When will singularity happen? 1700 expert opinions of AGI 2023
In the AlphaGo example, the output is a legal move in the game of GO. We might be shocked by it making a particular move, but it is nonetheless a the game of GO. Knowledge of training data can also help to determine unacceptable algorithms which will simply reinforce societal stereotypes (Koepke 2016; Ensign et al. 2017). Predictive policing algorithms which rely upon training data that is biased against African Americans simply should not be used. The knowledge of this bias would not lead to its envelopment; rather, it should, if possible, lead to fixing the training data.
What are the 4 stages of AI?
- Reactive machines. Reactive machines are AI systems that have no memory and are task specific, meaning that an input always delivers the same output.
- Limited memory machines. The next type of AI in its evolution is limited memory.
- Theory of mind.
- Self-awareness.
I have too many thoughts and too many questions to be able to process it all, so maybe making it personal is the best way to respond. The term describes a period of low consumer, public, and private interest in AI which leads to decreased research funding, which, in turn, leads to few breakthroughs. Both private investors and the government lost interest in AI and halted their funding due to high cost versus seemingly low return. This AI Winter came about because of some setbacks in the machine market and expert systems, including the end of the Fifth Generation project, cutbacks in strategic computing initiatives, and a slowdown in the deployment of expert systems. Computer-integrated manufacturing uses computers to control the production process.
TABLE OF CONTENTSAI Risk #1: Will AI Kill Us All?
DARPA distinguishes between three different waves of AI, each with its own capabilities and limitations. Out of the three, the third one is obviously the most exciting, but to understand it properly we’ll need to go through the other two first. Recently, DARPA’s Information Innovation Office has released a new Youtube clip explaining the state of the art of AI, outlining its capabilities in the present – and considering what it could do in the future.
The Cortis machine for detecting cardiac arrest, AlphaGo, machines for analyzing X-rays (Litjens et al. 2017), spam filtering, fraud detection, etc., are all enveloped—and many of them are valuable with regard to helping us solve serious problems. Furthermore, we can measure how effective all these machines are. Most importantly, envelopment is a workaround for AI’s transparency problem. If enveloped, AI machines can remain black boxes—therefore, ensuring that the benefits of AI are kept.
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Such a system could potentially undergo recursive self-improvement, triggering an intelligence explosion leaving human intellect far behind. By inventing revolutionary new technologies, such a superintelligence might help us eradicate war, disease, and poverty, and so the creation of strong AI might be the biggest event in human history. Some experts have expressed concern, though, that it might also be the last, unless we learn to align the goals of the AI with ours before it becomes superintelligent. From SIRI to self-driving cars, artificial intelligence (AI) is progressing rapidly. While science fiction often portrays AI as robots with human-like characteristics, AI can encompass anything from Google’s search algorithms to IBM’s Watson to autonomous weapons. Some people worry that AI and machine learning will eliminate jobs.
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Who owns AI?
(That is, the company that owns an inventive AI is entitled to the patents for its creations. More generally, the company owning a creative AI is entitled to the intellectual property in the outputs it creates.)