blob: a60a6c8e4b17f235c0fee146d36005918be83dc3 [file] [log] [blame]
// Generated from depthwise_conv2d_quant8_weights_as_inputs.mod.py
// DO NOT EDIT
// clang-format off
#include "TestGenerated.h"
namespace generated_tests::depthwise_conv2d_quant8_weights_as_inputs {
void CreateModel(Model *model) {
OperandType type0(Type::TENSOR_QUANT8_ASYMM, {1, 2, 2, 2}, 0.5f, 0);
OperandType type1(Type::TENSOR_INT32, {2}, 0.25f, 0);
OperandType type2(Type::INT32, {});
OperandType type3(Type::TENSOR_QUANT8_ASYMM, {1, 1, 1, 2}, 1.0f, 0);
// Phase 1, operands
auto op1 = model->addOperand(&type0);
auto op2 = model->addOperand(&type0);
auto op3 = model->addOperand(&type1);
auto pad0 = model->addOperand(&type2);
auto stride = model->addOperand(&type2);
auto channelMultiplier = model->addOperand(&type2);
auto act = model->addOperand(&type2);
auto op4 = model->addOperand(&type3);
// Phase 2, operations
static int32_t pad0_init[] = {0};
model->setOperandValue(pad0, pad0_init, sizeof(int32_t) * 1);
static int32_t stride_init[] = {1};
model->setOperandValue(stride, stride_init, sizeof(int32_t) * 1);
static int32_t channelMultiplier_init[] = {1};
model->setOperandValue(channelMultiplier, channelMultiplier_init, sizeof(int32_t) * 1);
static int32_t act_init[] = {0};
model->setOperandValue(act, act_init, sizeof(int32_t) * 1);
model->addOperation(ANEURALNETWORKS_DEPTHWISE_CONV_2D, {op1, op2, op3, pad0, pad0, pad0, pad0, stride, stride, channelMultiplier, act}, {op4});
// Phase 3, inputs and outputs
model->identifyInputsAndOutputs(
{op1, op2, op3},
{op4});
assert(model->isValid());
}
bool is_ignored(int i) {
static std::set<int> ignore = {};
return ignore.find(i) != ignore.end();
}
} // namespace generated_tests::depthwise_conv2d_quant8_weights_as_inputs
namespace generated_tests::depthwise_conv2d_quant8_weights_as_inputs {
void CreateModel_dynamic_output_shape(Model *model) {
OperandType type0(Type::TENSOR_QUANT8_ASYMM, {1, 2, 2, 2}, 0.5f, 0);
OperandType type1(Type::TENSOR_INT32, {2}, 0.25f, 0);
OperandType type2(Type::INT32, {});
OperandType type4(Type::TENSOR_QUANT8_ASYMM, {0, 0, 0, 0}, 1.0f, 0);
// Phase 1, operands
auto op1 = model->addOperand(&type0);
auto op2 = model->addOperand(&type0);
auto op3 = model->addOperand(&type1);
auto pad0 = model->addOperand(&type2);
auto stride = model->addOperand(&type2);
auto channelMultiplier = model->addOperand(&type2);
auto act = model->addOperand(&type2);
auto op4 = model->addOperand(&type4);
// Phase 2, operations
static int32_t pad0_init[] = {0};
model->setOperandValue(pad0, pad0_init, sizeof(int32_t) * 1);
static int32_t stride_init[] = {1};
model->setOperandValue(stride, stride_init, sizeof(int32_t) * 1);
static int32_t channelMultiplier_init[] = {1};
model->setOperandValue(channelMultiplier, channelMultiplier_init, sizeof(int32_t) * 1);
static int32_t act_init[] = {0};
model->setOperandValue(act, act_init, sizeof(int32_t) * 1);
model->addOperation(ANEURALNETWORKS_DEPTHWISE_CONV_2D, {op1, op2, op3, pad0, pad0, pad0, pad0, stride, stride, channelMultiplier, act}, {op4});
// Phase 3, inputs and outputs
model->identifyInputsAndOutputs(
{op1, op2, op3},
{op4});
assert(model->isValid());
}
bool is_ignored_dynamic_output_shape(int i) {
static std::set<int> ignore = {};
return ignore.find(i) != ignore.end();
}
} // namespace generated_tests::depthwise_conv2d_quant8_weights_as_inputs