Machine Learning for Petrophysics
Offered By: BUOG SPE Student Chapter via YouTube
Course Description
Overview
Dive into a comprehensive 2.5-hour lecture on Machine Learning applications in Petrophysics, delivered by Engineer Osama Osman. Explore the intersection of data science and petroleum engineering, learning how advanced algorithms can revolutionize well log analysis, reservoir characterization, and formation evaluation. Gain insights into supervised and unsupervised learning techniques specifically tailored for petrophysical data interpretation, and discover how these methods can enhance decision-making in oil and gas exploration and production. Understand the potential of machine learning to improve accuracy in porosity and permeability predictions, facies classification, and fluid saturation estimations. This in-depth presentation, organized by the BUOG SPE Student Chapter, equips petroleum engineers and geoscientists with cutting-edge knowledge to leverage artificial intelligence in solving complex petrophysical challenges.
Syllabus
Machine Learning for Petrophysics, Eng. Osama Osman
Taught by
BUOG SPE Student Chapter
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