Result for 33C29CCCE3DE573B888D7B26B25EE41A86A4C57F

Query result

Key Value
FileName./usr/lib64/R/library/rsvd/Meta/package.rds
FileSize1341
MD5C452C0F9C19156A3E70A9CB87450D260
SHA-133C29CCCE3DE573B888D7B26B25EE41A86A4C57F
SHA-2562AD7010E5023CF3FB22B8A809D295A0838DB1DB87F78D7D9680D481A662286E6
SSDEEP24:XBXpBplBwGz2Em5s4XpD39mmvih1uJV6RbHauUdXCpwgF6qdUyYtpJ:XBzSG9EDtmmvi0JrZkwA66RY9
TLSHT19D21D80B0A72880CB96041D2DA4A3C1508BC71D470CF7CBE75C92C9774D353EE180D23
hashlookup:parent-total1
hashlookup:trust55

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Parents (Total: 1)

The searched file hash is included in 1 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD5C09137DF59C9E0A01116C48425616E19
PackageArchx86_64
PackageDescriptionLow-rank matrix decompositions are fundamental tools and widely used for data analysis, dimension reduction, and data compression. Classically, highly accurate deterministic matrix algorithms are used for this task. However, the emergence of large-scale data has severely challenged our computational ability to analyze big data. The concept of randomness has been demonstrated as an effective strategy to quickly produce approximate answers to familiar problems such as the singular value decomposition (SVD). The rsvd package provides several randomized matrix algorithms such as the randomized singular value decomposition (rsvd), randomized principal component analysis (rpca), randomized robust principal component analysis (rrpca), randomized interpolative decomposition (rid), and the randomized CUR decomposition (rcur). In addition several plot functions are provided. The methods are discussed in detail by Erichson et al. (2016) <arXiv:1608.02148>.
PackageNameR-rsvd
PackageReleaselp153.1.9
PackageVersion1.0.2
SHA-1C3B20936D9E7954F88AAF70E85D76EF44023DD5B
SHA-256AD05F9A8AAD4FE746B476A6ED017B7D71A60A32D45200B5A6CF74BED49AA35CE