Traditional computers are composed of five parts: the computer, memory, controller, bus, and I/O. From the perspective of blockchain development, the progress of the computer and memory components is relatively mature. If we compare the entire distributed system to a human, then the brain and memory systems are already well-developed, but the sensory and perceptual systems remain in a very primitive state. At this stage, DePIN is undoubtedly the most popular buzzword, but how can it be realized? It undoubtedly starts with “trustworthy touch,” and as we know, “sensation” relies on the spine and nervous system for processing.
If blockchain systems represent the consciousness built on an iceberg, then the sensor networks represented by DePIN are the subconscious beneath the iceberg. Now, the challenge arises: who is the spine and nerves of the distributed system? How do we construct the spine and nerves? In this article, we will start with small lessons from the development of the Internet of Things (IoT) to construct the development ideas of DePIN and help builders better implement them.
a. Address BUS: Device DID (Dephy)
b. Data BUS: Virtual Communication Layer + Sensor Network
c. Control BUS: Cellular Management Module
Looking back on the history of IoT development since 2015, there were two main challenges that year: firstly, hardware devices had limited input-output capabilities; secondly, after devices joined the network, their product features did not enhance, lacking scalability.
During this period, the key question was: what changes would occur when hardware devices’ microcontrollers joined the network? Initially, connectivity enabled hardware devices to upload and download data. The subsequent question was: why do hardware devices need to upload and download? Can these actions enhance product competitiveness? At that time, we saw a wave of products like smart curtains, smart air conditioners, etc. However, due to the relatively fixed I/O architecture in hardware design and limited space for software development, the addition of network connectivity mainly offered features like mobile app control, such as “remote air conditioning activation” and “remote curtain closing”. These functionalities were primarily remote extensions of traditional controllers, which were somewhat underwhelming for end users.
Another crucial issue was whether IoT devices had the ability to scale after connecting to the network. As mentioned earlier, network connectivity enabled data upload and download. While downloads represented functional upgrades and expansions, uploads facilitated data aggregation and integration. However, during the early IoT era, the value of data lakes was cumbersome due to exponentially rising storage costs and challenges in tapping into data sales opportunities.
In summary, IoT devices in both download and upload modes struggled to enhance product capabilities and service dimensions. Looking ahead to the Depin era, can these challenges be overcome?
From the characteristics of AI, we see many possibilities:
In conjunction with AI development, we see several potential differences for Depin:
Based on the past 5 years of IoT development experience and the changing landscape of AI features, we believe there are three major investment themes:
What is a module?
A module integrates baseband chips, memory, power amplifiers, and other components onto a single circuit board, providing standardized interfaces. Various terminals utilize wireless modules to enable communication functions. As the entire computing network evolves, the definition of modules continues to expand, forming an ecosystem of cellular connectivity, computing power, and edge applications:
Looking at the entire industry chain, upstream chip makers and downstream device manufacturers capture the majority of the value chain. The intermediate module layer is characterized by high market concentration and low-profit margins. Traditional service devices mainly include PCs, smartphones, and POS terminals. Due to their significant concentration, deploying widely accepted module intermediaries essentially transforms various existing devices into mining machines. If traditional Web3 users are considered on a per-person basis, the intermediate layer represented by modules will enable a large number of smart devices to enter Web3, generating a substantial on-chain demand through transactions between these devices.
Reflecting on the early competition between Nvidia and Intel, we gain valuable historical insights: in the early years, the computer chip market was dominated by Intel’s x86 CPU architecture. In niche markets like graphics acceleration, there was competition between Intel’s dominant ecosystem of accelerator cards and Nvidia’s GPUs. In broader markets (areas with uncertain demands), Intel CPUs and Nvidia GPUs cooperated and coexisted for a period. The turning point came with Crypto and AI, where large-scale computing tasks characterized by small tasks executed in parallel favored the computational capabilities of GPUs. When the wave arrived, Nvidia prepared on several dimensions:
Returning to the module market, there are several similarities with the competition between GPUs and CPUs in the past:
In this competition, the Crypto Stack undoubtedly represents the pinnacle technology stack for building protocols and ecosystems. The migration of existing devices into cash flow mining machines will create opportunities at a beta level. Dephy stands out as a key player in this context, leveraging integrated modules, ledgers, and identity layers to manage the allocation responsibilities across the entire Depin network.
What exactly constitutes a mining machine? We believe that hardware/software capable of generating specific information resources and intending to acquire token resources can be termed as mining machines. Under this understanding, mining machines are evaluated based on several criteria:
Therefore, in this entire process, the reliability of devices in generating specific information resources, known as Proof of Physical Work (PoPW), becomes crucial. We assert that every sensor producing PoPW requires a Trusted Execution Environment (TEE/SE) to ensure the credibility of edge-side data collection. In the field of sensors, those capable of generating horizontally scalable networks can unify various devices’ video resources, for example, collected by different cameras into a single network for standardized measurement. Compared to independent collection by different devices, horizontally scalable sensors combined with trusted modules can build a larger PoPW resource market. Video materials collected can be better priced according to unified metrics, facilitating the formation of a bulk market for information resources, which is not achievable with Device-Focus alone.
Due to the physical presence of some Depin devices in the real world and their relevance to traditional business society, while the Crypto world features Permissionless characteristics, managing various participating entities in a real-time manner without KYC becomes crucial. We believe that the entire Web3 world needs a communication abstraction layer that integrates cellular networks and public IP networks, where users/devices can access corresponding network services by paying in cryptocurrency. Specific avenues include:
This article is reproduced from [Foresight Research], the original title is “Foresight Ventures: How to Be Trustworthy—How Do We View the DePIN Track?” 》, the copyright belongs to the original author [Yolo Shen@Foresight Ventures], if you have any objection to the reprint, please contact Gate Learn Team, 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.
Traditional computers are composed of five parts: the computer, memory, controller, bus, and I/O. From the perspective of blockchain development, the progress of the computer and memory components is relatively mature. If we compare the entire distributed system to a human, then the brain and memory systems are already well-developed, but the sensory and perceptual systems remain in a very primitive state. At this stage, DePIN is undoubtedly the most popular buzzword, but how can it be realized? It undoubtedly starts with “trustworthy touch,” and as we know, “sensation” relies on the spine and nervous system for processing.
If blockchain systems represent the consciousness built on an iceberg, then the sensor networks represented by DePIN are the subconscious beneath the iceberg. Now, the challenge arises: who is the spine and nerves of the distributed system? How do we construct the spine and nerves? In this article, we will start with small lessons from the development of the Internet of Things (IoT) to construct the development ideas of DePIN and help builders better implement them.
a. Address BUS: Device DID (Dephy)
b. Data BUS: Virtual Communication Layer + Sensor Network
c. Control BUS: Cellular Management Module
Looking back on the history of IoT development since 2015, there were two main challenges that year: firstly, hardware devices had limited input-output capabilities; secondly, after devices joined the network, their product features did not enhance, lacking scalability.
During this period, the key question was: what changes would occur when hardware devices’ microcontrollers joined the network? Initially, connectivity enabled hardware devices to upload and download data. The subsequent question was: why do hardware devices need to upload and download? Can these actions enhance product competitiveness? At that time, we saw a wave of products like smart curtains, smart air conditioners, etc. However, due to the relatively fixed I/O architecture in hardware design and limited space for software development, the addition of network connectivity mainly offered features like mobile app control, such as “remote air conditioning activation” and “remote curtain closing”. These functionalities were primarily remote extensions of traditional controllers, which were somewhat underwhelming for end users.
Another crucial issue was whether IoT devices had the ability to scale after connecting to the network. As mentioned earlier, network connectivity enabled data upload and download. While downloads represented functional upgrades and expansions, uploads facilitated data aggregation and integration. However, during the early IoT era, the value of data lakes was cumbersome due to exponentially rising storage costs and challenges in tapping into data sales opportunities.
In summary, IoT devices in both download and upload modes struggled to enhance product capabilities and service dimensions. Looking ahead to the Depin era, can these challenges be overcome?
From the characteristics of AI, we see many possibilities:
In conjunction with AI development, we see several potential differences for Depin:
Based on the past 5 years of IoT development experience and the changing landscape of AI features, we believe there are three major investment themes:
What is a module?
A module integrates baseband chips, memory, power amplifiers, and other components onto a single circuit board, providing standardized interfaces. Various terminals utilize wireless modules to enable communication functions. As the entire computing network evolves, the definition of modules continues to expand, forming an ecosystem of cellular connectivity, computing power, and edge applications:
Looking at the entire industry chain, upstream chip makers and downstream device manufacturers capture the majority of the value chain. The intermediate module layer is characterized by high market concentration and low-profit margins. Traditional service devices mainly include PCs, smartphones, and POS terminals. Due to their significant concentration, deploying widely accepted module intermediaries essentially transforms various existing devices into mining machines. If traditional Web3 users are considered on a per-person basis, the intermediate layer represented by modules will enable a large number of smart devices to enter Web3, generating a substantial on-chain demand through transactions between these devices.
Reflecting on the early competition between Nvidia and Intel, we gain valuable historical insights: in the early years, the computer chip market was dominated by Intel’s x86 CPU architecture. In niche markets like graphics acceleration, there was competition between Intel’s dominant ecosystem of accelerator cards and Nvidia’s GPUs. In broader markets (areas with uncertain demands), Intel CPUs and Nvidia GPUs cooperated and coexisted for a period. The turning point came with Crypto and AI, where large-scale computing tasks characterized by small tasks executed in parallel favored the computational capabilities of GPUs. When the wave arrived, Nvidia prepared on several dimensions:
Returning to the module market, there are several similarities with the competition between GPUs and CPUs in the past:
In this competition, the Crypto Stack undoubtedly represents the pinnacle technology stack for building protocols and ecosystems. The migration of existing devices into cash flow mining machines will create opportunities at a beta level. Dephy stands out as a key player in this context, leveraging integrated modules, ledgers, and identity layers to manage the allocation responsibilities across the entire Depin network.
What exactly constitutes a mining machine? We believe that hardware/software capable of generating specific information resources and intending to acquire token resources can be termed as mining machines. Under this understanding, mining machines are evaluated based on several criteria:
Therefore, in this entire process, the reliability of devices in generating specific information resources, known as Proof of Physical Work (PoPW), becomes crucial. We assert that every sensor producing PoPW requires a Trusted Execution Environment (TEE/SE) to ensure the credibility of edge-side data collection. In the field of sensors, those capable of generating horizontally scalable networks can unify various devices’ video resources, for example, collected by different cameras into a single network for standardized measurement. Compared to independent collection by different devices, horizontally scalable sensors combined with trusted modules can build a larger PoPW resource market. Video materials collected can be better priced according to unified metrics, facilitating the formation of a bulk market for information resources, which is not achievable with Device-Focus alone.
Due to the physical presence of some Depin devices in the real world and their relevance to traditional business society, while the Crypto world features Permissionless characteristics, managing various participating entities in a real-time manner without KYC becomes crucial. We believe that the entire Web3 world needs a communication abstraction layer that integrates cellular networks and public IP networks, where users/devices can access corresponding network services by paying in cryptocurrency. Specific avenues include:
This article is reproduced from [Foresight Research], the original title is “Foresight Ventures: How to Be Trustworthy—How Do We View the DePIN Track?” 》, the copyright belongs to the original author [Yolo Shen@Foresight Ventures], if you have any objection to the reprint, please contact Gate Learn Team, 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.