About the role
Job Role: AI Architect (Agentic AI / Generative AI) Location: Toronto, ON (Hybrid) Duration: 12 Months of contract with Possible extension
Role Overview: We are seeking a highly experienced AI / GenAI Solution Architect with deep expertise in Agentic AI, LLM ecosystems, and enterprise AI architecture. The ideal candidate will lead the design and implementation of scalable, production-grade AI solutions, translating business needs into intelligent, automated systems using modern AI frameworks.
Required Qualifications: 10+ years of experience in: AI/ML, Solution or Enterprise Architecture Strong expertise in: Generative AI / LLMs (GPT, Claude, etc.), Agentic AI / AI Agents / Multi-agent systems, RAG (Retrieval Augmented Generation), API-led architecture & microservices Hands-on experience with: Azure / AWS / GCP, LLMOps / MLOps frameworks Proven experience delivering enterprise-scale AI solutions
Key Responsibilities:
- Agentic AI Architecture & Strategy- Design and define architecture for agentic AI platforms and multi-agent systems Build frameworks for: Agent orchestration, Reasoning workflows, Memory and context handling, Tool usage and decision loops Establish reusable patterns for autonomous and semi-autonomous AI agents
- Solution Design & Enterprise Integration- Architect and implement LLM-powered solutions integrated with: Enterprise applications, APIs and microservices, Knowledge management systems (RAG, vector databases) Design scalable, modular, and resilient architectures across hybrid cloud environments Enable interoperability between LLMs, orchestration layers, and enterprise systems
- Generative AI & LLM Ecosystem- Develop solutions using GPT, Claude, and other foundation models Build and optimize: RAG pipelines, Prompt orchestration frameworks, LLM-based applications Drive LLMOps / MLOps practices including model lifecycle, monitoring, and optimization
- Governance, Risk & Responsible AI- Implement Responsible AI frameworks covering: Explainability, Fairness, Transparency Define controls for: Agent permissions, Human-in-the-loop workflows, Data privacy and compliance Ensure adherence to security, regulatory, and enterprise governance standards
- Platform Engineering & Operationalization- Design production-ready AI platforms with: Observability and monitoring, Performance tuning, CI/CD pipelines Enable scalable deployment of AI solutions using cloud-native architectures
- Stakeholder Leadership- Partner with business, engineering, data, and product teams Lead discovery sessions to identify high-impact AI use cases Provide architectural guidance and AI strategy recommendations to leadership
Preferred Qualifications: Experience with:Workflow automation and orchestration tools, Enterprise integration patterns Regulated industries (banking, insurance, healthcare) Familiarity with: AI governance, compliance, and risk management Preferred Certifications: AWS / Azure / GCP AI or ML certifications TOGAF or equivalent architecture certification Security certifications (nice to have)