> For the complete documentation index, see [llms.txt](https://docs.miracletrade.com/llms.txt). Markdown versions of documentation pages are available by appending `.md` to page URLs; this page is available as [Markdown](https://docs.miracletrade.com/miracle-launchpad.md).

# Miracle Launchpad

Unlike traditional launchpads that require users to "buy into" allocations or stake large amounts of capital, the Miracle Launchpad operates on a Trade-to-Airdrop model.

We believe that the most valuable members of any ecosystem are the active users. Therefore, the Launchpad rewards your activity directly with token airdrops from the most promising new projects in the space.

#### ⚙️ How it Works: XP & Distributions

The Launchpad is powered by XP (Experience Points), a metric distinct from Miracle Points. While Points track your progress toward the Miracle TGE, XP measures your eligibility for immediate token drops throughout the year.

1. Trade & Earn XP: Every trade you execute—whether in Crypto, Equities, or Stocks—generates XP.
2. XP Tiers: The more you trade, the higher your XP tier. Higher tiers receive larger percentages of the total token airdrop pool.
3. Automatic Allocations: Miracle will be partnering with multiple tier 1 projects along the year to supply our users with fantastic incentives, you don't need to "apply" or "buy" your spot. If you have the required XP, your airdrop allocation is automatically calculated and dropped into your account.


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