Liquidity Bootstrapping & Wager Flow

The wagering process is designed to directly boost liquidity

Wager Initiation

  • Users place wagers in any supported currency (ETH, stablecoins, or $GAMBA).

Fee & Cost Deductions:

  • A portion is allocated to protocol fees (supporting development and operations).

  • Another portion goes to Meme 2 Earn initiatives, incentivizing content creation.

  • Any remaining platform EV is automatically swapped into $GAMBA, creating consistent buy pressure.

  • This mechanism ensures all platform activity ultimately supports token value and liquidity.

Payout Mechanism

  • Liquidity Injection (not $GAMBA):

    • The system performs a Just-In-Time (JIT) purchase operation. The remaining wager amount is injected into the liquidity pool.

    • This continuous liquidity loop strengthens price stability and reduces slippage for traders.

  • Liquidity Injection ($GAMBA):

    • When users win $GAMBA, the system performs 2 operations:

      • $GAMBA tokens are removed from the liquidity pool on the corresponding chain

      • These tokens are immediately used to execute the payout to the winner

    • This cross-chain JIT approach ensures efficient payouts while maintaining optimal liquidity across all supported networks

Market Impact

  • This cycle creates natural buy pressure as ETH enters the pool during wagering.

  • Simultaneously, it reduces circulating $GAMBA supply as tokens are locked in the liquidity pool.

  • Together, these forces create an upward price trajectory for $GAMBA.

  • Case Study:

    • We listed $noot at $2m MC, it is currently hovering at $20m

    • Total ETH injected -> 125 ETH ($250k)

    • Biggest Win -> 2 ETH from game - 100x

    • 2.7 ETH from Mommy Buy Fund - 400x

    • Total plays - 31.6K

Liquidity Provider Incentives:

  • Liquidity providers earn from trading fees generated by both natural market activity and game-driven transactions.

  • This incentivizes long-term liquidity provision, further strengthening the ecosystem.

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