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Observability and Artificial Intelligence Have Become Essential to Managing Modern IT Environments – SPONSOR CONTENT FROM DYNATRACE – Harvard Business…

If you lead an IT, DevOps, or business operations team, youre probably working on a digital transformation and cloud migration strategy. Youre also likely doing it with scarce resources under the strain of shifting market needs and accelerated customer demands.

Your organizations success hinges on delivering differentiated, high-value digital experiences to customers and internal users. The applications and services that enable these experiences are built on multicloud environments that promise faster innovation and better business outcomes. But these dynamic environments also bring a scale, complexity, and frequency of change that have grown beyond humans capacity to manage.

The common approaches to monitoring these environments to build applications, optimize performance, and run operations are no longer effective. Just capturing data to display on a dashboard without providing automatic root-cause analysis or prioritizing discoveries by business impact just creates more noise than value.

Likewise, traditional tools and approaches are unable to automatically discover all services, processes, and interdependencies within a modern IT environment in real time, which results in blind spots. They also require manual configuration and instrumentation. Manual configurations may have worked in the era of on-premises data centers, but in the multicloud era, when applications and microservices come and go in seconds, manual efforts simply dont scale and instead steal time from innovation.

To manage these complex, cloud-native environments and to save time and resources for developing new innovations that deliver business impact, teams need solutions that rely on artificial intelligence (AI) and continuous automation to provide precise and intelligent answers.

A recent global survey of CIOs from large enterprises details why observability and AI for IT operations (AIOps) have become essential to managing modern IT environments:

According to the same survey, 70% of CIOs said their teams spend too much time doing manual tasks that could be automated, yet only 19% of all repeatable IT processes have been automated. CIOs view AI assistance as a solution93% said AI will be critical to their teams ability to cope with increasing workloads and deliver maximum value to the business.

To make the leap forward, companies are embracing AIOps. One example is ERT, a developer of the software and devices used by medical researchers in 75% of Food and Drug Administration-approved clinical trials in 2019. As the company adopted a cloud-native architecture running on Kubernetes, the IT team realized it needed to automate its software development processes.

ERTs teams now use one observability solution to monitor and automate DevOps processes and application delivery pipelines and to continuously watch for errors and degradation. Their AIOps solution automatically prioritizes any issues based on impact, saving developers time and ensuring they can find, understand, and resolve issues before they impact clinical trials. These processes have reduced from six to four weeks the time it takes ERT to deliver new applications, which means the company can help researchers get new, potentially lifesaving treatments out of the laboratory and into hospitals and pharmacies faster.

To understand the impact of IT on business outcomesincluding the significance of an outage, the value of a software update, or the level of customer engagement with a new feature or releaseIT, DevOps, and business operations teams need a single source of intelligence that provides precise answers prioritized by business impact and with root-cause determination.

As the pace of transformation accelerates, theres no time for silos, guessing, or finger-pointing, says Steve Tack, SVP product management at software intelligence company Dynatrace. Imagine having all teams in your organization on the same page all the time, with everyone using a common language, collaborating across teams, and speeding toward better business outcomes. This is possible with a platform that provides automatic and intelligent observability.

Tack pointed to footwear retailer Rack Room Shoes as one example of a company that transformed how its teams work by using a single source of software intelligence. As the company increased its investments in improving user experiences, its teams realized they needed to improve their understanding of how the performance of their new digital services impacted business key performance indicators, including e-commerce conversion rates and revenue. Their IT, developer, and business teams now rely on a single software intelligence platform to tie together data about their customers behavior with the applications they use and the cloud infrastructure on. As a result, the teams collaborate more effectively and optimize user experience more quickly, leaving 30% more time to focus on innovation, which has driven up their e-commerce conversions by 25%.

Regardless of your industry, success depends on accelerating digital transformation to drive new revenue streams, manage customer relationships, and keep employees productive. To achieve this, organizations are investing in multicloud platforms and cloud-native technologies. To maximize the benefits of these investments and to eliminate silos separating teams, organizations are increasingly looking to observability, automation, and AI-powered insights to automate IT operations so they can innovate faster and deliver better results.

Click here to learn how Dynatrace simplifies cloud complexity and accelerates digital transformation.

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The Reading Room: Artificial Intelligence: What RSNA 2020 Offered, and What 2021 Could Bring – Diagnostic Imaging

Nina Kottler, M.D., chief medical officer of AI at Radiology Partners, discusses, during RSNA 2020, what new developments the annual meeting provided about these technologies, sessions to access, and what to expect in the coming year.

Artificial intelligence has been a mainstay of the Radiological Society of North America (RSNA) annual meeting for nearly a decade. Each year brings new developments, reveals new capabilities and algorithms, and furthers the conversation about how these tools can help radiologists provide care.

This year, the conversation began to turn to what steps could come next for AI. Conversations about deployment, consolidation, and U.S. Food & Drug Administration clearance are now the norm as the technology becomes less of a novelty and more of a mainstay.

In this episode of The Reading Room, Diagnostic Imaging speaks with Nina Kottler, M.D., chief medical officer of AI at Radiology Partners, about her reaction to what this years conference offered about these tools and what she sees on the horizon in 2021.

For additional RSNA coverage, click here.

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Canada concludes inaugural plenary of the Global Partnership on Artificial Intelligence with international counterparts in Montral – Yahoo Finance

Canada concludes inaugural plenary of the Global Partnership on Artificial Intelligence with international counterparts in Montral

Canada NewsWire

OTTAWA, ON, Dec. 4, 2020

OTTAWA, ON, Dec. 4, 2020 /CNW/ - Artificial intelligence (AI) is fast becoming one of the most impactful technologies in the world today, changing the way people work, interact with each other and participate in the economy. Realizing the full potential of AI that benefits all citizens requires international collaboration and coordination.

On December 3 and 4, leading international AI experts from industry, civil society, academia and government, including 14 ministerial-level participants from nine countries, came together virtually for the first plenary of the Global Partnership on Artificial Intelligence (GPAI), during which they discussed how to guide their collective efforts to advance the responsible development and use of this technology.

The Honourable Navdeep Bains, Minister of Innovation, Science and Industry, spoke at the event's opening ceremonies and underscored how GPAI represents a model of partnership that will foster responsible AI innovation and economic growth, grounded in the shared values of human rights, inclusion and diversity.

He then joined Prime Minister Justin Trudeau and the President of France, Emmanuel Macron, who co-led the effort to establish GPAI through their 2018 and 2019 G7 presidencies. The leaders shared their vision for GPAI to guide the responsible development and use of AI globally.

GPAI is an initiative that leverages international collaboration on key research and applied projects focused on ensuring AI is human-centred by design and fostering public trust in its use. GPAI's founding members include Australia, Canada, France, Germany, India, Italy, Japan, Mexico, New Zealand, the Republic of Korea, Singapore, Slovenia, the United Kingdom, the United States of America and the European Union. On the margins of the plenary, the founding members welcomed Brazil, the Netherlands, Poland and Spain as new members of the Partnership.

Story continues

The plenary took place as part of the GPAI Montral Summit 2020, organized by the International Centre of Expertise in Montral for the Advancement of Artificial Intelligence. This is GPAI's first major event since its launch in June 2020, and it marks the beginning of Canada's role as the 20202021 Chair of the GPAI Council, which provides strategic direction to the Partnership.

Throughout the plenary, over 200 leading AI experts tackled core issues across several themes: the responsible adoption of AI, the use of AI in response to the COVID-19 pandemic, data governance, the future of work, and innovation and commercialization. The event gave the world's AI leaders a unique opportunity for exchange on the most promising ways to put AI into action and spark new projects on its impactful application.

As the event comes to a close, Canada looks forward to leading the Partnership in 20202021, during which it will leverage the principles of Canada's Digital Charter to promote a vision for a global AI ecosystem that enables responsible and trustworthy innovation, while fostering diversity and inclusion across the AI domain.

Quote

"AI is the single largest transformative technology in the world today. I'm proud to see that what began as a bilateral project between Canada and France is becoming a truly multilateral and multistakeholder initiative. Realizing the full potential of AI by creating benefits for all citizens requires international collaboration and coordination. GPAI will help shape a global AI ecosystem where innovation and growth are founded on trust and harnessed by our shared values of human rights, inclusion and diversity." The Honourable Navdeep Bains, Minister of Innovation, Science and Industry

Quick facts

Canada and France, along with international partners, have worked together since June 2018, including through Canada and France's G7 presidencies, to develop and launch GPAI.

GPAI will support the development and use of AI based on human rights, inclusion, diversity, innovation and economic growth, while seeking to address the United Nations Sustainable Development Goals.

Canada has a thriving AI ecosystem composed of more than 850 start-up companies, 20 public research labs, 75 incubators and accelerators, and 60 groups of investors from across the country, grouped in major hubs such as Montral, Toronto, Waterloo, Edmonton and Vancouver.

First announced in September 2019, the International Centre of Expertise in Montral for the Advancement of Artificial Intelligence (ICEMAI) is receiving up to $10 million over five years from the Government of Canada to support its and GPAI's activities. This is in addition to a $5-million grant previously announced by the Government of Quebec to create or attract an international AI organization.

ICEMAI also benefits from significant investments in AI in Canada and Quebec. In addition to receiving more than $900 million in foreign direct investment since 2017, the Montral AI ecosystem has benefited from nearly $1 billion in public funds, both from federal and Quebec initiatives. Of this funding, $40 million came from the Pan-Canadian Artificial Intelligence Strategy and $230 million came from the Innovation Superclusters Initiative that gave rise to the Montral Scale AI supercluster, which is focused on supply chains and SMEs. Over the next 10 years, these investments are expected to contribute $16.5 billion to Canada's GDP and help create over 16,000 jobs.

On June 15, 2020, Minister Bains and Quebec's Minister of International Relations and La Francophonie, Nadine Girault, made public a Canada-Quebec memorandum of understanding on GPAI that allows Quebec to participate in GPAI-related activities. The governments of Canada and Quebec will continue to involve and closely collaborate with other provincial and territorial governments to ensure Canada's work draws from the strong expertise in AI found from coast to coast.

Associated links

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SOURCE Innovation, Science and Economic Development Canada

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Artificial intelligence in war: Human judgment as an organizational strength and a strategic liability – Brookings Institution

EXECUTIVE SUMMARY

Artificial intelligence has the potential to change the conduct of war. Recent excitement about AI is driven by advances in the ability to infer predictions from data. Yet this does not necessarily mean that machines can replace human decisionmakers. The effectiveness of AI depends not only on the sophistication of the technology but also on the ways in which organizations use it for particular tasks. In cases where decision problems are well-defined and plentiful relevant data is available, it may indeed be possible for machines to replace humans. In the military context, however, such situations are rare. Military problems tend to be more ambiguous while reliable data is sparse. Therefore, we expect AI to enhance the need for military personnel to determine which data to collect, which predictions to make, and which decisions to take.

The complementarity of machine prediction and human judgment has important implications for military organizations and strategy. If AI systems will depend heavily on human values and interpretations, then even junior personnel will need to be able to make sense of political considerations and the local context to guide AI in dynamic operational situations. Yet this in turn will generate incentives for adversaries to counter or undermine the human competencies that underwrite AI-enabled military advantages. If AI becomes good at predicting the solution to a given problem, for instance, a savvy adversary will attempt to change the problem. As such, AI-enabled conflicts have the potential to drag on with ambiguous results, embroiled in controversy and plagued by crises of legitimacy. For all of these reasons, we expect that greater reliance on AI for military power will make the human element in war even more important, not less.

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Artificial intelligence in war: Human judgment as an organizational strength and a strategic liability - Brookings Institution

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Raytheon and C3.ai announce alliance on artificial intelligence solutions – C4ISRNet

WASHINGTON Raytheons intelligence and space business is partnering with C3.ai, a software company known for its predictive maintenance business with the U.S. Air Force, the companies announced Monday.

The alliance between C3.ai and Raytheon Intelligence and Space aims to speed up artificial intelligence adoption across the U.S. military. The partnership will pair Raytheons expertise in the defense and aerospace sector with C3.ais artificial intelligence development and applications.

The military and intelligence community have access to more data now than any time in history, but its more than theyre able to make quick use of, said David Appel, vice president of defense and civil solutions for space and C2 systems under Raytheon Intelligence and Space. Artificial intelligence can be used to help them make sense of that data, which will allow them to make smarter decisions faster on the battlefield. And thats just one of the benefits.

In recent years, C3.ai has positioned itself as a trusted partner of the Air Force, providing predictive maintenance capabilities for the services E-3, C-5 Galaxy, F-15, F-16, F-18 and F-35 aircraft. The Pentagons Silicon Valley arm that helped bridge C3.ai into the Pentagon, the Defense Innovation Unit, estimated that the program could save the service $15 billion annually in maintenance funds if it was scaled to the Defense Departments entire aircraft fleet.

In January, DIU awarded a five-year, $95 million contract to C3.ai for predictive maintenance. The alliance between the two companies will also focus on helping the intelligence community.

Raytheon and C3.ai are driven by similar purposes: Anticipating and solving our customers most difficult problems, said Thomas Siebel, CEO of C3.ai. Together, we offer an end-to-end enterprise AI platform and mission-tailored applications that will dramatically reduce cost and risk, accelerate adoption and deployment of AI solutions, and scale the impact of AI across any organization.

In September, the Air Forces rapid sustainment office selected C3.ais C3 AI Suite platform and C3 AI Readiness product to support predictive maintenance across the services enterprise.

Raytheon and C3.ai represent key partners for the U.S. Air Force, and specifically the Rapid Sustainment Office, in realizing the vision of harnessing AI to transform the military into a digital organization, said Nathan Parker, deputy program executive officer for the Air Force Rapid Sustainment Office. Fulfilling this vision of broad implementation requires identifying applicable use cases for AI across the Air Force, rapidly piloting solutions, and scaling successes across our enterprise to accelerate the transformation.

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Also on Monday, C3.ai announced that it will be launching an initial public offering. It expects shares to be valued between $31-$34.

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Olive Acquires Verata Health to Accelerate Artificial Intelligence Technology For Healthcare Providers and Payers – PRNewswire

U.S.A., Dec. 3, 2020 /PRNewswire/ -- Prior authorizations were the most costly and time-consuming transactions for providers in 2019 and are among the top reasons patient care is delayed. As cash-strapped hospitals and health systems strive to meet patient, payer and provider needs, the demand for AI technologies to increase efficiency and improve the patient experience has become critical. To help improve patient access to care and remedy the $31 billionprior authorization challenge, Olive announced the acquisition of Verata Health to solve prior authorizations for providers and payers via artificial intelligence as a combined solution under the Olive name.

Verata is a leading healthcare AI company, enabling Frictionless Prior Authorization for providers and payers. Seamlessly connected to the nation's top electronic health record (EHR) systems, Verata's AI technology automatically initiates prior authorizations, retrieves payer rules, and helps identify and submit clinical documentation from the EHR. When payers leverage its AI platform, Verata enables point-of-care authorizations for providers and patients, dramatically accelerating access to care.

Olive and Verata's combined prior authorization solution streamlines the process for providers, patients and payers by reducing write-offs by over 40% and cutting turnaround time for prior authorizations by up to 80%.

By integrating Verata's solution, Olive is able to provide customers with a true end-to-end prior authorization solution. The solution starts with determining if an authorization is required, includes touchless submission of the prior authorization request, ends with automating denied claim appeals and grants hospitals a 360 degree view of their authorization performance. This means patients not only get the care they need faster, but also eliminates confusing bills patients receive post-service stating their claim has been denied by their insurance.

"Caring for patients at Mayo Clinic was life-changing," said Dr. Jeremy Friese, CEO of Verata and former Mayo physician executive. "We started Verata to have an impact on patients and providers across the country. Combining our AI solution with Olive's creates the leading platform to solve prior authorization on 'both ends of the fax machine' at providers and payers to drive impact for millions of patients."

More than 60 Verata employees will join the Olive team following the acquisition, bringing Olive's total employee count to approximately 500. Olive's senior executive team will continue to grow as well:

"A broken healthcare system is one of the biggest challenges humanity faces today and prior authorization issues in particular are costing our nation billions of dollars. After partnering with Verata earlier this year, we saw incredible potential for Verata's technology to reduce the amount of time and money spent on prior authorizations, and to eliminate delays in patient care," said Sean Lane, CEO of Olive. "This acquisition allows Olive to accelerate innovation in areas where we can drive the biggest impact, and further expands our solutions to providers and payers seeking to transform healthcare."

The acquisition follows Olive's recent $225.5 million financinground to bolster the company's R&D war chest and drive the growth of Olive's AI workforce for providers and payers. Recently, Olive also announced Olive Helps: a new AI platform that delivers targeted information to healthcare workers to enable better, faster results while reducing the time spent on administrative tasks. With Olive's recent momentum, Verata's suite of AI tools will deepen Olive's impact as it automates the $31 billion problem of prior authorizations in healthcare.

For more information about Olive, visit http://www.oliveai.com.

About Olive

Olive's AI workforce is built to fix our broken healthcare system by addressing healthcare's most burdensome issues -- delivering hospitals and health systems and payers increased revenue, reduced costs, and increased capacity. People feel lost in the system today and healthcare employees are essentially working in the dark due to outdated technology that creates a lack of shared knowledge and siloed data. Olive is designed to drive connections, shining a new light on the broken healthcare processes that stand between providers delivering patient care and payers. She uses AI to reveal life-changing insights that make healthcare more efficient, affordable and effective. Olive's vision is to unleash a trillion dollars of hidden potential within healthcare by connecting its disconnected systems. Olive is improving healthcare operations today, so everyone can benefit from a healthier industry tomorrow.

About Verata Health

Verata Health empowers hospitals, health systems and payers to take control of one of the biggest and most challenging problems in healthcare prior authorization. A physician-led company trusted by customers across the country, Verata's artificial intelligence platform is obsoleting the fax machine with Frictionless Prior Authorization. Supporting both simple and clinically complex prior authorizations, Verata Health helps both providers and payers increase revenue, reduce administrative burden and accelerate patient access. Verata Health's investors include BlueCross BlueShield Venture Partners, LRVHealth, CapitalFour, 3M and Bessemer Venture Partners. TripleTree, LLC served as the exclusive financial advisor to Verata Health for this transaction.

To learn more about Verata Health, visit http://www.veratahealth.com.

Media Contact:Rachel Forsyth[emailprotected]

SOURCE Olive

https://oliveai.com

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Olive Acquires Verata Health to Accelerate Artificial Intelligence Technology For Healthcare Providers and Payers - PRNewswire

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Translation Is Trickier For Business, And Artificial Intelligence Can Help – Forbes

Artificial Intelligence

Artificial intelligence (AI) for translation is something Google and other companies have provided for individuals. It can be accessed on your phone. However, translation is still a much larger and complex issue than many people realize. The business community has many complex and unique needs that add to the challenge of accurate and reliable translation, and AI is showing increasing capability.

One of the keys to business translation is the simple reality that each business sector has its own terms, phrases, and even idioms. A generic translation system in the cloud, trained widely by crowd sourcing or other public methods, wont have the accuracy required for business translation. In addition, the cloud itself is still a problem. Much of a businesses goals involve protecting intellectual property (IP). To do that, they want their information to stay on-premises, behind their firewalls.

Now throw in the complexity of privacy requirements such as the European Unions GDPR and Californias CCPA. Increasingly, governments are setting rules for where citizens data must be kept and what may be shared. The location and anonymization of information also adds to the challenge of a company understanding multilingual business.

Then theres collaboration. Just about everyone in business uses some electronic communications, whether it be emails and text messaging or more formal chat systems. Enhancing those applications with accurately, instant, translation can improve a global companys internal communications and drive success.

While ediscovery was an obvious entry point into business translation with AI, began JP Barazza, CIO, SYSTRAN. Imagine global development groups in such industries as high tech and biotech. They can become more efficient with the assistance of strong translation. Customer support is another horizontal where translation can be of great use.

As with cloud based models, the SYSTRAN system is using unsupervised learning. However, it uses a far more curated data set in order to train systems for each industry. The neural network is only a component of the logic of the system. Because of the specific terminology in many languages, procedural logic is used in pre- and post-processing around the network to help with the clear rules and terminology of business sectors. After all, theyre easier to manage for clearly defined linguistic convention while the neural network can handle the fluidity of the overall language.

One example of the need for rules is how names are used in American English and French French (yes, I had to do that). In the US, we regularly use a leaders name, such as President Biden. In France, news reports usually dont use names, but refer to titles, such as The President of the United States. Think about two-way translation. While it is simple to translate from English by dropping the name and expanding the title, said Jean Senellart, CEO. If we add a name when going from French into English, what happens when the president changes? The system would continue to add the previous presidents name until there was enough data to retrain the system. We made the decision to keep the French reference style when translating to English in order to remain accurate. The use of explicit rules is a clean way of addressing that issue.

That combination of neural network and procedural rules also provides flexibility to the company. A core system can be trained, with different plug-ins around it for different companies. That allows both a simpler development cycle and a cleaner way to provide updates. Specific corporate and industry rules can be added without having to retrain the deep learning system.

Increased accuracy is necessary for business. Consumers are willing to accept errors, as long as the general meaning is conveyed through translation, said Mr. Barazza. Business needs accuracy. Its not just for regulatory and contract compliance, a lack of accuracy can slow product development, lower safety, and create dissatisfied customers.

Because of that need for accuracy, and due to the state of the industry, theres another component to the solution. We are not yet at a point where the automated systems can be completely trusted. Humans must review the translations.

Within the system, at this point translation is complex and is focused on a small enough group of languages, so they are using pairwise engines. For example, one engine translates from English to French and the other translates from French to English. Training the systems uses a weird form of back propagation. In a single engine, back propagation means correcting results and feeding them back in as input. In translation, that means translating results back through the second engine, then correcting. Its more complex that that (at least for me), but I understand the basics of a very interesting loop where both engines help train each other.

That is the way translations are now done, but there is a change that will happen. That style means a lot of individual engines and the larger the number of languages, the increased permutations mean vast increase in the number of engines. One solution have been to use English as an intermediate language, translating everything through it to limit the different engines. That adds inefficiencies and inaccuracies. Facebook has recently announced a single model that can translate in all direction for multiple languages. While individuals are more comfortable with errors so thats a great place to test out such a model, eventually the technology will strengthen and corporate translation will benefit.

Business also drives non-AI design issue. SYSTRAN is not a pure cloud play. They must by hybrid, as on-premises computing is often required to meet privacy and other regulations.

Because of the state of the evolution of systems, including a lack of transparency in deep learning, no company is going to exclusively use AI driven translation for business and government. It will be used in respect to the 80/20 rule, where basic translation will save significant time and effort while humans will still be required to review and edit final versions of business and governmental translations.

Translation tools have made great advances in the last decade. Given the less rigid requirements in translation between individuals, it is no surprise that the initial focus has been on personal use. Technology has now advanced so that addressing the more formal requirements of business and governmental translations is now being addressed. Its early, but its looking good.

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Translation Is Trickier For Business, And Artificial Intelligence Can Help - Forbes

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New Center of Excellence to Infuse AI into Texas Government – Government Technology

The launch of the Texas Artificial Intelligence Center of Excellence was announced this week. The initiative will facilitate the development of AI concepts and standards throughout state and local government.

Texas now has a center for making artificial intelligence part of how government does business.

In a press release, the Texas Department of Information Resources (DIR) revealed the states new Artificial Intelligence Center of Excellence (AI-CoE). AI-CoEs purpose is to assist state and local agenciesand public institutions of higher learning with exploring how AI can be used to enhance service delivery to citizens.

Following the success of DIRs Cloud Center of Excellence, we want the AI-CoE to enable and foster the adoption of AI in state government to increase efficiency, said John Hoffman, who serves as chief technology officer and deputy chief information officer of Texas. This will also ensure the implementation of the states strategic goals for technology as outlined in the 2020-2024 State Strategic Plan for Information Resources Management.

One of the objectives of the 2020-2024 strategic plan is to initiate testing of artificial intelligence (AI) solutions to drive new interaction and services with the public. AI-CoE aims to accomplish this objective by utilizing the expertise of DIR staff and private partners so that IT leaders across agencies can identify areas where AI can speed up processes and reduce costs.

With this initiative, we would conduct training, coaching events and hands-on workshops to help agencies explore AI proof-of-concepts and rapid prototyping in developing standards and best practices, said Krishna Edathil, director of Enterprise Solution Services for DIR and practice lead for AI-CoE.

The release states that all AI technologies will be examined, from machine learning to natural language processing to computer vision.

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Artificial Intelligence in Healthcare Diagnosis Market Research Report by Component, by Technology, by Application, by End User – Global Forecast to…

New York, Dec. 01, 2020 (GLOBE NEWSWIRE) -- Reportlinker.com announces the release of the report "Artificial Intelligence in Healthcare Diagnosis Market Research Report by Component, by Technology, by Application, by End User - Global Forecast to 2025 - Cumulative Impact of COVID-19" - https://www.reportlinker.com/p05993442/?utm_source=GNW

The Global Artificial Intelligence in Healthcare Diagnosis Market is expected to grow from USD 1,975.11 Million in 2019 to USD 4,992.42 Million by the end of 2025 at a Compound Annual Growth Rate (CAGR) of 16.71%.

Market Segmentation & Coverage:This research report categorizes the Artificial Intelligence in Healthcare Diagnosis to forecast the revenues and analyze the trends in each of the following sub-markets:

Based on Component, the Artificial Intelligence in Healthcare Diagnosis Market studied across Hardware, Services, and Software. The Hardware further studied across Memory, Network, and Processor. The Services further studied across Deployment & Integration and Support & Maintenance. The Software further studied across AI Platform and AI Solutions.

Based on Technology, the Artificial Intelligence in Healthcare Diagnosis Market studied across Computer Vision, Context-Aware Computing, Machine Learning, and Natural Language Processing.

Based on Application, the Artificial Intelligence in Healthcare Diagnosis Market studied across Cardiology, Chest and Lung, Neurology, Oncology, Pathology, and Radiology.

Based on End User, the Artificial Intelligence in Healthcare Diagnosis Market studied across Healthcare Payers, Hospitals & Healthcare Providers, Patients, and Pharmaceuticals & Biotechnology Companies.

Based on Geography, the Artificial Intelligence in Healthcare Diagnosis Market studied across Americas, Asia-Pacific, and Europe, Middle East & Africa. The Americas region surveyed across Argentina, Brazil, Canada, Mexico, and United States. The Asia-Pacific region surveyed across Australia, China, India, Indonesia, Japan, Malaysia, Philippines, South Korea, and Thailand. The Europe, Middle East & Africa region surveyed across France, Germany, Italy, Netherlands, Qatar, Russia, Saudi Arabia, South Africa, Spain, United Arab Emirates, and United Kingdom.

Company Usability Profiles:The report deeply explores the recent significant developments by the leading vendors and innovation profiles in the Global Artificial Intelligence in Healthcare Diagnosis Market including Aidoc Medical Ltd., Amazon Web Services, Inc., Arterys Inc., Atomwise Inc., Caption Health, Inc., CloudMedx Inc., Enlitic, Inc., General Electric Company, General Vision Inc., IBM Corporation, Intel Corporation, Johnson & Johnson Services Inc., Koninklijke Philips N.V., MaxQ AI Ltd., Medtronic PLC, Microsoft Corporation, NVIDIA Corporation, Nvidia Corporation, SOPHiA GENETICS S.A., Welltok Inc., and Zebra Medical VisionInc..

FPNV Positioning Matrix:The FPNV Positioning Matrix evaluates and categorizes the vendors in the Artificial Intelligence in Healthcare Diagnosis Market on the basis of Business Strategy (Business Growth, Industry Coverage, Financial Viability, and Channel Support) and Product Satisfaction (Value for Money, Ease of Use, Product Features, and Customer Support) that aids businesses in better decision making and understanding the competitive landscape.

Competitive Strategic Window:The Competitive Strategic Window analyses the competitive landscape in terms of markets, applications, and geographies. The Competitive Strategic Window helps the vendor define an alignment or fit between their capabilities and opportunities for future growth prospects. During a forecast period, it defines the optimal or favorable fit for the vendors to adopt successive merger and acquisition strategies, geography expansion, research & development, and new product introduction strategies to execute further business expansion and growth.

Cumulative Impact of COVID-19:COVID-19 is an incomparable global public health emergency that has affected almost every industry, so for and, the long-term effects projected to impact the industry growth during the forecast period. Our ongoing research amplifies our research framework to ensure the inclusion of underlaying COVID-19 issues and potential paths forward. The report is delivering insights on COVID-19 considering the changes in consumer behavior and demand, purchasing patterns, re-routing of the supply chain, dynamics of current market forces, and the significant interventions of governments. The updated study provides insights, analysis, estimations, and forecast, considering the COVID-19 impact on the market.

The report provides insights on the following pointers:1. Market Penetration: Provides comprehensive information on the market offered by the key players2. Market Development: Provides in-depth information about lucrative emerging markets and analyzes the markets3. Market Diversification: Provides detailed information about new product launches, untapped geographies, recent developments, and investments4. Competitive Assessment & Intelligence: Provides an exhaustive assessment of market shares, strategies, products, and manufacturing capabilities of the leading players5. Product Development & Innovation: Provides intelligent insights on future technologies, R&D activities, and new product developments

The report answers questions such as:1. What is the market size and forecast of the Global Artificial Intelligence in Healthcare Diagnosis Market?2. What are the inhibiting factors and impact of COVID-19 shaping the Global Artificial Intelligence in Healthcare Diagnosis Market during the forecast period?3. Which are the products/segments/applications/areas to invest in over the forecast period in the Global Artificial Intelligence in Healthcare Diagnosis Market?4. What is the competitive strategic window for opportunities in the Global Artificial Intelligence in Healthcare Diagnosis Market?5. What are the technology trends and regulatory frameworks in the Global Artificial Intelligence in Healthcare Diagnosis Market?6. What are the modes and strategic moves considered suitable for entering the Global Artificial Intelligence in Healthcare Diagnosis Market?Read the full report: https://www.reportlinker.com/p05993442/?utm_source=GNW

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Artificial Intelligence in Healthcare Diagnosis Market Research Report by Component, by Technology, by Application, by End User - Global Forecast to...

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Artificial Intelligence in Education Market Share, Emerging Trends, Increasing Demand, Forecast 2025 – DC Velocity

Market Overview:Artificial intelligence in the education sector monitors student abilities with the help of technologies such as machine learning and natural learning, helping to improve the learning process based on the student's needs. In education, AI focuses on individual learning and monitoring, helping students understand topics at their own pace.

AI provides interactive custom software tools for students of all grades, integrated with augmented and virtual reality deployed on digital devices such as smartphones, tablets and wearable devices. Digital interactive content accelerates student learning and understanding. Deploying AI for education improves the learning environment with a special focus on implementing experimental and analytical learning, allowing students to clearly understand concepts.

Key Players:The prominent players in the market of AI in education are, IBM Corporation (US), Microsoft Corporation (US), Google (US), Amazon.com, Inc., (US), Cognizant (US), Pearson (UK), Bridge-U (UK), DreamBox Learning (US), Fishtree (US), Jellynote (France), Jenzabar, Inc., (US). Other players in the market include Knewton, Inc., (US), Metacog, Inc., (US), Querium Corporation. (US), Century-Tech Ltd (UK), Blackboard, Inc., (US), Third Space Learning (UK), Quantum Adaptive Learning, LLC (US).

For More Information @ https://www.marketresearchfuture.com/reports/artificial-intelligence-education-market-6365

Market Segmentation:By Technology* Deep Learning and Machine Learning* Natural Language Processing (NLP)By Application* Virtual Facilitators and Learning Environments* Intelligent Tutoring Systems (ITS)* Content Delivery Systems* Fraud and Risk Management* Student-initiated learning* Others (education data management, job recommendation, and training and development)By Component* Solutionso Software toolso Platforms* Serviceso Professional serviceso Managed servicesBy Deployment Mode* Cloud* On-premises

Regional Analysis:Of all regions, North America used AI the most in education solutions during 2014-2019 and is expected to generate the greatest demand for these solutions in the coming years. This includes a highly developed educational infrastructure, growing demand for intelligent education solutions to improve student engagement, increasing demand for personalized learning in the classroom, increasing interest in reducing the burden of teachers, and advocating for EdTech to drive AI in education.

It includes expenses. Because of the increase. US and ultimately local markets. The fastest growing AI demand for education solutions and services is expected to be witnessed in the Asia Pacific region during the forecast period.

Company name: Market Research Future

About Market Research Future:At Market Research Future (MRFR), we enable our customers to unravel the complexity of various industries through our Cooked Research Report (CRR), Half-Cooked Research Reports (HCRR), Raw Research Reports (3R), Continuous-Feed Research (CFR), and Market Research & Consulting Services.MRFR team have supreme objective to provide the optimum quality market research and intelligence services to our clients. Our market research studies by Components, Application, Logistics and market players for global, regional, and country level market segments, enable our clients to see more, know more, and do more, which help to answer all their most important questions.

Contact:Market Research FutureOffice No. 528, Amanora ChambersMagarpatta Road, Hadapsar,Pune - 411028Maharashtra, India+1 646 845 9312

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Artificial Intelligence in Education Market Share, Emerging Trends, Increasing Demand, Forecast 2025 - DC Velocity

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