Architecting on AWS
Additionally, you will explore AWS Services related to account security, networking, storage, databases, automation, containers, serverless architecture, backup and recovery.
This course is ideally meant for Solution Architects, Solution-Design engineers and developers who seek to understand AWS Architecture principles. You will also be able to prepare for the AWS Certified Solutions Architect – Associate exam after the completion of this three day course. The course is delivered by an Amazon Authorized Instructor with theory, real-life scenarios and hands-on labs
In this course, you will learn to:
- Identify AWS architecting basic practices
- Summarize the fundamentals of account security
- Identify strategies to build a secure virtual network that includes private and public subnets
- Practice building a multi-tier architecture in AWS
- Identify strategies to select the appropriate compute resources based on business use cases
- Compare and contrast AWS storage products and services based on business scenarios
- Compare and contrast AWS database services based on business needs
- Identify the role of monitoring, load balancing, and auto scaling responses based on business needs
- Identify and discuss AWS automation tools that will help you build, maintain, and evolve your infrastructure
- Discuss hybrid networking, network peering, and gateway and routing solutions to extend and secure your infrastructure
- Explore AWS container services for the rapid implementation of an infrastructure-agnostic, portable application environment
- Identify the business and security benefits of AWS serverless services based on business examples
- Discuss the ways in which AWS edge services address latency and security
- Explore AWS backup, recovery solutions, and best practices to ensure resiliency and business continuity
This course is intended for:
- Solution architects
- Solution-design engineers
- Developers seeking an understanding of AWS architecting
- Individuals seeking the AWS Solutions Architect-Associate certification
We recommend that attendees of this course have:
- Completed AWS Cloud Practitioner Essentials, or AWS Technical Essentials
- Working knowledge of distributed systems
- Familiarity with general networking concepts
- Familiarity with IP addressing
- Working knowledge of multi-tier architectures
- Familiarity with cloud computing concepts
Module 1: Architecting Fundamentals
- AWS services
- AWS infrastructure
- AWS Well-Architected Framework
- Hands-on lab: Explore and interact with the AWS Management Console and AWS Command Line Interface
Module 2: Account Security
- Principals and identities
- Security policies
- Managing multiple accounts
Module 3: Networking 1
- IP addressing
- VPC fundamentals
- VPC traffic security
Module 4: Compute
- Compute services
- EC2 instances
- Storage for EC2 instances
- Amazon EC2 pricing options
- AWS Lambda
- Hands-On Lab: Build your Amazon VPC infrastructure
Module 5: Storage
- Storage services
- Amazon S3
- Shared file systems
- Data migration tools
Module 6: Database Services
- Database services
- Amazon RDS
- Amazon DynamoDB
- Database caching
- Database migration tools
- Hands-on Lab: Create a database layer in your Amazon VPC infrastructure
Module 7: Monitoring and Scaling
- Monitoring
- Alarms and events
- Load balancing
- Auto scaling
- Hands-on Lab: Configure high availability in your Amazon VPC
Module 8: Automation
- AWS CloudFormation
- Infrastructure management
Module 9: Containers
- Microservices
- Containers
- Container services
Module 10: Networking 2
- VPC endpoints
- VPC peering
- Hybrid networking
- AWS Transit Gateway
Module 11: Serverless
- What is serverless?
- Amazon API Gateway
- Amazon SQS
- Amazon SNS
- Amazon Kinesis
- AWS Step Functions
- Hands-on Lab: Build a serverless architecture
Module 12: Edge Services
- Edge fundamentals
- Amazon Route 53
- Amazon CloudFront
- DDoS protection
- AWS Outposts
- Hands-On Lab: Configure an Amazon CloudFront distribution with an Amazon S3 origin
Module 13: Backup and Recovery
- Disaster planning
- AWS Backup
- Recovery strategies
- Hands-on Lab: Capstone lab – Build an AWS Multi-Tier architecture. Participants review the concepts and services learned in class and build a solution based on a scenario. The lab environment provides partial solutions to promote analysis and reflection. Participants deploy a highly available architecture. The instructor is available for consultation.
Why choose Cloud Wizard
- Advanced Tier Training Partner
- Amazon Authorised Instructors
- Official AWS Content
- Hands-on Labs
Class Deliverables
- E-Content kit by AWS
- Hands-on labs
- Class completion certificates
- Exam Prep sessions
Dates Available
Choose a date that works for you and click on Book Now to proceed with your registration.
Method | Duration | Start Time | Start date | Price | Action |
---|---|---|---|---|---|
Classroom | 3 days | All Day | May 8, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | May 15, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | May 22, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | May 29, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | June 4, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | June 11, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | June 18, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | June 25, 2024 | ₹45,000 |
Don't see a date that works for you?
Fill in the form below to let us know.
Related courses
Related products
-
AWS Training
Building Data Analytics Solutions Using Amazon Redshift
You will create a data analytics solution in this course utilizing the cloud data warehouse provider Amazon Redshift. The course focuses on the parts of the analytics pipeline that deal with data collection, ingestion, cataloging, storage, and processing.
-
AWS Training
The Machine Learning Pipeline on AWS
The course explores the usage of the iterative Machine Learning (ML) pipeline to solve real-world business problems in a project-based environment. You will learn about each phase of the pipeline from an experienced AWS instructor via live presentations and demonstrations. You will then go on to complete a project while solving one of the three business problems such as fraud detection, recommendation engines or flight delays. By the end of this course you will have built, trained, evaluated and deployed a ML model using Amazon SageMaker to solve a selected business problem. It also prepares you for the AWS Certified Machine Learning – Speciality certification.
This course is recommended for developers, solution architects, data engineers and anyone who wishes to learn more about the ML pipeline using Amazon SageMaker. We recommend you to have basic knowledge of Python programming language, basic understanding of AWS cloud services and basic experience of working in a Jupyter notebook environment.
-
AWS Training
AWS Cloud for Finance Professionals
This course is aimed at enterprise level financial stakeholders who need to learn to manage, optimize and plan the organization’s cloud spend. You will learn to be more accountable and price conscious from an expert AWS Instructor. The course runs for two days and is focused on learning to innovate within your financial organization
As part of the course, you’ll learn to define cloud business models, estimate costs associated with your AWS account with the existing and future workloads. Tools used for reporting, monitoring, allocating, optimizing and planning AWS spending through pricing models on AWS Cloud shall also be covered.
If you are a Financial Stakeholder in an organization who wants to learn how to maximize cloud business value and use CFM best practices and to help the finance teams to innovate with AWS, this course is ideal for you. It is delivered by an Amazon Authorized Instructor with a mix of presentation, theory and knowledge checks.
-
AWS Training
Advanced Architecting on AWS
This course is focused around analyzing a monolithic application and determining logical break points where the application can be broken down across various AWS services. You will learn advanced development techniques to deconstruct on-premise legacy applications and repackage them into cloud-based architectures.
You will also learn to apply twelve-factor application manifesto concepts and steps while migrating from a monolithic architecture, along with using the AWS API, CLI and SDKs to monitor and manage AWS services
The course is recommended for experienced software developers who are already familiar with various AWS services. You will need at least one high-level programming language and working knowledge of core AWS services and public cloud implementations. We also recommend that you should have completed the Developing on AWS classroom course and have a minimum of six months experience in applying these concepts in real life