use tensor wrapper in matmul
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37bb9263dd
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36e41a1055
1 changed files with 6 additions and 53 deletions
59
ggml-qnn.cpp
59
ggml-qnn.cpp
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@ -2394,17 +2394,14 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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qnn_instance * instance = nullptr;
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std::string graph_name = "ggml_op_qnn_mul_mat";
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Qnn_GraphHandle_t graph_handle = nullptr;
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Qnn_Tensor_t * tensor_0 = nullptr;
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Qnn_Tensor_t * tensor_1 = nullptr;
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Qnn_Tensor_t * tensor_2 = nullptr;
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Qnn_Param_t qnn_params[] = {};
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enum ggml_op ggmlop = GGML_OP_MUL_MAT;
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Qnn_DataType_t src0_qnn_type = QNN_DATATYPE_FLOAT_32;
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Qnn_DataType_t src1_qnn_type = QNN_DATATYPE_FLOAT_32;
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Qnn_DataType_t dst_qnn_type = QNN_DATATYPE_FLOAT_32;
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CHECK_PARAMS(ctx, src0, src1, dst);
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tensor_0 = (Qnn_Tensor_t *) src0->extra;
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tensor_1 = (Qnn_Tensor_t *) src1->extra;
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tensor_2 = (Qnn_Tensor_t *) dst->extra;
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instance = ctx->instance;
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@ -2413,22 +2410,16 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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qnn_perf perf("ggml_qnn_mul_mat");
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perf.start();
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tensor_0 = (Qnn_Tensor_t *) src0->extra;
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tensor_1 = (Qnn_Tensor_t *) src1->extra;
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tensor_2 = (Qnn_Tensor_t *) dst->extra;
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instance = ctx->instance;
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QNN_VER_PTR(*tensor_0)->type = QNN_TENSOR_TYPE_APP_WRITE;
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QNN_VER_PTR(*tensor_1)->type = QNN_TENSOR_TYPE_APP_WRITE;
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QNN_VER_PTR(*tensor_2)->type = QNN_TENSOR_TYPE_APP_READ;
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src0_qnn_type = qnn_datatype_from_ggml_datatype(src0->type);
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src1_qnn_type = qnn_datatype_from_ggml_datatype(src1->type);
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dst_qnn_type = qnn_datatype_from_ggml_datatype(dst->type);
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uint32_t dimensions_input_0[] = {
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(uint32_t) src0->ne[0], (uint32_t) src0->ne[1], (uint32_t) src0->ne[2],
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(uint32_t) src0->ne[3]};
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uint32_t dimensions_input_1[] = {
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(uint32_t) src1->ne[0], (uint32_t) src1->ne[1], (uint32_t) src1->ne[2],
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(uint32_t) src1->ne[3]};
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@ -2444,7 +2435,6 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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graph_handle = std::get<0>(graph_item);
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}
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uint32_t * tensor_0_dimensions = QNN_VER_PTR(*tensor_0)->dimensions;
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uint32_t * tensor_1_dimensions = QNN_VER_PTR(*tensor_1)->dimensions;
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uint32_t * tensor_2_dimensions = QNN_VER_PTR(*tensor_2)->dimensions;
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@ -2508,9 +2498,6 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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}
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if (ctx->device == QNN_BACKEND_NPU) {
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QNN_VER_PTR(*tensor_0)->memType = QNN_TENSORMEMTYPE_MEMHANDLE;
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QNN_VER_PTR(*tensor_0)->clientBuf= {.data=nullptr, .dataSize=0};
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QNN_VER_PTR(*tensor_1)->memType = QNN_TENSORMEMTYPE_MEMHANDLE;
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QNN_VER_PTR(*tensor_1)->clientBuf= {.data=nullptr, .dataSize=0};
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@ -2518,9 +2505,8 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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QNN_VER_PTR(*tensor_2)->clientBuf= {.data=nullptr, .dataSize=0};
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}
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error = qnn_raw_interface.tensorCreateGraphTensor(graph_handle, tensor_0);
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if (QNN_SUCCESS != error) {
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QNN_LOG_INFO("error = %d\n", error);
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ggml_qnn_tensor_writer tensor_writer0(src0, graph_handle, ctx);
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if (!tensor_writer0.is_valid()) {
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goto failure;
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}
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error = qnn_raw_interface.tensorCreateGraphTensor(graph_handle, tensor_1);
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@ -2534,9 +2520,6 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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goto failure;
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}
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QNN_VER_PTR(*tensor_0)->dimensions = dimensions_input_0;
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QNN_VER_PTR(*tensor_0)->rank = qnn_get_ggml_tensor_rank(src0);
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QNN_VER_PTR(*tensor_0)->dataType = src0_qnn_type;
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QNN_VER_PTR(*tensor_1)->dimensions = dimensions_input_1;
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QNN_VER_PTR(*tensor_1)->rank = qnn_get_ggml_tensor_rank(src1);
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QNN_VER_PTR(*tensor_1)->dataType = src1_qnn_type;
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@ -2545,29 +2528,15 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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QNN_VER_PTR(*tensor_2)->dataType = dst_qnn_type;
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if (ctx->device != QNN_BACKEND_NPU) {
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QNN_VER_PTR(*tensor_0)->clientBuf = {src0->data,
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qnn_get_ggml_tensor_data_size(src0)};
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QNN_VER_PTR(*tensor_1)->clientBuf = {src1->data,
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qnn_get_ggml_tensor_data_size(src1)};
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QNN_VER_PTR(*tensor_2)->clientBuf = {dst->data,
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qnn_get_ggml_tensor_data_size(dst)};
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} else {
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uint8_t * qnn_buffer_0 = nullptr;
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uint8_t * qnn_buffer_1 = nullptr;
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uint8_t * qnn_buffer_2 = nullptr;
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qnn_instance * instance = ctx->instance;
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qnn_buffer_0 = static_cast<uint8_t *>(instance->alloc_rpcmem(
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ggml_nbytes(src0), 4));
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if (nullptr == qnn_buffer_0) {
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QNN_LOG_WARN("alloc rpcmem failure, %s\n", strerror(errno));
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goto failure;
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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_0, tensor_0);
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memcpy(qnn_buffer_0, src0->data, ggml_nbytes(src0));
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qnn_buffer_1 = static_cast<uint8_t *>(instance->alloc_rpcmem(
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ggml_nbytes(src1), 4));
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if (nullptr == qnn_buffer_1) {
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@ -2590,7 +2559,7 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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instance->register_rpcmem(qnn_buffer_2, tensor_2);
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}
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Qnn_Tensor_t tensor_inputs[] = {*tensor_0, *tensor_1};
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Qnn_Tensor_t tensor_inputs[] = {*tensor_writer0.get_qnn_tensor(), *tensor_1};
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Qnn_Tensor_t tensor_outputs[] = {*tensor_2};
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Qnn_OpConfig_t op_config = {
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(Qnn_OpConfigVersion_t) 1,
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@ -2632,27 +2601,20 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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memcpy(dst->data, qnn_buffer_2, ggml_nbytes(dst));
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}
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auto graph_item = std::make_tuple(graph_handle, tensor_0, tensor_1, tensor_2);
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auto graph_item = std::make_tuple(graph_handle, tensor_writer0.get_qnn_tensor(), tensor_1, tensor_2);
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instance->_qnn_graph_map[map_entry] = graph_item;
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} else {
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auto & graph_item= instance->_qnn_graph_map[map_entry];
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graph_handle = std::get<0>(graph_item);
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tensor_0 = std::get<1>(graph_item);
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ggml_qnn_tensor_writer tensor_writer0(src0, std::get<1>(graph_item), ctx);
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tensor_1 = std::get<2>(graph_item);
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tensor_2 = std::get<3>(graph_item);
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uint32_t dimensions_input_0[] = {
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(uint32_t) src0->ne[0], (uint32_t) src0->ne[1],
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(uint32_t) src0->ne[2], (uint32_t) src0->ne[3]};
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uint32_t dimensions_input_1[] = {
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(uint32_t) src1->ne[0], (uint32_t) src1->ne[1],
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(uint32_t) src1->ne[2], (uint32_t) src1->ne[3]};
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uint32_t dimensions_output[] = {
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(uint32_t) dst->ne[0], (uint32_t) dst->ne[1], (uint32_t) dst->ne[2],
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(uint32_t) dst->ne[3]};
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QNN_VER_PTR(*tensor_0)->dimensions = dimensions_input_0;
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QNN_VER_PTR(*tensor_0)->rank = qnn_get_ggml_tensor_rank(src0);
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QNN_VER_PTR(*tensor_0)->dataType = src0_qnn_type;
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QNN_VER_PTR(*tensor_1)->dimensions = dimensions_input_1;
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QNN_VER_PTR(*tensor_1)->rank = qnn_get_ggml_tensor_rank(src1);
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QNN_VER_PTR(*tensor_1)->dataType = src1_qnn_type;
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@ -2661,25 +2623,18 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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QNN_VER_PTR(*tensor_2)->dataType = dst_qnn_type;
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if (ctx->device != QNN_BACKEND_NPU) {
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QNN_VER_PTR(*tensor_0)->clientBuf = {src0->data,
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qnn_get_ggml_tensor_data_size(src0)};
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QNN_VER_PTR(*tensor_1)->clientBuf = {src1->data,
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qnn_get_ggml_tensor_data_size(src1)};
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QNN_VER_PTR(*tensor_2)->clientBuf = {dst->data,
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qnn_get_ggml_tensor_data_size(dst)};
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} else {
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uint8_t * qnn_buffer_0 = static_cast<uint8_t *>(ctx->instance->get_rpcmem_from_memhandle(
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QNN_VER_PTR(*tensor_0)->memHandle));
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if (nullptr != qnn_buffer_0)
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memcpy(qnn_buffer_0, src0->data, ggml_nbytes(src0));
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uint8_t * qnn_buffer_1 = static_cast<uint8_t *>(ctx->instance->get_rpcmem_from_memhandle(
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QNN_VER_PTR(*tensor_1)->memHandle));
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if (nullptr != qnn_buffer_1)
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memcpy(qnn_buffer_1, src1->data, ggml_nbytes(src1));
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}
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Qnn_Tensor_t tensor_inputs[] = {*tensor_0, *tensor_1};
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Qnn_Tensor_t tensor_inputs[] = {*tensor_writer0.get_qnn_tensor(), *tensor_1};
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Qnn_Tensor_t tensor_outputs[] = {*tensor_2};
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error = qnn_raw_interface.graphExecute(graph_handle,
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tensor_inputs, 2,
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@ -2705,7 +2660,6 @@ static void ggml_qnn_mul_mat(ggml_backend_qnn_context * ctx,
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failure:
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if (QNN_SUCCESS != error) {
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QNN_LOG_DEBUG("tensor0 name %s", QNN_TENSOR_GET_NAME(*tensor_0));
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QNN_LOG_DEBUG("tensor1 name %s", QNN_TENSOR_GET_NAME(*tensor_1));
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QNN_LOG_DEBUG("tensor2 name %s", QNN_TENSOR_GET_NAME(*tensor_2));
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QNN_LOG_DEBUG("%15s: type = %i (%5s) ne = %5" PRIi64 " x %5" PRIi64
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@ -2724,7 +2678,6 @@ failure:
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dst->ne[1], dst->ne[2], dst->nb[0], dst->nb[1], dst->nb[2]);
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}
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QNN_VER_PTR(*tensor_0)->dimensions = tensor_0_dimensions;
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QNN_VER_PTR(*tensor_1)->dimensions = tensor_1_dimensions;
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QNN_VER_PTR(*tensor_2)->dimensions = tensor_2_dimensions;
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perf.info();
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