#include <algorithm>
#include <cmath>
#include <iostream>
#include <string>
#include <vector>
#include "example_utils.hpp"
IC = 3,
IH = 227,
IW = 227,
OC = 96;
std::vector<float> src_data(product(src_dims));
std::vector<float> weights_data(product(weights_dims));
std::vector<float> bias_data(OC);
std::vector<float> dst_data(product(dst_dims));
std::generate(src_data.begin(), src_data.end(), []() {
static int i = 0;
return std::cos(i++ / 10.f);
});
std::generate(weights_data.begin(), weights_data.end(), []() {
static int i = 0;
return std::sin(i++ * 2.f);
});
std::generate(bias_data.begin(), bias_data.end(), []() {
static int i = 0;
return std::tanh(i++);
});
auto user_weights_mem =
memory({weights_dims, dt::f32, tag::oihw},
engine);
write_to_dnnl_memory(src_data.data(), src_mem);
write_to_dnnl_memory(bias_data.data(), bias_mem);
write_to_dnnl_memory(weights_data.data(), user_weights_mem);
auto inner_product_weights_md
inner_product_weights_md, bias_md,
dst_md);
const float scale = 1.0f;
const float alpha = 0.f;
const float beta = 0.f;
auto inner_product_weights_mem = user_weights_mem;
if (inner_product_pd.weights_desc() != user_weights_mem.get_desc()) {
inner_product_weights_mem
reorder(user_weights_mem, inner_product_weights_mem)
.
execute(engine_stream, user_weights_mem,
inner_product_weights_mem);
}
std::unordered_map<int, memory> inner_product_args;
inner_product_prim.execute(engine_stream, inner_product_args);
read_from_dnnl_memory(dst_data.data(), dst_mem);
}
int main(int argc, char **argv) {
return handle_example_errors(
inner_product_example, parse_engine_kind(argc, argv));
}
@ eltwise_relu
Elementwise: rectified linear unit (ReLU)
Definition dnnl.hpp:490
@ forward_training
Forward data propagation (training mode).
Definition dnnl.hpp:445
#define DNNL_ARG_DST
A special mnemonic for destination argument for primitives that have a single destination.
Definition dnnl_types.h:1806
#define DNNL_ARG_SRC
A special mnemonic for source argument for primitives that have a single source.
Definition dnnl_types.h:1782
#define DNNL_ARG_BIAS
Bias tensor argument.
Definition dnnl_types.h:1856
#define DNNL_ARG_WEIGHTS
A special mnemonic for primitives that have a single weights argument.
Definition dnnl_types.h:1829
@ dst_md
destination memory desc
Definition dnnl.hpp:801
@ src_md
source memory desc
Definition dnnl.hpp:793
@ inner_product_d
inner product descriptor
Definition dnnl.hpp:780
oneDNN namespace
Definition dnnl.hpp:81
An execution engine.
Definition dnnl.hpp:844
kind
Kinds of engines.
Definition dnnl.hpp:849
Descriptor for an inner product forward propagation primitive.
Definition dnnl.hpp:6870
Primitive descriptor for an inner product forward propagation primitive.
Definition dnnl.hpp:6939
Inner product forward propagation primitive.
Definition dnnl.hpp:6868
A memory descriptor.
Definition dnnl.hpp:1729
Memory object.
Definition dnnl.hpp:1188
dnnl_dim_t dim
Integer type for representing dimension sizes and indices.
Definition dnnl.hpp:1190
format_tag
Memory format tag specification.
Definition dnnl.hpp:1282
data_type
Data type specification.
Definition dnnl.hpp:1208
std::vector< dim > dims
Vector of dimensions.
Definition dnnl.hpp:1193
Post-ops.
Definition dnnl.hpp:2205
void append_eltwise(float scale, algorithm algorithm, float alpha, float beta)
Appends an elementwise post-op.
Definition dnnl.hpp:2280
Primitive attributes.
Definition dnnl.hpp:2481
void set_post_ops(const post_ops ops)
Sets post-ops.
Definition dnnl.hpp:2711
Reorder primitive.
Definition dnnl.hpp:3118
void execute(const stream &stream, memory &src, memory &dst) const
Executes the reorder primitive.
Definition dnnl.hpp:3227
An execution stream.
Definition dnnl.hpp:1047
stream & wait()
Waits for all primitives executing in the stream to finish.
Definition dnnl.hpp:1107