Overview
Coursera Flash Sale
40% Off Coursera Plus for 3 Months!
Grab it
Learn to tackle performance and resource optimization challenges in multi-tenant Aurora MySQL environments through an AI/ML-powered monitoring pipeline in this comprehensive presentation. Discover how to leverage Amazon SageMaker for Buffer Pool Analysis using advanced statistical techniques and machine learning algorithms to identify schema-level workload patterns and detect anomalies. Explore the integration of Amazon Bedrock to generate specific actionable recommendations for database optimization. Dive deep into technical aspects including integration architecture, outlier detection methodologies, and data transformation methods that surpass standard monitoring capabilities. Examine real-world examples demonstrating how AI/ML analysis of InnoDB buffer pool data effectively identifies noisy neighbors, resource contentions, and produces targeted optimization strategies. Master the revolutionary approach to multi-tenant database management through AI-driven insights that transform traditional Aurora MySQL performance monitoring and resource allocation strategies.
Syllabus
Unraveling Multi-tenancy Issues in Aurora MySQL using AI/ML | Let's Talk About Data
Taught by
AWS Events