Home

Awesome

Text2Code for Jupyter notebook

A proof-of-concept jupyter extension which converts english queries into relevant python code.

Blog post with more details:

Data analysis made easy: Text2Code for Jupyter notebook

Demo Video:

Text2Code for Jupyter notebook

Supported Operating Systems:

Installation

NOTE: We have renamed the plugin from mopp to jupyter-text2code. Uninstall mopp before installing new jupyter-text2code version.

pip uninstall mopp

CPU-only install:

For Mac and other Ubuntu installations not having a nvidia GPU, we need to explicitly set an environment variable at time of install.

export JUPYTER_TEXT2CODE_MODE="cpu"

GPU install dependencies:

sudo apt-get install libopenblas-dev libomp-dev

Installation commands:

git clone https://github.com/deepklarity/jupyter-text2code.git
cd jupyter-text2code
pip install .
jupyter nbextension enable jupyter-text2code/main

Uninstallation:

pip uninstall jupyter-text2code

Usage Instructions:

Docker containers for jupyter-text2code (old version)

We have published CPU and GPU images to docker hub with all dependencies pre-installed.

Visit https://hub.docker.com/r/deepklarity/jupyter-text2code/ to download the images and usage instructions.
CPU image size: 1.51 GB
GPU image size: 2.56 GB

Model training:

The plugin now supports pandas commands + quick snippet insertion of available snippets from awesome-notebooks. With this change, we can now get snippets for most popular integrations from within the jupyter tab. eg:

Steps to add more intents:

TODO:

Authored By: