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Applying Math with Python

You're reading from   Applying Math with Python Practical recipes for solving computational math problems using Python programming and its libraries

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Product type Paperback
Published in Jul 2020
Publisher Packt
ISBN-13 9781838989750
Length 358 pages
Edition 1st Edition
Languages
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Authors (2):
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Sam Morley Sam Morley
Author Profile Icon Sam Morley
Sam Morley
Sam Morley Sam Morley
Author Profile Icon Sam Morley
Sam Morley
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Table of Contents (12) Chapters Close

Preface 1. Basic Packages, Functions, and Concepts 2. Mathematical Plotting with Matplotlib FREE CHAPTER 3. Calculus and Differential Equations 4. Working with Randomness and Probability 5. Working with Trees and Networks 6. Working with Data and Statistics 7. Regression and Forecasting 8. Geometric Problems 9. Finding Optimal Solutions 10. Miscellaneous Topics 11. Other Books You May Enjoy

Loading and storing data from a DataFrame

It is fairly unusual to create a DataFrame object from the raw data in a Python session. In practice, the data will often come from an external source, such as an existing spreadsheet or CSV file, database, or API endpoint. For this reason, pandas provides numerous utilities for loading and storing data to file. Out of the box, pandas supports loading and storing data from CSV, Excel (xls or xlsx), JSON, SQL, Parquet, and Google BigQuery. This makes it very easy to import your data into pandas and then manipulate and analyze this data using Python.

In this recipe, we will see how to load and store data into a CSV file. The instructions will be similar for loading and storing data to other file formats.

Getting ready

For this recipe, we will need to import the pandas package under the pdalias and the NumPy library as np, and we create a default random number generator from NumPy using the following commands:

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