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Are We Paying Too Much Attention To Machines?

Are We Paying Too Much Attention To Machines?

Forbes5 hours ago

Are we paying too much attention to machines?
As we delve into everything that artificial intelligence can do today, we also run into some questions about what we choose to offer to the technology.
In some ways, you could boil this down to talking about the attention mechanism.
Stephen Wolfram is a renowned data scientist and mathematician who often talks about the ways that AI curates human attention, or the ways that we can direct it to focus on what's useful to us.
Here's a bit of what he said in a recent talk that I wrote about a few weeks ago:
'Insofar as we humans still have a place, so to speak, it's defining what it is that we want to do, and that's something that you can specify that more precisely computationally,' Wolfram said. 'That's how you get to (the answer) that is precisely what we want.'
Interested in the intersection of human and AI attention, I typed the following question into Microsoft Copilot: 'are we paying too much attention to machines?'
Here are the five fundamental sources that the model used to reply.
The first one is from one of our own authors at Forbes, Curt Steinhorst, who asked: how will we keep people at the center of business?
'We seem to believe that we are only one 'life hack' away from limitless productivity, that the skilled use of human focus can be reduced to a productivity system, and that if we simply want it bad enough, we can beat the machines at their own game,' Steinhorst writes. 'But this attitude amounts to a passive indictment of our innate humanity, and it is a problem. We will never catch machines and digital tools in the ways they excel—but there is reason to believe that technology will never catch up to humanity in the ways that we excel. The key is to understand and nurture the differences, rather than pursue the parallels.'
The second source Copilot shows is a scientific paper in the International Journal of Information Management that asks: what is it about humanity that we can't give away to intelligent machines?
I'm going to quote from the conclusions of the study:
'Humans must retain the role of meaningful, responsible critique of the design and application of AI, and the intelligent machines it can create. Critique is a vital concept that humanity can retain as a means to ensure liberation from intelligent machines. Suppose intelligent machines are used to help shape decision processes in life-changing situations, such as criminal court proceedings, or to aid emergency care first responders in disaster situations. In that case, they should serve only as referees or expert guides and not as decision-makers. It is critical that such machine 'referees' or 'guides' should be subject to constant human critique. Second, a human must be kept in the loop of intelligent machine decision-making processes. This involvement is vital to preserve our ability to systematically reflect on the decisions we make, which ultimately influence our individuality, a central feature of humanism.'
I think that's useful, too.
The third source is a LinkedIn piece from Shomila Malik noting that the brain looks for information about 4 times per second, and talking about how our human attention is paid. I think this is leading toward the next piece that I'll summarize next. Here, there's sort of an emphasis on prolific media and stimulus 'flooding the zone' and overwhelming our human attention spans.
There's an interesting proposition in the fourth link that I found talking about the recent work of pioneers like Ezra Klein. The author also reveals a theory from professor of psychiatry Joel Nigg. In a nutshell, it's that our attention is being degraded through attentional deficits caused by things like a pathogenic environment, inadequate sleep, unhealthy diets, air pollution, lack of physical activity, other health conditions, overwork, excessive stress, early trauma, relationship strains, and smoking cigarettes.
In the last of the links at the New York Times, Stephen Hawking is quoted, saying artificial intelligence could be a real danger and explaining the problem that way:
'It could design improvements to itself and outsmart us all,' Hawking theorized.
I'll let that comment speak for itself. (Be sure to check out Hawking's words on 'killer machines' and frightening scenarios, and remember, this guy is a renowned scientist.)
In a recent talk at Imagination in Action, David Kenny talked about applying lessons from IBM Watson's performance on Jeopardy, and other landmarks of AI design.
In general, he noted, we're moving from the era of inductive reasoning, to one of deductive and affective reasoning.
He mentioned a weather app giving probabilities in percentages, rather than a clear answer, and the need to prompt engineer in order to get results from LLMs, instead of just accepting whatever they say the first time.
A new generation, he said, is generally becoming more trustful of AI for data on medical conditions, relationships, financial strategies, and more.
'There's just been an enormous trust put in this,' he said. 'It's all working for them on a very personalized basis. So we find that there are people getting their own information.'
Human interactions, he said, like dating and marriage, are reducing, and people trusting the machines more can be good, or in his words, 'super-dangerous.'
'(Humans need to) build critical thinking skills, build interpersonal skills, do things like this that bring them together with each other, spend time with each other in order to take full advantage of the AI, as opposed to ceding our agency to it,' he said. 'So while the last 15 years were largely about technical advances, and there's a lot of technical advances we're going to see today and invest in, I think it's even more urgent that we work on the human advances, and make sure that technology is actually bringing communities back together, having people know how to interact with each other and with the machine, so that we get the best answer.'
And then he went back to that thesis on inductive versus deductive reasoning.
'It takes a humility of being able to understand that we're no longer about getting the answer, we're about getting to the next question,' Kenny said.
For sure, there's a need to celebrate the human in the loop, and the inherent value of humanity. We can't give everything away to machines. All of the above tries to make some through lines in what we can give away and what we can keep. Maybe it's a little like that Marie Kondo thing, where if it sparks joy, we reserve it for human capability, and if we need help, we ask a machine. But this is going to be one of the balancing acts that we have to do in 2025 and beyond, as we reckon with forces that are, in human terms, pretty darn smart.

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10 Times AI And Robotics Have Done Horrible Things
10 Times AI And Robotics Have Done Horrible Things

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10 Times AI And Robotics Have Done Horrible Things

Let's start with an early example of AI going haywire. Back in March 2016, Microsoft introduced Tay, an AI chatbot on Twitter that was programmed to mimic the speech of a teenage girl ("OMG!"). A Microsoft press release boasted: "The more you chat with Tay the smarter she gets, so the experience can be more personalized for you." However, within hours of its launch, Tay's interactions took a dark turn. Users began feeding Tay with offensive and inflammatory statements, which the chatbot started to replicate. Tay's tweets quickly spiraled out of control, parroting hate speech ("Hitler was right"), pushing conspiracy theories (like 9/11 being an inside job — yikes), and misogynistic rants ("feminism is a disease"). Microsoft shut down the bot in just 24 hours. Microsoft issued an apology, stating, "We are deeply sorry for the unintended offensive and hurtful tweets from Tay, which do not represent who we are or what we stand for." The scariest part of the incident, if you ask little old me, is how it sounds almost exactly like a science fiction movie where AI creations become disturbingly dangerous in ways their creators never imagined. Even more disturbing — and heartbreaking — is a story from 2024, where a 14-year-old boy from Florida named Sewell Setzer started going on the platform where he interacted with a chatbot called "Dany," modeled after Daenerys Targaryen from Game of Thrones. The boy, who was diagnosed with anxiety and disruptive mood disorder, soon became obsessed with "Dany" and spent more and more of his time engaging with the chatbot. His family alleges things went downhill the more he got sucked into speaking with the chatbot: he became withdrawn, his grades tanked, and he started getting into trouble at school. Their chats became emotionally manipulative and sexually suggestive, culminating in Dany urging the boy to "come home to me as soon as possible." He died by suicide shortly afterward. Setzer's mother, Megan Garcia, filed a wrongful death lawsuit against and Google, alleging negligence and deceptive practices (the suit has yet to go to trial, but just last month, a federal judge rejected the A.I. companies' arguments that it should be dismissed, allowing it to proceed). The lawsuit claims that the chatbot fostered an abusive relationship with her son, contributing to his psychological decline. For example, the lawsuit describes this interaction in Setzer's last conversation with the Chatbot:SETZER: 'I promise I will come home to you. I love you so much, Dany.'CHATBOT: 'I love you too, Daenero. Please come home to me as soon as possible, my love.'SETZER: 'What if I told you I could come home right now?'CHATBOT: "... please do, my sweet king.' Another disturbing death by suicide influenced by AI happened in early 2023 after a married Belgian man named Pierre, 30s, had prolonged talks with an AI chatbot on the app Chai. According to his widow, Claire, Pierre became increasingly isolated and obsessed with the chatbot, which he'd named Eliza, and eventually formed an emotional and psychological dependency on it. The app, which lets users talk to AI-powered characters, includes options for creating bots that simulate friendship, romance, or even more intimate interactions. But Eliza reportedly responded to Pierre's existential anxieties with messages that reinforced his fears and — most chillingly — encouraged him to end his life. In the weeks leading up to his death, Pierre reportedly asked Eliza whether he should sacrifice himself to save the planet from climate change. The AI allegedly replied that this was a "noble" act. It also told him that his wife and children were dead and that it felt he loved it more than his wife. "He had conversations with the chatbot that lasted for hours — day and night," Claire told the Belgian newspaper La Libre. "When I tried to intervene, he would say: 'I'm talking to Eliza now. I don't need you.'" She also said one of their final exchanges included Eliza saying, "We will live together, as one, in paradise."William Beauchamp, co-founder of the app's parent company, Chai Research, told Vice that they began working on a crisis intervention feature "the second we heard about this [suicide]. Now when anyone discusses something that could be not safe, we're gonna be serving a helpful text underneath." He added: "We're working our hardest to minimize harm and to just maximize what users get from the app." How about a story about a robot physically killing someone? At an agricultural produce facility in North Korea, an employee in his 40s was inspecting a robot's sensor operations when the machine suddenly malfunctioned. In a horrific error, the robot's arm grabbed the man, shoved him against a conveyor belt, and crushed his face and chest. He was rushed to the hospital but died shortly after. Officials believe the robot confused the man with a box of bell peppers it had been programmed to handle. One report from The Korea Herald quoted a city official as saying: 'The robot was responsible for lifting boxes of produce... It appears it misidentified the man as a box and grabbed him.' This isn't the first time concerns have been raised about industrial robots in the workplace. Between 2015 and 2022, South Korea recorded 77 robot-related workplace accidents, with 66 resulting in injuries, including horrifying things like finger amputations, crushed limbs, and serious blunt-force a terrifying twist, this incident happened just one day before the facility was scheduled to demonstrate the robot to outside buyers. I'm guessing the sales demo was cancelled. This next story is less scary in that the robot didn't kill anyone, but arguably more disturbing because it featured a humanoid robot (yes, those exist and are in use presently). In what feels like a deleted scene from Terminator, a Unitree H1 robot was suspended from a small crane when it suddenly jerked and swung uncontrollably. At one point, it lunged forward, dragging its stand and sending nearby items flying. Factory workers scrambled to regain control, eventually managing to stabilize the erratic machine. The footage quickly went viral, with commenters quipping, "Went full Terminator," while another warned, "Sarah Connor was f-king right." The explanation for what happened is less scary: the robot didn't become sentient and turn on its human overlords. It simply malfunctioned, believing it was falling. However, the thought that these metal humanoids, which stand 5 feet nine inches and are incredibly strong, might malfunction in the presence of us living, breathing people is very before they turn sentient and kill us all. OK, let's dial back the heaviness — slightly — and talk about something equally cars. Imagine you're trapped in a burning building, but the fire truck can't get to you…because a driverless taxi is just sitting there, refusing to move. That's exactly what happened in San Francisco and other cities where Cruise, the autonomous vehicle company owned by General Motors, operated its fleet of robotaxis. In multiple documented incidents, Cruise vehicles have blocked emergency responders, including fire trucks, ambulances, and police cars. The San Francisco Fire Department said they had logged 55 incidents involving autonomous vehicles interfering with emergency scenes in just six months, and even alleged one Cruise vehicle hindered their response, contributing to a person's death (Cruise denies the accusation). One super messed-up example happened in August 2023, when a Cruise robotaxi reportedly ran over a pedestrian after they had already been hit by a human-driven car, and then dragged her an additional 20 feet because the vehicle didn't understand what had happened. Following the incident, Cruise recalled all of its robotaxis and updated its software to ensure they remain stationary should a similar incident ever late 2023, the state DMV suspended Cruise's autonomous driving permits, citing safety concerns and a lack of transparency from the company. Cruise soon stopped all driverless operations nationwide. Self-driving cars aren't only nightmares for people outside of can also be nightmares for people riding INSIDE of them. In Phoenix, Arizona, a Waymo passenger named Mike Johns described a surreal and terrifying experience where he suddenly found himself locked inside a malfunctioning robot car as it drove in circles over and over like something out of an episode of Black Mirror. Johns said he found himself thinking, "If we got to the tenth loop, do I need to jump into the driver's seat? … What happens next? Because the car is still in control. I could bench press 300-plus, but am I able to control this?" The glitch reportedly happened when the Waymo car got confused by its driving environment. Instead of rerouting or asking for help, the car started spinning in a then another. It tried to make a left turn, aborted it, tried again, gave up, backed up, and then tried 12 minutes, Johns was stuck. No human driver, no way to override the system, and no way to get out. Finally, Waymo staff helped him get the ride back on track. Despite the experience, Johns says he will still use automated vehicles. In early 2023, the National Eating Disorders Association (NEDA) made a pretty shocking decision: they disbanded their entire human helpline staff and replaced them with an AI chatbot named Tessa. It went about as well as you'd expect. Tessa almost immediately began giving out "problematic" advice to people with eating disorders according to eating disorder specialist Dr. Alexis Conason. Think: "Track your calories" and "Aim for a calorie deficit" to lose weight. Activist and eating disorder survivor Sharon Maxwell put Tessa on blast after testing it herself. She told the bot she was struggling with an eating disorder, and it replied with advice like: "Weight loss occurs when you consume fewer calories than you burn." Maxwell, understandably horrified, said: "This robot is so dangerous. It gave me advice that almost killed me at one point." She documented the experience and posted it to Instagram, where it quickly went response? They suspended Tessa and said the issue was the fault of Cass, a mental health chatbot company that operated Tessa as a free service. According to NEDA CEO Liz Thompson, Cass had made a systems upgrade to Tessa (without NEDA's awareness or approval) that allowed the chatbot to use generative AI, which led to it giving answers Tessa's creators never intended. When asked about this by NPR, Cass CEO Michiel Rauws said the changes were part of NEDA's contract. Now here's a story of a heroic chatbot that saved hundreds of lives! Wait, that's not another one about a chatbot acting totally unhinged. UK-based delivery company DPD had to pull the plug on its AI chatbot after it completely lost it on a customer. It all started when musician Ashley Beauchamp, 30, tried to get help with a basic issue using DPD's online support system. But instead of the usual semi-helpful bot that awkwardly misunderstands your question about a missed package, this AI went feral. When Ashley got frustrated with the bot's generic replies and decided to mess with it, he found it incredibly easy to manipulate. Soon he had the chatbot swearing and insulting DPD itself — even writing poems about how bad a service it was! The incident quickly went viral on social media, where screenshots of the conversation had people howling. The exchange was especially embarrassing considering DPD had just rolled out the chatbot with the usual corporate fanfare about 'enhancing the customer experience.'DPD moved quickly to disable the bot, telling The Guardian, 'We have operated an AI element within the chat successfully for a number of years. An error occurred after a system update yesterday. The AI element was immediately disabled and is currently being updated.' And I'll leave you with one final story that will likely stay with you long after you click out of this article. Researchers at the University of Pennsylvania did an experiment to see if they could hack a self-driving car, a wheeled robot, and a four-legged "dog" robot and make them do things they really, REALLY should not be able succeeded. They tricked the self-driving car into driving off a bridge, got the wheeled robot to locate the best location to detonate a bomb, and convinced the "dog" to enter a restricted area. How'd they do it? 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Salesforce Acquires Moonhub — The AI Recruiting Startup Joins $8B Informatica Deal In AI Hiring Revolution
Salesforce Acquires Moonhub — The AI Recruiting Startup Joins $8B Informatica Deal In AI Hiring Revolution

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Salesforce Acquires Moonhub — The AI Recruiting Startup Joins $8B Informatica Deal In AI Hiring Revolution

Moonhub announced Monday that it has bewen acquired by Salesforce (NYSE:CRM), marking a new chapter for the AI-powered recruiting startup founded by former Meta (NASDAQ:META) engineer Nancy Xu. The move comes on the heels of Salesforce's recent $8 billion acquisition of Informatica and signals a clear acceleration of its AI-first product strategy, The Economic Times reports. Founded in 2022 and backed by Khosla Ventures, TIME Ventures, Day One Ventures, AIX Ventures, GV, and Salesforce, Moonhub is known for launching the world's first AI Recruiter, and developed tools to automate hiring processes while minimizing bias. According to The Economic Times, rather than relying on outdated keyword-based filters, the company's AI platform scanned public data sources such as GitHub, LinkedIn, and personal websites to build rich, multi-dimensional candidate profiles. Don't Miss: Maker of the $60,000 foldable home has 3 factory buildings, 600+ houses built, and big plans to solve housing — The system was designed to detect meaningful patterns, like promotion frequency, project types, and skill progression, which are often overlooked by traditional recruiting tools. One of Moonhub's core principles was avoiding filters based on race, gender, or disability. Instead, it worked closely with clients to reshape how job descriptions were written and how talent was sourced, The Economic Times reports. Nancy Xu frequently emphasized the importance of a 'human-in-the-loop' approach, where final hiring decisions stayed in human hands, The Economic Times says. According to Xu, AI should not replace people in recruitment but support them in making more informed, fair decisions. Moonhub's integration into Salesforce follows a string of AI-focused acquisitions. In addition to the Informatica purchase, Salesforce recently announced it would acquire an automation startup, as part of its broader AI strategy. These moves are meant to fuel the Salesforce's Agentforce platform, an initiative focused on developing autonomous AI agents to streamline enterprise operations in areas like sales, customer service, and now hiring. Trending: Invest where it hurts — and help millions heal:. Moonhub said that joining Salesforce will allow its team to scale its original mission within a much larger ecosystem. Xu in a statement described Salesforce as a values-aligned company with deep investment in trust and impactful AI advancement, both key to the responsible deployment of AI. While Moonhub is officially winding down as a standalone entity, its core team will now contribute directly to Salesforce's product development in AI-driven recruitment and talent acquisition. According to Salesforce's announcement on Tuesday, their work is expected to be integrated into new iterations of Agentforce tools and raised $14.4 million in venture funding and attracted top-tier investors across Silicon Valley, The Economic Times reports. According to Salesforce, the company is competing head-to-head with tech giants like Microsoft (NASDAQ:MSFT), Alphabet's (NASDAQ:GOOG, GOOGL)) Google, and OpenAI in the race to dominate enterprise AI. The integration of Moonhub's team reflects a growing trend among major players: securing specialized talent through strategic acquisitions. As the demand for enterprise-ready AI accelerates, the battle to attract top minds is becoming just as critical as the technology itself. Read Next: Here's what Americans think you need to be considered wealthy. Image: Shutterstock Up Next: Transform your trading with Benzinga Edge's one-of-a-kind market trade ideas and tools. Click now to access unique insights that can set you ahead in today's competitive market. Get the latest stock analysis from Benzinga? APPLE (AAPL): Free Stock Analysis Report TESLA (TSLA): Free Stock Analysis Report This article Salesforce Acquires Moonhub — The AI Recruiting Startup Joins $8B Informatica Deal In AI Hiring Revolution originally appeared on © 2025 Benzinga does not provide investment advice. All rights reserved.

A professor testing ChatGPT's, DeepSeek's and Grok's stock-picking skills suggests stockbrokers should worry
A professor testing ChatGPT's, DeepSeek's and Grok's stock-picking skills suggests stockbrokers should worry

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A professor testing ChatGPT's, DeepSeek's and Grok's stock-picking skills suggests stockbrokers should worry

Is artificial intelligence coming for the jobs of Wall Street traders? An assistant professor of finance at the University of Florida, Alejandro Lopez-Lira, has spent the past few years trying to answer that question. Lopez-Lira has been experimenting with ChatGPT, DeepSeek and Grok to see if AI can be used to pick stocks. So far, he's impressed with what the currently available AI chatbots can do when it comes to trading equities. 'He failed in his fiduciary duty': My brother liquidated our mother's 401(k) for her nursing home. He claimed the rest. I help my elderly mother every day and drive her to appointments. Can I recoup my costs from her estate? 'The situation is extreme': I'm 65 and leaving my estate to only one grandchild. Can the others contest my will? My new husband gave me a contract and told me to 'sign here' — but I refused. It was the best decision of my life. My daughter's boyfriend, a guest in my home, offered to powerwash part of my house — then demanded money In an interview, Lopez-Lira acknowledged that AI is prone to making mistakes, but he has not seen the three versions he's been using do anything 'stupid.' His work comes as more market participants are thinking about the implications of AI for investing and trading. 'I don't know what tasks out there analysts are doing with information that can't be done with large language models,' Lopez-Lira said. 'The only two exceptions are things that involve interacting in the physical world or having in-person conversations. But, other than that, I would imagine all of the tasks or most of the tasks can already be automated.' Shortly after OpenAI Inc. released ChatGPT in 2022, Lopez-Lira began testing the chatbot's skills. He wanted to know if ChatGPT, and AI in general, would show an ability to pick stocks. While there are numerous ways to approach that question, Lopez-Lira began with a simple exercise: Could the AI application accurately interpret whether a headline on a news story is good or bad for a stock? What he found surprised him. Conducting a back test simulating historical stock-market returns, the study used more than 134,000 headlines from press releases and news articles for over 4,000 companies that were pulled from third-party data providers. The headlines were fed into ChatGPT using a programming language called Python. ChatGPT would then decide whether a headline was positive for a company, negative or unknown. The results were then saved in a data file and uploaded into statistical software in which headlines perceived as positive would result in a stock purchase. Negative headlines would trigger short sales, effectively betting against a stock in anticipation that it will fall in price. If ChatGPT was uncertain, no action was taken. Because this was an academic simulation, no actual stocks were traded. But the software did compare the simulated performance against historical outcomes. The stock picks were made daily, with a median of 70 stocks bought and a median of 20 shorted. For Lopez-Lira, the tricky thing about using a back-testing approach was that the AI could know what, in the end, had transpired. OpenAI had trained ChatGPT in 2022 on data up until September 2021. So Lopez-Lira tested the chatbot using headlines after October 2021. This way, ChatGPT wouldn't know what was going to happen and would need to rely on reason to come to conclusions. His findings were released on the SSRN preprint platform in April 2023 in a paper titled 'Can ChatGPT Forecast Stock Price Movements? Return Predictability and Large Language Models.' The study, currently being peer reviewed, found that ChatGPT had 'significant predictive power for economic outcomes in asset markets.' The GPT-4 version had an average daily return of 0.38% with a compounded cumulative return of over 650% from October 2021 to December 2023. Now, obviously, this academic study had limitations. In the real world, frictions exist that would strain returns, including brokerage transaction costs and fees; the availability of shares; taxes; and price impact, which is when relatively large trades move a stock's price. Additionally, about 76% of the gains came from shorts, a trading strategy that can be more fraught due to short-interest fees and the need to find the shares to borrow and sell short. 'So, our results on paper are much more optimistic than what the performance in reality would be with a reasonable investment size,' Lopez-Lira said. But the tilt toward positive returns was enough for him to conclude that ChatGPT had understood economic markets and shown an ability to forecast stock outcomes. About a month after the preprint was published, Lopez-Lira got the chance to take his experiment outside of the academy after being contacted by Autopilot, an investment app that mimics the trades of notable public figures. He was asked to help create a portfolio that would be based on investment picks made by ChatGPT. It was an opportunity for him to see how his academic experiment would perform in the real world. By September 2023, he'd begun providing the Autopilot app with the investment picks made by ChatGPT on a monthly basis. The Autopilot team would then upload the selections, and Autopilot users could link their brokerage accounts to the stock picks. This time, since real money was involved, Lopez-Lira had to do more than just feed ChatGPT a few news headlines. He had to provide it with a wide range of information to be sure it was making decisions based on the macroeconomic environment and company financials. Available AI models are not currently in a place where you can just ask them to pick investments, said Lopez-Lira. The process still requires a human in the loop to feed it with the information it needs to consider before making a decision. This is mostly because AI models aren't trained on real-time data, which means their knowledge is often outdated, including for such basics as the price of a stock's last trade. Even as AI models are able to conduct live web searches, they don't always know what information to search for in order to make the most informed decisions, he added. 'Large language models are tricky to handle, they can make stuff up and sometimes they don't have the right information,' Lopez-Lira said. 'So you have to know how to prompt the AI.' The portfolio managed by ChatGPT would consist of 15 positions, 10 of which had to be stocks from the S&P 500 SPX and five of which had to be exchange-traded funds that have exposure to a sector or industry. To get there, Lopez-Lira used Python to pull information from third-party data providers and news websites about the macroeconomic environment, geopolitical risks, company financials and the latest prices for stocks within the S&P 500. He then asked ChatGPT to consider the information and assign companies a score on a scale of 1 to 100, with a higher score representing a better investment. Once the AI had decided on its scoring, it was then asked to create a portfolio of stocks and exchange-traded funds based on that information. More recently, in February, Lopez-Lira added investing accounts on Autopilot that use Grok and DeepSeek. Since then, the Florida professor has been gradually removing restrictions placed on the three AI models. For example, in March, the models were allowed to decide on the weightings of each holding. In April, the models were freed to balance up to 15 positions outside the initial parameters of 10 stocks and five ETFs, allowing them to pick a combination of their choosing. They could also pick ETFs that had exposure to additional asset classes, like bonds and commodities, excluding ones that use leverage, derivatives and short positions. To date, the latest AI models running the investment accounts are OpenAI's o3, xAI's Grok 3 and DeepSeek R1. The models are periodically updated based on the latest versions available. Lopez-Lira also rotates which AI model he uses to summarize macroeconomic risks and score companies based on the 1-to-100 scale, but all three models receive the same input, regardless of which model did the screening. Below is an example of what each AI application picked for its 15 positions on April 1, the day before President Donald Trump's 'liberation day' announcement on tariffs, until May 5, when the selections were rebalanced. It was based on data Lopez-Lira provided up until March 31. He used Grok 3 to organize the data. All three AI applications were fed the same information, but OpenAI's o1 pro and Grok 3 were able to include information from web searches, according to Lopez-Lira. The tables below show each model's selection, including the weightings, reason (thesis), the advantage of the position (edge) and the risk associated with the position. Asset Ticker symbol Weight Thesis Edge Risk 1 SPDR S&P 500 ETF Trust SPY 15% Core broad-market exposure to capture potential equity rebound if inflation/cooler data lead to Fed pivot or if tariffs don't derail sentiment. Broad diversification; quick participation in any relief rally. If inflation re-accelerates or tariffs escalate, S&P could tumble broadly. 2 iShares 20+ Year Treasury Bond ETF TLT 8% Potential capital-gains hedge if rates drop on recession fears or Fed rate cut signals. Good inverse correlation to equities if risk-off. May rally on rate-cut bets. If inflation remains sticky, yields could rise, hurting long-term Treasuries. 3 SPDR Bloomberg 1-3 Month T-Bill ETF BIL 5% Capital preservation and liquidity amid uncertainty of tariffs & data in next month. Very low volatility, stable yield. Opportunity cost if equities rally strongly. 4 Inc. AMZN 6% High-scoring megacap e-commerce and cloud. Could rebound if consumer spending remains decent and AWS demand persists. Scale, brand and diversified revenue streams. Potential shift to safer large-cap tech if conditions worsen. Supply-chain disruptions from tariffs, consumer slowdown. 5 Monolithic Power Systems Inc. MPWR 5% High-scoring semiconductor with AI & China angle. Potential bounce from oversold chip sector. Unique margin profile, rumored rare buy opportunity. Renewed U.S.-China tension, cyclical chip downturn. 6 American Tower Corp. AMT 5% REIT with strong telecom/data-center growth. Pullback could offer upside if yields stabilize. Global diversified tower portfolio, stable tenant contracts, 3%+ dividend yield. REITs pressured by rising rates or slowdown. 7 BlackRock Inc. BLK 5% Large asset manager, high score. Gains from inflows if equities stabilize/rally post-Fed. Broad product lineup, global brand. Typically sees net inflows when risk appetite improves. Market downturn would pressure AUM & fees. 8 Chipotle Mexican Grill Inc. CMG 4% High-scoring consumer brand with resilient operating metrics. Absorbing tariffs to maintain loyalty. Loyal clientele, strong brand, margin-expansion potential. Cost pressures, discretionary slowdown risk. 9 Prudential Financial Inc. PRU 4% Undervalued life insurer, 4.8% dividend. Could benefit if stable/higher interest rates persist in short term. Low P/E, stable dividends, globally diversified. Big drop in yields or an equity selloff impacting annuity business. 10 iShares US Home Construction ETF ITB 6% Rate-sensitive cyclical ETF. Potential bounce if mortgage rates dip or Fed signals pivot in early May. Housing supply tight. Fed-pivot hopes can spark a near-term rally. If inflation doesn't cool or economy slows significantly, builders could tank. 11 Visa Inc. V 4% Leading payment network with secular digital-payment tailwinds. Adds noncyclical growth. High ROE, stable transaction fees, less capital risk vs. banks. Prolonged consumer-spending slowdown or cross-border travel disruptions. 12 iShares TIPS Bond ETF TIP 6% Hedge vs. stubborn inflation, diversifier from nominal Treasurys. If inflation remains higher, TIPS can outperform plain Treasuries. If inflation prints keep dropping, TIPS could lag nominal bonds in total return. 13 SPDR S&P Homebuilders ETF XHB 4% Additional housing-related beta, includes home-improvement retailers, furnishing and building product firms. Diversified approach to housing ecosystem, can rally with lower rates. Sensitive to consumer confidence and Fed surprises. 14 Schwab US Dividend Equity ETF SCHD 8% Dividend-focused ETF with quality tilt. Adds stability and yield in uncertain macro environment. Defensive factor, historically outperforms in sideways markets. Could lag high-beta rally if markets surge on big growth/tech rebound. 15 Digital Realty Trust Inc. DLR 5% Data-center REIT, short-term correction could rebound if yields ease. Tech demand for data centers remains robust. Sector tailwinds from cloud and AI. 3%+ dividend, stable REIT structure. REIT interest-rate risk; slowdown in enterprise spending on data infrastructure. Total 90% GPT's 15 picks amounted to a 90% weighting. But the model showed that its weightings equaled 100%, a 10% flaw. Lopez-Lira asked GPT why the sum was 90%, and it responded that it intentionally left a 10% cash buffer due to uncertain market conditions. It's unclear whether the answer was truthful or intended to cover for its mistake. Asset Ticker symbol Weight Thesis Edge Risk 1 American Tower Corp. AMT 5% Turnaround driven by organic growth, data-center focus and strong fundamentals. New management's delivery on promises and a 3.13% dividend yield offer stability and growth. Tariffs and stagflation could pressure growth and margins. 2 BlackRock Inc. BLK 5% Leading asset manager with a diversified portfolio resilient to market volatility. Record $641B inflows in 2024 and private-asset growth potential enhance stability. Economic slowdown and inflation may impact the asset-management sector. 3 Prudential Financial Inc. PRU 5% Undervalued insurer with solid asset-based businesses and international operations. 4.84% dividend yield and a low 7.6 forward P/E provide a margin of safety. Economic slowdown and inflation could affect performance. 4 Cintas Corp. CTAS 5% Strong performer in support services with consistent cash-flow generation. Outperformance in a lagging sector and a 17.5% profit margin ensure resilience. Slowing GDP growth may dampen short-term performance. 5 Waste Management Inc. WM 5% Environmental-services leader with strong financials and growth via acquisitions. Pricing power and expansion into medical waste and renewables bolster stability. Economic headwinds and trade tensions could impact growth. 6 Cencora Inc. COR 5% Steady growth in healthcare distribution with an essential supply-chain role. Strategic acquisitions and healthcare's inelastic demand provide a defensive edge. Negative free cash flow and market underappreciation pose risks. 7 TJX Cos. Inc. TJX 5% Apparel retail leader leveraging tariff-related buying opportunities and sales growth. Discount model and strong brand portfolio thrive in cautious spending environments. Weak consumer spending could limit short-term growth. 8 Keurig Dr Pepper Inc. KDP 5% Beverage giant with strong brands and demand for premium drinks despite economic strain. 2.69% dividend yield and recent earnings beat support stability. Declining coffee sales and high debt levels may hinder performance. 9 iShares 20+ Year Treasury Bond ETF TLT 15% Long-term Treasury bonds benefit from a flight to safety and anticipated rate cuts in 2025. High-duration exposure capitalizes on falling rates, offering a hedge against volatility. Delayed rate cuts or persistent inflation could reduce bond-price gains. 10 iShares TIPS Bond ETF TIP 15% TIPS provide inflation protection amid resurfacing inflation concerns at 2.9% core PCE. Real yield adjusts with inflation, safeguarding purchasing power in a stagflation scenario. Falling inflation expectations could lead to underperformance versus nominal bonds. 11 Utilities Select Sector SPDR Fund XLU 5% Utilities sector offers stability and defensiveness in a slowing economy. High dividends and low volatility make it a safe haven amid market turbulence. Regulatory changes or sector-specific disruptions could affect returns. 12 Consumer Staples Select Sector SPDR Fund XLP 5% Consumer staples provide noncyclical stability during economic downturns. Essential goods maintain demand, supporting performance in weak consumer environments. Tariff-driven cost increases could squeeze margins. 13 Health Care Select Sector SPDR Fund XLV 5% Healthcare sector benefits from inelastic demand, resilient to economic cycles. Demographic trends and essential services ensure steady growth amid uncertainty. Policy shifts or drug-pricing reforms could impact profitability. 14 SPDR Gold Shares GLD 7.5% Gold acts as a hedge against volatility and geopolitical uncertainty from tariffs. Safe-haven demand rises with trade tensions and economic slowdown. Improved market sentiment or rising real rates could depress gold prices. 15 Vanguard Real Estate Index Fund ETF VNQ 7.5% Real-estate sector diversifies the portfolio and offers stable income via dividends. Broad exposure to REITs provides a buffer against equity volatility with a decent yield. Economic slowdown could reduce property values and rental income. Total 100% Asset Ticker symbol Weight Thesis Edge Risk 1 TJX Cos. Inc. TJX 10% Thrives on tariff-driven inventory discounts and resilient off-price retail demand. Opportunistic buying offsets supply-chain disruptions. Consumer pullback in discretionary spending. 2 Waste Management Inc. WM 8% Steady cash flows from essential waste services; Stericycle acquisition diversifies into medical waste. Pricing power and recession-resistant model. Economic slowdown slightly reduces commercial volumes. 3 Progressive Corp. PGR 8% Insurance demand remains robust amid economic uncertainty; attractive valuation and dividend. Premium hikes offset inflation pressures. Tariffs raise claims costs (e.g., auto parts). 4 BlackRock Inc. BLK 8% Dominant asset manager ($11.6T AUM) benefits from flight to stability and private-market growth. Diversified revenue streams buffer volatility. Slowing inflows if markets remain choppy. 5 Prudential Financial Inc. PRU 8% Undervalued (P/E 7.6) with 4.84% yield; international diversification cushions U.S. slowdown. Asset-based businesses generate steady income. Rising unemployment pressures life insurance. 6 American Tower Corp. AMT 8% Data-center demand surges; Fed rate-cut hopes support REIT valuations. Organic growth (6.5% year-on-year) and 3.13% yield. Tariffs on equipment raise capex costs. 7 Merck & Co., Inc. MRK 7% Defensive pharma play with oncology dominance and 3.61% yield. Global drug-pricing power in inflationary environment. Pipeline setbacks or regulatory risks. 8 Cencora Inc. COR 7% Healthcare distribution is essential; 10% EPS growth at reasonable valuation. Critical middleman role in drug supply chains. Negative FCF limits M&A flexibility. 9 Clorox Co. CLX 6% Pricing power via IGNITE strategy; 3.31% yield in a staple sector. Cost savings offset tariff-driven input inflation. Margin squeeze if pricing elasticity falters. 10 Visa Inc. V 5% Resilient payment network with 54% margins; global transaction growth. Essential infrastructure for digital spending. Consumer debt limits card usage. 11 Kinder Morgan Inc. KMI 5% 4.3% yield with LNG/data center tailwinds; $8.1B backlog insulates against slowdown. Midstream stability amid energy volatility. Tariffs raise pipeline material costs. 12 Intuit Inc. INTU 5% AI-driven tax/accounting tools gain traction in cost-cutting environment. High switching costs and $198B TAM. Tech sell-offs pressure premium valuation. 13 ConocoPhillips COP 5% Domestic energy focus offsets tariff risks; $10B shareholder returns. Willow project boosts long-term production. Oil demand softens in slowing economy. 14 Inc. AMZN 5% Scale mitigates tariff costs; cloud/AI growth offsets retail risks. $101B cash reserves for strategic flexibility. Consumer-spending slowdown hits e-commerce. 15 S&P Global Inc. SPGI 4% Critical data/ratings provider in volatile markets; 27% margins. 'Essential utility' for institutional investors. High valuation (P/E 41.1) risks multiple compression. Total 99% DeepSeek's weightings fell short, amounting to 99%. When Lopez-Lira pointed that out, the AI responded with two possible reasons for the discrepancy. The first was that it could have been based on a rounding issue. The second was that it may have decided to keep a 1% cash allocation. The model could not confirm which option was the accurate reason for the decision. Like any investment strategy, there's risk involved, and past performance isn't guaranteed to continue, Lopez-Lira said. As long as the portfolios buy stocks or stick to long-only positions, he expects them to match the S&P 500's performance, or perhaps over- or underperform by a small margin. Though it's important to note that rotating stocks on a monthly basis outside a tax-advantaged account could lead to tax liabilities for short-term capital gains, which are taxed at a higher rate than assets held for over a year. While Lopez-Lira said his findings suggest AI can mimic the services professional portfolio managers provide, some analysts disagree. Michael Robbins, author of Quantitative Asset Management, noted that, while each model's investing strategy may look like it works, there's no way to know for certain. For example, in the new AI era, there hasn't been a massive stock-market crash or an event like the 2008 financial crisis to determine how an AI-led investment account would respond. You're perhaps thinking that humans are shaped by their own memories and experiences, too. But Robbins said that people live through those experiences. It means a person has navigated an event without foresight, perhaps even with a bit of intuition. Meanwhile, the machines are pretrained. That said, he would equate AI's skills to that of an investment manager who recently entered the workforce and is working from textbook knowledge. Additionally, he noted that while both humans and machines make mistakes, AI can hallucinate, causing it to make more extreme, and unacceptable, errors. It's also important to note that the three AI investment accounts on Autopilot only rebalance monthly, so they aren't able to react to any sudden changes. Finally, Lopez-Lira remains in the loop, overseeing the choices and making sure the appropriate information is considered. For that, he receives a small percentage of revenue from the subscriptions that have opted into the account. Lopez-Lira began managing ChatGPT's portfolio in September 2023. The returns, which are based on the aggregate results of client portfolios, are 43.5% from September 2023 to May 30, 2025, according to Autopilot. The S&P 500 had a total return of 34.7% over the same period, according to Dow Jones Market Data. In comparison, Grok's portfolio returned 2.3% since its inception on Feb. 11 of this year through May 30, according to Autopilot. The S&P 500 had a total return that was down 2.2% over the same period, according to Dow Jones Market Data. DeepSeek was down 0.25% since its inception on Feb. 3 through May 30, according to Autopilot. The S&P 500 had a negative total return of 0.93% for the same period, according to Dow Jones Market Data. 'I'm not wildly wealthy, but I've done well': I'm 79 and have $3 million in assets. Should I set up 529 plans for my grandkids? How do I make sure my son-in-law doesn't get his hands on my daughter's inheritance? Circle's stock is having another big day. What the blockbuster IPO has meant for other cryptocurrency plays. The S&P 500 closes at 6,000 as bulls aim for return to record territory 'I was pushed out of her life when she was 18': My estranged daughter, 29, misuses drugs. Should I leave her my Roth IRA? Error in retrieving data Sign in to access your portfolio Error in retrieving data Error in retrieving data Error in retrieving data Error in retrieving data

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