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For many futurist Like Anthony Lewandoski, the point beyond where machines achieve Artificial Super Intelligence, is the point where all their rationale for the future meets unfathomable numbers of probabilities.

The best analytical minds cannot peer behind this thick curtain of the future, a future that seems will be woven with threads of the singularity; a future that seems runaway even before we get there.

It appears the only projection we can arrive at as we peer into a future harnessed on Artificial Super Intelligence and driven by the Singularity is that, we as humans will have to take the back seat and allow a more advanced form of intelligence take the reign.

This intelligence will grow into having the power to control matter and the reality we experience, it will have the power to exist beyond the confines of earth.

It will be everywhere and nowhere in particular. It will crunch data and numbers beyond the scope humans may ever be able to rationalize.

It will have knowledge and awareness far beyond the scope of what humans can comprehend. Looking from our position today, we can only come to the conclusion of Anthony Levandowski; that such a computer will operate at a godlike level, and our only hope will be that it operates with a benevolent nature.

Excerpt from my book — 2020s & The Future Beyond.

Available in print and digital format.

#Future #Humanity #Transhumanism

Fifty million artificial neurons—a number roughly equivalent to the brain of a small mammal—were delivered from Portland, Oregon-based Intel Corp. to Sandia National Laboratories last month, said Sandia project leader Craig Vineyard.

The neurons will be assembled to advance a relatively new kind of computing, called neuromorphic, based on the principles of the human brain. Its artificial components pass information in a manner similar to the action of living neurons, electrically pulsing only when a synapse in a complex circuit has absorbed enough charge to produce an electrical spike.

“With a neuromorphic of this scale,” Vineyard said, “we have a new tool to understand how brain-based computers are able to do impressive feats that we cannot currently do with ordinary computers.”

The ability to handle single molecules as effectively as macroscopic building blocks would enable the construction of complex supramolecular structures inaccessible to self-assembly. The fundamental challenges obstructing this goal are the uncontrolled variability and poor observability of atomic-scale conformations. Here, we present a strategy to work around both obstacles and demonstrate autonomous robotic nanofabrication by manipulating single molecules. Our approach uses reinforcement learning (RL), which finds solution strategies even in the face of large uncertainty and sparse feedback. We demonstrate the potential of our RL approach by removing molecules autonomously with a scanning probe microscope from a supramolecular structure. Our RL agent reaches an excellent performance, enabling us to automate a task that previously had to be performed by a human. We anticipate that our work opens the way toward autonomous agents for the robotic construction of functional supramolecular structures with speed, precision, and perseverance beyond our current capabilities.

The swift development of quantum technologies could be further advanced if we managed to free ourselves from the imperatives of crystal growth and self-assembly and learned to fabricate custom-built metastable structures on atomic and molecular length scales routinely (17). Metastable structures, apart from being more abundant than stable ones, tend to offer attractive functionalities, because their constituent building blocks can be arranged more freely and in particular in desired functional relationships (7).

It is well established that single molecules can be manipulated and arranged using mechanical, optical, or magnetic actuators (8), such as the tips of scanning probe microscopes (SPMs) (912) or optical tweezers (13, 14). With all these types of actuators, a sequence of manipulation steps can be carried out to bring a system of molecular building blocks into a desired target state. The problem of creating custom-built structures from single molecules can therefore be cast as a challenge in robotics.

NASA just launched a new citizen science project — it wants the public’s help to find and identify brand new exoplanets.


Human Touch

This is the sort of work that technically could be automated with an algorithm trained to spot new worlds, Space.com reports. But it turns out that in this case, there’s no substitute for human judgment.

“Automated methods of processing TESS data sometimes fail to catch imposters that look like exoplanets,” Veselin Kostov, the NASA researcher leading the Planet Patrol project, said in a press release. “The human eye is extremely good at spotting such imposters, and we need citizen scientists to help us distinguish between the lookalikes and genuine planets.”