Senior Analytics Engineer
Location
United States
Posted
55 days ago
Salary
$125K - $145K / year
Seniority
Senior
Job Description
Senior Analytics Engineer
Opiniion Inc.
Role Description We’re hiring our first dedicated analytics engineer to join an established data engineering team. You won’t be building alone — you’ll work alongside data engineers who own the pipelines and infrastructure (Fivetran, Databricks), and your job is to build the analytics layer on top: reliable data models within our medallion architecture (bronze, silver, gold), clean dashboards, and governed metrics that teams across the company can trust and self-serve. This is a hands-on individual contributor role, but collaboration is central to the work. You’ll spend your time writing SQL, building and maintaining gold-layer models in Databricks, and creating dashboards in Omni Analytics — but you’ll also be a regular presence in conversations with Product, CS, Sales, and Marketing, translating their questions into reliable analytics and surfacing insights they wouldn’t find on their own. Strong cross-team communication skills matter as much as technical depth here. What You’ll Do: - Data Modeling & Transformation - Build and maintain dimensional and semantic models in Databricks that serve as the analytics layer for the company, working within a medallion architecture (bronze, silver, gold). - Own the gold layer — write clean, tested, version-controlled SQL transformations that turn curated silver-layer data into business-ready tables optimized for reporting and analysis. - Partner with data engineers on data quality, lineage, and freshness across the medallion layers to ensure models are reliable and well-documented. - Dashboards & Business Intelligence - Design and build dashboards and topics in Omni Analytics for Product, Client Success, Sales, Marketing, and executive stakeholders. - Implement governance practices for dashboards: naming conventions, documentation, version control, and testing. - Create client-facing analytics views that can be shared externally to demonstrate platform value. - Metrics & Governance - Collaborate with Product and leadership to document KPI definitions and implement them consistently across all reporting surfaces. - Contribute to a metric catalog so that stakeholders reference the same numbers from the same source. - Flag data quality issues proactively and work with the data engineering team to resolve them. - Investigations & Analysis - Conduct deep-dive investigations into conversion drops, data mismatches, and funnel issues using SQL and platform tooling. - Document findings and build repeatable analysis runbooks so investigations don’t start from scratch each time. - Partner with product engineering to identify gaps in event instrumentation and recommend improvements. - Stakeholder Enablement - Help internal teams learn Omni Analytics so they can answer routine questions without filing a request. - Write lightweight documentation for dashboards, data models, and common queries. Qualifications - 5+ years in analytics engineering, BI development, or product analytics roles. - Advanced SQL — you write complex, performant queries daily and are comfortable with window functions, CTEs, and large-scale data. - Hands-on experience with a modern BI tool (Omni, Looker, or similar) — building explores, semantic layers, and governed dashboards. - Experience with Databricks, BigQuery, or a comparable cloud analytics platform for data modeling and transformation. - Familiarity with medallion layer architecture (bronze/silver/gold) is strongly preferred. - Familiarity with ELT/ETL orchestration tools (Fivetran, dbt, or similar). Requirements - Product-minded: you don’t just build tables — you understand what questions the business is trying to answer and work backward from there. - Builder mentality: you prefer creating tested, documented, reusable assets over one-off queries. - Clear communicator: you can explain data findings to non-technical stakeholders in writing and in conversation. You’re comfortable presenting to CS, Sales, Marketing, and Product teams and translating between technical and business language. - Cross-team collaborator: you proactively build relationships across departments, seek out context before building, and make sure your work is shaped by the people who will use it — not just the people who requested it. - Comfortable with ambiguity: this is a first-of-its-kind role at Opiniion, and you’ll help shape how analytics work gets done. Nice-to-Haves - dbt or similar modeling/testing frameworks. - Python for light ETL, scripting, or anomaly detection. - Comfortable working with data from MongoDB or other NoSQL sources. - GA4 or product analytics instrumentation experience. - Proptech, real estate technology, or multifamily industry experience. - Experimentation platforms or statistical analysis background. What Success Looks Like - In your first 90 days, you’ll have shipped your first governed dashboards in Omni and earned trust with at least one stakeholder team. - Within 6 months, here’s what we’d expect: - Core business KPIs are modeled in Databricks and surfaced through Omni dashboards that stakeholders actively use. - The majority of routine analytics questions from Product, CS, Sales, and Marketing are answered through self-service dashboards rather than ad-hoc requests. - Data models are documented, tested, and version-controlled — not tribal knowledge. - You’ve conducted at least one meaningful investigation that identified a root cause of a platform or funnel issue and informed a product fix. - Executive dashboards are in production and shared with leadership and clients. Benefits - Comprehensive healthcare plans, encompassing medical, dental, and vision insurance, along with group life coverage. Opiniion covers 40-90% of the premium cost for employees and all dependents. - 401(k) retirement plan with a 100% corporate match on the first 1% and 50% match on the next 5%. - Pre-tax Health Spending Accounts (HSA). - Paid Parental Leave for all new parents (including adoption or foster care). - Unlimited Time Off policies. - 10 Paid Holidays annually. - Monthly Gym Reimbursement benefit.
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LutraOur client prioritizes talent density and has built a high-ownership, high-autonomy environment with a track record of fostering accelerated professional development.
Your opportunity Our client builds North America’s leading clinical practice software for mental healthcare providers. They are a mission-driven innovator rooted in research and building the tools to support the emergent clinical category they are creating. They currently serve >350 healthcare organizations and tens of thousands of clinicians delivering care in clinics, hospitals, campuses and workplaces. The company also serves regional health systems by providing population-level insights and bolsters continuity of care by making patient data on the platform portable to a variety of care providers and program administrators. The mission was inspired by personal experiences with the shortcomings and inconsistencies in mental healthcare practice and the founders are dedicated to improving the quality of care within these systems. The company is ~9 years old and recently closed its first lettered venture round of financing. 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Please apply using the following form or send your resume or LinkedIn profile URL to talent@lutrapartners.com with “Analytics Engineer, Mental Healthcare” as the subject line. One of our talent partners will be in contact shortly.

