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3 Top Artificial Intelligence (AI) ETFs That Are Hiding in Plain Sight

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Picking top artificial intelligence (AI) stocks has been top of mind for growth investors. And while debates about Nvidia versus Advanced Micro Devices, or Intel over Qualcomm, or Amazon compared to Microsoft are certainly worth having, there’s a far simpler way to invest in AI: exchange-traded funds (ETFs).
The Technology Select Sector SPDR ETF (NYSEMKT: XLK), Invesco QQQ ETF (NASDAQ: QQQ), and the iShares Semiconductor ETF (NASDAQ: SOXX) are all worthy foundational holdings for unlocking baseline exposure to AI stocks. Here’s a breakdown of each ETF to help you determine which is best for you.
The perfect ETF for letting winners run
With $65.4 billion in net assets, the Technology Select Sector SPDR is one of the most common, simplest, and least expensive ways to invest in the tech sector.
As of April 4, 40.1% of the fund was in software companies; 26.7% was in semiconductor and semiconductor equipment companies; 21.2% in technology hardware, storage, and peripherals; 5.4% in IT services; 3.8% was allocated in communication equipment companies, and 2.9% in electronic equipment instruments and components companies.
However, a lot of the ETF is concentrated in just a few companies. Microsoft and Apple make up 42.8% of the entire fund, with Nvidia, Broadcom, and AMD dominating the semiconductor allocation with 11.9% of the fund’s total weighting.
The Technology Select Sector SPDR Fund is a bet that today’s top tech companies will also be the future leaders in AI. This has so far been a winning strategy because the tech leaders have the deep pockets, personnel, and innovation pipelines to make mistakes and capitalize on opportunities.
The fund is exposed to smaller, disruptive players taking market share from the current front-runners. It is also vulnerable to an overall valuation correction in the tech sector. The fund’s 39.1 price-to-earnings (P/E) ratio is a considerable premium to the S&P 500’s 28.3 P/E. However, the tech sector has a track record of growing into a lofty multiple.
With just a 0.09% expense ratio, the Technology Select Sector SPDR Fund stands out as a good choice for investors looking for widespread exposure to AI from leading tech companies rather than picking a single winner.
Expanding beyond tech
The Invesco QQQ ETF is massive, with $259.3 billion in net assets. It mirrors the performance of the Nasdaq 100, which consists of the 100 largest companies by market cap in the Nasdaq Composite.
There is some crossover with the Technology Select Sector SPDR Fund. But the key difference is that the Invesco QQQ isn’t limited to the tech sector; it is also less top-heavy in just a few holdings.
For example, Microsoft and Apple are the highest-weighted stocks in this ETF — just like the Technology Select Sector SPDR Fund. But their combined weighing is just 16.3% in the Invesco QQQ.
The Invesco QQQ has less exposure to the tech sector and less emphasis on the semiconductor industry, but it does have far more diversification. The Technology Select Sector SPDR Fund excludes companies like Amazon, Alphabet, Meta Platforms, Tesla, and others because they are in non-tech sectors like consumer discretionary and communications.
A downside of the Invesco QQQ is that it includes a lot of companies that have little to do with AI. The ninth-largest holding in the fund is Costco Wholesale. PepsiCo isn’t far behind as the 12th largest.
This ETF isn’t targeting a special theme; it is simply looking at the largest companies in the Nasdaq Composite no matter the industry. It’s a good starting point if you are looking for diversification and a growth focus, but it might not be well suited for investors who are specifically targeting an AI financial product.
Investing in AI through the semiconductor industry
The iShares Semiconductor ETF is a good fit for investors who want to target AI investment specifically through the lens of chip stocks. The demand for computational power is on the rise due to the needs of complex AI models.
Nvidia is supplying processing power through its data center business. AMD is competing with Nvidia in the GPU market and is making CPUs for AI-enabled PCs.
Taiwan Semiconductor helps manufacture chips for top players like Nvidia, AMD, Broadcom, and Intel.
Broadcom makes networking chips that allow AI components to work together.
The advantage of the iShares Semiconductor ETF is that it is a direct way to invest in this need for more computing power from various markets. The ETF is surprisingly diversified. For example, Nvidia is the largest holding at 8.6%, but the top 10 holdings in the ETF make up 57.4%. With 30 total holdings, that means the bottom 20 make up 42.6% of the fund — which is much more balanced compared to the other ETFs in this article.
The iShares ETF has a 0.35% expense ratio, so it’s higher than 0.2% from the Invesco QQQ and 0.09% from the Technology Select Sector SPDR Fund. But if most of your AI interests are in the chip space, this ETF is one of the best options out there.
Using AI ETFs to your advantage
Each of these ETFs offers unique ways to invest in AI, but it’s important to use ETFs in a way that fits your portfolio’s allocation.
For example, if you are satisfied with your existing positions in Microsoft and Apple, then you probably wouldn’t want to invest in the Technology Select Sector SPDR Fund since over 40 cents of every dollar invested goes into those two stocks.
Understanding the composition of an ETF can help you avoid accidentally overexposing your portfolio to a particular theme or company.
Perhaps the simplest reason to choose an ETF over an individual stock is because you aren’t as familiar with the industry or don’t have high conviction in one name over another. In that case, ETFs do an excellent job of giving you skin in the game through a passive approach.
Should you invest $1,000 in Select Sector SPDR Trust – The Technology Select Sector SPDR Fund right now?
Before you buy stock in Select Sector SPDR Trust – The Technology Select Sector SPDR Fund, consider this:
The Motley Fool Stock Advisor analyst team just identified what they believe are the 10 best stocks for investors to buy now… and Select Sector SPDR Trust – The Technology Select Sector SPDR Fund wasn’t one of them. The 10 stocks that made the cut could produce monster returns in the coming years.
Consider when Nvidia made this list on April 15, 2005… if you invested $1,000 at the time of our recommendation, you’d have $540,321!*
Stock Advisor provides investors with an easy-to-follow blueprint for success, including guidance on building a portfolio, regular updates from analysts, and two new stock picks each month. The Stock Advisor service has more than quadrupled the return of S&P 500 since 2002*.
Source: finance.yahoo.com
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Demystifying the EU AI Act for IT Leaders

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As the EU AI Act approaches its final passage, organizations involved in both developing and deploying AI technologies will face new transparency and risk assessment requirements, although the exact rules are yet to be finalized.
The European Parliament’s mid-March vote to approve the EU AI Act marks a significant milestone as the world’s first major legislation aimed at regulating the use and implementation of artificial intelligence applications.
While the vote does not signify the law’s definitive enactment, it does signal forthcoming regulatory changes that will impact many Chief Information Officers (CIOs) overseeing AI tool usage within their organizations. The legislation will not only affect entities directly engaged in AI development but also those simply utilizing AI technologies. Furthermore, these regulations will extend beyond the EU’s borders, impacting any organization interacting with EU residents.
The journey toward AI legislation has been years in the making, with the EU initially proposing the legislation in April 2021. Despite some advocacy for AI regulation from prominent figures like Elon Musk and Sam Altman, the EU AI Act also faces criticism.
The legislation will impose new obligations on organizations to validate, monitor, and audit the entire AI lifecycle. Kjell Carlsson, head of AI strategy at Domino Data Lab, expresses concern about the potential chilling effect of the law on AI research and adoption due to hefty fines and unclear definitions. However, ignoring the AI revolution to evade regulations is not a viable option, Carlsson emphasizes, as AI adoption is essential for organizational survival and growth.
The EU AI Act covers three main areas:

Banned uses of AI: Prohibitions include AI applications threatening human rights, such as biometric categorization systems based on sensitive physical features. Monitoring of employee or student emotions, social scoring, predictive policing based on personal profiles, and manipulation of human behavior are also banned.
Obligations for high-risk AI systems: Organizations utilizing high-risk AI tools must conduct risk assessments, mitigate risks, maintain use logs, ensure transparency, and provide human oversight. Examples of high-risk systems include those used in critical infrastructure, education, employment decisions, healthcare, and banking.
Transparency requirements: General-purpose AI systems must comply with transparency standards, including publishing detailed training data summaries. Additionally, deepfakes must be clearly labeled.

However, some challenges lie ahead, particularly regarding compliance with transparency rules and the impending regulations’ details. Organizations may struggle to meet transparency requirements, especially if they lack extensive documentation or robust data management practices. While the law isn’t retroactive, it will apply to existing AI systems, necessitating documentation of processes and data use.
EU regulators have up to 18 months from the law’s final passage to finalize specific definitions and rules, presenting additional uncertainties and challenges for compliance. The legislation’s focus on AI system effects rather than the systems themselves could pose difficulties given AI’s rapid evolution and unpredictability. As such, continued regulatory input and guidance will be essential for navigating the complexities of AI governance effectively.
Source: cio.com

 
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How AI can drive career growth for mortgage professionals

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Artificial Intelligence Reshapes Mortgage Industry Dynamics
The mortgage industry is undergoing a profound transformation driven by the adoption of artificial intelligence (AI). While some employees express concerns about potential job displacement, executives are assuring them that AI will primarily automate routine tasks, allowing for more focus on other areas of their roles.
Generative AI has emerged as a valuable tool for lenders, aiding in tasks such as content creation, marketing material development, and email responses. However, there’s recognition that AI’s output requires human oversight and refinement, especially in critical areas like marketing copy.
Companies are cautious about deploying AI in customer-facing roles due to regulatory uncertainties, but some are exploring compliant AI chatbot solutions. Despite regulatory challenges, some lenders have begun experimenting with AI chatbots, while others are still evaluating their potential applications.
Katherine Campbell, founder of consulting firm Leopard Job, believes AI can enhance employee satisfaction by automating mundane tasks, allowing humans to focus on higher-value activities. She emphasizes that AI’s role is to complement human expertise, not replace it.
For example, Mr. Cooper has integrated AI into fulfillment and due diligence roles but takes a cautious approach in front-office functions. Underwriters at Mr. Cooper work alongside AI in a co-pilot mode, reviewing AI-generated decisions before proceeding.
Executives see AI as an opportunity to enhance productivity rather than replace jobs. For instance, Mr. Cooper has significantly increased its mortgage servicing portfolio while maintaining a similar headcount, leveraging technology to handle a larger volume of loans.
Despite uncertainties, AI is expected to continue its growth trajectory in the mortgage industry. Companies are increasingly leveraging AI for internal functions like staff education and customer interactions. Tools powered by generative and machine learning models are already in use at companies like Blend and Rocket Mortgage, streamlining workflows and providing assistance to loan officers.
Source: nationalmortgagenews.com

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Could a better understanding of how infants acquire language help us build smarter A.I. models?

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From Baby Talk to Baby A.I.: Exploring the Connection Between Infant Language Acquisition and Artificial Intelligence
The journey from babbling babies to sophisticated artificial intelligence (A.I.) systems may seem worlds apart, but researchers are increasingly finding intriguing parallels between these seemingly disparate domains. Could a deeper understanding of how infants learn language pave the way for more intelligent A.I. models? Let’s delve into this fascinating intersection of neuroscience and machine learning.
Infant language acquisition is a remarkable process that unfolds rapidly during the first few years of life. Babies are born with an innate capacity for language, but they must learn to understand and produce speech through exposure to linguistic input from their caregivers and environment. This process involves complex cognitive abilities, such as pattern recognition, statistical learning, and social interaction.
Similarly, A.I. systems learn from data, albeit in a vastly different manner. Machine learning algorithms process vast amounts of information to identify patterns and make predictions, much like the way infants learn from exposure to language input. However, while A.I. models excel at tasks like language translation and speech recognition, they often struggle with understanding context, ambiguity, and nuance—areas where human language learners excel.
By studying the mechanisms underlying infant language acquisition, researchers hope to uncover insights that could inform the development of more intelligent A.I. systems. One key area of focus is statistical learning, the ability to extract regularities and patterns from the input data. Infants demonstrate remarkable statistical learning abilities, enabling them to discern the structure of their native language from the stream of auditory input.
Researchers believe that incorporating principles of statistical learning into A.I. algorithms could improve their ability to understand and generate natural language. By analyzing large datasets of text and speech, A.I. systems could learn to identify linguistic patterns and relationships, leading to more accurate language processing and generation.
Social interaction also plays a crucial role in infant language development, as babies learn from their caregivers through joint attention, imitation, and feedback. Similarly, A.I. systems could benefit from interactive learning paradigms that involve human interaction and feedback. By engaging in dialogue with users, A.I. agents could refine their language skills and adapt to individual preferences and contexts.
Moreover, insights from cognitive neuroscience could inspire novel architectures and algorithms for A.I. models. For example, neuroscientists have identified specialized brain regions involved in language processing, such as Broca’s area and Wernicke’s area. Mimicking these neural circuits in artificial neural networks could lead to more biologically inspired A.I. systems capable of robust language understanding and production.
In summary, the study of infant language acquisition offers valuable insights that could inform the development of more intelligent A.I. models. By understanding the cognitive mechanisms underlying language learning in infants, researchers hope to design A.I. systems that exhibit human-like language abilities, unlocking new possibilities for natural language understanding, communication, and interaction. As we continue to unravel the mysteries of the human mind, we may find that the key to smarter A.I. lies in the babbling of babies.
Source: nytimes.com

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