Applied Scientist Ii, Amazon Search

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

Applied Scientist II at Amazon Search focused on building and shipping large-scale deep-learning ranking and semantic-matching models to improve customer search relevance. The role involves designing, training, and deploying models, developing training data and evaluation methods, and running A/B experiments to optimize search results for complex shopping queries.

What you'd actually do

  1. Design, train, and ship deep-learning ranking and semantic-matching models that improve search relevance and reduce how often customers see irrelevant results, across hard query types.
  2. Build the training data and evaluation methods that make these models work: synthetic and historical labels, hard-negative mining, and targeted sampling at the cases where search fails.
  3. Develop signals that match product attributes to what the customer actually asked for.
  4. Run offline and online A/B experiments, analyze precision/recall tradeoffs, and iterate to launch.
  5. Work with engineers and scientists across teams to take models from prototype to production at Amazon scale.

Skills

Required

  • PhD, or Master's degree and 2+ years of CS, CE, ML or related field experience
  • Experience programming in Java, C++, Python or related language
  • Experience with one of the following areas: machine learning technologies, Reinforcement Learning, Deep Learning, Computer Vision, Natural Language Processing (NLP) or related applications

Nice to have

  • Experience in machine learning, data mining, information retrieval, statistics or natural language processing
  • 1+ years of building large-scale machine-learning infrastructure for online recommendation, ads ranking, personalization or search experience
  • Experience with A/B testing
  • Experience in practical work applying ML to solve complex problems for large scale applications
  • Publications in ML, IR, or NLP venues (e.g., NeurIPS, ICML, SIGIR, KDD, ACL)
  • Experience training large-scale or deep neural ranking/relevance models
  • Experience taking ML models from prototype to production

What the JD emphasized

  • large-scale
  • production at Amazon scale
  • customer-facing product

Other signals

  • large-scale relevance and ranking models
  • semantic understanding
  • customer-facing product