Skip To Content
Toggle navigation
Packages
Upload
Statistics
Documentation
Downloads
Blog
Sign in
Advanced search filters
Frameworks
Include compatible frameworks
Framework Filter Mode
ALL
ANY
.NET
net8.0
net7.0
net6.0
net5.0
.NET Core
netcoreapp3.1
netcoreapp3.0
netcoreapp2.2
netcoreapp2.1
netcoreapp2.0
netcoreapp1.1
netcoreapp1.0
.NET Standard
netstandard2.1
netstandard2.0
netstandard1.6
netstandard1.5
netstandard1.4
netstandard1.3
netstandard1.2
netstandard1.1
netstandard1.0
.NET Framework
net481
net48
net472
net471
net47
net462
net461
net46
net452
net451
net45
net40
net35
net30
net20
Package type
All types
Dependency
.NET tool
Template
Options
Include prerelease
4 packages returned for Tags:"genetic-
algorithms"
Sort by
Relevance
Downloads
Recently updated
GeneticSharp
by:
g1acomell1
.NET 6.0
297,337 total downloads
last updated
1/29/2023
Latest version:
3.1.4
genetic-algorithms
geneticsharp
genetic
algorithms
A fast, extensible, multi-platform and multithreading C# Genetic Algorithm library that simplifies the development of applications using Genetic Algorithms (GAs).
GeneticSharp.
Extensions
by:
g1acomell1
.NET 6.0
20,923 total downloads
last updated
1/29/2023
Latest version:
3.1.4
genetic-algorithms
geneticsharp
genetic
algotithms
Extensions for GeneticSharp: a fast, extensible, multi-platform and multithreading C# Genetic Algorithm library that simplifies the development of applications using Genetic Algorithms (GAs).
GeneticSharp.
Templates
by:
g1acomell1
6,655 total downloads
last updated
1/29/2023
Latest version:
3.1.4
genetic-algorithms
geneticsharp
genetic
algorithms
dotnet-new
templates
blazor
unity3d
A set of templates written for the GeneticSharp: TSP Blazor, basic console application, TSP console application and TSP Unity3d. * Install the templates with command: dotnet new -i...
More information
RdCorp.
EvoSharp
by:
rdoskoch
.NET 5.0
.NET Core 3.0
.NET Standard 2.1
648 total downloads
last updated
4/29/2023
Latest version:
1.0.3.1
genetic-algorithms
genetic
algorithms
EvoSharp is a powerful tool for solving complex optimization problems through the use of evolutionary algorithms. The library includes a variety of genetic operators, such as selection, crossover, and...
More information