提交 e945851a authored 作者: Frederic's avatar Frederic

pep8

上级 9a44f9bf
......@@ -1137,6 +1137,7 @@ class T_graphstructures(unittest.TestCase):
assert e.owner.inputs[1].owner.inputs[0] is y
assert e.owner.inputs[1].owner.inputs[1] is z
class T_scan(unittest.TestCase):
## All tests here belong to
## http://deeplearning.net/software/theano/tutorial/loop.html
......@@ -1144,7 +1145,6 @@ class T_scan(unittest.TestCase):
## Any change you do here also add it to the tutorial !
def test_elemwise(self):
# defining the tensor variables
X = T.matrix("X")
W = T.matrix("W")
......@@ -1167,7 +1167,6 @@ class T_scan(unittest.TestCase):
print "Numpy results:", numpy.tanh(x.dot(w) + b)
def test_sequence(self):
# define tensor variables
X = T.vector("X")
W = T.matrix("W")
......@@ -1228,7 +1227,6 @@ class T_scan(unittest.TestCase):
numpy.sqrt((x**2).sum(0))
def test_trace(self):
# define tensor variable
X = T.matrix("X")
results, updates = theano.scan(lambda i, j, t_f:T.cast(X[i,j] + \
......@@ -1250,7 +1248,6 @@ class T_scan(unittest.TestCase):
print "Numpy results:", numpy.diagonal(x).sum()
def test_taps(self):
# define tensor variables
X = T.matrix("X")
W = T.matrix("W")
......@@ -1293,7 +1290,6 @@ class T_scan(unittest.TestCase):
print "Numpy results:", x_res
def test_jacobian(self):
# define tensor variables
v = T.vector()
A = T.matrix()
......@@ -1318,7 +1314,7 @@ class T_scan(unittest.TestCase):
n_sym = T.iscalar("n_sym")
results, updates = theano.scan(lambda:{k:(k+1)}, n_steps=n_sym)
accumulator = theano.function([n_sym], [], updates=updates, \
accumulator = theano.function([n_sym], [], updates=updates,
allow_input_downcast = True)
print "Before 5 steps:", k.get_value()
......@@ -1346,4 +1342,3 @@ class T_scan(unittest.TestCase):
b = numpy.ones((2))
print compute_with_bnoise(x, w, b)
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