Security Engineering on AWS
Moreover, you will learn to protect the stored data in the AWS cloud together with generating, collecting, and monitoring logs to help identify security related incidents. The course is delivered with a mix of presentations, hands-on labs and group exercises. After completion, you will be able to attempt the AWS Certified Security – Speciality certification.
The course is best suited for Security engineers, Security architects, Cloud Architects and cloud operators. We recommend that you should have completed the AWS Security Essentials and the Architecting on AWS courses. Along with this, we also recommend that you should have working knowledge of IT security practices and infrastructure concepts.
In this course, you will learn to:
- State an understanding of AWS cloud security based on the CIA triad.
- Create and analyze authentication and authorizations with IAM.
- Manage and provision accounts on AWS with appropriate AWS services.
- Identify how to manage secrets using AWS services.
- Monitor sensitive information and protect data via encryption and access controls.
- Identify AWS services that address attacks from external sources.
- Monitor, generate, and collect logs.
- indicators of security incidents.
- Identify how to investigate threats and mitigate using AWS services.
This course is intended for:
- Security engineers
- Security architects
- Cloud architects
- Cloud operators working across all global segments.
We recommend that attendees of this course have:
- Completed the following courses:
– AWS Security Essentials (Classroom training) or
– AWS Security Fundamentals (Second Edition) (digital) and
– Architecting on AWS (Classroom Training) - Working knowledge of IT security practices and infrastructure concepts.
- Familiarity with the AWS Cloud.
Module 1: Security on AWS
- Security in the AWS cloud
- AWS Shared Responsibility Model
- Incident response overview
- DevOps with Security Engineering
Module 2: Identifying Entry Points on AWS
- Identify the different ways to access the AWS platform
- Understanding IAM policies
- IAM Permissions Boundary
- IAM Access Analyzer
- Multi-factor authentication
- AWS CloudTrail
- Lab 01: Cross-account access
Module 3: Security Considerations: Web Application Environments
- Threats in a three-tier architecture
- Common threats: user access
- Common threats: data access
- AWS Trusted Advisor
Module 4: Application Security
- Amazon Machine Images
- Amazon Inspector
- AWS Systems Manager
- Lab 02: Using AWS Systems Manager and Amazon Inspector
Module 5: Data Security
- Data protection strategies
- Encryption on AWS
- Protecting data at rest with Amazon S3, Amazon RDS, Amazon DynamoDB
- Protecting archived data with Amazon S3 Glacier
- Amazon S3 Access Analyzer
- Amazon S3 Access Points
Module 6: Securing Network Communications
- Amazon VPC security considerations
- Amazon VPC Traffic Mirroring
- Responding to compromised instances
- Elastic Load Balancing
- AWS Certificate Manager
Module 7: Monitoring and Collecting Logs on AWS
- Amazon CloudWatch and CloudWatch Logs
- AWS Config
- Amazon Macie
- Amazon VPC Flow Logs
- Amazon S3 Server Access Logs
- ELB Access Logs
- Lab 03: Monitor and Respond with AWS Config
Module 8: Processing Logs on AWS
- Amazon Kinesis
- Amazon Athena
- Lab 04: Web Server Log Analysis
Module 9: Security Considerations: Hybrid Environments
- AWS Site-to-Site and Client VPN connections
- AWS Direct Connect
- AWS Transit Gateway
Module 10: Out-Of-Region Protection
- Amazon Route 53
- AWS WAF
- Amazon CloudFront
- AWS Shield
- AWS Firewall Manager
- DDoS mitigation on AWS
Module 11: Security Considerations: Serverless Environments
- Amazon Cognito
- Amazon API Gateway
- AWS Lambda
Module 12: Threat Detection and Investigation
- Amazon GuardDuty
- AWS Security Hub
- Amazon Detective
Module 13: Secrets Management on AWS
- AWS KMS
- AWS CloudHSM
- AWS Secrets Manager
- Lab 05: Using AWS KMS
Module 14: Automation and Security by Design
- AWS CloudFormation
- AWS Service Catalog
- Lab 06: Security automation on AWS with AWS Service Catalog
Module 15: Account Management and Provisioning on AWS
- AWS Organizations
- AWS Control Tower
- AWS SSO
- AWS Directory Service
- Lab 07: Federated Access with ADFS
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 22, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | June 12, 2024 | ₹45,000 | |
Classroom | 3 days | All Day | June 26, 2024 | ₹45,000 |
Don't see a date that works for you?
Fill in the form below to let us know.
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FAQs
To enroll in this course, choose the starting date and make an online payment. Once your payment is confirmed, our team will reach out to you.
Wire Transfer, Credit Card, Debit Card, UPI & Purchase Order.
There is no minimum number of candidates required, we are happy to train 1 to 1 . With regards to the maximum number, we can accomodate 30 learners in one batch.
- Training Delivered by an Amazon Authorized Instructor.
- AWS Content E-Kit
- Hands-on-labs for 30 days
- Class attendance certificate
You will get the access to course content & lab on first day of your training session.
The course Completion Certificate will be issued to your email id within 2 weeks of completing your course.
A one-day course could be delivered over two half day sessions (4 hours a day), or a three-day course could be delivered over five days (4 hours a day)