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Avarice Engineer
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[[Category:Stories]] Short Version: Avarice Engineering is using machine learning to select the stimulus that will cause a person to associate displays of wealth with fitness. While it is not typically a goal in those exact terms, that is an unavoidable emergent behavior of broad penetration of ML-based retail marketing systems. My goal was to model a person's path: Stimulus -> Emotional State -> Action The strength I leaned on in my career was avarice engineering. I mostly worked for advertising, marketing, or retail companies. My job was to increase revenue. And I was on the leading edge of altering people's desires, algorithmically. At its core, it is simple. Look at every behavior you have seen from a person, quantify that data into an embedding - a list of floating point numbers, or vector of scalars - and based on that understanding of a person and how they react, you put the stimuli in front of them that will make them do what you want. In 2008, for a few months, I may have been the best in the world. I created and deployed a new method of ad targeting that intentionally used machine learning to manipulate people's emotions to increase their spending. I tripled sales compared to our cube farm of demographic targeting experts. For years, I dined out on the following story: We could, right now, create an algorithm that looks at your phone's historic location on Google Maps, and determine whether you attend alcoholics anonymous meetings. I can infer when you have a moment of weakness and miss a few meetings. There already exist, deployed as clients and built-in to many services, systems that monitor people's emotional states in real time, based on their social media postings. Those two identities are tied to each other in various ways, most easily because your cell phone just tells everyone your unique ID, across domain boundaries. I can know when you have had a weakness for drink, and what was the sequence of your emotional states leading up to that moment. I can look at your browsing history and see what stories you read in Google News that day. I can build that emotional state over the course of days by putting the right stimulus in front of you, and I can spring the trap when I feel your vulnerability via your clickstream. I can surface the Gaza story, or the Ukraine story, or the Noem story. I have dozens of versions of each story and I know the emotional and motivational palette of each with dozens of degrees of freedom. I can make you self-conscious if I want you to buy cosmetics or male enhancement pills. Angry if I want you to lash out. Morose if I want you to disengage. Happy if I want you to be receptive. Cynical if I want you to question your own team.
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