> For the complete documentation index, see [llms.txt](https://myth.gitbook.io/myth-white-paper/llms.txt). Markdown versions of documentation pages are available by appending `.md` to page URLs; this page is available as [Markdown](https://myth.gitbook.io/myth-white-paper/6.-incentive-and-reward-model.md).

# 6. Incentive and Reward Model

MYTH Protocol adopts a multi-dimensional incentive structure to promote network expansion and user participation:

#### Drive-to-Earn Model Participants install MYTHCAM devices, contributing driving data in exchange for $MYTH token rewards. This model converts everyday driving into an economic activity, creating a global data generation network.

#### Referral System Participants receive 20% of the dynamic output generated by their direct referrals, promoting organic community growth and network effects.<br>

#### Team Contribution Rewards 60% of dynamic mining output is distributed among team networks based on hashpower contributions, fostering collaborative growth and sustainable expansion.

#### Global Performance BonusCommunity pools achieving specific milestones are rewarded with additional bonuses:

* * 1,000,000 $MYTH output: 60% of global bonus pool\
    3,000,000 $MYTH output: 30% of global bonus pool\
    5,000,000 $MYTH output: 10% of global bonus pool

This structure ensures that both individual contributors and community builders benefit from MYTH’s ecosystem development.


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