How one can do this by Python: Bayesian optimization
The Himmelblau function, named after mathematician David Mautner Him-
melblau, is a well-known optimization problem often used to test optimization
algorithms. It is defined as:
f (x1, x2) = (x1^2+x2-11)^2+(x1+x2^2-7)^2
The function has multiple local minima and one global minimum at f (3, 2) = 0,
making it challenging for optimization algorithms to converge to the global
minimum. Visually, its graph resembles a series of peaks and valleys, with
The Himmelblau function, named after mathematician David Mautner Him-
melblau, is a well-known optimization problem often used to test optimization
algorithms. It is defined as:
f (x1, x2) = (x1^2+x2-11)^2+(x1+x2^2-7)^2
The function has multiple local minima and one global minimum at f (3, 2) = 0,
making it challenging for optimization algorithms to converge to the global
minimum. Visually, its graph resembles a series of peaks and valleys, with