Big Binary Tech
Enroll Now
Career Track 02 · Cloud

Cloud +
MLOps.

Deploy AI at scale – with confidence.

Learn how real-world infrastructure works and how AI models move from development to production. AWS, Docker, Kubernetes and CI/CD – practical, job-ready skills for real enterprise environments.

7 to 12 months·Onsite + Online·Beginner-friendly·● Paid internship
Enroll now Chat on WhatsApp
deploy.run
$ deploy –target prod
[01] docker.build(image)
[02] kubectl.apply(manifest)
[03] pipeline.test() → pass
[04] model.serve(endpoint)
✓ rollout.status = healthy
$ _
// what you will learn

From cloud fundamentals to production MLOps.

A solid foundation in cloud computing and DevOps, plus the MLOps skills to move models from dev to production. Hands-on, real infrastructure, no fluff.

// cloud & infrastructure

Cloud and infrastructure skills

  • AWS cloud computing fundamentals
  • Docker containerization
  • Kubernetes orchestration
  • Infrastructure as Code with Terraform
// mlops & deployment

MLOps and deployment skills

  • CI/CD pipelines (Jenkins & GitHub Actions)
  • ML model deployment & monitoring
  • MLOps tools – MLflow & Kubeflow
  • Cloud security & cost optimization
// tools & technologies

The stack you’ll master.

The same industry-relevant tools used by cloud teams, DevOps engineers and MLOps specialists – you’ll get hands-on with every one.

AWS Docker Kubernetes Terraform Jenkins GitHub Actions Python MLflow Kubeflow Prometheus
// your career after the track

Real careers. Real salaries.

This track prepares you for high-demand cloud, DevOps and MLOps roles in Pakistan and global remote markets.

01
Cloud Engineer
02
DevOps Engineer
03
MLOps Specialist
04
AWS Architect
05
Platform Engineer
// starting salary · pakistan
PKR 90,000
to 160,000+ /mo
// global opportunities
● Remote DevOps contracts ● Cloud certifications recognized worldwide ● International cloud & infrastructure roles
// is this track right for you?

Built for people who want to run real infrastructure.

No prior cloud experience needed – we start from fundamentals. Basic Linux knowledge helps but isn’t required.

Fresh graduates

Computer science or a related field, looking for an in-demand specialization.

Software developers

Ready to move into cloud and DevOps roles with real deployment skills.

Data scientists

Want to learn how to actually deploy and monitor your models in production.

System administrators

Upgrade to cloud-native skills and high-demand platform roles.

Not sure if it’s the right fit?
Take a free career assessment
// real projects. real portfolio.

Learn by building things people pay for.

This track is built around projects that teach you by doing – and create a portfolio employers can review. Every project goes straight to your GitHub.

01
// project 01

Deploy ML Model on AWS

Train a model locally, containerize it with Docker, and deploy on AWS EC2 with a REST API.

02
// project 02

CI/CD Pipeline

Build a complete GitHub Actions pipeline that tests, builds, and deploys automatically.

03
// project 03

Kubernetes Cluster Setup

Deploy a scalable web application on a Kubernetes cluster with auto-scaling.

// frequently asked questions

Straight answers.

Do I need prior cloud experience?
No. We start from cloud fundamentals. Basic Linux knowledge is helpful but not required.
What is the duration of this track?
7 to 12 months (Trainee → Expert). A fast-track option is available.
Is AWS certification included?
Exam prep is included. The exam fee is separate.
What is the fee structure?
0% EMI available. Merit scholarships up to 40%.
// the second-best time is now

Ready to become a
Cloud Engineer?

Paid internship from Phase 2. 0% EMI & merit scholarships up to 40%. Limited seats per cohort – secure yours.

Chat on WhatsApp – Talk to Advisor Enroll now – Save your seat