Research

Paper

TESTING March 24, 2026

AgenticNet: Utilizing AI Coding Agents To Create Hybrid Network Experiments

Authors

Majd Latah, Kubra Kalkan

Abstract

Traditional network experiments focus on validation through either simulation or emulation. Each approach has its own advantages and limitations. In this work, we present a new tool for next-generation network experiments created through Artificial Intelligence (AI) coding agents. This tool facilitates hybrid network experimentation through simulation and emulation capabilities. The simulator supports three main operation modes: pure simulation, pure emulation, and hybrid mode. AgenticNet provides a more flexible approach to creating experiments for cases that may require a combination of simulation and emulation. In addition, AgenticNet supports rapid development through AI agents. We test Python and C++ versions. The results show that C++ achieves higher accuracy and better performance than the Python version.

Metadata

arXiv ID: 2603.23763
Provider: ARXIV
Primary Category: cs.NI
Published: 2026-03-24
Fetched: 2026-03-26 06:02

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Raw Data (Debug)
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