WebsiteGear Logo Log In
New User? Sign Up
About | Contact | FAQ
  Home News Web Hosting Computer Hardware Saturday, April 20, 2024 
Add Press Release News | News Feeds Feeds | Email This News Email


Lanner Electronics Launches Falcon H8 PCIe AI Accelerator Card, Powered by Hailo-8(TM)AI Processors
Wednesday, May 18, 2022

Lanner Electronics & Hailo collaborate on one of the most cost-efficient PCIe accelerator cards on the market, with record high tera operations per second (TOPS), enabling high-end deep learning applications on edge servers

NEW TAIPEI, Taiwan and TEL AVIV, Israel, May 10, 2022 /PRNewswire/ -- Lanner Electronics, a global leader in the design and manufacturing of intelligent edge computing appliances, announced its first Hailo-8(TM)AI-powered PCIe accelerator card, the Falcon H8. Lanner collaborated with leading AI (Artificial Intelligence) chipmaker Hailo to design the Falcon H8, enabling scalable and powerful intelligent video analytics applications for multiple industries operating at the edge, including intelligent transport systems (ITS), smart cities, smart retail, and Industry 4.0. The Falcon H8 is one of the most cost-efficient PCIe AI accelerator cards on the market, with a low power consumption and record high of up to 156 tera operations per second (TOPS) to allow high-end deep learning applications on edge servers.

Lanner's Falcon H8 modular, PCIe FHHL form factor provides a compact and easily deployable solution for engineers looking to offload CPU loading for low-latency deep learning inference. With high-density AI processors, the Falcon H8 accommodates 4, 5, or 6 Hailo-8(TM) AI processors, offering a modular, cost-effective Edge AI solution with high processing capabilities and power efficiency. Through a standard PCIe interface, the Falcon H8 AI Accelerator Card enables legacy devices such as NVRs, Edge AI boxes, Industrial PCs and robots to run video-intensive, mission-critical Edge AI applications such as video analytics, traffic management, access control, and beyond.

The Falcon H8 delivers unprecedented inference processing of over 15,000 Frames Per Second (FPS) for MobileNet-v2 and 8,000 FPS for ResNet-50. Its performance is up to 4x more cost effective (TOPS/$) and 2x more power efficient (TOPS/W) compared to leading GPU-based solutions.

"Optimized for AI functionality, performance, and ease of deployment, Lanner is pleased to partner with Hailo to design a next-gen AI accelerator card that brings top-performing AI computing to the edge of industrial IoT," said Jeans Tseng, CTO of Lanner Electronics. "Our expertise in creating high-density hardware platforms, combined with Hailo's state-of-the-art neural chip and software framework, provides service providers and system integrators a best-in-class AI accelerator that enables running deep learning applications most efficiently with the lowest total cost of ownership."

"The integration of Lanner's Falcon H8 and the Hailo-8 provides unmatched AI performance at the edge. This joint solution is more powerful, scalable, and cost-effective than other solutions available on the market today," said Orr Danon, CEO and Co-Founder of Hailo. "Our collaboration with Lanner will better power edge devices across industries, including transportation, smart cities, smart retail, industrial IoT, and more."

About Lanner Electronics

Lanner Electronics is a world-leading hardware provider for advanced network appliances, ruggedized edge AI appliances. Lanner's Edge AI hardware platforms bring proven reliability, with a purpose-built design that can withstand the distinct challenges of the industrial edge and enable mission-critical applications such as video analytics, traffic management, access control, and beyond.

About Hailo

Hailo, an AI-focused, Israel-based chipmaker, has developed a specialized Artificial Intelligence (AI) processor that delivers the performance of a data center-class computer to edge devices. Hailo's AI processor reimagines traditional computer architecture, enabling smart devices to perform sophisticated deep learning tasks such as object detection and segmentation in real time, with minimal power consumption, size, and cost. Supported by its Hailo-8(TM) M.2 and Mini PCIe high-performance AI acceleration modules, the deep learning processor is designed to fit into a multitude of smart machines and devices, impacting a wide variety of sectors including automotive, industry 4.0, smart cities, smart homes, and retail.

Press Contacts

Lanner Electronics
Brian Chen
Marketing
336000@email4pr.com
+886-2-8692-6060

Hailo
Garrett Krivicich
Headline Media
336000@email4pr.com
+1 786 233 7684

View original content to download multimedia:https://www.prnewswire.com/news-releases/lanner-electronics-launches-falcon-h8-pcie-ai-accelerator-card-powered-by-hailo-8ai-processors-301543753.html

SOURCE Lanner Electronics, Inc



Email This News Email | Submit To Slashdot Slashdot | Submit To Digg.com Digg | Submit To del.icio.us Del.icio.us | News Feeds Feeds

RELATED NEWS ARTICLES
Nav Axcelis Announces Multiple Shipments of Purion Power Series Implanters to Leading Silicon Carbide Chipmakers Worldwide | Apr 19, 2024
Nav IDTechEx Discusses the Role of Printed Sensors in Mass-Digitization | Apr 19, 2024
Nav 5 Reasons You Should Migrate Your Exchange Mailbox to Office 365 | Apr 19, 2024
Nav Grand Opening of the April 2024 Global Sources Consumer Electronics and Electronic Components Shows | Apr 19, 2024
Nav Humane Announces Ai Pin Now Available Nationwide | Apr 19, 2024
Nav Volpara Launches MQSA Compliance Software at the Society for Breast Imaging Symposium | Apr 19, 2024
Nav Wisq Launches First Personalized AI Guide for Managers | Apr 19, 2024
Nav SCADA Market worth $16.6 billion by 2029 - Exclusive Report by MarketsandMarkets(TM) | Apr 19, 2024
Nav Trident IoT Completes $10M Fundraising Round; Welcomes Vivint Founder Todd Pedersen to the Board | Apr 19, 2024
Nav Kove Wins $525 Million Judgment in Patent Infringement Case Against Amazon Web Services | Apr 19, 2024
NEWS SEARCH

FEATURED NEWS | POPULAR NEWS
Submit News | View More News View More News