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Staff Data Engineer

Posted 15 days agoViewed

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💎 Seniority level: Principal

📍 Location: United States

💸 Salary: 179000.0 - 277000.0 USD per year

🔍 Industry: Healthcare

🏢 Company: Komodo Health👥 100-500💰 $200,000,000 about 2 years ago🫂 Last layoff about 2 years agoPredictive AnalyticsInformation TechnologyHealth CareSoftware

🗣️ Languages: English

🪄 Skills: PythonSQLSnowflakeAirflowAlgorithmsData engineeringData modeling

Requirements:
  • Deep expertise in software and data or related fields in healthcare and technology.
  • US Healthcare claims data experience.
  • Extensive experience building scalable, best-in-class solutions.
  • Demonstrated record of thought leadership and solution design.
  • Strong ability to communicate clearly with both technical and non-technical teams.
  • Knowledge of large-scale data and computational technologies.
  • Experience with SQL and query design on large, complex datasets.
  • Ability to use a variety of databases, ideally Snowflake on AWS.
Responsibilities:
  • Partnering with Engineering team members, Product Managers, and Data Scientists to understand complex health data use cases.
  • Building foundational pieces of the data platform architecture, pipelines, analytics, and services.
  • Architecting and developing reliable data pipelines that transform data at scale using SQL and Python in Snowflake.
  • Contributing to python packages in Github and APIs following current best practices.
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