The Automation Revolution That Wasnt? – National Review

(VasilyevD/iStock/Getty Images Plus)A new study casts doubts on the notion that automation is fundamentally altering American life.

NRPLUS MEMBER ARTICLEEarly in the 2010s, academics and entrepreneurs began to raise concerns about the economic consequences of artificial intelligence. Technological advances, the thinking went, would soon render vast swathes of the labor force obsolete, deepening income inequality and destabilizing society. Proponents of the automation revolution thesis called on policymakers to cushion workers from the effects of technological displacement through fiscal transfers and increased job training for technical fields.

MIT economist Erik Brynjolfsson, a pioneer in the economics of AI, said in 2014 that job loss due to automation would be the biggest challenge of our society for the next decade. Six years into the decade in question, it is time to take stock of his prediction. Is it true, as former Secretary of the Treasury Lawrence Summers said, that rapid automation isnt some hypothetical future possibility but something thats emerging before us right now?

Not quite, say economists Keller Scholl and Robin Hanson. In a paper published last month, they found that over the past 20 years, both the level and growth rate of job automation have been more or less flat. According to their analysis of 1,505 expert reports published by the Occupational Information Network (O*NET), while many workers are losing their jobs to machines, they are doing so at roughly the same rate as in the past.

Among the 261 occupational characteristics reported by O*NET such as the degrees to which jobs require creativity, physical strength, or numeracy two stand out in predicting automation: the importance of machinery and the importance of routine tasks. Unsurprisingly, assembly-line workers and data-entry clerks are particularly vulnerable to automation.

But factory work has seen a trend of automation going back several decades. Those sounding the alarms on AI have warned that not only factory workers but also skilled knowledge workers would face competition from machines. Indeed, algorithms are said to be capable of customer service, medical diagnostics, and news writing, among numerous other tasks. Yet the analysis of Scholl and Hanson indicates that workers are far more likely to be displaced by relatively dated technologies: manufacturing machinery, word processors, and spreadsheets. In other words, the types of jobs being automated havent changed much, despite technological advances.

The study also considers the vulnerability of jobs to automation by computers and machine-learning algorithms in light of two metrics devised by academics, called computerizability and machine-learning suitability. While the potential of digital technologies and AI to replace a given occupation appears to be a strong predictor of automation, its significance disappears when other factors, such as routineness, are taken into consideration. Which is to say that the threat posed by artificial intelligence is more or less the same as that posed by older technologies.

The fundamental nature of automation hasnt changed over the past 20 years, Hanson tells National Review. Theres this AI media story thats been played over and over again for the last decade, and people are so familiar with it that they dont bother to research it.

These finding calls into question the need for policies to address automation, such as former Democratic presidential candidate Andrew Yangs flagship universal-basic-income (UBI) proposal. Endorsed by a growing number of politicians and technologists, UBI is premised on the belief that automation will eliminate millions of jobs. The evidence doesnt suggest the need for such large-scale structural changes to the U.S. economy, but the threat of automation serves as an easy talking point for politicians. People pitch what they want to pitch, and frame it in terms of automation, Hanson argues. You can be pretty confident that those recommending a certain policy response to AI wont change their minds in light of his studys findings.

Because it relies on subjective reporting, the paper does not definitively disprove the automation-revolution hypothesis. In general, it is hard to get an objective picture of the magnitude of automation, and it is possible that labor experts have underestimated the rate at which it is happening. Scholl and Hanson do find that the average job is significantly more susceptible to automation today than 20 years ago, even as the level of automation remains somewhat constant. And the papers central finding that jobs dependent on technology are more likely to be automated raises the possibility of a feedback loop in which automation begets automation, potentially spurring exponential growth in the number of jobs replaced by machines.

But that possibility remains remote, and the burden of proof lies with those arguing that technology is fundamentally transforming American life, and that we must fundamentally transform public policy in response. Until they can marshal convincing evidence, we should be skeptical of proposals that would remake the economy to fit their vision.

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Artificial Intelligence in Manufacturing Market Worth $16.7 Billion by 2026 – Exclusive Report by MarketsandMarkets – PRNewswire

CHICAGO, July 21, 2020 /PRNewswire/ -- According to the new market research report "Artificial Intelligence in Manufacturing Marketby Offering (Hardware, Software, and Services), Technology (Machine Learning, Computer Vision, Context-Aware Computing, and NLP), Application, End-user Industry and Region - Global Forecast to 2026", published by MarketsandMarkets, the Artificial Intelligence in Manufacturing Marketis expected to be valued at USD 1.1 billion in 2020 and is likely to reach USD 16.7 billion by 2026; it is expected to grow at a CAGR of 57.2% during the forecast period. The major drivers for the market are the increasing number of large and complex datasets (often known as big data), evolving Industrial IoT and automation, improving computing power, and increasing venture capital investments.

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The hardware segment in the AI in manufacturing market projected to grow at highest CAGR during forecast period

The hardware segment is projected to grow at the highest CAGR from 2020 to 2026. Most of the AI hardware manufacturers have been in the business of providing the same hardware components for other technologies such as connected cars, machine vision cameras, and IoT for a long time. This will enable the companies to transfer the technology easily and accordingly develop the AI hardware. Moreover, the increasing participation of startups in AI hardware is complementing the growth of the hardware segment.

Quality control application of AI in manufacturing market to grow at highest CAGR during forecast period

The quality control application is expected to register the highest CAGR during the forecast period. Governments impose regulations on maintaining the quality according to certain benchmarks; for instance, the USD Food and Drug Administration (FDA) imposes stringent guidelines to regulate the quality of pharmaceutical products in accordance with the Current Good Manufacturing Practices (CGMPs). The growing use of robotics and deep learning technology in the manufacturing industry is expected to drive the growth of the AI in manufacturing market for the quality control application

Browsein-depth TOC on"Artificial Intelligence in Manufacturing Market"

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AI in manufacturing market in APAC projected to grow at highest CAGR from 2020 to 2026

The AI in manufacturing market in APAC is expected to grow at the highest CAGR during 20202026. The presence of a large number of industries, especially in countries such as China, India, and Taiwan is resulting in the adoption of AI in the manufacturing sector in APAC. The increasing adoption of AI-based robots is also fueling the market's growth in this region.

NVIDIA Corporation (US), IBM Corporation (US), Alphabet Inc. (Google) (US), Microsoft Corporation (US), Intel Corporation (US), Siemens AG (Germany), General Electric Company (US), General Vision Inc. (US), Progress Software Corporation (US), Micron Technology Inc., (US), Mitsubishi Electric Corporation (Japan), Sight Machine (US), Cisco Systems Inc., (US), and SAP SE (Germany) are the prominent players of AI in manufacturing market.

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Global Artificial Intelligence (AI) in Agriculture Market 2020: by Top-Vendors, Products, Applications, Growth Strategies and Forecast 2025 – Cole of…

The new research report is entitled Global Artificial Intelligence (AI) in Agriculture Market Growth (Status and Outlook) 2020-2025 assists players in strengthening their overall growth and establishes a strong position. The report showcases a comprehensive study of the overall industry along with key industry drivers and restraints. The report in-depth analysis of critical subjects of the global Artificial Intelligence (AI) in Agriculture industry involving consumption, revenue, sales, production, trends, opportunities, geographic expansion, competition, segmentation, and challenges. The report is divided into product types, applications, and regions. These segments provide accurate calculations and forecasts for sales in terms of volume and value. This analysis can help customers increase their business and make calculated decisions.

NOTE:Our report highlights the major issues and hazards that companies might come across due to the unprecedented outbreak of COVID-19.

Global Artificial Intelligence (AI) in Agriculture Market Overview:

Market Historic Data (2015-2019): Industry trends, global revenue and outlook, competitive landscape, manufacturers and development trends, market segment, types, applications, and regions, sales revenue: market share, growth rate, and current market analysis.

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Market Size Forecast (2020-2025): Overall global Artificial Intelligence (AI) in Agriculture market size, segment by types, applications, and regions, key data (revenue), market size, market share, growth rate, growth, and product sales price, top players, market share, overview strategies, and products/services offered.

The report also presents the market competition landscape and a corresponding detailed analysis of the major vendors/manufacturers in the market. The key manufacturers covered in this report: IBM, Granular, Intel, SAP, Agribotix, Microsoft, aWhere, The Climate Corporation, Precision Hawk, Taranis, CropX, Gamaya, John Deere, Prospera Technologies, Vision Robotics, Resson, Harvest Croo Robotics, DTN, Cainthus,

Segment by type, the market is segmented into: Machine Learning, Computer Vision, Predictive Analytics,

Segment by application, the market is segmented into: Precision Farming, Livestock Monitoring, Drone Analytics, Agriculture Robots, Other

The global Artificial Intelligence (AI) in Agriculture industry report allows industry experts to generate confident capital expenditures and create tactics, enhance their business outlook, implement successfully, and operate sustainably. The report presents a full graphical representation of the information, recommendations, and results of the analysis tool to provide a sophisticated landscape and highlight key market players. The given regional evaluation will help the industry players to describe undiscovered geological markets.

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The Regional Landscape of The Market:

We have also covered all important regions and countries involved in the global Artificial Intelligence (AI) in Agriculture market report. The research offers an analysis of the geographical landscape of the global market, which is divided into regions such as Americas (United States, Canada, Mexico, Brazil), APAC (China, Japan, Korea, Southeast Asia, India, Australia), Europe (Germany, France, UK, Italy, Russia), Middle East & Africa (Egypt, South Africa, Israel, Turkey, GCC Countries). It includes data about several parameters related to the regional contribution. The study provides information regarding the sales generated through each region and the registered market share. Information related to the growth rate during the forecast period is included in the report. According to the report, the industry is projected to generate significant revenue during the forecast period.

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I Am a Model And I Know That Artificial Intelligence Will Eventually Take My Job – Vogue.com

A point of tension that is emerging with CGI models is that their creators arent just designing them as avatars, but also giving them entire backstories, personalities, and causes to champion. Take Blawko, a digital male model and self-proclaimed sex-symbol, with tattoos and a sarcastic sense of humor. He referenced being hungover in an interview with Dazed Digital. Or consider right-wing, pro-Trump Bermuda, whose bio describes her as unapologetic, and representing a breakthrough in modern political thought. Then there is Shudu Gram, who, hopes to champion diversity in the fashion world, collaborate with creators from emerging economies and under-represented communities, and get together with up-and-coming designers.

There are major issues of transparency and authenticity here because the beliefs and opinions dont actually belong to the digital models, they belong to the models creators. And if the creators cant actually identify with the experiences and groups that these models claim to belong to (i.e., person of color, LGBTQ, etc.), then do they have the right to actually speak on those issues? Or is this a new form of robot cultural appropriation, one in which digital creators are dressing up in experiences that arent theirs?

I connected with Cameron-James Wilson, the creator behind Shudu Gram, to talk more about this and ask whether he sees the ethical implications of it all. Wilson is white and male. Shudu is Black and identifies as female. I absolutely do, [see the ethical implications], which is why I work alongside writer, Ama Badu, who is a woman of color. Its important to have that voice. He went on to say that being an ex-fashion photographer allows him to create beautiful imagery, but when it comes to developing her story and her background, authenticity was needed. I want Shudus story and her background to be just as authentic as the way she looks.

But we human models have worked really hard to have our stories heard and our authentic experiences considered, and weve fought to change the perception that we are just a sample size or a prop for clothes. Weve mobilized in groups, such as the Model Mafia network that I am a part of, to advocate for social issues and push back on exclusivity in the fashion industry. In some cases our activism has even cost us jobs. But now that we are finally starting to see changes in the industry, digital models can just land the jobs that we took risks for. Or worse, brands can just create CGIs that champion causes instead of actually having to invest in those causes themselves.

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I Am a Model And I Know That Artificial Intelligence Will Eventually Take My Job - Vogue.com

IOSCO’s proposed guidance for regulation on the use of artificial intelligence and machine learning – Lexology

The International Organization of Securities Commissions (IOSCO) has recently issued a consultation report to propose guidance for members in regulating the use of artificial intelligence (AI) and machine learning (ML) by market intermediaries and asset managers (collectively, Firms). The consultation period will end on 26 October 2020. IOSCO will issue final guidance to its members based on the consultation conclusions. It is likely that IOSCO members, including the Hong Kong Securities and Futures Commission, will follow the guidance and in due course adopt IOSCOs suggested measures into their regulatory framework. The consultation report also includes a discussion of the existing regulatory framework for the use of technologies in different financial markets for reference purposes.

The consultation report describes AI as a combination of mass data, sufficient computing resources and machine learning, and describes ML as a method of designing a sequence of actions to solve a problem, which optimise automatically through experience, with or without human intervention. IOSCO noted the increasing use of AI and ML by market intermediaries in the provision of advisory and support services, risk management, client identification and monitoring, selection of trading algorithms and asset management/ portfolio management. For asset managers, AI and ML techniques may be deployed to optimise portfolio management, complement human investment decision-making processes by suggesting investment recommendations and improve internal research capabilities, as well as for back office functions.

Through its engagement with financial markets, IOSCO identified several risk areas involving the use of AI and ML and proposed six measures to regulate Firms use of AI and ML. For Hong Kong licensed corporations, these measures will be familiar from the electronic trading rules in Chapter 18 and Schedule 7 to the Code of Conduct for Persons Licensed By or Registered with the Securities and Futures Commission. However, the IOSCO proposals are much broader than purely electronic trading, as they relate to the use of AI and ML generally throughout a Firms business.

1.

Governance and oversight

Firms should designate senior management responsible for the oversight of the development, testing, deployment, monitoring and controls of AI and ML. They should also document their internal governance framework, with clear lines of accountability. Senior management should designate an appropriately senior individual (or groups of individuals), with the relevant skill set and knowledge to sign off on initial deployment and substantial updates of the technology.

2.

Algorithm development, testing and ongoing monitoring

Firms should adequately test and monitor the algorithms they use to validate the results of AI and ML techniques used on a continuous basis. The testing should be conducted in an environment that is segregated from the live environment prior to deployment to ensure that AI and ML behave as expected in stressed and unstressed market conditions and operate in a way that complies with regulatory obligations.

3.

Data quality and bias

Firms should have appropriate controls in place to ensure that the data on which the performance of AI and ML is dependent is of sufficient quality to prevent biases and is sufficiently broad for a well-founded application of AI and ML.

4.

Transparency and explainability

Firms should disclose meaningful information to customers and clients around their use of AI and ML that impact client outcomes.

5.

Outsourcing

Firms should understand their reliance upon and manage their relationship with third party service providers, including ongoing oversight and monitoring of the performance of the service providers. To ensure adequate accountability, Firms should have a service level agreement and contract in place with each service provider clarifying the scope of the outsourced functions and the responsibilities of the service provider. This agreement should contain clear performance indicators and should also clearly determine sanctions for poor performance.

6.

Ethical concerns

Firms should have adequate skills, expertise and experience to develop, test, deploy, monitor and oversee the controls over the AI and ML that they utilise. Compliance and risk management functions should be able to understand and challenge the algorithms that are produced and conduct due diligence on any third party service provider, including on the level of knowledge, expertise and experience of the service provider. This measure sets a high standard for compliance and risk management functions that may be hard to achieve, particularly where an algorithm develops organically in ways that may not have been originally anticipated.

What does this mean for financial intermediaries?

Subject to the consultation conclusions, the six suggested measures will become fundamental principles for IOSCOs members to use in formulating their AI and ML regulations in the future. When designing or developing businesses involving the use of AI and ML, financial intermediaries are encouraged to use the suggested measures as a guide for their compliance infrastructure, in addition to compliance with local regulatory requirements.

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IOSCO's proposed guidance for regulation on the use of artificial intelligence and machine learning - Lexology

Global Artificial Intelligence in Marketing Market Research Analysis Including Growth Factors, Types And Application By Regions From 2020 To 2027 -…

The New Report Titled as Artificial Intelligence in Marketing Market published by Global Marketers, covers the market landscape and its evolution predictions during the forecast period. The report objectives to provide an overview of global Artificial Intelligence in Marketing Market with detailed market segmentation by solution, security type, application and geography. The Artificial Intelligence in Marketing Market is anticipated to eyewitness high growth during the forecast period. The report delivers key statistics on the market status of the leading market players and deals key trends and opportunities in the market.

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This research report also includes profiles of major companies operating in the global market. Some of the prominent players operating in the Global Artificial Intelligence in Marketing Market are:

Sentient TechnologiesOracleMicrosoftOculus360TwitterXilinxNvidiaSamsung ElectronicsFacebookSalesforceAlphabetIntelInsidesalesBaiduMicronIBMMarianaPersadoAmazonAlbert Technologies

The Artificial Intelligence in Marketing Market for the regions covers North America, Europe, Asia-Pacific, Latin America, and Middle East & Africa. Regional breakdown has been done based on the current and forthcoming trends in the global Artificial Intelligence in Marketing Market along with the discrete application segment across all the projecting region.

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The Type Coverage in the Market are:

CloudOn Premises

Market Segment by Applications, covers:

BFSIRetail & E-commerceGovernmentIT & TelecommunicationHealthcareCommercial OrganizationOthers

Some Major TOC Points:

Chapter 1. Artificial Intelligence in Marketing Market Report Overview

Chapter 2. Global Artificial Intelligence in Marketing Market Growth Trends

Chapter 3. Market Share by Key Players

Chapter 4. Artificial Intelligence in Marketing Market Breakdown Data by Type and Application

Chapter 5. Market by End Users/Application

Chapter 6. COVID-19 Outbreak: Artificial Intelligence in Marketing Industry Impact

Chapter 7. Opportunity Analysis in Covid-19 Crisis

Chapter 9. Market Driving Force

Continue for TOC

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Key questions Answered in this Artificial Intelligence in Marketing Market Report:

What will be the Artificial Intelligence in Marketing Market growth rate and value in 2020?

What are the key market predictions?

What is the major factors of driving this sector?

What are the situations to market growth?

Major factors covered in the report:

Global Artificial Intelligence in Marketing Market summary

Economic Impact on the Industry

Artificial Intelligence in Marketing Market Competition in terms of Manufacturers

Artificial Intelligence in Marketing Market Analysis by Application

Marketing Strategy comprehension, Distributors and Traders

Study on Market Research Factors

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Heres how connected health and artificial intelligence is transforming healthcare industry – YourStory

As the world grapples with a new way of life and the COVID-19 crisis peaks, its impact on everyones mental and physical health is indescribable.

The pandemic is not only creating a major impact on the global economy, it is also helping to accelerate the development and commercialisation of several emerging technologies that previously received lukewarm consumer response. This is predominantly accurate for innovations that reduce human-to-human contact, automate processes, and increase productivity amid social distancing.

With Artificial intelligence (AI) and Internet of Things (IoT) rapidly gaining ground in varying forms and degrees, the use of these innovation has begun to appear in a wide spectrum of technologies - from the phones we use to communicate to the supply chains that bring goods to market. It is modifying the way we interact, consume information, and obtain goods and services.

Healthcare is no exception to this new disruption. In the medical industry, the impact of AI, IoT, and other technologies through natural language processing (NLP) and machine learning (ML), is transforming care delivery.

Data suggests that AI simplifies the lives of patients, doctors, and hospital administrators by performing tasks that are typically done by humans, but in less time and at a fraction of the cost.

A major trend in medicine, when it comes to AI, is using deep learning in medical diagnosis to detect cancer. A recent study published in the Journal of the National Cancer Institute shows that the AI system has achieved a breast cancer detection accuracy comparable to an average breast radiologist.

With the ability of AI networks to train radiologists, there are chances that their performance will be significantly improved in the nearest future.

Another promising implementation is the use of AI and the Internet of Medical Things in consumer health applications, which allows them to gather healthcare data and process the information and offer adjustments to the current lifestyle of a patient.

When it comes to medical diagnosis, doctors have seen that applying AI & IoT to medical diagnosis provides numerous benefits to the healthcare industry. AI and IoT based software can tell whether a patient has a certain disease even before evident symptoms appear.

But what AI is extensively helping doctors in is the ease that it is providing in classifying diseases. With deep learning technologies that analyse images and recognise patterns, it is creating a huge potential in generating algorithms that are helping healthcare officials in diagnosing diseases faster.

Moreover, research suggests that AI-driven software can be programmed to accurately spot signs of a certain disease in medical images such as MRIs, X-rays, and CT scans. Existing similar solutions already use AI for cancer diagnosis by processing photos of skin lesions.

By using such tools, doctors are able to diagnose patients more accurately and prescribe the most suitable treatment for them at an earlier stage, resulting in increasing the chances of cancer prevention.

Henceforth, we can say that from patient and self-service to chatbots, computer-aided detection (CAD) systems for diagnosis, and image data analysis to identify candidate molecules in drug discovery, AI, IoT and other technologies are already at work.

They are swiftly helping in increasing convenience and efficiency, reducing costs and errors, and generally making it easier for more patients to receive the healthcare they need. While each technology can contribute significant value alone, the larger potential lies in the synergies generated by using them together across the entire patient journey, from diagnoses to treatment, to ongoing health maintenance.

It can easily be said that AI and IoT solutions can lead to better care outcomes and improve the productivity and efficiency of care delivery. They can also improve the day-to-day life of healthcare practitioners, letting them spend more time looking after patients, and in doing so, raise staff morale and improve retention.

It can even offer life-saving treatments to markets faster. With the increased use of AI and IoT in healthcare, it will certainly influence the types of new entrants into the healthcare industry as well as influence how providers, clinicians, and other staff will work in the future.

In India, the last five years have seen consumer-facing health tech being talked about and embraced by investors, government, and gradually by the public. Among educated consumers in urban areas, technology is largely gaining traction through online health service aggregators, telemedicine, e-pharmacies, and a few fitness apps. Existing methods are also being used to reinvent healthcare delivery in the form of online consults or chat-based basic healthcare service apps, especially during these unprecedented times.

For our country, we can conclude that these advanced technologies in healthcare are helping expand the human capacity rather than replacing human labour altogether. Putting us in a unique position to be the driver for AI and IoT technologies in healthcare space for national and international companies.

With large amounts of data and a burgeoning startup community, India has the opportunity to address many healthcare-related problems by using them. With new disruptions in healthcare innovations, we will soon be in a position to realise the benefits of these technologies on health outcomes.

Irrespective of a patients location or condition, an evolution of the AI, IoT, IoMT ecosystem will become progressively impactful. And even the most remote locations will benefit from better access to care as connected medical devices continue to find their way into the hands of both patients and clinicians.

Connected health and Artificial intelligence in healthcare is no more a thing of the future, it is slowly transforming the now that we are living in.

(Disclaimer: The views and opinions expressed in this article are those of the author and do not necessarily reflect the views of YourStory.)

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Potential Impact of COVID-19 on Artificial Intelligence in Agriculture Market: What to Expect from Industry in 2020? – Jewish Life News

The pandemic is predicted to create a positive impact in the global artificial intelligence in agriculture market. Increasing adoption of deep learning and computer vision is predicted to be the major driving factor for the market in the forecast period. Drone analytics segment is predicted to be the most lucrative segment in the estimated period. Cloud segment is predicted to generate highest revenue in the forecast period. Europe region is predicted to grow enormously in the projected time frame.

The artificial intelligence in agriculture market have impacted positively due to the pandemic. AI is applied largely in the agriculture sector in various countries across the globe is predicted to boost the overall market in the forecast period. Due to shut down across the globe the market has not impacted adversely. Moreover, increasing implementation of artificial intelligence with the help of various sensor in the agricultural field is predicted to be the major driving factor for the market in the forecast period.

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Cost involved for artificial intelligence in the agricultural land is too high which is predicted to hamper the market growth over the coming years. AI is only used in large field lands, implementation of AI in the smaller land with lesser investment is predicted to create more growth opportunity in the forecast period. For instance, India joins GPAI as founding member to support human-centric development with the help of AI in various field including agriculture, education, finance and telecommunication. The initiative will be helpful for diversity, innovation, and economic growth of the country. During this unpredicted situation, we are helping our clients in understanding the impact of COVID19 on the global ship bridge simulator market.

Our report includes: Technological Impact Social Impact Investment Opportunity Analysis Pre- & Post-COVID Market Scenario Infrastructure Analysis Supply Side & Demand Side Impact

The global market is classified on the basis of application and deployment. The report offers the complete information about drivers, opportunities, restraints, segmental analysis and major players of the global market.

As per our analyst, increasing adoption of AI in agriculture field through sensor is predicted to be the major driving factor for the market in the forecast period. On the other hand, Lack of awareness among the farmer and the cost involved in implementing of AI in agriculture is very high which is predicted to hamper the market in the forecast period.

On the basis of application, the global artificial intelligence in agriculture market is segmented into weather tracking, precision farming, and drone analytics. Drone analytics is predicted to have the maximum market share in the forecast period. With the help of drone one can easily monitor the agricultural operation, increase crop production and optimize the agricultural activities due to which it is predicted to boost the segment market in the forecast period.

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On the basis of deployment, the global artificial intelligence in agriculture market is segmented cloud, on premise, and hybrid. Cloud segment is predicted to have the highest market share in the forecast period. Cloud gives the option to the farmer to choose the right crop, cultivating process and operational activities that are associated with the respective farm which is predicted to drive the market in the forecast period.

On the basis of region, the global artificial intelligence in agriculture market is segmented North America, Asia Pacific, LAMEA, and Europe. Europe is predicted to have the highest market share in the forecast period. Increasing demand towards AI in farming and implementation of various AI techniques in farming is predicted to be the major driving factor for the global artificial intelligence in agriculture market in the forecast period.

The key players operating in the global artificial intelligence market include GAMAYA, Inc, Aerial Systems Inc., aWhere Inc. INTERNATIONAL BUSINESS MACHINES CORPORATION, Farmers Edge Inc., Descartes Labs, Inc., Microsoft, Deere & Company, Granular, Inc., and The Climate Corporation among others.

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Potential Impact of COVID-19 on Artificial Intelligence in Agriculture Market: What to Expect from Industry in 2020? - Jewish Life News

Artificial Intelligence (Ai) As A Service Market Global Industry Analysis, Size, Share, Growth, Trends, and Forecasts 20192025 Post author – Jewish…

This research articulation on artificial intelligence (AI) as a service market is a thorough collation of crucial primary and secondary research postulates. This artificial intelligence (AI) as a service market also harps on competitive landscape, accurately identifying and assessing market forerunners in the artificial intelligence (AI) as a service market and their growth rendering initiatives. This thought provoking intricately crafted perspective of the artificial intelligence (AI) as a service market is aimed at offering unfailing cues on market growth as a composite whole that aim at presenting all the nitty gritty of the market to encourage unfaltering growth scope despite stringent competition in the artificial intelligence (AI) as a service market.

Top leading players of the market are:

Alphabet Inc. (Google Inc.),Microsoft Corporation ,Amazon Web Service Inc.,IBM Corporation,Salesforce, Inc.,Apple Inc.,CognitiveScale, Inc.,Intel, Inc.,SAP SE,Fair Isaac Corporation,Others

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Apart from showcasing all the vital details on the artificial intelligence (AI) as a service market determinants that influence onward growth trajectory, the report in its succeeding sections also sheds pertinent details on the artificial intelligence (AI) as a service market, shedding immense light on market segmentation that collectively decide and bolster lush growth in global artificial intelligence (AI) as a service market. Important details on regional diversification is also included in the report unveiling details on core growth propelling geographical pockets highlighting all the vital market decisions that are directed to reap high end growth in the artificial intelligence (AI) as a service market.

In addition to the mentioned factors that decide the growth prospects of the target market, this section of the report also entails details on the available growth prospects and scope , besides also eying details on profit determinants and market break-down that seem to herald excruciating impact on uncompromised growth of the artificial intelligence (AI) as a service market.

Read complete report at:https://www.adroitmarketresearch.com/industry-reports/artificial-intelligence-as-a-service-aiaas-market

Global Artificial Intelligence (Ai) As A Service Market is segmented based by type, application and region.

Based on Type, the market has been segmented into:

By Technology (Natural Language Processing (NLP),Machine Learning (ML),Speech Recognition,Computer Vision,Others) By Organization Size (Large Organizations,Small & Medium Organizations) By Industry Vertical (IT & Telecom,Retail,BFSI,Manufacturing,Healthcare,Others)

All the notable artificial intelligence (AI) as a service market specific dimensions are studied and analyzed at length in the report to arrive at conclusive insights. As the report proceeds further, it emphasis relevant development nuances on current, historical, as well as future growth tendencies to make error free growth estimations on crucial parameters.

The high profile research endeavor on artificial intelligence (AI) as a service market offers enough growth impetus and thrust on all round growth brackets based on segmentation of the products, payment module and trade and transaction media, which eventually usher in providing improved service profile, application details and well as technological sophistication that eventually design and propel all round growth in global artificial intelligence (AI) as a service market. Even further in the report emphasis has been lent on current, historical, as well as future growth tendencies to make accurate growth estimations based on market size, value, volume, demand and supply trends as well as growth rate.

The report is a ready to use handbook of all the pertinent market specific developments, highlighting major alterations, dominant trends as well as market forces that collectively render requisite thrust towards unfailing growth in global artificial intelligence (AI) as a service market.

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Artificial Intelligence (Ai) As A Service Market Global Industry Analysis, Size, Share, Growth, Trends, and Forecasts 20192025 Post author - Jewish...

Could this software help users trust machine learning decisions? – C4ISRNet

WASHINGTON - New software developed by BAE Systems could help the Department of Defense build confidence in decisions and intelligence produced by machine learning algorithms, the company claims.

BAE Systems said it recently delivered its new MindfuL software program to the Defense Advanced Research Projects Agency in a July 14 announcement. Developed in collaboration with the Massachusetts Institute of Technologys Computer Science and Artificial Intelligence Laboratory, the software is designed to increase transparency in machine learning systemsartificial intelligence algorithms that learn and change over time as they are fed ever more databy auditing them to provide insights about how it reached its decisions.

The technology that underpins machine learning and artificial intelligence applications is rapidly advancing, and now its time to ensure these systems can be integrated, utilized, and ultimately trusted in the field, said Chris Eisenbies, product line director of the cmpanys Autonomy, Control, and Estimation group. The MindfuL system stores relevant data in order to compare the current environment to past experiences and deliver findings that are easy to understand.

While machine learning algorithms show promise for DoD systems, determining how much users can trust their output remains a challenge. Intelligence officials have repeatedly noted that analysts cannot rely on black box artificial intelligence systems that simply produce a decision or piece of intelligencethey need to understand how the system came to that decision and what unseen biases (in the training data or otherwise) might be influencing that decision.

MindfuL is designed to help address that gap by providing more context around those outputs. For instance, the company says its program will issue statements such as The machine learning system has navigated obstacles in sunny, dry environments 1,000 times and completed the task with greater than 99 percent accuracy under similar conditions; or The machine learning system has only navigated obstacles in rain 100 times with 80 percent accuracy in similar conditions; manual override recommended. Those types of statements can help users evaluate how much confidence they should place in any individual decision produced by the system.

This is the first release of the MindfuL software as part of a $5 million, three-year contract under DARPAs Competency-Aware Machine Learning (CAML) program. BAE Systems plans to demonstrate their software in both simulation and in prototype hardware later this year.

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Could this software help users trust machine learning decisions? - C4ISRNet