BRN Discussion Ongoing

GStocks123

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Cool! NEXA glasses have reached clinical trials but yet to be approved by the FDA. Bring on 2026 šŸ˜Ž


Study Start (Actual)
2025-08-10
Primary Completion (Estimated)
2025-10-20
Study Completion (Estimated)
2025-12-31
 
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Rach2512

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7für7

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šŸ¤·šŸ»ā€ā™‚ļø good for them… WHERE IS MY MONEY???

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manny100

Top 20
Airbus has a publicly declared connection with AKIDA for Space.
Airbus knows AKIDA well.
Space is considered a ā€œdual-useā€ domain, meaning technology proven there can often be adapted for military defense applications.
Dual-Use Technology Applications in Defense Tech - NSTXL
The Challenges of Dual-Use Space Technologies: the Non-Peaceful Use of Satellites – Space Generation Advisory Council
There are many articles discussing dual use.
Defence | Airbus
" As the prime contractor for Europe’s Future Combat Air System (FCAS), we lead the development of advanced networks of manned and unmanned platforms. The Multi-Domain Combat Cloud (MDCC) showcases our innovation in cyber-resilient and cloud-based military communications. "
Would it be a surprise if Airbus was trialing advanced defense tech for the EU under NDA - they are after all the EU's prime contractor for future air combat.
 
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Looking good!



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Transform Manufacturing with CogniEdge.ai’s Industry 5.0 Vision!

Ready for a factory where robots adapt to human needs, boosting efficiency and well-being? Our new white paper based on a feasibility study, "Neuroadaptive Physical AI: Revolutionizing Human-Robot Collaboration for Industry 5.0" (attached), unveils CogniEdge.ai’s CEDR framework. Conceptualized with NVIDIA Jetson AGX Thor and BrainChip Akida 2.0, CEDR integrates the RBHRC methodology (inspired by Zhang et al., 2020) to assign roles such as Task Overseer, Task Executor, Collaborative Task Specialist, while coordinating UR5 cobots, Tesla Optimus humanoids, and DJI drones.

Key results from our study on EV battery assembly line:
āœ… 25% throughput gains
āœ… 15% error reduction
āœ… 20% lower cognitive load

šŸ“„ Download the shortened version of the white paper to explore how CEDR delivers human-centric, scalable automation. Share your Industry 5.0 insights below or connect is info@cogniedge.ai

#PhysicalAI #HumanRobotCollaboration #Manufacturing #NeuroadaptiveAI #Robotics #CEDR
 
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7für7

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It’s an absolute disaster! I don’t know any other company that crashes like BrainChip despite such partnerships, customers, and positive news. Every useless company out there that merely announces a partner … without having a single product, just ā€œplansā€ to produce something … shoots up to at least one dollar the very next day.

Why do they allow this kind of game to continue? I just don’t get it.

And don’t come at me with ā€œthen I’ll just buy another packageā€ … that’s not the point.

The lower we fall, the harder it becomes to climb back up without a reverse split.
I demand an immediate trading halt.
Peace Out Snl GIF by Saturday Night Live
 
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TheDrooben

Pretty Pretty Pretty Pretty Good
It’s an absolute disaster! I don’t know any other company that crashes like BrainChip despite such partnerships, customers, and positive news. Every useless company out there that merely announces a partner … without having a single product, just ā€œplansā€ to produce something … shoots up to at least one dollar the very next day.

Why do they allow this kind of game to continue? I just don’t get it.

And don’t come at me with ā€œthen I’ll just buy another packageā€ … that’s not the point.

The lower we fall, the harder it becomes to climb back up without a reverse split.
I demand an immediate trading halt.
giphy (27).gif
 
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7für7

Top 20
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TheDrooben

Pretty Pretty Pretty Pretty Good
YOU WANT TO TELL ME……….YOU ARE HAPPY AS LARRY WITH THAT SHAREPRICE??????

Angry Work GIF
Of course not @7für7 but Larry is confident that he will be one day so I will take advantage of the low SP and keep buying when I can under 20c.

curb-your-enthusiasm-larry-david (11).gif


(Still) Happy as Larry
 
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7für7

Top 20
Of course not @7für7 but Larry is confident that he will be one day so I will take advantage of the low SP and keep buying when I can under 20c.

View attachment 92467

(Still) Happy as Larry

I’m also confident the share price will go back up at some point. But like I said, the lower it goes, the harder it gets … especially if they have to draw more capital from LDA and we get hit with even more dilution.

I’m not saying the company is bad. On the contrary, they’re making excellent progress. What’s not right is this: shorters are basically allowed to push it down as far as they want with zero restrictions, but when shareholders and buyers try to move it up, we get hit with a speeding ticket and they slow the move.

Something is broken there.
 
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TheDrooben

Pretty Pretty Pretty Pretty Good
I’m also confident the share price will go back up at some point. But like I said, the lower it goes, the harder it gets … especially if they have to draw more capital from LDA and we get hit with even more dilution.

I’m not saying the company is bad. On the contrary, they’re making excellent progress. What’s not right is this: shorters are basically allowed to push it down as far as they want with zero restrictions, but when shareholders and buyers try to move it up, we get hit with a speeding ticket and they slow the move.

Something is broken there.
Hopefully they will get burnt soon like in the run to $2.34. WHEN it happens it will be a thing of beauty to watch and......

larry-david-curb-your-enthusiasm.gif
 
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Tothemoon24

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ā­ļø​

BrainChip Holdings Ltd. (ASX: BRN), alongside a burgeoning ecosystem of innovative startups, indicate a technology on the cusp of widespread adoption. Its potential to revolutionize edge AI, autonomous systems, healthcare, and to significantly mitigate AI's environmental footprint underscores its long-term impact.

In the coming weeks and months, the tech world should watch for continued breakthroughs in neuromorphic hardware, particularly in the integration of novel materials and 3D architectures. Equally important will be the development of more accessible software frameworks and programming models that can unlock the full potential of these unique processors. As research progresses and commercial applications mature, neuromorphic computing is poised to usher in an era of truly intelligent, adaptive, and sustainable AI, reshaping our technological landscape for decades to come.

Brain-Inspired Breakthroughs: Neuromorphic Computing Poised to Reshape AI’s Future​

By:TokenRing AI
October 27, 2025 at 13:44 PM EDT
Photo for article

In a significant leap towards more efficient and biologically plausible artificial intelligence, neuromorphic computing is rapidly advancing, moving from the realm of academic research into practical, transformative applications. This revolutionary field, which draws direct inspiration from the human brain's architecture and operational mechanisms, promises to overcome the inherent limitations of traditional computing, particularly the "von Neumann bottleneck." As of October 27, 2025, developments in brain-inspired chips are accelerating, heralding a new era of AI that is not only more powerful but also dramatically more sustainable and adaptable.

The immediate significance of neuromorphic computing lies in its ability to address critical challenges facing modern AI, such as escalating energy consumption and the need for real-time, on-device intelligence. By integrating processing and memory and adopting event-driven, spiking neural networks (SNNs), these systems offer unparalleled energy efficiency and the capacity for continuous, adaptive learning. This makes them ideally suited for a burgeoning array of applications, from always-on edge AI devices and autonomous systems to advanced healthcare diagnostics and robust cybersecurity solutions, paving the way for truly intelligent systems that can operate with human-like efficiency.

The Architecture of Tomorrow: Technical Prowess and Community Acclaim​

Neuromorphic architecture fundamentally redefines how computation is performed, moving away from the sequential, data-shuttling model of traditional computers. At its core, it employs artificial neurons and synapses that communicate via discrete "spikes" or electrical pulses, mirroring biological neurons. This event-driven processing means computations are only triggered when relevant spikes are detected, leading to sparse, highly energy-efficient operations. Crucially, neuromorphic chips integrate processing and memory within the same unit, eliminating the "memory wall" that plagues conventional systems and drastically reducing latency and power consumption. Hardware implementations leverage diverse technologies, including memristors for synaptic plasticity, ultra-thin materials for efficient switches, and emerging materials like bacterial protein nanowires for novel neuron designs.

Several significant advancements underscore this technical shift. IBM Corporation(NYSE: IBM), with its TrueNorth and NorthPole chips, has demonstrated large-scale neurosynaptic systems. Intel Corporation (NASDAQ: INTC) has made strides with its Loihi and Loihi 2 research chips, designed for asynchronous spiking neural networks and achieving milliwatt-level power consumption for specific tasks. More recently, BrainChip Holdings Ltd. (ASX: BRN) launched its Akida processor, an entirely digital, event-oriented AI processor, followed by the Akida Pulsar neuromorphic microcontroller, offering 500 times lower energy consumption and 100 times latency reduction compared to conventional AI cores for sensor edge applications. The Chinese Academy of Sciences' "Speck" chip and its accompanying SpikingBrain-1.0 model, unveiled in 2025, consume a negligible 0.42 milliwatts when idle and require only about 2% of the pre-training data of conventional models. Meanwhile, KAIST introduced a "Frequency Switching Neuristor" in September 2025, mimicking intrinsic plasticity and showing a 27.7% energy reduction in simulations, and UMass Amherst researchers created artificial neurons powered by bacterial protein nanowires in October 2025, showcasing biologically inspired energy efficiency.

The distinction from previous AI hardware, particularly GPUs, is stark. While GPUs excel at dense, synchronous matrix computations, neuromorphic chips are purpose-built for sparse, asynchronous, event-driven processing. This specialization translates into orders of magnitude greater energy efficiency for certain AI workloads. For instance, while high-end GPUs can consume hundreds to thousands of watts, neuromorphic solutions often operate in the milliwatt to low-watt range, aiming to emulate the human brain's approximate 20-watt power consumption. The AI research community and industry experts have largely welcomed these developments, recognizing neuromorphic computing as a vital solution to the escalating energy footprint of AI and a "paradigm shift" that could revolutionize AI by enabling brain-inspired information processing. Despite the optimism, challenges remain in standardization, developing robust software ecosystems, and avoiding the "buzzword" trap, ensuring adherence to true biological inspiration.

Reshaping the AI Industry: A New Competitive Landscape​

The advent of neuromorphic computing is poised to significantly realign the competitive landscape for AI companies, tech giants, and startups. Companies with foundational research and commercial products in this space stand to gain substantial strategic advantages.
Intel Corporation (NASDAQ: INTC) and IBM Corporation (NYSE: IBM) are well-positioned, having invested heavily in neuromorphic research for years. Their continued advancements, such as Intel's Hala Point system (simulating 1.15 billion neurons) and IBM's NorthPole, underscore their commitment. Samsung Electronics Co. Ltd. (KRX: 005930) and Qualcomm Incorporated (NASDAQ: QCOM) are also key players, leveraging neuromorphic principles to enhance memory and processing efficiency for their vast ecosystems of smart devices and IoT applications. BrainChip Holdings Ltd. (ASX: BRN) has emerged as a leader with its Akida processor, specifically designed for low-power, real-time AI processing across diverse industries. While NVIDIA Corporation (NASDAQ: NVDA) currently dominates the AI hardware market with GPUs, the rise of neuromorphic chips could disrupt its stronghold in specific inference workloads, particularly those requiring ultra-low power and real-time processing at the edge. However, NVIDIA is also investing in advanced AI chip design, ensuring its continued relevance.

A vibrant ecosystem of startups is also driving innovation, often focusing on niche, ultra-efficient solutions. Companies like SynSense (formerly aiCTX) are developing high-speed, ultra-low-latency neuromorphic chips for applications in bio-signal analysis and smart cameras. Innatera (Netherlands) recently unveiled its SNP (Spiking Neural Processor) at CES 2025, boasting sub-milliwatt power dissipation for ambient intelligence. Other notable players include Mythic AI, Polyn Technology, Aspirare Semi, and Grayscale AI, each carving out strategic advantages in areas like edge AI, autonomous robotics, and ultra-low-power sensing. These companies are capitalizing on the performance-per-watt advantage offered by neuromorphic architectures, which is becoming a critical metric in the competitive AI hardware market.

This shift implies potential disruption to existing products and services, particularly in areas constrained by power and real-time processing. Edge AI and IoT devices, autonomous vehicles, and wearable technology are prime candidates for transformation, as neuromorphic chips enable more sophisticated AI directly on the device, reducing reliance on cloud infrastructure. This also has profound implications for sustainability, as neuromorphic computing could significantly reduce AI's global energy consumption. Companies that master the unique training algorithms and software ecosystems required for neuromorphic systems will gain a competitive edge, fostering a predicted shift towards a co-design approach where hardware and software are developed in tandem. The neuromorphic computing market is projected for significant growth, with estimates suggesting it could reach $4.1 billion by 2029, powering 30% of edge AI devices by 2030, highlighting a rapidly evolving landscape where innovation will be paramount.

A New Horizon for AI: Wider Significance and Ethical Imperatives​

Neuromorphic computing represents more than just an incremental improvement in AI hardware; it signifies a fundamental re-evaluation of how artificial intelligence is conceived and implemented. By mirroring the brain's integrated processing and memory, it directly addresses the energy and latency bottlenecks that limit traditional AI, aligning perfectly with the growing trends of edge AI, energy-efficient computing, and real-time adaptive learning. This paradigm shift holds the promise of enabling AI that is not only more powerful but also inherently more sustainable and responsive to dynamic environments.

The impacts are far-reaching. In autonomous systems and robotics, neuromorphic chips can provide the real-time, low-latency decision-making crucial for safe and efficient operation. In healthcare, they offer the potential for faster, more accurate diagnostics and advanced brain-machine interfaces. For the Internet of Things (IoT), these chips enable sophisticated AI capabilities on low-power, battery-operated devices, expanding the reach of intelligent systems. Environmentally, the most compelling impact is the potential for significant reductions in AI's massive energy footprint, contributing to global sustainability goals.

However, this transformative potential also comes with significant concerns. Technical challenges persist, including the need for more robust software algorithms, standardization, and cost-effective fabrication processes. Ethical dilemmas loom, similar to other advanced AI, but intensified by neuromorphic computing's brain-like nature: questions of artificial consciousness, autonomy and control of highly adaptive systems, algorithmic bias, and privacy implications arising from pervasive, real-time data processing. The complexity of these systems could make transparency and explainability difficult, potentially eroding public trust.
Comparing neuromorphic computing to previous AI milestones reveals its unique position. While breakthroughs like symbolic AI, expert systems, and the deep learning revolution focused on increasing computational power or algorithmic efficiency, neuromorphic computing tackles a more fundamental hardware limitation: energy consumption and the von Neumann bottleneck. It champions biologically inspired efficiency over brute-force computation, offering a path to AI that is not only intelligent but also inherently efficient, mirroring the elegance of the human brain. While still in its early stages compared to established deep learning, experts view it as a critical development, potentially as significant as the invention of the transistor or the backpropagation algorithm, offering a pathway to overcome some of deep learning's current limitations, such as its data hunger and high energy demands.

The Road Ahead: Charting Neuromorphic AI's Future​

The journey of neuromorphic computing is accelerating, with clear near-term and long-term trajectories. In the next 5-10 years, hybrid systems that integrate neuromorphic chips as specialized accelerators alongside traditional CPUs and GPUs will become increasingly common. Hardware advancements will continue to focus on novel materials like memristors and spintronic devices, leading to denser, faster, and more efficient chips. Intel's Hala Point, a neuromorphic system with 1,152 Loihi 2 processors, is a prime example of this scalable, energy-efficient AI computing. Furthermore, BrainChip Holdings Ltd. (ASX: BRN) is set to expand access to its Akida 2 technology with the launch of Akida Cloud in August 2025, facilitating prototyping and inference. The development of more robust software and algorithmic ecosystems for spike-based learning will also be a critical near-term focus.
Looking beyond a decade, neuromorphic computing is poised to become a more mainstream computing paradigm, potentially leading to truly brain-like computers capable of unprecedented parallel processing and adaptive learning with minimal power consumption. This long-term vision includes the exploration of 3D neuromorphic chips and even the integration of quantum computing principles to create "quantum neuromorphic" systems, pushing the boundaries of computational capability. Experts predict that biological-scale networks are not only possible but inevitable, with the primary challenge shifting from hardware to creating the advanced algorithms needed to fully harness these systems.
The potential applications on the horizon are vast and transformative. Edge computing and IoT devices will be revolutionized by neuromorphic chips, enabling smart sensors to process complex data locally, reducing bandwidth and power consumption. Autonomous vehicles and robotics will benefit from real-time, low-latency decision-making with minimal power draw, crucial for safety and efficiency. In healthcare, advanced diagnostic tools, medical imaging, and even brain-computer interfaces could see significant enhancements. The overarching challenge remains the complexity of the domain, requiring deep interdisciplinary collaboration across biology, computer science, and materials engineering. Cost, scalability, and the absence of standardized programming frameworks and benchmarks are also significant hurdles that must be overcome for widespread adoption. Nevertheless, experts anticipate a gradual but steady shift towards neuromorphic integration, with the market for neuromorphic hardware projected to expand at a CAGR of 20.1% from 2025 to 2035, becoming a key driver for sustainability in computing.

A Transformative Era for AI: The Dawn of Brain-Inspired Intelligence​

Neuromorphic computing stands at a pivotal moment, representing a profound shift in the foundational approach to artificial intelligence. The key takeaways from current developments are clear: these brain-inspired chips offer unparalleled energy efficiency, real-time processing capabilities, and adaptive learning, directly addressing the growing energy demands and latency issues of traditional AI. By integrating processing and memory and utilizing event-driven spiking neural networks, neuromorphic systems are not merely faster or more powerful; they are fundamentally more sustainable and biologically plausible.
This development marks a significant milestone in AI history, potentially rivaling the impact of earlier breakthroughs by offering a path towards AI that is not only intelligent but also inherently efficient, mirroring the elegance of the human brain. While still facing challenges in software development, standardization, and cost, the rapid advancements from companies like Intel Corporation (NASDAQ: INTC), IBM Corporation (NYSE: IBM), and BrainChip Holdings Ltd. (ASX: BRN), alongside a burgeoning ecosystem of innovative startups, indicate a technology on the cusp of widespread adoption. Its potential to revolutionize edge AI, autonomous systems, healthcare, and to significantly mitigate AI's environmental footprint underscores its long-term impact.
In the coming weeks and months, the tech world should watch for continued breakthroughs in neuromorphic hardware, particularly in the integration of novel materials and 3D architectures. Equally important will be the development of more accessible software frameworks and programming models that can unlock the full potential of these unique processors. As research progresses and commercial applications mature, neuromorphic computing is poised to usher in an era of truly intelligent, adaptive, and sustainable AI, reshaping our technological landscape for decades to come.


 
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Frangipani

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Yup, BrainChip is indeed coming to Semiconductor Australia, although not participating in the above panel discussion ā€œLeading from the Frontā€ with DroneShield.

Instead, Sean Hehir will be representing BrainChip in Session Two ā€œSemiconductors Power the Universeā€ alongside the CEOs of Weebit Nano (according to whom our two companies had been in discussions with ā€œon multiple frontsā€ at the time of a March 2025 Retail Investor Briefing), 2D Generation and Archer Materials.


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Unfortunately you need to be an ausbiz subscriber to watch the Q&A panel (past the first 30 seconds or so) that Sean Hehir participated in. Anyone?



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Also unfortunately, just two of the four companies represented by their CEOs in the Q&A panel are listed under ā€œExperts & companies in this videoā€ - and BrainChip is not one of them.
 
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Seems like theres a lot of shorts out to keep the share price low ?
Lets turn this upside down and turn it into a gamestop position. Who is keen? And lets set a date. The price is great and the time is near.
 
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It’s an absolute disaster! I don’t know any other company that crashes like BrainChip despite such partnerships, customers, and positive news. Every useless company out there that merely announces a partner … without having a single product, just ā€œplansā€ to produce something … shoots up to at least one dollar the very next day.

Why do they allow this kind of game to continue? I just don’t get it.

And don’t come at me with ā€œthen I’ll just buy another packageā€ … that’s not the point.

The lower we fall, the harder it becomes to climb back up without a reverse split.
I demand an immediate trading halt.
Peace Out Snl GIF by Saturday Night Live
Keep buying mate
 

stockduck

Regular
https ://iopscience.iop.org/article/10.1088/2634-4386/adad0f/pdf
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