nlsq.global_optimization.sampling ================================== Sampling strategies for multi-start global optimization. This module provides various sampling methods for generating initial parameter guesses in multi-start optimization scenarios. .. automodule:: nlsq.global_optimization.sampling :members: :undoc-members: :show-inheritance: Sampling Methods ---------------- The module supports the following sampling strategies: .. list-table:: :header-rows: 1 :widths: 20 80 * - Method - Description * - ``lhs`` - Latin Hypercube Sampling - space-filling with good coverage * - ``sobol`` - Sobol quasi-random sequences - low discrepancy sampling * - ``halton`` - Halton sequences - deterministic quasi-random sampling * - ``random`` - Uniform random sampling Usage Example ------------- .. code-block:: python from nlsq.global_optimization.sampling import create_sampler # Create a Latin Hypercube sampler sampler = create_sampler("lhs", n_dims=3, bounds=[(0, 10), (0, 5), (0, 1)]) # Generate 20 starting points points = sampler.sample(n_points=20)