N00Bception/AI-Powered-5G-OpenRAN-Optimizer
This advanced and complex project implements an AI-powered optimization system for 5G Open RAN networks. Using machine learning and deep learning, the system optimizes network performance by detecting anomalies, predicting network traffic, and dynamically allocating resources.
This system helps 5G network engineers and operations teams improve the performance and energy efficiency of their Open RAN networks. It takes historical and real-time network data (like traffic, signal strength, and congestion) and outputs dynamic adjustments for resource allocation, anomaly alerts, and traffic predictions. The goal is to ensure optimal network performance and reduce energy consumption.
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Use this if you manage a 5G Open RAN network and need to automatically detect issues, predict traffic, and dynamically optimize resource allocation and energy use.
Not ideal if you are looking for a plug-and-play solution without the capability to integrate and manage a custom AI-driven optimization system.
Stars
65
Forks
20
Language
Python
License
Apache-2.0
Category
Last pushed
Apr 30, 2023
Commits (30d)
0
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