-------------------------------------------------------------------------------- -------------------------------------------------------------------------------- NVIDIA CUDA Linux Release Notes Version 3.0 -------------------------------------------------------------------------------- -------------------------------------------------------------------------------- On some Linux releases, due to a GRUB bug in the handling of upper memory and a default vmalloc too small on 32-bit systems, it may be necessary to pass this information to the bootloader: vmalloc=256MB, uppermem=524288 Example of grub conf: title Red Hat Desktop (2.6.9-42.ELsmp) root (hd0,0) uppermem 524288 kernel /vmlinuz-2.6.9-42.ELsmp ro root=LABEL=/1 rhgb quiet vmalloc=256MB pci=nommconf initrd /initrd-2.6.9-42.ELsmp.img -------------------------------------------------------------------------------- New Features -------------------------------------------------------------------------------- Hardware Support o See http://www.nvidia.com/object/cuda_learn_products.html Hardware Support o Additional OS Support - Red Hat Enterprise Linux 4.8 - Ubuntu 9.04 o Eliminated OS Support - Ubuntu 8.10 - Red Hat Enterprise Linux 4.7 o CUBLAS Library Support - Added the BLAS1 functions: * cublasZaxpy() * cublasZcopy() * cublasZswap() - Added the BLAS2 functions: * cublasDtrmv() * cublasCtrmv() * cublasCgemv() * cublasCgeru() * cublasCgerc() * cublasZtrmv() * cublasZgemv() * cublasZgeru() * cublasZgerc() - Added the BLAS3 functions: * cublasCtrsm() * cublasCtrmm() * cublasCsyrk() * cublasCsymm() * cublasCherk() * cublasZtrsm() * cublasZtrmm() * cublasZsyrk() * cublasZsymm() * cublasZherk() -------------------------------------------------------------------------------- Bug Fixes -------------------------------------------------------------------------------- o The asynchronous memcpy routines require the user to pass pinned memory allocations for any host pointers. In Cuda 2.1, 2.2, and 2.3, no error was returned if you used non-pinned memory with the NULL stream in some Host-to-Device memcpy operations. This release adds back the appropriate error check and returns cudaErrorInvalidValue or CUDA_ERROR_INVALID_VALUE when an application uses non-pinned memory in such a transfer. -------------------------------------------------------------------------------- Known Issues -------------------------------------------------------------------------------- o GPU enumeration order on multi-GPU systems is non-deterministic and may change with this or future releases. Users should make sure to enumerate all CUDA-capable GPUs in the system and select the most appropriate one(s) to use. o Individual GPU program launches are limited to a run time of less than 5 seconds on a GPU with a display attached. Exceeding this time limit causes a launch failure reported through the CUDA driver or the CUDA runtime. GPUs without a display attached are not subject to the 5 second run time restriction. For this reason it is recommended that CUDA is run on a GPU that is NOT attached to an X display. o In order to run CUDA applications, the CUDA module must be loaded and the entries in /dev created. This may be achieved by initializing X Windows, or by creating a script to load the kernel module and create the entries. An example script (to be run at boot time): #!/bin/bash modprobe nvidia if [ "$?" -eq 0 ]; then # Count the number of NVIDIA controllers found. N3D=`/sbin/lspci | grep -i NVIDIA | grep "3D controller" | wc -l` NVGA=`/sbin/lspci | grep -i NVIDIA | grep "VGA compatible controller" | wc -l` N=`expr $N3D + $NVGA - 1` for i in `seq 0 $N`; do mknod -m 666 /dev/nvidia$i c 195 $i; done mknod -m 666 /dev/nvidiactl c 195 255 else exit 1 fi o When compiling with GCC, special care must be taken for structs that contain 64-bit integers. This is because GCC aligns long longs to a 4 byte boundary by default, while NVCC aligns long longs to an 8 byte boundary by default. Thus, when using GCC to compile a file that has a struct/union, users must give the -malign-double option to GCC. When using NVCC, this option is automatically passed to GCC. o It is a known issue that cudaThreadExit() may not be called implicitly on host thread exit. Due to this, developers are recommended to explicitly call cudaThreadExit() while the issue is being resolved. o For maximum performance when using multiple byte sizes to access the same data, coalesce adjacent loads and stores when possible rather than using a union or individual byte accesses. Accessing the data via a union may result in the compiler reserving extra memory for the object, and accessing the data as individual bytes may result in non-coalesced accesses. This will be improved in a future compiler release. o OpenGL interoperability - OpenGL cannot access a buffer that is currently *mapped*. If the buffer is registered but not mapped, OpenGL can do any requested operations on the buffer. - Deleting a buffer while it is mapped for CUDA results in undefined behavior. - Attempting to map or unmap while a different context is bound than was current during the buffer register operation will generally result in a program error and should thus be avoided. - Interoperability will use a software path on SLI - Interoperability will use a software path if monitors are attached to multiple GPUs and a single desktop spans more than one GPU (i.e. X11 Xinerama). -------------------------------------------------------------------------------- Open64 Sources -------------------------------------------------------------------------------- The Open64 source files are controlled under terms of the GPL license. Current and previously released versions are located via anonymous ftp at download.nvidia.com in the CUDAOpen64 directory. -------------------------------------------------------------------------------- Revision History -------------------------------------------------------------------------------- 10/2009 - Version 3.0 Beta 07/2009 - Version 2.3 06/2009 - Version 2.3 Beta 05/2009 - Version 2.2 03/2009 - Version 2.2 Beta 11/2008 - Version 2.1 Beta 06/2008 - Version 2.0 11/2007 - Version 1.1 06/2007 - Version 1.0 06/2007 - Version 0.9 02/2007 - Version 0.8 - Initial public Beta -------------------------------------------------------------------------------- More Information -------------------------------------------------------------------------------- For more information and help with CUDA, please visit http://www.nvidia.com/cuda