Files
codex/sdk/python/docs/api-reference.md
Ahmed Ibrahim f1b84fac63 [5/8] Rename Python SDK package to openai-codex (#21905)
## Why

The SDK should publish under the reserved public distribution name
`openai-codex`, and its import module should match that name in the
Python style. Since package names can contain hyphens but import modules
cannot, the public import path becomes `openai_codex`.

Keeping the rename separate from the public API surface change makes the
naming change easy to review and avoids mixing it with API curation.

## What

- Rename the SDK distribution from `openai-codex-app-server-sdk` to
`openai-codex`.
- Rename the import package from `codex_app_server` to `openai_codex`.
- Keep the runtime wheel as the separate `openai-codex-cli-bin`
dependency.
- Update docs, examples, notebooks, artifact scripts, lockfile metadata,
and tests for the new distribution/module names.

## Stack

1. #21891 `[1/8]` Pin Python SDK runtime dependency
2. #21893 `[2/8]` Generate Python SDK types from pinned runtime
3. #21895 `[3/8]` Run Python SDK tests in CI
4. #21896 `[4/8]` Define Python SDK public API surface
5. This PR `[5/8]` Rename Python SDK package to `openai-codex`
6. #21910 `[6/8]` Add high-level Python SDK approval mode
7. #22014 `[7/8]` Add Python SDK app-server integration harness
8. #22021 `[8/8]` Add Python SDK Ruff formatting

## Verification

- Updated package metadata and public API tests to assert the
distribution and import names.

Co-authored-by: Codex <noreply@openai.com>
2026-05-12 00:59:25 +03:00

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# OpenAI Codex SDK — API Reference
Public surface of `openai_codex` for app-server v2.
This SDK surface is experimental. Turn streams are routed by turn ID so one client can consume multiple active turns concurrently.
## Package Entry
```python
from openai_codex import (
Codex,
AsyncCodex,
RunResult,
Thread,
AsyncThread,
TurnHandle,
AsyncTurnHandle,
Input,
InputItem,
TextInput,
ImageInput,
LocalImageInput,
SkillInput,
MentionInput,
)
from openai_codex.types import (
InitializeResponse,
ThreadItem,
ThreadTokenUsage,
TurnStatus,
)
```
- Version: `openai_codex.__version__`
- Requires Python >= 3.10
- Public app-server value and event types live in `openai_codex.types`
## Codex (sync)
```python
Codex(config: AppServerConfig | None = None)
```
Properties/methods:
- `metadata -> InitializeResponse`
- `close() -> None`
- `thread_start(*, approval_policy=None, base_instructions=None, config=None, cwd=None, developer_instructions=None, ephemeral=None, model=None, model_provider=None, personality=None, sandbox=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_policy=None, base_instructions=None, config=None, cwd=None, developer_instructions=None, model=None, model_provider=None, personality=None, sandbox=None) -> Thread`
- `thread_fork(thread_id: str, *, approval_policy=None, base_instructions=None, config=None, cwd=None, developer_instructions=None, model=None, model_provider=None, sandbox=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: AppServerConfig | 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]`
- `thread_start(*, approval_policy=None, base_instructions=None, config=None, cwd=None, developer_instructions=None, ephemeral=None, model=None, model_provider=None, personality=None, sandbox=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_policy=None, base_instructions=None, config=None, cwd=None, developer_instructions=None, model=None, model_provider=None, personality=None, sandbox=None) -> Awaitable[AsyncThread]`
- `thread_fork(thread_id: str, *, approval_policy=None, base_instructions=None, config=None, cwd=None, developer_instructions=None, ephemeral=None, model=None, model_provider=None, sandbox=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:
...
```
## Thread / AsyncThread
`Thread` and `AsyncThread` share the same shape and intent.
### Thread
- `run(input: str | Input, *, approval_policy=None, approvals_reviewer=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox_policy=None, service_tier=None, summary=None) -> RunResult`
- `turn(input: Input, *, approval_policy=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox_policy=None, summary=None) -> TurnHandle`
- `read(*, include_turns: bool = False) -> ThreadReadResponse`
- `set_name(name: str) -> ThreadSetNameResponse`
- `compact() -> ThreadCompactStartResponse`
### AsyncThread
- `run(input: str | Input, *, approval_policy=None, approvals_reviewer=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox_policy=None, service_tier=None, summary=None) -> Awaitable[RunResult]`
- `turn(input: Input, *, approval_policy=None, cwd=None, effort=None, model=None, output_schema=None, personality=None, sandbox_policy=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:
- `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()`) or the public `Turn` model from `TurnHandle.run()`.
## TurnHandle / AsyncTurnHandle
### TurnHandle
- `steer(input: Input) -> TurnSteerResponse`
- `interrupt() -> TurnInterruptResponse`
- `stream() -> Iterator[Notification]`
- `run() -> openai_codex.types.Turn`
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: Input) -> Awaitable[TurnSteerResponse]`
- `interrupt() -> Awaitable[TurnInterruptResponse]`
- `stream() -> AsyncIterator[Notification]`
- `run() -> Awaitable[openai_codex.types.Turn]`
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
```
## Public Types
The SDK wrappers return and accept public app-server models wherever possible:
```python
from openai_codex.types import (
AskForApproval,
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)
```