Risepoint is an education technology company that provides world-class support and trusted expertise to more than 100 universities and colleges. We primarily work with regional universities, helping them develop and grow their high-ROI, workforce-focused online degree programs in critical areas such as nursing, teaching, business, and public service. Risepoint is dedicated to increasing access to affordable education so that more students, especially working adults, can improve their careers and meet employer and community needs.
The Impact You Will Make
In this role, you will lead the technical outcomes and rigor for both the intelligence layer that powers how Risepoint engages with students at every stage of their journey and the data engineering backbone beneath it, serving as the principal point of accountability for the domain. You will define and lead end-to-end initiatives—from strategy and architecture through cross-functional implementation and measurable outcomes—that directly shape retention, engagement, and enrollment results for thousands of students across more than 100 university partners.
You will shape and execute the technical vision for and delivery of the “Next Best Experience” platform: the predictive engine that turns raw behavioral signals into personalized, timely outreach. You will build alignment across Product, Engineering and business stakeholders on technical approaches. Your decisions, technical expertise and data-driven recommendation will determine who gets reached, when, and how—translating data science into student outcomes that help working adults succeed in programs that change their lives.
You will bring our mission to life by leading initiatives that make the student journey smarter and more human at the same time. Every initiative you own—from scoping a churn-risk model through deploying it into production and measuring its downstream impact—translates directly into a real person getting the support they need before they fall through the cracks. By driving cross-functional alignment and accountability across Product, Engineering, and CX teams, you will help Risepoint’s university partners serve more students more effectively.
How You Will Bring Our Mission to Life
What You Will Do
Initiative Leadership & Cross-Functional Ownership
- Set direction for and lead AI/ML initiatives end-to-end—scoping ambiguous business opportunities, defining the problem and success criteria, designing the technical approach, managing implementation, and driving outcomes—coordinating across Product, Engineering, CX, Partnership, and university partner teams.
- Own accountability for delivering measurable business outcomes from each initiative: retention lift, engagement improvement, enrollment conversion, and pipeline efficiency.
- Drive alignment and decision-making across teams at each stage of an initiative’s lifecycle, resolving moderately complex, cross-functional problems independently and proactively while escalating only when tradeoffs require leadership decision.
- Identify and scope net-new AI/ML opportunities that deliver impact for students, university partners, and Risepoint’s business; frame options, recommend a path forward, and advocate for prioritization with leadership.
- Manage relationships with key vendors and software providers as a workstream leader, ensuring delivery commitments are met.
- Influence peers, managers, and senior stakeholders across BT and adjacent business functions—including Partnership and Customer Experience—by translating technical tradeoffs into business implications and building support for shared decisions without direct authority.
Model Development & Production Delivery
- Build and deploy predictive models—including churn risk, engagement propensity, and success likelihood—that power proactive student outreach and are monitored continuously in production.
- Lead the design and implementation of “next best action” logic in close partnership with Product and CX, from logic design through production deployment.
- Prototype, test, and productionize models using MLOps frameworks (Databricks, MLFlow, dbt, Dagster), owning the full model lifecycle.
- Own clean, reliable data pipelines and feature stores that support model development and production deployment at scale, doubling as the data engineer for the workstream.
- Work with speech analytics and structured CRM/LMS data to derive behavioral insights across the student lifecycle.
Data Engineering & Production Automation
- Architect, build, and own scalable, reliable data pipelines and the underlying data infrastructure (lakehouse, warehouse, and feature stores) end-to-end—operating as the team's principal data engineer.
- Design and maintain data models, ELT/ETL workflows, and feature pipelines that serve both analytics and production model-serving needs.
- Take models to production and keep them healthy there: own packaging, deployment, serving, versioning, and the full production lifecycle, including rollback.
- Automate production workflows with orchestration tools (Dagster, Airflow) for scheduling, dependency management, and pipeline reliability.
- Implement CI/CD pipelines and infrastructure-as-code (Terraform, Docker, Kubernetes) to automate testing, deployment, and reproducible environments.
- Build automated monitoring and observability—data-quality checks, model and data drift detection, alerting, and automated retraining triggers—to keep production systems running with minimal manual intervention.
- Own data quality, governance, lineage, and cost/performance optimization across the platform, setting the engineering standards the team builds against.
Experimentation & Performance Accountability
- Design and lead A/B testing programs to measure model-driven impact on retention, engagement, and satisfaction, owning the decision to ship, iterate, or stop.
- Establish feedback loops and real-world performance monitoring frameworks that enable continuous model improvement.
- Translate complex technical findings into clear, executive-ready narratives that drive cross-functional alignment and action.
Team Leadership & Standards
- Mentor data scientists and engineers across the team and raise the organization’s technical bar through code reviews, pair work, and knowledge-sharing.
- Model ownership, adaptability, and technical leadership in a fast-changing environment; set the standard for what it means to own a domain end-to-end.
- Define technical approaches and promote technical best practices across teams, including standards for data lineage, traceability, and explainability that support user trust and regulatory needs.
- Champion a continuous-learning environment, driving adoption of and experimentation with the latest AI-assisted coding and collaboration tools to multiply team velocity.
- Influence the data science and AI roadmap as the technical expert and thought leader to Product and Engineering leadership.
What Success Looks Like
- Predictive models are deployed, monitored, and demonstrably improving student outcomes (e.g., reduced churn, higher engagement rates)—and you can point to specific initiative decisions you made that drove those results.
- Cross-functional partners in Product, Engineering, CX, Partnership, and Customer Experience describe you as a principal-level technical leader who owns outcomes, not just analysis—who independently resolves moderately complex problems, builds alignment across functions, manages implementation, and delivers results.
- Experiment programs are well-designed, velocity is high, and a clear percentage of tests yield statistically significant outcomes that inform production decisions.
- The data foundation is materially stronger because of your workstream ownership: pipelines are cleaner, features are better documented, and the team ships faster.
- You are actively raising the organization’s technical standard, establishing best practices others adopt, and mentoring data scientists and engineers toward greater ownership and impact.
How Impact Will be Measured
- Business outcomes tied to model-driven initiatives: retention rates, re-engagement rates, enrollment completion, and conversion lift.
- Initiative delivery: on-time scoping, cross-functional execution, and outcome realization against defined success metrics.
- Model performance metrics: accuracy, precision, recall, and AUC across deployed models; degradation alerts and retraining cadence.
- Production reliability and automation: pipeline uptime, data-quality SLAs, deployment frequency, and reduction in manual intervention.
- Experiment velocity and signal rate: number of A/B tests shipped per quarter and percentage yielding statistically significant, actionable results.
- Qualitative feedback from Product, Engineering, CX, Partnership, and Customer Experience partners on initiative ownership, communication quality, cross-functional influence, and effectiveness in resolving moderately complex problems independently.
What You’ll Bring to the Team
Experience That Matters Most
- A proven track record of delivering measurable consumer and business impact through AI/ML initiatives—scoping, managing implementation, and owning outcomes end-to-end.
- Experience operating as a principal-level technical leader or domain authority: independently resolving moderately complex, ambiguous problems; setting direction for AI/ML programs; and delivering outcomes across teams in a cross-functional environment.
- 8+ years in applied machine learning or data science, ideally in education, consumer tech, personalization, or a complex behavioral domain.
- Strong background in predictive analytics, recommendation systems, and experimentation (A/B testing, causal inference, uplift modeling).
- Deep expertise in Python and SQL; proficiency with ML libraries (scikit-learn, XGBoost, TensorFlow, or PyTorch).
- Experience with Databricks, MLFlow, dbt, and Dagster—or demonstrated ability to ramp quickly on a modern MLOps stack.
- Principal-level data engineering experience: architecting and operating production data pipelines, data models, and feature stores at scale.
- Hands-on experience taking models to production and operating them there—deployment, serving, monitoring, and retraining.
- Proficiency with production automation tooling: workflow orchestration (Dagster, Airflow), CI/CD, infrastructure-as-code (Terraform), and containerization (Docker, Kubernetes).
- Strong grounding in data quality, governance, lineage, and observability practices.
- Comfort working with complex, multi-source datasets (CRM, LMS, communication logs, speech analytics).
- Excellent communicator and influencer across technical and non-technical audiences, including peers, managers, executives, and business partners outside BT; you make the science accessible without losing rigor and build support for decisions through evidence, clarity, and trust.
- Bachelor’s or Master’s degree in a technical discipline (computer science, statistics, econometrics, mathematics, or engineering).
Experience That’s Great to Have
- PhD in a technical discipline (not required, but valued).
- Experience in higher education, edtech, or student success platforms.
- Familiarity with human-in-the-loop AI systems and responsible ML practices (bias mitigation, model transparency, fairness metrics).
- Prior work building or operationalizing next best action or propensity-to-engage models at scale.
Risepoint is an equal-opportunity employer and supports a diverse and inclusive workforce.
Skills Required
- Proven track record delivering measurable AI/ML initiatives end-to-end
- Principal-level technical leadership or domain authority in AI/ML
- 8+ years in applied machine learning or data science
- Strong background in predictive analytics, recommendation systems, and experimentation (A/B testing, causal inference, uplift modeling)
- Deep expertise in Python and SQL
- Proficiency with ML libraries (scikit-learn, XGBoost, TensorFlow, or PyTorch)
- Experience with Databricks, MLflow, dbt, and Dagster or ability to ramp quickly on modern MLOps stack
- Principal-level data engineering experience: architecting and operating production data pipelines, data models, and feature stores at scale
- Hands-on experience taking models to production: deployment, serving, monitoring, and retraining
- Proficiency with production automation tooling: workflow orchestration (Dagster, Airflow), CI/CD, Terraform, Docker, Kubernetes
- Strong grounding in data quality, governance, lineage, and observability practices
- Comfort working with complex, multi-source datasets (CRM, LMS, communication logs, speech analytics)
- Excellent communication and influencing skills across technical and non-technical audiences
- Bachelor's or Master's degree in a technical discipline (computer science, statistics, econometrics, mathematics, or engineering)
- PhD in a technical discipline
- Experience in higher education, edtech, or student success platforms
- Familiarity with human-in-the-loop AI systems and responsible ML practices (bias mitigation, transparency, fairness metrics)
- Prior work building or operationalizing next best action or propensity-to-engage models at scale
What We Do
Risepoint is a global education technology company partnering with more than 100 not-for-profit universities to launch and grow affordable, workforce relevant online programs for working adults. Founded in 2007, Risepoint provides the technology, expertise, and capital that help regional universities innovate and grow through online offerings in areas such as nursing, healthcare, teaching, business, and technology. Risepoint employs more than 1,400 professionals across the U.S., the United Kingdom, and APAC.








