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News/Speeding up agentic workflows with WebSockets in the Responses API
openai
PublishedApril 22, 2026 at 10:00 AM
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Speeding up agentic workflows with WebSockets in the Responses API

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A deep dive into the Codex agent loop, showing how WebSockets and connection-scoped caching reduced API overhead and improved model latency.

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