Result for 2B7B7A8824D0C8A793FE6E5043C6F52B52E55E2D

Query result

Key Value
FileName./usr/lib64/R/library/rsvd/data/Rdata.rdx
FileSize173
MD5C1023BFD3E49653CAFA4F354CB5CB28D
SHA-12B7B7A8824D0C8A793FE6E5043C6F52B52E55E2D
SHA-256DE31FAECB0DF2074F0BC11E7C22A4E686993859FEF6EAC00145ACDAAB94C688B
SSDEEP3:FttVFD/EWOjf9hSrWJ2vHmsmDdY0gVXNZmw0gc89d8zYnNQ5Pxlrl:XtVFDjOJhgCDdYxVdZmwnc80YNQ5d
TLSHT126C080C59350B61F91450E34D15472961488C9BFF5D69F56551C100576B4D200CB70EC
hashlookup:parent-total9
hashlookup:trust95

Network graph view

Parents (Total: 9)

The searched file hash is included in 9 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD579AFB410EA5EDB9829D7B744FF4C5F5D
PackageArchi586
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
PackageRelease1.33
PackageVersion1.0.2
SHA-1A60193D637C8302B72442962DC5EF7FFFFC504AC
SHA-25650176760D5FE319E279AE867C13CD93C76C0D5E7D5ADBC24ABCB3C44E89359FE
Key Value
MD591D00DB8648B943A7130330C426EFD65
PackageArchi586
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
PackageRelease1.33
PackageVersion1.0.2
SHA-12B78B2EF578A2312993D876A6D19541A0934F8CA
SHA-25672AE324915BD97250103CC6871AAE4719DAFCFDC37B2A3DCCA36B850F5FD4FA8
Key Value
MD56CC28354FF2696450C24ABCEBC8FB2EC
PackageArcharmv7hl
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
PackageRelease1.29
PackageVersion1.0.2
SHA-1C0718CBDE0CA92C60546C6ECEBA358F3D24191CE
SHA-256032C8436867984568EF263E9BB5D7D0EF226AD1F331A8BAC9256C11BEFF31CF8
Key Value
MD5A28601C83F9C8D428D00AF72CBAC0879
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
PackageRelease1.15
PackageVersion1.0.2
SHA-1106E10AC8A4B9B1FD639FA8965381BD11066BC29
SHA-2562F25B5EAC65AC870582208A6A87DB8375D70FB9E37F4DC434E225FA1A7DAC09B
Key Value
MD57D7B506A84E9F2006BA23186C1968E6D
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
PackageRelease1.33
PackageVersion1.0.2
SHA-1A0ED05B93392E5A75273E147ED154A000437DA3B
SHA-2562080823EE44589AE3083EE20AC8579C8BFE6270C9229150727C1A27761B00B34
Key Value
MD515D778B1645D3AD1BFE63EE830FBEFC7
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
PackageRelease1.14
PackageVersion1.0.2
SHA-1DA8AB18DF498FB81EFAA1729BFC69895A3CA73D0
SHA-256E7015748930CD054C0AED30717AA3CCCA637F045D8B1185E10AD1999DFC648D9
Key Value
MD5B8C76184E2C0C57C16D2766EFF967CA6
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
PackageRelease1.14
PackageVersion1.0.2
SHA-1014E0350840FC7D79AA90593DA844DBCB4C68DFD
SHA-2560F4C80C6A304F41AE4DB1F5D5508F007ABA85582DCCF192B8E5FDD532F38BF93
Key Value
MD5E0D5A712EB96EFCBF5B303550D9AD92B
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
PackageRelease1.33
PackageVersion1.0.2
SHA-11474C87A273BE47802A964CE010895B37BB8405B
SHA-256948CD21C97AD7D760F405EB4ECC73B278DCBC59B596EED24A1C96C0ABBAD5138
Key Value
MD56C8A693616842063EA4AC1426AF72395
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
PackageRelease1.6
PackageVersion1.0.2
SHA-1403F754860A6ACFAB6AB643E63FE50418B8EFE0A
SHA-256E1A1A0A542B018242B047993C30027B902D38123F93E6086D4D601906B7E3AE7