NORA: The First Workshop on Knowledge Graphs & Agentic Systems Interplay
Abstract
Agents have experienced significant growth in recent years, largely due to the rapid technological advancements of Large Language Models (LLMs). Although these agents benefit from LLMs' advanced generation proficiency, they still suffer from catastrophic forgetting and a limited context window size compared to the agents' needs in terms of contextual information. Knowledge Graphs (KGs) are a powerful paradigm for structuring and managing connected pieces of information while unlocking deeper insights than traditional methods. Their value is immense for tasks that require context, integration, and reasoning. However, this power comes at the cost of significant upfront and ongoing investment in construction, curation, and specialized expertise. The first version of this workshop aims at analyzing and discussing emerging and novel practices, ongoing research and validated or deployed innovative solutions that showcase the growing synergy between LLMs agents and KGs.