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Daniel-Dias001/Polymarket-rsi-macd-index-trading-bot

Polymarket trading bot that combines monitoring with strategy logic for Polymarket's 15-minute prediction markets. Polymarket || Polymarket Bot || Polymarket Copy Bot || Polymarket Copy Trading Bot || Polymarket Typescript Bot || Polymarket bot || Polymarket || Polymarket || Polymarket || Polymarket || Polymarket || Polymarket

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What it does

This is an automated trading bot designed for Polymarket, a platform where people bet real money on the outcomes of future events using short 15-minute windows. It uses two common financial analysis signals — momentum indicators borrowed from stock trading — to automatically decide when to place bets, and can run in a practice mode that shows you what it would do without risking real money.

Why it matters

Automated trading bots for prediction markets signal a growing sophistication in how retail and algorithmic traders are approaching platforms like Polymarket, which have seen explosive growth as alternatives to traditional financial products. For founders and investors, this points to an emerging ecosystem of tools being built around prediction markets — a space that's attracting serious attention as a new asset class and information product.

25Active

On the radar — signal detected

Stars
487
Forks
2
Contributors
0
Language
TypeScript

Score updated Feb 26, 2026

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