Privacy-Preserving On-Device AI

Privacy-Preserving On-Device AI

Enabling secure model fine-tuning without sacrificing performance

DP-DyLoRA introduces a breakthrough approach for fine-tuning large language models with strong privacy guarantees on resource-constrained devices.

  • Combines differential privacy with dynamic low-rank adaptation to protect user data while maintaining model utility
  • Achieves up to 13× parameter reduction compared to standard fine-tuning methods
  • Demonstrates superior performance over existing differentially private federated learning approaches
  • Enables practical deployment on mobile devices with limited computational resources

This innovation addresses critical security concerns in federated learning by preventing sensitive information leakage while making privacy-preserving AI accessible for real-world applications.

DP-DyLoRA: Fine-Tuning Transformer-Based Models On-Device under Differentially Private Federated Learning using Dynamic Low-Rank Adaptation

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