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  1. Administrative Guide
  2. Swift Detection Engines
  3. LLM Guardrail Scanners

Gibberish Scanner

(Input and Output scanner)

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Last updated 9 months ago

This scanner is designed to identify and filter out gibberish or nonsensical inputs in English language text.

It proves invaluable in applications that require coherent and meaningful user inputs, such as chatbots and automated processing systems.

How it works

This scanner is capable of distinguishing between meaningful English text and gibberish. This functionality is critical for enhancing the performance and reliability of systems that depend on accurate and coherent user inputs and outputs.

Gibberish Detection: If the text is classified as Gibberish, the Gibberish score corresponds to the model's confidence in this classification.

Threshold-Based Flagging: Text is flagged as Gibberish if the Gibberish score exceeds a predefined threshold (default: 0.5).

Gibberish Detection Policy for AI Chatbot

Create a new policy as same as shown in LLM Guardrails Policy, for Gibberish detection select scanner Gibberish.

Optionally, perform a test to ensure the policy is functioning as intended. Check that Gibberish is detected and blocked as specified.