TABLE OF CONTENTS
- Purpose
- Development Process
- Understanding the Technology
- AI Model - Claude by Anthropic
- Nightly Batch Processing
- Next Steps/Future Development
Purpose
- How bhworks leverages AI to gain quick insights into documentation.

Development Process
- The infrastructure was built for a secure, HIPAA, DTMB, NIST 800-53 RMF compliant environment, approved by the state of Michigan
- De-identified case notes are used for testing in a fully compliant environment
- Human evaluation of Case Notes Summaries improves quality and accuracy
- User feedback is gathered to further improve implementation
Understanding the Technology
- We use an AWS-managed AI service
- This service provides access to models from leading AI companies (including: Google, Meta, and Anthropic)
- Data from bhworks is not shared with the model providers; it stays entirely within mdlogix/bhworks existing secure cloud
- The AI service is HIPAA and ClearDATA compliant
AI Model - Claude by Anthropic
- Large Language Model (LLM)
- AI system trained on vast amounts of text to understand and generate human language
- State-of-the-art and very ethically conscious
Nightly Batch Processing
- Case Notes Summaries generated per enrollment
- Summaries are updated every night shortly after midnight
- Includes: Notes created/updated the previous day
- Excludes:
- Future-dated notes
- Single short notes (<50 words)
- Notes older than 1 year
- When Case Notes Summarization is turned on for an organization, it will backfill summaries the following night

Next Steps/Future Development
- Real-time inference with flexible date range
- Method for saving summaries
- Improved implementation with user feedback
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