Spatial Web and the Era of AI - Part 1 | KB #10 - Spatial Web AI Podcast

EPISODE · Apr 3, 2023 · 25 MIN

Spatial Web and the Era of AI - Part 1 | KB #10 - Spatial Web AI Podcast

from Spatial Web AI Podcast · host Denise Holt

Spatial Web and the Era of AI - Part 1  #futureofai #artificialintelligence by Denise Holt Deep Learning Language Models vs. Cognitive Science The pioneering goal of Artificial Intelligence has been to understand how humans think. The original idea was to merge intellectual and computer contributions to learn about cognition.   In the 1990’s, a shift took place from a knowledge-driven AI approach to a data-driven AI approach, replacing the original objectives with a type of Machine Learning called Deep Learning, capable of analyzing large amounts of data, drawing conclusions from the results.   Deep Learning is a predictive machine model that operates off of pattern recognition. Some people believe that if you simply feed the model more and more data, then the AI will begin to evolve on its own, eventually reaching AGI (Artificial General Intelligence), the ‘Holy Grail’ of AI.    This theory, however, is viewed as being deeply flawed because these AI machines are not capable of “awareness” or the ability to “reason.” With Machine Learning/Deep Learning AI, there is no “thinking taking place.”    These predictive machines are void of any actual intelligence.    Scaling into bigger models by adding more and more parameters until these models consume the entire internet, will only prove useful to a point.   A larger data bank will not be able to solve for recognizing toxicity within the data structures, nor will it enable the ability to navigate sensitive data, permissioned information, protected identities, or intellectual property. A larger data bank does not enable reasoning or abstract thinking.   For AI to achieve the ultimate goal of AGI we need to be able to construct cognitive models of the world and map ‘meaning’ onto the data. We need a large database of abstract knowledge that can be interpreted by a machine imparting a level of ‘awareness’. Newton vs. Einstein Model Based AI for Active Inference is an Artificial Intelligence methodology that possesses all the ingredients required to achieve the breakthrough to AGI by surpassing all of the fundamental limitations of current Machine Learning/Deep Learning AI.   The difference between Machine Learning AI and Active Inference AI is as stark as the jump from Newton’s Laws of Universal Gravitation to Einstein’s Theory of Relativity.   In the late 1800’s, physicists believed that we had already discovered the laws that govern motion and gravity within our physical universe. Little did they know how naïve Isaac Newton’s ideas were, until Albert Einstein opened mankind’s eyes to spacetime and the totality of existence and reality.   This is what is happening with AI right now.   It’s simply not possible to get to AGI (Artificial General Intelligence) with a machine learning model, but AGI is inevitable with Active Inference.     ______________________   Special thanks to Dan Mapes, President and Co-Founder, VERSES AI and Director of The Spatial Web Foundation. If you’d like to know more about The Spatial Web, I highly recommend a helpful introductory book written by Dan and his VERSES Co-Founder, Gabriel Rene, titled, “The Spatial Web,” with a dedication “to all future generations.”   Listen to more episodes in my Knowledge Bank Playlist to learn everything you need to know to stay ahead of this rapidly accelerating technology.   Check out more at, SpatialWebAI and Spatial Web Foundation   #futureofai #artificialintelligence #spatialweb #intelligentagents #aitools

NOW PLAYING

Spatial Web and the Era of AI - Part 1 | KB #10 - Spatial Web AI Podcast

0:00 25:19

No transcript for this episode yet

We transcribe on demand. Request one and we'll notify you when it's ready — usually under 10 minutes.

AI – IC之音竹科廣播 FM97.5 IC之音竹科廣播 全球華人的心靈故鄉 Photo Breakdown Scott Wyden Kivowitz Photo Breakdown is a podcast in which we explore the world of photography with a trusted guide, host Scott Wyden Kivowitz. His expertise and passion bring the industry to life as we explore the stories, trends, and ideas shaping it today. Join us as we dissect everything from incredible photographs and creative techniques to the latest gear releases and hot topics in the photography community.In each episode, we break down what’s happening behind the scenes - whether it’s making a powerful image, a candid discussion on industry trends, or a reflection on the tools and technology changing how we make photographs. You’ll get insights, expert opinions, and a fresh perspective on what’s top of mind for photographers right now.Anticipate short, engaging episodes brimming with ideas and inspiration. Be part of the conversation by sharing your thoughts, voice notes, and comments. Your participation is what makes our community vibrant and dynamic.It’s more than just photography - everyth Sunday Morning Linux Review - MP3 Feed Tony Bemus, Mary Tomich, Phil Porada, and Tom Lawrence Sunday Morning Linux Review www.smlr.us is a podcast with Tony Bemus, Mary Tee , Phil Porada, and Tom Lawrence. We talk about the Linux and Open Source News. Edited episodes and show notes are found at www.smlr.us , We will be Live on IRC #SMLR and Video: youtube.com/c/SmlrUs WSJ Free for All with Jason Gay Jason Gay, The Wall Street Journal In his unique style, Jason Gay from The Wall Street Journal discusses the current events and news you need to be informed on sports, culture and life. Enjoy these timely and engaging stories in our WSJ Free for All podcast.
URL copied to clipboard!