Tether and Bybit Launch $1M Golden Month Giveaway With XAUT Rewards

TheNewsCryptoPublicado a 2026-03-11Actualizado a 2026-03-11

Resumen

Tether, the largest company in the digital assets sector, and Bybit, the world's second-largest crypto exchange by volume, have jointly launched the Golden Month Giveaway. This month-long promotion features a $1 million total prize pool and focuses on gold-backed digital assets. Users can earn up to $30 for each eligible referral and receive entries into a Lucky Draw for a chance to win up to one ounce of gold paid in XAUT, Tether's gold-backed token. The campaign, running until March 25, 2026, also offers a limited-time 12% APR XAUT earn product. It aims to provide stability-focused rewards and fixed-income options during periods of market volatility, encouraging user participation through trading and referrals.

The Golden Month Giveaway, a month-long referral and trading promotion focused on gold-backed digital assets, was jointly introduced by Tether, the biggest firm in the digital asset sector, and Bybit, the second-largest cryptocurrency exchange in the world by trading volume. In addition to Lucky Draw entries for a chance to win prizes, including up to 1 ounce of gold paid in XAUT, Tether’s tokenized gold product, users may earn up to $30 for each eligible invite, offering one of the highest referral payouts in the market. There is a $1 million total prize pool for the campaign.

The move comes amid heightened market volatility, as investors increasingly seek assets related to real-world value. This campaign demonstrates a common emphasis on stability-focused goods supported by actual gold. Users may access up to $10 million in stablecoin-based fixed-income options in addition to the giveaway, which are intended to provide a more consistent payout during unpredictable market times.

Increasing Participation with Gold-Backed Incentives

Users that invite others to join Bybit, trade, and engage in platform activities will get incentives under the current promotion, which runs until March 25, 2026.

In addition to Lucky Draw entries for a chance to win prizes worth up to one ounce of gold, paid in XAUT, participants may earn up to $30 for each eligible referral. A guaranteed prize is given to each qualified entrant, and the Lucky Draw offers more opportunities to win larger rewards.

Additionally, a 21-day limited-time 12% APR XAUT earn product will be accessible, providing consumers with increased income chances during the campaign duration.

Bybit and Tether continue to invest in gold-backed and yield-focused tools that help users remain resilient across market cycles through programs like Golden Month Giveaway and its growing stablecoin Earn programs. By combining cutting-edge products, community support, and long-term ecosystem development to navigate volatility together.

The website has further details on the Golden Month Giveaway, including the whole terms and conditions.

TagsBybitTether

Preguntas relacionadas

QWhat is the total prize pool for the Golden Month Giveaway campaign launched by Tether and Bybit?

AThe total prize pool for the campaign is $1 million.

QHow much can users earn for each eligible referral in the Golden Month Giveaway?

AUsers can earn up to $30 for each eligible referral.

QWhat is the duration of the Golden Month Giveaway promotion?

AThe promotion runs until March 25, 2026.

QWhat specific gold-backed product is used to award prizes in the giveaway?

APrizes are awarded in XAUT, which is Tether's tokenized gold product.

QWhat additional financial product is being offered with a 12% APR during the campaign?

AA 21-day limited-time 12% APR XAUT earn product is being offered during the campaign.

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