Amazon.com Services LLC
Machine Learning Science, Applied Science, transportation and logistics
AppliedScientist,WorldwideReturns&Recommerce
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Applied Scientist, Worldwide Returns & Recommerce at Amazon.com Services LLC. Skills: Machine learning, Large Language Models, Natural Language Understanding, GenAI. Design models. Develop models”
What You'll Achieve.
Achieve zero cost of returns; Achieve zero waste; Achieve zero defects; Create long-term value; Improve customer experience; Identify return root cause; Optimize re-use; Evaluate returned package
Industry & Context.
Solve complex problems; Solve broad problems
What They're Looking For.
Must Have
3+ years building models, Master's degree and 4+ years experience, PhD and 4+ years experience, Experience programming in Java, Experience programming in C++, Experience programming in Python, Experience building machine learning models, Experience developing algorithms
Nice to Have
Experience using Unix/Linux, Experience in professional software development, Experience in patents, Publications at top-tier conferences, Publications at top-tier journals
What You'll Do.
Use Python to train models
Use Python to test models
Use Python to deploy models
Use Jupyter notebook to train models
Use Jupyter notebook to test models
Use Jupyter notebook to deploy models
Use Pytorch to train models
Use Pytorch to test models
Use Pytorch to deploy models
Use machine learning to create solutions
Use analytical techniques to create solutions
Work with data engineering teams
Work with software engineering teams
Build model implementations
Integrate models in production
Integrate algorithms in production
How You'll Work.
Team & Collaboration
Data engineering teams; Software engineering teams
Full Job Description
Welcome to the Worldwide Returns & ReCommerce team (WWR&R) at Amazon.com. WWR&R is an agile, innovative organization dedicated to ‘making zero happen’ to benefit our customers, our company, and the environment. Our goal is to achieve the three zeroes: zero cost of returns, zero waste, and zero defects. We do this by developing groundbreaking products and driving truly innovative operational excellence to help customers keep what they buy, recover returned and damaged product value, keep thousands of tons of waste from landfills, and create the best customer returns experience in the world. We have an eye to the future – we create long-term value at Amazon by focusing not just on the bottom line, but on the planet. We are building the most sustainable re-use channel we can by driving multiple aspects of the Circular Economy for Amazon – Returns & ReCommerce. Amazon WWR&R is comprised of business, product, operational, program, software engineering and data teams that manage the life of a returned or damaged product from a customer to the warehouse and on to its next best use. Our work is broad and deep: we train machine learning models to automate routing and find signals to optimize re-use; we invent new channels to give products a second life; we develop highly respected product support to help customers love what they buy; we pilot smarter product evaluations; we work from the customer backward to find ways to make the return experience remarkably delightful and easy; and we do it all while scrutinizing our business with laser focus. You will help create everything from customer-facing and vendor-facing websites to the internal software and tools behind the reverse-logistics process. You can develop scalable, high-availability solutions to solve complex and broad business problems. We are a group that has fun at work while driving incredible customer, business, and environmental impact. We are backed by a strong leadership group dedicated to operational excellence
Applying for this Applied Scientist, Worldwide Returns & Recommerce role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
ANONYMOUS · UNFILTERED
What do employees actually say about Amazon.com Services LLC?
Real rants from real employees. Read before you apply.