Machine learning solution workflow
In general, the main tasks involved in solving a machine learning problem can be summarized into four areas, as follows:
- Data preparation
- Training sets generation
- Model training, evaluation, and selection
- Deployment and monitoring
Starting from data sources and ending with the final machine learning system, a machine learning solution basically follows the paradigm shown here:
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Figure 11.1: The life cycle of a machine learning solution
In the following sections, we will be learning about the typical tasks, common challenges, and best practices for each of these four stages.