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Research & Model Intelligence Lead

Ant-Tech
FULL_TIME Remote · US New York, New York, US Posted: 2026-05-11 Until: 2026-07-10
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Job Description
Tasks The Opportunity As Research & Model Intelligence Lead, you'll take full ownership of the systems and science that power our edge — from model research and fine-tuning to inference optimization, evaluation frameworks, and the AI agent intelligence layer. You will be expected to lead a team that builds, evaluates, and deploys models that support our investment activities. This is a senior role with real leadership weight. You'll lead a team of ML engineers, NLP specialists, and quantitative researchers — setting research direction, running evaluation cycles end-to-end, and ensuring that model improvements translate to trading performance. You'll partner tightly with traders, strategists, and platform engineers. We're looking for an AI-native, agentic engineer-researcher: someone who instinctively uses LLMs and modern tooling to accelerate experimentation, evaluation, and iteration — and teaches their team to do the same. You create leverage through models, people, and rigorous evaluation. What You'll Do Own the research and model intelligence domain Take end-to-end ownership of the systems that generate, evaluate, and serve our trading intelligence — including fine-tuned LLMs, prompt engineering pipelines, NLP signal extraction, agent architectures, and evaluation infrastructure. Lead and scale a team Act as a true people leader: set research direction, coach performance, run planning, and create clarity across a team spanning ML engineering, NLP, quantitative research, and agent development. Bridge research and production Turn model improvements into deployed trading performance. Own the full pipeline from hypothesis through evaluation to production serving — keeping it fast, reliable, and measurable. Partner with senior stakeholders Work directly with trading strategists, execution engineers, and platform leads. Translate trading needs into research priorities and keep everyone aligned as strategies evolve. Build with an AI-first mindset Use LLMs and agentic workflows to accelerate research processes — including experiment design, evaluation automation, literature synthesis, and knowledge management. Architect for inference quality and speed Design model serving, evaluation, and agent orchestration systems that are observable, reproducible, and optimized for performance. Own tradeoffs between model capability and serving performance. Set the standard Define how the team designs experiments, evaluates results, reviews model performance, and ships to production — both scientifically and operationally. Requirements About You Strong people leader with experience running technical teams through real delivery Systems thinker who understands the full lifecycle from research to production inference Comfortable operating in ambiguity and bringing structure through experimentation Strong project management instincts — able to sequence research bets and manage evaluation cycles AI-native and scrappy — focused on leverage, automation, and modern tooling Values rigor, measurable outcomes, and impact over complexity or consensus Experience That Helps (But Isn’t Dogma) Experience leading ML, NLP, or research teams shipping models in high-stakes or latency-sensitive environments Ownership of evaluation and continuous monitoring systems for deployed models Experience with LLM fine-tuning, prompt optimization, inference serving (quantization, multi-provider racing, GPU orchestration), or agent architectures Strong applied ML or quantitative research background with a focus on production deployment Curiosity, learning speed, and ownership mindset (financial markets experience not required) Nice to Have Experience managing senior cross-functional stakeholders and driving alignment Background in trading, finance, crypto, or similar domains with direct P&L impact Familiarity with NLP for news or event-driven signal extraction Ideally based within ±3 hours of EST Benefits Compensation & Package Base Salary + Benefits Package + Performance related bonus (TBD on %)