Gradient open-sources Parallax to promote the implementation of native AI applications
Foresight News reported that the distributed AI laboratory Gradient has announced the open-sourcing of Parallax, an operating system designed for local AI applications. This system supports cross-platform and cross-region deployment of open-source large models on heterogeneous devices such as Mac and Windows, allowing users to have full control over models, data, and AI memory. Parallax is equipped with built-in network-aware sharding and dynamic task routing mechanisms, enabling intelligent scheduling based on inference workloads and seamless switching between single-machine, multi-device, and wide-area cluster modes.
Currently, Parallax is compatible with more than 40 open-source large models, including Qwen3, Kimi K2, DeepSeek R1, and gpt-oss. Developers can deploy locally to build and run various AI applications such as programming assistants, personal agents, and multimodal generation in a fully autonomous manner, keeping all sensitive data and control permissions locally.
Disclaimer: The content of this article solely reflects the author's opinion and does not represent the platform in any capacity. This article is not intended to serve as a reference for making investment decisions.
You may also like
Europol pledges to increase international cooperation and investment to investigate cryptocurrency crimes
Mara Holdings sues Texas officials to block vote on noise regulation for its bitcoin mining facility
The Central Bank of Malaysia releases a 3-year asset tokenization roadmap focusing on RWA
