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Ultimate Google Professional Machine Learning Engineer Exam Guide

Ultimate Google Professional Machine Learning Engineer Exam Guide

SKU:9788169646024

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ISBN: 9788169646024
eISBN: 9788169646031
Rights: Worldwide
Author Name: Orange AVA
Publishing Date: 10-June-2026
Dimension: 8.5*11 Inches
Binding: Paperback
Page Count: 414

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Description

Pass the Exam. Master the Platform. Lead the Future of AI on Google Cloud.

Key Features

● Get a free one-month digital subscription to www.avaskillshelf.com
● Comprehensive coverage of every Google Cloud Professional ML Engineer exam domain with practical depth and real-world context.
● End-to-end MLOps pipeline engineering using Vertex AI, BigQuery ML, and Dataflow for production-ready AI solutions.
● Rigorous mock exams and exam strategies designed to build confidence and ensure certification success.

Book Description
ertification Is the Beginning. Production-Ready AI Expertise Is the Real Goal.

The Google Cloud Professional Machine Learning Engineer certification is one of the most sought-after credentials in AI and data engineering. Ultimate Google Professional Machine Learning Engineer Exam Guide provides a structured, end-to-end preparation path from foundational GCP and ML concepts through advanced production architectures, using the Vertex AI platform as the central thread throughout.

You will explore the complete machine learning lifecycle covering data ingestion, distributed training, model deployment and monitoring using Vertex AI Pipelines, BigQuery ML, and Dataflow. The book addresses fine-tuning foundation models, implementing Retrieval Augmented Generation(RAG) for generative AI applications, and scaling custom training using GPUs as well as distributed strategies, grounding every concept in industry-aligned case studies and practical implementation scenarios.

The final section covers Responsible AI, including fairness, bias mitigation, model explainability, and security risks, with rigorous mock exams and proven exam strategies. Thus, by the end of the book, you will have the technical depth and practical confidence to pass the Professional ML Engineer certification and lead production AI initiatives on Google Cloud.

What you will learn
● Design and orchestrate end-to-end MLOps pipelines using Vertex AI for production AI delivery.
● Scale custom model training using distributed strategies, GPUs, and cloud-native infrastructure.
● Implement Responsible AI practices covering fairness, bias mitigation, and model explainability.
● Deploy machine learning models to online endpoints, batch pipelines, and edge devices.
● Solve real-world data engineering challenges using BigQuery ML, Dataflow, and Vertex AI Pipelines.
● Apply proven exam strategies to pass the Google Professional ML Engineer certification with confidence.

Table of Contents

1. Introduction to GCP and ML
2. Data Engineering and Preparation for Machine Learning
3. Prototyping, Experimentation, and Collaboration
4. Vertex AI Custom Model Training and Scaling
5. Leveraging Pre-Built Models, AutoML, and Low-Code AI Solutions
6. Specialized Machine Learning Techniques and Responsible AI
7. Model Deployment, Serving, and Scaling
8. MLOps: Automating and Orchestrating Machine Learning Pipelines
9. Model Monitoring, Maintenance, and Governance
10. Practice Questions and Mock Exams
11. Exam Strategies and Tips
Index

About Author & Technical Reviewer

Amit Kumar Singh is a Generative AI Specialist and AI Architect with over seven years of experience building scalable, production-ready AI solutions. Currently working at Google, he specializes in Large Language Models (LLMs), cloud-native AI systems, and intelligent architectures that bridge advanced research with real-world business impact.

His expertise spans Generative AI, Agentic AI, cloud architecture, MLOps, DevOps, and Infrastructure as Code across Google Cloud Platform, AWS, and Microsoft Azure. Amit is also skilled in Python development, Docker, Kubernetes, Terraform, and CloudFormation, enabling him to design resilient, automated, and scalable AI environments.


Focused on next-generation AI ecosystems, Amit works extensively with Agents-to-Agents (A2A) integrations and Model Context Protocol (MCP) strategies to create future-ready intelligent systems. As an author, reviewer, and technology mentor, Amit actively helps professionals and organizations adopt AI responsibly and effectively to drive meaningful innovation and business value.


Diksha Chakravarty
is a Machine Learning Engineer and Solution Strategist specializing in Artificial Intelligence, Machine Learning, deep learning, natural language processing, computer vision, and generative AI. A gold medallist in Computer Science and Engineering with a specialization in AI and ML, she is passionate about building intelligent, scalable, and responsible systems that solve real-world problems with measurable impact.

Her experience spans LLM-powered applications, predictive modeling, multimodal AI systems, synthetic data generation, and robust AI pipelines across healthcare, education, and business analytics. Diksha has collaborated with startups and global organizations in both research and product-driven environments, combining technical depth with practical execution.

A Google-certified Professional, Machine Learning Engineer, and Associate Cloud Engineer, she is also an active contributor to the AI community through research, mentoring, technical writing, and national-level hackathons.