Expose stable MCP/server tool profiles so chat hosts can start narrow and widen only when needed. This adds vm-run, workspace-core, and workspace-full across the CLI serve path, Pyro.create_server(), and the package-level create_server() factory while keeping workspace-full as the default. Register profile-specific tool sets from one shared contract mapping, and narrow the workspace-core schemas so secrets, network policy, shells, services, snapshots, and disk tools do not leak into the default persistent chat profile. The full surface remains available unchanged under workspace-full. Refresh the public docs and examples around the profile progression, add a canonical OpenAI Responses workspace-core example, mark the 3.4.0 roadmap milestone done, and verify with uv lock, UV_CACHE_DIR=.uv-cache make check, UV_CACHE_DIR=.uv-cache make dist-check, and a real guest-backed workspace-core smoke for create, file write, exec, diff, export, reset, and 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, then move to workspace-core when the
agent needs to inhabit one sandbox across multiple calls. Only promote the chat
surface to workspace-full when it truly needs shells, services, snapshots,
secrets, network policy, or disk tools.
That keeps the model-facing contract small:
- one tool
- one command
- one ephemeral VM
- automatic cleanup
Profile progression:
vm-run: one-shot onlyworkspace-core: persistent workspace create/list/update/status/sync/exec/logs/file ops/diff/export/reset/deleteworkspace-full: the full stable workspace surface, including shells, services, snapshots, secrets, network policy, and disk tools
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_runfor one-shot loops- the
workspace-coretool set for the normal persistent chat loop - the
workspace-fulltool set only when the host explicitly needs advanced workspace capabilities
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 --profile workspace-core
Profile progression:
pyro mcp serve --profile vm-runfor the smallest one-shot surfacepyro mcp serve --profile workspace-corefor the normal persistent chat looppyro mcp serve --profile workspace-fullonly when the model truly needs advanced workspace tools
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_workspace(name=..., labels=...)+Pyro.list_workspaces()+Pyro.update_workspace(...)when repeated workspaces need human-friendly discovery metadataPyro.create_workspace(seed_path=...)+Pyro.push_workspace_sync(...)+Pyro.exec_workspace(...)when repeated workspace commands are requiredPyro.list_workspace_files(...)/Pyro.read_workspace_file(...)/Pyro.write_workspace_file(...)/Pyro.apply_workspace_patch(...)when the agent needs model-native file inspection and text edits inside one live workspacePyro.create_workspace(..., secrets=...)+Pyro.exec_workspace(..., secret_env=...)when the workspace needs private tokens or authenticated setupPyro.create_workspace(..., network_policy="egress+published-ports")+Pyro.start_service(..., published_ports=[...])when the host must probe one workspace servicePyro.diff_workspace(...)+Pyro.export_workspace(...)when the agent needs baseline comparison or host-out file transferPyro.start_service(..., secret_env=...)+Pyro.list_services(...)+Pyro.logs_service(...)when the agent needs long-running background processes in one workspacePyro.open_shell(..., secret_env=...)+Pyro.write_shell(...)+Pyro.read_shell(...)when the agent needs an interactive PTY inside the workspace
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_workspace(seed_path=...)when the agent needs repeated commands in one persistent/workspacethat starts from host content - use
create_workspace(name=..., labels=...),list_workspaces(), andupdate_workspace(...)when the agent or operator needs to rediscover the right workspace later without external notes - use
push_workspace_sync(...)when later host-side changes need to be imported into that running workspace without recreating it - use
list_workspace_files(...),read_workspace_file(...),write_workspace_file(...), andapply_workspace_patch(...)when the agent should inspect or edit workspace files without shell quoting tricks - use
create_workspace(..., secrets=...)plussecret_envon exec, shell, or service start when the agent needs private tokens or authenticated startup inside that workspace - use
create_workspace(..., network_policy="egress+published-ports")plusstart_service(..., published_ports=[...])when the host must probe one service from that workspace - use
diff_workspace(...)when the agent needs a structured comparison against the immutable create-time baseline - use
export_workspace(...)when the agent needs one file or directory copied back to the host - use
stop_workspace(...)pluslist_workspace_disk(...),read_workspace_disk(...), orexport_workspace_disk(...)when the agent needs offline inspection or one raw ext4 copy from a stopped guest-backed workspace - use
start_service(...)when the agent needs long-running processes and typed readiness inside one workspace - use
open_shell(...)when the agent needs interactive shell state instead of one-shot execs
Examples:
- examples/python_run.py
- examples/python_lifecycle.py
- examples/python_workspace.py
- examples/python_shell.py
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
workspace_*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.