| name | suggest-optimizations |
| description | Identify performance optimization opportunities. Use when improving code efficiency. |
| mcp_fallback | none |
| category | analysis |
| tier | 2 |
Suggest Optimizations
Analyze code and profile data to recommend optimization strategies for improving performance and resource usage.
When to Use
- Performance-critical code paths identified in profiling
- Reducing execution time for hot functions
- Lowering memory usage
- Planning SIMD or vectorization strategies
Quick Reference
# Identify optimization opportunities
# 1. Profile to find bottlenecks
# 2. Analyze algorithmic complexity
# 3. Check for unnecessary operations
# 4. Evaluate data structure choices
# 5. Consider SIMD/vectorization
# Profile Python code
python3 -m cProfile -s cumulative script.py | head -20
Workflow
- Profile critical paths: Identify functions consuming most time/memory
- Analyze algorithms: Check time/space complexity, look for inefficiencies
- Examine data structures: Verify optimal data structure choices
- Consider caching: Identify repeated computations
- Propose optimizations: List specific changes with expected impact
Output Format
Optimization recommendation:
- Bottleneck identified (function, line number)
- Current performance (time/memory)
- Root cause analysis
- Recommended optimization technique
- Expected improvement (percentage or time estimate)
- Implementation difficulty (low/medium/high)
References
- See
benchmark-functionsskill for measuring improvements - See
profile-codeskill for detailed profiling - See CLAUDE.md > Mojo for SIMD optimization patterns