Skip to content
Projects
Groups
Snippets
Help
This project
Loading...
Sign in / Register
Toggle navigation
T
tic
Overview
Overview
Details
Activity
Cycle Analytics
Repository
Repository
Files
Commits
Branches
Tags
Contributors
Graph
Compare
Charts
Issues
0
Issues
0
List
Board
Labels
Milestones
Merge Requests
0
Merge Requests
0
CI / CD
CI / CD
Pipelines
Jobs
Schedules
Charts
Wiki
Wiki
Snippets
Snippets
Members
Members
Collapse sidebar
Close sidebar
Activity
Graph
Charts
Create a new issue
Jobs
Commits
Issue Boards
Open sidebar
wenyuanbo
tic
Commits
ade98e14
Commit
ade98e14
authored
Nov 18, 2018
by
hlu1
Committed by
Tianqi Chen
Nov 18, 2018
Browse files
Options
Browse Files
Download
Email Patches
Plain Diff
[nnvm] Add caffe2 frontend (#1981)
parent
c5e1da93
Show whitespace changes
Inline
Side-by-side
Showing
8 changed files
with
774 additions
and
59 deletions
+774
-59
nnvm/python/nnvm/frontend/__init__.py
+1
-0
nnvm/python/nnvm/frontend/caffe2.py
+458
-0
nnvm/python/nnvm/frontend/onnx.py
+16
-59
nnvm/python/nnvm/frontend/onnx_caffe2_utils.py
+46
-0
nnvm/tests/python/frontend/caffe2/model_zoo/__init__.py
+18
-0
nnvm/tests/python/frontend/caffe2/model_zoo/squeezenet.py
+118
-0
nnvm/tests/python/frontend/caffe2/test_forward.py
+93
-0
nnvm/tests/python/frontend/caffe2/test_graph.py
+24
-0
No files found.
nnvm/python/nnvm/frontend/__init__.py
View file @
ade98e14
...
...
@@ -6,3 +6,4 @@ from .coreml import from_coreml
from
.keras
import
from_keras
from
.darknet
import
from_darknet
from
.tensorflow
import
from_tensorflow
from
.caffe2
import
from_caffe2
nnvm/python/nnvm/frontend/caffe2.py
0 → 100755
View file @
ade98e14
# pylint: disable=import-self, invalid-name, line-too-long, unused-argument
"""Caffe2 frontend"""
from
__future__
import
absolute_import
as
_abs
import
tvm
from
nnvm
import
symbol
as
_sym
from
nnvm.frontend.common
import
get_nnvm_op
,
Renamer
,
AttrConverter
as
AttrCvt
from
.onnx_caffe2_utils
import
dimension_picker
,
dimension_constraint
,
infer_channels
,
revert_caffe2_pad
from
.
import
onnx
__all__
=
[
'from_caffe2'
]
def
_clean_up_pool_args
(
args
):
""" A helper function to clean up common arguments in conv and pooling ops.
"""
assert
isinstance
(
args
,
dict
)
if
'stride_h'
in
args
and
'stride_w'
in
args
:
assert
'stride'
not
in
args
and
'strides'
not
in
args
args
[
'strides'
]
=
[
args
[
'stride_h'
],
args
[
'stride_w'
]]
args
.
pop
(
'stride_h'
)
args
.
pop
(
'stride_w'
)
elif
'stride'
in
args
:
args
[
'strides'
]
=
[
args
[
'stride'
],
args
[
'stride'
]]
args
.
pop
(
'stride'
)
# rename 'kernel', 'kernels', to 'kernel_shape'
if
'kernel_h'
in
args
and
'kernel_w'
in
args
:
assert
'kernel'
not
in
args
and
'kernels'
not
in
args
args
[
'kernel_shape'
]
=
[
args
[
'kernel_h'
],
args
[
'kernel_w'
]]
args
.
pop
(
'kernel_h'
)
args
.
pop
(
'kernel_w'
)
elif
'kernel'
in
args
:
args
[
'kernel_shape'
]
=
[
args
[
'kernel'
],
args
[
'kernel'
]]
args
.
pop
(
'kernel'
)
elif
'kernels'
in
args
:
args
[
'kernel_shape'
]
=
args
[
'kernels'
]
args
.
pop
(
'kernels'
)
if
'pad_t'
in
args
and
'pad_l'
in
args
and
'pad_b'
in
args
and
'pad_r'
in
args
:
assert
'pad'
not
in
args
and
'pads'
not
in
args
args
[
'pads'
]
=
[
args
[
'pad_t'
],
args
[
'pad_l'
],
args
[
'pad_b'
],
args
[
'pad_r'
]
]
for
pad
in
[
'pad_t'
,
'pad_l'
,
'pad_b'
,
'pad_r'
]:
args
.
pop
(
pad
)
elif
'pad'
in
args
:
args
[
'pads'
]
=
[
args
[
'pad'
],
args
[
'pad'
]]
args
.
pop
(
'pad'
)
if
'dilation_h'
in
args
and
'dilation_w'
in
args
:
assert
'dilation'
not
in
args
and
'dilations'
not
in
args
args
[
'dilations'
]
=
[
args
[
'dilation_h'
],
args
[
'dilation_w'
]]
args
.
pop
(
'dilation_h'
)
args
.
pop
(
'dilation_w'
)
elif
'dilation'
in
args
:
args
[
'dilations'
]
=
[
args
[
'dilation'
],
args
[
'dilation'
]]
args
.
pop
(
'dilation'
)
return
args
class
Caffe2OpConverter
(
object
):
""" A helper class for holding Caffe2 op converters.
"""
@classmethod
def
get_converter
(
cls
):
""" Get converter.
:return: converter, which should be `_impl`.
"""
if
hasattr
(
cls
,
'_impl'
):
return
getattr
(
cls
,
'_impl'
)
else
:
raise
NotImplementedError
(
'{} not implemented'
.
format
(
cls
.
__name__
))
_caffe2_internal_args
=
{
# nnpack args
'algo'
,
'convolution_transform_strategy'
,
'float16_compute'
,
'shared_buffer'
,
# training args
'init_params'
,
'cudnn_exhaustive_search'
,
'exhaustive_search'
,
# training args
'adj'
,
'hwgq'
,
# args that we don't care
'legacy_pad'
,
}
class
Pool
(
Caffe2OpConverter
):
""" A helper class for pool op converters.
"""
name
=
''
@classmethod
def
_impl
(
cls
,
inputs
,
args
,
params
):
_clean_up_pool_args
(
args
)
if
'global_pooling'
in
args
and
args
[
'global_pooling'
]
==
1
:
op_name
=
dimension_picker
(
'global_'
+
cls
.
name
)
return
get_nnvm_op
(
op_name
(
args
))(
*
inputs
)
return
AttrCvt
(
op_name
=
dimension_picker
(
cls
.
name
),
transforms
=
{
'kernel_shape'
:
'pool_size'
,
'pads'
:
(
'padding'
,
(
0
,
0
),
revert_caffe2_pad
),
'strides'
:
'strides'
,
},
excludes
=
{
# TVM poolop does not support dilation
'dilations'
,
},
ignores
=
_caffe2_internal_args
|
{
'global_pooling'
,
'order'
},
custom_check
=
dimension_constraint
())(
inputs
,
args
,
params
)
class
AveragePool
(
Pool
):
name
=
'avg_pool'
class
MaxPool
(
Pool
):
name
=
'max_pool'
class
Conv
(
Caffe2OpConverter
):
""" Operator converter for Conv.
"""
@classmethod
def
_impl
(
cls
,
inputs
,
args
,
params
):
# get number of channels
channels
=
infer_channels
(
inputs
[
1
],
params
)
args
[
'channels'
]
=
channels
_clean_up_pool_args
(
args
)
return
AttrCvt
(
op_name
=
dimension_picker
(
'conv'
),
transforms
=
{
'group'
:
(
'groups'
,
1
),
'kernel_shape'
:
'kernel_size'
,
'pads'
:
(
'padding'
,
(
0
,
0
),
revert_caffe2_pad
),
'strides'
:
'strides'
,
'dilations'
:
(
'dilation'
,
(
1
,
1
)),
'order'
:
(
'layout'
,
(
"NCHW"
),
lambda
x
:
x
if
isinstance
(
x
,
str
)
else
x
.
decode
(
'UTF-8'
)),
},
excludes
=
{},
ignores
=
_caffe2_internal_args
,
extras
=
{
'use_bias'
:
len
(
inputs
)
==
3
},
custom_check
=
dimension_constraint
())(
inputs
,
args
,
params
)
class
Concat
(
Caffe2OpConverter
):
""" Operator converter for Concat.
"""
@classmethod
def
_impl
(
cls
,
inputs
,
args
,
params
):
def
_get_axis_from_order_str
(
order
):
order
=
order
if
isinstance
(
order
,
str
)
else
order
.
decode
(
'UTF-8'
)
if
order
==
'NCHW'
:
return
1
elif
order
==
'NHWC'
:
return
3
else
:
raise
RuntimeError
(
"Unsupported storage order: {} in caffe2"
.
format
(
order
))
return
AttrCvt
(
op_name
=
'concatenate'
,
transforms
=
{
'order'
:
(
'axis'
,
(
1
),
_get_axis_from_order_str
),
},
excludes
=
{
'add_axis'
,
})(
inputs
,
args
,
params
)
class
NormalizePlanarYUV
(
Caffe2OpConverter
):
""" Operator converter for NormalizePlanarYUV.
caffe2 definition: https://github.com/pytorch/pytorch/blob/master/caffe2/operators/norm_planar_yuv_op.cc
"""
@classmethod
def
_impl
(
cls
,
inputs
,
args
,
params
):
assert
len
(
inputs
)
==
3
mean
=
_sym
.
expand_dims
(
inputs
[
1
],
axis
=
2
,
num_newaxis
=
2
)
std
=
_sym
.
expand_dims
(
inputs
[
2
],
axis
=
2
,
num_newaxis
=
2
)
return
_sym
.
broadcast_div
(
_sym
.
broadcast_sub
(
inputs
[
0
],
mean
),
std
)
class
ResizeNearest
(
Caffe2OpConverter
):
""" Operator converter for Upsample (nearest mode).
"""
@classmethod
def
_impl
(
cls
,
inputs
,
args
,
params
):
width_scale
=
args
[
'width_scale'
]
if
'width_scale'
in
args
else
1
height_scale
=
args
[
'height_scale'
]
if
'height_scale'
in
args
else
1
assert
width_scale
==
height_scale
return
_sym
.
upsampling
(
inputs
[
0
],
scale
=
int
(
width_scale
),
method
=
"NEAREST_NEIGHBOR"
)
class
FC
(
Caffe2OpConverter
):
""" Operator converter for FC.
"""
@classmethod
def
_impl
(
cls
,
inputs
,
args
,
params
):
inputs
[
0
]
=
_sym
.
flatten
(
inputs
[
0
])
args
[
'units'
]
=
infer_channels
(
inputs
[
1
],
params
)
return
AttrCvt
(
'dense'
,
ignores
=
[
'axis'
,
'axis_w'
],
extras
=
{
'use_bias'
:
len
(
inputs
)
==
3
},
)(
inputs
,
args
,
params
)
class
SpatialBN
(
Caffe2OpConverter
):
""" Operator converter for SpatialBN.
"""
@classmethod
def
_impl
(
cls
,
inputs
,
args
,
params
):
return
AttrCvt
(
op_name
=
'batch_norm'
,
disables
=
[
'momentum'
],
ignores
=
[
'order'
,
'spatial'
,
'is_test'
,
'consumed_inputs'
,
'num_batches'
])(
inputs
,
args
,
params
)
# compatible operators that do NOT require any conversion.
_identity_list
=
[]
# _convert_map defines maps of name to converter functor(callable)
# for 1 to 1 mapping, use Renamer if nothing but name is different
# use AttrCvt if attributes need to be converted
# for 1 to N mapping(composed), use custom callable functions
# for N to 1 mapping, currently not supported(?)
# Minimal set of ops for squeezenet and resnet50
def
_get_convert_map
():
return
{
# caffe2/onnx common operators
'Add'
:
onnx
.
Add
.
get_converter
(
opset
=
1
),
'Sum'
:
onnx
.
Sum
.
get_converter
(
opset
=
1
),
'Softmax'
:
onnx
.
Softmax
.
get_converter
(
opset
=
1
),
# nn
'AveragePool'
:
AveragePool
.
get_converter
(),
'MaxPool'
:
MaxPool
.
get_converter
(),
'Conv'
:
Conv
.
get_converter
(),
'Concat'
:
Concat
.
get_converter
(),
'FC'
:
FC
.
get_converter
(),
'SpatialBN'
:
SpatialBN
.
get_converter
(),
'ResizeNearest'
:
ResizeNearest
.
get_converter
(),
'Relu'
:
AttrCvt
(
'relu'
,
{},
ignores
=
[
'order'
]),
'Sigmoid'
:
Renamer
(
'sigmoid'
),
'Dropout'
:
AttrCvt
(
'dropout'
,
{
'ratio'
:
'rate'
},
ignores
=
[
'is_test'
]),
# c2 image preprocessing ops
'NormalizePlanarYUV'
:
NormalizePlanarYUV
.
get_converter
(),
}
class
Caffe2NetDef
(
object
):
"""A helper class for handling nnvm graph copying from pb2.GraphProto.
Definition: https://github.com/pytorch/pytorch/blob/master/caffe2/proto/caffe2.proto
"""
def
__init__
(
self
):
self
.
_nodes
=
{}
self
.
_params
=
{}
self
.
_visited_nodes
=
set
()
self
.
_ops
=
{}
def
from_caffe2
(
self
,
init_net
,
predict_net
):
"""Construct nnvm nodes from caffe2 graph.
Parameters
----------
workspace : Caffe2 workspace
predict_net : protobuf object
Returns
-------
sym : nnvm.sym.Symbol
The returned nnvm symbol
params : dict
A dict of name: tvm.nd.array pairs, used as pretrained weights
"""
from
caffe2.python
import
workspace
workspace
.
RunNetOnce
(
init_net
)
# Input
input_name
=
predict_net
.
op
[
0
]
.
input
[
0
]
# Params
self
.
_params
=
{}
used_blobs
=
set
()
for
c2_op
in
predict_net
.
op
:
for
i
in
c2_op
.
input
:
used_blobs
.
add
(
i
)
for
blob
in
workspace
.
Blobs
():
if
blob
in
used_blobs
and
blob
!=
input_name
:
self
.
_params
[
blob
]
=
tvm
.
nd
.
array
(
workspace
.
FetchBlob
(
blob
))
# Variables
self
.
_nodes
=
{}
for
blob
in
predict_net
.
external_input
:
self
.
_nodes
[
blob
]
=
_sym
.
Variable
(
name
=
blob
)
# Ops
for
c2_op
in
predict_net
.
op
:
for
blob
in
c2_op
.
output
:
self
.
_ops
[
blob
]
=
c2_op
for
c2_op
in
predict_net
.
op
:
self
.
_process_op
(
c2_op
)
# Outputs
out
=
[]
for
blob
in
predict_net
.
external_output
:
out
.
append
(
self
.
_nodes
[
blob
])
if
len
(
out
)
>
1
:
sym
=
_sym
.
Group
(
out
)
else
:
sym
=
out
[
0
]
return
sym
,
self
.
_params
def
_get_node
(
self
,
blob
):
"""Get the nnvm Symbol of blob and detect cyclic dependency in the graph."""
if
blob
in
self
.
_nodes
:
return
self
.
_nodes
[
blob
]
assert
blob
not
in
self
.
_visited_nodes
,
'Cyclic dependency in the graph (in {})'
.
format
(
blob
)
self
.
_visited_nodes
.
add
(
blob
)
self
.
_process_op
(
self
.
_ops
[
blob
])
return
self
.
_nodes
[
blob
]
def
_process_op
(
self
,
c2_op
):
op_type
=
c2_op
.
type
args
=
self
.
_parse_arg
(
c2_op
.
arg
)
inputs
=
[
self
.
_get_node
(
i
)
for
i
in
c2_op
.
input
]
tvm_op
=
self
.
_convert_operator
(
op_type
,
inputs
,
args
)
# Ignore all outputs except the first one
self
.
_nodes
[
c2_op
.
output
[
0
]]
=
tvm_op
[
0
]
def
_parse_arg
(
self
,
arg
):
"""Convert a list of Argument to a dict, with names as keys."""
args
=
{}
for
a
in
arg
:
for
f
in
[
'f'
,
'i'
,
's'
]:
if
a
.
HasField
(
f
):
args
[
a
.
name
]
=
getattr
(
a
,
f
)
for
f
in
[
'floats'
,
'ints'
,
'strings'
]:
if
list
(
getattr
(
a
,
f
)):
assert
a
.
name
not
in
args
,
"Only one type of attr is allowed"
args
[
a
.
name
]
=
tuple
(
getattr
(
a
,
f
))
for
f
in
[
'n'
]:
if
a
.
HasField
(
f
):
raise
NotImplementedError
(
"Field {} is not supported in nnvm."
.
format
(
f
))
for
f
in
[
'nets'
]:
if
list
(
getattr
(
a
,
f
)):
raise
NotImplementedError
(
"Field {} is not supported in nnvm."
.
format
(
f
))
if
a
.
name
not
in
args
:
raise
ValueError
(
"Cannot parse attribute:
\n
{}
\n
."
.
format
(
a
))
return
args
def
_convert_operator
(
self
,
op_type
,
inputs
,
args
,
identity_list
=
None
,
convert_map
=
None
):
"""Convert from Caffe2 operator to nnvm operator.
The converter must specify conversions explicity for incompatible name, and
apply handlers to operator attributes.
Parameters
----------
op_type : str
Operator name, such as Convolution, FullyConnected
inputs : list of nnvm.Symbol
List of input symbols.
args : dict
Dict of operator attributes
identity_list : list
List of operators that don't require conversion
convert_map : dict
Dict of name : callable, where name is the op's name that
require conversion to nnvm, callable are functions which
take args and return (new_op_type, new_args)
Returns
-------
sym : nnvm.Symbol
Converted nnvm Symbol
"""
identity_list
=
identity_list
if
identity_list
else
_identity_list
convert_map
=
convert_map
if
convert_map
else
_get_convert_map
()
if
op_type
in
identity_list
:
sym
=
get_nnvm_op
(
op_type
)(
*
inputs
,
**
args
)
elif
op_type
in
convert_map
:
# Add a sanitizing step to convert all byte strings in args to strings
sym
=
convert_map
[
op_type
](
inputs
,
args
,
self
.
_params
)
else
:
raise
NotImplementedError
(
"Operator {} not implemented."
.
format
(
op_type
))
return
sym
def
from_caffe2
(
init_net
,
predict_net
):
"""Load caffe2 graph which contains init_net and predict_net into nnvm graph.
Parameters
----------
init_net : protobuf object
Caffe2 NetDef containing the weights
predict_net : protobuf object
Caffe2 NetDef containing the graph
Returns
-------
sym : nnvm.Symbol
Compatible nnvm symbol
params : dict of str to tvm.ndarray
Dict of converted parameters stored in tvm.ndarray format
"""
caffe2
=
Caffe2NetDef
()
return
caffe2
.
from_caffe2
(
init_net
,
predict_net
)
nnvm/python/nnvm/frontend/onnx.py
View file @
ade98e14
...
...
@@ -4,9 +4,9 @@ from __future__ import absolute_import as _abs
import
numpy
as
np
import
tvm
from
..
import
symbol
as
_sym
from
..
import
graph
as
_graph
from
..compiler
import
graph_util
from
.common
import
get_nnvm_op
,
Renamer
,
SymbolTable
,
AttrConverter
as
AttrCvt
from
.onnx_caffe2_utils
import
dimension_picker
,
dimension_constraint
,
\
infer_channels
,
revert_caffe2_pad
__all__
=
[
'from_onnx'
]
...
...
@@ -74,16 +74,16 @@ class Pool(OnnxOpConverter):
@classmethod
def
_impl_v1
(
cls
,
inputs
,
attr
,
params
):
return
AttrCvt
(
op_name
=
_
dimension_picker
(
cls
.
name
),
op_name
=
dimension_picker
(
cls
.
name
),
transforms
=
{
'kernel_shape'
:
'pool_size'
,
'pads'
:
(
'padding'
,
(
0
,
0
),
_
revert_caffe2_pad
)
'pads'
:
(
'padding'
,
(
0
,
0
),
revert_caffe2_pad
)
},
# very weird attributes here in onnx, force check
ignores
=
[
'dilations'
],
# TODO(zhreshold): make sure ceil_mode in onnx, and layout?
extras
=
{
'ceil_mode'
:
False
},
custom_check
=
_
dimension_constraint
())(
inputs
,
attr
,
params
)
custom_check
=
dimension_constraint
())(
inputs
,
attr
,
params
)
class
Absolute
(
OnnxOpConverter
):
...
...
@@ -118,18 +118,18 @@ class Conv(OnnxOpConverter):
@classmethod
def
_impl_v1
(
cls
,
inputs
,
attr
,
params
):
# get number of channels
channels
=
_
infer_channels
(
inputs
[
1
],
params
)
channels
=
infer_channels
(
inputs
[
1
],
params
)
attr
[
'channels'
]
=
channels
return
AttrCvt
(
op_name
=
_
dimension_picker
(
'conv'
),
op_name
=
dimension_picker
(
'conv'
),
transforms
=
{
'kernel_shape'
:
'kernel_size'
,
'dilations'
:
(
'dilation'
,
(
0
,
0
)),
'pads'
:
(
'padding'
,
(
0
,
0
),
_
revert_caffe2_pad
),
'pads'
:
(
'padding'
,
(
0
,
0
),
revert_caffe2_pad
),
'group'
:
(
'groups'
,
1
)
},
extras
=
{
'use_bias'
:
len
(
inputs
)
==
3
},
custom_check
=
_
dimension_constraint
())(
inputs
,
attr
,
params
)
custom_check
=
dimension_constraint
())(
inputs
,
attr
,
params
)
class
ConvTranspose
(
OnnxOpConverter
):
...
...
@@ -137,20 +137,20 @@ class ConvTranspose(OnnxOpConverter):
@classmethod
def
_impl_v1
(
cls
,
inputs
,
attr
,
params
):
# get number of channels
channels
=
_
infer_channels
(
inputs
[
1
],
params
,
True
)
channels
=
infer_channels
(
inputs
[
1
],
params
,
True
)
attr
[
'channels'
]
=
channels
groups
=
attr
.
pop
(
'group'
)
attr
[
'groups'
]
=
groups
return
AttrCvt
(
op_name
=
_
dimension_picker
(
'conv'
,
'_transpose'
),
op_name
=
dimension_picker
(
'conv'
,
'_transpose'
),
transforms
=
{
'kernel_shape'
:
'kernel_size'
,
'dilations'
:
(
'dilation'
,
(
0
,
0
)),
'pads'
:
(
'padding'
,
(
0
,
0
),
_
revert_caffe2_pad
)
'pads'
:
(
'padding'
,
(
0
,
0
),
revert_caffe2_pad
)
},
disables
=
[
'output_shape'
],
extras
=
{
'use_bias'
:
len
(
inputs
)
==
3
},
custom_check
=
_
dimension_constraint
())(
inputs
,
attr
,
params
)
custom_check
=
dimension_constraint
())(
inputs
,
attr
,
params
)
class
Div
(
Elemwise
):
...
...
@@ -180,7 +180,7 @@ class Gemm(OnnxOpConverter):
transA
=
int
(
attr
.
get
(
'transA'
,
0
))
transB
=
int
(
attr
.
get
(
'transB'
,
0
))
# get number of channels
channels
=
_
infer_channels
(
inputs
[
1
],
params
,
not
transB
)
channels
=
infer_channels
(
inputs
[
1
],
params
,
not
transB
)
if
transA
:
inputs
[
0
]
=
_sym
.
transpose
(
inputs
[
0
],
axes
=
(
1
,
0
))
if
not
transB
:
...
...
@@ -254,7 +254,7 @@ class Prelu(OnnxOpConverter):
def
_impl_v1
(
cls
,
inputs
,
attr
,
params
):
assert
len
(
inputs
)
==
2
,
"Prelu need 2 inputs, {} given"
.
format
(
len
(
inputs
))
channels
=
_
infer_channels
(
inputs
[
1
],
params
,
False
)
channels
=
infer_channels
(
inputs
[
1
],
params
,
False
)
if
channels
==
1
:
return
inputs
[
0
]
*
inputs
[
1
]
return
_sym
.
broadcast_mul
(
inputs
[
0
],
inputs
[
1
])
...
...
@@ -362,17 +362,6 @@ class ImageScaler(OnnxOpConverter):
return
ret
def
_revert_caffe2_pad
(
attr
):
"""Caffe2 require two times the normal padding."""
if
len
(
attr
)
==
4
:
attr
=
attr
[:
2
]
elif
len
(
attr
)
==
2
:
pass
else
:
raise
ValueError
(
"Invalid caffe2 type padding: {}"
.
format
(
attr
))
return
attr
def
_broadcast_constraint
():
def
_broadcast_check
(
attrs
):
...
...
@@ -383,43 +372,11 @@ def _broadcast_constraint():
return
_broadcast_check
,
"Specifying broadcast axis not allowed."
def
_dimension_picker
(
prefix
,
surfix
=
''
):
def
_impl
(
attr
):
kernel
=
attr
[
'kernel_shape'
]
if
len
(
kernel
)
==
2
:
return
prefix
+
'2d'
+
surfix
raise
NotImplementedError
(
"Only 2d kernel supported."
)
return
_impl
def
_dimension_constraint
():
def
_dim_check
(
attrs
):
if
len
(
attrs
[
'kernel_shape'
])
==
2
:
return
True
return
False
return
_dim_check
,
"Only 2d kernel supported."
def
_infer_channels
(
inputs
,
params
,
transpose
=
False
):
"""A hack for getting 'channles' or 'units' since onnx don't provide
these attributes. We check the shape of weights provided to get the number.
"""
g
=
_graph
.
create
(
inputs
)
shape_dict
=
{
k
:
v
.
shape
for
k
,
v
in
params
.
items
()}
_
,
out_shapes
=
graph_util
.
infer_shape
(
g
,
**
shape_dict
)
channels
=
out_shapes
[
0
][
0
]
if
not
transpose
else
out_shapes
[
0
][
1
]
return
channels
def
_fully_connected
(
opset
):
def
_impl
(
inputs
,
attr
,
params
):
# get number of channels
channels
=
_
infer_channels
(
inputs
[
1
],
params
)
channels
=
infer_channels
(
inputs
[
1
],
params
)
attr
[
'units'
]
=
channels
return
AttrCvt
(
'dense'
,
ignores
=
[
'axis'
,
'axis_w'
])(
inputs
,
attr
)
...
...
nnvm/python/nnvm/frontend/onnx_caffe2_utils.py
0 → 100644
View file @
ade98e14
"""Util functions shared by the ONNX and Caffe2 frontends."""
from
__future__
import
absolute_import
as
_abs
from
nnvm
import
graph
as
_graph
from
nnvm.compiler
import
graph_util
def
dimension_picker
(
prefix
,
surfix
=
''
):
def
_impl
(
attr
):
kernel
=
attr
[
'kernel_shape'
]
if
len
(
kernel
)
==
2
:
return
prefix
+
'2d'
+
surfix
else
:
raise
NotImplementedError
(
"Only 2d kernel supported."
)
return
_impl
def
dimension_constraint
():
def
_dim_check
(
attrs
):
if
len
(
attrs
[
'kernel_shape'
])
==
2
:
return
True
return
False
return
_dim_check
,
"Only 2d kernel supported."
def
infer_channels
(
inputs
,
params
,
transpose
=
False
):
"""A hack for getting 'channels' or 'units' since caffe2 don't provide
these attributes. We check the shape of weights provided to get the number.
"""
g
=
_graph
.
create
(
inputs
)
shape_dict
=
{
k
:
v
.
shape
for
k
,
v
in
params
.
items
()}
_
,
out_shapes
=
graph_util
.
infer_shape
(
g
,
**
shape_dict
)
channels
=
out_shapes
[
0
][
0
]
if
not
transpose
else
out_shapes
[
0
][
1
]
return
channels
def
revert_caffe2_pad
(
pads
):
"""Caffe2 require two times the normal padding."""
if
len
(
pads
)
==
4
:
pads
=
pads
[:
2
]
elif
len
(
pads
)
==
2
:
pass
else
:
raise
ValueError
(
"Invalid caffe2 type padding: {}"
.
format
(
pads
))
return
pads
nnvm/tests/python/frontend/caffe2/model_zoo/__init__.py
0 → 100644
View file @
ade98e14
"""Store for caffe2 examples and common models."""
from
__future__
import
absolute_import
as
_abs
import
os
import
importlib
models
=
[
'squeezenet'
,
'resnet50'
,
'vgg19'
,
]
# skip download if model exist
for
model
in
models
:
try
:
locals
()[
'c2_'
+
model
]
=
importlib
.
import_module
(
'caffe2.python.models.'
+
model
)
except
ImportError
:
os
.
system
(
"python -m caffe2.python.models.download -i -f "
+
model
)
locals
()[
'c2_'
+
model
]
=
importlib
.
import_module
(
'caffe2.python.models.'
+
model
)
nnvm/tests/python/frontend/caffe2/model_zoo/squeezenet.py
0 → 100644
View file @
ade98e14
# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements. See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership. The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License. You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied. See the License for the
# specific language governing permissions and limitations
# under the License.
# coding: utf-8
# pylint: disable=unused-argument
"""
Symbol of SqueezeNet
Reference:
Iandola, Forrest N., et al.
"Squeezenet: Alexnet-level accuracy with 50x fewer parameters and< 0.5 mb model size." (2016).
"""
from
nnvm
import
symbol
as
sym
from
nnvm.testing.utils
import
create_workload
# Helpers
def
_make_fire
(
net
,
squeeze_channels
,
expand1x1_channels
,
expand3x3_channels
):
net
=
_make_fire_conv
(
net
,
squeeze_channels
,
1
,
0
)
left
=
_make_fire_conv
(
net
,
expand1x1_channels
,
1
,
0
)
right
=
_make_fire_conv
(
net
,
expand3x3_channels
,
3
,
1
)
# NOTE : Assume NCHW layout here
net
=
sym
.
concatenate
(
left
,
right
,
axis
=
1
)
return
net
def
_make_fire_conv
(
net
,
channels
,
kernel_size
,
padding
=
0
):
net
=
sym
.
conv2d
(
net
,
channels
=
channels
,
kernel_size
=
(
kernel_size
,
kernel_size
),
padding
=
(
padding
,
padding
))
net
=
sym
.
relu
(
net
)
return
net
# Net
def
get_symbol
(
num_classes
,
version
,
**
kwargs
):
"""Get symbol of SqueezeNet
Parameters
----------
num_classes: int
The number of classification results
version : str, optional
"1.0" or "1.1" of SqueezeNet
"""
assert
version
==
'1.1'
,
(
"Unsupported SqueezeNet version {version}:"
"1.1 expected"
.
format
(
version
=
version
))
net
=
sym
.
Variable
(
"data"
)
net
=
sym
.
conv2d
(
net
,
channels
=
64
,
kernel_size
=
(
3
,
3
),
strides
=
(
2
,
2
))
net
=
sym
.
relu
(
net
)
net
=
sym
.
max_pool2d
(
net
,
pool_size
=
(
3
,
3
),
strides
=
(
2
,
2
))
net
=
_make_fire
(
net
,
16
,
64
,
64
)
net
=
_make_fire
(
net
,
16
,
64
,
64
)
net
=
sym
.
max_pool2d
(
net
,
pool_size
=
(
3
,
3
),
strides
=
(
2
,
2
))
net
=
_make_fire
(
net
,
32
,
128
,
128
)
net
=
_make_fire
(
net
,
32
,
128
,
128
)
net
=
sym
.
max_pool2d
(
net
,
pool_size
=
(
3
,
3
),
strides
=
(
2
,
2
))
net
=
_make_fire
(
net
,
48
,
192
,
192
)
net
=
_make_fire
(
net
,
48
,
192
,
192
)
net
=
_make_fire
(
net
,
64
,
256
,
256
)
net
=
_make_fire
(
net
,
64
,
256
,
256
)
net
=
sym
.
dropout
(
net
,
rate
=
0.5
)
net
=
sym
.
conv2d
(
net
,
channels
=
num_classes
,
kernel_size
=
(
1
,
1
))
net
=
sym
.
relu
(
net
)
net
=
sym
.
global_avg_pool2d
(
net
)
return
sym
.
softmax
(
net
,
axis
=
1
)
def
get_workload
(
batch_size
=
1
,
num_classes
=
1000
,
version
=
'1.0'
,
image_shape
=
(
3
,
224
,
224
),
dtype
=
"float32"
,
**
kwargs
):
"""Get benchmark workload for SqueezeNet
Parameters
----------
batch_size : int
The batch size used in the model
num_classes : int, optional
Number of classes
version : str, optional
"1.0" or "1.1" of SqueezeNet
image_shape : tuple, optional
The input image shape
dtype : str, optional
The data type
kwargs : dict
Extra arguments
Returns
-------
net : nnvm.Symbol
The computational graph
params : dict of str to NDArray
The parameters.
"""
net
=
get_symbol
(
num_classes
=
num_classes
,
version
=
version
,
**
kwargs
)
return
create_workload
(
net
,
batch_size
,
image_shape
,
dtype
)
nnvm/tests/python/frontend/caffe2/test_forward.py
0 → 100644
View file @
ade98e14
import
numpy
as
np
import
nnvm
import
tvm
from
tvm.contrib
import
graph_runtime
from
nnvm.testing.config
import
ctx_list
from
model_zoo
import
c2_squeezenet
,
c2_resnet50
,
c2_vgg19
from
caffe2.python
import
workspace
def
get_tvm_output
(
model
,
input_data
,
target
,
ctx
,
output_shape
,
output_dtype
=
'float32'
):
""" Generic function to execute and get tvm output"""
sym
,
params
=
nnvm
.
frontend
.
from_caffe2
(
model
.
init_net
,
model
.
predict_net
)
# supporting multiple inputs in caffe2 in a bit tricky,
# because the input names can appear at the beginning or end of model.predict_net.external_input
assert
isinstance
(
input_data
,
np
.
ndarray
)
# here we use the first input blob to the first op to get the input name
input_names
=
model
.
predict_net
.
op
[
0
]
.
input
[
0
]
shape_dict
=
{
input_names
:
input_data
.
shape
}
dtype_dict
=
{
input_names
:
input_data
.
dtype
}
graph
,
lib
,
params
=
nnvm
.
compiler
.
build
(
sym
,
target
,
shape
=
shape_dict
,
dtype
=
dtype_dict
,
params
=
params
)
ctx
=
tvm
.
cpu
(
0
)
m
=
graph_runtime
.
create
(
graph
,
lib
,
ctx
)
# set inputs
m
.
set_input
(
input_names
,
tvm
.
nd
.
array
(
input_data
.
astype
(
input_data
.
dtype
)))
m
.
set_input
(
**
params
)
# execute
m
.
run
()
# get outputs
if
isinstance
(
output_shape
,
list
)
and
isinstance
(
output_dtype
,
list
):
tvm_output_list
=
[]
for
i
,
s
in
enumerate
(
output_shape
):
tvm_output
=
m
.
get_output
(
i
,
tvm
.
nd
.
empty
((
s
),
output_dtype
[
i
]))
tvm_output_list
.
append
(
tvm_output
.
asnumpy
())
return
tvm_output_list
else
:
tvm_output
=
m
.
get_output
(
0
,
tvm
.
nd
.
empty
((
output_shape
),
output_dtype
))
return
tvm_output
.
asnumpy
()
def
get_caffe2_output
(
model
,
x
,
dtype
=
'float32'
):
workspace
.
RunNetOnce
(
model
.
init_net
)
input_blob
=
model
.
predict_net
.
op
[
0
]
.
input
[
0
]
workspace
.
FeedBlob
(
input_blob
,
x
.
astype
(
dtype
))
workspace
.
RunNetOnce
(
model
.
predict_net
)
output_blob
=
model
.
predict_net
.
external_output
[
0
]
c2_output
=
workspace
.
FetchBlob
(
output_blob
)
return
c2_output
def
verify_caffe2_forward_impl
(
model
,
data_shape
,
out_shape
):
dtype
=
'float32'
data
=
np
.
random
.
uniform
(
size
=
data_shape
)
.
astype
(
dtype
)
c2_out
=
get_caffe2_output
(
model
,
data
,
dtype
)
for
target
,
ctx
in
ctx_list
():
tvm_out
=
get_tvm_output
(
model
,
data
,
target
,
ctx
,
out_shape
,
dtype
)
tvm
.
testing
.
assert_allclose
(
c2_out
,
tvm_out
,
rtol
=
1e-5
,
atol
=
1e-5
)
def
verify_squeezenet1_1
():
verify_caffe2_forward_impl
(
c2_squeezenet
,
(
1
,
3
,
224
,
224
),
(
1
,
1000
,
1
,
1
))
def
verify_resnet50
():
verify_caffe2_forward_impl
(
c2_resnet50
,
(
1
,
3
,
224
,
224
),
(
1
,
1000
))
def
verify_vgg19
():
verify_caffe2_forward_impl
(
c2_vgg19
,
(
1
,
3
,
224
,
224
),
(
1
,
1000
))
if
__name__
==
'__main__'
:
verify_squeezenet1_1
()
verify_resnet50
()
verify_vgg19
()
nnvm/tests/python/frontend/caffe2/test_graph.py
0 → 100755
View file @
ade98e14
"""Test graph equality of caffe2 models."""
import
nnvm
from
nnvm.compiler
import
graph_util
,
graph_attr
from
model_zoo
import
c2_squeezenet
,
squeezenet
def
compare_graph
(
init
,
predict
,
nnvm_sym
,
ishape
):
caffe2_sym
,
params
=
nnvm
.
frontend
.
from_caffe2
(
init
,
predict
)
g1
=
nnvm
.
graph
.
create
(
caffe2_sym
)
g2
=
nnvm
.
graph
.
create
(
nnvm_sym
)
input_name
=
predict
.
external_input
[
0
]
ishapes
=
{
input_name
:
ishape
}
graph_attr
.
set_shape_inputs
(
g1
,
ishapes
)
graph_attr
.
set_shape_inputs
(
g2
,
ishapes
)
g1
=
g1
.
apply
(
"InferShape"
)
.
apply
(
"SimplifyInference"
)
g2
=
g2
.
apply
(
"InferShape"
)
.
apply
(
"SimplifyInference"
)
graph_util
.
check_graph_equal
(
g1
,
g2
)
def
test_squeeze_net
():
symbol
,
params
=
squeezenet
.
get_workload
(
version
=
'1.1'
)
compare_graph
(
c2_squeezenet
.
init_net
,
c2_squeezenet
.
predict_net
,
symbol
,
ishape
=
(
1
,
3
,
224
,
224
))
if
__name__
==
'__main__'
:
test_squeeze_net
()
Write
Preview
Markdown
is supported
0%
Try again
or
attach a new file
Attach a file
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Cancel
Please
register
or
sign in
to comment