Practical Java Machine Learning
Projects with Google Cloud Platform and Amazon Web Services
Paperback Engels 2018 1e druk 9781484239506Samenvatting
Build machine learning (ML) solutions for Java development. This book shows you that when designing ML apps, data is the key driver and must be considered throughout all phases of the project life cycle. Practical Java Machine Learning helps you understand the importance of data and how to organize it for use within your ML project. You will be introduced to tools which can help you identify and manage your data including JSON, visualization, NoSQL databases, and cloud platforms including Google Cloud Platform and Amazon Web Services.
Practical Java Machine Learning includes multiple projects, with particular focus on the Android mobile platform and features such as sensors, camera, and connectivity, each of which produce data that can power unique machine learning solutions.
You will learn to build a variety of applications that demonstrate the capabilities of the Google Cloud Platform machine learning API, including data visualization for Java; document classification using the Weka ML environment; audio file classification for Android using ML with spectrogram voice data; and machine learning using device sensor data.
After reading this book, you will come away with case study examples and projects that you can take away as templates for re-use and exploration for your own machine learning programming projects with Java.
What You Will Learn
- Identify, organize, and architect the data required for ML projects
- Deploy ML solutions in conjunction with cloud providers such as Google and Amazon
- Determine which algorithm is the most appropriate for a specific ML problem
- Implement Java ML solutions on Android mobile devices
- Create Java ML solutions to work with sensor data
- Build Java streaming based solutions
Who This Book Is For
Experienced Java developers who have not implemented machine learning techniques before.
Specificaties
Lezersrecensies
Inhoudsopgave
IDE Setup - Android Studio
Java Setup
Machine Learning Performance with Java
Importance of Analytics Initiatives
Corporate ML Objectives
Business Case for Deploying ML Machine Learning Concerns
Developing an ML Methodology
State of the Art: Monitoring Research Papers
2. Data: The Fuel for Machine Learning
Think Like a Data Scientist
Data Pre-Processing
JSON and NoSQL Databases
ARFF and CSV Files
Finding Public Data
Creating your Own Data
Data Visualization with Java + Javascript
Project: DataViz
3. Leveraging Cloud Platforms
Google Cloud Platform
Amazon AWS
Using Machine Learning API's
Project: GCP API
Leveraging Cloud Platforms to Create Models
4. Algorithms: The Brains of Machine Learning
Overview of Algorithms
Supervised Learning
Unsupervised Learning
Linear Models for Prediction and Classification
Naive Bayes for Document Classification
Clustering Decision Trees
Choosing the Right Algorithm
Creating Your Competitve Advantage
5. Java Machine Learning Environments
Overview Choosing a Java Environment
Deep dive: The Weka Workbench
Weka Capabilities
Weka Add-ons
Rapidminer Overview
Project: Document Classification with Weka
6. Integrating Models
Rubrieken
- advisering
- algemeen management
- coaching en trainen
- communicatie en media
- economie
- financieel management
- inkoop en logistiek
- internet en social media
- it-management / ict
- juridisch
- leiderschap
- marketing
- mens en maatschappij
- non-profit
- ondernemen
- organisatiekunde
- personal finance
- personeelsmanagement
- persoonlijke effectiviteit
- projectmanagement
- psychologie
- reclame en verkoop
- strategisch management
- verandermanagement
- werk en loopbaan