A fresh wave of selling spree by Bitcoin OGs has emerged as Bitcoin continues to face volatility. According to reports, a Bitcoin OG who accumulated 5,000 BTC aboutA fresh wave of selling spree by Bitcoin OGs has emerged as Bitcoin continues to face volatility. According to reports, a Bitcoin OG who accumulated 5,000 BTC about

Best Crypto to Buy Now: Quant and River Rally, But Degens Are Piling Into DeepSnitch AI as the Presale Enters Final Lap With 100x Breakout Now in Focus

2026/03/20 16:35
5 min read
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A fresh wave of selling spree by Bitcoin OGs has emerged as Bitcoin continues to face volatility. According to reports, a Bitcoin OG who accumulated 5,000 BTC about 13 years ago sold 71.6 million worth of BTC on Wednesday, March 18, as fresh sell-side pressure hit the market. 

With OGs now capitulating their holdings, BTC stands at a risk of a deeper crash. As a result, smart money is loading up on DeepSnitch AI (DSNT) as the crypto emerges as the best crypto to buy now. 

DeepSnitch AI has strong upside prospects as the new AI market intelligence targets a 100x breakout in 2026. This crypto is now in stage 7, priced at $0.04577, with over $2.3 million raised. 

Bitcoin OG dumps $72M in BTC as whale exchange deposits surge

On-chain analytics platform EmberCN flagged that a Bitcoin OG sold 1,000 BTC on Wednesday. These tokens were worth $71.6 million as of the time of capitulation. 

The recent sale adds to the whale’s BTC sales with the OG having sold over 3,500 BTC ($332 million) via Binance since 2024. From these sales, the whale has realized a profit of $330 million. 

Lookonchain also reported that Owen Gunden sold another 650 BTC, worth about $46.3 million, on Wednesday, adding to the ongoing whale sell-offs. 

3 top altcoins today with high-upside potential

1. DeepSnitch AI targets 100x breakout in 2026 amid strong demand

The team behind DeepSnitch AI understands that effective trading runs on accurate and timely decision-making. That’s why DeepSnitch AI is designed to provide retail investors with real-time and tradable market intelligence. 

DeepSnitch AI has a suite of five AI agents. SnitchScan separates potential moonshots from scams, while SnitchFeed tracks sentiment shifts in real-time. On the other hand, AuditSnitch scans new projects for risks, making sure you do not fall for common traps. 

These tokens are already live and working. They can be accessed via a single dashboard, which is intuitively and smoothly designed for easy access. 

Because of the immense value that DeepSnitch AI offers, this AI crypto project is seen as the best crypto this month. Rumors suggest that DeepSnitch AI could rally 100x in 2026 as demand continues to grow. 

However, there isn’t much time left to buy DSNT. The presale ends in exactly 12 days, meaning you have to act early to avoid missing the opportunity. DeepSnitch AI is now priced at $0.04577 and has raised over $2.3 million. 

2. Quant jumps 11% as investors rotate from ‘dino coins.’ 

Data from Coingecko shows that Quant (QNT) traded at $76.99 on Thursday, March 19, marking a 11.2% over the past 24 hours. Quant’s recent price action pushes the coin’s weekly surge to 24%, signaling that QNT has strong bullish momentum. 

Quant has now broken out from the bearish trendline, positioning it as the best crypto to buy now. However, a successful retest of the support around $64 is crucial for a bullish trend confirmation. 

3. River is back among the top altcoins today after a 40% weekly surge 

River (RIVER) has been experiencing a bullish surge lately, with the weekly chart showing a 40.1% surge over the past 7 days. According to data from Coingecko, RIVER traded at $25.47, after a 1.8% surge on March 19. 

While the momentum is seemingly slowing down, River ranks as one of the best emerging crypto projects for 2026. Continued bullish momentum could push this crypto to higher levels in the next sessions. 

Final verdict

DeepSnitch AI’s utility makes it the best crypto to buy now. With the March 31 TGE now around the corner, this AI crypto could achieve the rumored 100x breakout, resulting in substantial gains for early presale buyers.

The 50% presale bonus is still running, allowing inventors to get more tokens for less. Once DSNT launches and the price rallies, the additional tokens from the presale bonus will translate into direct profits. 

Visit the official website for more information, and join X and Telegram for community updates.

FAQs

1. What is the best crypto to buy right now?

DeepSnitch AI has positioned itself as the best crypto to buy now. The platform has working tools and clear utility, which could trigger a strong upside movement once the coin launches. 

2. What crypto under $1 will explode? 

DeepSnitch AI is priced at $0.04577, giving a low entry point into the best crypto this month. Considering the upcoming TGE and a working ecosystem, DSNT could explode in 2026. 

3. Which crypto has the most potential? 

DeepSnitch is one of the emerging crypto projects with the potential to give outsized gains in 2026. With this crypto now ranking as the best crypto to buy now, investors are eying its 100x breakout in the near future.

DISCLAIMER: CAPTAINALTCOIN DOES NOT ENDORSE INVESTING IN ANY PROJECT MENTIONED IN SPONSORED ARTICLES. EXERCISE CAUTION AND DO THOROUGH RESEARCH BEFORE INVESTING YOUR MONEY. CaptainAltcoin takes no responsibility for its accuracy or quality. This content was not written by CaptainAltcoin’s team. We strongly advise readers to do their own thorough research before interacting with any featured companies. The information provided is not financial or legal advice. Neither CaptainAltcoin nor any third party recommends buying or selling any financial products. Investing in crypto assets is high-risk; consider the potential for loss. Any investment decisions made based on this content are at the sole risk of the readCaptainAltcoin is not liable for any damages or losses from using or relying on this content.

The post Best Crypto to Buy Now: Quant and River Rally, But Degens Are Piling Into DeepSnitch AI as the Presale Enters Final Lap With 100x Breakout Now in Focus appeared first on CaptainAltcoin.

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