Files
litellm/tests/proxy_unit_tests/test_proxy_custom_logger.py
T
2026-04-17 13:02:59 -07:00

323 lines
12 KiB
Python

import sys, os
import traceback
from dotenv import load_dotenv
load_dotenv()
import os, io, asyncio
# this file is to test litellm/proxy
sys.path.insert(
0, os.path.abspath("../..")
) # Adds the parent directory to the system path
import pytest, time
import litellm
from litellm import embedding, completion, completion_cost, Timeout
from litellm import RateLimitError
import importlib, inspect
# test /chat/completion request to the proxy
from fastapi.testclient import TestClient
from fastapi import FastAPI
from litellm.proxy.proxy_server import (
router,
save_worker_config,
initialize,
) # Replace with the actual module where your FastAPI router is defined
filepath = os.path.dirname(os.path.abspath(__file__))
python_file_path = f"{filepath}/test_configs/custom_callbacks.py"
@pytest.fixture
def client():
filepath = os.path.dirname(os.path.abspath(__file__))
config_fp = f"{filepath}/test_configs/test_custom_logger.yaml"
app = FastAPI()
asyncio.run(initialize(config=config_fp))
app.include_router(router) # Include your router in the test app
return TestClient(app)
# Your bearer token
token = os.getenv("PROXY_MASTER_KEY")
headers = {"Authorization": f"Bearer {token}"}
print("Testing proxy custom logger")
@pytest.mark.skipif(
os.environ.get("OPENAI_API_KEY") is None,
reason="OPENAI_API_KEY not set - skipping integration test",
)
def test_embedding(client):
try:
litellm.set_verbose = False
from litellm.proxy.types_utils.utils import get_instance_fn
my_custom_logger = get_instance_fn(
value="custom_callbacks.my_custom_logger", config_file_path=python_file_path
)
print("id of initialized custom logger", id(my_custom_logger))
litellm.callbacks = [my_custom_logger]
# Your test data
print("initialized proxy")
# import the initialized custom logger
print(litellm.callbacks)
# assert len(litellm.callbacks) == 1 # assert litellm is initialized with 1 callback
print("my_custom_logger", my_custom_logger)
assert my_custom_logger.async_success_embedding is False
test_data = {"model": "azure-embedding-model", "input": ["hello"]}
response = client.post("/embeddings", json=test_data, headers=headers)
print("made request", response.status_code, response.text)
print(
"vars my custom logger /embeddings",
vars(my_custom_logger),
"id",
id(my_custom_logger),
)
assert (
my_custom_logger.async_success_embedding is True
) # checks if the status of async_success is True, only the async_log_success_event can set this to true
assert (
my_custom_logger.async_embedding_kwargs["model"] == "text-embedding-ada-002"
) # checks if kwargs passed to async_log_success_event are correct
kwargs = my_custom_logger.async_embedding_kwargs
litellm_params = kwargs.get("litellm_params")
# Test 1: Verify metadata is populated correctly
metadata = litellm_params.get("metadata", None)
print("\n\n Metadata in custom logger kwargs", litellm_params.get("metadata"))
assert metadata is not None, "metadata should be present in litellm_params"
assert "user_api_key" in metadata, "user_api_key should be in metadata"
assert "headers" in metadata, "headers should be in metadata"
# Test 2: Verify proxy_server_request contains the original request details
proxy_server_request = litellm_params.get("proxy_server_request")
assert proxy_server_request is not None, "proxy_server_request should exist"
assert (
proxy_server_request.get("url") == "http://testserver/embeddings"
), "url should match"
assert proxy_server_request.get("method") == "POST", "method should be POST"
assert "headers" in proxy_server_request, "headers should be present"
assert "body" in proxy_server_request, "body should be present"
# Test 3: Verify request body contains the original input data
body = proxy_server_request["body"]
assert (
body.get("model") == "azure-embedding-model"
), "model should match original request"
assert body.get("input") == ["hello"], "input should match original request"
# Test 4: Verify model_info is populated
model_info = litellm_params.get("model_info")
assert model_info is not None, "model_info should exist"
assert model_info.get("mode") == "embedding", "mode should be embedding"
assert model_info.get("id") == "hello", "id should match"
assert (
model_info.get("input_cost_per_token") == 0.002
), "input cost should match"
result = response.json()
print(f"Received response: {result}")
print("Passed Embedding custom logger on proxy!")
except Exception as e:
pytest.fail(f"LiteLLM Proxy test failed. Exception {str(e)}")
@pytest.mark.skipif(
os.environ.get("OPENAI_API_KEY") is None,
reason="OPENAI_API_KEY not set - skipping integration test",
)
def test_chat_completion(client):
try:
# Your test data
litellm.set_verbose = False
from litellm.proxy.types_utils.utils import get_instance_fn
my_custom_logger = get_instance_fn(
value="custom_callbacks.my_custom_logger", config_file_path=python_file_path
)
print("id of initialized custom logger", id(my_custom_logger))
litellm.callbacks = [my_custom_logger]
# import the initialized custom logger
print(litellm.callbacks)
# assert len(litellm.callbacks) == 1 # assert litellm is initialized with 1 callback
print("LiteLLM Callbacks", litellm.callbacks)
print("my_custom_logger", my_custom_logger)
assert my_custom_logger.async_success == False
test_data = {
"model": "Azure OpenAI GPT-4 Canada",
"messages": [
{"role": "user", "content": "write a litellm poem"},
],
"max_tokens": 10,
}
response = client.post("/chat/completions", json=test_data, headers=headers)
print("made request", response.status_code, response.text)
print("LiteLLM Callbacks", litellm.callbacks)
time.sleep(1) # sleep while waiting for callback to run
print(
"my_custom_logger in /chat/completions",
my_custom_logger,
"id",
id(my_custom_logger),
)
print("vars my custom logger, ", vars(my_custom_logger))
assert (
my_custom_logger.async_success == True
) # checks if the status of async_success is True, only the async_log_success_event can set this to true
assert (
my_custom_logger.async_completion_kwargs["model"] == "gpt-4.1-nano"
) # checks if kwargs passed to async_log_success_event are correct
print(
"\n\n Custom Logger Async Completion args",
my_custom_logger.async_completion_kwargs,
)
litellm_params = my_custom_logger.async_completion_kwargs.get("litellm_params")
# Test 1: Verify metadata is populated correctly
metadata = litellm_params.get("metadata", None)
print("\n\n Metadata in custom logger kwargs", litellm_params.get("metadata"))
assert metadata is not None, "metadata should be present"
assert "user_api_key" in metadata, "user_api_key should be in metadata"
assert (
"user_api_key_metadata" in metadata
), "user_api_key_metadata should be in metadata"
assert "headers" in metadata, "headers should be in metadata"
# Test 2: Verify model_info is populated
config_model_info = litellm_params.get("model_info")
assert config_model_info is not None, "model_info should exist"
assert config_model_info.get("id") == "gm", "model id should match"
assert config_model_info.get("mode") == "chat", "mode should be chat"
assert (
config_model_info.get("input_cost_per_token") == 0.0002
), "input cost should match"
# Test 3: Verify proxy_server_request contains request details
proxy_server_request_object = litellm_params.get("proxy_server_request")
assert (
proxy_server_request_object is not None
), "proxy_server_request should exist"
assert (
proxy_server_request_object.get("url")
== "http://testserver/chat/completions"
), "url should match"
assert (
proxy_server_request_object.get("method") == "POST"
), "method should be POST"
# Test 4: Verify authorization is not leaked in logged headers
assert (
"authorization" not in proxy_server_request_object["headers"]
), "authorization should not be in headers"
# Test 5: Verify request body contains original input data
body = proxy_server_request_object.get("body", {})
assert (
body.get("model") == "Azure OpenAI GPT-4 Canada"
), "model should match original request"
assert body.get("messages") == [
{"role": "user", "content": "write a litellm poem"}
], "messages should match"
assert body.get("max_tokens") == 10, "max_tokens should match"
result = response.json()
print(f"Received response: {result}")
print("\nPassed /chat/completions with Custom Logger!")
except Exception as e:
pytest.fail(f"LiteLLM Proxy test failed. Exception {str(e)}")
@pytest.mark.skipif(
os.environ.get("OPENAI_API_KEY") is None,
reason="OPENAI_API_KEY not set - skipping integration test",
)
def test_chat_completion_stream(client):
try:
# Your test data
litellm.set_verbose = False
from litellm.proxy.types_utils.utils import get_instance_fn
my_custom_logger = get_instance_fn(
value="custom_callbacks.my_custom_logger", config_file_path=python_file_path
)
print("id of initialized custom logger", id(my_custom_logger))
litellm.callbacks = [my_custom_logger]
import json
print("initialized proxy")
# import the initialized custom logger
print(litellm.callbacks)
print("LiteLLM Callbacks", litellm.callbacks)
print("my_custom_logger", my_custom_logger)
assert (
my_custom_logger.streaming_response_obj == None
) # no streaming response obj is set pre call
test_data = {
"model": "Azure OpenAI GPT-4 Canada",
"messages": [
{"role": "user", "content": "write 1 line poem about LiteLLM"},
],
"max_tokens": 40,
"stream": True, # streaming call
}
response = client.post("/chat/completions", json=test_data, headers=headers)
print("made request", response.status_code, response.text)
complete_response = ""
for line in response.iter_lines():
if line:
# Process the streaming data line here
print("\n\n Line", line)
print(line)
line = str(line)
json_data = line.replace("data: ", "")
if "[DONE]" in json_data:
break
# Parse the JSON string
data = json.loads(json_data)
print("\n\n decode_data", data)
# Access the content of choices[0]['message']['content']
content = data["choices"][0]["delta"].get("content", None) or ""
# Process the content as needed
print("Content:", content)
complete_response += content
print("\n\nHERE is the complete streaming response string", complete_response)
print("\n\nHERE IS the streaming Response from callback\n\n")
print(my_custom_logger.streaming_response_obj)
import time
time.sleep(0.5)
streamed_response = my_custom_logger.streaming_response_obj
assert (
complete_response == streamed_response["choices"][0]["message"]["content"]
)
except Exception as e:
pytest.fail(f"LiteLLM Proxy test failed. Exception {str(e)}")