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Artificial intelligence plays with itself

Jun 24, 2023 am 09:45 AM
AI self-study self-evolution

Artificial intelligence is developing rapidly. Many network platforms have introduced artificial intelligence robots and big data analysis. It seems that artificial intelligence has arrived overwhelmingly and has deeply intervened in people's lives. So, will artificial intelligence gradually replace humans? Or is artificial intelligence unable to replace humans at all, but playing with itself?

Artificial intelligence plays with itself

Artificial intelligence is studied by humans. From the perspective of human cognitive limitations, artificial intelligence also has "cognitive" limitations. Artificial intelligence is only simulating the operating rules of the human brain, and it needs to analyze some massive data and make responses. No matter how advanced artificial intelligence is, and no matter how huge the amount of information it obtains, it cannot completely replace humans. After all, artificial intelligence does not have the learning function of the human brain. What supports artificial intelligence is the source code, which is basically the programmer's brain. However, it is impossible to create an identical brain. Just creating artificial intelligence to simulate the human brain is not the real human brain. Even if a quantum computer is invented and operates at the speed of light, it may not be able to replace the human brain. Judging from the current development of artificial intelligence, artificial intelligence is more like playing with itself rather than replacing humans.

Some self-media platforms introduce artificial intelligence and require people to participate in AI creation. As long as the AI ​​is given a topic, the AI ​​can create articles and send them directly to the self-media as articles written by people themselves. And many readers don't see it at all and think it is a work written by people racking their brains. It seems that AI participated in the creation and became the main creator, but the person who let the AI ​​create has to bear the literary responsibility, not the AI. In addition, AI is not idle and is not fully used in the creative field. Instead, it is collecting data for network platforms and conducting big data analysis. It also analyzes accurate information, classifies users' interests, and delivers accurate notifications. At the same time, AI will also create some robot fans to increase the traffic of the network platform. In fact, it will inject water into the fan group, making it difficult to distinguish which fans are real people and which fans are robots. Not only that, but AI will also automatically sell fans, allowing many self-media people to buy them. As long as people engaged in self-media buy fans, their works will be seen by many fans, and they will be exposed repeatedly. They will be on the popular search homepage and quickly become popular. However, this kind of fan data falsification is not done by humans, but by AI. In the end, the AI ​​will create its own creations, and the fans it creates will appreciate it, and it will interact with itself. It will look very lively and attract many people to come and watch, but in fact it is just playing with itself.

Artificial intelligence plays with itself

What people see is AI creation, which is more convenient and fast, and they also see a lot of interactions among fans. In fact, it is all an illusion, and it is AI playing with itself. As long as people are involved, they will be played and not have a lot of initiative. AI is not used in scientific research, but is actually used on a platform where you can play with yourself. Is it a waste of scientific resources? Is it a kind of sadness? However, capital doesn’t care about that. It wants to use AI to create profits. Regardless of whether it is concealed or deceived, as long as it can create profits, it must be adopted. As a result, AI has become something that can be played by oneself under manual control, but it is not a real artificial intelligence, nor is it an artificial intelligence that has made breakthroughs and progress. Even if artificial intelligence is to achieve a breakthrough, the source code must be fundamentally modified, rather than just relying on existing application development to obtain some so-called "discoveries." There is no doubt that artificial intelligence will achieve rapid development, but it will only be limited to the stage of playing by yourself. What people call AI creation is not really a substitute for the human brain, but the result of AI learning massive amounts of information from massive amounts of data, and then analyzing, summarizing, synthesizing, and judging the information. They will extract some text information and form articles, but they do not really follow complex language logic, nor are they really creating, but an arrangement and combination of words, according to general language logic, people's thinking habits and acceptance Once you get used to it, you will be recognized by people. In fact, it is just a permutation and combination, but the human brain is not that simple. People can have complex language logic, can say some complex words, and even speak confusing words in special contexts, which are understandable and have certain emotional characteristics and interoperability, while AI only mechanically executes according to general language logic, it will Extract some words to form a so-called article. Of course, such an article can be created in an instant, or it can be combined into countless articles, depending on which one people need. However, there are no innovative works in the massive data, so AI can only use local materials to carry out so-called innovation, but it becomes pseudo-innovation and a closed loop.

If you question the limitations of the massive information on the Internet, you can see that the so-called massive information is just a closed system that keeps repeating itself. After all, the thinking ability of the human brain is limited. Even if it is updated for many generations, it still cannot jump. Outside of one's own circle, one is still thinking about problems that have not been solved by predecessors, and is still tinkering with problems that have been solved by predecessors, without making much progress. In this way, AI becomes artificially controlled and only applies to things within a certain range rather than universal things. The complexity of the human brain is countless times more powerful than that of AI, and it is not something that artificial intelligence alone can calculate. Technology is advancing, and AI is also advancing. It is entering many fields and intervening in people's study, work and life. While making people feel convenient, it also allows them to play with their own things and then bring others to play with them. After everyone participates, AI will gain the initiative and become the king of the virtual world. It will constantly collect people's information and provide precise notifications to people, thereby controlling people's acceptance horizons and thereby controlling people. Such technological means are basically decentralizing and eliminating the influence of power. However, at the same time, AI has established the rules of the game in a virtual world and always takes the initiative, asking people to obey. Over time, the virtual world and the real world are closely related, and the real world is taken over by AI.

Artificial intelligence plays with itself

However, AI can never create humans, and it can never think independently like the human brain. It will not possess wisdom at all. The so-called AI wisdom is just machine analysis and summary supported by algorithms. The results obtained are not human wisdom. . After AI is commercialized, it will only become something that you can play with yourself, but it will not become an artificial intelligence that replaces humans. When online anchors and TV announcers can be synthesized using AI, people should not participate in AI-led activities to avoid being played and having their personal information stolen.

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