Exa Labs Inc., the San Francisco–based startup building a search engine optimized for artificial intelligence models rather than humans, just closed a polished $85 million Series B funding round valuing the company at around $700 million. The round was led by Benchmark, with contributions from Nvidia, Lightspeed Venture Partners, and Y Combinator. Exa’s platform offers sub‑450 ms latency, the ability to return full page content (not just URLs), customizable query responses, and privacy‑friendly zero data retention—features tailored for AI systems that query the web at high volume and speed. Its proprietary infrastructure includes a vector database storing embeddings compressed into datasets for efficient search. With the new capital, Exa plans to scale up its indexing infrastructure, quintuple its GPU cluster, and expand its team across engineering, operations, and go‑to‑market roles.
Sources: The Keyword, SiliconANGLE
Key Takeaways
– AI-first search is emerging: Exa is building a search engine designed specifically for AI agents, with features like full-page content, low latency, and enterprise-grade privacy absent in human-oriented search tools.
– Strong investor confidence: The $85 million Series B, led by Benchmark and joined by heavyweights like Nvidia, indicates serious momentum and belief in Exa’s vision of “search for AI.”
– Aggressive scaling ahead: Exa plans to use the funds to significantly amplify its technical infrastructure—especially GPU compute and indexing capabilities—and hire across teams to support its rapid growth.
In-Depth
Exa Labs is charting a bold course: building the search infrastructure that artificial intelligence actually needs. While Google and other search engines cater primarily to human behavior—driven by clicks, SEO, and ad revenue—Exa is architected for AI. Its vector-database-backed search offers not just links but rich, full-page content suitable for AI comprehension—and it returns results in under 450 milliseconds. That speed is critical when AI chains multiple tool calls in a single workflow.
Backing this vision, Benchmark leads the $85 million Series B round, which also includes support from Nvidia, Lightspeed, and Y Combinator—all signaling high confidence. Exa now sits on a $700 million valuation, marking a tenfold increase since its last round.
With this capital, the company plans to dramatically amplify its compute resources—expanding its GPU cluster fivefold—and scale its indexing tech to capture more of the web’s content.
Customization and privacy are core to Exa’s offering. Enterprises can tailor queries, run classifier algorithms, and access Websets—a tool for large-scale compiled datasets verified by AI agents. Plus, since Exa built its system from the ground up, it provides zero data retention—something traditional engines can’t promise.
In sum, Exa is leaning into a future where AI systems, not human users, dominate search usage. With serious funding and a sharp technical vision, the company is positioning itself to be the search backbone of the AI era.

