Vicarious, a startup trying to discover the rules that govern intelligence, has raised $15 million in a first round of funding from tech luminaries including Good Ventures, the fund created by Facebook Co-founder Dustn Moskowitz and Peter Thiel’s Founders Fund. The money isn’t to help commercialize its technology however, it’s basically R&D spending for a big tech undertaking.
Vicarious wants to build a series of algorithms that mimic the way the mammalian brain processes and applies information — in short it wants to build software that will grant computers intelligence. The first concrete product the Union City, Calif.-based startup aims to build is a human-like object recognition system, but this is something that co-founder and CTO Dileep George estimates is three to four years away. Apparently the long time frame is just fine with investors, and what makes Vicarious such an audacious bet.
CEO and Co-Founder D. Scott Phoenix explains that the company isn’t focused on commercialization anytime soon as a means to preserve the research into building a truly robust set of intelligence algorithms, as opposed to an industry specific algorithm that leads to limited artificial intelligence — some kind of idiot savant. “We will continue working on solving the core problem.” Phoenix says. “I think it has held back AI when others have tried and found something that works well in a particular domain and then they refine that. Then the tech gets more narrow over time.”
Building computer hardware or software modeled on the human brain is the kind of big tech problem that Peter Thiel, a former PayPal executive and a partner with Founders Fund has called on entrepreneurs to do. In this case he’s putting money where his mouth is. And the brain as a computer is like the Mt. Everest of computer science problems. When compared with CPUs or even newer forms of silicon brains, the brain is a far more efficient processor. From a Scientific American article comparing the human brain to IBM’s Watson AI project:
IBM also has another effort at AI, although a much less literal one than the hardware efforts. Watson takes loads of text on a certain topic and then has algorithms that help it detect the probability of a relevant response when people ask questions of that material. IBM is building anew business model around offering Watson as a service to help in the medical and financial fields.
Google also is delving into research that ties into artificial intelligence and machine learning. A recent research paper on training a computer to “recognize” an image of a cat without outside supervision is a type of AI. And while George of Vicarious explains that its research is different because it is broader and will be capable of learning from moving images as opposed to stills taken from videos, the core idea is related.
There are plenty of other companies attempting to offer at least the veneer of artificial intelligence from Apple’s Siri technology to startups such as ai-one, which is building a software development kitto add AI to other apps. And plenty of other companies are using the fruit of cheaper access to lots of data to make programs and predictive models that look like intelligence.
But computers today rely on people to tell them what to do — that’s what programming is for — but giving them the ability to recognize patterns and then relate those patterns to an understanding about how the world works frees them from the constraints of programming. Of course, once they have that freedom it’s unclear what that means for computer science, programming and the current job market. It’s also unclear how far that freedom can really take a computer. Just giving it intelligence won’t mean it can “think” for itself.
Either way, Vicarious is a startup playing in a field with giants, with a big idea about changing the world.
Souce : GigaOM
Vicarious wants to build a series of algorithms that mimic the way the mammalian brain processes and applies information — in short it wants to build software that will grant computers intelligence. The first concrete product the Union City, Calif.-based startup aims to build is a human-like object recognition system, but this is something that co-founder and CTO Dileep George estimates is three to four years away. Apparently the long time frame is just fine with investors, and what makes Vicarious such an audacious bet.
CEO and Co-Founder D. Scott Phoenix explains that the company isn’t focused on commercialization anytime soon as a means to preserve the research into building a truly robust set of intelligence algorithms, as opposed to an industry specific algorithm that leads to limited artificial intelligence — some kind of idiot savant. “We will continue working on solving the core problem.” Phoenix says. “I think it has held back AI when others have tried and found something that works well in a particular domain and then they refine that. Then the tech gets more narrow over time.”
The human brain is computing’s Mt. Everest
Building computer hardware or software modeled on the human brain is the kind of big tech problem that Peter Thiel, a former PayPal executive and a partner with Founders Fund has called on entrepreneurs to do. In this case he’s putting money where his mouth is. And the brain as a computer is like the Mt. Everest of computer science problems. When compared with CPUs or even newer forms of silicon brains, the brain is a far more efficient processor. From a Scientific American article comparing the human brain to IBM’s Watson AI project:
So a typical adult human brain runs on around 12 watts—a fifth of the power required by a standard 60 watt lightbulb. Compared with most other organs, the brain is greedy; pitted against man-made electronics, it is astoundingly efficient. IBM’s Watson, the supercomputer that defeated Jeopardy! champions, depends on ninety IBM Power 750 servers, each of which requires around one thousand watts.Thus in both hardware and software the search for a silicon brain has absorbed researchers. “We want to help humanity thrive,” says Phoenix. “Human progress is limited by the number of people and their training to solve big problems, so by understanding the core algorithms that produce intelligence we can build computers that are 30 billion times faster and dramatically increase the rates of problem solving on behalf of humanity.”
To build a better AI you don’t need to map the brain.
There are countless research efforts seeking the same thing as Vicarious, but they are going about it in different ways. For example, both IBM and HP are trying to build out a silicon version of the brainin order to create neural computers capable of processing information in different ways– more akin to how humans do it. IBM actually showed off the first chips capable of cognitive computing last year.IBM also has another effort at AI, although a much less literal one than the hardware efforts. Watson takes loads of text on a certain topic and then has algorithms that help it detect the probability of a relevant response when people ask questions of that material. IBM is building anew business model around offering Watson as a service to help in the medical and financial fields.
Google also is delving into research that ties into artificial intelligence and machine learning. A recent research paper on training a computer to “recognize” an image of a cat without outside supervision is a type of AI. And while George of Vicarious explains that its research is different because it is broader and will be capable of learning from moving images as opposed to stills taken from videos, the core idea is related.
There are plenty of other companies attempting to offer at least the veneer of artificial intelligence from Apple’s Siri technology to startups such as ai-one, which is building a software development kitto add AI to other apps. And plenty of other companies are using the fruit of cheaper access to lots of data to make programs and predictive models that look like intelligence.
But computers today rely on people to tell them what to do — that’s what programming is for — but giving them the ability to recognize patterns and then relate those patterns to an understanding about how the world works frees them from the constraints of programming. Of course, once they have that freedom it’s unclear what that means for computer science, programming and the current job market. It’s also unclear how far that freedom can really take a computer. Just giving it intelligence won’t mean it can “think” for itself.
Either way, Vicarious is a startup playing in a field with giants, with a big idea about changing the world.
Souce : GigaOM
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