TSMC 2nm: Line for Future AI Stretched Until 2028
TSMC официально заполнила книгу заказов на грядущий 2нм техпроцесс. AMD планирует первенство в 2026 году, за ней в 2027-м последуют Google и AWS со своими касто
AI-processed from 36Kr (36氪); edited by Hamidun News
Imagine you want to build the world's fastest race car, but the only factory capable of casting its engine is already booked for the next four years. That's exactly the situation the entire tech world finds itself in. While software developers argue about the parameters of new models and the intricacies of prompt engineering, the real battle for AI dominance is being waged in sterile workshops in Taiwan.
TSMC has effectively confirmed its status as the ultimate gatekeeper of the future: all 2-nanometer process capacity is already fully booked. If you thought the GPU shortage during the mining era was a temporary hardship, prepare yourself for a new reality. What we're witnessing now is not simply high demand, but the total privatization of progress.
AMD plans to begin manufacturing its processors based on 2nm as early as 2026. This means the next-generation Zen architecture will get such a leap in energy efficiency that competitors will have to work hard to prevent their server solutions from becoming expensive space heaters. For AMD, this is a chance to definitively establish itself in data centers, where every watt counts.
But the most interesting part lies in the cloud giants' plans. Google and Amazon Web Services (AWS) have booked their slots for the second half of 2027. Why would companies that have always focused on software and retail want their own 2-nanometer chips?
The answer is prosaic: economics. Training neural networks at the scale of GPT-5 or Gemini 2 consumes so much electricity that saving even 15-20% of energy at the transistor level translates into billions of dollars saved annually. Google's own tensor processors (TPU) on 2nm are not just hardware; they're a way to reduce the cost of AI computing to levels inaccessible to competitors.
NVIDIA, which currently virtually dominates the AI accelerator market, is playing the long game. Jensen Huang is targeting 2028, when the company plans to release the Feynman architecture. Here we see a transition to an even more advanced process—A16.
The main technological innovation here is backside power delivery technology. In current chips, power and data transmission wires are intertwined, creating interference and limiting density. Moving power to the "back" allows packing even more computing power into the same volume without turning the chip into plasma.
This is critical for future AI accelerators, where computational density is the only parameter that matters for a model's survival. Why does this matter to us? We've grown accustomed to technologies gradually becoming cheaper, but the era of 2nm and below is an era of insanely expensive hardware.
The entry ticket to the club of those who own the most powerful AI now costs not just money, but time and long-term commitments to Taiwanese engineers. If you didn't book your place in the TSMC queue today, your startup or even a large corporation could find itself sidelined by progress in three to four years. We're entering a period when computational power becomes as rigidly distributed a strategic resource as oil or rare earth metals.
The situation is complicated by the fact that there are virtually no alternatives. While Intel struggles to get its processes in order and Samsung battles yield percentages, TSMC remains the only window to the world of ultra-high computing. This creates a dangerous dependence of the entire AI industry on a single geographic point.
Any upheaval in Taiwan now automatically means a halt to progress for NVIDIA, Apple, and Google simultaneously. Technological sovereignty in 2024 is not slogans, but having a TSMC contract for years to come. The main point: TSMC's silicon monopoly has become absolute.
Will any competitor be able to offer an alternative before 2027, or have we all officially become hostages to one island?
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