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Tothemoon24

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Pico is also working on building "specialized chips" for the headset meant to process data from the device's sensors and minimize latency on what is seen in the headset and what is happening in real-time.


 
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Tothemoon24

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Apologies if posted ,

How to Solve the Size, Weight, Power and Cooling Challenge in Radar & Radio Frequency Modulation Classification​

By Aras Pirbadian and Amir Naderi
June 27, 2025
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Modern radar and Radio Frequency (RF) signal processing systems—especially those deployed on platforms like drones, CubeSats, and portable systems—are increasingly limited by strict Size, Weight, Power and Cooling (SWaP-Cool) constraints. These environments demand real-time performance and efficient computation, yet many conventional algorithms are too resource-intensive to operate within such tight margins. As the need for intelligent signal interpretation at the edge grows, it becomes essential to identify processing methods that balance accuracy within these constraints.
One such essential task in radar and RF applications is Automatic Modulation Classification (AMC). AMC enables systems to autonomously recognize the modulation type of incoming signals without prior coordination, a function crucial for dynamic spectrum access, electronic warfare, and cognitive radar systems. However, many existing AI-based AMC models, such as deep CNNs or hybrid ensembles, are computationally heavy and ill-suited for low- SWaP-Cool deployment, creating a pressing gap between performance needs and implementation feasibility.
In this post, we’ll show how BrainChip’s Temporal Event-Based Neural Network (TENN), a state space model, overcomes this challenge. You’ll learn why conventional models fall short in AMC tasks—and how TENN enables efficient, accurate, low-latency classification, even in noisy RF environments.

Why Traditional AMC Models Fall Short at the Edge​

AMC is essential for identifying unknown or hostile signals, enabling cognitive electronic warfare, and managing spectrum access. But systems like UAVs, edge sensors, and small satellites can’t afford large models that eat power and memory.
Unfortunately, traditional deep learning architectures used for AMC come with real drawbacks:
  • Hundreds of millions of Multiply Accumulate (MAC) operations resulting in high power consumption and large parameter counts demanding large memory
  • Heavy preprocessing requirements (e.g., Fast Fourier Transform (FFTs), spectrograms)
  • Still fail to maintain accuracy under 0 dB Signal-to-Noise Ratio (SNR), where signal and noise have similar power.
In mobile, airborne, and space-constrained deployments, these inefficiencies are showstoppers.

BrainChip’s TENN Model: A Low-SWaP-Cool Breakthrough for Real-Time RF Signal Processing​

BrainChip’s TENN model provides a game-changing alternative. It replaces traditional CNNs with structured state-space layers and is specifically optimized for low SWaP-Cool high-performance RF signal processing. State‑Space Models (SSMs) propagate a compact hidden state forward in time, so they need only constant‑size memory at every step. Modern SSM layers often recast this recurrent update as a convolution of the input with a small set of basis kernels produced by recurrence. Inference‑time efficiency therefore matches that of classic RNNs, but SSMs enjoy a major edge during training: like Transformers, they expose parallelizable convolutional structure, eliminating the strict step‑by‑step back‑propagation bottleneck that slows RNN training. The result is a sequence model that is memory‑frugal in deployment yet markedly faster to train than traditional RNNs, while still capturing long‑range dependencies without the quadratic cost of attention of Transformers.

TENN introduces the following innovations:​

  • A compact state-space modeling that simplifies modulation classification by reducing memory usage and computation—offering a leaner alternative to transformer-based models.
  • Tensor contraction optimization, applying efficient strategies to minimize memory footprint, computation and maximize throughput.
  • Hybrid SSM architecture that replaces CNN layers and avoids attention mechanisms, maintaining feature richness with lower computational cost.
  • Real-time, low-latency inference by eliminating the need for FFTs or buffering at inference time

Matching Accuracy with a Fraction of the Compute​

The Convolutional Long Short-Term Deep Neural Network (CLDNN), introduced by O’Shea et al. (2018), was selected as the benchmark model for comparison with BrainChip’s TENN. Although the original RadioML paper did not use the CLDNN acronym, it proposed a hybrid architecture combining convolutional layers with LSTM and fully connected layers—an architecture that has since become widely referred to as CLDNN in the AMC literature.
This model was chosen as a reference because it comes from the foundational paper that introduced the RadioML dataset—making it a widely accepted standard for evaluation. As a hybrid of convolutional and LSTM layers, CLDNN offers a meaningful performance baseline by capturing both spectral and temporal features of the input signals in the In-phase (I) and Quadrature (Q) (I/Q) components, which are used to represent complex signals in communication systems.
While more recent models like the Mixture-of-Experts AMC (MoE-AMC) have achieved state-of-the-art accuracy on the RadioML 2018.01A dataset, they rely on complex ensemble strategies involving multiple specialized networks, making them unsuitable for low-SWaP-Cool deployments due to their high computational and memory demands. In contrast, TENN matches or exceeds the accuracy of CLDNN, while operating at a fraction of the resource cost—delivering real-time, low-latency AMC performance with under 4 million MACs and no reliance on using multi-model ensembles or hand-crafted features like spectral pre-processing.
With just ~3.7 million MACs and 276K parameters, TENN is over 100x more efficient than CLDNN, while matching or exceeding its accuracy—even in low-SNR regimes. Moreover, the latency in the table refers to the simulated latency on a A30 GPU for both models.
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On the RadioML 2018.01A dataset (24 modulations, –20 to +30 dB), TENN consistently outperforms CLDNN especially in mid to higher SNR scenarios. Here is the performance of TENN compared to CLDNN's over the SNR range of -20 to +30 dB:
20250627_2.webp

Ready to bring low SWaP-Cool AI to your RF platforms?​

Today’s RF systems need fast, accurate signal classification that fits into small power and compute envelopes. CLDNN and similar models are simply too resource intensive. With TENN, BrainChip offers a smarter, more scalable approach—one that’s purpose-built for edge intelligence.

By leveraging efficient state-space modeling, TENN delivers:
  • Dramatically reduces latency, power consumption, and cooling requirements
  • Robust accuracy across noisy environments
  • Seamless deployment on real-time, mobile RF platforms
Whether you're deploying on a drone, CubeSat, or embedded system, TENN enables real-time AMC at the edge—without compromise.

Schedule a demo with our team to benchmark your modulation use cases on BrainChip’s event-driven AI platform and explore how TENN can be tailored to your RF edge deployment.

 
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MegaportX

Regular
The analysts who have recently upgraded BrainChip's stock rating from "Sell" to "Hold/Accumulate" include various financial research teams and platforms. Here are some notable mentions:

  1. MarketBeat: This platform provides insights and ratings on stocks, including BrainChip. They have noted the recent upgrade in sentiment towards BrainChip's stock.
  2. StockInvest.us: This site has also reported on the upgrade of BrainChip's stock rating, indicating a shift in market perception and potential for future growth.
  3. Capital.com: Their analysis discusses the stock's performance and market conditions, contributing to the overall understanding of BrainChip's position in the market.
These analysts and platforms are closely monitoring BrainChip's developments, particularly in light of the anticipated growth in the edge AI market and the company's recent product launches and partnerships. Their insights reflect a more favorable outlook for BrainChip as it navigates the evolving technology landscape.



MegaportX
 
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Rach2512

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Sorry if already posted, some very interesting comments.

 
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Rach2512

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CHIPS

Regular
Sorry if already posted, some very interesting comments.


Wow, Philip Dodge is doing a great job promoting BrainChip.

If he is around here, thank you, Philip! 👏🙏
 
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itsol4605

Regular
M Anthony Lewis
CTO@BrainChip | AI, Robotics, Disruptive Co..
This seems to be a a significant breakthrough.
Thanks goes to our funding agency Airforce research lab and to the emense guidance we are getting from Raytheon RTX our partner on the airforce award

 
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Quiltman

Regular
And then there is this comment this morning from our CTO.
The numbers blow your socks off !!

1752619161832.png
 
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IloveLamp

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jrp173

Regular
Wow, Philip Dodge is doing a great job promoting BrainChip.

If he is around here, thank you, Philip! 👏🙏

Agree with you, but such a shame that BrainChip (officially) won't do the same!

They are happy for other clients/customers to comments on us, but they seem frozen in fear and unable to promote themselves...
 
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7für7

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BOOOOOMMM


https://hotcrapper.com.au/images/asx-horiz.svg(20min delay)
Last
21.5¢
Change
0.015(7.50%)
Mkt cap !$410.1M
OpenHighLowValueVolume
20.0¢21.5¢20.0¢$1.408M6.858M

Buyers (Bids)

NO.VOL.PRICE($)
2749387921.0¢

Sellers (Offers)

PRICE($)VOL.NO.
21.5¢120106135
 
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BigDonger101

Founding Member
View attachment 88542 View attachment 88543 View attachment 88544
Trendyol is owned by Alibaba. Quite interesting.
 
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manny100

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The analysts who have recently upgraded BrainChip's stock rating from "Sell" to "Hold/Accumulate" include various financial research teams and platforms. Here are some notable mentions:

  1. MarketBeat: This platform provides insights and ratings on stocks, including BrainChip. They have noted the recent upgrade in sentiment towards BrainChip's stock.
  2. StockInvest.us: This site has also reported on the upgrade of BrainChip's stock rating, indicating a shift in market perception and potential for future growth.
  3. Capital.com: Their analysis discusses the stock's performance and market conditions, contributing to the overall understanding of BrainChip's position in the market.
These analysts and platforms are closely monitoring BrainChip's developments, particularly in light of the anticipated growth in the edge AI market and the company's recent product launches and partnerships. Their insights reflect a more favorable outlook for BrainChip as it navigates the evolving technology landscape.



MegaportX
WSJ’s Research & Ratings page, which currently lists one Buy recommendation and no Hold or Sell ratings for BRCHF. I analyst has recently started coverage. There was no buy recommendation 1 month ago. WSJ does not provide names of those who make the recommendations.
 
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manny100

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The analysts who have recently upgraded BrainChip's stock rating from "Sell" to "Hold/Accumulate" include various financial research teams and platforms. Here are some notable mentions:

  1. MarketBeat: This platform provides insights and ratings on stocks, including BrainChip. They have noted the recent upgrade in sentiment towards BrainChip's stock.
  2. StockInvest.us: This site has also reported on the upgrade of BrainChip's stock rating, indicating a shift in market perception and potential for future growth.
  3. Capital.com: Their analysis discusses the stock's performance and market conditions, contributing to the overall understanding of BrainChip's position in the market.
These analysts and platforms are closely monitoring BrainChip's developments, particularly in light of the anticipated growth in the edge AI market and the company's recent product launches and partnerships. Their insights reflect a more favorable outlook for BrainChip as it navigates the evolving technology landscape.



MegaportX
Here is the link to the MarketBeat BUY reccomendation.
 
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manny100

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Great finds MegaportX.
Stock Invest have us as a hold.
 
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Diogenese

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M Anthony Lewis

Qualcomm dominates the mobile phone processor market, and has a solid grip on automotive, eg, Mercedes.

Tony Lewis led the Qualcomm Zeroth AI software development team which developed, inter aliaI, software on-device learning.

https://www.qualcomm.com/news/onq/2015/03/qualcomm-zeroth-advancing-deep-learning-devices-video 20150302
...

Another new feature of Zeroth, also functioning fully on-device, provides the ability to recognize faces in near real time on a Snapdragon-powered device using deep convolutional neural networks (CNNs) with a top level classifier that can be retrained on device. This feature has been integrated into the Snapdragon Rover and provides the robot with the ability to learn to recognize new people’s faces with just a few examples and without having to retrain the entire convolutional neural network. The same technique could also be applied to customizing and personalizing other types of recognition categories also on device.

A preview of things to come

The cutting edge in research with neural network-based processing is for pattern matching on data that has a time component to it. Key example scenarios for this include activity recognition in video, handwriting recognition, speech and natural language processing. Approaches that include a variant of a type of neural network known as a recurrent neural network (RNN) show the most promise in achieving human-like performance for recognizing patterns over time.

The Zeroth team worked with Planet GmBH to demonstrate the power of deep convolutional recurrent neural networks running on Snapdragon and in the
Zeroth Platform.

In 2018, he joined HP and continued AI development including on-device learning:

https://www.linkedin.com/in/m-anthony-lewis-b6a6335/

Portfolio includes: Application of machine learning to: Bioanalytics connecting computer and people, Corporate Finance Prediction, Customer Service Optimization, warranty support reduction, Emotion Recognition (visual and audio), machine learning accelerators analysis, Deep Learning at the edge. Robotics for manufacturing and 3d print. Also, work in use of flattening compute architecture with NVM.

Clearly, Tony was a major influence on Qualcomm's success in development of its AI capabilities. He also worked on temporal NNs.

One of the main distinguishing features of Akida 1 is its on-device learning capability in silicon, while Akida 2 introduced TeNNs.

There is a 3 year lacuna in Tony's Linkedin CV - retirement? What lured him back to the "mundane" world of AI NNs?

My guess is it was TENNs - unfinished business?

Or possibly LLMs at the edge?
 
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He did mention this last week on a linkden question
 

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yogi

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We are proud to announce that NEXA Glasses have received ethical approval from the Ministry of Health. This step marks a pivotal milestone in our journey towards creating solutions that serve people first, and reflects our deep commitment to ethical standards and our constant pursuit of developing technologies that improve the quality of life.

 
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