Posted Jul 9, 2026

AI Engineering Tech Lead

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We are looking for AI Engineering Tech Lead to drive the design and delivery of AI agent systems and multi-agent architectures. This is a technical leadership role combining deep hands-on engineering with technical leadership — guiding architectural decisions, mentoring engineers, and maintaining high standards across the codebase. Requirements - 5+ years of experience in software engineering with a strong focus on AI/ML systems - Expert-level Python skills, including async programming and design patterns. - Demonstrated experience building AI agents and multi-agent systems using LangChain and LangGraph. - Strong practical knowledge of LLM integration patterns: prompt engineering, function/tool calling, retrieval-augmented generation (RAG), embeddings, and vector search. - Extensive experience with cloud platforms - AWS and/or Azure - including deployment, scaling, and management of AI workloads. - Solid general ML foundation: understanding of model training, evaluation, inference pipelines, and the broader ML development lifecycle. - Strong CI/CD pipeline expertise. - Hands-on experience with containerization and orchestration in production environments. - Practical experience with infrastructure-as-code tools for managing cloud resources reliably and repeatably. - Experience implementing AI observability. - Proficiency in using AI tools for everyday tasks (Claude Code, Cursor, Advanced prompting, etc) - Experience designing and building robust APIs (FastAPI, Flask, or similar) and integrating them into larger system architectures. - Proficiency with SQL and NoSQL databases. - Ability to lead technical discussions, conduct meaningful code reviews, and mentor team members. - Upper-Intermediate English or higher. Would be and advantage: - High knowledge of core ML frameworks - Hands-on experience with AWS SageMaker and broader AWS ML ecosystem. - Solid understanding of the full ML lifecycle. Responsibilities: - Lead the technical design and architecture of AI agent platforms and multi-agent workflows built on LangChain and LangGraph. - Hands-on development of AI agents. - Integrate LLMs from providers such as OpenAI, Anthropic, and Azure OpenAI into production-grade agent pipelines. - Build and optimize CI/CD, containerization, and infrastructure-as-code practices for the team. - Establish and maintain AI observability across agent systems - tracing execution paths, monitoring performance, tracking costs, and surfacing anomalies. - Mentor and guide engineers through code reviews, architectural discussions, and knowledge sharing sessions. - Collaborate with product managers, solution architects, and stakeholders to align technical implementation with business objectives. - Ensure system reliability, scalability, and maintainability through clean architecture, automated testing, and deployment best practices. - Contribute to defining engineering standards, development workflows, and documentation practices across the team. - Contribute to technical solutions for AI-oriented proposals during pre-sale cycles