A generative AI-supported spiral model for developing an MBA dissertation proposal: a proposal
Highlight 5 main ideas of the spiral model in software
engineering and then discuss how these 5 ideas are also useful (with some
adaptations) for guiding the generative AI-supported MBA dissertation proposal
development.
The spiral model, introduced by Barry Boehm, offers a risk-driven,
iterative framework for complex projects. Its five main ideas provide
structured flexibility, which adapts well to generative AI-supported MBA
dissertation proposal development by incorporating AI for rapid ideation,
validation, and refinement.
Main Ideas
·
Risk-driven process: Development prioritizes identifying and mitigating high risks early
through analysis, rather than fixed plans.
·
Iterative cycles (spirals): The process repeats in loops, each building on
the prior one to refine objectives, design, and outputs incrementally.
·
Objective setting: Each cycle starts by defining goals, alternatives, constraints, and
requirements based on prior feedback.
·
Prototype development: Builds tangible prototypes or models in each cycle to test assumptions
and gather real-world insights.
·
Evaluation and planning: Ends each cycle with customer review, progress assessment, and
commitment to the next spiral's plan.
Adaptations for MBA Proposals
These ideas translate to dissertation proposals by treating the process
as iterative spirals, with generative AI accelerating prototyping and risk
checks for topics like leadership or housing studies.
Risk-driven process: Identify risks like topic novelty or data access; use AI to scan
literature gaps (e.g., query "AI impact on Singapore REITs risks")
and simulate supervisor critiques, adapting from software risks to academic
feasibility.
Iterative cycles: Cycle through proposal drafts—start broad, refine via AI-generated
outlines—mirroring spirals but with shorter loops (days vs. months) for agile
academic pivots.
Objective setting: Define research questions and scope per cycle; AI prompts like
"refine MBA proposal on dividend stocks" generate alternatives,
incorporating user constraints like Singapore focus.
Prototype development: AI creates draft sections or visuals (e.g., literature maps) as
"prototypes" for quick testing, faster than manual writing, reducing
early commitment errors.
Evaluation and planning: Review AI outputs with self-assessments or peers, then plan next
cycle; AI summarizes feedback, ensuring continual alignment with MBA standards
like methodology rigor.
*** use generative AI to produce some dissertation proposal prototypes to facilitate the student-researcher's own critical thinking, reflective and deep learning, and exploratory literature review effort to develop and refine his/ her own dissertation proposal with his/ her own voice and in his/ her own words.
A collection of blog notes on using chatgpt for research purpose.

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