提交 2c9fa876 authored 作者: lamblin's avatar lamblin

Merge pull request #573 from delallea/minor

Minor stuff (PEP8 and typos mostly)
......@@ -27,9 +27,9 @@ Interface changes
instance, function([x, y], [y]). You can use the kwarg
``on_unused_input={'raise', 'warn', 'ignore'}`` to control this.
(Pascal L.)
* tensor.alloc() now raise an error during graph build time
when we try to create less dimensions then the number of dimensions
the provieded value have. In the past, the error was at run time.
* tensor.alloc() now raises an error during graph build time
when we try to create less dimensions than the number of dimensions
the provided value have. In the past, the error was at run time.
(Frederic B.)
New Features
......@@ -48,7 +48,7 @@ New Features
contains dimensions with bad value like 0. (Frédéric B. reported by Ian G.)
Sparse
* Implement theano.sparse.mul(sparse1, sparse2) when both input don't
* Implement theano.sparse.mul(sparse1, sparse2) when both inputs don't
have the same sparsity pattern. (Frederic B.)
Sparse Sandbox graduate
......
......@@ -519,8 +519,8 @@ import theano and print the config variable, as in:
Bool value, default: False
Should all SeqOptimizer object print the time taked by each of its
optimizer. Each SeqOptimizer print something like this:
Should each SeqOptimizer object print the time taken by each of its
optimizer. Each SeqOptimizer prints something like this:
SeqOptimizer gpu_opt time 0.014s for 8/9 nodes before/after optimization
[(0.0004410743713378906, ('InputToGpuOptimizer',
......@@ -529,11 +529,11 @@ import theano and print the config variable, as in:
(0.012573957443237305, ('gpu_local_optimizations',
'EquilibriumOptimizer'))]
This print the name of the SeqOptimizer (gpu_opt), the number of
Apply node in the graph before (8) and after (9)
optimizations. Then a list of tuple with 1 tuple by optimization
This prints the name of the SeqOptimizer (gpu_opt), the number of
Apply nodes in the graph before (8) and after (9)
optimizations. Then a list of tuples with 1 tuple per optimization
in this SeqOptimizer. The first element of the tuple is the time
by this optimization and then it is a tuple with the name of the
taken by this optimization and then it is a tuple with the name of the
optimization and this class. This list is sorted from the sub
optimization that take the most time to the optimization that take
the less time.
optimization that takes the most time to the optimization that takes
the least time.
......@@ -1064,7 +1064,7 @@ def _get_preallocated_maps(node, thunk, prealloc_modes, def_val,
del f_cont_outputs
# We assume that the different outputs of a same Op will behave
# independantly, and there is no need to test over all combinations
# independently, and there is no need to test over all combinations
# of outputs (the time taken is prohibitive).
max_ndim = 0
for r in node.outputs:
......
......@@ -1431,7 +1431,7 @@ class GCC_compiler(object):
preargs.append('-fPIC')
if sys.platform == 'win32' and local_bitwidth() == 64:
# Under 64-bits windows installation, sys.platform is 'win32'.
# Under 64-bit Windows installation, sys.platform is 'win32'.
# We need to define MS_WIN64 for the preprocessor to be able to
# link with libpython.
preargs.append('-DMS_WIN64')
......
......@@ -95,7 +95,7 @@ class Unification:
def __init__(self, inplace = False):
"""
If inplace is False, the merge method will return a new Unification
that is independant from the previous one (which allows backtracking).
that is independent from the previous one (which allows backtracking).
"""
self.unif = {}
self.inplace = inplace
......
......@@ -147,14 +147,17 @@ def verify_grad_sparse(op, pt, structured=False, *args, **kwargs):
Converts sparse variables back and forth.
"""
conv_none = lambda x: x
def conv_csr(ind, indptr, shp):
def f(spdata):
return CSR(spdata, ind, indptr, shp)
return f
def conv_csc(ind, indptr, shp):
def f(spdata):
return CSC(spdata, ind, indptr, shp)
return f
iconv = []
dpt = []
......@@ -189,10 +192,12 @@ def verify_grad_sparse(op, pt, structured=False, *args, **kwargs):
oconv = DenseFromSparse(structured=structured)
else:
oconv = conv_none
def conv_op(*inputs):
ipt = [conv(i) for i, conv in zip(inputs, iconv)]
out = op(*ipt)
return oconv(out)
ipt = [conv(i) for i, conv in zip(inputs, iconv)]
out = op(*ipt)
return oconv(out)
return utt.verify_grad(conv_op, dpt, *args, **kwargs)
verify_grad_sparse.E_grad = utt.verify_grad.E_grad
......@@ -746,7 +751,7 @@ class DenseFromSparse(gof.op.Op):
(self.sparse_grad == other.sparse_grad)
def __hash__(self):
return hash(type(self))^hash(self.sparse_grad)
return hash(type(self)) ^ hash(self.sparse_grad)
def __str__(self):
return "%s{structured_grad=%s}" % (
......@@ -1180,8 +1185,8 @@ class MulSS(gof.op.Op):
assert _is_sparse(x) and _is_sparse(y)
assert len(x.shape) == 2
assert y.shape == x.shape
# This call the element-wise multiple
# x * y call dot...
# This calls the element-wise multiple
# x * y calls dot...
out[0] = x.multiply(y)
def grad(self, (x, y), (gz,)):
......
......@@ -515,8 +515,8 @@ def get_constant_value(v):
# TODO: implement the case where we take a scalar in a matrix
assert len(v.owner.op.idx_list) == v.owner.inputs[0].ndim
#Needed to make better graph in this test.
#theano/tensor/tests/test_sharedvar.py:test_shared_options.test_specify_shape_partial
# Needed to make better graph in this test in theano/tensor/tests:
# test_sharedvar.py:test_shared_options.test_specify_shape_partial
if (v.owner.inputs[0].owner and
isinstance(v.owner.inputs[0].owner.op, Join) and
# Ensure the Join is joining only scalar variables (so that
......@@ -956,9 +956,9 @@ class TensorType(Type):
return """
%(name)s = NULL;
if (py_%(name)s == Py_None) {
// We can either fail here or set %(name)s to NULL and rely on Ops using
// tensors to handle the NULL case, but if they fail to do so they'll end up
// with nasty segfaults, so this is public service.
// We can either fail here or set %(name)s to NULL and rely on Ops
// using tensors to handle the NULL case, but if they fail to do so
// they'll end up with nasty segfaults, so this is public service.
PyErr_SetString(PyExc_ValueError, "expected an ndarray, not None");
%(fail)s
}
......@@ -966,15 +966,19 @@ class TensorType(Type):
PyErr_SetString(PyExc_ValueError, "expected an ndarray");
%(fail)s
}
type_num_%(name)s = ((PyArrayObject*)py_%(name)s)->descr->type_num; //we expect %(type_num)s
// We expect %(type_num)s
type_num_%(name)s = ((PyArrayObject*)py_%(name)s)->descr->type_num;
if (!PyArray_ISALIGNED(py_%(name)s)) {
PyErr_Format(PyExc_NotImplementedError,
"expected an aligned array of type %%d (%(type_num)s), got non-aligned array of type %%d",
"expected an aligned array of type %%d "
"(%(type_num)s), got non-aligned array of type %%d",
%(type_num)s, type_num_%(name)s);
%(fail)s
}
if (type_num_%(name)s != %(type_num)s) {
PyErr_Format(PyExc_ValueError, "expected type_num %%d (%(type_num)s) got %%d", %(type_num)s, type_num_%(name)s);
PyErr_Format(PyExc_ValueError,
"expected type_num %%d (%(type_num)s) got %%d",
%(type_num)s, type_num_%(name)s);
%(fail)s
}
%(name)s = (PyArrayObject*)(py_%(name)s);
......@@ -2713,12 +2717,12 @@ if 0:
## TODO (DOCUMENT AND WRITE TESTS) OR DELETE
class Filler(gof.Op):
"""WRITEME"""
def __init__(self, value, ndim, dtype = 'float64'):
def __init__(self, value, ndim, dtype='float64'):
self.value = value
self.ndim = ndim
self.dtype = dtype
self.type = TensorType(dtype = dtype,
broadcastable = (False,)*ndim)
self.type = TensorType(dtype=dtype,
broadcastable=(False,) * ndim)
def make_node(self, dims):
dims = as_tensor_variable(dims)
......@@ -2728,21 +2732,22 @@ if 0:
dims, = inp
out, = out_
if out[0] is not None:
out[0].resize(dims, refcheck = 0)
out[0].resize(dims, refcheck=0)
out[0].fill(self.value)
else:
if self.value == 0:
out[0] = numpy.zeros(dims, dtype = self.dtype)
out[0] = numpy.zeros(dims, dtype=self.dtype)
elif self.value == 1:
out[0] = numpy.ones(dims, dtype = self.dtype)
out[0] = numpy.ones(dims, dtype=self.dtype)
else:
out[0] = numpy.ones(dims, dtype = self.dtype) * self.value
out[0] = numpy.ones(dims, dtype=self.dtype) * self.value
def grad(self, inp, grads):
return None,
def __eq__(self, other):
return type(self) == type(other) and self.ndim == other.ndim and self.dtype == other.dtype
return (type(self) == type(other) and self.ndim == other.ndim and
self.dtype == other.dtype)
def __hash__(self):
return hash(self.ndim) ^ hash(self.dtype)
......@@ -2765,8 +2770,14 @@ if 0:
"""WRITEME"""
return Ones(0)([])
pprint.assign(lambda pstate, r: r.owner and isinstance(r.owner.op, Filler) and r.owner.op.value == 0, printing.FunctionPrinter('zeros'))
pprint.assign(lambda pstate, r: r.owner and isinstance(r.owner.op, Filler) and r.owner.op.value == 1, printing.FunctionPrinter('ones'))
pprint.assign(lambda pstate, r: r.owner and
isinstance(r.owner.op, Filler) and
r.owner.op.value == 0,
printing.FunctionPrinter('zeros'))
pprint.assign(lambda pstate, r: r.owner and
isinstance(r.owner.op, Filler) and
r.owner.op.value == 1,
printing.FunctionPrinter('ones'))
class Alloc(gof.Op):
......@@ -2802,8 +2813,8 @@ class Alloc(gof.Op):
sh = [as_tensor_variable(s) for s in shape]
bcast = []
if v.ndim > len(sh):
raise TypeError("Alloc value to use have more dimensions"
" then the specified dimensions",
raise TypeError("The Alloc value to use has more dimensions"
" than the specified dimensions",
v.ndim, len(sh))
for i, s in enumerate(sh):
if s.type.dtype[:3] not in ('int', 'uin'):
......@@ -3106,17 +3117,19 @@ if 0:
assert repeats.type == iscalar
assert axis.type == iscalar
broadcastable = []
for i,x in enumerate(input.broadcastable):
if i==axis:
for i, x in enumerate(input.broadcastable):
if i == axis:
broadcastable += [False]
else:
broadcastable += [x]
type = TensorType(dtype = input.type.dtype, broadcastable = \
broadcastable)
type = TensorType(dtype=input.type.dtype,
broadcastable=broadcastable)
#backport
#type = TensorType(dtype = input.type.dtype,
# broadcastable = [False if i==axis else x for i, x in enumerate(input.broadcastable)])
#type = TensorType(dtype=input.type.dtype,
# broadcastable=[
# False if i==axis else x
# for i, x in enumerate(input.broadcastable)])
return gof.Apply(self, [inputs, repeats, axis], [type()])
def perform(self, node, inp, out_):
......@@ -3807,7 +3820,8 @@ class Subtensor(Op):
if (!step)
{
Py_DECREF(xview);
PyErr_Format(PyExc_ValueError, "slice step cannot be zero");
PyErr_Format(PyExc_ValueError,
"slice step cannot be zero");
%(fail)s;
}
......@@ -4209,7 +4223,8 @@ class IncSubtensor(Op):
else
{
if (%(z)s) Py_DECREF(%(z)s);
%(z)s = (PyArrayObject*)PyArray_FromAny(py_%(x)s, NULL, 0, 0, NPY_ENSURECOPY, NULL);
%(z)s = (PyArrayObject*)PyArray_FromAny(py_%(x)s, NULL, 0, 0,
NPY_ENSURECOPY, NULL);
}
""" % locals()
......@@ -5532,8 +5547,8 @@ def inverse_permutation(perm):
# Advanced indexing
#########################
#
# Should reproduce numpy's behaviour:
# http://docs.scipy.org/doc/numpy/reference/arrays.indexing.html#advanced-indexing
# Should reproduce numpy's behaviour, see url:
# docs.scipy.org/doc/numpy/reference/arrays.indexing.html#advanced-indexing
class AdvancedSubtensor1(Op):
......
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