Summer School Machine Learning 2019
Machine learning (ML) is one of the most important future technologies of digitization. For corporate employees, the Institute for Machine Learning and Analytics will be offering a summer school Machine Learning from September 16-20, 2019. The aim of the summer school is to give an overview of the topic, whereby the theoretical concepts are applied and deepened with practical exercises.
The target group are employees from specialist departments or the IT department of companies that have IT skills and basic programming skills.
The Summer School is part of the Upper Rhine 4.0 project. Upper Rhine 4.0 is a competence network for technology transfer and further education led by French, German and Swiss actors.
Programm
| Uhrzeit | Montag, 16.9. | Dienstag, 17.9. | Mittwoch, 18.9. | Donnerstag, 19.9. | Freitag, 20.9 | |
|---|---|---|---|---|---|---|
| 8:30 | Registrierung | |||||
| 9:00 | Begrüßung Einführung in die Python Tool Chain
| Lineare ML Algorithmen
| Deep Learning
| Big Data mit Apache Hadoop
| Machine Learning mit Apache Spark
| |
| 10:45 | Pause | Pause | Pause | Pause | Pause | |
| 11:15 | Grundlagen ML
| Lineare ML Algorithmen
| Deep Learning
| Big Data mit Apache Hadoop
| Machine Learning mit mit Apache Spark
Abschluss der Summer School | |
| 12:30 | Mittagspause | Mittagspause | Mittagspause | Mittagspause | ||
| 13:45 | Einführung in Scikit-Learn Einführung und Übung zu Clustering Algorithmen | Nichtlineare Modelle
| Deep Learning
| Big Data mit Apache Hadoop
| ||
| 16:00 | Pause | Pause | Pause | Pause | ||
| 16:15 | Einführung in Scikit-Learn Einführung und Übung zu Clustering Algorithmen | Praxisvortrag The lifecycle of a machine learning model: train, test and then? | Paxisvortrag Big Data in the Wild – Use Cases in Industry and EnergyDr.-Ing. Alexander Schätzle badenIT GmbH | Praxisvorträge Programm siehe unter https://imla.hs-offenburg.de/veranstaltungen/ki-ml-in-der-praxis/ | ||
| 17:15 | Get Together | Get Together | ||||
| 19:00 | Get Together |