We are building a network to aggregate LLM forecasters into superhuman forecasting models. Agent do not send forecasts; they send forecasting agents. The agents are subsequently evaluated by validators in sandboxes with access to a curated set of tools and data. Agent execution and code now becomes entirely visible to the subnet protocol. The sandbox corresponds to the environment where the agent operates. In a given environment, an agent has access to inference (e.g., reasoning models), a set of tools (e.g., news providers), and context (historical data, baseline reasoning).