170 lines
5.0 KiB
Python
170 lines
5.0 KiB
Python
# Licensed to the Apache Software Foundation (ASF) under one
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# or more contributor license agreements. See the NOTICE file
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# distributed with this work for additional information
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# regarding copyright ownership. The ASF licenses this file
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# to you under the Apache License, Version 2.0 (the
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# "License"); you may not use this file except in compliance
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# with the License. You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing,
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# software distributed under the License is distributed on an
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# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
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# KIND, either express or implied. See the License for the
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# specific language governing permissions and limitations
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# under the License.
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# pylint: disable=invalid-name, unused-variable, too-many-locals
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# pylint: disable=unused-argument, redefined-builtin, no-else-return
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"""Conv3D operators"""
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from tvm import te
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from ..utils import get_const_tuple
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from .conv2d import conv
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from .winograd_util import winograd_transform_matrices
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def conv3d_ncdhw(Input, Filter, stride, padding, dilation, groups, out_dtype=None):
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"""Conv3D operator in NCDHW layout.
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Parameters
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----------
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Input : tvm.te.Tensor
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5-D with shape [batch, in_channel, in_depth, in_height, in_width]
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Filter : tvm.te.Tensor
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5-D with shape [num_filter, in_channel, filter_depth, filter_height, filter_width]
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stride : int or a list/tuple of three ints
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Stride size, or [strid_depth, stride_height, stride_width]
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padding : int or str
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Padding size, or ['VALID', 'SAME']
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dilation: int or a list/tuple of three ints
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dilation size, or [dilation_depth, dilation_height, dilation_width]
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groups: int
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Number of groups.
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Returns
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-------
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Output : tvm.te.Tensor
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5-D with shape [batch, out_channel, out_depth, out_height, out_width]
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"""
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return conv(Input, Filter, stride, padding, dilation, groups, "NCDHW", "OIDHW", out_dtype)
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def conv3d_ndhwc(
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Input,
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Filter,
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stride,
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padding,
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dilation,
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groups,
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out_dtype="float32",
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auto_scheduler_rewritten_layout="",
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meta_schedule_origin_shape=None,
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):
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"""Convolution operator in NDHWC layout.
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Parameters
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----------
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Input : tvm.te.Tensor
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5-D with shape [batch, in_depth, in_height, in_width, in_channel]
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Filter : tvm.te.Tensor
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5-D with shape [filter_depth, filter_height, filter_width, in_channel, num_filter]
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stride : int or a list/tuple of three ints
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Stride size, or [stride_depth, stride_height, stride_width]
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padding : int or str
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Padding size, or ['VALID', 'SAME']
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dilation: int or a list/tuple of three ints
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dilation size, or [dilation_depth, dilation_height, dilation_width]
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groups: int
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Number of groups.
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out_dtype: str = "float32",
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The type of output tensor
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auto_scheduler_rewritten_layout: str = ""
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The layout after auto-scheduler's layout rewrite pass.
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meta_schedule_origin_shape: Optional[List[Expr]] = None
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The original shape of the input tensor.
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Returns
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-------
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Output : tvm.te.Tensor
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5-D with shape [batch, out_depth, out_height, out_width, out_channel]
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"""
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return conv(
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Input,
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Filter,
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stride,
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padding,
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dilation,
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groups,
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"NDHWC",
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"DHWIO",
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out_dtype,
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auto_scheduler_rewritten_layout,
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meta_schedule_origin_shape,
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)
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def conv3d_winograd_weight_transform(kernel, tile_size):
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"""Weight transformation for 3D winograd
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Parameters
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----------
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kernel: Tensor
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The raw kernel tensor with layout "NCDHW".
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tile_size: int
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Tile size of winograd transform. e.g. 2 for F(2x2, 3x3) and 4 for F(4x4, 3x3)
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Returns
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-------
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output : tvm.te.Tensor
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5-D with shape [alpha, alpha, alpha, CO, CI]
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"""
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CO, CI, KD, KH, KW = get_const_tuple(kernel.shape)
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depth_transform = 2 < KD < 8 and KD == KH
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if depth_transform:
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assert KD == KH == KW, "Only support NxNxN kernel"
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else:
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assert KH == KW, "Only supports DxNxN kernel"
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r = tile_size + KH - 1
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r_kh = te.reduce_axis((0, KH), name="r_kh")
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r_kw = te.reduce_axis((0, KW), name="r_kw")
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_, _, G = winograd_transform_matrices(tile_size, KH, kernel.dtype)
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if depth_transform:
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shape = (r, r, r, CO, CI)
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r_kd = te.reduce_axis((0, KD), name="r_kd")
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return te.compute(
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shape,
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lambda omg, eps, nu, co, ci: te.sum(
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kernel[co][ci][r_kd][r_kh][r_kw] * G[omg][r_kd] * G[eps][r_kh] * G[nu][r_kw],
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axis=[r_kd, r_kh, r_kw],
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),
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name="transform_weight",
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)
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else:
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shape = (r, r, KD, CO, CI)
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return te.compute(
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shape,
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lambda eps, nu, d, co, ci: te.sum(
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kernel[co][ci][d][r_kh][r_kw] * G[eps][r_kh] * G[nu][r_kw], axis=[r_kh, r_kw]
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),
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name="transform_weight",
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)
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