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Microsoft Dominates in Cloud Computing Market – The Packet

As businesses around the world continue to adopt cloud computing services to manage their data and software applications, the market for cloud services has grown dramatically in recent years. According to a recent report by Gartner, the global cloud services market is expected to reach $266 billion in 2020, up from $155 billion in 2019.

And when it comes to dominating this market, one company stands out above the rest: Microsoft.

Over the past few years, Microsoft has made significant moves to become a leading player in the cloud services market. In addition to its long-standing success with its Office suite of applications, Microsoft has made major investments in cloud infrastructure and services, including its Azure platform and its acquisition of LinkedIn.

In fact, according to the latest data from Synergy Research Group, Microsoft is the second-largest cloud services provider in the world, with a market share of around 18%. That puts it just behind Amazon Web Services (AWS), which holds a market share of around 32%.

But while AWS has long been the dominant player in the cloud services market, Microsoft has been steadily gaining ground. In fact, Microsofts Azure platform saw year-over-year growth of 59% in the second quarter of 2020, compared to 33% for AWS.

One of the key factors behind Microsofts success is its focus on hybrid cloud solutions. Unlike AWS, which is primarily focused on public cloud services, Microsoft has been building out its Azure Stack offering, which allows businesses to deploy a consistent set of Azure services across their own data centers and the public cloud.

This makes it easier for businesses to manage their data across different environments, while also giving them greater control over their infrastructure and security.

In addition to its hybrid cloud offerings, Microsoft has also been investing heavily in artificial intelligence and machine learning. This has led to the development of advanced analytics tools and services, such as Azure Machine Learning, that allow businesses to analyze and make sense of their data on a massive scale.

Overall, Microsofts dominance in the cloud services market shows no signs of slowing down. With its strategic investments in hybrid cloud solutions and machine learning technology, as well as its focus on delivering high-quality, reliable services, Microsoft is poised to continue dominating the market for years to come.

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Why Modern BSS Is Crucial in Driving Operator CX and B2B … – The Fast Mode

Business support systems (BSS) are at the heart of telco B2B operations. BSS provides the information and processing systems required to register new customers, configure their services, account for their usage and generate invoices. As operators race to improve their capabilities to serve a growing number of enterprises, end users, devices and services, BSS plays an increasingly important role in revenue assurance and in delivering superior end-to-end experience for users.

Despite their importance, BSS tools vary greatly in their capabilities. While some operators have access to leading-edge features that allow new products to be rolled out in just days and which can be upgraded and scaled in minutes, others grapple with legacy BSS applications with rigid architectures and which are constrained by extremely long upgrade and development cycles. Legacy BSS also lack automation, with heavy dependency on manual configurations and reconciliations. They also involve in-silo management of customer data, which leads to a lack of visibility into customer journeys and experiences across different channels and touchpoints.

A powerful BSS tool can make or break operator B2B business. Why? Unlike its retail counterpart, B2B business involves highly granular product and pricing strategies. Operator B2C services involve, at the most, three or four different services, namely voice, messaging, data and content services. These are coupled with either a fixed price all you can eat plan or tiered, usage-based plans. Other add-ons such as a connected car and roaming offers merely extend existing voice and data services, and come with standardized pricing. Operator B2B services on the other hand feature an exclusive mix of services that cater to the unique needs of enterprises, which come in different sizes, needs and budgets. Staples such as VoIP, UC, messaging and FTTx are supplemented by newer services such as 5G and SDWAN, and various add-ons such as cloud computing, cloud storage, CPEs, IoT devices, network security and IT integration services.

Breadth of services is not the only complexity faced by operators. Most of these services require dynamic accounting rules and pricing transparency due to complex technologies involved in assembling and delivering them. The introduction of standalone 5G networks and network slicing accords different services such as eMBB, URLLC and mMTC unique computing and networking instances that enable different enterprise customers to be allocated their own virtualized networks. This is supported by cloud-native architectures comprising containerized microservices that allow these instances to be spun up as needed. Similarly, for operators using VM-based architectures, the management of networks and network functions are implemented via VNFs. At the same time, deployment of multi-access edge computing (MEC) for edge processing enables operators to provision computing and networking services closer to the users.

These technologies necessitate a monetization approach that can accurately and reliably rate, charge and mediate an enterprises use of operator computing and networking resources. This enables enterprise needs to be swiftly met, while eliminating redundancies and wastage. This is especially critical when the mix of enterprise services includes both expensive, premium services which are resource intensive, as in the case of MPLS lines and extensive suite of security services, as well as cost-effective hosting services that use public cloud facility and general Internet lines.

More importantly, the breadth of operator services for B2B requires an open collaborative platform that is able to present an expanded inventory listing featuring thousands of third-party vendors and suppliers. This enables enterprises to develop their services using a one-stop platform supporting B2B2X delivery models. An autonomous driving application for example, requires not only a 5G URLLC slice provisioned and billed by the operator, but also MEC capabilities, compute platforms and a wide range of sensors that has to be procured and integrated from third-party suppliers.

Modern BSS supports extensive operator services, and allows flexible, fine-grained charging that accords enterprises from different industries and of different sizes, the plans that best meet their use cases. An enterprise implementing smart manufacturing will require connectivity services in the form of fiber broadband that is complemented with plant-wide LAN services and wireless links such as WiFi and LoRaWAN or NB-IoT, alongside supplementary products/services such as virtual CPEs, smart modules and OT security services. Charging and pricing for these plans will require the imputation of various other parameters, including the number of end users, SLAs, ownership of assets and hardware, type of value added services, plan flexibility, subscriber self-care features and others.

Modern BSS supports product / service bundling by including an open marketplace that allows seamless onboarding and integration of third-party products and services. With built-in billing and monetization mechanisms that facilitate revenue sharing, the marketplace provides enterprises a one-stop shop and at the same time, facilitates the development of B2B2X partnerships and ecosystem.

Modern BSS is essentially a collection of subscriber, service and revenue management modules alongside a host of other innovative features that facilitate productization, subscription and monetization. Service management for example, involves customer relationship management, omni-channel customer care engagement support and omni-channel self-care. Revenue management involves mediation, convergent charging, invoicing/billing, credit limit management and payment management. Diagram 1 lists a plethora of functionalities that make up modern BSS.

Modern BSS solutions leverage flexible digital architectures, combining cloud-based hosting and hosting on virtualized environments. Cloud hosting allows BSS modules to be introduced, run and removed as needed. It uses open APIs and leverages the power of public cloud. Virtualized environments, on the other hand, allow operators to move away from proprietary equipment in favour of standardized, modularized yet open systems that promote a flexible mix of BSS components deployed as VNFs.

As with any other digital application, modern BSS can be enhanced with a wide range of networking services such as load balancing, analytics and DPI. It also borrows IT best practices, with the adoption of DevOps and tactics such as CI/CD, for faster response times and greater innovation.

Another feature of modern BSS is the use of big data, analytics and AI, including the use of machine learning (ML) and deep learning (DL) algorithms to enable automation. This supports end-to-end automated service management, and ensures scalability and adaptability as operator portfolios keep changing and growing, and as new subscribers are added. Automation reduces the number of tedious, manual, repetitive tasks, and allows agents and sales people to focus on real customer demands more, and this, besides better productivity, also increases employee satisfaction.

Automation greatly enhances operator CX by supporting contextual conversations over customer care channels, offering faster and more relevant solutions to customer queries, with 24/7 availability via self-care and chatbots. It also improves customer experience by enabling operators to craft offers based on user preferences and habits. Rapid, personalized service is becoming a basic requirement from customers, not only in the B2C but increasingly in the B2B segment as well. This automation and personalization feature supports enterprises as they go through different phases of digital transformation to serve their customers better, improving customer satisfaction, loyalty and customer lifetime value.

Emergence of new technologies such as 6G, cloud computing, Web 3.0 and advanced biometrics will redefine service providers operating environment, necessitating cutting-edge features and capabilities across BSS tools entasked with supporting new delivery and monetization models. From low-code technologies to establishing complex billing hierarchies, devising custom support programs, improving self-service capabilities and enabling real-time profitability and ROI analysis, modern BSS is, undoubtedly, the cornerstone of operators B2B success and a tool every operator must adequately invest in.

Etiyas Digital Business Platforms is a modern BSS solution that features advanced data analytics, AI, and business intelligence capabilities across 3 key BSS layers: experience, engagement, and enablement. Etiyas cutting-edge AI methodologies include natural language processing (NLP) and predictive analytics, which enable smart decision-making throughout the customer journey, ultimately driving customer and employee efficiency and satisfaction.

Etiyas Digital Business Platforms offer a comprehensive portfolio of modular, cloud-based components including CRM with campaign management and loyalty management, CPQ, product catalog, revenue management, order management, and omni-channel customer service management, including self-care. With an API-driven, full-stack, microservices-based architecture, Etiyas Digital Business Platforms boast unparalleled agility and scalability, enabling CSPs to quickly and cost-effectively achieve digital transformation.

The Digital Business Platforms suite is compatible with 5G networks and can be integrated component by component or deployed as a complete replacement to a legacy system. Using standardized, open APIs allows not just easy integration and accelerated digital transformation, but also easy operation and monetization of platform-based business models, that is a market necessity for sustainable future growth.

To learn more, visit Etiya Digital Business Platforms.

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Akamai Gets Richmond for Internal Promotion – Australia Cyber Security Magazine

Akamai Technologies has promoted James Richmond to Regional Director for Australia and New Zealand (ANZ) at Akamai Technologies. James will report directly to Akamais SVP, Sales and Managing Director, Asia Pacific & Japan, Parimal Pandya.

Based in Melbourne, James originally joined Akamai in 2014 where his focus was on helping organisations in highly regulated sectors improve their security and compliance postures. His most recent role was Regional Manager ANZ Critical Infrastructure for Akamai, and before that managed the Financial Services & Public Sector portfolio for Akamai in the region.

A veteran in Australias tech sector, James has also previously worked for Computershare and First Data (now Fiserv). James holds a Bachelor of Economics and Commerce Management from Monash University in Melbourne as well as a Diploma in Financial Management from FINSIA.

Akamai recently unveiled Akamai Connected Cloud, a massively distributed edge and cloud platform for cloud computing, security and content delivery that keeps applications and experiences closer and threats farther away.

Akamai will be setting up an enterprise-scale core cloud computing site in Auckland, similar to its core Sydney site, which will further support and solidify local cloud infrastructure. The company will also open a Scrubbing Centre in Auckland aimed at providing on-ground support to Akamais New Zealand customers to help defend against distributed denial of service (DDoS) attacks.

Parimal Pandya, SVP Sales and Managing Director, Asia Pacific & Japan at Akamai Technologies, said: James was the ideal choice to head up Akamais ANZ operations. He has an outstanding track record of forging great customer and partner relationships. With more than two decades experience, James has been instrumental in helping some of Australias largest organisations leverage technological innovation to achieve business outcomes while managing risk. Its a critical time for organisations to build secure, innovative digital experiences for their customers. Our recently announced global Connected Cloud program and the ISO, SOC 2 and HIPAA standards compliance as well as the development of a New Zealand Scrubbing Centre, reflects Akamais focus on the security of our cloud computing services and customer data.

James Richmond, Regional Director ANZ at Akamai Technologies, said: Im looking forward to continuing to drive Akamais relationships and strong growth in the ANZ region. Im excited to take on this role and continue working with the team in ANZ at a time when organisations in this region are both rapidly adopting cloud and deepening their defences against escalating threats to their brand. At Akamai we always push ourselves to continuously improve the way we service our customers, and to ensure they drive increasing value from the trust placed in our capabilities and expertise. Akamais heritage and reputation as a market leader in innovative technologies in cloud, security and content delivery are key to helping organisations run their digital transformation projects. I look forward to working closely with our customers and partners to successfully execute against their technology and business strategies.

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Classic Chess Pie Recipe – The Recipe Critic

This website may contain affiliate links and advertising so that we can provide recipes to you. Read my privacy policy.

This classic Southern dessert is a delicious combination of sweet, tangy, and buttery flavors all wrapped up in a flaky crust. Its custard-like filling has a smooth and creamy texture that will have you hooked. And the best part? Chess pie is super easy to make and only takes 10 minutes of prep!

With the weather being nice and warm, Ive been wanting to break out my favorite summer desserts. I feel like pie is a must-make for any summer barbecue! Channel your inner Southern baker and try out this chess pie, or make a lemon or peach pie from scratch! Lemon chess pie is another great option if you want a little extra flavor.

Chess pie is a dessert that has its roots in the South, particularly in states like Virginia, North Carolina, and Georgia. The exact origin of the name is uncertain, but there are a few theories out there. Some say it comes from the saying just pie. Others believe that it comes from the term cheese pie, as the custardy filling has a similar texture to cheese. No matter what you want to call it, one thing is for sure! This pie is extremely delicious and easy to make.

The filling consists of just a few ingredients sugar, butter, eggs, cornmeal, and vinegar that are mixed together and poured into a pie crust. The result is a sweet and tangy filling that has a lovely golden brown, caramelized outside once its baked. Its the perfect dessert for when youre short on time or dont want to spend hours in the kitchen. Plus, its versatile you can enjoy it on its own, with a dollop of whipped cream, or with a scoop of ice cream. No matter how you choose to serve it, I know youll love its custard-like texture and sweet flavor!

This is a popular dessert recipe because it uses so many simple, pantry staple ingredients. Pick up a refrigerated pie crust from the store, and youll probably have everything else you need ready to go at home! (If youre feeling ambitious, you can also make your own crust! Its a lot easier than youd think.)

Only 10 minutes of prep and then its off to the oven! With how easy chess pie is to make, youll see why its such a popular Southern dessert! Sweet, creamy goodness made with minimal effort.

Chess pie is delicious on its own, but here are a few ways to make it even better! No matter how you customize it (or if you leave it as-is) this dessert is sure to please!

When it comes to storing leftover chess pie, the hardest part is resisting the urge to eat it all in one sitting! But if you manage to save some for later, simply cover it with plastic wrap or aluminum foil and pop it in the fridge.

With potluck season ramping up again, here are a few classic desserts to share with friends and family! You can never go wrong with a sweet homemade pie. Whether youre wanting something fruity, citrusy, or chocolatey, here are a few of my favorite pie recipes to try!

Melt the butter in a saucepan or in the microwave then allow it to cool.

In a small mixing bowl whisk the eggs until blended well and set aside.

In a large mixing bowl add the granulated sugar, cornmeal, flour, and salt. Stir until combined.

Add the milk, vinegar, vanilla, and whisked eggs to the bowl of dry ingredients. Whisk together until incorporated.

Mix in the cooled butter until smooth and combined.

Pour the batter into the prepared crust. Carefully place the pie on a baking sheet and into the preheated oven.

Bake for 45 minutes to 1 hour or the until edges are set. It's normal for the center to wiggle slightly. Cover the pie with foil for the last 10 minutes if the edges of the crust are getting too brown.

Allow the pie to cool for 1 hour before slicing and serving. Dust powdered sugar on top of the pie before serving if you desire!

Cover and store leftover pie in the refrigerator.

Serves: 6

Calories525kcal (26%)Carbohydrates68g (23%)Protein6g (12%)Fat26g (40%)Saturated Fat13g (65%)Polyunsaturated Fat2gMonounsaturated Fat9gTrans Fat1gCholesterol151mg (50%)Sodium381mg (16%)Potassium101mg (3%)Fiber1g (4%)Sugar51g (57%)Vitamin A641IU (13%)Vitamin C0.02mgCalcium39mg (4%)Iron1mg (6%)

All nutritional information is based on third party calculations and is only an estimate. Each recipe and nutritional value will vary depending on the brands you use, measuring methods and portion sizes per household.

Course Dessert

Cuisine American

Keyword chess pie, chess pie recipe

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Classic Chess Pie Recipe - The Recipe Critic

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News Briefs: Free tutoring, job fair, and PTK chess competition – The Channels

With so much happening around the City College community, The Channels would like to offer a single place for the essential information. Well be compiling a weekly list of current and upcoming events to keep readers up to date on campus news.

City Colleges math lab is offering free tutoring, finals and test preparation, homework help, and ample study space in room 102 of the IDC building on West Campus. According to an email sent out by the Math Lab, students are welcome to drop in at any time, with no appointment needed.

The Cartwright Learning Resources Center is offering online and in person computer tutoring and technical support to all City College students. According to an email sent by the CLRC, six computer tutors are available to assist with printing documents, navigating google apps, Microsoft office, pipeline, and canvas. The tutors are available from 9 a.m. to 4 p.m. on Tuesdays, Wednesdays, and Thursdays at the CLRC building on West Campus. They are available virtually from 9 a.m. to 7 p.m. Monday through Thursday at the link provided on the City College CLRC webpage.

The Career Center is hosting a Healthcare Job Fair from 1 p.m. to 2:30 p.m. on the Pergola walkway between Health Technologies and the Student Service Buildings. According to an email sent by the Career Center, students are encouraged to bring their resumes and explore the various healthcare facilities available to apply to, such as the Assisted Health Care of Santa Barbara and the Sansum Medical Clinic.

Phi Theta Kappa is hosting a second chess competition from 5 p.m to 7 p.m on Wednesday, May 10 at the Luria Library on West Campus. According to an email sent out by PTK, free food and drinks will be provided for both players and spectators. Register for the event using the QR code or the link included in the email.

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15-year-old Aldiyar Ansat wins Kazakhstan Chess Cup – inform.kz/en

ASTANA. KAZINFORM 15-year-old Kazakhstani Aldiyar Ansat (FIDE ranking 2317 ) became a winner of the1st stage of the Kazakhstan Chess Cup held from April 22 to 30 in Astana as part of the World Match 2023, Kazinform reports.

As the National Chess Federation informed, the young chess player defeated several famous grandmasters and got 7.5 points.

Armenian grandmaster Shant Sargsyan (2630) finished second and Alexander Moiseenko (2573) from Ukraine took the third place. Aleksey Goganov (2525) who is a member of the FIDE team is fourth, and Daneshvar Bardiya (2540) from Iran is fifth, while Hans Niemann (2706) from the U.S. is sixth.

Fazil Huseynov from Astana won the first place among the chess veterans, Aitkazy Baimurzin from Taraz took second and Tolegen Nukin from Pavlodar is third.

As for womens teams, Alua Nurmanova from Almaty ranks the first. Two weeks ago she demonstrated bright results at the Kazakhstan vs. World Womens Team match. Ayaulym Kaldarova from Shymkent took second, and Amina Kairbekova from Astana occupied the third place.

167 chess players from 16 countries of the world participated in the tournament.

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Trust The Process: The Arizona Cardinals Are Playing Chess While … – Barstool Sports

The Cardinals made a very interesting move on Thursday night by trading down from the 3rd overall pick all the way to #12 and allowing the Texans to move up.

In that deal, the Cardinals moved down nine spots and gave up a 2nd round pick. However, they got back a 1st round pick. But not just any 1st round pick, they got back the Houston Texans 1st round pick..

Their 1st year GM Monti Ossenfort has already shown a propensity for moving both up and down the board.

In fact, he moved back up from #12 to #6 to get their guy in Ohio State OT Paris Johnson Jr.

He did so without giving up any future assets aside from a 2nd round pick. They also had the 33rd pick and ended up flipping that for a future 3rd along with a few swaps this year.

So they've loaded up on future assets and their franchise QB, Kyler Murray is hurt. He tore his ACL in December and due back sometime mid-season. But in making a way too early 2024 NFL Mock Draft, I noticed that the two biggest longshots to win the Super Bowl this coming season are the Cardinals and the Texans. So in my mock they will be picking #1 and #2. But remember, Arizona own's Houston's first selection next year. The Texans will pick in the 1st round, but it'll be Cleveland's pick from the Deshaun Watson trade. Monti Ossenfort and the Cardinals got Houston's own pick and that is a huge deal because they already have their Quarterback in Kyler Murray who they just signed to a big extension before he got hurt.

Next year's draft is projected at this point to be headlined by two Quarterbacks: USC's Caleb Williams and North Carolina's Drake May. That can all certainly change, but right now, we're looking at the Cardinals potentially having BOTH the top two picks in the 2024 NFL Draft and if Quarterbacks are still headlining the Draft next April, likely to trade both picks. As a reminder, this is what the 1st pick fetched this year:

The last time Quarterbacks went #1 and #2 and the 2nd overall pick was traded, here's what it fetched.

Based on these scenarios, the Cardinals could move down from #1 and #2 and move down to #8 & #9 and pick up an additional THREE additional 2nd round picks, a 3rd round pick, TWO future 1st round picks, and a good player like D.J. Moore.

Obviously that's a hypothetical, but something like this would be an unreal coup by Ossenfort who has been wildly impressive in his first year running a Draft. Rebuilding in the NFL is not typically a quick process and while I do think the Cardinals will be stink this year, buy all the Cardinals stock you can now because they are firmly on the way back up.

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The circle of life works for AI, too – BusinessLine

Chat GPT has almost colonised discussions on Artificial Intelligence. High school children are excited about getting their homework done by ChatGPT. !

But such excitement with new technology is not new. Just a few years ago, there was excitement about AI competing against AlphaGO, or the American quiz television show Jeopardy, or chess with Deep Blue. AI was seen as an ultimate technology that will improve human life and reduce suffering soon.

But as with any other journey, the AI path has also been full of challenges and failures. Many tech companies have seen initiatives fail IBMs Watson Health, Teslas Autopilot crash, and many more.

Organisations have made failure itself a preferred way of working. Fail Fast is the way forward for AI. This ensures that with or without success in AI, financial success and continuity are assured. The list of companies that are working on AI technologies is increasing by the day, so are the technologies that are being developed.

The focus on fail fast innovation has helped advance technologies. As the well-known author Yuval Harari wrote: Humans will learn the working on the brain but will still not understand the mind. The AI mind is still unknown, given the multiple direction in which the AI progress is happening; convergence is challenging, there is chaos all around. There is increasing acceptance of multiple views of truth.

While humans will continue to make progress in understanding the workings of the brain, it is possible that a complete understanding of the mind and body may remain elusive.

The Hindu scriptures provide some guidance. The Circle of life has worked for humans, and it will continue for AI, which will see innovation, preservation of a few innovations, and a few failures. However, the cycle will continue perpetually.

The moksha of AI development needs good karma powered with Peacefulness, self-control, austerity, purity, tolerance, honesty, wisdom, knowledge, and religiousness these are the qualities by which the brahmanas work. (Bhagwad Gita 18.42).

A few decades down the line, when the full human DNA is uncovered, when theres super-computing power in every mobile, AI is able to recreate mind and body, etc., new challenges will come up.

The danger is that if we invest too much in developing AI and too little in developing human consciousness, the very sophisticated AI of computers might only serve to empower the natural stupidity of humans. The way froward is to control the chaos in human mind and not imitate it with AI.

The writer is Deputy General Manager - Industrial AI Hitachi. Views are personal

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AI At War – War On The Rocks

Paul Scharre, Four Battlegrounds: Power in the Age of Artificial Intelligence(New York: W. W. Norton & Company, 2023).

It is widely believed that the world is on the brink of another military revolution. AI is about to transform the character of warfare, as gunpowder, tanks, aircraft, and the atomic bomb have in previous eras. Today, states are actively seeking to harness the power of AI for military advantage. China, for instance, has announced its intention to become the world leader in AI by 2030. Its New General AI Plan proclaimed that: AI is a strategic technology that will lead the future. Similarly, Russian President Vladimir Putin declared: Whoever becomes the leader in this sphere will become ruler of the world. In response to the challenge posed by China and Russia, the United States has committed to a third offset strategy. It will invest heavily in AI, autonomy, and robotics to sustain its advantage in defense.

In light of these dramatic developments, military commentators have become deeply interested by the question of the military application of AI. For instance, in a recent monograph, Ben Buchanan and Andrew Imrie have claimed that AI is the new fire. Autonomous weapons controlled by AI not by humans will become increasingly accurate, rapid, and lethal. They represent the future of war. Many other scholars and experts concur with them. For instance, Stuart Russell, the eminent computer scientist and AI pioneer, dedicated one of his 2020 BBC Reith Lectures to the military potential of AI. He professed the rise of slaughterbots and killer robots. He described a scenario in which a lethal quad-copter the size of a jar could be armed with an explosive device: Anti-personnel mines could wipe out all the males in a city between 16 and 60 or all the Jewish citizens in Israel and unlike nuclear weapons, it would leave the city infrastructure. Russell concluded: There will be 8 million people wondering why you cant give them protection against being hunted down and killed by robots. Many other scholars, including Christian Brose, Ken Payne, John Arquilla, David Hambling, and John Antal, share Russells belief that with the development of second-generation AI, lethal autonomous weapons such as killer drone swarms may be imminent.

Military revolutions have often been less radical than initially presumed by their advocates. The revolution of military affairs of the 1990s was certainly important in opening up new operational possibilities, but it did not eliminate uncertainty. Similarly, some of the debate about lethal autonomy and AI has been hyperbolic. It has misrepresented how AI currently works, and what its potential effects on military operations might, therefore, be in any conceivable future. Although remote and autonomous systems are becoming increasingly important, there is little chance of autonomous drone swarms substituting troops on the battlefield, or supercomputers replacing human commanders. AI became a major research program in the 1950s. At that time, it operated on the basis of symbolic logic programmers coded input for AI to process. This system was known as good old fashioned artificial intelligence. AI made some progress, but because it was based on the manipulation of assigned symbols, its utility was very limited, especially in the real world. An AI winter, therefore, closed in from the late 1970s and throughout the 1980s.

Since the late 1990s, second-generation AI has produced some remarkable breakthroughs on the basis of big data, massive computing power, and algorithms. There were three seminal events. On May 11 1997, IBMs Deep Blue beat Garry Kasparov, the world chess champion. In 2011, IBMs Watson won Jeopardy!. Even more remarkably, in March 2016, AlphaGo beat the world champion Go player, Lee Seedol, 4-1.

Deep Blue, Watson, and AlphaGo were important waypoints on an extraordinary trajectory. Within two decades, AI had gone from disappointment and failure to unimagined triumphs. However, it is important recognize what second-generation AI can and cannot do. It has been developed around neural networks. Machine learning programs process huge amounts of data through their networks, re-calibrating the weight that a program assigns to particular pieces of data, until, finally, it generates coherent answers. The system is probabilistic and inductive. Programs and algorithms know nothing. They are unaware of the real world and, in a human sense, unaware of the meaning of the data they process. Using algorithms, machine learning AI simply builds models of statistical probability from massively reiterated trials. In this way, second-generation AI identifies multiple correlations in the data. As long as it has enough data, probabilistic induction has become a powerful predictive tool. Yet, AI does not recognize causation or intention. Peter Thiel, a leading Silicon Valley tech entrepreneur, has articulated AIs limitations eloquently: Forget science-fiction fantasy, what is powerful about actually existing AI is its application to relatively mundane tasks like computer vision and data analysis. Consequently, although machine learning is far superior to a human at limited, bounded, mathematizable tasks, it is very brittle. Utterly dependent on the data on which it has been trained, even the tiniest change in the actual environment or the data renders it useless.

The brittleness of data-based inductive machine learning is very significant to the prospect of an AI military revolution. Proponents or opponents of AI imply that, in the near future, it will be relatively easy for autonomous drones to fly through, identify, and engage targets in an urban areas, for instance. After all, autonomous drone swarms have already been demonstrated in admittedly contrived and controlled environments. However, in reality, it will be very hard to train a drone to operate autonomously for combat in land warfare. The environment is dynamic and complex, especially in towns and cities civilians and soldiers are intermixed. There do not seem to be any obvious data on which to train a drone swarm reliably the situation is too fluid. Similarly, it is not easy to see how an algorithm could make command decisions. Command decisions require the interpretation of heterogeneous information, balancing political and military factors, all of which require judgement. In a recent article, Avi Goldfarb and Jon R. Lindsay have argued that data and AI are best for simple decisions with perfect data. Almost by definition, military command decisions involve complexity and uncertainty. It is notable that, while Google and Amazon are the pre-eminent data companies, their managers do not envisage a day when an algorithm will make their strategic and operational decisions for them. Data, processed rapidly with algorithms, helps their executives to understand the market to a depth and fidelity that their competitors cannot match. Information advantage has propelled them to dominance. However, machine learning has not superseded the executive function.

It is, therefore, very unlikely that lethal autonomous drones or killer robots enabled by AI will take over the battlefield in the near future. It is also improbable that commanders will be replaced by computers or supercomputers. However, this does not mean that AI, data, and machine learning are not crucial to contemporary and future military operations. They are. However, the function of AI and data is not primarily lethality they is not the new fire, as some claim. Data digitized information stored in cyberspace are crucial because it provides states with a wider, deeper, and more faithful understanding of themselves and their competitors. When massive data sets are processed effectively by AI, this will allow military commanders to perceive the battlespace to a hitherto unachievable depth, speed and resolution. Data and AI are also crucial for cyber operations and informational campaigns. They have become indispensable for defense and attack. AI and data are not so much the new fire as a new form of digitized military intelligence, therefore, exploiting cyberspace as a vast new resource for information. AI is a revolutionary way of seeing the other side of the hill. Data and AI are a maybe even the critical intelligence function for contemporary warfare.

Paul Scharre, the well-known military commentator, once argued that AI would inevitably lead to lethal autonomy. In 2019, he published his best-selling book, Army of None, which plotted the rise of remote and autonomous weapon systems. There, Scharre proposed that AI was about to revolutionize warfare: In future wars, machines may make life and death decisions. Even if the potential of AI still enthuses him, he has now substantially changed his mind. Scharres new book, Four Battlegrounds, published in February 2023, represents a profound revision of his original argument. In it, he retreats from the cataclysmic picture that he painted in Army of None. If Army of None were an essay in science fiction, Four Battlegrounds is a work of political economy. It addresses the concrete issues of great-power competition and the industrial strategies and regulatory systems that underpin it. The book describes the implications of digitized intelligence for military competition. Scharre analyses the regulatory environment required to harness the power of data. He plausibly claims that superiority in data, and the AI to process it, will be militarily decisive in the superpower rivalry between United States and China. Data will afford a major intelligence advantage. For Scharre, there are four critical resources that will determine who wins this intelligence race: Nations that lead in these four battlegrounds data, compute, talent, and institutions [tech companies] will have a major advantage in AI power. He argues that the United States and China are locked into a mortal struggle for these four resources. Both China and the United States are now fully aware that whoever gains the edge in AI will, therefore, be significantly advantaged politically, economically, and, crucially, militarily. They will know more than their adversary. They will be more efficient in the application of military force. They will dominate the information and cyber spaces. They will be more lethal.

Four Battlegrounds plots this emerging competition for data and AI between China and the United States. It lays out recent developments and assesses the relative strengths of both nations. China is still behind the United States in several areas. The United States has the leading talent, and is ahead in terms of research and technology: China is a backwater in chip production. However, Scharre warns against U.S. complacency. Indeed, the book is animated by the fear that the United States will fall behind in the data race. Scharre, therefore, highlights Chinas advantages and its rapid advances. With 900 million internet users already, China has far more data than the United States. Some parts of the economy, such as ride-hailing, are far more digitized than in the United States. WeChat, for instance, has no American parallel. Many Chinese apps are superior to U.S. ones. In addition, the Chinese state is also uninhibited by legal constraints or by civil concerns about privacy. The Chinese Communist Party actively monitors the digital profiles of its citizens it harvests their data and logs their activities. In cities, it employs facial recognition technology to identify individuals.

State control has benefited Chinese tech companies: The CCPs massive investment in intelligence surveillance and social control boosted Chinese AI companies and tied them close to government. The synergies between government and tech in China are close. China also has significant regulatory advantages over the United States. The Chinese Communist Party has underwritten tech giants like Baidu and Alibaba: Chinese investment in technology is paying dividends. Scharre concludes: China is not just forging a new model of digital authoritarianism but is actively exporting it.

How will the U.S. government oppose Chinas bid for data and AI dominance? Here Four Battlefields is very interesting and it contrasts markedly with Scharres speculations in Army of None. In order for the U.S. government to be able to harness the military potential of data, there needs to be a major regulatory change. The armed forces need to form deep partnerships with the tech sector. They will have to look beyond traditional defense contractors and engage in start-ups. This is not easy. Scharre documents the challenging regulatory environment in the United States in comparison with China: in the U.S., the big tech corporations Amazon, Apple, Meta (formerly Facebook) and Google are independent centers of power, often at odds with government on specific issues. Indeed, Scharre discusses the notorious protest at Google in 2017, when employees refused to work on the Department of Defenses Project Maven contract. Skepticism about military applications of AI remain in some parts of the U.S. tech sector.

American tech companies may have been reluctant to work with the armed forces but the Department of Defense has not helped. It has unwittingly obstructed military partnerships with the tech sector. The Department of Defense has always had a close relationship with the defense industry. For instance, in 1961, President Dwight D. Eisenhower warned about the threat that the military-industrial complex posed to democracy. The Department of Defense has developed an acquisition and contracting process that has been primarily designed for the procurement of exquisite platforms: tanks, ships, and aircraft. Lockheed Martin and Northrop Grumman have become adept at delivering weapon systems to discrete Department of Defense specifications. Tech companies do not work like this. As one of Scharres interviewees noted: You dont buy AI like you buy ammunition. Tech companies are not selling a specific capability, like a gun. They are selling data, software, computing power ultimately, they are selling expertise. Algorithms and programs are best developed iteratively in relation to a very specific problem. The full potential of some software or algorithms to a military task may not be immediately obvious even to a tech company. Operating in competitive markets, tech companies, therefore, prefer a more flexible, open-ended contractual system with the Department of Defense they need security and quick financial returns. Tech companies are looking for collaborative engagement, rather than just a contract to build a platform.

The U.S. military and especially the Department of Defense has not always found this novel approach to contracting easy. In the past, the bureaucracy was too sluggish to respond to their needs the acquisition process took seven to 10 years. However, although many tensions exist and the system is far from perfect, Scharre records a transforming regulatory environment. He describes the rise of a new military-tech complex in the United States. Project Maven, of course, exemplifies the process. In 2017, Bob Work issued a now famous memo announcing the Algorithmic Warfare Cross Functional Team Project Maven. Since the emergence of surveillance drones and military satellite during the Global War on Terror, the U.S. military had been inundated with full-motion video feeds. That footage was invaluable. For instance, using Gorgon Stare, a 24-hour aerial surveillance system, the U.S. Air Force had been able to plot back from a car bomb explosion in Kabul in 2019, which killed 126 civilians, to find the location of safe houses used to execute the attack. Yet, the process was very slow for humans. Consequently, the Air Force started to experiment with computer vision algorithms to sift through their full-motion videos. Project Maven sought to scale up the Air Forces successes. It required a new contracting environment, though. Instead of a long acquisition process, Work introduced 90-day sprints. Companies had three months to show their utility. If they made progress, their contracts were extended if not, they were out. At the same time, Work de-classified drone footage in order that Project Maven could train its algorithms. By July 2017, Project Maven had an initial operating system, able to detect 38 different classes of object. By the end of the year, it was deployed on operations against ISIS: the tool was relatively simple, and identified and tracked people, vehicles, and other objects in video from ScanEagle drones used by special operators.

Since Project Maven, the Department of Defense has introduced some other initiatives to catalyze military-tech partnerships. The Defense Innovation Unit has accelerated relations between the department and companies in Silicon Valley, offering contracts in 26 days rather than in months or years. In its first five years, the Defense Innovation Unit issued contracts to 120 non-traditional companies. Under Lt. Gen. Jack Shanahan, the Joint Artificial Intelligence Centre has played an important role in advancing the partnership between the armed forces and tech companies for human assistance and disaster relief operations, developing software to map wildfires and post-disaster assessments whether these examples in Scharres text imply more military applications is unclear. After early difficulties, the Joint Enterprise Defense Infrastructure, created by Gen. James Mattis when he was secretary of defense, has reformed the acquisition system for tech. For instance, in 2021, the Department of Defense helped Anduril develop an AI-based counter-drone system with nearly $100 million.

Four Battlegrounds is an excellent and informative addition to the current literature on AI and warfare. It complements the recently published works of Lindsay, Goldfarb, Benjamin Jensen, Christopher Whyte, and Scott Cuomo. The central message of this literature is clear. Data and AI are and will be very important for the armed forces. However, data and AI will not radically transform combat itself humans will still overwhelmingly operate the lethal weapon systems, including remote ones, which kill people, as the savage war in Ukraine shows. The situation in combat is complex and confusing. Human judgement, skill, and cunning are required to employ weapons to their greatest effect there. However, any military force that wants to prevail on the battlefields of the future will need to harness the potential of big data it will have to master digitized information flooding through the battlespace. Humans simply do not have the capacity to do this. Headquarters will, therefore, need algorithms and software to process that data. They will need close partnerships with tech companies to create these systems and data scientists, engineers, and programmers in operational command posts themselves to make them work. If the armed forces are able to do this, data will allow them to see across the depth and breadth of the battlespace. It will not solve the problems of military operations fog and friction will persist. However, empowered by data, commanders might be able to employ their forces more effectively and efficiently. Data will enhance the lethality of the armed forces and their human combat teams. The Russo-Ukrainian War already gives a pre-emptive insight into the advantages that data-centric military operations afford over an opponent still operating in analogue. Scharres book is a call to ensure that the fate of the Russian army in Ukraine does not befall the United States when its next war comes.

Anthony King is the Chair of War Studies at the University of Warwick. His latest book, Urban Warfare in the Twenty-First Century, was published by Polity Press in July 2021. He currently holds a Leverhulme Major Research Fellowship and is researching into AI and urban operations. He is planning to write a book on this topic in 2024.

Image: Department of Defense

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Millions of dollars to go towards mechanical engineering, psychology and more at Purdue – Journal & Courier

WEST LAFAYETTE, Ind. Purdue University recently received a $10 million commitment from alumni William and Barbara Rakosnik.

William graduated in 1969 with a degree in mechanical engineering, while Barbara graduated in 1970 in health and human sciences. It was announced Wednesday that the couple have committed more than $10 million to Purdue University in support of the School of Mechanical Engineering,the Department of Psychological Sciences and University Residences, according to a release.

According to Purdue, this commitment will support graduate students and needed services and programs in these fields of study. The commitment also includes $125,000 to establish endowments and a $10 million trust fund that will "provide continued support," according to the release.

This generous gift from the Rakosniks is very important because it touches on several areas and focuses on students and their everyday experiences, Purdue President Mung Chiang said in the news release. Anybody who has been on a college campus knows that its the students, including graduate students, who bring a university to life. The impact of this gift will be felt by many of our students for decades to come.

The $125,000 will be distributed as follows:

According to the release, "regular trust income and eventual trust distribution will proceed along similar lines:"

The graduate school support funds will provide recipients primarily with scholarship, fellowship and assistantship support, Purdue stated. Additional support will to towards research funding and expenses for conferences and other learning opportunities.

"The purpose of the Legacy Experience Fund is to allow flexibility to support areas of strategic importance as determined by the director of University Residences," the release stated.

William commented on the commitment in the release.

"Outstanding faculty and a world-class education will always draw students to Purdue, but its the amazing young people you interact with that make life at the university so exceptional, William said in the release. What were talking about is the undergraduate and graduate students you work with and learn from on a daily basis. All of this contributes to the development of a well-rounded student. We want to make sure this tradition continues and we hope other alumni look back at their time on campus, remember how formative those years were and provide their own support.

Previous contributions from William and Barbara have included support for academic scholarships, Purdue Musical Organizations, Purdue Bands & Orchestra and Student Life, the release stated.

Now retired, William worked for over 30 years in production control and distribution management at IBM. Barbara, also retired, worked in architecture and later started her own embroidery business, Periwinkle Promises. They also serve as active volunteers in their community, according to the release.

Bill and I really enjoyed living the whole campus experience, Barbara said in the release. We were both resident assistants who were active in student organizations, and I worked on the yearbook. After a very brief encounter on campus, a few phone calls and four years of dating, we were married at the University Lutheran Church, right on campus. So, to say we have fond memories doesnt even begin to cover it. When we give back, we have the whole student in mind. We feel strongly that every Purdue student deserves the opportunity to grow and blossom.

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Millions of dollars to go towards mechanical engineering, psychology and more at Purdue - Journal & Courier

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