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Self-Reflection

The Self-Reflection block enables agents to analyze their own performance, identify mistakes, and improve their reasoning through metacognitive evaluation.

Overview

Self-Reflection implements metacognition in AI workflows, allowing agents to step back and critically evaluate their own thinking, decisions, and outputs. This leads to higher quality results and more robust error detection.

Output Analysis: Examine the agent's previous response or reasoning chain

Error Detection: Identify potential mistakes, biases, or logical inconsistencies

Quality Assessment: Evaluate how well the output meets the original requirements

Improvement Generation: Suggest specific corrections or enhancements

How It Works

graph LR
    A[Agent Output] --> B[Self-Analysis]
    B --> C[Error Detection]
    C --> D[Quality Check]
    D --> E{Satisfactory?}
    E -->|No| F[Generate Improvements]
    F --> G[Revised Output]
    E -->|Yes| H[Approved Output]

Configuration

Reflection Model

The AI model performing the self-evaluation. Often benefits from using the same or more powerful model than the original agent.

Evaluation Criteria

Specific dimensions to assess:

  • Accuracy: Factual correctness and logical consistency
  • Completeness: Whether all aspects of the task were addressed
  • Relevance: How well the output matches the original request
  • Quality: Writing quality, clarity, and usefulness

Reflection Depth

Controls how thorough the self-evaluation becomes:

  • Surface: Check for obvious errors and omissions
  • Deep: Analyze reasoning chains and assumptions
  • Comprehensive: Evaluate methodology and alternative approaches

Confidence Threshold

Minimum confidence level required to approve outputs without revision.

Use Cases

  • Content Quality Assurance: Ensuring written content meets standards before publication
  • Code Review: Self-checking generated code for bugs and best practices
  • Decision Validation: Verifying that recommendations are sound and well-reasoned

Example Workflow

[User Query] → [Agent] → [Self-Reflection] → [Condition] → [Response or Retry]

An agent generates a technical explanation, then reflects:

Original Output: "Machine learning uses algorithms to find patterns in data..."

Self-Reflection Analysis:

  • ✅ Factually accurate basic definition
  • ⚠️ Missing concrete examples
  • ⚠️ Could be more engaging for beginners
  • ❌ Doesn't address the user's specific use case

Improvement Suggestions:

  • Add a real-world example (e.g., email spam filtering)
  • Include a simple analogy
  • Connect to the user's context about customer data

Revised Output: Enhanced explanation with examples and user-specific context

Best Practice: Use self-reflection for high-stakes outputs where accuracy and quality are critical. Balance thoroughness with computational efficiency.

When to Use This vs Other Blocks

BlockWhen to Use
Self-ReflectionQuality-critical tasks requiring error detection and improvement
EvaluatorScoring and ranking multiple outputs or options
Feedback LoopLearning from user feedback over time