Principal AI Engineer
Listed on 2026-06-13
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IT/Tech
AI Engineer (Applied/Software), Machine Learning/ ML Engineer, Data Science Manager, Data Engineering
Drive Wealth is on a mission to make investing easier. We believe that everyone should have the ability to control their financial future, and that access to financial markets should not be limited by geography, wealth, or legacy systems. We are a global B2B financial technology organization dedicated to democratizing access to financial independence around the world.
About the RoleWe are looking for a Principal AI Engineer who thrives at the intersection of data platform engineering and applied artificial intelligence. You will bring AI-native thinking to our data ecosystem and lead building intelligent pipelines, embedding models into data workflows and creating AI-powered analytics capabilities that transform how the business consumes and acts on data.
The Data & Analytics organization at Drive Wealth powers the company's data ecosystem end-to-end. This role sits within the Data Platform Engineering team and introduces a third critical pillar alongside Data Ingestion and the Semantic Data Layer:
- Applied AI & Intelligence Layer – Focused on designing and deploying AI/ML-powered capabilities that sit on top of our data platform, enabling smarter analytics, automation and insight generation at scale
- Design, build and deploy AI and ML-powered solutions that operate on top of our data platform, including LLM integrations, RAG pipelines, embedding workflows and intelligent agents
- Build and maintain the data infrastructure that supports AI use cases: feature stores, vector databases, model input/output pipelines and evaluation datasets
- Partner with data engineers, analysts and product teams to identify where AI can automate, augment or accelerate data workflows and analytical decision-making
- Develop AI-assisted data quality, anomaly detection and observability capabilities that improve the reliability and trustworthiness of our data products
- Establish best practices for responsible AI development on data systems, including prompt engineering standards, model evaluation frameworks, versioning and documentation
- Contribute to self‑service AI‑powered data products that make data more accessible to all consumers like natural language interfaces, intelligent semantic search, automated insight surfacing
- Mentor and support other engineers in building AI literacy and integrating AI‑first approaches into data platform work
- 5+ years of professional experience in data engineering, ML engineering or a related field, with a demonstrated track record of taking AI/ML solutions from concept to production.
- Technical
Skills:- Strong proficiency in Python and SQL
- Hands‑on experience with LLMs, prompt engineering, RAG architectures and AI orchestration frameworks (e.g. Lang Chain or equivalent)
- Familiarity with vector databases and embedding pipelines
- Proficiency with Databricks and AWS, including ML‑oriented services (e.g. Sage Maker, MLflow, Databricks Model Serving)
- Experience with data transformation and orchestration tools (e.g. dbt, Airflow)
- Familiarity with infrastructure as code and MLOps practices (e.g. Terraform, CI/CD for model deployment)
- Solid understanding of data platform fundamentals – pipeline design, data modeling, semantic layers – and how AI capabilities integrate with and depend on them
- Proven ability to work cross‑functionally with product, engineering, analytics and business stakeholders to translate AI opportunities into shipped solutions
- Curiosity, accountability and a drive to apply AI thoughtfully with attention to data quality, model reliability and real‑world usability
- BS in Computer Science, Data Science or equivalent
- Fintech or capital markets experience and awareness of compliance constraints relevant to AI (e.g. model explainability, auditability)
- Experience with agentic AI systems and multi‑step reasoning workflows
- Familiarity with AI evaluation frameworks and dataset curation for fine‑tuning or RLHF
- Prior experience mentoring engineers or contributing to AI/ML best practice development within a team
Pay Range: $265,000 USD – $285,000 USD (includes base, bonus, equity, 401(k) match, and heavily subsidized benefits and perks)
BenefitsWe provide competitive…
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