-
Book Overview & Buying
-
Table Of Contents
Exploratory Data Analysis with Python Cookbook
By :
Sometimes, while analyzing large amounts of data, we may need to gain insights from the data very quickly. The insights typically gained could then form the basis for a detailed and in-depth analysis. Automated Exploratory Data Analysis (EDA) helps us to achieve this easily. Automated EDA automatically analyzes and visualizes data to extract trends, patterns, and insights with just a few lines of code. Automated EDA libraries typically carry out the cleaning, visualization, and statistical analysis of data in a quick and efficient way. These tasks would be difficult or time-consuming if they were performed manually.
Automated EDA is especially useful when dealing with complex or high-dimensional data, as finding relevant features can often be a daunting task. It is also helpful in reducing potential bias, especially in selecting the specific features to analyze in a large dataset.
In this chapter, we will cover Automated...