#jupyter_notebook
Learning about Large Language Models (LLMs) can be very beneficial. You can build exciting projects over eight weeks, starting with simple tasks and moving to more complex ones. This journey helps you develop deep expertise in AI and LLMs. You'll learn by doing hands-on projects, which is a fun and effective way to understand how these models work. By the end, you'll have skills that can be used in real-world applications, making it a valuable learning experience.
https://github.com/ed-donner/llm_engineering
https://docs.pipenv.org/
#Pipenv — the officially recommended #Python#packaging tool from Python.org, free (as in freedom).
Pipenv is a tool that aims to bring the best of all packaging worlds (#bundler, #composer, #npm, #cargo, #yarn, etc.) to the Python world. #Windows is a first–class citizen, in our world.
It automatically creates and manages a #virtualenv for your projects, as well as adds/removes #packages from your #Pipfile as you install/uninstall packages. It also generates the ever–important Pipfile.lock, which is used to produce deterministic builds.
#python#api#bracket#brackets#docker#docusaurus#fastapi#json#mantine#nextjs#postgresql#python#react#reactjs#selfhosted#sports#tournament_bracket#tournament_manager#tournaments#web#yarn
Bracket is a tool for organizing tournaments. It supports different formats like single elimination, round-robin, and Swiss. You can create teams, add players, and manage multiple clubs with several tournaments. The system allows you to drag-and-drop matches to different courts or reschedule them. It also provides customizable dashboard pages for public viewing. This makes it easier to manage and engage with tournaments, offering more flexibility and control for organizers and participants.
https://github.com/evroon/bracket