Ecosyste.ms: Awesome

An open API service indexing awesome lists of open source software.

https://github.com/argonne-lcf/llm-workshop


https://github.com/argonne-lcf/llm-workshop

Last synced: 27 days ago
JSON representation

Lists

README

        

# Large Language Models (LLMs): Tutorial Workshop

[Workshop Agenda](https://anl.app.box.com/file/1421615910690?s=woqtpw0o0tpnb6j9uljjme5wqmxsoz35)
Argonne National Laboratory
_February 12th and 13th, 2024_
**Building 240**, **Room 1501** (in-person)

This repository contains the materials used in the LLM Tutorial Workshop, February 12th and 13th, 2024.

The workshop material will rely on Jupyter Notebooks which are targeted for running on [Google's Colaboratory Platform](https://colab.research.google.com).

Tutorials


  1. LLMs 101

  2. Prompt Engineering

  3. Retrieval Augmented Generation (RAG)

  4. Fine-Tuning an Existing LLM

  5. LLMs from Scratch

## Before You Arrive ✅

> [!IMPORTANT]
> Complete the following steps **BEFORE** you come to the tutorial
>
> - [ ] [Google Colab](https://colab.research.google.com) **Setup Account**
>
> Google Colab Instructions
>
> The Colab platform gives the user a virtual machine in which to run Python codes including machine
> learning codes.
>
> The VM comes with a preinstalled environment that includes most of what is needed
> for these tutorials.
>
> * You need a Google Account to use Colaboratory
> * Go to [Google's Colaboratory Platform](https://colab.research.google.com) and sign in with
> your Google account
> * You should see this page
> ![start_page](./assets/colab_start_page_new.png)
> * Click on the `New Notebook` at the bottom
> * Now you will see a new notebook where you can type in python code.
> ![clean_page](./assets/colab_start_page1.png)
> * After you enter code, type ` + ` to execute the code cell.
> * A full introduction to the notebook environment is out of scope for this tutorial, but many
> can be found with a [simple Google
> search](https://www.google.com/search?q=jupyter+notebook+tutorial)
> * We will be using notebooks from this repository during the tutorial, so you should be
> familiar with how to import them into Colaboratory
> * Now you can open the `File` menu at the top left and select `Open Notebook` which will open a
> dialogue box.
> * Select the `GitHub` tab in the dialogue box.
> * From here you can enter the url for the github repo: `https://github.com/brettin/llm_tutorial`
> and hit ``.
> ![open_github](./assets/colab_open_github_1.png)
> * This will show you a list of the Notebooks available in the repo.
> * Select the `introduction.ipynb` file to open and work through it.
> * As each session of the tutorial begins, you will simply select the corresponding notebook from
> this list and it will create a copy for you in your Colaboratory account (all `*.ipynb` files in
> the Colaboratory account will be stored in your Google Drive).
> * To use a TPU, in the notbook the select `Runtime` -> `Change Runtime Type` and you have a
> dropbox list of hardward settings to choose from where the notebook can run.
>
>
>
>
> - [ ] 🤗 [Hugging Face](https://huggingface.co): **Account and Access Token**
>
> Hugging Face Instructions
>
> - Sign up for a huggingface account and obtain an access token: https://huggingface.co
> - Sign Up (top bar)
> Log into huggingface and get an access token:
> - Login -> Settings (left pane) -> Access Tokens (left pane) -> New token (center pane)
>
>
>
> - [ ] 🦙 [Request access](https://ai.meta.com/resources/models-and-libraries/llama-downloads/) to Llama-2 model
>
> Llama-2 Access Instructions
>
> - Visit this https://huggingface.co/meta-llama/Llama-2-7b-hf and request access to the model
> - vist meta website and accept the terms https://ai.meta.com/resources/models-and-libraries/llama-downloads/
> - Note: Your Hugging Face account email address MUST match the email you provide on the Meta website, or your request will not be approved.
>
>