Scaling Language Model Size in Cross-Device Federated Learning
Most studies in cross-device federated learning focus on small models, due to the server-client communication and on-device computation bottlenecks. In this work, we leverage various techniques for mitigating these bottlenecks to train larger language models in cross-device federated learning. With...
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Zusammenfassung: | Most studies in cross-device federated learning focus on small models, due to
the server-client communication and on-device computation bottlenecks. In this
work, we leverage various techniques for mitigating these bottlenecks to train
larger language models in cross-device federated learning. With systematic
applications of partial model training, quantization, efficient transfer
learning, and communication-efficient optimizers, we are able to train a $21$M
parameter Transformer and $20.2$M parameter Conformer that achieve the same or
better perplexity as that of a similarly sized LSTM with $\sim10\times$ smaller
client-to-server communication cost and $11\%$ lower perplexity than smaller
LSTMs commonly studied in literature. |
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DOI: | 10.48550/arxiv.2204.09715 |