Applied Scientist Ii, Grocery, Retail & In-store Experience (graise)

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

Applied Scientist II role focused on designing, developing, and deploying computer vision and machine learning models for the Amazon grocery domain. The role involves end-to-end ownership of the model lifecycle, from data analysis and experimentation to production deployment and iteration, with a focus on improving customer shopping experience. Collaboration with engineering, product, and business teams is key, as is staying current with state-of-the-art research.

What you'd actually do

  1. Design, train, and evaluate computer vision and machine learning models for complex grocery-domain problems including product identification, shelf perception, and in-store scene understanding — iterating rapidly from prototype to production-quality solutions
  2. Conduct rigorous exploratory data analysis to characterize domain-specific challenges (image variability, catalog gaps, label noise) and translate findings into actionable modeling decisions
  3. Own the model development lifecycle from experimentation through deployment — collaborating with software and ML engineers to ensure models meet latency, throughput, and reliability requirements at production scale
  4. Design and execute offline and online evaluation frameworks — defining metrics that capture both model performance and downstream business impact, and diagnosing failure modes to prioritize improvements
  5. Build and improve data pipelines and annotation workflows that feed model training, including active learning strategies to maximize label efficiency

Skills

Required

  • PhD, or Master's degree
  • Experience in patents or publications at top-tier peer-reviewed conferences or journals
  • Experience programming in Java, C++, Python or related language
  • 3+ years of building models for business application experience

Nice to have

  • 2+ years of hands-on experience building and deploying computer vision models (object detection, image classification, segmentation, or visual search) on real-world data beyond academic benchmarks
  • Demonstrated ability to take a model from research prototype to production deployment — including performance profiling, latency optimization, and working within serving infrastructure constraints
  • Practical experience with noisy, imperfect, or sparse training data — including techniques such as semi-supervised learning, active learning, weak supervision, or synthetic data generation
  • Experience building or contributing to annotation pipelines and human-in-the-loop workflows that improve data quality and labeling efficiency over time
  • Track record of clearly documenting experiments, writing technical design documents, and communicating results to cross-functional partners

What the JD emphasized

  • production-quality solutions
  • production scale
  • production deployment

Other signals

  • design, develop, and deploy machine learning and computer vision models
  • own the model development lifecycle from experimentation through deployment
  • models will directly improve the shopping experience for millions of customers