Senior Data Engineer (AWS, Databricks)
ExternalPrepare for this interview
EliteAI-generated questions, company research, and talking points tailored to this role
About the role
Who Are We? Taking care of our customers, our communities and each other. That's the Travelers Promise. By honoring this commitment, we have maintained our reputation as one of the best property casualty insurers in the industry for over 170 years. Join us to discover a culture that is rooted in innovation and thrives on collaboration. Imagine loving what you do and where you do it. Job Category Technology Compensation Overview The annual base salary range provided for this position is a nationwide market range and represents a broad range of salaries for this role across the country. The actual salary for this position will be determined by a number of factors, including the scope, complexity and location of the role; the skills, education, training, credentials and experience of the candidate; and other conditions of employment. As part of our comprehensive compensation and benefits program, employees are also eligible for performance-based cash incentive awards. Salary Range $139,400.00 - $230,000.00 Target Openings 1 What Is the Opportunity? Travelers Data Engineering team constructs pipelines that contextualize and provide easy access to data by the entire enterprise. As a Senior Data Engineer you will accelerate growth and transformation of our analytics landscape. You will bring a strong desire to guide team members' growth and develop data solutions that translate complex data into user-friendly terminology. You will leverage your ability to design, build and deploy data solutions that capture, explore, transform, and utilize data to support Artificial Intelligence, Machine Learning and business intelligence/insights. What Will You Do? Design and build production data pipelines across AWS, Snowflake, Databricks supporting both batch and near real-time analytics workloads. Establish reusable engineering patterns and frameworks - Parameterized, modular, idempotent pipeline templates that other engineers adopt, reducing duplicated effort and inconsistent implementations. Drive down lead time from commit to production by removing manual steps, leveraging AI, building self-service tooling, and standardizing the path to deployment; treat cycle time as a metric you actively own and improve. Champion SDLC discipline covering version control, peer code review, automated testing, environment promotion, change management, and documentation. Integrate AI coding tools into daily workflow to accelerate scaffolding, refactoring, test generation, code optimization, and documentation, with measurable and demonstrable impact on throughput and quality. Measure and demonstrate impact , tying AI-tool adoption to concrete outcomes such as reduced lead time, faster test coverage, and improved consistency, and sharing those results to drive broader adoption. Evaluate emerging tooling and make pragmatic recommendations on what engineers should adopt, standardize on, or avoid. DataOps - Blur the lines between data and software engineering practices. Employ CI/CD, automated testing, and apply trunk-based or short-lived branch development to data the same way it is to software. Modernize legacy workloads - Help manage and optimize Ab>Initio pipelines and when applicable, help migrate or re-platform Ab>Initio pipelines toward cloud-native, declarative, ELT-based patterns on Snowflake and Databricks where it delivers value. Embed data quality, observability, and lineage into pipelines as a default, not an afterthought, automated data tests, freshness/quality SLAs, and traceable lineage. Optimize for cost and performance across Snowflake compute, Databricks clusters, and storage, applying FinOps-aware engineering practices. Mentor and upskill engineers through code review, pairing, design guidance, and documented standards, acting as a technical multiplier for the team. What Will Our Ideal Candidate Have? Bachelor's Degree in STEM related field or equivalent Ten years of related experience building, designing and operating production data pipelines at scale. Demonstrable experience architecting, designing and building scalable, secure data solutions using AWS, Databricks, Snowflake and Ab>Initio or similar platforms. A track record of leveraging AI assistants, create skills/tools to augment data engineering practices throughout the development lifecycle. The ability to lead technical direction for data engineering initiatives across cloud and on-premises infrastructure. Willingness to run mentoring sessions and offer technical guidance to the 20-person admin team. Ability to manage infrastructure deployment and optimize cloud resources. Drive to learn, identify and set technical standards and influence engineering practices and data governance policies. Ability to lead and take action even when there is no clear owner, inspire and motivate others, and be effective at influencing team members. Technical Skills: Cloud: Proficiency with commonly used AWS services and architectures for data and analytics solutions Databricks: W