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AsGrad: A sharp unified analysis of asynchronous-SGD algorithms
We analyze asynchronous-type algorithms for distributed SGD in the heterogeneous setting,
where each worker has its own computation and communication speeds, as well as data …
where each worker has its own computation and communication speeds, as well as data …
Noiseless privacy-preserving decentralized learning
Decentralized learning (DL) enables collaborative learning without a server and without
training data leaving the users' devices. However, the models shared in DL can still be used …
training data leaving the users' devices. However, the models shared in DL can still be used …
[HTML][HTML] Assessment of Water Hydrochemical Parameters Using Machine Learning Tools
I Malashin, V Nelyub, A Borodulin, A Gantimurov… - Sustainability, 2025 - mdpi.com
Access to clean water is a fundamental human need, yet millions of people worldwide still
lack access to safe drinking water. Traditional water quality assessments, though reliable …
lack access to safe drinking water. Traditional water quality assessments, though reliable …
Beyond Noise: Privacy-Preserving Decentralized Learning with Virtual Nodes
Decentralized learning (DL) enables collaborative learning without a server and without
training data leaving the users' devices. However, the models shared in DL can still be used …
training data leaving the users' devices. However, the models shared in DL can still be used …
Decentralized Sporadic Federated Learning: A Unified Methodology with Generalized Convergence Guarantees
Decentralized Federated Learning (DFL) has received significant recent research attention,
capturing settings where both model updates and model aggregations--the two key FL …
capturing settings where both model updates and model aggregations--the two key FL …
Dual-Delayed Asynchronous SGD for Arbitrarily Heterogeneous Data
We consider the distributed learning problem with data dispersed across multiple workers
under the orchestration of a central server. Asynchronous Stochastic Gradient Descent …
under the orchestration of a central server. Asynchronous Stochastic Gradient Descent …
Asynchronous SGD with stale gradient dynamic adjustment for deep learning training
Asynchronous stochastic gradient descent (ASGD) is a computationally efficient algorithm,
which speeds up deep learning training and plays an important role in distributed deep …
which speeds up deep learning training and plays an important role in distributed deep …