- Simple cost logger for OpenAI requests.
- Track the cost of every request you make to OpenAI and visualize them in a user-friendly way.
- Homepage on PyPI.
- Demo file with a usage example.
pip install openai-cost-logger
from openai_cost_logger import OpenAICostLogger from openai_cost_logger import OpenAICostLoggerViz from openai_cost_logger import OpenAICostLoggerUtils from openai_cost_logger import OpenAICostLogger_Singleton from openai_cost_logger import DEFAULT_LOG_PATH, MODELS_COST
- Track the cost of every request you make and save them in a JSON file.
- Choose the feature you want to track (prompt_tokens, completion_tokens, completion, prompt, etc.).
- Check the cost of your requests filtering by model or strftime aggregation (see the docs).
- The generation of responses is totally up to the user. The library supports every model whose response contains the fields usage.prompt_tokens and usage.total_tokens (e.g. chat completions, embeddings, etc.).
- Be aware that the classic cost logger is not thread-safe.
- If you want to use it in a multithreading environment, you should use the thread-safe version of the logger:
OpenAICostLogger_Singleton
. The interface is the same as the classic logger. This will prevent multiple threads from writing to the same file at the same time.
- Every cost is specified per million tokens.
- If you don't specify the cost, the library will look to the MODELS_COST dictionary and get the cost of the model you are using. Be aware that if the model is not in the dictionary, an exception will be raised.