Popular on Rezul
- eJoule Inc Participates in Silicon Dragon CES 2026
- Price Improvement on Luxurious Lāna'i Townhome with Stunning Ocean Views
- Central Florida Real Estate Market Shows Buyer-Friendly Shift Heading Into the New Year
- CredHub and Real Property Management Join Forces to Empower Franchise Owners with Rental Payment Credit Reporting Solutions
- Guests Can Save 25 Percent Off Last Minute Bookings at KeysCaribbean's Village at Hawks Cay Villas
- Golden Paper Launches a New Chapter in Its Americas Strategy- EXPOPRINT Latin America 2026 in Brazil
- Clear Insurance Calls for Winter Readiness After ONS Figures
- Genuine Hospitality, LLC Selected to Operate Hilton Garden Inn Birmingham SE / Liberty Park
- End of the Year Sales Was a Smart Move for Many Home Buyers
- TheOneLofi2: New Home for Chill Lo-Fi Hip Hop Beats Launches on YouTube
Similar on Rezul
- Report Outlines Key Questions for Individuals Exploring Anxiety Treatment Options in Toronto
- CCHR Says Mounting Evidence of Persistent Sexual Dysfunction From Antidepressants Demands FDA Action
- CCHR: Harvard Review Exposes Institutional Corruption in Global Mental Health
- Lineus Medical Completes UK Registration for SafeBreak® Vascular
- 2025: A Turning Point for Human Rights. CCHR Demands End to Coercive Psychiatry
- Psychiatric Drug Damage Ignored for Decades; CCHR Demands Federal Action
- Women's Everyday Safety Is Changing - The Blue Luna Shows How
- Artificial Intelligence Leader Releases Children's Book on Veterans Day
- CCHR Documentary Probes Growing Evidence Linking Psychiatric Drugs to Violence
- Terizza Forms Strategic Collaboration with UC San Diego to Pioneer Next-Generation Distributed AI Infrastructure
Reinforcement Learning Accelerates Model-free Training of Optical AI Systems
Rezul News/10723995
LOS ANGELES - Rezul -- Optical computing has emerged as a powerful approach for high-speed and energy-efficient information processing. Diffractive optical networks, in particular, enable large-scale parallel computation through the use of passive structured phase masks and the propagation of light. However, one major challenge remains: systems trained in model-based simulations often fail to perform optimally in real experimental settings, where misalignments, noise, and model inaccuracies are difficult to capture.
In a new paper, researchers at the University of California, Los Angeles (UCLA) introduce a model-free in situ training framework for diffractive optical processors, driven by Proximal Policy Optimization (PPO), a reinforcement learning algorithm known for stability and sample efficiency. Rather than rely on a digital twin or the knowledge of an approximate physical model, the system learns directly from real optical measurements, optimizing its diffractive features on the hardware itself.
More on Rezul News
"Instead of trying to simulate complex optical behavior perfectly, we allow the device to learn from experience or experiments," said Aydogan Ozcan, Chancellor's Professor of Electrical and Computer Engineering at UCLA and the corresponding author of the study. "PPO makes this in situ process fast, stable, and scalable to realistic experimental conditions."
To demonstrate that PPO can successfully teach an optical processor how to perform a computational task even without knowing the underlying physics of the experimental setup, UCLA researchers carried out comprehensive experimental tests to demonstrate adaptability across multiple optical tasks. For example, the system successfully learned to focus optical energy through a random, unknown diffuser, faster than standard policy-gradient optimization, demonstrating its ability to explore the optical parameter space efficiently. The same framework was also applied to hologram generation and to aberration correction. In another demonstration, the diffractive processor was trained on the optical hardware to classify handwritten digits using measurements. As the in situ training progressed, the output patterns became clearer and more distinct for each input number, showing correct classification without any digital processing.
More on Rezul News
PPO reuses measured data for multiple update steps while constraining policy shifts; therefore, it significantly reduces experimental sample requirements and prevents unstable behavior during training, making it ideal for noisy optical environments. This approach is not limited to diffractive optics but can be applied to many other physical systems that provide feedback and can be adjusted in real-time.
"This work represents a step toward intelligent physical systems that autonomously learn, adapt, and compute without requiring detailed physical models of an experimental setup," said Ozcan. "The approach could expand to photonic accelerators, nanophotonic processors, adaptive imaging systems, and real-time optical AI hardware."
This research received funding from ARO, USA. Ozcan is also an Associate Director of the California NanoSystems Institute (CNSI).
Article: https://www.nature.com/articles/s41377-025-02148-7
In a new paper, researchers at the University of California, Los Angeles (UCLA) introduce a model-free in situ training framework for diffractive optical processors, driven by Proximal Policy Optimization (PPO), a reinforcement learning algorithm known for stability and sample efficiency. Rather than rely on a digital twin or the knowledge of an approximate physical model, the system learns directly from real optical measurements, optimizing its diffractive features on the hardware itself.
More on Rezul News
- UK Financial Ltd Announces CoinMarketCap Supply Verification And Market Positioning Review For Regulated Security Tokens SMPRA And SMCAT
- Sharpe Automotive Redefines Local Car Care with "Transparency-First" Service Model in Santee
- Diversified Roofing Solutions Launches Asphalt Shingle Roof Division to Serve Residential Homeowners
- Colony Ridge Community Celebrates New RoadTrac Gas Station Grand Opening with Live Entertainment and Giveaways
- George Nausha Joins PXV Multifamily As Managing Director Acquisitions
"Instead of trying to simulate complex optical behavior perfectly, we allow the device to learn from experience or experiments," said Aydogan Ozcan, Chancellor's Professor of Electrical and Computer Engineering at UCLA and the corresponding author of the study. "PPO makes this in situ process fast, stable, and scalable to realistic experimental conditions."
To demonstrate that PPO can successfully teach an optical processor how to perform a computational task even without knowing the underlying physics of the experimental setup, UCLA researchers carried out comprehensive experimental tests to demonstrate adaptability across multiple optical tasks. For example, the system successfully learned to focus optical energy through a random, unknown diffuser, faster than standard policy-gradient optimization, demonstrating its ability to explore the optical parameter space efficiently. The same framework was also applied to hologram generation and to aberration correction. In another demonstration, the diffractive processor was trained on the optical hardware to classify handwritten digits using measurements. As the in situ training progressed, the output patterns became clearer and more distinct for each input number, showing correct classification without any digital processing.
More on Rezul News
- Secondesk Launches Powerful AI Tutor That Speaks 20+ Languages
- Automation, innovation in healthcare processes featured at international conference in Atlanta
- A High-Velocity Growth Story Emerges in Marine and Luxury Markets
- $26 Billion Global Market by 2035 for Digital Assets Opens Major Potential for Currency Tech Company with ATM Expansion and Deployment Plans Underway
- Why OKC Homeowners Should Start the Year with Home Maintenance
PPO reuses measured data for multiple update steps while constraining policy shifts; therefore, it significantly reduces experimental sample requirements and prevents unstable behavior during training, making it ideal for noisy optical environments. This approach is not limited to diffractive optics but can be applied to many other physical systems that provide feedback and can be adjusted in real-time.
"This work represents a step toward intelligent physical systems that autonomously learn, adapt, and compute without requiring detailed physical models of an experimental setup," said Ozcan. "The approach could expand to photonic accelerators, nanophotonic processors, adaptive imaging systems, and real-time optical AI hardware."
This research received funding from ARO, USA. Ozcan is also an Associate Director of the California NanoSystems Institute (CNSI).
Article: https://www.nature.com/articles/s41377-025-02148-7
Source: ucla ita
0 Comments
Latest on Rezul News
- Simpson and Reed Co-Founders Shardé Simpson, Esq. and Ciara Reed, Esq. Launch "Hello Wilma,"
- Report Outlines Key Questions for Individuals Exploring Anxiety Treatment Options in Toronto
- Rande Vick Introduces Radical Value, Challenging How Brands Measure Long-Term Value
- Lisa Mauretti Launches Peace of Mind Travel Coaching to Guide Fearful Travelers to Discover the World with Confidence
- New Year, New Home: Begin 2026 at Heritage at South Brunswick
- Central Texas Industrial Market Sees Major Transaction with Sale of 458,740-SF Facility
- Food Journal Magazine Releases Its 'Best Food In Los Angeles Dining' Editorial Section
- Enders Capital: 25% Gains with Just -0.80% Maximum Monthly Drawdown in Volatile Debut Year 2025
- CES Spotlight Highlights Need for Strategic Review as Throughput Demands Evolve
- ASR Media, Social T Marketing & PR Announce Merger
- $780,000 Project for New Middle East Police Service with Deposit Received and Preliminary Design Work Underway for Lamperd: Stock Symbol: LLLI
- The 3rd Annual Newark Summit for Real Estate, Economic Development & Placemaking Returns February 9th
- Digital Security Deposit Platform Whale Raises $4 Million Seed Round Led by Camber Creek
- Ski Safety Awareness Month highlights why seeing clearly and wearing modern protection matters more than ever
- Vent Pros Expands Operations into Arizona to Meet Growing Demand for Commercial Ventilation and Kitchen Hood Cleaning Services
- Klein Civil Rights Expands with New Offices in New York's Historic Woolworth Building
- Biz Hub Financial Hosts 9th Annual Client Appreciation Event, Awards $1,000 CARES Community Grant
- Green Office Partner Appoints Aaron Smith as Chief Revenue and Growth Officer
- American Net Lease Facilitates Sale of McDonald's Ground Lease in Leander, Texas
- A Family Completes a Full Circumnavigation of the Globe in a Self-Contained Camper Van