--- name: co2-chunking description: Apply CO2 Chunking to group related elements into meaningful units to reduce cognitive load. version: 1.0.0 metadata: {"moltbot":{"nix":{"plugin":"github:hummbl-dev/hummbl-agent?dir=skills/CO-composition/co2-chunking","systems":["aarch64-darwin","x86_64-linux"]}}} --- # CO2 Chunking Apply the CO2 Chunking transformation to group related elements into meaningful units to reduce cognitive load. ## What is CO2? **CO2 (Chunking)** Group related elements into meaningful units to reduce cognitive load. ## When to Use CO2 ### Ideal Situations - Assemble components into a coherent whole - Integrate multiple solutions into a unified approach - Design systems that depend on clear interfaces and seams ### Trigger Questions - "How can we use Chunking here?" - "What changes if we apply CO2 to this integrating two services?" - "Which assumptions does CO2 help us surface?" ## The CO2 Process ### Step 1: Define the focus ```typescript // Using CO2 (Chunking) - Establish the focus const focus = "Group related elements into meaningful units to reduce cognitive load"; ``` ### Step 2: Apply the model ```typescript // Using CO2 (Chunking) - Apply the transformation const output = applyModel("CO2", focus); ``` ### Step 3: Synthesize outcomes ```typescript // Using CO2 (Chunking) - Capture insights and decisions const insights = summarize(output); ``` ## Practical Example ```typescript // Using CO2 (Chunking) - Example in a integrating two services const result = applyModel("CO2", "Group related elements into meaningful units to reduce cognitive load" ); ``` ## Integration with Other Transformations - **CO2 -> DE3**: Pair with DE3 when sequencing matters. - **CO2 -> SY8**: Use SY8 to validate or stress-test. - **CO2 -> RE2**: Apply RE2 to compose the output. ## Implementation Checklist - [ ] Identify the context that requires CO2 - [ ] Apply the model using explicit CO2 references - [ ] Document assumptions and outputs - [ ] Confirm alignment with stakeholders or owners ## Common Pitfalls - Treating the model as a checklist instead of a lens - Skipping documentation of assumptions or rationale - Over-applying the model without validating impact ## Best Practices - Use explicit CO2 references in comments and docs - Keep the output focused and actionable - Combine with adjacent transformations when needed ## Measurement and Success - Clearer decisions and fewer unresolved assumptions - Faster alignment across stakeholders - Reusable artifacts for future iterations ## Installation and Usage ### Nix Installation ```nix { programs.moltbot.plugins = [ { source = "github:hummbl-dev/hummbl-agent?dir=skills/CO-composition/co2-chunking"; } ]; } ``` ### Manual Installation ```bash moltbot-registry install hummbl-agent/co2-chunking ``` ### Usage with Commands ```bash /apply-transformation CO2 "Group related elements into meaningful units to reduce cognitive load" ``` --- *Apply CO2 to create repeatable, explicit mental model reasoning.*