plot-logic-pipeline

Systematically analyze scientific papers by mapping figures to discussions, identifying logical flow, and tracking evidence sources. Figures are the backbone of a paper's argument — this skill teaches agents to trace the logic chain from figure inventory through evidence classification to complete argument reconstruction.

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Install skill "plot-logic-pipeline" with this command: npx skills add plot-logic-pipeline

Plot-Logic-Pipeline

Systematically deconstruct scientific papers by following the figure-discussion logical backbone.

When to Use

  • Analyzing a research paper's argument structure
  • Reviewing manuscripts before submission
  • Understanding how figures support claims in technical papers
  • Mapping evidence sources (literature vs. new measurements)
  • Identifying logical gaps or unsupported claims

Core Principle

Figures are the bare bones of a paper's logic flow. Each figure corresponds to a discussion that either:

  • Sets up the next key finding (preparation)
  • States the key finding (conclusion)

Complete understanding requires analyzing every figure-discussion pair and tracking evidence sources.

Analysis Framework

Step 1: Figure Inventory

Create a complete inventory of all figures in the paper:

Figure 1: [Brief description]
Figure 2: [Brief description]
...
Figure N: [Brief description]

Step 2: Figure-Discussion Mapping

For each figure, identify its corresponding discussion section and analyze:

Figure X: [Description]
├── Location: [Section/page where discussed]
├── Discussion Type: [Setup / Statement]
├── Main Claim: [Key finding or point]
└── Evidence Source:
    ├── Previous Study: [Citation(s) if supported by literature]
    ├── This Paper: [Analysis method if new measurement/calculation]
    └── Support Level: [Strong / Partial / Contradictory / Missing]

Step 3: Logic Flow Reconstruction

Map how figures build upon each other:

Paper Logic Flow:
Figure 1 → Figure 2 → Figure 3 → ... → Conclusion
  ↓            ↓            ↓
[Setup]   [Key Finding 1]  [Key Finding 2]

Step 4: Evidence Assessment

Evaluate the strength of the paper's argument:

  • Are all major claims supported by figures?
  • Are evidence sources properly attributed?
  • Are there logical gaps between figures?
  • Do setup discussions adequately prepare for key findings?

Evidence Classification

Previous Study Support

  • Direct citation: Specific reference supporting the claim
  • Literature consensus: Multiple citations building consensus
  • Comparative reference: Contrasting with previous work

This Paper's Contributions

  • New experimental data: Novel measurements with method specified
  • Novel calculations: Computational work or modeling
  • Reanalysis: New interpretation of existing data

Combined Evidence

  • Validation: New data confirms previous studies
  • Extension: New data builds upon previous work
  • Contradiction: New data challenges previous findings

Analysis Templates

See TEMPLATES.md for detailed templates including:

  • Basic figure-discussion analysis
  • Complete paper analysis workflow
  • Materials science specific templates
  • Quality assurance checklist

Quality Checks

Before concluding analysis:

  • ✅ All figures mapped to discussions
  • ✅ Evidence sources identified for major claims
  • ✅ Logic flow clearly traced from introduction to conclusion
  • ✅ Setup vs. statement discussions distinguished
  • ✅ Contradictions or gaps noted and flagged

Common Pitfalls

  • Skipping "obvious" figures: Even simple schematics contribute to logic flow
  • Missing evidence attribution: Always identify if claims come from citations or new work
  • Ignoring setup discussions: These are crucial for understanding logical progression
  • Overlooking figure details: Axis labels, error bars, and annotations often contain key information
  • Conflating correlation with causation: Note when figures show correlation vs. when claims assert causation

Rules

  1. Every figure gets analyzed — no skipping, even if it seems straightforward
  2. Always classify evidence — distinguish previous work from new contributions
  3. Trace the logic chain — show how each figure builds on the previous one
  4. Flag gaps honestly — note missing evidence or weak logical connections
  5. Separate observation from interpretation — what the figure shows vs. what the authors claim

Source Transparency

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