Join Now

DGMK-Event / Geo-Energy Systems and Underground Technologies

DGMK/DGG Short Course: Machine Learning for Exploration Geophysics

Date
15.-17.03.2022
Venue
DGMK Office
Address
Große Elbstraße 131, Hamburg
Info
The course language is English

Introduction to essential ML libraries, data visulization tools & cloud services.

Course contents:

- Introduction to machine learning techniques
- Application of machine learning to modern geophysical problems
- Supervised learning
- Unsupervised learning
- Deep neural networks
- best practices

About the Course

Machine learning has become the main driver of numerous innovative applications: from automated driving and medical devices to industrial automation and electronics. The course offers a comprehensive introduction to machine learning techniques and illustrates the application of machine learning to modern geophysical problems. The goal of the course is to provide trainees with a fundamental understanding of machine learning algorithms sufficient to apply them to solve problems. Topics cover classical supervised learning (linear regression, logistic regression, support vector machine), ensemble methods, neural networks (DNN, CNN, RNN, GAN), and unsupervised learning (clustering, principal component analysis, anomaly detection). The course will also draw from numerous case studies and applications so that trainees will also learn how to apply machine learning algorithms. Although machine learning typically requires HPC resources and advanced programming skills, the course is designed in such a way that trainees only need the basic programming skills in Python.

About the Lecturer

Ivan Abakumov received his Bachelor's (2009) and Master's (2012) degrees in Physics from St. Petersburg State University. While studying, Ivan was working as a teacher of computer science and led advanced math classes for school graduates. After receiving a Master's degree, Ivan completed internships at Microseismik s.r.o.. (Czech Republic) and Shell (The Netherlands). From 2012 till 2015, Ivan participated in a Shell-funded research project aimed at inverting velocity anomalies from time-lapse seismic data. Since late 2013, Ivan worked on a Ph.D. thesis at the University of Hamburg. His thesis covers the aspects of multidimensional stacking for seismic data quality enhancement. After earning his Ph.D. Ivan has worked on short-term research projects at the Trofimuk Institute of Petroleum Geology and Geophysics (Russia) and the Norwegian University of Science and Technology (Norway). Since September 2017, Ivan has served as a research scientist at Freie Universität Berlin where he developed innovative approaches for microseismic data inversion. At that time Ivan was already highly interested in machine learning techniques and open-source ML software. Since 2019, Ivan offers courses on machine learning and deep learning for master students. Since 2020, Ivan leads a Data Science team in one of the tech companies in Berlin. Ivan actively reviews manuscripts for Geophysics and EAGE on the topics of machine learning and digitalization.

This course is supported by:

Preliminary Programmes

Course Fee

  • Individual Members of DGMK, DGG
University
185,00€
Industry
615,00 €
  • Non-Members
University
285,00 €
Industry
915,00 €

Coffee, tea, water and lunch are included in the course fee for all course days.
Please bring your own computer.

Registration Information

Please register for your binding registration and you will receive an invoice for the course fee after registration. If you cancel your registration by February 15, 2022, DGMK will refund any fees already paid minus a processing fee of EUR 30.-. After February 15, 2022, the full course fee must be invoiced.

The 2G rule applies to participation in the Short Course. With your registration you assure that you are verifiably vaccinated or recovered.

Registration

 

Information for DGMK members
Please log in to your DGMK.connect profile, go to Events and book your ticket for the event.

Information for non-members
If you are a non-member and would like to register for this event, please click here to create a profile. Once your profile is completed, it will be approved by our admin team. You will then receive a confirmation email and can register for the event via this event entry. Please remember your login details for subsequent events.

Event Coordinator

Dr. Susanne Kuchling

Head of the Geo-Energy Systems and Underground Technologies Department

Ines Musekamp

Coordination of geo-energy systems and underground technologies