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Kick-Off Webinar: IceCube – Neutrinos in Deep Ice ML Competition with Dr. Philipp Eller | Kaggle

Welcome to the IceCube neutrino challenge!

Neutrinos allow us to gain deep insights into the fundamental structure of matter, and to research our universe uncovering cataclysmic phenomena far away from our Earth. At the South Pole, in the middle of the Antarctica ice, we have constructed the world's largest neutrino detector and are taking data for more than 10 years. Interpreting this data, and in particular figuring out where exactly neutrinos came from, especially in a timely manner for real-time observations, is a daunting task. This is where we need your help! Your task is to estimate the direction of neutrinos that interacted in IceCube and provide fast and accurate predictions for the zenith and azimuth angles per recorded event.

We hope that you take up the challenge and that maybe together with your ideas and algorithms we will be able to unravel some scientific mysteries in the future!

Please enjoy, have fun, thank you, and the best of luck!
Philipp Eller on behalf of the organizing team

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Видео Kick-Off Webinar: IceCube – Neutrinos in Deep Ice ML Competition with Dr. Philipp Eller | Kaggle канала Kaggle
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28 января 2023 г. 3:22:27
01:28:04
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