M

Modernbert Base Squad2 V0.2

Developed by Praise2112
QA model fine-tuned from ModernBERT-base-nli, supporting long-context processing
Downloads 42
Release Time : 1/12/2025

Model Overview

This model is a question-answering model fine-tuned on the rajpurkar/squad_v2 dataset based on ModernBERT-base-nli, natively supporting context lengths up to 8,192 tokens, suitable for QA tasks.

Model Features

Long Context Support
Natively supports context lengths up to 8,192 tokens, ideal for long-document QA
Efficient Attention Mechanism
Employs local-global alternating attention mechanism to enhance long-input processing efficiency
Optimized Inference Performance
Uses unpadding and flash attention techniques to optimize inference speed

Model Capabilities

Text QA
Long Document Understanding
Semantic Search

Use Cases

Question Answering System
Document-based QA
Extracts answers from long documents to answer user questions
Exact Match 83.96%, F1 Score 87.04%
Information Retrieval
Document Content Retrieval
Retrieves relevant information from large-scale documents
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase