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en:courses:2016-2017:ml2016 [2016/06/01 10:45]
bardet [Detailed Schedule]
en:courses:2016-2017:ml2016 [2016/09/13 22:49] (current)
jaggim adding clicker room link and notabene link
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 ===== Machine Learning ===== ===== Machine Learning =====
  
-(a.k.a. ​Pattern Classification and Machine Learning)\\+(formerly known as Pattern Classification and Machine Learning)\\
 previous year's website: [[http://​icapeople.epfl.ch/​mekhan/​pcml15.html]] previous year's website: [[http://​icapeople.epfl.ch/​mekhan/​pcml15.html]]
  
  
 \\  \\ 
-|Instructor|**Martin Jaggi**| +|Instructor|**Martin Jaggi**|    |Instructor|**Ruediger Urbanke**| 
-|Office|[[http://​plan.epfl.ch/?​room=XXX000|XXX000]]| +|Office|[[http://​plan.epfl.ch/?​room=INJ339|INJ 339]]||Office|[[http://​plan.epfl.ch/?​room=INR116|INR 116]]| 
-|Phone|**+41 21 69 3xxxx**| +|Phone|**+41 21 69 37059**||Phone|**+41 21 69 37692**| 
-|Email|**martin.jaggi@epfl.ch**| +|Email|**martin.jaggi@epfl.ch**||Email|**ruediger.urbanke@epfl.ch**| 
-|Office Hours|**By appointment**|+|Office Hours|**By appointment**||Office Hours|**By appointment**| 
 +\\ 
 +| | | | 
 +|Teaching Assistant |**Mohamad Dia**|Email|**mohamad.dia@epfl.ch**| |Office|[[http://​plan.epfl.ch/?​room=INR140|INR 140]]|
 | | | | | |
-|Instructor|**Ruediger Urbanke**| +|Teaching Assistant ​|**Ksenia Konyushkova**|Email|**ksenia.konyushkova@epfl.ch**| |Office|[[http://​plan.epfl.ch/?​room=BC304|BC304]]|
-|Office|[[http://​plan.epfl.ch/?​room=INR116|INR 116]]+
-|Phone|**+41 21 69 37692**| +
-|Email|**ruediger.urbanke@epfl.ch**| +
-|Office Hours|**By appointment**|+
 | | | | | |
-|Teaching Assistant |**Mohamad Dia**|    +|Teaching Assistant |**Victor Kristof**|Email|**victor.kristof@epfl.ch**| |Office|[[http://​plan.epfl.ch/?​room=BC204|BC204]]|
-|Office|[[http://​plan.epfl.ch/?​room=INR140|INR 140]]+
-|Email|**mohamad.dia@epfl.ch**| +
-|Office Hours|**By appointment**|+
 | | | | | |
-|Teaching Assistant |**Mohamad Dia**|    +|Teaching Assistant |**Taylor Newton**|Email|**taylor.newton@epfl.ch**| |Office|[[http://​plan.epfl.ch/?​room=B1%205%20284.045|B1 Geneva]]|
-|Office|[[http://​plan.epfl.ch/?​room=INR140|INR 140]]+
-|Email|**mohamad.dia@epfl.ch**| +
-|Office Hours|**By appointment**|+
 | | | | | |
-|Teaching Assistant |**Mohamad Dia**|    +|Teaching Assistant |**Farnood Salehi**|Email|**farnood.salehi@epfl.ch**| |Office|[[http://​plan.epfl.ch/?​room=BC250|BC250]]|
-|Office|[[http://​plan.epfl.ch/?​room=INR140|INR 140]]+
-|Email|**mohamad.dia@epfl.ch**| +
-|Office Hours|**By appointment**|+
 | | | | | |
-|Teaching Assistant |**Mohamad Dia**|    +|Teaching Assistant |**Benoît Seguin**|Email|**benoit.seguin@epfl.ch**| |Office|[[http://​plan.epfl.ch/?​room=INN140|INN 140]]|
-|Office|[[http://​plan.epfl.ch/?​room=INR140|INR 140]]+
-|Email|**mohamad.dia@epfl.ch**| +
-|Office Hours|**By appointment**|+
 | | | | | |
-|Student Assistant |**Arnaud Miribel**|    +|Student Assistant |**Frederik Kunstner**|Email|**frederik.kunstner@epfl.ch**|
-|Email|**arnaud.miribel@epfl.ch**|+
 | | | | | |
-|Student Assistant |**Arnaud Miribel**|    +|Student Assistant |**Fayez Lahoud**|Email|**fayez.lahoud@epfl.ch**|
-|Email|**arnaud.miribel@epfl.ch**|+
 | | | | | |
-|Student Assistant |**Arnaud Miribel**|   ​ +|Student Assistant |**Tao Lin**|Email|**tao.lin@epfl.ch**| 
-|Email|**arnaud.miribel@epfl.ch**|+| | | 
 +|Student Assistant |**Arnaud Miribel**|Email|**arnaud.miribel@epfl.ch**| 
 +| | | 
 +|Student Assistant |**Vidit Vidit**|Email|**vidit.vidit@epfl.ch**|
 \\ \\
  
-|Lectures|**Tuesday** ​ |**8:15 - 10:00** (Room: [[http://​plan.epfl.ch/?​lang=en&​room=INM%2010|INM10]])| +|Lectures|**Tuesday** |**8:15 - 10:​00** ​ (Room: [[http://​plan.epfl.ch/?​lang=en&​room=CE%201|CE1]])| 
-|        |**Thursday** |**8:15 - 10:00** (Room: [[http://​plan.epfl.ch/?​lang=en&​room=INR%20113|INR113]])| +|        |**Thursday** |**8:15 - 10:​00** ​ (Room: [[http://​plan.epfl.ch/?​lang=en&​room=CE%204|CE4]])| 
-|Exercises|**Thursday** |**14:15 - 16:00** (Room: [[http://​plan.epfl.ch/?​lang=en&​room=INR%20113|INR113]])|+|Exercises|**Thursday** |**14:15 - 16:​00** ​ (Room: [[http://​plan.epfl.ch/?​lang=en&​room=INF%20119|INF119]],​[[http://​plan.epfl.ch/?​lang=en&​room=INJ218|INJ218]],​[[http://​plan.epfl.ch/?​lang=en&​room=INM11|INM11]],​[[http://​plan.epfl.ch/?​lang=en&​room=INM202|INM202]])|
 \\ \\
 |**Language**:​| ​ |English| |**Language**:​| ​ |English|
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 \\  \\ 
  
-See the course [[http://​edu.epfl.ch/​coursebook/​en/​advanced-digital-communications-COM-510|information]].+See the course [[http://​edu.epfl.ch/​coursebook/​en/​pattern-classification-and-machine-learning-CS-433|information]].
 ==== Special Announcements ==== ==== Special Announcements ====
-  * Please make sure that you have registered for the course ​on  [[http://is-academia.epfl.ch/|IS-Academia]] so that you can access ​the lecture notes on [[http://nb.mit.edu|Nota Bene]] +  * Projects: There will be two //group projects// during ​the course.  
-  You can find a tutorial video on how to use Nota Bene [[http://vimeo.com/7370219|here]]+    * Project 1 counts 10% and is due Oct 31st.  
 +    * Project 2 counts 30% and is due Dec 22nd. All Labs and Projects will be in //Python// this year. See Lab 1 to get started. 
 +  * Labs: Weekly in the following rooms: INF119 (A-E); INJ218 (F-M); INM11 (N-Q); INM202 (R-Z) 
 +    * Code Repository: ​[[https://github.com/epfml/​ML_course|github.com/​epfml/​ML_course]] 
 +  * Lectures: //​Clicker//:​ For some active participation in the lectures, please point your browser to this [[http://seance.epfl.ch/​ng/​room/​57d862f5c301cef78a5b769a|speak-up room]] 
 +    Lecture notes: We provide PDF //lecture notes// here below and also on [[http://nb.mit.edu/subscribe?​key=GVKmwZM2Dnhi4TBF7CK7hwf9joksteycFDDSNHnNsOkNOK1BZq|Nota Bene]] so you can comment & discuss them.
  
 ==== Detailed Schedule ==== ==== Detailed Schedule ====
-^ Date ^ Topics Covered ​^ Reading Assignment ​^ Exercises ​ ^ Solutions ​+(tentative, subject to changes) 
-| 20/9| what what what | what +^ Date ^ Topics Covered ^ Exercises ​ ^ Projects ​
-| 22/9| what | what what what +| 20/9 | Introduction ​| | | 
-| 27/9 | what what what | what +| 22/9 | Linear Regression ​Lab 1 | | 
-| 29/9 | what what what | what +| 27/9 | Cost Functions ​| | | 
-| 04/10 | what what what | what +| 29/9 | Optimization ​Lab 2 | | 
-| 06/10 | what | what what what +| 04/10 | Least Squares, ill-conditioning ​| | | 
-| 11/10 | what what what | what +| 06/10 | Maximum Likelihood, Overfitting ​Lab 3 | | 
-| 13/10 | what what what | what +| 11/10 | Cross-Validation ​| | | 
-| 18/10 | what what what | what+| 13/10 | Bias-Variance decomposition ​Lab 4 | | 
-| 20/10 | what | what what what+| 18/10 | Classification ​| | | 
-| 25/10 | what what what | what +| 20/10 | Logistic Regression ​Lab 5 | | 
-| 27/10 | what what what | what +| 25/10 | Generalized Linear Models ​| | | 
-| 01/11 | what what what | what +| 27/10 | k-Nearest Neighbor ​Lab 6 | | 
-| 03/11 | what what what | what +| 01/11 | Support Vector Machines ​| | Proj. 1 due 31.10. ​
-| 08/11 | what what what | what +| 03/11 | Kernel Regression ​Lab 7 | | 
-| 10/11 | what what what | what +| 08/11 | Unsupervised Learning ​| | | 
-| 15/11 | what | what what what +| 10/11 | k-Means ​Lab 8 | | 
-| 17/11 | what what what | what +| 15/11 | Gaussian Mixture Models ​| | | 
-| 22/11 | what what what | what +| 17/11 | EM algorithm ​Lab 9 | | 
-| 24/11 | what what | what what +| 22/11 | Matrix Factorizations ​| | | 
-| 29/11 | what what what | what +| 24/11 | Recommender Systems ​Lab 10 | | 
-| 01/12 | what what | what what +| 29/11 | SVD and PCA | | | 
-| 06/12 | what what what | what +| 01/12 | SVD and PCA Lab 11 | | 
-| 08/12 | what what | what what +| 06/12 | Neural Networks ​| | | 
-| 13/12 | what what what | what +| 08/12 | Multi-Layer Perceptron ​Lab 12 | | 
-| 15/12 | what what | what what +| 13/12 | Neural Networks, CNNs | | | 
-| 20/12 | what what what | what +| 15/12 | Decision Trees, Random Forests ​Lab 13 | | 
-| 22/12 | what what what what | +| 20/12 | BayesNet and Belief Propagation ​| | | 
-==== Textbook ==== +| 22/12 | Gaussian Processes ​Lab 14 Project 2 due |
-We will use lecture notes by M. Gastpar. ​+
  
-In case you have to brush up on basic concepts of digital communications we recommend the book by  +==== Textbook ==== 
-B. Rimoldi, //[[http://www.cambridge.org/us/academic/​subjects/engineering/communications-and-signal-processing/principles-digital-communication-top-down-approach?​format=HB|Principles of digital communication:​ a top-down approach]]//. Cambridge University Press, 2016. ISBN: 9781107116450\\+Christopher Bishop, //Pattern Recognition and Machine Learning// \\ 
 +Kevin Murphy, ​//Machine Learning: A Probabilistic Perspective// \\ 
 +Shai Shalev-Shwartz, Shai Ben-David, ​//​Understanding Machine Learning//

Last modified:: %2016/%06/%01 %10:%Jun