes, the most by a European player. He has won 33 trophies in his career, including seven league titles, five UEFA Champions Leagues, the UEFA European Championship and the UEFA Nations League. Ronaldo holds the records for most appearances (183), goals (140) and assists (42) in the Champions League, goals in the European Championship (14), international goals (128) and international appearances (205). He is one of the few players to have made over 1,200 professional career appearances, the most by an outfield player, and has scored over 850 official senior career goals for club and country, making him the top goalscorer of all time.
"""
# Labels for entity prediction
labels = ["Person", "Award", "Date", "Competitions", "Teams"]
# Perform entity prediction
entities = model.predict_entities(text, labels, threshold=0.5)
# Display predicted entities and their labels
for entity in entities:
print(entity["text"], "=>", entity["label"])
Cristiano Ronaldo dos Santos Aveiro => person
5 February 1985 => date
Al Nassr => teams
Portugal national team => teams
Ballon d'Or => award
UEFA Men's Player of the Year Awards => award
European Golden Shoes => award
UEFA Champions Leagues => competitions
UEFA European Championship => competitions
UEFA Nations League => competitions
European Championship => competitions
GLiNER can be seamlessly integrated with spaCy. To begin, install the gliner-spacy
library via pip:
pip install gliner-spacy
Following installation, you can add GLiNER to a spaCy NLP pipeline. Here's how to integrate it with a blank English pipeline; however, it's compatible with any spaCy model.
import spacy
from gliner_spacy.pipeline import GlinerSpacy
# Configuration for GLiNER integration
custom_spacy_config = {
"gliner_model": "urchade/gliner_mediumv2.1",
"chunk_size": 250,
"labels": ["person", "organization", "email"],
"style": "ent",
"threshold": 0.3,
"map_location": "cpu" # only available in v.0.0.7
}
# Initialize a blank English spaCy pipeline and add GLiNER
nlp = spacy.blank("en")
nlp.add_pipe("gliner_spacy", config=custom_spacy_config)
# Example text for entity detection
text = "This is a text about Bill Gates and Microsoft."
# Process the text with the pipeline
doc = nlp(text)
# Output detected entities
for ent in doc.ents:
print(ent.text, ent.label_, ent._.score) # ent._.score only available in v. 0.0.7
Bill Gates => person
Microsoft => organization
To convert previously trained GLiNER models to ONNX format, you can use the convert_to_onnx.py
script. You need to provide the model_path
and save_path
arguments to specify the location of the model and where to save the ONNX file, respectively. Additionally, if you wish to quantize the model, set the quantize
argument to True (it quantizes to IntU8 by default).
Example usage:
python convert_to_onnx.py --model_path /path/to/your/model --save_path /path/to/save/onnx --quantize True
To load the converted ONNX models, you can use the following code snippet:
from gliner import GLiNER
model = GLiNER.from_pretrained("path_to_your_model", load_onnx_model=True, load_tokenizer=True)
The load_onnx_model
argument ensures that the GLiNER class recognizes that it should load the ONNX model instead of a PyTorch model.
Setting the `load_tokenizer`` argument to True loads the tokenizer from your model directory, including any additional tokens that were added during training.
- Extend the model to relation extraction. Our preliminary work GraphER.
- Allow longer context (eg. train with long context transformers such as Longformer, LED, etc.)
- Use Bi-encoder (entity encoder and span encoder) allowing precompute entity embeddings
- Filtering mechanism to reduce number of spans before final classification to save memory and computation when the number entity types is large
- Improve understanding of more detailed prompts/instruction, eg. "Find the first name of the person in the text"
- Better loss function: for instance use
Focal Loss
(see this paper) instead ofBCE
to handle class imbalance, as some entity types are more frequent than others - Improve multi-lingual capabilities: train on more languages, and use multi-lingual training data
- Decoding: allow a span to have multiple labels, eg: "Cristiano Ronaldo" is both a "person" and "football player"
- Dynamic thresholding (in
model.predict_entities(text, labels, threshold=0.5)
): allow the model to predict more entities, or less entities, depending on the context. Actually, the model tend to predict less entities where the entity type or the domain are not well represented in the training data. - Train with EMAs (Exponential Moving Averages) or merge multiple checkpoints to improve model robustness (see this paper)
The model authors are:
- Urchade Zaratiana
- Nadi Tomeh
- Pierre Holat
- Thierry Charnois
If you find GLiNER useful in your research, please consider citing our paper:
@misc{zaratiana2023gliner,
title={GLiNER: Generalist Model for Named Entity Recognition using Bidirectional Transformer},
author={Urchade Zaratiana and Nadi Tomeh and Pierre Holat and Thierry Charnois},
year={2023},
eprint={2311.08526},
archivePrefix={arXiv},
primaryClass={cs.CL}
}
This project has been supported and funded by FI Group and Laboratoire Informatique de Paris Nord.
Over the past 20 years, FI Group has become a specialist in public funding strategies for R&D&I² (Research and Development, Innovation and Investment). FI Group's consultants, all engineers or PhDs, support customers from R&D through to the production of their innovations.
We also extend our heartfelt gratitude to the open-source community for their invaluable contributions, which have been instrumental in the success of this project.