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A Case Study Approach to Successful Data Science Projects Using Python, Pandas, and Scikit-Learn

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Data Science Projects with Python

Data Science Projects with Python is designed to give you practical guidance on industry-standard data analysis and machine learning tools in Python, with the help of realistic data. The course will help you understand how you can use pandas and Matplotlib to critically examine a dataset with summary statistics and graphs, and extract the insights you seek to derive. You will continue to build on your knowledge as you learn how to prepare data and feed it to machine learning algorithms, such as regularized logistic regression and random forest, using the scikit-learn package. You’ll discover how to tune the algorithms to provide the best predictions on new and, unseen data. As you delve into later chapters, you’ll be able to understand the working and output of these algorithms and gain insight into not only the predictive capabilities of the models but also their reasons for making these predictions.

Data Science Projects with Python by Stephen Klosterman

What you will learn

  • Install the required packages to set up a data science coding environment
  • Load data into a Jupyter notebook running Python
  • Use Matplotlib to create data visualizations
  • Fit a model using scikit-learn
  • Use lasso and ridge regression to regularize the model
  • Fit and tune a random forest model and compare performance with logistic regression
  • Create visuals using the output of the Jupyter notebook
  • Use k-fold cross-validation to select the best combination of hyperparameters

Hardware requirements

For an optimal student experience, we recommend the following hardware configuration:

  • Processor: Intel Core i5 or equivalent
  • Memory: 4 GB RAM or higher
  • Storage: 35 Gb or higher

Software requirements

  • OS: Windows 7 SP1 64-bit, Windows 8.1 64-bit or Windows 10 64-bit, Ubuntu Linux, or the latest version of OS X
  • Browser: Google Chrome/Mozilla Firefox Latest Version
  • Notepad++/Sublime Text as IDE (Optional, as you can practice everything using Jupyter notecourse on your browser)
  • Python 3.4+ (latest is recommended) installed (from https://python.org)
  • Python libraries as needed (Jupyter, Numpy, Pandas, Matplotlib, BeautifulSoup4, and so on)

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A Case Study Approach to Successful Data Science Projects Using Python, Pandas, and Scikit-Learn

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