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FusionBench: A Unified Library and Comprehensive Benchmark for Deep Model Fusion
by
Tang, Anke
, Yang, Enneng
, Tao, Dacheng
, Hu, Han
, Luo, Yong
, Shen, Li
, Zhang, Lefei
, Du, Bo
in
Artificial neural networks
/ Benchmarks
/ Effectiveness
2025
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FusionBench: A Unified Library and Comprehensive Benchmark for Deep Model Fusion
by
Tang, Anke
, Yang, Enneng
, Tao, Dacheng
, Hu, Han
, Luo, Yong
, Shen, Li
, Zhang, Lefei
, Du, Bo
in
Artificial neural networks
/ Benchmarks
/ Effectiveness
2025
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FusionBench: A Unified Library and Comprehensive Benchmark for Deep Model Fusion
Paper
FusionBench: A Unified Library and Comprehensive Benchmark for Deep Model Fusion
2025
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Overview
Deep model fusion is an emerging technique that unifies the predictions or parameters of several deep neural networks into a single better-performing model in a cost-effective and data-efficient manner. Although a variety of deep model fusion techniques have been introduced, their evaluations tend to be inconsistent and often inadequate to validate their effectiveness and robustness. We present FusionBench, the first benchmark and a unified library designed specifically for deep model fusion. Our benchmark consists of multiple tasks, each with different settings of models and datasets. This variety allows us to compare fusion methods across different scenarios and model scales. Additionally, FusionBench serves as a unified library for easy implementation and testing of new fusion techniques. FusionBench is open source and actively maintained, with community contributions encouraged. Homepage https://github.com/tanganke/fusion_bench
Publisher
Cornell University Library, arXiv.org
Subject
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