conv_bn.py 2.1 KB
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# MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
#
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# Copyright (c) 2014-2021 Megvii Inc. All rights reserved.
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#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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from ...tensor import Parameter
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from ..qat import conv_bn as QAT
from .conv import Conv2d


class _ConvBnActivation2d(Conv2d):
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    r"""
    Applies a 2D convolution over a quantized input tensor, used for inference only.
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    The parameter is same with :class: `~.module.Conv2d`.
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    """

    @classmethod
    def from_qat_module(cls, qat_module: QAT._ConvBnActivation2d):
        r"""
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        Return a :class:`~.QuantizedModule` instance converted from a
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        :class:`~.QATModule` instance.
        """
        output_dtype = qat_module.get_activation_dtype()
        qconv = cls(
            qat_module.conv.in_channels,
            qat_module.conv.out_channels,
            qat_module.conv.kernel_size,
            qat_module.conv.stride,
            qat_module.conv.padding,
            qat_module.conv.dilation,
            qat_module.conv.groups,
            dtype=output_dtype,
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            name=qat_module.name,
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        )
        w_fold, b_fold = qat_module.fold_weight_bias(
            qat_module.bn.running_mean, qat_module.bn.running_var
        )
        weight = w_fold.astype(qat_module.get_weight_dtype())
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        qconv.weight = Parameter(weight.numpy(), name=qat_module.conv.weight.name)
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        qconv.bias = Parameter(b_fold.numpy())
        if qat_module.conv.bias is not None:
            qconv.bias.name = qat_module.conv.bias.name
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        return qconv


class ConvBn2d(_ConvBnActivation2d):
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    r"""Quantized version of :class:`~.qat.ConvBn2d`."""
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    def forward(self, inp):
        return self.calc_conv_quantized(inp, nonlinear_mode="IDENTITY")


class ConvBnRelu2d(_ConvBnActivation2d):
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    r"""Quantized version of :class:`~.qat.ConvBnRelu2d`."""
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    def forward(self, inp):
        return self.calc_conv_quantized(inp, nonlinear_mode="RELU")