AI Engineer Lead We are working on different areas where AI/ML can help portfolio managers, researchers, risk managers, and other functions. Some examples are: enabling traders/researchers to consume vast amounts of research and literature by organizing, summarizing information, sometimes in near real-time, doing quantitative modeling to price instruments, modeling demand and supply of commodities and other fundamentals, modeling weather & optimizing algorithmic execution of trades and modeling and building simulations of risk, to name a few. The AI/ML work spans usage of LLMs, deep learning, reinforcement learning and other ML techniques. The work also requires building AI/ML infrastructure for data wrangling, building feature stores, building frameworks for deployments, measurements, re-training, etc. We are seeking an AI Engineering Lead who has experience with LLMs, deep learning, reinforcement learning, as well as an interest and ability to keep up with advancements in AI/ML. The candidate should also be strong in software engineering and be comfortable with AI/ML experimentation and productionization. Key Responsibilities Lead and mentor a team of AI/ML engineers Define technical vision and roadmap for AI/ML initiatives Partner with stakeholders including portfolio managers, quants, and business teams to identify high-impact opportunities Architect and build scalable AI/ML solutions from experimentation to production Design AI/ML infrastructure including feature stores, deployment frameworks, and monitoring systems Establish best practices for model development, deployment, and evaluation Stay current with AI/ML advancements and apply them to business problems Drive hiring and professional development of team members Required Qualifications Technical Deep expertise in AI/ML including LLMs, deep learning, and reinforcement learning Strong computer science fundamentals Expert in Python and at least one other language (Java, C++, C#, etc.) Experience with cloud platforms (AWS, Azure, or Google Cloud) Hands-on experience with LLM techniques: prompt engineering, fine-tuning, PEFT, RAG Track record of building and deploying AI models at scale Experience with MLOps and production ML infrastructure Leadership 3+ years leading AI/ML engineering teams Proven ability to mentor engineers and grow talent Strong communication skills with technical and non-technical stakeholders Experience delivering complex projects on time Comfortable balancing hands-on technical work with team leadership Preferred Qualifications Advanced degree (MS/PhD) in Computer Science, AI, ML, or related field Experience in financial institutions or fintech Background in reinforcement learning, quant modeling, or algorithmic trading Publications, patents, or open-source contributions in AI/ML Experience building AI/ML platforms from scratch