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2019 University Graduate - Data Scientist - Uber Eats (New York)

New York, NY의 Data Science, University

At Uber, we ignite opportunity by setting the world in motion. We take on big problems to help drivers, riders, delivery partners, and eaters get moving in more than 600 cities around the world.

 

We welcome people from all backgrounds who seek the opportunity to help build a future where everyone and everything can move independently. If you have the curiosity, passion, and collaborative spirit, work with us, and let’s move the world forward, together.

About the Role

 

Uber Everything Data Scientists help solve the most challenging problems related to Uber's ambitious and rapidly expanding on-demand delivery businesses such as Uber Eats. Come tackle fascinating and difficult problems associated with Uber's three-sided delivery marketplace, including personalized search and recommendation for restaurants and dishes, travel and food preparation time prediction, text mining and natural language processing, demand and supply forecasting, growth and spend optimization, dynamic pricing, dispatch and routing optimization, and many more. To solve these problems, data scientists leverage unique data sources diverse in both geographical and temporal dimensions and in both structured (data from app sessions, trips, etc.) and unstructured (menu descriptions, food photos, support contacts, etc.) forms.  

What You’ll Need

 

  • Graduate degree required with PhD preferred (with anticipated graduation in 2019) in statistics, math, machine learning, operations research, economics, EECS, etc.
  • Prior research, data science modeling, or engineering experience in the aforementioned domains
  • Familiarity with technical tools for analysis - Python (with Pandas, etc.), R, SQL, etc.; previous software engineering background a plus
  • Research mindset with bias towards action - able to structure a project from idea to experimentation to prototype to implementation
  • Passionate and attentive self-starters, great communicators, amazing follow-through - you have a great work ethic and love the responsibility of being held accountable for the results

 

Bonus Points For

 

  • Experience with A/B testing

 

About the Team

Uber Eats Data Scientists help solve the most challenging problems related to Uber's ambitious and rapidly expanding on-demand food delivery businesses, which currently operates in more than 45 countries globally and is the largest outside of China. These fascinating and difficult problems include personalized search and recommendation for restaurants and dishes, travel and food preparation time prediction, text mining and natural language processing, demand and supply forecasting, growth and spend optimization, dynamic pricing, dispatch and routing optimization, and many more.

Below is a list of sub domains in our NYC location:

  • Restaurant (NYC) | The restaurant team aims to increase restaurant selection on Uber Eats while setting up restaurant partners for success. We leverage statistics and machine learning techniques to optimize the experience of restaurants at different life cycles. From onboarding, to menu creation, marketing, and order experience, we empower them with tools to increase demand and maintain a frictionless interaction with the platform.
  • Marketplace - Logistics and Marketplace Intelligence (NYC) | From dispatch and routing optimization to predicting food delivery time, the Logistics and & MI team provides DS solutions to create the best customer experience on all sides of the Eats marketplace in the most efficient way. The team also provides marketplace management solutions using state of the art machine learning techniques and our dispatch simulator.

지원자 개인정보 취급방침 확인

Uber에서는 단순히 다양성을 인정하는 데 그치지 않고, 이를 격려하고 후원하면서 자사의 직원과 제품 그리고 커뮤니티의 이익을 위해 다양성을 최대한 활용하고 있습니다. Uber는 평등한 기회를 부여하는 직장이라는 자부심을 갖고 있는 소수 인종 우대 고용 기업입니다. Uber는 인종, 피부색, 가계, 종교, 성별, 출신 국가, 성적 취향, 나이, 시민권 소지 여부, 결혼 여부, 장애 여부, 성 정체성 또는 경력 여부에 관계없이 평등한 고용 기회를 부여하기 위해 노력합니다.