Training Pipeline

Description: Training pipeline is a structured sequence of steps used to process data and train machine learning models. This process includes various stages, from data collection and cleaning to feature selection, model training, and performance evaluation. Each step in the pipeline is crucial as it ensures that the data is suitable and that the resulting model is effective and accurate. The pipeline allows for the automation and standardization of workflows, facilitating reproducibility and scalability in data science projects. Additionally, it helps to identify and resolve issues more efficiently, as each stage can be monitored and adjusted as needed. In the context of MLOps, the training pipeline becomes an essential tool for integrating the development and operation of machine learning models, ensuring that best practices are followed and model quality is maintained over time.

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