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Ihor/gliner-biomed-large-v1.0

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Primitive: /extract · Extract · DeBERTa

The model was presented in the paper GLiNER-BioMed: A Suite of Efficient Models for Open Biomedical Named Entity Recognition.

Entities

Overview

Hardware: — drives latency, throughput & cost

Size435M params
Tasks /extract
Licenseapache-2.0
Languagesen
Latency108 ms
Throughput9.9K tok/s
Cost$0.023 /1M tok

Cost is approximate — computed from list GPU prices; your actual price depends on the provider you deploy SIE with.

Extraction

Output kindsEntities
Inputstext
Max sequence length

Benchmarks

CoNLL-2003

news ner en

Named entity recognition on Reuters newswire text

Corpus: 3,453 Queries: 3,453
Quality
f1 0.6439
precision 0.5903
recall 0.7082
Performance L4 b1 c16
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