The post 6 Meme Coins That Will Turn $10,000 into $100,000 in 2025: Shiba Inu (SHIB) Won’t Be One of Them appeared first on Coinpedia Fintech News The meme coin world is evolving fast. Shiba Inu is still a popular name, but its days of significant growth appear to be behind it. Many investors seeking the next major meme coin surge are now focusing on newer tokens that boast genuine innovation in blockchain technology. Among them, Little Pepe (LILPEPE) stands out. Its …The post 6 Meme Coins That Will Turn $10,000 into $100,000 in 2025: Shiba Inu (SHIB) Won’t Be One of Them appeared first on Coinpedia Fintech News The meme coin world is evolving fast. Shiba Inu is still a popular name, but its days of significant growth appear to be behind it. Many investors seeking the next major meme coin surge are now focusing on newer tokens that boast genuine innovation in blockchain technology. Among them, Little Pepe (LILPEPE) stands out. Its …

6 Meme Coins That Will Turn $10,000 into $100,000 in 2025: Shiba Inu (SHIB) Won’t Be One of Them

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The post 6 Meme Coins That Will Turn $10,000 into $100,000 in 2025: Shiba Inu (SHIB) Won’t Be One of Them appeared first on Coinpedia Fintech News

The meme coin world is evolving fast. Shiba Inu is still a popular name, but its days of significant growth appear to be behind it. Many investors seeking the next major meme coin surge are now focusing on newer tokens that boast genuine innovation in blockchain technology. Among them, Little Pepe (LILPEPE) stands out. Its presale has already surged 120% from its starting price, and investors at the current stage still have a 36.36% potential gain before launch.

Little Pepe (LILPEPE): The Meme Coin Revolution

lilpepe-layer-2speed

At the time of writing, Little Pepe (LILPEPE) is priced at $0.0022 in Stage 13 of its presale. The team has raised $26,663,785 out of a $28,775,000 goal, with 16.29 billion tokens sold out of the 17.25 billion available in this round. Early buyers from Stage 1 have already seen 120% growth on their investment, and those entering now still stand to gain 36.36% before the token lists at $0.0030. Certik has audited Little Pepe and is now listed on CoinMarketCap, signaling trust and legitimacy.

The project operates on an Ethereum Layer 2 network that prioritizes ultra-low gas fees and lightning-fast transactions. The ongoing $777,000 giveaway and a new Mega Giveaway worth 15 ETH for top buyers have significantly amplified its visibility. The presale is already 94.44% full, indicating the rapid pace at which investors are moving. Beyond memes, Little Pepe aims to become a full meme ecosystem, featuring NFT utilities, DAO governance, and a meme launchpad. It peaked in ChatGPT’s memecoin trend ranking, surpassing PEPE, DOGE, and SHIB between June and August 2025, demonstrating its growing dominance in both hype and development.

get-lilpepe

MemeCore (M): The Engine of Meme Culture

MemeCore (M) trades at $1.99 at the time of writing. Built as a Layer 1 chain for meme dApps, it has gained traction after a 1000% rally following key investment news. MemeCore offers decentralized tools for meme creators, although adoption is still in its early stages. Its market cap is still modest, leaving room for speculative upside.

Pudgy Penguins (PENGU): From NFTs to Tokens

At the time of writing, Pudgy Penguins (PENGU) trades around $0.03, with a market cap of roughly $2 billion. Born from the famous NFT collection, PENGU’s strength lies in brand identity and digital storytelling. The token has recently spiked by more than 70% in a week, showing strong community momentum.

Bonk (BONK): The Solana Dog

Bonk (BONK) currently trades at $0.0000205. As Solana’s first major meme coin, it has grown over 200% in the past few months as Solana’s ecosystem regained strength. BONK’s burn system and staking features support demand, though its massive supply could limit future price growth.

Floki Inu (FLOKI): The Viking of Memecoins

At the time of writing, FLOKI is priced at $0.000114. FLOKI is one of the few meme coins building serious infrastructure, with projects like FlokiFi, a DeFi suite, and the Valhalla Metaverse. FLOKI’s recent MiCAR compliance push adds regulatory credibility, making it one of the most advanced meme projects by fundamentals.

Fartcoin (FARTCOIN): The Comic Relief of Crypto

Fartcoin (FARTCOIN) trades at $0.7378 with a total supply of 1 billion tokens. It has recently gained popularity for its humor-driven branding, but surprisingly, its price has remained stable due to limited supply and active trading volume. FARTCOIN’s virality could spark short-term gains, though long-term sustainability remains uncertain.

Final Thoughts

Shiba Inu (SHIB) is unlikely to deliver a 1,000% run again because its massive market cap limits exponential upside. But these six meme coins could be the ones to surprise investors in 2025. Among them, Little Pepe (LILPEPE) is clearly the standout. Its audited smart contracts, Layer 2 backbone, strong community, and ongoing giveaways make it more than just a meme; it’s a full-fledged ecosystem. With 94% of its presale stage already filled and the launch price set at $0.0030, investors still have time to capture the remaining 36.36% potential gain before it lists. As the broader crypto market heads toward a new cycle driven by AI, DeFi, and cultural coins, Little Pepe is positioned to be the face of the next meme coin wave.

For more information about Little Pepe (LILPEPE) visit the links below:

  • Website: https://littlepepe.com
  • Whitepaper: https://littlepepe.com/whitepaper.pdf
  • Telegram: https://t.me/littlepepetoken
  • Twitter/X: https://x.com/littlepepetoken
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