Vitaly Vanchurin PHD - THE WORLD AS A NEURAL NETWORK
Chasing Consciousness - Podcast készítő Freddy Drabble
What do machine learning, physics and biology have in common? What maths emerges when we apply learning dynamics to physics, and can it reconcile quantum mechanics and general relativity? If we see all nature as neuroplastic and constantly learning, like a neural network, what can this tell us about the fine tuning in the universe and the emergence of life and observers? In this episode we have the fascinating possibility that the world is like a neural network to consider. On the show we’ve already deeply considered the way in which particles and sometimes even minds seem to be inter-connected in the universe, even beyond the apparent causal links in space and time. We also covered the brain science of neuroplasticity, for listeners who want to understand how that works. Applying that idea to the universe, that in some way the dynamic evolution of systems in the universe, over time adapt depending on the requirements could explain the extraordinary fine tuning we see in the universe, that permitted the arising of life in the first place. Along the way it could potentially fix some of the other gaping holes of disagreement in our best theories of physics. Our guest in this episode, the Russian physicist Vitaly Vanchurin, has not only developed this theory from the ground up, apparently reconciling quantum mechanics and general relativity, but is connecting it with biological systems and even developing a new type of computer processor to model it. After many years at the University of Minnesota, he’s taken a position at the National Institute of Health, and has more or less simultaneously launched a new multidisciplinary company ‘Artificial Neural Computing’ that connects physics, biology, and machine learning. What we discuss: 00:00 Intro 05:21 The world as a neural network 06:00 Deep learning in the systems of the universe, neural learning and machine learning 09:00 The universe is learning as it evolves 11:30 Cosmic storage of learning, leads us to a cosmic consciousness model 12:40 The efficiency of learning defines its level of consciousness 13:30 A super-observer 16:00 It’s a useful model, but it’s likely how the universe actually works too 18:20 Fast changing non-trainable variables VS slow changing trainable variables 20:00 When the trainable variables change they could modify the laws of physics 21:20 Trainable variables in machine learning, are similar to genetic adaptation in biology 22:00 Connecting machine learning, physics and biological adaptation 31:40 What experiments could confirm this model? 42:00 At large scale entropy’s actually reduced by learning. 43:00 The emergence of life has a low chance of emerging by chance, more likely by pursuit of learning 44:50 Learning theory explains fine tuning in the universe 49:20 Neuroplasticity at a cosmic level: increasing efficiency and collective consciousness 54:30 The observer problem solved - hidden variables are trainable variables learning 58:30 Getting comfortable with variances from our best theories: models are only mental constructs 01:01:30 Vitaly’s new company 'Artificial Neural Computing’ - an interdisciplinary method marrying machine learning, physics and biology 01:11:00 What is emergent quantumness? 01:13:15 The implications of neuromorphic machine learning technology 01:17:30The implications for AGI 01:18:30 Self-driving car efficiency 01:21:00 Biology is a technology 01:27:40 You can think of space-time as many communication channels or neural connections 01:28:30 We are like one organism, a super-consciousness References: Vitaly Vanchurin - The World as a Neural Network Paper Vitaly Vanchirin - Toward a theory of evolution as multilevel learning paper Vitaly's new company, Artificial Neural Computing Anthropic principal Stochastic (Adj) = Random and predictable only using probability distributions Learning equilibrium = when learning in a system equalises with the level of knowledge in the wider system Self-organising criticality