AI在线 AI在线

Apple MLX Supports NVIDIA CUDA, AI Developers Benefit from Cost and Efficiency

Apple is adding support for NVIDIA CUDA to its machine learning framework MLX, which is designed for Apple Silicon chips. This breakthrough will provide AI developers with unprecedented flexibility and cost advantages.According to Appleinsider, developers can now use the MLX framework to develop AI applications on Macs equipped with Apple Silicon and export their code to run on NVIDIA GPUs or server environments that support CUDA.

Apple is adding support for NVIDIA CUDA to its machine learning framework MLX, which is designed for Apple Silicon chips. This breakthrough will provide AI developers with unprecedented flexibility and cost advantages.

According to Appleinsider, developers can now use the MLX framework to develop AI applications on Macs equipped with Apple Silicon and export their code to run on NVIDIA GPUs or server environments that support CUDA. This capability means developers can build model prototypes on macOS and seamlessly migrate to the NVIDIA platform during deployment, fully utilizing its powerful computing capabilities.

Concept phone Apple phone (1)

Previously, MLX was heavily dependent on Apple's own Metal framework, limiting its operation to the macOS system. Developers who wanted to deploy in a broader environment had to purchase expensive NVIDIA hardware for adaptation and testing, increasing development costs and barriers.

This CUDA support was led by GitHub developer @zcbenz, who spent several months developing, splitting, and integrating related modules, finally merging the code into the main branch of MLX. It is worth noting that this project does not mean native CUDA support on Macs, nor can it allow MLX on Macs to directly access NVIDIA GPUs through external graphics cards. Its core value lies in "code export compatibility," paving the way for cross-platform deployment.

For developers, this update offers the most direct benefit in terms of cost control: they can complete the development process on performance-rich but more affordable Apple Silicon Macs, and only transfer to expensive NVIDIA hardware when necessary for deployment or training large models. For startup teams and individual developers, this is undoubtedly a significant reduction in entry barriers.

Additionally, due to the powerful computing power of NVIDIA hardware in AI training tasks, MLX is expected to achieve significantly better performance after migrating to the CUDA platform, thus greatly improving training efficiency and model accuracy.

This compatibility expansion retains the efficient experience of Apple Silicon development while expanding the openness of the deployment level, and may become an important turning point for the MLX framework to enter a broader application ecosystem.

相关资讯

苹果MLX支持英伟达CUDA,AI开发者迎来成本与效率双重利好

苹果正在为其专为 Apple Silicon 芯片打造的机器学习框架 MLX 增添对英伟达 CUDA 的支持,这一突破性进展将为 AI 开发者提供前所未有的灵活性与成本优势。 据 Appleinsider 报道,开发者现在可以在配备 Apple Silicon 的 Mac 上使用 MLX 框架开发 AI 应用,并将代码导出至支持 CUDA 的英伟达显卡或服务器环境中运行。 这一能力的实现,意味着开发者可以在 macOS 上构建模型原型,并在部署阶段无缝迁移至英伟达平台,充分利用其强大算力。
7/16/2025 10:21:32 AM
AI在线

MLX-LM与Hugging Face实现无缝集成,助力Apple Silicon设备高效运行大语言模型

近日,MLX-LM现已直接集成到Hugging Face平台。 这一里程碑式的更新为Apple Silicon设备(包括M1、M2、M3和M4芯片)用户提供了前所未有的便利,使其能够以最高速度在本地运行超过4400种大型语言模型(LLM),无需依赖云服务或等待模型转换。 这一集成进一步推动了本地化AI开发的普及,为开发者和研究人员提供了更高效、灵活的工具。
5/20/2025 10:01:06 AM
AI在线

Disrupting Tradition! New Multi-Agent Framework OWL Gains 17K Stars, Surpassing OpenAI to Pioneer a New Era of Intelligent Collaboration

With the rapid development of large language models (LLMs), single agents have revealed many limitations when dealing with complex real-world tasks. To address this issue, a new multi-agent framework named Workforce and an accompanying training method called OWL (Optimized Workforce Learning) were jointly introduced by institutions such as Hong Kong University and camel-ai. Recently, this innovative achievement achieved an accuracy rate of 69.70% on the authoritative benchmark test GAIA, not only breaking the record for open-source systems but also surpassing commercial systems like OpenAI Deep Research..
6/17/2025 9:03:21 PM
AI在线
  • 1