Cloud: Intro to Cloud Computing, IaaS/PaaS/SaaS, AWS/Azure/GCP overview
DSA: Complexity Analysis, Arrays, Strings, Recursion
Hands-on Project: Deploy a static website on AWS S3 + Basic DSA coding challenges
Version Control: Git, GitHub/GitLab workflows
CI/CD Basics: Jenkins, GitHub Actions
DSA: Searching & Sorting, Linked Lists
Hands-on Project: Set up a CI/CD pipeline for a sample app
Cloud: Compute (EC2, VM), Storage (S3, Blob), Networking (VPC)
DSA: Stacks, Queues, Hashing
Hands-on Project: Build a 3-tier cloud architecture + DSA problem sets
Cloud: IAM, Security, Monitoring (CloudWatch, Azure Monitor)
DevOps: Docker basics, Containerization
DSA: Trees (Binary Trees, BST)
Hands-on Project: Dockerize a web app + IAM role-based access project
DevOps: Kubernetes basics (Pods, Deployments, Services)
IaC: Terraform, Ansible
DSA: Graphs (BFS, DFS, Shortest Path)
Hands-on Project: Deploy microservices on Kubernetes
Cloud: Serverless (AWS Lambda, Azure Functions, GCP Functions)
DevOps: Advanced CI/CD, GitOps (ArgoCD)
DSA: Dynamic Programming basics
Hands-on Project: End-to-end Serverless app with CI/CD pipeline
MLOps: ML lifecycle, Data pipelines, DVC, MLflow
Cloud: Managed AI/ML services (AWS Sagemaker, Azure ML)
DSA: Advanced DP, Greedy algorithms
Hands-on Project: Train & track ML experiments with MLflow
Deployment: FastAPI/Flask model serving
CI/CD for ML: Kubeflow pipelines
Monitoring: Drift detection, logging
Hands-on Project: Deploy ML model on Kubernetes with monitoring
GenAI: Transformer basics, LLMs overview (GPT, LLaMA, BERT)
Prompt Engineering
Tools: Hugging Face, LangChain basics
Hands-on Project: Build a simple GenAI chatbot with OpenAI API
GenAI: RAG (Retrieval Augmented Generation), Fine-tuning (LoRA, PEFT)
Applications: Chatbots, Image generation, Speech AI
DSA: Backtracking, Segment Trees, Bit Manipulation
Hands-on Project: Custom knowledge chatbot with LangChain + Vector DB
Students choose one specialization:
Cloud & DevOps Architect
Multi-cloud architecture
CI/CD at scale
Security, compliance, FinOps
MLOps Engineer
Advanced pipelines, ML observability
Large-scale model deployment
GenAI Engineer
Fine-tuning LLMs
Building multimodal apps (text + image + speech)
Hands-on Project: Capstone preparation aligned with specialization
Capstone Projects:
Cloud/DevOps → Multi-Cloud E-commerce infra with CI/CD
MLOps → End-to-end ML pipeline with monitoring
GenAI → AI Copilot app (Chatbot + RAG + API integration)
Career Prep: Resume, Interview training, Mock interviews
Final Demo Day: Present capstone projects
By end of the program, learners graduate as:
Cloud & DevOps Architect (if specialization chosen)
MLOps Engineer (if specialization chosen)
GenAI Engineer (if specialization chosen)
Plus strong foundation in DSA for coding interviews
0 Reviews
☁️ Cloud Computing with ML Ops – Beginner to Advanced (9 Months) Master the future of tech by combining Cloud Computing, DevOps, and Machine Learning Operations (ML Ops) in one powerful program. This 9-month course takes you from foundational cloud skills to advanced ML deployment, including AWS/GCP, Docker, Kubernetes, Python, MLflow, and more. Learn by building real-world projects and get certified with industry-recognized credentials. Ideal for those aiming to become Cloud ML Engineers, ML Ops Specialists, or DevOps Engineers with AI expertise.
🚀 Launch Your Career in Cloud, DevOps & AI with One Power-Packed Course.
Learn the advance data engineering of Azure setup, user management, and directory services.