Experts Spotlight This $0.07 AI Coin As A Potential Runner To Outperform Shiba Inu And TRON

bitcoinistPublished on 2024-12-14Last updated on 2024-12-14

Abstract

Experts point to a new AI coin selling for $0.07 amid its presale as potentially primed to outrun top altcoins...

Experts point to a new AI coin selling for $0.07 amid its presale as potentially primed to outrun top altcoins like Shiba Inu (SHIB) and TRON (TRX). Backed by a utility-packed protocol that capitalizes on blockchain and artificial intelligence technology, this AI coin is set to revolutionize the investment landscape and reward early adopters handsomely.

Let’s find out how profitable this new AI coin is and if it is a good investment for SHIB and TRX investors!

IntelMarkets Introduces an AI-Supported Trading Platform to Attract Crypto Traders

IntelMarkets (INTL), a perpetual contracts exchange, aims to revolutionize trading with advanced technologies such as AI and blockchain. The platform incorporates AI technology so that users can have a competitive edge in the volatile crypto market.

The exchange offers liquidity solutions, a vast number of tradable assets, self-learning robots, and an Intell-M channel analytic tool. With these amenities, traders can maximize opportunities and achieve their financial goals with cryptocurrencies.

By offering favorable borrowing terms, the IntelMarkets platform enables traders to access capital to capitalize on emerging opportunities or hedge their positions. The platform’s flexibility will allow users to repay the loan without affecting traders negatively.

IntelMarkets functions on both Ethereum and Solana blockchains, providing users with the option to select their desired network according to their individual requirements. This dual-chain idea improves scalability, enhances security, accelerates transaction speed, and reduces transaction costs.

IntelMarkets’ AI-driven features are driving potential adopters to the platform. This, in turn, is causing INTL’s presale to gain traction.

Shiba Inu Puts 69% of Investors in the Money After Jumping Towards $0.00003

Notable on-chain data provider IntoTheBlock has disclosed that about 69% of Shiba Inu investors are currently profitable following SHIB’s price surge to $0.000030. The phrase “in the money” refers to investors who are making a profit.

As reported by the data provider, 69% of SHIB investors are experiencing profits, 64% are incurring losses, and 6% find themselves somewhere in between. This uprising may be good for Shiba Inu as profitable investors often prefer to hold longer.

This decision could attenuate the selling pressure on SHIB and assist the price recovery. Based on the In The Money Metric, SHIB needs to break above $0.000033 to reach any reasonable height soon.

At this level, 130,670 wallets acquired 15.06 trillion SHIB, making it a critical point. Due to increased market volatility, SHIB is down 8.16% on the weekly chart, trading at $0.000028.

TRON’s TRX Falls 45% Within a Week

TRON has had a challenging week due to heightened volatility across the market. This week, TRX shed a significant portion of its market value, including 45% within a week and 33% in five days.

However, its trading volume surged to $1.35 billion, reflecting increased activity in the TRON market. The TRX token price has struggled to maintain a level above $0.30 since the decline began.

Technical indicators also show that TRX is under a bearish influence. The Relative Strength Index (RSI) indicator, in particular, shows that the asset is on the verge of a bearish crossover as sellers persist.

Due to this discouraging outlook, TRON investors have shifted to a new AI coin, INTL. TRON trades at $0.29, with a paltry 2% intraday leap.

INTL is the New AI Coin That Could Outshine SHIB And TRX!

As INTL’s adoption rate spikes, experts opine that the new AI coin may be on the verge of a monumental increase. This anticipated rally could exceed what is expected of SHIB and TRX.

To capitalize on INTL’s future growth, it is imperative to buy the new AI coin now. It sells for $0.064 in Stage 7 of its presale.

Presale investors will realize 71% of their invested capital in INTL after the token launches at $0.110. However, those who continue to hold will rake in more gains as time goes on!

Visit Intel Markets Presale

Join The INTL Community

 

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