Spiral Model Technique For Data Science & Machine Learning Lifecycle
This addresses the need for more adaptable data science lifecycles in business contexts, but it appears incremental as it builds on existing cyclical models.
The paper tackles the challenge of applying data science lifecycles to business problems with clear end goals by introducing the spiral technique, which emphasizes versatility, agility, and an iterative approach to improve project management.
Analytics play an important role in modern business. Companies adapt data science lifecycles to their culture to seek productivity and improve their competitiveness among others. Data science lifecycles are fairly an important contributing factor to start and end a project that are data dependent. Data science and Machine learning life cycles comprises of series of steps that are involved in a project. A typical life cycle states that it is a linear or cyclical model that revolves around. It is mostly depicted that it is possible in a traditional data science life cycle to start the process again after reaching the end of cycle. This paper suggests a new technique to incorporate data science life cycle to business problems that have a clear end goal. A new technique called spiral technique is introduced to emphasize versatility, agility and iterative approach to business processes.