add paper.txt

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wls2002
2023-07-27 00:52:30 +08:00
parent f61050d395
commit 809779d498

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