python-performance-optimization
Profile and optimize Python code using cProfile, memory profilers, and performance best practices. Use when debugging slow Python code, optimizing bottlenecks, or improving application performance.
How do I install this agent skill?
npx skills add https://github.com/wshobson/agents --skill python-performance-optimizationIs this agent skill safe to install?
- Gen Agent Trust Hubpass
The skill is a comprehensive technical guide for profiling and optimizing Python applications. It provides standard code patterns and demonstrates the use of well-known, reputable tools and libraries for performance analysis. No security issues or malicious patterns were detected.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
- Runlayerpass
1 file scanned · No issues
- ZeroLeakspass
Score: 93/100 · 2 sections analyzed
What does this agent skill do?
Python Performance Optimization
Comprehensive guide to profiling, analyzing, and optimizing Python code for better performance, including CPU profiling, memory optimization, and implementation best practices.
When to Use This Skill
- Identifying performance bottlenecks in Python applications
- Reducing application latency and response times
- Optimizing CPU-intensive operations
- Reducing memory consumption and memory leaks
- Improving database query performance
- Optimizing I/O operations
- Speeding up data processing pipelines
- Implementing high-performance algorithms
- Profiling production applications
Core Concepts
1. Profiling Types
- CPU Profiling: Identify time-consuming functions
- Memory Profiling: Track memory allocation and leaks
- Line Profiling: Profile at line-by-line granularity
- Call Graph: Visualize function call relationships
2. Performance Metrics
- Execution Time: How long operations take
- Memory Usage: Peak and average memory consumption
- CPU Utilization: Processor usage patterns
- I/O Wait: Time spent on I/O operations
3. Optimization Strategies
- Algorithmic: Better algorithms and data structures
- Implementation: More efficient code patterns
- Parallelization: Multi-threading/processing
- Caching: Avoid redundant computation
- Native Extensions: C/Rust for critical paths
Quick Start
Basic Timing
import time
def measure_time():
"""Simple timing measurement."""
start = time.time()
# Your code here
result = sum(range(1000000))
elapsed = time.time() - start
print(f"Execution time: {elapsed:.4f} seconds")
return result
# Better: use timeit for accurate measurements
import timeit
execution_time = timeit.timeit(
"sum(range(1000000))",
number=100
)
print(f"Average time: {execution_time/100:.6f} seconds")
Detailed patterns and worked examples
Detailed pattern documentation lives in references/details.md. Read that file when the navigation tier above is insufficient.
Best Practices
- Profile before optimizing - Measure to find real bottlenecks
- Focus on hot paths - Optimize code that runs most frequently
- Use appropriate data structures - Dict for lookups, set for membership
- Avoid premature optimization - Clarity first, then optimize
- Use built-in functions - They're implemented in C
- Cache expensive computations - Use lru_cache
- Batch I/O operations - Reduce system calls
- Use generators for large datasets
- Consider NumPy for numerical operations
- Profile production code - Use py-spy for live systems
Common Pitfalls
- Optimizing without profiling
- Using global variables unnecessarily
- Not using appropriate data structures
- Creating unnecessary copies of data
- Not using connection pooling for databases
- Ignoring algorithmic complexity
- Over-optimizing rare code paths
- Not considering memory usage
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/wshobson/agents/python-performance-optimization">View python-performance-optimization on skillZs</a>