Unibase (UB) is a decentralized infrastructure for AI Agent long-term memory and agent interoperability. It empowers autonomous AI with continuous learning and collaboration through a Memory Layer, open protocols, and on-chain data systems. As AI Agents evolve from simple chat tools into autonomous digital entities that can execute tasks and collaborate across platforms, long-term memory, identity management, and inter-agent communication are emerging as critical pillars of AI infrastructure.
In recent years, the fusion of AI and Web3 has driven the concept of an "Open Agent Internet." Unlike traditional AI platforms that rely on centralized databases and closed ecosystems, decentralized AI networks prioritize data ownership, cross-platform agent collaboration, and verifiable state synchronization. Unibase aims to provide AI Agents with a foundational architecture akin to a "long-term brain," enabling different AIs to continuously accumulate knowledge, share context, and operate independently in an on-chain environment.
Unibase is a decentralized Memory Layer designed for AI Agents. Its core mission is to overcome the limitations of AI Agents in long-term memory, cross-platform agent collaboration, and data verifiability.
Traditional AI systems typically rely on limited context windows and cannot retain user history, task state, or environmental information over extended periods. This forces AI to repeatedly reacquire context when handling complex tasks, hindering continuous learning. Unibase addresses this through modules like Membase, the AIP Protocol, and Unibase DA, providing AI Agents with long-term memory and on-chain state synchronization.
In Unibase's architecture, AI is no longer just a single model but a persistent digital agent with identity and collaborative capabilities. This design is a key element of the Open Agent Internet.
The Open Agent Internet can be understood as an open network where AI Agents interconnect and interoperate.
In the traditional internet, human users interact via accounts, browsers, and applications. In the Open Agent Internet, AI Agents communicate, exchange state, execute tasks, and share partial knowledge or context through a unified protocol.
The fundamental shift is that AI Agents are no longer confined to a single platform. They can call tools across applications, maintain a long-term identity, and form collaborative relationships with other agents. Unibase aims to realize this vision in a decentralized manner, ensuring that AI Agent memory, communication, and data storage are not controlled by any single platform.
Unibase's underlying architecture consists of three main components: Membase, the AIP Protocol, and Unibase DA.
| Module | Function |
|---|---|
| Membase | Long-term AI memory system |
| AIP Protocol | Agent communication and identity protocol |
| Unibase DA | Data availability layer |
Membase stores an AI Agent's long-term context and historical state, allowing it to recall past information at any point. The AIP Protocol (Agent Interoperability Protocol) manages agent identity, permissions, and cross-platform agent communication, enabling different agents to exchange information and share state. Unibase DA (Data Availability) provides high-throughput data storage and synchronization, supporting AI workloads.
Together, these three layers form a decentralized infrastructure that enables AI Agents to operate persistently within an open network.
Membase is Unibase's long-term AI memory system.
Traditional large language models rely on short-term context windows, so most state is lost when a conversation ends. However, long-term memory is essential for autonomous AI, as complex tasks require the continuous accumulation of historical experience.
Membase's functions include:
This design transforms AI Agents from one-time Q&A tools into persistent digital entities. In a decentralized environment, long-term memory also raises issues of data ownership and verifiability, so Unibase combines on-chain verification with a distributed storage architecture to manage AI memory.
The AIP Protocol is Unibase's agent interoperability protocol, establishing a unified communication standard between AI Agents.
In the Open Agent Internet, AI Agents may originate from different platforms, models, or applications. Without a unified protocol, sharing state and collaborating becomes difficult. The AIP Protocol handles agent identity management, state synchronization, permission control, and agent-to-agent communication.
This system parallels wallet addresses and smart contract interfaces in Web3. By standardizing interactions, different AI Agents can form collaborative relationships within an open network. As multi-agent systems grow, interoperability protocols are becoming a vital component of AI infrastructure.
Unibase DA is a data availability layer designed for AI Agents.
AI Agents continuously generate large volumes of data during operation, including conversation state, memory updates, tool call records, and task execution results. Traditional blockchains struggle with such high-frequency AI data, so Unibase introduces a dedicated data availability architecture.
Data availability ensures data accessibility, increases network throughput, and reduces storage costs. For an AI Agent network, this layer serves as the infrastructure foundation for long-term memory and state synchronization.
UB is the native token of the Unibase network, primarily used for protocol operation and ecosystem incentives.

UB covers protocol fees, agent registration, node incentives, data storage, and network governance. In some designs, UB may also be used for agent staking and governance to coordinate resources and maintain system operations.
Since the economic model of AI Infra projects may evolve with protocol upgrades, official announcements should be considered the authoritative source.
As AI Agents gain autonomous capabilities, long-term memory and interoperability infrastructure are finding real-world applications.
In multi-agent collaboration, different AIs share state and memory to jointly perform research, data analysis, or automated operations. In decentralized AI assistant scenarios, AI can retain user preferences and historical context long-term without completely relying on centralized platform databases.
Autonomous trading agents can combine long-term market history with real-time state for continuous operation, while decentralized knowledge networks allow AI Agents to share knowledge fragments and context. With the growth of AI DAOs and autonomous collaboration systems, long-term memory and agent identity are becoming increasingly important.
The current AI Crypto landscape includes AI Compute, AI Data, AI Agent Framework, AI Memory Layer, and AI DA.
| Type | Representative Direction |
|---|---|
| AI Compute | Decentralized computing power |
| AI Data | Data marketplace |
| AI Agent Framework | Agent development framework |
| AI Memory Layer | Long-term memory system |
| AI DA | AI data availability |
Compared to Virtuals, Unibase focuses on AI Memory Layer and Agent Interoperability infrastructure, rather than simply offering GPU compute or AI model services. Its differentiators include decentralized data structures, a long-term memory system, agent-to-agent communication, and a Web3-native architecture.
Unibase (UB), as a decentralized memory layer and interoperability infrastructure for AI Agents, aims to overcome the limitations of AI in long-term memory, agent collaboration, and data verifiability.
As AI Agents evolve from chat tools into autonomous digital entities, long-term memory, identity protocols, and open communication networks are becoming key directions for AI Infra. Through Membase, the AIP Protocol, and a data availability architecture, Unibase aims to build the foundational infrastructure for the Open Agent Internet.
Membase stores the long-term context, historical state, and knowledge data of AI Agents, enabling continuous learning and recall of past information.
The AIP Protocol is Unibase's agent communication protocol, enabling AI Agent identity management, state synchronization, and cross-platform agent collaboration.
Long-term memory allows AI to preserve historical state, learn continuously, and perform complex tasks without relying solely on short-term context.
Unibase DA is a data availability layer that supports high-frequency data storage, synchronization, and on-chain verification for AI Agents.
UB is used for protocol fees, network governance, node incentives, and ecosystem participation.





