BRN Discussion Ongoing

skutza

Regular
Well I must say i am very pleased with what I have just read. Caught up as I've seen the SP was not going so well, so I thought best to stay away. Been looking at the top rated post only each day. But the posts the last 3 pages anyway, all seem quite upbeat and educational. I must say for the last trading of the FY I'm a bit disappointed. I basically have my tax ready to go with a few adjustments last minute I'm sure. But I can tell you as soon as that tax return comes (it'll be big, thanks to some poor stock choices :)) I know where I will dump every last cent.

I was hoping to pick some up in the low 30's but it seems I'll be lucky to get them under 40c by that time. All good news on the horizon and although 2022 FY wasn't great, maybe this year.......
 
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Labsy

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Screenshot_20230630_123905_Twitter.jpg
 
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Kachoo

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IloveLamp

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Xray1

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Our "mates" TCS released a BFSI white paper from 22nd June.

Nice to see they at least still have a soft spot for neuromorphic...be bloody great if they actually commited something materi to Akida though instead of just white papers.

Most annoying thing in the back of my mind is all these handy partnerships developing various things with us and I trust they not just piggybacking and cherry picking bits of knowledge to further themselves along some parallel internal dev program or gain some insight for a diff tangent and process.


Neuromorphic computing: Ushering in AI innovation in BFSI​


SUKRITI JALALI​

Principal Consultant, BFSI, TCS​


INDUSTRY​

SERVICES​


HIGHLIGHTS
  • Firms in the banking, financial services, and insurance (BFSI) industry have embraced artificial intelligence (AI) and machine learning (ML).
  • These technologies use deep learning (DL) models that require massive sets of training data, consume enormous amounts of power, and fall short in adapting to the changing business environment.
  • Neuromorphic computing (NC) can help firms leverage the latest innovations in AI to address some of the existing challenges while paving the way for next-generation use cases.
ON THIS PAGE

WHAT LIES AHEAD​


ABSTRACT
The banking, financial services, and insurance (BFSI) industry has been at the forefront of embracing disruptive technologies.

Firms have adopted artificial intelligence (AI) and machine learning (ML) to recast customer experience, improve business operations, and develop futuristic products and services. Existing AI and ML technologies utilize deep learning (DL) models that run on compute-intensive data centers, require massive sets of training data, consume a large amount of power to train, and fall short in adapting to the changing business environment.
In our view, the BFSI industry can overcome these challenges by exploring neuromorphic computing (NC) for certain kinds of use cases. Spiking neural networks (SNNs), which take inspiration from the functioning of biological neural networks in the human brain, when run on NC hardware, perform on par with DL models but consume significantly lesser power. They are purpose-built for AI and ML and offer advantages such as speed of learning and faster parallel processing. We highlight how NC can help firms overcome inefficiencies in the existing AI and ML deployments in the BFSI industry and examine new use cases.

INTRODUCTION
The proliferation of connected devices in the BFSI industry has generated enormous amounts of data.

This data needs to be analyzed and insights delivered in real time to enable instant action. Firms have been making use of data derived from images, videos, text, audio, and IoT devices. In the insurance industry, the use cases span property damage analysis, driver sleep detection, elderly care, and predictive asset maintenance. Robo-advisory for investment and wealth management, customer sentiment analysis, and fraud detection are other critical areas in the BFSI sphere that benefit from AI and ML.

However, much of the data analysis is post-facto or after-the-event, which means firms do not receive a timely warning and cannot take action to avert adverse events or minimize their impact. In addition, the existing models use DL networks that consume massive amounts of energy, both for training and inference. Firms need voluminous data sets to train the models while processing data sequentially. Enhancing the models or modifying their parameters are complex and cumbersome tasks. All this has resulted in several negative impacts for BFSI firms: higher carbon footprint, increased time and effort to train models, processing delays, and high manual effort across the AI and ML lifecycle whenever there is a change in input parameters or training data.

NC TO THE RESCUE
In our view, the BFSI industry should explore third-generation AI systems powered by neuromorphic computing (NC) platforms and spiking neural networks (SNNs).

This will help them address the aforementioned shortcomings and improve the response time, while significantly lowering the carbon footprint. NC closely replicates how the human brain responds to complex external events and learns unsupervised while using minimal energy. We believe that these systems will facilitate a natural progression toward developing ultra-low energy adaptive AI applications by mimicking human cognitive capabilities. NC will also reduce cloud dependence, which means that edge applications can be enabled without compromising privacy and security.

Key features of NC include:
  • Sparsity – allows models to be trained with a lesser amount of data compared to the existing DL models. This dramatically reduces memory and input training data requirements. For instance, in touchless banking kiosks, cameras underpinned by NC can recognize and learn individual gestures much faster, enabling personalized customer experience.
  • Event-based processing – allows firms to detect and respond to events in real time. For instance, for parametric insurance policies, instant detection of a threshold breach is essential for immediate, frictionless pay-outs, which is key to superior customer experience.
  • Colocation of memory and compute – enables faster parallel processing of multiple data streams. An insurance use case in focus is the prevention of work-related injuries in hazardous environments, resulting in reduced accidents and workers’ compensation claims. Given the low energy use of NC, some of the models can easily run on handheld devices without the need for cloud connectivity.
These factors make NC a natural choice for BFSI use cases that require real-time insights and are time-sensitive in nature.

PUTTING THEORY TO ACTION
The insurance industry is moving from a protection to a prevention and preservation paradigm.

And embracing NC will help insurers accelerate this shift. Currently, data from IoT devices – wearables, connected vehicles, or drones – is sent over a network to cloud servers, where pre-trained algorithms process, analyze, and respond to each event. The response needs to travel back to the edge, based on which action is taken. This causes delays, consumes significant processing power on the server, and requires all scenarios to be pre-trained. This is not the best approach where a real-time response is critical to prevent the occurrence of adverse events or minimize their impact.
With its in-situ processing capabilities and ability to offer real-time inferences, NC offers a superior alternative. In our view, there is tremendous scope for NC technology to improve edge AI applications (see Figure 1).

For example, real-time driver sleep detection is imperative to prevent an accident and the consequent insurance claims. Similarly, in home care, NC can prove to be a game changer for the remote monitoring of elderly patients. A fall or a sudden heart attack can be detected in real time. The connected ecosystem of family, doctors, ambulance, caregivers, and insurance providers can be alerted without delay. Insurance applications that need analytical insights at the edge span a wide range. They include usage-based vehicle insurance, real-time tracking of perishable cargo, predictive maintenance of critical equipment, elder care, early detection of anomalies in home insurance, and video- based claims processing. NC can also aid in faster detection of natural disasters such as floods, fires, or other calamities.

This information can be fed to the insureds in advance. Parametric insurance products that offer pre-specified payouts based upon a trigger are gaining traction in recent times. We believe that a combination of blockchain- and NC-based real-time event detection is superior to existing parametric claims processing mechanisms.

image

Figure 1: BFSI use cases that can benefit from neuromorphic computing

Time series data analysis is crucial for capital market firms for functions such as stock prices prediction, asset value fluctuation, derivative pricing, asset allocation, fraud detection, and high frequency trading. It requires learning and predicting patterns over a time period, where early experiments have found SNNs to be better than existing alternatives, especially for predicting future data points. NC can benefit each of these scenarios, but the actual gain will have to be evaluated on a case-by-case basis, depending on the number of model parameters, input datasets, the need for real-time predictions, and lower latency.

The most important benefit of NC will be in reducing the carbon footprint, especially as sustainability has become a boardroom agenda for BFSI firms, with the industry making net-zero commitments following the Paris agreement. With its key characteristic of lower power consumption, NC adoption will emerge as a priority for BFSI organizations given their reliance on IT infrastructure and ML applications, which contribute to higher emissions. As the integration of speech, video, images, generative AI, and facial recognition technologies into BFSI applications increases, reimagining the entire ML lifecycle from a sustainability perspective will become imperative. In early trials, NC has proved to be significantly more energy efficient while achieving accuracy that is comparable with DL models on a standard CPU or GPU. The limitations of existing models such as the need for multiple training cycles, hundreds of training examples, massive number crunching, and retraining due to information changes make the learning and inference process energy- and effort-intensive. NC can help overcome these challenges and accelerate green IT efforts.

In addition to reducing the carbon footprint, protecting property and communities from damage induced by climate change is also high on the regulatory agenda. For instance, to address wildfire risk intensified by climate change, the California Department of Insurance has issued ‘Safer From Wildfires’, a new insurance framework, which recommends actions that insurers should consider to mitigate their impact on communities. In our view, NC can help insurers enable the real-time audit of a slew of mitigation actions and features like Class-A fire rated roof, ember- and fire-resistant vents, and defensible space compliance.

Digital ecosystems are slowly but surely gaining traction in the BFSI industry as banks and insurers look for innovative business models to pursue new value streams and steal a march over the competition. Initiatives such as embedded lending, embedded investing, connected wellness, KYC automation, and parametric insurance will continue to push the boundaries of security and privacy. Existing techniques rely on pre-trained data sets and perform post-facto analysis to detect security breaches. NC can improve monitoring by detecting a new threat seconds before it evolves into a security ‘event.’ NC can enhance the in-situ processing of biometrics data in know your customer (KYC) verification and ensure that data from wearables is encrypted before it is sent over a network.

Digital banking transactions on smartphones can be monitored in real time and instant action can be taken to prevent a breach when anomalous patterns are detected.

WHAT LIES AHEAD
In our view, BFSI firms should adopt a use case-centric approach to NC adoption to understand the advantages it can bring to existing AI and ML deployments.
And the advantages span a wide spectrum – from providing real-time insights in a connected insurance ecosystem to instantly detecting anomalous user behavior in digital banking transactions or running specific time-sensitive calculations in capital markets. We believe that it will be advantageous for BFSI firms to identify specific use cases that can significantly benefit from NC and run early proofs of concepts to evaluate its transformational potential.

However, a word of caution: not all BFSI AI and ML use cases will gain from NC, and a careful analysis of the nature of the use case, latency, and the expected outcomes is key. We envisage the co-existence of traditional CPUs and/or GPUs, neural hardware and TPUs, as well as neuromorphic platforms. Having said that, we expect NC – with its ability to enhance customer experience, facilitate early risk detection, deliver inferences in real time, and lower carbon footprint – to emerge as the natural choice for the BFSI industry. We believe that BFSI firms must stay abreast of the evolution of NC and its potential applications in the industry—once the technology matures, quick action will be necessary to gain a lead.

Sukriti Jalali​

Sukriti Jalali is a principal consultant and thought leader in TCS’ Banking, Financial Services, and Insurance (BFSI) business unit. She is passionate about technology-enabled business transformation and helping customers achieve their growth and transformation objectives. Sukriti has presented at various industry forums and regularly publishes thought papers on digital transformation, IoT, a
 
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rgupta

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Just on thought getting into my mind especially when the sp is so much beaten down. Is not it a good idea for brn to issue 5-10% shares to a strategist investor who can help us to fight with our mighty rivals.
There are more than one benefit
1. The company balance sheet will be in green.
2. Market takes brn seriously as there will no need to raise money.
3. The strategic partner can help us commercialise our product much faster.
I assume it will be a win win for holders and strategic partner as the prices will start bouncing back.
Just an idea.
 
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Xray1

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JDelekto ...........

I too also totally agree with this concerning comment of yours........

"Most annoying thing in the back of my mind is all these handy partnerships developing various things with us and I trust they not just piggybacking and cherry picking bits of knowledge to further themselves along some parallel internal dev program or gain some insight for a diff tangent and process."

IMO, It is really something the Co and we s/holders should all be well aware of and be vigilant on who, how, when and where our technology IP ends up ... I would hate to see our supposed "3 year Lead" eaten away by supposed partnership and ecosystems who's only interest is to further their own developemental and financial agenda's.
 
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Whilst the authors article is Dec 22 his reference to the space hookup by BRN is a little dated and could obviously include some newer example partnerships but hey, it will do.

He mentions Voyager Space releasing its IP Exchange Platform recently and couldn't find anything re Akida, BRN or Neuromorphic however I see they are also into SDR, digital systems and cubesats etc...some areas we also have links to :unsure:




Don’t reinvent the wheel – look to license in technology​

Article | December 30, 2022​


One of the most exciting developments in recent years is the rapid and accelerating commercialisation of space which has a seen a transition away from government-led projects towards private enterprise.

The technological requirements for performing activities in space means that research and development (R&D) costs in developing technology for space exploration and utilisation are high. With high R&D costs, it is imperative that companies correctly apportion R&D budgets as developing technologies that already exist and fit for purpose is inefficient. However, such an approach applies to all R&D budgets and not only to those directed to highly technical programs.

One way to develop more efficient R&D programs is to look at the patent system and license in technology that complements a company’s R&D programs. Licensing in technology can plug R&D knowledge and technology gaps, reducing time and expenditure on in-house technology development.

Without knowing where to look, finding technology partners to license in technology can be overwhelming. To help ease some of this burden, intellectual property exchange platforms can be a useful resource. An intellectual property exchange platform acts as a repository of patents that their owners want to licensed out or sell. By using an intellectual property exchange platform, buyers and sellers can expand their current intellectual property portfolios or realise value from underutilised segments of their own portfolios. This can help to free up budgets tied to maintenance fees for dormant patents. Buyers can also acquire existing intellectual property to help avoid or reduce infringement risks.

Until recently, the commercial space industry was dominated by a small number of large companies. However, recently many space companies have been founded and funded. When these space companies started out, many faced an uphill battle around R&D programs and were often unable to compete when it came to building and maintaining patent portfolios.

The use of intellectual property exchange platforms is not new, yet there had been none dedicated to space-related technology. To plug this gap, Voyager Space Holdings has recently released its IP Exchange platform. The IP Exchange should help space companies and entrepreneurs develop more efficient R&D programs and also the opportunity to work alongside others to pioneer new technologies.

BrainChip Holdings is an example of the benefits of securing a patent license agreement. BrianChip Holdings is a global technology company that has developed an advanced neural networking processor that furthers artificial intelligence in a way that existing technologies cannot. As a fledgling company for nearly four years, it recently had a key patent portfolio granted in the US, which led to a collaboration with US-based VORAGO Technologies to provide early access to its Akida neuromorphic processor to support a phase I NASA program for a neuromorphic processor that meets space flight requirements. This led to Brainchip Holdings share price urging 136% since the collaboration was announced.

The value that can be extracted from a patent, whether it be exploiting, licensing, or selling, depends, in part, from the scope of protection afforded by the patent.

The catch with protecting space-related technology is that space law can change the way existing intellectual property protection strategies need to be used. In effect, it requires a fresh look at how IP laws are used to protect space-related activities.

The IP Exchange program is a useful tool to help emerging companies develop and commercialise space technology, but it is important for companies considering using such exchange platforms to ensure that the scope of protection takes into consideration the issues of space law. If not, the value that can be extracted from potential licensees and potential buyers may be reduced. Similarly, those looking to license in or buy space-related technology should ensure that the royalty rate or purchase price is commensurate with the scope of protection when the patent is viewed from the context of space law.

The use of the IP Exchange and similar platforms should only help to accelerate the commercialisation of space. However, those looking to use such platforms should take into consideration the murky interaction of space law and IP laws.

AUTHOR​

SP-512x512-1-96x96.jpg

Stefan Paterson​

Principal | Patent & Trade Mark Attorney​

Linkedin-in
 
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JDelekto ...........

I too also totally agree with this concerning comment of yours........

"Most annoying thing in the back of my mind is all these handy partnerships developing various things with us and I trust they not just piggybacking and cherry picking bits of knowledge to further themselves along some parallel internal dev program or gain some insight for a diff tangent and process."

IMO, It is really something the Co and we s/holders should all be well aware of and be vigilant on who, how, when and where our technology IP ends up ... I would hate to see our supposed "3 year Lead" eaten away by supposed partnership and ecosystems who's only interest is to further their own developemental and financial agenda's.
I'll agree seeing it was my thoughts :LOL:
 
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Seriously had zero idea that it was illegal.
And honestly it shouldn't be.
 
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HopalongPetrovski

I'm Spartacus!
I done several wash trades many moons ago, back then I had no idea what a wash trade was ,I just crystalized the losses on a few stocks sold and bought back them all within a couple of minutes.
Had no contact from ATO but that was around 20 yrs ago.

"Knock, knock, knock !!!"
Ello, hello, ello!
What have we 'ere then...... whose a pretty boy.....

 
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Diogenese

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View attachment 39064
Hi Ill,

TDK use memristors for analog SNN:

US2022130900A1 ARITHMETIC OPERATION CIRCUIT AND NEUROMORPHIC DEVICE



1688100540365.png




[0002] For the purpose of improvement of power performance of neuromorphic devices that perform arithmetic operations using a neural network, nervous system models have been studied and developed. Examples of such a nervous system model include a spiking neural network (SNN) and the like.

[0003] As a method for realizing a spiking neural network, a method using a variable resistance element of a two-terminal type is known (for example, see Patent Literature 1). Here, the variable resistance element is an element of a two-terminal type capable of changing the resistance and is, for example, a resistive random access memory (ReRAM) or the like.
 
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GStocks123

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Renesas presenting their Next Gen AI accelerator 28/6/23



 

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miaeffect

Oat latte lover
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Iseki

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Turn turn turn
540 buyers for 12,558,307 units
391 sellers for 6,961,718 units
 
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Boab

I wish I could paint like Vincent
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Tothemoon24

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Renesas !​

Bring it on

How to Maximize the Lifespan of Electric Motors​

Image
Suad Jusuf

Suad Jusuf
Senior Manager



Published: June 29, 2023
Anomaly Detection, Condition Monitoring and Predictive Maintenance – What are they and why you should use them?
Let me begin with the overall picture of electric motors first. We all know that electric motors are an essential component of many industrial and commercial systems. From large manufacturing plants, transportation and healthcare to household appliances, they do play a critical role in various industries. As we can imagine, these applications rely heavily on the smooth and efficient operation of electric motors, which are essential components in these systems. The demand for efficiency and productivity continues to grow and the importance of maintaining these motors has become increasingly crucial. However, electric motors can experience various issues that can impact their performance, efficiency, and longevity. This is where anomaly detection, condition monitoring, and predictive maintenance come into play as three critical practices that help ensure the safe and efficient operation of electric motor-driven applications.
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Anomaly Detection, Condition Monitoring and Predictive Maintenance

What are these critical practices and techniques and how can we distinguish between them?
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Anomaly Detection
First let’s define our terminology:
Anomaly Detection – is the process of identifying deviations from expected behavior or patterns. In the context of electric motor-driven applications, anomalies can manifest as a sudden change in operating conditions, such as abnormal vibrations, temperature spikes, or power consumption. These changes can indicate the presence of underlying problems, such as worn-out bearings or faulty wiring, which, if not addressed, can lead to more severe damage or even motor failure.
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Condition Monitoring
Condition Monitoring – is an ongoing process of collecting and analyzing data on the health and performance of electric motors. By regularly monitoring key performance indicators such as temperature, vibration, and power consumption, ML (machine learning) models can detect subtle changes in motor behavior that may indicate the presence of developing problems. With this information, maintenance technicians can take preventative measures, such as lubrication, cleaning, or repairs, before the issue escalates into a significant problem.
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Predictive Maintenance
Predictive Maintenance – takes condition monitoring one step further by using advanced analytics and machine learning algorithms to predict when maintenance will be needed.
By analyzing historical data on motor performance and comparing it to real-time sensor readings, predictive maintenance systems can detect anomalies and predict when critical components such as bearings or shafts are likely to fail. With this information, maintenance teams can schedule repairs or replacements proactively, minimizing downtime and maximizing the lifespan of the motor.
So, what’s needed to enable one of these techniques?
The answer to this question requires first, the understanding and identification of the system states to be monitored. Second, we need to identify the best information to be used to detect these states. Third, data and data analysis. By analyzing the data, we can classify data patterns, value combinations, or conditions, enabling the indication between normal and atypical modes of behavior and the definition of the anomaly case with a dedicated best fit machine learning model.
The following ingredients are needed:
  1. Sensors – Appropriate sensors must be installed in the motor system to collect data on various parameters such as vibration, temperature, current, pressure, magnetic fields, and others, depending on the specific application.
  2. Data acquisition system – Data from the sensors must be acquired and stored in a database or cloud platform. A data acquisition system is typically used to collect, process, and store the sensor data you’ll need to analyze and use for development and training of a machine learning model. The RealityCheck™ Motor toolbox was developed specially for this purpose. Figure 1 depicts the typical block diagram involving RealityCheck Motor within the process and data path flow.
  3. Data processing, analysis, and ML model development – Now we need to analyze the sensor data and identify anomalies or patterns that may indicate potential issues. Based on the data analysis outcome, RealityAI Tools® automatically do this using a variety of methods for feature discovery and model selection.
To understand our machine learning tools more fully and how they can be applied to your data, please visit the Reality AI software page for additional details and use case examples.
But I need to reduce BoM and save costs. How about a sensor-less approach?
The answer is simply yes. A sensor-less approach can provide additional benefits in this context, particularly for applications that may not have sensors built-in for monitoring performance parameters. Sensor-less approaches use ML models to estimate motor performance based on other available data, such as current draw or voltage which are already used in the motor control algorithm. For more information on how and why to use Reality AI Tools with the RealityCheck Motor toolbox, watch the Sensorless Predictive Maintenance for Electric Motor Systems video.
Image
Figure 1 – Renesas Development and Data Path system block diagram for anomaly detection, condition monitoring and predictive maintenance

Figure 1 – Renesas Development and Data Path system block diagram for anomaly detection, condition monitoring and predictive maintenance
OK, so what’s the deal with RealityCheck Motor?
RealityCheck Motor is an add-on software toolbox that enables anomaly detection, conditional monitoring, and predictive maintenance functionality without requiring implementation of additional sensors. This means that the electrical signals and parameters already available in the motor can be used from the motor control process as a proxy for other sensors. Using readily available information, RealityCheck Motor enables the collection of minute changes in system parameters that are indicative of anomalies and maintenance issues. It is designed to work seamlessly with Renesas MCUs, MPUs, and motor driven applications, enabling hardware optimization and the creation of machine learning models. This software toolbox along with Reality AI Tools software, provides a low-code automated machine learning platform for creating, validating, and deploying sensor classification or prediction models at scale in the targeted Renesas embedded devices of your choice.
In a nutshell, RealityCheck Motor is the perfect toolbox and add-on functionality for anyone looking to optimize their motor systems by implementing machine learning capabilities to ensure maximum efficiency and uptime.
In conclusion, electric motors are a crucial part of many industrial and commercial applications and their efficient operation is essential to maintaining productivity and reducing costs. By implementing anomaly detection, condition monitoring and predictive maintenance strategies, businesses can ensure that their motors remain in optimal condition, reducing the risk of downtime and costly repairs and extending the lifespan of their equipment. Visit the RealityCheck Motor page to see how it simplifies this process within the context of your motor control algorithm development.
For more information on real-time analytics and non-visual sensing for anomaly detection and the full suite of Reality AI software solutions from Renesas, check out renesas.com/realityai.
 
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Frangipani

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And what happened to the TSE member HE Pennypacker?

Being new to the world of Seinfeld, its characters and their aliases, it took me a while to figure out why, of all TSE members, you would specifically ask me about @H.E. Pennypacker ’s whereabouts - but as you can see below, I found another puzzle piece (all by myself, I would like to add).

So let me take a more educated guess, then: He is either still looking for a bathroom (his bladder will definitely make it into the Guinness Book of World Records!), was arrested for breaking a price gun and stealing dozens of desiccant sachets from merchandise in a NYC ethnic clothing store, derailed with his DIY roller coaster or ended up opening a lucrative silver mine in Peru after all.

Possibly he is the alter ego of someone else on TSE.
But then maybe not, and he simply got moderated and temporarily banned for being too vocal in his displeasure over the Oct 22 4C results or was even found out as having ulterior motives? Or he just can’t be bothered to post any longer?
End of speculation. The only thing I can say for sure is that he is still among us as a silent reader. Whether he is not allowed to post or chooses not to, I cannot say.


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Speaking of noms de plume, I am still waiting for an answer to my question. Let me rephrase it then:

Hey @Blind Freddie, why are you posing as @Richie Rich these days?


F5523FA6-3654-4330-A4E4-6304EEB16F6A.jpeg


And as you obviously know your Seinfeld episodes, you better distance yourself from a certain Todd Gack (anyone heard of him lately, by the way?), so the forum readers won’t infer I ended up joining the wrong dots, and that in reality it is you rather than a certain Fool doing all that downramping on LinkedIn to scoop up even more BRN shares. 😂
 
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Easytiger

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Mt09

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Renesas presenting their Next Gen AI accelerator 28/6/23




DRP Ai = not Brainchip
 
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