提交 0f0f83e2 编写于 作者: L liuxiao

modified api name Stack -> Pack, Unstack -> Unpack

上级 cc53ddae
......@@ -148,8 +148,8 @@ const char kNameSlice[] = "Slice";
const char kNameAddN[] = "AddN";
const char kNameLess[] = "Less";
const char kNameGreater[] = "Greater";
const char kNameStack[] = "Stack";
const char kNameUnstack[] = "Unstack";
const char kNamePack[] = "Pack";
const char kNameUnpack[] = "Unpack";
const char kNameMerge[] = "Merge";
const char kNameGeSwitch[] = "GeSwitch";
......@@ -202,8 +202,8 @@ std::unordered_map<std::string, OpAdapterDescPtr> &DfGraphConvertor::get_adpt_ma
{string(kNameAvgPool), ADPT_DESC(AvgPool)},
{string(kNameMaxPoolWithArgmax), ADPT_DESC(MaxPoolWithArgmax)},
{string(kNameTopK), ADPT_DESC(TopKV2)},
{string(kNameStack), ADPT_DESC(Pack)},
{string(kNameUnstack), ADPT_DESC(Unpack)},
{string(kNamePack), ADPT_DESC(Pack)},
{string(kNameUnpack), ADPT_DESC(Unpack)},
{string(kNameSplitD), ADPT_DESC(SplitD)},
{string(kNameAllReduce), ADPT_DESC(HcomAllReduce)},
{string(kNameBroadcast), ADPT_DESC(HcomBroadcast)},
......
......@@ -266,26 +266,26 @@ def get_bprop_gather_v2(self):
return bprop
@bprop_getters.register(P.Stack)
def get_bprop_stack(self):
"""Generate bprop for Stack"""
@bprop_getters.register(P.Pack)
def get_bprop_pack(self):
"""Generate bprop for Pack"""
axis = self.axis
def bprop(x, out, dout):
stack_grad = P.Unstack(axis)
out = stack_grad(dout)
pack_grad = P.Unpack(axis)
out = pack_grad(dout)
return (out,)
return bprop
@bprop_getters.register(P.Unstack)
def get_bprop_unstack(self):
"""Generate bprop for Unstack"""
@bprop_getters.register(P.Unpack)
def get_bprop_unpack(self):
"""Generate bprop for Unpack"""
axis = self.axis
def bprop(x, out, dout):
unstack_grad = P.Stack(axis)
out = unstack_grad(dout)
unpack_grad = P.Pack(axis)
out = unpack_grad(dout)
return (out,)
return bprop
......
......@@ -19,7 +19,7 @@ Primitive operator classes.
A collection of operators to build nerual networks or computing functions.
"""
from .array_ops import (Argmax, Argmin, Cast, ConcatOffset, Concat, Stack, Unstack,
from .array_ops import (Argmax, Argmin, Cast, ConcatOffset, Concat, Pack, Unpack,
Diag, DiagPart, DType, ExpandDims, Eye,
Fill, GatherNd, GatherV2, InvertPermutation,
IsInstance, IsSubClass, ArgMaxWithValue, OnesLike, ZerosLike,
......@@ -112,8 +112,8 @@ __all__ = [
'OneHot',
'GatherV2',
'Concat',
'Stack',
'Unstack',
'Pack',
'Unpack',
'Tile',
'BiasAdd',
'Gelu',
......
......@@ -1350,8 +1350,8 @@ class Concat(PrimitiveWithInfer):
return out
def _get_stack_shape(x_shape, x_type, axis):
"""for satck output shape"""
def _get_pack_shape(x_shape, x_type, axis):
"""for pack output shape"""
validator.check_type("shape", x_shape, [tuple])
validator.check_integer("len of input_x shape", len(x_shape), 0, Rel.GT)
validator.check_subclass("shape0", x_type[0], mstype.tensor)
......@@ -1368,43 +1368,40 @@ def _get_stack_shape(x_shape, x_type, axis):
validator.check('x_type[%d]' % i, x_type[i], 'base', x_type[0])
for j in range(rank_base):
if v[j] != x_shape[0][j]:
raise ValueError("Stack evaluator element %d shape in input can not stack with first element" % i)
raise ValueError("Pack evaluator element %d shape in input can not pack with first element" % i)
out_shape.insert(axis, N)
return out_shape
class Stack(PrimitiveWithInfer):
class Pack(PrimitiveWithInfer):
r"""
Stacks a list of rank-`R` tensors into one rank-`(R+1)` tensor.
Packs a list of tensors in specified axis.
Packs the list of tensors in `input_x` into a tensor with rank one higher than
each tensor in `input_x`, by packing them along the `axis` dimension.
Given a list of length `N` of tensors of shape `(A, B, C)`;
Packs the list of input tensors with the same rank `R`, output is a tensor of rank `(R+1)`.
If `axis == 0` then the `output` tensor will have the shape `(N, A, B, C)`.
If `axis == 1` then the `output` tensor will have the shape `(A, N, B, C)`. Etc.
Given input tensors of shape :math:`(x_1, x_2, ..., x_R)`. Set the number of input tensors as `N`.
If :math:`0 \le axis`, the output tensor shape is :math:`(x_1, x_2, ..., x_{axis}, N, x_{axis+1}, ..., x_R)`.
Args:
axis (int): The axis to stack along. Negative values wrap around,
so the valid range is [-(R+1), R+1). Default: 0.
axis (int): Dimension along which to pack. Default: 0.
Negative values wrap around. The range is [-(R+1), R+1).
Inputs:
- **input_x** (Union[tuple, list]) - A Tuple or list of Tensor objects with the same shape and type.
Outputs:
Tensor. A stacked Tensor with the same type as values.
Tensor. A packed Tensor with the same type as `input_x`.
Examples:
>>> data1 = Tensor(np.array([0, 1]).astype(np.float32))
>>> data2 = Tensor(np.array([2, 3]).astype(np.float32))
>>> op = P.Stack()
>>> output = op([data1, data2])
>>> pack = P.Pack()
>>> output = pack([data1, data2])
[[0, 1], [2, 3]]
"""
@prim_attr_register
def __init__(self, axis=0):
"""init Stack"""
"""init Pack"""
self.__setattr_flag__ = True
validator.check_type("axis", axis, [int])
self.axis = axis
......@@ -1413,38 +1410,33 @@ class Stack(PrimitiveWithInfer):
x_shape = value['shape']
x_type = value['dtype']
self.add_prim_attr('num', len(x_shape))
all_shape = _get_stack_shape(x_shape, x_type, self.axis)
all_shape = _get_pack_shape(x_shape, x_type, self.axis)
out = {'shape': all_shape,
'dtype': x_type[0],
'value': None}
return out
class Unstack(PrimitiveWithInfer):
class Unpack(PrimitiveWithInfer):
r"""
Unpacks the given dimension of a rank-`R` tensor into rank-`(R-1)` tensors.
Unpacks num tensors from value by chipping it along the axis dimension.
If num is not specified (the default), it is inferred from value's shape.
If value.shape[axis] is not known, ValueError is raised.
Unpacks tensor in specified axis.
For example, given a tensor of shape (A, B, C, D);
Unpacks a tensor of rank `R` along axis dimension, output tensors will have rank `(R-1)`.
If axis == 0 then the i'th tensor in output is the slice value[i, :, :, :] and
each tensor in output will have shape (B, C, D). (Note that the dimension unpacked along is gone, unlike split).
Given a tensor of shape :math:`(x_1, x_2, ..., x_R)`. If :math:`0 \le axis`,
the shape of tensor in output is :math:`(x_1, x_2, ..., x_{axis}, x_{axis+2}, ..., x_R)`.
If axis == 1 then the i'th tensor in output is the slice value[:, i, :, :] and
each tensor in output will have shape (A, C, D). Etc.
This is the opposite of stack.
This is the opposite of pack.
Args:
axis (int): The axis to unstack along. Defaults to the first dimension.
Negative values wrap around, so the valid range is [-R, R).
axis (int): Dimension along which to pack. Default: 0.
Negative values wrap around. The range is [-R, R).
num (int): The number of tensors to be unpacked to. Default : "None".
If `num` is not specified, it is inferred from the shape of `input_x`.
Inputs:
- **input_x** (Tensor) - The shape is :math:`(x_1, x_2, ..., x_R)`.
A rank R > 0 Tensor to be unstacked.
A rank R > 0 Tensor to be unpacked.
Outputs:
A tuple of Tensors, the shape of each objects is same.
......@@ -1454,15 +1446,15 @@ class Unstack(PrimitiveWithInfer):
or if len(input_x.shape[axis]) not equal to num.
Examples:
>>> unstack = P.Unstack()
>>> x = Tensor(np.array([[1, 1, 1, 1], [2, 2, 2, 2]]))
>>> output = unstack(x)
>>> unpack = P.Unpack()
>>> input_x = Tensor(np.array([[1, 1, 1, 1], [2, 2, 2, 2]]))
>>> output = unpack(input_x)
([1, 1, 1, 1], [2, 2, 2, 2])
"""
@prim_attr_register
def __init__(self, axis=0):
"""init Unstack"""
"""init Unpack"""
self.__setattr_flag__ = True
validator.check_type("axis", axis, [int])
self.axis = axis
......@@ -1479,7 +1471,7 @@ class Unstack(PrimitiveWithInfer):
validator.check_integer("output_num", output_num, 0, Rel.GT)
self.add_prim_attr('num', output_num)
output_valid_check = x_shape[self.axis] - output_num
validator.check_integer("the dimension which to unstack divides output_num", output_valid_check, 0, Rel.EQ)
validator.check_integer("The dimension which to unpack divides output_num", output_valid_check, 0, Rel.EQ)
out_shapes = []
out_dtypes = []
out_shape = x_shape[:self.axis] + x_shape[self.axis + 1:]
......
......@@ -80,9 +80,9 @@ class NetForConcat1(nn.Cell):
return self.concat((x1, x2))
class NetForStackInput(nn.Cell):
class NetForPackInput(nn.Cell):
def __init__(self, op):
super(NetForStackInput, self).__init__()
super(NetForPackInput, self).__init__()
self.op = op
self.mul = P.Mul()
......@@ -93,9 +93,9 @@ class NetForStackInput(nn.Cell):
return self.op(t)
class NetForUnstackInput(nn.Cell):
class NetForUnpackInput(nn.Cell):
def __init__(self, op):
super(NetForUnstackInput, self).__init__()
super(NetForUnpackInput, self).__init__()
self.op = op
self.mul = P.Mul()
......@@ -991,33 +991,33 @@ test_case_array_ops = [
Tensor(np.array([1], np.float32)),
Tensor(np.array([1], np.float32)))],
'desc_bprop': [[3,]]}),
('StackV2_0', {
'block': NetForStackInput(P.Stack()),
('Pack_0', {
'block': NetForPackInput(P.Pack()),
'desc_inputs':[[2, 2], [2, 2], [2, 2]],
'desc_bprop':[[3, 2, 2]],
}),
('StackV2_1', {
'block': NetForStackInput(P.Stack(axis=-2)),
('Pack_1', {
'block': NetForPackInput(P.Pack(axis=-2)),
'desc_inputs':[[3, 2, 3], [3, 2, 3], [3, 2, 3]],
'desc_bprop':[[3, 2, 3, 3]],
}),
('StackV2_2', {
'block': NetForStackInput(P.Stack()),
('Pack_2', {
'block': NetForPackInput(P.Pack()),
'desc_inputs':[[2, 2]],
'desc_bprop':[[2, 2, 2]],
}),
('StackV2_3', {
'block': NetForStackInput(P.Stack()),
('Pack_3', {
'block': NetForPackInput(P.Pack()),
'desc_inputs':[[128, 128], [128, 128]],
'desc_bprop':[[2, 128, 128]],
}),
('UnstackV2_0', {
'block': NetForUnstackInput(P.Unstack(axis=0)),
('Unpack_0', {
'block': NetForUnpackInput(P.Unpack(axis=0)),
'desc_inputs':[[2, 4]],
'desc_bprop':[[4], [4]],
}),
('UnstackV2_1', {
'block': NetForUnstackInput(P.Unstack(axis=-1)),
('Unpack_1', {
'block': NetForUnpackInput(P.Unpack(axis=-1)),
'desc_inputs':[Tensor(np.array([[1, 1, 1]], np.float32))],
'desc_bprop':[[1], [1], [1]],
}),
......
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