NEW
What is AI logging or LLM logging or AI Application Logging
Watch: Gen AI Project | Log Classification System Using Deepseek R1 LLM, NLP, Regex, BERT by codebasics AI logging refers to the systematic recording of data and metadata generated by artificial intelligence systems, including the inputs, outputs, and contextual information of machine learning models and large language models (LLMs) during execution. This process captures critical details such as prompts, model responses, system parameters, and error states, enabling visibility into AI workflows . For LLMs, logging is particularly vital due to their complexity and the dynamic nature of their interactions, which require granular tracking of inference calls, token usage, and performance metrics . The importance of logging in AI applications stems from its role in debugging, compliance, auditing, and iterative model improvement. By maintaining detailed logs, developers can trace decision-making pathways, identify biases, and ensure alignment with ethical and operational standards . AI logging systems typically include structured records of: