python-performance
Included with Lifetime
$97 forever
Profiles Python code for performance bottlenecks and memory issues. Use when Python code is slow or when profiling for optimization before a release.
performancepythonperformanceprofilingoptimizationcProfilememory
What this skill does
# Python Performance Optimization
Profiling and optimization patterns for Python code.
## Table of Contents
1. [Quick Start](#quick-start)
## Quick Start
```python
# Basic timing
import timeit
time = timeit.timeit("sum(range(1000000))", number=100)
print(f"Average: {time/100:.6f}s")
```
**Verification:** Run the command with `--help` flag to verify availability.
## When To Use
- Identifying performance bottlenecks
- Reducing application latency
- Optimizing CPU-intensive operations
- Reducing memory consumption
- Profiling production applications
- Improving database query performance
## When NOT To Use
- Async concurrency - use python-async
instead
- CPU/GPU system monitoring - use conservation:cpu-gpu-performance
- Async concurrency - use python-async
instead
- CPU/GPU system monitoring - use conservation:cpu-gpu-performance
## Modules
This skill is organized into focused modules for progressive loading:
### [profiling-tools](modules/profiling-tools.md)
CPU profiling with cProfile, line profiling, memory profiling, and production profiling with py-spy. Essential for identifying where your code spends time and memory.
### [optimization-patterns](modules/optimization-patterns.md)
Ten proven optimization patterns including list comprehensions, generators, caching, string concatenation, data structures, NumPy, multiprocessing, and database operations.
### [memory-management](modules/memory-management.md)
Memory optimization techniques including leak tracking with tracemalloc and weak references for caches. Depends on profiling-tools.
### [benchmarking-tools](modules/benchmarking-tools.md)
Benchmarking tools including custom decorators and pytest-benchmark for verifying performance improvements.
### [best-practices](modules/best-practices.md)
Best practices, common pitfalls, and exit criteria for performance optimization work. Synthesizes guidance from profiling-tools and optimization-patterns.
## Exit Criteria
- Profiled code to identify bottlenecks
- Applied appropriate optimization patterns
- Verified improvements with benchmarks
- Memory usage acceptable
- No performance regressions
Related in performance
performance-management
IncludedMaster performance management, goal-setting, OKRs, reviews, feedback, and metrics for engineering teams
performancescripts
when-profiling-performance-use-performance-profiler
IncludedComprehensive performance profiling, bottleneck detection, and optimization system
performance
when-analyzing-performance-use-performance-analysis
IncludedComprehensive performance analysis, bottleneck detection, and optimization recommendations for Claude Flow swarms
performance