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Mary Meeker: AI Is the Fastest Tech Shift in History, Outpacing Even the Internet

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The rise of artificial intelligence has reached an “unprecedented” pace, according to tech investor and internet trends analyst Mary Meeker, whose new report documents what she calls the fastest technological adoption in modern history.

In her 340-page annual trends report, titled “Trends – Artificial Intelligence,” Meeker outlines how AI is transforming global industries at breakneck speed—faster even than the advent of the internet. The report highlights skyrocketing adoption rates, record-setting user growth, surging corporate investment, and a wave of innovation that is redefining the limits of both software and hardware.

“To say the world is changing at unprecedented rates is an understatement,” Meeker wrote in the report’s introduction.

One of the most striking indicators of AI’s rise is the success of OpenAI’s ChatGPT. Since its public debut in October 2022, the chatbot has reached 800 million users globally by April 2025. The report calls ChatGPT “history’s biggest overnight success,” noting it hit 100 million users in under two months—far outpacing earlier tech giants like Facebook, which took 4.5 years to reach the same milestone.

Unlike previous technological revolutions that began in one country and slowly expanded, ChatGPT gained traction worldwide almost immediately. Meeker notes that this simultaneous global uptake marks a new kind of tech diffusion.

The report estimates that it will take just three years for AI to be integrated into most households—compared to 12 years for desktop internet. That acceleration is being driven not only by public interest but by aggressive corporate adoption and investment. Firms such as NVIDIA, Google, Meta, Microsoft, and Baidu have dramatically increased their focus on AI, with mentions of the technology surging in earnings reports since 2022.

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“Companies are moving extremely aggressively,” Meeker writes, referring to both established tech giants and the new generation of AI start-ups. This includes rapid product development, high cash burn rates, and massive capital raises—all aimed at gaining an early advantage in a rapidly evolving landscape.

The report also underscores how AI model development has accelerated, with a 167% increase in the number of new models since 2020 and a 260% increase in the size of the data sets powering them. Meanwhile, the cost of inference—what it takes to run AI models—has dropped by 99% in two years, thanks to hardware advances such as NVIDIA’s 2024 Blackwell GPU chip, which is exponentially more energy-efficient than previous generations.

Though the cost to train cutting-edge models can now reach $1 billion, Meeker argues that the dramatic efficiency gains at both the hardware and software levels signal a new era of innovation.

“This is not just a tech cycle,” Meeker concludes, “it’s a fundamental reshaping of what’s possible—economically, architecturally, and globally.”

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AI Tools Boost Paper Production but Raise Quality Concerns in Scientific Research

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Large language models such as ChatGPT are increasing research output, particularly for scientists who are not native English speakers, but a new study warns that many AI-assisted papers are less likely to pass peer review.

Researchers at Cornell University, United States, analysed more than two million research papers posted between 2018 and 2024 on three major preprint servers, which host early versions of scientific work prior to formal review. Their findings, published in the journal Science, show that AI tools are reshaping how scientific papers are written and disseminated.

To identify AI-assisted papers, the team trained an AI system to detect text likely generated by large language models. Comparing papers posted before 2023 with those written after tools like ChatGPT became widely available, the researchers measured publication output and subsequent acceptance rates in scientific journals.

The analysis revealed a significant productivity boost for AI users. On a major preprint server for physics and computer science, researchers using AI produced about one-third more papers than those who did not. In biology and the social sciences, the increase exceeded 50 percent. The largest gains were seen among scientists whose first language is not English. In some Asian institutions, researchers published between 40 percent and nearly 90 percent more papers after adopting AI writing tools, depending on the discipline.

AI tools also appear to aid in literature review. Researchers using AI were more likely to identify newer studies and relevant books rather than relying on older, frequently cited works. “People using LLMs are connecting to more diverse knowledge, which might be driving more creative ideas,” said Keigo Kusumegi, a doctoral student and first author of the study.

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Despite the productivity gains, the study highlights quality concerns. Many AI-written papers, while linguistically polished, were less likely to be accepted by journals. Papers written by humans that scored high on writing complexity were more likely to be accepted, whereas AI-generated papers with similar scores often failed to meet scientific standards.

“Already now, the question is not, ‘Have you used AI?’ The question is, ‘How exactly have you used AI and whether it’s helpful or not,’” said Yian Yin, assistant professor at Cornell and corresponding author of the study. Yin added that the widespread adoption of AI tools across disciplines—including physical sciences, computer science, biology, and social sciences—requires careful consideration by reviewers, funders, and policymakers.

The researchers stress that AI-assisted tools are reshaping the academic ecosystem, offering opportunities to improve productivity and access to scientific knowledge, but they also call for guidelines to ensure that the technology is used responsibly and that scientific contributions maintain their integrity.

As AI becomes increasingly integrated into research practices, the challenge for the scientific community will be balancing efficiency and innovation with rigorous evaluation standards to maintain the quality and credibility of published science.

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Study Finds AI Models Get Basic Math Wrong Around 40 Percent of the Time

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Artificial intelligence (AI) tools are increasingly used for everyday calculations, but a new study suggests users should approach their answers with caution. Researchers from the Omni Research on Calculation in AI (ORCA) found that when tested on 500 real-world math prompts, AI models had roughly a 40 percent chance of producing an incorrect result.

The study evaluated five widely used AI systems in October 2025: ChatGPT-5 (OpenAI), Gemini 2.5 Flash (Google), Claude 4.5 Sonnet (Anthropic), DeepSeek V3.2 (DeepSeek AI), and Grok-4 (xAI). None of the models scored above 63 percent overall, with Gemini leading at 63 percent, Grok close behind at 62.8 percent, and DeepSeek at 52 percent. ChatGPT-5 scored 49.4 percent, while Claude trailed at 45.2 percent. The average accuracy across all five models was 54.5 percent.

“Although the exact rankings might shift if we repeated the benchmark today, the broader conclusion would likely remain the same: numerical reliability remains a weak spot across current AI models,” said Dawid Siuda, co-author of the ORCA Benchmark.

Performance varied across categories. AI models performed best in basic math and conversions, with Gemini achieving 83 percent accuracy and Grok 76.9 percent. ChatGPT-5 scored 66.7 percent in the same category, giving a combined average of 72.1 percent—the highest across the seven tested categories. Physics proved the most challenging, with overall accuracy dropping to 35.8 percent. Grok led this category at 43.8 percent, while Claude scored just 26.6 percent.

Some AI systems struggled more than others in specific fields. DeepSeek recorded only 10.6 percent accuracy in biology and chemistry, meaning it failed nearly nine out of ten questions. In finance and economics, Gemini and Grok reached 76.7 percent, while the other three models scored below 50 percent.

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The study also categorized the types of mistakes AI makes. “Sloppy math” errors, including miscalculations or rounding issues, accounted for 68 percent of mistakes. Faulty logic errors represented 26 percent, reflecting incorrect formulas or assumptions. Misreading instructions accounted for 5 percent, while some AI simply refused to answer. Siuda noted that multi-step calculations with rounding were particularly prone to error.

The research highlights the importance of verifying AI-generated calculations. “If the task is critical, use calculators or proven sources, or at least double-check with another AI,” Siuda advised.

All 500 prompts used in the study had one correct answer and were designed to reflect everyday math tasks, including statistics, finance, physics, and basic arithmetic. The findings indicate that while AI can assist with calculations, it remains unreliable for precise numerical work and users should remain cautious when relying on these tools.

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Generative AI Adoption Varies Widely Across Europe, Survey Finds

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The use of generative artificial intelligence (Gen AI) tools such as ChatGPT, Gemini, and Grok has grown significantly across Europe, with millions of people now relying on the technology for personal, work, and educational purposes. These tools can generate new content, including text, images, code, and videos, based on user prompts and patterns learned from existing data.

According to Eurostat, about one-third of Europeans aged 16 to 74 used AI tools at least once in 2025. However, adoption rates vary widely across the continent, with usage ranging from 17 percent in Turkey to 56 percent in Norway. Within the European Union, Denmark leads with 48 percent of people reporting AI use, while Romania has the lowest rate at 18 percent.

Thirteen countries reported that at least two in five people had used Gen AI tools in the three months prior to the survey. These include Switzerland and Estonia (47 percent each), Malta (46 percent), Finland (46 percent), Ireland (45 percent), the Netherlands (45 percent), Cyprus (44 percent), Greece (44 percent), Luxembourg (43 percent), Belgium (42 percent), and Sweden (42 percent).

Conversely, eight countries saw usage fall below 25 percent, including Serbia (19 percent), Italy (20 percent), Bosnia and Herzegovina (20 percent), North Macedonia (22 percent), Bulgaria (23 percent), Poland (23 percent), Turkey (17 percent), and Romania (18 percent). Among major EU economies, Germany (32 percent) and Italy (20 percent) remain below the EU average, while Spain (38 percent) and France (37 percent) slightly exceed it.

Experts say the differences reflect the broader digital landscape and skill levels in each country. Colin van Noordt, a researcher at KU Leuven University in Belgium, told Euronews Next that nations with strong digital foundations, like Denmark and Switzerland, have higher adoption rates because their populations already possess digital skills, frequent internet use, and familiarity with technology.

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“In countries with lower adoption, people often don’t know generative AI exists or are unsure how to use it,” van Noordt said. He added that understanding how AI can be applied in daily life or work, often referred to as “AI literacy,” is a major factor in adoption. Government policies may encourage use, but underlying digital culture and practical skills appear to have a greater impact, he said.

The survey also highlighted differences in how AI is used. Across the EU, personal use (25 percent) exceeds work-related use (15 percent) in every country, though the gap varies. In the Netherlands, personal and work use are nearly equal at 28 percent and 27 percent, respectively. In Greece, 41 percent use AI personally, compared with just 16 percent at work.

Use of AI in formal education is limited, with only 9 percent of Europeans reporting educational use. Sweden and Switzerland lead at 21 percent, while Hungary records just 1 percent. Analysts suggest that uncertainty over practical applications of AI continues to limit workplace and educational adoption.

The Eurostat data underscores a clear north–south and west–east divide in Gen AI adoption, with Nordic and digitally advanced countries leading the way and southern, central-eastern, and Balkan nations trailing.

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