We have summarized a very interesting article that highlights the most recent AI development as well as its future. Most of the information and comments are from this link which we translated. AI will become very powerful in every aspect, so the question for humans is how to apply it best in our world.
The next wave of AI: Studying the human brain
This year’s Nobel Prize in Physics was won by Hopfield and Hinton. They used physics knowledge and tools to respectively invent the well-known artificial neural network, The Hopfield network and the Boltzmann machine, laying an important foundation for machine learning technology and promoting the development of AI.
Artificial neural networks are technologies that imitate the operation of the human brain. Hinton said that if we can understand how the brain adjusts the strength of connections between neurons, we can create amazing AI systems like GPT-4. AI will definitely be better than humans. It will be more intelligent, have a wealth of knowledge, but require far fewer neural connections than humans.
Hassabis, who jointly won the Nobel Prize in Chemistry with Baker and is the founder of Google DeepMind, believes that the next stage of research can use AI models to analyze the human brain to promote progress in the field of neuroscience. “I think this is a complete cycle. Neuroscience kind of inspired modern AI, and then AI will come back to help us understand what’s special about the brain.”
Can AI knowledge surpass that of humans?
When asked whether or not AI will be able to surpass the knowledge of humans, Hinton said that he believes we’ve already been surpassed. He added that though AI still has the problem of fabricating facts, also known as hallucinating, it doesn’t change the fact that it still has a greater range of knowledge than any human being.
When asked for his comment, Nobel Prize Winner in Medicine, Ruvkun, said that he believes human capabilities have been overestimated, and humans are just as liable to create false information like AI does. This is especially true with the rise of social media, which has only made the situation more serious. He concluded his thoughts by saying that it’s necessary for AI to reach the level of human beings, but it’s not a level that’s too difficult to reach.
Hassabis was also in agreement, and said that AI capabilities will advance rapidly in all aspects. Consequently, it is very important to think about how humans will design the AI systems and how they are applied in the real world.
What is a Hopfield Network?
A Hopfield network is a type of recurrent artificial neural network, often considered a “content-addressable memory,” which is designed to store patterns and can retrieve a complete pattern even when given a partial or noisy input, essentially acting like an associative memory system by minimizing an “energy function” to reach stable states; named after its inventor, John Hopfield.
Structure:
A single layer of neurons where each neuron is connected to every other neuron in the network, with symmetric connections (meaning the weight from neuron A to B is the same as the weight from B to A).
Function:
By adjusting the connection weights, the network can store patterns, and when presented with a partial or noisy version of a stored pattern, it will iteratively update its state to converge towards the closest stored pattern.
Energy Minimization:
The network operates by minimizing an “energy function,” where each state change reduces the energy, eventually leading to a stable state representing a stored pattern.
Applications:
Image restoration, pattern recognition, optimization problems, and understanding associative memory in the brain.
We hope this has been an interesting read. Now, what’s next? We look forward to seeing you in the next blog!
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