Church body recommends restrictions on Artificial Intelligence – The Tablet

Intelligent robots are displaying on the ground floor of Shanghai Expo Centre, Shanghai, China, 9 July 2020. ChinaImages/SIPA USA/PA Images

A commission representing the European Union's Catholic bishops has called on EU institutions to follow a "human-centric approach" on Artificial Intelligence, ensuring new information technologies "promote the common good and serve the lives of all human beings".

"AI is a strategic technology that offers many benefits for citizens and the economy - it will change our lives by improving healthcare, increasing the efficiency of farming, contributing to climate change mitigation andadaptation and improving the efficiency of production systems", the COMECE report said. COMECE, aBrussels-based commission, represents the EU's Catholic bishops inside and outwith Europe.

"At the same time, AI entails a number of potential risks, such as gender-based or other kinds of discrimination, opaque decision-making or intrusion into our private lives...AI should work for people and be a force for good in society".

The report, published as part of an EU consultation, said the Catholic Church welcomed attempts to establish a "solid European approach" to AI, which would be "deeply grounded on human dignity and protection of privacy", and cover child safety, data protection, cyber-security and money-laundering.

It added that, while that data and algorithms were "main drivers of Artificial Intelligence", human beings remained responsible for "determining and overviewing" its goals, which should be coordinated at EU level rather than left to national governments.

"AI has to serve the lives of all human beings - human life has not only a personal dimension but also a community dimension", the COMECE report said.

"The Christian perspective sees the human person as qualitatively different from other beings, with a transcendental dignity, intelligent and free, and therefore capable of moral acts. AI systems are not free in the sense the human person is and, in this sense, their actions cannot be judged according to the same moral criteria".

In February, the Vatican's Pontifical Academy for Life published a "Rome Call for AI Ethics" after an international workshop chaired by its president, Archbishop Vincenzo Paglia.

The Pontifical Academy invited the leaders of Microsoft and IBM, two of the world's leading developers of AI, to sign a charter calling for an ethical framework for the field of artificial intelligence.

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Church body recommends restrictions on Artificial Intelligence - The Tablet

How the Coronavirus Pandemic Is Breaking Artificial Intelligence and How to Fix It – Gizmodo

As covid-19 disrupted the world in March, online retail giant Amazon struggled to respond to the sudden shift caused by the pandemic. Household items like bottled water and toilet paper, which never ran out of stock, suddenly became in short supply. One- and two-day deliveries were delayed for several days. Though Amazon CEO Jeff Bezos would go on to make $24 billion during the pandemic, initially, the company struggled with adjusting its logistics, transportation, supply chain, purchasing, and third-party seller processes to prioritize stocking and delivering higher-priority items.

Under normal circumstances, Amazons complicated logistics are mostly handled by artificial intelligence algorithms. Honed on billions of sales and deliveries, these systems accurately predict how much of each item will be sold, when to replenish stock at fulfillment centers, and how to bundle deliveries to minimize travel distances. But as the coronavirus pandemic crisis has changed our daily habits and life patterns, those predictions are no longer valid.

In the CPG [consumer packaged goods] industry, the consumer buying patterns during this pandemic has shifted immensely, Rajeev Sharma, SVP and global head of enterprise AI solutions & cognitive engineering at AI consultancy firm Pactera Edge, told Gizmodo. There is a tendency of panic buying of items in larger quantities and of different sizes and quantities. The [AI] models may have never seen such spikes in the past and hence would give less accurate outputs.

Artificial intelligence algorithms are behind many changes to our daily lives in the past decades. They keep spam out of our inboxes and violent content off social media, with mixed results. They fight fraud and money laundering in banks. They help investors make trade decisions and, terrifyingly, assist recruiters in reviewing job applications. And they do all of this millions of times per day, with high efficiencymost of the time. But they are prone to becoming unreliable when rare events like the covid-19 pandemic happen.

Among the many things the coronavirus outbreak has highlighted is how fragile our AI systems are. And as automation continues to become a bigger part of everything we do, we need new approaches to ensure our AI systems remain robust in face of black swan events that cause widespread disruptions.

Key to the commercial success of AI is advances in machine learning, a category of algorithms that develop their behavior by finding and exploiting patterns in very large sets of data. Machine learning and its more popular subset deep learning have been around for decades, but their use had previously been limited due to their intensive data and computational requirements. In the past decade, the abundance of data and advances in processor technology have enabled companies to use machine learning algorithms in new domains such as computer vision, speech recognition, and natural language processing.

When trained on huge data sets, machine learning algorithms often ferret out subtle correlations between data points that would have gone unnoticed to human analysts. These patterns enable them to make forecasts and predictions that are useful most of the time for their designated purpose, even if theyre not always logical. For instance, a machine-learning algorithm that predicts customer behavior might discover that people who eat out at restaurants more often are more likely to shop at a particular kind of grocery store, or maybe customers who shop online a lot are more likely to buy certain brands.

All of those correlations between different variables of the economy are ripe for use by machine learning models, which can leverage them to make better predictions. But those correlations can be ephemeral, and highly context-dependent, David Cox, IBM director at the MIT-IBM Watson AI Lab, told Gizmodo. What happens when the ground conditions change, as they just did globally when covid-19 hit? Customer behavior has radically changed, and many of those old correlations no longer hold. How often you eat out no longer predicts where youll buy groceries, because dramatically fewer people eat out.

As consumers change their habits, the intrinsic correlations between the myriad variables that define the behavior of a supply chain fall apart, and those old prediction models lose their relevance. This can result in depleted warehouses and delayed deliveries on a large scale, as Amazon and other companies have experienced. If your predictions are based on these correlations, without an understanding of the underlying causes and effects that drive those correlations, your predictions will be wrong, said Cox.

The same impact is visible in other areas, such as banking, where machine learning algorithms are tuned to detect and flag sudden changes to the spending habits of customers as possible signs of compromised accounts. According to Teradata, a provider of analytics and machine learning services, one of the companies using its platform to score high-risk transactions saw a fifteen-fold increase in mobile payments as consumers started spending more online and less in physical stores. (Teradata did not disclose the name of the company as a matter of policy.) Fraud-detection algorithms search for anomalies in customer behavior, and such sudden shifts can cause them to flag legitimate transactions as fraudulent. According to the firm, it was able to maintain the accuracy of its banking algorithms and adapt them to the sudden shifts caused by the lockdown.

But the disruption was more fundamental in other areas such as computer vision systems, the algorithms used to detect objects and people in images.

Weve seen several changes in underlying data due to covid-19, which has had an impact on performances of individual AI models as well as end-to-end AI pipelines, said Atif Kureishy, VP of global emerging practices, artificial intelligence and deep learning for Teradata. As people start wearing masks due to the covid-19, we have seen performance decay as facial coverings introduce missed detections in our models.

Teradatas Retail Vision technology uses deep learning models trained on thousands of images to detect and localize people in the video streams of in-store cameras. With powerful and potentially ominous capabilities, the AI also analyzes the video for information such as peoples activities and emotions, and combines it with other data to provide new insights to retailers. The systems performance is closely tied to being able to locate faces in videos, but with most people wearing masks, the AIs performance has seen a dramatic performance drop.

In general, machine and deep learning give us very accurate-yet-shallow models that are very sensitive to changes, whether it is different environmental conditions or panic-driven purchasing behavior by banking customers, Kureishy said.

We humans can extract the underlying rules from the data we observe in the wild. We think in terms of causes and effects, and we apply our mental model of how the world works to understand and adapt to situations we havent seen before.

If you see a car drive off a bridge into the water, you dont need to have seen an accident like that before to predict how it will behave, Cox said. You know something (at least intuitively) about why things float, and you know things about what the car is made of and how it is put together, and you can reason that the car will probably float for a bit, but will eventually take on water and sink.

Machine learning algorithms, on the other hand, can fill the space between the things theyve already seen, but cant discover the underlying rules and causal models that govern their environment. They work fine as long as the new data is not too different from the old one, but as soon as their environment undergoes a radical change, they start to break.

Our machine learning and deep learning models tend to be great at interpolationworking with data that is similar to, but not quite the same as data weve seen beforebut they are often terrible at extrapolationmaking predictions from situations that are outside of their experience, Cox says.

The lack of causal models is an endemic problem in the machine learning community and causes errors regularly. This is what causes Teslas in self-driving mode to crash into concrete barriers and Amazons now-abandoned AI-powered hiring tool to penalize a job applicant for putting womens chess club captain in her resume.

A stark and painful example of AIs failure to understand context happened in March 2019, when a terrorist live-streamed the massacre of 51 people in New Zealand on Facebook. The social networks AI algorithm that moderates violent content failed to detect the gruesome video because it was shot in first-person perspective, and the algorithms had not been trained on similar content. It was taken down manually, and the company struggled to keep it off the platform as users reposted copies of it.

Major events like the global pandemic can have a much more detrimental effect because they trigger these weaknesses in a lot of automated systems, causing all sorts of failures at the same time.

It is imperative to understand that the AI/ML models trained on consumer behavior data are bound to suffer in terms of their accuracy of prediction and potency of recommendations under a black swan event like the pandemic, said Pacteras Sharma. This is because the AI/ML models may have never seen that kind of shifts in the features that are used to train them. Every AI platform engineer is fully aware of this.

This doesnt mean that the AI models are wrong or erroneous, Sharma pointed out, but implied that they need to be continuously trained on new data and scenarios. We also need to understand and address the limits of the AI systems we deploy in businesses and organizations.

Sharma described, for example, an AI that classifies credit applications as Good Credit or Bad Credit and passes on the rating to another automated system that approves or rejects applications. If owing to some situations (like this pandemic), there is a surge in the number of applicants with poor credentials, Sharma said, the models may have a challenge in their ability to rate with high accuracy.

As the worlds corporations increasingly turn to automated, AI-powered solutions for deciding the fate of their human clients, even when working as designed, these systems can have devastating implications for those applying for credit. In this case, however, the automated system would need to be explicitly adjusted to deal with the new rules, or the final decisions can be deferred to a human expert to prevent the organization from accruing high risk clients on its books.

Under the present circumstances of the pandemic, where model accuracy or recommendations no longer hold true, the downstream automated processes may need to be put through a speed breaker like a human-in-the-loop for added due diligence, he said.

IBMs Cox believes if we manage to integrate our own understanding of the world into AI systems, they will be able to handle black swan events like the covid-19 outbreak.

We must build systems that actually model the causal structure of the world, so that they are able to cope with a rapidly changing world and solve problems in more flexible ways, he said.

MIT-IBM Watson AI Lab, where Cox works, has been working on neurosymbolic systems that bring together deep learning with classic, symbolic AI techniques. In symbolic AI, human programmers explicitly specify the rules and details of the systems behavior instead of training it on data. Symbolic AI was dominant before the rise of deep learning and is better suited for environments where the rules are clearcut. On the other hand, it lacks the ability of deep learning systems to deal with unstructured data such as images and text documents.

The combination of symbolic AI and machine learning has helped create systems that can learn from the world, but also use logic and reasoning to solve problems, Cox said.

IBMs neurosymbolic AI is still in the research and experimentation stage. The company is testing it in several domains, including banking.

Teradatas Kureishy pointed to another problem that is plaguing the AI community: labeled data. Most machine learning systems are supervised, which means before they can perform their functions, they need to be trained on huge amounts of data annotated by humans. As conditions change, the machine learning models need new labeled data to adjust themselves to new situations.

Kureishy suggested that the use of active learning can, to a degree, help address the problem. In active learning models, human operators are constantly monitoring the performance of machine learning algorithms and provide them with new labeled data in areas where their performance starts to degrade. These active learning activities require both human-in-the-loop and alarms for human intervention to choose what data needs to be relabeled, based on quality constraints, Kureishy said.

But as automated systems continue to expand, human efforts fail to meet the growing demand for labeled data. The rise of data-hungry deep learning systems has given birth to a multibillion-dollar data-labeling industry, often powered by digital sweatshops with underpaid workers in poor countries. And the industry still struggles to create enough annotated data to keep machine learning models up to date. We will need deep learning systems that can learn from new data with little or no help from humans.

As supervised learning models are more common in the enterprise, they need to be data-efficient so that they can adapt much faster to changing behaviors, Kureishy said. If we keep relying on humans to provide labeled data, AI adaptation to novel situations will always be bounded by how fast humans can provide those labels.

Deep learning models that need little or no manually labeled data is an active area of AI research. In last years AAAI Conference, deep learning pioneer Yann LeCun discussed progress in self-supervised learning, a type of deep learning algorithm that, like a child, can explore the world by itself without being specifically instructed on every single detail.

I think self-supervised learning is the future. This is whats going to allow our AI systems to go to the next level, perhaps learn enough background knowledge about the world by observation, so that some sort of common sense may emerge, LeCun said in his speech at the conference.

But as is the norm in the AI industry, it takes yearsif not decadesbefore such efforts become commercially viable products. In the meantime, we need to acknowledge and embrace the power and limits of current AI.

These are not your static IT systems, Sharma says. Enterprise AI solutions are never done. They need constant re-training. They are living, breathing engines sitting in the infrastructure. It would be wrong to assume that you build an AI platform and walk away.

Ben Dickson is a software engineer, tech analyst, and the founder of TechTalks.

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How the Coronavirus Pandemic Is Breaking Artificial Intelligence and How to Fix It - Gizmodo

The future of Artificial Intelligence and what it means to the Enterprise? – Analytics Insight

Technology headed by AI has been instrumental in augmenting human capacities and reinventing human lifestyle. Code-driven systems integrating information and connectivity have ushered a new era which was previously unimagined bringing untapped opportunities and unprecedented threats.

Technology experts across the world have predicted that networked artificial intelligence will amplify human effectiveness besides threating human autonomy, and capabilities. We are not far from the age of super intelligent AI where algorithms may match or even exceed human intelligence and capabilities on tasks which involve complex decision-making, sophisticated analytics, pattern recognition, reasoning and learning, language translation, visual acuity and speech recognition

Data Security

Modern enterprises generate data and most of that still battles against data abuse. Most AI tools are and will be dominated by companies and governments who are striving for profits or power. This leaves data silos and data lakes open rising fears of security against data mishandling.

Diminishing Human Cognition

Though many see AI to augment human capacities but some even predict the opposite. The increasing dependence on machine-driven networks may diminish human cognitive abilities to think for themselves, interact effectively with others and take decisions independent of automated systems.

Trade-off for the Inevitable

As AI algorithms have taken over decision making and predictions, humans may experience a loss of control over their ability to think and act. Decision-making on key aspects is automatically ceded to code powered black box tools. The drag and drop tools are not making decisions easy, as users know the context but do not understand the logic behind why the tools work. Thus, in this context, privacy and the power over choice; are scarified with no control over the processes.

AI and allied technologies have already achieved superhuman performance in a juncture of areas, and it is beyond doubt that their capabilities will improve over the years, probably very significantly in 10 years from now, by 2030. Aided by an access to vast data troves, bots powered by intelligent automation will surpass humans in their ability to take complex decisions. AI will drive a vast range of efficiency optimizations especially into highly rule-based chores which involve manpower.

Newer generations of citizen data scientists will become more and more dependent on networked AI structures and processes. Networked interdependence will, increase an enterprises vulnerability to cyberattacks. There will be a sharp gap between the digital haves and have-nots, especially those who are technologically dependent digital infrastructures. The next question will be to answer the commanding heights of the digital network infrastructures ownership and control.

Artificial Intelligence is empowering the ability for autonomous operation and the first thing which comes to mind is autonomous vehicles, but the applications are limitless. The combination of natural language processing, predictive analytics, and the world of intelligent sensors powered by IoT have had a pervasive impact in our daily lives.

Summing up, AI will be an integral component of an enterprise experience. Organisations will increasingly use and sometimes rely on AI systems to enhance their daily interactions with each other. In the next decade, AI will propel the powers of language translation and augmented creativity bringing a new dimension into digital transformation.

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Kamalika Some is an NCFM level 1 certified professional with previous professional stints at Axis Bank and ICICI Bank. An MBA (Finance) and PGP Analytics by Education, Kamalika is passionate to write about Analytics driving technological change.

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The future of Artificial Intelligence and what it means to the Enterprise? - Analytics Insight

How artificial intelligence is transforming the world in the current pandemic situation? – Geospatial World

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Artificial intelligence (AI) is a wide-ranging tool that allows individuals to reconsider how we can all mix data, examine information, and use the subsequent understandings to conclude. Already it is altering each way of our life. AIs application in various sectors has been applied drastically. They address problems in the expansions and provide approvals for receiving the most from artificial intelligence while still caring for significant human values.

Artificial intelligence (AI) is changing our way of life, meaning to impersonate human insight by a PC/machine in settling different issues. At first, AI was intended to defeat more manageable issues like dominating a chess match, language recognition, and picture recovery. With the innovative headways, AI is getting progressively sophisticated at doing what people do, yet more effectively, quickly, and at a lower cost in tackling complex issues. Artificial intelligence is paying attention in combating the current pandemic. Projects directly is associated to pharmacology, hospital and medical care, or stretch inspection to decrease infection have seen a critical supporter in data science to make development and bring positive results.

The pandemic taken place due to COVID-19 is the initial worldwide public health disaster in the 21st century. At present, numerous AI-driven projects depended on data science big data or machine learning is being used through many wide varieties of areas to envisage, clarify and handle the dissimilar situations that take place due to health disaster. AI over here is playing an essential role in supporting and aiding to make important decisions.

AI has been used and delivered in getting results in three fields in the situation of the epidemic that is in the investigation of virus study and the growth of medicines and injections. The other one is in the administration of resources and services at healthcare places. While the last is in examining data to sustenance public policy choices meant at handling the disaster, like the quarantine procedures.

Below are a few methods where AI technology is used to help restrain the disturbing effect of the virus.

Currently, the data needed for measuring a persons scientific danger from constricting an assumed virus are not effortlessly retrieved. Administrations surely can increase nationwide fitness information congregation by making or passing many complete electric medical records. Nonetheless, the worth of such might be less as it will be time consuming to arise among the past data in medicinal archives and the impact on a victim. AI gives the best method that can make as well as share a prediction model from an original outbreak. A dataset with several victims is huge to allow a few levels of the modified forecast.

The earlier interferences are taken to stalk the current of an epidemic, the additional successful they are at decelerating and discontinuing the spread. This is why the initial examination of a crisis in the expansion is very much needed. Many AI solutions companies are energetically using AI to forecast outbursts of infectious viruses.

Even the geolocation and facial recognition technology is being used to track people who might contact COVID -19 patients. With AI tools, one could even use to trail amenability with quarantine and self-isolation orders. AI potential has always been very clear during the crisis. At the time of the pandemic, when time plays an important part, AI can help as an important tool in assisting the researchers excavate understandings from large bands of data.

Also Read: How Smart Cities are Fighting the COVID-19 Pandemic

Researchers are making use of AI to assist them to mine data for perceptions. This similar method is sued even previously to recognize a possible use of circumstance for magnesium in the handling of a recurrent throbbing headache. Thus, artificial intelligence procedures permit us to identify and modify medical care and follow-up strategies for the best outcomes.

Although AI has not totally progressed to overcome an epidemic, nonetheless, the part of AI is markedly huge at the time of COVID19 as compared to the one that was initially. It is correctly applied as a tool perfecting humanoid intelligence.

To summarize, the entire nation is on the point of transforming numerous sectors during the pandemic with the help of data analytics and artificial intelligence. There already are important dispositions in the backing, nationwide security, fitness care, transport, and so on that have changed decision-making, commercial prototypes, danger extenuation, and organization performance. These expansions are making sizeable social and economic advantages.

Also Read: COVID-19: When a crisis becomes a catalyst for change

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How artificial intelligence is transforming the world in the current pandemic situation? - Geospatial World

Shield AI Recognized As One of the Most Promising Artificial Intelligence Companies – PR Web

Ryan Tseng and Brandon Tseng at Shield AI's San Diego office.

SAN DIEGO (PRWEB) July 29, 2020

Shield AI, the technology company focused on developing innovative AI technology to safeguard the lives of military service members and first responders, today expressed its gratitude to Forbes for naming the company as one of the AI 50: Americas Most Promising Artificial Intelligence Companies for 2020. The five-year-old company has developed AI technology that enables unmanned systems to interpret signals and react autonomously in dynamic environments, including on the battlefield. Shield AIs products are already being utilized by the US Department of Defense to augment and extend service members ability to execute complex missions.

Shield AI co-founder Brandon Tseng, who served in the U.S. Navy for seven years, including as a SEAL, said Following my last deployment, I came home with the strong conviction that artificial intelligence could make a profound positive impact for our service members. This was the idea that Shield AI was founded upon, and a half-decade later, we are elated to have Forbes recognize our innovation of AI technology as both promising and meaningful.

Shield AI has grown from fewer than 30 employees at the end of 2017 to nearly 150 today, while producing revenue metrics on pace with the growth trajectory of the most promising venture-backed start-ups, including doubling its revenue between 2018 and 2019. In an adjoining profile Forbes noted that Shield AI is is in prime position to capitalize on the nascent market consisting of autonomous technology linked to national security issues.

Shield AI has developed three cutting-edge products for its range of customers, spanning both software and systems. Its Nova quadcopter is an unmanned artificially intelligent robotic system which can autonomously explore and map complex real-world environments without reliance on GPS or a human operator. Nova is powered by Hivemind Edge, the companys intelligent software stack that enables machines to execute complex, unscripted tasks in denied and dynamic environments without direct operator inputs. The application is edge-deployed, with all processing and computation occurring without relying on a central intelligence hub, a critical need in environments lacking stable communications. The second software product, Hivemind Core, integrates data management and analysis, scalable simulation, and self-directed learning in order to radically accelerate product development workflows.

In the coming months, Shield AI will unveil a second generation Nova quadcopter aimed at bringing the power of resilient AI systems to an even wider array of mission sets, coupled with the ability to partner in real-time with operators to navigate tunnels beneath the earth and multi-level structures.

About Shield AIShield AI was founded in 2015 by Brandon Tseng, a former Navy SEAL, Ryan Tseng, a successful tech entrepreneur, and autonomy expert Andrew Reiter. Today the team is more than 140-strong, with Chief Technology Officer Prof. Nathan Michael of Carnegie Mellon Universitys Resilient Intelligent Systems Lab leading the companys development of AI systems that operate on the edge in challenging, previously unknown, real-world environments.

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Artificial Intelligence In Diagnostics Market Worth $3.0 Billion By 2027: Grand View Research, Inc. – PRNewswire

SAN FRANCISCO, July 29, 2020 /PRNewswire/ -- The global artificial intelligence in diagnostics market size is expected to reach USD 3.0 billion by 2027, expanding at a CAGR of 32.3%, according to a new report by Grand View Research, Inc. Increase in the number of healthcare Artificial Intelligence (AI) diagnostic startups coupled with huge investments by venture capitalist firms to develop innovative technologies that allow fast and effective diagnostic procedures due to continuous increase in number of patients suffering from chronic diseases supports the growth of the market. Around 33.3% of all healthcare AI SaaS companies are engaged in developing diagnostics, making it largest focus area for startups in the market.

Growing investments and funding for AI in healthcare is also one of the key factors driving the market. For instance, in 2016, the U.S.-based startup, PathAI, secured USD 75.2 million investment for developing machine learning technology that assists pathologists in making more precise diagnosis. Rising investments in AI diagnosis-based startups is one of the key indicators that depicts upcoming opportunities.

Key suggestions from the report:

Read 150 page research report with ToC on "Artificial Intelligence In Diagnostics Market Size, Share And Trends Analysis Report By Component (Software, Hardware, Services), By Diagnosis Type, By Region, And Segment Forecasts, 2020 - 2027" at: https://www.grandviewresearch.com/industry-analysis/artificial-intelligence-diagnostics-market

Moreover, increasing adoption of AI technology by hospitals and research centers for clinical diagnosis purpose is another factor propelling market growth. For instance, in July 2018, two national research institutes in Japan succeeded in implementing AI technology for detecting early stage stomach cancer with high precision rate of 95.0% for healthy tissues and 80.0% for cancer tissues. According to National Cancer Centre and Riken, AI technology took 0.004 seconds to identify whether obtained endoscopic image contains normal stomach tissue or early stage cancer tissue. Growing awareness regarding the technology is expected to boost the usage of AI in medical procedures.

Grand View Research has segmented the artificial intelligence in diagnostics market on the basis of component, diagnosis type, and region:

Find more research reports on Healthcare IT Industry,by Grand View Research:

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About Grand View Research

Grand View Research, U.S.-based market research and consulting company, provides syndicated as well as customized research reports and consulting services. Registered in California and headquartered in San Francisco, the company comprises over 425 analysts and consultants, adding more than 1200 market research reports to its vast database each year. These reports offer in-depth analysis on 46 industries across 25 major countries worldwide. With the help of an interactive market intelligence platform, Grand View Research helps Fortune 500 companies and renowned academic institutes understand the global and regional business environment and gauge the opportunities that lie ahead.

Contact:

Sherry James Corporate Sales Specialist, USAGrand View Research, Inc.Phone: +1-415-349-0058Toll Free: 1-888-202-9519Email: [emailprotected] Web: https://www.grandviewresearch.com Follow Us: LinkedIn | Twitter

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Artificial Intelligence In Diagnostics Market Worth $3.0 Billion By 2027: Grand View Research, Inc. - PRNewswire

Elon Musk Thinks that Artificial Intelligence Will Be ‘Vastly Smarter’ Than Humans in 5 Years – News18

File photo of Tesla CEO Elon Musk. (Image credits: Reuters)

Tesla and SpaceX CEO Elon Musk has claimed that Artificial Intelligence will be 'vastly smarter' than any human and would overtake us by 2025.

"We are headed toward a situation where AI is vastly smarter than humans. I think that time frame is less than five years from now. But that doesn't mean that everything goes to hell in five years. It just means that things get unstable or weird," Musk said in an interview with New York Times over the weekend.

This is not the first time that Musk has shown concern related to AI. Back in 2016, Musk said that humans risk being treated like house pets by AI unless technology is developed that can connect brains to computers.

He even described AI as an 'existential threat' to humanity.

"I think we should be very careful about artificial intelligence. If I were to guess like what our biggest existential threat is, it's probably that,'' he said.

However, Musk helped found the artificial intelligence research lab OpenAI in 2015 with the goal of developing artificial general intelligence (AGI) that can learn and master several disciplines.

Recently, OpenAI released its first commercial product, a programme to make use of a text-generation tool that it once called too dangerous.

It has the potential to spare people from writing long texts. Once an application is developed on the basis of the programme, all they need to give is a prompt.

OpenAI earlier desisted from revealing more about the software fearing bad actors might misuse it for producing misleading articles, impersonate others or even automate phishing content.

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Elon Musk Thinks that Artificial Intelligence Will Be 'Vastly Smarter' Than Humans in 5 Years - News18

First Comstech exhibition of artificial intelligence to commence on August 4 – The News International

First Comstech exhibition of artificial intelligence to commence on August 4

Islamabad: The purpose of the 1st Comstech Showcasing of Artificial Intelligence and IoT Products and Services: AI and IoT for Pakistan, is to foster interest in Science, Technology, and Innovation and to popularize the field of artificial intelligence among the youth of Pakistan, stimulating their interest in the sphere of innovation, and in high-tech areas of technology.

This national exhibition will be a unique platform for innovators, technology developers, and service providers, who are eager and ready to share experience and professional skills with end users to appreciate the importance of this field and foster linkages for development in national economic growth, informed Prof. Dr. M. Iqbal Choudhary, while addressing a press briefing on the 1st Comstech Showcasing of Artificial Intelligence and IoT Products and Services: AI and IoT for Pakistan, to be held on August 4 to 5, 2020 at Comstech Secretariat Islamabad, is being organised by Comstech, CARE (Pvt) Ltd., MoST and MoITT.

The national showcasing is designed to promote projects and innovations in the realm of AI and allied technologies. It is a showcasing of next generation technologies, solutions and strategies from all over Pakistan, to provide an opportunity to explore and discover the practical and successful implementation of AI and allied technologies in Pakistan. The event will provide the opportunity to network with relevant ministries, industry R&D organizations, academia, strategic organizations and peers. This two-day event will be open for the general public and potential customers to visit, Coordinator General, Comstech informed.

Artificial Intelligence is the most promising field in the next generation Information Technology and has the potential to boost the national economy in several areas, and enhance exports to many folds. Countries around the globe are strategising to take maximum benefit from AI, Dr. Iqbal mentioned. Under the patronage of the President of Pakistan, Pakistan is emerging as a major global player in this technology by aligning with the global future demands, training its human resource with valuable skills in IT, providing enabling environment to boost digital economy, increasing IT exports, and assisting in the creation of knowledge based jobs, noted by Coordinator General, COMSTECH.

The Coordinator General Comstech, Prof. Dr. M. Iqbal Choudhary on behalf of the organising committee, invited the general public to visit this mega event. Thirty organizations from public and private sectors will display their products in diverse sectors including agriculture, health, and automation, informed Mr. M. Aamir, Project Director, CARE, while addressing the briefing.

There is a great potential in Pakistan to excel, we have talent, we have hardworking human resources, we just need to synergize our efforts, start joint initiatives and showcase results, stressed Dr. Tariq Masood, Adviser MoST. He appreciated COMSTECHs efforts in this regard.

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First Comstech exhibition of artificial intelligence to commence on August 4 - The News International

Using artificial intelligence to smell the roses – UC Riverside

A pair of researchers at the University of California, Riverside, has used machine learning to understand what a chemical smells like a research breakthrough with potential applications in the food flavor and fragrance industries.

We now can use artificial intelligence to predict how any chemical is going to smell to humans, said Anandasankar Ray, a professor of molecular, cell and systems biology, and the senior author of the study that appears in iScience. Chemicals that are toxic or harsh in, say, flavors, cosmetics, or household products can be replaced with natural, softer, and safer chemicals.

Humans sense odors when some of their nearly 400 odorant receptors, or ORs, are activated in the nose. Each OR is activated by a unique set of chemicals; together, the large OR family can detect a vast chemical space. A key question in olfaction is how the receptors contribute to different perceptual qualities or percepts.

We tried to model human olfactory percepts using chemical informatics and machine learning, Ray said. The power of machine learning is that it is able to evaluate a large number of chemical features and learn what makes a chemical smell like, say, a lemon or a rose or something else. The machine learning algorithm can eventually predict how a new chemical will smell even though we may initially not know if it smells like a lemon or a rose.

According to Ray, digitizing predictions of how chemicals smell creates a new way of scientifically prioritizing what chemicals can be used in the food, flavor, and fragrance industries.

It allows us to rapidly find chemicals that have a novel combination of smells, he said. The technology can help us discover new chemicals that could replace existing ones that are becoming rare, for example, or which are very expensive. It gives us a vast palette of compounds that we can mix and match for any olfactory application. For example, you can now make a mosquito repellent that works on mosquitoes but is pleasant smelling to humans.

The researchers first developed a method for a computer to learn chemical features that activate known human odorant receptors. They then screened roughly half a million compounds for new ligands molecules that bind to receptors for 34 odorant receptors. Next, they focused on whether the algorithm that could estimate odorant receptor activity could also predict diverse perceptual qualities of odorants.

Computers might help us better understand human perceptual coding, which appears, in part, to be based on combinations of differently activated ORs, said Joel Kowalewski, a student in the Neuroscience Graduate Program working with Ray and the first author of the research paper. We used hundreds of chemicals that human volunteers previously evaluated, selected ORs that best predicted percepts on a portion of chemicals, and tested that these ORs were also predictive of new chemicals.

Ray and Kowalewski showed the activity of ORs successfully predicted 146 different percepts of chemicals. To their surprise, few rather than all ORs were needed to predict some of these percepts. Since they could not record activity from sensory neurons in humans, they tested this further in the fruit fly (Drosophila melanogaster) and observed a similar result when predicting the flys attraction or aversion to different odorants.

If predictions are successful with less information, the task of decoding odor perception would then become easier for a computer, Kowalewski said.

Ray explained that many items available to consumers use volatile chemicals to make themselves appealing. About 80% of what is considered flavor in food actually stems from the odors that affect smell. Fragrances for perfuming cosmetics, cleaning products, and other household goods play an important role in consumer behavior.

Our digital approach using machine learning could open up many opportunities in the food, flavor, and fragrance industries, he said. We now have an unprecedented ability to find ligands and new flavors and fragrances. Using our computational approach, we can intelligently design volatile chemicals that smell desirable for use and also predict ligands for the 34 human ORs.

The study was partially funded by UCR and the National Science Foundation.

The technology has been disclosed to the UCR Office of Technology Partnerships, assigned UC case number 2019-131, is patent pending, titled Methods for identifying, compounds identified and compositions thereof, and licensed to the startup company Sensorygen Inc. Founded by Ray in 2015, Sensorygen utilizes computational biology and artificial intelligence to discover natural replacements for toxic and harsh chemicals in everyday products, including finding new flavors and insect repellents.

The research paper is titled Predicting human olfactory perception from activities of odorant receptors.

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Using artificial intelligence to smell the roses - UC Riverside

Artificial intelligence helps lead decisions over Intelligent automation and – 401kTV

Artificial intelligence helps lead decisions over intelligent automation. Intelligent automation can be thought of as a combination of robotic process automation and artificial intelligence, according to an article on the topic in HR Dive. HR Dive is a publication designed for human resources professionals. Organizations that embrace intelligent automation may experience a return on investment of 200% or more, according to an Everest Group report cited by HR Dive. However, that doesnt mean organizations can automatically anticipate a reduction in headcount. Projections of a reduction in workforce thanks to intelligent automation may possibly be inflated.

The Everest Group identified eight companies it called Pinnacle Enterprises. These are companies distinguished by their advanced intelligent automation capabilities and their superior outcomes. These companies generated about 140% ROI and reported more than 60% cost savings, thanks to artificial intelligence and intelligent automation. The companies the Everest Group identified as Pinnacle Enterprises also experienced a 67% improvement in operational metrics, compared to the 48% improvement reported by other organizations. The Pinnacle Organizations also experienced improvements in their top lines, time-to-market, and customer and employee experiences as a result of using artificial intelligence and intelligent automation in their businesses, according to the Everest Group report.

Technology, particularly artificial intelligence helps in many ways. By now, intelligent automation, is infiltrating businesses little by little, especially in the human resources space. Artificial intelligence helps HR professionals. It is easy to see where Artificial Intelligence helps other departments as it was identified as a top employee benefits trend for 2020. Its a trend employers would do well to pay attention to, especially since cost savings and ROI seem to be significant potential positive outcomes of adopting such technologies.

Technologies such as artificial intelligence and intelligent automation make human resources more efficient. According to a Hackett Group report from 2019, HR in organizations that leverage automation technology can do more with fewer resources an important distinction in a department thats often considered the heart of an organization, and that typically has more work than staff to complete it. In addition, the utilization of artificial intelligence and intelligent automation are hallmarks of a distinguished organization. Per the Hackett Group data, cited by HR Dive, world-class HR organizations leverage [artificial intelligence]. As a result, they have costs that are 20% lower than non-digital organizations and provide required services with 31% fewer employees.

Despite the apparent benefits, not everyone is a fan of automated technologies such as artificial intelligence and intelligent automation. Professors at the Wharton School of the University of Pennsylvania and ESSEC Business School, an international higher education institution located in France, Singapore, and Morocco, cautioned employers about the potential downsides of using artificial intelligence and intelligent automation in human resources functions. Specifically, they warned that artificial intelligence could create problems for human resources because its unable to measure some HR functions and infrequent employee activities because they generate little data, can solicit negative employee reactions, and is constrained by ethical and legal considerations. However, human resources professionals are finding some success in using artificial intelligence and intelligent automation to perform functions such as searching through resumes for keywords and assisting with other recruiting functions, for example.

Despite the concerns of some, its likely that artificial intelligence and intelligent automation will continue to command a presence in human resources. As such, automation will prompt organizations to make a heftier investment in talent, noted a study by MIT Sloan Management Review and Boston Consulting Groups BCG GAMMA and BCG Henderson Institute. The study found that employers who successfully embrace artificial intelligence and intelligent automation will build technology teams in-house and rely less on external vendors. Theyll also poach artificial intelligence talent from other companies and upskill current employees to be on the front lines of the automation movement. Artificial intelligence and intelligent automation is here to stay, and its only getting more pervasive, especially in human resources and employee benefits. Employers should be ready.

Steff C. Chalk is Executive Director of The Retirement Advisor University, a collaboration with UCLA Anderson School of Management Executive Education. Steff also serves as Executive Director of The Plan Sponsor University and is current faculty of The Retirement Adviser University.

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Artificial intelligence helps lead decisions over Intelligent automation and - 401kTV