ObjectGraph: From Document Injection to Knowledge Traversal -- A Native File Format for the Agentic Era
arXiv cs.AI / 5/1/2026
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Key Points
- The paper argues that current document formats are mismatched to how autonomous LLM agents operate, since agents retrieve and reason over content rather than “read” documents linearly.
- It proposes OBJECTGRAPH (.og), a native, typed, directed knowledge-graph file format that is a strict superset of Markdown, allowing .md files to work as .og files.
- OBJECTGRAPH is designed to reduce wasted tokens and uncontrolled state growth in multi-turn agent loops by shifting from document injection to knowledge traversal.
- The authors introduce new format primitives—such as Progressive Disclosure, Role-Scoped Access, and Executable Assertion Nodes—and a two-primitive query protocol with minimal infrastructure.
- Experiments across five document classes and eight agent task types report up to 95.3% token reduction without statistically significant accuracy loss, alongside strong transpiler fidelity (98.7%).
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