catopt-category-theoretic-c.../AGENTS.md

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Overview

  • This repository contains a minimal MVP implementation scaffold for CatOpt (Category-Theoretic Compositional Optimization).
  • It includes a tiny Python package as a placeholder and a basic test to verify the test harness works in CI.

Architecture

  • Language: Python (src/catopt_category_theoretic_compositional_)
  • Core ideas are stubbed to a simple additive function to demonstrate packaging, imports, and tests.

Testing and CI

  • Tests are written with pytest (tests/test_basic.py).
  • test.sh runs a wheel build via python -m build and executes pytest to validate the package compiles and tests pass.
  • test.sh must be executable in CI and root-level.

Commands

  • Local test: ./test.sh
  • Build metadata: pyproject.toml will be used by the build tooling.

Guidance for contributors

  • Do not change the MVP skeleton without explicit intent to expand functionality.
  • Ensure test.sh remains executable and tests cover basic import/build scenarios.
  • Update AGENTS.md as the architecture evolves.

New MVP scaffolds (current status):

  • Added lightweight DSL primitives (src/catopt_category_theoretic_compositional/dsl.py)
  • Added minimal contracts primitives (src/catopt_category_theoretic_compositional/contracts.py)
  • Added a tiny solver kernel (src/catopt_category_theoretic_compositional/solver.py)
  • Exposed new API in package init (LocalProblem, SharedVariables, PlanDelta, admm_update)

How to explore:

  • Import surface: from catopt_category_theoretic_compositional import LocalProblem, SharedVariables, PlanDelta, admm_update
  • Use admm_update(local, shared) as a tiny, deterministic update example.