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Artificial Intelligence is a growing threat to authenticity in art – Bulletin

Flying houses and cars, mailing services powered by rockets and widespread telepathy. These Jetson-esque'' innovations represent just a few of the hilariously inaccurate predictions made in the '70s regarding life in the 2020s. While most of the educated guesses our temporal brothers and sisters wagered about contemporary life were miles off, they werent wrong about one. In fact, their prediction not only came true, but has become one of the biggest threats to all forms of original art today: artificial intelligence.

No, the robots from Ex Machina havent started curating art collections just yet. However, the recent advent of both AI-generated artwork and music has sent ripples through both industries.

Thanks to TikTok, Wombo Dream (available on iOS, Android) has emerged as one of the most accessible forms of AI artwork. Simply by typing in phrases or keywords, Wombo will generate art using AI that combines the word prompts with elaborate murals made from preexisting images. Within seconds, Wombos AI is able piece together intricacies in art that would take human artists hours or even days, even with specifically vague prompts like Galactic Archeology With Metal-Poor Stars

With billions of images available in an instant to an advanced AI such as the one behind Wombo, the sophistication of AI-generated artwork is startling, but nowhere near as alarming as the music it can create.

AI musics vast capabilities span a comprehensive set of musical processes, including composition, performance, digital sound processing and even interactive composition. Plenty of websites out there can emulate something similar to what Wombo presents, offering an AI that can produce millions of songs based on user specifications. But music AI is far more intuitive as it possesses the competency to react in real time to a live, human performer. Utilized in this way, AI can replace entire live bands and orchestras by producing the same quality of music in less time, with less confusion and more harmony.

While less-advanced AIs use internet databases to power their machine learning, music AIs use neural networks to mimic how the brain works when creating music. Essentially, if you throw bits of music at these AIs, it will learn its patterns and frequencies by repeated exposure to it.

Perhaps one of the most unsettling examples of this technology is its utilization by one of the most musically-deprived fanbases in rap music: Playboi Carti fans. A simple YouTube search yields plenty of AI-generated Carti tracks created with the application of this technology. Fans even created an EP for Carti using AI, titled DIGITAL BUTTERFLIES. The project uses Cartis real voice, famous ad libs and even frequent Carti collaborator Pierre Bournes sound kit to craft bouncy, psychedelic, six-track trap project, one nearly as polished as something Carti himself would create early on in his career.

*embed "digital butterflies EP on youtube*

Beside being decidedly creepy and soulless, this clearly presents a plethora of pressing issues for the music industry. From further blurring the already murky lines regarding posthumous music to opening even more avenues for artist exploitation, the mere presence of AI music in its current state can and will be an obstacle.

One way or the other, original art is about to become more scarce whether we like it or not. Much in the same way we consume social media, art will have to be viewed with the eye of a skeptic.

Luke Modugno is a digital editor. Follow him on Twitter: @lmodugno5.

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The Rise of Artificial Intelligence in 2022: Where is the World Headed? – Analytics Insight

The rise of artificial intelligence in the digital world is making decisions that impact our lives

Without a question, AI is still in its infancy, but it has reached a critical mass where both study and application may take place at the same time. We can categorically state that we have shifted gears. Whether we want it or not, AI is already making decisions that impact our lives, and it has made enormous progress in recent years.

While it is tempting to believe that AI has permeated practically every vertical or market, this is not the case. There are just a few technical hotspots in a few select areas where AI is gaining traction.

However, marketing techniques are at work to make everyone believe that AI has covered all, whereas, in reality, numerous areas remain unexplored.

Many image-recognition technologies are increasingly more capable of detecting malignancy or micro-fractures in MRI or X-ray data from patients. Many pattern-recognition systems can connect multiple pathology reports and generate a near-perfect prediction of the patients condition. Despite this, making medical advice without a doctors specific clearance is not usual.

This is great because, when human life is on the line, systems should never make the final decision. As a result, AI may only achieve the position of aided intelligence in the medical area, and it may not be authorized to become a mainstream phenomenon at all.

Human touch is getting more expensive as corporations continue to remove individuals from customer support and replace them with chatbots or AI-driven automated replies. One startups key difference during an event where companies pitched their company or product was that they offer personal help for any queries. In regards of AI- and non-AI-based solutions, were seeing an interesting trend.

Another field where AI is making inroads is self-learning solutions. It is gaining popularity due to its use of personalised learning, pace, and suggestions. However, as a result of this, teaching, coaching, and guiding will quickly become a high-touch service that will continue to be in great demand. As a result, its difficult to say if AI has actually impacted this industry or has simply mutated it into something new.

Performing arts and culture are another sector where AI has yet to influence and may not have an impact. These are such individualised and creative endeavours that they would be meaningless without the presence of a human. There have been a few AI-created art endeavours, but such art forms have a distinct flavour to them.

When it comes to end-users of AI technology, the majority are filled with fear, uncertainty, and doubt. The technologys inherent duality is a major source of concern. AI is a powerful tool, and people can use it for good or evil, just like any other tool. Furthermore, because no one has yet openly discussed how to deal with possible AI misuse, this has remained an increasing concern.

Another reason for AI scepticism is a plausible worry of job loss. It would be unquestionably hazardous and chaotic if large numbers of people lost their employment without an alternative mechanism in place.

However, if you think about it carefully, youll see that many people arent concerned about losing their jobs. When peoples regular jobs are disturbed, their biggest concern is that they will have nothing to do.

Regrettably, the bulk of AI implementation projects fails to address this issue from the start. It is done as an addition instead. It is possibly the most compelling reason for AI scepticism.

The rising trend in technical innovation has always been present. Apart from savings, AI and other developing technologies are also introducing new possibilities. New businesses and opportunities are being created as a result of these possibilities. As time goes on, this will continue to be the case.

Due to the amount of data, most daily jobs that rely on best estimates or guessing would witness a substantial shift. As more data becomes available, the demand for devices that can process it on the edge will grow, and this will be a crucial driver in continuing this trend.

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The Global Artificial Intelligence Market is expected to grow by $ 8.63 bn during 2022-2026, progressing at a CAGR of 47.33% during the forecast…

New York, Feb. 08, 2022 (GLOBE NEWSWIRE) -- Reportlinker.com announces the release of the report "Global Artificial Intelligence Market in the Telecommunication Industry 2022-2026" - https://www.reportlinker.com/p06227629/?utm_source=GNW 63 bn during 2022-2026, progressing at a CAGR of 47.33% during the forecast period. Our report on the artificial intelligence market in the telecommunication industry provides a holistic analysis, market size and forecast, trends, growth drivers, and challenges, as well as vendor analysis covering around 25 vendors.The report offers an up-to-date analysis regarding the current global market scenario, latest trends and drivers, and the overall market environment. The market is driven growing use of AI for efficient predictive maintenance and rising use of AI for enhancing customer experience. In addition, growing use of AI for efficient predictive maintenance is anticipated to boost the growth of the market as well.The artificial intelligence market in the telecommunication industry analysis includes the component segment and geographic landscape.

The artificial intelligence market in the telecommunication industry is segmented as below:By Component Solutions Services

By Geographical Landscape North America Europe APAC South America MEA

This study identifies the increasing use of ai for network optimization as one of the prime reasons driving the artificial intelligence market growth in the telecommunication industry during the next few years.

The analyst presents a detailed picture of the market by the way of study, synthesis, and summation of data from multiple sources by an analysis of key parameters. Our report on artificial intelligence market in the telecommunication industry covers the following areas: Artificial intelligence market sizing Artificial intelligence market forecast Artificial intelligence market industry analysis

This robust vendor analysis is designed to help clients improve their market position, and in line with this, this report provides a detailed analysis of several leading artificial intelligence market vendors in the telecommunication industry that include Alphabet Inc., AT and T Inc., Baidu Inc., Cisco Systems Inc., Deutsche Telekom AG, Infosys Ltd., Intel Corp., International Business Machines Corp., Microsoft Corp., and NVIDIA Corp. Also, the artificial intelligence market in the telecommunication industry analysis report includes information on upcoming trends and challenges that will influence market growth. This is to help companies strategize and leverage all forthcoming growth opportunities.The study was conducted using an objective combination of primary and secondary information including inputs from key participants in the industry. The report contains a comprehensive market and vendor landscape in addition to an analysis of the key vendors.

The analyst presents a detailed picture of the market by the way of study, synthesis, and summation of data from multiple sources by an analysis of key parameters such as profit, pricing, competition, and promotions. It presents various market facets by identifying the key industry influencers. The data presented is comprehensive, reliable, and a result of extensive research - both primary and secondary. Technavios market research reports provide a complete competitive landscape and an in-depth vendor selection methodology and analysis using qualitative and quantitative research to forecast the accurate market growth.Read the full report: https://www.reportlinker.com/p06227629/?utm_source=GNW

About ReportlinkerReportLinker is an award-winning market research solution. Reportlinker finds and organizes the latest industry data so you get all the market research you need - instantly, in one place.

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Artificial Intelligence To Control The Quality In Production Metrology and Quality News – Online Magazine – "metrology news"

Quality has always been part of AudisDNA, and its also the aim of apilot project launched last year at the Neckarsulmsite to check the correct execution of spot welds in high-volume production. The partners in this project, which is part of theVolkswagen Groups Industrial Cloudwhich is to be implemented in other plants, are SiemensandAmazon Web Services.

In the body of a car like theAudi A6, around 5,300 spotweldsare required. Up until now, thequalityof the welds has been monitored manually by technicians using ultrasound on the basis ofrandom analyses. In theWPS Analytics pilot project, in which specialists from the fields of manufacturing, innovation management, planning, digitization and IT are involved,artificial intelligenceis used to detect quality anomalies automatically and in real time.

The WPS Analytics Pilot Project

TheWPS Analytics team is led by Mathias Mayer and Andreas Rieker. Michael Haeffner, Head of Delivery Management DigitalizationforProduction and Logisticsat AUDI AG, says: Our goal is to test and developdigital solutionsfor vehicle manufacturing right through to their use in seriesproduction. With the use ofAI, we are testing an important key technology here that will make Audi and the location fit for the future.

The system consists of analgorithm, a graphical user interface (dashboard) and anapplicationfor more in-depth analyses. Thetargetof thisprojectis for the algorithm to be able to evaluate close to 100% of the set welding points, while the long-term goal is that the quality of theweldingprocesses can be automatically controlled and continuously optimized.

Artificial Intelligence In Production

The algorithm serves as a blueprint for further applications in connected manufacturing and allows us to make advancements to existing digital solutions, such as predictive maintenance, explains Mayer, who has already been working on the application of artificial intelligence in Audi production for some five years.

TheIngolstadt-based company is taking the lead in driving forward this pilot project within theVolkswagen GroupsIndustrial Cloud, which brings together production data from all of the Groupsfactoriesworldwide, with the main aim of increasingefficiencyand reducingcosts. Each cloud connected site can download applications and updates for its machines and systems, similar to an app store, increasing process efficiency.

Synergies Through The Industrial Cloud

The experience with WPS Analytics at Neckarsulmhas already proved useful at theVolkswagen siteinEmden, wherespot weldingis controlled byalgorithmsthanks to lessons learned from the projects that feed into theIndustrial Cloud. InIngolstadt, a further application is being implemented that uses an algorithmto make work in the press shop more efficient.Artificial intelligencewill be used to detect defects such as small cracks in the car body.

This project is also part of theAutomotive Initiative2025 (AI25), an initiative that brings together partners from the academic world and the IT sector to make plants, and therefore production and logistics, more flexible and smarter throughdigitalization. Already today, someinnovativetechnologiesare helping employees in practice, relieving them of monotonous and strenuous physical and manual tasks.

Source:AUDI AG

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Is Artificial Intelligence the Key to Greater Productivity in AM? – 3Dnatives

As a digital manufacturing method, additive manufacturing has already managed to establish itself in a wide variety of industries. Whether in medicine, the automotive sector or the consumer goods industry, there is hardly any sector that does not benefit from the strengths of 3D printing. Among other things, the technology innovates production processes by making components both more flexible and more sustainable. Nevertheless, 3D printing has not yet been able to realize its full potential in terms of productivity. Could artificial intelligence be the key? A German-Canadian consortium is now addressing this question by developing new process control software for laser material deposition. Ultimately, it is intended to optimize production and increase productivity.

It is well known that 3D printing is a leading technology that is considered part of Industry 4.0. This era is defined by the increasing digitization and adaptation of artificial intelligence in all areas. The fact that additive manufacturing methods can benefit from automation seems unsurprising, especially with regard to process optimization. For this reason, a German-Canadian consortium has now been established in the project Artificial Intelligence Enhancement of Process Sensing for Adaptive Laser Additive Manufacturing AI-SLAMThe German partners include the Fraunhofer Institute for Laser Technology ILT in Aachen and the software developer BCT from Dortmund. On the Canadian side, the project is coordinated by the National Research Council NRC and supported by a team of researchers from McGill University (Montreal). Apollo Machine and Welding Ltd in Alberta is also participating in the project. The aim is to develop software for equipment manufacturers so that LMD processes can run automatically.

Photo Credits: Fraunhofer ILT, Aachen

Laser material deposition (LMD) is a hybrid manufacturing method wherein material with a layer thickness of 0.01 mm to 2 mm can be applied with high precision to almost any metallic base material in a very short time. Users of laser buildup welding know that to ensure component quality, the thickness of the layer must be measured after each coating or at least after every 10th layer and the process control adjusted. In the future, thanks to AI, the system could automatically recognize precisely this necessity. Therefore, the software would ultimately be able to identify deviations from the specified contour and automatically control process parameters such as the feed rate. In addition, the software should learn independently on the basis of a database and optimize the process iteratively.

An undertaking that is not only complex, but also relies on a large amount of process data. Recent successes include the commissioning of software functionality for component scanning and automatic path planning at the Fraunhofer ILT facility. AI-SLAM is set to run until March 2024 under the 3+2 funding program with Canada and is being developed for users including Apollo. The Canadian company works with LMD technology to repair wear parts (such as the stone crusher tooth) and expects one thing above all from automated process control: efficiency gains or producing more with less effort. You can find out more about the project HERE.

For complex geometries, AI-based process optimization will enable significant efficiency gains (photo credits: Apollo Machine and Welding Ltd, Canada)

What potential do you see in the combination of additive manufacturing and artificial intelligence? Do you think it could help push productivity into the next level? Let us know in a comment below or on our Linkedin,Facebook,andTwitterpages! Dont forget to sign up for our free weeklyNewsletter here, the latest 3D printing news straight to your inbox! You can also find all our videos on ourYouTube channel.

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Potential for Artificial Intelligence in the Prevention and Detection of Cardiac Arrest – MedTech Intelligence

Each year, nearly 356,000 cardiac arrests occur outside of a U.S. hospital. Cardiac arrest occurs when a persons cardiac function is suddenly lost, whether they have been diagnosed with heart illness or it might appear out of nowhere, or due to other symptoms. If the right measures arent performed immediately, cardiac arrest can be deadly.

Cardiac arrest occurs due to cardiomyopathy, a condition in which the heart muscle becomes dilated or thickens, leading to abnormal contractions of the heart. Another form of cardiac arrest can happen when plaque blockages constrict and thicken the coronary arteries, restricting blood flow to the heart. If untreated, this might result in heart failure (HF) or arrhythmias, both of which can result in cardiac arrest. Signs of sudden cardiac arrest may vary from chest discomfort to sudden collapse.

The available technology for the prevention of cardiac arrest includes an electrocardiogram (ECG), which detects the hearts electrical activity using sensors (electrodes) placed on the patients chest and occasionally, limbs. An ECG can indicate cardiac rhythm problems or aberrant electrical patterns such as a prolonged QT interval that elevate the risk of sudden death,. Some blood and imaging tests are also conducted to check the level of chemicals in the body; for example, potassium, magnesium, hormones, and other substances that might alter the hearts capacity to function may be measured in a blood sample. Other blood tests can reveal cardiac damage and heart attacks that have occurred recently.

A physician uses a chest X-ray to examine the size and form of the heart and blood vessels. Utilizing coronary catheterization, a technique in which a liquid dye is injected into the hearts arteries employing a long, thin tube (catheter) that is pushed via an artery, generally in the arm, to the hearts arteries. The arteries become apparent on X-ray and videotape as the dye fills them, exposing regions of obstruction. In addition, a nuclear scan, which is frequently combined with a stress test, aids in the detection of blood flow issues in the heart.

A piece of computerized medical equipment is called an automated external defibrillator (AED). It uses adhesive defibrillator pads that are put to the chest to let an electrical current flow through to the heart, resetting the hearts natural electrical activity. The heart muscle to contract and circulate blood to the body requires a normal, regular, or ordered electrical rhythm. The most effective strategy to enhance sudden cardiac death (SCA) survival rates is to have an automated external defibrillator in every house and public location. AEDs are small, portable devices that give an electric shock to the heart, and they have been shown to save many lives when utilized promptly.

The rising frequency of different coronary heart disorders such as cardiomyopathy, which is leading to cardiac arrest fatalities, attractive reimbursement schemes, and an increase in the geriatric population, are the primary drivers driving the markets growth. According to the American Heart Association, nearly half of adults in the United States have a cardiovascular condition, resulting in increased demand for highly efficient, immediate treatment and more technologically advanced cardiovascular devices.

The processing of data is a critical stage in the development of prognostic models. Nonlinear prediction models, a high number of patients, and various predictors with intricate connections are all obstacles in data processing. These difficulties are tough to overcome in typical hypothesis-driven statistical analysis. Many patients who would benefit from preventative care are missed by current methods for predicting cardiovascular risk, while others receive unnecessary treatment. As a result, applying AI technologies such as machine learning (ML) and deep learning techniques to tackle the issues is becoming increasingly necessary.

AI and ML approaches can increase cardiovascular risk prediction accuracy and reduce unnecessary use of medicine. By updating existing diagnostic and therapeutic support systems, machine learning approaches may improve heart failure outcomes and management while saving money. ML techniques can improve accuracy by utilizing complicated linkages between risk factors and be used to predict sudden cardiac death.

A variety of AI algorithms have been created to forecast the risk of abnormal cardiac diseases such as heart failure (HF) and atrial fibrillation. Machine learning algorithms have also been used to diagnose and forecast the likelihood of readmission and death following HF using just risk variables. While some recent study suggests utilizing AI to predict heart failure using both a collection of risk variables and 12-lead ECG data, there is seldom a comparison time frame, and if there is, it is for a relatively limited period, such as present to five years. Recent research has used ECG waveform data to train AI networks to detect cardiac problems, including ejection fraction, left ventricular systolic dysfunction, and mitral regurgitations.

The ubiquitous use of smartphones and smart speakers give a once-in-a-lifetime opportunity to discover the audio biomarker and connect cardiac arrest victims to emergency medical services or anyone who can administer cardiopulmonary resuscitation (CPR).

Another well-known device for cardiac patients is a pacemaker. It is placed surgically into the abdominal or chest cavities, and is intended for patients who have an arrhythmia or an erratic heartbeat, which indicates that the heart is beating too quickly, too slowly, or unevenly. The data generated by a pacemaker is significant and could be used in many ways to learn and predict behavior.

One great invention includes a fat radiomic profile (FRP) fingerprint that captures the amount of risk created using machine learning. In the SCOT-HEART experiment, the performance of this perivascular fingerprint was examined in 1,575 participants, revealing that the FRP had an incredible value in predicting heart attacksmuch above anything now available in clinical practice. Professor Charalambos Antoniades of the University of Oxfords Department of Cardiovascular Medicine and BHF Senior Clinical Fellow said, Weve developed a fingerprint to discover poor traits surrounding peoples arteries by leveraging the power of AI. This has enormous promise for detecting early indicators of illness and taking the necessary precautions before a heart attack occurs, perhaps saving lives.

The use of machine learning has its own critics as it is considered to be one of the most expensive techniques used for cardiac-related issues. Moreover, it requires a large amount of data for accurate results. Biases in the training data, model overfitting, insufficient statistical correction for several testing, and limited transparency around the procedures by which DL algorithms reach their output (black box systems) are just a few of the AI pitfalls that can have severe consequences for patients and necessitate careful consideration by researchers, clinicians and regulatory bodies.

Physicians have a significant opportunity and responsibility to actively watch the continual development of AI approaches and use and apply them according to their needs to discover essential supporting tools for their clinical practices. AIs arrival in the cardiovascular profession brings a plethora of new opportunities for providing innovative, tailored treatment. The way we practice cardiology, particularly in cardiac imaging, is changing, and physicians must be prepared. mHealth and telemedicine are forming new links between patients and doctors, transforming healthcare from a passive to a ubiquitous activity. Physicians should not be terrified of AIs incorporation into cardiology; instead, they should welcome it, because their specialist knowledge is always necessary.

Opportunities for intelligent computer systems span widely, including extensive use in medical science. Artificial intelligence enhances cognition analysis of complex health issues and improves the diagnoses. However, there are still some challenges in terms of data quality, regulations, market penetration

A recent paper released by Duke University cites the promise of AI, but urges policy changes in order to bring AI-enabled clinical decision software to fruition.

Expanded designs that enable clinicians to leverage data in making healthcare decisions, but privacy challenges remain.

The race to apply AI to medical treatment is rapidly accelerating in China and Japan.

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Artificial Intelligence in Genomics Market Size to Reach Revenues of USD 5724.45 Million by 2027 – GlobeNewswire

Chicago, Feb. 07, 2022 (GLOBE NEWSWIRE) -- The artificial intelligence in genomics market is expected to grow at a CAGR of over 48.44% during the period 20212027.

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Artificial Intelligence in Genomics Market Dynamics

More recently, the formation of DNA biobanks, which are collaborative repositories of genome sequences, and the growth of direct-to-consumer genetics testing companies such as 23andMe have increased the explosion of genomic data. Top healthcare investors, such as Sequoia Capital and Deerfield Management, acknowledge that data has unlocked considerable commercial opportunities across healthcare verticals. In 2017, liquid biopsy company GRAIL raised USD 914 million in its Series B round led by Smart Money VC ARCH Venture Partners and including Johnson & Johnson to continue product development and validation for its early-stage cancer detection blood tests. A number of genomic-focused companies have shown favorable returns. This can be exemplified by the MSCI ACWI Genomic Innovation Index, which has overtaken the standard by nearly 50% since 2013.

Key Drivers and Trends fueling Market Growth:

Artificial Intelligence in Genomics Market Geography

North America accounted for a share of 45.19% in the global AI in genomics market in 2021. Post the human genome project, and multiple initiatives have been made across countries such as the US to sequence numerous patients with new targeted diseases. Also, with technological advances the cost of sequencing has been reduced in the market. This has increased patient interest in personal genomic sequencing for future personalized treatments, lifestyle, nutritional study, and other genomics studies. North America is one of the largest AI markets across the globe and is leading the way for other countries to increase the use of AI in the field of genomics and diagnosis in the medical sector. Countries such as Canada and the US are the major revenue contributors in North America. The AI in genomics market is expected to increase in North America due to the growing adoption of AI in genome sequencing and rising awareness among the regional pharma and biotech companies.

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A.I. Bots: What they want and how to spot them – WSPA 7News

SPARTANBURG, S.C. (WSPA) At any given time, cyber experts warn 10-15% of the profiles on social media are made by artificial intelligence.

The programs are getting so sophisticated when they friend you, you may never suspect that profile picture is not a real human being.

In the video above, its hard to figure out which one of the faces is a real person. The answer is none of them.

They were all created by artificial intelligence.

The platforms are dealing with tens of thousands of fake accounts every day, said Dr. Darren Linvill, a Clemson University Professor and Researcher.

He said at any given time on social media you may be interacting with a robotic software program called bots. And he added, we humans are not skilled at detecting them.

Take Anas Bamaroof, for instance. The USC student got a LinkedIn connection request from this profile, Blondelle Michelet.

I mean I think, I dont know, it looks like a profile picture right, it looks like a professional profile picture, Bamaroof said.

The profile said she went to the University of South Carolina.

And she went to the same university as me, and shes the co-founder of a company. I didnt suspect. It looked so real, like I didnt suspect, even the picture, the profile picture, it looks like a human being, said Bamaroof.

But to Dr. Linvills trained eye, its clearly a bot.

Its too centered her eyes are just right in the middle looking right at the camera. There are some inconsistencies in the hair. Theres no background and it doesnt look like an authentic picture because there is no reality to it theres no depth to it, he explains.

So lets recap:

Dr. Linvill said to train your eye to find bots, look for these telltale signs:

Why dont you give it a try. The website http://www.ThisPersonDoesNotExist.com generates bots that put you to the test.

And its not just people, there are bots that even create cats that dont exist, some of whom end up with social media accounts.

So, what are the bots after? Some are trying to change your opinion. Others want you to click on a website to sell your something or download malware. And if you do accept a friend request, youre opening yourself up to identity theft and scams tailored right to you.

Beyond the photos themselves, Linvill said there are usually clues in the profile details. For instance, a closer look at Blondelle Michelet, shows the University of South Carolina location is listed as Los Angeles.

I got fooled, said Bamaroof.

But hes not alone.

He pointed out there are a lot of people who are still friends with her.

Yeah, she has more than 500 friends or connections, he said.

I think we should be concerned about it, but that doesnt mean we should be frightened. Most inauthenticity on social media is just trying to fool us out of a little bit of our money or fool us into believing something we might not have believed otherwise, and people have been doing that since the beginning of time, said Linvill.

The very nature of artificial intelligence is that the more it is used, the better it gets. So as it constantly improves itself, we need to become more skilled in spotting these bots.

Social media users would be wise to treat strangers in the same way weve been taught in the real world, like strangers.

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Artificial Intelligence Tasked To Find Better Tasting Fruits and Veggies – Growing Produce

University of Florida researchers are looking to create an Artificial Intelligence Connoisseur, a model that tells researchers which chemical compounds (the volatiles, sugars, acids, and other chemical compounds) produce the best flavors in fruits and vegetables.

In a new study, UF/IFAS plant breeder and geneticist Marcio Resende and other scientists used artificial intelligence to gather smell and taste data on tomatoes and blueberries. Resende led the new research that shows ways to get data from volatiles in blueberries and tomatoes into a statistical model. The research findings are now limited to those two fruits but will later be expanded to other crops UF/IFAS researchers develop.

To conduct their new study, UF/IFAS researchers used tomato and blueberry breeding program data from the past decade. They gave a diverse set of tomato and blueberry varieties to consumer panels at the UF Sensory Lab in Gainesville. The scientists then collected ratings on flavor attributes such as liking, sweetness, sourness, flavor intensity, and umami.

UF/IFAS researchers tested the range of scores that tell them how much a consumer likes a flavor. As it turns out, volatiles explained up to 56% of the like scores, which reinforces evidence that volatiles are important in determining how much consumers like the fruit. Volatiles are also important in quantifying and estimating the importance of fruit flavor, Resende says.

For more, continue reading at blogs.ifas.ufl.edu.

The news source of University of Florida's Institute of Food and Agricultural Sciences (UF/IFAS). See all author stories here.

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Artificial Intelligence Tasked To Find Better Tasting Fruits and Veggies - Growing Produce

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Outlook on the Artificial Intelligence in Medical Imaging Global Market to 2026 – GlobeNewswire

Dublin, Feb. 08, 2022 (GLOBE NEWSWIRE) -- The "Global Artificial Intelligence in Medical Imaging Market: Size, Trends & Forecast with Impact of COVID-19 (2022-2026)" report has been added to ResearchAndMarkets.com's offering.

Artificial intelligence (AI) is a branch of computer science that aims to emulate human intelligence through intelligent systems such as image analysis and speech recognition. Medical imaging is the technique and process of imaging the interior of a body for clinical analysis and medical intervention, as well as visual representation of the function of some organs or tissues. AI methods excel at automatically recognizing complex patterns in imaging data and providing quantitative, rather than qualitative, assessments of radiographic characteristics.

The global artificial intelligence in medical imaging market can be segmented based on image acquisition technology (X-Ray, CT, MRI, Ultrasound Imaging, and Molecular Imaging); AI technology (Deep Learning and Other AI & Computer Vision); clinical application (Cardiology, Neurology, Breast, Pulmonology, Liver, and Rest of the Body); and end-user (Medical Institutions and Consumer Healthcare Environment).

COVID-19 has a positive effect on market growth. Attempts have also been made to identify various imaging features of chest CT, resulting in increased popularity for AI in the medical imaging market amid the pandemic. However, with COVID-19 cases on the rise across the world, emerging AI technologies are developed to support hospitals in scaling treatment in the second wave. It also highlights the significance of expanding the use of AI and machine learning in imaging, with the dual goals of improving diagnoses and improving clinician well-being and job security.

The global AI in medical imaging market has increased during the years 2019-2021. The projections are made that the market would rise in the next four years i.e. 2022-2026 tremendously. The global AI in medical imaging market is expected to increase due to the increasing burden of chronic diseases, increasing health spending, increasing funding in AI, increasing government expenditure and policy support, etc. Yet the market faces some challenges such as development hurdles, the black-box nature of AI, etc. Moreover, the market growth would succeed by various market trends like increasing diversity in training datasets, detecting multiple diseases from a single image, high image resolution to maximize algorithm performance, etc.

The global AI in the medical imaging market is fragmented. The key players of the global AI in the medical imaging market are IBM (IBM Watson Health), Butterfly Network, Inc., Gauss Surgical, Inc., and Arterys are also profiled with their financial information and respective business strategies.

Company Coverage:

Key Topics Covered:

1. Executive Summary

2. Introduction

3. Global Market Analysis3.1 Global Artificial Intelligence in Medical Imaging Market: An Analysis3.1.1 Global Artificial Intelligence in Medical Imaging Market by Value3.1.2 Global Artificial Intelligence in Medical Imaging Market by Image Acquisition Technology (X-Ray, Computed Tomography, Magnetic Resonance Imaging, Ultrasound, and Molecular Imaging)3.1.3 Global Artificial Intelligence in Medical Imaging Market by AI Technology (Deep Learning and Other AI & Computer Vision)3.1.4 Global Artificial Intelligence in Medical Imaging Market by Clinical Application (Cardiology, Neurology, Breast, Pulmonology, Liver, and Rest of Body)3.1.5 Global Artificial Intelligence in Medical Imaging Market by Region (North America, Europe, Asia Pacific, and Rest of the World)3.2 Global Artificial Intelligence in Medical Imaging Market: Image Acquisition Technology Analysis3.2.1 Global Artificial Intelligence in X-Ray Medical Imaging Market by Value3.2.2 Global Artificial Intelligence in Computed Tomography (CT) Medical Imaging Market by Value3.2.3 Global Artificial Intelligence in Magnetic Resonance Imaging (MRI) Market by Value3.2.4 Global Artificial Intelligence in Ultrasound Medical Imaging Market by Value3.2.5 Global Artificial Intelligence in Molecular Medical Imaging Market by Value3.3 Global Artificial Intelligence in Medical Imaging Market: AI Technology Analysis3.3.1 Global Deep Learning Artificial Intelligence in Medical Imaging Market by Value3.3.2 Global Other AI and Computer Vision in Medical Imaging Market by Value3.4 Global Artificial Intelligence in Medical Imaging Market: Clinical Application Analysis3.4.1 Global Artificial Intelligence in Cardiology Imaging Market by Value3.4.2 Global Artificial Intelligence in Neurology Imaging Market by Value3.4.3 Global Artificial Intelligence in Breast Imaging Market by Value3.4.4 Global Artificial Intelligence in Pulmonology Imaging Market by Value3.4.5 Global Artificial Intelligence in Liver Imaging Market by Value3.4.6 Global Artificial Intelligence in Rest of Body Imaging Market by Value

4. Regional Market Analysis

5. Impact Of COVID-195.1 Impact of COVID-19 on AI in Medical Imaging Market5.1.1 Impact on Demand5.1.2 Impact on Supply5.2 Application of AI-Based Medical Imaging in COVID-19 Pandemic5.3 Impact of COVID-19 On Medical Imaging Market

6. Market Dynamics6.1 Growth Drivers6.1.1 Increasing Burden of Chronic Diseases6.1.2 Increasing Health Spending6.1.3 Increasing Funding in Artificial Intelligence6.1.4 Technology Upgrades and Innovation6.1.5 Increase in Demand for Medical Imaging6.1.6 Increasing Government Expenditure and Policy Support6.2 Challenges6.2.1 Development Hurdles6.2.2 Complexity in Identifying Business Use Cases for Acquiring Radiology Software6.2.3 Inadequate Availability of Training Data Sets6.2.4 The Black-box Nature of AI6.3 Market Trends6.3.1 Moving Toward Superhuman Disease Detection6.3.2 Increasing Diversity in Training Datasets6.3.3 Detecting Multiple Diseases from A Single Image6.3.4 High Image Resolution to Maximize Algorithm Performance

7. Competitive Landscape7.1 Global AI in Medical Imaging Market Players: A Financial Comparison7.2 Global AI in Medical Imaging Market Players by Research & Development Expenses Comparison

8. Company Profiles8.1 IBM (IBM Watson Health)8.1.1 Business Overview8.1.2 Financial Overview8.1.3 Business Strategy8.2 Butterfly Network, Inc.8.2.1 Business Overview8.2.2 Financial Overview8.2.3 Business Strategy8.3 Gauss Surgical, Inc.8.3.1 Business Overview8.3.2 Business Strategy8.4 Arterys8.4.1 Business Overview8.4.2 Business Strategy

For more information about this report visit https://www.researchandmarkets.com/r/yve0ac

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Outlook on the Artificial Intelligence in Medical Imaging Global Market to 2026 - GlobeNewswire

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