Result for 004C1BC944F1934880BB2326D81784E4A7F4549B

Query result

Key Value
FileName./usr/lib64/R/library/qtl/Meta/nsInfo.rds
FileSize2396
MD5F44FA0179C21B92E1DD4078521645D02
SHA-1004C1BC944F1934880BB2326D81784E4A7F4549B
SHA-256DBB63096ED9757045A27EF3E2D857D4F4A5D8F7BF37C1FF7C47F619F6C1193FC
SSDEEP48:XIrS8caBBiR1do74D5BcGog6igdZmQSwSMjPRZittqAZfjm3Dxl:4rSJaBBiBoUL6igdZ5tlGPaTD
TLSHT106411B6A92F4617FDD8302D9C0F61881387A0E78391CA5E0725D338B8693076FD9BCC5
hashlookup:parent-total5
hashlookup:trust75

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Parents (Total: 5)

The searched file hash is included in 5 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD5B84FCB1EFE45BF81C3C358FC5D5F85B6
PackageArchs390x
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc23
PackageVersion1.37.11
SHA-1B96E6936F6EBB196CEC8FB83F846A64A000D8485
SHA-2560E48AFF1EA0A7AC09C86ADEB1E307B6F270520BD0D06F8FA3E7FF6340F8334C8
Key Value
MD55A7519C77B459350B12DF2E0344E02EC
PackageArchs390
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc23
PackageVersion1.37.11
SHA-15597AB1C35636F9329E4A723930636FB0C608171
SHA-2568AADF7AF4CF9C4ABE90FEF44E6923AF742DBB8ACCB026315D5AABA000AA36733
Key Value
MD57BC63886C8405050D8FC53A4F5231E63
PackageArchppc64le
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc23
PackageVersion1.37.11
SHA-16A26D1509A5C28C6901261C47E33B51F2C90D2FA
SHA-256F36992A11E07767B39738F17172E2D164F55B701AD2EA16BDF0C3F8CCA87ACF6
Key Value
MD5B05FF82937A1D9B7D41B51303CADE312
PackageArchaarch64
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc23
PackageVersion1.37.11
SHA-13FC5A532DBAF3DC431E35BE2DD8B3D65452A40BA
SHA-2565E609328ADCF1FEE4C6514A769326FA290ED43E36AD5EB9DBA9F460C79A4B0E8
Key Value
MD575892274EE52833570F476D1B5535E12
PackageArchppc64
PackageDescriptionR-qtl is an extensible, interactive environment for mapping quantitative trait loci (QTLs) in experimental crosses. Our goal is to make complex QTL mapping methods widely accessible and allow users to focus on modeling rather than computing. A key component of computational methods for QTL mapping is the hidden Markov model (HMM) technology for dealing with missing genotype data. We have implemented the main HMM algorithms, with allowance for the presence of genotyping errors, for backcrosses, intercrosses, and phase-known four-way crosses. The current version of R-qtl includes facilities for estimating genetic maps, identifying genotyping errors, and performing single-QTL genome scans and two-QTL, two-dimensional genome scans, by interval mapping (with the EM algorithm), Haley-Knott regression, and multiple imputation. All of this may be done in the presence of covariates (such as sex, age or treatment). One may also fit higher-order QTL models by multiple imputation and Haley-Knott regression.
PackageMaintainerFedora Project
PackageNameR-qtl
PackageRelease1.fc23
PackageVersion1.37.11
SHA-1573E6C75ECCE6411897E0630059F157428B966BF
SHA-256251F1859E29EF9FD073C3F70839B48137C01C087EDCA7411D4C2DF040B24E7B3