CERN openlab Machine Learning and Data Analytics workshop
→
Europe/Zurich
31/3-004 - IT Amphitheatre (CERN)
Maria Girone
(CERN)
Description
The goal of this workshop on Machine Learning and Data Analytics is to share ongoing activities and future challenges between industry and the HEP community. The morning will be devoted to the research community to present their challenges and potential applications for machine learning techniques, while the afternoon will be dedicated to input and opportunities to report on advancements. A panel with experts will conclude the day, giving an opportunity for in-depth discussions.
Registration
Participants
Webcast
There is a live webcast for this event
-
-
Welcome and Goals of the workshop
-
LHC experiments: Ongoing Projects and Future Challenges
-
1
CMS: ML and DA ChallengesSpeaker: Dr Jean-Roch Vlimant (California Institute of Technology (US))
-
2
LHCb: ML and DA ChallengesSpeaker: Andrey Ustyuzhanin (Yandex School of Data Analysis (RU))
-
1
-
10:30
Networking Coffee
-
LHC experiments: Ongoing Projects and Future Challenges
-
3
ATLAS: ML and DA ChallengesSpeaker: David Rousseau (LAL-Orsay, FR)
-
4
ALICE: ML and DA ChallengesSpeaker: Michele Floris (CERN)
-
3
-
5
Challenges for Industrial Control SystemsSpeaker: Filippo Maria Tilaro (CERN)
-
12:35
Lunch Break
-
Presentations from Industry and Feedback
-
6
Machine Learning and Data Analytics at IntelSpeaker: Marie-Christine Sawley (Intel)
-
7
Machine Learning and Data Analytics at ClouderaSpeaker: Tom White (Cloudera)
-
8
Machine Learning and Data Analytics at SiemensSpeaker: Volker Tresp (Siemens)
-
9
Machine Learning and Data Analytics at IBMSpeaker: Costas Bekas (IBM)
-
14:50
Networking coffee
-
10
Machine Learning and Data Analytics at GoogleSpeaker: Alex Osterloh (Google)
-
11
Machine Learning and Data Analytics at MicrosoftSpeaker: Alexandre Gattiker (Microsoft)
-
12
Machine Learning and Data Analytics at CiscoSpeaker: Enzo Fenoglio (Cisco)
-
13
Machine Learning and Data Analytics at YandexSpeaker: Andrey Ustyuzhanin (Yandex School of Data Analysis (RU))
- 14
-
6
-
Panel Discussion and Wrap-up
-