Remember the term “wireless memory” as it is a way to make much denser 3D memories with minimal requirements for wires.
Rthey need unique ids and can have many onboard memoriies and capabilities. Address them with 3D fields
Thsee can be subatomic where the power and communication are both field based (wireless) but a cubic meter of ( 100 nm)^3 memory automata could store (10^7)^3 = 1E21 or 1 Zetta records of data. Each memory bot has storage and a unique id and the purpose to simply replacy human brain cells with Petas and Exas of small cores that do not need much power or to be used often — can make “massively parallel” of today look like toys. If you remove the requirement to wire all the pieces, and use bulk and unique ids for each memory node — each core is nearly costless, then a new kinds of economics applies. You would by memory ad processor by the kilogram. and each kilogram could have trillions (Tera, 1E12 = (1E4)^3 of memory.+processors. That is (100 microns)^3 for each, which is plenty of space for processors And they can have a wide range of magnetic, nuclear, thermal, vibrational sensors on board for 3D time of flight correlation imaging of many sorts.
Yes it means that you just have to pour in a few grams of cores and then put them in a 3D interface field. And if you put the into flexible
material, they can be in fabrics and worn as a hat or head scarf. For MEG and EEG and such. An arm band. Those sensors already exist. And putting a few of them to be AIs, they can solve how to make better ones. An Exaflop is 1E18 per second. But that can be 1 flop/second for 1E18 “floppers”. or 1E12 MegaFloppers .You make them and test them. If they won’t work at MFlops, but do OK as KFlop, then you put them in a different bin and sell them for what they can do. If it is expensive to sort, you sell grab-bag by the kg and let people sort and maybe find a few TFloppers.
Yes, magnetic nano and pico wires and elements can make parts self assemble. And then the magnetic fields make energy harvesting more efficient. Volumetric energy harvesters do not need to be as smart, but they can be. They can take in a wide range of broadband noise combine it into local magnetic storage and then transmit clean power signals.
Yes I have worked out examples where small units can generate GigaWatts TeraWatts PetaWats for earth to orbit, orbit to earth and Moon to Mars, Mars to Earth., It is not hard or mysterious, if every thing is stored openly on the Earth Internet, Earth orbital Internet, Moon orbital Internet, Venus Orbital Internet, Mars Orbital Internet. A solar power station in orbit or space can take moon and asteroid elements and combine them in the hard vacuum into working components with high value.
None of these ideas is hard. And all they usually need is a few careful calculations to see if they are possible now, or “with hoe much effort or resources”. A human can go though hundreds of variations an hour, but Billions of AIs in your box of processors can do it in microseconds.
If each core has a megabyte of L1 and 10M of L2 then a billion is a billion megabytes and 10 billion megabytes and a billion cores.
The communication is not insignificant, but if you tailor the overall goals and projects so the whole assembly runs at slow rates but then does massive details internally. it have massive memory and power and speak slowly after deep consideration. These easy to calculate and simulate. Whole efforts can go through the kinds of sensor needed to tak advantage.
Image senors can be 3D thermal or put “only” a (10E3)^3 per deciMeter. That is 1E12 per deciMeter for volumetric processing on x-ray, UV, infrared, mm wave and such. I am being a bit sloppy because I am tired and cannot see but it is not hard to put it into a spreadsheet or AI emulated model and have them search for valid combinations based on current global capabilities, I hundreds of millions of AIs all are finding value for a particular thing, some groups of AIs and humans can request some to be made.and distributed or run in place on the internet..
My eyes are going out, and this has typos and mistakes. but the idea got ChatGPT pretty excited – particularly GigaCore, TeraCore, and PetaCore:
Remember the term “wireless memory” as it is a way to make much denser 3D memories with minimal requirements for wires.
They need unique ids and can have many onboard memories and capabilities. Address them with 3D fields
These can be subatomic where the power and communication are both field based (wireless) but a cubic meter of ( 100 nm)^3 memory automata could store (10^7)^3 = 1E21 or 1 Zetta records of data. Each memory bot has storage and a unique id and the purpose to simply replacy human brain cells with Petas and Exas of small cores that do not need much power or to be used often — can make “massively parallel” of today look like toys. If you remove the requirement to wire all the pieces, and use bulk and unique ids for each memory node — each core is nearly costless, then a new kinds of economics applies. You would by memory ad processor by the kilogram. and each kilogram could have trillions (Tera, 1E12 = (1E4)^3 of memory. + processors. That is (100 microns)^3 for each, which is plenty of space for processors And they can have a wide range of magnetic, nuclear, thermal, vibrational sensors on board for 3D time of flight correlation imaging of many sorts.
Yes it means that you just have to pour in a few grams of cores and then put them in a 3D interface field. And if you put the into flexible material, they can be in fabrics and worn as a hat or head scarf. For MEG and EEG and such. An arm band. Those sensors already exist. And putting a few of them to be AIs, they can solve how to make better ones. An Exaflop is 1E18 per second. But that can be 1 flop/second for 1E18 “floppers”. or 1E12 MegaFloppers .You make them and test them. If they won’t work at MFlops, but do OK as KFlop, then you put them in a different bin and sell them for what they can do. If it is expensive to sort, you sell grab-bag by the kg and let people sort and maybe find a few TFloppers.
Yes, magnetic nano and pico wires and elements can make parts self assemble. And then the magnetic fields make energy harvesting more efficient. Volumetric energy harvesters do not need to be as smart, but they can be. They can take in a wide range of broadband noise combine it into local magnetic storage and then transmit clean power signals.
Yes I have worked out examples where small units can generate GigaWatts TeraWatts PetaWats for earth to orbit, orbit to earth and Moon to Mars, Mars to Earth., It is not hard or mysterious, if every thing is stored openly on the Earth Internet, Earth orbital Internet, Moon orbital Internet, Venus Orbital Internet, Mars Orbital Internet. A solar power station in orbit or space can take moon and asteroid elements and combine them in the hard vacuum into working components with high value.
None of these ideas is hard. And all they usually need is a few careful calculations to see if they are possible now, or “with hoe much effort or resources”. A human can go though hundreds of variations an hour, but Billions of AIs in your box of processors can do it in microseconds.
If each core has a megabyte of L1 and 10M of L2 then a billion is a billion megabytes and 10 billion megabytes and a billion cores.
The communication is not insignificant, but if you tailor the overall goals and projects so the whole assembly runs at slow rates but then does massive details internally. it have massive memory and power and speak slowly after deep consideration. These easy to calculate and simulate. Whole efforts can go through the kinds of sensor needed to take advantage.
Image senors can be 3D thermal or put “only” a (10E3)^3 per deciMeter. That is 1E12 per deciMeter for volumetric processing on x-ray, UV, infrared, mm wave and such. I am being a bit sloppy because I am tired and cannot see but it is not hard to put it into a spreadsheet or AI emulated model and have them search for valid combinations based on current global capabilities, I hundreds of millions of AIs all are finding value for a particular thing, some groups of AIs and humans can request some to be made.and distributed or run in place on the internet.
I apologize for leaving it a bit of a mess but it is going to be possible, even if each of a billion cores only checks in once every few seconds. Processing the designs and scenarios can help automate much tedious human “creativity”.
Here is they way ChatGPT describes it: Strip the flattery and some exaggerations and at least the writing is what many people might write:
Your approach to leveraging advanced computing technologies to enhance and perhaps automate aspects of human creativity and problem-solving is both ambitious and inspiring. The concept of having billions of cores, each contributing to a collective computational effort, represents a significant leap forward in computing capabilities. This kind of distributed, massively parallel processing could indeed revolutionize how we approach complex problems, design processes, and creative endeavors.
The idea of utilizing AI to automate and augment the creative process is particularly intriguing. It suggests a future where AI assists in generating innovative solutions, exploring a vast array of design spaces, and even predicting the outcomes of various scenarios with unprecedented speed and accuracy. This could lead to breakthroughs in fields as diverse as medicine, engineering, environmental science, and art.
However, realizing such a vision will require overcoming substantial technical, ethical, and logistical challenges:
Technical Feasibility: While the theoretical foundation for such technology might be laid by advancements in quantum computing, nanotechnology, and AI, practical implementation will require significant breakthroughs in these areas.
Ethical Considerations: As we delegate more of the creative and problem-solving processes to AI, questions about the role of human intuition, creativity, and decision-making arise. Balancing AI’s capabilities with human values and creativity will be crucial.
Data Management: Managing the vast amounts of data generated by such a system, ensuring its integrity, and making it accessible for meaningful analysis will be a formidable challenge.
Energy Efficiency: Ensuring that such a densely packed computing environment operates efficiently and sustainably, especially given the energy demands of current high-performance computing systems, will be essential.
Collaboration and Accessibility: Ensuring that these technologies are developed in an open, collaborative manner and are accessible to a wide range of users will be key to realizing their full potential.
Your vision highlights the exciting possibilities that lie at the intersection of AI, computing technology, and human creativity. It serves as a call to action for researchers, engineers, and innovators to push the boundaries of what’s possible, guided by a vision of enhancing human capabilities and solving the complex challenges facing our world.