Senior Delivery Consultant - Ai/ml, Aws Professional Services

Amazon Amazon · Big Tech · Jersey City, NJ · Machine Learning Science

Senior Delivery Consultant for AWS Professional Services focused on designing, implementing, and managing AI/ML and Generative AI solutions for enterprise customers. This role involves leading project teams, hands-on development, MLOps, and advising customers on cloud AI/ML architectures using AWS services.

What you'd actually do

  1. Leading project teams and implementing end-to-end AI/ML and GenAI projects, from understanding business needs to data preparation, model development, deployment and monitoring
  2. Designing and implementing machine learning pipelines that support high-performance, reliable, scalable, and secure ML workloads
  3. Designing scalable ML solutions and operations (MLOps) using AWS services and leveraging GenAI solutions when applicable
  4. Collaborating with cross-functional teams (Applied Science, DevOps, Data Engineering, Cloud Infrastructure, Applications) to prepare, analyze, and operationalize data and AI/ML models
  5. Serving as a trusted advisor to customers on AI/ML and GenAI solutions and cloud architectures

Skills

Required

  • 5+ years of cloud architecture and solution implementation experience
  • 5+ years of development/programming/scripting language (Python/Java/Bash/Perl) experience
  • 5+ years leading technical teams and hands-on experience focused on data, software, or ML engineering, with understanding of distributed computing (e.g., data pipelines, training and inference, ML infrastructure design)
  • 5+ years developing predictive modeling, natural language processing, and deep learning, with experience in building and deploying ML models on cloud (e.g., Amazon SageMaker or similar)

Nice to have

  • AWS products and services
  • Generative AI (GenAI) solutions
  • MLOps
  • distributed computing
  • data preparation
  • model development
  • deployment and monitoring
  • machine learning pipelines
  • scalable ML solutions
  • cross-functional collaboration
  • Applied Science
  • DevOps
  • Data Engineering
  • Cloud Infrastructure
  • Applications
  • trusted advisor
  • cloud architectures
  • industry trends
  • emerging technologies
  • innovative solutions
  • risk management

What the JD emphasized

  • design, implement, and manage AWS AI/ML and GenAI solutions
  • hands-on development of ML solutions
  • architecting complex, scalable, and secure AI/ML and GenAI solutions
  • building and deploying ML models on cloud

Other signals

  • customer-facing
  • design and implement AWS AI/ML and GenAI solutions
  • lead customer-focused project teams
  • hands-on development of ML solutions
  • MLOps
  • AWS services