mirror of
https://github.com/ggerganov/whisper.cpp.git
synced 2024-12-27 09:08:55 +01:00
109 lines
3.9 KiB
C++
109 lines
3.9 KiB
C++
#include "openvino/whisper-openvino-encoder.h"
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#include "ggml.h"
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#include <openvino/openvino.hpp>
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#include <iostream>
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struct whisper_openvino_context {
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ov::InferRequest inferRequest;
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};
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struct whisper_openvino_context * whisper_openvino_init(const char* path_model,
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const char* device,
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const char* cache_dir)
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{
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if (!path_model || !device) {
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fprintf(stderr, "%s: path_model and/or device is null\n", __func__);
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return nullptr;
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}
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fprintf(stderr, "%s: path_model = %s, device = %s, cache_dir = %s\n",
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__func__, path_model, device, cache_dir ? cache_dir : "(not set)");
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whisper_openvino_context *context = new whisper_openvino_context;
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try {
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ov::Core core;
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if (cache_dir) {
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// enables caching of device-specific 'blobs' during core.compile_model
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// routine. This speeds up calls to compile_model for successive runs.
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core.set_property(ov::cache_dir(cache_dir));
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}
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//Read the OpenVINO encoder IR (.xml/.bin) from disk, producing an ov::Model object.
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std::shared_ptr<ov::Model> model = core.read_model(path_model);
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// Produce a compiled-model object, given the device ("CPU", "GPU", etc.)
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auto compiledModel = core.compile_model(model, device);
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// From the compiled model object, create an infer request. This is the thing that we
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// we will use later on to trigger inference execution.
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context->inferRequest = compiledModel.create_infer_request();
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}
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catch (const std::exception& error) {
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std::cout << "in openvino encoder compile routine: exception: " << error.what() << std::endl;
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delete context;
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context = nullptr;
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}
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return context;
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}
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void whisper_openvino_free(struct whisper_openvino_context * ctx) {
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if( ctx ) {
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delete ctx;
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}
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}
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int whisper_openvino_encode(
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whisper_openvino_context* ctx,
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ggml_tensor* mel,
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ggml_tensor* out) {
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if (!ctx || !mel || !out) {
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fprintf(stderr, "%s: Error! ctx / mel / out is null\n", __func__);
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return 0;
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}
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if (ggml_n_dims(mel) != 2) {
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fprintf(stderr, "%s: Error! mel ggml_tensor expected to have n_dims=2, but it has n_dims=%d\n",
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__func__, ggml_n_dims(mel));
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return 0;
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}
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if (ggml_n_dims(out) != 2) {
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fprintf(stderr, "%s: Error! out ggml_tensor expected to have n_dims=2, but it has n_dims=%d\n",
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__func__, ggml_n_dims(out));
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return 0;
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}
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try {
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//wrap the passed-in mel ggml_tensor as an OpenVINO Tensor object, and set as input tensor to infer request
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{
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// note, we populate shape & stride dimensions in opposite order from how they are listed in ne / nb arrays
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ov::Shape input_shape = { 1, (unsigned long long)mel->ne[1], (unsigned long long)mel->ne[0] };
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ov::Strides input_strides = { mel->nb[2], mel->nb[1], mel->nb[0] };
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ov::Tensor input_tensor(ov::element::f32, input_shape, mel->data, input_strides);
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ctx->inferRequest.set_input_tensor(input_tensor);
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}
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//wrap the passed-in out ggml_tensor as an OpenVINO Tensor object, and set as output tensor to infer request
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{
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// note, we populate shape & stride dimensions in opposite order from how they are listed in ne / nb arrays
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ov::Shape output_shape = { 1, (unsigned long long)out->ne[1], (unsigned long long)out->ne[0] };
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ov::Strides output_strides = { out->nb[2], out->nb[1], out->nb[0] };
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ov::Tensor out_tensor(ov::element::f32, output_shape, out->data, output_strides);
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ctx->inferRequest.set_output_tensor(out_tensor);
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}
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//run inference
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ctx->inferRequest.infer();
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}
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catch (const std::exception& error) {
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std::cout << "in openvino encode inference execution routine: exception: " << error.what() << std::endl;
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return 0;
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}
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return 1;
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}
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