solution Use Case
Supporting end-user OTT streaming clients with DataMiner
RabbitMQ
OTT

This use case demonstrates how DataMiner can support end-user OTT streaming clients, including Apple TV, Android TV, mobile devices, Chromecast, and more, by leveraging data from RabbitMQ and OpenSearch. By exploiting a combination of DataMiner EPM (Experience and Performance Management) and offloaded events to OpenSearch, second-line operators can efficiently diagnose and resolve issues affecting end-user streaming experiences through a low-code app.
Data collection and processing
- Error & event ingestion:
- Streaming clients generate diagnostic events, errors, and activity logs.
- These logs are received via RabbitMQ and offloaded into OpenSearch for indexing and retrieval.
- DataMiner integration:
- DataMiner EPM collects and trends performance metrics related to streaming quality, network conditions, and device health.
- OpenSearch provides enriched event information, enabling enhanced analysis.
Analysis and issue detection
- Trend analysis & anomaly detection:
- DataMiner correlates trended performance data with OpenSearch event logs.
- Anomalies, such as buffering, playback failures, or DRM issues, are identified.
- Root cause analysis:
- DataMiner classifies issues (e.g. network limitations, CDN failures, client-side problems).
- Historical trends help differentiate transient issues from persistent problems.
Operator support & issue resolution
- Low-code app for second-line operators:
- The app provides a real-time dashboard summarizing per-client issues.
- The app displays detected problems, root cause insights, and suggested resolutions.
- Automated recommendations:
- Based on analytics, DataMiner suggests troubleshooting actions.
- Operators receive step-by-step guidance on resolving detected issues.
- Proactive monitoring & alerts:
- DataMiner generates alerts for recurring or critical issues.
- Proactive measures can be recommended.
Outcome & benefits
- Improved troubleshooting efficiency: Operators resolve issues faster with data-driven insights.
- Enhanced user experience: Faster identification and mitigation of streaming problems.
- Operational optimization: Data-driven decisions help reduce downtime and improve service reliability.
USE CASE DETAILS

