Artificial Intelligence in the Operating Room – MarketScale

While the challenges in the healthcare industry are constantly increasing, hospitals adopting new technologies have helped to alleviate some of those struggles in the operating room. Discussing this topic is Dennis Kogan, co-founder, and CEO of Caresyntax, and Eric King, investment director at Intel Capital with host Alex Flores, Director of Global Health Solutions at Intels Network and Edge Group.

It becomes a delicate system that combines facility-specific issues, Kogan says. Post-pandemic, there were factors like staffing where experienced nurses are leaving for various reasons and they are being replaced with, for example, younger professionals or traveling nurses which come into the system that is often quite tailored to individual setups of a facility or physician.

Clearly, this change in operations has caused additional stress on staff and returning to pre-pandemic efficiency is a challenge.

King agreed, saying while the surgeon is the lead on the surgery, there are a lot of other members in the room who need to be properly trained. With staffing shortages as well as nurses traveling in and out of the operating room, getting a team to work together efficiently with quality outcomes isnt as simple as it was previously. To fill this gap, Caresyntaxs platforms can help improve team dynamics during a surgical procedure for the most successful staffing outcome.

The introduction of newer technology is supporting surgeons in real-time and using computer vision-based aides that do turn-by-turn type navigation of the operation. These technologies can determine anatomical structures and even warn physicians of the proximity of certain arteries.

Because of technology, experts can even remotely step into the operating room and provide guidance or feedback as surgeons are moving forward on complex surgeries.

There are good artificial intelligent stratification mechanisms for being able to support more objectively the decision-making process for physicians or case managers at difficult stages, Kogan says.

Caresyntax and Intel are looking to the future of innovation in medicine where the industry wraps the edge, the cloud, the analytics, the AI and automation, there is ample room for precision medicine surgery, Kogan explains. There are so many notes where take into account the data and the profile and create algorithms and applications that can help nudge the process in the optimal way in the decision tree you are creating personalized medicine in surgery, and thats the big vision.

To learn more, connect with Alex Flores, Dennis Kogan and Eric King on LinkedIn or visit Caresyntax.

Subscribe to this channel onApple Podcasts,Spotify, andGoogle Podcaststo hear more from the Intel Network & Edge Solutions Group.

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Artificial Intelligence in the Operating Room - MarketScale

Let’s Investigate a Way to Invest in Artificial Intelligence and Robotics – RealMoney

A Real Money subscriber wants to be involved with robotics and artificial intelligence in the years to come but doesn't believe he is a good stock picker. So what should he do?

Let's check out the charts of the Global X Robotics & Artificial Intelligence ETF (BOTZ) .

In the daily bar chart of BOTZ, below, we can see that the shares have been cut in half in the past year. BOTZ is trading below the declining 50-day moving average line and the bearish 200-day moving average line.

The On-Balance-Volume (OBV) line has declined the past year and remains in a downward trend. The weak OBV line confirms the weak price action. The Moving Average Convergence Divergence (MACD) is bearish.

In this weekly Japanese candlestick chart of BOTZ, below, we see a bearish picture. Prices are in a downward trend trading below the bearish 40-week moving average line. I do not see any bottom reversal patterns on the candles.

The weekly OBV line is bearish and the MACD oscillator is poised for another downside sell signal.

In this daily Point and Figure chart of BOTZ, below, we can see a downside price target in the $16 area.

In this weekly Point and Figure chart of BOTZ, below, we can see a downside price target in the $16-$15 area.

Bottom-line strategy: Robotics and AI are our future but the price of BOTZ could slip lower in the weeks ahead. Keep BOTZ on your shopping list and let's visit with the ETF again in December.

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Let's Investigate a Way to Invest in Artificial Intelligence and Robotics - RealMoney

UB Humanities Institute’s annual festival looks at Life in the Age of Artificial Intelligence – University at Buffalo

BUFFALO, N.Y. The University at Buffalo Humanities Institute (HI) will present the 2022 Humanities Festival Sept. 23-25, a free event exploring the theme of Life in the Age of Artificial Intelligence, with speakers, panels, music and community conversations in partnership with SUNY Buffalo State, Canisius College, Daemen University, Niagara University, and Humanities New York.

Artificial intelligence (AI) is a double-edged sword that has become embedded in our lives in both subtle and overt ways. How does it help? How does it harm? says Christina Milletti, associate professor of English and HIs interim director. For three days, the Buffalo Humanities Festival will try to engage in conversations that look at both the benefits and detrimental effects of AI, including those elements of the technology that might inadvertently create risk.

Artificial Intelligence is the latest, most public example, of an emerging technology that inspires questions about social, ethical and moral implications of its development. The uncertainty is similar to what surrounded the advent of the broadcast era and the initial stages of internet access, according to Lindsay Brandon Hunter, associate professor of theatre and the interim executive director of HI.

There is a long history of both moral panic and legitimate social inquiry about how new media shapes social action, says Hunter. When we integrate new technologies into a social system there will always be friction and celebration. Maybe whats coming to the fore with contemporary concerns about AI and algorithmic techniques is the realization that technological change happens so quickly we dont have time to pull back the curtain in order to see whats really going on, whos controlling it, and why.

The festivals launch on Friday, Sept. 23 at 6 p.m. at Torn Space Theater, 612 Fillmore Ave. in Buffalo, will feature AfroRithms from the Future, a collective, interactive storytelling performance involving the audience and local featured players that, through creative, afrofuturist-based gameplay, seeks to find solutions to dismantling systemic racism in favor of a socially just future, especially for those who do not traditionally benefit from technology.

Leading the performance will be AfroRithms co-founders Ahmed Best, adjunct professor of dramatic arts at the University of Southern California (and the actor/voice behind the Star Wars character Jar Jar Binks), and Lonny J Avi Brooks, California State University East Bay professor of strategic communication, alongside Buffalo players Chanon Judson, visiting associate professor of theatre and dance and co-artistic director of the acclaimed dance company, Urban Bush Women; Donte McFadden, PhD, UB director of the Distinguished Visiting Scholars Program; Samina Raja, PhD, professor of urban and regional planning; and Taylor Coleman, a UB graduate student of Africana and American Studies.

All other festival panels and performances will happen at Silo City. The complete schedule is available online.

The Festival at Silo City is highlighted by two special guest conversations. The first begins on Saturday, Sept. 24 at 11 a.m., and features the return of the AfroRithms group and select players for a debrief session of the Buffalo edition of the game. On Sunday, Sept. 25 at 11 a.m., the Festival launches with a visit from the University of Texas at Austins Good Systems Group (https://bridgingbarriers.utexas.edu/good-systems), a team of scholars across humanities and the sciences working to ensure the development of ethical, socially conscious AI.

Samuel Baker, associate professor of English and co-founder of Good Systems Group, and Sharon Strover, professor of journalism and media and co-director of the universitys Technology and Information Policy Institute, will discuss Human Values and AI with Kenny Joseph, PhD, UB assistant professor of computer science and engineering.

This years schedule might be the most wide-ranging and diversely informed conference HI has produced since beginning the annual Humanities Festival, according to Milletti.

Researchers and scholars in philosophy, media study, computer science, engineering, music, criminal justice, mobile computing, materials design, literature, theater and communicative disorders will be participating this year in a convergent conversation.

We need all the critical inquiry tools that the humanities have to offer, in conversation with the sciences, in order to interrogate the profound impact of AI on our lives from simple product and movie suggestions to divisive social media silos, from transportation safety and, perhaps, even travel to Mars, says Milletti.

The 2022 festival hopes to model that convergent conversation by deeply integrating varied disciplines on every panel to create new ways of addressing existing challenges.

Our aim is to cultivate a rigorous and hopeful discussion, says Hunter. Our audience will leave with a sense that theyve taken part in a conversation where various disciplines came together to not only exchange exciting ideas, but also to figure out what each of us can contribute to a dialogue that is incomplete without convergent participation.

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UB Humanities Institute's annual festival looks at Life in the Age of Artificial Intelligence - University at Buffalo

Artificial Intelligence Market in the Education Sector 2026, Increasing Demand For ITS to Boost Growth – Technavio – PR Newswire

NEW YORK, Sept. 19, 2022 /PRNewswire/ -- The Artificial Intelligence Market in the Education Sector is expected to grow by USD 374.3 million during 2021-2026, at a CAGR of 48.15% during the forecast period, according to Technavio. The increasing demand for ITS will offer immense growth opportunities, and security and privacy concerns will challenge the growth of the market participants.

To make the most of the opportunities, market vendors should focus more on the growth prospects in the fast-growing segments, while maintaining their positions in the slow-growing segments. Increasing demand for it has been instrumental in driving the growth of the market. However, security and privacy concerns might hamper the market growth. Buy Sample Report.

Artificial Intelligence Market in the Education Segmentation

Artificial Intelligence Market in the Education Sector Scope

Technavio presents a detailed picture of the market by the way of study, synthesis, and summation of data from multiple sources. Our artificial intelligence market in the education sector report covers the following areas:

This study identifies increased emphasis on chatbots as one of the prime reasons driving the artificial intelligence market in the education sector growth during the next few years. Request Free Sample Report.

Artificial Intelligence Market in the Education Sector Vendor Analysis

We provide a detailed analysis of around 25 vendors operating in the Artificial Intelligence Market in the Education Sector, including some of the vendors such as vendors Backed with competitive intelligence and benchmarking, our research reports on the Artificial Intelligence Market in the Education Sector are designed to provide entry support, customer profile and M&As as well as go-to-market strategy support.

Find additional highlights on the growth strategies adopted by vendors and their product offerings, Download Free Sample Report.

Artificial Intelligence Market in the Education Sector Key Highlights

Related Reports:Overhead Cables Marketby Type and Geography - Forecast and Analysis 2022-2026:The overhead cables market share is expected to increase by USD17.67 billion from 2021 to 2026,and the market's growth momentum will accelerate at a CAGR of 5.1%.

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Artificial Intelligence Market In The Education Sector Scope

Report Coverage

Details

Page number

120

Base year

2021

Forecast period

2022-2026

Growth momentum & CAGR

Accelerate at a CAGR of 48.15%

Market growth 2022-2026

$ 374.3 million

Market structure

Fragmented

YoY growth (%)

46.6

Regional analysis

US

Performing market contribution

North America at 100%

Key consumer countries

US

Competitive landscape

Leading companies, competitive strategies, consumer engagement scope

Companies profiled

Alphabet Inc., Carnegie Learning Inc., Century-Tech Ltd., Cognii, DreamBox Learning Inc., Fishtree Inc., Intellinetics Inc., International Business Machines Corp., Jenzabar Inc, John Wiley and Sons Inc., LAIX Inc., McGraw Hill Education Inc., Microsoft Corp., Nuance Communications Inc., Pearson Plc, PleIQ Smart Toys Spa, Providence Equity Partners LLC, Quantum Adaptive Learning LLC, Tangible Play Inc., and True Group Inc.

Market Dynamics

Parent market analysis, Market growth inducers and obstacles, Fast-growing and slow-growing segment analysis, COVID-19 impact and future consumer dynamics, and market condition analysis for the forecast period.

Customization purview

If our report has not included the data that you are looking for, you can reach out to our analysts and get segments customized.

Browse for Technavio "Industrials" Research Reports

Table Of Contents :

1 Executive Summary

2 Market Landscape

3 Market Sizing

4 Five Forces Analysis

5 Market Segmentation by End-user

6 Market Segmentation by Type

7 Customer Landscape

8 Drivers, Challenges, and Trends

9 Vendor Landscape

10 Vendor Analysis

11 Appendix

About Us

Technavio is a leading global technology research and advisory company. Their research and analysis focus on emerging market trends and provides actionable insights to help businesses identify market opportunities and develop effective strategies to optimize their market positions. With over 500 specialized analysts, Technavio's report library consists of more than 17,000 reports and counting, covering 800 technologies, spanning across 50 countries. Their client base consists of enterprises of all sizes, including more than 100 Fortune 500 companies. This growing client base relies on Technavio's comprehensive coverage, extensive research, and actionable market insights to identify opportunities in existing and potential markets and assess their competitive positions within changing market scenarios.

Contact

Technavio ResearchJesse MaidaMedia & Marketing ExecutiveUS: +1 844 364 1100UK: +44 203 893 3200Email: [emailprotected]Website: http://www.technavio.com/

SOURCE Technavio

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Artificial Intelligence Market in the Education Sector 2026, Increasing Demand For ITS to Boost Growth - Technavio - PR Newswire

Artificial intelligence to recognise weather conditions – Kathorus Mail

Researchers at Oxford Universitys Department of Computer Science, in collaboration with colleagues from the Bogazici University, Turkey, have developed a novel artificial intelligence (AI) system.

Yasin Almalioglu, who completed the research as part of his DPhil in the Department of Computer Science, said, The difficulty for AVs to achieve precise positioning during challenging adverse weather is a major reason why these have been limited to relatively small-scale trials up to now. For instance, weather such as rain or snow may cause an AV to detect itself in the wrong lane before a turn, or to stop too late at an intersection because of imprecise positioning.

To overcome this problem, Almalioglu and his colleagues developed a novel, self-supervised deep learning model for ego-motion estimation, a crucial component of an AVs driving system that estimates the cars moving position relative to objects observed from the car itself. The model brought together richly detailed information from visual sensors (which can be disrupted by adverse conditions) with data from weather-immune sources (such as radar), so that the benefits of each can be used under different weather conditions.

The model was trained using several publicly available AV datasets, which included data from multiple sensors such as cameras, lidar and radar under diverse settings, including variable light/darkness levels and precipitation. These were used to generate algorithms to reconstruct scene geometry and calculate the cars position from novel data. Under various test situations, the researchers demonstrated that the model showed robust all-weather performance, including conditions of rain, fog and snow, as well as day and night.

The team anticipates that this work will bring AVs one step closer to safe and smooth all-weather autonomous driving, and ultimately a broader use within societies.

The full paper, Deep learning-based robust positioning for all-weather autonomous driving, is published inNature Machine Intelligence. This will be published online at the following link once the embargo lifts:https://www.nature.com/articles/s42256-022-00520-5.

Source: University of Oxford

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Artificial intelligence to recognise weather conditions - Kathorus Mail

Will Artificial Intelligence Kill College Writing? – The Chronicle of Higher Education

When I was a kid, my favorite poem was Shel Silversteins The Homework Machine, which summed up my childhood fantasy: a machine that could do my homework at the press of a button. Decades later that technology, the innocuously titled GPT-3, has arrived. It threatens many aspects of university education above all, college writing.

The web-based GPT-3 software program, which was developed by an Elon Musk-backed nonprofit called OpenAI, is a kind of omniscient Siri or Alexa that can turn any prompt into prose. You type in a query say, a list of ingredients (what can I make with eggs, garlic, mushrooms, butter, and feta cheese?) or a genre and prompt (write an inspiring TED Talk on the ways in which authentic leaders can change the world) and GPT-3 spits out a written response. These outputs can be astonishingly specific and tailored. When asked to write a song protesting inhumane treatment of animals in the style of Bob Dylan, the program clearly draws on themes from Dylans Blowin in the Wind:

How many more creatures must suffer?How many more must die?Before we open up our eyesAnd see the harm were causing?

When asked to treat the same issue in the style of Shakespeare, it produces stanzas of iambic tetrameter in appropriately archaic English:

By all the gods that guide this EarthBy all the stars that fill the skyI swear to end this wretched dearthThis blight of blood and butchery.

GPT-3 can write essays, op-eds, Tweets, jokes (admittedly just dad jokes for now), dialogue, advertisements, text messages, and restaurant reviews, to give just a few examples. Each time you click the submit button, the machine learning algorithm pulls from the wisdom of the entire internet and generates a unique output, so that no two end products are the same.

The quality of GPT-3s writing is often striking. I asked the AI to discuss how free speech threatens a dictatorship, by drawing on free speech battles in China and Russia and how these relate to the First Amendment of the U.S. Constitution. The resulting text begins, Free speech is vital to the success of any democracy, but it can also be a thorn in the side of autocrats who seek to control the flow of information and quash dissent. Impressive.

From an essay written by the GPT-3 software program

The current iteration of GPT-3 has its quirks and limitations, to be sure. Most notably, it will write absolutely anything. It will generate a full essay on how George Washington invented the internet or an eerily informed response to 10 steps a serial killer can take to get away with murder. In addition, it stumbles over complex writing tasks. It cannot craft a novel or even a decent short story. Its attempts at scholarly writing I asked it to generate an article on social-role theory and negotiation outcomes are laughable. But how long before the capability is there? Six months ago, GPT-3 struggled with rudimentary queries, and today it can write a reasonable blog post discussing ways an employee can get a promotion from a reluctant boss.

Since the output of every inquiry is original, GPT-3s products cannot be detected by anti-plagiarism software. Anyone can create an account for GPT-3. Each inquiry comes at a cost, but its usually less than a penny and the turnaround is instantaneous. Hiring someone to write a college-level essay, in contrast, currently costs $15 to $35 per page. The near-free price point of GPT-3 is likely to entice many students who would otherwise be priced out of essay-writing services.

It wont be long before GPT-3, and the inevitable copycats, infiltrate the university. The technology is just too good and too cheap not to make its way into the hands of students who would prefer not to spend an evening perfecting the essay I routinely assign on the leadership style of Elon Musk. Ironic that he has bankrolled the technology that makes this evasion possible.

To help me think through what the collision of AI and higher ed might entail, I naturally asked GPT-3 to write an op-ed exploring the ramifications of GPT-3 threatening the integrity of college essays. GPT-3 noted, with mechanical unself-consciousness, that it threatened to undermine the value of a college education. If anyone can produce a high-quality essay using an AI system, it continued, then whats the point of spending four years (and often a lot of money) getting a degree? College degrees would become little more than pieces of paper if they can be easily replicated by machines.

The effects on college students themselves, the algorithm wrote, would be mixed: On the positive side, students would be able to focus on other aspects of their studies and would not have to spend time worrying about writing essays. On the negative side, however, they will not be able to communicate effectively and will have trouble in their future careers. Here GPT-3 may actually be understating the threat to writing: Given the rapid development of AI, what percent of college freshmen today will have jobs that require writing at all by the time they graduate? Some who would once have pursued writing-focused careers will find themselves instead managing the inputs and outputs of AI. And once AI can automate that, even those employees may become redundant. In this new world, the argument for writing as a practical necessity looks decidedly weaker. Even business schools may soon take a liberal-arts approach, framing writing not as career prep but as the foundation of a rich and meaningful life.

So what is a college professor to do? I put the question to GPT-3, which acknowledged that there is no easy answer to this question. Still, I think we can take some sensible measures to reduce the use of GPT-3 or at least push back the clock on its adoption by students. Professors can require students to draw on in-class material in their essays, and to revise their work in response to instructor feedback. We can insist that students cite their sources fully and accurately (something that GPT-3 currently cant do well). We can ask students to produce work in forms that AI cannot (yet) effectively create, such as podcasts, PowerPoints, and verbal presentations. And we can design writing prompts that GPT-3 wont be able to effectively address, such as those that focus on local or university-specific challenges that are not widely discussed online. If necessary, we could even require students to write assignments in an offline, proctored computer lab.

Eventually, we might enter the if you cant beat em, join em phase, in which professors ask students to use AI as a tool and assess their ability to analyze and improve the output. (I am currently experimenting with a minor assignment along these lines.) A recent project on Beethovens 10th symphony suggests how such projects might work. When he died, Beethoven had composed only 5 percent of his 10th symphony. A handful of Beethoven scholars fed the short, completed section into an AI that generated thousands of potential versions of the rest of the symphony. The scholars then sifted through the AI-generated material, identified the best parts, and pieced them together to create a complete symphony. To my somewhat limited ear, it sounds just like Beethoven.

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Will Artificial Intelligence Kill College Writing? - The Chronicle of Higher Education

The Technion Is Number One In Europe In Artificial Intelligence – NoCamels – Israeli Innovation News

The Technion-Israel Institute of Technology has been named Europes top university for artificial intelligence by CSRankings, which ranks top computer science institutions around the world. It is the second year in a row that the web app has ranked it in first place.

The University also placed 16th in the world in AI, and 10th in the world in the subfield of learning systems.

The Technion recruits researchers and students from all of its departments to promote interdisciplinary AI research, which has increased the number of new programs and initiatives in various fields with leading companies and top universities and research institutions around the world.

It is also establishing its own AI community to empower its student body and researchers working in all fields of artificial intelligence, which will deepen the Technions many collaborations with industry and academia in these fields.

Around 150 Technion researchers are currently involved in Tech.AI, the Technions Center for Artificial Intelligence. Tech.AI researchers apply advanced methodologies and tools at the forefront of artificial intelligence in a variety of fields including data science, medical research, mechanical engineering, civil engineering, architecture, and biology.

The Tech.AI center brings together all of the Technions biomed activity in the field of AI and positions it in a dominant place in the world, with extensive partnerships with leading companies such as Pfizer and IBM and leading medical institutions in Israel and the world, including the Rambam Health Care Campus and the Cincinnati Childrens Hospital Medical Center, said Prof Shai Shen-Orr from the Technions Rappaport Faculty of Medicine.

Prof Shie Mannor from the Faculty of Electrical and Computer Engineering said: The Technion continues to establish its position as the leading research institution in Israel and Europe in the core areas of artificial intelligence, thanks to the unique work environment that exists in this field at the Technion,

This environment currently comprises about 150 researchers from a variety of faculties, research centers with extensive activity, and a growing number of study programs in the field and research initiatives and programs that are the result of collaborations between the Technion and the leading companies and organizations in Israel and the world.

Professor Assaf Shuster from the Faculty of Computer Science said: Solidifying the Technions position as a pioneer and world leader in the field of AI and spreading the knowledge acquired in this process to the commercial world in all its aspects, are very important national tasks.

Tech.AI operates around the clock and through a variety of channels and activities to deepen Technion education that promotes AI research and its application in all faculties and research centers and to provide students and researchers dealing in all AI fields with the most supportive environment.

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The Technion Is Number One In Europe In Artificial Intelligence - NoCamels - Israeli Innovation News

Distracted drivers are being identified by artificial intelligence in Edmonton – The Gateway Online

Artificial intelligence is currently being used in Edmonton to detect distracted driving as part of a research project.

On September 13, the University of Alberta launched this three-week research project to understand the prevalence of distracted drivers, specifically in Edmonton. Karim El-Basyouny, a professor in the faculty of engineering and urban traffic safety research chair at the University of Alberta, is the lead of the research team. The U of A research is in a collaboration with Acusensus, the City of Edmonton, and the Edmonton Police Service.

Since September 13, the technology has been stationed at its first location on the intersection of 79 Street and Argyll Road. According to El-Basyouny, it will be stationed there for about a week before moving to the next location, which is currently unknown. There will be a total of three different locations, one for each week during this project.

El-Basyounys research is being supported by a seed grant, making the use of Acusensus technology possible. Although the Edmonton Police Service is in collaboration with this project, the collection of data will be used solely for research, not traffic enforcement.

Edmonton is the first city in Canada to test Acusensus technology, according to Tony Parrino, the general manager for Acusensus in North America.

The data around distracted driving in Canada has been a little patchy, [and] we dont really understand how big of a problem it is what were trying to do is see if there is a better way of understanding how big of an issue [distracted driving] is, El-Basyouny explained.

The technology being used to determine the prevalence of distracted drivers is mainly AI. According to Parrino, the AI has gone through a number of training scenarios with millions of data points.

The system is radar-based with many different sensors, and four different cameras. Each camera captures something different; one captures a steep shot of the windshield, one camera is shallow in case of a phone-to-ear event, and the other two cameras are used for color context and capturing license plates. The information gathered is then given to the AI.

According to Parrino, although the AI has been trained to have maximum accuracy there is a possibility for false positives.

It is very accurate, but there are false positives 100 per cent of the images that are captured are reviewed by trained individuals [who determine if] the criteria is met for the U of A to determine that a distracted driving event has occurred, and only those are counted, Parrino said.

Although Acusensus technology is being used in Australia for traffic enforcement, according to Parrino, it is unknown if the technology will be used for traffic enforcement in Edmonton. As of right now, this research is being used solely to see the prevalence of distracted drivers in Edmonton.

I think [traffic enforcement] is an option that is available to us at [some] point in the future, [however] it is not predominantly the purpose of this study, El-Basyouny said.

In a statement sent out September 13, Jessica Lamarre, director of Safe Mobility for the City of Edmonton, commented on the U of A research project.

This project provides an opportunity to gain a better understanding of the prevalence and safety impacts of distracted driving on our streets through the creative use of new technology alongside our talented research partners at the University of Alberta.

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Distracted drivers are being identified by artificial intelligence in Edmonton - The Gateway Online

What Is Artificial Intelligence in Healthcare? – University of Colorado Anschutz Medical Campus

Casey Greene, PhD, chair of the University of Colorado School of Medicines Department of Biomedical Informatics, is working toward a future of serendipity in healthcare using artificial intelligence (AI) to help doctors receive the right information at the right time to make the best decision for a patient.

Finding that serendipity begins with the data. Greene said the Departments faculty works with data ranging from genomic-sequencing information, cell imaging, and electronic health records. Each area has its own robust constraints ethical and privacy protections to ensure that the data are being used in accordance with peoples wishes.

His team uses petabytes of sequencing data that are available to anyone, Greene said. I think its empowering, he said, noting that anyone with an internet connection can conduct scientific research.

Following the selection or creation of a data set, Greene and other AI researchers at the CU Anschutz Medical Campus begin the core focus of AI work building algorithms and programs that can detect patterns. The goal is to find links in these large data sets that ultimately offer better treatments for patients. Still, human insight brings essential perspectives to the research, Greene said.

The algorithms do learn patterns, but they can be very different patterns and can become confused in interesting ways, he said. Greene used a hypothetical example of sheep and hillsides, two things often seen together. Researchers must teach the program to separate the two items, he said.

A person can look at a hillside and see sheep and recognize sheep. They can also see a sheep somewhere unexpected and realize that the sheep is out of place. But these algorithms don't necessarily distinguish between sheep and hillsides at first because people usually take pictures of sheep on hillsides. They don't often take pictures of sheep at the grocery store, so these algorithms can start to predict that all hillsides have sheep, Greene said.

It's a little bit esoteric when you're thinking about hillsides and sheep, he said. But it matters a lot more if you're having algorithms that look at medical images where you'd like to predict in the same way that a human would predict based on the content of the image and not based on the surroundings. Encoding prior human knowledge (knowledge engineering) into these systems can lead to better healthcare down the line, Greene said.

And when it comes to AI in healthcare, Greene said it is key to have open models and diverse teams doing the work. It gives others a chance to probe these models with their own questions. And I think that leads to more trust.

In the Q&A below, Greene provides a general overview of the terms and technology behind AI alongside the challenges he and his fellow researchers face.

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What Is Artificial Intelligence in Healthcare? - University of Colorado Anschutz Medical Campus

Artificial Intelligence And The Future Of Marketing – Forbes

Marketing is one of the areas of business operations where it is widely predicted that artificial intelligence (AI) will drive enormous change. In fact, a McKinsey study found that, along with sales, it is the single business function where it will have the most financial impact. This means that if youre a marketer and youre not using AI, youre missing out on the benefits of what is possibly the most transformational technology.

Artificial Intelligence And The Future Of Marketing

Actually, though, the chances that there are people out there doing marketing today and not using AI in any shape or form is somewhat unlikely. This is simply because there are so many tools with AI features that we are used to using without even thinking about it. The most frequently used social and search engine advertising solutions, email marketing platforms, e-commerce solutions, and tools designed to assist with content creation all provide functionality that taps into what we refer to as AI in business today. To be clear, this isnt what we think of as general AI machines that have the capability to think and communicate like us and turn their hands to just about any task. In business today (and in marketing in particular), AI refers to software that helps us to carry out one particular job such as identifying where to place advertising in order to maximize efficiency or how to personalize an email to increase the likelihood of receiving a reply and get better and better as it is exposed to more data.

However, its my experience that, while there may be many tools out there and most marketers are increasingly comfortable with using them on a day-to-day basis, its often done in an ad-hoc manner. Many marketing departments still lack a coordinated, strategy-focused approach to implementing bigger projects. Just as importantly, many are lagging when it comes to fostering an AI-friendly, data-first culture as well as developing competencies and upskilling in order to meet the skills demand.

Paul Roetzer, founder and CEO of Marketing AI Institute and author of the new book Marketing Artificial Intelligence, told me that this is true in his experience too. In fact, when recently setting out to check up on his own hunch by searching for mentions of AI terminology in connection with 50 of the worlds top chief marketing officers, he found that only four of them had spoken publicly or been connected with their use of AI.

My question was, who is leading this? Who is doing this within marketing?

So, what we found was the industries that have a lot of data and a need for heavy personalization, and intelligent automation of their operations have been doing AI for probably the last decade - healthcare, financial services - but doing it within the operations of their business, not within marketing and sales.

But those same industries have a strong need for personalization, better customer experiences, better predictability of outcomes, the reasons youd use AI. But generally, at a macro level, we are extremely early in the understanding and adoption of AI ; that is my perception.

So what are the most exciting opportunities when it comes to using AI in marketing, and where are they already being tapped?

Advertising

Advertisers face the perennial problem of working out how best to place adverts in order to achieve the most bang for their buck.

Facebook and Google are the biggest online advertising platforms, and they both offer tools that work by combining audience segmentation with predictive analytics. Segmentation splits customers into groups according to characteristics gender, age, income level, interests, for example, and potentially an infinity of others. Predictive analytics works out which of these groups a particular product or service is most likely to appeal to. Facebook, Google, and all of the other platforms that offer advertising functions then allow businesses to target thousands of potential customers with multiple different versions of advertising materials in order to measure and assess their effectiveness. With traditional methods of advertising such as television, newspapers and magazines, its very difficult to attribute sales growth to advertising content, placement, or external factors. AI-driven advertising tools and platforms make this a doddle but are most effective when used as part of a coordinated AI marketing strategy, taking in the other areas of marketing covered here!

Public Relations

Public relations used to focus on the challenge of getting coverage of products and services into mainstream and specialist media publications. In today's online world, the media landscape has exploded, offering opportunities to promote brands directly through social media as well as via influencers and third-party content creators, sponsored and unsponsored. But how do you know where to find the best influencers to bond and cultivate relationships with?

Here once again, AI can help by matching products with people who have cultivated audiences that are likely to be synched to a brands appeal and values. Some uses of AI in this field of marketing involve taking things a step further though, such as AI-generated influencer Lil Miquela who has used chatbot technology to create an entirely digital persona. Despite the fact she doesnt exist, millions of followers consider her an arbiter of style and are happy to go along with her recommendations, meaning she can earn a hefty fee from brands like Calvin Klein and Prada.

Writing press releases, shaping external messaging points, and researching the best outlets (online or digital) for gaining coverage are other PR tasks that can all be augmented by AI.

Content Marketing

Content is king has been accepted wisdom in marketing departments since the dawn of web2.0 and the rise of user-generated content platforms (including social media). But what content is king? And where should we put it? How often, how in-depth or simplified quite simply, how do we make sure our content achieves our aims of establishing our brand, positioning ourselves as experts or authorities in our field, and, of course, eventually generating sales and leads?

Well, one option is to use AI. Buzzfeed is one of the biggest content-driven sites in the world, and Roetzer has examined how it uses AI to drive every aspect of its operations, such as determining the odds of a particular piece of content going viral, suggesting what content visitors would like to see, and automating the routine aspects of publication such as keyword selection, categorization, and personalization. What marks out Buzzfeed as a truly AI-driven content outlet is its strategy-focused approach where every piece of content as well as every user interaction is measured and optimized for insights that can then be put to work anywhere within marketing operations.

Email Marketing

Email marketing is often about tweaking headings, scheduling, and copy in order to impact those all-important open and click-through rates. Small differences in the language that is used can make the difference between an email getting identified as one of the 148 billion spam emails sent each day and snared by a filter or making its way through to the intended recipient at a time when they are open to suggestions on what they should buy.

A large number of AI-powered tools exist to help with these tasks, such as Phrasee, which automates the creation of subject lines; Seventh Sense which optimizes the timing of mailshots; and rasa.io, which makes it easy to create personalized newsletters.

Where next?

Whether AI achieves the potential that clearly exists depends on businesses coming to understand the need for a coordinated and strategic approach to marketing AI implementation. It should be clear enough how the different use cases I have mentioned above can be useful in isolation. But the real value is unlocked when we start using them together, with the aim of answering our most pressing questions, influencing our most important metrics, and achieving key business goals.

Roetzer tells me Its this tricky spot because a lot of business professionals still see AI as some kind of abstract, sci-fi thing I dont think they understand that its extremely approachable, you can test AI today find a tool for $19 per month and try it its not something where you have to spend six months preparing a pilot project.

However, what you do need is people and more specifically, people with the relevant skills. Most marketing departments outside of large enterprise companies wont be appointing dedicated, specialist data scientists and neither should they need to.

As a company goes through the ongoing process of developing a data-and-AI-literate culture, it is more important that it enables people who are already experts in their particular field to upskill and understand the importance of the technology.

When it comes to those who get it totally right "honestly, it's hard to find," Roetzer says.

"Either brands are doing it, and they don't want to talk about it because they think it's a competitive advantage or, they're not actually doing anything maybe just starting to run pilot projects or find someone on their team who can lead this its very hard to find the intersection of business professionals who understand what AI is capable of doing, and can apply it to real business problems and use cases.

You can click here to check out my webinar with Paul Roetzer, CEO and founder of Marketing AI Institute, where we cover many other aspects of AI in marketing, including the questions of machine creativity and AI ethics, as well as take a look at his most recent book, Marketing Artificial Intelligence.

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Artificial Intelligence And The Future Of Marketing - Forbes