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ML and data service modules built on servicekit - config, artifacts, tasks, and ML workflows

Project description

Chapkit

CI codecov Python 3.13+ License: AGPL v3 Documentation

ML service modules built on servicekit - config, artifact, task, and ML workflows

Chapkit provides domain-specific modules for building machine learning services on top of servicekit's core framework. Includes artifact storage, task execution, configuration management, and ML train/predict workflows.

Features

  • Artifact Module: Hierarchical storage for models, data, and experiment tracking with parent-child relationships
  • Task Module: Reusable command templates for shell and Python task execution with parameter injection
  • Config Module: Key-value configuration with JSON data and Pydantic validation
  • ML Module: Train/predict workflows with artifact-based model storage and timing metadata
  • Config-Artifact Linking: Connect configurations to artifact hierarchies for experiment tracking

Installation

pip install chapkit

Chapkit automatically installs servicekit as a dependency.

CLI Usage

Quickly scaffold a new ML service project using uvx:

uvx chapkit init <project-name>

Example:

uvx chapkit init my-ml-service

Options:

  • --path <directory> - Target directory (default: current directory)
  • --monitoring - Include Prometheus and Grafana monitoring stack

This creates a ready-to-run ML service with configuration, artifacts, and ML endpoints pre-configured.

Quick Start

from chapkit import ArtifactHierarchy, BaseConfig
from chapkit.api import ServiceBuilder, ServiceInfo

class MyConfig(BaseConfig):
    model_name: str
    threshold: float

app = (
    ServiceBuilder(info=ServiceInfo(display_name="ML Service"))
    .with_health()
    .with_config(MyConfig)
    .with_artifacts(hierarchy=ArtifactHierarchy(name="ml", level_labels={0: "model"}))
    .with_jobs()
    .build()
)

Modules

Config

Key-value configuration storage with Pydantic schema validation:

from chapkit import BaseConfig, ConfigManager

class AppConfig(BaseConfig):
    api_url: str
    timeout: int = 30

# Automatic validation and CRUD endpoints
app.with_config(AppConfig)

Artifacts

Hierarchical storage for models, data, and experiment tracking:

from chapkit import ArtifactHierarchy, ArtifactManager, ArtifactIn

hierarchy = ArtifactHierarchy(
    name="ml_pipeline",
    level_labels={0: "experiment", 1: "model", 2: "evaluation"}
)

# Store pandas DataFrames, models, any Python object
artifact = await artifact_manager.save(
    ArtifactIn(data=trained_model, parent_id=experiment_id)
)

ML

Train and predict workflows with automatic model storage:

from chapkit.ml import FunctionalModelRunner
import pandas as pd

async def train_model(config: MyConfig, data: pd.DataFrame, geo=None):
    """Train your model - returns trained model object."""
    from sklearn.linear_model import LinearRegression
    model = LinearRegression()
    model.fit(data[["feature1", "feature2"]], data["target"])
    return model

async def predict(config: MyConfig, model, historic: pd.DataFrame, future: pd.DataFrame, geo=None):
    """Make predictions - returns DataFrame with predictions."""
    predictions = model.predict(future[["feature1", "feature2"]])
    future["predictions"] = predictions
    return future

# Wrap functions in runner
runner = FunctionalModelRunner(on_train=train_model, on_predict=predict)
app.with_ml(runner=runner)

Architecture

chapkit/
├── config/           # Configuration module
├── ml/               # ML train/predict workflows
└── api/              # ServiceBuilder with ML integration
    └── service_builder.py  # .with_config(), .with_ml()

Chapkit extends servicekit's BaseServiceBuilder with ML-specific features and uses servicekit's artifact and task modules.

Examples

See the examples/ directory:

  • quickstart.py - Complete ML service
  • config_artifact_api.py - Config with artifact linking
  • ml_basic.py, ml_class.py - ML workflow patterns

Documentation

See docs/ for comprehensive guides:

  • ML workflow guide

Testing

make test      # Run tests
make lint      # Run linter
make coverage  # Test coverage

License

AGPL-3.0-or-later

Related Projects

  • servicekit - Core framework foundation (FastAPI, SQLAlchemy, CRUD, auth, etc.) (docs)

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