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Version: Next 🚧

cubepi.providers

AssistantMessage​

class

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Attributes

  • role: Literal['assistant']
  • content: list[Content | ThinkingContent | ToolCall]
  • stop_reason: str
  • error_message: str | None
  • usage: Usage | None
  • timestamp: float | None
  • provider_id: str
  • model_id: str
  • response_id: str | None
  • metadata: dict[str, Any]

BaseProvider​

class

BaseProvider(self)

Concrete base class for built-in cubepi providers.

Built-in providers (Anthropic, OpenAI, OpenAI Responses, Faux) inherit from this class to gain the persistent listener registry used by cubepi.tracing and other observers. User-defined providers may also inherit from BaseProvider to opt in, or remain duck-typed against the Provider Protocol (which only requires stream()).

Concrete subclasses must implement stream() and call _fire_listeners at three points: after the request payload is finalized, for each StreamEvent pushed onto the stream, and exactly once in a finally block after the stream terminates.

Per-call mutators (StreamOptions.on_payload, StreamOptions.on_response) retain their existing single-slot semantics and fire independently of the persistent listener registry below.

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Methods

stream​

stream(model: Model, messages: list[Message], *, system_prompt: str = '', tools: list[ToolDefinition] | None = None, options: StreamOptions | None = None) -> MessageStream

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subscribe_request​

subscribe_request(cb: OnRequestCallback) -> Callable[[], None]

Register a persistent observer for request payloads.

Returns a detach callable that removes this specific subscription.

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subscribe_chunk​

subscribe_chunk(cb: OnChunkCallback) -> Callable[[], None]

Register a persistent observer for stream chunks.

Returns a detach callable.

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subscribe_response​

subscribe_response(cb: OnResponseBodyCallback) -> Callable[[], None]

Register a persistent observer for assembled responses.

Returns a detach callable.

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Content​

attribute

Content = TextContent | ImageContent

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ImageContent​

class

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Attributes

  • type: Literal['image']
  • source: str
  • media_type: str

Message​

attribute

Message = UserMessage | AssistantMessage | ToolResultMessage

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MessageStream​

class

MessageStream(self)

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Methods

attach_task​

attach_task(task: asyncio.Task) -> None

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push​

push(event: StreamEvent) -> None

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set_result​

set_result(message: AssistantMessage) -> None

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result​

result() -> AssistantMessage

Return the final assistant message.

Blocks not just on the result future, but also on the producer task's completion — the producer's finally block runs _fire_response_listeners (after set_result), so without waiting for the task, callers under asyncio.run teardown could exit before async response listeners have run. Producer exceptions are NOT re-raised here; they were already surfaced via the result future or the stream's error events.

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Model​

class

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Attributes

  • id: str
  • provider: str
  • api: str
  • reasoning: bool
  • context_window: int
  • max_tokens: int
  • temperature: float
  • cost: ModelCost | None
  • thinking_level_map: dict[str, str | None] | None

ModelCost​

class

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Attributes

  • input: float
  • output: float
  • cache_read: float
  • cache_write: float

OnChunkCallback​

attribute

OnChunkCallback = Callable[['StreamEvent', Model], Awaitable[None] | None]

Persistent observer. Fires for every StreamEvent pushed onto the stream (start, text_delta, thinking_delta, toolcall_delta, done, error, ...). Heavy listeners should early-return on irrelevant event types — this hook fires hot. Return value is ignored.

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OnPayloadCallback​

attribute

OnPayloadCallback = Callable[[dict, Model], Awaitable[dict | None] | dict | None]

Optional callback for inspecting/replacing provider payloads before sending. Return a dict to replace the payload, or None to keep unchanged.

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OnRequestCallback​

attribute

OnRequestCallback = Callable[[dict, Model], Awaitable[None] | None]

Persistent observer. Fires just before HTTP send, after any per-call StreamOptions.on_payload mutation has been applied. Receives the final wire payload dict and the Model. Return value is ignored.

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OnResponseBodyCallback​

attribute

OnResponseBodyCallback = Callable[[dict | None, Model, BaseException | None], Awaitable[None] | None]

Persistent observer. Fires exactly once per stream() call, in a finally block, after the stream terminates.

  • body: assembled provider response as a dict (same shape a non-streaming call to the provider would have returned), or None if the stream failed before a response could be assembled.
  • exc: the exception that ended the stream (including asyncio.CancelledError), or None on normal completion. Return value is ignored.

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OnResponseCallback​

attribute

OnResponseCallback = Callable[['ProviderResponse', Model], Awaitable[None] | None]

Optional callback invoked after an HTTP response is received.

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Provider​

class

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Methods

stream​

stream(model: Model, messages: list[Message], *, system_prompt: str = '', tools: list[ToolDefinition] | None = None, options: StreamOptions | None = None) -> MessageStream

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ProviderResponse​

class

ProviderResponse(self, status: int, headers: dict[str, str] = dict())

HTTP response metadata exposed to on_response callbacks.

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Attributes

  • status: int
  • headers: dict[str, str]

StreamEvent​

class

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Attributes

  • type: Literal['start', 'text_start', 'text_delta', 'text_end', 'thinking_start', 'thinking_delta', 'thinking_end', 'toolcall_start', 'toolcall_delta', 'toolcall_end', 'done', 'error']
  • content_index: int | None
  • delta: str | None
  • partial: AssistantMessage | None
  • error_message: str | None

StreamOptions​

class

Options bag for Provider.stream(), transparent to the agent loop.

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Attributes

  • model_config
  • thinking: ThinkingLevel
  • thinking_budgets: ThinkingBudgets | None
  • signal: asyncio.Event | None
  • on_payload: OnPayloadCallback | None
  • on_response: OnResponseCallback | None

TextContent​

class

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Attributes

  • type: Literal['text']
  • text: str

ThinkingBudgets​

class

Token budgets for each thinking level.

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Attributes

  • minimal: int
  • low: int
  • medium: int
  • high: int

ThinkingContent​

class

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Attributes

  • type: Literal['thinking']
  • thinking: str

ThinkingLevel​

attribute

ThinkingLevel = Literal['off', 'minimal', 'low', 'medium', 'high', 'xhigh']

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ToolCall​

class

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Attributes

  • type: Literal['tool_call']
  • id: str
  • name: str
  • arguments: dict[str, Any]

ToolDefinition​

class

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Attributes

  • name: str
  • description: str
  • parameters: dict[str, Any]

ToolResultMessage​

class

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Attributes

  • role: Literal['tool_result']
  • tool_call_id: str
  • tool_name: str
  • content: list[Content]
  • details: Any
  • is_error: bool
  • timestamp: float | None
  • metadata: dict[str, Any]

Usage​

class

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Attributes

  • input_tokens: int
  • output_tokens: int
  • cache_read_tokens: int
  • cache_write_tokens: int

UserMessage​

class

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Attributes

  • role: Literal['user']
  • content: list[Content]
  • timestamp: float | None
  • metadata: dict[str, Any]

adjust_max_tokens_for_thinking​

function

adjust_max_tokens_for_thinking(base_max_tokens: int, model_max_tokens: int, reasoning_level: ThinkingLevel, custom_budgets: ThinkingBudgets | None = None) -> tuple[int, int]

Adjust max_tokens to reserve space for a thinking budget.

Given a base max_tokens (the desired output capacity), increases it to accommodate the thinking budget while respecting the model's hard cap. If the model cap is too small to fit both, the thinking budget is reduced to leave at least min_output_tokens (1024) for output.

Returns

  • A (max_tokens, thinking_budget) tuple.

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FauxProvider​

class

FauxProvider(self, *, tokens_per_second: float | None = None, token_size_min: int = 3, token_size_max: int = 5)

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Attributes

  • call_count
  • pending_response_count: int
  • prompt_cache: dict[str, str] — Read-only access to the prompt cache for test assertions.

Methods

set_responses​

set_responses(responses: list[FauxResponseStep]) -> None

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append_responses​

append_responses(responses: list[FauxResponseStep]) -> None

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clear_prompt_cache​

clear_prompt_cache() -> None

Clear the prompt cache, useful between test scenarios.

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stream​

stream(model: Model, messages: list[Message], *, system_prompt: str = '', tools: list[ToolDefinition] | None = None, options: StreamOptions | None = None) -> MessageStream

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faux_assistant_message​

function

faux_assistant_message(content: str | FauxContentBlock | list[FauxContentBlock], *, stop_reason: str = 'stop', error_message: str | None = None) -> AssistantMessage

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faux_text​

function

faux_text(text: str) -> TextContent

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faux_thinking​

function

faux_thinking(thinking: str) -> ThinkingContent

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faux_tool_call​

function

faux_tool_call(name: str, arguments: dict[str, Any], *, id: str | None = None) -> ToolCall

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THINKING_LEVELS​

attribute

THINKING_LEVELS: list[ThinkingLevel] = ['off', 'minimal', 'low', 'medium', 'high', 'xhigh']

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clamp_thinking_level​

function

clamp_thinking_level(model: Model, level: ThinkingLevel) -> ThinkingLevel

Clamp level to the nearest supported level for model.

If level is already supported, return it unchanged. Otherwise search upward first (higher intensity), then downward, through the ordered level list to find the closest available level.

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get_supported_thinking_levels​

function

get_supported_thinking_levels(model: Model) -> list[ThinkingLevel]

Return the thinking levels supported by model.

  • Non-reasoning models only support ["off"].
  • For reasoning models, levels are filtered through the model's thinking_level_map. A level mapped to None is unsupported. "xhigh" is only included when it has an explicit (non-None) mapping. All other levels are included by default when the map omits them.

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models_are_equal​

function

models_are_equal(a: Model | None, b: Model | None) -> bool

Return True if a and b refer to the same model.

Comparison is by id and provider. Returns False when either argument is None.

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