Many organizations now have access to artificial intelligence, but access is not the same as capacity. A company may have AI subscriptions, copilots, dashboards, prompts, internal training, and public enthusiasm while still failing to convert AI into measurable operational improvement. This public working paper argues that the practical gap is not only model capability or AI literacy. The deeper gap is the connection between intelligence and real work. AI becomes useful capacity only when it is connected to workflows, human judgment, operator knowledge, verification, authority boundaries, trust, and organizational coherence. The paper proposes Applied Bottleneck Intervention, or ABI, as a practical method for AI deployment. ABI begins with the bottleneck, not the tool. It asks where an organization is losing time, money, clarity, reliability, safety, trust, coherence, or decision quality. It then determines whether AI, automation, process redesign, documentation, governance, or human judgment can reduce that bottleneck within a bounded scope. The central claim is that organizations do not need AI access alone. They need usable AI capacity. Usable AI capacity is measured not by the presence of tools, but by verified bottleneck reduction inside a real workflow. This upload includes the PDF public working paper and a supplementary source bundle containing the Markdown source, SHA-256 checksum file, and freeze manifest. This paper was developed by the author with AI-assisted drafting and editorial support. The author reviewed, directed, revised, and accepts responsibility for the content, claims, limitations, and final wording.
Ivan Silva (Fri,) studied this question.