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Statistical analysis of software development models by six-pointed star framework.

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  • 1Department of Computer Science, Bahria University, Lahore, Pakistan.

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Summary
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This study compares software development process models using the six-pointed star framework. Lightweight models suit small projects, heavyweight models suit medium/large projects, and the AZ model efficiently handles all project sizes.

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Area of Science:

  • Computer Science
  • Software Engineering
  • Project Management

Background:

  • Numerous software development process models exist, each with unique strengths and weaknesses.
  • Effective software development requires selecting the appropriate model based on project needs, budget, and timeline.
  • The six-pointed star framework provides industry-standard project management criteria for evaluation.

Purpose of the Study:

  • To investigate and compare various software development process models.
  • To evaluate model performance using the six-pointed star framework criteria.
  • To determine the effectiveness of different methodologies for various project scales.

Main Methods:

  • A survey was designed to assess software process models against the six-pointed star framework.
  • Experienced software industry professionals participated in the survey.
  • Statistical analysis was performed on survey data for comparison.

Main Results:

  • Lightweight methodologies are effective for small-scale software projects.
  • Heavyweight methodologies are suitable for medium and large-scale projects.
  • The AZ model demonstrates efficiency across both small and large-scale projects.

Conclusions:

  • The choice of software development model significantly impacts project success.
  • Methodology selection should align with project scale and complexity.
  • The AZ model offers a flexible and efficient solution for diverse project requirements.