Exploring and Preparing your Data with BigQuery
- 4.7
Approx. 13 hours to complete
Course Summary
Explore how to prepare data for analysis using Google Cloud Platform's BigQuery. Learn how to create and manage datasets, load data into BigQuery, and write basic and advanced SQL queries.Key Learning Points
- Learn the basics of BigQuery and how to create and manage datasets
- Understand how to load data into BigQuery and write basic and advanced SQL queries
- Explore best practices for data preparation and analysis in BigQuery
Related Topics for further study
Learning Outcomes
- Create and manage datasets in BigQuery
- Load data into BigQuery and write basic and advanced SQL queries
- Apply best practices for data preparation and analysis in BigQuery
Prerequisites or good to have knowledge before taking this course
- Basic knowledge of SQL
- Familiarity with cloud computing concepts
Course Difficulty Level
BeginnerCourse Format
- Online self-paced course
- Video lectures and quizzes
- Hands-on labs and exercises
Similar Courses
- Data Engineering on Google Cloud Platform
- Data Analysis with Python
- Applied Data Science with Python
Related Education Paths
- Google Cloud Certified - Professional Data Engineer
- Google Cloud Certified - Professional Cloud Architect
- Google Cloud Certified - Associate Cloud Engineer
Notable People in This Field
- CEO of Google
- Google Senior Vice President
Related Books
Description
Welcome to the Coursera specialization, From Data to Insights with Google Cloud Platform brought to you by the Google Cloud team. I’m Evan Jones (a data enthusiast) and I’m going to be your guide.
Outline
- Welcome to From Data to Insights with Google Cloud Platform: Exploring and Preparing your Data
- Introduction: From Data to Insights with Google Cloud Platform specialization
- Module 1: Introduction to Data on Google Cloud Platform
- Highlight Analytics Challenges Faced by Data Analysts
- Compare Big Data On-Premise vs on the Cloud
- Real-World Use Cases
- Navigate Google Cloud Platform Project Basics
- Module 1 Quiz
- Module 2: Big Data Tools Overview
- Walkthrough Data Analyst Tasks, Challenges, and Introduce Google Cloud Platform Data Tools
- Demo: BigQuery Tips and Tricks on Public Datasets
- Explore 9 Fundamental Google BigQuery Features
- Walkthrough: Data Architecture Diagram
- Compare GCP Tools for Analysts, Data Scientists, and Data Engineers
- Meet Qwiklabs, your on-demand labs platform
- Lab Walkthrough - Exploring Ecommerce Data
- Demo: Beyond the BigQuery Web UI
- Module 2 Quiz
- Module 3: Exploring your Data with SQL
- Intro to Google Analytics ecommerce dataset
- Compare Common Data Exploration Techniques
- Query Basics
- Intro to Functions
- Demo: Explore Schemas in the BigQuery UI
- Filters, Aggregates, and Duplicates
- Data Types, Date Functions, and NULLs
- Wildcard Filters with LIKE
- Lab Walkthrough - Enable Standard SQL
- Lab Walkthrough - Query Validator, Aliases, and Commas
- Lab Walkthrough - Logical Errors, Group Bys, Wildcard Filters
- Lab Walkthrough - Ordering, Calculated fields, Filtering after Aggregating
- Lab Walkthrough - Finding top selling products, Filtering NULLs
- IRS Public Dataset Overview
- Module 3 Quiz
- Module 4: Google BigQuery Pricing
- Walkthrough of a BigQuery Job
- Calculate BigQuery Pricing: Storage, Querying, and Streaming Costs
- Demo: Try out the Price Calculator
- Reserved Slots
- Query Validator, Quotas, and Common Pitfalls
- Optimize Queries for Cost
- Module 4 Quiz
- Module 5: Cleaning and Transforming your Data
- Examine the 5 Principles of Dataset Integrity
- Characterize Dataset Shape and Skew
- Clean and Transform Data using SQL
- Clean and Transform Data using a new UI: Introducing Cloud Dataprep
- Demo: CloudDataprep on Ecommerce Dataset
- Lab Walkthrough - Connecting BigQuery data to Cloud Dataprep
- Lab Walkthrough - Exploring Ecommerce Data Fields and Values with a UI
- Lab Walkthrough - Building Data Transformation Recipes with a UI
- Lab Walkthrough - Running and Scheduling Dataprep Jobs to BigQuery
- Components of Data Fusion
- Building a Pipeline
- Exploring Data using Wrangler
- Course Summary
- New Lab! Cloud Data Fusion
- Module 5 Quiz
Summary of User Reviews
Explore and Prepare Data with BigQuery on Coursera has received positive reviews from users. Many found the course to be informative and well-structured, with a good balance of theory and practical exercises.Key Aspect Users Liked About This Course
The course material is informative and well-structured.Pros from User Reviews
- The course provides practical exercises that help users apply the concepts they learn.
- The instructors are knowledgeable and provide clear explanations.
- The course covers a wide range of topics related to BigQuery.
- The quizzes and assignments are challenging but not overwhelming.
- The course is suitable for both beginners and experienced users.
Cons from User Reviews
- Some users found the course to be too basic and not challenging enough.
- The course could benefit from more real-world examples.
- Some users experienced technical difficulties with the platform.
- The course material could be more up-to-date.
- The course may not be suitable for users who are not interested in BigQuery specifically.