Google tools for GIS Applications
Google tools for GIS Applications, available at $64.99, has an average rating of 4.1, with 50 lectures, based on 38 reviews, and has 282 subscribers.
You will learn about Cloud SQL – Managed PostGIS in the cloud Big Query Cloud Storage Data Studio Colaboratory – Jupyter notebooks in the cloud Automation with cloud shell scripts Earth Engine Mapping APIs – geolocation, routing, elevation and more This course is ideal for individuals who are Geospatial professionals who want to learn more about leveraging Google Cloud Platform and mapping API's for geospatial applications It is particularly useful for Geospatial professionals who want to learn more about leveraging Google Cloud Platform and mapping API's for geospatial applications.
Enroll now: Google tools for GIS Applications
Summary
Title: Google tools for GIS Applications
Price: $64.99
Average Rating: 4.1
Number of Lectures: 50
Number of Published Lectures: 47
Number of Curriculum Items: 50
Number of Published Curriculum Objects: 47
Original Price: $89.99
Quality Status: approved
Status: Live
What You Will Learn
- Cloud SQL – Managed PostGIS in the cloud
- Big Query
- Cloud Storage
- Data Studio
- Colaboratory – Jupyter notebooks in the cloud
- Automation with cloud shell scripts
- Earth Engine
- Mapping APIs – geolocation, routing, elevation and more
Who Should Attend
- Geospatial professionals who want to learn more about leveraging Google Cloud Platform and mapping API's for geospatial applications
Target Audiences
- Geospatial professionals who want to learn more about leveraging Google Cloud Platform and mapping API's for geospatial applications
This course is an overview of Google Cloud Platform tools, analytical tools, and mapping API’s that may be of interest to geospatial professionals. The course is broad rather than deep. My goal is to show you how to get started with many different products with an emphasis on geospatial applications. In many cases there are existing courses that cover the details but with little information on geospatial applications and this course is intended to fill in those gaps.
Google has an amazing set of tools available in the cloud and elsewhere. We start with implementing an instance of PostGIS in the Google cloud. Then we import some of that geospatial data into BigQuery for super fast analytical queries. The results of those queries can be visualized in a variety of ways in Data Studio and those visualizations are easily shared. I also demonstrate how to store files in the cloud, get started with Google Earth Engine for remote sensing analysis, Colaboratory as a hosted Jupyter Notebook environment, and mapping APIs that allow display of web maps, geolocation, routing, and elevations for any point on earth.
NOTE: As of today April 9, 2022 this course has over 6 1/2 hours of content and covers Cloud SQL, Big Query, Data Studio, Cloud Storage, and Cloud Shell automation. I believe this in itself to be worth the price of the course so I am releasing it now but I will be adding sections on Colaboratory, Earth Engine, and the mapping API’s in May 2022.
This course is different from most of my courses because Google tools are not strictly open source. There are costs associated with them. But rest assured, Google is very generous with its products. Some are completely free to use, some have a free tier that you can use up to a certain amount for free, and even their premium products are very affordable for small businesses as you only pay for what you use.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Lecture 2: What is "The Cloud"?
Lecture 3: Overview of Google tools for geospatial applications
Lecture 4: Organization of the Google Cloud Platform
Lecture 5: Signing up for a Google user account (optional)
Lecture 6: Signing up with Google Cloud Platform
Lecture 7: Setting up a project in the Google Cloud Platform
Chapter 2: Gloud SQL – PostGIS in the cloud
Lecture 1: Database 101 (Mostly optional….)
Lecture 2: Starting an instance of PostgreSQL (and PostGIS) in the cloud
Lecture 3: Connecting with PgAdmin4 and loading data
Lecture 4: Connecting with QGIS and viewing geospatial data
Chapter 3: Big Query
Lecture 1: Introduction to Big Query
Lecture 2: Getting started and importing data
Lecture 3: Writing queries that join multiple tables
Lecture 4: Joining tables based on spatial criteria
Lecture 5: Performance considerations – overview
Lecture 6: Evaluating performance and optimizing queries
Lecture 7: Evaluating performance – part 2
Lecture 8: Data visualization in Big Query
Chapter 4: Automation with the Cloud Shell
Lecture 1: Using the Cloud Shell command line
Lecture 2: Automating tasks with the Cloud Shell Editor
Chapter 5: Data Studio – Visualizations and dashboards
Lecture 1: What is data studio?
Lecture 2: Creating our data source
Lecture 3: Making our first dashboard
Lecture 4: Adding interactive data controls
Lecture 5: Odds and ends
Lecture 6: Calculated fields and the CASE statement
Lecture 7: Reviewing the data flow of this project
Lecture 8: Adding a second (and third) data source to the report
Lecture 9: Adding a second page to the report
Lecture 10: Copying the page and modifying it for raptors
Lecture 11: Sharing the dashboard
Lecture 12: Advanced – Combining multiple tables into one
Lecture 13: Advanced – Blending data sources in Data Studio
Chapter 6: Cloud Storage
Lecture 1: Overview of cloud storage
Lecture 2: Making files publicly accesible
Lecture 3: Cloud storage from the command line
Lecture 4: Backing up BigQuery and CloudSQL to Cloud Storage
Lecture 5: Installing gcloud and controlling cloud resources from your local computer
Chapter 7: Colaboratory – Jupyter notebooks in the cloud
Lecture 1: Jupyter Notebooks 101 (optional)
Lecture 2: Google Colaboratory 101
Lecture 3: Tour of Google Colaboratory
Lecture 4: Accessing file-based data stored in bulic bucket in Google Cloud Storage
Lecture 5: Accessing data stored in a Google Cloud SQL database
Lecture 6: Accessing data stored in BigQuery
Chapter 8: Google API's for GIS applications
Lecture 1: What is an API?
Lecture 2: Introduction to Postman
Instructors
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Michael Miller
GIS Programming
Rating Distribution
- 1 stars: 1 votes
- 2 stars: 1 votes
- 3 stars: 5 votes
- 4 stars: 8 votes
- 5 stars: 23 votes
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