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b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/__pycache__/__init__.cpython-310.pyc differ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/__init__.py b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn.h new file mode 100644 index 0000000000000000000000000000000000000000..1fcf41a697cb5e6bee6d3697d54a2fe0eafdc168 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn.h @@ -0,0 +1,78 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* cudnn : Neural Networks Library + +*/ + +#if !defined(CUDNN_H_) +#define CUDNN_H_ + +#include +#include + +#include "cudnn_version.h" +#include "cudnn_ops_infer.h" +#include "cudnn_ops_train.h" +#include "cudnn_adv_infer.h" +#include "cudnn_adv_train.h" +#include "cudnn_cnn_infer.h" +#include "cudnn_cnn_train.h" + +#include "cudnn_backend.h" + +#if defined(__cplusplus) +extern "C" { +#endif + +#if defined(__cplusplus) +} +#endif + +#endif /* CUDNN_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_adv_train_v8.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_adv_train_v8.h new file mode 100644 index 0000000000000000000000000000000000000000..6879af86b214a69138897ac78968149858b54737 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_adv_train_v8.h @@ -0,0 +1,540 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* cudnn_adv_train : cuDNN's advanced and experimental features. + +*/ + +#if !defined(CUDNN_ADV_TRAIN_H_) +#define CUDNN_ADV_TRAIN_H_ + +#include +#include + +#include "cudnn_version.h" +#include "cudnn_ops_infer.h" +#include "cudnn_ops_train.h" +#include "cudnn_adv_infer.h" + +/* These version numbers are autogenerated, do not edit manually. */ +#define CUDNN_ADV_TRAIN_MAJOR 8 +#define CUDNN_ADV_TRAIN_MINOR 9 +#define CUDNN_ADV_TRAIN_PATCH 2 + +#if (CUDNN_ADV_TRAIN_MAJOR != CUDNN_MAJOR) || (CUDNN_ADV_TRAIN_MINOR != CUDNN_MINOR) || \ + (CUDNN_ADV_TRAIN_PATCH != CUDNN_PATCHLEVEL) +#error Version mismatch in cuDNN ADV TRAIN!!! +#endif + +#if defined(__cplusplus) +extern "C" { +#endif + +typedef enum { + CUDNN_WGRAD_MODE_ADD = 0, /* add partial gradients to wgrad output buffers */ + CUDNN_WGRAD_MODE_SET = 1, /* write partial gradients to wgrad output buffers */ +} cudnnWgradMode_t; + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRNNForwardTraining(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const int seqLength, + const cudnnTensorDescriptor_t *xDesc, + const void *x, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t cxDesc, + const void *cx, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnTensorDescriptor_t *yDesc, + void *y, + const cudnnTensorDescriptor_t hyDesc, + void *hy, + const cudnnTensorDescriptor_t cyDesc, + void *cy, + void *workSpace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRNNBackwardData(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const int seqLength, + const cudnnTensorDescriptor_t *yDesc, + const void *y, + const cudnnTensorDescriptor_t *dyDesc, + const void *dy, + const cudnnTensorDescriptor_t dhyDesc, + const void *dhy, + const cudnnTensorDescriptor_t dcyDesc, + const void *dcy, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t cxDesc, + const void *cx, + const cudnnTensorDescriptor_t *dxDesc, + void *dx, + const cudnnTensorDescriptor_t dhxDesc, + void *dhx, + const cudnnTensorDescriptor_t dcxDesc, + void *dcx, + void *workSpace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnRNNBackwardData_v8(cudnnHandle_t handle, + cudnnRNNDescriptor_t rnnDesc, + const int32_t devSeqLengths[], + cudnnRNNDataDescriptor_t yDesc, + const void *y, + const void *dy, + cudnnRNNDataDescriptor_t xDesc, + void *dx, + cudnnTensorDescriptor_t hDesc, + const void *hx, + const void *dhy, + void *dhx, + cudnnTensorDescriptor_t cDesc, + const void *cx, + const void *dcy, + void *dcx, + size_t weightSpaceSize, + const void *weightSpace, + size_t workSpaceSize, + void *workSpace, + size_t reserveSpaceSize, + void *reserveSpace); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRNNBackwardWeights(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const int seqLength, + const cudnnTensorDescriptor_t *xDesc, + const void *x, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t *yDesc, + const void *y, + const void *workSpace, + size_t workSpaceSizeInBytes, + const cudnnFilterDescriptor_t dwDesc, + void *dw, + const void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnRNNBackwardWeights_v8(cudnnHandle_t handle, + cudnnRNNDescriptor_t rnnDesc, + cudnnWgradMode_t addGrad, + const int32_t devSeqLengths[], + cudnnRNNDataDescriptor_t xDesc, + const void *x, + cudnnTensorDescriptor_t hDesc, + const void *hx, + cudnnRNNDataDescriptor_t yDesc, + const void *y, + size_t weightSpaceSize, + void *dweightSpace, + size_t workSpaceSize, + void *workSpace, + size_t reserveSpaceSize, + void *reserveSpace); + +/* RNN EX API */ + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRNNForwardTrainingEx(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const cudnnRNNDataDescriptor_t xDesc, + const void *x, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t cxDesc, + const void *cx, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnRNNDataDescriptor_t yDesc, + void *y, + const cudnnTensorDescriptor_t hyDesc, + void *hy, + const cudnnTensorDescriptor_t cyDesc, + void *cy, + const cudnnRNNDataDescriptor_t kDesc, /* reserved, should pass NULL */ + const void *keys, /* reserved, should pass NULL */ + const cudnnRNNDataDescriptor_t cDesc, /* reserved, should pass NULL */ + void *cAttn, /* reserved, should pass NULL */ + const cudnnRNNDataDescriptor_t iDesc, /* reserved, should pass NULL */ + void *iAttn, /* reserved, should pass NULL */ + const cudnnRNNDataDescriptor_t qDesc, /* reserved, should pass NULL */ + void *queries, /* reserved, should pass NULL */ + void *workSpace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRNNBackwardDataEx(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const cudnnRNNDataDescriptor_t yDesc, + const void *y, + const cudnnRNNDataDescriptor_t dyDesc, + const void *dy, + const cudnnRNNDataDescriptor_t dcDesc, /* reserved, should pass NULL */ + const void *dcAttn, /* reserved, should pass NULL */ + const cudnnTensorDescriptor_t dhyDesc, + const void *dhy, + const cudnnTensorDescriptor_t dcyDesc, + const void *dcy, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t cxDesc, + const void *cx, + const cudnnRNNDataDescriptor_t dxDesc, + void *dx, + const cudnnTensorDescriptor_t dhxDesc, + void *dhx, + const cudnnTensorDescriptor_t dcxDesc, + void *dcx, + const cudnnRNNDataDescriptor_t dkDesc, /* reserved, should pass NULL */ + void *dkeys, /* reserved, should pass NULL */ + void *workSpace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRNNBackwardWeightsEx(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const cudnnRNNDataDescriptor_t xDesc, + const void *x, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnRNNDataDescriptor_t yDesc, + const void *y, + void *workSpace, + size_t workSpaceSizeInBytes, + const cudnnFilterDescriptor_t dwDesc, + void *dw, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +/* RNN FIND API */ + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetRNNForwardTrainingAlgorithmMaxCount(cudnnHandle_t handle, const cudnnRNNDescriptor_t rnnDesc, int *count); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnFindRNNForwardTrainingAlgorithmEx(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const int seqLength, + const cudnnTensorDescriptor_t *xDesc, + const void *x, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t cxDesc, + const void *cx, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnTensorDescriptor_t *yDesc, + void *y, + const cudnnTensorDescriptor_t hyDesc, + void *hy, + const cudnnTensorDescriptor_t cyDesc, + void *cy, + const float findIntensity, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnAlgorithmPerformance_t *perfResults, + void *workspace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetRNNBackwardDataAlgorithmMaxCount(cudnnHandle_t handle, const cudnnRNNDescriptor_t rnnDesc, int *count); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnFindRNNBackwardDataAlgorithmEx(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const int seqLength, + const cudnnTensorDescriptor_t *yDesc, + const void *y, + const cudnnTensorDescriptor_t *dyDesc, + const void *dy, + const cudnnTensorDescriptor_t dhyDesc, + const void *dhy, + const cudnnTensorDescriptor_t dcyDesc, + const void *dcy, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t cxDesc, + const void *cx, + const cudnnTensorDescriptor_t *dxDesc, + void *dx, + const cudnnTensorDescriptor_t dhxDesc, + void *dhx, + const cudnnTensorDescriptor_t dcxDesc, + void *dcx, + const float findIntensity, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnAlgorithmPerformance_t *perfResults, + void *workspace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetRNNBackwardWeightsAlgorithmMaxCount(cudnnHandle_t handle, const cudnnRNNDescriptor_t rnnDesc, int *count); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnFindRNNBackwardWeightsAlgorithmEx(cudnnHandle_t handle, + const cudnnRNNDescriptor_t rnnDesc, + const int seqLength, + const cudnnTensorDescriptor_t *xDesc, + const void *x, + const cudnnTensorDescriptor_t hxDesc, + const void *hx, + const cudnnTensorDescriptor_t *yDesc, + const void *y, + const float findIntensity, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnAlgorithmPerformance_t *perfResults, + const void *workspace, + size_t workSpaceSizeInBytes, + const cudnnFilterDescriptor_t dwDesc, + void *dw, + const void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnMultiHeadAttnBackwardData(cudnnHandle_t handle, + const cudnnAttnDescriptor_t attnDesc, + const int loWinIdx[], + const int hiWinIdx[], + const int devSeqLengthsDQDO[], + const int devSeqLengthsDKDV[], + const cudnnSeqDataDescriptor_t doDesc, + const void *dout, + const cudnnSeqDataDescriptor_t dqDesc, + void *dqueries, + const void *queries, + const cudnnSeqDataDescriptor_t dkDesc, + void *dkeys, + const void *keys, + const cudnnSeqDataDescriptor_t dvDesc, + void *dvalues, + const void *values, + size_t weightSizeInBytes, + const void *weights, + size_t workSpaceSizeInBytes, + void *workSpace, + size_t reserveSpaceSizeInBytes, + void *reserveSpace); + +cudnnStatus_t CUDNNWINAPI +cudnnMultiHeadAttnBackwardWeights(cudnnHandle_t handle, + const cudnnAttnDescriptor_t attnDesc, + cudnnWgradMode_t addGrad, + const cudnnSeqDataDescriptor_t qDesc, + const void *queries, + const cudnnSeqDataDescriptor_t kDesc, + const void *keys, + const cudnnSeqDataDescriptor_t vDesc, + const void *values, + const cudnnSeqDataDescriptor_t doDesc, + const void *dout, + size_t weightSizeInBytes, + const void *weights, + void *dweights, + size_t workSpaceSizeInBytes, + void *workSpace, + size_t reserveSpaceSizeInBytes, + void *reserveSpace); + +/* +* CTC (Connectionist Temporal Classification) loss descriptor create/destory/set/get functions +*/ +/* Input normalization mode for loss function */ +typedef enum { + CUDNN_LOSS_NORMALIZATION_NONE = 0, + CUDNN_LOSS_NORMALIZATION_SOFTMAX = 1, +} cudnnLossNormalizationMode_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateCTCLossDescriptor(cudnnCTCLossDescriptor_t *ctcLossDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetCTCLossDescriptor(cudnnCTCLossDescriptor_t ctcLossDesc, cudnnDataType_t compType); + +cudnnStatus_t CUDNNWINAPI +cudnnSetCTCLossDescriptorEx(cudnnCTCLossDescriptor_t ctcLossDesc, + cudnnDataType_t compType, + cudnnLossNormalizationMode_t normMode, + cudnnNanPropagation_t gradMode); + +cudnnStatus_t CUDNNWINAPI +cudnnSetCTCLossDescriptor_v8(cudnnCTCLossDescriptor_t ctcLossDesc, + cudnnDataType_t compType, + cudnnLossNormalizationMode_t normMode, + cudnnNanPropagation_t gradMode, + int maxLabelLength); + +cudnnStatus_t CUDNNWINAPI +cudnnGetCTCLossDescriptor(cudnnCTCLossDescriptor_t ctcLossDesc, cudnnDataType_t *compType); + +cudnnStatus_t CUDNNWINAPI +cudnnGetCTCLossDescriptorEx(cudnnCTCLossDescriptor_t ctcLossDesc, + cudnnDataType_t *compType, + cudnnLossNormalizationMode_t *normMode, + cudnnNanPropagation_t *gradMode); + +cudnnStatus_t CUDNNWINAPI +cudnnGetCTCLossDescriptor_v8(cudnnCTCLossDescriptor_t ctcLossDesc, + cudnnDataType_t *compType, + cudnnLossNormalizationMode_t *normMode, + cudnnNanPropagation_t *gradMode, + int *maxLabelLength); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyCTCLossDescriptor(cudnnCTCLossDescriptor_t ctcLossDesc); + +/* return the ctc costs and gradients, given the probabilities and labels */ +cudnnStatus_t CUDNNWINAPI +cudnnCTCLoss( + cudnnHandle_t handle, + const cudnnTensorDescriptor_t + probsDesc, /* Tensor descriptor for probabilities, the dimensions are T,N,A (T is the timing steps, N is the + mini batch size, A is the alphabet size) */ + const void *probs, /* probabilities after softmax, in GPU memory */ + const int hostLabels[], /* labels, in CPU memory */ + const int hostLabelLengths[], /* the length of each label, in CPU memory */ + const int hostInputLengths[], /* the lengths of timing steps in each batch, in CPU memory */ + void *costs, /* the returned costs of CTC, in GPU memory */ + const cudnnTensorDescriptor_t gradientsDesc, /* Tensor descriptor for gradients, the dimensions are T,N,A */ + void *gradients, /* the returned CTC gradients, in GPU memory, to compute costs only, set it to NULL */ + cudnnCTCLossAlgo_t algo, /* algorithm selected, supported now 0 and 1 */ + cudnnCTCLossDescriptor_t ctcLossDesc, + void *workspace, /* pointer to the workspace, in GPU memory */ + size_t workSpaceSizeInBytes); /* size of the workspace */ + +/* return the ctc costs and gradients, given the probabilities and labels */ +cudnnStatus_t CUDNNWINAPI +cudnnCTCLoss_v8( + cudnnHandle_t handle, + cudnnCTCLossAlgo_t algo, /* algorithm selected, supported now 0 and 1 */ + cudnnCTCLossDescriptor_t ctcLossDesc, + const cudnnTensorDescriptor_t + probsDesc, /* Tensor descriptor for probabilities, the dimensions are T,N,A (T is the timing steps, N is the + mini batch size, A is the alphabet size) */ + const void *probs, /* probabilities after softmax, in GPU memory */ + const int labels[], /* labels, in GPU memory */ + const int labelLengths[], /* the length of each label, in GPU memory */ + const int inputLengths[], /* the lengths of timing steps in each batch, in GPU memory */ + void *costs, /* the returned costs of CTC, in GPU memory */ + const cudnnTensorDescriptor_t gradientsDesc, /* Tensor descriptor for gradients, the dimensions are T,N,A */ + void *gradients, /* the returned CTC gradients, in GPU memory, to compute costs only, set it to NULL */ + size_t workSpaceSizeInBytes, /* size of the workspace */ + void *workspace); /* pointer to the workspace, in GPU memory */ + +/* return the workspace size needed for ctc */ +cudnnStatus_t CUDNNWINAPI +cudnnGetCTCLossWorkspaceSize( + cudnnHandle_t handle, + const cudnnTensorDescriptor_t probsDesc, /* Tensor descriptor for probabilities, the dimensions are T,N,A (T is the + timing steps, N is the mini batch size, A is the alphabet size) */ + const cudnnTensorDescriptor_t gradientsDesc, /* Tensor descriptor for gradients, the + dimensions are T,N,A. To compute costs + only, set it to NULL */ + const int *labels, /* labels, in CPU memory */ + const int *labelLengths, /* the length of each label, in CPU memory */ + const int *inputLengths, /* the lengths of timing steps in each batch, in CPU memory */ + cudnnCTCLossAlgo_t algo, /* algorithm selected, supported now 0 and 1 */ + cudnnCTCLossDescriptor_t ctcLossDesc, + size_t *sizeInBytes); /* pointer to the returned workspace size */ + +/* return the workspace size needed for ctc */ +cudnnStatus_t CUDNNWINAPI +cudnnGetCTCLossWorkspaceSize_v8( + cudnnHandle_t handle, + cudnnCTCLossAlgo_t algo, /* algorithm selected, supported now 0 and 1 */ + cudnnCTCLossDescriptor_t ctcLossDesc, + const cudnnTensorDescriptor_t probsDesc, /* Tensor descriptor for probabilities, the dimensions are T,N,A (T is the + timing steps, N is the mini batch size, A is the alphabet size) */ + const cudnnTensorDescriptor_t gradientsDesc, /* Tensor descriptor for gradients, the + dimensions are T,N,A. To compute costs + only, set it to NULL */ + size_t *sizeInBytes); /* pointer to the returned workspace size */ + +/* + * \brief Cross-library version checker. + * This function is implemented differently in each sub-library. Each sublib + * checks whether its own version matches that of its dependencies. + * \returns CUDNN_STATUS_SUCCESS if the version check passes, + * CUDNN_STATUS_VERSION_MISMATCH if the versions are inconsistent. + */ +cudnnStatus_t CUDNNWINAPI +cudnnAdvTrainVersionCheck(void); + +#if defined(__cplusplus) +} +#endif + +#endif /* CUDNN_ADV_TRAIN_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_backend.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_backend.h new file mode 100644 index 0000000000000000000000000000000000000000..b0f41de3b1e87286037ed7d0351057d93287d88f --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_backend.h @@ -0,0 +1,608 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +#ifndef _CUDNN_BACKEND_H_ +#define _CUDNN_BACKEND_H_ + +/* + * The content in this header file is under development to be included in cudnn.h in the future + * Production code should have all include of this header file remove. + */ + +#include "cudnn_ops_infer.h" +#include "cudnn_cnn_infer.h" + +/* NOTE: definition in extern "C" to be copied later to public header */ +#if defined(__cplusplus) +extern "C" { +#endif + +typedef void *cudnnBackendDescriptor_t; + +typedef struct cudnnFractionStruct { + int64_t numerator; + int64_t denominator; +} cudnnFraction_t; + +typedef enum { + CUDNN_POINTWISE_ADD = 0, + CUDNN_POINTWISE_ADD_SQUARE = 5, + CUDNN_POINTWISE_DIV = 6, + CUDNN_POINTWISE_MAX = 3, + CUDNN_POINTWISE_MIN = 2, + CUDNN_POINTWISE_MOD = 7, + CUDNN_POINTWISE_MUL = 1, + CUDNN_POINTWISE_POW = 8, + CUDNN_POINTWISE_SUB = 9, + + CUDNN_POINTWISE_ABS = 10, + CUDNN_POINTWISE_CEIL = 11, + CUDNN_POINTWISE_COS = 12, + CUDNN_POINTWISE_EXP = 13, + CUDNN_POINTWISE_FLOOR = 14, + CUDNN_POINTWISE_LOG = 15, + CUDNN_POINTWISE_NEG = 16, + CUDNN_POINTWISE_RSQRT = 17, + CUDNN_POINTWISE_SIN = 18, + CUDNN_POINTWISE_SQRT = 4, + CUDNN_POINTWISE_TAN = 19, + CUDNN_POINTWISE_ERF = 20, + CUDNN_POINTWISE_IDENTITY = 21, + CUDNN_POINTWISE_RECIPROCAL = 22, + + CUDNN_POINTWISE_RELU_FWD = 100, + CUDNN_POINTWISE_TANH_FWD = 101, + CUDNN_POINTWISE_SIGMOID_FWD = 102, + CUDNN_POINTWISE_ELU_FWD = 103, + CUDNN_POINTWISE_GELU_FWD = 104, + CUDNN_POINTWISE_SOFTPLUS_FWD = 105, + CUDNN_POINTWISE_SWISH_FWD = 106, + CUDNN_POINTWISE_GELU_APPROX_TANH_FWD = 107, + + CUDNN_POINTWISE_RELU_BWD = 200, + CUDNN_POINTWISE_TANH_BWD = 201, + CUDNN_POINTWISE_SIGMOID_BWD = 202, + CUDNN_POINTWISE_ELU_BWD = 203, + CUDNN_POINTWISE_GELU_BWD = 204, + CUDNN_POINTWISE_SOFTPLUS_BWD = 205, + CUDNN_POINTWISE_SWISH_BWD = 206, + CUDNN_POINTWISE_GELU_APPROX_TANH_BWD = 207, + + CUDNN_POINTWISE_CMP_EQ = 300, + CUDNN_POINTWISE_CMP_NEQ = 301, + CUDNN_POINTWISE_CMP_GT = 302, + CUDNN_POINTWISE_CMP_GE = 303, + CUDNN_POINTWISE_CMP_LT = 304, + CUDNN_POINTWISE_CMP_LE = 305, + + CUDNN_POINTWISE_LOGICAL_AND = 400, + CUDNN_POINTWISE_LOGICAL_OR = 401, + CUDNN_POINTWISE_LOGICAL_NOT = 402, + + CUDNN_POINTWISE_GEN_INDEX = 501, + + CUDNN_POINTWISE_BINARY_SELECT = 601, +} cudnnPointwiseMode_t; + +typedef enum { + CUDNN_RESAMPLE_NEAREST = 0, + CUDNN_RESAMPLE_BILINEAR = 1, + CUDNN_RESAMPLE_AVGPOOL = 2, + CUDNN_RESAMPLE_AVGPOOL_INCLUDE_PADDING = 2, + CUDNN_RESAMPLE_AVGPOOL_EXCLUDE_PADDING = 4, + CUDNN_RESAMPLE_MAXPOOL = 3, +} cudnnResampleMode_t; + +typedef enum { + CUDNN_SIGNAL_SET = 0, + CUDNN_SIGNAL_WAIT = 1, +} cudnnSignalMode_t; + +typedef enum { + CUDNN_GENSTATS_SUM_SQSUM = 0, +} cudnnGenStatsMode_t; + +typedef enum { + CUDNN_BN_FINALIZE_STATISTICS_TRAINING = 0, + CUDNN_BN_FINALIZE_STATISTICS_INFERENCE = 1, +} cudnnBnFinalizeStatsMode_t; + +typedef enum { + CUDNN_RNG_DISTRIBUTION_BERNOULLI, + CUDNN_RNG_DISTRIBUTION_UNIFORM, + CUDNN_RNG_DISTRIBUTION_NORMAL, +} cudnnRngDistribution_t; + +typedef enum { + CUDNN_ATTR_POINTWISE_MODE = 0, + CUDNN_ATTR_POINTWISE_MATH_PREC = 1, + CUDNN_ATTR_POINTWISE_NAN_PROPAGATION = 2, + CUDNN_ATTR_POINTWISE_RELU_LOWER_CLIP = 3, + CUDNN_ATTR_POINTWISE_RELU_UPPER_CLIP = 4, + CUDNN_ATTR_POINTWISE_RELU_LOWER_CLIP_SLOPE = 5, + CUDNN_ATTR_POINTWISE_ELU_ALPHA = 6, + CUDNN_ATTR_POINTWISE_SOFTPLUS_BETA = 7, + CUDNN_ATTR_POINTWISE_SWISH_BETA = 8, + CUDNN_ATTR_POINTWISE_AXIS = 9, + + CUDNN_ATTR_CONVOLUTION_COMP_TYPE = 100, + CUDNN_ATTR_CONVOLUTION_CONV_MODE = 101, + CUDNN_ATTR_CONVOLUTION_DILATIONS = 102, + CUDNN_ATTR_CONVOLUTION_FILTER_STRIDES = 103, + CUDNN_ATTR_CONVOLUTION_POST_PADDINGS = 104, + CUDNN_ATTR_CONVOLUTION_PRE_PADDINGS = 105, + CUDNN_ATTR_CONVOLUTION_SPATIAL_DIMS = 106, + + CUDNN_ATTR_ENGINEHEUR_MODE = 200, + CUDNN_ATTR_ENGINEHEUR_OPERATION_GRAPH = 201, + CUDNN_ATTR_ENGINEHEUR_RESULTS = 202, + + CUDNN_ATTR_ENGINECFG_ENGINE = 300, + CUDNN_ATTR_ENGINECFG_INTERMEDIATE_INFO = 301, + CUDNN_ATTR_ENGINECFG_KNOB_CHOICES = 302, + + CUDNN_ATTR_EXECUTION_PLAN_HANDLE = 400, + CUDNN_ATTR_EXECUTION_PLAN_ENGINE_CONFIG = 401, + CUDNN_ATTR_EXECUTION_PLAN_WORKSPACE_SIZE = 402, + CUDNN_ATTR_EXECUTION_PLAN_COMPUTED_INTERMEDIATE_UIDS = 403, + CUDNN_ATTR_EXECUTION_PLAN_RUN_ONLY_INTERMEDIATE_UIDS = 404, + CUDNN_ATTR_EXECUTION_PLAN_JSON_REPRESENTATION = 405, + + CUDNN_ATTR_INTERMEDIATE_INFO_UNIQUE_ID = 500, + CUDNN_ATTR_INTERMEDIATE_INFO_SIZE = 501, + CUDNN_ATTR_INTERMEDIATE_INFO_DEPENDENT_DATA_UIDS = 502, + CUDNN_ATTR_INTERMEDIATE_INFO_DEPENDENT_ATTRIBUTES = 503, + + CUDNN_ATTR_KNOB_CHOICE_KNOB_TYPE = 600, + CUDNN_ATTR_KNOB_CHOICE_KNOB_VALUE = 601, + + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_ALPHA = 700, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_BETA = 701, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_CONV_DESC = 702, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_W = 703, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_X = 704, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_Y = 705, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_ALPHA = 706, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_BETA = 707, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_CONV_DESC = 708, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_W = 709, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_DX = 710, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_DY = 711, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_ALPHA = 712, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_BETA = 713, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_CONV_DESC = 714, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_DW = 715, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_X = 716, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_DY = 717, + + CUDNN_ATTR_OPERATION_POINTWISE_PW_DESCRIPTOR = 750, + CUDNN_ATTR_OPERATION_POINTWISE_XDESC = 751, + CUDNN_ATTR_OPERATION_POINTWISE_BDESC = 752, + CUDNN_ATTR_OPERATION_POINTWISE_YDESC = 753, + CUDNN_ATTR_OPERATION_POINTWISE_ALPHA1 = 754, + CUDNN_ATTR_OPERATION_POINTWISE_ALPHA2 = 755, + CUDNN_ATTR_OPERATION_POINTWISE_DXDESC = 756, + CUDNN_ATTR_OPERATION_POINTWISE_DYDESC = 757, + CUDNN_ATTR_OPERATION_POINTWISE_TDESC = 758, + + CUDNN_ATTR_OPERATION_GENSTATS_MODE = 770, + CUDNN_ATTR_OPERATION_GENSTATS_MATH_PREC = 771, + CUDNN_ATTR_OPERATION_GENSTATS_XDESC = 772, + CUDNN_ATTR_OPERATION_GENSTATS_SUMDESC = 773, + CUDNN_ATTR_OPERATION_GENSTATS_SQSUMDESC = 774, + + CUDNN_ATTR_OPERATION_BN_FINALIZE_STATS_MODE = 780, + CUDNN_ATTR_OPERATION_BN_FINALIZE_MATH_PREC = 781, + CUDNN_ATTR_OPERATION_BN_FINALIZE_Y_SUM_DESC = 782, + CUDNN_ATTR_OPERATION_BN_FINALIZE_Y_SQ_SUM_DESC = 783, + CUDNN_ATTR_OPERATION_BN_FINALIZE_SCALE_DESC = 784, + CUDNN_ATTR_OPERATION_BN_FINALIZE_BIAS_DESC = 785, + CUDNN_ATTR_OPERATION_BN_FINALIZE_PREV_RUNNING_MEAN_DESC = 786, + CUDNN_ATTR_OPERATION_BN_FINALIZE_PREV_RUNNING_VAR_DESC = 787, + CUDNN_ATTR_OPERATION_BN_FINALIZE_UPDATED_RUNNING_MEAN_DESC = 788, + CUDNN_ATTR_OPERATION_BN_FINALIZE_UPDATED_RUNNING_VAR_DESC = 789, + CUDNN_ATTR_OPERATION_BN_FINALIZE_SAVED_MEAN_DESC = 790, + CUDNN_ATTR_OPERATION_BN_FINALIZE_SAVED_INV_STD_DESC = 791, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EQ_SCALE_DESC = 792, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EQ_BIAS_DESC = 793, + CUDNN_ATTR_OPERATION_BN_FINALIZE_ACCUM_COUNT_DESC = 794, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EPSILON_DESC = 795, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EXP_AVERATE_FACTOR_DESC = 796, + + CUDNN_ATTR_OPERATIONGRAPH_HANDLE = 800, + CUDNN_ATTR_OPERATIONGRAPH_OPS = 801, + CUDNN_ATTR_OPERATIONGRAPH_ENGINE_GLOBAL_COUNT = 802, + + CUDNN_ATTR_TENSOR_BYTE_ALIGNMENT = 900, + CUDNN_ATTR_TENSOR_DATA_TYPE = 901, + CUDNN_ATTR_TENSOR_DIMENSIONS = 902, + CUDNN_ATTR_TENSOR_STRIDES = 903, + CUDNN_ATTR_TENSOR_VECTOR_COUNT = 904, + CUDNN_ATTR_TENSOR_VECTORIZED_DIMENSION = 905, + CUDNN_ATTR_TENSOR_UNIQUE_ID = 906, + CUDNN_ATTR_TENSOR_IS_VIRTUAL = 907, + CUDNN_ATTR_TENSOR_IS_BY_VALUE = 908, + CUDNN_ATTR_TENSOR_REORDERING_MODE = 909, + CUDNN_ATTR_TENSOR_RAGGED_OFFSET_DESC = 913, + + CUDNN_ATTR_VARIANT_PACK_UNIQUE_IDS = 1000, + CUDNN_ATTR_VARIANT_PACK_DATA_POINTERS = 1001, + CUDNN_ATTR_VARIANT_PACK_INTERMEDIATES = 1002, + CUDNN_ATTR_VARIANT_PACK_WORKSPACE = 1003, + + CUDNN_ATTR_LAYOUT_INFO_TENSOR_UID = 1100, + CUDNN_ATTR_LAYOUT_INFO_TYPES = 1101, + + CUDNN_ATTR_KNOB_INFO_TYPE = 1200, + CUDNN_ATTR_KNOB_INFO_MAXIMUM_VALUE = 1201, + CUDNN_ATTR_KNOB_INFO_MINIMUM_VALUE = 1202, + CUDNN_ATTR_KNOB_INFO_STRIDE = 1203, + + CUDNN_ATTR_ENGINE_OPERATION_GRAPH = 1300, + CUDNN_ATTR_ENGINE_GLOBAL_INDEX = 1301, + CUDNN_ATTR_ENGINE_KNOB_INFO = 1302, + CUDNN_ATTR_ENGINE_NUMERICAL_NOTE = 1303, + CUDNN_ATTR_ENGINE_LAYOUT_INFO = 1304, + CUDNN_ATTR_ENGINE_BEHAVIOR_NOTE = 1305, + + CUDNN_ATTR_MATMUL_COMP_TYPE = 1500, + CUDNN_ATTR_MATMUL_PADDING_VALUE = 1503, + + CUDNN_ATTR_OPERATION_MATMUL_ADESC = 1520, + CUDNN_ATTR_OPERATION_MATMUL_BDESC = 1521, + CUDNN_ATTR_OPERATION_MATMUL_CDESC = 1522, + CUDNN_ATTR_OPERATION_MATMUL_DESC = 1523, + CUDNN_ATTR_OPERATION_MATMUL_IRREGULARLY_STRIDED_BATCH_COUNT = 1524, + CUDNN_ATTR_OPERATION_MATMUL_GEMM_M_OVERRIDE_DESC = 1525, + CUDNN_ATTR_OPERATION_MATMUL_GEMM_N_OVERRIDE_DESC = 1526, + CUDNN_ATTR_OPERATION_MATMUL_GEMM_K_OVERRIDE_DESC = 1527, + + CUDNN_ATTR_REDUCTION_OPERATOR = 1600, + CUDNN_ATTR_REDUCTION_COMP_TYPE = 1601, + + CUDNN_ATTR_OPERATION_REDUCTION_XDESC = 1610, + CUDNN_ATTR_OPERATION_REDUCTION_YDESC = 1611, + CUDNN_ATTR_OPERATION_REDUCTION_DESC = 1612, + + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_MATH_PREC = 1620, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_MEAN_DESC = 1621, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_INVSTD_DESC = 1622, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_BN_SCALE_DESC = 1623, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_X_DESC = 1624, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_DY_DESC = 1625, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_DBN_SCALE_DESC = 1626, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_DBN_BIAS_DESC = 1627, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_EQ_DY_SCALE_DESC = 1628, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_EQ_X_SCALE_DESC = 1629, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_EQ_BIAS = 1630, + + CUDNN_ATTR_RESAMPLE_MODE = 1700, + CUDNN_ATTR_RESAMPLE_COMP_TYPE = 1701, + CUDNN_ATTR_RESAMPLE_SPATIAL_DIMS = 1702, + CUDNN_ATTR_RESAMPLE_POST_PADDINGS = 1703, + CUDNN_ATTR_RESAMPLE_PRE_PADDINGS = 1704, + CUDNN_ATTR_RESAMPLE_STRIDES = 1705, + CUDNN_ATTR_RESAMPLE_WINDOW_DIMS = 1706, + CUDNN_ATTR_RESAMPLE_NAN_PROPAGATION = 1707, + CUDNN_ATTR_RESAMPLE_PADDING_MODE = 1708, + + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_XDESC = 1710, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_YDESC = 1711, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_IDXDESC = 1712, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_ALPHA = 1713, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_BETA = 1714, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_DESC = 1716, + + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_DXDESC = 1720, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_DYDESC = 1721, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_IDXDESC = 1722, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_ALPHA = 1723, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_BETA = 1724, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_DESC = 1725, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_XDESC = 1726, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_YDESC = 1727, + + CUDNN_ATTR_OPERATION_CONCAT_AXIS = 1800, + CUDNN_ATTR_OPERATION_CONCAT_INPUT_DESCS = 1801, + CUDNN_ATTR_OPERATION_CONCAT_INPLACE_INDEX = 1802, + CUDNN_ATTR_OPERATION_CONCAT_OUTPUT_DESC = 1803, + + CUDNN_ATTR_OPERATION_SIGNAL_MODE = 1900, + CUDNN_ATTR_OPERATION_SIGNAL_FLAGDESC = 1901, + CUDNN_ATTR_OPERATION_SIGNAL_VALUE = 1902, + CUDNN_ATTR_OPERATION_SIGNAL_XDESC = 1903, + CUDNN_ATTR_OPERATION_SIGNAL_YDESC = 1904, + + CUDNN_ATTR_OPERATION_NORM_FWD_MODE = 2000, + CUDNN_ATTR_OPERATION_NORM_FWD_PHASE = 2001, + CUDNN_ATTR_OPERATION_NORM_FWD_XDESC = 2002, + CUDNN_ATTR_OPERATION_NORM_FWD_MEAN_DESC = 2003, + CUDNN_ATTR_OPERATION_NORM_FWD_INV_VARIANCE_DESC = 2004, + CUDNN_ATTR_OPERATION_NORM_FWD_SCALE_DESC = 2005, + CUDNN_ATTR_OPERATION_NORM_FWD_BIAS_DESC = 2006, + CUDNN_ATTR_OPERATION_NORM_FWD_EPSILON_DESC = 2007, + CUDNN_ATTR_OPERATION_NORM_FWD_EXP_AVG_FACTOR_DESC = 2008, + CUDNN_ATTR_OPERATION_NORM_FWD_INPUT_RUNNING_MEAN_DESC = 2009, + CUDNN_ATTR_OPERATION_NORM_FWD_INPUT_RUNNING_VAR_DESC = 2010, + CUDNN_ATTR_OPERATION_NORM_FWD_OUTPUT_RUNNING_MEAN_DESC = 2011, + CUDNN_ATTR_OPERATION_NORM_FWD_OUTPUT_RUNNING_VAR_DESC = 2012, + CUDNN_ATTR_OPERATION_NORM_FWD_YDESC = 2013, + CUDNN_ATTR_OPERATION_NORM_FWD_PEER_STAT_DESCS = 2014, + + CUDNN_ATTR_OPERATION_NORM_BWD_MODE = 2100, + CUDNN_ATTR_OPERATION_NORM_BWD_XDESC = 2101, + CUDNN_ATTR_OPERATION_NORM_BWD_MEAN_DESC = 2102, + CUDNN_ATTR_OPERATION_NORM_BWD_INV_VARIANCE_DESC = 2103, + CUDNN_ATTR_OPERATION_NORM_BWD_DYDESC = 2104, + CUDNN_ATTR_OPERATION_NORM_BWD_SCALE_DESC = 2105, + CUDNN_ATTR_OPERATION_NORM_BWD_EPSILON_DESC = 2106, + CUDNN_ATTR_OPERATION_NORM_BWD_DSCALE_DESC = 2107, + CUDNN_ATTR_OPERATION_NORM_BWD_DBIAS_DESC = 2108, + CUDNN_ATTR_OPERATION_NORM_BWD_DXDESC = 2109, + CUDNN_ATTR_OPERATION_NORM_BWD_PEER_STAT_DESCS = 2110, + + CUDNN_ATTR_OPERATION_RESHAPE_XDESC = 2200, + CUDNN_ATTR_OPERATION_RESHAPE_YDESC = 2201, + + CUDNN_ATTR_RNG_DISTRIBUTION = 2300, + CUDNN_ATTR_RNG_NORMAL_DIST_MEAN = 2301, + CUDNN_ATTR_RNG_NORMAL_DIST_STANDARD_DEVIATION = 2302, + CUDNN_ATTR_RNG_UNIFORM_DIST_MAXIMUM = 2303, + CUDNN_ATTR_RNG_UNIFORM_DIST_MINIMUM = 2304, + CUDNN_ATTR_RNG_BERNOULLI_DIST_PROBABILITY = 2305, + + CUDNN_ATTR_OPERATION_RNG_YDESC = 2310, + CUDNN_ATTR_OPERATION_RNG_SEED = 2311, + CUDNN_ATTR_OPERATION_RNG_DESC = 2312, + CUDNN_ATTR_OPERATION_RNG_OFFSET_DESC = 2313, + +} cudnnBackendAttributeName_t; + +typedef enum { + CUDNN_TYPE_HANDLE = 0, + CUDNN_TYPE_DATA_TYPE, + CUDNN_TYPE_BOOLEAN, + CUDNN_TYPE_INT64, + CUDNN_TYPE_FLOAT, + CUDNN_TYPE_DOUBLE, + CUDNN_TYPE_VOID_PTR, + CUDNN_TYPE_CONVOLUTION_MODE, + CUDNN_TYPE_HEUR_MODE, + CUDNN_TYPE_KNOB_TYPE, + CUDNN_TYPE_NAN_PROPOGATION, + CUDNN_TYPE_NUMERICAL_NOTE, + CUDNN_TYPE_LAYOUT_TYPE, + CUDNN_TYPE_ATTRIB_NAME, + CUDNN_TYPE_POINTWISE_MODE, + CUDNN_TYPE_BACKEND_DESCRIPTOR, + CUDNN_TYPE_GENSTATS_MODE, + CUDNN_TYPE_BN_FINALIZE_STATS_MODE, + CUDNN_TYPE_REDUCTION_OPERATOR_TYPE, + CUDNN_TYPE_BEHAVIOR_NOTE, + CUDNN_TYPE_TENSOR_REORDERING_MODE, + CUDNN_TYPE_RESAMPLE_MODE, + CUDNN_TYPE_PADDING_MODE, + CUDNN_TYPE_INT32, + CUDNN_TYPE_CHAR, + CUDNN_TYPE_SIGNAL_MODE, + CUDNN_TYPE_FRACTION, + CUDNN_TYPE_NORM_MODE, + CUDNN_TYPE_NORM_FWD_PHASE, + CUDNN_TYPE_RNG_DISTRIBUTION +} cudnnBackendAttributeType_t; + +typedef enum { + CUDNN_BACKEND_POINTWISE_DESCRIPTOR = 0, + CUDNN_BACKEND_CONVOLUTION_DESCRIPTOR, + CUDNN_BACKEND_ENGINE_DESCRIPTOR, + CUDNN_BACKEND_ENGINECFG_DESCRIPTOR, + CUDNN_BACKEND_ENGINEHEUR_DESCRIPTOR, + CUDNN_BACKEND_EXECUTION_PLAN_DESCRIPTOR, + CUDNN_BACKEND_INTERMEDIATE_INFO_DESCRIPTOR, + CUDNN_BACKEND_KNOB_CHOICE_DESCRIPTOR, + CUDNN_BACKEND_KNOB_INFO_DESCRIPTOR, + CUDNN_BACKEND_LAYOUT_INFO_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONVOLUTION_FORWARD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONVOLUTION_BACKWARD_FILTER_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONVOLUTION_BACKWARD_DATA_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_POINTWISE_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_GEN_STATS_DESCRIPTOR, + CUDNN_BACKEND_OPERATIONGRAPH_DESCRIPTOR, + CUDNN_BACKEND_VARIANT_PACK_DESCRIPTOR, + CUDNN_BACKEND_TENSOR_DESCRIPTOR, + CUDNN_BACKEND_MATMUL_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_MATMUL_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_BN_FINALIZE_STATISTICS_DESCRIPTOR, + CUDNN_BACKEND_REDUCTION_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_REDUCTION_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_BN_BWD_WEIGHTS_DESCRIPTOR, + CUDNN_BACKEND_RESAMPLE_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RESAMPLE_FWD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RESAMPLE_BWD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONCAT_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_SIGNAL_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_NORM_FORWARD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_NORM_BACKWARD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RESHAPE_DESCRIPTOR, + CUDNN_BACKEND_RNG_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RNG_DESCRIPTOR +} cudnnBackendDescriptorType_t; + +typedef enum { + CUDNN_NUMERICAL_NOTE_TENSOR_CORE = 0, + CUDNN_NUMERICAL_NOTE_DOWN_CONVERT_INPUTS, + CUDNN_NUMERICAL_NOTE_REDUCED_PRECISION_REDUCTION, + CUDNN_NUMERICAL_NOTE_FFT, + CUDNN_NUMERICAL_NOTE_NONDETERMINISTIC, + CUDNN_NUMERICAL_NOTE_WINOGRAD, + CUDNN_NUMERICAL_NOTE_WINOGRAD_TILE_4x4, + CUDNN_NUMERICAL_NOTE_WINOGRAD_TILE_6x6, + CUDNN_NUMERICAL_NOTE_WINOGRAD_TILE_13x13, + CUDNN_NUMERICAL_NOTE_TYPE_COUNT, +} cudnnBackendNumericalNote_t; + +typedef enum { + CUDNN_BEHAVIOR_NOTE_RUNTIME_COMPILATION = 0, + CUDNN_BEHAVIOR_NOTE_REQUIRES_FILTER_INT8x32_REORDER = 1, + CUDNN_BEHAVIOR_NOTE_REQUIRES_BIAS_INT8x32_REORDER = 2, + CUDNN_BEHAVIOR_NOTE_TYPE_COUNT, +} cudnnBackendBehaviorNote_t; + +typedef enum { + CUDNN_KNOB_TYPE_SPLIT_K = 0, + CUDNN_KNOB_TYPE_SWIZZLE = 1, + CUDNN_KNOB_TYPE_TILE_SIZE = 2, + CUDNN_KNOB_TYPE_USE_TEX = 3, + CUDNN_KNOB_TYPE_EDGE = 4, + CUDNN_KNOB_TYPE_KBLOCK = 5, + CUDNN_KNOB_TYPE_LDGA = 6, + CUDNN_KNOB_TYPE_LDGB = 7, + CUDNN_KNOB_TYPE_CHUNK_K = 8, + CUDNN_KNOB_TYPE_SPLIT_H = 9, + CUDNN_KNOB_TYPE_WINO_TILE = 10, + CUDNN_KNOB_TYPE_MULTIPLY = 11, + CUDNN_KNOB_TYPE_SPLIT_K_BUF = 12, + CUDNN_KNOB_TYPE_TILEK = 13, + CUDNN_KNOB_TYPE_STAGES = 14, + CUDNN_KNOB_TYPE_REDUCTION_MODE = 15, + CUDNN_KNOB_TYPE_CTA_SPLIT_K_MODE = 16, + CUDNN_KNOB_TYPE_SPLIT_K_SLC = 17, + CUDNN_KNOB_TYPE_IDX_MODE = 18, + CUDNN_KNOB_TYPE_SLICED = 19, + CUDNN_KNOB_TYPE_SPLIT_RS = 20, + CUDNN_KNOB_TYPE_SINGLEBUFFER = 21, + CUDNN_KNOB_TYPE_LDGC = 22, + CUDNN_KNOB_TYPE_SPECFILT = 23, + CUDNN_KNOB_TYPE_KERNEL_CFG = 24, + CUDNN_KNOB_TYPE_WORKSPACE = 25, + CUDNN_KNOB_TYPE_TILE_CGA = 26, + CUDNN_KNOB_TYPE_TILE_CGA_M = 27, + CUDNN_KNOB_TYPE_TILE_CGA_N = 28, + CUDNN_KNOB_TYPE_BLOCK_SIZE = 29, + CUDNN_KNOB_TYPE_OCCUPANCY = 30, + CUDNN_KNOB_TYPE_ARRAY_SIZE_PER_THREAD = 31, + CUDNN_KNOB_TYPE_NUM_C_PER_BLOCK = 32, + CUDNN_KNOB_TYPE_COUNTS, +} cudnnBackendKnobType_t; + +typedef enum { + CUDNN_LAYOUT_TYPE_PREFERRED_NCHW = 0, + CUDNN_LAYOUT_TYPE_PREFERRED_NHWC = 1, + CUDNN_LAYOUT_TYPE_PREFERRED_PAD4CK = 2, + CUDNN_LAYOUT_TYPE_PREFERRED_PAD8CK = 3, + CUDNN_LAYOUT_TYPE_COUNT = 4, +} cudnnBackendLayoutType_t; + +typedef enum { + CUDNN_HEUR_MODE_INSTANT = 0, + CUDNN_HEUR_MODE_B = 1, + CUDNN_HEUR_MODE_FALLBACK = 2, + CUDNN_HEUR_MODE_A = 3, + CUDNN_HEUR_MODES_COUNT = 4, +} cudnnBackendHeurMode_t; + +typedef enum { + CUDNN_TENSOR_REORDERING_NONE = 0, + CUDNN_TENSOR_REORDERING_INT8x32 = 1, + CUDNN_TENSOR_REORDERING_F16x16 = 2, +} cudnnBackendTensorReordering_t; + +typedef enum { + CUDNN_ZERO_PAD = 0, + CUDNN_NEG_INF_PAD = 1, + CUDNN_EDGE_VAL_PAD = 2, +} cudnnPaddingMode_t; + +typedef enum { + CUDNN_LAYER_NORM = 0, + CUDNN_INSTANCE_NORM = 1, + CUDNN_BATCH_NORM = 2, + CUDNN_GROUP_NORM = 3, +} cudnnBackendNormMode_t; + +typedef enum { + CUDNN_NORM_FWD_INFERENCE = 0, + CUDNN_NORM_FWD_TRAINING = 1, +} cudnnBackendNormFwdPhase_t; + +cudnnStatus_t CUDNNWINAPI +cudnnBackendCreateDescriptor(cudnnBackendDescriptorType_t descriptorType, cudnnBackendDescriptor_t *descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendDestroyDescriptor(cudnnBackendDescriptor_t descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendInitialize(cudnnBackendDescriptor_t descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendFinalize(cudnnBackendDescriptor_t descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendSetAttribute(cudnnBackendDescriptor_t descriptor, + cudnnBackendAttributeName_t attributeName, + cudnnBackendAttributeType_t attributeType, + int64_t elementCount, + const void *arrayOfElements); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendGetAttribute(cudnnBackendDescriptor_t const descriptor, + cudnnBackendAttributeName_t attributeName, + cudnnBackendAttributeType_t attributeType, + int64_t requestedElementCount, + int64_t *elementCount, + void *arrayOfElements); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendExecute(cudnnHandle_t handle, cudnnBackendDescriptor_t executionPlan, cudnnBackendDescriptor_t variantPack); + +#if defined(__cplusplus) +} +#endif + +#endif /* _CUDNN_BACKEND_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_backend_v8.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_backend_v8.h new file mode 100644 index 0000000000000000000000000000000000000000..b0f41de3b1e87286037ed7d0351057d93287d88f --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_backend_v8.h @@ -0,0 +1,608 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +#ifndef _CUDNN_BACKEND_H_ +#define _CUDNN_BACKEND_H_ + +/* + * The content in this header file is under development to be included in cudnn.h in the future + * Production code should have all include of this header file remove. + */ + +#include "cudnn_ops_infer.h" +#include "cudnn_cnn_infer.h" + +/* NOTE: definition in extern "C" to be copied later to public header */ +#if defined(__cplusplus) +extern "C" { +#endif + +typedef void *cudnnBackendDescriptor_t; + +typedef struct cudnnFractionStruct { + int64_t numerator; + int64_t denominator; +} cudnnFraction_t; + +typedef enum { + CUDNN_POINTWISE_ADD = 0, + CUDNN_POINTWISE_ADD_SQUARE = 5, + CUDNN_POINTWISE_DIV = 6, + CUDNN_POINTWISE_MAX = 3, + CUDNN_POINTWISE_MIN = 2, + CUDNN_POINTWISE_MOD = 7, + CUDNN_POINTWISE_MUL = 1, + CUDNN_POINTWISE_POW = 8, + CUDNN_POINTWISE_SUB = 9, + + CUDNN_POINTWISE_ABS = 10, + CUDNN_POINTWISE_CEIL = 11, + CUDNN_POINTWISE_COS = 12, + CUDNN_POINTWISE_EXP = 13, + CUDNN_POINTWISE_FLOOR = 14, + CUDNN_POINTWISE_LOG = 15, + CUDNN_POINTWISE_NEG = 16, + CUDNN_POINTWISE_RSQRT = 17, + CUDNN_POINTWISE_SIN = 18, + CUDNN_POINTWISE_SQRT = 4, + CUDNN_POINTWISE_TAN = 19, + CUDNN_POINTWISE_ERF = 20, + CUDNN_POINTWISE_IDENTITY = 21, + CUDNN_POINTWISE_RECIPROCAL = 22, + + CUDNN_POINTWISE_RELU_FWD = 100, + CUDNN_POINTWISE_TANH_FWD = 101, + CUDNN_POINTWISE_SIGMOID_FWD = 102, + CUDNN_POINTWISE_ELU_FWD = 103, + CUDNN_POINTWISE_GELU_FWD = 104, + CUDNN_POINTWISE_SOFTPLUS_FWD = 105, + CUDNN_POINTWISE_SWISH_FWD = 106, + CUDNN_POINTWISE_GELU_APPROX_TANH_FWD = 107, + + CUDNN_POINTWISE_RELU_BWD = 200, + CUDNN_POINTWISE_TANH_BWD = 201, + CUDNN_POINTWISE_SIGMOID_BWD = 202, + CUDNN_POINTWISE_ELU_BWD = 203, + CUDNN_POINTWISE_GELU_BWD = 204, + CUDNN_POINTWISE_SOFTPLUS_BWD = 205, + CUDNN_POINTWISE_SWISH_BWD = 206, + CUDNN_POINTWISE_GELU_APPROX_TANH_BWD = 207, + + CUDNN_POINTWISE_CMP_EQ = 300, + CUDNN_POINTWISE_CMP_NEQ = 301, + CUDNN_POINTWISE_CMP_GT = 302, + CUDNN_POINTWISE_CMP_GE = 303, + CUDNN_POINTWISE_CMP_LT = 304, + CUDNN_POINTWISE_CMP_LE = 305, + + CUDNN_POINTWISE_LOGICAL_AND = 400, + CUDNN_POINTWISE_LOGICAL_OR = 401, + CUDNN_POINTWISE_LOGICAL_NOT = 402, + + CUDNN_POINTWISE_GEN_INDEX = 501, + + CUDNN_POINTWISE_BINARY_SELECT = 601, +} cudnnPointwiseMode_t; + +typedef enum { + CUDNN_RESAMPLE_NEAREST = 0, + CUDNN_RESAMPLE_BILINEAR = 1, + CUDNN_RESAMPLE_AVGPOOL = 2, + CUDNN_RESAMPLE_AVGPOOL_INCLUDE_PADDING = 2, + CUDNN_RESAMPLE_AVGPOOL_EXCLUDE_PADDING = 4, + CUDNN_RESAMPLE_MAXPOOL = 3, +} cudnnResampleMode_t; + +typedef enum { + CUDNN_SIGNAL_SET = 0, + CUDNN_SIGNAL_WAIT = 1, +} cudnnSignalMode_t; + +typedef enum { + CUDNN_GENSTATS_SUM_SQSUM = 0, +} cudnnGenStatsMode_t; + +typedef enum { + CUDNN_BN_FINALIZE_STATISTICS_TRAINING = 0, + CUDNN_BN_FINALIZE_STATISTICS_INFERENCE = 1, +} cudnnBnFinalizeStatsMode_t; + +typedef enum { + CUDNN_RNG_DISTRIBUTION_BERNOULLI, + CUDNN_RNG_DISTRIBUTION_UNIFORM, + CUDNN_RNG_DISTRIBUTION_NORMAL, +} cudnnRngDistribution_t; + +typedef enum { + CUDNN_ATTR_POINTWISE_MODE = 0, + CUDNN_ATTR_POINTWISE_MATH_PREC = 1, + CUDNN_ATTR_POINTWISE_NAN_PROPAGATION = 2, + CUDNN_ATTR_POINTWISE_RELU_LOWER_CLIP = 3, + CUDNN_ATTR_POINTWISE_RELU_UPPER_CLIP = 4, + CUDNN_ATTR_POINTWISE_RELU_LOWER_CLIP_SLOPE = 5, + CUDNN_ATTR_POINTWISE_ELU_ALPHA = 6, + CUDNN_ATTR_POINTWISE_SOFTPLUS_BETA = 7, + CUDNN_ATTR_POINTWISE_SWISH_BETA = 8, + CUDNN_ATTR_POINTWISE_AXIS = 9, + + CUDNN_ATTR_CONVOLUTION_COMP_TYPE = 100, + CUDNN_ATTR_CONVOLUTION_CONV_MODE = 101, + CUDNN_ATTR_CONVOLUTION_DILATIONS = 102, + CUDNN_ATTR_CONVOLUTION_FILTER_STRIDES = 103, + CUDNN_ATTR_CONVOLUTION_POST_PADDINGS = 104, + CUDNN_ATTR_CONVOLUTION_PRE_PADDINGS = 105, + CUDNN_ATTR_CONVOLUTION_SPATIAL_DIMS = 106, + + CUDNN_ATTR_ENGINEHEUR_MODE = 200, + CUDNN_ATTR_ENGINEHEUR_OPERATION_GRAPH = 201, + CUDNN_ATTR_ENGINEHEUR_RESULTS = 202, + + CUDNN_ATTR_ENGINECFG_ENGINE = 300, + CUDNN_ATTR_ENGINECFG_INTERMEDIATE_INFO = 301, + CUDNN_ATTR_ENGINECFG_KNOB_CHOICES = 302, + + CUDNN_ATTR_EXECUTION_PLAN_HANDLE = 400, + CUDNN_ATTR_EXECUTION_PLAN_ENGINE_CONFIG = 401, + CUDNN_ATTR_EXECUTION_PLAN_WORKSPACE_SIZE = 402, + CUDNN_ATTR_EXECUTION_PLAN_COMPUTED_INTERMEDIATE_UIDS = 403, + CUDNN_ATTR_EXECUTION_PLAN_RUN_ONLY_INTERMEDIATE_UIDS = 404, + CUDNN_ATTR_EXECUTION_PLAN_JSON_REPRESENTATION = 405, + + CUDNN_ATTR_INTERMEDIATE_INFO_UNIQUE_ID = 500, + CUDNN_ATTR_INTERMEDIATE_INFO_SIZE = 501, + CUDNN_ATTR_INTERMEDIATE_INFO_DEPENDENT_DATA_UIDS = 502, + CUDNN_ATTR_INTERMEDIATE_INFO_DEPENDENT_ATTRIBUTES = 503, + + CUDNN_ATTR_KNOB_CHOICE_KNOB_TYPE = 600, + CUDNN_ATTR_KNOB_CHOICE_KNOB_VALUE = 601, + + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_ALPHA = 700, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_BETA = 701, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_CONV_DESC = 702, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_W = 703, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_X = 704, + CUDNN_ATTR_OPERATION_CONVOLUTION_FORWARD_Y = 705, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_ALPHA = 706, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_BETA = 707, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_CONV_DESC = 708, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_W = 709, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_DX = 710, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_DATA_DY = 711, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_ALPHA = 712, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_BETA = 713, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_CONV_DESC = 714, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_DW = 715, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_X = 716, + CUDNN_ATTR_OPERATION_CONVOLUTION_BWD_FILTER_DY = 717, + + CUDNN_ATTR_OPERATION_POINTWISE_PW_DESCRIPTOR = 750, + CUDNN_ATTR_OPERATION_POINTWISE_XDESC = 751, + CUDNN_ATTR_OPERATION_POINTWISE_BDESC = 752, + CUDNN_ATTR_OPERATION_POINTWISE_YDESC = 753, + CUDNN_ATTR_OPERATION_POINTWISE_ALPHA1 = 754, + CUDNN_ATTR_OPERATION_POINTWISE_ALPHA2 = 755, + CUDNN_ATTR_OPERATION_POINTWISE_DXDESC = 756, + CUDNN_ATTR_OPERATION_POINTWISE_DYDESC = 757, + CUDNN_ATTR_OPERATION_POINTWISE_TDESC = 758, + + CUDNN_ATTR_OPERATION_GENSTATS_MODE = 770, + CUDNN_ATTR_OPERATION_GENSTATS_MATH_PREC = 771, + CUDNN_ATTR_OPERATION_GENSTATS_XDESC = 772, + CUDNN_ATTR_OPERATION_GENSTATS_SUMDESC = 773, + CUDNN_ATTR_OPERATION_GENSTATS_SQSUMDESC = 774, + + CUDNN_ATTR_OPERATION_BN_FINALIZE_STATS_MODE = 780, + CUDNN_ATTR_OPERATION_BN_FINALIZE_MATH_PREC = 781, + CUDNN_ATTR_OPERATION_BN_FINALIZE_Y_SUM_DESC = 782, + CUDNN_ATTR_OPERATION_BN_FINALIZE_Y_SQ_SUM_DESC = 783, + CUDNN_ATTR_OPERATION_BN_FINALIZE_SCALE_DESC = 784, + CUDNN_ATTR_OPERATION_BN_FINALIZE_BIAS_DESC = 785, + CUDNN_ATTR_OPERATION_BN_FINALIZE_PREV_RUNNING_MEAN_DESC = 786, + CUDNN_ATTR_OPERATION_BN_FINALIZE_PREV_RUNNING_VAR_DESC = 787, + CUDNN_ATTR_OPERATION_BN_FINALIZE_UPDATED_RUNNING_MEAN_DESC = 788, + CUDNN_ATTR_OPERATION_BN_FINALIZE_UPDATED_RUNNING_VAR_DESC = 789, + CUDNN_ATTR_OPERATION_BN_FINALIZE_SAVED_MEAN_DESC = 790, + CUDNN_ATTR_OPERATION_BN_FINALIZE_SAVED_INV_STD_DESC = 791, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EQ_SCALE_DESC = 792, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EQ_BIAS_DESC = 793, + CUDNN_ATTR_OPERATION_BN_FINALIZE_ACCUM_COUNT_DESC = 794, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EPSILON_DESC = 795, + CUDNN_ATTR_OPERATION_BN_FINALIZE_EXP_AVERATE_FACTOR_DESC = 796, + + CUDNN_ATTR_OPERATIONGRAPH_HANDLE = 800, + CUDNN_ATTR_OPERATIONGRAPH_OPS = 801, + CUDNN_ATTR_OPERATIONGRAPH_ENGINE_GLOBAL_COUNT = 802, + + CUDNN_ATTR_TENSOR_BYTE_ALIGNMENT = 900, + CUDNN_ATTR_TENSOR_DATA_TYPE = 901, + CUDNN_ATTR_TENSOR_DIMENSIONS = 902, + CUDNN_ATTR_TENSOR_STRIDES = 903, + CUDNN_ATTR_TENSOR_VECTOR_COUNT = 904, + CUDNN_ATTR_TENSOR_VECTORIZED_DIMENSION = 905, + CUDNN_ATTR_TENSOR_UNIQUE_ID = 906, + CUDNN_ATTR_TENSOR_IS_VIRTUAL = 907, + CUDNN_ATTR_TENSOR_IS_BY_VALUE = 908, + CUDNN_ATTR_TENSOR_REORDERING_MODE = 909, + CUDNN_ATTR_TENSOR_RAGGED_OFFSET_DESC = 913, + + CUDNN_ATTR_VARIANT_PACK_UNIQUE_IDS = 1000, + CUDNN_ATTR_VARIANT_PACK_DATA_POINTERS = 1001, + CUDNN_ATTR_VARIANT_PACK_INTERMEDIATES = 1002, + CUDNN_ATTR_VARIANT_PACK_WORKSPACE = 1003, + + CUDNN_ATTR_LAYOUT_INFO_TENSOR_UID = 1100, + CUDNN_ATTR_LAYOUT_INFO_TYPES = 1101, + + CUDNN_ATTR_KNOB_INFO_TYPE = 1200, + CUDNN_ATTR_KNOB_INFO_MAXIMUM_VALUE = 1201, + CUDNN_ATTR_KNOB_INFO_MINIMUM_VALUE = 1202, + CUDNN_ATTR_KNOB_INFO_STRIDE = 1203, + + CUDNN_ATTR_ENGINE_OPERATION_GRAPH = 1300, + CUDNN_ATTR_ENGINE_GLOBAL_INDEX = 1301, + CUDNN_ATTR_ENGINE_KNOB_INFO = 1302, + CUDNN_ATTR_ENGINE_NUMERICAL_NOTE = 1303, + CUDNN_ATTR_ENGINE_LAYOUT_INFO = 1304, + CUDNN_ATTR_ENGINE_BEHAVIOR_NOTE = 1305, + + CUDNN_ATTR_MATMUL_COMP_TYPE = 1500, + CUDNN_ATTR_MATMUL_PADDING_VALUE = 1503, + + CUDNN_ATTR_OPERATION_MATMUL_ADESC = 1520, + CUDNN_ATTR_OPERATION_MATMUL_BDESC = 1521, + CUDNN_ATTR_OPERATION_MATMUL_CDESC = 1522, + CUDNN_ATTR_OPERATION_MATMUL_DESC = 1523, + CUDNN_ATTR_OPERATION_MATMUL_IRREGULARLY_STRIDED_BATCH_COUNT = 1524, + CUDNN_ATTR_OPERATION_MATMUL_GEMM_M_OVERRIDE_DESC = 1525, + CUDNN_ATTR_OPERATION_MATMUL_GEMM_N_OVERRIDE_DESC = 1526, + CUDNN_ATTR_OPERATION_MATMUL_GEMM_K_OVERRIDE_DESC = 1527, + + CUDNN_ATTR_REDUCTION_OPERATOR = 1600, + CUDNN_ATTR_REDUCTION_COMP_TYPE = 1601, + + CUDNN_ATTR_OPERATION_REDUCTION_XDESC = 1610, + CUDNN_ATTR_OPERATION_REDUCTION_YDESC = 1611, + CUDNN_ATTR_OPERATION_REDUCTION_DESC = 1612, + + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_MATH_PREC = 1620, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_MEAN_DESC = 1621, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_INVSTD_DESC = 1622, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_BN_SCALE_DESC = 1623, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_X_DESC = 1624, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_DY_DESC = 1625, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_DBN_SCALE_DESC = 1626, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_DBN_BIAS_DESC = 1627, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_EQ_DY_SCALE_DESC = 1628, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_EQ_X_SCALE_DESC = 1629, + CUDNN_ATTR_OPERATION_BN_BWD_WEIGHTS_EQ_BIAS = 1630, + + CUDNN_ATTR_RESAMPLE_MODE = 1700, + CUDNN_ATTR_RESAMPLE_COMP_TYPE = 1701, + CUDNN_ATTR_RESAMPLE_SPATIAL_DIMS = 1702, + CUDNN_ATTR_RESAMPLE_POST_PADDINGS = 1703, + CUDNN_ATTR_RESAMPLE_PRE_PADDINGS = 1704, + CUDNN_ATTR_RESAMPLE_STRIDES = 1705, + CUDNN_ATTR_RESAMPLE_WINDOW_DIMS = 1706, + CUDNN_ATTR_RESAMPLE_NAN_PROPAGATION = 1707, + CUDNN_ATTR_RESAMPLE_PADDING_MODE = 1708, + + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_XDESC = 1710, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_YDESC = 1711, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_IDXDESC = 1712, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_ALPHA = 1713, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_BETA = 1714, + CUDNN_ATTR_OPERATION_RESAMPLE_FWD_DESC = 1716, + + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_DXDESC = 1720, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_DYDESC = 1721, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_IDXDESC = 1722, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_ALPHA = 1723, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_BETA = 1724, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_DESC = 1725, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_XDESC = 1726, + CUDNN_ATTR_OPERATION_RESAMPLE_BWD_YDESC = 1727, + + CUDNN_ATTR_OPERATION_CONCAT_AXIS = 1800, + CUDNN_ATTR_OPERATION_CONCAT_INPUT_DESCS = 1801, + CUDNN_ATTR_OPERATION_CONCAT_INPLACE_INDEX = 1802, + CUDNN_ATTR_OPERATION_CONCAT_OUTPUT_DESC = 1803, + + CUDNN_ATTR_OPERATION_SIGNAL_MODE = 1900, + CUDNN_ATTR_OPERATION_SIGNAL_FLAGDESC = 1901, + CUDNN_ATTR_OPERATION_SIGNAL_VALUE = 1902, + CUDNN_ATTR_OPERATION_SIGNAL_XDESC = 1903, + CUDNN_ATTR_OPERATION_SIGNAL_YDESC = 1904, + + CUDNN_ATTR_OPERATION_NORM_FWD_MODE = 2000, + CUDNN_ATTR_OPERATION_NORM_FWD_PHASE = 2001, + CUDNN_ATTR_OPERATION_NORM_FWD_XDESC = 2002, + CUDNN_ATTR_OPERATION_NORM_FWD_MEAN_DESC = 2003, + CUDNN_ATTR_OPERATION_NORM_FWD_INV_VARIANCE_DESC = 2004, + CUDNN_ATTR_OPERATION_NORM_FWD_SCALE_DESC = 2005, + CUDNN_ATTR_OPERATION_NORM_FWD_BIAS_DESC = 2006, + CUDNN_ATTR_OPERATION_NORM_FWD_EPSILON_DESC = 2007, + CUDNN_ATTR_OPERATION_NORM_FWD_EXP_AVG_FACTOR_DESC = 2008, + CUDNN_ATTR_OPERATION_NORM_FWD_INPUT_RUNNING_MEAN_DESC = 2009, + CUDNN_ATTR_OPERATION_NORM_FWD_INPUT_RUNNING_VAR_DESC = 2010, + CUDNN_ATTR_OPERATION_NORM_FWD_OUTPUT_RUNNING_MEAN_DESC = 2011, + CUDNN_ATTR_OPERATION_NORM_FWD_OUTPUT_RUNNING_VAR_DESC = 2012, + CUDNN_ATTR_OPERATION_NORM_FWD_YDESC = 2013, + CUDNN_ATTR_OPERATION_NORM_FWD_PEER_STAT_DESCS = 2014, + + CUDNN_ATTR_OPERATION_NORM_BWD_MODE = 2100, + CUDNN_ATTR_OPERATION_NORM_BWD_XDESC = 2101, + CUDNN_ATTR_OPERATION_NORM_BWD_MEAN_DESC = 2102, + CUDNN_ATTR_OPERATION_NORM_BWD_INV_VARIANCE_DESC = 2103, + CUDNN_ATTR_OPERATION_NORM_BWD_DYDESC = 2104, + CUDNN_ATTR_OPERATION_NORM_BWD_SCALE_DESC = 2105, + CUDNN_ATTR_OPERATION_NORM_BWD_EPSILON_DESC = 2106, + CUDNN_ATTR_OPERATION_NORM_BWD_DSCALE_DESC = 2107, + CUDNN_ATTR_OPERATION_NORM_BWD_DBIAS_DESC = 2108, + CUDNN_ATTR_OPERATION_NORM_BWD_DXDESC = 2109, + CUDNN_ATTR_OPERATION_NORM_BWD_PEER_STAT_DESCS = 2110, + + CUDNN_ATTR_OPERATION_RESHAPE_XDESC = 2200, + CUDNN_ATTR_OPERATION_RESHAPE_YDESC = 2201, + + CUDNN_ATTR_RNG_DISTRIBUTION = 2300, + CUDNN_ATTR_RNG_NORMAL_DIST_MEAN = 2301, + CUDNN_ATTR_RNG_NORMAL_DIST_STANDARD_DEVIATION = 2302, + CUDNN_ATTR_RNG_UNIFORM_DIST_MAXIMUM = 2303, + CUDNN_ATTR_RNG_UNIFORM_DIST_MINIMUM = 2304, + CUDNN_ATTR_RNG_BERNOULLI_DIST_PROBABILITY = 2305, + + CUDNN_ATTR_OPERATION_RNG_YDESC = 2310, + CUDNN_ATTR_OPERATION_RNG_SEED = 2311, + CUDNN_ATTR_OPERATION_RNG_DESC = 2312, + CUDNN_ATTR_OPERATION_RNG_OFFSET_DESC = 2313, + +} cudnnBackendAttributeName_t; + +typedef enum { + CUDNN_TYPE_HANDLE = 0, + CUDNN_TYPE_DATA_TYPE, + CUDNN_TYPE_BOOLEAN, + CUDNN_TYPE_INT64, + CUDNN_TYPE_FLOAT, + CUDNN_TYPE_DOUBLE, + CUDNN_TYPE_VOID_PTR, + CUDNN_TYPE_CONVOLUTION_MODE, + CUDNN_TYPE_HEUR_MODE, + CUDNN_TYPE_KNOB_TYPE, + CUDNN_TYPE_NAN_PROPOGATION, + CUDNN_TYPE_NUMERICAL_NOTE, + CUDNN_TYPE_LAYOUT_TYPE, + CUDNN_TYPE_ATTRIB_NAME, + CUDNN_TYPE_POINTWISE_MODE, + CUDNN_TYPE_BACKEND_DESCRIPTOR, + CUDNN_TYPE_GENSTATS_MODE, + CUDNN_TYPE_BN_FINALIZE_STATS_MODE, + CUDNN_TYPE_REDUCTION_OPERATOR_TYPE, + CUDNN_TYPE_BEHAVIOR_NOTE, + CUDNN_TYPE_TENSOR_REORDERING_MODE, + CUDNN_TYPE_RESAMPLE_MODE, + CUDNN_TYPE_PADDING_MODE, + CUDNN_TYPE_INT32, + CUDNN_TYPE_CHAR, + CUDNN_TYPE_SIGNAL_MODE, + CUDNN_TYPE_FRACTION, + CUDNN_TYPE_NORM_MODE, + CUDNN_TYPE_NORM_FWD_PHASE, + CUDNN_TYPE_RNG_DISTRIBUTION +} cudnnBackendAttributeType_t; + +typedef enum { + CUDNN_BACKEND_POINTWISE_DESCRIPTOR = 0, + CUDNN_BACKEND_CONVOLUTION_DESCRIPTOR, + CUDNN_BACKEND_ENGINE_DESCRIPTOR, + CUDNN_BACKEND_ENGINECFG_DESCRIPTOR, + CUDNN_BACKEND_ENGINEHEUR_DESCRIPTOR, + CUDNN_BACKEND_EXECUTION_PLAN_DESCRIPTOR, + CUDNN_BACKEND_INTERMEDIATE_INFO_DESCRIPTOR, + CUDNN_BACKEND_KNOB_CHOICE_DESCRIPTOR, + CUDNN_BACKEND_KNOB_INFO_DESCRIPTOR, + CUDNN_BACKEND_LAYOUT_INFO_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONVOLUTION_FORWARD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONVOLUTION_BACKWARD_FILTER_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONVOLUTION_BACKWARD_DATA_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_POINTWISE_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_GEN_STATS_DESCRIPTOR, + CUDNN_BACKEND_OPERATIONGRAPH_DESCRIPTOR, + CUDNN_BACKEND_VARIANT_PACK_DESCRIPTOR, + CUDNN_BACKEND_TENSOR_DESCRIPTOR, + CUDNN_BACKEND_MATMUL_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_MATMUL_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_BN_FINALIZE_STATISTICS_DESCRIPTOR, + CUDNN_BACKEND_REDUCTION_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_REDUCTION_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_BN_BWD_WEIGHTS_DESCRIPTOR, + CUDNN_BACKEND_RESAMPLE_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RESAMPLE_FWD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RESAMPLE_BWD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_CONCAT_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_SIGNAL_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_NORM_FORWARD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_NORM_BACKWARD_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RESHAPE_DESCRIPTOR, + CUDNN_BACKEND_RNG_DESCRIPTOR, + CUDNN_BACKEND_OPERATION_RNG_DESCRIPTOR +} cudnnBackendDescriptorType_t; + +typedef enum { + CUDNN_NUMERICAL_NOTE_TENSOR_CORE = 0, + CUDNN_NUMERICAL_NOTE_DOWN_CONVERT_INPUTS, + CUDNN_NUMERICAL_NOTE_REDUCED_PRECISION_REDUCTION, + CUDNN_NUMERICAL_NOTE_FFT, + CUDNN_NUMERICAL_NOTE_NONDETERMINISTIC, + CUDNN_NUMERICAL_NOTE_WINOGRAD, + CUDNN_NUMERICAL_NOTE_WINOGRAD_TILE_4x4, + CUDNN_NUMERICAL_NOTE_WINOGRAD_TILE_6x6, + CUDNN_NUMERICAL_NOTE_WINOGRAD_TILE_13x13, + CUDNN_NUMERICAL_NOTE_TYPE_COUNT, +} cudnnBackendNumericalNote_t; + +typedef enum { + CUDNN_BEHAVIOR_NOTE_RUNTIME_COMPILATION = 0, + CUDNN_BEHAVIOR_NOTE_REQUIRES_FILTER_INT8x32_REORDER = 1, + CUDNN_BEHAVIOR_NOTE_REQUIRES_BIAS_INT8x32_REORDER = 2, + CUDNN_BEHAVIOR_NOTE_TYPE_COUNT, +} cudnnBackendBehaviorNote_t; + +typedef enum { + CUDNN_KNOB_TYPE_SPLIT_K = 0, + CUDNN_KNOB_TYPE_SWIZZLE = 1, + CUDNN_KNOB_TYPE_TILE_SIZE = 2, + CUDNN_KNOB_TYPE_USE_TEX = 3, + CUDNN_KNOB_TYPE_EDGE = 4, + CUDNN_KNOB_TYPE_KBLOCK = 5, + CUDNN_KNOB_TYPE_LDGA = 6, + CUDNN_KNOB_TYPE_LDGB = 7, + CUDNN_KNOB_TYPE_CHUNK_K = 8, + CUDNN_KNOB_TYPE_SPLIT_H = 9, + CUDNN_KNOB_TYPE_WINO_TILE = 10, + CUDNN_KNOB_TYPE_MULTIPLY = 11, + CUDNN_KNOB_TYPE_SPLIT_K_BUF = 12, + CUDNN_KNOB_TYPE_TILEK = 13, + CUDNN_KNOB_TYPE_STAGES = 14, + CUDNN_KNOB_TYPE_REDUCTION_MODE = 15, + CUDNN_KNOB_TYPE_CTA_SPLIT_K_MODE = 16, + CUDNN_KNOB_TYPE_SPLIT_K_SLC = 17, + CUDNN_KNOB_TYPE_IDX_MODE = 18, + CUDNN_KNOB_TYPE_SLICED = 19, + CUDNN_KNOB_TYPE_SPLIT_RS = 20, + CUDNN_KNOB_TYPE_SINGLEBUFFER = 21, + CUDNN_KNOB_TYPE_LDGC = 22, + CUDNN_KNOB_TYPE_SPECFILT = 23, + CUDNN_KNOB_TYPE_KERNEL_CFG = 24, + CUDNN_KNOB_TYPE_WORKSPACE = 25, + CUDNN_KNOB_TYPE_TILE_CGA = 26, + CUDNN_KNOB_TYPE_TILE_CGA_M = 27, + CUDNN_KNOB_TYPE_TILE_CGA_N = 28, + CUDNN_KNOB_TYPE_BLOCK_SIZE = 29, + CUDNN_KNOB_TYPE_OCCUPANCY = 30, + CUDNN_KNOB_TYPE_ARRAY_SIZE_PER_THREAD = 31, + CUDNN_KNOB_TYPE_NUM_C_PER_BLOCK = 32, + CUDNN_KNOB_TYPE_COUNTS, +} cudnnBackendKnobType_t; + +typedef enum { + CUDNN_LAYOUT_TYPE_PREFERRED_NCHW = 0, + CUDNN_LAYOUT_TYPE_PREFERRED_NHWC = 1, + CUDNN_LAYOUT_TYPE_PREFERRED_PAD4CK = 2, + CUDNN_LAYOUT_TYPE_PREFERRED_PAD8CK = 3, + CUDNN_LAYOUT_TYPE_COUNT = 4, +} cudnnBackendLayoutType_t; + +typedef enum { + CUDNN_HEUR_MODE_INSTANT = 0, + CUDNN_HEUR_MODE_B = 1, + CUDNN_HEUR_MODE_FALLBACK = 2, + CUDNN_HEUR_MODE_A = 3, + CUDNN_HEUR_MODES_COUNT = 4, +} cudnnBackendHeurMode_t; + +typedef enum { + CUDNN_TENSOR_REORDERING_NONE = 0, + CUDNN_TENSOR_REORDERING_INT8x32 = 1, + CUDNN_TENSOR_REORDERING_F16x16 = 2, +} cudnnBackendTensorReordering_t; + +typedef enum { + CUDNN_ZERO_PAD = 0, + CUDNN_NEG_INF_PAD = 1, + CUDNN_EDGE_VAL_PAD = 2, +} cudnnPaddingMode_t; + +typedef enum { + CUDNN_LAYER_NORM = 0, + CUDNN_INSTANCE_NORM = 1, + CUDNN_BATCH_NORM = 2, + CUDNN_GROUP_NORM = 3, +} cudnnBackendNormMode_t; + +typedef enum { + CUDNN_NORM_FWD_INFERENCE = 0, + CUDNN_NORM_FWD_TRAINING = 1, +} cudnnBackendNormFwdPhase_t; + +cudnnStatus_t CUDNNWINAPI +cudnnBackendCreateDescriptor(cudnnBackendDescriptorType_t descriptorType, cudnnBackendDescriptor_t *descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendDestroyDescriptor(cudnnBackendDescriptor_t descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendInitialize(cudnnBackendDescriptor_t descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendFinalize(cudnnBackendDescriptor_t descriptor); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendSetAttribute(cudnnBackendDescriptor_t descriptor, + cudnnBackendAttributeName_t attributeName, + cudnnBackendAttributeType_t attributeType, + int64_t elementCount, + const void *arrayOfElements); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendGetAttribute(cudnnBackendDescriptor_t const descriptor, + cudnnBackendAttributeName_t attributeName, + cudnnBackendAttributeType_t attributeType, + int64_t requestedElementCount, + int64_t *elementCount, + void *arrayOfElements); + +cudnnStatus_t CUDNNWINAPI +cudnnBackendExecute(cudnnHandle_t handle, cudnnBackendDescriptor_t executionPlan, cudnnBackendDescriptor_t variantPack); + +#if defined(__cplusplus) +} +#endif + +#endif /* _CUDNN_BACKEND_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_cnn_infer.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_cnn_infer.h new file mode 100644 index 0000000000000000000000000000000000000000..5e4c91c93bdc0b5e69d9d6326b4e7384e35a8ca6 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_cnn_infer.h @@ -0,0 +1,571 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* + * cudnn_cnn_infer : cuDNN's basic definitions and inference CNN functions. + */ + +#if !defined(CUDNN_CNN_INFER_H_) +#define CUDNN_CNN_INFER_H_ + +#pragma once +#include +#include + +#include "cudnn_version.h" +#include "cudnn_ops_infer.h" + +/* These version numbers are autogenerated, do not edit manually. */ +#define CUDNN_CNN_INFER_MAJOR 8 +#define CUDNN_CNN_INFER_MINOR 9 +#define CUDNN_CNN_INFER_PATCH 2 + +#if (CUDNN_CNN_INFER_MAJOR != CUDNN_MAJOR) || (CUDNN_CNN_INFER_MINOR != CUDNN_MINOR) || \ + (CUDNN_CNN_INFER_PATCH != CUDNN_PATCHLEVEL) +#error Version mismatch in cuDNN CNN INFER!!! +#endif + +#if defined(__cplusplus) +extern "C" { +#endif + +typedef struct cudnnConvolutionStruct *cudnnConvolutionDescriptor_t; + +/* + * convolution mode + */ +typedef enum { CUDNN_CONVOLUTION = 0, CUDNN_CROSS_CORRELATION = 1 } cudnnConvolutionMode_t; + +/* + * CUDNN Reorder + */ +typedef enum { + CUDNN_DEFAULT_REORDER = 0, + CUDNN_NO_REORDER = 1, +} cudnnReorderType_t; + +typedef struct cudnnConvolutionFwdAlgoPerfStruct { + cudnnConvolutionFwdAlgo_t algo; + cudnnStatus_t status; + float time; + size_t memory; + cudnnDeterminism_t determinism; + cudnnMathType_t mathType; + int reserved[3]; +} cudnnConvolutionFwdAlgoPerf_t; + +/* Create an instance of convolution descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateConvolutionDescriptor(cudnnConvolutionDescriptor_t *convDesc); + +/* Destroy an instance of convolution descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyConvolutionDescriptor(cudnnConvolutionDescriptor_t convDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetConvolutionMathType(cudnnConvolutionDescriptor_t convDesc, cudnnMathType_t mathType); + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionMathType(cudnnConvolutionDescriptor_t convDesc, cudnnMathType_t *mathType); + +cudnnStatus_t CUDNNWINAPI +cudnnSetConvolutionGroupCount(cudnnConvolutionDescriptor_t convDesc, int groupCount); + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionGroupCount(cudnnConvolutionDescriptor_t convDesc, int *groupCount); + +cudnnStatus_t CUDNNWINAPI +cudnnSetConvolutionReorderType(cudnnConvolutionDescriptor_t convDesc, cudnnReorderType_t reorderType); + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionReorderType(cudnnConvolutionDescriptor_t convDesc, cudnnReorderType_t *reorderType); + +cudnnStatus_t CUDNNWINAPI +cudnnSetConvolution2dDescriptor(cudnnConvolutionDescriptor_t convDesc, + int pad_h, /* zero-padding height */ + int pad_w, /* zero-padding width */ + int u, /* vertical filter stride */ + int v, /* horizontal filter stride */ + int dilation_h, /* filter dilation in the vertical dimension */ + int dilation_w, /* filter dilation in the horizontal dimension */ + cudnnConvolutionMode_t mode, + cudnnDataType_t computeType); + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolution2dDescriptor(const cudnnConvolutionDescriptor_t convDesc, + int *pad_h, /* zero-padding height */ + int *pad_w, /* zero-padding width */ + int *u, /* vertical filter stride */ + int *v, /* horizontal filter stride */ + int *dilation_h, /* filter dilation in the vertical dimension */ + int *dilation_w, /* filter dilation in the horizontal dimension */ + cudnnConvolutionMode_t *mode, + cudnnDataType_t *computeType); + +cudnnStatus_t CUDNNWINAPI +cudnnSetConvolutionNdDescriptor(cudnnConvolutionDescriptor_t convDesc, + int arrayLength, /* nbDims-2 size */ + const int padA[], + const int filterStrideA[], + const int dilationA[], + cudnnConvolutionMode_t mode, + cudnnDataType_t computeType); /* convolution data type */ + +/* Helper function to return the dimensions of the output tensor given a convolution descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionNdDescriptor(const cudnnConvolutionDescriptor_t convDesc, + int arrayLengthRequested, + int *arrayLength, + int padA[], + int strideA[], + int dilationA[], + cudnnConvolutionMode_t *mode, + cudnnDataType_t *computeType); /* convolution data type */ + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolution2dForwardOutputDim(const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t inputTensorDesc, + const cudnnFilterDescriptor_t filterDesc, + int *n, + int *c, + int *h, + int *w); + +/* Helper function to return the dimensions of the output tensor given a convolution descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionNdForwardOutputDim(const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t inputTensorDesc, + const cudnnFilterDescriptor_t filterDesc, + int nbDims, + int tensorOuputDimA[]); + +/* helper function to provide the convolution forward algo that fit best the requirement */ +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionForwardAlgorithmMaxCount(cudnnHandle_t handle, int *count); + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionForwardAlgorithm_v7(cudnnHandle_t handle, + const cudnnTensorDescriptor_t srcDesc, + const cudnnFilterDescriptor_t filterDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t destDesc, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionFwdAlgoPerf_t *perfResults); + +cudnnStatus_t CUDNNWINAPI +cudnnFindConvolutionForwardAlgorithm(cudnnHandle_t handle, + const cudnnTensorDescriptor_t xDesc, + const cudnnFilterDescriptor_t wDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t yDesc, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionFwdAlgoPerf_t *perfResults); + +cudnnStatus_t CUDNNWINAPI +cudnnFindConvolutionForwardAlgorithmEx(cudnnHandle_t handle, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t yDesc, + void *y, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionFwdAlgoPerf_t *perfResults, + void *workSpace, + size_t workSpaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnIm2Col(cudnnHandle_t handle, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const cudnnFilterDescriptor_t wDesc, + const cudnnConvolutionDescriptor_t convDesc, + void *colBuffer); + +cudnnStatus_t CUDNNWINAPI +cudnnReorderFilterAndBias(cudnnHandle_t handle, + const cudnnFilterDescriptor_t filterDesc, + cudnnReorderType_t reorderType, + const void *filterData, + void *reorderedFilterData, + int reorderBias, + const void *biasData, + void *reorderedBiasData); + +/* Helper function to return the minimum size of the workspace to be passed to the convolution given an algo*/ +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionForwardWorkspaceSize(cudnnHandle_t handle, + const cudnnTensorDescriptor_t xDesc, + const cudnnFilterDescriptor_t wDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t yDesc, + cudnnConvolutionFwdAlgo_t algo, + size_t *sizeInBytes); + +/* Convolution functions: All of the form "output = alpha * Op(inputs) + beta * output" */ + +/* Function to perform the forward pass for batch convolution */ +cudnnStatus_t CUDNNWINAPI +cudnnConvolutionForward(cudnnHandle_t handle, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnConvolutionDescriptor_t convDesc, + cudnnConvolutionFwdAlgo_t algo, + void *workSpace, + size_t workSpaceSizeInBytes, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* Fused conv/bias/activation operation : y = Act( alpha1 * conv(x) + alpha2 * z + bias ) */ +cudnnStatus_t CUDNNWINAPI +cudnnConvolutionBiasActivationForward(cudnnHandle_t handle, + const void *alpha1, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnConvolutionDescriptor_t convDesc, + cudnnConvolutionFwdAlgo_t algo, + void *workSpace, + size_t workSpaceSizeInBytes, + const void *alpha2, + const cudnnTensorDescriptor_t zDesc, + const void *z, + const cudnnTensorDescriptor_t biasDesc, + const void *bias, + const cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* helper function to provide the convolution backward data algo that fit best the requirement */ + +typedef struct cudnnConvolutionBwdDataAlgoPerfStruct { + cudnnConvolutionBwdDataAlgo_t algo; + cudnnStatus_t status; + float time; + size_t memory; + cudnnDeterminism_t determinism; + cudnnMathType_t mathType; + int reserved[3]; +} cudnnConvolutionBwdDataAlgoPerf_t; + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionBackwardDataAlgorithmMaxCount(cudnnHandle_t handle, int *count); + +cudnnStatus_t CUDNNWINAPI +cudnnFindConvolutionBackwardDataAlgorithm(cudnnHandle_t handle, + const cudnnFilterDescriptor_t wDesc, + const cudnnTensorDescriptor_t dyDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t dxDesc, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionBwdDataAlgoPerf_t *perfResults); + +cudnnStatus_t CUDNNWINAPI +cudnnFindConvolutionBackwardDataAlgorithmEx(cudnnHandle_t handle, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t dxDesc, + void *dx, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionBwdDataAlgoPerf_t *perfResults, + void *workSpace, + size_t workSpaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionBackwardDataAlgorithm_v7(cudnnHandle_t handle, + const cudnnFilterDescriptor_t filterDesc, + const cudnnTensorDescriptor_t diffDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t gradDesc, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionBwdDataAlgoPerf_t *perfResults); + +/* + * convolution algorithm (which requires potentially some workspace) + */ + +/* Helper function to return the minimum size of the workspace to be passed to the convolution given an algo*/ +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionBackwardDataWorkspaceSize(cudnnHandle_t handle, + const cudnnFilterDescriptor_t wDesc, + const cudnnTensorDescriptor_t dyDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t dxDesc, + cudnnConvolutionBwdDataAlgo_t algo, + size_t *sizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnConvolutionBackwardData(cudnnHandle_t handle, + const void *alpha, + const cudnnFilterDescriptor_t wDesc, + const void *w, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const cudnnConvolutionDescriptor_t convDesc, + cudnnConvolutionBwdDataAlgo_t algo, + void *workSpace, + size_t workSpaceSizeInBytes, + const void *beta, + const cudnnTensorDescriptor_t dxDesc, + void *dx); + +/* Helper function to calculate folding descriptors for dgrad */ +cudnnStatus_t CUDNNWINAPI +cudnnGetFoldedConvBackwardDataDescriptors(const cudnnHandle_t handle, + const cudnnFilterDescriptor_t filterDesc, + const cudnnTensorDescriptor_t diffDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnTensorDescriptor_t gradDesc, + const cudnnTensorFormat_t transformFormat, + cudnnFilterDescriptor_t foldedFilterDesc, + cudnnTensorDescriptor_t paddedDiffDesc, + cudnnConvolutionDescriptor_t foldedConvDesc, + cudnnTensorDescriptor_t foldedGradDesc, + cudnnTensorTransformDescriptor_t filterFoldTransDesc, + cudnnTensorTransformDescriptor_t diffPadTransDesc, + cudnnTensorTransformDescriptor_t gradFoldTransDesc, + cudnnTensorTransformDescriptor_t gradUnfoldTransDesc); + +/* cudnnFusedOps... */ +struct cudnnFusedOpsConstParamStruct; +typedef struct cudnnFusedOpsConstParamStruct *cudnnFusedOpsConstParamPack_t; + +struct cudnnFusedOpsVariantParamStruct; +typedef struct cudnnFusedOpsVariantParamStruct *cudnnFusedOpsVariantParamPack_t; + +struct cudnnFusedOpsPlanStruct; +typedef struct cudnnFusedOpsPlanStruct *cudnnFusedOpsPlan_t; + +typedef enum { + /* each op in [ ] can be disabled by passing NULL ptr */ + /* [per channel scale], [per channel bias], [activation], convolution, [generate BN stats] */ + CUDNN_FUSED_SCALE_BIAS_ACTIVATION_CONV_BNSTATS = 0, + /* [per channel scale], [per channel bias], [activation], convolutionBackwardWeights */ + CUDNN_FUSED_SCALE_BIAS_ACTIVATION_WGRAD = 1, + /* utility for BN training in BN-conv fusion */ + /* computes the equivalent scale and bias from ySum ySqSum and learned scale, bias */ + /* optionally update running stats and generate saved stats */ + CUDNN_FUSED_BN_FINALIZE_STATISTICS_TRAINING = 2, + /* utility for BN inference in BN-conv fusion */ + /* computes the equivalent scale and bias from learned running stats and learned scale, bias */ + CUDNN_FUSED_BN_FINALIZE_STATISTICS_INFERENCE = 3, + /* reserved for future use: convolution, [per channel scale], [per channel bias], [residual add], [activation] */ + CUDNN_FUSED_CONV_SCALE_BIAS_ADD_ACTIVATION = 4, + /* reserved for future use: [per channel scale], [per channel bias], [residual add], activation, bitmask */ + CUDNN_FUSED_SCALE_BIAS_ADD_ACTIVATION_GEN_BITMASK = 5, + /* reserved for future use */ + CUDNN_FUSED_DACTIVATION_FORK_DBATCHNORM = 6, +} cudnnFusedOps_t; + +typedef enum { + /* set XDESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get XDESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_XDESC = 0, + /* set/get XDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_XDATA_PLACEHOLDER = 1, + /* set/get BN_MODE: pass cudnnBatchNormMode_t* */ + CUDNN_PARAM_BN_MODE = 2, + /* set CUDNN_PARAM_BN_EQSCALEBIAS_DESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get CUDNN_PARAM_BN_EQSCALEBIAS_DESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_BN_EQSCALEBIAS_DESC = 3, + /* set/get BN_EQSCALE_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_EQSCALE_PLACEHOLDER = 4, + /* set/get BN_EQBIAS_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_EQBIAS_PLACEHOLDER = 5, + /* set ACTIVATION_DESC: pass previously initialized cudnnActivationDescriptor_t */ + /* get ACTIVATION_DESC: pass previously created cudnnActivationDescriptor_t */ + CUDNN_PARAM_ACTIVATION_DESC = 6, + /* set CONV_DESC: pass previously initialized cudnnConvolutionDescriptor_t */ + /* get CONV_DESC: pass previously created cudnnConvolutionDescriptor_t */ + CUDNN_PARAM_CONV_DESC = 7, + /* set WDESC: pass previously initialized cudnnFilterDescriptor_t */ + /* get WDESC: pass previously created cudnnFilterDescriptor_t */ + CUDNN_PARAM_WDESC = 8, + /* set/get WDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_WDATA_PLACEHOLDER = 9, + /* set DWDESC: pass previously initialized cudnnFilterDescriptor_t */ + /* get DWDESC: pass previously created cudnnFilterDescriptor_t */ + CUDNN_PARAM_DWDESC = 10, + /* set/get DWDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_DWDATA_PLACEHOLDER = 11, + /* set YDESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get YDESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_YDESC = 12, + /* set/get YDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_YDATA_PLACEHOLDER = 13, + /* set DYDESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get DYDESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_DYDESC = 14, + /* set/get DYDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_DYDATA_PLACEHOLDER = 15, + /* set YSTATS_DESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get YSTATS_DESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_YSTATS_DESC = 16, + /* set/get YSUM_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_YSUM_PLACEHOLDER = 17, + /* set/get YSQSUM_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_YSQSUM_PLACEHOLDER = 18, + /* set CUDNN_PARAM_BN_SCALEBIAS_MEANVAR_DESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get CUDNN_PARAM_BN_SCALEBIAS_MEANVAR_DESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_BN_SCALEBIAS_MEANVAR_DESC = 19, + /* set/get CUDNN_PARAM_BN_SCALE_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_SCALE_PLACEHOLDER = 20, + /* set/get CUDNN_PARAM_BN_BIAS_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_BIAS_PLACEHOLDER = 21, + /* set/get CUDNN_PARAM_BN_SAVED_MEAN_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_SAVED_MEAN_PLACEHOLDER = 22, + /* set/get CUDNN_PARAM_BN_SAVED_INVSTD_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_SAVED_INVSTD_PLACEHOLDER = 23, + /* set/get CUDNN_PARAM_BN_RUNNING_MEAN_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_RUNNING_MEAN_PLACEHOLDER = 24, + /* set/get CUDNN_PARAM_BN_RUNNING_VAR_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_RUNNING_VAR_PLACEHOLDER = 25, + + /* set ZDESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get ZDESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_ZDESC = 26, + /* set/get ZDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_ZDATA_PLACEHOLDER = 27, + /* set BN_Z_EQSCALEBIAS_DESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get BN_Z_EQSCALEBIAS_DESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_BN_Z_EQSCALEBIAS_DESC = 28, + /* set/get BN_Z_EQSCALE_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_Z_EQSCALE_PLACEHOLDER = 29, + /* set/get BN_Z_EQBIAS_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_Z_EQBIAS_PLACEHOLDER = 30, + + /* set ACTIVATION_BITMASK_DESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get ACTIVATION_BITMASK_DESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_ACTIVATION_BITMASK_DESC = 31, + /* set/get ACTIVATION_BITMASK_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_ACTIVATION_BITMASK_PLACEHOLDER = 32, + + /* set DXDESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get DXDESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_DXDESC = 33, + /* set/get DXDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_DXDATA_PLACEHOLDER = 34, + /* set DZDESC: pass previously initialized cudnnTensorDescriptor_t */ + /* get DZDESC: pass previously created cudnnTensorDescriptor_t */ + CUDNN_PARAM_DZDESC = 35, + /* set/get DZDATA_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_DZDATA_PLACEHOLDER = 36, + /* set/get CUDNN_PARAM_BN_DSCALE_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_DSCALE_PLACEHOLDER = 37, + /* set/get CUDNN_PARAM_BN_DBIAS_PLACEHOLDER: pass cudnnFusedOpsPointerPlaceHolder_t* */ + CUDNN_PARAM_BN_DBIAS_PLACEHOLDER = 38, +} cudnnFusedOpsConstParamLabel_t; + +typedef enum { + CUDNN_PTR_NULL = 0, + CUDNN_PTR_ELEM_ALIGNED = 1, + CUDNN_PTR_16B_ALIGNED = 2, +} cudnnFusedOpsPointerPlaceHolder_t; + +typedef enum { + /* set: pass void* pointing to dev memory */ + /* get: pass void** pointing to host memory */ + CUDNN_PTR_XDATA = 0, + CUDNN_PTR_BN_EQSCALE = 1, + CUDNN_PTR_BN_EQBIAS = 2, + CUDNN_PTR_WDATA = 3, + CUDNN_PTR_DWDATA = 4, + CUDNN_PTR_YDATA = 5, + CUDNN_PTR_DYDATA = 6, + CUDNN_PTR_YSUM = 7, + CUDNN_PTR_YSQSUM = 8, + CUDNN_PTR_WORKSPACE = 9, + CUDNN_PTR_BN_SCALE = 10, + CUDNN_PTR_BN_BIAS = 11, + CUDNN_PTR_BN_SAVED_MEAN = 12, + CUDNN_PTR_BN_SAVED_INVSTD = 13, + CUDNN_PTR_BN_RUNNING_MEAN = 14, + CUDNN_PTR_BN_RUNNING_VAR = 15, + CUDNN_PTR_ZDATA = 16, + CUDNN_PTR_BN_Z_EQSCALE = 17, + CUDNN_PTR_BN_Z_EQBIAS = 18, + CUDNN_PTR_ACTIVATION_BITMASK = 19, + CUDNN_PTR_DXDATA = 20, + CUDNN_PTR_DZDATA = 21, + CUDNN_PTR_BN_DSCALE = 22, + CUDNN_PTR_BN_DBIAS = 23, + + /* set/get: pass size_t* pointing to host memory */ + CUDNN_SCALAR_SIZE_T_WORKSPACE_SIZE_IN_BYTES = 100, + /* set/get: pass int64_t* pointing to host memory */ + CUDNN_SCALAR_INT64_T_BN_ACCUMULATION_COUNT = 101, + /* set/get: pass double* pointing to host memory */ + CUDNN_SCALAR_DOUBLE_BN_EXP_AVG_FACTOR = 102, + /* set/get: pass double* pointing to host memory */ + CUDNN_SCALAR_DOUBLE_BN_EPSILON = 103, +} cudnnFusedOpsVariantParamLabel_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCnnInferVersionCheck(void); + +#if defined(__cplusplus) +} +#endif + +#endif /* CUDNN_CNN_INFER_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_cnn_train_v8.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_cnn_train_v8.h new file mode 100644 index 0000000000000000000000000000000000000000..ee0358b51d8b2c48880cf2f3cde7adf83c112336 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_cnn_train_v8.h @@ -0,0 +1,219 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* + * cudnn_cnn_train : cuDNN's basic definitions and inference CNN functions. + */ + +#pragma once +#include +#include + +#include "cudnn_version.h" +#include "cudnn_ops_infer.h" +#include "cudnn_ops_train.h" +#include "cudnn_cnn_infer.h" + +/* These version numbers are autogenerated, do not edit manually. */ +#define CUDNN_CNN_TRAIN_MAJOR 8 +#define CUDNN_CNN_TRAIN_MINOR 9 +#define CUDNN_CNN_TRAIN_PATCH 2 + +#if (CUDNN_CNN_TRAIN_MAJOR != CUDNN_MAJOR) || (CUDNN_CNN_TRAIN_MINOR != CUDNN_MINOR) || \ + (CUDNN_CNN_TRAIN_PATCH != CUDNN_PATCHLEVEL) +#error Version mismatch in cuDNN CNN INFER!!! +#endif + +#if defined(__cplusplus) +extern "C" { +#endif + +/* helper function to provide the convolution backward filter algo that fit best the requirement */ + +typedef struct cudnnConvolutionBwdFilterAlgoPerfStruct { + cudnnConvolutionBwdFilterAlgo_t algo; + cudnnStatus_t status; + float time; + size_t memory; + cudnnDeterminism_t determinism; + cudnnMathType_t mathType; + int reserved[3]; +} cudnnConvolutionBwdFilterAlgoPerf_t; + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionBackwardFilterAlgorithmMaxCount(cudnnHandle_t handle, int *count); + +cudnnStatus_t CUDNNWINAPI +cudnnFindConvolutionBackwardFilterAlgorithm(cudnnHandle_t handle, + const cudnnTensorDescriptor_t xDesc, + const cudnnTensorDescriptor_t dyDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnFilterDescriptor_t dwDesc, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionBwdFilterAlgoPerf_t *perfResults); + +cudnnStatus_t CUDNNWINAPI +cudnnFindConvolutionBackwardFilterAlgorithmEx(cudnnHandle_t handle, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const cudnnTensorDescriptor_t dyDesc, + const void *y, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnFilterDescriptor_t dwDesc, + void *dw, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionBwdFilterAlgoPerf_t *perfResults, + void *workSpace, + size_t workSpaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionBackwardFilterAlgorithm_v7(cudnnHandle_t handle, + const cudnnTensorDescriptor_t srcDesc, + const cudnnTensorDescriptor_t diffDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnFilterDescriptor_t gradDesc, + const int requestedAlgoCount, + int *returnedAlgoCount, + cudnnConvolutionBwdFilterAlgoPerf_t *perfResults); + +/* + * convolution algorithm (which requires potentially some workspace) + */ + +/* Helper function to return the minimum size of the workspace to be passed to the convolution given an algo*/ +cudnnStatus_t CUDNNWINAPI +cudnnGetConvolutionBackwardFilterWorkspaceSize(cudnnHandle_t handle, + const cudnnTensorDescriptor_t xDesc, + const cudnnTensorDescriptor_t dyDesc, + const cudnnConvolutionDescriptor_t convDesc, + const cudnnFilterDescriptor_t gradDesc, + cudnnConvolutionBwdFilterAlgo_t algo, + size_t *sizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnConvolutionBackwardFilter(cudnnHandle_t handle, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const cudnnConvolutionDescriptor_t convDesc, + cudnnConvolutionBwdFilterAlgo_t algo, + void *workSpace, + size_t workSpaceSizeInBytes, + const void *beta, + const cudnnFilterDescriptor_t dwDesc, + void *dw); + +/* Function to compute the bias gradient for batch convolution */ +cudnnStatus_t CUDNNWINAPI +cudnnConvolutionBackwardBias(cudnnHandle_t handle, + const void *alpha, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const void *beta, + const cudnnTensorDescriptor_t dbDesc, + void *db); + +cudnnStatus_t CUDNNWINAPI +cudnnCreateFusedOpsConstParamPack(cudnnFusedOpsConstParamPack_t *constPack, cudnnFusedOps_t ops); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyFusedOpsConstParamPack(cudnnFusedOpsConstParamPack_t constPack); + +cudnnStatus_t CUDNNWINAPI +cudnnSetFusedOpsConstParamPackAttribute(cudnnFusedOpsConstParamPack_t constPack, + cudnnFusedOpsConstParamLabel_t paramLabel, + const void *param); + +cudnnStatus_t CUDNNWINAPI +cudnnGetFusedOpsConstParamPackAttribute(const cudnnFusedOpsConstParamPack_t constPack, + cudnnFusedOpsConstParamLabel_t paramLabel, + void *param, + int *isNULL); + +cudnnStatus_t CUDNNWINAPI +cudnnCreateFusedOpsVariantParamPack(cudnnFusedOpsVariantParamPack_t *varPack, cudnnFusedOps_t ops); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyFusedOpsVariantParamPack(cudnnFusedOpsVariantParamPack_t varPack); + +cudnnStatus_t CUDNNWINAPI +cudnnSetFusedOpsVariantParamPackAttribute(cudnnFusedOpsVariantParamPack_t varPack, + cudnnFusedOpsVariantParamLabel_t paramLabel, + void *ptr); + +cudnnStatus_t CUDNNWINAPI +cudnnGetFusedOpsVariantParamPackAttribute(const cudnnFusedOpsVariantParamPack_t varPack, + cudnnFusedOpsVariantParamLabel_t paramLabel, + void *ptr); + +cudnnStatus_t CUDNNWINAPI +cudnnCreateFusedOpsPlan(cudnnFusedOpsPlan_t *plan, cudnnFusedOps_t ops); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyFusedOpsPlan(cudnnFusedOpsPlan_t plan); + +cudnnStatus_t CUDNNWINAPI +cudnnMakeFusedOpsPlan(cudnnHandle_t handle, + cudnnFusedOpsPlan_t plan, + const cudnnFusedOpsConstParamPack_t constPack, + size_t *workspaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnFusedOpsExecute(cudnnHandle_t handle, const cudnnFusedOpsPlan_t plan, cudnnFusedOpsVariantParamPack_t varPack); + +cudnnStatus_t CUDNNWINAPI +cudnnCnnTrainVersionCheck(void); + +#if defined(__cplusplus) +} +#endif diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_infer.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_infer.h new file mode 100644 index 0000000000000000000000000000000000000000..79ba34cc1a1557462d49b63a9cb52d9bfe149693 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_infer.h @@ -0,0 +1,1183 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* + * cudnn_ops_infer : cuDNN's basic definitions and inference operations. + */ + +#if !defined(CUDNN_OPS_INFER_H_) +#define CUDNN_OPS_INFER_H_ + +#include +#include + +#include "cudnn_version.h" + +/* These version numbers are autogenerated, do not edit manually. */ +#define CUDNN_OPS_INFER_MAJOR 8 +#define CUDNN_OPS_INFER_MINOR 9 +#define CUDNN_OPS_INFER_PATCH 2 + +#if (CUDNN_OPS_INFER_MAJOR != CUDNN_MAJOR) || (CUDNN_OPS_INFER_MINOR != CUDNN_MINOR) || \ + (CUDNN_OPS_INFER_PATCH != CUDNN_PATCHLEVEL) +#error Version mismatch in cuDNN OPS INFER!!! +#endif + +#ifndef CUDNNWINAPI +#ifdef _WIN32 +#define CUDNNWINAPI __stdcall +#else +#define CUDNNWINAPI +#endif +#endif + +/* Warnings for deprecated API-s are enabled using the CUDNN_WARN_DEPRECATED macro */ +#if defined(CUDNN_WARN_DEPRECATED) && (defined(__GNUC__) || defined(__clang__)) +/* GCC, Intel C/C++, Cray C/C++, CLANG, IBM XL C/C++ little endian */ +#define CUDNN_DEPRECATED __attribute__((deprecated)) +#elif defined(CUDNN_WARN_DEPRECATED) && defined(_MSC_VER) +/* Microsoft Visual C++ */ +#define CUDNN_DEPRECATED __declspec(deprecated) +#elif defined(CUDNN_WARN_DEPRECATED) && (__cplusplus >= 201402L) +/* C++14 compilers */ +#define CUDNN_DEPRECATED [[deprecated]] +#else +/* No support for the deprecated attribute */ +#define CUDNN_DEPRECATED +#endif + +#if defined(__cplusplus) +extern "C" { +#endif + +struct cudnnContext; +typedef struct cudnnContext *cudnnHandle_t; + +size_t CUDNNWINAPI +cudnnGetVersion(void); + +size_t CUDNNWINAPI +cudnnGetMaxDeviceVersion(void); + +/* Returns CUDA Runtime version statically linked against cudnn */ +size_t CUDNNWINAPI +cudnnGetCudartVersion(void); + +/* + * CUDNN return codes + */ +typedef enum { + CUDNN_STATUS_SUCCESS = 0, + CUDNN_STATUS_NOT_INITIALIZED = 1, + CUDNN_STATUS_ALLOC_FAILED = 2, + CUDNN_STATUS_BAD_PARAM = 3, + CUDNN_STATUS_INTERNAL_ERROR = 4, + CUDNN_STATUS_INVALID_VALUE = 5, + CUDNN_STATUS_ARCH_MISMATCH = 6, + CUDNN_STATUS_MAPPING_ERROR = 7, + CUDNN_STATUS_EXECUTION_FAILED = 8, + CUDNN_STATUS_NOT_SUPPORTED = 9, + CUDNN_STATUS_LICENSE_ERROR = 10, + CUDNN_STATUS_RUNTIME_PREREQUISITE_MISSING = 11, + CUDNN_STATUS_RUNTIME_IN_PROGRESS = 12, + CUDNN_STATUS_RUNTIME_FP_OVERFLOW = 13, + CUDNN_STATUS_VERSION_MISMATCH = 14, +} cudnnStatus_t; + +/* human-readable error messages */ +const char *CUDNNWINAPI +cudnnGetErrorString(cudnnStatus_t status); + +/* Forward definition in this version only */ +typedef struct cudnnRuntimeTag_t cudnnRuntimeTag_t; + +typedef enum { + CUDNN_ERRQUERY_RAWCODE = 0, + CUDNN_ERRQUERY_NONBLOCKING = 1, + CUDNN_ERRQUERY_BLOCKING = 2, +} cudnnErrQueryMode_t; + +cudnnStatus_t CUDNNWINAPI +cudnnQueryRuntimeError(cudnnHandle_t handle, cudnnStatus_t *rstatus, cudnnErrQueryMode_t mode, cudnnRuntimeTag_t *tag); + +#ifndef __LIBRARY_TYPES_H__ + +typedef enum libraryPropertyType_t { MAJOR_VERSION, MINOR_VERSION, PATCH_LEVEL } libraryPropertyType; + +#endif + +cudnnStatus_t CUDNNWINAPI +cudnnGetProperty(libraryPropertyType type, int *value); + +cudnnStatus_t CUDNNWINAPI +cudnnCreate(cudnnHandle_t *handle); +cudnnStatus_t CUDNNWINAPI +cudnnDestroy(cudnnHandle_t handle); +cudnnStatus_t CUDNNWINAPI +cudnnSetStream(cudnnHandle_t handle, cudaStream_t streamId); +cudnnStatus_t CUDNNWINAPI +cudnnGetStream(cudnnHandle_t handle, cudaStream_t *streamId); + +/* Data structures to represent Image/Filter and the Neural Network Layer */ +typedef struct cudnnTensorStruct *cudnnTensorDescriptor_t; +typedef struct cudnnPoolingStruct *cudnnPoolingDescriptor_t; +typedef struct cudnnFilterStruct *cudnnFilterDescriptor_t; +typedef struct cudnnLRNStruct *cudnnLRNDescriptor_t; +typedef struct cudnnActivationStruct *cudnnActivationDescriptor_t; +typedef struct cudnnSpatialTransformerStruct *cudnnSpatialTransformerDescriptor_t; +typedef struct cudnnOpTensorStruct *cudnnOpTensorDescriptor_t; +typedef struct cudnnReduceTensorStruct *cudnnReduceTensorDescriptor_t; +typedef struct cudnnCTCLossStruct *cudnnCTCLossDescriptor_t; +typedef struct cudnnTensorTransformStruct *cudnnTensorTransformDescriptor_t; +/* + * CUDNN data type + */ +typedef enum { + CUDNN_DATA_FLOAT = 0, + CUDNN_DATA_DOUBLE = 1, + CUDNN_DATA_HALF = 2, + CUDNN_DATA_INT8 = 3, + CUDNN_DATA_INT32 = 4, + CUDNN_DATA_INT8x4 = 5, + CUDNN_DATA_UINT8 = 6, + CUDNN_DATA_UINT8x4 = 7, + CUDNN_DATA_INT8x32 = 8, + CUDNN_DATA_BFLOAT16 = 9, + CUDNN_DATA_INT64 = 10, + CUDNN_DATA_BOOLEAN = 11, + CUDNN_DATA_FP8_E4M3 = 12, + CUDNN_DATA_FP8_E5M2 = 13, + CUDNN_DATA_FAST_FLOAT_FOR_FP8 = 14, +} cudnnDataType_t; + +/* + * CUDNN math type + */ +typedef enum { + CUDNN_DEFAULT_MATH = 0, + CUDNN_TENSOR_OP_MATH = 1, + CUDNN_TENSOR_OP_MATH_ALLOW_CONVERSION = 2, + CUDNN_FMA_MATH = 3, +} cudnnMathType_t; + +/* + * CUDNN propagate Nan + */ +typedef enum { + CUDNN_NOT_PROPAGATE_NAN = 0, + CUDNN_PROPAGATE_NAN = 1, +} cudnnNanPropagation_t; + +/* + * CUDNN Determinism + */ +typedef enum { + CUDNN_NON_DETERMINISTIC = 0, + CUDNN_DETERMINISTIC = 1, +} cudnnDeterminism_t; + +/* Maximum supported number of tensor dimensions */ +#define CUDNN_DIM_MAX 8 + +/* Create an instance of a generic Tensor descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateTensorDescriptor(cudnnTensorDescriptor_t *tensorDesc); + +typedef enum { + CUDNN_TENSOR_NCHW = 0, /* row major (wStride = 1, hStride = w) */ + CUDNN_TENSOR_NHWC = 1, /* feature maps interleaved ( cStride = 1 )*/ + CUDNN_TENSOR_NCHW_VECT_C = 2, /* each image point is vector of element of C, vector length in data type */ +} cudnnTensorFormat_t; + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensor4dDescriptor(cudnnTensorDescriptor_t tensorDesc, + cudnnTensorFormat_t format, + cudnnDataType_t dataType, /* image data type */ + int n, /* number of inputs (batch size) */ + int c, /* number of input feature maps */ + int h, /* height of input section */ + int w); /* width of input section */ + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensor4dDescriptorEx(cudnnTensorDescriptor_t tensorDesc, + cudnnDataType_t dataType, /* image data type */ + int n, /* number of inputs (batch size) */ + int c, /* number of input feature maps */ + int h, /* height of input section */ + int w, /* width of input section */ + int nStride, + int cStride, + int hStride, + int wStride); + +cudnnStatus_t CUDNNWINAPI +cudnnGetTensor4dDescriptor(const cudnnTensorDescriptor_t tensorDesc, + cudnnDataType_t *dataType, /* image data type */ + int *n, /* number of inputs (batch size) */ + int *c, /* number of input feature maps */ + int *h, /* height of input section */ + int *w, /* width of input section */ + int *nStride, + int *cStride, + int *hStride, + int *wStride); + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensorNdDescriptor(cudnnTensorDescriptor_t tensorDesc, + cudnnDataType_t dataType, + int nbDims, + const int dimA[], + const int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensorNdDescriptorEx(cudnnTensorDescriptor_t tensorDesc, + cudnnTensorFormat_t format, + cudnnDataType_t dataType, + int nbDims, + const int dimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetTensorNdDescriptor(const cudnnTensorDescriptor_t tensorDesc, + int nbDimsRequested, + cudnnDataType_t *dataType, + int *nbDims, + int dimA[], + int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetTensorSizeInBytes(const cudnnTensorDescriptor_t tensorDesc, size_t *size); + +/* PixelOffset( n, c, h, w ) = n *input_stride + c * feature_stride + h * h_stride + w * w_stride + + 1)Example of all images in row major order one batch of features after the other (with an optional padding on row) + input_stride : c x h x h_stride + feature_stride : h x h_stride + h_stride : >= w ( h_stride = w if no padding) + w_stride : 1 + + + 2)Example of all images in row major with features maps interleaved + input_stride : c x h x h_stride + feature_stride : 1 + h_stride : w x c + w_stride : c + + 3)Example of all images in column major order one batch of features after the other (with optional padding on column) + input_stride : c x w x w_stride + feature_stride : w x w_stride + h_stride : 1 + w_stride : >= h + +*/ + +/* Destroy an instance of Tensor4d descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyTensorDescriptor(cudnnTensorDescriptor_t tensorDesc); + +/* Fold/unfold transforms */ +typedef enum { + CUDNN_TRANSFORM_FOLD = 0U, + CUDNN_TRANSFORM_UNFOLD = 1U, +} cudnnFoldingDirection_t; + +/** Create a destination descriptor for cudnnTransformTensor */ +cudnnStatus_t CUDNNWINAPI +cudnnInitTransformDest(const cudnnTensorTransformDescriptor_t transformDesc, + const cudnnTensorDescriptor_t srcDesc, + cudnnTensorDescriptor_t destDesc, + size_t *destSizeInBytes); + +/** Create an empty tensor transform descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateTensorTransformDescriptor(cudnnTensorTransformDescriptor_t *transformDesc); + +/** Initialize a previously created tensor transform descriptor. */ +cudnnStatus_t CUDNNWINAPI +cudnnSetTensorTransformDescriptor(cudnnTensorTransformDescriptor_t transformDesc, + const uint32_t nbDims, + const cudnnTensorFormat_t destFormat, + const int32_t padBeforeA[], + const int32_t padAfterA[], + const uint32_t foldA[], + const cudnnFoldingDirection_t direction); + +/** + * Retrieves the values stored in a previously initialized tensor transform + * descriptor. + */ +cudnnStatus_t CUDNNWINAPI +cudnnGetTensorTransformDescriptor(cudnnTensorTransformDescriptor_t transformDesc, + uint32_t nbDimsRequested, + cudnnTensorFormat_t *destFormat, + int32_t padBeforeA[], + int32_t padAfterA[], + uint32_t foldA[], + cudnnFoldingDirection_t *direction); + +/** + * Destroys a previously created tensor transform descriptor. + */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyTensorTransformDescriptor(cudnnTensorTransformDescriptor_t transformDesc); + +/* Tensor layout conversion helper (y = alpha * x + beta * y) */ +cudnnStatus_t CUDNNWINAPI +cudnnTransformTensor(cudnnHandle_t handle, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +cudnnStatus_t CUDNNWINAPI +cudnnTransformTensorEx(cudnnHandle_t handle, + const cudnnTensorTransformDescriptor_t transDesc, + const void *alpha, + const cudnnTensorDescriptor_t srcDesc, + const void *srcData, + const void *beta, + const cudnnTensorDescriptor_t destDesc, + void *destData); + +/* Tensor Bias addition : C = alpha * A + beta * C */ +cudnnStatus_t CUDNNWINAPI +cudnnAddTensor(cudnnHandle_t handle, + const void *alpha, + const cudnnTensorDescriptor_t aDesc, + const void *A, + const void *beta, + const cudnnTensorDescriptor_t cDesc, + void *C); + +/* + * CUDNN OpTensor op type + */ +typedef enum { + CUDNN_OP_TENSOR_ADD = 0, + CUDNN_OP_TENSOR_MUL = 1, + CUDNN_OP_TENSOR_MIN = 2, + CUDNN_OP_TENSOR_MAX = 3, + CUDNN_OP_TENSOR_SQRT = 4, + CUDNN_OP_TENSOR_NOT = 5, +} cudnnOpTensorOp_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateOpTensorDescriptor(cudnnOpTensorDescriptor_t *opTensorDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetOpTensorDescriptor(cudnnOpTensorDescriptor_t opTensorDesc, + cudnnOpTensorOp_t opTensorOp, + cudnnDataType_t opTensorCompType, + cudnnNanPropagation_t opTensorNanOpt); + +cudnnStatus_t CUDNNWINAPI +cudnnGetOpTensorDescriptor(const cudnnOpTensorDescriptor_t opTensorDesc, + cudnnOpTensorOp_t *opTensorOp, + cudnnDataType_t *opTensorCompType, + cudnnNanPropagation_t *opTensorNanOpt); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyOpTensorDescriptor(cudnnOpTensorDescriptor_t opTensorDesc); + +/* Tensor operation : C = op( alpha1 * A, alpha2 * B ) + beta * C */ +/* B tensor is ignored for CUDNN_OP_TENSOR_SQRT, CUDNN_OP_TENSOR_NOT. */ +cudnnStatus_t CUDNNWINAPI +cudnnOpTensor(cudnnHandle_t handle, + const cudnnOpTensorDescriptor_t opTensorDesc, + const void *alpha1, + const cudnnTensorDescriptor_t aDesc, + const void *A, + const void *alpha2, + const cudnnTensorDescriptor_t bDesc, + const void *B, + const void *beta, + const cudnnTensorDescriptor_t cDesc, + void *C); + +/* + * CUDNN ReduceTensor op type + */ +typedef enum { + CUDNN_REDUCE_TENSOR_ADD = 0, + CUDNN_REDUCE_TENSOR_MUL = 1, + CUDNN_REDUCE_TENSOR_MIN = 2, + CUDNN_REDUCE_TENSOR_MAX = 3, + CUDNN_REDUCE_TENSOR_AMAX = 4, + CUDNN_REDUCE_TENSOR_AVG = 5, + CUDNN_REDUCE_TENSOR_NORM1 = 6, + CUDNN_REDUCE_TENSOR_NORM2 = 7, + CUDNN_REDUCE_TENSOR_MUL_NO_ZEROS = 8, +} cudnnReduceTensorOp_t; + +/* + * CUDNN ReduceTensor indices type + */ +typedef enum { + CUDNN_REDUCE_TENSOR_NO_INDICES = 0, + CUDNN_REDUCE_TENSOR_FLATTENED_INDICES = 1, +} cudnnReduceTensorIndices_t; + +/* + * CUDNN tensor indices type size (all unsigned) + * Currently not supported, default is 32 bit unsigned. + */ +typedef enum { + CUDNN_32BIT_INDICES = 0, + CUDNN_64BIT_INDICES = 1, + CUDNN_16BIT_INDICES = 2, + CUDNN_8BIT_INDICES = 3, +} cudnnIndicesType_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateReduceTensorDescriptor(cudnnReduceTensorDescriptor_t *reduceTensorDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetReduceTensorDescriptor(cudnnReduceTensorDescriptor_t reduceTensorDesc, + cudnnReduceTensorOp_t reduceTensorOp, + cudnnDataType_t reduceTensorCompType, + cudnnNanPropagation_t reduceTensorNanOpt, + cudnnReduceTensorIndices_t reduceTensorIndices, + cudnnIndicesType_t reduceTensorIndicesType); + +cudnnStatus_t CUDNNWINAPI +cudnnGetReduceTensorDescriptor(const cudnnReduceTensorDescriptor_t reduceTensorDesc, + cudnnReduceTensorOp_t *reduceTensorOp, + cudnnDataType_t *reduceTensorCompType, + cudnnNanPropagation_t *reduceTensorNanOpt, + cudnnReduceTensorIndices_t *reduceTensorIndices, + cudnnIndicesType_t *reduceTensorIndicesType); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyReduceTensorDescriptor(cudnnReduceTensorDescriptor_t reduceTensorDesc); + +/* Helper function to return the minimum size of the index space to be passed to the reduction given the input and + * output tensors */ +cudnnStatus_t CUDNNWINAPI +cudnnGetReductionIndicesSize(cudnnHandle_t handle, + const cudnnReduceTensorDescriptor_t reduceTensorDesc, + const cudnnTensorDescriptor_t aDesc, + const cudnnTensorDescriptor_t cDesc, + size_t *sizeInBytes); + +/* Helper function to return the minimum size of the workspace to be passed to the reduction given the input and output + * tensors */ +cudnnStatus_t CUDNNWINAPI +cudnnGetReductionWorkspaceSize(cudnnHandle_t handle, + const cudnnReduceTensorDescriptor_t reduceTensorDesc, + const cudnnTensorDescriptor_t aDesc, + const cudnnTensorDescriptor_t cDesc, + size_t *sizeInBytes); + +/* Tensor operation : C = reduce op( alpha * A ) + beta * C */ +/* The NaN propagation enum applies to only the min and max reduce ops; the other reduce ops propagate NaN as usual. */ +/* The indices space is ignored for reduce ops other than min or max. */ +cudnnStatus_t CUDNNWINAPI +cudnnReduceTensor(cudnnHandle_t handle, + const cudnnReduceTensorDescriptor_t reduceTensorDesc, + void *indices, + size_t indicesSizeInBytes, + void *workspace, + size_t workspaceSizeInBytes, + const void *alpha, + const cudnnTensorDescriptor_t aDesc, + const void *A, + const void *beta, + const cudnnTensorDescriptor_t cDesc, + void *C); + +/* Set all values of a tensor to a given value : y[i] = value[0] */ +cudnnStatus_t CUDNNWINAPI +cudnnSetTensor(cudnnHandle_t handle, const cudnnTensorDescriptor_t yDesc, void *y, const void *valuePtr); + +/* Scale all values of a tensor by a given factor : y[i] = alpha * y[i] */ +cudnnStatus_t CUDNNWINAPI +cudnnScaleTensor(cudnnHandle_t handle, const cudnnTensorDescriptor_t yDesc, void *y, const void *alpha); + +/* Create an instance of FilterStruct */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateFilterDescriptor(cudnnFilterDescriptor_t *filterDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetFilter4dDescriptor(cudnnFilterDescriptor_t filterDesc, + cudnnDataType_t dataType, /* image data type */ + cudnnTensorFormat_t format, + int k, /* number of output feature maps */ + int c, /* number of input feature maps */ + int h, /* height of each input filter */ + int w); /* width of each input filter */ + +cudnnStatus_t CUDNNWINAPI +cudnnGetFilter4dDescriptor(const cudnnFilterDescriptor_t filterDesc, + cudnnDataType_t *dataType, /* image data type */ + cudnnTensorFormat_t *format, + int *k, /* number of output feature maps */ + int *c, /* number of input feature maps */ + int *h, /* height of each input filter */ + int *w); /* width of each input filter */ + +cudnnStatus_t CUDNNWINAPI +cudnnSetFilterNdDescriptor(cudnnFilterDescriptor_t filterDesc, + cudnnDataType_t dataType, /* image data type */ + cudnnTensorFormat_t format, + int nbDims, + const int filterDimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetFilterNdDescriptor(const cudnnFilterDescriptor_t filterDesc, + int nbDimsRequested, + cudnnDataType_t *dataType, /* image data type */ + cudnnTensorFormat_t *format, + int *nbDims, + int filterDimA[]); +cudnnStatus_t CUDNNWINAPI +cudnnGetFilterSizeInBytes(const cudnnFilterDescriptor_t filterDesc, size_t *size); + +cudnnStatus_t CUDNNWINAPI +cudnnTransformFilter(cudnnHandle_t handle, + const cudnnTensorTransformDescriptor_t transDesc, + const void *alpha, + const cudnnFilterDescriptor_t srcDesc, + const void *srcData, + const void *beta, + const cudnnFilterDescriptor_t destDesc, + void *destData); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyFilterDescriptor(cudnnFilterDescriptor_t filterDesc); + +/* + * softmax algorithm + */ +typedef enum { + CUDNN_SOFTMAX_FAST = 0, /* straightforward implementation */ + CUDNN_SOFTMAX_ACCURATE = 1, /* subtract max from every point to avoid overflow */ + CUDNN_SOFTMAX_LOG = 2 +} cudnnSoftmaxAlgorithm_t; + +typedef enum { + CUDNN_SOFTMAX_MODE_INSTANCE = 0, /* compute the softmax over all C, H, W for each N */ + CUDNN_SOFTMAX_MODE_CHANNEL = 1 /* compute the softmax over all C for each H, W, N */ +} cudnnSoftmaxMode_t; + +/* Softmax functions: All of the form "output = alpha * Op(inputs) + beta * output" */ + +/* Function to perform forward softmax */ +cudnnStatus_t CUDNNWINAPI +cudnnSoftmaxForward(cudnnHandle_t handle, + cudnnSoftmaxAlgorithm_t algo, + cudnnSoftmaxMode_t mode, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* + * pooling mode + */ +typedef enum { + CUDNN_POOLING_MAX = 0, + CUDNN_POOLING_AVERAGE_COUNT_INCLUDE_PADDING = 1, /* count for average includes padded values */ + CUDNN_POOLING_AVERAGE_COUNT_EXCLUDE_PADDING = 2, /* count for average does not include padded values */ + CUDNN_POOLING_MAX_DETERMINISTIC = 3 +} cudnnPoolingMode_t; + +/* Create an instance of pooling descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnCreatePoolingDescriptor(cudnnPoolingDescriptor_t *poolingDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetPooling2dDescriptor(cudnnPoolingDescriptor_t poolingDesc, + cudnnPoolingMode_t mode, + cudnnNanPropagation_t maxpoolingNanOpt, + int windowHeight, + int windowWidth, + int verticalPadding, + int horizontalPadding, + int verticalStride, + int horizontalStride); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPooling2dDescriptor(const cudnnPoolingDescriptor_t poolingDesc, + cudnnPoolingMode_t *mode, + cudnnNanPropagation_t *maxpoolingNanOpt, + int *windowHeight, + int *windowWidth, + int *verticalPadding, + int *horizontalPadding, + int *verticalStride, + int *horizontalStride); + +cudnnStatus_t CUDNNWINAPI +cudnnSetPoolingNdDescriptor(cudnnPoolingDescriptor_t poolingDesc, + const cudnnPoolingMode_t mode, + const cudnnNanPropagation_t maxpoolingNanOpt, + int nbDims, + const int windowDimA[], + const int paddingA[], + const int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPoolingNdDescriptor(const cudnnPoolingDescriptor_t poolingDesc, + int nbDimsRequested, + cudnnPoolingMode_t *mode, + cudnnNanPropagation_t *maxpoolingNanOpt, + int *nbDims, + int windowDimA[], + int paddingA[], + int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPoolingNdForwardOutputDim(const cudnnPoolingDescriptor_t poolingDesc, + const cudnnTensorDescriptor_t inputTensorDesc, + int nbDims, + int outputTensorDimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPooling2dForwardOutputDim(const cudnnPoolingDescriptor_t poolingDesc, + const cudnnTensorDescriptor_t inputTensorDesc, + int *n, + int *c, + int *h, + int *w); + +/* Destroy an instance of pooling descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyPoolingDescriptor(cudnnPoolingDescriptor_t poolingDesc); + +/* Pooling functions: All of the form "output = alpha * Op(inputs) + beta * output" */ + +/* Function to perform forward pooling */ +cudnnStatus_t CUDNNWINAPI +cudnnPoolingForward(cudnnHandle_t handle, + const cudnnPoolingDescriptor_t poolingDesc, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* + * activation mode + */ +typedef enum { + CUDNN_ACTIVATION_SIGMOID = 0, + CUDNN_ACTIVATION_RELU = 1, + CUDNN_ACTIVATION_TANH = 2, + CUDNN_ACTIVATION_CLIPPED_RELU = 3, + CUDNN_ACTIVATION_ELU = 4, + CUDNN_ACTIVATION_IDENTITY = 5, + CUDNN_ACTIVATION_SWISH = 6 +} cudnnActivationMode_t; + +/* Activation functions: All of the form "output = alpha * Op(inputs) + beta * output" */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateActivationDescriptor(cudnnActivationDescriptor_t *activationDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetActivationDescriptor(cudnnActivationDescriptor_t activationDesc, + cudnnActivationMode_t mode, + cudnnNanPropagation_t reluNanOpt, + double coef); /* ceiling for clipped RELU, alpha for ELU */ + +cudnnStatus_t CUDNNWINAPI +cudnnGetActivationDescriptor(const cudnnActivationDescriptor_t activationDesc, + cudnnActivationMode_t *mode, + cudnnNanPropagation_t *reluNanOpt, + double *coef); /* ceiling for clipped RELU, alpha for ELU */ + +cudnnStatus_t CUDNNWINAPI +cudnnSetActivationDescriptorSwishBeta(cudnnActivationDescriptor_t activationDesc, double swish_beta); + +cudnnStatus_t CUDNNWINAPI +cudnnGetActivationDescriptorSwishBeta(cudnnActivationDescriptor_t activationDesc, double *swish_beta); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyActivationDescriptor(cudnnActivationDescriptor_t activationDesc); + +/* Function to perform forward activation */ +cudnnStatus_t CUDNNWINAPI +cudnnActivationForward(cudnnHandle_t handle, + cudnnActivationDescriptor_t activationDesc, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* + * Create an instance of LRN (Local Response Normalization) descriptor + * Uses lrnN=5, lrnAlpha=1e-4, lrnBeta=0.75, lrnK=2.0 as defaults from Krizhevsky'12 ImageNet paper + */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateLRNDescriptor(cudnnLRNDescriptor_t *normDesc); + +#define CUDNN_LRN_MIN_N 1 /* minimum allowed lrnN */ +#define CUDNN_LRN_MAX_N 16 /* maximum allowed lrnN */ +#define CUDNN_LRN_MIN_K 1e-5 /* minimum allowed lrnK */ +#define CUDNN_LRN_MIN_BETA 0.01 /* minimum allowed lrnBeta */ + +/* LRN layer mode */ +typedef enum { + CUDNN_LRN_CROSS_CHANNEL_DIM1 = 0, /* Normalize across tensor's dimA[1] dimension */ +} cudnnLRNMode_t; + +/* + * Uses a window [center-lookBehind, center+lookAhead], where + * lookBehind = floor( (lrnN-1)/2 ), lookAhead = lrnN-lookBehind-1. + * Values of double parameters cast to tensor data type. + */ +cudnnStatus_t CUDNNWINAPI +cudnnSetLRNDescriptor(cudnnLRNDescriptor_t normDesc, unsigned lrnN, double lrnAlpha, double lrnBeta, double lrnK); +/* + * Retrieve the settings currently stored in an LRN layer descriptor + * Any of the provided pointers can be NULL (no corresponding value will be returned) + */ +cudnnStatus_t CUDNNWINAPI +cudnnGetLRNDescriptor(cudnnLRNDescriptor_t normDesc, unsigned *lrnN, double *lrnAlpha, double *lrnBeta, double *lrnK); + +/* Destroy an instance of LRN descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyLRNDescriptor(cudnnLRNDescriptor_t lrnDesc); + +/* LRN functions: output = alpha * normalize(x) + beta * old_y */ + +/* LRN cross-channel forward computation. Double parameters cast to tensor data type */ +cudnnStatus_t CUDNNWINAPI +cudnnLRNCrossChannelForward(cudnnHandle_t handle, + cudnnLRNDescriptor_t normDesc, + cudnnLRNMode_t lrnMode, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +typedef enum { + CUDNN_DIVNORM_PRECOMPUTED_MEANS = 0, +} cudnnDivNormMode_t; + +/* LCN/divisive normalization functions: y = alpha * normalize(x) + beta * y */ +cudnnStatus_t CUDNNWINAPI +cudnnDivisiveNormalizationForward(cudnnHandle_t handle, + cudnnLRNDescriptor_t normDesc, + cudnnDivNormMode_t mode, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, /* same desc for means, temp, temp2 */ + const void *x, + const void *means, /* if NULL, means are assumed to be zero */ + void *temp, + void *temp2, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +typedef enum { + /* bnScale, bnBias tensor dims are 1xCxHxWx.. (one value per CHW...-slice, normalized over N slice) */ + CUDNN_BATCHNORM_PER_ACTIVATION = 0, + + /* bnScale, bnBias tensor dims are 1xCx1x1 (one value per C-dim normalized over Nx1xHxW subtensors) */ + CUDNN_BATCHNORM_SPATIAL = 1, + + /* + * bnScale, bnBias tensor dims are 1xCx1x1 (one value per C-dim normalized over Nx1xHxW subtensors). + * May be faster than CUDNN_BATCHNORM_SPATIAL but imposes some limits on the range of values + */ + CUDNN_BATCHNORM_SPATIAL_PERSISTENT = 2, +} cudnnBatchNormMode_t; + +#define CUDNN_BN_MIN_EPSILON 0.0 /* Minimum epsilon allowed to be used in the Batch Normalization formula */ + +/* + * Derives a tensor descriptor from layer data descriptor for BatchNormalization + * scale, invVariance, bnBias, bnScale tensors. Use this tensor desc for + * bnScaleBiasMeanVarDesc and bnScaleBiasDiffDesc in Batch Normalization forward and backward functions. + */ +cudnnStatus_t CUDNNWINAPI +cudnnDeriveBNTensorDescriptor(cudnnTensorDescriptor_t derivedBnDesc, + const cudnnTensorDescriptor_t xDesc, + cudnnBatchNormMode_t mode); + +typedef enum { + CUDNN_BATCHNORM_OPS_BN = 0, /* do batch normalization only */ + CUDNN_BATCHNORM_OPS_BN_ACTIVATION = 1, /* do batchNorm, then activation */ + CUDNN_BATCHNORM_OPS_BN_ADD_ACTIVATION = 2, /* do batchNorm, then elemWiseAdd, then activation */ +} cudnnBatchNormOps_t; + +/* + * Performs Batch Normalization during Inference: + * y[i] = bnScale[k]*(x[i]-estimatedMean[k])/sqrt(epsilon+estimatedVariance[k]) + bnBias[k] + * with bnScale, bnBias, runningMean, runningInvVariance tensors indexed + * according to spatial or per-activation mode. Refer to cudnnBatchNormalizationForwardTraining + * above for notes on function arguments. + */ +cudnnStatus_t CUDNNWINAPI +cudnnBatchNormalizationForwardInference(cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + const void *alpha, /* alpha[0] = result blend factor */ + const void *beta, /* beta[0] = dest layer blend factor */ + const cudnnTensorDescriptor_t xDesc, + const void *x, /* NxCxHxW */ + const cudnnTensorDescriptor_t yDesc, + void *y, /* NxCxHxW */ + const cudnnTensorDescriptor_t bnScaleBiasMeanVarDesc, + const void *bnScale, + const void *bnBias, + const void *estimatedMean, + const void *estimatedVariance, + double epsilon); + +typedef enum { + /* bnScale, bnBias tensor dims are 1xCxHxWx.. (one value per CHW...-slice, normalized over N slice) */ + CUDNN_NORM_PER_ACTIVATION = 0, + + /* bnScale, bnBias tensor dims are 1xCx1x1 (one value per C-dim normalized over Nx1xHxW subtensors) */ + CUDNN_NORM_PER_CHANNEL = 1, +} cudnnNormMode_t; + +typedef enum { CUDNN_NORM_ALGO_STANDARD = 0, CUDNN_NORM_ALGO_PERSIST = 1 } cudnnNormAlgo_t; + +/* + * Derives a tensor descriptor from layer data descriptor for Normalization + * scale, invVariance, bnBias, bnScale tensors. Use this tensor desc for + * normScaleBiasMeanVarDesc and normScaleBiasDiffDesc in Normalization forward and backward functions. + */ +cudnnStatus_t CUDNNWINAPI +cudnnDeriveNormTensorDescriptor(cudnnTensorDescriptor_t derivedNormScaleBiasDesc, + cudnnTensorDescriptor_t derivedNormMeanVarDesc, + const cudnnTensorDescriptor_t xDesc, + cudnnNormMode_t mode, + int groupCnt); /* Place hold for future work, should be set to 1 now*/ + +typedef enum { + CUDNN_NORM_OPS_NORM = 0, /* do normalization only */ + CUDNN_NORM_OPS_NORM_ACTIVATION = 1, /* do Norm, then activation */ + CUDNN_NORM_OPS_NORM_ADD_ACTIVATION = 2, /* do Norm, then elemWiseAdd, then activation */ +} cudnnNormOps_t; + +/* + * Performs Normalization during Inference: + * y[i] = normScale[k]*(x[i]-estimatedMean[k])/sqrt(epsilon+estimatedVariance[k]) + normBias[k] + * with normScale, normBias, runningMean, runningInvVariance tensors indexed + * according to per-channel or per-activation mode. Refer to cudnnNormalizationForwardTraining + * above for notes on function arguments. + */ +cudnnStatus_t CUDNNWINAPI +cudnnNormalizationForwardInference(cudnnHandle_t handle, + cudnnNormMode_t mode, + cudnnNormOps_t normOps, + cudnnNormAlgo_t algo, + const void *alpha, /* alpha[0] = result blend factor */ + const void *beta, /* beta[0] = dest layer blend factor */ + const cudnnTensorDescriptor_t xDesc, + const void *x, /* NxCxHxW */ + const cudnnTensorDescriptor_t normScaleBiasDesc, + const void *normScale, + const void *normBias, + const cudnnTensorDescriptor_t normMeanVarDesc, + const void *estimatedMean, + const void *estimatedVariance, + const cudnnTensorDescriptor_t zDesc, + const void *z, + cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t yDesc, + void *y, /* NxCxHxW */ + double epsilon, + int groupCnt); /* Place hold for future work*/ + +/* APIs for spatial transformer network*/ +typedef enum { + CUDNN_SAMPLER_BILINEAR = 0, +} cudnnSamplerType_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateSpatialTransformerDescriptor(cudnnSpatialTransformerDescriptor_t *stDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetSpatialTransformerNdDescriptor(cudnnSpatialTransformerDescriptor_t stDesc, + cudnnSamplerType_t samplerType, + cudnnDataType_t dataType, + const int nbDims, + const int dimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroySpatialTransformerDescriptor(cudnnSpatialTransformerDescriptor_t stDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSpatialTfGridGeneratorForward(cudnnHandle_t handle, + const cudnnSpatialTransformerDescriptor_t stDesc, + const void *theta, + void *grid); + +cudnnStatus_t CUDNNWINAPI +cudnnSpatialTfSamplerForward(cudnnHandle_t handle, + cudnnSpatialTransformerDescriptor_t stDesc, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *grid, + const void *beta, + cudnnTensorDescriptor_t yDesc, + void *y); + +typedef struct cudnnDropoutStruct *cudnnDropoutDescriptor_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateDropoutDescriptor(cudnnDropoutDescriptor_t *dropoutDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc); + +/*helper function to determine size of the states to be passed to cudnnSetDropoutDescriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDropoutGetStatesSize(cudnnHandle_t handle, size_t *sizeInBytes); + +/*helper function to determine size of the reserve space to be passed to dropout forward/backward calls */ +cudnnStatus_t CUDNNWINAPI +cudnnDropoutGetReserveSpaceSize(cudnnTensorDescriptor_t xdesc, size_t *sizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnSetDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc, + cudnnHandle_t handle, + float dropout, + void *states, + size_t stateSizeInBytes, + unsigned long long seed); + +/* Restores the dropout descriptor to a previously saved-off state */ +cudnnStatus_t CUDNNWINAPI +cudnnRestoreDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc, + cudnnHandle_t handle, + float dropout, + void *states, + size_t stateSizeInBytes, + unsigned long long seed); + +cudnnStatus_t CUDNNWINAPI +cudnnGetDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc, + cudnnHandle_t handle, + float *dropout, + void **states, + unsigned long long *seed); + +cudnnStatus_t CUDNNWINAPI +cudnnDropoutForward(cudnnHandle_t handle, + const cudnnDropoutDescriptor_t dropoutDesc, + const cudnnTensorDescriptor_t xdesc, + const void *x, + const cudnnTensorDescriptor_t ydesc, + void *y, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +/* TODO: remove */ + +typedef struct cudnnAlgorithmStruct *cudnnAlgorithmDescriptor_t; +typedef struct cudnnAlgorithmPerformanceStruct *cudnnAlgorithmPerformance_t; + +/* TODO: move these enums out to the appropriate submodule */ +typedef enum { + CUDNN_CONVOLUTION_FWD_ALGO_IMPLICIT_GEMM = 0, + CUDNN_CONVOLUTION_FWD_ALGO_IMPLICIT_PRECOMP_GEMM = 1, + CUDNN_CONVOLUTION_FWD_ALGO_GEMM = 2, + CUDNN_CONVOLUTION_FWD_ALGO_DIRECT = 3, + CUDNN_CONVOLUTION_FWD_ALGO_FFT = 4, + CUDNN_CONVOLUTION_FWD_ALGO_FFT_TILING = 5, + CUDNN_CONVOLUTION_FWD_ALGO_WINOGRAD = 6, + CUDNN_CONVOLUTION_FWD_ALGO_WINOGRAD_NONFUSED = 7, + CUDNN_CONVOLUTION_FWD_ALGO_COUNT = 8 +} cudnnConvolutionFwdAlgo_t; + +typedef enum { + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_0 = 0, /* non-deterministic */ + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_1 = 1, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_FFT = 2, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_3 = 3, /* non-deterministic */ + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_WINOGRAD = 4, /* not implemented */ + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_WINOGRAD_NONFUSED = 5, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_FFT_TILING = 6, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_COUNT = 7 +} cudnnConvolutionBwdFilterAlgo_t; + +typedef enum { + CUDNN_CONVOLUTION_BWD_DATA_ALGO_0 = 0, /* non-deterministic */ + CUDNN_CONVOLUTION_BWD_DATA_ALGO_1 = 1, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_FFT = 2, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_FFT_TILING = 3, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_WINOGRAD = 4, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_WINOGRAD_NONFUSED = 5, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_COUNT = 6 +} cudnnConvolutionBwdDataAlgo_t; + +typedef enum { + CUDNN_RNN_ALGO_STANDARD = 0, + CUDNN_RNN_ALGO_PERSIST_STATIC = 1, + CUDNN_RNN_ALGO_PERSIST_DYNAMIC = 2, + CUDNN_RNN_ALGO_PERSIST_STATIC_SMALL_H = 3, + CUDNN_RNN_ALGO_COUNT = 4, +} cudnnRNNAlgo_t; + +typedef enum { CUDNN_CTC_LOSS_ALGO_DETERMINISTIC = 0, CUDNN_CTC_LOSS_ALGO_NON_DETERMINISTIC = 1 } cudnnCTCLossAlgo_t; + +/* TODO: remove */ +typedef struct cudnnAlgorithmUnionStruct { + union Algorithm { + cudnnConvolutionFwdAlgo_t convFwdAlgo; + cudnnConvolutionBwdFilterAlgo_t convBwdFilterAlgo; + cudnnConvolutionBwdDataAlgo_t convBwdDataAlgo; + cudnnRNNAlgo_t RNNAlgo; + cudnnCTCLossAlgo_t CTCLossAlgo; + } algo; +} cudnnAlgorithm_t; + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnCreateAlgorithmDescriptor(cudnnAlgorithmDescriptor_t *algoDesc); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnSetAlgorithmDescriptor(cudnnAlgorithmDescriptor_t algoDesc, cudnnAlgorithm_t algorithm); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetAlgorithmDescriptor(const cudnnAlgorithmDescriptor_t algoDesc, cudnnAlgorithm_t *algorithm); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnCopyAlgorithmDescriptor(const cudnnAlgorithmDescriptor_t src, cudnnAlgorithmDescriptor_t dest); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnDestroyAlgorithmDescriptor(cudnnAlgorithmDescriptor_t algoDesc); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnCreateAlgorithmPerformance(cudnnAlgorithmPerformance_t *algoPerf, int numberToCreate); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnSetAlgorithmPerformance(cudnnAlgorithmPerformance_t algoPerf, + cudnnAlgorithmDescriptor_t algoDesc, + cudnnStatus_t status, + float time, + size_t memory); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetAlgorithmPerformance(const cudnnAlgorithmPerformance_t algoPerf, + cudnnAlgorithmDescriptor_t *algoDesc, + cudnnStatus_t *status, + float *time, + size_t *memory); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnDestroyAlgorithmPerformance(cudnnAlgorithmPerformance_t *algoPerf, int numberToDestroy); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetAlgorithmSpaceSize(cudnnHandle_t handle, cudnnAlgorithmDescriptor_t algoDesc, size_t *algoSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnSaveAlgorithm(cudnnHandle_t handle, + cudnnAlgorithmDescriptor_t algoDesc, + void *algoSpace, + size_t algoSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRestoreAlgorithm(cudnnHandle_t handle, + void *algoSpace, + size_t algoSpaceSizeInBytes, + cudnnAlgorithmDescriptor_t algoDesc); + +typedef enum { + CUDNN_SEV_FATAL = 0, + CUDNN_SEV_ERROR = 1, + CUDNN_SEV_WARNING = 2, + CUDNN_SEV_INFO = 3, +} cudnnSeverity_t; + +/* Message masks to be used with cudnnSetCallback() */ +#define CUDNN_SEV_ERROR_EN (1U << CUDNN_SEV_ERROR) +#define CUDNN_SEV_WARNING_EN (1U << CUDNN_SEV_WARNING) +#define CUDNN_SEV_INFO_EN (1U << CUDNN_SEV_INFO) + +/* struct containing useful informaiton for each API call */ +typedef struct cudnnDebugStruct { + unsigned cudnn_version; + cudnnStatus_t cudnnStatus; + unsigned time_sec; /* epoch time in seconds */ + unsigned time_usec; /* microseconds part of epoch time */ + unsigned time_delta; /* time since start in seconds */ + cudnnHandle_t handle; /* cudnn handle */ + cudaStream_t stream; /* cuda stream ID */ + unsigned long long pid; /* process ID */ + unsigned long long tid; /* thread ID */ + int cudaDeviceId; /* CUDA device ID */ + int reserved[15]; /* reserved for future use */ +} cudnnDebug_t; + +typedef void (*cudnnCallback_t)(cudnnSeverity_t sev, void *udata, const cudnnDebug_t *dbg, const char *msg); + +cudnnStatus_t CUDNNWINAPI +cudnnSetCallback(unsigned mask, void *udata, cudnnCallback_t fptr); + +cudnnStatus_t CUDNNWINAPI +cudnnGetCallback(unsigned *mask, void **udata, cudnnCallback_t *fptr); + +/* + * \brief Cross-library version checker. + * This function is implemented differently in each sub-library. Each sublib + * checks whether its own version matches that of its dependencies. + * \returns CUDNN_STATUS_SUCCESS if the version check passes, + * CUDNN_STATUS_VERSION_MISMATCH if the versions are inconsistent. + */ +cudnnStatus_t CUDNNWINAPI +cudnnOpsInferVersionCheck(void); + +#if defined(__cplusplus) +} +#endif + +#endif /* CUDNN_OPS_INFER_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_infer_v8.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_infer_v8.h new file mode 100644 index 0000000000000000000000000000000000000000..79ba34cc1a1557462d49b63a9cb52d9bfe149693 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_infer_v8.h @@ -0,0 +1,1183 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* + * cudnn_ops_infer : cuDNN's basic definitions and inference operations. + */ + +#if !defined(CUDNN_OPS_INFER_H_) +#define CUDNN_OPS_INFER_H_ + +#include +#include + +#include "cudnn_version.h" + +/* These version numbers are autogenerated, do not edit manually. */ +#define CUDNN_OPS_INFER_MAJOR 8 +#define CUDNN_OPS_INFER_MINOR 9 +#define CUDNN_OPS_INFER_PATCH 2 + +#if (CUDNN_OPS_INFER_MAJOR != CUDNN_MAJOR) || (CUDNN_OPS_INFER_MINOR != CUDNN_MINOR) || \ + (CUDNN_OPS_INFER_PATCH != CUDNN_PATCHLEVEL) +#error Version mismatch in cuDNN OPS INFER!!! +#endif + +#ifndef CUDNNWINAPI +#ifdef _WIN32 +#define CUDNNWINAPI __stdcall +#else +#define CUDNNWINAPI +#endif +#endif + +/* Warnings for deprecated API-s are enabled using the CUDNN_WARN_DEPRECATED macro */ +#if defined(CUDNN_WARN_DEPRECATED) && (defined(__GNUC__) || defined(__clang__)) +/* GCC, Intel C/C++, Cray C/C++, CLANG, IBM XL C/C++ little endian */ +#define CUDNN_DEPRECATED __attribute__((deprecated)) +#elif defined(CUDNN_WARN_DEPRECATED) && defined(_MSC_VER) +/* Microsoft Visual C++ */ +#define CUDNN_DEPRECATED __declspec(deprecated) +#elif defined(CUDNN_WARN_DEPRECATED) && (__cplusplus >= 201402L) +/* C++14 compilers */ +#define CUDNN_DEPRECATED [[deprecated]] +#else +/* No support for the deprecated attribute */ +#define CUDNN_DEPRECATED +#endif + +#if defined(__cplusplus) +extern "C" { +#endif + +struct cudnnContext; +typedef struct cudnnContext *cudnnHandle_t; + +size_t CUDNNWINAPI +cudnnGetVersion(void); + +size_t CUDNNWINAPI +cudnnGetMaxDeviceVersion(void); + +/* Returns CUDA Runtime version statically linked against cudnn */ +size_t CUDNNWINAPI +cudnnGetCudartVersion(void); + +/* + * CUDNN return codes + */ +typedef enum { + CUDNN_STATUS_SUCCESS = 0, + CUDNN_STATUS_NOT_INITIALIZED = 1, + CUDNN_STATUS_ALLOC_FAILED = 2, + CUDNN_STATUS_BAD_PARAM = 3, + CUDNN_STATUS_INTERNAL_ERROR = 4, + CUDNN_STATUS_INVALID_VALUE = 5, + CUDNN_STATUS_ARCH_MISMATCH = 6, + CUDNN_STATUS_MAPPING_ERROR = 7, + CUDNN_STATUS_EXECUTION_FAILED = 8, + CUDNN_STATUS_NOT_SUPPORTED = 9, + CUDNN_STATUS_LICENSE_ERROR = 10, + CUDNN_STATUS_RUNTIME_PREREQUISITE_MISSING = 11, + CUDNN_STATUS_RUNTIME_IN_PROGRESS = 12, + CUDNN_STATUS_RUNTIME_FP_OVERFLOW = 13, + CUDNN_STATUS_VERSION_MISMATCH = 14, +} cudnnStatus_t; + +/* human-readable error messages */ +const char *CUDNNWINAPI +cudnnGetErrorString(cudnnStatus_t status); + +/* Forward definition in this version only */ +typedef struct cudnnRuntimeTag_t cudnnRuntimeTag_t; + +typedef enum { + CUDNN_ERRQUERY_RAWCODE = 0, + CUDNN_ERRQUERY_NONBLOCKING = 1, + CUDNN_ERRQUERY_BLOCKING = 2, +} cudnnErrQueryMode_t; + +cudnnStatus_t CUDNNWINAPI +cudnnQueryRuntimeError(cudnnHandle_t handle, cudnnStatus_t *rstatus, cudnnErrQueryMode_t mode, cudnnRuntimeTag_t *tag); + +#ifndef __LIBRARY_TYPES_H__ + +typedef enum libraryPropertyType_t { MAJOR_VERSION, MINOR_VERSION, PATCH_LEVEL } libraryPropertyType; + +#endif + +cudnnStatus_t CUDNNWINAPI +cudnnGetProperty(libraryPropertyType type, int *value); + +cudnnStatus_t CUDNNWINAPI +cudnnCreate(cudnnHandle_t *handle); +cudnnStatus_t CUDNNWINAPI +cudnnDestroy(cudnnHandle_t handle); +cudnnStatus_t CUDNNWINAPI +cudnnSetStream(cudnnHandle_t handle, cudaStream_t streamId); +cudnnStatus_t CUDNNWINAPI +cudnnGetStream(cudnnHandle_t handle, cudaStream_t *streamId); + +/* Data structures to represent Image/Filter and the Neural Network Layer */ +typedef struct cudnnTensorStruct *cudnnTensorDescriptor_t; +typedef struct cudnnPoolingStruct *cudnnPoolingDescriptor_t; +typedef struct cudnnFilterStruct *cudnnFilterDescriptor_t; +typedef struct cudnnLRNStruct *cudnnLRNDescriptor_t; +typedef struct cudnnActivationStruct *cudnnActivationDescriptor_t; +typedef struct cudnnSpatialTransformerStruct *cudnnSpatialTransformerDescriptor_t; +typedef struct cudnnOpTensorStruct *cudnnOpTensorDescriptor_t; +typedef struct cudnnReduceTensorStruct *cudnnReduceTensorDescriptor_t; +typedef struct cudnnCTCLossStruct *cudnnCTCLossDescriptor_t; +typedef struct cudnnTensorTransformStruct *cudnnTensorTransformDescriptor_t; +/* + * CUDNN data type + */ +typedef enum { + CUDNN_DATA_FLOAT = 0, + CUDNN_DATA_DOUBLE = 1, + CUDNN_DATA_HALF = 2, + CUDNN_DATA_INT8 = 3, + CUDNN_DATA_INT32 = 4, + CUDNN_DATA_INT8x4 = 5, + CUDNN_DATA_UINT8 = 6, + CUDNN_DATA_UINT8x4 = 7, + CUDNN_DATA_INT8x32 = 8, + CUDNN_DATA_BFLOAT16 = 9, + CUDNN_DATA_INT64 = 10, + CUDNN_DATA_BOOLEAN = 11, + CUDNN_DATA_FP8_E4M3 = 12, + CUDNN_DATA_FP8_E5M2 = 13, + CUDNN_DATA_FAST_FLOAT_FOR_FP8 = 14, +} cudnnDataType_t; + +/* + * CUDNN math type + */ +typedef enum { + CUDNN_DEFAULT_MATH = 0, + CUDNN_TENSOR_OP_MATH = 1, + CUDNN_TENSOR_OP_MATH_ALLOW_CONVERSION = 2, + CUDNN_FMA_MATH = 3, +} cudnnMathType_t; + +/* + * CUDNN propagate Nan + */ +typedef enum { + CUDNN_NOT_PROPAGATE_NAN = 0, + CUDNN_PROPAGATE_NAN = 1, +} cudnnNanPropagation_t; + +/* + * CUDNN Determinism + */ +typedef enum { + CUDNN_NON_DETERMINISTIC = 0, + CUDNN_DETERMINISTIC = 1, +} cudnnDeterminism_t; + +/* Maximum supported number of tensor dimensions */ +#define CUDNN_DIM_MAX 8 + +/* Create an instance of a generic Tensor descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateTensorDescriptor(cudnnTensorDescriptor_t *tensorDesc); + +typedef enum { + CUDNN_TENSOR_NCHW = 0, /* row major (wStride = 1, hStride = w) */ + CUDNN_TENSOR_NHWC = 1, /* feature maps interleaved ( cStride = 1 )*/ + CUDNN_TENSOR_NCHW_VECT_C = 2, /* each image point is vector of element of C, vector length in data type */ +} cudnnTensorFormat_t; + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensor4dDescriptor(cudnnTensorDescriptor_t tensorDesc, + cudnnTensorFormat_t format, + cudnnDataType_t dataType, /* image data type */ + int n, /* number of inputs (batch size) */ + int c, /* number of input feature maps */ + int h, /* height of input section */ + int w); /* width of input section */ + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensor4dDescriptorEx(cudnnTensorDescriptor_t tensorDesc, + cudnnDataType_t dataType, /* image data type */ + int n, /* number of inputs (batch size) */ + int c, /* number of input feature maps */ + int h, /* height of input section */ + int w, /* width of input section */ + int nStride, + int cStride, + int hStride, + int wStride); + +cudnnStatus_t CUDNNWINAPI +cudnnGetTensor4dDescriptor(const cudnnTensorDescriptor_t tensorDesc, + cudnnDataType_t *dataType, /* image data type */ + int *n, /* number of inputs (batch size) */ + int *c, /* number of input feature maps */ + int *h, /* height of input section */ + int *w, /* width of input section */ + int *nStride, + int *cStride, + int *hStride, + int *wStride); + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensorNdDescriptor(cudnnTensorDescriptor_t tensorDesc, + cudnnDataType_t dataType, + int nbDims, + const int dimA[], + const int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnSetTensorNdDescriptorEx(cudnnTensorDescriptor_t tensorDesc, + cudnnTensorFormat_t format, + cudnnDataType_t dataType, + int nbDims, + const int dimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetTensorNdDescriptor(const cudnnTensorDescriptor_t tensorDesc, + int nbDimsRequested, + cudnnDataType_t *dataType, + int *nbDims, + int dimA[], + int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetTensorSizeInBytes(const cudnnTensorDescriptor_t tensorDesc, size_t *size); + +/* PixelOffset( n, c, h, w ) = n *input_stride + c * feature_stride + h * h_stride + w * w_stride + + 1)Example of all images in row major order one batch of features after the other (with an optional padding on row) + input_stride : c x h x h_stride + feature_stride : h x h_stride + h_stride : >= w ( h_stride = w if no padding) + w_stride : 1 + + + 2)Example of all images in row major with features maps interleaved + input_stride : c x h x h_stride + feature_stride : 1 + h_stride : w x c + w_stride : c + + 3)Example of all images in column major order one batch of features after the other (with optional padding on column) + input_stride : c x w x w_stride + feature_stride : w x w_stride + h_stride : 1 + w_stride : >= h + +*/ + +/* Destroy an instance of Tensor4d descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyTensorDescriptor(cudnnTensorDescriptor_t tensorDesc); + +/* Fold/unfold transforms */ +typedef enum { + CUDNN_TRANSFORM_FOLD = 0U, + CUDNN_TRANSFORM_UNFOLD = 1U, +} cudnnFoldingDirection_t; + +/** Create a destination descriptor for cudnnTransformTensor */ +cudnnStatus_t CUDNNWINAPI +cudnnInitTransformDest(const cudnnTensorTransformDescriptor_t transformDesc, + const cudnnTensorDescriptor_t srcDesc, + cudnnTensorDescriptor_t destDesc, + size_t *destSizeInBytes); + +/** Create an empty tensor transform descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateTensorTransformDescriptor(cudnnTensorTransformDescriptor_t *transformDesc); + +/** Initialize a previously created tensor transform descriptor. */ +cudnnStatus_t CUDNNWINAPI +cudnnSetTensorTransformDescriptor(cudnnTensorTransformDescriptor_t transformDesc, + const uint32_t nbDims, + const cudnnTensorFormat_t destFormat, + const int32_t padBeforeA[], + const int32_t padAfterA[], + const uint32_t foldA[], + const cudnnFoldingDirection_t direction); + +/** + * Retrieves the values stored in a previously initialized tensor transform + * descriptor. + */ +cudnnStatus_t CUDNNWINAPI +cudnnGetTensorTransformDescriptor(cudnnTensorTransformDescriptor_t transformDesc, + uint32_t nbDimsRequested, + cudnnTensorFormat_t *destFormat, + int32_t padBeforeA[], + int32_t padAfterA[], + uint32_t foldA[], + cudnnFoldingDirection_t *direction); + +/** + * Destroys a previously created tensor transform descriptor. + */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyTensorTransformDescriptor(cudnnTensorTransformDescriptor_t transformDesc); + +/* Tensor layout conversion helper (y = alpha * x + beta * y) */ +cudnnStatus_t CUDNNWINAPI +cudnnTransformTensor(cudnnHandle_t handle, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +cudnnStatus_t CUDNNWINAPI +cudnnTransformTensorEx(cudnnHandle_t handle, + const cudnnTensorTransformDescriptor_t transDesc, + const void *alpha, + const cudnnTensorDescriptor_t srcDesc, + const void *srcData, + const void *beta, + const cudnnTensorDescriptor_t destDesc, + void *destData); + +/* Tensor Bias addition : C = alpha * A + beta * C */ +cudnnStatus_t CUDNNWINAPI +cudnnAddTensor(cudnnHandle_t handle, + const void *alpha, + const cudnnTensorDescriptor_t aDesc, + const void *A, + const void *beta, + const cudnnTensorDescriptor_t cDesc, + void *C); + +/* + * CUDNN OpTensor op type + */ +typedef enum { + CUDNN_OP_TENSOR_ADD = 0, + CUDNN_OP_TENSOR_MUL = 1, + CUDNN_OP_TENSOR_MIN = 2, + CUDNN_OP_TENSOR_MAX = 3, + CUDNN_OP_TENSOR_SQRT = 4, + CUDNN_OP_TENSOR_NOT = 5, +} cudnnOpTensorOp_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateOpTensorDescriptor(cudnnOpTensorDescriptor_t *opTensorDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetOpTensorDescriptor(cudnnOpTensorDescriptor_t opTensorDesc, + cudnnOpTensorOp_t opTensorOp, + cudnnDataType_t opTensorCompType, + cudnnNanPropagation_t opTensorNanOpt); + +cudnnStatus_t CUDNNWINAPI +cudnnGetOpTensorDescriptor(const cudnnOpTensorDescriptor_t opTensorDesc, + cudnnOpTensorOp_t *opTensorOp, + cudnnDataType_t *opTensorCompType, + cudnnNanPropagation_t *opTensorNanOpt); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyOpTensorDescriptor(cudnnOpTensorDescriptor_t opTensorDesc); + +/* Tensor operation : C = op( alpha1 * A, alpha2 * B ) + beta * C */ +/* B tensor is ignored for CUDNN_OP_TENSOR_SQRT, CUDNN_OP_TENSOR_NOT. */ +cudnnStatus_t CUDNNWINAPI +cudnnOpTensor(cudnnHandle_t handle, + const cudnnOpTensorDescriptor_t opTensorDesc, + const void *alpha1, + const cudnnTensorDescriptor_t aDesc, + const void *A, + const void *alpha2, + const cudnnTensorDescriptor_t bDesc, + const void *B, + const void *beta, + const cudnnTensorDescriptor_t cDesc, + void *C); + +/* + * CUDNN ReduceTensor op type + */ +typedef enum { + CUDNN_REDUCE_TENSOR_ADD = 0, + CUDNN_REDUCE_TENSOR_MUL = 1, + CUDNN_REDUCE_TENSOR_MIN = 2, + CUDNN_REDUCE_TENSOR_MAX = 3, + CUDNN_REDUCE_TENSOR_AMAX = 4, + CUDNN_REDUCE_TENSOR_AVG = 5, + CUDNN_REDUCE_TENSOR_NORM1 = 6, + CUDNN_REDUCE_TENSOR_NORM2 = 7, + CUDNN_REDUCE_TENSOR_MUL_NO_ZEROS = 8, +} cudnnReduceTensorOp_t; + +/* + * CUDNN ReduceTensor indices type + */ +typedef enum { + CUDNN_REDUCE_TENSOR_NO_INDICES = 0, + CUDNN_REDUCE_TENSOR_FLATTENED_INDICES = 1, +} cudnnReduceTensorIndices_t; + +/* + * CUDNN tensor indices type size (all unsigned) + * Currently not supported, default is 32 bit unsigned. + */ +typedef enum { + CUDNN_32BIT_INDICES = 0, + CUDNN_64BIT_INDICES = 1, + CUDNN_16BIT_INDICES = 2, + CUDNN_8BIT_INDICES = 3, +} cudnnIndicesType_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateReduceTensorDescriptor(cudnnReduceTensorDescriptor_t *reduceTensorDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetReduceTensorDescriptor(cudnnReduceTensorDescriptor_t reduceTensorDesc, + cudnnReduceTensorOp_t reduceTensorOp, + cudnnDataType_t reduceTensorCompType, + cudnnNanPropagation_t reduceTensorNanOpt, + cudnnReduceTensorIndices_t reduceTensorIndices, + cudnnIndicesType_t reduceTensorIndicesType); + +cudnnStatus_t CUDNNWINAPI +cudnnGetReduceTensorDescriptor(const cudnnReduceTensorDescriptor_t reduceTensorDesc, + cudnnReduceTensorOp_t *reduceTensorOp, + cudnnDataType_t *reduceTensorCompType, + cudnnNanPropagation_t *reduceTensorNanOpt, + cudnnReduceTensorIndices_t *reduceTensorIndices, + cudnnIndicesType_t *reduceTensorIndicesType); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyReduceTensorDescriptor(cudnnReduceTensorDescriptor_t reduceTensorDesc); + +/* Helper function to return the minimum size of the index space to be passed to the reduction given the input and + * output tensors */ +cudnnStatus_t CUDNNWINAPI +cudnnGetReductionIndicesSize(cudnnHandle_t handle, + const cudnnReduceTensorDescriptor_t reduceTensorDesc, + const cudnnTensorDescriptor_t aDesc, + const cudnnTensorDescriptor_t cDesc, + size_t *sizeInBytes); + +/* Helper function to return the minimum size of the workspace to be passed to the reduction given the input and output + * tensors */ +cudnnStatus_t CUDNNWINAPI +cudnnGetReductionWorkspaceSize(cudnnHandle_t handle, + const cudnnReduceTensorDescriptor_t reduceTensorDesc, + const cudnnTensorDescriptor_t aDesc, + const cudnnTensorDescriptor_t cDesc, + size_t *sizeInBytes); + +/* Tensor operation : C = reduce op( alpha * A ) + beta * C */ +/* The NaN propagation enum applies to only the min and max reduce ops; the other reduce ops propagate NaN as usual. */ +/* The indices space is ignored for reduce ops other than min or max. */ +cudnnStatus_t CUDNNWINAPI +cudnnReduceTensor(cudnnHandle_t handle, + const cudnnReduceTensorDescriptor_t reduceTensorDesc, + void *indices, + size_t indicesSizeInBytes, + void *workspace, + size_t workspaceSizeInBytes, + const void *alpha, + const cudnnTensorDescriptor_t aDesc, + const void *A, + const void *beta, + const cudnnTensorDescriptor_t cDesc, + void *C); + +/* Set all values of a tensor to a given value : y[i] = value[0] */ +cudnnStatus_t CUDNNWINAPI +cudnnSetTensor(cudnnHandle_t handle, const cudnnTensorDescriptor_t yDesc, void *y, const void *valuePtr); + +/* Scale all values of a tensor by a given factor : y[i] = alpha * y[i] */ +cudnnStatus_t CUDNNWINAPI +cudnnScaleTensor(cudnnHandle_t handle, const cudnnTensorDescriptor_t yDesc, void *y, const void *alpha); + +/* Create an instance of FilterStruct */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateFilterDescriptor(cudnnFilterDescriptor_t *filterDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetFilter4dDescriptor(cudnnFilterDescriptor_t filterDesc, + cudnnDataType_t dataType, /* image data type */ + cudnnTensorFormat_t format, + int k, /* number of output feature maps */ + int c, /* number of input feature maps */ + int h, /* height of each input filter */ + int w); /* width of each input filter */ + +cudnnStatus_t CUDNNWINAPI +cudnnGetFilter4dDescriptor(const cudnnFilterDescriptor_t filterDesc, + cudnnDataType_t *dataType, /* image data type */ + cudnnTensorFormat_t *format, + int *k, /* number of output feature maps */ + int *c, /* number of input feature maps */ + int *h, /* height of each input filter */ + int *w); /* width of each input filter */ + +cudnnStatus_t CUDNNWINAPI +cudnnSetFilterNdDescriptor(cudnnFilterDescriptor_t filterDesc, + cudnnDataType_t dataType, /* image data type */ + cudnnTensorFormat_t format, + int nbDims, + const int filterDimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetFilterNdDescriptor(const cudnnFilterDescriptor_t filterDesc, + int nbDimsRequested, + cudnnDataType_t *dataType, /* image data type */ + cudnnTensorFormat_t *format, + int *nbDims, + int filterDimA[]); +cudnnStatus_t CUDNNWINAPI +cudnnGetFilterSizeInBytes(const cudnnFilterDescriptor_t filterDesc, size_t *size); + +cudnnStatus_t CUDNNWINAPI +cudnnTransformFilter(cudnnHandle_t handle, + const cudnnTensorTransformDescriptor_t transDesc, + const void *alpha, + const cudnnFilterDescriptor_t srcDesc, + const void *srcData, + const void *beta, + const cudnnFilterDescriptor_t destDesc, + void *destData); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyFilterDescriptor(cudnnFilterDescriptor_t filterDesc); + +/* + * softmax algorithm + */ +typedef enum { + CUDNN_SOFTMAX_FAST = 0, /* straightforward implementation */ + CUDNN_SOFTMAX_ACCURATE = 1, /* subtract max from every point to avoid overflow */ + CUDNN_SOFTMAX_LOG = 2 +} cudnnSoftmaxAlgorithm_t; + +typedef enum { + CUDNN_SOFTMAX_MODE_INSTANCE = 0, /* compute the softmax over all C, H, W for each N */ + CUDNN_SOFTMAX_MODE_CHANNEL = 1 /* compute the softmax over all C for each H, W, N */ +} cudnnSoftmaxMode_t; + +/* Softmax functions: All of the form "output = alpha * Op(inputs) + beta * output" */ + +/* Function to perform forward softmax */ +cudnnStatus_t CUDNNWINAPI +cudnnSoftmaxForward(cudnnHandle_t handle, + cudnnSoftmaxAlgorithm_t algo, + cudnnSoftmaxMode_t mode, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* + * pooling mode + */ +typedef enum { + CUDNN_POOLING_MAX = 0, + CUDNN_POOLING_AVERAGE_COUNT_INCLUDE_PADDING = 1, /* count for average includes padded values */ + CUDNN_POOLING_AVERAGE_COUNT_EXCLUDE_PADDING = 2, /* count for average does not include padded values */ + CUDNN_POOLING_MAX_DETERMINISTIC = 3 +} cudnnPoolingMode_t; + +/* Create an instance of pooling descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnCreatePoolingDescriptor(cudnnPoolingDescriptor_t *poolingDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetPooling2dDescriptor(cudnnPoolingDescriptor_t poolingDesc, + cudnnPoolingMode_t mode, + cudnnNanPropagation_t maxpoolingNanOpt, + int windowHeight, + int windowWidth, + int verticalPadding, + int horizontalPadding, + int verticalStride, + int horizontalStride); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPooling2dDescriptor(const cudnnPoolingDescriptor_t poolingDesc, + cudnnPoolingMode_t *mode, + cudnnNanPropagation_t *maxpoolingNanOpt, + int *windowHeight, + int *windowWidth, + int *verticalPadding, + int *horizontalPadding, + int *verticalStride, + int *horizontalStride); + +cudnnStatus_t CUDNNWINAPI +cudnnSetPoolingNdDescriptor(cudnnPoolingDescriptor_t poolingDesc, + const cudnnPoolingMode_t mode, + const cudnnNanPropagation_t maxpoolingNanOpt, + int nbDims, + const int windowDimA[], + const int paddingA[], + const int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPoolingNdDescriptor(const cudnnPoolingDescriptor_t poolingDesc, + int nbDimsRequested, + cudnnPoolingMode_t *mode, + cudnnNanPropagation_t *maxpoolingNanOpt, + int *nbDims, + int windowDimA[], + int paddingA[], + int strideA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPoolingNdForwardOutputDim(const cudnnPoolingDescriptor_t poolingDesc, + const cudnnTensorDescriptor_t inputTensorDesc, + int nbDims, + int outputTensorDimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnGetPooling2dForwardOutputDim(const cudnnPoolingDescriptor_t poolingDesc, + const cudnnTensorDescriptor_t inputTensorDesc, + int *n, + int *c, + int *h, + int *w); + +/* Destroy an instance of pooling descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyPoolingDescriptor(cudnnPoolingDescriptor_t poolingDesc); + +/* Pooling functions: All of the form "output = alpha * Op(inputs) + beta * output" */ + +/* Function to perform forward pooling */ +cudnnStatus_t CUDNNWINAPI +cudnnPoolingForward(cudnnHandle_t handle, + const cudnnPoolingDescriptor_t poolingDesc, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* + * activation mode + */ +typedef enum { + CUDNN_ACTIVATION_SIGMOID = 0, + CUDNN_ACTIVATION_RELU = 1, + CUDNN_ACTIVATION_TANH = 2, + CUDNN_ACTIVATION_CLIPPED_RELU = 3, + CUDNN_ACTIVATION_ELU = 4, + CUDNN_ACTIVATION_IDENTITY = 5, + CUDNN_ACTIVATION_SWISH = 6 +} cudnnActivationMode_t; + +/* Activation functions: All of the form "output = alpha * Op(inputs) + beta * output" */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateActivationDescriptor(cudnnActivationDescriptor_t *activationDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetActivationDescriptor(cudnnActivationDescriptor_t activationDesc, + cudnnActivationMode_t mode, + cudnnNanPropagation_t reluNanOpt, + double coef); /* ceiling for clipped RELU, alpha for ELU */ + +cudnnStatus_t CUDNNWINAPI +cudnnGetActivationDescriptor(const cudnnActivationDescriptor_t activationDesc, + cudnnActivationMode_t *mode, + cudnnNanPropagation_t *reluNanOpt, + double *coef); /* ceiling for clipped RELU, alpha for ELU */ + +cudnnStatus_t CUDNNWINAPI +cudnnSetActivationDescriptorSwishBeta(cudnnActivationDescriptor_t activationDesc, double swish_beta); + +cudnnStatus_t CUDNNWINAPI +cudnnGetActivationDescriptorSwishBeta(cudnnActivationDescriptor_t activationDesc, double *swish_beta); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyActivationDescriptor(cudnnActivationDescriptor_t activationDesc); + +/* Function to perform forward activation */ +cudnnStatus_t CUDNNWINAPI +cudnnActivationForward(cudnnHandle_t handle, + cudnnActivationDescriptor_t activationDesc, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +/* + * Create an instance of LRN (Local Response Normalization) descriptor + * Uses lrnN=5, lrnAlpha=1e-4, lrnBeta=0.75, lrnK=2.0 as defaults from Krizhevsky'12 ImageNet paper + */ +cudnnStatus_t CUDNNWINAPI +cudnnCreateLRNDescriptor(cudnnLRNDescriptor_t *normDesc); + +#define CUDNN_LRN_MIN_N 1 /* minimum allowed lrnN */ +#define CUDNN_LRN_MAX_N 16 /* maximum allowed lrnN */ +#define CUDNN_LRN_MIN_K 1e-5 /* minimum allowed lrnK */ +#define CUDNN_LRN_MIN_BETA 0.01 /* minimum allowed lrnBeta */ + +/* LRN layer mode */ +typedef enum { + CUDNN_LRN_CROSS_CHANNEL_DIM1 = 0, /* Normalize across tensor's dimA[1] dimension */ +} cudnnLRNMode_t; + +/* + * Uses a window [center-lookBehind, center+lookAhead], where + * lookBehind = floor( (lrnN-1)/2 ), lookAhead = lrnN-lookBehind-1. + * Values of double parameters cast to tensor data type. + */ +cudnnStatus_t CUDNNWINAPI +cudnnSetLRNDescriptor(cudnnLRNDescriptor_t normDesc, unsigned lrnN, double lrnAlpha, double lrnBeta, double lrnK); +/* + * Retrieve the settings currently stored in an LRN layer descriptor + * Any of the provided pointers can be NULL (no corresponding value will be returned) + */ +cudnnStatus_t CUDNNWINAPI +cudnnGetLRNDescriptor(cudnnLRNDescriptor_t normDesc, unsigned *lrnN, double *lrnAlpha, double *lrnBeta, double *lrnK); + +/* Destroy an instance of LRN descriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDestroyLRNDescriptor(cudnnLRNDescriptor_t lrnDesc); + +/* LRN functions: output = alpha * normalize(x) + beta * old_y */ + +/* LRN cross-channel forward computation. Double parameters cast to tensor data type */ +cudnnStatus_t CUDNNWINAPI +cudnnLRNCrossChannelForward(cudnnHandle_t handle, + cudnnLRNDescriptor_t normDesc, + cudnnLRNMode_t lrnMode, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +typedef enum { + CUDNN_DIVNORM_PRECOMPUTED_MEANS = 0, +} cudnnDivNormMode_t; + +/* LCN/divisive normalization functions: y = alpha * normalize(x) + beta * y */ +cudnnStatus_t CUDNNWINAPI +cudnnDivisiveNormalizationForward(cudnnHandle_t handle, + cudnnLRNDescriptor_t normDesc, + cudnnDivNormMode_t mode, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, /* same desc for means, temp, temp2 */ + const void *x, + const void *means, /* if NULL, means are assumed to be zero */ + void *temp, + void *temp2, + const void *beta, + const cudnnTensorDescriptor_t yDesc, + void *y); + +typedef enum { + /* bnScale, bnBias tensor dims are 1xCxHxWx.. (one value per CHW...-slice, normalized over N slice) */ + CUDNN_BATCHNORM_PER_ACTIVATION = 0, + + /* bnScale, bnBias tensor dims are 1xCx1x1 (one value per C-dim normalized over Nx1xHxW subtensors) */ + CUDNN_BATCHNORM_SPATIAL = 1, + + /* + * bnScale, bnBias tensor dims are 1xCx1x1 (one value per C-dim normalized over Nx1xHxW subtensors). + * May be faster than CUDNN_BATCHNORM_SPATIAL but imposes some limits on the range of values + */ + CUDNN_BATCHNORM_SPATIAL_PERSISTENT = 2, +} cudnnBatchNormMode_t; + +#define CUDNN_BN_MIN_EPSILON 0.0 /* Minimum epsilon allowed to be used in the Batch Normalization formula */ + +/* + * Derives a tensor descriptor from layer data descriptor for BatchNormalization + * scale, invVariance, bnBias, bnScale tensors. Use this tensor desc for + * bnScaleBiasMeanVarDesc and bnScaleBiasDiffDesc in Batch Normalization forward and backward functions. + */ +cudnnStatus_t CUDNNWINAPI +cudnnDeriveBNTensorDescriptor(cudnnTensorDescriptor_t derivedBnDesc, + const cudnnTensorDescriptor_t xDesc, + cudnnBatchNormMode_t mode); + +typedef enum { + CUDNN_BATCHNORM_OPS_BN = 0, /* do batch normalization only */ + CUDNN_BATCHNORM_OPS_BN_ACTIVATION = 1, /* do batchNorm, then activation */ + CUDNN_BATCHNORM_OPS_BN_ADD_ACTIVATION = 2, /* do batchNorm, then elemWiseAdd, then activation */ +} cudnnBatchNormOps_t; + +/* + * Performs Batch Normalization during Inference: + * y[i] = bnScale[k]*(x[i]-estimatedMean[k])/sqrt(epsilon+estimatedVariance[k]) + bnBias[k] + * with bnScale, bnBias, runningMean, runningInvVariance tensors indexed + * according to spatial or per-activation mode. Refer to cudnnBatchNormalizationForwardTraining + * above for notes on function arguments. + */ +cudnnStatus_t CUDNNWINAPI +cudnnBatchNormalizationForwardInference(cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + const void *alpha, /* alpha[0] = result blend factor */ + const void *beta, /* beta[0] = dest layer blend factor */ + const cudnnTensorDescriptor_t xDesc, + const void *x, /* NxCxHxW */ + const cudnnTensorDescriptor_t yDesc, + void *y, /* NxCxHxW */ + const cudnnTensorDescriptor_t bnScaleBiasMeanVarDesc, + const void *bnScale, + const void *bnBias, + const void *estimatedMean, + const void *estimatedVariance, + double epsilon); + +typedef enum { + /* bnScale, bnBias tensor dims are 1xCxHxWx.. (one value per CHW...-slice, normalized over N slice) */ + CUDNN_NORM_PER_ACTIVATION = 0, + + /* bnScale, bnBias tensor dims are 1xCx1x1 (one value per C-dim normalized over Nx1xHxW subtensors) */ + CUDNN_NORM_PER_CHANNEL = 1, +} cudnnNormMode_t; + +typedef enum { CUDNN_NORM_ALGO_STANDARD = 0, CUDNN_NORM_ALGO_PERSIST = 1 } cudnnNormAlgo_t; + +/* + * Derives a tensor descriptor from layer data descriptor for Normalization + * scale, invVariance, bnBias, bnScale tensors. Use this tensor desc for + * normScaleBiasMeanVarDesc and normScaleBiasDiffDesc in Normalization forward and backward functions. + */ +cudnnStatus_t CUDNNWINAPI +cudnnDeriveNormTensorDescriptor(cudnnTensorDescriptor_t derivedNormScaleBiasDesc, + cudnnTensorDescriptor_t derivedNormMeanVarDesc, + const cudnnTensorDescriptor_t xDesc, + cudnnNormMode_t mode, + int groupCnt); /* Place hold for future work, should be set to 1 now*/ + +typedef enum { + CUDNN_NORM_OPS_NORM = 0, /* do normalization only */ + CUDNN_NORM_OPS_NORM_ACTIVATION = 1, /* do Norm, then activation */ + CUDNN_NORM_OPS_NORM_ADD_ACTIVATION = 2, /* do Norm, then elemWiseAdd, then activation */ +} cudnnNormOps_t; + +/* + * Performs Normalization during Inference: + * y[i] = normScale[k]*(x[i]-estimatedMean[k])/sqrt(epsilon+estimatedVariance[k]) + normBias[k] + * with normScale, normBias, runningMean, runningInvVariance tensors indexed + * according to per-channel or per-activation mode. Refer to cudnnNormalizationForwardTraining + * above for notes on function arguments. + */ +cudnnStatus_t CUDNNWINAPI +cudnnNormalizationForwardInference(cudnnHandle_t handle, + cudnnNormMode_t mode, + cudnnNormOps_t normOps, + cudnnNormAlgo_t algo, + const void *alpha, /* alpha[0] = result blend factor */ + const void *beta, /* beta[0] = dest layer blend factor */ + const cudnnTensorDescriptor_t xDesc, + const void *x, /* NxCxHxW */ + const cudnnTensorDescriptor_t normScaleBiasDesc, + const void *normScale, + const void *normBias, + const cudnnTensorDescriptor_t normMeanVarDesc, + const void *estimatedMean, + const void *estimatedVariance, + const cudnnTensorDescriptor_t zDesc, + const void *z, + cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t yDesc, + void *y, /* NxCxHxW */ + double epsilon, + int groupCnt); /* Place hold for future work*/ + +/* APIs for spatial transformer network*/ +typedef enum { + CUDNN_SAMPLER_BILINEAR = 0, +} cudnnSamplerType_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateSpatialTransformerDescriptor(cudnnSpatialTransformerDescriptor_t *stDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSetSpatialTransformerNdDescriptor(cudnnSpatialTransformerDescriptor_t stDesc, + cudnnSamplerType_t samplerType, + cudnnDataType_t dataType, + const int nbDims, + const int dimA[]); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroySpatialTransformerDescriptor(cudnnSpatialTransformerDescriptor_t stDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnSpatialTfGridGeneratorForward(cudnnHandle_t handle, + const cudnnSpatialTransformerDescriptor_t stDesc, + const void *theta, + void *grid); + +cudnnStatus_t CUDNNWINAPI +cudnnSpatialTfSamplerForward(cudnnHandle_t handle, + cudnnSpatialTransformerDescriptor_t stDesc, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *grid, + const void *beta, + cudnnTensorDescriptor_t yDesc, + void *y); + +typedef struct cudnnDropoutStruct *cudnnDropoutDescriptor_t; + +cudnnStatus_t CUDNNWINAPI +cudnnCreateDropoutDescriptor(cudnnDropoutDescriptor_t *dropoutDesc); + +cudnnStatus_t CUDNNWINAPI +cudnnDestroyDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc); + +/*helper function to determine size of the states to be passed to cudnnSetDropoutDescriptor */ +cudnnStatus_t CUDNNWINAPI +cudnnDropoutGetStatesSize(cudnnHandle_t handle, size_t *sizeInBytes); + +/*helper function to determine size of the reserve space to be passed to dropout forward/backward calls */ +cudnnStatus_t CUDNNWINAPI +cudnnDropoutGetReserveSpaceSize(cudnnTensorDescriptor_t xdesc, size_t *sizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnSetDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc, + cudnnHandle_t handle, + float dropout, + void *states, + size_t stateSizeInBytes, + unsigned long long seed); + +/* Restores the dropout descriptor to a previously saved-off state */ +cudnnStatus_t CUDNNWINAPI +cudnnRestoreDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc, + cudnnHandle_t handle, + float dropout, + void *states, + size_t stateSizeInBytes, + unsigned long long seed); + +cudnnStatus_t CUDNNWINAPI +cudnnGetDropoutDescriptor(cudnnDropoutDescriptor_t dropoutDesc, + cudnnHandle_t handle, + float *dropout, + void **states, + unsigned long long *seed); + +cudnnStatus_t CUDNNWINAPI +cudnnDropoutForward(cudnnHandle_t handle, + const cudnnDropoutDescriptor_t dropoutDesc, + const cudnnTensorDescriptor_t xdesc, + const void *x, + const cudnnTensorDescriptor_t ydesc, + void *y, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +/* TODO: remove */ + +typedef struct cudnnAlgorithmStruct *cudnnAlgorithmDescriptor_t; +typedef struct cudnnAlgorithmPerformanceStruct *cudnnAlgorithmPerformance_t; + +/* TODO: move these enums out to the appropriate submodule */ +typedef enum { + CUDNN_CONVOLUTION_FWD_ALGO_IMPLICIT_GEMM = 0, + CUDNN_CONVOLUTION_FWD_ALGO_IMPLICIT_PRECOMP_GEMM = 1, + CUDNN_CONVOLUTION_FWD_ALGO_GEMM = 2, + CUDNN_CONVOLUTION_FWD_ALGO_DIRECT = 3, + CUDNN_CONVOLUTION_FWD_ALGO_FFT = 4, + CUDNN_CONVOLUTION_FWD_ALGO_FFT_TILING = 5, + CUDNN_CONVOLUTION_FWD_ALGO_WINOGRAD = 6, + CUDNN_CONVOLUTION_FWD_ALGO_WINOGRAD_NONFUSED = 7, + CUDNN_CONVOLUTION_FWD_ALGO_COUNT = 8 +} cudnnConvolutionFwdAlgo_t; + +typedef enum { + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_0 = 0, /* non-deterministic */ + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_1 = 1, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_FFT = 2, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_3 = 3, /* non-deterministic */ + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_WINOGRAD = 4, /* not implemented */ + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_WINOGRAD_NONFUSED = 5, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_FFT_TILING = 6, + CUDNN_CONVOLUTION_BWD_FILTER_ALGO_COUNT = 7 +} cudnnConvolutionBwdFilterAlgo_t; + +typedef enum { + CUDNN_CONVOLUTION_BWD_DATA_ALGO_0 = 0, /* non-deterministic */ + CUDNN_CONVOLUTION_BWD_DATA_ALGO_1 = 1, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_FFT = 2, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_FFT_TILING = 3, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_WINOGRAD = 4, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_WINOGRAD_NONFUSED = 5, + CUDNN_CONVOLUTION_BWD_DATA_ALGO_COUNT = 6 +} cudnnConvolutionBwdDataAlgo_t; + +typedef enum { + CUDNN_RNN_ALGO_STANDARD = 0, + CUDNN_RNN_ALGO_PERSIST_STATIC = 1, + CUDNN_RNN_ALGO_PERSIST_DYNAMIC = 2, + CUDNN_RNN_ALGO_PERSIST_STATIC_SMALL_H = 3, + CUDNN_RNN_ALGO_COUNT = 4, +} cudnnRNNAlgo_t; + +typedef enum { CUDNN_CTC_LOSS_ALGO_DETERMINISTIC = 0, CUDNN_CTC_LOSS_ALGO_NON_DETERMINISTIC = 1 } cudnnCTCLossAlgo_t; + +/* TODO: remove */ +typedef struct cudnnAlgorithmUnionStruct { + union Algorithm { + cudnnConvolutionFwdAlgo_t convFwdAlgo; + cudnnConvolutionBwdFilterAlgo_t convBwdFilterAlgo; + cudnnConvolutionBwdDataAlgo_t convBwdDataAlgo; + cudnnRNNAlgo_t RNNAlgo; + cudnnCTCLossAlgo_t CTCLossAlgo; + } algo; +} cudnnAlgorithm_t; + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnCreateAlgorithmDescriptor(cudnnAlgorithmDescriptor_t *algoDesc); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnSetAlgorithmDescriptor(cudnnAlgorithmDescriptor_t algoDesc, cudnnAlgorithm_t algorithm); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetAlgorithmDescriptor(const cudnnAlgorithmDescriptor_t algoDesc, cudnnAlgorithm_t *algorithm); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnCopyAlgorithmDescriptor(const cudnnAlgorithmDescriptor_t src, cudnnAlgorithmDescriptor_t dest); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnDestroyAlgorithmDescriptor(cudnnAlgorithmDescriptor_t algoDesc); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnCreateAlgorithmPerformance(cudnnAlgorithmPerformance_t *algoPerf, int numberToCreate); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnSetAlgorithmPerformance(cudnnAlgorithmPerformance_t algoPerf, + cudnnAlgorithmDescriptor_t algoDesc, + cudnnStatus_t status, + float time, + size_t memory); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetAlgorithmPerformance(const cudnnAlgorithmPerformance_t algoPerf, + cudnnAlgorithmDescriptor_t *algoDesc, + cudnnStatus_t *status, + float *time, + size_t *memory); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnDestroyAlgorithmPerformance(cudnnAlgorithmPerformance_t *algoPerf, int numberToDestroy); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnGetAlgorithmSpaceSize(cudnnHandle_t handle, cudnnAlgorithmDescriptor_t algoDesc, size_t *algoSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnSaveAlgorithm(cudnnHandle_t handle, + cudnnAlgorithmDescriptor_t algoDesc, + void *algoSpace, + size_t algoSpaceSizeInBytes); + +CUDNN_DEPRECATED cudnnStatus_t CUDNNWINAPI +cudnnRestoreAlgorithm(cudnnHandle_t handle, + void *algoSpace, + size_t algoSpaceSizeInBytes, + cudnnAlgorithmDescriptor_t algoDesc); + +typedef enum { + CUDNN_SEV_FATAL = 0, + CUDNN_SEV_ERROR = 1, + CUDNN_SEV_WARNING = 2, + CUDNN_SEV_INFO = 3, +} cudnnSeverity_t; + +/* Message masks to be used with cudnnSetCallback() */ +#define CUDNN_SEV_ERROR_EN (1U << CUDNN_SEV_ERROR) +#define CUDNN_SEV_WARNING_EN (1U << CUDNN_SEV_WARNING) +#define CUDNN_SEV_INFO_EN (1U << CUDNN_SEV_INFO) + +/* struct containing useful informaiton for each API call */ +typedef struct cudnnDebugStruct { + unsigned cudnn_version; + cudnnStatus_t cudnnStatus; + unsigned time_sec; /* epoch time in seconds */ + unsigned time_usec; /* microseconds part of epoch time */ + unsigned time_delta; /* time since start in seconds */ + cudnnHandle_t handle; /* cudnn handle */ + cudaStream_t stream; /* cuda stream ID */ + unsigned long long pid; /* process ID */ + unsigned long long tid; /* thread ID */ + int cudaDeviceId; /* CUDA device ID */ + int reserved[15]; /* reserved for future use */ +} cudnnDebug_t; + +typedef void (*cudnnCallback_t)(cudnnSeverity_t sev, void *udata, const cudnnDebug_t *dbg, const char *msg); + +cudnnStatus_t CUDNNWINAPI +cudnnSetCallback(unsigned mask, void *udata, cudnnCallback_t fptr); + +cudnnStatus_t CUDNNWINAPI +cudnnGetCallback(unsigned *mask, void **udata, cudnnCallback_t *fptr); + +/* + * \brief Cross-library version checker. + * This function is implemented differently in each sub-library. Each sublib + * checks whether its own version matches that of its dependencies. + * \returns CUDNN_STATUS_SUCCESS if the version check passes, + * CUDNN_STATUS_VERSION_MISMATCH if the versions are inconsistent. + */ +cudnnStatus_t CUDNNWINAPI +cudnnOpsInferVersionCheck(void); + +#if defined(__cplusplus) +} +#endif + +#endif /* CUDNN_OPS_INFER_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_train_v8.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_train_v8.h new file mode 100644 index 0000000000000000000000000000000000000000..425c7c684968d76e1154de76eac082e61ec62f36 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_ops_train_v8.h @@ -0,0 +1,501 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* + * cudnn_ops_train : cuDNN's basic training operations and algorithms. + */ + +#if !defined(CUDNN_OPS_TRAIN_H_) +#define CUDNN_OPS_TRAIN_H_ + +#include +#include + +#include "cudnn_version.h" +#include "cudnn_ops_infer.h" + +/* These version numbers are autogenerated, do not edit manually. */ +#define CUDNN_OPS_TRAIN_MAJOR 8 +#define CUDNN_OPS_TRAIN_MINOR 9 +#define CUDNN_OPS_TRAIN_PATCH 2 + +#if (CUDNN_OPS_TRAIN_MAJOR != CUDNN_MAJOR) || (CUDNN_OPS_TRAIN_MINOR != CUDNN_MINOR) || \ + (CUDNN_OPS_TRAIN_PATCH != CUDNN_PATCHLEVEL) +#error Version mismatch in cuDNN OPS TRAIN!!! +#endif + +#if defined(__cplusplus) +extern "C" { +#endif + +/* Function to perform backward softmax */ +cudnnStatus_t CUDNNWINAPI +cudnnSoftmaxBackward(cudnnHandle_t handle, + cudnnSoftmaxAlgorithm_t algo, + cudnnSoftmaxMode_t mode, + const void *alpha, + const cudnnTensorDescriptor_t yDesc, + const void *y, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const void *beta, + const cudnnTensorDescriptor_t dxDesc, + void *dx); + +/* Function to perform backward pooling */ +cudnnStatus_t CUDNNWINAPI +cudnnPoolingBackward(cudnnHandle_t handle, + const cudnnPoolingDescriptor_t poolingDesc, + const void *alpha, + const cudnnTensorDescriptor_t yDesc, + const void *y, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t dxDesc, + void *dx); + +/* Function to perform backward activation */ +cudnnStatus_t CUDNNWINAPI +cudnnActivationBackward(cudnnHandle_t handle, + cudnnActivationDescriptor_t activationDesc, + const void *alpha, + const cudnnTensorDescriptor_t yDesc, + const void *y, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t dxDesc, + void *dx); + +/* LRN cross-channel backward computation. Double parameters cast to tensor data type */ +cudnnStatus_t CUDNNWINAPI +cudnnLRNCrossChannelBackward(cudnnHandle_t handle, + cudnnLRNDescriptor_t normDesc, + cudnnLRNMode_t lrnMode, + const void *alpha, + const cudnnTensorDescriptor_t yDesc, + const void *y, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t dxDesc, + void *dx); + +cudnnStatus_t CUDNNWINAPI +cudnnDivisiveNormalizationBackward(cudnnHandle_t handle, + cudnnLRNDescriptor_t normDesc, + cudnnDivNormMode_t mode, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, /* same desc for x, means, dy, temp, temp2 */ + const void *x, + const void *means, /* if NULL, means are assumed to be zero */ + const void *dy, + void *temp, + void *temp2, + const void *beta, + const cudnnTensorDescriptor_t dXdMeansDesc, /* same desc for dx, dMeans */ + void *dx, /* output x differential */ + void *dMeans); /* output means differential, can be NULL */ + +cudnnStatus_t CUDNNWINAPI +cudnnGetBatchNormalizationForwardTrainingExWorkspaceSize(cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + cudnnBatchNormOps_t bnOps, + const cudnnTensorDescriptor_t xDesc, + const cudnnTensorDescriptor_t zDesc, + const cudnnTensorDescriptor_t yDesc, + const cudnnTensorDescriptor_t bnScaleBiasMeanVarDesc, + const cudnnActivationDescriptor_t activationDesc, + size_t *sizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnGetBatchNormalizationBackwardExWorkspaceSize(cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + cudnnBatchNormOps_t bnOps, + const cudnnTensorDescriptor_t xDesc, + const cudnnTensorDescriptor_t yDesc, + const cudnnTensorDescriptor_t dyDesc, + const cudnnTensorDescriptor_t dzDesc, + const cudnnTensorDescriptor_t dxDesc, + const cudnnTensorDescriptor_t dBnScaleBiasDesc, + const cudnnActivationDescriptor_t activationDesc, + size_t *sizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnGetBatchNormalizationTrainingExReserveSpaceSize(cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + cudnnBatchNormOps_t bnOps, + const cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t xDesc, + size_t *sizeInBytes); + +/* Computes y = BN(x). Also accumulates moving averages of mean and inverse variances */ +cudnnStatus_t CUDNNWINAPI +cudnnBatchNormalizationForwardTraining( + cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + + const void *alpha, /* alpha[0] = result blend factor */ + const void *beta, /* beta[0] = dest layer blend factor */ + + const cudnnTensorDescriptor_t xDesc, + const void *x, /* NxCxHxW */ + const cudnnTensorDescriptor_t yDesc, + void *y, /* NxCxHxW */ + + /* Shared desc for the next 6 tensors in the argument list. + Data type to be set as follows: + type = (typeOf(x) == double) ? double : float + Dimensions for this descriptor depend on normalization mode + - Spatial Normalization : tensors are expected to have dims 1xCx1x1 + (normalization is performed across NxHxW) + - Per-Activation Normalization : tensors are expected to have dims of 1xCxHxW + (normalization is performed across N) */ + const cudnnTensorDescriptor_t bnScaleBiasMeanVarDesc, + + /* 'Gamma' and 'Beta' respectively in Ioffe and Szegedy's paper's notation */ + const void *bnScale, + const void *bnBias, + + /* MUST use factor=1 in the very first call of a complete training cycle. + Use a factor=1/(1+n) at N-th call to the function to get + Cumulative Moving Average (CMA) behavior + CMA[n] = (x[1]+...+x[n])/n + Since CMA[n+1] = (n*CMA[n]+x[n+1])/(n+1) = + ((n+1)*CMA[n]-CMA[n])/(n+1) + x[n+1]/(n+1) = + CMA[n]*(1-1/(n+1)) + x[n+1]*1/(n+1) */ + double exponentialAverageFactor, + + /* Used in Training phase only. + runningMean = newMean*factor + runningMean*(1-factor) */ + void *resultRunningMean, + /* Output in training mode, input in inference. Is the moving average + of variance[x] (factor is applied in the same way as for runningMean) */ + void *resultRunningVariance, + + /* Has to be >= CUDNN_BN_MIN_EPSILON. Should be the same in forward and backward functions. */ + double epsilon, + + /* Optionally save intermediate results from the forward pass here + - can be reused to speed up backward pass. NULL if unused */ + void *resultSaveMean, + void *resultSaveInvVariance); + +/* Computes y = relu(BN(x) + z). Also accumulates moving averages of mean and inverse variances */ +cudnnStatus_t CUDNNWINAPI +cudnnBatchNormalizationForwardTrainingEx( + cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + cudnnBatchNormOps_t bnOps, + + const void *alpha, /* alpha[0] = result blend factor */ + const void *beta, /* beta[0] = dest layer blend factor */ + + const cudnnTensorDescriptor_t xDesc, + const void *xData, + const cudnnTensorDescriptor_t zDesc, + const void *zData, + const cudnnTensorDescriptor_t yDesc, + void *yData, + + const cudnnTensorDescriptor_t bnScaleBiasMeanVarDesc, + const void *bnScale, + const void *bnBias, + + double exponentialAverageFactor, + void *resultRunningMean, + void *resultRunningVariance, + + /* Has to be >= CUDNN_BN_MIN_EPSILON. Should be the same in forward and backward functions. */ + double epsilon, + + /* Optionally save intermediate results from the forward pass here + - can be reused to speed up backward pass. NULL if unused */ + void *resultSaveMean, + void *resultSaveInvVariance, + + cudnnActivationDescriptor_t activationDesc, + void *workspace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +/* Performs backward pass of Batch Normalization layer. Returns x gradient, +* bnScale gradient and bnBias gradient */ +cudnnStatus_t CUDNNWINAPI +cudnnBatchNormalizationBackward(cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + const void *alphaDataDiff, + const void *betaDataDiff, + const void *alphaParamDiff, + const void *betaParamDiff, + const cudnnTensorDescriptor_t xDesc, /* same desc for x, dx, dy */ + const void *x, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const cudnnTensorDescriptor_t dxDesc, + void *dx, + /* Shared tensor desc for the 4 tensors below */ + const cudnnTensorDescriptor_t dBnScaleBiasDesc, + const void *bnScale, /* bnBias doesn't affect backpropagation */ + /* scale and bias diff are not backpropagated below this layer */ + void *dBnScaleResult, + void *dBnBiasResult, + /* Same epsilon as forward pass */ + double epsilon, + + /* Optionally cached intermediate results from + forward pass */ + const void *savedMean, + const void *savedInvVariance); + +cudnnStatus_t CUDNNWINAPI +cudnnBatchNormalizationBackwardEx(cudnnHandle_t handle, + cudnnBatchNormMode_t mode, + cudnnBatchNormOps_t bnOps, + + const void *alphaDataDiff, + const void *betaDataDiff, + const void *alphaParamDiff, + const void *betaParamDiff, + const cudnnTensorDescriptor_t xDesc, + const void *xData, + const cudnnTensorDescriptor_t yDesc, + const void *yData, + const cudnnTensorDescriptor_t dyDesc, + const void *dyData, + const cudnnTensorDescriptor_t dzDesc, + void *dzData, + const cudnnTensorDescriptor_t dxDesc, + void *dxData, + + /* Shared tensor desc for the 4 tensors below */ + const cudnnTensorDescriptor_t dBnScaleBiasDesc, + const void *bnScaleData, + const void *bnBiasData, /* needed if there is activation */ + void *dBnScaleData, + void *dBnBiasData, + double epsilon, /* Same epsilon as forward pass */ + + /* Optionally cached intermediate results from + forward pass */ + const void *savedMean, + const void *savedInvVariance, + cudnnActivationDescriptor_t activationDesc, + void *workSpace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +cudnnStatus_t CUDNNWINAPI +cudnnGetNormalizationForwardTrainingWorkspaceSize(cudnnHandle_t handle, + cudnnNormMode_t mode, + cudnnNormOps_t normOps, + cudnnNormAlgo_t algo, + const cudnnTensorDescriptor_t xDesc, + const cudnnTensorDescriptor_t zDesc, + const cudnnTensorDescriptor_t yDesc, + const cudnnTensorDescriptor_t normScaleBiasDesc, + const cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t normMeanVarDesc, + size_t *sizeInBytes, + int groupCnt); /* Place hold for future work, should be set to 1 now*/ + +cudnnStatus_t CUDNNWINAPI +cudnnGetNormalizationBackwardWorkspaceSize(cudnnHandle_t handle, + cudnnNormMode_t mode, + cudnnNormOps_t normOps, + cudnnNormAlgo_t algo, + const cudnnTensorDescriptor_t xDesc, + const cudnnTensorDescriptor_t yDesc, + const cudnnTensorDescriptor_t dyDesc, + const cudnnTensorDescriptor_t dzDesc, + const cudnnTensorDescriptor_t dxDesc, + const cudnnTensorDescriptor_t dNormScaleBiasDesc, + const cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t normMeanVarDesc, + size_t *sizeInBytes, + int groupCnt); /* Place hold for future work, should be set to 1 now*/ + +cudnnStatus_t CUDNNWINAPI +cudnnGetNormalizationTrainingReserveSpaceSize(cudnnHandle_t handle, + cudnnNormMode_t mode, + cudnnNormOps_t normOps, + cudnnNormAlgo_t algo, + const cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t xDesc, + size_t *sizeInBytes, + int groupCnt); /* Place hold for future work, should be set to 1 now*/ + +/* Computes y = relu(Norm(x) + z). Also accumulates moving averages of mean and inverse variances */ +cudnnStatus_t CUDNNWINAPI +cudnnNormalizationForwardTraining(cudnnHandle_t handle, + cudnnNormMode_t mode, + cudnnNormOps_t normOps, + cudnnNormAlgo_t algo, + const void *alpha, /* alpha[0] = result blend factor */ + const void *beta, /* beta[0] = dest layer blend factor */ + const cudnnTensorDescriptor_t xDesc, + const void *xData, + const cudnnTensorDescriptor_t normScaleBiasDesc, + const void *normScale, + const void *normBias, + double exponentialAverageFactor, + const cudnnTensorDescriptor_t normMeanVarDesc, + void *resultRunningMean, + void *resultRunningVariance, + /* Has to be >= 0. Should be the same in forward and backward functions. */ + double epsilon, + /* Optionally save intermediate results from the forward pass here + - can be reused to speed up backward pass. NULL if unused */ + void *resultSaveMean, + void *resultSaveInvVariance, + cudnnActivationDescriptor_t activationDesc, + const cudnnTensorDescriptor_t zDesc, + const void *zData, + const cudnnTensorDescriptor_t yDesc, + void *yData, + void *workspace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes, + int groupCnt); /* Place hold for future work, should be set to 1 now*/ + +cudnnStatus_t CUDNNWINAPI +cudnnNormalizationBackward(cudnnHandle_t handle, + cudnnNormMode_t mode, + cudnnNormOps_t normOps, + cudnnNormAlgo_t algo, + const void *alphaDataDiff, + const void *betaDataDiff, + const void *alphaParamDiff, + const void *betaParamDiff, + const cudnnTensorDescriptor_t xDesc, + const void *xData, + const cudnnTensorDescriptor_t yDesc, + const void *yData, + const cudnnTensorDescriptor_t dyDesc, + const void *dyData, + const cudnnTensorDescriptor_t dzDesc, + void *dzData, + const cudnnTensorDescriptor_t dxDesc, + void *dxData, + /* Shared tensor desc for the 4 tensors below */ + const cudnnTensorDescriptor_t dNormScaleBiasDesc, + const void *normScaleData, + const void *normBiasData, /* needed if there is activation */ + void *dNormScaleData, + void *dNormBiasData, + double epsilon, /* Same epsilon as forward pass */ + const cudnnTensorDescriptor_t normMeanVarDesc, + /* Optionally cached intermediate results from + forward pass */ + const void *savedMean, + const void *savedInvVariance, + cudnnActivationDescriptor_t activationDesc, + void *workSpace, + size_t workSpaceSizeInBytes, + void *reserveSpace, + size_t reserveSpaceSizeInBytes, + int groupCnt); /* Place hold for future work, should be set to 1 now*/ + +cudnnStatus_t CUDNNWINAPI +cudnnSpatialTfGridGeneratorBackward(cudnnHandle_t handle, + const cudnnSpatialTransformerDescriptor_t stDesc, + const void *dgrid, + void *dtheta); + +cudnnStatus_t CUDNNWINAPI +cudnnSpatialTfSamplerBackward(cudnnHandle_t handle, + cudnnSpatialTransformerDescriptor_t stDesc, + const void *alpha, + const cudnnTensorDescriptor_t xDesc, + const void *x, + const void *beta, + const cudnnTensorDescriptor_t dxDesc, + void *dx, + const void *alphaDgrid, + const cudnnTensorDescriptor_t dyDesc, + const void *dy, + const void *grid, + const void *betaDgrid, + void *dgrid); + +cudnnStatus_t CUDNNWINAPI +cudnnDropoutBackward(cudnnHandle_t handle, + const cudnnDropoutDescriptor_t dropoutDesc, + const cudnnTensorDescriptor_t dydesc, + const void *dy, + const cudnnTensorDescriptor_t dxdesc, + void *dx, + void *reserveSpace, + size_t reserveSpaceSizeInBytes); + +/* + * \brief Cross-library version checker. + * This function is implemented differently in each sub-library. Each sublib + * checks whether its own version matches that of its dependencies. + * \returns CUDNN_STATUS_SUCCESS if the version check passes, + * CUDNN_STATUS_VERSION_MISMATCH if the versions are inconsistent. + */ +cudnnStatus_t CUDNNWINAPI +cudnnOpsTrainVersionCheck(void); + +#if defined(__cplusplus) +} +#endif + +#endif /* CUDNN_OPS_TRAIN_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_v8.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_v8.h new file mode 100644 index 0000000000000000000000000000000000000000..1fcf41a697cb5e6bee6d3697d54a2fe0eafdc168 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_v8.h @@ -0,0 +1,78 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/* cudnn : Neural Networks Library + +*/ + +#if !defined(CUDNN_H_) +#define CUDNN_H_ + +#include +#include + +#include "cudnn_version.h" +#include "cudnn_ops_infer.h" +#include "cudnn_ops_train.h" +#include "cudnn_adv_infer.h" +#include "cudnn_adv_train.h" +#include "cudnn_cnn_infer.h" +#include "cudnn_cnn_train.h" + +#include "cudnn_backend.h" + +#if defined(__cplusplus) +extern "C" { +#endif + +#if defined(__cplusplus) +} +#endif + +#endif /* CUDNN_H_ */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_version.h b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_version.h new file mode 100644 index 0000000000000000000000000000000000000000..71f2211173bd3ce300999343daf8229b247fe49f --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/include/cudnn_version.h @@ -0,0 +1,109 @@ +/* + * Copyright 2014-2023 NVIDIA Corporation. All rights reserved. + * + * NOTICE TO LICENSEE: + * + * This source code and/or documentation ("Licensed Deliverables") are + * subject to NVIDIA intellectual property rights under U.S. and + * international Copyright laws. + * + * These Licensed Deliverables contained herein is PROPRIETARY and + * CONFIDENTIAL to NVIDIA and is being provided under the terms and + * conditions of a form of NVIDIA software license agreement by and + * between NVIDIA and Licensee ("License Agreement") or electronically + * accepted by Licensee. Notwithstanding any terms or conditions to + * the contrary in the License Agreement, reproduction or disclosure + * of the Licensed Deliverables to any third party without the express + * written consent of NVIDIA is prohibited. + * + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, NVIDIA MAKES NO REPRESENTATION ABOUT THE + * SUITABILITY OF THESE LICENSED DELIVERABLES FOR ANY PURPOSE. IT IS + * PROVIDED "AS IS" WITHOUT EXPRESS OR IMPLIED WARRANTY OF ANY KIND. + * NVIDIA DISCLAIMS ALL WARRANTIES WITH REGARD TO THESE LICENSED + * DELIVERABLES, INCLUDING ALL IMPLIED WARRANTIES OF MERCHANTABILITY, + * NONINFRINGEMENT, AND FITNESS FOR A PARTICULAR PURPOSE. + * NOTWITHSTANDING ANY TERMS OR CONDITIONS TO THE CONTRARY IN THE + * LICENSE AGREEMENT, IN NO EVENT SHALL NVIDIA BE LIABLE FOR ANY + * SPECIAL, INDIRECT, INCIDENTAL, OR CONSEQUENTIAL DAMAGES, OR ANY + * DAMAGES WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, + * WHETHER IN AN ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS + * ACTION, ARISING OUT OF OR IN CONNECTION WITH THE USE OR PERFORMANCE + * OF THESE LICENSED DELIVERABLES. + * + * U.S. Government End Users. These Licensed Deliverables are a + * "commercial item" as that term is defined at 48 C.F.R. 2.101 (OCT + * 1995), consisting of "commercial computer software" and "commercial + * computer software documentation" as such terms are used in 48 + * C.F.R. 12.212 (SEPT 1995) and is provided to the U.S. Government + * only as a commercial end item. Consistent with 48 C.F.R.12.212 and + * 48 C.F.R. 227.7202-1 through 227.7202-4 (JUNE 1995), all + * U.S. Government End Users acquire the Licensed Deliverables with + * only those rights set forth herein. + * + * Any use of the Licensed Deliverables in individual and commercial + * software must include, in the user documentation and internal + * comments to the code, the above Disclaimer and U.S. Government End + * Users Notice. + */ + +/** + * \file: The master cuDNN version file. + */ + +#ifndef CUDNN_VERSION_H_ +#define CUDNN_VERSION_H_ + +#define CUDNN_MAJOR 8 +#define CUDNN_MINOR 9 +#define CUDNN_PATCHLEVEL 2 + +#define CUDNN_VERSION (CUDNN_MAJOR * 1000 + CUDNN_MINOR * 100 + CUDNN_PATCHLEVEL) + +/* cannot use constexpr here since this is a C-only file */ +/* Below is the max SM version this cuDNN library is aware of and supports natively */ + +#define CUDNN_MAX_SM_MAJOR_NUMBER 9 +#define CUDNN_MAX_SM_MINOR_NUMBER 0 +#define CUDNN_MAX_DEVICE_VERSION (CUDNN_MAX_SM_MAJOR_NUMBER * 100 + CUDNN_MAX_SM_MINOR_NUMBER * 10) + +/* Here are constants for each of the SM Architectures we support to use in code where device version checks must be + * made */ + +/* MAXWELL SM 50 52 53 */ +#define CUDNN_SM_50 500 +#define CUDNN_SM_52 520 +#define CUDNN_SM_53 530 + +/* PASCAL SM 60 61 62 */ +#define CUDNN_SM_60 600 +#define CUDNN_SM_61 610 +#define CUDNN_SM_62 620 + +/* VOLTA SM 70 72 */ +#define CUDNN_SM_70 700 +#define CUDNN_SM_72 720 + +/* TURING SM 75 */ +#define CUDNN_SM_75 750 + +/* AMPERE SM 80 86 87 */ +#define CUDNN_SM_80 800 +#define CUDNN_SM_86 860 +#define CUDNN_SM_87 870 + +/* ADA LOVELACE SM 89 */ +#define CUDNN_SM_89 890 + +/* HOPPER SM 90 */ +#define CUDNN_SM_90 900 + +/* END MARKER for last known version. + * This can be replaced after support for 1000 is added + */ +#define CUDNN_SM_9X_END 999 + +/* This is the minimum version we support devices below this will return CUDNN_STATUS_ARCH_MISMATCH */ +#define CUDNN_MIN_DEVICE_VERSION CUDNN_SM_50 + +#endif /* CUDNN_VERSION_H */ diff --git a/videollama2/lib/python3.10/site-packages/nvidia/cudnn/lib/__pycache__/__init__.cpython-310.pyc b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/lib/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..991973d44c87e1348f8a4e8a712c633ec0b552e2 Binary files /dev/null and b/videollama2/lib/python3.10/site-packages/nvidia/cudnn/lib/__pycache__/__init__.cpython-310.pyc differ diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/colorful.py b/videollama2/lib/python3.10/site-packages/pygments/styles/colorful.py new file mode 100644 index 0000000000000000000000000000000000000000..a9656bdf0f0cc637a9545869b8b8224a5551242d --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/colorful.py @@ -0,0 +1,83 @@ +""" + pygments.styles.colorful + ~~~~~~~~~~~~~~~~~~~~~~~~ + + A colorful style, inspired by CodeRay. + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Keyword, Name, Comment, String, Error, \ + Number, Operator, Generic, Whitespace + + +__all__ = ['ColorfulStyle'] + + +class ColorfulStyle(Style): + """ + A colorful style, inspired by CodeRay. + """ + name = 'colorful' + + styles = { + Whitespace: "#bbbbbb", + + Comment: "#888", + Comment.Preproc: "#579", + Comment.Special: "bold #cc0000", + + Keyword: "bold #080", + Keyword.Pseudo: "#038", + Keyword.Type: "#339", + + Operator: "#333", + Operator.Word: "bold #000", + + Name.Builtin: "#007020", + Name.Function: "bold #06B", + Name.Class: "bold #B06", + Name.Namespace: "bold #0e84b5", + Name.Exception: "bold #F00", + Name.Variable: "#963", + Name.Variable.Instance: "#33B", + Name.Variable.Class: "#369", + Name.Variable.Global: "bold #d70", + Name.Constant: "bold #036", + Name.Label: "bold #970", + Name.Entity: "bold #800", + Name.Attribute: "#00C", + Name.Tag: "#070", + Name.Decorator: "bold #555", + + String: "bg:#fff0f0", + String.Char: "#04D bg:", + String.Doc: "#D42 bg:", + String.Interpol: "bg:#eee", + String.Escape: "bold #666", + String.Regex: "bg:#fff0ff #000", + String.Symbol: "#A60 bg:", + String.Other: "#D20", + + Number: "bold #60E", + Number.Integer: "bold #00D", + Number.Float: "bold #60E", + Number.Hex: "bold #058", + Number.Oct: "bold #40E", + + Generic.Heading: "bold #000080", + Generic.Subheading: "bold #800080", + Generic.Deleted: "#A00000", + Generic.Inserted: "#00A000", + Generic.Error: "#FF0000", + Generic.Emph: "italic", + Generic.Strong: "bold", + Generic.EmphStrong: "bold italic", + Generic.Prompt: "bold #c65d09", + Generic.Output: "#888", + Generic.Traceback: "#04D", + + Error: "#F00 bg:#FAA" + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/emacs.py b/videollama2/lib/python3.10/site-packages/pygments/styles/emacs.py new file mode 100644 index 0000000000000000000000000000000000000000..6d67492a8e20533cb41355a061c8b8e0e2d40c36 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/emacs.py @@ -0,0 +1,75 @@ +""" + pygments.styles.emacs + ~~~~~~~~~~~~~~~~~~~~~ + + A highlighting style for Pygments, inspired by Emacs. + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Keyword, Name, Comment, String, Error, \ + Number, Operator, Generic, Whitespace + + +__all__ = ['EmacsStyle'] + + +class EmacsStyle(Style): + """ + The default style (inspired by Emacs 22). + """ + name = 'emacs' + + background_color = "#f8f8f8" + + styles = { + Whitespace: "#bbbbbb", + Comment: "italic #008800", + Comment.Preproc: "noitalic", + Comment.Special: "noitalic bold", + + Keyword: "bold #AA22FF", + Keyword.Pseudo: "nobold", + Keyword.Type: "bold #00BB00", + + Operator: "#666666", + Operator.Word: "bold #AA22FF", + + Name.Builtin: "#AA22FF", + Name.Function: "#00A000", + Name.Class: "#0000FF", + Name.Namespace: "bold #0000FF", + Name.Exception: "bold #D2413A", + Name.Variable: "#B8860B", + Name.Constant: "#880000", + Name.Label: "#A0A000", + Name.Entity: "bold #999999", + Name.Attribute: "#BB4444", + Name.Tag: "bold #008000", + Name.Decorator: "#AA22FF", + + String: "#BB4444", + String.Doc: "italic", + String.Interpol: "bold #BB6688", + String.Escape: "bold #BB6622", + String.Regex: "#BB6688", + String.Symbol: "#B8860B", + String.Other: "#008000", + Number: "#666666", + + Generic.Heading: "bold #000080", + Generic.Subheading: "bold #800080", + Generic.Deleted: "#A00000", + Generic.Inserted: "#00A000", + Generic.Error: "#FF0000", + Generic.Emph: "italic", + Generic.Strong: "bold", + Generic.EmphStrong: "bold italic", + Generic.Prompt: "bold #000080", + Generic.Output: "#888", + Generic.Traceback: "#04D", + + Error: "border:#FF0000" + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/gruvbox.py b/videollama2/lib/python3.10/site-packages/pygments/styles/gruvbox.py new file mode 100644 index 0000000000000000000000000000000000000000..97bd511e35cb1e2eb3c6b992651811e4886d154e --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/gruvbox.py @@ -0,0 +1,118 @@ +""" + pygments.styles.gruvbox + ~~~~~~~~~~~~~~~~~~~~~~~ + + pygments version of the "gruvbox" vim theme. + https://github.com/morhetz/gruvbox + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Token, Keyword, Name, Comment, String, Error, \ + Number, Operator, Generic + + +__all__ = ['GruvboxDarkStyle', 'GruvboxLightStyle'] + + +class GruvboxDarkStyle(Style): + """ + Pygments version of the "gruvbox" dark vim theme. + """ + + name = 'gruvbox-dark' + + background_color = '#282828' + highlight_color = '#ebdbb2' + + styles = { + Token: '#dddddd', + + Comment: 'italic #928374', + Comment.PreProc: '#8ec07c', + Comment.Special: 'bold italic #ebdbb2', + + Keyword: '#fb4934', + Operator.Word: '#fb4934', + + String: '#b8bb26', + String.Escape: '#fe8019', + + Number: '#d3869b', + + Name.Builtin: '#fe8019', + Name.Variable: '#83a598', + Name.Constant: '#d3869b', + Name.Class: '#8ec07c', + Name.Function: '#8ec07c', + Name.Namespace: '#8ec07c', + Name.Exception: '#fb4934', + Name.Tag: '#8ec07c', + Name.Attribute: '#fabd2f', + Name.Decorator: '#fb4934', + + Generic.Heading: 'bold #ebdbb2', + Generic.Subheading: 'underline #ebdbb2', + Generic.Deleted: 'bg:#fb4934 #282828', + Generic.Inserted: 'bg:#b8bb26 #282828', + Generic.Error: '#fb4934', + Generic.Emph: 'italic', + Generic.Strong: 'bold', + Generic.EmphStrong: 'bold italic', + Generic.Prompt: '#a89984', + Generic.Output: '#f2e5bc', + Generic.Traceback: '#fb4934', + + Error: 'bg:#fb4934 #282828' + } + + +class GruvboxLightStyle(Style): + """ + Pygments version of the "gruvbox" Light vim theme. + """ + + name = 'gruvbox-light' + + background_color = '#fbf1c7' + highlight_color = '#3c3836' + + styles = { + Comment: 'italic #928374', + Comment.PreProc: '#427b58', + Comment.Special: 'bold italic #3c3836', + + Keyword: '#9d0006', + Operator.Word: '#9d0006', + + String: '#79740e', + String.Escape: '#af3a03', + + Number: '#8f3f71', + + Name.Builtin: '#af3a03', + Name.Variable: '#076678', + Name.Constant: '#8f3f71', + Name.Class: '#427b58', + Name.Function: '#427b58', + Name.Namespace: '#427b58', + Name.Exception: '#9d0006', + Name.Tag: '#427b58', + Name.Attribute: '#b57614', + Name.Decorator: '#9d0006', + + Generic.Heading: 'bold #3c3836', + Generic.Subheading: 'underline #3c3836', + Generic.Deleted: 'bg:#9d0006 #fbf1c7', + Generic.Inserted: 'bg:#79740e #fbf1c7', + Generic.Error: '#9d0006', + Generic.Emph: 'italic', + Generic.Strong: 'bold', + Generic.Prompt: '#7c6f64', + Generic.Output: '#32302f', + Generic.Traceback: '#9d0006', + + Error: 'bg:#9d0006 #fbf1c7' + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/lightbulb.py b/videollama2/lib/python3.10/site-packages/pygments/styles/lightbulb.py new file mode 100644 index 0000000000000000000000000000000000000000..4e5658a9f6f8ab98676312552081027e76832bcb --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/lightbulb.py @@ -0,0 +1,110 @@ +""" + pygments.styles.lightbulb + ~~~~~~~~~~~~~~~~~~~~~~~~~ + + A minimal dark theme based on the Lightbulb theme for VSCode. + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import ( + Comment, + Error, + Generic, + Keyword, + Literal, + Name, + Number, + Operator, + Punctuation, + String, + Token, +) + + +__all__ = ['LightbulbStyle'] + + +COLORS = { + "bg": "#1d2331", + "blue_1": "#73D0FF", + "gray_1": "#7e8aa1", + "gray_2": "#3c4354", + "gray_3": "#6e7681", + "red_1": "#f88f7f", + "red_2": "#3d1e20", + "orange_1": "#FFAD66", + "orange_2": "#F29E74", + "yellow_1": "#FFD173", + "white": "#d4d2c8", + "magenta_1": "#DFBFFF", + "green_1": "#D5FF80", + "green_2": "#19362c", + "cyan_1": "#95E6CB", +} + + +class LightbulbStyle(Style): + """ + A minimal dark theme based on the Lightbulb theme for VSCode. + """ + + name = 'lightbulb' + + background_color = COLORS['bg'] + highlight_color = COLORS['gray_3'] + + line_number_color = COLORS['gray_2'] + line_number_special_color = COLORS['gray_2'] + + styles = { + Comment: COLORS["gray_1"], + Comment.Hashbang: "italic " + COLORS['red_1'], + Comment.Preproc: "bold " + COLORS['orange_1'], + Comment.Special: "italic " + COLORS['gray_1'], + Error: COLORS['red_1'], + Generic.Deleted: f"bg:{COLORS['red_2']} #f88f7f", + Generic.Emph: "italic", + Generic.Error: "#f88f7f", + Generic.Inserted: f"bg:{COLORS['green_2']} #6ad4af", + Generic.Output: COLORS['gray_1'], + Generic.Strong: "bold", + Generic.Traceback: COLORS['red_1'], + Keyword: COLORS['orange_1'], + Keyword.Constant: COLORS['orange_1'], + Keyword.Declaration: COLORS['orange_1'], + Keyword.Namespace: COLORS['orange_1'], + Keyword.Reserved: COLORS['orange_1'], + Keyword.Type: COLORS['blue_1'], + Literal: COLORS['green_1'], + Name: COLORS['white'], + Name.Attribute: COLORS['yellow_1'], + Name.Builtin: COLORS['yellow_1'], + Name.Builtin.Pseudo: "#5CCFE6", + Name.Class: COLORS['blue_1'], + Name.Constant: COLORS['yellow_1'], + Name.Decorator: "bold italic " + COLORS['gray_1'], + Name.Entity: COLORS['cyan_1'], + Name.Exception: COLORS['blue_1'], + Name.Function: COLORS['yellow_1'], + Name.Function.Magic: COLORS['yellow_1'], + Name.Other: COLORS['white'], + Name.Property: COLORS['yellow_1'], + Name.Tag: "#5CCFE6", + Name.Variable: COLORS['white'], + Number: COLORS['magenta_1'], + Operator: COLORS['orange_1'], + Operator.Word: COLORS['orange_1'], + Punctuation: COLORS['white'], + String: COLORS['green_1'], + String.Affix: COLORS['orange_2'], + String.Doc: COLORS['gray_1'], + String.Escape: COLORS['cyan_1'], + String.Interpol: COLORS['cyan_1'], + String.Other: COLORS['cyan_1'], + String.Regex: COLORS['cyan_1'], + String.Symbol: COLORS['magenta_1'], + Token: COLORS['white'], + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/lilypond.py b/videollama2/lib/python3.10/site-packages/pygments/styles/lilypond.py new file mode 100644 index 0000000000000000000000000000000000000000..5e46f3dc605fd2cb21945586b87b0e8dec33cd85 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/lilypond.py @@ -0,0 +1,62 @@ +""" + pygments.styles.lilypond + ~~~~~~~~~~~~~~~~~~~~~~~~ + + LilyPond-specific style. + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Token + + +__all__ = ['LilyPondStyle'] + + +class LilyPondStyle(Style): + """ + Style for the LilyPond language. + + .. versionadded:: 2.11 + """ + + name = 'lilypond' + + # Don't show it in the gallery, it's intended for LilyPond + # input only and doesn't show good output on Python code. + web_style_gallery_exclude = True + + styles = { + Token.Text: "", + Token.Keyword: "bold", + Token.Comment: "italic #A3AAB2", + Token.String: "#AB0909", + Token.String.Escape: "#C46C6C", + Token.String.Symbol: "noinherit", + Token.Pitch: "", #"#911520", + Token.Number: "#976806", # includes durations + # A bare 11 is not distinguishable from a number, so we highlight + # the same. + Token.ChordModifier: "#976806", + Token.Name.Lvalue: "#08547A", + Token.Name.BackslashReference: "#08547A", + Token.Name.Builtin.MusicCommand: "bold #08547A", + Token.Name.Builtin.PaperVariable: "bold #6C5A05", + Token.Name.Builtin.HeaderVariable: "bold #6C5A05", + Token.Name.Builtin.MusicFunction: "bold #08547A", + Token.Name.Builtin.Clef: "bold #08547A", + Token.Name.Builtin.Scale: "bold #08547A", + Token.Name.Builtin.RepeatType: "#08547A", + Token.Name.Builtin.Dynamic: "#68175A", + Token.Name.Builtin.Articulation: "#68175A", + Token.Name.Builtin.SchemeFunction: "bold #A83401", + Token.Name.Builtin.SchemeBuiltin: "bold", + Token.Name.Builtin.MarkupCommand: "bold #831E71", + Token.Name.Builtin.Context: "bold #038B8B", + Token.Name.Builtin.ContextProperty: "#038B8B", + Token.Name.Builtin.Grob: "bold #0C7441", + Token.Name.Builtin.GrobProperty: "#0C7441", + Token.Name.Builtin.Translator: "bold #6200A4", + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/material.py b/videollama2/lib/python3.10/site-packages/pygments/styles/material.py new file mode 100644 index 0000000000000000000000000000000000000000..720b403b0ae2d9b131a778584f06af0f7b2ad53e --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/material.py @@ -0,0 +1,124 @@ +""" + pygments.styles.material + ~~~~~~~~~~~~~~~~~~~~~~~~ + + Mimic the Material theme color scheme. + + https://github.com/material-theme/vsc-material-theme + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Keyword, Name, Comment, String, Escape, \ + Error, Text, Number, Operator, Generic, Punctuation, Literal + + +__all__ = ['MaterialStyle'] + + +class MaterialStyle(Style): + """ + This style mimics the Material Theme color scheme. + """ + name = 'material' + + dark_teal = '#263238' + white = '#FFFFFF' + black = '#000000' + red = '#FF5370' + orange = '#F78C6C' + yellow = '#FFCB6B' + green = '#C3E88D' + cyan = '#89DDFF' + blue = '#82AAFF' + paleblue = '#B2CCD6' + purple = '#C792EA' + brown = '#C17E70' + pink = '#F07178' + violet = '#BB80B3' + foreground = '#EEFFFF' + faded = '#546E7A' + + background_color = dark_teal + highlight_color = '#2C3B41' + line_number_color = '#37474F' + line_number_background_color = dark_teal + line_number_special_color = '#607A86' + line_number_special_background_color = dark_teal + + styles = { + Text: foreground, + Escape: cyan, + Error: red, + + Keyword: violet, + Keyword.Constant: cyan, + Keyword.Declaration: violet, + Keyword.Namespace: 'italic ' + cyan, + Keyword.Pseudo: cyan, + Keyword.Type: violet, + + Name: foreground, + Name.Attribute: violet, + Name.Builtin: blue, + Name.Builtin.Pseudo: cyan, + Name.Class: yellow, + Name.Constant: foreground, + Name.Decorator: blue, + Name.Entity: cyan, + Name.Exception: yellow, + Name.Function: blue, + Name.Function.Magic: blue, + Name.Label: blue, + Name.Property: yellow, + Name.Namespace: yellow, + Name.Other: foreground, + Name.Tag: red, + Name.Variable: cyan, + Name.Variable.Class: cyan, + Name.Variable.Global: cyan, + Name.Variable.Instance: cyan, + Name.Variable.Magic: blue, + + Literal: green, + Literal.Date: green, + + String: green, + String.Affix: violet, + String.Backtick: green, + String.Char: green, + String.Delimiter: foreground, + String.Doc: 'italic ' + faded, + String.Double: green, + String.Escape: foreground, + String.Heredoc: green, + String.Interpol: cyan, + String.Other: green, + String.Regex: cyan, + String.Single: green, + String.Symbol: cyan, + + Number: orange, + + Operator: cyan, + Operator.Word: 'italic ' + cyan, + + Punctuation: cyan, + + Comment: 'italic ' + faded, + + Generic: foreground, + Generic.Deleted: red, + Generic.Emph: cyan, + Generic.Error: red, + Generic.Heading: green, + Generic.Inserted: green, + Generic.Output: faded, + Generic.Prompt: yellow, + Generic.Strong: red, + Generic.EmphStrong: yellow, + Generic.Subheading: cyan, + Generic.Traceback: red, + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/murphy.py b/videollama2/lib/python3.10/site-packages/pygments/styles/murphy.py new file mode 100644 index 0000000000000000000000000000000000000000..0d9128ce96d2f473039d885522d463d35db9823a --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/murphy.py @@ -0,0 +1,82 @@ +""" + pygments.styles.murphy + ~~~~~~~~~~~~~~~~~~~~~~ + + Murphy's style from CodeRay. + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Keyword, Name, Comment, String, Error, \ + Number, Operator, Generic, Whitespace + + +__all__ = ['MurphyStyle'] + + +class MurphyStyle(Style): + """ + Murphy's style from CodeRay. + """ + name = 'murphy' + + styles = { + Whitespace: "#bbbbbb", + Comment: "#666 italic", + Comment.Preproc: "#579 noitalic", + Comment.Special: "#c00 bold", + + Keyword: "bold #289", + Keyword.Pseudo: "#08f", + Keyword.Type: "#66f", + + Operator: "#333", + Operator.Word: "bold #000", + + Name.Builtin: "#072", + Name.Function: "bold #5ed", + Name.Class: "bold #e9e", + Name.Namespace: "bold #0e84b5", + Name.Exception: "bold #F00", + Name.Variable: "#036", + Name.Variable.Instance: "#aaf", + Name.Variable.Class: "#ccf", + Name.Variable.Global: "#f84", + Name.Constant: "bold #5ed", + Name.Label: "bold #970", + Name.Entity: "#800", + Name.Attribute: "#007", + Name.Tag: "#070", + Name.Decorator: "bold #555", + + String: "bg:#e0e0ff", + String.Char: "#88F bg:", + String.Doc: "#D42 bg:", + String.Interpol: "bg:#eee", + String.Escape: "bold #666", + String.Regex: "bg:#e0e0ff #000", + String.Symbol: "#fc8 bg:", + String.Other: "#f88", + + Number: "bold #60E", + Number.Integer: "bold #66f", + Number.Float: "bold #60E", + Number.Hex: "bold #058", + Number.Oct: "bold #40E", + + Generic.Heading: "bold #000080", + Generic.Subheading: "bold #800080", + Generic.Deleted: "#A00000", + Generic.Inserted: "#00A000", + Generic.Error: "#FF0000", + Generic.Emph: "italic", + Generic.Strong: "bold", + Generic.EmphStrong: "bold italic", + Generic.Prompt: "bold #c65d09", + Generic.Output: "#888", + Generic.Traceback: "#04D", + + Error: "#F00 bg:#FAA" + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/staroffice.py b/videollama2/lib/python3.10/site-packages/pygments/styles/staroffice.py new file mode 100644 index 0000000000000000000000000000000000000000..dfe2dc0f44641346a0e9d2b75583a481a84af36b --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/staroffice.py @@ -0,0 +1,31 @@ +""" + pygments.styles.staroffice + ~~~~~~~~~~~~~~~~~~~~~~~~~~ + + Style similar to StarOffice style, also in OpenOffice and LibreOffice. + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Comment, Error, Literal, Name, Token + + +__all__ = ['StarofficeStyle'] + + +class StarofficeStyle(Style): + """ + Style similar to StarOffice style, also in OpenOffice and LibreOffice. + """ + name = 'staroffice' + + + styles = { + Token: '#000080', # Blue + Comment: '#696969', # DimGray + Error: '#800000', # Maroon + Literal: '#EE0000', # Red + Name: '#008000', # Green + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/stata_dark.py b/videollama2/lib/python3.10/site-packages/pygments/styles/stata_dark.py new file mode 100644 index 0000000000000000000000000000000000000000..f6b9decbf002f25f9ca6f364adf9e516b3d45163 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/stata_dark.py @@ -0,0 +1,42 @@ +""" + pygments.styles.stata_dark + ~~~~~~~~~~~~~~~~~~~~~~~~~~ + + Dark style inspired by Stata's do-file editor. Note this is not + meant to be a complete style, just for Stata's file formats. + + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Token, Keyword, Name, Comment, String, Error, \ + Number, Operator, Whitespace, Generic + + +__all__ = ['StataDarkStyle'] + + +class StataDarkStyle(Style): + name = 'stata-dark' + + background_color = "#232629" + highlight_color = "#49483e" + + styles = { + Token: '#cccccc', + Whitespace: '#bbbbbb', + Error: 'bg:#e3d2d2 #a61717', + String: '#51cc99', + Number: '#4FB8CC', + Operator: '', + Name.Function: '#6a6aff', + Name.Other: '#e2828e', + Keyword: 'bold #7686bb', + Keyword.Constant: '', + Comment: 'italic #777777', + Name.Variable: 'bold #7AB4DB', + Name.Variable.Global: 'bold #BE646C', + Generic.Prompt: '#ffffff', + } diff --git a/videollama2/lib/python3.10/site-packages/pygments/styles/xcode.py b/videollama2/lib/python3.10/site-packages/pygments/styles/xcode.py new file mode 100644 index 0000000000000000000000000000000000000000..acf2293f96601df6cfb7bf546fc582fb9fde1e05 --- /dev/null +++ b/videollama2/lib/python3.10/site-packages/pygments/styles/xcode.py @@ -0,0 +1,53 @@ +""" + pygments.styles.xcode + ~~~~~~~~~~~~~~~~~~~~~ + + Style similar to the `Xcode` default theme. + + :copyright: Copyright 2006-2024 by the Pygments team, see AUTHORS. + :license: BSD, see LICENSE for details. +""" + +from pygments.style import Style +from pygments.token import Keyword, Name, Comment, String, Error, \ + Number, Operator, Literal + + +__all__ = ['XcodeStyle'] + + +class XcodeStyle(Style): + """ + Style similar to the Xcode default colouring theme. + """ + + name = 'xcode' + + styles = { + Comment: '#177500', + Comment.Preproc: '#633820', + + String: '#C41A16', + String.Char: '#2300CE', + + Operator: '#000000', + + Keyword: '#A90D91', + + Name: '#000000', + Name.Attribute: '#836C28', + Name.Class: '#3F6E75', + Name.Function: '#000000', + Name.Builtin: '#A90D91', + # In Obj-C code this token is used to colour Cocoa types + Name.Builtin.Pseudo: '#5B269A', + Name.Variable: '#000000', + Name.Tag: '#000000', + Name.Decorator: '#000000', + # Workaround for a BUG here: lexer treats multiline method signatres as labels + Name.Label: '#000000', + + Literal: '#1C01CE', + Number: '#1C01CE', + Error: '#000000', + } diff --git a/vllm/lib/python3.10/site-packages/pandas/tests/arrays/string_/__init__.py b/vllm/lib/python3.10/site-packages/pandas/tests/arrays/string_/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391