Key Takeaways
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• Snowflake enters a $200M deal with Anthropic to integrate Claude models directly into its platform
• Q3 loss narrowed to $294M as revenue rose 29% to $1.21B, beating estimates
• Adoption of Snowflake’s enterprise AI agent was the fastest in company history
• Despite strong results, shares fell 8.6% in late trading on forward guidance and market expectations
What Happened?
Snowflake announced a $200 million partnership with Anthropic to bring Claude’s large AI models into its cloud data platform, enabling enterprises to run advanced AI agents directly on their proprietary data. The deal includes a joint go-to-market push to accelerate deployment of AI agents across major global enterprises. Alongside the announcement, Snowflake posted a narrower third-quarter loss of $294 million—down from $324 million a year earlier—as revenue climbed 29% to $1.21 billion, beating Wall Street forecasts. Adjusted EPS came in at $0.35, also topping expectations. Product revenue, Snowflake’s core driver, remained strong, supported by rapid adoption of its enterprise AI agent.
Why It Matters?
The Anthropic deal strengthens Snowflake’s position in the accelerating enterprise AI race, giving customers access to cutting-edge generative models within their secure data environments. This is strategically important as businesses continue prioritizing governance, privacy, and in-house model integration. The move also signals Snowflake’s intention to compete more aggressively with rivals like Databricks and traditional hyperscalers. Despite the positive results, the stock fell in after-hours trading—suggesting investors may be concerned about the cost of AI investments, guidance relative to expectations, or broader volatility in AI-related equities. Still, the partnership positions Snowflake as a key platform for enterprise-grade AI deployment in 2026 and beyond.
What’s Next?
Snowflake expects Q4 product revenue of roughly $1.2 billion, ahead of analyst estimates. The success of the Anthropic integration and continued adoption of its enterprise AI agent will be key metrics for investors. Snowflake will also face increasing pressure to show operating leverage as AI-related spending grows. In the coming quarters, watch for: enterprise rollout updates, margin trends, pricing dynamics tied to AI workloads, and competitive responses from Databricks, AWS, and Google Cloud. If Snowflake can convert AI enthusiasm into sustained, high-margin product revenue, it could solidify itself as one of the most critical platforms for the next wave of enterprise automation.












