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.
|
_Solutions.ipynb |
307.21KB |
01. Automatic Index Alignment.ipynb |
13.89KB |
01. Datetime and Timedelta.ipynb |
21.78KB |
01. Grouping Aggregation Basics.ipynb |
18.01KB |
01. Integer, Float, and Boolean Data types.ipynb |
40.02KB |
01. Introduction to DataFrames.ipynb |
18.85KB |
01. Introduction to matplotlib.ipynb |
29.15KB |
01. Introduction to Regular Expressions.ipynb |
12.35KB |
01. Plotting with pandas Series.ipynb |
15.33KB |
01. Selecting Subsets of Data from DataFrames with just the brackets.ipynb |
12.44KB |
01. Series Attributes and Statistical Methods.ipynb |
30.64KB |
01. Tidy Data with melt.ipynb |
9.25KB |
01. What is Pandas.ipynb |
24.86KB |
02. Combining Data.ipynb |
4.82KB |
02. DataFrame Statistical Methods.ipynb |
27.09KB |
02. Grouping and Aggregating with Multiple Columns.ipynb |
14.00KB |
02. Introduction to Time Series.ipynb |
14.09KB |
02. Matplotlib Text and Lines.ipynb |
33.01KB |
02. Object, String, and Categorical Data Types.ipynb |
44.59KB |
02. Plotting with pandas DataFrames.ipynb |
30.30KB |
02. Quantifiers.ipynb |
6.73KB |
02. Reshaping by Pivoting.ipynb |
10.05KB |
02. Selecting Subsets of Data from DataFrames with loc.ipynb |
18.01KB |
02. Series Missing Value Methods.ipynb |
20.81KB |
02. The DataFrame and Series.ipynb |
20.07KB |
03. Common Messy Datasets.ipynb |
15.29KB |
03. DataFrame Missing Value Methods.ipynb |
18.52KB |
03. Data Types and Missing Values.ipynb |
13.44KB |
03. Datetime, Timedelta, and Period Data Types.ipynb |
21.87KB |
03. Grouping by Time.ipynb |
15.01KB |
03. Grouping with Pivot Tables.ipynb |
25.15KB |
03. Matplotlib Resolution.ipynb |
28.62KB |
03. Or Conditions.ipynb |
8.28KB |
03. Seaborn Axes Plots.ipynb |
58.65KB |
03. Selecting Subsets of Data from DataFrames with iloc.ipynb |
13.24KB |
03. Series Sorting, Ranking, and Uniqueness.ipynb |
21.43KB |
03. SQL Databases.ipynb |
10.87KB |
04. Character Sets and Grouping.ipynb |
17.07KB |
04. Counting with Crosstabs.ipynb |
12.30KB |
04. DataFrame Data Type Conversion.ipynb |
13.37KB |
04. DataFrame Sorting, Ranking, and Uniqueness.ipynb |
16.28KB |
04. Data Normalization.ipynb |
12.66KB |
04. Matplotlib Patches and Colors.ipynb |
51.27KB |
04. Rolling Windows.ipynb |
8.60KB |
04. Seaborn Grid Plots.ipynb |
24.31KB |
04. Selecting Subsets of Data from a Series.ipynb |
13.50KB |
04. Series Methods More.ipynb |
18.18KB |
04. Setting a Meaningful Index.ipynb |
16.64KB |
05. Alternate Groupby Syntax.ipynb |
5.72KB |
05. Boolean Selection Single Conditions.ipynb |
15.77KB |
05. DataFrame Structure Methods.ipynb |
18.89KB |
05. Five-Step Process for Data Exploration.ipynb |
9.71KB |
05. Grouping by Time and another Column.ipynb |
7.55KB |
05. Matplotlib Line Plots.ipynb |
35.83KB |
05. Project - Explore Newsgroups with Regexes.ipynb |
2.49KB |
05. Series String Methods.ipynb |
18.18KB |
06. Boolean Selection Multiple Conditions.ipynb |
16.11KB |
06. Custom Aggregation.ipynb |
32.83KB |
06. DataFrame Methods More.ipynb |
16.61KB |
06. Matplotlib Scatter and Bar Plots.ipynb |
40.56KB |
06. Project - Feature Engineering on the Titanic.ipynb |
6.10KB |
06. Series Datetime Methods.ipynb |
15.68KB |
07. Assigning Subsets of Data.ipynb |
10.17KB |
07. Boolean Selection More.ipynb |
14.34KB |
07. Matplotlib Distribution Plots.ipynb |
19.57KB |
07. Transform and Filter with Groupby.ipynb |
25.28KB |
08. Best of the Rest of Matplotlib.ipynb |
57.45KB |
08. Filtering with the query Method.ipynb |
16.01KB |
08. Other Groupby Methods.ipynb |
15.45KB |
09. Create Your Own Data Analysis.ipynb |
4.88KB |
09. Miscellaneous Subset Selection.ipynb |
10.86KB |
1.1 Selecting Subsets of DataFrames with Just the Brackets.mkv |
41.48MB |
1.1 Series Attributes and Methods.mkv |
86.50MB |
1.2 Exercise Solutions.mkv |
29.31MB |
1.2 Exercise Solutions.mkv |
41.30MB |
1. Exploring the Course Contents.mp4 |
27.38MB |
1. What is Pandas.mkv |
25.98MB |
10.1 Numeric and Boolean Data Types.mkv |
76.42MB |
10.2 Object Data Types.mkv |
21.83MB |
10.3 Datetime64 Data Type.mkv |
42.92MB |
10.4 Converting Strings to Numeric.mkv |
24.32MB |
10.5 DataFrame Data Type Conversion.mkv |
41.41MB |
10.6 Reading in Data with Known Missing Values.mkv |
17.15MB |
10.7 Timedelta64 Data Type.mkv |
22.62MB |
10.8 Data Type Summary Table.mkv |
31.00MB |
10.9 Exercise Solutions.mkv |
78.04MB |
11.1 Assigning Subsets with loc and iloc.mkv |
27.58MB |
11.2 Boolean Selection Assignment.mkv |
55.51MB |
11.3 Exercise Solutions.mkv |
27.90MB |
12. Case Study - Calculating Normality of Stock Market Returns.mkv |
79.47MB |
2.1 Selecting Subsets of Data from DataFrames with loc.mkv |
55.49MB |
2.1 Series Methods More.mkv |
51.21MB |
2.2 Exercise Solutions.mkv |
44.99MB |
2.2 Exercise Solutions.mkv |
21.72MB |
2. Opening the Material with Jupyter Notebooks.mkv |
58.70MB |
2. Pandas Examples.mp4 |
48.97MB |
3.1 Selecting Subsets of Data with iloc.mkv |
34.38MB |
3.1 Series Methods More II.mkv |
68.53MB |
3.2 Exercise Solutions.mkv |
20.81MB |
3.2 Exercise Solutions.mkv |
27.66MB |
3. Jupyter Notebook Tips and Tricks.mp4 |
21.90MB |
3. The DataFrame and Series.mkv |
73.02MB |
4.1 Selecting Subsets of Data from a Series.mkv |
54.85MB |
4.1 String Series Methods.mkv |
58.71MB |
4.2 Exercise Solutions.mkv |
33.31MB |
4.2 Exercise Solutions.mkv |
57.83MB |
4. Exercise Solutions - The DataFrame and Series.mkv |
25.20MB |
4. Working through a Notebook from the Course.mkv |
51.03MB |
5.1 Boolean Indexing Single Conditions.mkv |
49.82MB |
5.1 Datetime Series Methods.mkv |
77.44MB |
5.2 Exercise Solutions.mkv |
25.50MB |
5.2 Exercise Solutions.mkv |
36.52MB |
5. About to Begin.mkv |
22.97MB |
5. Data Types and Missing Values.mkv |
68.50MB |
6.1 Boolean Indexing Multiple Conditions.mkv |
53.16MB |
6.1 Dataframe Attributes and Methods.mkv |
87.26MB |
6.2 Exercise Solutions.mkv |
64.76MB |
6.2 Exercise Solutions.mkv |
19.27MB |
6. Exercise Solutions - Data Types and Missing Values.mkv |
31.62MB |
7.1 Boolean Indexing More.mkv |
86.62MB |
7.1 DataFrame Aggregation Methods.mkv |
57.61MB |
7.2 DataFrame Non-Aggregation Methods.mkv |
37.66MB |
7.2 Exercise Solutions.mkv |
57.78MB |
7.3 Nuisance Columns.mkv |
67.79MB |
7.4 Exercise Solutions.mkv |
62.17MB |
7. Five-Step Process for Data Exploration.mkv |
70.13MB |
8.1 DataFrame Methods More - Handling Missing Data.mkv |
68.08MB |
8.1 Miscellaneous Subset Selection.mkv |
86.23MB |
8.2 DataFrame Methods More 2 Sorting.mkv |
41.29MB |
8.2 Exercise Solutions.mkv |
42.19MB |
8.3 Finding the index of the maximum or minimum.mkv |
51.21MB |
8.4 Dropping and Renaming Columns and Rows.mkv |
27.97MB |
8.5 Adding New Columns.mkv |
36.68MB |
8.6 Exercise Solutions.mkv |
98.84MB |
9.1 DataFrame Methods more II.mkv |
61.10MB |
9.2 The copy method.mkv |
18.85MB |
9.3 Inserting and Popping Columns.mkv |
35.89MB |
9.4 The replace Method.mkv |
32.27MB |
9.5 Finding the Maximum per Group.mkv |
32.95MB |
9.6 Exercise Solutions.mkv |
80.34MB |
aapl_sample.csv |
114B |
airbnb.csv |
859.25KB |
all_colormaps.png |
93.30KB |
all_colors.png |
150.85KB |
amzn_sample.csv |
114B |
arrowstyle.csv |
626B |
average_arrival_delay.csv |
622B |
ballmer.png |
51.67KB |
beer.csv |
3.14MB |
bikes.csv |
7.18MB |
blackhole.png |
41.84KB |
chinook_er.jpg |
77.10KB |
chinook.db |
864.00KB |
clean_movie1.csv |
536B |
clean_movie2.csv |
545B |
college_data_dictionary.csv |
1.00KB |
college.csv |
1.19MB |
colors.csv |
127B |
connectionstyle.csv |
202B |
country_hour_price.csv |
145B |
dataframe_axes.png |
199.97KB |
Data Scientist Challenge.ipynb |
3.92KB |
Data Scientist Challenge Solution.ipynb |
882.16KB |
datetime_dtypes.png |
68.29KB |
dept_race_mean_max_axis1.png |
53.09KB |
dept_race_mean_max_gradient.png |
75.89KB |
dept_race_mean_max.png |
50.37KB |
df_agg_keep_dim.png |
26.75KB |
df_axes_explanation.png |
231.15KB |
df_components.png |
142.08KB |
diamonds_dictionary.csv |
545B |
diamonds.csv |
2.45MB |
doctor_data_model.png |
46.05KB |
doctor_visits.csv |
759B |
double_bracket_selection.png |
18.36KB |
dtypes_summary.png |
45.26KB |
employee_messy1.csv |
94B |
employee_messy2.csv |
405B |
employee_salary_stats.csv |
426B |
employee.csv |
1.46MB |
energy_by_sector.xlsx |
62.65KB |
energy_consumption.csv |
68.68KB |
extra mpl.ipynb |
7.83KB |
fig_ax.png |
22.57KB |
findrc.png |
82.29KB |
flight_status.csv |
1.20KB |
flights_old.csv |
15.85MB |
flights.csv |
3.50MB |
full_covid_data.csv |
208.33KB |
genetic_engineered.xls |
121.50KB |
girl_height.csv |
220B |
group_aggregate.png |
242.31KB |
Grouping with Continuous Variables.ipynb |
725B |
heart_data_dictionary.csv |
659B |
heart.csv |
22.33KB |
housing_data_dictionary.txt |
13.06KB |
housing.csv |
449.88KB |
Impaired_Driving_Death_Rate.csv |
5.41KB |
insurance.csv |
54.32KB |
Introduction to Jupyter Notebooks.pdf |
801.57KB |
Introduction to Jupyter Notebooks.pdf |
2.72MB |
Jupyter Notebooks.rar |
961.50KB |
just_cols.png |
58.83KB |
just_cols2.png |
29.67KB |
just_rows.png |
52.09KB |
just_rows2.png |
20.20KB |
library_data_dictionary.csv |
1.02KB |
library.csv |
1.32MB |
LICENSE |
875B |
LICENSE |
875B |
LICENSE |
881B |
life_expectancy.csv |
239.74KB |
line_options.csv |
1.76KB |
line_styles.csv |
545B |
Master Data Analysis with Python.pdf |
280.27MB |
Master Data Analysis with Python Solutions.pdf |
65.39MB |
matplotlib_measure.png |
296.87KB |
Matplotlib Cheatsheet.ipynb |
324.50KB |
mbk_tidy.csv |
12.58KB |
mdap.mplstyle |
110B |
meetup.csv |
100.76KB |
member_groups.csv |
186.48KB |
member_info.csv |
276.50KB |
mental_health_dd.csv |
1.32KB |
mental_health.csv |
125.89KB |
metrics.csv |
351B |
Mini Web App Finding Similar Members with the Meetup API.ipynb |
481.81KB |
missing_example.csv |
60B |
movie.csv |
1.12MB |
mpl_coordinate_system.png |
95.29KB |
msft_sample.csv |
649B |
msft20.csv |
277.85KB |
my_brothers_keeper.csv |
3.74KB |
nadella.png |
202.96KB |
named_colors.png |
146.58KB |
nba_court.png |
111.36KB |
neurIPS.db |
13.87MB |
new_deaths_tidy.csv |
174.49KB |
new_deaths.csv |
38.89KB |
newsgroups.csv |
731.78KB |
niko.png |
9.48MB |
nikosaved.png |
310.89KB |
nyc_deaths.csv |
24.91KB |
obj_str_cat_dtypes.png |
59.99KB |
offsetalias.png |
115.67KB |
orders.csv |
250.12KB |
pandas_logo.png |
32.24KB |
pandas_number_dtypes.png |
149.07KB |
pandas_numpy_dtypes.png |
68.26KB |
pandas_numpy_other.png |
40.00KB |
pandas_only_dtypes.png |
119.60KB |
Pandas Cheat Sheet.ipynb |
37.92KB |
penelope.png |
213.39KB |
pivot_table_example.png |
27.04KB |
pixel_measure.png |
86.07KB |
planecrashinfo.csv |
2.13MB |
planecrashinfo.csv |
2.08MB |
Project - Testing Normality of Stock Market Returns.ipynb |
13.21KB |
pyplot_dir.png |
98.37KB |
Python Installation.pdf |
1.15MB |
raw_group_agg.png |
253.27KB |
README.pdf |
1.27MB |
Read this first.docx |
19.09KB |
Read this first.docx |
19.23KB |
rollingwindow3.png |
66.34KB |
rows_cols.png |
52.10KB |
rows_cols2.png |
12.83KB |
sample_data.csv |
260B |
sample_data2.csv |
63B |
sample_df.png |
49.52KB |
sample_missing.csv |
225B |
Scrape Diamonds.ipynb |
7.47KB |
series_components.png |
58.55KB |
sf_employee_compensation.csv |
4.55MB |
simple_figure_tight.png |
19.29KB |
simple_figure.png |
13.09KB |
Solutions.ipynb |
41.98KB |
Solutions.ipynb |
345.16KB |
Solutions.ipynb |
154.51KB |
Solutions.ipynb |
128.39KB |
Solutions.ipynb |
58.16KB |
Solutions.ipynb |
376.21KB |
Solutions.ipynb |
1.12MB |
Solutions.ipynb |
142.76KB |
Solutions.ipynb |
1.99MB |
Solutions.ipynb |
989B |
Solutions.ipynb |
549.78KB |
split-apply-combine.png |
317.58KB |
stocks10.csv |
311.47KB |
stocks3.csv |
84.71KB |
store_transactions.csv |
779B |
temp_flow_pressure.csv |
234B |
thread_needle.png |
20.47KB |
titanic_data_dictionary.csv |
385B |
titanic.csv |
59.76KB |
triangles.csv |
954B |
weather.csv |
94.33KB |
weight_loss.csv |
147B |