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Interpretable Context Methodology: Folder Structure as Agentic Architecture

arXiv cs.AI / 3/18/2026

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Key Points

  • The Model Workspace Protocol (MWP) replaces framework-level AI orchestration with a filesystem-based structure of numbered folders and plain Markdown prompts to guide a single agent at each step.
  • The approach draws on Unix pipeline concepts, modular decomposition, multi-pass compilation, and literate programming to organize context for AI agents.
  • It aims to reduce engineering overhead for sequential workflows with human review by avoiding multi-agent orchestration.
  • The protocol is open source under the MIT license and targets simpler, auditable, stepwise AI workflows.

Abstract

Current approaches to AI agent orchestration typically involve building multi-agent frameworks that manage context passing, memory, error handling, and step coordination through code. These frameworks work well for complex, concurrent systems. But for sequential workflows where a human reviews output at each step, they introduce engineering overhead that the problem does not require. This paper presents Model Workspace Protocol (MWP), a method that replaces framework-level orchestration with filesystem structure. Numbered folders represent stages. Plain markdown files carry the prompts and context that tell a single AI agent what role to play at each step. Local scripts handle the mechanical work that does not need AI at all. The result is a system where one agent, reading the right files at the right moment, does the work that would otherwise require a multi-agent framework. This approach applies ideas from Unix pipeline design, modular decomposition, multi-pass compilation, and literate programming to the specific problem of structuring context for AI agents. The protocol is open source under the MIT license.