VIACHESLAV pfp

VIACHESLAV

@ttmbro

95 Following
52 Followers


Vitalik Buterin pfp
Vitalik Buterin
@vitalik.eth
Cross-posting a thought on staking from the other app: ------ Perhaps we should recognize that 32 ETH is much more of a barrier for stakers than bandwidth reqs, and temporarily do a trade where we up the bandwidth reqs a bit and in exchange drop the staking deposit minimum to eg. 16 or 24 ETH. It's net-good for both staking accessibility and scale. Then once we figure out peerdas, bandwidth reqs go back down, and once we figure out orbit SSF, the deposit minimum can drop to 1 ETH.
8 replies
64 recasts
340 reactions

VIACHESLAV pfp
VIACHESLAV
@ttmbro
https://wallet.coinbase.com/nft/mint/eip155:8453:erc721:0xDFf7F56115568bcdd0E1F9DFdb73dD14EC83F6f7?challengeId=5BQ38K7I8WFfQd0OBomT33
0 reply
0 recast
0 reaction

Rainbow pfp
Rainbow
@rainbow
🚨 Rainbow now supports Warpcast mobile transactions 🚨 you all know that there's endless actions you can make onchain when scrolling Warpcast: ⚡️ opening Pokemon cards 💸 paying your friends ❤️ minting whatever so go have fun exploring with Rainbow 🌈 (yes this means we added MWP my nerd friends)
4 replies
54 recasts
194 reactions

VIACHESLAV pfp
VIACHESLAV
@ttmbro
0 reply
0 recast
0 reaction

VIACHESLAV pfp
VIACHESLAV
@ttmbro
0 reply
0 recast
0 reaction

VIACHESLAV pfp
VIACHESLAV
@ttmbro
:;
0 reply
0 recast
0 reaction

VIACHESLAV pfp
VIACHESLAV
@ttmbro
👍
0 reply
0 recast
0 reaction

VIACHESLAV pfp
VIACHESLAV
@ttmbro
cooooool
0 reply
0 recast
0 reaction

VIACHESLAV pfp
VIACHESLAV
@ttmbro
Summer
0 reply
0 recast
0 reaction

Anton ProfiT pfp
Anton ProfiT
@antonprofit.eth
Новая NFT от Zora x Farcaster https://zora.co/collect/zora:0xc86340bf9b348e83b655b0b4762c11e247eda7b5/1?referrer=0xF278AC8e97dd418A3ce13307Fa1b44Ff87a18F7c
3 replies
16 recasts
59 reactions

VIACHESLAV pfp
VIACHESLAV
@ttmbro
ODESA. BLACK SEA
0 reply
0 recast
1 reaction

Vitalik Buterin pfp
Vitalik Buterin
@vitalik.eth
The differences between the APIs of numpy, cupy and torch are so fascinating.... ``` >>> import torch as np >>> np.arange(10) tensor([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]) >>> a = np.zeros(20) >>> a[19:-1:-2] = np.arange(10) ``` Torch doesn't let you have ranges that go backwards 🤣 Would love more consistency
0 reply
179 recasts
904 reactions