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The Business Impact of Reliability

When telecom applications fail, it costs money. A recent case study demonstrates how
strategic performance QA achieved 99.9% uptime and reduced performance incidents by
75% for a telecom operator.

The Challenge: Peak Load Failures

The telecom operator’s BSS/OSS applications were experiencing critical failures:
System outages during hightraffic periods
Poor customer experience with slow response times
Inadequate testing for realistic load simulation

Forrester research shows 82% of consumers rank reliability as the top factor in telecom

service satisfaction above price.

The Solution: Two-Pronged Testing Approach

Manual Stress Testing

Simulated extreme user scenarios
Assessed realworld user experience under load
Identified performance bottlenecks through direct observation

Automated Performance Framework

Simulated 10,000+ concurrent users
Monitored system performance metrics continuously
Integrated performance testing into CI/CD pipelines

Implementation Strategy

Analyzed real usage patterns to create realistic tests
Automated 90% of performance scenarios
Manually tested edge cases and user experience
Integrated performance metrics into reporting
Continuously optimized based on test results.

 

 

Results: Performance Transformation

Metric Result
Application Uptime 99.9%
Performance Incidents 75% reduction
Response Time 60% faster
Test Coverage 90%

Industry Trends in Telecom Performance

  •  78% of leading providers now embed performance requirements in their definition of done
  •  Top performers use hybrid testing models combining manual and automated approaches
  •  Performance shift-left” has become standard practice in the industry

Key Takeaways for QA Leaders

  • Combine testing approaches: Use automation for scale and human testing for edge cases
  • Test with real-world scenarios: Base tests on actual production patterns
  • Make performance a release gate: Integrate performance thresholds in CI/CD
  • Use AI for prioritization: Focus on critical scenarios
  • Monitor continuously: Extend performance observation into production