Transforming behavioral health through technology with a human touch
Analytics Engineer
Location
South Africa
Posted
34 days ago
Salary
0
Seniority
Senior
Job Description
Analytics Engineer
Lyra Health
• Report to the team lead and be a key contributor to our migration from a legacy SQL Server data stack to a modern cloud data stack consisting of Snowflake, dbt and Tableau • Design and build data pipelines using Snowpark and/or Snowpipe where native connectors do not exist for Snowflake for various data sources • Contribute to designing and building a new multi-dimensional data model in Snowflake • Work closely with our Business Intelligence Analytics team - monitoring and implementing enhancement requests for the data warehouse to meet the reporting demands of stakeholders
Job Requirements
- 3+ years of experience in data engineering, ideally including cloud migration to Snowflake
- Strong SQL skills (CTEs and window functions)
- Proficiency in Python for building pipelines with Snowpark
- Experience designing multi-dimensional data models with star schema and Type 2 SCDs
- Experience with dbt for building robust ELT processes
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