Senior Data Scientist - Middle Mile & Pitstops

RELAY Technologies
London, England
11 months ago
Applications closed

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We’re committed to fostering an incredible work environment for our employees.

Why We Exist

Relay’s purpose is to elevate and accelerate e-commerce through delivery.

Our Vision

To be the most beloved delivery company in the world.

Our Mission

Realising the most efficient delivery network to create the most compelling experience for clients, consumers and relayers.

Relay Leadership

Our leadership team and advisors have years of experience in logistics and technology.

Johnathan Jenssen

Founder and CEO

Founder and CCO

Founding CTO

Role

Department: Senior Talent Acquisition Partner - Data (12 month FTC)

Department: Talent Acquisition Partner - Business (6 month FTC)


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