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* feat(batches/): fix batch cost calculation - ensure it's accurate use the correct cost value - prev. defaulting to non-batch cost * feat(batch_utils.py): log batch models to spend logs + standard logging payload makes it easy to understand how cost was calculated * fix: fix stored payload for test * test: fix test
182 lines
6.2 KiB
Python
182 lines
6.2 KiB
Python
import json
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from typing import Any, List, Literal, Tuple
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import litellm
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from litellm._logging import verbose_logger
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from litellm.types.llms.openai import Batch
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from litellm.types.utils import CallTypes, Usage
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async def _handle_completed_batch(
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batch: Batch,
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custom_llm_provider: Literal["openai", "azure", "vertex_ai"],
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) -> Tuple[float, Usage, List[str]]:
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"""Helper function to process a completed batch and handle logging"""
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# Get batch results
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file_content_dictionary = await _get_batch_output_file_content_as_dictionary(
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batch, custom_llm_provider
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)
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# Calculate costs and usage
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batch_cost = await _batch_cost_calculator(
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custom_llm_provider=custom_llm_provider,
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file_content_dictionary=file_content_dictionary,
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)
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batch_usage = _get_batch_job_total_usage_from_file_content(
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file_content_dictionary=file_content_dictionary,
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custom_llm_provider=custom_llm_provider,
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)
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batch_models = _get_batch_models_from_file_content(file_content_dictionary)
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return batch_cost, batch_usage, batch_models
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def _get_batch_models_from_file_content(
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file_content_dictionary: List[dict],
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) -> List[str]:
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"""
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Get the models from the file content
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"""
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batch_models = []
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for _item in file_content_dictionary:
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if _batch_response_was_successful(_item):
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_response_body = _get_response_from_batch_job_output_file(_item)
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_model = _response_body.get("model")
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if _model:
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batch_models.append(_model)
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return batch_models
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async def _batch_cost_calculator(
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file_content_dictionary: List[dict],
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custom_llm_provider: Literal["openai", "azure", "vertex_ai"] = "openai",
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) -> float:
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"""
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Calculate the cost of a batch based on the output file id
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"""
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if custom_llm_provider == "vertex_ai":
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raise ValueError("Vertex AI does not support file content retrieval")
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total_cost = _get_batch_job_cost_from_file_content(
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file_content_dictionary=file_content_dictionary,
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custom_llm_provider=custom_llm_provider,
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)
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verbose_logger.debug("total_cost=%s", total_cost)
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return total_cost
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async def _get_batch_output_file_content_as_dictionary(
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batch: Batch,
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custom_llm_provider: Literal["openai", "azure", "vertex_ai"] = "openai",
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) -> List[dict]:
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"""
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Get the batch output file content as a list of dictionaries
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"""
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from litellm.files.main import afile_content
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if custom_llm_provider == "vertex_ai":
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raise ValueError("Vertex AI does not support file content retrieval")
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if batch.output_file_id is None:
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raise ValueError("Output file id is None cannot retrieve file content")
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_file_content = await afile_content(
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file_id=batch.output_file_id,
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custom_llm_provider=custom_llm_provider,
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)
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return _get_file_content_as_dictionary(_file_content.content)
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def _get_file_content_as_dictionary(file_content: bytes) -> List[dict]:
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"""
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Get the file content as a list of dictionaries from JSON Lines format
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"""
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try:
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_file_content_str = file_content.decode("utf-8")
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# Split by newlines and parse each line as a separate JSON object
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json_objects = []
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for line in _file_content_str.strip().split("\n"):
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if line: # Skip empty lines
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json_objects.append(json.loads(line))
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verbose_logger.debug("json_objects=%s", json.dumps(json_objects, indent=4))
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return json_objects
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except Exception as e:
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raise e
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def _get_batch_job_cost_from_file_content(
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file_content_dictionary: List[dict],
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custom_llm_provider: Literal["openai", "azure", "vertex_ai"] = "openai",
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) -> float:
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"""
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Get the cost of a batch job from the file content
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"""
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try:
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total_cost: float = 0.0
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# parse the file content as json
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verbose_logger.debug(
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"file_content_dictionary=%s", json.dumps(file_content_dictionary, indent=4)
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)
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for _item in file_content_dictionary:
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if _batch_response_was_successful(_item):
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_response_body = _get_response_from_batch_job_output_file(_item)
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total_cost += litellm.completion_cost(
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completion_response=_response_body,
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custom_llm_provider=custom_llm_provider,
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call_type=CallTypes.aretrieve_batch.value,
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)
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verbose_logger.debug("total_cost=%s", total_cost)
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return total_cost
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except Exception as e:
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verbose_logger.error("error in _get_batch_job_cost_from_file_content", e)
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raise e
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def _get_batch_job_total_usage_from_file_content(
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file_content_dictionary: List[dict],
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custom_llm_provider: Literal["openai", "azure", "vertex_ai"] = "openai",
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) -> Usage:
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"""
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Get the tokens of a batch job from the file content
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"""
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total_tokens: int = 0
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prompt_tokens: int = 0
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completion_tokens: int = 0
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for _item in file_content_dictionary:
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if _batch_response_was_successful(_item):
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_response_body = _get_response_from_batch_job_output_file(_item)
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usage: Usage = _get_batch_job_usage_from_response_body(_response_body)
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total_tokens += usage.total_tokens
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prompt_tokens += usage.prompt_tokens
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completion_tokens += usage.completion_tokens
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return Usage(
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total_tokens=total_tokens,
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prompt_tokens=prompt_tokens,
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completion_tokens=completion_tokens,
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)
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def _get_batch_job_usage_from_response_body(response_body: dict) -> Usage:
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"""
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Get the tokens of a batch job from the response body
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"""
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_usage_dict = response_body.get("usage", None) or {}
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usage: Usage = Usage(**_usage_dict)
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return usage
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def _get_response_from_batch_job_output_file(batch_job_output_file: dict) -> Any:
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"""
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Get the response from the batch job output file
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"""
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_response: dict = batch_job_output_file.get("response", None) or {}
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_response_body = _response.get("body", None) or {}
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return _response_body
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def _batch_response_was_successful(batch_job_output_file: dict) -> bool:
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"""
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Check if the batch job response status == 200
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"""
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_response: dict = batch_job_output_file.get("response", None) or {}
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return _response.get("status_code", None) == 200
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