Agentic AI Architect
Role details
Job location
Tech stack
Job description
We are looking for a highly experienced Agentic AI Architect to lead the design and implementation of enterprise-scale agentic AI solutions. This role will be responsible for defining architecture, guiding development teams, and ensuring scalable, secure, and high-performing AI systems that leverage LLMs, multi-agent frameworks, and enterprise integrations., * Define end-to-end architecture for agentic AI solutions, including multi-agent systems, orchestration layers, and integrations
- Design and implement scalable agent frameworks using technologies such as LangChain, Semantic Kernel, AutoGen, CrewAI, etc.
- Lead development of LLM-driven systems (Azure OpenAI, OpenAI, Anthropic, etc.) with robust prompting strategies
- Architect RAG pipelines, memory systems, and tool integration layers
- Establish best practices for AI governance, security, and Responsible AI
- Design integration strategies with enterprise systems (CRM, ERP, APIs, data platforms)
- Provide technical leadership, mentorship, and code quality oversight to development teams
- Collaborate with business stakeholders to translate requirements into technical solutions
- Ensure performance, scalability, reliability, and cost optimization of AI systems
- Drive innovation by evaluating emerging AI technologies and frameworks
Requirements
The ideal candidate combines deep technical expertise in AI/ML with strong architectural design skills and experience delivering complex, production-grade AI solutions., * 10+ years of experience in software engineering, AI/ML, or solution architecture
- Strong expertise in Python and modern backend architectures
- Hands-on experience with LLM ecosystems and agent frameworks
- Proven experience designing multi-agent systems and distributed architectures
Deep understanding of:
- Prompt engineering and LLM optimization
- Embeddings and vector databases (FAISS, Pinecone, Azure AI Search, etc.)
- Retrieval-Augmented Generation (RAG)
- Experience with cloud platforms (Azure preferred, AWS/Google Cloud Platform acceptable)
- Strong knowledge of API design, microservices, and event-driven architecture
- Familiarity with security, authentication (OAuth, SSO), and data governance
- Experience leading technical teams and driving architecture decisions
Good to Have
- Experience with Model Context Protocol (MCP) or similar integration standards
- Exposure to enterprise AI transformation programs
- Knowledge of MLOps / LLMOps frameworks
- Experience with frontend or conversational UI frameworks
- Certifications (Azure AI Engineer, Solutions Architect, etc.)