Ultimate Java for Data Analytics and Machine Learning Ultimate Java for Data Analytics and Machine Learning

Ultimate Java for Data Analytics and Machine Learning

    • USD 28.99
    • USD 28.99

Descripción editorial

Empower Your Data Insights with Java's Top Tools and Frameworks.

Key Features

● Explore diverse techniques and algorithms for data analytics using Java.

● Learn through hands-on examples and practical applications in each chapter.

● Master essential tools and frameworks such as JFreeChart for data visualization and Deeplearning4j for deep learning.

Book Description

This book is a comprehensive guide to data analysis using Java. It starts with the fundamentals, covering the purpose of data analysis, different data types and structures, and how to pre-process datasets. It then introduces popular Java libraries like WEKA and Rapidminer for efficient data analysis.

The middle section of the book dives deeper into statistical techniques like descriptive analysis and random sampling, along with practical skills in working with relational databases (JDBC, SQL, MySQL) and NoSQL databases. It also explores various analysis methods like regression, classification, and clustering, along with applications in business intelligence and time series prediction.

The final part of the book gives a brief overview of big data analysis with Java frameworks like MapReduce, and introduces deep learning with the Deeplearning4J library. Whether you're new to data analysis or want to improve your Java skills, this book offers a step-by-step approach with real-world examples to help you master data analysis using Java.

What you will learn

● Understand foundational principles and types of data analytics, including descriptive, diagnostic, predictive, and prescriptive analytics.

● Master techniques for preprocessing data, including cleaning and munging, to prepare it for analysis.

● Learn how to create various charts and plots including bar charts, histograms, and scatter plots for effective data visualization.

● Explore Java-based libraries such as WEKA and Deeplearning4j for implementing machine learning algorithms.

● Develop expertise in statistical techniques including hypothesis testing, regression (linear and polynomial), and probability distributions.

● Acquire practical skills in SQL querying and JDBC for relational databases.

● Explore applications in business intelligence and deep learning, including image recognition and natural language processing.

Table of Contents

1. Data Analytics Using Java

2. Datasets

3. Data Visualization

4. Java Machine Learning Libraries

5. Statistical Analysis

6. Relational Databases

7. Regression Analysis

8. Classification Analysis

9. Sentiment Analysis

10. Cluster Analysis

11. Working with NoSQL Databases

12. Recommender Systems

13. Applications of Data Analysis

14. Big Data Analysis with Java

15. Deep Learning with Java
Index

GÉNERO
Informática e Internet
PUBLICADO
2024
8 de agosto
IDIOMA
EN
Inglés
EXTENSIÓN
362
Páginas
EDITORIAL
Orange Education Pvt Ltd
VENDEDOR
Ingram DV LLC
TAMAÑO
81
MB
Climate Resilience: Impact of Quantum Computing and Artificial Intelligence on Urban Planning Climate Resilience: Impact of Quantum Computing and Artificial Intelligence on Urban Planning
2025
Blockchain and Federated Learning Synergy for Privacy-Focused DeepFex Solutions Blockchain and Federated Learning Synergy for Privacy-Focused DeepFex Solutions
2025
Quantum Protocols in Blockchain Security Quantum Protocols in Blockchain Security
2025
IoT Potential for Green Energy Solutions IoT Potential for Green Energy Solutions
2025
Dynamic Soil Properties and Liquefaction Dynamic Soil Properties and Liquefaction
2025
Blockchain in the Tourism Industry: A New Era of Secure and Transparent Travel Solutions Blockchain in the Tourism Industry: A New Era of Secure and Transparent Travel Solutions
2025