Lead AI Architect
SNI is serving as a trusted IT Outsourcing partner in line with the needs of World's most prestigious firms and carried out successful projects worldwide.
Scope:
Define the enterprise AI strategy, including commercial versus self-hosted open-source models, optimizing for cost, performance, security, and compliance.
Architect large-scale autonomous multi-agent ecosystems, including orchestration, task delegation, context management, and agent-to-agent communication.
Design the enterprise integration layer connecting AI agents to corporate systems through REST APIs, event-driven architectures, MCP, and custom connectors.
Design distributed vector architectures and knowledge layers, including embedding pipelines, indexing strategies, metadata management, and RAG governance policies.
Own security and compliance at the architectural level, including PII handling, authorization, access control, agent quality metrics, and adherence to the AI Act and other regulatory requirements.
Drive production excellence by defining enterprise cloud architectures with full observability, automated evaluation, monitoring, cost governance, and Responsible AI guardrails.
Act as the technical authority by establishing architectural standards, coordinating across DevOps, Security, and Business teams, and mentoring senior engineers and architects.
Skills:
10+ years of experience in software architecture, software development, data engineering, or ML engineering, with deep hands-on expertise in GenAI and agentic AI.
Proven track record of designing and delivering autonomous multi-agent systems at enterprise scale.
Expert-level understanding of agentic architecture patterns, with the ability to define the technical direction for large engineering teams.
Deep knowledge of model orchestration, inference cost optimization, and model selection across both commercial and open-source models.
Experience architecting large-scale vector databases, embedding pipelines, and retrieval systems.
Ability to design secure, privacy-preserving AI systems that are resilient to hallucinations, prompt injection attacks, and adversarial inputs.
Expert-level experience in cloud architecture on AWS, Azure, or GCP.
Deep expertise in LLMOps, including model versioning, evaluation pipelines, prompt management, cost monitoring, and CI/CD for AI solutions.
Ability to define and establish AI-assisted development standards, governance frameworks, and engineering best practices across teams.
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SNI
Since 2005, SNI has been a reliable outsourcing partner, delivering tailored IT, SAP, AI, and Data solutions to leading organizations across global markets. We drive transformative projects that align with our clients’ s...Lead AI Architect
Lead AI Architect