Solana and Hyperliquid dominate 2025 chain revenue!

ambcryptoPublished on 2025-12-26Last updated on 2025-12-26

Abstract

Solana and Hyperliquid are the top blockchain revenue generators in 2025, with Solana leading at $1.3 billion and Hyperliquid following with $816 million—both surpassing Ethereum. Solana maintains high transaction volumes and revenue despite stable TVL ($7B–$12B), driven by usage in DeFi, memecoin trading, and DePIN. Hyperliquid, a specialized derivatives platform, saw TVL grow from $2B to a $6B peak before stabilizing around $4.1B, with revenue remaining strong due to sustained trading activity. Both networks demonstrate that execution efficiency and high-throughput usage, rather than TVL size or social sentiment, are key to value capture in 2025.

Two very different blockchain networks are emerging as the biggest revenue generators of 2025: Solana and Hyperliquid.

According to CryptoRank data, Solana has generated $1.3 billion in revenue this year, placing it firmly at the top of all blockchains. Hyperliquid ranks second with $816 million.

The figures put both networks ahead of far more capital-heavy chains, including Ethereum, which posted roughly $524 million over the same period.

The rankings highlight a broader shift in 2025: on-chain value is increasingly being captured by networks optimised for execution and throughput rather than sheer liquidity depth.

Solana leads revenue with stable capital base

Throughout 2025, Solana’s Total Value Locked has remained broadly range-bound. It fluctuates between roughly $7 billion and $12 billion, according to DeFi data.

Despite the lack of sustained TVL expansion, transaction volumes have remained consistently high, with several mid-year spikes.

That combination suggests Solana is extracting more revenue per unit of capital, rather than relying on liquidity growth to drive fees.

High-frequency usage across decentralized exchanges, consumer applications, memecoin trading, and DePIN-related activity has directly translated into fee generation.

Social sentiment data adds another layer to the picture. Weighted sentiment around SOL has been highly volatile this year, frequently swinging between positive and negative territory and spending long stretches near neutral.

Yet those sentiment shifts have had little visible impact on usage or revenue.

The divergence points to demand that is usage-driven rather than narrative-driven. This reinforces Solana’s position as a high-throughput execution layer rather than a chain dependent on speculative enthusiasm.

Hyperliquid validates specialised execution model

Built as a specialised derivatives trading platform rather than a general-purpose blockchain, Hyperliquid has generated more revenue in 2025 than most major Layer-1 and Layer-2 networks.

TVL data shows Hyperliquid’s locked capital climbing from around $2 billion early in the year to a peak above $6 billion before settling near $4.1 billion.

Even after that pullback, TVL remains roughly double its level at the start of the year, suggesting capital has remained sticky despite changing market conditions.

Revenue, meanwhile, has stayed elevated relative to its capital base. This indicates that Hyperliquid’s fee generation is supported by sustained trading activity rather than one-off volume spikes.

Sentiment trends tell a similar story. While social sentiment around HYPE cooled in the second half of the year, moving closer to neutral or slightly negative levels, there was no corresponding collapse in TVL or revenue.

That resilience suggests traders are continuing to rely on the platform regardless of broader market mood.

A broader shift in on-chain value capture

Taken together, the data show that in 2025, chains that prioritise execution quality and throughput are outperforming those that rely on large but passive liquidity pools.

Solana represents the general-purpose end of that spectrum, offering broad application coverage with high transaction capacity. Hyperliquid sits at the specialised end, focusing almost exclusively on high-intensity derivatives trading.

Despite their differences, both networks are converting activity into revenue more efficiently than many of their peers.


Final Thoughts

  • Solana and Hyperliquid’s revenue dominance in 2025 shows that execution quality and sustained usage are now driving on-chain value more than TVL growth or social sentiment.
  • As capital efficiency becomes a clearer differentiator, networks that consistently convert activity into fees may continue to outperform larger but less productive chains.

Related Questions

QAccording to the article, which two blockchain networks are the biggest revenue generators of 2025 and what are their respective revenues?

AAccording to the article, Solana and Hyperliquid are the biggest revenue generators of 2025. Solana generated $1.3 billion in revenue, while Hyperliquid generated $816 million.

QWhat does the article suggest is the key reason behind Solana's high revenue despite its range-bound Total Value Locked (TVL)?

AThe article suggests that Solana's high revenue is due to it extracting more revenue per unit of capital, driven by high-frequency usage across decentralized exchanges, consumer applications, memecoin trading, and DePIN-related activity, rather than relying on liquidity growth.

QHow does Hyperliquid's revenue model differ from that of a general-purpose blockchain, and what does its sustained revenue indicate?

AHyperliquid is built as a specialized derivatives trading platform, not a general-purpose blockchain. Its sustained revenue indicates that its fee generation is supported by consistent trading activity rather than one-off volume spikes, and capital has remained sticky on the platform.

QWhat broader shift in on-chain value capture does the data from 2025 highlight?

AThe data highlights a shift where chains that prioritize execution quality and throughput, like Solana and Hyperliquid, are outperforming those that rely on large but passive liquidity pools. Value is increasingly captured by networks optimized for execution and sustained usage.

QWhat conclusion does the article draw about the relationship between social sentiment and on-chain activity for both Solana and Hyperliquid?

AThe article concludes that social sentiment shifts had little visible impact on usage or revenue for both networks. This points to demand that is usage-driven rather than narrative-driven, showing resilience regardless of broader market mood.

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