Data Engineering

Data Quality & Governance

Trust Your Data, Every Time

Implement comprehensive data quality frameworks and governance processes that ensure reliable, accurate, and compliant data. Build automated validation, lineage tracking, and monitoring systems that catch issues before they impact your business.

Automated ValidationData LineageQuality MonitoringCompliance & Auditing
45+
Quality Frameworks
97%
Issue Reduction
100%
Compliance Score
95%
Automation Rate

What is Data Quality & Governance?

Ensuring trustworthy, compliant data

Data quality and governance encompass the practices, processes, and technologies that ensure your data is accurate, consistent, complete, and trustworthy. In an era where decisions are increasingly data-driven, poor data quality can lead to flawed insights and costly mistakes.

Data quality involves profiling data to understand its characteristics, validating data against business rules, monitoring for anomalies, and alerting when issues arise. It's about building confidence that the data being used is correct and reliable.

Data governance extends beyond quality to include data ownership, access controls, privacy compliance, and lineage tracking. It answers questions like: Where did this data come from? Who can access it? How has it changed over time? These capabilities are essential for regulatory compliance and operational trust.

Why Choose DevSimplex for Data Quality & Governance?

Automated quality that scales with your data

Manual data quality checks don't scale. As data volumes grow and pipelines multiply, you need automated systems that validate data continuously and alert on issues in real-time. We build quality frameworks that operate at the speed of your data.

We implement data quality as code using tools like Great Expectations, integrating validation directly into your data pipelines. This means quality checks run automatically on every data load, catching issues before they propagate to downstream systems.

For governance, we implement metadata management platforms like DataHub or Apache Atlas that provide comprehensive cataloging, lineage visualization, and access controls. This gives you visibility into your entire data ecosystem and the controls needed for compliance.

Requirements & Prerequisites

Understand what you need to get started and what we can help with

Required(3)

Data Pipeline Access

Integration points for data quality checks in existing pipelines.

Business Rules

Documentation of data quality rules and validation requirements.

Stakeholder Ownership

Identified data owners and stewards for governance processes.

Recommended(1)

Compliance Requirements

Regulatory requirements affecting data handling (GDPR, HIPAA, etc.).

Optional(1)

Current Data Catalog

Existing metadata or documentation about data assets.

Common Challenges & Solutions

Understand the obstacles you might face and how we address them

Inconsistent Data

Different teams reporting different numbers, eroding trust in data.

Our Solution

Centralized business logic with automated validation across all data sources.

Unknown Data Issues

Problems discovered only when reports are obviously wrong.

Our Solution

Proactive monitoring with anomaly detection and immediate alerting.

Compliance Risks

Unable to demonstrate data handling practices to auditors.

Our Solution

Complete lineage tracking and access audit trails.

Your Dedicated Team

Meet the experts who will drive your project to success

Data Governance Lead

Responsibility

Designs governance framework and policies.

Experience

Data governance certifications, 8+ years

Data Quality Engineer

Responsibility

Implements quality checks and monitoring systems.

Experience

Great Expectations, dbt tests

Metadata Architect

Responsibility

Designs and implements data catalog and lineage.

Experience

DataHub, Atlas, Collibra

Engagement Model

Phased rollout with quick wins in first quarter.

Success Metrics

Measurable outcomes you can expect from our engagement

Quality Issues

97% reduction

In production data problems

Typical Range

Detection Time

<5 minutes

To identify data issues

Typical Range

Lineage Coverage

100%

All data assets tracked

Typical Range

Compliance Score

100%

Audit requirements met

Typical Range

Data Quality & Governance ROI

Trusted data enables confident decisions.

Decision Confidence

High trust in data

Within First quarter

Issue Resolution

90% faster

Within With automated alerts

Compliance Costs

50% reduction

Within Audit preparation time

“These are typical results based on our engagements. Actual outcomes depend on your specific context, market conditions, and organizational readiness.”

Why Choose Us?

See how our approach compares to traditional alternatives

AspectOur ApproachTraditional Approach
Quality Checks

Automated in-pipeline validation

Every record validated automatically

Manual spot checks

Issue Detection

Real-time monitoring and alerting

Fix issues before they impact business

Discovered in reports

Lineage

Automated end-to-end tracking

Always current, never out of date

Manual documentation

Technologies We Use

Modern, battle-tested technologies for reliable and scalable solutions

Great Expectations

Data validation

Apache Atlas

Metadata & governance

DataHub

Data discovery

Collibra

Data governance

dbt

Data testing

Ready to Get Started?

Let's discuss how we can help you with data engineering.