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Hands-on learning materials from the 8-course Google Data Analytics Professional Certificate program, covering foundational data skills, tools, and real-world business problem-solving

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Google Data Analytics Professional Certificate

Get on the fast track to a career in Data Analytics. In this certificate program, you’ll learn in-demand skills, and get AI training from Google experts. Learn at your own pace, no degree or experience required.

Coursera: Google Data Analytics Professional Certificate

Certificate

Verify this certificate on Credly


📖 What you'll learn

  • Gain an immersive understanding of the practices and processes used by a junior or associate data analyst in their day-to-day job
  • Learn key analytical skills (data cleaning, analysis, & visualization) and tools (spreadsheets, SQL, R programming, Tableau)
  • Understand how to clean and organize data for analysis, and complete analysis and calculations using spreadsheets, SQL and R programming
  • Learn how to visualize and present data findings in dashboards, presentations and commonly used visualization platforms

📈 Skills you'll gain

Data Analytics ETL Data Wrangling Data Modeling Data Analysis Data Visualization Data Storytelling Dashboard Development SQL Tableau R Google BigQuery RStudio

🏆 Endorsements and recognition

  • ACE® College Credit Recommendation: Up to 12 credits toward select universities in the US
  • Google Career Certificates Employer Consortium: Access to 150+ top employers (Google, Accenture, Deloitte, Verizon, and more)
  • 2.8M+ learners and 75% of U.S. grads report a positive career outcome within 6 months

📚 Courses and lessons

  1. Foundations: Data, Data, Everywhere

    • Define and explain key concepts involved in data analytics including data, data analysis, and data ecosystems.
    • Conduct an analytical thinking self assessment giving specific examples of the application of analytical thinking.
    • Discuss the role of spreadsheets, query languages, and data visualization tools in data analytics.
    • Describe the role of a data analyst with specific reference to jobs.
  2. Ask Questions to Make Data-Driven Decisions

    • Explain how the problem-solving road map applies to typical analysis scenarios.
    • Discuss the use of data in the decision-making process.
    • Demonstrate the use of spreadsheets to complete basic tasks of the data analyst including entering and organizing data.
    • Describe the key ideas associated with structured thinking.
  3. Prepare Data for Exploration

    • Explain what factors to consider when making decisions about data collection.
    • Discuss the difference between biased and unbiased data.
    • Describe databases with references to their functions and components.
    • Describe best practices for organizing data.
  4. Process Data from Dirty to Clean

    • Define different types of data integrity and identify risks to data integrity.
    • Apply basic SQL functions to clean string variables in a database.
    • Develop basic SQL queries for use on databases.
    • Describe the process of verifying data cleaning results.
  5. Analyze Data to Answer Questions

    • Discuss the importance of organizing your data before analysis by using sorts and filters.
    • Convert and format data.
    • Apply the use of functions and syntax to create SQL queries to combine data from multiple database tables.
    • Describe the use of functions to conduct basic calculations on data in spreadsheets.
  6. Share Data Through the Art of Visualization

    • Describe the use of data visualizations to talk about data and the results of data analysis.
    • Identify Tableau as a data visualization tool and understand its uses.
    • Explain what data driven stories are including reference to their importance and their attributes.
    • Explain principles and practices associated with effective presentations.
  7. Data Analysis with R Programming

    • Describe the R programming language and its programming environment.
    • Explain the fundamental concepts associated with programming in R including functions, variables, data types, pipes, and vectors.
    • Describe the options for generating visualizations in R.
    • Demonstrate an understanding of the basic formatting in R Markdown to create structure and emphasize content.
  8. Capstone Project

    • Identify the key features and attributes of a completed case study.
    • Apply the practices and procedures associated with the data analysis process to a given set of data.
    • Discuss the use of case studies/portfolios when communicating with recruiters and potential employers.
    • Gain a competitive edge by learning AI skills from Google experts.

🚀 How to use this repo

This repo is open source! Feel free to:

  • 👀 Browse the course readings, exercises, and case studies
  • 💻 Fork/clone for your own self-study or review
  • 🤝 Collaborate by submitting issues or improvements via pull requests
  • 🌟 Get inspired if you’re preparing to be a data professional or want to level up your data skills

Disclaimer: All content is for educational purposes only and is shared to help aspiring data professionals. Please don’t submit this work as your own in graded assessments—let’s keep it ethical!


✨ I’m always open to networking, collaboration, or sharing insights ✨
Don’t be shy — connect with me on LinkedIn! 👋

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Hands-on learning materials from the 8-course Google Data Analytics Professional Certificate program, covering foundational data skills, tools, and real-world business problem-solving

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