MEXC 2025 Report: Zero-Fee Strategy Delivers $1.1B in User Savings, Capturing Leading Market Share

TheNewsCryptoОпубликовано 2026-01-29Обновлено 2026-01-29

Введение

MEXC's 2025 Zero-Fee Strategy Annual Report highlights that its zero-fee trading model saved users a total of $1.1 billion USDT, with 3.44 million users saving an average of $320 each. The strategy significantly increased MEXC's market share in key trading pairs, capturing 72% in PUMPUSDT and 59% in LINKUSDT. It also strengthened the exchange's presence in emerging assets and tokenized real-world assets (RWA), dominating trading volumes for major equities like McDonald’s (73%), Amazon (70%), and Meta (61%). The report emphasizes that zero-fee trading acts as a liquidity engine and competitive advantage, supporting both mainstream and emerging crypto markets.

MEXC, the fastest-growing global cryptocurrency exchange, redefining a user-first approach to digital assets through true Zero-Fee trading, today released its 2025 Zero-Fee Strategy Annual Report. The ongoing commitment not only saved users a total of 1.1 billion USDT in fees but also bolsters both mainstream growth and emerging asset visibility, driving balanced development across the entire crypto landscape.

The platform’s removal of fees across 3,026 spot trading pairs and 203 futures pairs resulted in significant savings for its users. Data shows 3.44 million users saved an average of $320 each, with the top single-user saving reaching $9 million. The move represented a significant shift in standard exchange fee models.

“We proved that Zero-Fee trading isn’t a promotional tactic—it’s a liquidity engine,” the report states. The strategy delivered measurable competitive advantages, with MEXC capturing 72% market share in PUMPUSDT and 59% in LINKUSDT.

The “dual-market” approach demonstrated strategic precision: futures volume was anchored by mainstream assets (BTC& ETH made up 70% of the top 10), while emerging narratives surged. SUIUSDT ranked fourth, and USDC pairs exploded (BNBUSDC up 110x, SUIUSDC up 83x).

Zero-Fee proved particularly transformative for emerging assets. MNTUSDT gained 53% points in market share, while PUMP and LINK increased 42% and 34% respectively. The platform successfully bootstrapped new tokens while unlocking renewed trading potential in established assets across Layer 1s, DeFi, and oracle sectors.

In spot markets, MEXC established a commanding presence in the year’s defining narrative: tokenized real-world assets (RWA). The exchange captured dominant market shares in leading tokenized equities—73% of McDonald’s trading, 70% of Amazon, and 61% of Meta—while also securing 61% of Robinhood and 55% of Coinbase volume. This performance reinforced the platform’s strategic “Widest Selection” positioning within the RWA landscape.

Since December 22, 2025, MEXC expanded Zero-Fee coverage to all spot trading pairs, removing the final barriers to entry for retail and institutional traders alike.

The report illustrates how MEXC’s “MEXCmize, Zero-Fee, Infinite Opportunities” flywheel has transitioned from concept to a demonstrable market advantage. This was achieved by stripping away transaction costs to facilitate high-frequency strategies and providing consistent liquidity across the asset spectrum, thereby establishing a resilient competitive position.

“We’re not just building the lowest-cost exchange,” the report concludes. “We’re building the premier crypto gateway defined by lowest costs and widest selection—empowering global users to capture market opportunities and maximize asset value.”

Access the full report here.

About MEXC

Founded in 2018, MEXC is committed to being “Your Easiest Way to Crypto.” Serving over 40 million users across 170+ countries, MEXC is known for its broad selection of trending tokens, everyday airdrop opportunities, and low trading fees. Our user-friendly platform is designed to support both new traders and experienced investors, offering secure and efficient access to digital assets. MEXC prioritizes simplicity and innovation, making crypto trading more accessible and rewarding.

MEXC Official Website| X | Telegram |How to Sign Up on MEXC

For media inquiries, please contact MEXC PR team: [email protected]

Disclaimer: TheNewsCrypto does not endorse any content on this page. The content depicted in this Press Release does not represent any investment advice. TheNewsCrypto recommends our readers to make decisions based on their own research. TheNewsCrypto is not accountable for any damage or loss related to content, products, or services stated in this Press Release.

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Связанные с этим вопросы

QHow much did MEXC's Zero-Fee Strategy save users in total according to the 2025 report?

AMEXC's Zero-Fee Strategy saved users a total of 1.1 billion USDT in fees.

QWhat percentage of market share did MEXC capture in the PUMPUSDT trading pair?

AMEXC captured 72% market share in the PUMPUSDT trading pair.

QWhich two mainstream assets made up 70% of the top 10 futures trading pairs by volume on MEXC?

ABTC and ETH made up 70% of the top 10 futures trading pairs by volume.

QIn the RWA (tokenized real-world assets) market, what percentage of McDonald's tokenized equity trading did MEXC capture?

AMEXC captured 73% of McDonald's tokenized equity trading.

QWhen did MEXC expand its Zero-Fee coverage to include all spot trading pairs?

AMEXC expanded Zero-Fee coverage to all spot trading pairs on December 22, 2025.

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