Intel has validated and optimized its AI product portfolio across client, edge and data center for several of Microsoft’s Phi-3 family of open models. The Phi-3 family of small, open models can run on lower-compute hardware, be more easily fine-tuned to meet specific requirements and enable developers to build applications that run locally. Intel’s supported products include Intel® Gaudi® AI accelerators and Intel® Xeon® processors for data center applications and Intel® Core™ Ultra processors and Intel® Arc™ graphics for client.
As part of its mission to bring AI everywhere, Intel continuously invests in the AI software ecosystem by collaborating with AI leaders and innovators.
Intel worked with Microsoft to enable Phi-3 model support for its central processing units (CPUs), graphics processing units (GPUs) and Intel Gaudi accelerators on launch day. Intel also co-designed the accelerator abstraction in DeepSpeed, which is an easy-to-use deep learning optimization software suite, and extended the automatic tensor parallelism support for Phi-3 and other models on Hugging Face.
The size of Phi-3 models is well-suited to be used for on-device inference and makes lightweight model development like fine-tuning or customization on AI PCs and edge devices possible. Intel client hardware is accelerated through comprehensive software frameworks and tools, including PyTorch and Intel® Extension for PyTorch used for local research and development and OpenVINO™ Toolkit for model deployment and inference.
Intel is committed to meet the generative AI needs of its enterprise customers and will continue to support and optimize software for Phi-3 and other leading state-of-the-art language models.
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