Archive for the ‘Artificial General Intelligence’ Category

We’ve Been Here Before: AI Promised Humanlike Machines In 1958 – The Good Men Project

ByDanielle Williams, Arts & Sciences at Washington University in St. Louis

A roomsize computer equipped with a new type of circuitry, the Perceptron, was introduced to the world in 1958 in a brief news story buried deep in The New York Times. The story cited the U.S. Navy as saying that the Perceptron would lead to machines that will be able to walk, talk, see, write, reproduce itself and be conscious of its existence.

More than six decades later, similar claims are being made about current artificial intelligence. So, whats changed in the intervening years? In some ways, not much.

The field of artificial intelligence has been running through a boom-and-bust cycle since its early days. Now, as the field is in yet another boom, many proponents of the technology seem to have forgotten the failures of the past and the reasons for them. While optimism drives progress, its worth paying attention to the history.

The Perceptron, invented by Frank Rosenblatt, arguably laid the foundations for AI. The electronic analog computer was a learning machine designed to predict whether an image belonged in one of two categories. This revolutionary machine was filled with wires that physically connected different components together. Modern day artificial neural networks that underpin familiar AI like ChatGPT and DALL-E are software versions of the Perceptron, except with substantially more layers, nodes and connections.

Much like modern-day machine learning, if the Perceptron returned the wrong answer, it would alter its connections so that it could make a better prediction of what comes next the next time around. Familiar modern AI systems work in much the same way. Using a prediction-based format, large language models, or LLMs, are able to produce impressive long-form text-based responses and associate images with text to produce new images based on prompts. These systems get better and better as they interact more with users.

In the decade or so after Rosenblatt unveiled the Mark I Perceptron, experts like Marvin Minsky claimed that the world would have a machine with the general intelligence of an average human being by the mid- to late-1970s. But despite some success, humanlike intelligence was nowhere to be found.

It quickly became apparent that the AI systems knew nothing about their subject matter. Without the appropriate background and contextual knowledge, its nearly impossible to accurately resolve ambiguities present in everyday language a task humans perform effortlessly. The first AI winter, or period of disillusionment, hit in 1974 following the perceived failure of the Perceptron.

However, by 1980, AI was back in business, and the first official AI boom was in full swing. There were new expert systems, AIs designed to solve problems in specific areas of knowledge, that could identify objects and diagnose diseases from observable data. There were programs that could make complex inferences from simple stories, the first driverless car was ready to hit the road, and robots that could read and play music were playing for live audiences.

But it wasnt long before the same problems stifled excitement once again. In 1987, the second AI winter hit. Expert systems were failing because they couldnt handle novel information.

The 1990s changed the way experts approached problems in AI. Although the eventual thaw of the second winter didnt lead to an official boom, AI underwent substantial changes. Researchers were tackling the problem of knowledge acquisition with data-driven approaches to machine learning that changed how AI acquired knowledge.

This time also marked a return to the neural-network-style perceptron, but this version was far more complex, dynamic and, most importantly, digital. The return to the neural network, along with the invention of the web browser and an increase in computing power, made it easier to collect images, mine for data and distribute datasets for machine learning tasks.

Fast forward to today and confidence in AI progress has begun once again to echo promises made nearly 60 years ago. The term artificial general intelligence is used to describe the activities of LLMs like those powering AI chatbots like ChatGPT. Artificial general intelligence, or AGI, describes a machine that has intelligence equal to humans, meaning the machine would be self-aware, able to solve problems, learn, plan for the future and possibly be conscious.

Just as Rosenblatt thought his Perceptron was a foundation for a conscious, humanlike machine, so do some contemporary AI theorists about todays artificial neural networks. In 2023, Microsoft published a paper saying that GPT-4s performance is strikingly close to human-level performance.

But before claiming that LLMs are exhibiting human-level intelligence, it might help to reflect on the cyclical nature of AI progress. Many of the same problems that haunted earlier iterations of AI are still present today. The difference is how those problems manifest.

For example, the knowledge problem persists to this day. ChatGPT continually struggles to respond to idioms, metaphors, rhetorical questions and sarcasm unique forms of language that go beyond grammatical connections and instead require inferring the meaning of the words based on context.

Artificial neural networks can, with impressive accuracy, pick out objects in complex scenes. But give an AI a picture of a school bus lying on its side and it will very confidently say its a snowplow 97% of the time.

In fact, it turns out that AI is quite easy to fool in ways that humans would immediately identify. I think its a consideration worth taking seriously in light of how things have gone in the past.

The AI of today looks quite different than AI once did, but the problems of the past remain. As the saying goes: History may not repeat itself, but it often rhymes.

Danielle Williams, Postdoctoral Fellow in Philosophy of Science, Arts & Sciences at Washington University in St. Louis

This article is republished from The Conversation under a Creative Commons license. Read the original article.

Previously Published on theconversation.com with Creative Commons License

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We've Been Here Before: AI Promised Humanlike Machines In 1958 - The Good Men Project

Google will spend more than $100 billion on AI, exec says – Quartz

After comparing the billions of dollars going into AI development to crypto hype, Googles AI chief executive said Monday the company will spend over $100 billion over time to develop AI technology.

TSMC beat on Q2 sales expectations driven by AI boom, Nvidia, and Apple

Demis Hassabis, chief executive of Google DeepMind, talked about the tech giants investment into AI during a TED conference in Vancouver on Monday, where he was asked about OpenAIs and Microsofts reported plans for a U.S.-based data center referred to as Stargate, Bloomberg reported. The data center would house a supercomputer made up of millions of AI chips, and could cost up to $100 billion, The Information reported, citing unnamed sources.

We dont talk about our specific numbers, but I think were investing more than that over time, Hassabis said in response to the question about Stargate. He didnt offer further details on Googles spending plans, Bloomberg reported. Hassabis, who co-founded AI startup DeepMind in 2010 before it was acquired by Google in 2014, reportedly added that Google parent Alphabet has better computing power than its rivals, including Microsoft.

Thats one of the reasons we teamed up with Google back in 2014, is we knew that in order to get to AGI we would need a lot of compute, Hassabis said. Artificial general intelligence (AGI) is the point at which AI reaches human-level knowledge across a range of tasks. Google had and still has the most computers, Hassabis said.

In March, Hassabis told the Financial Times that the billions of dollars being poured into AI is reminiscent of crypto hype, and is taking attention away from the phenomenal science and research behind its development.

The investment into AI brings with it a whole attendant bunch of hype and maybe some grifting, he said, comparing it to crypto and similar areas, adding that the sentiment has now spilled over into AI, which I think is a bit unfortunate.

However, Hassabis said he thinks the industry is only scratching the surface of what is possible. Were at the beginning, maybe, of a new golden era of scientific discovery, a new Renaissance, he said.

See the rest here:

Google will spend more than $100 billion on AI, exec says - Quartz

Tech companies want to build artificial general intelligence. But who decides when AGI is attained? – The Bakersfield Californian

Theres a race underway to build artificial general intelligence, a futuristic vision of machines that are as broadly smart as humans or at least can do many things as well as people can.

Achieving such a concept commonly referred to as AGI is the driving mission of ChatGPT-maker OpenAI and a priority for the elite research wings of tech giants Amazon, Google, Meta and Microsoft.

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More:

Tech companies want to build artificial general intelligence. But who decides when AGI is attained? - The Bakersfield Californian

Tech companies want to build artificial general intelligence. But who decides when AGI is attained? – The Caledonian-Record

Theres a race underway to build artificial general intelligence, a futuristic vision of machines that are as broadly smart as humans or at least can do many things as well as people can.

Achieving such a concept commonly referred to as AGI is the driving mission of ChatGPT-maker OpenAI and a priority for the elite research wings of tech giants Amazon, Google, Meta and Microsoft.

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Tech companies want to build artificial general intelligence. But who decides when AGI is attained? - The Caledonian-Record

What is AGI and how is it different from AI? – ReadWrite

As artificial intelligence continues to develop at a rapid pace, its easy to wonder where this new age is headed.

The likes of ChatGPT, Midjourney and Sora are transforming the way we work through chatbots, text-to-image and text-to-video generators, while robots and self-driving cars are helping us perform day-to-day tasks. The latter isnt as mainstream as the former, but its only a matter of time.

But wheres the limit? Are we headed towards a dystopian world run by computers and robots? Artificial general intelligence (AGI) is essentially the next step but as things stand, were a little way off from that becoming a reality.

AGI is considered to be strong AI, whereas narrow AI is what we know to be generative chatbots, image generators and coffee-making robots.

Strong AI refers to software that has the same, or better, cognitive abilities as a human being, meaning it can solve problems, achieve goals, think and learn on its own, without any human input or assistance. Narrow AI can solve one problem or complete one task at a time, without any sentience or consciousness.

This level of AI is only seen in the movies at the moment, but were likely headed towards this level of AI-driven technology in the future. When that might be remains open to debate some experts claim its centuries away, others believe it could only be years. However, Ray Kurzweils book The Singularity is Near predicts it to be between 2015 and 2045, which was seen as a plausible timeline by the AGI research community in 2007although its a pretty broad timeline.

Given how quickly narrow AI is developing, its easy to imagine a form of AGI in society within the next 20 years.

Despite not yet existing, AGI can theoretically perform in ways that are indistinguishable from humans and will likely exceed human capacities due to fast access to huge data sets. While it might seem like youre engaging with a human when using something like ChatGPT, AGI would theoretically be able to engage with humans without necessarily having any human intervention.

An AGI systems capabilities would include the likes of common sense, background knowledge and abstract thinking, as well as practical capabilities, such as creativity, fine motor skills, natural language understanding (NLU), navigation and sensory perception.

A combination of all of those abilities will essentially give AGI systems high-level capabilities, such as being able to understand symbol systems, create fixed structures for all tasks, use different kinds of knowledge, engage in metacognition, handle several types of learning algorithms and understand belief systems.

That means AGI systems will be ultra-intelligent and may also possess additional traits, such as imagination and autonomy, while physical traits like the ability to sense, detect and act could also be present.

We know that narrow AI systems are widely being used in public today and are fast becoming part of everyday life, but it currently needs a human to function at all levels. It requires machine learning and natural language processing, before requiring human-delivered prompts in order to execute a task. It executes the task based on what it has previously learned and can essentially only be as intelligent as the level of information humans give it.

However, the results we see from narrow AI systems are not beyond what is possible from the human brain. It is simply there to assist us, not replace or be more intelligent than humans.

Theoretically, AGI should be able to undertake any task and portray a high level of intelligence without human intervention. It will be able to perform better than humans and narrow AI at almost every level.

Stephen Hawking warned of the dangers of AI in 2014, when he told the BBC: The development of full artificial intelligence could spell the end of the human race.

It would off on its own and redesign itself at an ever-increasing rate. Humans, who are limited by slow biological evolution, couldnt compete and would be superseded.

Kurzweil followed up his prediction in The Singularity is Near by saying in 2017 that computers will achieve human levels of intelligence by 2029. He predicted that AI itself will get better exponentially, leading to it being able to operate at levels beyond human comprehension and control.

He then went on to say: I have set the date 2045 for the Singularity which is when we will multiply our effective intelligence a billionfold by merging with the intelligence we have created.

These discussions and predictions have, of course, sparked debates surrounding the responsible use of CGI. The AI we know today is viewed to be responsible and there are calls to regulate many of the AI companies to ensure these systems do not get out of hand. Weve already seen how controversial and unethical the use of AI can be when in the wrong hands. Its unsurprising, then, that the same debate is happening around AGI.

In reality, society must approach the development of AGI with severe caution. The ethical problems surrounding AI now, such as the ability to control biases within its knowledge base, certainly point to a similar issue with AGI, but on a more harmful level.

If an AGI system can essentially think for itself and no longer has the need to be influenced by humans, there is a danger that Stephen Hawkings vision might become a reality.

Featured Image: Ideogram

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What is AGI and how is it different from AI? - ReadWrite