NB 30 - Addressing the AI Hallucination Problem
No Brainer · 2024-04-24 · 49 min
Episode notes
Special guest Eyelevel.ai CEO Neil Katz joins Geoff and Greg to discuss generative AI's hallucination problem. Large language models' (LLMs') propensity to hallucinate in their answers represents one of the biggest barriers to enterprise adoption. Eyelevel boasts a 95% accuracy on private instance responses by using its APIs and tools to prepare proprietary data for LLM consumption. The trio dives into the LLM marketplace, including discussions about why brands choose to implement a private instance, how the LLM market has evolved, and what causes the hallucination problem. Then, they discuss the enterprise data problem and how retrieval augmented generation (RAG) techniques still need additional help to strengthen LLM responses.
More from No Brainer
All episodes →- NB67 - The Last Rant (Final Episode)28 / 100
- NB 66: Navigating Answer Engine Optimization Approaches56 / 100
- NB65 - AI & the Future of MarTech with chiefmartec Scott Brinker47 / 100
- NB64 - AI As Culture, Not Just Code with the Artificiality Institute's Helen and Dave Edwards
- NB63 - Smart Resilience for the AI Age