De7 Pareto Decomposition 8020

by hummbl-dev

skill

Apply DE7 Pareto Decomposition (80/20) to identify vital few drivers producing most impact versus trivial many.

Skill Details

Repository Files

1 file in this skill directory


name: de7-pareto-decomposition-8020 description: Apply DE7 Pareto Decomposition (80/20) to identify vital few drivers producing most impact versus trivial many. version: 1.0.0 metadata: {"moltbot":{"nix":{"plugin":"github:hummbl-dev/hummbl-agent?dir=skills/DE-decomposition/de7-pareto-decomposition-8020","systems":["aarch64-darwin","x86_64-linux"]}}}

DE7 Pareto Decomposition (80/20)

Apply the DE7 Pareto Decomposition (80/20) transformation to identify vital few drivers producing most impact versus trivial many.

What is DE7?

DE7 (Pareto Decomposition (80/20)) Identify vital few drivers producing most impact versus trivial many.

When to Use DE7

Ideal Situations

  • Break a complex problem into manageable parts
  • Separate concerns to isolate risk and effort
  • Create modular workstreams for parallel progress

Trigger Questions

  • "How can we use Pareto Decomposition (80/20) here?"
  • "What changes if we apply DE7 to this breaking down an implementation plan?"
  • "Which assumptions does DE7 help us surface?"

The DE7 Process

Step 1: Define the focus

// Using DE7 (Pareto Decomposition (80/20)) - Establish the focus
const focus = "Identify vital few drivers producing most impact versus trivial many";

Step 2: Apply the model

// Using DE7 (Pareto Decomposition (80/20)) - Apply the transformation
const output = applyModel("DE7", focus);

Step 3: Synthesize outcomes

// Using DE7 (Pareto Decomposition (80/20)) - Capture insights and decisions
const insights = summarize(output);

Practical Example

// Using DE7 (Pareto Decomposition (80/20)) - Example in a breaking down an implementation plan
const result = applyModel("DE7", "Identify vital few drivers producing most impact versus trivial many" );

Integration with Other Transformations

  • DE7 -> P1: Pair with P1 when sequencing matters.
  • DE7 -> CO5: Use CO5 to validate or stress-test.
  • DE7 -> IN2: Apply IN2 to compose the output.

Implementation Checklist

  • Identify the context that requires DE7
  • Apply the model using explicit DE7 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 DE7 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

{
  programs.moltbot.plugins = [
    { source = "github:hummbl-dev/hummbl-agent?dir=skills/DE-decomposition/de7-pareto-decomposition-8020"; }
  ];
}

Manual Installation

moltbot-registry install hummbl-agent/de7-pareto-decomposition-8020

Usage with Commands

/apply-transformation DE7 "Identify vital few drivers producing most impact versus trivial many"

Apply DE7 to create repeatable, explicit mental model reasoning.

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Skill Information

Category:Skill
Version:1.0.0
Last Updated:1/31/2026