add ggml_qnn_tensor_binder
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110
ggml-qnn.cpp
110
ggml-qnn.cpp
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@ -1959,6 +1959,116 @@ static bool ggml_qnn_can_handle_op(ggml_backend_qnn_context * ctx,
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return true;
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}
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template <Qnn_TensorType_t _tensorType>
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class ggml_qnn_tensor_binder
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{
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public:
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ggml_qnn_tensor_binder(const ggml_tensor *tensor, ggml_backend_qnn_context * ctx, Qnn_GraphHandle_t graph_handle)
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: _tensor(tensor)
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, _qnn_tensor(reinterpret_cast<Qnn_Tensor_t *>(tensor->extra))
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, _context(ctx) {
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_old_dimensions = QNN_VER_PTR(*_qnn_tensor)->dimensions;
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const auto qnn_data_type = qnn_datatype_from_ggml_datatype(tensor->type);
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const bool is_npu = ctx->device == QNN_BACKEND_NPU;
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QNN_VER_PTR(*_qnn_tensor)->type = _tensorType;
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if (is_npu) {
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QNN_VER_PTR(*_qnn_tensor)->memType = QNN_TENSORMEMTYPE_MEMHANDLE;
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QNN_VER_PTR(*_qnn_tensor)->clientBuf= {.data=nullptr, .dataSize=0};
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}
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auto err = ctx->raw_interface.tensorCreateGraphTensor(graph_handle, _qnn_tensor);
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if (err != QNN_SUCCESS) {
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QNN_LOG_INFO("error = %d\n", err);
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_context = nullptr;
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return;
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}
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_dimensions[0] = (uint32_t)tensor->ne[0];
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_dimensions[1] = (uint32_t)tensor->ne[1];
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_dimensions[2] = (uint32_t)tensor->ne[2];
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_dimensions[3] = (uint32_t)tensor->ne[3];
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QNN_VER_PTR(*_qnn_tensor)->dimensions = _dimensions;
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QNN_VER_PTR(*_qnn_tensor)->rank = qnn_get_ggml_tensor_rank(tensor);
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QNN_VER_PTR(*_qnn_tensor)->dataType = qnn_data_type;
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if (is_npu) {
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qnn_instance * instance = ctx->instance;
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uint8_t *qnn_buffer = static_cast<uint8_t *>(instance->alloc_rpcmem(
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ggml_nbytes(tensor), 4)); // TODO: should we get the align param from device here?
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if (!qnn_buffer) {
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QNN_LOG_WARN("alloc rpcmem failure, %s\n", strerror(errno));
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_context = nullptr;
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return;
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} else {
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QNN_LOG_INFO("alloc rpcmem successfully\n");
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}
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instance->register_rpcmem(qnn_buffer, _qnn_tensor);
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if (_tensorType == QNN_TENSOR_TYPE_APP_WRITE || _tensorType == QNN_TENSOR_TYPE_APP_READWRITE) {
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memcpy(qnn_buffer, tensor->data, ggml_nbytes(tensor));
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}
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} else {
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QNN_VER_PTR(*_qnn_tensor)->clientBuf = {tensor->data,
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qnn_get_ggml_tensor_data_size(tensor)};
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}
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}
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ggml_qnn_tensor_binder(const ggml_tensor *tensor, Qnn_Tensor_t *qnn_tensor, ggml_backend_qnn_context * ctx)
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: _tensor(tensor)
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, _qnn_tensor(qnn_tensor)
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, _context(ctx) {
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_old_dimensions = QNN_VER_PTR(*_qnn_tensor)->dimensions;
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const auto qnn_data_type = qnn_datatype_from_ggml_datatype(tensor->type);
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const bool is_npu = ctx->device == QNN_BACKEND_NPU;
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_dimensions[0] = (uint32_t)tensor->ne[0];
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_dimensions[1] = (uint32_t)tensor->ne[1];
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_dimensions[2] = (uint32_t)tensor->ne[2];
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_dimensions[3] = (uint32_t)tensor->ne[3];
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QNN_VER_PTR(*_qnn_tensor)->dimensions = _dimensions;
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QNN_VER_PTR(*_qnn_tensor)->rank = qnn_get_ggml_tensor_rank(tensor);
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QNN_VER_PTR(*_qnn_tensor)->dataType = qnn_data_type;
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if (is_npu) {
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uint8_t * qnn_buffer = static_cast<uint8_t *>(ctx->instance->get_rpcmem_from_memhandle(
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QNN_VER_PTR(*_qnn_tensor)->memHandle));
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if (qnn_buffer) {
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memcpy(qnn_buffer, tensor->data, ggml_nbytes(tensor));
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} else {
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QNN_LOG_WARN("can't find rpcmem from qnn mem handle\n");
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}
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} else {
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QNN_VER_PTR(*_qnn_tensor)->clientBuf = {tensor->data,
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qnn_get_ggml_tensor_data_size(tensor)};
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}
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}
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~ggml_qnn_tensor_binder() {
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if (_context && _context->device == QNN_BACKEND_NPU &&
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(_tensorType == QNN_TENSOR_TYPE_APP_READWRITE || _tensorType == QNN_TENSOR_TYPE_APP_READ)) {
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uint8_t * qnn_buffer = static_cast<uint8_t *>(_context->instance->get_rpcmem_from_memhandle(
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QNN_VER_PTR(*_qnn_tensor)->memHandle));
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memcpy(_tensor->data, qnn_buffer, ggml_nbytes(_tensor));
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}
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QNN_VER_PTR(*_qnn_tensor)->dimensions = _old_dimensions;
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}
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private:
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const ggml_tensor *_tensor;
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Qnn_Tensor_t *_qnn_tensor;
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ggml_backend_qnn_context *_context;
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uint32_t *_old_dimensions;
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uint32_t _dimensions[4] = {};
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ggml_qnn_tensor_binder(const ggml_qnn_tensor_binder&) = delete;
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ggml_qnn_tensor_binder(ggml_qnn_tensor_binder&&) = delete;
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void operator=(const ggml_qnn_tensor_binder&) = delete;
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void operator=(ggml_qnn_tensor_binder&&) = delete;
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};
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//TODO: this function can be removed later because there are duplicated codes with ggml_qnn_mul_mat
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// keep it for illustrate how to implement a specified GGMPL OP using QNN API + QNN RPC
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static void ggml_qnn_add(ggml_backend_qnn_context * ctx, const ggml_tensor * src0,
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