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Mlops Zero To Hero - Printable Version +- MW Forum (https://www.themwboard.com) +-- Forum: My Category (https://www.themwboard.com/forumdisplay.php?fid=1) +--- Forum: My Forum (https://www.themwboard.com/forumdisplay.php?fid=2) +--- Thread: Mlops Zero To Hero (/showthread.php?tid=24503) |
Mlops Zero To Hero - charlie - 12-15-2025 [center] ![]() Mlops Zero To Hero Published 12/2025 Created by Abhishek Veeramalla MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch Level: Beginner | Genre: eLearning | Language: English + subtitle | Duration: 69 Lectures ( 10h 56m ) | Size: 7 GB [/center] Learn Production-Grade MLOps using DVC, MLFlow, AWS, Docker, Kubernetes, KServe, SageMaker and Kubeflow. What you'll learn Introduction to Machine Learning Operations (MLOps) Transition from DevOps Engineers to MLOps Engineers Machine Learning Basics for DevOps Engineers Model Deployment and Monitoring in Production End-to-End ML Pipeline Orchestration Real-World MLOps Project Requirements Fundamental understanding of DevOps Basic understanding of DevOps concepts like Docker, Kubernetes and CI/CD. Description MLOps Zero to Hero is a practical, hands-on course designed to help engineers understand how machine learning systems are built, deployed, and operated in real production environments. The course focuses on the real challenges teams face after a model is trained versioning data, tracking experiments, deploying models, scaling inference, and managing ML workloads reliably.You will start with the fundamentals of the ML lifecycle and gradually move into core MLOps practices. The course covers data and model versioning using DVC, experiment tracking with MLflow, and containerization using Docker. You will deploy models on Kubernetes, understand production-grade serving patterns, and implement Kubernetes-native inference using KServe.The course also introduces AWS-based MLOps workflows, including Amazon SageMaker, to help you understand how managed platforms are used in real organizations. You will further explore Kubeflow to learn how ML pipelines and training workloads are orchestrated in Kubernetes environments.Every concept is explained using simple examples and real-world workflows, with a strong emphasis on clarity and practical understanding rather than theory. By the end of the course, you will have a complete picture of how machine learning moves from experimentation to production - and the confidence to design, deploy, and operate MLOps systems in real projects. Who this course is for DevOps Engineers planning to transition to MLOps roles Beginners curious about Model Deployments and Model Maintenence Everyone who is curious about undertstanding how ML models are dealt at production level. Quote:https://upzur.com/ul85kaj8vttf/MLOps_Zero_to_Hero.part8.rar.html |