Hallucination-free zone: LLMs + Graph Databases got your back!
February 21 @ 6:00 pm - 7:00 pm CST
IEEE Computer Society Chicago and IEEE Chicago are pleased to co-host this event to our members along with our host ACM Chicago. Jennifer Reif from Neo4J will be speaking on hallucination in LLMs and how graph databases and AI can help eliminate LLM hallucinations. Register for this online event at https://acm-org.zoom.us/webinar/register/WN_kzF2NXaFRZOhi2caRuVKXA
Hallucinations refer to the generation of contextually plausible but incorrect or fabricated information, demonstrating the model’s capacity to produce imaginative and contextually coherent yet inaccurate outputs.
Large Language Models (LLMs) can provide answers that sound realistic to almost any question, even if those answers are entirely made up. With a Graph Database, you can anchor an LLM in reality and mitigate the risk of generating false information or unauthorized access to sensitive data. This prevents the model from producing inaccurate responses and ensures a more reliable and secure outcome.
A graph database uses graph structures with nodes, edges, and properties to represent and store data, facilitating efficient querying and analysis of relationships in interconnected datasets, commonly used for applications such as knowledge graphs, fraud detections, supply.
This presentation will show you the benefits of graph databases over regular databases and how to use AI tools to eliminate LLM hallucinations, enforce security, and improve accuracy. We will also discuss why a vector index can provides better, smarter, faster results than a pure vector database.
Co-hosted by NJ Coast Instrumentation & Measurements / Computer Joint Chapter.
Collaborating with Computer Society Region 1 and Region 2 Chapters Coordinator.
Collaborating with Region 1 Professional Activities Webinars.