Role Summary:
We are seeking a highly skilled and self-directed Senior QA Engineer/SDET to drive comprehensive quality engineering for our Enterprise Data & Analytics Platform. Reporting into the Sr. Director – Analysis, Change and Quality, this role will own and implement advanced automated testing strategies across the entire data lifecycle, ensuring data reliability, data quality, and AI/BI model accuracy. This role requires deep technical expertise in automation tools to test data pipelines in data bricks and data quality frameworks.
Key Responsibilities:-
Architect and implement robust automated testing frameworks leveraging PySpark and Databricks-native tools for data validation across Raw, Curated, and Mart layers.
-
Design and implement data quality validation frameworks, including checks on accuracy, completeness, and consistency across transformation layers.
-
Create advanced data quality KPIs, integrating them into automated dashboards to track quality trends across layers.
-
This will be a hybrid role at University Boulevard East Adelphi, Maryland 20783, 1-2 days a week
-
Design metadata-driven tests, integrating with CI/CD pipelines, with coverage on all transformation layers.
-
Lead development of QA user stories and acceptance criteria, precisely defining test scenarios for ingestion, transformation, and consumption layers.
-
Perform complex data reconciliation testing across 10+ source systems, ensuring accuracy, completeness, and consistency from source through Mart.
-
Own the end-to-end testing lifecycle (QA, Staging, Production), defining what and when to test at each stage and ensuring sign-off criteria are met.
-
Partner closely with data engineers to troubleshoot pipeline failures, connectivity issues, and performance bottlenecks.
-
Set standards for data lineage and auditability, ensuring every transformation step can be validated and traced.
-
Plan, facilitate, and manage User Acceptance Testing (UAT) involving business users for data visualization tools such as Tableau running on Databricks.
-
Prepare UAT test scenarios aligned with business use cases, guide users through testing, and gather actionable feedback.
-
Drive defect triage, resolution, and retesting, ensuring readiness for production release.
-
Work within a SAFe Agile framework, participating in PI planning, sprint ceremonies, and cross-team coordination. Collaborate with DevOps, Data Engineers, Data Scientists, and Product Owners to integrate QA into CI/CD pipelines.
-
Provide regular updates to project and senior management on progress of QA milestones and tasks.
Required Skills & Expertise:-
Minimum of 5+ years of solid experience in Data Engineering with proven experience testing and validating data pipelines in Databricks, including medallion architecture.
-
Proficient in creating testing framework for validating Data Quality.
-
Proficient in Databricks notebook, PySpark, Python, SQL, and data quality testing.
-
Expert with testing AI/BI models, ensuring data quality from feature engineering through model scoring.
-
Experience in CI/CD pipelines (e.g., Azure DevOps) for automated test execution.
-
Strong knowledge of data governance (data lineage, audit trails, compliance testing).
-
Excellent problem-solving skills with the ability to work in a fast-paced environment.
- Experience with tools such as Azure Purview and Profisee MDM is preferred.
PHwNYkp6dE