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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 |