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Gliner Biomed Large V1.0

Developed by Ihor
GLiNER-BioMed is a specialized and efficient open biomedical NER model suite based on the GLiNER framework, achieving state-of-the-art zero-shot and few-shot performance in biomedical entity recognition tasks.
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Release Time : 2/19/2025

Model Overview

GLiNER is a Named Entity Recognition (NER) model capable of identifying any entity type using a bidirectional Transformer encoder. GLiNER-BioMed is specifically optimized for the biomedical domain, leveraging synthetic annotated data for high performance.

Model Features

Open Entity Recognition
Capable of recognizing any user-defined entity types, not limited to predefined entities.
Biomedical Specialization
Optimized for the biomedical domain, excelling in biomedical NER tasks.
Efficient Performance
More efficient and smaller in size compared to large language models, especially in resource-constrained scenarios.
Zero-shot and Few-shot Learning
Outstanding performance in zero-shot and few-shot settings.

Model Capabilities

Biomedical Entity Recognition
Multi-category Entity Recognition
Zero-shot Learning
Few-shot Learning

Use Cases

Healthcare
Clinical Record Analysis
Identifying diseases, medications, dosages, and other information from clinical records.
Accurately recognizes various medical entities.
Medical Literature Processing
Extracting key entity information from medical research papers.
Efficiently identifies specialized medical terminology.
Drug Development
Drug Information Extraction
Extracting drug names, dosages, effects, and other information from literature.
Supports drug development data analysis.
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