First Advisor
Bruce Irvin
Date of Award
Spring 6-14-2026
Document Type
Thesis
Degree Name
Bachelor of Science (B.S.) in Computer Science and University Honors
Department
Computer Science
Language
English
Subjects
JALZAP framework, Agile software development, AI in Software Development, Technical Debt, Scope Creep, Project Management
Abstract
The rapid adoption of generative AI tools allows software teams to quickly code applications, but it comes at a cost: high scope volatility, technical debt, and unrealistic expectations, which break traditional Agile frameworks. This thesis introduces JALZAP, a lightweight, hybrid Agile framework designed to serve small, high-agility teams facing compressed timelines and unpredictable schedules. This framework was evaluated over 16 weeks through a Portland State University Capstone project working for a pre-seed startup sponsor, where a six-person team built Flowmind: an AI-powered iOS task management app meant to serve users with neurodevelopmental disorders like ADD/ADHD. JALZAP implements structural boundaries, including a Kanban-like “One-Task” restriction, an XP-inspired “Zero-Point” rule that deprives technical debt tasks of story point value, and mandatory “Sprint Breaks.” Framework performance was analyzed quantitatively through GitHub Project Insights, revealing JALZAL successfully stabilizing team velocity over eight sprints, delivering 178 completed story points, reducing scope through negotiation by 50% through empirical metrics, and ultimately shipping 10 production builds to iOS TestFlight. The findings demonstrate JALZAP’s success as a transferable model for small, constrained teams navigating high-volatility startup environments.
Recommended Citation
Nouri, Pouya, "JALZAP: An Agile Hybrid for AI-Accelerated Software Development" (2026). University Honors Theses. Paper 1858.
Included in
Computational Engineering Commons, Computer and Systems Architecture Commons, Data Storage Systems Commons, Technology and Innovation Commons