Book Image

Hands-On Big Data Modeling

By : James Lee, Tao Wei, Suresh Kumar Mukhiya
Book Image

Hands-On Big Data Modeling

By: James Lee, Tao Wei, Suresh Kumar Mukhiya

Overview of this book

Modeling and managing data is a central focus of all big data projects. In fact, a database is considered to be effective only if you have a logical and sophisticated data model. This book will help you develop practical skills in modeling your own big data projects and improve the performance of analytical queries for your specific business requirements. To start with, you’ll get a quick introduction to big data and understand the different data modeling and data management platforms for big data. Then you’ll work with structured and semi-structured data with the help of real-life examples. Once you’ve got to grips with the basics, you’ll use the SQL Developer Data Modeler to create your own data models containing different file types such as CSV, XML, and JSON. You’ll also learn to create graph data models and explore data modeling with streaming data using real-world datasets. By the end of this book, you’ll be able to design and develop efficient data models for varying data sizes easily and efficiently.
Table of Contents (17 chapters)

Predicting Bitcoin price using Recurrent Neural Network

In this section, we are going to use the same dataset and apply Recurrent Neural Network (RNN) to predict the Bitcoin price. Create a new notebook in your Jupyter iPython.

Importing packages

We are going to import libraries as we go:

import numpy as np 
import pandas as pd 
from matplotlib import pyplot as plt

Importing datasets

We can import the datasets using the read_csv function provided by pandas:

dframe = pd.read_csv('bitcoin.csv')

Figure 12.2 shows how the dataset looks. We are using the same dataset...