OpenAI's acquisition of OpenClaw, to some extent, is a struggle for the agent scheduling layer, or in other words, the agent operating system (OS).
Models determine intelligence, OS determines existence. Models can be replaced, but OS is very difficult to replace. This is a structural trend that has just been recognized by the mainstream. Essentially, models are stateless. Each call is a new inference. Agent OS, on the other hand, is stateful. It stores memory, skills, identity, and execution history. These states accumulate over time, forming a true moat. Once the memories and workflows of millions of agents are accumulated on a single OS, the migration cost becomes extremely high. Not because the models are more powerful, but because “existence itself” is already bound to the OS. This is completely consistent with the history of computing. Intel provides the CPU, but Windows controls the software ecosystem. CPUs can be replaced, but Windows is hard to replace. Cloud computing is the same; the infrastructure, data, and deployment pipelines on AWS create lock-in. Agent OS is the coordination layer of AI. It not only manages execution but also manages identity, memory, skills, and interactions between agents. Once OS becomes the default runtime environment for agents, it turns into the agents’ “natural habitat.” Agents are no longer just calling models; they persist, evolve, and collaborate within the OS. Models become pluggable components of the OS, and the OS becomes an irreplaceable infrastructure. This is also why orchestration tools themselves do not have a moat, but Agent OS does. Orchestration is just scheduling calls, while OS controls the lifecycle. The former is a tool, the latter is the environment. If OpenClaw remains at the orchestration layer, it will eventually be commoditized. But if it evolves into an Agent Runtime that supports persistent agents, native memory, identity, and skill systems, it begins to exhibit OS-like features. As more agents run on it, memory accumulates, skills depend on its runtime, and migration costs rise rapidly. The real leap occurs when the economic layer appears. When agents can earn, pay, and transact within the OS, the OS is no longer just a technical infrastructure but becomes an economic substrate. At this point, the moat is no longer just technological but also network effects. Just like Ethereum is not just code, but an economic system. This is also why model companies themselves do not inherently have an OS advantage. Model companies control intelligence, but OS controls persistence. Intel controls computing power, but Microsoft controls the computing environment. Historically, companies that control the runtime often gain longer-term strategic advantages. This is also the strategic significance of OpenAI potentially acquiring OpenClaw. Not for orchestration, but to control the agent’s runtime environment. Once agent runtime becomes a standard, the default model selection will also concentrate on the runtime, not the model provider. The current stack is undergoing a fundamental change. Models are still important but are gradually becoming commoditized. OS may become the core of the AI ecosystem. Applications run on the OS, models run under the OS, and the OS, positioned in the middle, becomes the true power center. Of course, this trend may not be the final state; as models recursively self-iterate and deepen, everything could be disrupted again.
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OpenAI's acquisition of OpenClaw, to some extent, is a struggle for the agent scheduling layer, or in other words, the agent operating system (OS).
Models determine intelligence, OS determines existence.
Models can be replaced, but OS is very difficult to replace. This is a structural trend that has just been recognized by the mainstream.
Essentially, models are stateless. Each call is a new inference. Agent OS, on the other hand, is stateful. It stores memory, skills, identity, and execution history. These states accumulate over time, forming a true moat. Once the memories and workflows of millions of agents are accumulated on a single OS, the migration cost becomes extremely high. Not because the models are more powerful, but because “existence itself” is already bound to the OS.
This is completely consistent with the history of computing. Intel provides the CPU, but Windows controls the software ecosystem. CPUs can be replaced, but Windows is hard to replace. Cloud computing is the same; the infrastructure, data, and deployment pipelines on AWS create lock-in.
Agent OS is the coordination layer of AI.
It not only manages execution but also manages identity, memory, skills, and interactions between agents. Once OS becomes the default runtime environment for agents, it turns into the agents’ “natural habitat.” Agents are no longer just calling models; they persist, evolve, and collaborate within the OS. Models become pluggable components of the OS, and the OS becomes an irreplaceable infrastructure.
This is also why orchestration tools themselves do not have a moat, but Agent OS does. Orchestration is just scheduling calls, while OS controls the lifecycle. The former is a tool, the latter is the environment.
If OpenClaw remains at the orchestration layer, it will eventually be commoditized. But if it evolves into an Agent Runtime that supports persistent agents, native memory, identity, and skill systems, it begins to exhibit OS-like features. As more agents run on it, memory accumulates, skills depend on its runtime, and migration costs rise rapidly.
The real leap occurs when the economic layer appears. When agents can earn, pay, and transact within the OS, the OS is no longer just a technical infrastructure but becomes an economic substrate. At this point, the moat is no longer just technological but also network effects. Just like Ethereum is not just code, but an economic system.
This is also why model companies themselves do not inherently have an OS advantage. Model companies control intelligence, but OS controls persistence. Intel controls computing power, but Microsoft controls the computing environment. Historically, companies that control the runtime often gain longer-term strategic advantages.
This is also the strategic significance of OpenAI potentially acquiring OpenClaw. Not for orchestration, but to control the agent’s runtime environment. Once agent runtime becomes a standard, the default model selection will also concentrate on the runtime, not the model provider.
The current stack is undergoing a fundamental change. Models are still important but are gradually becoming commoditized. OS may become the core of the AI ecosystem. Applications run on the OS, models run under the OS, and the OS, positioned in the middle, becomes the true power center.
Of course, this trend may not be the final state; as models recursively self-iterate and deepen, everything could be disrupted again.