ml-materials-predictor
// Machine learning skill for nanomaterial property prediction and discovery acceleration
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updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
nameml-materials-predictor
descriptionMachine learning skill for nanomaterial property prediction and discovery acceleration
allowed-toolsRead,Write,Glob,Grep,Bash
metadata[object Object]
ML Materials Predictor
Purpose
The ML Materials Predictor skill provides machine learning capabilities for accelerated nanomaterial discovery and property prediction, enabling data-driven approaches to materials design and optimization.
Capabilities
- Feature engineering for materials
- Property prediction models (GNN, transformers)
- Active learning for experiment design
- High-throughput virtual screening
- Synthesis success prediction
- Transfer learning for small datasets
Usage Guidelines
ML Materials Workflow
-
Data Preparation
- Collect and curate dataset
- Generate features (composition, structure)
- Handle missing values
-
Model Development
- Select appropriate architecture
- Train with cross-validation
- Evaluate on held-out test
-
Application
- Screen candidate materials
- Prioritize experiments
- Validate predictions
Process Integration
- Machine Learning Materials Discovery Pipeline
- Structure-Property Correlation Analysis
Input Schema
{
"dataset_file": "string",
"target_property": "string",
"model_type": "random_forest|gnn|cgcnn|megnet",
"features": "composition|structure|both",
"task": "train|predict|screen"
}
Output Schema
{
"model_performance": {
"mae": "number",
"rmse": "number",
"r2": "number"
},
"predictions": [{
"material": "string",
"predicted_value": "number",
"uncertainty": "number"
}],
"top_candidates": [{
"material": "string",
"predicted_property": "number",
"rank": "number"
}]
}