Please disable Adblockers and enable JavaScript for domain CEWebS.cs.univie.ac.at! We have NO ADS, but they may interfere with some of our course material.
Info
Course: 052412 VU Business Intelligence II (2020W) «u:find»
Lecturers: «Stefanie Rinderle-Ma»,«Florian Pauker»
Tutor: «Tobias Pfaller»
Dates
First Date: 03.10.2019, Letzter Termin: 30.01.2020. When: Thursday weekly from 03.10.2019 to 30.01.2020 09:45-13:00 Place: PC-Unterrichtsraum 4, Währinger Straße 29 1.0G1. |
Thursday 01.10. 09:45 - 13:00 Digital |
Preliminary Talk («BigBlueButton» - Nur Vorbesprechung) |
2. |
Thursday 08.10. 09:45 - 13:00 Digital |
Presentation of Data Set (BigBlueButton - see also "BBB" in the menu) |
3. |
Thursday 15.10. 09:45 - 13:00 Digital |
Consultation |
4. |
Thursday 22.10. 09:45 - 13:00 Digital |
Presentation of Assignment 1 (BigBlueButton - see also "BBB" in the menu) |
5. |
Thursday 29.10. 09:45 - 13:00 Digital |
Consultation |
6. |
Thursday 05.11. 09:45 - 13:00 Digital |
Presentation of Assignment 2 (BigBlueButton - see also "BBB" in the menu) |
7. |
Thursday 12.11. 09:45 - 13:00 Digital |
Consultation |
8. |
Thursday 19.11. 09:45 - 13:00 Digital |
Presentation of Assignment 3 (BigBlueButton - see also "BBB" in the menu) |
9. |
Thursday 26.11. 09:45 - 13:00 Digital |
Consultation |
10. |
Thursday 03.12. 09:45 - 13:00 Digital |
Presentation of Assignment 4 (BigBlueButton - see also "BBB" in the menu) |
11. |
Thursday 10.12. 09:45 - 13:00 Digital |
Consultation |
12. |
Thursday 17.12. 09:45 - 13:00 Digital |
Consultation |
13. |
Thursday 07.01. 09:45 - 13:00 Digital |
Presentation of Assignment 4 (BigBlueButton - see also "BBB" in the menu) |
14. |
Thursday 14.01. 09:45 - 13:00 Digital |
|
15. |
Thursday 21.01. 09:45 - 13:00 Digital |
Final Presentation (BigBlueButton - see also "BBB" in the menu) |
16. |
Thursday 28.01. 09:45 - 13:00 Digital |
Interview (BigBlueButton - see also "BBB" in the menu) |
Project Assignments
Assignment 1: [[Data Understanding| Data Understanding - Turm]], 2.5 pointsAssignment 1: Data Understanding - Turm
Assignment 2: Data Analysis
Assignment 3: [[Data Understanding 2| Data Understanding - GV12 ]], 2.5 points
Assignment 3: Data Understanding - Turm V2
Assignment 4: Data Analysis - Turm V2
Assignment 4: Data Analysis 2, 20 points
------- OLD-----------------
|| 01. || 03.10.|| Preliminary Talk ||
|| 02. || 10.10.|| Introduction to Assignment 1 ||
|| 03. || 17.10.||Consultation ||
|| 04. || 24.10.||Visit to the Austrian Center of Digital Production ([http://www.acdp.at|CDP]) and First Presentation Assignment 1 ||
|| 05. || 31.10.||Consultation ||
|| 06. || 07.11.||Second Presentation Assignment 1||
|| 07. || 14.11.||Final Presentation Assignment 1 ||
|| 08. || 21.11.||Introduction to Assignment 2||
|| 09. || 28.11.||First Presentation Assignment 2||
|| 10. || 05.12.||Consultation||
|| 11. || 12.12.||Second Presentation Assignment 2||
|| 12. || 09.01.||Consultation ||
|| 13. || 16.01.||Final Interview||
|| 14. || 23.01.||Final Presentation Assignment 2: 9:45 course evaluation, 10:00: introduction of the use case by Dr. Pauer, 10:10: introduction round, 10:20 - 10:50: Team 1, 10:50 - 11:20: Team 2, 11:20 - 11:50: Team 3; afterwards wrap up and discussion ||
|| 15. || !!27.01. 11:30-13:00 !!|| !!Care for your data, and your data will care for you - Learnings from Data Science projects in different industries - Industry Talk by T-Systems, HS2 (abstract see below )!!||
|| 16. || 30.01.||Reserve||
[border]
WS-2019-20
|| 04. || 24.10.||Discussion of results of first assignment; Presentation of second assignment||
|| 05. || 31.10.||Discussion of intermediate results from Assignment 2||
|| 06. || 07.11.||Consultation ||
|| 07. || 14.11.||Discussion of intermediate results from Assignment 2 including feedback from 8.11.2018||
|| 08. || 21.11.||Data Unterstanding second data set||
|| 09. || 28.11.||Discussion of intermediate results from Assignment 3||
|| 10. || 05.12.||Discussion of final results from Assignment 3||
|| 11. || 12.12.||!!Presentation of selected results with project partners from KnowCenter and TU Graz!! - Team 1, 2, 3, 5||
|| 12. || 09.01.||Final Interview - Team 4, 6 ||
|| 13. || 16.01.||
|| 14. || 23.01.||
|| 15. || 30.01.||
OLD 2018
|| 01. || 04.10. || Preliminary Talk ||
|| 02. || 11.10. || Lecture on selected topics||
|| 03. || 18.10. || Presentation of the Assignment 1||
|| 04. || 25.10. || Discussion of results of first assignment; Presentation of second assignment||
|| 05. || 08.11. || Discussion of intermediate results from Assignment 2||
|| 06. || 15.11. || Consultation ||
|| 07. || 22.11. || Discussion of intermediate results from Assignment 2 including feedback from 8.11.2018||
|| 08. || 29.11. || Data Unterstanding second data set||
|| 09. || 13.12. || Discussion of intermediate results from Assignment 3||
|| 10. || 10.01. || Discussion of final results from Assignment 3||
|| 11. || 17.01. || !!Presentation of selected results with project partners from KnowCenter and TU Graz!! - Team 1, 2, 3, 5||
|| 11. || 24.01. || Final Interview - Team 4, 6 ||
[border]
=== Industry Talk by T-Systems
Care for your data, and your data will care for you - Learnings from Data Science projects in different industries
Abstract: In our talk, we want to share some of the learnings we at T-Systems have made in implementing data-driven solutions for businesses in different industries. Specifically, we want to highlight the importance of combining Data Science knowledge, domain expertise, as well as proper data management, by discussing three current projects and their specific challenges.
To make a Data Science project successful, it takes more than the theoretical and technical knowledge to properly handle and analyze data. A good project team also includes the necessary domain knowledge to correctly interpret the data, and to make sure that a data set really contains all information relevant to the situation. In addition, the performance of any data-driven solution can only be as good as the data you feed it. Depending on the situation, it can take considerable effort to build and maintain a data set of the required quality and size.
|| 03. || 18.10. || Consultation ||
|| 04. || 25.10. || First presentation of basic project||
|| 05. || 08.11.|| Consultation ||
|| 06. || 15.11.|| Second presentation of basic project ||
|| 07. || 22.11.|| Final Presentation of basic project; Introduction to advanced project ||
|| 08. || 29.11.|| First presentation of advanced project||
|| 09. || 06.12.|| First presentation of advanced project and Consultation ||
|| 10. || 13.12.|| Second presentation of advanced project||
|| 11. || 10.01.|| Consultation ||
|| 12. || 17.01.|| Third presentation of advanced project ||
|| 13. || 24.01.|| Final interview ||
|| 14. || 31.01.|| - ||
=== Celonis Registration
Please register with Celonis as soon as possible. The activation of your account might take some time.
Make sure to fill out the affiliation details properly (e.g. University: Universität Wien; Faculty: Informatik)
and to use your university email address.
[https://academiccloud.celonis.com/login/register| Celonis Registration]
New version of Celonis Intelligent Business Cloud - Academic Edition
[https://www.celonis.com/academic-signup| Celonis Registration NEW]
Celonis Christmas Challenge: bit.ly/celonischristmas (Registration to the Christmas Process)
== Disco (Fluxicon)
[https://fluxicon.com/disco/|Disco]
=== Slides:
#* [file:BUSII_ProcessDiscovery_WS1617.pdf|Process Discovery]
=== Exercises:
Exercise 1: First phase basic project: see [https://cewebs.cs.univie.ac.at/BUS/ws16/index.php?t=datasets|Datasets]
Exercise 2: Second phase basic project: see [https://cewebs.cs.univie.ac.at/BUS/ws16/index.php?t=datasets|Datasets]
Exercise 3 (First phase of HEP project)
* Extraction and cleaning of data in CSV (3 points)
* Import in Pentaho, definition and documentation of extraction and transformation processes (3 points)
* Design of the conceptual data model (3 points)
Exercise 4 (Second phase of HEP project)
* Formulation of one cross-sectional analysis question (2 points)
* Extraction of one core process (process mining) (2 points)
* Analysis results (including interpretation) (3 points)
* Formulation of one combined analysis question (cross-sectional and process mining) (2 points)
Exercise 5 (Third phase of HEP project, Text mining on Twitter data)
* Analysis results of combined question (including interpretation) (3 points)
* Text mining create corpus from twitter messages in a given time frame (2 points)
* Analysis of opinions to election in the US (4 points)
All exercises have to be uploaded. Exercises 3 --5 have to be also documented in the diary.
Time table for final interviews, 28 January 2021 (online, BBB)
09:45 - 10:00: Team 1
10:00 - 10:15: Team 2
10:15 - 10:30: Team 3
10:45 - 11:00: Team 4
11:00 - 11:15: Team 5
11:15 - 11:30: Team 6
Please be ready to have present your student id. Camera must be on.
Grading
See «u:find».
Literature and Background Information
- W. Grossmann, S. Rinderle-Ma: Fundamentals of Business Intelligence. Springer-Verlag Berlin Heidelberg, doi: 10.1007/978-3-662-46531-8 (2015)
- Accompanying slides: «Book Website»
- Friedman, J., Hastie, T., Tibshirani, R. (2001). The elements of statistical learning (Vol. 1, No. 10). New York: Springer series in statistics
- Coursera course: Machine Learning, Stanford University
- Coursera course Neural Networks and Deep Learning, deeplearning.ai
- Coursera course: How to Win a Data Science Competition: Learn from Kagglers, National Research University Higher School of Economics
Letzte Änderung: 28.01.2021, 09:22 | 1382 Worte