Overview of ML phases
ML encompasses a variety of techniques and approaches, and it involves several distinct phases or stages in the process of developing and deploying ML models. These phases help guide engineers through the iterative and cyclical nature of ML projects, allowing them to build effective and accurate models.
The ML process typically consists of several key phases, each serving a specific purpose and contributing to the overall success of the project. These phases are not always strictly linear, and iterations may occur between them to refine and improve the models. The specific steps and terminology used may vary depending on the ML methodology employed, but the core phases remain consistent.
The ML phases provide a systematic framework for developing and deploying ML models, guiding practitioners through the complexities and challenges inherent in building effective solutions. By following these phases, practitioners can maximize their chances of success and...