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litellm/tests/test_litellm/caching/test_caching_handler.py
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import asyncio
import json
import os
import sys
import time
from unittest.mock import MagicMock, patch
import httpx
import pytest
import respx
from fastapi.testclient import TestClient
sys.path.insert(
0, os.path.abspath("../../..")
) # Adds the parent directory to the system path
from datetime import datetime
from unittest.mock import AsyncMock, MagicMock
from litellm.caching.caching_handler import LLMCachingHandler
@pytest.mark.asyncio
async def test_process_async_embedding_cached_response():
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
args = {
"cached_result": [
{
"embedding": [-0.025122925639152527, -0.019487135112285614],
"index": 0,
"object": "embedding",
}
]
}
mock_logging_obj = MagicMock()
mock_logging_obj.async_success_handler = AsyncMock()
response, cache_hit = llm_caching_handler._process_async_embedding_cached_response(
final_embedding_cached_response=None,
cached_result=args["cached_result"],
kwargs={"model": "text-embedding-ada-002", "input": "test"},
logging_obj=mock_logging_obj,
start_time=datetime.now(),
model="text-embedding-ada-002",
)
assert cache_hit
print(f"response: {response}")
assert len(response.data) == 1
@pytest.mark.asyncio
async def test_embedding_cache_preserves_prompt_tokens_details():
"""Test that prompt_tokens_details (including image_count) survives a full cache hit."""
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
cached_result = [
{
"embedding": [-0.025, -0.019],
"index": 0,
"object": "embedding",
"model": "amazon.titan-embed-image-v1",
"prompt_tokens_details": {"image_count": 1},
}
]
mock_logging_obj = MagicMock()
mock_logging_obj.async_success_handler = AsyncMock()
response, cache_hit = llm_caching_handler._process_async_embedding_cached_response(
final_embedding_cached_response=None,
cached_result=cached_result,
kwargs={"model": "amazon.titan-embed-image-v1", "input": "base64imagedata"},
logging_obj=mock_logging_obj,
start_time=datetime.now(),
model="amazon.titan-embed-image-v1",
)
assert cache_hit
assert response.usage is not None
assert response.usage.prompt_tokens_details is not None
assert response.usage.prompt_tokens_details.image_count == 1
@pytest.mark.asyncio
async def test_embedding_cache_backward_compat_no_prompt_tokens_details():
"""Test that old cached items without prompt_tokens_details still work."""
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
# Old-format cached item — no prompt_tokens_details field
cached_result = [
{
"embedding": [-0.025, -0.019],
"index": 0,
"object": "embedding",
"model": "text-embedding-ada-002",
}
]
mock_logging_obj = MagicMock()
mock_logging_obj.async_success_handler = AsyncMock()
response, cache_hit = llm_caching_handler._process_async_embedding_cached_response(
final_embedding_cached_response=None,
cached_result=cached_result,
kwargs={"model": "text-embedding-ada-002", "input": "test"},
logging_obj=mock_logging_obj,
start_time=datetime.now(),
model="text-embedding-ada-002",
)
assert cache_hit
assert response.usage is not None
assert response.usage.prompt_tokens_details is None
@pytest.mark.asyncio
async def test_embedding_cache_aggregates_multiple_image_counts():
"""Test that image_count is summed correctly across multiple cached items."""
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
cached_result = [
{
"embedding": [-0.025, -0.019],
"index": 0,
"object": "embedding",
"model": "amazon.titan-embed-image-v1",
"prompt_tokens_details": {"image_count": 1},
},
{
"embedding": [0.031, 0.042],
"index": 1,
"object": "embedding",
"model": "amazon.titan-embed-image-v1",
"prompt_tokens_details": {"image_count": 1},
},
]
mock_logging_obj = MagicMock()
mock_logging_obj.async_success_handler = AsyncMock()
response, cache_hit = llm_caching_handler._process_async_embedding_cached_response(
final_embedding_cached_response=None,
cached_result=cached_result,
kwargs={
"model": "amazon.titan-embed-image-v1",
"input": ["img1", "img2"],
},
logging_obj=mock_logging_obj,
start_time=datetime.now(),
model="amazon.titan-embed-image-v1",
)
assert cache_hit
assert response.usage.prompt_tokens_details is not None
assert response.usage.prompt_tokens_details.image_count == 2
def test_combine_usage_merges_prompt_tokens_details():
"""Test that combine_usage merges prompt_tokens_details from both Usage objects."""
from litellm.types.utils import PromptTokensDetailsWrapper, Usage
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
usage1 = Usage(
prompt_tokens=10,
completion_tokens=0,
total_tokens=10,
prompt_tokens_details=PromptTokensDetailsWrapper(image_count=1),
)
usage2 = Usage(
prompt_tokens=20,
completion_tokens=0,
total_tokens=20,
prompt_tokens_details=PromptTokensDetailsWrapper(image_count=2),
)
combined = llm_caching_handler.combine_usage(usage1, usage2)
assert combined.prompt_tokens == 30
assert combined.total_tokens == 30
assert combined.prompt_tokens_details is not None
assert combined.prompt_tokens_details.image_count == 3
def test_combine_usage_handles_none_details():
"""Test that combine_usage works when one or both sides have null prompt_tokens_details."""
from litellm.types.utils import PromptTokensDetailsWrapper, Usage
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
# Both null
usage_a = Usage(prompt_tokens=10, completion_tokens=0, total_tokens=10)
usage_b = Usage(prompt_tokens=20, completion_tokens=0, total_tokens=20)
combined = llm_caching_handler.combine_usage(usage_a, usage_b)
assert combined.prompt_tokens_details is None
# Only first has details
usage_c = Usage(
prompt_tokens=10,
completion_tokens=0,
total_tokens=10,
prompt_tokens_details=PromptTokensDetailsWrapper(image_count=1),
)
combined = llm_caching_handler.combine_usage(usage_c, usage_b)
assert combined.prompt_tokens_details is not None
assert combined.prompt_tokens_details.image_count == 1
# Only second has details
combined = llm_caching_handler.combine_usage(usage_a, usage_c)
assert combined.prompt_tokens_details is not None
assert combined.prompt_tokens_details.image_count == 1
def test_is_chat_completion_cached_dict():
from litellm.caching.caching_handler import _is_chat_completion_cached_dict
assert _is_chat_completion_cached_dict(
{"id": "chatcmpl-abc", "object": "chat.completion", "choices": []}
)
assert _is_chat_completion_cached_dict(
{"id": "other", "object": "chat.completion.chunk", "choices": []}
)
assert _is_chat_completion_cached_dict(
{"id": "no-object", "choices": [{"index": 0}]}
)
assert not _is_chat_completion_cached_dict(
{"id": "resp_abc", "object": "response", "output": []}
)
def _build_logging_obj(call_type: str, stream: bool):
import uuid as _uuid
from litellm.litellm_core_utils.litellm_logging import Logging as LiteLLMLogging
return LiteLLMLogging(
litellm_call_id=str(datetime.now()),
call_type=call_type,
model="gpt-5.4",
messages=[],
function_id=str(_uuid.uuid4()),
stream=stream,
start_time=datetime.now(),
)
def test_convert_cached_aresponses_bridge_chat_completion_stream():
"""openai/responses chat-completions bridge: streaming cache hit replays as chat stream."""
from litellm import aresponses
from litellm.litellm_core_utils.streaming_handler import CustomStreamWrapper
from litellm.types.utils import CallTypes
caching_handler = LLMCachingHandler(
original_function=aresponses, request_kwargs={}, start_time=datetime.now()
)
cached_result = {
"id": "chatcmpl-bridge-cache-test",
"object": "chat.completion",
"created": int(time.time()),
"model": "gpt-5.4",
"choices": [
{
"index": 0,
"message": {"role": "assistant", "content": "Hi!"},
"finish_reason": "stop",
}
],
"usage": {"prompt_tokens": 7, "completion_tokens": 11, "total_tokens": 18},
}
result = caching_handler._convert_cached_result_to_model_response(
cached_result=cached_result,
call_type=CallTypes.aresponses.value,
kwargs={
"model": "gpt-5.4",
"stream": True,
"messages": [{"role": "user", "content": "hi"}],
},
logging_obj=_build_logging_obj(CallTypes.aresponses.value, stream=True),
model="gpt-5.4",
args=(),
)
assert isinstance(result, CustomStreamWrapper)
def test_convert_cached_responses_bridge_chat_completion_nonstream():
"""openai/responses chat-completions bridge: non-streaming cache hit replays as ModelResponse."""
from litellm import responses
from litellm.types.utils import CallTypes, ModelResponse
caching_handler = LLMCachingHandler(
original_function=responses, request_kwargs={}, start_time=datetime.now()
)
cached_result = {
"id": "chatcmpl-bridge-nonstream",
"object": "chat.completion",
"created": int(time.time()),
"model": "gpt-5.4",
"choices": [
{
"index": 0,
"message": {"role": "assistant", "content": "Hi!"},
"finish_reason": "stop",
}
],
"usage": {"prompt_tokens": 7, "completion_tokens": 11, "total_tokens": 18},
}
result = caching_handler._convert_cached_result_to_model_response(
cached_result=cached_result,
call_type=CallTypes.responses.value,
kwargs={
"model": "gpt-5.4",
"stream": False,
"messages": [{"role": "user", "content": "hi"}],
},
logging_obj=_build_logging_obj(CallTypes.responses.value, stream=False),
model="gpt-5.4",
args=(),
)
assert isinstance(result, ModelResponse)
assert result.choices[0].message.content == "Hi!"
def test_convert_cached_responses_legacy_nonstream_path():
"""Genuine ResponsesAPIResponse dict (no chatcmpl/choices) falls through legacy path."""
from litellm import responses
from litellm.types.llms.openai import ResponsesAPIResponse
from litellm.types.utils import CallTypes
caching_handler = LLMCachingHandler(
original_function=responses, request_kwargs={}, start_time=datetime.now()
)
cached_result = {
"id": "resp_legacy_nonstream",
"created_at": int(time.time()),
"status": "completed",
"model": "gpt-4o",
"object": "response",
"output": [
{
"type": "message",
"id": "msg_legacy",
"status": "completed",
"role": "assistant",
"content": [
{
"type": "output_text",
"text": "legacy response",
"annotations": [],
}
],
}
],
}
result = caching_handler._convert_cached_result_to_model_response(
cached_result=cached_result,
call_type=CallTypes.responses.value,
kwargs={"model": "gpt-4o", "input": "hi", "stream": False},
logging_obj=_build_logging_obj(CallTypes.responses.value, stream=False),
model="gpt-4o",
args=(),
)
assert isinstance(result, ResponsesAPIResponse)
assert result.id == "resp_legacy_nonstream"
def test_convert_cached_responses_legacy_stream_path():
"""Genuine ResponsesAPIResponse dict (no chatcmpl/choices) on stream falls through legacy path."""
from litellm import responses
from litellm.responses.streaming_iterator import (
CachedResponsesAPIStreamingIterator,
)
from litellm.types.utils import CallTypes
caching_handler = LLMCachingHandler(
original_function=responses, request_kwargs={}, start_time=datetime.now()
)
cached_result = {
"id": "resp_legacy_stream",
"created_at": int(time.time()),
"status": "completed",
"model": "gpt-4o",
"object": "response",
"output": [
{
"type": "message",
"id": "msg_legacy_stream",
"status": "completed",
"role": "assistant",
"content": [
{
"type": "output_text",
"text": "legacy stream",
"annotations": [],
}
],
}
],
}
result = caching_handler._convert_cached_result_to_model_response(
cached_result=cached_result,
call_type=CallTypes.responses.value,
kwargs={"model": "gpt-4o", "input": "hi", "stream": True},
logging_obj=_build_logging_obj(CallTypes.responses.value, stream=True),
model="gpt-4o",
args=(),
)
assert isinstance(result, CachedResponsesAPIStreamingIterator)
@pytest.mark.asyncio
async def test_embedding_cache_restores_stored_prompt_tokens_for_image_input():
"""Image-embedding cache hit restores prompt_tokens=0 from the stored value
instead of recomputing a bogus count by tokenizing the base64 input."""
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
# base64-like blob — token_counter over this would return a large nonzero count
image_input = "iVBORw0KGgoAAAANSUhEUgAAAAEAAAABCAQAAAC1HAwCAAAAC0lEQVR42mNk" * 50
cached_result = [
{
"embedding": [-0.025, -0.019],
"index": 0,
"object": "embedding",
"model": "amazon.titan-embed-image-v1",
"prompt_tokens": 0,
"prompt_tokens_details": {"image_count": 1},
}
]
mock_logging_obj = MagicMock()
mock_logging_obj.async_success_handler = AsyncMock()
response, cache_hit = llm_caching_handler._process_async_embedding_cached_response(
final_embedding_cached_response=None,
cached_result=cached_result,
kwargs={"model": "amazon.titan-embed-image-v1", "input": image_input},
logging_obj=mock_logging_obj,
start_time=datetime.now(),
model="amazon.titan-embed-image-v1",
)
assert cache_hit
assert response.usage is not None
assert response.usage.prompt_tokens == 0
assert response.usage.total_tokens == 0
assert response.usage.prompt_tokens_details.image_count == 1
@pytest.mark.asyncio
async def test_embedding_cache_sums_stored_prompt_tokens_across_items():
"""A multi-item cache hit sums the stored per-item prompt_tokens back to the total."""
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
cached_result = [
{
"embedding": [-0.01],
"index": 0,
"object": "embedding",
"model": "text-embedding-3-small",
"prompt_tokens": 5,
},
{
"embedding": [-0.02],
"index": 1,
"object": "embedding",
"model": "text-embedding-3-small",
"prompt_tokens": 4,
},
]
mock_logging_obj = MagicMock()
mock_logging_obj.async_success_handler = AsyncMock()
response, cache_hit = llm_caching_handler._process_async_embedding_cached_response(
final_embedding_cached_response=None,
cached_result=cached_result,
kwargs={"model": "text-embedding-3-small", "input": ["hello world", "foo bar"]},
logging_obj=mock_logging_obj,
start_time=datetime.now(),
model="text-embedding-3-small",
)
assert cache_hit
assert response.usage.prompt_tokens == 9
assert response.usage.total_tokens == 9
@pytest.mark.asyncio
async def test_embedding_cache_falls_back_to_token_counter_for_legacy_entries():
"""Legacy cache entries with no stored prompt_tokens still recompute via token_counter
for str inputs (backward compatibility)."""
llm_caching_handler = LLMCachingHandler(
original_function=MagicMock(),
request_kwargs={},
start_time=datetime.now(),
)
# No prompt_tokens key — pre-fix entry
cached_result = [
{
"embedding": [-0.025, -0.019],
"index": 0,
"object": "embedding",
"model": "text-embedding-ada-002",
},
]
mock_logging_obj = MagicMock()
mock_logging_obj.async_success_handler = AsyncMock()
response, cache_hit = llm_caching_handler._process_async_embedding_cached_response(
final_embedding_cached_response=None,
cached_result=cached_result,
kwargs={"model": "text-embedding-ada-002", "input": "hello world"},
logging_obj=mock_logging_obj,
start_time=datetime.now(),
model="text-embedding-ada-002",
)
assert cache_hit
# token_counter over "hello world" yields a nonzero count — fallback path still runs
assert response.usage.prompt_tokens > 0