Caldera Launches Metalayer Token Launcher

Odaily星球日报Published on 2026-04-08Last updated on 2026-04-08

Abstract

Caldera has officially launched the Metalayer Token Launcher, the first no-code solution for cross-chain token deployment. This tool enables projects to quickly create and deploy MetaTokens without the need to write smart contracts or perform complex technical configurations. Users can set the token name, total supply, and Treasury wallet address to complete token creation and deployment within minutes, significantly lowering the technical barriers to launching on-chain economic systems. In its initial phase, the Metalayer Token Launcher will support both Arbitrum and Ethereum, featuring near real-time cross-chain bridging between the two networks. Each token created through Metalayer will have its own dedicated bridge page, simplifying cross-chain asset transfers and reducing operational complexity and cost. The core goal of Metalayer is to productize and modularize on-chain economic infrastructure, allowing projects to launch their token systems and economic models more efficiently and at a lower cost. Future updates will expand support to additional blockchain networks, broadening the scope of cross-chain asset issuance and circulation. Caldera continues to enhance the Metalayer ecosystem, making token creation, cross-chain transfers, and on-chain economy setup simpler and more flexible.

Caldera has officially launched the Metalayer Token Launcher, the first no-code solution supporting cross-chain token deployment. It provides project teams with a suite of code-free token issuance tools, enabling rapid creation and deployment of MetaTokens, further lowering the technical barriers to launching on-chain economic systems and asset issuance.

The Metalayer Token Launcher significantly simplifies the token issuance process. Users only need to set the token name, total supply, and add a Treasury wallet address to complete token creation and deployment within minutes, without writing smart contracts or performing complex technical configurations, allowing projects to launch their on-chain economic systems more quickly.

In the initial phase, the Metalayer Token Launcher will support the Arbitrum and Ethereum ecosystems, with near real-time cross-chain bridging between the two chains. Each token created through Metalayer will come with an independent cross-chain bridge page, making asset transfers between different chains more convenient and efficient, while reducing the cost and complexity of cross-chain operations.

The core goal of Metalayer is to productize and modularize on-chain economic infrastructure, enabling project teams to launch their token systems and economic models at lower costs and with higher efficiency. In the future, the Metalayer Token Launcher will gradually support more blockchain networks, further expanding cross-chain asset issuance and circulation scenarios.

With the launch of the Metalayer Token Launcher, Caldera continues to enhance its Metalayer ecosystem infrastructure, making token creation, cross-chain circulation, and on-chain economic system setup simpler, more flexible, and more efficient.

Related Questions

QWhat is the main product announced by Caldera in the article?

ACaldera announced the Metalayer Token Launcher, a no-code solution for cross-chain token deployment.

QWhich two blockchain ecosystems are initially supported by the Metalayer Token Launcher?

AThe Metalayer Token Launcher initially supports the Arbitrum and Ethereum ecosystems.

QWhat are the key steps required for a user to create a token using the Metalayer Token Launcher?

AUsers only need to set the token name, total supply, and add a Treasury wallet address to create a token.

QWhat additional feature does every token created through Metalayer include to facilitate cross-chain movement?

AEvery token created through Metalayer includes an independent cross-chain bridge page for easier and more efficient asset movement between chains.

QWhat is the core goal of the Metalayer project as stated in the article?

AThe core goal of Metalayer is to productize and modularize on-chain economic infrastructure, allowing projects to launch their token systems and economic models at a lower cost and with higher efficiency.

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