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BYU Basketball AI Workflow

A scheduling analytics and executive briefing workflow that turned NCAA data, committee thresholds, and staff constraints into weekly decision support.

AI implementationworkflow designvalidationadoption
Synthetic public view Schedule intelligence workflow
Source data
Committee thresholds
Scenario model
Staff brief
NCSOS 293 -> 59NET 46 -> 9Q1/Q2 0-2 -> 5-1
NCSOS 293 -> 59

+234 improvement

NET 46 -> 9

+37 improvement

Q1/Q2 0-2 -> 5-1

resume-strength shift

Problem

Schedule planning was high stakes, data-heavy, and difficult to translate into staff-ready decisions quickly.

What I Designed

Mapped NCAA committee thresholds, schedule constraints, comparison cohorts, output formats, and weekly decision cadence before using AI coding assistance to help implement repeatable workflows.

Validation

Created domain checks for quadrant classification, schedule scenarios, source consistency, and executive-ready summaries so non-technical operators could trust the recommendations.

Adoption

Delivered staff-ready recommendations and reporting that were used in real planning decisions, then iterated based on operator feedback.

Positioning note

This work is framed as AI-assisted implementation. My ownership is problem definition, workflow design, evaluation criteria, validation, rollout, user feedback, and adoption. Coding-heavy pieces were built with AI coding assistance.