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A deterministic, intent-based AI agent builder.

Project description

🤖 Pybotchi

A deterministic, intent-based AI agent builder with no restrictions—supports any framework and prioritizes human-reasoning approach.


🎯 Core Philosophy

Humans should handle the reasoning. AI should detect intent and translate natural language into processable data.

LLMs excel at intent detection and translation. Pybotchi leverages this strength while prioritizing the human way of declaring planning and reasoning through tool call chaining—where AI becomes the perfect interpreter between human intent and computational action.


⚡ Core Architecture

Nested Intent-Based Supervisor Agent Architecture with only 3 core classes:

  • Action - Describes the intent and execution logic
  • Context - Holds prompts, metadata, and execution state
  • LLM - LLM client instance holder

🚀 Quick Start

Setup LLM

from langchain_openai import ChatOpenAI
from pybotchi import LLM

LLM.add(base=ChatOpenAI(...))

Simple Agent

from pybotchi import Action, ActionReturn, Context

class Translation(Action):
    """Translate to specified language."""

    async def pre(self, context: Context) -> ActionReturn:
        message = await context.llm.ainvoke(context.prompts)
        await context.add_response(self, message.content)
        return ActionReturn.GO

Agent with Fields

class MathProblem(Action):
    """Solve math problems."""

    answer: str

    async def pre(self, context: Context) -> ActionReturn:
        await context.add_response(self, self.answer)
        return ActionReturn.END

Multi-Agent Declaration

class MultiAgent(Action):
    """AI Assistant for solving math problems and translation."""

    class SolveMath(MathProblem):
        pass

    class Translate(Translation):
        pass

Execution

import asyncio

async def test():
    context = Context(
        prompts=[
            {"role": "system", "content": "You're an AI that can solve math problems and translate requests."},
            {"role": "user", "content": "4 x 4 and explain in Filipino"}
        ],
    )
    action, result = await context.start(MultiAgent)
    print(context.prompts[-1]["content"])

asyncio.run(test())

Result: Ang 4 x 4 ay katumbas ng 16.

Paliwanag sa Filipino: Ang pag-multiply ng 4 sa 4 ay nangangahulugang ipinadadagdag mo ang bilang na 4 ng apat na beses (4 + 4 + 4 + 4), na nagreresulta sa sagot na 16.

Graph

from pybotchi import graph

async def print_mermaid_graph():
    print(await graph(MultiAgent))

Result:

flowchart TD
__main__.MultiAgent.Translate[__main__.MultiAgent.Translate]
__main__.MultiAgent[__main__.MultiAgent]
__main__.MultiAgent.SolveMath[__main__.MultiAgent.SolveMath]
__main__.MultiAgent --> __main__.MultiAgent.Translate
__main__.MultiAgent --> __main__.MultiAgent.SolveMath

MultiAgent Graph


🧩 Core Features

Everything is Overridable & Extendable

class CustomAgent(MultiAgent):
    SolveMath = None  # Remove action

    class NewAction(Action):  # Add new action
        pass

    class Translate(Translation):  # Override existing
        async def pre(self, context):
            # Custom translation logic
            pass

Sequential & Concurrent Execution

  • Sequential: Multiple agents execute in order
  • Concurrent: Parallel execution using threads or tasks
  • Iteration: Multiple executions via loops

MCP Integration

  • As Server: Mount agents to FastAPI as MCP endpoints
  • As Client: Connect to MCP servers and integrate tools
  • Tool Override: Customize or replace MCP tools

Flexible Lifecycle Control

  • Pre-Process: Setup and preparation
  • Children Selection: Custom intent detection logic
  • Children Execution: Sequential or concurrent processing
  • Fallback: Graceful handling when no intent matches
  • Post-Process: Response consolidation and cleanup

Action Lifecycle


🎨 Key Benefits

  • 🪶 Ultra-lightweight: Only 3 core classes to master
  • 🔧 Completely overridable: Every component can be customized
  • 🎯 Intent-focused: Leverages AI's natural language strengths
  • ⚡ Async-first: Built for real-world web service integration
  • 🔄 Deterministic: Predictable flows make debugging simple
  • 🌐 Framework-agnostic: Works with any LLM framework
  • 📊 Built-in tracking: Automatic usage monitoring and metrics
  • 🤝 Community-driven: Modular agents maintained by different teams

🌟 Advanced Capabilities

Nested Agent Architecture

class ComplexAgent(Action):
    class StoryTelling(Action):
        class HorrorStory(Action):
            pass
        class ComedyStory(Action):
            pass

    class JokeTelling(Action):
        pass

Dynamic Agent Composition

# Add children dynamically
ComplexAgent.add_child(NewAction)
ComplexAgent.StoryTelling.add_child(SciFiStory)

🚀 Why Choose Pybotchi?

Maximum flexibility, zero lock-in. Build agents that combine human intelligence with AI precision. Perfect for teams that need:

  • Modular, maintainable agent architectures
  • Framework flexibility and migration capabilities
  • Community-driven agent development
  • Enterprise-grade customization and control
  • Real-time interactive agent communication

Ready to build smarter agents? Start with the examples and join the community building the future of human-AI collaboration.


📚 Examples & Use Cases

Ready to dive deeper? Check out these practical examples:

🚀 Getting Started

  • tiny.py - Minimal implementation to get you started
  • full_spec.py - Complete feature demonstration

🔄 Flow Control

Concurrency

🌐 Real-World Applications

⚔️ Framework Comparison (Get Weather)

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