tradeonmeta

pumpfun sniper bot, A production-ready Solana sniper built for Pump.fun launches β€” detect new tokens the moment they hit chain, buy through the bonding curve with priority fees, and let automation handle take-profit, stop-loss, and staged exits while you focus on strategy.

88
60
69% credibility
Found Jun 01, 2026 at 88 stars -- GitGems finds repos before they trend. Get early access to the next one.
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AI Analysis
TypeScript
AI Summary

An automated trading bot that watches for new memecoin launches on Pump.fun, automatically buys promising tokens that pass safety filters, and sells them automatically when profit targets or stop-losses are hit.

How It Works

1
πŸ’‘ You discover a trading automation tool

You hear about a tool that can automatically buy new tokens the moment they launch and sell them automatically when prices rise.

2
βš™οΈ You set up your trading preferences

You connect your cryptocurrency wallet and choose how much money to risk per trade, setting your comfort level for speed and safety.

3
πŸ‘€ Your bot starts watching the market

Your bot connects to the blockchain and watches every new token launch, filtering out risky ones automatically.

4
🎯 A promising token is detected!

A new token launches that passes all your safety checks β€” good liquidity, fair distribution, no red flags.

5
πŸ›‘οΈ Your bot checks if it's safe to buy

Before spending your money, your bot tests whether it can actually sell the token β€” protecting you from traps.

6
⚑ Your bot buys the token automatically

If everything looks good, your bot buys the token instantly using your chosen amount and settings.

7
πŸ“Š Your bot manages your position

Your bot watches the price and automatically sells when your profit target is reached, your stop-loss triggers, or it's time to bank profits in stages.

πŸ“ˆ You see your trading results

When you stop the bot, you see a summary of wins, losses, and total profits or losses from your trading session.

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AI-Generated Review

What is pumpfun-sniper?

A TypeScript trading bot that watches for new Pump.fun token launches on Solana and automatically buys them within milliseconds. Instead of manually hunting launches through a browser, you configure the bot once with your filters and budget, then let it monitor the blockchain directly and execute trades through the bonding curve. After buying, it manages your positions using configurable take-profit targets, stop-loss rules, and staged exit tranches. If a token migrates to Raydium, it automatically switches to Jupiter for selling.

Why is it gaining traction?

The core advantage is speed and discipline. It subscribes to blockchain logs rather than polling external APIs, which cuts detection latency significantly. It also runs a sell simulation before committing real SOL, which catches honeypot tokens that would otherwise trap your funds. The configurability is extensive: you can set aggressive entry with tight stops, or conservative filters that only touch launches with deep liquidity and low dev concentration. Everything happens locally with your own wallet keys, so there's no third-party custody risk.

Who should use this?

Experienced Solana traders who understand Pump.fun dynamics and want to automate early-stage memecoin participation. It suits developers who want a reference implementation for building similar tools. Casual traders should approach with extreme cautionβ€”this operates in one of the highest-risk segments of DeFi where rugs and dumps are the norm, not the exception.

Verdict

For developers seeking a working Pump.fun automation framework with solid architecture and extensive configuration options, this is worth evaluating. However, with only 88 stars and a credibility score below 1%, the project is still finding its footing. The documentation is thorough and the structured logging helps during live sessions, but test coverage is not visible. Start with micro-positions and paper-trade filters before sizing up.

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