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And this feature distinguishes neuromorphic systems from conventional computing systems. The brain has evolved over billions of years to solve difficult engineering problems by using efficient, parallel, low-power computation. The goal of NE is to design systems capable of brain-like computation. Numerous large-scale neuromorphic projects have emerged recently. This interdisciplinary field was listed among the top 10 technology breakthroughs of 2014 by the MIT Technology Review and among the top 10 emerging technologies of 2015 by the World Economic Forum. NE has two-way goals: one, a scientific goal to understand the computational properties of biological neural systems by using models implemented in integrated circuits (ICs); second, an engineering goal to exploit the known properties of biological systems to design and implement efficient devices for engineering applications. Building hardware neural emulators can be extremely useful for simulating large-scale neural models to explain how intelligent behavior arises in the brain. The principal advantages of neuromorphic emulators are that they are highly energy efficient, parallel and distributed, and require a small silicon area. Thus, compared to conventional CPUs, these neuromorphic emulators are beneficial in many engineering applications such as for the porting of deep learning algorithms for various recognitions tasks. In this review article, we describe some of the most significant neuromorphic spiking emulators, compare the different architectures and approaches used by them, illustrate their advantages and drawbacks, and highlight the capabilities that each can deliver to neural modelers. This article focuses on the discussion of large-scale emulators and is a continuation of a previous review of various neural and synapse circuits (Indiveri et al., 2011). We also explore applications where these emulators have been used and discuss some of their promising future applications.

“Building a vast digital simulation of the brain could transform neuroscience and medicine and reveal new ways of making more powerful computers” (Markram et al., 2011). The human brain is by far the most computationally complex, efficient, and robust computing system operating under low-power and small-size constraints. It utilizes over 100 billion neurons and 100 trillion synapses for achieving these specifications. Even the existing supercomputing platforms are unable to demonstrate full cortex simulation in real-time with the complex detailed neuron models. For example, for mouse-scale (2.5 × 106 neurons) cortical simulations, a personal computer uses 40,000 times more power but runs 9,000 times slower than a mouse brain (Eliasmith et al., 2012). The simulation of a human-scale cortical model (2 × 1010 neurons), which is the goal of the Human Brain Project, is projected to require an exascale supercomputer (1018 flops) and as much power as a quarter-million households (0.5 GW).

The electronics industry is seeking solutions that will enable computers to handle the enormous increase in data processing requirements. Neuromorphic computing is an alternative solution that is inspired by the computational capabilities of the brain. The observation that the brain operates on analog principles of the physics of neural computation that are fundamentally different from digital principles in traditional computing has initiated investigations in the field of neuromorphic engineering (NE) (Mead, 1989a). Silicon neurons are hybrid analog/digital very-large-scale integrated (VLSI) circuits that emulate the electrophysiological behavior of real neurons and synapses. Neural networks using silicon neurons can be emulated directly in hardware rather than being limited to simulations on a general-purpose computer. Such hardware emulations are much more energy efficient than computer simulations, and thus suitable for real-time, large-scale neural emulations.

An international team of researchers, led by Swinburne University of Technology, demonstrated what it claimed is the world’s fastest and most powerful optical neuromorphic processor for artificial intelligence (AI). It operates faster than 10 trillion operations per second (TeraOPs/s) and is capable of processing ultra-large scale data.

The researchers said this breakthrough represents an enormous leap forward for neural networks and neuromorphic processing in general. It could benefit autonomous vehicles and data-intensive machine learning tasks such as computer vision.

Artificial neural networks can ‘learn’ and perform complex operations with wide applications. Inspired by the biological structure of the brain’s visual cortex system, artificial neural networks extract key features of raw data to predict properties and behaviour with unprecedented accuracy and simplicity.

It’s not often you encounter a device that looks like it came straight out of a movie set. But Lenovo’s Project Crystal, supposedly the world’s first laptop with a transparent microLED display, is an example of sci-fi come to life.

Currently there are no plans to turn Project Crystal into a retail product. Instead Lenovo’s latest concept device was commissioned by its ThinkPad division to explore the potential of transparent microLED panels and AI integration. The most obvious use case would be sharing info somewhere, like a doctor’s office or a hotel desk. Instead of needing to flip a screen around, you could simply reverse the display via software, allowing anyone on the other side to see it while getting an in-depth explanation.

Silas Adekunle was born in Nigeria and moved to the UK at about 11 years old. He spent much of his childhood obsessed with science and technology, playing with Lego robot kits and watching YouTube videos to get ideas for simple robots he could build himself at home.

Now 27, Adekunle is the CEO and founder of a robotics company that he says has raised $10 million in funding. He also built what he calls the world’s first gaming robot, which impressed Apple executives enough that, in 2017, the tech giant signed an exclusive distribution deal with Adekunle’s UK-based company, Reach Robotics. Apple now sells the robots at $250 a pop.

Adekunle still remembers the first time he built his own robot, “if you could even call it a robot,” he tells CNBC Make It. He was only about 9 years old, still living in his hometown of Lagos, Nigeria.

Some folks prefer to get a grip on things to better understand concepts. Researchers have developed smart gloves for tactile learners that use haptic feedback and AI to teach users new skills, fast-track precision training and control robots remotely.

We’re all different, and that affects how we approach learning. Generally speaking, there are those who benefit most from observing or seeing things, others who take in more if the information is reinforced by sound, some absorb most when stuff is written down or through writing out concepts themselves. And then there are folks who prefer to get handsy or learn by doing. Or combinations of the above.

A team that includes researchers from MIT’s Computer Science and Artificial Intelligence Laboratory (CSAIL) has developed sensor-packed smart gloves to help kinesthetic – or tactile – learners better grasp new tasks or skills.

TECNO’s Dynamic 1 is allegedly inspired by a German Shepherd.


Chinese technology company TECNO has officially unveiled its artificial intelligence (AI) enabled robotic dog called Dynamic 1. Showcased at the Mobile World Congress on Monday, February 26, in Barcelona, Dynamic 1 is the latest in robotic canines making the news of late.

According to reports on the robot’s capabilities, Dynamic 1 can climb up a flight of stairs thanks to its torque output of 45 Newton meters per kilogram (Nm/kg) and can also bow and “shake hands.”

Elon Musk has shared a new video on X of Tesla’s incredible Optimus robot taking a casual stroll around Tesla’s laboratory. Since being published on Saturday, February 24, the 1-minute and 18-second clip has garnered much attention, with almost 79 million views in a few days (at the time of writing).

The clip shows Optimus in a more complete aesthetic than previously released videos. It also shows how mobile the robot truly is. However, as other commentators have said, Tesla’s Optimus’ progress would have been impressive only a few years ago but lags behind other efforts like those by Boston Dynamics.

A team led by former Twitter engineers is rethinking how AI can be used to help people process news and information. Particle.news, which entered into private beta over the weekend, is a new startup offering a personalized, “multi-perspective” news reading experience that not only leverages AI to summarize the news, but also aims to do so in a way that fairly compensates authors and publishers — or so is the claim.

While Particle hasn’t yet shared its business model, it arrives at a time when there’s a growing concern about the impact of AI on a rapidly shrinking news ecosystem. News that is summarized by AI could limit clicks to publishers’ websites, which means their ability to monetize via advertising would also be reduced.

The startup was founded last year by former Senior Director of Product Management at Twitter, Sara Beykpour, who worked on products like Twitter Blue, Twitter Video, and conversations, and who spearheaded the experimental app, twttr. She had been at Twitter from 2015 through 2021, growing her position from software engineering to that of a senior director of product management. Her co-founder is a former senior engineer at both Twitter and Tesla, Marcel Molina.

Figure AI, a startup developing human-like robots, is reportedly in the process of raising $675 million in funding, with a pre-money valuation of roughly $2 billion.

Among the investors are Jeff Bezos’ Explore Investments, Microsoft, Nvidia and an Amazon-affiliated fund, Bloomberg reported Friday (Feb. 23), citing unnamed sources.

Other backers include Intel ’s venture capital arm, LG Innotek, Samsung ’s investment group, Parkway Venture Capital, Align Ventures, ARK Venture Fund, Aliya Capital Partners, Tamarack, Boscolo Intervest and BOLD Capital Partners, according to the report.