BRN Discussion Ongoing

Kachoo

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Frangipani, came up with this at the time, which seems fairly logical, from book, I mean post #85,572

"Correct me if I am wrong, but I believe that customer list should therefore read:

  1. Renesas
  2. Megachips
  3. Ford
  4. Mercedes
  5. Vorago
  6. NASA
  7. Valeo
  8. ISL
  9. ???
  10. ???
Which leaves us with only two mystery customers that fall into the category of either being an EAP customer or have used Akida technology to develop a proof of concept, as we would have found out about any additional IP licensees via price-sensitive ASX announcements"


I questioned whether Ford could still be considered a customer, as we have heard nothing, since LDN days.
I would go on thebside that ford still is. Remember Airbus was mentioned back in 2017 and only recently surfaced again.
 
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Just all this business with Shaw Brothers, shorting and the Shaw Brothers connection with our new financiers et all.
I did post yesterdey that the 50 mill that disappeared from the shorts overnight could have been used in this way and now it’s making a bit more sense. Be good to find out if it was the case

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Mistakes happen, but, it's not a good look.
Particularly in sales, the adage is, that you only get one chance at a first impression.
These stupid errors keep on occurring and they should be getting this stuff proofed, before it's released.
Particularly when we are prowling for the eye's of a partner who would then be contemplating getting into bed with us, and will be relying upon us to provide efficient and effective implementation and ongoing support.
I could do a better job and that’s really saying something

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Tothemoon24

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FORBESINNOVATIONAI

Real-Time AI At The Edge May Require A New Network Solution​

Jim McGregor
Contributor
Tirias ResearchContributor Group
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Aug 2, 2024,11:10am EDT
Ede network Image

The complexity of edge networks
BRAINCHIP
AI has the power to change every electronic platform, but what works in the data center may not work in an industrial edge platform like a security camera, robotic arm, or even a vehicle. There is no one-size-fits-all for edge AI because of space, power, data security, and performance-latency requirements, which means there is not one solution for all AI applications. Transitioning to edge AI requires new solutions, especially for on-device training.

The Current AI Model​

Most AI models start in the data center with the training of a neural network model based on public and/or private data. As we have argued in the past, the expense of running AI in the cloud can be prohibitive from a cost, latency, and security standpoint. As a result, neural network models can be optimized by shrinking the model size to then run at the edge of the network on the device, commonly referred to as “edge computing.” This optimization is a delicate balance of reducing the size of the model while maintaining acceptable accuracy.


While neural network models and optimization techniques improve, using a scaled-down data center solution may not be optimal for many edge applications. Edge applications are often focused on the input of sensor data and require even smaller models with a high degree of accuracy and real-time, or close to real-time, execution for mission critical or even life-threatening situations. These edge applications may include healthcare, automotive/transportation, manufacturing, and security.

Event-driven AI​

As an alternative, BrainChip has developed its Akida neuromorphic IP (intellectual property) solutions to support Temporal Event-based Neural Networks (TENNs), an event-based neural processing network architecture, in addition to traditional Convolutional Neural Networks (CNN), Recurrent Neural Networks (RNNs) and Transformer based neural networks. What this means is that a temporal (time) enabled neural network (TENN), or networks, is only operating during the time when a trigger event or input occurs. During other times, it is not computing and therefore not consuming much power. This can translate to higher performance, adaptability and lower real-time latency per event, input, or request and at a fraction of the power consumption of other AI solutions.


According to BrainChip, TENNs are ideal for processing various types of data such as one-dimensional time series and spatial-temporal data. TENNs is showing positive results in a number common applications, such as audio denoising, eye-tracking for AR/VR, health data monitoring (heart rate, SpO2), keyword spotting, Small Language Models (SLMs), and video object detection. TENNs ability to adapt to new input/events overcome some of the limitations of traditional neural networks while supporting future neural network models at a fraction of the die area and operating cost.

The Akida technology is available as IP cores that can be integrated into anything from a low-power microcontroller to a high-performance applications processor or system-on-chip (SoC) or discrete accelerator chips. While using an IP solution would require a new design, it provides more efficient processing of TENNs models by taking advantage of sparsity, a key feature that makes the human brain so efficient. Additionally, there are no other off-the-shelf solutions that can provide comparable low-power, high-accuracy, and real-time AI processing.

Edge-Specific AI​

While TOPS (Trillions of Operations Per Second) seem to be getting a lot of attention as a means of measuring the AI performance of a chip, analyzing the performance of Edge AI is better accomplished using metrics that are more specific to the application. Examples of these more application specific metrics include measuring the efficiency of processing frames or frames per second (FPS) for image processing, time to first token (TTFT) for response time, mean average precision (mAP) for accuracy, and Watts or Kilowatts for power consumption. BrainChip has provided some data along these lines to demonstrate the value of TENNs in various applications.


IMG_9340.jpeg


In another demonstration, the company demonstrated how TENNs can be used to drastically reduce the training time by and the power consumed by more than orders of magnitude relative to other large language data sets like GPT-2, which would be more appropriate for embedded applications than the newer models, with equivalent accuracy.

Edge Specific Solutions​

While there is a rush to push AI to every platform and device, scaling down from the data center may not be the best solution for many applications. As we have seen in the past, the unique requirements of devices often drive innovation in new directions, Tirias Research believes the same will hold true for AI as it moves from the datacenter to the edge. But, as with any new technology, success often depends on the benefit over existing solutions. According to BrainChip, the numbers can be very significant, with demonstrations showing up to a 50x reduction in the number of model parameters, up to a 30x reduction in training time, and 5000x reduction in multiple-accumulate (MAC) operations with the same or better accuracy. Improvements in performance and power efficiency scale with model efficiency.
IMG_9341.jpeg

Edge Specific Solutions​

While there is a rush to push AI to every platform and device, scaling down from the data center may not be the best solution for many applications. As we have seen in the past, the unique requirements of devices often drive innovation in new directions, Tirias Research believes the same will hold true for AI as it moves from the datacenter to the edge. But, as with any new technology, success often depends on the benefit over existing solutions. According to BrainChip, the numbers can be very significant, with demonstrations showing up to a 50x reduction in the number of model parameters, up to a 30x reduction in training time, and 5000x reduction in multiple-accumulate (MAC) operations with the same or better accuracy. Improvements in performance and power efficiency scale with model efficiency.
 
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CHIPS

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CHIPS

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IloveLamp

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IloveLamp

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Rach2512

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The fact that you judge my knowledge based on how many comments I wrote in here says it all about you 🤡 Ive been invested since 2020 and follows everything this company is doing. My patience with Sean is gone. He almost had 3 years to make us succeed. The technology should literally sell itself. I respect if people want him to stay but I think new blood is necessary
On ignore you go, bye bye
 
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Would anyone kindly like to discuss if these new chiplet designs could include BRN ?
 
The fact that you judge my knowledge based on how many comments I wrote in here says it all about you 🤡 Ive been invested since 2020 and follows everything this company is doing. My patience with Sean is gone. He almost had 3 years to make us succeed. The technology should literally sell itself. I respect if people want him to stay but I think new blood is necessary
On ignore you go, bye bye
i must have missed this one thanks @Rach2512

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rgupta

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I did post yesterdey that the 50 mill that disappeared from the shorts overnight could have been used in this way and now it’s making a bit more sense. Be good to find out if it was the case

View attachment 67507
That means shorters buy those shares sold by company. It is good and bad in a sense. Good in the way short is almost over. Bad in the mean they can come back again as they have won the 1st lottery and secondly, management had given a middle finger to long term holders and supported the shorters.
But definitely now the company is becoming professional and start making the same tricks other companies make.
By the way what are the chances management is involved through their own friends in shorting and bringing the sp down and now providing them new shares at almost one third of cost.
Dyor
 
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That means shorters buy those shares sold by company. It is good and bad in a sense. Good in the way short is almost over. Bad in the mean they can come back again as they have won the 1st lottery and secondly, management had given a middle finger
Does feel that way which is probably not the case which says a lot about management atm

By the way what are the chances management is involved through their own friends in shorting and bringing the sp down and now providing them new shares at almost one third of cost.
Dyor

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7für7

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The question is what some small investors are thinking when they puff themselves up in an anonymous forum and demand the resignation of a CEO of a company where they are simply hoping to get rich through the efforts of others (employees) or, depending on how much they have invested, to make some profit. Don't they realize they are overestimating themselves? That it is just ridiculous? There are investors who have invested multiples of what they have and are more relaxed... probably because they haven't put everything on one horse. I don't know how many times I've mentioned it... but because of such annoying small investors, publicly traded companies often like to use tactics to get rid of them through reverse splits... the sad part is that the patient ones get affected too... just hold still or sell if something doesn't suit you... everything else is unnecessary and annoying. If someone think he have the knowledge to change something, feel free to apply as an CEO at brainchip… otherwise STFU
 
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7für7

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That means shorters buy those shares sold by company. It is good and bad in a sense. Good in the way short is almost over. Bad in the mean they can come back again as they have won the 1st lottery and secondly, management had given a middle finger to long term holders and supported the shorters.
But definitely now the company is becoming professional and start making the same tricks other companies make.
By the way what are the chances management is involved through their own friends in shorting and bringing the sp down and now providing them new shares at almost one third of cost.
Dyor
If I remember well, if you take the offer and buy the shares, you have to hold minimum 1 year. So, one year of possible Healy grow with less shorts. 🤔?
 
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DK6161

Regular
Can't wait to see if the SPP offered to us small retail SH will be exhausted. It would be a great sign if it does.
Would also be good to know Sean's movements to get an idea who is he engaging with.
 
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