Run an AI Large Language Model (LLM) at home on your GPU

Описание к видео Run an AI Large Language Model (LLM) at home on your GPU

Download Docker Desktop: https://dockr.ly/46NkFOJ
This video is sponsored by Docker. https://www.docker.com/

Large Language Models (LLMs) are a type of AI model that have proven to be extremely powerful and useful for a wide variety of tasks. They may be "large" in the sense that they use billions of parameters, but that doesn't mean you need to be a big company in order to run one. In fact, you can run some of the latest and greatest LLMs on your own machine, on your GPU, completely for free. We'll see how to do all that and more in this video using Docker Desktop! We'll even write an app to detect YouTube comment spam using an LLM.


― mCoding with James Murphy (https://mcoding.io)

Docker: https://www.docker.com/
Ollama: https://ollama.com/
Ollama Docker image: https://hub.docker.com/r/ollama/ollama
Ollama Python: https://github.com/ollama/ollama-python
GPU compatibility: https://developer.nvidia.com/cuda-gpus

Docker Tutorial Video:    • Docker Tutorial for Beginners  
Fast Pow algorithm Video:    • Fast pow! A general recursive power a...  
YouTube Data API Video:    • Python + YouTube API | Automating des...  

Source code: https://github.com/mCodingLLC/VideosS...

SUPPORT ME ⭐
---------------------------------------------------
Sign up on Patreon to get your donor role and early access to videos!
  / mcoding  

Feeling generous but don't have a Patreon? Donate via PayPal! (No sign up needed.)
https://www.paypal.com/donate/?hosted...

Want to donate crypto? Check out the rest of my supported donations on my website!
https://mcoding.io/donate

Top patrons and donors: Laura M, Neel R, Dragos C, Jameson, Matt R, Pi, Vahnekie, Johan A, Mark M, Mutual Information

BE ACTIVE IN MY COMMUNITY 😄
---------------------------------------------------
Discord:   / discord  
Github: https://github.com/mCodingLLC/
Reddit:   / mcoding  
Facebook:   / james.mcoding  

CHAPTERS
---------------------------------------------------
0:00 Intro
0:56 Prerequisites
2:24 Running an model
4:33 Building an app
8:33 Containerizing the script

Комментарии

Информация по комментариям в разработке