Data Scientist, ML (Agentic, CX)
Robinhood
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Compensation
Salary & market context
112% above the BLS national median
BLS national median: $74,680
- $185,000
- $139,000
- $163,000
Requirements
Top requirements
- You have strong Python and SQL skills, with experience building and evaluating machine learning systems end to end
- You have experience with agent-based AI systems, including reasoning loops, tool use, memory, retrieval-augmented generation, and orchestration
- You have experience designing experiments and applying causal inference methods, including A/B testing and measurement design
- You are comfortable working through ambiguous problems and collaborating with partners across product and engineering
Perks & setup
Benefits candidates care about
- Challenging, high-impact work to grow your career.
- Performance-driven compensation with multipliers for outsized impact, bonus programs, equity ownership, and 401(k) matching.
- Best-in-class benefits to fuel your work, including 100% paid health insurance for employees with 90% coverage for dependents.
- Lifestyle wallet — a highly flexible benefits spending account for wellness, learning, and more.
Why candidates care
Benefits & perks
- Challenging, high-impact work to grow your career.
- Performance-driven compensation with multipliers for outsized impact, bonus programs, equity ownership, and 401(k) matching.
- Best-in-class benefits to fuel your work, including 100% paid health insurance for employees with 90% coverage for dependents.
- Lifestyle wallet — a highly flexible benefits spending account for wellness, learning, and more.
- Employer-paid life & disability insurance, fertility benefits, and mental health benefits.
- Time off to recharge including company holidays, paid time off, sick time, parental leave, and more!
- Exceptional office experience with catered meals, events, and comfortable workspaces.
- In addition to the base pay range listed below, this role is also eligible for bonus opportunities + equity + benefits.
Start here
Requirements
- You have strong Python and SQL skills, with experience building and evaluating machine learning systems end to end
- You have experience with agent-based AI systems, including reasoning loops, tool use, memory, retrieval-augmented generation, and orchestration
- You have experience designing experiments and applying causal inference methods, including A/B testing and measurement design
- You are comfortable working through ambiguous problems and collaborating with partners across product and engineering
Responsibilities
What you'll do
- You will work with product engineering, product management, and ML infrastructure teams to deliver production-ready AI systems at scale.
- As a Data Scientist, Agentic (CX), you will lead machine learning development across the customer experience stack.
- You will partner closely with product and engineering to improve reasoning, expand tool usage, and strengthen feedback loops between live systems and offline evaluation.
- What you’ll do Build and deploy machine learning models for customer support systems, including intent classification, escalation detection, clarification, summarization, and multi-agent orchestration Design evaluation frameworks using LLM-based review methods, human feedback loops, and automated quality metrics to identify regressions before customer impact Develop propensity, segmentation, and personalization models that support proactive outreach and tailored AI experiences Translate advances in agent architectures into production systems, partnering with engineering on prompt design, retrieval systems, tool use, memory, and orchestration Develop systems that maintain response quality and reliability at scale while working with product, engineering, legal, and compliance partners What you bring You have strong Python and SQL skills, with experience building and evaluating machine learning systems end to end You have experience with agent-based AI systems, including reasoning loops, tool use, memory, retrieval-augmented generation, and orchestration You have experience designing experiments and applying causal inference methods, including A/B testing and measurement design You are comfortable working through ambiguous problems and collaborating with partners across product and engineering Preferred Qualifications Experience building and evaluating agent-based systems for production use Experience developing recommendation, ranking, or personalization systems at scale Experience working on AI products in regulated industries such as financial services.
- If our mission energizes you and you’re ready to build the future of finance, we look forward to seeing your application.
Role snapshot
About the role
Join us in building the future of finance.
Our mission is to democratize finance for all. An estimated $124 trillion of assets will be inherited by younger generations in the next two decades. The largest transfer of wealth in human history. If you’re ready to be at the epicenter of this historic cultural and financial shift, keep reading.
About the team + role
We are building an elite team, applying frontier technologies to the world’s biggest financial problems. We’re looking for bold thinkers. Sharp problem-solvers. Builders who are wired to make an impact. Robinhood isn’t a place for complacency, it’s where ambitious people do the best work of their careers. We’re a high-performing, fast-moving team with ethics at the center of everything we do. Expectations are high, and so are the rewards.
More detail
Nice to have
- s
- Experience building and evaluating agent-based systems for production use
- Experience developing recommendation, ranking, or personalization systems at scale
- Experience working on AI products in regulated industries such as financial services.
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