Must-Haves:
● Experience: 3+ years of hands-on experience designing and implementing cloud solutions, with at least 1-2 years specifically focused on AWS AI/ML services (Medior to Senior level).
● AWS ML Ecosystem: Deep, practical knowledge of Amazon Bedrock, SageMaker and managed AI services (e.g., Comprehend, Rekognition, Textract).
● Programming: Strong proficiency in Python. You should be comfortable writing clean, production-ready code.
● Cloud Fundamentals: Solid grasp of core AWS services (IAM, S3, VPC, Lambda, API Gateway) and how to secure ML workloads within a multi-account AWS environment.
● Infrastructure as Code (IaC): Experience deploying infrastructure using AWS CDK, Terraform, or CloudFormation.
● Consulting Chops: Excellent communication skills. You need to be able to present complex technical architectures to both C-level executives and technical teams.
Nice-to-Haves (Bonus Points):
● Certifications: AWS Certified Machine Learning – Associate, AWS Certified Data Engineer - Associate, AWS Certified Solutions Architect – Associate.
● Generative AI: Hands-on experience with Amazon Bedrock, LangChain, LlamaIndex, or building RAG pipelines.
● Data Engineering: Familiarity with AWS data services like Glue, Athena, and Redshift.
● Agency/Consultancy Background: Previous experience working in a professional services or client-facing agency environment.