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PromptFL: Let Federated Participants Cooperatively Learn Prompts Instead of Models -- Federated Learning in Age of Foundation Model

About

Quick global aggregation of effective distributed parameters is crucial to federated learning (FL), which requires adequate bandwidth for parameters communication and sufficient user data for local training. Otherwise, FL may cost excessive training time for convergence and produce inaccurate models. In this paper, we propose a brand-new FL framework, PromptFL, that replaces the federated model training with the federated prompt training, i.e., let federated participants train prompts instead of a shared model, to simultaneously achieve the efficient global aggregation and local training on insufficient data by exploiting the power of foundation models (FM) in a distributed way. PromptFL ships an off-the-shelf FM, i.e., CLIP, to distributed clients who would cooperatively train shared soft prompts based on very few local data. Since PromptFL only needs to update the prompts instead of the whole model, both the local training and the global aggregation can be significantly accelerated. And FM trained over large scale data can provide strong adaptation capability to distributed users tasks with the trained soft prompts. We empirically analyze the PromptFL via extensive experiments, and show its superiority in terms of system feasibility, user privacy, and performance.

Tao Guo, Song Guo, Junxiao Wang, Wenchao Xu• 2022

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-100 (test)
Accuracy72.43
3518
Image ClassificationCIFAR-10 (test)
Accuracy92.42
3381
Domain GeneralizationPACS
Accuracy (Art)92.77
221
Image ClassificationDTD (test)
Accuracy51.99
181
Image ClassificationDomainNet
Accuracy (ClipArt)98.23
161
Image ClassificationCaltech101 (test)
Accuracy93.47
121
Image ClassificationFood101 (test)
Accuracy85.15
87
Image ClassificationFlowers102 (test)
Accuracy74.47
68
Domain GeneralizationOffice-Home
Average Accuracy73.99
63
Domain GeneralizationVLCS (test)
Average Accuracy80.53
62
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