Source: haskell-statistics Maintainer: Debian Haskell Group Uploaders: Joachim Breitner , Priority: optional Section: haskell Rules-Requires-Root: no Build-Depends: cdbs, debhelper (>= 10), ghc (>= 8), ghc-prof, haskell-devscripts (>= 0.13), libghc-aeson-dev (>= 0.6.0.0), libghc-aeson-prof, libghc-async-dev (>= 2.2.2), libghc-async-dev (<< 2.3), libghc-async-prof, libghc-base-orphans-dev (>= 0.6), libghc-base-orphans-dev (<< 0.9), libghc-base-orphans-prof, libghc-data-default-class-dev (>= 0.1.2), libghc-data-default-class-prof, libghc-dense-linear-algebra-dev (>= 0.1), libghc-dense-linear-algebra-dev (<< 0.2), libghc-dense-linear-algebra-prof, libghc-math-functions-dev (>= 0.3), libghc-math-functions-prof, libghc-monad-par-dev (>= 0.3.4), libghc-monad-par-prof, libghc-mwc-random-dev (>= 0.13.0.0), libghc-mwc-random-prof, libghc-primitive-dev (>= 0.3), libghc-primitive-prof, libghc-vector-algorithms-dev (>= 0.4), libghc-vector-algorithms-prof, libghc-vector-binary-instances-dev (>= 0.2.1), libghc-vector-binary-instances-prof, libghc-vector-th-unbox-dev, libghc-vector-th-unbox-prof, Build-Depends-Indep: ghc-doc, libghc-aeson-doc, libghc-async-doc, libghc-base-orphans-doc, libghc-data-default-class-doc, libghc-dense-linear-algebra-doc, libghc-math-functions-doc, libghc-monad-par-doc, libghc-mwc-random-doc, libghc-primitive-doc, libghc-vector-algorithms-doc, libghc-vector-binary-instances-doc, libghc-vector-th-unbox-doc, Standards-Version: 4.4.0 Homepage: https://github.com/bos/statistics Vcs-Browser: https://salsa.debian.org/haskell-team/DHG_packages/tree/master/p/haskell-statistics Vcs-Git: https://salsa.debian.org/haskell-team/DHG_packages.git [p/haskell-statistics] Package: libghc-statistics-dev Architecture: any Depends: ${haskell:Depends}, ${misc:Depends}, ${shlibs:Depends}, Recommends: ${haskell:Recommends}, Suggests: ${haskell:Suggests}, Provides: ${haskell:Provides}, Description: A library of statistical types, data, and functions${haskell:ShortBlurb} This library provides a number of common functions and types useful in statistics. Our focus is on high performance, numerical robustness, and use of good algorithms. Where possible, we provide references to the statistical literature. . The library's facilities can be divided into three broad categories: . Working with widely used discrete and continuous probability distributions. (There are dozens of exotic distributions in use; we focus on the most common.) . Computing with sample data: quantile estimation, kernel density estimation, bootstrap methods, regression and autocorrelation analysis. . Random variate generation under several different distributions. . ${haskell:Blurb} Package: libghc-statistics-prof Architecture: any Depends: ${haskell:Depends}, ${misc:Depends}, ${shlibs:Depends}, Recommends: ${haskell:Recommends}, Suggests: ${haskell:Suggests}, Provides: ${haskell:Provides}, Description: A library of statistical types, data, and functions${haskell:ShortBlurb} This library provides a number of common functions and types useful in statistics. Our focus is on high performance, numerical robustness, and use of good algorithms. Where possible, we provide references to the statistical literature. . The library's facilities can be divided into three broad categories: . Working with widely used discrete and continuous probability distributions. (There are dozens of exotic distributions in use; we focus on the most common.) . Computing with sample data: quantile estimation, kernel density estimation, bootstrap methods, and autocorrelation analysis. . Random variate generation under several different distributions. . ${haskell:Blurb} Package: libghc-statistics-doc Architecture: all Section: doc Depends: ${haskell:Depends}, ${misc:Depends}, Recommends: ${haskell:Recommends}, Suggests: ${haskell:Suggests}, Description: A library of statistical types, data, and functions${haskell:ShortBlurb} This library provides a number of common functions and types useful in statistics. Our focus is on high performance, numerical robustness, and use of good algorithms. Where possible, we provide references to the statistical literature. . The library's facilities can be divided into three broad categories: . Working with widely used discrete and continuous probability distributions. (There are dozens of exotic distributions in use; we focus on the most common.) . Computing with sample data: quantile estimation, kernel density estimation, bootstrap methods, and autocorrelation analysis. . Random variate generation under several different distributions. . ${haskell:Blurb}