Full-Time

Director – Data Science

Multiple Teams

Posted on 9/25/2025

Deadline 11/16/25
WGU

WGU

Compensation Overview

$163.2k - $293.8k/yr

+ Bonus

Salt Lake City, UT, USA

In Person

Category
Data & Analytics (1)
Required Skills
Python
Data Science
SQL
Machine Learning
Data Analysis
Requirements
  • Deep expertise in applied machine learning, statistical modeling, and simulations, with hands-on experience deploying models in production environments to drive real-time decision support and automation.
  • Advanced proficiency in Python and SQL, with strong working knowledge of cloud-based data platforms and familiarity with MLOps practices for model deployment and maintenance.
  • Strong background in predictive modeling, natural language processing (NLP), and experimentation methods.
  • Demonstrated ability to design and lead data science initiatives at the intersection of analytics, product, and engineering, translating complex challenges into scalable solutions.
  • Proven experience building and leading high-performing, cross-functional teams; capable of guiding teams through change, scaling operations, and cultivating a culture of innovation and accountability.
  • Track record of developing and executing forward-looking analytics strategies aligned with institutional priorities, including driving adoption of AI-driven systems and tools.
  • Strong project management skills, with the ability to oversee multiple complex initiatives and ensure high-quality delivery within scope and timelines.
  • Skilled in navigating organizational complexity and leading large-scale transformation initiatives related to data systems, team structures, and institutional processes.
  • Excellent communication and interpersonal skills, with the ability to engage and influence senior leaders, collaborate across technical and non-technical teams, and foster data literacy.
  • Experience managing budgets, vendor relationships, and resource allocation to ensure cost-effective delivery and alignment with business value.
Responsibilities
  • Develops and implements an integrated analytics strategy, including decision models, simulations, and recommender systems, to enhance faculty decision-making, reduce decision fatigue, and support personalized academic journeys, while aligning with institutional goals and stakeholder needs.
  • Owns a strategic roadmap for applying AI/ML and simulation-based tools to support continuous improvement of decision intelligence recommendations that support faculty and other student-facing roles and reduce administrative burden.
  • Translates institutional priorities into intelligent systems that anticipate faculty needs and streamline outreach to students.
  • Acts as a thought leader in applied AI, shaping how emerging technologies are leveraged to enable data-informed actions across academic operations.
  • Collaborates with business partners to define and track objectives and success metrics that assess the real-world impact of model recommendations on faculty productivity and student outcomes.
  • Leads the design, development, and production deployment of machine learning models that support timely and personalized faculty interventions.
  • Coordinates with product, engineering, and analytics teams to ensure model outputs are dynamically integrated into other products, tools, or algorithms that depend on real-time data and recommendations.
  • Partners with Product, Business, and MLOps teams to embed models into tools and workflows that reduce the need for manual dashboard review and drive efficient, data-backed actions. Ensures that models are up and running when integrated into workflows.
  • Partners with faculty and operational teams to capture behavioral data and feedback on model-driven decisions, enabling continuous model refinement and performance improvement.
  • Leads, mentors, and develops a high-performing team of data scientists and analysts, cultivating technical excellence and ownership. Actively attracts, retains, and develops top talent to ensure long-term team strength and capability.
  • Fosters a culture of experimentation, delivery, and collaboration that balances cutting-edge innovation with business value.
  • Works closely with other analytics and data teams to share knowledge and maintain alignment on best practices and institutional goals.
  • Serves as a proactive partner to Product, Business, and Engineering counterparts, helping define opportunities where data science can enable smarter, faster decisions. Sets and manages expectations on timelines, technical feasibility, and trade-offs—ensuring transparency while maintaining focus on delivery.
  • Engages non-technical stakeholders with clarity and insight, translating complex solutions into actionable ideas and facilitating adoption.
  • Identifies key data requirements to support model development and insight generation, aligned to high-impact business problems.
  • Collaborates with Data Engineering to ensure pipelines and instrumentation are in place to capture the right data at the right time, at the right quality.
  • Works with internal and external partners to augment datasets as needed and ensure relevant data is accessible within shared platforms.
  • Keeps stakeholders consistently informed about project goals, timelines, milestones, and risks through clear, concise, and timely updates.
  • Adjusts messaging and presentation style based on the audience, translating complex technical concepts into accessible insights for non-technical partners.
  • Collaborates closely with other analytics, data science, engineering, and product teams to ensure alignment, share knowledge, and coordinate delivery across interconnected initiatives.
  • Stays at the forefront of trends in machine learning, applied AI, and educational analytics, evaluating new methods that can improve how decisions are supported.
  • Leads experimentation efforts to test, iterate, and improve models and user experiences, ensuring tools evolve alongside faculty needs.
  • Encourages curiosity, creativity, and long-term thinking in how the team approaches complex academic and operational challenges.
Desired Qualifications
  • 3+ years managing managers.
  • Experience managing large budgets, including oversight of vendor contracts and resource allocation for analytics initiatives.
  • Strong understanding of decision intelligence principles and platforms.

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INACTIVE