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Auteurs principaux: Imteaj, Ahmed, Hossain, Md Zarif, Zaman, Saika, Shahid, Abdur R.
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2409.05347
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author Imteaj, Ahmed
Hossain, Md Zarif
Zaman, Saika
Shahid, Abdur R.
author_facet Imteaj, Ahmed
Hossain, Md Zarif
Zaman, Saika
Shahid, Abdur R.
contents The rapid advancement and increasing complexity of pretrained models, exemplified by CLIP, offer significant opportunities as well as challenges for Federated Learning (FL), a critical component of privacy-preserving artificial intelligence. This research delves into the intricacies of integrating large foundation models like CLIP within FL frameworks to enhance privacy, efficiency, and adaptability across heterogeneous data landscapes. It specifically addresses the challenges posed by non-IID data distributions, the computational and communication overheads of leveraging such complex models, and the skewed representation of classes within datasets. We propose TriplePlay, a framework that integrates CLIP as an adapter to enhance FL's adaptability and performance across diverse data distributions. This approach addresses the long-tail distribution challenge to ensure fairness while reducing resource demands through quantization and low-rank adaptation techniques.Our simulation results demonstrate that TriplePlay effectively decreases GPU usage costs and speeds up the learning process, achieving convergence with reduced communication overhead.
format Preprint
id arxiv_https___arxiv_org_abs_2409_05347
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TriplePlay: Enhancing Federated Learning with CLIP for Non-IID Data and Resource Efficiency
Imteaj, Ahmed
Hossain, Md Zarif
Zaman, Saika
Shahid, Abdur R.
Machine Learning
Artificial Intelligence
The rapid advancement and increasing complexity of pretrained models, exemplified by CLIP, offer significant opportunities as well as challenges for Federated Learning (FL), a critical component of privacy-preserving artificial intelligence. This research delves into the intricacies of integrating large foundation models like CLIP within FL frameworks to enhance privacy, efficiency, and adaptability across heterogeneous data landscapes. It specifically addresses the challenges posed by non-IID data distributions, the computational and communication overheads of leveraging such complex models, and the skewed representation of classes within datasets. We propose TriplePlay, a framework that integrates CLIP as an adapter to enhance FL's adaptability and performance across diverse data distributions. This approach addresses the long-tail distribution challenge to ensure fairness while reducing resource demands through quantization and low-rank adaptation techniques.Our simulation results demonstrate that TriplePlay effectively decreases GPU usage costs and speeds up the learning process, achieving convergence with reduced communication overhead.
title TriplePlay: Enhancing Federated Learning with CLIP for Non-IID Data and Resource Efficiency
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2409.05347