School participants will learn to improve the efficiency of their research codes, and to parallelize them. Lectures on a selection of technical aspects of modern HPC hardware will be mixed with introductions to widely used parallel programming tools and libraries. The hands-on sessions will allow participants to practice on small example problems of general scientific interest. Example topics will cover numerical methods and parallel strategies, as well as data management.
The programme specifically addresses the needs of scientists using, writing, or modifying HPC applications, and will not assume, require, or provide significant IT and HPC resource management skills.
It will be mainly based on fundamental HPC-relevant features in widely used scientific software for high-performance computing:
The school will be organized in association with the International Centre for Theoretical Physics (ICTP/Trieste), the ICTP/SAIFR and the Center for Scientific Computing (NCC/Unesp)
The program will closely follow the one from previous schools (see Appendix). We intend to add some more advance content mainly on Machine/Deep Learning.
The school has the goal of teaching participants about modern machine learning techniques, their strengths and shortcomings, and how to apply them in the context of High-Energy Physics (HEP). The school is targeted particularly at senior PhD students, working towards the completion of their thesis projects, as well as young postdocs.
School participants will learn the formalism of machine learning, starting from an introductory level and going through more advanced topics like computer vision, sequential and recursive learning, anomaly and outlier detectors, and adversarial networks. Those academic lectures will be mixed with a set of hands-on sessions where the students will be able to apply the concepts to solving real-world problems in HEP: detector simulation, track finding, jet tagging.
The present proposal follows in many aspects the previous events in this subject like Data Science in High Energy Physics series (DS@HEP):
Monday![]() |
Tuesday | Wednesday | Thursday | Friday | |
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10:30-11:00 | Coffee-break | Coffee-break | Coffee-break | Coffee-break | Coffee-break |
16:00-16:30 | Coffee-break | Coffee-break | Coffee-break | Coffee-break | Coffee-break |
14:30-16:00 | Hands-on | Hands-on | Hands-on | Hands-on | Summary Presentation |
16:30-18:00 | Hands-on | Hands-on | Hands-on | Hands-on | Summary Presentation |
09:00-10:30 | Introduction to ML | Computer Vision. | Sequential/Recursive Learning | Anomaly Outlier Detection | Adversarial Network |
11:00-12:30 | Introduction to ML | Computer Vision. | Sequential/Recursive Learning | Anomaly Outlier Detection | Adversarial Network |
12:30-14:30 | Lunch | Lunch | Lunch | Lunch | Lunch |
01.June | Website |
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15.June | Start online application |
15.July | Final version of the poster |
01.August | Distribution of the posters to several institutes worldwide |
Until 22.September | Online announcements sent to physical societies, websites, social media, funding agencies and former participants |
29.September | Application deadline |
30.September-07.October | Application evaluation and ranking |
07.October | Acceptance notification and start to organize the visits |
07.October | Final version of the budget |
07.October-18.November | Organization of the visits and logistics (Visa letters, Travel, Lodging) |
11.November | Final version of the program at the website |
2-13. December | School on Parallel Programming for High Performance Computing |
16-20. December | School on Data Science and Machine Learning |
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