Skip to main content

Mastering Google BigQuery; Advanced Data Analysis and Visualization Techniques

$299.00
When you get access:
Course access is prepared after purchase and delivered via email
How you learn:
Self-paced • Lifetime updates
Your guarantee:
30-day money-back guarantee — no questions asked
Who trusts this:
Trusted by professionals in 160+ countries
Toolkit Included:
Includes a practical, ready-to-use toolkit with implementation templates, worksheets, checklists, and decision-support materials so you can apply what you learn immediately - no additional setup required.
Adding to cart… The item has been added

Mastering Google BigQuery: Advanced Data Analysis and Visualization Techniques Curriculum

Mastering Google BigQuery: Advanced Data Analysis and Visualization Techniques Curriculum

This comprehensive course is designed to help you master Google BigQuery and advanced data analysis and visualization techniques. Upon completion, participants receive a certificate issued by The Art of Service.

This course is interactive, engaging, comprehensive, personalized, up-to-date, practical, and features real-world applications, high-quality content, expert instructors, certification, flexible learning, user-friendly interface, mobile accessibility, community-driven, actionable insights, hands-on projects, bite-sized lessons, lifetime access, gamification, and progress tracking.



Chapter 1: Introduction to Google BigQuery

1.1 Overview of Google BigQuery

  • What is Google BigQuery?
  • Key features and benefits
  • Use cases and applications

1.2 Setting up a BigQuery Environment

  • Creating a Google Cloud account
  • Setting up a BigQuery project
  • Configuring permissions and access control


Chapter 2: Data Loading and Storage

2.1 Loading Data into BigQuery

  • Loading data from Google Cloud Storage
  • Loading data from Google Drive
  • Loading data from external sources

2.2 Data Storage and Management

  • Understanding BigQuery data storage
  • Managing data partitions and clustering
  • Optimizing data storage costs


Chapter 3: Data Analysis and Querying

3.1 Introduction to BigQuery SQL

  • Basic SQL syntax and data types
  • Querying and filtering data
  • Joining and aggregating data

3.2 Advanced Querying Techniques

  • Using subqueries and CTEs
  • Optimizing query performance
  • Using BigQuery's advanced SQL features


Chapter 4: Data Visualization and Reporting

4.1 Introduction to Data Visualization

  • Principles of data visualization
  • Choosing the right visualization tools
  • Creating interactive dashboards

4.2 Using BigQuery with Data Visualization Tools

  • Integrating BigQuery with Google Data Studio
  • Using BigQuery with Tableau and Power BI
  • Creating custom visualizations with BigQuery


Chapter 5: Advanced BigQuery Features

5.1 Machine Learning with BigQuery

  • Introduction to machine learning with BigQuery
  • Building and deploying machine learning models
  • Using BigQuery's machine learning features

5.2 BigQuery's Advanced Features

  • Using BigQuery's advanced features
  • Creating and managing BigQuery scripts
  • Using BigQuery's data transfer service


Chapter 6: BigQuery Best Practices and Optimization

6.1 BigQuery Best Practices

  • Optimizing query performance
  • Managing data storage and costs
  • Securing BigQuery data and access

6.2 Advanced BigQuery Optimization Techniques

  • Using BigQuery's advanced optimization features
  • Optimizing data loading and processing
  • Using BigQuery's monitoring and logging features


Chapter 7: BigQuery Certification and Career Development

7.1 Preparing for the BigQuery Certification Exam

  • Understanding the exam format and content
  • Preparing for the exam with practice questions and simulations
  • Tips for passing the exam

7.2 Career Development with BigQuery

  • Understanding the job market for BigQuery professionals
  • Building a career with BigQuery
  • Staying up-to-date with BigQuery's latest features and developments


Chapter 8: Final Project and Course Wrap-up

8.1 Final Project: Building a BigQuery Data Warehouse

  • Designing and building a BigQuery data warehouse
  • Loading and processing data
  • Creating visualizations and reports

8.2 Course Wrap-up and Next Steps

  • Reviewing key concepts and takeaways
  • Getting support and resources for continued learning
  • Celebrating your achievement and looking forward to future learning
,