AI/ML Specialist - Financial Services (Fraud, Risk & Forecasting)
Location: Mountain View, CA, Remote
Department: Applied ML
Location Type: HYBRID
Employment Type: FULL_TIME
Join the Kumo Team
Why This Role (and Why Now)
- Push the frontier of our core ML algorithms for financial use cases, and
- Work directly with customers to make those capabilities real, trusted, and deployed—then feed those learnings back into the product.
- Energized by high-stakes predictive problems (fraud, risk, forecasting) where the “last mile” matters.
- Highly technical, with a research mindset and strong engineering instincts.
- Excited to be customer-facing and own outcomes—because in a startup, the best product ideas come from the field.
- Motivated by leverage: the things you build become platform capabilities used across many deployments.
What You’ll Do
- Own a domain (fraud/AML, credit risk, or forecasting): define “what good looks like,” build the evaluation plan, run the experiments, and drive adoption.
- Work hands-on with large-scale relational datasets and customer pipelines, with a focus on connected + temporal modeling.
- Design and execute rigorous model validation: leakage-proof evaluation, calibration, robustness to drift/adversaries, and practical interpretability for real teams.
- Translate ambiguous customer needs into concrete modeling workflows and rollout plans.
- Partner closely with Kumo engineering and research to ship platform improvements informed by real customer constraints.
- Act as a technical leader and trusted advisor, understanding that deploying ML is as much a people and business challenge as it is a technical one.
- Deliver demos, workshops, best practices—and help drive pilots → production → expansions (including technical diligence during deal cycles).
- Fraud detection (rings, mule networks, ATO/CNP, abuse patterns)
- Credit scoring, risk modeling, and underwriting
- Relational forecasting across entities and time
- Financial customer analytics (propensity, retention, growth, risk-aware marketing)
Minimum Qualifications
- Bachelor’s, Master’s or PhD in a STEM field (CS, EE, Math, Physics, Stats, etc.) or equivalent practical experience.
- Strong fundamentals in machine learning, statistics, and data science.
- Proven ability to improve ML systems end-to-end: data → modeling → evaluation → production constraints (not just notebooks).
- Solid engineering skills: proficient developing safe and correct code with the latest coding agents.
- Strong communication skills; comfortable navigating technical + non-technical audiences.
- Motivated, self-driven, excited to learn fast, and comfortable in a high-velocity startup environment.
Preferred Qualifications (Bring Strength in at Least One Area)
- Fraud / AML / networked abuse detection (adversaries, class imbalance, delayed labels, investigations)
- Credit risk, scoring, underwriting, or lending analytics (calibration, stability, governance constraints)
- Forecasting at scale (temporal correctness, leakage control, regime shifts, multi-entity forecasting)
- Graph + temporal modeling experience (GNNs, Graph Transformers, sequence/temporal models, structured reasoning)
- ML infrastructure / data engineering for large-scale training + evaluation
- Consumer banking, payments, investments, risk ops, or back office systems
- Or relevant coursework / education in financial systems / finops
Working Model
Success Looks Like (First 3–6 Months)
- Support and eventually lead 2–4 major customer engagements, delivering measurable business impact.
- Solve multiple challenging financial ML problems using rigorous evaluation and sound modeling choices.
- Ship at least one meaningful platform improvement driven by what you see on real customer datasets.
- Earn trust from customer technical teams and become their go-to person for ML strategy and execution.
- Partner with GTM to convert technical wins into production deployments and expansions.
Why Join Kumo?
- Frontier ML on highly connected financial datasets where Graph Transformers can unlock step-change improvements.
- Field-to-core leverage: your learnings become shipped product capabilities, not one-off work.
- Ownership + speed: you’ll move fast, lead critical workstreams, and see direct impact.
- Career acceleration: deep technical work plus customer-facing technical leadership—the skill set that compounds quickly.
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