Skip to main content

A declarative Python framework for orchestrating service logic with rhythm and precision

Project description

Cadence

PyPI version Python Versions License: MIT Tests codecov

A declarative Python framework for building service logic with explicit control flow.

Cadence lets you build complex service orchestration with a clean, readable API. Define your business logic as composable notes, handle errors gracefully, and scale with confidence.

Features

  • Declarative Cadence Definition - Build complex workflows with a fluent, chainable API
  • Parallel Execution - Run tasks concurrently with automatic context isolation and merging
  • Branching Logic - Conditional execution paths with clean syntax
  • Resilience Patterns - Built-in retry, timeout, fallback, and circuit breaker
  • Framework Integration - First-class support for FastAPI and Flask
  • Observability - Hooks for logging, metrics, and tracing
  • Type Safety - Full type hints and generics support
  • Zero Dependencies - Core library has no required dependencies

Installation

pip install cadence-orchestration

With optional integrations:

# FastAPI integration
pip install cadence-orchestration[fastapi]

# Flask integration
pip install cadence-orchestration[flask]

# OpenTelemetry tracing
pip install cadence-orchestration[opentelemetry]

# Prometheus metrics
pip install cadence-orchestration[prometheus]

# All integrations
pip install cadence-orchestration[all]

Quick Start

from dataclasses import dataclass
from cadence import Cadence, Score, note

@dataclass
class OrderScore(Score):
    order_id: str
    items: list = None
    total: float = 0.0
    status: str = "pending"

@note
async def fetch_items(score: OrderScore):
    # Fetch order items from database
    score.items = await db.get_items(score.order_id)

@note
async def calculate_total(score: OrderScore):
    score.total = sum(item.price for item in score.items)

@note
async def process_payment(score: OrderScore):
    await payment_service.charge(score.order_id, score.total)
    score.status = "paid"

# Build and run the cadence
cadence = (
    Cadence("checkout", OrderScore(order_id="ORD-123"))
    .then("fetch_items", fetch_items)
    .then("calculate_total", calculate_total)
    .then("process_payment", process_payment)
)

result = await cadence.run()
print(f"Order {result.order_id}: {result.status}")

Core Concepts

Sequential Notes

Execute notes one after another:

cadence = (
    Cadence("process", MyScore())
    .then("note1", do_first)
    .then("note2", do_second)
    .then("note3", do_third)
)

Parallel Execution

Run independent tasks concurrently with automatic score isolation:

cadence = (
    Cadence("enrich", UserScore(user_id="123"))
    .sync("fetch_data", [
        fetch_profile,
        fetch_preferences,
        fetch_history,
    ])
    .then("merge_results", combine_data)
)

Conditional Branching

Route execution based on runtime conditions:

cadence = (
    Cadence("order", OrderScore())
    .then("validate", validate_order)
    .split("route",
        condition=is_premium_customer,
        if_true=[priority_processing, express_shipping],
        if_false=[standard_processing, regular_shipping]
    )
    .then("confirm", send_confirmation)
)

Child Cadences

Compose cadences for complex orchestration:

payment_cadence = Cadence("payment", PaymentScore())...
shipping_cadence = Cadence("shipping", ShippingScore())...

checkout_cadence = (
    Cadence("checkout", CheckoutScore())
    .then("prepare", prepare_order)
    .child("process_payment", payment_cadence, merge_payment)
    .child("arrange_shipping", shipping_cadence, merge_shipping)
    .then("complete", finalize_order)
)

Resilience Patterns

Retry with Backoff

from cadence import retry

@retry(max_attempts=3, delay=1.0, backoff=2.0)
@note
async def call_external_api(score):
    response = await http_client.get(score.api_url)
    score.data = response.json()

Timeout

from cadence import timeout

@timeout(seconds=5.0)
@note
async def slow_operation(score):
    score.result = await long_running_task()

Fallback

from cadence import fallback

@fallback(default={"status": "unknown"})
@note
async def get_status(score):
    score.status = await status_service.get(score.id)

Circuit Breaker

from cadence import circuit_breaker

@circuit_breaker(failure_threshold=5, recovery_timeout=30.0)
@note
async def call_fragile_service(score):
    score.data = await fragile_service.fetch()

Framework Integration

FastAPI

from fastapi import FastAPI
from cadence.integrations.fastapi import CadenceRouter

app = FastAPI()
router = CadenceRouter()

@router.cadence("/orders/{order_id}", checkout_cadence)
async def create_order(order_id: str):
    return OrderScore(order_id=order_id)

app.include_router(router)

Flask

from flask import Flask
from cadence.integrations.flask import CadenceBlueprint

app = Flask(__name__)
bp = CadenceBlueprint("orders", __name__)

@bp.cadence_route("/orders/<order_id>", checkout_cadence)
def create_order(order_id):
    return OrderScore(order_id=order_id)

app.register_blueprint(bp)

Observability

Hooks System

from cadence import Cadence, LoggingHooks, TimingHooks

cadence = (
    Cadence("monitored", MyScore())
    .with_hooks(LoggingHooks())
    .with_hooks(TimingHooks())
    .then("note1", do_work)
)

Custom Hooks

from cadence import CadenceHooks

class MyHooks(CadenceHooks):
    async def before_note(self, note_name, score):
        print(f"Starting: {note_name}")

    async def after_note(self, note_name, score, duration, error=None):
        print(f"Completed: {note_name} in {duration:.2f}s")

    async def on_error(self, note_name, score, error):
        alert_team(f"Error in {note_name}: {error}")

Prometheus Metrics

from cadence.reporters import PrometheusReporter

reporter = PrometheusReporter(prefix="myapp")

cadence = (
    Cadence("tracked", MyScore())
    .with_reporter(reporter.report)
    .then("note1", do_work)
)

OpenTelemetry Tracing

from cadence.reporters import OpenTelemetryReporter

reporter = OpenTelemetryReporter(service_name="my-service")

cadence = (
    Cadence("traced", MyScore())
    .with_reporter(reporter.report)
    .then("note1", do_work)
)

Cadence Diagrams

Generate visual diagrams of your cadences:

from cadence import to_mermaid, to_dot

# Generate Mermaid diagram
print(to_mermaid(my_cadence))

# Generate DOT/Graphviz diagram
print(to_dot(my_cadence))

CLI

Cadence includes a CLI for scaffolding and utilities:

# Initialize a new project
cadence init my-project

# Generate a new cadence
cadence new cadence checkout

# Generate a new note with resilience decorators
cadence new note process-payment --retry 3 --timeout 30

# Generate cadence diagram
cadence diagram myapp.cadences:checkout_cadence --format mermaid

# Validate cadence definitions
cadence validate myapp.cadences

Score Management

Immutable Score

For functional-style cadences:

from cadence import ImmutableScore

@dataclass(frozen=True)
class Config(ImmutableScore):
    api_key: str
    timeout: int = 30

# Create new score with changes
new_config = config.with_field("timeout", 60)

Atomic Operations

Thread-safe score updates for parallel execution:

from cadence import Score, AtomicList, AtomicDict

@dataclass
class AggregatorScore(Score):
    results: AtomicList = None
    cache: AtomicDict = None

    def __post_init__(self):
        super().__post_init__()
        self.results = AtomicList()
        self.cache = AtomicDict()

# Safe concurrent updates
score.results.append(new_result)
score.cache["key"] = value

Error Handling

from cadence import CadenceError, NoteError

cadence = (
    Cadence("handled", MyScore())
    .then("risky", risky_operation)
    .on_error(handle_error, stop=False)  # Continue on error
    .then("cleanup", cleanup)
)

async def handle_error(score, error):
    if isinstance(error, NoteError):
        logger.error(f"Note {error.note_name} failed: {error}")
        score.errors.append(str(error))

Documentation

Contributing

We welcome contributions! Please see our Contributing Guide for details.

License

Cadence is released under the MIT License.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

cadence_orchestration-0.4.0.tar.gz (185.8 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

cadence_orchestration-0.4.0-py3-none-any.whl (51.9 kB view details)

Uploaded Python 3

File details

Details for the file cadence_orchestration-0.4.0.tar.gz.

File metadata

  • Download URL: cadence_orchestration-0.4.0.tar.gz
  • Upload date:
  • Size: 185.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.7

File hashes

Hashes for cadence_orchestration-0.4.0.tar.gz
Algorithm Hash digest
SHA256 c1bc2b8e3ee881cb7ebe5b2da246bc253c2eff75edd038047668738837b98f79
MD5 7ddc3ca19fd921d448b5fb010230cd5e
BLAKE2b-256 30d13c91fc03379c5b5ac2a7671a69ac1ce83708b26c8b8c5d0d6f803a6b3a02

See more details on using hashes here.

Provenance

The following attestation bundles were made for cadence_orchestration-0.4.0.tar.gz:

Publisher: publish.yml on mauhpr/cadence

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file cadence_orchestration-0.4.0-py3-none-any.whl.

File metadata

File hashes

Hashes for cadence_orchestration-0.4.0-py3-none-any.whl
Algorithm Hash digest
SHA256 d1a54eda05deb13132c95e4d757e0da14c54c203f6f6d2dfda03ee08750029f4
MD5 0f1e80053c14129396f8dc3c256c508e
BLAKE2b-256 bfd2fd4a9312a412c699f32650a5efdc722446586800078dc94b216c8bb7e197

See more details on using hashes here.

Provenance

The following attestation bundles were made for cadence_orchestration-0.4.0-py3-none-any.whl:

Publisher: publish.yml on mauhpr/cadence

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page