Trainer ( Hyper Tech Global Technologies )
we believe that the right mentor can transform your learning journey. Thatβs why all our trainers are seasoned professionals with 5+ years of hands-on industry experience. Theyβre not just educatorsβthey're real-world experts whoβve worked with top companies and mastered the latest tools, technologies, and frameworks. πΉ Real Industry Exposure Our trainers bring deep domain knowledge from fields like Cloud Computing, Data Science, Full Stack Development, Cyber Security, Testing, Digital Marketing, Salesforce, and more. πΉ Practical-First Teaching With a strong focus on job-ready skills, they blend theory with live projects, case studies, and industry insightsβensuring you're prepared for the real tech world. πΉ Interview & Career Mentorship Beyond teaching, our experts also guide you on interview preparation, portfolio building, and career strategy, helping you land your dream job. Join a program where you learn directly from professionals whoβve been there, done thatβand now teach that.
ποΈ Month-Wise Learning Plan (9 Months) π§© Month 1: Programming Foundations & Problem Solving βͺ Core programming using Python / Java (choice-based) βͺ Variables, loops, functions, recursion βͺ Time & space complexity basics βͺ Introduction to problem-solving patterns βͺ Hands-on coding sessions + daily practice π Outcome: Strong logical thinking & coding confidence π§ Month 2: Data Structures β Core βͺ Arrays, Strings, Hashing βͺ Stacks, Queues, Linked Lists βͺ Sliding window & two-pointer techniques βͺ Pattern-based problem solving βͺ LeetCode / InterviewBit-style problems π Outcome: Crack easyβmedium coding rounds confidently π² Month 3: Data Structures β Advanced βͺ Trees, Binary Search Trees βͺ Heaps & Priority Queues βͺ Graphs (BFS, DFS, shortest path) βͺ Recursion & Backtracking βͺ Dynamic Programming (intro to advanced) π Outcome: Handle complex interview-level problems π§± Month 4: System Design β Foundations βͺ How large-scale systems work βͺ Load balancing, caching, databases βͺ CAP theorem, consistency models βͺ REST APIs, monolith vs microservices βͺ Low-level design (LLD) basics π Design Case Studies: β URL Shortener β Notification System β File Storage System ποΈ Month 5: System Design β Advanced βͺ High-level design (HLD) βͺ Scalable backend architectures βͺ Database sharding & replication βͺ Message queues (Kafka / RabbitMQ) βͺ Designing for millions of users π Design Case Studies: β E-commerce platform (Amazon-style) β Food delivery system (Blinkit-style) β Fintech transaction system βοΈ Month 6: Cloud-Native Development βͺ Backend development using Node.js / Python βͺ REST APIs with authentication & authorization βͺ Cloud basics (AWS/GCP/Azure overview) βͺ Deploying applications on cloud βͺ Real-time databases & storage π Project: Deploy a production-ready backend service on cloud π€ Month 7: AI-Assisted Software Development βͺ Using AI tools for engineering productivity βͺ Prompt engineering for developers βͺ AI for debugging, refactoring & testing βͺ Intro to ML concepts for engineers βͺ Integrating AI APIs into applications π Project: AI-powered feature inside a real application βοΈ Month 8: DevOps, MLOps & Production Engineering βͺ CI/CD pipelines (Git, Jenkins/GitHub Actions) βͺ Docker & containerization βͺ Kubernetes basics βͺ Monitoring, logging & alerts βͺ Secure deployments & DevSecOps concepts π Project: End-to-end CI/CD + cloud deployment pipeline π Month 9: Capstone Projects & Placement Prep βͺ 2β3 industry-grade capstone projects βͺ Mock interviews (DSA + System Design) βͺ Resume & GitHub optimization βͺ Behavioral & HR interview prep βͺ Placement pipeline & referrals π Capstone Examples: β Scalable SaaS backend (Deloitte-style) β AI-driven analytics platform (PwC/KPMG-style) β Cloud-native enterprise system (TCS-style) π§ͺ Key Program Highlights β Live instructor-led classes β Daily coding practice & evaluations β Real-world system design projects β AI-integrated development workflow β Cloud deployment & production exposure β Placement-focused learning path πΌ Placement Model Learners pay only 50% fee during the program Remaining 50% payable after placement Complimentary interview preparation Dedicated placement & referral support
Software Development with AI
π 12-Month Master Program: Cloud, DevOps, DSA, MLOps & GenAI π Phase 1: Foundations (Month 1 β Month 3) Month 1 β 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 β 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 β 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 π Phase 2: Intermediate (Month 4 β Month 6) Month 4 β 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 β 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 β 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 π Phase 3: Advanced (Month 7 β Month 9) Month 7 β 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 β 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 β 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 π Phase 4: Specialization (Month 10 β Month 12) Month 10 β 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 β 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 β Capstone & Career Prep Capstone Projects: Cloud/DevOps β Multi-Cloud E-commerce infra with CI/CD MLOps β End-to-end ML pipeline with monitoring GenAI β AI Copilot app (Chatbot + RAG + API integration) Career Prep: Resume, Interview training, Mock interviews Final Demo Day: Present capstone projects π― 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
πΉ Short Description: βοΈ Salesforce Development β 4 Months Master the Salesforce platform with Apex, Lightning Components, Automation Tools, and real-world projects. Learn to build custom CRM apps and workflows with full certification support and job assistance.
πΉ Short Description: π Cybersecurity β 9 Months Become a job-ready cybersecurity expert by learning network security, ethical hacking, cloud protection, SOC operations, and more. Gain hands-on experience with real tools, labs, and certifications β with full placement and interview support.
πΉ Short Description: π€ Automation Testing β 4 Months Master test automation with Selenium, TestNG, and real-world frameworks. Learn to write test scripts, build test suites, integrate with CI/CD tools like Jenkins, and become job-ready with hands-on projects and certification.
πΉ Short Description: π§ͺ Manual Testing β 4 Months Learn the core concepts of software testing, bug tracking, test case writing, and real-world QA processes. Master manual testing with live projects, tools like Jira, and get certification + job support to kickstart your QA career.
πΉ Short Description: ποΈ System Design β 6 Months Build expertise in designing scalable, secure, and real-time systems like Netflix, Uber, and WhatsApp. Learn core concepts, architecture patterns, and modern tools with real-world case studies, projects, interview prep, and certification.
πΉ Short Description: π€ Prompt Engineering β 6 Months Master the art of crafting effective prompts for ChatGPT, DALLΒ·E, and other Gen AI tools. Learn AI fundamentals, prompt techniques, APIs, and industry use cases with hands-on projects, certification, and job/freelance support.
πΉ Short Description: π Digital Marketing β 4 Months Master SEO, Social Media, Google Ads, and Email Marketing with live campaigns, tools, and analytics. Learn to build result-driven digital strategies with hands-on projects, certifications, and job support.
βοΈ Back-End Development β 4 Months. Master server-side development with Node.js, Express, MongoDB, and build powerful, scalable APIs. Learn authentication, database design, and cloud deployment with hands-on projects, certification, and placement support.
π¨ Front-End Development with MERN Stack β 4 Months Learn to build modern, responsive web interfaces using HTML, CSS, JavaScript, and React JS. Master API integration, UI frameworks, and real-world project development with hands-on training, certification, and job support.
π» Full Stack Development with Gen AI β 9 Months Become a future-ready developer by mastering Frontend, Backend, Databases, and integrating powerful Gen AI tools like ChatGPT & DALLΒ·E into real-world web apps. Learn React, Node.js, MongoDB, OpenAI APIs, and build a strong portfolio with live projects, certifications, and job support.
π Data Analyst with Python β 6 Months Program. Kickstart your career in data with this beginner-friendly to advanced course focused on Python, SQL, Excel, Power BI/Tableau and real-world projects. Master data cleaning, visualization, and analysis, build a strong portfolio, and become job-ready with full certification & placement support.
βοΈ Cloud Computing with ML Ops β 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.
π FastTrack Career Program | 6-Month Job-Ready Training | Live Classes, Mentorship & Projects π©βπ» Beginner to Advanced | Learn Programming, DSA, SQL, & Choose Your Specialisation π Backend, Full Stack, or Data Engineering | Industry Tools + Hands-On Practice π― Mock Interviews + Resume Building | Capstone Project With Expert Guidance π Bonus: GenAI, System Design, Product Thinking | Flexible EMI | Placement Support
π Month 1: Core Foundations β Linux, Networking & Infrastructure π― Objective: Build rock-solid fundamentals required for production systems π§ Topics Covered π§ Linux internals (processes, memory, file systems, permissions, systemd) π Advanced shell scripting (Bash, AWK, Sed, Cron jobs) π Networking fundamentals (TCP/IP, DNS, HTTP/HTTPS, Load Balancing) π OS-level security basics π SSH hardening & access control π§ͺ Hands-On Labs π₯οΈ Hardened Ubuntu Server setup π Secure NGINX web server deployment π Reverse proxy & load balancer configuration βοΈ Month 2: Cloud Fundamentals β AWS & Azure from Scratch π― Objective: Understand cloud infrastructure at scale π οΈ Technologies π§ AWS: EC2, VPC, IAM, S3, ALB, Auto Scaling π¦ Azure: VM, VNets, NSG, Azure Storage π Cloud networking & identity design π° Cost optimization & tagging strategies π’ Industry Use Cases ποΈ AWS infra setup for a TCS-style internal application ποΈ Multi-tier architecture for an EY consulting workload π³ Month 3: Containerization & Kubernetes Engineering π― Objective: Move from VM-based systems to container orchestration βοΈ Technologies π¦ Docker internals & image optimization βΈοΈ Kubernetes architecture (API Server, Scheduler, etcd) π Helm charts π¦ Ingress controllers (NGINX, Traefik) βοΈ Stateful vs Stateless workloads π Project ποΈ Kubernetes-based microservices deployment for an Amazon-like e-commerce backend π Month 4: CI/CD & DevOps Automation π― Objective: Build automated delivery pipelines π§° Technologies π§ GitHub Actions, Jenkins, GitLab CI ποΈ Infrastructure as Code (Terraform) π οΈ Configuration management (Ansible) π Blue-Green & Canary deployments π Real-World Scenarios π CI/CD pipeline for Walmart-scale application releases π’ Automated infra provisioning for a PwC consulting client π‘οΈ Month 5: DevSecOps β Security Embedded into Pipelines π― Objective: Shift security left π Technologies & Practices π§ͺ SAST, DAST, SCA π Secrets management (Vault) π¦ Container security (Trivy, Aqua) βΈοΈ Kubernetes RBAC & Network Policies π Compliance automation π§© Project π DevSecOps pipeline aligned with KPMG audit & compliance standards π Month 6: Observability, Reliability & AIOps Foundations π― Objective: Operate systems intelligently at scale π Technologies π Prometheus & Grafana π ELK Stack (Elasticsearch, Logstash, Kibana) π§΅ Distributed tracing (Jaeger) π― SLA, SLO, Error Budgets π€ Introduction to AIOps π Use Case β‘ Real-time monitoring for a Blinkit-style logistics platform π€ Month 7: MLOps β Machine Learning in Production π― Objective: Operationalize ML systems π§ Technologies π ML pipelines (training, validation, deployment) π¦ Model versioning (MLflow) π¬ Feature stores βΈοΈ Kubernetes-based ML serving π CI/CD for ML models π Project ποΈ Demand forecasting model deployment for Retail Analytics (Amazon/Walmart inspired) π§ Month 8: LLMOps β Managing Large Language Models π― Objective: Deploy and manage LLM-based systems π οΈ Technologies π LLM deployment pipelines π§ͺ Model fine-tuning workflows ποΈ Vector databases (Pinecone, FAISS) βοΈ Prompt engineering pipelines π API gateways for AI services π’ Enterprise Scenario π Internal AI assistant for a Deloitte-style consulting knowledge base π Month 9: Capstone Projects & Enterprise Simulation π― Objective: Deliver production-grade systems end-to-end π§© Capstone Options (Choose One) 1οΈβ£ AI-Powered E-Commerce Platform π Amazon/Walmart Inspired βοΈ Cloud + βΈοΈ Kubernetes + π CI/CD + π€ AIOps + π¬ LLM Chatbot 2οΈβ£ Consulting Firm Cloud Platform π’ PwC/KPMG Inspired π Secure multi-tenant infra + DevSecOps + Compliance dashboards 3οΈβ£ Real-Time Logistics Intelligence Platform π Blinkit Inspired π Observability + π Predictive scaling + π€ ML-driven alerts π¦ Deliverables π Architecture design documents π» GitHub repositories π Monitoring dashboards π Security & cost reports π Production-grade deployment π Outcome & Career Readiness By the end of the program, learners will be able to: β Design & operate enterprise cloud platforms β Build secure, scalable CI/CD pipelines β Manage AI & ML workloads in production β Work as Cloud Engineer, DevOps Engineer, SRE, MLOps Engineer, Platform Engineer π Why This Program is Different π₯ Starts from absolute fundamentals π Ends with real-world, enterprise-grade deployments π§ Covers DevOps + AI Operations, not just tools π’ Strong alignment with Big 4 consulting & product companies π― Built for placement-backed, outcome-driven learning
Learn the advance data engineering of Azure setup, user management, and directory services.