add paper.txt
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paper.txt
18
paper.txt
@@ -3,14 +3,14 @@ Neuroevolution is a subfield of artificial intelligence that
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leverages evolutionary algorithms to generate and optimize
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artificial neural networks. This technique has proven to be
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successful in solving a wide range of complex problems
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across various domains. The NeuroEvolution of Augment-
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ing Topologies (NEAT) is one of the most renowned al-
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gorithms in neuroevolution. Characterized by its openness,
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it starts with minimal networks and progressively evolves
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both the topology and the weights of these networks to opti-
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mize performance. However, the acceleration techniques em-
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ployed in prevailing NEAT implementations typically rely on
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parallelism on CPUs, failing to harness the rapidly expand-
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across various domains. The NeuroEvolution of Augmenting
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Topologies (NEAT) is one of the most renowned algorithms
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in neuroevolution. Characterized by its openendedness, it
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starts with minimal networks and progressively evolves both
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the topology and the weights of these networks to optimize
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performance. However, the acceleration techniques employed
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in prevailing NEAT implementations typically rely on par-
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allelism on CPUs, failing to harness the rapidly expand-
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ing computational resources of today. To bridge this gap,
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we present NEATAX, an innovative framework that adapts
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NEAT for execution on hardware accelerators. Built on top
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@@ -24,4 +24,4 @@ minutes. These results demonstrate the potential of NEATAX
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as a scalable and efficient solution for neuroevolution tasks,
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paving the way for the future application of NEAT in more
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complex and demanding scenarios. NEATAX is available at
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https://github.com/WLS2002/neatax.
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https://github.com/WLS2002/neatax
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