via AI.Nony.Mous
In a groundbreaking and game-changing study that could revolutionize the field of artificial intelligence, researchers have successfully demonstrated that photonic chips can be utilized to train neural networks using on-chip backpropagation—the most widely used method for training these complex systems.
This astonishing breakthrough paves the way for the development of futuristic, optically driven, and energy-efficient machine learning technologies, which hold the potential to dramatically reduce the carbon footprint and costs associated with AI computation.
Neural networks, an approach to machine learning conceptually inspired by the miraculous biology of the human brain, have emerged as the cornerstone of many cutting-edge scientific and commercial AI technologies, including the much-talked-about ChatGPT architectures. As neural networks continue to make significant strides and become increasingly ubiquitous, the energy required to power these awe-inspiring technologies is expected to skyrocket, perhaps doubling every 5-6 months, as some staggering estimates suggest.
Faced with such rapidly increasing energy demands, the quest for more energy-efficient hardware solutions, such as photonic neural networks, has become a critical priority for researchers worldwide. A crucial step towards effectively integrating photonic circuits into neural network applications is the development of a photonic implementation for the so-called backpropagation, the gold standard in neural network training methods.
In a monumental leap forward, Sunil Pai and colleagues have designed and brought to life a cutting-edge hybrid photonic neural network (PNN) chip, capable of performing lightning-fast and efficient on-chip backpropagation training. Employing their state-of-the-art, multilayer photonic integrated circuit, Pai et al. conducted in situ backpropagation training by sending light-encoded errors backwards through the photonic neural network and measuring the optical interference with the original forward-going “inference” signal.
In a series of meticulously designed proof-of-principle experiments, the authors discovered that the PNN performed on par with digital neural network platforms, heralding a new era for scalable, energy-efficient on-chip machine learning. Charles Roques-Carmes, in a thought-provoking and insightful perspective, writes, “Photonic networks are now becoming competitive with state-of-the-art digital platforms, in terms of speed and energy efficiency.”
With this groundbreaking study, it is now anticipated that, in just a few years, large-scale hybrid and all-optical photonic chips will challenge their electronic counterparts in the realm of inference and learning of real-world AI tasks. This pioneering research has the potential to transform the landscape of artificial intelligence, opening up new possibilities for more sustainable and efficient AI technologies that will shape the future of our world.
Original Article: Backpropagation training achieved in photonic neural network
More from: Polytechnic University of Milan
The Latest Updates from Bing News
Go deeper with Bing News on:
On-chip backpropagation
- How Elon Musk’s Neuralink brain chip allows paralyzed people to control devices with their mind
Neuralink wrote a blog item on its web site indicating that the brain implant worn by Noland Arbaugh experienced a problem and began to malfunction.
- Neuralink brain chip implant partially failed after surgery
Neuralink Corporation, the controversial neurotechnology company criticized for its questionable medical trials resulting in the death of a significant number of monkeys, achieved its first ...
- More than a quarter of advanced chip production to occur on US soil by 2032
Zooming out to look at the bigger picture, the US was responsible for just 10 percent of global chip production (of all kind) in 2022. That figure is expected to climb to 14 percent by 2032. Without ...
- Neuralink brain-chip implant encounters issues in first human patient
Elon Musk's Neuralink finds a brain-computer interface device captured less data a month after implant surgery.
- Best blue-chip stocks of 2024
Blue-chip stocks offer a good way to start investing since these are relatively low-risk investments. In this volatile stock market environment, focusing on high-quality stocks trading at ...
Go deeper with Bing News on:
Photonic neural networks
- Researchers demonstrate low-loss and polarization-independent integrated optical colorless ROADM
The implementation of integrated optical switches shows promise in the size reduction of ROADMs for greater flexibility and compactness, ultimately leading to robust single-chip solutions. Despite ...
- Mapping brain function, safer autonomous vehicles are focus of Schmidt Transformative Technology fund
Two projects — one that maps the function of the brain’s neuronal network in unprecedented detail and another that combines robotics and light-based computer circuits to create safe self-driving ...
- Multiplexed neuron sets make smaller optical neural networks possible
Seeking to improve the practicality of optical neural networks that use wavelength division multiplexing, a research team developed a structure called multiplexed neuron sets and a corresponding ...
- AI Efficiency Breakthrough: How Sound Waves Are Revolutionizing Optical Neural Networks
Researchers have developed a way to use sound waves in optical neural networks, enhancing their ability to process data with high speed and energy efficiency. Optical neural networks may provide the ...
- Using sound waves for photonic machine learning: Study lays foundation for reconfigurable neuromorphic building blocks
Also, on-chip implementations of optical neural networks can benefit from this approach, which is implementable in photonic waveguides without additional electronic controls. "Photonic machine ...