Model Overview
Description:
MolMIM:
- generates a random sample of new molecules in SMILES format by sampling from the latent space around the point corresponding to the given seed molecule.
- performs optimization with the CMA-ES algorithmin the model’s latent space and sample molecules with improved values of the desired scoring function.
MolMIM is a latent variable model developed by NVIDIA that is trained in an unsupervised manner over a large-scale dataset of molecules in the form of SMILES strings. MolMIM utilizes transformer architecture to learn an informative fixed-size latent space using Mutual Information Machine (MIM) learning. MIM is a learning framework for a latent variable model which promotes informative and clustered latent codes. MolMIM can be used for sampling novel molecules from the model’s latent space.
References(s):
Improving Small Molecule Generation using Mutual Information Machine
MIM: Mutual Information Machine
The CMA Evolution Strategy: A Comparing Review
Model Architecture:
Architecture Type: Encoder-Decoder
Network Architecture: Perceiver
MolMIM utilizes a Perceiver encoder architecture which outputs a fixed-size representation, where molecules of various lengths are mapped into a latent space. MolMIM’s decoder architecture is a Transformer. Both encoder and decoder container 6 layers with a hidden size of 512, 8 attention heads, and a feed-forward dimension of 2048. Total number of parameters in MolMIM is 65.2M. The model was trained with A-MIM learning.
Input:
Input Type(s): Text (Molecular Sequence)
Input Format(s): Comma Separated Values, Simplified Molecular-Input Line Entry System (SMILES)
Input Parameters: 1D
Other Properties Related to Input: Maximum input length is 512 tokens. Pretraining dataset samples were randomly split into train, validation, and test sets ( 99% / 0.5% / 0.5% ).
Output:
Output Type(s): Text, Numerical
Output Format: [SMILES]
Output Parameters: [2D]
Other Properties Related to Output: Maximum output length is 128 tokens
Software Integration:
Runtime Engine(s):
- Triton Inference Server
Supported Hardware Microarchitecture Compatibility:
- Ampere
- L40
Preferred/Supported Operating System(s):
- [Linux]
- [Windows]
Model Version(s):
MolMIM-24.03
Training and Evaluation Dataset:
Link: ZINC-15
** Data Collection Method by dataset
- Not Applicable
** Labeling Method by dataset
- Not Applicable
Properties (Quantity, Dataset Descriptions, Sensor(s)): 1.54B molecules with molecular weight <= 500 Daltons, LogP <= 5, with reactivity levels rated as “reactive” and purchasability “annotated.” The compounds were filtered to ensure a maximum length of 512 characters.
Evaluation Dataset:
Link: MoleculeNet - Lipophilicity, FreeSolv, ESOL
** Data Collection Method by dataset
- Hybrid: Human & Automatic/Sensors
** Labeling Method by dataset
- Hybrid: Human & Automated
Properties (Quantity, Dataset Descriptions, Sensor(s)):
MoleculeNet Physical Chemistry is an aggregation of public molecular datasets. The physical chemistry portion of MoleculeNet that we used for evaluation is made up of ESOL (1128 compunds), FreeSolv (642 compunds) and Lipohilicity (4200 compunds).
Zhenqin Wu, Bharath Ramsundar, Evan N. Feinberg, Joseph Gomes, Caleb Geniesse, Aneesh S. Pappu, Karl Leswing, Vijay Pande, MoleculeNet: A Benchmark for Molecular Machine Learning, arXiv preprint, arXiv: 1703.00564, 2017.
From the MoleculeNet documentation:
- ESOL is made up of water solubility data(log solubility in mols per litre) for common organic small molecules.
- FreeSolv is made up of experimental and calculated hydration free energy of small molecules in water.
- Lipophilicity is composed of experimental results of octanol/water distribution coefficient(logD at pH 7.4).
Inference:
Engine: Tensor(RT)
Test Hardware:
- Ampere
- L40
Ethical Considerations:
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