Can Shiba Inu Still Make A Comeback? Lack Of Update On Shibarium L3 Proves To Be A Problem

bitcoinistPublicado em 2026-03-24Última atualização em 2026-03-24

Resumo

The Shiba Inu ecosystem is facing challenges due to a lack of updates and low sentiment, with its token trading at its lowest price since the 2022 bear market. While early testing of a Shibarium Layer-3 explorer is underway under the ShibClaw initiative, there are no clear details, timelines, or technical specifications provided. This absence of information is causing concern within the community, as the ecosystem lacks strong direction. Additionally, the Shibarium network is undergoing a backend overhaul, with explorer synchronization only 45% complete. Without clear milestones or deployment timelines for the L3, traders have little basis for optimism, making a price recovery difficult. SHIB is currently trading at $0.000006139.

All has been mostly quiet on the Shiba Inu front, and the meme cryptocurrency is currently moving through a tough price phase. Interestingly, the most recent update on the ecosystem is from ecosystem dApp Woofswap, which confirmed early testing of a Shibarium Layer-3 explorer under the ShibClaw initiative but offered no further details on the L3 itself. That lack of clarity is beginning to stand out at a time when the entire Shiba Inu ecosystem needs stronger direction.

Shibarium L3 Development Exists, But Details Are Missing

Woofswap, a Shiba Inu decentralized application, recently confirmed that early testing of a Shibarium Layer-3 explorer is underway under the ShibClaw initiative. However, the announcement came with no indication of when a mainnet launch would take place, and this silence has drawn a visible reaction from within the community.

The Woofswap X account recently made a post noting the development of the Shibarium L3, but also added that no further information is available at the moment.

Notably, Shibarium’s Layer-3 is no longer just a concept at this point. Early testing is already underway through initiatives like ShibClaw, with developers experimenting with a dedicated L3 explorer and AI-based applications built on top of the Layer-2 Shibarium network.

However, the problem is in what has not been said. Developers have provided little to no information about timelines, technical specifications, or a potential mainnet launch. Even the teams involved, like Woofswap above, have acknowledged that the L3 is still under testing without offering much detail.

At the same time, the Shibarium network itself is undergoing a major backend overhaul. The system has gone through server migration and a full chain re-indexing process over the past month, and explorer synchronization is currently sitting around 45% completion.

However, according to Shibizens, the Shibarium-focused X account, the total count of blocks and transactions visible on the explorer reflects only partial data. Actual figures stand at over 14 million blocks and 1.56 billion transactions against the displayed figures of approximately 2.4 million blocks and 168 million transactions.

Can SHIB Still Recover Without Strong Sentiment Support?

Shiba Inu is currently trading at its lowest price range since the 2022 bear market. A large part of this is the lack of inflows into the meme coin niche, but some credit can also be given to the lack of updates and low sentiment surrounding the Shiba Inu ecosystem.

The bigger issue is how Shibarium L3 ties into Shiba Inu’s ability to stage a price comeback as we saw during the early days of Shibarium’s launch. However, without clear milestones or visible deployment timelines, there is little for traders to anchor their expectations to. At the time of writing, Shiba Inu is trading at $0.000006139.

SHIB trading at $0.0000061 on the 1D chart | Source: SHIBUSDT on Tradingview.com

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Perguntas relacionadas

QWhat recent development did Woofswap confirm regarding Shibarium, and what key detail is missing?

AWoofswap confirmed that early testing of a Shibarium Layer-3 explorer is underway under the ShibClaw initiative. However, no details were provided regarding the mainnet launch timeline, technical specifications, or further information about the L3 itself.

QWhy is the lack of clarity around the Shibarium L3 update a problem for the Shiba Inu ecosystem?

AThe lack of clarity is problematic because the entire Shiba Inu ecosystem needs stronger direction. Without clear milestones or a visible deployment timeline, there is little for traders and the community to anchor their expectations to, which negatively impacts sentiment.

QWhat is the current state of the Shibarium network's backend overhaul?

AThe Shibarium network is undergoing a major backend overhaul, which has included server migration and a full chain re-indexing process over the past month. Explorer synchronization is currently around 45% complete.

QHow does the actual data on the Shibarium explorer compare to the displayed figures?

AAccording to the Shibizens X account, the actual figures stand at over 14 million blocks and 1.56 billion transactions. However, the explorer only displays approximately 2.4 million blocks and 168 million transactions, reflecting only partial data.

QAt what price is Shiba Inu (SHIB) trading, and what are two major factors contributing to its current price level?

AShiba Inu is trading at $0.000006139. Two major factors contributing to this low price are the lack of inflows into the meme coin niche and the lack of updates/low sentiment surrounding the Shiba Inu ecosystem.

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