Text Generation
Transformers
English
mixtral
legal
conversational
Inference Endpoints

Redactable-LLM

The high-level overview for integrating multiple Open Source Large Language Models within the AutoGen Framework is as follows:

Development of Custom Agents

  • Agent Design: Tasks include NLP/NER/PII identification, interpreting natural language commands, executing document redaction, and final verification.
  • Customization: Custom agents trained on specific tasks related to each aspect of the redaction process.
  • Human Interaction: Implement features to facilitate seamless human-agent interaction, allowing users to input commands and queries naturally (Optional)

LLM & VLLM AutoGen Integration

  • Model Selection: Automatic, task-dependent agent selection.
  • Enhanced Inference: Enhanced LLM inference features for optimal performance, including tuning, caching, error handling, and templating.
  • Quality Control: Vision agents analyze redacted documents using Set-of-Mark (SoM) prompting. Rejected documents are reprocessed and reviewed.
  • AutoGen Agents

System Optimization

  • Workflow Automation: Automate the redaction workflow using a blend of LLMs, custom agents, and human inputs for efficient detection and redaction of sensitive information.
  • Performance Maximization: Optimize the system for both efficiency and accuracy, utilizing AutoGen's complex workflow management features.

User Interface Development

  • Interface Design: Develop a user-friendly interface that enables non-technical users to interact with the system via natural language prompts.
  • Feedback Integration: Implement a feedback loop to continuously refine the system's accuracy and user-friendliness based on user inputs.
  • User Knowledgebase: (Optional) User account, profile, and domain knowledge will be accessible by the Research agent, for personalized interaction and results.

Training, Testing and Validation

  • Model Training: Develop new datasets, focused on document understanding related to redaction.
  • Unit Testing: Conduct extensive unit tests to ensure individual system components function correctly.
  • System Testing: Perform comprehensive end-to-end testing to validate the entire redaction process, from user input to output.
  • User Trials: Facilitate user trials to gather feedback and make necessary system adjustments.

Downloads last month
18
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Datasets used to train redactable-llm/redactable-dolphin-mixtral