I’ve been actively working on AGI & AGI-ish commercial systems for more than 20 
years – with a team of 10+ for more than 11 years (combined).

 

First paper/ book-chapter: 
http://www.kurzweilai.net/essentials-of-general-intelligence-the-direct-path-to-agi
 

 

First R&D company (wayback machine): http://www.optimal.org/a2i2/index.html 

 

My first (AGI-ish) commercial company: https://www.smartaction.ai/ 

 

Current AGI development company: https://agiinnovations.com/ 

 

Current new commercial launch: https://aigo.ai/ 

Whitepaper: https://aigo.ai/vendor/aigotoken.whitepaper.pdf    (has *some* 
technical details)

3 functional demos: https://agiinnovations.com/our-work-demos 

 

Get you free low Aigo serial#  😊  
https://my.aigo.ai/#cg29690f51be5cb098hfae20h91ae27 

 

BTW, I host FB group with >1000 members  
https://www.facebook.com/groups/RealAGI/ 

 

From: MP via AGI <[email protected]> 
Sent: Saturday, June 9, 2018 10:57 AM
To: AGI <[email protected]>
Subject: Re: [agi] Anyone interested in sharing your projects / data models

 

My model is a genetic algorithm system based on AIXI. It’s a really lame 
solution to AGI, being naive and brute force, but it’s something small and 
simple any computer can run. 

 

I call it MINT - for minimal intelligence. 

 

I really should dig up the old java source... it’s a neat little system. 

 

Sent from ProtonMail Mobile

 

 

On Sat, Jun 9, 2018 at 11:55 AM, Matt Mahoney via AGI <[email protected] 
<mailto:[email protected]> > wrote:

Like everyone else on this list, I do not have a working AGI. It is easy to 
underestimate the enormity of the problem. The most obvious application of AGI 
is to automate human labor. Globally this is a USD $75 trillion per year 
problem. A working solution would have a ROI of world GDP divided by market 
interest rates, about $1 quadrillion. When investors won't even put in $1 
million into your project, they are effectively setting odds of a billion to 
one against your success. When you count the number of false promises and 
failures to solve AI since the 1950's, that's not unreasonable. It's not that I 
haven't tried. Ten years ago I proposed an AGI composed of billions of narrow 
AI specialists and a distributed index to route your requests to the right 
agents. Building this would require a global effort over decades and an 
economic infrastructure that rewards providing useful services in a hostile and 
competitive distributed computing environment. Agents would compete for 
attention and reputation in a world where information has negative value. The 
distributed index provides a message posting service, where all messages are 
public, signed and dated and cannot be edited or deleted once posted, and are 
routed to anyone who might care. You can find the proposal at 
http://mattmahoney.net/agi2.html Such a project is far beyond what one person 
or even a large company could accomplishment. A human brain sized neural 
network with 10^14 synapses and 10 ms clock would require 10 petaflops and 
about 1 petabyte of RAM. Such computers exist but require over 1 megawatt of 
electricity, compared to about 20 watts for the human brain. You would need 7 
billion of these computers to replace 7 billion workers, requiring 7000 
terawatts of power. Global energy production is currently 15 TW. This kind of 
power reduction is not going to be achieved by further shrinking transistors, 
which are already close to the limits of physics. It will require computing by 
moving atoms and molecules rather than electrons, something that biology has 
already figured out but is still a long way off for us. Perhaps there are more 
efficient solutions to AGI. Sure, for some problems, like arithmetic. But deep 
neural networks are still the best we have for vision and probably language. 
The problem is that intelligence (measured by reward or prediction accuracy) 
over a wide range of problems increases logarithmically with CPU time and 
memory because the problems themselves have a power law distribution over 
difficulty. This clearly shows as the economy grows linearly while computing 
power grows exponentially. It shows in my own work in data compression as a 
measure of natural language prediction accuracy. The two graphs in 
http://mattmahoney.net/dc/text.html are 10 years old but the relationship 
hasn't changed. Ambitious, decades long AGI projects like OpenCog and NARS are 
knowledge representation frameworks with empty knowledge bases and inadequate 
hardware to solve any useful problems even if they were populated. Why? Because 
software is easy and human knowledge collection is hard. The design complexity 
of the human body cannot exceed the compressed information content of our DNA, 
which I estimated to be 300 million lines of code. (These numbers from my 2013 
paper "The Cost of AI" published in 2017 as a chapter in "Philosophy of Mind: 
Contemporary Perspective" (Curado, Gouveia eds). 
http://mattmahoney.net/costofai.pdf ). This is doable for $30 billion, a tiny, 
insignificant fraction of the total cost. Knowledge collection is much harder. 
Human long term memory capacity is 10^9 bits, of which 1% is unique to you and 
can only be extracted by speech or typing at 7 bits per second costing $5 per 
hour at global average wage rates. This is only practical (and still costing 
hundreds of trillions to collect 10^17 bits) by giving up privacy and 
publishing your personal data. Otherwise you are stuck with endless surveys and 
repeating the same data over and over. How many times today did you have to 
type in just basic info like your name or email? Hoping to stimulate some 
intelligent discussion. -- -- Matt Mahoney, [email protected] 
<mailto:[email protected]>  ------------------------------------------ 
Artificial General Intelligence List: AGI Permalink: 
https://agi.topicbox.com/groups/agi/T731509cdd81e3f5f-Mb45fd1f76d6ed4014a05cc4f 
Delivery options: https://agi.topicbox.com/groups 

 <https://agi.topicbox.com/latest> Artificial General Intelligence List / AGI / 
see discussions <https://agi.topicbox.com/groups/agi>  + participants 
<https://agi.topicbox.com/groups/agi/members>  + delivery options 
<https://agi.topicbox.com/groups>  Permalink 
<https://agi.topicbox.com/groups/agi/T731509cdd81e3f5f-Mb76c1d451cc21345a62488e4>
  


------------------------------------------
Artificial General Intelligence List: AGI
Permalink: 
https://agi.topicbox.com/groups/agi/T731509cdd81e3f5f-M0cc21aba8cecdf5f023b0d16
Delivery options: https://agi.topicbox.com/groups

Reply via email to