World to Benefit from Rapid Implementation of Artificial Intelligence in X-ray-based Robots, Predicts Fact.MR – GlobeNewswire

United States, Rockville MD, Sept. 09, 2022 (GLOBE NEWSWIRE) -- As per a new industry analysis by Fact.MR, a market research and competitive intelligence provider, worldwide demand for X-ray-based robots is projected to increase at a CAGR of 7.1% over the forecast period (2022-2027).

X-ray-based robots provide an excellent, ecologically sustainable option. Rising prevalence of cardiac diseases and other traumatic disorders is driving the demand for X-ray-based robots for diagnosis and treatment purposes. Radiography, endoscopy, angiography, and 3D imaging all make use of X-ray-based robots. Clinicians can conduct a range of imaging assessments in a single room without relocating patients by using robotic X-ray equipment.

Demand for X-ray-based robots in the healthcare industry is expected to rise at a significant CAGR over the coming years due to the presence of qualified experts, improving amenities, and the existence of technologically-advanced and unique solutions in hospitals and clinics.

The market for X-ray-based robots is also anticipated to rise due to factors such as quick product innovation, technological advancements in modelling and production, increasing privatization in the healthcare industry, and increased usage of medical imaging equipment in developing countries.

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One of the most exciting developments in health technology is the use of artificial intelligence (AI) technology, particularly in X-ray-based robots. Due to their accuracy and precision, X-ray-based robots are being employed in medical treatments more frequently. Because they provide a quick and effective approach to seeing inside tissues and organs during surgery, X-ray-based robots are in high demand.

X-ray-based robots come with wireless, moveable indicators in two different sizes that can be placed immediately on the patient's back in a wheelchair or bed, eliminating the need to sit the patient up. These robots do not require the patient to be moved or transferred to another imaging facility for subsequent treatment procedures, thereby driving their popularity.

Key Takeaways from Market Study

Supportive governmental policies, increase in the elderly population, technological advancements in the healthcare sector, and rising rates of osteoporosis and other bone-related diseases are prominent factors driving market growth, says a Fact.MR analyst

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Winning Strategy

Key companies are implementing a variety of actions, including product creation, investments, and acquisitions, to diversify their product offerings and increase their production capabilities. Industry expansion is projected to be fueled by rising initiatives by market participants for new inventions in X-ray-based robots.

For instance,

Competitive Landscape

Market players are creating high-end X-ray-based robots for outstanding precision and sensitivity in the identification of imaging abnormalities. Key companies are forming strategic alliances to adopt and create cutting-edge software that will improve the outcomes of medical imaging.

For instance :

In 2021, an artificial intelligence system developed by GE Healthcare to assist medical practitioners in assessing Endotracheal Tube (ETT) placements was approved by the FDA. A transportable x-ray device has AI algorithms incorporated for automatic measurements, case prioritizing, and quality control.

Key Segments in X-ray-based Robots Industry Research

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More Valuable Insights on Offer

Fact.MR, in its new offering, presents an unbiased analysis of the global X-ray-based robots market, presenting historical demand data (2017-2021) and forecast statistics for the period of 2022-2027.

The study divulges essential insights on the market on the basis of technology (artificial intelligence, machine vision, collaborative robots, cognitive computing, sesotec X-ray, twin robotics) and end-use industry (healthcare, aerospace, automotive, electronics, food & beverages, defense), across five major regions (North America, Europe, Asia Pacific, Latin America, and MEA).

Check out more related studies published by Fact.MR Research:

X-ray Microscopes Market - Rapid urbanization and strong mobile technology in healthcare sector with an array of products will create huge opportunity for the handheld X-ray microscopes to grow significantly in the future. Changing patient demographics, and public policy/regulatory conditions have made substantial impact on the healthcare sector to boost the market for handheld X-ray microscope in the forecast period.

X-Ray Lithography Equipment Market - The global X-ray lithography equipment market is primarily driven by the trend of miniaturization of electronic chips. Such lithography is used to print complex patterns that define integrated circuits. According to the latest research by Fact. MR, the sales for X-ray lithography equipment is likely to grow at a steady rate with a CAGR of4.3%over the forecast period of 2021 to 2031.

X-ray Tubes Market - As per a new Fact.MR survey, the global X-ray tubes market enjoys a valuation ofUS$ 2.8 billionat present and is projected to reachUS$ 3.5 billionby the end of 2027. Worldwide demand for X-ray tubes is anticipated to increase at aCAGR of 4.5%over the next five years.

X-ray-based Robots Market - Demand for X-ray-based robots in China is expected to rise at a stellar CAGR of10%through 2027.Several market players concentrating on the launch of advanced diagnostic equipment as well as rising demand for improved imaging devices are driving rapid market expansion in China.

Cephalometric X-ray System Market - Cephalometric x-ray systems are used to capture radiographic images of the entire head. The x-ray films are used by the orthodontists to view the jawbone, teeth and soft tissues to diagnose misalignment or malocclusions, also known as bite problems. The cephalometric x-ray system is also used for the treatment of temporo-mandibular joint and several other facial structure issues.

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World to Benefit from Rapid Implementation of Artificial Intelligence in X-ray-based Robots, Predicts Fact.MR - GlobeNewswire

Artificial Intelligence (AI) in Real Estate Market Scope and overview, To Develop with Increased Global Emphasis on Industrialization 2029 | IBM, Cape…

New Jersey, United States, Sept. 4, 2022 /DigitalJournal/ AI in real estate can also allow companies to know the best time to buy or sell a property and forecast future sale or rental prices. You can also employ a regression algorithm that considers property characteristics such as size, age, number of rooms, and home decor to arrive at a workable price range. AI in real estate can help prospects make the right decisions by narrowing their search down to fewer key criteria. This is because AI real estate suggestion engines work the same way as other product suggestion engines, such as the recently launched Amazon Personalize.

The Artificial Intelligence (AI) in Real Estate Market research report provides all the information related to the industry. It gives the markets outlook by giving authentic data to its client which helps to make essential decisions. It gives an overview of the market which includes its definition, applications and developments, and manufacturing technology. This Artificial Intelligence (AI) in Real Estate market research report tracks all the recent developments and innovations in the market. It gives the data regarding the obstacles while establishing the business and guides to overcome the upcoming challenges and obstacles.

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Competitive landscape:

This Artificial Intelligence (AI) in Real Estate research report throws light on the major market players thriving in the market; it tracks their business strategies, financial status, and upcoming products.

Some of the Top companies Influencing this Market include: IBM, Cape Analytics, Baidu Inc., Engel & Volkers, Skyline AI, PwC

Market Scenario:

Firstly, this Artificial Intelligence (AI) in Real Estate research report introduces the market by providing an overview that includes definitions, applications, product launches, developments, challenges, and regions. The market is forecasted to reveal strong development by driven consumption in various markets. An analysis of the current market designs and other basic characteristics is provided in the Artificial Intelligence (AI) in Real Estate report.

Regional Coverage:

The region-wise coverage of the market is mentioned in the report, mainly focusing on the regions:

Segmentation Analysis of the market

The market is segmented based on the type, product, end users, raw materials, etc. the segmentation helps to deliver a precise explanation of the market

Market Segmentation: By Type

Machine Learning, Natural Language Processing (NLP), Computer Vision

Market Segmentation: By Application

Large Enterprises, Small and Mid-sized Enterprises (SMEs)

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An assessment of the market attractiveness about the competition that new players and products are likely to present to older ones has been provided in the publication. The research report also mentions the innovations, new developments, marketing strategies, branding techniques, and products of the key participants in the global Artificial Intelligence (AI) in Real Estate market. To present a clear vision of the market the competitive landscape has been thoroughly analyzed utilizing the value chain analysis. The opportunities and threats present in the future for the key market players have also been emphasized in the publication.

This report aims to provide:

Table of Contents

Global Artificial Intelligence (AI) in Real Estate Market Research Report 2022 2029

Chapter 1 Artificial Intelligence (AI) in Real Estate Market Overview

Chapter 2 Global Economic Impact on Industry

Chapter 3 Global Market Competition by Manufacturers

Chapter 4 Global Production, Revenue (Value) by Region

Chapter 5 Global Supply (Production), Consumption, Export, Import by Regions

Chapter 6 Global Production, Revenue (Value), Price Trend by Type

Chapter 7 Global Market Analysis by Application

Chapter 8 Manufacturing Cost Analysis

Chapter 9 Industrial Chain, Sourcing Strategy and Downstream Buyers

Chapter 10 Marketing Strategy Analysis, Distributors/Traders

Chapter 11 Market Effect Factors Analysis

Chapter 12 Global Artificial Intelligence (AI) in Real Estate Market Forecast

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Artificial Intelligence (AI) in Real Estate Market Scope and overview, To Develop with Increased Global Emphasis on Industrialization 2029 | IBM, Cape...

Artificial Intelligence in Ultrasound Imaging Market will Grow at a Booming CAGR of 9.76% by 2028 – Digital Journal

Artificial Intelligence in Ultrasound Imaging Marketstudy has market attractiveness analysis, wherein each segment is benchmarked based on its market size, growth rate, and general attractiveness. The industry report is based on the market type, organization size, availability on-premises and the end-users organization type, and the availability in areas such as North America, South America, Europe, Asia-Pacific and Middle East & Africa. It divulges the nature of demand for the firms product to know if the demand for the product is constant or seasonal. The info covered in Artificial Intelligence in Ultrasound Imaging report lends a hand to businesses know how patents, licensing agreements and other legal restrictions affect the manufacture and sale of the firms products.

The top notch Artificial Intelligence in Ultrasound Imaging market report gives CAGR value fluctuation during the forecast period of 2022-2029 for the market. Important industry trends, market size, market share estimates are analysed and mentioned in the report. This industry report helps the firm in exploring new uses and new markets for its existing products and thereby, increasing the demand for its products. The market document provides an in-depth overview of product specification, technology, product type and production analysis considering major factors such as revenue, cost, and gross margin. The reliable Artificial Intelligence in Ultrasound Imaging market report is comprehensive and opens a door of international market for the products.

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Key Market Players mentioned in this report:NVIDIA CorporationIntel CorporationIBMEchoNous, IncMicrosoftGeneral Vision IncGENERAL ELECTRIC COMPANYJohnson & Johnson Services, IncSiemens Healthcare Private LimitedMedtronic

Key Market Analysis and Insights:

Artificial intelligence in ultrasound imaging market is expected to gain market growth in the forecast period of 2021 to 2028. Data Bridge Market Research analyses the market to account to USD 1,314.24 million by 2028 and will grow at a CAGR of 9.76% in the above mentioned forecast period.

Ultrasound imaging is measured as one of the best, safest and cheapest medical diagnostics technique. AI powered solutions have enhanced the effectiveness and diagnostic accurateness. AI technologies are making the imaging devices smarter and are also helping the clinicians to focus more on the patient and to examine the problem acutely.

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Global Artificial Intelligence in Ultrasound Imaging Market Scope:-

Artificial intelligence in ultrasound imaging market is segmented on the basis of solution, technology, ultrasound technology, application and end user. The growth amongst these segments will help you analyze meager growth segments in the industries, and provide the users with valuable market overview and market insights to help them in making strategic decisions for identification of core market applications.

Artificial Intelligence in Ultrasound Imaging Market, By Region:

Global Artificial Intelligence in Ultrasound Imaging marketis analyzed and market size insights and trends are provided by country, product as referenced above.

The countries covered in the Artificial Intelligence in Ultrasound Imaging market report are the U.S., Canada and Mexico in North America, Germany, France, U.K., Netherlands, Switzerland, Belgium, Russia, Italy, Spain, Turkey, Rest of Europe in Europe, China, Japan, India, South Korea, Singapore, Malaysia, Australia, Thailand, Indonesia, Philippines, Rest of Asia-Pacific (APAC) in the Asia-Pacific (APAC), Saudi Arabia, U.A.E, South Africa, Egypt, Israel, Rest of Middle East and Africa (MEA) as a part of Middle East and Africa (MEA), Brazil, Argentina and Rest of South America as part of South America.

North America dominates the Artificial Intelligence in Ultrasound Imaging market because of the rise in the cases of arrhythmic diseases, favorable reimbursement policies for patients, high demand for advanced treatment methods and developed healthcare infrastructure in the region. Asia-Pacific is estimated to grow in the forecast period due to the high prevalence of cardiovascular diseases, increase in adoption of advanced digital devices, large population and launch of new innovative products.

Table of Contents: Global Artificial Intelligence in Ultrasound Imaging Market

It includes major manufacturers, emerging players growth story, and major business segments of Artificial Intelligence in Ultrasound Imaging market, years considered, and research objectives. Additionally, segmentation on the basis of the type of product, application, and technology.

Artificial Intelligence in Ultrasound Imaging Market Executive Summary: It gives a summary of overall studies, growth rate, available market, competitive landscape, market drivers, trends, and issues, and macroscopic indicators.

Artificial Intelligence in Ultrasound Imaging Market Production by Region, Artificial Intelligence in Ultrasound Imaging Market Profile of Manufacturers-players are studied on the basis of SWOT, their products, production, value, financials, and other vital factors.

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Market Analysis and Size:

In recent years, Artificial Intelligence in Ultrasound Imaging have become a significant need across health systems. According to the survey, hospitals account for nearly 2/5th of total adoption of Artificial Intelligence in Ultrasound Imaging , indicating that there has been significant acceptance by medical institutes in recent years. Medical institutes and ambulatory surgical facilities are projected to provide many prospects for Artificial Intelligence in Ultrasound Imaging makers in the next years.

Artificial Intelligence in Ultrasound Imaging Market survey report range from latest trends, market segmentation, new market entry, industry forecasting, target market analysis, future directions, opportunity identification, strategic analysis, insights to innovation. This report explains several market factors such as market estimates and forecasts, entry strategies, opportunity analysis, market positioning, competitive landscape, product positioning, market assessment and viability studies. Market drivers, market restraints, opportunities and challenges are also evaluated in this report under market overview which gives helpful insights to businesses for taking right moves. Artificial Intelligence in Ultrasound Imaging Market document is bestowed with full loyalty to provide the best service and recommendations.

Report Coverage-

It envisages Porters five forces analysis for precise market prediction.It incorporates a SWOT analysis of the market.It highlights various restraints to market growth and suggests strategies to overcome them.It showcases the various strategies adopted by key market players to acquire growth.It highlights the latest industry developments.

Market Definition

Artificial Intelligence in Ultrasound Imaging has been developed in the current years. They are purely an expansion of technology meant to help enhance the diagnosis of ailments. The Artificial Intelligence in Ultrasound Imaging are known to be accompanied by computer-aided auscultation programs or software that aid in the recording and visualizing the sounds for accurate and early diagnosis of the disease condition.

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Artificial Intelligence in Ultrasound Imaging Market will Grow at a Booming CAGR of 9.76% by 2028 - Digital Journal

Artificial Intelligence in Diagnostics Market: Increasing Utilization of AI in Different Medical Care Fields to Drive the Market – BioSpace

Wilmington, Delaware, United States, Transparency Market Research Inc. The increasing need for improving patient care and reducing treatment costs is a primary factor augmenting the growth of global artificial intelligence in the diagnostics market. The growing adoption and popularity of artificial intelligence in clinical imaging brings about quicker judgments and decreased mistakes when contrasted with a conventional examination of pictures delivered by X-beams and MRIs. Simulated intelligence brings more abilities to most diagnostics, including malignancy screening and chest CT tests pointed toward detecting COVID-19.

The global artificial intelligence in the diagnostics market is classified based on component, diagnosis type, and region. In terms of components, the market is divided into three parts namely, services, hardware, and software. Based on classification by diagnosis type, the market is grouped into neurology, chest and lung, radiology, pathology, oncology, cardiology, and others.

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The report provides an in-depth analysis of the global artificial intelligence in the diagnostics market and emphasizes the prime growth trajectories. Besides this, the report also highlights the impact of the novel COVID19 pandemic on this market and how revenues can be drawn for this market in the coming years. The report also discusses the table of segmentation in detail and lists the names of the leading segments and players functioning in this market. The report is available for sale on the company website.

Artificial Intelligence in Diagnostics Market: Company Profile

Companies operating in the global artificial intelligence in the diagnostics market are indulging in joint ventures and collaborative efforts to gain an upper hand in the overall market competition. Apart from this, players are also investing in the research and development of better therapeutics via artificial intelligence and machine learning to gain an upper hand in the overall market competition.

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Some of the prominent players of the global artificial intelligence in the diagnostics market include:

Artificial Intelligence in Diagnostics Market: Notable Developments

Clalit Health Services and Zebra Medical Vision entered into a strategic partnership for the development of cloud-based imaging AI to serve large-scale HMOs in November 2020.

Artificial Intelligence in Diagnostics Market: Trends and Opportunities

Increasing utilization of AI in different medical care fields, including diagnostics and the rising commonness of constant sicknesses, is a portion of the key variables driving the reception of artificial intelligence in diagnostics, is bolstering growth. Likewise, the growing deficiency of the general wellbeing labor force is further supporting the development and reception of innovation-based answers for better persistent administration and analysis.

The rising interest for reducing the expense of determination, reducing machine personal time, and enhancing patient consideration is a portion of the key elements propelling the utilization of AI-based analytic arrangements. Also, increasing interest and need for financially savvy symptomatic advances and methods, speedy demonstrative information age and solidification, and proficient report investigation are a couple of different variables expected to drive the development of this market. This has prompted the improvement of AI arrangements that would to cater these growing necessities.

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Artificial Intelligence in Diagnostics Market: Regional Analysis

Geographically, North America is holding the largest share in the global artificial intelligence in the diagnostics market on account of the presence of an established healthcare infrastructure facility and the latest medical aid. The presence of innovative diagnostic software and the rising adoption of IT healthcare solutions are factors augmenting the growth of this region. Besides this, the growing popularity of AI-driven surgeries and minimally invasive operations are also expected to help this region continue dominating the market in the coming years.

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Artificial Intelligence in Diagnostics Market: Increasing Utilization of AI in Different Medical Care Fields to Drive the Market - BioSpace

Artificial Intelligence, Critical Systems, and the Control Problem – HS Today – HSToday

Artificial Intelligence (AI) is transforming our way of life from new forms of social organization and scientific discovery to defense and intelligence. This explosive progress is especially apparent in the subfield of machine learning (ML), where AI systems learn autonomously by identifying patterns in large volumes of data.[1] Indeed, over the last five years, the fields of AI and ML have witnessed stunning advancements in computer vision (e.g., object recognition), speech recognition, and scientific discovery.[2], [3], [4], [5] However, these advances are not without risk as transformative technologies are generally accompanied by a significant risk profile, with notable examples including the discovery of nuclear energy, the Internet, and synthetic biology. Experts are increasingly voicing concerns over AI risk from misuse by state and non-state actors, principally in the areas of cybersecurity and disinformation propagation. However, issues of control for example, how advanced AI decision-making aligns with human goals are not as prominent in the discussion of risk and could ultimately be equally or more dangerous than threats from nefarious actors. Modern ML systems are not programmed (as programming is typically understood), but rather independently developed strategies to complete objectives, which can be mis-specified, learned incorrectly, or executed in unexpected ways. This issue becomes more pronounced as AI becomes more ubiquitous and we become more reliant on AI decision-making. Thus, as AI is increasingly entwined through tightly coupled critical systems, the focus must expand beyond accidents and misuse to the autonomous decision processes themselves.

The principal mid- to long-term risks from AI systems fall into three broad categories: risks of misuse or accidents, structural risks, and misaligned objectives. The misuse or accident category includes things such as AI-enabled cyber-attacks with increased speed and effectiveness or the generation and distribution of disinformation at scale.[6] In critical infrastructures, AI accidents could manifest as system failures with potential secondary and tertiary effects across connected networks. A contemporary example of an AI accident is the New York Stock Exchange (NYSE) Flash Crash of 2010, which drove the market down 600 points in 5 minutes.[7] Such rapid and unexpected operations from algorithmic trading platforms will only increase in destructive potential as systems increase in complexity, interconnectedness, and autonomy.

The structural risks category is concerned with how AI technologies shape the social and geopolitical environment in which they are deployed. Important contemporary examples include the impact of social media content selection algorithms on political polarization or uncertainty in nuclear deterrence and the offense-to-defense balance.[8],[9] For example, the integration of AI into critical systems, including peripheral processes (e.g., command and control, targeting, supply chain, and logistics), can degrade multilateral trust in deterrence.[10] Indeed, increasing autonomy in all links of the national defense chain, from decision support to offensive weapons deployment, compounds the uncertainty already under discussion with autonomous weapons.[11]

Misaligned objectives is another important failure mode. Since ML systems develop independent strategies, a concern is that the AI systems will misinterpret the correct objectives, develop destructive subgoals, or complete them in an unpredictable way. While typically grouped together, it is important to clarify the differences between a system crash and actions executed by a misaligned AI system so that appropriate risk mitigation measures can be evaluated. Understanding the range of potential failures may help in the allocation of resources for research on system robustness, interpretability, or AI alignment.

At its most basic level, AI alignment involves teaching AI systems to accurately capture what we want and complete it in a safe and ethical manner. Misalignment of AI systems poses the highest downside risk of catastrophic failures. While system failures by themselves could be immensely damaging, alignment failures could include unexpected and surprising actions outside the systems intent or window of probability. However, ensuring the safe and accurate interpretation of human objectives is deceptively complex in AI systems. On the surface, this seems straightforward, but the problem is far from obvious with unimaginably complex subtleties that could lead to dangerous consequences.

In contrast with nuclear weapons or cyber threats, where the risks are more obvious, risks from AI misalignment can be less clear. These complexities have led to misinterpretation and confusion with some attributing the concerns to disobedient or malicious AI systems.[12] However, the concerns are not that AI will defy its programming but rather that it will follow the programming exactly and develop novel, unanticipated solutions. In effect, the AI will pursue the objective accurately but may yield an unintended, even harmful, consequence. Googles Alpha Go program, which defeated the world champion Go[13] player in 2016, provides an illustrative example of the potential for unexpected solutions. Trained on millions of games, Alpha Gos neural network learned completely unexpected actions outside of the human frame of reference.[14] As Chris Anderson explains, what took the human brain thousands of years to optimize Googles Alpha Go completed in three years, executing better, almost alien solutions that we hadnt even considered.[15] This novelty illustrates how unpredictable AI systems can be when permitted to develop their own strategies to accomplish a defined objective.

To appreciate how AI systems pose these risks, by default, it is important to understand how and why AI systems pursue objectives. As described, ML is designed not to program distinct instructions but to allow the AI to determine the most efficient means. As learning progresses, the training parameters are adjusted to minimize the difference between the pursued objective and the actual value by incentivizing positive behavior (known as reinforcement learning, or RL).[16],[17] Just as humans pursue positive reinforcement, AI agents are goal-directed entities, designed to pursue objectives, whether the goal aligns with the original intent or not.

Computer science professor Steve Omohundro illustrates a series of innate AI drives that systems will pursue unless explicitly counteracted.[18] According to Omohundro, distinct from programming, AI agents will strive to self-improve, seek to acquire resources, and be self-protective.[19] These innate drives were recently demonstrated experimentally, where AI agents tend to seek power over the environment to achieve objectives most efficiently.[20] Thus, AI agents are naturally incentivized to seek out useful resources to accomplish an objective. This power-seeking behavior was reported by Open AI, where two teams of agents, instructed to play hide-and-seek in a simulated environment, proceeded to horde objects from the competition in what Open AI described as tool use distinct from the actual objective.[21] The AI teams learned that the objects were instrumental in completing the objective.[22] Thus, a significant concern for AI researchers is the undefined instrumental sub-goals that are pursued to complete the final objective. This tendency to instantiate sub-goals is coined the instrumental convergence thesis by Oxford philosopher Nick Bostrom. Bostrom postulated that intermediate sub-goals are likely to be pursued by an intelligent agent to complete the final objective more efficiently.[23] Consider an advanced AI system optimized to ensure adequate power between several cities. The agent could develop a sub-goal of capturing and redirecting bulk power from other locations to ensure power grid stability. Another example is an autonomous weapons system designed to identify targets that develop a unique set of intermediate indicators to determine the identity and location of the enemy. Instrumental sub-goals could be as simple as locking a computer-controlled access door or breaking traffic laws in an autonomous car, or as severe as destabilizing a regional power grid or nuclear power control system. These hypothetical and novel AI decision processes raise troubling questions in the context of conflict or safety of critical systems. The range of possible AI solutions are too large to consider and can only get more consequential as systems become more capable and complex. The effect of AI misalignment could be disastrous if the AI discovers an unanticipated optimal solution to a problem that results in a critical system becoming inoperable or yielding a catastrophic result.

While the control problem is troubling by itself, the integration of multiagent systems could be far more dangerous and could lead to other (as of now unanticipated) failure modes between systems. Just like complex societies, complex agent communities could manifest new capabilities and emergent failure modes unique to the complex system. Indeed, AI failures are unlikely to happen in isolation and the roadmap for multiagent AI environments is currently underway in both the public and private sectors.

Several U.S. government initiatives for next-generation intelligent networks include adaptive learning agents for autonomous processes. The Armys Joint All-Domain Command and Control (JADC2) concept for networked operations and the Resilient and Intelligent Next-Generation Systems (RINGS) program, put forth by the National Institute of Standards and Technology (NIST), are two notable ongoing initiatives.[24], [25] Literature on cognitive Internet of Things (IoT) points to the extent of autonomy planned for self-configuring, adaptive AI communities and societies to steer networks through managing user intent, supervision of autonomy, and control.[26] A recent report from the worlds largest technical professional organization, IEEE, outlines the benefits of deep reinforcement learning (RL) agents for cyber security, proposing that, since RL agents are highly capable of solving complex, dynamic, and especially high-dimensional problems, they are optimal for cyber defense.[27] Researchers propose that RL agents be designed and released autonomously to configure the network, prevent cyber exploits, detect and counter jamming attacks, and offensively target distributed denial-of-service attacks.[28] Other researchers submitted proposals for automated penetration-testing, the ability to self-replicate the RL agents, while others propose cyber-red teaming autonomous agents for cyber-defense.[29], [30], [31]

Considering the host of problems discussed from AI alignment, unexpected side effects, and the issue of control, jumping headfirst into efforts that give AI meaningful control over critical systems (such as the examples described above) without careful consideration of the potential unexpected (or potentially catastrophic) outcomes does not appear to be the appropriate course of action. Proposing the use of one autonomous system in warfare is concerning but releasing millions into critical networks is another matter entirely. Researcher David Manheim explains that multiagent systems are vulnerable to entirely novel risks, such as over-optimization failures, where optimization pressure allows individual agents to circumvent designed limits.[32] As Manheim describes, In many-agent systems, even relatively simple systems can become complex adaptive systems due to agent behavior.[33] At the same time, research demonstrates that multiagent environments lead to greater agent generalization, thus reducing the capability gap that separates human intelligence from machine intelligence.[34] In contrast, some authors present multiagent systems as a viable solution to the control problem, with stable, bounded capabilities, and others note the broad uncertainty and potential for self-adaptation and mutation.[35] Yet, the author admits that there are risks and the multiplicative growth of RL agents could potentially lead to unexpected failures, with the potential for the manifestation of malignant agential behaviors.[36],[37] AI researcher Trent McConaughy highlights the risk from adaptive AI systems, specifically decentralized autonomous organizations (DAO) in blockchain networks. McConaughy suggests that rather than a powerful AI system taking control of resources, as is typically discussed, the situation may be far more subtle where we could simply hand over global resources to self-replicating communities of adaptive AI systems (e.g., Bitcoins increasing energy expenditures that show no sign of slowing).[38]

Advanced AI capabilities in next-generation networks that dynamically reconfigure and reorganize network operations hold undeniable risks to security and stability.[39],[40] A complex landscape of AI agents, designed to autonomously protect critical networks or conduct offensive operations, would invariably need to develop subgoals to manage the diversity of objectives. Thus, whether individual systems or autonomous collectives, the web of potential failures and subtle side-effects could unleash unpredictable dangers leading to catastrophic second- and third-order effects. As AI systems are currently designed, understanding the impact of the subgoals (or even their existence) could be extremely difficult or impossible. The AI examples above illustrate critical infrastructure and national security cases that are currently in discussion, but the reality could be far more complex, unexpected, and dangerous. While most AI researchers expect that safety will develop concurrently with system autonomy and complexity, there is no certainty in this proposition. Indeed, if there is even a minute chance of misalignment in a deployed AI system (or systems) in critical infrastructure or national defense it is important that researchers dedicate a portion of resources to evaluating the risks. Decision makers in government and industry must consider these risks and potential means to mitigate them before generalized AI systems are integrated into critical and national security infrastructure, because to do otherwise could lead to catastrophic failure modes that we may not be able to fully anticipate, endure, or overcome.

Disclaimer: The authors are responsible for the content of this article. The views expressed do not reflect the official policy or position of the National Intelligence University, the National Geospatial Intelligence Agency, the Department of Defense, the Office of the Director of National Intelligence, the U.S. Intelligence Community, or the U.S. Government.

Anderson, Chris. Life. In Possible Minds: Twenty-Five Ways of Looking at AI, by John Brockman, 150. New York: Penguin Books, 2019.

Avatrade Staff. The Flash Crash of 2010. Avatrade. August 26, 2021. https://www.avatrade.com/blog/trading-history/the-flash-crash-of-2010 (accessed August 24, 2022).

Baker, Bowen, et al. Emergent Tool Use From Multi-Agent Autocurricula. arXiv:1909.07528v2, 2020.

Berggren, Viktor, et al. Artificial intelligence in next-generation connected systems. Ericsson. September 2021. https://www.ericsson.com/en/reports-and-papers/white-papers/artificial-intelligence-in-next-generation-connected-systems (accessed May 3, 2022).

Bostrom, Nick. The Superintelligent Will: Motivation and Instrumental Rationality in Advanced Artificial Agents. Minds and Machines 22, no. 2 (2012): 71-85.

Brown, Tom B., et al. Language Models are Few-Shot Learners. arXiv:2005.14165, 2020.

Buchanan, Ben, John Bansemer, Dakota Cary, Jack Lucas, and Micah Musser. Georgetown University Center for Security and Emerging Technology. Automating Cyber Attacks: Hype and Reality. November 2020. https://cset.georgetown.edu/publication/automating-cyber-attacks/.

Byford, Sam. AlphaGos battle with Lee Se-dol is something Ill never forget. The Verge. March 15, 2016. https://www.theverge.com/2016/3/15/11234816/alphago-vs-lee-sedol-go-game-recap (accessed August 19, 2022).

Drexler, K Eric. Reframing Superintelligence: Comprehensive AI Services as General Intelligence. Future of Humanity Institute. 2019. https://www.fhi.ox.ac.uk/wp-content/uploads/Reframing_Superintelligence_FHI-TR-2019-1.1-1.pdf (accessed August 19, 2022).

Duettmann, Allison. WELCOME NEW PLAYERS | Gaming the Future. Foresight Institute. February 14, 2022. https://foresightinstitute.substack.com/p/new-players?s=r (accessed August 19, 2022).

Edison, Bill. Creating an AI red team to protect critical infrastructure. MITRE Corporation. September 2019. https://www.mitre.org/publications/project-stories/creating-an-ai-red-team-to-protect-critical-infrastructure (accessed August 19, 2022).

Etzioni, Oren. No, the Experts Dont Think Superintelligent AI is a Threat to Humanity. MIT Technology Review. September 20, 2016. https://www.technologyreview.com/2016/09/20/70131/no-the-experts-dont-think-superintelligent-ai-is-a-threat-to-humanity/ (accessed August 19, 2022).

Gary, Marcus, Ernest Davis, and Scott Aaronson. A very preliminary analysis of DALL-E 2. arXiv:2204.13807, 2022.

GCN Staff. NSF, NIST, DOD team up on resilient next-gen networking. GCN. April 30, 2021. https://gcn.com/cybersecurity/2021/04/nsf-nist-dod-team-up-on-resilient-next-gen-networking/315337/ (accessed May 1, 2022).

Jumper, John, et al. Highly accurate protein structure prediction with AlphaFold. Nature 596 (August 2021): 583589.

Kallenborn, Zachary. Swords and Shields: Autonomy, AI, and the Offense-Defense Balance. Georgetown Journal of International Affairs. November 22, 2021. https://gjia.georgetown.edu/2021/11/22/swords-and-shields-autonomy-ai-and-the-offense-defense-balance/ (accessed August 19, 2022).

Kegel, Helene. Understanding Gradient Descent in Machine Learning. Medium. November 17, 2021. https://medium.com/mlearning-ai/understanding-gradient-descent-in-machine-learning-f48c211c391a (accessed August 19, 2022).

Krakovna, Victoria. Specification gaming: the flip side of AI ingenuity. Medium. April 11, 2020. https://deepmindsafetyresearch.medium.com/specification-gaming-the-flip-side-of-ai-ingenuity-c85bdb0deeb4 (accessed August 19, 2022).

Littman, Michael L, et al. Gathering Strength, Gathering Storms: The One Hundred Year Study on Artificial Intelligence (AI100) Study Panel Report. Stanford University. September 2021. http://ai100.stanford.edu/2021-report (accessed August 19, 2022).

Manheim, David. Overoptimization Failures and Specification Gaming in Multi-agent Systems. Deep AI. October 16, 2018. https://deepai.org/publication/overoptimization-failures-and-specification-gaming-in-multi-agent-systems (accessed August 19, 2022).

Nguyen, Thanh Thi, and Vijay Janapa Reddi. Deep Reinforcement Learning for Cyber Security. IEEE Transactions on Neural Networks and Learning Systems. IEEE, 2021. 1-17.

Omohundro, Stephen M. The Basic AI Drives. Proceedings of the 2008 conference on Artificial General Intelligence 2008: Proceedings of the First AGI Conference. Amsterdam: IOS Press, 2008. 483492.

Panfili, Martina, Alessandro Giuseppi, Andrea Fiaschetti, Homoud B. Al-Jibreen, Antonio Pietrabissa, and Franchisco Delli Priscoli. A Game-Theoretical Approach to Cyber-Security of Critical Infrastructures Based on Multi-Agent Reinforcement Learning. 2018 26th Mediterranean Conference on Control and Automation (MED). IEEE, 2018. 460-465.

Pico-Valencia, Pablo, and Juan A Holgado-Terriza. Agentification of the Internet of Things: A Systematic Literature Review. International Journal of Distributed Sensor Networks 14, no. 10 (2018).

Pomerleu, Mark. US Army network modernization sets the stage for JADC2. C4ISRNet. February 9, 2022. https://www.c4isrnet.com/it-networks/2022/02/09/us-army-network-modernization-sets-the-stage-for-jadc2/ (accessed August 19, 2022).

Russell, Stewart. Human Compatible: Artificial Intelligence and the Problem of Control. New York: Viking, 2019.

Shah, Rohin. Reframing Superintelligence: Comprehensive AI Services as General Intelligence. AI Alignment Forum. January 8, 2019. https://www.alignmentforum.org/posts/x3fNwSe5aWZb5yXEG/reframing-superintelligence-comprehensive-ai-services-as (accessed August 19, 2022).

Shahar, Avin, and SM Amadae. Autonomy and machine learning at the interface of nuclear weapons, computers and people. In The Impact of Artificial Intelligence on Strategic Stability and Nuclear Risk, by Vincent Boulanin, 105-118. Stockholm: Stockholm International Peace Research Institute, 2019.

Trevino, Marty. Cyber Physical Systems: The Coming Singularity. Prism 8, no. 3 (2019): 4.

Turner, Alexander Matt, Logan Smith, Rohin Shah, Andrew Critch, and Prasad Tadepalli. Optimal Policies Tend to Seek Power. arXiv:1912.01683, 2021: 8-9.

Winder, Phil. Automating Cyber-Security With Reinforcement Learning. Winder.AI. n.d. https://winder.ai/automating-cyber-security-with-reinforcement-learning/ (accessed August 19, 2022).

Zeng, Andy, et al. Socratic Models: Composing Zero-Shot Multimodal Reasoning with Language. arXiv:2204.00598 (arXiv), April 2022.

Zewe, Adam. Does this artificial intelligence think like a human? April 6, 2022. https://news.mit.edu/2022/does-this-artificial-intelligence-think-human-0406 (accessed August 19, 2022).

Zwetsloot, Remco, and Allan Dafoe. Lawfare. Thinking About Risks From AI: Accidents, Misuse and Structure. February 11, 2019. https://www.lawfareblog.com/thinking-about-risks-ai-accidents-misuse-and-structure (accessed August 19, 2022).

[1] (Zewe 2022)

[2] (Littman, et al. 2021)

[3] (Jumper, et al. 2021)

[4] (Brown, et al. 2020)

[5] (Gary, Davis and Aaronson 2022)

[6] (Buchanan, et al. 2020)

[7] (Avatrade Staff 2021)

[8] (Russell 2019, 9-10)

[9] (Zwetsloot and Dafoe 2019)

[12] (Etzioni 2016)

[13] GO is an ancient Chinese strategy board game

[14] (Byford 2016)

[15] (Anderson 2019, 150)

[16] (Kegel 2021)

[17] (Krakovna 2020)

[18] (Omohundro 2008, 483-492)

[19] Ibid., 484.

[20] (Turner, et al. 2021, 8-9)

[21] (Baker, et al. 2020)

[22] Ibid.

[23] (Bostrom 2012, 71-85)

[24] (GCN Staff 2021)

[25] (Pomerleu 2022)

[26] (Berggren, et al. 2021)

[27] (Nguyen and Reddi 2021)

[28] Ibid.

[29] (Edison 2019)

[30] (Panfili, et al. 2018)

[31] (Winder n.d.)

[32] (Manheim 2018)

[33] Ibid.

[34] (Zeng, et al. 2022)

[35] (Drexler 2019, 18)

[36] Ibid.

[37] (Shah 2019)

[38] (Duettmann 2022)

[39] (Trevino 2019)

[40] (Pico-Valencia and Holgado-Terriza 2018)

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Artificial Intelligence, Critical Systems, and the Control Problem - HS Today - HSToday

The air force industry found it harder to fill artificial intelligence vacancies in Q2 2022 – Airforce Technology

Artificial intelligence related jobs that were closed during Q2 2022 had been online for an average of 30 days when they were taken offline.

This was an increase compared to the equivalent figure a year earlier, indicating that the required skillset for these roles has become harder to find in the past year.

Artificial intelligence is one of the topics that GlobalData, our parent company and from whom the data for this article is taken, have identified as being a key disruptive technology force facing companies in the coming years. Companies that excel and invest in these areas now are thought to be better prepared for the future business landscape and better equipped to survive unforeseen challenges.

On a regional level, these roles were hardest to fill in the Middle East and Africa, with related jobs that were taken offline in Q2 2022 having been online for an average of 31 days.

The next most difficult place to fill these roles was found to be North America, while Europe was in third place.

At the opposite end of the scale, jobs were filled fastest in Asia-Pacific, with adverts taken offline after ten days on average.

While the air force industry found it harder to fill these roles in the latest quarter, these companies actually found it easier to recruit artificial intelligence jobs than the wider market, with ads online for 25% less time on average compared to similar jobs across the entire jobs market.

GlobalData's job analytics database tracks the daily hiring patterns of thousands of companies across the world, drawing in jobs as they're posted and tagging them with additional layers of data on everything from the seniority of each position to whether a job is linked to wider industry trends.

You can keep track of the latest data from this database as it emerges by visiting our live dashboard here.

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The air force industry found it harder to fill artificial intelligence vacancies in Q2 2022 - Airforce Technology

New artificial intelligence software has worrisome implications – The Ticker

Art produced by artificial intelligence is popping up more and more on peoples feeds without them knowing.

This art can range from simple etchings to surrealist imagery. It can look like a bowl of soup or a monster or cats playing chess on a beach.

While a boom in AI that has the capacity to create art has been electrifying the high tech world, these new developments in AI have many worrisome implications.

Despite positive uses, newer AI systems have the potential to pose as a tool of misinformation, create bias and undervalue artists skills.

In the beginning of 2021, advances in AI created deep-learning models that could generate images simply by being fed a description of what the user was imagining.

This includes OpenAIs DALL-E 2, Midjourney, Hugging Faces Craiyon, Metas Make-A-Scene, Googles Imagen and many others.

With the help of skillful language and creative ideation, these tools marked a huge cultural shift and eliminated technical human labor.

A San Francisco based AI company launched DALL-E paying homage to WALL-E, the 2008 animated movie, and Salvador Dal, the surrealist painterlast year, a system which can create digital images simply by being fed a description of what the user wants to see.

However, it didnt immediately capture the public interest.

It was only when OpenAI introduced DALL-E 2, an improved version of DALL-E, that the technology began to gain traction.

DALL-E 2 was marketed as a tool for graphic artists, allowing them shortcuts to creating and editing digital images.

Similarly, restrictive measures were added to the software to prevent its misuse.

The tool is not yet available to everyone. It currently has 100,000 users globally, and the company hopes to make it accessible to at least 1 million in the near future.

We hope people love the tool and find it useful. For me, its the most delightful thing to play with weve created so far. I find it to be creativity-enhancing, helpful for many different situations, and fun in a way I havent felt from technology in a while, CEO of OpenAI Sam Altman wrote.

However, the new technology has many alarming implications. Experts say that if this sort of technology were to improve, it could be used to spread misinformation, as well as generate pornography or hate speech.

Similarly, AI systems might show bias toward women and people of color because the data is being pulled from pools and online text which exhibit a similar bias.

You could use it for good things, but certainly you could use it for all sorts of other crazy, worrying applications, and that includes deep fakes, Professor Subbarao Kambhampati told The New York Times. Kambhampati teaches computer science at Arizona State University.

The company content policy prohibits harassment, bullying, violence and generating sexual and political content. However, users who have access can still create any sort of imagery from the data set.

Its going to be very hard to ensure that people dont use them to make images that people find offensive, AI researcher Toby Walsh told The Guardian.

Walsh warned that the public should generally be more wary of the things they see and read online, as fake or misleading images are currently flooding the internet.

The developers of DALL-E are actively trying to fight against the misuse of their technology.

For instance, researchers are attempting to mitigate potentially dangerous content in the training dataset, particularly imagery that might be harmful toward women.

However, this cleansing process also results in the generation of fewer images of women, contributing to an erasure of the gender.

Bias is a huge industry-wide problem that no one has a great, foolproof answer to, Miles Brundage, head of policy research at OpenAI, said. So a lot of the work right now is just being transparent and upfront with users about the remaining limitations.

However, OpenAI is not the only company with the potential to wreak havoc in cyberspace.

While OpenAI did not disclose its code for DALL-E 2, a London technology startup, Stability AI, shared the code for a similar, image-generating model for anyone to use and rebuilt the program with fewer restrictions.

The companys founder and CEO, Emad Mostaque, told The Washington Post he believes making this sort of technology to the public is necessary, regardless of the potential dangers. I believe control of these models should not be determined by a bunch of self-appointed people in Palo Alto, he said. I believe they should be open.

Mostaque is displaying an innately reckless strain of logic. Allowing these powerful AI tools to fall into the hands of just anyone, will undoubtedly result in drastic, wide-scale consequences.

Technology, particularly software like DALL-E 2, can easily be misused as tools to spread hate and misinformation, and therefore need to be regulated before its too late.

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New artificial intelligence software has worrisome implications - The Ticker

Three Keys to Implementing Artificial Intelligence in Drug Discovery – Pharmacy Times

AI-based technologies are increasingly being used for things such as virtual screening, physics-based biological activity assessment, and drug crystal-structure prediction.

Despite the buzz around artificial intelligence (AI), most industry insiders know that the use of machine learning (ML) in drug discovery is nothing new. For more than a decade, researchers have used computational techniques for many purposes, such as finding hits, modeling drug-protein interactions, and predicting reaction rates.

Whatisnew is the hype. As AI has taken off in other industries, countless start-ups have emerged promising to transform drug discovery and design with AI-based technologies for things such as virtual screening, physics-based biological activity assessment, and drug crystal-structure prediction.

Investors have made huge bets that these start-ups will succeed. Investment reached$13.8 billionin 2020 and more than one-third of large-pharma executivesreportusing AI technologies.

Although a few AI-native candidates are in clinical trials,around 90%remain in discovery or preclinical development, so it will take years to see if the bets pay off.

Artificial Expectations

Along with big investments comes high expectationsdrug the undruggable, drastically shorten timelines, virtually eliminate wet lab work.Insider Intelligenceprojectsthat discovery costs could be reduced by as much as 70% with AI.

Unfortunately, its just not that easy. The complexity of human biology precludes AI from becoming a magic bullet. On top of this, data must be plentiful and clean enough to use.

Models must be reliable, prospective compounds need to be synthesizable, and drugs have to pass real-life safety and efficacy tests. Although this harsh reality hasnt slowed investment, it has led to fewer companies receiving funding, to devaluations, and to discontinuation of some more lofty programs, such as IBMs Watson AI for drug discovery.

This begs the question: Is AI for drug discovery more hype than hope? Absolutely not.

Do we need to adjust our expectations and position for success? Absolutely, yes. But how?

Three Keys to Implementing AI in Drug Discovery

Implementing AI in drug discovery requires reasonable expectations, clean data, and collaboration. Lets take a closer look.

1. Reasonable Expectations

AI can be a valuable part of a companys larger drug discovery program. But, for now, its best thought of as one option in a box of tools. Clarifying when, why, and how AI is used is crucial, albeit challenging.

Interestingly, investment has largely fallen to companies developing small molecules, which lend themselves to AI because theyre relatively simple compared to biologics, and also because there are decades of data upon which to build models. There is also great variance in the ease of applying AI across discovery, with models for early screening and physical-property prediction seemingly easier to implement than those for target prediction and toxicity assessment.

Although the potential impact of AI is incredible, we should remember that good things take time.Pharmaceutical Technologyrecently askedits readers to project how long it might take for AI to reach its peak in drug discovery, and by far, the most common answer was more than 9 years.

2. Clean Data

The main challenge to creating accurate and applicable AI models is that the available experimental data is heterogenous, noisy, and sparse, so appropriate data curation and data collection is of the utmost importance.

This quote from a2021Expert Opinion on Drug Discoveryarticlespeaks wonderfully to the importance of collecting clean data. While it refers to ADEMT and activity prediction models, the assertion also holds true in general. AI requires good data, and lots of it.

But good data are hard to come by. Publicly available data can be inadequate, forcing companies to rely on their own experimental data and domain knowledge.

Unfortunately, many companies struggle to capture, federate, mine, and prepare their data, perhaps due to skyrocketing data volumes, outdated software, incompatible lab systems, or disconnected research teams. Success with AI will likely elude these companies until they implement technology and workflow processes that let them:

3. Collaboration

Companies hoping to leverage AI need a full view of all their data, not just bits and pieces. This demands a research infrastructure that lets computational and experimental teams collaborate, uniting workflows and sharing data across domains and locations. Careful process and methodology standardization is also needed to ensure that results obtained with the help of AI are repeatable.

Beyond collaboration within organizations, key industry players are also collaborating to help AI reach its full potential, making security and confidentiality key concerns. For example, many large pharma companies have partnered with start-ups to help drive their AI efforts.

Collaborative initiatives, such as the MELLODDY Project, have formed to help companies leverage pooled data to improve AI models and vendors such as Dotmatics are building AI models using customers collective experimental data.

About the Author

Haydn Boehm is Director of Product Marketing at Dotmatics, a leader in R&D scientific software connecting science, data, and decision-making. Its enterprise R&D platform and scientists favorite applications drive efficiency and accelerate innovation.

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Three Keys to Implementing Artificial Intelligence in Drug Discovery - Pharmacy Times

Artificial Intelligence (AI) Robots Market Projected to Reach worth $35.3 billion by 2026 Exclusive Report by MarketsandMarkets – GlobeNewswire

Chicago, Sept. 01, 2022 (GLOBE NEWSWIRE) -- Artificial Intelligence (AI) Robots Marketby Robot Type (Service, and Industrial), Technology (Machine Learning, Computer Vision, Context Awareness, and NPL), Offering, Application, and Geography (2021-2026)", Players profiled in this report are SoftBank (Japan), NVDIA (US), Intel (US), Microsoft (US), IBM (US), Hanson Robotics (China), Alphabet (US), Xilinx (US), ABB (Switzerland), Fanuc (Japan), Alphabet (US), Harman International (US), Kuka (Germany), Blue Frog Robotics (Paris).

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Browse in-depth TOC on Artificial Intelligence (AI) Robots Market178 - Tables81- Figures253 Pages

NVIDIA develops GPUs and delivers value to its consumers through PC, mobile, and cloud architectures. From focus on PC graphics, the company now emphasizes machine learning and various other AI technologies. NVIDIA addresses four large markets: gaming, visualization, data center, and automotive. NVIDIA has two reportable segments: Graphics and Compute & Networking. The Graphics segment includes GeForce GPUs for gaming and PCs, the GeForce NOW game-streaming service and related infrastructure, and solutions for gaming platforms; Quadro/NVIDIA RTX GPUs for enterprise design; GRID software for cloud-based visual and virtual computing; and automotive platforms for infotainment systems.

Intel provides computing, networking, data storage, and communication solutions worldwide. The company designs and develops key products and technologies that power the cloud and smart, connected world. Intel delivers computer, networking, and communication platforms to a broad set of customers, including OEMs, original design manufacturers (ODMs), cloud and communications service providers, and industrial, communications, and automotive equipment manufacturers. The company manufactures semiconductor chips, supplies the computing and communications industries with chips, boards, systems, and software that are integral in computers, servers, and networking and communications products.

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This research report categorizes the AI Robots market based on offering, robot type, technology, deployment mode, application and region.

AI Robots Market, by offering

AI Robots Market, by Robot Type

AI Robots Market, by Technology

AI Robots Market, by Deployment mode

AI Robots Market, by Application

Implementing automation technology and installing industrial robots throughout the production processes has helped industrial businesses enable human employees to dedicate more time to other demanding projects. This has improved quality, reduced risks for associates with dangerous tasks, and lowered the overall operational costs. As labor costs rise, automation technologies come as alternate options. Robots help complete monotonous tasks more quickly and consistently than humans.

With the adoption of technologies such as cloud computing, robots are now becoming networked. For instance, Ozobot & Evollve (US) offers Evo, which is equipped with OzoChat software for worldwide messaging between Evo robots. These networked robots can potentially be hacked, and their abilities can be adversely used. Also, global military & defense sector has started considering AI-based robots as a vital part of any military fleet.

AI-integrated robots are gaining traction with the increasing requirement of social robots to interact with humans and for assistance, among others. Assistant robots need to perform various tasks involving home security, patient care, companionship, and elderly assistance. Companies are now increasingly focusing on developing robots that are suitable for the entire family and excel in performing the abovementioned tasks.

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Artificial Intelligence (AI) Robots Market Projected to Reach worth $35.3 billion by 2026 Exclusive Report by MarketsandMarkets - GlobeNewswire

Intel ups its game in Artificial Intelligence; takes it to Indian schools – The Financial Express

As Artificial Intelligence (AI) becomes more mainstream, technology companies such as Intel seems to latched on to the trend. Intel plans to launch several initiatives such as AI for future workforce and AI for current workforce by the end of this year with an aim to build skill-ready workforce, Shweta Khurana, senior director Asia Pacific and Japan (APJ), government partnerships and initiatives, global government affairs, Intel told FE Education Online. AI for future workforce will cater to 18 years and above and AI for current workforce is for professionals with primary focus on women driven small and medium enterprises (SMEs), Khurana said. The programme will be delivered virtually by an Intel certified coach.

As per the company, the curriculum designed for AI for future workforce is technical; however; students does not require any prior domain knowledge. Furthermore, projects under the programme are focussed on industrial impacts such as common trade application, predictive maintenance, viral post protection, insurance fraud protection among others. Through virtual training in a real-world environment for three months learners will be exposed to the challenges, and how to build solutions for the same, Khurana added.

Earlier initiatives from Intel included Intel AI for youth, Responsible AI for Youth and AI for All based on Intel AI for Citizens program. Under these three initiatives, over 3,50,000 students have been trained with AI skills since 2019.

Under Intel AI for youth programmes the learners acquire technical skills in data science, computer vision and natural language processes as well as social skills focused on AI ethics and biases and AI solutions-building. For this, Intel has collaborated with the Central Board of Secondary Education (CBSE), and the Ministry of Education (MoE) and AI curriculum for students, setting up focused AI skill labs, and creation of AI-readiness by skilling facilitators in CBSE schools.

Responsible AI for youth initiative empowers government school students between eight to 12th grade with a new-age technology mindset, relevant skill sets, and access to required tools. Intel has collaborated with the Ministry of Electronics and Information Technology (MEitY), Government of India (GoI), National e-Governance Division (NeGD), to launch this programme.

In July 2021, Intel launched the AI For All initiative in collaboration with the MoE with the purpose of creating a basic understanding of AI for everyone in India. AI For All is a four hour, self-paced learning program that demystifies AI in an inclusive manner. It is applicable to a student or a stay-at-home parent, a professional in any field or even a senior citizen. The programme is aimed to demystify AI for one million Indian citizens in its first year.

Furthermore, in March 2022, Intel joined hands with the Department of Science and Technology (DST), GoI for its programme Building AI Readiness among Young Innovators that aims to build digital readiness among students between six to 10 grade enrolled under DSTs INSPIRE Awards MANAK scheme. The programme aims to build an AI-ready generation to empower students with the knowledge and skills to leverage AI in an inclusive way.

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Intel ups its game in Artificial Intelligence; takes it to Indian schools - The Financial Express