nolhs
Module for generating Nearly Orthogonal Latin Hypercube Samples (NOLHS).
Module Contents
- class nolhs.NOLHS(designs: list[tuple[float, float, int]] | pathlib.Path, num_stacks: int = 1)
Bases:
simopt.data_farming.data_farming_core.DesignTypeClass to generate Nearly Orthogonal Latin Hypercube Samples (NOLHS).
Initialize the NOLHS class.
- Parameters:
designs (list[tuple[float, float, int]] | Path) – A list of tuples where each tuple contains (min, max, precision) for a design variable, or a Path to a file containing the design config.
num_stacks (int, optional) – The number of stacks to generate. Defaults to 1.
- property num_stacks: int
Number of stacks in the design.
- design_table() dict[int, numpy.ndarray]
The NOLHS design table.
- Returns:
- A dictionary mapping the number of variables to
the corresponding NOLHS design matrix.
- Return type:
dict[int, np.ndarray]
- generate_design() list[list[float]]
Generate the scaled NOLHS design as a 2D list.
- Returns:
A 2D list containing the scaled design points.
- Return type:
list[list[float]]