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AWS wellarchitected documentation change

Service: wellarchitected · 2025-11-22 · Documentation low

File: wellarchitected/latest/machine-learning-lens/conclusion.md

Summary

Updated phrasing in operational guidance and changed a section header from 'MLSUS-16: Retrain only when necessary' to 'Best practices by ML lifecycle'

Security assessment

The changes are editorial improvements without security context. The header change removes a specific reference (MLSUS-16) but doesn't address vulnerabilities. No security features or mitigations were added.

Diff

diff --git a/wellarchitected/latest/machine-learning-lens/conclusion.md b/wellarchitected/latest/machine-learning-lens/conclusion.md
index 264985c22..e453b86ab 100644
--- a//wellarchitected/latest/machine-learning-lens/conclusion.md
+++ b//wellarchitected/latest/machine-learning-lens/conclusion.md
@@ -11 +11 @@ Architecture diagrams demonstrate the lifecycle phases with the supporting techn
-Use the Lens to help ensure that your ML workloads are architected with operational excellence, security, reliability, performance efficiency, cost optimization, and sustainability in mind. Plan early and make informed decisions when designing new workloads. Use the best practices to guide you through building and deploying new workloads faster. Using the lens guidance, evaluate existing workloads regularly to identify, mitigate, and address potential issues early.
+Use the lens to build ML workloads with operational excellence, security, reliability, performance efficiency, cost optimization, and sustainability in mind. Plan early and make informed decisions when designing new workloads. Use the best practices to guide you through building and deploying new workloads faster. Using the lens guidance, evaluate existing workloads regularly to identify, mitigate, and address potential issues early. 
@@ -19 +19 @@ To use the Amazon Web Services Documentation, Javascript must be enabled. Please
-MLSUS-16: Retrain only when necessary
+Best practices by ML lifecycle