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# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
# Modified from flops-counter.pytorch by Vladislav Sovrasov
# original repo: https://github.com/sovrasov/flops-counter.pytorch
# MIT License
# Copyright (c) 2018 Vladislav Sovrasov
# Permission is hereby granted, free of charge, to any person obtaining a copy
# of this software and associated documentation files (the "Software"), to deal
# in the Software without restriction, including without limitation the rights
# to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
# copies of the Software, and to permit persons to whom the Software is
# furnished to do so, subject to the following conditions:
# The above copyright notice and this permission notice shall be included in
# all copies or substantial portions of the Software.
# THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
# IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
# FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
# AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
# LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
# OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
# SOFTWARE.
import sys
import warnings
from functools import partial
from typing import Any, Callable, Dict, Optional, TextIO, Tuple
import numpy as np
import torch
import torch.nn as nn
from mmcv.cnn.bricks import (Conv2d, Conv3d, ConvTranspose2d, Linear,
MaxPool2d, MaxPool3d)
def get_model_complexity_info(model: nn.Module,
input_shape: tuple,
print_per_layer_stat: bool = True,
as_strings: bool = True,
input_constructor: Optional[Callable] = None,
flush: bool = False,
ost: TextIO = sys.stdout) -> tuple:
"""Get complexity information of a model.
This method can calculate FLOPs and parameter counts of a model with
corresponding input shape. It can also print complexity information for
each layer in a model.
Supported layers are listed as below:
- Convolutions: ``nn.Conv1d``, ``nn.Conv2d``, ``nn.Conv3d``.
- Activations: ``nn.ReLU``, ``nn.PReLU``, ``nn.ELU``,
``nn.LeakyReLU``, ``nn.ReLU6``.
- Poolings: ``nn.MaxPool1d``, ``nn.MaxPool2d``, ``nn.MaxPool3d``,
``nn.AvgPool1d``, ``nn.AvgPool2d``, ``nn.AvgPool3d``,
``nn.AdaptiveMaxPool1d``, ``nn.AdaptiveMaxPool2d``,
``nn.AdaptiveMaxPool3d``, ``nn.AdaptiveAvgPool1d``,
``nn.AdaptiveAvgPool2d``, ``nn.AdaptiveAvgPool3d``.
- BatchNorms: ``nn.BatchNorm1d``, ``nn.BatchNorm2d``,
``nn.BatchNorm3d``, ``nn.GroupNorm``, ``nn.InstanceNorm1d``,
``InstanceNorm2d``, ``InstanceNorm3d``, ``nn.LayerNorm``.
- Linear: ``nn.Linear``.
- Deconvolution: ``nn.ConvTranspose2d``.
- Upsample: ``nn.Upsample``.
Args:
model (nn.Module): The model for complexity calculation.
input_shape (tuple): Input shape used for calculation.
print_per_layer_stat (bool): Whether to print complexity information
for each layer in a model. Default: True.
as_strings (bool): Output FLOPs and params counts in a string form.
Default: True.
input_constructor (None | callable): If specified, it takes a callable
method that generates input. otherwise, it will generate a random
tensor with input shape to calculate FLOPs. Default: None.
flush (bool): same as that in :func:`print`. Default: False.
ost (stream): same as ``file`` param in :func:`print`.
Default: sys.stdout.
Returns:
tuple[float | str]: If ``as_strings`` is set to True, it will return
FLOPs and parameter counts in a string format. otherwise, it will
return those in a float number format.
"""
assert type(input_shape) is tuple
assert len(input_shape) >= 1
assert isinstance(model, nn.Module)
flops_model = add_flops_counting_methods(model)
flops_model.eval()
flops_model.start_flops_count()
if input_constructor:
input = input_constructor(input_shape)
_ = flops_model(**input)
else:
try:
batch = torch.ones(()).new_empty(
(1, *input_shape),
dtype=next(flops_model.parameters()).dtype,
device=next(flops_model.parameters()).device)
except StopIteration:
# Avoid StopIteration for models which have no parameters,
# like `nn.Relu()`, `nn.AvgPool2d`, etc.
batch = torch.ones(()).new_empty((1, *input_shape))
_ = flops_model(batch)
flops_count, params_count = flops_model.compute_average_flops_cost()
if print_per_layer_stat:
print_model_with_flops(
flops_model, flops_count, params_count, ost=ost, flush=flush)
flops_model.stop_flops_count()
if as_strings:
return flops_to_string(flops_count), params_to_string(params_count)
return flops_count, params_count
def flops_to_string(flops: float,
units: Optional[str] = 'GFLOPs',
precision: int = 2) -> str:
"""Convert FLOPs number into a string.
Note that Here we take a multiply-add counts as one FLOP.
Args:
flops (float): FLOPs number to be converted.
units (str | None): Converted FLOPs units. Options are None, 'GFLOPs',
'MFLOPs', 'KFLOPs', 'FLOPs'. If set to None, it will automatically
choose the most suitable unit for FLOPs. Default: 'GFLOPs'.
precision (int): Digit number after the decimal point. Default: 2.
Returns:
str: The converted FLOPs number with units.
Examples:
>>> flops_to_string(1e9)
'1.0 GFLOPs'
>>> flops_to_string(2e5, 'MFLOPs')
'0.2 MFLOPs'
>>> flops_to_string(3e-9, None)
'3e-09 FLOPs'
"""
if units is None:
if flops // 10**9 > 0:
return str(round(flops / 10.**9, precision)) + ' GFLOPs'
elif flops // 10**6 > 0:
return str(round(flops / 10.**6, precision)) + ' MFLOPs'
elif flops // 10**3 > 0:
return str(round(flops / 10.**3, precision)) + ' KFLOPs'
else:
return str(flops) + ' FLOPs'
else:
if units == 'GFLOPs':
return str(round(flops / 10.**9, precision)) + ' ' + units
elif units == 'MFLOPs':
return str(round(flops / 10.**6, precision)) + ' ' + units
elif units == 'KFLOPs':
return str(round(flops / 10.**3, precision)) + ' ' + units
else:
return str(flops) + ' FLOPs'
def params_to_string(num_params: float,
units: Optional[str] = None,
precision: int = 2) -> str:
"""Convert parameter number into a string.
Args:
num_params (float): Parameter number to be converted.
units (str | None): Converted FLOPs units. Options are None, 'M',
'K' and ''. If set to None, it will automatically choose the most
suitable unit for Parameter number. Default: None.
precision (int): Digit number after the decimal point. Default: 2.
Returns:
str: The converted parameter number with units.
Examples:
>>> params_to_string(1e9)
'1000.0 M'
>>> params_to_string(2e5)
'200.0 k'
>>> params_to_string(3e-9)
'3e-09'
"""
if units is None:
if num_params // 10**6 > 0:
return str(round(num_params / 10**6, precision)) + ' M'
elif num_params // 10**3:
return str(round(num_params / 10**3, precision)) + ' k'
else:
return str(num_params)
else:
if units == 'M':
return str(round(num_params / 10.**6, precision)) + ' ' + units
elif units == 'K':
return str(round(num_params / 10.**3, precision)) + ' ' + units
else:
return str(num_params)
def print_model_with_flops(model: nn.Module,
total_flops: float,
total_params: float,
units: Optional[str] = 'GFLOPs',
precision: int = 3,
ost: TextIO = sys.stdout,
flush: bool = False) -> None:
"""Print a model with FLOPs for each layer.
Args:
model (nn.Module): The model to be printed.
total_flops (float): Total FLOPs of the model.
total_params (float): Total parameter counts of the model.
units (str | None): Converted FLOPs units. Default: 'GFLOPs'.
precision (int): Digit number after the decimal point. Default: 3.
ost (stream): same as `file` param in :func:`print`.
Default: sys.stdout.
flush (bool): same as that in :func:`print`. Default: False.
Example:
>>> class ExampleModel(nn.Module):
>>> def __init__(self):
>>> super().__init__()
>>> self.conv1 = nn.Conv2d(3, 8, 3)
>>> self.conv2 = nn.Conv2d(8, 256, 3)
>>> self.conv3 = nn.Conv2d(256, 8, 3)
>>> self.avg_pool = nn.AdaptiveAvgPool2d((1, 1))
>>> self.flatten = nn.Flatten()
>>> self.fc = nn.Linear(8, 1)
>>> def forward(self, x):
>>> x = self.conv1(x)
>>> x = self.conv2(x)
>>> x = self.conv3(x)
>>> x = self.avg_pool(x)
>>> x = self.flatten(x)
>>> x = self.fc(x)
>>> return x
>>> model = ExampleModel()
>>> x = (3, 16, 16)
to print the complexity information state for each layer, you can use
>>> get_model_complexity_info(model, x)
or directly use
>>> print_model_with_flops(model, 4579784.0, 37361)
ExampleModel(
0.037 M, 100.000% Params, 0.005 GFLOPs, 100.000% FLOPs,
(conv1): Conv2d(0.0 M, 0.600% Params, 0.0 GFLOPs, 0.959% FLOPs, 3, 8, kernel_size=(3, 3), stride=(1, 1)) # noqa: E501
(conv2): Conv2d(0.019 M, 50.020% Params, 0.003 GFLOPs, 58.760% FLOPs, 8, 256, kernel_size=(3, 3), stride=(1, 1))
(conv3): Conv2d(0.018 M, 49.356% Params, 0.002 GFLOPs, 40.264% FLOPs, 256, 8, kernel_size=(3, 3), stride=(1, 1))
(avg_pool): AdaptiveAvgPool2d(0.0 M, 0.000% Params, 0.0 GFLOPs, 0.017% FLOPs, output_size=(1, 1))
(flatten): Flatten(0.0 M, 0.000% Params, 0.0 GFLOPs, 0.000% FLOPs, )
(fc): Linear(0.0 M, 0.024% Params, 0.0 GFLOPs, 0.000% FLOPs, in_features=8, out_features=1, bias=True)
)
"""
def accumulate_params(self):
if is_supported_instance(self):
return self.__params__
else:
sum = 0
for m in self.children():
sum += m.accumulate_params()
return sum
def accumulate_flops(self):
if is_supported_instance(self):
return self.__flops__ / model.__batch_counter__
else:
sum = 0
for m in self.children():
sum += m.accumulate_flops()
return sum
def flops_repr(self):
accumulated_num_params = self.accumulate_params()
accumulated_flops_cost = self.accumulate_flops()
return ', '.join([
params_to_string(
accumulated_num_params, units='M', precision=precision),
f'{accumulated_num_params / total_params:.3%} Params',
flops_to_string(
accumulated_flops_cost, units=units, precision=precision),
f'{accumulated_flops_cost / total_flops:.3%} FLOPs',
self.original_extra_repr()
])
def add_extra_repr(m):
m.accumulate_flops = accumulate_flops.__get__(m)
m.accumulate_params = accumulate_params.__get__(m)
flops_extra_repr = flops_repr.__get__(m)
if m.extra_repr != flops_extra_repr:
m.original_extra_repr = m.extra_repr
m.extra_repr = flops_extra_repr
assert m.extra_repr != m.original_extra_repr
def del_extra_repr(m):
if hasattr(m, 'original_extra_repr'):
m.extra_repr = m.original_extra_repr
del m.original_extra_repr
if hasattr(m, 'accumulate_flops'):
del m.accumulate_flops
model.apply(add_extra_repr)
print(model, file=ost, flush=flush)
model.apply(del_extra_repr)
def get_model_parameters_number(model: nn.Module) -> float:
"""Calculate parameter number of a model.
Args:
model (nn.module): The model for parameter number calculation.
Returns:
float: Parameter number of the model.
"""
num_params = sum(p.numel() for p in model.parameters() if p.requires_grad)
return num_params
def add_flops_counting_methods(net_main_module: nn.Module) -> nn.Module:
# adding additional methods to the existing module object,
# this is done this way so that each function has access to self object
net_main_module.start_flops_count = start_flops_count.__get__( # type: ignore # noqa E501
net_main_module)
net_main_module.stop_flops_count = stop_flops_count.__get__( # type: ignore # noqa E501
net_main_module)
net_main_module.reset_flops_count = reset_flops_count.__get__( # type: ignore # noqa E501
net_main_module)
net_main_module.compute_average_flops_cost = compute_average_flops_cost.__get__( # type: ignore # noqa E501
net_main_module)
net_main_module.reset_flops_count()
return net_main_module
def compute_average_flops_cost(self) -> Tuple[float, float]:
"""Compute average FLOPs cost.
A method to compute average FLOPs cost, which will be available after
`add_flops_counting_methods()` is called on a desired net object.
Returns:
float: Current mean flops consumption per image.
"""
batches_count = self.__batch_counter__
flops_sum = 0
for module in self.modules():
if is_supported_instance(module):
flops_sum += module.__flops__
params_sum = get_model_parameters_number(self)
return flops_sum / batches_count, params_sum
def start_flops_count(self) -> None:
"""Activate the computation of mean flops consumption per image.
A method to activate the computation of mean flops consumption per image.
which will be available after ``add_flops_counting_methods()`` is called on
a desired net object. It should be called before running the network.
"""
add_batch_counter_hook_function(self)
def add_flops_counter_hook_function(module: nn.Module) -> None:
if is_supported_instance(module):
if hasattr(module, '__flops_handle__'):
return
else:
handle = module.register_forward_hook(
get_modules_mapping()[type(module)])
module.__flops_handle__ = handle
self.apply(partial(add_flops_counter_hook_function))
def stop_flops_count(self) -> None:
"""Stop computing the mean flops consumption per image.
A method to stop computing the mean flops consumption per image, which will
be available after ``add_flops_counting_methods()`` is called on a desired
net object. It can be called to pause the computation whenever.
"""
remove_batch_counter_hook_function(self)
self.apply(remove_flops_counter_hook_function)
def reset_flops_count(self) -> None:
"""Reset statistics computed so far.
A method to Reset computed statistics, which will be available after
`add_flops_counting_methods()` is called on a desired net object.
"""
add_batch_counter_variables_or_reset(self)
self.apply(add_flops_counter_variable_or_reset)
# ---- Internal functions
def empty_flops_counter_hook(module: nn.Module, input: tuple,
output: Any) -> None:
module.__flops__ += 0
def upsample_flops_counter_hook(module: nn.Module, input: tuple,
output: torch.Tensor) -> None:
output_size = output[0]
batch_size = output_size.shape[0]
output_elements_count = batch_size
for val in output_size.shape[1:]:
output_elements_count *= val
module.__flops__ += int(output_elements_count)
def relu_flops_counter_hook(module: nn.Module, input: tuple,
output: torch.Tensor) -> None:
active_elements_count = output.numel()
module.__flops__ += int(active_elements_count)
def linear_flops_counter_hook(module: nn.Module, input: tuple,
output: torch.Tensor) -> None:
output_last_dim = output.shape[
-1] # pytorch checks dimensions, so here we don't care much
module.__flops__ += int(np.prod(input[0].shape) * output_last_dim)
def pool_flops_counter_hook(module: nn.Module, input: tuple,
output: torch.Tensor) -> None:
module.__flops__ += int(np.prod(input[0].shape))
def norm_flops_counter_hook(module: nn.Module, input: tuple,
output: torch.Tensor) -> None:
batch_flops = np.prod(input[0].shape)
if (getattr(module, 'affine', False)
or getattr(module, 'elementwise_affine', False)):
batch_flops *= 2
module.__flops__ += int(batch_flops)
def deconv_flops_counter_hook(conv_module: nn.Module, input: tuple,
output: torch.Tensor) -> None:
# Can have multiple inputs, getting the first one
batch_size = input[0].shape[0]
input_height, input_width = input[0].shape[2:]
kernel_height, kernel_width = conv_module.kernel_size
in_channels = conv_module.in_channels
out_channels = conv_module.out_channels
groups = conv_module.groups
filters_per_channel = out_channels // groups
conv_per_position_flops = (
kernel_height * kernel_width * in_channels * filters_per_channel)
active_elements_count = batch_size * input_height * input_width
overall_conv_flops = conv_per_position_flops * active_elements_count
bias_flops = 0
if conv_module.bias is not None:
output_height, output_width = output.shape[2:]
bias_flops = out_channels * batch_size * output_height * output_width
overall_flops = overall_conv_flops + bias_flops
conv_module.__flops__ += int(overall_flops)
def conv_flops_counter_hook(conv_module: nn.Module, input: tuple,
output: torch.Tensor) -> None:
# Can have multiple inputs, getting the first one
batch_size = input[0].shape[0]
output_dims = list(output.shape[2:])
kernel_dims = list(conv_module.kernel_size)
in_channels = conv_module.in_channels
out_channels = conv_module.out_channels
groups = conv_module.groups
filters_per_channel = out_channels // groups
conv_per_position_flops = int(
np.prod(kernel_dims)) * in_channels * filters_per_channel
active_elements_count = batch_size * int(np.prod(output_dims))
overall_conv_flops = conv_per_position_flops * active_elements_count
bias_flops = 0
if conv_module.bias is not None:
bias_flops = out_channels * active_elements_count
overall_flops = overall_conv_flops + bias_flops
conv_module.__flops__ += int(overall_flops)
def batch_counter_hook(module: nn.Module, input: tuple, output: Any) -> None:
batch_size = 1
if len(input) > 0:
# Can have multiple inputs, getting the first one
batch_size = len(input[0])
else:
warnings.warn('No positional inputs found for a module, '
'assuming batch size is 1.')
module.__batch_counter__ += batch_size
def add_batch_counter_variables_or_reset(module: nn.Module) -> None:
module.__batch_counter__ = 0
def add_batch_counter_hook_function(module: nn.Module) -> None:
if hasattr(module, '__batch_counter_handle__'):
return
handle = module.register_forward_hook(batch_counter_hook)
module.__batch_counter_handle__ = handle
def remove_batch_counter_hook_function(module: nn.Module) -> None:
if hasattr(module, '__batch_counter_handle__'):
module.__batch_counter_handle__.remove()
del module.__batch_counter_handle__
def add_flops_counter_variable_or_reset(module: nn.Module) -> None:
if is_supported_instance(module):
if hasattr(module, '__flops__') or hasattr(module, '__params__'):
warnings.warn('variables __flops__ or __params__ are already '
'defined for the module' + type(module).__name__ +
' ptflops can affect your code!')
module.__flops__ = 0
module.__params__ = get_model_parameters_number(module)
def is_supported_instance(module: nn.Module) -> bool:
if type(module) in get_modules_mapping():
return True
return False
def remove_flops_counter_hook_function(module: nn.Module) -> None:
if is_supported_instance(module):
if hasattr(module, '__flops_handle__'):
module.__flops_handle__.remove()
del module.__flops_handle__
def get_modules_mapping() -> Dict:
return {
# convolutions
nn.Conv1d: conv_flops_counter_hook,
nn.Conv2d: conv_flops_counter_hook,
Conv2d: conv_flops_counter_hook,
nn.Conv3d: conv_flops_counter_hook,
Conv3d: conv_flops_counter_hook,
# activations
nn.ReLU: relu_flops_counter_hook,
nn.PReLU: relu_flops_counter_hook,
nn.ELU: relu_flops_counter_hook,
nn.LeakyReLU: relu_flops_counter_hook,
nn.ReLU6: relu_flops_counter_hook,
# poolings
nn.MaxPool1d: pool_flops_counter_hook,
nn.AvgPool1d: pool_flops_counter_hook,
nn.AvgPool2d: pool_flops_counter_hook,
nn.MaxPool2d: pool_flops_counter_hook,
MaxPool2d: pool_flops_counter_hook,
nn.MaxPool3d: pool_flops_counter_hook,
MaxPool3d: pool_flops_counter_hook,
nn.AvgPool3d: pool_flops_counter_hook,
nn.AdaptiveMaxPool1d: pool_flops_counter_hook,
nn.AdaptiveAvgPool1d: pool_flops_counter_hook,
nn.AdaptiveMaxPool2d: pool_flops_counter_hook,
nn.AdaptiveAvgPool2d: pool_flops_counter_hook,
nn.AdaptiveMaxPool3d: pool_flops_counter_hook,
nn.AdaptiveAvgPool3d: pool_flops_counter_hook,
# normalizations
nn.BatchNorm1d: norm_flops_counter_hook,
nn.BatchNorm2d: norm_flops_counter_hook,
nn.BatchNorm3d: norm_flops_counter_hook,
nn.GroupNorm: norm_flops_counter_hook,
nn.InstanceNorm1d: norm_flops_counter_hook,
nn.InstanceNorm2d: norm_flops_counter_hook,
nn.InstanceNorm3d: norm_flops_counter_hook,
nn.LayerNorm: norm_flops_counter_hook,
# FC
nn.Linear: linear_flops_counter_hook,
Linear: linear_flops_counter_hook,
# Upscale
nn.Upsample: upsample_flops_counter_hook,
# Deconvolution
nn.ConvTranspose2d: deconv_flops_counter_hook,
ConvTranspose2d: deconv_flops_counter_hook,
}