The next breakthrough in AI won't come from larger models, but from smarter search infrastructure. Pinecone founder and CEO Edo Liberty is making this case at next month's TechCrunch Disrupt 2025, arguing that retrieval-augmented generation and vector databases represent the true frontier for enterprise AI applications.
Pinecone is betting that the AI revolution's next phase won't be defined by who builds the biggest model, but by who solves search best. At TechCrunch Disrupt 2025, founder and CEO Edo Liberty plans to make the case that enterprises are hitting a wall with current AI approaches, and the solution lies in better data retrieval, not more data.
Liberty's thesis directly challenges the prevailing wisdom in AI circles, where companies race to build ever-larger language models. Instead, the former Amazon AI architect argues that retrieval-augmented generation represents the real breakthrough technology for practical AI applications. His session, titled "Why the Next Frontier Is Search," comes as enterprises struggle to make AI work beyond basic chatbot implementations.
The timing couldn't be more strategic. As venture capital flows into AI infrastructure startups, Liberty's message resonates with the fundamental challenge facing enterprise AI: most companies can't effectively use the data they already have, let alone benefit from bigger models. Vector databases and high-performance search infrastructure are becoming the bottleneck that determines which AI applications succeed and which fail.
"As AI becomes more embedded in every workflow, the real differentiator isn't just the algorithm — it's how you access and use the right data at the right time," according to TechCrunch's preview. This perspective reflects a broader industry shift toward practical AI implementation over theoretical model improvements.
[Image: Edo Liberty speaking at a previous tech conference, gesturing toward a presentation slide about vector databases]
Pinecone has positioned itself at the center of this infrastructure shift, serving hundreds of thousands of developers who need to search through massive datasets in real-time. The company's vector database technology enables applications to find semantically similar content, powering everything from recommendation engines to enterprise search systems. Liberty's background building AI infrastructure at Amazon gives him unique credibility to argue that search infrastructure, not model size, determines AI success.