In the realm of high-traffic applications, database performance and stability are paramount. When multiple concurrent users or processes generate a deluge of database operations, production databases often face clutter — arising from unoptimized queries, redundant data, or excessive temporary records — leading to increased latency and system instability. As a security researcher turned developer, I’ve confronted this challenge firsthand, leveraging Python to implement dynamic, efficient solutions that mitigate clutter during peak loads.

The Challenge of Database Clutter During High Traffic

During spikes—such as flash sales, live events, or promotional campaigns—databases can become overwhelmed with unanticipated or unoptimized data. These may include:

  • Redundant or orphaned rec…

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