Ingénieur En Machine Learning/machine Learning Engineer, Proserve Shared Delivery Team - Data & AI

Amazon Amazon · Big Tech · CA, ON +1 · Applied Science

This role involves designing, implementing, and managing end-to-end AI/ML and Generative AI solutions for enterprise clients on AWS. The engineer will prepare data, develop models, deploy solutions, and architect scalable ML pipelines and MLOps using AWS services, focusing on delivering business value through AI adoption.

What you'd actually do

  1. Mise en œuvre de projets IA/AA et GenIA de bout en bout : comprendre les besoins métiers, préparer les données, développer des modèles, déployer et surveiller les solutions.
  2. Conception et implémentation de pipelines d'apprentissage automatique prenant charge des charges de travail ML haute performance, fiables, évolutives et sécurisées.
  3. Architecture de solutions ML évolutives et d'opérations ML (MLOps) via les services AWS, en utilisant des solutions GenIA lorsque pertinent.
  4. Collaboration avec des équipes transverses (Science appliquée, DevOps, Ingénierie des données, Infras

Skills

Required

  • AWS services
  • Machine Learning
  • Artificial Intelligence
  • Generative AI
  • MLOps
  • Data preparation
  • Model development
  • Solution deployment
  • Pipeline design
  • Scalable ML architecture

Nice to have

  • understanding of AWS products and services
  • customer-facing experience
  • migration strategies to AWS

What the JD emphasized

  • large, complex Machine Learning (ML) and Artificial Intelligence (AI) systems
  • Generative AI (GenAI)
  • massive amounts of disparate data
  • diverse array of enterprise use
  • AI/ML and GenAI solutions
  • AI/ML and GenAI solutions
  • ML project lifecycle
  • AI/ML and GenAI solutions
  • ML pipelines
  • ML Ops
  • GenAI solutions

Other signals

  • design, implement, and manage AWS AI/ML and GenAI solutions
  • architecting complex, scalable, and secure AI/ML and GenAI solutions
  • implementing end-to-end AI/ML and GenAI projects: understand business needs, prepare data, develop models, deploy and monitor solutions
  • designing and implementing ML pipelines supporting high-performance, reliable, scalable, and secure ML workloads
  • architecting scalable ML solutions and ML Ops via AWS services, using GenAI solutions where relevant