Snowflake is betting that the future of AI in the enterprise won’t live in a separate “AI stack” at all, but directly inside the data platforms companies already trust. That is the backdrop for its new multi‑year, $200 million partnership with OpenAI, which effectively drops OpenAI’s latest frontier models straight into Snowflake’s AI Data Cloud and hands enterprises a ready‑made way to build AI agents on top of their own data.
At a basic level, the deal makes OpenAI models such as GPT-5.2 available natively inside Snowflake’s Cortex AI and Snowflake Intelligence, the company’s layer for building applications, agents and “talk to your data” interfaces. That means a Snowflake customer does not have to ship sensitive sales logs, financial records or product telemetry out to yet another vendor just to run an AI workload; instead, they can call OpenAI from within Snowflake itself and keep data inside the governed environment they already use. Technically, this shows up as Cortex AI Functions that let teams hit OpenAI from plain SQL, whether they are working with rows and columns, long documents, images or audio files. For data teams, that’s a subtle but important shift: instead of learning new tools, they extend the language they already live in every day.
Snowflake and OpenAI are pitching this squarely as an “AI agents on your data” story, not just a bolt‑on chatbot. The companies say customers will be able to build custom agents that can reason over governed data and then actually take actions across connected tools and apps, all running inside Cortex AI. In practice, that could be anything from an internal assistant that answers nuanced questions about quarterly performance and then drafts follow‑up emails, to a support agent that looks across a customer’s contract history, tickets and product usage before deciding how to respond. Because those agents run where the data already lives, enterprises can lean on Snowflake’s existing security, compliance and governance controls instead of reinventing that stack from scratch for AI.
Both companies are keen to stress the trust angle. Snowflake calls itself the “platform for the AI era” and points out that more than 12,600 customers already use its AI Data Cloud as the system of record for critical information. OpenAI, for its part, now claims over one million business customers worldwide and has been steadily lining up marquee enterprise deals with names like Walmart, Target, PayPal, Morgan Stanley and others; Snowflake is being framed as an extension of that play into the heart of the data layer. By wiring OpenAI directly into Snowflake across all three major hyperscale clouds, the two are trying to remove one of the biggest friction points for enterprises flirting with generative AI: how to get value from models without violating internal risk rules around data movement.
Real‑world customers are already being wheeled out as proof points. Canva, which leans heavily on AI in its design tools, says Snowflake has become “foundational” to how it manages and activates data, and that bringing OpenAI’s models into Cortex AI should help it experiment faster without sacrificing security or performance. Wearable maker WHOOP talks about rolling out Snowflake Intelligence and Cortex‑based agents as a “secure and governed way” to analyze data and make decisions, and argues that access to OpenAI models within that setup will give those agents stronger reasoning and analysis capabilities in everyday workflows. These early stories all lean on the same theme: AI is only useful if it’s close enough to the data and processes people already use that it becomes a daily tool, not a science project.
Under the hood, the partnership is also about co‑innovation and not just API calls. Snowflake and OpenAI say their engineering teams will work closely on new features that tie into OpenAI’s Apps SDK, AgentKit and broader API surface, with an eye toward shared enterprise workflows. That could mean, for example, pre‑built blueprints for common tasks like financial reconciliation, customer‑journey analysis or supply‑chain monitoring, all powered by OpenAI models and grounded in Snowflake data. On the business side, the companies are committing to joint go‑to‑market efforts, positioning this as a first‑party integration rather than a loose marketplace listing.
It’s also worth noting where this sits in the wider Snowflake strategy. The company has been aggressively turning its cloud data warehouse into an AI platform, offering its own Arctic LLM alongside models from Anthropic, Meta, Mistral and others, and recently signed another $200 million partnership with Anthropic to bring Claude deeper into Cortex AI. With OpenAI now a “key model capability” inside Snowflake, customers are effectively getting a menu of frontier models under one roof, all pointed at the same governed data estate. For enterprises, that multi‑model approach matters: they can match tasks to different models and swap them out over time without rebuilding their entire data pipeline.
For OpenAI, the deal reinforces a clear enterprise strategy: don’t just sell standalone tools like ChatGPT Enterprise, embed models wherever businesses already work and store information. Snowflake will continue using ChatGPT Enterprise internally to help its own employees make decisions faster and streamline workflows, while exposing OpenAI models outward to its customer base. As cloud data platforms become a central battleground for AI vendors, landing a flagship 200 million dollar agreement with one of the most widely used data clouds is as much a signal to the market as it is a revenue line.
Put together, the Snowflake–OpenAI tie‑up is less about a single press‑release number and more about a directional bet: that enterprise AI will be won by whoever can best blend powerful general‑purpose models with tightly governed, deeply contextual corporate data. This partnership tries to collapse that gap by letting companies talk to their own information in natural language, build agents that act on it, and do it all without moving data to unfamiliar systems. Whether it becomes a template for how the rest of the industry wires AI into the data layer is the part to watch next.
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