peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/scipy
/optimize
/_direct_py.py
from __future__ import annotations | |
from typing import ( # noqa: UP035 | |
Any, Callable, Iterable, TYPE_CHECKING | |
) | |
import numpy as np | |
from scipy.optimize import OptimizeResult | |
from ._constraints import old_bound_to_new, Bounds | |
from ._direct import direct as _direct # type: ignore | |
if TYPE_CHECKING: | |
import numpy.typing as npt | |
__all__ = ['direct'] | |
ERROR_MESSAGES = ( | |
"Number of function evaluations done is larger than maxfun={}", | |
"Number of iterations is larger than maxiter={}", | |
"u[i] < l[i] for some i", | |
"maxfun is too large", | |
"Initialization failed", | |
"There was an error in the creation of the sample points", | |
"An error occurred while the function was sampled", | |
"Maximum number of levels has been reached.", | |
"Forced stop", | |
"Invalid arguments", | |
"Out of memory", | |
) | |
SUCCESS_MESSAGES = ( | |
("The best function value found is within a relative error={} " | |
"of the (known) global optimum f_min"), | |
("The volume of the hyperrectangle containing the lowest function value " | |
"found is below vol_tol={}"), | |
("The side length measure of the hyperrectangle containing the lowest " | |
"function value found is below len_tol={}"), | |
) | |
def direct( | |
func: Callable[[npt.ArrayLike, tuple[Any]], float], | |
bounds: Iterable | Bounds, | |
*, | |
args: tuple = (), | |
eps: float = 1e-4, | |
maxfun: int | None = None, | |
maxiter: int = 1000, | |
locally_biased: bool = True, | |
f_min: float = -np.inf, | |
f_min_rtol: float = 1e-4, | |
vol_tol: float = 1e-16, | |
len_tol: float = 1e-6, | |
callback: Callable[[npt.ArrayLike], None] | None = None | |
) -> OptimizeResult: | |
""" | |
Finds the global minimum of a function using the | |
DIRECT algorithm. | |
Parameters | |
---------- | |
func : callable | |
The objective function to be minimized. | |
``func(x, *args) -> float`` | |
where ``x`` is an 1-D array with shape (n,) and ``args`` is a tuple of | |
the fixed parameters needed to completely specify the function. | |
bounds : sequence or `Bounds` | |
Bounds for variables. There are two ways to specify the bounds: | |
1. Instance of `Bounds` class. | |
2. ``(min, max)`` pairs for each element in ``x``. | |
args : tuple, optional | |
Any additional fixed parameters needed to | |
completely specify the objective function. | |
eps : float, optional | |
Minimal required difference of the objective function values | |
between the current best hyperrectangle and the next potentially | |
optimal hyperrectangle to be divided. In consequence, `eps` serves as a | |
tradeoff between local and global search: the smaller, the more local | |
the search becomes. Default is 1e-4. | |
maxfun : int or None, optional | |
Approximate upper bound on objective function evaluations. | |
If `None`, will be automatically set to ``1000 * N`` where ``N`` | |
represents the number of dimensions. Will be capped if necessary to | |
limit DIRECT's RAM usage to app. 1GiB. This will only occur for very | |
high dimensional problems and excessive `max_fun`. Default is `None`. | |
maxiter : int, optional | |
Maximum number of iterations. Default is 1000. | |
locally_biased : bool, optional | |
If `True` (default), use the locally biased variant of the | |
algorithm known as DIRECT_L. If `False`, use the original unbiased | |
DIRECT algorithm. For hard problems with many local minima, | |
`False` is recommended. | |
f_min : float, optional | |
Function value of the global optimum. Set this value only if the | |
global optimum is known. Default is ``-np.inf``, so that this | |
termination criterion is deactivated. | |
f_min_rtol : float, optional | |
Terminate the optimization once the relative error between the | |
current best minimum `f` and the supplied global minimum `f_min` | |
is smaller than `f_min_rtol`. This parameter is only used if | |
`f_min` is also set. Must lie between 0 and 1. Default is 1e-4. | |
vol_tol : float, optional | |
Terminate the optimization once the volume of the hyperrectangle | |
containing the lowest function value is smaller than `vol_tol` | |
of the complete search space. Must lie between 0 and 1. | |
Default is 1e-16. | |
len_tol : float, optional | |
If `locally_biased=True`, terminate the optimization once half of | |
the normalized maximal side length of the hyperrectangle containing | |
the lowest function value is smaller than `len_tol`. | |
If `locally_biased=False`, terminate the optimization once half of | |
the normalized diagonal of the hyperrectangle containing the lowest | |
function value is smaller than `len_tol`. Must lie between 0 and 1. | |
Default is 1e-6. | |
callback : callable, optional | |
A callback function with signature ``callback(xk)`` where ``xk`` | |
represents the best function value found so far. | |
Returns | |
------- | |
res : OptimizeResult | |
The optimization result represented as a ``OptimizeResult`` object. | |
Important attributes are: ``x`` the solution array, ``success`` a | |
Boolean flag indicating if the optimizer exited successfully and | |
``message`` which describes the cause of the termination. See | |
`OptimizeResult` for a description of other attributes. | |
Notes | |
----- | |
DIviding RECTangles (DIRECT) is a deterministic global | |
optimization algorithm capable of minimizing a black box function with | |
its variables subject to lower and upper bound constraints by sampling | |
potential solutions in the search space [1]_. The algorithm starts by | |
normalising the search space to an n-dimensional unit hypercube. | |
It samples the function at the center of this hypercube and at 2n | |
(n is the number of variables) more points, 2 in each coordinate | |
direction. Using these function values, DIRECT then divides the | |
domain into hyperrectangles, each having exactly one of the sampling | |
points as its center. In each iteration, DIRECT chooses, using the `eps` | |
parameter which defaults to 1e-4, some of the existing hyperrectangles | |
to be further divided. This division process continues until either the | |
maximum number of iterations or maximum function evaluations allowed | |
are exceeded, or the hyperrectangle containing the minimal value found | |
so far becomes small enough. If `f_min` is specified, the optimization | |
will stop once this function value is reached within a relative tolerance. | |
The locally biased variant of DIRECT (originally called DIRECT_L) [2]_ is | |
used by default. It makes the search more locally biased and more | |
efficient for cases with only a few local minima. | |
A note about termination criteria: `vol_tol` refers to the volume of the | |
hyperrectangle containing the lowest function value found so far. This | |
volume decreases exponentially with increasing dimensionality of the | |
problem. Therefore `vol_tol` should be decreased to avoid premature | |
termination of the algorithm for higher dimensions. This does not hold | |
for `len_tol`: it refers either to half of the maximal side length | |
(for ``locally_biased=True``) or half of the diagonal of the | |
hyperrectangle (for ``locally_biased=False``). | |
This code is based on the DIRECT 2.0.4 Fortran code by Gablonsky et al. at | |
https://ctk.math.ncsu.edu/SOFTWARE/DIRECTv204.tar.gz . | |
This original version was initially converted via f2c and then cleaned up | |
and reorganized by Steven G. Johnson, August 2007, for the NLopt project. | |
The `direct` function wraps the C implementation. | |
.. versionadded:: 1.9.0 | |
References | |
---------- | |
.. [1] Jones, D.R., Perttunen, C.D. & Stuckman, B.E. Lipschitzian | |
optimization without the Lipschitz constant. J Optim Theory Appl | |
79, 157-181 (1993). | |
.. [2] Gablonsky, J., Kelley, C. A Locally-Biased form of the DIRECT | |
Algorithm. Journal of Global Optimization 21, 27-37 (2001). | |
Examples | |
-------- | |
The following example is a 2-D problem with four local minima: minimizing | |
the Styblinski-Tang function | |
(https://en.wikipedia.org/wiki/Test_functions_for_optimization). | |
>>> from scipy.optimize import direct, Bounds | |
>>> def styblinski_tang(pos): | |
... x, y = pos | |
... return 0.5 * (x**4 - 16*x**2 + 5*x + y**4 - 16*y**2 + 5*y) | |
>>> bounds = Bounds([-4., -4.], [4., 4.]) | |
>>> result = direct(styblinski_tang, bounds) | |
>>> result.x, result.fun, result.nfev | |
array([-2.90321597, -2.90321597]), -78.3323279095383, 2011 | |
The correct global minimum was found but with a huge number of function | |
evaluations (2011). Loosening the termination tolerances `vol_tol` and | |
`len_tol` can be used to stop DIRECT earlier. | |
>>> result = direct(styblinski_tang, bounds, len_tol=1e-3) | |
>>> result.x, result.fun, result.nfev | |
array([-2.9044353, -2.9044353]), -78.33230330754142, 207 | |
""" | |
# convert bounds to new Bounds class if necessary | |
if not isinstance(bounds, Bounds): | |
if isinstance(bounds, list) or isinstance(bounds, tuple): | |
lb, ub = old_bound_to_new(bounds) | |
bounds = Bounds(lb, ub) | |
else: | |
message = ("bounds must be a sequence or " | |
"instance of Bounds class") | |
raise ValueError(message) | |
lb = np.ascontiguousarray(bounds.lb, dtype=np.float64) | |
ub = np.ascontiguousarray(bounds.ub, dtype=np.float64) | |
# validate bounds | |
# check that lower bounds are smaller than upper bounds | |
if not np.all(lb < ub): | |
raise ValueError('Bounds are not consistent min < max') | |
# check for infs | |
if (np.any(np.isinf(lb)) or np.any(np.isinf(ub))): | |
raise ValueError("Bounds must not be inf.") | |
# validate tolerances | |
if (vol_tol < 0 or vol_tol > 1): | |
raise ValueError("vol_tol must be between 0 and 1.") | |
if (len_tol < 0 or len_tol > 1): | |
raise ValueError("len_tol must be between 0 and 1.") | |
if (f_min_rtol < 0 or f_min_rtol > 1): | |
raise ValueError("f_min_rtol must be between 0 and 1.") | |
# validate maxfun and maxiter | |
if maxfun is None: | |
maxfun = 1000 * lb.shape[0] | |
if not isinstance(maxfun, int): | |
raise ValueError("maxfun must be of type int.") | |
if maxfun < 0: | |
raise ValueError("maxfun must be > 0.") | |
if not isinstance(maxiter, int): | |
raise ValueError("maxiter must be of type int.") | |
if maxiter < 0: | |
raise ValueError("maxiter must be > 0.") | |
# validate boolean parameters | |
if not isinstance(locally_biased, bool): | |
raise ValueError("locally_biased must be True or False.") | |
def _func_wrap(x, args=None): | |
x = np.asarray(x) | |
if args is None: | |
f = func(x) | |
else: | |
f = func(x, *args) | |
# always return a float | |
return np.asarray(f).item() | |
# TODO: fix disp argument | |
x, fun, ret_code, nfev, nit = _direct( | |
_func_wrap, | |
np.asarray(lb), np.asarray(ub), | |
args, | |
False, eps, maxfun, maxiter, | |
locally_biased, | |
f_min, f_min_rtol, | |
vol_tol, len_tol, callback | |
) | |
format_val = (maxfun, maxiter, f_min_rtol, vol_tol, len_tol) | |
if ret_code > 2: | |
message = SUCCESS_MESSAGES[ret_code - 3].format( | |
format_val[ret_code - 1]) | |
elif 0 < ret_code <= 2: | |
message = ERROR_MESSAGES[ret_code - 1].format(format_val[ret_code - 1]) | |
elif 0 > ret_code > -100: | |
message = ERROR_MESSAGES[abs(ret_code) + 1] | |
else: | |
message = ERROR_MESSAGES[ret_code + 99] | |
return OptimizeResult(x=np.asarray(x), fun=fun, status=ret_code, | |
success=ret_code > 2, message=message, | |
nfev=nfev, nit=nit) | |