Emerging crypto projects Ecoterra and yPredict have recently launched and are seeing significant success in the market. Ecoterra, which is developing an innovative recycle-to-earn platform, has raised over $4.2 million through its ongoing crypto presale. The project encourages and incentivizes recycling by enabling users to scan packaging materials before recycling them to earn ECOTERRA. Users can then hold or exchange their ECOTERRA or purchase certified carbon credits to offset their own emissions. The platform also includes a marketplace for eco-friendly businesses and features for businesses to be more sustainable.
Meanwhile, yPredict, an AI-powered ecosystem for crypto traders, has raised over $1.5 million in funding. The platform’s suite of AI tools allows analysts, quants, and developers to create predictive trading models that can determine the likely price of a crypto token. Model creators can then sell their models to traders on a subscription basis and earn passive income. YPRED, yPredict’s native Matic-based token, is required to purchase model subscriptions, and traders can also stake the token for revenue sharing and discounts. The platform plans to incorporate predictive models into a custom trading terminal and leverage AI for automated chart pattern analysis and social media sentiment analysis.
Both projects are still in their respective presale phases, with early investors able to purchase tokens at discounted prices. Ecoterra’s presale allows investors to purchase ECOTERRA using Ethereum, USDT, or a credit card, while yPredict’s presale allows investors to purchase YPRED using Ethereum, Matic, BNB, USDT, or a credit card.
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