Only xxx Can Save the Crypto World? Let 'Lobster' Play Prediction Markets

比推Publicado a 2026-03-17Actualizado a 2026-03-17

Resumen

This article discusses recent hot topics in the crypto community, as shared by influencers on X (formerly Twitter). Key points include: - Debate around an AI arbitrage bot allegedly earning $98K on Polymarket using Claude. Skeptics point to potential survivorship bias, liquidity constraints, and the rapid decay of alpha once strategies are public. - A resource sharing over 11,000 high-quality image generation prompts for Nano Banana Pro. - Commentary on Venus Protocol, highlighting its vulnerability to repeated exploits, with a linked analysis of how to profit from a recent attack. - A controversial opinion piece by influencer @BTCdayu arguing that only Sam Bankman-Fried (SBF) can "save crypto." The author claims that despite SBF's crimes and 25-year sentence, his genius is needed to address current industry crises: VC-backed altcoins scamming users, Bitcoin miners pivoting to AI, broken tokenomics, and a lack of new narratives. SBF's background at Jane Street, his innovative FTX trading system, and his early bets on AI (like Anthropic) are cited as reasons he could drive integration between AI and crypto, potentially pushing BTC to $1 million. This sparked heated discussion, with replies noting the improbability of a pardon, SBF's likely shift to AI, and that this nostalgia reflects a bygone era of "capital, narrative, and runaway imagination." The article concludes with links to the news outlet's social channels. All content is presented as personal opinion and not invest...

Dear readers, hello~

What were the crypto KOLs talking about in the past 24 hours?

Note: The following content is compiled from the X platform and represents personal opinions, not the stance of this platform, and does not constitute investment advice.

AI Arbitrage Bot: Real or Fake?

Popular Replies:

  • Someone claimed to have made $98K using Claude on Polymarket. I verified: the money is real, the story is fabricated.

  • If the little lobster wants to do 5-minute market detection, the detection frequency should be at least at the ms level, right? Then the consumption of tokens could make someone a "millionaire in debt."

  • 86 times sounds scary, but there are a few issues: 1) Sample bias? Losing bots don't tweet. 2) How much scale can Polymarket's liquidity support? 3) Once the strategy is public, the Alpha disappears. To truly verify sustainability, at least 3 months of backtesting + maximum drawdown is needed;

  • Is this AI just survivor bias? Most losing AIs are too ashamed to show up;

Over 11,000 High-Quality Image Generation Prompts for Nano Banana Pro

Resource self-service: https://github.com/YouMind-OpenLab/awesome-nano-banana-pro-prompts


Venus is Either Being Hacked or on the Way to Being Hacked

Recap on how to profit from the Venus THE attack: https://x.com/hklst4r/status/2033182792029294736

Who Can Save the Crypto World?

Crypto KOL @BTCdayu wrote: Only SBF Can Save the Crypto World.

The author believes that although SBF's misappropriation of funds is a serious crime deserving of a 25-year sentence, the crypto world urgently needs his genius mind to save it from the current crisis: VC altcoins scamming retail, BTC mining farms transitioning to AI, token economics becoming a joke, and a lack of new narratives. SBF, from Jane Street, innovated the FTX trading system, heavily invested in AI projects like Anthropic (potential trillion-dollar returns), and understands the integration of AI and Crypto. If pardoned, he could reconstruct computing power, build an AI Agent settlement layer, inject new capital energy, and push BTC to $1 million. His core view: Forgiveness is not forgetting, but allowing genius to create value under regulation and rules.

The article sparked heated discussion:

Popular Replies:

  • Even if SBF is pardoned, he might not work in crypto anymore, as his business acumen in AI is even higher.

  • He cannot be pardoned. First, he backed the wrong side back then. Second, if you're going the political donation route, you绝对不能中途跳船 (absolutely cannot jump ship midway).

  • Remembering SBF is actually remembering the crypto era of "capital, narrative, and imagination expanding uncontrollably." In that cycle, VC money flooded in like liquidity, "effective altruism" could coexist with high leverage, and big fools holding onto a belief coin could see hundred or thousand-fold gains... So it's about time to wash up and sleep.

  • Staying sober in a bear market is more precious than幻想暴富 (fantasizing about getting rich quick).

  • Surviving > Making money


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Original link: https://www.bitpush.news/articles/7620287

Preguntas relacionadas

QWhat is the main argument presented in the article regarding who can save the crypto circle?

AThe article presents the argument that only SBF (Sam Bankman-Fried), despite his criminal conviction, can save the crypto circle with his genius mind, innovative capabilities from his Jane Street background, and his foresight in AI and crypto fusion.

QWhat are the key criticisms or concerns raised about the AI arbitrage bot story mentioned in the article?

AThe key criticisms include potential survivorship bias (only profitable bots are publicized), questions about the scalability given Polymarket's liquidity, and the concern that the trading alpha would disappear once the strategy is made public.

QAccording to the article, what was the Venus protocol incident about?

AThe Venus protocol was reportedly exploited, and the article includes a link to a复盘 (post-mortem analysis) on how to profit from the Venus THE attack, indicating it was a security incident or hack.

QWhat is the Nano Banana Pro mentioned in the article, and what resource is provided for it?

ANano Banana Pro appears to be an AI image generation tool or model. The article provides a link to a GitHub repository containing over 11,000 high-quality image generation prompts for it.

QWhat is the general sentiment among commentators regarding the 'Only SBF can save crypto' proposal?

AThe sentiment is largely skeptical and critical. Commentators point out that SBF is unlikely to be pardoned, that he might not return to crypto even if he was, and that the piece is more a nostalgic reflection on a past era of crypto excess rather than a practical solution.

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