Video Observability for Root Cause Analysis
The Problem
Real-time video observability that can solve Quality of Experience (QoE) issues while live broadcast events are still playing require the simultaneous monitoring of millions of data points. Video sessions flow across multiple systems including origins, CDNs, manifest services, and players provided by multiple vendors. Relational database approaches to perform this complex log analysis at productions scale run into costs constraints that prohibit comprehensive real-time operations for all but the highest value broadcast events.
The Solution
Quine streaming graph ingests logs and events from clients, CDNs, origins, etc. in real-time and materializes the data into a graph. The graph data model natively connects chunk QoE metrics with unlimited categorical classifications and calculated metrics to identify “alerts that matter to your audience” and instantly associate them to ASN, Geo, client type, asset names, encoding formats, CDN cache server, origin server, etc. This real-time comprehensive view of the inter-relationships between services allows rapid assessment of root causes while live video streams as still playing.
Key Value Take Away
- Identify the QoE impacting issues that matter, in real-time and at scale
- Graph data modeling eliminates the complexity of deeply nested joins
- NOC technicians can easily pivot data to understand issue impacts and root causes
- Automatic handling of out-of-order data arrival
- Entity resolution between log and event sources
- Integrates with existing Apache Kafka, AWS Kinesis, data lake, and API event sources.
Use Cases
-
Real-time Blockchain Fraud Detection
The Problem Real-time linking of transactions, accounts, wallets, and blocks within and across blockchains is not possible with current solutions. Instead, the user must either rely on batch…
-
Authentication Fraud
The Problem Metered attacks that generate low volume log-in attempts, from diverse IPs and across extended time frames, are designed to avoid the “3 strikes in 24 hours”…
-
Financial Fraud Detection
The Problem Financial fraud detection requires monitoring billions of transactions, devices and users in real-time for suspect behaviors without false positives that alienate customers when service is denied…
Want to read more news and other posts? Visit the resource center for all things thatDot.