cuopt-sandbox

por nvidia

Run cuOpt in the NemoClaw sandbox — probe/smoke gates, remote gRPC env, then vendored cuOpt skills.

npx skills add https://github.com/nvidia/cuopt-examples --skill cuopt-sandbox

cuOpt in the NemoClaw sandbox

Infrastructure for solving with cuOpt inside NemoClaw: probe/smoke gates, remote env vars, and handoff to vendored formulation/API skills.

When to use

  • Constructive planning from uploaded constraint data (schedule, assign, route, roster — any wording). See references/intent-and-triggers.md.
  • CSV upload + plan → optimization-from-data-orchestrator + references/activation.md.
  • ImportError / cudaErrorInsufficientDriver.

Mandatory order

Complete before any assignment output, feasibility verdict, or custom solver code:

StepActionReference
0Probe → remote env → smokereferences/remote-env-and-smoke.md
1Formulatevendored *-formulation skills
2Solve (one job, terminal status)references/long-running-jobs.md

Inspecting uploaded data for columns and constraints is fine; emit a completed plan only after smoke succeeds.

Quick reference

Imports (LP/MILP/QP):

from cuopt.linear_programming.problem import Problem, INTEGER, MINIMIZE
from cuopt.linear_programming.solver_settings import SolverSettings

Interfaces: LP/MILP/QP → gRPC :5001 + CUOPT_REMOTE_*; routing → REST :5000. See references/interfaces.md, references/routing-rest-only.md.

Reference index

TopicFile
Activation / skill orderreferences/activation.md
Intent / paraphrasesreferences/intent-and-triggers.md
Gates / common mistakesreferences/gates-and-first-actions.md
Env vars + smokereferences/remote-env-and-smoke.md
Python importsreferences/python-imports.md
gRPC vs RESTreferences/interfaces.md
Routing RESTreferences/routing-rest-only.md
Paths + probereferences/environment-and-networking.md
Long-running jobsreferences/long-running-jobs.md
Troubleshootingreferences/troubleshooting.md

Orchestration skills (local)

After gates: optimization-from-data-orchestratoroptimization-intent-routertabular-optimization-ingestioncuopt-model-mapper (and optimization-mode-router when replay/audit signals appear).

Vendored upstream skills

Installed under /sandbox/.openclaw/skills/ by install-skill: numerical-optimization-formulation, cuopt-numerical-optimization-api-python, routing-formulation, cuopt-routing-api-python, cuopt-server-api-python, cuopt-user-rules, etc.

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