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DTSTART;TZID=Europe/Stockholm:20210623T130000
DTEND;TZID=Europe/Stockholm:20210623T160000
DTSTAMP:20260403T230403
CREATED:20210601T073659Z
LAST-MODIFIED:20210601T075456Z
UID:54841-1624453200-1624464000@www.scilifelab.se
SUMMARY:SciLifeLab Workshop on Federated Machine Learning
DESCRIPTION:Location: Online via Zoom\n\n\n\nProgram:\n\n\n\n13.00 – 13.45  Presentation: Introduction to Federated Machine Learning \n\n\n\n14.00 – 16.00  Hands-on workshop: How to set up\, run and deploy a federated learning project using the FEDn open source solution \n\n\n\nNote that it is possible to attend the first presentation only\, or both presentation and workshop. \n\n\n\nWhat is Federated Machine Learning?\n\n\n\n\nFederated learning enables several organizations / groups to collaborate on machine learning models without needing to directly share sensitive or confidential data with each other.It is a distributed machine learning approach which enables training on decentralised data. A server coordinates a network of nodes\, each of which has local\, private training data. These nodes contribute to the construction of a global model by training on local data\, and the server combines non-sensitive node model contributions into the global model. \n\n\n\nFor a short (10min ) introduction see: https://www.youtube.com/watch?v=jbLHRtGWPL8 \n\n\n\n\nWho should attend?\n\n\n\n1.Researchers who are interested in learning more about FedML \n\n\n\n2.Researchers who are interested in testing FedML hands-on in the FEDn solution \n\n\n\nAbout the organizers\n\n\n\nScaleout consists of a team of data scientists\, machine learning engineers\, software engineers\, and entrepreneurs with experience from both industry and academic research in AI and applied machine learning\, cloud and fog computing\, and scientific computing from Uppsala University. We’re working on a platform for end-to-end privacy-preserving machine learning with a focus on helping organisations put advanced machine learning and DevOps technologies into production. \n\n\n\nRegistration\n\n\n\nThe presentation and the workshop is free of charge but requires registration. The number of seats for the hands-on part of the workshop is limited to 20 people so only register for the workshop if you are interested in actively participating in the tutorial. \n\n\n\nContact: Prof. Ola Spjuth\, AI coordinator\, SciLifeLab Data Centre. \n\n\n\nRegister here
URL:https://www.scilifelab.se/event/fedml/
LOCATION:Online event via Zoom
CATEGORIES:Event
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