Agents 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.
install
source · Clone the upstream repo
git clone https://github.com/wshobson/agents
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/wshobson/agents "$T" && mkdir -p ~/.claude/skills && cp -r "$T/plugins/python-development/skills/python-performance-optimization" ~/.claude/skills/wshobson-agents-python-performance-optimization && rm -rf "$T"
manifest:
plugins/python-development/skills/python-performance-optimization/SKILL.mdsource content
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")
Profiling Tools
Pattern 1: cProfile - CPU Profiling
import cProfile import pstats from pstats import SortKey def slow_function(): """Function to profile.""" total = 0 for i in range(1000000): total += i return total def another_function(): """Another function.""" return [i**2 for i in range(100000)] def main(): """Main function to profile.""" result1 = slow_function() result2 = another_function() return result1, result2 # Profile the code if __name__ == "__main__": profiler = cProfile.Profile() profiler.enable() main() profiler.disable() # Print stats stats = pstats.Stats(profiler) stats.sort_stats(SortKey.CUMULATIVE) stats.print_stats(10) # Top 10 functions # Save to file for later analysis stats.dump_stats("profile_output.prof")
Command-line profiling:
# Profile a script python -m cProfile -o output.prof script.py # View results python -m pstats output.prof # In pstats: # sort cumtime # stats 10
Pattern 2: line_profiler - Line-by-Line Profiling
# Install: pip install line-profiler # Add @profile decorator (line_profiler provides this) @profile def process_data(data): """Process data with line profiling.""" result = [] for item in data: processed = item * 2 result.append(processed) return result # Run with: # kernprof -l -v script.py
Manual line profiling:
from line_profiler import LineProfiler def process_data(data): """Function to profile.""" result = [] for item in data: processed = item * 2 result.append(processed) return result if __name__ == "__main__": lp = LineProfiler() lp.add_function(process_data) data = list(range(100000)) lp_wrapper = lp(process_data) lp_wrapper(data) lp.print_stats()
Pattern 3: memory_profiler - Memory Usage
# Install: pip install memory-profiler from memory_profiler import profile @profile def memory_intensive(): """Function that uses lots of memory.""" # Create large list big_list = [i for i in range(1000000)] # Create large dict big_dict = {i: i**2 for i in range(100000)} # Process data result = sum(big_list) return result if __name__ == "__main__": memory_intensive() # Run with: # python -m memory_profiler script.py
Pattern 4: py-spy - Production Profiling
# Install: pip install py-spy # Profile a running Python process py-spy top --pid 12345 # Generate flamegraph py-spy record -o profile.svg --pid 12345 # Profile a script py-spy record -o profile.svg -- python script.py # Dump current call stack py-spy dump --pid 12345
Optimization Patterns
Pattern 5: List Comprehensions vs Loops
import timeit # Slow: Traditional loop def slow_squares(n): """Create list of squares using loop.""" result = [] for i in range(n): result.append(i**2) return result # Fast: List comprehension def fast_squares(n): """Create list of squares using comprehension.""" return [i**2 for i in range(n)] # Benchmark n = 100000 slow_time = timeit.timeit(lambda: slow_squares(n), number=100) fast_time = timeit.timeit(lambda: fast_squares(n), number=100) print(f"Loop: {slow_time:.4f}s") print(f"Comprehension: {fast_time:.4f}s") print(f"Speedup: {slow_time/fast_time:.2f}x") # Even faster for simple operations: map def faster_squares(n): """Use map for even better performance.""" return list(map(lambda x: x**2, range(n)))
Pattern 6: Generator Expressions for Memory
import sys def list_approach(): """Memory-intensive list.""" data = [i**2 for i in range(1000000)] return sum(data) def generator_approach(): """Memory-efficient generator.""" data = (i**2 for i in range(1000000)) return sum(data) # Memory comparison list_data = [i for i in range(1000000)] gen_data = (i for i in range(1000000)) print(f"List size: {sys.getsizeof(list_data)} bytes") print(f"Generator size: {sys.getsizeof(gen_data)} bytes") # Generators use constant memory regardless of size
Pattern 7: String Concatenation
import timeit def slow_concat(items): """Slow string concatenation.""" result = "" for item in items: result += str(item) return result def fast_concat(items): """Fast string concatenation with join.""" return "".join(str(item) for item in items) def faster_concat(items): """Even faster with list.""" parts = [str(item) for item in items] return "".join(parts) items = list(range(10000)) # Benchmark slow = timeit.timeit(lambda: slow_concat(items), number=100) fast = timeit.timeit(lambda: fast_concat(items), number=100) faster = timeit.timeit(lambda: faster_concat(items), number=100) print(f"Concatenation (+): {slow:.4f}s") print(f"Join (generator): {fast:.4f}s") print(f"Join (list): {faster:.4f}s")
Pattern 8: Dictionary Lookups vs List Searches
import timeit # Create test data size = 10000 items = list(range(size)) lookup_dict = {i: i for i in range(size)} def list_search(items, target): """O(n) search in list.""" return target in items def dict_search(lookup_dict, target): """O(1) search in dict.""" return target in lookup_dict target = size - 1 # Worst case for list # Benchmark list_time = timeit.timeit( lambda: list_search(items, target), number=1000 ) dict_time = timeit.timeit( lambda: dict_search(lookup_dict, target), number=1000 ) print(f"List search: {list_time:.6f}s") print(f"Dict search: {dict_time:.6f}s") print(f"Speedup: {list_time/dict_time:.0f}x")
Pattern 9: Local Variable Access
import timeit # Global variable (slow) GLOBAL_VALUE = 100 def use_global(): """Access global variable.""" total = 0 for i in range(10000): total += GLOBAL_VALUE return total def use_local(): """Use local variable.""" local_value = 100 total = 0 for i in range(10000): total += local_value return total # Local is faster global_time = timeit.timeit(use_global, number=1000) local_time = timeit.timeit(use_local, number=1000) print(f"Global access: {global_time:.4f}s") print(f"Local access: {local_time:.4f}s") print(f"Speedup: {global_time/local_time:.2f}x")
Pattern 10: Function Call Overhead
import timeit def calculate_inline(): """Inline calculation.""" total = 0 for i in range(10000): total += i * 2 + 1 return total def helper_function(x): """Helper function.""" return x * 2 + 1 def calculate_with_function(): """Calculation with function calls.""" total = 0 for i in range(10000): total += helper_function(i) return total # Inline is faster due to no call overhead inline_time = timeit.timeit(calculate_inline, number=1000) function_time = timeit.timeit(calculate_with_function, number=1000) print(f"Inline: {inline_time:.4f}s") print(f"Function calls: {function_time:.4f}s")
For advanced optimization techniques including NumPy vectorization, caching, memory management, parallelization, async I/O, database optimization, and benchmarking tools, see references/advanced-patterns.md
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