Kumo
AI/ML Engineer - Relational Foundation Models & Predictive Intelligence
Kumo, Raleigh, North Carolina, United States, 27601
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AI/ML Engineer - Relational Foundation Models & Predictive Intelligence
role at
Kumo .
3 weeks ago Be among the first 25 applicants
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Join the Kumo Team Kumo is building the next generation of AI for structured data. With our Relational Foundation Model (RFM), we help some of the world’s largest companies transform their data into predictions, decisions, and end-to-end automated systems.
Our culture is collaborative, fast-moving, and deeply user-obsessed. We value people who take initiative, learn quickly, communicate clearly, and enjoy solving hard technical + people challenges.
Why This Role (and Why Now) Demand for Predictive AI is accelerating faster than ever. Our customers include some of the world’s most influential enterprises across retail, e-commerce, consumer goods, fintech, travel, and technology. These organizations operate at true global scale, hundreds of ML models, billions of data points, and business-critical use cases across recommendations, forecasting, supply chain optimization, fraud, CRM, and more.
We are rapidly expanding our Applied Machine Learning team, a high-impact, highly technical group that sits at the center of our customer engagements. This team guides customers from their very first pilot all the way through to scaled, production-grade deployments of relational predictive models.
This Is a Unique Opportunity For Someone Who Is
Curious and intellectually hungry, always excited to dive into a new dataset, new model class, or unfamiliar industry.
Energized by startup culture, where you move fast, learn constantly, and see the impact of your work immediately.
Motivated by high-growth environments, both personally and professionally, where the ceiling keeps rising as the company scales.
Excited to become an expert practitioner of cutting-edge AI models applied across dozens of real-world use cases.
Thrilled by the chance to work directly with Silicon Valley innovators, global brands, and leaders in data science and the business.
What You’ll Do Support and eventually
own technical success
for enterprise customers adopting the Kumo platform.
Design and build prototypes, workflows, and models across use cases such as:
Recommendations & personalization
Forecasting & demand planning
Fraud detection & risk modeling
Supply chain & logistics optimization
Banking & financial analytics
CRM/growth marketing & user modeling
Work hands-on with large-scale relational datasets, customer pipelines, and production ML systems.
Guide customers through modeling choices, data structures, evals, trust, interpretability, and rollout plans.
Translate ambiguous customer needs into concrete ML solutions and RFM workflows.
Collaborate closely with Kumo engineering and research teams to improve platform capabilities.
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 partner with executives, PMs, analysts, and data scientists.
Minimum Qualifications
Bachelor’s or Master’s in a STEM field (CS, EE, Math, Physics, Stats, etc.).
Strong fundamentals in data science, statistics, or machine learning coursework.
Real-world experience via internships, research, industry work, or substantial project work.
Demonstrated intellectual curiosity and initiative, personal ML/AI projects, open source, research, hackathons, or other hands-on experience.
Strong communication skills; comfortable working with people and navigating technical + non-technical audiences.
Genuine enthusiasm for ML/AI, modern modeling approaches, and applying them to real business problems.
Motivated, self-driven, excited to learn fast, and comfortable in a high-velocity startup environment.
Preferred Qualifications (Bring Strength In At Least One Area)
Deeper expertise in one or more of: ML infrastructure / data engineering
Full-stack development for ML apps
LLM orchestration, agent systems, or model tuning
Large-scale distributed systems
Forecasting, recsys, fraud, or other applied ML domains
Familiarity with GNNs, temporal models, or structured reasoning.
Enterprise integrations, data platforms, or productionizing ML
(We do not expect candidates to have all of these. Deep strength in one area + strong Data Science fundamentals is ideal.)
Working Model
Hybrid: 1+ in-person days per week with teammates located in Chapel Hill, Raleigh, Durham, Cary, and RTP.
Onboarding: 1–2 weeks in person at our SF Bay Area HQ.
Start dates:
Full-time starting January or onwards (open to early graduates).
Part-time (30 hrs/week) available immediately with option to convert to full time after graduation.
Success Looks Like (First 3–6 Months)
Support and eventually lead multiple major customer engagement, delivering real business impact.
Solve multiple challenging predictive machine learning problems, by applying data science skills to large-scale datasets.
Build prototypes and workflows using RFM that demonstrate value and drive adoption.
Collaborate with engineering to improve reliability, performance, and model quality across use cases.
Earn trust from customer technical teams and become their go-to person for ML strategy and execution.
Why Join Kumo? As an AI Engineer at Kumo, you’ll have exposure to an extraordinary range of challenges and industries, the kind most engineers only see after many years in the field. You’ll learn faster here than almost anywhere else because every customer brings a new problem, a new dataset, a new set of constraints, and a new opportunity to push the frontier of what these models can do.
This Role Offers The Rare Chance To
Support and eventually lead technical engagements with some of the largest and most forward-thinking companies in the world.
Build advanced predictive systems using GNNs, temporal models, forecasting engines, and next-generation agentic workflows.
Work cross-functionally with engineering, ML research, product, and executive leaders, both internally and at the customer.
Help define what enterprise ML looks like in practice: the tools, the processes, the workflows, and the impact.
Compensation The base pay range for this role is $105,000 – $160,000 per year.
#J-18808-Ljbffr
AI/ML Engineer - Relational Foundation Models & Predictive Intelligence
role at
Kumo .
3 weeks ago Be among the first 25 applicants
Get AI-powered advice on this job and more exclusive features.
Join the Kumo Team Kumo is building the next generation of AI for structured data. With our Relational Foundation Model (RFM), we help some of the world’s largest companies transform their data into predictions, decisions, and end-to-end automated systems.
Our culture is collaborative, fast-moving, and deeply user-obsessed. We value people who take initiative, learn quickly, communicate clearly, and enjoy solving hard technical + people challenges.
Why This Role (and Why Now) Demand for Predictive AI is accelerating faster than ever. Our customers include some of the world’s most influential enterprises across retail, e-commerce, consumer goods, fintech, travel, and technology. These organizations operate at true global scale, hundreds of ML models, billions of data points, and business-critical use cases across recommendations, forecasting, supply chain optimization, fraud, CRM, and more.
We are rapidly expanding our Applied Machine Learning team, a high-impact, highly technical group that sits at the center of our customer engagements. This team guides customers from their very first pilot all the way through to scaled, production-grade deployments of relational predictive models.
This Is a Unique Opportunity For Someone Who Is
Curious and intellectually hungry, always excited to dive into a new dataset, new model class, or unfamiliar industry.
Energized by startup culture, where you move fast, learn constantly, and see the impact of your work immediately.
Motivated by high-growth environments, both personally and professionally, where the ceiling keeps rising as the company scales.
Excited to become an expert practitioner of cutting-edge AI models applied across dozens of real-world use cases.
Thrilled by the chance to work directly with Silicon Valley innovators, global brands, and leaders in data science and the business.
What You’ll Do Support and eventually
own technical success
for enterprise customers adopting the Kumo platform.
Design and build prototypes, workflows, and models across use cases such as:
Recommendations & personalization
Forecasting & demand planning
Fraud detection & risk modeling
Supply chain & logistics optimization
Banking & financial analytics
CRM/growth marketing & user modeling
Work hands-on with large-scale relational datasets, customer pipelines, and production ML systems.
Guide customers through modeling choices, data structures, evals, trust, interpretability, and rollout plans.
Translate ambiguous customer needs into concrete ML solutions and RFM workflows.
Collaborate closely with Kumo engineering and research teams to improve platform capabilities.
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 partner with executives, PMs, analysts, and data scientists.
Minimum Qualifications
Bachelor’s or Master’s in a STEM field (CS, EE, Math, Physics, Stats, etc.).
Strong fundamentals in data science, statistics, or machine learning coursework.
Real-world experience via internships, research, industry work, or substantial project work.
Demonstrated intellectual curiosity and initiative, personal ML/AI projects, open source, research, hackathons, or other hands-on experience.
Strong communication skills; comfortable working with people and navigating technical + non-technical audiences.
Genuine enthusiasm for ML/AI, modern modeling approaches, and applying them to real business problems.
Motivated, self-driven, excited to learn fast, and comfortable in a high-velocity startup environment.
Preferred Qualifications (Bring Strength In At Least One Area)
Deeper expertise in one or more of: ML infrastructure / data engineering
Full-stack development for ML apps
LLM orchestration, agent systems, or model tuning
Large-scale distributed systems
Forecasting, recsys, fraud, or other applied ML domains
Familiarity with GNNs, temporal models, or structured reasoning.
Enterprise integrations, data platforms, or productionizing ML
(We do not expect candidates to have all of these. Deep strength in one area + strong Data Science fundamentals is ideal.)
Working Model
Hybrid: 1+ in-person days per week with teammates located in Chapel Hill, Raleigh, Durham, Cary, and RTP.
Onboarding: 1–2 weeks in person at our SF Bay Area HQ.
Start dates:
Full-time starting January or onwards (open to early graduates).
Part-time (30 hrs/week) available immediately with option to convert to full time after graduation.
Success Looks Like (First 3–6 Months)
Support and eventually lead multiple major customer engagement, delivering real business impact.
Solve multiple challenging predictive machine learning problems, by applying data science skills to large-scale datasets.
Build prototypes and workflows using RFM that demonstrate value and drive adoption.
Collaborate with engineering to improve reliability, performance, and model quality across use cases.
Earn trust from customer technical teams and become their go-to person for ML strategy and execution.
Why Join Kumo? As an AI Engineer at Kumo, you’ll have exposure to an extraordinary range of challenges and industries, the kind most engineers only see after many years in the field. You’ll learn faster here than almost anywhere else because every customer brings a new problem, a new dataset, a new set of constraints, and a new opportunity to push the frontier of what these models can do.
This Role Offers The Rare Chance To
Support and eventually lead technical engagements with some of the largest and most forward-thinking companies in the world.
Build advanced predictive systems using GNNs, temporal models, forecasting engines, and next-generation agentic workflows.
Work cross-functionally with engineering, ML research, product, and executive leaders, both internally and at the customer.
Help define what enterprise ML looks like in practice: the tools, the processes, the workflows, and the impact.
Compensation The base pay range for this role is $105,000 – $160,000 per year.
#J-18808-Ljbffr