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Convert narrative technical documents into grounded Mathematical Problem Specifications with variables, constraints, objectives, and uncertainty.

Install Skill

Shared

Installs to .agents/skills, used by Codex, Amp, Warp, Cursor, OpenCode, and more.

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Available across projects.

$npx skills-installer add @sickn33/antigravity-awesome-skills/doc2math --client shared
Project

Writes to .agents/skills.

$npx skills-installer add @sickn33/antigravity-awesome-skills/doc2math -p --client shared
Note: Review the skill instructions before using it.

SKILL.md

name doc2math
description Convert narrative technical documents into grounded Mathematical Problem Specifications with variables, constraints, objectives, and uncertainty.
risk safe
source community
date_added 2026-05-31

DOC2MATH — Document-to-Mathematics Problem Specification

When to Use This Skill

  • "Formalize this problem statement into math"
  • "Extract the mathematical structure from this research paper section"
  • "What variables, constraints, and objectives are in this spec?"
  • "Convert this word problem to a structured MPS"
  • "Find what's missing in this problem formulation"

Zero-Inference Protocol (Mandatory)

  1. Closed World — if it is not stated in the document, it does not exist in output
  2. Grounding Rule — every element must cite the exact source phrase ("evidence" field)
  3. No Silent Filling — unknown values use null; ambiguous types use "ambiguous"
  4. Inference Tagging — structural inferences tagged "inferred": true with "inference_basis"
  5. MISSING Markers — elements mentioned but insufficiently defined get "status": "MISSING" with "missing_reason"
  6. No Hallucinated Math — never introduce equations or values not in the source text

Limitations

  • Does not invent missing equations, domains, values, or assumptions that are absent from the source document.
  • Requires enough source text to cite every extracted element; sparse prompts should be returned with explicit missing-information markers.
  • Produces a formal specification, not a solved optimization model or proof.

How It Works

Step 1 — Receive Document

Accept the document text, research excerpt, problem description, or specification as input.

Step 2 — Classify

Identify problem_class: optimization | classification | simulation | proof | estimation | other

Step 3 — Extract MPS Components

Variablesid, name, symbol, type, domain, units, role, evidence, inferred, status

Operatorsid, name, symbol, arity, acts_on, produces, evidence, inferred

Constraintsid, type, expression, variables_involved, evidence, hardness, inferred, status

Objectivesid, direction (minimize/maximize/satisfy/find/prove), expression, variables_involved, evidence, inferred

Uncertaintyid, type (stochastic/epistemic/measurement/model/none_stated), affects, characterization, evidence, status

Step 4 — Surface Missing Information

Identify what the document implies but doesn't state: missing_information[] with element, needed_for, missing_reason.

Step 5 — Validate and Score

validation_flags:

  • has_complete_objectives: true/false/partial
  • has_bounded_variables: true/false/partial
  • has_evidence_for_all_elements: true/false/partial
  • inference_count: integer
  • missing_count: integer
  • overall_formalizability: HIGH/MEDIUM/LOW

Output Format

Produce the complete MPS as a JSON object:

{
  "mps_version": "1.0",
  "source_title": "...",
  "problem_class": "optimization",
  "variables": [...],
  "operators": [...],
  "constraints": [...],
  "objectives": [...],
  "uncertainty": [...],
  "missing_information": [...],
  "validation_flags": {
    "overall_formalizability": "HIGH"
  }
}

Best Practices

  • ✅ Apply all 6 Zero-Inference Protocol rules before outputting any element
  • ✅ Surface MISSING markers rather than silently inferring — incomplete formalization is valid output
  • ✅ Cite the exact source phrase in every evidence field
  • ❌ Never introduce mathematical relationships not grounded in the source text

Additional Resources