Result for 10E98208C34C5C21EF5728D2BC49A3C9000CCE67

Query result

Key Value
FileName./usr/lib64/R/library/LearnBayes/Meta/package.rds
FileSize780
MD528C0CBE256A812F891C095FD612F5A1B
SHA-110E98208C34C5C21EF5728D2BC49A3C9000CCE67
SHA-2562E67D5B961F0E06962D7EAFF2D51E45A089C40AB95E94417638D0BAA8C4CEEDD
SSDEEP24:XyBsKswABtW3dpUIKiK5XJbBtPGBkFVYY/:XyXq8UHi8beBkFSY/
TLSHT1EB0175A687C23760F64C3167615A61F84356D62DBB2040FD7A8F65894E5CE8484067C7
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
MD551BEBBEF62A6EC58665B3CF8251DDDA0
PackageArchx86_64
PackageDescriptionA collection of functions helpful in learning the basic tenets of Bayesian statistical inference. It contains functions for summarizing basic one and two parameter posterior distributions and predictive distributions. It contains MCMC algorithms for summarizing posterior distributions defined by the user. It also contains functions for regression models, hierarchical models, Bayesian tests, and illustrations of Gibbs sampling.
PackageNameR-LearnBayes
PackageRelease2.24
PackageVersion2.15.1
SHA-12F410197AE466C911CEF2387901C9ACBD4BE4A49
SHA-256277315D4085F9F6BEDB5E96A6B183D352D4DCA52F0ECF23FB328A91554B29AAD