• Skip to content  (Accesskey: 1)
  • Skip to navigation  (Accesskey: 2)
  • Skip to search  (Accesskey: 7)
Close page navigation
DE
Open page navigation
  • TU Wien
    • Overview
    • News
    • fuTUre fit
    • About TU Wien
    • Organisation
    • A university for all
    • Working at TUW
    • TUW Community
    • Campus
    • Contact
  • Studies
    • Overview
    • Studies
    • Prospective Students
    • New Students
    • Students
    • Studying Internationally
    • Teaching Staff , opens an external URL in a new window
    • Pupils
    • Best Teaching Awards 2025
  • Research
    • Overview
    • Profile
    • News
    • Events
    • Facilities
    • Successes
    • Networks
    • TUW Doctoral Center
    • RTI support
    • Funding opportunities
    • Databases
  • Partnerships
    • Overview
    • Inventions, Patents, Commercialization
    • Giving and Support
    • Start-ups
    • Technology Offers
    • Industry Relations
    • Center for Technology and Society , opens an external URL in a new window
    • University Alliances
    • TU Austria , opens an external URL in a new window
    • EULIST
  • Services
    • Overview
    • Library
    • Campus IT-Services
    • Campus services
    • Eventmanagement
    • Media
    • Reporting system
    • Newsletter
  • Internal
    • Overview
    • Portal (TISS, SAP, TYPO3,...) , opens an external URL in a new window

Research Events

  1. Research /
  2. Events /
  3. Detail /

back to the research event calendar

 

09. September 2022, 09:00 until 23. September 2022 16:00

Online Course – Machine Learning in Industry 4.0

Other

Machine Learning in Industry 4.0 is a 5-days interactive online training, especially designed for professionals (such as engineers and other technical professionals, as well as students) interested in the basic theory of Machine Learning (ML) (for example, theory on the ML landscape, support vector machines, decision trees etc.), but who would also like to learn about Deep Learning and its practical application with solving a classification or regression model problem.

By the end of the training the participants will be able to understand the basic concepts of Machine Learning and its application to the Manufacturing and Industry context. The training is interactive with application of real case examples across all days.

Program:

Block 1:
09 September 2022

Theory, basic ideas of Machine Learning (ML) & ML landscape
Support Vector Machines, Decision Trees
Random Forests and Ensemble Learning

Block 2:
12 September 2022

Theory and basic ideas of Neural Networks (NN) & Deep Learning (DL)
Quick tour of TensorFlow and Keras
Solving a regression problem
MNIST dataset: The Hello World of DL

19 September 2022

Convolutional Neural Networks (CNNs)
Manufacturing/industry-related examples
Transfer learning on CNNs
Manufacturing/industry-related example

21 September 2022

Convolutional Neural Networks (CNNs)
Manufacturing/industry-related examples
Transfer learning on CNNs
Manufacturing/industry-related example

Block 3:
23 September 2022

Wrap up, repetition & outlook
High-Performance Computing (HPC)
Training a NN on an HPC cluster
Means and methods of improving performance

Prerequisites:

The participants are expected to have at least basic programming skills in Python.

Hands-on Labs:

Participants will use their own laptop or workstation to do the hands-on exercises. We will use Anaconda (https://www.anaconda.com) and more detailed instructions how to download the software and setup the environment will be provided to the participants before the course starts. In addition, all participants will get a temporary training user on the VSC for the last course day, any up-to-date browser will be enough to connect to the VSC Jupyterhub and train a neural network on the HPC facilities of the Vienna Scientific Cluster.

Course Material:

The course material will be available for registered attendees at course start.

Lecturers:

Simeon Harrison and Claudia Blaas-Schenner (EuroCC Austria and VSC Research Center, TU Wien), Philipp Danninger (EuroCC Austria and Know-Center).

Language: English

Date, Time, and Location:

09.+12.+19.+21.+23. 09. 2022, 09:00 - 16:00 CEST, LIVE ONLINE COURSE (using Zoom)

Prices and Eligibility:

Price for the full course with certificate of attendance:
360 EUR/person (including VAT)

FREE info webinar before the start of the course:

30 August 2022, 16:00 - 17:00. Register here: www.eventbrite.com/e/machine-learning-in-industry-40-online-training-info-webinar-tickets-403405315157

Calendar entry

Event details

Event location
TU Wien
Zoom, Online
Organiser
EIT Manufacturing CLC East in cooperation with EuroCC Austria, Vienna Scientific Cluster (VSC), and Know-Center.
Simeon Harrison
training-eurocc@vsc.ac.at
More Information
https://vsc.ac.at/training/2022/ML_Industry40/
Public
Yes
Entrance fee
Yes
Registration required
Yes

Registration via EIT Manufacturing CLC East: https://eitmanufacturing-east.eu/product/machine-learning-in-industry-4-0/ , opens an external URL in a new window

Skip to footer

TU Wien

  • News
  • fuTUre fit
  • About TU Wien
  • Organisation
  • Corona
  • A university for all
  • Working at TUW
  • TUW Community
  • Campus
  • Contact

Studies

  • News
  • Studies
  • Admission
  • Studying at TU Wien
  • Student Support
  • Teaching at TU Wien
  • International
  • Pupils
  • Continuing Education
  • ÖH Elections 2025
  • Best Teaching Awards 2025

Research

  • Profile
  • News
  • Events
  • Facilities
  • Successes
  • Networks
  • TUW Doctoral Center
  • RTI support
  • Funding opportunities
  • Databases

Partnerships

  • Inventions, Patents, Commercialization
  • Giving and Support
  • Start-ups
  • Technology Offers
  • Industry Relations
  • Center for Technology and Society, opens an external URL in a new window
  • University Alliances
  • TU Austria, opens an external URL in a new window
  • EULIST

Services

  • Library
  • Campus IT-Services
  • Campus services
  • Eventmanagement
  • Media
  • Reporting system
  • Newsletter

Internal

  • Portal (TISS, SAP, TYPO3,...), opens an external URL in a new window

© TU Wien  # 12508

  • Legal notice
  • Accessibility Declaration
  • Data Protection Declaration (PDF)
  • Cookie settings
  • Top menu level Research
  • Back to: Events
  • Detail
  • Facebook
  • LinkedIn
  • YouTube
  • Instagram
  • Bluesky

About Cookies and other techniques

Our website uses cookies and integrates content from third-party providers to ensure you get the best experience on our website, for analytical purposes, to provide social media features, and for targeted advertising. This it is necessary in order to pass information on to respective service providers. If you would like additional information about cookies and content from third-party providers on this website, please see our Data protection declaration.

Mandatory

These cookies are required to help our website run smoothly.

Name Purpose Lifetime Type Provider
CookieConsent Saves your settings for the use of cookies on this website. 1 year HTML Homepage TU Wien
SimpleSAML This is needed to distinguish between the sessions of the logged-in users. session HTTP Login TU Wien
SimpleSAMLAuthToken This is needed to distinguish between the sessions of the logged-in users. session HTTP Login TU Wien
fe_typo_user Is needed so that in case of a Typo3 frontend login the session ID is recognized to grant access to protected areas. session HTTP Homepage TU Wien
staticfilecache Is needed to optimize the delivery time of the website. session HTTP Homepage TU Wien
JESSIONSID Is needed so that in case of a LectureTube the session ID is recognized to grant access to protected areas. session HTTP LectureTube TU Wien
_shibsession_lecturetube This is needed to distinguish between the sessions of the logged-in users. session HTTP LectureTube TU Wien
Web statistics

These cookies help us to continuously improve our services and adapt our website to your needs. We statistically evaluate the pseudonymized data collected from our website.

Name Purpose Lifetime Type Provider
_pk_id Used to store a few details about the user such as the unique visitor ID. 13 months HTML Matomo TU Wien
_pk_ref Is used to store the information of the users home website. 6 months HTML Matomo TU Wien
_pk_ses Is needed to store temporary data of the visit. 30 minutes HTML Matomo TU Wien
Marketing

With the help of these cookies and third-party content we strive to improve our offer for our users. By means of anonymized data of website users we can optimize the user flow. This enables us to improve ads and website content.

Name Purpose Lifetime Type Provider
facebook Is used to Enable ad delivery or retargeting 90 days HTTP Meta
__fb_chat_plugin Is needed to store and track interactions (marketing/tracking). persistent HTTP Meta
_js_datr Is needed to save user settings. 2 years HTTP Meta
_fbc Is needed to save the last visit (marketing/tracking). 2 years HTTP Meta
fbm Is needed to store account data (marketing/tracking). 1 year HTTP Meta
xs Is needed to store a unique session ID (marketing/tracking). 1 year HTTP Meta
wd Is needed to log the screen resolution. 1 week HTTP Meta
fr Is needed to serve ads and measure and improve their relevance. 3 months HTTP Meta
act Is needed to store logged in users (marketing/tracking). 90 days HTTP Meta
_fbp Is needed to store and track visits to various websites (marketing/tracking). 3 months HTTP Meta
datr Is needed to identify the browser for security and website integrity purposes, including account recovery and identification of potentially compromised accounts. 2 years HTTP Meta
dpr Is used for analysis purposes. Technical parameters are logged (e.g. aspect ratio and dimensions of the screen) so that Facebook apps can be displayed correctly. 1 week HTTP Meta
sb Is needed to store browser details and security information of the Facebook account. 2 years HTTP Meta
dbln Is needed to store browser details and security information of the Facebook account. 2 years HTTP Meta
spin Is needed for promotional purposes and social campaign reporting. session HTTP Meta
presence Contains the "chat" status of logged in users. 1 month HTTP Meta
cppo Is needed for statistical purposes. 90 days HTTP Meta
locale Is needed to save the language settings. session HTTP Meta
pl Required for Facebook Pixel. 2 years HTTP Meta
lu Required for Facebook Pixel. 2 years HTTP Meta
c_user Required for Facebook Pixel. 3 months HTTP Meta
bcookie Is needed to store browser data (marketing/tracking). 2 years HTTP LinkedIn
li_oatml Is needed to identify LinkedIn members outside of LinkedIn for advertising and analytics purposes. 1 month HTTP LinkedIn
BizographicsOptOut Is needed to save privacy settings. 10 years HTTP LinkedIn
li_sugr Is needed to store browser data (marketing/tracking). 3 months HTTP LinkedIn
UserMatchHistory Is needed to provide advertising or retargeting (marketing/tracking). 30 days HTTP LinkedIn
linkedin_oauth_ Is needed to provide cross-page functionality. session HTTP LinkedIn
lidc Is needed to store performed actions on the website (marketing/tracking). 1 day HTTP LinkedIn
bscookie Is needed to store performed actions on the website (marketing/tracking). 2 years HTTP LinkedIn
X-LI-IDC Is needed to provide cross-page functionality (marketing/tracking). session HTTP LinkedIn
AnalyticsSyncHistory Stores the time when the user was synchronized with the "lms_analytics" cookie. 30 days HTTP LinkedIn
lms_ads Is needed to identify LinkedIn members outside of LinkedIn. 30 days HTTP LinkedIn
lms_analytics Is needed to identify LinkedIn members for analytics purposes. 30 days HTTP LinkedIn
li_fat_id Required for indirect member identification used for conversion tracking, retargeting and analytics. 30 days HTTP LinkedIn
U Is needed to identify the browser. 3 months HTTP LinkedIn
_guid Is needed to identify a LinkedIn member for advertising via Google Ads. 90 days HTTP LinkedIn