Udemy-Deep-Learning-Adva-1vUTV
- 1. Welcome/1. Introduction.mp47.77MB
- 1. Welcome/2. Outline and Perspective.mp47.46MB
- 1. Welcome/3. How to Succeed in this Course.mp43.30MB
- 2. Review/1. Review of CNNs.mp418.50MB
- 2. Review/1. Review of CNNs.vtt18.52MB
- 2. Review/2. Where to get the code and data.mp42.19MB
- 2. Review/3. Fashion MNIST.mp43.30MB
- 2. Review/4. Review of CNNs in Code.mp47.61MB
- 2. Review/4. Review of CNNs in Code.vtt6.02MB
- 3. VGG and Transfer Learning/1. VGG Section Intro.mp42.69MB
- 3. VGG and Transfer Learning/2. What's so special about VGG.mp412.19MB
- 3. VGG and Transfer Learning/3. Transfer Learning.mp438.12MB
- 3. VGG and Transfer Learning/4. Relationship to Greedy Layer-Wise Pretraining.mp43.89MB
- 3. VGG and Transfer Learning/5. Getting the data.mp41.77MB
- 3. VGG and Transfer Learning/6. Code pt 1.mp411.51MB
- 3. VGG and Transfer Learning/7. Code pt 2.mp48.56MB
- 3. VGG and Transfer Learning/8. Code pt 3.mp44.22MB
- 3. VGG and Transfer Learning/9. VGG Section Sumry.mp43.16MB
- 4. ResNet (and Inception)/1. ResNet Section Intro.mp42.81MB
- 4. ResNet (and Inception)/10. Exercise Apply ResNet.mp42.07MB
- 4. ResNet (and Inception)/11. Applying ResNet.mp43.60MB
- 4. ResNet (and Inception)/12. 1x1 Convolutions.mp43.12MB
- 4. ResNet (and Inception)/13. Optional Inception.mp45.40MB
- 4. ResNet (and Inception)/14. Different sized iges using the same network.mp47.42MB
- 4. ResNet (and Inception)/15. ResNet Section Sumry.mp44.20MB
- 4. ResNet (and Inception)/2. ResNet Architecture.mp410.39MB
- 4. ResNet (and Inception)/3. Building ResNet - Strategy.mp42.66MB
- 4. ResNet (and Inception)/4. Building ResNet - Conv Block Details.mp46.19MB
- 4. ResNet (and Inception)/5. Building ResNet - Conv Block Code.mp48.97MB
- 4. ResNet (and Inception)/6. Building ResNet - Identity Block Details.mp42.38MB
- 4. ResNet (and Inception)/7. Building ResNet - First Few Layers.mp44.04MB
- 4. ResNet (and Inception)/8. Building ResNet - First Few Layers (Code).mp410.31MB
- 4. ResNet (and Inception)/9. Building ResNet - Putting it all together.mp45.91MB
- 5. Oect Detection (SSD)/1. SSD Section Intro.mp45.70MB
- 5. Oect Detection (SSD)/10. SSD Section Sumry.mp42.83MB
- 5. Oect Detection (SSD)/2. Object Localization.mp45.70MB
- 5. Oect Detection (SSD)/3. What is Object Detection.mp44.80MB
- 5. Oect Detection (SSD)/4. How would you find an object in an ige.mp47.86MB
- 5. Oect Detection (SSD)/5. The Problem of Scale.mp44.16MB
- 5. Oect Detection (SSD)/6. The Problem of Shape.mp43.59MB
- 5. Oect Detection (SSD)/7. SSD in Tensorflow.mp417.42MB
- 5. Oect Detection (SSD)/8. Modifying SSD to work on Video.mp424.79MB
- 5. Oect Detection (SSD)/8. Modifying SSD to work on Video.vtt24.80MB
- 5. Oect Detection (SSD)/9. Optional Intersection over Union & Non-x Suppression.mp44.59MB
- 6. Neural Style Transfer/1. Style Transfer Section Intro.mp42.92MB
- 6. Neural Style Transfer/2. Style Transfer Theory.mp419.94MB
- 6. Neural Style Transfer/3. Optimizing the Loss.mp47.25MB
- 6. Neural Style Transfer/4. Code pt 1.mp49.46MB
- 6. Neural Style Transfer/5. Code pt 2.mp415.71MB
- 6. Neural Style Transfer/6. Code pt 3.mp45.74MB
- 6. Neural Style Transfer/7. Style Transfer Section Sumry.mp42.50MB
- 7. Bonus Class Activation ps/1. Class Activation Maps (Theory).mp453.43MB
- 7. Bonus Class Activation ps/2. Class Activation Maps (Code).mp4104.76MB
- 8. Basics Review/1. (Review) Tensorflow Basics.mp481.53MB
- 8. Basics Review/2. (Review) Tensorflow Neural Network in Code.mp497.24MB
- 8. Basics Review/3. (Review) Keras Discussion.mp427.64MB
- 8. Basics Review/4. (Review) Keras Neural Network in Code.mp466.16MB
- 8. Basics Review/5. (Review) Keras Functional API.mp438.64MB
- 9. Appendix FAQ/1. What is the Appendix.mp45.46MB
- 9. Appendix FAQ/10. Python 2 vs Python 3.mp45.47MB
- 9. Appendix FAQ/11. What order should I take your courses in (part 1).mp429.32MB
- 9. Appendix FAQ/12. What order should I take your courses in (part 2).mp437.63MB
- 9. Appendix FAQ/12. What order should I take your courses in (part 2).vtt37.63MB
- 9. Appendix FAQ/2. Windows-Focused Environment Setup 2018.mp4186.32MB
- 9. Appendix FAQ/3. How to install Numpy, Scipy, tplotlib, Pandas, IPython, Theano, and TensorFlow.mp443.83MB
- 9. Appendix FAQ/4. How to Succeed in this Course (Long Version).mp412.99MB
- 9. Appendix FAQ/5. How to Code by Yourself (part 1).mp424.54MB
- 9. Appendix FAQ/6. How to Code by Yourself (part 2).mp48.65MB
- 9. Appendix FAQ/7. Proof that using Jupyter Notebook is the same as not using it.mp478.26MB
- 9. Appendix FAQ/8. Is this for Beginners or Experts Academic or Practical Fast or slow-paced.mp438.95MB
- 9. Appendix FAQ/9. Where to get discount coupons and FREE deep learning terial.mp43.37MB
- CreateTime2023-08-09
- UpdateTime2023-08-09
- FileTotalCount135
- TotalSize2.72GBHotTimes5ViewTimes10DMCA Report EmailmagnetLinkThunderTorrent DownBaiduYunLatest Search: 1.IDBD-336 2.BIB-044 3.IDBD-414 4.SGMS-101 5.WING-004 6.JJ-001 7.MIBD-455 8.KWBD-046 9.PSD-359 10.HYAKU-003 11.JUC-535 12.SDDL-101 13.DJE-019 14.SWF-156 15.MXSPS-198 16.ANHD-007 17.VVVD-095 18.BIJ-011 19.KBKD-525 20.LIA-211 21.ID-19005 22.KWBD-076 23.ATAD-065 24.BNDV-00798 25.ONSD-445 26.ONSD-576 27.ONSD-599 28.IPZ-113 29.SUJI-019 30.RKI-140 31.RMMD-066 32.XV-974 33.VNDS-2946 34.AAJ-027 35.IDBD-280 36.ONSD-723 37.RKI-220 38.MOBSP-002 39.CABD-085 40.HUNT-119 41.CRAD-080 42.HET-193 43.YLW-4063 44.SDDL-470 45.SDDL-477 46.BNDV-00587 47.MIBD-603 48.KIBD-051 49.DKSW-247 50.FABS-011 51.NFDM-291 52.SUNS-014 53.SDMT-300 54.SOE-972 55.PTKO-016 56.ATAD-077 57.CRAD-016 58.RAM-041 59.AOZ-031 60.SONO-011 61.RNADE-598 62.SWD-089 63.GLT-038 64.SFFV-001 65.KGB-030 66.HWAZ-005 67.KS-8658 68.CAV-3600092 69.DNT-057 70.MAMA-180 71.336 72.044 73.414 74.101 75.004 76.001 77.455 78.046 79.359 80.003 81.535 82.101 83.019 84.156 85.198 86.007 87.095 88.011 89.525 90.211 91.19005 92.076 93.065 94.00798 95.445 96.576 97.599 98.113 99.019 100.140 101.066 102.974 103.2946 104.027 105.280 106.723 107.220 108.002 109.085 110.119 111.080 112.193 113.4063 114.470 115.477 116.00587 117.603 118.051 119.247 120.011 121.291 122.014 123.300 124.972 125.016 126.077 127.016 128.041 129.031 130.011 131.598 132.089 133.038 134.001 135.030 136.005 137.8658 138.3600092 139.057 140.180