Improving Language Model Prompting In Support Of Semi-autonomous Task Learning · The Large Language Model Bible Contribute to LLM-Bible

Improving Language Model Prompting In Support Of Semi-autonomous Task Learning

Kirk James R., Wray Robert E., Lindes Peter, Laird John E.. Arxiv 2022

[Paper]    
Agentic Prompting Reinforcement Learning

Language models (LLMs) offer potential as a source of knowledge for agents that need to acquire new task competencies within a performance environment. We describe efforts toward a novel agent capability that can construct cues (or “prompts”) that result in useful LLM responses for an agent learning a new task. Importantly, responses must not only be “reasonable” (a measure used commonly in research on knowledge extraction from LLMs) but also specific to the agent’s task context and in a form that the agent can interpret given its native language capacities. We summarize a series of empirical investigations of prompting strategies and evaluate responses against the goals of targeted and actionable responses for task learning. Our results demonstrate that actionable task knowledge can be obtained from LLMs in support of online agent task learning.

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