A flexible AI agent library with tool support
Project description
Fury
A flexible and powerful AI agent library for Python, designed to build agents with tool support, multimodal capabilities, and streaming responses.
Features
- Easy-to-use Agent API: Simple interface to create agents with custom system prompts and models.
- Tool Support: Define and register custom tools (functions) that the agent can execute.
- Parallel Tool Execution: Built-in support for running multiple independent tools in parallel.
- Multimodal Capabilities: Support for image and voice inputs (using Whisper for STT).
- Optional Text-to-Speech (TTS): Generate audio with NeuTTS via
Agent.speak(). - Streaming Responses: Real-time streaming of agent responses and reasoning.
- History Manager: Optional history manager with auto-compaction for long conversations.
- OpenAI Compatible: Built on top of
AsyncOpenAI, making it compatible with OpenAI models and local inference servers (like vLLM, Ollama, etc.).
Roadmap
- E2E voice agent example.
Installation
Install with uv:
uv add fury-sdk
Install with pip:
pip install fury-sdk
Examples
If you also want example dependencies:
uv add "git+https://github.com/huwprosser/fury.git[examples]"
TTS Extras
Install the optional text-to-speech dependencies:
uv add "fury-sdk[tts]"
Note:
phonemizerrequires theespeaksystem library. On macOS runbrew install espeak, and on Debian/Ubuntu runsudo apt-get install espeak.
For local development in this repository:
uv sync --all-extras
Quick Start
Most basic usage:
from fury import Agent
agent = Agent(
model="your-model-name", # e.g., "gpt-4o" or a local model
system_prompt="You are a helpful assistant.",
base_url="http://127.0.0.1:8080/v1", # or https://openrouter.ai/api/v1, https://api.openai.com/v1
api_key="your-api-key",
)
response = agent.ask("Hello!", history=[])
print(response)
Real Example
Below is a basic chat loop with automatic history-compaction. This allows the bot to keep talking without loosing key facts beyond the context window. It happens automatically and can be configured to suit your models needs.
import asyncio
from fury import Agent, HistoryManager
agent = Agent(
model="unsloth/GLM-4.6V-Flash-GGUF:Q8_0",
system_prompt="You are a helpful assistant.",
)
history_manager = HistoryManager(agent=agent)
async def main() -> None:
while True:
user_input = input("> ")
await history_manager.add({"role": "user", "content": user_input})
buffer = ""
async for event in agent.chat(history_manager.history):
if event.content:
buffer += event.content
print(event.content, end="", flush=True)
await history_manager.add({"role": "assistant", "content": buffer})
print()
if __name__ == "__main__":
asyncio.run(main())
Configuration Options
agent = Agent(
model="your-model-name",
system_prompt="You are a helpful assistant.",
parallel_tool_calls=False,
generation_params={
"temperature": 0.2,
"max_tokens": 512,
},
)
# Disable reasoning stream content (default is False)
async for event in agent.chat(history, reasoning=False):
...
Advanced Usage
Text-to-Speech (Based on NeuTTS-Air)
NeuTTS-Air is one of the easiest Autoregressive TTS models to work with right now imo. You may chose not to use this which is why TTS support is an optional additional dependency list. The neutts_minimal.py implements a lightweight inference-only TTS engine. It currently depends on eSpeak and llama_cpp to spin up the model locally. PRs are welcome on slimming this down.
Use Agent.speak() with a reference audio clip and matching text. The default
backbone and codec are neuphonic/neutts-air-q4-gguf and neuphonic/neucodec-onnx-decoder.
import numpy as np
import wave
from fury import Agent
agent = Agent(
model="your-model-name",
system_prompt="You are a helpful assistant.",
base_url="http://127.0.0.1:8080/v1",
api_key="your-api-key",
)
chunks = agent.speak(
text="Hello from Fury!",
ref_text="Welcome home sir.",
ref_audio_path="./examples/resources/ref.wav",
)
audio = np.concatenate(list(chunks))
with wave.open("output.wav", "wb") as wav_file:
wav_file.setnchannels(1)
wav_file.setsampwidth(2)
wav_file.setframerate(24000)
wav_file.writeframes((audio * 32767).astype("int16").tobytes())
For a full example, see examples/tts.py.
Defining Tools
You can give your agent tools to interact with the world. Tools are defined using the create_tool helper.
Input and output schemas help the model to correctly pass parameters through to the function. Fury will automatically prune any hallucinated parameters not defined in the input schema.
Learn more in the OpenAI guide
from fury import Agent, create_tool
# Define the function
def add(a: int, b: int):
return {"result": a + b}
# Create the tool
add_tool = create_tool(
id="add",
description="Add two numbers together",
execute=add,
announcement_phrase="Adding numbers...",
input_schema={
"type": "object",
"properties": {
"a": {"type": "integer"},
"b": {"type": "integer"},
},
"required": ["a", "b"],
},
output_schema={
"type": "object",
"properties": {"result": {"type": "integer"}},
"required": ["result"],
},
)
# Pass to agent
agent = Agent(..., tools=[add_tool])
Coding Assistant Example
Check out examples/coding-assistant/coding_assistant.py for a full-featured example that includes:
- File system operations (
read,write,edit,bash). - Skills System: Loading specialized capabilities from
SKILL.mdfiles. - Memory System: Using
MEMORY.mdandSOUL.mdfor context. - History Manager: Uses
HistoryManagerto summarize long conversations and save context window.
Running Examples
To run the provided examples, ensure you have the package installed.
Basic Chat:
uv run examples/chat.py
Coding Assistant (Based on Pi.dev):
uv run examples/coding-assistant/coding_assistant.py
Text-to-Speech (NeuTTS):
uv run examples/tts.py
Voice Chat (STT + TTS):
uv run examples/voice_chat.py
Project Structure
src/agent_lib/: Core library code.agent.py: MainAgentclass and logic.
examples/: Usage examples.chat.py: Basic chat loop.history_manager.py: Chat loop with auto-compacting history.tts.py: NeuTTS example.voice_chat.py: Voice chat with Whisper + NeuTTS.coding-assistant/: Advanced agent with file ops and memory.
Run Tests
To run the pytest tests you will first need to install the additional test deps.
uv sync --extra test
Then run:
uv run pytest -v
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