X Bets Big On Crypto Veteran As April Money Launch Nears

bitcoinistPublicado a 2026-03-26Actualizado a 2026-03-26

Resumen

X has hired Benji Taylor, a crypto and DeFi veteran, as its new Head of Design. Taylor, who founded a self-custody crypto wallet and later served as CPO at Aave Labs and Head of Design at Coinbase's Base network, brings deep expertise in crypto infrastructure and financial product design. His appointment comes just weeks before the planned April rollout of "X Money," a new financial product expected to include peer-to-peer payments, high-yield savings, a debit card, and cashback rewards. The move signals X's ambition to integrate financial services into its platform, advancing Elon Musk's vision of an "everything app." Taylor's hiring, strongly advocated by X product lead Nikita Bier, underscores the strategic importance of design and crypto experience in this launch.

A crypto specialist with deep roots in decentralized finance is now leading design at one of the world’s most watched tech platforms.

X has hired Benji Taylor as Head of Design, an appointment that spans the company’s work alongside xAI and SpaceX — and arrives just weeks before a planned financial product launch.

A Hire Built Around Financial Ambition

Taylor’s resume reads like a tour through the last decade of crypto product building. He founded Los Feliz Engineering, the studio behind Family, a self-custody crypto wallet.

Aave Labs — the team behind the decentralized lending protocol Aave, which at its peak held over $40 billion in total deposits — acquired the company in 2023.

Taylor stayed on as Chief Product Officer until October 2025, then moved to Coinbase’s Base network, where he served as Head of Design on the Ethereum-based blockchain platform.

His background isn’t just in design. It’s specifically in the kind of financial tools X says it wants to build.

What X Money Is Supposed To Do

Based on reports, X Money is being lined up for an April rollout, targeting more than 40 US states at launch. The feature set is expected to include peer-to-peer payments, bank account deposits, a linked debit card, and cashback rewards.

A proposed 6% annual yield on balances would put it in direct competition with high-yield savings accounts from traditional banks.

What remains publicly unconfirmed is how, or whether, blockchain technology will be woven into the product from day one. No official disclosure has been made on that front.

But Taylor’s entire professional history sits at the intersection of design and crypto infrastructure — and that has not gone unnoticed by analysts watching the rollout closely.

X product lead Nikita Bier said he had tracked Taylor’s work for years. Bier reportedly pushed internally to get him hired, calling one of his earlier products among the best-designed he had encountered.

That kind of personal advocacy from a senior product executive signals the weight the company is placing on this particular role.

The Bigger Picture Behind The Appointment

Musk has spoken publicly about turning X into what he calls an “everything app” — a single platform covering messaging, content, and financial transactions.

Total crypto market cap currently at $2.38 trillion. Chart: TradingView

Reports indicate that payments infrastructure has been in development for some time, with money transmission licenses secured across multiple US states.

Featured image from Sheldon Cooper/SOPA Images/LightRocket/Getty Images, chart from TradingView

Preguntas relacionadas

QWho has X hired as the new Head of Design, and what is notable about his professional background?

AX has hired Benji Taylor as the new Head of Design. His background is notable for its deep roots in crypto and decentralized finance, having founded a self-custody crypto wallet studio and served as Chief Product Officer at Aave Labs and Head of Design for Coinbase's Base network.

QAccording to the article, what is the name of the financial product X is planning to launch and when is its expected rollout?

AX is planning to launch a financial product called 'X Money,' with an expected public early access rollout in April 2026.

QWhat are some of the key features that the upcoming 'X Money' product is expected to include?

AThe 'X Money' product is expected to include features such as peer-to-peer payments, bank account deposits, a linked debit card, cashback rewards, and a proposed 6% annual yield on balances.

QWhich senior X executive was a strong personal advocate for hiring Benji Taylor, and what did he say about Taylor's work?

AX product lead Nikita Bier was a strong personal advocate for hiring Benji Taylor. He stated that he had tracked Taylor's work for years and called one of his earlier products 'one of the most well-designed' he had encountered.

QWhat larger ambition for the X platform does Elon Musk's concept of an 'everything app' represent, and how do payments fit into this vision?

AElon Musk's concept of an 'everything app' represents the ambition to turn X into a single platform that integrates messaging, content, and financial transactions. Payments are a core component of this vision, aiming to make financial transactions a fundamental part of the user experience on X.

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