Rollback strategies are crucial in resilience testing to ensure that systems can revert to a stable state after encountering failures. A rollback strategy typically involves creating backups and snapshots of the system, allowing teams to restore to a previous working version quickly. This strategy helps maintain reliability, minimizes downtime, and ensures that system integrity is preserved during testing.
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