With the rapid advancements in technology, the field of machine learning has become a hot spot in the industry. One of the key aspects of this field is MLOps, or Machine Learning Operations, which is quickly becoming a critical component of successful machine learning projects.
Understanding MLOps
MLOps, also known as ML Ops, is an engineering discipline that focuses on unifying the process of machine learning model development and operations. It is aimed at automating and improving the process of machine learning model lifecycle management.The Increasing Importance of Machine Learning Operations
As per a recent survey, only 22% of companies have successfully integrated machine learning into their operational processes. This highlights the growing need for machine learning operations expertise in the industry.Key Components of MLOps
- Data Management: This involves managing and securing data used for machine learning models.- Model Training: This involves developing, training, and testing the machine learning models.
- Model Deployment: This involves deploying the models into production.
- Model Monitoring: This involves monitoring the performance of the models in real-time.
- Model Governance: This involves ensuring regulatory compliance of the models.
COMMENT