Traditional MLOps versus LLMOps
The field of AI has evolved significantly, leading to the specialization of MLOps and LLMOps. MLOps focuses on managing the life cycle of machine learning models, emphasizing integration, deployment, and monitoring, and addresses challenges in model versioning, data quality, and pipeline orchestration. LLMOps, however, deals specifically with the complexities of LLMs, such as extensive data and computational needs, and ethical considerations in training and output. While MLOps applies broadly to various machine learning models, LLMOps is tailored to the nuances of LLMs. Next, we’ll explore the MLOps life cycle and what additional considerations are required for LLMOps.
Stages in the MLOps life cycle
MLOps is critical in transforming theoretical machine learning models into practical, real-world applications. Traditional MLOps involves deploying, monitoring, and maintaining these models within production environments, ensuring that they transition...