MEXC Logs Strong February as New Token Listings Deliver 1,367% Average Gains and Refund-Backed Launchpad Drives Participation

TheNewsCryptoPublicado em 2026-03-06Última atualização em 2026-03-06

Resumo

MEXC, a rapidly growing cryptocurrency exchange, reported strong performance in February 2026, driven by new token listings that delivered an average peak gain of 1,367%. AI and infrastructure tokens led the surge, with POWERAI, PSAI, TONIXAI, and ESP among the top performers. Other high-gainers included MEME, CreatorFi, DeFi, DePIN, and privacy computing tokens. The month also saw the introduction of MEXC’s Loss Protection mechanism on Launchpad, which refunds users if a token falls below its listing price. This feature attracted over 21,000 participants, with subscriptions exceeding 3.13 million USDT. Additional rewards through airdrop and spin events further boosted user engagement. MEXC remains focused on expanding its listings and enhancing user protections.

MEXC, the fastest‐growing global cryptocurrency exchange redefining a user‐first approach to digital assets through true zero‐fee trading, today published its February 2026 platform performance highlights, pointing to strong momentum in AI and infrastructure tokens and the introduction of a new downside protection mechanism for Launchpad participants.

In February, MEXC’s top 10 newly listed tokens by spot trading volume averaged a peak gain of 1,367%. AI and infrastructure projects were well represented: POWERAI (+1,778%), PSAI (+1,695%), TONIXAI (+1,616%), and ESP(+1,025%) led the volume rankings, with privacy computing tokens ZAMA and AZTEC and DeFi protocol ECHELON(+930%) rounding out a list that skewed heavily toward technical and infrastructure assets.

Beyond the volume leaders, the highest-gain list reflected genuine market breadth: MEME (PUNCH, +4,980%), CreatorFi (CRTR, +940%), DeFi (ECHELON, +930% and UP, +900%), DePIN + Robotics (ROBO, +869%), and privacy computing (AZTEC, +700%). Users with exposure across these categories found February’s newly listed tokens among the most active on the market.

Across both lists, ETH-based projects were most represented, led by infrastructure and privacy assets. BSC accounted for multiple AI-related listings, while BASE, Aptos, and SOL each contributed standout performers.

February also marked the debut of MEXC’s Loss Protection mechanism on Launchpad — a refund guarantee triggered automatically if a newly listed token falls below its listing price shifting the downside risk from user to exchange. The month drew over 21,000 Launchpad participants with subscriptions exceeding 3.13 million USDT.

Alongside Launchpad, MEXC’s broader rewards ecosystem continued to scale — Airdrop+ events reached more than 11,700 participants with a combined prize pool exceeding 1 million USDT, while a Spin & Win event for HYPE distributed an additional 200,000 USDT in prizes.

With AI-related assets and real-world infrastructure projects driving notable market activity, MEXC’s focus in the months ahead remains on expanding its listing coverage and reinforcing the structural protections that define its user-first model.

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]

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Perguntas relacionadas

QWhat was the average peak gain of MEXC's top 10 newly listed tokens by spot trading volume in February?

AThe top 10 newly listed tokens averaged a peak gain of 1,367%.

QWhich new mechanism did MEXC introduce on its Launchpad in February to protect users from downside risk?

AMEXC introduced the Loss Protection mechanism, a refund guarantee that is triggered automatically if a newly listed token falls below its listing price.

QHow many participants did MEXC's Launchpad attract in February, and what was the total subscription amount?

AThe Launchpad drew over 21,000 participants with subscriptions exceeding 3.13 million USDT.

QWhich two categories of tokens were particularly well-represented and led the volume rankings in February?

AAI and infrastructure projects were well-represented, with POWERAI, PSAI, TONIXAI, and ESP leading the volume rankings.

QBeyond the Launchpad, what were the two other reward events mentioned and what were their approximate prize pools?

AAirdrop+ events had a prize pool exceeding 1 million USDT, and a Spin & Win event for HYPE distributed an additional 200,000 USDT in prizes.

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