The lecture Big Data Analytics develops competencies in performing data mining tasks on very large amounts of data that cannot be stored in main memory. The lecture provides the key ideas of similarity search using minhashing and locality-sensitive hashing, of data stream processing where data arrives so fast that it has to be processed immediately or is otherwise lost, of Web-related algorithms such as Google's PageRank, of algorithms for mining frequent itemsets, association rules and frequent subgraphs, of algorithms to analyze the structure of large graphs such as social network graphs, and of the map-reduce principle to design parallel algorithms.
This class will be taught online, through video lectures.
Date | Topic |
23.04.2020 | Introduction / Organization / Schedules ( slides ) |
30.04.2020 | Finding Similar Items I ( slides) |
07.05.2020 | Finding Similar Items II ( slides) |
14.05.2020 | Map Reduce I ( slides) |
21.05.2020 | no lecture |
28.05.2020 | Map Reduce II ( slides) |
04.06.2020 | Map Reduce III / Mining Data Streams I ( slides) |
11.06.2020 | no lecture |
18.06.2020 | Mining Data Streams II / Link Analysis I ( slides) |
25.06.2020 | Link Analysis II ( slides) |
02.07.2020 | Frequent Itemsets I ( slides) |
09.07.2020 | Recommendation Systems ( slides) |
16.07.2020 | Mining Data Streams III / Frequent Itemsets II (slides) |
1st Exam: Written exam on Thursday, September 03, 2020 08:00-11:00 in the Stadthalle
2nd Exam: Written exam on Monday, September 28, 2020 12:00-14:30 in H2 and H4