|
Login /

Course Details

Server Management and Automation With Placement

☁️🤖 Cloud Computing with ML Ops

Instructor: Team HyperTech

Created: 08 Jul, 2025

Courses Descriptions

☁️🤖 Cloud Computing with ML Ops - 9 Months Curriculum

🏁 From Beginner to Advanced | With Projects & Certifications

  • 📌 Month 1: Cloud Fundamentals (AWS, GCP, Azure Basics)

    📖 Learning Outcomes:

    • Understand Cloud Computing concepts & architecture

    • Master IaaS, PaaS, SaaS service models

    • Learn about compute (VMs, EC2), storage (S3, Blob, GCS), and networking basics

    • Hands-on with AWS Free Tier / GCP Sandbox / Azure Free Account

    🛠 Hands-on Project:

    • Launch and manage a Virtual Machine (VM)

    • Host a simple web server (Apache/NGINX) on AWS/GCP

    🎓 Certifications Prepared:

    • AWS Cloud Practitioner

    • Microsoft Azure Fundamentals

    Career Impact: Builds the core cloud foundation needed for DevOps and ML Ops.

    📌 Month 2: Linux, Networking & Scripting Basics

    📖 Learning Outcomes:

    • Linux command-line mastery (navigating, managing files, permissions)

    • Process Management, Services, and System Monitoring

    • Networking Fundamentals: IP, DNS, Load Balancer, Firewalls, Ports

    • Introduction to Shell Scripting (Bash) for automation

    🛠 Hands-on Project:

    • Create shell scripts for:

      • Automated log backups

      • User management (create/delete users)

      • Simple network monitoring script

    Career Impact: Gain system admin & networking skills, crucial for Cloud/DevOps roles.

    📌 Month 3: DevOps Essentials

    📖 Learning Outcomes:

    • Fundamentals of DevOps culture, Agile, and CI/CD pipelines

    • Git & GitHub (branches, merges, pull requests, version control best practices)

    • CI/CD Automation with Jenkins & GitHub Actions

    • Introduction to Docker containers

    🛠 Hands-on Project:

    • Build a CI/CD pipeline for a sample app (auto build → test → deploy)

    • Containerize a sample Python/NodeJS application using Docker

    🎓 Certifications Prepared:

    • Docker Associate

    • DevOps Foundation

    Career Impact: Gain skills to automate deployments — highly demanded by companies.

    📌 Month 4: Containers & Kubernetes (K8s)

    📖 Learning Outcomes:

    • Docker Advanced: Images, Volumes, Networking, Docker Compose

    • Kubernetes Fundamentals: Pods, Services, Deployments, Namespaces

    • Tools: Helm Charts, K8s Dashboard

    • Deploy locally with Minikube, scale with EKS, GKE, AKS

    🛠 Hands-on Project:

    • Deploy a Machine Learning model as a containerized service

    • Scale it on Kubernetes with multiple replicas

    Career Impact: Be industry-ready for DevOps Engineer roles (Docker + K8s skills).

    📌 Month 5: Python for Cloud & Automation

    📖 Learning Outcomes:

    • Python basics → intermediate: loops, functions, OOP, modules

    • File handling, REST API requests, JSON handling

    • Data manipulation with Pandas & NumPy

    • Cloud SDKs: AWS Boto3, GCP SDK for automation

    🛠 Hands-on Project:

    • Write Python scripts to:

      • Create an EC2 instance automatically

      • Upload files to S3 bucket

      • Monitor cloud resources

    Career Impact: Become capable of cloud automation & scripting, a must for ML Ops.

    📌 Month 6: Machine Learning Foundations

    📖 Learning Outcomes:

    • Data Preprocessing & Cleaning (handling missing data, encoding)

    • Feature Engineering for ML models

    • Algorithms: Regression, Classification, Decision Trees, Random Forest

    • Evaluation Metrics: Accuracy, Confusion Matrix, ROC-AUC, Precision-Recall

    🛠 Hands-on Project:

    • Build a prediction ML model (e.g., housing prices, churn analysis, fraud detection)

    • Evaluate performance with industry metrics

    🎓 Certifications Prepared:

    • Google AI Essentials

    • AWS Machine Learning Foundational

    Career Impact: Step into the Data Science + ML world with practical skills.

    📌 Month 7: ML Ops Pipeline – Model to Production

    📖 Learning Outcomes:

    • Packaging models using Pickle, Joblib, ONNX

    • CI/CD for ML models

    • Monitoring & logging ML pipelines

    • Tools: MLflow, Kubeflow basics

    🛠 Hands-on Project:

    • Develop a complete ML Ops pipeline:

      • Train ML model → Containerize → Deploy → Monitor

    Career Impact: Bridge the gap between ML research and production deployment.

    📌 Month 8: Cloud-native ML Ops Tools

    📖 Learning Outcomes:

    • Managed ML Services: AWS SageMaker, GCP Vertex AI, Azure ML Studio

    • Model tuning, hyperparameter optimization

    • Introduction to AutoML tools

    • Deploying APIs with Flask / FastAPI

    • Auto-scaling ML apps on cloud

    🛠 Hands-on Project:

    • Deploy a Flask/FastAPI ML model API on AWS/GCP with auto-scaling enabled

    Career Impact: Get skilled in enterprise ML Ops tools used by top companies.

    📌 Month 9: Capstone Project & Career Preparation

    📖 Capstone Project (Choose One):

    • Customer Churn Prediction with automated cloud deployment

    • Demand Forecasting for e-commerce using ML Ops pipeline

    • Fraud Detection System with model monitoring

    📖 Career Support:

    • Resume & LinkedIn Building (ATS-friendly)

    • GitHub Portfolio Setup (all projects uploaded)

    • Mock Interviews & Career Guidance with experts

    🎓 Final Certifications:

    • Cloud (AWS/GCP/Azure) + ML Ops

    • Showcase GitHub Portfolio + Final Project Presentation

    Career Impact: Become job-ready with a portfolio, certifications & real projects.

    🎁 Tools & Technologies You Will Master

    🌐 Cloud: AWS, GCP, Azure
    ⚙️ DevOps: Docker, Kubernetes, Jenkins, GitHub Actions, Terraform (Intro)
    🐍 Programming & ML: Python, Pandas, NumPy, Scikit-learn, MLflow
    🖥 Web & APIs: Flask, FastAPI
    🤖 Automation: Boto3, GCP SDK

    🏆 What You Will Get

    5+ Industry-grade Projects to showcase on GitHub
    Dual Certification: Cloud + ML Ops
    Interview Preparation & Job Assistance
    Live Sessions + LMS Access + Doubt Support
    Capstone Project + Portfolio for Career Boost

Instructor

Team HyperTech

Trainer ( Hyper Tech Global Technologies )

18 Courses

0 Students

View Details

0.00

0 Reviews

1 Star
(0)
2 Star
(0)
3 Star
(0)
4 Star
(0)
5 Star
(0)

Write a Review

Courses Includes:

  • Price : ₹115,000.00
  • Instructor : Team HyperTech
  • Durations : 400 Hour
  • Lessons : 150
  • Students : 0
  • Language : English
  • Level : Beginners Level
  • Certifications : Yes
Enroll Now

Share On:

Related Courses

  • 0 Students
  • 240 Lessons

Next-Gen Mastery: 12 Months to Cloud, DevOps, DSA, MLOps & GenAI Success

🎓 12-Month Master Program: Cloud, DevOps, DSA, MLOps & GenAI 📍 Phase 1: Foundations (Month 1 – Month 3) Month 1 – Cloud Basics & DSA Foundations 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 Month 2 – DevOps Fundamentals 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 Month 3 – Cloud Core Services + DSA Expansion 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 📍 Phase 2: Intermediate (Month 4 – Month 6) Month 4 – DevOps Intermediate + Cloud IAM 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 Month 5 – Kubernetes & IaC DevOps: Kubernetes basics (Pods, Deployments, Services) IaC: Terraform, Ansible DSA: Graphs (BFS, DFS, Shortest Path) Hands-on Project: Deploy microservices on Kubernetes Month 6 – Cloud Native & Advanced DevOps 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 📍 Phase 3: Advanced (Month 7 – Month 9) Month 7 – MLOps Foundations 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 Month 8 – MLOps Deployment 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 Month 9 – Generative AI Foundations 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 📍 Phase 4: Specialization (Month 10 – Month 12) Month 10 – GenAI Applications & DSA Advanced 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 Month 11 – Specialization Track Selection 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 Month 12 – Capstone & Career Prep 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 🎯 Outcome & Certification 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 Students
  • 80 Lessons

🎯 MasterTech Pro: Cloud, DevSecOps & Machine Learning with Python DSA

🚀 Launch Your Career in Cloud, DevOps & AI with One Power-Packed Course.

Popular
  • 0 Students
  • 35 Lessons

🧑‍💻 Azure Administration & Data Engineering – Course Curriculum ( 4 Months Program )

Learn the advance data engineering of Azure setup, user management, and directory services.