Tuesday, April 13, 2021
  • Setup menu at Appearance » Menus and assign menu to Top Bar Navigation
Advertisement
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
No Result
View All Result
Home Machine Learning

International team of researchers uses photonic networks for pattern recognition — ScienceDaily

January 7, 2021
in Machine Learning
Applying artificial intelligence to science education — ScienceDaily
585
SHARES
3.3k
VIEWS
Share on FacebookShare on Twitter

In the digital age, data traffic is growing at an exponential rate. The demands on computing power for applications in artificial intelligence such as pattern and speech recognition in particular, or for self-driving vehicles, often exceeds the capacities of conventional computer processors. Working together with an international team, researchers at the University of Münster are developing new approaches and process architectures which can cope with these tasks extremely efficient. They have now shown that so-called photonic processors, with which data is processed by means of light, can process information much more rapidly and in parallel — something electronic chips are incapable of doing.

Background and methodology

You might also like

ANZ Bank: We’ve been using machine learning for 20 years

Data Science And Machine Learning Service Market Growth Due to COVID-19 Spread | ZS, LatentView Analytics, Mango Solutions, Microsoft, International Business Machine – KSU

A.I. For Raspberry Pi Pico: Uctronics TinyML Learning Kit Review

Light-based processors for speeding up tasks in the field of machine learning enable complex mathematical tasks to be processed at enormously fast speeds (10¹² -10¹⁵ operations per second). Conventional chips such as graphic cards or specialized hardware like Google’s TPU (Tensor Processing Unit) are based on electronic data transfer and are much slower. The team of researchers led by Prof. Wolfram Pernice from the Institute of Physics and the Center for Soft Nanoscience at the University of Münster implemented a hardware accelerator for so-called matrix multiplications, which represent the main processing load in the computation of neural networks. Neural networks are a series of algorithms which simulate the human brain. This is helpful, for example, for classifying objects in images and for speech recognition.

The researchers combined the photonic structures with phase-change materials (PCMs) as energy-efficient storage elements. PCMs are usually used with DVDs or BluRay discs in optical data storage. In the new processor this makes it possible to store and preserve the matrix elements without the need for an energy supply. To carry out matrix multiplications on multiple data sets in parallel, the Münster physicists used a chip-based frequency comb as a light source. A frequency comb provides a variety of optical wavelengths which are processed independently of one another in the same photonic chip. As a result, this enables highly parallel data processing by calculating on all wavelengths simultaneously — also known as wavelength multiplexing. “Our study is the first one to apply frequency combs in the field of artificially neural networks,” says Wolfram Pernice.

In the experiment the physicists used a so-called convolutional neural network for the recognition of handwritten numbers. These networks are a concept in the field of machine learning inspired by biological processes. They are used primarily in the processing of image or audio data, as they currently achieve the highest accuracies of classification. “The convolutional operation between input data and one or more filters — which can be a highlighting of edges in a photo, for example — can be transferred very well to our matrix architecture,” explains Johannes Feldmann, the lead author of the study. “Exploiting light for signal transference enables the processor to perform parallel data processing through wavelength multiplexing, which leads to a higher computing density and many matrix multiplications being carried out in just one timestep. In contrast to traditional electronics, which usually work in the low GHz range, optical modulation speeds can be achieved with speeds up to the 50 to 100 GHz range.” This means that the process permits data rates and computing densities, i.e. operations per area of processor, never previously attained.

The results have a wide range of applications. In the field of artificial intelligence, for example, more data can be processed simultaneously while saving energy. The use of larger neural networks allows more accurate, and hitherto unattainable, forecasts and more precise data analysis. For example, photonic processors support the evaluation of large quantities of data in medical diagnoses, for instance in high-resolution 3D data produced in special imaging methods. Further applications are in the fields of self-driving vehicles, which depend on fast, rapid evaluation of sensor data, and of IT infrastructures such as cloud computing which provide storage space, computing power or applications software.

Story Source:

Materials provided by University of Münster. Note: Content may be edited for style and length.

Credit: Google News

Previous Post

3 Experiential Tactics for B2B Virtual Events

Next Post

SolarWinds fallout: DOJ says hackers accessed its Microsoft O365 email server

Related Posts

ANZ Bank: We’ve been using machine learning for 20 years
Machine Learning

ANZ Bank: We’ve been using machine learning for 20 years

April 13, 2021
Data Science And Machine Learning Service Market Growth Due to COVID-19 Spread | ZS, LatentView Analytics, Mango Solutions, Microsoft, International Business Machine – KSU
Machine Learning

Data Science And Machine Learning Service Market Growth Due to COVID-19 Spread | ZS, LatentView Analytics, Mango Solutions, Microsoft, International Business Machine – KSU

April 13, 2021
A.I. For Raspberry Pi Pico: Uctronics TinyML Learning Kit Review
Machine Learning

A.I. For Raspberry Pi Pico: Uctronics TinyML Learning Kit Review

April 13, 2021
Artificial Intelligence Research at Duke
Machine Learning

Artificial Intelligence Research at Duke

April 13, 2021
AI, Machine And Deep Learning: Filling Today’s Need for Speed And Iteration
Machine Learning

AI, Machine And Deep Learning: Filling Today’s Need for Speed And Iteration

April 12, 2021
Next Post
SolarWinds fallout: DOJ says hackers accessed its Microsoft O365 email server

SolarWinds fallout: DOJ says hackers accessed its Microsoft O365 email server

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Recommended

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

January 6, 2019
Microsoft, Google Use Artificial Intelligence to Fight Hackers

Microsoft, Google Use Artificial Intelligence to Fight Hackers

January 6, 2019

Categories

  • Artificial Intelligence
  • Big Data
  • Blockchain
  • Crypto News
  • Data Science
  • Digital Marketing
  • Internet Privacy
  • Internet Security
  • Learn to Code
  • Machine Learning
  • Marketing Technology
  • Neural Networks
  • Technology Companies

Don't miss it

These new vulnerabilities put millions of IoT devices at risk, so patch now
Internet Security

These new vulnerabilities put millions of IoT devices at risk, so patch now

April 13, 2021
BRATA Malware Poses as Android Security Scanners on Google Play Store
Internet Privacy

BRATA Malware Poses as Android Security Scanners on Google Play Store

April 13, 2021
6 Limitations of Desktop System That QuickBooks Hosting Helps Overcome
Data Science

6 Limitations of Desktop System That QuickBooks Hosting Helps Overcome

April 13, 2021
ANZ Bank: We’ve been using machine learning for 20 years
Machine Learning

ANZ Bank: We’ve been using machine learning for 20 years

April 13, 2021
Apple looking to close the gap between web and app privacy
Internet Security

Who do I pay to get the ‘phone’ removed from my iPhone?

April 13, 2021
Robust Artificial Intelligence of Document Attestation to Ensure Identity Theft
Data Science

Robust Artificial Intelligence of Document Attestation to Ensure Identity Theft

April 13, 2021
NikolaNews

NikolaNews.com is an online News Portal which aims to share news about blockchain, AI, Big Data, and Data Privacy and more!

What’s New Here?

  • These new vulnerabilities put millions of IoT devices at risk, so patch now April 13, 2021
  • BRATA Malware Poses as Android Security Scanners on Google Play Store April 13, 2021
  • 6 Limitations of Desktop System That QuickBooks Hosting Helps Overcome April 13, 2021
  • ANZ Bank: We’ve been using machine learning for 20 years April 13, 2021

Subscribe to get more!

© 2019 NikolaNews.com - Global Tech Updates

No Result
View All Result
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News

© 2019 NikolaNews.com - Global Tech Updates