CLI-Anything cli-anything-unimol-tools

install
source · Clone the upstream repo
git clone https://github.com/HKUDS/CLI-Anything
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/HKUDS/CLI-Anything "$T" && mkdir -p ~/.claude/skills && cp -r "$T/unimol_tools/agent-harness/cli_anything/unimol_tools" ~/.claude/skills/hkuds-cli-anything-cli-anything-unimol-tools-d5342b && rm -rf "$T"
manifest: unimol_tools/agent-harness/cli_anything/unimol_tools/SKILL.md
source content

Uni-Mol Tools - Molecular Property Prediction CLI

Package:

cli-anything-unimol-tools
Command:
python3 -m cli_anything.unimol_tools

Description

Interactive CLI for training and inference of molecular property prediction models using Uni-Mol Tools. Supports 5 task types: binary classification, regression, multiclass, multilabel classification, and multilabel regression.

Key Features

  • Project Management: Organize experiments with named projects
  • 5 Task Types: Classification, regression, multiclass, multilabel variants
  • Model Tracking: Automatic performance history and rankings
  • Smart Storage: Analyze usage and clean up underperformers
  • JSON API: Full automation support with
    --json
    flag

Common Commands

Project Management

# Create a new project
project create --name drug_discovery

# List all projects
project list

# Switch to a project
project switch --name drug_discovery

Training

# Train a classification model
train --data-path train.csv --target-col active --task-type classification --epochs 10

# Train a regression model
train --data-path train.csv --target-col affinity --task-type regression --epochs 10

Model Management

# List all trained models
models list

# Show model details and performance
models show --model-id <id>

# Rank models by performance
models rank

Storage & Cleanup

# Analyze storage usage
storage analyze

# Automatic cleanup of poor performers
cleanup auto

# Manual cleanup with criteria
cleanup manual --max-models 10 --min-score 0.7

Prediction

# Make predictions with a trained model
predict --model-id <id> --data-path test.csv

Data Format

CSV files must contain:

  • SMILES
    column: Molecular structures in SMILES format
  • Target column(s): Values to predict (name specified via
    --target-col
    )

Example:

SMILES,target
CCO,1
CCCO,0
CC(C)O,1

Task Types

  1. classification: Binary classification (0/1)
  2. regression: Continuous value prediction
  3. multiclass: Multiple class classification
  4. multilabel_classification: Multiple binary labels
  5. multilabel_regression: Multiple continuous values

JSON Mode

Add

--json
flag to any command for machine-readable output:

python3 -m cli_anything.unimol_tools --json models list

Output format:

{
  "status": "success",
  "data": [...],
  "message": "..."
}

Interactive Mode

Launch without commands for interactive REPL:

python3 -m cli_anything.unimol_tools

Features:

  • Tab completion
  • Command history
  • Contextual help
  • Project state persistence

Test Data

Example datasets available at: https://github.com/545487677/CLI-Anything-unimol-tools/tree/main/unimol_tools/examples

Includes data for all 5 task types.

Requirements

  • Python 3.8+
  • PyTorch 1.12+
  • Uni-Mol Tools backend
  • 4GB+ RAM (8GB+ recommended for training)

Installation

cd unimol_tools/agent-harness
pip install -e .

Documentation

Testing

cd docs/test
bash run_tests.sh --unit -v    # Unit tests (67 tests)
bash run_tests.sh --full -v    # Full test suite

Performance Tips

  • Start with 10 epochs for initial experiments
  • Use smaller batch sizes if memory is limited
  • Monitor storage with
    storage analyze
  • Use
    models rank
    to identify best performers
  • Clean up regularly with
    cleanup auto

Troubleshooting

  • CUDA errors: Reduce batch size or use CPU mode
  • CSV not recognized: Verify SMILES column exists
  • Low accuracy: Try more epochs or adjust learning rate
  • Storage full: Run
    cleanup auto
    to free space

Related