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685 lines
21 KiB
Python
685 lines
21 KiB
Python
# What this tests?
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## Unit Tests for the max parallel request limiter for the proxy
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import sys, os, asyncio, time, random
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from datetime import datetime
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import traceback
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from dotenv import load_dotenv
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load_dotenv()
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import os
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sys.path.insert(
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0, os.path.abspath("../..")
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) # Adds the parent directory to the system path
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import pytest
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import litellm
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from litellm import Router
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from litellm.proxy.utils import ProxyLogging
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from litellm.proxy._types import UserAPIKeyAuth
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from litellm.caching import DualCache
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from litellm.proxy.hooks.parallel_request_limiter import MaxParallelRequestsHandler
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from datetime import datetime
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## On Request received
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## On Request success
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## On Request failure
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@pytest.mark.asyncio
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async def test_pre_call_hook():
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"""
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Test if cache updated on call being received
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"""
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(api_key=_api_key, max_parallel_requests=1)
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local_cache = DualCache()
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parallel_request_handler = MaxParallelRequestsHandler()
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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current_date = datetime.now().strftime("%Y-%m-%d")
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current_hour = datetime.now().strftime("%H")
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current_minute = datetime.now().strftime("%M")
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precise_minute = f"{current_date}-{current_hour}-{current_minute}"
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request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
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print(
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parallel_request_handler.user_api_key_cache.get_cache(key=request_count_api_key)
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)
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 1
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)
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@pytest.mark.asyncio
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async def test_pre_call_hook_rpm_limits():
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"""
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Test if error raised on hitting rpm limits
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"""
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(
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api_key=_api_key, max_parallel_requests=1, tpm_limit=9, rpm_limit=1
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)
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local_cache = DualCache()
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parallel_request_handler = MaxParallelRequestsHandler()
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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kwargs = {"litellm_params": {"metadata": {"user_api_key": _api_key}}}
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await parallel_request_handler.async_log_success_event(
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kwargs=kwargs,
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response_obj="",
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start_time="",
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end_time="",
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)
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## Expected cache val: {"current_requests": 0, "current_tpm": 0, "current_rpm": 1}
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try:
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict,
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cache=local_cache,
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data={},
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call_type="",
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)
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pytest.fail(f"Expected call to fail")
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except Exception as e:
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assert e.status_code == 429
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@pytest.mark.asyncio
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async def test_pre_call_hook_tpm_limits():
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"""
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Test if error raised on hitting tpm limits
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"""
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(
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api_key=_api_key, max_parallel_requests=1, tpm_limit=9, rpm_limit=10
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)
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local_cache = DualCache()
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parallel_request_handler = MaxParallelRequestsHandler()
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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kwargs = {"litellm_params": {"metadata": {"user_api_key": _api_key}}}
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await parallel_request_handler.async_log_success_event(
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kwargs=kwargs,
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response_obj=litellm.ModelResponse(usage=litellm.Usage(total_tokens=10)),
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start_time="",
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end_time="",
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)
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## Expected cache val: {"current_requests": 0, "current_tpm": 0, "current_rpm": 1}
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try:
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict,
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cache=local_cache,
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data={},
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call_type="",
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)
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pytest.fail(f"Expected call to fail")
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except Exception as e:
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assert e.status_code == 429
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@pytest.mark.asyncio
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async def test_success_call_hook():
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"""
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Test if on success, cache correctly decremented
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"""
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(api_key=_api_key, max_parallel_requests=1)
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local_cache = DualCache()
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parallel_request_handler = MaxParallelRequestsHandler()
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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current_date = datetime.now().strftime("%Y-%m-%d")
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current_hour = datetime.now().strftime("%H")
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current_minute = datetime.now().strftime("%M")
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precise_minute = f"{current_date}-{current_hour}-{current_minute}"
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request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 1
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)
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kwargs = {"litellm_params": {"metadata": {"user_api_key": _api_key}}}
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await parallel_request_handler.async_log_success_event(
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kwargs=kwargs, response_obj="", start_time="", end_time=""
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)
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 0
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)
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@pytest.mark.asyncio
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async def test_failure_call_hook():
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"""
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Test if on failure, cache correctly decremented
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"""
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(api_key=_api_key, max_parallel_requests=1)
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local_cache = DualCache()
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parallel_request_handler = MaxParallelRequestsHandler()
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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current_date = datetime.now().strftime("%Y-%m-%d")
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current_hour = datetime.now().strftime("%H")
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current_minute = datetime.now().strftime("%M")
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precise_minute = f"{current_date}-{current_hour}-{current_minute}"
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request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 1
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)
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kwargs = {
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"litellm_params": {"metadata": {"user_api_key": _api_key}},
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"exception": Exception(),
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}
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await parallel_request_handler.async_log_failure_event(
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kwargs=kwargs, response_obj="", start_time="", end_time=""
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)
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 0
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)
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"""
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Test with Router
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- normal call
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- streaming call
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- bad call
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"""
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@pytest.mark.asyncio
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async def test_normal_router_call():
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model_list = [
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-turbo",
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"api_key": "os.environ/AZURE_FRANCE_API_KEY",
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"api_base": "https://openai-france-1234.openai.azure.com",
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"rpm": 1440,
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},
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"model_info": {"id": 1},
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},
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-35-turbo",
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"api_key": "os.environ/AZURE_EUROPE_API_KEY",
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"api_base": "https://my-endpoint-europe-berri-992.openai.azure.com",
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"rpm": 6,
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},
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"model_info": {"id": 2},
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},
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]
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router = Router(
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model_list=model_list,
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set_verbose=False,
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num_retries=3,
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) # type: ignore
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(api_key=_api_key, max_parallel_requests=1)
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local_cache = DualCache()
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pl = ProxyLogging(user_api_key_cache=local_cache)
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pl._init_litellm_callbacks()
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print(f"litellm callbacks: {litellm.callbacks}")
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parallel_request_handler = pl.max_parallel_request_limiter
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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current_date = datetime.now().strftime("%Y-%m-%d")
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current_hour = datetime.now().strftime("%H")
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current_minute = datetime.now().strftime("%M")
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precise_minute = f"{current_date}-{current_hour}-{current_minute}"
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request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 1
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)
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# normal call
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response = await router.acompletion(
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model="azure-model",
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messages=[{"role": "user", "content": "Hey, how's it going?"}],
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metadata={"user_api_key": _api_key},
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)
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await asyncio.sleep(1) # success is done in a separate thread
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print(f"response: {response}")
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 0
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)
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@pytest.mark.asyncio
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async def test_normal_router_tpm_limit():
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model_list = [
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-turbo",
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"api_key": "os.environ/AZURE_FRANCE_API_KEY",
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"api_base": "https://openai-france-1234.openai.azure.com",
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"rpm": 1440,
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},
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"model_info": {"id": 1},
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},
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-35-turbo",
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"api_key": "os.environ/AZURE_EUROPE_API_KEY",
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"api_base": "https://my-endpoint-europe-berri-992.openai.azure.com",
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"rpm": 6,
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},
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"model_info": {"id": 2},
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},
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]
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router = Router(
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model_list=model_list,
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set_verbose=False,
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num_retries=3,
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) # type: ignore
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(
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api_key=_api_key, max_parallel_requests=10, tpm_limit=10
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)
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local_cache = DualCache()
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pl = ProxyLogging(user_api_key_cache=local_cache)
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pl._init_litellm_callbacks()
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print(f"litellm callbacks: {litellm.callbacks}")
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parallel_request_handler = pl.max_parallel_request_limiter
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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current_date = datetime.now().strftime("%Y-%m-%d")
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current_hour = datetime.now().strftime("%H")
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current_minute = datetime.now().strftime("%M")
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precise_minute = f"{current_date}-{current_hour}-{current_minute}"
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request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 1
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)
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# normal call
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response = await router.acompletion(
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model="azure-model",
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messages=[{"role": "user", "content": "Write me a paragraph on the moon"}],
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metadata={"user_api_key": _api_key},
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)
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await asyncio.sleep(1) # success is done in a separate thread
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print(f"response: {response}")
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try:
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict,
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cache=local_cache,
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data={},
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call_type="",
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)
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pytest.fail(f"Expected call to fail")
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except Exception as e:
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assert e.status_code == 429
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@pytest.mark.asyncio
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async def test_streaming_router_call():
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model_list = [
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-turbo",
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"api_key": "os.environ/AZURE_FRANCE_API_KEY",
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"api_base": "https://openai-france-1234.openai.azure.com",
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"rpm": 1440,
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},
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"model_info": {"id": 1},
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},
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-35-turbo",
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"api_key": "os.environ/AZURE_EUROPE_API_KEY",
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"api_base": "https://my-endpoint-europe-berri-992.openai.azure.com",
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"rpm": 6,
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},
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"model_info": {"id": 2},
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},
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]
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router = Router(
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model_list=model_list,
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set_verbose=False,
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num_retries=3,
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) # type: ignore
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(api_key=_api_key, max_parallel_requests=1)
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local_cache = DualCache()
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pl = ProxyLogging(user_api_key_cache=local_cache)
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pl._init_litellm_callbacks()
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print(f"litellm callbacks: {litellm.callbacks}")
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parallel_request_handler = pl.max_parallel_request_limiter
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await parallel_request_handler.async_pre_call_hook(
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user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
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)
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current_date = datetime.now().strftime("%Y-%m-%d")
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current_hour = datetime.now().strftime("%H")
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current_minute = datetime.now().strftime("%M")
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precise_minute = f"{current_date}-{current_hour}-{current_minute}"
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request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 1
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)
|
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# streaming call
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response = await router.acompletion(
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model="azure-model",
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messages=[{"role": "user", "content": "Hey, how's it going?"}],
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stream=True,
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metadata={"user_api_key": _api_key},
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)
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async for chunk in response:
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continue
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await asyncio.sleep(1) # success is done in a separate thread
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assert (
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parallel_request_handler.user_api_key_cache.get_cache(
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key=request_count_api_key
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)["current_requests"]
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== 0
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)
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|
|
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|
@pytest.mark.asyncio
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async def test_streaming_router_tpm_limit():
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model_list = [
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-turbo",
|
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"api_key": "os.environ/AZURE_FRANCE_API_KEY",
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"api_base": "https://openai-france-1234.openai.azure.com",
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"rpm": 1440,
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},
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"model_info": {"id": 1},
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},
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{
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"model_name": "azure-model",
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"litellm_params": {
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"model": "azure/gpt-35-turbo",
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"api_key": "os.environ/AZURE_EUROPE_API_KEY",
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"api_base": "https://my-endpoint-europe-berri-992.openai.azure.com",
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"rpm": 6,
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},
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"model_info": {"id": 2},
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},
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]
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router = Router(
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model_list=model_list,
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set_verbose=False,
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num_retries=3,
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) # type: ignore
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_api_key = "sk-12345"
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user_api_key_dict = UserAPIKeyAuth(
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api_key=_api_key, max_parallel_requests=10, tpm_limit=10
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)
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local_cache = DualCache()
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pl = ProxyLogging(user_api_key_cache=local_cache)
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pl._init_litellm_callbacks()
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print(f"litellm callbacks: {litellm.callbacks}")
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parallel_request_handler = pl.max_parallel_request_limiter
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await parallel_request_handler.async_pre_call_hook(
|
|
user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
|
|
)
|
|
|
|
current_date = datetime.now().strftime("%Y-%m-%d")
|
|
current_hour = datetime.now().strftime("%H")
|
|
current_minute = datetime.now().strftime("%M")
|
|
precise_minute = f"{current_date}-{current_hour}-{current_minute}"
|
|
request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
|
|
|
|
assert (
|
|
parallel_request_handler.user_api_key_cache.get_cache(
|
|
key=request_count_api_key
|
|
)["current_requests"]
|
|
== 1
|
|
)
|
|
|
|
# normal call
|
|
response = await router.acompletion(
|
|
model="azure-model",
|
|
messages=[{"role": "user", "content": "Write me a paragraph on the moon"}],
|
|
stream=True,
|
|
metadata={"user_api_key": _api_key},
|
|
)
|
|
async for chunk in response:
|
|
continue
|
|
await asyncio.sleep(1) # success is done in a separate thread
|
|
|
|
try:
|
|
await parallel_request_handler.async_pre_call_hook(
|
|
user_api_key_dict=user_api_key_dict,
|
|
cache=local_cache,
|
|
data={},
|
|
call_type="",
|
|
)
|
|
|
|
pytest.fail(f"Expected call to fail")
|
|
except Exception as e:
|
|
assert e.status_code == 429
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_bad_router_call():
|
|
model_list = [
|
|
{
|
|
"model_name": "azure-model",
|
|
"litellm_params": {
|
|
"model": "azure/gpt-turbo",
|
|
"api_key": "os.environ/AZURE_FRANCE_API_KEY",
|
|
"api_base": "https://openai-france-1234.openai.azure.com",
|
|
"rpm": 1440,
|
|
},
|
|
"model_info": {"id": 1},
|
|
},
|
|
{
|
|
"model_name": "azure-model",
|
|
"litellm_params": {
|
|
"model": "azure/gpt-35-turbo",
|
|
"api_key": "os.environ/AZURE_EUROPE_API_KEY",
|
|
"api_base": "https://my-endpoint-europe-berri-992.openai.azure.com",
|
|
"rpm": 6,
|
|
},
|
|
"model_info": {"id": 2},
|
|
},
|
|
]
|
|
router = Router(
|
|
model_list=model_list,
|
|
set_verbose=False,
|
|
num_retries=3,
|
|
) # type: ignore
|
|
|
|
_api_key = "sk-12345"
|
|
user_api_key_dict = UserAPIKeyAuth(api_key=_api_key, max_parallel_requests=1)
|
|
local_cache = DualCache()
|
|
pl = ProxyLogging(user_api_key_cache=local_cache)
|
|
pl._init_litellm_callbacks()
|
|
print(f"litellm callbacks: {litellm.callbacks}")
|
|
parallel_request_handler = pl.max_parallel_request_limiter
|
|
|
|
await parallel_request_handler.async_pre_call_hook(
|
|
user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
|
|
)
|
|
|
|
current_date = datetime.now().strftime("%Y-%m-%d")
|
|
current_hour = datetime.now().strftime("%H")
|
|
current_minute = datetime.now().strftime("%M")
|
|
precise_minute = f"{current_date}-{current_hour}-{current_minute}"
|
|
request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
|
|
|
|
assert (
|
|
parallel_request_handler.user_api_key_cache.get_cache(
|
|
key=request_count_api_key
|
|
)["current_requests"]
|
|
== 1
|
|
)
|
|
|
|
# bad streaming call
|
|
try:
|
|
response = await router.acompletion(
|
|
model="azure-model",
|
|
messages=[{"role": "user2", "content": "Hey, how's it going?"}],
|
|
stream=True,
|
|
metadata={"user_api_key": _api_key},
|
|
)
|
|
except:
|
|
pass
|
|
assert (
|
|
parallel_request_handler.user_api_key_cache.get_cache(
|
|
key=request_count_api_key
|
|
)["current_requests"]
|
|
== 0
|
|
)
|
|
|
|
|
|
@pytest.mark.asyncio
|
|
async def test_bad_router_tpm_limit():
|
|
model_list = [
|
|
{
|
|
"model_name": "azure-model",
|
|
"litellm_params": {
|
|
"model": "azure/gpt-turbo",
|
|
"api_key": "os.environ/AZURE_FRANCE_API_KEY",
|
|
"api_base": "https://openai-france-1234.openai.azure.com",
|
|
"rpm": 1440,
|
|
},
|
|
"model_info": {"id": 1},
|
|
},
|
|
{
|
|
"model_name": "azure-model",
|
|
"litellm_params": {
|
|
"model": "azure/gpt-35-turbo",
|
|
"api_key": "os.environ/AZURE_EUROPE_API_KEY",
|
|
"api_base": "https://my-endpoint-europe-berri-992.openai.azure.com",
|
|
"rpm": 6,
|
|
},
|
|
"model_info": {"id": 2},
|
|
},
|
|
]
|
|
router = Router(
|
|
model_list=model_list,
|
|
set_verbose=False,
|
|
num_retries=3,
|
|
) # type: ignore
|
|
|
|
_api_key = "sk-12345"
|
|
user_api_key_dict = UserAPIKeyAuth(
|
|
api_key=_api_key, max_parallel_requests=10, tpm_limit=10
|
|
)
|
|
local_cache = DualCache()
|
|
pl = ProxyLogging(user_api_key_cache=local_cache)
|
|
pl._init_litellm_callbacks()
|
|
print(f"litellm callbacks: {litellm.callbacks}")
|
|
parallel_request_handler = pl.max_parallel_request_limiter
|
|
|
|
await parallel_request_handler.async_pre_call_hook(
|
|
user_api_key_dict=user_api_key_dict, cache=local_cache, data={}, call_type=""
|
|
)
|
|
|
|
current_date = datetime.now().strftime("%Y-%m-%d")
|
|
current_hour = datetime.now().strftime("%H")
|
|
current_minute = datetime.now().strftime("%M")
|
|
precise_minute = f"{current_date}-{current_hour}-{current_minute}"
|
|
request_count_api_key = f"{_api_key}::{precise_minute}::request_count"
|
|
|
|
assert (
|
|
parallel_request_handler.user_api_key_cache.get_cache(
|
|
key=request_count_api_key
|
|
)["current_requests"]
|
|
== 1
|
|
)
|
|
|
|
# bad call
|
|
try:
|
|
response = await router.acompletion(
|
|
model="azure-model",
|
|
messages=[{"role": "user2", "content": "Write me a paragraph on the moon"}],
|
|
stream=True,
|
|
metadata={"user_api_key": _api_key},
|
|
)
|
|
except:
|
|
pass
|
|
await asyncio.sleep(1) # success is done in a separate thread
|
|
|
|
assert (
|
|
parallel_request_handler.user_api_key_cache.get_cache(
|
|
key=request_count_api_key
|
|
)["current_tpm"]
|
|
== 0
|
|
)
|