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Tothemoon24

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What do early 20th-century tractors and AI and ML at the edge have in common? 🤔 More than you might think!

Just like tractors once revolutionized agriculture but faced implementation hurdles at the time, today’s AI and ML technologies are facing challenges on the journey to widespread adoption.

From hardware fragmentation to model lifecycle hurdles and performance optimization, new challenges are holding developers back from scaling the AI opportunity. But overcoming these challenges is possible by building #onArm.

In our latest blog, Paul Williamson shares valuable insights on deploying AI and ML at the edge on Arm to unlock a world of innovation and possibility. 👉 https://okt.to/GYBolQ

📅 If you're heading to #EmbeddedWorld next week, join us in Hall 4, Stand 504 as we explore the practical solutions and showcase the advantages of building #onArm. #EW24

From Possibility to Reality: Enabling AI and ML at the Edge with Arm​

The transformative opportunities and challenges from deploying AI and ML at the edge across IoT markets.
By Paul Williamson, SVP and GM of the IoT LoB, Arm
Artificial Intelligence (AI)Internet of Things (IoT)
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When you think of artificial intelligence (AI) and machine learning (ML), you always think of tractors, right? Of course not, but this comparison in the Economist can be helpful.
Here’s why. Despite tractors’ heralded launch in the early 20th century, farmers were slow to embrace the technology. Only 23% of U.S. farms used them by 1940. Why the slow uptake? Limited functionality, reliability issues, maintenance challenges, and prohibitive costs for the most part. But despite the challenges, most farmers could see the transformation these machines would bring once the bugs were ironed out and they became more economically attractive.
The pace of technological adoption today far outstrips that of the 20th-century agriculture sector, but the lessons learned from the evolution of the tractor are relevant to the early adoption of AI and ML at the edge. Put another way, the competition to invest in AI systems must move from amazing possibilities (1940s farmers gazing admiringly at tractors) to realistic implementation plans – for example, increased farming efficiency, diversification and intensification of agriculture, and development of specialized attachments and services for tractors.
To get to AI and ML at the edge at scale, however, several obstacles currently stand in the way of widespread adoption.

A fragmented landscape​

One of the challenges of deploying AI and ML at the edge is the diversity of hardware available for different applications and use cases. Often, the variety of hardware options means that developers must tailor their models and code for the specific hardware they are targeting, which adds complexity and overhead to the development process.
In reality – just as in mobile and high performance IoT – the majority of ML models run on CPUs. The common denominator in IoT is the Arm architecture. In 2020, Arm launched Helium as a seamless extension to the Cortex-M instruction set, enabling ML acceleration on ultra-low-power devices. With Helium, developers can achieve up to 15x more performance and 5x more energy efficiency for ML applications compared to previous Cortex-M generations. More than 35 partners are already shipping devices with Helium technology, including NXP, Renesas, Ambiq, and Alif. Embedded World 2024 will see even more devices built on Helium, as we enter a decade of AI innovation in embedded systems.
The natural progression in this performance journey is the Arm family of Ethos NPUs, designed to deliver the highest performance and efficiency for ML workloads at the edge. Ethos NPUs are scalable and configurable, offering different levels of performance and power consumption for different applications, such as computer vision, natural language processing, speech recognition, and recommendation systems. Ethos NPUs can be integrated with any Arm-based system-on-chip (SoC), providing a seamless solution for ML acceleration on devices ranging from smart speakers to security cameras.

AI model lifecycle​

Another challenge is the lifecycle of AI models, which includes training, tuning, and deployment. To deploy AI models at the edge, developers need to consider how to optimize the models for the specific hardware they are targeting. This involves choosing the right model architecture, data format, quantization scheme and inference engine that can run efficiently on the embedded device. Moreover, developers need to select an inference engine that can leverage the hardware features of the device, such as an Ethos NPU or Helium technology, to accelerate the execution of the model.
Arm makes it easy to use popular ML frameworks, such as PyTorch and ExecuTorch, on embedded devices. For example, Arm Keil MDK, the integrated development environment (IDE) that simplifies the development and debugging of embedded applications, supports CMSIS Packs, which provide a common abstraction layer for device capabilities and ML models. Simplified development flows are bringing AI within reach on a single toolchain and single proven architecture, with more than 100 billion Cortex-M devices shipped to date amid a global ecosystem of more than 100 ML partners.
By using Arm solutions, developers can reduce the time and cost of developing ML applications for embedded devices and achieve better performance and efficiency.

Working with embedded devices​

One of the main challenges of embedded development is to optimize the performance and efficiency of ML applications on resource-constrained devices. Unlike cloud-based solutions, which can leverage the abundant computing power and memory of servers, embedded devices have to run ML models locally and often under strict power and latency constraints. To achieve desired ML performance developers often have to compromise on price or power consumption in the first iteration of the product.
Arm Virtual Hardware, which offers cloud-based simulations of Arm-based systems, is an innovative solution that allows developers to create and test ML applications without having to rely on physical hardware. It integrates seamlessly with MLOps solutions, such as AWS SageMaker and Google Cloud AI Platform, to streamline the deployment and management of ML models across devices. These platforms provide tools and services for automating the entire ML lifecycle, from data management and model training to deployment and monitoring. By combining Arm Virtual Hardware and MLOps solutions, developers can achieve faster time to market, lower costs and better scalability for their embedded ML applications.

Deploying and securing intellectual property​

Deploying and securing valuable intellectual property across millions of endpoints is a major challenge. This stems from the fact that ML models are essentially mathematical functions that can be extracted and replicated by anyone who has access to the device or the data stream. It exposes the devices and the data to potential tampering, manipulation, or malicious attacks that could compromise their functionality and reliability. Developers, therefore, need to ensure that their ML models are protected and cannot be easily reverse engineered.
One of the ways that Arm helps developers deploy and secure their ML models on edge devices is by working within the framework provided by PSA Certified. Based on the Platform Security Architecture (PSA) – best practices and specifications developed by Arm and its partners to help secure IoT devices – PSA Certified enables users to verify and trust the security of IoT products, and comply with regulations and standards.

AI at the embedded edge​

The emergence of AI and ML is reshaping the landscape of embedded systems, and this will be on full display next week at Embedded World in Nuremberg, an event that’s quickly evolving into what you might call “Edge AI World.”
Last year, we and our partners talked about the myriad ways some familiar challenges of embedded development were being tackled – whether it was the rise of development solutions such as Arm Virtual Hardware, the emergence of new industry standards, or the adoption of the Arm architecture to enable flexibility, efficiency and minimize security risk.
At this year’s Embedded World, we confront the dizzying pace of innovation of AI and ML at the edge and the consequences for the Arm developer ecosystem. Consider that with the rise of interconnected devices at the IoT edge, there’s an exponential surge in data, providing ample opportunity for AI algorithms to process and derive real-time insights. And while the spotlight often shines on generative AI and large language models (LLMs), smaller models are making their mark by being deployed on edge IoT devices, such as Raspberry Pi. Transformer network models are also making waves at the edge, setting themselves apart from conventional convolutional neural networks (CNNs) by their inherent flexibility.
The accelerated pace of change is breathtaking. We at Arm are excited to play a vital role in enabling AI in high-performance IoT devices and systems. Our vision is to deliver intelligent and secure devices and systems that can empower innovation and transform lives. Arm remains committed to assisting developers in tackling challenges by offering:
  • Optimized hardware and software for AI in high-performance IoT that carefully balance performance, power consumption, cost-effectiveness, security and scalability.
  • Streamlined tools and platforms that democratize the development and deployment of AI in high-performance IoT, empowering developers and system builders from diverse backgrounds to create and tailor solutions according to their needs.
  • Robust ecosystem support and strategic partnerships that drive the adoption and maximize the impact of AI in high-performance IoT, encouraging collaboration and co-creation across various stakeholders and industries.
These are the pillars of our vision for AI at the IoT edge, which we believe – in the same way the tractor revolutionized farming and the food chain – will transform the way we interact with the physical world and unlock new possibilities for human creativity and innovation.
Join us at Embedded World at the Nuremberg Messe, Hall 4, Stand 504.
 
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Frangipani

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Hi Pmel,

my guess is that to quite a few forum readers your post was suggestive of a Samsung employee with some sort of inside knowledge regarding current or future implementation of our disruptive tech, such as a hardware or software engineer busy developing the next generation of Samsung Galaxy phones?

To put it into perspective:

Michael Novak works as an Inside Sales Manager (so he is not in R&D) for Samsung SDI Europe and not for Samsung Electronics, which is a separate - and the most famous and lucrative - company within the Samsung Group, South Korea’s largest chaebol (business conglomerate run by an individual or family). The Samsung Group consists of about 25 affiliated companies:


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Fair chance he’s a shareholder..

I second that.
 

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TheFunkMachine

seeds have the potential to become trees.
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Anil Mankar personally congratulates and asks to sync up with vice president of engineering of Infineon Technologies. Sounds like an electric date to me;)
 
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equanimous

Norse clairvoyant shapeshifter goddess
NO, we do NOT have to talk about Bitcoin or any other stocks because this here is only about BrainChip and its connection to other companies!!
Actually there is alot of use cases which brn can help with.

BrainChip's Akida neuromorphic processor can contribute significantly to blockchain technology and its applications, particularly in the areas of security, efficiency, and innovation. By leveraging the Akida processor's ultra-low power, fully digital, event-based, neuromorphic AI capabilities, it can enhance various aspects of blockchain technology:

Security: The Akida processor's event-based processing can be used to improve the security of blockchain networks. For example, it can be used to detect anomalies and potential threats in real-time, which is crucial for maintaining the integrity of a blockchain.
Efficiency: The ultra-low power consumption of the Akida processor makes it ideal for running blockchain nodes and mining operations. This can help reduce the energy costs associated with maintaining a blockchain network, making it more sustainable and efficient.
Innovation: BrainChip's partnership with MYWAI aims to deliver next-generation Edge AI solutions leveraging neuromorphic compute. This collaboration can lead to innovative applications of blockchain technology, such as integrating AI with blockchain for enhanced security, transparency, and automation in various industries.
Scalability: The Akida processor's ability to handle complex computations at the Edge can help address the scalability challenges faced by blockchain networks. By distributing the computational load across the network, it can help increase the transaction throughput and overall efficiency of the blockchain.
Smart Contracts: The Akida processor can potentially be used to develop and execute more complex and efficient smart contracts on blockchain platforms. This can enable a broader range of decentralized applications (DApps) and improve the functionality of existing ones.
Data Integrity: The Akida processor's capabilities in processing and analyzing data can be used to ensure the integrity of data stored on a blockchain. This is particularly important in industries where data tampering or manipulation can have serious consequences, such as healthcare, finance, and supply chain management.
Privacy: The Akida processor's event-based processing can also be used to enhance the privacy features of blockchain networks. By processing and analyzing data locally, it can help reduce the amount of sensitive information that needs to be stored or transmitted on the blockchain, thereby improving privacy and security.
 
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equanimous

Norse clairvoyant shapeshifter goddess
Actually there is alot of use cases which brn can help with.

BrainChip's Akida neuromorphic processor can contribute significantly to blockchain technology and its applications, particularly in the areas of security, efficiency, and innovation. By leveraging the Akida processor's ultra-low power, fully digital, event-based, neuromorphic AI capabilities, it can enhance various aspects of blockchain technology:

Security: The Akida processor's event-based processing can be used to improve the security of blockchain networks. For example, it can be used to detect anomalies and potential threats in real-time, which is crucial for maintaining the integrity of a blockchain.
Efficiency: The ultra-low power consumption of the Akida processor makes it ideal for running blockchain nodes and mining operations. This can help reduce the energy costs associated with maintaining a blockchain network, making it more sustainable and efficient.
Innovation: BrainChip's partnership with MYWAI aims to deliver next-generation Edge AI solutions leveraging neuromorphic compute. This collaboration can lead to innovative applications of blockchain technology, such as integrating AI with blockchain for enhanced security, transparency, and automation in various industries.
Scalability: The Akida processor's ability to handle complex computations at the Edge can help address the scalability challenges faced by blockchain networks. By distributing the computational load across the network, it can help increase the transaction throughput and overall efficiency of the blockchain.
Smart Contracts: The Akida processor can potentially be used to develop and execute more complex and efficient smart contracts on blockchain platforms. This can enable a broader range of decentralized applications (DApps) and improve the functionality of existing ones.
Data Integrity: The Akida processor's capabilities in processing and analyzing data can be used to ensure the integrity of data stored on a blockchain. This is particularly important in industries where data tampering or manipulation can have serious consequences, such as healthcare, finance, and supply chain management.
Privacy: The Akida processor's event-based processing can also be used to enhance the privacy features of blockchain networks. By processing and analyzing data locally, it can help reduce the amount of sensitive information that needs to be stored or transmitted on the blockchain, thereby improving privacy and security.
I strongly believe BRN will play a crucial role with blockchain as stated above. Remember when the lehman brothers went bust and no one knew who owend what, well there is a need for a new ledger system.

The banks and corporations and banks are definitely going to want the best security and privacy and BRN is the best solution for this.

BlackRock CEO Larry Fink said that "the next generation for markets, the next generation for securities, will be tokenization of securities."

In the world of blockchain, tokenization refers to a process where a digital representation of an asset is created on a blockchain, authenticating its transaction and ownership history.

This approach enables a different way to trade assets like stocks, bonds, real estate, or even alternative assets like land, wine, or art, allowing the transfers to be visible on a public ledger.

Speaking at a New York Times DealBook event, Fink argued that tokenization will provide “instantaneous settlement” and “reduced fees.”
 
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7für7

Top 20
No, we don't need to talk about Bitcoin here. This is the BRN forum - if you need to talk about Bitcoin please feel free to spam in any Bitcoin forum of your choice.

Slowly but surely your non BRN-related spamming is getting out of hand here.
How funny 🤣 he was one of the guys who was complaining me a while ago because i posted Jesus… even my post was Related to BRN..
 
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Frangipani

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How funny 🤣 he was one of the guys who was complaining me a while ago because i posted Jesus… even my post was Related to BRN..

Hi 7für7,

nope, that’s a clear case of mistaken identity…
Only the initial s and the middle 8 are a match.
The poster you have in mind recently decided to leave TSE altogether and confine himself to HC, shortly before the one you confuse him with returned to TSE from a one-year sabbatical.

Speaking of HC:
… but obviously someone is manipulating posts from me without my permission! This is really almost criminal
Did you ever find out who the culprit was?! 🤭

If not, here is your answer:

DBBCB74D-3CF5-490C-AE9A-1CA848441C06.jpeg


Schönen Sonntag
Frangipani
 
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Bravo

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

Regular
Good morning/afternoon All,

Overnight I heard from Anil...I had asked if he was planning on attending this years AGM in person, sadly not this year, but
possibly next year, I also asked if he was happy with the progress from a Co-Founders and CDO's perspective, to which he
replied "yes very happy and very busy".

My own level of confidence in our brilliant team/s to deliver us the best possible results, remains extremely high, we all run
our own race throughout life, you choose your own path thanks to freedom.

mr narrins GIF


Tech ;)
 
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sb182

Member
How funny 🤣 he was one of the guys who was complaining me a while ago because i posted Jesus… even my post was Related to BRN..
So tell me, how is Jesus related to BrainChip.
Please waiting for your reply.

Bored Cabin Fever GIF
 
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TECH

Regular
I , like all of us look forward to there being more than chitchat and pats on the back from the office to you which must be very close now .
This quarter would be nice to hear financials are well up on the last

I personally believe it's "still too early" I'll stick with 2025 onwards, but like many, I hope I'm wrong. :ROFLMAO:
 
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I personally believe it's "still too early" I'll stick with 2025 onwards, but like many, I hope I'm wrong. :ROFLMAO:
It doesn’t make sense to me if we aren’t involved with companies in this space now and seeing it in the financials due this month.There are many companies selling AI now claiming huge power savings so we’re do we sit with this lead if that’s the case ?
Something doesn’t add up
 
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zeeb0t

Administrator
Staff member
Thrilled about this new forum for BrainChip discussions, thanks to ZeeBot! 🌟 2022 is off to a fantastic start, and it's only February. Eager to see what the rest of the year holds for us. Much love to all the fellow chippers! 💙💡🦾 #BrainChipCommunity #ExcitedFor2022
Not at all sure what to take of this
 
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7für7

Top 20
Hi 7für7,

nope, that’s a clear case of mistaken identity…
Only the initial s and the middle 8 are a match.
The poster you have in mind recently decided to leave TSE altogether and confine himself to HC, shortly before the one you confuse him with returned to TSE from a one-year sabbatical.

Speaking of HC:

Did you ever find out who the culprit was?! 🤭

If not, here is your answer:

View attachment 60452

Schönen Sonntag
Frangipani
Sherlock Holmes! 🫵
 
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Drewski

Regular
So tell me, how is Jesus related to BrainChip.
Please waiting for your reply.

Bored Cabin Fever GIF
Brn share price will rise from the dead
The second coming of Brn share price
Akida - the Messiah
 
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It doesn’t make sense to me if we aren’t involved with companies in this space now and seeing it in the financials due this month.There are many companies selling AI now claiming huge power savings so we’re do we sit with this lead if that’s the case ?
Something doesn’t add up
Completely different type off Ai they are selling that has been available some time I think?
 
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Diogenese

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GStocks123

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