BRN Discussion Ongoing

DK6161

Regular
Unless we're in some OEM's product I don't see there is any point owning shares now.

When Sean says watch us "now", the most obvious meaning is that we should wait for an OEM's product (not a development board) to be released. Then buy BRN shares.

This years CES will demonstrate a potential product - the cybersecurity device for small networks. If it works and is released for sale as an off the shelf product then we will have everything to cellabrate. If it isn't then there is really nothing to see.

I know a couple of up-beat posters have met BRN personel and that has solidified their commitment to the company. I never have, but if I had I would declare it.
Agreed. Every year it's always been about demonstrating potential use case. I think a lot of us are over this bullsh!t.

Also: just because you met the founder once when there was an office in Perth, it doesn't mean you have any extra privileges or access to the him or the company.

For all we know, they don't give a crap about the share price and shareholders. Antonio's denial and dismissal about moving to the US was a prime example.
Shareholders engagements have been absolutely terrible even when TD was around.

Will not trust anything that comes out of their mouths
 
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DK6161

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manny100

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Oh no, truly shocking right... Sean Hehir promised an announcement before year end and here we are with absolutely nothing. Who could have possibly seen that coming?

To be fair, there are still five whole hours of trading left, so clearly anything is possible. History suggests that means nothing will happen, but hope springs eternal.
If you have another look at the video Sean says end of the year or early next year.
 
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Rskiff

Regular
Roll on 2026. What a shit year for the share price 17.5c down from 45c.
 
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Happy new year from the first country that rings it in.
Weather is classic ( crap)
BrainChip’s finish to the year of 2025 just like the weather.
But I have plenty to be thankful of
I am breathing and have all my bits working
So enjoy and be thankful with what you have right at this moment because there are unfortunate people in this world that don’t have anything close to what we have.
It will rain I am sure so will BrainChip’s future, so enjoy your time that you have right now Dow this is all we have. The here and now and everything is temporary.

Happy new year brains 🧠
 
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7für7

Top 20
I wish you all in Australia a Happy New Year from the bottom of my heart,
good luck health, love and peace.😘❤️
We're celebrating in 21 hours.
New Year Christmas Movies GIF by filmeditor

donald trump cameo GIF


You and all the others too! May someone lead our share price to highest highs!!
See you next year!
 
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If you have another look at the video Sean says end of the year or early next year.
It really does not change anything. Whether it is end of the year or early next year is pure semantics. We have all heard variations of watch us now and watch the financials for years and it has delivered the same result every time. Nothing of substance to show for it.

Shifting the wording by a few weeks does not alter the underlying pattern or the market outcome. Until something tangible lands in the financials or a clearly material announcement is made, it is just another version of the same script.
 
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manny100

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It really does not change anything. Whether it is end of the year or early next year is pure semantics. We have all heard variations of watch us now and watch the financials for years and it has delivered the same result every time. Nothing of substance to show for it.

Shifting the wording by a few weeks does not alter the underlying pattern or the market outcome. Until something tangible lands in the financials or a clearly material announcement is made, it is just another version of the same script.
Unless of course we get news early next year.
There will be an investor podcast in January where there should be a fair bit to update holders on. BRN has spoon fed Developers with pre trained models on the Hub. We will get an update as to the amount of interest.
Not sure whether we will get an email update but one is due. They are pretty comprehensive.
CES 26 Commences 6th June'26.
See Link to the last email update.
Steve Brightfield features a video and an interview in the Nov'25 update.
A snippet from the interview:
" For years, BrainChip’s biggest hurdle in courting developers wasn’t its neuromorphic silicon—it was logistics. Demonstrating the Akida architecture meant physically shipping bulky FPGA-based boxes to customers, powering them up on-site, and juggling loan periods. With the launch of the Akida Cloud, that bottleneck disappears."
Akida cloud via FGPA will slash the time to prototype and remove a bottleneck for developers.
Another snipett:
On our Haila colllaboration - " Together they enable always-on, locally intelligent IoT nodes ideal for medical, environmental, and infrastructure monitoring—places where replacing batteries is expensive, impractical, or downright impossible. In short, BrainChip and HaiLa are sketching the blueprint for the next wave of ultra-low-power edge AI systems that think before they speak, and that do both with astonishing efficiency."
 
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Unless of course we get news early next year.
There will be an investor podcast in January where there should be a fair bit to update holders on. BRN has spoon fed Developers with pre trained models on the Hub. We will get an update as to the amount of interest.
Not sure whether we will get an email update but one is due. They are pretty comprehensive.
CES 26 Commences 6th June'26.
See Link to the lase email update.
Yes, absolutely. We will be in every wearable, every automated product, Akida Inside stamped on everything. The dream lives on.

Reality, though, is a little less cinematic. We are not in those products, not in volume, and not showing up where it matters in the numbers. For now, we are still existing on promises, fumes, and the same well worn narrative.

Let’s hope. I do. But it’s trying and tiring to
Be honest.
 
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manny100

Top 20
Yes, absolutely. We will be in every wearable, every automated product, Akida Inside stamped on everything. The dream lives on.

Reality, though, is a little less cinematic. We are not in those products, not in volume, and not showing up where it matters in the numbers. For now, we are still existing on promises, fumes, and the same well worn narrative.

Let’s hope. I do. But it’s trying and tiring to
Be honest.
It depends whether you focus on the past or the future that is building.
Neuromorphic is forecast to have rapid growth - Brainchip is the current leader.
Some investors like to get in early on future trends others prefer to wait and pay more.
In the meantime the safety net is the patent portfolio value.
 
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DK6161

Regular
It depends whether you focus on the past or the future that is building.
Neuromorphic is forecast to have rapid growth - Brainchip is the current leader.
Some investors like to get in early on future trends others prefer to wait and pay more.
In the meantime the safety net is the patent portfolio value.
Some investors like to get early and paid more, others in the know wait and pay less..
The company's safety net is the regular fund injection through Capital Raise.
 

Guzzi62

Regular
FF
AI Predictions for 2026 from the AI in Business Community
For AI adoption journey, upskill the workforce for AI fluency, adopt algorithmic empathy, guard against hallucinations, seek verifiability, shape how AI transforms work, help AI with cultural context
Dec 31, 2025.

Jonathan Tapson, CTO, BrainChip, developer of neuromorphic AI processors that mimic the human brain to enable ultra-low-power edge intelligence:


“I anticipate wearables that go beyond watches to become truly practical and commonplace, with completely new product categories emerging. Every gram counts when wearing glasses. The battery is the heaviest component, and you don’t want to recharge it twice a day for basic functionality. Neuromorphic systems are ideal in this situation because they can be totally passive until you need them, at which point they can instantly become active.”

So he is saying the same as Steve Brightfield.


 
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Manny100

Brainchip = right place, right time. " Chips as the new oil"

How Military Tensions Are Driving the Next Semiconductor Chip Race

Military tensions are reshaping the semiconductor industry, driving innovation, disrupting supply chains, and redefining defense strategy worldwide.
www.microchipusa.com
Interesting read.
Talks about the Military's insatiable demand for advanced chips.
Taiwan's dominance and why its a ticking time bomb
 
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Happy new year everyone one
IMG_4158.jpeg
 
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DK6161

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Happy new year Pom! Didn't realise you're blonde.
It’s mad what you can get done in Thailand, thinking about getting balls as you need them to be a BRN holder 😂
 
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manny100

Top 20
What’s New at BrainChip
If you scroll down to the bottom of the link to the November Brainchip Newsletter (link above) there is a subscribe button.
Saves you looking for it on the website.
Its a pretty comprehensive newsletter and well worth subscribing to. Great read.
With videos, newsletter, presentations and content on BRN Website there is plenty of communication.
There will be an Investor podcast in late January after the CES 26.
It will be interesting to hear how much interest we have in the Development hub.
Brainchip is 'spoon feeding' developers as they have set up many pre trained models on their Hub and on GitHub and all they have to do is build on them.
Some of these models include Heart issue detector, falls detector, Rad/Lidar and many more.
Setting up to be a big first quarter this year (26).
 
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TopCat

Regular

No mention of any specific tech , but sounds something like the tech Aquimea has developed
 
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IloveLamp

Top 20

1000016125.jpg
1000016128.jpg
 
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Bravo

Meow Meow 🐾

Neuromorphic Chips and 'Brain‑Like' Computing: How Next‑Gen Chips May Change Phones, Robots, and IoT Devices​

By Renz Soliman
Published: Dec 31 2025, 06:01 AM EST


Computer Chip


The next major leap in artificial intelligence may not come from larger datasets or more powerful cloud systems, but from microchips modeled after the human brain itself. Neuromorphic computing represents a new frontier where hardware is designed to mimic neurons and synapses, potentially redefining how machines learn, sense, and respond to their environments.
As edge AI and IoT technologies expand, these brain-inspired chips could bring unprecedented intelligence to devices once considered too small or low-powered for advanced computation.

What Is Neuromorphic Computing?​

Neuromorphic computing refers to the design of computer architectures inspired by the human brain's biological networks. Unlike traditional processors that follow the Von Neumann model, where memory and processing are separated, neuromorphic processors integrate both functions, allowing them to compute and store information simultaneously.
This approach mirrors how neurons and synapses operate in the brain, with billions of tiny nodes processing signals in parallel rather than sequentially. The result is a system capable of adapting, learning, and responding in real time, making it a major breakthrough for edge AI use cases in robotics, mobile devices, and IoT systems.
These brain-inspired chips, designed for low-power computing, aim to bring efficient, on-device intelligence to everyday electronics.

How Do Neuromorphic Chips Work Like the Human Brain?​

The foundation of neuromorphic computing lies in spiking neural networks (SNNs). Instead of transmitting continuous streams of data like conventional machine learning algorithms, SNNs communicate using discrete electrical pulses called "spikes." Each spike represents an event, such as a change in sensor input, allowing the chip to process only relevant information.
This event-driven model drastically reduces energy consumption because computation occurs only when needed. In environments where devices must make fast, autonomous decisions, such as self-driving vehicles, robotics, or industrial IoT systems, spiking neural networks improve efficiency and responsiveness.

By mimicking this sparse, asynchronous communication pattern, neuromorphic chips avoid the heavy power demands of traditional AI accelerators like GPUs. They also enable continuous learning in dynamic environments without extensive retraining, offering a potential path toward truly adaptive, energy-efficient machines.

What Makes Neuromorphic Processors More Efficient Than GPUs or CPUs?​

Traditional AI hardware, including CPUs and GPUs, excels in performing repetitive matrix operations. However, they are constrained by constant data movement between memory and processing units, a major energy and speed bottleneck. Neuromorphic processors, in contrast, eliminate this inefficiency by bringing computation closer to memory.
Since SNNs activate only when new data arrives, neuromorphic cores can remain idle most of the time, drastically reducing power usage. This is why brain-inspired chips with low power consumption are seen as key enablers for edge AI and IoT applications, where sustained cloud connectivity or large battery capacity is impractical.
Furthermore, neuromorphic systems can scale efficiently. Instead of increasing clock speeds or processing cores, designers can expand the network by adding more interconnected neurons, much like biological brains evolve with experience.
This architectural flexibility allows neuromorphic hardware to multitask, adapt to sensory data, and learn in ways that traditional architectures cannot match.

Neuromorphic Chips in Practice: Examples and Innovations​

Several technology companies and research centers are pushing the boundaries of neuromorphic hardware. Among them, Intel Loihi stands out as a leading experimental platform. The Intel Loihi neuromorphic applications project explores how event-based computation can accelerate tasks such as gesture recognition, robotic navigation, and sensory processing.
Loihi chips use a mesh of artificial neurons capable of asynchronous communication. Each neuron's state evolves over time, responding to spikes from connected neurons and updating its internal parameters in real-time. This structure allows Loihi to perform learning without requiring extensive cloud training, a crucial advantage for autonomous edge systems.
Other notable projects include IBM's TrueNorth, designed for large-scale neural simulations, and BrainChip's Akida, which targets real-time edge processing in embedded IoT devices.
These chips demonstrate how neuromorphic processors in robotics and autonomous systems can operate independently from centralized computing networks while delivering high-speed perception and decision-making.

Applications in Robotics, IoT, and Edge AI​

The most immediate beneficiaries of neuromorphic computing are likely to be robots, autonomous systems, and IoT devices operating at the network edge. These platforms demand real-time perception with minimal power consumption, an ideal match for neuromorphic architectures.
In robotics, neuromorphic chips enable adaptive control systems that can adjust movement or coordination on the fly. For instance, a drone equipped with neuromorphic vision could identify obstacles or track moving objects using only milliseconds of processing time.
In the IoT landscape, millions of connected sensors must capture data continuously while running on limited battery power. Embedding brain-inspired chips with low-power operation allows these devices to process information locally, transmit only essential insights, and function efficiently without cloud reliance.
Additionally, autonomous vehicles and industrial automation systems benefit from the chips' ability to perform complex motion detection, speech recognition, and environmental mapping, all while consuming a fraction of the energy required by traditional AI processors. Such capabilities align perfectly with edge AI IoT strategies focused on distributed, sustainable intelligence.

Real-World Examples of Neuromorphic Computing​

The progress in neuromorphic computing is already visible in early prototypes and pilot programs across industries:
  • Healthcare: Sensor-embedded wearable devices using neuromorphic processing can monitor vital signs, detect anomalies, and adapt alerts in real time.
  • Smart cities: Edge nodes equipped with neuromorphic processors help manage energy use, traffic congestion, and environmental monitoring with minimal latency.
  • Manufacturing: Neuromorphic vision systems allow robotic arms to identify defects, align components precisely, and optimize workflow through on-site learning.
  • Mobile technology: Research suggests that smartphones with integrated neuromorphic co-processors could deliver on-device AI capabilities like image understanding and voice recognition without constant cloud access.
These neuromorphic applications showcase how spiking-based computation can transform diverse fields that require intelligence at the edge with strict energy budgets.

Advantages and Challenges of Neuromorphic Chips​

Benefits
  • Energy efficiency: Event-driven computation consumes significantly less power.
  • Real-time adaptability: Systems can learn from experience and respond immediately.
  • Scalability: Networks can grow organically, similar to biological systems.
  • Privacy: On-device learning reduces data transfer, improving data security for IoT.
Challenges
  • Programming complexity: SNNs require specialized software frameworks distinct from standard AI libraries.
  • Hardware cost and maturity: Neuromorphic chips remain mostly in research or prototype phases.
  • Standardization: A lack of unified benchmarks and interoperability limits broader industry adoption.
These factors suggest that while neuromorphic computing promises breakthroughs in efficiency and autonomy, it will likely coexist with traditional AI accelerators for years to come.

Will Neuromorphic Chips Revolutionize Artificial Intelligence?​

Many researchers view neuromorphic computing as a natural evolution of AI hardware rather than a replacement. It complements deep learning models by offering adaptive, low-power computing suitable for real-world environments.
When combined with traditional cloud AI, neuromorphic edge devices could create hybrid systems capable of both high-level reasoning and real-time, local decision-making.
In the longer term, the integration of neuromorphic principles into consumer electronics could redefine what "smart" means in smartphones, wearables, and household devices. Rather than responding to pre-trained commands, these gadgets could continuously learn and adapt to user behavior, mirroring aspects of human cognition.

Toward Smarter, More Human Machines​

The field of neuromorphic computing is still in its early stages, but its potential is unmistakable. By building machines that process information like the human brain, efficiently, parallelly, and adaptively, engineers can unlock a new generation of intelligent, self-learning systems.
As innovation continues around Intel Loihi neuromorphic applications, spiking neural networks, and brain-inspired low-power chips, the next decade may witness a transition from cloud-dependent AI to distributed, energy-efficient cognitive computing. Phones, robots, and IoT devices might soon think and respond more like humans, quietly, efficiently, and always learning.

Frequently Asked Questions​

1. How are neuromorphic chips different from quantum computers?​

Neuromorphic chips mimic the human brain to perform adaptive, low-power tasks, while quantum computers use qubits to handle massive, complex calculations. Neuromorphic computing suits edge AI and IoT; quantum computing targets scientific and optimization problems.

2. Can neuromorphic chips work with AI frameworks like TensorFlow or PyTorch?​

Not directly. Neuromorphic systems use spiking neural networks, which differ from conventional models, but emerging tools like Intel's Lava are improving compatibility and integration.

3. What materials make neuromorphic chips possible?​

They often use memristors and non-volatile memory materials, which act like synapses by retaining past electrical states, key for energy-efficient learning and processing.

4. When will neuromorphic technology reach consumer devices?​

Experts predict early consumer use by the late 2020s or early 2030s, starting with smart sensors, wearables, and autonomous devices that need on-device intelligence.


 
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