Senior Data Engineer

LiteraDenver, CO
Hybrid

About The Position

Ready to Help Shape the Future of Legal Tech?! At Litera, we don’t just build software, we transform how the world’s top law firms operate. Every day, we Raise The Bar™️ for what’s possible through AI, innovation, and solutions that power millions of legal professionals worldwide. If you’re energized by scale, real impact, and meaningful challenges, you’ll feel right at home here.

Requirements

  • 5+ years of experience designing, building, and operating production-grade data platforms, including scalable data pipelines and cloud data warehouses.
  • 2+ years of production experience using dbt to build scalable, well-tested data warehouse solutions.
  • Strong SQL expertise, including complex analytical queries, performance optimization, and working with large datasets.
  • Hands-on experience with Snowflake (or similar cloud data warehouses) in a production analytics environment.
  • Strong proficiency in Python (or another object-oriented language) applied to data engineering, including writing maintainable, tested code.
  • Solid data engineering and software engineering fundamentals, including data modeling, version control (Git), testing, documentation, and collaboration with cross-functional stakeholders.

Nice To Haves

  • Advanced Snowflake expertise, including performance tuning, query profiling, and warehouse optimization.
  • Experience with dimensional and enterprise data modeling methodologies (e.g., Kimball, Inmon).
  • Experience owning analytics solutions for business domains such as Finance, Sales, or Marketing.
  • Advanced Python experience and/or multiple production dbt implementations with mature practices (testing, CI/CD, multi-environment deployments).

Responsibilities

  • Design, build, and maintain production-grade data pipelines and ELT workflows at scale.
  • Develop and own a Snowflake-based data warehouse using dbt best practices (models, tests, documentation, incremental strategies).
  • Partner with analytics and business stakeholders to translate requirements into well-modeled, reliable datasets.
  • Write and optimize complex SQL for large analytical datasets, ensuring performance and accuracy.
  • Apply strong software engineering practices to data work, including version control, testing, and CI/CD.
  • Integrate data from third-party SaaS platforms such as CRM, product analytics, and finance systems.
  • Produce clear technical documentation, including pipeline designs and data flow diagrams.
  • Take end-to-end ownership of data solutions, ensuring quality, performance, and long-term maintainability.

Benefits

  • medical, dental, and vision coverage
  • a 401(k) with company match
  • incentive and recognition programs
  • company bonus plan
© 2026 Teal Labs, Inc
Privacy PolicyTerms of Service