Integration and Deployment of GenAI Models
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English (US) | Size: 5.09 GB | Duration: 8h 12m
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English (US) | Size: 5.09 GB | Duration: 8h 12m
Deploy machine learning and generative AI models using AWS SageMaker, Bedrock, and Anthropic Claude.
What you'll learn
How to set up and navigate the AWS Management Console for machine learning projects.
How to build, train, and deploy ML models using Amazon SageMaker Studio and SageMaker Canvas (no-code and low-code environments).
How to optimize machine learning deployment using SageMaker's Hardwire-Optimized Deployment strategies.
How to use SageMaker JumpStart to quickly launch pre-built ML solutions.
How to interact with SageMaker services programmatically using the Python SDK.
How to use Amazon Bedrock for fully managed, serverless hosting of foundation models (FMs).
How to build generative AI applications (text and image generation) using Bedrock.
How to compare SageMaker and Bedrock for different machine learning and generative AI use cases.
How to implement Retrieval-Augmented Generation (RAG) and fine-tune large language models using Bedrock.
How to work with Anthropic Claude models through the cloud and APIs for text generation, role-based assistance, and multimodal tasks (including image recognitio
How to set up and use the Anthropic API to deploy intelligent AI-powered applications.
Requirements
Basic understanding of machine learning concepts (no need for deep expertise).
Familiarity with Python programming (basic to intermediate level).
An AWS account
Description
Unlock the full power of AWS to deploy Machine Learning and Generative AI solutions!In this hands-on course, you’ll learn how to use AWS SageMaker, Amazon Bedrock, and Anthropic Claude models to build, train, and deploy intelligent applications.We’ll start with setting up your AWS environment and mastering SageMaker's capabilities, from no-code tools like SageMaker Canvas to coding solutions using the Python SDK. You’ll then dive into Amazon Bedrock to work with foundation models (FMs) for text and image generation, and implement Retrieval-Augmented Generation (RAG) techniques.Finally, you’ll explore Anthropic Claude — learning how to generate text, use role-based AI assistants, and build multimodal (text + image) applications through APIs.Throughout the course, you’ll work on real-world projects including text generation, image generation, and fine-tuning large language models.By the end of this course, you will be confident in setting up, managing, and deploying machine learning and AI models using AWS services — whether you are a data scientist, AI developer, cloud engineer, or tech enthusiast.Key Topics Covered:AWS Account Setup and SageMaker Studio EnvironmentNo-Code ML Model Building with SageMaker CanvasModel Deployment with Canvas and SageMaker SDKUsing Amazon Bedrock for Fully Managed Foundation ModelsComparing SageMaker vs. Bedrock for AI DeploymentsBuilding AI Projects: Text Generation, Image Generation, RAG Fine-TuningWorking with Anthropic Claude for API-based Text and Image ApplicationsNo prior cloud deployment experience is required — just basic Python knowledge and a passion for machine learning and AI!
Who this course is for:
Data scientists, ML engineers, and AI practitioners, Developers and software engineers, Cloud engineers and architects interested, Beginners to intermediate learners who want a guided, hands-on approach to setting up ML and Generative AI projects on AWS., Professionals preparing for roles in AI/ML deployment, cloud-based AI application development, or AWS AI/ML certifications.