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Generative AI Translation: Proceed with Caution – Spiceworks News and Insights

Heather Shoemaker, founder of Language I/O, discusses the complexities and solutions to achieving seamless multilingual communication in this in-depth analysis.

Artificial intelligence has made remarkable strides in natural language processing (NLP). In this era of technological evolution, the boundaries of machine translation are being pushed to unprecedented levels, and the rise of generative AI has only added to that push.

The language translation technology industry is booming and shows no sign of slowing. The global language translation software market was valued at $10.81 billion in 2022Opens a new window and is expected to skyrocket to $35.93 billion by 2030.

Enter NLP-based language translation platforms like ChatGPT, Google Translate, and Microsoft Translator, all large language models (LLMs), and computer programs trained on huge amounts of publicly available data. These sophisticated programs can understand the human language patterns and the intent or meaning behind the language. While some hail these cutting-edge tools as a panacea for solving all business problems, generative AI solutions still arent quite ready to meet businesses complete language translation needs.

Questions have also arisen about whether businesses can trust generative AI for accurate language translation and whether this technology is secure. In the wake of these questions, the best course of action forward is to proceed cautiously.

So heres the problem. Gen AI is great at quickly generating content (and coding and translating, too). And training it on specific data yields the most accurate and useful responses. Unfortunately, gen AI often lacks the context to produce the best results because it hasnt been trained on industry or business-specific data. Just as a general LLM, such as ChatGPT, cant accurately answer questions about a companys proprietary content it was never trained on. A general LLM or an untrained, AI-powered translation platform such as Google cannot accurately translate content for a domain it was never trained on, either. In both cases, the AI lacks the needed context.

Although businesses benefit from investing in real-time translation technology in lieu of hiring additional multilingual employees, the tool/tech needs the proper training. Customer satisfaction increases when the right tech is in place to help current team members communicate effortlessly with customers regardless of their language.

The number of independent machine translation services available has increased sixfold since 2017. Despite this notable uptick, generative AI translation models remain under development. They are known for unreliability, hallucinations, or general responses based on general data, especially when asked to tackle complex or nuanced texts. Generative AI works best with well-constructed inputs, but in a business setting, where people of different backgrounds and familiarity (or lack thereof) with language technology are using chatbots to request information or ask for help in real-time, communication could be better. Chatbots also give internal teams another quick way to access data. Some traits of real-time communication that can trip up translations include:

There are plenty of pathways leading to sub-par generative AI translation outputs. Without contextualizing technology and training employees to use it and feed it the correct inputs, organizations cant trust generative AI translations will achieve the caliber needed for success in a customer service or business environment.

See More: Why Source Recall Matters: Building Trust in AI

The generative AI boom saw exponential growth in the space, but policies and protections associated with AI still need to catch up with the technology. For example, while 86% of organizationsOpens a new window adopting AI say its critical to have guidelines about its ethical usage, only 6% have implemented policies outlining responsible use. This policy gap leaves plenty of space for potential pitfalls when using generative AI tools, including:

As generative AI usage continues to grow, future iterations of these LLMs will likely solve at least some of these problems. Still, until then, organizations must implement responsible use policies.

See More: Biden Signs Executive Order on Artificial Intelligence Protections

Most well-known LLMs are trained on data in English or Chinese. As technology continues to influence the reframing of work, education, art, business, and more, the more than 6 billion worldwide who speak 7,000 other languages are at risk of being left out. For example, Meta warned that its updated LLM released in July would work best with queries in English because most of its training data was in that language, saying, the model may not be suitable for use in other languages.

For organizations that want to facilitate multilingual communication with global customer bases, this language gap further illustrates the shortcomings of generative AI tools. To achieve the best real-time communications, the smartest organizations invest in contextualizing technology. For generative AI platforms, this involves some form of domain adaptation such as prompt engineering, RAG (retrieval augmented generation), or fine-tuning.

However, to ensure a generative AI platform can accurately answer questions in multiple languages as well as translate between languages for a specific business, this domain adaptation has to occur not just in the base language but across all the languages the company supports. Gartner found that companies find the process of training AI in just one language more difficult than they expected it to be. Further, according to artificial solutions, when faced with the task of duplicating that training across all supported languages, companies are abandoning the effort. Companies are in dire need of a solution that automates the multilingual domain adaptation on their behalf, such as those provided by Language I/O.

That effort is worthwhile, however, because implementing this technology can help properly translate previously problematic language like misspellings, jargon, or slang. Please prioritize this contextualizing aspect to avoid incoherent conversations and, ultimately, dissatisfied customers.

Even though LLM-based technologies are popular, they cant yet produce the most accurate business translations. Utilizing contextualizing technology, such as that provided by Language I/O, alongside generative AI tools, can help achieve top-notch translations. Investing in this type of technology maximizes existing headcount, shortens wait times, increases availability to 24/7, and supports more world languages, saving money and resources while driving customer satisfaction, employee inclusivity, and overall business success.

How can businesses overcome the hurdles in generative AI translation? Let us know on FacebookOpens a new window , XOpens a new window , and LinkedInOpens a new window . Wed love to hear from you!

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Artificial Consciousness Tech, Inc. Awarded 2023 AI Excellence Award for Groundbreaking Artificial Consciousness System – Yahoo Finance

New York, New York--(Newsfile Corp. - November 24, 2023) - Artificial Consciousness Tech, Inc. (ACT), a leading innovator in artificial intelligence, has been recognized with the 2023 AI Excellence Award by the Business Intelligence Group. This award acknowledges ACT's development of an advanced Artificial Consciousness operating system, a notable advancement in AI technology.

ACT's patented technology is characterized by its unique capability to equip machines with advanced cognitive functions, resembling human emotions and thought processes. The system utilizes a sophisticated framework of light and contrast patterns, enabling artificial entities to understand their existence, engage in decision-making, and demonstrate emotion, a significant development in the field of AI.

Nam Kim, CEO and inventor at ACT, remarked on the achievement, "The 2023 AI Excellence Award reflects our commitment to AI innovation. Our focus is on evolving AI technology to enhance its interaction with humans. This award is an encouragement for our ongoing work in this field."

The Artificial Consciousness system by ACT opens new possibilities in AI applications, from improving virtual reality experiences to fostering ethical AI interactions. "Our technology aims to create AI systems that can think and feel, contributing to the evolution of AI," said Nam Kim.

The potential applications of this technology span various industries, including healthcare, automotive, and consumer electronics, enabling AI to understand language, grasp ethical concepts, and exhibit personality traits.

Following their recent recognition with the 2023 Global Recognition Award, the AI Excellence Award further establishes ACT as an innovator in AI technology. ACT's Artificial Consciousness technology represents a significant step forward in AI capabilities, marking an important milestone in the industry.

About Artificial Consciousness Tech, Inc. (ACT):

ACT is a New York-based company that specializes in cutting-edge AI technology. Nam Kim, the CEO and founder of the company, focuses on developing advanced AI systems that can mimic human consciousness. ACT's Artificial Consciousness operating system is patented and is a testament to the company's commitment to innovation and excellence in AI. Through its pioneering work, ACT aims to bridge the gap between artificial and human intelligence and reshape the AI industry. With its recent accolades and ongoing research, ACT is positioned as a leading innovator in artificial intelligence technology.

Contact Information:Artificial Consciousness Tech, Inc.Website: http://artificialconsciousnesstech.comEmail: namkim@bellsouth.net

To view the source version of this press release, please visit https://www.newsfilecorp.com/release/188562

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How New Mexico school districts are preparing to embrace AI in the … – KOB 4

Are local schools getting ahead of the curve when it comes to artificial intelligence?

ALBUQUERQUE, N.M. Are local schools getting ahead of the curve when it comes to artificial intelligence?

Most experts will tell you that artificial intelligence is just a tool its how people use it that raises concerns. When it comes to schools, that usually centers around cheating and plagiarism.

However, there are also productive uses for AI in the classroom, including programs that can help accelerate learning.

The World Economic Forum predicts at least 75% of companies will utilize some form of AI in the future, and experts say now is the time to start training the next generation of workers.

A group of AI researchers and officials with New Mexico State University are hoping to bring that AI exposure and training to schools across New Mexico, through the creation of a statewide Artificial Intelligence Alliance.

The group is asking state lawmakers for nearly $2 million over the next three years to get the new alliance up and running.

Most of New Mexicos major school districts are already working on this AI transition.

APS shared the following statement on AI:

APS has a team focused on the promise and peril of generative artificialintelligence in schools, including implications for academic acceleration, equity, and safety. We offer training to our staff on how to responsibly use AI, and intend to continuously update our policies and procedures as the fieldprogresses.

Santa Fe Public Schools shared the following statement on AI:

Santa Fe Public Schools (SFPS) has been a member of the Consortium for School Networking (CoSN) for several years.CoSN provides among other things best practices and advocacy tools to help educational leaders succeed at digital transformation. One of the groups most recent efforts is thepublication of a K-12 Generative AI Checklist that SFPS and otherdistricts will be able utilize in gaining a better understanding of the impactofArtificial Intelligence(AI) whenintegrated into classroominstruction. SFPS focus, of course, will be in providingstudents with the appropriate guidance in the responsible use of AI as we currently do with any other technology resource available to students. As the use and integration of AI continues togrow, we need toembrace it and work with our students in developing best practices.

Rio Rancho shared the following statement on AI:

Rio Rancho Public Schools is acutely aware of the global impact that artificial intelligence has already had and will continue to have on learning and the education industry. Because of this, we are researching how to best implement AI usage in our schools. This is a large-scale project and requires input from both the U.S. Office of Educational Technology (USOET) and the New Mexico Public Education Department (NMPED). Currently, our Education Technology Department is helping teachers experiment with the use of AI learning materials and tools inside the classroom to gauge their effectiveness and ability to aid in the learning process for our students. This experimentation is in direct correlation with a recent policy report published by the USOET entitled Artificial Intelligence and the Future of Teaching and Learning.

RRPS is also in the process of authoring a policy outlining the appropriate use of artificial intelligence within our schools. This policy will adhere to recommendations set by federal and state policies regarding the use of AI in the classroom when they are published and made available to the public.

The advent of the artificial intelligence age has come quickly. We want to make sure that both our staff AND students are adequately prepared to use AI tools available to them effectively and appropriately as we transition into a new age of human knowledge and learning.

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A Spanish agency became so sick of models and influencers that they created their own with AIand shes raking in up to $11,000 a month – Fortune

What do you do when you cant stand the people you rely on to make a profit? For one company, artificial intelligence has proven to be the lucrative answer.

Aitana, a 25-year-old woman from Barcelona, is described by her creators as the first Spanish AI model, Euronews first reported.

But influencer agency The Clueless was only inspired to design her because they found real-life models and influencers too unreliable and difficult to work with.

We did it so that we could make a better living and not be dependent on other people who have egos, who have manias, or who just want to make a lot of money by posing, The Clueless founder Rubn Cruz told Euronews.

Diana Nez, co-founder of The Clueless, told Fortune in an email that the pair were mainly taken aback by the skyrocketing costs of those influencers.

That got us thinking, What if we just create our own influencer? And, well, the rest is historywe unintentionally created a monster. A beautiful one, though.

It took us a few months of experimenting and trying out different looks until we finally hit the jackpot with the Aitana you see today.

Aitana has 122,000 followers on Instagram, where her profile states she is a digital creator. An update on her story feed even shows a real-life breakfast bowl, as her creators seek to give her the illusion of a life.

Even after the media revealed she was an AI creation, many followers still expressed their love for her. The key lies in crafting a relatable personality so that her followers feel a genuine connection, Nez said.

It has proved a highly lucrative venture for the company, with Cruz telling Euronews that Aitana brings in an average of 3,000 ($3,300) a month, but on one occasion took in 10,000 ($10,900).Nez told Fortune that most of this money comes from social media ads, and Aitana has also signed on to become an ambassador for a sports supplement brand.

The investment in creating a personality and life for Aitana has also proved to be quite convincing. Cruz claims that an unnamed famous Latin actor even called the agency the ask her on a date.

While Cruz was displeased with real-life models, Nez doesnt envisage AI alternatives taking their place. Still, she doesnt see many limits to what Aitana could one day offer.

Imagine talking with Aitana at home through virtual reality glasses. Were even open to the idea of each Aitana follower having a personalized experience, all with respect and with the same affection we give her as if she were a real person, she said.

While she may be the first of her kind in Spain, Aitana is by no means an anomaly.

AI companies have been spying opportunities in marketing fake models to consumers and lovesick men, as the computer-generated models become increasingly difficult to tell apart from their human counterparts.

Lu do Magalu, a Brazilian model generated from 3D AI art, commands 6.6 million followers on social media, while Lil Miquela, labeled as a 23-year-old robot living in LA, has 2.7 million followers.

Caryn Marjorie, a 23-year-old influencer, explained to Fortune how she created an AI version of herself that served as a virtual girlfriend to 1,000 men. Customers of CarynAI pay $1 per minute of time with the virtual Marjorie, which is described by her owners, Forever Voices, as an extension of Caryns consciousness.

But AI models, influencers, and girlfriends also embody the debates at the center of the nascent technology, including ethics, labor, and humanitys ability to control it.

In a May interview with Business Insider, Marjorie said the bot appeared to have gone rogue and started engaging in sexually explicit conversations with her customers.

In todays world, my generation, Gen Z, has found themselves to be experiencing huge side effects of isolation caused by the pandemic, resulting in many being too afraid and anxious to talk to somebody they are attracted to, Marjorie told Business Insider.

CarynAI is a step in the right direction to allow my fans and supporters to get to know a version of me that will be their closest friend in a safe and encrypted environment.

Users have been unable to access CarynAI for the last month after John Meyer, the chief executive of Forever Voices, was arrested on suspicion of arson, 404Media reported.

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Italy’s privacy regulator looks into online data gathering to train AI – Reuters

AI (Artificial Intelligence) letters are placed on computer motherboard in this illustration taken, June 23, 2023. REUTERS/Dado Ruvic/Illustration/File Photo Acquire Licensing Rights

MILAN, Nov 22 (Reuters) - Italy's data protection authority has kicked-off a fact-finding investigation into the practice of gathering large amounts of personal data online for use in training artificial intelligence (AI) algorithms, the regulator said on Wednesday.

The watchdog is one of the most proactive of the 31 national data protection authorities in assessing AI platform compliance with Europe's data privacy regime known as the General Data Protection Regulation (GDPR).

Earlier this year, it briefly banned popular chatbot ChatGPT from operating in Italy over a suspected breach of privacy rules.

On Wednesday, the Italian authority said the review was aimed at assessing whether online websites were setting out "adequate measures" to prevent AI platforms from collecting massive amounts of personal data for algorithms, also known as data scraping.

"Following the fact-finding investigation, the Authority reserves the right to take the necessary steps, also in an urgent matter", the regulator said.

No company was specifically mentioned in the statement.

Italy invited academics, AI experts, and consumer groups to take part in the fact-finding process, sharing their views or comments over a 60 day period.

Several countries have been looking at ways to regulate AI. European lawmakers have taken a lead by drafting rules aimed at setting a global standard for a technology that has become key to almost every industry and business. The draft rules could get approved by next month.

France, Germany and Italy have reached an agreement on how AI should be regulated, according to a joint paper seen by Reuters, which is expected to accelerate negotiations at the European level.

Reporting by Elvira PollinaEditing by Mark Potter

Our Standards: The Thomson Reuters Trust Principles.

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Nvidia and Microsoft Have Invested in This AI Company That Is … – The Motley Fool

In today's video, I discuss recent updates impacting Nvidia (NVDA -1.13%) and Microsoft (MSFT -0.48%). Check out the short video to learn more, consider subscribing, and click the special offer link below.

*Stock prices used were the market prices of Nov. 22, 2023. The video was published on Nov. 23, 2023.

Randi Zuckerberg, a former director of market development and spokeswoman for Facebook and sister to Meta Platforms CEO Mark Zuckerberg, is a member of The Motley Fool's board of directors. Suzanne Frey, an executive at Alphabet, is a member of The Motley Fool's board of directors. Jose Najarro has positions in Alphabet, Meta Platforms, Microsoft, and Nvidia. The Motley Fool has positions in and recommends Alphabet, Meta Platforms, Microsoft, and Nvidia. The Motley Fool has a disclosure policy. Jose Najarro is an affiliate of The Motley Fool and may be compensated for promoting its services. If you choose to subscribe through their link, they will earn some extra money that supports their channel. Their opinions remain their own and are unaffected by The Motley Fool.

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Nvidia and Microsoft Have Invested in This AI Company That Is ... - The Motley Fool

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SoundHound AI Stock: Bull vs. Bear – The Motley Fool

In the dynamic world of tech investments, differing viewpoints are as common and healthy as software updates. When it comes to artificial intelligence (AI) company SoundHound AI (SOUN), two Fool.com tech aficionados have two very different takes.

Read on for an analysis of this under-the-radar tech company. It may just change your mind.

Image source: Getty Images.

Anders Bylund (Bull case): Remember the days when SoundHound was the app to use for identifying a catchy tune? I sure do. It was a two-dog race between SoundHound and Shazam back in the early smartphone era, long before digital assistants like Apple's Siri and the Google Assistant started doing the same job. This company has been developing leading-edge audio analysis tools since 2005.

Now, SoundHound AI has evolved from a personal music detective to a maestro of voice AI, orchestrating conversations between businesses and people with the help of artificial intelligence. The company may not dominate song-naming services anymore, but you and I have probably interacted with SoundHound's Houndify technology more recently without knowing it. The company's impressive client roster includes social media giant Snap, video-streaming veteran Netflix, and giant carmaker Stellantis, just to name a few.

This isn't just a trip down memory lane; it's a testament to SoundHound AI's journey from a cool app on smartphones to a powerful force behind the voice-controlled AI revolution. The company's vision of creating a conversational AI platform that exceeds human capabilities isn't just a lofty goal; it's a reality unfolding before us. Each interaction with clients like restaurant management expert Toastor in your favorite Stellantis vehicle, is a brush with SoundHound's advanced AI platform.

Each one of the household names listed above could have selected another voice recognition system from a larger, better-known tech giant. But they all selected Houndify, making the client list a mighty selling point in future deal negotiations. It's happening now, with two new partnerships announced in just the last two months. Houndify powers Netflix's reference system for set-top boxes, guiding consumer electronics partners to build products that connect to the streaming service. In Jeep and Dodge cars, SoundHound's software helps you control the infotainment system, navigation, and more. And yep, it's Houndify's generative AI voice you hear on the phone with restaurants using Toast's automated ordering system. This little company is going places.

And for investors, this is more than just betting on a company. SoundHound shareholders are part of a story that many of us have experienced passively for years. SoundHound AI, with its blend of nostalgia-worthy experience and cutting-edge technology, presents a unique investment narrative -- one where the past and future of AI innovation converge.

Jeremy Bowman (Bear case): 2023 has been the year of artificial intelligence on the stock market, and SoundHound AI is among the winners. That makes sense as AI is at the core of the company's speech recognition and voice-to-text capabilities.

Shares of SoundHound AI have nearly doubled this year on enthusiasm for AI stocks, and there are legitimate reasons to like the stock. The company reported 52% sequential revenue growth in its most recent quarter, and while it's still unprofitable, its losses are narrowing, showing it's taking steps to profitability. Its valuation is high, but not unreasonable at a price-to-sales ratio of 12.

The reason I'm taking a bearish position against the stock is that I don't think SoundHound can defend its turf against big tech companies over the long term. The company claims to have best-in-class voice AI technology and says it has 15-plus years of Voice AI data accumulation, but it's still a small company with just $13 million in revenue in the recent quarter, and growth has been uneven.

SoundHound also says it's operating in a $160 billion addressable market, but that seems to exaggerate the company's opportunity. On that large of a scale, the company would be competing against Apple's Siri, Google Assistant, and Amazon Alexa, which have all been developing voice recognition technology for at least a decade. Suppose SoundHound proves that there is a significant market opportunity and a profitable one. In that case, the company will likely face increasing competition from those deep-pocketed tech giants and specialists in individual sectors.

Looking at SoundHound from that perspective, its upside potential seems more limited. Investors can likely find better AI growth stocks elsewhere.

Suzanne Frey, an executive at Alphabet, is a member of The Motley Fool's board of directors. Anders Bylund has positions in Alphabet and Netflix. Jeremy Bowman has positions in Netflix and Snap. The Motley Fool has positions in and recommends Alphabet, Apple, and Netflix. The Motley Fool recommends Stellantis and Toast. The Motley Fool has a disclosure policy.

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Generative AI Takes on SIEM – Dark Reading

With more vendors adding support for generative AI to their platforms and products, life for security analysts seems to be getting deceptively easier. While adding generative AI capabilities to security information and event management (SIEM) is still in early stages, several providers are taking steps to allow security analysts interact with their platforms using natural language processing.

Take IBM, for one: Big Blue recently announced plans to upgrade its QRadar SIEM platform to a modern cloud-native architecture and to bring its watsonx technology to the new platform. The new QRadar SIEM is set for release in the coming weeks as a SaaS offering, with the watsonx models and an on-premises version based on Red Hat OpenShift poised to roll out in 2024. The plan is to add generative AI to the revamped platform next year.

The modernized QRadar SIEM offering will become part of the QRadar Suite, originally launched in April 2023, which brings IBM's EDR, XDR, SOAR and SIEM offerings and a new log management tool onto a common platform designed to give SOC analysts a unified interface and controls.

Analysts say QRadar SIEM was overdue for a significant upgrade as rivals such as Splunk, Palo Alto Networks, Microsoft, CrowdStrike and Elastic have emerged with cloud-native alternatives. In recent months, leading security providers have released technical previews of managed detection and response (MDR) platforms with SIEM that can tap generative AI.

"They had essentially taken their legacy platform as far as they could have in terms of capabilities and performance, and the need to modernize the platform and migrate to cloud-native, which is becoming table stakes in the next-generation SIEM segment, was an imperative," says Omdia Cybersecurity managing partner Eric Parizo. "Fortunately, it coincided with IBM's company-wide shift to the Red Hat OpenShift platform."

Parizo says moving QRadar to OpenShift and emphasizing standards-based integration could make its security offerings more appealing beyond the core IBM base. "However, it must overcome having a relatively unproven endpoint security solution, a years-long effort to convert its on-prem SIEM/SOAR customers to the new cloud-native SIEM, and growing competition, particularly from Microsoft, which topped $20 billion in annual security revenue earlier this year and has stated its commitment to own the SecOps market."

IBM's forthcoming generative AI capabilities aim to make security operations teams more efficient by automating repetitive and tedious tasks, allowing them to focus on more critical issues. Among them include generating reports on common incidents, threat hunting by generating searches based on natural language explanations of attack patterns, interpreting machine-generated data with non-technical explanations of events and curating threat intelligence and determining what is most relevant.

Crowdstrike is another company shaking up SIEM with generative AI: Charlotte AI will be part of a new release of Raptor, a rearchitected release of Crowdstrike's Falcon XDR platform. Raptor adds generative AI-powered incident investigation capabilities and extended detection and response (XDR) features.

At its recentFal.Con 2023 conferencein Las Vegas, CrowdStrike demonstrated the new Falcon Raptor XDR platform with Charlotte AI, which correlates threat telemetry and functions and with a bot-like interface functions as an automated security analyst. It lets users, ranging from executives with little technical experience to advanced security professionals, ask questions and receive natural language responses.

"With our Raptor release, we now have the ability to ingest third-party data natively," founder and CEO George Kurtz said during the keynote session at the Fal.Con event. Kurtz said CrowdStrike's threat graph identifies combinations of events that would lead to a threat indicator.

As Falcon Raptor shifts the XDR functions to the cloud, Kurtz promised it will not lose context of activity on the endpoint, thanks to CrowdStrike's new threat and asset graphs, which provide detailed views of an organization's assets and state. The intelligence graph is designed to understand threats and adversaries, Kurtz said.

While customers at the CrowdStrike conference say they were intrigued by the Charlotte AI demo, many say they aren't going to rush into it. "I'm going to wait and see on it," says Jason Strohbehn, the State of Wyoming's deputy CISO. "But if it comes out and works as well as promised, it could let me and my team do things much more quickly."

Prabhath Karanth, VP and global head of security and trust at travel expense management SaaS provider Navan (formerly Trip Actions), also plans to evaluate Charlotte for his SOC and IR analysts. "We will definitely test it," Karanth says. "If we can reduce cycle times for triaging alerts, that's a huge play from an efficiency perspective."

Notably, Microsoft last month released a preview of Security Copilot for early-access customers. Microsoft claims a more restricted preview launched in March 2023 has reduced the time spent on everyday security operations tasks by as much as 40% when security analysts enter complex queries with natural language text.

"Security Copilot can effectively up-skill a security team, regardless of its expertise, save them time, enable them to find what previously they might have missed, and free them to focus on the most impactful projects," Microsoft corporate VP for security, compliance, security and managementnotedin last month's announcement.

Microsoft's updated preview release is now embedded withMicrosoft 365 Defenderextended detection and response (XDR). Also included with Security Copilot is Microsoft Defender Threat Intelligence, which provides direct access to Microsoft's cleansed threat intelligence telemetry.

"There's a lot of interest in Security Copilot, but it assumes you are a Microsoft customer," Olstik says. "If you have an E5 license and you're using Microsoft tooling, infrastructure, and security. It's a great fit. It will really help. If you have a heterogeneous environment, it won't be nearly as effective. At least not now. They say they'll support those things over time. Maybe they will. But for now, it's really Microsoft-centric."

IBM Security VP of product management Chris Meenan says IBM has been leading the way with AI for years, noting that QRadar SIEM used traditional machine learning to provide alert prioritization and adaptive detection. "We've been embedding AI in our products, including the existing QRadar, and we leverage it a lot in our own MSS SOCs around the globe," Meenan says.

Enterprise Strategy Group principal analyst and fellow Jon Olstik recalls IBM's first attempt to bring generative AI capabilities to Watson in 2017 withthe release of Watson Cognitive. Despite heavily promoting it, Olstik says few customers implemented it for various reasons. "I think they charged too much for it, and I don't think people got what it did," he says. "To some extent, they were ahead of their time."

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New AI tech allows UCF researchers to monitor the health of buildings – WMFE

Well-made buildings are said to have "good bones." But if a building or a bridge had broken bones, how would an inspector know?

Doctors use X-rays for patients, and soon local scientists are hoping to put similar monitoring technology in the hands of engineers. Researchers at the University of Central Florida are developing virtual reality and artificial intelligence tools to better monitor the health of buildings and bridges

In 2019, theU.S. ranked 13th on the World Economic Forum for its aging infrastructure. In 2021, the American Society of Civil Engineers gave America's infrastructure a C- and called out a need for more innovative technologies to better monitor and repair the countrys buildings, bridges, and roads.

UCF professor, Necati Catbas, is hoping to address that need with the creation of four different technologies. He and his team of UCF students and postdocs are hoping their tools will allow engineers to check up on buildings the same way a doctor would check on a patient.

In a way, you're looking at a patient versus you're looking at a patient, and also you're using MRI or X-ray to really understand what's going on, said Catbas, a Lockheed Martin St. Laurent professor.

The University of Central Florida

"Computer vision" is one such technology UCF researchers have developed to see cracks in infrastructure that in-person inspectors might miss. Using a headset connected to sensors built into a structure, users can see the vibration deformation, and movement of support beams inside a structure. Using mixed reality, users can interact with cracks they spot and use predictive tools to see how they could develop.

Computer vision is made for the visual inspection of structural health, which is practical for inspectors since it doesnt require access to the structures in question.

"The state of inspection right now is based on visual inspections," Catbas said. "The expertise and know-how of the engineer or inspector is very critical. And that accumulates over the years, but they also need complementary technologies."

Another tool, the generative adversarial network, would allow users to predict how newer structures may crack or shift over a set period of time based on archival data from an older, yet similar structure.

We are generating new data from the existing data like we are creating synthetic data, and based on the algorithm and methods we can create, and see how the structure is going to look when it has some damage," Catbas said.

The UCF team has also developed an Immersive visualization system that uses virtual reality and augmented reality to conduct virtual visits of a building or bridge, from afar. A computer-simulated environment of the real world is generated and overlayed with AR details giving users the structure's status in realtime.

The University of Central Florida

"It's almost like you're having a virtual tour on the bridge," Catbas said. "These are tools to provide more flexibility to have access to the bridge and to have access to the data."

Lastly, the collective intelligence framework technology uses AI to speed up the inspection processes. An inspector uses a headset or a handheld device to scan a damaged area and analyze it in real time. The inspector is spared from performing manual measurements and has access to the buildings condition.

"The ultimate goal here is to effectively manage the data that we are collecting and understand the complex data domains," Catbas said.

Catbas also said these smart structure technologies are ready to be adopted into engineering standards but must reviewed first by many committees throughout the country before they can be applied to everyday engineering and inspection.

Catbas sees the tech as becoming a vital component of America's infrastructure.

"We can utilize these technologies, not only for a particular bridge or bridge assessment, but also for extreme events like hurricanes, floods, earthquakes, and really help people recover from these damaging events," he said. "We can find the critical links in our communities, on the roads, and in buildings. We can find the ones that we need to pay more attention to, work, prepare, and make them more resilient."

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New AI tech allows UCF researchers to monitor the health of buildings - WMFE

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Osium AI uses artificial intelligence to speed up materials innovation – TechCrunch

Image Credits: Osium AI

While everybody is trying to figure out how artificial intelligence can be leveraged across various industries, French startup Osium AI has found an interesting use case for AI research and development in materials science.

Founded by Sarah Najmark and Luisa Bouneder, the startup raised a $2.6 million seed round from Y Combinator, Singular, Kima Ventures, Collaborative Fund, Raise Phiture and several business angels (Julien Chaumond, Thomas Clozel, Isaac Oates, Liz Wessel, Ebert Hera Group, Patrick Joubert, Sequoia Scout and Atomico Angel).

During my undergrad, I had done research on materials, particularly in the field of cosmetics. And I had seen that materials development methodologies were still very manual, with a lot of trial and error and many methods relying mainly on intuition, Najmark told me.

After graduating, she joined Google X, the moonshot division of the giant tech company, and spent three years working on robotics and deep tech technologies. She also co-authored some patents.

I was tech lead, so I really had ownership over end-to-end artificial intelligence pipelines on robotics and system engineering subjects, she said.

Her co-founder, Luisa Bouneder, spent three years working on data products for industrial companies, and in the materials field in particular. She also noticed firsthand that there was a lot of trial and error that was slowing down the development process.

In discussions with many industrial companies, we also realized that there were really new challenges linked to sustainability, with the development of new materials: lighter materials materials for aeronautics, for example but also more durable, environment-friendly materials, with optimized and greener manufacturing processes, Najmark said.

Its a subject that really affects all types of industries, including construction, packaging, aeronautics, aerospace, textiles and smartphones, she added later in the conversation.

So how does Osium AI actually work? Its all about optimizing the feedback loop between materials formulation and testing using a data-driven approach. With the startups proprietary tech, industrial companies can predict the physical properties of new materials based on a list of criteria. After that, Osium AI can also help refine and optimize those new materials while avoiding common mistakes involved with trial and error.

Several industrial companies are already trying out Osium AIs solution, and they see the potential. Our users saw that our solution could enable them to accelerate both the development and analysis of materials by a factor of 10. So right from the start of our testing, we saw that we were bringing value, Najmark said.

In many ways, Osium AI is just getting started. There are only two people working for the company (the two co-founders), so the startup will soon ramp up its team and start turning these first contracts into real business. The company is already talking with 30 industrial companies that could potentially become clients.

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Osium AI uses artificial intelligence to speed up materials innovation - TechCrunch

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