molfeat - the hub for all your molecular featurizers
Molfeat is a hub of molecular featurizers. It supports a wide variety of out-of-the-box molecular featurizers and can be easily extended to include your own custom featurizers.
- ๐ Fast, with a simple and efficient API.
- ๐ Unify pre-trained molecular embeddings and hand-crafted featurizers in a single package.
- โ Easily add your own featurizers through plugins.
- ๐ Benefit from increased performance through a trouble-free caching system.
Visit our website at https://molfeat.datamol.io.
Use mamba:
mamba install -c conda-forge molfeatTips: You can replace mamba by conda.
Note: We highly recommend using a Conda Python distribution to install Molfeat. The package is also pip installable if you need it: pip install molfeat.
Not all featurizers in the Molfeat core package are supported by default. Some featurizers require additional dependencies. If you try to use a featurizer that requires additional dependencies, Molfeat will raise an error and tell you which dependencies are missing and how to install them.
- To install
dgl: runmamba install -c dglteam "dgl<=2.0"# there is some issue with "dgl>2.0.0" related to graphbolt - To install
dgllife: runmamba install -c conda-forge dgllife - To install
fcd_torch: runmamba install -c conda-forge fcd_torch - To install
pyg: runmamba install -c conda-forge pytorch_geometric - To install
graphormer-pretrained: runmamba install -c conda-forge graphormer-pretrained - To install
map4: see https://github.com/reymond-group/map4 - To install
bio-embeddings: runmamba install -c conda-forge 'bio-embeddings >=0.2.2'
If you install Molfeat using pip, there are optional dependencies that can be installed with the main package. For example, pip install "molfeat[all]" allows installing all the compatible optional dependencies for small molecule featurization. There are other options such as molfeat[dgl], molfeat[graphormer], molfeat[transformer], molfeat[viz], and molfeat[fcd]. See the optional-dependencies for more information.
The functionality of Molfeat can be extended through plugins. The use of a plugin system ensures that the core package remains easy to install and as light as possible, while making it easy to extend its functionality with plug-and-play components. Additionally, it ensures that plugins can be developed independently from the core package, removing the bottleneck of a central party that reviews and approves new plugins. Consult the molfeat documentation for more details on how to create your own plugins.
However, this does imply that the installation of a plugin is plugin-dependent: please consult the relevant documentation to learn more.
import datamol as dm
from molfeat.calc import FPCalculator
from molfeat.trans import MoleculeTransformer
from molfeat.store.modelstore import ModelStore
# Load some dummy data
data = dm.data.freesolv().sample(100).smiles.values
# Featurize a single molecule
calc = FPCalculator("ecfp")
calc(data[0])
# Define a parallelized featurization pipeline
mol_transf = MoleculeTransformer(calc, n_jobs=-1)
mol_transf(data)
# Easily save and load featurizers
mol_transf.to_state_yaml_file("state_dict.yml")
mol_transf = MoleculeTransformer.from_state_yaml_file("state_dict.yml")
mol_transf(data)
# List all available featurizers
store = ModelStore()
store.available_models
# Find a featurizer and learn how to use it
model_card = store.search(name="ChemBERTa-77M-MLM")[0]
model_card.usage()Please cite Molfeat if you use it in your research: .
See developers for a comprehensive guide on how to contribute to molfeat. molfeat is a community-led
initiative and whether you're a first-time contributor or an open-source veteran, this project greatly benefits from your contributions.
To learn more about the community and datamol.io ecosystem, please see community.
- @cwognum
- @maclandrol
- @hadim
Under the Apache-2.0 license. See LICENSE.