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Practice Project: Platform Services - Gen AI Foundations Program with Amazon Bedrock and n8n

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Assessment: Platform Services - Gen AI Foundations Assessment with Amazon Bedrock and n8n

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Demo VPAT

Serverless computing is a cloud computing ...

Serverless computing is a cloud computing model that enables developers to create and deploy applications without the need to manage servers or infrastructure. One widely used implementation of serverless computing is through AWS Lambda, a compute service provided by Amazon Web Services (AWS). By using AWS Lambda, developers can execute code without the need to provision or maintain servers, only pay for the compute time used by the application, and automatically scale the application based on incoming requests.

When building a serverless application, some of the commonly utilized AWS services include AWS Lambda, AWS DynamoDB, AWS API Gateway, AWS SNS, and AWS SQS.

This guided project has the following topics

Module Topics
1 Creating Serverless Application using SAM
2 Serverless Synchronous Invocation
3 Serverless S3 Asynchronous Invocation
4 Serverless SNS Asynchronous Invocation
5 Serverless Error Handling
6 Exploration Zone

Prerequisites

  1. Familiarity with basics of AWS Services
  2. Knowledge about Python Programming using BOTO3

Learning Objectives

By completing this Guided Project, you will learn about

  1. Developing a serverless application.
  2. Using AWS Serverless Application Model to build and deploy the project.
  3. Create a Lambda function and store data in the DynamoDB.
  4. Configure S3 bucket data upload event as a trigger to the Lambda function.
  5. Publish the event as SNS Topic
  6. Configure SNS Topic as trigger to Lambda Function.
  7. Error Handling in Lambda Functions.

Skill Tags

  1. AWS Serverless Application
  2. AWS Python Developer
  3. AWS SAM

Scenario

Employee Appraisal Management Application

A company aims to create a web application that can manage employee information and publish their score/ratings. To meet their requirements, they plan to utilize AWS services.

To assist the company, we'll develop REST APIs using AWS Lambda to manage employee data in AWS DynamoDB. The employee score (JSON File) will be uploaded to an AWS S3 Bucket. Once uploaded, we'll calculate the employee grade and publish it to AWS SNS Topic. Additionally, an AWS Lambda function will update the employee information in DynamoDB with their grades when the grade is published. The application should have a robust error handling strategy to ensure that the application remains functional at all times.

Category : VPAT

VPAT Testing

Objective     How to leverage AI models...

Objective

 
 
How to leverage AI models and Workflow Automations to analyze Public Health data and generate actionable insights to drive sales and ensure regulatory compliance for an ITeS organization focused on Healthcare domain.
 

Scenario

ITeS organizations study raw data published by Healthcare departments (e.g., state narratives, public documents, reports) to identify high-value sales opportunities and also to get insights on compliances during the sales and pre-sales cycle.
 
Tools & Activities:
The course involves exploring a pre-built workflow and executing the four use-cases and analyzing the result.
 
Through this course, the learner will learn:
1. Prompt Engineering
2. Building workflow automation using Low Code No Code Workflow automation tools such as n8n
 
3. Interacting with AI Model such as OpenAI
4. Exploring the potential of AI to perform highly complex Data Analysis tasks

Outcome

Participants will gain skills to transform complex, unstructured industry data into actionable, high-ROI business strategies. 
1. Strategic Market Vetting & Prioritization
2. Compliance & Risk Mitigation
3. Operational Efficiency



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DataCenter - Unix-Linux Assessments - Beginner

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Cyber AI Pentesting