Skip Main Navigation
Page Content
This event has ended

Save This Event

Event Saved

NVIDIA DLI Workshop: Fundamentals of Deep Learning for Computer Vision hosted by EIT Digital Budapest

BME TMIT, NVidia, EIT Digital

Monday, April 16, 2018 from 9:00 AM to 5:15 PM (CEST)

NVIDIA DLI Workshop: Fundamentals of Deep Learning for...

Ticket Information

Type Remaining End Quantity
University student and staff ticket
To reserve your seat, you MUST register with a valid university email address and follow the pre-workshop instructions.
5 Tickets Ended Free  

Event Details

Topic: BME TMIT & NVIDIA DLI Workshop: Fundamentals of Deep Learning for Computer Vision hosted by EIT Digital
Date: April 16th, 2018, 9:00-17:15
Location: EIT Digital Co-Location-Center, Bogdánfy u. 10a, Budapest, 1117 HUNGARY
Language: English
Available seats: 45
Registration: http://bit.ly/DLIWorkshop-APR2018 (exclusively for verifiable academic students, staff, and researchers)
Price: free
Instructor: Dr. Gyires-Tóth Bálint | Teaching Assistant (TA): Hajgató Gergely

 

NVIDIA Deep Learning Institute (DLI) offers hands-on training for developers, data scientists, and researchers looking to solve challenging problems with deep learning and accelerated computing. DLI and BME TMIT (https://www.tmit.bme.hu/) are excited to announce this one-day practical Deep Learning workshop at EIT Digital Co-Location Center (Budapest) on April 16th, 2018 exclusively for verifiable academic students, staff, and researchers.

 

Description

In this workshop course, you will learn the basics of deep learning by training and deploying neural networks. You will:

  • Implement common deep learning workflows such as Image Classification and Object Detection.
  • Experiment with data, training parameters, network structure, and other strategies to increase performance and capability.
  • Deploy your networks to start solving real-world problems.

On completion of this course, you will be able to start solving your own problems with deep learning.

 

What You'll Learn

  • Identify the ingredients required to start a Deep Learning project.
  • Train a deep neural network to correctly classify images it has never seen before.
  • Deploy deep neural networks into applications.
  • Identify techniques for improving the performance of deep learning applications.
  • Assess the types of problems that are candidates for deep learning.
  • Modify neural networks to change their behavior.


Content level:
Beginner

Pre-Requisites: Technical background and very basic understanding of deep learning concepts. Mathematical knowledge is not required. You will work on your own laptop – so it is a requirement that you bring one.

Pre-workshop instructions: Please register Eduroam WiFi network and to https://courses.nvidia.com/courses before the workshop. Websockets are required for the Notebooks to work. Go to websocketstest.com and verify the WebSockets (Port 80) has four green checkmarks. If Websockets do not work, try disabling the antivirus software. Please use a modern, up-to-date browser.

 

IMPORTANT: To reserve your seat, you MUST register with a valid university email address and follow the pre-workshop instructions.

 

This workshop is brought to you by:

 

More about NVIDIA DIGITS: https://developer.nvidia.com/digits
Databases that are used in this workshop: MNIST, Caltech101

Organized by
NVidia (http://www.nvidia.com/dli)
BME TMIT (https://www.tmit.bme.hu/)
EIT DIGITAL (https://www.eitdigital.eu/about-us/locations/budapest-node/)

Have questions about NVIDIA DLI Workshop: Fundamentals of Deep Learning for Computer Vision hosted by EIT Digital Budapest? Contact BME TMIT, NVidia, EIT Digital

When & Where


EIT Digital Budapest, Co-Location Centre
Bogdánfy utca 10/a
1117 Budapest
Hungary

Monday, April 16, 2018 from 9:00 AM to 5:15 PM (CEST)


  Add to my calendar

Interested in hosting your own event?

Join millions of people on Eventbrite.

Please log in or sign up

In order to purchase these tickets in installments, you'll need an Eventbrite account. Log in or sign up for a free account to continue.