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TREAT is an AI-powered text analysis tool designed to detect triggers in content. It helps users identify sensitive or potentially harmful material, making it a valuable resource for content creators, editors, and readers. TREAT ensures that text is safe and suitable for its intended audience by analyzing and flagging problematic content.
• Trigger Detection: Automatically identifies content that may be triggering or sensitive.
• Custom Keyword Setup: Allows users to define specific triggers or keywords to monitor.
• Context Awareness: Analyzes the context of text to avoid false positives.
• Real-Time Scanning: Provides instant feedback as text is inputted.
• Detailed Reporting: Generates reports highlighting flagged content with explanations.
• Integration Options: Compatible with various platforms for seamless use.
What types of triggers can TREAT detect?
TREAT can detect a wide range of triggers, including but not limited to explicit language, violent content, and sensitive topics. Users can also customize triggers based on specific needs.
Is TREAT available for free?
TREAT offers a free basic version with limited features. For advanced functionality, users can subscribe to a paid plan.
How accurate is TREAT's detection?
TREAT uses advanced AI algorithms to ensure high accuracy, but it is not perfect. Human review is recommended for critical content.