Syllabus
Registration via LPIS
Day | Date | Time | Room |
---|---|---|---|
Tuesday | 10/06/20 | 10:00 AM - 01:30 PM | Online-Einheit |
Tuesday | 10/06/20 | 02:00 PM - 03:30 PM | Online-Einheit |
Tuesday | 10/13/20 | 10:00 AM - 01:30 PM | Online-Einheit |
Tuesday | 10/13/20 | 02:00 PM - 03:30 PM | Online-Einheit |
Tuesday | 10/20/20 | 10:30 AM - 02:00 PM | Online-Einheit |
Tuesday | 10/20/20 | 02:00 PM - 03:30 PM | Online-Einheit |
Tuesday | 10/27/20 | 02:00 PM - 05:30 PM | Online-Einheit |
Tuesday | 10/27/20 | 06:00 PM - 07:30 PM | Online-Einheit |
Tuesday | 11/03/20 | 11:30 AM - 02:00 PM | Online-Einheit |
Tuesday | 11/10/20 | 02:00 PM - 05:30 PM | Online-Einheit |
Tuesday | 11/10/20 | 06:00 PM - 07:30 PM | Online-Einheit |
Tuesday | 12/01/20 | 09:00 AM - 04:00 PM | Online-Einheit |
- The course (lectures and tutorials) will be held in distance mode at the scheduled time slots. We will schedule Web conference sessions at each time slot, one for the respective lecture, one for the subsequent tutorial.
- All other details (esp.: participation rules, tasks and assessments) remain as described in the other sections of this course description.
This fast-paced class is intended for getting students interested in data science up to speed:
We start with an introduction to the field of "Data Science" and into the overall Data Science Process.
The primary focus of the rest of the course is on gaining fundamental knowledge for Data processing, that is, preparation, cleansing and storage of data, which typically takes the largest part of any data science project. We will learn how to deal with different data formats and how to use methods and tools to integrate data from various sources, plus how to resolve quality issues such as duplicates, encoding errors, missing values, etc. within raw data.
The integrated data can then be used for further data analytics tasks (cf. course 2 in this SBWL).
The students will practice approaches and techniques using the Python programming language in an interactive environment.
All course material will be available at: https://datascience.ai.wu.ac.at/
Overall, students shall gain fundamental knowledge for dealing with different data formats and in using methods and tools to integrate data from various sources in this course. This includes:
* Hands-on experience in processing and preparing data for data science tasks with Python.
* An understanding of how to use the Python standard library to write programs, access the various data science tools.
* Working knowledge of the Python tools ideally suited for data science tasks, including:
* Accessing data (e.g., tabular (CSV), tree (JSON), graph shaped (RDF) data but also databases)
* Cleansing and normalizing data
* Sorting, filtering and grouping data
* Tools and algorithms for data transformation
* Connection to and loading data into a database system and indexing techniques, for faster access of data in a database
The attendance of at least 80% of the course units is a mandatory criterion.
Presence in the first lesson is required.
The course will focus on in-class code walkthroughs to present high-quality, well-commented code that students can later reference.
The course will balance between group and individual assignments.
The students will be able to apply new learned concepts and methods directly in the class using real world Open Data data sources.
The assessment will be based on the following:
- 10% quizzes or clicker questions
- 85% homework assignments (individual as well as group assignments)
- 5% entry exam / peer grading
The attendance of at least 80% of the course units is a mandatory criterion.
If you have questions on the course or on the homework, proceed as follows:
- All general questions should be posted to the dedicated forum.
- Send an email to the DP1 team at dp1-team@wi.wu.ac.at with the subject line containing: "[Data Processing 1]"
Back