Igor Kasianenko f7cbd150e8 fix one colab link 9 ماه پیش
..
RAG aa60f75d44 Fixed all "Open in Colab" absolute paths 10 ماه پیش
finetuning b607b7645c Cleaned up notebook outputs containing references 10 ماه پیش
inference e5b999d29a Resolved merge conflicts 10 ماه پیش
Prompt_Engineering_with_Llama.ipynb aa60f75d44 Fixed all "Open in Colab" absolute paths 10 ماه پیش
README.md 28d4733e77 fix links 10 ماه پیش
build_with_Llama_3_2.ipynb f7cbd150e8 fix one colab link 9 ماه پیش

README.md

Llama-Recipes Getting Started

If you are new to developing with Meta Llama models, this is where you should start. This folder contains introductory-level notebooks across different techniques relating to Meta Llama.

  • The Build_with_Llama 3.2 notebook showcases a comprehensive walkthrough of the new capabilities of Llama 3.2 models, including multimodal use cases, function/tool calling, Llama Stack, and Llama on edge.
  • The Prompt_Engineering_with_Llama notebook showcases the various ways to elicit appropriate outputs from Llama. Take this notebook for a spin to get a feel for how Llama responds to different inputs and generation parameters.
  • The inference folder contains scripts to deploy Llama for inference on server and mobile. See also 3p_integrations/vllm and 3p_integrations/tgi for hosting Llama on open-source model servers.
  • The RAG folder contains a simple Retrieval-Augmented Generation application using Llama.
  • The finetuning folder contains resources to help you finetune Llama on your custom datasets, for both single- and multi-GPU setups. The scripts use the native llama-recipes finetuning code found in finetuning.py which supports these features: