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* Marco Medjnak (Tutorials) | * Marco Medjnak (Tutorials) | ||
= Where and When = | == Where and When += | ||
* Lectures on Fridays: 14.0-16.00 | * Lectures on Fridays: 14.0-16.00 | ||
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The Colaboratory platform from Google is quite good way to use powerful computer without buying one: It requires no specific hardware or software, and even allows you to use GPU computing for free, all by writting a jupyter notebook that you can then share. | The Colaboratory platform from Google is quite good way to use powerful computer without buying one: It requires no specific hardware or software, and even allows you to use GPU computing for free, all by writting a jupyter notebook that you can then share. | ||
= Grading = | == Grading == | ||
3 homeworks (10 points each) + 1 MCQ (20 points) + 1 oral exam (50 points) | 3 homeworks (10 points each) + 1 MCQ (20 points) + 1 oral exam (50 points) [?? to be decided] | ||
== Schedule == | |||
=== Friday, September 4, 2020 === | |||
''' Lecture 1: Introduction to Monte Carlo''' | |||
=== Friday, September 11, 2020 === | |||
''' Tutorial 1: Markov matrix & thumb rule''' | |||
''' Homework 1: Page Rank & Errors''' | |||
=== Friday, September 18, 2020 === | |||
''' Lecture 2: Error evaluation''' | |||
''' Tutorial 1: Sampling non uniform distribution''' | |||
=== Friday, September 25, 2020 === | |||
=== Friday, October 2, 2020 === | |||
=== Friday, October 9, 2020 === | |||
=== Friday, October 16, 2020 === | |||
=== Friday, October 23, 2020 === | |||
Revision as of 14:40, 31 August 2020
Numerical Physics and Machine Learning
Course description
We will cover many algothims used in many-body problems and complex systems: Monte Carlo methods, molecular dynamics and optmization in complex landscapes. We shall also discuss the use of some machine learning algorithms (Boltzmann machines, Auto-encoder, Deep Learning) for physics problems.
We focus on algorithms and physics, not on programming and heavy numerics. The theoretical lecture is followed by a tutorial introducing concrete numerical exercises. You will have to hand in 3 homeworks.
The Team
- Alberto Rocco (Numerical Physics)
- Florent Krzakala (Machine Learning)
- Marco Medjnak (Tutorials)
= Where and When +
- Lectures on Fridays: 14.0-16.00
- Tutorials on Fridays: 16h00-18.00
- ENS, 24 rue Lhomond, room Conf IV (2nd floor)
Computer Requirements
No previous experience in programming is required.
Programming Language: Python
For practical installation, we recommand either to use Anaconda (See Memento Python) or use google colab.
The Colaboratory platform from Google is quite good way to use powerful computer without buying one: It requires no specific hardware or software, and even allows you to use GPU computing for free, all by writting a jupyter notebook that you can then share.
Grading
3 homeworks (10 points each) + 1 MCQ (20 points) + 1 oral exam (50 points) [?? to be decided]
Schedule
Friday, September 4, 2020
Lecture 1: Introduction to Monte Carlo
Friday, September 11, 2020
Tutorial 1: Markov matrix & thumb rule
Homework 1: Page Rank & Errors
Friday, September 18, 2020
Lecture 2: Error evaluation
Tutorial 1: Sampling non uniform distribution
Friday, September 25, 2020
Friday, October 2, 2020
Friday, October 9, 2020
Friday, October 16, 2020
Friday, October 23, 2020
References
- SMAC W. Krauth Statistical Mechanics: Algorithms and Computations (Oxford: Oxford University Press) (2006)
- Other references are specified in each lectures