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eewpython's Introduction

Google Earth Engine with Python

Open in Colab


Maintainer:

Welcome!

The course "EEwPython" is a series of Jupyter notebook (colabs) to learn Google Earth Engine (GEE) with python. EEwPython is structured in two parts. The first one is an adaptation from all Google Earth Engine Documentation to be able to run in python, and the second one is a recompilation of different reproducible examples. If you want to contribute with EEwPython, do not doubt to keep in touch with us. All the material is released under the Apache 2.0 license.

Table of Contents

1. Google Earth Engine Guides

2. Applications

eewpython's People

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alifrancis avatar csaybar avatar ryali93 avatar

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eewpython's Issues

Requesting the dataset for cnn_demo notebook

Het Cesar Aybar,

Fantastic work, really appreciate the pipeline between GEE and TF.

It would be grate if you can give access to dataset, was kinda not able run your notebooks and visualize, even model weight file is missing and throws error.

Much thanks.

Access to datasets not granted

Hello, sorry for intruding. I have recently found this Colab Notebook (cnn_demo). However, while trying to execute the cells, it seems I do not have the permission to read the training and test sets. I wondered if it was possible to be granted the access to these two datasets.
Thanks for your kind attention.
Best regards,
Chiara

Questions about cnn_demo

Hi,

I had some questions about cnn_demo.

  1. What is the side parameter in input_fn and why is it set to 257?
  2. Running your notebook in Colab throws an error when data is imported. EEException: Collection.loadTable: Collection asset 'users/csaybar/DLdemos/train_set' not found. Is this an issue on your end?

Tensorflow course

Hello, when do you plan to release the TensorFlow EarthEngine tutorial? Thank you.

Replacing fusion tables

My understanding is fusion tables are no longer available, therefore the method used the upload the counties for Reducer section no longer works. I tried to replace it with a feature collection from Earth Engine ('TIGER/2016/Counties') but so far no luck. If there are any solutions available it would be appreciated!

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