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EverOps partners with enterprise engineering organizations to solve their hardest infrastructure and delivery challenges from the inside. As enterprises accelerate adoption of AI and GenAI, they need trusted technical leaders who can assess readiness, design secure architectures, and guide teams from strategy to execution. EverOps is seeking an AI Platform Architect to lead short-term, high-impact AI assessments and proofs of concept with enterprise clients. This individual will operate at an Architect level, combining deep AWS, data, and AI platform expertise with a consultative mindset. This role is designed for someone who can own ambiguity, lead discovery, and design scalable AI architectures that can be validated quickly. You will act as the technical lead for AI-focused assessment engagements, working directly with client stakeholders to: Identify and prioritize AI / GenAI use cases; Evaluate data readiness and compliance constraints; Recommend appropriate foundation models and architectures; Design a phased implementation roadmap; Deliver a PoC demonstrating technical feasibility. You are expected to think and operate like an embedded architect and trusted advisor, not just an implementer.
Job Responsibility:
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
Own AI assessment findings and recommendations
Own target-state AI platform architecture diagrams
Own data readiness and compliance assessment summaries
Own model evaluation and selection rationale
Own phased implementation roadmap
Own PoC design and technical validation
Own 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