Scaling Distributed Machine Learning with In-Network Aggregation
- Amedeo Sapio ,
- Marco Canini ,
- Chen-Yu Ho ,
- Jacob Nelson ,
- Panos Kalnis ,
- Changhoon Kim ,
- Arvind Krishnamurthy ,
- Masoud Moshref ,
- Dan R. K. Ports ,
- Peter Richtarik
NSDI 2021 |
Organized by USENIX
Training machine learning models in parallel is an increasingly important workload. We accelerate distributed parallel training by designing a communication primitive that uses a programmable switch dataplane to execute a key step of the training process. Our approach, SwitchML, reduces the volume of exchanged data by aggregating the model updates from multiple workers in the network. We co-design the switch processing with the end-host protocols and ML frameworks to provide an efficient solution that speeds up training by up to 5.5x for a number of real-world benchmark models.