NIDCLGSYNov 3, 2022

Fair and Efficient Distributed Edge Learning with Hybrid Multipath TCP

arXiv:2211.09723v111 citationsh-index: 26
Originality Incremental advance
AI Analysis

This work addresses communication inefficiencies and unfairness in distributed edge learning over wireless networks, representing an incremental improvement over existing methods.

The paper tackles the communication bottleneck in distributed edge learning (DEL) by developing a hybrid multipath TCP (MPTCP) that combines model-based and deep reinforcement learning techniques to reduce excess time and improve fairness, with emulation results showing effective mitigation of these issues.

The bottleneck of distributed edge learning (DEL) over wireless has shifted from computing to communication, primarily the aggregation-averaging (Agg-Avg) process of DEL. The existing transmission control protocol (TCP)-based data networking schemes for DEL are application-agnostic and fail to deliver adjustments according to application layer requirements. As a result, they introduce massive excess time and undesired issues such as unfairness and stragglers. Other prior mitigation solutions have significant limitations as they balance data flow rates from workers across paths but often incur imbalanced backlogs when the paths exhibit variance, causing stragglers. To facilitate a more productive DEL, we develop a hybrid multipath TCP (MPTCP) by combining model-based and deep reinforcement learning (DRL) based MPTCP for DEL that strives to realize quicker iteration of DEL and better fairness (by ameliorating stragglers). Hybrid MPTCP essentially integrates two radical TCP developments: i) successful existing model-based MPTCP control strategies and ii) advanced emerging DRL-based techniques, and introduces a novel hybrid MPTCP data transport for easing the communication of the Agg-Avg process. Extensive emulation results demonstrate that the proposed hybrid MPTCP can overcome excess time consumption and ameliorate the application layer unfairness of DEL effectively without injecting additional inconstancy and stragglers.

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