CoBi

Deep Learning Bootcamp

date
24.09.2018 - 28.09.2018 
time
09:00 AM - 06:00 PM 
language
en 
main topic
Computer Science: Technical Informatics and HPC, Bioinformatics, Artificial Intelligence, Image Processing, Machine Learning
subtopics
Biology: Biophysics (incl. Methods), Systembiologie (incl. Omics, Netzwerke, Modellierung)
host
Florian Jug, Peter Steinbach 
abstract

This hands-on course will take you from 0 to 100 in Deep Learning with Keras. Our aim is to teach the fundamentals of deep learning with Convolutional Neural Networks (CNN) based on modern techniques using the Keras API and the Tensorflow backend. By the end participants will know how to build deep learning models, how to train them, what to avoid during training, what to check during training and how to perform model inference, especially for image based problems. We hope participants will then go out and apply these methods to their own problems and use cases.

All participants are expected to bring their laptop. During the workshop, a uniform access to GPU-enabled workstations or servers will be provided that hold the software stack used. Thus, your laptop is not required to hold a mobile GPU or alike. All participants are expected to have a solid understanding of fundamentals of linear algebra as well as programming.

 

Last update: 23.05.2018 15:09.

venue 

Max Planck Institute of Molecular Cell Biology and Genetics (Center for Systems Biology Dresden, Top Floor) 
Pfotenhauerstraße 108
01307 Dresden
telefon
+49 351 210-0 
fax
+49 351 210-2000 
e-mail
Max Planck Institute of Molecular Cell Biology and Genetics 
homepage
http://www.mpi-cbg.de 

organizer 

Max Planck Institute of Molecular Cell Biology and Genetics (MPI-CBG)
Pfotenhauerstraße 108
01307 Dresden
telefon
+49 351 210-0 
fax
+49 351 210-2000 
e-mail
Max Planck Institute of Molecular Cell Biology and Genetics (MPI-CBG) 
homepage
http://www.mpi-cbg.de 
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