The post Ethereum’s ‘Trustless Manifesto’ and the return to first principles appeared on BitcoinEthereumNews.com. This is a segment from The Breakdown newsletter. To read full editions, subscribe. As crypto markets have tumbled, it’s been a reflective week in Ethereum land. On Thursday, Vitalik Buterin and co-authors Yoav Weiss and Marissa Posner dropped The Trustless Manifesto — a sweeping, almost poetic call to arms for developers to recommit to the network’s founding ethos: Build systems that rely on math and consensus, not on people or platforms. The document reads like a philosophical companion to Justin Drake’s Lean Ethereum proposal, which turned one year old this week. A newly active X account, @leanEthereum, has popped up to mark the milestone — and the overlap in timing doesn’t feel accidental. With DevConnect kicking off Monday in Buenos Aires, the pair of ideas together set the tone for a week that’s as much about vision as it is about innovation. ‘Trustlessness is the thing itself’ At its core, the manifesto argues that Ethereum’s success has also made it fragile. As infrastructure and apps scale, the community risks outsourcing too much — RPC endpoints, rollup sequencing, even “self-custody” — to a shrinking circle of trusted intermediaries. Each convenience, it warns, brings the network closer to dependence. “The only defense is trustless design,” the authors write. “Without it, everything else — efficiency, UX, scalability — is decoration on a fragile core.” The text lays out three “laws” of trustless design — no critical secrets, no indispensable intermediaries and no unverifiable outcomes — and ends with a pledge: “We refuse to call a system ‘permissionless’ when only the privileged can participate.” The drift toward dependence One of the manifesto’s most striking metaphors compares Ethereum’s current trajectory to that of email — once an open, decentralized protocol that anyone could run themselves. Today, spam filters, blocklists and trust-based reputation systems have made… The post Ethereum’s ‘Trustless Manifesto’ and the return to first principles appeared on BitcoinEthereumNews.com. This is a segment from The Breakdown newsletter. To read full editions, subscribe. As crypto markets have tumbled, it’s been a reflective week in Ethereum land. On Thursday, Vitalik Buterin and co-authors Yoav Weiss and Marissa Posner dropped The Trustless Manifesto — a sweeping, almost poetic call to arms for developers to recommit to the network’s founding ethos: Build systems that rely on math and consensus, not on people or platforms. The document reads like a philosophical companion to Justin Drake’s Lean Ethereum proposal, which turned one year old this week. A newly active X account, @leanEthereum, has popped up to mark the milestone — and the overlap in timing doesn’t feel accidental. With DevConnect kicking off Monday in Buenos Aires, the pair of ideas together set the tone for a week that’s as much about vision as it is about innovation. ‘Trustlessness is the thing itself’ At its core, the manifesto argues that Ethereum’s success has also made it fragile. As infrastructure and apps scale, the community risks outsourcing too much — RPC endpoints, rollup sequencing, even “self-custody” — to a shrinking circle of trusted intermediaries. Each convenience, it warns, brings the network closer to dependence. “The only defense is trustless design,” the authors write. “Without it, everything else — efficiency, UX, scalability — is decoration on a fragile core.” The text lays out three “laws” of trustless design — no critical secrets, no indispensable intermediaries and no unverifiable outcomes — and ends with a pledge: “We refuse to call a system ‘permissionless’ when only the privileged can participate.” The drift toward dependence One of the manifesto’s most striking metaphors compares Ethereum’s current trajectory to that of email — once an open, decentralized protocol that anyone could run themselves. Today, spam filters, blocklists and trust-based reputation systems have made…

Ethereum’s ‘Trustless Manifesto’ and the return to first principles

This is a segment from The Breakdown newsletter. To read full editions, subscribe.


As crypto markets have tumbled, it’s been a reflective week in Ethereum land. On Thursday, Vitalik Buterin and co-authors Yoav Weiss and Marissa Posner dropped The Trustless Manifesto — a sweeping, almost poetic call to arms for developers to recommit to the network’s founding ethos: Build systems that rely on math and consensus, not on people or platforms.

The document reads like a philosophical companion to Justin Drake’s Lean Ethereum proposal, which turned one year old this week. A newly active X account, @leanEthereum, has popped up to mark the milestone — and the overlap in timing doesn’t feel accidental. With DevConnect kicking off Monday in Buenos Aires, the pair of ideas together set the tone for a week that’s as much about vision as it is about innovation.

‘Trustlessness is the thing itself’

At its core, the manifesto argues that Ethereum’s success has also made it fragile. As infrastructure and apps scale, the community risks outsourcing too much — RPC endpoints, rollup sequencing, even “self-custody” — to a shrinking circle of trusted intermediaries. Each convenience, it warns, brings the network closer to dependence.

“The only defense is trustless design,” the authors write. “Without it, everything else — efficiency, UX, scalability — is decoration on a fragile core.”

The text lays out three “laws” of trustless design — no critical secrets, no indispensable intermediaries and no unverifiable outcomes — and ends with a pledge: “We refuse to call a system ‘permissionless’ when only the privileged can participate.”

The drift toward dependence

One of the manifesto’s most striking metaphors compares Ethereum’s current trajectory to that of email — once an open, decentralized protocol that anyone could run themselves. Today, spam filters, blocklists and trust-based reputation systems have made it practically impossible for ordinary users to host their own mail servers, the manifesto reads. 

“Email became effectively centralized — not because the protocol was closed, but because practical trustlessness was lost,” the authors write.

It’s a cautionary tale for Ethereum’s access layer. If node operation, transaction relaying or cross-chain messaging ends up dependent on a handful of privileged service providers, the network could become as “permissionless” as Gmail: still functional, but fundamentally gatekept. The manifesto’s plea is simple — don’t let that happen.

“Every shortcut that assumes trust eventually costs freedom.”

If that strikes a chord, a smart contract is now live on mainnet for those who want to “sign” the manifesto — literally staking their names to the principle that decentralization is worth the friction.

From ‘Lean Ethereum’ to the endgame

If The Trustless Manifesto is a moral compass, Lean Ethereum is the architectural blueprint it points toward. Drake’s vision, described as Ethereum’s “endgame” or “final form,” imagines a network stripped down to its purest minimal core — fewer dependencies, simpler consensus, and stronger guarantees that anyone can run a node without institutional backing.

The Lean Ethereum account opened with a video teaser of sorts, sketching a picture of where Ethereum might be heading next: lighter, smaller, but more robust.

A related research proposal getting attention this week is the Ethereum Interop Layer (EIL), posted Nov. 13 on Ethereum Research.

EIL aims to make L2s feel like one chain without new trust assumptions: Users sign once via ERC-4337, wallets bundle a Merkle-rooted set of cross-L2 calls, and a CrossChainPaymaster coordinates “XLP” liquidity providers who front gas and funds with an L1-anchored dispute process to slash misbehavior. Instead of relying on intent solvers and opaque relayers, EIL leans on atomic, optimistic swaps and onchain vouchers to keep censorship resistance and verifiability intact — the manifesto’s “no indispensable intermediaries” rendered as working plumbing.

A fitting prelude to DevConnect

For all the talk of rollup scaling and AI agents, the conversation heading into DevConnect feels unusually introspective. Vitalik’s timing suggests a deliberate recalibration, reminding attendees that Ethereum’s biggest challenges are not only technical, but cultural.

Developers (and this newsletter writer) gathering in Buenos Aires may be debating zk cryptography and DeFi security, but beneath it all lies the same question the manifesto asks outright: What does it mean to trust less in 2025?

As the week begins, Ethereum stands ready to prove that growth doesn’t have to mean compromise. Or, as manifesto’s closing line opines:

“The designs will change. The principles will not.”


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Source: https://blockworks.co/news/ethereum-trustless-manifesto

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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Summarize the following earnings call section for {symbol} ({quarter} {year}). Be factual and concise. 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