Na minha lista:
| Autor principal: | |
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| Formato: | Recurso digital |
| Idioma: | inglês |
| Publicado em: |
Zenodo
2026
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| Assuntos: | |
| Acesso em linha: | https://doi.org/10.5281/zenodo.20323947 |
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Sumário:
- <p><strong>Declarative AI Architecture</strong> proposes a new architectural paradigm for generative AI: a shift from model-centric systems to knowledge-centric systems.</p> <p>Instead of embedding system behavior primarily in model parameters, prompts or runtime orchestration, Declarative AI Architecture defines operational system logic through structured <strong>knowledge artifacts</strong>. These artifacts act as persistent, inspectable and governable carriers of rules, constraints, domain structures and reasoning conditions.</p> <p>The paper addresses a central limitation of current generative AI systems: their operational logic is often hidden, fragmented and distributed across prompts, retrieved documents, application code and model behavior. Declarative AI Architecture introduces a dedicated knowledge layer that makes this logic explicit, modular and governable.</p> <p>In this architecture, generative models function as interpreters of structured knowledge environments. The model provides reasoning capability; the knowledge architecture defines the operational context in which that reasoning takes place.</p> <p>This concept paper presents the foundations of Declarative AI Architecture, defines its core terminology, distinguishes it from RAG, prompt libraries, rule engines and agent orchestration, and outlines its implications for governance, transparency, modularity and future AI system design.</p> <p><strong>The central thesis:</strong> the future of generative AI will not be determined by model scale alone, but by the quality of the knowledge architectures that guide generative reasoning.</p> <p> </p>