AI Lead Engineer

Tidal Financial Group
20h

About The Position

Tidal is an ETF investment and technology platform that helps partners create, operate, and grow ETFs across the ETF lifecycle—from strategy and product planning to operations, regulatory/compliance, trading support, and distribution. We’re hiring an AI Lead to own the end-to-end delivery of production AI solutions across the organization. You will define and execute AI strategy, build and ship high-impact solutions, establish the standards and governance for secure AI in a regulated environment, and build a high-performing team over time.

Requirements

  • 8+ years building production software systems, including technical leadership on complex initiatives.
  • Proven experience shipping LLM-based applications to production (beyond prototypes), including: retrieval (RAG/hybrid), vector search patterns, and grounding
  • structured outputs and validation
  • evaluation/monitoring and regression prevention
  • Strong Python development skills and experience building APIs/services.
  • Experience deploying secure, observable systems in AWS (e.g., IAM, logging/monitoring, CI/CD; specific services may vary).
  • Hands-on experience integrating LLMs via APIs/SDKs across one or more providers (commercial and/or open-source), including model selection and safe usage patterns.

Nice To Haves

  • Experience in financial services, asset management, or similarly regulated industries.
  • Experience implementing automation with approvals, controlled documents, and audit trails.
  • Experience with multi-model strategies (provider selection, routing, fallback patterns).
  • Experience building internal platforms or reusable AI components (shared libraries, templates, evaluation harnesses).
  • Familiarity with AI governance practices and model risk documentation.

Responsibilities

  • AI solution delivery: Design, develop, and deploy LLM-powered applications, including retrieval (RAG/hybrid), intelligent automation, and agentic AI. Deliver production-grade systems that integrate with existing data sources, internal APIs, and operational tools.
  • Model development Lead the definition, development, and delivery of machine learning models and AI solutions, including training/fine-tuning, evaluation, and deployment in cloud environments (AWS-first; additional cloud experience is a plus).
  • Engineering ownership: Lead the testing, deployment, and ongoing maintenance of AI systems, including operational runbooks, support processes, and reliability improvements.
  • Performance and cost optimization: Optimize AI systems for performance, scalability, latency, and cost (model selection/routing, caching, batching, and other architectural techniques).
  • Architecture & collaboration: Partner with data and engineering leads to architect AI-powered systems end-to-end (data pipelines, permissions, service boundaries, integrations, and operational controls).
  • Evaluation & reliability: Establish evaluation frameworks, monitoring, and observability to ensure AI systems perform accurately and reliably. Build test datasets, track quality metrics, detect drift, and implement regression prevention. In fund operations, incorrect outputs carry real consequences.
  • Cross-functional partnership: Collaborate with business teams to identify automation opportunities and translate requirements into technical solutions. Prioritize initiatives based on operational impact, risk, and feasibility.
  • Technical standards: Define architecture patterns, development standards, and reusable components that enable AI delivery to scale beyond individual projects. Evaluate emerging technologies and recommend adoption paths when they create measurable advantage.

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What This Job Offers

Job Type

Full-time

Career Level

Mid Level

Education Level

No Education Listed

Number of Employees

51-100 employees

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