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After Plummeting Over $1 Trillion in Value, This Super Artificial Intelligence (AI) Stock Is Mounting a Major Comeback, With Analysts Predicting Gains of Up to 400%
Earlier this year, Nvidia lost more than $1 trillion in market capitalization. Now, it’s the most valuable company in the world.
For a few years now, the artificial intelligence (AI) movement has largely hinged on the performance of a single company: Nvidia (NVDA -0.42%).
Sure, if Microsoft or Amazon posted strong results from their respective cloud computing platforms or if Tesla managed to hype investors up over the prospects of self-driving robotaxis or humanoid robots, the technology sector might see a fleeting upward movement. At the end of the day, however, the focus seemed to eventually return to Nvidia — with analysts obsessing over how demand for the company’s chips and data center services were trending.
During the first half of the year, Nvidia’s ship was caught in an epic storm. Investors started to question the company’s long-growth prospects — inspiring prolonged periods of panic-selling in the process. All told, Nvidia’s market cap dropped by more than $1 trillion.
But now, with a market value north of $4 trillion, Nvidia has reclaimed its position as the most valuable company on the planet. Even better? Some on Wall Street are calling for further gains of up to 400%.
Let’s explore the tailwinds supporting Nvidia’s long-term growth narrative and detail why Wall Street sees such massive upside for the king of the chip realm.
One Wall Street analyst is calling for a $10 trillion valuation for Nvidia
One of the most bullish Nvidia analysts on Wall Street is the I/O Fund’s Beth Kindig. Kindig suggested that Nvidia could reach a $10 trillion market cap by 2030 — implying 140% upside from current levels. Let’s explore the main catalysts supporting Kindig’s forecast.
According to management from Microsoft, Amazon, and Alphabet, roughly $260 billion will be spent in 2025 alone on AI infrastructure. On top of that, Meta Platforms is expected to spend roughly $70 billion on capital expenditures this year — nearly double what it spent in 2024. Lastly, Oracle is beginning to make significant headway in infrastructure services — allowing companies to rent Nvidia GPUs from their cloud-based data center platform. From a macro perspective, rising capex from the cloud hyperscalers bodes well for chip demand.
Kindig takes these secular tailwinds one step further, suggesting that competition from Intel and Advanced Micro Devices does not pose much of a threat to Nvidia’s dominance. While it’s hard to know how vendor preferences could change over the next several years, current industry research trends suggest that Kindig might be right — underscored by Nvidia’s rising market share in the AI accelerator industry.
The area of Kindig’s analysis that I think is currently overlooked the most revolves around Nvidia’s software architecture, called CUDA. Since CUDA is integrated tightly with Nvidia’s hardware, developers essentially become locked into the company’s ecosystem.
Not only does this lead to customer stickiness, but it opens the door for Nvidia to be at the forefront of more sophisticated, evolving AI applications in areas such as robotics and autonomous driving.
Image source: Getty Images.
What about $20 trillion?
Former management consulting executive Phil Panaro is even more bullish than Kindig. By 2030, Panaro thinks Nvidia’s share price could reach $800 — implying roughly a $20 trillion market cap.
Panaro cites opportunities across Web3 development and evolving use cases around how enterprises and governments leverage AI to generate more efficiency and cost savings as the main pillars supporting Nvidia’s upside.
While these trends could eventually drive significant demand for Nvidia’s data center services, tech adoption within the government tends to move slowly. Meanwhile, Web3 remains an emerging concept that could take far longer to mature than Panaro is assuming.
Is Nvidia stock a buy right now?
Nvidia stock has been mounting an epic comeback over the last couple of months. This valuation expansion can be easily seen through the dynamics of the company’s rising forward price-to-earnings (P/E) multiple. Nevertheless, Nvidia’s forward P/E of 40 is still well below levels seen earlier this year.
NVDA PE Ratio (Forward) data by YCharts
Trying to model Nvidia’s peak valuation is an exercise in false precision. The bigger takeaway is that analysts on Wall Street are not only calling for significant upside in the stock, but they have outlined the foundation for Nvidia’s long-term growth. The important theme here is that Nvidia has opportunities well beyond selling chips — many of which have yet to make meaningful contributions to the business.
I see Nvidia stock as a no-brainer. Investors with a long-run time horizon might consider scooping shares up at current prices and plan to hold on for years to come.
John Mackey, former CEO of Whole Foods Market, an Amazon subsidiary, is a member of The Motley Fool’s board of directors. Suzanne Frey, an executive at Alphabet, is a member of The Motley Fool’s board of directors. Randi Zuckerberg, a former director of market development and spokeswoman for Facebook and sister to Meta Platforms CEO Mark Zuckerberg, is a member of The Motley Fool’s board of directors. Adam Spatacco has positions in Alphabet, Amazon, Meta Platforms, Microsoft, Nvidia, and Tesla. The Motley Fool has positions in and recommends Advanced Micro Devices, Alphabet, Amazon, Intel, Meta Platforms, Microsoft, Nvidia, Oracle, and Tesla. The Motley Fool recommends the following options: long January 2026 $395 calls on Microsoft, short August 2025 $24 calls on Intel, and short January 2026 $405 calls on Microsoft. The Motley Fool has a disclosure policy.
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AI in health care could save lives and money — but not yet

Imagine walking into your doctor’s office feeling sick – and rather than flipping through pages of your medical history or running tests that take days, your doctor instantly pulls together data from your health records, genetic profile and wearable devices to help decipher what’s wrong.
This kind of rapid diagnosis is one of the big promises of artificial intelligence for use in health care. Proponents of the technology say that over the coming decades, AI has the potential to save hundreds of thousands, even millions of lives.
What’s more, a 2023 study found that if the health care industry significantly increased its use of AI, up to US$360 billion annually could be saved.
WATCH: How artificial intelligence impacted our lives in 2024 and what’s next
But though artificial intelligence has become nearly ubiquitous, from smartphones to chatbots to self-driving cars, its impact on health care so far has been relatively low.
A 2024 American Medical Association survey found that 66% of U.S. physicians had used AI tools in some capacity, up from 38% in 2023. But most of it was for administrative or low-risk support. And although 43% of U.S. health care organizations had added or expanded AI use in 2024, many implementations are still exploratory, particularly when it comes to medical decisions and diagnoses.
I’m a professor and researcher who studies AI and health care analytics. I’ll try to explain why AI’s growth will be gradual, and how technical limitations and ethical concerns stand in the way of AI’s widespread adoption by the medical industry.
Inaccurate diagnoses, racial bias
Artificial intelligence excels at finding patterns in large sets of data. In medicine, these patterns could signal early signs of disease that a human physician might overlook – or indicate the best treatment option, based on how other patients with similar symptoms and backgrounds responded. Ultimately, this will lead to faster, more accurate diagnoses and more personalized care.
AI can also help hospitals run more efficiently by analyzing workflows, predicting staffing needs and scheduling surgeries so that precious resources, such as operating rooms, are used most effectively. By streamlining tasks that take hours of human effort, AI can let health care professionals focus more on direct patient care.
WATCH: What to know about an AI transcription tool that ‘hallucinates’ medical interactions
But for all its power, AI can make mistakes. Although these systems are trained on data from real patients, they can struggle when encountering something unusual, or when data doesn’t perfectly match the patient in front of them.
As a result, AI doesn’t always give an accurate diagnosis. This problem is called algorithmic drift – when AI systems perform well in controlled settings but lose accuracy in real-world situations.
Racial and ethnic bias is another issue. If data includes bias because it doesn’t include enough patients of certain racial or ethnic groups, then AI might give inaccurate recommendations for them, leading to misdiagnoses. Some evidence suggests this has already happened.
Humans and AI are beginning to work together at this Florida hospital.
Data-sharing concerns, unrealistic expectations
Health care systems are labyrinthian in their complexity. The prospect of integrating artificial intelligence into existing workflows is daunting; introducing a new technology like AI disrupts daily routines. Staff will need extra training to use AI tools effectively. Many hospitals, clinics and doctor’s offices simply don’t have the time, personnel, money or will to implement AI.
Also, many cutting-edge AI systems operate as opaque “black boxes.” They churn out recommendations, but even its developers might struggle to fully explain how. This opacity clashes with the needs of medicine, where decisions demand justification.
WATCH: As artificial intelligence rapidly advances, experts debate level of threat to humanity
But developers are often reluctant to disclose their proprietary algorithms or data sources, both to protect intellectual property and because the complexity can be hard to distill. The lack of transparency feeds skepticism among practitioners, which then slows regulatory approval and erodes trust in AI outputs. Many experts argue that transparency is not just an ethical nicety but a practical necessity for adoption in health care settings.
There are also privacy concerns; data sharing could threaten patient confidentiality. To train algorithms or make predictions, medical AI systems often require huge amounts of patient data. If not handled properly, AI could expose sensitive health information, whether through data breaches or unintended use of patient records.
For instance, a clinician using a cloud-based AI assistant to draft a note must ensure no unauthorized party can access that patient’s data. U.S. regulations such as the HIPAA law impose strict rules on health data sharing, which means AI developers need robust safeguards.
WATCH: How Russia is using artificial intelligence to interfere in election | PBS News
Privacy concerns also extend to patients’ trust: If people fear their medical data might be misused by an algorithm, they may be less forthcoming or even refuse AI-guided care.
The grand promise of AI is a formidable barrier in itself. Expectations are tremendous. AI is often portrayed as a magical solution that can diagnose any disease and revolutionize the health care industry overnight. Unrealistic assumptions like that often lead to disappointment. AI may not immediately deliver on its promises.
Finally, developing an AI system that works well involves a lot of trial and error. AI systems must go through rigorous testing to make certain they’re safe and effective. This takes years, and even after a system is approved, adjustments may be needed as it encounters new types of data and real-world situations.
AI could rapidly accelerate the discovery of new medications.
Incremental change
Today, hospitals are rapidly adopting AI scribes that listen during patient visits and automatically draft clinical notes, reducing paperwork and letting physicians spend more time with patients. Surveys show over 20% of physicians now use AI for writing progress notes or discharge summaries. AI is also becoming a quiet force in administrative work. Hospitals deploy AI chatbots to handle appointment scheduling, triage common patient questions and translate languages in real time.
READ MORE: AI and ‘recession-proof’ jobs: 4 tips for new job seekers
Clinical uses of AI exist but are more limited. At some hospitals, AI is a second eye for radiologists looking for early signs of disease. But physicians are still reluctant to hand decisions over to machines; only about 12% of them currently rely on AI for diagnostic help.
Suffice to say that health care’s transition to AI will be incremental. Emerging technologies need time to mature, and the short-term needs of health care still outweigh long-term gains. In the meantime, AI’s potential to treat millions and save trillions awaits.
This article is republished from The Conversation under a Creative Commons license. Read the original article.
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Could This Under-the-Radar Artificial Intelligence (AI) Defense Company Be the Next Palantir?
Palantir has emerged as a disruptive force in the AI realm, ushering in a wave of enthusiastic investors to the defense tech space.
Palantir Technologies was the top-performing stock in the S&P 500 and Nasdaq-100 during the first half of 2025. With shares soaring by 80% through the first six months of the year — and by 427% over the last 12 months — Palantir has helped drive a lot of attention to the intersection of artificial intelligence (AI) and defense contracting.
Palantir is far from the only company seeking to disrupt defense tech. A little-known competitor to the company is BigBear.ai (BBAI -3.35%), whose shares are up by an impressive 357% over the last year.
Could BigBear.ai emerge as the next Palantir? Read on to find out.
BigBear.ai is an exciting company in the world of defense tech, but…
BigBear.ai’s share price volatility so far this year mimics the movements of a rollercoaster. Initially, shares rose considerably shortly following President Donald Trump’s inauguration and the subsequent announcement of Project Stargate — an infrastructure initiative that aims to invest $500 billion into AI projects through 2029.
However, these early gains retreated following the Pentagon’s plans to reduce its budget by 8% annually.
While reduced spending from the Department of Defense (DOD) was initially seen as a major blow to contractors such as Palantir and BigBear.ai, the trends illustrated above suggest that shares rebounded sharply — implying that the sell-offs back in February may have been overblown. Why is that?
In my eyes, a major contributor to the recovery in defense stocks came after Defense Secretary Pete Hegseth announced his intentions to double down on a strategy dubbed the Software Acquisition Pathway (SWP).
In reality, the DOD’s budget cuts are focused on areas that are deemed non-essential or inefficient. For example, the Pentagon freed up billions in capital by reducing spend with consulting firms such as Booz Allen Hamilton, Accenture, and Deloitte. In addition, a contract revolving around an HR software system managed by Oracle was also cut.
Under the SWP, it appears that the DOD is actually looking to free up capital in order to double down on more tech-focused initiatives and identify vendors that can actually handle the Pentagon’s sophisticated workflows.
With so much opportunity up for grabs, it’s likely that optimistic investors saw this as a tailwind for BigBear.ai. This logic isn’t too far off base, either.
BigBear.ai’s CEO is Kevin McAleenan, a former government official with close ties to the Trump administration. McAleenan’s strategic relationships within the government combined with the DOD’s focus on working with leading software services providers likely has some investors buying into the idea that BigBear.ai won’t be flying under the radar much longer.
Image source: Getty Images.
…how does the company really stack up beside Palantir?
The graph below breaks down revenue, gross margin, and net income for BigBear.ai over the last year. With just $160 million in sales, the company tends to generate inconsistent gross margins — which top out at less than 30%. Moreover, with a fairly small sales base and unimpressive margin profile, it’s not surprising to see BigBear.ai’s losses continue to mount.
BBAI Revenue (TTM) data by YCharts
By comparison, Palantir generated $487 million in government revenue during the first quarter of 2025. In other words, Palantir’s government operation generates nearly triple the amount of revenue in a single quarter that BigBear.ai does in an entire year. On top of that, Palantir’s gross margins hover around 80%, while the company’s net income over the last 12 months was over $570 million.
Is BigBear.ai stock a buy right now?
Right now, BigBear.ai trades at a price-to-sales (P/S) ratio of around 11. While this may look “cheap” compared to Palantir’s P/S multiple of 120, there is a reason for the valuation disparity between the two AI defense contractors.
Palantir boasts large, fast-growing public and private sector businesses that command strong profit margins. By contrast, BigBear.ai is going to have a difficult time scaling so long as it keeps burning through heaps of cash.
Not only would I pass on BigBear.ai stock, but I also do not see the company becoming the next Palantir. Palantir is in a league of its own in the defense tech space, and I do not see BigBear.ai as a formidable challenger.
Adam Spatacco has positions in Palantir Technologies. The Motley Fool has positions in and recommends Abbott Laboratories, Accenture Plc, Oracle, and Palantir Technologies. The Motley Fool has a disclosure policy.
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