Features
Automated factor mining for quantitative finance
Multi-round code generation with self-evaluation
Automatic dataset adaptation and preprocessing
Model tuning and hyperparameter optimization
Reinforcement learning for iterative improvement
Open-source codebase with modular design
Support for Python-based ML frameworks
Experiment tracking and reproducibility
Integration with Jupyter notebooks
Documentation and tutorial notebooks
Community contribution via GitHub
Customizable task definitions
Logging and result visualization
Reverse-engineer causal mechanisms of AI models
Reveal internal structure and hidden representations
Detect performative chain-of-thought in LLMs
Identify confounders and debug model behavior
Validate whether models learned real clinical understanding
Trace unstable behaviors to brittle internal features
Reduce hallucinations via features as rewards
Accelerate materials discovery with self-correcting search
Control training precisely with less data and off-target effects
Support for LLMs, life sciences, and robotics/vision models
Harvest activations from trillion-parameter models
SOC 2 Type II certified security and compliance
Analyze latent policy structure in robotics models
Interpret genomic models like Evo 2
Discover novel biomarkers via model reverse-engineering