How are we controlled by artificial intelligence?
In an interview with Life magazine in November 1970, Minsky warned: "Once the computer gains control, we may never get it back. We will survive at their expense." In In one of his famous predictions, he posited: "If we're lucky, machines might decide to keep us as pets." great restrictions. Tencent will recommend a new drama that you will definitely like, Douyin will keep you watching, and Taobao will recommend your favorite items, but at what cost? You will never encounter someone in a video store again. A piece of great music, or a misplaced book in a bookstore. Every time you order takeout, you always look for the restaurant with the highest ratings and the most popularity. Unless it is recommended by an algorithm, you will definitely not try a new restaurant. Products that provide entertainment or make our lives easier may come with hidden costs. When we go online every day, every step we take is recorded. Online shopping provides a large amount of information and data. Guess who will get the data in the end. Soon, autonomous cars will decide who lives and dies in an accident, and if you survive, that's great. Maybe one day in the future, we will know when we will die, forcing us to just go to online dating platforms to find a spouse or change jobs on 58.com.
In a New Year’s column published on Edge, a website dedicated to science, technology and philosophy, science historian and author George Dyson believes that we have reached an inflection point. Dyson wrote: "It used to be simple: programmers wrote the instructions given to the machine. Since the machine was controlled by those instructions, the person who wrote the instructions controlled the machine." Today, the code itself has become active: the algorithm Model our personalities and predict our desires through our search history, credit card purchases and geolocation. As a result, a small number of people such as Mark Zuckerberg, Jack Ma, and Ma Huateng have become unimaginably rich.
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