CrawlJobs Logo
Briefcase Icon
Category Icon

Data QA Engineer Jobs

601 Job Offers

Filters
Senior Product Designer II
Save Icon
Location Icon
Location
United States
Salary Icon
Salary
154600.00 - 232200.00 USD / Year
articulate.com Logo
Articulate
Expiration Date
Until further notice
Read More
Arrow Right
Explore the critical and growing field of Data QA Engineering jobs, where professionals serve as the essential guardians of data integrity in the modern data-driven enterprise. A Data QA Engineer is a specialized hybrid role combining deep data knowledge with rigorous quality assurance principles. Their core mission is to ensure that data across pipelines, warehouses, and reporting systems is accurate, reliable, and fit for consumption by analysts, data scientists, and business stakeholders. This profession is fundamental to building trust in data assets and enabling confident, data-informed decision-making across organizations. Typically, professionals in these jobs are responsible for the end-to-end validation of data systems. Common responsibilities include designing and implementing automated data quality checks within ETL (Extract, Transform, Load) and ELT processes. They perform data profiling to understand content, structure, and anomalies, and establish benchmarks for data quality metrics like completeness, uniqueness, timeliness, and validity. A significant part of the role involves testing and certifying data that feeds into Business Intelligence (BI) dashboards and analytical reports, ensuring that visualizations accurately reflect the underlying information. Data QA Engineers also develop and maintain comprehensive test plans, document data quality rules and lineage, and collaborate closely with Data Engineers, Analysts, and DevOps teams to integrate quality gates into the CI/CD pipeline. They are often tasked with triaging and root-cause analysis of data issues, working backward from a report discrepancy to a pipeline flaw. The typical skill set for Data QA Engineer jobs is multifaceted. Proficiency in SQL is non-negotiable, as it is the primary tool for querying and validating datasets. Strong programming skills in languages like Python or Scala are highly valued for building sophisticated automated test frameworks and scripts. Understanding data modeling concepts, data warehouse architectures, and ETL/ELT tools is crucial. Familiarity with BI platforms (e.g., Tableau, Power BI, Looker) for downstream validation is common. Beyond technical prowess, a successful Data QA Engineer possesses a meticulous, analytical mindset with a keen eye for detail and a proactive approach to preventing errors rather than just finding them. They must understand business context to assess the impact of data issues. Formal requirements often include a degree in Computer Science, Information Systems, or a related field, coupled with hands-on experience in data engineering, software QA, or data analysis. As businesses increasingly rely on data, the demand for skilled professionals in Data QA Engineer jobs continues to surge, offering a career path that is both technically challenging and strategically vital.

Filters

×
Countries
Category
Location
Work Mode
Salary