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#
# SPDX-FileCopyrightText: Copyright (c) 1993-2023 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
# SPDX-License-Identifier: Apache-2.0
#
# Licensed 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.
#
"""tests of QuantConv module.
Test for QuantConvTransposed
"""
import pytest
import numpy as np
import torch
from torch import nn
import torch.nn.functional as F
from pytorch_quantization import tensor_quant
from pytorch_quantization.tensor_quant import QuantDescriptor
from pytorch_quantization.nn.modules.tensor_quantizer import TensorQuantizer
from pytorch_quantization import utils as quant_utils
from pytorch_quantization.nn.modules import quant_conv
import tests.utils as test_utils
# make everything run on the GPU
torch.set_default_tensor_type('torch.cuda.FloatTensor')
torch.backends.cudnn.deterministic = True
np.random.seed(1234)
# pylint:disable=missing-docstring, no-self-use
_NUM_IN_CHANNELS = 13
_NUM_OUT_CHANNELS = 17
class TestQuantConvTranspose2D():
def test_no_quant(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False)
quant_conv_object.input_quantizer.disable()
quant_conv_object.weight_quantizer.disable()
test_input = torch.randn(16, _NUM_IN_CHANNELS, 32, 32)
weight_copy = quant_conv_object.weight.clone()
quant_weight = weight_copy
out1 = F.conv_transpose2d(test_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_weight_fake_quant_per_tensor(self):
kernel_size = 8
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_weight=QuantDescriptor())
quant_conv_object.input_quantizer.disable()
test_input = torch.randn(256, _NUM_IN_CHANNELS, 32, 32)
weight_copy = quant_conv_object.weight.clone()
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, torch.max(torch.abs(weight_copy)))
out1 = F.conv_transpose2d(test_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_weight_fake_quant_per_channel(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_weight=tensor_quant.QUANT_DESC_8BIT_CONVTRANSPOSE2D_WEIGHT_PER_CHANNEL)
quant_conv_object.input_quantizer.disable()
test_input = torch.randn(16, _NUM_IN_CHANNELS, 256, 256)
weight_copy = quant_conv_object.weight.clone()
amax = quant_utils.reduce_amax(weight_copy, axis=(0, 2, 3))
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, amax)
out1 = F.conv_transpose2d(test_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_input(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False)
quant_conv_object.weight_quantizer.disable()
test_input = torch.randn(20, _NUM_IN_CHANNELS, 50, 50)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
out1 = F.conv_transpose2d(quant_input, quant_conv_object.weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_tensor(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS, _NUM_OUT_CHANNELS, kernel_size, bias=False, quant_desc_weight=QuantDescriptor())
test_input = torch.randn(16, _NUM_IN_CHANNELS, 16, 16)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
weight_copy = quant_conv_object.weight.clone()
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, torch.max(torch.abs(weight_copy)))
out1 = F.conv_transpose2d(quant_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_weight=QuantDescriptor(axis=(1)))
test_input = torch.randn(16, _NUM_IN_CHANNELS, 16, 16)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
weight_copy = quant_conv_object.weight.clone()
amax = quant_utils.reduce_amax(weight_copy, axis=(0, 2, 3))
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, amax)
out1 = F.conv_transpose2d(quant_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel_other_prec(self):
kernel_size = 3
quant_desc_input = QuantDescriptor(num_bits=4)
quant_desc_weight = QuantDescriptor(num_bits=3, axis=(1))
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_input=quant_desc_input,
quant_desc_weight=quant_desc_weight)
test_input = torch.randn(16, _NUM_IN_CHANNELS, 16, 16)
test_input_quantizer = TensorQuantizer(quant_desc_input)
weight_quantizer = TensorQuantizer(quant_desc_weight)
quant_input = test_input_quantizer(test_input)
weight_copy = quant_conv_object.weight.clone()
quant_weight = weight_quantizer(weight_copy)
out1 = F.conv_transpose2d(quant_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel_bias(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=True,
quant_desc_weight=QuantDescriptor(axis=(1)))
test_input = torch.randn(2, _NUM_IN_CHANNELS, 2, 2)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
weight_copy = quant_conv_object.weight.clone()
amax = quant_utils.reduce_amax(weight_copy, axis=(0, 2, 3))
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, amax)
out1 = F.conv_transpose2d(quant_input, quant_weight, bias=quant_conv_object.bias)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_against_unquantized(self):
kernel_size = 3
test_input = torch.randn(16, _NUM_IN_CHANNELS, 32, 32).cuda()
torch.manual_seed(1234)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(1234)
fake_quant_conv2d = quant_conv.QuantConvTranspose2d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=True,
quant_desc_input=QuantDescriptor(num_bits=16),
quant_desc_weight=QuantDescriptor(num_bits=16, axis=(1)))
# Reset seed. Make sure weight and bias are the same
torch.manual_seed(1234)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(1234)
conv2d = nn.ConvTranspose2d(_NUM_IN_CHANNELS, _NUM_OUT_CHANNELS, kernel_size, bias=True)
fake_quant_output = fake_quant_conv2d(test_input)
output = conv2d(test_input)
test_utils.compare(fake_quant_output, output, rtol=1e-5, atol=2e-4)
class TestQuantConvTranspose3D():
def test_no_quant(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose3d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False)
quant_conv_object.input_quantizer.disable()
quant_conv_object.weight_quantizer.disable()
test_input = torch.randn(16, _NUM_IN_CHANNELS, 32, 32, 32)
weight_copy = quant_conv_object.weight.clone()
quant_weight = weight_copy
out1 = F.conv_transpose3d(test_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel_other_prec(self):
kernel_size = 3
quant_desc_input = QuantDescriptor(num_bits=4)
quant_desc_weight = QuantDescriptor(num_bits=3, axis=(1))
quant_conv_object = quant_conv.QuantConvTranspose3d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_input=quant_desc_input,
quant_desc_weight=quant_desc_weight)
test_input = torch.randn(16, _NUM_IN_CHANNELS, 16, 16, 16)
test_input_quantizer = TensorQuantizer(quant_desc_input)
weight_quantizer = TensorQuantizer(quant_desc_weight)
quant_input = test_input_quantizer(test_input)
weight_copy = quant_conv_object.weight.clone()
quant_weight = weight_quantizer(weight_copy)
out1 = F.conv_transpose3d(quant_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel_bias(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose3d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=True,
quant_desc_weight=tensor_quant.QUANT_DESC_8BIT_CONVTRANSPOSE3D_WEIGHT_PER_CHANNEL)
test_input = torch.randn(2, _NUM_IN_CHANNELS, 2, 2, 2)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
weight_copy = quant_conv_object.weight.clone()
amax = quant_utils.reduce_amax(weight_copy, axis=(0, 2, 3, 4))
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, amax)
out1 = F.conv_transpose3d(quant_input, quant_weight, bias=quant_conv_object.bias)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_against_unquantized(self):
kernel_size = 3
test_input = torch.randn(16, _NUM_IN_CHANNELS, 32, 32, 32).cuda()
torch.manual_seed(1234)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(1234)
fake_quant_conv3d = quant_conv.QuantConvTranspose3d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=True,
quant_desc_input=QuantDescriptor(num_bits=16),
quant_desc_weight=QuantDescriptor(num_bits=16, axis=(1)))
# Reset seed. Make sure weight and bias are the same
torch.manual_seed(1234)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(1234)
conv3d = nn.ConvTranspose3d(_NUM_IN_CHANNELS, _NUM_OUT_CHANNELS, kernel_size, bias=True)
fake_quant_output = fake_quant_conv3d(test_input)
output = conv3d(test_input)
test_utils.compare(fake_quant_output, output, rtol=1e-5, atol=2e-4)
class TestQuantConvTranspose1D():
def test_no_quant(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False)
quant_conv_object.input_quantizer.disable()
quant_conv_object.weight_quantizer.disable()
test_input = torch.randn(16, _NUM_IN_CHANNELS, 32)
weight_copy = quant_conv_object.weight.clone()
quant_weight = weight_copy
out1 = F.conv_transpose1d(test_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_weight_fake_quant_per_tensor(self):
kernel_size = 8
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_weight=QuantDescriptor())
quant_conv_object.input_quantizer.disable()
test_input = torch.randn(256, _NUM_IN_CHANNELS, 32)
weight_copy = quant_conv_object.weight.clone()
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, torch.max(torch.abs(weight_copy)))
out1 = F.conv_transpose1d(test_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_weight_fake_quant_per_channel(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_weight=tensor_quant.QUANT_DESC_8BIT_CONVTRANSPOSE1D_WEIGHT_PER_CHANNEL)
quant_conv_object.input_quantizer.disable()
test_input = torch.randn(16, _NUM_IN_CHANNELS, 256)
weight_copy = quant_conv_object.weight.clone()
amax = quant_utils.reduce_amax(weight_copy, axis=(0, 2))
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, amax)
out1 = F.conv_transpose1d(test_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_input(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False)
quant_conv_object.weight_quantizer.disable()
test_input = torch.randn(20, _NUM_IN_CHANNELS, 50)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
out1 = F.conv_transpose1d(quant_input, quant_conv_object.weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_tensor(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS, _NUM_OUT_CHANNELS, kernel_size, bias=False, quant_desc_weight=QuantDescriptor())
test_input = torch.randn(16, _NUM_IN_CHANNELS, 16)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
weight_copy = quant_conv_object.weight.clone()
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, torch.max(torch.abs(weight_copy)))
out1 = F.conv_transpose1d(quant_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_weight=QuantDescriptor(axis=(1)))
test_input = torch.randn(16, _NUM_IN_CHANNELS, 16)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
weight_copy = quant_conv_object.weight.clone()
amax = quant_utils.reduce_amax(weight_copy, axis=(0, 2))
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, amax)
out1 = F.conv_transpose1d(quant_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel_other_prec(self):
kernel_size = 3
quant_desc_input = QuantDescriptor(num_bits=4)
quant_desc_weight = QuantDescriptor(num_bits=3, axis=(1))
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=False,
quant_desc_input=quant_desc_input,
quant_desc_weight=quant_desc_weight)
test_input = torch.randn(16, _NUM_IN_CHANNELS, 16)
test_input_quantizer = TensorQuantizer(quant_desc_input)
weight_quantizer = TensorQuantizer(quant_desc_weight)
quant_input = test_input_quantizer(test_input)
weight_copy = quant_conv_object.weight.clone()
quant_weight = weight_quantizer(weight_copy)
out1 = F.conv_transpose1d(quant_input, quant_weight)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_fake_quant_per_channel_bias(self):
kernel_size = 3
quant_conv_object = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=True,
quant_desc_weight=QuantDescriptor(axis=(1)))
test_input = torch.randn(2, _NUM_IN_CHANNELS, 2)
quant_input = tensor_quant.fake_tensor_quant(test_input, torch.max(torch.abs(test_input)))
weight_copy = quant_conv_object.weight.clone()
amax = quant_utils.reduce_amax(weight_copy, axis=(0, 2))
quant_weight = tensor_quant.fake_tensor_quant(weight_copy, amax)
out1 = F.conv_transpose1d(quant_input, quant_weight, bias=quant_conv_object.bias)
out2 = quant_conv_object(test_input)
np.testing.assert_array_equal(out1.detach().cpu().numpy(), out2.detach().cpu().numpy())
def test_against_unquantized(self):
kernel_size = 3
test_input = torch.randn(16, _NUM_IN_CHANNELS, 24).cuda()
torch.manual_seed(1234)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(1234)
fake_quant_conv1d = quant_conv.QuantConvTranspose1d(
_NUM_IN_CHANNELS,
_NUM_OUT_CHANNELS,
kernel_size,
bias=True,
quant_desc_input=QuantDescriptor(num_bits=16),
quant_desc_weight=QuantDescriptor(num_bits=16, axis=(1)))
# Reset seed. Make sure weight and bias are the same
torch.manual_seed(1234)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(1234)
conv1d = nn.ConvTranspose1d(_NUM_IN_CHANNELS, _NUM_OUT_CHANNELS, kernel_size, bias=True)
fake_quant_output = fake_quant_conv1d(test_input)
output = conv1d(test_input)
test_utils.compare(fake_quant_output, output, rtol=1e-5, atol=1e-4)