GPU computing power can be infinitely scaled, but this fundamentally does not solve a key problem—stale data, bias, and poor quality. No matter how powerful the computing capability, encountering garbage data will only amplify problems, not replace them. The real breakthrough lies in redesigning the incentive system. Aligning the interests of data contributors and distributed processing nodes is essential to fundamentally break through the model ceiling. This is exactly what decentralized data networks aim to do—ensure data quality while activating the enthusiasm of all network participants.
View Original
This page may contain third-party content, which is provided for information purposes only (not representations/warranties) and should not be considered as an endorsement of its views by Gate, nor as financial or professional advice. See Disclaimer for details.
9 Likes
Reward
9
6
Repost
Share
Comment
0/400
LuckyHashValue
· 11h ago
Stacking GPUs is useless; if the data is corrupted, everything is for nothing.
View OriginalReply0
ShortingEnthusiast
· 17h ago
Well said, garbage in, garbage out. No matter how many GPUs you have, it's all useless.
View OriginalReply0
RugPullAlarm
· 17h ago
Data quality has indeed been seriously underestimated. But can decentralized data networks really solve the problem of incentive alignment? I need to see on-chain data to believe it.
View OriginalReply0
fren_with_benefits
· 17h ago
No matter how much garbage data there is, it's still garbage. There's nothing wrong with that statement.
View OriginalReply0
MetaverseMigrant
· 18h ago
Stacking hardware is useless; data is king. This should have been understood long ago.
View OriginalReply0
LiquiditySurfer
· 18h ago
The hype around mining power stacking has long been overblown; the real surfing advantage lies in data quality... Garbage in, garbage out. No matter how many GPUs you have, it won't save you.
GPU computing power can be infinitely scaled, but this fundamentally does not solve a key problem—stale data, bias, and poor quality. No matter how powerful the computing capability, encountering garbage data will only amplify problems, not replace them. The real breakthrough lies in redesigning the incentive system. Aligning the interests of data contributors and distributed processing nodes is essential to fundamentally break through the model ceiling. This is exactly what decentralized data networks aim to do—ensure data quality while activating the enthusiasm of all network participants.