Unconventional Resources Technology Conference (URTeC) | 1 - 3 August 2016 | San Antonio, Texas

Uniting the Disciplines. Driving Results.

Published
American Association of Petroleum Geologists (AAPG)
AAPG has two pre-conference short courses available. First, "Unconventional Reservoir Assessment – An Integrated Approach", July 30, 2016. This course will assist geologists, geophysicists, engineers, and laboratory technicians become acquainted with the various disciplines that must be integrated for successful unconventional reservoir exploration and production. The second course for geologists, geophysicists, petrophysicists and reservoir engineers, is "Integrating Data from Nano- to Macro-Scale: Improving Characterizations of Unconventional Plays", July 31, 2016, and will evaluate data from the nano- to macro-scale in order to show how different types of data can be integrated in the evaluation of organic shale reservoirs.

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Award-winning 100% online MBA in Energy Leadership from Texas A&M. In-state and low-cost "border state" tuition for Texas, Oklahoma, Louisiana, and Arkansas residents. Register now for Fall.  Contact Dr. Larry R. Davis ( ) MBA Program Director.

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