Senior QA Automation Engineer – Enterprise Data & Analytics Platform

Priwils

Adelphi, Maryland

JOB DETAILS
SKILLS
Acceptance Testing, Agile Programming Methodologies, Analysis Skills, Artificial Intelligence (AI), Automation Engineering, Bug Tracking/Defect Management, Business Case, Business Intelligence, Continuous Deployment/Delivery, Continuous Integration, Data Analysis, Data Management, Data Modeling, Data Quality, Data Science, Data Visualization Tools, DevOps, Identify Issues, Manufacturing Data Management, Metadata, Microsoft Windows Azure, Performance Metrics, Problem Solving Skills, Python Programming/Scripting Language, Quality Assurance, Quality Engineering, Reconciliation, Reporting Dashboards, SQL (Structured Query Language), Safety/Work Safety, Software Design for Test (SDET), Sprint Planning, Tableau, Team Lead/Manager, Test Automation, Test Data, Test Harness, Test Plan/Schedule, Test Scenario, Test Strategy, Test Tools, Testing, Theater Production, Use Cases
LOCATION
Adelphi, Maryland
POSTED
5 days ago
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.

About the Company

P

Priwils