AimandshootA neuroevolution game experiment.
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Sparse Evolutionary Artificial Neural NetworksAlways sparse. Never dense. But never say never. A repository for the Adaptive Sparse Connectivity concept and its algorithmic instantiation, i.e. Sparse Evolutionary Training, to boost Deep Learning scalability on various aspects (e.g. memory and computational time efficiency, representation and generalization power).
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Awesome Deep NeuroevolutionA collection of Deep Neuroevolution resources or evolutionary algorithms applying in Deep Learning (constantly updating)
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CephalopodsEvolving squids through neuroevolution
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ExnnAn Elixir Evolutive Neural Network framework à la G.Sher
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DarwinEvolutionary Algorithms Framework
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RadiateRadiate is a parallel genetic programming engine capable of evolving solutions to many problems as well as training learning algorithms.
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Super Mario NeatThis program evolves an AI using the NEAT algorithm to play Super Mario Bros.
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Neat PythonPython implementation of the NEAT neuroevolution algorithm
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Factor NetworkA simple factor network implementation written by JavaScript
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FlappylearningProgram learning to play Flappy Bird by machine learning (Neuroevolution)
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SharpneatSharpNEAT - Evolution of Neural Networks. A C# .NET Framework.
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NEATESTNEATEST: Evolving Neural Networks Through Augmenting Topologies with Evolution Strategy Training
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CerebrumCerebrum.js is a neural network library created in pure JavaScript.
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NeuroEvolution-Flappy-BirdA comparison between humans, neuroevolution and multilayer perceptrons playing Flapy Bird implemented in Python
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DeepHyperNEATA public python implementation of the DeepHyperNEAT system for evolving neural networks. Developed by Felix Sosa and Kenneth Stanley. See paper here: https://eplex.cs.ucf.edu/papers/sosa_ugrad_report18.pdf
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es pytorchHigh performance implementation of Deep neuroevolution in pytorch using mpi4py. Intended for use on HPC clusters
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NeatronYet another NEAT implementation
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neat-openai-gymNEAT for Reinforcement Learning on the OpenAI Gym
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NeuralFishNeuroevolution in F#
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evo-NEATA java implementation of NEAT(NeuroEvolution of Augmenting Topologies ) from scratch for the generation of evolving artificial neural networks. Only for educational purposes.
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exactEXONA: The Evolutionary eXploration of Neural Networks Framework -- EXACT, EXALT and EXAMM
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neuro-evolutionA project on improving Neural Networks performance by using Genetic Algorithms.
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Tensorflow-NeuroevolutionNeuroevolution Framework for Tensorflow 2.x focusing on modularity and high-performance. Preimplements NEAT, DeepNEAT, CoDeepNEAT, etc.
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neat-pythonPython implementation of the NEAT neuroevolution algorithm
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pacman-aiA.I. plays the original 1980 Pacman using Neuroevolution of Augmenting Topologies and Deep Q Learning
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apxr runA topology and parameter evolving universal learning network.
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