Delivery Consultant - Ai/ml, Aws Professional Services

Amazon Amazon · Big Tech · San Diego, CA · Machine Learning Science

This role focuses on implementing end-to-end AI/ML and GenAI solutions for enterprise customers using AWS services. The consultant will design, deploy, and manage these solutions, focusing on MLOps and customer success throughout the project lifecycle.

What you'd actually do

  1. 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

  • Bachelor's degree in Computer Science, Engineering, a related field, or equivalent experience
  • 3+ years of cloud architecture and solution implementation experience
  • 3+ years data, software, or ML engineering, with understanding of distributed computing (e.g., data pipelines, training and inference, ML infrastructure design)
  • 3+ 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)
  • 3+ years developing with SQL, Python, and at least one additional programming language (e.g., Java, Scala, JavaScript, TypeScript)

Nice to have

  • Experience communicating technical concepts to a non-technical audience
  • Knowledge of security and compliance standards including HIPAA and GDPR

What the JD emphasized

  • deep understanding of AWS products and services
  • design, implement, and manage AWS AI/ML and GenAI solutions
  • technical expertise and best practices throughout the ML project lifecycle
  • architecting complex, scalable, and secure AI/ML and GenAI solutions
  • trusted advisors to our customers
  • leading the implementation process
  • understanding business needs to data preparation, model development, deployment and monitoring
  • Designing and implementing machine learning pipelines that support high-performance, reliable, scalable, and secure ML workloads
  • Designing scalable ML solutions and operations (MLOps) using AWS services and leveraging GenAI solutions when applicable
  • Collaborating with cross-functional teams
  • Serving as a trusted advisor to customers on AI/ML and GenAI solutions and cloud architectures

Other signals

  • customer-facing role
  • design and implement AWS AI/ML and GenAI solutions
  • MLOps
  • end-to-end AI/ML and GenAI projects