Google Professional Machine Learning Engineer Exam Preparation

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Google Professional Machine Learning Engineer Exam Preparation

The Google Professional Machine Learning Engineer Exam Preparation course is designed to help data professionals and aspiring candidates gain the knowledge required to pass the Google Professional Machine Learning Engineer certification exam. This course covers essential machine learning concepts, cloud-based implementations, and best practices on Google Cloud Platform.

Course Overview

This Google Professional Machine Learning Engineer Exam Preparation course provides hands-on learning and expert guidance on the tools and frameworks used to develop, deploy, and maintain machine learning models on Google Cloud. Whether you are preparing for the exam or aiming to enhance your cloud-based ML skills, this training will provide structured learning and real-world applications.

Target Audience

  • Data professionals working with machine learning and cloud computing
  • Individuals preparing for the Google Professional Machine Learning Engineer Exam
  • Software engineers and AI enthusiasts looking to expand their knowledge of Google Cloud ML tools

Pre-requisites

  • Basic understanding of cloud computing concepts
  • Experience writing Python code for data analysis and ML applications

Course Duration

2 Days (14 Hours)

 

Course Content

Introduction to Google Cloud Platform

The Google Cloud Platform (GCP) provides a suite of cloud computing services that support machine learning, data storage, and AI-driven applications. In this module, you will learn how to leverage GCP’s machine learning capabilities to build scalable and efficient AI models.

Getting Started with Deep Learning

  • Introduction to Machine Learning: Understand core ML concepts, including supervised and unsupervised learning, and how they apply to cloud-based solutions.

Introduction to Google AI Platform

Learn how to build, train, and deploy machine learning models using Google Cloud AI tools.

Building Convolutional Neural Networks on Google Cloud

Explore CNN architecture, applications in image processing, and deployment on Google Cloud.

Advanced Deep Learning Techniques

  • Recurrent Neural Networks: Develop an understanding of sequential data processing using RNNs and LSTMs.
  • Improving Model Performance: Learn techniques to optimize deep learning models, including hyperparameter tuning and regularization.

Data Security and Compliance

  • Inspecting and De-Identifying Data with Google Cloud Data Loss Prevention: Understand data privacy and protection mechanisms for handling sensitive information in ML projects.

Big Data and Analytics on Google Cloud

  • Introduction to Google BigQuery: Learn how to structure, analyze, and query large datasets using Google BigQuery.
  • BigQuery ML and Data Visualization: Use BigQuery ML for machine learning insights and visualize trends using Google Data Studio.

Data Pipelines and Processing

  • Introduction to Google Cloud Dataflow: Build scalable and efficient data processing pipelines for ML applications.

Exam Preparation and Recommended Resources

  • Preview Exam: Google Professional Machine Learning Engineer: Take a mock exam to assess your readiness for the certification.
  • Recommended Reading: Explore official documentation, whitepapers, and case studies to reinforce learning.

Conclusion

This Google Professional Machine Learning Engineer Exam Preparation course equips you with essential ML concepts, cloud tools, and best practices on Google Cloud. Whether you’re pursuing certification or enhancing your AI expertise, this training ensures you’re ready for real-world applications and exam success. Start your journey toward becoming a certified ML Engineer today

Course Customization Options

To request a customized training for this course, please contact us to arrange.

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