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A framework for building composable, observable, and maintainable agent workflows

Project description

Agent Orchestration Library

PyPI version Python 3.10+ License: MIT

A production-ready Python framework for building composable, observable, and maintainable AI agent workflows. Built with type safety, dependency injection, and event-driven architecture at its core.

Why Agent Orchestration Library?

Modern AI applications require orchestrating multiple LLM agents with:

  • Complex Dependencies: Managing shared services (databases, APIs, LLM clients)
  • Real-Time Observability: Tracking progress, token usage, and errors across agent chains
  • Reliability: Retry logic, fallback strategies, and error handling
  • Type Safety: Preventing runtime errors through Pydantic validation
  • Testability: Isolated, mockable components for unit testing

This library provides battle-tested patterns extracted from production agent systems, eliminating the need to rebuild orchestration infrastructure for every project.

Core Features

1. ExecutionContext - Dependency Injection

Manage shared state and services across agent execution with type-safe dependency injection.

from agent_lib import ExecutionContext

# Register services
context = ExecutionContext()
context.register_singleton("database", db_connection)
context.register_singleton("llm_client", openai_client)

# Access in agents
db = context.get("database")

2. AgentBlock - Validated Agent Execution

Base class for agents with automatic input/output validation, error handling, and lifecycle hooks.

from agent_lib import AgentBlock
from pydantic import BaseModel

class MyInput(BaseModel):
    text: str

class MyOutput(BaseModel):
    result: str

class MyAgent(AgentBlock[MyInput, MyOutput]):
    def get_input_model(self):
        return MyInput

    def get_output_model(self):
        return MyOutput

    async def process(self, input_data: MyInput) -> MyOutput:
        # Your agent logic here
        return MyOutput(result=f"Processed: {input_data.text}")

3. EventEmitter - Event-Driven Notifications

Pub/sub pattern for progress tracking, error handling, and real-time updates.

from agent_lib import EventEmitter

emitter = EventEmitter()

# Subscribe to events
def on_progress(event):
    print(f"Progress: {event['progress']}% - {event['message']}")

emitter.subscribe("progress", on_progress)

# Emit from agents
await self.emit_progress("parsing", 0.5, "Parsing document...")

4. Flow - Multi-Agent Orchestration

Define complex workflows with sequential, parallel, and conditional execution.

from agent_lib import Flow

flow = Flow("document_processing", context, emitter)

# Sequential execution
flow.add_agent(pdf_extraction_agent)
flow.add_agent(text_parsing_agent)

# Execute the flow
result = await flow.execute_sequential(initial_input)

5. RetryStrategy - Resilient Execution

Configurable retry logic with exponential backoff and LLM fallback chains.

from agent_lib.retry import ExponentialBackoffRetry

retry_strategy = ExponentialBackoffRetry(
    max_attempts=3,
    base_delay=1.0,
    max_delay=60.0
)

result = await retry_strategy.execute_with_retry(
    agent.execute,
    input_data
)

Installation

pip install agent-orchestration-lib

Requirements

  • Python 3.10 or higher
  • Pydantic 2.0+

LLM Integrations (Optional)

The library includes optional integrations with major LLM providers:

# Install specific integrations
pip install agent-orchestration-lib[openai]      # OpenAI GPT models
pip install agent-orchestration-lib[anthropic]   # Anthropic Claude models
pip install agent-orchestration-lib[gemini]      # Google Gemini models

# Or install all LLM integrations at once
pip install agent-orchestration-lib[all-llm]

Supported Providers:

  • OpenAI: GPT-4, GPT-4-turbo, GPT-3.5-turbo with automatic token counting and cost estimation
  • Anthropic: Claude 3 Opus, Sonnet, and Haiku with 200K context window support
  • Google Gemini: Gemini Pro and Gemini 1.5 (Flash/Pro) with up to 1M token context

Quick Start

Here's a complete example building a document analysis workflow:

import asyncio
from agent_lib import ExecutionContext, EventEmitter, AgentBlock, Flow
from pydantic import BaseModel

# 1. Define data models
class DocumentInput(BaseModel):
    file_path: str

class DocumentText(BaseModel):
    text: str
    page_count: int

class AnalysisOutput(BaseModel):
    summary: str
    key_points: list[str]

# 2. Create agents
class PDFExtractionAgent(AgentBlock[DocumentInput, DocumentText]):
    def get_input_model(self):
        return DocumentInput

    def get_output_model(self):
        return DocumentText

    async def process(self, input_data: DocumentInput) -> DocumentText:
        # Extract text from PDF
        await self.emit_progress("extraction", 0.5, "Extracting text...")
        return DocumentText(text="Sample text", page_count=5)

class AnalysisAgent(AgentBlock[DocumentText, AnalysisOutput]):
    def get_input_model(self):
        return DocumentText

    def get_output_model(self):
        return AnalysisOutput

    async def process(self, input_data: DocumentText) -> AnalysisOutput:
        # Analyze the text
        llm_client = self.context.get("llm_client")
        await self.emit_progress("analysis", 0.75, "Analyzing document...")
        return AnalysisOutput(
            summary="Document summary",
            key_points=["Point 1", "Point 2"]
        )

# 3. Build and execute workflow
async def main():
    # Setup
    context = ExecutionContext()
    context.register_singleton("llm_client", your_llm_client)

    emitter = EventEmitter()
    emitter.subscribe("progress", lambda e: print(f"Progress: {e.message}"))

    # Create flow
    flow = Flow("document_analysis", context, emitter)
    flow.add_agent(PDFExtractionAgent("pdf_extractor", context, emitter))
    flow.add_agent(AnalysisAgent("analyzer", context, emitter))

    # Execute
    result = await flow.execute_sequential(
        DocumentInput(file_path="/path/to/document.pdf")
    )
    print(f"Summary: {result.summary}")

asyncio.run(main())

Architecture & Design Patterns

This library implements production-proven patterns from real-world AI agent systems:

Execution Sandwich Pattern

Every agent execution is wrapped with validation, tracking, and cleanup:

  1. Validate input with Pydantic
  2. Emit start event
  3. Execute agent logic
  4. Validate output
  5. Emit completion/error events
  6. Clean up resources

Template Method Pattern

AgentBlock defines the execution skeleton; subclasses provide specifics:

  • get_input_model() - Define expected input structure
  • get_output_model() - Define output structure
  • process() - Implement core agent logic

Dependency Injection

ExecutionContext provides explicit dependency management:

  • No global state
  • Easy mocking for tests
  • Service lifecycle control
  • Parallel-safe child contexts

Event-Driven Architecture

EventEmitter decouples notification logic:

  • Multiple subscribers per event
  • Pluggable adapters (Database, WebSocket, Logging)
  • Type-safe event models

Strategy Pattern

RetryStrategy provides pluggable retry logic:

  • Exponential backoff
  • LLM fallback chains
  • Custom retry conditions

Use Cases

  • Document Processing Pipelines: Extract → Parse → Analyze workflows
  • Multi-Agent Research: Parallel information gathering with aggregation
  • Customer Support Automation: Triage → Route → Respond chains
  • Data Enrichment: Sequential API calls with validation
  • Content Generation: Planning → Drafting → Review → Publishing

Documentation

Development

# Clone repository
git clone https://github.com/GittieLabs/agent-orchestration-lib.git
cd agent-orchestration-lib

# Install development dependencies
pip install -e ".[dev]"

# Run tests
pytest

# Type checking
mypy src/agent_lib

# Code formatting
black src tests
ruff check src tests --fix

Running Tests

# Run all tests
pytest

# Run with coverage
pytest --cov=agent_lib --cov-report=html

# Run specific test file
pytest tests/unit/test_agent_block.py

Design Principles

  1. Type Safety First: Pydantic models for all inputs/outputs
  2. Explicit Dependencies: No hidden globals or magical imports
  3. Event-Driven: Observable through event emission
  4. Composability: Agents as building blocks for complex workflows
  5. Testability: Each component independently testable
  6. Production-Ready: Patterns extracted from real systems

LLM Integration Examples

OpenAI GPT Models

import os
from agent_lib import ExecutionContext, EventEmitter
from agent_lib.integrations.openai import OpenAIAgent, create_simple_prompt

context = ExecutionContext()
emitter = EventEmitter()

agent = OpenAIAgent(
    name="gpt4",
    api_key=os.getenv("OPENAI_API_KEY"),
    context=context,
    emitter=emitter
)

prompt = create_simple_prompt("What is Python?", model="gpt-4")
result = await agent.execute(prompt)

print(result.content)
print(f"Tokens: {result.total_tokens}, Cost: ${result.cost_usd:.4f}")

Anthropic Claude Models

from agent_lib.integrations.anthropic import AnthropicAgent, create_system_prompt

agent = AnthropicAgent(
    name="claude",
    api_key=os.getenv("ANTHROPIC_API_KEY"),
    context=context,
    emitter=emitter
)

prompt = create_system_prompt(
    system="You are a helpful coding assistant",
    user="How do I reverse a list in Python?",
    model="claude-3-sonnet-20240229",
    max_tokens=1024
)

result = await agent.execute(prompt)
print(result.content)

Google Gemini Models

from agent_lib.integrations.gemini import GeminiAgent, create_simple_prompt

agent = GeminiAgent(
    name="gemini",
    api_key=os.getenv("GOOGLE_API_KEY"),
    context=context,
    emitter=emitter
)

prompt = create_simple_prompt("Explain async/await in Python", model="gemini-pro")
result = await agent.execute(prompt)
print(result.content)

Multi-Provider Fallback

from agent_lib.retry import LLMFallbackRetry

# Automatic fallback between providers
fallback = LLMFallbackRetry(
    models=["gpt-4", "claude-3-sonnet-20240229", "gemini-pro"],
    max_retries=2
)

agent.retry_strategy = fallback
result = await agent.execute(prompt)  # Tries GPT-4, falls back to Claude, then Gemini

See the examples/ directory for more comprehensive examples including:

  • Cost tracking and budget management
  • Side-by-side provider comparison
  • Multi-turn conversations
  • And more!

Project Status

Version: 0.3.0 (Alpha)

This library is in active development. The API is stabilizing but may change in minor releases. Feedback and contributions are welcome!

Roadmap

  • Core components (ExecutionContext, AgentBlock, EventEmitter, Flow)
  • Retry strategies (Exponential backoff, Fixed delay, Linear backoff)
  • Event system with adapters
  • LLM fallback retry strategy
  • OpenAI integration (GPT-4, GPT-3.5-turbo)
  • Anthropic integration (Claude 3 models)
  • Google Gemini integration
  • Conditional logic (ConditionalStep)
  • Sub-flow composition (FlowAdapter)
  • Webhook event adapter
  • Metrics collection adapter
  • Advanced flow patterns (loops, fan-out/fan-in)
  • Distributed tracing integration
  • 1.0 stable release

Contributing

We welcome contributions! Please see CONTRIBUTING.md for:

  • Code of conduct
  • Development setup
  • Pull request process
  • Coding standards

License

MIT License - see LICENSE for details.

Copyright (c) 2025 GittieLabs, LLC

Support

Acknowledgments

This library was built from patterns extracted during the development of production AI agent systems. Special thanks to the teams who battle-tested these approaches in real-world applications.

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