Peru SERVIR TensorFlow Training Earth Science Applications in Amazonia

This training will bring technicians and geospatial specialists leaders from the Amazon region to learn about ML, DL and AI fields to join Earth Sciences. The training is expected to grow participants’ technical capacities to employ ML, DL, and AI solutions, equipping participants to train future trainers, and strategically position SERVIR to seed innovation by providing cutting edge science and solutions in SERVIR regions. By the end of this training series, participants will:

  1. Have a firm understanding on the use of ML, DL, and AI as well as the basics of TensorFlow, especially within the Google Earth Engine framework;
  2. Learn about Deep Learning, Neural Networks, Classification, Segmentation, Object Detection, Regression and Time Series Analysis;
  3. Generate knowledge in workflows about remote sensing and ML, DL, and AI in order to be able to publish in academic journals;

The lesson content for each workshop can be found in the tabs on the lefthand side panel. Additionally, you can find information about all the workshop partners under the Partners tab, supplementary learning material under the Resources tab, and photos from the workshops (and a place to upload your own photos) under the Photos tab.

Agenda

This table is just an example. Actual 12-day overview will differ based on the country.

Instruction Day Theme Timing Format
1 Introduction to Machine Learning, Deep Learning and Artificial Intelligence August 8th 2023 In-person
2 Semantic Segmentation models, evaluation and advanced techniques August 9th 2023 In-person
3 Object Detection, Regression, Time Series Analysis August 10th 2023 In-person
4 ACCA’s study cases August 11th 2023 In-person

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Workshop Recordings

The recordings for each workshop session can be access by clicking the button below. Please do not remove any files from the folder.

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