Big Data Analytics


392157/ 392158 Schönhuth Summer 2023 Thu 10-12 & Wed 16-18 (V)

Contents

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.

  1. Finding Similar Items
  2. Stream Data Analysis
  3. PageRank
  4. MapReduce
  5. Mining Frequent Itemsets
  6. Mining Frequent Subgraphs
  7. Mining Social Network Graphs
  8. Recommender Systems

Literature

Time table lecture

Time table tutorials

Date
05./06.04.2023
19./20.04.2023
03./04.05.2023
17.05.2023
31.05./01.06.2023
14./15.06.2023
28./29.06.2023

Examination dates

1st Exam:

TBD

2nd Exam:

TBD