Spaces:
Configuration error
Configuration error
# What this tests ? | |
## Tests /batches endpoints | |
import pytest | |
import asyncio | |
import aiohttp, openai | |
from openai import OpenAI, AsyncOpenAI | |
from typing import Optional, List, Union | |
from test_openai_files_endpoints import upload_file, delete_file | |
import os | |
import sys | |
import time | |
BASE_URL = "http://localhost:4000" # Replace with your actual base URL | |
API_KEY = "sk-1234" # Replace with your actual API key | |
from openai import OpenAI | |
client = OpenAI(base_url=BASE_URL, api_key=API_KEY) | |
async def test_batches_operations(): | |
_current_dir = os.path.dirname(os.path.abspath(__file__)) | |
input_file_path = os.path.join(_current_dir, "input.jsonl") | |
file_obj = client.files.create( | |
file=open(input_file_path, "rb"), | |
purpose="batch", | |
) | |
batch = client.batches.create( | |
input_file_id=file_obj.id, | |
endpoint="/v1/chat/completions", | |
completion_window="24h", | |
) | |
assert batch.id is not None | |
# Test get batch | |
_retrieved_batch = client.batches.retrieve(batch_id=batch.id) | |
print("response from get batch", _retrieved_batch) | |
assert _retrieved_batch.id == batch.id | |
assert _retrieved_batch.input_file_id == file_obj.id | |
# Test list batches | |
_list_batches = client.batches.list() | |
print("response from list batches", _list_batches) | |
assert _list_batches is not None | |
assert len(_list_batches.data) > 0 | |
# Clean up | |
# Test cancel batch | |
_canceled_batch = client.batches.cancel(batch_id=batch.id) | |
print("response from cancel batch", _canceled_batch) | |
assert _canceled_batch.status is not None | |
assert ( | |
_canceled_batch.status == "cancelling" or _canceled_batch.status == "cancelled" | |
) | |
# finally delete the file | |
_deleted_file = client.files.delete(file_id=file_obj.id) | |
print("response from delete file", _deleted_file) | |
assert _deleted_file.deleted is True | |
def create_batch_oai_sdk(filepath: str, custom_llm_provider: str) -> str: | |
batch_input_file = client.files.create( | |
file=open(filepath, "rb"), | |
purpose="batch", | |
extra_body={"custom_llm_provider": custom_llm_provider}, | |
) | |
batch_input_file_id = batch_input_file.id | |
print("waiting for file to be processed......") | |
time.sleep(5) | |
rq = client.batches.create( | |
input_file_id=batch_input_file_id, | |
endpoint="/v1/chat/completions", | |
completion_window="24h", | |
metadata={ | |
"description": filepath, | |
}, | |
extra_body={"custom_llm_provider": custom_llm_provider}, | |
) | |
print(f"Batch submitted. ID: {rq.id}") | |
return rq.id | |
def await_batch_completion(batch_id: str, custom_llm_provider: str): | |
max_tries = 3 | |
tries = 0 | |
while tries < max_tries: | |
batch = client.batches.retrieve( | |
batch_id, extra_body={"custom_llm_provider": custom_llm_provider} | |
) | |
if batch.status == "completed": | |
print(f"Batch {batch_id} completed.") | |
return batch.id | |
tries += 1 | |
print(f"waiting for batch to complete... (attempt {tries}/{max_tries})") | |
time.sleep(10) | |
print( | |
f"Reached maximum number of attempts ({max_tries}). Batch may still be processing." | |
) | |
def write_content_to_file( | |
batch_id: str, output_path: str, custom_llm_provider: str | |
) -> str: | |
batch = client.batches.retrieve( | |
batch_id=batch_id, extra_body={"custom_llm_provider": custom_llm_provider} | |
) | |
content = client.files.content( | |
file_id=batch.output_file_id, | |
extra_body={"custom_llm_provider": custom_llm_provider}, | |
) | |
print("content from files.content", content.content) | |
content.write_to_file(output_path) | |
import jsonlines | |
def read_jsonl(filepath: str): | |
results = [] | |
with jsonlines.open(filepath) as f: | |
for line in f: | |
results.append(line) | |
for item in results: | |
print(item) | |
custom_id = item["custom_id"] | |
print(custom_id) | |
def get_any_completed_batch_id_azure(): | |
print("AZURE getting any completed batch id") | |
list_of_batches = client.batches.list(extra_body={"custom_llm_provider": "azure"}) | |
print("list of batches", list_of_batches) | |
for batch in list_of_batches: | |
if batch.status == "completed": | |
return batch.id | |
return None | |
def test_e2e_batches_files(custom_llm_provider): | |
""" | |
[PROD Test] Ensures OpenAI Batches + files work with OpenAI SDK | |
""" | |
input_path = ( | |
"input.jsonl" if custom_llm_provider == "openai" else "input_azure.jsonl" | |
) | |
output_path = "out.jsonl" if custom_llm_provider == "openai" else "out_azure.jsonl" | |
_current_dir = os.path.dirname(os.path.abspath(__file__)) | |
input_file_path = os.path.join(_current_dir, input_path) | |
output_file_path = os.path.join(_current_dir, output_path) | |
print("running e2e batches files with custom_llm_provider=", custom_llm_provider) | |
batch_id = create_batch_oai_sdk( | |
filepath=input_file_path, custom_llm_provider=custom_llm_provider | |
) | |
if custom_llm_provider == "azure": | |
# azure takes very long to complete a batch | |
return | |
else: | |
response_batch_id = await_batch_completion( | |
batch_id=batch_id, custom_llm_provider=custom_llm_provider | |
) | |
if response_batch_id is None: | |
return | |
write_content_to_file( | |
batch_id=batch_id, | |
output_path=output_file_path, | |
custom_llm_provider=custom_llm_provider, | |
) | |
read_jsonl(output_file_path) | |
def test_vertex_batches_endpoint(): | |
""" | |
Test VertexAI Batches Endpoint | |
""" | |
import os | |
oai_client = OpenAI(api_key=API_KEY, base_url=BASE_URL) | |
file_name = "local_testing/vertex_batch_completions.jsonl" | |
_current_dir = os.path.dirname(os.path.abspath(__file__)) | |
file_path = os.path.join(_current_dir, file_name) | |
file_obj = oai_client.files.create( | |
file=open(file_path, "rb"), | |
purpose="batch", | |
extra_body={"custom_llm_provider": "vertex_ai"}, | |
) | |
print("Response from creating file=", file_obj) | |
batch_input_file_id = file_obj.id | |
assert ( | |
batch_input_file_id is not None | |
), f"Failed to create file, expected a non null file_id but got {batch_input_file_id}" | |
create_batch_response = oai_client.batches.create( | |
completion_window="24h", | |
endpoint="/v1/chat/completions", | |
input_file_id=batch_input_file_id, | |
extra_body={"custom_llm_provider": "vertex_ai"}, | |
metadata={"key1": "value1", "key2": "value2"}, | |
) | |
print("response from create batch", create_batch_response) | |
pass | |