Sr. Applied Scientist, Pricing Science

Amazon Amazon · Big Tech · Seattle, WA · Applied Science

The role involves applying deep learning, neural networks, and transformer architectures to price prediction and forecasting problems within Amazon's Pricing Optimization group. It focuses on developing and deploying ML models at scale to improve pricing and promotion strategies, requiring collaboration with product, engineering, and science teams.

What you'd actually do

  1. Develop and advance price prediction models leveraging deep learning frameworks, transformer architectures, and advanced statistical methods to drive pricing accuracy at scale.
  2. Partner with product, engineering, and science teams within Pricing & Promotions to deploy machine learning price estimation and error correction solutions at Amazon scale.
  3. Design and implement neural network-based architectures — including sequence models and transformers — for large-scale price prediction and optimization.
  4. Establish mechanisms to stay up to date on the latest scientific advancements in deep learning, transformer architectures, applied statistics, neural network design, probabilistic forecasting, and multi-objective optimization techniques.
  5. Apply your exceptional technical machine learning expertise — including deep neural networks, attention-based models, and applied statistical analysis — to incrementally move the needle on some of our hardest pricing problems.

Skills

Required

  • PhD, or Master's degree and 6+ years of applied research experience
  • 4+ years of applied research experience
  • 3+ years of building machine learning models for business application experience
  • Experience programming in Java, C++, Python or related language
  • Experience with neural deep learning methods and machine learning

Nice to have

  • Experience with modeling tools such as R, scikit-learn, Spark MLLib, MxNet, Tensorflow, numpy, scipy etc.
  • Experience with large scale distributed systems such as Hadoop, Spark etc.

What the JD emphasized

  • exceptional machine learning modeling and architecture expertise
  • deep learning
  • neural networks
  • transformer-based architectures
  • price prediction and forecasting problems
  • applied statistics and probabilistic modeling
  • large-scale deployment
  • error detection and price quality guardrails at scale
  • deep neural networks
  • attention-based models
  • applied statistical analysis

Other signals

  • pricing optimization
  • deep learning
  • transformer architectures
  • large-scale deployment