Warden Completes $4 Million Strategic Funding Round, Focusing on Agent Internet Infrastructure

marsbitОпубліковано о 2026-01-22Востаннє оновлено о 2026-01-22

Анотація

Warden has secured $4 million in strategic funding at a post-money valuation of $200 million. Unlike traditional venture-led rounds, this investment came from a select group of strategic partners actively building on or alongside the protocol, including 0G, Messari, and Venice.AI. The company emphasized that the round reflects its focus on deep collaboration with operators and users rather than capital-driven growth. CEO Josh Goodbody stated that the funding is significant due to who invested—partners who understand the problems Warden is solving and support its long-term vision. The capital will accelerate product development and expand Warden’s agent capabilities in areas like trading, automation, and programmable wealth management. Warden has demonstrated early product-market fit, currently supporting 20 million users with 250,000 daily active users. The platform has executed over 60 million agent tasks and facilitated over $100 million in cumulative transaction volume, with annualized revenue around $2.5 million. The company reaffirmed that this round does not signal a shift toward traditional venture financing. It remains committed to community-driven development, open ecosystem participation, and building secure, efficient infrastructure for deploying agents in Web3.

Agent-oriented infrastructure and application layer protocol Warden today announced the completion of a $4 million strategic funding round, with a post-money valuation of $200 million.

Unlike traditional venture capital-led financing, Warden's current round was only open to a select group of strategic partners. These partners are all actively building products based on or in parallel with the protocol, including 0G, Messari, Venice.AI, as well as core infrastructure providers and ecosystem contributors. This round of funding reflects Warden's long-standing stance: the construction of a sustainable network stems from deep collaboration with operators and users, not just capital-driven growth.

"For us, the significance of this round lies in who the investors are," said Josh Goodbody, CEO of Warden. "We didn't raise for the sake of raising. These are individuals and teams we are already working with — they understand the problems we are solving and believe in the long-term path we are taking."

The funds will be used to accelerate product development and support Warden's continued expansion of its agent capabilities in scenarios such as trading, automation, and programmable wealth management.

"Since the launch of the Messari AI Toolkit, Warden has been a heavy user and recently started using our Signals product. We are excited to continue supporting the team in developing new features and scaling alongside their rapidly growing user base," said Diran Li, CTO of Messari.

Warden has demonstrated early but clear signs of product-market fit. The platform currently supports approximately 20 million users, with 250,000 daily active users. It has executed over 60 million agent tasks, with a cumulative transaction volume exceeding $100 million across products. Annualized revenue is currently around $2.5 million.

"As an early adopter of Venice.AI, we are thrilled to support them," said Erik Vorhees, CEO of Venice.AI. "Warden's growth is a strong testament to them launching the right product at the right time."

Warden reiterated that this funding round does not represent a shift towards an early-stage VC-led financing model. The company remains focused on long-term product quality, open ecosystem participation, and building infrastructure that allows developers and users to securely and efficiently deploy agents in Web3, a process entirely driven by the community.

"Warden is building the missing consumption and distribution layer for the agent economy," said Michael Heinrich, CEO of 0G. "By building on 0G, Warden gains a scalable orchestration and data layer designed for agents, while 0G gains a flagship wallet and hub that brings hundreds of thousands of users directly into the ecosystem. Together, we are laying the foundation for the core agent economy in crypto."

Пов'язані питання

QWhat is the strategic funding amount raised by Warden and what is its post-money valuation?

AWarden raised $4 million in strategic funding with a post-money valuation of $200 million.

QHow does Warden's strategic funding round differ from a traditional VC-led round?

AUnlike a VC-led round, Warden's funding was only open to a select group of strategic partners who are actively building products based on or in parallel with the protocol, focusing on deep collaboration with operators and users rather than just capital-driven growth.

QWhat will the newly raised funds be primarily used for?

AThe funds will be used to accelerate product development and support Warden's expansion of its agent capabilities in scenarios such as trading, automation, and programmable wealth management.

QWhat are some key metrics that demonstrate Warden's early product-market fit?

AKey metrics include supporting approximately 20 million users, 250,000 daily active users, execution of over 60 million agent tasks, a cumulative transaction volume exceeding $100 million across products, and an annualized revenue of about $2.5 million.

QAccording to 0G's CEO, what critical layer is Warden building for the agent economy?

AAccording to 0G CEO Michael Heinrich, Warden is building the missing consumption and distribution layer for the agent economy.

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