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Automated 2D visualizations of chemical spaces

Project description

LazyChemVis

Automated 2D visualizations of chemical spaces.

This package allows for visualizing chemical spaces using a fit-transform logic. TO-DO

Installation

To get started, create a Conda environment:

conda create -n lazychemvis python=3.12
conda activate lazychemvis

Then install the package using pip:

pip install git+https://github.com/ersilia-os/lazy-chemvis.git

Usage

Fit projections for a given chemical space

TO-DO

lazychemvis_fit --lib_input smiles_10k.csv --dir_path my_output

About the Ersilia Open Source Initiative

The Ersilia Open Source Initiative is a tech-nonprofit organization fueling sustainable research in the Global South. Ersilia's main asset is the Ersilia Model Hub, an open-source repository of AI/ML models for antimicrobial drug discovery.

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