--- description: > Suggest concrete optimizations for Claude Code usage based on historical session data. Covers cost reduction, speed improvement, error prevention, and workflow efficiency. Use for data-driven optimization planning. --- # Optimization Suggest Generate data-driven optimization recommendations for Claude Code usage. ## Input The user provides: **$ARGUMENTS** This may be: - "all" or empty (default: comprehensive optimization scan) - "cost" for cost reduction focus - "speed" for performance/speed focus - "quality" for error reduction focus - "efficiency" for workflow efficiency focus ## Procedure 1. **Gather optimization data** from `http://localhost:4820`: - `GET /api/sessions?limit=200` — session history - `GET /api/analytics` — tool and token analytics - `GET /api/pricing/cost` — cost data - `GET /api/pricing` — pricing rules for model comparison - Sample event streams for behavioral analysis 2. **Analyze optimization opportunities**: ### 💰 Cost Optimization - **Model downgrade opportunities**: Tasks completed with expensive models that could use cheaper ones - Compare success rates per model per task type - Calculate savings from model substitution - **Cache optimization**: Sessions with low cache hit rates - Identify sessions that could benefit from better prompt caching - **Early termination**: Sessions that ran longer than needed - Detect sessions where useful work completed well before session end - **Compaction reduction**: Sessions hitting context limits - Suggest breaking large tasks into smaller sessions ### ⚡ Speed Optimization - **Tool selection**: Faster alternatives for commonly-used tool patterns - **Subagent parallelization**: Tasks that could run in parallel - **Session planning**: Better upfront context to reduce back-and-forth - **Preemptive context loading**: Frequently needed files/context ### 🛡 Quality Optimization - **Error prevention**: Common error patterns with preventive measures - **Tool reliability**: Tools with high failure rates and alternatives - **Validation gaps**: Sessions lacking verification steps - **Recovery strategies**: Better error handling patterns ### 🔄 Workflow Optimization - **Session sizing**: Optimal session scope based on historical success - **Task decomposition**: Complex sessions that should be split - **Automation candidates**: Repetitive workflows to automate - **Knowledge reuse**: Patterns where previous session context could help 3. **Quantify each recommendation**: - Estimated impact (cost savings $, time savings %, error reduction %) - Implementation effort (low/medium/high) - Confidence level based on data available - Priority score = Impact × Confidence / Effort ## Output Format Present as a prioritized optimization plan: | # | Recommendation | Category | Impact | Effort | Priority | |---|---------------|----------|--------|--------|----------| | 1 | Specific action | 💰/⚡/🛡/🔄 | High | Low | ★★★★★ | | 2 | Specific action | ... | ... | ... | ★★★★☆ | For the top 5 recommendations, include: - Detailed explanation with supporting data - Step-by-step implementation guide - Expected before/after metrics - How to measure success