--- license: apache-2.0 metrics: - accuracy pipeline_tag: feature-extraction tags: - chemistry - foundation models - AI4Science - materials - molecules --- # Introduction to IBM's Foundation Models for Materials Welcome to IBM's series of large foundation models for sustainable materials. Our models span a variety of representations and modalities, including SMILES, SELFIES, 3D atom positions, 3D density grids, molecular graphs, and other formats. These models are designed to support and advance research in materials science and chemistry. GitHub: [GitHub Link](https://github.com/IBM/materials/tree/main) # SMILES-based Transformer Encoder-Decoder (SMI-TED) This repository provides PyTorch source code associated with our publication, "A Large Encoder-Decoder Family of Foundation Models for Chemical Language". Paper: [Arxiv Link](https://github.com/IBM/materials/blob/main/smi-ted/paper/smi_ted_preprint.pdf) For more information contact: eduardo.soares@ibm.com or evital@br.ibm.com. ## Introduction We present a large encoder-decoder chemical foundation model, SMILES-based Transformer Encoder-Decoder (SMI-TED), pre-trained on a curated dataset of 91 million SMILES samples sourced from PubChem, equivalent to 4 billion molecular tokens. SMI-TED supports various complex tasks, including quantum property prediction, with two main variants ($289M$ and $8 \times 289M$). Our experiments across multiple benchmark datasets demonstrate state-of-the-art performance for various tasks. For more information contact: eduardo.soares@ibm.com or evital@br.ibm.com. ## Table of Contents 1. [Getting Started](#getting-started) 1. [Pretrained Models and Training Logs](#pretrained-models-and-training-logs) 2. [Replicating Conda Environment](#replicating-conda-environment) 2. [Pretraining](#pretraining) 3. [Finetuning](#finetuning) 4. [Feature Extraction](#feature-extraction) 5. [Citations](#citations) ## Getting Started **This code and environment have been tested on Nvidia V100s and Nvidia A100s** ### Pretrained Models and Training Logs We provide checkpoints of the SMI-TED model pre-trained on a dataset of ~91M molecules curated from PubChem. The pre-trained model shows competitive performance on classification and regression benchmarks from MoleculeNet. Add the SMI-TED `pre-trained weights.pt` to the `inference/` or `finetune/` directory according to your needs. The directory structure should look like the following: ``` inference/ ├── smi_ted_light │ ├── smi_ted_light.pt │ ├── bert_vocab_curated.txt │ └── load.py ``` and/or: ``` finetune/ ├── smi_ted_light │ ├── smi_ted_light.pt │ ├── bert_vocab_curated.txt │ └── load.py ``` ### Replicating Conda Environment Follow these steps to replicate our Conda environment and install the necessary libraries: #### Create and Activate Conda Environment ``` conda create --name smi-ted-env python=3.8.18 conda activate smi-ted-env ``` #### Install Packages with Conda ``` conda install pytorch=1.13.1 cudatoolkit=11.4 -c pytorch conda install numpy=1.23.5 pandas=2.0.3 conda install rdkit=2021.03.5 -c conda-forge ``` #### Install Packages with Pip ``` pip install transformers==4.6.0 pytorch-fast-transformers==0.4.0 torch-optimizer==0.3.0 datasets==1.6.2 scikit-learn==1.3.2 scipy==1.12.0 tqdm==4.66.1 ``` ## Pretraining For pretraining, we use two strategies: the masked language model method to train the encoder part and an encoder-decoder strategy to refine SMILES reconstruction and improve the generated latent space. SMI-TED is pre-trained on canonicalized and curated 91M SMILES from PubChem with the following constraints: - Compounds are filtered to a maximum length of 202 tokens during preprocessing. - A 95/5/0 split is used for encoder training, with 5% of the data for decoder pretraining. - A 100/0/0 split is also used to train the encoder and decoder directly, enhancing model performance. The pretraining code provides examples of data processing and model training on a smaller dataset, requiring 8 A100 GPUs. To pre-train the two variants of the SMI-TED model, run: ``` bash training/run_model_light_training.sh ``` or ``` bash training/run_model_large_training.sh ``` Use `train_model_D.py` to train only the decoder or `train_model_ED.py` to train both the encoder and decoder. ## Finetuning The finetuning datasets and environment can be found in the [finetune](https://github.com/IBM/materials/tree/main/smi-ted/finetune) directory. After setting up the environment, you can run a finetuning task with: ``` bash finetune/smi_ted_light/esol/run_finetune_esol.sh ``` Finetuning training/checkpointing resources will be available in directories named `checkpoint_`. ## Feature Extraction The example notebook [smi_ted_encoder_decoder_example.ipynb](https://github.com/IBM/materials/blob/main/smi-ted/notebooks/smi_ted_encoder_decoder_example.ipynb) contains code to load checkpoint files and use the pre-trained model for encoder and decoder tasks. It also includes examples of classification and regression tasks. To load smi-ted, you can simply use: ```python model = load_smi_ted( folder='../inference/smi_ted_light', ckpt_filename='smi_ted_light.pt' ) ``` or ```python with open('model_weights.bin', 'rb') as f: state_dict = torch.load(f) model.load_state_dict(state_dict) ) ``` To encode SMILES into embeddings, you can use: ```python with torch.no_grad(): encoded_embeddings = model.encode(df['SMILES'], return_torch=True) ``` For decoder, you can use the function, so you can return from embeddings to SMILES strings: ```python with torch.no_grad(): decoded_smiles = model.decode(encoded_embeddings) ```