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What fascinates me is that AKIDA TAG is running the AKD1500 and being promoted across the same applications as the AKIDA Pico.

AKIDA Pico the size of a micro dot.

AKIDA TAG the size of a Smart Watch.

AKIDA Pico can be built on one thru to 6 node configurations and is available as IP and can have expanded memory.

AKD1500 can be had as IP and can be more or less nodes as this is the beauty of the AKIDA Neural fabric.

So why am I fascinated it is because that between them AKD1500 and AKIDA Pico have covered any use case one could imagine in the wearables and industrial use spaces.

Brainchip then has the AKIDA 2.0 and AKD2500 to fill in any Gaps requiring TENNS above 6 nodes up to 256 nodes and AKD1000 at 80 nodes able to serve in robotics, cyber security, post quantum cyber security, Hive Mind space and beyond Earth applications with Radhard GRAIN.

The reality has become suddenly that Brainchip can service ubiquitous market opportunities and with AKIDA 3.0 demonstrating it is now a one stop shop.
 
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Not sure if anyone has posted this patent released early Feb 2026 from TATA CONSULTANCY SERVICES LTD.

Akida 1000 mentioned numerous times throughout the artwork, gee our first NSoC was/is good, and yes, I know
advancements have certainly been expanded upon and continue to be.

Asking Ai what Tata would use this patient for

The patent US20260037783A1 refers to advancements in the Akida neural processor architecture, a neuromorphic computing system designed by BrainChip Holdings. Neuromorphic engineering, a field pioneered by Carver Mead, seeks to emulate the neural structures and processing methods of the biological brain.[1] Unlike traditional Von Neumann architectures that separate processing and memory, Akida utilizes an "Event-Based" approach where information is processed only when spikes (events) occur, significantly reducing power consumption.[2] This specific patent focuses on the efficient implementation of neural networks, particularly for edge computing applications where low latency and high energy efficiency are paramount.[3]

According to www.iAsk.Ai - Ask AI:

Technical Applications and Use Cases​

The primary use for the technology described in the patent is the deployment of Spiking Neural Networks (SNNs) and accelerated Convolutional Neural Networks (CNNs) on hardware that functions at the "edge" of the internet.[4] In biological systems, neurons communicate via discrete electrical impulses; the Akida processor mimics this by using a mesh of processing nodes that communicate via a packetized protocol, allowing for massive parallelism.[5] This is particularly useful for real-time sensory processing, such as vision, sound, and vibration analysis, without the need for constant cloud connectivity.[6]

Industrial and Commercial Implementation​

  1. Automotive Systems: The technology is used for in-cabin monitoring, gesture recognition, and autonomous driving assistance. By processing visual data locally, the system can react faster than cloud-based AI.[7]
  2. Internet of Things (IoT): Akida's low power profile allows for "Always-On" battery-operated devices. It can perform keyword spotting or anomaly detection in industrial machinery by learning "on-chip" without requiring extensive retraining on a server.[8] [9]
  3. Medical Diagnostics: The patent's methods for efficient data processing enable wearable devices to monitor vitals and detect arrhythmias or other health markers in real-time using minimal energy.[10]
  4. Security and Surveillance: The hardware can be used for facial recognition and object tracking in smart cameras, ensuring privacy by keeping data on the device rather than transmitting it.[11]

Computational Efficiency and On-Chip Learning​

A critical feature of the Akida architecture highlighted in academic literature is its ability to perform One-Shot Learning.[12] Traditional deep learning requires thousands of examples and backpropagation, which is computationally expensive. Akida utilizes biologically inspired learning rules, such as Simplified Spike-Timing-Dependent Plasticity (STDP), allowing the hardware to learn new patterns from just a few examples directly at the edge.[13] The mathematical efficiency of these operations is often represented by the reduction in Multiply-Accumulate (MAC) operations, as spiking architectures primarily use additions:
 
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itsol4605

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Asking Ai what Tata would use this patient for

The patent US20260037783A1 refers to advancements in the Akida neural processor architecture, a neuromorphic computing system designed by BrainChip Holdings. Neuromorphic engineering, a field pioneered by Carver Mead, seeks to emulate the neural structures and processing methods of the biological brain.[1] Unlike traditional Von Neumann architectures that separate processing and memory, Akida utilizes an "Event-Based" approach where information is processed only when spikes (events) occur, significantly reducing power consumption.[2] This specific patent focuses on the efficient implementation of neural networks, particularly for edge computing applications where low latency and high energy efficiency are paramount.[3]

According to www.iAsk.Ai - Ask AI:

Technical Applications and Use Cases​

The primary use for the technology described in the patent is the deployment of Spiking Neural Networks (SNNs) and accelerated Convolutional Neural Networks (CNNs) on hardware that functions at the "edge" of the internet.[4] In biological systems, neurons communicate via discrete electrical impulses; the Akida processor mimics this by using a mesh of processing nodes that communicate via a packetized protocol, allowing for massive parallelism.[5] This is particularly useful for real-time sensory processing, such as vision, sound, and vibration analysis, without the need for constant cloud connectivity.[6]

Industrial and Commercial Implementation​

  1. Automotive Systems: The technology is used for in-cabin monitoring, gesture recognition, and autonomous driving assistance. By processing visual data locally, the system can react faster than cloud-based AI.[7]
  2. Internet of Things (IoT): Akida's low power profile allows for "Always-On" battery-operated devices. It can perform keyword spotting or anomaly detection in industrial machinery by learning "on-chip" without requiring extensive retraining on a server.[8] [9]
  3. Medical Diagnostics: The patent's methods for efficient data processing enable wearable devices to monitor vitals and detect arrhythmias or other health markers in real-time using minimal energy.[10]
  4. Security and Surveillance: The hardware can be used for facial recognition and object tracking in smart cameras, ensuring privacy by keeping data on the device rather than transmitting it.[11]

Computational Efficiency and On-Chip Learning​

A critical feature of the Akida architecture highlighted in academic literature is its ability to perform One-Shot Learning.[12] Traditional deep learning requires thousands of examples and backpropagation, which is computationally expensive. Akida utilizes biologically inspired learning rules, such as Simplified Spike-Timing-Dependent Plasticity (STDP), allowing the hardware to learn new patterns from just a few examples directly at the edge.[13] The mathematical efficiency of these operations is often represented by the reduction in Multiply-Accumulate (MAC) operations, as spiking architectures primarily use additions:

Asking Ai what Tata would use this patient for

The patent US20260037783A1 refers to advancements in the Akida neural processor architecture, a neuromorphic computing system designed by BrainChip Holdings. Neuromorphic engineering, a field pioneered by Carver Mead, seeks to emulate the neural structures and processing methods of the biological brain.[1] Unlike traditional Von Neumann architectures that separate processing and memory, Akida utilizes an "Event-Based" approach where information is processed only when spikes (events) occur, significantly reducing power consumption.[2] This specific patent focuses on the efficient implementation of neural networks, particularly for edge computing applications where low latency and high energy efficiency are paramount.[3]

According to www.iAsk.Ai - Ask AI:

Technical Applications and Use Cases​

The primary use for the technology described in the patent is the deployment of Spiking Neural Networks (SNNs) and accelerated Convolutional Neural Networks (CNNs) on hardware that functions at the "edge" of the internet.[4] In biological systems, neurons communicate via discrete electrical impulses; the Akida processor mimics this by using a mesh of processing nodes that communicate via a packetized protocol, allowing for massive parallelism.[5] This is particularly useful for real-time sensory processing, such as vision, sound, and vibration analysis, without the need for constant cloud connectivity.[6]

Industrial and Commercial Implementation​

  1. Automotive Systems: The technology is used for in-cabin monitoring, gesture recognition, and autonomous driving assistance. By processing visual data locally, the system can react faster than cloud-based AI.[7]
  2. Internet of Things (IoT): Akida's low power profile allows for "Always-On" battery-operated devices. It can perform keyword spotting or anomaly detection in industrial machinery by learning "on-chip" without requiring extensive retraining on a server.[8] [9]
  3. Medical Diagnostics: The patent's methods for efficient data processing enable wearable devices to monitor vitals and detect arrhythmias or other health markers in real-time using minimal energy.[10]
  4. Security and Surveillance: The hardware can be used for facial recognition and object tracking in smart cameras, ensuring privacy by keeping data on the device rather than transmitting it.[11]

Computational Efficiency and On-Chip Learning​

A critical feature of the Akida architecture highlighted in academic literature is its ability to perform One-Shot Learning.[12] Traditional deep learning requires thousands of examples and backpropagation, which is computationally expensive. Akida utilizes biologically inspired learning rules, such as Simplified Spike-Timing-Dependent Plasticity (STDP), allowing the hardware to learn new patterns from just a few examples directly at the edge.[13] The mathematical efficiency of these operations is often represented by the reduction in Multiply-Accumulate (MAC) operations, as spiking architectures primarily use additions:
Can i ask this Tata has a payent that mentions Akida 1000 is this correct?
If not fair enough.
If it is why hasnt Tata been signed up or its common knowledge they are using our product and Royalties will come ?
 

Boab

I wish I could paint like Vincent
Forbes

From the article.

Thanks @itsol4605
Screen Shot 2026-03-15 at 3.15.13 pm.png
 
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Not sure if anyone has posted this patent released early Feb 2026 from TATA CONSULTANCY SERVICES LTD.

Akida 1000 mentioned numerous times throughout the artwork, gee our first NSoC was/is good, and yes, I know
advancements have certainly been expanded upon and continue to be.

So why isnt there a agreement, why arent partnerships more explained of there true worth and what it represents
 
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