Think about a meaningful interaction in nature that you have had. Now characterize it in such a way that you could imagine many such examples of it happening, and even though each example would be at least a little different from the others, you would not have a problem recognizing each one as essentially the same form of interaction. An example includes Walking along the Edges of Water and Land (e.g., around Green Lake or at the beach in Golden Gardens). We call these characterizations interaction patterns. By assembling a verb, preposition, and nature noun, the profound internal experiences we feel in nature are given vernacular expression. Over the last five years, my research lab has empirically generated over 150 interaction patterns in diverse landscapes. Currently, interaction patterns have to be identified by an expert. This is where my novel research project comes in. I am using an Application Programming Interface (API) called Clarifai to develop an Artificial Intelligence (AI) program that can predict possible interaction patterns in a landscape from photo data. I anticipate having worked with approximately 10,000 photos to train the system on around two dozen interaction patterns by the end of spring quarter 2019. My goal is to develop a proof-of-concept for our novel approach, which could then be scaled upward with potentially large implications for conservation and urban design. For example, a future AI system like this one could predict the range and depth of interaction patterns experienced in a landscape that is under threat of development, to argue that that landscape is worth preserving. Our future AI system could also be integrated into the industry-standard urban design software AutoCAD, to optimize the integration of interaction patterns into urban design. In short, a proof-of-concept now: global reach later as a hopeful endpoint.