GigayasaWireless/toolkit5G
5G Tookit provides a rich set of 3GPP standards compliant modules and libraries. These modules can be used for reseach and development on physical channels and procedures in uplink and downlink communication.
This toolkit helps wireless researchers and developers simulate and analyze 5G physical layer communication. It takes in 3GPP-compliant 5G configurations and channel models to output detailed analyses of uplink and downlink procedures, physical channels, and reference signals. Radio engineers, academic researchers, and anyone designing or optimizing 5G systems would use this tool.
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Use this if you need to research, develop, or test specific 5G physical layer behaviors and components, or integrate with Software Defined Radios.
Not ideal if you are looking for a high-level network simulator or a tool for general application development over existing 5G networks.
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May 18, 2024
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