Skip to content

A curated list of Earth Science's Artificial Intelligence (AI) tutorials, notebooks, software, datasets, courses, books, video lectures and papers. Contributions most welcome.

License

Notifications You must be signed in to change notification settings

ESIPFed/Awesome-Earth-Artificial-Intelligence

Folders and files

NameName
Last commit message
Last commit date

Latest commit

Β 

History

99 Commits
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 
Β 

Repository files navigation

Awesome-Earth-Artificial-Intelligence

Awesome GitHub stars Chat on slack Twitter

A curated list of tutorials, notebooks, software, datasets, courses, books, video lectures and papers specifically for Artificial Intelligence (AI) use cases in Earth Science.

Maintained by ESIP Machine Learning Cluster. Free and open to inspire AI for Good.

Contributions are most welcome. Please refer to our contributing guidelines, what is awesome?, and Code of Conduct.

Contents

Courses Books Tools Tutorials Training Datasets
Code Videos Papers Reports Thoughts
Competitions Communities RelatedAwesome

ML-enthusiastic Earth Scientific Questions

Earth Spheres Scientific Problems
Geosphere
  • How to identify hidden signals of earthquakes?
  • How to learn the spatio-temporal relationships amonog earthquakes and make predictions based on the relationship?
  • How to capture complex relationships of volcano-seismic data and classify explosion quakes in volcanos?
  • How to predict landslides
  • How to estimate the damage?
Atmosphere
  • How to trace and predict climate change using machine learning?
  • How to predict hurricane?
  • How to monitor and predict meteorological drought?
  • How to detect wildfire early?
  • How to monitor and predict air quality?
  • How to predict dust storm?
  • How to accelerate the model simulation and lower the computing costs?
Hydrosphere
  • How to do high spatio-temporal resoluton waterbody mapping?
  • How to get insights of water quality from remote sensing?
  • How to monitor, and predict snow melt as a water resource?
Biosphere
  • How to do high spatio-temporal resoluton forest mapping?
  • How to do high spatio-temporal resoluton crop mapping?
  • How to do high spatio-temporal resoluton animal mapping?
Cryosphere
  • How to do high spatio-temporal resoluton mapping and classification of sea ice?
  • How to monitor and predict glacier/ice sheet mass loss?
β–² Top

Courses

β–² Top

Books

β–² Top

Tools

  • eo-learn: Earth observation processing framework for machine learning in Python,

  • EarthML website: Tools for working with machine learning in earth science,

  • ML visualization tool - A Visualization tool for neural network, deep learning and machine learning models, support ONNX (.onnx, .pb, .pbtxt), Keras (.h5, .keras), Core ML (.mlmodel), Caffe (.caffemodel, .prototxt), Caffe2 (predict_net.pb), Darknet (.cfg), MXNet (.model, -symbol.json), Barracuda (.nn), ncnn (.param), Tengine (.tmfile), TNN (.tnnproto), UFF (.uff) and TensorFlow Lite (.tflite).

  • Dopamine is a research framework for fast prototyping of reinforcement learning algorithms,

  • mlflow - MLflow: A Machine Learning Lifecycle Platform,

  • Snips NLU Snips NLU (Natural Language Understanding) is a Python library that allows to extract structured information from sentences written in natural language.

  • MindsDB - MindsDB is an Explainable AutoML framework for developers built on top of Pytorch. It enables you to build, train and test state of the art ML models in as simple as one line of code.

  • TensorFlow Hub TensorFlow Hub is a repository of reusable assets for machine learning with TensorFlow. In particular, it provides pre-trained SavedModels that can be reused to solve new tasks with less training time and less training data.

  • Polyaxon - Polyaxon, a platform for building, training, and monitoring large scale deep learning applications. A Machine Learning Platform for Kubernetes.

  • SynapseML - SynapseML (previously MMLSpark) is an open source library to simplify the creation of scalable machine learning pipelines. Microsoft Machine Learning for Apache Spark,

  • TransmogrifAI - TransmogrifAI (pronounced trΔƒns-mŏgˈrΙ™-fΔ«) is an AutoML library written in Scala that runs on top of Apache Spark. It was developed with a focus on accelerating machine learning developer productivity through machine learning automation, and an API that enforces compile-time type-safety, modularity, and reuse.

  • Microsoft AI for Earth API Platform - Microsoft AI for Earth API Platform is a distributed infrastructure designed to provide a secure, scalable, and customizable API hosting, designed to handle the needs of long-running/asynchronous machine learning model inference. It is based on Azure and Kubernetes.

  • OneFlow - OneFlow is a performance-centered and open-source deep learning framework.

  • ml.js - ml.js - Machine learning tools in JavaScript.

  • BentoML - BentoML is an open-source framework for high-performance ML model serving.

  • flashflight: - flashflight: A C++ standalone library for machine learning.

  • Xarray-Beam - Python library for building Apache Beam pipelines with Xarray datasets.

  • 😎 pygeoweaver - Python library for AI & geospatial workflow management, FAIRness, tangibility and productivity improvement

β–² Top

Tutorials

β–² Top

Training Data

β–² Top

Code

β–² Top

Videos

β–² Top

Papers

β–² Top

Reports

β–² Top

Thoughts

β–² Top

Competitions

  • πŸ˜ŽπŸ’– GeoAI Challenge - aimed at providing solutions for collaboratively addressing real-world geospatial problems by applying artificial intelligence (AI)/machine learning (ML)

  • GPU Hackthons - designed to help scientists, researchers and developers to accelerate and optimize their applications on GPUs.

  • LANL Earthquake Prediction

  • HackerEarth

β–² Top

Communities

β–² Top

RelatedAwesome

  • Awesome-Open-Geoscience – Awesome A list is curated from repositories that make our lives as geoscientists, hackers and data wranglers easier or just more awesome. In accordance with the awesome manifesto, we add awesome repositories.
  • Awesome-Spatial – Awesome Awesome list for geospatial, not specific to geoscience but significant overlap
  • Awesome Open Climate Science – Awesome Awesome list for atmospheric, ocean, climate, and hydrologic science
  • Awesome Coastal – Awesome Awesome list for coastal engineers and scientists
  • Awesome Satellite Imagery Datasets - Awesome List of aerial and satellite imagery datasets with annotations for computer vision and deep learning
  • Awesome Workflow Engines - Awesome A curated list of awesome open source workflow engines
  • Awesome Pipeline - Awesome A curated list of awesome pipeline toolkits inspired by Awesome Sysadmin
  • Awesome Machine Learning - Awesome A curated list of awesome Machine Learning frameworks, libraries and software
β–² Top

About

A curated list of Earth Science's Artificial Intelligence (AI) tutorials, notebooks, software, datasets, courses, books, video lectures and papers. Contributions most welcome.

Topics

Resources

License

Code of conduct

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published