BRN Discussion Ongoing

Hi Rach2512,
Am I reading this correctly that metavisions XR glasses are using Propesse technology 🤔
Sounds very exciting if this is also a possibility for brn to be involved ?.
 
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Is Sean running out of time
I am wondering will September be the month when thing heat up 9 million seconds to get it done ✅
As much as I want BrainChip to have the revenue flowing to hopefully start the train moving and the rockets 🚀 flying ,it is starting to worry me when and if Sean hasn’t got the times correct
 
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Is Sean running out of time
I am wondering will September be the month when thing heat up 9 million seconds to get it done ✅
As much as I want BrainChip to have the revenue flowing to hopefully start the train moving and the rockets 🚀 flying ,it is starting to worry me when and if Sean hasn’t got the times correct
Timing correct ?, it's all about the edge and that's we're we sit, Timing is spot on.

Go brainchip
 
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jrp173

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Is Sean running out of time
I am wondering will September be the month when thing heat up 9 million seconds to get it done ✅
As much as I want BrainChip to have the revenue flowing to hopefully start the train moving and the rockets 🚀 flying ,it is starting to worry me when and if Sean hasn’t got the times correct


Based on BrainChip's communication, I'm guessing that we won't even know whether or not they achieve the $9M target in bookings this year.
 
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Based on BrainChip's communication, I'm guessing that we won't even know whether or not they achieve the $9M target in bookings this year.
But they promised at the AGM to actively engage and communicate with the shareholders. I am sure that AV said that they would and will do better.
So that empty promise is hopefully not the same as our commitment to revenue this year, but I guess they won’t be able to remember what they said or signed off on will they, going on past performance's.

But in saying that there sure has been plenty of progress and linked in stories, hopefully they can be believed and something good comes out of it.
 
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manny100

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Bravo really started something.
Tata Electronics and Synopsys collaborate to accelerate customer product design and ramp for India’s first fab
The Tats/Synopsys collaboration goes way past Auto.
Remember from my last post the 2022 Synopsys Artificial Intelligence pic shows a board containing an AKIDA chip.
In June 2024, Synopsys and Tata Electronics signed an MoU to support India’s first semiconductor fab in Dholera, Gujarat.

The partnership focuses on:

  • Advanced factory automation
  • AI-enabled yield analytics
  • TCAD flow setup
  • Design enablement IP and DTCO methodologies
Synopsys CEO Sassine Ghazi praised Tata’s vision for building semiconductor capacity in India

See link above.
 
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manny100

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There has been a bit of talk about Mercedes of late.
Tata Elxsi Partners with Mercedes-Benz R&D India for SDV and Vehicle Software Engineering
On 14th May 2025 Tata Elxsi announced via press release:
" Bangalore, India, May 14, 2025: Tata Elxsi, a global leader in design and technology services, has today announced that it has been selected by Mercedes-Benz Research and Development India for Vehicle Software Engineering and Software Defined Vehicles (SDV) development."
Its a small world when it comes to auto
We also know that the Mercedes Group is big on Neuromorphic computing.
See the link below from Merc. Pics featuring 'Neuromorphic and some commentary.
" Neuromorphic computing has the potential to reduce the energy required for data processing in autonomous driving by 90 per cent compared to current systems."
We have all seen the Sally Ward article from 2022. Interestingly Jan'22. I note the Synopsys presentation (with AKIDA chip pic) was for Q1 of 2022.
Mercedes Applies Neuromorphic Computing in EV Concept Car - EE Times
If you’re browsing LinkedIn, look for posts from Tata Elxsi, MBRDI, or even Manoj Raghavan himself (CEO of Tata Elxsi)—they’ve been sharing updates.
From Linked in MBRDI :
" At the intersection of artificial intelligence and automotive engineering, curiosity is not just an asset, it is a superpower. Shruthi Ananthachar, Deputy General Manager of Autonomous Driver Assistance Development at Mercedes-Benz Research and Development India (MBRDI), embodies this quality."
 
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Bravo

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

Beyond GPUs: Why Neuromorphic Chips Could Power the Future of AI​

This investment landscape is already starting to take shape
12h ago · By Luke Lango, InvestorPlace Senior Investment Analyst
Key Takeaways:
  • Neuromorphic chips mimic the brain’s architecture, offering massive energy savings and real-time processing for edge AI applications.
  • Companies like Intel, IBM, and BrainChip are pioneering the space, while suppliers like Analog Devices, Lattice, and Synopsys stand to benefit as adoption grows.
  • As AI scales and power constraints increase, neuromorphic computing could become essential infrastructure, especially for robotics, healthcare, and smart devices.
neuromorphic chips - Beyond GPUs: Why Neuromorphic Chips Could Power the Future of AI

Right now, AI is quickly transforming everything from content creation and cybersecurity to drug discovery and supply chains. But beneath all the buzz around ChatGPT, autonomous agents, and trillion-dollar GPU booms, a quieter revolution is forming – one that could reshape the very foundation of how machines learn, adapt, and think…
It’s called neuromorphic computing: a brain-inspired approach to building computers.
Instead of relying on traditional CPUs and GPUs that process information in a linear way, neuromorphic systems mimic the structure and function of biological neural networks.
Think of it like this: while a traditional chip acts like a calculator, a neuromorphic chip behaves more like a brain. It uses spiking neurons that fire only when triggered, operates in parallel across massive arrays, and consumes dramatically less power.
This kind of architecture is particularly well-suited for AI tasks like pattern recognition, sensor fusion, real-time decision-making, and low-power inference at the edge (meaning directly on devices like smartphones, sensors, or robots, without needing to send data back to a distant cloud server).
In short, this seems like a revolution waiting to happen.
If you’re looking for the next big thing in AI infrastructure – the kind of leap that could enable robots to think like humans, edge devices to learn on the fly, and AI systems to run 100x more efficiently – this could very well be it…

The Next Frontier in AI: Why Neuromorphic Chips Matter Now​

From where we sit, the timing for neuromorphic computing couldn’t be better.
AI workloads are exploding. Edge devices are proliferating. Power consumption is becoming a major bottleneck. And everyone from chipmakers to neuroscientists is looking for the next leap forward beyond brute-force deep learning.
Neuromorphic computing could be that leap.
And this is more than a hypothetical; these devices have already been built. And while early and small, they are showing lots of promise.
According to Intel (INTC), its experimental Loihi 2 neuromorphic chip has demonstrated energy savings of up to 100x over conventional CPUs and GPUs for certain inference tasks. And Cortical Labs’ DishBrain system, which combines living neurons with silicon, has already shown the ability to learn simple games like Pong in real time.
But these achievements could be just the tip of the iceberg for what’s to come.

Where Neuromorphic AI Could Deliver the Biggest Impact​

Though not yet at scale, we see real-world application potential across multiple high-growth sectors, like:
  • Edge AI: Neuromorphic chips are ideal for smart sensors, drones, autonomous vehicles, robotics – any system that needs to make decisions locally, with minimal power draw. For instance, they can enable drones to recognize obstacles and adjust flight paths in real time without draining battery life. In autonomous vehicles, these systems can process inputs from cameras, radar, and lidar to make split-second decisions while conserving energy.
  • Healthcare: These chips could be used in portable diagnostic devices that monitor patient vitals and detect anomalies instantly, such as wearable ECG monitors that flag irregular heart rhythms. They could also power adaptive prosthetics that respond to neural signals from the user’s body, creating more intuitive movement. Researchers are also exploring neuromorphic processors as the backbone of brain-computer interfaces to achieve more seamless two-way communication between humans and machines.
  • Cybersecurity: Since neuromorphic systems excel at detecting subtle patterns and anomalies, they are well-suited for identifying unusual behavior in data traffic that may signal a cyberattack.
  • Finance: In the financial sector, neuromorphic processors could be used to analyze high-frequency trading data or detect fraud in complex, noisy data streams – i.e. identifying unusual patterns in credit card transactions or spotting early signs of market manipulation.
  • Energy efficiency: As AI workloads grow exponentially – particularly in data centers – power consumption has become a major concern. Neuromorphic chips, modeled after the brain’s energy-efficient architecture, can dramatically reduce the power needed for tasks like image recognition or language processing.

Who’s Building Neuromorphic Chips – And Who Stands to Profit​

A small but growing group of companies is building the neuromorphic future. Some are public. Most are still private. But the investment landscape is already starting to take shape.
There is BrainChip Holdings (BRCHF): the purest publicly traded neuromorphic play – albeit a very risky one. The company makes the Akida chip, a neuromorphic processor designed for ultra-low-power edge AI. It’s already being used in smart sensors and defense applications.
BrainChip also holds IP licensing and development agreements with major entities (including Renesas, MegaChips, Mercedes, NASA, and Raytheon, as well as a cybersecurity project with Quantum Ventura tied to the U.S. Department of Energy).
Revenue is still modest, and the company is largely unproven. But if neuromorphic computing hits an inflection point, the potential upside could be massive.
On the more stable side, we have Intel. The blue-chip tech giant is dabbling in neuromorphic computing.
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Its Loihi project is one of the most advanced neuromorphic research platforms. And while it’s not yet a commercial product, Intel has the resources, IP, and foundry capacity to scale if neuromorphic demand accelerates. Think of it as a “call option” in this emerging field.
In a similar vein, there’s also IBM (IBM). Its TrueNorth chip helped pioneer the neuromorphic field. Today, IBM remains a powerhouse in brain-inspired computing, neurosynaptic research, and AI infrastructure.
It’s a slower-moving giant, but it’s quietly investing in the foundational tech of the future.

Potential Key Players Across the Neuromorphic Supply Chain​

Further down the supply chain are Analog Devices (ADI) and Lattice Semiconductor (LSCC) – two potential supplier plays on neuromorphic computing.
Since these systems rely heavily on analog signal processing and mixed-signal semiconductors, ADI could benefit greatly.
Meanwhile, Lattice is focused on low-power field-programmable gate arrays (FPGAs) for edge applications – essentially, customizable mini-computer chips that can be programmed to do specific tasks.
While not explicitly neuromorphic, Lattice is well-positioned to benefit from increased demand for adaptable, low-latency AI inference platforms at the edge.
There’s also Cadence (CDNS) and Synopsys (SNPS) to consider. After all, designing neuromorphic chips isn’t easy. It requires new tools, simulation software, and mixed-signal modeling. These electronic design automation (EDA) companies are the picks-and-shovels plays on the whole space.
Other picks-and-shovels plays?
  • Specialty memory makers (Micron (MU), for resistive RAM and phase-change memory)
  • Foundry toolmakers (Applied Materials (AMAT), Lam Research (LRCX))
  • Sensor and signal companies (Ambarella (AMBA), Cognex (CGNX))
  • AI edge infrastructure suppliers (Qualcomm (QCOM), Nvidia (NVDA))
With a diversified approach, you get exposure to the ecosystem without betting it all on a single chipmaker.

Final Word: Brain-Inspired AI Is Coming Faster Than You Think​

Neuromorphic computing isn’t just the next chip upgrade; it’s a radical leap forward. These brain-inspired systems promise to make machines smarter, faster, and far more energy-efficient.
If they deliver, they won’t just improve AI… they’ll redefine it.
And like every breakthrough before it, the biggest gains go to those who get in before the crowd catches on.
This is the kind of opportunity that could turn small-cap pioneers into market leaders – and supercharge the incumbents building tomorrow’s AI infrastructure.
It may be early days for neuromorphic computing, but it’s no longer theoretical.
The seeds are planted. The architecture is real. And the use cases are arriving fast.
In fact, there’s one we’re particularly bullish on…
Humanoid robotics.
These machines demand the kind of real-time, low-power intelligence that neuromorphic chips are built to deliver.
As production scales and adoption accelerates, the companies developing this tech could be at the heart of a trillion-dollar disruption.
Right now, one company seems poised to win the robotics race. And we’re got our sights set on one little-known firm in its supply chain that could soar as a result.

 
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manny100

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jrp173

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But they promised at the AGM to actively engage and communicate with the shareholders. I am sure that AV said that they would and will do better.
So that empty promise is hopefully not the same as our commitment to revenue this year, but I guess they won’t be able to remember what they said or signed off on will they, going on past performance's.

But in saying that there sure has been plenty of progress and linked in stories, hopefully they can be believed and something good comes out of it.

sure they said that, but in my opinion nothing has changed in their engagement with shareholders since the AGM, and we are left to assume that there has been progress and search LinkedIn for information every day.

I personally was hoping for better.

I have also emailed the company has received no replies, and the replies I have received from the new IR company, were not even worth the paper they were written on. Very disappointing all around!

I don't know why BRN would spend money engaging a new IR firm, when they just give stock standard replies, and in many cases (according to other shareholders), no replies at all!

Feels like groundhog day (in terms of IR).
 
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sure they said that, but in my opinion nothing has changed in their engagement with shareholders since the AGM, and we are left to assume that there has been progress and search LinkedIn for information every day.

I personally was hoping for better.

I have also emailed the company has received no replies, and the replies I have received from the new IR company, were not even worth the paper they were written on. Very disappointing all around!

I don't know why BRN would spend money engaging a new IR firm, when they just give stock standard replies, and in many cases (according to other shareholders), no replies at all!

Feels like groundhog day (in terms of IR).

in agm that old lawyer FF suggested them to hire a IR management company.
 

MDhere

Top 20
I think i been watching too much of Ginny and Georgia episodes of late...
You know when there is a good cop and a bad cop scenario...
well i'm the good cop and my "other half half" is the bad cop the other "half half" is a real person and not my gemini twin....
Anyway.... at the agm the bad cop... says to Sean.... I'm happy for things to start springing by 2027.....
When the bad cop tells me this just recently on a convo we were having, i'm like why on earth would you tell the CEO this, the one guy that needs to place runs on the board now not in 2027! lol
He says well Sean looked at me and said you won't have to wait to 2027 for that.
I am like.... ummm well that's not ROCKET SCIENCE!!!
Needless to say my bad cop accomplice is fired!
 
Hi Rach2512,
Am I reading this correctly that metavisions XR glasses are using Propesse technology 🤔
Sounds very exciting if this is also a possibility for brn to be involved ?.

Very likely.

While Meta has not officially confirmed using BrainChip’s Akida processor in its smart glasses, the possibility is strong given the alignment of technologies. Prophesee’s event-based vision sensors—already linked to Meta—pair naturally with Akida’s neuromorphic chip, which enables ultra-low-power, real-time AI processing at the edge. This combination is ideal for smart glasses requiring fast gesture recognition, eye tracking, and privacy-focused on-device inference. Recently, BrainChip released highly efficient eye-tracking and video-processing models optimized for wearable event-based vision, further strengthening its fit for this use case. Additionally, one of Prophesee’s key investors, Xiaomi, has released its own smart glasses using a Qualcomm AI chip to run a LLaMA 3.2 1B model. However, performance comparisons indicate that BrainChip’s Akida—thanks to its neuromorphic, event-driven architecture—can achieve significantly faster inference and dramatically better power efficiency for similar edge AI workloads. While exact numbers vary, Akida is widely regarded as offering an order of magnitude better speed and efficiency, making it a far more compelling solution for always-on, intelligent wearable devices like Meta’s smart glasses.
 
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