forked from phoenix/litellm-mirror
* feat - allow tagging vertex JS SDK request * add unit testing for passing headers for pass through endpoints * fix allow using vertex_ai as the primary way for pass through vertex endpoints * docs on vertex js pass tags * add e2e test for vertex pass through with spend tags * add e2e tests for streaming vertex JS with tags * fix vertex ai testing
201 lines
6.1 KiB
Python
201 lines
6.1 KiB
Python
"""
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Test Vertex AI Pass Through
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1. use Credentials client side, Assert SpendLog was created
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"""
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import vertexai
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from vertexai.preview.generative_models import GenerativeModel
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import tempfile
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import json
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import os
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import pytest
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import asyncio
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# Path to your service account JSON file
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SERVICE_ACCOUNT_FILE = "path/to/your/service-account.json"
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def load_vertex_ai_credentials():
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# Define the path to the vertex_key.json file
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print("loading vertex ai credentials")
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filepath = os.path.dirname(os.path.abspath(__file__))
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vertex_key_path = filepath + "/vertex_key.json"
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# Read the existing content of the file or create an empty dictionary
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try:
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with open(vertex_key_path, "r") as file:
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# Read the file content
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print("Read vertexai file path")
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content = file.read()
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# If the file is empty or not valid JSON, create an empty dictionary
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if not content or not content.strip():
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service_account_key_data = {}
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else:
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# Attempt to load the existing JSON content
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file.seek(0)
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service_account_key_data = json.load(file)
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except FileNotFoundError:
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# If the file doesn't exist, create an empty dictionary
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service_account_key_data = {}
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# Update the service_account_key_data with environment variables
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private_key_id = os.environ.get("VERTEX_AI_PRIVATE_KEY_ID", "")
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private_key = os.environ.get("VERTEX_AI_PRIVATE_KEY", "")
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private_key = private_key.replace("\\n", "\n")
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service_account_key_data["private_key_id"] = private_key_id
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service_account_key_data["private_key"] = private_key
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# print(f"service_account_key_data: {service_account_key_data}")
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# Create a temporary file
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with tempfile.NamedTemporaryFile(mode="w+", delete=False) as temp_file:
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# Write the updated content to the temporary files
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json.dump(service_account_key_data, temp_file, indent=2)
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# Export the temporary file as GOOGLE_APPLICATION_CREDENTIALS
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os.environ["GOOGLE_APPLICATION_CREDENTIALS"] = os.path.abspath(temp_file.name)
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async def call_spend_logs_endpoint():
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"""
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Call this
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curl -X GET "http://0.0.0.0:4000/spend/logs" -H "Authorization: Bearer sk-1234"
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"""
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import datetime
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import requests
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todays_date = datetime.datetime.now().strftime("%Y-%m-%d")
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url = f"http://0.0.0.0:4000/global/spend/logs?api_key=best-api-key-ever"
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headers = {"Authorization": f"Bearer sk-1234"}
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response = requests.get(url, headers=headers)
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print("response from call_spend_logs_endpoint", response)
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json_response = response.json()
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# get spend for today
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"""
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json response looks like this
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[{'date': '2024-08-30', 'spend': 0.00016600000000000002, 'api_key': 'best-api-key-ever'}]
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"""
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todays_date = datetime.datetime.now().strftime("%Y-%m-%d")
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for spend_log in json_response:
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if spend_log["date"] == todays_date:
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return spend_log["spend"]
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LITE_LLM_ENDPOINT = "http://localhost:4000"
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@pytest.mark.asyncio()
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async def test_basic_vertex_ai_pass_through_with_spendlog():
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spend_before = await call_spend_logs_endpoint() or 0.0
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load_vertex_ai_credentials()
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vertexai.init(
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project="adroit-crow-413218",
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location="us-central1",
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api_endpoint=f"{LITE_LLM_ENDPOINT}/vertex_ai",
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api_transport="rest",
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)
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model = GenerativeModel(model_name="gemini-1.0-pro")
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response = model.generate_content("hi")
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print("response", response)
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await asyncio.sleep(20)
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spend_after = await call_spend_logs_endpoint()
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print("spend_after", spend_after)
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assert (
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spend_after > spend_before
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), "Spend should be greater than before. spend_before: {}, spend_after: {}".format(
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spend_before, spend_after
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)
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pass
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@pytest.mark.asyncio()
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@pytest.mark.skip(reason="skip flaky test - vertex pass through streaming is flaky")
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async def test_basic_vertex_ai_pass_through_streaming_with_spendlog():
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spend_before = await call_spend_logs_endpoint() or 0.0
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print("spend_before", spend_before)
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load_vertex_ai_credentials()
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vertexai.init(
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project="adroit-crow-413218",
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location="us-central1",
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api_endpoint=f"{LITE_LLM_ENDPOINT}/vertex_ai",
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api_transport="rest",
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)
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model = GenerativeModel(model_name="gemini-1.0-pro")
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response = model.generate_content("hi", stream=True)
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for chunk in response:
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print("chunk", chunk)
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print("response", response)
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await asyncio.sleep(20)
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spend_after = await call_spend_logs_endpoint()
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print("spend_after", spend_after)
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assert (
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spend_after > spend_before
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), "Spend should be greater than before. spend_before: {}, spend_after: {}".format(
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spend_before, spend_after
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)
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pass
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@pytest.mark.skip(
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reason="skip flaky test - google context caching is flaky and not reliable."
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)
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@pytest.mark.asyncio
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async def test_vertex_ai_pass_through_endpoint_context_caching():
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import vertexai
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from vertexai.generative_models import Part
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from vertexai.preview import caching
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import datetime
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# load_vertex_ai_credentials()
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vertexai.init(
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project="adroit-crow-413218",
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location="us-central1",
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api_endpoint=f"{LITE_LLM_ENDPOINT}/vertex_ai",
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api_transport="rest",
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)
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system_instruction = """
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You are an expert researcher. You always stick to the facts in the sources provided, and never make up new facts.
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Now look at these research papers, and answer the following questions.
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"""
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contents = [
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Part.from_uri(
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"gs://cloud-samples-data/generative-ai/pdf/2312.11805v3.pdf",
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mime_type="application/pdf",
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),
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Part.from_uri(
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"gs://cloud-samples-data/generative-ai/pdf/2403.05530.pdf",
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mime_type="application/pdf",
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),
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]
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cached_content = caching.CachedContent.create(
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model_name="gemini-1.5-pro-001",
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system_instruction=system_instruction,
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contents=contents,
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ttl=datetime.timedelta(minutes=60),
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# display_name="example-cache",
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)
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print(cached_content.name)
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