Mark Fellgett (British Geological Survey)
KEYNOTE: The Virtual Geoscience Revolution
John Howell (University of Aberdeen)
Virtual Fieldtrip - Zagros
Richard Jones (University of Durham)
Putting data at your fingertips: Utilising data analytics in E&P Information Management
Christopher Frost (DataCo Global Limited)
Accessing Knowledge in Geoscience Text using Natural Language Processing
Richard Jones (University of Durham)
Day 2
KEYNOTE: The Role of Data Regulating the UK Oil & Gas Industry
Nick Richardson (OGA)
Over 120 years worth of hydrocarbon exploration, an example of how legacy data can address todays challenges.
Mark Fellgett (British Geological Survey)
For open source in situ stress data see: Heidbach, Oliver; Rajabi, Mojtaba; Reiter, Karsten; Ziegler, Moritz; WSM Team (2016): World Stress Map Database Release 2016. GFZ Data Services, doi:10.5880/WSM.2016.001.
Digital Transformation in the North Sea
Stephen Roberts (The Oil and Gas Technology Centre)
KEYNOTE: Digitalization and Data in Field Development
Liz Wild (Shell)
Virtual Glaciers and Glaciated Landscapes
Derek McDougall (University of Worcester)
Improving access to UKCS Petrotechnical Data – the next step in a 20 year journey
Daniel Brown (Common Data Access Limited)
The worldwide field course: use of 3D outcrop imagery in training
Gary Nichols (RPS)
KEYNOTE: Big Data and the British Geological Survey
Garry Baker (British Geological Survey)
IGCP 648 Efforts to Compile Structured Data for Palaeogeographic Studies: some lessons learned
Bruce Eglington (University of Saskatchewan)
Data Mining and Visualization of Detrital Zircon Data: Assessment of Palaeogeographic and Geodynamic Setting Using Data from Laurentia
Dean Meek (University of Saskatchewan)
Day 3
KEYNOTE: When Failure (a lot of failure) Becomes an Option - Machine and Deep Learning on Seismic Data
John Thurmond (Statoil)
How machine learning systems can extract more qualified information from seismic acquisition and processing reports.
Henri Blondelle (AgileDD)
KEYNOTE: Machine Learning Assisted Petroleum Geoscience: Can a computer learn to map stratigraphic architecture and reservoir quality by training on data?
Eirik Larsen/Chris Jackson (Earth Science Analytics)
Making the case for Big Data petrography
Jenny Omma (Rocktype Ltd)
Ensemble Learning Approach to Lithofacies Classification Using Well Logs
Didi Sher Ooi (University of Bristol)
Python and AI basics coding workshop for Geoscientists
The objective of this short course was to demonstrate the flexibility and ease of coding in Python and AI ,coupled to the industry standard RokDoc GeoPrediction software, enabling the user to implement their own desired algorithms in Python. We started by teaching some basic well log operations using Python and the external interface to RokDoc. Then we extended this application to basic machine learning algorithms for facies classification using freely available Python libraries. The course was for entry level practitioners and involves hands on coding experiments, hence having some Python skills is an advantage but not essential. We were aiming for early stage professional Geoscientists and Engineers in line with conference objectives.
The instructors were Russell Taylor and Dr Ehsan Naeini of Ikon Science.
Date: 1st March 2018 10-AM to 3PM.
Venue: Ikon Science, 1 The Crescent, Surbiton, London, KT64BN