Beginner to Advanced MLOps on GCP-CI/CD, Kubernetes Jenkins

Simply streamline ML pipelines with Kubernetes, GitLab CI, Jenkins, Prometheus, Grafana, Kubeflow & Minikube on GCP.

Beginner to Advanced MLOps on GCP-CI/CD, Kubernetes Jenkins
Beginner to Advanced MLOps on GCP-CI/CD, Kubernetes Jenkins

Beginner to Advanced MLOps on GCP-CI/CD, Kubernetes Jenkins udemy course

Simply streamline ML pipelines with Kubernetes, GitLab CI, Jenkins, Prometheus, Grafana, Kubeflow & Minikube on GCP.

This Beginner to Advanced MLOps Course covers a wide range of technologies and tools essential for building, deploying, and automating ML models in production.

Technologies & Tools Used Throughout the Course

  • Experiment Tracking & Model Management: MLFlow, Comet-ML, TensorBoard

  • Data & Code Versioning: DVC, Git, GitHub, GitLab

  • CI/CD Pipelines & Automation: Jenkins, ArgoCD, GitHub Actions, GitLab CI/CD, CircleCI

  • Cloud & Infrastructure: GCP (Google Cloud Platform), Minikube, Google Cloud Run, Kubernetes

  • Deployment & Containerization: Docker, Kubernetes, FastAPI, Flask

  • Data Engineering & Feature Storage: PostgreSQL, Redis, Astro Airflow, PSYCOPG2

  • ML Monitoring & Drift Detection: Prometheus, Grafana, Alibi-Detect

  • API & Web App Development: FastAPI, Flask, ChatGPT, Postman, SwaggerUI

How These Tools & Techniques Help

  • Experiment Tracking & Model Management

    • Helps in logging, comparing, and tracking different ML model experiments.

    • MLFlow & Comet-ML provide centralized tracking of hyperparameters and performance metrics.

  • Data & Code Versioning

    • Ensures reproducibility by tracking data changes over time.

    • DVC manages large datasets, and GitHub/GitLab maintains version control for code and pipelines.

  • CI/CD Pipelines & Automation

    • Automates ML workflows from model training to deployment.

    • Jenkins, GitHub Actions, GitLab CI/CD, and ArgoCD handle continuous integration & deployment.

  • Cloud & Infrastructure

    • GCP provides scalable infrastructure for data storage, model training, and deployment.

    • Minikube enables Kubernetes testing on local machines before deploying to cloud environments.

  • Deployment & Containerization

    • Docker containerizes applications, making them portable and scalable.

    • Kubernetes manages ML deployments for high availability and scalability.

  • Data Engineering & Feature Storage

    • PostgreSQL & Redis store structured and real-time ML features.

    • Airflow automates ETL pipelines for seamless data processing.

  • ML Monitoring & Drift Detection

    • Prometheus & Grafana visualize ML model performance in real-time.

    • Alibi-Detect helps in identifying data drift and model degradation.

  • API & Web App Development

    • FastAPI & Flask create APIs for real-time model inference.

    • ChatGPT integration enhances chatbot-based ML applications.

    • SwaggerUI & Postman assist in API documentation & testing.

This course ensures a complete hands-on approach to MLOps, covering everything from data ingestion, model training, versioning, deployment, monitoring, and CI/CD automation to make ML projects production-ready and scalable.