Book Image

Interactive Dashboards and Data Apps with Plotly and Dash

By : Elias Dabbas
Book Image

Interactive Dashboards and Data Apps with Plotly and Dash

By: Elias Dabbas

Overview of this book

Plotly's Dash framework is a life-saver for Python developers who want to develop complete data apps and interactive dashboards without JavaScript, but you'll need to have the right guide to make sure you’re getting the most of it. With the help of this book, you'll be able to explore the functionalities of Dash for visualizing data in different ways. Interactive Dashboards and Data Apps with Plotly and Dash will first give you an overview of the Dash ecosystem, its main packages, and the third-party packages crucial for structuring and building different parts of your apps. You'll learn how to create a basic Dash app and add different features to it. Next, you’ll integrate controls such as dropdowns, checkboxes, sliders, date pickers, and more in the app and then link them to charts and other outputs. Depending on the data you are visualizing, you'll also add several types of charts, including scatter plots, line plots, bar charts, histograms, and maps, as well as explore the options available for customizing them. By the end of this book, you'll have developed the skills you need to create and deploy an interactive dashboard, handle complexities and code refactoring, and understand the process of improving your application.
Table of Contents (18 chapters)
1
Section 1: Building a Dash App
6
Section 2: Adding Functionality to Your App with Real Data
11
Section 3: Taking Your App to the Next Level

Summary

We first got an idea of how clustering works. We built the simplest possible model for a tiny dataset. We ran the model a few times and evaluated the performance and outcomes for each of the numbers of clusters that we chose.

We then explored the elbow technique to evaluate different clusters and saw how we might discover the point of diminishing returns, where not much improvement is achieved by adding new clusters. With that knowledge, we used the same technique for clustering countries by a metric with which most of us are familiar and got firsthand experience in how it might work on real data.

After that, we planned an interactive KMeans app and explored two techniques for preparing data before running our model. We mainly explored imputing missing values and scaling data.

This gave us enough knowledge to get our data in a suitable format for us to create our interactive app, which we did at the end of the chapter.

We next explored advanced features of Dash...