The post Here’s Why Crypto Whales Have Invested Over $28M In RTX and HYPER appeared on BitcoinEthereumNews.com. When crypto markets catch their breath, serious The post Here’s Why Crypto Whales Have Invested Over $28M In RTX and HYPER appeared on BitcoinEthereumNews.com. When crypto markets catch their breath, serious

Here’s Why Crypto Whales Have Invested Over $28M In RTX and HYPER

When crypto markets catch their breath, serious money starts sniffing out opportunity, and right now, two presale tokens are drawing particularly heavy interest: Remittix (RTX)and Bitcoin Hyper (HYPER). Between them, presale totals have crossed a historic mark, a sum that tells a story about where capital is flowing in late-cycle crypto conditions.

Investors everywhere are now asking which of these projects deserves the tag of the “best crypto presale to buy now, and why are whales lining up? Let’s break down the market context.

Crypto Whales and Big Money: What’s Really Happening

When you see tens of millions in presale funds moving into early-stage tokens, it’s a clear sign that institutional traders and crypto whales aren’t just idly watching; they’re deploying capital.

For example:

  • Remittix’s presale has surpassed $28.7 million in commitments, with hundreds of millions of RTX tokens already sold to early supporters.
  • Bitcoin Hyper’s presale has also raised nearly million, placing it among the top pre-listing raises of late 2025.

These aren’t small-time retail buys; this is large liquidity hitting early presale stages, which often presages supply compression, increased token scarcity, and potentially stronger post-listing performance.

What Makes Remittix Stand Out in 2025 Markets

The name Remittix keeps cropping up in presale round-ups, not because of meme hype, but because of its real-world value proposition. This project is positioning itself squarely in the $10 trillion global remittance economy by offering a PayFi network. This payment infrastructure lets crypto users send funds that arrive as fiat directly to bank accounts worldwide.

Here’s a snapshot of why investors are taking notice:

  • The presale has exceeded $28.7 million with over 697.5 million tokens sold, according to multiple market reports.
  • App Store wallet live: Unlike many presale projects that only have a whitepaper, Remittix’s wallet is already live on the Apple App Store; a sign of moving beyond roadmaps toward real user tools.
  • CertiK audit adds credibility: The smart contracts have been audited, giving many investors an additional layer of confidence.
  • Confirmed BitMart and LBank listings are on the roadmap, which is exactly the sort of liquidity event presale investors watch for.
  • With a massive 200% bonus offer live, Remittix isn’t just selling tokens; it’s building grassroots adoption.

In a market where practical use cases increasingly matter, Remittix’s focus on payments and real spending is resonating with deeper pockets, not just buzz-chasing speculators.

Bitcoin Hyper: Why the Layer-2 Presale Is Also a Whale Magnet

While Remittix targets payments and fiat integration, Bitcoin Hyper is aiming at a different bottleneck: Bitcoin’s scalability. It’s building a Layer-2 network with high throughput, low fees, and smart contract compatibility, using a Solana-style virtual machine.

Several factors have contributed to HYPER’s growing presale totals:

  • Funds raised hover around $28–$29 million as capital piles into what many see as a practical upgrade to Bitcoin’s ecosystem.
  • Some presale rounds advertise staking yields exceeding 40% APY, attracting both yield-seeking retail investors and institutional liquidity.
  • By blending Bitcoin’s security with higher throughput and smart contract capability, Bitcoin Hyper is staking its claim as the missing link for Bitcoin-native dApps, a thesis that’s gained traction in 2025.

So while Remittix focuses on everyday payments, HYPER is pitching infrastructure; two completely different yet compelling visions for where crypto can go next.

Best Crypto Presale to Buy Now? It’s About Strategy, Not Hype

Calling something the best crypto presale to buy now isn’t just about how much money it’s raised; it’s about why it’s attracting that money. In the case of Remittix, funds are coming in because investors believe in what the token can enable once the platform launches in early 2026. And in the case of Bitcoin Hyper, the draw is a hypothesis that Bitcoin itself needs a Layer-2 boost, not just another token.

Overall, both cases involve whales and large investors watching, which is why many seasoned players now monitor capital flows in presales as closely as they monitor BTC and ETH price movements.

Discover the future of PayFi with Remittix by checking out the project here:

Website: https://remittix.io/

Socials: https://linktr.ee/remittix

FAQs

  1. Why do whales invest so heavily in presales like Remittix and HYPER?

Whales often move first into areas where they see future utility or structural demand, such as payment infrastructure or Bitcoin scalability, before tokens hit exchanges and broader markets recognize their value.

  1. Is Remittix really one of the best crypto presales to buy now?

Many analysts highlight Remittix for combining product delivery (wallet live), real-world utility, and strong presale momentum.

  1. How do the presales of Remittix and Bitcoin Hyper differ?

Remittix focuses on payments and fiat integration, whereas Bitcoin Hyper targets Bitcoin’s scalability and smart contract capabilities.

Source: https://finbold.com/best-crypto-presale-to-buy-now-heres-why-crypto-whales-have-invested-over-28m-in-rtx-and-hyper/

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