Gemini 3.1 Flash-Lite, designed for developers' large-scale, high-frequency workloads, is now available for preview to developers starting Tuesday. It includes a "thinking level" feature and has shown significant improvements in performance benchmarks. The model's first answer response time is 2.5 times faster compared to Gemini 2.5 Flash, and its output speed is 45% faster. In benchmark tests like GPQA Diamond and MMMU Pro, it outperforms competitors like GPT-5 Mini. The pricing is $0.25 per million input tokens and $1.50 per million output tokens, with a maximum context window of 1 million tokens. On March 3rd, Google launched Gemini 3.1 Flash-Lite,…
Japan's antitrust regulator, the Japan Fair Trade Commission (JFTC), launched a surprise on-site inspection at Microsoft Japan's headquarters on February 25. According to sources familiar with the matter, the inspection primarily focuses on investigating whether Microsoft has been improperly promoting its Azure cloud platform by leveraging its dominant position in the operating system and office software markets. The JFTC suspects that Microsoft has set unfair licensing terms, making it more costly or technically challenging for customers to run Windows Server or Microsoft 365 software on third-party platforms like Amazon Web Services (AWS) or Google Cloud, compared to using Azure. A…
A research report sent to clients by Wall Street financial giant JPMorgan (NYSE:JPM) on Tuesday revealed that hedge funds, often referred to as "smart money," bought up the largest U.S. tech giants and SaaS software stocks that are thought to be highly susceptible to cutting-edge AI technologies. This could indicate that the Nasdaq 100 Index (NASDAQ:NDX), which is considered a "barometer" for tech stocks, might be poised for a short-term rebound after nearly a month of pullbacks. Following the substantial rally of the U.S. stock market's super bull run since 2023, the world's seven largest U.S. tech giants, including Google…
The top stocks to sell by trading volume:NVIDIA (NASDAQ:NVDA) closed down by 1.64%, with a trading volume of $35.35 billion.According to reports, OpenAI launched its first AI model powered by the chip of NVIDIA's competitor, Cerebras.The report states that OpenAI released its first AI model based on semiconductor startup Cerebras Systems' chip, called GPT-5.3-Codex-Spark. This model is a lightweight but faster version of its latest code automation software, Codex, designed to compete with companies like Alphabet's Google and Anthropic in the AI programming assistant market. Second place:Tesla (NASDAQ:TSLA) closed down by 2.62%, with a trading volume of $25.83 billion.According to…
The No. 1 most actively traded U.S. stock on Wednesday was Nvidia(NASDAQ:NVDA), which closed up 0.80% with $27.384 billion in trading volume.
UBS raised its target price on Nvidia from $235 to $245.
In its latest report, Goldman Sachs lifted its earnings forecast for Nvidia’s fiscal fourth quarter of 2026 and maintained a $250 price target, emphasizing that revenue visibility for 2027 will be a key catalyst. Institutional ratings show that more than 90% of analysts assign a “Buy” or “Overweight” rating, with an average target price of $260.26, reflecting market optimism about AI computing demand. However, Goldman also warned of risks such as a slowdown in AI infrastructure investment and intensifying competition.
The No. 2 most actively traded stock was Tesla (NASDAQ:TSLA), which rose 0.72% on trading volume of $24.366 billion.
According to reports, Tesla Vice President Raj Jegannathan announced on LinkedIn on February 9 local time that he was leaving the company, ending his 13-year tenure. This marks the latest departure in a wave of executive exits from companies under Elon Musk. Previously, several core executives at Tesla and xAI had also stepped down.
Jegannathan wrote, “It’s not easy to summarize 13 years in one post. My journey at Tesla has been a continuous evolution. As I leave, I do so with gratitude and excitement for what lies ahead.”
The No. 3 most actively traded stock was Micron Technology (NASDAQ:MU), which surged 9.94% on trading volume of $19.165 billion.
On Wednesday, Morgan Stanley raised its target price on the stock from $350 to $450 while maintaining an “Overweight” rating. The new target is above Micron’s Wednesday closing price of $410.34 and aligns with the broadly bullish consensus among analysts. Public data show that the stock’s average analyst rating stands at 1.56 (Strong Buy).
In addition, during a speech at the Wolfe Research conference, Micron addressed rumors that it “might miss out on Nvidia’s new HBM4 orders,” stating that the supply-demand imbalance, with capacity in short supply, is expected to persist at least through 2028. The clarification helped lead a strong rebound in shares of several leading memory manufacturers.
The No. 4 most actively traded stock was Microsoft (NASDAQ:MSFT), which fell 2.15% on trading volume of $16.686 billion.
According to media reports, Bill Gates, chairman of the Gates Foundation, made a surprise appearance in Zhangjiang, Shanghai, on the evening of February 11 to attend an event titled “Action Creates Hope.”
This visit marked Gates’ return to China approximately two and a half years after his previous trip in June 2023.
In an interview, Gates directly addressed the controversy surrounding his relationship with Jeffrey Epstein. He clarified, “Between 2011 and 2014, I did have several dinners with Epstein, but there is really nothing new to add about that. I never had contact with any victims, nor did I ever visit his island.”
The No. 5 most actively traded stock was Alphabet Class A (NASDAQ:GOOGL), which declined 2.39% on trading volume of $14.066 billion.
According to reports, Google is introducing a new feature that allows consumers to purchase products directly when receiving AI-powered answers through its search engine and Gemini chatbot. This initiative is part of a broader strategy to monetize user engagement with artificial intelligence more directly.
In a letter to the advertising industry on Wednesday, the company said that its AI mode in Google Search is testing new ad formats that allow retailers and other advertisers to showcase products. Google also stated that users can now purchase items from Etsy and Wayfair directly within Gemini. The newly added “Direct Offers” feature in AI mode will enable brands to provide discounts to potential shoppers.
The No. 6 most actively traded stock was Apple (NASDAQ:AAPL), which rose 0.67% on trading volume of $13.963 billion.
Well-known technology journalist Mark Gurman reported that Apple’s long-planned upgrade to its Siri voice assistant has encountered setbacks in recent weeks of testing, which could delay the release of several highly anticipated features.
According to sources familiar with the matter, Apple had originally planned to introduce these new features in iOS 26.4, scheduled for release in March, but is now considering spreading them across future versions.
This means that at least some of the features could be postponed until iOS 26.5, expected in May, or even until iOS 27, set for release in September.
After ChatGPT pushed generative AI into the public spotlight at the end of 2022, changes in the investment sector accelerated. The level of investment in AI hardware and data centers by companies has approached some of the largest investment waves in U.S. history. The market has consequently thrown out a bunch of attractive revenue curves, but the problem has also become sharper: how likely are these forecasts to be realized, and is it worth investing capital and time for them?
Michael J. Mauboussin from Morgan Stanley Investment Management’s Counterpoint Global directly provided a methodology in his report on the 10th: to evaluate such forward-looking judgments, one should “start with an initial belief and update that belief as new results appear,” which is essentially “Bayesian reasoning”: “New Conclusion = Initial Belief (Prior Probability) × Adjustment Factor from New Evidence (Likelihood Ratio).”
Following this framework, the report compared two of the most watched predictions to historical distributions: OpenAI’s revenue from $3.7 billion in 2024 to $145 billion in 2029 (a 108% compound annual growth rate over five years), and Oracle’s cloud business from $10 billion in fiscal year 2025 to $166 billion in fiscal year 2030 (a 75% five-year compound growth rate). The conclusion was blunt: among U.S. public companies between 1950-2024, no company has ever achieved this kind of scale growth from such starting points.
What’s more troublesome is that AI infrastructure is not as simple as “buying a few more servers.” Building data centers is essentially a large-scale project, and large projects have their own baseline failure rates: budget overruns, delays, and underperformance are almost the norm. The report also explained this series of intensive transactions and “capacity expansion announcements” as part of a competitive strategy: they may not just be aimed at meeting demand but also signaling to competitors, trying to deter potential entrants—but this kind of first-mover bet inherently carries high risk.
Putting OpenAI’s Forecast into Historical Context: 108% Compound Growth is “Blank” in the Sample
The report uses a very specific reference frame: it selects a group of U.S. listed companies from 1950-2024 whose initial revenue was between $2 billion and $5 billion (in 2024 dollars), with nearly 18,900 company-period observations. The mean five-year compound growth rate for this group was only 7.0%, with a standard deviation of 10.6%.
OpenAI’s forecast suggests: from $3.7 billion in 2024 to $145 billion in 2029, a 108% five-year compound growth rate. The report’s conclusion is tough—over the past three-quarters of a century, no publicly listed company has achieved such a pace. Even using a normal approximation to describe this, it’s nearly a 9.5 standard deviation result, with an extremely low probability. Furthermore, the historical growth distribution itself is not normal and has fat tails, but this doesn’t change the “almost invisible” conclusion.
A detail worth noting: since the sample has “never happened,” the baseline probability becomes 0, making Bayesian reasoning itself unworkable. The report uses common heuristic methods (such as 3/N, Laplace smoothing) to get an initial probability still under one-thousandth.
Evidence Does Help “Raise the Probability,” But to What Extent? The Report Doesn’t Make It Optimistic
The report acknowledges that baseline probabilities are not absolute laws and that the world will change. It provides two pieces of evidence that can push OpenAI’s probability of success upward:
Speed of Diffusion: ChatGPT reached 100 million users in 2 months. In comparison, TikTok took 9 months, Instagram took 28 months, Facebook took 4.5 years; the internet took 7 years, mobile phones took 16 years, and telephones took 75 years. Even considering population changes, this speed is still extremely rare. The report also reminds us that users don’t necessarily equate to revenue, as many don’t pay.
Short-Term Revenue Growth: OpenAI expects $13 billion in revenue in 2025, a year-over-year growth rate of about 250%. This is much higher than the average compound growth rate over five years.
However, the report immediately sets the “optimistic boundary”: the larger a company gets, the smaller the fluctuations in its growth rate tend to be, and sustaining a high growth rate becomes increasingly difficult. Furthermore, OpenAI also gave a 2030 revenue forecast of $200 billion, which means even with the window shifted, the 2025-2030 five-year compound growth rate is still projected to be 72.7%.
Using a reference group with initial revenue between $10 billion and $15 billion (about 3,700 observations), the conclusion remains the same: no one has ever done this. Even if the starting revenue threshold is lowered to at least $6.5 billion and the sample size expanded to more than 16,400 observations, the result is still the same.
Growth Doesn’t Equal Value: Cash Flow Gaps and Equity Incentives Will Pull the “High Growth Story” Back to Financial Reality
At this point, the report pivots to a more realistic reminder: growth itself doesn’t create value. It also introduces constraints in defining the “Total Addressable Market (TAM)”—it’s not just about “how much can be sold,” but “how much revenue can be generated with 100% market share under the condition of creating shareholder value.” The core constraint is whether the return on investment exceeds the cost of capital.
In OpenAI’s case, the report directly addresses the constraints:
Free cash flow is expected to be negative $9 billion in 2025, and negative $17 billion in 2026. In this situation, maintaining “high-speed expansion + heavy investment” will almost inevitably require continued external financing.
A significant portion of employee compensation is stock-based (SBC). It’s estimated that SBC will exceed income by 45% in 2025, equivalent to about $1.5 million per employee per year, and is seven times the SBC issuance intensity of large tech companies before their IPO.
These details don’t directly negate the revenue forecasts but push an often-overlooked problem to the forefront: even if the revenue growth materializes, the capital structure, financing conditions, and dilution costs could ultimately determine “what shareholders actually get.”
Oracle’s $166 Billion Target for Cloud: Signed Deals Are an Advantage, But Delivery and Financing Are Hard Constraints
Oracle’s narrative comes from a different set of evidence: the company signed several billion-dollar-level cloud infrastructure contracts in 2025, significantly boosting its “Remaining Performance Obligations” (RPO)—future revenue tied to signed customer agreements. Management therefore forecasted cloud revenue from $10 billion in fiscal 2025 to $166 billion in fiscal 2030, corresponding to a 75% five-year compound growth rate. In fiscal 2025, cloud will account for 17% of Oracle’s total revenue of $57.4 billion.
Again, the report starts by applying baseline probabilities: in the past 75 years, no company with starting revenue above $10 billion has managed to achieve this kind of growth in five years. Even lowering the starting revenue threshold to $5.6 billion, the conclusion is still the same.
It also provides a more directly comparable group to Oracle’s cloud size: companies with initial revenue between $8 billion and $12 billion, about 4,400 observations. The average five-year compound growth rate for this group was 5.7%, with a standard deviation of 9.6%. The report also reminds that this is comparing “business units” to “whole companies,” so it’s not an exact match.
Oracle’s advantage lies in its RPO scale, which can adjust the baseline probability, but the report emphasizes that the adjustment should not just consider orders, but also the financing needs to support growth, the risk from competitors, and the potential delays in infrastructure delivery.
AI Data Centers Are a Typical “Large Project,” and the Success Rate for Such Projects Doesn’t Favor You
The main battleground for AI investments is hardware and data centers. The report mentions that OpenAI and Oracle are both partners in the “Stargate Project,” which is expected to invest up to $500 billion in AI infrastructure by 2029.
The key point is: AI data centers differ from traditional data centers. They have more expensive hardware, significantly higher electricity demands, and more reliance on cooling systems. The bottlenecks are very real—electricity access, specialized hardware supply, and so on.
The report uses Bent Flyvbjerg’s database of 16,000 large projects for comparison. The results are almost “discouraging”:
47.9% of projects are completed within the budget.
Only 8.5% are completed within budget and on time.
Only 0.5% are completed within budget, on time, and achieve expected returns.
The takeaway is straightforward: don’t assume that “on-time delivery” is the default. Key bottlenecks like power, chips, and equipment need to be closely monitored. Meanwhile, modular design tends to succeed more easily, but in an environment of rapidly growing AI demand and competitors fighting for first-mover advantage, “slow thinking, fast action” is hard to execute.
Intensive Deals and Capacity Expansion Announcements Might Be a “First-Mover Deterrent” Competitive Experiment
The report counts that OpenAI announced about 15 transactions related to infrastructure construction in 2025. At the same time, giant cloud providers like Alphabet, Amazon, and Microsoft raised their capital expenditure forecasts, while players like Anthropic and CoreWeave made large investment commitments.
The author compares this frenzy with historical examples, such as the telecommunications investment wave from the late 90s to early 2000s, which eventually left behind overcapacity and bankruptcy cases. Today, there is still a “demand has not reached the ceiling” aspect—the report quotes data that shows, by the second half of 2025, the global AI diffusion rate (the percentage of people who have used GenAI products) is only 16%.
What’s truly interesting is the speculation on motivations: part of this action may be driven by a strategic signal—using large-scale capacity commitments to lock in the market and deter competitors and potential entrants. The report cites Porter’s concept of a “preemptive strategy” and also clearly spells out the risks: this is a bet on a market outcome that hasn’t yet clarified, and if it fails to scare off competitors, it could lead to a more intense war of attrition. A more realistic division is financing ability: early-stage AI companies need continuous external funding, while giants like Amazon, Google (NASDAQ:GOOGL), and Meta Platforms (NASDAQ:META) have far more abundant cash flow and much higher tolerance for risk.
Through 2025, capital is still flowing, but the report clearly says: this will change.
What This Report Really Wants You to Do: Break the Story Into Probabilities and Update It with Data
The report repeatedly stresses that it is not “bearish on AI” but rather advocates turning the judgment process into an updatable probability problem: first set thresholds for the fervor using baseline probabilities, then slowly adjust using diffusion speed, real revenue, engineering progress, and financing conditions. It also emphasizes that it does not provide investment advice—however, it offers a starting point that is harder to deceive oneself with: when predictions fall into areas that have never appeared in historical samples, optimism itself needs evidence, and the evidence needs to be continuously updated.