Optimization algorithms for distributed machine learning
Series: Synthesis lectures on learning, networks, and algorithms | / edited by Lei YingPublication details: Springer 2023 SwitzerlandDescription: xiii, 127pISBN:- 9783031190667
- 006.31 J837o
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PK Kelkar Library, IIT Kanpur | In Acquisition | 006.31 J78o (Browse shelf(Opens below)) | Not for loan | A187031 |
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006.31 J78o Optimization algorithms for distributed machine learning | 006.31 J954m Machine learning The basics | 006.3223 Ex73e Explainable and interpretable reinforcement learning for robotics | 511.352 C420c Computability and complexity |
This book discusses state-of-the-art stochastic optimization algorithms for distributed machine learning and analyzes their convergence speed. The book first introduces stochastic gradient descent (SGD) and its distributed version, synchronous SGD, where the task of computing gradients is divided across several worker nodes. The author discusses several algorithms that improve the scalability and communication efficiency of synchronous SGD, such as asynchronous SGD, local-update SGD, quantized and sparsified SGD, and decentralized SGD. For each of these algorithms, the book analyzes its error versus iterations convergence, and the runtime spent per iteration. The author shows that each of these strategies to reduce communication or synchronization delays encounters a fundamental trade-off between error and runtime.
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