LGJul 2, 2025

Towards Decentralized and Sustainable Foundation Model Training with the Edge

arXiv:2507.01803v14 citationsh-index: 4ACM SIGEnergy Energy Informatics Review
Originality Synthesis-oriented
AI Analysis

This is an incremental vision paper addressing sustainability and decentralization issues for AI researchers and developers.

The paper tackles the problem of high computational demands and environmental impact in foundation model training by proposing a vision for decentralized training using edge AI devices, but does not present concrete results or numbers.

Foundation models are at the forefront of AI research, appealing for their ability to learn from vast datasets and cater to diverse tasks. Yet, their significant computational demands raise issues of environmental impact and the risk of centralized control in their development. We put forward a vision towards decentralized and sustainable foundation model training that leverages the collective compute of sparingly used connected edge AI devices. We present the rationale behind our vision, particularly in support of its sustainability benefit. We further outline a set of challenges that need to be addressed to turn this vision into reality.

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