BRN Discussion Ongoing

Maybe our resident verification engineer @chapman89 might want to connect (as is his skill) with this guy and let him know that Akida is available in relation to the last paragraph ;)


Predictive networking promises to faster fixes​

Predictive network technology promises to find and fix problems faster.​


John Edwards By John Edwards
Contributing writer, Network World | 27 MARCH 2023 18:00 SGT

Conceptual trend lines track + monitor data analytics [forecasting / future / what's next]



With the assistance of artificial intelligence (AI) and machine learning (ML), predictive network technology alerts administrators to possible network issues as early as possible and offers potential solutions.

The AI and ML algorithms used in predictive network technology have become critical, says Bob Hersch, a principal with Deloitte Consulting and US lead for platforms and infrastructure. "Predictive network technology leverages artificial neural networks and utilizes models to analyze data, learn patterns, and make predictions," he says. "AI and ML significantly enhance observability, application visibility, and the ability to respond to network and other issues."

While predictive network technology has made impressive strides over the past several years, many developers and observers are confident that the best is yet to come. "Tools and systems are available now, but like most significant evolutions in technology there are risks for the early adopters, as development and even how to assess the effectiveness of a shift are in flight," says David Lessin, a director at technology research and advisory firm ISG.

Predictive analytics is no longer just for predicting network outages and proactively handling problems of bandwidth and application performance, says Yaakov Shapiro, CTO at telecommunications software and services provider Tangoe. "Predictive analytics are now being applied to problems surrounding the network and helping to address the downsides of SD-WAN, most notably the issue of provider sprawl and the need for wider carrier-service management and telecom-cost optimization," he says. "These have become larger issues in the age of trading MPLS—one- and two-carrier services—for broadband services comprising potentially hundreds of internet service providers."

AI is moving predictive networking forward.​

The most recent evolution of AI is the most important development in predictive network technology. "Cloud-based AI technologies can improve the quality and speed of information delivered to network technicians while giving them a valuable tool to investigate outages and other issues," says Patrick MeLampy, a Juniper Networks fellow. "AI can detect anomalies quicker than humans and can even analyze the root cause of an anomaly, helping to guide a technician to understand and repair the issue faster than before."

The integration of AI tools into predictive network technology also has the potential to be an economic game-changer. "With mature AI and ML tools at their disposal, service providers and organizations alike can reduce the costs of problem discovery and resolution," MeLampy says. In addition to bottom-line economic benefits, AI helps to simplify management, either within an enterprise or across a service provider's portfolio. "Mean-time-to repair is decreased, improving end user satisfaction as well," he says.

Bryan Woodworth, principal solutions strategist at multicloud network technology firm Aviatrix, says that predictive network technology will advance rapidly over the next few years. It already helps resolve network issues quickly and efficiently. "AI can correlate alerts and error conditions across many disparate systems, discovering related patterns in minutes or even seconds, something that would take humans hours or days,” he says.

Predictive network technology can also drastically decrease the number of false positives tucked into log and error analyses, leading to more intelligent and useful alerts, Woodworth says. "You can't heal from something you don't detect," he says. "For example, before you change the network to route around a problem, you must know where that problem is." Self-healing networks based on AI and ML provide better recommendations on how to recover from errors and avoid outages.

Predictive modeling works best in data centers.​

Network behavior analytics examines network data, such as ports, protocols, performance, and geo-IP data, to alert whenever there's been a significant change in network behavior that might indicate a threat. "In the future, this data can be fed into an AI model that can help confirm if the threat is real, and then make suggestions on how to remediate the issue by changing the network," Woodworth says. "This kind of predictive modeling works best within private networks, like the data center, because [that's where] humans have complete control over all the networking components and the data they generate."

For public networks, including those connected to the internet, the task becomes more challenging. Learning models must be designed to compensate for systems that aren't under direct control or provide incomplete data sets. This means that learning models will make less accurate predictions and may need to be tuned by humans to compensate for the missing data, Woodworth says.

To be fully effective, advanced AI and ML models should run at production level and scale for error remediation, Smith says. "Decision-makers need to trust modeling results, and technology sponsors need to execute operations efficiently," he says.

Meanwhile, ongoing advances in cloud technology and graphics processing units (GPUs) are taking modeling to new levels. "Open source and commercial frameworks are helping organizations deploy ML operations rapidly and at-scale with less risk associated with the time and complexity required to configure cloud and open source systems for AI," says Maggie Smith, managing director, applied intelligence, at consulting firm Accenture Federal Services.

Smith says that several major cloud providers have already implemented AI model optimization and management features. The technology can be found in in tools such as Amazon SageMaker, Google AI Platform, and Azure Machine Learning Studio. "Open-source frameworks like TensorRT, and Hugging Face retrain additional opportunities for model monitoring and efficiencies," Smith says.

Predictive networking analyzes cloud and edge workloads.​

Big picture, predictive AI-based networking is not as much about the network as it is about cloud workloads, edge delivery, and user endpoint devices, such as laptop computers and mobile devices. "By understanding workloads—the network traffic they generate, latency requirements, and who is consuming data how and where—the high-fidelity data needed for predictive networking can be identified to support the automatic adaptation of virtual private clouds (VPCs)," says Curt Aubley, risk and financial advisory managing director, and US cyber detect-and-respond leader at business advisory firm Deloitte.

Micro segmentation, load balancers, and traffic shapers are all helping to optimize delivery. "The same high-fidelity data used for network-focused AI can also be used to complement cyber-security teams' consolidated extended detection and response data lakes for security analytics,” Aubley says. AI models are used to detect anomalies, unknown unknowns, and lateral movement. "Using the same high-fidelity data from cloud workloads, networks, and endpoints for different use cases can help ensure confidentiality, integrity, and the availability of applications needed for business or government cyber risk management."

Routers, wireless applications, switches, and various other general networking gear don't typically collect user-specific data. While application-performance monitoring tools do measure user data, they can't correlate results into proactive network actions. "Networks must become user and application aware in order to collect the types of data necessary to build actionable models for the use of AI and predictive technologies," MeLampy says. "If a solution doesn't measure experience per user, it isn't going to be successful.”

Prescriptive analytics is the future.​

The emerging field of neuromorphic computing, based on a chip architecture that's engineered to mimic human brain structure, promises to provide highly effective ML on edge devices. "Predictive network technology is so powerful because of its ability to intake signals and make accurate predictions about equipment failures to optimize maintenance," says Gil Dror, CTO at monitoring technology provider SmartSense. He says that neuromorphic computing will become even more powerful when it moves from predictive to prescriptive analytics, which recommends what should be done to ensure future outcomes.

Neuromorphic computing's chip architecture is geared toward making intelligent decisions on edge devices themselves, Dror says. "The combination of these two technologies will make the field of predictive network technology much more powerful," he says.
Organizations including IBM, Intel, and Qualcomm are developing neuromorphic computing technologies. "Some companies have released neuromorphic computing chips for research-and-development purposes, such as IBM's TrueNorth chip and Intel's Loihi chip," Dror says. These chips aren't yet generally available for commercial use, and it's likely that there will be at least several more years of intense research and development before neuromorphic computing becomes a mainstream technology.
"Once it becomes viable, the impact will be massive," he predicts.
 
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0DAC1AFD-199D-4427-99F1-19C87EBDE2C3.jpeg
 
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Maybe our resident verification engineer @chapman89 might want to connect (as is his skill) with this guy and let him know that Akida is available in relation to the last paragraph ;)


Predictive networking promises to faster fixes​

Predictive network technology promises to find and fix problems faster.​


John Edwards By John Edwards
Contributing writer, Network World | 27 MARCH 2023 18:00 SGT

Conceptual trend lines track + monitor data analytics [forecasting / future / what's next]'s next]



With the assistance of artificial intelligence (AI) and machine learning (ML), predictive network technology alerts administrators to possible network issues as early as possible and offers potential solutions.

The AI and ML algorithms used in predictive network technology have become critical, says Bob Hersch, a principal with Deloitte Consulting and US lead for platforms and infrastructure. "Predictive network technology leverages artificial neural networks and utilizes models to analyze data, learn patterns, and make predictions," he says. "AI and ML significantly enhance observability, application visibility, and the ability to respond to network and other issues."

While predictive network technology has made impressive strides over the past several years, many developers and observers are confident that the best is yet to come. "Tools and systems are available now, but like most significant evolutions in technology there are risks for the early adopters, as development and even how to assess the effectiveness of a shift are in flight," says David Lessin, a director at technology research and advisory firm ISG.

Predictive analytics is no longer just for predicting network outages and proactively handling problems of bandwidth and application performance, says Yaakov Shapiro, CTO at telecommunications software and services provider Tangoe. "Predictive analytics are now being applied to problems surrounding the network and helping to address the downsides of SD-WAN, most notably the issue of provider sprawl and the need for wider carrier-service management and telecom-cost optimization," he says. "These have become larger issues in the age of trading MPLS—one- and two-carrier services—for broadband services comprising potentially hundreds of internet service providers."

AI is moving predictive networking forward.​

The most recent evolution of AI is the most important development in predictive network technology. "Cloud-based AI technologies can improve the quality and speed of information delivered to network technicians while giving them a valuable tool to investigate outages and other issues," says Patrick MeLampy, a Juniper Networks fellow. "AI can detect anomalies quicker than humans and can even analyze the root cause of an anomaly, helping to guide a technician to understand and repair the issue faster than before."

The integration of AI tools into predictive network technology also has the potential to be an economic game-changer. "With mature AI and ML tools at their disposal, service providers and organizations alike can reduce the costs of problem discovery and resolution," MeLampy says. In addition to bottom-line economic benefits, AI helps to simplify management, either within an enterprise or across a service provider's portfolio. "Mean-time-to repair is decreased, improving end user satisfaction as well," he says.

Bryan Woodworth, principal solutions strategist at multicloud network technology firm Aviatrix, says that predictive network technology will advance rapidly over the next few years. It already helps resolve network issues quickly and efficiently. "AI can correlate alerts and error conditions across many disparate systems, discovering related patterns in minutes or even seconds, something that would take humans hours or days,” he says.

Predictive network technology can also drastically decrease the number of false positives tucked into log and error analyses, leading to more intelligent and useful alerts, Woodworth says. "You can't heal from something you don't detect," he says. "For example, before you change the network to route around a problem, you must know where that problem is." Self-healing networks based on AI and ML provide better recommendations on how to recover from errors and avoid outages.

Predictive modeling works best in data centers.​

Network behavior analytics examines network data, such as ports, protocols, performance, and geo-IP data, to alert whenever there's been a significant change in network behavior that might indicate a threat. "In the future, this data can be fed into an AI model that can help confirm if the threat is real, and then make suggestions on how to remediate the issue by changing the network," Woodworth says. "This kind of predictive modeling works best within private networks, like the data center, because [that's where] humans have complete control over all the networking components and the data they generate."

For public networks, including those connected to the internet, the task becomes more challenging. Learning models must be designed to compensate for systems that aren't under direct control or provide incomplete data sets. This means that learning models will make less accurate predictions and may need to be tuned by humans to compensate for the missing data, Woodworth says.

To be fully effective, advanced AI and ML models should run at production level and scale for error remediation, Smith says. "Decision-makers need to trust modeling results, and technology sponsors need to execute operations efficiently," he says.

Meanwhile, ongoing advances in cloud technology and graphics processing units (GPUs) are taking modeling to new levels. "Open source and commercial frameworks are helping organizations deploy ML operations rapidly and at-scale with less risk associated with the time and complexity required to configure cloud and open source systems for AI," says Maggie Smith, managing director, applied intelligence, at consulting firm Accenture Federal Services.

Smith says that several major cloud providers have already implemented AI model optimization and management features. The technology can be found in in tools such as Amazon SageMaker, Google AI Platform, and Azure Machine Learning Studio. "Open-source frameworks like TensorRT, and Hugging Face retrain additional opportunities for model monitoring and efficiencies," Smith says.

Predictive networking analyzes cloud and edge workloads.​

Big picture, predictive AI-based networking is not as much about the network as it is about cloud workloads, edge delivery, and user endpoint devices, such as laptop computers and mobile devices. "By understanding workloads—the network traffic they generate, latency requirements, and who is consuming data how and where—the high-fidelity data needed for predictive networking can be identified to support the automatic adaptation of virtual private clouds (VPCs)," says Curt Aubley, risk and financial advisory managing director, and US cyber detect-and-respond leader at business advisory firm Deloitte.

Micro segmentation, load balancers, and traffic shapers are all helping to optimize delivery. "The same high-fidelity data used for network-focused AI can also be used to complement cyber-security teams' consolidated extended detection and response data lakes for security analytics,” Aubley says. AI models are used to detect anomalies, unknown unknowns, and lateral movement. "Using the same high-fidelity data from cloud workloads, networks, and endpoints for different use cases can help ensure confidentiality, integrity, and the availability of applications needed for business or government cyber risk management."

Routers, wireless applications, switches, and various other general networking gear don't typically collect user-specific data. While application-performance monitoring tools do measure user data, they can't correlate results into proactive network actions. "Networks must become user and application aware in order to collect the types of data necessary to build actionable models for the use of AI and predictive technologies," MeLampy says. "If a solution doesn't measure experience per user, it isn't going to be successful.”

Prescriptive analytics is the future.​

The emerging field of neuromorphic computing, based on a chip architecture that's engineered to mimic human brain structure, promises to provide highly effective ML on edge devices. "Predictive network technology is so powerful because of its ability to intake signals and make accurate predictions about equipment failures to optimize maintenance," says Gil Dror, CTO at monitoring technology provider SmartSense. He says that neuromorphic computing will become even more powerful when it moves from predictive to prescriptive analytics, which recommends what should be done to ensure future outcomes.

Neuromorphic computing's chip architecture is geared toward making intelligent decisions on edge devices themselves, Dror says. "The combination of these two technologies will make the field of predictive network technology much more powerful," he says.
Organizations including IBM, Intel, and Qualcomm are developing neuromorphic computing technologies. "Some companies have released neuromorphic computing chips for research-and-development purposes, such as IBM's TrueNorth chip and Intel's Loihi chip," Dror says. These chips aren't yet generally available for commercial use, and it's likely that there will be at least several more years of intense research and development before neuromorphic computing becomes a mainstream technology.
"Once it becomes viable, the impact will be massive," he predicts.
He got this bit right:

“the impact will be massive”😂🤣😂🤣🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁🪁

My opinion only DYOR
FF

AKIDA BALLISTA
 
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VictorG

Member
The sell side is rather thin however there is a little resistance at the $3.45 mark.

resistance.PNG
 
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Diogenese

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Vladsblood

Regular
Good morning,

Great to see that we are receiving more exposure, Akida IP 2nd Gen now being recognized as a real winner among our peers !

My neighbor who attended the embedded conference in Germany said it was a massive event, winning this award will pull more
clients into our IP world, congratulations Peter, Anil and the entire Brainchip family.

I asked a certain someone if they would be attending the AGM in May this year, but not to be, for all the right reasons.

Work ethic says it all

"I am too busy with next generation work on the AKIDA IP, it almost take a full week away that I cant afford at this stage"

Proud to be associated with staff of this quality, who are ultimately working hard for the benefit of all.

Love Brainchip x

Tech 🥰
Fantastic real world validation in the far edge communities universe.
I’m just wondering how twatly fools will try to drag down this highly sought after prestigious award Also adding in their buddies at a certain couple of rags LOL Brainchip Team as you have received what you deserve for your work and ethics.
Glad 😃 to be an investor in the new revolutionary and…“Future..Nasdaq Leading” company Brainchip who have pushed humanity past A1’s Far Edge And into a whole new Universe of Technological advances and opportunities for us humanoids to survive in and thrive in!! $$$. Cheers to us all and thank you 🙏 Peter Van Der Made and team. Vlad.
 
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Fantastic real world validation in the far edge communities universe.
I’m just wondering how twatly fools will try to drag down this highly sought after prestigious award Also adding in their buddies at a certain couple of rags LOL Brainchip Team as you have received what you deserve for your work and ethics.
Glad 😃 to be an investor in the new revolutionary and…“Future..Nasdaq Leading” company Brainchip who have pushed humanity past A1’s Far Edge And into a whole new Universe of Technological advances and opportunities for us humanoids to survive in and thrive in!! $$$. Cheers to us all and thank you 🙏 Peter Van Der Made and team. Vlad.
Not sure how you get nominated but considering it was for IP you would think the likes of Arm would be a contender and if that was the case, not a bad coup.

SC
 
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equanimous

Norse clairvoyant shapeshifter goddess
Many years ago there was a big kerfuffle about cost rippoffs in NASA.

One of the examples was a $600 screwdriver.
And that was just for the left handed screwdriver
 
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Diogenese

Top 20
Anyone else notice that Amazon Web Services were a nominee for an Embeddy Award 2023:

AWS IoT Core for Amazon Sidewalk​


Exhibitor: AWS

Hall/Booth: 4/4-550


Due to the high connectivity cost, power consumption, or limited range and coverage of existing networks, innovation of IoT solutions from developers has historically been limited, which has resulted in narrow availability for end users. While cellular companies have wide network coverage, the higher cost of this coverage reduces the feasibility of many use cases.

Other technologies (e.g. LoRaWAN) that offer low-cost and high-power solutions don’t provide the necessary network coverage or security. Similarly, technologies like WiFi, BLE, Thread, ZigBee, and Z-Wave are well-established smart home solutions, but fall short due to limited range when connectivity is required beyond the home.

Today, IoT devices drop off the internet at astonishingly high rates and frequently never get reconnected, which in turn drives reliability and performance issues for IoT products in the field.

Amazon Sidewalk is a shared network that helps devices like the Amazon Echo, Ring security cameras, and motion sensors work better at home and beyond the front door. When enabled, the network can support other Sidewalk devices in your community, and can be used for applications such as sensing your environment and alerting you when there's a water leak.

Amazon Sidewalk provides redundant coverage for many devices on the network. Therefore, when a Sidewalk device becomes disconnected from one gateway, it can re-establish connectivity by automatically connecting to another available gateway; no intervention is required of end-user. The typical range for many Amazon Sidewalk bridges is one half mile/one kilometer. AWS IoT Core for Amazon Sidewalk provides cloud services that you can use to connect the Sidewalk devices to the AWS Cloud and use other AWS services.

With AWS IoT Core for Amazon Sidewalk, you can build intelligent applications that are capable of increasing the efficiencies across all types of facilities. Sidewalk-enabled sensors can be deployed across buildings, cities, or other types of infrastructure to monitor and control smart systems. With instant connect capabilities, these Sidewalk-enabled devices can simply ‘power-on’ and immediately begin sending data to the cloud. No complex app setup or on-boarding flow required.

Anyone else notice that Amazon Web Services were a nominee for an Embeddy Award 2023:

AWS IoT Core for Amazon Sidewalk​


Exhibitor: AWS

Hall/Booth: 4/4-550


Due to the high connectivity cost, power consumption, or limited range and coverage of existing networks, innovation of IoT solutions from developers has historically been limited, which has resulted in narrow availability for end users. While cellular companies have wide network coverage, the higher cost of this coverage reduces the feasibility of many use cases.

Other technologies (e.g. LoRaWAN) that offer low-cost and high-power solutions don’t provide the necessary network coverage or security. Similarly, technologies like WiFi, BLE, Thread, ZigBee, and Z-Wave are well-established smart home solutions, but fall short due to limited range when connectivity is required beyond the home.

Today, IoT devices drop off the internet at astonishingly high rates and frequently never get reconnected, which in turn drives reliability and performance issues for IoT products in the field.

Amazon Sidewalk is a shared network that helps devices like the Amazon Echo, Ring security cameras, and motion sensors work better at home and beyond the front door. When enabled, the network can support other Sidewalk devices in your community, and can be used for applications such as sensing your environment and alerting you when there's a water leak.

Amazon Sidewalk provides redundant coverage for many devices on the network. Therefore, when a Sidewalk device becomes disconnected from one gateway, it can re-establish connectivity by automatically connecting to another available gateway; no intervention is required of end-user. The typical range for many Amazon Sidewalk bridges is one half mile/one kilometer. AWS IoT Core for Amazon Sidewalk provides cloud services that you can use to connect the Sidewalk devices to the AWS Cloud and use other AWS services.

With AWS IoT Core for Amazon Sidewalk, you can build intelligent applications that are capable of increasing the efficiencies across all types of facilities. Sidewalk-enabled sensors can be deployed across buildings, cities, or other types of infrastructure to monitor and control smart systems. With instant connect capabilities, these Sidewalk-enabled devices can simply ‘power-on’ and immediately begin sending data to the cloud. No complex app setup or on-boarding flow required.
Morse Micro have been making waves for a few years in the long range WiFi field, so from a purely jingoistic point of view, lets hope thay are supplying Amazon.

https://www.morsemicro.com/2022/12/...now-awards-for-record-third-consecutive-year/

Morse Micro Wins Best Wi-Fi Startup and Best Wi-Fi IoT Product at 2022 Wi-Fi NOW Awards For Record Third Consecutive Year​

For the third consecutive year, Morse Micro has won Best Wi-Fi Startup and Best Wi-Fi IoT Product Awards for its Wi-Fi HaLow 802.11ah solution at the Wi-Fi NOW Awards.
The Wi-Fi NOW awards program honours the best Wi-Fi companies, products and providers impacting today’s Wi-Fi industry worldwide. Both the Best Wi-Fi Startup and the Best Wi-Fi IoT Product awards recognize Wi-Fi products and companies for their innovative contribution to the industry.
The Best Wi-Fi Startup was given to the company that represented the best value proposition in the market today, and the Best Wi-Fi IoT Product was given to the vendor that had created the most value in this segment. The winners were carefully reviewed and selected by a panel of distinguished judges at Wi-Fi NOW, who evaluated award entries based on technical uniqueness, value, application and potential market growth.
Morse Micro’s Wi-Fi HaLow portfolio includes the industry’s smallest, fastest and lowest power IEEE 802.11ah-compliant SoCs and modules, providing 10x the range, 100x the area and 1000x the volume of traditional Wi-Fi solutions.
For more information visit the Wi-Fi NOW website: https://wifinowglobal.com/news-blog...lume-zenfi-networks-morse-micro-win-two-each/
For those who missed it, in September we announced our AU $140m in Series B funding led by MegaChips and in November we raised an additional AU $30m from Australia’s leading superannuation funds and others to bring our total Series B funding to AU $170m. This funding will accelerate IoT connectivity; enhancing our ability to scale and revolutionise our digital future
.


"The typical range for many Amazon Sidewalk bridges is one half mile/one kilometer"


https://www.morsemicro.com/technology/

Features

  • Worldwide unlicensed Sub-1 GHz frequency bands
  • Single Chip supporting 850MHz-950MHz
  • Channel width options of 1/2/4/8 MHz
  • Internal PA with option to use external PA/LNA/FEM
  • Superior Linearity
  • High selectivity
  • Low Out-of-band Transmitter noise

Benefits

  • Longer distance, over 1km
  • Lower energy required
  • Better penetration through material
  • Wider selection of data rates vs. other IoT
  • No monthly fees or service provider account required
  • Superior blocker performance
  • Easy co-existence with different radios, e.g. LTE



They also use sleep/wake modes to save power.
 
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Diogenese

Top 20
There’s a lot going on with Tachyum. They offer SNN for data centres as a licensable IP core but I’m trying to decipher if it’s software or hardware.


Tachyum Prodigy integrates the functionality of CPUs, GPUs and TPUs into a single homogeneous architecture, delivering cutting-edge performance, energy consumption, server utilization, and space efficiency to address the growing demands of AI, HPC, and hyperscale data centers.
If its IP, it's likely to be hardware, otherwise it would be a software licence. Besides, software would just be more lead in the saddlebags.
 
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Diogenese

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HopalongPetrovski

I'm Spartacus!
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Boab

I wish I could paint like Vincent
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jla

Regular
God only knows what a can of striped paint is worth these days! 🤣
When I started my Apprenticeship as a painter I was sent to the paint shop to get a gallon of rainbow paint.
 
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Slade

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Another nice day.
 
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overpup

Regular
Fantastic real world validation in the far edge communities universe.
I’m just wondering how twatly fools will try to drag down this highly sought after prestigious award Also adding in their buddies at a certain couple of rags LOL Brainchip Team as you have received what you deserve for your work and ethics.
Glad 😃 to be an investor in the new revolutionary and…“Future..Nasdaq Leading” company Brainchip who have pushed humanity past A1’s Far Edge And into a whole new Universe of Technological advances and opportunities for us humanoids to survive in and thrive in!! $$$. Cheers to us all and thank you 🙏 Peter Van Der Made and team. Vlad.
speaking of ..those people...

for anyone else bothered by this and doesn't already know - someone showed me how to remove them from my BRN google alerts the other day - just add -site:duh.com.au to end of the alert like in the screenshot.


1680058755693.png
 
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When I started my Apprenticeship as a painter I was sent to the paint shop to get a gallon of rainbow paint.
I thought it only came in ten gallon tins for the trade. 😂🤣😂
 
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jla

Regular
I thought it only came in ten gallon tins for the trade. 😂🤣😂
Only if you had your own tinting machine back then, As large brums came only in white, they were five gallon brums back then in the late 1950's
 
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