Robinhood Layer-2 goes live as its crypto revenue drops 38%

ambcryptoPublicado a 2026-02-11Actualizado a 2026-02-11

Resumen

Robinhood has launched a public testnet for its Ethereum-based Layer-2 blockchain, Robinhood Chain, built on Arbitrum. The announcement was made at Consensus Hong Kong, marking the first public rollout since its initial reveal last year. The testnet offers developers access to documentation and compatibility with standard Ethereum tools, with infrastructure partners like Alchemy and LayerZero already building on it. Despite reporting record Q4 net revenue of $1.28 billion—a 27% year-over-year increase—the figure fell short of Wall Street expectations. Crypto revenue declined by 38% to $221 million, though crypto trading still saw a 3% quarterly volume increase to $82.4 billion. Net income dropped 34% to $605 million, though earnings per share slightly exceeded forecasts. For the full year 2025, Robinhood posted record net revenue of $4.5 billion, up 52% from 2024, with annual net income rising 35% to $1.9 billion. Revenue from prediction markets and futures surged 375% year-on-year to $147 million, surpassing equity-trading revenue for the first time. Following the earnings report, HOOD’s stock price declined.

Robinhood has launched a public testnet for its new Ethereum-based Robinhood Chain. While Wall Street reacted negatively to its latest earnings, the company seems focused on building a more diversified, global platform.

Robinhood Layer-2 unveiled

Built on Arbitrum, Robinhood Chain was introduced by Johann Kerbrat, SVP and General Manager of Robinhood Crypto, at Consensus Hong Kong. This is the first public rollout after being announced at the company’s Cannes keynote last year.

The testnet will give developers access to entry points, documentation, and full compatibility with standard Ethereum [ETH] tools. Infrastructure partners such as Alchemy and LayerZero [ZRO] are already building on the network.

Revenue climbs 27%, but crypto slows

Robinhood delivered record Q4 net revenue of $1.28 billion, up 27% YOY. However, the figure fell short of Wall Street’s $1.34 billion expectations. Crypto revenue was a weak spot, dropping by 38% from a year earlier to $221 million.

Quarterly net income declined 34% to $605 million, though earnings per share came in at 66 cents. That was slightly above the 63 cent forecast.

For the full year, Robinhood posted record net revenue of $4.5 billion in 2025 – A 52% increase from 2024. Annual net income rose 35% to $1.9 billion. Crypto volumes rose 3% quarter-on-quarter to $82.4 billion, while equity volumes jumped 10% to $710 billion. Options contracts went up 8% to 659 million as well.

Meanwhile, revenue from prediction markets and futures was up 375% year-on-year to $147 million. They surpassed equity-trading revenue for the first time.

With revenues lower than forecasted, HOOD slipped on the price charts in response.

The bigger picture

Preguntas relacionadas

QWhat is the name of Robinhood's new Ethereum-based Layer-2 network and what technology is it built on?

AThe new network is called Robinhood Chain and it is built on Arbitrum.

QWhat was the key financial figure that fell short of Wall Street's expectations in Robinhood's Q4 earnings?

ARobinhood's Q4 net revenue of $1.28 billion fell short of Wall Street's expectations of $1.34 billion.

QBy what percentage did Robinhood's crypto revenue decline year-over-year in its latest earnings report?

ARobinhood's crypto revenue declined by 38% year-over-year.

QWhich two infrastructure partners were mentioned as already building on the new Robinhood Chain testnet?

AAlchemy and LayerZero [ZRO] are the infrastructure partners already building on the network.

QWhich revenue stream saw a massive 375% year-on-year increase and surpassed equity-trading revenue for the first time?

ARevenue from prediction markets and futures increased by 375% year-on-year to $147 million, surpassing equity-trading revenue for the first time.

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