Applied Scientist Ii, Amzn Shipping-prd & Tech

Amazon Amazon · Big Tech · IN, HR, Gurugram · Applied Science

Applied Scientist II at Amazon Shipping focused on building production-quality ML models for transportation logistics. This role involves improving package movement planning and execution by addressing challenges in cost auditing, financial data quality, delivery delay prediction, and first-mile shipping cost reduction. The scientist will utilize various ML paradigms, ensure scalability across regions, and contribute to the ML community through publications and mentorship.

What you'd actually do

  1. build ML models to help our transportation cost auditing platforms effectively audit off-manifest (discrepancies between planned and actual shipping cost)
  2. build models to improve the quality of financial and planning data by accurately predicting ship cost at a package level
  3. build models that predict delivery delay for every package
  4. refining and translating Transportation domain-related business problems into one or more Machine Learning problems
  5. employ a family of reusable modelling solutions to ensure that your ML solution scales across multiple regions (such as North America, Europe, Asia) and package movement types (such as small parcel movements and truck movements)

Skills

Required

  • building models for business application experience
  • PhD, or Master's degree and 4+ years of CS, CE, ML or related field experience
  • programming in Java, C++, Python or related language
  • algorithms and data structures
  • parsing
  • numerical optimization
  • data mining
  • parallel and distributed computing
  • high-performance computing

Nice to have

  • Unix/Linux
  • professional software development

What the JD emphasized

  • production quality
  • directly used in production services
  • scales across multiple regions

Other signals

  • build ML models
  • production quality
  • directly used in production services
  • transportation domain-related business problems
  • wide array of machine learning paradigms
  • reusable modelling solutions
  • scales across multiple regions