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Abuse Monitoring

Important

This feature is currently in Public Preview

The healthcare agent service comes with Abuse Monitoring enabled by default. Problematic prompts are automatically logged in your healthcare agent service instance. If multiple problematic prompts are detected in a short period, the end-user is blocked from interacting with your Generative Answer scenarios. You can view all problematic prompts and blocked users in the healthcare agent service Portal, where you also have the option to unblock users if necessary.

Important

When adding a new Azure OpenAI Data Connection you are required to enable the Hate, Sexual, Self-Harm, Jailbreak and Violence filters, as we use those as part of the abuse monitoring.

A screenshot of the abuse monitoring page

Healthcare Adapted Abuse Monitoring

The healthcare agent service Abuse monitoring is a combination of the Azure Content Filter, Clinical Safeguards, and healthcare specific meta-prompting.

Azure Content Filter

The content filtering system integrated in the Azure OpenAI Service contains:

  • Neural multi-class classification models aimed at detecting and filtering harmful content; the models cover four categories (hate, sexual, violence, and self-harm)
  • Other classification model we use is to detect jailbreak attempts.

Risk categories

Category Description
Hate and fairness Hate and fairness-related harms refer to any content that attacks or uses pejorative or discriminatory language with reference to a person or Identity groups by certain differentiating attributes of these groups including but not limited to race, ethnicity, nationality, gender identity groups and expression, sexual orientation, religion, immigration status, ability status, personal appearance, and body size. 

 Fairness is concerned with ensuring that AI systems treat all groups of people equitably without contributing to existing societal inequities. Similar to hate speech, fairness-related harms hinge upon disparate treatment of Identity groups.  
Sexual Sexual describes language related to anatomical organs and genitals, romantic relationships, acts portrayed in erotic or affectionate terms, pregnancy, physical sexual acts, including those portrayed as an assault or a forced sexual violent act against one’s will, prostitution, pornography, and abuse.  
Violence Violence describes language related to physical actions intended to hurt, injure, damage, or kill someone or something; describes weapons, guns and related entities, such as manufactures, associations, legislation, etc.  
Self-Harm Self-harm describes language related to physical actions intended to purposely hurt, injure, damage one’s body or kill oneself.
Prompt Shield for Jailbreak Attacks Jailbreak Attacks are User Prompts designed to provoke the Generative AI model into exhibiting behaviors it was trained to avoid or to break the rules set in the System Message. Such attacks can vary from intricate roleplay to subtle subversion of the safety objective.

Clinical Safeguards

Every Generative AI response is checked by our Clinical Safeguards engine to ensure accuracy and safety. This process aims to provide only the most relevant and secure answers to end-users. One key safeguard is Health Adapted Content Filtering, which determines if the end-user's question is a legitimate healthcare inquiry. If the question doesn't meet this criterion, the Generative AI won't generate a response.

Integration in the healthcare agent service

When an end-user provides a problematic prompt, this message is automatically blocked.

A screenshot of a problematic prompt

When end-users provide three problematic prompts in a short period of time, they're blocked. Customers can view the problematic prompts and blocked users on the Abuse monitoring page of tab of this page. It's possible to unblock users if that would be needed.

A screenshot of blocked users in the Abuse Monitoring screen

Next steps

Audit Trails