Offers “Amazon”

Expires soon Amazon

Product Data Scientist

  • Seattle (King)
  • Studies / Statistics / Data

Job description



DESCRIPTION

Fire TV is the #1 best-selling streaming media player in the U.S. As we grow our product selection, we are looking for a Data Scientist to work in a data-driven product management team, helping define the user experience for our new Amazon Fire TV product line. In this role, you will have the opportunity to drive our user behavior analysis to help develop better methods for measuring business success and steering product vision. You will study user behavior in depth to validate critical features and user experiences. The role is inherently cross-functional: You will work closely with a high-energy team consisting of software engineering, data analytics, user experience, device marketing, customer service, and executive team members. This role is a good fit for someone who is creative yet highly data-driven and who has strong customer focus and ‘product sense', combined with an established track record in user behavior analysis.
Key Responsibilities:

· Define and implement our user behavior analysis data science methodology and roadmap
· Predict future customer behavior and business conditions through machine learning and predictive modeling.
· Use statistical and predictive techniques to build models for optimizing products and improving user experience
· Inform our AB testing experimentation for product innovation

Desired profile



BASIC QUALIFICATIONS

- 3+ years of work experience in deep data analysis and/or data science in consumer behavior at scale
- 3+ years experience in consumer Internet technologies
- Deep statistical skills - ideally utilized in A/B testing
- Experience with distributed processing analytics tools (such as SageMaker, Hadoop, Hive, MapReduce, Spark)
- Experience working with product teams to inform product choices
- Experience in user behavior analysis
Customer obsessed and highly curious

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