HyperGraphOS: A Meta Operating System for Science and Engineering
- URL: http://arxiv.org/abs/2412.04923v1
- Date: Fri, 06 Dec 2024 10:21:41 GMT
- Title: HyperGraphOS: A Meta Operating System for Science and Engineering
- Authors: Antonello Ceravola, Frank Joublin, Ahmed R. Sadik, Bram Bolder, Juha-Pekka Tolvanen,
- Abstract summary: This paper presents HyperGraphOS, an innovative Operating System designed for the scientific and engineering domains.
Using a web based architecture, HyperGraphOS requires only a browser to organize knowledge, documents and content into interconnected models.
Results show significant improvements in flexibility, data management, computation, and document handling.
- Score: 1.0985060632689174
- License:
- Abstract: This paper presents HyperGraphOS, an innovative Operating System designed for the scientific and engineering domains. It combines model based engineering, graph modeling, data containers, and computational tools, offering users a dynamic workspace for creating and managing complex models represented as customizable graphs. Using a web based architecture, HyperGraphOS requires only a modern browser to organize knowledge, documents, and content into interconnected models. Domain Specific Languages drive workspace navigation, code generation, AI integration, and process organization.The platform models function as both visual drawings and data structures, enabling dynamic modifications and inspection, both interactively and programmatically. HyperGraphOS was evaluated across various domains, including virtual avatars, robotic task planning using Large Language Models, and meta modeling for feature based code development. Results show significant improvements in flexibility, data management, computation, and document handling.
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