|  | 
                        
    					  
    					  
  						
                    
                      | Detailinformationen |  
                      | Quellcurriculum | Masterstudium Computer Science 2021W |  
                      | Ziele | (*)Students know about advanced concepts and techniques for management and processing of big data by bridging theory and practice. Students have in-depth knowledge about the current state of the art in this highly active and diverse field of research and have gained a deep understanding of the often well-established and longstanding theories underlying the huge variety of upcoming big data systems and tools. Overall, students think about big data systems and tools in new ways — not just how they work, but rather why they were designed that way and how to select appropriate systems and tools for a certain problem at hand. |  
                      | Lehrinhalte | (*) Foundations of NoSQL Data Management: Reliable, Scalable and Maintainable Data-Intensive Applications; NoSQL Data Models and Query Languages; NoSQL Data Modeling
Distributed Data in NoSQL Systems: Replication, Partitioning, Transactions, Consistency and Consensus
Derived Data in NoSQL Systems: Batch Processing, Stream Processing, Lambda vs. Kappa Architectures, Situation Assessment Techniques, Situation & Process Mining
Queries in Computational Data Analytics: Query Languages & Execution (Index Structures, Similarity Queries)
Natural Language Processing and Social Media Mining on the Web: Web Search, Web Extraction and Mining, Question Answering and Dialogue Systems 
 |  
                      | Beurteilungskriterien | (*)Exercises and written exam at the end of the semester. |  
                      | Lehrmethoden | (*)Slide presentation with case studies and hands-on sessions. |  
                      | Abhaltungssprache | Englisch |  
                      | Literatur | (*) Martin Kleppmann “Designing Data-Intensive Applications – The Big Ideas Behind Reliable, Scalable, and Maintainable Systems”, O'Reilly, March 2017
Lena Wiese, “Advanced Data Management for SQL, NoSQL, Cloud and Distributed Databases”, De Gruyter/Oldenburg, 2015
Kay Uwe Sattler, Gunter Saake and Erhard Rahm, “Verteiltes und Paralleles Datenmanagement – Von verteilten Datenbanken zu Big Data und Cloud”, Springer, 2015
Nathan Marz and James Warren. “Big Data: Principles and Best Practices of Scalable Realtime Data Systems”, Manning Publications Co., Greenwich, CT, USA, 2015
Wil van der Aalst, “Process Mining – Data Science in Action”, Springer, 2016.
Ricardo Baeza-Yates, Berthier Ribeiro-Neto. “Modern Information Retrieval”, Addison-Wesley 2011
Bruce Croft, David Metzler, Trevor Strohma. “Search Engines”, Pearson 2009
 |  
                      | Lehrinhalte wechselnd? | Nein |  |