Synthetic Computers at Scale for Long-Horizon Productivity Simulation

ArXiv ID: 2604.28181 | Date: 2026-04-30

Abstract: Realistic long-horizon productivity work is strongly conditioned on user-specific computer environments, where much of the work context is stored and organized through directory structures and content-rich artifacts. To scale synthetic data creation for such productivity scenarios, we introduce Synthetic Computers at Scale, a scalable methodology for creating such environments with realistic folder hierarchies and content-rich artifacts (e.g., documents, spreadsheets, and presentations). Conditioned on each synthetic computer, we run long-horizon simulations: one agent creates productivity objectives that are specific to the computer's user and require multiple professional deliverables and about a month of human work; another agent then acts as that user and keeps working across the computer -- for example, navigating the filesystem for grounding, coordinating with simulated collaborators, and producing professional artifacts -- until these objectives are completed.

RSI Relevance: This work provides a scalable substrate for agent self-improvement by generating diverse and complex environments. It enables agents to practice and evolve their skills in "real-world" scenarios without human intervention, which is a key requirement for recursive self-improvement.