BRN Discussion Ongoing

At least this author takes the time to contact someone like Nandan to discuss our solution unlike some out there.

Under low power edge processing.


OCTOBER 1, 2023 | INTERNET OF THINGS | SENSORS/DATA ACQUISITION | CONNECTIVITY

Wireless Sensor Networking for the IIoT

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Figure 1. Analyzing maintenance data to forecast machine maintenance. (Image: Kristian/Adobe Stock)

Factories of all sizes are incorporating automation at ever increasing rates. Among the reasons for that are reshoring, the idea that automating factories is a way of lowering labor costs for U.S. manufacturing so that domestic manufacturing becomes more cost-effective when you compare it to the costs of offshoring. You can take advantage of the much lower labor rates in many countries, but you have to add in the costs of more complex management and logistics, as well as the costs of shipping.
And then there’s the U.S. labor shortage, the difficulty of finding enough people who are willing to work in factories, while at the same time, a significant portion of the existing workforce is aging toward retirement.
And of course, the increasing productivity gains due to automation are good for the bottom line. Automation not only reduces the costs of production in the long run, but it also helps maintain reliable high-quality results and consistently predictable time frames.
The downside of automating an existing factory is the initial investment, not just in dollars, but also in the necessary down time for making such basic changes. However, most factories already have some automated processes using PLCs and other industrial controllers, generally running independently of each other, so that’s a head start. The next step is to integrate all of that into a single network — the Industrial Internet of Things (IIoT).
Ideally the factory network should also connect with the office network, to enable management to make more informed decisions. And it should enable connecting to the cloud for complicated analytics and large data storage — as well to the internet for connectivity beyond the factory.

WHY WIRELESS?​

To begin with, installing a wireless network is much less expensive. The costs in labor, materials, and downtime, for wiring a factory are far greater than for setting up a wireless system. And once in place, a wireless network is much more flexible. As processes change or new equipment is added, it is relatively simple to add or reprogram sensor nodes. Also, wireless sensors can be installed in locations that would be difficult to reach with cabling, for example on rotating machinery.

DESIGNING THE SYSTEM​

One of the main challenges with setting up wireless sensors, is powering them. Even if you use some sort of power harvesting, you still need power storage, usually with batteries. If the batteries have to be changed often, wireless is a non-starter, so keeping power low is of primary importance.
One strategy for keeping sensor power low is to reduce the amount of data transmitted from each sensor because streaming data uses a relatively large amount of power. The trouble is that once an IIoT network has been installed, the maximum benefit comes from obtaining as much data as possible and sending it to a local server or to a cloud data center for analysis. But in general, only a small percentage of the data is relevant. External analytic data-crunching can sort the wheat from the chaff, but the size of the data stream and the amount of computing can overwhelm systems. A solution is to do preprocessing at the “edge” — right at the sensor — to determine what data is significant and only send that.

LOW POWER EDGE PROCESSING​

But for edge processing to provide a net improvement in power reduction, the processing itself has to be done at low power. On that subject, I had a discussion with Nandan Nayampally, Chief Marketing Officer of BrainChip, makers of the Akida IP platform, a neural processor designed to provide ultra-low-power edge AI sensor network preprocessing. It starts with fully digital neuromorphic event-based AI and can learn on the device to trigger outputs only when there is significant information. It has its own memory that it uses to analyze the data, thus avoiding the energy-intensive transfer of data back and forth to utilize remote data storage. It also significantly reduces the amount of bandwidth required for the processing.
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Figure 2. (Image: BrainChip)
According to Nayampally, the series is focused on three general configurations (See Figure 2). The Akida-E is the most basic of the solutions, dealing with sensor inputs like vibration detection, anomaly detection, keyword spotting, and sensor fusion. Akida-S is more mid-range. It can do microcontroller (MCU)-level machine learning for more complex tasks such as presence detection, object classification, and biometric recognition. Finally, on the right-hand side of the figure, the Akida-P can perform higher-level tasks using a microprocessor (MPU) for tasks like advanced object detection or sequence prediction.

WI-FI NETWORKING​

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Figure 3. InnoPhase IoT Talaria TWO™ Low Power Wi-Fi plus BLE5.0 Module with associated ML and MCU. (Image: InnoPhase IoT)
While the Brainchip solutions save power by doing advanced AI processing at the edge, InnoPhase IoT, Inc. focuses on the network architecture. Their Talaria Two Wi-Fi and BLE System on Chip (SoC) and module enables sensors to be networked via Wi-Fi. According to Deepal Mehta, InnoPhase IoT Senior Director of Business Development, since Wi-Fi enabled IoT end points use TCP/IP connectivity, they can communicate directly to the cloud without any need for intervening gateways. The chip also includes a Bluetooth Low Energy (BLE) gateway that can be used in two different ways. It enables legacy BLE connected devices to connect to the Wi-Fi network and facilitates provisioning the Wi-Fi enabled end points using an app on a cell phone.
In addition to saving power by eliminating gateways, they use a low-power radio to transmit the Wi-Fi signal. Key to the low power radio is their method of digitally encoding and decoding the RF waveform. This method, they call PolaRFusion™, is distinguished from other techniques that use higher power-consuming analog processing.

USE CASE​

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Figure 4. Typical sensor application. (Image: InnoPhase IoT)
A typical simple use case is temperature sensing. If a sensor mounted on a machine shows a trending rise in temperature, that could be an indication that there is a problem. However, instead of sending all the temperature data all the time, a local neural processor like BrainChip’s Akida can actively learn the standard temperature envelope for a particular installation and set an alarm level based on that. Then only the alarm needs to be transmitted, possibly via InnoPhase Wi-Fi, to the local server or to the cloud. Alternatively, once the alarm level has been reached, the continuous stream of temperature data can then be transmitted.
If we now consider a series of temperature sensors mounted on different assets. Each of those pieces of equipment might have different standard operating temperatures. And even identical assets located in different places in the building may have variations based on draft air, sunlight, or other factors. So, being able to use AI analytics separately at each sensor and setting different alarm levels will be extremely efficient. The value added to the manufacturing process will be multiplied if you use the same approach for other data such as vibration, pressure, levels, and flows. And even more, if in addition to all the sensor data, you can track products and processes using cameras and then analyze that information using the video analytics that can be performed with the Akida platform.

THE BOTTOM LINE​

The industrial internet of things — sharing, collecting, and analyzing information across a complete manufacturing enterprise — can significantly enhance the bottom line. Not only in monetary terms but also in the quality and reliability of the products and the ability to deliver them on time.
This article was written by Ed Brown, editor of Sensor Technology. For more information, go to www.brainchip.com and www.innophaseiot.com .
 
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Diogenese

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Oké I was in the understanding that some of the patents were on his personal name. I could be wrong.
In the US, the Constitution only permits the actual inventor to apply for a patent. Where the inventor works for a company and the invention relates to the company's business, the patent will normally be assigned to the company.
 
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Just an article on the latest partnership.

I like the rollout availability.


Smart Bins Powered by AI and Robotics Aim to Revolutionize Waste Management​

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konrad Posted on2023-10-11
BrainChip Holdings Ltd, the world’s first producer of ultra-low power, fully digital, event-based, neuromorphic AI IP, has partnered with Circle8 Clean Technologies and AVID Group to develop “Smart Bins” that use AI-powered sensors and robotics to automatically sort and recycle different types of waste. The collaboration utilizes BrainChip’s neuromorphic processor technology and AVID Group’s engineering expertise to create intelligent waste receptacles capable of sorting materials like plastic, metal, and glass. The objective is to reduce the environmental impact of waste disposal, particularly landfill usage and ocean pollution, while also increasing recycling rates and decreasing waste management costs.
The advanced smart bins will not only effectively sort and recycle waste but will also provide valuable data and insights into waste generation and consumption patterns. This data can be used to improve waste reduction strategies and identify ways to mitigate environmental impact. The partnership between BrainChip, Circle8 Clean Technologies, and AVID Group is part of a larger initiative to create smart cities that utilize AI and IoT technologies to enhance the quality of life, improve efficiency, and promote sustainability.
Initially, the smart bins will be available to municipalities in Australia before expanding to other locations worldwide. The goal is to create innovative solutions that significantly improve recycling and waste management processes, making them more convenient, efficient, and environmentally friendly. BrainChip’s neuromorphic processor technology, Akida™, is well-suited for edge AI applications that require cost-effective, ultra-low power, intelligent, real-time processing. The technology enables the deployment of effective edge compute across various applications, such as connected cars, consumer electronics, and industrial IoT, bringing AI closer to the sensor and reducing latency while maintaining privacy and data security.
The development of smart bins represents an important step towards sustainable waste management and recycling. By leveraging AI, robotics, and data insights, these bins have the potential to revolutionize waste management practices and contribute to a cleaner, greener future.
 
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manny100

Regular
Hi Gies,

That's not correct.

Peter is named as the inventor on most of the patents, but the company is the assignee.
Exactly and the Patents are our value safety net. Even if one of the 'big boys' comes up with their own version of an event based all on one chip (no journey to the cloud) there will be an almighty rush to take us out for the patents and ecosystem.
 
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Bravo

If ARM was an arm, BRN would be its biceps💪!

SiFive Announces Differentiated Solutions for Generative AI and ML Applications Leading RISC-V into a New Era of High-Performance Innovation​

SiFive’s Performance P870 and Intelligence X390 product debut sets new bar for high-performance compute in consumer, infrastructure, and automotive applications
Santa Clara, Calif., Oct. 11, 2023 –SiFive, Inc., the pioneer and leader of RISC-V computing today announced two new products designed to address new requirements for high performance compute. The SiFive Performance™ P870 and SiFive Intelligence™ X390 offer a new level of low power, compute density, and vector compute capability, and when combined provide the necessary performance boost for increasingly data intensive compute. Together, the new products create a powerful mix of scalar and vector computing to meet the needs of today’s dataflow and computation intensive AI applications across consumer, automotive, and infrastructure markets.
The announcement took place at an in-person press and analyst event in Santa Clara today, where the company also provided an update on several of its product lines currently shipping in silicon to customers around the world. Company executives offered insight into SiFive’s product roadmap and discussed how the overall RISC-V ecosystem continues to expand rapidly as new applications call for the benefits of RISC-V-based high-performance compute solutions.
“SiFive is leading the industry into a new era of high-performance RISC-V innovation, and closing the gap with other instruction set architectures with our unparalleled portfolio, while recent silicon tape-outs are demonstrating the tremendous benefits of SiFive RISC-V solutions,” said Patrick Little, SiFive Chairman, President and CEO. “As the Arm IPO showed, there is a fast-growing demand for semiconductors across many sectors, particularly processors for consumer and infrastructure markets. The flexibility of SiFive’s RISC-V solutions allows companies to address the unique computing requirements of these segments and capitalize on the momentum around generative AI, where we have seen double-digit design wins, and for other cutting-edge applications.
The SiFive Performance P870
Ideal for high performance consumer applications, or when used in conjunction with a vector processor in the datacenter, the P870 core sets an impressive new RISC-V performance bar across instruction set architecture availability, throughput, parallelism, and memory bandwidth. Bringing a 50% peak single thread performance upgrade (specINT2k6) over the previous generation SiFive Performance processors, the P870 is a six-wide out-of-order core, that meets RVA 23 and offers a shared cluster cache enabling up to a 32-core cluster. High execution throughput comes with more instruction sets per cycle, more ALU, and more branch units. The P870 is fully compatible with Google’s platform requirements for Android on RISC-V. The P870 also offers additional proven SiFive features: · x 128b VLEN RVV · Vector crypto and hypervisor extensions · IOMMU and AIA · Non-inclusive L3 cache · Proven RISC-V WorldGuard security
The SiFive Intelligence X390
Building on the highly popular SiFive Intelligence X280’s success in coupling AI/ML applications with hardware accelerators in mobile, infrastructure, and automotive applications, the new X390 brings a 4x improvement to vector computation with its single core configuration, doubled vector length, and dual vector ALUs. This allows quadruple the amount of sustained data bandwidth. With SiFive Vector Coprocessor Interface eXtension (VCIX) companies can easily add their own vector instructions and/or acceleration hardware, bringing unprecedented flexibility and allowing users to greatly increase performance with custom instructions. Features include: · 1024-bit VLEN, 512-bit DLEN · Single / Dual Vector ALU · VCIX (2048-bit out, 1024-bit in)
An Agile Hardware Solution for Generative AI applications
Bringing the P870 high-performance general compute SoC together with a high performance NPU cluster, consisting of the X390 and customer AI hardware engines, offers product designers a highly flexible, low power, and programmable solution with superior compute density for complex workloads.
The company highlighted how interest in these combined SiFive solutions is high, with a number of customers achieving silicon success and in various stages of commercialization using high performance products.
SiFive continues to actively work across the ecosystem (see attached quote sheet) with partners who are ensuring the software, security, and flexibility benefits of the open standard ecosystem are in place for SiFive processors as companies move to commercialize their SiFive-powered products.
Supporting quotations from industry partners:
SiFive has assembled an array of ecosystem partners to help customers speed their time to commercialization.
"We have collaborated with SiFive to deliver Cadence AI-driven digital full flow Rapid Adoption Kits (RAKs) for previous generation SiFive Performance™ and Intelligence™ RISC-V processors and are looking forward to producing them for the upcoming P870 and X390 processors" said KT Moore, vice president of Corporate Marketing, Cadence. "The RAKs utilize our leading Generative AI solutions that optimize power, performance and area while our system verification solutions enable optimal verification throughput and productivity. This empowers SiFive customers to accelerate time-to-market, enhance product quality, and deliver innovative solutions for high-performance computing, AI, automotive, and mobile applications."
Canonical’s strategic alliance with SiFive, a RISC-V CPU IP leader, grants us exclusive privileges, including early access to their cutting-edge processors under development. Canonical has ported Ubuntu to SiFive development systems in the past and is working to have Ubuntu ready at launch with the SiFive HiFive Pro P550 and future platforms,” said Cindy Goldberg, Vice President, Silicon Alliances at Canonical. “We see a growing demand for SiFive RISC-V processors and recognize the opportunity across consumer, automotive and infrastructure markets. Ubuntu is the operating system of choice for infrastructure and cloud use cases. This year with the introduction of Ubuntu Pro we have enhanced security, compliance and support coverage across a broad portfolio of open source software and platform architectures. The combination of SiFive’s RISC-V IP and Canonical’s software is a combination that will lead the transformative future in computing, on RISC-V.”
“As an early RISC-V adopter and industry leader for delivering production-proven, safety-certified development tools, C/C+ compilers and operating systems for RISC-V, Green Hills Software is excited to be expanding its close working relationship with SiFive by adding optimized support for the P870 and X390.” said Dan Mender, VP of Business Development at Green Hills Software. “Together, Green Hills and SiFive will help companies realize the maximum performance, power, and area benefit possible for these new SiFive offerings.”
IAR welcomes the new SiFive Performance P870 and Intelligence X390 RISC-V processors and recognizes their opportunity for generative AI and ML as well as high-performance computing applications addressing consumer, automotive, and infrastructure. IAR and SiFive have a strong partnership and stand out in the RISC-V ecosystem. SiFive enables IAR with early access its leading commercial RISC-V IP processors while they are under development, enabling co-optimizations benefiting mutual customers. IAR’s complete development solution for all the leading RISC-V core IP from SiFive helps embedded software developers around the world maximize the energy efficiency, simplicity, security, and flexibility upsides that RISC-V and SiFive offer, like the latest additions for Generative AI/ML applications.”
“As the world leader in debugging and trace tools used by all major and well-known technology companies, Lauterbach has been committed to supporting the RISC-V ecosystem from the beginning and is a close long-term partner of SiFive, a leading provider of RISC-V CPU IP. Currently, we see a strong growing global demand for RISC-V based processors including generative AI and ML applications as well as high performance compute across consumer, automotive, and infrastructure markets, all markets in which we have been successfully active for many years. Our early access to SiFive's processors under development allows both SiFive and Lauterbach to co-optimize their products for an optimal user experience.” Norbert Weiss, Managing Director, Lauterbach GmbH
"SiFive has been instrumental in bringing the RISC-V architecture to Automotive Grade Linux and providing additional hardware options for automakers and suppliers, many of whom are already using the open source AGL platform in production," said Dan Cauchy, Executive Director of Automotive Grade Linux (AGL), an open source project at The Linux Foundation. "SiFive is an active AGL member, and we look forward to their continued collaboration with the broader community."
“The growth of AI and machine learning systems is driving significant compute demands in application-specific processors. Our collaboration with SiFive to provide co-optimized solutions including Synopsys.ai™ full-stack AI-driven EDA suite and Fusion QuickStart Implementation Kits, along with Synopsys Interface and Foundation IP, hardware-assisted verification, and virtual prototyping solutions help mutual customers accelerate the design of high-performance, RISC-V-based SoCs.” Kiran Vittal, Senior Director of Partner Alliances Marketing for the EDA Group, Synopsys.
Interesting...

Green Hills Software is excited to be expanding its close working relationship with SiFive by adding optimized support for the P870 and X390.” said Dan Mender, VP of Business Development at Green Hills Software. “Together, Green Hills and SiFive will help companies realize the maximum performance, power, and area benefit possible for these new SiFive offerings.”


Screen Shot 2023-10-12 at 12.56.19 pm.png


 
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Esq.111

Fascinatingly Intuitive.
Afternoon Chippers ,

Looking at the chart volume indicator over last two and a half days , on one min logging of transactions, getting that feeling again .......surge in volume incoming within next hour.
Purely a Guess ...5,000,000 share volume.

Also of note... in todays trading log / String of all trades executed there are several periods of no transactions.

Should kick to the upside.

Not Financial Advice.

1697076511273.png


Regards,
Esq.
 
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IloveLamp

Top 20
Afternoon Chippers ,

Looking at the chart volume indicator over last two and a half days , on one min logging of transactions, getting that feeling again .......surge in volume incoming within next hour.
Purely a Guess ...5,000,000 share volume.

Also of note... in todays trading log / String of all trades executed there are several periods of no transactions.

Should kick to the upside.

Not Financial Advice.

View attachment 46874

Regards,
Esq.
200w (4).gif
 
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Colorado23

Regular
Rob's at it again.
 

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GazDix

Regular
Good morning,

Within the next 14 business days Brainchip will be required to deliver it's 2nd quarter results and short-term guidance, this upcoming
4C will determine our share price movement in the immediate short-term, my gut feeling like a number of posters is once again, very little
income as nothing has been announced that would suggest otherwise, apart from "watch the financials" which I still personally think is
some way off yet.

All the news that's come out of the company has been positive, there's absolutely no denying that fact and for a small start-up we are
100% making great progress establishing our company's name and superb technology. the learning continues for all.

Our accountant has a very sharp pencil at the ready to write down the 7 digit figures we are all awaiting, so what I'm trying to say in a
roundabout way is, try to contain your excitement when the share price does move north, it can't be sustained if the back of house
haven't resharpened their pencil because of lack of use. :rolleyes:

Have a good day...Texta ;)
Oh please lets not have the 2nd quarter report again Tech:cry:
 
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buena suerte :-)

BOB Bank of Brainchip
Afternoon Chippers ,

Looking at the chart volume indicator over last two and a half days , on one min logging of transactions, getting that feeling again .......surge in volume incoming within next hour.
Purely a Guess ...5,000,000 share volume.

Also of note... in todays trading log / String of all trades executed there are several periods of no transactions.

Should kick to the upside.

Not Financial Advice.

View attachment 46874

Regards,
Esq.
Best Wishes Good Luck GIF by Studios 2016
Cheers Esqy... I'm primed with the refresh button :)
Smash Video Games GIF by HyperX
 
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Esq.111

Fascinatingly Intuitive.
Afternoon Buena suerte : },

Nothing is guaranteed in life......

Roughly 26 odd trades sitting in the sell side which are for over 100,000 shares upwards ....... I call Bull Sh#t.

Regards,
Esq
 
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Esq.111

Fascinatingly Intuitive.
Shes feeling compressed Chippers & thay have created a $0.01 gap between Buy & Sell ..

Hold on..


Esq.
8,900+ Mad Bull Stock Photos, Pictures & Royalty-Free Images - iStock |  Charging bull, Bull fighting
 
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IloveLamp

Top 20

Another area our teams worked on was the ability to make Meta Quest 3 more capable of understanding the environment around a user, so that virtual experiences can interact with physical spaces. We packed the Snapdragon XR2 Gen 2 with cutting edge on-device AI that is eight times more performant* and ultra-low latency passthrough for smoother and more natural interactions, all in a single chip architecture. This enabled Meta to build a slimmer and more comfortable headset that doesn’t require an external battery pack and enables the freedom for users to interact with their virtual and physical space seamlessly.

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buena suerte :-)

BOB Bank of Brainchip
Afternoon Buena suerte : },

Nothing is guaranteed in life......

Roughly 26 odd trades sitting in the sell side which are for over 100,000 shares upwards ....... I call Bull Sh#t.

Regards,
Esq
Yep agree Esqy.... many fake 'sell' orders (normal manipulation)

"Nothing is guaranteed in life"..... Apart from getting rich holding on to my precious BRN shares :cool::love::cool:

Cheers mate

We might have to visit the bar again tomorrow with some weekend sounds 🎶🎵🎙️(y)
 
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MDhere

Regular
Hi fellow brners, things are starting to ramp up imo :)
been reading on here from time to time while dealing with some personal issues but all good now.
Aparn Pal ❤came across my path today and seemed to have pointed my also into the direction of Mr Shyam Prabhakar (realityai acquired by RENESAS) appearing in workshop Sustainable AI 4 Edge 28th Oct.
I couldn't paste what i was reading on here as it was pdf form so couldn't snap it. but i did learn a new word called Zetta :)
 
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buena suerte :-)

BOB Bank of Brainchip
Hi fellow brners, things are starting to ramp up ino :)
been reading on here from time to time while dealing with some personal issues but all good now.
Aparn Pal ❤came across my path today and seemed to have pointed my also into the direction of Mr Shyam Prabhakar (realityai acquired by RENESAS) appearing in workshop Sustainable AI 4 Edge 28th Oct.
I couldn't paste what i was reading on here as it was pdf form so couldn't snap it. but i did learn a new word called Zetta :)
Great to see you back MD...
 
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IloveLamp

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Because Brainchip team have been talking to a telecommunications company for some time apparently.
:ROFLMAO:
 
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Diogenese

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