Job Purpose
The AI Solution Architect designs production-grade AI systems and leads architecture, infrastructure, and pipeline decisions needed for scalable, reliable AI products.
Key Responsibilities
Architecture & System Design
- Design end-to-end AI architectures for enterprise-level production systems.
- Define infrastructure, pipelines, data flows, and model-serving frameworks.
- Ensure architecture meets scalability, reliability, and performance benchmarks.
Technical Enablement & Standards
- Establish best practices for MLOps, deployment, and lifecycle management.
- Build reusable templates, patterns, and architectural guidelines.
- Support benchmarking, model evaluation, and optimization.
Cross-Functional Collaboration
- Work with engineering, AI, data, and product teams to deliver aligned solutions.
- Translate business requirements into actionable technical specifications.
- Provide technical leadership across the delivery lifecycle.
Quality, Governance & Compliance
- Ensure architectural alignment with security, compliance, and operational standards.
- Conduct risk assessments, reviews, and documentation of architecture decisions.
Qualifications & Requirements
- Bachelor's degree in computer science, Computer Engineering, AI/ML, Data Engineering, or related field.
- 7–10+ years of experience in solution architecture, AI/ML systems, or large-scale data engineering.
- Proven experience designing AI/ML system architectures and scalable distributed systems.
- Strong knowledge of cloud platforms, MLOps, pipelines, and data engineering.
- Strong communication, documentation, and cross-functional leadership skills.
- Experience with RAG architectures, vector databases, and LLM-based systems is a plus.
- Experience in enterprise or government-scale transformations is a plus.