Files
microsoft--semantic-kernel/python/semantic_kernel/functions/kernel_function.py
T
wehub-resource-sync b957a53def
CodeQL / Analyze (csharp) (push) Waiting to run
CodeQL / Analyze (python) (push) Waiting to run
chore: import upstream snapshot with attribution
2026-07-13 13:21:23 +08:00

484 lines
20 KiB
Python

# Copyright (c) Microsoft. All rights reserved.
import json
import logging
import time
from abc import abstractmethod
from collections.abc import AsyncGenerator, Callable, Mapping, Sequence
from copy import copy, deepcopy
from inspect import isasyncgen, isgenerator
from typing import TYPE_CHECKING, Any
from opentelemetry import metrics, trace
from opentelemetry.semconv.attributes.error_attributes import ERROR_TYPE
from pydantic import BaseModel, Field
from semantic_kernel.filters.filter_types import FilterTypes
from semantic_kernel.filters.functions.function_invocation_context import FunctionInvocationContext
from semantic_kernel.filters.kernel_filters_extension import _rebuild_function_invocation_context
from semantic_kernel.functions.function_result import FunctionResult
from semantic_kernel.functions.kernel_arguments import KernelArguments
from semantic_kernel.functions.kernel_function_log_messages import KernelFunctionLogMessages
from semantic_kernel.functions.kernel_function_metadata import KernelFunctionMetadata
from semantic_kernel.functions.kernel_parameter_metadata import KernelParameterMetadata
from semantic_kernel.kernel_pydantic import KernelBaseModel
from semantic_kernel.prompt_template.const import (
HANDLEBARS_TEMPLATE_FORMAT_NAME,
JINJA2_TEMPLATE_FORMAT_NAME,
KERNEL_TEMPLATE_FORMAT_NAME,
TEMPLATE_FORMAT_TYPES,
)
from semantic_kernel.prompt_template.handlebars_prompt_template import HandlebarsPromptTemplate
from semantic_kernel.prompt_template.jinja2_prompt_template import Jinja2PromptTemplate
from semantic_kernel.prompt_template.kernel_prompt_template import KernelPromptTemplate
from semantic_kernel.prompt_template.prompt_template_base import PromptTemplateBase
from semantic_kernel.utils.telemetry.model_diagnostics import function_tracer
from semantic_kernel.utils.telemetry.model_diagnostics.gen_ai_attributes import TOOL_CALL_ARGUMENTS, TOOL_CALL_RESULT
from ..contents.chat_message_content import ChatMessageContent
from ..contents.text_content import TextContent
if TYPE_CHECKING:
from semantic_kernel.connectors.ai.prompt_execution_settings import PromptExecutionSettings
from semantic_kernel.contents.streaming_content_mixin import StreamingContentMixin
from semantic_kernel.functions.kernel_function_from_method import KernelFunctionFromMethod
from semantic_kernel.functions.kernel_function_from_prompt import KernelFunctionFromPrompt
from semantic_kernel.kernel import Kernel
from semantic_kernel.prompt_template.prompt_template_config import PromptTemplateConfig
# Logger, tracer and meter for observability
logger: logging.Logger = logging.getLogger(__name__)
tracer: trace.Tracer = trace.get_tracer(__name__)
meter: metrics.Meter = metrics.get_meter_provider().get_meter(__name__)
MEASUREMENT_FUNCTION_TAG_NAME: str = "semantic_kernel.function.name"
TEMPLATE_FORMAT_MAP: dict[TEMPLATE_FORMAT_TYPES, type[PromptTemplateBase]] = {
KERNEL_TEMPLATE_FORMAT_NAME: KernelPromptTemplate,
HANDLEBARS_TEMPLATE_FORMAT_NAME: HandlebarsPromptTemplate,
JINJA2_TEMPLATE_FORMAT_NAME: Jinja2PromptTemplate,
}
def _create_function_duration_histogram():
return meter.create_histogram(
"semantic_kernel.function.invocation.duration",
unit="s",
description="Measures the duration of a function's execution",
)
def _create_function_streaming_duration_histogram():
return meter.create_histogram(
"semantic_kernel.function.streaming.duration",
unit="s",
description="Measures the duration of a function's streaming execution",
)
class KernelFunction(KernelBaseModel):
"""Semantic Kernel function.
Attributes:
name (str): The name of the function. Must be upper/lower case letters and
underscores with a minimum length of 1.
plugin_name (str): The name of the plugin that contains this function. Must be upper/lower
case letters and underscores with a minimum length of 1.
description (Optional[str]): The description of the function.
is_prompt (bool): Whether the function is semantic.
stream_function (Optional[Callable[..., Any]]): The stream function for the function.
parameters (List[KernelParameterMetadata]): The parameters for the function.
return_parameter (Optional[KernelParameterMetadata]): The return parameter for the function.
function (Callable[..., Any]): The function to call.
prompt_execution_settings (PromptExecutionSettings): The AI prompt execution settings.
prompt_template_config (PromptTemplateConfig): The prompt template configuration.
metadata (Optional[KernelFunctionMetadata]): The metadata for the function.
"""
# some attributes are now properties, still listed here for documentation purposes
metadata: KernelFunctionMetadata
invocation_duration_histogram: metrics.Histogram = Field(
default_factory=_create_function_duration_histogram, exclude=True
)
streaming_duration_histogram: metrics.Histogram = Field(
default_factory=_create_function_streaming_duration_histogram, exclude=True
)
def __deepcopy__(self, memo: dict[int, Any] | None = None) -> "KernelFunction":
"""Create a deep copy of the kernel function, recreating uncopyable fields."""
if memo is None:
memo = {}
if id(self) in memo:
return memo[id(self)]
# Use model_copy to create a shallow copy of the pydantic model
# this is the recommended way to copy pydantic models
new_obj = self.model_copy(deep=False)
memo[id(self)] = new_obj
# now deepcopy the fields that are not the histograms
for key, value in self.__dict__.items():
if key not in ("invocation_duration_histogram", "streaming_duration_histogram"):
setattr(new_obj, key, deepcopy(value, memo))
return new_obj
@classmethod
def from_prompt(
cls,
function_name: str,
plugin_name: str,
description: str | None = None,
prompt: str | None = None,
template_format: TEMPLATE_FORMAT_TYPES = KERNEL_TEMPLATE_FORMAT_NAME,
prompt_template: "PromptTemplateBase | None " = None,
prompt_template_config: "PromptTemplateConfig | None" = None,
prompt_execution_settings: (
"PromptExecutionSettings | Sequence[PromptExecutionSettings] | Mapping[str, PromptExecutionSettings] | None"
) = None,
) -> "KernelFunctionFromPrompt":
"""Create a new instance of the KernelFunctionFromPrompt class."""
from semantic_kernel.functions.kernel_function_from_prompt import KernelFunctionFromPrompt
return KernelFunctionFromPrompt(
function_name=function_name,
plugin_name=plugin_name,
description=description,
prompt=prompt,
template_format=template_format,
prompt_template=prompt_template,
prompt_template_config=prompt_template_config,
prompt_execution_settings=prompt_execution_settings,
)
@classmethod
def from_method(
cls,
method: Callable[..., Any],
plugin_name: str | None = None,
stream_method: Callable[..., Any] | None = None,
) -> "KernelFunctionFromMethod":
"""Create a new instance of the KernelFunctionFromMethod class."""
from semantic_kernel.functions.kernel_function_from_method import KernelFunctionFromMethod
return KernelFunctionFromMethod(
plugin_name=plugin_name,
method=method,
stream_method=stream_method,
)
@property
def name(self) -> str:
"""The name of the function."""
return self.metadata.name
@property
def plugin_name(self) -> str:
"""The name of the plugin that contains this function."""
return self.metadata.plugin_name or ""
@property
def fully_qualified_name(self) -> str:
"""The fully qualified name of the function."""
return self.metadata.fully_qualified_name
@property
def description(self) -> str | None:
"""The description of the function."""
return self.metadata.description
@property
def is_prompt(self) -> bool:
"""Whether the function is based on a prompt."""
return self.metadata.is_prompt
@property
def parameters(self) -> list["KernelParameterMetadata"]:
"""The parameters for the function."""
return self.metadata.parameters
@property
def return_parameter(self) -> "KernelParameterMetadata | None":
"""The return parameter for the function."""
return self.metadata.return_parameter
async def __call__(
self,
kernel: "Kernel",
arguments: "KernelArguments | None" = None,
metadata: dict[str, Any] | None = None,
**kwargs: Any,
) -> FunctionResult | None:
"""Invoke the function with the given arguments.
Args:
kernel (Kernel): The kernel
arguments (KernelArguments | None): The Kernel arguments.
Optional, defaults to None.
metadata (Dict[str, Any]): Additional metadata.
kwargs (Dict[str, Any]): Additional keyword arguments that will be
Returns:
FunctionResult: The result of the function
"""
return await self.invoke(kernel, arguments, metadata, **kwargs)
@abstractmethod
async def _invoke_internal(self, context: FunctionInvocationContext) -> None:
"""Internal invoke method of the the function with the given arguments.
This function should be implemented by the subclass.
It relies on updating the context with the result from the function.
Args:
context (FunctionInvocationContext): The invocation context.
"""
pass
async def invoke(
self,
kernel: "Kernel",
arguments: "KernelArguments | None" = None,
metadata: dict[str, Any] | None = None,
**kwargs: Any,
) -> "FunctionResult | None":
"""Invoke the function with the given arguments.
Args:
kernel (Kernel): The kernel
arguments (KernelArguments): The Kernel arguments
metadata (Dict[str, Any]): Additional metadata.
kwargs (Any): Additional keyword arguments that will be
added to the KernelArguments.
Returns:
FunctionResult: The result of the function
"""
if arguments is None:
arguments = KernelArguments(**kwargs)
_rebuild_function_invocation_context()
function_context = FunctionInvocationContext(function=self, kernel=kernel, arguments=arguments)
with function_tracer.start_as_current_span(tracer, self, metadata) as current_span:
KernelFunctionLogMessages.log_function_invoking(logger, self.fully_qualified_name)
KernelFunctionLogMessages.log_function_arguments(logger, arguments)
if function_tracer.are_sensitive_events_enabled():
current_span.set_attribute(TOOL_CALL_ARGUMENTS, arguments.dumps())
attributes = {MEASUREMENT_FUNCTION_TAG_NAME: self.fully_qualified_name}
starting_time_stamp = time.perf_counter()
try:
stack = kernel.construct_call_stack(
filter_type=FilterTypes.FUNCTION_INVOCATION,
inner_function=self._invoke_internal,
)
await stack(function_context)
KernelFunctionLogMessages.log_function_invoked_success(logger, self.fully_qualified_name)
KernelFunctionLogMessages.log_function_result_value(logger, function_context.result)
if function_tracer.are_sensitive_events_enabled():
try:
result = str(function_context.result.value) if function_context.result else None
except Exception as e:
result = str(e)
current_span.set_attribute(TOOL_CALL_RESULT, result)
return function_context.result
except Exception as e:
self._handle_exception(current_span, e, attributes)
raise e
finally:
duration = time.perf_counter() - starting_time_stamp
self.invocation_duration_histogram.record(duration, attributes)
KernelFunctionLogMessages.log_function_completed(logger, duration)
@abstractmethod
async def _invoke_internal_stream(self, context: FunctionInvocationContext) -> None:
"""Internal invoke method of the the function with the given arguments.
The abstract method is defined without async because otherwise the typing fails.
A implementation of this function should be async.
"""
...
async def invoke_stream(
self,
kernel: "Kernel",
arguments: "KernelArguments | None" = None,
metadata: dict[str, Any] | None = None,
**kwargs: Any,
) -> "AsyncGenerator[FunctionResult | list[StreamingContentMixin | Any], Any]":
"""Invoke a stream async function with the given arguments.
Args:
kernel (Kernel): The kernel
arguments (KernelArguments): The Kernel arguments
metadata (Dict[str, Any]): Additional metadata.
kwargs (Any): Additional keyword arguments that will be
added to the KernelArguments.
Yields:
KernelContent with the StreamingKernelMixin or FunctionResult:
The results of the function,
if there is an error a FunctionResult is yielded.
"""
if arguments is None:
arguments = KernelArguments(**kwargs)
_rebuild_function_invocation_context()
function_context = FunctionInvocationContext(
function=self, kernel=kernel, arguments=arguments, is_streaming=True
)
with function_tracer.start_as_current_span(tracer, self, metadata) as current_span:
KernelFunctionLogMessages.log_function_streaming_invoking(logger, self.fully_qualified_name)
KernelFunctionLogMessages.log_function_arguments(logger, arguments)
if function_tracer.are_sensitive_events_enabled():
current_span.set_attribute(TOOL_CALL_ARGUMENTS, arguments.dumps())
attributes = {MEASUREMENT_FUNCTION_TAG_NAME: self.fully_qualified_name}
starting_time_stamp = time.perf_counter()
try:
stack = kernel.construct_call_stack(
filter_type=FilterTypes.FUNCTION_INVOCATION,
inner_function=self._invoke_internal_stream,
)
await stack(function_context)
function_results: list[Any] = []
if function_context.result is not None:
if isasyncgen(function_context.result.value):
async for partial in function_context.result.value:
function_results.append(partial)
yield partial
elif isgenerator(function_context.result.value):
for partial in function_context.result.value:
function_results.append(partial)
yield partial
else:
function_results.append(function_context.result.value)
yield function_context.result
if function_tracer.are_sensitive_events_enabled():
results: list[str] = []
try:
results.append(str(function_results))
except Exception as e:
results.append(str(e))
current_span.set_attribute(TOOL_CALL_RESULT, json.dumps(results))
except Exception as e:
self._handle_exception(current_span, e, attributes)
raise e
finally:
duration = time.perf_counter() - starting_time_stamp
self.streaming_duration_histogram.record(duration, attributes)
KernelFunctionLogMessages.log_function_streaming_completed(logger, duration)
def function_copy(self, plugin_name: str | None = None) -> "KernelFunction":
"""Copy the function, can also override the plugin_name.
Args:
plugin_name (str): The new plugin name.
Returns:
KernelFunction: The copied function.
"""
cop: KernelFunction = copy(self)
cop.metadata = deepcopy(self.metadata)
if plugin_name:
cop.metadata.plugin_name = plugin_name
return cop
def _handle_exception(self, current_span: trace.Span, exception: Exception, attributes: dict[str, str]) -> None:
"""Handle the exception.
Args:
current_span (trace.Span): The current span.
exception (Exception): The exception.
attributes (Attributes): The attributes to be modified.
"""
attributes[ERROR_TYPE] = type(exception).__name__
current_span.record_exception(exception)
current_span.set_attribute(ERROR_TYPE, type(exception).__name__)
current_span.set_status(trace.StatusCode.ERROR, description=str(exception))
KernelFunctionLogMessages.log_function_error(logger, exception)
def as_agent_framework_tool(
self,
*,
name: str | None = None,
description: str | None = None,
kernel: "Kernel | None" = None,
) -> Any:
"""Convert the function to an agent framework tool.
Args:
name: The name of the tool, if None, the function name is used.
description: The description of the tool, if None, the tool description is used.
kernel: The kernel to use, if None, a kernel is created.
Returns:
AIFunction: The agent framework tool.
"""
import json
from pydantic import Field, create_model
from semantic_kernel.kernel import Kernel
try:
from agent_framework import AIFunction
except ImportError as e:
raise ImportError(
"agent_framework is not installed. Please install it with 'pip install agent-framework-core'"
) from e
if not kernel:
kernel = Kernel()
name = name or self.name
description = description or self.description
fields = {}
for param in self.parameters:
if param.include_in_function_choices:
if param.default_value is not None:
fields[param.name] = (
param.type_,
Field(description=param.description, default=param.default_value),
)
fields[param.name] = (param.type_, Field(description=param.description))
input_model = create_model("InputModel", **fields) # type: ignore
async def wrapper(*args: Any, **kwargs: Any) -> Any:
result = await self.invoke(kernel, *args, **kwargs)
if result and result.value is not None:
if isinstance(result.value, list):
results: list[Any] = []
for value in result.value:
if isinstance(value, ChatMessageContent):
results.append(str(value))
continue
if isinstance(value, TextContent):
results.append(value.text)
continue
if isinstance(value, BaseModel):
results.append(value.model_dump())
continue
results.append(value)
return json.dumps(results) if len(results) > 1 else json.dumps(results[0])
return json.dumps(result.value)
return "The function did not return a result."
return AIFunction(
name=name,
description=description,
input_model=input_model,
func=wrapper,
)