Data Engineer's Guide to Oracle Machine Learning and GenAI Services : Modern data engineering practices for creating efficient, AI-driven applications at enterprise scale

  • 予約

Data Engineer's Guide to Oracle Machine Learning and GenAI Services : Modern data engineering practices for creating efficient, AI-driven applications at enterprise scale

  • ただいまウェブストアではご注文を受け付けておりません。 ⇒古書を探す
  • 製本 Paperback:紙装版/ペーパーバック版
  • 言語 ENG
  • 商品コード 9781806110797

Full Description

Learn how to build scalable data pipelines, train and deploy ML models, and deliver intelligent applications by leveraging the full power of Oracle's machine learning and GenAI services across cloud and database ecosystems.

Key Features

Apply practical data engineering methods to create intelligent enterprise applications
Master in-database ML, vectors, RAG, and GenAI agents through real-world examples
Learn about the ethics and security implications of AI technology
Purchase of the print or Kindle book includes a free PDF eBook

Book DescriptionIn Data Engineer's Guide to Oracle Machine Learning and Gen AI Services, you'll learn how to tackle the challenges of building scalable, high-performance AI workflows in modern enterprises. Many organizations struggle to turn raw data into actionable insights while maintaining security, compliance, and operational efficiency. This book provides practical, end-to-end guidance for data engineers and architects to design, secure, implement, and optimize ML and GenAI solutions across Oracle Cloud, Oracle Database, and MySQL HeatWave.

Written by multiple Oracle experts with deep experience in Oracle technologies and enterprise data platforms, this book walks you through real-world examples and hands-on workflows—from data preparation and in-database ML to deploying GenAI-powered applications and intelligent agents. You'll gain skills in building pipelines, managing models, leveraging vector search for advanced AI use cases, and integrating AI into business applications with APEX and Oracle Digital Assistant. Advanced topics include scalable model deployment, serverless inference, monitoring, and MLOps best practices.

By the end, you'll be equipped to solve complex data challenges, accelerate AI adoption, and deliver measurable business impact through intelligent, production-ready solutions.What you will learn

Build scalable data pipelines for AI and ML workflows
Prepare and engineer data efficiently for in-database ML
Train, optimize, and deploy ML models across Oracle platforms
Use GenAI and RAG-enabled GenAI agents for intelligent applications
Integrate AI vector search for semantic retrieval and recommendations
Implement ML inside the database, for improved performance and data currency
Enhance business applications with AI using APEX and Oracle Digital Assistant
Apply best practices for MLOps, monitoring, and secure AI workflows

Who this book is forThis book is for data engineers, architects, IT specialists, and data leaders responsible for building, managing, and optimizing enterprise data solutions. If you face challenges in designing secure, scalable pipelines or deploying ML and GenAI applications, this guide provides practical workflows and real-world strategies to accelerate AI adoption.

Contents

Table of Contents

Overview of Oracle's AI and ML Ecosystem
AI Infrastructure on OCI
Tools and Frameworks for Model Development on OCI
Model Deployment, Optimization, and Specialized Services on OCI
Data Preparation and In-Database Model Training
Model Deployment and In-Database Management
Advanced Techniques for Optimizing ML on Oracle Database
Data Preparation and Training on MySQL HeatWave
Model Deployment and Optimization on MySQL HeatWave
An Introduction to GenAI Services
Utilize Oracle AI Services for Machine Learning
Leveraging Oracle Data Science Service for Machine Learning
Building Intelligent Applications with Oracle Digital Assistant
Machine Learning Security, Governance, and Best Practices

最近チェックした商品