Google Cloud Platform Training by Experts
Our Training Process

Google Cloud Platform - Syllabus, Fees & Duration
Module 1: Overview Cloud & Google Cloud Platform
- Cloud overview & Characteristics
- Cloud Service Model (IAAS, PAAS, SAAS)
- Cloud Deployment Model (Public, Private, Hybrid)
- Google Cloud Plateform (GCP) Infrastructure Overview
- Create GCP Account & Console Overview
- Organizations, Folder, Project, Resource & Billing
- Google Cloud Architecture Framework
Module 2: Virtual Machines
- Compute Engine (VM): Types & Options
- VM Instance Lifecycle & Common Operations
- Machine Types & Compute Options (VCPU And Memory) In Compute Engine
- Images & Snapshots
- Disk Types: Local SSD, Persistent & Balanced
Module 3: Virtual Networks
- Virtual Private Cloud (VPC) & Types, Subnets
- Ip Addresses (Public/Private), Nic
- Routes & Route Table
- Firewalls
- Network Topology Options
Module 4: Cloud IAM
- IAM Basic: Authentication, Authorization & MFA
- Roles, Members, Service Account, Policy
- Resource Hierarchy
- Cloud IAM Best Practices
Module 5: Data Storage Services
- Google Cloud Storage Overview & Structure
- Storage Classes, Versioning & Lifecycle Policies
- Cloud SQL For Database (MySQL, Postgresql and SQL Server)
- Cloud Spanner: Fully Managed Relational DB
- Cloud Datastore
- Cloud Bigtable: NOSQL Big Data Service
Module 6: App Engine, Functions, Cloud Run
- App Engine: Serverless Web Apps
- App Engine Environments: Standard Vs Flexible
- Cloud Functions: Events & Triggers
- Cloud Run: Serverless Containers
Module 7: Resource Management
- Cloud Resource Manager Overview
- Quotas, Labels, Names & Billing
Module 8: Resource Monitoring
- Stackdriver: Cloud Monitoring & Logging
- Logging, Error Reporting, Tracing, Debugging
Module 9: Interconnecting Networks
- Virtual Private Network (VPN) & Its Types
- VPC Peering (Public & Private)
- Cloud DNS, Cloud Interconnect & Cloud Router
Module 10: Load Balancing & Autoscaling
- Load Balancing Types: Internal, External, Global & Regional
- Https, Network, SSL & TCP Load Balancers
- Cross-Region and Content-Based Load Balancing
- Autoscaling Policies & Configuration
Module 11: Google Kubernetes Engine
- Microservices, Containers, Docker & Kubernetes
- GCP Kubernetes Engine (GKE), Understand the Relationship
Between Kubernetes
and Google Kubernetes Engine (GKE) - Kubernetes Architecture : Clusters, Node, Node Pools, Pods, Services
- Deploy & Manage Workloads on GKE
Module 12: Maintenance & Monitoring
- Capacity Planning and Cost Optimization
- Deployment, Monitoring and Alerting, And Incident Response
- Monitoring and Alerting
Module 13: Cloud Migrations
- Understanding Migration Used Cases
- Understanding Migration Tools and Process
This syllabus is not final and can be customized as per needs/updates


We provide the best Google Cloud Platform online training on-site with the most knowledgeable instructors. Software developers, Cloud directors, and another enterprise IT professionals can access this platform via the public internet or a dedicated network connection.
The Google Cloud Architecture Framework offers guidelines and explains fashionabpracticesses to assist architects, developers, directors, and other cloud practitioners in designing and operating a secure, effective, flexible, high-performing, and cost-efficient cloud topology. To induce an in-depth grasp of configuring SDK, situating GSuit, IAM APIs, establishing custom rules, penetration testing, and security controls through our real-time projects and hands-on use cases. Google Cloud Platform, or GCP, is a collection of public cloud services that Google makes available to businesses. js, Python, Java, Net, and Go programming.
Our Google Cloud Training Riyadh strives to provide high-quality instruction that practically covers fundamental concepts.
This allows Google developers to tackle issues such as patches, software upgrades, and hardware repairs without having to shut down the system. architecture; provide a complete set of data analytics workloads, ranging from data warehousing to streaming to business intelligence; allow clients to operationalize machine learning; enable smart open-source technologies to provide flexibility and options, and fabricate for businesses of any size. The structure of Google's VMs allows them to be transferred without halting.