/llm-python

Large Language Models (LLMs) tutorials & sample scripts, ft. langchain, openai, llamaindex, gpt, chromadb & pinecone

Primary LanguagePythonMIT LicenseMIT

llm-python

A set of instructional materials, code samples and Python scripts featuring LLMs (GPT etc) through interfaces like llamaindex, langchain, Chroma (Chromadb), Pinecone etc. Mainly used to store reference code for my LangChain tutorials on YouTube.

LangChain youtube tutorials

Learn LangChain from my YouTube channel (~8 hours of LLM hands-on building tutorials); Each lesson is accompanied by the corresponding code in this repo and is designed to be self-contained -- while still focused on some key concepts in LLM (large language model) development and tooling.

Feel free to pick and choose your starting point based on your learning goals:

Part LLM Tutorial Link Video Duration
1 OpenAI tutorial and video walkthrough Tutorial Video 26:56
2 LangChain + OpenAI tutorial: Building a Q&A system w/ own text data Tutorial Video 20:00
3 LangChain + OpenAI to chat w/ (query) own Database / CSV Tutorial Video 19:30
4 LangChain + HuggingFace's Inference API (no OpenAI credits required!) Tutorial Video 24:36
5 Understanding Embeddings in LLMs Tutorial Video 29:22
6 Query any website with LLamaIndex + GPT3 (ft. Chromadb, Trafilatura) Tutorial Video 11:11
7 Locally-hosted, offline LLM w/LlamaIndex + OPT (open source, instruction-tuning LLM) Tutorial Video 32:27
8 Building an AI Language Tutor: Pinecone + LlamaIndex + GPT-3 + BeautifulSoup Tutorial Video 51:08
9 Building a queryable journal 💬 w/ OpenAI, markdown & LlamaIndex 🦙 Tutorial Video 40:29
10 Making a Sci-Fi game w/ Cohere LLM + Stability.ai: Generative AI tutorial Tutorial Video 1:02:20
11 GPT builds entire party invitation app from prompt (ft. SMOL Developer) Tutorial Video 41:33
12 A language for LLM prompt design: Guidance Tutorial Video 43:15
13 You should use LangChain's Caching! Tutorial Video 25:37
14 Build Chat AI apps with Steamlit + LangChain Tutorial Video 32:11

The full lesson playlist can be found here.

Quick Start

  1. Clone this repo
  2. Install requirements: pip install -r requirements.txt
  3. Some sample data are provided to you in the news foldeer, but you can use your own data by replacing the content (or adding to it) with your own text files.
  4. Create a .env file which contains your OpenAI API key. You can get one from here. HUGGINGFACEHUB_API_TOKEN and PINECONE_API_KEY are optional, but they are used in some of the lessons.
    • Lesson 10 uses Cohere and Stability AI, both of which offers a free tier (no credit card required). You can add the respective keys as COHERE_API_KEY and STABILITY_API_KEY in the .env file.

The .env file should look like this:

OPENAI_API_KEY=your_api_key_here

# optionals (not required for most of the series)
HUGGINGFACEHUB_API_TOKEN=your_api_token_here
PINECONE_API_KEY=your_api_key_here

HuggingFace and Pinecone are optional but is recommended if you want to use the Inference API and explore those models outside of the OpenAI ecosystem. This is demonstrated in Part 3 of the tutorial series. 5. Run the examples in any order you want. For example, python 6_team.py will run the website Q&A example, which uses GPT-3 to answer questions about a company and the team of people working at Supertype.ai. Watch the corresponding video to follow along each of the examples.

Dependencies

💡 Thanks to the work of @VanillaMacchiato, this project is updated as of 2023-06-30 to use the latest version of LlamaIndex (0.6.31) and LangChain (0.0.209). Installing the dependencies should be as simple as pip install -r requirements.txt. If you encounter any issues, please let me know.

If you're watching the LLM video tutorials, they may have very minor differences (typically 1-2 lines of code that needs to be changed) from the code in this repo since these videos have been released with the respective versions at the time of recording (LlamaIndex 0.5.7 and LangChain 0.0.157). Please refer to the code in this repo for the latest version of the code.

I will try to keep this repo up to date with the latest version of the libraries, but if you encounter any issues, please: (1) raise a discussion through Issues or (2) volunteer a PR to update the code.

Mentorship and Support

I run a mentorship program under Supertype Fellowship. The program is self-paced and free, with a community of other learners and practitioners around the world (English-speaking). You can optionally book a 1-on-1 session with my team of mentors to help you through video tutoring and code reviews.

License

MIT © Supertype 2023

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