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Soft2Bet: Addressing Privacy Concerns of Using AI in Business

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Nowadays, artificial intelligence is no longer just an interesting novelty from the world of technology, it is firmly embedded in our daily lives. Just think about it: chatbots answer any of your questions around the clock, and smart algorithms literally read your mind, selecting content that perfectly suits your tastes and preferences. But here comes a rather important question: how permissible is it to allow AI to learn from copyrighted information? Agreed, the question is far from simple!

This ethical dilemma makes us wonder where the fine line between innovation and respect for intellectual property lies. After all, companies supply artificial intelligence with a huge amount of data every day, among which may well be copyrighted materials. And while disputes and legal nuances have not gone away, many businesses are already actively moving forward by integrating AI into their processes.

And here, of course, Soft2Bet is a great example! The company is actively applying artificial intelligence to create the most personalized user experience and improve customer interaction. This approach not only speeds up internal processes, but also opens up completely new opportunities for optimization and innovation. Are you ready to trust smart algorithms for personalization and customer service?

Modern AI Approaches

Imagine using artificial intelligence to optimize literally every business function, reduce costs, and open the door to a host of innovations. Sounds exciting, doesn’t it? By the way, according to McKinsey, 78% of companies surveyed already use AI in at least one business process, the numbers speak for themselves and show how deeply AI is penetrating our everyday lives. However, it’s no surprise that AI is taking over more and more areas of business!

But what does it look like in practice? Here are some clear and vivid examples:

  • Content and media: Streaming platforms, news sites and social networks everywhere are using AI algorithms to make personalized recommendations, thereby improving user experience and driving increased subscriptions and sales. For example, have you ever wondered why Spotify so accurately picks a new album similar to your favorite music? It’s simple: it’s the work of smart algorithms based on your preferences! In turn, companies like Soft2Bet are using AI to create content that not only hooks audiences, but keeps their attention.
  • Retail and e-commerce: Online retailers have learned to literally “guess” what customers want, thanks to AI. When your favorite online store offers you a product that perfectly matches your interests, it’s no longer magic, but the result of intelligent systems processing huge amounts of data about your behavior.
  • Customer service: AI-powered chatbots are seriously offloading the work of call centers. They answer the most common questions, allowing employees to focus on more complex and important tasks. This approach saves time, reduces stress and dramatically improves customer interactions, positively impacting brand reputation.

These examples clearly demonstrate that artificial intelligence has already become a key element of a successful business. The question is no longer whether or not to use it, the question is now another: how to do it as efficiently and ethically as possible? After all, technology does not stand still, and each innovation opens up new and new opportunities.

Soft2Bet, for example, is actively implementing artificial intelligence to create the most personalized user experience possible, strengthening its market leadership. Now more than ever it is important to understand how exactly to apply such innovative tools to achieve real results and create a sustainable advantage over competitors. You must agree that the future has already arrived, all that’s left is to capitalize on its opportunities!

Ethical Concerns

There is no doubt that artificial intelligence is opening up new horizons for business and accelerating innovation, but behind every technological breakthrough there are also important ethical questions. After all, how often do we wonder: who authorizes AI to learn from copyrighted content? Today, algorithms train on books, web pages, blogs, videos, and a host of other sources – and much of this information is protected by law. Isn’t that alarming?

But that’s not all. The question remains: how exactly will AI use this data? If companies use AI to analyze customer behavior or preferences without their explicit consent, aren’t they risking a privacy breach? Furthermore, who is responsible for the data, and what might happen to it if it falls into the wrong hands?

Gradually, as regulators and governments become accustomed to the widespread use of AI, we are seeing stricter regulations to control the collection, processing and analysis of personal information. Some companies are already committing to implementing ethical practices around AI, becoming more transparent about how they use data. Soft2Bet, for example, is committed to combining innovation with a responsible approach, protecting its customers’ information and adhering to high ethical standards.

How Soft2Bet Cares for Ethics

Soft2Bet successfully integrates AI into its processes, providing a personalized experience that really works. Not only does the company strictly comply with GDPR requirements by allowing users to choose what data to collect, but it also analyzes user behavior in real-time to instantly adjust its offerings. Isn’t it great when every interaction is turned into a unique experience and recommendations are customized to personal preferences and interaction history?

All that said, one-size-fits-all approaches are a thing of the past. Thanks to AI, businesses can process massive amounts of data and turn it into accurate predictions, improving efficiency and customer satisfaction. According to the “Generative AI Market Report 2025-2030” report from IoT Analytics, the generative AI market will exceed $25.6 billion in 2024, clearly demonstrating the rapid growth of this technology. And a McKinsey study shows that 71% of respondents said their organizations regularly use AI in at least one business function, up significantly from previous years. Don’t you think this is the kind of innovation that makes businesses more agile and adaptive? Companies that can not only keep up with changing norms, but also proactively adopt AI to personalize services, are guaranteed to be leaders in the digital age.



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Why Trusted Data Is Key to Transformational AI-Driven CX

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From boardrooms to shop floors, companies are moving quickly to embed AI into their operations. The goals are clear: drive efficiencies, reduce costs, and deliver smarter, faster, more personal customer experiences.

Fuel profitable growth and turn every customer interaction into a seamless, engaging experience with SAP

This makes a lot of sense given that today 89% of businesses are expected to compete primarily on CX. However, the results aren’t always matching the hype.

A recent Gartner study found that while enterprise AI adoption is rising, real impact is often elusive. The reason? Many businesses are still operating with disconnected systems and disjointed data. Without a strong foundation, AI can’t deliver what it promises.

Siloed systems aren’t just a technology problem—they’re a business barrier.

The CX Disconnect: When Fragmentation Undermines Intelligence

Too many organizations still rely on a patchwork of tools for customer experience, supply chain, finance, and HR. While these point solutions solve individual challenges, they create friction and disconnect across the business. In an AI-powered world, friction is the enemy.

AI thrives on complete, clean, and contextualized data to function effectively. If your marketing, sales, service, and fulfillment teams cannot see the same data in real time, or trust that it’s accurate, your AI strategy will not be set up to succeed.

With the best intentions to embrace AI in an effort to achieve incredible efficiency, instead, customers will still lose valuable time on manual integration, inconsistent customer experiences, and AI outputs that are only as good as the (fragmented) data feeding them. The delightful experience aspirations turn into trust lost and frustration all around.

Modular Innovation, Meet Enterprise Intelligence 

SAP has reimagined enterprise management with SAP Business Suite, representing a fundamental shift from traditional ERP systems to a modular, composable architecture that integrates AI, data, and applications into a unified platform.  

Grounded in harmonized, semantically rich data, this architecture allows businesses to make sense of data that has traditionally been scattered across systems and trapped in silos, so AI has the comprehensive data it needs to quickly generate meaningful insights.

SAP Business Data Cloud (SAP BDC) with native integration of SAP Databricks, serves as a data backbone for business AI. It seamlessly connects all SAP data and third-party data and provides integrated governance to enable real-time AI-driven decision making.  

Companies do not lose precious time locating and preparing data for AI. AI systems work on trusted, contextualized data, not just generic data. This produces accurate, reliable, and actionable AI recommendations that enable organizations to scale AI innovation rapidly across business domains. 

SAP BDC is the foundation for Joule, SAP’s AI copilot that acts as an intelligent orchestrator across the entire business suite. SAP BDC ensures that Joule has structured business context for natural language processing and that its outputs are accurate so that Joule can provide always-on assistance to break down silos between business operations. 

For example, when a customer service or sales representative handles a complex order issue, Joule can: 

  • Check real-time supply chain constraints
  • Respond to RFPs faster
  • Personalize the response by pulling in relevant customer history from CRM systems
  • Speed response with automated case routing and research

The results are faster resolutions, happier customers, empowered employees, and incredible business outcomes with less effort and overhead.

CX + AI + ERP = Real Results

Integrating CX AI with core ERP systems enables end-to-end process optimization that was previously impossible with fragmented systems. When CX systems connect natively to back-office systems, organizations gain: 

  • Real-time personalization powered by operational data
  • Intelligent workflows that prioritize high-value customers
  • Predictive insights that help teams act before issues arise

The numbers speak for themselves. According to an Enterprise Strategy Group report, customers using this approach reported these benefits:

  • Up to 60% reduction in the number of issues service and support teams deal with due to fewer manual errors, automated self-service support functions, automated self-service, and AI chatbots
  • 25% to 50% improvement in time to resolution for issues that did require service or support resources
  • 25% to 70% improvement in productivity of digital marketing and customer operations teams
  • 50% to 90% improvements in sales team productivity by offloading smaller transactional sales, faster quote generation, and streamlined order management
  • 20% to 40% increase in productivity of business operations due to less time spent on invoices, payments, shipments, and returns and more informed decision-making

This is not just incremental change; it’s enterprise transformation, driven by customer needs and powered by AI.

The Future of Intelligent Enterprise Operations 

Embedded CX AI within a composable business suite represents a bright future that takes the possibility of AI and makes it a reality. 

  • Businesses can seamlessly orchestrate intelligence across all functions, delivering experiences that feel effortless to customers while optimizing operations behind the scenes. 
  • Artificial intelligence won’t just automate individual tasks, but also orchestrate entire business ecosystems to deliver superior outcomes.  
  • Maintaining enterprise-grade reliability and enabling modular innovation will allow organizations to adapt to changing market conditions while creating competitive advantages. 

With the rise of AI, businesses face a pivotal moment in time. Taking advantage of all that technology has to offer demands more than point solutions and departmental optimizations; it requires unified platforms, complete clean underlying data, and a clear unified strategy.


Jessica Keehn is chief marketing officer of SAP Customer Experience.

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AI Stocks to Watch, According to Fund Manager Crushing the S&P 500

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Before his portfolio management days, Denny Fish worked as a sales manager at Oracle. He saw the incredible demand for its software products as the dot-com boom flourished, an experience that would later inform his mindset as an investor: What was the next revolutionary idea he could get ahead of?

“I watched the internet boom, I had a front row seat because I was at Oracle and we were in the eye of the storm,” Fish said. “So it shaped my investment philosophy of, ‘Wow, always be looking for that big idea.'”

He continued: “Because the big idea is gonna express itself in a way that nobody can appreciate over multiple years and when you get behind that big idea, don’t let anybody shake you out of it because that’s what’s called a power law in technology investing.”

Two decades later, Fish was perfectly positioned for the AI boom. As a co-manager of the Janus Henderson Global Technology and Innovation Fund (JAGTX), his top holdings are a who’s who in the AI ecosystem: Nvidia, Microsoft, Taiwan Semiconductor, and Broadcom. Those four names alone, all of which he’s held for more than a year and a half, make up 42% of JAGTX.

The impressive lineup has led to a banner few years for Fish. Since the October 2022 lows, his fund is up 136%, crushing the S&P 500’s 81% surge.

Today, Fish still thinks AI is the big idea to get behind. But when asked which stocks he’s most bullish on right now, three out of the four were companies outside his top six holdings in the 25-stock fund.

4 stocks Fish likes right now

The first firm Fish listed — and the one that is among his largest holdings — is Taiwan Semiconductor, as chip demand remains uber-strong. It’s the fund’s third-largest holding at 9.49%.

“If you’re a Broadcom or if you’re Nvidia, there’s only one place you want to go to get your chips manufactured, and that’s TSMC given their process, know-how, and the lead that they’ve created,” he said.

Next, he said Cadence (CDNS), an electronic design automation firm, is well-positioned for continued AI hardware demand. The stock is the fund’s eighth-biggest holding at 2.47%.

“It’s a global duopoly,” he said of Cadence and its competitor, Synopsis. “They have dominant market positions, incredible returns on capital, and there are businesses that you can’t move forward with chip design without one of those two companies.”

Third, Fish is bullish on KLA (KLAC), which produces process control systems for semiconductor chips. The firm “has a very dominant position globally, in that swim lane for, for semiconductor capital equipment,” Fish said.

At 1.88%, it’s JAGTX’s thirteenth-largest holding.

Finally, Fish mentioned Mercado Libre (MELI), a Latin-American e-commerce platform with a fintech business that offers digital wallets, lending, payment solutions, and money transfers. Fish said he’s impressed with the company’s use of AI.

“They’re doing really unique things with AI through their entire portfolio to improve the customer experience and also improve their underwriting and their fintech business,” he said.

Mercado Libre is the fund’s seventh-largest holding at a 2.64% weighting.





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Oracle’s sudden AI stardom is giving 1999 energy

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A version of this story appeared in CNN Business’ Nightcap newsletter. To get it in your inbox, sign up for free here.


New York
 — 

Oracle, a large but generally sleepy cloud-computing company, just had an absolutely bonkers day on Wall Street.

The stock (ORCL) shot up more than 40% Wednesday morning, its largest single-day jump ever. It was such big leap that it minted Oracle co-founder Larry Ellison $100 billion in less than hour, making him the world’s richest person and bumping Elon Musk to second place.

The catalyst wasn’t a flashy product rollout or a surprise earnings beat — in fact, Oracle’s quarterly revenue and profit came in below Wall Street’s expectations Tuesday evening.

Instead, the fire came from Oracle’s outlook for the next few years, which, if it pans out, would cement the company as a power player in artificial intelligence. That’s a big “if,” though — especially given that the bulk of Oracle’s rosy outlook hinges on revenue from one major customer, the unprofitable OpenAI, according to the Wall Street Journal.

Oracle’s outlook is “so exuberant that if we’d gotten this sort of prediction from a less established company it might have been shrugged off as either a lie or a misplaced digit,” Steve Sosnick, chief strategist at Interactive Brokers, told me.

Here are the key things powering Oracle’s stock at a clip it hasn’t experienced since the late-90s dot-com-bubble era, when it rose nearly 600% in the span of a year before falling back to earth by 2022:


  • Oracle’s CEO, Safra Catz, said the company’s cloud infrastructure revenue would grow 77% to $18 billion by the end of May 2026. But that’s not all: It projects that revenue to hit $144 billion by 2030.

  • Catz said Oracle had signed four multi-billion-dollar contracts with three different customers, giving the company $455 billion in “outstanding contract revenue” that it expects to collect on. That metric is up 359% from last year.

Oracle, which sells database software, has somewhat quietly ingratiated itself to investors in the AI gold rush this year by securing deals with AI companies hungry for computing capacity. (If semiconductor giant Nvidia (NVDA) is the “picks and shovels” play of the current frenzy, think of Oracle as the Levi Strauss play — it’s not mining the gold, just providing durable trousers.) And now it’s making its debut as a force to be reckoned with against rival cloud-storage providers like Google, Amazon and Microsoft.

If Oracle’s head-spinning projections seem too good to be true, well, that’s all part of the fun-house mirror effect of the generative AI bubble (yes, I said “bubble”). Because for any of Oracle’s future projections to make sense, its AI customers, including OpenAI, have to make, like, a lot of money — something the ChatGPT maker has shown no clear path to doing anytime soon. (The Information reported last week that OpenAI’s projected cash burn this year through 2029 will hit $115 billion — about $80 billion higher than the company previously expected.)

Like other big tech names, Oracle is betting much of its future on the promise that demand for computing capacity will keep going up as generative AI ushers in some kind of as-yet-undefined revolution. So tech companies are spending hundreds of billions of dollars to build out the data centers — giant, energy-sucking buildings full of computer servers — to ensure the US has the technical infrastructure to deliver all of the AI magic.

That gamble on infrastructure is so massive it actually eclipsed consumer spending this year as the main driver of GDP growth, according to Renaissance Macro Research.

“This data center buildout continues to be a major support to the US economy… so we of course hope that Larry Ellison is right and that this massive buildout is sustainable,” Peter Boockvar, chief investment officer of One Point BFG Wealth Partners, said in a note Wednesday.

But Boockvar also sounded a note of caution: “While Oracle just knocked the cover off the ball, when I see one day market cap increases of such epic proportions, I can’t not think of what I witnessed in 1999.”

(Ahem, 1999 being the start of the dot-com crash.)

Oracle’s capital expenditures are “truly extraordinary,” at $35 billion for this fiscal year, which is about 52% of revenue, Boockvar notes. In 2024, it was 13% of the company’s revenue. “We’ve never seen such capital intensity from these previously large-free-cash-flow-generating businesses.”

In other words, Oracle is a huge company, and it’s never spent money like this ever before.

The risk here, of course, is that Oracle’s big customer, OpenAI, doesn’t deliver.

Generative AI, the engine of ChatGPT, is one of those rare technologies that manages to get less marketable over time. The more many regular people encounter AI in their lives, the more they come to associate it with “slop” on their Facebook feeds. Chatbots cannot reliably respond to human beings’ queries, and they have a pesky tendency of dragging said humans into delusional, at times deadly, mental spirals.

It isn’t completely useless, to be sure, but AI’s proponents have had an extremely difficult time building an application that’s lived up to their own hype (nor, certainly, has any of it lived up to the lofty valuations propping up American tech companies).

Without a game-changing tech update that either drastically lowers its costs or dramatically boosts its profits, OpenAI may be toast. And that presents a systemic risk to not just Oracle, in particular, but to the tech sector more broadly.

If Oracle can stick the landing, Sosnick said, “then by all means, this rally is well-deserved.”

“Yet you are correct in pointing out the risks inherent in the market’s complete revaluation of Oracle… Not only are Oracle stockholders crucially dependent upon the company meeting its guidance, but the broader market is, too.”





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