Senior Applied Scientist, Amazon Core Search

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

Senior Applied Scientist to improve Amazon's search experience by developing ML models for search autocomplete, semantic matching, and ranking systems. The role involves leading end-to-end science projects, mentoring, and collaborating with engineers and scientists to deliver customer-facing impact with high precision, high recall, and low latency solutions.

What you'd actually do

  1. Develop and deploy ML models to produce high-quality, diverse search autocomplete suggestions.
  2. Design and train semantic matching models (bi-encoders, cross-encoders, and distillation from large foundation models) for suggestion ranking and relevance.
  3. Develop reinforcement learning and reward-modeling approaches to continuously improve suggestion quality.
  4. Train multi-objective ranking and scoring systems that balance suggestion diversity, specificity, and relevance.
  5. Design and implement scalable model architectures optimized for strict latency constraints, including knowledge distillation, quantization, and efficient inference strategies for production deployment.

Skills

Required

  • building machine learning models
  • developing algorithms for business application
  • Java
  • C++
  • Python
  • neural deep learning methods
  • machine learning

Nice to have

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

What the JD emphasized

  • high precision
  • high recall
  • low latency
  • strict latency constraints

Other signals

  • improving search on Amazon using NLP, ML, and DL technology
  • develop high precision, high recall, and low latency solutions for search
  • develop scalable science and engineering solutions that work successfully in production
  • lead science innovation to improve the customer search experience through higher-quality autocomplete search results