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Waypoint-1.5: Higher-Fidelity Interactive Worlds for Everyday GPUs ALTK‑Evolve: On‑the‑Job Learning for AI Agents Safetensors is Joining the PyTorch Foundation Holo3: Breaking the Computer Use Frontier Any Custom Frontend with Gradio's Backend A New Framework for Evaluating Voice Agents (EVA) Bringing Robotics AI to Embedded Platforms: Dataset Recording, VLA Fine‑Tuning, and On‑Device Optimizations One-Shot Any Web App with Gradio's gr.HTML CUGA on Hugging Face: Democratizing Configurable AI Agents New in llama.cpp: Model Management Building Deep Research: How we Achieved State of the Art OVHcloud on Hugging Face Inference Providers 🔥 20x Faster TRL Fine-tuning with RapidFire AI Building for an Open Future - our new partnership with Google Cloud Aligning to What? Rethinking Agent Generalization in MiniMax M2 Building a Healthcare Robot from Simulation to Deployment with NVIDIA Isaac Sentence Transformers is joining Hugging Face! 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Google Cloud TPUs made available to Hugging Face users
Simon Pagezy, Michelle Habonneau, Philipp Schmid, Alvaro Moran · 2024-07-09 · via Hugging Face - Blog

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Google Cloud TPUs made available to Hugging Face users

We're excited to share some great news! AI builders are now able to accelerate their applications with Google Cloud TPUs on Hugging Face Inference Endpoints and Spaces!

For those who might not be familiar, TPUs are custom-made AI hardware designed by Google. They are known for their ability to scale cost-effectively and deliver impressive performance across various AI workloads. This hardware has played a crucial role in some of Google's latest innovations, including the development of the Gemma 2 open models. We are excited to announce that TPUs will now be available for use in Inference Endpoints and Spaces.

This is a big step in our ongoing collaboration to provide you with the best tools and resources for your AI projects. We're really looking forward to seeing what amazing things you'll create with this new capability!

Hugging Face Inference Endpoints support for TPUs

Hugging Face Inference Endpoints provides a seamless way to deploy Generative AI models  with a few clicks on a dedicated, managed infrastructure using the cloud provider of your choice. Starting today, Google TPU v5e is available on Inference Endpoints. Choose the model you want to deploy, select Google Cloud Platform, select us-west1 and you’re ready to pick a TPU configuration:

We have 3 instance configurations, with more to come:

  • v5litepod-1 TPU v5e with 1 core and 16 GB memory ($1.375/hour)
  • v5litepod-4 TPU v5e with 4 cores and 64 GB memory ($5.50/hour)
  • v5litepod-8 TPU v5e with 8 cores and 128 GB memory ($11.00/hour)

ie-tpu

While you can use v5litepod-1 for models with up to 2 billion parameters without much hassle, we recommend to use v5litepod-4 for larger models to avoid memory budget issues. The larger the configuration, the lower the latency will be.

Together with the product and engineering teams at Google, we're excited to bring the performance and cost efficiency of TPUs to our Hugging Face community. This collaboration has resulted in some great developments:

  1. We've created an open-source library called Optimum TPU, which makes it super easy for you to train and deploy Hugging Face models on Google TPUs.
  2. Inference Endpoints uses Optimum TPU along with Text Generation Inference (TGI) to serve Large Language Models (LLMs) on TPUs.
  3. We’re always working on support for a variety of model architectures. Starting today you can deploy Gemma, Llama, and Mistral in a few clicks. (Optimum TPU supported models).

Hugging Face Spaces support for TPUs

Hugging Face Spaces provide developers with a platform to create, deploy, and share AI-powered demos and applications quickly. We are excited to introduce new TPU v5e instance support for Hugging Face Spaces. To upgrade your Space to run on TPUs, navigate to the Settings button in your Space and select the desired configuration:

  • v5litepod-1 TPU v5e with 1 core and 16 GB memory ($1.375/hour)
  • v5litepod-4 TPU v5e with 4 cores and 64 GB memory ($5.50/hour)
  • v5litepod-8 TPU v5e with 8 cores and 128 GB memory ($11.00/hour)

spaces-tpu

Go build and share with the community awesome ML-powered demos on TPUs on Hugging Face Spaces!

We're proud of what we've achieved together with Google and can't wait to see how you'll use TPUs in your projects.