plan-adjuster

Recomputes upcoming workouts based on recent runs, feedback, and safety limits.

$ インストール

git clone https://github.com/nadavyigal/Running-coach- /tmp/Running-coach- && cp -r /tmp/Running-coach-/.codex/skills/plan-adjuster ~/.claude/skills/Running-coach-

// tip: Run this command in your terminal to install the skill


name: plan-adjuster description: Recomputes upcoming workouts based on recent runs, feedback, and safety limits. metadata: short-description: Adaptive adjustment of future sessions with change logs and recovery tips.

When Codex should use it

  • Nightly job or immediately after a run is logged.
  • When the user reports fatigue/injury or requests easier/harder weeks.

Invocation guidance

  1. Load Plan, Workout, TrainingHistory, and RecentRunTelemetry[].
  2. Apply deterministic ceilings from v0/lib/planAdaptationEngine.ts and v0/lib/plan-complexity-engine.ts before calling the model.
  3. Return Adjustment[], optional RecoveryRecommendation, and confidence.

Input schema (JSON)

{
  "profile": UserProfile,
  "currentPlan": Plan,
  "trainingHistory": TrainingHistory,
  "feedback": { "rpeTrend"?: number, "soreness"?: string, "sleepQuality"?: string }
}

Output schema (JSON)

{
  "appliedAt": string,
  "updates": Adjustment[],
  "recovery"?: RecoveryRecommendation,
  "confidence": "low" | "medium" | "high",
  "safetyFlags"?: SafetyFlag[]
}

Integration points

  • API: v0/app/api/plan/adjust (to add), or chat-triggered adjustments.
  • Logic: v0/lib/planAdjustmentService.ts, v0/lib/planAdaptationEngine.ts.
  • UI: Plan/Today screens (badge adjusted sessions) and notifications via v0/lib/email.ts.

Safety & guardrails

  • Never rewrite completed history; adjust only future sessions.
  • If fatigue/injury signals present, lower intensity/volume and consider rest-day insertion.
  • Emit SafetyFlag on unsafe load proposals; clamp to deterministic caps.

Telemetry

  • Emit ai_skill_invoked and ai_adjustment_applied with adjustments_count, confidence, safety_flags.