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"""
Original author: lukemelas (github username)
Github repo: https://github.com/lukemelas/EfficientNet-PyTorch
With adjustments and added comments by workingcoder (github username).
License: Apache License 2.0
Reimplemented: Min Seok Lee and Wooseok Shin
"""

import collections
import re
from functools import partial

import math
import torch
from torch import nn
from torch.nn import functional as F

# Parameters for the entire model (stem, all blocks, and head)
GlobalParams = collections.namedtuple(
    "GlobalParams",
    [
        "width_coefficient",
        "depth_coefficient",
        "image_size",
        "dropout_rate",
        "num_classes",
        "batch_norm_momentum",
        "batch_norm_epsilon",
        "drop_connect_rate",
        "depth_divisor",
        "min_depth",
        "include_top",
    ],
)

# Parameters for an individual model block
BlockArgs = collections.namedtuple(
    "BlockArgs",
    [
        "num_repeat",
        "kernel_size",
        "stride",
        "expand_ratio",
        "input_filters",
        "output_filters",
        "se_ratio",
        "id_skip",
    ],
)

# Set GlobalParams and BlockArgs's defaults
GlobalParams.__new__.__defaults__ = (None,) * len(GlobalParams._fields)
BlockArgs.__new__.__defaults__ = (None,) * len(BlockArgs._fields)


# An ordinary implementation of Swish function
class Swish(nn.Module):
    def forward(self, x):
        return x * torch.sigmoid(x)


# A memory-efficient implementation of Swish function
class SwishImplementation(torch.autograd.Function):
    @staticmethod
    def forward(ctx, i):
        result = i * torch.sigmoid(i)
        ctx.save_for_backward(i)
        return result

    @staticmethod
    def backward(ctx, grad_output):
        i = ctx.saved_tensors[0]
        sigmoid_i = torch.sigmoid(i)
        return grad_output * (sigmoid_i * (1 + i * (1 - sigmoid_i)))


class MemoryEfficientSwish(nn.Module):
    def forward(self, x):
        return SwishImplementation.apply(x)


def round_filters(filters, global_params):
    """Calculate and round number of filters based on width multiplier.
       Use width_coefficient, depth_divisor and min_depth of global_params.

    Args:
        filters (int): Filters number to be calculated.
        global_params (namedtuple): Global params of the model.

    Returns:
        new_filters: New filters number after calculating.
    """
    multiplier = global_params.width_coefficient
    if not multiplier:
        return filters
    divisor = global_params.depth_divisor
    min_depth = global_params.min_depth
    filters *= multiplier
    min_depth = min_depth or divisor  # pay attention to this line when using min_depth
    # follow the formula transferred from official TensorFlow implementation
    new_filters = max(min_depth, int(filters + divisor / 2) // divisor * divisor)
    if new_filters < 0.9 * filters:  # prevent rounding by more than 10%
        new_filters += divisor
    return int(new_filters)


def round_repeats(repeats, global_params):
    """Calculate module's repeat number of a block based on depth multiplier.
       Use depth_coefficient of global_params.

    Args:
        repeats (int): num_repeat to be calculated.
        global_params (namedtuple): Global params of the model.

    Returns:
        new repeat: New repeat number after calculating.
    """
    multiplier = global_params.depth_coefficient
    if not multiplier:
        return repeats
    # follow the formula transferred from official TensorFlow implementation
    return int(math.ceil(multiplier * repeats))


def drop_connect(inputs, p, training):
    """Drop connect.

    Args:
        input (tensor: BCWH): Input of this structure.
        p (float: 0.0~1.0): Probability of drop connection.
        training (bool): The running mode.

    Returns:
        output: Output after drop connection.
    """
    assert 0 <= p <= 1, "p must be in range of [0,1]"

    if not training:
        return inputs

    batch_size = inputs.shape[0]
    keep_prob = 1 - p

    # generate binary_tensor mask according to probability (p for 0, 1-p for 1)
    random_tensor = keep_prob
    random_tensor += torch.rand(
        [batch_size, 1, 1, 1], dtype=inputs.dtype, device=inputs.device
    )
    binary_tensor = torch.floor(random_tensor)

    output = inputs / keep_prob * binary_tensor
    return output


def get_width_and_height_from_size(x):
    """Obtain height and width from x.

    Args:
        x (int, tuple or list): Data size.

    Returns:
        size: A tuple or list (H,W).
    """
    if isinstance(x, int):
        return x, x
    if isinstance(x, list) or isinstance(x, tuple):
        return x
    else:
        raise TypeError()


def calculate_output_image_size(input_image_size, stride):
    """Calculates the output image size when using Conv2dSamePadding with a stride.
       Necessary for static padding. Thanks to mannatsingh for pointing this out.

    Args:
        input_image_size (int, tuple or list): Size of input image.
        stride (int, tuple or list): Conv2d operation's stride.

    Returns:
        output_image_size: A list [H,W].
    """
    if input_image_size is None:
        return None
    image_height, image_width = get_width_and_height_from_size(input_image_size)
    stride = stride if isinstance(stride, int) else stride[0]
    image_height = int(math.ceil(image_height / stride))
    image_width = int(math.ceil(image_width / stride))
    return [image_height, image_width]


# Note:
# The following 'SamePadding' functions make output size equal ceil(input size/stride).
# Only when stride equals 1, can the output size be the same as input size.
# Don't be confused by their function names ! ! !


def get_same_padding_conv2d(image_size=None):
    """Chooses static padding if you have specified an image size, and dynamic padding otherwise.
       Static padding is necessary for ONNX exporting of models.

    Args:
        image_size (int or tuple): Size of the image.

    Returns:
        Conv2dDynamicSamePadding or Conv2dStaticSamePadding.
    """
    if image_size is None:
        return Conv2dDynamicSamePadding
    else:
        return partial(Conv2dStaticSamePadding, image_size=image_size)


class Conv2dDynamicSamePadding(nn.Conv2d):
    """2D Convolutions like TensorFlow, for a dynamic image size.
    The padding is operated in forward function by calculating dynamically.
    """

    # Tips for 'SAME' mode padding.
    #     Given the following:
    #         i: width or height
    #         s: stride
    #         k: kernel size
    #         d: dilation
    #         p: padding
    #     Output after Conv2d:
    #         o = floor((i+p-((k-1)*d+1))/s+1)
    # If o equals i, i = floor((i+p-((k-1)*d+1))/s+1),
    # => p = (i-1)*s+((k-1)*d+1)-i

    def __init__(
        self,
        in_channels,
        out_channels,
        kernel_size,
        stride=1,
        dilation=1,
        groups=1,
        bias=True,
    ):
        super().__init__(
            in_channels, out_channels, kernel_size, stride, 0, dilation, groups, bias
        )
        self.stride = self.stride if len(self.stride) == 2 else [self.stride[0]] * 2

    def forward(self, x):
        ih, iw = x.size()[-2:]
        kh, kw = self.weight.size()[-2:]
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(
            iw / sw
        )  # change the output size according to stride ! ! !
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            x = F.pad(
                x, [pad_w // 2, pad_w - pad_w // 2, pad_h // 2, pad_h - pad_h // 2]
            )
        return F.conv2d(
            x,
            self.weight,
            self.bias,
            self.stride,
            self.padding,
            self.dilation,
            self.groups,
        )


class Conv2dStaticSamePadding(nn.Conv2d):
    """2D Convolutions like TensorFlow's 'SAME' mode, with the given input image size.
    The padding mudule is calculated in construction function, then used in forward.
    """

    # With the same calculation as Conv2dDynamicSamePadding

    def __init__(
        self,
        in_channels,
        out_channels,
        kernel_size,
        stride=1,
        image_size=None,
        **kwargs
    ):
        super().__init__(in_channels, out_channels, kernel_size, stride, **kwargs)
        self.stride = self.stride if len(self.stride) == 2 else [self.stride[0]] * 2

        # Calculate padding based on image size and save it
        assert image_size is not None
        ih, iw = (image_size, image_size) if isinstance(image_size, int) else image_size
        kh, kw = self.weight.size()[-2:]
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(iw / sw)
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            self.static_padding = nn.ZeroPad2d(
                (pad_w // 2, pad_w - pad_w // 2, pad_h // 2, pad_h - pad_h // 2)
            )
        else:
            self.static_padding = nn.Identity()

    def forward(self, x):
        x = self.static_padding(x)
        x = F.conv2d(
            x,
            self.weight,
            self.bias,
            self.stride,
            self.padding,
            self.dilation,
            self.groups,
        )
        return x


def get_same_padding_maxPool2d(image_size=None):
    """Chooses static padding if you have specified an image size, and dynamic padding otherwise.
       Static padding is necessary for ONNX exporting of models.

    Args:
        image_size (int or tuple): Size of the image.

    Returns:
        MaxPool2dDynamicSamePadding or MaxPool2dStaticSamePadding.
    """
    if image_size is None:
        return MaxPool2dDynamicSamePadding
    else:
        return partial(MaxPool2dStaticSamePadding, image_size=image_size)


class MaxPool2dDynamicSamePadding(nn.MaxPool2d):
    """2D MaxPooling like TensorFlow's 'SAME' mode, with a dynamic image size.
    The padding is operated in forward function by calculating dynamically.
    """

    def __init__(
        self,
        kernel_size,
        stride,
        padding=0,
        dilation=1,
        return_indices=False,
        ceil_mode=False,
    ):
        super().__init__(
            kernel_size, stride, padding, dilation, return_indices, ceil_mode
        )
        self.stride = [self.stride] * 2 if isinstance(self.stride, int) else self.stride
        self.kernel_size = (
            [self.kernel_size] * 2
            if isinstance(self.kernel_size, int)
            else self.kernel_size
        )
        self.dilation = (
            [self.dilation] * 2 if isinstance(self.dilation, int) else self.dilation
        )

    def forward(self, x):
        ih, iw = x.size()[-2:]
        kh, kw = self.kernel_size
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(iw / sw)
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            x = F.pad(
                x, [pad_w // 2, pad_w - pad_w // 2, pad_h // 2, pad_h - pad_h // 2]
            )
        return F.max_pool2d(
            x,
            self.kernel_size,
            self.stride,
            self.padding,
            self.dilation,
            self.ceil_mode,
            self.return_indices,
        )


class MaxPool2dStaticSamePadding(nn.MaxPool2d):
    """2D MaxPooling like TensorFlow's 'SAME' mode, with the given input image size.
    The padding mudule is calculated in construction function, then used in forward.
    """

    def __init__(self, kernel_size, stride, image_size=None, **kwargs):
        super().__init__(kernel_size, stride, **kwargs)
        self.stride = [self.stride] * 2 if isinstance(self.stride, int) else self.stride
        self.kernel_size = (
            [self.kernel_size] * 2
            if isinstance(self.kernel_size, int)
            else self.kernel_size
        )
        self.dilation = (
            [self.dilation] * 2 if isinstance(self.dilation, int) else self.dilation
        )

        # Calculate padding based on image size and save it
        assert image_size is not None
        ih, iw = (image_size, image_size) if isinstance(image_size, int) else image_size
        kh, kw = self.kernel_size
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(iw / sw)
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            self.static_padding = nn.ZeroPad2d(
                (pad_w // 2, pad_w - pad_w // 2, pad_h // 2, pad_h - pad_h // 2)
            )
        else:
            self.static_padding = nn.Identity()

    def forward(self, x):
        x = self.static_padding(x)
        x = F.max_pool2d(
            x,
            self.kernel_size,
            self.stride,
            self.padding,
            self.dilation,
            self.ceil_mode,
            self.return_indices,
        )
        return x


class BlockDecoder(object):
    """Block Decoder for readability,
    straight from the official TensorFlow repository.
    """

    @staticmethod
    def _decode_block_string(block_string):
        """Get a block through a string notation of arguments.

        Args:
            block_string (str): A string notation of arguments.
                                Examples: 'r1_k3_s11_e1_i32_o16_se0.25_noskip'.

        Returns:
            BlockArgs: The namedtuple defined at the top of this file.
        """
        assert isinstance(block_string, str)

        ops = block_string.split("_")
        options = {}
        for op in ops:
            splits = re.split(r"(\d.*)", op)
            if len(splits) >= 2:
                key, value = splits[:2]
                options[key] = value

        # Check stride
        assert ("s" in options and len(options["s"]) == 1) or (
            len(options["s"]) == 2 and options["s"][0] == options["s"][1]
        )

        return BlockArgs(
            num_repeat=int(options["r"]),
            kernel_size=int(options["k"]),
            stride=[int(options["s"][0])],
            expand_ratio=int(options["e"]),
            input_filters=int(options["i"]),
            output_filters=int(options["o"]),
            se_ratio=float(options["se"]) if "se" in options else None,
            id_skip=("noskip" not in block_string),
        )

    @staticmethod
    def _encode_block_string(block):
        """Encode a block to a string.

        Args:
            block (namedtuple): A BlockArgs type argument.

        Returns:
            block_string: A String form of BlockArgs.
        """
        args = [
            "r%d" % block.num_repeat,
            "k%d" % block.kernel_size,
            "s%d%d" % (block.strides[0], block.strides[1]),
            "e%s" % block.expand_ratio,
            "i%d" % block.input_filters,
            "o%d" % block.output_filters,
        ]
        if 0 < block.se_ratio <= 1:
            args.append("se%s" % block.se_ratio)
        if block.id_skip is False:
            args.append("noskip")
        return "_".join(args)

    @staticmethod
    def decode(string_list):
        """Decode a list of string notations to specify blocks inside the network.

        Args:
            string_list (list[str]): A list of strings, each string is a notation of block.

        Returns:
            blocks_args: A list of BlockArgs namedtuples of block args.
        """
        assert isinstance(string_list, list)
        blocks_args = []
        for block_string in string_list:
            blocks_args.append(BlockDecoder._decode_block_string(block_string))
        return blocks_args

    @staticmethod
    def encode(blocks_args):
        """Encode a list of BlockArgs to a list of strings.

        Args:
            blocks_args (list[namedtuples]): A list of BlockArgs namedtuples of block args.

        Returns:
            block_strings: A list of strings, each string is a notation of block.
        """
        block_strings = []
        for block in blocks_args:
            block_strings.append(BlockDecoder._encode_block_string(block))
        return block_strings


def create_block_args(
    width_coefficient=None,
    depth_coefficient=None,
    image_size=None,
    dropout_rate=0.2,
    drop_connect_rate=0.2,
    num_classes=1000,
    include_top=True,
):
    """Create BlockArgs and GlobalParams for efficientnet model.

    Args:
        width_coefficient (float)
        depth_coefficient (float)
        image_size (int)
        dropout_rate (float)
        drop_connect_rate (float)
        num_classes (int)

        Meaning as the name suggests.

    Returns:
        blocks_args, global_params.
    """

    # Blocks args for the whole model(efficientnet-b0 by default)
    # It will be modified in the construction of EfficientNet Class according to model
    blocks_args = [
        "r1_k3_s11_e1_i32_o16_se0.25",
        "r2_k3_s22_e6_i16_o24_se0.25",
        "r2_k5_s22_e6_i24_o40_se0.25",
        "r3_k3_s22_e6_i40_o80_se0.25",
        "r3_k5_s11_e6_i80_o112_se0.25",
        "r4_k5_s22_e6_i112_o192_se0.25",
        "r1_k3_s11_e6_i192_o320_se0.25",
    ]
    blocks_args = BlockDecoder.decode(blocks_args)

    global_params = GlobalParams(
        width_coefficient=width_coefficient,
        depth_coefficient=depth_coefficient,
        image_size=image_size,
        dropout_rate=dropout_rate,
        num_classes=num_classes,
        batch_norm_momentum=0.99,
        batch_norm_epsilon=1e-3,
        drop_connect_rate=drop_connect_rate,
        depth_divisor=8,
        min_depth=None,
        include_top=include_top,
    )

    return blocks_args, global_params