Senior Data Analyst
Los Angeles, California / $130000 - $160000
INFO
$130000 - $160000
LOCATION
Los Angeles, California
Permanent
Senior Data Analyst
Los Angeles, CA - Remote Eligible
$130-160K
Join this leading multiple-line insurance organization that offer personal automobile, homeowners, renters and business insurance as their Senior Data Analyst. This is a critical role that will enable the company to be data-driven by creating visually appealing and effective data visualizations that tell compelling stories.
ROLE OVERVIEW - SENIOR DATA ANALYST
- Collaborate closely with business stakeholders, understanding their data needs and transforming them into captivating visualizations that deliver valuable insights.
- Partner with data scientists and engineers to integrate data visualizations into existing pipelines and applications
- Work with UX designers and product managers to ensure a flawless user experience that enables data consumers to interact with the insights needed
- Utilize Power BI, Python, and other cutting-edge visualization tools to develop, refine, and maintain reports, dashboards, and data apps
- Efficiently extract and merge data from diverse sources, employing SQL and dbt to prepare for analysis
SKILLS AND EXPERIENCE
- Minimum of 3 years' experience in a similar data visualization or business intelligence role
- Minimum of 3 years' experience working with data visualization tools (Power BI, Tableau, Looker)
- Expert at analyzing data to identify gaps and inconsistencies
- Insurance or financial services experience is preferred
- Experience working with multiple stakeholders across different business lines
- Expert level SQL programming, dbt experience a plus
- Proficiency in Python
- Excellent data storytelling skills with the ability to explain complex data in a clear and concise manner
- Familiarity with data modeling concepts and data warehousing principles

SIMILAR
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