Torrent Info
Title O`REILLY - Data Science Bookcamp, VIDEO EDITION
Category
Size 6.44GB

Files List
Please note that this page does not hosts or makes available any of the listed filenames. You cannot download any of those files from here.
01 - Case study 1 - Finding the winning strategy in a card game.mp4 6.89MB
02 - Chapter 1. Computing probabilities using Python This section covers.mp4 56.75MB
03 - Chapter 1. Problem 2 - Analyzing multiple die rolls.mp4 60.89MB
04 - Chapter 2. Plotting probabilities using Matplotlib.mp4 53.74MB
05 - Chapter 2. Comparing multiple coin-flip probability distributions.mp4 65.57MB
06 - Chapter 3. Running random simulations in NumPy.mp4 36.35MB
07 - Chapter 3. Computing confidence intervals using histograms and NumPy arrays.mp4 47.59MB
08 - Chapter 3. Deriving probabilities from histograms.mp4 57.63MB
09 - Chapter 3. Computing histograms in NumPy.mp4 52.99MB
100 - Chapter 20. Network-driven supervised machine learning.mp4 48.95MB
101 - Chapter 20. The basics of supervised machine learning.mp4 49.20MB
102 - Chapter 20. Measuring predicted label accuracy, Part 1.mp4 37.28MB
103 - Chapter 20. Measuring predicted label accuracy, Part 2.mp4 55.24MB
104 - Chapter 20. Optimizing KNN performance.mp4 35.68MB
105 - Chapter 20. Running a grid search using scikit-learn.mp4 39.33MB
106 - Chapter 20. Limitations of the KNN algorithm.mp4 63.16MB
107 - Chapter 21. Training linear classifiers with logistic regression.mp4 58.26MB
108 - Chapter 21. Training a linear classifier, Part 1.mp4 43.52MB
109 - Chapter 21. Training a linear classifier, Part 2.mp4 73.26MB
10 - Chapter 3. Using permutations to shuffle cards.mp4 35.40MB
110 - Chapter 21. Improving linear classification with logistic regression, Part 1.mp4 43.42MB
111 - Chapter 21. Improving linear classification with logistic regression, Part 2.mp4 43.12MB
112 - Chapter 21. Training linear classifiers using scikit-learn.mp4 49.64MB
113 - Chapter 21. Measuring feature importance with coefficients.mp4 93.13MB
114 - Chapter 22. Training nonlinear classifiers with decision tree techniques.mp4 65.20MB
115 - Chapter 22. Training a nested if_else model using two features.mp4 53.25MB
116 - Chapter 22. Deciding which feature to split on.mp4 57.23MB
117 - Chapter 22. Training if_else models with more than two features.mp4 57.79MB
118 - Chapter 22. Training decision tree classifiers using scikit-learn.mp4 51.86MB
119 - Chapter 22. Studying cancerous cells using feature importance.mp4 59.29MB
11 - Chapter 4. Case study 1 solution.mp4 34.27MB
120 - Chapter 22. Improving performance using random forest classification.mp4 57.38MB
121 - Chapter 22. Training random forest classifiers using scikit-learn.mp4 52.96MB
122 - Chapter 23. Case study 5 solution.mp4 32.94MB
123 - Chapter 23. Exploring the experimental observations.mp4 38.99MB
124 - Chapter 23. Training a predictive model using network features, Part 1.mp4 52.59MB
125 - Chapter 23. Training a predictive model using network features, Part 2.mp4 53.87MB
126 - Chapter 23. Adding profile features to the model.mp4 62.03MB
127 - Chapter 23. Optimizing performance across a steady set of features.mp4 42.55MB
128 - Chapter 23. Interpreting the trained model.mp4 64.17MB
12 - Chapter 4. Optimizing strategies using the sample space for a 10-card deck.mp4 47.10MB
13 - Case study 2 - Assessing online ad clicks for significance.mp4 31.40MB
14 - Chapter 5. Basic probability and statistical analysis using SciPy.mp4 76.23MB
15 - Chapter 5. Mean as a measure of centrality.mp4 36.58MB
16 - Chapter 5. Variance as a measure of dispersion.mp4 73.89MB
17 - Chapter 6. Making predictions using the central limit theorem and SciPy.mp4 58.61MB
18 - Chapter 6. Comparing two sampled normal curves.mp4 31.46MB
19 - Chapter 6. Determining the mean and variance of a population through random sampling.mp4 55.19MB
20 - Chapter 6. Computing the area beneath a normal curve.mp4 64.57MB
21 - Chapter 7. Statistical hypothesis testing.mp4 39.19MB
22 - Chapter 7. Assessing the divergence between sample mean and population mean.mp4 68.30MB
23 - Chapter 7. Data dredging - Coming to false conclusions through oversampling.mp4 79.88MB
24 - Chapter 7. Bootstrapping with replacement - Testing a hypothesis when the population variance is unknown 1.mp4 53.28MB
25 - Chapter 7. Bootstrapping with replacement - Testing a hypothesis when the population variance is unknown 2.mp4 52.78MB
26 - Chapter 7. Permutation testing - Comparing means of samples when the population parameters are unknown.mp4 43.69MB
27 - Chapter 8. Analyzing tables using Pandas.mp4 40.87MB
28 - Chapter 8. Retrieving table rows.mp4 38.24MB
29 - Chapter 8. Saving and loading table data.mp4 40.28MB
30 - Chapter 9. Case study 2 solution.mp4 33.60MB
31 - Chapter 9. Determining statistical significance.mp4 43.58MB
32 - Case study 3 - Tracking disease outbreaks using news headlines.mp4 6.60MB
33 - Chapter 10. Clustering data into groups.mp4 61.40MB
34 - Chapter 10. K-means - A clustering algorithm for grouping data into K central groups.mp4 61.20MB
35 - Chapter 10. Using density to discover clusters.mp4 52.23MB
36 - Chapter 10. Clustering based on non-Euclidean distance.mp4 68.79MB
37 - Chapter 10. Analyzing clusters using Pandas.mp4 40.48MB
38 - Chapter 11. Geographic location visualization and analysis.mp4 46.58MB
39 - Chapter 11. Plotting maps using Cartopy.mp4 33.23MB
40 - Chapter 11. Visualizing maps.mp4 58.27MB
41 - Chapter 11. Location tracking using GeoNamesCache.mp4 62.35MB
42 - Chapter 11. Limitations of the GeoNamesCache library.mp4 69.19MB
43 - Chapter 12. Case study 3 solution.mp4 34.63MB
44 - Chapter 12. Visualizing and clustering the extracted location data.mp4 70.72MB
45 - Case study 4 - Using online job postings to improve your data science resume.mp4 23.95MB
46 - Chapter 13. Measuring text similarities.mp4 36.28MB
47 - Chapter 13. Simple text comparison.mp4 44.00MB
48 - Chapter 13. Replacing words with numeric values.mp4 42.07MB
49 - Chapter 13. Vectorizing texts using word counts.mp4 44.50MB
50 - Chapter 13. Using normalization to improve TF vector similarity.mp4 48.56MB
51 - Chapter 13. Using unit vector dot products to convert between relevance metrics.mp4 41.64MB
52 - Chapter 13. Basic matrix operations, Part 1.mp4 48.78MB
53 - Chapter 13. Basic matrix operations, Part 2.mp4 27.15MB
54 - Chapter 13. Computational limits of matrix multiplication.mp4 47.81MB
55 - Chapter 14. Dimension reduction of matrix data.mp4 61.74MB
56 - Chapter 14. Reducing dimensions using rotation, Part 1.mp4 38.99MB
57 - Chapter 14. Reducing dimensions using rotation, Part 2.mp4 37.56MB
58 - Chapter 14. Dimension reduction using PCA and scikit-learn.mp4 64.72MB
59 - Chapter 14. Clustering 4D data in two dimensions.mp4 54.44MB
60 - Chapter 14. Limitations of PCA.mp4 30.77MB
61 - Chapter 14. Computing principal components without rotation.mp4 47.80MB
62 - Chapter 14. Extracting eigenvectors using power iteration, Part 1.mp4 44.67MB
63 - Chapter 14. Extracting eigenvectors using power iteration, Part 2.mp4 34.38MB
64 - Chapter 14. Efficient dimension reduction using SVD and scikit-learn.mp4 68.60MB
65 - Chapter 15. NLP analysis of large text datasets.mp4 47.16MB
66 - Chapter 15. Vectorizing documents using scikit-learn.mp4 87.06MB
67 - Chapter 15. Ranking words by both post frequency and count, Part 1.mp4 56.59MB
68 - Chapter 15. Ranking words by both post frequency and count, Part 2.mp4 48.13MB
69 - Chapter 15. Computing similarities across large document datasets.mp4 60.24MB
70 - Chapter 15. Clustering texts by topic, Part 1.mp4 73.30MB
71 - Chapter 15. Clustering texts by topic, Part 2.mp4 87.08MB
72 - Chapter 15. Visualizing text clusters.mp4 58.90MB
73 - Chapter 15. Using subplots to display multiple word clouds, Part 1.mp4 50.57MB
74 - Chapter 15. Using subplots to display multiple word clouds, Part 2.mp4 58.83MB
75 - Chapter 16. Extracting text from web pages.mp4 39.55MB
76 - Chapter 16. The structure of HTML documents.mp4 62.95MB
77 - Chapter 16. Parsing HTML using Beautiful Soup, Part 1.mp4 40.42MB
78 - Chapter 16. Parsing HTML using Beautiful Soup, Part 2.mp4 46.78MB
79 - Chapter 17. Case study 4 solution.mp4 37.42MB
80 - Chapter 17. Exploring the HTML for skill descriptions.mp4 59.65MB
81 - Chapter 17. Filtering jobs by relevance.mp4 73.18MB
82 - Chapter 17. Clustering skills in relevant job postings.mp4 66.54MB
83 - Chapter 17. Investigating the technical skill clusters.mp4 41.46MB
84 - Chapter 17. Exploring clusters at alternative values of K.mp4 69.37MB
85 - Chapter 17. Analyzing the 700 most relevant postings.mp4 40.95MB
86 - Case study 5 - Predicting future friendships from social network data.mp4 80.40MB
87 - Chapter 18. An introduction to graph theory and network analysis.mp4 74.88MB
88 - Chapter 18. Analyzing web networks using NetworkX, Part 1.mp4 30.92MB
89 - Chapter 18. Analyzing web networks using NetworkX, Part 2.mp4 53.06MB
90 - Chapter 18. Utilizing undirected graphs to optimize the travel time between towns.mp4 57.39MB
91 - Chapter 18. Computing the fastest travel time between nodes, Part 1.mp4 32.12MB
92 - Chapter 18. Computing the fastest travel time between nodes, Part 2.mp4 49.04MB
93 - Chapter 19. Dynamic graph theory techniques for node ranking and social network analysis.mp4 75.08MB
94 - Chapter 19. Computing travel probabilities using matrix multiplication.mp4 40.21MB
95 - Chapter 19. Deriving PageRank centrality from probability theory.mp4 48.36MB
96 - Chapter 19. Computing PageRank centrality using NetworkX.mp4 44.66MB
97 - Chapter 19. Community detection using Markov clustering, Part 1.mp4 60.05MB
98 - Chapter 19. Community detection using Markov clustering, Part 2.mp4 75.21MB
99 - Chapter 19. Uncovering friend groups in social networks.mp4 57.99MB
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Russia (RU) 2
Belarus (BY) 1
China (CN) 1
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