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openai--openai-agents-python/examples/sandbox/basic.py
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2026-07-13 12:39:17 +08:00

242 lines
8.5 KiB
Python

from __future__ import annotations
import argparse
import asyncio
import sys
from pathlib import Path
from typing import Any, Literal, cast
from openai.types.responses import ResponseTextDeltaEvent
from agents import ModelSettings, Runner
from agents.run import RunConfig
from agents.sandbox import Manifest, SandboxAgent, SandboxRunConfig
from agents.sandbox.config import DEFAULT_PYTHON_SANDBOX_IMAGE
from agents.sandbox.entries import File
if __package__ is None or __package__ == "":
sys.path.insert(0, str(Path(__file__).resolve().parents[2]))
from examples.sandbox.misc.workspace_shell import WorkspaceShellCapability
Backend = Literal["docker", "modal"]
WorkspacePersistenceMode = Literal["tar", "snapshot_filesystem", "snapshot_directory"]
DEFAULT_QUESTION = "Summarize this sandbox project in 2 sentences."
DEFAULT_BACKEND: Backend = "docker"
DEFAULT_MODAL_APP_NAME = "openai-agents-python-sandbox-example"
DEFAULT_MODAL_WORKSPACE_PERSISTENCE: WorkspacePersistenceMode = "tar"
def _stream_event_banner(event_name: str) -> str | None:
if event_name == "tool_called":
return "[tool call] shell"
if event_name == "tool_output":
return "[tool output] shell"
return None
def _build_manifest(backend: Backend) -> Manifest:
backend_label = "Docker" if backend == "docker" else "Modal"
return Manifest(
entries={
"README.md": File(
content=(
b"# Demo Project\n\n"
+ (
f"This sandbox contains a tiny demo project for the {backend_label} "
"sandbox runner.\n"
).encode()
+ b"The goal is to show how Runner can prepare a sandbox workspace.\n"
)
),
"src/app.py": File(
content=b'def greet(name: str) -> str:\n return f"Hello, {name}!"\n'
),
"docs/notes.md": File(
content=(
b"# Notes\n\n"
b"- The example is intentionally minimal.\n"
b"- The model should inspect files through the shell tool.\n"
)
),
}
)
def _build_agent(*, model: str, manifest: Manifest, backend: Backend) -> SandboxAgent:
backend_label = "Docker" if backend == "docker" else "Modal"
return SandboxAgent(
name=f"{backend_label} Sandbox Assistant",
model=model,
instructions=(
"Answer questions about the sandbox workspace. Inspect the project before answering, "
"and keep the response concise. "
"Do not guess file names like package.json or pyproject.toml. "
"This demo intentionally contains a tiny workspace."
),
# `default_manifest` tells the sandbox agent which workspace it should expect.
default_manifest=manifest,
# `WorkspaceShellCapability()` exposes one shell tool so the model can inspect files.
capabilities=[WorkspaceShellCapability()],
# `tool_choice="required"` makes the demo more deterministic by forcing the model
# to look at the workspace instead of answering from prior assumptions.
model_settings=ModelSettings(tool_choice="required"),
)
def _require_modal_dependency() -> tuple[Any, Any]:
try:
from agents.extensions.sandbox import ModalSandboxClient, ModalSandboxClientOptions
except Exception as exc: # pragma: no cover - import path depends on optional extras
raise SystemExit(
"Modal-backed runs require the optional repo extra.\n"
"Install it with: uv sync --extra modal"
) from exc
return ModalSandboxClient, ModalSandboxClientOptions
def _path_resolves_to(path: str, target: Path) -> bool:
try:
return Path(path or ".").resolve() == target
except OSError:
return False
def _import_docker_from_env() -> Any:
script_dir = Path(__file__).resolve().parent
original_sys_path = sys.path[:]
try:
sys.path = [entry for entry in sys.path if not _path_resolves_to(entry, script_dir)]
from docker import from_env as docker_from_env # type: ignore[import-untyped]
except Exception as exc: # pragma: no cover - import path depends on local Docker setup
raise SystemExit(
f"Docker-backed runs failed to import the Docker SDK: {exc}\n"
"Install the repo dependencies with: make sync\n"
"If you are running this file directly, try:\n"
"uv run python -m examples.sandbox.basic --backend docker"
) from exc
finally:
sys.path = original_sys_path
return docker_from_env
def _require_docker_dependency() -> tuple[Any, Any, Any]:
docker_from_env = _import_docker_from_env()
from agents.sandbox.sandboxes.docker import DockerSandboxClient, DockerSandboxClientOptions
return docker_from_env, DockerSandboxClient, DockerSandboxClientOptions
async def _create_session(
*,
backend: Backend,
manifest: Manifest,
agent: SandboxAgent,
):
if backend == "docker":
docker_from_env, DockerSandboxClient, DockerSandboxClientOptions = (
_require_docker_dependency()
)
client = DockerSandboxClient(docker_from_env())
sandbox = await client.create(
manifest=manifest,
options=DockerSandboxClientOptions(image=DEFAULT_PYTHON_SANDBOX_IMAGE),
)
return client, sandbox
ModalSandboxClient, ModalSandboxClientOptions = _require_modal_dependency()
client = ModalSandboxClient()
sandbox = await client.create(
manifest=manifest,
options=ModalSandboxClientOptions(
app_name=DEFAULT_MODAL_APP_NAME,
workspace_persistence=DEFAULT_MODAL_WORKSPACE_PERSISTENCE,
),
)
return client, sandbox
async def main(
model: str,
question: str,
backend: Backend,
) -> None:
manifest = _build_manifest(backend)
agent = _build_agent(model=model, manifest=manifest, backend=backend)
client, sandbox = await _create_session(
backend=backend,
manifest=manifest,
agent=agent,
)
await sandbox.start()
print(await sandbox.ls("."))
try:
# `async with sandbox` keeps the example on the public session lifecycle API.
# `Runner` reuses the already-running session without starting it a second time.
async with sandbox:
# `Runner.run_streamed()` drives the model and yields text and tool events in real time.
result = Runner.run_streamed(
agent,
question,
run_config=RunConfig(
sandbox=SandboxRunConfig(session=sandbox),
workflow_name=f"{backend.title()} sandbox example",
),
)
saw_text_delta = False
saw_any_text = False
# The stream contains raw text deltas from the assistant plus structured tool events.
async for event in result.stream_events():
if event.type == "raw_response_event" and isinstance(
event.data, ResponseTextDeltaEvent
):
if not saw_text_delta:
print("assistant> ", end="", flush=True)
saw_text_delta = True
print(event.data.delta, end="", flush=True)
saw_any_text = True
continue
if event.type != "run_item_stream_event":
continue
banner = _stream_event_banner(event.name)
if banner is not None:
if saw_text_delta:
print()
saw_text_delta = False
print(banner)
if saw_text_delta:
print()
if not saw_any_text:
print(result.final_output)
finally:
await client.delete(sandbox)
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument("--model", default="gpt-5.6-sol", help="Model name to use.")
parser.add_argument("--question", default=DEFAULT_QUESTION, help="Prompt to send to the agent.")
parser.add_argument(
"--backend",
default=DEFAULT_BACKEND,
choices=["docker", "modal"],
help="Sandbox backend to use for this example.",
)
args = parser.parse_args()
asyncio.run(
main(
args.model,
args.question,
cast(Backend, args.backend),
)
)