u01549-constraint-compilation-for-civic-participation-platforms
Operate the "Constraint Compilation for civic participation platforms" capability in production for civic participation platforms workflows. Use when mission execution explicitly requires this capability and outcomes must be reproducible, policy-gated, and handoff-ready.
Best use case
u01549-constraint-compilation-for-civic-participation-platforms is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Operate the "Constraint Compilation for civic participation platforms" capability in production for civic participation platforms workflows. Use when mission execution explicitly requires this capability and outcomes must be reproducible, policy-gated, and handoff-ready.
Teams using u01549-constraint-compilation-for-civic-participation-platforms should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/u01549-constraint-compilation-for-civic-participation-platforms/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How u01549-constraint-compilation-for-civic-participation-platforms Compares
| Feature / Agent | u01549-constraint-compilation-for-civic-participation-platforms | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Operate the "Constraint Compilation for civic participation platforms" capability in production for civic participation platforms workflows. Use when mission execution explicitly requires this capability and outcomes must be reproducible, policy-gated, and handoff-ready.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Constraint Compilation for civic participation platforms ## Why This Skill Exists Use constraint compilation in civic participation platforms with emphasis on throughput, reliability, leverage, and execution speed. ## Step-by-Step Implementation Guide 1. Define measurable outcomes for Constraint Compilation for civic participation platforms, including baseline and target metrics for civic participation platforms. 2. Specify structured inputs/outputs for constraint compilation and validate schema contract edge cases. 3. Implement the core constraint compilation logic with deterministic scoring and reproducible execution traces. 4. Integrate orchestration policy, routing, approval gates, retries, and rollback for autonomous execution. 5. Run unit, integration, simulation, and regression suites for Constraint Compilation for civic participation platforms under hyper-productive autonomy conditions. 6. Roll out behind a feature flag, monitor telemetry, and refine thresholds using observed operational outcomes. ## Metadata - **Skill ID:** `1549` - **Skill Name:** `u01549-constraint-compilation-for-civic-participation-platforms` - **Domain:** `civic participation platforms` - **Domain Slug:** `civic-participation-platforms` - **Archetype:** `generalist-engine` - **Core Method:** `constraint compilation` - **Primary Artifact:** `constraint-compilation-artifact-civic-participation-platforms` - **Routing Tag:** `civic-participation-platforms:generalist-engine` - **Feature Flag:** `skill_01549_constraint-compilation` - **Release Cycles:** `2` ## Allowed Tools - `read`, `write`, `edit` for contract maintenance, runbook updates, and handoff documentation. - `exec`, `process` for deterministic execution, validation suites, and regression checks. - `web_search`, `web_fetch` only when fresh external evidence is required for claims/evidence inputs. - Use messaging or publishing tools only after policy approval gates are satisfied. ## Inputs (formatted) | name | type | required | source | |---|---|---|---| | (none) | - | - | - | ## Outputs (formatted) | name | type | guaranteed | consumer | |---|---|---|---| | (none) | - | - | - | ## Guidelines 1. Validate required inputs before execution and reject non-conforming payloads early. 2. Run `constraint compilation` with deterministic settings and trace capture enabled. 3. Produce `constraint-compilation-artifact-civic-participation-platforms` outputs in machine-readable form for orchestrator/operator use. 4. Keep routing aligned with `civic-participation-platforms:generalist-engine` and include approval context. 5. Tune thresholds incrementally based on observed KPI drift and incident learnings. ## Musts - Enforce approval gates: `policy-constraint-check`, `human-approval-router`. - Apply retry policy: maxAttempts=`4`, baseDelayMs=`750`, backoff=`exponential`. - Run validation suites before release: `unit`, `integration`, `simulation`, `regression-baseline`. - Fail closed when validation gates fail and execute rollback strategy `rollback-to-last-stable-baseline`. - Preserve reproducible evidence artifacts for audits and downstream handoff. ## Targets (day/week/month operating cadence) - **Day:** Validate new upstream signals, execute deterministic run, and hand off outputs for active decisions. - **Week:** Review KPI focus (`cycle time reduction`, `throughput gain`, `automation leverage in civic participation platforms`), failure trends, and approval/retry performance. - **Month:** Re-baseline deterministic expectations, confirm policy alignment, and refresh feature-flag/rollout posture. ## Common Actions 1. **Intake Check:** Confirm all required signals are present and schema-valid. 2. **Core Execution:** Run the capability pipeline and generate report + scorecard artifacts. 3. **Gate Review:** Evaluate validation and approval gates before publish-level handoff. 4. **Recovery:** Retry transient failures, then rollback to stable baseline on persistent errors. 5. **Handoff:** Send artifacts with risk/confidence metadata and downstream routing hints. ## External Tool Calls Needed - None required by default. - If external systems are introduced for a run, record the dependency, timeout budget, and retry behavior in execution notes. ## Validation & Handoff ### Validation Gates - (none declared) ### Validation Suites - `unit` - `integration` - `simulation` - `regression-baseline` ### Failure Handling - (none declared) ### Handoff Contract - **Produces:** (none declared) - **Consumes:** (none declared) - **Downstream Hint:** (none declared)
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