Provided by: nvidia-cuda-dev_9.1.85-3ubuntu1_amd64 bug

NAME

       C++ API Routines - C++-style interface built on top of CUDA runtime API.

   Data Structures
       class __cudaOccupancyB2DHelper

   Functions
       template<class T , int dim> cudaError_t cudaBindSurfaceToArray (const struct surface< T,
           dim > &surf, cudaArray_const_t array)
           [C++ API] Binds an array to a surface
       template<class T , int dim> cudaError_t cudaBindSurfaceToArray (const struct surface< T,
           dim > &surf, cudaArray_const_t array, const struct cudaChannelFormatDesc &desc)
           [C++ API] Binds an array to a surface
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t cudaBindTexture
           (size_t *offset, const struct texture< T, dim, readMode > &tex, const void *devPtr,
           size_t size=UINT_MAX)
           [C++ API] Binds a memory area to a texture
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t cudaBindTexture
           (size_t *offset, const struct texture< T, dim, readMode > &tex, const void *devPtr,
           const struct cudaChannelFormatDesc &desc, size_t size=UINT_MAX)
           [C++ API] Binds a memory area to a texture
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaBindTexture2D (size_t *offset, const struct texture< T, dim, readMode > &tex,
           const void *devPtr, size_t width, size_t height, size_t pitch)
           [C++ API] Binds a 2D memory area to a texture
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaBindTexture2D (size_t *offset, const struct texture< T, dim, readMode > &tex,
           const void *devPtr, const struct cudaChannelFormatDesc &desc, size_t width, size_t
           height, size_t pitch)
           [C++ API] Binds a 2D memory area to a texture
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaBindTextureToArray (const struct texture< T, dim, readMode > &tex,
           cudaArray_const_t array)
           [C++ API] Binds an array to a texture
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaBindTextureToArray (const struct texture< T, dim, readMode > &tex,
           cudaArray_const_t array, const struct cudaChannelFormatDesc &desc)
           [C++ API] Binds an array to a texture
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaBindTextureToMipmappedArray (const struct texture< T, dim, readMode > &tex,
           cudaMipmappedArray_const_t mipmappedArray)
           [C++ API] Binds a mipmapped array to a texture
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaBindTextureToMipmappedArray (const struct texture< T, dim, readMode > &tex,
           cudaMipmappedArray_const_t mipmappedArray, const struct cudaChannelFormatDesc &desc)
           [C++ API] Binds a mipmapped array to a texture
       template<class T > cudaChannelFormatDesc cudaCreateChannelDesc (void)
           [C++ API] Returns a channel descriptor using the specified format
       cudaError_t cudaEventCreate (cudaEvent_t *event, unsigned int flags)
           [C++ API] Creates an event object with the specified flags
       template<class T > cudaError_t cudaFuncGetAttributes (struct cudaFuncAttributes *attr, T
           *entry)
           [C++ API] Find out attributes for a given function
       template<class T > cudaError_t cudaFuncSetAttribute (T *entry, enum cudaFuncAttribute
           attr, int value)
           [C++ API] Set attributes for a given function
       template<class T > cudaError_t cudaFuncSetCacheConfig (T *func, enum cudaFuncCache
           cacheConfig)
           [C++ API] Sets the preferred cache configuration for a device function
       template<class T > cudaError_t cudaGetSymbolAddress (void **devPtr, const T &symbol)
           [C++ API] Finds the address associated with a CUDA symbol
       template<class T > cudaError_t cudaGetSymbolSize (size_t *size, const T &symbol)
           [C++ API] Finds the size of the object associated with a CUDA symbol
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaGetTextureAlignmentOffset (size_t *offset, const struct texture< T, dim, readMode
           > &tex)
           [C++ API] Get the alignment offset of a texture
       template<class T > cudaError_t cudaLaunch (T *func)
           [C++ API] Launches a device function
       template<class T > cudaError_t cudaLaunchCooperativeKernel (const T *func, dim3 gridDim,
           dim3 blockDim, void **args, size_t sharedMem=0, cudaStream_t stream=0)
           Launches a device function.
       template<class T > cudaError_t cudaLaunchKernel (const T *func, dim3 gridDim, dim3
           blockDim, void **args, size_t sharedMem=0, cudaStream_t stream=0)
           Launches a device function.
       cudaError_t cudaMallocHost (void **ptr, size_t size, unsigned int flags)
           [C++ API] Allocates page-locked memory on the host
       template<class T > cudaError_t cudaMallocManaged (T **devPtr, size_t size, unsigned int
           flags=cudaMemAttachGlobal)
           Allocates memory that will be automatically managed by the Unified Memory system.
       template<class T > cudaError_t cudaMemcpyFromSymbol (void *dst, const T &symbol, size_t
           count, size_t offset=0, enum cudaMemcpyKind kind=cudaMemcpyDeviceToHost)
           [C++ API] Copies data from the given symbol on the device
       template<class T > cudaError_t cudaMemcpyFromSymbolAsync (void *dst, const T &symbol,
           size_t count, size_t offset=0, enum cudaMemcpyKind kind=cudaMemcpyDeviceToHost,
           cudaStream_t stream=0)
           [C++ API] Copies data from the given symbol on the device
       template<class T > cudaError_t cudaMemcpyToSymbol (const T &symbol, const void *src,
           size_t count, size_t offset=0, enum cudaMemcpyKind kind=cudaMemcpyHostToDevice)
           [C++ API] Copies data to the given symbol on the device
       template<class T > cudaError_t cudaMemcpyToSymbolAsync (const T &symbol, const void *src,
           size_t count, size_t offset=0, enum cudaMemcpyKind kind=cudaMemcpyHostToDevice,
           cudaStream_t stream=0)
           [C++ API] Copies data to the given symbol on the device
       template<class T > cudaError_t cudaOccupancyMaxActiveBlocksPerMultiprocessor (int
           *numBlocks, T func, int blockSize, size_t dynamicSMemSize)
           Returns occupancy for a device function.
       template<class T > cudaError_t cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags (int
           *numBlocks, T func, int blockSize, size_t dynamicSMemSize, unsigned int flags)
           Returns occupancy for a device function with the specified flags.
       template<class T > CUDART_DEVICE cudaError_t cudaOccupancyMaxPotentialBlockSize (int
           *minGridSize, int *blockSize, T func, size_t dynamicSMemSize=0, int blockSizeLimit=0)
           Returns grid and block size that achieves maximum potential occupancy for a device
           function.
       template<typename UnaryFunction , class T > CUDART_DEVICE cudaError_t
           cudaOccupancyMaxPotentialBlockSizeVariableSMem (int *minGridSize, int *blockSize, T
           func, UnaryFunction blockSizeToDynamicSMemSize, int blockSizeLimit=0)
           Returns grid and block size that achieves maximum potential occupancy for a device
           function.
       template<typename UnaryFunction , class T > CUDART_DEVICE cudaError_t
           cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlags (int *minGridSize, int
           *blockSize, T func, UnaryFunction blockSizeToDynamicSMemSize, int blockSizeLimit=0,
           unsigned int flags=0)
           Returns grid and block size that achieves maximum potential occupancy for a device
           function.
       template<class T > CUDART_DEVICE cudaError_t cudaOccupancyMaxPotentialBlockSizeWithFlags
           (int *minGridSize, int *blockSize, T func, size_t dynamicSMemSize=0, int
           blockSizeLimit=0, unsigned int flags=0)
           Returns grid and block size that achieved maximum potential occupancy for a device
           function with the specified flags.
       template<class T > cudaError_t cudaSetupArgument (T arg, size_t offset)
           [C++ API] Configure a device launch
       template<class T > cudaError_t cudaStreamAttachMemAsync (cudaStream_t stream, T *devPtr,
           size_t length=0, unsigned int flags=cudaMemAttachSingle)
           Attach memory to a stream asynchronously.
       template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
           cudaUnbindTexture (const struct texture< T, dim, readMode > &tex)
           [C++ API] Unbinds a texture

Detailed Description

       \brief C++ high level API functions of the CUDA runtime API (cuda_runtime_api.h)

       This section describes the C++ high level API functions of the CUDA runtime application
       programming interface. To use these functions, your application needs to be compiled with
       the nvcc compiler.

Function Documentation

   template<class T , int dim> cudaError_t cudaBindSurfaceToArray (const struct surface< T, dim >
       & surf, cudaArray_const_t array)
       Binds the CUDA array array to the surface reference surf. The channel descriptor is
       inherited from the CUDA array. Any CUDA array previously bound to surf is unbound.

       Parameters:
           surf - Surface to bind
           array - Memory array on device

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidSurface

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaBindSurfaceToArray (C API), cudaBindSurfaceToArray (C++ API)

   template<class T , int dim> cudaError_t cudaBindSurfaceToArray (const struct surface< T, dim >
       & surf, cudaArray_const_t array, const struct cudaChannelFormatDesc & desc)
       Binds the CUDA array array to the surface reference surf. desc describes how the memory is
       interpreted when dealing with the surface. Any CUDA array previously bound to surf is
       unbound.

       Parameters:
           surf - Surface to bind
           array - Memory array on device
           desc - Channel format

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidSurface

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaBindSurfaceToArray (C API), cudaBindSurfaceToArray (C++ API, inherited channel
           descriptor)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t cudaBindTexture
       (size_t * offset, const struct texture< T, dim, readMode > & tex, const void * devPtr,
       size_t size = UINT_MAX)
       Binds size bytes of the memory area pointed to by devPtr to texture reference tex. The
       channel descriptor is inherited from the texture reference type. The offset parameter is
       an optional byte offset as with the low-level cudaBindTexture(size_t*, const struct
       textureReference*, const void*, const struct cudaChannelFormatDesc*, size_t) function. Any
       memory previously bound to tex is unbound.

       Parameters:
           offset - Offset in bytes
           tex - Texture to bind
           devPtr - Memory area on device
           size - Size of the memory area pointed to by devPtr

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C API), cudaBindTexture (C++ API), cudaBindTexture2D (C++ API),
           cudaBindTexture2D (C++ API, inherited channel descriptor), cudaBindTextureToArray (C++
           API), cudaBindTextureToArray (C++ API, inherited channel descriptor),
           cudaUnbindTexture (C++ API), cudaGetTextureAlignmentOffset (C++ API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t cudaBindTexture
       (size_t * offset, const struct texture< T, dim, readMode > & tex, const void * devPtr,
       const struct cudaChannelFormatDesc & desc, size_t size = UINT_MAX)
       Binds size bytes of the memory area pointed to by devPtr to texture reference tex. desc
       describes how the memory is interpreted when fetching values from the texture. The offset
       parameter is an optional byte offset as with the low-level cudaBindTexture() function. Any
       memory previously bound to tex is unbound.

       Parameters:
           offset - Offset in bytes
           tex - Texture to bind
           devPtr - Memory area on device
           desc - Channel format
           size - Size of the memory area pointed to by devPtr

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C++ API), cudaBindTexture2D (C++ API, inherited channel
           descriptor), cudaBindTextureToArray (C++ API), cudaBindTextureToArray (C++ API,
           inherited channel descriptor), cudaUnbindTexture (C++ API),
           cudaGetTextureAlignmentOffset (C++ API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t cudaBindTexture2D
       (size_t * offset, const struct texture< T, dim, readMode > & tex, const void * devPtr,
       size_t width, size_t height, size_t pitch)
       Binds the 2D memory area pointed to by devPtr to the texture reference tex. The size of
       the area is constrained by width in texel units, height in texel units, and pitch in byte
       units. The channel descriptor is inherited from the texture reference type. Any memory
       previously bound to tex is unbound.

       Since the hardware enforces an alignment requirement on texture base addresses,
       cudaBindTexture2D() returns in *offset a byte offset that must be applied to texture
       fetches in order to read from the desired memory. This offset must be divided by the texel
       size and passed to kernels that read from the texture so they can be applied to the
       tex2D() function. If the device memory pointer was returned from cudaMalloc(), the offset
       is guaranteed to be 0 and NULL may be passed as the offset parameter.

       Parameters:
           offset - Offset in bytes
           tex - Texture reference to bind
           devPtr - 2D memory area on device
           width - Width in texel units
           height - Height in texel units
           pitch - Pitch in bytes

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C API), cudaBindTexture2D (C++ API), cudaBindTextureToArray (C++
           API), cudaBindTextureToArray (C++ API, inherited channel descriptor),
           cudaUnbindTexture (C++ API), cudaGetTextureAlignmentOffset (C++ API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t cudaBindTexture2D
       (size_t * offset, const struct texture< T, dim, readMode > & tex, const void * devPtr,
       const struct cudaChannelFormatDesc & desc, size_t width, size_t height, size_t pitch)
       Binds the 2D memory area pointed to by devPtr to the texture reference tex. The size of
       the area is constrained by width in texel units, height in texel units, and pitch in byte
       units. desc describes how the memory is interpreted when fetching values from the texture.
       Any memory previously bound to tex is unbound.

       Since the hardware enforces an alignment requirement on texture base addresses,
       cudaBindTexture2D() returns in *offset a byte offset that must be applied to texture
       fetches in order to read from the desired memory. This offset must be divided by the texel
       size and passed to kernels that read from the texture so they can be applied to the
       tex2D() function. If the device memory pointer was returned from cudaMalloc(), the offset
       is guaranteed to be 0 and NULL may be passed as the offset parameter.

       Parameters:
           offset - Offset in bytes
           tex - Texture reference to bind
           devPtr - 2D memory area on device
           desc - Channel format
           width - Width in texel units
           height - Height in texel units
           pitch - Pitch in bytes

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C API), cudaBindTexture2D (C++ API, inherited channel descriptor),
           cudaBindTextureToArray (C++ API), cudaBindTextureToArray (C++ API, inherited channel
           descriptor), cudaUnbindTexture (C++ API), cudaGetTextureAlignmentOffset (C++ API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
       cudaBindTextureToArray (const struct texture< T, dim, readMode > & tex, cudaArray_const_t
       array)
       Binds the CUDA array array to the texture reference tex. The channel descriptor is
       inherited from the CUDA array. Any CUDA array previously bound to tex is unbound.

       Parameters:
           tex - Texture to bind
           array - Memory array on device

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C++ API), cudaBindTexture2D (C++ API, inherited channel
           descriptor), cudaBindTextureToArray (C API), cudaBindTextureToArray (C++ API),
           cudaUnbindTexture (C++ API), cudaGetTextureAlignmentOffset (C++ API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
       cudaBindTextureToArray (const struct texture< T, dim, readMode > & tex, cudaArray_const_t
       array, const struct cudaChannelFormatDesc & desc)
       Binds the CUDA array array to the texture reference tex. desc describes how the memory is
       interpreted when fetching values from the texture. Any CUDA array previously bound to tex
       is unbound.

       Parameters:
           tex - Texture to bind
           array - Memory array on device
           desc - Channel format

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C++ API), cudaBindTexture2D (C++ API, inherited channel
           descriptor), cudaBindTextureToArray (C API), cudaBindTextureToArray (C++ API,
           inherited channel descriptor), cudaUnbindTexture (C++ API),
           cudaGetTextureAlignmentOffset (C++ API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
       cudaBindTextureToMipmappedArray (const struct texture< T, dim, readMode > & tex,
       cudaMipmappedArray_const_t mipmappedArray)
       Binds the CUDA mipmapped array mipmappedArray to the texture reference tex. The channel
       descriptor is inherited from the CUDA array. Any CUDA mipmapped array previously bound to
       tex is unbound.

       Parameters:
           tex - Texture to bind
           mipmappedArray - Memory mipmapped array on device

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C++ API), cudaBindTexture2D (C++ API, inherited channel
           descriptor), cudaBindTextureToArray (C API), cudaBindTextureToArray (C++ API),
           cudaUnbindTexture (C++ API), cudaGetTextureAlignmentOffset (C++ API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
       cudaBindTextureToMipmappedArray (const struct texture< T, dim, readMode > & tex,
       cudaMipmappedArray_const_t mipmappedArray, const struct cudaChannelFormatDesc & desc)
       Binds the CUDA mipmapped array mipmappedArray to the texture reference tex. desc describes
       how the memory is interpreted when fetching values from the texture. Any CUDA mipmapped
       array previously bound to tex is unbound.

       Parameters:
           tex - Texture to bind
           mipmappedArray - Memory mipmapped array on device
           desc - Channel format

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidTexture

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C++ API), cudaBindTexture2D (C++ API, inherited channel
           descriptor), cudaBindTextureToArray (C API), cudaBindTextureToArray (C++ API,
           inherited channel descriptor), cudaUnbindTexture (C++ API),
           cudaGetTextureAlignmentOffset (C++ API)

   template<class T > cudaChannelFormatDesc cudaCreateChannelDesc (void)
       Returns a channel descriptor with format f and number of bits of each component x, y, z,
       and w. The cudaChannelFormatDesc is defined as:

         struct cudaChannelFormatDesc {
           int x, y, z, w;
           enum cudaChannelFormatKind f;
         };

       where cudaChannelFormatKind is one of cudaChannelFormatKindSigned,
       cudaChannelFormatKindUnsigned, or cudaChannelFormatKindFloat.

       Returns:
           Channel descriptor with format f

       See also:
           cudaCreateChannelDesc (Low level), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (High level), cudaBindTexture (High level, inherited channel
           descriptor), cudaBindTexture2D (High level), cudaBindTextureToArray (High level),
           cudaBindTextureToArray (High level, inherited channel descriptor), cudaUnbindTexture
           (High level), cudaGetTextureAlignmentOffset (High level)

   cudaError_t cudaEventCreate (cudaEvent_t * event, unsigned int flags)
       Creates an event object with the specified flags. Valid flags include:

       • cudaEventDefault: Default event creation flag.

       • cudaEventBlockingSync: Specifies that event should use blocking synchronization. A host
         thread that uses cudaEventSynchronize() to wait on an event created with this flag will
         block until the event actually completes.

       • cudaEventDisableTiming: Specifies that the created event does not need to record timing
         data. Events created with this flag specified and the cudaEventBlockingSync flag not
         specified will provide the best performance when used with cudaStreamWaitEvent() and
         cudaEventQuery().

       Parameters:
           event - Newly created event
           flags - Flags for new event

       Returns:
           cudaSuccess, cudaErrorInitializationError, cudaErrorInvalidValue,
           cudaErrorLaunchFailure, cudaErrorMemoryAllocation

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaEventCreate (C API), cudaEventCreateWithFlags, cudaEventRecord, cudaEventQuery,
           cudaEventSynchronize, cudaEventDestroy, cudaEventElapsedTime, cudaStreamWaitEvent

   template<class T > cudaError_t cudaFuncGetAttributes (struct cudaFuncAttributes * attr, T *
       entry)
       This function obtains the attributes of a function specified via entry. The parameter
       entry must be a pointer to a function that executes on the device. The parameter specified
       by entry must be declared as a __global__ function. The fetched attributes are placed in
       attr. If the specified function does not exist, then cudaErrorInvalidDeviceFunction is
       returned.

       Note that some function attributes such as maxThreadsPerBlock may vary based on the device
       that is currently being used.

       Parameters:
           attr - Return pointer to function's attributes
           entry - Function to get attributes of

       Returns:
           cudaSuccess, cudaErrorInitializationError, cudaErrorInvalidDeviceFunction

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       cudaLaunchKernel (C++ API), cudaFuncSetCacheConfig (C++ API), cudaFuncGetAttributes (C
       API), cudaSetDoubleForDevice, cudaSetDoubleForHost, cudaSetupArgument (C++ API)

   template<class T > cudaError_t cudaFuncSetAttribute (T * entry, enum cudaFuncAttribute attr,
       int value)
       This function sets the attributes of a function specified via entry. The parameter entry
       must be a pointer to a function that executes on the device. The parameter specified by
       entry must be declared as a __global__ function. The enumeration defined by attr is set to
       the value defined by value If the specified function does not exist, then
       cudaErrorInvalidDeviceFunction is returned. If the specified attribute cannot be written,
       or if the value is incorrect, then cudaErrorInvalidValue is returned.

       Valid values for attr are: cuFuncAttrMaxDynamicSharedMem - Maximum size of dynamic shared
       memory per block cuFuncAttrPreferredShmemCarveout - Preferred shared memory-L1 cache split
       ratio in percent of shared memory.

       Parameters:
           entry - Function to get attributes of
           attr - Attribute to set
           value - Value to set

       Returns:
           cudaSuccess, cudaErrorInitializationError, cudaErrorInvalidDeviceFunction,
           cudaErrorInvalidValue

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       cudaLaunchKernel (C++ API), cudaFuncSetCacheConfig (C++ API), cudaFuncGetAttributes (C
       API), cudaSetDoubleForDevice, cudaSetDoubleForHost, cudaSetupArgument (C++ API)

   template<class T > cudaError_t cudaFuncSetCacheConfig (T * func, enum cudaFuncCache
       cacheConfig)
       On devices where the L1 cache and shared memory use the same hardware resources, this sets
       through cacheConfig the preferred cache configuration for the function specified via func.
       This is only a preference. The runtime will use the requested configuration if possible,
       but it is free to choose a different configuration if required to execute func.

       func must be a pointer to a function that executes on the device. The parameter specified
       by func must be declared as a __global__ function. If the specified function does not
       exist, then cudaErrorInvalidDeviceFunction is returned.

       This setting does nothing on devices where the size of the L1 cache and shared memory are
       fixed.

       Launching a kernel with a different preference than the most recent preference setting may
       insert a device-side synchronization point.

       The supported cache configurations are:

       • cudaFuncCachePreferNone: no preference for shared memory or L1 (default)

       • cudaFuncCachePreferShared: prefer larger shared memory and smaller L1 cache

       • cudaFuncCachePreferL1: prefer larger L1 cache and smaller shared memory

       Parameters:
           func - device function pointer
           cacheConfig - Requested cache configuration

       Returns:
           cudaSuccess, cudaErrorInitializationError, cudaErrorInvalidDeviceFunction

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       cudaLaunchKernel (C++ API), cudaFuncSetCacheConfig (C API), cudaFuncGetAttributes (C++
       API), cudaSetDoubleForDevice, cudaSetDoubleForHost, cudaSetupArgument (C++ API),
       cudaThreadGetCacheConfig, cudaThreadSetCacheConfig

   template<class T > cudaError_t cudaGetSymbolAddress (void ** devPtr, const T & symbol)
       Returns in *devPtr the address of symbol symbol on the device. symbol can either be a
       variable that resides in global or constant memory space. If symbol cannot be found, or if
       symbol is not declared in the global or constant memory space, *devPtr is unchanged and
       the error cudaErrorInvalidSymbol is returned.

       Parameters:
           devPtr - Return device pointer associated with symbol
           symbol - Device symbol reference

       Returns:
           cudaSuccess, cudaErrorInvalidSymbol, cudaErrorNoKernelImageForDevice

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaGetSymbolAddress (C API), cudaGetSymbolSize (C++ API)

   template<class T > cudaError_t cudaGetSymbolSize (size_t * size, const T & symbol)
       Returns in *size the size of symbol symbol. symbol must be a variable that resides in
       global or constant memory space. If symbol cannot be found, or if symbol is not declared
       in global or constant memory space, *size is unchanged and the error
       cudaErrorInvalidSymbol is returned.

       Parameters:
           size - Size of object associated with symbol
           symbol - Device symbol reference

       Returns:
           cudaSuccess, cudaErrorInvalidSymbol, cudaErrorNoKernelImageForDevice

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaGetSymbolAddress (C++ API), cudaGetSymbolSize (C API)

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t
       cudaGetTextureAlignmentOffset (size_t * offset, const struct texture< T, dim, readMode > &
       tex)
       Returns in *offset the offset that was returned when texture reference tex was bound.

       Parameters:
           offset - Offset of texture reference in bytes
           tex - Texture to get offset of

       Returns:
           cudaSuccess, cudaErrorInvalidTexture, cudaErrorInvalidTextureBinding

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C++ API), cudaBindTexture2D (C++ API, inherited channel
           descriptor), cudaBindTextureToArray (C++ API), cudaBindTextureToArray (C++ API,
           inherited channel descriptor), cudaUnbindTexture (C++ API),
           cudaGetTextureAlignmentOffset (C API)

   template<class T > cudaError_t cudaLaunch (T * func)
       Deprecated
           This function is deprecated as of CUDA 7.0

       Launches the function func on the device. The parameter func must be a function that
       executes on the device. The parameter specified by func must be declared as a __global__
       function. cudaLaunch() must be preceded by a call to cudaConfigureCall() since it pops the
       data that was pushed by cudaConfigureCall() from the execution stack.

       Parameters:
           func - Device function pointer to execute

       Returns:
           cudaSuccess, cudaErrorInvalidDeviceFunction, cudaErrorInvalidConfiguration,
           cudaErrorLaunchFailure, cudaErrorLaunchTimeout, cudaErrorLaunchOutOfResources,
           cudaErrorSharedObjectSymbolNotFound, cudaErrorSharedObjectInitFailed,
           cudaErrorInvalidPtx, cudaErrorNoKernelImageForDevice, cudaErrorJitCompilerNotFound

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       cudaLaunchKernel (C++ API), cudaFuncSetCacheConfig (C++ API), cudaFuncGetAttributes (C++
       API), cudaLaunch (C API), cudaSetDoubleForDevice, cudaSetDoubleForHost, cudaSetupArgument
       (C++ API), cudaThreadGetCacheConfig, cudaThreadSetCacheConfig

   template<class T > cudaError_t cudaLaunchCooperativeKernel (const T * func, dim3 gridDim, dim3
       blockDim, void ** args, size_t sharedMem = 0, cudaStream_t stream = 0)
       The function invokes kernel func on gridDim (gridDim.x × gridDim.y × gridDim.z) grid of
       blocks. Each block contains blockDim (blockDim.x × blockDim.y × blockDim.z) threads.

       The device on which this kernel is invoked must have a non-zero value for the device
       attribute cudaDevAttrCooperativeLaunch.

       The total number of blocks launched cannot exceed the maximum number of blocks per
       multiprocessor as returned by cudaOccupancyMaxActiveBlocksPerMultiprocessor (or
       cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags) times the number of
       multiprocessors as specified by the device attribute cudaDevAttrMultiProcessorCount.

       The kernel cannot make use of CUDA dynamic parallelism.

       If the kernel has N parameters the args should point to array of N pointers. Each pointer,
       from args[0] to args[N - 1], point to the region of memory from which the actual parameter
       will be copied.

       sharedMem sets the amount of dynamic shared memory that will be available to each thread
       block.

       stream specifies a stream the invocation is associated to.

       Parameters:
           func - Device function symbol
           gridDim - Grid dimensions
           blockDim - Block dimensions
           args - Arguments
           sharedMem - Shared memory (defaults to 0)
           stream - Stream identifier (defaults to NULL)

       Returns:
           cudaSuccess, cudaErrorInvalidDeviceFunction, cudaErrorInvalidConfiguration,
           cudaErrorLaunchFailure, cudaErrorLaunchTimeout, cudaErrorLaunchOutOfResources,
           cudaErrorSharedObjectInitFailed

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

           This function exhibits  behavior for most use cases.

           This function uses standard  semantics.

       cudaLaunchCooperativeKernel (C API)

   template<class T > cudaError_t cudaLaunchKernel (const T * func, dim3 gridDim, dim3 blockDim,
       void ** args, size_t sharedMem = 0, cudaStream_t stream = 0)
       The function invokes kernel func on gridDim (gridDim.x × gridDim.y × gridDim.z) grid of
       blocks. Each block contains blockDim (blockDim.x × blockDim.y × blockDim.z) threads.

       If the kernel has N parameters the args should point to array of N pointers. Each pointer,
       from args[0] to args[N - 1], point to the region of memory from which the actual parameter
       will be copied.

       sharedMem sets the amount of dynamic shared memory that will be available to each thread
       block.

       stream specifies a stream the invocation is associated to.

       Parameters:
           func - Device function symbol
           gridDim - Grid dimensions
           blockDim - Block dimensions
           args - Arguments
           sharedMem - Shared memory (defaults to 0)
           stream - Stream identifier (defaults to NULL)

       Returns:
           cudaSuccess, cudaErrorInvalidDeviceFunction, cudaErrorInvalidConfiguration,
           cudaErrorLaunchFailure, cudaErrorLaunchTimeout, cudaErrorLaunchOutOfResources,
           cudaErrorSharedObjectInitFailed, cudaErrorInvalidPtx, cudaErrorNoKernelImageForDevice,
           cudaErrorJitCompilerNotFound

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

           This function exhibits  behavior for most use cases.

           This function uses standard  semantics.

       cudaLaunchKernel (C API)

   cudaError_t cudaMallocHost (void ** ptr, size_t size, unsigned int flags)
       Allocates size bytes of host memory that is page-locked and accessible to the device. The
       driver tracks the virtual memory ranges allocated with this function and automatically
       accelerates calls to functions such as cudaMemcpy(). Since the memory can be accessed
       directly by the device, it can be read or written with much higher bandwidth than pageable
       memory obtained with functions such as malloc(). Allocating excessive amounts of pinned
       memory may degrade system performance, since it reduces the amount of memory available to
       the system for paging. As a result, this function is best used sparingly to allocate
       staging areas for data exchange between host and device.

       The flags parameter enables different options to be specified that affect the allocation,
       as follows.

       • cudaHostAllocDefault: This flag's value is defined to be 0.

       • cudaHostAllocPortable: The memory returned by this call will be considered as pinned
         memory by all CUDA contexts, not just the one that performed the allocation.

       • cudaHostAllocMapped: Maps the allocation into the CUDA address space. The device pointer
         to the memory may be obtained by calling cudaHostGetDevicePointer().

       • cudaHostAllocWriteCombined: Allocates the memory as write-combined (WC). WC memory can
         be transferred across the PCI Express bus more quickly on some system configurations,
         but cannot be read efficiently by most CPUs. WC memory is a good option for buffers that
         will be written by the CPU and read by the device via mapped pinned memory or
         host->device transfers.

       All of these flags are orthogonal to one another: a developer may allocate memory that is
       portable, mapped and/or write-combined with no restrictions.

       cudaSetDeviceFlags() must have been called with the cudaDeviceMapHost flag in order for
       the cudaHostAllocMapped flag to have any effect.

       The cudaHostAllocMapped flag may be specified on CUDA contexts for devices that do not
       support mapped pinned memory. The failure is deferred to cudaHostGetDevicePointer()
       because the memory may be mapped into other CUDA contexts via the cudaHostAllocPortable
       flag.

       Memory allocated by this function must be freed with cudaFreeHost().

       Parameters:
           ptr - Device pointer to allocated memory
           size - Requested allocation size in bytes
           flags - Requested properties of allocated memory

       Returns:
           cudaSuccess, cudaErrorMemoryAllocation

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaSetDeviceFlags, cudaMallocHost (C API), cudaFreeHost, cudaHostAlloc

   template<class T > cudaError_t cudaMallocManaged (T ** devPtr, size_t size, unsigned int flags
       = cudaMemAttachGlobal)
       Allocates size bytes of managed memory on the device and returns in *devPtr a pointer to
       the allocated memory. If the device doesn't support allocating managed memory,
       cudaErrorNotSupported is returned. Support for managed memory can be queried using the
       device attribute cudaDevAttrManagedMemory. The allocated memory is suitably aligned for
       any kind of variable. The memory is not cleared. If size is 0, cudaMallocManaged returns
       cudaErrorInvalidValue. The pointer is valid on the CPU and on all GPUs in the system that
       support managed memory. All accesses to this pointer must obey the Unified Memory
       programming model.

       flags specifies the default stream association for this allocation. flags must be one of
       cudaMemAttachGlobal or cudaMemAttachHost. The default value for flags is
       cudaMemAttachGlobal. If cudaMemAttachGlobal is specified, then this memory is accessible
       from any stream on any device. If cudaMemAttachHost is specified, then the allocation
       should not be accessed from devices that have a zero value for the device attribute
       cudaDevAttrConcurrentManagedAccess; an explicit call to cudaStreamAttachMemAsync will be
       required to enable access on such devices.

       If the association is later changed via cudaStreamAttachMemAsync to a single stream, the
       default association, as specified during cudaMallocManaged, is restored when that stream
       is destroyed. For __managed__ variables, the default association is always
       cudaMemAttachGlobal. Note that destroying a stream is an asynchronous operation, and as a
       result, the change to default association won't happen until all work in the stream has
       completed.

       Memory allocated with cudaMallocManaged should be released with cudaFree.

       Device memory oversubscription is possible for GPUs that have a non-zero value for the
       device attribute cudaDevAttrConcurrentManagedAccess. Managed memory on such GPUs may be
       evicted from device memory to host memory at any time by the Unified Memory driver in
       order to make room for other allocations.

       In a multi-GPU system where all GPUs have a non-zero value for the device attribute
       cudaDevAttrConcurrentManagedAccess, managed memory may not be populated when this API
       returns and instead may be populated on access. In such systems, managed memory can
       migrate to any processor's memory at any time. The Unified Memory driver will employ
       heuristics to maintain data locality and prevent excessive page faults to the extent
       possible. The application can also guide the driver about memory usage patterns via
       cudaMemAdvise. The application can also explicitly migrate memory to a desired processor's
       memory via cudaMemPrefetchAsync.

       In a multi-GPU system where all of the GPUs have a zero value for the device attribute
       cudaDevAttrConcurrentManagedAccess and all the GPUs have peer-to-peer support with each
       other, the physical storage for managed memory is created on the GPU which is active at
       the time cudaMallocManaged is called. All other GPUs will reference the data at reduced
       bandwidth via peer mappings over the PCIe bus. The Unified Memory driver does not migrate
       memory among such GPUs.

       In a multi-GPU system where not all GPUs have peer-to-peer support with each other and
       where the value of the device attribute cudaDevAttrConcurrentManagedAccess is zero for at
       least one of those GPUs, the location chosen for physical storage of managed memory is
       system-dependent.

       • On Linux, the location chosen will be device memory as long as the current set of active
         contexts are on devices that either have peer-to-peer support with each other or have a
         non-zero value for the device attribute cudaDevAttrConcurrentManagedAccess. If there is
         an active context on a GPU that does not have a non-zero value for that device attribute
         and it does not have peer-to-peer support with the other devices that have active
         contexts on them, then the location for physical storage will be 'zero-copy' or host
         memory. Note that this means that managed memory that is located in device memory is
         migrated to host memory if a new context is created on a GPU that doesn't have a non-
         zero value for the device attribute and does not support peer-to-peer with at least one
         of the other devices that has an active context. This in turn implies that context
         creation may fail if there is insufficient host memory to migrate all managed
         allocations.

       • On Windows, the physical storage is always created in 'zero-copy' or host memory. All
         GPUs will reference the data at reduced bandwidth over the PCIe bus. In these
         circumstances, use of the environment variable CUDA_VISIBLE_DEVICES is recommended to
         restrict CUDA to only use those GPUs that have peer-to-peer support. Alternatively,
         users can also set CUDA_MANAGED_FORCE_DEVICE_ALLOC to a non-zero value to force the
         driver to always use device memory for physical storage. When this environment variable
         is set to a non-zero value, all devices used in that process that support managed memory
         have to be peer-to-peer compatible with each other. The error cudaErrorInvalidDevice
         will be returned if a device that supports managed memory is used and it is not peer-to-
         peer compatible with any of the other managed memory supporting devices that were
         previously used in that process, even if cudaDeviceReset has been called on those
         devices. These environment variables are described in the CUDA programming guide under
         the 'CUDA environment variables' section.

       • On ARM, managed memory is not available on discrete gpu with Drive PX-2.

       Parameters:
           devPtr - Pointer to allocated device memory
           size - Requested allocation size in bytes
           flags - Must be either cudaMemAttachGlobal or cudaMemAttachHost (defaults to
           cudaMemAttachGlobal)

       Returns:
           cudaSuccess, cudaErrorMemoryAllocation, cudaErrorNotSupported, cudaErrorInvalidValue

       See also:
           cudaMallocPitch, cudaFree, cudaMallocArray, cudaFreeArray, cudaMalloc3D,
           cudaMalloc3DArray, cudaMallocHost (C API), cudaFreeHost, cudaHostAlloc,
           cudaDeviceGetAttribute, cudaStreamAttachMemAsync

   template<class T > cudaError_t cudaMemcpyFromSymbol (void * dst, const T & symbol, size_t
       count, size_t offset = 0, enum cudaMemcpyKind kind = cudaMemcpyDeviceToHost)
       Copies count bytes from the memory area offset bytes from the start of symbol symbol to
       the memory area pointed to by dst. The memory areas may not overlap. symbol is a variable
       that resides in global or constant memory space. kind can be either cudaMemcpyDeviceToHost
       or cudaMemcpyDeviceToDevice.

       Parameters:
           dst - Destination memory address
           symbol - Device symbol reference
           count - Size in bytes to copy
           offset - Offset from start of symbol in bytes
           kind - Type of transfer

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidSymbol,
           cudaErrorInvalidMemcpyDirection, cudaErrorNoKernelImageForDevice

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

           This function exhibits  behavior for most use cases.

           Use of a string naming a variable as the symbol parameter was deprecated in CUDA 4.1
           and removed in CUDA 5.0.

       See also:
           cudaMemcpy, cudaMemcpy2D, cudaMemcpyToArray, cudaMemcpy2DToArray, cudaMemcpyFromArray,
           cudaMemcpy2DFromArray, cudaMemcpyArrayToArray, cudaMemcpy2DArrayToArray,
           cudaMemcpyToSymbol, cudaMemcpyAsync, cudaMemcpy2DAsync, cudaMemcpyToArrayAsync,
           cudaMemcpy2DToArrayAsync, cudaMemcpyFromArrayAsync, cudaMemcpy2DFromArrayAsync,
           cudaMemcpyToSymbolAsync, cudaMemcpyFromSymbolAsync

   template<class T > cudaError_t cudaMemcpyFromSymbolAsync (void * dst, const T & symbol, size_t
       count, size_t offset = 0, enum cudaMemcpyKind kind = cudaMemcpyDeviceToHost, cudaStream_t
       stream = 0)
       Copies count bytes from the memory area offset bytes from the start of symbol symbol to
       the memory area pointed to by dst. The memory areas may not overlap. symbol is a variable
       that resides in global or constant memory space. kind can be either cudaMemcpyDeviceToHost
       or cudaMemcpyDeviceToDevice.

       cudaMemcpyFromSymbolAsync() is asynchronous with respect to the host, so the call may
       return before the copy is complete. The copy can optionally be associated to a stream by
       passing a non-zero stream argument. If kind is cudaMemcpyDeviceToHost and stream is non-
       zero, the copy may overlap with operations in other streams.

       Parameters:
           dst - Destination memory address
           symbol - Device symbol reference
           count - Size in bytes to copy
           offset - Offset from start of symbol in bytes
           kind - Type of transfer
           stream - Stream identifier

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidSymbol,
           cudaErrorInvalidMemcpyDirection, cudaErrorNoKernelImageForDevice

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

           This function exhibits  behavior for most use cases.

           Use of a string naming a variable as the symbol parameter was deprecated in CUDA 4.1
           and removed in CUDA 5.0.

       See also:
           cudaMemcpy, cudaMemcpy2D, cudaMemcpyToArray, cudaMemcpy2DToArray, cudaMemcpyFromArray,
           cudaMemcpy2DFromArray, cudaMemcpyArrayToArray, cudaMemcpy2DArrayToArray,
           cudaMemcpyToSymbol, cudaMemcpyFromSymbol, cudaMemcpyAsync, cudaMemcpy2DAsync,
           cudaMemcpyToArrayAsync, cudaMemcpy2DToArrayAsync, cudaMemcpyFromArrayAsync,
           cudaMemcpy2DFromArrayAsync, cudaMemcpyToSymbolAsync

   template<class T > cudaError_t cudaMemcpyToSymbol (const T & symbol, const void * src, size_t
       count, size_t offset = 0, enum cudaMemcpyKind kind = cudaMemcpyHostToDevice)
       Copies count bytes from the memory area pointed to by src to the memory area offset bytes
       from the start of symbol symbol. The memory areas may not overlap. symbol is a variable
       that resides in global or constant memory space. kind can be either cudaMemcpyHostToDevice
       or cudaMemcpyDeviceToDevice.

       Parameters:
           symbol - Device symbol reference
           src - Source memory address
           count - Size in bytes to copy
           offset - Offset from start of symbol in bytes
           kind - Type of transfer

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidSymbol,
           cudaErrorInvalidMemcpyDirection, cudaErrorNoKernelImageForDevice

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

           This function exhibits  behavior for most use cases.

           Use of a string naming a variable as the symbol parameter was deprecated in CUDA 4.1
           and removed in CUDA 5.0.

       See also:
           cudaMemcpy, cudaMemcpy2D, cudaMemcpyToArray, cudaMemcpy2DToArray, cudaMemcpyFromArray,
           cudaMemcpy2DFromArray, cudaMemcpyArrayToArray, cudaMemcpy2DArrayToArray,
           cudaMemcpyFromSymbol, cudaMemcpyAsync, cudaMemcpy2DAsync, cudaMemcpyToArrayAsync,
           cudaMemcpy2DToArrayAsync, cudaMemcpyFromArrayAsync, cudaMemcpy2DFromArrayAsync,
           cudaMemcpyToSymbolAsync, cudaMemcpyFromSymbolAsync

   template<class T > cudaError_t cudaMemcpyToSymbolAsync (const T & symbol, const void * src,
       size_t count, size_t offset = 0, enum cudaMemcpyKind kind = cudaMemcpyHostToDevice,
       cudaStream_t stream = 0)
       Copies count bytes from the memory area pointed to by src to the memory area offset bytes
       from the start of symbol symbol. The memory areas may not overlap. symbol is a variable
       that resides in global or constant memory space. kind can be either cudaMemcpyHostToDevice
       or cudaMemcpyDeviceToDevice.

       cudaMemcpyToSymbolAsync() is asynchronous with respect to the host, so the call may return
       before the copy is complete. The copy can optionally be associated to a stream by passing
       a non-zero stream argument. If kind is cudaMemcpyHostToDevice and stream is non-zero, the
       copy may overlap with operations in other streams.

       Parameters:
           symbol - Device symbol reference
           src - Source memory address
           count - Size in bytes to copy
           offset - Offset from start of symbol in bytes
           kind - Type of transfer
           stream - Stream identifier

       Returns:
           cudaSuccess, cudaErrorInvalidValue, cudaErrorInvalidSymbol,
           cudaErrorInvalidMemcpyDirection, cudaErrorNoKernelImageForDevice

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

           This function exhibits  behavior for most use cases.

           Use of a string naming a variable as the symbol parameter was deprecated in CUDA 4.1
           and removed in CUDA 5.0.

       See also:
           cudaMemcpy, cudaMemcpy2D, cudaMemcpyToArray, cudaMemcpy2DToArray, cudaMemcpyFromArray,
           cudaMemcpy2DFromArray, cudaMemcpyArrayToArray, cudaMemcpy2DArrayToArray,
           cudaMemcpyToSymbol, cudaMemcpyFromSymbol, cudaMemcpyAsync, cudaMemcpy2DAsync,
           cudaMemcpyToArrayAsync, cudaMemcpy2DToArrayAsync, cudaMemcpyFromArrayAsync,
           cudaMemcpy2DFromArrayAsync, cudaMemcpyFromSymbolAsync

   template<class T > cudaError_t cudaOccupancyMaxActiveBlocksPerMultiprocessor (int * numBlocks,
       T func, int blockSize, size_t dynamicSMemSize)
       Returns in *numBlocks the maximum number of active blocks per streaming multiprocessor for
       the device function.

       Parameters:
           numBlocks - Returned occupancy
           func - Kernel function for which occupancy is calculated
           blockSize - Block size the kernel is intended to be launched with
           dynamicSMemSize - Per-block dynamic shared memory usage intended, in bytes

       Returns:
           cudaSuccess, cudaErrorCudartUnloading, cudaErrorInitializationError,
           cudaErrorInvalidDevice, cudaErrorInvalidDeviceFunction, cudaErrorInvalidValue,
           cudaErrorUnknown,

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags

           cudaOccupancyMaxPotentialBlockSize

           cudaOccupancyMaxPotentialBlockSizeWithFlags

           cudaOccupancyMaxPotentialBlockSizeVariableSMem

           cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlags

   template<class T > cudaError_t cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags (int *
       numBlocks, T func, int blockSize, size_t dynamicSMemSize, unsigned int flags)
       Returns in *numBlocks the maximum number of active blocks per streaming multiprocessor for
       the device function.

       The flags parameter controls how special cases are handled. Valid flags include:

       • cudaOccupancyDefault: keeps the default behavior as
         cudaOccupancyMaxActiveBlocksPerMultiprocessorcudaOccupancyDisableCachingOverride: suppresses the default behavior on platform where
         global caching affects occupancy. On such platforms, if caching is enabled, but per-
         block SM resource usage would result in zero occupancy, the occupancy calculator will
         calculate the occupancy as if caching is disabled. Setting this flag makes the occupancy
         calculator to return 0 in such cases. More information can be found about this feature
         in the 'Unified L1/Texture Cache' section of the Maxwell tuning guide.

       Parameters:
           numBlocks - Returned occupancy
           func - Kernel function for which occupancy is calculated
           blockSize - Block size the kernel is intended to be launched with
           dynamicSMemSize - Per-block dynamic shared memory usage intended, in bytes
           flags - Requested behavior for the occupancy calculator

       Returns:
           cudaSuccess, cudaErrorCudartUnloading, cudaErrorInitializationError,
           cudaErrorInvalidDevice, cudaErrorInvalidDeviceFunction, cudaErrorInvalidValue,
           cudaErrorUnknown,

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaOccupancyMaxActiveBlocksPerMultiprocessor

           cudaOccupancyMaxPotentialBlockSize

           cudaOccupancyMaxPotentialBlockSizeWithFlags

           cudaOccupancyMaxPotentialBlockSizeVariableSMem

           cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlags

   template<class T > CUDART_DEVICE cudaError_t cudaOccupancyMaxPotentialBlockSize (int *
       minGridSize, int * blockSize, T func, size_t dynamicSMemSize = 0, int blockSizeLimit = 0)
       Returns in *minGridSize and *blocksize a suggested grid / block size pair that achieves
       the best potential occupancy (i.e. the maximum number of active warps with the smallest
       number of blocks).

       Use

       See also:
           cudaOccupancyMaxPotentialBlockSizeVariableSMem if the amount of per-block dynamic
           shared memory changes with different block sizes.

       Parameters:
           minGridSize - Returned minimum grid size needed to achieve the best potential
           occupancy
           blockSize - Returned block size
           func - Device function symbol
           dynamicSMemSize - Per-block dynamic shared memory usage intended, in bytes
           blockSizeLimit - The maximum block size func is designed to work with. 0 means no
           limit.

       Returns:
           cudaSuccess, cudaErrorCudartUnloading, cudaErrorInitializationError,
           cudaErrorInvalidDevice, cudaErrorInvalidDeviceFunction, cudaErrorInvalidValue,
           cudaErrorUnknown,

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaOccupancyMaxPotentialBlockSizeWithFlags

           cudaOccupancyMaxActiveBlocksPerMultiprocessor

           cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags

           cudaOccupancyMaxPotentialBlockSizeVariableSMem

           cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlags

   template<typename UnaryFunction , class T > CUDART_DEVICE cudaError_t
       cudaOccupancyMaxPotentialBlockSizeVariableSMem (int * minGridSize, int * blockSize, T
       func, UnaryFunction blockSizeToDynamicSMemSize, int blockSizeLimit = 0)
       Returns in *minGridSize and *blocksize a suggested grid / block size pair that achieves
       the best potential occupancy (i.e. the maximum number of active warps with the smallest
       number of blocks).

       Parameters:
           minGridSize - Returned minimum grid size needed to achieve the best potential
           occupancy
           blockSize - Returned block size
           func - Device function symbol
           blockSizeToDynamicSMemSize - A unary function / functor that takes block size, and
           returns the size, in bytes, of dynamic shared memory needed for a block
           blockSizeLimit - The maximum block size func is designed to work with. 0 means no
           limit.

       Returns:
           cudaSuccess, cudaErrorCudartUnloading, cudaErrorInitializationError,
           cudaErrorInvalidDevice, cudaErrorInvalidDeviceFunction, cudaErrorInvalidValue,
           cudaErrorUnknown,

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlags

           cudaOccupancyMaxActiveBlocksPerMultiprocessor

           cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags

           cudaOccupancyMaxPotentialBlockSize

           cudaOccupancyMaxPotentialBlockSizeWithFlags

   template<typename UnaryFunction , class T > CUDART_DEVICE cudaError_t
       cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlags (int * minGridSize, int *
       blockSize, T func, UnaryFunction blockSizeToDynamicSMemSize, int blockSizeLimit = 0,
       unsigned int flags = 0)
       Returns in *minGridSize and *blocksize a suggested grid / block size pair that achieves
       the best potential occupancy (i.e. the maximum number of active warps with the smallest
       number of blocks).

       The flags parameter controls how special cases are handled. Valid flags include:

       • cudaOccupancyDefault: keeps the default behavior as
         cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlagscudaOccupancyDisableCachingOverride: This flag suppresses the default behavior on
         platform where global caching affects occupancy. On such platforms, if caching is
         enabled, but per-block SM resource usage would result in zero occupancy, the occupancy
         calculator will calculate the occupancy as if caching is disabled. Setting this flag
         makes the occupancy calculator to return 0 in such cases. More information can be found
         about this feature in the 'Unified L1/Texture Cache' section of the Maxwell tuning
         guide.

       Parameters:
           minGridSize - Returned minimum grid size needed to achieve the best potential
           occupancy
           blockSize - Returned block size
           func - Device function symbol
           blockSizeToDynamicSMemSize - A unary function / functor that takes block size, and
           returns the size, in bytes, of dynamic shared memory needed for a block
           blockSizeLimit - The maximum block size func is designed to work with. 0 means no
           limit.
           flags - Requested behavior for the occupancy calculator

       Returns:
           cudaSuccess, cudaErrorCudartUnloading, cudaErrorInitializationError,
           cudaErrorInvalidDevice, cudaErrorInvalidDeviceFunction, cudaErrorInvalidValue,
           cudaErrorUnknown,

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaOccupancyMaxPotentialBlockSizeVariableSMem

           cudaOccupancyMaxActiveBlocksPerMultiprocessor

           cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags

           cudaOccupancyMaxPotentialBlockSize

           cudaOccupancyMaxPotentialBlockSizeWithFlags

   template<class T > CUDART_DEVICE cudaError_t cudaOccupancyMaxPotentialBlockSizeWithFlags (int
       * minGridSize, int * blockSize, T func, size_t dynamicSMemSize = 0, int blockSizeLimit =
       0, unsigned int flags = 0)
       Returns in *minGridSize and *blocksize a suggested grid / block size pair that achieves
       the best potential occupancy (i.e. the maximum number of active warps with the smallest
       number of blocks).

       The flags parameter controls how special cases are handle. Valid flags include:

       • cudaOccupancyDefault: keeps the default behavior as cudaOccupancyMaxPotentialBlockSizecudaOccupancyDisableCachingOverride: This flag suppresses the default behavior on
         platform where global caching affects occupancy. On such platforms, if caching is
         enabled, but per-block SM resource usage would result in zero occupancy, the occupancy
         calculator will calculate the occupancy as if caching is disabled. Setting this flag
         makes the occupancy calculator to return 0 in such cases. More information can be found
         about this feature in the 'Unified L1/Texture Cache' section of the Maxwell tuning
         guide.

       Use

       See also:
           cudaOccupancyMaxPotentialBlockSizeVariableSMem if the amount of per-block dynamic
           shared memory changes with different block sizes.

       Parameters:
           minGridSize - Returned minimum grid size needed to achieve the best potential
           occupancy
           blockSize - Returned block size
           func - Device function symbol
           dynamicSMemSize - Per-block dynamic shared memory usage intended, in bytes
           blockSizeLimit - The maximum block size func is designed to work with. 0 means no
           limit.
           flags - Requested behavior for the occupancy calculator

       Returns:
           cudaSuccess, cudaErrorCudartUnloading, cudaErrorInitializationError,
           cudaErrorInvalidDevice, cudaErrorInvalidDeviceFunction, cudaErrorInvalidValue,
           cudaErrorUnknown,

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaOccupancyMaxPotentialBlockSize

           cudaOccupancyMaxActiveBlocksPerMultiprocessor

           cudaOccupancyMaxActiveBlocksPerMultiprocessorWithFlags

           cudaOccupancyMaxPotentialBlockSizeVariableSMem

           cudaOccupancyMaxPotentialBlockSizeVariableSMemWithFlags

   template<class T > cudaError_t cudaSetupArgument (T arg, size_t offset)
       Deprecated
           This function is deprecated as of CUDA 7.0

       Pushes size bytes of the argument pointed to by arg at offset bytes from the start of the
       parameter passing area, which starts at offset 0. The arguments are stored in the top of
       the execution stack. cudaSetupArgument() must be preceded by a call to
       cudaConfigureCall().

       Parameters:
           arg - Argument to push for a kernel launch
           offset - Offset in argument stack to push new arg

       Returns:
           cudaSuccess

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       cudaLaunchKernel (C++ API), cudaFuncGetAttributes (C++ API), cudaLaunch (C++ API),
       cudaSetDoubleForDevice, cudaSetDoubleForHost, cudaSetupArgument (C API)

   template<class T > cudaError_t cudaStreamAttachMemAsync (cudaStream_t stream, T * devPtr,
       size_t length = 0, unsigned int flags = cudaMemAttachSingle)
       Enqueues an operation in stream to specify stream association of length bytes of memory
       starting from devPtr. This function is a stream-ordered operation, meaning that it is
       dependent on, and will only take effect when, previous work in stream has completed. Any
       previous association is automatically replaced.

       devPtr must point to an address within managed memory space declared using the __managed__
       keyword or allocated with cudaMallocManaged.

       length must be zero, to indicate that the entire allocation's stream association is being
       changed. Currently, it's not possible to change stream association for a portion of an
       allocation. The default value for length is zero.

       The stream association is specified using flags which must be one of cudaMemAttachGlobal,
       cudaMemAttachHost or cudaMemAttachSingle. The default value for flags is
       cudaMemAttachSingle If the cudaMemAttachGlobal flag is specified, the memory can be
       accessed by any stream on any device. If the cudaMemAttachHost flag is specified, the
       program makes a guarantee that it won't access the memory on the device from any stream on
       a device that has a zero value for the device attribute
       cudaDevAttrConcurrentManagedAccess. If the cudaMemAttachSingle flag is specified and
       stream is associated with a device that has a zero value for the device attribute
       cudaDevAttrConcurrentManagedAccess, the program makes a guarantee that it will only access
       the memory on the device from stream. It is illegal to attach singly to the NULL stream,
       because the NULL stream is a virtual global stream and not a specific stream. An error
       will be returned in this case.

       When memory is associated with a single stream, the Unified Memory system will allow CPU
       access to this memory region so long as all operations in stream have completed,
       regardless of whether other streams are active. In effect, this constrains exclusive
       ownership of the managed memory region by an active GPU to per-stream activity instead of
       whole-GPU activity.

       Accessing memory on the device from streams that are not associated with it will produce
       undefined results. No error checking is performed by the Unified Memory system to ensure
       that kernels launched into other streams do not access this region.

       It is a program's responsibility to order calls to cudaStreamAttachMemAsync via events,
       synchronization or other means to ensure legal access to memory at all times. Data
       visibility and coherency will be changed appropriately for all kernels which follow a
       stream-association change.

       If stream is destroyed while data is associated with it, the association is removed and
       the association reverts to the default visibility of the allocation as specified at
       cudaMallocManaged. For __managed__ variables, the default association is always
       cudaMemAttachGlobal. Note that destroying a stream is an asynchronous operation, and as a
       result, the change to default association won't happen until all work in the stream has
       completed.

       Parameters:
           stream - Stream in which to enqueue the attach operation
           devPtr - Pointer to memory (must be a pointer to managed memory)
           length - Length of memory (must be zero, defaults to zero)
           flags - Must be one of cudaMemAttachGlobal, cudaMemAttachHost or cudaMemAttachSingle
           (defaults to cudaMemAttachSingle)

       Returns:
           cudaSuccess, cudaErrorNotReady, cudaErrorInvalidValue, cudaErrorInvalidResourceHandle

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaStreamCreate, cudaStreamCreateWithFlags, cudaStreamWaitEvent,
           cudaStreamSynchronize, cudaStreamAddCallback, cudaStreamDestroy, cudaMallocManaged

   template<class T , int dim, enum cudaTextureReadMode readMode> cudaError_t cudaUnbindTexture
       (const struct texture< T, dim, readMode > & tex)
       Unbinds the texture bound to tex.

       Parameters:
           tex - Texture to unbind

       Returns:
           cudaSuccess

       Note:
           Note that this function may also return error codes from previous, asynchronous
           launches.

       See also:
           cudaCreateChannelDesc (C++ API), cudaGetChannelDesc, cudaGetTextureReference,
           cudaBindTexture (C++ API), cudaBindTexture (C++ API, inherited channel descriptor),
           cudaBindTexture2D (C++ API), cudaBindTexture2D (C++ API, inherited channel
           descriptor), cudaBindTextureToArray (C++ API), cudaBindTextureToArray (C++ API,
           inherited channel descriptor), cudaUnbindTexture (C API),
           cudaGetTextureAlignmentOffset (C++ API)

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