Coinbase rolls out stock trading, prediction markets in ‘everything app’ push

cointelegraphPublicado em 2025-12-17Última atualização em 2025-12-17

Resumo

Coinbase has expanded its services by launching stock trading and prediction markets as part of its strategy to become an "everything app." The crypto exchange announced the availability of stock and ETF trading in the U.S., with plans for 24/7 global access. Additionally, Coinbase partnered with Kalshi to introduce prediction markets, initially rolling out outside the U.S. The company also revealed plans to offer 24/7 perpetuals with high leverage early next year, allowing bets on both crypto and stocks. These moves align with Coinbase's broader rebranding effort earlier this year to include apps, social features, and chat functionalities.

Coinbase is launching stock trading and prediction markets as the crypto exchange looks beyond digital assets to chase its ambition of creating an “everything app.”

Coinbase head of consumer and business products, Max Branzburg, announced at the company’s year-end conference that “stock trading is now available on Coinbase.”

“This is a major milestone in our plan to enable 24/7 trading of stocks and ETFs from anywhere in the world, powered by crypto,” he said.

Branzburg also said that Coinbase has launched prediction markets in partnership with Kalshi, which will begin its rollout today and later come to the US.

Last month, tech researcher Jane Manchun Wong discovered that Coinbase was developing a prediction markets platform, which indicated it would be backed by Kalshi.

Related: Crypto’s ‘super app’ race is on as industry enters aggregation era: Report

Coinbase is also set to offer 24/7 perpetuals early next year, which will allow users to bet on crypto and stocks gaining or dropping with up to 50 times leverage.

Branzburg said that the new product lineup is part of Coinbase’s “everything exchange.” The company started to lay the groundwork for a wider set of offerings in July, rebranding its wallet app as an “everything app” that added apps, social networks and chat features.

Magazine: Can Robinhood or Kraken’s tokenized stocks ever be truly decentralized?

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