PyTorch Edge

Build innovative and privacy-aware AI experiences for edge devices

PyTorch Edge

The AI landscape is quickly evolving, with AI models being deployed beyond server to edge devices such as mobile phones, wearables, AR/VR/MR and embedded devices. PyTorch Edge extends PyTorch's research-to-production stack to these edge devices and paves the way for building innovative, privacy-aware experiences with superior productivity, portability, and performance, optimized for these diverse hardware platforms.

Introducing ExecuTorch

To advance our PyTorch Edge offering, we developed ExecuTorch, our new runtime for edge devices. ExecuTorch facilitates PyTorch inference on edge devices while supporting portability across hardware platforms with lower runtime and framework tax. ExecuTorch was developed collaboratively between industry leaders including Meta, Arm, Apple, and Qualcomm.

With ExecuTorch, we’ve renewed our commitment to on-device AI. This extends our ecosystem in a much more “in the spirit of PyTorch” way, with productivity, hackability, and extensibility as critical components. We look forward to supporting edge and embedded applications with low latency, strong privacy, and innovation on the edge.

Learn more about PyTorch Edge

What’s New in ExecuTorch

ExecuTorch

PyTorchKorea @ GitHub

파이토치 한국 사용자 모임을 GitHub에서 만나보세요.

GitHub로 이동

한국어 튜토리얼

한국어로 번역 중인 파이토치 튜토리얼을 만나보세요.

튜토리얼로 이동

커뮤니티

다른 사용자들과 의견을 나누고, 도와주세요!

커뮤니티로 이동