197 lines
5.2 KiB
Python
197 lines
5.2 KiB
Python
# Copyright (c) Microsoft. All rights reserved.
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from typing import Any
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from pydantic import BaseModel
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from semantic_kernel.contents.function_call_content import FunctionCallContent
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from semantic_kernel.contents.function_result_content import FunctionResultContent
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class SimpleModel(BaseModel):
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field1: str
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field2: int
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class NestedModel(BaseModel):
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name: str
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values: list[int]
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class ModelContainer(BaseModel):
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container_name: str
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nested_model: NestedModel
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def test_hash_with_nested_structures():
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"""
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Deeply nested dictionaries and lists, but with no cyclical references.
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Ensures multiple levels of nested transformations work.
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"""
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data = {
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"level1": {
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"list1": [1, 2, 3],
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"dict1": {"keyA": "valA", "keyB": "valB"},
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},
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"level2": [
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{"sub_dict1": {"x": 99}},
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{"sub_dict2": {"y": 100}},
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],
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}
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content = FunctionResultContent(
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id="test_nested_structures",
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result=data,
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function_name="TestNestedStructures",
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)
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_ = hash(content)
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assert True, "Hashing deeply nested structures succeeded."
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def test_hash_with_repeated_references():
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"""
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Multiple references to the same object, but no cycle.
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Ensures repeated objects are handled consistently and do not cause duplication.
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"""
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shared_dict = {"common_key": "common_value"}
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data = {
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"ref1": shared_dict,
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"ref2": shared_dict, # same object, repeated reference
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}
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content = FunctionResultContent(
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id="test_repeated_references",
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result=data,
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function_name="TestRepeatedRefs",
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)
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_ = hash(content)
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assert True, "Hashing repeated references (no cycles) succeeded."
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def test_hash_with_simple_pydantic_model():
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"""
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Hash a Pydantic model that doesn't reference itself or another model.
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"""
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model_instance = SimpleModel(field1="hello", field2=42)
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content = FunctionResultContent(
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id="test_simple_model",
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result=model_instance,
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function_name="TestSimpleModel",
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)
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_ = hash(content)
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assert True, "Hashing a simple Pydantic model succeeded."
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def test_hash_with_nested_pydantic_models():
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"""
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Hash a Pydantic model containing another Pydantic model, no cycles.
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"""
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nested = NestedModel(name="MyNestedModel", values=[1, 2, 3])
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container = ModelContainer(container_name="TopLevel", nested_model=nested)
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content = FunctionResultContent(
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id="test_nested_models",
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result=container,
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function_name="TestNestedModels",
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)
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_ = hash(content)
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assert True, "Hashing nested Pydantic models succeeded."
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def test_hash_with_triple_cycle():
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"""
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Three dictionaries referencing each other to form a cycle.
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This ensures that multi-node cycles are also handled.
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"""
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dict_a: dict[str, Any] = {"a_key": 1}
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dict_b: dict[str, Any] = {"b_key": 2}
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dict_c: dict[str, Any] = {"c_key": 3}
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dict_a["ref_to_b"] = dict_b
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dict_b["ref_to_c"] = dict_c
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dict_c["ref_to_a"] = dict_a
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content = FunctionResultContent(
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id="test_triple_cycle",
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result=dict_a,
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function_name="TestTripleCycle",
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)
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_ = hash(content)
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assert True, "Hashing triple cyclical references succeeded."
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def test_hash_with_cyclical_references():
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"""
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The original cyclical references test for thorough coverage.
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"""
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class CyclicalModel(BaseModel):
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name: str
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partner: "CyclicalModel" = None # type: ignore
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CyclicalModel.model_rebuild()
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model_a = CyclicalModel(name="ModelA")
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model_b = CyclicalModel(name="ModelB")
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model_a.partner = model_b
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model_b.partner = model_a
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dict_x = {"x_key": 42}
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dict_y = {"y_key": 99, "ref_to_x": dict_x}
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dict_x["ref_to_y"] = dict_y # type: ignore
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giant_data_structure = {
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"models": [model_a, model_b],
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"nested": {"cyclical_dict_x": dict_x, "cyclical_dict_y": dict_y},
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}
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content = FunctionResultContent(
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id="test_id_cyclical",
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result=giant_data_structure,
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function_name="TestFunctionCyclical",
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)
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_ = hash(content)
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def test_hash_with_large_structure():
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"""
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Tests performance or at least correctness when dealing with
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a large structure, ensuring we don't crash or exceed recursion.
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"""
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large_list = list(range(1000))
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large_dict = {f"key_{i}": i for i in range(1000)}
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combined = {
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"big_list": large_list,
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"big_dict": large_dict,
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"nested": [
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{"inner_list": large_list},
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{"inner_dict": large_dict},
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],
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}
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content = FunctionResultContent(
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id="test_large_structure",
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result=combined,
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function_name="TestLargeStructure",
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)
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_ = hash(content)
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def test_hash_function_call_content():
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call_content = FunctionCallContent(
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inner_content=None,
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ai_model_id=None,
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metadata={},
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id="call_LAbz",
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index=None,
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name="menu-get_specials",
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function_name="get_specials",
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plugin_name="menu",
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arguments="{}",
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)
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content = FunctionResultContent(
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id="test_function_call_content", result=call_content, function_name="TestFunctionCallContent"
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)
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_ = hash(content)
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