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codex/sdk/python/docs/api-reference.md
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Ahmed Ibrahim eb1cc3824c [codex] Prepare Python SDK beta documentation and package metadata (#24836)
## Why

The initial public `openai-codex` beta should read and install like a
normal published Python package before a release tag is created. This
follows merged PR #24828, which establishes the independent SDK beta
release plumbing and exact runtime dependency.

## What changed

- Rewrote `sdk/python/README.md` as a compact PyPI-facing beta package
page: published installation, one quickstart, short login examples,
built-in help, and links to deeper guides.
- Updated the getting-started guide, API reference, FAQ, and examples
index to present the published beta consistently without repeating
onboarding in the package landing page or reference page.
- Made `pip install openai-codex` the primary install path while beta
releases are the only published SDK releases, with `--pre` documented
for opting into prereleases after a stable release exists.
- Added curated `help()` / `pydoc` docstrings across the public API and
generated public convenience methods through
`scripts/update_sdk_artifacts.py`.
- Declared the repository `Apache-2.0` license expression and
Documentation URL in package metadata, without introducing a duplicated
SDK-local license file.
- Kept the source distribution focused on installable package material
(`src/openai_codex`, `README.md`, and `pyproject.toml`); the repository
docs and runnable examples remain linked from the PyPI README.
- Built release artifacts in an Alpine container on the Ubuntu runner,
matching Python SDK CI and allowing type generation to install the
published `musllinux` runtime wheel.
- Added `twine check --strict` to the release workflow so malformed PyPI
metadata or rendered README content fails before publishing.
- Added focused SDK assertions for beta metadata, the exact runtime pin,
source distribution contents, and the built-in Python documentation
surface.

## Validation

- Ran `uv run --frozen --extra dev ruff check
scripts/update_sdk_artifacts.py src/openai_codex
tests/test_public_api_signatures.py
tests/test_artifact_workflow_and_binaries.py` before the final
README-only reductions and review-fix follow-ups.
- Built `openai_codex-0.1.0b1-py3-none-any.whl` and
`openai_codex-0.1.0b1.tar.gz` before the final README-only reductions
and review-fix follow-ups.
- Ran `python -m twine check --strict` on both built artifacts before
the final README-only reductions and review-fix follow-ups.
- Verified artifact metadata reports `Apache-2.0` without a duplicated
SDK-local license file.
- Verified `inspect.getdoc(...)` resolves documentation for the package,
`Codex`, `CodexConfig`, and key generated thread methods.
- Rebased the documentation/readiness change onto merged PR #24828
without changing the intended SDK or workflow file contents.
- Final verification is delegated to online CI for this PR.
2026-05-27 18:29:05 -07:00

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# OpenAI Codex Python SDK (Beta) - API Reference
Public surface of `openai_codex` for Codex workflows.
This SDK is in beta. Public APIs may change before `1.0`. Turn streams are routed by turn ID so one client can consume multiple active turns concurrently.
Thread starts default to `ApprovalMode.auto_review`; turn starts accept an optional `approval_mode` override.
## Package Entry
```python
from openai_codex import (
Codex,
AsyncCodex,
CodexConfig,
ApprovalMode,
Sandbox,
ChatgptLoginHandle,
DeviceCodeLoginHandle,
AsyncChatgptLoginHandle,
AsyncDeviceCodeLoginHandle,
Thread,
AsyncThread,
TurnHandle,
AsyncTurnHandle,
TurnResult,
Input,
InputItem,
RunInput,
TextInput,
ImageInput,
LocalImageInput,
SkillInput,
MentionInput,
)
from openai_codex.types import (
Account,
AccountLoginCompletedNotification,
CancelLoginAccountResponse,
CancelLoginAccountStatus,
GetAccountResponse,
InitializeResponse,
ThreadItem,
ThreadTokenUsage,
TurnError,
TurnStatus,
)
```
- Version: `openai_codex.__version__`
- Requires Python >= 3.10
- Public Codex protocol value and event types live in `openai_codex.types`
## Codex (sync)
```python
Codex(config: CodexConfig | None = None)
```
Properties/methods:
- `metadata -> InitializeResponse`
- `close() -> None`
- `login_api_key(api_key: str) -> None`
- `login_chatgpt() -> ChatgptLoginHandle`
- `login_chatgpt_device_code() -> DeviceCodeLoginHandle`
- `account(*, refresh_token: bool = False) -> GetAccountResponse`
- `logout() -> None`
- `thread_start(*, approval_mode=ApprovalMode.auto_review, base_instructions=None, config=None, cwd=None, developer_instructions=None, ephemeral=None, model=None, model_provider=None, personality=None, sandbox: Sandbox | None = None) -> Thread`
- `thread_list(*, archived=None, cursor=None, cwd=None, limit=None, model_providers=None, sort_key=None, source_kinds=None) -> ThreadListResponse`
- `thread_resume(thread_id: str, *, approval_mode=ApprovalMode.auto_review, base_instructions=None, config=None, cwd=None, developer_instructions=None, model=None, model_provider=None, personality=None, sandbox: Sandbox | None = None) -> Thread`
- `thread_fork(thread_id: str, *, approval_mode=ApprovalMode.auto_review, base_instructions=None, config=None, cwd=None, developer_instructions=None, model=None, model_provider=None, sandbox: Sandbox | None = None) -> Thread`
- `thread_archive(thread_id: str) -> ThreadArchiveResponse`
- `thread_unarchive(thread_id: str) -> Thread`
- `models(*, include_hidden: bool = False) -> ModelListResponse`
Context manager:
```python
with Codex() as codex:
...
```
## AsyncCodex (async parity)
```python
AsyncCodex(config: CodexConfig | None = None)
```
Preferred usage:
```python
async with AsyncCodex() as codex:
...
```
`AsyncCodex` initializes lazily. Context entry is the standard path because it
ensures startup and shutdown are paired explicitly.
Properties/methods:
- `metadata -> InitializeResponse`
- `close() -> Awaitable[None]`
- `login_api_key(api_key: str) -> Awaitable[None]`
- `login_chatgpt() -> Awaitable[AsyncChatgptLoginHandle]`
- `login_chatgpt_device_code() -> Awaitable[AsyncDeviceCodeLoginHandle]`
- `account(*, refresh_token: bool = False) -> Awaitable[GetAccountResponse]`
- `logout() -> Awaitable[None]`
- `thread_start(*, approval_mode=ApprovalMode.auto_review, base_instructions=None, config=None, cwd=None, developer_instructions=None, ephemeral=None, model=None, model_provider=None, personality=None, sandbox: Sandbox | None = None) -> Awaitable[AsyncThread]`
- `thread_list(*, archived=None, cursor=None, cwd=None, limit=None, model_providers=None, sort_key=None, source_kinds=None) -> Awaitable[ThreadListResponse]`
- `thread_resume(thread_id: str, *, approval_mode=ApprovalMode.auto_review, base_instructions=None, config=None, cwd=None, developer_instructions=None, model=None, model_provider=None, personality=None, sandbox: Sandbox | None = None) -> Awaitable[AsyncThread]`
- `thread_fork(thread_id: str, *, approval_mode=ApprovalMode.auto_review, base_instructions=None, config=None, cwd=None, developer_instructions=None, ephemeral=None, model=None, model_provider=None, sandbox: Sandbox | None = None) -> Awaitable[AsyncThread]`
- `thread_archive(thread_id: str) -> Awaitable[ThreadArchiveResponse]`
- `thread_unarchive(thread_id: str) -> Awaitable[AsyncThread]`
- `models(*, include_hidden: bool = False) -> Awaitable[ModelListResponse]`
Async context manager:
```python
async with AsyncCodex() as codex:
...
```
## Login handles
### ChatgptLoginHandle / AsyncChatgptLoginHandle
- `login_id: str`
- `auth_url: str`
- `wait() -> AccountLoginCompletedNotification`
- `cancel() -> CancelLoginAccountResponse`
Async handle methods return awaitables.
### DeviceCodeLoginHandle / AsyncDeviceCodeLoginHandle
- `login_id: str`
- `verification_url: str`
- `user_code: str`
- `wait() -> AccountLoginCompletedNotification`
- `cancel() -> CancelLoginAccountResponse`
Async handle methods return awaitables.
`wait()` consumes only the completion notification for its matching login
attempt. API-key login completes synchronously and does not return a handle.
## Thread / AsyncThread
`Thread` and `AsyncThread` share the same shape and intent.
### Thread
- `run(input: str | Input, *, approval_mode=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox: Sandbox | None = None, service_tier=None, summary=None) -> TurnResult`
- `turn(input: str | Input, *, approval_mode=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox: Sandbox | None = None, service_tier=None, summary=None) -> TurnHandle`
- `read(*, include_turns: bool = False) -> ThreadReadResponse`
- `set_name(name: str) -> ThreadSetNameResponse`
- `compact() -> ThreadCompactStartResponse`
### AsyncThread
- `run(input: str | Input, *, approval_mode=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox: Sandbox | None = None, service_tier=None, summary=None) -> Awaitable[TurnResult]`
- `turn(input: str | Input, *, approval_mode=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox: Sandbox | None = None, service_tier=None, summary=None) -> Awaitable[AsyncTurnHandle]`
- `read(*, include_turns: bool = False) -> Awaitable[ThreadReadResponse]`
- `set_name(name: str) -> Awaitable[ThreadSetNameResponse]`
- `compact() -> Awaitable[ThreadCompactStartResponse]`
`run(...)` is the common-case convenience path. It accepts plain strings, starts
the turn, consumes notifications until completion, and returns a small result
object with:
- `id: str`
- `status: TurnStatus`
- `error: TurnError | None`
- `started_at: int | None`
- `completed_at: int | None`
- `duration_ms: int | None`
- `final_response: str | None`
- `items: list[ThreadItem]`
- `usage: ThreadTokenUsage | None`
`final_response` is `None` when the turn finishes without a final-answer or
phase-less assistant message item.
Use `turn(...)` when you need low-level turn control (`stream()`, `steer()`,
`interrupt()`) before collecting the turn result.
## Sandbox
Use `sandbox=` consistently on thread lifecycle methods and turns:
```python
from openai_codex import Codex, Sandbox
with Codex() as codex:
thread = codex.thread_start(sandbox=Sandbox.workspace_write)
result = thread.run("Review the diff only.", sandbox=Sandbox.read_only)
```
Presets:
- `Sandbox.read_only`: read files without allowing writes.
- `Sandbox.workspace_write`: the normal default for projects with a recorded trust decision; read files and write inside the workspace and configured writable roots.
- `Sandbox.full_access`: run without filesystem access restrictions.
When `sandbox=` is omitted, Codex uses its configured default. A sandbox
passed to `run(...)` or `turn(...)` applies to that turn and subsequent turns.
## TurnHandle / AsyncTurnHandle
### TurnHandle
- `steer(input: str | Input) -> TurnSteerResponse`
- `interrupt() -> TurnInterruptResponse`
- `stream() -> Iterator[Notification]`
- `run() -> TurnResult`
Behavior notes:
- `stream()` and `run()` consume only notifications for their own turn ID
- one `Codex` instance can stream multiple active turns concurrently
### AsyncTurnHandle
- `steer(input: str | Input) -> Awaitable[TurnSteerResponse]`
- `interrupt() -> Awaitable[TurnInterruptResponse]`
- `stream() -> AsyncIterator[Notification]`
- `run() -> Awaitable[TurnResult]`
Behavior notes:
- `stream()` and `run()` consume only notifications for their own turn ID
- one `AsyncCodex` instance can stream multiple active turns concurrently
## Inputs
```python
@dataclass class TextInput: text: str
@dataclass class ImageInput: url: str
@dataclass class LocalImageInput: path: str
@dataclass class SkillInput: name: str; path: str
@dataclass class MentionInput: name: str; path: str
InputItem = TextInput | ImageInput | LocalImageInput | SkillInput | MentionInput
Input = list[InputItem] | InputItem
RunInput = Input | str
```
Use a plain `str` as shorthand for `TextInput(...)` anywhere a turn input is accepted:
`thread.run("...")`, `thread.turn("...")`, and `turn.steer("...")`.
## Public Types
The SDK wrappers return and accept public Codex protocol models wherever possible:
```python
from openai_codex.types import (
Account,
AccountLoginCompletedNotification,
CancelLoginAccountResponse,
CancelLoginAccountStatus,
GetAccountResponse,
ThreadReadResponse,
Turn,
TurnStatus,
)
```
## Retry + errors
```python
from openai_codex import (
retry_on_overload,
JsonRpcError,
MethodNotFoundError,
InvalidParamsError,
ServerBusyError,
is_retryable_error,
)
```
- `retry_on_overload(...)` retries transient overload errors with exponential backoff + jitter.
- `is_retryable_error(exc)` checks if an exception is transient/overload-like.
## Example
```python
from openai_codex import Codex
with Codex() as codex:
thread = codex.thread_start(model="gpt-5.4", config={"model_reasoning_effort": "high"})
result = thread.run("Say hello in one sentence.")
print(result.final_response)
```