:Search:

Coursera Applied Data Science with Python

Torrent:
Info Hash: C9EF88CFE0137F6A4292823F0765A5D4B93FF313
Thumbnail:
Similar Posts:
Uploader: tutsnode
Source: T Logo Torrent Galaxy
Downloads: 2208
Language: English
Category: Other
Size: 1.9 GB
Added: July 1, 2023, 3:40 p.m.
Peers: Seeders: 35, Leechers: 0 (Last updated: 10 months, 4 weeks ago)
Tracker Data:
Tracker Seeders Leechers Completed
udp://tracker.opentrackr.org:1337/announce 24 0 1895
udp://tracker.openbittorrent.com:6969/announce (Failed to scrape UDP tracker) 0 0 0
udp://tracker.internetwarriors.net:1337/announce (Failed to scrape UDP tracker) 0 0 0
udp://tracker.leechers-paradise.org:6969/announce (Failed to scrape UDP tracker) 0 0 0
udp://tracker.coppersurfer.tk:6969/announce (Failed to scrape UDP tracker) 0 0 0
udp://exodus.desync.com:6969/announce 5 0 42
udp://tracker.rarbg.torrentbay.st:6969/announce 0 0 0
udp://tracker.tiny-vps.com:6969/announce 0 0 25
udp://open.demonii.si:1337/announce (Failed to scrape UDP tracker) 0 0 0
udp://tracker.torrent.eu.org:451/announce 6 0 246
Files:
  1. 03_small-world-networks.mp4 53.0 MB
  2. TutsNode.com.txt 63 bytes
  3. 01__Week2_Slides_Final.pdf 482.4 KB
  4. 0 203 bytes
  5. 04_link-prediction.mp4 42.1 MB
  6. 01__Week3Slides.pptx 359.3 KB
  7. 03_help-us-learn-more-about-you_instructions.html 1.7 KB
  8. 01_introduction.en.srt 6.6 KB
  9. 1 79 bytes
  10. 01_model-evaluation-selection.mp4 31.8 MB
  11. 01__1.2_Handling_Text_in_Python.pdf 242.5 KB
  12. 06_notice-for-auditing-learners-assignment-submission_instructions.html 1.6 KB
  13. 01_week-3-a-conversation-with-andrew-ng.en.srt 5.1 KB
  14. 2 59 bytes
  15. 05_support-vector-machines.mp4 31.4 MB
  16. 01__classes.html 90.2 KB
  17. 01_introduction-to-supervised-machine-learning.en.srt 22.1 KB
  18. 3 36 bytes
  19. 06_linear-regression-ridge-lasso-and-polynomial-regression.mp4 29.3 MB
  20. 10_resources-common-issues-with-free-text_re.html 196.3 KB
  21. 01_assignment-1-submission_instructions.html 1.1 KB
  22. 07_practical-guide-to-controlled-experiments-on-the-web-optional_2007GuideControlledExperiments.pdf 493.0 KB
  23. 06_bipartite-graphs.en.srt 18.6 KB
  24. 4 97 bytes
  25. 01_preferential-attachment-model.mp4 29.3 MB
  26. 01__3.4_Naive_Bayes_Variations.pdf 210.5 KB
  27. 06_lstm.en.srt 2.5 KB
  28. 5 6 bytes
  29. 12_decision-trees.mp4 27.5 MB
  30. 08_bar-charts.en.srt 5.5 KB
  31. 6 86 bytes
  32. 04_neural-networks.mp4 27.1 MB
  33. 10_zachary-lipton-the-foundations-of-algorithmic-bias-optional_instructions.html 2.0 KB
  34. 06_additional-resources-readings_blei03a.pdf 408.2 KB
  35. 11_graphical-heuristics-lie-factor-and-spark-lines-edward-tufte.en.srt 5.4 KB
  36. 7 366 bytes
  37. 09_k-nearest-neighbors-classification.mp4 26.9 MB
  38. 01__classes.html 90.2 KB
  39. 15_week-2-quiz_exam.html 11.0 KB
  40. 8 172 bytes
  41. 05_information-extraction.mp4 26.7 MB
  42. 02_power-laws-and-rich-get-richer-phenomena-optional_networks-book-ch18.pdf 312.0 KB
  43. 06_additional-resources-readings_instructions.html 2.1 KB
  44. 9 3 bytes
  45. 10_kernelized-support-vector-machines.mp4 26.7 MB
  46. 01__2.3_Advanced_NLP_Tasks_with_NLTK.pdf 309.5 KB
  47. 13_a-few-useful-things-to-know-about-machine-learning_instructions.html 1.6 KB
  48. 14_ed-yong-genetic-test-for-autism-refuted-optional_instructions.html 1.7 KB
  49. 04_practice-quiz_quiz.html 2.4 KB
  50. 01_assignment-2-submission_instructions.html 1.0 KB
  51. 09_module-1-quiz_exam.html 488.9 KB
  52. 01_semantic-text-similarity.en.srt 21.3 KB
  53. [TGx]Downloaded from torrentgalaxy.to .txt 585 bytes
  54. 10 277 bytes
  55. 02_betweenness-centrality.mp4 26.4 MB
  56. 01__classes.html 90.2 KB
  57. 01_time-series-examples.en.srt 7.3 KB
  58. 11 27 bytes
  59. 03_naive-bayes-classifiers.mp4 26.4 MB
  60. 03_selecting-the-number-of-bins-in-a-histogram-a-decision-theoretic-approach_hist.pdf 116.4 KB
  61. 03_connected-components.en.srt 14.6 KB
  62. 12 51 bytes
  63. 05_hubs-and-authorities.mp4 26.2 MB
  64. 07_practical-guide-to-controlled-experiments-on-the-web-optional_instructions.html 1.8 KB
  65. 07_module-3-quiz_exam.html 283.0 KB
  66. 13 523 bytes
  67. 02_distance-measures.mp4 26.1 MB
  68. 01_assignment-3-submission_instructions.html 1.0 KB
  69. 01__4.2_Topic_Modeling.pdf 446.6 KB
  70. 02_help-us-learn-more-about-you_instructions.html 1.8 KB
  71. 14 11 bytes
  72. 01_introduction-to-supervised-machine-learning.mp4 24.9 MB
  73. 01__intro.html 42.8 KB
  74. 08_linear-classifiers-support-vector-machines.en.srt 15.5 KB
  75. 15 145 bytes
  76. 05_linear-regression-least-squares.mp4 23.9 MB
  77. 05_neural-networks-made-easy-optional_instructions.html 1.5 KB
  78. 06_play-with-neural-networks-tensorflow-playground-optional_instructions.html 2.0 KB
  79. 01_plotting-weather-patterns_assignment2_rubric.pdf 75.3 KB
  80. 01_post-course-survey_instructions.html 1.7 KB
  81. 08_deep-learning-in-a-nutshell-core-concepts-optional_instructions.html 1.6 KB
  82. 14_rules-of-machine-learning-best-practices-for-ml-engineering-optional_rules_of_ml.pdf 449.5 KB
  83. 09_assisting-pathologists-in-detecting-cancer-with-deep-learning-optional_instructions.html 1.3 KB
  84. 03_matplotlib_matplotlib.html 42.3 KB
  85. 07_logistic-regression.en.srt 17.1 KB
  86. 11_the-treachery-of-leakage-optional_instructions.html 1.4 KB
  87. 01__4.1_Semantic_Text_Similarity.pdf 414.5 KB
  88. 12_leakage-in-data-mining-formulation-detection-and-avoidance-optional_instructions.html 1.7 KB
  89. 13_data-leakage-example-the-icml-2013-whale-challenge-optional_instructions.html 1.6 KB
  90. 14_rules-of-machine-learning-best-practices-for-ml-engineering-optional_instructions.html 1.6 KB
  91. 01__classes.html 90.2 KB
  92. 02_congratulations.en.srt 1.3 KB
  93. 01_assignment-4-submission_instructions.html 1.0 KB
  94. 01__3.1_Text_Classification.pdf 350.2 KB
  95. 01__Diamonds-Were-a-Girls-Best-Friend.jpg?042148?042148 146.8 KB
  96. 06_centrality-examples.en.srt 13.8 KB
  97. 16 165 bytes
  98. 04_key-concepts-in-machine-learning.mp4 23.8 MB
  99. 11_module-1-quiz_exam.html 180.3 KB
  100. 04_how-to-use-t-sne-effectively_instructions.html 1.2 KB
  101. 05_how-machines-make-sense-of-big-data-an-introduction-to-clustering-algorithms_instructions.html 1.3 KB
  102. 01_preferential-attachment-model.en.srt 18.4 KB
  103. 17 363 bytes
  104. 02_basic-nlp-tasks-with-nltk.mp4 23.5 MB
  105. 01_course-syllabus_instructions.html 11.4 KB
  106. 18 10 bytes
  107. 04_handling-text-in-python.mp4 23.4 MB
  108. 01__resources.html 2.1 KB
  109. 01__hist.pdf 116.4 KB
  110. 04_handling-text-in-python.en.srt 22.6 KB
  111. 07_lstm-notebook_instructions.html 1.2 KB
  112. 19 5 bytes
  113. 03_generative-models-and-lda.mp4 23.2 MB
  114. 01_graphics-lies-misleading-visuals_BookChapterLIES.pdf 333.4 KB
  115. 02_power-laws-and-rich-get-richer-phenomena-optional_instructions.html 1.4 KB
  116. 01__resources.html 1.8 KB
  117. 01__resources.html 1.8 KB
  118. 01__resources.html 996 bytes
  119. 01__3.6_Learning_Text_Classifiers_in_Python.pdf 349.0 KB
  120. 01__Scikit_Learn_Cheat_Sheet_Python.pdf 145.7 KB
  121. 05_node-and-edge-attributes.en.srt 12.6 KB
  122. 03_help-us-learn-more-about-you_instructions.html 1.7 KB
  123. 04_about-the-professor-christopher-brooks.en.srt 2.1 KB
  124. 01__3.3_Naive_Bayes_Classifier.pdf 261.5 KB
  125. 01__Week2_Basic_Charting.pptx 238.7 KB
  126. 06_regression-evaluation.en.srt 7.8 KB
  127. 06_notice-for-coursera-learners-assignment-submission_instructions.html 1.6 KB
  128. 01__1.3_Regular_Expressions.pdf 258.5 KB
  129. 01__2.2_Basic_NLP_Tasks_with_NLTK.pdf 230.5 KB
  130. 08_dark-horse-analytics-optional_instructions.html 1.3 KB
  131. 06_regular-expressions.en.srt 20.2 KB
  132. 20 143 bytes
  133. 06_regular-expressions.mp4 22.6 MB
  134. 01__2.1_Basic_Natural_Language_Processing.pdf 223.3 KB
  135. 01__3.2_Identifying_Features_from_Text.pdf 215.8 KB
  136. 04_k-nearest-neighbors-classification-and-regression.en.srt 17.1 KB
  137. 01__resources.html 997 bytes
  138. 21 12 bytes
  139. 01_semantic-text-similarity.mp4 22.5 MB
  140. 02_betweenness-centrality.en.srt 24.6 KB
  141. 22 574 bytes
  142. 06_bipartite-graphs.mp4 22.4 MB
  143. 02_becoming-an-independent-data-scientist_assignment4_rubric.pdf 85.6 KB
  144. 01_a-conversation-with-andrew-ng.en.srt 2.5 KB
  145. 23 27 bytes
  146. 03_advanced-nlp-tasks-with-nltk.mp4 21.8 MB
  147. 09_module-3-quiz_exam.html 202.9 KB
  148. 04_ten-simple-rules-for-better-figures_instructions.html 1.5 KB
  149. 02_basic-nlp-tasks-with-nltk.en.srt 20.9 KB
  150. 24 141 bytes
  151. 01_degree-and-closeness-centrality.mp4 21.4 MB
  152. 11_forecasting-notebook_SP_Week_1_-_Lesson_3_-_Notebook.ipynb 66.9 KB
  153. 07_module-4-quiz_exam.html 4.9 KB
  154. 25 57 bytes
  155. 06_learning-text-classifiers-in-python.mp4 20.3 MB
  156. 01__Scikit_Learn_Cheat_Sheet_Python.pdf 145.7 KB
  157. 14_lstm-notebook_SP_Week_3_Lesson_4_-_LSTM.ipynb 66.9 KB
  158. 06_adjusting-the-learning-rate-dynamically.en.srt 4.3 KB
  159. 26 9 bytes
  160. 08_model-selection-optimizing-classifiers-for-different-evaluation-metrics.mp4 20.0 MB
  161. 01__Scikit_Learn_Cheat_Sheet_Python.pdf 145.7 KB
  162. 09_assisting-pathologists-in-detecting-cancer-with-deep-learning-optional_assisting-pathologists-in-detecting.html 142.0 KB
  163. 01__Week_1_Principles_of_Information_Visualization.html 84.9 KB
  164. 02_building-a-custom-visualization_assignment3_rubric.pdf 73.6 KB
  165. 01__matplotlib.html 42.3 KB
  166. 03_selecting-the-number-of-bins-in-a-histogram-a-decision-theoretic-approach_instructions.html 1.2 KB
  167. 11_sunspots.en.srt 2.4 KB
  168. 27 163 bytes
  169. 03_clustering.mp4 19.8 MB
  170. 01__Week_2_Basic_Charting.html 73.5 KB
  171. 01_course-syllabus_0636920030515.do 73.2 KB
  172. 03_naive-bayes-classifiers.en.srt 22.6 KB
  173. 08_machine-learning-on-time-windows.en.srt 1.0 KB
  174. 28 13 bytes
  175. 12_the-truthful-art-alberto-cairo.mp4 19.5 MB
  176. 01__Week_3_Charting_Fundamentals.html 73.0 KB
  177. 02_building-a-custom-visualization_peer_assignment_instructions.html 1.7 KB
  178. 02_graphics-lies-misleading-visuals_assignment1_rubric.pdf 72.7 KB
  179. 09_rnn-notebook_SP_Week_3_Lesson_2_-_RNN.ipynb 66.9 KB
  180. 11_single-layer-neural-network-notebook_SP_Week_2_Lesson_2.ipynb 66.8 KB
  181. 12_sunspots-notebook_SP_Week_4_Lesson_5.ipynb 66.8 KB
  182. 03_spurious-correlations_instructions.html 1.6 KB
  183. 01_becoming-an-independent-data-scientist.en.srt 2.6 KB
  184. 04_preparing-features-and-labels-notebook_SP_Week_2_Lesson_1.ipynb 66.8 KB
  185. 03_keep-learning-with-michigan-online_instructions.html 34.1 KB
  186. 02_becoming-an-independent-data-scientist_peer_assignment_instructions.html 1.9 KB
  187. 03_post-course-survey_instructions.html 1.5 KB
  188. 12_the-truthful-art-alberto-cairo.en.srt 12.6 KB
  189. 29 348 bytes
  190. 05_tools-for-thinking-about-design-alberto-cairo.mp4 19.2 MB
  191. 01__resources.html 1.7 KB
  192. 14_deep-neural-network-notebook_SP_Week_2_Lesson_3.ipynb 66.8 KB
  193. 07_lstm-notebook_SP_Week_4_Lesson_1.ipynb 66.8 KB
  194. 12_sunspots-notebook_SP_Week_4_Lesson_3.ipynb 66.8 KB
  195. 05_introduction-to-time-series-notebook_SP_Week_1_Lesson_2.ipynb 66.8 KB
  196. 11_cross-validation.en.srt 13.0 KB
  197. 30 237 bytes
  198. 10_data-leakage.mp4 19.1 MB
  199. 02_keep-learning-with-michigan-online_instructions.html 34.1 KB
  200. 02_keep-learning-with-michigan-online_instructions.html 34.1 KB
  201. 05_support-vector-machines.en.srt 32.0 KB
  202. 01__resources.html 1.8 KB
  203. 01__resources.html 1.3 KB
  204. 06_additional-resources-readings_wordnet.html 31.0 KB
  205. 01_model-evaluation-selection.en.srt 30.1 KB
  206. 03_small-world-networks.en.srt 30.0 KB
  207. 12_decision-trees.en.srt 28.4 KB
  208. 02_help-us-learn-more-about-you_instructions.html 1.9 KB
  209. 04_neural-networks.en.srt 27.9 KB
  210. 04_link-prediction.en.srt 27.7 KB
  211. 06_linear-regression-ridge-lasso-and-polynomial-regression.en.srt 27.2 KB
  212. 09_k-nearest-neighbors-classification.en.srt 26.2 KB
  213. 02_distance-measures.en.srt 26.1 KB
  214. 07_interactivity.en.srt 7.4 KB
  215. 31 120 bytes
  216. 07_an-example-machine-learning-problem.mp4 19.1 MB
  217. 07_notice-for-auditing-learners-assignment-submission_instructions.html 1.6 KB
  218. 10_kernelized-support-vector-machines.en.srt 25.6 KB
  219. 05_information-extraction.en.srt 22.5 KB
  220. 05_linear-regression-least-squares.en.srt 21.3 KB
  221. 01_assignment-1-submission_instructions.html 1.1 KB
  222. 03_advanced-nlp-tasks-with-nltk.en.srt 20.1 KB
  223. 06_learning-text-classifiers-in-python.en.srt 19.9 KB
  224. 03_clustering.en.srt 19.9 KB
  225. 01_clustering-coefficient.en.srt 19.4 KB
  226. 01__resources.html 1.8 KB
  227. 05_hubs-and-authorities.en.srt 19.0 KB
  228. 04_key-concepts-in-machine-learning.en.srt 18.8 KB
  229. 01_degree-and-closeness-centrality.en.srt 18.4 KB
  230. 03_generative-models-and-lda.en.srt 18.2 KB
  231. 08_model-selection-optimizing-classifiers-for-different-evaluation-metrics.en.srt 18.1 KB
  232. 02_random-forests.en.srt 17.1 KB
  233. 01_assignment-2-submission_instructions.html 1.0 KB
  234. 10_data-leakage.en.srt 16.7 KB
  235. 02_introduction.en.srt 16.1 KB
  236. 02_confusion-matrices-basic-evaluation-metrics.en.srt 15.8 KB
  237. 02_overfitting-and-underfitting.en.srt 15.8 KB
  238. 05_multi-class-evaluation.en.srt 15.2 KB
  239. 01_text-classification.en.srt 15.2 KB
  240. 04_network-robustness.en.srt 14.9 KB
  241. 07_an-example-machine-learning-problem.en.srt 14.8 KB
  242. 04_network-definition-and-vocabulary.en.srt 14.2 KB
  243. 02_identifying-features-from-text.en.srt 9.6 KB
  244. 32 276 bytes
  245. 04_network-robustness.mp4 18.9 MB
  246. 03_basic-page-rank.en.srt 14.1 KB
  247. 01_assignment-3-submission_instructions.html 1.0 KB
  248. 04_scaled-page-rank.en.srt 13.6 KB
  249. 09_internationalization-and-issues-with-non-ascii-characters.en.srt 13.6 KB
  250. 02_dimensionality-reduction-and-manifold-learning.en.srt 13.5 KB
  251. 05_tools-for-thinking-about-design-alberto-cairo.en.srt 12.6 KB
  252. 01_course-syllabus_instructions.html 12.5 KB
  253. 07_demonstration-case-study-sentiment-analysis.en.srt 12.2 KB
  254. 10_resources-common-issues-with-free-text_instructions.html 1.9 KB
  255. 33 18 bytes
  256. 04_scaled-page-rank.mp4 18.7 MB
  257. 06_the-small-world-phenomenon-optional_instructions.html 1.6 KB
  258. 02_histograms.en.srt 12.1 KB
  259. 08_examining-the-data.en.srt 12.1 KB
  260. 01_assignment-4-submission_instructions.html 1.0 KB
  261. 05_basic-plotting-with-matplotlib.en.srt 11.9 KB
  262. 07_line-plots.en.srt 11.8 KB
  263. 02_syllabus_instructions.html 11.6 KB
  264. 06_scatterplots.en.srt 11.5 KB
  265. 01__documentation.html 582 bytes
  266. 01__resources.html 2.2 KB
  267. 01_course-syllabus_instructions.html 11.4 KB
  268. 01__resources.html 1.8 KB
  269. 02_seaborn.en.srt 11.3 KB
  270. 01_naive-bayes-classifiers.en.srt 11.2 KB
  271. 11_module-1-quiz_exam.html 10.9 KB
  272. 03_networks-definition-and-why-we-study-them.en.srt 10.8 KB
  273. 01_subplots.en.srt 10.5 KB
  274. 08_ta-demonstration-loading-graphs-in-networkx.en.srt 10.4 KB
  275. 07_deep-learning-optional.en.srt 10.3 KB
  276. 04_box-plots.en.srt 10.3 KB
  277. 02_matplotlib-architecture.en.srt 10.2 KB
  278. 02_topic-modeling.en.srt 10.1 KB
  279. 01_plotting-with-pandas.en.srt 9.5 KB
  280. 03_classifier-decision-functions.en.srt 9.0 KB
  281. 12_week-1-quiz_exam.html 8.9 KB
  282. 03_common-patterns-in-time-series.en.srt 8.8 KB
  283. 14_week-4-quiz_exam.html 8.5 KB
  284. 03_gradient-boosted-decision-trees.en.srt 8.4 KB
  285. 15_week-3-quiz_exam.html 8.4 KB
  286. 01__resources.html 2.9 KB
  287. 01_assignment-reading_instructions.html 1.5 KB
  288. 09_multi-class-classification.en.srt 8.3 KB
  289. 34 425 bytes
  290. 01_clustering-coefficient.mp4 18.7 MB
  291. 10_forecasting.en.srt 7.8 KB
  292. 08_practice-quiz_quiz.html 7.8 KB
  293. 01__documentation.html 582 bytes
  294. 05_notice-for-auditing-learners-assignment-submission_instructions.html 1.6 KB
  295. 04_precision-recall-and-roc-curves.en.srt 7.5 KB
  296. 10_useful-junk-the-effects-of-visual-embellishment-on-comprehension-and_instructions.html 1.3 KB
  297. 09_graphical-heuristics-chart-junk-edward-tufte.en.srt 7.6 KB
  298. 05_ta-demonstration-simple-network-visualizations-in-networkx.en.srt 7.3 KB
  299. 06_animation.en.srt 7.1 KB
  300. 07_graphical-heuristics-data-ink-ratio-edward-tufte.en.srt 7.0 KB
  301. 04_introduction-to-time-series.en.srt 6.9 KB
  302. 03_supervised-learning-datasets.en.srt 6.7 KB
  303. 01_introduction-a-conversation-with-andrew-ng.en.srt 6.7 KB
  304. 08_module-3-quiz_exam.html 6.6 KB
  305. 01_assignment-1-submission_instructions.html 1.1 KB
  306. 13_combining-our-tools-for-analysis.en.srt 6.5 KB
  307. 01_introduction.en.srt 6.5 KB
  308. 12_deep-neural-network-training-tuning-and-prediction.en.srt 6.4 KB
  309. 02_post-course-survey_instructions.html 1.5 KB
  310. 08_real-data-sunspots.en.srt 6.4 KB
  311. 03_matplotlib_instructions.html 1.4 KB
  312. 04_practice-quiz_quiz.html 2.2 KB
  313. 02_preparing-features-and-labels.en.srt 6.2 KB
  314. 01_assignment-2-submission_instructions.html 1.0 KB
  315. 03_preparing-features-and-labels.en.srt 6.2 KB
  316. 05_python-tools-for-machine-learning.en.srt 6.1 KB
  317. 07_demonstration-regex-with-pandas-and-named-groups.en.srt 6.1 KB
  318. 04_naive-bayes-variations.en.srt 6.1 KB
  319. 01__resources.html 6.1 KB
  320. 04_bi-directional-lstms.en.srt 6.0 KB
  321. 09_dejunkifying-a-plot.en.srt 5.9 KB
  322. 05_heatmaps.en.srt 5.3 KB
  323. 07_single-layer-neural-network.en.srt 5.2 KB
  324. 06_train-validation-and-test-sets.en.srt 5.2 KB
  325. 02_conceptual-overview.en.srt 5.1 KB
  326. 05_module-2-quiz_exam.html 4.7 KB
  327. 08_moving-average-and-differencing.en.srt 4.5 KB
  328. 01_specialization-wrap-up-a-conversation-with-andrew-ng.en.srt 4.5 KB
  329. 13_deep-neural-network.en.srt 4.5 KB
  330. 01_assignment-3-submission_instructions.html 1.1 KB
  331. 01_basic-natural-language-processing.en.srt 4.2 KB
  332. 01_graphics-lies-misleading-visuals_instructions.html 1.4 KB
  333. 09_prediction.en.srt 4.2 KB
  334. 09_train-and-tune-the-model.en.srt 4.2 KB
  335. 03_introduction-to-text-mining.en.srt 4.1 KB
  336. 01_conclusion.en.srt 3.9 KB
  337. 10_more-on-single-layer-neural-network.en.srt 3.9 KB
  338. 12_coding-lstms.en.srt 3.8 KB
  339. 03_shape-of-the-inputs-to-the-rnn.en.srt 3.5 KB
  340. 07_metrics-for-evaluating-performance.en.srt 3.3 KB
  341. 06_feeding-windowed-dataset-into-neural-network.en.srt 3.3 KB
  342. 02_graphics-lies-misleading-visuals_peer_assignment_instructions.html 3.2 KB
  343. 01__resources.html 3.0 KB
  344. 01_assignment-4-submission_instructions.html 1.0 KB
  345. 01_post-course-survey_instructions.html 1.7 KB
  346. 05_lambda-layers.en.srt 2.9 KB
  347. 10_lstm.en.srt 2.8 KB
  348. 13_more-on-lstm.en.srt 2.8 KB
  349. 01__documentation.html 582 bytes
  350. 02_machine-learning-applied-to-time-series.en.srt 2.8 KB
  351. 01__resources.html 2.3 KB
  352. 08_rnn.en.srt 2.7 KB
  353. 01__resources.html 1.8 KB
  354. 01_introduction.en.srt 2.6 KB
  355. 01_week-4-a-conversation-with-andrew-ng.en.srt 2.6 KB
  356. 10_prediction.en.srt 2.3 KB
  357. 04_outputting-a-sequence.en.srt 2.1 KB
  358. 01_plotting-weather-patterns_peer_assignment_instructions.html 1.8 KB
  359. 09_trailing-versus-centered-windows.en.srt 1.7 KB
  360. 02_what-next_instructions.html 1.6 KB
  361. 12_sunspots-notebook_instructions.html 1.5 KB
  362. 05_sequence-bias_instructions.html 1.4 KB
  363. 02_convolutions.en.srt 1.4 KB
  364. 13_week-1-wrap-up_instructions.html 1.4 KB
  365. 03_convolutional-neural-networks-course_instructions.html 1.2 KB
  366. 16_week-2-wrap-up_instructions.html 1.2 KB
  367. 14_lstm-notebook_instructions.html 1.2 KB
  368. 04_preparing-features-and-labels-notebook_instructions.html 1.2 KB
  369. 11_forecasting-notebook_instructions.html 1.2 KB
  370. 16_week-3-wrap-up_instructions.html 1.2 KB
  371. 11_single-layer-neural-network-notebook_instructions.html 1.2 KB
  372. 01__resources.html 997 bytes
  373. 14_deep-neural-network-notebook_instructions.html 1.2 KB
  374. 09_rnn-notebook_instructions.html 1.2 KB
  375. 01_wrap-up_instructions.html 1.2 KB
  376. 05_introduction-to-time-series-notebook_instructions.html 1.2 KB
  377. 11_link-to-the-lstm-lesson_instructions.html 1.1 KB
  378. 07_more-info-on-huber-loss_instructions.html 1.0 KB
  379. 05_more-on-batch-sizing_instructions.html 1.0 KB
  380. 35 8.6 KB
  381. 01_text-classification.mp4 18.6 MB
  382. 36 378.7 KB
  383. 08_linear-classifiers-support-vector-machines.mp4 18.3 MB
  384. 37 186.7 KB
  385. 04_k-nearest-neighbors-classification-and-regression.mp4 17.8 MB
  386. 38 191.4 KB
  387. 04_network-definition-and-vocabulary.mp4 17.8 MB
  388. 39 249.2 KB
  389. 03_basic-page-rank.mp4 17.7 MB
  390. 40 336.4 KB
  391. 06_scatterplots.mp4 17.6 MB
  392. 41 363.3 KB
  393. 02_introduction.mp4 17.5 MB
  394. 42 11.5 KB
  395. 02_random-forests.mp4 17.4 MB
  396. 43 109.1 KB
  397. 02_histograms.mp4 17.0 MB
  398. 44 461.7 KB
  399. 06_centrality-examples.mp4 16.8 MB
  400. 45 212.9 KB
  401. 05_multi-class-evaluation.mp4 16.7 MB
  402. 46 285.4 KB
  403. 07_logistic-regression.mp4 16.5 MB
  404. 47 51.1 KB
  405. 02_matplotlib-architecture.mp4 16.4 MB
  406. 48 129.0 KB
  407. 07_demonstration-case-study-sentiment-analysis.mp4 16.4 MB
  408. 49 129.3 KB
  409. 02_confusion-matrices-basic-evaluation-metrics.mp4 16.2 MB
  410. 50 320.0 KB
  411. 09_internationalization-and-issues-with-non-ascii-characters.mp4 15.8 MB
  412. 51 213.8 KB
  413. 07_line-plots.mp4 15.8 MB
  414. 52 236.7 KB
  415. 08_examining-the-data.mp4 15.7 MB
  416. 53 340.4 KB
  417. 02_identifying-features-from-text.mp4 15.7 MB
  418. 54 346.5 KB
  419. 02_overfitting-and-underfitting.mp4 15.6 MB
  420. 55 441.5 KB
  421. 01__Week1Slides.pptx 15.5 MB
  422. 56 469.4 KB
  423. 03_connected-components.mp4 15.5 MB
  424. 57 470.9 KB
  425. 01_subplots.mp4 15.4 MB
  426. 58 65.0 KB
  427. 03_networks-definition-and-why-we-study-them.mp4 15.4 MB
  428. 59 135.7 KB
  429. 13_a-few-useful-things-to-know-about-machine-learning_cacm12.pdf 15.1 MB
  430. 60 388.4 KB
  431. 05_node-and-edge-attributes.mp4 15.1 MB
  432. 61 418.5 KB
  433. 01__3.5_Hubs_and_Authorities.pdf 14.6 MB
  434. 62 380.0 KB
  435. 04_box-plots.mp4 14.5 MB
  436. 63 493.6 KB
  437. 05_basic-plotting-with-matplotlib.mp4 14.1 MB
  438. 64 452.1 KB
  439. 02_topic-modeling.mp4 13.4 MB
  440. 65 79.0 KB
  441. 09_graphical-heuristics-chart-junk-edward-tufte.mp4 13.1 MB
  442. 66 370.4 KB
  443. 11_cross-validation.mp4 12.9 MB
  444. 67 80.6 KB
  445. 02_dimensionality-reduction-and-manifold-learning.mp4 12.9 MB
  446. 68 120.3 KB
  447. 02_seaborn.mp4 12.5 MB
  448. 69 4.3 KB
  449. 01_naive-bayes-classifiers.mp4 12.3 MB
  450. 70 205.3 KB
  451. 09_dejunkifying-a-plot.mp4 12.2 MB
  452. 71 264.9 KB
  453. 01_introduction.mp4 12.1 MB
  454. 72 415.7 KB
  455. 08_ta-demonstration-loading-graphs-in-networkx.mp4 11.7 MB
  456. 73 327.0 KB
  457. 01_introduction-a-conversation-with-andrew-ng.mp4 10.9 MB
  458. 74 105.8 KB
  459. 07_deep-learning-optional.mp4 10.8 MB
  460. 75 243.2 KB
  461. 01_week-3-a-conversation-with-andrew-ng.mp4 10.6 MB
  462. 76 404.4 KB
  463. 01_plotting-with-pandas.mp4 10.6 MB
  464. 77 427.0 KB
  465. 07_interactivity.mp4 10.2 MB
  466. 78 297.0 KB
  467. 10_forecasting.mp4 10.2 MB
  468. 79 302.7 KB
  469. 05_ta-demonstration-simple-network-visualizations-in-networkx.mp4 10.1 MB
  470. 80 423.1 KB
  471. 09_multi-class-classification.mp4 9.9 MB
  472. 81 77.5 KB
  473. 03_classifier-decision-functions.mp4 9.9 MB
  474. 82 94.8 KB
  475. 06_regression-evaluation.mp4 9.7 MB
  476. 83 358.0 KB
  477. 04_naive-bayes-variations.mp4 9.6 MB
  478. 84 390.9 KB
  479. 08_bar-charts.mp4 9.3 MB
  480. 85 218.9 KB
  481. 07_graphical-heuristics-data-ink-ratio-edward-tufte.mp4 9.2 MB
  482. 86 261.5 KB
  483. 06_animation.mp4 9.1 MB
  484. 87 460.8 KB
  485. 11_graphical-heuristics-lie-factor-and-spark-lines-edward-tufte.mp4 8.7 MB
  486. 88 341.9 KB
  487. 03_gradient-boosted-decision-trees.mp4 8.5 MB
  488. 89 29.5 KB
  489. 04_precision-recall-and-roc-curves.mp4 8.1 MB
  490. 90 415.3 KB
  491. 05_python-tools-for-machine-learning.mp4 7.7 MB
  492. 91 260.7 KB
  493. 01__1.1_Networks_Everywhere.pdf 7.7 MB
  494. 92 293.2 KB
  495. 05_heatmaps.mp4 7.6 MB
  496. 93 358.8 KB
  497. 04_introduction-to-time-series.mp4 7.6 MB
  498. 94 420.1 KB
  499. 03_supervised-learning-datasets.mp4 7.3 MB
  500. 95 231.8 KB
  501. 01_specialization-wrap-up-a-conversation-with-andrew-ng.mp4 7.2 MB
  502. 96 346.9 KB
  503. 07_demonstration-regex-with-pandas-and-named-groups.mp4 7.1 MB
  504. 97 360.7 KB
  505. 01__3.3_Basic_Page_Rank.pdf 6.8 MB
  506. 98 234.2 KB
  507. 12_deep-neural-network-training-tuning-and-prediction.mp4 6.8 MB
  508. 99 249.2 KB
  509. 01_introduction.mp4 6.7 MB
  510. 100 349.1 KB
  511. 01__2.4_Network_Robustness.pdf 6.7 MB
  512. 101 350.3 KB
  513. 01_time-series-examples.mp4 6.5 MB
  514. 102 32.1 KB
  515. 01__3.6_Centrality_Examples.pdf 6.3 MB
  516. 103 180.5 KB
  517. 03_common-patterns-in-time-series.mp4 6.3 MB
  518. 104 234.8 KB
  519. 02_preparing-features-and-labels.mp4 6.0 MB
  520. 105 14.8 KB
  521. 01__4.3_Link_Prediction.pdf 5.9 MB
  522. 106 62.7 KB
  523. 13_deep-neural-network.mp4 5.9 MB
  524. 107 79.0 KB
  525. 03_preparing-features-and-labels.mp4 5.8 MB
  526. 108 158.6 KB
  527. 13_combining-our-tools-for-analysis.mp4 5.7 MB
  528. 109 308.3 KB
  529. 04_about-the-professor-christopher-brooks.mp4 5.5 MB
  530. 110 7.2 KB
  531. 01_basic-natural-language-processing.mp4 5.4 MB
  532. 111 123.4 KB
  533. 01__02-adspy-module2-supervised1.pdf 5.1 MB
  534. 112 404.7 KB
  535. 08_real-data-sunspots.mp4 5.1 MB
  536. 113 433.7 KB
  537. 01__4.2_Small_World_Networks.pdf 5.0 MB
  538. 114 3.4 KB
  539. 03_introduction-to-text-mining.mp4 4.9 MB
  540. 115 152.7 KB
  541. 04_bi-directional-lstms.mp4 4.7 MB
  542. 116 307.1 KB
  543. 01_becoming-an-independent-data-scientist.mp4 4.5 MB
  544. 117 498.4 KB
  545. 01_conclusion.mp4 4.5 MB
  546. 118 9.2 KB
  547. 10_more-on-single-layer-neural-network.mp4 4.4 MB
  548. 119 74.8 KB
  549. 01__4.1_Preferential_Attachment_Model.pdf 4.4 MB
  550. 120 137.1 KB
  551. 02_conceptual-overview.mp4 4.2 MB
  552. 121 257.5 KB
  553. 01_introduction.mp4 4.2 MB
  554. 122 295.4 KB
  555. 06_train-validation-and-test-sets.mp4 4.2 MB
  556. 123 322.3 KB
  557. 01__Week1_Slides_Final.pdf 4.2 MB
  558. 124 334.0 KB
  559. 01_week-4-a-conversation-with-andrew-ng.mp4 4.1 MB
  560. 125 395.5 KB
  561. 01_a-conversation-with-andrew-ng.mp4 4.1 MB
  562. 126 457.2 KB
  563. 06_lstm.mp4 3.9 MB
  564. 127 118.5 KB
  565. 06_adjusting-the-learning-rate-dynamically.mp4 3.8 MB
  566. 128 243.8 KB
  567. 07_single-layer-neural-network.mp4 3.5 MB
  568. 129 25.0 KB
  569. 09_train-and-tune-the-model.mp4 3.5 MB
  570. 130 31.5 KB
  571. 11_sunspots.mp4 3.4 MB
  572. 131 64.5 KB
  573. 01__2.3_Connected_Components.pdf 3.4 MB
  574. 132 102.9 KB
  575. 01__3.4_Scaled_Page_Rank.pdf 3.4 MB
  576. 133 123.7 KB
  577. 13_more-on-lstm.mp4 3.4 MB
  578. 134 130.4 KB
  579. 12_coding-lstms.mp4 3.3 MB
  580. 135 201.9 KB
  581. 08_rnn.mp4 3.2 MB
  582. 136 279.0 KB
  583. 08_moving-average-and-differencing.mp4 3.2 MB
  584. 137 280.4 KB
  585. 09_prediction.mp4 3.2 MB
  586. 138 299.1 KB
  587. 01__01-adspy-module1-basics.pdf 3.1 MB
  588. 139 378.6 KB
  589. 06_feeding-windowed-dataset-into-neural-network.mp4 3.0 MB
  590. 140 34.3 KB
  591. 01__3.2_Betweenness_Centrality.pdf 2.7 MB
  592. 141 262.6 KB
  593. 01__1.2_Network_Definition_and_Vocabulary.pdf 2.7 MB
  594. 142 326.2 KB
  595. 03_shape-of-the-inputs-to-the-rnn.mp4 2.7 MB
  596. 143 326.4 KB
  597. 07_metrics-for-evaluating-performance.mp4 2.6 MB
  598. 144 422.7 KB
  599. 01__2.1_Clustering_Coefficient.pdf 2.6 MB
  600. 145 432.8 KB
  601. 10_prediction.mp4 2.5 MB
  602. 146 461.9 KB
  603. 02_machine-learning-applied-to-time-series.mp4 2.5 MB
  604. 147 43.2 KB
  605. 01__05-adspy-unsupervised.pdf 2.4 MB
  606. 148 79.3 KB
  607. 10_lstm.mp4 2.4 MB
  608. 149 93.5 KB
  609. 01__04-adspy-module4-supervised2.pdf 2.3 MB
  610. 150 214.7 KB
  611. 01__2.2_Distance_Measures.pdf 2.2 MB
  612. 151 262.6 KB
  613. 01__3.1_Degree_and_Closeness_Centrality.pdf 2.2 MB
  614. 152 328.5 KB
  615. 05_lambda-layers.mp4 2.2 MB
  616. 153 347.8 KB
  617. 06_the-small-world-phenomenon-optional_networks-book-ch02.pdf 2.1 MB
  618. 154 437.1 KB
  619. 01__1.4_Bipartite_Graphs.pdf 2.0 MB
  620. 155 502.8 KB
  621. 02_convolutions.mp4 1.9 MB
  622. 156 137.6 KB
  623. 01__03-adspy-module3-evaluation.pdf 1.8 MB
  624. 157 232.2 KB
  625. 04_outputting-a-sequence.mp4 1.7 MB
  626. 158 263.4 KB
  627. 15_module-4-quiz_exam.html 1.6 MB
  628. 159 407.6 KB
  629. 09_trailing-versus-centered-windows.mp4 1.6 MB
  630. 160 413.9 KB
  631. 06_the-small-world-phenomenon-optional_networks-book-ch20.pdf 1.5 MB
  632. 161 482.0 KB
  633. 01__1.3_Node_and_Edge_Attributes.pdf 1.5 MB
  634. 162 498.8 KB
  635. 02_congratulations.mp4 1.4 MB
  636. 163 66.5 KB
  637. 01__1.1_Introduction_to_Text_Mining.pdf 1.3 MB
  638. 164 223.4 KB
  639. 06_module-2-quiz_exam.html 1.1 MB
  640. 165 431.8 KB
  641. 12_leakage-in-data-mining-formulation-detection-and-avoidance-optional_cs670_Tran_PreferredPaper_LeakingInDataMining.pdf 847.6 KB
  642. 166 176.4 KB
  643. 08_machine-learning-on-time-windows.mp4 723.7 KB
  644. 167 300.3 KB
  645. 01__resources.html 701.2 KB
  646. 168 322.8 KB
  647. 01__resources.html 700.6 KB
  648. 169 323.4 KB
  649. 01__resources.html 700.6 KB
  650. 170 323.4 KB
  651. 01__4.3_Generative_Models_and_LDA.pdf 697.6 KB
  652. 171 326.4 KB
  653. 01__1.4_Internationalization_and_Issues_with_Non-ASCII_Characters.pdf 670.4 KB
  654. 172 353.6 KB
  655. 05_module-4-quiz_exam.html 669.9 KB
  656. 173 354.1 KB
  657. 01__3.5_Support_Vector_Machines.pdf 592.4 KB
  658. 174 431.6 KB
  659. 15_module-2-quiz_exam.html 554.3 KB
  660. 175 469.7 KB
  661. 01__Week3_Slides_Final.pdf 525.6 KB
  662. 176 498.4 KB
  663. 01__resources.html 523.2 KB
  664. 177 500.8 KB
  665. 01__4.4_Information_Extraction.pdf 518.5 KB

Discussion