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AutoGuide: Automated Generation and Selection of Context-Aware Guidelines for Large Language Model Agents

Neural Information Processing Systems

Recent advances in large language models (LLMs) have empowered AI agents capable of performing various sequential decision-making tasks. However, effectively guiding LLMs to perform well in unfamiliar domains like web navigation, where they lack sufficient knowledge, has proven to be difficult with the demonstration-based in-context learning paradigm. In this paper, we introduce a novel framework, called AutoGuide, which addresses this limitation by automatically generating context-aware guidelines from offline experiences. Importantly, each context-aware guideline is expressed in concise natural language and follows a conditional structure, clearly describing the context where it is applicable. As a result, our guidelines facilitate the provision of relevant knowledge for the agent's current decision-making process, overcoming the limitations of the conventional demonstration-based learning paradigm. Our evaluation demonstrates that AutoGuide significantly outperforms competitive baselines in complex benchmark domains, including real-world web navigation.


Just-in-time Episodic Feedback Hinter: Leveraging Offline Knowledge to Improve LLM Agents Adaptation

Nekoei, Hadi, Jaiswal, Aman, Bechard, Patrice, Shliazhko, Oleh, Ayala, Orlando Marquez, Reymond, Mathieu, Caccia, Massimo, Drouin, Alexandre, Chandar, Sarath, Lacoste, Alexandre

arXiv.org Artificial Intelligence

Large language model (LLM) agents perform well in sequential decision-making tasks, but improving them on unfamiliar domains often requires costly online interactions or fine-tuning on large expert datasets. These strategies are impractical for closed-source models and expensive for open-source ones, with risks of catastrophic forgetting. Offline trajectories offer reusable knowledge, yet demonstration-based methods struggle because raw traces are long, noisy, and tied to specific tasks. We present Just-in-time Episodic Feedback Hinter (JEF Hinter), an agentic system that distills offline traces into compact, context-aware hints. A zooming mechanism highlights decisive steps in long trajectories, capturing both strategies and pitfalls. Unlike prior methods, JEF Hinter leverages both successful and failed trajectories, extracting guidance even when only failure data is available, while supporting parallelized hint generation and benchmark-independent prompting. At inference, a retriever selects relevant hints for the current state, providing targeted guidance with transparency and traceability. Experiments on MiniWoB++, WorkArena-L1, and WebArena-Lite show that JEF Hinter consistently outperforms strong baselines, including human- and document-based hints.


AutoGuide: Automated Generation and Selection of Context-Aware Guidelines for Large Language Model Agents

Neural Information Processing Systems

Recent advances in large language models (LLMs) have empowered AI agents capable of performing various sequential decision-making tasks. However, effectively guiding LLMs to perform well in unfamiliar domains like web navigation, where they lack sufficient knowledge, has proven to be difficult with the demonstration-based in-context learning paradigm. In this paper, we introduce a novel framework, called AutoGuide, which addresses this limitation by automatically generating context-aware guidelines from offline experiences. Importantly, each context-aware guideline is expressed in concise natural language and follows a conditional structure, clearly describing the context where it is applicable. As a result, our guidelines facilitate the provision of relevant knowledge for the agent's current decision-making process, overcoming the limitations of the conventional demonstration-based learning paradigm. Our evaluation demonstrates that AutoGuide significantly outperforms competitive baselines in complex benchmark domains, including real-world web navigation.


AutoGuide: Automated Generation and Selection of State-Aware Guidelines for Large Language Model Agents

Fu, Yao, Kim, Dong-Ki, Kim, Jaekyeom, Sohn, Sungryull, Logeswaran, Lajanugen, Bae, Kyunghoon, Lee, Honglak

arXiv.org Artificial Intelligence

The primary limitation of large language models (LLMs) is their restricted understanding of the world. This poses significant difficulties for LLM-based agents, particularly in domains where pre-trained LLMs lack sufficient knowledge. In this paper, we introduce a novel framework, called AutoGuide, that bridges the knowledge gap in pre-trained LLMs by leveraging implicit knowledge in offline experiences. Specifically, AutoGuide effectively extracts knowledge embedded in offline data by extracting a set of state-aware guidelines. Importantly, each state-aware guideline is expressed in concise natural language and follows a conditional structure, clearly describing the state where it is applicable. As such, the resulting guidelines enable a principled way to provide helpful knowledge pertinent to an agent's current decision-making process. We show that our approach outperforms competitive LLM-based baselines by a large margin in sequential decision-making benchmarks.


AI in Focus: Teradyne

#artificialintelligence

Teradyne is an AI-enabler discovered in the ARK Innovation ETF. The company, founded in 1960 by two Massachusetts Institute of Technology (MIT) classmates, has a rich history. They are a leading global supplier of automation equipment for test and industrial applications. Primary lines of business are semiconductor test systems, storage and system level test systems, wireless test, and industrial automation products. The Industrial Automation businesses are exciting and of interest to us artificially intelligent investors.


There's No Such Thing as Self-Driving Cars, Not Yet Anyway » AutoGuide.com News

#artificialintelligence

As clickbait-y as that headline reads and sounds, it's true. According to Silicon Valley's claims in 2015 we should have been in cars bereft of drivers by now. We were promised an influx of fully autonomous cars by the year 2020. But as things stand today, that future is unlikely to become a reality in our lifetimes. Before we delve into the why, here is a teeny-tiny backgrounder.