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Addressing Large Hadron Collider Challenges by Machine Learning(으)로 돌아가기

HSE 대학의 Addressing Large Hadron Collider Challenges by Machine Learning 학습자 리뷰 및 피드백

104개의 평가
16개의 리뷰

강좌 소개

The Large Hadron Collider (LHC) is the largest data generation machine for the time being. It doesn’t produce the big data, the data is gigantic. Just one of the four experiments generates thousands gigabytes per second. The intensity of data flow is only going to be increased over the time. So the data processing techniques have to be quite sophisticated and unique. In this online course we’ll introduce students into the main concepts of the Physics behind those data flow so the main puzzles of the Universe Physicists are seeking answers for will be much more transparent. Of course we will scrutinize the major stages of the data processing pipelines, and focus on the role of the Machine Learning techniques for such tasks as track pattern recognition, particle identification, online real-time processing (triggers) and search for very rare decays. The assignments of this course will give you opportunity to apply your skills in the search for the New Physics using advanced data analysis techniques. Upon the completion of the course you will understand both the principles of the Experimental Physics and Machine Learning much better. Do you have technical problems? Write to us:

최상위 리뷰

필터링 기준:

Addressing Large Hadron Collider Challenges by Machine Learning의 15개 리뷰 중 1~15

교육 기관: Shanaya M

2018년 8월 30일

For an undergrad student of computer science, this course provides great insights into the world of astrophysics and how machine learning can be applied to solve some of the greatest mysteries of the universe.

교육 기관: Wei X

2018년 10월 17일

nice starting point for graduate students or senior undergraduate students who want to dig deeper in this direction

교육 기관: Vaibhav O

2019년 4월 24일

Some assignments are too abstract and difficult to get through without external help

교육 기관: Milos V

2019년 3월 8일

This course was walk in the park in comparison to the other ones in the specialization. However, it would not be so if I did not complete all of the previous ones. Non-perfect score goes because I think that practical assignments should be better explained like: "do some feature engineering", "feel free to use any models", etc.

교육 기관: James h

2019년 1월 14일

FUN !!!!

교육 기관: Samuel Y

2020년 3월 25일

The course material is quite brief and introductive for particle physics, with only a few interesting machine learning tricks. Meanwhile, the assignments are less prepared even misguided, either need blindly tuning sklearn optimizer or heavily dependent on feature engineering, which are not related to the core knowledge of the session. From my point of view, this course is not as good as the other ones in this great machine learning specialization.

교육 기관: Mohammed F

2019년 12월 30일

A challenging ML course for practitioners and researchers to put their abilities to the test. Could have enjoyed a bit more (possibly optional) explanation about the underlying physics.


2020년 7월 24일

Awesome Course! Puts everything in perspective with real world and real experimental data. Those who understand the real value of the data and understand the importance of the data would certainly enjoy this course. Thank you for organizing this last course in the specialization.

교육 기관: Mario A d l T C

2020년 9월 28일

Vary hard, and very exciting, But I wish some lectures about the algorithms itself. And reviews about the work in reality vs the slices of the datasets.

교육 기관: Michael D

2021년 1월 4일

Very nice overview!

Especially for an ex-experimental particle physicist being out of that business for more than 20 years.

교육 기관: Hidemasa O

2021년 3월 27일

it's really exciting! just try it! it's fun!

교육 기관: 4NM16EC026 B S K

2020년 9월 16일

This course is really good...

교육 기관: MD A R A

2020년 9월 6일

Excellent !!!

교육 기관: Krishna H

2020년 8월 28일


교육 기관: Dupont C

2021년 4월 24일

Cours extrêmement intéressant mais notion parfois poussée pour des novices; il confirme les acquis de machine learning en trouvant une application physique d'actualité qu'est la détection de particule élémentaire dans le modèle standard.