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Training and applying large chemistry models for embeddings.

Project description

🚄 lchemme

GitHub Workflow Status (with branch) PyPI - Python Version PyPI

Pretraining large chemistry models for embedding.

Installation

The easy way

Install the pre-compiled version from PyPI:

pip install lchemme

From source

Clone the repository, then cd into it. Then run:

pip install -e .

Command-line usage

lchemme provides command-line utlities to pre-train BART models.

To get a list of commands (tools), do

lchemme --help

And to get help for a specific command, do

lchemme <command> --help

Documentation

(Full API documentation to come at ReadTheDocs.)

Project details


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