SEAIDec 11, 2025

Vibe Coding in Practice: Flow, Technical Debt, and Guidelines for Sustainable Use

arXiv:2512.11922v11 citations
Originality Synthesis-oriented
AI Analysis

It addresses risks in AI-assisted software development for developers and organizations, offering guidelines for sustainable use, but is incremental as it builds on existing concerns.

The paper analyzes the trade-offs in Vibe Coding, where AI-generated code accelerates development but introduces technical debt like architectural inconsistencies and security vulnerabilities, based on experiences from MVPs and industry reports.

Vibe Coding (VC) is a form of software development assisted by generative AI, in which developers describe the intended functionality or logic via natural language prompts, and the AI system generates the corresponding source code. VC can be leveraged for rapid prototyping or developing the Minimum Viable Products (MVPs); however, it may introduce several risks throughout the software development life cycle. Based on our experience from several internally developed MVPs and a review of recent industry reports, this article analyzes the flow-debt tradeoffs associated with VC. The flow-debt trade-off arises when the seamless code generation occurs, leading to the accumulation of technical debt through architectural inconsistencies, security vulnerabilities, and increased maintenance overhead. These issues originate from process-level weaknesses, biases in model training data, a lack of explicit design rationale, and a tendency to prioritize quick code generation over human-driven iterative development. Based on our experiences, we identify and explain how current model, platform, and hardware limitations contribute to these issues, and propose countermeasures to address them, informing research and practice towards more sustainable VC approaches.

Foundations

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