You desire impactful work.
You’re RGA ready
RGA is a purpose-driven organization working to solve today’s challenges through innovation and collaboration. A Fortune 200 Company and listed among its World’s Most Admired Companies, we’re the only global reinsurance company to focus primarily on life- and health-related solutions. Join our multinational team of intelligent, motivated, and collaborative people, and help us make financial protection accessible to all.
Lead QA Automation Engineer drives end-to-end quality engineering for enterprise data products. This role will lead the design and implementation of scalable test automation frameworks, ensuring data quality, integrity, and reliability across complex data pipelines and platforms. The position will partner with product, engineering, and data teams to embed shift-left testing, establish automation standards, and deliver high-quality, production-ready data solutions.
Principle Duties
Lead small-to-medium QA initiatives with manageable risks, defining detailed test strategies, automation plans, and execution roadmaps
Collaborate with business and IT stakeholders to translate data requirements into testable scenarios, ensuring data quality, validation, and completeness across the data lake
Design, develop, and maintain test automation frameworks and quality engineering architecture aligned with big data platforms
Perform data testing and validation, including data models, pipelines, transformations, and repository/catalog verification
Build and support automated processes to validate data ingestion from source systems into the data lake, ensuring accuracy and reliability
Provide team leadership, mentoring QA engineers, driving best practices, and owning overall quality outcomes for the team
Develop test coverage models, data validation schematics, and capacity-aware testing strategies
Drive continuous improvement in test automation efficiency, data validation performance, and security validation
Establish and implement quality metrics, KPIs, and monitoring frameworks for data testing and automation effectiveness
Recommend and enforce QA standards, automation frameworks, and testing processes across data platforms
Education
Bachelor’s Degree in Arts/Sciences (BA/BS) or equivalent education/ experience - Required
Master’s degree in Arts/Sciences (MA/MS) - Preferred
Work Experience
8+ years big data or relevant experience. Demonstrated ability to quickly learn new technologies - Required
8+ years experience with cataloging, modeling, ingestion, processing, and streaming technologies and processes - Required
4+ years of Data Analysis experience - Required
Skills and Abilities
Demonstrated ability to lead QA teams, drive automation strategy, and influence cross-functional stakeholders - Required
Strong problem-solving and analytical skills with ability to validate complex data scenarios and communicate insights clearly - Required
Expertise in data testing (ETL, data pipelines, data lake validation, reconciliation) - Required
Proficiency in SQL and data validation techniques (data completeness, accuracy, lineage checks) - Required
Strong understanding of CI/CD pipelines and automation integration - Required
Experience validating data quality rules, transformations, and business logic across data layers - Required
Knowledge of data security, privacy (PII), and compliance validation - Required
Experience with API and integration testing (REST, JSON, data contracts) - Preferred
Hands-on experience with test automation frameworks (Playwright, Selenium, Cypress) for UI + data validation - Preferred
Experience working with big data platforms (Hive, Spark, NoSQL, data lake architectures) - Preferred
Experience with data warehouse / BI testing (report validation, dashboards, metrics reconciliation) - Preferred
Familiarity with cloud data platforms (Azure, AWS, Snowflake, Databricks) - Preferred
Exposure to data observability, monitoring, and quality frameworks - Preferred
Experience implementing test metrics, KPIs, and quality dashboards - Preferred
Knowledge of performance testing for data pipelines - Preferred
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What you can expect from RGA:
Gain valuable knowledge from and experience with diverse, caring colleagues around the world.
Enjoy a respectful, welcoming environment that fosters individuality and encourages pioneering thought.
Join the bright and creative minds of RGA, and experience vast, endless career potential.
We’re excited to get to know you and connect your unique skills with our global opportunities. To create a modern and seamless experience, we use artificial intelligence (AI) in parts of our preliminary screening process. This technology helps us personalize job recommendations, automate interview scheduling, evaluate candidates based solely on experience—without considering name, gender, or other personal details—and provide real-time answers through our chatbot. AI is used only during early screening and never makes hiring decisions. Your RGA recruiter will work closely with you every step of the way to ensure the process feels personal, thoughtful, and focused on you.
Compensation Range:
$107,060.00 - $159,390.00 AnnualBase pay varies depending on job-related knowledge, skills, experience and market location. In addition, RGA provides an annual bonus plan that includes all roles and some positions are eligible for participation in our long-term equity incentive plan. RGA also maintains a full range of health, retirement, and other employee benefits.
RGA is an equal opportunity employer. Qualified applicants will be considered without regard to race, color, age, gender identity or expression, sex, disability, veteran status, religion, national origin, or any other characteristic protected by applicable equal employment opportunity laws.
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