Enterprise-Ready MLOps: Apply DevOps Principles to all the Layers

In a productionized machine learning (ML) pipeline, CI/CD (Continuous Integration/Continuous Deployment) can be applied to several components beyond just the ML model itself. These include data pipelines, feature engineering, model monitoring, infrastructure, and the codebase that manages the entire [...]

2024-10-15T12:52:47-04:00October 15, 2024|GenAI/MLOps|

Enterprise-Ready MLOps: General Considerations, Part 2

Beyond the general considerations previously discussed, there are several additional aspects to think about when deploying an ML model into production to ensure it's truly enterprise-ready. Here are some further considerations: 11. Model Interpretability and Explainability Transparency: Ensure that [...]

2024-10-04T08:47:21-04:00October 4, 2024|GenAI/MLOps|

MLOps: The Backbone of Enterprise-Ready Machine Learning Deployments

MLOps, or Machine Learning Operations, is an evolving discipline that enables enterprise-ready deployment and management of machine learning (ML) models. As organizations increasingly rely on ML to drive business decisions and innovation, the importance of MLOps has surged. Productionizing [...]

2024-09-30T15:12:48-04:00September 30, 2024|GenAI/MLOps|

Enterprise-Ready MLOps: Dealing with Enterprise Level Risks

When productionizing and operationalizing ML models in an enterprise environment, the following risks are particularly pronounced compared to other environments: 1. Compliance and Regulatory Risks Regulatory Compliance: Enterprises often operate in heavily regulated industries (e.g., finance, healthcare) where non-compliance [...]

2024-09-30T15:14:42-04:00September 27, 2024|GenAI/MLOps|
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