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Python

# Copyright (c) Microsoft. All rights reserved.
import inspect
import json
import logging
import sys
from collections.abc import AsyncIterable, Awaitable, Callable, Iterable
from copy import deepcopy
from typing import TYPE_CHECKING, Any, ClassVar, Literal, TypeVar
from azure.ai.agents.models import Agent as AzureAIAgentModel
from azure.ai.agents.models import (
AzureAISearchQueryType,
AzureAISearchTool,
BingGroundingTool,
CodeInterpreterTool,
FileSearchTool,
OpenApiAnonymousAuthDetails,
OpenApiTool,
ResponseFormatJsonSchemaType,
ThreadMessageOptions,
ToolDefinition,
ToolResources,
TruncationObject,
)
from azure.ai.projects.aio import AIProjectClient
from pydantic import Field
from semantic_kernel.agents import (
Agent,
AgentResponseItem,
AgentSpec,
AgentThread,
AzureAIAgentSettings,
DeclarativeSpecMixin,
ToolSpec,
register_agent_type,
)
from semantic_kernel.agents.azure_ai.agent_thread_actions import AgentThreadActions
from semantic_kernel.agents.azure_ai.azure_ai_channel import AzureAIChannel
from semantic_kernel.agents.channels.agent_channel import AgentChannel
from semantic_kernel.agents.open_ai.run_polling_options import RunPollingOptions
from semantic_kernel.connectors.ai.function_calling_utils import kernel_function_metadata_to_function_call_format
from semantic_kernel.connectors.ai.function_choice_behavior import FunctionChoiceBehavior
from semantic_kernel.contents.chat_message_content import ChatMessageContent
from semantic_kernel.contents.utils.author_role import AuthorRole
from semantic_kernel.exceptions.agent_exceptions import (
AgentInitializationException,
AgentInvokeException,
AgentThreadOperationException,
)
from semantic_kernel.functions import KernelArguments
from semantic_kernel.functions.kernel_function import TEMPLATE_FORMAT_MAP
from semantic_kernel.functions.kernel_plugin import KernelPlugin
from semantic_kernel.kernel import Kernel
from semantic_kernel.prompt_template.prompt_template_config import PromptTemplateConfig
from semantic_kernel.utils.feature_stage_decorator import experimental
from semantic_kernel.utils.naming import generate_random_ascii_name
from semantic_kernel.utils.telemetry.agent_diagnostics.decorators import (
trace_agent_get_response,
trace_agent_invocation,
trace_agent_streaming_invocation,
)
from semantic_kernel.utils.telemetry.user_agent import APP_INFO, SEMANTIC_KERNEL_USER_AGENT
if TYPE_CHECKING:
from azure.ai.agents.models import ToolResources
from azure.core.credentials_async import AsyncTokenCredential
from semantic_kernel.contents.streaming_chat_message_content import StreamingChatMessageContent
from semantic_kernel.kernel_pydantic import KernelBaseSettings
if sys.version_info >= (3, 12):
from typing import override # pragma: no cover
else:
from typing_extensions import override # pragma: no cover
logger: logging.Logger = logging.getLogger(__name__)
AgentsApiResponseFormatOption = str | ResponseFormatJsonSchemaType
_T = TypeVar("_T", bound="AzureAIAgent")
# region Declarative Spec
_TOOL_BUILDERS: dict[str, Callable[[ToolSpec, Kernel | None], ToolDefinition]] = {}
def _register_tool(tool_type: str):
def decorator(fn: Callable[[ToolSpec, Kernel | None], ToolDefinition]):
_TOOL_BUILDERS[tool_type.lower()] = fn
return fn
return decorator
@_register_tool("azure_ai_search")
def _azure_ai_search(spec: ToolSpec) -> AzureAISearchTool:
opts = spec.options or {}
connections = opts.get("tool_connections")
if not connections or not isinstance(connections, list) or not connections[0]:
raise AgentInitializationException(f"Missing or malformed 'tool_connections' in: {spec}")
conn_id = connections[0]
index_name = opts.get("index_name")
if not index_name or not isinstance(index_name, str):
raise AgentInitializationException(f"Missing or malformed 'index_name' in: {spec}")
raw_query_type = opts.get("query_type", AzureAISearchQueryType.SIMPLE)
if type(raw_query_type) is str:
try:
query_type = AzureAISearchQueryType(raw_query_type.lower())
except ValueError:
raise AgentInitializationException(f"Invalid query_type '{raw_query_type}' in: {spec}")
else:
query_type = raw_query_type
filter_expr = opts.get("filter", "")
top_k = opts.get("top_k", 5)
if not isinstance(top_k, int):
raise AgentInitializationException(f"'top_k' must be an integer in: {spec}")
return AzureAISearchTool(
index_connection_id=conn_id,
index_name=index_name,
query_type=query_type,
filter=filter_expr,
top_k=top_k,
)
@_register_tool("azure_function")
def _azure_function(spec: ToolSpec) -> ToolDefinition:
# TODO(evmattso): Implement Azure Function tool support
raise NotImplementedError("Azure Function tools are not yet supported with the Azure AI Agent Declarative Spec.")
@_register_tool("bing_grounding")
def _bing_grounding(spec: ToolSpec) -> BingGroundingTool:
opts = spec.options or {}
connections = spec.options.get("tool_connections")
if not connections or not isinstance(connections, list) or not connections[0]:
raise AgentInitializationException(f"Missing or malformed 'tool_connections' in: {spec}")
conn_id = connections[0]
market = opts.get("market", "")
set_lang = opts.get("set_lang", "")
count = opts.get("count", 5)
if not isinstance(count, int):
raise AgentInitializationException(f"'count' must be an integer in: {spec}")
freshness = opts.get("freshness", "")
return BingGroundingTool(connection_id=conn_id, market=market, set_lang=set_lang, count=count, freshness=freshness)
@_register_tool("code_interpreter")
def _code_interpreter(spec: ToolSpec) -> CodeInterpreterTool:
file_ids = spec.options.get("file_ids")
return CodeInterpreterTool(file_ids=file_ids) if file_ids else CodeInterpreterTool()
@_register_tool("file_search")
def _file_search(spec: ToolSpec) -> FileSearchTool:
vector_store_ids = spec.options.get("vector_store_ids")
if not vector_store_ids or not isinstance(vector_store_ids, list) or not vector_store_ids[0]:
raise AgentInitializationException(f"Missing or malformed 'vector_store_ids' in: {spec}")
return FileSearchTool(vector_store_ids=vector_store_ids)
@_register_tool("function")
def _function(spec: ToolSpec, kernel: "Kernel") -> ToolDefinition:
def parse_fqn(fqn: str) -> tuple[str, str]:
parts = fqn.split(".")
if len(parts) != 2:
raise AgentInitializationException(f"Function `{fqn}` must be in the form `pluginName.functionName`.")
return parts[0], parts[1]
if not spec.id:
raise AgentInitializationException("Function ID is required for function tools.")
plugin_name, function_name = parse_fqn(spec.id)
funcs = kernel.get_list_of_function_metadata_filters({"included_functions": f"{plugin_name}-{function_name}"})
match len(funcs):
case 0:
raise AgentInitializationException(f"Function `{spec.id}` not found in kernel.")
case 1:
return kernel_function_metadata_to_function_call_format(funcs[0]) # type: ignore[return-value]
case _:
raise AgentInitializationException(f"Multiple definitions found for `{spec.id}`. Please remove duplicates.")
@_register_tool("openapi")
def _openapi(spec: ToolSpec) -> OpenApiTool:
opts = spec.options or {}
if not spec.id:
raise AgentInitializationException("OpenAPI tool requires a non-empty 'id' (used as name).")
if not spec.description:
raise AgentInitializationException(f"OpenAPI tool '{spec.id}' requires a 'description'.")
raw_spec = opts.get("specification")
if not raw_spec:
raise AgentInitializationException(f"OpenAPI tool '{spec.id}' is missing required 'specification' field.")
try:
parsed_spec = json.loads(raw_spec) if isinstance(raw_spec, str) else raw_spec
except json.JSONDecodeError as e:
raise AgentInitializationException(f"Invalid JSON in OpenAPI 'specification' field: {e}") from e
auth = opts.get("auth", OpenApiAnonymousAuthDetails())
return OpenApiTool(
name=spec.id,
description=spec.description,
spec=parsed_spec,
auth=auth,
default_parameters=opts.get("default_parameters"),
)
def _build_tool(spec: ToolSpec, kernel: "Kernel") -> ToolDefinition:
if not spec.type:
raise AgentInitializationException("Tool spec must include a 'type' field.")
try:
builder = _TOOL_BUILDERS[spec.type.lower()]
except KeyError as exc:
raise AgentInitializationException(f"Unsupported tool type: {spec.type}") from exc
sig = inspect.signature(builder)
return builder(spec) if len(sig.parameters) == 1 else builder(spec, kernel) # type: ignore[call-arg]
def _build_tool_resources(tool_defs: list[ToolDefinition]) -> ToolResources | None:
"""Collects tool resources from known tool types with resource needs."""
resources: dict[str, Any] = {}
for tool in tool_defs:
if isinstance(tool, CodeInterpreterTool):
resources["code_interpreter"] = tool.resources.code_interpreter
elif isinstance(tool, AzureAISearchTool):
resources["azure_ai_search"] = tool.resources.azure_ai_search
elif isinstance(tool, FileSearchTool):
resources["file_search"] = tool.resources.file_search
return ToolResources(**resources) if resources else None
# endregion
# region Thread
@experimental
class AzureAIAgentThread(AgentThread):
"""Azure AI Agent Thread class."""
def __init__(
self,
*,
client: AIProjectClient,
messages: list[ThreadMessageOptions] | None = None,
metadata: dict[str, str] | None = None,
thread_id: str | None = None,
tool_resources: "ToolResources | None" = None,
) -> None:
"""Initialize the Azure AI Agent Thread.
Args:
client: The Azure AI Project client.
messages: The messages to initialize the thread with.
metadata: The metadata for the thread.
thread_id: The ID of the thread
tool_resources: The tool resources for the thread.
"""
super().__init__()
if client is None:
raise ValueError("Client cannot be None")
self._client = client
self._id = thread_id
self._messages = messages or []
self._metadata = metadata
self._tool_resources = tool_resources
@override
async def _create(self) -> str:
"""Starts the thread and returns its ID."""
try:
response = await self._client.agents.threads.create(
messages=self._messages,
metadata=self._metadata,
tool_resources=self._tool_resources,
)
except Exception as ex:
raise AgentThreadOperationException(
"The thread could not be created due to an error response from the service."
) from ex
return response.id
@override
async def _delete(self) -> None:
"""Ends the current thread."""
if self._id is None:
raise AgentThreadOperationException("The thread cannot be deleted because it has not been created yet.")
try:
await self._client.agents.threads.delete(self._id)
except Exception as ex:
raise AgentThreadOperationException(
"The thread could not be deleted due to an error response from the service."
) from ex
@override
async def _on_new_message(self, new_message: str | ChatMessageContent) -> None:
"""Called when a new message has been contributed to the chat."""
if isinstance(new_message, str):
new_message = ChatMessageContent(role=AuthorRole.USER, content=new_message)
if (
not new_message.metadata
or "thread_id" not in new_message.metadata
or new_message.metadata["thread_id"] != self.id
):
assert self.id is not None # nosec
await AgentThreadActions.create_message(self._client, self.id, new_message)
async def get_messages(self, sort_order: Literal["asc", "desc"] = "desc") -> AsyncIterable[ChatMessageContent]:
"""Get the messages in the thread.
Args:
sort_order: The order to sort the messages in. Either "asc" or "desc".
Yields:
An AsyncIterable of ChatMessageContent of the messages in the thread.
"""
if self._is_deleted:
raise ValueError("The thread has been deleted.")
if self._id is None:
await self.create()
assert self.id is not None # nosec
async for message in AgentThreadActions.get_messages(self._client, self.id, sort_order=sort_order):
yield message
@experimental
@register_agent_type("foundry_agent")
class AzureAIAgent(DeclarativeSpecMixin, Agent):
"""Azure AI Agent class."""
client: AIProjectClient
definition: AzureAIAgentModel
polling_options: RunPollingOptions = Field(default_factory=RunPollingOptions)
channel_type: ClassVar[type[AgentChannel]] = AzureAIChannel
def __init__(
self,
*,
arguments: "KernelArguments | None" = None,
client: AIProjectClient,
definition: AzureAIAgentModel,
kernel: "Kernel | None" = None,
plugins: list[KernelPlugin | object] | dict[str, KernelPlugin | object] | None = None,
polling_options: RunPollingOptions | None = None,
prompt_template_config: "PromptTemplateConfig | None" = None,
**kwargs: Any,
) -> None:
"""Initialize the Azure AI Agent.
Args:
arguments: The KernelArguments instance
client: The AzureAI Project client. See "Quickstart: Create a new agent" guide
https://learn.microsoft.com/en-us/azure/ai-services/agents/quickstart?pivots=programming-language-python-azure
for details on how to create a new agent.
definition: The AzureAI Agent model created via the AzureAI Project client.
kernel: The Kernel instance used if invoking plugins
plugins: The plugins for the agent. If plugins are included along with a kernel, any plugins
that already exist in the kernel will be overwritten.
polling_options: The polling options for the agent.
prompt_template_config: The prompt template configuration. If this is provided along with
instructions, the prompt template will be used in place of the instructions.
**kwargs: Additional keyword arguments
"""
args: dict[str, Any] = {
"client": client,
"definition": definition,
"name": definition.name or f"azure_agent_{generate_random_ascii_name(length=8)}",
"description": definition.description,
}
if definition.id is not None:
args["id"] = definition.id
if kernel is not None:
args["kernel"] = kernel
if arguments is not None:
args["arguments"] = arguments
if (
definition.instructions
and prompt_template_config
and definition.instructions != prompt_template_config.template
):
logger.info(
f"Both `instructions` ({definition.instructions}) and `prompt_template_config` "
f"({prompt_template_config.template}) were provided. Using template in `prompt_template_config` "
"and ignoring `instructions`."
)
if plugins is not None:
args["plugins"] = plugins
if definition.instructions is not None:
args["instructions"] = definition.instructions
if prompt_template_config is not None:
args["prompt_template"] = TEMPLATE_FORMAT_MAP[prompt_template_config.template_format](
prompt_template_config=prompt_template_config
)
if prompt_template_config.template is not None:
# Use the template from the prompt_template_config if it is provided
args["instructions"] = prompt_template_config.template
if polling_options is not None:
args["polling_options"] = polling_options
if kwargs:
args.update(kwargs)
super().__init__(**args)
@staticmethod
def create_client(
credential: "AsyncTokenCredential",
endpoint: str | None = None,
api_version: str | None = None,
**kwargs: Any,
) -> AIProjectClient:
"""Create the Azure AI Project client using the connection string.
Args:
credential: The credential
endpoint: The Azure AI Foundry endpoint
api_version: Optional API version to use
kwargs: Additional keyword arguments
Returns:
AIProjectClient: The Azure AI Project client
"""
if endpoint is None:
ai_agent_settings = AzureAIAgentSettings()
if not ai_agent_settings.endpoint:
raise AgentInitializationException("Please provide a valid Azure AI endpoint.")
endpoint = ai_agent_settings.endpoint
client_kwargs: dict[str, Any] = {
**kwargs,
**({"user_agent": SEMANTIC_KERNEL_USER_AGENT} if APP_INFO else {}),
}
if api_version:
client_kwargs["api_version"] = api_version
return AIProjectClient(
credential=credential,
endpoint=endpoint,
**client_kwargs,
)
# region Declarative Spec
@override
@classmethod
async def _from_dict(
cls: type[_T],
data: dict,
*,
kernel: Kernel,
prompt_template_config: PromptTemplateConfig | None = None,
**kwargs,
) -> _T:
"""Create an Azure AI Agent from the provided dictionary.
Args:
data: The dictionary containing the agent data.
kernel: The kernel to use for the agent.
prompt_template_config: The prompt template configuration.
kwargs: Additional keyword arguments. Note: unsupported keys may raise validation errors.
Returns:
AzureAIAgent: The Azure AI Agent instance.
"""
client: AIProjectClient = kwargs.pop("client", None)
if client is None:
raise AgentInitializationException("Missing required 'client' in AzureAIAgent._from_dict()")
spec = AgentSpec.model_validate(data)
if "settings" in kwargs:
kwargs.pop("settings")
args = data.pop("arguments", None)
arguments = None
if args:
arguments = KernelArguments(**args)
# Handle arguments from kwargs, merging with any arguments from data
if "arguments" in kwargs and kwargs["arguments"] is not None:
incoming_args = kwargs["arguments"]
arguments = arguments | incoming_args if arguments is not None else incoming_args
if spec.id:
existing_definition = await client.agents.get_agent(spec.id)
# Create a mutable clone
definition = deepcopy(existing_definition)
# Selectively override attributes from spec
if spec.name is not None:
setattr(definition, "name", spec.name)
if spec.description is not None:
setattr(definition, "description", spec.description)
if spec.instructions is not None:
setattr(definition, "instructions", spec.instructions)
if spec.extras:
merged_metadata = dict(getattr(definition, "metadata", {}) or {})
merged_metadata.update(spec.extras)
setattr(definition, "metadata", merged_metadata)
return cls(
definition=definition,
client=client,
kernel=kernel,
prompt_template_config=prompt_template_config,
arguments=arguments,
**kwargs,
)
if not (spec.model and spec.model.id):
raise ValueError("model.id required when creating a new Azure AI agent")
# Build tool definitions & resources
tool_objs = [_build_tool(t, kernel) for t in spec.tools if t.type != "function"]
tool_defs = [d for tool in tool_objs for d in (tool.definitions if hasattr(tool, "definitions") else [tool])]
tool_resources = _build_tool_resources(tool_objs)
try:
agent_definition = await client.agents.create_agent(
model=spec.model.id,
name=spec.name,
description=spec.description,
instructions=spec.instructions,
tools=tool_defs,
tool_resources=tool_resources,
metadata=spec.extras,
**kwargs,
)
except Exception as ex:
print(f"Error creating agent: {ex}")
return cls(
definition=agent_definition,
client=client,
kernel=kernel,
arguments=arguments,
prompt_template_config=prompt_template_config,
**kwargs,
)
@override
@classmethod
def resolve_placeholders(
cls: type[_T],
yaml_str: str,
settings: "KernelBaseSettings | None" = None,
extras: dict[str, Any] | None = None,
) -> str:
"""Substitute ${AzureAI:Key} placeholders with fields from AzureAIAgentSettings and extras."""
import re
pattern = re.compile(r"\$\{([^}]+)\}")
# Build the mapping only if settings is provided and valid
field_mapping: dict[str, Any] = {}
if settings is None:
settings = AzureAIAgentSettings()
if not isinstance(settings, AzureAIAgentSettings):
raise AgentInitializationException(f"Expected AzureAIAgentSettings, got {type(settings).__name__}")
field_mapping.update({
"ChatModelId": getattr(settings, "model_deployment_name", None),
"Endpoint": getattr(settings, "endpoint", None),
"AgentId": getattr(settings, "agent_id", None),
"BingConnectionId": getattr(settings, "bing_connection_id", None),
"AzureAISearchConnectionId": getattr(settings, "azure_ai_search_connection_id", None),
"AzureAISearchIndexName": getattr(settings, "azure_ai_search_index_name", None),
})
if extras:
field_mapping.update(extras)
def replacer(match: re.Match[str]) -> str:
"""Replace the matched placeholder with the corresponding value from field_mapping."""
full_key = match.group(1) # for example, AzureAI:AzureAISearchConnectionId
section, _, key = full_key.partition(":")
if section != "AzureAI":
return match.group(0)
# Try short key first (AzureAISearchConnectionId), then full (AzureAI:AzureAISearchConnectionId)
return str(field_mapping.get(key) or field_mapping.get(full_key) or match.group(0))
result = pattern.sub(replacer, yaml_str)
# Safety check for unresolved placeholders
unresolved = pattern.findall(result)
if unresolved:
raise AgentInitializationException(
f"Unresolved placeholders in spec: {', '.join(f'${{{key}}}' for key in unresolved)}"
)
return result
# endregion
# region Invocation Methods
@trace_agent_get_response
@override
async def get_response(
self,
messages: str | ChatMessageContent | list[str | ChatMessageContent] | None = None,
*,
thread: AgentThread | None = None,
arguments: KernelArguments | None = None,
kernel: Kernel | None = None,
model: str | None = None,
instructions_override: str | None = None,
additional_instructions: str | None = None,
additional_messages: list[ThreadMessageOptions] | None = None,
tools: list[ToolDefinition] | None = None,
temperature: float | None = None,
top_p: float | None = None,
max_prompt_tokens: int | None = None,
max_completion_tokens: int | None = None,
truncation_strategy: TruncationObject | None = None,
response_format: AgentsApiResponseFormatOption | None = None,
parallel_tool_calls: bool | None = None,
metadata: dict[str, str] | None = None,
polling_options: RunPollingOptions | None = None,
function_choice_behavior: FunctionChoiceBehavior | None = None,
**kwargs: Any,
) -> AgentResponseItem[ChatMessageContent]:
"""Get a response from the agent on a thread.
Args:
messages: The input chat message content either as a string, ChatMessageContent or
a list of strings or ChatMessageContent.
thread: The thread to use for the agent.
arguments: The arguments for the agent.
kernel: The kernel to use for the agent.
model: The model to use for the agent.
instructions_override: Instructions to override the default instructions.
additional_instructions: Additional instructions for the agent.
additional_messages: Additional messages for the agent.
tools: Tools for the agent.
temperature: Temperature for the agent.
top_p: Top p for the agent.
max_prompt_tokens: Maximum prompt tokens for the agent.
max_completion_tokens: Maximum completion tokens for the agent.
truncation_strategy: Truncation strategy for the agent.
response_format: Response format for the agent.
parallel_tool_calls: Whether to allow parallel tool calls.
metadata: Metadata for the agent.
polling_options: The polling options for the agent.
function_choice_behavior: The function choice behavior to control which kernel
functions are available. Only Auto is supported; other types will raise an error.
**kwargs: Additional keyword arguments.
Returns:
AgentResponseItem[ChatMessageContent]: The response from the agent.
"""
thread = await self._ensure_thread_exists_with_messages(
messages=messages,
thread=thread,
construct_thread=lambda: AzureAIAgentThread(client=self.client),
expected_type=AzureAIAgentThread,
)
assert thread.id is not None # nosec
if arguments is None:
arguments = KernelArguments(**kwargs)
else:
arguments.update(kwargs)
kernel = kernel or self.kernel
arguments = self._merge_arguments(arguments)
run_level_params = {
"model": model,
"instructions_override": instructions_override,
"additional_instructions": additional_instructions,
"additional_messages": additional_messages,
"tools": tools,
"temperature": temperature,
"top_p": top_p,
"max_prompt_tokens": max_prompt_tokens,
"max_completion_tokens": max_completion_tokens,
"truncation_strategy": truncation_strategy,
"response_format": response_format,
"parallel_tool_calls": parallel_tool_calls,
"polling_options": polling_options,
"metadata": metadata,
}
run_level_params = {k: v for k, v in run_level_params.items() if v is not None}
response_messages: list[ChatMessageContent] = []
async for is_visible, response in AgentThreadActions.invoke(
agent=self,
thread_id=thread.id,
kernel=kernel,
arguments=arguments,
function_choice_behavior=function_choice_behavior,
**run_level_params, # type: ignore
):
if is_visible and response.metadata.get("code") is not True:
response.metadata["thread_id"] = thread.id
response_messages.append(response)
if not response_messages:
raise AgentInvokeException("No response messages were returned from the agent.")
final_message = response_messages[-1]
await thread.on_new_message(final_message)
return AgentResponseItem(message=final_message, thread=thread)
@trace_agent_invocation
@override
async def invoke(
self,
messages: str | ChatMessageContent | list[str | ChatMessageContent] | None = None,
*,
thread: AgentThread | None = None,
on_intermediate_message: Callable[[ChatMessageContent], Awaitable[None]] | None = None,
arguments: KernelArguments | None = None,
kernel: Kernel | None = None,
model: str | None = None,
instructions_override: str | None = None,
additional_instructions: str | None = None,
additional_messages: list[ThreadMessageOptions] | None = None,
tools: list[ToolDefinition] | None = None,
temperature: float | None = None,
top_p: float | None = None,
max_prompt_tokens: int | None = None,
max_completion_tokens: int | None = None,
truncation_strategy: TruncationObject | None = None,
response_format: AgentsApiResponseFormatOption | None = None,
parallel_tool_calls: bool | None = None,
metadata: dict[str, str] | None = None,
polling_options: RunPollingOptions | None = None,
function_choice_behavior: FunctionChoiceBehavior | None = None,
**kwargs: Any,
) -> AsyncIterable[AgentResponseItem[ChatMessageContent]]:
"""Invoke the agent on the specified thread.
Args:
messages: The input chat message content either as a string, ChatMessageContent or
a list of strings or ChatMessageContent.
thread: The thread to use for the agent.
on_intermediate_message: A callback function to handle intermediate steps of the agent's execution.
arguments: The arguments for the agent.
kernel: The kernel to use for the agent.
model: The model to use for the agent.
instructions_override: Instructions to override the default instructions.
additional_instructions: Additional instructions for the agent.
additional_messages: Additional messages for the agent.
tools: Tools for the agent.
temperature: Temperature for the agent.
top_p: Top p for the agent.
max_prompt_tokens: Maximum prompt tokens for the agent.
max_completion_tokens: Maximum completion tokens for the agent.
truncation_strategy: Truncation strategy for the agent.
response_format: Response format for the agent.
parallel_tool_calls: Whether to allow parallel tool calls.
polling_options: The polling options for the agent.
metadata: Metadata for the agent.
function_choice_behavior: The function choice behavior to control which kernel
functions are available. Only Auto is supported; other types will raise an error.
**kwargs: Additional keyword arguments.
Yields:
AgentResponseItem[ChatMessageContent]: The response from the agent.
"""
thread = await self._ensure_thread_exists_with_messages(
messages=messages,
thread=thread,
construct_thread=lambda: AzureAIAgentThread(client=self.client),
expected_type=AzureAIAgentThread,
)
assert thread.id is not None # nosec
if arguments is None:
arguments = KernelArguments(**kwargs)
else:
arguments.update(kwargs)
kernel = kernel or self.kernel
arguments = self._merge_arguments(arguments)
run_level_params = {
"model": model,
"instructions_override": instructions_override,
"additional_instructions": additional_instructions,
"additional_messages": additional_messages,
"tools": tools,
"temperature": temperature,
"top_p": top_p,
"max_prompt_tokens": max_prompt_tokens,
"max_completion_tokens": max_completion_tokens,
"truncation_strategy": truncation_strategy,
"response_format": response_format,
"parallel_tool_calls": parallel_tool_calls,
"metadata": metadata,
"polling_options": polling_options,
}
run_level_params = {k: v for k, v in run_level_params.items() if v is not None}
async for is_visible, message in AgentThreadActions.invoke(
agent=self,
thread_id=thread.id,
kernel=kernel,
arguments=arguments,
function_choice_behavior=function_choice_behavior,
**run_level_params, # type: ignore
):
message.metadata["thread_id"] = thread.id
await thread.on_new_message(message)
if is_visible:
# Only yield visible messages
yield AgentResponseItem(message=message, thread=thread)
elif on_intermediate_message:
# Emit tool-related messages only via callback
await on_intermediate_message(message)
@trace_agent_streaming_invocation
@override
async def invoke_stream(
self,
messages: str | ChatMessageContent | list[str | ChatMessageContent] | None = None,
*,
thread: AgentThread | None = None,
on_intermediate_message: Callable[[ChatMessageContent], Awaitable[None]] | None = None,
arguments: KernelArguments | None = None,
additional_instructions: str | None = None,
additional_messages: list[ThreadMessageOptions] | None = None,
instructions_override: str | None = None,
kernel: Kernel | None = None,
model: str | None = None,
tools: list[ToolDefinition] | None = None,
temperature: float | None = None,
top_p: float | None = None,
max_prompt_tokens: int | None = None,
max_completion_tokens: int | None = None,
truncation_strategy: TruncationObject | None = None,
response_format: AgentsApiResponseFormatOption | None = None,
parallel_tool_calls: bool | None = None,
metadata: dict[str, str] | None = None,
function_choice_behavior: FunctionChoiceBehavior | None = None,
**kwargs: Any,
) -> AsyncIterable[AgentResponseItem["StreamingChatMessageContent"]]:
"""Invoke the agent on the specified thread with a stream of messages.
Args:
messages: The input chat message content either as a string, ChatMessageContent or
a list of strings or ChatMessageContent.
thread: The thread to use for the agent.
on_intermediate_message: A callback function to handle intermediate steps of the
agent's execution as fully formed messages.
arguments: The arguments for the agent.
additional_instructions: Additional instructions for the agent.
additional_messages: Additional messages for the agent.
instructions_override: Instructions to override the default instructions.
kernel: The kernel to use for the agent.
model: The model to use for the agent.
tools: Tools for the agent.
temperature: Temperature for the agent.
top_p: Top p for the agent.
max_prompt_tokens: Maximum prompt tokens for the agent.
max_completion_tokens: Maximum completion tokens for the agent.
truncation_strategy: Truncation strategy for the agent.
response_format: Response format for the agent.
parallel_tool_calls: Whether to allow parallel tool calls.
metadata: Metadata for the agent.
function_choice_behavior: The function choice behavior to control which kernel
functions are available. Only Auto is supported; other types will raise an error.
**kwargs: Additional keyword arguments.
Yields:
AgentResponseItem[StreamingChatMessageContent]: The response from the agent.
"""
thread = await self._ensure_thread_exists_with_messages(
messages=messages,
thread=thread,
construct_thread=lambda: AzureAIAgentThread(client=self.client),
expected_type=AzureAIAgentThread,
)
assert thread.id is not None # nosec
if arguments is None:
arguments = KernelArguments(**kwargs)
else:
arguments.update(kwargs)
kernel = kernel or self.kernel
arguments = self._merge_arguments(arguments)
run_level_params = {
"model": model,
"instructions_override": instructions_override,
"additional_instructions": additional_instructions,
"additional_messages": additional_messages,
"tools": tools,
"temperature": temperature,
"top_p": top_p,
"max_prompt_tokens": max_prompt_tokens,
"max_completion_tokens": max_completion_tokens,
"truncation_strategy": truncation_strategy,
"response_format": response_format,
"parallel_tool_calls": parallel_tool_calls,
"metadata": metadata,
}
run_level_params = {k: v for k, v in run_level_params.items() if v is not None}
collected_messages: list[ChatMessageContent] | None = [] if on_intermediate_message else None
start_idx = 0
async for message in AgentThreadActions.invoke_stream(
agent=self,
thread_id=thread.id,
output_messages=collected_messages,
kernel=kernel,
arguments=arguments,
function_choice_behavior=function_choice_behavior,
**run_level_params, # type: ignore
):
# Before yielding the current streamed message, emit any new full messages first
if collected_messages is not None:
new_messages = collected_messages[start_idx:]
start_idx = len(collected_messages)
for new_msg in new_messages:
new_msg.metadata["thread_id"] = thread.id
await thread.on_new_message(new_msg)
if on_intermediate_message:
await on_intermediate_message(new_msg)
# Now yield the current streamed content (StreamingTextContent)
message.metadata["thread_id"] = thread.id
yield AgentResponseItem(message=message, thread=thread)
def get_channel_keys(self) -> Iterable[str]:
"""Get the channel keys.
Returns:
Iterable[str]: The channel keys.
"""
# Distinguish from other channel types.
yield f"{AzureAIAgent.__name__}"
# Distinguish between different agent IDs
yield self.id
# Distinguish between agent names
yield self.name
async def create_channel(self, thread_id: str | None = None) -> AgentChannel:
"""Create a channel.
Args:
thread_id: The ID of the thread to create the channel for. If not provided
a new thread will be created.
"""
thread = AzureAIAgentThread(client=self.client, thread_id=thread_id)
if thread.id is None:
await thread.create()
assert thread.id is not None # nosec
return AzureAIChannel(client=self.client, thread_id=thread.id)