Geoscience Reference
In-Depth Information
based research problems. By adopting the general framework provided in Section 8.3, you should be
able to carefully secure transparent and repeatable research, moving well on your way to discover-
ing new and useful solutions. If in doubt, then the only answer is of course to take GP out for a test
drive, treating it neither as a toy nor permitting it to conjure up images of scary dragons or whatever,
but rather as a practical knowledge discovery and problem-solving tool that is calling out to you, and
your geographical science-based research, with an open invitation to gain skills and proficiency in
what is on offer and begin the process of becoming more fully engaged!
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