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| import torch.nn as nn | |
| import torch | |
| import numpy as np | |
| ''' | |
| ---- 1) FLOPs: floating point operations | |
| ---- 2) #Activations: the number of elements of all ‘Conv2d’ outputs | |
| ---- 3) #Conv2d: the number of ‘Conv2d’ layers | |
| # -------------------------------------------- | |
| # Kai Zhang (github: https://github.com/cszn) | |
| # 21/July/2020 | |
| # -------------------------------------------- | |
| # Reference | |
| https://github.com/sovrasov/flops-counter.pytorch.git | |
| # If you use this code, please consider the following citation: | |
| @inproceedings{zhang2020aim, % | |
| title={AIM 2020 Challenge on Efficient Super-Resolution: Methods and Results}, | |
| author={Kai Zhang and Martin Danelljan and Yawei Li and Radu Timofte and others}, | |
| booktitle={European Conference on Computer Vision Workshops}, | |
| year={2020} | |
| } | |
| # -------------------------------------------- | |
| ''' | |
| def get_model_flops(model, input_res, print_per_layer_stat=True, | |
| input_constructor=None): | |
| assert type(input_res) is tuple, 'Please provide the size of the input image.' | |
| assert len(input_res) >= 3, 'Input image should have 3 dimensions.' | |
| flops_model = add_flops_counting_methods(model) | |
| flops_model.eval().start_flops_count() | |
| if input_constructor: | |
| input = input_constructor(input_res) | |
| _ = flops_model(**input) | |
| else: | |
| device = list(flops_model.parameters())[-1].device | |
| batch = torch.FloatTensor(1, *input_res).to(device) | |
| _ = flops_model(batch) | |
| if print_per_layer_stat: | |
| print_model_with_flops(flops_model) | |
| flops_count = flops_model.compute_average_flops_cost() | |
| flops_model.stop_flops_count() | |
| return flops_count | |
| def get_model_activation(model, input_res, input_constructor=None): | |
| assert type(input_res) is tuple, 'Please provide the size of the input image.' | |
| assert len(input_res) >= 3, 'Input image should have 3 dimensions.' | |
| activation_model = add_activation_counting_methods(model) | |
| activation_model.eval().start_activation_count() | |
| if input_constructor: | |
| input = input_constructor(input_res) | |
| _ = activation_model(**input) | |
| else: | |
| device = list(activation_model.parameters())[-1].device | |
| batch = torch.FloatTensor(1, *input_res).to(device) | |
| _ = activation_model(batch) | |
| activation_count, num_conv = activation_model.compute_average_activation_cost() | |
| activation_model.stop_activation_count() | |
| return activation_count, num_conv | |
| def get_model_complexity_info(model, input_res, print_per_layer_stat=True, as_strings=True, | |
| input_constructor=None): | |
| assert type(input_res) is tuple | |
| assert len(input_res) >= 3 | |
| flops_model = add_flops_counting_methods(model) | |
| flops_model.eval().start_flops_count() | |
| if input_constructor: | |
| input = input_constructor(input_res) | |
| _ = flops_model(**input) | |
| else: | |
| batch = torch.FloatTensor(1, *input_res) | |
| _ = flops_model(batch) | |
| if print_per_layer_stat: | |
| print_model_with_flops(flops_model) | |
| flops_count = flops_model.compute_average_flops_cost() | |
| params_count = get_model_parameters_number(flops_model) | |
| 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, units='GMac', precision=2): | |
| if units is None: | |
| if flops // 10**9 > 0: | |
| return str(round(flops / 10.**9, precision)) + ' GMac' | |
| elif flops // 10**6 > 0: | |
| return str(round(flops / 10.**6, precision)) + ' MMac' | |
| elif flops // 10**3 > 0: | |
| return str(round(flops / 10.**3, precision)) + ' KMac' | |
| else: | |
| return str(flops) + ' Mac' | |
| else: | |
| if units == 'GMac': | |
| return str(round(flops / 10.**9, precision)) + ' ' + units | |
| elif units == 'MMac': | |
| return str(round(flops / 10.**6, precision)) + ' ' + units | |
| elif units == 'KMac': | |
| return str(round(flops / 10.**3, precision)) + ' ' + units | |
| else: | |
| return str(flops) + ' Mac' | |
| def params_to_string(params_num): | |
| if params_num // 10 ** 6 > 0: | |
| return str(round(params_num / 10 ** 6, 2)) + ' M' | |
| elif params_num // 10 ** 3: | |
| return str(round(params_num / 10 ** 3, 2)) + ' k' | |
| else: | |
| return str(params_num) | |
| def print_model_with_flops(model, units='GMac', precision=3): | |
| total_flops = model.compute_average_flops_cost() | |
| 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_flops_cost = self.accumulate_flops() | |
| return ', '.join([flops_to_string(accumulated_flops_cost, units=units, precision=precision), | |
| '{:.3%} MACs'.format(accumulated_flops_cost / total_flops), | |
| self.original_extra_repr()]) | |
| def add_extra_repr(m): | |
| m.accumulate_flops = accumulate_flops.__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) | |
| model.apply(del_extra_repr) | |
| def get_model_parameters_number(model): | |
| params_num = sum(p.numel() for p in model.parameters() if p.requires_grad) | |
| return params_num | |
| def add_flops_counting_methods(net_main_module): | |
| # adding additional methods to the existing module object, | |
| # this is done this way so that each function has access to self object | |
| # embed() | |
| net_main_module.start_flops_count = start_flops_count.__get__(net_main_module) | |
| net_main_module.stop_flops_count = stop_flops_count.__get__(net_main_module) | |
| net_main_module.reset_flops_count = reset_flops_count.__get__(net_main_module) | |
| net_main_module.compute_average_flops_cost = compute_average_flops_cost.__get__(net_main_module) | |
| net_main_module.reset_flops_count() | |
| return net_main_module | |
| def compute_average_flops_cost(self): | |
| """ | |
| A method that will be available after add_flops_counting_methods() is called | |
| on a desired net object. | |
| Returns current mean flops consumption per image. | |
| """ | |
| flops_sum = 0 | |
| for module in self.modules(): | |
| if is_supported_instance(module): | |
| flops_sum += module.__flops__ | |
| return flops_sum | |
| def start_flops_count(self): | |
| """ | |
| A method that will be available after add_flops_counting_methods() is called | |
| on a desired net object. | |
| Activates the computation of mean flops consumption per image. | |
| Call it before you run the network. | |
| """ | |
| self.apply(add_flops_counter_hook_function) | |
| def stop_flops_count(self): | |
| """ | |
| A method that will be available after add_flops_counting_methods() is called | |
| on a desired net object. | |
| Stops computing the mean flops consumption per image. | |
| Call whenever you want to pause the computation. | |
| """ | |
| self.apply(remove_flops_counter_hook_function) | |
| def reset_flops_count(self): | |
| """ | |
| A method that will be available after add_flops_counting_methods() is called | |
| on a desired net object. | |
| Resets statistics computed so far. | |
| """ | |
| self.apply(add_flops_counter_variable_or_reset) | |
| def add_flops_counter_hook_function(module): | |
| if is_supported_instance(module): | |
| if hasattr(module, '__flops_handle__'): | |
| return | |
| if isinstance(module, (nn.Conv2d, nn.Conv3d, nn.ConvTranspose2d)): | |
| handle = module.register_forward_hook(conv_flops_counter_hook) | |
| elif isinstance(module, (nn.ReLU, nn.PReLU, nn.ELU, nn.LeakyReLU, nn.ReLU6)): | |
| handle = module.register_forward_hook(relu_flops_counter_hook) | |
| elif isinstance(module, nn.Linear): | |
| handle = module.register_forward_hook(linear_flops_counter_hook) | |
| elif isinstance(module, (nn.BatchNorm2d)): | |
| handle = module.register_forward_hook(bn_flops_counter_hook) | |
| else: | |
| handle = module.register_forward_hook(empty_flops_counter_hook) | |
| module.__flops_handle__ = handle | |
| def remove_flops_counter_hook_function(module): | |
| if is_supported_instance(module): | |
| if hasattr(module, '__flops_handle__'): | |
| module.__flops_handle__.remove() | |
| del module.__flops_handle__ | |
| def add_flops_counter_variable_or_reset(module): | |
| if is_supported_instance(module): | |
| module.__flops__ = 0 | |
| # ---- Internal functions | |
| def is_supported_instance(module): | |
| if isinstance(module, | |
| ( | |
| nn.Conv2d, nn.ConvTranspose2d, | |
| nn.BatchNorm2d, | |
| nn.Linear, | |
| nn.ReLU, nn.PReLU, nn.ELU, nn.LeakyReLU, nn.ReLU6, | |
| )): | |
| return True | |
| return False | |
| def conv_flops_counter_hook(conv_module, input, output): | |
| # Can have multiple inputs, getting the first one | |
| # input = input[0] | |
| batch_size = output.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 = np.prod(kernel_dims) * in_channels * filters_per_channel | |
| active_elements_count = batch_size * np.prod(output_dims) | |
| overall_conv_flops = int(conv_per_position_flops) * int(active_elements_count) | |
| # overall_flops = overall_conv_flops | |
| conv_module.__flops__ += int(overall_conv_flops) | |
| # conv_module.__output_dims__ = output_dims | |
| def relu_flops_counter_hook(module, input, output): | |
| active_elements_count = output.numel() | |
| module.__flops__ += int(active_elements_count) | |
| # print(module.__flops__, id(module)) | |
| # print(module) | |
| def linear_flops_counter_hook(module, input, output): | |
| input = input[0] | |
| if len(input.shape) == 1: | |
| batch_size = 1 | |
| module.__flops__ += int(batch_size * input.shape[0] * output.shape[0]) | |
| else: | |
| batch_size = input.shape[0] | |
| module.__flops__ += int(batch_size * input.shape[1] * output.shape[1]) | |
| def bn_flops_counter_hook(module, input, output): | |
| # input = input[0] | |
| # TODO: need to check here | |
| # batch_flops = np.prod(input.shape) | |
| # if module.affine: | |
| # batch_flops *= 2 | |
| # module.__flops__ += int(batch_flops) | |
| batch = output.shape[0] | |
| output_dims = output.shape[2:] | |
| channels = module.num_features | |
| batch_flops = batch * channels * np.prod(output_dims) | |
| if module.affine: | |
| batch_flops *= 2 | |
| module.__flops__ += int(batch_flops) | |
| # ---- Count the number of convolutional layers and the activation | |
| def add_activation_counting_methods(net_main_module): | |
| # adding additional methods to the existing module object, | |
| # this is done this way so that each function has access to self object | |
| # embed() | |
| net_main_module.start_activation_count = start_activation_count.__get__(net_main_module) | |
| net_main_module.stop_activation_count = stop_activation_count.__get__(net_main_module) | |
| net_main_module.reset_activation_count = reset_activation_count.__get__(net_main_module) | |
| net_main_module.compute_average_activation_cost = compute_average_activation_cost.__get__(net_main_module) | |
| net_main_module.reset_activation_count() | |
| return net_main_module | |
| def compute_average_activation_cost(self): | |
| """ | |
| A method that will be available after add_activation_counting_methods() is called | |
| on a desired net object. | |
| Returns current mean activation consumption per image. | |
| """ | |
| activation_sum = 0 | |
| num_conv = 0 | |
| for module in self.modules(): | |
| if is_supported_instance_for_activation(module): | |
| activation_sum += module.__activation__ | |
| num_conv += module.__num_conv__ | |
| return activation_sum, num_conv | |
| def start_activation_count(self): | |
| """ | |
| A method that will be available after add_activation_counting_methods() is called | |
| on a desired net object. | |
| Activates the computation of mean activation consumption per image. | |
| Call it before you run the network. | |
| """ | |
| self.apply(add_activation_counter_hook_function) | |
| def stop_activation_count(self): | |
| """ | |
| A method that will be available after add_activation_counting_methods() is called | |
| on a desired net object. | |
| Stops computing the mean activation consumption per image. | |
| Call whenever you want to pause the computation. | |
| """ | |
| self.apply(remove_activation_counter_hook_function) | |
| def reset_activation_count(self): | |
| """ | |
| A method that will be available after add_activation_counting_methods() is called | |
| on a desired net object. | |
| Resets statistics computed so far. | |
| """ | |
| self.apply(add_activation_counter_variable_or_reset) | |
| def add_activation_counter_hook_function(module): | |
| if is_supported_instance_for_activation(module): | |
| if hasattr(module, '__activation_handle__'): | |
| return | |
| if isinstance(module, (nn.Conv2d, nn.ConvTranspose2d)): | |
| handle = module.register_forward_hook(conv_activation_counter_hook) | |
| module.__activation_handle__ = handle | |
| def remove_activation_counter_hook_function(module): | |
| if is_supported_instance_for_activation(module): | |
| if hasattr(module, '__activation_handle__'): | |
| module.__activation_handle__.remove() | |
| del module.__activation_handle__ | |
| def add_activation_counter_variable_or_reset(module): | |
| if is_supported_instance_for_activation(module): | |
| module.__activation__ = 0 | |
| module.__num_conv__ = 0 | |
| def is_supported_instance_for_activation(module): | |
| if isinstance(module, | |
| ( | |
| nn.Conv2d, nn.ConvTranspose2d, | |
| )): | |
| return True | |
| return False | |
| def conv_activation_counter_hook(module, input, output): | |
| """ | |
| Calculate the activations in the convolutional operation. | |
| Reference: Ilija Radosavovic, Raj Prateek Kosaraju, Ross Girshick, Kaiming He, Piotr Dollár, Designing Network Design Spaces. | |
| :param module: | |
| :param input: | |
| :param output: | |
| :return: | |
| """ | |
| module.__activation__ += output.numel() | |
| module.__num_conv__ += 1 | |
| def empty_flops_counter_hook(module, input, output): | |
| module.__flops__ += 0 | |
| def upsample_flops_counter_hook(module, input, output): | |
| 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 pool_flops_counter_hook(module, input, output): | |
| input = input[0] | |
| module.__flops__ += int(np.prod(input.shape)) | |
| def dconv_flops_counter_hook(dconv_module, input, output): | |
| input = input[0] | |
| batch_size = input.shape[0] | |
| output_dims = list(output.shape[2:]) | |
| m_channels, in_channels, kernel_dim1, _, = dconv_module.weight.shape | |
| out_channels, _, kernel_dim2, _, = dconv_module.projection.shape | |
| # groups = dconv_module.groups | |
| # filters_per_channel = out_channels // groups | |
| conv_per_position_flops1 = kernel_dim1 ** 2 * in_channels * m_channels | |
| conv_per_position_flops2 = kernel_dim2 ** 2 * out_channels * m_channels | |
| active_elements_count = batch_size * np.prod(output_dims) | |
| overall_conv_flops = (conv_per_position_flops1 + conv_per_position_flops2) * active_elements_count | |
| overall_flops = overall_conv_flops | |
| dconv_module.__flops__ += int(overall_flops) | |
| # dconv_module.__output_dims__ = output_dims | |