• Skip to main content
  • Skip to secondary menu
  • Skip to footer

Technologies.org

Technology Trends: Follow the Money

  • Technology Events 2026-2027
  • Sponsored Post
  • Technology Markets
  • About
    • GDPR
  • Contact

Lucd Announces Ground Breaking Advancements in Reservoir Computing

November 12, 2018 By admin Leave a Comment

At SC18 Lucd unveils a next generation AI approach based on infinitely scalable Reservoir Computing with 6 orders of magnitude greater accuracy

Lucd, a provider of an end to end Enterprise AI Platform will announce a breakthrough implementation of Reservoir Computing capability for next generation Artificial Intelligence at SC18.

Lucd has implemented a key approach to Reservoir Computing, called Echo State Neural Networks, using its patent pending Distributed Optimistic System. Reservoir computing (RC) is an alternative to Deep Learning Recurrent Neural Networks (RNNs), which are critical to breakthroughs in applications such as natural language processing. RC has the added benefit of greatly reduced computation required in the hidden layers of the network. Lucd’s distributed implementation has been tested on tens of thousands of processors to demonstrate the scalability of RNNs containing millions of neurons.

As an alternative to Deep Learning, Reservoir Computing is transforming artificial intelligence (AI) because it takes less time to train highly accurate models. Today, practitioners are hampered by the long training times of RNNs, and the need to refresh training on a regular basis. Organizations with tens or hundreds of existing models require large-scale compute resources just to maintain the models they have. Lucd’s distributed approach solves this problem by reducing training times to minutes, while also enabling models of nearly unbounded width and depth. Neural nets that are millions of inputs wide and thousands of layers deep can now be trained in minutes, rather than months, and provide magnitudes of greater accuracy.

“Training hidden layers is just too slow. Today’s systems were developed with parallel processing as an afterthought. In our experience, attempting to parallelize existing libraries almost never works well. We believe parallelization must be considered at the outset of the development of any new library. By starting with our scalable distributed optimistic system, we rapidly developed a large-scale echo state model that, out of the box was able to scale to thousands of processors. Our approach to neural network modeling requires a fraction of the time of classic training algorithms,” said Justin LaPre, Ph.D., Director of Distributed Computing at Lucd.

The anticipated impact of this approach will be the further democratization of machine learning by reducing requirements for large amounts of highly specialized computing resources; the ability to train and retrain models of nearly any size within minutes; and to perform online training of models in production.

“At Lucd, we continue to push the envelope so more businesses can easily integrate AI into their processes. The compute resource challenge of training deep neural networks risks bifurcating Enterprise AI into the haves and have nots. Our approach to reservoir computing offers to change all that. By exploiting the massive reduction in computational effort needed for model development, Lucd empowers all industries with faster training and greater accuracy on any infrastructure,” said David Bauer, Ph.D., CTO and co-founder at Lucd. “In the coming months we will be working with select business partners to develop networks of echo state networks to develop higher order reasoning across hundreds or even thousands of lower level AI.”

“Artificial Intelligence needs computational breakthroughs to continue a successful trajectory. Demonstrating scalability of large-scale Reservoir Computing models is a game changer in the field,” noted Chris Carothers, Ph.D., Director, Center for Computational Innovations and Professor, Computer Science at Rensselaer Polytechnic Institute and Lucd Board of Advisors member.

Lucd is at booth #3775 and will be showcasing its Reservoir Computing results.

About Lucd. By unleashing the power of data, the Lucd Enterprise end to end AI platform allows all businesses to conduct machine learning in a responsible way. Lucd builds Competitive Digital Advantage through leveraging data assets; Digital ROI; and providing the ability to exploit market knowledge. Lucd develops pioneering capabilities in AI, Big Data, Data Fusion and Machine Learning. Visit Lucd online at: https://www.lucd.ai/

About SC18

SC18, the International Conference for High-Performance Computing (sc18.supercomputing.org), sponsored by ACM and IEEE-CS, offers a complete technical education program and exhibition to showcase the many ways high-performance computing, networking, storage, and analysis lead to advances in scientific discovery, research, education, and commerce. This premier international conference includes a globally attended technical program, workshops, tutorials, a world-class exhibit area, demonstrations, and opportunities for hands-on learning.

SOURCE Lucd

Related Links
https://www.lucd.ai/

Filed Under: Tech Tagged With: Reservoir Computing

Reader Interactions

Leave a Reply Cancel reply

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

Footer

Recent Posts

  • How to Actually Use a Raspberry Pi Without Overthinking It
  • Chapter’s $100 Million Bet on AI for Retirement
  • Galaxy A57 5G vs A37 5G Review: Samsung Pushes “Everyday AI” Further Down the Stack
  • Samsung Galaxy A37 5G Review: The Sensible Choice
  • Samsung Galaxy A57 5G Review: The Mid-Range Bar Gets Higher
  • AfterQuery Raises $30M at $300M Valuation as the AI Race Collides with Its Real Constraint
  • Xoople Raises $130M to Build the “System of Record” for the Physical World
  • AI Looms and the Return of American Apparel Manufacturing
  • Manna’s Second Act: From Drone Novelty to Logistics Infrastructure
  • Britain Advances SMR Deployment with £300M Owner’s Engineer Contract

Media Partners

  • Market Analysis
  • Cybersecurity Market
The End of Manual Audits: Why AI-Native Accounting Is Not Optional Anymore
Raspberry Pi’s Earnings Beat Signals a Shift From Hobbyist Hardware to Embedded Infrastructure
Betting the Backbone: A Multi-Year Positioning on AMD, Broadcom, and Nvidia
Nvidia’s Groq 3 LPX: The $20B Bet That Could Define the Inference Era
Why Arm’s New AI Chip Changes the Rules of the Game
A Map Without Hormuz: Rewiring Global Oil Flows Through Fragmented Corridors
RoboForce’s $52 Million Raise Signals That Physical AI Is Moving From Demo Stage to Industrial Scale
The Hormuz Crisis: Winners and Losers in the Global Energy Shock
Zohran Mamdani’s Politics of Confiscation
Beyond Shipyards: Stephen Carmel’s Maritime Warning and the Hard Reality of Rebuilding an Oceanic System
Altum Strategy Group: Cybersecurity in 2026 Is No Longer a Technology Problem
Trent AI and the Security Layer the Agentic Stack Has Been Missing
Gartner Security & Risk Management Summit, June 1–3, 2026, National Harbor, MD
Ashdod Port Has Blocked 134,000 Cyberattacks—and Kept Israel’s Trade Moving
Black Hat Asia 2026, April 23–24, Singapore
World Backup Day 2026: Why Recovery Has Become the Real Test of Cyber Resilience
Cyberhaven Launches Agentic AI Security as Shadow Agents Move Onto the Enterprise Endpoint
Palo Alto Networks Rewrites Security for the Agentic AI Era
RSAC Conference 2026, March 23–26, San Francisco
AI-Speed Warfare Comes to Cybersecurity: Booz Allen’s Vellox Suite Signals a Structural Shift

Media Partners

  • Market Research Media
  • Technology Conferences
Canva Acquires Simtheory and Ortto to Build End-to-End Work Platform
Netflix Price Hikes, The Economics of Dominance in a Saturated Streaming Market
America’s Brands Keep Winning Even as America Itself Slips
Kioxia’s Storage Gambit: Flash Steps Into the AI Memory Hierarchy
Mamdani Strangling New York
The Rise of Faceless Creators: Picsart Launches Persona and Storyline for AI Character-Driven Content
Apple TV Arrives on The Roku Channel, Expanding the Streaming Platform Wars
Why Attraction-Grabbing Stations Win at Tech Events
Why Nvidia Let Go of Arm, and Why It Matters Now
When the Market Wants a Story, Not Numbers: Rethinking AMD’s Q4 Selloff
Accelerate 2026, May 21–22, 2026, Salt Palace Convention Center
JSNation 2026, June 11 & June 15, Amsterdam and Remote
ICMC 2026, July 30–31, Long Beach
Elevate 2026, April 22–24, 2026, Atlanta
WWDC 2026, June 8–12, Cupertino & Online
Zip Forward Europe 2026, April 16, 2026, London
AI Summit: Operationalizing Intelligence and Driving Innovation, April 16, 2026, Woburn, Massachusetts
GTC 2026, March 16–19, San Jose
Taiwan’s AI Ecosystem Steps Into the Spotlight at NVIDIA GTC, March 16–19, 2026
COMPUTEX 2026, June 2–5, Taipei

Copyright © 2022 Technologies.org

Media Partners: Market Analysis & Market Research and Exclusive Domains, Photography