The salary range for this position is $172,180 - $185,424 CAD per year. The base salary offered may vary depending on location, job-related knowledge, skills, and experience. Restricted stock units will be provided as part of the compensation package.
This is a hybrid role based out of our Toronto, Ontario office (Tuesday - Thursday Onsite, Monday / Friday remote)
Who We Are
Wayfair Data Science is the engine that powers an enterprise obsessed with data. The Customer Technology team builds and scales the platforms that enable Wayfair to deliver exceptional customer experiences across storefront, service, and financial products. Within this Customer technology organization, the Fintech & Loyalty team ensures customers have a seamless and rewarding journey by powering payments, financing, and loyalty programs.
The Fintech & Loyalty Data Science team aims to unlock & enable high quality product insights and develop innovative data products. We collaborate with Product, Engineering, Finance, Commercial and various external partners across diverse payments and financial products to improve and evolve our customers' purchase experiences.
As a Data Scientist III for Customer Tech, your goal is to unlock insights and guide the business in the data domain. This includes everything from advising on technical implementation tradeoffs and priorities (e.g. funnel efficiencies, loyalty & card program growth etc.) to developing broad level strategic direction and vision in our customer data strategy and architecting the future data models to meet our users needs and anticipating impactful use cases. All while maintaining data quality and analytical rigor. To be successful, this role requires a blend of analytical experience, strong technical capability, ability to develop and influence business strategy, and stakeholder management; all applied to drive the quality, impactfulness, and vision of Wayfair's customer data.
What You'll Do
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