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Adaptive Federated Learning in Resource Constrained Edge Computing Systems

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TLDR
In this paper, the authors consider the problem of learning model parameters from data distributed across multiple edge nodes, without sending raw data to a centralized place, and propose a control algorithm that determines the best tradeoff between local update and global parameter aggregation to minimize the loss function under a given resource budget.
Abstract
Emerging technologies and applications including Internet of Things, social networking, and crowd-sourcing generate large amounts of data at the network edge. Machine learning models are often built from the collected data, to enable the detection, classification, and prediction of future events. Due to bandwidth, storage, and privacy concerns, it is often impractical to send all the data to a centralized location. In this paper, we consider the problem of learning model parameters from data distributed across multiple edge nodes, without sending raw data to a centralized place. Our focus is on a generic class of machine learning models that are trained using gradient-descent-based approaches. We analyze the convergence bound of distributed gradient descent from a theoretical point of view, based on which we propose a control algorithm that determines the best tradeoff between local update and global parameter aggregation to minimize the loss function under a given resource budget. The performance of the proposed algorithm is evaluated via extensive experiments with real datasets, both on a networked prototype system and in a larger-scale simulated environment. The experimentation results show that our proposed approach performs near to the optimum with various machine learning models and different data distributions.

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Journal ArticleDOI

Gradient and Channel Aware Dynamic Scheduling for Over-the-Air Computation in Federated Edge Learning Systems

TL;DR: In this article , the authors proposed a dynamic device scheduling mechanism, which can select qualified edge devices to transmit their local models with a proper power control policy so as to participate the model training at the server in federated learning via AirComp.
Journal ArticleDOI

Machine Learning for Time-of-Arrival Estimation With 5G Signals in Indoor Positioning

TL;DR: In this article , a software-defined receiver (SDR) based on machine learning is proposed to extract navigation observations from 5G signals, and the error sources of SDR in additive white gaussian noise channel and multipath channel are analyzed.
Proceedings ArticleDOI

Joint Selection of Local Trainers and Resource Allocation for Federated Learning in Open RAN Intelligent Controllers

TL;DR: In this paper , the authors proposed a framework named O-RANFed to deploy and optimize FL tasks in Open RAN to provide 5G slicing services, where a joint mathematical optimization model of local learners selection and resource allocation was formulated to improve the performance of FL.
Journal ArticleDOI

To Talk or to Work: Dynamic Batch Sizes Assisted Time Efficient Federated Learning Over Future Mobile Edge Devices

TL;DR: In this paper , the authors proposed a dynamic batch sizes assisted federated learning (DBFL) with convergence guarantee, which allows batch sizes to increase dynamically during training, which can unleash the computing potential of GPU's parallelism for on-device training and effectively leverage the fast wireless transmissions of mobile edge devices.
Journal ArticleDOI

Communication-Efficient Federated Edge Learning via Optimal Probabilistic Device Scheduling

TL;DR: In this paper , an optimized probabilistic device scheduling policy is derived in closed-form by solving the approximate communication time minimization problem, which gradually turns its priority from suppressing the remaining communication rounds to reducing per-round latency as the training process evolves.
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