Snowflake (NYSE:SNOW) just made a quiet but intriguing move that could reshape how enterprises handle observability at scale. On January 8, 2026, the cloud data giant announced its plan to acquire Observe, a startup specializing in AI-powered observability. The deal terms haven’t been disclosed, but the implications are already sparking debate in tech circles. This isn’t just another tuck-in acquisition. It’s a strategic play to position Snowflake at the heart of enterprise observability — a critical piece of modern cloud architecture — as AI goes mainstream.
Snowflake is already riding high. Product revenue hit $1.16 billion in Q3 FY26, up 29% year-over-year. AI is powering that growth. In fact, over 7,300 customers used Snowflake’s AI tools weekly last quarter, and AI drove 50% of new bookings. Now, with Snowflake acquires Observe AI making headlines, the company’s looking to stitch together a broader data lifecycle offering, with observability as a cornerstone. Let’s dive into what Snowflake gains from this move.
Unified Data & Observability Stack Could Drive Efficiency Gains
When it comes to modern enterprise infrastructure, data silos are the enemy. Snowflake’s core value prop has always been about eliminating these silos — centralizing structured and unstructured data in its AI Data Cloud. The Snowflake acquires Observe AI news signals a potential step further in this mission: integrating telemetry data like logs, traces, and metrics directly into the same data environment.
This matters because observability has become essential, not optional. Applications now span multiple clouds, containers, and services. Monitoring them requires constant analysis of external outputs to infer internal system health. Observe’s platform was purpose-built for this — turning that sprawl into signal. By ingesting telemetry data at scale, it helps teams troubleshoot faster, improve reliability, and automate response.
Now imagine this observability data landing natively in Snowflake. Instead of having to ETL logs from third-party tools, users could run real-time queries using SQL or even natural language. Snowflake Intelligence could build agentic AI capabilities directly on top — automating root-cause analysis or anomaly detection. That’s not just additive; it could be transformative in reducing time-to-resolution and cutting costs.
From an efficiency lens, this integration removes duplicate infrastructure. Customers wouldn’t need to maintain separate storage and processing pipelines for observability data. In short, Snowflake acquires Observe AI could turn Snowflake into a full-stack data backbone — from business analytics to system telemetry — reducing friction and speeding insights across the board.
AI Workloads Need Observability: A Strategic Synergy
Snowflake isn’t just dabbling in AI — it’s diving headfirst. The company hit a $100 million AI revenue run rate in Q3 FY26, a quarter ahead of schedule. Cortex AI, Snowflake Intelligence, and vertical-specific tools are gaining real traction. But as enterprises deploy more AI workloads in production, observability becomes even more mission-critical.
AI systems are probabilistic, not deterministic. They behave differently under different conditions. Monitoring a database query is straightforward. Monitoring a GenAI agent handling 8.5 full-time staff-equivalent workloads, like at TS Imagine, is a different beast. That’s where Snowflake acquires Observe AI makes perfect sense.
Observe brings AI-native observability to the table. It wasn’t bolted on later — it was built from the ground up to support distributed, ephemeral workloads. That includes the ability to trace system behavior over time, spot emerging failures, and even provide actionable remediation paths. For Snowflake, this is critical infrastructure.
With customers like Fanatics using Snowflake to orchestrate billions of fan data points, the cost of an outage — or even latency — can be huge. The ability to diagnose and fix issues across a hybrid AI + data pipeline becomes a competitive advantage.
Incorporating Observe into Snowflake’s native stack allows tighter AI feedback loops. It lets customers close the “observation-action” gap. And since Cortex AI and Snowflake Intelligence are increasingly being pitched as turnkey AI platforms, it boosts Snowflake’s credibility as a full-stack provider — not just a data warehouse in the cloud.
Data Retention & Cost Management Get A Lift
Observability tools are notorious for two things: ingesting massive volumes of data and running up massive bills. Logs, traces, and metrics generate terabytes or even petabytes of telemetry. Most observability solutions retain only a fraction of that — partly due to cost, partly due to complexity. But Snowflake, with its consumption-based model and scalable storage, is betting it can do better.
In announcing the deal, Snowflake emphasized the ability to “ingest and retain 100% of telemetry data at lower cost.” That’s a big claim, and it goes to the heart of what Snowflake acquires Observe AI could mean. It’s not just about AI-powered troubleshooting. It’s about economic observability.
Snowflake already allows customers to scale compute and storage independently — a major advantage when it comes to large-volume ingestion. By integrating Observe, Snowflake could help enterprises store more, query more, and spend less per byte. This could open up new pricing models, such as tiered retention or AI-based summarization of low-value logs.
From a product perspective, Snowflake might also offer dynamic indexing or compression tuned specifically for observability data. That would reduce storage bloat while maintaining query performance. And if Snowflake leverages its AI muscle to auto-triage telemetry, customers could focus only on high-priority signals.
This pricing and performance angle will resonate with IT leaders under pressure to do more with less. In a world where observability costs can spiral, the promise of predictability and scalability — baked into the Snowflake platform — might prove compelling.
Ecosystem Expansion & Competitive Moats Strengthen
Snowflake isn’t just a product — it’s a platform play. With partnerships ranging from SAP and Workday to Palantir and Anthropic, it’s trying to be the “Switzerland” of enterprise AI and data. The phrase Snowflake acquires Observe AI doesn’t just expand its product suite. It deepens its ecosystem.
Consider the integrations. Observe already works with many of the SaaS platforms Snowflake users rely on. Bringing those hooks in-house gives Snowflake tighter control over how data flows into its ecosystem. That matters as it pushes to become the single pane of glass for enterprise data.
There’s also a go-to-market advantage. Snowflake added over 600 new customers last quarter, and many of them are early in their data journey. Observability might be the “wedge” product that gets them started. Instead of pitching analytics or AI upfront, Snowflake could offer value in a more immediate, tangible way: helping customers fix what’s broken in their stack.
Long term, this acquisition could make it harder for rivals like Datadog or Splunk to penetrate accounts where Snowflake owns both the data and the observability layer. And with systems integrators like Accenture launching Snowflake-focused business groups, Snowflake acquires Observe AI also plays well with partners looking to bundle services and accelerate digital transformation.
Put simply: this isn’t just about product. It’s about platform gravity. And Observe could be the next magnet pulling customers deeper into Snowflake’s orbit.
Final Thoughts: Synergy or Overreach? The Jury’s Still Out
So what does all this mean for Snowflake? The synergies are obvious: tighter AI integration, cost-efficient telemetry storage, and deeper customer engagement. The Snowflake acquires Observe AI move fits squarely into its narrative of becoming the data platform of choice for the AI-first enterprise. It could unlock significant operational and financial value — if executed well.
But acquisitions also carry risk. Observe, while technically strong, is still a startup. Integrating it into Snowflake’s ecosystem — without adding complexity or bloat — will require careful product alignment. There’s also competitive risk: entrenched players in observability like Datadog won’t cede ground easily.
Valuation is another consideration. Snowflake trades at premium LTM multiples: over 17x sales and nearly 25x gross profit. EBITDA and EBIT multiples remain negative, reflecting its growth-first strategy. While the company raised its FY26 guidance and posted strong metrics — including 125% net revenue retention — the bar is high.
Whether this deal creates long-term shareholder value depends on execution. Snowflake’s ambitions are big. The Snowflake acquires Observe AI headline could be the first step toward realizing them — or a distraction from its core focus. Investors and customers alike should watch this closely, but not jump to conclusions just yet.
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