As we move through December 2025, the crypto market presents different opportunities across established platforms and emerging projects. For investors evaluatingAs we move through December 2025, the crypto market presents different opportunities across established platforms and emerging projects. For investors evaluating

Best Crypto to Buy in December 2025: Ethereum, XRP, Solana & Zero Knowledge Proof Make Waves

As we move through December 2025, the crypto market presents different opportunities across established platforms and emerging projects. For investors evaluating the best crypto to buy, understanding both technical developments and market positioning matters more than hype cycles.

Four cryptos are currently being named among the best cryptos this month, including Ethereum, XRP, Solana & Zero Knowledge Proof.

Ethereum’s upcoming Fusaka upgrade and its potential impact on Layer-2 networks and XRP’s renewed institutional access through spot ETFs keep buyers interested. Solana is showing recovery signs after a challenging year, while Zero Knowledge Proof’s innovative auction-based token distribution model has become a buyer favourite.

From major platform upgrades to new distribution mechanisms, these options reflect the current state of the market. Let’s look at each in more detail.

1. Zero Knowledge Proof (ZKP): Daily Presale Auction Now Live

Zero Knowledge Proof (ZKP) is gaining traction as its presale auction goes live, and early participants are jumping in. For those looking for the best crypto to buy at an early stage, ZKP offers a strong opportunity. This is a $100 million self-funded project with real infrastructure already built and operational during the presale auction phase.

What makes Zero Knowledge Proof unique is its Initial Coin Auction (ICA). Each day, a 24-hour auction window opens where contributors can deposit ETH, USDC, USDT, BNB, or any of 24 supported assets. Everything is verified in real time and recorded on-chain, no gas wars or early-entry advantages.

At the end of each window, 200 million ZKP coins are distributed proportionally. If the total pool is 1,000 USDC and you contribute 100 USDC, you get 10% of the tokens, 20 million ZKP. The project caps contributions at $50,000 per wallet daily to stop big players from dominating.

Here’s why timing matters: auction prices are lower than listing prices. Supply stays fixed while demand grows, pushing prices up daily. Early buyers get the best margins, but later participants still benefit. For anyone seeking the best crypto to buy before the exchange launch, ZKP’s presale auction is live now, and participation is growing fast.

2. Ethereum: Fusaka Upgrade Set for December 2025

Ethereum is currently trading around $3,055 and remains the main platform for smart contracts, DeFi, and NFTs. The network is set for a technical update: the Fusaka upgrade. This update includes PeerDAS, which aims to reduce bandwidth needs for validators and lower costs for Layer-2 networks.

With Ethereum trading below its summer highs, the upcoming upgrade is worth noting. If Fusaka works as planned, it could bring more Layer-2 activity and developer attention.

For those looking at the best crypto to buy, ETH might suit a medium-term approach rather than short-term trading. Investors are watching network activity, validator performance, and Layer-2 adoption as the upgrade date gets closer.

3. XRP: New ETFs Bring Institutional Interest

XRP is trading around $2.18 and has gotten more attention after U.S. spot ETFs launched in November. These funds give institutions an easier way to invest in the token. Data shows that XRP funds saw inflows in mid-November, while Bitcoin and Ethereum funds had outflows during the same time.

For those wondering whether XRP is the best crypto to buy now, the XRP token is volatile. A lot of XRP is held by large owners, so big sales or ETF withdrawals could move the price quickly. Position sizing matters here, and tracking fund flows, trading volume, and news can help inform decisions.

4. Solana: Strong ETF Launch After a Tough Year

Solana is trading around $140 and shows an interesting pattern. Despite a difficult 2025, November brought some positive signs. SOL’s spot ETFs attracted $531 million in their first week, even as Bitcoin ETFs saw large outflows during the same period.

The price is around $140, down from earlier highs. Some analysts see signs of improvement, like more on-chain activity, higher DEX trading, and more developer interest. For those looking at the best crypto to buy, Solana offers fast transactions and low fees. Network stability, staking activity, and ETF fund size are useful things to check before adding more.

The Takeaway

The crypto space in December 2025 offers varied opportunities. Ethereum’s Fusaka upgrade improves an established platform, while XRP and Solana navigate institutional adoption and recovery. Each has value for investors seeking proven platforms.

However, Zero Knowledge Proof (ZKP) stands out as the most compelling opportunity for those willing to enter at an early stage. Its $100 million self-funded network, transparent presale auction model, and growing participation create genuine momentum.

ZKP’s daily presale auction structure offers clear pricing advantages before exchange listings, and the anti-whale protections ensure fair access for all participants.

For investors looking for the best crypto to buy with early-stage upside, ZKP’s live presale auction represents a time-sensitive window that’s closing as more participants join daily.

The post Best Crypto to Buy in December 2025: Ethereum, XRP, Solana & Zero Knowledge Proof Make Waves appeared first on Blockonomi.

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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