Author: Aki Wu Talks Blockchain In late October 2025, Nvidia's stock price reached a new all-time high, pushing its market capitalization past the $5 trillion mark, making it the first company globally to cross this threshold. Since the emergence of ChatGPT in late 2022, Nvidia's stock price has increased more than 12-fold. The AI revolution has not only driven the S&P 500 to new highs but also sparked discussions about a tech valuation bubble. Today, Nvidia's market capitalization even exceeds the total size of the entire cryptocurrency market, and in terms of global GDP ranking, Nvidia's market capitalization is second only to the United States and China. Remarkably, this AI superstar also had a "honeymoon period" in the cryptocurrency field. This article will review Nvidia's tumultuous history with the cryptocurrency mining industry and why it chose to withdraw and shift its focus to its core AI business. Crypto Bull Market Frenzy: Gaming Graphics Cards Turn into "Money Printing Machines" Looking back at Nvidia's history is like reading a legend of the ever-evolving narrative of technology. Founded in 1993, Nvidia started by inventing the GPU (Graphics Processing Unit) and rode the wave of the PC gaming boom in the late 1990s. Nvidia's GeForce series graphics cards were a huge success, and the company quickly rose to become a graphics card giant. However, when the gaming market gradually saturated and growth slowed, Nvidia also faced the predicament of unsold inventory. Fortunately, opportunity always favors the prepared—a major turning point was the cryptocurrency boom. In 2017, the prices of cryptocurrencies such as Bitcoin and Ethereum soared, sparking a "mining" craze. Because GPUs are ideally suited for parallel computing in mining, miners worldwide scrambled for graphics cards, turning them into money-printing machines with supply falling short of demand and prices skyrocketing. Nvidia emerged as one of the biggest winners behind this crypto bull market, reaping huge profits from card sales. Starting in the second half of 2020, the cryptocurrency market rebounded after a two-year hiatus. Bitcoin prices surged from less than $15,000 in the middle of the year to a peak of over $60,000 in early 2021, while Ethereum rose from a few hundred dollars to over $2,000. This new wave of price increases reignited the GPU mining frenzy. Miners snapped up the new generation of GeForce RTX 30 series graphics cards, leading to a shortage of high-end cards originally intended for gamers, plunging the market into a frenzy of "supply falling short of demand." While NVIDIA's RTX 30 series graphics cards initially surprised gamers with their high performance and cost-effectiveness, the soaring profits from Ethereum mining pushed their actual selling prices to outrageous levels. The RTX 3060, with a suggested retail price of 2499 RMB, was being resold for 5499 RMB, and the flagship RTX 3090 was even being priced close to 20,000 RMB. However, the persistent shortage of graphics cards brought the conflict between gamers and miners to the forefront. Nvidia opted for a "dual-track" approach, simultaneously lowering the Ethereum hash rate for its gamer-oriented GeForce cards (starting with the RTX 3060). However, this was later discovered to be a smokescreen. In reality, miners discovered that by plugging the RTX 3060 with a "dummy HDMI cable," it would perceive other graphics cards as also functioning as display adapters, thus bypassing the hash rate limitations in multi-GPU scenarios and achieving full-speed mining. Andreas demonstrated this on his Twitter account. On the other hand, a series of Cryptocurrency Mining Processors (CMPs) were launched specifically for miners, attempting to "divide the market." The official blog stated explicitly that day: "GeForce is born for gamers, CMP is born for professional miners." CMPs would eliminate display output, use open baffles to improve airflow in densely packed mining racks, and lower peak voltage/frequency for stable energy efficiency. However, precisely because CMPs lacked display output and had a short warranty period, exiting the market was more difficult for miners. GeForces, on the other hand, could be used for mining and could be refurbished and resold to struggling miners, offering better residual value and liquidity. Therefore, this project ultimately generated much hype but little substance, eventually fading from public view. According to Nvidia's financial report, graphics cards used for mining accounted for a quarter of its shipments in the first fiscal quarter of 2021, with sales of cryptocurrency-specific chips (CMP series) reaching $155 million. Fueled by the crypto boom, Nvidia's revenue for the entire year of 2021 soared to $26.9 billion, a 61% increase year-over-year, and the company's market capitalization briefly surpassed $800 billion. However, this favorable situation did not last long. On May 21, 2021, the Financial Stability and Development Committee of the State Council of China proposed to severely crack down on Bitcoin mining and trading. Subsequently, mining farms in Xinjiang, Qinghai, Sichuan and other places were shut down, and the mining business quickly came to a halt. In the same month and the following month, Bitcoin hashrate and price both came under pressure, and miners were forced to relocate or liquidate their equipment. By September 24, the People's Bank of China and multiple departments issued a joint notice, defining all virtual currency-related transactions as illegal financial activities and proposing a nationwide "orderly cleanup of the mining industry," further "closing the loopholes" at the policy level. For those in the Huaqiangbei mining machine industry, the cycle of boom and bust is nothing new. Those who experienced the mining machine "crash" of early 2018 still vividly remember it; some withdrew from the market in despair, but a few persevered and weathered the storm, investing their unsold machines into their own mining farms, waiting for the next boom. As it turns out, the bull market of 2020-2021 once again allowed those who held on to turn their fortunes around. In September 2022, a landmark event occurred in the crypto industry: the Ethereum blockchain completed its "merge" upgrade, transitioning from a Proof-of-Work (PoW) mechanism to a Proof-of-Stake (PoS) mechanism, eliminating the need for a large number of GPUs to participate in mining. This marked the end of the long-standing era of GPU mining. Without the specific needs of crypto miners, the global GPU market cooled rapidly, directly impacting Nvidia's performance. In the third quarter of 2022, Nvidia's revenue declined by 17% year-on-year to $5.93 billion, and net profit was only $680 million, a year-on-year decrease of 72%. Nvidia's stock price once fell to around $165 in 2022, nearly halving from its peak, and the former crypto boom instantly became a burden on its performance. Drawing a line: Nvidia's breakup with the mining industry Faced with the frenzy in the mining industry, complaints from gamers, and problems arising from cyclical profits, Nvidia gradually realized it needed to find a balance within the cryptocurrency mining boom and, at the right time, "draw a clear line" with it. As concerns about a bubble emerged from soaring cryptocurrency prices, the company also suffered from financial compliance issues. A subsequent investigation by the U.S. Securities and Exchange Commission (SEC) found that Nvidia had failed to adequately disclose the contribution of cryptocurrency mining to its gaming graphics card revenue growth for two consecutive quarters in fiscal year 2018. This was deemed improper disclosure. In May 2022, Nvidia agreed to settle with the SEC and pay a $5.5 million fine. This incident forced Nvidia to re-evaluate its delicate relationship with the crypto industry; while the cryptocurrency mining boom brought considerable profits, its volatility and regulatory risks could also damage the company's reputation and performance. After Ethereum switched to PoS in 2022, GPU mining demand plummeted, and Nvidia's gaming graphics card business quickly returned to normal supply and demand. Jensen Huang has also repeatedly emphasized that the company's future growth will primarily come from areas such as artificial intelligence, data centers, and autonomous driving, rather than relying on speculative businesses like cryptocurrencies. It can be said that after experiencing the highs and lows of the "mining card craze," Nvidia decisively distanced itself from this highly volatile industry, investing more resources in the broader and more socially valuable AI computing landscape. Furthermore, Nvidia's latest Inception program website for AI startups explicitly lists "unqualified organization types," including "crypto-related companies," demonstrating Nvidia's clear desire to distance itself from its former crypto associates. So, after fully embracing the AI industry, will Nvidia's chip business still intersect with the crypto industry? On the surface, since Ethereum bid farewell to the "mining era," the connection between GPUs and traditional crypto mining has weakened significantly. Major cryptocurrencies like Bitcoin have long used dedicated ASIC miners, and GPUs are no longer the highly sought-after "golden goose" for crypto miners as they once were. However, the two fields are not entirely without overlap, and new points of convergence are emerging in different forms. Some companies that previously focused on cryptocurrency mining are shifting their business focus to AI computing power services, becoming new customers of Nvidia. Furthermore, traditional Bitcoin mining companies are also exploring using surplus electricity and space resources to undertake AI computing tasks. Some large mining companies have recently replaced some of their equipment with GPU hardware for training AI models, believing that AI training offers a more stable and reliable source of revenue compared to the volatile cryptocurrency mining industry. The person who made the most money in the AI gold rush — Nvidia, the company that sells "shovels" In November 2022, OpenAI's ChatGPT emerged, causing a huge sensation worldwide with its large-scale AI models. For NVIDIA, this was undoubtedly another once-in-a-century opportunity. The world suddenly realized that to power these computationally intensive AI monsters, NVIDIA's GPU hardware support was indispensable. Following ChatGPT's explosive popularity, major tech companies and startups flocked to the "large model" track, leading to an explosive growth in the computing power required to train AI models. NVIDIA astutely recognized this fundamental truth: regardless of technological advancements, computing power will always be the basic currency of the digital world. Currently, Nvidia holds over 90% of the market share for large-scale model training chips. Its A100, H100, and next-generation Blackwell/H200 GPUs have become industry standards for AI acceleration computing. Due to demand far exceeding supply, Nvidia possesses extraordinary pricing power and profit margins in high-end AI chips. Goldman Sachs predicts that from 2025 to 2027, the capital expenditures of just the five major cloud service providers—Amazon, Meta, Google, Microsoft, and Oracle—are expected to approach $1.4 trillion, nearly tripling compared to the previous three years. These massive investments have laid the foundation for Nvidia's astronomical market capitalization. However, the AI field once experienced a shockwave of "cost reduction and efficiency improvement"—the explosive popularity of the open-source large model DeepSeek. The DeepSeek project claimed to have trained the DeepSeek V3 model with performance comparable to GPT-4 at an extremely low cost of only about $5.576 million, and subsequently released the R1 model with ultra-low inference cost. The industry was in an uproar at the time, with many predicting Nvidia's demise. They argued that the emergence of such low-cost AI models meant that small and medium-sized enterprises could deploy large models with fewer GPUs, potentially impacting demand for Nvidia's high-end GPUs. The question of whether "AI computing power demand will be replaced by an efficiency revolution" became a hot topic. Affected by this expectation, Nvidia's stock price plummeted, closing down about 17%, wiping out approximately $589 billion in market capitalization in a single day (considered one of the largest single-day market capitalization losses in US stock market history). However, just a few months later, it became clear that these concerns were short-sighted. DeepSeek did not reduce the demand for computing power; instead, it triggered a new surge in demand. Its technical approach essentially achieved "computing power equality"—through algorithmic innovation and model distillation, it significantly lowered the hardware barrier for large models, making AI applications more affordable for more institutions and enterprises. On the surface, it seemed that "less computing power was needed" due to improved model efficiency; but in reality, the DeepSeek phenomenon greatly popularized AI applications, leading to an exponential increase in computing power demand. A large number of enterprises rushed to adopt DeepSeek, triggering a wave of AI applications, with inference computing quickly becoming the new main driver of computing power consumption. This precisely illustrates the famous "Jeves' paradox"—increased technical efficiency actually accelerates resource consumption. DeepSeek lowered the barrier to AI and led to a surge in applications, resulting in even more insufficient computing resources. As it turns out, the emergence of a new AI model often translates into a surge of new GPU orders. The more AI innovation Nvidia produces, the stronger it becomes, a fact once again validated in the DeepSeek controversy. Nvidia's financial report released in February 2025 showed that its data center business significantly exceeded expectations. At a deeper level, the success of DeepSeek is not a threat to Nvidia; rather, it demonstrates that "cost reduction and efficiency improvement" can lead to larger-scale application expansion, thereby driving up total computing power demand. This time, DeepSeek has become new fuel for Nvidia's computing power empire. As AI pioneer Andrew Ng said, "AI is the new electricity." In the era where AI is electricity, computing power providers like Nvidia undoubtedly play the role of power companies. Through massive data centers and GPU clusters, they continuously supply "energy" to various industries, driving intelligent transformation. This is also the core logic behind Nvidia's market value soaring from $1 trillion to $5 trillion in just two years—a qualitative leap in global demand for AI computing power, with tech giants around the world investing in computing power in an arms race-like manner. After its market capitalization climbed to $5 trillion, Nvidia's influence and scale have surpassed even the economic influence of many national governments. Nvidia is no longer just a graphics card manufacturer that makes games run smoother; it has transformed into the fuel of the AI era, becoming the undisputed "shovel seller" in this gold rush. With its increasing size, the wealth creation stories of Nvidia employees have become legendary in the industry, with many employees holding stock worth more than their annual salaries. Nvidia itself has achieved one leap forward after another by continuously "telling" new technological narratives. Gaming graphics cards opened the first door for it, the mining boom provided a second wave of growth, and AI has propelled Nvidia to its true peak.Author: Aki Wu Talks Blockchain In late October 2025, Nvidia's stock price reached a new all-time high, pushing its market capitalization past the $5 trillion mark, making it the first company globally to cross this threshold. Since the emergence of ChatGPT in late 2022, Nvidia's stock price has increased more than 12-fold. The AI revolution has not only driven the S&P 500 to new highs but also sparked discussions about a tech valuation bubble. Today, Nvidia's market capitalization even exceeds the total size of the entire cryptocurrency market, and in terms of global GDP ranking, Nvidia's market capitalization is second only to the United States and China. Remarkably, this AI superstar also had a "honeymoon period" in the cryptocurrency field. This article will review Nvidia's tumultuous history with the cryptocurrency mining industry and why it chose to withdraw and shift its focus to its core AI business. Crypto Bull Market Frenzy: Gaming Graphics Cards Turn into "Money Printing Machines" Looking back at Nvidia's history is like reading a legend of the ever-evolving narrative of technology. Founded in 1993, Nvidia started by inventing the GPU (Graphics Processing Unit) and rode the wave of the PC gaming boom in the late 1990s. Nvidia's GeForce series graphics cards were a huge success, and the company quickly rose to become a graphics card giant. However, when the gaming market gradually saturated and growth slowed, Nvidia also faced the predicament of unsold inventory. Fortunately, opportunity always favors the prepared—a major turning point was the cryptocurrency boom. In 2017, the prices of cryptocurrencies such as Bitcoin and Ethereum soared, sparking a "mining" craze. Because GPUs are ideally suited for parallel computing in mining, miners worldwide scrambled for graphics cards, turning them into money-printing machines with supply falling short of demand and prices skyrocketing. Nvidia emerged as one of the biggest winners behind this crypto bull market, reaping huge profits from card sales. Starting in the second half of 2020, the cryptocurrency market rebounded after a two-year hiatus. Bitcoin prices surged from less than $15,000 in the middle of the year to a peak of over $60,000 in early 2021, while Ethereum rose from a few hundred dollars to over $2,000. This new wave of price increases reignited the GPU mining frenzy. Miners snapped up the new generation of GeForce RTX 30 series graphics cards, leading to a shortage of high-end cards originally intended for gamers, plunging the market into a frenzy of "supply falling short of demand." While NVIDIA's RTX 30 series graphics cards initially surprised gamers with their high performance and cost-effectiveness, the soaring profits from Ethereum mining pushed their actual selling prices to outrageous levels. The RTX 3060, with a suggested retail price of 2499 RMB, was being resold for 5499 RMB, and the flagship RTX 3090 was even being priced close to 20,000 RMB. However, the persistent shortage of graphics cards brought the conflict between gamers and miners to the forefront. Nvidia opted for a "dual-track" approach, simultaneously lowering the Ethereum hash rate for its gamer-oriented GeForce cards (starting with the RTX 3060). However, this was later discovered to be a smokescreen. In reality, miners discovered that by plugging the RTX 3060 with a "dummy HDMI cable," it would perceive other graphics cards as also functioning as display adapters, thus bypassing the hash rate limitations in multi-GPU scenarios and achieving full-speed mining. Andreas demonstrated this on his Twitter account. On the other hand, a series of Cryptocurrency Mining Processors (CMPs) were launched specifically for miners, attempting to "divide the market." The official blog stated explicitly that day: "GeForce is born for gamers, CMP is born for professional miners." CMPs would eliminate display output, use open baffles to improve airflow in densely packed mining racks, and lower peak voltage/frequency for stable energy efficiency. However, precisely because CMPs lacked display output and had a short warranty period, exiting the market was more difficult for miners. GeForces, on the other hand, could be used for mining and could be refurbished and resold to struggling miners, offering better residual value and liquidity. Therefore, this project ultimately generated much hype but little substance, eventually fading from public view. According to Nvidia's financial report, graphics cards used for mining accounted for a quarter of its shipments in the first fiscal quarter of 2021, with sales of cryptocurrency-specific chips (CMP series) reaching $155 million. Fueled by the crypto boom, Nvidia's revenue for the entire year of 2021 soared to $26.9 billion, a 61% increase year-over-year, and the company's market capitalization briefly surpassed $800 billion. However, this favorable situation did not last long. On May 21, 2021, the Financial Stability and Development Committee of the State Council of China proposed to severely crack down on Bitcoin mining and trading. Subsequently, mining farms in Xinjiang, Qinghai, Sichuan and other places were shut down, and the mining business quickly came to a halt. In the same month and the following month, Bitcoin hashrate and price both came under pressure, and miners were forced to relocate or liquidate their equipment. By September 24, the People's Bank of China and multiple departments issued a joint notice, defining all virtual currency-related transactions as illegal financial activities and proposing a nationwide "orderly cleanup of the mining industry," further "closing the loopholes" at the policy level. For those in the Huaqiangbei mining machine industry, the cycle of boom and bust is nothing new. Those who experienced the mining machine "crash" of early 2018 still vividly remember it; some withdrew from the market in despair, but a few persevered and weathered the storm, investing their unsold machines into their own mining farms, waiting for the next boom. As it turns out, the bull market of 2020-2021 once again allowed those who held on to turn their fortunes around. In September 2022, a landmark event occurred in the crypto industry: the Ethereum blockchain completed its "merge" upgrade, transitioning from a Proof-of-Work (PoW) mechanism to a Proof-of-Stake (PoS) mechanism, eliminating the need for a large number of GPUs to participate in mining. This marked the end of the long-standing era of GPU mining. Without the specific needs of crypto miners, the global GPU market cooled rapidly, directly impacting Nvidia's performance. In the third quarter of 2022, Nvidia's revenue declined by 17% year-on-year to $5.93 billion, and net profit was only $680 million, a year-on-year decrease of 72%. Nvidia's stock price once fell to around $165 in 2022, nearly halving from its peak, and the former crypto boom instantly became a burden on its performance. Drawing a line: Nvidia's breakup with the mining industry Faced with the frenzy in the mining industry, complaints from gamers, and problems arising from cyclical profits, Nvidia gradually realized it needed to find a balance within the cryptocurrency mining boom and, at the right time, "draw a clear line" with it. As concerns about a bubble emerged from soaring cryptocurrency prices, the company also suffered from financial compliance issues. A subsequent investigation by the U.S. Securities and Exchange Commission (SEC) found that Nvidia had failed to adequately disclose the contribution of cryptocurrency mining to its gaming graphics card revenue growth for two consecutive quarters in fiscal year 2018. This was deemed improper disclosure. In May 2022, Nvidia agreed to settle with the SEC and pay a $5.5 million fine. This incident forced Nvidia to re-evaluate its delicate relationship with the crypto industry; while the cryptocurrency mining boom brought considerable profits, its volatility and regulatory risks could also damage the company's reputation and performance. After Ethereum switched to PoS in 2022, GPU mining demand plummeted, and Nvidia's gaming graphics card business quickly returned to normal supply and demand. Jensen Huang has also repeatedly emphasized that the company's future growth will primarily come from areas such as artificial intelligence, data centers, and autonomous driving, rather than relying on speculative businesses like cryptocurrencies. It can be said that after experiencing the highs and lows of the "mining card craze," Nvidia decisively distanced itself from this highly volatile industry, investing more resources in the broader and more socially valuable AI computing landscape. Furthermore, Nvidia's latest Inception program website for AI startups explicitly lists "unqualified organization types," including "crypto-related companies," demonstrating Nvidia's clear desire to distance itself from its former crypto associates. So, after fully embracing the AI industry, will Nvidia's chip business still intersect with the crypto industry? On the surface, since Ethereum bid farewell to the "mining era," the connection between GPUs and traditional crypto mining has weakened significantly. Major cryptocurrencies like Bitcoin have long used dedicated ASIC miners, and GPUs are no longer the highly sought-after "golden goose" for crypto miners as they once were. However, the two fields are not entirely without overlap, and new points of convergence are emerging in different forms. Some companies that previously focused on cryptocurrency mining are shifting their business focus to AI computing power services, becoming new customers of Nvidia. Furthermore, traditional Bitcoin mining companies are also exploring using surplus electricity and space resources to undertake AI computing tasks. Some large mining companies have recently replaced some of their equipment with GPU hardware for training AI models, believing that AI training offers a more stable and reliable source of revenue compared to the volatile cryptocurrency mining industry. The person who made the most money in the AI gold rush — Nvidia, the company that sells "shovels" In November 2022, OpenAI's ChatGPT emerged, causing a huge sensation worldwide with its large-scale AI models. For NVIDIA, this was undoubtedly another once-in-a-century opportunity. The world suddenly realized that to power these computationally intensive AI monsters, NVIDIA's GPU hardware support was indispensable. Following ChatGPT's explosive popularity, major tech companies and startups flocked to the "large model" track, leading to an explosive growth in the computing power required to train AI models. NVIDIA astutely recognized this fundamental truth: regardless of technological advancements, computing power will always be the basic currency of the digital world. Currently, Nvidia holds over 90% of the market share for large-scale model training chips. Its A100, H100, and next-generation Blackwell/H200 GPUs have become industry standards for AI acceleration computing. Due to demand far exceeding supply, Nvidia possesses extraordinary pricing power and profit margins in high-end AI chips. Goldman Sachs predicts that from 2025 to 2027, the capital expenditures of just the five major cloud service providers—Amazon, Meta, Google, Microsoft, and Oracle—are expected to approach $1.4 trillion, nearly tripling compared to the previous three years. These massive investments have laid the foundation for Nvidia's astronomical market capitalization. However, the AI field once experienced a shockwave of "cost reduction and efficiency improvement"—the explosive popularity of the open-source large model DeepSeek. The DeepSeek project claimed to have trained the DeepSeek V3 model with performance comparable to GPT-4 at an extremely low cost of only about $5.576 million, and subsequently released the R1 model with ultra-low inference cost. The industry was in an uproar at the time, with many predicting Nvidia's demise. They argued that the emergence of such low-cost AI models meant that small and medium-sized enterprises could deploy large models with fewer GPUs, potentially impacting demand for Nvidia's high-end GPUs. The question of whether "AI computing power demand will be replaced by an efficiency revolution" became a hot topic. Affected by this expectation, Nvidia's stock price plummeted, closing down about 17%, wiping out approximately $589 billion in market capitalization in a single day (considered one of the largest single-day market capitalization losses in US stock market history). However, just a few months later, it became clear that these concerns were short-sighted. DeepSeek did not reduce the demand for computing power; instead, it triggered a new surge in demand. Its technical approach essentially achieved "computing power equality"—through algorithmic innovation and model distillation, it significantly lowered the hardware barrier for large models, making AI applications more affordable for more institutions and enterprises. On the surface, it seemed that "less computing power was needed" due to improved model efficiency; but in reality, the DeepSeek phenomenon greatly popularized AI applications, leading to an exponential increase in computing power demand. A large number of enterprises rushed to adopt DeepSeek, triggering a wave of AI applications, with inference computing quickly becoming the new main driver of computing power consumption. This precisely illustrates the famous "Jeves' paradox"—increased technical efficiency actually accelerates resource consumption. DeepSeek lowered the barrier to AI and led to a surge in applications, resulting in even more insufficient computing resources. As it turns out, the emergence of a new AI model often translates into a surge of new GPU orders. The more AI innovation Nvidia produces, the stronger it becomes, a fact once again validated in the DeepSeek controversy. Nvidia's financial report released in February 2025 showed that its data center business significantly exceeded expectations. At a deeper level, the success of DeepSeek is not a threat to Nvidia; rather, it demonstrates that "cost reduction and efficiency improvement" can lead to larger-scale application expansion, thereby driving up total computing power demand. This time, DeepSeek has become new fuel for Nvidia's computing power empire. As AI pioneer Andrew Ng said, "AI is the new electricity." In the era where AI is electricity, computing power providers like Nvidia undoubtedly play the role of power companies. Through massive data centers and GPU clusters, they continuously supply "energy" to various industries, driving intelligent transformation. This is also the core logic behind Nvidia's market value soaring from $1 trillion to $5 trillion in just two years—a qualitative leap in global demand for AI computing power, with tech giants around the world investing in computing power in an arms race-like manner. After its market capitalization climbed to $5 trillion, Nvidia's influence and scale have surpassed even the economic influence of many national governments. Nvidia is no longer just a graphics card manufacturer that makes games run smoother; it has transformed into the fuel of the AI era, becoming the undisputed "shovel seller" in this gold rush. With its increasing size, the wealth creation stories of Nvidia employees have become legendary in the industry, with many employees holding stock worth more than their annual salaries. Nvidia itself has achieved one leap forward after another by continuously "telling" new technological narratives. Gaming graphics cards opened the first door for it, the mining boom provided a second wave of growth, and AI has propelled Nvidia to its true peak.

The world's first company to surpass a $5 trillion market capitalization: A look back at Nvidia's brief honeymoon period with cryptocurrencies.

2025/11/03 09:30

Author: Aki Wu Talks Blockchain

In late October 2025, Nvidia's stock price reached a new all-time high, pushing its market capitalization past the $5 trillion mark, making it the first company globally to cross this threshold. Since the emergence of ChatGPT in late 2022, Nvidia's stock price has increased more than 12-fold. The AI revolution has not only driven the S&P 500 to new highs but also sparked discussions about a tech valuation bubble. Today, Nvidia's market capitalization even exceeds the total size of the entire cryptocurrency market, and in terms of global GDP ranking, Nvidia's market capitalization is second only to the United States and China. Remarkably, this AI superstar also had a "honeymoon period" in the cryptocurrency field. This article will review Nvidia's tumultuous history with the cryptocurrency mining industry and why it chose to withdraw and shift its focus to its core AI business.

Crypto Bull Market Frenzy: Gaming Graphics Cards Turn into "Money Printing Machines"

Looking back at Nvidia's history is like reading a legend of the ever-evolving narrative of technology. Founded in 1993, Nvidia started by inventing the GPU (Graphics Processing Unit) and rode the wave of the PC gaming boom in the late 1990s. Nvidia's GeForce series graphics cards were a huge success, and the company quickly rose to become a graphics card giant. However, when the gaming market gradually saturated and growth slowed, Nvidia also faced the predicament of unsold inventory. Fortunately, opportunity always favors the prepared—a major turning point was the cryptocurrency boom.

In 2017, the prices of cryptocurrencies such as Bitcoin and Ethereum soared, sparking a "mining" craze. Because GPUs are ideally suited for parallel computing in mining, miners worldwide scrambled for graphics cards, turning them into money-printing machines with supply falling short of demand and prices skyrocketing. Nvidia emerged as one of the biggest winners behind this crypto bull market, reaping huge profits from card sales.

Starting in the second half of 2020, the cryptocurrency market rebounded after a two-year hiatus. Bitcoin prices surged from less than $15,000 in the middle of the year to a peak of over $60,000 in early 2021, while Ethereum rose from a few hundred dollars to over $2,000. This new wave of price increases reignited the GPU mining frenzy. Miners snapped up the new generation of GeForce RTX 30 series graphics cards, leading to a shortage of high-end cards originally intended for gamers, plunging the market into a frenzy of "supply falling short of demand." While NVIDIA's RTX 30 series graphics cards initially surprised gamers with their high performance and cost-effectiveness, the soaring profits from Ethereum mining pushed their actual selling prices to outrageous levels. The RTX 3060, with a suggested retail price of 2499 RMB, was being resold for 5499 RMB, and the flagship RTX 3090 was even being priced close to 20,000 RMB.

However, the persistent shortage of graphics cards brought the conflict between gamers and miners to the forefront. Nvidia opted for a "dual-track" approach, simultaneously lowering the Ethereum hash rate for its gamer-oriented GeForce cards (starting with the RTX 3060). However, this was later discovered to be a smokescreen. In reality, miners discovered that by plugging the RTX 3060 with a "dummy HDMI cable," it would perceive other graphics cards as also functioning as display adapters, thus bypassing the hash rate limitations in multi-GPU scenarios and achieving full-speed mining.

Andreas demonstrated this on his Twitter account.

On the other hand, a series of Cryptocurrency Mining Processors (CMPs) were launched specifically for miners, attempting to "divide the market." The official blog stated explicitly that day: "GeForce is born for gamers, CMP is born for professional miners." CMPs would eliminate display output, use open baffles to improve airflow in densely packed mining racks, and lower peak voltage/frequency for stable energy efficiency. However, precisely because CMPs lacked display output and had a short warranty period, exiting the market was more difficult for miners. GeForces, on the other hand, could be used for mining and could be refurbished and resold to struggling miners, offering better residual value and liquidity. Therefore, this project ultimately generated much hype but little substance, eventually fading from public view.

According to Nvidia's financial report, graphics cards used for mining accounted for a quarter of its shipments in the first fiscal quarter of 2021, with sales of cryptocurrency-specific chips (CMP series) reaching $155 million. Fueled by the crypto boom, Nvidia's revenue for the entire year of 2021 soared to $26.9 billion, a 61% increase year-over-year, and the company's market capitalization briefly surpassed $800 billion.

However, this favorable situation did not last long. On May 21, 2021, the Financial Stability and Development Committee of the State Council of China proposed to severely crack down on Bitcoin mining and trading. Subsequently, mining farms in Xinjiang, Qinghai, Sichuan and other places were shut down, and the mining business quickly came to a halt. In the same month and the following month, Bitcoin hashrate and price both came under pressure, and miners were forced to relocate or liquidate their equipment. By September 24, the People's Bank of China and multiple departments issued a joint notice, defining all virtual currency-related transactions as illegal financial activities and proposing a nationwide "orderly cleanup of the mining industry," further "closing the loopholes" at the policy level.

For those in the Huaqiangbei mining machine industry, the cycle of boom and bust is nothing new. Those who experienced the mining machine "crash" of early 2018 still vividly remember it; some withdrew from the market in despair, but a few persevered and weathered the storm, investing their unsold machines into their own mining farms, waiting for the next boom. As it turns out, the bull market of 2020-2021 once again allowed those who held on to turn their fortunes around.

In September 2022, a landmark event occurred in the crypto industry: the Ethereum blockchain completed its "merge" upgrade, transitioning from a Proof-of-Work (PoW) mechanism to a Proof-of-Stake (PoS) mechanism, eliminating the need for a large number of GPUs to participate in mining. This marked the end of the long-standing era of GPU mining. Without the specific needs of crypto miners, the global GPU market cooled rapidly, directly impacting Nvidia's performance. In the third quarter of 2022, Nvidia's revenue declined by 17% year-on-year to $5.93 billion, and net profit was only $680 million, a year-on-year decrease of 72%. Nvidia's stock price once fell to around $165 in 2022, nearly halving from its peak, and the former crypto boom instantly became a burden on its performance.

Drawing a line: Nvidia's breakup with the mining industry

Faced with the frenzy in the mining industry, complaints from gamers, and problems arising from cyclical profits, Nvidia gradually realized it needed to find a balance within the cryptocurrency mining boom and, at the right time, "draw a clear line" with it. As concerns about a bubble emerged from soaring cryptocurrency prices, the company also suffered from financial compliance issues. A subsequent investigation by the U.S. Securities and Exchange Commission (SEC) found that Nvidia had failed to adequately disclose the contribution of cryptocurrency mining to its gaming graphics card revenue growth for two consecutive quarters in fiscal year 2018. This was deemed improper disclosure. In May 2022, Nvidia agreed to settle with the SEC and pay a $5.5 million fine. This incident forced Nvidia to re-evaluate its delicate relationship with the crypto industry; while the cryptocurrency mining boom brought considerable profits, its volatility and regulatory risks could also damage the company's reputation and performance.

After Ethereum switched to PoS in 2022, GPU mining demand plummeted, and Nvidia's gaming graphics card business quickly returned to normal supply and demand. Jensen Huang has also repeatedly emphasized that the company's future growth will primarily come from areas such as artificial intelligence, data centers, and autonomous driving, rather than relying on speculative businesses like cryptocurrencies. It can be said that after experiencing the highs and lows of the "mining card craze," Nvidia decisively distanced itself from this highly volatile industry, investing more resources in the broader and more socially valuable AI computing landscape. Furthermore, Nvidia's latest Inception program website for AI startups explicitly lists "unqualified organization types," including "crypto-related companies," demonstrating Nvidia's clear desire to distance itself from its former crypto associates.

So, after fully embracing the AI industry, will Nvidia's chip business still intersect with the crypto industry? On the surface, since Ethereum bid farewell to the "mining era," the connection between GPUs and traditional crypto mining has weakened significantly. Major cryptocurrencies like Bitcoin have long used dedicated ASIC miners, and GPUs are no longer the highly sought-after "golden goose" for crypto miners as they once were. However, the two fields are not entirely without overlap, and new points of convergence are emerging in different forms.

Some companies that previously focused on cryptocurrency mining are shifting their business focus to AI computing power services, becoming new customers of Nvidia. Furthermore, traditional Bitcoin mining companies are also exploring using surplus electricity and space resources to undertake AI computing tasks. Some large mining companies have recently replaced some of their equipment with GPU hardware for training AI models, believing that AI training offers a more stable and reliable source of revenue compared to the volatile cryptocurrency mining industry.

The person who made the most money in the AI gold rush — Nvidia, the company that sells "shovels"

In November 2022, OpenAI's ChatGPT emerged, causing a huge sensation worldwide with its large-scale AI models. For NVIDIA, this was undoubtedly another once-in-a-century opportunity. The world suddenly realized that to power these computationally intensive AI monsters, NVIDIA's GPU hardware support was indispensable.

Following ChatGPT's explosive popularity, major tech companies and startups flocked to the "large model" track, leading to an explosive growth in the computing power required to train AI models. NVIDIA astutely recognized this fundamental truth: regardless of technological advancements, computing power will always be the basic currency of the digital world.

Currently, Nvidia holds over 90% of the market share for large-scale model training chips. Its A100, H100, and next-generation Blackwell/H200 GPUs have become industry standards for AI acceleration computing. Due to demand far exceeding supply, Nvidia possesses extraordinary pricing power and profit margins in high-end AI chips. Goldman Sachs predicts that from 2025 to 2027, the capital expenditures of just the five major cloud service providers—Amazon, Meta, Google, Microsoft, and Oracle—are expected to approach $1.4 trillion, nearly tripling compared to the previous three years. These massive investments have laid the foundation for Nvidia's astronomical market capitalization.

However, the AI field once experienced a shockwave of "cost reduction and efficiency improvement"—the explosive popularity of the open-source large model DeepSeek. The DeepSeek project claimed to have trained the DeepSeek V3 model with performance comparable to GPT-4 at an extremely low cost of only about $5.576 million, and subsequently released the R1 model with ultra-low inference cost.

The industry was in an uproar at the time, with many predicting Nvidia's demise. They argued that the emergence of such low-cost AI models meant that small and medium-sized enterprises could deploy large models with fewer GPUs, potentially impacting demand for Nvidia's high-end GPUs. The question of whether "AI computing power demand will be replaced by an efficiency revolution" became a hot topic. Affected by this expectation, Nvidia's stock price plummeted, closing down about 17%, wiping out approximately $589 billion in market capitalization in a single day (considered one of the largest single-day market capitalization losses in US stock market history).

However, just a few months later, it became clear that these concerns were short-sighted. DeepSeek did not reduce the demand for computing power; instead, it triggered a new surge in demand. Its technical approach essentially achieved "computing power equality"—through algorithmic innovation and model distillation, it significantly lowered the hardware barrier for large models, making AI applications more affordable for more institutions and enterprises. On the surface, it seemed that "less computing power was needed" due to improved model efficiency; but in reality, the DeepSeek phenomenon greatly popularized AI applications, leading to an exponential increase in computing power demand. A large number of enterprises rushed to adopt DeepSeek, triggering a wave of AI applications, with inference computing quickly becoming the new main driver of computing power consumption. This precisely illustrates the famous "Jeves' paradox"—increased technical efficiency actually accelerates resource consumption. DeepSeek lowered the barrier to AI and led to a surge in applications, resulting in even more insufficient computing resources.

As it turns out, the emergence of a new AI model often translates into a surge of new GPU orders. The more AI innovation Nvidia produces, the stronger it becomes, a fact once again validated in the DeepSeek controversy. Nvidia's financial report released in February 2025 showed that its data center business significantly exceeded expectations. At a deeper level, the success of DeepSeek is not a threat to Nvidia; rather, it demonstrates that "cost reduction and efficiency improvement" can lead to larger-scale application expansion, thereby driving up total computing power demand. This time, DeepSeek has become new fuel for Nvidia's computing power empire.

As AI pioneer Andrew Ng said, "AI is the new electricity." In the era where AI is electricity, computing power providers like Nvidia undoubtedly play the role of power companies. Through massive data centers and GPU clusters, they continuously supply "energy" to various industries, driving intelligent transformation. This is also the core logic behind Nvidia's market value soaring from $1 trillion to $5 trillion in just two years—a qualitative leap in global demand for AI computing power, with tech giants around the world investing in computing power in an arms race-like manner.

After its market capitalization climbed to $5 trillion, Nvidia's influence and scale have surpassed even the economic influence of many national governments. Nvidia is no longer just a graphics card manufacturer that makes games run smoother; it has transformed into the fuel of the AI era, becoming the undisputed "shovel seller" in this gold rush. With its increasing size, the wealth creation stories of Nvidia employees have become legendary in the industry, with many employees holding stock worth more than their annual salaries. Nvidia itself has achieved one leap forward after another by continuously "telling" new technological narratives. Gaming graphics cards opened the first door for it, the mining boom provided a second wave of growth, and AI has propelled Nvidia to its true peak.

Market Opportunity
LOOK Logo
LOOK Price(LOOK)
$0,01989
$0,01989$0,01989
-7,14%
USD
LOOK (LOOK) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Atlassian’s Monumental DX Acquisition: Revolutionizing Developer Productivity for a Billion-Dollar Future

Atlassian’s Monumental DX Acquisition: Revolutionizing Developer Productivity for a Billion-Dollar Future

BitcoinWorld Atlassian’s Monumental DX Acquisition: Revolutionizing Developer Productivity for a Billion-Dollar Future In a move that sends ripples across the tech industry, impacting everything from foundational infrastructure to the cutting-edge innovations seen in blockchain and cryptocurrency development, productivity software giant Atlassian has made its largest acquisition to date. This isn’t just another corporate buyout; it’s a strategic investment in the very fabric of how software is built. The Atlassian acquisition of DX, a pioneering developer productivity platform, for a staggering $1 billion, signals a profound commitment to optimizing engineering workflows and understanding the true pulse of development teams. For those invested in the efficiency and scalability of digital ecosystems, this development underscores the growing importance of robust tooling at every layer. Unpacking the Monumental Atlassian Acquisition: A Billion-Dollar Bet on Developer Efficiency On a recent Thursday, Atlassian officially announced its agreement to acquire DX for $1 billion, a sum comprising both cash and restricted stock. This substantial investment highlights Atlassian’s belief in the critical role of developer insights in today’s fast-paced tech landscape. For years, Atlassian has been synonymous with collaboration and project management tools, powering teams worldwide with products like Jira, Confluence, and Trello. However, recognizing a growing need, the company has now decisively moved to integrate a dedicated developer productivity insight platform into its formidable product suite. This acquisition isn’t merely about expanding market share; it’s about deepening Atlassian’s value proposition by providing comprehensive visibility into the health and efficiency of engineering operations. The strategic rationale behind this billion-dollar move is multifaceted. Atlassian co-founder and CEO Mike Cannon-Brookes shared with Bitcoin World that after a three-year attempt to build an in-house developer productivity insight tool, his Sydney-based company realized the immense value of an external, existing solution. This candid admission speaks volumes about the complexity and specialized nature of developer productivity measurement. DX emerged as the natural choice, not least because an impressive 90% of DX’s existing customers were already leveraging Atlassian’s project management and collaboration tools. This pre-existing synergy promises a smoother integration and immediate value for a significant portion of the combined customer base. What is the DX Platform and Why is it a Game-Changer? At its core, DX is designed to empower enterprises by providing deep analytics into how productive their engineering teams truly are. More importantly, it helps identify and unblock bottlenecks that can significantly slow down development cycles. Launched five years ago by Abi Noda and Greyson Junggren, DX emerged from a fundamental challenge: the lack of accurate and non-intrusive metrics to understand developer friction. Abi Noda, in a 2022 interview with Bitcoin World, articulated his founding vision: to move beyond superficial metrics that often failed to capture the full picture of engineering challenges. His experience as a product manager at GitHub revealed that traditional measures often felt like surveillance rather than support, leading to skewed perceptions of productivity. DX was built on a different philosophy, focusing on qualitative and quantitative insights that truly reflect what hinders teams, without making developers feel scrutinized. Noda noted, “The assumptions we had about what we needed to help ship products faster were quite different than what the teams and developers were saying was getting in their way.” Since emerging from stealth in 2022, the DX platform has demonstrated remarkable growth, tripling its customer base every year. It now serves over 350 enterprise customers, including industry giants like ADP, Adyen, and GitHub. What makes DX’s success even more impressive is its lean operational model; the company achieved this rapid expansion while raising less than $5 million in venture funding. This efficiency underscores the inherent value and strong market demand for its solution, making it an exceptionally attractive target for Atlassian. Boosting Developer Productivity: Atlassian’s Strategic Vision The acquisition of DX is a clear signal of Atlassian’s strategic intent to not just manage tasks, but to optimize the entire software development lifecycle. By integrating DX’s capabilities, Atlassian aims to offer an end-to-end “flywheel” for engineering teams. This means providing tools that not only facilitate collaboration and project tracking but also offer actionable insights into where processes are breaking down and how they can be improved. Mike Cannon-Brookes elaborated on this synergy, stating, “DX has done an amazing job [of] understanding the qualitative and quantitative aspects of developer productivity and turning that into actions that can improve those companies and give them insights and comparisons to others in their industry, others at their size, etc.” This capability to benchmark and identify specific areas for improvement is invaluable for organizations striving for continuous enhancement. Abi Noda echoed this sentiment, telling Bitcoin World that the combined entities are “better together than apart.” He emphasized how Atlassian’s extensive suite of tools complements the data and information gathered by DX. “We are able to provide customers with that full flywheel to get the data and understand where we are unhealthy,” Noda explained. “They can plug in Atlassian’s tools and solutions to go address those bottlenecks. An end-to-end flywheel that is ultimately what customers want.” This integration promises to create a seamless experience, allowing teams to move from identifying an issue to implementing a solution within a unified ecosystem. The Intersection of Enterprise Software and Emerging Tech Trends This landmark acquisition also highlights a significant trend in the broader enterprise software landscape: a shift towards more intelligent, data-driven solutions that directly impact operational efficiency and competitive advantage. As companies continue to invest heavily in digital transformation, the ability to measure and optimize the output of their most valuable asset — their engineering talent — becomes paramount. DX’s impressive roster of over 350 enterprise customers, including some of the largest and most technologically advanced organizations, is a testament to the universal need for such a platform. These companies recognize that merely tracking tasks isn’t enough; they need to understand the underlying dynamics of their engineering teams to truly unlock their potential. The integration of DX into Atlassian’s ecosystem will likely set a new standard for what enterprise software can offer, pushing competitors to enhance their own productivity insights. Moreover, this move by Atlassian, a global leader in enterprise collaboration, underscores a broader investment thesis in foundational tooling. Just as robust blockchain infrastructure is critical for the future of decentralized finance, powerful and insightful developer tools are essential for the evolution of all software, including the complex applications underpinning Web3. The success of companies like DX, which scale without massive external funding, also resonates with the lean, efficient ethos often celebrated in the crypto space. Navigating the Era of AI Tools: Measuring Impact and ROI Perhaps one of the most compelling aspects of this acquisition, as highlighted by Atlassian’s CEO, is its timely relevance in the era of rapidly advancing AI tools. Mike Cannon-Brookes noted that the rise of AI has created a new imperative for companies to measure its usage and effectiveness. “You suddenly have these budgets that are going up. Is that a good thing? Is that not a good thing? Am I spending the money in the right ways? It’s really, really important and critical.” With AI-powered coding assistants and other generative AI solutions becoming increasingly prevalent in development workflows, organizations are grappling with how to quantify the return on investment (ROI) of these new technologies. DX’s platform can provide the necessary insights to understand if AI tools are genuinely boosting productivity, reducing bottlenecks, or simply adding to complexity. By offering clear data on how AI impacts developer efficiency, DX will help enterprises make smarter, data-driven decisions about their AI investments. This foresight positions Atlassian not just as a provider of developer tools, but as a strategic partner in navigating the complexities of modern software development, particularly as AI integrates more deeply into every facet of the engineering process. It’s about empowering organizations to leverage AI effectively, ensuring that these powerful new tools translate into tangible improvements in output and innovation. The Atlassian acquisition of DX represents a significant milestone for both companies and the broader tech industry. It’s a testament to the growing recognition that developer productivity is not just a buzzword, but a measurable and critical factor in an organization’s success. By combining DX’s powerful insights with Atlassian’s extensive suite of collaboration and project management tools, the merged entity is poised to offer an unparalleled, end-to-end solution for optimizing software development. This strategic move, valued at a billion dollars, underscores Atlassian’s commitment to innovation and its vision for a future where engineering teams are not only efficient but also deeply understood and supported, paving the way for a more productive and insightful era in enterprise software. To learn more about the latest AI market trends, explore our article on key developments shaping AI features. This post Atlassian’s Monumental DX Acquisition: Revolutionizing Developer Productivity for a Billion-Dollar Future first appeared on BitcoinWorld.
Share
Coinstats2025/09/18 21:40
China Bans Nvidia’s RTX Pro 6000D Chip Amid AI Hardware Push

China Bans Nvidia’s RTX Pro 6000D Chip Amid AI Hardware Push

TLDR China instructs major firms to cancel orders for Nvidia’s RTX Pro 6000D chip. Nvidia shares drop 1.5% after China’s ban on key AI hardware. China accelerates development of domestic AI chips, reducing U.S. tech reliance. Crypto and AI sectors may seek alternatives due to limited Nvidia access in China. China has taken a bold [...] The post China Bans Nvidia’s RTX Pro 6000D Chip Amid AI Hardware Push appeared first on CoinCentral.
Share
Coincentral2025/09/18 01:09
UWRO President Nail Saifutdinov: Digital Solutions for Faith Communities and Remembrance Services—Under One International Foundation

UWRO President Nail Saifutdinov: Digital Solutions for Faith Communities and Remembrance Services—Under One International Foundation

UWRO (United World Religions Organization) is an international faith tech foundation working at the intersection of technology, media, and social impact. It creates
Share
Techbullion2025/12/26 20:19