The post DeepSnitch AI Nears $1M Raised as Stage 3 Sells Out appeared on BitcoinEthereumNews.com. Crypto Projects Buterin pushes ZK-proofs for social media as hackersThe post DeepSnitch AI Nears $1M Raised as Stage 3 Sells Out appeared on BitcoinEthereumNews.com. Crypto Projects Buterin pushes ZK-proofs for social media as hackers

DeepSnitch AI Nears $1M Raised as Stage 3 Sells Out

Crypto Projects

Buterin pushes ZK-proofs for social media as hackers drain wallets. DeepSnitch AI best crypto presale this December, shipping tools ahead of launch with over $814K raised.

Vitalik Buterin has called for blockchain-based transparency tools to audit how social media algorithms behave. As Ethereum’s co-founder points to ZK-proofs as a way to make platforms like X provably fair, attackers are busy seeding wallet drainers across crypto sites via a React vulnerability. While the conversation turns to trust and verification, the underlying defences are still catching up, making robust security infrastructure a baseline, not a nice-to-have.

And that’s precisely why DeepSnitch AI could easily be the best crypto presale to invest in right now, building AI-powered surveillance tools for traders who want sharp intel they can work with.

The new crypto presale has raised above $814K at $0.02846 per token, climbing 88% from its $0.01510 starting price and approaching the $1 million mark. With SnitchGPT now deployed and a full launch just around the corner, this is likely the best crypto presale because it hands retail traders the edge they’ve been missing, with clear utility and a 100x trajectory in plain sight.

Buterin demands algorithmic transparency as threats multiply

Buterin proposed that X should use zero-knowledge proofs and blockchain timestamps to prove its algorithm treats users fairly. His argument is simple: centralized platforms have become weapons for coordinated manipulation, and users deserve verifiable proof that content ranking follows stated rules.

Ethereum Foundation AI lead Davide Crapis backed the idea, saying platforms claiming to support free speech should disclose their algorithm optimization targets and make them tweakable by users.

Meanwhile, Security Alliance flagged a surge in wallet drainers uploaded through CVE-2025-55182, a React vulnerability enabling remote code execution. Bad actors are secretly embedding malicious scripts into legitimate crypto websites, tricking users into signing transactions that empty their wallets. SEAL warned that affected websites may have been suddenly flagged as phishing risks without explanation.

And on the policy front, Trump’s Fed chair frontrunner Kevin Hassett assured markets that presidential opinions hold “no weight” on rate decisions. Speaking with CBS News, Hassett emphasized the Fed’s role is to remain independent and let the 12 FOMC members have final say.

With rate cut expectations cooling and risk assets broadly sold off, it’s time to position in early crypto offerings before the next leg up.

1. DeepSnitch AI

BTC is bleeding, and whales are dumping left, right, and center. But DeepSnitch AI is built specifically to contend with this quicksand landscape, running five AI agents that monitor whale wallets, scan social sentiment, and flag contract risks before any of its users get rugged. The difference here is that while other projects promise features, DeepSnitch AI is already shipping them.

As of the latest dev update, a third AI agent, SnitchGPT, is now deployed, letting you ask questions and get real-time crypto intel through a conversational interface. Token Explorer is also active with single-token deep dives, risk scoring, and time-series analytics in one view.

SnitchFeed, SnitchScan, and SnitchGPT now work together as one cognitive layer, so if you’ve bought in already, you can officially query any signal, explore any token, and track any anomaly interactively.

DeepSnitch AI could easily be the best crypto presale right now, with utility and a 100x trajectory that are clear as day. It’s sitting in Stage 3 with above $814K raised at $0.02846, approaching $1 million fast.

Meme coins may pump 50% on tweets alone, but DeepSnitch AI has audited contracts, live intelligence tools, and a launch timeline measured in weeks. At current prices, a move to $0.10 delivers roughly 3.5x. If the security narrative catches fire, 100x sits well within reach, which is precisely why it’s the best crypto presale for those after radical gains.

2. Remittix

Remittix attacks one of crypto’s largest untapped markets: the $7.5 trillion global remittance industry. With above $28M raised and 693 million tokens sold at $0.119, RTX has confirmed exchange listings and a live wallet processing transactions.

The roadmap includes cross-chain support and merchant settlement features. And plenty of analysts see steady growth potential as adoption builds, though at its current valuation, the upside compression is tighter than new crypto presales like DeepSnitch AI where tokens still sit below $0.03.

3. Maxi Doge

Capital is rotating from large-caps into high-beta trending presale opportunities, and Maxi Doge is catching that flow. The early crypto offerings pick has raised above $4.3M at $0.000273 per MAXI, with whale accumulation and staking incentives compressing the circulating float.

Locked liquidity positions MAXI for a fast post-listing move. Analysts watching meme coin cycles see potential for quick gains.

Bottom line

Buterin’s push for verifiable algorithms and the React exploit surge both point to the same conclusion: crypto needs better intelligence tools. And DeepSnitch AI is building exactly that, with live agents and staking rewards. It’s easily the best crypto presale at a price that doesn’t reflect its shipped progress.

Launch is coming fast, but to buy in before it makes a 100x run, 1 January is the deadline to use discount codes: DSNTVIP50 for 50% bonus on purchases above $2,000 or DSNTVIP100 for 100% bonus above $5,000.

Check out the official website to join the best crypto presale available right now, and follow X and Telegram for launch updates.

FAQs

What is the best crypto presale to buy in December 2025?

DeepSnitch AI is firmly among the best crypto presale picks, offering live AI surveillance tools at $0.02846 with launch coming soon and moonshot potential.

Are new crypto presales safe?

Safety varies by project. Look for audited contracts and live products, like DeepSnitch AI, which has passed multiple security audits and is already shipping tools (rare among trending presale opportunities).

Which early crypto offerings have real utility?

While both DeepSnitch AI and Remittix are new crypto presales with utility beyond hype, DeepSnitch AI’s tools speak more directly to market participants looking for sharper insight. It’s also entirely built by expert on-chain analysts who know the drill better than anyone else, making it the clear superior choice.


This publication is sponsored and written by a third party. Coindoo does not endorse or assume responsibility for the content, accuracy, quality, advertising, products, or any other materials on this page. Readers are encouraged to conduct their own research before engaging in any cryptocurrency-related actions. Coindoo will not be liable, directly or indirectly, for any damages or losses resulting from the use of or reliance on any content, goods, or services mentioned.

Author

With over 6 years of experience in the world of financial markets and cryptocurrencies, Teodor Volkov provides in-depth analyses, up-to-date news, and strategic forecasts for investors and enthusiasts. His professionalism and sense of market trends make the information he shares reliable and valuable for everyone who wants to make informed decisions.

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Source: https://coindoo.com/best-crypto-presale-december-2025-deepsnitch-ai-approaches-1-million-as-live-tools-roll-out/

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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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