Book Image

Building Data-Driven Applications with Danfo.js

By : Rising Odegua, Stephen Oni
Book Image

Building Data-Driven Applications with Danfo.js

By: Rising Odegua, Stephen Oni

Overview of this book

Most data analysts use Python and pandas for data processing for the convenience and performance these libraries provide. However, JavaScript developers have always wanted to use machine learning in the browser as well. This book focuses on how Danfo.js brings data processing, analysis, and ML tools to JavaScript developers and how to make the most of this library to build data-driven applications. Starting with an overview of modern JavaScript, you’ll cover data analysis and transformation with Danfo.js and Dnotebook. The book then shows you how to load different datasets, combine and analyze them by performing operations such as handling missing values and string manipulations. You’ll also get to grips with data plotting, visualization, aggregation, and group operations by combining Danfo.js with Plotly. As you advance, you’ll create a no-code data analysis and handling system and create-react-app, react-table, react-chart, Draggable.js, and tailwindcss, and understand how to use TensorFlow.js and Danfo.js to build a recommendation system. Finally, you’ll build a Twitter analytics dashboard powered by Danfo.js, Next.js, node-nlp, and Twit.js. By the end of this app development book, you’ll be able to build and embed data analytics, visualization, and ML capabilities into any JavaScript app in server-side Node.js or the browser.
Table of Contents (18 chapters)
1
Section 1: The Basics
3
Section 2: Data Analysis and Manipulation with Danfo.js and Dnotebook
10
Section 3: Building Data-Driven Applications

Summary

In this chapter, we went through why Danfo.js is needed, then looked into what Series and DataFrames actually are. We also discussed some of the essential functionality available in Danfo.js and implemented it in DataFrames and Series.

We also saw how we can use DataFrames and Series methods to handle and preprocess data. We saw how to filter a DataFrame based on column values. We also sorted a DataFrame by row index and column values. This chapter equips us to perform day-to-day data operations such as reading files in different formats, converting formats, and saving DataFrames after preprocessing into a desirable file format.

In the next chapter, we will look into data analysis, wrangling, and transformation. We will discuss data handling and preprocessing further and see how to handle missing numbers and how to deal with string and time series data.