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The Pandas Workshop

You're reading from  The Pandas Workshop

Product type Book
Published in Jun 2022
Publisher Packt
ISBN-13 9781800208933
Pages 744 pages
Edition 1st Edition
Languages
Authors (4):
Blaine Bateman Blaine Bateman
Profile icon Blaine Bateman
Saikat Basak Saikat Basak
Profile icon Saikat Basak
Thomas V. Joseph Thomas V. Joseph
Profile icon Thomas V. Joseph
William So William So
Profile icon William So
View More author details

Table of Contents (21) Chapters

Preface Part 1 – Introduction to pandas
Chapter 1: Introduction to pandas Chapter 2: Working with Data Structures Chapter 3: Data I/O Chapter 4: Pandas Data Types Part 2 – Working with Data
Chapter 5: Data Selection – DataFrames Chapter 6: Data Selection – Series Chapter 7: Data Exploration and Transformation Chapter 8: Understanding Data Visualization Part 3 – Data Modeling
Chapter 9: Data Modeling – Preprocessing Chapter 10: Data Modeling – Modeling Basics Chapter 11: Data Modeling – Regression Modeling Part 4 – Additional Use Cases for pandas
Chapter 12: Using Time in pandas Chapter 13: Exploring Time Series Chapter 14: Applying pandas Data Processing for Case Studies Chapter 15: Appendix Other Books You May Enjoy

Solution 11.1

As part of a research effort to improve metallic-oxide semiconductor sensors for the toxic gas CO (carbon monoxide), you are asked to investigate models of the sensor response for an array of sensors. You will review the data, perform some feature engineering for non-linear features, and then compare a baseline linear regression approach to a random forest model.

Perform the following steps to complete the activity:

  1. For this exercise, you will need the pandas and numpy libraries, and three modules from sklearn, matplotlib, and seaborn. Load them in the first cell of the notebook:
    import pandas as pd
    import numpy as np
    from sklearn.linear_model import LinearRegression as OLS
    from sklearn.ensemble import RandomForestRegressor
    from sklearn.preprocessing import StandardScaler
    import matplotlib.pyplot as plt
    import seaborn as sns
  2. As we have done before, create a utility function to plot a grid of histograms given the data, which variables to plot, the rows and...
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