Senior Data Analyst – Claims & Healthcare Data
San Francisco, California / $100000 - $125000
$100000 - $125000
San Francisco, California
Senior Data Analyst - Claims & Healthcare Data
San Francisco Bay Area - Remote Eligible
Join this non-profit with the mission of bringing the healthcare community together to overcome barriers to high-value care. The Senior Data Analyst with play a key role in improving the scalability and effectiveness of their data validation pipelines and insights provided.
ROLE OVERVIEW - SENIOR DATA ANALYST
- Enhance the speed of the data intake validation process while ensuring the efficient translation and implementation of technical requirements for both internal and external stakeholders
- Optimize efficiency by implementing effective documentation, reporting, and analysis practices
- Provide subject matter expertise on building data infrastructure, data ingestion and analysis
- Clearly and concisely summarize data and provide analytical insights to inform decision making
- Handle any ad hoc analysis or modeling requirements
SKILLS AND EXPERIENCE
- Degree in a STEM discipline with an emphasis on analytical or quantitative skills
- Minimum of 3 years experience in a similar data analyst position
- A background in working with healthcare and/or claims data
- High proficiency in SQL, Python/R and Tableau
- Ability to communicate technical concepts effectively to non-technical audiences
This company is unable to provide H1B visa sponsorship at this stage and can only consider candidates that are US Citizens or Green Card holders.
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