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Version: DEV

Categorize component

The component that classifies user inputs and applies strategies accordingly.


The Categorize component is usually the downstream of the Interact component.

Scenarios

A Categorize component is essential when you need the LLM to help you identify user intentions and apply appropriate processing strategies.

Configurations

Input

The Categorize component relies on input variables to specify its data inputs (queries). Click + Add variable in the Input section to add the desired input variables. There are two types of input variables: Reference and Text.

  • Reference: Uses a component's output or a user input as the data source. You are required to select from the dropdown menu:
    • A component ID under Component Output, or
    • A global variable under Begin input, which is defined in the Begin component.
  • Text: Uses fixed text as the query. You are required to enter static text.

Model

Click the dropdown menu of Model to show the model configuration window.

  • Model: The chat model to use.
    • Ensure you set the chat model correctly on the Model providers page.
    • You can use different models for different components to increase flexibility or improve overall performance.
  • Freedom: A shortcut to Temperature, Top P, Presence penalty, and Frequency penalty settings, indicating the freedom level of the model.
    This parameter has three options:
    • Improvise: Produces more creative responses.
    • Precise: (Default) Produces more conservative responses.
    • Balance: A middle ground between Improvise and Precise.
  • Temperature: The randomness level of the model's output.
    Defaults to 0.1.
    • Lower values lead to more deterministic and predictable outputs.
    • Higher values lead to more creative and varied outputs.
    • A temperature of zero results in the same output for the same prompt.
  • Top P: Nucleus sampling.
    • Reduces the likelihood of generating repetitive or unnatural text by setting a threshold P and restricting the sampling to tokens with a cumulative probability exceeding P.
    • Defaults to 0.3.
  • Presence penalty: Encourages the model to include a more diverse range of tokens in the response.
    • A higher presence penalty value results in the model being more likely to generate tokens not yet been included in the generated text.
    • Defaults to 0.4.
  • Frequency penalty: Discourages the model from repeating the same words or phrases too frequently in the generated text.
    • A higher frequency penalty value results in the model being more conservative in its use of repeated tokens.
    • Defaults to 0.7.
  • Max tokens: Sets the maximum length of the model's output, measured in the number of tokens.
    • Defaults to 512.
    • If disabled, you lift the maximum token limit, allowing the model to determine the number of tokens in its responses.
NOTE
  • It is not necessary to stick with the same model for all components. If a specific model is not performing well for a particular task, consider using a different one.
  • If you are uncertain about the mechanism behind Temperature, Top P, Presence penalty, and Frequency penalty, you can simply choose one of the three options of Freedom.

Message window size

An integer specifying the number of previous dialogue rounds to input into the LLM. For example, if it is set to 12, the tokens from the last 12 dialogue rounds will be fed to the LLM. This feature consumes additional tokens.

Defaults to 1.

IMPORTANT

This feature is used for multi-turn dialogue only. If your Categorize component is not part of a multi-turn dialogue (i.e., it is not in a loop), leave this field as-is.

Category name

A Categorize component must have at least two categories. This field sets the name of the category. Click + Add Item to include the intended categories.

NOTE

You will notice that the category name is auto-populated. No worries. Each category is assigned a random name upon creation. Feel free to change it to a name that is understandable to the LLM.

Description

Description of this category.

You can input criteria, situation, or information that may help the LLM determine which inputs belong in this category.

Examples

Additional examples that may help the LLM determine which inputs belong in this category.

IMPORTANT

Examples are more helpful than the description if you want the LLM to classify particular cases into this category.

Next step

Specifies the downstream component of this category.

  • Once you specify the ID of the downstream component, a link is established between this category and the corresponding component.
  • If you manually link this category to a downstream component on the canvas, the ID of that component is auto-populated.

Examples

You can explore our customer service agent template, where a Categorize component (component ID: Question Categorize) has four defined categories and takes data inputs from an Interact component (component ID: Interface):

  1. Click the Agent tab at the top center of the page to access the Agent page.
  2. Click + Create agent on the top right of the page to open the agent template page.
  3. On the agent template page, hover over the Interpreter card and click Use this template.
  4. Name your new agent and click OK to enter the workflow editor.