Files
litellm/tests/llm_translation/base_embedding_unit_tests.py
T
Krish Dholakia 760328b6ad Litellm dev 12 25 2025 p2 (#7420)
* test: add new test image embedding to base llm unit tests

Addresses https://github.com/BerriAI/litellm/issues/6515

* fix(bedrock/embed/multimodal-embeddings): strip data prefix from image urls for bedrock multimodal embeddings

Fix https://github.com/BerriAI/litellm/issues/6515

* feat: initial commit for fireworks ai audio transcription support

Relevant issue: https://github.com/BerriAI/litellm/issues/7134

* test: initial fireworks ai test

* feat(fireworks_ai/): implemented fireworks ai audio transcription config

* fix(utils.py): register fireworks ai audio transcription config, in config manager

* fix(utils.py): add fireworks ai param translation to 'get_optional_params_transcription'

* refactor(fireworks_ai/): define text completion route with model name handling

moves model name handling to specific fireworks routes, as required by their api

* refactor(fireworks_ai/chat): define transform_Request - allows fixing model if accounts/ is missing

* fix: fix linting errors

* fix: fix linting errors

* fix: fix linting errors

* fix: fix linting errors

* fix(handler.py): fix linting errors

* fix(main.py): fix tgai text completion route

* refactor(together_ai/completion): refactors together ai text completion route to just use provider transform request

* refactor: move test_fine_tuning_api out of local_testing

reduces local testing ci/cd time
2024-12-25 18:35:34 -08:00

96 lines
3.0 KiB
Python

import asyncio
import httpx
import json
import pytest
import sys
from typing import Any, Dict, List
from unittest.mock import MagicMock, Mock, patch
import os
sys.path.insert(
0, os.path.abspath("../..")
) # Adds the parent directory to the system path
import litellm
from litellm import embedding
from litellm.exceptions import BadRequestError
from litellm.llms.custom_httpx.http_handler import AsyncHTTPHandler, HTTPHandler
from litellm.utils import (
CustomStreamWrapper,
get_supported_openai_params,
get_optional_params,
get_optional_params_embeddings,
)
import requests
import base64
# test_example.py
from abc import ABC, abstractmethod
url = "https://dummyimage.com/100/100/fff&text=Test+image"
response = requests.get(url)
file_data = response.content
encoded_file = base64.b64encode(file_data).decode("utf-8")
base64_image = f"data:image/png;base64,{encoded_file}"
class BaseLLMEmbeddingTest(ABC):
"""
Abstract base test class that enforces a common test across all test classes.
"""
@abstractmethod
def get_base_embedding_call_args(self) -> dict:
"""Must return the base embedding call args"""
pass
@abstractmethod
def get_custom_llm_provider(self) -> litellm.LlmProviders:
"""Must return the custom llm provider"""
pass
@pytest.mark.asyncio()
@pytest.mark.parametrize("sync_mode", [True, False])
async def test_basic_embedding(self, sync_mode):
litellm.set_verbose = True
embedding_call_args = self.get_base_embedding_call_args()
if sync_mode is True:
response = litellm.embedding(
**embedding_call_args,
input=["hello", "world"],
)
print("embedding response: ", response)
else:
response = await litellm.aembedding(
**embedding_call_args,
input=["hello", "world"],
)
print("async embedding response: ", response)
from openai.types.create_embedding_response import CreateEmbeddingResponse
CreateEmbeddingResponse.model_validate(response.model_dump())
def test_embedding_optional_params_max_retries(self):
embedding_call_args = self.get_base_embedding_call_args()
optional_params = get_optional_params_embeddings(
**embedding_call_args, max_retries=20
)
assert optional_params["max_retries"] == 20
def test_image_embedding(self):
litellm.set_verbose = True
from litellm.utils import supports_embedding_image_input
os.environ["LITELLM_LOCAL_MODEL_COST_MAP"] = "True"
litellm.model_cost = litellm.get_model_cost_map(url="")
base_embedding_call_args = self.get_base_embedding_call_args()
if not supports_embedding_image_input(base_embedding_call_args["model"], None):
print("Model does not support embedding image input")
pytest.skip("Model does not support embedding image input")
embedding(**base_embedding_call_args, input=[base64_image])