Sr. AI Process Engineer, Seller Compliance

Amazon Amazon · Big Tech · 31, China +1 · Project/Program/Product Management--Non-Tech

Senior Process Engineer to lead AI-driven engineering initiatives in the Compliance domain, focusing on designing, building, and operating AI-powered solutions to improve Seller compliance outcomes and operational efficiency. Requires deep hands-on expertise in AI/ML development, building/deploying/scaling production AI systems, designing architectures, building ML models and data pipelines, and driving technical collaboration. Experience with Python, cloud platforms (AWS), and ML operations is essential.

What you'd actually do

  1. Design and implement scalable AI/ML solutions for Compliance use cases
  2. Lead the development of efficient ML models and end‑to‑end data processing pipelines from ingestion to serving.
  3. Build robust, production-grade AI services using Python and modern ML frameworks.
  4. Make and document sound architectural decisions, ensuring systems are scalable, secure, and cost‑effective.
  5. Establish and maintain high engineering standards, including testing, monitoring, and documentation.

Skills

Required

  • Python
  • modern ML frameworks (e.g., PyTorch, TensorFlow, or similar)
  • designing, implementing, and operating production AI systems at scale
  • cloud platforms (preferably AWS) and associated ML services
  • data engineering pipelines
  • cloud solutions
  • ETL management
  • databases
  • visualizations
  • analytical platforms

Nice to have

  • NLP
  • deep learning
  • document understanding applications
  • Compliance, risk management, or other highly regulated systems
  • leading technical teams or initiatives
  • mentoring engineers
  • ML Ops, including model deployment, monitoring, and lifecycle management
  • problem-solving
  • analytical skills
  • troubleshooting skills
  • bias for action

What the JD emphasized

  • AI/ML development
  • building, deploying, and scaling production-grade AI systems
  • Python
  • cloud platforms (e.g., AWS)
  • ML operations

Other signals

  • AI-driven engineering initiatives
  • building, deploying, and scaling production-grade AI systems
  • design system architectures
  • build efficient ML models and data pipelines
  • drive technical collaboration
  • ML operations