Journal Article10.1109/tnnls.2023.3309735
Enhancing Distributed Neural Network Training Through Node-Based Communications.
Sergio Moreno-Álvarez,Mercedes E. Paoletti,Gabriele Cavallaro,Juan M. Haut +3 more
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TL;DR: Enhancing distributed neural network training through node-based communications significantly reduces gradient exchange overhead, improving training time and accuracy.
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Abstract: The amount of data needed to effectively train modern deep neural architectures has grown significantly, leading to increased computational requirements. These intensive computations are tackled by the combination of last generation computing resources, such as accelerators, or classic processing units. Nevertheless, gradient communication remains as the major bottleneck, hindering the efficiency notwithstanding the improvements in runtimes obtained through data parallelism strategies. Data parallelism involves all processes in a global exchange of potentially high amount of data, which may impede the achievement of the desired speedup and the elimination of noticeable delays or bottlenecks. As a result, communication latency issues pose a significant challenge that profoundly impacts the performance on distributed platforms. This research presents node-based optimization steps to significantly reduce the gradient exchange between model replicas whilst ensuring model convergence. The proposal serves as a versatile communication scheme, suitable for integration into a wide range of general-purpose deep neural network (DNN) algorithms. The optimization takes into consideration the specific location of each replica within the platform. To demonstrate the effectiveness, different neural network approaches and datasets with disjoint properties are used. In addition, multiple types of applications are considered to demonstrate the robustness and versatility of our proposal. The experimental results show a global training time reduction whilst slightly improving accuracy. Code: https://github.com/mhaut/eDNNcomm.
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Citations
Federated learning meets remote sensing
Sergio Moreno‐Álvarez,Mercedes E. Paoletti,A. Sánchez-Fernández,Juan A. Rico‐Gallego,Lirong Han,Juan M. Haut +5 more
2
Model Agnostic Hybrid Sharding For Heterogeneous Distributed Inference
Claudio Angione,Yue Zhao,Harry Yang,Ahmad Farhan,Francis E. Johnston,James Buban,Patrick Colangelo +6 more
- 29 Jul 2024
TL;DR: This study introduces a model-agnostic sharding framework for decentralized AI inference, leveraging blockchain-based sequential sharding, compression techniques, and robust security measures to enable efficient and secure inference on a diverse network of nodes.
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