Machine Learning News Hubb
Advertisement Banner
  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us
  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us
Machine Learning News Hubb
No Result
View All Result
Home Edge AI

BrainChip Showcases Foundation for Next-generation AI Solutions at AI Hardware & Edge AI Summit

admin by admin
September 11, 2023
in Edge AI


Laguna Hills, Calif. – September 6, 2023 – BrainChip Holdings Ltd (ASX: BRN, OTCQX: BRCHF, ADR: BCHPY), the world’s first commercial producer of ultra-low power, fully digital, event-based, neuromorphic AI IP, is a Gold Sponsor participant of the AI Hardware & Edge AI Summit September 12-14 at the Santa Clara Marriott in Santa Clara, Calif.

The combined AI Hardware & Edge AI Summit comprehensively covers the design and deployment of ML hardware and software infrastructure across the cloud-edge continuum. As part of the Summit, BrainChip CMO Nandan Nayampally will present “The Edge of Tomorrow: Intelligent Compute to scale AIoT” on September 13 at 4:55 p.m. PDT. The session will detail BrainChip’s holistic, distributed approach that frees up the cloud and creates an explosion of capable, intelligent sensing devices on the Edge that accelerate global artificial intelligence.

“We are pleased to partner with the AI Hardware & Edge AI Summit to demonstrate how BrainChip’s fully digital, event-based Akida™ platform provides radically efficient AI inference on device to substantially increase the level of intelligence delivered on Edge devices,” said Nayampally. “I look forward to discussing how our approach in keeping AI/ML local to the chip while minimizing the need for cloud, dramatically reduces latency while improving privacy and data security.”

Akida processors power the next generation of Edge AI devices that enable growth in intelligence in industrial, home, automotive, and other IoT environments. Akida’s fully digital, customizable, event-based neural processing solution is ideal for advanced intelligent sensing, medical monitoring and prediction, high-end video-object detection and more. Akida’s neuromorphic architecture delivers high performance with extreme energy efficiency enabling AI solutions previously not possible on battery-operated or fan-less embedded Edge devices. Akida also has a unique ability to securely learn on-device without the need for cloud retraining.

To schedule an appointment with BrainChip during the AI Hardware & Edge AI Summit, email [email protected].

About BrainChip Holdings Ltd (ASX: BRN, OTCQX: BRCHF, ADR: BCHPY)

BrainChip is the worldwide leader in Edge AI on-chip processing and learning. The company’s first-to-market, fully digital, event-based AI processor, Akida TM , uses neuromorphic principles to mimic the human brain, analyzing only essential sensor inputs at the point of acquisition, processing data with unparalleled efficiency, precision, and economy of energy. Akida uniquely enables Edge learning local to the chip, independent of the cloud, dramatically reducing latency while improving privacy and data security. Akida Neural processor IP, which can be integrated into SoCs on any process technology, has shown substantial benefits on today’s workloads and networks, and offers a platform for developers to create, tune and run their models using standard AI workflows like Tensorflow/Keras. In enabling effective Edge compute to be universally deployable across real world applications such as connected cars, consumer electronics, and industrial IoT, BrainChip is proving that on-chip AI, close to the sensor, is the future, for its customers’ products, as well as the planet. Explore the benefits of Essential AI at www.brainchip.com.

Follow BrainChip on Twitter: https://www.twitter.com/BrainChip_inc
Follow BrainChip on LinkedIn: https://www.linkedin.com/company/7792006





Source link

Previous Post

A Primer on Foundational Concepts You Need to Start Running Statistical Tests | by Murtaza Ali | Sep, 2023

Next Post

Improving asset health and grid resilience using machine learning

Next Post

Improving asset health and grid resilience using machine learning

Developments around Scene Graph Generation part3(Machine Learning) | by Monodeep Mukherjee | Sep, 2023

Reinforcement Learning: an Easy Introduction to Value Iteration | by Carl Bettosi | Sep, 2023

Related Post

Artificial Intelligence

16, 8, and 4-bit Floating Point Formats — How Does it Work? | by Dmitrii Eliuseev | Sep, 2023

by admin
September 30, 2023
Machine Learning

The Transformative Power of Machine Learning in Industrial IoT | by Ashish Jagdish Sharma | Sep, 2023

by admin
September 30, 2023
Machine Learning

Top 6 Accounts Payable KPIs to measure

by admin
September 30, 2023
Artificial Intelligence

Build a crop segmentation machine learning model with Planet data and Amazon SageMaker geospatial capabilities

by admin
September 30, 2023
Edge AI

The History of AI: How Generative AI Grew from Early Research

by admin
September 30, 2023
Artificial Intelligence

Energy Supply and Demand Optimisation: Mathematical Modelling Using Gurobi Python | by Kong You Liow | Sep, 2023

by admin
September 29, 2023

© Machine Learning News Hubb All rights reserved.

Use of these names, logos, and brands does not imply endorsement unless specified. By using this site, you agree to the Privacy Policy and Terms & Conditions.

Navigate Site

  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us

Newsletter Sign Up.

No Result
View All Result
  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us

© 2023 JNews - Premium WordPress news & magazine theme by Jegtheme.