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Batteryscibert Cased

Developed by batterydata
A language model pre-trained on a large corpus of battery research papers, inherited from SciBERT-cased, specializing in battery domain text comprehension
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Release Time : 3/2/2022

Model Overview

This model continues training on battery research paper corpora with masked language modeling objectives, suitable for text feature extraction and downstream task fine-tuning in the battery domain

Model Features

Domain specialization
Specially optimized for battery research domain, trained on 400,366 battery research papers
Case sensitivity
Capable of distinguishing word case forms (e.g., 'english' vs. 'English')
Bidirectional context understanding
Learns bidirectional text representations through masked language modeling

Model Capabilities

Text feature extraction
Masked vocabulary prediction
Domain text comprehension

Use Cases

Academic research
Battery literature analysis
Extract key information or features from battery research papers
Scientific information extraction
Identify domain-specific entities and relationships in battery research
Industrial applications
Patent analysis
Analyze battery technology patent texts
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