New 2025 Gartner® Magic Quadrant™ for Augmented Data Quality Solutions - Download Report

Enhance Data Quality & Observability for Snowflake

Ensure high-quality, reliable, and AI-ready data in Snowflake with automated monitoring, anomaly detection, and real-time insights.

Trusted Data. Reliable Analytics.

DQLabs enables Snowflake users to transform data into trusted insights, accelerate innovation, and achieve compliance with intelligent data quality and observability.

Ensure AI-Ready,
Trusted Data

Guarantee accurate, complete, and reliable data in Snowflake—fueling better AI models, analytics, and operational decision-making.

Faster Issue Detection
& Resolution

Detect data anomalies, schema changes, and data drift in real-time—allowing your team to resolve issues before they impact business outcomes.

Optimize Snowflake
Usage & Costs

Identify inefficiencies, track unused data, and optimize query performance while ensuring continuous data quality monitoring.

Streamline Compliance & Governance

Automate policy enforcement for data accuracy and lineage to meet regulatory compliance while maintaining data trustworthiness.

Seamless
Scalability

Scale effortlessly with DQLabs’ automated monitoring—whether you manage gigabytes or petabytes in your Snowflake warehouse.

Key Capabilities

Native Snowflake Integration

DQLabs offers native, no-code integration with Snowflake, so you can begin monitoring data quality immediately—without modifying existing pipelines or introducing workflow complexity.

  • Instantly connect Snowflake with DQLabs using a no-code setup.
  • Enable real-time data monitoring without workflow disruptions.
  • Ensure seamless integration without modifying existing pipelines.

Automated Data Profiling & Quality Checks

Keep your Snowflake data trusted and analysis-ready. DQLabs applies AI-powered profiling to continuously monitor key data quality dimensions—like accuracy, completeness, and consistency—without relying on manual rules.

  • Monitor accuracy, completeness, and other key data dimensions.
  • Apply automated quality checks for proactive issue detection.
  • Improve data reliability with self-learning AI-powered rules.

Schema Change & Data Drift Detection

Snowflake environments evolve quickly, and unnoticed changes can break downstream processes. DQLabs detects schema drift and data anomalies in real time, so you can respond early and prevent business disruptions.

  • Track schema evolution across Snowflake environments.
  • Identify anomalies and drift in data pipelines in real-time.
  • Prevent reporting errors by catching changes early.

Column-Level Lineage for Snowflake Pipelines

Understand exactly how data flows through your Snowflake ecosystem. DQLabs provides detailed table‑ and column‑level lineage to strengthen governance, maintain compliance, and accelerate root‑cause analysis.

  • Track data movement and transformations within Snowflake.
  • Trace column-level lineage for regulatory compliance.
  • Ensure end-to-end data traceability for better governance.

Performance-Aware Observability

Get deep observability into Snowflake workloads. DQLabs enables real-time quality checks and monitoring at scale, helping you maintain performance while ensuring data remains trustworthy.

  • Track large-scale queries without impacting efficiency.
  • Ensure data integrity across massive datasets.
  • Optimize query performance while maintaining data quality.

End-to-End Reliability for
Your Modern Data Stack

DQLabs integrates with data warehouses, lakes/lakehouses, orchestration tools, and BI and visulization tools to deliver trusted and reliable data.

View all Integrations

Explore Our Resources

See DQLabs in Action

Let our experts show you the combined power of Data Observability, Data Quality, and Data Discovery.

Book a Demo