English

Fastrack: Fast IO for Secure ML using GPU TEEs

Cryptography and Security 2024-10-22 v1 Hardware Architecture

Abstract

As cloud-based ML expands, ensuring data security during training and inference is critical. GPU-based Trusted Execution Environments (TEEs) offer secure, high-performance solutions, with CPU TEEs managing data movement and GPU TEEs handling authentication and computation. However, CPU-to-GPU communication overheads significantly hinder performance, as data must be encrypted, authenticated, decrypted, and verified, increasing costs by 12.69 to 33.53 times. This results in GPU TEE inference becoming 54.12% to 903.9% slower and training 10% to 455% slower than non-TEE systems, undermining GPU TEE advantages in latency-sensitive applications. This paper analyzes Nvidia H100 TEE protocols and identifies three key overheads: 1) redundant CPU re-encryption, 2) limited authentication parallelism, and 3) unnecessary operation serialization. We propose Fastrack, optimizing with 1) direct GPU TEE communication, 2) parallelized authentication, and 3) overlapping decryption with PCI-e transmission. These optimizations cut communication costs and reduce inference/training runtime by up to 84.6%, with minimal overhead compared to non-TEE systems.

Keywords

Cite

@article{arxiv.2410.15240,
  title  = {Fastrack: Fast IO for Secure ML using GPU TEEs},
  author = {Yongqin Wang and Rachit Rajat and Jonghyun Lee and Tingting Tang and Murali Annavaram},
  journal= {arXiv preprint arXiv:2410.15240},
  year   = {2024}
}
R2 v1 2026-06-28T19:28:29.168Z