AWS: Task Automation and Network Integration

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AWS: Task Automation and Network Integration

Coursera · Intermediate ·🔍 RAG & Vector Search ·1mo ago
AWS:Task Automation and Network Integration is the second course of "Exam Prep ANS-C01: AWS Certified Advanced Networking Specialty" specialization. This ANS-C01 course will help in evaluating automation alternatives within AWS for network deployments. Learners will also have chance to configure network integration with application services. The course is divided into two modules and each module is further segmented by Lessons and Video Lectures. This course facilitates learners with approximately 3:00 Hours Video lectures that provide both Theory and Hands -On knowledge. Also, Graded and Ungraded Quiz are provided with every module in order to test the ability of learners. Module 1: AWS: Task Automation Module 2: Configure network integration with application services Two or more years of experience in designing and implementing network solutions on AWS on a large scale or must pass an examination of AWS Certified Cloud practitioner. Candidates should have knowledge of using AWS CloudFormation and integration with external systems and other AWS services. By the end of this course, a learner will be able to: -Evaluate automation alternatives within AWS for network deployments. -Leverage Lambda as a Cloud Formation custom resource for integration with external systems, including IPAM software. -Leverage the capabilities of Amazon Route 53. -Implement sticky sessions and AWS Service Communicating over the Network.
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