How MegaETH targets 15K–35K TPS in 7-day mainnet stress test

ambcryptoPublicado em 2026-01-21Última atualização em 2026-01-21

Resumo

MegaETH, a real-time EVM-compatible blockchain, is launching its mainnet on January 22nd with a 7-day stress test aiming to process 11 billion transactions. The project targets a sustained throughput of 15,000–35,000 transactions per second (TPS), having achieved nearly 47,000 TPS in testing. It also boasts a 10-millisecond block time, significantly faster than other blockchains. While prioritizing speed and low latency, concerns about decentralization and potential censorship risks due to centralized sequencing have been noted. The stress test will involve user interaction with gaming applications and backend transactions through a decentralized exchange. Following the test, the public mainnet will launch alongside select DeFi and consumer applications.

MegaETH, the real-time EVM-compatible blockchain, announced that it will launch its mainnet on the 22nd of January. Dubbed the MegaETH stress test, it aims to process 11 billion transactions in 7 days.

They were ” opening mainnet to users for several latency-sensitive apps while the chain is under intense, sustained load.”

The project aims to achieve performance levels comparable to high-speed blockchains such as Solana [SOL] while also providing extremely low latency and high throughput.

It has achieved nearly 47k transactions per second (TPS), noted growthepie in a post on X. MegaETH was targeting a sustained, true TPS of 15k-35k across the 7 days of the stress test.

“In the end, MegaETH will have the largest tx count in history across all EVM chains while users frictionlessly play with the chain.”

Messari reported that the MegaETH testnet achieved a 10‐millisecond block time, far faster than any other blockchain.

While the design prioritizes speed, the report raised concerns about decentralization and potential censorship risks due to centralized sequencing.

MegaETH to push the boundaries of blockchain capabilities

“Stress tests only matter if they’re uncomfortable”, said the blockchain’s post on X. During the test, users can interact with gaming applications such as Stomp.gg, Smasher.fun, and Crossy Fluffle.

On the backend, the team will push a mix of ETH transfers and v3 automated market maker swaps through the decentralized exchange Kumbaya.xyz.

The public mainnet will launch after the global stress test. A selection of day-one DeFi and consumer applications powered by its native stablecoin, USDm, will also be launching.

Messari also documented that in October 2025, MegaETH raised $50 million during the MEGA token sale, which became oversubscribed within minutes. This figure was part of the nearly $75 million raised from various grassroots funding efforts.


Final Thoughts

  • MegaETH is an EVM-compatible blockchain aiming to deliver real-time crypto performance, with a 10 ms blocktime and nearly 47k TPS in testing.
  • The global stress test targets a total of 11 billion transactions in 7 days, starting on the 22nd of January.

Perguntas relacionadas

QWhat is the main goal of MegaETH's 7-day mainnet stress test starting on January 22nd?

AThe main goal is to process 11 billion transactions in 7 days, targeting a sustained true TPS of 15,000-35,000.

QWhat key performance metrics has MegaETH achieved in testing according to the article?

AMegaETH has achieved nearly 47,000 TPS and a 10-millisecond block time in testing.

QWhat are some of the applications users can interact with during the MegaETH stress test?

AUsers can interact with gaming applications such as Stomp.gg, Smasher.fun, and Crossy Fluffle.

QWhat concerns did the Messari report raise about MegaETH's design?

AThe report raised concerns about decentralization and potential censorship risks due to centralized sequencing.

QHow much funding did MegaETH raise during its MEGA token sale in October 2025?

AMegaETH raised $50 million during the MEGA token sale, which was part of nearly $75 million raised from various grassroots funding efforts.

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