AWS Well-Architected Machine Learning
This detailed document serves as a technical brief providing an in-depth exploration of the AWS Well-Architected Framework, tailored explicitly for machine learning.
What is the AWS Well-Architected Framework?
The AWS Well-Architected Framework helps organizations understand the benefits and risks associated with their architectural decisions when building workloads on AWS. It provides operational and architectural best practices, enabling users to measure their operations against these standards and identify areas for improvement.
How does machine learning fit into the AWS Well-Architected Framework?
The Machine Learning Lens enhances the AWS Well-Architected Framework by addressing the unique characteristics of machine learning workloads, which rely on algorithms learning from data. It provides best practices and strategies specifically tailored for designing and operating ML workloads on AWS.
Why is monitoring important in machine learning?
Monitoring is crucial in the machine learning lifecycle because the accuracy of ML models depends on the quality of input data, which can change over time. Continuous monitoring allows organizations to detect, correct, and mitigate issues with model accuracy and performance, often necessitating model retraining with the latest refined data.
AWS Well-Architected Machine Learning
published by KarimiConsulting
KarimiConsulting is a team of highly skilled and dedicated AWS Cloud professionals. We are enrolled in the Amazon Partner Network(APN) as a Select Tier consultant.
We work with our clients to migrate their existing applications and infrastructure to AWS, and then secure, optimize, and manage the AWS environment.
For new migrations, we ensure that your AWS account is configured according to AWS best practices. Existing AWS accounts are taken through a well-architected framework review to enhance the architecture and efficiency of the cloud infrastructure.