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Best Altcoins to Buy Now January 2026: CLARITY Act Markup Set for Next Week as DeepSnitch AI Presale Rockets 116% Past $1.1M with Launch Just 3 Weeks Away

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Senator Tim Scott confirmed this week that the Digital Asset Market Clarity Act will head to Senate markup next Thursday. The landmark legislation aims to establish a comprehensive regulatory framework for crypto markets in the United States, but bipartisan tensions remain.

While Washington debates policy, traders hunting the best altcoins to buy are rotating into altcoins with asymmetric upside. DeepSnitch AI leads the pack, having raised over $1.1 million at $0.03269 in its Stage 4 presale. 

With launch just three weeks out and a major announcement dropping soon, early buyers are positioning now.

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CLARITY Act heads to senate markup as regulatory uncertainty fuels search for promising altcoins

Senator Tim Scott confirmed the Digital Asset Market Clarity Act will face Senate markup next Thursday. “Next Thursday, we’ll have a vote on market structure,” Scott told Breitbart News on Tuesday. 

The bill, which passed the House in July 2025, aims to establish a comprehensive regulatory framework for crypto markets.
However, bipartisan tensions remain. Galaxy Digital head of research Alex Thorn noted it remains “unclear if the two sides can come together” as Democrats push for DeFi front-end sanctions compliance and expanded Treasury enforcement powers.

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CoinShares attributed $952 million in outflows from crypto investment products during the week ending December 19 to regulatory uncertainty around the CLARITY Act. This volatility is pushing traders toward high-upside crypto projects that can deliver returns regardless of Washington’s timeline.

Here are our picks for the best altcoins to buy in January 2026:

DeepSnitch AI (DSNT): Strong undervalued altcoin positioned for 100x growth when it hits the market in late January

Most retail traders lose money for two reasons. They find information late, after the move has already happened. Or they buy tokens that are structurally rigged with honeypot contracts, liquidity traps, or sketchy ownership. DeepSnitch AI solves both problems with a suite of five AI agents that hand you the edge whales have monopolized.

While the major tokens are trading sideways on the CLARITY Act uncertainty, DeepSnitch AI is building real adoption with tools traders can use today. The presale has raised over $1.1 million at $0.03269 in Stage 4, up 116% from the initial $0.01510 price. 

With the launch just three weeks away and a major announcement expected to be dropping soon, early buyers are locking positions before exchange listings hit.

In second place on our list of the best altcoins to buy in January 2026:

Chintai: Token surges 137% in seven days amid exchange expansion

Chintai (CHEX) jumped 137% over the past seven days, trading around $0.07478 on January 7. The token posted a 53% gain in the last 24 hours alone, with trading volume spiking to $1.5 million. The rally follows expanded listings across centralized and decentralized exchanges, including LCX Exchange, MEXC, and Kraken.

Despite the recent pump, Chintai remains 90% below its all-time high of $0.8043 set in December 2024. The token carries a market cap of $76.2 million with a fully diluted valuation matching circulating supply at around 1 billion tokens, leaving limited unlock risk. 

At the current valuation, the upside potential for 10x or 100x moves is constrained compared to presale-stage projects like DeepSnitch AI, which sits at $0.03269 with launch just weeks away.

Next up on our list of the best altcoins to buy in January 2026:

Destra Network: AI infrastructure token jumps 211% amid mobile node upgrade

Destra Network (DSYNC) surged 211% over the past seven days, trading around $0.04502 on January 7. The token posted a 38% gain in the last 24 hours, with trading volume spiking 410% to $12 million. 

The rally follows the announcement of a mobile AI nodes upgrade, expanding the platform’s decentralized GPU network for AI computation.

Despite the momentum, Destra Network remains 92% below its all-time high of $0.5479 set in January 2025. The token carries a market cap of $45.1 million with a fully diluted valuation matching the circulating supply at around 1 billion tokens. 

At the current valuation, the room for exponential upside is limited compared to early-stage projects like DeepSnitch AI, which sits at presale pricing with launch just three weeks away.

What’s the verdict?

Chintai and Destra Network offer established liquidity and exchange listings, but their market caps leave little room for 10x or 100x moves. DeepSnitch AI is different. 

At $0.03269 in Stage 4 presale with launch just three weeks away, you can position before mainstream attention hits. The team is also expected to drop a major announcement in the coming days that could shift sentiment fast.

Consider this: if you lock in 30,000 DSNT tokens now (which would cost under $1000 at current prices) and the price hits just $1 after launch, that position is worth $30,000. That is the kind of upside established tokens cannot deliver at scale. 

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

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FAQs 

What are the best altcoins to buy right now?

The best altcoins to buy include DeepSnitch AI at $0.03269 in presale, with launch three weeks away, offering early-stage valuation with working AI tools that established tokens cannot match.

Which coin has 1000x potential?

DeepSnitch AI presents a compelling case as one of the best altcoins to buy for 1000x potential, with presale pricing at $0.03269, five AI agents, and a launch coming in the next few weeks.

What are the top 10 altcoins?

While the top 10 altcoins include Bitcoin and Ethereum, the best altcoins to buy for exponential upside are presale tokens like DeepSnitch AI, which has raised over $1.1 million at $0.03269.

This article is not intended as financial advice. Educational purposes only.

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