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Spatial Data Analysis in Google Earth Engine Python API

  • Development
  • Mar 09, 2025
SynopsisSpatial Data Analysis in Google Earth Engine Python API, avai...
Spatial Data Analysis in Google Earth Engine Python API  No.1

Spatial Data Analysis in Google Earth Engine Python API, available at $49.99, has an average rating of 3.6, with 24 lectures, based on 86 reviews, and has 476 subscribers.

You will learn about Students will access and sign up the Google Earth Engine Python API platform Access satellite data in Earth Engine Export geospatial Data including rasters and vectors Access images and image collections from the Earth Engine cloud data library Perform cloud masking of various satellite images Visualize and analyze various satellite data including, MODIS, Sentinel and Landsat Visualize time series images Run machine learning algorithms using big Earth Observation data This course is ideal for individuals who are This course is meant for professionals who want to harness the power Google Earth Engine Python API and Jupyter Notebook or People who want to understand various satellite image processing techniques using Python and Jupyter Notebook or Anyone who wants to learn accessing and extracting information from Earth Observation data or Anyone who wants to apply for a spatial data scientist job position It is particularly useful for This course is meant for professionals who want to harness the power Google Earth Engine Python API and Jupyter Notebook or People who want to understand various satellite image processing techniques using Python and Jupyter Notebook or Anyone who wants to learn accessing and extracting information from Earth Observation data or Anyone who wants to apply for a spatial data scientist job position.

Enroll now: Spatial Data Analysis in Google Earth Engine Python API

Summary

Title: Spatial Data Analysis in Google Earth Engine Python API

Price: $49.99

Average Rating: 3.6

Number of Lectures: 24

Number of Published Lectures: 24

Number of Curriculum Items: 24

Number of Published Curriculum Objects: 24

Original Price: $49.99

Quality Status: approved

Status: Live

What You Will Learn

  • Students will access and sign up the Google Earth Engine Python API platform
  • Access satellite data in Earth Engine
  • Export geospatial Data including rasters and vectors
  • Access images and image collections from the Earth Engine cloud data library
  • Perform cloud masking of various satellite images
  • Visualize and analyze various satellite data including, MODIS, Sentinel and Landsat
  • Visualize time series images
  • Run machine learning algorithms using big Earth Observation data
  • Who Should Attend

  • This course is meant for professionals who want to harness the power Google Earth Engine Python API and Jupyter Notebook
  • People who want to understand various satellite image processing techniques using Python and Jupyter Notebook
  • Anyone who wants to learn accessing and extracting information from Earth Observation data
  • Anyone who wants to apply for a spatial data scientist job position
  • Target Audiences

  • This course is meant for professionals who want to harness the power Google Earth Engine Python API and Jupyter Notebook
  • People who want to understand various satellite image processing techniques using Python and Jupyter Notebook
  • Anyone who wants to learn accessing and extracting information from Earth Observation data
  • Anyone who wants to apply for a spatial data scientist job position
  • Do you want to access satellite sensors using Earth Engine Python API and Jupyter Notebook?

    Do you want to learn spatial data science on the cloud?

    Do you want to become a spatial data scientist?

    Enroll in my new course Spatial Data Analysis in Google Earth Engine Python API.

    I will provide you with hands-on training with example data, sample scripts, and real-world applications. By taking this course, you be able to install Anaconda and Jupyter Notebook. Then, you will have access to satellite data using the Earth Engine Python API.

    In this Spatial Data Analysis with Earth Engine Python APIcourse, I will help you get up and running on the Earth Engine Python API and Jupyter Notebook. By the end of this course, you will have access to all example scripts and data such that you will be able to access, download, visualize big data, and extract information.

    In this course, we will cover the following topics:

  • Introduction to Earth Engine Python API

  • Install the Anaconda and Jupyter Notebook

  • Set Up a Python Environment

  • Raster Data Visualization

  • Vector Data Visualization

  • Load Landsat Satellite Data

  • Cloud Masking Algorithm

  • Calculate NDVI

  • Export images and videos

  • Process image collections

  • Machine Learning Algorithms

  • Advanced digital image processing

  • One of the common problems with learning image processing is the high cost of software. In this course, I entirely use open source software including the Google Earth Engine Python API and Jupyter Notebook. All sample data and scripts will be provided to you as an added bonus throughout the course.

    Jump in right now and enroll.

    Course Curriculum

    Chapter 1: Introduction to Earth Engine Python API

    Lecture 1: Welcome

    Lecture 2: Install Anaconda

    Lecture 3: Set Up Python Environment

    Lecture 4: Sign Up on Earth Engine

    Lecture 5: Install Earth Engine Python API

    Lecture 6: Load Landsat Images

    Chapter 2: Raster Data Visualization

    Lecture 1: Landsat Visualization

    Lecture 2: MODIS Land Cover

    Lecture 3: NLCD Land Cover

    Lecture 4: NDVI Visualization

    Chapter 3: Vector Data Visualization

    Lecture 1: US States

    Lecture 2: USA Counties

    Lecture 3: International Boundary

    Chapter 4: Raster Data Analysis: Images

    Lecture 1: Clipping

    Lecture 2: Image Metadata

    Lecture 3: Band Math

    Lecture 4: Calculate MODIS NDVI

    Chapter 5: Raster Data Analysis: Image Collection

    Lecture 1: Clip Image Collection

    Lecture 2: Landsat Simple Composite

    Lecture 3: Filter by Calendar Day of Year

    Chapter 6: Machine Learning: Unsupervised and Supervised Classification

    Lecture 1: Clustering: Unsupervised Classification

    Lecture 2: CART: Supervised Classification

    Lecture 3: SVM: Supervised Classification

    Chapter 7: Bonus Lectures

    Lecture 1: Bonus

    Instructors

  • Spatial Data Analysis in Google Earth Engine Python API  No.2
    Dr. Alemayehu Midekisa
    Geospatial Data Scientist
  • Rating Distribution

  • 1 stars: 3 votes
  • 2 stars: 6 votes
  • 3 stars: 16 votes
  • 4 stars: 26 votes
  • 5 stars: 35 votes
  • Frequently Asked Questions

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