Introduction to MLOps
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Getting started with the Use Case and Environment Setup
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From Raw Data to Models
Understanding Data Science with Feature Engineering and Experimentation
0/12
Packaging Model along with FastAPI Wrapper and Streamlit with Containers
0/12
Setting up MLOps CI Workflow with GitHub Actions
0/12
Building Scalable Prod Inference Infrastructure with Kubernetes
0/13
Upcoming : Inference Serving with Kubernetes (KubeRay/Kubeflow/BentoML)
Monitoring and Autoscaling a ML Model – Prometheus, Grafana, KEDA, HPA, VPA
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GitOps Based Deployments for ML/LLM Apps
0/8
Upcoming : ML Monitoring, Drift/Bias Detection and Retraining