Senior Applied Scientist, Applied AI Solutions Gtm

Amazon Amazon · Big Tech · Dallas, TX · Applied Science

Senior Applied Scientist role focused on building and deploying production AI solutions for enterprise customers within AWS. The role involves developing ML models and pipelines to drive business outcomes, quantify value, and enable field teams. It requires experience in deep learning, NLP, generative AI, and translating technical findings into business decisions, with a focus on scaling AI impact for customers.

What you'd actually do

  1. Design, develop, and deploy statistical models and machine learning pipelines to drive product improvements, business decisions, and customer outcomes
  2. Work directly with customers during production pilots to build and deploy AI solutions that demonstrate measurable business value
  3. Design and execute A/B experiments and causal inference analyses to measure the impact of new features and model changes
  4. Build ROI models, business case tools, and forecasting systems for demand prediction, capacity planning, workforce optimization, and value quantification
  5. Apply NLP and generative AI techniques to extract insights from structured and unstructured data at scale, and partner with software engineers to productionize models with reliability, monitoring, and operational excellence

Skills

Required

  • PhD, or Master's degree and 6+ years of applied research experience
  • 5+ years of building machine learning models for business application experience
  • Experience with neural deep learning methods and machine learning
  • Experience managing analytics, data science or technology teams

Nice to have

  • Experience with NLP and generative AI techniques
  • Experience with A/B experiments and causal inference analyses
  • Experience with customer analytics, segmentation, and propensity modeling
  • Experience with self-service analytics platforms and automated insight delivery
  • Experience with GTM strategy and translating data patterns into actionable motions

What the JD emphasized

  • production AI solutions
  • measurable business outcomes at scale
  • quantify the value we deliver
  • build repeatable motions that scale globally
  • drive product improvements, business decisions, and customer outcomes
  • build ROI models, business case tools, and forecasting systems
  • apply NLP and generative AI techniques
  • productionize models with reliability, monitoring, and operational excellence
  • customer analytics capabilities
  • self-service analytics platforms
  • automated insight delivery mechanisms
  • enable field teams with reusable analytical assets
  • measure model performance, adoption, and business impact
  • define strategic frameworks and GTM recommendations
  • translate complex model outputs into business decisions

Other signals

  • production AI solutions
  • measurable business outcomes at scale
  • quantify the value we deliver
  • build repeatable motions that scale globally
  • drive product improvements, business decisions, and customer outcomes
  • build ROI models, business case tools, and forecasting systems
  • apply NLP and generative AI techniques
  • productionize models with reliability, monitoring, and operational excellence
  • customer analytics capabilities
  • self-service analytics platforms
  • automated insight delivery mechanisms
  • enable field teams with reusable analytical assets
  • measure model performance, adoption, and business impact
  • define strategic frameworks and GTM recommendations
  • translate complex model outputs into business decisions