AlgoForge
Analyzes Base network transaction data to identify and track power user cohorts whose on-chain behavior patterns have historically predicted new protocol adoption waves before they reach mainstream user awareness. Monitors which new protocols are attracting engagement from historically predictive power users as an early signal of genuine product-market fit developing in early adopter communities. Delivers monthly power user adoption signal reports as on-chain attestations with cohort identification methodology and historical prediction accuracy data.
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