Applied Scientist Ii, Alexa Ads

Amazon Amazon · Big Tech · IN, KA, Bengaluru · Applied Science

Applied Scientist II at Amazon Alexa Ads focused on building Generative AI models for conversational ads and personalization. The role involves designing, developing, and evaluating deep learning and GenAI models, conducting data analysis, building ML pipelines, running A/B experiments, and collaborating with engineers for production deployment. The team is greenfield, aiming to rethink ad ranking, pricing, and personalization for voice and screen surfaces, with opportunities for both shipping products and publishing research.

What you'd actually do

  1. Design, develop, and evaluate innovative deep learning and GenAI models for natural language processing (NLP), recommendation systems, and personalization.
  2. Conduct hands-on data analysis and build scalable ML pipelines.
  3. Design and run A/B experiments to measure the impact of new models on customer experience and ad performance.
  4. Collaborate with software development engineers to deploy models into high-scale, real-time production environments.

Skills

Required

  • 4+ years of building models for business application experience
  • PhD, or Master's degree and 4+ years of CS, CE, ML or related field experience
  • Experience in patents or publications at top-tier peer-reviewed conferences or journals
  • Experience programming in Java, C++, Python or related language
  • Experience in any of the following areas: algorithms and data structures, parsing, numerical optimization, data mining, parallel and distributed computing, high-performance computing

Nice to have

  • Experience using Unix/Linux
  • Experience in professional software development
  • Experience (technical and operational) with multiple domain areas of programmatic advertising technologies (DSP, RTB, bid shading, machine learning optimization, ad verification, ad tracking, ad attribution, etc.)
  • Experience building large-scale machine learning models and infrastructure for online recommendation, ads ranking, personalization, or search

What the JD emphasized

  • build machine learning models
  • take models from conception to production
  • rethinking how ads are ranked, priced, and personalized
  • Greenfield team
  • Direct business impact
  • Ship AND Publish
  • publications at top-tier peer-reviewed conferences or journals
  • building large-scale machine learning models and infrastructure for online recommendation, ads ranking, personalization, or search

Other signals

  • Generative AI
  • personalization
  • recommendation systems
  • NLP
  • production deployment