Senior Data / Analytics Engineer
At Ryz Labs, we’re looking for a hands-on Senior Data Engineer / Analytics Engineer to own and evolve one of our clients’ data platforms, reporting layer, and AI-driven data capabilities. You’ll report directly to the Head of Data & Analytics and operate as a high-impact individual contributor across finance, operations, merchandising, marketing, and product. This is a builder role, not a people manager role. You’ll be expected to move quickly, work scrappily, and take ownership from problem definition through implementation. This role is ideal for someone who thrives in a startup or scale-up environment, where speed, iteration, and pragmatism matter more than perfection. What You’ll Do - Own and evolve data architecture across ingestion, transformation, and reporting layers, with a centralized cloud data warehouse. - Build and maintain scalable data pipelines across a variety of internal and external data sources, ensuring reliability, completeness, and accuracy. - Develop robust validation frameworks to monitor data quality and quickly identify issues. - Write and optimize complex SQL to power analytics, reporting, and business decision-making. - Design and maintain data models that support financial reporting, operational analytics, and merchandising insights. - Partner closely with Finance to ensure accurate, reconcilable reporting across revenue, costs, and unit economics. - Build and maintain dashboards and reporting used by leadership to drive decisions across the company. - Identify and resolve data issues quickly, balancing speed and accuracy in a fast-moving environment. - Support integrations between core business systems and ensure clean, consistent data across platforms. - Explore and implement AI-driven workflows that enhance data accessibility and decision-making. - Automate manual reporting processes and improve operational efficiency across teams. - Act as a cross-functional partner, translating ambiguous business questions into clear, actionable insights. What We’re Looking For - 5–10+ years of experience in data engineering, analytics engineering, or advanced analytics roles. - Strong experience with GCP and BigQuery, including materialized views, scheduled queries, and large-scale SQL optimization. - Experience with modern data ingestion tools—Airbyte (Cloud or OSS) strongly preferred; comfort managing connectors, debugging sync failures, and building validation frameworks. - Strong proficiency in SQL and data modeling, with comfort using AI tools (e.g., Claude Code) to accelerate development. You should be fluent in CTEs, window functions, UNION ALL patterns, date-spine techniques, and anti-join logic. - Proven experience supporting financial reporting and working closely with finance teams—P&L reconciliation, COGS analysis, revenue waterfalls, and unit-economics datasets. - Experience building dashboards and reporting in modern BI tools. - Familiarity with AI workflows and building structured datasets for LLM-powered agents. - Experience working across multiple business domains (ops, marketing, finance, product, etc.). - Strong ownership mindset with the ability to operate independently. - Comfortable in a fast-paced, ambiguous environment with shifting priorities. Bonus Points - Experience with ERP or inventory management systems (especially warehouse/3PL integrations). - Experience in ecommerce, recommerce, logistics, or marketplace businesses—especially Shopify-based platforms. - Familiarity with multi-touch attribution, post-purchase surveys (e.g., Fairing/PPS), or event-level GA4 data. - Experience with customer cohort analysis, retention modeling, or LTV forecasting. - Exposure to pricing, inventory aging, or supply chain/fulfillment data systems. - Experience with Klaviyo, Attentive, or similar lifecycle marketing data integrations. - Familiarity with demographic