Weekly Funding Roundup | 4 Projects Secured Funding, Total Amount Reached $27.7 Million (12.22-12.28)

marsbitPubblicato 2025-12-29Pubblicato ultima volta 2025-12-29

Introduzione

According to incomplete statistics from Odaily Planet Daily, from December 22 to December 28, 2025, four financing events were disclosed in the global blockchain sector, a significant decrease from the previous week's 11. The total financing amount was $27.7 million, also a sharp drop from the previous week's $301 million, potentially due to the Christmas holiday period. The largest single financing round was secured by the decentralized social ecosystem Crypto Life, which announced a $20 million institutional round. Following that, stablecoin payment infrastructure project Coinbax completed a $4.2 million seed round. Other notable financings include easy.fun, which raised $2 million in seed funding to build an on-chain trading arena on Hyperliquid, and the prediction market aggregator Rocket, which secured $1.5 million in a pre-seed round.

According to incomplete statistics from Odaily Planet Daily, from December 22 to December 28, 2025, a total of 4 funding events were disclosed in the global blockchain field, a significant decrease from the previous week's 11 events. The total funding amount was $27.7 million, also a substantial drop compared to the previous week's $301 million, possibly due to the Christmas holiday period this week.

The largest single funding round this week was secured by the decentralized social ecosystem Crypto Life, which announced the completion of a $20 million institutional round. The second largest was stablecoin payment infrastructure Coinbax, which announced the completion of a $4.2 million seed round.

Below are the specific funding events (Note: 1. Sorted by the announced amount size; 2. * indicates "traditional" field companies with partial business involving blockchain):

Web3.0 Social Platform Crypto Life Completes $20 Million Funding, Aims to Reshape Data Sovereignty and Social Value Distribution

On December 24, the next-generation decentralized social ecosystem Crypto Life announced the completion of a $20 million institutional round. This round saw participation from multiple investment institutions including Bluemount Foundation, VEGA-Ventures, Infinite Alliance, ChainPulse Capital, UZ Capital, and others.

Stablecoin Payment Infrastructure Coinbax Completes $4.2 Million Seed Round Led by BankTech Ventures

On December 22, Coinbax, a stablecoin payment infrastructure built on Base and Solana, announced the completion of a $4.2 million seed round led by BankTech Ventures, with participation from Connecticut Innovations, Paxos, SpringTime Ventures, and others. The new funds will support the development of custody, policy enforcement, and programmable settlement features for digital assets, as well as integration with custody and wallet infrastructure providers.

easy.fun Completes $2 Million Seed Round Led by Mirana Ventures

On December 24, easy.fun announced the completion of a $2 million seed round led by Mirana Ventures, with participation from some strategic angel investors. The project's main business is building an on-chain trading arena on Hyperliquid, transforming on-chain trading into a skill-based competitive sport by introducing gaming mechanics. This round of funding will be used for product development, team expansion, and launching global trading competitions.

Rocket, a Prediction Market Aggregator Backed by Jsquare, Completes $1.5 Million Pre-seed Round

On December 24, according to official news, the prediction market aggregator Rocket completed a $1.5 million pre-seed round led by Electric Capital, with follow-on investments from VCs including Jsquare, bodhi ventures, Tangent, and Amber group.

Rocket is the first prediction market based on the correctness of judgment for continuous profit distribution. It features a non-binary betting structure, no liquidation mechanism, and the profit ceiling is completely opened at the protocol level. Users can reuse the same capital to deploy in multiple predictions concurrently.

Domande pertinenti

QHow many blockchain financing events were disclosed globally from December 22 to December 28, 2025, and what was the total funding raised?

AThere were 4 blockchain financing events disclosed, with a total funding amount of $27.7 million.

QWhich project received the largest single investment during this week, and how much was it?

AThe decentralized social ecosystem Crypto Life received the largest single investment of $20 million.

QWhat is the primary business of easy.fun, and who led its seed funding round?

Aeasy.fun is building an on-chain trading arena on Hyperliquid, turning on-chain trading into a skill-based competitive sport. Its $2 million seed round was led by Mirana Ventures.

QWhich company is focused on stablecoin payment infrastructure, and how much did it raise in its seed round?

ACoinbax, a stablecoin payment infrastructure built on Base and Solana, raised $4.2 million in a seed round led by BankTech Ventures.

QWhat is the unique feature of the prediction market aggregator Rocket that completed a pre-seed round?

ARocket is the first prediction market that offers continuous profit distribution based on the correctness of judgments, featuring a non-binary betting structure, no liquidation mechanism, and allowing users to deploy the same capital across multiple predictions in parallel.

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