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-rw-r--r--tests/validation/fixtures/DirectConvolutionLayerFixture.h150
1 files changed, 115 insertions, 35 deletions
diff --git a/tests/validation/fixtures/DirectConvolutionLayerFixture.h b/tests/validation/fixtures/DirectConvolutionLayerFixture.h
index 614aa20753..6f204642ca 100644
--- a/tests/validation/fixtures/DirectConvolutionLayerFixture.h
+++ b/tests/validation/fixtures/DirectConvolutionLayerFixture.h
@@ -1,5 +1,5 @@
/*
- * Copyright (c) 2017-2021 Arm Limited.
+ * Copyright (c) 2017-2023 Arm Limited.
*
* SPDX-License-Identifier: MIT
*
@@ -21,6 +21,10 @@
* OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
* SOFTWARE.
*/
+
+#ifndef ACL_TESTS_VALIDATION_FIXTURES_DIRECTCONVOLUTIONLAYERFIXTURE_H
+#define ACL_TESTS_VALIDATION_FIXTURES_DIRECTCONVOLUTIONLAYERFIXTURE_H
+
#include "arm_compute/core/Helpers.h"
#include "arm_compute/core/TensorShape.h"
#include "arm_compute/core/Types.h"
@@ -51,11 +55,52 @@ class DirectConvolutionValidationGenericFixture : public framework::Fixture
public:
using TBias = typename std::conditional < std::is_same<T, uint8_t>::value || std::is_same<T, int8_t>::value, int32_t, T >::type;
- template <typename...>
+ void setup_quantization(const TensorShape &input_shape, const TensorShape &weights_shape, QuantizationInfo &input_q_info,
+ QuantizationInfo &weights_q_info, DataType data_type)
+ {
+ const int32_t t_max = static_cast<int32_t>(std::numeric_limits<T>::max());
+ const int32_t t_min = static_cast<int32_t>(std::numeric_limits<T>::min());
+
+ std::mt19937 generator(library->seed() + _hash);
+ std::uniform_real_distribution<float> distribution_float(-5.0f, 3.0f);
+ std::uniform_int_distribution<int32_t> distribution_t(t_min, t_max);
+
+ const float scale_lhs = pow(2, distribution_float(generator)); // [2^-5, 2^3]
+ const float scale_rhs = pow(2, distribution_float(generator)); // [2^-5, 2^3]
+
+ const int32_t offset_lhs = distribution_t(generator);
+ const int32_t offset_rhs = distribution_t(generator);
+
+ input_q_info = QuantizationInfo(scale_lhs, offset_lhs);
+ weights_q_info = QuantizationInfo(scale_rhs, offset_rhs);
+
+ QuantizationHint q_hint = suggest_conv_dst_q_info_and_bias(input_q_info, weights_q_info,
+ weights_shape.y() /* heights */, weights_shape.x() /* width */, input_shape.z() /* channels */,
+ data_type, 0.5f /* bias_fraction */);
+
+ _dst_q_info = q_hint.q_info;
+ _min_bias = q_hint.bias_min;
+ _max_bias = q_hint.bias_max;
+
+ // Do not change here as these limits are the natural limits of the associated data types and
+ // are embeded in the computation of the dst quantization info.
+ _min_u8 = 0;
+ _max_u8 = 255;
+ _min_s8 = -128;
+ _max_s8 = 127;
+ }
+
void setup(TensorShape input_shape, int stride_x, int stride_y, int pad_x, int pad_y, unsigned int kernel_size, unsigned int num_kernels,
DataType data_type, QuantizationInfo quantization_info, ActivationLayerInfo act_info, DataLayout data_layout, bool mixed_layout = false)
{
- _quantization_info = quantization_info;
+ // This hash is used by random generators. There may be hash collisions but
+ // this is intentional as it's a very easy way to make the the current
+ // random generation process almost different for many test configurations,
+ // which were using the same set of values before.
+ _hash = input_shape[0] + input_shape[1] + input_shape[2] + input_shape[3] +
+ stride_x + stride_y + pad_x + pad_y + kernel_size + num_kernels + mixed_layout
+ + (data_layout == DataLayout::NHWC);
+
_data_type = data_type;
_mixed_layout = mixed_layout;
@@ -69,24 +114,48 @@ public:
const TensorShape output_shape = compute_deep_convolution_shape(input_info, weights_info, info);
- _target = compute_target(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, quantization_info, act_info, data_layout);
- _reference = compute_reference(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, quantization_info, act_info);
+ QuantizationInfo input_q_info = quantization_info;
+ QuantizationInfo weights_q_info = quantization_info;
+ _dst_q_info = quantization_info;
+
+ if(is_data_type_quantized(data_type) && (!act_info.enabled() || act_info.activation() == ActivationFunction::IDENTITY))
+ {
+ setup_quantization(input_shape, weights_shape, input_q_info, weights_q_info, data_type);
+ }
+
+ _target = compute_target(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, input_q_info, weights_q_info, act_info, data_layout);
+ _reference = compute_reference(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, input_q_info, weights_q_info, act_info);
}
- template <typename...>
void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation,
DataType data_type, QuantizationInfo quantization_info, ActivationLayerInfo act_info, DataLayout data_layout)
{
ARM_COMPUTE_ERROR_ON(data_layout == DataLayout::UNKNOWN);
ARM_COMPUTE_UNUSED(dilation);
- _quantization_info = quantization_info;
+ // This hash is used by random generators. There may be hash collisions but
+ // this is intentional as it's a very easy way to make the the current
+ // random generation process almost different for many test configurations,
+ // which were using the same set of values before.
+ _hash = input_shape[0] + input_shape[1] + input_shape[2] + input_shape[3] +
+ weights_shape[0] + weights_shape[1] + weights_shape[2] + weights_shape[3] + dilation.x() +
+ dilation.y() + info.pad_bottom() + info.pad_left() + info.pad_right() + info.pad_top();
+
_data_type = data_type;
const DataType bias_data_type = is_data_type_quantized_asymmetric(data_type) ? DataType::S32 : data_type;
- _target = compute_target(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, quantization_info, act_info, data_layout);
- _reference = compute_reference(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, quantization_info, act_info);
+ QuantizationInfo input_q_info = quantization_info;
+ QuantizationInfo weights_q_info = quantization_info;
+ _dst_q_info = quantization_info;
+
+ if(is_data_type_quantized(data_type) && (!act_info.enabled() || act_info.activation() == ActivationFunction::IDENTITY))
+ {
+ setup_quantization(input_shape, weights_shape, input_q_info, weights_q_info, data_type);
+ }
+
+ _target = compute_target(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, input_q_info, weights_q_info, act_info, data_layout);
+ _reference = compute_reference(input_shape, weights_shape, bias_shape, output_shape, info, data_type, bias_data_type, input_q_info, weights_q_info, act_info);
}
protected:
@@ -112,14 +181,14 @@ protected:
{
case DataType::QASYMM8:
{
- std::uniform_int_distribution<uint8_t> distribution(0, 50);
+ std::uniform_int_distribution<uint32_t> distribution(_min_u8, _max_u8);
library->fill(tensor, distribution, i);
break;
}
case DataType::QASYMM8_SIGNED:
{
// Use small input range to avoid all the test results being saturated at the end.
- std::uniform_int_distribution<int8_t> distribution(-25, 25);
+ std::uniform_int_distribution<int32_t> distribution(_min_s8, _max_s8);
library->fill(tensor, distribution, i);
break;
}
@@ -137,7 +206,7 @@ protected:
}
case DataType::S32:
{
- std::uniform_int_distribution<int32_t> distribution(-5, 5);
+ std::uniform_int_distribution<int32_t> distribution(_min_bias, _max_bias);
library->fill(tensor, distribution, i);
break;
}
@@ -147,7 +216,7 @@ protected:
}
TensorType compute_target(TensorShape input_shape, TensorShape weights_shape, const TensorShape &bias_shape, TensorShape output_shape, const PadStrideInfo &info,
- DataType data_type, DataType bias_data_type, QuantizationInfo quantization_info, ActivationLayerInfo act_info, const DataLayout &data_layout)
+ DataType data_type, DataType bias_data_type, QuantizationInfo input_q_info, QuantizationInfo weights_q_info, ActivationLayerInfo act_info, const DataLayout &data_layout)
{
if(data_layout == DataLayout::NHWC)
{
@@ -157,10 +226,10 @@ protected:
}
// Create tensors
- TensorType src = create_tensor<TensorType>(input_shape, data_type, 1, quantization_info, data_layout);
- TensorType weights = create_tensor<TensorType>(weights_shape, data_type, 1, quantization_info, data_layout);
- TensorType bias = create_tensor<TensorType>(bias_shape, bias_data_type, 1, quantization_info);
- TensorType dst = create_tensor<TensorType>(output_shape, data_type, 1, quantization_info, data_layout);
+ TensorType src = create_tensor<TensorType>(input_shape, data_type, 1, input_q_info, data_layout);
+ TensorType weights = create_tensor<TensorType>(weights_shape, data_type, 1, weights_q_info, data_layout);
+ TensorType bias = create_tensor<TensorType>(bias_shape, bias_data_type, 1, QuantizationInfo());
+ TensorType dst = create_tensor<TensorType>(output_shape, data_type, 1, _dst_q_info, data_layout);
add_padding_x({ &src, &bias, &dst }, data_layout);
add_padding_x({ &weights }, data_layout, input_shape[0] % 4 == 0); // Don't add left padding if cl image will be used
@@ -186,9 +255,9 @@ protected:
ARM_COMPUTE_ASSERT(!dst.info()->is_resizable());
// Fill tensors
- fill(AccessorType(src), 0);
- fill(AccessorType(weights), 1);
- fill(AccessorType(bias), 2);
+ fill(AccessorType(src), 0 + _hash);
+ fill(AccessorType(weights), 1 + _hash);
+ fill(AccessorType(bias), 2 + _hash);
if(_mixed_layout)
{
@@ -204,33 +273,45 @@ protected:
}
SimpleTensor<T> compute_reference(const TensorShape &input_shape, const TensorShape &weights_shape, const TensorShape &bias_shape, const TensorShape &output_shape, const PadStrideInfo &info,
- DataType data_type, DataType bias_data_type, QuantizationInfo quantization_info, ActivationLayerInfo act_info)
+ DataType data_type, DataType bias_data_type, QuantizationInfo input_q_info, QuantizationInfo weights_q_info, ActivationLayerInfo act_info)
{
// Create reference
- SimpleTensor<T> src{ input_shape, data_type, 1, quantization_info };
- SimpleTensor<T> weights{ weights_shape, data_type, 1, quantization_info };
- SimpleTensor<TBias> bias{ bias_shape, bias_data_type, 1, quantization_info };
+ SimpleTensor<T> src{ input_shape, data_type, 1, input_q_info };
+ SimpleTensor<T> weights{ weights_shape, data_type, 1, weights_q_info };
+ SimpleTensor<TBias> bias{ bias_shape, bias_data_type, 1, QuantizationInfo() };
// Fill reference
- fill(src, 0);
- fill(weights, 1);
- fill(bias, 2);
-
- SimpleTensor<T> dst = reference::convolution_layer<T>(src, weights, bias, output_shape, info);
- return (act_info.enabled()) ? reference::activation_layer<T>(dst, act_info) : dst;
+ fill(src, 0 + _hash);
+ fill(weights, 1 + _hash);
+ fill(bias, 2 + _hash);
+
+ SimpleTensor<T> dst = reference::convolution_layer<T>(src, weights, bias, output_shape, info,
+ Size2D(1U, 1U) /* dilation */, 1 /* num_groups */, _dst_q_info);
+ SimpleTensor<T> dst2 = (act_info.enabled()) ? reference::activation_layer<T>(dst, act_info) : dst;
+ return dst2;
}
TensorType _target{};
SimpleTensor<T> _reference{};
- QuantizationInfo _quantization_info{};
+ QuantizationInfo _dst_q_info{};
DataType _data_type{};
bool _mixed_layout{ false };
+ int32_t _hash{0};
+
+ // Random initialization limits
+ // Default values are previously handcrafted limits
+ // that sould be used when we don't use dynamic quantization
+ int32_t _min_bias{-5};
+ int32_t _max_bias{5};
+ int32_t _min_u8{0};
+ int32_t _max_u8{50};
+ int32_t _min_s8{-25};
+ int32_t _max_s8{25};
};
template <typename TensorType, typename AccessorType, typename FunctionType, typename T, bool mixed_layout = false>
class DirectConvolutionValidationFixture : public DirectConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T>
{
public:
- template <typename...>
void setup(TensorShape input_shape, int stride_x, int stride_y, int pad_x, int pad_y, unsigned int kernel_size, unsigned int num_kernels, DataType data_type, ActivationLayerInfo act_info,
DataLayout data_layout)
{
@@ -243,7 +324,6 @@ template <typename TensorType, typename AccessorType, typename FunctionType, typ
class DirectConvolutionValidationQuantizedFixture : public DirectConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T>
{
public:
- template <typename...>
void setup(TensorShape input_shape, int stride_x, int stride_y, int pad_x, int pad_y, unsigned int kernel_size, unsigned int num_kernels, DataType data_type, QuantizationInfo quantization_info,
ActivationLayerInfo act_info, DataLayout data_layout)
{
@@ -256,7 +336,6 @@ template <typename TensorType, typename AccessorType, typename FunctionType, typ
class DirectConvolutionValidationWithTensorShapesQuantizedFixture : public DirectConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T>
{
public:
- template <typename...>
void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation,
DataType data_type, QuantizationInfo quantization_info, ActivationLayerInfo act_info, DataLayout data_layout)
{
@@ -269,7 +348,6 @@ template <typename TensorType, typename AccessorType, typename FunctionType, typ
class DirectConvolutionValidationWithTensorShapesFixture : public DirectConvolutionValidationGenericFixture<TensorType, AccessorType, FunctionType, T>
{
public:
- template <typename...>
void setup(TensorShape input_shape, TensorShape weights_shape, TensorShape bias_shape, TensorShape output_shape, PadStrideInfo info, Size2D dilation,
DataType data_type, ActivationLayerInfo act_info)
{
@@ -281,3 +359,5 @@ public:
} // namespace validation
} // namespace test
} // namespace arm_compute
+
+#endif // ACL_TESTS_VALIDATION_FIXTURES_DIRECTCONVOLUTIONLAYERFIXTURE_H