Senior Applied Scientist, Selling Partner Support

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

Senior Applied Scientist role focused on building machine learning and GenAI solutions, specifically agentic frameworks, to improve customer support for Amazon's selling partners. The role involves end-to-end development, collaboration with engineers and product owners, and applying state-of-the-art ML/GenAI techniques to automate workflows and diagnose issues.

What you'd actually do

  1. Use state-of-the-art Machine Learning and Generative AI techniques to create the next generation of tools that empower Amazon's Selling Partners and Support Associates to succeed.
  2. Design, develop and deploy models that either interact with end users or automate entire workflows.
  3. Work closely with teams of scientists and software engineers to drive online model implementations with impactful features through A/B testing.
  4. Establish scalable, efficient, automated processes for large scale data analyses, model benchmarking, model validation and model implementation.
  5. Research and implement novel machine learning approaches.

Skills

Required

  • 4+ years of applied research experience
  • 3+ years of building machine learning models for business application experience
  • PhD, or Master's degree and 6+ years of applied research 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.
  • Demonstrated experience leveraging generative AI tools to enhance workflow efficiency and productivity, with the ability to craft effective prompts and critically evaluate AI-generated outputs in a professional setting
  • Experience identifying opportunities to integrate AI solutions into products and services to drive business value.

What the JD emphasized

  • build machine learning and GenAI solutions (agentic frameworks)
  • end-to-end development
  • complex problems
  • strategic decision-making
  • ML pipelines, platforms and solutions
  • defect detection, automation, and workforce optimization
  • state-of-the-art Machine Learning and Generative AI techniques
  • Design, develop and deploy models
  • automate entire workflows
  • drive online model implementations
  • large scale data analyses
  • model benchmarking
  • model validation
  • model implementation
  • novel machine learning approaches
  • fast-paced, experimental environment
  • Raise the bar for ML design and execution

Other signals

  • building AI-enhanced experiences
  • building applications at the forefront of GenAI applications
  • building machine learning and GenAI solutions (agentic frameworks)