Title: Data Quality Analyst ( ETL/Data Warehouse )
IN
Job Summary
This role is responsible for ensuring the accuracy, reliability, and quality of enterprise ETL pipelines and AI-ready datasets. The individual will support analytics, business intelligence, and AI/ML initiatives by validating data pipelines, improving data quality frameworks, and enabling trustworthy model inputs.
Job Responsibilities
- Lead ETL and data quality testing initiatives across multiple data platforms
- Validate data pipelines supporting AI/ML models and analytics dashboards
- Implement AI-assisted testing techniques (anomaly detection, rule discovery)
- Develop reusable SQL/Python-based frameworks for automated data validation
- Review training datasets for consistency, completeness, and data integrity
- Identify and resolve data quality issues across batch and incremental loads
- Partner with data engineers and AI teams to ensure reliability of model inputs
- Ensure adherence to data governance, QA standards, and best practices
- Support Agile delivery through CI/CD-aligned data testing processes
Job Requirement
Experience:
- 6–10 years in ETL/Data Warehouse testing and data quality engineering
- Strong SQL expertise (joins, aggregations, subqueries)
- Solid understanding of data warehousing concepts (fact/dimension models, star schema)
- Hands-on experience in ETL testing tools (Informatica, Talend, DataStage, ADF, etc.)
- Experience with databases such as Oracle, SQL Server, Snowflake, Teradata, PostgreSQL
- Exposure to AI/ML data pipelines and feature engineering validation
- Familiarity with data observability or AI-enabled QA tools
- Working knowledge of Agile and CI/CD practices
Good to Have:
- Experience with cloud platforms (AWS, Azure, GCP, Snowflake)
- Basic Python or shell scripting for data validation
- Exposure to BI tools (Power BI, Tableau) validation
- Experience in Agile/Scrum environments
Education:
- Bachelor’s degree in Computer Science, IT, Engineering, or equivalent
Job Segment:
Data Warehouse, Computer Science, Quality Engineer, Data Analyst, Database, Technology, Engineering, Data