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Framework-agnostic AI agent library for building single and multi-agent systems

Project description

Agentify

Production-ready AI agent library built on the OpenAI SDK

Build and orchestrate AI agents—from simple assistants to complex multi-agent systems. Agentify targets the OpenAI-compatible Chat Completions interface, enabling seamless switching between providers (OpenAI, Azure, DeepSeek, Gemini, Anthropic, Llama, Local LLMs) without code changes. It also includes experimental native Codex support through ChatGPT OAuth.


Why Agentify?

Feature Benefit
Production-first Clear abstractions, explicit config, robust error handling
Multi-provider Switch providers with one line—no agent code changes
Orchestration primitives Uniform run()/arun() across agents, teams, pipelines, hierarchies
Async-native Non-blocking I/O, parallel tool execution, event-loop friendly
Pluggable memory In-memory, SQLite, Redis, Elasticsearch—same API
Local LLMs Support for LM Studio, Ollama and custom local servers
Codex provider Native Codex threads with Agentify memory, tools via runtime MCP, image input, structured output and streaming events

Key Features

  • Single agents & multi-agent patterns
    Agents with tools and memory • Supervisor–worker Teams • Sequential Pipelines • Hierarchical delegation • Dynamic routing

  • Memory system
    Pluggable backends with policies (TTL, message limits, pruning) • Memory isolation per conversation • Async-safe operations

  • Reasoning models
    Configurable thinking depth (reasoning_effort) • Chain-of-thought storage • Real-time reasoning logs

  • Tools
    @tool decorator with automatic JSON Schema • Type-annotated interface • Argument validation

  • Async & parallel execution
    Native arun() for async apps • run() bridge for sync apps • Parallel tool calls

  • Observability
    Callback hooks for logging, monitoring, debugging

  • Multimodal
    Vision/image support • Streaming responses


Installation

pip install agentify-core

Optional backends:

pip install agentify-core[redis]      # Redis memory store
pip install agentify-core[elastic]    # Elasticsearch store
pip install agentify-core[codex]      # Native Codex provider
pip install agentify-core[all]        # All optional dependencies

Quick Start

from agentify import BaseAgent, AgentConfig, MemoryService, MemoryAddress, tool
from agentify.memory.stores import InMemoryStore

@tool
def get_time() -> dict:
    """Returns the current time."""
    from datetime import datetime
    return {"time": datetime.now().strftime("%H:%M:%S")}

# Setup
memory = MemoryService(store=InMemoryStore())
addr = MemoryAddress(conversation_id="session_1")

agent = BaseAgent(
    config=AgentConfig(
        name="Assistant",
        system_prompt="You are a helpful assistant.",
        provider="provider",
        model_name="model",
        reasoning_effort="high",  # optional param:"low", "medium", "high"
        model_kwargs={"max_completion_tokens": 5000}, # Pass model-specific params
        verbose=True, # Controls logging
    ),
    memory=memory,
    memory_address=addr,
    tools=[get_time],
)

response = agent.run("What time is it?")
print(response)

# Async usage is also available:
# response = await agent.arun("What time is it?")

Native Codex Provider

Codex support is experimental and uses ChatGPT OAuth through the Codex CLI:

pip install agentify-core[codex]
codex login
codex login status

codex login opens the Codex CLI authentication flow. Choose ChatGPT login when you want to use the Codex models available to your ChatGPT account. If the login is successful, codex login status should report that you are logged in. Model availability and quota depend on your Codex CLI version and ChatGPT account.

Then use the same Agentify API:

agent = BaseAgent(
    config=AgentConfig(
        name="CodexAgent",
        system_prompt="You are a helpful assistant.",
        provider="codex",
        model_name="gpt-5.4",
    ),
    memory=memory,
    memory_address=addr,
    tools=[get_time],
)

response = agent.run("Use the tool and answer concisely.")

Agentify keeps memory as the source of truth and sends the current conversation state to Codex. Normal tools=[...] are exposed to Codex through an internal runtime MCP bridge, so users do not need to manually wrap tools for common use.

Supported Codex features include:

  • Agentify-managed memory with SQLite, in-memory, Redis or Elasticsearch stores.
  • Native Codex thread memory with client_config_override={"memory_mode": "codex_thread"} — recommended for interactive multi-turn assistants (~1.5–1.7x faster per turn), with optional thread_map_path to persist sessions across restarts.
  • Runtime MCP tools with logs and persisted tool-call history, isolated per session.
  • Typed, actionable errors (OAuth/login missing, CLI not found, model unsupported, usage limit) that stop useless retries.
  • stream=True using Codex turn events.
  • image_path=... multimodal input when supported by the installed Codex SDK.
  • Structured output with model_kwargs={"output_schema": ...} or OpenAI-style response_format.

For long-running apps, call agent.close() or await agent.aclose() to release provider resources.


Memory Backends

from agentify.memory.stores import InMemoryStore
from agentify.memory.stores.sqlite_store import SQLiteStore
from agentify.memory.stores.redis_store import RedisStore

# In-memory (default, for development)
store = InMemoryStore()

# SQLite (persistent, zero-config)
store = SQLiteStore(db_path="./agent.db")

# Redis (production, distributed)
store = RedisStore(url="redis://localhost:6379/0")

Composable Flows

All primitives share the same run()/arun() interface:

  • BaseAgent — Single agent with tools
  • Team — Supervisor routes to worker agents
  • SequentialPipeline — Output flows step-to-step
  • HierarchicalTeam — Tree structures for delegation

Nest freely: Teams of Pipelines, Pipelines of Teams, dynamic routing at runtime.


Links


License

MIT License

Author

Fabian Melchorfabianmp_98@hotmail.com

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