Efficient Parallel Split Learning Over Resource-Constrained Wireless Edge Networks
Fudan University · University of Hong Kong · +3 more institutions
Abstract
The increasingly deeper neural networks hinder the democratization of privacy-enhancing distributed learning, such as federated learning (FL), to resource-constrained devices. To overcome this challenge, in this paper, we advocate the integration of edge computing paradigm and parallel split learning (PSL), allowing multiple edge devices to offload substantial training workloads to an edge server via layer-wise model split. By observing that existing PSL schemes incur excessive training latency and a large volume of data transmissions, we propose an innovative PSL framework, namely, efficient parallel split learning (EPSL), to accelerate model training. To be specific, EPSL parallelizes client-side model…
Citation impact
- FWCI
- 37.61
- Percentile
- 100%
- References
- 62
Authors
7Topics & keywords
- Computer science
- Latency (audio)
- Edge device
- Edge computing
- Artificial intelligence
- Artificial neural network
- Computer network
- Deep learning