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Bert Base Uncased Squad V1 Sparse0.25

Developed by madlag
This is a BERT-base question-answering model employing block-sparse technology, fine-tuned on the SQuAD1.1 dataset, running approximately 3 times faster than dense networks while retaining only 25% of the original weights.
Downloads 20
Release Time : 3/2/2022

Model Overview

This model is a question-answering system based on the BERT-base uncased architecture, specifically fine-tuned for the SQuAD1.1 dataset, achieving sparsity through dynamic pruning techniques.

Model Features

Block Sparse Technology
Utilizes block-sparse technology, running approximately 3 times faster than dense networks while retaining only 25% of the original weights.
Dynamic Pruning
Employs an improved version of Victor Sanh's dynamic pruning method for efficient model compression.
Case Insensitivity
The model is case-insensitive, treating 'english' and 'English' as identical.

Model Capabilities

Question Answering System
Text Understanding
Contextual Question Answering

Use Cases

Education
Historical Knowledge Q&A
Answers questions about historical figures, events, etc.
Accuracy 74.82(EM)/83.7(F1)
Travel
Landmark Information Query
Answers questions about tourist attractions.
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