I thought of making a Tutorial for making 🤔 sentences as an explanation of how to use Keicho-Regroup.

Instead of using Keicho as it is now, it would be better to add a mode dedicated to empathic writing.

  • The degree of freedom and diversity of questions will be reduced, but it is less likely that an unfamiliar user will get lost.

The design changes to achieve this would be beneficial for experimenting with 🤔Task Management Chatbot, which I have been wanting to do for a while. Template chatbotization would also be easy.

What we want to do - Ten questions specific to writing.

  • It’s not good to just keep putting questions out there.
    • The bot needs to respond back to the question.
    • If so, at what point do we move on to the next question?
    • You can go on automatically, but it’s hard to move on once the conversation gets going.
    • User should be able to pull the trigger with “next question”.
    • That is, Allows for additional ✅ command processing is required.
    • And we want to display the added commands on the buttons (because it is too much to ask an unfamiliar user to learn the commands). - Create ✅ answer choices on the server side
  • When you’re done with a set of questions, export them to Regroup and move the stickies around to organize them.

What needs to be implemented - ✅Change the first question on the client side

what to do - ✅Display “Next Question” button in empathic writing mode - off

  • Raise the score for questions that do not take arguments.
  • Make a question sticky when mapping ✅Regroup
    • It would be easier to do this if there were stickies like “Positive Lines.”

add (e.g. annex) - The first question should be made with the expectation that it will be in the title of the log.

  • This mode is to assist in writing sentences. What kind of writing are you trying to do?

    • Aligned with other modes.
  • Use of sophisticated description methods when implementing KPT mode has been changed.

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