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Resource-efficient Parallel Split Learning in Heterogeneous Edge Computing


แนวคิดหลัก
Efficiently accelerating federated learning on resource-constrained edge devices through adaptive model partitioning and bandwidth allocation.
บทคัดย่อ
  • Introduction to Edge AI:
    • Traditional AI training in centralized cloud environments faces challenges like high communication costs and privacy risks.
    • Edge AI emphasizes training models on edge devices closer to data sources.
  • Challenges in Edge AI:
    • Federated Learning (FL) enables collaborative model training while preserving user privacy.
    • Split learning partitions models for training on low-resource devices.
  • Parallel Split Learning:
    • Combines benefits of FL and split learning but neglects resource heterogeneity of edge devices.
  • EdgeSplit Framework:
    • Proposes adaptive model partitioning for heterogeneous edge devices, optimizing resource utilization and task orchestration.
  • Model Splitting and Bandwidth Allocation:
    • Formulates a task scheduling problem to minimize training time by optimizing model splitting and bandwidth allocation.
  • Experimental Evaluation:
    • Tests show EdgeSplit outperforms baselines, achieving up to a 5.5x speed improvement in training large DNN models.
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สถิติ
"Comprehensive tests conducted with a range of DNN models and datasets demonstrate that EdgeSplit not only facilitates the training of large models on resource-restricted edge devices but also surpasses existing baselines in performance." "Our proposed EdgeSplit can achieve up to 5.5x training speed improvement."
คำพูด

ข้อมูลเชิงลึกที่สำคัญจาก

by Mingjin Zhan... ที่ arxiv.org 03-26-2024

https://arxiv.org/pdf/2403.15815.pdf
Resource-efficient Parallel Split Learning in Heterogeneous Edge  Computing

สอบถามเพิ่มเติม

How can the concept of parallel split learning be further optimized for even greater efficiency

To further optimize the concept of parallel split learning for greater efficiency, several strategies can be implemented: Dynamic Model Partitioning: Instead of fixed partition points, dynamically adjusting the model splitting based on real-time resource availability and workload distribution among edge devices can enhance efficiency. Adaptive Bandwidth Allocation: Implementing adaptive bandwidth allocation mechanisms that consider network conditions and device capabilities can help in optimizing data transmission during training. Federated Scheduling Algorithms: Utilizing advanced scheduling algorithms like reinforcement learning or genetic algorithms to determine optimal task assignments and resource allocations across heterogeneous edge devices. Model Compression Techniques: Employing model compression techniques such as quantization, pruning, or knowledge distillation to reduce the size of models being trained on resource-constrained devices.

What are the potential drawbacks or limitations of adapting deep neural network models for heterogeneous edge computing environments

While adapting deep neural network models for heterogeneous edge computing environments offers numerous benefits, there are potential drawbacks and limitations to consider: Resource Variability: The diverse computational capabilities and memory constraints of edge devices may lead to uneven performance during training, affecting overall convergence speed and accuracy. Communication Overhead: Transmitting model updates between edge devices and servers over limited bandwidth networks can introduce latency issues, impacting the training process's efficiency. Security Concerns: Distributing sensitive data across multiple edge nodes raises security risks related to data privacy breaches or unauthorized access if adequate encryption measures are not implemented. Complexity in Optimization: Optimizing model partitioning and bandwidth allocation for a large number of heterogeneous devices requires sophisticated algorithms that may increase computational overhead.

How might the principles behind EdgeSplit be applied to other domains beyond federated learning and edge computing

The principles behind EdgeSplit can be applied beyond federated learning and edge computing domains in various ways: Distributed Computing Systems: EdgeSplit concepts could be adapted for distributed computing systems where tasks need to be efficiently allocated among different nodes with varying resources for improved system performance. Internet of Things (IoT): Applying EdgeSplit methodologies in IoT networks could optimize collaborative processing tasks among interconnected smart devices while considering their individual processing capacities. Cloud Computing Environments: Extending EdgeSplit ideas into cloud computing setups could enhance resource utilization by dynamically segmenting workloads based on server capacities and client demands for more efficient processing. 5G Networks: In 5G networks with multi-access edge computing (MEC), leveraging EdgeSplit techniques could streamline computation offloading decisions at the network's edges based on available resources, reducing latency in critical applications.
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