Amazon Development Center
Applied Science, kindlecontent
AppliedScientist,Personalization
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Applied Scientist, Personalization at Amazon Development Center. Skills: Machine Learning, Generative AI, Personalization, Customer memory. Design ML and LLM-powered solutions. Build ML and LLM-powered solutions”
What You'll Achieve.
Improve customer experiences; Deliver high-quality systems; Deliver scalable systems
Industry & Context.
Problem solving
What They're Looking For.
Must Have
Knowledge of computer science fundamentals, Excellent coding and design skills, Proficiency with Java or Python, Several publications at top-tier conferences or journals, Communication and collaboration skills, Master's degree and experience in CS, CE, ML or related field research
Nice to Have
Experience in building and launching deep learning and machine learning models, Solid knowledge of big data and cloud technologies, Experience with information retrieval, Experience with recommender systems, Experience with natural language processing, Experience with personalization algorithms, Publications at top Web, Machine Learning, Natural Language Processing conferences
What You'll Do.
Design ML and LLM-powered solutions
Build ML and LLM-powered solutions
Extract customer knowledge
Validate customer knowledge
Apply customer knowledge in production systems
Own end-to-end delivery of ML solutions
Conduct offline experimentation
Conduct online experimentation
Deploy solutions at scale
Deliver scalable systems
Power customer-facing experiences
Drive work across fact extraction
Drive work across memory quality
Drive work across memory lifecycle
Drive work across temporal reasoning
Drive work across grounded personalization
Navigate tradeoffs between quality
Collaborate with engineering teams
Collaborate with product teams
Translate research into customer impact
How You'll Work.
Team & Collaboration
Engineering teams; Product teams
Full Job Description
We are seeking an Applied Scientist to help build Amazon’s next-generation customer memory and personalization systems. Are you interested in building systems that move beyond reacting to customer behavior, to actually understanding and remembering it over time? Our team is building Amazon’s customer memory layer – a system that extracts, curates, and reasons over customer knowledge to power next-generation personalization. This includes transforming noisy, unstructured signals into durable, high-quality representations of customer preferences, intents, and life events, and using them in real time to improve customer experiences. We are part of Amazon’s Personalization organization, a high-performing group that leverages large-scale machine learning, generative AI, and distributed systems to deliver highly relevant customer experiences. We tackle challenging problems at the intersection of information extraction, knowledge representation, LLM reasoning, and recommendation systems. Our systems operate under real-world constraints of scale, latency, and quality, requiring careful tradeoffs between precision, recall, and responsiveness. This team plays a central role in defining how Amazon understands its customers, and how that understanding is applied across the shopping experience. As an Applied Scientist, you will design and build ML and LLM-powered solutions for Amazon's customer memory and personalization systems. You will work on how customer knowledge is extracted, validated, and applied in production systems. You will own the end-to-end delivery of ML solutions, from problem formulation and modeling to offline and online experimentation, and production deployment at scale. You will deliver high-quality, scalable systems that power customer-facing experiences. You will 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.
Applying for this Applied Scientist, Personalization role?
Most applicants get filtered before a human reads their resume. See if yours makes the cut.
ANONYMOUS · UNFILTERED
What do employees actually say about Amazon Development Center?
Real rants from real employees. Read before you apply.