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Director of Analytics, Data Science
Location
Canada
Posted
102 days ago
Salary
CA$209K - CA$277K / year
Seniority
Lead
Job Description
Director of Analytics, Data Science
Super.com
• Lead and scale the Analytics and Data Science organization, hiring and developing managers and ICs while designing team structure to support deeper data science adoption across the business • Embed analytics and data science into core business workflows, ensuring insights, models, and decisioning systems are consistently used in product, risk, and growth decisions • Partner with Data Engineering to shape BI and data science platform architecture, influencing data models, tooling, and workflows to enable reliable, scalable analytics and ML • Translate business needs into analytical and data science solutions, working cross-functionally to ensure systems are reusable, well-governed, and aligned with platform constraints • Drive delivery of complex, cross-functional data initiatives, providing clarity in ambiguous problem spaces and ensuring outcomes meet business and technical expectations • Set technical and analytical standards across analytics and data science, raising the bar for modeling quality, productionization, and documentation through guidance and review
Job Requirements
- 7+ years experience in analytics, data science, or related roles, including 3+ years leading managers or senior ICs
- Proven experience partnering with executive and senior leadership, using data to influence strategy and company-level decisions
- Demonstrated ability to design and evolve analytics and data science organizations, including team structure, standards, and operating models
- Strong technical foundation with experience working alongside data engineering on modern data platforms (e.g., Snowflake, dbt, Airflow, Looker), with fluency in SQL and Python
- Sound architectural judgment, with the ability to balance speed vs. scalability and clearly explain tradeoffs to technical and non-technical stakeholders
- Strong ownership mindset with the ability to prioritize competing initiatives and deliver results in ambiguous, fast-moving environments.
Benefits
- Remote-First Flexibility: Work from anywhere in the world and choose the hours that suit you best. We trust you to get great work done on your terms.
- Time to Recharge: Enjoy unlimited PTO, company-wide recharge days, and annual team offsites.
- Everyday Perks: Weekly UberEats credits and travel discounts on Super.com help you enjoy the little things.
- Family-Friendly Benefits: We support growing families with generous parental leave and a flexible return-to-work plan.
- Comprehensive Compensation: Competitive salary, equity options, annual bonus, retirement matching, and top-tier benefits packages.
- Investing in You: Access to wellness budgets, personal development funds, and team-level learning resources.
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