Last month, Google’s AI division, DeepMind,
announced that its computer had defeated Europe’s Go champion in five
straight games. Go, a strategy game played on a 19×19 grid, is
exponentially more difficult for a computer to master than chess—there
are 20 possible moves to choose from at the start of a chess game
compared to 361 moves in Go—and the announcement was lauded as another
landmark moment in the evolution of artificial intelligence.
Google, Facebook, and IBM
have all gone all-in on brain-like computers that promise to emulate
the mind of a human. The ability to learn and recognize patterns is
viewed as a key next step in the evolution of AI. But Oshiorenoya Agabi
believes the brain-like processors are missing one key component: actual
brains.
Or, at least, living neurons. His startup, Koniku, which just completed a stint at the biotech accelerator IndieBio,
touts itself as “the first and only company on the planet building
chips with biological neurons.” Rather than simply mimic brain function
with chips, Agabi hopes to flip the script and borrow the actual
material of human brains to create the chips. He’s integrating
lab-grown neurons onto computer chips in an effort to make them much
more powerful than their standard silicon forebears.
Koniku is fundraising towards a
first-round goal of $6.3 million, Agabi says. It has already landed
customers in the aviation and pharmaceuticals industries, like
AstraZeneca, the UK-based pharma company, Agabi says, and Boeing has
signed on with a letter of intent to use the tech in chemical-detecting
drones. The first batch of neuron-abetted chips are set to ship in the
next few months. Agabi says that one customer, a drone company, hopes
the processors will prove superior in detecting methane leaks in oil
refineries. Another aims to use the processors to model the effect
certain drugs will have on a human brain.
The future, Agabi believes, will run on a computer that’s much more alive.
Part of Koniku’s funding success seems
to come from his genuine, even romantic vision of neuron-based chips as
the future of processing. When I interviewed Agabi recently, his
excitement over the future of neurotechnology was palpable.
Agabi, who was born in Nigeria, told me
he first became interested in machine learning while teaching a
pick-and-place robotic arm to classify objects for the Swiss robotics
company, Neuronics. After eight years, he left the company to pursue his
Masters in theoretical physics, focusing his thesis on the challenge of
interfacing neurons with a robot. He spent the next four working to
build a robotic arm that could attach to an amputee, eventually leaving
to move to London to pursue his PhD in bioengineering.
Basically, he hopes to build a computer chip with living, learning processors.
Recognizing the imposing nature of his resume, the engineer paused for a moment, attempting to simplify his life’s work. “Essentially, for the last fifteen years, I have worked to understand how neurons talk to each other,” he said. “I’ve worked on how to communicate with individual neurons—how to read information from them and write information into them.”
Recognizing the imposing nature of his resume, the engineer paused for a moment, attempting to simplify his life’s work. “Essentially, for the last fifteen years, I have worked to understand how neurons talk to each other,” he said. “I’ve worked on how to communicate with individual neurons—how to read information from them and write information into them.”
This ability to code specific tasks into
neurons, born out of Agabi’s specialized history, is the essence of
what Koniku is hoping to accomplish. Through years of teaching machines
to learn, and through the study of the brain’s mechanics, he believes
that his team will be able to organize living neurons into circuits
built to perform precise tasks—basically, he hopes to build a computer
chip with living, learning processors.
“We take the radical view that you can actually compute with real, biological neurons,” he said.
A Komiku chip.
Since the silicon transistor was created in 1947, the amount of transistors that can be crammed onto a chip has grown from a few thousand to more than 2 billion. Today, chip manufacturers have shrunk the size of each silicon transistor to the equivalent of three strands of DNA. Agabi said that because there is a limit to how tiny you can shrink the deep lens of a silicon transistor (IBM announced the creation of a 7 nanometers transistor in July, and a single silicon atom is 0.2 nm), silicon-based processing can only get so powerful.
A Komiku chip.
Since the silicon transistor was created in 1947, the amount of transistors that can be crammed onto a chip has grown from a few thousand to more than 2 billion. Today, chip manufacturers have shrunk the size of each silicon transistor to the equivalent of three strands of DNA. Agabi said that because there is a limit to how tiny you can shrink the deep lens of a silicon transistor (IBM announced the creation of a 7 nanometers transistor in July, and a single silicon atom is 0.2 nm), silicon-based processing can only get so powerful.
“In the cycle of accelerating computing
power, we’ve gone from the slate to the paper, from the paper to
mechanical systems, mechanical systems to the vacuum tube, vacuum tubes
to silicon,” he said. “And now we are moving to neurons.”
For a frame of reference, Dr. Laeeq
Evered, a professor of neuropsychology at the Wright Institute, tells me
that “a piece of brain matter the size of a grain of sand contains
approximately 100,000 neurons, 2 million axons, and 1 billion synapses.”
There is, of course, a quixotic quality
to the dream of actually creating an artificial chip so small and
powerful, but Agabi feels he’s found the path to it. I asked Dr. Evered
whether he thought it impossible to ever build a chip as powerful as the
human brain.
“That’s what I think, but I think we’ve
all been astounded by the progress of technology,” he said, and laughed.
“So, we’ll see.”
Agabi told me he believes any
hesitations around neuron-based chips will vanish when Koniku can
successfully and publicly exhibit the chip’s practical application. “You
want to build ideas that people will say, ‘That’s so obvious.’ Today,
it’s not that way because no one has demonstrated this yet,” he said.
“But I feel very confident that in two years when we demonstrate it, it
will become like, ‘Ah, this is obvious.’”
For a third opinion, I turned to Sherif Eid, a systems engineer behind the deep-learning program DRIVE PX that some believe
could be the key to the self-driving car. He said he was intrigued by
the idea of neuron-based processors, but he said the technology was
still based on a lot of unknowns.
“It is just that there are so many
secrets we haven’t unlocked yet in the brain,” he said. “The
neuron-based chips could unlock something in the future, but it takes
investors with so much faith or very deep pockets willing to throw away
money to see what comes out of it.”
Eid thinks it will be a few decades yet
before the neuron-based processors were adopted, if they were ever
adopted at all. In Agabi’s view, however, the technology is
inevitable—and on the horizon today. He told me he believes his chips
will be powering robotics around the world within five years. Which
raises the question: What happens if he actually pulls it off?
When I first heard of Koniku, I was a
little spooked. I’ve kept a close eye on the race toward true artificial
intelligence and have been most persuaded by philosopher Nick Bostrom’s calls for caution. To me, Koniku felt like a potential Skynet moment—Agabi, after all, seemed to be planning to give the machines human brains.
“Carbon is a material like any other material. So for us the premise that we start from is that neurons are a material.”
Naturally, I mentioned that infamous malignant AI to Agabi, and asked if he was burdened by the effect the Terminatorfilms have had on his research. “Yes, yes, yes,” he said, letting out a wearied laugh. He told me the idea that his company was putting human parts into machines was just a simple case of anthropomorphizing. Neurons are present in many animal brains aside from humans, and Agabi reminded me that Koniku’s neurons are grown in a lab. “Carbon is a material like any other material,” he said. “So for us the premise that we start from is that neurons are a material.”
For Agabi, what he calls the “AI drama” is much less interesting than the simple question of efficiency. He notes that the Tianhe-2, the most powerful supercomputer built to date, demands 24 megawatts of power, while the human brain runs on just 10 watts.
In other words, he says, the most powerful computer on earth burns 2.4
million times the energy of the human brain. “It’s not a matter of
luxury, or just because we can do it. It’s a matter of urgency,” he
said. “We have to find a way to build much more with less if we as a
species are going to survive.”Naturally, I mentioned that infamous malignant AI to Agabi, and asked if he was burdened by the effect the Terminatorfilms have had on his research. “Yes, yes, yes,” he said, letting out a wearied laugh. He told me the idea that his company was putting human parts into machines was just a simple case of anthropomorphizing. Neurons are present in many animal brains aside from humans, and Agabi reminded me that Koniku’s neurons are grown in a lab. “Carbon is a material like any other material,” he said. “So for us the premise that we start from is that neurons are a material.”
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