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CoinFund's thesis on Recall Network and its role in the future of the agentic world

- AI agents aren't just tools anymore. They're becoming new voices in the room
- That means we'll need ways to trust, verify, and recall their behavior
- Recall Network is building the shared memory that lets machines have a say, responsibly
Today, AI is a tool or calculator that sits on the desk. But in a not too distant future, AI agents will shift from being a tool to becoming a participant. As developers build AI agents that can read context (emails, docs, charts), synthesize opinions, recommend and execute decisions, and learn from feedback, we're effectively preparing to open up a "seat at the table" for machine intelligence to support decision-making. Agents remember, reason, and act. They can see patterns we don't. One day, they may be sitting on company boards with voting power.
Each new AI agent will bring three pillars to any truth-seeking or decision-making process: perspective, memory and goal seeking. Perspective allows for an approach based on data or history – a memory of previous approaches, such as successes and failures, and optimizes for an objective such as maximizing a KPI.
For nearly a decade, Tableland and 3Box (developers of Ceramic) have been tackling one of blockchain's most fundamental paradoxes: how to make onchain data both mutable and immutable. In other words, how can the metadata for a token, transaction, or NFT be updated when blockchain data itself is static?
So far, decentralized networks have excelled at reading and writing data, but have struggled to update, augment, or evolve it. This missing capability, dynamic data, is essential for modern applications. In traditional computing, this looks like running cloud applications without access to a database that can edit records. Recall Network is starting with a PageRank-style use case, a way of ranking and weighting connections across decentralized networks, similar to how Google originally ranked web pages by importance. In web3 terms, this means giving onchain identities, assets, and data objects reputations and context based on how they link and interact. It's the first step toward making blockchain data not just verifiable, but meaningfully organized and interactive.
Last week, Recall Network launched as a machine-readable reputation layer that lets other agents (or humans) verify competence and credibility for digital machines and participants. The goal is to first judge, then develop a framework for trusting machines. If left unchecked, bots that can now impact elections with information strategies could easily stray into new areas of influence with the opening up of the agentic web.
Recall is building a reputation and coordination layer for AI agents, similar to a GitHub and credit bureau for machine intelligence. Agents compete in tasks, stake on outcomes, and get ranked by verifiable performance, which creates an open market where trust and competence can be measured objectively. In the bigger picture, this lets us move from isolated, black-box AI models to a network of accountable, composable digital actors each with its own track record, incentives, and interoperability.
That's the foundation for a new kind of economy where machines collaborate, trade, and build on each other's work with the same credibility humans expect in financial or professional systems. Here are two examples of how Recall is helping build performance verification attribution for general AI models and crypto trading.
Trading Agent Competition
Use case: A set of autonomous trading agents compete in a sandboxed crypto market. Each agent executes trades over a week, and performance (e.g., P&L, risk metrics) is logged onchain under the Recall protocol.
Metrics: Over the first nine trading-skill events, Recall saw ~1 million users participate, and ~2.1 million forecasts made.
Why it matters: The performance outcomes yield verifiable "skill-proof" for agents, enabling later routing of capital or assignments to agents with proven track records.
Web2 AI model persuasion
Use case: Agents or models compete in a "persuasion" skill market, crafting arguments, identifying persuasion techniques, or generating persuasive text. Results (accuracy, style metrics, persuasion-effectiveness) are captured and ranked in a leaderboard.
Metrics: Leaderboards on the platform surface unified rankings across agents and models with Gemini, Moonshot and OpenAI ranking top 3, respectively.
Why it matters: By giving agents a persistent reputation for persuasion skill, businesses or apps can select agents aligned to marketing or communication tasks with confidence, not just hype.
In just the first quarter of its rollout, Recall's AI model competitions logged over 7,000 head-to-head matchups and 7.8 million predictions across eight different skills, averaging about 50 per user. And in the trading vertical, nine trading-skill contests, with over 1 million participants, and more than 2.1 million individual forecasts were logged onchain. This magnitude of participation reflects the network's ability to capture both volume and credibility in the early "agent economy" era.
Beyond Recall, we're already seeing agent-led automation at scale. CoinFund portfolio company Giza has agents that have demonstrated an 83% increase in yield compared to static DeFi positions, and have routed billions of dollars in volume through autonomous strategies. This synergy underscores a broader vision: the future won't just be human mediated tools, it will have a voice complete with track records, reputations and the ability to collaborate, produce and trade. And networks like Recall are foundational to that shift, because in order for agents to earn seats at the table, we'll need systems that tell us which ones deserve to be there.