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from functools import reduce
import pytest
import numpy as np
import numpy.core.umath as umath
import numpy.core.fromnumeric as fromnumeric
from numpy.testing import (
assert_, assert_raises, assert_equal,
)
from numpy.ma import (
MaskType, MaskedArray, absolute, add, all, allclose, allequal, alltrue,
arange, arccos, arcsin, arctan, arctan2, array, average, choose,
concatenate, conjugate, cos, cosh, count, divide, equal, exp, filled,
getmask, greater, greater_equal, inner, isMaskedArray, less,
less_equal, log, log10, make_mask, masked, masked_array, masked_equal,
masked_greater, masked_greater_equal, masked_inside, masked_less,
masked_less_equal, masked_not_equal, masked_outside,
masked_print_option, masked_values, masked_where, maximum, minimum,
multiply, nomask, nonzero, not_equal, ones, outer, product, put, ravel,
repeat, resize, shape, sin, sinh, sometrue, sort, sqrt, subtract, sum,
take, tan, tanh, transpose, where, zeros,
)
from numpy.compat import pickle
pi = np.pi
def eq(v, w, msg=''):
result = allclose(v, w)
if not result:
print(f'Not eq:{msg}\n{v}\n----{w}')
return result
class TestMa:
def setup_method(self):
x = np.array([1., 1., 1., -2., pi/2.0, 4., 5., -10., 10., 1., 2., 3.])
y = np.array([5., 0., 3., 2., -1., -4., 0., -10., 10., 1., 0., 3.])
a10 = 10.
m1 = [1, 0, 0, 0, 0, 0, 1, 0, 0, 0, 0, 0]
m2 = [0, 0, 1, 0, 0, 1, 1, 0, 0, 0, 0, 1]
xm = array(x, mask=m1)
ym = array(y, mask=m2)
z = np.array([-.5, 0., .5, .8])
zm = array(z, mask=[0, 1, 0, 0])
xf = np.where(m1, 1e+20, x)
s = x.shape
xm.set_fill_value(1e+20)
self.d = (x, y, a10, m1, m2, xm, ym, z, zm, xf, s)
def test_testBasic1d(self):
# Test of basic array creation and properties in 1 dimension.
(x, y, a10, m1, m2, xm, ym, z, zm, xf, s) = self.d
assert_(not isMaskedArray(x))
assert_(isMaskedArray(xm))
assert_equal(shape(xm), s)
assert_equal(xm.shape, s)
assert_equal(xm.dtype, x.dtype)
assert_equal(xm.size, reduce(lambda x, y:x * y, s))
assert_equal(count(xm), len(m1) - reduce(lambda x, y:x + y, m1))
assert_(eq(xm, xf))
assert_(eq(filled(xm, 1.e20), xf))
assert_(eq(x, xm))
@pytest.mark.parametrize("s", [(4, 3), (6, 2)])
def test_testBasic2d(self, s):
# Test of basic array creation and properties in 2 dimensions.
(x, y, a10, m1, m2, xm, ym, z, zm, xf, s) = self.d
x.shape = s
y.shape = s
xm.shape = s
ym.shape = s
xf.shape = s
assert_(not isMaskedArray(x))
assert_(isMaskedArray(xm))
assert_equal(shape(xm), s)
assert_equal(xm.shape, s)
assert_equal(xm.size, reduce(lambda x, y: x * y, s))
assert_equal(count(xm), len(m1) - reduce(lambda x, y: x + y, m1))
assert_(eq(xm, xf))
assert_(eq(filled(xm, 1.e20), xf))
assert_(eq(x, xm))
def test_testArithmetic(self):
# Test of basic arithmetic.
(x, y, a10, m1, m2, xm, ym, z, zm, xf, s) = self.d
a2d = array([[1, 2], [0, 4]])
a2dm = masked_array(a2d, [[0, 0], [1, 0]])
assert_(eq(a2d * a2d, a2d * a2dm))
assert_(eq(a2d + a2d, a2d + a2dm))
assert_(eq(a2d - a2d, a2d - a2dm))
for s in [(12,), (4, 3), (2, 6)]:
x = x.reshape(s)
y = y.reshape(s)
xm = xm.reshape(s)
ym = ym.reshape(s)
xf = xf.reshape(s)
assert_(eq(-x, -xm))
assert_(eq(x + y, xm + ym))
assert_(eq(x - y, xm - ym))
assert_(eq(x * y, xm * ym))
with np.errstate(divide='ignore', invalid='ignore'):
assert_(eq(x / y, xm / ym))
assert_(eq(a10 + y, a10 + ym))
assert_(eq(a10 - y, a10 - ym))
assert_(eq(a10 * y, a10 * ym))
with np.errstate(divide='ignore', invalid='ignore'):
assert_(eq(a10 / y, a10 / ym))
assert_(eq(x + a10, xm + a10))
assert_(eq(x - a10, xm - a10))
assert_(eq(x * a10, xm * a10))
assert_(eq(x / a10, xm / a10))
assert_(eq(x ** 2, xm ** 2))
assert_(eq(abs(x) ** 2.5, abs(xm) ** 2.5))
assert_(eq(x ** y, xm ** ym))
assert_(eq(np.add(x, y), add(xm, ym)))
assert_(eq(np.subtract(x, y), subtract(xm, ym)))
assert_(eq(np.multiply(x, y), multiply(xm, ym)))
with np.errstate(divide='ignore', invalid='ignore'):
assert_(eq(np.divide(x, y), divide(xm, ym)))
def test_testMixedArithmetic(self):
na = np.array([1])
ma = array([1])
assert_(isinstance(na + ma, MaskedArray))
assert_(isinstance(ma + na, MaskedArray))
def test_testUfuncs1(self):
# Test various functions such as sin, cos.
(x, y, a10, m1, m2, xm, ym, z, zm, xf, s) = self.d
assert_(eq(np.cos(x), cos(xm)))
assert_(eq(np.cosh(x), cosh(xm)))
assert_(eq(np.sin(x), sin(xm)))
assert_(eq(np.sinh(x), sinh(xm)))
assert_(eq(np.tan(x), tan(xm)))
assert_(eq(np.tanh(x), tanh(xm)))
with np.errstate(divide='ignore', invalid='ignore'):
assert_(eq(np.sqrt(abs(x)), sqrt(xm)))
assert_(eq(np.log(abs(x)), log(xm)))
assert_(eq(np.log10(abs(x)), log10(xm)))
assert_(eq(np.exp(x), exp(xm)))
assert_(eq(np.arcsin(z), arcsin(zm)))
assert_(eq(np.arccos(z), arccos(zm)))
assert_(eq(np.arctan(z), arctan(zm)))
assert_(eq(np.arctan2(x, y), arctan2(xm, ym)))
assert_(eq(np.absolute(x), absolute(xm)))
assert_(eq(np.equal(x, y), equal(xm, ym)))
assert_(eq(np.not_equal(x, y), not_equal(xm, ym)))
assert_(eq(np.less(x, y), less(xm, ym)))
assert_(eq(np.greater(x, y), greater(xm, ym)))
assert_(eq(np.less_equal(x, y), less_equal(xm, ym)))
assert_(eq(np.greater_equal(x, y), greater_equal(xm, ym)))
assert_(eq(np.conjugate(x), conjugate(xm)))
assert_(eq(np.concatenate((x, y)), concatenate((xm, ym))))
assert_(eq(np.concatenate((x, y)), concatenate((x, y))))
assert_(eq(np.concatenate((x, y)), concatenate((xm, y))))
assert_(eq(np.concatenate((x, y, x)), concatenate((x, ym, x))))
def test_xtestCount(self):
# Test count
ott = array([0., 1., 2., 3.], mask=[1, 0, 0, 0])
assert_(count(ott).dtype.type is np.intp)
assert_equal(3, count(ott))
assert_equal(1, count(1))
assert_(eq(0, array(1, mask=[1])))
ott = ott.reshape((2, 2))
assert_(count(ott).dtype.type is np.intp)
assert_(isinstance(count(ott, 0), np.ndarray))
assert_(count(ott).dtype.type is np.intp)
assert_(eq(3, count(ott)))
assert_(getmask(count(ott, 0)) is nomask)
assert_(eq([1, 2], count(ott, 0)))
def test_testMinMax(self):
# Test minimum and maximum.
(x, y, a10, m1, m2, xm, ym, z, zm, xf, s) = self.d
xr = np.ravel(x) # max doesn't work if shaped
xmr = ravel(xm)
# true because of careful selection of data
assert_(eq(max(xr), maximum.reduce(xmr)))
assert_(eq(min(xr), minimum.reduce(xmr)))
def test_testAddSumProd(self):
# Test add, sum, product.
(x, y, a10, m1, m2, xm, ym, z, zm, xf, s) = self.d
assert_(eq(np.add.reduce(x), add.reduce(x)))
assert_(eq(np.add.accumulate(x), add.accumulate(x)))
assert_(eq(4, sum(array(4), axis=0)))
assert_(eq(4, sum(array(4), axis=0)))
assert_(eq(np.sum(x, axis=0), sum(x, axis=0)))
assert_(eq(np.sum(filled(xm, 0), axis=0), sum(xm, axis=0)))
assert_(eq(np.sum(x, 0), sum(x, 0)))
assert_(eq(np.prod(x, axis=0), product(x, axis=0)))
assert_(eq(np.prod(x, 0), product(x, 0)))
assert_(eq(np.prod(filled(xm, 1), axis=0),
product(xm, axis=0)))
if len(s) > 1:
assert_(eq(np.concatenate((x, y), 1),
concatenate((xm, ym), 1)))
assert_(eq(np.add.reduce(x, 1), add.reduce(x, 1)))
assert_(eq(np.sum(x, 1), sum(x, 1)))
assert_(eq(np.prod(x, 1), product(x, 1)))
def test_testCI(self):
# Test of conversions and indexing
x1 = np.array([1, 2, 4, 3])
x2 = array(x1, mask=[1, 0, 0, 0])
x3 = array(x1, mask=[0, 1, 0, 1])
x4 = array(x1)
# test conversion to strings
str(x2) # raises?
repr(x2) # raises?
assert_(eq(np.sort(x1), sort(x2, fill_value=0)))
# tests of indexing
assert_(type(x2[1]) is type(x1[1]))
assert_(x1[1] == x2[1])
assert_(x2[0] is masked)
assert_(eq(x1[2], x2[2]))
assert_(eq(x1[2:5], x2[2:5]))
assert_(eq(x1[:], x2[:]))
assert_(eq(x1[1:], x3[1:]))
x1[2] = 9
x2[2] = 9
assert_(eq(x1, x2))
x1[1:3] = 99
x2[1:3] = 99
assert_(eq(x1, x2))
x2[1] = masked
assert_(eq(x1, x2))
x2[1:3] = masked
assert_(eq(x1, x2))
x2[:] = x1
x2[1] = masked
assert_(allequal(getmask(x2), array([0, 1, 0, 0])))
x3[:] = masked_array([1, 2, 3, 4], [0, 1, 1, 0])
assert_(allequal(getmask(x3), array([0, 1, 1, 0])))
x4[:] = masked_array([1, 2, 3, 4], [0, 1, 1, 0])
assert_(allequal(getmask(x4), array([0, 1, 1, 0])))
assert_(allequal(x4, array([1, 2, 3, 4])))
x1 = np.arange(5) * 1.0
x2 = masked_values(x1, 3.0)
assert_(eq(x1, x2))
assert_(allequal(array([0, 0, 0, 1, 0], MaskType), x2.mask))
assert_(eq(3.0, x2.fill_value))
x1 = array([1, 'hello', 2, 3], object)
x2 = np.array([1, 'hello', 2, 3], object)
s1 = x1[1]
s2 = x2[1]
assert_equal(type(s2), str)
assert_equal(type(s1), str)
assert_equal(s1, s2)
assert_(x1[1:1].shape == (0,))
def test_testCopySize(self):
# Tests of some subtle points of copying and sizing.
n = [0, 0, 1, 0, 0]
m = make_mask(n)
m2 = make_mask(m)
assert_(m is m2)
m3 = make_mask(m, copy=True)
assert_(m is not m3)
x1 = np.arange(5)
y1 = array(x1, mask=m)
assert_(y1._data is not x1)
assert_(allequal(x1, y1._data))
assert_(y1._mask is m)
y1a = array(y1, copy=0)
# For copy=False, one might expect that the array would just
# passed on, i.e., that it would be "is" instead of "==".
# See gh-4043 for discussion.
assert_(y1a._mask.__array_interface__ ==
y1._mask.__array_interface__)
y2 = array(x1, mask=m3, copy=0)
assert_(y2._mask is m3)
assert_(y2[2] is masked)
y2[2] = 9
assert_(y2[2] is not masked)
assert_(y2._mask is m3)
assert_(allequal(y2.mask, 0))
y2a = array(x1, mask=m, copy=1)
assert_(y2a._mask is not m)
assert_(y2a[2] is masked)
y2a[2] = 9
assert_(y2a[2] is not masked)
assert_(y2a._mask is not m)
assert_(allequal(y2a.mask, 0))
y3 = array(x1 * 1.0, mask=m)
assert_(filled(y3).dtype is (x1 * 1.0).dtype)
x4 = arange(4)
x4[2] = masked
y4 = resize(x4, (8,))
assert_(eq(concatenate([x4, x4]), y4))
assert_(eq(getmask(y4), [0, 0, 1, 0, 0, 0, 1, 0]))
y5 = repeat(x4, (2, 2, 2, 2), axis=0)
assert_(eq(y5, [0, 0, 1, 1, 2, 2, 3, 3]))
y6 = repeat(x4, 2, axis=0)
assert_(eq(y5, y6))
def test_testPut(self):
# Test of put
d = arange(5)
n = [0, 0, 0, 1, 1]
m = make_mask(n)
m2 = m.copy()
x = array(d, mask=m)
assert_(x[3] is masked)
assert_(x[4] is masked)
x[[1, 4]] = [10, 40]
assert_(x._mask is m)
assert_(x[3] is masked)
assert_(x[4] is not masked)
assert_(eq(x, [0, 10, 2, -1, 40]))
x = array(d, mask=m2, copy=True)
x.put([0, 1, 2], [-1, 100, 200])
assert_(x._mask is not m2)
assert_(x[3] is masked)
assert_(x[4] is masked)
assert_(eq(x, [-1, 100, 200, 0, 0]))
def test_testPut2(self):
# Test of put
d = arange(5)
x = array(d, mask=[0, 0, 0, 0, 0])
z = array([10, 40], mask=[1, 0])
assert_(x[2] is not masked)
assert_(x[3] is not masked)
x[2:4] = z
assert_(x[2] is masked)
assert_(x[3] is not masked)
assert_(eq(x, [0, 1, 10, 40, 4]))
d = arange(5)
x = array(d, mask=[0, 0, 0, 0, 0])
y = x[2:4]
z = array([10, 40], mask=[1, 0])
assert_(x[2] is not masked)
assert_(x[3] is not masked)
y[:] = z
assert_(y[0] is masked)
assert_(y[1] is not masked)
assert_(eq(y, [10, 40]))
assert_(x[2] is masked)
assert_(x[3] is not masked)
assert_(eq(x, [0, 1, 10, 40, 4]))
def test_testMaPut(self):
(x, y, a10, m1, m2, xm, ym, z, zm, xf, s) = self.d
m = [1, 0, 0, 0, 0, 0, 1, 0, 0, 1, 0, 1]
i = np.nonzero(m)[0]
put(ym, i, zm)
assert_(all(take(ym, i, axis=0) == zm))
def test_testOddFeatures(self):
# Test of other odd features
x = arange(20)
x = x.reshape(4, 5)
x.flat[5] = 12
assert_(x[1, 0] == 12)
z = x + 10j * x
assert_(eq(z.real, x))
assert_(eq(z.imag, 10 * x))
assert_(eq((z * conjugate(z)).real, 101 * x * x))
z.imag[...] = 0.0
x = arange(10)
x[3] = masked
assert_(str(x[3]) == str(masked))
c = x >= 8
assert_(count(where(c, masked, masked)) == 0)
assert_(shape(where(c, masked, masked)) == c.shape)
z = where(c, x, masked)
assert_(z.dtype is x.dtype)
assert_(z[3] is masked)
assert_(z[4] is masked)
assert_(z[7] is masked)
assert_(z[8] is not masked)
assert_(z[9] is not masked)
assert_(eq(x, z))
z = where(c, masked, x)
assert_(z.dtype is x.dtype)
assert_(z[3] is masked)
assert_(z[4] is not masked)
assert_(z[7] is not masked)
assert_(z[8] is masked)
assert_(z[9] is masked)
z = masked_where(c, x)
assert_(z.dtype is x.dtype)
assert_(z[3] is masked)
assert_(z[4] is not masked)
assert_(z[7] is not masked)
assert_(z[8] is masked)
assert_(z[9] is masked)
assert_(eq(x, z))
x = array([1., 2., 3., 4., 5.])
c = array([1, 1, 1, 0, 0])
x[2] = masked
z = where(c, x, -x)
assert_(eq(z, [1., 2., 0., -4., -5]))
c[0] = masked
z = where(c, x, -x)
assert_(eq(z, [1., 2., 0., -4., -5]))
assert_(z[0] is masked)
assert_(z[1] is not masked)
assert_(z[2] is masked)
assert_(eq(masked_where(greater(x, 2), x), masked_greater(x, 2)))
assert_(eq(masked_where(greater_equal(x, 2), x),
masked_greater_equal(x, 2)))
assert_(eq(masked_where(less(x, 2), x), masked_less(x, 2)))
assert_(eq(masked_where(less_equal(x, 2), x), masked_less_equal(x, 2)))
assert_(eq(masked_where(not_equal(x, 2), x), masked_not_equal(x, 2)))
assert_(eq(masked_where(equal(x, 2), x), masked_equal(x, 2)))
assert_(eq(masked_where(not_equal(x, 2), x), masked_not_equal(x, 2)))
assert_(eq(masked_inside(list(range(5)), 1, 3), [0, 199, 199, 199, 4]))
assert_(eq(masked_outside(list(range(5)), 1, 3), [199, 1, 2, 3, 199]))
assert_(eq(masked_inside(array(list(range(5)),
mask=[1, 0, 0, 0, 0]), 1, 3).mask,
[1, 1, 1, 1, 0]))
assert_(eq(masked_outside(array(list(range(5)),
mask=[0, 1, 0, 0, 0]), 1, 3).mask,
[1, 1, 0, 0, 1]))
assert_(eq(masked_equal(array(list(range(5)),
mask=[1, 0, 0, 0, 0]), 2).mask,
[1, 0, 1, 0, 0]))
assert_(eq(masked_not_equal(array([2, 2, 1, 2, 1],
mask=[1, 0, 0, 0, 0]), 2).mask,
[1, 0, 1, 0, 1]))
assert_(eq(masked_where([1, 1, 0, 0, 0], [1, 2, 3, 4, 5]),
[99, 99, 3, 4, 5]))
atest = ones((10, 10, 10), dtype=np.float32)
btest = zeros(atest.shape, MaskType)
ctest = masked_where(btest, atest)
assert_(eq(atest, ctest))
z = choose(c, (-x, x))
assert_(eq(z, [1., 2., 0., -4., -5]))
assert_(z[0] is masked)
assert_(z[1] is not masked)
assert_(z[2] is masked)
x = arange(6)
x[5] = masked
y = arange(6) * 10
y[2] = masked
c = array([1, 1, 1, 0, 0, 0], mask=[1, 0, 0, 0, 0, 0])
cm = c.filled(1)
z = where(c, x, y)
zm = where(cm, x, y)
assert_(eq(z, zm))
assert_(getmask(zm) is nomask)
assert_(eq(zm, [0, 1, 2, 30, 40, 50]))
z = where(c, masked, 1)
assert_(eq(z, [99, 99, 99, 1, 1, 1]))
z = where(c, 1, masked)
assert_(eq(z, [99, 1, 1, 99, 99, 99]))
def test_testMinMax2(self):
# Test of minimum, maximum.
assert_(eq(minimum([1, 2, 3], [4, 0, 9]), [1, 0, 3]))
assert_(eq(maximum([1, 2, 3], [4, 0, 9]), [4, 2, 9]))
x = arange(5)
y = arange(5) - 2
x[3] = masked
y[0] = masked
assert_(eq(minimum(x, y), where(less(x, y), x, y)))
assert_(eq(maximum(x, y), where(greater(x, y), x, y)))
assert_(minimum.reduce(x) == 0)
assert_(maximum.reduce(x) == 4)
def test_testTakeTransposeInnerOuter(self):
# Test of take, transpose, inner, outer products
x = arange(24)
y = np.arange(24)
x[5:6] = masked
x = x.reshape(2, 3, 4)
y = y.reshape(2, 3, 4)
assert_(eq(np.transpose(y, (2, 0, 1)), transpose(x, (2, 0, 1))))
assert_(eq(np.take(y, (2, 0, 1), 1), take(x, (2, 0, 1), 1)))
assert_(eq(np.inner(filled(x, 0), filled(y, 0)),
inner(x, y)))
assert_(eq(np.outer(filled(x, 0), filled(y, 0)),
outer(x, y)))
y = array(['abc', 1, 'def', 2, 3], object)
y[2] = masked
t = take(y, [0, 3, 4])
assert_(t[0] == 'abc')
assert_(t[1] == 2)
assert_(t[2] == 3)
def test_testInplace(self):
# Test of inplace operations and rich comparisons
y = arange(10)
x = arange(10)
xm = arange(10)
xm[2] = masked
x += 1
assert_(eq(x, y + 1))
xm += 1
assert_(eq(x, y + 1))
x = arange(10)
xm = arange(10)
xm[2] = masked
x -= 1
assert_(eq(x, y - 1))
xm -= 1
assert_(eq(xm, y - 1))
x = arange(10) * 1.0
xm = arange(10) * 1.0
xm[2] = masked
x *= 2.0
assert_(eq(x, y * 2))
xm *= 2.0
assert_(eq(xm, y * 2))
x = arange(10) * 2
xm = arange(10)
xm[2] = masked
x //= 2
assert_(eq(x, y))
xm //= 2
assert_(eq(x, y))
x = arange(10) * 1.0
xm = arange(10) * 1.0
xm[2] = masked
x /= 2.0
assert_(eq(x, y / 2.0))
xm /= arange(10)
assert_(eq(xm, ones((10,))))
x = arange(10).astype(np.float32)
xm = arange(10)
xm[2] = masked
x += 1.
assert_(eq(x, y + 1.))
def test_testPickle(self):
# Test of pickling
x = arange(12)
x[4:10:2] = masked
x = x.reshape(4, 3)
for proto in range(2, pickle.HIGHEST_PROTOCOL + 1):
s = pickle.dumps(x, protocol=proto)
y = pickle.loads(s)
assert_(eq(x, y))
def test_testMasked(self):
# Test of masked element
xx = arange(6)
xx[1] = masked
assert_(str(masked) == '--')
assert_(xx[1] is masked)
assert_equal(filled(xx[1], 0), 0)
def test_testAverage1(self):
# Test of average.
ott = array([0., 1., 2., 3.], mask=[1, 0, 0, 0])
assert_(eq(2.0, average(ott, axis=0)))
assert_(eq(2.0, average(ott, weights=[1., 1., 2., 1.])))
result, wts = average(ott, weights=[1., 1., 2., 1.], returned=True)
assert_(eq(2.0, result))
assert_(wts == 4.0)
ott[:] = masked
assert_(average(ott, axis=0) is masked)
ott = array([0., 1., 2., 3.], mask=[1, 0, 0, 0])
ott = ott.reshape(2, 2)
ott[:, 1] = masked
assert_(eq(average(ott, axis=0), [2.0, 0.0]))
assert_(average(ott, axis=1)[0] is masked)
assert_(eq([2., 0.], average(ott, axis=0)))
result, wts = average(ott, axis=0, returned=True)
assert_(eq(wts, [1., 0.]))
def test_testAverage2(self):
# More tests of average.
w1 = [0, 1, 1, 1, 1, 0]
w2 = [[0, 1, 1, 1, 1, 0], [1, 0, 0, 0, 0, 1]]
x = arange(6)
assert_(allclose(average(x, axis=0), 2.5))
assert_(allclose(average(x, axis=0, weights=w1), 2.5))
y = array([arange(6), 2.0 * arange(6)])
assert_(allclose(average(y, None),
np.add.reduce(np.arange(6)) * 3. / 12.))
assert_(allclose(average(y, axis=0), np.arange(6) * 3. / 2.))
assert_(allclose(average(y, axis=1),
[average(x, axis=0), average(x, axis=0)*2.0]))
assert_(allclose(average(y, None, weights=w2), 20. / 6.))
assert_(allclose(average(y, axis=0, weights=w2),
[0., 1., 2., 3., 4., 10.]))
assert_(allclose(average(y, axis=1),
[average(x, axis=0), average(x, axis=0)*2.0]))
m1 = zeros(6)
m2 = [0, 0, 1, 1, 0, 0]
m3 = [[0, 0, 1, 1, 0, 0], [0, 1, 1, 1, 1, 0]]
m4 = ones(6)
m5 = [0, 1, 1, 1, 1, 1]
assert_(allclose(average(masked_array(x, m1), axis=0), 2.5))
assert_(allclose(average(masked_array(x, m2), axis=0), 2.5))
assert_(average(masked_array(x, m4), axis=0) is masked)
assert_equal(average(masked_array(x, m5), axis=0), 0.0)
assert_equal(count(average(masked_array(x, m4), axis=0)), 0)
z = masked_array(y, m3)
assert_(allclose(average(z, None), 20. / 6.))
assert_(allclose(average(z, axis=0),
[0., 1., 99., 99., 4.0, 7.5]))
assert_(allclose(average(z, axis=1), [2.5, 5.0]))
assert_(allclose(average(z, axis=0, weights=w2),
[0., 1., 99., 99., 4.0, 10.0]))
a = arange(6)
b = arange(6) * 3
r1, w1 = average([[a, b], [b, a]], axis=1, returned=True)
assert_equal(shape(r1), shape(w1))
assert_equal(r1.shape, w1.shape)
r2, w2 = average(ones((2, 2, 3)), axis=0, weights=[3, 1], returned=True)
assert_equal(shape(w2), shape(r2))
r2, w2 = average(ones((2, 2, 3)), returned=True)
assert_equal(shape(w2), shape(r2))
r2, w2 = average(ones((2, 2, 3)), weights=ones((2, 2, 3)), returned=True)
assert_(shape(w2) == shape(r2))
a2d = array([[1, 2], [0, 4]], float)
a2dm = masked_array(a2d, [[0, 0], [1, 0]])
a2da = average(a2d, axis=0)
assert_(eq(a2da, [0.5, 3.0]))
a2dma = average(a2dm, axis=0)
assert_(eq(a2dma, [1.0, 3.0]))
a2dma = average(a2dm, axis=None)
assert_(eq(a2dma, 7. / 3.))
a2dma = average(a2dm, axis=1)
assert_(eq(a2dma, [1.5, 4.0]))
def test_testToPython(self):
assert_equal(1, int(array(1)))
assert_equal(1.0, float(array(1)))
assert_equal(1, int(array([[[1]]])))
assert_equal(1.0, float(array([[1]])))
assert_raises(TypeError, float, array([1, 1]))
assert_raises(ValueError, bool, array([0, 1]))
assert_raises(ValueError, bool, array([0, 0], mask=[0, 1]))
def test_testScalarArithmetic(self):
xm = array(0, mask=1)
#TODO FIXME: Find out what the following raises a warning in r8247
with np.errstate(divide='ignore'):
assert_((1 / array(0)).mask)
assert_((1 + xm).mask)
assert_((-xm).mask)
assert_((-xm).mask)
assert_(maximum(xm, xm).mask)
assert_(minimum(xm, xm).mask)
assert_(xm.filled().dtype is xm._data.dtype)
x = array(0, mask=0)
assert_(x.filled() == x._data)
assert_equal(str(xm), str(masked_print_option))
def test_testArrayMethods(self):
a = array([1, 3, 2])
assert_(eq(a.any(), a._data.any()))
assert_(eq(a.all(), a._data.all()))
assert_(eq(a.argmax(), a._data.argmax()))
assert_(eq(a.argmin(), a._data.argmin()))
assert_(eq(a.choose(0, 1, 2, 3, 4),
a._data.choose(0, 1, 2, 3, 4)))
assert_(eq(a.compress([1, 0, 1]), a._data.compress([1, 0, 1])))
assert_(eq(a.conj(), a._data.conj()))
assert_(eq(a.conjugate(), a._data.conjugate()))
m = array([[1, 2], [3, 4]])
assert_(eq(m.diagonal(), m._data.diagonal()))
assert_(eq(a.sum(), a._data.sum()))
assert_(eq(a.take([1, 2]), a._data.take([1, 2])))
assert_(eq(m.transpose(), m._data.transpose()))
def test_testArrayAttributes(self):
a = array([1, 3, 2])
assert_equal(a.ndim, 1)
def test_testAPI(self):
assert_(not [m for m in dir(np.ndarray)
if m not in dir(MaskedArray) and
not m.startswith('_')])
def test_testSingleElementSubscript(self):
a = array([1, 3, 2])
b = array([1, 3, 2], mask=[1, 0, 1])
assert_equal(a[0].shape, ())
assert_equal(b[0].shape, ())
assert_equal(b[1].shape, ())
def test_assignment_by_condition(self):
# Test for gh-18951
a = array([1, 2, 3, 4], mask=[1, 0, 1, 0])
c = a >= 3
a[c] = 5
assert_(a[2] is masked)
def test_assignment_by_condition_2(self):
# gh-19721
a = masked_array([0, 1], mask=[False, False])
b = masked_array([0, 1], mask=[True, True])
mask = a < 1
b[mask] = a[mask]
expected_mask = [False, True]
assert_equal(b.mask, expected_mask)
class TestUfuncs:
def setup_method(self):
self.d = (array([1.0, 0, -1, pi / 2] * 2, mask=[0, 1] + [0] * 6),
array([1.0, 0, -1, pi / 2] * 2, mask=[1, 0] + [0] * 6),)
def test_testUfuncRegression(self):
f_invalid_ignore = [
'sqrt', 'arctanh', 'arcsin', 'arccos',
'arccosh', 'arctanh', 'log', 'log10', 'divide',
'true_divide', 'floor_divide', 'remainder', 'fmod']
for f in ['sqrt', 'log', 'log10', 'exp', 'conjugate',
'sin', 'cos', 'tan',
'arcsin', 'arccos', 'arctan',
'sinh', 'cosh', 'tanh',
'arcsinh',
'arccosh',
'arctanh',
'absolute', 'fabs', 'negative',
'floor', 'ceil',
'logical_not',
'add', 'subtract', 'multiply',
'divide', 'true_divide', 'floor_divide',
'remainder', 'fmod', 'hypot', 'arctan2',
'equal', 'not_equal', 'less_equal', 'greater_equal',
'less', 'greater',
'logical_and', 'logical_or', 'logical_xor']:
try:
uf = getattr(umath, f)
except AttributeError:
uf = getattr(fromnumeric, f)
mf = getattr(np.ma, f)
args = self.d[:uf.nin]
with np.errstate():
if f in f_invalid_ignore:
np.seterr(invalid='ignore')
if f in ['arctanh', 'log', 'log10']:
np.seterr(divide='ignore')
ur = uf(*args)
mr = mf(*args)
assert_(eq(ur.filled(0), mr.filled(0), f))
assert_(eqmask(ur.mask, mr.mask))
def test_reduce(self):
a = self.d[0]
assert_(not alltrue(a, axis=0))
assert_(sometrue(a, axis=0))
assert_equal(sum(a[:3], axis=0), 0)
assert_equal(product(a, axis=0), 0)
def test_minmax(self):
a = arange(1, 13).reshape(3, 4)
amask = masked_where(a < 5, a)
assert_equal(amask.max(), a.max())
assert_equal(amask.min(), 5)
assert_((amask.max(0) == a.max(0)).all())
assert_((amask.min(0) == [5, 6, 7, 8]).all())
assert_(amask.max(1)[0].mask)
assert_(amask.min(1)[0].mask)
def test_nonzero(self):
for t in "?bhilqpBHILQPfdgFDGO":
x = array([1, 0, 2, 0], mask=[0, 0, 1, 1])
assert_(eq(nonzero(x), [0]))
class TestArrayMethods:
def setup_method(self):
x = np.array([8.375, 7.545, 8.828, 8.5, 1.757, 5.928,
8.43, 7.78, 9.865, 5.878, 8.979, 4.732,
3.012, 6.022, 5.095, 3.116, 5.238, 3.957,
6.04, 9.63, 7.712, 3.382, 4.489, 6.479,
7.189, 9.645, 5.395, 4.961, 9.894, 2.893,
7.357, 9.828, 6.272, 3.758, 6.693, 0.993])
X = x.reshape(6, 6)
XX = x.reshape(3, 2, 2, 3)
m = np.array([0, 1, 0, 1, 0, 0,
1, 0, 1, 1, 0, 1,
0, 0, 0, 1, 0, 1,
0, 0, 0, 1, 1, 1,
1, 0, 0, 1, 0, 0,
0, 0, 1, 0, 1, 0])
mx = array(data=x, mask=m)
mX = array(data=X, mask=m.reshape(X.shape))
mXX = array(data=XX, mask=m.reshape(XX.shape))
self.d = (x, X, XX, m, mx, mX, mXX)
def test_trace(self):
(x, X, XX, m, mx, mX, mXX,) = self.d
mXdiag = mX.diagonal()
assert_equal(mX.trace(), mX.diagonal().compressed().sum())
assert_(eq(mX.trace(),
X.trace() - sum(mXdiag.mask * X.diagonal(),
axis=0)))
def test_clip(self):
(x, X, XX, m, mx, mX, mXX,) = self.d
clipped = mx.clip(2, 8)
assert_(eq(clipped.mask, mx.mask))
assert_(eq(clipped._data, x.clip(2, 8)))
assert_(eq(clipped._data, mx._data.clip(2, 8)))
def test_ptp(self):
(x, X, XX, m, mx, mX, mXX,) = self.d
(n, m) = X.shape
assert_equal(mx.ptp(), mx.compressed().ptp())
rows = np.zeros(n, np.float_)
cols = np.zeros(m, np.float_)
for k in range(m):
cols[k] = mX[:, k].compressed().ptp()
for k in range(n):
rows[k] = mX[k].compressed().ptp()
assert_(eq(mX.ptp(0), cols))
assert_(eq(mX.ptp(1), rows))
def test_swapaxes(self):
(x, X, XX, m, mx, mX, mXX,) = self.d
mXswapped = mX.swapaxes(0, 1)
assert_(eq(mXswapped[-1], mX[:, -1]))
mXXswapped = mXX.swapaxes(0, 2)
assert_equal(mXXswapped.shape, (2, 2, 3, 3))
def test_cumprod(self):
(x, X, XX, m, mx, mX, mXX,) = self.d
mXcp = mX.cumprod(0)
assert_(eq(mXcp._data, mX.filled(1).cumprod(0)))
mXcp = mX.cumprod(1)
assert_(eq(mXcp._data, mX.filled(1).cumprod(1)))
def test_cumsum(self):
(x, X, XX, m, mx, mX, mXX,) = self.d
mXcp = mX.cumsum(0)
assert_(eq(mXcp._data, mX.filled(0).cumsum(0)))
mXcp = mX.cumsum(1)
assert_(eq(mXcp._data, mX.filled(0).cumsum(1)))
def test_varstd(self):
(x, X, XX, m, mx, mX, mXX,) = self.d
assert_(eq(mX.var(axis=None), mX.compressed().var()))
assert_(eq(mX.std(axis=None), mX.compressed().std()))
assert_(eq(mXX.var(axis=3).shape, XX.var(axis=3).shape))
assert_(eq(mX.var().shape, X.var().shape))
(mXvar0, mXvar1) = (mX.var(axis=0), mX.var(axis=1))
for k in range(6):
assert_(eq(mXvar1[k], mX[k].compressed().var()))
assert_(eq(mXvar0[k], mX[:, k].compressed().var()))
assert_(eq(np.sqrt(mXvar0[k]),
mX[:, k].compressed().std()))
def eqmask(m1, m2):
if m1 is nomask:
return m2 is nomask
if m2 is nomask:
return m1 is nomask
return (m1 == m2).all()