AWS Generative AI and Foundation Models
Learn to build generative AI solutions on AWS by working hands-on with Amazon Bedrock, Retrieval Augmented Generation pipelines, Amazon Q Developer, and...
By Alfredo Deza on Coursera
About This Course
Learn to build generative AI solutions on AWS by working hands-on with Amazon Bedrock, Retrieval Augmented Generation pipelines, Amazon Q Developer, and open-source LLM toolchains. You will apply tokenization concepts to understand model pricing and context windows, construct RAG pipelines grounded in your own knowledge bases, and use the Bedrock SDK in Rust and Python to invoke foundation models programmatically. The course covers Amazon Q Developer for AI-assisted code generation, security scanning, and documentation workflows across VS Code and IntelliJ. You will compile llama.cpp with parallel build optimizations informed by Amdahl's Law, package models in the GGUF quantization format, and deploy open-source LLMs on AWS EC2 GPU instances. The course also introduces SageMaker Canvas for no-code visual machine learning and the UV Python packaging tool for dependency management. By completing this course, you will be able to evaluate trade-offs between managed AWS services, open-source toolchains, and no-code platforms for production generative AI workloads.
Topics Covered
Frequently Asked Questions
How much does AWS Generative AI and Foundation Models cost?
Visit the AWS Generative AI and Foundation Models course page for current pricing and available discounts.
Who teaches AWS Generative AI and Foundation Models?
AWS Generative AI and Foundation Models is taught by Alfredo Deza, Pragmatic AI Labs.
What skill level is AWS Generative AI and Foundation Models for?
This course is designed for all levels learners.
Similar Courses
HTML & CSS Coding for Beginners: Build your own portfolio!
Chris Dixon
Maya for Beginners: Animation
Lucas Ridley
JavaScript for Beginners (includes 6+ real life projects)
Kalob Taulien
Beginner Bootstrap 4: Hand code beautiful responsive websites fast
Chris Dixon