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This thesis deals with the creation of a cross-platform application using Xamarin.Forms. The cross-platform application will cover three different platforms android, iOS, and UWP.
The application is the first concept of a possible feature for a companion application for LS telcom. There, the user can identify cell antennas using a map-view and a camera-view making the application an augmented reality application. Thus, the user can search for a specific cell and access various information that he would not be able to see with his eyes like for example the frequency of the transmitting cells.
The cell data is generated from three different sources, Cartoradio, OpenCelliD, and the LS telcom databrowser. Eventually, the decision was taken, that the main source should be the LS telcom databrowser which has multiple advantages over the other cell sources.
The cells on the map-view are placed using the extracted coordinates from the source data. However, the cells on the camera-view are placed with complex calculations using different formulas like the Haversine formula to calculate the distance between the cell and the user and the bearing to calculate the angle between the cell and the user. Various settings will allow the user to personalize the application according to his wishes.
In the field of network security, the detection of intrusions is an important task to prevent and analyse attacks.
In recent years, an increasing number of works have been published on this subject, which perform this detection based on machine learning techniques.
Thereby not only the well-studied detection of intrusions, but also the real-time capability must be considered.
This thesis addresses the real-time functionality of machine learning based network intrusion detection.
For this purpose we introduce the network feature generator library PyNetFlowGen, which is designed to allow real-time processing of network data.
This library generates 83 statistical features based on reassembled data flows.
The introduced performant Cython implementation allows processing individual packets within 4.58 microseconds.
Based on the generated features, machine learning models were examined with regard to their runtime and real-time capabilities.
The selected Decision-Tree-Classifier model created in Python was further optimised by transpiling it into C-Code, what reduced the prediction time of a single sample to 3.96 microseconds on average.
Based on the feature generator and the machine learning model, an basic IDS system was implemented, which allows a data throughput between 63.7 Mbit/s and 2.5 Gbit/s.