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With Llama 3.2 we released our first-ever lightweight Llama models: 1B & 3B. These models empower developers to build personalized, on-device agentic applications with capabilities like summarization, tool use and RAG where data never leaves the device.

153,348 次观看 • 1 年前 •via X (Twitter)

9 条评论

AI at Meta 的头像
AI at Meta1 年前

More details, reference applications and model downloads ➡️

Vaibhav (VB) Srivastav 的头像
Vaibhav (VB) Srivastav1 年前

Love it! Thanks for the smol models again! - With MLC we managed to make them work on WebGPU 🔥 1B & 3B running in a browser..

Konrad Lercher 的头像
Konrad Lercher1 年前

Please tell me that these are EU-available😖

AJ - e/Acc 🚀🇨🇴🇵🇷 的头像
AJ - e/Acc 🚀🇨🇴🇵🇷1 年前

When are we going to get meta Ai in WhatsApp, Instagram Dm and messenger with voice mode?

Maham Codes 👩‍💻 的头像
Maham Codes 👩‍💻1 年前

love how these models are making the entire agentic applications super fast. Dropping this here in case someone needs it :)

Emin Temiz 的头像
Emin Temiz1 年前

does your 90B perform better than 3.1 70B for text generation?

Steven Moon 的头像
Steven Moon1 年前

I have been playing around with running these locally on my iPhone and iPad today. Very impressive work. I am getting super excited over the potential this has in mobile app development.

Sumanta Das 的头像
Sumanta Das1 年前

Rolls out??

hicksford 的头像
hicksford1 年前

what are the licensing requirements for corporate use?

相关视频

"Introducing Multimodal Llama 3.2": As promised two weeks ago, here's the short course on Meta's latest open model! This short course is created with Meta and taught by Amit Sangani, Director of AI Partner Engineering at Meta. Meta’s Llama family of models is leading the way in open models, allowing anyone to download, customize, fine-tune, or build new applications on top of them. Learn about the vision capabilities of the Llama 3.2, and use it for image classification, prompting, tokenization, tool-calling. You'll also learn about the open-source Llama stack, which gives building blocks for many different stages of the LLM application life cycle. In detail, you’ll: - Learn what are the features of Meta's four newest models, and when to use which Llama model. - Learn best practices for multimodal prompting, with applications to advanced image reasoning, illustrated by many examples: Understanding errors on a car dashboard, adding up the total of photographed restaurant receipts, grading written math homework. - Use different roles—system, user, assistant, ipython—in the Llama 3.1 and 3.2 models and the prompt format that identifies those roles. - Understand how Llama uses the tiktoken tokenizer, and how it has expanded to a 128k vocabulary size that improves encoding efficiency and multilingual support. - Learn how to prompt Llama to call built-in and custom tools (functions) with examples for web search and solving math equations. - Learn about Llama Stack, a standardized interface for common toolchain components like fine-tuning or synthetic data generation, useful for building agentic applications. By the end of this course, you’ll be equipped to build out new applications with the new Llama 3.2. Thank you to Ahmad Al-Dahle, Amit Sangani, and the whole AI at Meta team AI at Meta for all the hard work on Llama 3.2 — we’re excited to make these open models even more accessible to more developers with this new course! Please sign up here!

Andrew Ng

131,606 次观看 • 1 年前