Lead AI Engineer
Indexed description
Looking for a Lead AI/Data Engineer to play a critical role in advancing the enterprise AI and data platform. This individual will help scale an in-flight AI and analytics initiative that supports investment decision-making, knowledge management, and data-driven insights across the business.
This is a hands-on technical leadership role for someone who enjoys building, architecting, and deploying production-grade AI and data solutions in a cloud-first environment.
Key Responsibilities
- Design and implement scalable AI and data platforms that unify structured and unstructured internal and external data to support advanced analytics and LLM-powered workflows.
- Build and optimize Retrieval-Augmented Generation (RAG) pipelines, including embedding strategies, vector search, and retrieval performance tuning.
- Develop and maintain robust data ingestion and transformation pipelines across multiple data sources.
- Architect backend services and APIs in Python to expose AI and analytics capabilities such as semantic search, summarization, and decision-support tools.
- Collaborate closely with business and technology stakeholders to translate real-world use cases into scalable solutions.
- Lead technical direction, mentor engineers, and establish best practices across AI, data, and platform engineering.
- Ensure reliability, observability, and governance of AI systems, including monitoring, evaluation frameworks, and security standards.
- Drive the transition from proof-of-concept to enterprise production environments.
Required Qualifications
- 7+ years of experience across AI engineering, data engineering, backend development, or applied machine learning.
- Strong hands-on Python development experience, including API design and scalable system architecture.
- Proven experience designing and deploying production AI or data platforms in cloud environments.
- Deep experience with Azure-based data and AI ecosystems (e.g., Azure OpenAI, Cosmos DB, Azure ML, or related services).
- Experience building RAG systems, vector search workflows, or modern LLM applications.
- Strong understanding of data architecture, pipelines, and distributed systems.
- Ability to balance technical depth with strategic thinking and cross-functional collaboration.
Preferred Experience
- Background working with financial, investment, or real asset data.
- Experience in regulated or enterprise environments.
- Exposure to graph data, knowledge modeling, or advanced analytics.
Why This Role
- Opportunity to shape a high-impact AI platform with real business visibility.
- Hands-on architecture and ownership in a rapidly evolving area of technology.
- Collaborative environment with strong leadership support and long-term investment in AI and data capabilities.
Create a free Caio profile to unlock more results and save your role and location preferences.
Unlock free search