| name | google-antigravity-sdk |
| description | Design, implement, and debug autonomous AI agents and multi-agent systems using the Google Antigravity (AGY) SDK. ACTIVATE this skill when the user wants to create, configure, or orchestrate Google Antigravity agents. |
Google Antigravity SDK
Installation & Setup
Before proceeding with any Google Antigravity tasks, ensure the environment is
ready:
- Verify Applicability: If operating in an existing codebase, verify that
using this Python SDK is possible and appropriate for the project.
- Check Dependencies: Check if
google-antigravity is listed in the
project's dependencies (e.g., requirements.txt, pyproject.toml).
- Install Package: Ensure the
google-antigravity Python package is
installed.
- Authentication Setup: Check for a valid
GEMINI_API_KEY environment
variable or a .env file (required to access Gemini models).
- If credentials are missing, you MUST actively help the user get set up
with an API key by providing the following link:
- Default to Google AI Studio:
https://aistudio.google.com/app/api-keys
- Explain that the API key can be passed explicitly in code as shorthand
(e.g.,
LocalAgentConfig(api_key="...")) or automatically read from the
environment.
Routing Table
Use the following information to dig deeper into specific topics based on the
user request. Read the referenced files or explore the directories to find
relevant information.
References
- If the user needs to understand the high-level overview and core concepts of
the Google Antigravity SDK (Agent, Conversation, Connection), read
references/architecture.md.
- If the user needs to perform advanced agent configuration, select
appropriate models, or understand the critical rules for model identifiers
to avoid assumptions, read
references/agent_configuration.md.
- If the user needs to extend an agent's capabilities by integrating Model
Context Protocol (MCP) servers, or configure tool permissions for the agent,
read
references/mcp_integration.md.
- If the user needs to define safety policies, resolve execution order, or
restrict agent actions using predicates, read
references/safety_policies.md.
- If the user needs to debug failed agents, stream logs, or implement error
recovery using hooks to make agents robust, read
references/error_handling.md.
- If the user needs to monitor costs, track token usage (including thinking
tokens), or build custom audit logs for advanced monitoring, read
references/observability.md.
- If the user needs to see a list of built-in tools and understand their default state, read
references/built_in_tools.md.
Examples
- If the user needs to implement basic agent behavior, streaming responses, or
expose internal thoughts, read
examples/getting_started/hello_world.md.
- If the user needs to equip an agent with custom capabilities (tools) derived
from Python functions, or maintain agent state across tool execution, read
examples/getting_started/custom_tool.md.
- If the user needs to shape an agent's persona, define its system
instructions, or dynamically adapt its behavior, read
examples/getting_started/persona_config.md.
- If the user needs to build multimodal agents capable of processing images
and PDFs, or generating visual content, read
examples/getting_started/multimodal.md.
- If the user needs to implement multi-agent delegation, allowing a main agent
to spawn and orchestrate subagents for complex tasks, read
examples/getting_started/subagents.md.
- If the user needs to connect an agent to external services via MCP (Stdio or
SSE), read
examples/getting_started/mcp_tools.md.
- If the user needs to create proactive agents that respond to time-based
events or file system triggers in the background, read
examples/getting_started/periodic_trigger.md.
- If the user needs to intercept agent lifecycle events (e.g., pre/post turn,
tool execution, errors) to customize execution flow, read
examples/getting_started/hooks.md.
- If the user needs to implement persistent agents that remember past
interactions across sessions, read
examples/getting_started/persistence.md.
- If the user needs to override the default application data directory
for agent artifacts, scratch files, and media storage, read
examples/getting_started/app_data_dir_override.md.
- If the user needs an agent to output structured data (e.g., JSON matching a
Pydantic schema) for reliable integration, read
examples/getting_started/structured_output.md.
- If the user needs to add, configure, or load agent skills into the Google
Antigravity SDK agent, read
examples/getting_started/agent_skills.md.