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Deep Learning Bootcamp 2018

Europe/Berlin
Seminar Top Floor (Center for Systems Biology Dresden)

Seminar Top Floor

Center for Systems Biology Dresden

Pfotenhauerstr. 108 01307 Dresden Germany
Florian Jug, Peter Steinbach
Description

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.

The core curriculum is planned from Monday (September 24) to Friday afternoon (September 28) to take place at the MPI CBG campus, Pfotenhauerstrasse 108, Dresden, Germany. As the agenda is currently being prepared please check-in from time to time. 

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.

The workshop admission fee amounts to € 250 per participant. Every successfull applicant is required to bring a poster to the workshop that describes their current scientific challenge that they would like to solve with Deep Learning. Posters have to be sent in 1 week prior to the workshop. 

This year, we are happy to have the following individuals as instructors:

  • Walter de Back (TU Dresden, Universitätsklinikum Dresden)

    Walter de Back has a MSc in Artificial Intelligence from Utrecht University (NL) and worked as a Junior Fellow at the the Collegium Budapest-Institute for Advanced Study. He studied pattern formation in tissues using multi-scale agent-based simulations, for which he obtained a PhD in Computational Biology from TU Dresden. Currently, Walter works as a postdoc data scientist at the Faculty of Medicine (TU Dresden) where he uses deep learning for biomedical image analysis. Recent projects include cell segmentation in live cell microscopy, dental age estimation from panoramic radiographs, and tumor tissue classification based on mass spectrometry imaging data.

  • Jeffrey Kelling (HZDR)

    Jeffrey Kelling obtained his diploma in statistical physics and his Ph.D. in physics on massively parallel lattice Monte-Carlo simulations on GPUs. He is a scientist in the computational science group at the Helmholtz-Zentrum Dresden-Rossendorf, concerned with high performance computing and deep learning applications in science. One of his current topics is using real-time object detection to detect problems in pulsed high-power lasers. 

  • Thomas Neumann (Freelancer)

    Thomas Neuman is a free-lance R&D software developer. Until August 2018, he was a PostDoc at the Junior Research Group "TISRA" at Hochschule für Technik und Wirtschaft (HTW) Dresden. His research interests range from 3D reconstruction of dynamic 3D surfaces in particular to machine learning for computer vision as well as statistical methods to model 3D surfaces. He defended his PhD in 2016 at the Institute for Computer Graphics at TU Braunschweig on "Reconstruction,
    Analysis, and Editing of dynamically deforming 3D-Surfaces".

  • Kashif Rasul (Zalando Research)

    Kashif earned his B.Sc. with Honours from Monash University in Melbourne, Australia, followed by his Ph.D. in 2010 from the Free University of Berlin in the area of Differential Geometry and PDEs. He completed his thesis under the supervision of Prof. Klaus Ecker. Prior to finishing his Ph.D. he worked at the Max Planck Institute for Gravitational Physics (Albert Einstein Institute) on the Cactus Framework, an open-source, problem-solving environment designed for scientists and engineers. Kashif also worked as a software developer on Amira, a 3D scientific visualisation framework. Since this time, he has been the cofounder of two startups in the area of Geospatial Databases and Crowdsourced Logistics.

    Kashif recently began his postdoctoral research at the Free University of Berlin in the Databases group, lead by Prof. Agnès Voisard. He is also employed as a teacher there. Kashif is passionate about high performance computing and has presented at various conferences, including Nvidia’s GTC and Strange Loop. He is an avid contributor to open source projects via github.com/kashif.
     
  • Uwe Schmidt (MPI CBG)
     

    Uwe Schmidt received the MSc and PhD degrees in computer science from TU Darmstadt, Germany. He has been a visiting graduate student at the University of British Columbia in Vancouver, Canada. Uwe is currently a postdoc at MPI-CBG in Dresden, Germany. His research interests include machine learning and computer vision.

  • Steffen Seitz (TU Dresden)

    Steffen studied Electrical Engineering and Nanobiophysics receiving his Dipl. Ing./M.Sc. from TU Dresden in 2016 in the field of Information Theory.
    Since 2016 he is working towards his Ph.D. using RNN-Autoencoders as a novel failure forecasting approach in Industrial Prognostics and Health Management Systems at TU-Dresden.
    The key idea is to train Autoencoders to detect good samples and using their reconstruction error on the degenerated samples as an universal feature to forecast the system Health.  Therefore he successfully implemented various Autoencoder architectures in the past using Keras and Tensorflow. Currently he is focussing to implement STORN Autoencoders and DVBF-Kalman filters on the task.

  • Sebastian Starke (HZDR)

    Sebastian received his bachelor degree in mathematics in 2013 and his masters degree in statistics in 2015 from the Otto-von-Guericke University in Magdeburg. Afterwards he worked as an algorithm engineer in the field of speech recognition before joining the computational science group at HZDR in October 2016. At the moment he is working together with OncoRay scientists to apply deep learning methods to CT images of cancer patients to improve personalized treatment.

  • Martin Weigert (MPI CBG)

    Martin Weigert holds a Diploma in Physics from Technical University Dresden. He is currently wrapping up his PhD in the group of Gene Myers at MPI-CBG in Dresden, where he investigates computational methods for advanced fluorescence microscopy. Among his interests are computational optics, physical simulations and visualizations, and machine learning methods for image reconstruction.

Surveys
Workshop Feedback
    • 12:30 14:00
      Registration 1h 30m Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany
    • 14:00 18:00
      What can Deep Learning Do? Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      This session will introduce Deep Learning and teach you how to use existing (and potentially pretrained) networks. At the end of this session, you should be capable of doing training and testing of a deep learning network.

      Conveners: Mr Jeffrey Kelling (HZDR), Mr Sebastian Starke (HZDR)
      • 14:00
        Introduction to (Deep) Machine Learning 1h
        Speaker: Uwe Schmidt (MPI-CBG)
      • 15:00
        Coffee Break 30m
      • 15:30
        Train a Cat/Dog classifier 1h
        Speakers: Mr Jeffrey Kelling (HZDR), Mr Sebastian Starke (HZDR)
      • 16:30
        Transfer Learning 1h 30m
        Speakers: Mr Jeffrey Kelling (HZDR), Mr Sebastian Starke (HZDR)
    • 20:00 22:00
      Networking Dinner (self-paid) 2h Kutscherschänke

      Kutscherschänke

      Münzgasse 10, 01067 Dresden

      We reserved a table at the Kutscherschänke in the historic part of downtown Dresden.
      https://goo.gl/maps/HtRZwxUqvvT2

    • 09:00 09:30
      What can Deep Learning Do? Continued: Practical Improvements Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      This session will provide an opportunity to repeat and clearify questions from the first part.

      Conveners: Mr Jeffrey Kelling (HZDR), Mr Sebastian Starke (HZDR)
      • 09:00
        Q & A from day 1 30m
    • 09:30 12:00
      How does Deep Learning Work?: Neural Networks and Back-Propagation Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      This block starts to discuss the mathematical details behind Deep Learning

      Conveners: Mr Jeffrey Kelling (HZDR), Mr Sebastian Starke (HZDR), Mr Walter de Back (TU Dresden / UKD)
    • 12:00 13:00
      Lunch 1h Canteen (MPI CBG)

      Canteen

      MPI CBG

      Max Planck Institute of Molecular Cell Biology and Genetics Pfotenhauerstr. 108 01307 Dresden
    • 13:00 18:00
      How does Deep Learning Work? Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      This block starts to discuss the mathematical details behind Deep Learning

      • 13:00
        Lightning talks 30m
      • 13:30
        Convolutional Neural Networks 1h
        Speaker: Mr Jeffrey Kelling (HZDR)
      • 14:30
        Coffee Break 30m
    • 09:00 12:00
      How does Deep Learning Work? Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      This block starts to discuss the mathematical details behind Deep Learning

      • 09:00
        Regularization / Batch Normalization 1h
        Speaker: Mr Sebastian Starke (HZDR)
      • 10:00
        Advanced Optimization 30m

        like RMS propagation, Adam, etc

        Speaker: Mr Kashif Rasul (Zalando Research)
      • 10:30
        Coffee Break 30m
      • 11:00
        CNN Architectures 1h
        Speaker: Mr Kashif Rasul (Zalando Research)
    • 12:00 13:00
      Lunch 1h Canteen (MPI CBG)

      Canteen

      MPI CBG

      Max Planck Institute of Molecular Cell Biology and Genetics Pfotenhauerstr. 108 01307 Dresden
    • 13:00 18:00
      What else can Deep Learning Do? Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany
      • 13:00
        Lightning talks 30m
      • 13:30
        Recurrent Neural Networks 1h
        Speaker: Mr Steffen Seitz (TU Dresden)
      • 14:30
        Coffee Break 30m
      • 15:00
        Single- and Multi-Object Detection 45m
        Speaker: Mr Kashif Rasul (Zalando Research)
      • 16:00
        Segmentation 2h
        Speaker: Mr Walter de Back (TU Dresden / UKD)
    • 09:00 12:00
      What else can Deep Learning Do? Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany
      • 09:00
        Uncertainty 1h
        Speaker: Walter de Back
      • 10:00
        Coffee Break 30m
      • 10:30
        Autoencoders and GANs 1h
        Speakers: Mr Jeffrey Kelling (HZDR), Mr Walter de Back (TU Dresden / UKD)
      • 11:30
        Image restoration with convnets, Part 1 30m
        Speakers: Martin Weigert, Uwe Schmidt (MPI-CBG)
    • 12:00 13:00
      Lunch 1h Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany
    • 13:00 14:30
      What else can Deep Learning Do? Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany
      • 13:00
        Image restoration with convnets, Part 2 1h 30m
        Speakers: Martin Weigert, Uwe Schmidt (MPI-CBG)
    • 14:30 15:00
      Change Rooms 30m Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany
    • 15:00 19:00
      Deep Learning in Industry Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      For more details, see https://indico.mpi-cbg.de/event/132/

      Participants of the bootcamp don't need to register there.

      Convener: Peter Steinbach
    • 19:30 21:30
      Good-bye Dinner (self-paid) 2h Schillergarten

      Schillergarten

      Schillerpl. 9 01309 Dresden

      We reserved a big table at Schillergarten within a 30min walk to the bootcamp venue.
      https://goo.gl/maps/TS5JZCQ773w

    • 09:00 12:00
      Hackday: Bring your own data Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      Bring your data and your ideas. We'll go from there on this day.

    • 12:00 13:00
      Lunch 1h Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany
    • 13:00 18:00
      Hackday Seminar Top Floor

      Seminar Top Floor

      Center for Systems Biology Dresden

      Pfotenhauerstr. 108 01307 Dresden Germany

      Bring your data and your ideas. We'll go from there on this day.

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