NASSCOM, in association with Genpact and EY, has compiled a guide for enterprises to enable effective setup, management, and scaling of ML operations. ??The pandemic has forced organisations across the world to move to the cloud and led to a proliferation of ML models to drive digitisation. However, merely 27% of AI projects move to production. Addressing the anomaly from challenges related to model development, iteration, deployment and monitoring is the need of the hour. The compendium will act as a blueprint for deploying MLOps in your organisation.

Key highlights:

A set of practices and methodology used to automate ML model development, achieve automated and reliable ML model deployment. 

  • Need for MLOps?

It combines the best of automation, IT operations and management and Continuous Development & Continuous Integration (CI/CD) in Machine Learning and Artificial Intelligence.

  • Benefits of MLOps?

Reduced time-to-market for ML products, improved RoI on AI/ML initiatives, advanced Data Management, etc.

  • Dimensions of MLOps

The compilation brings out 6 pillars of MLOps classified under Implementation and business operations.

  • Future of MLOps

MLOps promises standardisation of processes and methodologies and is expected to boost efficiencies in terms of cost, quality, and time to value.