import numpy as np from numpy.testing import (assert_equal, assert_allclose, assert_, suppress_warnings) from pytest import raises as assert_raises import pytest from scipy.interpolate import (BSpline, BPoly, PPoly, make_interp_spline, make_lsq_spline, _bspl, splev, splrep, splprep, splder, splantider, sproot, splint, insert, CubicSpline) import scipy.linalg as sl from scipy._lib import _pep440 from scipy.interpolate._bsplines import (_not_a_knot, _augknt, _woodbury_algorithm, _periodic_knots, _make_interp_per_full_matr) import scipy.interpolate._fitpack_impl as _impl from scipy.interpolate._fitpack import _splint class TestBSpline: def test_ctor(self): # knots should be an ordered 1-D array of finite real numbers assert_raises((TypeError, ValueError), BSpline, **dict(t=[1, 1.j], c=[1.], k=0)) with np.errstate(invalid='ignore'): assert_raises(ValueError, BSpline, **dict(t=[1, np.nan], c=[1.], k=0)) assert_raises(ValueError, BSpline, **dict(t=[1, np.inf], c=[1.], k=0)) assert_raises(ValueError, BSpline, **dict(t=[1, -1], c=[1.], k=0)) assert_raises(ValueError, BSpline, **dict(t=[[1], [1]], c=[1.], k=0)) # for n+k+1 knots and degree k need at least n coefficients assert_raises(ValueError, BSpline, **dict(t=[0, 1, 2], c=[1], k=0)) assert_raises(ValueError, BSpline, **dict(t=[0, 1, 2, 3, 4], c=[1., 1.], k=2)) # non-integer orders assert_raises(TypeError, BSpline, **dict(t=[0., 0., 1., 2., 3., 4.], c=[1., 1., 1.], k="cubic")) assert_raises(TypeError, BSpline, **dict(t=[0., 0., 1., 2., 3., 4.], c=[1., 1., 1.], k=2.5)) # basic interval cannot have measure zero (here: [1..1]) assert_raises(ValueError, BSpline, **dict(t=[0., 0, 1, 1, 2, 3], c=[1., 1, 1], k=2)) # tck vs self.tck n, k = 11, 3 t = np.arange(n+k+1) c = np.random.random(n) b = BSpline(t, c, k) assert_allclose(t, b.t) assert_allclose(c, b.c) assert_equal(k, b.k) def test_tck(self): b = _make_random_spline() tck = b.tck assert_allclose(b.t, tck[0], atol=1e-15, rtol=1e-15) assert_allclose(b.c, tck[1], atol=1e-15, rtol=1e-15) assert_equal(b.k, tck[2]) # b.tck is read-only with pytest.raises(AttributeError): b.tck = 'foo' def test_degree_0(self): xx = np.linspace(0, 1, 10) b = BSpline(t=[0, 1], c=[3.], k=0) assert_allclose(b(xx), 3) b = BSpline(t=[0, 0.35, 1], c=[3, 4], k=0) assert_allclose(b(xx), np.where(xx < 0.35, 3, 4)) def test_degree_1(self): t = [0, 1, 2, 3, 4] c = [1, 2, 3] k = 1 b = BSpline(t, c, k) x = np.linspace(1, 3, 50) assert_allclose(c[0]*B_012(x) + c[1]*B_012(x-1) + c[2]*B_012(x-2), b(x), atol=1e-14) assert_allclose(splev(x, (t, c, k)), b(x), atol=1e-14) def test_bernstein(self): # a special knot vector: Bernstein polynomials k = 3 t = np.asarray([0]*(k+1) + [1]*(k+1)) c = np.asarray([1., 2., 3., 4.]) bp = BPoly(c.reshape(-1, 1), [0, 1]) bspl = BSpline(t, c, k) xx = np.linspace(-1., 2., 10) assert_allclose(bp(xx, extrapolate=True), bspl(xx, extrapolate=True), atol=1e-14) assert_allclose(splev(xx, (t, c, k)), bspl(xx), atol=1e-14) def test_rndm_naive_eval(self): # test random coefficient spline *on the base interval*, # t[k] <= x < t[-k-1] b = _make_random_spline() t, c, k = b.tck xx = np.linspace(t[k], t[-k-1], 50) y_b = b(xx) y_n = [_naive_eval(x, t, c, k) for x in xx] assert_allclose(y_b, y_n, atol=1e-14) y_n2 = [_naive_eval_2(x, t, c, k) for x in xx] assert_allclose(y_b, y_n2, atol=1e-14) def test_rndm_splev(self): b = _make_random_spline() t, c, k = b.tck xx = np.linspace(t[k], t[-k-1], 50) assert_allclose(b(xx), splev(xx, (t, c, k)), atol=1e-14) def test_rndm_splrep(self): np.random.seed(1234) x = np.sort(np.random.random(20)) y = np.random.random(20) tck = splrep(x, y) b = BSpline(*tck) t, k = b.t, b.k xx = np.linspace(t[k], t[-k-1], 80) assert_allclose(b(xx), splev(xx, tck), atol=1e-14) def test_rndm_unity(self): b = _make_random_spline() b.c = np.ones_like(b.c) xx = np.linspace(b.t[b.k], b.t[-b.k-1], 100) assert_allclose(b(xx), 1.) def test_vectorization(self): n, k = 22, 3 t = np.sort(np.random.random(n)) c = np.random.random(size=(n, 6, 7)) b = BSpline(t, c, k) tm, tp = t[k], t[-k-1] xx = tm + (tp - tm) * np.random.random((3, 4, 5)) assert_equal(b(xx).shape, (3, 4, 5, 6, 7)) def test_len_c(self): # for n+k+1 knots, only first n coefs are used. # and BTW this is consistent with FITPACK n, k = 33, 3 t = np.sort(np.random.random(n+k+1)) c = np.random.random(n) # pad coefficients with random garbage c_pad = np.r_[c, np.random.random(k+1)] b, b_pad = BSpline(t, c, k), BSpline(t, c_pad, k) dt = t[-1] - t[0] xx = np.linspace(t[0] - dt, t[-1] + dt, 50) assert_allclose(b(xx), b_pad(xx), atol=1e-14) assert_allclose(b(xx), splev(xx, (t, c, k)), atol=1e-14) assert_allclose(b(xx), splev(xx, (t, c_pad, k)), atol=1e-14) def test_endpoints(self): # base interval is closed b = _make_random_spline() t, _, k = b.tck tm, tp = t[k], t[-k-1] for extrap in (True, False): assert_allclose(b([tm, tp], extrap), b([tm + 1e-10, tp - 1e-10], extrap), atol=1e-9) def test_continuity(self): # assert continuity at internal knots b = _make_random_spline() t, _, k = b.tck assert_allclose(b(t[k+1:-k-1] - 1e-10), b(t[k+1:-k-1] + 1e-10), atol=1e-9) def test_extrap(self): b = _make_random_spline() t, c, k = b.tck dt = t[-1] - t[0] xx = np.linspace(t[k] - dt, t[-k-1] + dt, 50) mask = (t[k] < xx) & (xx < t[-k-1]) # extrap has no effect within the base interval assert_allclose(b(xx[mask], extrapolate=True), b(xx[mask], extrapolate=False)) # extrapolated values agree with FITPACK assert_allclose(b(xx, extrapolate=True), splev(xx, (t, c, k), ext=0)) def test_default_extrap(self): # BSpline defaults to extrapolate=True b = _make_random_spline() t, _, k = b.tck xx = [t[0] - 1, t[-1] + 1] yy = b(xx) assert_(not np.all(np.isnan(yy))) def test_periodic_extrap(self): np.random.seed(1234) t = np.sort(np.random.random(8)) c = np.random.random(4) k = 3 b = BSpline(t, c, k, extrapolate='periodic') n = t.size - (k + 1) dt = t[-1] - t[0] xx = np.linspace(t[k] - dt, t[n] + dt, 50) xy = t[k] + (xx - t[k]) % (t[n] - t[k]) assert_allclose(b(xx), splev(xy, (t, c, k))) # Direct check xx = [-1, 0, 0.5, 1] xy = t[k] + (xx - t[k]) % (t[n] - t[k]) assert_equal(b(xx, extrapolate='periodic'), b(xy, extrapolate=True)) def test_ppoly(self): b = _make_random_spline() t, c, k = b.tck pp = PPoly.from_spline((t, c, k)) xx = np.linspace(t[k], t[-k], 100) assert_allclose(b(xx), pp(xx), atol=1e-14, rtol=1e-14) def test_derivative_rndm(self): b = _make_random_spline() t, c, k = b.tck xx = np.linspace(t[0], t[-1], 50) xx = np.r_[xx, t] for der in range(1, k+1): yd = splev(xx, (t, c, k), der=der) assert_allclose(yd, b(xx, nu=der), atol=1e-14) # higher derivatives all vanish assert_allclose(b(xx, nu=k+1), 0, atol=1e-14) def test_derivative_jumps(self): # example from de Boor, Chap IX, example (24) # NB: knots augmented & corresp coefs are zeroed out # in agreement with the convention (29) k = 2 t = [-1, -1, 0, 1, 1, 3, 4, 6, 6, 6, 7, 7] np.random.seed(1234) c = np.r_[0, 0, np.random.random(5), 0, 0] b = BSpline(t, c, k) # b is continuous at x != 6 (triple knot) x = np.asarray([1, 3, 4, 6]) assert_allclose(b(x[x != 6] - 1e-10), b(x[x != 6] + 1e-10)) assert_(not np.allclose(b(6.-1e-10), b(6+1e-10))) # 1st derivative jumps at double knots, 1 & 6: x0 = np.asarray([3, 4]) assert_allclose(b(x0 - 1e-10, nu=1), b(x0 + 1e-10, nu=1)) x1 = np.asarray([1, 6]) assert_(not np.all(np.allclose(b(x1 - 1e-10, nu=1), b(x1 + 1e-10, nu=1)))) # 2nd derivative is not guaranteed to be continuous either assert_(not np.all(np.allclose(b(x - 1e-10, nu=2), b(x + 1e-10, nu=2)))) def test_basis_element_quadratic(self): xx = np.linspace(-1, 4, 20) b = BSpline.basis_element(t=[0, 1, 2, 3]) assert_allclose(b(xx), splev(xx, (b.t, b.c, b.k)), atol=1e-14) assert_allclose(b(xx), B_0123(xx), atol=1e-14) b = BSpline.basis_element(t=[0, 1, 1, 2]) xx = np.linspace(0, 2, 10) assert_allclose(b(xx), np.where(xx < 1, xx*xx, (2.-xx)**2), atol=1e-14) def test_basis_element_rndm(self): b = _make_random_spline() t, c, k = b.tck xx = np.linspace(t[k], t[-k-1], 20) assert_allclose(b(xx), _sum_basis_elements(xx, t, c, k), atol=1e-14) def test_cmplx(self): b = _make_random_spline() t, c, k = b.tck cc = c * (1. + 3.j) b = BSpline(t, cc, k) b_re = BSpline(t, b.c.real, k) b_im = BSpline(t, b.c.imag, k) xx = np.linspace(t[k], t[-k-1], 20) assert_allclose(b(xx).real, b_re(xx), atol=1e-14) assert_allclose(b(xx).imag, b_im(xx), atol=1e-14) def test_nan(self): # nan in, nan out. b = BSpline.basis_element([0, 1, 1, 2]) assert_(np.isnan(b(np.nan))) def test_derivative_method(self): b = _make_random_spline(k=5) t, c, k = b.tck b0 = BSpline(t, c, k) xx = np.linspace(t[k], t[-k-1], 20) for j in range(1, k): b = b.derivative() assert_allclose(b0(xx, j), b(xx), atol=1e-12, rtol=1e-12) def test_antiderivative_method(self): b = _make_random_spline() t, c, k = b.tck xx = np.linspace(t[k], t[-k-1], 20) assert_allclose(b.antiderivative().derivative()(xx), b(xx), atol=1e-14, rtol=1e-14) # repeat with N-D array for c c = np.c_[c, c, c] c = np.dstack((c, c)) b = BSpline(t, c, k) assert_allclose(b.antiderivative().derivative()(xx), b(xx), atol=1e-14, rtol=1e-14) def test_integral(self): b = BSpline.basis_element([0, 1, 2]) # x for x < 1 else 2 - x assert_allclose(b.integrate(0, 1), 0.5) assert_allclose(b.integrate(1, 0), -1 * 0.5) assert_allclose(b.integrate(1, 0), -0.5) # extrapolate or zeros outside of [0, 2]; default is yes assert_allclose(b.integrate(-1, 1), 0) assert_allclose(b.integrate(-1, 1, extrapolate=True), 0) assert_allclose(b.integrate(-1, 1, extrapolate=False), 0.5) assert_allclose(b.integrate(1, -1, extrapolate=False), -1 * 0.5) # Test ``_fitpack._splint()`` t, c, k = b.tck assert_allclose(b.integrate(1, -1, extrapolate=False), _splint(t, c, k, 1, -1)[0]) # Test ``extrapolate='periodic'``. b.extrapolate = 'periodic' i = b.antiderivative() period_int = i(2) - i(0) assert_allclose(b.integrate(0, 2), period_int) assert_allclose(b.integrate(2, 0), -1 * period_int) assert_allclose(b.integrate(-9, -7), period_int) assert_allclose(b.integrate(-8, -4), 2 * period_int) assert_allclose(b.integrate(0.5, 1.5), i(1.5) - i(0.5)) assert_allclose(b.integrate(1.5, 3), i(1) - i(0) + i(2) - i(1.5)) assert_allclose(b.integrate(1.5 + 12, 3 + 12), i(1) - i(0) + i(2) - i(1.5)) assert_allclose(b.integrate(1.5, 3 + 12), i(1) - i(0) + i(2) - i(1.5) + 6 * period_int) assert_allclose(b.integrate(0, -1), i(0) - i(1)) assert_allclose(b.integrate(-9, -10), i(0) - i(1)) assert_allclose(b.integrate(0, -9), i(1) - i(2) - 4 * period_int) def test_integrate_ppoly(self): # test .integrate method to be consistent with PPoly.integrate x = [0, 1, 2, 3, 4] b = make_interp_spline(x, x) b.extrapolate = 'periodic' p = PPoly.from_spline(b) for x0, x1 in [(-5, 0.5), (0.5, 5), (-4, 13)]: assert_allclose(b.integrate(x0, x1), p.integrate(x0, x1)) def test_subclassing(self): # classmethods should not decay to the base class class B(BSpline): pass b = B.basis_element([0, 1, 2, 2]) assert_equal(b.__class__, B) assert_equal(b.derivative().__class__, B) assert_equal(b.antiderivative().__class__, B) @pytest.mark.parametrize('axis', range(-4, 4)) def test_axis(self, axis): n, k = 22, 3 t = np.linspace(0, 1, n + k + 1) sh = [6, 7, 8] # We need the positive axis for some of the indexing and slices used # in this test. pos_axis = axis % 4 sh.insert(pos_axis, n) # [22, 6, 7, 8] etc c = np.random.random(size=sh) b = BSpline(t, c, k, axis=axis) assert_equal(b.c.shape, [sh[pos_axis],] + sh[:pos_axis] + sh[pos_axis+1:]) xp = np.random.random((3, 4, 5)) assert_equal(b(xp).shape, sh[:pos_axis] + list(xp.shape) + sh[pos_axis+1:]) # -c.ndim <= axis < c.ndim for ax in [-c.ndim - 1, c.ndim]: assert_raises(np.AxisError, BSpline, **dict(t=t, c=c, k=k, axis=ax)) # derivative, antiderivative keeps the axis for b1 in [BSpline(t, c, k, axis=axis).derivative(), BSpline(t, c, k, axis=axis).derivative(2), BSpline(t, c, k, axis=axis).antiderivative(), BSpline(t, c, k, axis=axis).antiderivative(2)]: assert_equal(b1.axis, b.axis) def test_neg_axis(self): k = 2 t = [0, 1, 2, 3, 4, 5, 6] c = np.array([[-1, 2, 0, -1], [2, 0, -3, 1]]) spl = BSpline(t, c, k, axis=-1) spl0 = BSpline(t, c[0], k) spl1 = BSpline(t, c[1], k) assert_equal(spl(2.5), [spl0(2.5), spl1(2.5)]) def test_design_matrix_bc_types(self): ''' Splines with different boundary conditions are built on different types of vectors of knots. As far as design matrix depends only on vector of knots, `k` and `x` it is useful to make tests for different boundary conditions (and as following different vectors of knots). ''' def run_design_matrix_tests(n, k, bc_type): ''' To avoid repetition of the code the following function is provided. ''' np.random.seed(1234) x = np.sort(np.random.random_sample(n) * 40 - 20) y = np.random.random_sample(n) * 40 - 20 if bc_type == "periodic": y[0] = y[-1] bspl = make_interp_spline(x, y, k=k, bc_type=bc_type) c = np.eye(len(bspl.t) - k - 1) des_matr_def = BSpline(bspl.t, c, k)(x) des_matr_csr = BSpline.design_matrix(x, bspl.t, k).toarray() assert_allclose(des_matr_csr @ bspl.c, y, atol=1e-14) assert_allclose(des_matr_def, des_matr_csr, atol=1e-14) # "clamped" and "natural" work only with `k = 3` n = 11 k = 3 for bc in ["clamped", "natural"]: run_design_matrix_tests(n, k, bc) # "not-a-knot" works with odd `k` for k in range(3, 8, 2): run_design_matrix_tests(n, k, "not-a-knot") # "periodic" works with any `k` (even more than `n`) n = 5 # smaller `n` to test `k > n` case for k in range(2, 7): run_design_matrix_tests(n, k, "periodic") def test_design_matrix_x_shapes(self): # test for different `x` shapes np.random.seed(1234) n = 10 k = 3 x = np.sort(np.random.random_sample(n) * 40 - 20) y = np.random.random_sample(n) * 40 - 20 bspl = make_interp_spline(x, y, k=k) for i in range(1, 4): xc = x[:i] yc = y[:i] des_matr_csr = BSpline.design_matrix(xc, bspl.t, k).toarray() assert_allclose(des_matr_csr @ bspl.c, yc, atol=1e-14) def test_design_matrix_t_shapes(self): # test for minimal possible `t` shape t = [1., 1., 1., 2., 3., 4., 4., 4.] des_matr = BSpline.design_matrix(2., t, 3).toarray() assert_allclose(des_matr, [[0.25, 0.58333333, 0.16666667, 0.]], atol=1e-14) def test_design_matrix_asserts(self): np.random.seed(1234) n = 10 k = 3 x = np.sort(np.random.random_sample(n) * 40 - 20) y = np.random.random_sample(n) * 40 - 20 bspl = make_interp_spline(x, y, k=k) # invalid vector of knots (should be a 1D non-descending array) # here the actual vector of knots is reversed, so it is invalid with assert_raises(ValueError): BSpline.design_matrix(x, bspl.t[::-1], k) k = 2 t = [0., 1., 2., 3., 4., 5.] x = [1., 2., 3., 4.] # out of bounds with assert_raises(ValueError): BSpline.design_matrix(x, t, k) @pytest.mark.parametrize('bc_type', ['natural', 'clamped', 'periodic', 'not-a-knot']) def test_from_power_basis(self, bc_type): np.random.seed(1234) x = np.sort(np.random.random(20)) y = np.random.random(20) if bc_type == 'periodic': y[-1] = y[0] cb = CubicSpline(x, y, bc_type=bc_type) bspl = BSpline.from_power_basis(cb, bc_type=bc_type) xx = np.linspace(0, 1, 20) assert_allclose(cb(xx), bspl(xx), atol=1e-15) bspl_new = make_interp_spline(x, y, bc_type=bc_type) assert_allclose(bspl.c, bspl_new.c, atol=1e-15) @pytest.mark.parametrize('bc_type', ['natural', 'clamped', 'periodic', 'not-a-knot']) def test_from_power_basis_complex(self, bc_type): np.random.seed(1234) x = np.sort(np.random.random(20)) y = np.random.random(20) + np.random.random(20) * 1j if bc_type == 'periodic': y[-1] = y[0] cb = CubicSpline(x, y, bc_type=bc_type) bspl = BSpline.from_power_basis(cb, bc_type=bc_type) bspl_new_real = make_interp_spline(x, y.real, bc_type=bc_type) bspl_new_imag = make_interp_spline(x, y.imag, bc_type=bc_type) assert_equal(bspl.c.dtype, (bspl_new_real.c + 1j * bspl_new_imag.c).dtype) assert_allclose(bspl.c, bspl_new_real.c + 1j * bspl_new_imag.c, atol=1e-15) def test_from_power_basis_exmp(self): ''' For x = [0, 1, 2, 3, 4] and y = [1, 1, 1, 1, 1] the coefficients of Cubic Spline in the power basis: $[[0, 0, 0, 0, 0],\\$ $[0, 0, 0, 0, 0],\\$ $[0, 0, 0, 0, 0],\\$ $[1, 1, 1, 1, 1]]$ It could be shown explicitly that coefficients of the interpolating function in B-spline basis are c = [1, 1, 1, 1, 1, 1, 1] ''' x = np.array([0, 1, 2, 3, 4]) y = np.array([1, 1, 1, 1, 1]) bspl = BSpline.from_power_basis(CubicSpline(x, y, bc_type='natural'), bc_type='natural') assert_allclose(bspl.c, [1, 1, 1, 1, 1, 1, 1], atol=1e-15) def test_knots_multiplicity(): # Take a spline w/ random coefficients, throw in knots of varying # multiplicity. def check_splev(b, j, der=0, atol=1e-14, rtol=1e-14): # check evaluations against FITPACK, incl extrapolations t, c, k = b.tck x = np.unique(t) x = np.r_[t[0]-0.1, 0.5*(x[1:] + x[:1]), t[-1]+0.1] assert_allclose(splev(x, (t, c, k), der), b(x, der), atol=atol, rtol=rtol, err_msg='der = %s k = %s' % (der, b.k)) # test loop itself # [the index `j` is for interpreting the traceback in case of a failure] for k in [1, 2, 3, 4, 5]: b = _make_random_spline(k=k) for j, b1 in enumerate(_make_multiples(b)): check_splev(b1, j) for der in range(1, k+1): check_splev(b1, j, der, 1e-12, 1e-12) ### stolen from @pv, verbatim def _naive_B(x, k, i, t): """ Naive way to compute B-spline basis functions. Useful only for testing! computes B(x; t[i],..., t[i+k+1]) """ if k == 0: return 1.0 if t[i] <= x < t[i+1] else 0.0 if t[i+k] == t[i]: c1 = 0.0 else: c1 = (x - t[i])/(t[i+k] - t[i]) * _naive_B(x, k-1, i, t) if t[i+k+1] == t[i+1]: c2 = 0.0 else: c2 = (t[i+k+1] - x)/(t[i+k+1] - t[i+1]) * _naive_B(x, k-1, i+1, t) return (c1 + c2) ### stolen from @pv, verbatim def _naive_eval(x, t, c, k): """ Naive B-spline evaluation. Useful only for testing! """ if x == t[k]: i = k else: i = np.searchsorted(t, x) - 1 assert t[i] <= x <= t[i+1] assert i >= k and i < len(t) - k return sum(c[i-j] * _naive_B(x, k, i-j, t) for j in range(0, k+1)) def _naive_eval_2(x, t, c, k): """Naive B-spline evaluation, another way.""" n = len(t) - (k+1) assert n >= k+1 assert len(c) >= n assert t[k] <= x <= t[n] return sum(c[i] * _naive_B(x, k, i, t) for i in range(n)) def _sum_basis_elements(x, t, c, k): n = len(t) - (k+1) assert n >= k+1 assert len(c) >= n s = 0. for i in range(n): b = BSpline.basis_element(t[i:i+k+2], extrapolate=False)(x) s += c[i] * np.nan_to_num(b) # zero out out-of-bounds elements return s def B_012(x): """ A linear B-spline function B(x | 0, 1, 2).""" x = np.atleast_1d(x) return np.piecewise(x, [(x < 0) | (x > 2), (x >= 0) & (x < 1), (x >= 1) & (x <= 2)], [lambda x: 0., lambda x: x, lambda x: 2.-x]) def B_0123(x, der=0): """A quadratic B-spline function B(x | 0, 1, 2, 3).""" x = np.atleast_1d(x) conds = [x < 1, (x > 1) & (x < 2), x > 2] if der == 0: funcs = [lambda x: x*x/2., lambda x: 3./4 - (x-3./2)**2, lambda x: (3.-x)**2 / 2] elif der == 2: funcs = [lambda x: 1., lambda x: -2., lambda x: 1.] else: raise ValueError('never be here: der=%s' % der) pieces = np.piecewise(x, conds, funcs) return pieces def _make_random_spline(n=35, k=3): np.random.seed(123) t = np.sort(np.random.random(n+k+1)) c = np.random.random(n) return BSpline.construct_fast(t, c, k) def _make_multiples(b): """Increase knot multiplicity.""" c, k = b.c, b.k t1 = b.t.copy() t1[17:19] = t1[17] t1[22] = t1[21] yield BSpline(t1, c, k) t1 = b.t.copy() t1[:k+1] = t1[0] yield BSpline(t1, c, k) t1 = b.t.copy() t1[-k-1:] = t1[-1] yield BSpline(t1, c, k) class TestInterop: # # Test that FITPACK-based spl* functions can deal with BSpline objects # def setup_method(self): xx = np.linspace(0, 4.*np.pi, 41) yy = np.cos(xx) b = make_interp_spline(xx, yy) self.tck = (b.t, b.c, b.k) self.xx, self.yy, self.b = xx, yy, b self.xnew = np.linspace(0, 4.*np.pi, 21) c2 = np.c_[b.c, b.c, b.c] self.c2 = np.dstack((c2, c2)) self.b2 = BSpline(b.t, self.c2, b.k) def test_splev(self): xnew, b, b2 = self.xnew, self.b, self.b2 # check that splev works with 1-D array of coefficients # for array and scalar `x` assert_allclose(splev(xnew, b), b(xnew), atol=1e-15, rtol=1e-15) assert_allclose(splev(xnew, b.tck), b(xnew), atol=1e-15, rtol=1e-15) assert_allclose([splev(x, b) for x in xnew], b(xnew), atol=1e-15, rtol=1e-15) # With N-D coefficients, there's a quirck: # splev(x, BSpline) is equivalent to BSpline(x) with assert_raises(ValueError, match="Calling splev.. with BSpline"): splev(xnew, b2) # However, splev(x, BSpline.tck) needs some transposes. This is because # BSpline interpolates along the first axis, while the legacy FITPACK # wrapper does list(map(...)) which effectively interpolates along the # last axis. Like so: sh = tuple(range(1, b2.c.ndim)) + (0,) # sh = (1, 2, 0) cc = b2.c.transpose(sh) tck = (b2.t, cc, b2.k) assert_allclose(splev(xnew, tck), b2(xnew).transpose(sh), atol=1e-15, rtol=1e-15) def test_splrep(self): x, y = self.xx, self.yy # test that "new" splrep is equivalent to _impl.splrep tck = splrep(x, y) t, c, k = _impl.splrep(x, y) assert_allclose(tck[0], t, atol=1e-15) assert_allclose(tck[1], c, atol=1e-15) assert_equal(tck[2], k) # also cover the `full_output=True` branch tck_f, _, _, _ = splrep(x, y, full_output=True) assert_allclose(tck_f[0], t, atol=1e-15) assert_allclose(tck_f[1], c, atol=1e-15) assert_equal(tck_f[2], k) # test that the result of splrep roundtrips with splev: # evaluate the spline on the original `x` points yy = splev(x, tck) assert_allclose(y, yy, atol=1e-15) # ... and also it roundtrips if wrapped in a BSpline b = BSpline(*tck) assert_allclose(y, b(x), atol=1e-15) @pytest.mark.xfail(_pep440.parse(np.__version__) < _pep440.Version('1.14.0'), reason='requires NumPy >= 1.14.0') def test_splrep_errors(self): # test that both "old" and "new" splrep raise for an N-D ``y`` array # with n > 1 x, y = self.xx, self.yy y2 = np.c_[y, y] with assert_raises(ValueError): splrep(x, y2) with assert_raises(ValueError): _impl.splrep(x, y2) # input below minimum size with assert_raises(TypeError, match="m > k must hold"): splrep(x[:3], y[:3]) with assert_raises(TypeError, match="m > k must hold"): _impl.splrep(x[:3], y[:3]) def test_splprep(self): x = np.arange(15).reshape((3, 5)) b, u = splprep(x) tck, u1 = _impl.splprep(x) # test the roundtrip with splev for both "old" and "new" output assert_allclose(u, u1, atol=1e-15) assert_allclose(splev(u, b), x, atol=1e-15) assert_allclose(splev(u, tck), x, atol=1e-15) # cover the ``full_output=True`` branch (b_f, u_f), _, _, _ = splprep(x, s=0, full_output=True) assert_allclose(u, u_f, atol=1e-15) assert_allclose(splev(u_f, b_f), x, atol=1e-15) def test_splprep_errors(self): # test that both "old" and "new" code paths raise for x.ndim > 2 x = np.arange(3*4*5).reshape((3, 4, 5)) with assert_raises(ValueError, match="too many values to unpack"): splprep(x) with assert_raises(ValueError, match="too many values to unpack"): _impl.splprep(x) # input below minimum size x = np.linspace(0, 40, num=3) with assert_raises(TypeError, match="m > k must hold"): splprep([x]) with assert_raises(TypeError, match="m > k must hold"): _impl.splprep([x]) # automatically calculated parameters are non-increasing # see gh-7589 x = [-50.49072266, -50.49072266, -54.49072266, -54.49072266] with assert_raises(ValueError, match="Invalid inputs"): splprep([x]) with assert_raises(ValueError, match="Invalid inputs"): _impl.splprep([x]) # given non-increasing parameter values u x = [1, 3, 2, 4] u = [0, 0.3, 0.2, 1] with assert_raises(ValueError, match="Invalid inputs"): splprep(*[[x], None, u]) def test_sproot(self): b, b2 = self.b, self.b2 roots = np.array([0.5, 1.5, 2.5, 3.5])*np.pi # sproot accepts a BSpline obj w/ 1-D coef array assert_allclose(sproot(b), roots, atol=1e-7, rtol=1e-7) assert_allclose(sproot((b.t, b.c, b.k)), roots, atol=1e-7, rtol=1e-7) # ... and deals with trailing dimensions if coef array is N-D with assert_raises(ValueError, match="Calling sproot.. with BSpline"): sproot(b2, mest=50) # and legacy behavior is preserved for a tck tuple w/ N-D coef c2r = b2.c.transpose(1, 2, 0) rr = np.asarray(sproot((b2.t, c2r, b2.k), mest=50)) assert_equal(rr.shape, (3, 2, 4)) assert_allclose(rr - roots, 0, atol=1e-12) def test_splint(self): # test that splint accepts BSpline objects b, b2 = self.b, self.b2 assert_allclose(splint(0, 1, b), splint(0, 1, b.tck), atol=1e-14) assert_allclose(splint(0, 1, b), b.integrate(0, 1), atol=1e-14) # ... and deals with N-D arrays of coefficients with assert_raises(ValueError, match="Calling splint.. with BSpline"): splint(0, 1, b2) # and the legacy behavior is preserved for a tck tuple w/ N-D coef c2r = b2.c.transpose(1, 2, 0) integr = np.asarray(splint(0, 1, (b2.t, c2r, b2.k))) assert_equal(integr.shape, (3, 2)) assert_allclose(integr, splint(0, 1, b), atol=1e-14) def test_splder(self): for b in [self.b, self.b2]: # pad the c array (FITPACK convention) ct = len(b.t) - len(b.c) if ct > 0: b.c = np.r_[b.c, np.zeros((ct,) + b.c.shape[1:])] for n in [1, 2, 3]: bd = splder(b) tck_d = _impl.splder((b.t, b.c, b.k)) assert_allclose(bd.t, tck_d[0], atol=1e-15) assert_allclose(bd.c, tck_d[1], atol=1e-15) assert_equal(bd.k, tck_d[2]) assert_(isinstance(bd, BSpline)) assert_(isinstance(tck_d, tuple)) # back-compat: tck in and out def test_splantider(self): for b in [self.b, self.b2]: # pad the c array (FITPACK convention) ct = len(b.t) - len(b.c) if ct > 0: b.c = np.r_[b.c, np.zeros((ct,) + b.c.shape[1:])] for n in [1, 2, 3]: bd = splantider(b) tck_d = _impl.splantider((b.t, b.c, b.k)) assert_allclose(bd.t, tck_d[0], atol=1e-15) assert_allclose(bd.c, tck_d[1], atol=1e-15) assert_equal(bd.k, tck_d[2]) assert_(isinstance(bd, BSpline)) assert_(isinstance(tck_d, tuple)) # back-compat: tck in and out def test_insert(self): b, b2, xx = self.b, self.b2, self.xx j = b.t.size // 2 tn = 0.5*(b.t[j] + b.t[j+1]) bn, tck_n = insert(tn, b), insert(tn, (b.t, b.c, b.k)) assert_allclose(splev(xx, bn), splev(xx, tck_n), atol=1e-15) assert_(isinstance(bn, BSpline)) assert_(isinstance(tck_n, tuple)) # back-compat: tck in, tck out # for N-D array of coefficients, BSpline.c needs to be transposed # after that, the results are equivalent. sh = tuple(range(b2.c.ndim)) c_ = b2.c.transpose(sh[1:] + (0,)) tck_n2 = insert(tn, (b2.t, c_, b2.k)) bn2 = insert(tn, b2) # need a transpose for comparing the results, cf test_splev assert_allclose(np.asarray(splev(xx, tck_n2)).transpose(2, 0, 1), bn2(xx), atol=1e-15) assert_(isinstance(bn2, BSpline)) assert_(isinstance(tck_n2, tuple)) # back-compat: tck in, tck out class TestInterp: # # Test basic ways of constructing interpolating splines. # xx = np.linspace(0., 2.*np.pi) yy = np.sin(xx) def test_non_int_order(self): with assert_raises(TypeError): make_interp_spline(self.xx, self.yy, k=2.5) def test_order_0(self): b = make_interp_spline(self.xx, self.yy, k=0) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) b = make_interp_spline(self.xx, self.yy, k=0, axis=-1) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) def test_linear(self): b = make_interp_spline(self.xx, self.yy, k=1) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) b = make_interp_spline(self.xx, self.yy, k=1, axis=-1) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) @pytest.mark.parametrize('k', [0, 1, 2, 3]) def test_incompatible_x_y(self, k): x = [0, 1, 2, 3, 4, 5] y = [0, 1, 2, 3, 4, 5, 6, 7] with assert_raises(ValueError, match="Shapes of x"): make_interp_spline(x, y, k=k) @pytest.mark.parametrize('k', [0, 1, 2, 3]) def test_broken_x(self, k): x = [0, 1, 1, 2, 3, 4] # duplicates y = [0, 1, 2, 3, 4, 5] with assert_raises(ValueError, match="x to not have duplicates"): make_interp_spline(x, y, k=k) x = [0, 2, 1, 3, 4, 5] # unsorted with assert_raises(ValueError, match="Expect x to be a 1D strictly"): make_interp_spline(x, y, k=k) x = [0, 1, 2, 3, 4, 5] x = np.asarray(x).reshape((1, -1)) # 1D with assert_raises(ValueError, match="Expect x to be a 1D strictly"): make_interp_spline(x, y, k=k) def test_not_a_knot(self): for k in [3, 5]: b = make_interp_spline(self.xx, self.yy, k) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) def test_periodic(self): # k = 5 here for more derivatives b = make_interp_spline(self.xx, self.yy, k=5, bc_type='periodic') assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) # in periodic case it is expected equality of k-1 first # derivatives at the boundaries for i in range(1, 5): assert_allclose(b(self.xx[0], nu=i), b(self.xx[-1], nu=i), atol=1e-11) # tests for axis=-1 b = make_interp_spline(self.xx, self.yy, k=5, bc_type='periodic', axis=-1) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) for i in range(1, 5): assert_allclose(b(self.xx[0], nu=i), b(self.xx[-1], nu=i), atol=1e-11) @pytest.mark.parametrize('k', [2, 3, 4, 5, 6, 7]) def test_periodic_random(self, k): # tests for both cases (k > n and k <= n) n = 5 np.random.seed(1234) x = np.sort(np.random.random_sample(n) * 10) y = np.random.random_sample(n) * 100 y[0] = y[-1] b = make_interp_spline(x, y, k=k, bc_type='periodic') assert_allclose(b(x), y, atol=1e-14) def test_periodic_axis(self): n = self.xx.shape[0] np.random.seed(1234) x = np.random.random_sample(n) * 2 * np.pi x = np.sort(x) x[0] = 0. x[-1] = 2 * np.pi y = np.zeros((2, n)) y[0] = np.sin(x) y[1] = np.cos(x) b = make_interp_spline(x, y, k=5, bc_type='periodic', axis=1) for i in range(n): assert_allclose(b(x[i]), y[:, i], atol=1e-14) assert_allclose(b(x[0]), b(x[-1]), atol=1e-14) def test_periodic_points_exception(self): # first and last points should match when periodic case expected np.random.seed(1234) k = 5 n = 8 x = np.sort(np.random.random_sample(n)) y = np.random.random_sample(n) y[0] = y[-1] - 1 # to be sure that they are not equal with assert_raises(ValueError): make_interp_spline(x, y, k=k, bc_type='periodic') def test_periodic_knots_exception(self): # `periodic` case does not work with passed vector of knots np.random.seed(1234) k = 3 n = 7 x = np.sort(np.random.random_sample(n)) y = np.random.random_sample(n) t = np.zeros(n + 2 * k) with assert_raises(ValueError): make_interp_spline(x, y, k, t, 'periodic') @pytest.mark.parametrize('k', [2, 3, 4, 5]) def test_periodic_splev(self, k): # comparision values of periodic b-spline with splev b = make_interp_spline(self.xx, self.yy, k=k, bc_type='periodic') tck = splrep(self.xx, self.yy, per=True, k=k) spl = splev(self.xx, tck) assert_allclose(spl, b(self.xx), atol=1e-14) # comparison derivatives of periodic b-spline with splev for i in range(1, k): spl = splev(self.xx, tck, der=i) assert_allclose(spl, b(self.xx, nu=i), atol=1e-10) def test_periodic_cubic(self): # comparison values of cubic periodic b-spline with CubicSpline b = make_interp_spline(self.xx, self.yy, k=3, bc_type='periodic') cub = CubicSpline(self.xx, self.yy, bc_type='periodic') assert_allclose(b(self.xx), cub(self.xx), atol=1e-14) # edge case: Cubic interpolation on 3 points n = 3 x = np.sort(np.random.random_sample(n) * 10) y = np.random.random_sample(n) * 100 y[0] = y[-1] b = make_interp_spline(x, y, k=3, bc_type='periodic') cub = CubicSpline(x, y, bc_type='periodic') assert_allclose(b(x), cub(x), atol=1e-14) def test_periodic_full_matrix(self): # comparison values of cubic periodic b-spline with # solution of the system with full matrix k = 3 b = make_interp_spline(self.xx, self.yy, k=k, bc_type='periodic') t = _periodic_knots(self.xx, k) c = _make_interp_per_full_matr(self.xx, self.yy, t, k) b1 = np.vectorize(lambda x: _naive_eval(x, t, c, k)) assert_allclose(b(self.xx), b1(self.xx), atol=1e-14) def test_quadratic_deriv(self): der = [(1, 8.)] # order, value: f'(x) = 8. # derivative at right-hand edge b = make_interp_spline(self.xx, self.yy, k=2, bc_type=(None, der)) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) assert_allclose(b(self.xx[-1], 1), der[0][1], atol=1e-14, rtol=1e-14) # derivative at left-hand edge b = make_interp_spline(self.xx, self.yy, k=2, bc_type=(der, None)) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) assert_allclose(b(self.xx[0], 1), der[0][1], atol=1e-14, rtol=1e-14) def test_cubic_deriv(self): k = 3 # first derivatives at left & right edges: der_l, der_r = [(1, 3.)], [(1, 4.)] b = make_interp_spline(self.xx, self.yy, k, bc_type=(der_l, der_r)) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) assert_allclose([b(self.xx[0], 1), b(self.xx[-1], 1)], [der_l[0][1], der_r[0][1]], atol=1e-14, rtol=1e-14) # 'natural' cubic spline, zero out 2nd derivatives at the boundaries der_l, der_r = [(2, 0)], [(2, 0)] b = make_interp_spline(self.xx, self.yy, k, bc_type=(der_l, der_r)) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) def test_quintic_derivs(self): k, n = 5, 7 x = np.arange(n).astype(np.float_) y = np.sin(x) der_l = [(1, -12.), (2, 1)] der_r = [(1, 8.), (2, 3.)] b = make_interp_spline(x, y, k=k, bc_type=(der_l, der_r)) assert_allclose(b(x), y, atol=1e-14, rtol=1e-14) assert_allclose([b(x[0], 1), b(x[0], 2)], [val for (nu, val) in der_l]) assert_allclose([b(x[-1], 1), b(x[-1], 2)], [val for (nu, val) in der_r]) @pytest.mark.xfail(reason='unstable') def test_cubic_deriv_unstable(self): # 1st and 2nd derivative at x[0], no derivative information at x[-1] # The problem is not that it fails [who would use this anyway], # the problem is that it fails *silently*, and I've no idea # how to detect this sort of instability. # In this particular case: it's OK for len(t) < 20, goes haywire # at larger `len(t)`. k = 3 t = _augknt(self.xx, k) der_l = [(1, 3.), (2, 4.)] b = make_interp_spline(self.xx, self.yy, k, t, bc_type=(der_l, None)) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) def test_knots_not_data_sites(self): # Knots need not coincide with the data sites. # use a quadratic spline, knots are at data averages, # two additional constraints are zero 2nd derivatives at edges k = 2 t = np.r_[(self.xx[0],)*(k+1), (self.xx[1:] + self.xx[:-1]) / 2., (self.xx[-1],)*(k+1)] b = make_interp_spline(self.xx, self.yy, k, t, bc_type=([(2, 0)], [(2, 0)])) assert_allclose(b(self.xx), self.yy, atol=1e-14, rtol=1e-14) assert_allclose([b(self.xx[0], 2), b(self.xx[-1], 2)], [0., 0.], atol=1e-14) def test_minimum_points_and_deriv(self): # interpolation of f(x) = x**3 between 0 and 1. f'(x) = 3 * xx**2 and # f'(0) = 0, f'(1) = 3. k = 3 x = [0., 1.] y = [0., 1.] b = make_interp_spline(x, y, k, bc_type=([(1, 0.)], [(1, 3.)])) xx = np.linspace(0., 1.) yy = xx**3 assert_allclose(b(xx), yy, atol=1e-14, rtol=1e-14) def test_deriv_spec(self): # If one of the derivatives is omitted, the spline definition is # incomplete. x = y = [1.0, 2, 3, 4, 5, 6] with assert_raises(ValueError): make_interp_spline(x, y, bc_type=([(1, 0.)], None)) with assert_raises(ValueError): make_interp_spline(x, y, bc_type=(1, 0.)) with assert_raises(ValueError): make_interp_spline(x, y, bc_type=[(1, 0.)]) with assert_raises(ValueError): make_interp_spline(x, y, bc_type=42) # CubicSpline expects`bc_type=(left_pair, right_pair)`, while # here we expect `bc_type=(iterable, iterable)`. l, r = (1, 0.0), (1, 0.0) with assert_raises(ValueError): make_interp_spline(x, y, bc_type=(l, r)) def test_complex(self): k = 3 xx = self.xx yy = self.yy + 1.j*self.yy # first derivatives at left & right edges: der_l, der_r = [(1, 3.j)], [(1, 4.+2.j)] b = make_interp_spline(xx, yy, k, bc_type=(der_l, der_r)) assert_allclose(b(xx), yy, atol=1e-14, rtol=1e-14) assert_allclose([b(xx[0], 1), b(xx[-1], 1)], [der_l[0][1], der_r[0][1]], atol=1e-14, rtol=1e-14) # also test zero and first order for k in (0, 1): b = make_interp_spline(xx, yy, k=k) assert_allclose(b(xx), yy, atol=1e-14, rtol=1e-14) def test_int_xy(self): x = np.arange(10).astype(np.int_) y = np.arange(10).astype(np.int_) # Cython chokes on "buffer type mismatch" (construction) or # "no matching signature found" (evaluation) for k in (0, 1, 2, 3): b = make_interp_spline(x, y, k=k) b(x) def test_sliced_input(self): # Cython code chokes on non C contiguous arrays xx = np.linspace(-1, 1, 100) x = xx[::5] y = xx[::5] for k in (0, 1, 2, 3): make_interp_spline(x, y, k=k) def test_check_finite(self): # check_finite defaults to True; nans and such trigger a ValueError x = np.arange(10).astype(float) y = x**2 for z in [np.nan, np.inf, -np.inf]: y[-1] = z assert_raises(ValueError, make_interp_spline, x, y) @pytest.mark.parametrize('k', [1, 2, 3, 5]) def test_list_input(self, k): # regression test for gh-8714: TypeError for x, y being lists and k=2 x = list(range(10)) y = [a**2 for a in x] make_interp_spline(x, y, k=k) def test_multiple_rhs(self): yy = np.c_[np.sin(self.xx), np.cos(self.xx)] der_l = [(1, [1., 2.])] der_r = [(1, [3., 4.])] b = make_interp_spline(self.xx, yy, k=3, bc_type=(der_l, der_r)) assert_allclose(b(self.xx), yy, atol=1e-14, rtol=1e-14) assert_allclose(b(self.xx[0], 1), der_l[0][1], atol=1e-14, rtol=1e-14) assert_allclose(b(self.xx[-1], 1), der_r[0][1], atol=1e-14, rtol=1e-14) def test_shapes(self): np.random.seed(1234) k, n = 3, 22 x = np.sort(np.random.random(size=n)) y = np.random.random(size=(n, 5, 6, 7)) b = make_interp_spline(x, y, k) assert_equal(b.c.shape, (n, 5, 6, 7)) # now throw in some derivatives d_l = [(1, np.random.random((5, 6, 7)))] d_r = [(1, np.random.random((5, 6, 7)))] b = make_interp_spline(x, y, k, bc_type=(d_l, d_r)) assert_equal(b.c.shape, (n + k - 1, 5, 6, 7)) def test_string_aliases(self): yy = np.sin(self.xx) # a single string is duplicated b1 = make_interp_spline(self.xx, yy, k=3, bc_type='natural') b2 = make_interp_spline(self.xx, yy, k=3, bc_type=([(2, 0)], [(2, 0)])) assert_allclose(b1.c, b2.c, atol=1e-15) # two strings are handled b1 = make_interp_spline(self.xx, yy, k=3, bc_type=('natural', 'clamped')) b2 = make_interp_spline(self.xx, yy, k=3, bc_type=([(2, 0)], [(1, 0)])) assert_allclose(b1.c, b2.c, atol=1e-15) # one-sided BCs are OK b1 = make_interp_spline(self.xx, yy, k=2, bc_type=(None, 'clamped')) b2 = make_interp_spline(self.xx, yy, k=2, bc_type=(None, [(1, 0.0)])) assert_allclose(b1.c, b2.c, atol=1e-15) # 'not-a-knot' is equivalent to None b1 = make_interp_spline(self.xx, yy, k=3, bc_type='not-a-knot') b2 = make_interp_spline(self.xx, yy, k=3, bc_type=None) assert_allclose(b1.c, b2.c, atol=1e-15) # unknown strings do not pass with assert_raises(ValueError): make_interp_spline(self.xx, yy, k=3, bc_type='typo') # string aliases are handled for 2D values yy = np.c_[np.sin(self.xx), np.cos(self.xx)] der_l = [(1, [0., 0.])] der_r = [(2, [0., 0.])] b2 = make_interp_spline(self.xx, yy, k=3, bc_type=(der_l, der_r)) b1 = make_interp_spline(self.xx, yy, k=3, bc_type=('clamped', 'natural')) assert_allclose(b1.c, b2.c, atol=1e-15) # ... and for N-D values: np.random.seed(1234) k, n = 3, 22 x = np.sort(np.random.random(size=n)) y = np.random.random(size=(n, 5, 6, 7)) # now throw in some derivatives d_l = [(1, np.zeros((5, 6, 7)))] d_r = [(1, np.zeros((5, 6, 7)))] b1 = make_interp_spline(x, y, k, bc_type=(d_l, d_r)) b2 = make_interp_spline(x, y, k, bc_type='clamped') assert_allclose(b1.c, b2.c, atol=1e-15) def test_full_matrix(self): np.random.seed(1234) k, n = 3, 7 x = np.sort(np.random.random(size=n)) y = np.random.random(size=n) t = _not_a_knot(x, k) b = make_interp_spline(x, y, k, t) cf = make_interp_full_matr(x, y, t, k) assert_allclose(b.c, cf, atol=1e-14, rtol=1e-14) def test_woodbury(self): ''' Random elements in diagonal matrix with blocks in the left lower and right upper corners checking the implementation of Woodbury algorithm. ''' np.random.seed(1234) n = 201 for k in range(3, 32, 2): offset = int((k - 1) / 2) a = np.diagflat(np.random.random((1, n))) for i in range(1, offset + 1): a[:-i, i:] += np.diagflat(np.random.random((1, n - i))) a[i:, :-i] += np.diagflat(np.random.random((1, n - i))) ur = np.random.random((offset, offset)) a[:offset, -offset:] = ur ll = np.random.random((offset, offset)) a[-offset:, :offset] = ll d = np.zeros((k, n)) for i, j in enumerate(range(offset, -offset - 1, -1)): if j < 0: d[i, :j] = np.diagonal(a, offset=j) else: d[i, j:] = np.diagonal(a, offset=j) b = np.random.random(n) assert_allclose(_woodbury_algorithm(d, ur, ll, b, k), np.linalg.solve(a, b), atol=1e-14) def make_interp_full_matr(x, y, t, k): """Assemble an spline order k with knots t to interpolate y(x) using full matrices. Not-a-knot BC only. This routine is here for testing only (even though it's functional). """ assert x.size == y.size assert t.size == x.size + k + 1 n = x.size A = np.zeros((n, n), dtype=np.float_) for j in range(n): xval = x[j] if xval == t[k]: left = k else: left = np.searchsorted(t, xval) - 1 # fill a row bb = _bspl.evaluate_all_bspl(t, k, xval, left) A[j, left-k:left+1] = bb c = sl.solve(A, y) return c def make_lsq_full_matrix(x, y, t, k=3): """Make the least-square spline, full matrices.""" x, y, t = map(np.asarray, (x, y, t)) m = x.size n = t.size - k - 1 A = np.zeros((m, n), dtype=np.float_) for j in range(m): xval = x[j] # find interval if xval == t[k]: left = k else: left = np.searchsorted(t, xval) - 1 # fill a row bb = _bspl.evaluate_all_bspl(t, k, xval, left) A[j, left-k:left+1] = bb # have observation matrix, can solve the LSQ problem B = np.dot(A.T, A) Y = np.dot(A.T, y) c = sl.solve(B, Y) return c, (A, Y) class TestLSQ: # # Test make_lsq_spline # np.random.seed(1234) n, k = 13, 3 x = np.sort(np.random.random(n)) y = np.random.random(n) t = _augknt(np.linspace(x[0], x[-1], 7), k) def test_lstsq(self): # check LSQ construction vs a full matrix version x, y, t, k = self.x, self.y, self.t, self.k c0, AY = make_lsq_full_matrix(x, y, t, k) b = make_lsq_spline(x, y, t, k) assert_allclose(b.c, c0) assert_equal(b.c.shape, (t.size - k - 1,)) # also check against numpy.lstsq aa, yy = AY c1, _, _, _ = np.linalg.lstsq(aa, y, rcond=-1) assert_allclose(b.c, c1) def test_weights(self): # weights = 1 is same as None x, y, t, k = self.x, self.y, self.t, self.k w = np.ones_like(x) b = make_lsq_spline(x, y, t, k) b_w = make_lsq_spline(x, y, t, k, w=w) assert_allclose(b.t, b_w.t, atol=1e-14) assert_allclose(b.c, b_w.c, atol=1e-14) assert_equal(b.k, b_w.k) def test_multiple_rhs(self): x, t, k, n = self.x, self.t, self.k, self.n y = np.random.random(size=(n, 5, 6, 7)) b = make_lsq_spline(x, y, t, k) assert_equal(b.c.shape, (t.size-k-1, 5, 6, 7)) def test_complex(self): # cmplx-valued `y` x, t, k = self.x, self.t, self.k yc = self.y * (1. + 2.j) b = make_lsq_spline(x, yc, t, k) b_re = make_lsq_spline(x, yc.real, t, k) b_im = make_lsq_spline(x, yc.imag, t, k) assert_allclose(b(x), b_re(x) + 1.j*b_im(x), atol=1e-15, rtol=1e-15) def test_int_xy(self): x = np.arange(10).astype(np.int_) y = np.arange(10).astype(np.int_) t = _augknt(x, k=1) # Cython chokes on "buffer type mismatch" make_lsq_spline(x, y, t, k=1) def test_sliced_input(self): # Cython code chokes on non C contiguous arrays xx = np.linspace(-1, 1, 100) x = xx[::3] y = xx[::3] t = _augknt(x, 1) make_lsq_spline(x, y, t, k=1) def test_checkfinite(self): # check_finite defaults to True; nans and such trigger a ValueError x = np.arange(12).astype(float) y = x**2 t = _augknt(x, 3) for z in [np.nan, np.inf, -np.inf]: y[-1] = z assert_raises(ValueError, make_lsq_spline, x, y, t)