sagawa/ReactionT5v1-forward

Maintenance lightby sagawa630updated 1 year ago
Python

This is a ReactionT5 pre-trained to predict the products of reactions.

README

language: en license: mit tags: chemistry SMILES product datasets: ORD metrics: accuracy ⚠️This is an old version of ReactionT5v2-forward. Prediction accuracy is worse.⚠️ Model Card for ReactionT5v1-forward This is a ReactionT5 pre-trained to predict the products of reactions. Model Sources Repository: https://github.com/sagawatatsuya/ReactionT5 Paper: https://arxiv.org/abs/2311.06708 Uses You can use this model for forward reaction prediction or fine-tune this model with your dataset. How to…

Source attribution

  • HuggingFacesagawa/ReactionT5v1-forward

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