3 Reasons Why Some Ethereum Whales Constantly Buy Shiba Inu Tokens

u.today2022-04-21 tarihinde yayınlandı2022-04-21 tarihinde güncellendi

Özet

According to WhaleStats, Shiba Inu remains the biggest USD-valued position among Ethereum whales with large wallets holding approximately $1.3 billion worth of SHIB.

Contents

Whales are trying to take control over the token

A massive discount

Shiba has the "meme potential"
Following another large purchase of 50 billion Shiba Inu tokens, it is important to break down why exactly Ethereum whales or simply large cryptocurrency market participants are constantly buying up to trillions of SHIB tokens worth millions of dollars.
Whales are trying to take control over the token
According to WhaleStats, Shiba Inu remains the biggest USD-valued position among Ethereum whales with large wallets holding approximately $1.3 billion worth of SHIB. The desire of whales to take control over the asset's circulation on the market explains such strong dominance.

Shiba Inu Data

Source: WhaleStats Usually, a high concentration of supply in the hands of whales is considered "bullish" by crypto enthusiasts, as they prefer accumulating assets over redistributing them. With a high percentage of the supply being held by retail traders and investors, the market usually sees more selling pressure than in the other case.
A massive discount
While taking control of the circulating supply, whales would not have been actively buying an asset with such a large discount as  the one we see on Shiba Inu. According to TradingView data, SHIB lost more than 70% of its value since the ATH, which makes the Risk/Reward ratio in case of another rally appealing for investors.
Shiba has the "meme potential"
The meme's potential term was brought up on the market after Dogecoin's massive run in 2021, which usually means that the asset has the potential for a strong rally with no fundamental reasons behind it.
"Meme rallies" are usually fueled by retail traders and last only a couple of weeks in the best-case scenario. While this kind of rally bring hundreds of percent to investors and traders, they tend to quickly fade out and usually lose up to 90% of their value.

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İşlemler

Spot
Futures

Popüler Makaleler

SHIB Nasıl Satın Alınır

HTX.com’a hoş geldiniz! SHIBA INU (SHIB) satın alma işlemlerini basit ve kullanışlı bir hâle getirdik. Adım adım açıkladığımız rehberimizi takip ederek kripto yolculuğunuza başlayın. 1. Adım: HTX Hesabınızı OluşturunHTX'te ücretsiz bir hesap açmak için e-posta adresinizi veya telefon numaranızı kullanın. Sorunsuzca kaydolun ve tüm özelliklerin kilidini açın. Hesabımı Aç2. Adım: Kripto Satın Al Bölümüne Gidin ve Ödeme Yönteminizi SeçinKredi/Banka Kartı: Visa veya Mastercard'ınızı kullanarak anında SHIBA INU (SHIB) satın alın.Bakiye: Sorunsuz bir şekilde işlem yapmak için HTX hesap bakiyenizdeki fonları kullanın.Üçüncü Taraflar: Kullanımı kolaylaştırmak için Google Pay ve Apple Pay gibi popüler ödeme yöntemlerini ekledik.P2P: HTX'teki diğer kullanıcılarla doğrudan işlem yapın.Borsa Dışı (OTC): Yatırımcılar için kişiye özel hizmetler ve rekabetçi döviz kurları sunuyoruz.3. Adım: SHIBA INU (SHIB) Varlıklarınızı SaklayınSHIBA INU (SHIB) satın aldıktan sonra HTX hesabınızda saklayın. Alternatif olarak, blok zinciri transferi yoluyla başka bir yere gönderebilir veya diğer kripto para birimlerini takas etmek için kullanabilirsiniz.4. Adım: SHIBA INU (SHIB) Varlıklarınızla İşlem YapınHTX'in spot piyasasında SHIBA INU (SHIB) ile kolayca işlemler yapın.Hesabınıza erişin, işlem çiftinizi seçin, işlemlerinizi gerçekleştirin ve gerçek zamanlı olarak izleyin. Hem yeni başlayanlar hem de deneyimli yatırımcılar için kullanıcı dostu bir deneyim sunuyoruz.

488 Toplam GörüntülenmeYayınlanma 2024.12.11Güncellenme 2026.06.02

SHIB Nasıl Satın Alınır

Tartışmalar

HTX Topluluğuna hoş geldiniz. Burada, en son platform gelişmeleri hakkında bilgi sahibi olabilir ve profesyonel piyasa görüşlerine erişebilirsiniz. Kullanıcıların SHIB (SHIB) fiyatı hakkındaki görüşleri aşağıda sunulmaktadır.

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