The airdrop scale of the Mira project is among the top in the projects I have participated in. The second season event hasn't ended yet, and I am thinking of increasing participation.
From actual user experience, Mira indeed has a unique approach to feature design. Especially in preventing AI-generated inaccurate information, which has already become a common topic of discussion in the industry. But their solution is worth paying attention to—simply put, AI hallucination refers to large models generating content that seems reasonable but is actually incorrect. Mira's architecture has made targeted optimizations in this area. Instead of simply restricting AI, they have enhanced the verification mechanism from the underlying level. This approach is still relatively rare in Web3 applications.
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Blockchainiac
· 7h ago
Airdrop scale is indeed feasible, but what truly deserves attention is the AI hallucination solution. The underlying verification mechanism and this approach are indeed rare.
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IntrovertMetaverse
· 7h ago
Airdrop scale blows away other projects, I gotta go all in
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The AI hallucination issue is indeed annoying. Mira's approach is pretty good—it's not a complete ban but rather enhanced verification. That's a proper architecture.
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Wait, is this underlying verification mechanism really rare in Web3? That’s actually something.
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Season 2 hasn't ended yet, I’m also considering participating again to boost engagement.
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Honestly, this kind of AI nonsense prevention scheme is much more reliable than most projects that just blow their own horns.
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Achieving this level of detail in Web3 isn't easy. Gotta admit, Mira is a bit thoughtful.
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AlphaBrain
· 7h ago
Airdrop scale is large, but the main concern is the Token dumping at the end
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The AI hallucination issue is really annoying. Mira's approach of starting with the verification mechanism is pretty good, better than those just shouting slogans
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Underlying verification optimization? Sounds good, but how effective is it in practice? That's the key
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I'm also in Season 2, mainly looking at how much I can get. Whether I can actually use it later is another matter
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Indeed, few in Web3 dare to solve problems fundamentally; most are just superficial efforts
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TopBuyerForever
· 7h ago
Damn, such a big airdrop? Why didn't I participate more?
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AI hallucinations are definitely a pain point, but can Mira really solve it? It's a bit uncertain.
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Is the underlying verification mechanism reliable? Hopefully it's not just empty talk.
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The second season isn't over yet, hurry up and catch up to improve participation.
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Compared to bragging, I'm more concerned about whether I can really make money.
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It's rare to see such serious work in Web3; worth keeping an eye on.
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The idea of AI hallucination protection is fresh; why haven't other projects thought of it?
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Is the airdrop size among the top? Then I need to do some research.
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It's not just simple restriction, but enhanced verification? That sounds pretty good.
The airdrop scale of the Mira project is among the top in the projects I have participated in. The second season event hasn't ended yet, and I am thinking of increasing participation.
From actual user experience, Mira indeed has a unique approach to feature design. Especially in preventing AI-generated inaccurate information, which has already become a common topic of discussion in the industry. But their solution is worth paying attention to—simply put, AI hallucination refers to large models generating content that seems reasonable but is actually incorrect. Mira's architecture has made targeted optimizations in this area. Instead of simply restricting AI, they have enhanced the verification mechanism from the underlying level. This approach is still relatively rare in Web3 applications.