Required Skills: AI Architect
Job Description
Job Title: AI Architect
Location: Remote
Key Responsibilities
- AI Architecture & Solution Design
- Define enterprise AI reference architectures that enable rapid experimentation, scalable deployment, and long-term maintainability
- Design end-to-end AI solutions spanning data ingestion, model development, deployment, and monitoring layers
- Ensure architectural decisions balance innovation with enterprise standards for security, performance, and cost optimization
- Create reusable patterns, templates, and accelerators that reduce time-to-value for AI implementations
Data Architecture & MLOps Foundation
- Architect data ecosystems that provide high-quality, accessible, and governed data for AI/ML workloads
- Design MLOps pipelines enabling continuous integration, delivery, and monitoring of AI models at scale
- Establish feature stores, model registries, and versioning frameworks that ensure reproducibility and traceability
- Optimize data architectures for real-time inference, batch processing, and hybrid deployment scenarios
Platform & Infrastructure Strategy
- Define cloud-native AI platform strategies leveraging Azure, AWS, GCP, or hybrid environments
- Evaluate and recommend AI/ML platforms, tools, and frameworks aligned with client capabilities and objectives
- Design infrastructure architectures that optimize compute, storage, and networking for AI workloads
- Ensure platform choices support scalability, cost efficiency, and future technology evolution
AI Governance & Security Architecture
- Embed governance, security, and compliance requirements into AI architecture from design phase
- Design model explainability, bias detection, and fairness monitoring capabilities into solution architectures
- Architect audit trails, lineage tracking, and access controls that meet regulatory requirements
- Ensure architectures support responsible AI principles including transparency, accountability, and privacy
Technical Leadership & Stakeholder Alignment
- Translate business requirements into technical architectures that stakeholders across business and IT can understand
- Guide cross-functional teams including data engineers, data scientists, and DevOps through implementation
- Influence enterprise architecture decisions to ensure AI readiness across technology landscape
- Serve as technical authority on AI initiatives, resolving design conflicts and ensuring architectural integrity
Innovation & Technology Roadmap
- Evaluate emerging AI technologies (GenAI, LLMs, edge AI) and assess applicability to client contexts
- Define technology roadmaps that evolve AI capabilities in alignment with business strategy
- Lead proof-of-concepts and technical pilots to validate architectural approaches before scale
- Contribute to intellectual property through reusable assets, frameworks, and technical publications
Preferred Skills
- Enterprise AI Architecture – Proven ability to design scalable, production-grade AI architectures that support diverse use cases from experimentation through enterprise-wide deployment with measurable business impact
- Data Engineering & MLOps Mastery – Deep expertise in architecting data pipelines, feature stores, model registries, and MLOps frameworks that enable continuous delivery and monitoring of AI models at scale
- Cloud & Platform Expertise – Extensive hands-on experience with cloud-native AI services across Azure (Azure ML, Synapse, Databricks), AWS (SageMaker, Bedrock), or GCP (Vertex AI) with ability to design hybrid and multi-cloud solutions
- Technical Leadership & Influence – Strong ability to lead technical teams, resolve complex design challenges, and communicate architectural decisions effectively to both technical and business stakeholders
- Governance & Security Integration – Experience embedding responsible AI principles, security controls, and regulatory compliance requirements into AI architectures from design through deployment
Qualifications:
- 10-15 years of overall IT experience with minimum 8+ years focused on data engineering, AI/ML, and solution architecture
- 5+ years of experience designing and delivering enterprise-scale AI/ML and GenAI solutions in production environments
- Demonstrated track record of leading architecture for AI transformation programs across multiple industries
- Experience working with Fortune 500 or large enterprise clients in consulting or technology delivery roles
- Knowledge of AI Governance and Responsible & Ethical AI practices.
- MBA preferred.