Amazon.com Services LLC

Applied Science, consumer engagement

Sr.AppliedScientist

$100–226k Seattle, Washington, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Senior candidates.

The Brief

“Sr. Applied Scientist at Amazon.com Services LLC. Skills: Machine learning, Deep learning, Recommendations models. Ask research questions about customer behavior. Build state-of-the-art models”

What You'll Achieve.

Improve customer experience; Enhance customer experience; Grow customer relationship; Provide relevant recommendations; Provide timely recommendations; Streamline shopping experience; Show right products; Show products at right time; Help customers discover products; Benefit customers; Benefit retail business

Industry & Context.

Applied Science, consumer engagement
Problems you'll solve

Ask research questions; Understanding complexities

What They're Looking For.

Must Have

4+ years ML models business application, Master's degree and 4+ years applied research, Programming in Java, C++, Python, Experience with neural deep learning, Experience with machine learning

Nice to Have

Experience with modeling tools, Experience with large scale distributed systems, Experience building ML models business application, Experience with large scale ML systems, Understanding of system performance, Understanding of scalability

What You'll Do.

Ask research questions about customer behavior

Build state-of-the-art models

Generate recommendations

Run models on retail website

Participate in Amazon ML community

Mentor Applied Scientists

Mentor software development engineers

Improve customer experience

Build models to innovate

Enhance customer experience

Streamline shopping experience

Show products at right time

Help customers explore catalog

How You'll Work.

Team & Collaboration

ML community; Software development engineers

Full Job Description

How can we improve the customer experience by tailoring what we display on our pages based on available data? How do we build models that help us innovate in different ways to enhance customer experience? What is the relationship between what customers do on the site vs. what they actually buy? How do we do all of this without asking the customer a single question? Our team's stated missions is to "grow each customer’s relationship with Amazon by leveraging our deep understanding of them to provide relevant and timely product, program, and content recommendations." Recommendations at Amazon is a way to help customers discover products. Our team strives to better understand how customers shop on Amazon (and elsewhere) and build recommendations models to streamline customers' shopping experience by showing the right products at the right time. Understanding the complexities of customers' shopping needs and helping them explore the depth and breadth of Amazon's catalog is a challenge we take on every day. Using Amazon’s large-scale computing resources, you will ask research questions about customer behavior, build state-of-the-art models to generate recommendations, and run these models directly on the retail website. You will participate in the Amazon ML community and mentor Applied Scientists and software development engineers with a strong interest in and knowledge of ML. Your work will directly benefit customers and the retail business and you will measure the impact using scientific tools. We are looking for a passionate, hard-working, and talented Applied Scientist who has experience building mission critical, high volume applications that customers love. You will have an opportunity to make an enormous impact on the design, architecture, and implementation of cutting edge products used everyday by people you know. Basic Qualifications: - 4+ years of building machine learning models for business application experience - PhD, or Master's degree and 4+ years of app

Free ATS check

Applying for this Sr. Applied Scientist 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.

Read Company Rants →