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5 Emerging AI And Machine Learning Trends To Watch In 2021 – CRN: Technology news for channel partners and solution providers

Artificial Intelligence and machine learning have been hot topics in 2020 as AI and ML technologies increasingly find their way into everything from advanced quantum computing systems and leading-edge medical diagnostic systems to consumer electronics and smart personal assistants.

Revenue generated by AI hardware, software and services is expected to reach $156.5 billion worldwide this year, according to market researcher IDC, up 12.3 percent from 2019.

But it can be easy to lose sight of the forest for the trees when it comes to trends in the development and use of AI and ML technologies. As we approach the end of a turbulent 2020, heres a big-picture look at five key AI and machine learning trends not just in the types of applications they are finding their way into, but also in how they are being developed and the ways they are being used.

The Growing Role Of AI And Machine Learning In Hyperautomation

Hyperautomation, an IT mega-trend identified by market research firm Gartner, is the idea that most anything within an organization that can be automated such as legacy business processes should be automated. The pandemic has accelerated adoption of the concept, which is also known as digital process automation and intelligent process automation.

AI and machine learning are key components and major drivers of hyperautomation (along with other technologies like robot process automation tools). To be successful hyperautomation initiatives cannot rely on static packaged software. Automated business processes must be able to adapt to changing circumstances and respond to unexpected situations.

Thats where AI, machine learning models and deep learning technology come in, using learning algorithms and models, along with data generated by the automated system, to allow the system to automatically improve over time and respond to changing business processes and requirements. (Deep learning is a subset of machine learning that utilizes neural network algorithms to learn from large volumes of data.)

Bringing Discipline To AI Development Through AI Engineering

Only about 53 percent of AI projects successfully make it from prototype to full production, according to Gartner research. When trying to deploy newly developed AI systems and machine learning models, businesses and organizations often struggle with system maintainability, scalability and governance, and AI initiatives often fail to generate the hoped-for returns.

Businesses and organizations are coming to understand that a robust AI engineering strategy will improve the performance, scalability, interpretability and reliability of AI models and deliver the full value of AI investments, according to Gartners list of Top Strategic Technology Trends for 2021.

Developing a disciplined AI engineering process is key. AI engineering incorporates elements of DataOps, ModelOps and DevOps and makes AI a part of the mainstream DevOps process, rather than a set of specialized and isolated projects, according to Gartner.

Increased Use Of AI For Cybersecurity Applications

Artificial intelligence and machine learning technology is increasingly finding its way into cybersecurity systems for both corporate systems and home security.

Developers of cybersecurity systems are in a never-ending race to update their technology to keep pace with constantly evolving threats from malware, ransomware, DDS attacks and more. AI and machine learning technology can be employed to help identify threats, including variants of earlier threats.

AI-powered cybersecurity tools also can collect data from a companys own transactional systems, communications networks, digital activity and websites, as well as from external public sources, and utilize AI algorithms to recognize patterns and identify threatening activity such as detecting suspicious IP addresses and potential data breaches.

AI use in home security systems today is largely limited to systems integrated with consumer video cameras and intruder alarm systems integrated with a voice assistant, according to research firm IHS Markit. But IHS says AI use will expand to create smart homes where the system learns the ways, habits and preferences of its occupants improving its ability to identify intruders.

The Intersection Of AI/ML and IoT

The Internet of Things has been a fast-growing area in recent years with market researcher Transforma Insights forecasting that the global IoT market will grow to 24.1 billion devices in 2030, generating $1.5 trillion in revenue.

The use of AI/ML is increasingly intertwined with IoT. AI, machine learning and deep learning, for example, are already being employed to make IoT devices and services smarter and more secure. But the benefits flow both ways given that AI and ML require large volumes of data to operate successfully exactly what networks of IoT sensors and devices provide.

In an industrial setting, for example, IoT networks throughout a manufacturing plant can collect operational and performance data, which is then analyzed by AI systems to improve production system performance, boost efficiency and predict when machines will require maintenance.

What some are calling Artificial Intelligence of Things: (AIoT) could redefine industrial automation.

Persistent Ethical Questions Around AI Technology

Earlier this year as protests against racial injustice were at their peak, several leading IT vendors, including Microsoft, IBM and Amazon, announced that they would limit the use of their AI-based facial recognition technology by police departments until there are federal laws regulating the technologys use, according to a Washington Post story.

That has put the spotlight on a range of ethical questions around the increasing use of artificial intelligence technology. That includes the obvious misuse of AI for deepfake misinformation efforts and for cyberattacks. But it also includes grayer areas such as the use of AI by governments and law enforcement organizations for surveillance and related activities and the use of AI by businesses for marketing and customer relationship applications.

Thats all before delving into the even deeper questions about the potential use of AI in systems that could replace human workers altogether.

A December 2019 Forbes article said the first step here is asking the necessary questions and weve begun to do that. In some applications federal regulation and legislation may be needed, as with the use of AI technology for law enforcement.

In business, Gartner recommends the creation of external AI ethics boards to prevent AI dangers that could jeopardize a companys brand, draw regulatory actions or lead to boycotts or destroy business value. Such a board, including representatives of a companys customers, can provide guidance about the potential impact of AI development projects and improve transparency and accountability around AI projects.

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5 Emerging AI And Machine Learning Trends To Watch In 2021 - CRN: Technology news for channel partners and solution providers

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Is the buzz around artificial intelligence justified? – Consultancy.uk

Two-thirds of senior executives believe that AI is important for the future of their business, but the average return on all AI investments by company is still struggling to pass 1%. A new survey of more than 1,000 firms has warned that patience may be key to AI success, revealing that the majority of AI change programmes take more than two years to see a return on investment.

As the global economy faces headwinds from increasing import costs, trade wars and digital disruption as well as the Covid-19 pandemic many have been investing in artificial intelligence (AI) to help them to adapt to the difficult environment. Billed as a major opportunity in which employees can be redeployed from repetitive work to value adding activities, AI has also been said for years to be able to massively improve administrative accuracy, while reducing its costs.

According to analysis by Fortune Business Insights, the global AImarket sizeis booming thanks to this hype, and was valued at $27.23 billion in 2019 and is projected to reach $266.92 billion by 2027, exhibiting a CAGR of 33.2% over that period.

New research from ESI ThoughtLab has cautioned executives against treating AI as a magic bullet to all their woes, however, and suggested that returns on investment usually take much longer to materialise than the average business leader might like to admit.

According to an examination of AI best practices, investment plans, and performance metrics of 1,200 firms, the majority of firms are posting positive returns on all AI areas. The area generating positive ROI for the largest percentage of companies is customer service, with 74% of respondents saying so, followed by IT operations (69%), and strategic planning (66%). With that being said, however, investing in AI is not a cure all.

ESI ThoughtLab said that 40% of projects are not yet showing positive ROI, based on an average ROI across all 19 areas. In fact, many firms advanced in implementing AI have yet to see positive gains. Underperforming areas include sales and business development, at 49%, and finance and auditing at 47%. The researchers suggested that this may be because businesses are underestimating how important the human side of digital change is.

Of the top performing firms in applying AI, 83% said they had been successful at developing, as opposed to just 9% of underperformers. In addition, overperformers were much better at training and enabling non-data-scientists to deploy AI, with 88% doing so, against 2% of underachievers. Illustrating how important this is in successful AI deployment, 61% of overperformers had decentralised their internal AI staff in some way, to help build AI teamwork across the firm, compared to just 22% of underperformers.

Even with the right approach, however, ESI ThoughtLab found that returns on AI investment do not always become pronounced quickly. While about two-thirds of senior executives believe that AI is important for the future of their business, the average return on all AI investments by company is still only 1.3%. Even the average return of overperformers of 4.3% pales against returns on other corporate investments, begging the question in some quarters as to whether the buzz around AI is still justified.

According to the researchers, the answer to this is still a resounding yes it is, but businesses will need to be patient when waiting to exit the payback period. An average of all firms suggests that the more familiar firms are with AI, the quicker it will pay off beginners on average face payback phases of more than 1.6 years, while leaders will see this shorten to 1.2 years however, this also depends on which industry an organisation resides in. For example, healthcare entities face the longest wait of 1.61 years, while the automotive sector averages a payback period of 1.26 years.

Commenting on the findings, ESI ThoughtLab CEO Lou Celi encouraged firms not to lose patience, as AI will become even more important in the coming months. Celi added, As the pandemic propels businesses into a digital-first world, AI will become a key driver of corporate growth and competitiveness. But building proficiency in AI is not easy It can fail to deliver results if the wrong business case is selected, the data is prepared incorrectly, or the model is not built for scale.

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Is the buzz around artificial intelligence justified? - Consultancy.uk

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Artificial Intelligence Will Soon Shape Themselves, and Us – Medium

Image: Yuichiro Chino/Getty Images

A future where were all replaced by artificial intelligence may be further off than experts currently predict, but the readiness with which we accept the notion of our own obsolescence says a lot about how much we value ourselves. The long-term danger is not that we will lose our jobs to robots. We can contend with joblessness if it happens. The real threat is that well lose our humanity to the value system we embed in our robots, and that they in turn impose on us.

Computer scientists once dreamed of enhancing the human mind through technology, a field of research known as intelligence augmentation. But this pursuit has been largely surrendered to the goal of creating artificial intelligence machines that can think for themselves. All were really training them to do is manipulate our behavior and engineer our compliance. Figure has again become ground.

We shape our technologies at the moment of conception, but from that point forward they shape us. We humans designed the telephone, but from then on the telephone influenced how we communicated, conducted business, and conceived of the world. We also invented the automobile, but then rebuilt our cities around automotive travel and our geopolitics around fossil fuels. While this axiom may be true for technologies from the pencil to the birth control pill, artificial intelligences add another twist: After we launch them, they not only shape us but they also begin to shape themselves. We give them an initial goal, then give them all the data they need to figure out how to accomplish it. From that point forward, we humans no longer fully understand how an A.I. may be processing information or modifying its tactics. The A.I. isnt conscious enough to tell us. Its just trying everything, and hanging on to what works.

Researchers have found, for example, that the algorithms running social media platforms tend to show people pictures of their ex-lovers having fun. No, users dont want to see such images. But, through trial and error, the algorithms have discovered that showing us pictures of our exes having fun increases our engagement. We are drawn to click on those pictures and see what our exes are up to, and were more likely to do it if were jealous that theyve found a new partner. The algorithms dont know why this works, and they dont care. Theyre only trying to maximize whichever metric weve instructed them to pursue. Thats why the original commands we give them are so important. Whatever values we embed efficiency, growth, security, compliance will be the values A.I.s achieve, by whatever means happen to work. A.I.s will be using techniques that no one not even they understand. And they will be honing them to generate better results, and then using those results to iterate further.

We already employ A.I. systems to evaluate teacher performance, mortgage applications, and criminal records, and they make decisions just as racist and prejudicial as the humans whose decisions they were fed. But the criteria and processes they use are deemed too commercially sensitive to be revealed, so we cannot open the black box and analyze how to solve the bias. Those judged unfavorably by an algorithm have no means to appeal the decision or learn the reasoning behind their rejection. Many companies couldnt ascertain their own A.I.s criteria anyway.

As A.I.s pursue their programmed goals, they will learn to leverage human values as exploits. As they have already discovered, the more they can trigger our social instincts and tug on our heartstrings, the more likely we are to engage with them as if they were human. Would you disobey an A.I. that feels like your parent, or disconnect one that seems like your child?

Eerily echoing the rationale behind corporate personhood, some computer scientists are already arguing that A.I.s should be granted the rights of living beings rather than being treated as mere instruments or slaves. Our science fiction movies depict races of robots taking revenge on their human overlords as if this problem is somehow more relevant than the unacknowledged legacy of slavery still driving racism in America, or the 21st-century slavery on which todays technological infrastructure depends.

We are moving into a world where we care less about how other people regard us than how A.I.s do.

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Artificial Intelligence Will Soon Shape Themselves, and Us - Medium

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Global Artificial Intelligence of Things Technology and Solutions Markets 2020-2025 – ResearchAndMarkets.com – Yahoo Finance

The "Artificial Intelligence of Things: AIoT Market by Technology and Solutions 2020 - 2025" report has been added to ResearchAndMarkets.com's offering.

This AIoT market report provides an analysis of technologies, leading companies and solutions. The report also provides quantitative analysis including market sizing and forecasts for AIoT infrastructure, services, and specific solutions for the period 2020 through 2025. The report also provides an assessment of the impact of 5G upon AIoT (and vice versa) as well as blockchain and specific solutions such as Data as a Service, Decisions as a Service, and the market for AIoT in smart cities.

Many industry verticals will be transformed through AI integration with enterprise, industrial, and consumer product and service ecosystems. It is destined to become an integral component of business operations including supply chains, sales and marketing processes, product and service delivery, and support models.

We see AIoT evolving to become more commonplace as a standard feature from big analytics companies in terms of digital transformation for the connected enterprise. This will be realized in infrastructure, software, and SaaS managed service offerings. More specifically, we see 2020 as a key year for IoT data-as-a-service offerings to become AI-enabled decisions-as-a-service-solutions, customized on a per industry and company basis. Certain data-driven verticals such as the utility and energy services industries will lead the way.

As IoT networks proliferate throughout every major industry vertical, there will be an increasingly large amount of unstructured machine data. The growing amount of human-oriented and machine-generated data will drive substantial opportunities for AI support of unstructured data analytics solutions. Data generated from IoT supported systems will become extremely valuable, both for internal corporate needs as well as for many customer-facing functions such as product life-cycle management.

Story continues

The use of AI for decision making in IoT and data analytics will be crucial for efficient and effective decision making, especially in the area of streaming data and real-time analytics associated with edge computing networks. Real-time data will be a key value proposition for all use cases, segments, and solutions. The ability to capture streaming data, determine valuable attributes, and make decisions in real-time will add an entirely new dimension to service logic.

In many cases, the data itself, and actionable information will be the service. AIoT infrastructure and services will, therefore, be leveraged to achieve more efficient IoT operations, improve human-machine interactions, and enhance data management and analytics, creating a foundation for IoT Data as a Service (IoTDaaS) and AI-based Decisions as a Service.

The fastest-growing 5G AIoT applications involve private networks. Accordingly, the 5GNR market for private wireless in industrial automation will reach $4B by 2025. Some of the largest market opportunities will be AIoT market IoTDaaS solutions. We see machine learning in edge computing as the key to realizing the full potential of IoT analytics.

Select Report Findings:

The global AIoT market will reach $65.9B by 2025, growing at 39.1% CAGR

The global market for IoT data as service solutions will reach $8.2B USD by 2025

The AI-enabled edge device market will be the fastest-growing segment within the AIoT

AIoT automates data processing systems, converting raw IoT data into useful information

Today's AIoT solutions are the precursor to next-generation AI Decision as a Service (AIDaaS)

Key Topics Covered:

1.0 Executive Summary

2.0 Introduction

2.1 Defining AIoT

2.2 AI in IoT vs. AIoT

2.3 Artificial General Intelligence

2.4 IoT Network and Functional Structure

2.5 Ambient Intelligence and Smart Lifestyles

2.6 Economic and Social Impact

2.7 Enterprise Adoption and Investment

2.8 Market Drivers and Opportunities

2.9 Market Restraints and Challenges

2.10 AIoT Value Chain

2.10.1 Device Manufacturers

2.10.2 Equipment Manufacturers

2.10.3 Platform Providers

2.10.4 Software and Service Providers

2.10.5 User Communities

3.0 AIoT Technology and Market

3.1 AIoT Market

3.1.1 Equipment and Component

3.1.2 Cloud Equipment and Deployment

3.1.3 3D Sensing Technology

3.1.4 Software and Data Analytics

3.1.5 AIoT Platforms

3.1.6 Deployment and Services

3.2 AIoT Sub-Markets

3.2.1 Supporting Device and Connected Objects

3.2.2 IoT Data as a Service

3.2.3 AI Decisions as a Service

3.2.4 APIs and Interoperability

3.2.5 Smart Objects

3.2.6 Smart City Considerations

3.2.7 Industrial Transformation

3.2.8 Cognitive Computing and Computer Vision

3.2.9 Consumer Appliances

3.2.10 Domain Specific Network Considerations

3.2.11 3D Sensing Applications

3.2.12 Predictive 3D Design

3.3 AIoT Supporting Technologies

3.3.1 Cognitive Computing

3.3.2 Computer Vision

3.3.3 Machine Learning Capabilities and APIs

3.3.4 Neural Networks

3.3.5 Context-Aware Processing

3.4 AIoT Enabling Technologies and Solutions

3.4.1 Edge Computing

3.4.2 Blockchain Networks

3.4.3 Cloud Technologies

3.4.4 5G Technologies

3.4.5 Digital Twin Technology and Solutions

3.4.6 Smart Machines

3.4.7 Cloud Robotics

3.4.8 Predictive Analytics and Real-Time Processing

3.4.9 Post Event Processing

3.4.10 Haptic Technology

4.0 AIoT Applications Analysis

4.1 Device Accessibility and Security

4.2 Gesture Control and Facial Recognition

4.3 Home Automation

4.4 Wearable Device

4.5 Fleet Management

4.6 Intelligent Robots

4.7 Augmented Reality Market

4.8 Drone Traffic Monitoring

4.9 Real-time Public Safety

4.10 Yield Monitoring and Soil Monitoring Market

4.11 HCM Operation

5.0 Analysis of Important AIoT Companies

5.1 Sharp

5.2 SAS

5.3 DT42

5.4 Chania Tech Giants: Baidu, Alibaba, and Tencent

5.4.1 Baidu

5.4.2 Alibaba

5.4.3 Tencent

5.5 Xiaomi Technology

5.6 NVidia

5.7 Intel Corporation

5.8 Qualcomm

5.9 Innodisk

5.10 Gopher Protocol

5.11 Micron Technology

5.12 ShiftPixy

5.13 Uptake

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Global Artificial Intelligence of Things Technology and Solutions Markets 2020-2025 - ResearchAndMarkets.com - Yahoo Finance

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Artificial Intelligence Helps Understand the Evolution of Young Stars and Their Planets – SciTechDaily

An X-class solar flare from our sun in November 2013. Scientists trained a neural network to find such flares in data taken of distant planets around other stars. Credit: Scott Wiessinger, Solar Dynamics Observatory at NASA Goddard Space Flight Center

University of Chicago scientists teach a neural net to find baby star flares.

Like its human counterparts, a young star is cute but prone to temper flaresonly a stars are lethal. A flare from a star can incinerate everything around it, including the atmospheres of any nearby planets starting to form.

Finding out how often such young stars erupt can help scientists understand where to look for habitable planets. But until now, locating such flares involved poring over thousands of measurements of star brightness variations, called light curves, by eye.

Scientists with the University of Chicago and the University of New South Wales, however, thought this would be a task well suited for machine learning. They taught a type of artificial intelligence called a neural network to detect the telltale light patterns of a stellar flare, then asked it to check the light curves of thousands of young stars; it found more than 23,000 flares.

Published on October 23, 2020, in the Astronomical Journaland the Journal of Open Source Software the results offer a new benchmark in the use of AI in astronomy, as well as a better understanding of the evolution of young stars and their planets.

When we say young, we mean only a million to 800 million years old, said Adina Feinstein, a UChicago graduate student and first author on the paper. Any planets near a star are still forming at this point. This is a particularly fragile time, and a flare from a star can easily evaporate any water or atmosphere thats been collected.

NASAs TESS telescope, aboard a satellite that has been orbiting Earth since 2018, is specifically designed to search for exoplanets. Flares from faraway stars show up on TESSs images, but traditional algorithms have a hard time picking out the shape from the background noise of star activity.

NASAs Solar Dynamics Observatory captures flares from the sun. Credit: NASA

But neural networks are particularly good at looking for patternslike Googles AI picking cats out of internet imagesand astronomers have increasingly begun to look to them to classify astronomical data. Feinstein worked with a team of scientists from NASA, the Flatiron Institute, Fermi National Accelerator Laboratory, the Massachusetts Institute of Technology and the University of Texas at Austin to pull together a set of identified flares and not-flares to train the neural net.

It turned out to be really good at finding small flares, said study co-author and former UChicago postdoctoral fellow Benjamin Montet, now a Scientia Lecturer at the University of New South Wales in Sydney. Those are actually really hard to find with other methods.

Once the researchers were satisfied with the neural nets performance, they turned it loose on the full set of data of more than 3,200 stars.

They found that stars similar to our sun only have a few flares, and those flares seem to drop off after about 50 million years. This is good for fostering planetary atmospheresa calmer stellar environment means the atmospheres have a better chance of surviving, Feinstein said.

This can help scientists pinpoint the most likely places to look for habitable planets elsewhere in the universe.

In contrast, cooler stars called red dwarfs tended to flare much more frequently. Red dwarfs have been seen to host small rocky planets; If those planets are being bombarded when theyre young, this could prove detrimental for retaining any atmosphere, she said.

The results help scientists understand the odds of habitable planets surviving around different types of stars, and how atmospheres form. This can help them pinpoint the most likely places to look for habitable planets elsewhere in the universe.

They also investigated the connection between stellar flares and star spots, like the kind we see on our own suns surface. The spottiest our sun ever gets is maybe 0.3% of the surface, Montet said. For some of these stars were seeing, the surface is basically all spots. This reinforces the idea that spots and flares are connected, as magnetic events.

The scientists next want to adapt the neural net to look for planets lurking around young stars. Currently we only know of about a dozen younger than 50 million years, but theyre so valuable for learning how planetary atmospheres evolve, Feinstein said.

Reference: Flare Statistics for Young Stars from a Convolutional Neural Network Analysis of TESS Data by Adina D. Feinstein, Benjamin T. Montet, Megan Ansdell, Brian Nord, Jacob L. Bean, Maximilian N. Gnther, Michael A. Gully-Santiago, and Joshua E. Schlieder, 23 October 2020, The Astronomical Journal.DOI:10.3847/1538-3881/abac0a

Other UChicago-affiliated scientists on the study included visiting assistant research professor Brian Nord and Assoc. Prof. Jacob Bean.

Link:
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Global Artificial Intelligence of Things Markets 2020-2025: Focus on Technology & Solutions – AIoT Solutions Improve Operational Effectiveness and…

Dublin, Oct. 22, 2020 (GLOBE NEWSWIRE) -- The "Artificial Intelligence of Things: AIoT Market by Technology and Solutions 2020 - 2025" report has been added to ResearchAndMarkets.com's offering.

This AIoT market report provides an analysis of technologies, leading companies and solutions. The report also provides quantitative analysis including market sizing and forecasts for AIoT infrastructure, services, and specific solutions for the period 2020 through 2025. The report also provides an assessment of the impact of 5G upon AIoT (and vice versa) as well as blockchain and specific solutions such as Data as a Service, Decisions as a Service, and the market for AIoT in smart cities.

Many industry verticals will be transformed through AI integration with enterprise, industrial, and consumer product and service ecosystems. It is destined to become an integral component of business operations including supply chains, sales and marketing processes, product and service delivery, and support models.

We see AIoT evolving to become more commonplace as a standard feature from big analytics companies in terms of digital transformation for the connected enterprise. This will be realized in infrastructure, software, and SaaS managed service offerings. More specifically, we see 2020 as a key year for IoT data-as-a-service offerings to become AI-enabled decisions-as-a-service-solutions, customized on a per industry and company basis. Certain data-driven verticals such as the utility and energy services industries will lead the way.

As IoT networks proliferate throughout every major industry vertical, there will be an increasingly large amount of unstructured machine data. The growing amount of human-oriented and machine-generated data will drive substantial opportunities for AI support of unstructured data analytics solutions. Data generated from IoT supported systems will become extremely valuable, both for internal corporate needs as well as for many customer-facing functions such as product life-cycle management.

The use of AI for decision making in IoT and data analytics will be crucial for efficient and effective decision making, especially in the area of streaming data and real-time analytics associated with edge computing networks. Real-time data will be a key value proposition for all use cases, segments, and solutions. The ability to capture streaming data, determine valuable attributes, and make decisions in real-time will add an entirely new dimension to service logic.

In many cases, the data itself, and actionable information will be the service. AIoT infrastructure and services will, therefore, be leveraged to achieve more efficient IoT operations, improve human-machine interactions, and enhance data management and analytics, creating a foundation for IoT Data as a Service (IoTDaaS) and AI-based Decisions as a Service.

The fastest-growing 5G AIoT applications involve private networks. Accordingly, the 5GNR market for private wireless in industrial automation will reach $4B by 2025. Some of the largest market opportunities will be AIoT market IoTDaaS solutions. We see machine learning in edge computing as the key to realizing the full potential of IoT analytics.

Select Report Findings:

Key Topics Covered:

1.0 Executive Summary

2.0 Introduction2.1 Defining AIoT2.2 AI in IoT vs. AIoT2.3 Artificial General Intelligence2.4 IoT Network and Functional Structure2.5 Ambient Intelligence and Smart Lifestyles2.6 Economic and Social Impact2.7 Enterprise Adoption and Investment2.8 Market Drivers and Opportunities2.9 Market Restraints and Challenges2.10 AIoT Value Chain2.10.1 Device Manufacturers2.10.2 Equipment Manufacturers2.10.3 Platform Providers2.10.4 Software and Service Providers2.10.5 User Communities

3.0 AIoT Technology and Market3.1 AIoT Market3.1.1 Equipment and Component3.1.2 Cloud Equipment and Deployment3.1.3 3D Sensing Technology3.1.4 Software and Data Analytics3.1.5 AIoT Platforms3.1.6 Deployment and Services3.2 AIoT Sub-Markets3.2.1 Supporting Device and Connected Objects3.2.2 IoT Data as a Service3.2.3 AI Decisions as a Service3.2.4 APIs and Interoperability3.2.5 Smart Objects3.2.6 Smart City Considerations3.2.7 Industrial Transformation3.2.8 Cognitive Computing and Computer Vision3.2.9 Consumer Appliances3.2.10 Domain Specific Network Considerations3.2.11 3D Sensing Applications3.2.12 Predictive 3D Design3.3 AIoT Supporting Technologies3.3.1 Cognitive Computing3.3.2 Computer Vision3.3.3 Machine Learning Capabilities and APIs3.3.4 Neural Networks3.3.5 Context-Aware Processing3.4 AIoT Enabling Technologies and Solutions3.4.1 Edge Computing3.4.2 Blockchain Networks3.4.3 Cloud Technologies3.4.4 5G Technologies3.4.5 Digital Twin Technology and Solutions3.4.6 Smart Machines3.4.7 Cloud Robotics3.4.8 Predictive Analytics and Real-Time Processing3.4.9 Post Event Processing3.4.10 Haptic Technology

4.0 AIoT Applications Analysis4.1 Device Accessibility and Security4.2 Gesture Control and Facial Recognition4.3 Home Automation4.4 Wearable Device4.5 Fleet Management4.6 Intelligent Robots4.7 Augmented Reality Market4.8 Drone Traffic Monitoring4.9 Real-time Public Safety4.10 Yield Monitoring and Soil Monitoring Market4.11 HCM Operation

5.0 Analysis of Important AIoT Companies5.1 Sharp5.2 SAS5.3 DT425.4 Chania Tech Giants: Baidu, Alibaba, and Tencent5.4.1 Baidu5.4.2 Alibaba5.4.3 Tencent5.5 Xiaomi Technology5.6 NVidia5.7 Intel Corporation5.8 Qualcomm5.9 Innodisk5.10 Gopher Protocol5.11 Micron Technology5.12 ShiftPixy5.13 Uptake5.14 C3 IoT5.15 Alluvium5.16 Arundo Analytics5.17 Canvass Analytics5.18 Falkonry5.19 Interactor5.20 Google5.21 Cisco5.22 IBM Corp.5.23 Microsoft Corp.5.24 Apple Inc.5.25 Salesforce Inc.5.26 Infineon Technologies AG5.27 Amazon Inc.5.28 AB Electrolux5.29 ABB Ltd.5.30 AIBrian Inc.5.31 Analog Devices5.32 ARM Limited5.33 Atmel Corporation5.34 Ayla Networks Inc.5.35 Brighterion Inc.5.36 Buddy5.37 CloudMinds5.38 Cumulocity GmBH5.39 Cypress Semiconductor Corp5.40 Digital Reasoning Systems Inc.5.41 Echelon Corporation5.42 Enea AB5.43 Express Logic Inc.5.44 Facebook Inc.5.45 Fujitsu Ltd.5.46 Gemalto N.V.5.47 General Electric5.48 General Vision Inc.5.49 Graphcore5.50 H2O.ai5.51 Haier Group Corporation5.52 Helium Systems5.53 Hewlett Packard Enterprise5.54 Huawei Technologies5.55 Siemens AG5.56 SK Telecom5.57 SoftBank Robotics5.58 SpaceX5.59 SparkCognition5.60 STMicroelectronics5.61 Symantec Corporation5.62 Tellmeplus5.63 Tend.ai5.64 Tesla5.65 Texas Instruments5.66 Thethings.io5.67 Veros Systems5.68 Whirlpool Corporation5.69 Wind River Systems5.70 Juniper Networks5.71 Nokia Corporation5.72 Oracle Corporation5.73 PTC Corporation5.74 Losant IoT5.75 Robert Bosch GmbH5.76 Pepper5.77 Terminus5.78 Tuya Smart

6.0 AIoT Market Analysis and Forecasts 2020 - 20256.1 Global AIoT Market Outlook and Forecasts6.1.1 Aggregate AIoT Market 2020 - 20256.1.2 AIoT Market by Infrastructure and Services 2020 - 20256.1.3 AIoT Market by AI Technology 2020 - 20256.1.4 AIoT Market by Application 2020 - 20256.1.5 AIoT in Consumer, Enterprise, Industrial, and Government 2020 - 20256.1.6 AIoT Market in Cities, Suburbs, and Rural Areas 2020 - 20256.1.7 AIoT in Smart Cities 2020 - 20256.1.8 IoT Data as a Service Market 2020 - 20256.1.9 AI Decisions as a Service Market 2020 - 20256.1.10 Blockchain Support of AIoT 2020 - 20256.1.11 AIoT in 5G Networks 2020 - 20256.2 Regional AIoT Markets 2020 - 2025

7.0 Conclusions and Recommendations7.1 Advertisers and Media Companies7.2 Artificial Intelligence Providers7.3 Automotive Companies7.4 Broadband Infrastructure Providers7.5 Communication Service Providers7.6 Computing Companies7.7 Data Analytics Providers7.8 Immersive Technology (AR, VR, and MR) Providers7.9 Networking Equipment Providers7.10 Networking Security Providers7.11 Semiconductor Companies7.12 IoT Suppliers and Service Providers7.13 Software Providers7.14 Smart City System Integrators7.15 Automation System Providers7.16 Social Media Companies7.17 Workplace Solution Providers7.18 Enterprise and Government

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Imaging and Artificial Intelligence Tools Help Predict Response to Breast Cancer Therapy – On Cancer – Memorial Sloan Kettering

Summary

For breast cancers that have high levels of HER2, advanced MRI scans and artificial intelligence may help doctors make treatment decisions.

For people with breast cancer, biopsies have long been the gold standard for characterizing the molecular changes in a tumor, which can guide treatment decisions. Biopsies remove a small piece of tissue from the tumor so pathologists can study it under the microscope and make a diagnosis. Thanks to advances in imaging technologies and artificial intelligence (AI), however, experts are now able to use the characteristics of the whole tumor rather than the small sample removed during biopsy to assess tumor characteristics.

In a study published October 8, 2020, in EBioMedicine, a team led by experts from Memorial Sloan Kettering report that for breast cancers that have high levels of a protein called HER2 AI-enhanced imaging tools may also be useful for predicting how patients will respond to the targeted chemotherapy given before surgery to shrink the tumor (called neoadjuvant therapy). Ultimately, these tools could help to guide treatment and make it more personalized.

Were not aiming to replace biopsies, says MSK radiologist Katja Pinker, the studys corresponding author. But because breast tumors can be heterogeneous, meaning that not all parts of the tumor are the same, a biopsy cant always give us the full picture.

Because breast tumors can be heterogeneous, meaning that not all parts of the tumor are the same, a biopsy cant always give us the full picture, says breast radiologist Katja Pinker.

The study looked at data from 311 patients who had already been treated at MSK for early-stage breast cancer. All the patients had HER2-positive tumors meaning that the tumors had high levels of the protein HER2, which can be targeted with drugs like trastuzumab (Herceptin). The researchers wanted to see if AI-enhanced magnetic resonance imaging (MRI) could help them learn more about each specific tumors HER2 status.

One goal was to look at factors that could predict response to neoadjuvant therapy in people whose tumors were HER2-positive. Breast cancer experts have generally believed that people with heterogeneous HER2 disease dont do as well, but recently a study suggested they actually did better, says senior author Maxine Jochelson, Director of Radiology at MSKs Breast and Imaging Center. We wanted to find out if we could use imaging to take a closer look at heterogeneity and then use those findings to study patient outcomes.

The MSK team took advantage of AI and radiomics analysis, which uses computer algorithms to uncover disease characteristics. The computer helps revealfeatures on an MRI scan that cant be seen with the naked eye.

In this study, the researchers used machine learning to combine radiomics analysis of the entire tumor with clinical findings and biopsy results. They took a closer look at the HER2 status of the 311 patients, with the aim of predicting their response to neoadjuvant chemotherapy. By comparing the computer models to actual patient outcomes, they were able to verify that the models were effective.

We hope that this will get us to the next level of personalized treatment for breast cancer.

Our next step is to conduct a larger multicenter study that includes different patient populations treated at different hospitals and scanned with different machines, Dr. Pinker says. Im confident that our results will be the same, but these larger studies are very important to do before you can apply these findings to patient treatment.

Once weve confirmed our findings, our goal is to perform risk-adaptive treatment, Dr. Jochelson says. That means we could use it to monitor patients during treatment and consider changing their chemotherapy during treatment if their early response is not ideal.

Dr. Jochelson adds that conducting more frequent scans and using them to guide therapies has improved treatments for people with other cancers, including lymphoma. We hope that this will get us to the next level of personalized treatment for breast cancer, she concludes.

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Artificial intelligence reveals hundreds of millions of trees in the Sahara – Newswise

Newswise If you think that the Sahara is covered only by golden dunes and scorched rocks, you aren't alone. Perhaps it's time to shelve that notion. In an area of West Africa 30 times larger than Denmark, an international team, led by University of Copenhagen and NASA researchers, has counted over 1.8 billion trees and shrubs. The 1.3 million km2 area covers the western-most portion of the Sahara Desert, the Sahel and what are known as sub-humid zones of West Africa.

"We were very surprised to see that quite a few trees actually grow in the Sahara Desert, because up until now, most people thought that virtually none existed. We counted hundreds of millions of trees in the desert alone. Doing so wouldn't have been possible without this technology. Indeed, I think it marks the beginning of a new scientific era," asserts Assistant Professor Martin Brandt of the University of Copenhagen's Department of Geosciences and Natural Resource Management, lead author of the study'sscientific article, now published inNature.

The work was achieved through a combination of detailed satellite imagery provided by NASA, and deep learning -- an advanced artificial intelligence method. Normal satellite imagery is unable to identify individual trees, they remain literally invisible. Moreover, a limited interest in counting trees outside of forested areas led to the prevailing view that there were almost no trees in this particular region. This is the first time that trees across a large dryland region have been counted.

The role of trees in the global carbon budget

New knowledge about trees in dryland areas like this is important for several reasons, according to Martin Brandt. For example, they represent an unknown factor when it comes to the global carbon budget:

"Trees outside of forested areas are usually not included in climate models, and we know very little about their carbon stocks. They are basically a white spot on maps and an unknown component in the global carbon cycle," explains Martin Brandt.

Furthermore, the new study can contribute to better understanding the importance of trees for biodiversity and ecosystems and for the people living in these areas. In particular, enhanced knowledge about trees is also important for developing programmes that promote agroforestry, which plays a major environmental and socio-economic role in arid regions.

"Thus, we are also interested in using satellites to determine tree species, as tree types are significant in relation to their value to local populations who use wood resources as part of their livelihoods. Trees and their fruit are consumed by both livestock and humans, and when preserved in the fields, trees have a positive effect on crop yields because they improve the balance of water and nutrients," explains Professor Rasmus Fensholt of the Department of Geosciences and Natural Resource Management.

Technology with a high potential

The research was conducted in collaboration with the University of Copenhagen's Department of Computer Science, where researchers developed the deep learning algorithm that made the counting of trees over such a large area possible.

The researchers show the deep learning model what a tree looks like: They do so by feeding it thousands of images of various trees. Based upon the recognition of tree shapes, the model can then automatically identify and map trees over large areas and thousands of images. The model needs only hours what would take thousands of humans several years to achieve.

"This technology has enormous potential when it comes to documenting changes on a global scale and ultimately, in contributing towards global climate goals. We are motivated to develop this type of beneficial artificial intelligence," says professor and co-author Christian Igel of the Department of Computer Science.

The next step is to expand the count to a much larger area in Africa. And in the longer term, the aim is to create a global database of all trees growing outside forest areas.

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The Emergence of Artificial General Intelligence: Are we There? – Analytics Insight

Artificial Intelligence is something thats been around quite a while. Since its development into the public consciousness through sci-fi, many have expected that one day machines will have general intelligence, and considered diverse practical, ethical and philosophical implications.

In all actuality, AI has been the discussion of standard pop-culture and sci-fi since the first Terminator film turned out in 1984. These motion pictures present an example of something many refer to as Artificial General Intelligence.

No compelling reason to state that superhuman AI is not even close to happening. In any case, general society is captivated by the possibility of incredibly smart PCs taking control over the world. This fascination has a name: the myth of singularity.

The singularity alludes forthright in time when an artificial intelligence would enter a cycle of exponential improvement. A software so wise that it is ready to develop itself quicker and quicker. Now, technical advancement would turn into the selective doing of AIs, with unforeseeable repercussions on the destiny of the human species.

Singularity is connected to the idea of Artificial General Intelligence. An Artificial General Intelligence can be characterized as an AI that can perform any task that a human can perform. This idea is way more fascinating than the idea of singularity, since its definition is at any rate somewhat concrete.

Software engineers and researchers use machine learning algorithms to create specific AIs. Those are artificially intelligent algorithms that are as acceptable if worse than people at one explicit assignment. For instance, playing chess or picking which square in a segmented picture has a road sign in it, for example Captchas

Recent advances in AI and ML, while not actually close to real AGI, have made a feeling that AGI is close, as surprisingly fast for many years. It additionally doesnt enable you to have some worlds top personalities like Elon Musk getting down on AI as one of the greatest existential dangers to human existence ever.

The absolute greatest headways in AI today have been artificial neural networks, which are technologists method of copying the way that human cerebrums work with code. All things considered, defining what precisely makes something intelligent is difficult

Artificial consciousness carries a more ethical conversation of AGI. Can a machine actually accomplish consciousness similarly as humans can? Furthermore, if it could, would we need to treat it as a person?

Experimentally, consciousness comes straightforwardly from biological input being deciphered and responded to by a biological animal, with the end goal that the creature turns into its own thing. If you eliminate the explaining expression of biological from that definition, at that point its not hard to perceive how even existing AIs could already be viewed as conscious, but moronically conscious.

One thing that characterizes human consciousness is the capacity to recall memories and dream about the future. In numerous angles, this is an extraordinary human ability. If a machine could do this, then we may characterize it as having artificial general intelligence. Dreams are unnecessary to intelligent life, yet, they define our reality as people. If a PC could dream for itself, not on the grounds that it was modified to do as such, this may be the greatest pointer that AGI is here.

Artificial General Intelligence is a trendy expression, since it is either a huge promise or a scaring threat. Like some other popular expression, it must be controlled with caution. Its important to draw your attention to conscious reasoning, compositionality and out-of-distribution generalization. Since they are dissimilar to Singularity or AGI, they represent useful approaches to improve ML algorithms and really support the performance of artificial intelligence.

From an innovation viewpoint, were very far away from having the ability to make AGI. Nonetheless, given how quickly innovation progresses, we may just be a couple of many years. Experts expect and anticipate the first rough artificial general intelligence to be made by around 2030, not very distant. In any case, experts also expect that it wont be until 2060 until AGI has gotten adequate to pass a consciousness test. At the end of the day, were likely to take a look at a long time from now before we see an AI that could pass for a human.

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Global Artificial Intelligence in Construction Market latest demand by 2020-2026 with leading players & COVID-19 Analysis – re:Jerusalem

The latest industry report that focuses onArtificial Intelligence in Construction Marketand gives a professional and in-depth Global Artificial Intelligence in Construction marketanalysis and future prospects of Artificial Intelligence in Construction market 2020. The analysis report begins with the audit of the business condition and characterizes industry chain structure, then highlighted Industry size and forecast of Artificial Intelligence in Construction market during 2020-2026. This report covers the current Artificial Intelligence in Construction market conditions, competitive landscape containing all-inclusivekey players like (IBM, Microsoft, Oracle, SAP, Alice Technologies, eSUB, SmarTVid.Io, DarKTrace, Aurora Computer Services, Autodesk, Jaroop, Lili.Ai, Predii, Assignar, Deepomatic, Coins Global, Beyond Limits, Doxel, Askporter, Plangrid, Renoworks Software, Building System Planning, Bentley Systems) and segmented by Product Type, Applicationsand the Geographies regions like the United States, Europe, China, Japan, India, and South-east Asia.

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