What can you expect during this Lunch & Learn?
During this interactive session, Else Laura Rademaker, sustainability advisor at DEN, will discuss the CO2 impact of digital transformation and how IT can contribute to sustainability:
- You will receive an explanation about 'Twin Transition.'
- You will learn more about DEN's research into the CO2 emissions of online and streamed performances and how these emissions compare to those of physical performances in a venue.
- We will provide an introduction to the calculation tool that allows you to calculate the CO2 impact of (online) performances yourself.
- You will also receive practical tips for sustainable digitization, and we will discuss the environmental impact of streaming and Video on Demand (VOD).
For whom?
This Lunch & Learn is relevant for anyone in the cultural sector who wants to know what can be done to reduce the environmental impact of digital offerings and online behavior. No prior knowledge is required.
What can you do to prepare?
Before the online session, complete the 'Digital Ecological Footprint Tool' from ISIT Belgium: https://myimpact.isit-europe.org/nl/ (opens in new tab) select Belgium as the country option.
Questions
You can already submit any questions about sustainability via the registration form.

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