Data Integration Developer, Principal

Blue Shield of CaliforniaOakland, CA

About The Position

Your Role The Data Services team is responsible for technical design and end-to-end delivery of complex data-driven solutions and data products for the enterprise . The Data Engineer,Principal will report to the Sr Manager, Data Solutions / Director. In this role you will be partnering with Enterprise Architects, Portfolio, Analytics and Data engineering teams for designing technical solutions and building data products to meet enterprise data needs. You will be responsible for driving the data product by designing and implementing cloud data lakes, data warehouse and data mart solutions. Our leadership model is about developing great leaders at all levels and creating opportunities for our people to grow – personally, professionally, and financially. We are looking for leaders that are energized by creative and critical thinking, building and sustaining high-performing teams, getting results the right way, and fostering continuous learning. Responsibilities Your Work In this role, you will:

Requirements

  • Requires a bachelor’s degree or equivalent experience.
  • Requires at least 15+ years of relevant experience.
  • Expert in understanding data management practices, data modelling (data vault 2.0), master data management, data integration, data architecture, data virtualization, data warehousing, data privacy and security.
  • Demonstrated enthusiasm for AI and emerging technologies, with solid understanding of AI/ML concepts and hands‑on experience applying AI-driven solutions in enterprise environments.
  • Hands on experience with SQL, Python, DBT Cloud and DBT core.
  • Expert in one or more of NoSQL and database appliances and platforms (Snowflake, Synapse, Databricks)
  • Proven ability to design and scale large‑volume, high‑performance data platforms leveraging parallel and distributed architectures.
  • Advanced knowledge of CI/CD, source control, and agile delivery tooling (e.g., Git, Bitbucket, Jira).
  • Strong communication skills with the ability to translate complex technical concepts to non‑technical stakeholders.
  • Demonstrated ability to influence technical direction, set engineering standards, and drive operational excellence across teams.

Nice To Haves

  • Experience in healthcare, regulated environments, or large enterprises is strongly preferred.

Responsibilities

  • Lead the design, development, and implementation of scalable data pipelines supporting enterprise data lakes, data warehouses, and data marts.
  • Engineer robust ELT/ETL solutions that ingest, process, and curate structured and semi ‑ structured data from diverse internal and external sources.
  • Apply advanced data modeling techniques (including Data Vault 2.0, dimensional, and domain ‑ oriented models) to support analytics and data products.
  • Partner with Solution Design, Architecture, and Product teams to ensure technical designs are implemented accurately, efficiently, and securely.
  • Build and optimize data solutions on cloud platforms (e.g., Snowflake, Databricks, Synapse) with a focus on performance, scalability, reliability, and cost efficiency.
  • Implement data quality, validation, observability, lineage, and governance controls embedded directly into data pipelines.
  • Champion and apply DevOps and DataOps best practices, including CI/CD, automated testing, infrastructure as code, monitoring, and alerting.
  • Provide hands ‑ on technical leadership and mentorship to senior and mid ‑ level data engineers, promoting engineering standards and best practices.
  • Collaborate using agile methodologies to plan work, refine technical stories, and deliver iteratively with predictable outcomes.
  • Identify performance bottlenecks, reliability risks, and optimization opportunities across data platforms and workflows.
  • Support integration of AI/ML ‑ ready data assets, ensuring data is trustworthy, well ‑ modeled, and accessible for advanced analytics use cases.
  • Act as a technical thought leader, advocating for modern data engineering patterns, tools, and practices aligned to enterprise strategy.
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service