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Computational Biophysics - Einzelansicht

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Grunddaten
Veranstaltungsart Vorlesung/Übung Langtext
Veranstaltungsnummer 091102861 Kurztext
Semester WiSe 2024/25 SWS 2
Erwartete Teilnehmer/-innen Max. Teilnehmer/-innen
Credits Belegung Keine Belegpflicht
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Sprache Englisch
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  Tag Zeit Rhythmus Dauer Raum Raum-
plan
Status Bemerkung fällt aus am Max. Teilnehmer/-innen E-Learning
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Do. 16:15 bis 17:45 wöch.     room S03 S03 A05 (Campus Essen) and in parallel online (https://bbb.uni-due.de/b/dan-aze-a5a)   E-Learning
Gruppe [unbenannt]:
 


Zugeordnete Person
Zugeordnete Person Zuständigkeit
Hoffmann, Daniel, Professor, Dr.
Zielgruppen/Studiengänge
Zielgruppe/Studiengang Semester Pflichtkennzeichen
Master of Science Physik, Master of Science Physik - WP
Ph M.Sc., Physik (Master of Science) - WP
Zuordnung zu Einrichtungen
Bioinformatik and Computational Biophysics
Inhalt
Kommentar

Biomolecules, cells, organisms, or societies are very complex and noisy physical systems. They are thus characterized by a high degree of uncertainty. A natural approach to deal with uncertainty is probabilistic modeling. In this lecture series we will therefore learn about theoretical concepts and computational tools for probabilistic modeling with a focus on Bayesian modeling. The lecture is accompanied by exercises in which you can try out such methods. The "exam" is a project in which you apply the concepts and tools to the modeling and analysis of complex systems of your choice.

Bemerkung

Biomolecules, cells, organisms, or societies are very complex and noisy physical systems. They are thus characterized by a high degree of uncertainty. A natural approach to deal with uncertainty is probabilistic modeling. In this lecture series we will therefore learn about theoretical concepts and computational tools for probabilistic modeling with a focus on Bayesian modeling. The lecture is accompanied by exercises in which you can try out such methods. The "exam" is a project in which you apply the concepts and tools to the modeling and analysis of complex systems of your choice.


Strukturbaum
Die Veranstaltung wurde 2 mal im Vorlesungsverzeichnis WiSe 2024/25 gefunden:
Bioinformatik  - - - 2