mGalarnyk / Python_tutorials
Licence: mit
Python tutorials in both Jupyter Notebook and youtube format.
Stars: ✭ 813
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Python Tutorials
Useful Python Tutorials. Feel free to submit a pull request. Also please subscribe to my youtube channel!
Apis
What is it? | Blog Post/Jupyter Notebook | Youtube Video |
---|---|---|
Fitbit API Tutorial | Blog Post | None |
Twitter API Tutorial | Blog Post | None |
Basics
Finance
What is it? | Blog Post/IPython Notebook | Youtube Video |
---|---|---|
Understanding Car Loans with Python | Understanding Car Loans with Python | Coming Soon |
Pandas
Domain | Blog Post/IPython Notebook | Youtube Video |
---|---|---|
Boxplots using Matplotlib, Pandas, and Seaborn Libraries | Understanding Boxplots | Youtube Video |
Heatmaps Part 1 | Heatmaps Part 1 | Youtube Video |
Heatmaps Part 2 | Heatmaps Part 2 | Youtube Video |
How to Speed Up Pandas with Modin | How to Speed Up Pandas with Modin | None |
Time Series Part 1 | Time Series Data Basics with Pandas Part 1 | Youtube Video |
Time Series Part 2 | Time Series Data Basics with Pandas Part 2 | Youtube Video |
Scrapy
What is it? | Blog Post | Youtube Video |
---|---|---|
Scraping Fundrazr (GoFundMe/Kickstarter like Website) | Step by Step Instructions | Scraping a Crowdfunding Website |
Sklearn
What is it? | Blog Post/IPython Notebook | Youtube Video |
---|---|---|
How to Speed up Scikit-Learn Model Training | How to Speed up Scikit-Learn Model Training | None |
Introduction to Scikit-Learn | GitHub Repository | Introduction to Scikit-Learn |
Linear Regression | Linear Regression Python (sklearn, numpy, pandas) | Linear Regression |
Logistic Regression | Digits / MNIST | Logistic Regression using Python (Sklearn, NumPy, Handwriting Recognition, Matplotlib) |
k-Nearest Neighbors | Soon | Soon |
Principal Component Analysis | Data Visualization / Speed-up Machine Learning Algorithms | PCA using Python |
Decision Trees (Classification) | Decision Trees (Classification) | None |
Random Forest | None | None |
Visualizing Decision Trees with Python (Scikit-learn, Graphviz, Matplotlib) | Visualizing Decision Trees | None |
Spark (Python)
Tutorial | IPython Notebook | Youtube Video |
---|---|---|
Word Count | Word Count using PySpark | Word Count using PySpark |
Statistics
What is it? | Blog Post/Jupyter Notebook | Youtube Video |
---|---|---|
68-95-99.7 rule for a Normal Distribution | Blog Post/Jupyter Notebook | Coming Soon |
Understanding Boxplots | Blog Post | Coming Soon |
Confidence Intervals | Coming Soon | Coming Soon |
Other Python Resources
What is it? | Repo/Website | Youtube Video |
---|---|---|
Course | Python for Data Visualization LinkedIn Learning | Free Preview Video |
Installations (Anaconda, Spark Etc) | General Installations | See the link for more installations. |
Course | Python for Informatics | None |
Contributors
FirstName | LastName |
---|---|
Michael | Galarnyk |
Submit | Pull Request |
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