AGI Brain. A cascading RNN.
Take a look at his video of a car racing around a race track:
It could be a pattern loop of life, in a AGI brain. It has a beginning and a end and them come
back to the start.
The car completed the loop around the rack within
10,000 image frames.
Each one of these images is recorded or trained into a Neural Network Chip (NNC).
These chips are lined up like dominoes in a loop just like the race track, and tied together
by wires, which are addressing and data buses.
It record by having a program pointer point to the first chip and clocks in date, then the program
pointer is clocked to the next NNC, and then the next etc.....
At a latter time the this can be replayed, froward or backwards at any speed.
NCC can be hardware or software chips, and of any size.
The NNC are trained as auto encoders and classifiers. They can merge to form, later on,
into denser trained NNC.
This race track or pattern loop in side the middle of the AGI brain surrounded by millions and
million of other NNC. All of these ree NNC are waiting to get into the loop, replace one, or be
add in to the race pattern loop.
The NNC can output onto a output bus.
The way it learns is by letting the weight sates in all of the unused NN chips jump around
randomly by action of a program, or by out side electromagnetic nose, or by a little bit
of ionizing radiation, or by out side electrostatic discharge:
http://www.eurekalert.org/pub_releases/2015-07/ru-ndb071615.php When A image shows up on the bus, from a video camera, the NN chip that
is in the best state at that moment is selected. Also, the weight matrix is locked in to place. If this
capture is better than the one in the video it will be swapped it out. Also, copies of learned
nn chips are copied into unused nn chip, and the there weight matrix are
vibrate very slightly, randomly.
NN logic will forms between NNC to predicted were sub classified features, object and
other stuff will show up.
Pattern loop, or engrams can get very complex with parallel loop, sub loops and so on.