EverOps

AI Platform Architect

EverOps

full-time

Posted on:

Location Type: Remote

Location: United States

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About the role

  • Lead technical workshops to identify, refine, and prioritize high-impact AI and GenAI use cases aligned with business objectives.
  • Translate business problems into system design requirements and AI workflows.
  • Assess existing data platforms, pipelines, governance, and accessibility for AI workloads.
  • Evaluate data quality, lineage, security, and suitability for training, RAG, and inference patterns.
  • Design AI architectures that comply with enterprise security, privacy, and regulatory constraints (PII, PHI, internal policies).
  • Evaluate and design integrations across APIs, event streams, and existing systems.
  • Evaluate and recommend foundation models and AI services, including Amazon Bedrock, Amazon Nova, and open-source models.
  • Analyze tradeoffs across cost, latency, accuracy, and scalability.
  • Design GenAI patterns such as RAG, agent workflows, and inference pipelines.
  • Produce high-level and detailed AWS reference architectures for prioritized AI use cases.
  • Define phased implementation roadmaps that balance speed, risk, and long-term maintainability.
  • Identify PoC scope that can be executed within a short engagement.
  • Partner with stakeholders to develop ROI and TCO models for AI initiatives.
  • Provide cost modeling for model usage, data pipelines, infrastructure, and operations.
  • Deliver AI assessment findings and recommendations.
  • Create target-state AI platform architecture diagrams.
  • Summarize data readiness and compliance assessments.
  • Provide model evaluation and selection rationale.
  • Define phased implementation roadmap.
  • Design and validate PoC.
  • Prepare executive-ready presentations and documentation.

Requirements

  • 8+ years in Cloud, Platform, SRE, or Infrastructure Engineering roles
  • Proven experience operating at an Architect level
  • Strong client-facing and consultative experience
  • Deep hands-on experience with AWS, including multi-account architectures and governance
  • Strong knowledge of infrastructure as code (Terraform preferred)
  • Experience designing secure, scalable platforms in AWS Organizations environments
  • Practical experience with AI/ML platforms, preferably AWS-native (Bedrock, SageMaker, Glue, Athena, OpenSearch)
  • Experience with GenAI architectures (RAG, embeddings, vector stores, agent frameworks)
  • Familiarity with model evaluation, prompt engineering, and inference optimization
  • Understanding of AI cost drivers and scaling considerations
  • Strong grounding in SRE principles, observability, reliability, and operational excellence
  • Experience designing production-ready systems with monitoring, alerting, and security baked in
  • Ability to lead workshops, whiteboard architectures, and influence senior stakeholders
  • Comfortable translating complex technical concepts into business-level narratives
  • Strong written documentation and presentation skills
  • Experience delivering AI assessments or AI strategy engagements
  • Background in regulated industries (Healthcare, Fintech, Enterprise SaaS)
  • AWS Certified Solutions Architect – Professional
  • Experience building internal platforms or AI enablement frameworks
Benefits
  • Health insurance
  • 401(k) matching
  • Paid time off
  • Remote work options
  • Professional development opportunities
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
AI workflowsdata platformsdata governanceAI architecturesAPIsevent streamsfoundation modelsinference pipelinesinfrastructure as codemodel evaluation
Soft Skills
client-facing experienceconsultative experienceleadershipinfluencecommunicationdocumentationpresentation skillsworkshop facilitationproblem translationstakeholder partnership
Certifications
AWS Certified Solutions Architect – Professional