11–14 Aug 2023
学术报告厅
Asia/Shanghai timezone

Quantum Tracking for Future Colliders

Not scheduled
20m
学术报告厅

学术报告厅

青岛蓝谷国际酒店
Talk Quantum Machine Learning

Speaker

Prof. Hideki Okawa (高能所)

Description

At the High Luminosity Large Hadron Collider (HL-LHC), we will enter the “exa-byte” era, where the annual computing cost will increase by a factor of 10-20 from the ongoing LHC program. Without various innovations, the experiments will not be able to operate. The Graphical Processing Units (GPU) and other state-of-the-art artificial intelligence technologies will be the baseline at the HL-LHC. Quantum computing may also bring another “leap”. Two of the highly CPU consuming components are the track reconstruction in both data/simulation and simulation of shower development in the calorimeter. Tackling these challenges will be useful not just for the HL-LHC, but for other future colliders, such as the Circular Electron Positron Collider (CEPC). In this talk, I will present recent studies on the former topic, namely on an application of quantum machine learning for the track reconstruction.

I am non-PhD student

Primary author

Prof. Hideki Okawa (高能所)

Presentation materials

There are no materials yet.