The post Best Crypto to Buy Now? This $0.04 New Cryptocurrency Hits 300% Growth appeared on BitcoinEthereumNews.com. Cryptocurrency markets tend to have silent The post Best Crypto to Buy Now? This $0.04 New Cryptocurrency Hits 300% Growth appeared on BitcoinEthereumNews.com. Cryptocurrency markets tend to have silent

Best Crypto to Buy Now? This $0.04 New Cryptocurrency Hits 300% Growth

Cryptocurrency markets tend to have silent moves which burst into attention. Headlines do not necessarily be at the beginning of price action. The process normally begins with organization, growth, and initial positioning. As a new crypto starts to rise steadily, when most of the market is shifting laterally, it is an indication that something larger is taking shape.

It can now be observed in the DeFi crypto space. A new cryptocurrency with a price of $0.04 USD has given 300% growth since its launch during its initial stage. More to the point, this growth is growing in tandem with development milestones and not a hype spurt. 

What Mutuum Finance (MUTM) Is Going To Build

Mutuum Finance (MUTM) is a developing DeFi crypto. It is aimed to develop a protocol that facilitates borrowing and lending needs rather than short term encouragement.

It is based on structured lending markets. Users will be able to be asset providers and earn yield, and borrowers will be able to acquire liquidity through collateral provision. This establishes the direct connection between usage and value.

Use of mtTokens is one of the major characteristics. When users post assets to the protocol, they are issued with mtTokens which act as a reflection of their ownership of the pool. Such tokens increase in value as interest is accrued. This renders the yield clear-cut and directly proportional to protocol activity.

Mutuum Finance also is looking forward to V1 protocol launch. As per the official updates on X, V1 will trigger the initial live version of the protocol. This is where build mode switches to the execution. Such a time tends to alter the way the market rates a new crypto..

Participation and Growth Numbers

Mutuum Finance has not emerged without entering the scene. Since early 2025, its growth has been taking a steady trajectory. The project has already raised approximately $19.5M and created a community worth more than 18,650 investors.

The price of the initial token was 0.01. The current price sits near $0.04. That represents a 300% increase. This kind of expansion, which is distributed across several stages, is usually an indication of a long-term demand and not a temporary speculation.

This is important to the investor since it will indicate that the interest has increased with the development. It also indicates that the market is already in a position that has already internally taken several price increases without stuttering.

Why Supply Counts

The total supply of Mutuum Finance is 4B. Out of this figure, 45.5% or approximately 1.82B tokens goes to early distribution phases. Approximately, 820M of tokens were already sold.

This implies that a significant part of the initial supply will be under the control of which it is not sitting along the fringes. The further distribution occurs, the smaller the supply will be left. This usually alters the buyer behavior particularly when utility milestones are reached.

The 24 hour leaderboard also operates in the project. The active participation is observed by this system and is rewarded by cooperative use of MUTM incentives. It promotes a repeat interaction rather than a one time purchase.

Also, support of card payments has been introduced. This makes it more attractive since it involves new users without exposing them to complex crypto onramps. Greater participation is commonly achieved through ease of access.

Security and Trust Layers 

One of the largest threats of DeFi is security. Mutuum Finance has made visible efforts to deal with this early. A CertiK token scan of the project conducted includes 90 out of 100 points. This marks a high score of contract design and indicators of low risk. 

To add to this, Halborn Security finished the essential smart contracts audit line by line.

The bug bounty program is also an initiative of $50k. This encourages independent researchers to test the code and give feedback on the problems before the full scale adoption is made. The layers decrease the technical uncertainty and this is the most serious obstacle that may halt serious investors.

Phase 7 has now been achieved at Mutuum Finance. The level caused the token price to shoot up by approximately 20%. Raising of prices at specific intervals is usually an indicator of constrained supply and an upward demand.

In the recent past, a whale fund of $100K was documented. These huge one-offs are no surety of future performance, but a good indicator that one or the other of the experienced market players has confidence in a Mutuum Finance (MUTM). 

For more information about Mutuum Finance (MUTM) visit the links below:

Website: https://www.mutuum.com

Linktree: https://linktr.ee/mutuumfinance

Source: https://www.cryptopolitan.com/best-crypto-to-buy-now-this-0-04-new-cryptocurrency-hits-300-growth/

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