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schedule [2016/02/22 12:57]
127.0.0.1 external edit
schedule [2017/08/22 13:19]
anderson [Announcements]
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 ====== Schedule ====== ====== Schedule ======
- 
-Follow this link to view all [[https://echo.colostate.edu/ess/portal/section/37e115b6-e68b-4318-89ff-d1ecf025c0b9|lecture videos]]. 
  
 ===== Announcements ===== ===== Announcements =====
  
-  * Feb 22: [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A3 Neural Network Regression.ipynb|A3 Neural Network Regression]], now includes link to `A3grader.tar` that contains `A3grader.py`. 
  
-===== January =====+Lecture videos are available from the Canvas site (in the menu on the left) by selecting [[https://colostate.instructure.com/courses/55296/external_tools/2755|Echo 360]].
  
-|< 100% 20% 20% 30% 10% 20%  >|+/* 
 +are available at this [[https://echo.colostate.edu/ess/portal/section/a5759ae3-82dc-43df-b515-dd944a6c4976|CS480 video recordings site]]. 
 +*/ 
 + 
 + 
 +===== August ===== 
 + 
 +|< 100% 10% 20% 30% 20% 20%  >|
 ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^ ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^
-| Week 1:\\  Jan 19 Jan 22    Overview. Intro to machine learning. Python.  | [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/01 Course Overview.ipynb|01 Course Overview]],\\  [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/02 Matrices and Plotting.ipynb|02 Matrices and Plotting]],  | Text: Sections 1.1-1.5. Section 1 of   [[http://www.scipy-lectures.org|Scipy Lecture Notes]]      |  |  +| Week 1:\\  Aug 21 Aug 25    What is AI?  Promises and fears.\\ Python review.\\ Problem-Solving Agents.  | [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs440/notebooks/01 Introduction to AI.ipynb|01 Introduction to AI]]\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs440/notebooks/02 Introduction to Python.ipynb|02 Introduction to Python]]\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs440/notebooks/03 Problem-Solving Agents.ipynb|03 Problem-Solving Agents]]   | Chapters 12, 3.1.\\ [[http://science.sciencemag.org/content/357/6346/7.full|AI, People, and Society]], by Eric Horvitz.\\ [[https://aeon.co/essays/can-we-design-machines-to-make-ethical-decisions|Automated Ethics]], by Tom Chatfield.\\ [[http://www.nytimes.com/2016/12/14/magazine/the-great-ai-awakening.html?_r=0|The Great A.IAwakening]], by Gideon Lewis-Krause, NYT, Dec 14, 2016.\\ [[https://www.commondreams.org/news/2017/07/19/fundamental-existential-threat-lawmakers-warned-risks-killer-robots|"Fundamental Existential Threat": Lawmakers Warned of the Risks of Killer Robots]], by Julia Conley\\ Section 1 of [[http://www.scipy-lectures.org|Scipy Lecture Notes]]    |  
-| Week 2:\\ Jan 25 - Jan 29    | Probability distributions and regression.    | [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/03 Linear Regression.ipynb|03 Linear Regression]],\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/04 Gaussian Distributions.ipynb|04 Gaussian Distributions]],\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/05 Fitting Gaussians.ipynb|05 Fitting Gaussians]],\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/06 Probabilistic Linear Regression.ipynb|06 Probabilistic Linear Regression]]    | Sections 4.1-4.2, 4.6-4.9, 5.8-5.9      [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A1 Linear Regression.ipynb|A1 Linear Regression]] due FridayJanuary 29th at 10:00 PMDownload and unzip [[http://www.cs.colostate.edu/~anderson/cs480/notebooks/A1 Grader.zip|A1 Grader.zip]]\\ Here are five examples of good solutions: [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A1good/A1a.ipynb|A1a]], [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A1good/A1b.ipynb|A1b]], [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A1good/A1c.ipynb|A1c]], [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A1good/A1d.ipynb|A1d]], [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A1good/A1e.ipynb|A1e]]   |  +| Week 2:\\ Aug 28 - Sept 1    |         |     
  
-===== February ===== 
  
-|< 100% 20% 20% 30% 10% 20%  >|+===== September ===== 
 + 
 +|< 100% 10% 20% 30% 20% 20%  >|
 ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^ ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^
-| Week 3:\\ Feb 1 Feb 5      Ridge regression. Data partitioning. On-line, incremental regression. Regression with fixed nonlinearities.  |  [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/07 Linear Ridge Regression and Data Partitioning.ipynb|07 Linear Ridge Regression and Data Partitioning]],\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/08 Sample-by-Sample Linear Regression.ipynb|08 Sample-by-Sample Linear Regression]],\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/09 Linear Regression with Fixed Nonlinear Features.ipynb|09 Linear Regression with Fixed Nonlinear Features]]    | | +| Week 3:\\ Sept 4 Sept 8  |  |  |  
-| Week 4:\\ Feb 8 Feb 12     Nonlinear regression with neural networks.    | [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/10 Nonlinear Regression with Neural Networks.ipynb|10 Nonlinear Regression with Neural Networks]],\\  [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/11 More Nonlinear Regression with Neural Networks.ipynb|11 More Nonlinear Regression with Neural Networks]]  11.1-11.5, 11.7.1, 11.7.4, 11.8.1-11.8.2  |  +| Week 4:\\ Sept 11 Sept 15   |  |  |  | 
-| Week 5:\\ Feb 15 Feb 19    | Autoencoders. Recurrent neural networks.       [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/12 Autoencoder Neural Networks.ipynb|12 Autoencoder Neural Networks]]\\ [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/13 Recurrent Neural Networks.ipynb|13 Recurrent Neural Networks]]   | 11.9, 11.12, 11.14   |  [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A2 Linear Regression with Fixed Nonlinear Features.ipynb|A2 Linear Regression with Fixed Nonlinear Features]] due Monday, Feb 15 at 10:00 PM.   +| Week 5:\\ Sept 18 Sept 22   |   |  | 
-| Week 6:\\ Feb 22 Feb 26    | Classification, generative models.   |  [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/14 Introduction to Classification.ipynb|14 Introduction to Classification]]   4.3-4.5, 5.5-5.7  |+| Week 6:\\ Sept 25 Sept 29   |  |  |  |
  
-===== March =====+===== October =====
  
-|< 100% 20% 20% 30% 10% 20%  >|+|< 100% 10% 20% 30% 20% 20%  >|
 ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^ ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^
-| Week 7:\\ Feb 29 Mar 5     Classification, discriminant models.  Ranking.  | | 10.1-10.4, 10.5-10.10    |  [[http://nbviewer.ipython.org/url/www.cs.colostate.edu/~anderson/cs480/notebooks/A3 Neural Network Regression.ipynb|A3 Neural Network Regression]] due Monday, Feb 29 at 10:00 PM.  | +| Week 7:\\ Oct 2 Oct 6  |  |  |  | 
-| Week 8:\\ Mar 7 Mar 11     Classification with neural networks.     | 11.7.2     | +| Week 8:\\ Oct 9 Oct 13    |  | 
-|  Mar 14 - Mar 18    | Spring Break!    |       +| Week 9:\\ Oct 16 Oct 20     
-| Week 9:\\ Mar 21 Mar 25    Convolutional, bottleneck, and deep networks.    | | 11.8.3, 11.11, 11.13     |  +| Week 10:\\ Oct 23 Oct 27  |  |  |  |
-| Week 10:\\ Mar 28 Apr 1    Nonparametric methods.  | | 8.1-8.10  |+
  
-===== April =====+===== November =====
  
-|< 100% 20% 20% 30% 10% 20%  >|+|< 100% 10% 20% 30% 20% 20%  >|
 ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^ ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^
-| Week 11:\\ Apr 4 Apr 8      | Dimensionality reduction.  | | 6.1-6.8, 6.10-6.13  | +| Week 11:\\ Oct 30 Nov 3    |  |  | 
-| Week 12:\\ Apr 11 Apr 15    Clustering  | | 7.1-7.10    +| Week 12:\\ Nov 6 Nov 10  |  |  |  | 
-| Week 13:\\ Apr 18 Apr 22    Support vector machines.   | | 13.1-13.12   +| Week 13:\\ Nov 13 Nov 17     | 
-| Week 14:\\ Apr 25 Apr 29    Reinforcement learning.   | | 18.1-18.9   |+|  Nov 20 Nov 24  |  Fall Break  
 +| Week 14:\\ Nov 27 Dec 1     |
  
-===== May =====+===== December =====
  
-|< 100% 20% 20% 30% 10% 20%  >|+|< 100% 10% 20% 30% 20% 20%  >|
 ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^ ^  Week      ^  Topic      ^  Material  ^  Reading          ^  Assignments  ^
-| Week 15:\\ May 2 May 6    Multiple models.    | | 17.1-17.12   |+| Week 15:\\ Dec 4 Dec 8     | 
 +| Finals Week:\\ Dec 11 Dec 15  |   |  
 + 
  
schedule.txt · Last modified: 2024/01/08 18:40 (external edit)