Skip to content

Latest commit

 

History

History
34 lines (22 loc) · 1.81 KB

README.md

File metadata and controls

34 lines (22 loc) · 1.81 KB

encoder-decoder

An image to text encoder decoder built using pytorch

Instructions

You will need python 3.10 and poetry installed to run this project. I recommend that you run it in a devcontainer, though.

Devcontainer setup

First, allocate an ubuntu (22.04) vm instace with gpu and ssh into it.

  1. create the working directory: sudo mkdir /workspace && cd /workspace
  2. clone the repository sudo git clone https://github.com/alita-moore/img-to-text && sudo chown -R ubuntu:ubuntu && cd img-to-text
  3. setup the vm sudo bash .devcontainer/setup-vm.sh (you'll need to press enter / yes during the process)
  4. Restart your machine: sudo shutdown -r now (you'll need to ssh back into the system)
  5. cd into the project directory cd /workspace/img-to-text
  6. run docker login and login to docker, this is necessary to pull the relevant cuda image
  7. build and launch the devcontainer devcontainer up --workspace-folder . --remove-existing-container
  8. setup a local docker context and connect to the running devcontainer remotely via vscode (tutorial: https://www.doppler.com/blog/visual-studio-code-remote-dev-containers-on-aws)
  9. once inside of the container navigate to /workspaces/img-to-text and run poetry install

Running the model

You can test inference capabilities via the dev.py file which mimics a jupyter notebook. To collect torch trace logs you should run the model with the following command:

TORCH_TRACE=/logs poetry run python dev.py

Local setup

If you wish to run this code locally instead, make sure you have at least cuda 12.4 installed and then run poetry install. You can install poetry via pip install pipx && pipx install poetry && pipx ensurepath if it's not already installed.

Acknowledgments

The text_decoder code was largely provided by https://github.com/EleutherAI/aria-amt