Applied Scientist, Trustworthy Shopping Experience (tse)

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

Applied Scientist role focused on building agentic AI systems for Amazon's Trustworthy Shopping Experience (TSE) team. The role involves developing multi-step reasoning, autonomous task execution, and multimodal intelligence, with a focus on automating complex manual investigation processes. Responsibilities include designing and implementing agentic AI solutions, productionizing models using various fine-tuning approaches, building deep learning and ML solutions, and prototyping rapidly. The role emphasizes end-to-end AI development from research to production, with contributions serving millions of customers.

What you'd actually do

  1. Contribute to the design and development of agentic AI systems with multi-step reasoning, autonomous task execution, and multimodal intelligence, including feedback and memory mechanisms, leveraging reinforcement learning techniques for agent decision-making and policy optimization, with input and guidance from senior scientists
  2. Help productionize models built on top of SFT (Supervised Fine-tuning) and RFT (Reinforced Fine-tuning) approaches, as well as few-shot approaches based on multimodal datasets spanning text, images, and structured data, applying mathematical optimization techniques to improve efficiency, resource allocation, and decision-making in complex workflows, working alongside senior scientists to identify optimal solutions
  3. Contribute to building production-ready deep learning and conventional ML solutions, including multimodal fusion and cross-modal alignment techniques that seamlessly connect visual, textual, and relational understanding, to support automation requirements within your team's scope
  4. Help identify customer and business problems; use reasonable assumptions, data, and customer requirements to solve well-defined scientific problems involving multimodal inputs such as unstructured text, documents, product images, and relational data, developing representations that capture complementary signals across modalities and mapping business goals to scientific metrics
  5. May co-author research papers for peer-reviewed internal and/or external venues, including contributions in areas such as multimodal representation learning and vision-language modeling, and contribute to the wider scientific community by reviewing research submissions, when aligned with business needs

Skills

Required

  • NLP
  • computer vision
  • representation learning
  • agentic architecture
  • deep learning
  • machine learning
  • multimodal fusion
  • cross-modal alignment
  • mathematical optimization
  • reinforcement learning
  • SFT
  • RFT
  • few-shot learning
  • production code development
  • model evaluation
  • troubleshooting
  • research trends
  • scientific problem solving

Nice to have

  • mentoring interns
  • peer-reviewed publications
  • external review activities

What the JD emphasized

  • agentic AI solutions
  • automate complex manual investigation processes
  • multimodal understanding
  • production code
  • rigorously evaluating models
  • end-to-end AI development
  • production

Other signals

  • agentic AI solutions
  • automate complex manual investigation processes
  • production-ready deep learning and conventional ML solutions
  • end-to-end AI development—from research through production