Getting Started with Machine Learning
This is User:Ben's guide to getting started with machine learning.
Contents
Dependencies
Here's some useful dependencies that I use:
- uv
- This is similar to Pip but written in Rust and is way faster
- It has nice management of virtual environments
- Can use Conda instead but it is much slower
 
- Github Copilot
- mlfab
- This is a Python package I made to help make it easy to quickly try out machine learning ideas in PyTorch
 
- Coding tools
Installing Starter Project
- Go to this project and install it
Opening the project in VSCode
- Create a VSCode config file that looks something like this:
{
  "folders": [
    {
      "name": "Getting Started",
      "path": "/home/ubuntu/Github/getting_started"
    },
    {
      "name": "Workspaces",
      "path": "/home/ubuntu/.code-workspaces"
    }
  ],
  "settings": {
    "cmake.configureSettings": {
      "CMAKE_CUDA_COMPILER": "/usr/bin/nvcc",
      "CMAKE_PREFIX_PATH": [
        "/home/ubuntu/.virtualenvs/getting-started/lib/python3.11/site-packages/torch/share/cmake"
      ],
      "PYTHON_EXECUTABLE": "/home/ubuntu/.virtualenvs/getting-started/bin/python",
      "TORCH_CUDA_ARCH_LIST": "'8.0'"
    },
    "python.defaultInterpreterPath": "/home/ubuntu/.virtualenvs/getting-started/bin/python",
    "ruff.path": [
      "/home/ubuntu/.virtualenvs/getting-started/bin/ruff"
    ]
  }
}
- Install the VSCode SSH extension
- SSH into the cluster (see K-Scale Cluster for instructions)
- Open the workspace that you created in VSCode
Useful Brain Dump Stuff
- Use breakpoint()to debug code
- Check out the mlfab examples directory for some ideas
- It is a good idea to try to write the full training loop yourself to figure out what's going on

