Exploring Prompt Patterns in AI-Assisted Code Generation: Towards Faster and More Effective Developer-AI Collaboration (2506.01604v1)
Abstract: The growing integration of AI tools in software development, particularly LLMs such as ChatGPT, has revolutionized how developers approach coding tasks. However, achieving high-quality code often requires iterative interactions, which can be time-consuming and inefficient. This paper explores the application of structured prompt patterns to minimize the number of interactions required for satisfactory AI-assisted code generation. Using the DevGPT dataset, we analyzed seven distinct prompt patterns to evaluate their effectiveness in reducing back-and-forth communication between developers and AI. Our findings highlight patterns such as ''Context and Instruction'' and ''Recipe'' as particularly effective in achieving high-quality outputs with minimal iterations. The study emphasizes the potential for prompt engineering to streamline developer-AI collaboration, providing practical insights into crafting prompts that balance precision, efficiency, and clarity.
- Sophia DiCuffa (1 paper)
- Amanda Zambrana (1 paper)
- Priyanshi Yadav (1 paper)
- Sashidhar Madiraju (1 paper)
- Khushi Suman (1 paper)
- Eman Abdullah AlOmar (32 papers)