AI-ML Decoded: From Fundamentals to Future
Episode 14: An Overview of MLOps In our season finale, we answer the most practical question of all: What happens after the model is trained? We explore MLOps—the critical "assembly line" practices that take a model from a laptop experiment to a production-ready system. In this episode, we cover: * The Origin: How the concept of "Technical Debt" led to merging ML with DevOps. * The Pipeline: A tour of the 5 key components, including Feature Stores, Deployment, and Monitoring. * The Enemy: Understanding Data Drift and Model Drift (why models get worse over time). * LLMOps: The new challenges of managing Large Language Models and "Hallucinations." * Maturity Levels: The journey from Level 0 (Manual) to Level 3 (Fully Automated). Series Conclusion: This wraps up our "Fundamentals" series. Stay tuned for our next season where we delve deeper into specific algorithms!
15 episodes
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