Senior Cloud Architect, ML/AI

Posted 2hrs ago

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Job Description

Senior Cloud Architect designing production-grade ML solutions on AWS for customers at scale. Collaborating with the global Forward Deployed Engineering team while working remotely.

Responsibilities:

  • Lead discovery, architecture, and implementation for advanced ML and Generative AI workloads on AWS, including data, training, inference, and integration layers.
  • Act as a hands-on expert and trusted advisor for customers running AI/ML workloads at scale, from initial discovery through deployment and optimization.
  • Translate complex business problems into cloud architectures that are secure, reliable, cost-efficient, and observable.
  • Help evolve how DoiT uses AI/ML internally and with customers by turning one-off solutions into reusable patterns and “gravel roads” that influence the product roadmap.
  • Own the technical success of your engagements: clearly define outcomes, make tradeoffs visible, and ensure designs are production-ready (security, reliability, performance, cost).

Requirements:

  • 4+ years of experience architecting, deploying, and managing cloud-based AI/ML solutions, including production workloads.
  • Proven track record designing and operating large, distributed systems on AWS, selecting appropriate services and patterns to meet business and technical goals.
  • Advanced proficiency with AWS services relevant to AI/ML and GenAI.
  • Hands-on experience with Amazon Bedrock for deploying and scaling foundation models and Generative AI workloads.
  • Experience fine-tuning and deploying Large Language Models (LLMs) and multimodal AI using Amazon SageMaker (including JumpStart).
  • Strong prompt engineering skills and familiarity with rigorous model evaluation (quality, safety, performance).
  • Understanding of agentic capabilities and patterns for AI agents that autonomously perform tasks and integrate with existing systems.
  • Experience with Amazon Q Business and Amazon Q Developer (or similar tools) to accelerate insight generation and development workflows.
  • In-depth knowledge of Amazon SageMaker components such as Pipelines, Model Monitor, Data Wrangler, and SageMaker Clarify for bias detection and interpretability.
  • Proficiency integrating TensorFlow, PyTorch, and other ML frameworks with SageMaker for model development, fine-tuning, and deployment.
  • Experience with distributed training (multi-GPU or multi-node) and performance optimization for inference.
  • Strong data-engineering skills on AWS: Amazon S3, AWS Glue, Lake Formation, Redshift for AI/ML data pipelines.
  • Experience building end-to-end AI/ML workflows using services like AWS Lambda, Step Functions, API Gateway, and containerized deployments on Amazon EKS / AWS Fargate.
  • Hands-on experience with CI/CD for AI/ML using AWS CodePipeline, CodeBuild, SageMaker Pipelines, or similar.
  • Proficiency in monitoring and operating AI systems using Amazon CloudWatch and SageMaker Model Monitor.
  • Strong understanding of AI governance, security, and compliance on AWS, including IAM, KMS, and data privacy patterns.
  • Familiarity with AI ethics and bias detection/mitigation (e.g., using SageMaker Clarify or similar tools).
  • Working knowledge of Google Cloud AI tools (e.g., Vertex AI, Cloud AutoML, BigQuery ML) sufficient to reason about multi-cloud architectures and integration points.
  • Proven ability to mentor peers, run enablement sessions, and collaborate across Sales, CS, and Product.
  • Excellent communication skills across technical and business audiences; able to simplify complex ideas and influence decisions.
  • Natural ownership mentality: you escalate early, resolve fast, and own the outcome.
  • Demonstrated ability to work effectively in a remote-first, global environment.

Benefits:

  • Unlimited Vacation
  • Flexible Working Options
  • Health Insurance
  • Parental Leave
  • Employee Stock Option Plan
  • Home Office Allowance
  • Professional Development Stipend
  • Peer Recognition Program