提交 f8bdb7d7 authored 作者: amrithasuresh's avatar amrithasuresh

Updated numpy as np

上级 0f304b62
from __future__ import absolute_import, print_function, division
import numpy
import numpy as np
import os
from theano import config, function, tensor
from theano.compat import PY3
......@@ -24,25 +24,25 @@ class test_OP(unittest.TestCase):
n_elements = 1000
all_indices = range(n_elements)
numpy.random.seed(12345)
np.random.seed(12345)
expected = [
numpy.asarray([[931, 318, 185, 209, 559]]),
numpy.asarray([[477, 887, 2, 717, 333, 665, 159, 559, 348, 136]]),
numpy.asarray([[546, 28, 79, 665, 295, 779, 433, 531, 411, 716, 244, 234, 70, 88, 612, 639, 383, 335,
np.asarray([[931, 318, 185, 209, 559]]),
np.asarray([[477, 887, 2, 717, 333, 665, 159, 559, 348, 136]]),
np.asarray([[546, 28, 79, 665, 295, 779, 433, 531, 411, 716, 244, 234, 70, 88, 612, 639, 383, 335,
451, 100, 175, 492, 848, 771, 559, 214, 568, 596, 370, 486, 855, 925, 138, 300, 528, 507,
730, 199, 882, 357, 58, 195, 705, 900, 66, 468, 513, 410, 816, 672]])]
for i in [5, 10, 50, 100, 500, n_elements]:
uni = numpy.random.rand(i).astype(config.floatX)
pvals = numpy.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
uni = np.random.rand(i).astype(config.floatX)
pvals = np.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
pvals /= pvals.sum(1)
res = f(pvals, uni, i)
for ii in range(len(expected)):
if expected[ii].shape == res.shape:
assert (expected[ii] == res).all()
res = numpy.squeeze(res)
res = np.squeeze(res)
assert len(res) == i
assert numpy.all(numpy.in1d(numpy.unique(res), all_indices)), res
assert np.all(np.in1d(np.unique(res), all_indices)), res
def test_fail_select_alot(self):
"""
......@@ -58,9 +58,9 @@ class test_OP(unittest.TestCase):
n_elements = 100
n_selected = 200
numpy.random.seed(12345)
uni = numpy.random.rand(n_selected).astype(config.floatX)
pvals = numpy.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
np.random.seed(12345)
uni = np.random.rand(n_selected).astype(config.floatX)
pvals = np.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
pvals /= pvals.sum(1)
self.assertRaises(ValueError, f, pvals, uni, n_selected)
......@@ -79,18 +79,18 @@ class test_OP(unittest.TestCase):
n_elements = 100
n_selected = 10
mean_rtol = 0.0005
numpy.random.seed(12345)
pvals = numpy.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
np.random.seed(12345)
pvals = np.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
pvals /= pvals.sum(1)
avg_pvals = numpy.zeros((n_elements,), dtype=config.floatX)
avg_pvals = np.zeros((n_elements,), dtype=config.floatX)
for rep in range(10000):
uni = numpy.random.rand(n_selected).astype(config.floatX)
uni = np.random.rand(n_selected).astype(config.floatX)
res = f(pvals, uni, n_selected)
res = numpy.squeeze(res)
res = np.squeeze(res)
avg_pvals[res] += 1
avg_pvals /= avg_pvals.sum()
avg_diff = numpy.mean(abs(avg_pvals - pvals))
avg_diff = np.mean(abs(avg_pvals - pvals))
assert avg_diff < mean_rtol, avg_diff
......@@ -110,14 +110,14 @@ class test_function(unittest.TestCase):
n_elements = 1000
all_indices = range(n_elements)
numpy.random.seed(12345)
np.random.seed(12345)
for i in [5, 10, 50, 100, 500, n_elements]:
pvals = numpy.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
pvals = np.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
pvals /= pvals.sum(1)
res = f(pvals, i)
res = numpy.squeeze(res)
res = np.squeeze(res)
assert len(res) == i
assert numpy.all(numpy.in1d(numpy.unique(res), all_indices)), res
assert np.all(np.in1d(np.unique(res), all_indices)), res
def test_fail_select_alot(self):
"""
......@@ -134,8 +134,8 @@ class test_function(unittest.TestCase):
n_elements = 100
n_selected = 200
numpy.random.seed(12345)
pvals = numpy.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
np.random.seed(12345)
pvals = np.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
pvals /= pvals.sum(1)
self.assertRaises(ValueError, f, pvals, n_selected)
......@@ -155,17 +155,17 @@ class test_function(unittest.TestCase):
n_elements = 100
n_selected = 10
mean_rtol = 0.0005
numpy.random.seed(12345)
pvals = numpy.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
np.random.seed(12345)
pvals = np.random.randint(1, 100, (1, n_elements)).astype(config.floatX)
pvals /= pvals.sum(1)
avg_pvals = numpy.zeros((n_elements,), dtype=config.floatX)
avg_pvals = np.zeros((n_elements,), dtype=config.floatX)
for rep in range(10000):
res = f(pvals, n_selected)
res = numpy.squeeze(res)
res = np.squeeze(res)
avg_pvals[res] += 1
avg_pvals /= avg_pvals.sum()
avg_diff = numpy.mean(abs(avg_pvals - pvals))
avg_diff = np.mean(abs(avg_pvals - pvals))
assert avg_diff < mean_rtol
def test_unpickle_legacy_op(self):
......
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