Artificial Intelligence

Vibe-Coding and SDLC Constrained And Managed By An Application-Aware AI-Like Agentic Platform

Authors: Stephane H Maes

The contemporary enterprise software environment is defined by a critical market failure known as the Deployment Paradox. Despite unprecedented capital allocation toward Generative AI infrastructure, a vast majority of enterprise AI pilots fail to graduate to production environments or deliver measurable financial returns. A non-negligible contributor to this failure is the less than stellar outcome from the adoption of Ai assistant and vibe coding, a development paradigm utilizing natural language prompts to generate software autonomously. While vibe coding compresses software development cycles, it introduces new challenges in explainability, security, maintenance and support. Also, it operates at a low granularity of intent. It also increases code volume, with limited to no focus over architectural integrity. Despite grandiose expectations, developers often spend the same or more time developing and maintaining, and enterprises have to hire new people, to compensate for those who were let go. Indeed, the traditionally recommended mitigation strategy involves applying rigorous Software Development Life Cycle practices, e.g., DevOps, Agile methodologies, to AI generated code snippets. This manual intervention negates the velocity benefits of AI coding and traps organizations in endless integration cycles. This paper proposes a paradigm shift towards using an agentic platform to autonomously perform the AI/vibe coding based on high level intent conversations with a meta-agent and a model the constraints derived on an Application Aware AI utilizing a Real Time Discovery and Coding engine. By deploying a meta agent that interacts with a developer agent within a platform managed lifecycle, enterprises can automate semantic verification and continuous optimization. This architecture leverages a deterministic model of constraints, transactional object memory (for reliability and rewind), and secure sandboxing to neutralize the inherent risks of probabilistic Large Language Models. We detail how this embedded agentic infrastructure addresses the limitations of vibe coding, ensuring secure, maintainable, and self evolving enterprise software systems capable of disrupting traditional enterprise applications.The application-aware AI agentic platform that we detail is based on Zenera offerings. Others can be considered as long if they follow principle enumerated in this paper of constrained vibe coding.

Comments: 31 Pages. All related details of the projects (and updates) can be found and followed at https://shmaes.wordpress.com/

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[v1] 2026-04-02 13:36:33

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