Companies Home Search Profile

Google Cloud Certified Professional Machine Learning Engineer

Focused View

Chris Behrens

7:30:35

8 View
  • 001 Course Introduction.mp4
    01:41
  • 001 Study Guide.pdf
  • 002 Machine Learning Scenario.mp4
    04:20
  • 003 What Is Machine Learning.mp4
    12:11
  • 004 Understanding GCPs Machine Learning Products.mp4
    09:14
  • 005 Googles Responsible AI Practices.mp4
    08:26
  • 001 Introduction.mp4
    04:37
  • 002 Translating Business Challenges into Machine Learning Use Cases.mp4
    12:42
  • 003 Exploring GCPs Prepackaged Machine Learning Solutions.mp4
    11:14
  • 006 Defining Machine Learning Problems.mp4
    13:03
  • 007 Defining Business Success Criteria.mp4
    04:07
  • 008 Tracking and Running Machine Learning Experiments.mp4
    04:07
  • 009 Identifying Risks to the Feasibility of Machine Learning Solutions.mp4
    08:48
  • 010 Summary.mp4
    05:23
  • 011 Exam Tips.mp4
    08:33
  • 001 Introduction.mp4
    03:02
  • 002 Matching Machine Learning Services to Their Use Cases.mp4
    12:26
  • 004 Understanding Machine Learning Component Types.mp4
    05:15
  • 005 Demo Removing Sensitive Data with Cloud Data Loss Prevention.mp4
    11:12
  • 006 Exploring and Analyzing Data.mp4
    12:08
  • 008 Automating Orchestrating Serving and Monitoring Machine Learning Projects.mp4
    09:36
  • 009 Choosing Google Cloud Hardware Components.mp4
    08:16
  • 010 Demo Using GPU and TPU Hardware to Accelerate Machine Learning Pipelines.mp4
    08:47
  • 011 Designing Architecture in Compliance with Security Concerns.mp4
    08:25
  • 011 De-identifying sensitive data.txt
  • 012 Summary.mp4
    03:55
  • 013 Exam Tips.mp4
    05:17
  • 001 Introduction.mp4
    01:29
  • 002 Understanding Data Preparation and Processing.mp4
    12:15
  • 003 Exploring Data with Exploratory Data Analysis (EDA).mp4
    10:43
  • 004 Demo Prototyping Machine Learning Models with Vertex AI Workbench.mp4
    12:24
  • 005 Building Artificial Intelligence Solutions with Machine Learning APIs.mp4
    05:46
  • 006 Demo Using Document AI to Process Documents at Scale.mp4
    05:40
  • 007 Collaborative Model Prototyping Using Jupyter Notebooks.mp4
    05:39
  • 008 Building Data Pipelines.mp4
    06:55
  • 010 Feature Engineering.mp4
    13:37
  • 011 Demo Creating and Consolidating Features with Vertex AI Feature Store.mp4
    06:54
  • 012 Summary.mp4
    04:18
  • 013 Exam Tips.mp4
    03:33
  • 001 Introduction.mp4
    01:34
  • 002 Overview of Building Models.mp4
    09:34
  • 003 Training Models.mp4
    07:47
  • 004 Demo Creating and Serving a Machine Learning Model Using Vertex AI and AutoML.mp4
    08:04
  • 005 Testing Models.mp4
    07:52
  • 006 Demo Building a Machine Learning Model with BigQuery ML.mp4
    13:15
  • 008 Demo Creating a Distributed Vertex AI Job.mp4
    07:14
  • 009 Scaling Model Training and Serving.mp4
    05:18
  • 010 Demo Tuning Hyperparameters.mp4
    08:51
  • 011 Summary.mp4
    06:10
  • 012 Exam Tips.mp4
    03:38
  • 001 Introduction.mp4
    01:27
  • 002 Designing and Implementing Training Pipelines.mp4
    09:13
  • 003 Implementing Serving Pipelines.mp4
    09:20
  • 005 Tracking and Auditing Metadata.mp4
    06:32
  • 006 Demo Automating Model Training.mp4
    06:29
  • 007 Summary.mp4
    02:37
  • 008 Exam Tips.mp4
    03:34
  • 001 Introduction.mp4
    02:22
  • 002 Monitoring and Troubleshooting Machine Learning Solutions.mp4
    11:01
  • 003 Tuning the Performance of Machine Learning Solutions for Training and Serving in Production.mp4
    06:24
  • 004 Summary.mp4
    02:20
  • 005 Exam Tips.mp4
    03:40
  • 001 Preparing for the Exam.mp4
    10:27
  • 001 Course Summary.mp4
    04:12
  • 002 Conclusion and Whats Next.mp4
    05:42
  • Description


    This course will teach you everything you need to know to pass the Google Cloud Certified Professional Machine Learning Engineer exam. You will also gain the skills to develop practical Machine Learning solutions on Google Cloud.

    What You'll Learn?


      In this course, Google Cloud Certified Professional Machine Learning Engineer, you’ll learn to develop, manage, maintain and utilize Google Cloud machine learning tools and workflows, and gain the knowledge needed to pass the Google Cloud Certified Professional Machine Learning Engineer exam. First, you’ll learn how to Frame Machine Learning Problems. You’ll have the skills necessary to choose the best ML solution for a task, to define ML problems, to understand ML success criteria, and identify risks to feasibility of ML solutions. Next, you’ll gain the skills needed to Architect ML solutions. You’ll be able to design effective ML solutions, choose hardware components, and design security compliant architecture. After that, you’ll learn how to design data preparation and processing systems. This will give you the skills to explore data with statistics and visualizations, build data pipelines, and engineer features. Following that, you’ll discover ML Model Development. You’ll learn to build models, train models, test models and scale them. With the knowledge you gain in the above sections, you’ll be ready to learn how to automate and orchestrate ML pipelines. This includes designing training pipelines, impleming serving pipelines, and tracking and auditing metadata. Finally, you’ll learn to optimize, monitor and maintain ML solutions. You’ll learn to monitor and troubleshoot ML solutions,as well as tune them to attain optimum effectiveness. When you’re finished with this course, you’ll have the skills and knowledge of Machine Learning on GCP needed to pass the GCP Professional ML Engineer Exam and to engage in meaningful ML development on GCP in the real world.

    More details


    User Reviews
    Rating
    0
    0
    0
    0
    0
    average 0
    Total votes0
    Focused display
    Chris Behrens
    Chris Behrens
    Instructor's Courses
    A Cloud Guru is an online training platform for people interested in Information Technology. Most of the courses offered prepare students to take certification exams for the three major cloud providers.
    • language english
    • Training sessions 63
    • duration 7:30:35
    • English subtitles has
    • Release Date 2024/02/02