Result for 011406385D3F16A7BBC923675B460C2C5B92BB06

Query result

Key Value
FileName./usr/lib64/cuda-toolkit-root-dir/include/cuda/std/detail/libcxx/include/support/atomic/atomic_nvrtc.h
FileSize98
MD571526DF59A37AC620FB9DF0C72F95447
SHA-1011406385D3F16A7BBC923675B460C2C5B92BB06
SHA-256C961FFA3C728FC25B61A8F5F2C9F6A93EEAD6DFA3CA3680A05CA7E1B4B5198A7
SSDEEP3:gCCCCCCCK5AdreI/mfKkBANAVQKoq4Kj18n:eAdeI+iIAfRq4Kj18
TLSHT11CB0023456BDB4945549545150055E3117C43D1DF7846F44620D4DF1D6540DE55730C1
hashlookup:parent-total2
hashlookup:trust60

Network graph view

Parents (Total: 2)

The searched file hash is included in 2 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD5FD28072790076BF1F425957752994C20
PackageArchx86_64
PackageDescriptionNVIDIA® CUDA™ is a general purpose parallel computing architecture that leverages the parallel compute engine in NVIDIA graphics processing units (GPUs) to solve many complex computational problems in a fraction of the time required on a CPU. It includes the CUDA Instruction Set Architecture (ISA) and the parallel compute engine in the GPU. To program to the CUDA™ architecture, developers can, today, use C++, one of the most widely used high-level programming languages, which can then be run at great performance on a CUDA™ enabled processor. Support for other languages, like FORTRAN, Python or Java, is available from third parties. This package contains the development files needed to build programs that make use of CUDA.
PackageMaintainerghibo <ghibo>
PackageNamenvidia-cuda-toolkit-devel
PackageRelease2.mga9.nonfree
PackageVersion11.8.0
SHA-186634BAD2A7454730FA205ED35C51C82810E1174
SHA-2569FE4A61C84FA09B8638CFF7A50881F8A929B29D91251839496BE82EE7A8E635D
Key Value
MD5425C54152B3D95819BDD8DC517787C85
PackageArchx86_64
PackageDescriptionNVIDIA® CUDA™ is a general purpose parallel computing architecture that leverages the parallel compute engine in NVIDIA graphics processing units (GPUs) to solve many complex computational problems in a fraction of the time required on a CPU. It includes the CUDA Instruction Set Architecture (ISA) and the parallel compute engine in the GPU. To program to the CUDA™ architecture, developers can, today, use C++, one of the most widely used high-level programming languages, which can then be run at great performance on a CUDA™ enabled processor. Support for other languages, like FORTRAN, Python or Java, is available from third parties. This package contains the development files needed to build programs that make use of CUDA.
PackageMaintainerumeabot <umeabot>
PackageNamenvidia-cuda-toolkit-devel
PackageRelease5.mga9.nonfree
PackageVersion11.5.1
SHA-1A44E5A1C69FF5267C087BF8A62AB04D3A421DE98
SHA-2565EDD5A094884E54B429ABBE67ABA5557568CED417026187C1E8D1EC84F7A3857