
How to find upcoming tokens using the best crypto launchpad
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Cryptocurrency investors eager to discover the next breakout project will find it essential to understand how to navigate launchpads. These platforms are a gateway to early-stage tokens, offering tools for discovery, research and purchasing.
Among the top options for tracking new crypto projects is Best Wallet — a user-friendly app that helps investors identify token launches, analyze tokenomics and manage digital assets more efficiently.
Launchpads are a vital resources for cryptocurrency investors eager to hop on the next big thing.
Art_Photo – stock.adobe.com
This guide outlines how to use leading tools and methods, with insights from industry experts.
Download a trusted exchange app — Start by choosing a licensed crypto exchange. We recommend starting with the Best Wallet app, available in both the iOS and Android app stores. Create and verify your account — Sign up using your email, Google, or Apple ID. To complete registration, you'll need to verify your identity with a government-issued ID and enable two-factor authentication (2FA) for added security. Fund your account — Deposit money into your account by linking a bank account or credit card or even using gift cards. Choose an option that best fits your lifestyle for convenience or anonymity. Buy your first cryptocurrency — Use the app's marketplace or swap tool to purchase crypto by entering the ticker symbol — like BTC for Bitcoin or ETH for Ethereum — and follow the prompts to complete the transaction. Choose how to store your crypto — Decide whether you'll keep your crypto in the exchange, move it to a digital wallet (hot wallet), or store it offline (cold wallet) for extra protection.
Early access to token sales can give investors a significant advantage.
'Moonshot and DexScreener are currently dominant. New apps launch all the time. Users are not very sticky,' Zaki Manian, a prominent blockchain developer and advisor, told The Post.
In other words, user retention is low — people often switch between platforms, try new tools, and move on quickly if something more appealing comes along.
This is especially common in the fast-moving world of crypto, where new apps and services frequently emerge, and hype or incentives can draw users away from established platforms.
Solana's low fees and high throughput have made it a hub for emerging tokens.
photo_gonzo – stock.adobe.com
To stay ahead, monitor crypto discussion forums, Telegram and Discord groups and follow announcements on platforms like CoinDesk and Cointelegraph.
Tools like BestWallet and CoinLaunch offer curated listings of new and upcoming projects.
Solana's low fees and high throughput have made it a hub for emerging tokens.
Investors can track launches through Raydium's AcceleRaytor, view token activity on Solscan and connect using Phantom Wallet.
Staying engaged with these tools ensures timely access to new projects.
Uniswap is a decentralized exchange (DEX) built on Ethereum that allows users to trade and list tokens without relying on a centralized intermediary.
Uniswap
As one of Ethereum's primary decentralized exchanges, Uniswap is a hotspot for early-stage tokens. Users can spot new listings through the 'Explore' section, or use DexScreener for detailed analytics.
Following Ethereum developer channels and crypto influencers on X is also helpful.
PancakeSwap is a decentralized exchange built on the Binance Smart Chain that allows users to trade cryptocurrencies, provide liquidity and earn rewards through yield farming and staking.
Pancakeswap
PancakeSwap, built on BSC, is ideal for accessing new projects in the Binance ecosystem.
Check its homepage for new listings and announcements, or explore tools like CoinLaunch for aggregated token data.
Community groups on Telegram often provide early alerts.
Phantom is a user-friendly, non-custodial cryptocurrency wallet built for the Solana blockchain.
Phantom
Phantom is more than a wallet — it's a gateway to the Solana ecosystem. Investors can use its interface to identify and manage new tokens, often before they appear on broader exchanges.
Phantom's integration with apps and token explorers enhances its value for discovery.
Raydium enables fast, low-cost token swaps.
Raydium
Raydium's AcceleRaytor is a launchpad for vetted Solana-based projects.
It provides information on upcoming sales, participation requirements and project documentation.
Staying subscribed to Raydium's updates and engaging with its Discord can keep users ahead of the curve.
Solscan offers deep insight into Solana transactions and token histories.
By tracking wallet movements and monitoring contract deployments, users can spot emerging tokens. It's a research tool that adds confidence to early-stage investing.
The Binance Smart Chain ecosystem is fast-moving and densely populated. PancakeSwap is the leading platform, but BSCScan is crucial for following new token contracts and deployments. Tools like DexScreener and BestWallet can be synced to filter for BSC-based launches.
Early access to token sales can give investors a significant advantage.
Yingyaipumi – stock.adobe.com
Token creation is governed by blockchain protocols and smart contracts.
'Tokens are created through blockchain protocols, often via smart contracts, where developers define the token's supply, distribution, and functionality before deploying them on a blockchain network,' said Martin Leinweber, director of digital asset research and strategy at MarketVector Indexes.
'Tokens are just computer programs. As a result, the mechanisms are limited only by imagination and economic constraints. But the more 'unique' your token is, the more work it will be to make the token available and discoverable by users,' added Zaki Manian.
Finding reliable launchpads begins with trusted news sources and research.
'Investors can find launchpads by researching reputable platforms on crypto news sites like CoinDesk or Cointelegraph, following social media channels like X and Telegram for project announcements, or exploring curated lists on sites like CoinLaunch,' said Leinweber.
Launchpads help blockchain projects fundraise and reach early supporters.
'A crypto launchpad is a platform that helps new blockchain projects raise funds by offering early-stage token sales to investors, often providing vetting and marketing support,' said Leinweber.
To stay ahead, monitor crypto discussion forums, Telegram and Discord groups and follow announcements on platforms like CoinDesk and Cointelegraph.
Maximusdn – stock.adobe.com
Manian added: 'Launchpads work by standardizing token designs to make tokens easier to design.'
No launchpad is perfect for every investor, but a few have established strong reputations.
'There's no one-size-fits-all answer, but platforms like Binance Launchpad, CoinList, and DAO Maker are widely regarded for their credibility, user base, and past project success. However, this doesn't mean that every token launch will be a success. Investors have to do their own research,' said Leinweber.
Manian called Pump.fun 'the most famous launchpad right now' though, he added, 'there are many many more.'
'People choose launchpads for idiosyncratic reasons or because they are lacking features like dividing creator trading fees or anti-sniping mechanisms on launch or built-in airdrop features,' said Manian.
Exchanges vary in quality and reliability.
'The best crypto exchanges prioritize security, liquidity, regulatory compliance (KYC/AML), and transparent custody practices,' said Leinweber.
'Based on different industry benchmarks, the most reputable names include Binance, Coinbase, Kraken, Bitstamp, Crypto.com, Bullish, and Gemini.'
Are You Crypto Curious? How to start crypto trading today
Best Wallet
Download a trusted exchange app — Start by choosing a licensed crypto exchange. We recommend starting with the Best Wallet app, available for both iOS and Android.
Create and verify your account — Sign up using your email, Google, or Apple ID. To complete registration, you'll need to verify your identity with a government-issued ID and enable two-factor authentication (2FA) for added security.
Fund your account — Deposit money into your account by linking a bank account or credit card or even using gift cards. Choose an option that best fits your lifestyle.
Buy your first cryptocurrency — Use the app's marketplace or swap tool to purchase crypto by entering the ticker symbol — like BTC for Bitcoin or ETH for Ethereum — and follow the prompts to complete the transaction.
Choose how to store your crypto — Decide whether you'll keep your crypto in the exchange, move it to a digital wallet (hot wallet), or store it offline (cold wallet) for extra protection. LEARN MORE
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