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Module domains

Module domains 

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Domain-specific simulation engines.

Each domain implements a specific type of simulation:

  • Physics: Rigid body, orbital, fluid dynamics
  • Monte Carlo: Stochastic sampling with variance reduction
  • Optimization: Bayesian, evolutionary, gradient-based
  • ML: Training simulation, prediction, multi-turn evaluation

Re-exports§

pub use ml::AnomalyDetector;
pub use ml::AnomalyPattern;
pub use ml::AnomalyType;
pub use ml::InferenceConfig;
pub use ml::JidokaMLFeedback;
pub use ml::MultiTurnEvaluation;
pub use ml::MultiTurnSimulation;
pub use ml::ParetoAnalysis;
pub use ml::ParetoPoint;
pub use ml::PredictionSimulation;
pub use ml::PredictionState;
pub use ml::RollingStats;
pub use ml::RulePatch;
pub use ml::RuleType;
pub use ml::TrainingAnomaly;
pub use ml::TrainingConfig;
pub use ml::TrainingMetrics;
pub use ml::TrainingSimulation;
pub use ml::TrainingState;
pub use ml::TrainingTrajectory;
pub use ml::Turn;
pub use ml::TurnMetrics;
pub use monte_carlo::MonteCarloEngine;
pub use monte_carlo::MonteCarloResult;
pub use monte_carlo::VarianceReduction;
pub use optimization::AcquisitionFunction;
pub use optimization::BayesianOptimizer;
pub use optimization::GaussianProcess;
pub use optimization::OptimizerConfig;
pub use physics::EulerIntegrator;
pub use physics::Integrator;
pub use physics::PhysicsEngine;
pub use physics::RK4Integrator;
pub use physics::VerletIntegrator;

Modules§

ml
Machine Learning Simulation Engine.
monte_carlo
Monte Carlo simulation engine.
optimization
Optimization engine with Bayesian optimization.
physics
Physics domain engine.