No-code personal agents, powered by GPT-4.1 and Realtime API

OpenAI Blog
Jul 1, 2025 10:00
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Summary

Genspark rapidly developed a $36M ARR AI product in just 45 days using no-code personal agents built on GPT-4.1 and the OpenAI Realtime API. This demonstrates the accelerating potential of no-code tools and advanced AI models to enable fast, scalable product creation, lowering barriers for innovation in the AI field.

Learn how Genspark built a $36M ARR AI product in 45 days—with no-code agents powered by GPT-4.1 and OpenAI Realtime API.

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