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.const believes Bittensor will outpace centralized machine learning labs, becoming the go-to hub for efficient problem-solving in data collection, benchmarks, and AI training. As competitors emerge, $TAO aims to remain the Schelling point for digital commodity systems.

102,100 просмотров • 1 год назад •via X (Twitter)

Комментарии: 10

Фото профиля Grayscale
Grayscale1 год назад

Watch the full $TAO Deeper Dive:

Фото профиля τauShaman | τ | ϙ |
τauShaman | τ | ϙ |1 год назад

@const_reborn People should pay more attention to @BarrySilbert and @Grayscale @Grayscale have been bullish on $BTC before @saylor and anyone else and did a lot to push $BTC adoption... Now the same @Grayscale is bullish on $TAO !

Фото профиля τerenc3
τerenc31 год назад

@const_reborn He’s not wrong.

Фото профиля Alex DRocks
Alex DRocks1 год назад

@const_reborn he's most probably right about Bittensor

Фото профиля Kτinvesτor
Kτinvesτor1 год назад

@CryptoMcDreamy @const_reborn $TAO is 👑. The $BTC of AI 🤖. It’s so obvious too.

Фото профиля OpenGPU Enthusiast Grid
OpenGPU Enthusiast Grid1 год назад

@const_reborn Tao does not have enough scalability😏

Фото профиля Prabrorooo
Prabrorooo1 год назад

@const_reborn Lord $TAO 👑

Фото профиля Crypto Ricky 💎
Crypto Ricky 💎1 год назад

@const_reborn $TAO is the next big thing in this space!

Фото профиля Jesse Wright
Jesse Wright1 год назад

@const_reborn Can someone explain to me how value accrues to the network from subnets? Subnets build the game, miners play it, validators confirm it. Subnets are running businesses off chain, so how does the value accrue back to $Tao holders?

Фото профиля Anon
Anon1 год назад

@const_reborn Bullish $TAO

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1,171,704 просмотров • 2 месяцев назад