Connect with us

Hi, what are you looking for?

Top Stories

Tsinghua University Unveils Optical Processor Achieving 12.5 GHz AI Computation Speed

Tsinghua University unveils the Optical Feature Extraction Engine, achieving 12.5 GHz AI computation speeds to revolutionize real-time medical imaging and trading.

Researchers from Tsinghua University have developed a groundbreaking optical processing system that leverages light instead of electricity to enhance artificial intelligence (AI) capabilities. This development addresses a significant challenge faced by AI models: the conversion of raw data from cameras, sensors, and market feeds into usable features, which is often inefficient on conventional chips.

Current electronic systems consume substantial time and power, leading to excessive energy waste. The new device, termed the Optical Feature Extraction Engine (OFE2), aims to rectify this by performing computations optically, which can potentially accelerate AI processing speed to a practical level outside of laboratory settings.

The OFE2 operates by converting a serial data stream into multiple distinct optical channels on a chip. This design allows mathematical computations to be conducted as light travels through a specifically patterned section of the engine, facilitating precise interference of light waves. As photons are not subjected to electrical resistance, the system boasts low latency and minimal energy consumption.

Project lead and researcher Hongwei Chen emphasized the significance of their work, stating, “We firmly believe this work provides a significant benchmark for advancing integrated optical diffraction computing to exceed a 10 GHz rate in real-world applications.” In initial testing, OFE2 demonstrated a processing speed of 12.5 GHz, completing individual operations in around 250 picoseconds, a time interval that is crucial for applications such as real-time medical imaging and financial trading.

The implications of this technology are substantial. In a demonstration related to medical imaging, the OFE2 effectively extracted crisp edges from CT images, which enabled subsequent models to categorize these images with greater accuracy while requiring less power and fewer electronic adjustments. Similarly, in a trading application, the optical engine processed live price feeds, generating buy and sell signals with lower latency than conventional electronic systems.

However, the researchers caution that while the optical engine excels in handling straightforward mathematical tasks, it does not eliminate the need for traditional CPUs or GPUs, which are still necessary for more complex calculations later in the process. The integration of optical components also requires meticulous design to ensure clean data handling, but the system’s ability to be retuned dynamically allows for task flexibility without the need for hardware modifications. This adaptability is particularly beneficial in environments such as clinics, factories, and trading floors, where workload demands can vary significantly.

The findings from this research were published in the October 2025 issue of Advanced Photonics Nexus. As optical computing continues to evolve, this innovation could pave the way for more efficient and faster AI systems, marking a notable step forward in the integration of optical technologies into mainstream computing applications.

See also
Staff
Written By

The AiPressa Staff team brings you comprehensive coverage of the artificial intelligence industry, including breaking news, research developments, business trends, and policy updates. Our mission is to keep you informed about the rapidly evolving world of AI technology.

You May Also Like

AI Technology

DJ Masatane Muto harnesses AI to achieve over 90% accuracy in brain wave control, revolutionizing performances despite battling ALS.

AI Tools

Generative AI accelerates software development by over 55%, prompting a pivotal shift as engineers evolve into AI orchestrators or builders in high-demand roles.

Top Stories

Applied Materials exceeds quarterly expectations as demand for AI semiconductor equipment surges, with analysts projecting stock valuations ranging from $139 to $420.

AI Government

Singapore invests over $779M in AI research by 2030 to enhance technological capabilities, focusing on responsible development and talent cultivation.

AI Finance

Nvidia CEO Jensen Huang asserts that trillions in investments are crucial for the historic AI infrastructure buildout, impacting various industries and Europe's energy needs.

AI Education

Former Google engineers launch Sparkli, a $5M AI app for kids, generating interactive lessons in minutes to transform learning for 100,000 students.

Top Stories

Meta restricts teen access to AI characters globally as it revamps features to enhance parental controls and ensure safer interactions amid regulatory scrutiny

AI Regulation

Oregon Senator Lisa Reynolds proposes legislation mandating AI companions disclose their non-human status and implement youth mental health safeguards following alarming incidents of emotional...

© 2025 AIPressa · Part of Buzzora Media · All rights reserved. This website provides general news and educational content for informational purposes only. While we strive for accuracy, we do not guarantee the completeness or reliability of the information presented. The content should not be considered professional advice of any kind. Readers are encouraged to verify facts and consult appropriate experts when needed. We are not responsible for any loss or inconvenience resulting from the use of information on this site. Some images used on this website are generated with artificial intelligence and are illustrative in nature. They may not accurately represent the products, people, or events described in the articles.