fileUnsupervised-chine-Learn-1mfZr

Unsupervised chine Learning Hidden Markov Models Python
  • MP401 Introduction and Outline\\/001 Introduction and Outline Why would you want to use an HMM.mp46.78MB
  • MP401 Introduction and Outline\\/002 Unsupervised or Supervised.mp45.27MB
  • MP401 Introduction and Outline\\/003 Where to get the Code and Data.mp42.09MB
  • MP401 Introduction and Outline\\/004 How to Succeed in this Course.mp48.78MB
  • MP402 rkov Models\\/005 The Markov Property.mp48.31MB
  • MP402 rkov Models\\/006 Markov Models.mp48.17MB
  • MP402 rkov Models\\/007 The Math of Markov Chains.mp49.04MB
  • MP403 rkov Models Example Problems and Applications\\/008 Example Problem Sick or Healthy.mp45.54MB
  • MP403 rkov Models Example Problems and Applications\\/009 Example Problem Expected number of continuously sick days.mp44.63MB
  • MP403 rkov Models Example Problems and Applications\\/010 Example application SEO and Bounce Rate Optimization.mp415.82MB
  • MP403 rkov Models Example Problems and Applications\\/011 Example Application Build a 2nd-order language model and generate phrases.mp426.93MB
  • MP403 rkov Models Example Problems and Applications\\/012 Example Application Googles PageRank algorithm.mp48.72MB
  • MP404 Hidden rkov Models for Discrete Observations\\/013 From Markov Models to Hidden Markov Models.mp410.17MB
  • MP404 Hidden rkov Models for Discrete Observations\\/014 HMMs are Doubly em<x>bedded.mp43.14MB
  • MP404 Hidden rkov Models for Discrete Observations\\/015 How can we choose the number of hidden states.mp47.34MB
  • MP404 Hidden rkov Models for Discrete Observations\\/016 The Forward-Backward Algorithm.mp46.78MB
  • MP404 Hidden rkov Models for Discrete Observations\\/017 Visual Intuition for the Forward Algorithm.mp46.03MB
  • MP404 Hidden rkov Models for Discrete Observations\\/018 The Viterbi Algorithm.mp45.03MB
  • MP404 Hidden rkov Models for Discrete Observations\\/019 Visual Intuition for the Viterbi Algorithm.mp45.73MB
  • MP404 Hidden rkov Models for Discrete Observations\\/020 The Baum-Welch Algorithm.mp44.35MB
  • MP404 Hidden rkov Models for Discrete Observations\\/021 Baum-Welch Explanation and Intuition.mp411.96MB
  • MP404 Hidden rkov Models for Discrete Observations\\/022 Baum-Welch Updates for Multiple Observations.mp47.48MB
  • MP404 Hidden rkov Models for Discrete Observations\\/023 Discrete HMM in Code.mp447.42MB
  • MP404 Hidden rkov Models for Discrete Observations\\/024 The underflow problem and how to solve it.mp47.65MB
  • MP404 Hidden rkov Models for Discrete Observations\\/025 Discrete HMM Updates in Code with Scaling.mp429.14MB
  • MP404 Hidden rkov Models for Discrete Observations\\/026 Scaled Viterbi Algorithm in Log Space.mp49.23MB
  • MP405 Discrete HMMs Using Deep Learning Libraries\\/027 Grant Descent Tutorial.mp48.43MB
  • MP405 Discrete HMMs Using Deep Learning Libraries\\/028 Theano Scan Tutorial.mp423.76MB
  • MP405 Discrete HMMs Using Deep Learning Libraries\\/029 Discrete HMM in Theano.mp430.74MB
  • MP405 Discrete HMMs Using Deep Learning Libraries\\/030 Improving our Grant Descent-ba<x>sed HMM.mp48.00MB
  • MP405 Discrete HMMs Using Deep Learning Libraries\\/031 Tensorflow Scan Tutorial.mp423.07MB
  • MP405 Discrete HMMs Using Deep Learning Libraries\\/032 Discrete HMM in Tensorflow.mp416.44MB
  • MP406 HMMs for Continuous Observations\\/033 Gaussian Mixture Models with Hidden rkov Models.mp46.27MB
  • MP406 HMMs for Continuous Observations\\/034 Generating Data from a Real-Valued HMM.mp414.94MB
  • MP406 HMMs for Continuous Observations\\/035 Continuous-Observation HMM in Code part 1.mp446.69MB
  • MP406 HMMs for Continuous Observations\\/036 Continuous-Observation HMM in Code part 2.mp415.28MB
  • MP406 HMMs for Continuous Observations\\/037 Continuous HMM in Theano.mp445.41MB
  • MP406 HMMs for Continuous Observations\\/038 Continuous HMM in Tensorflow.mp422.45MB
  • MP407 HMMs for Classification\\/039 Generative vs. Discriminative Classifiers.mp44.12MB
  • MP407 HMMs for Classification\\/040 HMM Classification on Poetry Data Robert Frost vs. Edgar Allan Poe.mp424.39MB
  • MP408 Bonus Example Parts-of-Speech Tagging\\/041 Parts-of-Speech Tagging Concepts.mp48.51MB
  • MP408 Bonus Example Parts-of-Speech Tagging\\/042 POS Tagging with an HMM.mp414.38MB
  • MP409 Appendix\\/043 Review of Gaussian Mixture Models.mp44.99MB
  • MP409 Appendix\\/044 Theano Tutorial.mp419.86MB
  • MP409 Appendix\\/045 Tensorflow Tutorial.mp413.88MB
  • MP409 Appendix\\/046 How to install Numpy Scipy tplotlib Pandas IPython Theano and TensorFlow.mp443.92MB
  • MP409 Appendix\\/047 How to Code by Yourself part 1.mp424.53MB
  • MP409 Appendix\\/048 How to Code by Yourself part 2.mp414.80MB
  • MP409 Appendix\\/049 BONUS Where to get Udemy coupons and FREE deep learning terial.mp44.02MB
Latest Search: 1.ONSD-454   2.AMD-207   3.DV-541   4.CEN-006   5.ONEM-013   6.GAR-268   7.ETC-86   8.BNDV-00294   9.PSSD-220   10.BMW-040   11.MIBD-463   12.MZQ-008   13.ATAD-069   14.ANHD-001   15.MDYD-148   16.DJSG-074   17.HIB-16   18.JUSD-376   19.MIBD-492   20.MBYD-135   21.SVDVD-172   22.IDBD-066   23.GAR-354   24.KWBD-041   25.BDSR-006   26.DXGA-005   27.GON-242   28.OPBD-051   29.MIBD-457   30.MIBD-281   31.DVH-392   32.ONSD-583   33.DSE-013   34.IDBD-255   35.SOE-844   36.ONSD-731   37.KIBD-117   38.RKI-272   39.GON-436   40.RGD-284   41.ARMG-225   42.ABBA-123   43.CMV-051   44.ADV-0155   45.SS-011   46.SW-071   47.MIBD-596   48.MXGS-403   49.HRD-04   50.OBA-066   51.ETC-37   52.UQUV-111   53.BSJ-021   54.SIMG-309   55.DCI-002   56.EB-001   57.ODV-314   58.QXW-002   59.SIMG-075   60.MAN-024   61.SDMS-027   62.LSTD-004   63.KT-281   64.ODVD-033   65.EMAZ-165   66.RD-251   67.ALX-145   68.GOD-138   69.VNDS-437   70.WAN-165   71.454   72.207   73.541   74.006   75.013   76.268   77.86   78.00294   79.220   80.040   81.463   82.008   83.069   84.001   85.148   86.074   87.16   88.376   89.492   90.135   91.172   92.066   93.354   94.041   95.006   96.005   97.242   98.051   99.457   100.281   101.392   102.583   103.013   104.255   105.844   106.731   107.117   108.272   109.436   110.284   111.225   112.123   113.051   114.0155   115.011   116.071   117.596   118.403   119.04   120.066   121.37   122.111   123.021   124.309   125.002   126.001   127.314   128.002   129.075   130.024   131.027   132.004   133.281   134.033   135.165   136.251   137.145   138.138   139.437   140.165