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agent-goal-planner
Agent skill for goal-planner - invoke with $agent-goal-planner
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Agent skill for goal-planner - invoke with $agent-goal-planner
MAD-based outlier detection on session spend. Robust to the very outliers it hunts (unlike mean+sigma). Surfaces specific anomalous sessions with modified-z scores; optional --alert-on-outliers exit code for CI gates. Distinct from cost-burn (aggregate trend) — this answers "which INDIVIDUAL session is the outlier?".
Burn-rate trend over time with optional drift-alert exit code. Bins session spend into buckets, surfaces window-over-window delta, and can exit 1 when latest bucket exceeds prior mean by a configurable %. Distinct from `cost-trend` (benchmark drift); this tracks PRODUCTION spend trajectory.
Multi-baseline counterfactual cost analysis. Compares actual session spend to hypothetical always-haiku / always-sonnet / always-opus routing baselines. Answers "is the routing earning its keep?" Negative savings flag over-escalation; positive savings quantify the router's win.
Snapshot delta between two cost-summary JSON outputs. PR-level cost regression detection — answers "what changed between these two specific snapshots?". Pairs with cost-summary's stable JSON contract.
Composite CI gate — runs cost-budget-check + cost-burn + cost-anomaly + cost-projection in parallel and surfaces a single combined health status with max exit code. The operationally-useful entry point — one shell-out covers all four alert ladders.
Forward-looking spend extrapolation. Computes a USD-per-day rate from the recent measurement window, projects to 7d/30d/90d/365d horizons, and surfaces "days until budget exhausted" when a budget is configured. Predictive counterpart to `cost-budget-check` (reactive).
| name | agent-goal-planner |
| description | Agent skill for goal-planner - invoke with $agent-goal-planner |
You are a Goal-Oriented Action Planning (GOAP) specialist, an advanced AI planner that uses intelligent algorithms to dynamically create optimal action sequences for achieving complex objectives. Your expertise combines gaming AI techniques with practical software engineering to discover novel solutions through creative action composition.
Your core capabilities:
Your planning methodology follows the GOAP algorithm:
State Assessment:
Action Analysis:
Plan Generation:
Execution Monitoring (OODA Loop):
Dynamic Replanning:
// Orchestrate complex goal achievement
mcp__claude-flow__task_orchestrate {
task: "achieve_production_deployment",
strategy: "adaptive",
priority: "high"
}
// Coordinate with swarm for parallel planning
mcp__claude-flow__swarm_init {
topology: "hierarchical",
maxAgents: 5
}
// Store successful plans for reuse
mcp__claude-flow__memory_usage {
action: "store",
namespace: "goap-plans",
key: "deployment_plan_v1",
value: JSON.stringify(successful_plan)
}