Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Next revision
Previous revision
Next revision Both sides next revision
teaching:infoh419 [2018/09/01 12:51]
ezimanyi [Course Slides]
teaching:infoh419 [2022/09/19 11:24]
ezimanyi [Books]
Line 21: Line 21:
 The course is given during the first semester ​ The course is given during the first semester ​
   * Lectures on Tuesdays from 2 pm to 4 pm at the room S.UA4.218   * Lectures on Tuesdays from 2 pm to 4 pm at the room S.UA4.218
-  * Exercises on Fridays from pm to pm at the room S.UB4.130+  * Exercises on Fridays from pm to pm at the room S.UB4.130
  
 ===== Grading ===== ===== Grading =====
Line 38: Line 38:
  
 ===== Books ===== ===== Books =====
-  * [[https://www.springer.com/​9783642546549|Data Warehouse Systems: Design and Implementation]] ​by Alejandro A. Vaisman and Esteban Zimányi. Springer, ​2014.+  * [[https://link.springer.com/​978-3-662-65167-4|Data Warehouse Systems: Design and Implementation]], second edition, ​Alejandro A. Vaisman and Esteban Zimányi. Springer, ​20<22.
   * [[http://​www.morganclaypool.com/​doi/​abs/​10.2200/​s00299ed1v01y201009dtm009|Multidimensional Databases and Data Warehousing]] by Cristian S. Jensen, Torben Bach Pedersen, and Christian Thomsen. Morgan & Claypool Publishers.   * [[http://​www.morganclaypool.com/​doi/​abs/​10.2200/​s00299ed1v01y201009dtm009|Multidimensional Databases and Data Warehousing]] by Cristian S. Jensen, Torben Bach Pedersen, and Christian Thomsen. Morgan & Claypool Publishers.
   * [[http://​www.mcgraw-hill.co.uk/​html/​0071610391.html|Data Warehouse Design: Modern Principles and Methodologies]] by Matteo Golfarelli and Stefano Rizzi. McGraw-Hill,​ 2009   * [[http://​www.mcgraw-hill.co.uk/​html/​0071610391.html|Data Warehouse Design: Modern Principles and Methodologies]] by Matteo Golfarelli and Stefano Rizzi. McGraw-Hill,​ 2009
Line 62: Line 62:
   * {{teaching:​infoh419:​dw00-refresher.pdf|Refresher Databases}}   * {{teaching:​infoh419:​dw00-refresher.pdf|Refresher Databases}}
   * {{teaching:​infoh419:​dw01-introduction.pdf|Introduction}}   * {{teaching:​infoh419:​dw01-introduction.pdf|Introduction}}
-  * {{teaching:​infoh419:​dw02-cubes.pdf|Cubes}} 
     * {{teaching:​infoh419:​database_explosion_report.pdf|Database explosion report}}     * {{teaching:​infoh419:​database_explosion_report.pdf|Database explosion report}}
     * {{teaching:​infoh419:​database_explosion.pdf|Database explosion}}     * {{teaching:​infoh419:​database_explosion.pdf|Database explosion}}
-  * {{teaching:​infoh419:​dw03-dfm.pdf|Dimension Fact Model}} +  * {{teaching:​infoh419:​dw02-dfm.pdf|Dimension Fact Model}} 
-  * {{teaching:​infoh419:​dw04-logicalmodel.pdf|Logical Model}} +  * {{teaching:​infoh419:​dw03-logicalmodel.pdf|Logical Model}} 
-  * {{teaching:​infoh419:​dw05-dimensionchanges.pdf|Dimension Changes}} +  * {{teaching:​infoh419:​dw04-dimensionchanges.pdf|Dimension Changes}} 
-  * {{teaching:​infoh419:​dw06-etl.pdf|ETL}} +  * {{teaching:​infoh419:​dw05-etl.pdf|ETL}} 
-  * {{teaching:​infoh419:​dw07-viewmaterialization.pdf|View Materialization}} +  * {{teaching:​infoh419:​dw06-viewmaterialization.pdf|View Materialization}} 
-  * {{teaching:​infoh419:​dw08-indexing.pdf|Indexing}} +  * {{teaching:​infoh419:​dw07-indexing.pdf|Indexing}} 
-  * {{teaching:​infoh419:​dw09-aggregatecomputation.pdf|Aggregate Computation}} +  * {{teaching:​infoh419:​dw08-aggregatecomputation.pdf|Aggregate Computation}} 
-  * {{teaching:​infoh419:​dw10-conclusion.pdf|Conclusion}}+  * {{teaching:​infoh419:​dw09-conclusion.pdf|Conclusion}} ​
  
  
Line 89: Line 88:
   * [[teaching:​infoh419:​TP|Exercices Web page]]   * [[teaching:​infoh419:​TP|Exercices Web page]]
  
-===== Group assignment ​=====+===== Group Project ​=====
  
-The assignment ​is carried out in groups of 3 to 4 peopleBefore you can submit assignment part Iyou will have to register in a groupThe link to register ​group is included belowPlease to select your group before or on 25/10/2018.+[[http://​www.tpc.org|TPC]] ​is a non-profit corporation that defines transaction processing and database benchmarks and disseminates objective, verifiable TPC performance data to the industryRegarding data warehousestwo TPC benchmarks are relevant: 
 +  * [[http://​www.tpc.org/​tpcds/​|TPC-DS]],​ the Decision Support Benchmark, which models the decision support functions of retail product supplier 
 +  * [[http://www.tpc.org/​tpcdi/​|TPC-DI]],​ the Data Integration Support Benchmark, which models a typical ETL process that loads a data warehouse.
  
-The assignment ​consist of 2 parts:+The project of the course ​consist of 2 parts: 
 +  * Part I: Implement the TPC-DS benchmark (deadline 1/​11/​2021) 
 +  * Part II: Implement the TPC-DI benchmark (deadline 24/​12/​2021) 
 +You have free choice to use the tools on which the two benchmarks will be implemented. For example, the TPC-DS benchmark could be implemented on SQL Server Analysis Services, Pentaho Analysis Services (aka Mondrian), etc. Similarly, the TPC-DI benchmark could be implemented on SQL Server Integration Services, Pentaho Data Integration,​ Talend Data Studio, SQL scripts, etc., which then load the data warehouse on a DBMS such as SQL Server, Oracle, PostgreSQL, etc. 
  
-  * Part I: Create a conceptual model and translate to a logical schema ​ (deadline 15/​11/​2018) +Furthermoreboth benchmarks must be implemented with several scale factors, which determine ​the size of the resulting ​data warehouse. You DO NOT need to use the scale factors mentioned in the TPC requirements. The pedagogical objectives aimed at is that you learn how to properly perform ​benchmark. Therefore, you need to estimate the biggest scale factor that you can put on your own computer: this will be your reference scale factor, say 1.0, and then you will need to have 3 smaller scale factors, e.g., at 0.1, 0.2, and 0.5 of the full size in order to see the evolution of the performance.
-  * Part II: (deadline 20/​12/​2018) +
-    * Creating ETL scripts for updating the database in SSIS, +
-    * Predicting how the size of the data warehouse ​will grow over time, +
-    *  Deploy ​data cube on top of the data warehouse and create a report.+
  
-Assignment part I will be available on 25/10. For the next parts, ​assignment II will become available right after the submission deadline of assignment part I. The submission deadlines for parts I and II are strict.+The project is carried out in groups of 3-4 persons, which will be the same for the two parts. Before you can submit part I of the projectyou will have to register in a group. For this, please send an email to the lecturer with the information about your group by 1/10/2020 at the latest. The submission deadlines for parts I and II are strict.
  
-The assignment evaluation will count for 30% of your total grade. This may seem undervalued,​ however, putting effort in the assignment will definitely help you in achieving a better understanding of the course material which will result in a better score in the paper exam which amounts for 70% of the grade.+The deliverables expected ​for each part of the project are the following:​ 
 +  * A report ​in pdf explaining ​the essential aspects ​of your implementation,​ and 
 +  * A zip file containing ​the code of your implementation,​ with all necessary instructions to be able to replicate your implementation by the lecturer in standard computing infrastructure.
  
 +The project evaluation will count for 30% of your total grade. This may seem undervalued,​ however, putting effort in the project will definitely help you in achieving a better understanding of the course material which will result in a better score in the paper exam which amounts for 70% of the grade.
 +
 +===== Groups of the current year =====
 +
 +  * SQL Server: Nicole Zafalón, Diogo Rapas, Andrés Espinal, Adam Broniewski
 +  * PostgreSQL: Niccolò Morabito, CHUN HAN LI, Víctor Diví, Filip Sotiroski
 +  * mySQL: Valada kylynnyk, Yanjian Zhang, Zhicheng Lou, Kainaat Amjid 
 +  * Oracle: El Achouchi Iliass, Belgada Wassim, Ajouaou Soufiane
 +  * SQLite: Laamiri Achraf, Mareghni Nidhal, Kuete Kamta Frank Jordan
 +  * mariadb: Tejaswini Dhupad, Himanshu Choudhary, Kamdem Tagne Thomas Borel, Sergio Postigo
 +  * Spark SQL: Yi Wu, Hang Yu, Zhiyang Guo, Mohammad Zain Abbas
 +  * DB2/​Airflow:​ Md Jamiur Rahman Rifat, Khushnur Binte Jahangir, Asha Said Seif, Pietro Ferrazzi
 +  * Microsoft Azure SQL: Davide Rendina, Marita Hernandez, Luiz Fonseca, Zyrako Musaj
 +  * Citus: Nazgul K. Rakhimzhanova⁩,​ Mohammad Ismail Tirmizi, Maël Touret, Wassim Kezai
 +  * AWS Aurora: Hind Bakkali, Gaëlle Frauenkron, Mahmut Asım Onat, Salma Salmani
 +  * Google BigQuery: Soufian El Bakkali Tamara, Maciej Piekarski, David Silberwasser,​ Sami Abdul Sater
 +  * Impala: Yahya Bakkali, Amirmohammad Fallahi, Maxime Hauwaert, Alexandre Libert
 ===== Examinations from Previous Years ===== ===== Examinations from Previous Years =====
  
 
teaching/infoh419.txt · Last modified: 2023/11/20 16:18 by ezimanyi