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Add operation scatter_add to relay, based on scatter implementation. (a…
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# Licensed to the Apache Software Foundation (ASF) under one | ||
# or more contributor license agreements. See the NOTICE file | ||
# distributed with this work for additional information | ||
# regarding copyright ownership. The ASF licenses this file | ||
# to you under the Apache License, Version 2.0 (the | ||
# "License"); you may not use this file except in compliance | ||
# with the License. You may obtain a copy of the License at | ||
# | ||
# http://www.apache.org/licenses/LICENSE-2.0 | ||
# | ||
# Unless required by applicable law or agreed to in writing, | ||
# software distributed under the License is distributed on an | ||
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY | ||
# KIND, either express or implied. See the License for the | ||
# specific language governing permissions and limitations | ||
# under the License. | ||
# pylint: disable=invalid-name, too-many-arguments, too-many-nested-blocks | ||
"""Scatter Add operator""" | ||
from tvm.te import hybrid | ||
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@hybrid.script | ||
def _scatter_add_1d(data, indices, updates): | ||
out = output_tensor(data.shape, data.dtype) | ||
for i in range(data.shape[0]): | ||
out[i] = data[i] | ||
for i in range(indices.shape[0]): | ||
out[indices[i] if indices[i] >= 0 else indices[i] + | ||
data.shape[0]] += updates[i] | ||
return out | ||
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@hybrid.script | ||
def _scatter_add_2d(data, indices, updates, axis): | ||
out = output_tensor(data.shape, data.dtype) | ||
for i in const_range(data.shape[0]): | ||
for j in const_range(data.shape[1]): | ||
out[i, j] = data[i, j] | ||
if axis == 0: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
out[indices[i, j] if indices[i, j] >= | ||
0 else indices[i, j] + data.shape[axis], j] += updates[i, j] | ||
else: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
out[i, indices[i, j] if indices[i, j] >= | ||
0 else indices[i, j] + data.shape[axis]] += updates[i, j] | ||
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return out | ||
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@hybrid.script | ||
def _scatter_add_3d(data, indices, updates, axis): | ||
out = output_tensor(data.shape, data.dtype) | ||
for i in const_range(data.shape[0]): | ||
for j in const_range(data.shape[1]): | ||
for k in const_range(data.shape[2]): | ||
out[i, j, k] = data[i, j, k] | ||
if axis == 0: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
for k in const_range(indices.shape[2]): | ||
out[indices[i, j, k] if indices[i, j, k] >= | ||
0 else indices[i, j, k] + data.shape[axis], j, k] += updates[i, j, k] | ||
elif axis == 1: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
for k in const_range(indices.shape[2]): | ||
out[i, indices[i, j, k] if indices[i, j, k] >= | ||
0 else indices[i, j, k] + data.shape[axis], k] += updates[i, j, k] | ||
else: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
for k in const_range(indices.shape[2]): | ||
out[i, j, indices[i, j, k] if indices[i, j, k] >= | ||
0 else indices[i, j, k] + data.shape[axis]] += updates[i, j, k] | ||
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return out | ||
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@hybrid.script | ||
def _scatter_add_4d(data, indices, updates, axis): | ||
out = output_tensor(data.shape, data.dtype) | ||
for i in const_range(data.shape[0]): | ||
for j in const_range(data.shape[1]): | ||
for k in const_range(data.shape[2]): | ||
for l in const_range(data.shape[3]): | ||
out[i, j, k, l] = data[i, j, k, l] | ||
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if axis == 0: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
for k in const_range(indices.shape[2]): | ||
for l in const_range(indices.shape[3]): | ||
out[indices[i, j, k, l] if indices[i, j, k, l] >= | ||
0 else indices[i, j, k, l] + data.shape[axis], | ||
j, k, l] += updates[i, j, k, l] | ||
elif axis == 1: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
for k in const_range(indices.shape[2]): | ||
for l in const_range(indices.shape[3]): | ||
out[i, | ||
indices[i, j, k, l] if indices[i, j, k, l] >= | ||
0 else indices[i, j, k, l] + data.shape[axis], | ||
k, l] += updates[i, j, k, l] | ||
elif axis == 2: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
for k in const_range(indices.shape[2]): | ||
for l in const_range(indices.shape[3]): | ||
out[i, j, | ||
indices[i, j, k, l] if indices[i, j, k, l] >= | ||
0 else indices[i, j, k, l] + data.shape[axis], | ||
l] += updates[i, j, k, l] | ||
else: | ||
for i in range(indices.shape[0]): | ||
for j in range(indices.shape[1]): | ||
for k in const_range(indices.shape[2]): | ||
for l in const_range(indices.shape[3]): | ||
out[i, j, k, | ||
indices[i, j, k, l] if indices[i, j, k, l] >= | ||
0 else indices[i, j, k, l] + data.shape[axis] | ||
] += updates[i, j, k, l] | ||
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return out | ||
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def scatter_add(data, indices, updates, axis=0): | ||
"""Update data by adding values in updates at positions defined by indices | ||
Parameters | ||
---------- | ||
data : relay.Expr | ||
The input data to the operator. | ||
indices : relay.Expr | ||
The index locations to update. | ||
updates : relay.Expr | ||
The values to update. | ||
axis : int | ||
The axis to scatter_add on | ||
Returns | ||
------- | ||
ret : relay.Expr | ||
The computed result. | ||
""" | ||
if axis < 0: | ||
axis += len(data.shape) | ||
assert axis >= 0 | ||
assert axis < len(data.shape) | ||
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if len(data.shape) == 1: | ||
return _scatter_add_1d(data, indices, updates) | ||
if len(data.shape) == 2: | ||
return _scatter_add_2d(data, indices, updates, axis) | ||
if len(data.shape) == 3: | ||
return _scatter_add_3d(data, indices, updates, axis) | ||
if len(data.shape) == 4: | ||
return _scatter_add_4d(data, indices, updates, axis) | ||
raise ValueError("scatter_add only support for 1-4 dimensions") |