Key | Value |
---|---|
FileName | libcholmod.so |
FileSize | 20 |
MD5 | C954EBD941FA4E58F7B783995F5F7DDC |
RDS:package_id | 298500 |
SHA-1 | D0AECC40D8B1EF09BE5C9C277CDB853A5B2E5625 |
SHA-256 | 933BCD98EF524A90786BCCCFB0D6095EFC4D9105424AA30781D19A5244024485 |
SSDEEP | 3:EG80KLWhgRn:EGEIgR |
TLSH | |
insert-timestamp | 1696443720.3811002 |
source | db.sqlite |
hashlookup:parent-total | 34 |
hashlookup:trust | 100 |
The searched file hash is included in 34 parent files which include package known and seen by metalookup. A sample is included below:
Key | Value |
---|---|
MD5 | BE0DDB6AD01F035DD4BB174B2C0D002C |
PackageArch | s390x |
PackageDescription | CHOLMOD is a set of ANSI C routines for sparse Cholesky factorization and update/downdate. A MATLAB interface is provided. The performance of CHOLMOD was compared with 10 other codes in a paper by Nick Gould, Yifan Hu, and Jennifer Scott. see also their raw data. Comparing BCSLIB-EXT, CHOLMOD, MA57, MUMPS, Oblio, PARDISO, SPOOLES, SPRSBLKLLT, TAUCS, UMFPACK, and WSMP, on 87 large symmetric positive definite matrices, they found CHOLMOD to be fastest for 42 of the 87 matrices. Its run time is either fastest or within 10% of the fastest for 73 out of 87 matrices. Considering just the larger matrices, it is either the fastest or within 10% of the fastest for 40 out of 42 matrices. It uses the least amount of memory (or within 10% of the least) for 35 of the 42 larger matrices. Jennifer Scott and Yifan Hu also discuss the design considerations for a sparse direct code. CHOLMOD is part of the SuiteSparse sparse matrix suite. |
PackageName | libcholmod3 |
PackageRelease | 45.1 |
PackageVersion | 3.0.14 |
SHA-1 | 07F3F1BC6BFC7D0450E48C70DFB57B0B89B1BFFF |
SHA-256 | 142726F632A4DF5B8E12E4E22DCCFF35754EF869FB5AB16C46957FBBA65C5A49 |
Key | Value |
---|---|
MD5 | 755E16B96250F75984C4C02FD12B1E8C |
PackageArch | x86_64 |
PackageDescription | CHOLMOD is a set of ANSI C routines for sparse Cholesky factorization and update/downdate. A MATLAB interface is provided. The performance of CHOLMOD was compared with 10 other codes in a paper by Nick Gould, Yifan Hu, and Jennifer Scott. see also their raw data. Comparing BCSLIB-EXT, CHOLMOD, MA57, MUMPS, Oblio, PARDISO, SPOOLES, SPRSBLKLLT, TAUCS, UMFPACK, and WSMP, on 87 large symmetric positive definite matrices, they found CHOLMOD to be fastest for 42 of the 87 matrices. Its run time is either fastest or within 10% of the fastest for 73 out of 87 matrices. Considering just the larger matrices, it is either the fastest or within 10% of the fastest for 40 out of 42 matrices. It uses the least amount of memory (or within 10% of the least) for 35 of the 42 larger matrices. Jennifer Scott and Yifan Hu also discuss the design considerations for a sparse direct code. CHOLMOD is part of the SuiteSparse sparse matrix suite. |
PackageName | libcholmod3 |
PackageRelease | 85.3 |
PackageVersion | 3.0.14 |
SHA-1 | 08C4CEE983936BAF27DC80BF2A38B4EC17D2CD2C |
SHA-256 | A890C4B91821AF3DD3B509B3325AFB55DCE11920122F26EC8B07D7613182DC3B |
Key | Value |
---|---|
MD5 | A4E647D07CB53F8DD54326DE6741F34C |
PackageArch | x86_64 |
PackageDescription | CHOLMOD is a set of ANSI C routines for sparse Cholesky factorization and update/downdate. A MATLAB interface is provided. The performance of CHOLMOD was compared with 10 other codes in a paper by Nick Gould, Yifan Hu, and Jennifer Scott. see also their raw data. Comparing BCSLIB-EXT, CHOLMOD, MA57, MUMPS, Oblio, PARDISO, SPOOLES, SPRSBLKLLT, TAUCS, UMFPACK, and WSMP, on 87 large symmetric positive definite matrices, they found CHOLMOD to be fastest for 42 of the 87 matrices. Its run time is either fastest or within 10% of the fastest for 73 out of 87 matrices. Considering just the larger matrices, it is either the fastest or within 10% of the fastest for 40 out of 42 matrices. It uses the least amount of memory (or within 10% of the least) for 35 of the 42 larger matrices. Jennifer Scott and Yifan Hu also discuss the design considerations for a sparse direct code. CHOLMOD is part of the SuiteSparse sparse matrix suite. |
PackageName | libcholmod3 |
PackageRelease | bp151.44.1 |
PackageVersion | 3.0.14 |
SHA-1 | 094E1602C2ED2D971F4DFFE045C8B8833794A520 |
SHA-256 | CDA294767969A938A52C489AE33EF1015770B3981422B65CC030408EBE3DD68E |
Key | Value |
---|---|
MD5 | 9370CBE8EB01C1036150A37FA56C84B1 |
PackageArch | x86_64 |
PackageDescription | CHOLMOD is a set of ANSI C routines for sparse Cholesky factorization and update/downdate. A MATLAB interface is provided. The performance of CHOLMOD was compared with 10 other codes in a paper by Nick Gould, Yifan Hu, and Jennifer Scott. see also their raw data. Comparing BCSLIB-EXT, CHOLMOD, MA57, MUMPS, Oblio, PARDISO, SPOOLES, SPRSBLKLLT, TAUCS, UMFPACK, and WSMP, on 87 large symmetric positive definite matrices, they found CHOLMOD to be fastest for 42 of the 87 matrices. Its run time is either fastest or within 10% of the fastest for 73 out of 87 matrices. Considering just the larger matrices, it is either the fastest or within 10% of the fastest for 40 out of 42 matrices. It uses the least amount of memory (or within 10% of the least) for 35 of the 42 larger matrices. Jennifer Scott and Yifan Hu also discuss the design considerations for a sparse direct code. CHOLMOD is part of the SuiteSparse sparse matrix suite. |
PackageName | libcholmod3 |
PackageRelease | bp153.44.4 |
PackageVersion | 3.0.14 |
SHA-1 | 1633BB64B57529B30B6B8C9DF1C42D467D70BF5B |
SHA-256 | 88CB6F19AB0E5AE5265F5F8F97B5AC2997F3E2FEC9B1833572C0B0E8C6ADEAB3 |
Key | Value |
---|---|
MD5 | 99336F50913B627DB503D5AD95ECE847 |
PackageArch | i586 |
PackageDescription | suitesparse is a collection of libraries for computations involving sparse matrices. The suitesparse-devel package contains files needed for developing applications which use the suitesparse libraries. |
PackageName | suitesparse-devel |
PackageRelease | 45.3 |
PackageVersion | 5.10.1 |
SHA-1 | 16F1FC834FBD37AA78AEF3C22FA40BD85719A89D |
SHA-256 | 73A24FDFF8845141213F516CE6EBEF01FFEA127471FFE8985553E1A2B89ECABF |
Key | Value |
---|---|
MD5 | 0EE7F85740BF35C237C50E8C439248E3 |
PackageArch | x86_64 |
PackageDescription | CHOLMOD is a set of ANSI C routines for sparse Cholesky factorization and update/downdate. A MATLAB interface is provided. The performance of CHOLMOD was compared with 10 other codes in a paper by Nick Gould, Yifan Hu, and Jennifer Scott. see also their raw data. Comparing BCSLIB-EXT, CHOLMOD, MA57, MUMPS, Oblio, PARDISO, SPOOLES, SPRSBLKLLT, TAUCS, UMFPACK, and WSMP, on 87 large symmetric positive definite matrices, they found CHOLMOD to be fastest for 42 of the 87 matrices. Its run time is either fastest or within 10% of the fastest for 73 out of 87 matrices. Considering just the larger matrices, it is either the fastest or within 10% of the fastest for 40 out of 42 matrices. It uses the least amount of memory (or within 10% of the least) for 35 of the 42 larger matrices. Jennifer Scott and Yifan Hu also discuss the design considerations for a sparse direct code. CHOLMOD is part of the SuiteSparse sparse matrix suite. |
PackageName | libcholmod3 |
PackageRelease | lp151.84.1 |
PackageVersion | 3.0.14 |
SHA-1 | 202350ADB91E2977204CB81391FD94572582A6F8 |
SHA-256 | 824E832965B9D460100E82889958D24D9D1F74161FADEA873F8A0E417E53407F |
Key | Value |
---|---|
MD5 | C10750D178068E2A59E526D304E963F8 |
PackageArch | x86_64 |
PackageDescription | suitesparse is a collection of libraries for computations involving sparse matrices. The suitesparse-devel package contains files needed for developing applications which use the suitesparse libraries. |
PackageName | suitesparse-devel |
PackageRelease | 85.70 |
PackageVersion | 5.10.1 |
SHA-1 | 2391DBF2D4A849E2C00A8E4111477510748C3EC3 |
SHA-256 | AA9DB1CE2025D4813F147D5EE18874A988C240181AA3AD3C0A34A9255F9946C7 |
Key | Value |
---|---|
MD5 | 5A1CF3E368C35B0CFCB82B2DFDC9D769 |
PackageArch | i586 |
PackageDescription | CHOLMOD is a set of ANSI C routines for sparse Cholesky factorization and update/downdate. A MATLAB interface is provided. The performance of CHOLMOD was compared with 10 other codes in a paper by Nick Gould, Yifan Hu, and Jennifer Scott. see also their raw data. Comparing BCSLIB-EXT, CHOLMOD, MA57, MUMPS, Oblio, PARDISO, SPOOLES, SPRSBLKLLT, TAUCS, UMFPACK, and WSMP, on 87 large symmetric positive definite matrices, they found CHOLMOD to be fastest for 42 of the 87 matrices. Its run time is either fastest or within 10% of the fastest for 73 out of 87 matrices. Considering just the larger matrices, it is either the fastest or within 10% of the fastest for 40 out of 42 matrices. It uses the least amount of memory (or within 10% of the least) for 35 of the 42 larger matrices. Jennifer Scott and Yifan Hu also discuss the design considerations for a sparse direct code. CHOLMOD is part of the SuiteSparse sparse matrix suite. |
PackageMaintainer | https://bugs.opensuse.org |
PackageName | libcholmod3 |
PackageRelease | 43.6 |
PackageVersion | 3.0.14 |
SHA-1 | 29EDCB6A1347B836F69615A5657B6B366E78B9E0 |
SHA-256 | 4832938A6386D1787C669ADB6D9DEFD6AED9050F53FBA774191B4AB25D1AE615 |
Key | Value |
---|---|
MD5 | E98CA68A89CAFF6204DC29430E3FDB90 |
PackageArch | x86_64 |
PackageDescription | suitesparse is a collection of libraries for computations involving sparse matrices. The suitesparse-devel package contains files needed for developing applications which use the suitesparse libraries. |
PackageName | suitesparse-devel |
PackageRelease | 45.3 |
PackageVersion | 5.10.1 |
SHA-1 | 2BB9CEA0209989AA114D5B5F9FEA82FA9567809E |
SHA-256 | 81AAABA3A6FFB718900000FA9BC333EA9598EB58CD52916EBEBD6D69202D3853 |
Key | Value |
---|---|
MD5 | E4D3005D1079F19F6C17835CECC13941 |
PackageArch | i586 |
PackageDescription | suitesparse is a collection of libraries for computations involving sparse matrices. The suitesparse-devel package contains files needed for developing applications which use the suitesparse libraries. |
PackageMaintainer | https://bugs.opensuse.org |
PackageName | suitesparse-devel |
PackageRelease | 43.6 |
PackageVersion | 5.10.1 |
SHA-1 | 30D26A05B742F0CE7179EA9792AA67ED4D860E38 |
SHA-256 | 7550F73ABA5B1C3A6A2062AB61C650831C7797BD860252506EF0E194C4D002FA |