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Library for creating polymer structures from monomers using SMILES strings

Project description

Monomers to Polymers (m2p)

A simple interface for converting monomers to polymers using SMILES representation.

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(Main) Requirements

Rdkit install can be performed per the following information.

To install rdkit via conda, use: conda install -c rdkit rdkit

Getting started

The library uses known reaction chemistries to build polymer chains from monomers. The polymer chemistries available include vinyls, acrylates, esters, amides, imides, and carbonates.

The library can generate multiple replicate structures to create polymer chains represented at the atom and bond level. The chains can be any degree of polymerization (DP). RDKit reaction smarts are used to manipulate the molecular structures and perform in silico reactions.

Project details


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m2p-0.1.8.1.tar.gz (39.2 kB view hashes)

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m2p-0.1.8.1-py3-none-any.whl (22.7 kB view hashes)

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