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Generative AI and Amazon Bedrock
COURSE

Generative AI and Amazon Bedrock

INR 29
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📂 AWS Certifications

Description

Comprehensive understanding of generative AI concepts, foundation models, and Amazon Bedrock for building AI applications.

Learning Objectives

Learners will master generative AI fundamentals including foundation models, large language models, prompt engineering, and retrieval-augmented generation (RAG). They will understand Amazon Bedrock platform, model selection, fine-tuning strategies, responsible AI practices, and integration patterns for building generative AI applications. Students will learn to implement guardrails, optimize performance, and deploy scalable generative AI solutions.

Topics (10)

1
Amazon Bedrock Platform Overview

Comprehensive Bedrock platform coverage including model catalog, API access patterns, security configuration, and integration with other AWS services.

2
Prompt Engineering and Optimization

Advanced prompt engineering including prompt structure, few-shot learning, chain-of-thought prompting, and optimization techniques for various use cases.

3
Retrieval-Augmented Generation (RAG)

Comprehensive RAG implementation including knowledge base creation, retrieval strategies, context integration, and performance optimization.

4
Fine-tuning and Model Customization

Advanced fine-tuning strategies including parameter-efficient fine-tuning, domain adaptation, and custom model development for specific applications.

5
Responsible AI and Guardrails

Comprehensive responsible AI implementation including bias detection, content moderation, ethical guidelines, and safety mechanisms for generative AI systems.

6
Multi-Modal AI and Advanced Capabilities

Advanced multi-modal AI including vision-language models, text-to-image generation, audio processing, and integrated multi-modal applications.

7
Performance Optimization and Scaling

Advanced optimization including model compression, caching strategies, batch processing, and scalable architecture design for generative AI applications.

8
Integration with Enterprise Applications

Comprehensive integration patterns including API design, workflow automation, user interface integration, and enterprise system connectivity.

9
Foundation Models and Large Language Models

Comprehensive overview of foundation models including transformer architectures, training methodologies, model capabilities, limitations, and use case selection.

10
Building Production Generative AI Applications

Complete application development including architecture design, deployment strategies, monitoring, governance, and maintenance of production generative AI systems.