| DESCRIPTION | This is the compulsory one-year development course for FTEC students. The course provides academic and professional advising to students on the development of professional ethics, social awareness, responsibilities, and communication skills. An intended learning outcome is to develop a holistic, interdisciplinary, and evidence-based understanding of the issues in FinTech in the financial markets. Grading Type: Pass/ Fail |
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| Section | Date & Time | Room | Instructor | Quota | Enrol | Avail | Wait | Remarks |
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| L01 (6409) | We 05:00PM - 05:50PM | Rm 147, E1 | CAI, Ning LI, Siguang QIU, Shi SUN, Shuo WANG, Junxuan WANG, Xuechao YUAN, Zixuan ZHANG, Chao ZHANG, Guang ZHANG, Leifu ZHANG, Liang ZHANG, Yi ZHU, Zimu | 60 | 0 | 60 | 0 |
| VECTOR | [3-0-0:3] |
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| DESCRIPTION | Graph data are pervasive in finance and business management. The course will be organized in three parts. Part I introduces graph data types and representations, including typical simple/weighted and directed/undirected graphs; bipartite, heterogeneous and knowledge graphs; temporal/dynamic graphs; hypergraphs together with node/edge attributes and common storage/processing patterns. Part II introduces graph data modeling methods from shallow embeddings to modern graph neural networks (message passing mechanism, heterogeneous/temporal architectures, contrastive pretraining) and LLM-based approaches (graph-aware prompting, graph-based RAG, graph foundation models). Part III examines graph data based applications in finance and business management, including anomaly and fraud detection, stock market prediction, and recommendation systems, with emphasis on reproducible, practice-oriented implementation. |
| Section | Date & Time | Room | Instructor | Quota | Enrol | Avail | Wait | Remarks |
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| L01 (6087) | Tu 06:00PM - 08:50PM | Rm 201, E4 | ZHANG, Liang | 20 | 0 | 20 | 0 |