Abstract Modern artificial intelligence (`AI`) agents increasingly use tools, retrieval, workflows, and long-context reasoning, yet their operational worlds are often exposed as fragments: rows, documents, messages, statuses, dashboards, and hidden process logic. Relational systems gained a modelling grammar through the `entity-relationship diagram` (`ERD`). Enterprise AI still lacks an equivalent practical standard for agent-operable knowledge. This paper proposes the `Active Things Modelling Methodology` (`ATMM`) for modelling knowledge as a world of explicit, stateful, active things. ATMM begins from the claim that an active thing becomes knowable through boundary and that its boundary becomes intelligible through lifecycle. A Knowledgebase is therefore treated as an authored operational knowledge world for agents. ATMM defines `Knowledgebase`, `Active Thing Type`, `Active Thing Instance`, `Identity Index`, `Lifecycle Memory`, and `Canonical Events` as core structures. Identity Index exposes the active skeleton of a thing before action begins; Lifecycle Memory records how the thing has lived rather than merely what changed; Canonical Events preserve shared occurrences and their per-thing consequences. The paper advances two bounded claims. First, ATMM is universal methodologically: primitives of boundary, lifecycle, state, event, transition, relation, and purpose recur where knowledge concerns active things; this is not empirical exhaustion. Second, `Agent-Native` means that the Knowledgebase already exposes the identity, lived path, lawful movement, relation, impact, and monitoring surfaces an agent needs. The empirical program includes one full order-processing proof of concept and two lighter transfer PoCs. Current results support ATMM as a serious candidate foundation, not an industrially validated standard. Keywords knowledge engineering; agent-native knowledgebase; lifecycle modelling; active things; case modelling; enterprise AI; knowledge representation Highlights - Active Things Modelling Methodology composes knowledge around active things. - Identity Index exposes bounded active identity before action begins. - Lifecycle Memory records lived movement rather than generic history. - Canonical Events preserve shared occurrences and per-thing consequences. - Evidence is bounded methodology evidence, not industrial validation.
Mahmudur Rahman Manna (Tue,) studied this question.