On May 23rd, chip giant NVIDIA released its first-quarter fiscal year 2025 financial report. The report showed that NVIDIA’s first-quarter revenue was $26 billion. Among them, data center revenue increased by a staggering 427% from last year to reach $22.6 billion. NVIDIA’s ability to single-handedly boost the financial performance of the US stock market reflects the explosive demand for computing power among global technology companies competing in the AI arena. The more top-tier technology companies expand their ambitions in the AI race, the greater their exponentially growing demand for computing power. According to TrendForce’s forecast, by 2024, the demand for high-end AI servers from the four major US cloud service providers—Microsoft, Google, AWS, and Meta—is expected to collectively account for over 60% of global demand, with shares forecasted at 20.2%, 16.6%, 16%, and 10.8%, respectively.
Image source: https://investor.nvidia.com/financial-info/financial-reports/default.aspx
“Chip shortages” have continuously been an annual buzzword in recent years. On one hand, large language models (LLMs) require substantial computing power for training and inference. As models iterate, the costs and demand for computing power exponentially increase. On the other hand, large companies like Meta purchase massive quantities of chips, causing global computing resources to tilt towards these tech giants, making it increasingly difficult for small enterprises to obtain the necessary computing resources. The challenges faced by small enterprises stem not only from the shortage of chips due to skyrocketing demand but also from structural contradictions in the supply. Currently, there are still a large number of idle GPUs on the supply side; for example, some data centers have a large amount of idle computing power (with utilization rates as low as 12% to 18%), and significant computing power resources are also idle in encrypted mining due to reduced profitability. Although not all of this computing power is suitable for specialized applications such as AI training, consumer-grade hardware can still play a significant role in other areas such as AI inference, cloud gaming rendering, cloud phones, etc. The opportunity to integrate and utilize these computing resources is enormous.
Shifting focus from AI to crypto, after a three-year silence in the cryptocurrency market, another bull market has finally emerged. Bitcoin prices have repeatedly hit new highs, and various meme coins continue to emerge. Although AI and Crypto have been buzzwords in recent years, artificial intelligence and blockchain as two important technologies seem like parallel lines that have yet to find an “intersection.” Earlier this year, Vitalik published an article titled “The promise and challenges of crypto + AI applications,” discussing future scenarios where AI and crypto converge. Vitalik outlined many visions in the article, including using blockchain and MPC (multi-party computation) encryption technologies for decentralized training and inference of AI, which could open up the black box of machine learning and make AI models more trustless, among other benefits. While realizing these visions will require considerable effort, one use case mentioned by Vitalik—empowering AI through crypto-economic incentives—is an important direction that can be achieved in the short term. Decentralized computing power networks are currently one of the most suitable scenarios for AI + crypto integration.
Currently, there are numerous projects developing in the decentralized computing power network space. The underlying logic of these projects is similar and can be summarized as follows: using tokens to incentivize computing power providers to participate in the network and offer their computing resources. These scattered computing resources can aggregate into decentralized computing power networks of significant scale. This approach not only increases the utilization of idle computing power but also meets the computing needs of clients at lower costs, achieving a win-win situation for both buyers and sellers.
To provide readers with a comprehensive understanding of this sector in a short time, this article will deconstruct specific projects and the entire field from both micro and macro perspectives. The aim is to provide analytical insights for readers to understand the core competitive advantages of each project and the overall development of the decentralized computing power network sector. The author will introduce and analyze five projects: Aethir, io.net, Render Network, Akash Network, and Gensyn, and summarize and evaluate their situations and the development of the sector.
In terms of analytical framework, focusing on a specific decentralized computing power network, we can break it down into four core components:
From an overview perspective of the decentralized computing power sector, Blockworks Research provides a robust analytical framework that categorizes projects into three distinct layers.
Image source: Youbi Capital
Based on the two analysis frameworks provided, we will conduct a comparative analysis of five selected projects across four dimensions: core business, market positioning, hardware facilities, and financial performance.
From a foundational perspective, decentralized computing power networks are highly homogenized, utilizing tokens to incentivize idle computing power providers to offer their services. Based on this foundational logic, we can understand the core business differences among projects from three aspects:
In terms of project positioning, the core issues to be addressed, optimization focus, and value capture capabilities differ for the bare metal layer, orchestration layer, and aggregation layer.
The exponential growth in AI has undeniably led to a massive demand for computing power. Since 2012, the computational power used in AI training tasks has been growing exponentially, doubling approximately every 3.5 months (in comparison, Moore’s Law predicts a doubling every 18 months). Since 2012, the demand for computing power has increased by more than 300,000 times, far exceeding the 12-fold increase predicted by Moore’s Law. Forecasts predict that the GPU market will grow at a compound annual growth rate of 32% over the next five years, reaching over $200 billion. AMD’s estimates are even higher, with the company predicting that the GPU chip market will reach $400 billion by 2027.
Image source: https://www.stateof.ai/
The explosive growth of artificial intelligence and other compute-intensive workloads, such as AR/VR rendering, has exposed structural inefficiencies in the traditional cloud computing and leading computing markets. In theory, decentralized computing power networks can leverage distributed idle computing resources to provide more flexible, cost-effective, and efficient solutions to meet the massive demand for computing resources.
Thus, the combination of crypto and AI has enormous market potential but also faces intense competition with traditional enterprises, high entry barriers, and a complex market environment. Overall, among all crypto sectors, decentralized computing power networks are one of the most promising verticals in the crypto field to meet real demand.
Image source: https://vitalik.eth.limo/general/2024/01/30/cryptoai.html
The future is bright, but the road is challenging. To achieve the aforementioned vision, we need to address numerous problems and challenges. In summary, at this stage, simply providing traditional cloud services results in a small profit margin for projects.
From the demand side, large enterprises typically build their own computing power, while most individual developers tend to choose established cloud services. It remains to be further explored and verified whether small and medium-sized enterprises, the real users of decentralized computing power network resources, will have stable demand.
On the other hand, AI is a vast market with extremely high potential and imagination. To tap into this broader market, future decentralized computing power service providers will need to transition towards offering models and AI services, exploring more use cases of crypto + AI, and expanding the value their projects can create. However, at present, many problems and challenges remain to be addressed before further development into the AI field can be achieved:
From a pragmatic perspective, a decentralized computing power network needs to balance current demand exploration with future market opportunities. It’s crucial to identify a clear product positioning and target audience. Initially focusing on non-AI or Web3 native projects, addressing relatively niche demands, can help establish an early user base. Simultaneously, continuous exploration of various scenarios where AI and crypto converge is essential. This involves exploring technological frontiers and upgrading services to meet evolving needs. By strategically aligning product offerings with market demands and staying at the forefront of technological advancements, decentralized computing power networks can effectively position themselves for sustained growth and market relevance.
https://vitalik.eth.limo/general/2024/01/30/cryptoai.html
https://foresightnews.pro/article/detail/34368
https://research.web3caff.com/zh/archives/17351?ref=1554
This article is reproduced from [Youbi Capital], the copyright belongs to the original author [Youbi], if you have any objections to the reprint, please contact the Gate Learn team, and the team will handle it as soon as possible according to relevant procedures.
Disclaimer: The views and opinions expressed in this article represent only the author’s personal views and do not constitute any investment advice.
Other language versions of the article are translated by the Gate Learn team and are not mentioned in Gate.io, the translated article may not be reproduced, distributed or plagiarized.
On May 23rd, chip giant NVIDIA released its first-quarter fiscal year 2025 financial report. The report showed that NVIDIA’s first-quarter revenue was $26 billion. Among them, data center revenue increased by a staggering 427% from last year to reach $22.6 billion. NVIDIA’s ability to single-handedly boost the financial performance of the US stock market reflects the explosive demand for computing power among global technology companies competing in the AI arena. The more top-tier technology companies expand their ambitions in the AI race, the greater their exponentially growing demand for computing power. According to TrendForce’s forecast, by 2024, the demand for high-end AI servers from the four major US cloud service providers—Microsoft, Google, AWS, and Meta—is expected to collectively account for over 60% of global demand, with shares forecasted at 20.2%, 16.6%, 16%, and 10.8%, respectively.
Image source: https://investor.nvidia.com/financial-info/financial-reports/default.aspx
“Chip shortages” have continuously been an annual buzzword in recent years. On one hand, large language models (LLMs) require substantial computing power for training and inference. As models iterate, the costs and demand for computing power exponentially increase. On the other hand, large companies like Meta purchase massive quantities of chips, causing global computing resources to tilt towards these tech giants, making it increasingly difficult for small enterprises to obtain the necessary computing resources. The challenges faced by small enterprises stem not only from the shortage of chips due to skyrocketing demand but also from structural contradictions in the supply. Currently, there are still a large number of idle GPUs on the supply side; for example, some data centers have a large amount of idle computing power (with utilization rates as low as 12% to 18%), and significant computing power resources are also idle in encrypted mining due to reduced profitability. Although not all of this computing power is suitable for specialized applications such as AI training, consumer-grade hardware can still play a significant role in other areas such as AI inference, cloud gaming rendering, cloud phones, etc. The opportunity to integrate and utilize these computing resources is enormous.
Shifting focus from AI to crypto, after a three-year silence in the cryptocurrency market, another bull market has finally emerged. Bitcoin prices have repeatedly hit new highs, and various meme coins continue to emerge. Although AI and Crypto have been buzzwords in recent years, artificial intelligence and blockchain as two important technologies seem like parallel lines that have yet to find an “intersection.” Earlier this year, Vitalik published an article titled “The promise and challenges of crypto + AI applications,” discussing future scenarios where AI and crypto converge. Vitalik outlined many visions in the article, including using blockchain and MPC (multi-party computation) encryption technologies for decentralized training and inference of AI, which could open up the black box of machine learning and make AI models more trustless, among other benefits. While realizing these visions will require considerable effort, one use case mentioned by Vitalik—empowering AI through crypto-economic incentives—is an important direction that can be achieved in the short term. Decentralized computing power networks are currently one of the most suitable scenarios for AI + crypto integration.
Currently, there are numerous projects developing in the decentralized computing power network space. The underlying logic of these projects is similar and can be summarized as follows: using tokens to incentivize computing power providers to participate in the network and offer their computing resources. These scattered computing resources can aggregate into decentralized computing power networks of significant scale. This approach not only increases the utilization of idle computing power but also meets the computing needs of clients at lower costs, achieving a win-win situation for both buyers and sellers.
To provide readers with a comprehensive understanding of this sector in a short time, this article will deconstruct specific projects and the entire field from both micro and macro perspectives. The aim is to provide analytical insights for readers to understand the core competitive advantages of each project and the overall development of the decentralized computing power network sector. The author will introduce and analyze five projects: Aethir, io.net, Render Network, Akash Network, and Gensyn, and summarize and evaluate their situations and the development of the sector.
In terms of analytical framework, focusing on a specific decentralized computing power network, we can break it down into four core components:
From an overview perspective of the decentralized computing power sector, Blockworks Research provides a robust analytical framework that categorizes projects into three distinct layers.
Image source: Youbi Capital
Based on the two analysis frameworks provided, we will conduct a comparative analysis of five selected projects across four dimensions: core business, market positioning, hardware facilities, and financial performance.
From a foundational perspective, decentralized computing power networks are highly homogenized, utilizing tokens to incentivize idle computing power providers to offer their services. Based on this foundational logic, we can understand the core business differences among projects from three aspects:
In terms of project positioning, the core issues to be addressed, optimization focus, and value capture capabilities differ for the bare metal layer, orchestration layer, and aggregation layer.
The exponential growth in AI has undeniably led to a massive demand for computing power. Since 2012, the computational power used in AI training tasks has been growing exponentially, doubling approximately every 3.5 months (in comparison, Moore’s Law predicts a doubling every 18 months). Since 2012, the demand for computing power has increased by more than 300,000 times, far exceeding the 12-fold increase predicted by Moore’s Law. Forecasts predict that the GPU market will grow at a compound annual growth rate of 32% over the next five years, reaching over $200 billion. AMD’s estimates are even higher, with the company predicting that the GPU chip market will reach $400 billion by 2027.
Image source: https://www.stateof.ai/
The explosive growth of artificial intelligence and other compute-intensive workloads, such as AR/VR rendering, has exposed structural inefficiencies in the traditional cloud computing and leading computing markets. In theory, decentralized computing power networks can leverage distributed idle computing resources to provide more flexible, cost-effective, and efficient solutions to meet the massive demand for computing resources.
Thus, the combination of crypto and AI has enormous market potential but also faces intense competition with traditional enterprises, high entry barriers, and a complex market environment. Overall, among all crypto sectors, decentralized computing power networks are one of the most promising verticals in the crypto field to meet real demand.
Image source: https://vitalik.eth.limo/general/2024/01/30/cryptoai.html
The future is bright, but the road is challenging. To achieve the aforementioned vision, we need to address numerous problems and challenges. In summary, at this stage, simply providing traditional cloud services results in a small profit margin for projects.
From the demand side, large enterprises typically build their own computing power, while most individual developers tend to choose established cloud services. It remains to be further explored and verified whether small and medium-sized enterprises, the real users of decentralized computing power network resources, will have stable demand.
On the other hand, AI is a vast market with extremely high potential and imagination. To tap into this broader market, future decentralized computing power service providers will need to transition towards offering models and AI services, exploring more use cases of crypto + AI, and expanding the value their projects can create. However, at present, many problems and challenges remain to be addressed before further development into the AI field can be achieved:
From a pragmatic perspective, a decentralized computing power network needs to balance current demand exploration with future market opportunities. It’s crucial to identify a clear product positioning and target audience. Initially focusing on non-AI or Web3 native projects, addressing relatively niche demands, can help establish an early user base. Simultaneously, continuous exploration of various scenarios where AI and crypto converge is essential. This involves exploring technological frontiers and upgrading services to meet evolving needs. By strategically aligning product offerings with market demands and staying at the forefront of technological advancements, decentralized computing power networks can effectively position themselves for sustained growth and market relevance.
https://vitalik.eth.limo/general/2024/01/30/cryptoai.html
https://foresightnews.pro/article/detail/34368
https://research.web3caff.com/zh/archives/17351?ref=1554
This article is reproduced from [Youbi Capital], the copyright belongs to the original author [Youbi], if you have any objections to the reprint, please contact the Gate Learn team, and the team will handle it as soon as possible according to relevant procedures.
Disclaimer: The views and opinions expressed in this article represent only the author’s personal views and do not constitute any investment advice.
Other language versions of the article are translated by the Gate Learn team and are not mentioned in Gate.io, the translated article may not be reproduced, distributed or plagiarized.