A new cohort of founders is compressing the revenue timeline that once defined startup success, but investors say durability matters far more than speed.
Reaching $10 million in annual recurring revenue used to be a milestone that took startups years to achieve and months to celebrate. A new wave of AI-native companies is doing it in a quarter.
Stripe’s 2025 annual letter revealed that the number of companies reaching $10 million ARR within three months of launch was double the 2024 count. The payments giant did not disclose the underlying hard numbers, but the directional signal is striking across every metric in the report.
Businesses running on Stripe generated $1.9 trillion in total volume in 2025, up 34% from 2024, equivalent to roughly 1.6% of global GDP. The 2025 cohort of new businesses grew around 50% faster than the 2024 cohort. Among startups incorporated through Stripe Atlas, 20% now land their first paying customer within 30 days of incorporation, more than double the rate in 2020.
The median Atlas startup that incorporated in 2025 generated 39% more revenue in its first six months than its 2024 counterpart. More Atlas startups hit $100,000 in revenue in their first six months, 56% more than in 2024, and they got there nearly 11% faster, in 108 days versus 121. In January 2023, just 15% of Atlas founders said they were building AI startups. By 2024 that rose to 33%. In 2025, it hit 42%.
Stripe’s own research pointed in this direction earlier. The top 100 AI companies on Stripe achieved annualized revenues of $1 million in a median period of just 11.5 months, four months ahead of the fastest-growing SaaS companies. Individual examples made headlines: AI coding assistant Cursor exceeded $100 million in revenue, Lovable hit $17 million in ARR in just three months, and Bolt achieved $20 million in ARR in two months.
Best-in-class enterprise AI startups are now reaching $2 million or more in ARR within their first 12 months, while consumer-focused AI ventures are hitting $4.2 million or more in the same timeframe. AI-native startups are expected to outperform traditional SaaS by 300% in revenue per employee. A $10 million ARR AI startup might require only 15 to 20 employees, whereas a traditional SaaS company would typically need 50 to 70.
Steve Horrex, Finance Director for Stripe EMEA, described the data as “mind-blowing.”
“AI companies aren’t just growing fast — they’re rewriting the startup playbook,” he said. “We’re seeing companies reach revenue milestones that traditionally took years to achieve in a matter of months.”
Hypergrowth at this pace creates internal strain as much as external opportunity.
“You want standardized FP&A processes — long-range plans feeding annual plans, feeding OKRs,” Horrex explained. “But you’re in a world where you fly through forecasts within a quarter because growth is unpredictable.”
He noted that finance teams are moving from weekly or monthly volume monitoring to daily insights and continuous trend analysis.
Stripe’s cofounders Patrick and John Collison noted in their letter that nearly every recognisable AI product launched globally by default, including ChatGPT, Claude, Replit, Lovable, Cursor, and Midjourney. The global-from-day-one pattern means that even very small teams are managing multicurrency operations, cross-border compliance, and international customers from the outset.
Analysis of 3,500 software companies through 2025 found that AI-native companies had a median gross revenue retention of just 40% and median net revenue retention of 48%, worse than both B2B SaaS (82% NRR) and B2C (49% NRR).
According to OpenView Partners’ Q4 2025 benchmarking report, the median AI-native company is losing 43% of its customers annually, nearly double the 23% churn rate for traditional SaaS. Companies with net dollar retention above 110% grew revenue by an average of 87% year-over-year. Those with retention below 80% showed just 23% growth, with 31% of those companies actually shrinking.
Traditional software firms can thrive with monthly churn in the low single digits. But many AI companies are seeing double that, meaning they have to sprint just to stand still, constantly replacing users who move on to the next tool. Without unique intellectual property or deep workflow integration, such products can be replaced with minimal friction. There is some cause for measured optimism.
AI retention improved significantly through 2025. Median gross retention jumped from 27% in January to 40% in September, suggesting that early “AI tourists” have largely exited and those who remain are shifting from experimentation to genuine production use. In comparison, in 2024 founders were still publicly celebrating hitting $10 million in ARR in three years, which by most business standards remains a metric worth boasting about.