Machine learning gets faster thanks to Lifelong DNN technology

Posted on Tuesday, May 15, 2018 by AUSTIN HARRIS, Global Sales

Major improvements to how fast machine learning can be have been announced by Neurala in a breakthrough update to its Lifelong Deep Neural Network (Lifelong-DNN) technology. The update allows for a 'significant reduction in training time compared to traditional DNN - 20 seconds versus 15 hour - a reduction in overall data needs, and the ability for deep learning neural networks to learn without the risk of forgetting previous knowledge - with or without the cloud. 

“It takes a very long time to train a traditional DNN on a dataset, and, once that happens, it must be completely re-trained if even a single piece of new information is added. Our technology allows for a massive reduction in the time it takes to train a neural network and all but eliminates the time it takes to add new information,” said Anatoli Gorshechnikov, CTO and, co-founder of Neurala. “Our Lifelong-DNN is the only AI solution that allows for incremental learning and is the breakthrough that companies across many industries have needed to make deep learning useful for their customers.”

Off-the-shelf DNN is pretrained on an ImageNet - a massive database of images organized by keywords - and specific datasets. Until now, traditional DNN was fixed, and, to add new data, the system needed to be retrained on all objects from both datasets.

This traditional method required using powerful servers often located in the cloud. Neurala Lifelong Deep Neural Networks, Lifelong-DNN, enable the learning of objects on the edge incrementally, mimicking in software the way cortical and sub-cortical circuits in human and animal brains work “in tandem” to add new information on the fly.  Lifelong-DNN can use 20 percent of the number of instances per class, with only a single presentation of each during training to achieve optimal performance. This can decrease training time even more.

“This update is game-changing for edge analytics and for the way servers are used today,” added Gorshechnikov. “We can envision this technology slashing compute powers in server farms and enabling networks to be assembled on the fly on custom data. We are only scratching the surface of potential applications.”

More App Developer News

Tether QVAC SDK Powers AI Across Devices and Platforms



APAC 5G expansion to fuel 347B mobile market by 2030



How AI is causing app litter everywhere



The App Economy Is Thriving



NIKKE 3.5 anniversary update livestream coming soon



New AI tool targets early dementia detection



Jentic launch gives AI agents api access



Experts warn ai-generated health content risks misinterpretation without human oversight



Ludo.ai Unveils API and MCP Beta to Power AI Game Asset Pipelines



AccuWeather Launches ChatGPT Integration for Live Weather Updates



Stop Using Business Jargon: 5 Ways Buzzwords Damage Job Performance



IT spending rises as banks balance legacy and innovation



Tech hiring slumps as Software Developer job postings fall



AI is becoming more widespread in collaboration tools



FCC prohibits new foreign router models citing critical infrastructure risks



ChatGPT Carbon Footprint Matches 1.3 Million Cars Report Finds



Lens Launches MCP Server to Connect AI Coding Assistants with Kubernetes



Accelerating corporate ai investment returns



Enviromates tech startup launches global participation platform



Private Repository Secures the AI-driven Development Boom



UK Fintech Platform Enviromates Connects Projects Brands and Consumers



Env Zero and CloudQuery Announce Merger



How Industrial AI Is Transforming Operations in 2026



AI generated work from managers is damaging trust among employees



Foresight Secures $25M to Bridge Infrastructure Execution Gap



Copyright © 2026 by Moonbeam

Address:
1855 S Ingram Mill Rd
STE# 201
Springfield, Mo 65804

Phone: 1-844-277-3386

Fax:417-429-2935

E-Mail: contact@appdevelopermagazine.com