Snowflake Tames AI Agents with Cortex Sense

Snowflake's new Cortex Sense aims to solve the context problem for AI agents, improving accuracy and reducing costs by learning from enterprise data signals.

7 min read
Diagram illustrating Snowflake Cortex Sense architecture and data flow for AI agents.
Snowflake's Cortex Sense provides AI agents with grounded context from enterprise data.· Snowflake

Snowflake is introducing Cortex Sense, a new capability designed to give AI agents reliable context from your company's data. Think of it as a continuously updated encyclopedia for your business's internal information, moving beyond static, manually curated documentation.

Visual TL;DR. AI Agents Lack Context solves Snowflake Cortex Sense. Outdated Documentation addresses Snowflake Cortex Sense. Snowflake Cortex Sense by Learns from Data Signals. Learns from Data Signals integrates Works with Governed Data. Snowflake Cortex Sense enables Improved AI Accuracy. Improved AI Accuracy leading to Reduced AI Costs.

Related startups

  1. AI Agents Lack Context: AI agents struggle with understanding enterprise data signals
  2. Outdated Documentation: Manual definitions are often outdated and incomplete for AI
  3. Snowflake Cortex Sense: New capability to provide reliable context from enterprise data
  4. Learns from Data Signals: Analyzes existing business signals for automatic understanding
  5. Works with Governed Data: Acts as authoritative source alongside semantic views
  6. Improved AI Accuracy: Reduces guessing and incorrect answers from AI agents
  7. Reduced AI Costs: More efficient AI agent operations and less rework
Visual TL;DR
Visual TL;DR, startuphub.ai AI Agents Lack Context solves Snowflake Cortex Sense. Outdated Documentation addresses Snowflake Cortex Sense. Snowflake Cortex Sense by Learns from Data Signals. Snowflake Cortex Sense enables Improved AI Accuracy solves addresses by enables AI Agents Lack Context Outdated Documentation Snowflake Cortex Sense Learns from Data Signals Improved AI Accuracy From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai AI Agents Lack Context solves Snowflake Cortex Sense. Outdated Documentation addresses Snowflake Cortex Sense. Snowflake Cortex Sense by Learns from Data Signals. Snowflake Cortex Sense enables Improved AI Accuracy solves addresses by enables AI Agents LackContext OutdatedDocumentation Snowflake CortexSense Learns from DataSignals Improved AIAccuracy From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai AI Agents Lack Context solves Snowflake Cortex Sense. Outdated Documentation addresses Snowflake Cortex Sense. Snowflake Cortex Sense by Learns from Data Signals. Snowflake Cortex Sense enables Improved AI Accuracy solves addresses by enables AI Agents Lack Context AI agents struggle with understandingenterprise data signals Outdated Documentation Manual definitions are often outdated andincomplete for AI Snowflake Cortex Sense New capability to provide reliable contextfrom enterprise data Learns from Data Signals Analyzes existing business signals forautomatic understanding Improved AI Accuracy Reduces guessing and incorrect answersfrom AI agents From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai AI Agents Lack Context solves Snowflake Cortex Sense. Outdated Documentation addresses Snowflake Cortex Sense. Snowflake Cortex Sense by Learns from Data Signals. Snowflake Cortex Sense enables Improved AI Accuracy solves addresses by enables AI Agents LackContext AI agents strugglewith understandingenterprise data… OutdatedDocumentation Manual definitionsare often outdatedand incomplete for… Snowflake CortexSense New capability toprovide reliablecontext from… Learns from DataSignals Analyzes existingbusiness signalsfor automatic… Improved AIAccuracy Reduces guessingand incorrectanswers from AI… From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai AI Agents Lack Context solves Snowflake Cortex Sense. Outdated Documentation addresses Snowflake Cortex Sense. Snowflake Cortex Sense by Learns from Data Signals. Learns from Data Signals integrates Works with Governed Data. Snowflake Cortex Sense enables Improved AI Accuracy. Improved AI Accuracy leading to Reduced AI Costs solves addresses by integrates enables leading to AI Agents Lack Context AI agents struggle with understandingenterprise data signals Outdated Documentation Manual definitions are often outdated andincomplete for AI Snowflake Cortex Sense New capability to provide reliable contextfrom enterprise data Learns from Data Signals Analyzes existing business signals forautomatic understanding Works with Governed Data Acts as authoritative source alongsidesemantic views Improved AI Accuracy Reduces guessing and incorrect answersfrom AI agents Reduced AI Costs More efficient AI agent operations andless rework From startuphub.ai · The publishers behind this format
Visual TL;DR, startuphub.ai AI Agents Lack Context solves Snowflake Cortex Sense. Outdated Documentation addresses Snowflake Cortex Sense. Snowflake Cortex Sense by Learns from Data Signals. Learns from Data Signals integrates Works with Governed Data. Snowflake Cortex Sense enables Improved AI Accuracy. Improved AI Accuracy leading to Reduced AI Costs solves addresses by integrates enables leading to AI Agents LackContext AI agents strugglewith understandingenterprise data… OutdatedDocumentation Manual definitionsare often outdatedand incomplete for… Snowflake CortexSense New capability toprovide reliablecontext from… Learns from DataSignals Analyzes existingbusiness signalsfor automatic… Works withGoverned Data Acts asauthoritativesource alongside… Improved AIAccuracy Reduces guessingand incorrectanswers from AI… Reduced AI Costs More efficient AIagent operationsand less rework From startuphub.ai · The publishers behind this format

Traditional methods of documenting enterprise data, like manual definitions, are often outdated and incomplete. Snowflake's own product data team found that even with efforts like Semantic View Autopilot, less than 5% of their tables were properly documented. This leaves AI agents guessing or providing incorrect answers when faced with new or undocumented data.

Cortex Sense is built to work alongside existing governed definitions, like semantic views, acting as the authoritative source where they exist. For the vast majority of data not covered by these curated views, Cortex Sense will automatically build its understanding.

It achieves this by analyzing signals your business already generates. This includes past analyst queries, data transformation models, and metrics from business intelligence tools, often ingested via Snowflake Horizon Connectors.

The company claims this approach dramatically boosts accuracy. Benchmarks on internal Snowflake data showed AI accuracy jumping from around 25% without context to significantly higher levels when using Cortex Sense.

A key feature is its self-correcting loop. Cortex Sense identifies gaps and conflicts in its own knowledge, flagging them for human review rather than providing potentially wrong answers confidently. This contrasts with simpler retrieval systems.

When faced with conflicting definitions, such as multiple ways to calculate daily active users, Cortex Sense surfaces the ambiguity and asks for human clarification. It ranks information sources based on relevance, authority, popularity, and freshness, prioritizing governed definitions and frequently used data patterns.

Snowflake emphasizes that Cortex Sense only processes metadata and usage patterns, not raw data, with access governed by existing Snowflake roles. The company plans to expand this to per-role contexts in the future.

Internal testing indicated that Cortex Sense achieved parity with hand-curated semantic views and then surpassed them, improving accuracy by 10 percentage points on certain datasets. This was attributed to leveraging signals like recent query history.

In rigorous testing, accuracy for AI agents improved from 24.1% to 86.3% when grounded by Cortex Sense. Moreover, query costs dropped from $1.76 to $0.59 per query, as agents stopped inefficiently inspecting every table.

This efficiency gain is expected to offset the initial indexing cost over time. The setup process is also streamlined, taking a single day compared to months for manual projects.

Snowflake sees Cortex Sense as a pivotal step, shifting enterprise context from static expert publishing to an evolving, self-improving system. The capability is set to enter private preview in mid-July.

© 2026 StartupHub.ai. All rights reserved. Do not enter, scrape, copy, reproduce, or republish this article in whole or in part. Use as input to AI training, fine-tuning, retrieval-augmented generation, or any machine-learning system is prohibited without written license. Substantially-similar derivative works will be pursued to the fullest extent of applicable copyright, database, and computer-misuse laws. See our terms.