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software [2016/08/19 21:00]
Jaroslaw Zola
software [2019/01/11 09:42]
Jaroslaw Zola
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 Visit [[https://gitlab.com/groups/SCoRe-Group|our GitLab repository]] to see latest software development activities! Visit [[https://gitlab.com/groups/SCoRe-Group|our GitLab repository]] to see latest software development activities!
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 +  * [[https://gitlab.com/SCoRe-Group/SABNAtk|SABNAtk]] Toolkit for fast counting over categorical data. This toolkit can be used to power any application that involves counting of data configurations, e.g., to estimate likelihoods, evaluate model scoring functions, etc.
   * [[https://gitlab.com/SCoRe-Group/SABNA-Release|SABNA]] Scalable Accelerated Bayesian Network Analytics. This very actively developed software toolkit provides a set of sequential and parallel tools for structure learning of Bayesian networks. It is designed to provide exact solutions on large-scale data in acceptable time limits.   * [[https://gitlab.com/SCoRe-Group/SABNA-Release|SABNA]] Scalable Accelerated Bayesian Network Analytics. This very actively developed software toolkit provides a set of sequential and parallel tools for structure learning of Bayesian networks. It is designed to provide exact solutions on large-scale data in acceptable time limits.
   * [[http://www.jzola.org/elastic|ELaSTIC]] is a software suite for a rapid identification and clustering of similar sequences from large-scale biological sequence collections. At its core is an efficient MinHash-based strategy to detect similar sequence pairs without aligning all sequences against each other. It is designed to work with data sets consisting of millions of DNA/RNA or amino acid strings, using various alignment criteria.    * [[http://www.jzola.org/elastic|ELaSTIC]] is a software suite for a rapid identification and clustering of similar sequences from large-scale biological sequence collections. At its core is an efficient MinHash-based strategy to detect similar sequence pairs without aligning all sequences against each other. It is designed to work with data sets consisting of millions of DNA/RNA or amino acid strings, using various alignment criteria. 
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