提交 a32d4200 编写于 作者: F flame 提交者: nhzlx

cherry-pick from feature/anakin-engine: batch norm (#16110)

* use anakin batch norm and scale implement fluid batch norm
上级 0945b97f
......@@ -41,16 +41,15 @@ void BatchNormOpConverter::operator()(const framework::proto::OpDesc &op,
auto output = op_desc.Output("Y").front();
auto op_name = op_desc.Type() + ":" + op_desc.Output("Y").front();
engine_->AddOp(op_name, "Scale", {inputs["X"]}, {output});
engine_->AddOpAttr(op_name, "bias_term", true);
engine_->AddOpAttr(op_name, "axis", 1);
engine_->AddOpAttr(op_name, "num_axes", 1);
bool is_test = boost::get<bool>(op_desc.GetAttr("is_test"));
PADDLE_ENFORCE(is_test);
float epsilon = boost::get<float>(op_desc.GetAttr("epsilon"));
engine_->AddOpAttr(op_name, "epsilon", epsilon);
auto epsilon = boost::get<float>(op_desc.GetAttr("epsilon"));
auto bn_op_name = op_name + ":bn";
auto bn_output = bn_op_name + "_output";
engine_->AddOp(bn_op_name, "BatchNorm", {inputs["X"]}, {bn_output});
engine_->AddOpAttr(bn_op_name, "epsilon", epsilon);
auto scale_op_name = op_name + ":scale";
auto get_lod_tensor = [this, &scope, &op_name](const std::string &var_name,
framework::LoDTensor *tensor) {
auto *v = scope.FindVar(var_name);
......@@ -69,50 +68,54 @@ void BatchNormOpConverter::operator()(const framework::proto::OpDesc &op,
get_lod_tensor(inputs["Scale"], &scale_t);
get_lod_tensor(inputs["Variance"], &variance_t);
auto *bias = bias_t.mutable_data<float>(platform::CPUPlace());
auto *mean = mean_t.mutable_data<float>(platform::CPUPlace());
auto *scale = scale_t.mutable_data<float>(platform::CPUPlace());
auto *variance = variance_t.mutable_data<float>(platform::CPUPlace());
framework::LoDTensor combile_scale_t;
framework::LoDTensor combile_bias_t;
combile_scale_t.Resize(scale_t.dims());
combile_bias_t.Resize(bias_t.dims());
auto *combile_scale =
combile_scale_t.mutable_data<float>(platform::CPUPlace());
auto *combile_bias = combile_bias_t.mutable_data<float>(platform::CPUPlace());
size_t elem_num = combile_scale_t.memory_size() / sizeof(float);
for (size_t i = 0; i < elem_num; i++) {
combile_scale[i] = scale[i] / sqrtf(variance[i] + epsilon);
combile_bias[i] = bias[i] - mean[i] * combile_scale[i];
}
auto fill_shape = [](size_t n, std::vector<int> *shape) {
shape->insert(shape->begin(), 1);
if (shape->size() < n) {
shape->insert(shape->end(), n - shape->size(), 1);
auto fill_shape = [](size_t n, std::vector<int> shape) {
shape.insert(shape.begin(), 1);
if (shape.size() < n) {
shape.insert(shape.end(), n - shape.size(), 1);
}
return shape;
};
auto scale_shape = framework::vectorize2int(combile_scale_t.dims());
auto bias_shape = framework::vectorize2int(combile_bias_t.dims());
fill_shape(4, &scale_shape);
fill_shape(4, &bias_shape);
Shape weight1_shape(scale_shape);
Shape weight2_shape(bias_shape);
Shape shape1(fill_shape(4, framework::vectorize2int(mean_t.dims())));
Shape shape2(fill_shape(4, framework::vectorize2int(variance_t.dims())));
auto *weight1 =
GraphGlobalMem<NV>::Global().template new_block<AK_FLOAT>(weight1_shape);
auto *scale_data = static_cast<float *>(weight1->h_tensor().mutable_data());
std::copy_n(combile_scale_t.data<float>(), combile_scale_t.numel(),
scale_data);
engine_->AddOpAttr(op_name, "weight_1", *weight1);
GraphGlobalMem<NV>::Global().template new_block<AK_FLOAT>(shape1);
auto *mean_data = static_cast<float *>(weight1->h_tensor().mutable_data());
std::copy_n(mean_t.data<float>(), mean_t.numel(), mean_data);
engine_->AddOpAttr(bn_op_name, "weight_1", *weight1);
auto *weight2 =
GraphGlobalMem<NV>::Global().template new_block<AK_FLOAT>(weight2_shape);
auto *bias_data = static_cast<float *>(weight2->h_tensor().mutable_data());
std::copy_n(combile_bias_t.data<float>(), combile_bias_t.numel(), bias_data);
engine_->AddOpAttr(op_name, "weight_2", *weight2);
GraphGlobalMem<NV>::Global().template new_block<AK_FLOAT>(shape2);
auto *variance_data =
static_cast<float *>(weight2->h_tensor().mutable_data());
std::copy_n(variance_t.data<float>(), variance_t.numel(), variance_data);
engine_->AddOpAttr(bn_op_name, "weight_2", *weight2);
Shape shape3(std::vector<int>({1, 1, 1, 1}));
auto *weight3 =
GraphGlobalMem<NV>::Global().template new_block<AK_FLOAT>(shape3);
auto *alpha_data = static_cast<float *>(weight3->h_tensor().mutable_data());
float weight3_data[] = {1};
std::copy(std::begin(weight3_data), std::end(weight3_data), alpha_data);
engine_->AddOpAttr(bn_op_name, "weight_3", *weight3);
Shape scale_shape(fill_shape(4, framework::vectorize2int(scale_t.dims())));
auto *scale =
GraphGlobalMem<NV>::Global().template new_block<AK_FLOAT>(scale_shape);
auto *scale_data = static_cast<float *>(scale->h_tensor().mutable_data());
std::copy_n(scale_t.data<float>(), scale_t.numel(), scale_data);
Shape bias_shape(fill_shape(4, framework::vectorize2int(bias_t.dims())));
auto *bias =
GraphGlobalMem<NV>::Global().template new_block<AK_FLOAT>(bias_shape);
auto *bias_data = static_cast<float *>(bias->h_tensor().mutable_data());
std::copy_n(bias_t.data<float>(), bias_t.numel(), bias_data);
engine_->AddOp(scale_op_name, "Scale", {bn_output}, {output});
engine_->AddOpAttr(scale_op_name, "axis", 1);
engine_->AddOpAttr(scale_op_name, "num_axes", 1);
engine_->AddOpAttr(scale_op_name, "bias_term", true);
engine_->AddOpAttr(scale_op_name, "weight_1", *scale);
engine_->AddOpAttr(scale_op_name, "weight_2", *bias);
}
} // namespace anakin
......
......@@ -54,7 +54,6 @@ TEST(batch_norm_op, test) {
float eps = 1e-5f;
desc.SetAttr("epsilon", eps);
desc.SetAttr("is_test", true);
// desc.SetAttr("momentum", 0.8f);
validator.SetOp(*desc.Proto());
......
Markdown is supported
0% .
You are about to add 0 people to the discussion. Proceed with caution.
先完成此消息的编辑!
想要评论请 注册