Applied Scientist, Personalization, Personalization

Amazon Amazon · Big Tech · IL, Haifa · Applied Science

Seeking an Applied Scientist to build Amazon's next-generation customer memory and personalization systems. This role involves designing and building ML and LLM-powered solutions for extracting, validating, and applying customer knowledge in production systems, focusing on areas like fact extraction, memory quality, temporal reasoning, and grounded personalization. The work operates at scale and requires balancing quality, latency, and coverage.

What you'd actually do

  1. design and build ML and LLM-powered solutions for Amazon's customer memory and personalization systems
  2. work on how customer knowledge is extracted, validated, and applied in production systems
  3. own the end-to-end delivery of ML solutions, from problem formulation and modeling to offline and online experimentation, and production deployment at scale
  4. deliver high-quality, scalable systems that power customer-facing experiences
  5. drive work across areas such as fact extraction, memory quality and lifecycle, temporal reasoning, and grounded personalization, while navigating tradeoffs between quality, latency, and coverage

Skills

Required

  • Knowledge of programming languages such as C/C++, Python, Java or Perl
  • Experience in patents or publications at top-tier peer-reviewed conferences or journals
  • Strong communication and collaboration skills

Nice to have

  • Experience in building and launching deep learning and machine learning models for business applications
  • Solid knowledge of big data and cloud technologies (e.g., Spark, AWS, etc.)
  • Experience with information retrieval, recommender systems, natural language processing, and/or personalization algorithms
  • Publications at top Web, Machine Learning, Natural Language Processing conferences such as KDD, ICML, NeurIPS, ACL, EMNLP, etc.

What the JD emphasized

  • building systems that move beyond reacting to customer behavior, to actually understanding and remembering it over time
  • transforming noisy, unstructured signals into durable, high-quality representations of customer preferences, intents, and life events
  • extracts, curates, and reasons over customer knowledge
  • customer memory layer
  • real time
  • scale, latency, and quality
  • precision, recall, and responsiveness
  • end-to-end delivery
  • production deployment at scale
  • high-quality, scalable systems
  • customer-facing experiences
  • fact extraction
  • memory quality and lifecycle
  • temporal reasoning
  • grounded personalization
  • navigating tradeoffs between quality, latency, and coverage

Other signals

  • customer memory
  • personalization systems
  • LLM reasoning
  • recommendation systems
  • information extraction
  • knowledge representation