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Google Brain Gagan Khanijau 2011046 Prabhat Ranjan MT13046 Plan Introduction – Artificial Brain Google Brain Experiment Applications The Pattern Recognition Theory of Mind A Strategy for creating a Mind References Introduction – Artificial Brain Aims to reproduce capabilities similar to a human or an animal brain using the concepts of AI and machine learning Similar research: Blue Brain – IBM Human Brain Project - École Polytechnique Fédérale de Lausanne IBM 5 in 5, 2012 Google Brain Google’s Deep Learning project which later acquired the name “Google Brain” Aimed to mimic some aspects of Human Brain Currently, has been successfully trained to recognize a cat based on 10 million Youtube images. Project was initiated by Andrew Ng and currently also includes Ray Kurzweil, Jeff Dean, Geoffrey Hinton in the team Google Brain (Cont.) Based on self taught learning and deep learning technologies. Uses a large scale neural network for performing a standard image classification test. Unsupervised learning. Experiment Connected 16,000 computer processors and let the network turned loose on the Internet to learn on its own. Feeding the neural network 10 million random digital images from YouTube videos. The unsupervised machine taught itself to recognize felines, it invented the concept of cat. Applications It is leading to significant advances in areas as diverse as machine vision and perception, speech recognition and language translation. The project's technology is currently used in the Android OS’s speech recognition system and photosearch for Google+. The Pattern Recognition Theory of Mind Neocortex : Responsible for our ability to deal with pattern of information and to do so in hierarchical fashion. Accounting 80% of total weight of brain. Large forehead means larger neocortex. Human cortex basically made up of 6 layers. Numbered I (the outermost layer) to VI The axons emerging from neurons in layers II and III project to others parts of the neocortex. The axons(output connections) from layers V and VI are connected primarily outside of the neocortex to the thalamus, brain stem, and spinal cord. The Pattern Recognition Theory of Mind.. The neurons in layer IV receive synaptic (input) connections from neurons that are outside the neocortex, especially in the thalamus. Basic unit of neocortex “cortical column(Pattern recognizer)” Human neocortex contains : 300 million pattern recognizer Each pattern recognizer consist of 100 neurons Redundancy There is more than one pattern recognizer for a input. It increases the likelihood of successful recognition Hierarchy of concepts A Strategy for creating a Mind “There are billions of neurons in our brain , but what are neurons? Just cells. The brain has no knowledge until connection are made between neurons. All that we know, all that we are, comes from the way our neurons are connected” -Tim Berners-Lee Start with building a pattern recognizer that meets the necessary attributes. Next, make so many copies of the recognizer as we have memory and computational resources to support. A Strategy for creating a Mind…. Each recognizer computes the probability that its pattern has been recognized. Takes into consideration the observed magnitude of each input. Recognizer triggered its stimulated axon if that computed probability exceeds a threshold. {Threshold and the parameter that control the computation of the pattern’s probability are among the parameter , we will optimize with a generic algorithm.} Recognition of the pattern sends an active signal up the simulated axon of this pattern recognizer. A Strategy for creating a Mind…. This axon is in turn connected to one or more pattern recognizers at the next higher conceptual level. The pattern recognizers are responsible for “wiring” themselves to others pattern recognizers up and down the conceptual hierarchy. Note: Implementation of “wires” in software systems is done via virtual links(basically memory pointers). We simply assign new memory locations to a new pattern recognizer and use memory links for the connections. A Strategy for creating a Mind…. Mathematical Technique : For self-organizing hierarchical pattern recognition, we use HHMM(Hierarchical hidden markov model). Accommodate substantial redundancy of each pattern especially that occurs frequently, we use Linear programming. Education of Brain Old learned Brain Provide critical thinking module Perform continual background search Modules for open questions in every descipline Give time to evolve. A Strategy for creating a Mind…. Finally, Our new brain needs a purpose. A purpose is expressed as a series of goals. Like IBM Watson’s goal was to respond to “Jeopardy” queries. More interestingly, we could give our new brain a more ambitious goal, such as contributing to a better world. Goals , of course raise a lot of questions: Better for whom? Better in what way? For biological humans? For all conscious beings? Moral educations for our new brain. References http://en.wikipedia.org/wiki/Google_Brain http://www.npr.org/2012/06/26/155792609/a-massivegoogle-network-learns-to-identify http://newsfeed.time.com/2012/06/27/google-builds-abrain-that-can-search-for-cat-videos/ http://googleblog.blogspot.in/2012/06/using-large-scalebrain-simulations-for.html “How to Create A Mind” by Ray Kurzweil