Model Card for Model hogru/MolReactGen-USPTO50K-Reaction-Templates

MolReactGen is a model that generates reaction templates in SMARTS format (this model) and molecules in SMILES format.

Model Details

Model Description

MolReactGen is based on the the GPT-2 transformer decoder architecture and has been trained on a pre-processed version of the USPTO-50K dataset. More information can be found in these introductory slides.

  • Developed by: Stephan Holzgruber
  • Model type: Transformer decoder
  • License: MIT

Model Sources

Uses

The main use of this model is to pass the master's examination of the author ;-)

Direct Use

The model can be used in a Hugging Face text generation pipeline. For the intended use case a wrapper around the raw text generation pipeline is needed. This is the generate.py from the repository. The model has a default GenerationConfig() (generation_config.json) which can be overwritten. Depending on the number of molecules to be generated (num_return_sequences in the JSON file) this might take a while. The generation code above shows a progress bar during generation.

Bias, Risks, and Limitations

The model generates reaction templates that are similar to the USPTO-50K training data. Any checks of the reaction templates, e.g. chemical feasiblitly, must be adressed by the user of the model.

Training Details

Training Data

Pre-processed version of the USPTO-50K dataset, originally introduced by Schneider et al..

Training Procedure

The default Hugging Face Trainer() has been used, with an EarlyStoppingCallback().

Preprocessing

The training data was pre-processed with a PreTrainedTokenizerFast() trained on the training data with a bespoke RegEx pre-tokenizer which "understands" the SMARTS syntax.

Training Hyperparameters

  • Batch size: 8
  • Gradient accumulation steps: 4
  • Mixed precision: fp16, native amp
  • Learning rate: 0.0005
  • Learning rate scheduler: Cosine
  • Learning rate scheduler warmup: 0.1
  • Optimizer: AdamW with betas=(0.9,0.95) and epsilon=1e-08
  • Number of epochs: 43 (early stopping)

More configuration (options) can be found in the conf directory of the repository.

Evaluation

Please see the slides / the poster mentioned above.

Metrics

Please see the slides / the poster mentioned above.

Results

Please see the slides / the poster mentioned above.

Technical Specifications

Framework versions

  • Transformers 4.27.1
  • Pytorch 1.13.1
  • Datasets 2.10.1
  • Tokenizers 0.13.2

Hardware

  • Local PC running Ubuntu 22.04
  • NVIDIA GEFORCE RTX 3080Ti (12GB)
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