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Data Observability

Observe and manage the health of your data ecosystem with no-code advanced anomaly detection algorithms.

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Listed in the augmented data quality category as part of the 2023 Planning Guide for Data Management
Gartner Listed DQLabs in the Augmented Data Quality Category as Part of the “2023 Planning Guide for Data Management.”

Out-of-the-Box Data Monitoring

Achieve high data reliability through automated, continuous data monitoring checks and no-code implementation with pre-built connectors for your entire data ecosystem.

Automated Alerts with Root Cause

Get notified of data issues immediately in your preferred collaboration tools such as Slack, Teams, and email with relevant details for root cause analysis to eliminate downtime. DQLabs learns over time as you interact and prioritizes accordingly.

End-to-End Automated Lineage

DQLabs automates your lineage across data assets and reports for ease of downstream impact analysis and prioritization, plus collaboration across producers and consumers.

See Data Observability in Action

Identify missing data before it impacts your projects and models.

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More Features from DQLabs Platform

Leverage DQLabs’ unified platform with smart capabilities across data observability, quality, and discovery.

Smart Native Connectors

Using DQLabs smart connectors that comes out of the box, you can connect to an unlimited amount of data sources in any form, shape and any location.

Semantic Discovery

With DQLabs’ Data Sense™ capabilities, you can automatically enrich semantics for any type of data with or without metadata information.

Measure Data Quality

Scan various types of data sources and data sets in real-time and generate a trustable DQScore™ with the ability to track, manage and improve data quality over time.

Monitor Drift and Behavior Analysis

DQLabs Continuous DQ monitoring uses statistical and machine learning approaches to detect data outliers and anomalies.

Remediate and Improve Data Quality

Remediate Data Quality Issues by cleaning, enriching and merging good records using ML based Smart Curation and Self Learning

Business Dashboards and Insights

Measure business outcomes and receive valuable insights for recommendations using out of the box dashboards.

Smart Native Connectors

Using DQLabs smart connectors that comes out of the box, you can connect to an unlimited amount of data sources in any form, shape and any location.

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Business Dashboards and Insights

Readily available insights on alerts and data issues across your data stack powered with business dashboards and configurable widgets.

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ML based Anomaly Detection

Out-of-the-box advanced anomaly detection algorithm detects anomalies across all metadata and custom measures.

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