March 1, 2023
ONLINE
Europe/Prague timezone

Annotation

Detecting anomalies is challenging as it is hard to retrieve labeled training data for supervised training. Anomalies are after all events that occur less likely and sporadically. They also can show a broad range of effects which not all can be covered during training.

Different approaches are hence needed in order to train the machine and deep learning models for identifying situations that are rare and cannot be (fully) labeled.

This course covers three different methods, using XGBoost, Autoencoders, and Generative Adversarial Networks (GANs). For each, detailed hands-on exercises are provided to learn how to use these methods and how to tackle the lack of labeled training data.

In this workshop, developers will learn how to:

  • Prepare data and build, train, and evaluate models using XGBoost, autoencoders, and GANs.
  • Detect anomalies in datasets with both labeled and unlabeled data.
  • Classify anomalies into multiple categories regardless of whether the original data was labeled.

This training will be held ONLINE and will NOT be recorded.

Level

beginner

Language

English

Prerequisites

Experience with programming in Python and basic experience in training deep neural networks.

NVIDIA developer account is needed prior to the event. Please see the section "Practicalities" below.

Tutor

Georg Zitzlsberger is a research specialist for Machine and Deep Learning at IT4Innovations. For over four years he has been certified by NVIDIA as a University Ambassador of the NVIDIA Deep Learning Institute (DLI) program. This certification allows him to offer NVIDIA DLI courses to users of IT4Innovations' HPC services. In addition, in collaboration with Bayncore, he was a trainer for Intel HPC and AI workshops and conferences carried out across Europe. He has been contributing to these events, which are held for audiences from industry and academia, for five years. Recently, he also received instructor certifications from Intel for oneAPI related courses.

                                                                 

Acknowledgments

This project has received funding from the European High-Performance Computing Joint Undertaking (JU) under grant agreement No 101101903. The JU receives support from the Digital Europe Programme and Germany, Bulgaria, Austria, Croatia, Cyprus, Czech Republic, Denmark, Estonia, Finland, Greece, Hungary, Ireland, Italy, Lithuania, Latvia, Poland, Portugal, Romania, Slovenia, Spain, Sweden, France, Netherlands, Belgium, Luxembourg, Slovakia, Norway, Türkiye, Republic of North Macedonia, Iceland, Montenegro, Serbia. This project has received funding from the Ministry of Education, Youth and Sports of the Czech Republic.

This course was supported by the Ministry of Education, Youth and Sports of the Czech Republic through the e-INFRA CZ (ID:90254).

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Europe/Prague
ONLINE
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Registration

Registration is obligatory. Only registered participants will receive the Zoom link. This training is offered only to members from academia.

After the number of registrations has reached its maximum or the registration form has been closed, you may want to send us an email stating that you are interested to be put on the waiting list. (Vacancies may occur due to cancellations, etc.) E-mail to training@it4i.cz

Practicalities

This training will be an online event. Technical details about joining will be sent to the accepted registrants before the event. 

Before the workshop please create an NVIDIA developer account under http://courses.nvidia.com/join using the same email address as for event registration.

The recommended browser for the course is a recent version of Chrome. Please ensure your laptop will run smoothly by going to websocketstest.com. Make sure that WebSockets work for you by seeing under Environment, WebSockets is supported and Data Receive, Send and Echo Test all check Yes under WebSockets (Port 80). If there are issues with WebSockets, try updating your browser.

Capacity and Fees

The capacity is limited to 30 participants combined online and onsite.

The course is free of charge for participants from academia. Please make sure you register using your University/Institute e-mail so that we can check your eligibility. In case you are from industry please contact us so that we can monitor the interest.