mirror of
https://github.com/ggerganov/whisper.cpp.git
synced 2024-12-22 05:57:48 +00:00
b29b3b2924
* whisper : use ggml-cuda in mel calc, set appropriate device * whisper : forbid cuda mel calc on devices with compute < 600, workaround for #2230
365 lines
13 KiB
Plaintext
365 lines
13 KiB
Plaintext
#define CUB_IGNORE_DEPRECATED_CPP_DIALECT
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#include "whisper-mel-cuda.hpp"
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#include "whisper.h"
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#include <ggml-cuda/common.cuh>
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#include <ggml-backend-impl.h>
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#include <cuda.h>
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#include <cuda_runtime.h>
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#include <cufft.h>
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#include <cublas_v2.h>
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#include <cuComplex.h>
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#include <cub/device/device_reduce.cuh>
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#include <device_launch_parameters.h>
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#include <algorithm>
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#if defined(_MSC_VER)
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#pragma warning(disable: 4324) // added padding
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#endif
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namespace {
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static const char* cufftGetErrorString(cufftResult_t res) {
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switch (res) {
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case CUFFT_SUCCESS: return "The cuFFT operation was successful";
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case CUFFT_INVALID_PLAN: return "cuFFT was passed an invalid plan handle";
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case CUFFT_ALLOC_FAILED: return "cuFFT failed to allocate GPU or CPU memory";
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case CUFFT_INVALID_TYPE: return "No longer used";
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case CUFFT_INVALID_VALUE: return "User specified an invalid pointer or parameter";
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case CUFFT_INTERNAL_ERROR: return "Driver or internal cuFFT library error";
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case CUFFT_EXEC_FAILED: return "Failed to execute an FFT on the GPU";
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case CUFFT_SETUP_FAILED: return "The cuFFT library failed to initialize";
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case CUFFT_INVALID_SIZE: return "User specified an invalid transform size";
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case CUFFT_UNALIGNED_DATA: return "No longer used";
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case CUFFT_INCOMPLETE_PARAMETER_LIST: return "Missing parameters in call";
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case CUFFT_INVALID_DEVICE: return "Execution of a plan was on different GPU than plan creation";
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case CUFFT_PARSE_ERROR: return "Internal plan database error";
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case CUFFT_NO_WORKSPACE: return "No workspace has been provided prior to plan execution";
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case CUFFT_NOT_IMPLEMENTED: return "Function does not implement functionality for parameters given.";
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case CUFFT_LICENSE_ERROR: return "Used in previous versions.";
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case CUFFT_NOT_SUPPORTED: return "Operation is not supported for parameters given.";
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default: return "Unknown error";
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}
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}
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#define CUFFT_CHECK(err) CUDA_CHECK_GEN(err, CUFFT_SUCCESS, cufftGetErrorString)
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__global__ void k_fill_stft_input(
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const float * padded_samples,
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const int n_frames,
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const float * hann_window,
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float * stft_in
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) {
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auto y = blockIdx.y * blockDim.y + threadIdx.y;
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// if (y >= n_frames) return;
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auto x = blockIdx.x * blockDim.x + threadIdx.x;
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// if (x >= WHISPER_N_FFT) return;
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auto line = padded_samples + y * WHISPER_HOP_LENGTH;
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auto outLine = stft_in + y * WHISPER_N_FFT;
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outLine[x] = line[x] * hann_window[x];
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}
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__global__ void k_calc_magnitudes(
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const cuComplex * stft_out,
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const int n_frames,
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float * magnitudes
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) {
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auto y = blockIdx.y * blockDim.y + threadIdx.y;
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// if (y >= n_frames) return;
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auto x = blockIdx.x * blockDim.x + threadIdx.x;
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// if (x >= WHISPER_N_FFT_HALF) return;
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auto idx = y * WHISPER_N_FFT_HALF + x;
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auto r = stft_out[idx].x;
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auto i = stft_out[idx].y;
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magnitudes[idx] = r * r + i * i;
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}
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__global__ void k_calc_log_mel(
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const float * mel_data,
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const int n_mel,
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const float * max_val,
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float * log_mel
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) {
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auto x = blockIdx.x * blockDim.x + threadIdx.x;
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if (x >= n_mel) return;
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float val = mel_data[x];
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constexpr float e = 1e-10f;
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if (val < e) val = e;
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val = log10(val);
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const float max = log10(*max_val) - 8.f;
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if (val < max) val = max;
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log_mel[x] = (val + 4) / 4;
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}
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void fill_stft_input(
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const float * padded_samples,
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int n_frames,
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const float * hann_window,
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float * stft_in,
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cudaStream_t stream
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) {
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dim3 block(WHISPER_N_FFT, 1);
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dim3 grid(1, n_frames);
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k_fill_stft_input<<<grid, block, 0, stream>>>(padded_samples, n_frames, hann_window, stft_in);
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}
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void calc_magnitudes(
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const cuComplex * stft_out,
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int n_frames,
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float * magnitudes,
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cudaStream_t stream
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) {
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dim3 block(WHISPER_N_FFT_HALF, 1);
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dim3 grid(1, n_frames);
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k_calc_magnitudes<<<grid, block, 0, stream>>>(stft_out, n_frames, magnitudes);
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}
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constexpr auto LOG_MEL_PREFIX_SIZE = 256;
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void calc_log_mel(
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const float * mel_data,
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int n_mel,
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void * tempStorage,
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int tempStorageSize,
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float * log_mel,
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cudaStream_t stream
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) {
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float * max_val = reinterpret_cast<float *>(tempStorage);
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void * maxTemp = reinterpret_cast<char*>(tempStorage) + LOG_MEL_PREFIX_SIZE;
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size_t nbytes = size_t(tempStorageSize - LOG_MEL_PREFIX_SIZE);
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cub::DeviceReduce::Max(maxTemp, nbytes, mel_data, max_val, n_mel, stream);
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int block = 256;
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int grid = (n_mel + block - 1) / block;
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k_calc_log_mel<<<grid, block, 0, stream>>>(mel_data, n_mel, max_val, log_mel);
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}
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class mel_calc_cuda : public whisper_mel_calc {
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const int m_n_mel;
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ggml_backend_t m_backend = nullptr;
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int m_device = -1;
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cudaStream_t m_stream = nullptr;
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cublasHandle_t m_cublas_handle = nullptr;
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float * m_hann_window = nullptr;
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float * m_filters = nullptr;
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// max samples for which we have allocated memory for the temp working areas below (cufft, log_mel)
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int m_n_max_samples = 0;
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size_t m_cufft_workspace_size = 0;
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void * m_cufft_workspace = nullptr;
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size_t m_log_mel_temp_storage_size = 0;
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void * m_log_mel_temp_storage = nullptr;
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public:
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mel_calc_cuda(ggml_backend_t backend, const whisper_filters & filters)
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: m_n_mel(filters.n_mel)
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, m_backend(backend)
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{
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ggml_backend_cuda_context* cuda_ctx = (ggml_backend_cuda_context*)m_backend->context;
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m_device = cuda_ctx->device;
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if (ggml_cuda_info().devices[m_device].cc < 600) {
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// we've only tesed on 6.0 and higher and we've had reports of crashes on 5.0:
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// https://github.com/ggerganov/whisper.cpp/issues/2230
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// to be safe forbid anything below 6.0
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throw std::runtime_error("CUDA compute capability 6.0 or higher is required");
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}
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ggml_cuda_set_device(m_device);
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if (filters.n_fft != WHISPER_N_FFT_HALF) {
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throw std::invalid_argument("MelFilters n_frames must be WHISPER_N_FFT_HALF");
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}
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assert(filters.data.size() == filters.n_mel * WHISPER_N_FFT_HALF);
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CUDA_CHECK(cudaStreamCreate(&m_stream));
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CUBLAS_CHECK(cublasCreate(&m_cublas_handle));
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CUBLAS_CHECK(cublasSetMathMode(m_cublas_handle, CUBLAS_TF32_TENSOR_OP_MATH));
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CUBLAS_CHECK(cublasSetStream(m_cublas_handle, m_stream));
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// create Hann window
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{
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auto hw = whisper_mel_calc::hann_window();
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CUDA_CHECK(cudaMallocAsync(&m_hann_window, hw.len * sizeof(float), m_stream));
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CUDA_CHECK(cudaMemcpyAsync(m_hann_window, hw.data, hw.len * sizeof(float), cudaMemcpyHostToDevice, m_stream));
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}
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// fill filters
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{
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auto& f = filters.data;
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CUDA_CHECK(cudaMallocAsync(&m_filters, f.size() * sizeof(float), m_stream));
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CUDA_CHECK(cudaMemcpyAsync(m_filters, f.data(), f.size() * sizeof(float), cudaMemcpyHostToDevice, m_stream));
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}
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// preallocate working areas enough for the most common cases (<= 30s)
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ensure_working_areas(WHISPER_N_SAMPLES);
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}
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~mel_calc_cuda() {
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ggml_cuda_set_device(m_device);
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CUDA_CHECK(cudaStreamSynchronize(m_stream));
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CUDA_CHECK(cudaStreamDestroy(m_stream));
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CUDA_CHECK(cudaFree(m_hann_window));
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CUDA_CHECK(cudaFree(m_cufft_workspace));
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CUDA_CHECK(cudaFree(m_filters));
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CUDA_CHECK(cudaFree(m_log_mel_temp_storage));
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}
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void ensure_working_areas(int n_samples) {
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if (n_samples <= m_n_max_samples) {
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return;
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}
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const auto max_padded_samples = n_samples + WHISPER_N_SAMPLES + WHISPER_N_FFT;
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const auto max_frames = 1 + (max_padded_samples - WHISPER_N_FFT) / WHISPER_HOP_LENGTH;
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// cufft workspace
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{
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if (m_cufft_workspace) {
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CUDA_CHECK(cudaFree(m_cufft_workspace));
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m_cufft_workspace_size = 0;
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m_cufft_workspace = nullptr;
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}
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CUFFT_CHECK(cufftEstimate1d(WHISPER_N_FFT, CUFFT_R2C, max_frames, &m_cufft_workspace_size));
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CUDA_CHECK(cudaMallocAsync(&m_cufft_workspace, m_cufft_workspace_size, m_stream));
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}
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// device reduce working area
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{
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if (m_log_mel_temp_storage) {
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CUDA_CHECK(cudaFree(m_log_mel_temp_storage));
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m_log_mel_temp_storage_size = 0;
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m_log_mel_temp_storage = nullptr;
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}
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const auto max_mels = 160;
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size_t nbytes = 0;
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float* temp = nullptr;
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cub::DeviceReduce::Max(nullptr, nbytes, temp, temp, max_frames * max_mels);
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m_log_mel_temp_storage_size = nbytes + LOG_MEL_PREFIX_SIZE;
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CUDA_CHECK(cudaMallocAsync(&m_log_mel_temp_storage, m_log_mel_temp_storage_size, m_stream));
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}
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m_n_max_samples = n_samples;
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}
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virtual whisper_mel calculate(whisper_span<const float> samples, int /*n_threads*/) override {
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ggml_cuda_set_device(m_device);
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ensure_working_areas(samples.len);
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const size_t mirror_pad = WHISPER_N_FFT / 2;
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const size_t padded_size = samples.len + WHISPER_N_SAMPLES + WHISPER_N_FFT;
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// pad
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std::vector<float> padded_samples(padded_size);
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std::reverse_copy(samples.data + 1, samples.data + 1 + mirror_pad, padded_samples.begin()); // reflect
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std::copy(samples.data, samples.data + samples.len, padded_samples.begin() + mirror_pad); // copy
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// fill the rest of the data
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// it should canonically be mirrored at the end as well,
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// but we just assume the last MEL_FRAME_SIZE/2 samples are zeros
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std::fill(padded_samples.begin() + mirror_pad + samples.len, padded_samples.end(), 0.f);
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const auto n_frames = 1 + (padded_samples.size() - WHISPER_N_FFT) / WHISPER_HOP_LENGTH;
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float * cu_padded_samples = nullptr;
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CUDA_CHECK(cudaMallocAsync(&cu_padded_samples, padded_samples.size() * sizeof(float), m_stream));
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CUDA_CHECK(cudaMemcpyAsync(cu_padded_samples, padded_samples.data(), padded_samples.size() * sizeof(float), cudaMemcpyHostToDevice, m_stream));
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float * stft_in = nullptr; // contiguous buffer for stft input
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CUDA_CHECK(cudaMallocAsync(&stft_in, n_frames * WHISPER_N_FFT * sizeof(float), m_stream));
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fill_stft_input(cu_padded_samples, int(n_frames), m_hann_window, stft_in, m_stream);
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cufftComplex* stft_out;
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CUDA_CHECK(cudaMallocAsync(&stft_out, n_frames * WHISPER_N_FFT_HALF * sizeof(cufftComplex), m_stream));
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cufftHandle plan;
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CUFFT_CHECK(cufftCreate(&plan));
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CUFFT_CHECK(cufftSetAutoAllocation(plan, 0));
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{
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size_t waSize;
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CUFFT_CHECK(cufftMakePlan1d(plan, WHISPER_N_FFT, CUFFT_R2C, int(n_frames), &waSize));
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assert(waSize <= m_cufft_workspace_size);
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CUFFT_CHECK(cufftSetWorkArea(plan, m_cufft_workspace));
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CUFFT_CHECK(cufftSetStream(plan, m_stream));
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}
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CUFFT_CHECK(cufftExecR2C(plan, stft_in, stft_out));
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const auto n_mag_frames = n_frames - 1; // drop last frame
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float * magnitudes;
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CUDA_CHECK(cudaMallocAsync(&magnitudes, n_mag_frames * WHISPER_N_FFT_HALF * sizeof(float), m_stream));
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calc_magnitudes(stft_out, int(n_mag_frames), magnitudes, m_stream);
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float * mel_data = nullptr;
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CUDA_CHECK(cudaMallocAsync(&mel_data, m_n_mel * n_mag_frames * sizeof(float), m_stream));
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const float fone = 1.0f, fzero = 0.0f;
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CUBLAS_CHECK(cublasSgemm(m_cublas_handle, CUBLAS_OP_T, CUBLAS_OP_N,
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int(n_mag_frames), m_n_mel, WHISPER_N_FFT_HALF,
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&fone,
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magnitudes, WHISPER_N_FFT_HALF,
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m_filters, WHISPER_N_FFT_HALF,
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&fzero,
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mel_data, int(n_mag_frames)));
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whisper_mel ret;
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// Calculate semi-padded sample length to ensure compatibility
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int n_len_org = 1 + int(samples.len + mirror_pad - WHISPER_N_FFT) / WHISPER_HOP_LENGTH;
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whisper_mel_init(ret, m_backend, int(n_mag_frames), n_len_org, m_n_mel);
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assert(ggml_nbytes(ret.tensor) == m_n_mel * n_mag_frames * sizeof(float));
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float* log_mels = reinterpret_cast<float*>(ret.tensor->data);
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calc_log_mel(
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mel_data, int(m_n_mel * n_mag_frames),
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m_log_mel_temp_storage , int(m_log_mel_temp_storage_size),
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log_mels, m_stream);
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CUDA_CHECK(cudaStreamSynchronize(m_stream));
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// cleanup
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CUFFT_CHECK(cufftDestroy(plan));
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CUDA_CHECK(cudaFreeAsync(mel_data, m_stream));
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CUDA_CHECK(cudaFreeAsync(magnitudes, m_stream));
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CUDA_CHECK(cudaFreeAsync(stft_out, m_stream));
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CUDA_CHECK(cudaFreeAsync(stft_in, m_stream));
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CUDA_CHECK(cudaFreeAsync(cu_padded_samples, m_stream));
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return ret;
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}
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};
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}
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whisper_mel_calc * whisper_mel_calc_create_cuda(ggml_backend_t backend, const whisper_filters & filters) {
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try {
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return new mel_calc_cuda(backend, filters);
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}
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catch (...) {
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// TODO: log error (but for this we would have to expose the log state to be accessible here)
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return nullptr;
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}
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}
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