The era of "easy money" in the crypto market has ended‼️
It's becoming increasingly rare to see projects that, whether in a bull market or not, can achieve tenfold or hundredfold gains just by buying in.
However, Brother Qiang infers that the current AI is definitely akin to the early internet boom—an era of significant opportunity.
No matter what you're working on now, be sure to catch this wave of the times‼️
If we compare current AI to a powerful "black-hearted intermediary," the emergence of @OpenGradient@ is to equip this intermediary with monitoring and enable it to work directly on the blockchain.
Here are three more concrete dimensions to break it down:
1️⃣ Solving the problem of "untrustworthy reasoning" (Verifiable Inference)
* Pain point: Most AI reasoning today runs on centralized servers (like OpenAI). When you ask it questions, it gives you answers, but you can't prove it truly used that model or that it didn't secretly tamper with the results.
* Solution: OpenGradient uses ZKML (Zero-Knowledge Machine Learning) and TEE (Trusted Execution Environment) technologies to provide digital proofs for each AI computation. It assures users that: this result was indeed generated by the specified model and that the process was not tampered with.
2️⃣ Solving the problem of "AI on-chain integration" (On-chain Integration)
* Pain point: Traditional blockchains like Ethereum have very low computing power, making it impossible to run complex AI models. Developers wanting to invoke AI within smart contracts usually have to go through complicated cross-chain or off-chain black-box processes, which are highly inefficient.
* Solution: It has developed HACA (Heterogeneous AI Computing Architecture) and PIPE (Parallel Inference Engine). This is like installing a "dedicated GPU" on the blockchain, allowing developers to call AI inference directly within Solidity contracts as smoothly as calling regular functions, without blocking blockchain consensus.
3️⃣ Solving the issues of "model ownership and censorship" (Decentralized Model Hub)
* Pain point: Top-tier models are monopolized by large corporations, which can remove your models from the shelves, modify your interfaces at any time, or even censor specific content.
* Solution: Its Model Hub is called the "Web3 version of Hugging Face." Model weights and metadata are stored on a decentralized network, tamper-proof and access-controlled. Anyone can publish and invoke models, and through token incentives, realize "models as assets," giving open-source AI a censorship-resistant sanctuary.
The ultimate goal: OpenGradient makes AI a "visible, trustworthy, and directly blockchain-driven" decentralized infrastructure, completely ending the issues of "single points of failure" and "trust black boxes" in AI within the Web3 world.
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The era of "easy money" in the crypto market has ended‼️
It's becoming increasingly rare to see projects that, whether in a bull market or not, can achieve tenfold or hundredfold gains just by buying in.
However, Brother Qiang infers that the current AI is definitely akin to the early internet boom—an era of significant opportunity.
No matter what you're working on now, be sure to catch this wave of the times‼️
If we compare current AI to a powerful "black-hearted intermediary," the emergence of @OpenGradient@ is to equip this intermediary with monitoring and enable it to work directly on the blockchain.
Here are three more concrete dimensions to break it down:
1️⃣ Solving the problem of "untrustworthy reasoning" (Verifiable Inference)
* Pain point: Most AI reasoning today runs on centralized servers (like OpenAI). When you ask it questions, it gives you answers, but you can't prove it truly used that model or that it didn't secretly tamper with the results.
* Solution: OpenGradient uses ZKML (Zero-Knowledge Machine Learning) and TEE (Trusted Execution Environment) technologies to provide digital proofs for each AI computation. It assures users that: this result was indeed generated by the specified model and that the process was not tampered with.
2️⃣ Solving the problem of "AI on-chain integration" (On-chain Integration)
* Pain point: Traditional blockchains like Ethereum have very low computing power, making it impossible to run complex AI models. Developers wanting to invoke AI within smart contracts usually have to go through complicated cross-chain or off-chain black-box processes, which are highly inefficient.
* Solution: It has developed HACA (Heterogeneous AI Computing Architecture) and PIPE (Parallel Inference Engine). This is like installing a "dedicated GPU" on the blockchain, allowing developers to call AI inference directly within Solidity contracts as smoothly as calling regular functions, without blocking blockchain consensus.
3️⃣ Solving the issues of "model ownership and censorship" (Decentralized Model Hub)
* Pain point: Top-tier models are monopolized by large corporations, which can remove your models from the shelves, modify your interfaces at any time, or even censor specific content.
* Solution: Its Model Hub is called the "Web3 version of Hugging Face." Model weights and metadata are stored on a decentralized network, tamper-proof and access-controlled. Anyone can publish and invoke models, and through token incentives, realize "models as assets," giving open-source AI a censorship-resistant sanctuary.
The ultimate goal:
OpenGradient makes AI a "visible, trustworthy, and directly blockchain-driven" decentralized infrastructure, completely ending the issues of "single points of failure" and "trust black boxes" in AI within the Web3 world.