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import numpy as np
import ot


# import pytest


def test_conditional_gradient():

    n = 100  # nb bins
    np.random.seed(0)
    # bin positions
    x = np.arange(n, dtype=np.float64)

    # Gaussian distributions
    a = ot.datasets.get_1D_gauss(n, m=20, s=5)  # m= mean, s= std
    b = ot.datasets.get_1D_gauss(n, m=60, s=10)

    # loss matrix
    M = ot.dist(x.reshape((n, 1)), x.reshape((n, 1)))
    M /= M.max()

    def f(G):
        return 0.5 * np.sum(G**2)

    def df(G):
        return G

    reg = 1e-1

    G, log = ot.optim.cg(a, b, M, reg, f, df, verbose=True, log=True)

    assert np.allclose(a, G.sum(1))
    assert np.allclose(b, G.sum(0))


def test_generalized_conditional_gradient():

    n = 100  # nb bins
    np.random.seed(0)
    # bin positions
    x = np.arange(n, dtype=np.float64)

    # Gaussian distributions
    a = ot.datasets.get_1D_gauss(n, m=20, s=5)  # m= mean, s= std
    b = ot.datasets.get_1D_gauss(n, m=60, s=10)

    # loss matrix
    M = ot.dist(x.reshape((n, 1)), x.reshape((n, 1)))
    M /= M.max()

    def f(G):
        return 0.5 * np.sum(G**2)

    def df(G):
        return G

    reg1 = 1e-3
    reg2 = 1e-1

    G, log = ot.optim.gcg(a, b, M, reg1, reg2, f, df, verbose=True, log=True)

    assert np.allclose(a, G.sum(1), atol=1e-05)
    assert np.allclose(b, G.sum(0), atol=1e-05)