Leverage MLOps to scale and realize the ML use cases faster
Most businesses in the ‘Connectedness’ industry have started embracing Machine Learning (ML) technology to provide effective customer service to the customers. However, managing these ML projects and putting them into action is challenging. For service providers who strive to move beyond ideation and embed ML into their business processes, Machine Learning Operations (MLOps) will be a game-changer. According to Gartner, “Launching ML pilots is deceptively easy but deploying them into production is notoriously challenging”. Listed below are a few challenges that make it hard to scale ML initiatives.
- Lack of automated mechanism to address the change request in ML pipeline
- Inefficient ways of retraining and deploying the ML models to accommodate the data changes
- Lack of in-depth visibility of the model’s performance
Service providers need to implement the MLOps approach to overcome these challenges, which automates and monitors the entire machine learning life cycle. It enables consistent improvement in the baseline accuracy and accelerates the production time of ML models.
Launching ML pilots is deceptively easy but deploying them into production is notoriously challenging.
The successful implementation of the MLOps approach requires the right set of enablers such as de-coupled architecture, standard change management process, automated retraining and deployment of ML models, and continuous monitoring.