BEGIN:VCALENDAR
VERSION:2.0
PRODID:-//wp-events-plugin.com//7.2.3.1//EN
TZID:Europe/Berlin
X-WR-TIMEZONE:Europe/Berlin
BEGIN:VEVENT
UID:404@scientifica.de
DTSTART;TZID=Europe/Berlin;VALUE=DATE:20250729
DTEND;TZID=Europe/Berlin;VALUE=DATE:20250801
DTSTAMP:20250702T075545Z
URL:https://scientifica.de/en/kurse/energy-efficient-computing/
SUMMARY:***canceled*** Energy-efficient Computing and Green Edge Grid: Data
 -driven Modelling (engl.)
DESCRIPTION:To limit carbon emissions\, recent research shows that utilizin
 g photovoltaic energy sources rather than fossil fuels to produce electric
 ity reduces the final energy demand by up to 40%. Therefore\, this course 
 aims to learn about the methods to design and devise strategies for reachi
 ng a more zero carbon emission environment. \nFirstly\, we learn about hou
 sehold solar power production predictions by applying machine learning mod
 els to a specific dataset. Households are at the Edge of the smart grid ne
 twork\; therefore\, we utilize the available data traces and several categ
 ories of machine learning models\, such as boosting and neural networks\, 
 to walk towards a greener environment. \nOn the other hand\, one solution 
 to help infrastructure providers\, such as Cloud or Edge\, achieve a green
 er environment is to utilize optimized orchestration strategies for distri
 buting the user's services. Hence\, this course also covers working with D
 ocker containers\, microservice orchestrators such as Kubernetes\, and dev
 eloping a scheduling strategy with the help of a Kubernetes Python Client.
  This section of the course targets strategies to lower resource utilizati
 on and energy consumption. \nWe use the libraries and APIs available in Py
 thon for all the aforementioned steps. \n\n***\nRequirements: - \nCredit P
 oints (ECTS): 1\, grading possible
CATEGORIES:Halbwochenkurs Di-Do,ifbw25,informatica feminale
LOCATION:Hochschule Furtwangen - Campus Schwenningen\, Erzbergerstraße 14\
 , 78054 Villingen-Schwenningen\, Germany
X-APPLE-STRUCTURED-LOCATION;VALUE=URI;X-ADDRESS=Erzbergerstraße 14\, 78054
  Villingen-Schwenningen\, Germany;X-APPLE-RADIUS=100;X-TITLE=Hochschule Fu
 rtwangen - Campus Schwenningen:geo:0,0
END:VEVENT
BEGIN:VTIMEZONE
TZID:Europe/Berlin
X-LIC-LOCATION:Europe/Berlin
BEGIN:DAYLIGHT
DTSTART:20250330T030000
TZOFFSETFROM:+0100
TZOFFSETTO:+0200
TZNAME:CEST
END:DAYLIGHT
END:VTIMEZONE
END:VCALENDAR