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Nemo: an Evolutionary and Population Genetics Programming Framework

Overview
Journal Bioinformatics
Specialty Biology
Date 2006 Aug 3
PMID 16882649
Citations 61
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Abstract

Unlabelled: Nemo is an individual-based, genetically explicit and stochastic population computer program for the simulation of population genetics and life-history trait evolution in a metapopulation context. It comes as both a C++ programming framework and an executable program file. Its object-oriented programming design gives it the flexibility and extensibility needed to implement a large variety of forward-time evolutionary models. It provides developers with abstract models allowing them to implement their own life-history traits and life-cycle events. Nemo offers a large panel of population models, from the Island model to lattice models with demographic or environmental stochasticity and a variety of already implemented traits (deleterious mutations, neutral markers and more), life-cycle events (mating, dispersal, aging, selection, etc.) and output operators for saving data and statistics. It runs on all major computer platforms including parallel computing environments.

Availability: The source code, binaries and documentation are available under the GNU General Public License at http://nemo2.sourceforge.net.

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