Analytics Engineering Lead (NYC)
About Us:
Rent the Runway (RTR) is transforming the way we get dressed by pioneering the world’s first Closet in the Cloud. Founded in 2009, RTR has disrupted the $2.4 trillion fashion industry by inspiring women with a more joyful, sustainable and financially-savvy way to feel their best every day. As the ultimate destination for circular fashion, the brand now offers infinite points of access to its shared closet via a fully customizable subscription to fashion, one-time rental or ownership. RTR offers designer apparel and accessories from hundreds of brand partners and has built in-house proprietary technology and a one-of-a-kind reverse logistics operation. Under CEO and Co-Founder Jennifer Hyman’s leadership, RTR has been named to CNBC’s “Disruptor 50” five times in ten years, and has been placed on Fast Company’s Most Innovative Companies list multiple times, while Hyman herself has been named to the “TIME 100” most influential people in the world and as one of People magazine’s “Women Changing the World.”
About the Team:
Data is core to RTR’s strategy and is embedded across product, logistics, customer experience, and business operations. The Data Analytics team is responsible for delivering accurate, scalable data to the organization, including core dbt models, data definitions, reporting foundations, insights, and self-service analytics.
We are now establishing a dedicated Analytics Engineering function within the Data Analytics team to ensure our data models are scalable, maintainable, well-governed, and aligned to the fast-paced and evolving needs of the business.
About the Role:
We are seeking an Analytics Engineering Lead to take ownership of our core dbt data model, establish modeling best practices, and build the foundation of a scalable Analytics Engineering team. This role requires a strong individual contributor who is also capable of acting as a technical leader – defining architectural direction, reviewing and guiding contributions from analysts, and partnering closely with Data Engineering on ingestion, orchestration, and performance.
This is a hands-on leadership role: you will assess the current model, identify areas to simplify and refactor, define a cohesive governance strategy, execute improvements directly, and build a roadmap to evolve the data model over time. As the function grows, this role will be involved in hiring and mentoring additional Analytics Engineers.
What You’ll Do:
About you:
Nice to Have
Benefits:
At Rent the Runway, we’re committed to the wellbeing of our employees, and aim to create a workplace that fosters both personal and professional growth. Our inclusive benefits include, but are not limited to:
Rent the Runway is an equal opportunity employer. In accordance with applicable law, we prohibit discrimination against any applicant or employee based on any legally-recognized basis, including, but not limited to: race, color, religion, sex (including pregnancy, lactation, childbirth or related medical conditions), sexual orientation, gender identity, age (40 and over), national origin or ancestry, citizenship status, physical or mental disability, genetic information (including testing and characteristics), veteran status, uniformed service member status or any other status protected by federal, state or local law.
_________
The anticipated base salary for this position is $170k to $200k. The actual base salary offered will depend on a variety of factors, including without limitation, the qualifications of the individual applicant for the position, years of relevant experience, level of education attained, certifications or other professional licenses held.
By submitting your application below, you agree that you have read and acknowledge Rent the Runway's Candidate Privacy Policy, found here.
Why buy when you can rent? Choose from thousands of designer pieces for special occasions and every day.
Please mention you found this job on AI Jobs. It helps us get more startups to hire on our site. Thanks and good luck!
Understand the required skills and qualifications, anticipate the questions you may be asked, and study well-prepared answers using our sample responses.
Analytics Engineer Q&A's