StyblinskiTangFunction#
- class StyblinskiTangFunction(n_dim: int = 2, objective: str = 'minimize', modifiers: List[BaseModifier] | None = None, memory: bool = False, collect_data: bool = True, callbacks: Callable | List[Callable] | None = None, catch_errors: Dict[type, float] | None = None)[source]#
Styblinski-Tang N-dimensional test function.
A polynomial function with multiple local minima.
The function is defined as:
\[f(\vec{x}) = \frac{1}{2} \sum_{i=1}^{n} (x_i^4 - 16x_i^2 + 5x_i)\]The global minimum is approximately \(f(-2.903534, ..., -2.903534) \approx -39.16617n\).
- Parameters:
Examples
>>> from surfaces.test_functions import StyblinskiTangFunction >>> func = StyblinskiTangFunction(n_dim=2) >>> result = func({"x0": -2.903534, "x1": -2.903534})
- __call__(params: Dict[str, Any] | ndarray | list | tuple | None = None, *, fidelity: float | None = None, **kwargs)[source]#
Evaluate the objective function.
- Args:
params: Parameter values as dict, array, list, or tuple fidelity: Optional fidelity level in (0, 1]. Controls evaluation
cost vs accuracy trade-off for multi-fidelity optimization (e.g. Hyperband, BOHB). None means full-fidelity evaluation. Only supported by ML test functions; ignored by algebraic functions.
**kwargs: Parameters as keyword arguments (only with dict input)
- Returns:
The objective function value
- batch(X: ArrayLike) ArrayLike[source]#
Evaluate multiple parameter sets in a single call.
- Parameters:
X (ArrayLike) – 2D array of shape (n_points, n_dim) where each row is a parameter set.
- Returns:
1D array of shape (n_points,) with evaluation results.
- Return type:
ArrayLike
- Raises:
NotImplementedError – If the function does not implement _batch_objective.
ValueError – If X has wrong number of dimensions or wrong n_dim.
- pure(params: Dict[str, Any] | ndarray | list | tuple | None = None, *, fidelity: float | None = None, **kwargs)[source]#
Evaluate the function without modifiers.
Returns the true (deterministic) function value, bypassing any configured modifiers. Does not update search_data, n_evaluations, or callbacks. Ignores memory caching.
- Parameters:
- Returns:
The true function value without modifiers, with direction applied.
- Return type:
float or np.ndarray