Weekly Token Unlocks: STRK Unlock Accounts for Approximately 4.6% of Circulating Supply

marsbitОпубликовано 2026-02-07Обновлено 2026-02-07

Введение

This week's major token unlocks feature significant releases from Starknet and Kamino. **Starknet (STRK)** * **Unlocked Amount:** 127 million STRK * **Value:** ~$6.34 million USD * **Details:** Starknet is an Ethereum Layer 2 scaling solution utilizing zk-STARKs technology to enable faster and cheaper transactions. This unlock represents approximately 4.6% of its circulating supply. **Kamino (KMNO)** * **Unlocked Amount:** 12.5 million KMNO * **Value:** ~$13.63 million USD * **Details:** Kamino is an automated liquidity protocol built on the Concentrated Liquidity Market Maker (CLMM) mechanism, designed to improve capital efficiency for liquidity providers. It was incubated by Hubble Protocol. Both projects have provided their respective token release schedules.

Starknet

Project Twitter: https://twitter.com/Starknet

Project Website: https://starknet.io/

This Unlock Amount: 127 million tokens

This Unlock Value: Approximately $6.34 million

Starknet is an Ethereum Layer 2 that utilizes zk-STARKs technology to make Ethereum transactions faster and cheaper. StarkNet's parent company, StarkWare, was founded in 2018 and is headquartered in Israel. Its main products include Starknet and StarkEx. By using STARKs, Starknet verifies transactions and computations without requiring all network nodes to validate each operation. This significantly reduces the computational burden and increases the throughput of the blockchain network.

The specific release schedule is as follows:

Kamino

Project Twitter: https://x.com/kamino

Project Website: https://kamino.finance/

This Unlock Amount: 12.5 million tokens

This Unlock Value: Approximately $13.63 million

Kamino is an automated liquidity solution based on the Concentrated Liquidity Market Maker (CLMM) mechanism. Liquidity Providers (LPs) seeking to improve capital efficiency can utilize Kamino's automated market-making vaults to enhance the expected yield from fees and returns. Kamino was incubated by Hubble Protocol.

The specific release schedule is as follows:

Связанные с этим вопросы

QWhat is the amount of STRK tokens being unlocked this week and what percentage of the circulating supply does it represent?

AThis week, 127 million STRK tokens are being unlocked, representing approximately 4.6% of the circulating supply.

QWhat is the primary technology used by Starknet to scale Ethereum transactions?

AStarknet utilizes zk-STARKs technology to make Ethereum transactions faster and cheaper.

QWhat is the estimated USD value of the KMNO token unlock for Kamino this week?

AThe estimated USD value of the KMNO token unlock for Kamino this week is approximately $13.63 million.

QWhich company is the parent organization of the Starknet project and where is it headquartered?

AThe parent company of Starknet is StarkWare, which is headquartered in Israel.

QWhat type of automated solution does Kamino provide and on which mechanism is it based?

AKamino is an automated liquidity solution based on the Concentrated Liquidity Market Maker (CLMM) mechanism.

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Как купить STRK

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523 просмотров всегоОпубликовано 2024.03.29Обновлено 2026.06.02

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