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@iflow-mcp/human-loop-mcp-server

v0.1.0

Published

A server for coordinating human-in-the-loop operations with AI agents

Readme

MCP Human Loop Server

A Model Context Protocol server that manages human-agent collaboration through a sequential scoring system.

Core Concept

This server acts as an intelligent middleware that determines when human intervention is necessary in AI agent operations. Instead of treating human involvement as a binary decision, it uses a sequential scoring system that evaluates multiple dimensions of a request before deciding if human input is required.

Scoring System

The server evaluates requests through a series of scoring gates. Each gate represents a specific dimension that might require human intervention. A request only proceeds to human review if it triggers threshold values in any of these dimensions:

  1. Complexity Score

    • Evaluates if the task is too complex for autonomous agent handling
    • Considers factors like number of steps, dependencies, and decision branches
    • Example: Multi-step tasks with uncertain outcomes score higher
  2. Permission Score

    • Assesses if the requested action requires human authorization
    • Based on predefined permission levels and action types
    • Example: Financial transactions above certain amounts require human approval
  3. Risk Score

    • Measures potential impact and reversibility of actions
    • Considers both direct and indirect consequences
    • Example: Actions affecting multiple systems or user data score higher
  4. Emotional Intelligence Score

    • Determines if the task requires human emotional understanding
    • Evaluates context and user state
    • Example: User frustration or sensitive situations trigger human involvement
  5. Confidence Score

    • Reflects the agent's certainty about its proposed action
    • Lower confidence triggers human review
    • Example: Edge cases or unusual patterns lower confidence

Flow Logic

  1. Agent submits request to server
  2. Server evaluates scores in sequence
  3. If any score exceeds its threshold → Route to human
  4. If all scores pass → Allow autonomous agent action
  5. Track and log all decisions for system improvement

Benefits

  • Efficiency: Only truly necessary cases reach human operators
  • Scalability: Easy to add new scoring dimensions
  • Tunability: Thresholds can be adjusted based on experience
  • Transparency: Clear decision path for each human intervention
  • Learning: System improves through tracked outcomes

Future Improvements

  • Dynamic threshold adjustment based on outcome tracking
  • Machine learning integration for score calculation
  • Real-time threshold adjustment based on operator load
  • Integration with external risk assessment systems

Installation

[Installation instructions to be added]

Usage

[Usage examples to be added]

Contributing

[Contribution guidelines to be added]

ToDo

Conversational Quality Monitoring

  • Assess the depth and constructiveness of dialogue
  • Detect repetitive or circular conversations
  • Identify when a conversation lacks meaningful progress

Cognitive Load Management

  • Evaluate the complexity of tasks or discussions
  • Warn when the cognitive demands exceed typical processing capabilities
  • Suggest breaking down complex topics or taking breaks

Learning and Skill Development Tracking

  • Monitor the educational potential of conversations
  • Identify when a discussion moves beyond or falls short of a learner's current skill level
  • Recommend supplementary resources or adjust explanation complexity

Emotional Intelligence and Sentiment Analysis

  • Detect potential emotional escalation in conversations
  • Identify when a discussion becomes overly emotional or unproductive
  • Suggest de-escalation strategies or communication adjustments

Compliance and Ethical Boundary Monitoring

  • Proactively identify conversations approaching ethical boundaries
  • Detect potential violations of predefined communication guidelines
  • Provide early warnings about sensitive or potentially inappropriate content

Multi-Agent Coordination

  • In scenarios with multiple AI agents or models
  • Determine when to escalate or hand off tasks between different AI capabilities
  • Optimize task allocation based on specialized skills

Resource Allocation and Performance Optimization

  • Assess computational complexity of ongoing tasks
  • Predict and manage computational resource requirements
  • Optimize system performance by intelligently routing or prioritizing tasks

Cross-Disciplinary Knowledge Integration

  • Detect when a conversation requires expertise from multiple domains
  • Identify knowledge gaps or areas needing interdisciplinary insights
  • Suggest bringing in additional contextual information or expert perspectives

Creativity and Innovation Detection

  • Recognize when a conversation is generating novel ideas
  • Identify potential breakthrough thinking or unique problem-solving approaches
  • Encourage and highlight innovative thought patterns

Meta-Cognitive Analysis

  • Analyze the reasoning and thought processes within a conversation
  • Detect logical fallacies or cognitive biases
  • Provide insights into the quality of reasoning and argumentation

Contextual Relevance in Research and Information Gathering

  • Evaluate the relevance and comprehensiveness of information collection
  • Detect when research is becoming too narrow or too broad
  • Suggest alternative approaches or additional sources

Personalization and Adaptive Communication

  • Learn and adapt communication styles based on interaction patterns
  • Detect user preferences and communication effectiveness
  • Dynamically adjust interaction strategies