Tasks could start from host content in 2.2.0, but there was still no post-create path to update a live workspace from the host. This change adds the next host-to-task step so repeated fix or review loops do not require recreating the task for every local change. Add task sync push across the CLI, Python SDK, and MCP server, reusing the existing safe archive import path from seeded task creation instead of introducing a second transfer stack. The implementation keeps sync separate from workspace_seed metadata, validates destinations under /workspace, and documents the current non-atomic recovery path as delete-and-recreate. Validation: - uv lock - UV_CACHE_DIR=.uv-cache uv run pytest --no-cov tests/test_cli.py tests/test_vm_manager.py tests/test_api.py tests/test_server.py tests/test_public_contract.py - UV_CACHE_DIR=.uv-cache make check - UV_CACHE_DIR=.uv-cache make dist-check - real guest-backed smoke: task create --source-path, task sync push, task exec to verify both files, task delete
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Integration Targets
These are the main ways to integrate pyro-mcp into an LLM application.
Use this page after you have already validated the host and guest execution through the CLI path in install.md or first-run.md.
Recommended Default
Use vm_run first for one-shot commands.
That keeps the model-facing contract small:
- one tool
- one command
- one ephemeral VM
- automatic cleanup
Move to task_* only when the agent truly needs repeated commands in one workspace across
multiple calls.
OpenAI Responses API
Best when:
- your agent already uses OpenAI models directly
- you want a normal tool-calling loop instead of MCP transport
- you want the smallest amount of integration code
Recommended surface:
vm_runtask_create(source_path=...)+task_sync_push+task_execwhen the agent needs persistent workspace state
Canonical example:
MCP Clients
Best when:
- your host application already supports MCP
- you want
pyroto run as an external stdio server - you want tool schemas to be discovered directly from the server
Recommended entrypoint:
pyro mcp serve
Starter config:
- examples/mcp_client_config.md
- examples/claude_desktop_mcp_config.json
- examples/cursor_mcp_config.json
Direct Python SDK
Best when:
- your application owns orchestration itself
- you do not need MCP transport
- you want direct access to
Pyro
Recommended default:
Pyro.run_in_vm(...)Pyro.create_task(source_path=...)+Pyro.push_task_sync(...)+Pyro.exec_task(...)when repeated workspace commands are required
Lifecycle note:
Pyro.exec_vm(...)runs one command and auto-cleans the VM afterward- use
create_vm(...)+start_vm(...)only when you need pre-exec inspection or status before that final exec - use
create_task(source_path=...)when the agent needs repeated commands in one persistent/workspacethat starts from host content - use
push_task_sync(...)when later host-side changes need to be imported into that running workspace without recreating the task
Examples:
Agent Framework Wrappers
Examples:
- LangChain tools
- PydanticAI tools
- custom in-house orchestration layers
Best when:
- you already have an application framework that expects a Python callable tool
- you want to wrap
vm_runbehind framework-specific abstractions
Recommended pattern:
- keep the framework wrapper thin
- map one-shot framework tool input directly onto
vm_run - expose
task_*only when the framework truly needs repeated commands in one workspace
Concrete example:
Selection Rule
Choose the narrowest integration that matches the host environment:
- OpenAI Responses API if you want a direct provider tool loop.
- MCP if your host already speaks MCP.
- Python SDK if you own orchestration and do not need transport.
- Framework wrappers only as thin adapters over the same
vm_runcontract.