HERAKLES: Hierarchical Skill Compilation for Open-ended LLM Agents
Thomas Carta, Cl\'ement Romac, Loris Gaven, Pierre-Yves Oudeyer, Olivier Sigaud, Sylvain Lamprier

TL;DR
HERAKLES introduces a hierarchical framework using a large language model to dynamically compile and expand subgoals, improving open-ended agent learning efficiency and adaptability in complex environments.
Contribution
It presents a novel hierarchical skill compilation method that enables continuous goal expansion and efficient learning in open-ended scenarios using LLMs.
Findings
Scales effectively with goal complexity
Improves sample efficiency through skill compilation
Enables robust adaptation to new challenges
Abstract
Open-ended AI agents need to be able to learn efficiently goals of increasing complexity, abstraction and heterogeneity over their lifetime. Beyond sampling efficiently their own goals, autotelic agents specifically need to be able to keep the growing complexity of goals under control, limiting the associated growth in sample and computational complexity. To adress this challenge, recent approaches have leveraged hierarchical reinforcement learning (HRL) and language, capitalizing on its compositional and combinatorial generalization capabilities to acquire temporally extended reusable behaviours. Existing approaches use expert defined spaces of subgoals over which they instantiate a hierarchy, and often assume pre-trained associated low-level policies. Such designs are inadequate in open-ended scenarios, where goal spaces naturally diversify across a broad spectrum of difficulties. We…
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Taxonomy
TopicsNatural Language Processing Techniques · Semantic Web and Ontologies · Multi-Agent Systems and Negotiation
