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The kernel layer for production AI agents - protocol-based, type-safe, zero framework lock-in

Project description

lionpride

PyPI version Python License CI codecov Code style: ruff

Production-ready primitives for multi-agent workflow orchestration.

⚠️ Alpha/Experimental - API unstable. For research and development use. Originated from lionagi v0.

Features

  • Model Agnostic - Built-in providers for OpenAI-compatible APIs, Anthropic, Gemini
  • Declarative Workflows - Report/Form system for multi-step agent pipelines
  • Async Native - Operation graph building, dependency-aware execution
  • Modular Architecture - Protocol-based composition, zero framework lock-in
  • 99%+ Test Coverage - Production-hardened with comprehensive test suites

Installation

pip install lionpride

Quick Start

import asyncio
from lionpride import Session, iModel
from lionpride.operations.operate import generate, GenerateParams

# Create model and session
model = iModel(provider="openai", model="gpt-4o-mini")
session = Session(default_generate_model=model)
branch = session.create_branch(name="main", resources={model.name})

async def main():
    # Simple text generation
    result = await generate(
        session, branch,
        params=GenerateParams(instruction="What is 2 + 2?", return_as="text"),
    )
    print(result)  # "4" or similar

asyncio.run(main())

Core Concepts

Session & Branch

Session orchestrates messages, services, and operations. Branch is a named conversation thread with capability-based access control.

from lionpride import Session, iModel

# Session with default model
model = iModel(provider="openai", model="gpt-4o-mini")
session = Session(default_generate_model=model)

# Branch with capability and resource restrictions
branch = session.create_branch(
    name="restricted",
    capabilities={"AnalysisModel"},  # Only these output types allowed
    resources={"gpt-4o-mini"},        # Only these services allowed
)

Operations

Operations are composable building blocks for agent workflows:

from pydantic import BaseModel
from lionpride.operations.operate import operate, OperateParams, GenerateParams

class Insights(BaseModel):
    summary: str
    score: float

# Branch must have capability for output field
branch = session.create_branch(capabilities={"insights"}, resources={model.name})

# Structured output with validation
params = OperateParams(
    generate=GenerateParams(
        instruction="Analyze this data",
        request_model=Insights,
    ),
    capabilities={"insights"},  # Explicit capability declaration
)

result = await operate(session, branch, params)
print(result.insights)  # Insights(summary="...", score=0.85)

Services

ServiceRegistry manages models and tools with O(1) name lookup:

from lionpride import Session, iModel, ServiceRegistry

# Register multiple models
registry = ServiceRegistry()
registry.register(iModel(provider="openai", model="gpt-4o", name="gpt4"))
registry.register(iModel(provider="anthropic", model="claude-3-5-sonnet", name="claude"))

session = Session(services=registry)
branch = session.create_branch(resources={"gpt4", "claude"})  # Access to both

Declarative Workflows

Report and Form enable multi-step agent pipelines with automatic dependency resolution. Model docstrings serve as agent instructions:

from pydantic import BaseModel
from lionpride.work import Report, flow_report

class Analysis(BaseModel):
    '''Analyze the topic and provide insights.
    Focus on actionable recommendations.'''
    summary: str
    recommendations: list[str]

class MyReport(Report):
    analysis: Analysis | None = None  # Schema attribute (docstring = instruction)

    assignment: str = "topic -> analysis"
    form_assignments: list[str] = ["topic -> analysis"]

report = MyReport()
report.initialize(topic="AI coding assistants")
result = await flow_report(session, report, branch=branch)

Architecture

lionpride/
├── core/           # Primitives: Element, Pile, Flow, Graph, Event
├── session/        # Session, Branch, Message management
├── services/       # iModel, Tool, ServiceRegistry, MCP integration
├── operations/     # operate, react, communicate, generate, parse
├── work/           # Declarative workflows: Report, Form, flow_report
├── rules/          # Validation rules and auto-correction
├── types/          # Spec, Operable, type system
└── ln/             # Utility functions

Documentation

Roadmap

  • Formal mathematical framework for agent composition
  • Rust core for performance-critical paths
  • Enhanced MCP (Model Context Protocol) support

License

Apache-2.0

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