Claude-scientific-skills molfeat
Molecular featurization for ML (100+ featurizers). ECFP, MACCS, descriptors, pretrained models (ChemBERTa), convert SMILES to features, for QSAR and molecular ML.
git clone https://github.com/K-Dense-AI/scientific-agent-skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/K-Dense-AI/scientific-agent-skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/scientific-skills/molfeat" ~/.claude/skills/k-dense-ai-claude-scientific-skills-molfeat && rm -rf "$T"
scientific-skills/molfeat/SKILL.mdMolfeat - Molecular Featurization Hub
Overview
Molfeat is a comprehensive Python library for molecular featurization that unifies 100+ pre-trained embeddings and hand-crafted featurizers. Convert chemical structures (SMILES strings or RDKit molecules) into numerical representations for machine learning tasks including QSAR modeling, virtual screening, similarity searching, and deep learning applications. Features fast parallel processing, scikit-learn compatible transformers, and built-in caching.
When to Use This Skill
This skill should be used when working with:
- Molecular machine learning: Building QSAR/QSPR models, property prediction
- Virtual screening: Ranking compound libraries for biological activity
- Similarity searching: Finding structurally similar molecules
- Chemical space analysis: Clustering, visualization, dimensionality reduction
- Deep learning: Training neural networks on molecular data
- Featurization pipelines: Converting SMILES to ML-ready representations
- Cheminformatics: Any task requiring molecular feature extraction
Installation
uv pip install molfeat # With all optional dependencies uv pip install "molfeat[all]"
Optional dependencies for specific featurizers:
- GNN models (GIN variants)molfeat[dgl]
- Graphormer modelsmolfeat[graphormer]
- ChemBERTa, ChemGPT, MolT5molfeat[transformer]
- FCD descriptorsmolfeat[fcd]
- MAP4 fingerprintsmolfeat[map4]
Core Concepts
Molfeat organizes featurization into three hierarchical classes:
1. Calculators (molfeat.calc
)
molfeat.calcCallable objects that convert individual molecules into feature vectors. Accept RDKit
Chem.Mol objects or SMILES strings.
Use calculators for:
- Single molecule featurization
- Custom processing loops
- Direct feature computation
Example:
from molfeat.calc import FPCalculator calc = FPCalculator("ecfp", radius=3, fpSize=2048) features = calc("CCO") # Returns numpy array (2048,)
2. Transformers (molfeat.trans
)
molfeat.transScikit-learn compatible transformers that wrap calculators for batch processing with parallelization.
Use transformers for:
- Batch featurization of molecular datasets
- Integration with scikit-learn pipelines
- Parallel processing (automatic CPU utilization)
Example:
from molfeat.trans import MoleculeTransformer from molfeat.calc import FPCalculator transformer = MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1) features = transformer(smiles_list) # Parallel processing
3. Pretrained Transformers (molfeat.trans.pretrained
)
molfeat.trans.pretrainedSpecialized transformers for deep learning models with batched inference and caching.
Use pretrained transformers for:
- State-of-the-art molecular embeddings
- Transfer learning from large chemical datasets
- Deep learning feature extraction
Example:
from molfeat.trans.pretrained import PretrainedMolTransformer transformer = PretrainedMolTransformer("ChemBERTa-77M-MLM", n_jobs=-1) embeddings = transformer(smiles_list) # Deep learning embeddings
Quick Start Workflow
Basic Featurization
import datamol as dm from molfeat.calc import FPCalculator from molfeat.trans import MoleculeTransformer # Load molecular data smiles = ["CCO", "CC(=O)O", "c1ccccc1", "CC(C)O"] # Create calculator and transformer calc = FPCalculator("ecfp", radius=3) transformer = MoleculeTransformer(calc, n_jobs=-1) # Featurize molecules features = transformer(smiles) print(f"Shape: {features.shape}") # (4, 2048)
Save and Load Configuration
# Save featurizer configuration for reproducibility transformer.to_state_yaml_file("featurizer_config.yml") # Reload exact configuration loaded = MoleculeTransformer.from_state_yaml_file("featurizer_config.yml")
Handle Errors Gracefully
# Process dataset with potentially invalid SMILES transformer = MoleculeTransformer( calc, n_jobs=-1, ignore_errors=True, # Continue on failures verbose=True # Log error details ) features = transformer(smiles_with_errors) # Returns None for failed molecules
Choosing the Right Featurizer
For Traditional Machine Learning (RF, SVM, XGBoost)
Start with fingerprints:
# ECFP - Most popular, general-purpose FPCalculator("ecfp", radius=3, fpSize=2048) # MACCS - Fast, good for scaffold hopping FPCalculator("maccs") # MAP4 - Efficient for large-scale screening FPCalculator("map4")
For interpretable models:
# RDKit 2D descriptors (200+ named properties) from molfeat.calc import RDKitDescriptors2D RDKitDescriptors2D() # Mordred (1800+ comprehensive descriptors) from molfeat.calc import MordredDescriptors MordredDescriptors()
Combine multiple featurizers:
from molfeat.trans import FeatConcat concat = FeatConcat([ FPCalculator("maccs"), # 167 dimensions FPCalculator("ecfp") # 2048 dimensions ]) # Result: 2215-dimensional combined features
For Deep Learning
Transformer-based embeddings:
# ChemBERTa - Pre-trained on 77M PubChem compounds PretrainedMolTransformer("ChemBERTa-77M-MLM") # ChemGPT - Autoregressive language model PretrainedMolTransformer("ChemGPT-1.2B")
Graph neural networks:
# GIN models with different pre-training objectives PretrainedMolTransformer("gin-supervised-masking") PretrainedMolTransformer("gin-supervised-infomax") # Graphormer for quantum chemistry PretrainedMolTransformer("Graphormer-pcqm4mv2")
For Similarity Searching
# ECFP - General purpose, most widely used FPCalculator("ecfp") # MACCS - Fast, scaffold-based similarity FPCalculator("maccs") # MAP4 - Efficient for large databases FPCalculator("map4") # USR/USRCAT - 3D shape similarity from molfeat.calc import USRDescriptors USRDescriptors()
For Pharmacophore-Based Approaches
# FCFP - Functional group based FPCalculator("fcfp") # CATS - Pharmacophore pair distributions from molfeat.calc import CATSCalculator CATSCalculator(mode="2D") # Gobbi - Explicit pharmacophore features FPCalculator("gobbi2D")
Common Workflows
Building a QSAR Model
from molfeat.trans import MoleculeTransformer from molfeat.calc import FPCalculator from sklearn.ensemble import RandomForestRegressor from sklearn.model_selection import cross_val_score # Featurize molecules transformer = MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1) X = transformer(smiles_train) # Train model model = RandomForestRegressor(n_estimators=100) scores = cross_val_score(model, X, y_train, cv=5) print(f"R² = {scores.mean():.3f}") # Save configuration for deployment transformer.to_state_yaml_file("production_featurizer.yml")
Virtual Screening Pipeline
from sklearn.ensemble import RandomForestClassifier # Train on known actives/inactives transformer = MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1) X_train = transformer(train_smiles) clf = RandomForestClassifier(n_estimators=500) clf.fit(X_train, train_labels) # Screen large library X_screen = transformer(screening_library) # e.g., 1M compounds predictions = clf.predict_proba(X_screen)[:, 1] # Rank and select top hits top_indices = predictions.argsort()[::-1][:1000] top_hits = [screening_library[i] for i in top_indices]
Similarity Search
from sklearn.metrics.pairwise import cosine_similarity # Query molecule calc = FPCalculator("ecfp") query_fp = calc(query_smiles).reshape(1, -1) # Database fingerprints transformer = MoleculeTransformer(calc, n_jobs=-1) database_fps = transformer(database_smiles) # Compute similarity similarities = cosine_similarity(query_fp, database_fps)[0] top_similar = similarities.argsort()[-10:][::-1]
Scikit-learn Pipeline Integration
from sklearn.pipeline import Pipeline from sklearn.ensemble import RandomForestClassifier # Create end-to-end pipeline pipeline = Pipeline([ ('featurizer', MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1)), ('classifier', RandomForestClassifier(n_estimators=100)) ]) # Train and predict directly on SMILES pipeline.fit(smiles_train, y_train) predictions = pipeline.predict(smiles_test)
Comparing Multiple Featurizers
featurizers = { 'ECFP': FPCalculator("ecfp"), 'MACCS': FPCalculator("maccs"), 'Descriptors': RDKitDescriptors2D(), 'ChemBERTa': PretrainedMolTransformer("ChemBERTa-77M-MLM") } results = {} for name, feat in featurizers.items(): transformer = MoleculeTransformer(feat, n_jobs=-1) X = transformer(smiles) # Evaluate with your ML model score = evaluate_model(X, y) results[name] = score
Discovering Available Featurizers
Use the ModelStore to explore all available featurizers:
from molfeat.store.modelstore import ModelStore store = ModelStore() # List all available models all_models = store.available_models print(f"Total featurizers: {len(all_models)}") # Search for specific models chemberta_models = store.search(name="ChemBERTa") for model in chemberta_models: print(f"- {model.name}: {model.description}") # Get usage information model_card = store.search(name="ChemBERTa-77M-MLM")[0] model_card.usage() # Display usage examples # Load model transformer = store.load("ChemBERTa-77M-MLM")
Advanced Features
Custom Preprocessing
class CustomTransformer(MoleculeTransformer): def preprocess(self, mol): """Custom preprocessing pipeline""" if isinstance(mol, str): mol = dm.to_mol(mol) mol = dm.standardize_mol(mol) mol = dm.remove_salts(mol) return mol transformer = CustomTransformer(FPCalculator("ecfp"), n_jobs=-1)
Batch Processing Large Datasets
def featurize_in_chunks(smiles_list, transformer, chunk_size=10000): """Process large datasets in chunks to manage memory""" all_features = [] for i in range(0, len(smiles_list), chunk_size): chunk = smiles_list[i:i+chunk_size] features = transformer(chunk) all_features.append(features) return np.vstack(all_features)
Caching Expensive Embeddings
import pickle cache_file = "embeddings_cache.pkl" transformer = PretrainedMolTransformer("ChemBERTa-77M-MLM", n_jobs=-1) try: with open(cache_file, "rb") as f: embeddings = pickle.load(f) except FileNotFoundError: embeddings = transformer(smiles_list) with open(cache_file, "wb") as f: pickle.dump(embeddings, f)
Performance Tips
- Use parallelization: Set
to utilize all CPU coresn_jobs=-1 - Batch processing: Process multiple molecules at once instead of loops
- Choose appropriate featurizers: Fingerprints are faster than deep learning models
- Cache pretrained models: Leverage built-in caching for repeated use
- Use float32: Set
when precision allowsdtype=np.float32 - Handle errors efficiently: Use
for large datasetsignore_errors=True
Common Featurizers Reference
Quick reference for frequently used featurizers:
| Featurizer | Type | Dimensions | Speed | Use Case |
|---|---|---|---|---|
| Fingerprint | 2048 | Fast | General purpose |
| Fingerprint | 167 | Very fast | Scaffold similarity |
| Descriptors | 200+ | Fast | Interpretable models |
| Descriptors | 1800+ | Medium | Comprehensive features |
| Fingerprint | 1024 | Fast | Large-scale screening |
| Deep learning | 768 | Slow* | Transfer learning |
| GNN | Variable | Slow* | Graph-based models |
*First run is slow; subsequent runs benefit from caching
Resources
This skill includes comprehensive reference documentation:
references/api_reference.md
Complete API documentation covering:
- All calculator classes and parametersmolfeat.calc
- Transformer classes and methodsmolfeat.trans
- ModelStore usagemolfeat.store- Common patterns and integration examples
- Performance optimization tips
When to load: Reference when implementing specific calculators, understanding transformer parameters, or integrating with scikit-learn/PyTorch.
references/available_featurizers.md
Comprehensive catalog of all 100+ featurizers organized by category:
- Transformer-based language models (ChemBERTa, ChemGPT)
- Graph neural networks (GIN, Graphormer)
- Molecular descriptors (RDKit, Mordred)
- Fingerprints (ECFP, MACCS, MAP4, and 15+ others)
- Pharmacophore descriptors (CATS, Gobbi)
- Shape descriptors (USR, ElectroShape)
- Scaffold-based descriptors
When to load: Reference when selecting the optimal featurizer for a specific task, exploring available options, or understanding featurizer characteristics.
Search tip: Use grep to find specific featurizer types:
grep -i "chembert" references/available_featurizers.md grep -i "pharmacophore" references/available_featurizers.md
references/examples.md
Practical code examples for common scenarios:
- Installation and quick start
- Calculator and transformer examples
- Pretrained model usage
- Scikit-learn and PyTorch integration
- Virtual screening workflows
- QSAR model building
- Similarity searching
- Troubleshooting and best practices
When to load: Reference when implementing specific workflows, troubleshooting issues, or learning molfeat patterns.
Troubleshooting
Invalid Molecules
Enable error handling to skip invalid SMILES:
transformer = MoleculeTransformer( calc, ignore_errors=True, verbose=True )
Memory Issues with Large Datasets
Process in chunks or use streaming approaches for datasets > 100K molecules.
Pretrained Model Dependencies
Some models require additional packages. Install specific extras:
uv pip install "molfeat[transformer]" # For ChemBERTa/ChemGPT uv pip install "molfeat[dgl]" # For GIN models
Reproducibility
Save exact configurations and document versions:
transformer.to_state_yaml_file("config.yml") import molfeat print(f"molfeat version: {molfeat.__version__}")
Additional Resources
- Official Documentation: https://molfeat-docs.datamol.io/
- GitHub Repository: https://github.com/datamol-io/molfeat
- PyPI Package: https://pypi.org/project/molfeat/
- Tutorial: https://portal.valencelabs.com/datamol/post/types-of-featurizers-b1e8HHrbFMkbun6