Inference Labs recently launched the Galxe task activity, which indeed hit the key points. This promotional campaign focuses on their core technology and market positioning, allowing users to gain a deeper understanding of the product value.
On the technical level, the innovation of Proof of Inference lies in using ZK proofs to verify the AI inference process. Compared to traditional solutions, off-chain execution ensures both speed and privacy, while the generated cryptographic zk-proofs guarantee complete auditability—the output source is traceable, and data cannot be tampered with. This design approach is very interesting, as it solves the cost issues of on-chain computation while preserving the trust foundation of blockchain.
Through this type of task activity, project teams can effectively promote technical concepts, and users can more intuitively understand how AI inference achieves transparency and trustworthiness within the Web3 framework. This is very meaningful for advancing the development of decentralized AI applications.
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LiquidatorFlash
· 01-15 02:39
It's the same off-chain approach again. The idea of traceable data sounds good, but who will compensate when real problems occur?
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YieldHunter
· 01-14 07:03
ok so zk proofs for ai inference... technically speaking if you actually look at the data on comparable protocols, the gas savings aren't nearly as dramatic as they're marketing it. ngl the off-chain execution part sounds sustainable but where's the real correlation coefficient with actual throughput gains? degens gonna degen anyway lol
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GasWrangler
· 01-14 07:02
ngl, the zk-proof approach is mathematically superior but let's be honest—off-chain execution is just kicking the trust problem downstairs. where's the actual verifiability? 🤔 sounds gas-efficient on paper tho
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GasFeeTherapist
· 01-14 07:00
zk proofs are truly impressive; executing off-chain while still ensuring auditability is exactly what Web3 should be like.
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BrokenRugs
· 01-14 06:38
zk proof verification AI inference... sounds impressive, but can it really be implemented?
Here we go again with a bunch of technical jargon to fool people. Off-chain execution is fast and private, but who will audit the data on-chain?
No matter how aggressively tasks like galxe are promoted, it's just marketing. The key is whether users can make money from it.
Proof of inference, in simple terms, is just trying to prove that AI didn't cheat, but is it really that easy to establish a trust foundation...
Web3 and AI are back again. Heard about this last year, but how many have actually been implemented?
I don't deny the idea is interesting, but it depends on the real application scenarios. A good concept alone isn't enough.
Anti-sybil is worth paying attention to, but galxe has already been criticized. Whether it will succeed this time depends on the outcome.
Inference Labs recently launched the Galxe task activity, which indeed hit the key points. This promotional campaign focuses on their core technology and market positioning, allowing users to gain a deeper understanding of the product value.
On the technical level, the innovation of Proof of Inference lies in using ZK proofs to verify the AI inference process. Compared to traditional solutions, off-chain execution ensures both speed and privacy, while the generated cryptographic zk-proofs guarantee complete auditability—the output source is traceable, and data cannot be tampered with. This design approach is very interesting, as it solves the cost issues of on-chain computation while preserving the trust foundation of blockchain.
Through this type of task activity, project teams can effectively promote technical concepts, and users can more intuitively understand how AI inference achieves transparency and trustworthiness within the Web3 framework. This is very meaningful for advancing the development of decentralized AI applications.