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README.md

Google Antigravity SDK

The Google Antigravity SDK is a Python SDK for building AI agents powered by Antigravity and Gemini. It provides a secure, scalable, and stateful infrastructure layer that abstracts the agentic loop, letting you focus on what your agent does rather than how it runs.

Installation

pip install google-antigravity

[!IMPORTANT] The Google Antigravity SDK relies on a compiled runtime binary that is included in the platform-specific wheels published to PyPI. Cloning this repository alone is not sufficient to run the SDK. Always install from PyPI with pip install google-antigravity to obtain the binary.

Quickstart

Get started by running one of the examples/, such as the hello_world example with:

export GEMINI_API_KEY="your_api_key_here" python ./examples/getting_started/hello_world.py

Concepts

Simple Agent

The Agent class is the easiest way to get started. It manages the full lifecycle — binary discovery, tool wiring, hook registration, and policy defaults — behind a single async context manager.

The system_instructions parameter is optional.

import asyncio from google.antigravity import Agent, LocalAgentConfig async def main(): config = LocalAgentConfig( system_instructions="You are an expert assistant for codebase navigation.", # api_key="your_api_key_here", ) async with Agent(config) as agent: response = await agent.chat("What files are in the current directory?") print(await response.text()) async def run(): await main() if __name__ == "__main__": asyncio.run(run())

Streaming Responses

To stream agent output in real-time (e.g., for fluid UI or console applications), simply iterate over the ChatResponse object using an async for loop. The stream wrapper natively yields conversational str text tokens as they arrive, with zero network overhead:

import asyncio import sys from google.antigravity import Agent, LocalAgentConfig async def main(): config = LocalAgentConfig() async with Agent(config) as agent: # Returns instantly — does not block response = await agent.chat("Write a short poem about space.") async for token in response: sys.stdout.write(token) sys.stdout.flush() print() asyncio.run(main())

Sugared Thoughts & Tool Call Streams (Advanced)

For more complex use cases, you can also stream internal model reasoning/thinking or intercept tool call dispatches in real-time using dedicated async stream properties:

# 1. Stream reasoning/thinking deltas async for thought in response.thoughts: show_thinking_bubble(thought) # 2. Stream strongly-typed ToolCall events async for call in response.tool_calls: show_executing_spinner(call.name)

By default, Agent runs in read-only mode for safety. Pass capabilities=CapabilitiesConfig() to enable all tools (including writes).

Interactive Loop

from google.antigravity import Agent, LocalAgentConfig, CapabilitiesConfig from google.antigravity.utils.interactive import run_interactive_loop config = LocalAgentConfig( # api_key="your_api_key_here", capabilities=CapabilitiesConfig(), ) async with Agent(config) as agent: await run_interactive_loop(agent)

Advanced Usage with Conversation

For full control over the connection lifecycle, use Conversation with a ConnectionStrategy directly. Conversation is a stateful session that accumulates step history, provides a chat() convenience method, and exposes state introspection:

import asyncio from google.antigravity.connections.local import LocalConnectionStrategy from google.antigravity.conversation.conversation import Conversation from google.antigravity.tools.tool_runner import ToolRunner from google.antigravity.types import GeminiConfig async def main(): tool_runner = ToolRunner() strategy = LocalConnectionStrategy( tool_runner=tool_runner, # gemini_config=GeminiConfig(api_key="your_api_key_here"), ) async with Conversation.create(strategy) as conversation: # High-level: one-call send + collect response = await conversation.chat("What files are here?") print(await response.text()) # Step history accumulates automatically print(f"Total steps: {len(conversation.history)}") print(f"Turns: {conversation.turn_count}") print(f"Last response: {conversation.last_response}") # Low-level: streaming steps await conversation.send("Tell me more.") async for step in conversation.receive_steps(): if step.is_complete_response: print(step.content) asyncio.run(main())

Features

Multimodal Ingestion

Pass rich multimedia file attachments (images, videos, audio, and documents) to the agent alongside textual instruction prompt lists.

You can attach assets directly using content classes (perfect for in-memory bytes) or conveniently from a filesystem path (which automatically resolves types and guesses MIME formats):

from google.antigravity import Agent, LocalAgentConfig from google.antigravity.types import Image, from_file config = LocalAgentConfig(system_instructions="You are an expert software architect.") async with Agent(config) as agent: # 1. Flat filesystem shortcut (automatically resolves as types.Document) pdf_spec = from_file("spec.pdf") # 2. Direct constructor instantiation (perfect for in-memory raw bytes) chart_image = Image( data=b"raw_png_bytes_here", mime_type="image/png", description="Architecture blueprint" ) # Send a mixed list of text instructions and content classes prompt = [ "Analyze this chart against the specification and list three security vulnerabilities:", chart_image, pdf_spec ] response = await agent.chat(prompt) print(await response.text())

Custom Tools

Register Python functions as tools that the agent can call:

def get_weather(city: str) -> str: """Returns the current weather for a city.""" return f"It's sunny in {city}." config = LocalAgentConfig( tools=[get_weather], ) async with Agent(config) as agent: response = await agent.chat("What's the weather in Tokyo?")

MCP Integration

Connect to external MCP servers and expose their tools to the agent:

from google.antigravity import Agent, LocalAgentConfig from google.antigravity.types import McpStdioServer config = LocalAgentConfig( mcp_servers=[McpStdioServer(command="npx", args=["my-mcp-server"])], ) async with Agent(config) as agent: response = await agent.chat("Use the MCP tools to help me.")

Hooks and Policies

Control agent behavior with a declarative policy system:

from google.antigravity import Agent, LocalAgentConfig, CapabilitiesConfig from google.antigravity.hooks.policy import deny, allow, ask_user, enforce from google.antigravity.utils.interactive import run_interactive_loop policies = [ deny("*"), # Block all tools by default allow("view_file"), # Allow reading files ask_user("run_command", handler=my_handler), # Ask before running commands ] config = LocalAgentConfig( capabilities=CapabilitiesConfig(), policies=policies, ) async with Agent(config) as agent: await run_interactive_loop(agent)

Triggers

Run background tasks that react to external events and push messages into the agent:

from google.antigravity import Agent, LocalAgentConfig from google.antigravity.triggers import every from google.antigravity.utils.interactive import run_interactive_loop async def check_status(ctx): await ctx.send("Check the deployment status.") config = LocalAgentConfig( triggers=[every(60, check_status)], ) async with Agent(config) as agent: await run_interactive_loop(agent)

Architecture

The SDK follows a three-layer architecture:

LayerPurposeKey Classes
Layer 1 — SimplifiedHigh-level, batteries-included entry pointAgent
Layer 2 — SessionStateful session with history and convenience methodsConversation, ChatResponse, Step, ToolCall, AgentConfig, HookRunner, ToolRunner, TriggerRunner
Layer 3 — AdapterTransport and backend abstractionConnection, ConnectionStrategy, LocalConnection

Component Documentation

For more detailed documentation on specific components, see:

  • Agent — High-level, batteries-included entry point.
  • Connections — Transport and backend abstraction.
  • Conversation — Stateful session management.
  • Hooks — Agent lifecycle interception and policies.
  • MCP — Model Context Protocol integration.
  • Tools — In-process tool execution.
  • Triggers — Background tasks and external events.

License

Apache License 2.0

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