chatgpt-auto-continue
⏩ Automatically continue generating answers when ChatGPT responses get cut-off
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ChatGPT Auto-Continue is a userscript that automatically continues generating ChatGPT responses when chats cut off. It relies on the powerful chatgpt.js library and is easy to install and use. Simply install Tampermonkey and ChatGPT Auto-Continue, and visit chat.openai.com as normal. Multi-reply conversations will automatically continue generating when cut-off!
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ChatGPT Auto-Continue automatically continues the chat when ChatGPT stops responding mid-conversation, eliminating the need to ever click 'Continue generating' again.
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Install ChatGPT Auto-Continue extension (Chrome, Edge, Firefox)
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Visit chatgpt.com as normal, and multi-reply conversations will automatically continue generating when cut-off!
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Install a userscript manager:
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Install ChatGPT Auto-Continue userscript (will load in manager installed above)
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Visit chatgpt.com as normal, and multi-reply conversations will automatically continue generating when cut-off!
ChatGPT Auto-Continue relies on code from the powerful chatgpt.js library
© 2023–2025 KudoAI & contributors under the MIT license.
ChatGPT Auto-Continue relies on code from the powerful chatgpt.js library
© 2023–2025 KudoAI & contributors under the MIT license.
This project exists thanks to code, testing, issues, translations & ideas from the following contributors:
For even more epic ChatGPT apps, visit: https://github.com/adamlui/ai-web-extensions
Generate endless answers from all-knowing ChatGPT (in any language!)
Install / Readme / Discuss
Enhances ChatGPT with wide/full/tall-screen + spamblock modes. Also works on perplexity.ai + poe.com!
Install / Readme / Discuss
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