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VERISK ANALYTICS, INC. : Entry into a Material Definitive Agreement, Creation of a Direct Financial Obligation or an Obligation under an Off-Balance…

Item 1.01 Entry into a Material Definitive Agreement.

On April 5, 2023, Verisk Analytics, Inc. (the "Company") entered into the FifthAmendment to Second Amended and Restated Credit Agreement (the "FifthAmendment") which amends the Second Amended and Restated Credit Agreement datedas of April 22, 2015 (as amended by the First Amendment dated as of July 24,2015, the Second Amendment dated as of May 26, 2016, the Third Amendment datedas of May 18, 2017 and the Fourth Amendment dated as of August 15, 2019, the"Existing Credit Agreement", and the Existing Credit Agreement as amended by theFifth Amendment, the "Amended Credit Agreement") among the Company, the lendersparty thereto and Bank of America, N.A. as administrative agent. The FifthAmendment provides for (i) an extension of the maturity date of the $1.0 billionrevolving credit facility under the Amended Credit Agreement to the date that isfive years after the date of the Fifth Amendment, (ii) implementation of "TermSOFR", "SOFR Daily Floating Rate" and "SONIA" as reference rates for borrowingsunder the Amended Credit Agreement, (iii) certain modifications to thedefinition of "Applicable Rate", among other things, to reflect reductions inthe unused commitment fee, (iv) changes to the financial covenant based on theconsolidated funded debt leverage ratio to increase the ratio level from3.50:1.00 to 3.75:1.00 and to allow for a one temporary step-up to 4.25:1.00 andone temporary step-up to 4.50:1.00 in connection with the closing of a permittedacquisition and (v) certain other modifications and updates to the ExistingCredit Agreement as further detailed in the Fifth Amendment. All borrowingsunder the Amended Credit Agreement shall continue to remain unsecured.

The foregoing description of the Fifth Amendment is qualified in its entirety byreference to the Fifth Amendment, which is annexed as Exhibit 10.1 and isincorporated by reference in its entirety.

Item 2.03 Creation of a Direct Financial Obligation or an Obligation under an

The information contained in Item 1.01 of this Current Report on Form 8-K isincorporated by reference into this Item 2.03.

Item 9.01 Financial Statements and Exhibits.

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Edgar Online, source Glimpses

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Astronomers used machine learning to mine SA’s MeerKAT … – Moneyweb

New telescopes with unprecedented sensitivity and resolution are being unveiled around the world and beyond. Among them are theGiant Magellan Telescopeunder construction in Chile, and theJames Webb Space Telescope, which is parked a million and a half kilometres out in space.

This means there is a wealth of data available to scientists that simply wasnt there before. The raw data from just a single observation of the MeerKAT radio telescopein South Africas Northern Cape province can measure a terabyte. Thats enough to fill a laptop computers hard drive.

MeerKATis an array of 64 large antenna dishes. It uses radio signals from space to study the evolution of the universe and everything it contains galaxies, for example. Each dish is said to generate as muchdata in one secondas youd find on a DVD.

Machine learningis helping astronomers to work through this data quickly and more accurately than poring over it manually.

Perhaps surprisingly, despite increasing reliance on computers, up until recently the discovery of rare or new astrophysical phenomena has completely relied on human inspection of the data.

Machine learning is essentially a set of algorithms designed to automatically learn patterns and models from data. Because we astronomers arent sure what were going to find we dont know what we dont know we also design algorithms to look out for anomalies that dont fit known parameters or labels.

This approach allowed my colleagues and Ito spot a previously overlooked object in data from MeerKAT. It sits some seven billion light years from Earth a light year is a measure of how far light would travel in a year. From what we know of the object so far, it has many of the makings of whats known as an Odd Radio Circle (ORC).

Odd Radio Circles are identifiable by theirstrange, ring like structure. Only a handful of these circles have been detected since the first discovery in 2019, so not much is known about them yet.

In a newpaper we outline the features of our potential ORC, which weve named Sauron (a Steep and Uneven Ring Of Non-thermal Radiation). Sauron is, to our knowledge, the first scientific discovery made in MeerKAT data with machine learning. There have been a handful of other discoveries assisted by machine learning in astronomy.

Not only is discovering something new incredibly exciting, new discoveries are critical for challenging our understanding of thecosmos. These new objects may match our theories of how galaxies form and evolve, or we may need to change how we see the universe. New discoveries of anomalous astrophysical objects help science to make progress.

Identifying anomalies

We spotted Sauron in data from theMeerKAT Galaxy Cluster Legacy Survey.

The survey is a programme of observations conducted with South Africas MeerKAT telescope, a precursor to theSquare Kilometre Array. The array is a global project to build the worlds largest and most sensitive radio telescope within the coming decade, co-located in South Africa and Australia.

The survey was conducted between June 2018 and June 2019. It zeroed in on some 115 galaxy clusters, each made up of hundreds or even thousands of galaxies.

Thats a lot of data to sift through, which is where machine learning comes in.

We developed and used a coding framework which we calledAstronomalyto sort through the data. Astronomaly ranked unknown objects according to an anomaly scoring system. The human team then manually evaluated the 200 anomalies that interested us most. Here, we drew on vast collective expertise to make sense of the data.

It was during this part of the process that we identified Sauron. Instead of having to look at 6 000 individual images, we only had to look through the first 60 that Astronomaly flagged as anomalous to pick up Sauron.

But the question remains: what, exactly, have we found?

Is Sauron an ORC?

We know very little about ORCs. It is currently thought that their bright, blast-like emission is the wreckage of a huge explosionin their host galaxies.

The name Sauron captures the fundamentals of the objects make-up. Steep refers to its spectral slope, indicating that at higher radio frequencies the source (or object) very quickly grows fainter. Ring refers to the shape. And the Non-Thermal Radiation refers to the type of radiation, suggesting that there must be particles accelerating in powerful magnetic fields. Sauron is at least 1.2 million light years across, about 20 times the size of the Milky Way.

But Sauron doesnt tick all the right boxes for us to say its definitely an ORC. We detected a host galaxy but can find no evidence of radio emissions with the wavelengths and frequency that match those of host galaxies of the other known ORCs.

And even thoughSauron has a number of features in common with Odd Radio Circle1 the first ORC spotted it differs in others. Its strange shape and oddly behaving magnetic fields dont align well with the main structure.

One of the most exciting possibilities is that Sauron is a remnant of the explosive merger of two supermassive black holes. These are incredibly dense objects at the centre of galaxies such as our Milky Way that could cause a massive explosion when galaxies collide.

More to come

More investigation is required to unravel the mystery.

Meanwhile, machine learning is quickly becoming an indispensable tool to find more strange objects by sorting through enormous datasets from telescopes. With this tool, we can expect to unveil more of what the universe is hiding.

Michelle Lochner is Senior Lecturer in Astronomy, University of the Western Cape

This article is republished fromThe Conversationunder a Creative Commons licence. Read theoriginal articlehere.

AI Masterclass:Moneyweb has partnered with the Institute for Technology Strategy andInnovation and North-West University Business School to offer aground-breaking new artificial intelligence course.AllInsider Gold subscribersreceivereceive a 10% discount for the four-day virtual course. For more information clickhere.

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Power Of Arrest In India, USA And UK – BW Legal World

The power of arrest is a critical component of law enforcement in every country, including India, the United Kingdom (UK), and the United States of America (USA). While the basic principles of arrest are similar in all three countries, there are some differences in the way that arrest is carried out and the legal framework that governs it.

This article discusses the power of arrest in India, the UK and the USA.

India

In India, the power of arrest is governed by the Code of Criminal Procedure (CrPC), which lays down the rules and procedures for arrest. The police are empowered to arrest a person if there is a reasonable suspicion that they have committed an offence. However, the police must follow certain guidelines when making an arrest. For example, they must inform the person being arrested of the grounds for the arrest, and they must obtain an arrest warrant if the offence is non-cognizable.

The power of arrest in India is also subject to judicial oversight. The Supreme Court has held that the power of arrest must be exercised with caution and only in cases where it is absolutely necessary. The court has also ruled that the police cannot arrest a person simply to pressure them to confess to a crime.

United Kingdom

In the UK, the power of arrest is governed by the Police and Criminal Evidence Act (PACE), which sets out the procedures that the police must follow when making an arrest. The police can arrest a person if they have reasonable grounds for suspecting that the person has committed an offence, is about to commit an offence, or is in the process of committing an offence. The police must also inform the person being arrested of their rights, including the right to legal representation.

The power of arrest in the UK is also subject to judicial oversight. The courts have held that the police must have a reasonable suspicion that a person has committed an offence before they can be arrested. They have also held that the police must use the minimum force necessary to effect an arrest.

United States of America

In the USA, the power of arrest is governed by state and federal law. The police can arrest a person if they have probable cause to believe that the person has committed a crime. The police must also inform the person being arrested of their rights, including the right to remain silent and the right to an attorney.

The power of arrest in the USA is subject to constitutional oversight. The Fourth Amendment to the US Constitution protects citizens from unreasonable searches and seizures, including arrests. The courts have held that the police must have probable cause to believe that a person has committed a crime before they can be arrested. They have also held that the use of excessive force during an arrest can violate a person's constitutional rights.

In conclusion, the power of arrest is a critical tool for law enforcement. While the basic principles of arrest are similar in all three countries, there are some differences in the way that arrest is carried out and the legal framework that governs it. It is important that law enforcement officials follow the rules and procedures for arrest and that the power of arrest is subject to judicial and constitutional oversight to ensure that it is used appropriately and fairly.

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Tapping into the value of chatbots – Geopolitical Intelligence Services AG

Intelligent chatbots such as ChatGPT redefine labor division, creating value in various industries, but face limitations that may affect adoption.

Within the first five days of launching in December 2022, ChatGPT reportedly gained its first million users, outperforming competitors like Googles Bard. As more people adopt or experiment with these chatbots, economists and investors are increasingly curious about their value proposition.

To assess their value, one must first differentiate between regular chatbots and intelligent chatbots like ChatGPT. Although there is no clear cutoff between the two, it is helpful to consider them as having different maturity levels and therefore different value propositions.

Traditional chatbots are programmed to address a wide yet ultimately limited range of queries. They are often used in customer service to provide information, respond to simple requests, and distinguish between standard and complex queries.

Intelligent chatbots like ChatGPT have the ability to learn. Rather than adhering to standard chatbot behavior, they study patterns from human interactions, using this information to expand and improve the services they provide.

To better understand the maturity differences between chatbots, it is worth taking a close look at ChatGPT as an example of an intelligent bot. Its primary feature is using natural languages for both input and output, making it more accessible for average consumers.

ChatGPT is an artificial intelligence (AI) system developed by San Francisco-based AI research laboratory OpenAI. It utilizes generative pre-training (GPT), which uses natural languages by combining autonomous machine learning with pre-training on extensive connected text passages.

Since its inception in 2018, GPT has undergone several upgrades. ChatGPT is based on the third generation of the technology, where unsupervised machine learning takes place. The algorithm learns from untagged data, mimics the patterns it encounters and generates new content based on this learning curve.

GPT-3 programming enables ChatGPT to converse with humans using natural language. The bot operates with the same input and output as an average human conversation. It can answer various questions, and its responses not only improve but continue to get better as the bot is trained on human interaction. In essence, ChatGPT creates its own content.

The most obvious benefit of AI applications is the improved quality of conversation between humans and these programs. The utterances of intelligent bots like ChatGPT are less awkward and cumbersome than traditional bots. However, this is not enough to create value on its own. Additional uses for ChatGPT and similar bots include:

Coding: ChatGPT is trained in formal languages, allowing it to be used for coding. As it is also trained in natural languages, it can develop new programs, apps, games and even music. The intersection of formal and natural language is increasingly important in a digital economy relying on networks and the Internet of Things.

Creating: intelligent bots can generate text for speeches, articles or even poetry. Users can specify the subject, length and target audience for the text. The bot then uses information from the internet and its own learning to produce a result, creating meaningful content for humans.

Division of labor: ChatGPTs content creation abilities make it well suited to complement human labor. It can research information, systematically organize it and tailor the output to the users needs. This enhances the division of labor between humans, who provide input and control the output quality, and the bot, which processes content.

However, there are limitations to ChatGPT and similar AI-based bots. They are not entirely new, since similar programming has been used in translation services for at least the past five years. Their value proposition lies in the quality and breadth of their uses, rather than innovation.

There are also serious concerns about output quality. As the bot learns more, it discerns more general patterns, using these to generate content at the cost of individuation. ChatGPT creates similar outputs for different queries when they fall into the same pattern.

The algorithm combines information and processing to create content, but it is unclear if it checks the credibility of the information. Based on what it produces, it does not appear to critically assess arguments and lines of thought. Due to machine learnings multilayered nature, the bot cannot explain all its sources or how it resolved discrepancies during content generation. Users also have to keep in mind that disclosing information makes it public, since their inputs can be fed into the bots learning system. And there are other issues, such as the lack of personalization or the excess wokeism in ChatGPTs free version.

Most likely, GPT development and adoption will continue incrementally. AI will improve at handling images and animations as input and output. Bot usage will increase but likely be employed within limited areas, such as translation, customer service, prototyping and pre-underwriting. The division of labor between humans and bots will improve, and the technology will make work easier by taking on the less rewarding tasks.

In one scenario, chatbots permeate almost all interactions and even substitute some human-to-human exchanges permanently. To achieve such a dispersion, ChatGPT would need to use all natural interactions not only language, but also images, animations, human-to-human contact and nonlanguage behavior patterns as inputs and outputs. Chatbots could serve as supporting elements in nearly all human-to-human interactions, such as studying, working and deciding where to go on holiday. They would replace teachers, psychologists, marketers, or investment bankers. The probability of such a scenario is low, perhaps less than 15 percent.

In another scenario, chatbots like ChatGPT do not spread beyond any market applications other than their current niche. They could even fail if the aforementioned limitations are not addressed in future development. If the programs continues producing similar, interchangeable outcomes, they would lose value for individual users seeking personalization. Moreover, if their learning mechanism remains opaque or becomes even less transparent, their legitimacy would be questioned. Lastly, the lack of privacy for users could seriously hinder business adoption. The likelihood of this worst-case scenario is around 20 percent.

Whether intelligent chatbots will unlock their full value potential depends on how they will be adopted by individuals and in businesses. And this will hinge on how programmers develop more advanced AI. Special attention will need to be paid to parameters such as information protection, individualization and more accessible and intelligible output.

The excitement about ChatGPT might wear off, but the value proposition of intelligent chatbots will remain within reasonable limits.

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Dublin Tech Summit 2023 to explore AI and Machine Learning … – Business & Finance

Dublin Tech Summit 2023 is returning on 31st May to host global thought leaders, established tech experts and industry disruptors for two days of exciting, interactive, engaging and inspiring content, writes Tracey Carney, Managing Director of Dublin Tech Summit.

This years Dublin Tech Summit is our biggest to date. With hundreds of tech leaders set to address over 8,000 attendees, through a range of talks, panels, interviews, demonstrations and more, DTS23 will highlight Irelands role as tech hub for the entire world.

In a very short space of time, the ongoing tech downturn is seeing mass layoffs worldwide, while the rapid growth of AI, the shift toward sustainability and banking turbulence are creating fresh challenges for many sectors. What has led to this very recent tech downturn and are new approaches required to steer economic growth back in a positive direction? New approaches to this, and many other issues, will be discussed, debated and explored with all viewpoints represented at DTS23. You will get to hear opinions for and against cutting edge AI technology, the pros and cons of extended reality and many more thought-provoking ideas.

As we look ahead to the next decade to see where we will be and what opportunities lie ahead, DTS will look closely at AI and machine learning, topics that are currently capturing the publics imagination and posing somewhat existential questions. Other themes of immediate importance include Digital & Business Transformation; Security, Privacy & Trust; Big Data, Analytics & Datafication; Enterprise Software Solutions; Sustainability & Tech For Good; Metaverse & Extended Reality; Blockchain & Web3; Fintech; Deeptech & Future Innovation; 5G, IoT & Connectivity; Diversity, Equity & Inclusion; Start-ups & Investment and the Future Workforce.

Following full days of best-in-class discussion and debate, attendees will be invited to participate in our DTS by Night programme where we have fantastic events especially designed, in venues throughout Dublin City, to allow for optimum networking, mingling, meeting, hanging out and partying with the worlds brightest minds in tech. These include the Tech On The Rocks event and the DE&I Party.

Tickets for this years event are on sale now. For more information, please visit the Dublin Tech Summit website.

About the author: Tracey Carney is Managing Director of Dublin Tech Summit

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Dublin Tech Summit 2023 to explore AI and Machine Learning ... - Business & Finance