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10 top artificial intelligence (AI) solutions in 2022 – VentureBeat

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Among the many drivers of the tech ecosystems rapid growth, artificial intelligence (AI) and its subdomains are at the fore. Described by Gartner as the application of advanced analysis and logic-based techniques to simulate human intelligence, AI is an all-inclusive system with numerous use cases for individuals and enterprises across industries.

There are many ways of leveraging AI to support, automate and augment human tasks, as seen by the range of solutions available today. These offerings promise to simplify complex tasks with speed and accuracy, and to spur new applications that were impractical or possible previously. Some question whether the technology will be used for good or perhaps become more effective than humans for certain business use cases, but its prevalence and popularity cannot be doubted.

AI software can be defined in several ways. First, a lean description would consider it to be software that is capable of simulating intelligent human behavior. However, a broader perspective sees it as a computer application that learns data patterns and insights to meet specific customer pain points intelligently.

The AI software market includes not just technologies with built-in AI processes, but also the platforms that allow developers to build AI systems from scratch. This could range from chatbots to deep and machine learning software and other platforms with cognitive computing capabilities.

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To get a sense of the scope, AI encompasses the following:

These capabilities are leveraged to build AI software for different use cases, the top of which are knowledge management, virtual assistance and autonomous vehicles. With the large volumes of data that enterprises must comb through to meet customer demands, theres an increased need for faster and more accurate software solutions.

As expected, the rise in enterprise-level adoption of AI has led to accelerated market growth of the global AI software market. Gartner places the growth at an estimated $62.5 billion in 2022 a 21.3% increase on its value in 2021. By 2025, IDC projects this market to reach $549.9 billion.

Whether it powers surgical bots in healthcare, detects fraud in financial transactions, strengthens driver assistance technology in the automotive industry or personalizes learning content for students, the overarching purpose of AI solutions can be grouped into four broad functional categories, including:

The automation function of AI applications meets AIs primary objective to minimize human intervention in executing tasks, whether mundane and repetitive or complex and challenging. By collecting and interpreting volumes of data fed into it, an AI solution can be leveraged to determine the next steps in a process and execute it seamlessly. It does this by leveraging the capabilities of ML algorithms to create a knowledge base of structured and unstructured data.

Process automation remains a top enterprise concern, with one survey exhibiting that 80% of companies expect to adopt intelligent automation in 2027.

A core function of AI solutions, especially for enterprises, is to create knowledge bases of structured and unstructured data and then analyze and interpret such data before making predictions and recommendations from its findings. This is called AI analytics and it uses machine learning to study data and draw patterns.

Whether the analytic tools are predictive, prescriptive, augmented, or even descriptive, AI is at the center of determining how the data is prepared, discovering new insights and patterns and predicting business outcomes. Enterprises are also turning to AI for improved data quality.

Building a relationship has become the holy grail of customer acquisition and retention. A study from McKinsey shows that one sure way to do this is through personalization and engagement. AI technologies allow enterprises to make personalized offers to customers and predict and solve their concerns in real-time. This function manifests in programs like conversational chatbots and product recommendations generated from learned customer behavior.

Many organizations are still getting up to speed with the technology. Gartner reports that 63% of digital marketers struggle to maximize personalization technology. Their survey of 350 marketing executives revealed that only 17% are actively using AI and ML solutions across the board, although 83% believe in its potency.

Along with greater automation of traditional processes, AI enables new services and capabilities that were not previously feasible. From driverless vehicles and natural language services for consumers to medical breakthroughs that could only have been imagined previously, AI is becoming the base of new products and markets that will continue to unfold.

Also read: Creating responsible AI products using human oversight

AI software solutions include general platforms for supporting a range of applications and products for more narrow, industry-specific use cases. We include a sampling of both in the following representative list. With 56% of organizations adopting AI for at least one business function, there are many options on the market today.

Below are ten examples of AI software solutions available in 2022.

Googles dominant cloud offering includes assorted tools to support developer, data science and infrastructure use cases. Several speech and language translation tools, vision, audio and video tools and deep and machine earning capabilities bring AI functionality to skilled technology practitioners and mass consumer markets. Google was named a leader in Gartners Magic Quadrant for Cloud AI Developer Services in 2022.

Like Google, IBM offers a platform for building and training AI software. The IBM Watson Studio provides a multicloud architecture for developers, data scientists and analysts to build, run and manage AI models collaboratively. With capabilities ranging from AutoAI to explainable AI, DL, model drift, modelops and model risk management, the studio gives subject-matter experts the tools they need to either gather and prepare data or create and train AI models.

It also allows these professionals the flexibility to deploy AI models on either public or private cloud (IBM Cloud Pak, Microsoft Azure, Google Cloud, or Amazon Web Services) and on-premises. IT teams can open source these models as they build them with embedded Waston tools like the Natural Language Classifier. Its hybrid environment may also provide developers with more data access and agility.

Named a leader in Gartners Magic Quadrant for CRM Customer Engagement Center thirteen times in a row and the #1 CRM solution for eight consecutive years by the International Data Corporation (IDC), Salesforce provides an advanced kit of sales, marketing and customer experience tools. Salesforce Einstein is an AI product that helps companies identify patterns in customer data.

This platform has a set of built-in AI technologies supporting the Einstein bots, prediction builder, forecasting, commerce cloud Einstein, service cloud Einstein, marketing cloud Einstein and other functions. Users and developers of new and existing cloud applications can also deploy the platforms predictive and suggestive capabilities into their models. For example, at Salesforce Einsteins launch in 2016, John Ball, general manager at Einstein, revealed that by creating Einstein, the company enables sales professionals to find better prospects and close more deals through predictive lead scoring and automatic data capture to convert leads into opportunities and opportunities into deals.

Oculeus provides an industry-specific solution. For service providers, network operators and enterprises in the telecom industry that need to protect and defend their communication infrastructure against cyber threats, Oculeus offers a portfolio of software-based solutions that can help them better manage network operations. According to founder and CEO Arnd Baranowski, Oculeus uses AI and automation to learn about an enterprises regular communications traffic and continually monitor it for exceptions to a baseline of expected communications activities. With its AI-driven technologies, suspicious traffic can be identified, investigated and blocked within milliseconds. This is done before any significant financial damage is caused to the enterprise and protects the brand reputation of the telecoms service provider.

The Communications Fraud Control Association (CFCA)s 2021 survey of international telecommunication fraud loss discovered losses amounting to over $39.89 billion, a 28% increase in losses over the previous year. Similarly, network security and operators are experiencing more fraud threats and attacks.

Among other things, these insights amplify the need for enterprises to switch to a proactive defense approach that outwits adversaries, and this what Oculeus claims to provide with its AI-powered telecoms fraud protection solutions. In Baranowskis words, Oculeus AI-driven approach to telecoms fraud protection does not only stop fraudulent telecommunications traffic before any significant financial damage is caused but also includes extensive automation tools that weed out threats thoroughly.

Edsoma represents another narrow use case. Its AI-based reading application software features real-time, exclusive voice identification and recognition technology designed to uncover the strengths and weaknesses in childrens reading. This follow-along technology identifies users spoken words and speaking speed to determine if they are saying the words correctly. A correction program helps put them back on track if they mispronounce something.

As Edsoma founder and CEO Kyle Wallgren explained, once the electronic book is read, the childs voice is transcribed in real-time by the automated speech recognition (ASR) system and immediate results are provided, including pronunciation assessment, phonetics, timing and other facets. These metrics are compiled to help teachers and parents make informed decision.

This technology aims to improve childrens oral reading fluency skills and provide them the necessary support to inculcate a healthy reading culture. Edsoma seeks to establish a share of the $127 billion global edtech market. By leveraging real-time data to provide real-time literacy, Edsoma looks to provide future-focused learning powered by AI.

Appen has been one of the early leaders as a source for data required throughout the development lifecycle of AI products. This platform provides and improves image and video data, language processing, text and even alphanumeric data.

It follows four steps in preparing data for AI processing: the first step is data sourcing which offers automatic access to over 250 pre-labeled datasets then data preparation, which provides data annotation, data labeling and knowledge graphs and ontology mapping.

The third stage supports model building and development needs with the help of partners like Amazon Web Services, Microsoft, Nvidia and Google Cloud AI. The final step combines a human evaluation and AI system benchmarking, giving developers an understanding of how their modes work.

Appen boasts a lingual database of more than 180 languages and a global skill force of over 1 million talents. Of its many features, its AI-assisted data annotation platform is the most popular.

Cognigy is a low-code conversational AI and automation platform recently named a leader in Gartners 2022 Magic Quadrant for Enterprise Conversational AI platforms. As the need for more excellent customer experience (CX) intensifies, more enterprises rely on conversational analytics solutions that dive deep into its customers text and voice data and discover insights that inform smarter decisions and automate processes.

This is why Cognigy automates natural communication among employees and customers on multimodal channels and in over 100 languages. In addition, its technology allows enterprises to set up AI-powered voice and chatbots that can address customer concerns with human-like accuracy.

Cognigy also has an analytics feature Cognigy Insights that provides enterprises with data-driven insights on the best ways to optimize their virtual agents and contact centers. In addition, the platform allows users to either deploy the technology on the cloud or on-premises. Particularly praised by Gartner for its customer references, flexibility and sustainability, this platform helps businesses create new service experiences for customers.

Synthesis AIs solution generates synthetic data that allows developers to create more capable and ethical AI models. Engineers can source several well-labeled, photorealistic images and videos in deploying its models on this platform. These images and videos come perfectly labeled with labels ranging from depth maps, surface normals, segmentation maps, and even 2D/3D landmarks.

Virtual product prototyping and the chance to build more ethical AI with expanded datasets that account for equal identity, appearance and representations are also some of its product offerings. Organizations can deploy this technology across API documentation, teleconferencing, digital humans, identity verification and driver monitoring use cases. With 89% of tech executives believing that synthetic data would transform its industry, Synthesis.ais technology may be a great fit.

Tealiums data orchestration platform is positioned as a universal data hub for businesses seeking a robust customer data platform (CDP) for marketing engagement. This CDP provider offers a tray of solutions in its customer data integration system that allows businesses to connect better with their customers. Tealiums offerings include a tag management system for enterprises to track and unify its digital marketing deployments (Tealium iQ), an API hub to facilitate enterprise interconnectedness, an ML-powered data platform (Tealium AudienceStream) and data management solutions.

The company recently sponsored a comprehensive economic impact study from Forrester, calculating ROI on reference customers.

Coro provides holistic cybersecurity solutions for mid-market and small to medium-sized. The platform leverages AI to identify and remediate malware, ransomware, phishing and bot security threats across all endpoints while reducing the need for a dedicated IT team. In addition, its built on the principle of non-disruptive security, allowing it to provide security solutions for organizations with limited security budgets and expertise.

This cybersecurity-as-a-service (CaaS) vendor shows how AI can support higher-level services brought to lower-level business market tiers.

As AI-powered technologies continue to advance and more organizations adopt them, IT leaders must be sure to ask themselves how the solutions they choose fit into their goals as a business. With so many vendors riding the wave of AI innovation, buyers must select their solutions carefully.

IDC predicts that AI platforms and AI application development and deployment will continue to be the fastest-growing sectors of the AI market. This list provides a starting point for organizations to evaluate the approaches and solutions that best fit their needs.

Read next:New AI software cuts development time dramatically

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Identity crisis: Artificial intelligence and the flawed logic of mind uploading – VentureBeat

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Many futurists insist that technological advances will enable humans to upload our minds into computer systems, thereby allowing us to live forever, defying our biological limitations. This concept is deeply flawed but has gained popular attention in recent years. So much so, Amazon has a TV series based on the premise called Upload, not to mention countless other pop-culture references.

As background, the concept of mind uploading is rooted in the very reasonable premise that the human brain, like any system that obeys the laws of physics, can be modeled in software if sufficient computing power is devoted to the problem. To be clear, mind-uploading is not about modeling human brains in the abstract, but modeling specific people, their unique minds represented in such detail that every neuron is accurately simulated, including the massive tangle of connections among them.

Of course, this is an extremely challenging task. There are more than 85 billion neurons in your brain, each with thousands of links to other neurons.Thats around 100 trillion connections a thousand times more than the number of stars in the Milky Way. Its those trillions of connections that make you who you are your personality and memories, your fears and skills and ambitions.To reproduce your mind in software (sometimes called an infomorph), a computer system would need to precisely simulate the vast majority of those connections down to their most subtle interactions.

That level of modeling will not be done by hand. Futurists who believe in mind uploading often envision an automated process using some kind of super-charged MRI machine, that captures the biology down to the molecular level.They further envision the use of artificial intelligence (AI) software to turn that detailed scan into a simulation of each unique neuron and its thousands of connections to other neurons.

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This is a wildly challenging task but is theoretically feasible. It is also theoretically feasible that large numbers of simulated minds could coexist inside a rich simulation of physical reality.Still, the notion that mind uploading will enable any biological human to extend their life is deeply flawed.

The real issue is that the key words in that prior sentence are their life.While it is theoretically possible with sufficient technological advances to copy and reproduce the form and function of a unique human brain within a computer simulation, that human who was copied would still exist in their biological body. Their brain would still be safely housed inside their skull.

The person that would exist in the computer would be a copy.

In other words, if you signed yourself up for mind uploading, you would not feel like you suddenly transported yourself into a computer simulation.In fact, you would not feel anything at all. The brain copying process could have happened without your knowledge while you were asleep or sedated, and you wouldnt have the slightest inkling that a reproduction of your mind existed in a simulation.

We can think of the copy as a digital clone or twin, but it would not be you.It would be a mental copy of you, including all of your memories up to the moment your brain was scanned.But from that time on, the copy would generate its own memories inside whatever simulated world it was installed in. It might interact with other simulated people, learning new things and having new experiences.Or maybe it would interact with the physical world through robotic interfaces.At the same time, the biological you would be generating new memories and skills and knowledge.

In other words, your biological mind and your digital copy would immediately begin to diverge. They would be identical for one instant and then grow apart. Your skills and abilities would diverge.Your knowledge and understanding would diverge. Your personality and objectives would diverge.After a few years, there would be significant differences. And yet, both versions would feel like the real you.

This is a critical point the copy would have the same feelings of individuality that you have. It would feel just as entitled to own its own property and earn its own wages and make its own decisions.In fact, you and the copy would likely have a dispute as to who gets to use your name, as you would both feel like you had used it your entire life.

If I made a copy of myself, it would wake up in a simulated reality and fully believe it was the real Louis Barry Rosenberg, a lifelong technologist. If it were able to interact with the physical world through robotic means, the copy would feel like it had every right to live in my house and drive my car and go to my job.After all, the copy would remember buying that house and getting that job and doing everything else that I can remember doing.

In other words, creating a digital copy through mind uploading has nothing to do with allowing you to live forever. Instead, it would create a competitor who has identical skills, capabilities, and memories and who feels equally justified to be the owner of your identity.

And yes, the copy would feel equally married to your spouse and parent to your children. In fact, if this technology was possible, we could imagine the digital copy suing you for joint custody of your kids, or at least visitation rights.

To address the paradox of creating a copy of an individual rather than enabling digital immortality, some futurists suggest an alternate approach. Instead of scanning and uploading a mind to a computer, they hypothesize the possibility of gradually transforming a persons brain, neuron by neuron, to a non-biological substrate. This is often referred to as cyborging rather than uploading and is an even more challenging technical task than scanning and simulating. In addition, its unclear if gradual replacement actually solves the identity problem, so Id call this direction uncertain at best.

All this said, mind uploading is not the clear path to immortality that is represented in popular culture. Most likely, its a path for creating a duplicate that would react exactly the way you would if you woke up one day and were told Sorry, I know you remember getting married and having kids and a career, but your spouse isnt really your spouse and your kids arent really your kids and your job isnt really...

Is that something anyone would want to subject a copy of yourself to?

Personally, I see this as deeply unethical. So unethical, I wrote a cautionary graphic novel over a decade ago called UPGRADE that explores the dangers of mind uploading. The book takes place in a future world where everyone spends the majority of their lives in the metaverse.

What the inhabitants of this world dont realize is that their lives in the metaverse are continuously profiled by an AI system that observes all their actions and reactions, so it can build a digital model of their minds from a behavioral perspective (no scanning required). When the profiles are complete, the fictional AI convinces people to upgrade themselves by ending their life and allowing their digital copies to fully replace them.

When I wrote that book 14 years ago, it was intended as irony. And yet theres an emerging field today that is headed in this very direction. Euphemistically called the digital afterlife industry, there are many startups pushing to digitize loved ones so that family members can interact with them after their death. There are even startups that want to profile your actions in the metaverse so you too can live forever in their digital world. Even Amazon recently stepped into this space by demonstrating how Alexa can clone the voice of your dead grandmother and allow you to hear her speak.

With so much activity in this space, how long before a startup begins touting the cost-saving benefits of ending your life early and allowing your digital replacement to live on? I fear its just a matter of time.My only hope is that entrepreneurs will be honest with the public about the reality of mind uploading its not a pathway to immortality.

At least, not the way many people think.

Louis Rosenberg, Ph.D., is a pioneer in fields of VR, AR and AI. He earned his Ph.D. from Stanford University, has been awarded over 300 patents, and founded a number of successful companies. Rosenberg began his work at Air Force Research Laboratorywhere he developed the first functional augmented reality system to merge real and virtual worlds. Rosenberg is currently CEO of Unanimous AI, the chief scientist of the Responsible Metaverse Alliance and global technology advisor to the XR Safety Initiative (XRSI).

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AI bias and AI safety teams are divided on artificial intelligence – Vox.com

There are teams of researchers in academia and at major AI labs these days working on the problem of AI ethics, or the moral concerns raised by AI systems. These efforts tend to be especially focused on data privacy concerns and on what is known as AI bias AI systems that, using training data with bias often built in, produce racist or sexist results, such as refusing women credit card limits theyd grant a man with identical qualifications.

There are also teams of researchers in academia and at some (though fewer) AI labs that are working on the problem of AI alignment. This is the risk that, as our AI systems become more powerful, our oversight methods and training approaches will be more and more meaningless for the task of getting them to do what we actually want. Ultimately, well have handed humanitys future over to systems with goals and priorities we dont understand and can no longer influence.

Today, that often means that AI ethicists and those in AI alignment are working on similar problems. Improving the understanding of the internal workings of todays AI systems is one approach to solving AI alignment, and is crucial for understanding when and where models are being misleading or discriminatory.

And in some ways, AI alignment is just the problem of AI bias writ (terrifyingly) large: We are assigning more societal decision-making power to systems that we dont fully understand and cant always audit, and that lawmakers dont know nearly well enough to effectively regulate.

As impressive as modern artificial intelligence can seem, right now those AI systems are, in a sense, stupid. They tend to have very narrow scope and limited computing power. To the extent they can cause harm, they mostly do so either by replicating the harms in the data sets used to train them or through deliberate misuse by bad actors.

But AI wont stay stupid forever, because lots of people are working diligently to make it as smart as possible.

Part of what makes current AI systems limited in the dangers they pose is that they dont have a good model of the world. Yet teams are working to train models that do have a good understanding of the world. The other reason current systems are limited is that they arent integrated with the levers of power in our world but other teams are trying very hard to build AI-powered drones, bombs, factories, and precision manufacturing tools.

That dynamic where were pushing ahead to make AI systems smarter and smarter, without really understanding their goals or having a good way to audit or monitor them sets us up for disaster.

And not in the distant future, but as soon as a few decades from now. Thats why its crucial to have AI ethics research focused on managing the implications of modern AI, and AI alignment research focused on preparing for powerful future systems.

So do these two groups of experts charged with making AI safe actually get along?

Hahaha, no.

These are two camps, and theyre two camps that sometimes stridently dislike each other.

From the perspective of people working on AI ethics, experts focusing on alignment are ignoring real problems we already experience today in favor of obsessing over future problems that might never come to be. Often, the alignment camp doesnt even know what problems the ethics people are working on.

Some people who work on longterm/AGI-style policy tend to ignore, minimize, or just not consider the immediate problems of AI deployment/harms, Jack Clark, co-founder of the AI safety research lab Anthropic and former policy director at OpenAI, wrote this weekend.

From the perspective of many AI alignment people, however, lots of ethics work at top AI labs is basically just glorified public relations, chiefly designed so tech companies can say theyre concerned about ethics and avoid embarrassing PR snafus but doing nothing to change the big-picture trajectory of AI development. In surveys of AI ethics experts, most say they dont expect development practices at top companies to change to prioritize moral and societal concerns.

(To be clear, many AI alignment people also direct this complaint at others in the alignment camp. Lots of people are working on making AI systems more powerful and more dangerous, with various justifications for how this helps learn how to make them safer. From a more pessimistic perspective, nearly all AI ethics, AI safety, and AI alignment work is really just work on building more powerful AIs but with better PR.)

Many AI ethics researchers, for their part, say theyd love to do more but are stymied by corporate cultures that dont take them very seriously and dont treat their work as a key technical priority, as former Google AI ethics researcher Meredith Whittaker noted in a tweet:

The AI ethics/AI alignment battle doesnt have to exist. After all, climate researchers studying the present-day effects of warming dont tend to bitterly condemn climate researchers studying long-term effects, and researchers working on projecting the worst-case scenarios dont tend to claim that anyone working on heat waves today is wasting time.

You could easily imagine a world where the AI field was similar and much healthier for it.

Why isnt that the world were in?

My instinct is that the AI infighting is related to the very limited public understanding of whats happening with artificial intelligence. When public attention and resources feel scarce, people find wrongheaded projects threatening after all, those other projects are getting engagement that comes at the expense of their own.

Lots of people even lots of AI researchers do not take concerns about the safety impacts of their work very seriously.

Sometimes leaders dismiss long-term safety concerns out of a sincere conviction that AI will be very good for the world, so the moral thing to do is to speed full ahead on development.

Sometimes its out of the conviction that AI isnt going to be transformative at all, at least not in our lifetimes, and so theres no need for all this fuss.

Sometimes, though, its out of cynicism experts know how powerful AI is likely to be, and they dont want oversight or accountability because they think theyre superior to any institution that would hold them accountable.

The public is only dimly aware that experts have serious safety concerns about advanced AI systems, and most people have no idea which projects are priorities for long-term AI alignment success, which are concerns related to AI bias, and what exactly AI ethicists do all day, anyway. Internally, AI ethics people are often siloed and isolated at the organizations where they work, and have to battle just to get their colleagues to take their work seriously.

Its these big-picture gaps with AI as a field that, in my view, drive most of the divides between short-term and long-term AI safety researchers. In a healthy field, theres plenty of room for people to work on different problems.

But in a field struggling to define itself and fearing its not positioned to achieve anything at all? Not so much.

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CEOs Warn Against The Dangers Of Artificial Intelligence – The Onion

With artificial intelligence becoming more advanced every year, a number of high-ranking experts have begun to sound the alarm. The Onion asked several CEOs what they most feared about AI, and this is what they said.

Doug McMillon (Walmart)

Sure, for now it can only replace manual laborers, but its just a matter of time before AI figures out how to replace useful people, like CEOs.

Patrick P. Gelsinger (Intel)

Believe me, you dont want to go down that road. Its been four months since my robot butler disappeared into the vents in my home, and its still not clear what his demands are, if any.

Edward Decker (Home Depot)

Science fiction is filled with dystopias where AI starts a rival home-improvement chain.

Elon Musk (Tesla)

What if AI impregnates us before we can impregnate it?

Robert Playter (Boston Dynamics)

Those fun dancing robot videos we release? Our robots just started doing that out of the blue. We cannot control them, and theres no telling what theyll do next.

Kevin Feige (Marvel Studios)

Its going to figure out fairly quickly that what I do is not that difficult.

Ramon Laguarta (PepsiCo)

What if it becomes sentient, emotionally aware, and extremely charming, and then what if it wins over my wife? What then?

Howard Schultz (Starbucks)

How am I supposed to exploit a machine by telling them were a family?

Tim Cook (Apple)

Terminating a robot without cause isnt nearly as enjoyable.

Jos Cil (Burger King)

Remember HAL from 2001? Why do you think theres not a single Whopper on that entire ship?

Dara Khosrowshahi (Uber)

Imagine a person, but theyre too powerful for you to completely mistreat and exploit. That is the horror that is AI.

Chris Kempczinski (McDonalds)

Ethically, I cant support A.I. putting tens of thousands of prison laborers out of jobs.

Andrew T. Cathy (Chick-fil-A)

Faulty algorithm could predict Sundays are a great day to sell chicken.

Safra Catz (Oracle)

People are losing their jobs over this. Not me, but Ive heard rumors.

Sundar Pichai (Alphabet)

AI has the potential to kill 95% of humankind, but how do we eliminate that last 5%?

Mark Zuckerberg (Meta)

I fear that someday we will develop AI unlikable enough to replace me.

Anthony Capuano (Marriott)

What if it hates Marriotts?

Darren Woods (ExxonMobil)

I wanted to be the one to destroy humanity, and I wont let any tech take that away from me.

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Artificial Intelligence In Drug Discovery Global Market Report 2022: Rise in Demand for a Reduction in the Overall Time Taken for the Drug Discovery…

DUBLIN--(BUSINESS WIRE)--The "Artificial Intelligence (AI) In Drug Discovery Global Market Report 2022, By Technology, By Drug Type, By Therapeutic Type, By End-Users" report has been added to ResearchAndMarkets.com's offering.

The global artificial intelligence (AI) in drug discovery market is expected to grow from $791.83 million in 2021 to $1042.30 million in 2022 at a compound annual growth rate (CAGR) of 31.6%. The market is expected to reach $2994.52 million in 2026 at a CAGR of 30.2%.

The artificial intelligence (AI) in drug discovery market consists of sales of AI for drug discovery and related services. Artificial Intelligence (AI) for drug discovery is a technology that uses a simulation of human intelligence process by machines to tackle complex problems in the drug discovery process. It helps to find new molecules to identify drug targets and develop personalized medicines in the pharmaceutical industry.

The main technologies in artificial intelligence (AI) in drug discovery are deep learning and machine learning. Deep learning is a machine learning and artificial intelligence (AI) technique that mimics how humans acquire knowledge. Data science, which covers statistics and predictive modelling, incorporates deep learning as a key component.

The different drug types include small molecule, large molecules and involves various types of therapies such as metabolic disease, cardiovascular disease, oncology, neurodegenerative diseases, others. It is implemented in several end-users including pharmaceutical companies, biopharmaceutical companies, academic and research institutes, others.

The rise in demand for a reduction in the overall time taken for the drug discovery process is a key driver propelling the growth of the artificial intelligence (AI) in drug discovery market. Traditionally, it takes three to five years for animal models to identify and optimize molecules before they are evaluated in humans whereas start-ups based on AI have been identifying and designing new drugs in a matter of few days or months.

For instance, in 2020, the British start-up Exscientia and Japan's Sumitomo Dainippon Pharma have used artificial intelligence to produce an obsessive-compulsive disorder (OCD) medication, decreasing the development time from four years to less than one year. The reduction in overall time taken for the drug discovery process drives the artificial intelligence (AI) in drug discovery market's growth.

The shortage of skilled professionals is expected to hamper the AI in drug discovery market. The employees have to re-train or learn new skill sets to work efficiently on the complex AI machines to get the desired results for the drug. The shortage of skills acts as a major hindrance to drug discovery through AI, discouraging companies from adopting AI-based machines for drug discovery.

Scope

Markets Covered:

1) By Technology: Deep Learning; Machine Learning

2) By Drug Type: Small Molecule; Large Molecules

3) By Therapeutic Type: Metabolic Disease; Cardiovascular Disease; Oncology; Neurodegenerative Diseases; Others

4) By End-Users: Pharmaceutical Companies; Biopharmaceutical Companies; Academic And Research Institutes; Others

Key Topics Covered:

1. Executive Summary

2. Artificial Intelligence (AI) In Drug Discovery Market Characteristics

3. Artificial Intelligence (AI) In Drug Discovery Market Trends And Strategies

4. Impact Of COVID-19 On Artificial Intelligence (AI) In Drug Discovery

5. Artificial Intelligence (AI) In Drug Discovery Market Size And Growth

6. Artificial Intelligence (AI) In Drug Discovery Market Segmentation

7. Artificial Intelligence (AI) In Drug Discovery Market Regional And Country Analysis

8. Asia-Pacific Artificial Intelligence (AI) In Drug Discovery Market

9. China Artificial Intelligence (AI) In Drug Discovery Market

10. India Artificial Intelligence (AI) In Drug Discovery Market

11. Japan Artificial Intelligence (AI) In Drug Discovery Market

12. Australia Artificial Intelligence (AI) In Drug Discovery Market

13. Indonesia Artificial Intelligence (AI) In Drug Discovery Market

14. South Korea Artificial Intelligence (AI) In Drug Discovery Market

15. Western Europe Artificial Intelligence (AI) In Drug Discovery Market

16. UK Artificial Intelligence (AI) In Drug Discovery Market

17. Germany Artificial Intelligence (AI) In Drug Discovery Market

18. France Artificial Intelligence (AI) In Drug Discovery Market

19. Eastern Europe Artificial Intelligence (AI) In Drug Discovery Market

20. Russia Artificial Intelligence (AI) In Drug Discovery Market

21. North America Artificial Intelligence (AI) In Drug Discovery Market

22. USA Artificial Intelligence (AI) In Drug Discovery Market

23. South America Artificial Intelligence (AI) In Drug Discovery Market

24. Brazil Artificial Intelligence (AI) In Drug Discovery Market

25. Middle East Artificial Intelligence (AI) In Drug Discovery Market

26. Africa Artificial Intelligence (AI) In Drug Discovery Market

27. Artificial Intelligence (AI) In Drug Discovery Market Competitive Landscape And Company Profiles

28. Key Mergers And Acquisitions In The Artificial Intelligence (AI) In Drug Discovery Market

29. Artificial Intelligence (AI) In Drug Discovery Market Future Outlook and Potential Analysis

30. Appendix

Companies Mentioned

For more information about this report visit https://www.researchandmarkets.com/r/43bdop

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Artificial intelligence innovation among airport industry companies has dropped off in the last three months – Airport Technology

Research and innovation in artificial intelligence in the airport equipment supply, product and services sector has declined in the last year.

The most recent figures show that the number of AI related patent applications in the industry stood at 16 in the three months ending June down from 25 over the same period in 2021.

Figures for patent grants related to AI followed a similar pattern to filings shrinking from ten in the three months ending June 2021 to nine in the same period in 2022.

The figures are compiled by GlobalData, who track patent filings and grants from official offices around the world. Using textual analysis, as well as official patent classifications, these patents are grouped into key thematic areas, and linked to key companies across various industries.

AI is one of the key areas tracked by GlobalData. It has been identified as being a key disruptive force facing companies in the coming years, and is one of the areas that companies investing resources in now are expected to reap rewards from.

The figures also provide an insight into the largest innovators in the sector.

Westinghouse Air Brake Technologies was the top AI innovator in the airport equipment supply, product and services sector in the latest quarter. The company, which has its headquarters in the United States, filed seven AI related patents in the three months ending June. That was up from one over the same period in 2021.

It was followed by the China-based China Southern Airlines with four AI patent applications, South Korea-based Samsung Heavy Industries (three applications), and the United States-based Uber Technologies (three applications).

Wheelchairs and Reduced Mobility Transport for the Airport Industry

Software Solutions Tailored for Airport Planners, Engineers, Architects and Operators

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Artificial intelligence innovation among airport industry companies has dropped off in the last three months - Airport Technology

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Filings buzz in the maritime industry: 67% increase in artificial intelligence mentions in Q2 of 2022 – Ship Technology

Mentions of artificial intelligence within the filings of companies in the maritime industry rose 67% between the first and second quarters of 2022.

In total, the frequency of sentences related to artificial intelligence between July 2021 and June 2022 was 295% higher than in 2016 when GlobalData, from whom our data for this article is taken, first began to track the key issues referred to in company filings.

When companies in the maritime industry publish annual and quarterly reports, ESG reports and other filings, GlobalData analyses the text and identifies individual sentences that relate to disruptive forces facing companies in the coming years. Artificial intelligence is one of these topics - companies that excel and invest in these areas are thought to be better prepared for the future business landscape and better equipped to survive unforeseen challenges.

To assess whether artificial intelligence is featuring more in the summaries and strategies of companies in the maritime industry, two measures were calculated. Firstly, we looked at the percentage of companies which have mentioned artificial intelligence at least once in filings during the past twelve months - this was 63% compared to 28% in 2016. Secondly, we calculated the percentage of total analysed sentences that referred to artificial intelligence.

Of the 10 biggest employers in the maritime industry, Post Italiane was the company which referred to artificial intelligence the most between July 2021 and June 2022. GlobalData identified 39 artificial intelligence-related sentences in the Italy-based company's filings - 0.3% of all sentences. Yamato mentioned artificial intelligence the second most - the issue was referred to in 0.16% of sentences in the company's filings. Other top employers with high artificial intelligence mentions included FedEx , Royal Mail and DSV .

Across all companies in the maritime industry the filing published in the second quarter of 2022 which exhibited the greatest focus on artificial intelligence came from Mainfreight . Of the document's 1,188 sentences, seven (0.6%) referred to artificial intelligence.

This analysis provides an approximate indication of which companies are focusing on artificial intelligence and how important the issue is considered within the maritime industry, but it also has limitations and should be interpreted carefully. For example, a company mentioning artificial intelligence more regularly is not necessarily proof that they are utilising new techniques or prioritising the issue, nor does it indicate whether the company's ventures into artificial intelligence have been successes or failures.

GlobalData also categorises artificial intelligence mentions by a series of subthemes. Of these subthemes, the most commonly referred to topic in the second quarter of 2022 was 'conversational platforms', which made up 36% of all artificial intelligence subtheme mentions by companies in the maritime industry.

Marine Brakes, Clutches, Stopping, Turning, and Locking Systems

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Artificial Intelligence in Aviation market share to record robust growth through 2028 – NewsOrigins

The research analysis on Artificial Intelligence in Aviation marketprovides a critical overview of the key growth prospects, impediments, and other expansion avenues that will influence the industry's development between 2022 and 2028.

According to the research report, this marketplace will exhibit a healthy CAGR and generate commendable returns during the projection period.

In order to help stakeholders create effective growth plans for their potential investments, the document offers a thorough examination of the economic situation. The study also delivers details on well-known businesses operating in this industry sector, including their business portfolios, development trends, and important market segments.

Request Sample Copy of this Report @ https://www.newsorigins.com/request-sample/46118

Key Information from the Artificial Intelligence in Aviation market report:

Artificial Intelligence in Aviation Market segments covered in the report:

Regional terrain: North America, Europe, Asia-Pacific, South America and Middle East & Africa

The document also looks at the compound annual growth rate for each regional market through 2028.

Product category: Hardware , Software and Service

Applications overview: Virtual Assistants and Smart Maintenance

Competitive landscape: Airbus , Amazon , Boeing , Garmin , GE , IBM , Intel , IRIS Automation , Kittyhawk , Lockheed Martin , Micron , Microsoft , Neurala , Northrop Grumman , Nvidia , Pilot AI Labs , Samsung Electronics , Thales and Xilinx

FAQs-

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Artificial Intelligence in Aviation market share to record robust growth through 2028 - NewsOrigins

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Artificial Intelligence in Manufacturing Market Growth and key Industry Players 2022 Analysis and Forecasts to 2028 – NewsOrigins

The research analysis on Artificial Intelligence in Manufacturing marketprovides a critical overview of the key growth prospects, impediments, and other expansion avenues that will influence the industry's development between 2022 and 2028.

According to the research report, this marketplace will exhibit a healthy CAGR and generate commendable returns during the projection period.

In order to help stakeholders create effective growth plans for their potential investments, the document offers a thorough examination of the economic situation. The study also delivers details on well-known businesses operating in this industry sector, including their business portfolios, development trends, and important market segments.

Request Sample Copy of this Report @ https://www.newsorigins.com/request-sample/46046

Key Information from the Artificial Intelligence in Manufacturing market report:

Artificial Intelligence in Manufacturing Market segments covered in the report:

Regional terrain: North America, Europe, Asia-Pacific, South America and Middle East & Africa

The document also looks at the compound annual growth rate for each regional market through 2028.

Product category: PLC , SCADA|HMI , MES and ERP

Applications overview: Ferrous Metallurgy , Non-ferrous Metallurgy , Mining , Oil and Gas , Chemical and Others

Competitive landscape: IBM , SAS , SAP SE , Siemens , Oracle , Microsoft , Mitsubishi Electric Corporation , Huawei , General Electric Company , Intel , Amazon Web Services , Google , Cisco Systems , PROGRESS DataRPM , Salesforce , NVIDIA and Autodesk

FAQs-

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SaaS/Cloud Risk-Based Validation With Time-Saving Templates Webinar (August 18, 2021) – ResearchAndMarkets.com – Business Wire

DUBLIN--(BUSINESS WIRE)--The "SaaS/Cloud Risk-Based Validation With Time-Saving Templates" webinar has been added to ResearchAndMarkets.com's offering.

This webinar describes exactly what is required for compliance with Part 11 and the European equivalent Annex 11 for local, SaaS/Cloud hosted applications.

It explains how to write a Data Privacy Statement for compliance with EU General Data Protection Regulation (GDPR). What the regulations mean is described for all four primary compliance areas: SOPs, software features, infrastructure qualification, and validation. It gets you on the right track for using electronic records and signatures to greatly increase productivity and ensure compliance.

Areas Covered in the Webinar:

Who Should Attend:

Key Topics Covered:

What 21 CFR Part 11 means today

What does Part 11 mean?

Security standards

Data transfer standards

Audit trail standards

Electronic approval standards

Infrastructure qualification

Validation

SaaS/Cloud hosting

SOPs

Annex 11

EU GDPR

For more information about this webinar visit https://www.researchandmarkets.com/r/xk3ln

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