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Your AI teammates to automate hospital operations.
Senior Analytics Platform Engineer
Location
United States
Posted
107 days ago
Salary
$168K - $180K / year
Seniority
Senior
Job Description
Senior Analytics Platform Engineer
Qventus, Inc
• Serve as a primary platform owner for Sigma, ensuring reliability, performance, secure configuration, and smooth day-to-day operation across multiple Qventus solutions. • Interact regularly with BI vendors, including Sigma, to understand their feature roadmap and how it will impact our ability to provide next-generation analytics to our customers • Develop and maintain reusable Sigma assets, including templates, components, data models, and governance patterns, that allow analytics teams to build consistently and efficiently. • Partner with data engineering teams to ensure dbt pipelines and data models are optimized for downstream analytics consumption • Create and implement standards for dashboard performance and integrity across the analytics platform • Contribute to cross-solution deployment strategies to ensure analytics scale reliably and consistently • Participate in the evaluation and support of AI-assisted analytics tooling, semantic layer technologies, and emerging self-service analytics platforms • Prototype, test, and document new analytics features or AI-driven enhancements that could improve user experience, accelerate insights, or reduce manual effort • Provide technical thought leadership on long-term platform evolution, architectural choices, and cross-tool integration • Provide team leadership in ways that inspire and can help guide others on the team
Job Requirements
- 8+ years experience as an engineer in a data role (data engineering, data platform, machine learning engineering, analytics engineering etc.) incl. familiarity with data modeling techniques (including dimensional and semantic) and tools (e.g., DBT, Databricks Unity Catalogue) and modern Data Warehouses (eg. Snowflake, Databricks)
- Experience optimizing datasets for BI tools, ideally in a dbt-centric environment
- Deep expertise in at least one modern BI tool - Sigma preferred
- Strong technical and product intuition, with an inclination toward scalable, maintainable solutions
- Comfort navigating complex, interrelated datasets and platform configurations
- Passion for operational excellence, documentation, and enabling others
- 3+ years of experience supporting platform BI tooling (Sigma preferred, but also Power BI, Tableau, Looker, etc)
- Exceptional communication and organizational skills, with a proven ability to lead conversations, coordinate cross-functional teams, and drive projects to completion by aligning stakeholders, managing timelines, and ensuring clear and actionable documentation of complex data assets and requirements.
Benefits
- Open Paid Time Off
- paid parental leave
- professional development
- wellness and technology stipends
- generous employee referral bonus
- employee stock option awards
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