M. Sc. Renewable Energy and Data Engineering
Modulhandbuch
Energy Data Engineering
Teaching methods | Lecture | ||||||||||
Learning target / Competences |
The students have an understanding of Big Data Analytics. They know the different process phases in Big Data Analytics (collection, processing, cleansing, explorative statistics, modeling, evaluation and representation of data). They know algorithm applied in the different phases and are able to select suitable methods for practical problems. Further, students know about real time Big Data analytics. They can clearly differentiate between terms like pattern recognition, machine learning, and deep learning.
|
||||||||||
Duration | 1 | ||||||||||
Hours per week | 8.0 | ||||||||||
Overview |
|
||||||||||
ECTS | 8.0 | ||||||||||
Requirements for awarding credit points |
two written exams 90 minutes plus lab work |
||||||||||
Credits and grades |
8 ECTS |
||||||||||
Responsible person |
Mr. Uchenna Johnpaul Aniekwensi |
||||||||||
Frequency | Every 2nd sem. | ||||||||||
Usability |
Master RED |
||||||||||
Lectures |
Energy Data Engineering 1
|