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Event Management
Operational Management
O-EM-A: Stream A
O-EM-B: Stream B
Maturity Level 1
Maturity Level 2
Maturity Level 3
O-EM-A-1
O-EM-A-1: Is there informal or occasional monitoring and detection of events in AI systems?
Manual Detection
: Events are identified manually, often after impact is observed.
No Anomaly Detection
: No structured methods for identifying drift, outliers, or degradation.
Reactive Approach
: Monitoring is not proactive or automated.
0
1
2
3
Description
Manual Detection
: Events are identified manually, often after impact is observed.
No Anomaly Detection
: No structured methods for identifying drift, outliers, or degradation.
Reactive Approach
: Monitoring is not proactive or automated.
O-EM-A-2
O-EM-A-2: Are event responses informally conducted and sporadically documented?
Basic Monitoring
: Latency, availability, and accuracy metrics are tracked.
Initial Anomaly Detection
: Basic drift and outlier detection introduced. -
Alerting Setup
: Manual or threshold-based alerting in place.
0
1
2
3
Description
Basic Monitoring
: Latency, availability, and accuracy metrics are tracked.
Initial Anomaly Detection
: Basic drift and outlier detection introduced. -
Alerting Setup
: Manual or threshold-based alerting in place.
O-EM-A-3
O-EM-A-3: Are events systematically monitored and consistently detected through defined processes?
Real-Time Monitoring
: Continuous monitoring with dashboards and alerting tools.
ML-Driven Detection
: Advanced analytics and machine learning detect anomalies and drift proactively.
Proactive Alerts
: Intelligent alerting reduces false positives and accelerates response.
0
1
2
3
Description
Real-Time Monitoring
: Continuous monitoring with dashboards and alerting tools.
ML-Driven Detection
: Advanced analytics and machine learning detect anomalies and drift proactively.
Proactive Alerts
: Intelligent alerting reduces false positives and accelerates response.