agentga
Agentga, sometimes written as AgentGA, refers to a design paradigm in artificial intelligence where autonomous agents incorporate genetic algorithms to evolve decision policies, behaviors, or strategies over time within dynamic environments. The term is used in academic discussions and some industry contexts to describe the integration of evolutionary search with agent-based systems.
In typical agentga implementations, a population of candidate policies or behavior rules is encoded as chromosomes.
Variants of agentga often combine genetic algorithms with other learning approaches. For example, neuroevolutionally inspired setups
Applications of agentga span robotics, game artificial intelligence, autonomous systems, logistics, and other domains where agents