chain-of-density

Iteratively densify text summaries using Chain-of-Density technique. Use when compressing verbose documentation, condensing requirements, or creating executive summaries while preserving information density.

Safety Notice

This listing is from the official public ClawHub registry. Review SKILL.md and referenced scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "chain-of-density" with this command: npx skills add agentic-insights/chain-of-density

Chain-of-Density Summarization

Compress text through iterative entity injection following the CoD paper methodology. Each pass identifies missing entities from the source and incorporates them while maintaining identical length.

The Method

Chain-of-Density works through multiple iterations:

  1. Iteration 1: Create sparse, verbose base summary (4-5 sentences at target_words)
  2. Subsequent iterations: Each iteration:
    • Identify 1-3 missing entities from SOURCE (not summary)
    • Rewrite summary to include them
    • Maintain IDENTICAL word count through compression

Key principle: Never drop entities - only add and compress.

Missing Entity Criteria

Each entity added must meet ALL 5 criteria:

CriterionDescription
RelevantTo the main story/topic
SpecificDescriptive yet concise (≤5 words)
NovelNot in the previous summary
FaithfulPresent in the source (no hallucination)
AnywhereCan be from anywhere in the source

Quick Start

  1. User provides text to summarize
  2. Orchestrate 5 iterations via cod-iteration agent
  3. Each iteration reports entities added via Missing_Entities: line
  4. Return final summary + entity accumulation history

Orchestration Pattern

Iteration 1: Sparse base (target_words, verbose filler)
     ↓ Missing_Entities: (none - establishing base)
Iteration 2: +3 entities, compress filler
     ↓ Missing_Entities: "entity1"; "entity2"; "entity3"
Iteration 3: +3 entities, compress more
     ↓ Missing_Entities: "entity4"; "entity5"; "entity6"
Iteration 4: +2 entities, tighten
     ↓ Missing_Entities: "entity7"; "entity8"
Iteration 5: +1-2 entities, final density
     ↓ Missing_Entities: "entity9"
Final dense summary (same word count, 9+ entities)

How to Orchestrate

Iteration 1 - Pass source text only:

Task(subagent_type="cod-iteration", prompt="""
iteration: 1
target_words: 80
text: [SOURCE TEXT HERE]
""")

Iterations 2-5 - Pass BOTH previous summary AND source:

Task(subagent_type="cod-iteration", prompt="""
iteration: 2
target_words: 80
text: [PREVIOUS SUMMARY HERE]
source: [ORIGINAL SOURCE TEXT HERE]
""")

Critical:

  • Invoke serially, not parallel
  • Pass SOURCE text in every iteration for entity discovery
  • Parse Missing_Entities: line to track entity accumulation

Expected Agent Output Format

The cod-iteration agent returns:

Missing_Entities: "entity1"; "entity2"; "entity3"

Denser_Summary:
[The densified summary - identical word count to previous]

Parse both parts - track entities for history, pass summary to next iteration.

Measuring Density

Use scripts/text_metrics.py for deterministic word counts:

echo "your summary text" | uv run scripts/text_metrics.py words
# Returns: word count

uv run scripts/text_metrics.py metrics "your summary text"
# Returns: {"words": N, "chars": N, "bytes": N}

Parameters

ParameterDefaultDescription
iterations5Number of density passes (paper uses 5)
target_words80Word count maintained across ALL iterations
return_historyfalseInclude intermediate summaries + entities

Note: target_words can be adjusted based on source length and desired output density.

Output Format

Minimal (default)

[Final dense summary text]

With History (return_history=true)

final_summary: |
  [Dense summary at target_words with accumulated entities]
iterations:
  - turn: 1
    missing_entities: "(none - establishing base)"
    words: 80
    summary: |
      [Sparse iteration 1]
  - turn: 2
    missing_entities: "entity1; entity2; entity3"
    words: 80
    summary: |
      [Denser iteration 2]
  # ... etc
total_entities: 9

When to Use

  • Verbose documentation exceeding 500 words
  • Requirements documents needing condensation
  • Creating executive summaries from detailed reports
  • Compressing skills that exceed recommended length

When NOT to Use

  • Legal/compliance text (precision required)
  • Tutorial content (beginners need explanation)
  • Already concise content (<300 words)
  • Specifications (don't compress specs)

Example

Source (180 words, verbose skill excerpt):

The name field is a required field that must be present in every skill.
The name field identifies the skill and must follow a specific format.
For the name field, you should use lowercase letters and hyphens only.
The name field can be 1 to 64 characters long. The description field
is also required and tells agents when to use your skill...

Iteration 1 (Sparse, 80 words):

Missing_Entities: (none - establishing base)

Denser_Summary:
This document discusses the requirements for skill configuration fields in agent systems. It covers various aspects of how fields should be formatted and what values they can contain. The document also mentions validation rules that apply to these fields and provides guidance on best practices for developers. Additionally, it includes information about both optional and required elements that need to be considered when creating new skills for the system.

Iteration 3 (After 2 passes, same 80 words):

Missing_Entities: "1-64 characters"; "lowercase alphanumeric-hyphens"; "Use when phrase"

Denser_Summary:
Skills require `name` (1-64 chars, lowercase alphanumeric-hyphens) and `description` fields with validation rules. The name identifies skills; descriptions tell agents when to invoke using "Use when..." phrases. Both fields have format constraints and best practices. Optional metadata fields provide author, version, and compatibility information for cross-platform agent discovery.

Final Iteration 5 (Same 80 words, maximum density):

Missing_Entities: "Claude Code"; "Cursor"; "GitHub Copilot"

Denser_Summary:
Required: `name` (1-64 chars, ^[a-z0-9]+(-[a-z0-9]+)*$) and `description` (1-1024 chars) with validation. Description includes "Use when..." + discovery keywords for auto-invocation. Optional: license (SPDX), compatibility, metadata (author, version, tags). Cross-platform: Claude Code, Cursor, GitHub Copilot. Name matches directory. Progressive disclosure via references/, assets/, scripts/ subdirectories.

Architecture Note

This skill implements the CoD paper methodology:

  • Skill = orchestrator (this file)
  • Agent = stateless worker (cod-iteration)
  • Script = deterministic utility (text_metrics.py)

Sub-agents cannot call other sub-agents. Only skills orchestrate via Task tool.

References

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Web3

Giza

DeFi yield management on Giza -- onboarding, portfolio reviews, withdrawals, rewards, optimization, and education. Connects to the Giza MCP server for autono...

Registry SourceRecently Updated
Web3

Crypto Exchange

Cryptocurrency exchange service for LightningEX API supporting multi-mode interaction - natural language chat, CLI commands, and web UI. Use when user wants...

Registry SourceRecently Updated
Web3

Crypto Price Pro

查询虚拟币实时价格和历史数据,支持生成趋势图、周报和邮件推送。当用户询问虚拟币价格、加密货币行情、需要币价分析报告或定时推送时使用此技能。

Registry SourceRecently Updated
00Profile unavailable
Web3

Binance Coach

AI-powered crypto trading behavior coach for Binance users. Analyzes live portfolio health, detects emotional trading patterns (FOMO, panic selling, overtrad...

Registry SourceRecently Updated
3241Profile unavailable