Delivery Consultant - Ai/ml, Aws Professional Services Wwps Life Science

Amazon Amazon · Big Tech · NY +1 · Machine Learning Science

This role is for a Delivery Consultant on the AWS Professional Services team, focusing on implementing end-to-end AI/ML and Generative AI solutions for enterprise customers in the life sciences industry. The consultant will design, implement, and manage AWS AI/ML and GenAI solutions, working closely with customers to understand their needs, architect scalable solutions, and ensure successful adoption. Responsibilities include data preparation, model development, deployment, monitoring, MLOps, and acting as a trusted advisor.

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

  • Experience with AI/ML technologies
  • 3+ years of building machine learning and generative AI models for business application experience
  • 3+ years of customer-facing work, engaging with customer executives, technologists or partners to solve business problems with advanced technologies experience
  • Experience with cloud services related to machine learning (e.g., Amazon SageMaker) and generative AI applications
  • 3+ years of coding, data querying languages (e.g. SQL), and scripting languages (e.g. Python)

Nice to have

  • Knowledge of AWS services including compute, storage, networking, security, databases, machine learning, and serverless technologies
  • Knowledge of AWS services including SageMaker, Bedrock, EC2, ECS, EKS, OpenSearch and AWS certifications
  • 2+ years of experience with design, deployment, and ev

What the JD emphasized

  • customer-facing
  • building software solutions around large, complex Machine Learning (ML) and Artificial Intelligence (AI) systems
  • develop AI/ML models
  • apply AI/ML to a diverse array of enterprise use
  • 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
  • gather requirements
  • assess current infrastructure
  • propose effective migration strategies to AWS
  • trusted advisors to our customers
  • guidance on industry trends, emerging technologies, and innovative solutions
  • leading the implementation process
  • ensuring adherence to best practices
  • optimizing performance
  • managing risks throughout the project
  • Implementing end-to-end AI/ML and GenAI projects
  • data preparation
  • model development
  • deployment
  • monitoring
  • Designing and implementing machine learning pipelines
  • Designing scalable ML solutions and operations (MLOps)
  • leveraging GenAI solutions
  • Collaborating with cross-functional teams
  • prepare, analyze, and operationalize data and AI/ML models
  • trusted advisor to customers on AI/ML and GenAI solutions and cloud architectures
  • Sharing knowledge and best practices within the organization
  • mentoring
  • training
  • publication
  • creating reusable artifacts
  • Ensuring solutions meet industry standards
  • supporting customers in advancing their AI/ML, GenAI, and cloud adoption strategies
  • customer-facing role
  • travel to customer sites
  • Experience with AI/ML technologies
  • building machine learning and generative AI models for business application experience
  • customer-facing work
  • engaging with customer executives, technologists or partners to solve business problems with advanced technologies experience
  • Experience with cloud services related to machine learning (e.g., Amazon SageMaker) and generative AI applications
  • coding
  • data querying languages (e.g. SQL)
  • scripting languages (e.g. Python)
  • design, deployment, and ev

Other signals

  • customer-facing
  • implementing end-to-end AI/ML and GenAI projects
  • designing and implementing machine learning pipelines
  • designing scalable ML solutions and operations (MLOps)
  • collaborating with cross-functional teams
  • trusted advisor to customers on AI/ML and GenAI solutions