Google Cloud Professional Machine Learning Engineer (PMLE)
Practice exam for the Google Professional Machine Learning Engineer certification. Covers architecting low-code AI solutions, managing data and models, scaling ML prototypes, serving and scaling models, automating ML pipelines, and monitoring AI solutions.
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Sample Questions — Google Cloud Professional Machine Learning Engineer (PMLE)
5 free sample questions from this practice exam. Correct answers are highlighted.
1. A data analyst at a retail company wants to predict future sales using historical transaction data stored in BigQuery. They need a model that handles seasonality and trend decomposition without writing custom ML code. Which BigQuery ML model type should they use?
2. A machine learning engineer needs to build a customer churn prediction model using data already in BigQuery. The target variable is binary (churned or not churned). Which BigQuery ML model type is most appropriate?
3. A machine learning engineer has trained a BigQuery ML model and wants to evaluate its performance using metrics such as precision, recall, and F1 score. Which BigQuery ML function should they use?
4. A company wants to build a product recommendation engine for their e-commerce platform. The data consists of user-item interaction ratings stored in BigQuery. They want to use a collaborative filtering approach without writing custom code. Which BigQuery ML model type should they use?
5. A machine learning engineer needs to generate text embeddings from customer reviews stored in BigQuery to use in a downstream similarity search. They want to use a foundation model without leaving the BigQuery environment. Which approach should they use?
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Study Guides & Articles
How to Pass Google Cloud PMLE in 30 Days: 2026 Roadmap
A focused 30-day study plan for the Google Cloud Professional Machine Learning Engineer exam. Covers Vertex AI, MLOps pipelines, feature engineering, and responsible AI with a clear domain-by-domain schedule.
Google Cloud PMLE: Vertex AI, Feature Store & MLOps Pipeline Deep Dive
Master the Vertex AI ecosystem and MLOps patterns that dominate the PMLE exam. This deep dive covers Feature Store architecture, Vertex AI Pipelines, model serving strategies, and CI/CD for machine learning.
Google Cloud PMLE Exam Traps: Model Drift, Serving & Responsible AI
The PMLE exam is full of subtle traps around model monitoring, serving strategies, and responsible AI. This guide exposes the most common wrong-answer patterns and teaches you to think like the exam writers.
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