Limitless token sale attracts $200M+ in pledges on Kaito Capital Launchpad with 200x oversubscription. Explore the allocation model and market impact. Limitless token sale attracts $200M+ in pledges on Kaito Capital Launchpad with 200x oversubscription. Explore the allocation model and market impact.

Limitless Public Sale Massively Oversubscribed on Kaito’s Capital Launchpad

2025/10/09 16:10
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Limitless, the largest prediction market on Base with a trading volume of more than $370 million, recently concluded sales of its public offering on the Kaito Capital Launchpad. The sales were hugely oversubscribed with almost 200.97 million USDC being pledged against only 1 million USDC in allocations representing an exceedingly oversubscription of 200 times.

The event will take place between September 25 and October 5, 2025, and 32,686 individuals participated in the event worldwide, with the personal contribution of 1,000 to 250,000 USDC. This momentum is so substantial that it is a high degree of investor interest in the decentralized prediction markets within the DeFi market.

Record-Breaking Participation Statistics

The last figures give a compelling image of the reality of interest in the market in prediction markets and Limitless. Despite participants submitting substantially larger pledge amounts, the average distribution was just about 31 USDC. The sales clearly ran under strong oversubscription conditions, with most investors receiving significantly reduced allocations. The highest participant earned an allocation that was 20 times greater than the typical users. This outcome showed how the priority system works, where the first to adopt and those members of the community with genuine interest get the first option.

Each member was given at least $10, which guaranteed a wide distribution instead of ownership being in the hands of whale investors. Sales were calculated on a fully diluted basis of $75M, making the economic expectations clear. Tokens will be unlocked 50% at the Token Generation Event in October 2025, with the remaining half released later.

Knowledge of the Priority Allocation System

The Capital Launchpad by Kaito employed an improved allocation process that was far beyond the first-come, first-served or normal lottery system. In determining allocations to the massive pool of overcrowded participants, the platform puts into consideration a few key attributes. 

Active users of the platform had a better status in the process of allocation and results, who were presented with an active position during the selection campaign. The approach incentivized those accounts that had greater on-chain activity and good social image on multiple channels. The Kaito community was significant, and Top Yaps account users were entitled to special treatment.

The holders of Yapybaras NFTs and KAITO were also given priority in the distribution process. There were also allocations reserved at least 30% especially to existing Kaito community members and participants. Pledge size and timing were critical, with larger and earlier commitments obtaining better allocations overall.

Wider Implications of Prediction Markets

The increasing popularity is a sign of an emerging prediction markets industry that is no longer driven by simple binary options but is on the way to becoming sophisticated. Limitless positions itself as the most convenient way for active traders to trade short-term price predictions. The site claims to be the only major prediction market that has launched its own native token.

Prediction markets are gaining popularity across multiple blockchains as projects investigate novel approaches to transparency. Built on Base, Coinbase’s Layer 2 solution, Lower expenses and faster settlements provide limitless benefits over alternatives.

Conclusion

Limitless token sale shows that there is still a desire to invest in good DeFi projects. The 200x over-subscription is an indication of real interest in the prediction markets. It also confirms the community-oriented approach of allocation by Kaito. The difference between this sale and others is that it is a well-thought-out balance. It promotes existing community members and exposes new ones. The priority system was biased towards active users and creators of content. This is a move towards reputation-based distribution.

The token generation event is coming towards the end of this month. Limitless will have the focus of the secondary market. They are already refunding the participants. Soon they will find out whether this situation of excessive sales is a permanent success.

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