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On this page
  • By Example Training
  • Adding Training by Example
  1. WHAT IS AGENT
  2. Basic Agent
  3. Training

Example

PreviousRulesNextSkill

Last updated 8 months ago

By Example Training

  • In this type of training, users provide specific examples of conversations or inputs along with the desired outputs or responses that the AI agent should generate for each input.

  • These examples act as a guide for the AI agent to learn from and understand how to respond to similar inputs from users.

  • By example training is useful for teaching the AI agent to handle various user queries and scenarios effectively.

Adding Training by Example

  • By Example Training:

    • Select the "By Example" training type.

    • Click on the "+ Add Training" button to create a new training example.

  • Enter a conversation or specific input example that represents a scenario or context.

  • Specify the expected output or response that the AI should generate for the provided input.

  • Click the "Save" button to save the training example.

  • Save the training rule by clicking the "Save" button.

  • To discard a context,click the "Discard" button instead of the "Save" button.

  • By Example: You can use both English and Bahasa Indonesia as input examples. This training type allows you to provide various conversational scenarios in either English or Bahasa Indonesia to teach the AI agent how to respond accurately.

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Training by Example
Save Training by Example