TU Berlin

Neural Information ProcessingSoSe 12

Page Content

to Navigation

Bachelor & Service

Einführung in die Informatik II

Bild

Fortsetzung der LV "Einführung in die Informatik I (Technikorientierung)": Boolesche Algebra, Schaltungsentwurf, Algorithmen und Datenstrukturen, Komplexität, Vertiefung objektorientierter Konzepte am Beispiel von JAVA
(Modul: BET-GL-INF2T in der Modulübersicht,ISIS)

UmfangZeitDozentOrt
Sprache
2 SWS Vorlesung
Do 8-10 Prof. Dr. Olaf Hellwich H 0105deutsch
2 SWS Tutorium Mo 12-14, 14-16, 16-18, Di 12-14, 14-16, 16-18, Mi 8-10 Tilman Wekel, Dr. Konstantin Mergenthaler, Tutoren FR deutsch
more to: Einführung in die Informatik II

Praktisches Programmieren und Rechneraufbau

Bild

In der Veranstaltung schlagen wir einen Bogen von den elementaren Grundlagen der Computertechnik bis hin zum Erstellen von Programmen in einer modernen Programmiersprache (C oder Java).

Umfang Zeit Dozent Ort
Sprache
2 SWS Vorlesung
zunächst: Do 14-18 Prof. Dr. Klaus Obermayer &
Ivo Trowitzsch
MA 005 deutsch
2 SWS Tutorium Mo 12-14, 14-16, Di 12-14, 14-16 Ivo Trowitzsch, Tutoren FR deutsch
more to: Praktisches Programmieren und Rechneraufbau

Master & PhD

Machine Intelligence II

Bild

This is the second of two consecutive courses on topics in machine learning and artificial neural networks. Areas to be covered: (i) Probability Density Estimation (ii) Projection Methods (PCA, ICA) (iii) Stochastic Optimization (iv) Clustering and Embedding (K-Means, SOM)

Credits Time Lecturer Room Language
2 SWS Lecture Thu 10-12 Prof. Dr. Klaus Obermayer MA 004English
2 SWS Tutorial Thu 14-16 Timm Lochmann FR 3531 English
2 SWS Tutorial Thu 16-18 Timm Lochmann FR 3531 English
more to: Machine Intelligence II

Neural Networks

Bild

During this course, participants work on a scientific project of limited scope under the supervision of an experienced researcher. Project topics vary every semester, but are always related to the current research projects of the Neural Information Processing Group. In the past, topics were selected from research fields including the modeling of neural systems, machine learning, artificial neural network and their application, and from the analysis of neural data. During the course, students will read original publications, learn how to prepare and present a brief project proposal, learn how to scientifically address a complex problem, learn how to discuss and defend their findings during a scientific poster session, and a how to compile their results in form of a typical conference paper. This course also includes a seminar part.

UmfangZeitDozentOrt
Sprache
6 SWS Projekt
Di 12-14 & Do 12-14Prof. Dr. Klaus Obermayer & MitarbeiterFR2521deutsch & englisch
more to: Neural Networks

Navigation

Quick Access

Schnellnavigation zur Seite über Nummerneingabe