A framework for processing streaming data through CPU-intensive tasks while maintaining order and tracking latency
Project description
Async CPU-Intensive Task Pipeline
A framework for processing streaming data through CPU-intensive tasks while maintaining order and tracking latency.
Overview
Combines async I/O with threaded CPU processing:
- Async streams: Non-blocking input/output
- Pipeline parallelism: Each stage runs in its own thread
- Order preservation: Output maintains input sequence
- Latency tracking: Monitor end-to-end and per-stage performance
Workflow
sequenceDiagram
participant Input as Async Input Stream
participant Main as Main Thread<br/>(Asyncio Event Loop)
participant Q1 as Input Queue
participant T1 as Thread 1<br/>(Stage 1: Validate)
participant Q2 as Queue 1
participant T2 as Thread 2<br/>(Stage 2: Transform)
participant Q3 as Queue 2
participant T3 as Thread 3<br/>(Stage 3: Serialize)
participant Q4 as Output Queue
participant Output as Async Output Stream
Note over Main: Pipeline Parallelism - Multiple items processed simultaneously
Input->>Main: yield Item A
Main->>Q1: put Item A
Q1->>T1: get Item A
Input->>Main: yield Item B
Main->>Q1: put Item B
Q1->>T1: get Item B
par Item A flows through pipeline
T1->>Q2: put processed Item A
Q2->>T2: get Item A
T2->>Q3: put processed Item A
Q3->>T3: get Item A
T3->>Q4: put processed Item A
and Item B follows behind
T1->>Q2: put processed Item B
Q2->>T2: get Item B
T2->>Q3: put processed Item B
and Item C enters pipeline
Input->>Main: yield Item C
Main->>Q1: put Item C
Q1->>T1: get Item C
T1->>Q2: put processed Item C
end
Q4->>Main: get Item A (ordered)
Main->>Output: yield Item A
Q4->>Main: get Item B (ordered)
Main->>Output: yield Item B
Note over Main,Output: Output buffer ensures<br/>items maintain input order
The asyncio event loop handles I/O operations while each pipeline stage runs in its own thread for true CPU parallelism.
Quick Start
import asyncio
from async_task_pipeline import AsyncTaskPipeline
# Create pipeline
pipeline = AsyncTaskPipeline(max_queue_size=100)
# Add processing stages
pipeline.add_stage("validate", validate_function)
pipeline.add_stage("transform", transform_function)
pipeline.add_stage("serialize", serialize_function)
# Start and run
await pipeline.start()
# Process streams concurrently
await asyncio.gather(
pipeline.process_input_stream(your_input_stream()),
consume_output(pipeline.generate_output_stream())
)
await pipeline.stop()
Usage Patterns
Basic Processing Function
def cpu_intensive_task(data):
# Your CPU-heavy computation here
result = complex_computation(data)
return result
Input Stream
async def input_stream():
for item in data_source:
yield item
await asyncio.sleep(0) # Yield control
Output Consumer
async def consume_output(output_stream):
async for result in output_stream:
# Handle processed result
print(f"Processed: {result}")
Pipeline Management
# Clear pipeline state
pipeline.clear()
# Stop gracefully
await pipeline.stop()
# Get performance metrics
summary = pipeline.get_latency_summary()
Running the Example
python example.py --enable-timing
The example demonstrates a 4-stage pipeline processing 50 items with simulated CPU-intensive tasks.
Development
This project uses modern Python development tools managed through a Makefile and uv.
Quick Setup
# Install development dependencies and set up pre-commit hooks
make dev-setup
# Run all quality checks
make check
Available Commands
# Development setup
make install # Install the package
make install-dev # Install with development dependencies
make dev-setup # Complete development environment setup
# Code quality
make format # Format code with ruff
make lint # Lint code with ruff
make type-check # Run type checking with mypy
make test # Run tests with pytest
make test-cov # Run tests with coverage
make check # Run all quality checks
# Pre-commit
make pre-commit-install # Install pre-commit hooks
make pre-commit # Run pre-commit on all files
# Building and publishing
make build # Build the package
make publish-test # Publish to TestPyPI
make publish # Publish to PyPI
# Version management
make version-patch # Bump patch version
make version-minor # Bump minor version
make version-major # Bump major version
# Utilities
make clean # Clean up cache and build files
make watch-test # Run tests in watch mode
make help # Show all available commands
Code Quality Standards
This project enforces high code quality standards:
- Formatting:
ruff formatfor consistent code style - Linting:
ruff checkfor code quality and best practices - Type Checking:
mypyfor static type analysis - Testing:
pytestwith coverage reporting - Pre-commit hooks: Automated checks before each commit
- Security:
banditfor security vulnerability scanning
Publishing Workflow
-
Make your changes and ensure all tests pass:
make check -
Bump the version:
make version-patch # or version-minor/version-major
-
Build and publish:
make publish # or publish-test for TestPyPI
When to Use
- Streaming data with CPU-heavy processing
- Need to maintain input order in output
- Want pipeline parallelism (different stages processing different items)
- CPU processing is with libraries that release Python's GIL (NumPy, PyTorch, etc.)
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file async_task_pipeline-0.1.8.tar.gz.
File metadata
- Download URL: async_task_pipeline-0.1.8.tar.gz
- Upload date:
- Size: 38.1 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: uv/0.6.11
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
dae8e705acda3f07310527e73dc5c7db1b77885fb219e06ea6c662b146cc058f
|
|
| MD5 |
81aff32fad3a49e469b165d031f31a75
|
|
| BLAKE2b-256 |
65685ca0deeb1702f16a6a36855c1f8b2061ffc8ae2d6978f193954ac32b61f9
|
File details
Details for the file async_task_pipeline-0.1.8-py3-none-any.whl.
File metadata
- Download URL: async_task_pipeline-0.1.8-py3-none-any.whl
- Upload date:
- Size: 12.7 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: uv/0.6.11
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
ed3ef4cf22e62aa624896417cf647a12f5e5bdfd53f4f978303f6a2c5ca50683
|
|
| MD5 |
024fb37a7f8782ab41a55f0e79311cbd
|
|
| BLAKE2b-256 |
4d7facbb47dc8c2f98f4cfcada615089ed5e6a14e20a9ed3ad198be994240d9d
|