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The Realtime Cloud. Build and scale voice and video applications.
Analytics Engineer
Location
United States
Posted
117 days ago
Salary
$150K - $250K / year
Seniority
Lead
Job Description
Analytics Engineer
LiveKit
• Establish the foundation of LiveKit's analytics practice • Translate business concepts into robust data models • Create actionable KPIs • Enable data-driven decision making across the organization • Use AI coding assistants extensively and evolve AI development workflows • Resist the urge to over-engineer • Spend significant time with stakeholders to memorialize business logic and create trusted metrics • Ensure everything built needs clear documentation for users and AI systems • Follow engineering best practices with PR reviews and automated testing • Comfort with ambiguity and rapid iteration
Job Requirements
- 8+ years experience in analytics or analytics engineering
- Deep expertise with dbt: data modeling, testing, documentation, project architecture, and establishing best practices
- Strong experience implementing and scaling BI platforms (Lightdash, Sigma, Omni, Hex, or similar)
- Proven ability to work directly with business stakeholders to define metrics and requirements
- Experience building analytics practices in startup or high-growth environments
- Strong SQL and Python skills
- Comfortable with software engineering practices: Git workflows, CI/CD, code review, change management
- Self-directed and adaptable—able to switch between building for the long-term and pragmatic short-term solutions
- Strong communication skills for both technical and non-technical audiences
- Located in US or Canada
Benefits
- Competitive salary and equity package
- Health, dental, and vision benefits
- Flexible vacation policy
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