We provide three modules which consist of two lectures, the first half takes place in the summer term and the second half in the winter term. The students will be examined in an oral exam and will receive 6 CPs. Exchange students receive 3 CPs for each lecture.
Besides that we offer a fourth module every winter semester with the title Introduction to Game Theory with Engineering Applications. The lecture is a block course that takes place in March in around 2 weeks. Students receive 6 credit points for this module.
Moreover we offer a project module which takes place every semester.
Module | Current Lecture | Lecturer | SWS | Time | Enrollment |
Mathematics of Machine Learning | Theory and Algorithms of Machine Learning for Communication (VL) | Prof. Dr.-Ing. Slawomir Stanczak | 2 | Mon, 2pm- 4pm c.t. (17.04.23- 17.07.23) | ISIS |
Modern Signal Processing for Communications | Modern Signal Processing for Communications (VL) | Dr. Renato L.G. Cavalcante | 2 | Tue, 2pm -4pm c.t. (18.04.23- 18.07.23) | ISIS |
Modern Wireless Communications | Selected Topics in Wireless Communications and Networking (VL) | Dr. Ing. Zoran Utkovski | 2 | Tue, 4pm -6pm c.t. (18.04.23- 18.07.23) | ISIS |
Master Project Network Information Systems | Network Information Systems(PJ) | Dr.-Ing. Julius Schulz-Zander | 6 | ISIS | |
Module | Current Lecture | Lecturer | SWS | Time | Enrollment |
Mathematics of Machine Learning | Mathematical Introduction to Machine Learning (VL) | Dr. rer. nat. Igor Bjelakovic | 2 | Wed, 12am-2pm (19.10.22- 15.02.23) | ISIS |
Modern Signal Processing for Communications | Mathematical Introduction to Machine Learning (VL) | Dr. rer. nat. Igor Bjelakovic | 2 | Wed, 12am-2pm (19.10.22- 15.02.23) | ISIS |
Modern Wireless Communications | Fundamentals of Digital Wireless Communications (VL) | Prof. Dr.-Ing. Slawomir Stanczak | 2 | Mon, 12am-2pm (17.10.22- 13.02.23) | ISIS |
Master Project Network Information Systems | Network Information Systems(PJ) | Dr.-Ing. Julius Schulz-Zander | 6 | ISIS | |
Module Components:
Learning Objectives:
After completing the module the students will have a solid understanding of theoretical foundations of Machine Learning and will be able to develop, apply, and analyze the complexity of the resulting learning algorithms. Moreover, a special emphasis will be put on applications of Machine Learning in areas such as Signal Processing and Wireless Communications and the students will be able to theoretically analyze and algorithmically solve learning problems arising in these fields.
Content:
Learning Model, Learning via Uniform Convergence, Bias-Complexity Tradeoff, Stochastic Inequalities and Concentration of Measure, Suprema of empirical Processes, Vapnik- Chervonenkis Dimension (VC Dimension), Nonuniform Learning, Runtime of Learning, Hilbert Spaces and Projection Methods, Kernel and Multi-Kernel Methods, Information Innovation, Regularization, Dimension Reduction and Compressive Sensing
Module Components:
Learning Objectives:
After completion of this module, the students have the ability to apply various methods and tools of modern signal processing to solve problems in a broad area of wireless communications. Moreover, they will better understand the fundamental relationships in wireless networks and obtain valuable insights into the design and operation of such networks. Finally the lecture intends to convey a comprehensive understanding of selected theoretical concepts used in wireless network optimization such as random matrix theory and non-linear Perron-Frobenius theory.
Content:
Module Components:
Learning Objectives:
After completing this module, the students will have a basic knowledge of wireless communications systems and they will be able to master some fundamental mathematical methods that are widely used in the analysis and optimization of modern wireless communications systems. In particular, the students will learn how to model the wireless channel and how to exploit the spatial diversity using multiple antenna systems. Further the lectures intends to convey a basic understanding of modern modulation and multiple access techniques such as CDMA and OFDMA. Regarding the mathematical methods for the analysis and optimization of wireless communications systems, the students will learn how to use mathematical methods when designing modern wireless communications networks. In doing so the lectures will combine the mathematical precision with practical examples. As a result, the acquired knowledge will enable the students to better understand complex interdependencies in such networks, which is essential for efficient design and operation of wireless networks.Content:
Project Components:
Learning Outcomes:
Students acquire methods and skills to solve a scientific question in the area of network information systems. They can formulate scientific questions as well as to proof or disprove a hypothesis in this field. In particular, they can systematically produce and publish results to validate the thesis and derive conclusions for further studies in this research area. Furthermore, students are able to pursue research approaches independently and to critically review related work in this field.
Content:
Network information systems are continuously improved to connect an ever-increasing number of computing devices and to fulfil a wide range of different requirements. In particular, higher throughput, lower latency, and higher reliability paved the the way for future application scenarios, e.g., augmented reality, autonomous driving, and reliable industrial communication. However, new use cases often come with new requirements implying that wireless communication systems need to be adapted continuously. In the project, students will develop solutions for selected topics in the area of network information systems. Students work with a member of our institute on a current research topic. In particular, students will design, implement, and evaluate prototypes improving network information systems.
Teaching and Learning Methods:
Topics will be individually determined based on skills and capacity. A researcher of our group will supervise the project. We expect students to have prior experience in network information systems. Moreover, good analytical and programming skills are required. Students realize a prototype in the area of network information systems. Students will write a technical report and present their results.
Assigned Degree Programs: