Artificial Intelligence |
Authors: Stephane H Maes
Escaping Pilot Purgatory with Real-Time Discovery & Coding (RTDC). Enterprise Intelligence, Instantly!Despite an estimated annual capital allocation of thirty to forty billion dollars toward Generative Artificial Intelligence (GenAI), enterprise adoption remains severely constrained by the Deployment Paradox. Current industry data indicates that ninety-five percent of enterprise pilot projects fail to graduate to production environments. This failure rate is fundamentally a failure of integration architecture rather than an inherent limitation of language models. Early enterprise deployments have relied on attaching generic conversational agents to the periphery of legacy software ecosystems. This model-level integration approach introduces substantial friction, lacks contextual awareness, and forces engineering teams into the Stitching Trap, i.e., the manual construction of highly brittle application programming interface wrappers across poorly documented legacy environments.This paper introduces the concept of Application-Aware AI, a novel architectural paradigm. Driven by a framework defined as Real-Time Discovery and Coding (RTDC), this approach operates as an autonomous entity that proactively discovers system logic, infers database schemas, and self-codes, under constraints, functional integrations dynamically based on user intent. The system executes a continuous four-layer loop encompassing total enterprise introspection, deterministic constraint enforcement, autonomous meta-agent orchestration, and dynamic user interface generation. By abstracting probabilistic language models behind a strict Model of Constraints, and transforms, i.e., ~skills, and logging all decisions within a highly transparent Reasoning Graph, the proposed paradigm resolves the liability of model hallucination. This design ensures complete regulatory auditability, facilitates the progressive modernization of legacy enterprise applications, like ERP and ITSM, via the Strangler Fig pattern, and allows organizations to establish a production-ready intelligence factory instantly.
Comments: 14 Pages. All related details of the projects (and updates) can be found and followed at https://shmaes.wordpress.com/
Download: PDF
[v1] 2026-04-09 16:41:13
Unique-IP document downloads: 41 times
ai.Vixra.org is a AI assisted e-print repository rather than a journal. Articles hosted may not yet have been verified by peer-review and should be treated as preliminary. In particular, anything that appears to include financial or legal advice or proposed medical treatments should be treated with due caution. ai.Vixra.org will not be responsible for any consequences of actions that result from any form of use of any documents on this website.
Add your own feedback and questions here:
You are equally welcome to be positive or negative about any paper but please be polite. If you are being critical you must mention at least one specific error, otherwise your comment will be deleted as unhelpful.