701-3001-00L Environmental Systems Data Science: Data Processing
Semester | Autumn Semester 2022 |
Lecturers | L. Pellissier, E. J. Harris, J. Payne, M. Volpi |
Periodicity | yearly recurring course |
Language of instruction | English |
Comment | **Students who have taken 701-3001-00L Environmental Systems Data Science in autumn semester 2020 or 21 are not allowed to take this lecture. The content is similar.** Number of participants is limited to 80. Course registration starts on 31.08.2022. Priority is given to the target groups until 23.09.2022, Target groups Agricultural Sciences MSc Environmental Sciences MSc Atmospheric and Climate Science MSc Environmental Sciences PhD Agricultural Sciences PhD Waiting list will be deleted on 30.09.2022 |
Courses
Number | Title | Hours | Lecturers | ||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
701-3001-00 G | Environmental Systems Data Science: Data Processing | 2 hrs |
| L. Pellissier, E. J. Harris, J. Payne, M. Volpi |
Catalogue data
Abstract | Students are introduced to a typical data science workflow using various examples from environmental systems. They learn common methods and key aspects for each step through practical application. The course enables students to plan their own data science project in their specialization and to acquire more domain-specific methods independently or in further courses. |
Learning objective | The students are able to ● frame a data science problem and build a hypothesis ● describe the steps of a typical data science project workflow ● conduct selected steps of a workflow on specifically prepared datasets, with a focus on choosing, fitting and evaluating appropriate algorithms and models ● critically think about the limits and implications of a method ● visualise data and results throughout the workflow ● access online resources to keep up with the latest data science methodology and deepen their understanding |
Content | ● The data science workflow ● Access and handle (large) datasets ● Prepare and clean data ● Analysis: data exploratory steps ● Analysis: machine learning and computational methods ● Evaluate results and analyse uncertainty ● Visualisation and communication |
Prerequisites / Notice | 252-0840-02L Anwendungsnahes Programmieren mit Python 401-0624-00L Mathematik IV: Statistik 401-6215-00L Using R for Data Analysis and Graphics (Part I) 401-6217-00L Using R for Data Analysis and Graphics (Part II) 701-0105-00L Mathematik VI: Angewandte Statistik für Umweltnaturwissenschaften |
Performance assessment
Performance assessment information (valid until the course unit is held again) | |
Performance assessment as a semester course | |
ECTS credits | 2 credits |
Examiners | L. Pellissier, E. J. Harris, J. Payne, M. Volpi |
Type | ungraded semester performance |
Language of examination | English |
Repetition | Repetition only possible after re-enrolling for the course unit. |
Learning materials
No public learning materials available. | |
Only public learning materials are listed. |
Groups
No information on groups available. |
Restrictions
Places | 80 at the most |
Beginning of registration period | Registration possible from 31.08.2022 |
Priority | Registration for the course unit is until 23.09.2022 only possible for the primary target group |
Primary target group | Atmospheric and Climate Science MSc (661000)
Environmental Sciences MSc (736000) Doctorate Environmental Sciences (739002) Doctorate Agricultural Sciences (739102) Agricultural Sciences MSc (762000) |
Waiting list | until 30.09.2022 |