惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

B
Blog RSS Feed
C
CERT Recently Published Vulnerability Notes
P
Proofpoint News Feed
Y
Y Combinator Blog
T
The Blog of Author Tim Ferriss
云风的 BLOG
云风的 BLOG
H
Help Net Security
Recorded Future
Recorded Future
The Register - Security
The Register - Security
F
Full Disclosure
N
Netflix TechBlog - Medium
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
酷 壳 – CoolShell
酷 壳 – CoolShell
H
Hackread – Cybersecurity News, Data Breaches, AI and More
爱范儿
爱范儿
Security Archives - TechRepublic
Security Archives - TechRepublic
Simon Willison's Weblog
Simon Willison's Weblog
Cisco Talos Blog
Cisco Talos Blog
I
InfoQ
T
Tenable Blog
T
Tor Project blog
人人都是产品经理
人人都是产品经理
D
DataBreaches.Net
NISL@THU
NISL@THU
Google DeepMind News
Google DeepMind News
博客园 - 叶小钗
B
Blog
V
V2EX
Jina AI
Jina AI
L
LangChain Blog
月光博客
月光博客
W
WeLiveSecurity
U
Unit 42
AWS News Blog
AWS News Blog
C
Cyber Attacks, Cyber Crime and Cyber Security
博客园 - 聂微东
V
Visual Studio Blog
A
Arctic Wolf
T
Tailwind CSS Blog
The Cloudflare Blog
SecWiki News
SecWiki News
S
SegmentFault 最新的问题
Hacker News - Newest:
Hacker News - Newest: "LLM"
宝玉的分享
宝玉的分享
MyScale Blog
MyScale Blog
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
S
Securelist
www.infosecurity-magazine.com
www.infosecurity-magazine.com
腾讯CDC
雷峰网
雷峰网

Hugging Face - Blog

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! Unlock the power of images with AI Sheets Supercharge your OCR Pipelines with Open Models Google Cloud C4 Brings a 70% TCO improvement on GPT OSS with Intel and Hugging Face Get your VLM running in 3 simple steps on Intel CPUs Nemotron-Personas-India: Synthesized Data for Sovereign AI Introducing RTEB: A New Standard for Retrieval Evaluation Accelerating Qwen3-8B Agent on Intel® Core™ Ultra with Depth-Pruned Draft Models VibeGame: Exploring Vibe Coding Games Nemotron-Personas-Japan: ソブリン AI のための合成データセット Swift Transformers Reaches 1.0 – and Looks to the Future Smol2Operator: Post-Training GUI Agents for Computer Use SyGra: The One-Stop Framework for Building Data for LLMs and SLMs Gaia2 and ARE: Empowering the community to study agents Scaleway on Hugging Face Inference Providers 🔥 Democratizing AI Safety with RiskRubric.ai Public AI on Hugging Face Inference Providers 🔥 `LeRobotDataset:v3.0`: Bringing large-scale datasets to `lerobot` Visible Watermarking with Gradio Introducing the Palmyra-mini family: Powerful, lightweight, and ready to reason! Tricks from OpenAI gpt-oss YOU 🫵 can use with transformers Fine-tune Any LLM from the Hugging Face Hub with Together AI Jupyter Agents: training LLMs to reason with notebooks mmBERT: ModernBERT goes Multilingual Welcome EmbeddingGemma, Google's new efficient embedding model SAIR: Accelerating Pharma R&D with AI-Powered Structural Intelligence Make your ZeroGPU Spaces go brrr with ahead-of-time compilation NVIDIA Releases 6 Million Multi-Lingual Reasoning Dataset Generate Images with Claude and Hugging Face From Zero to GPU: A Guide to Building and Scaling Production-Ready CUDA Kernels MCP for Research: How to Connect AI to Research Tools Kimina-Prover-RL Arm & ExecuTorch 0.7: Bringing Generative AI to the masses Neural Super Sampling is here! TextQuests: How Good are LLMs at Text-Based Video Games? 🇵🇭 FilBench - Can LLMs Understand and Generate Filipino? Introducing AI Sheets: a tool to work with datasets using open AI models! Accelerate ND-Parallel: A guide to Efficient Multi-GPU Training Vision Language Model Alignment in TRL ⚡️ Welcome GPT OSS, the new open-source model family from OpenAI! Measuring Open-Source Llama Nemotron Models on DeepResearch Bench 📚 3LM: A Benchmark for Arabic LLMs in STEM and Code Implementing MCP Servers in Python: An AI Shopping Assistant with Gradio Introducing Trackio: A Lightweight Experiment Tracking Library from Hugging Face Say hello to `hf`: a faster, friendlier Hugging Face CLI ✨ Parquet Content-Defined Chunking TimeScope: How Long Can Your Video Large Multimodal Model Go? Fast LoRA inference for Flux with Diffusers and PEFT Accelerate a World of LLMs on Hugging Face with NVIDIA NIM Arc Virtual Cell Challenge: A Primer Consilium: When Multiple LLMs Collaborate Back to The Future: Evaluating AI Agents on Predicting Future Events Five Big Improvements to Gradio MCP Servers Ettin Suite: SoTA Paired Encoders and Decoders Migrating the Hub from Git LFS to Xet Kimina-Prover: Applying Test-time RL Search on Large Formal Reasoning Models Asynchronous Robot Inference: Decoupling Action Prediction and Execution ScreenEnv: Deploy your full stack Desktop Agent Building the Hugging Face MCP Server Reachy Mini - The Open-Source Robot for Today's and Tomorrow's AI Builders Creating custom kernels for the AMD MI300 Upskill your LLMs With Gradio MCP Servers SmolLM3: smol, multilingual, long-context reasoner Three Mighty Alerts Supporting Hugging Face’s Production Infrastructure Efficient MultiModal Data Pipeline Announcing NeurIPS 2025 E2LM Competition: Early Training Evaluation of Language Models Training and Finetuning Sparse Embedding Models with Sentence Transformers Welcome the NVIDIA Llama Nemotron Nano VLM to Hugging Face Hub Gemma 3n fully available in the open-source ecosystem! Transformers backend integration in SGLang (LoRA) Fine-Tuning FLUX.1-dev on Consumer Hardware Groq on Hugging Face Inference Providers 🔥 How Long Prompts Block Other Requests - Optimizing LLM Performance Learn the Hugging Face Kernel Hub in 5 Minutes Convert Transformers to ONNX with Hugging Face Optimum Intel and Hugging Face Partner to Democratize Machine Learning Hardware Acceleration Director of Machine Learning Insights [Part 3: Finance Edition] The Annotated Diffusion Model Deep Q-Learning with Space Invaders Graphcore and Hugging Face Launch New Lineup of IPU-Ready Transformers Introducing Pull Requests and Discussions 🥳 Efficient Table Pre-training without Real Data: An Introduction to TAPEX An Introduction to Q-Learning Part 2/2 How Sempre Health is leveraging the Expert Acceleration Program to accelerate their ML roadmap
An overview of inference solutions on Hugging Face
Julien Simon · 2022-11-21 · via Hugging Face - Blog

Back to Articles

Julien Simon's avatar

This article is also available in Chinese 简体中文.

Every day, developers and organizations are adopting models hosted on Hugging Face to turn ideas into proof-of-concept demos, and demos into production-grade applications. For instance, Transformer models have become a popular architecture for a wide range of machine learning (ML) applications, including natural language processing, computer vision, speech, and more. Recently, diffusers have become a popular architecuture for text-to-image or image-to-image generation. Other architectures are popular for other tasks, and we host all of them on the HF Hub!

At Hugging Face, we are obsessed with simplifying ML development and operations without compromising on state-of-the-art quality. In this respect, the ability to test and deploy the latest models with minimal friction is critical, all along the lifecycle of an ML project. Optimizing the cost-performance ratio is equally important, and we'd like to thank our friends at Intel for sponsoring our free CPU-based inference solutions. This is another major step in our partnership. It's also great news for our user community, who can now enjoy the speedup delivered by the Intel Xeon Ice Lake architecture at zero cost.

Now, let's review your inference options with Hugging Face.

Free Inference Widget

One of my favorite features on the Hugging Face hub is the Inference Widget. Located on the model page, the Inference Widget lets you upload sample data and predict it in a single click.

Here's a sentence similarity example with the sentence-transformers/all-MiniLM-L6-v2 model:

It's the best way to quickly get a sense of what a model does, its output, and how it performs on a few samples from your dataset. The model is loaded on-demand on our servers and unloaded when it's not needed anymore. You don't have to write any code and the feature is free. What's not to love?

Free Inference API

The Inference API is what powers the Inference widget under the hood. With a simple HTTP request, you can load any hub model and predict your data with it in seconds. The model URL and a valid hub token are all you need.

Here's how I can load and predict with the xlm-roberta-base model in a single line:

curl https://api-inference.huggingface.co/models/xlm-roberta-base \
    -X POST \
    -d '{"inputs": "The answer to the universe is <mask>."}' \
    -H "Authorization: Bearer HF_TOKEN"

The Inference API is the simplest way to build a prediction service that you can immediately call from your application during development and tests. No need for a bespoke API, or a model server. In addition, you can instantly switch from one model to the next and compare their performance in your application. And guess what? The Inference API is free to use.

As rate limiting is enforced, we don't recommend using the Inference API for production. Instead, you should consider Inference Endpoints.

Production with Inference Endpoints

Once you're happy with the performance of your ML model, it's time to deploy it for production. Unfortunately, when leaving the sandbox, everything becomes a concern: security, scaling, monitoring, etc. This is where a lot of ML stumble and sometimes fall. We built Inference Endpoints to solve this problem.

In just a few clicks, Inference Endpoints let you deploy any hub model on secure and scalable infrastructure, hosted in your AWS or Azure region of choice. Additional settings include CPU and GPU hosting, built-in auto-scaling, and more. This makes finding the appropriate cost/performance ratio easy, with pricing starting as low as $0.06 per hour.

Inference Endpoints support three security levels:

  • Public: the endpoint runs in a public Hugging Face subnet, and anyone on the Internet can access it without any authentication.

  • Protected: the endpoint runs in a public Hugging Face subnet, and anyone on the Internet with the appropriate Hugging Face token can access it.

  • Private: the endpoint runs in a private Hugging Face subnet and is not accessible on the Internet. It's only available through a private connection in your AWS or Azure account. This will satisfy the strictest compliance requirements.

To learn more about Inference Endpoints, please read this tutorial and the documentation.

Spaces

Finally, Spaces is another production-ready option to deploy your model for inference on top of a simple UI framework (Gradio for instance), and we also support hardware upgrades like advanced Intel CPUs and NVIDIA GPUs. There's no better way to demo your models!

To learn more about Spaces, please take a look at the documentation and don't hesitate to browse posts or ask questions in our forum.

Getting started

It couldn't be simpler. Just log in to the Hugging Face hub and browse our models. Once you've found one that you like, you can try the Inference Widget directly on the page. Clicking on the "Deploy" button, you'll get auto-generated code to deploy the model on the free Inference API for evaluation, and a direct link to deploy it to production with Inference Endpoints or Spaces.

Please give it a try and let us know what you think. We'd love to read your feedback on the Hugging Face forum.

Thank you for reading!