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chore: import upstream snapshot with attribution
2026-07-13 13:22:28 +08:00

273 lines
13 KiB
Python

# SPDX-FileCopyrightText: 2022-present deepset GmbH <info@deepset.ai>
#
# SPDX-License-Identifier: Apache-2.0
import os
from collections.abc import Awaitable, Callable
from typing import Any, ClassVar
from openai.lib._pydantic import to_strict_json_schema
from pydantic import BaseModel
from haystack import component, default_from_dict, default_to_dict
from haystack.components.generators.chat import OpenAIResponsesChatGenerator
from haystack.dataclasses.streaming_chunk import StreamingCallbackT
from haystack.tools import ToolsType, deserialize_tools_or_toolset_inplace, serialize_tools_or_toolset
from haystack.utils import Secret, deserialize_callable, serialize_callable
@component
class AzureOpenAIResponsesChatGenerator(OpenAIResponsesChatGenerator):
"""
Completes chats using OpenAI's Responses API on Azure.
It works with the gpt-5 and o-series models and supports streaming responses
from OpenAI API. It uses [ChatMessage](https://docs.haystack.deepset.ai/docs/chatmessage)
format in input and output.
You can customize how the text is generated by passing parameters to the
OpenAI API. Use the `**generation_kwargs` argument when you initialize
the component or when you run it. Any parameter that works with
`openai.Responses.create` will work here too.
For details on OpenAI API parameters, see
[OpenAI documentation](https://platform.openai.com/docs/api-reference/responses).
### Usage example
<!-- test-ignore -->
```python
from haystack.components.generators.chat import AzureOpenAIResponsesChatGenerator
from haystack.dataclasses import ChatMessage
messages = [ChatMessage.from_user("What's Natural Language Processing?")]
client = AzureOpenAIResponsesChatGenerator(
azure_endpoint="https://example-resource.azure.openai.com/",
generation_kwargs={"reasoning": {"effort": "low", "summary": "auto"}}
)
response = client.run(messages)
print(response)
```
"""
SUPPORTED_MODELS: ClassVar[list[str]] = [
"gpt-5.4-pro",
"gpt-5.4",
"gpt-5.3-chat",
"gpt-5.3-codex",
"gpt-5.2-codex",
"gpt-5.2",
"gpt-5.2-chat",
"gpt-5.1-codex-max",
"gpt-5.1",
"gpt-5.1-chat",
"gpt-5.1-codex",
"gpt-5.1-codex-mini",
"gpt-5-pro",
"gpt-5-codex",
"gpt-5",
"gpt-5-mini",
"gpt-5-nano",
"gpt-5-chat",
"gpt-4o",
"gpt-4o-mini",
"computer-use-preview",
"gpt-4.1",
"gpt-4.1-nano",
"gpt-4.1-mini",
"gpt-image-1",
"gpt-image-1-mini",
"gpt-image-1.5",
"o1",
"o3-mini",
"o3",
"o4-mini",
]
"""A non-exhaustive list of chat models supported by this component.
See https://learn.microsoft.com/en-us/azure/foundry/openai/how-to/responses#model-support for the full list."""
# ruff: noqa: PLR0913
def __init__(
self,
*,
api_key: Secret | Callable[[], str] | Callable[[], Awaitable[str]] = Secret.from_env_var(
"AZURE_OPENAI_API_KEY", strict=False
),
azure_endpoint: str | None = None,
azure_deployment: str = "gpt-5-mini",
streaming_callback: StreamingCallbackT | None = None,
organization: str | None = None,
generation_kwargs: dict[str, Any] | None = None,
timeout: float | None = None,
max_retries: int | None = None,
tools: ToolsType | None = None,
tools_strict: bool = False,
http_client_kwargs: dict[str, Any] | None = None,
) -> None:
"""
Initialize the AzureOpenAIResponsesChatGenerator component.
:param api_key: The API key to use for authentication. Can be:
- A `Secret` object containing the API key.
- A `Secret` object containing the [Azure Active Directory token](https://www.microsoft.com/en-us/security/business/identity-access/microsoft-entra-id).
- A function that returns an Azure Active Directory token.
:param azure_endpoint: The endpoint of the deployed model, for example `"https://example-resource.azure.openai.com/"`.
:param azure_deployment: The deployment of the model, usually the model name.
:param organization: Your organization ID, defaults to `None`. For help, see
[Setting up your organization](https://platform.openai.com/docs/guides/production-best-practices/setting-up-your-organization).
:param streaming_callback: A callback function called when a new token is received from the stream.
It accepts [StreamingChunk](https://docs.haystack.deepset.ai/docs/data-classes#streamingchunk)
as an argument.
:param timeout: Timeout for OpenAI client calls. If not set, it defaults to either the
`OPENAI_TIMEOUT` environment variable, or 30 seconds.
:param max_retries: Maximum number of retries to contact OpenAI after an internal error.
If not set, it defaults to either the `OPENAI_MAX_RETRIES` environment variable, or set to 5.
:param generation_kwargs: Other parameters to use for the model. These parameters are sent
directly to the OpenAI endpoint.
See OpenAI [documentation](https://platform.openai.com/docs/api-reference/responses) for
more details.
Some of the supported parameters:
- `temperature`: What sampling temperature to use. Higher values like 0.8 will make the output more random,
while lower values like 0.2 will make it more focused and deterministic.
- `top_p`: An alternative to sampling with temperature, called nucleus sampling, where the model
considers the results of the tokens with top_p probability mass. For example, 0.1 means only the tokens
comprising the top 10% probability mass are considered.
- `previous_response_id`: The ID of the previous response.
Use this to create multi-turn conversations.
- `text_format`: A Pydantic model that enforces the structure of the model's response.
If provided, the output will always be validated against this
format (unless the model returns a tool call).
For details, see the [OpenAI Structured Outputs documentation](https://platform.openai.com/docs/guides/structured-outputs).
- `text`: A JSON schema that enforces the structure of the model's response.
If provided, the output will always be validated against this
format (unless the model returns a tool call).
Notes:
- Both JSON Schema and Pydantic models are supported for latest models starting from GPT-4o.
- If both are provided, `text_format` takes precedence and json schema passed to `text` is ignored.
- Currently, this component doesn't support streaming for structured outputs.
- Older models only support basic version of structured outputs through `{"type": "json_object"}`.
For detailed information on JSON mode, see the [OpenAI Structured Outputs documentation](https://platform.openai.com/docs/guides/structured-outputs#json-mode).
- `reasoning`: A dictionary of parameters for reasoning. For example:
- `summary`: The summary of the reasoning.
- `effort`: The level of effort to put into the reasoning. Can be `low`, `medium` or `high`.
- `generate_summary`: Whether to generate a summary of the reasoning.
Note: OpenAI does not return the reasoning tokens, but we can view summary if its enabled.
For details, see the [OpenAI Reasoning documentation](https://platform.openai.com/docs/guides/reasoning).
:param tools:
A list of Tool and/or Toolset objects, or a single Toolset for which the model can prepare calls.
:param tools_strict:
Whether to enable strict schema adherence for tool calls. If set to `True`, the model will follow exactly
the schema provided in the `parameters` field of the tool definition, but this may increase latency.
:param http_client_kwargs:
A dictionary of keyword arguments to configure a custom `httpx.Client`or `httpx.AsyncClient`.
For more information, see the [HTTPX documentation](https://www.python-httpx.org/api/#client).
"""
azure_endpoint = azure_endpoint or os.getenv("AZURE_OPENAI_ENDPOINT")
if azure_endpoint is None:
raise ValueError(
"You must provide `azure_endpoint` or set the `AZURE_OPENAI_ENDPOINT` environment variable."
)
self._azure_endpoint = azure_endpoint
self._azure_deployment = azure_deployment
super(AzureOpenAIResponsesChatGenerator, self).__init__( # noqa: UP008
api_key=api_key, # type: ignore[arg-type]
model=self._azure_deployment,
streaming_callback=streaming_callback,
api_base_url=f"{self._azure_endpoint.rstrip('/')}/openai/v1",
organization=organization,
generation_kwargs=generation_kwargs,
timeout=timeout,
max_retries=max_retries,
tools=tools,
tools_strict=tools_strict,
http_client_kwargs=http_client_kwargs,
)
def to_dict(self) -> dict[str, Any]:
"""
Serialize this component to a dictionary.
:returns:
The serialized component as a dictionary.
"""
callback_name = serialize_callable(self.streaming_callback) if self.streaming_callback else None
# API key can be a secret or a callable
serialized_api_key = (
serialize_callable(self.api_key)
if callable(self.api_key)
else self.api_key.to_dict()
if isinstance(self.api_key, Secret)
else None
)
# If the text format is a Pydantic model, it's converted to openai's json schema format
# If it's already a json schema, it's left as is
generation_kwargs = self.generation_kwargs.copy()
text_format = generation_kwargs.pop("text_format", None)
if text_format and isinstance(text_format, type) and issubclass(text_format, BaseModel):
json_schema = {
"format": {
"type": "json_schema",
"name": text_format.__name__,
"strict": True,
"schema": to_strict_json_schema(text_format),
}
}
# json schema needs to be passed to text parameter instead of text_format
generation_kwargs["text"] = json_schema
# OpenAI/MCP tools are passed as list of dictionaries
serialized_tools: dict[str, Any] | list[dict[str, Any]] | None
if self.tools and isinstance(self.tools, list) and isinstance(self.tools[0], dict):
# mypy can't infer that self.tools is list[dict] here
serialized_tools = self.tools
else:
serialized_tools = serialize_tools_or_toolset(self.tools) # type: ignore[arg-type]
return default_to_dict(
self,
azure_endpoint=self._azure_endpoint,
api_key=serialized_api_key,
azure_deployment=self._azure_deployment,
streaming_callback=callback_name,
organization=self.organization,
generation_kwargs=generation_kwargs,
timeout=self.timeout,
max_retries=self.max_retries,
tools=serialized_tools,
tools_strict=self.tools_strict,
http_client_kwargs=self.http_client_kwargs,
)
@classmethod
def from_dict(cls, data: dict[str, Any]) -> "AzureOpenAIResponsesChatGenerator":
"""
Deserialize this component from a dictionary.
:param data: The dictionary representation of this component.
:returns:
The deserialized component instance.
"""
# If api_key is a str, it's a callable (Secrets are handled automatically by default_from_dict)
serialized_api_key = data["init_parameters"].get("api_key")
if isinstance(serialized_api_key, str):
data["init_parameters"]["api_key"] = deserialize_callable(serialized_api_key)
# we only deserialize the tools if they are haystack tools
# because openai tools are not serialized in the same way
tools = data["init_parameters"].get("tools")
if tools and (
isinstance(tools, dict)
and tools.get("type") == "haystack.tools.toolset.Toolset"
or isinstance(tools, list)
and tools[0].get("type") == "haystack.tools.tool.Tool"
):
deserialize_tools_or_toolset_inplace(data["init_parameters"], key="tools")
init_params = data.get("init_parameters", {})
serialized_callback_handler = init_params.get("streaming_callback")
if serialized_callback_handler:
data["init_parameters"]["streaming_callback"] = deserialize_callable(serialized_callback_handler)
return default_from_dict(cls, data)