Summer School Introduction to Machine Learning in Geosciences
University of Pisa Summer - Winter Schools & Foundation Course
Key Information
Campus location
Pisa, Italy
Languages
English
Study format
Distance Learning, On-Campus
Duration
5 days
Pace
Full time
Tuition fees
EUR 500
Application deadline
03 May 2024
Earliest start date
01 Jul 2024
Introduction
A large number of applications that only a few years ago would have been considered impossible to be performed without any sort of human interaction are now autonomously executed by increasingly more powerful machines and sophisticated algorithms. Fed by an enormous quantity of available data, machine learning algorithms can learn, without being explicitly programmed, to solve complex tasks such as speech, face, and object recognition or to play and even defeat the best human players at the ancient game of Go.
Machine-learning is becoming an essential skill in many data-intensive scientific fields, including Earth Sciences related disciplines.
In many fields of Geosciences datasets are growing in size and variety at an exceptionally fast rate, highlighting the need for new data processing and assimilation techniques that are able to exploit the information deriving from this data explosion. Machine-learning techniques have the potential to push forward the state of the art of data analysis procedures used in different fields of the Geosciences. In this context, we propose a summer school that focuses on the use of Machine Learning techniques to geophysical, geological and environmental data.
The school will cover topics listed below. Each topic will be accompanied by specific practical sessions, focused on the solution of general geophysical, geological and environmental problems.
Introduction
Overview of the course and general machine learning concepts
Supervised Learning
Regression (Linear and Non-linear regression techniques)
Classification (Logistic Regression, K-NearestNeighbors and Support Vector Machines)
Unsupervised Learning
Clustering (k-means, Hierarchical Clustering, DB-Scan)
Data Reduction (PCA and ICA)
Deep Learning
Basics on Artificial Neural Networks (Activation function, Back-propagation, Training and Optimization)
The Multi-Layer Perceptron
Convolutional Neural Networks for image classication
The program will be activated also in distance learning mode (TEAMS platform).
Aim
This summer school aim to provide an overview of the main machine learning methods and their application to geophysical, geological and environmental data, keeping a more practical flavour.
After the course the student will be able to use basic machine learning techniques applied to geosciences. The student will learn to identify which ML method is more suitable than others for the analysis of a particular datasets and to evaluate the performance of the used models. After the course the student will also have an overview of the main Machine Learning libraries (in particular SciKit-Learn, Tensorflow and Keras)
Program Intensity | ECTS |
Full-Time | 3 |
Period | Application Deadline |
1 - 5 July 2024 | 3 May 2024 |
Gallery
Ideal Students
Graduate Students, Early-Stage Researchers, Professionals.
Admissions
Program Tuition Fee
Scholarships and Funding
Fundings
Please write to the coordinator for further details.
Available
Curriculum
The school will cover the topics listed below. Each topic will be accompanied by specific practical sessions, focused on the solution of general geophysical and geological problems.
Introduction
- Overview of the course and general machine learning concepts.
Supervised Learning
- Regression (Linear and Non-linear regression techniques);
- Classification (Logistic Regression, K-NearestNeighbors and Support Vector Machines).
Unsupervised Learning
- Clustering (k-means, Hierarchical Clustering, DB-Scan);
- Data Reduction (PCA and ICA).
Deep Learning
- Basics on Artificial Neural Networks (Activation function, Back-propagation, Training, and Optimization);
- Convolutional Neural Networks for image recognition;
- Recurrent Neural Networks for Time Series Analysis.
Program Outcome
ECTS: 3