Create a configuration settings rule
Configuration settings affect how metric data is processed. Configuration settings rules override the default metric processing behavior to determine the system actions when an anomaly is detected.
Avant de commencer
Pourquoi et quand exécuter cette tâche
Then, manually apply these rules to all Metric Intelligence MID Servers in a single synchronization operation, or rely on an hourly system job to perform the synchronization.
To take effect, Metric Intelligence MID Servers must be synchronized with the updates to the configuration settings rules.
- Rules in which a filter is defined take precedence over a global rule in which no filter has been defined.
- If multiple rules that affect the same set of CIs have the same priority, then only the latest rule to be defined is applied.
- If multiple rules with different priorities affect the same set of CIs, then rules with the highest priority are applied.
Procédure
- Navigate to All > Event Management > Anomaly Detection > Metric Config Rules.
-
On the Metric Configuration Rules pane, click New, and
fill out the form.
Tableau 1. Metric Configuration Rules form Field Description Name Rule name. Order Rule priority within all other rules. Higher numbers represent higher priorities. Filter by Check box for displaying the Rule field, where you can specify conditions that CIs must meet for the rule to apply. For example, in the choose field list, select Add Related Fields and then add the filter [class][is][Linux Server].
If clear, the rule applies globally to all CIs in the Metric To CI Mapping [sa_metric_map] table.
- Right-click the form title, and click Save.
-
In the Metric overridden configurations form section click
New, fill out the form, and then click
Submit.
Tableau 2. Metric overridden configurations form Field Description Name Configuration setting for which to override its value. Click the
icon to display the list of all configuration settings.
Click the
icon to display the Metric Settings dialog with details such as range of possible values.
See the following tables (Configuration Settings and Internal Configuration Settings) for details about configuration settings.
Rule Rule to which the created configuration setting applies. Value New value that overrides the default value for the specified configuration setting. You can modify the following configuration settings in the Name field.Remarque :The filter specified in the metric configuration rule does not apply to settings with a global scope.Tableau 3. Configuration Settings Name and Description Values Default Data Type Scope anomaly_detection_enabled
Enable/disable anomaly detection.
Remarque :If anomaly_detection_action_level is set, then anomaly_detection_enabled is ignored.N/A true boolean CI/Metric anomaly_detection_action_level
Action level of anomaly analysis and processing.
For more information, see Configure the action level for anomaly detection.
choices: - Metrics Only
- Bounds
- Anomaly Scores
- Anomaly Alerts
- IT Alerts
- New records: Bounds
- Upgraded records: Anomaly Alerts
choice CI/Metric buffer_anomaly_eviction_size
Maximum number of anomalies at individual metric level that can be stored in internal buffer before sending them to instance for every CI/Metric pair.
60–1440 60 integer Global buffer_ci_score_eviction_size
Maximum number of anomalies at CI level that can be stored in internal buffer before sending them to instance (Currently not being used)
60–1440 60 integer Global buffer_metric_eviction_size
Maximum number of metrics that can be stored in internal buffer before sending them to instance for every CI/Metric pair.
60–1440 60 integer Global connection_login_timeout_secs
Maximum time in seconds to log in to the local database on MID Server.
30–60 30 integer Global corrupt_data_count_threshold
Minimum number of training points (15-minute averages) required to do any statistical analysis.
10–100 30 integer Global deprioritize_early_batching_of_anomalous_ci
Send anomalous CI information immediately or at regular interval.
N/A false boolean Global mad_model_min_days Number of days for which data must be available to consider a Median Absolute Deviation based model.
10-120 10 integer CI/Metric max_pool_connections_size Maximum number of connections for local database pool.
10–50 25 integer Global observation_time_min
Expected minimum metric observation interval.
1–1440 1 integer CI/Metric robust_central_percentage
Percentage of the residual data to compute the residual standard deviation, used for outlier detection. When set to 100 - uses the regular sample standard deviation.
50–100 90 double Global sparse_gap_fraction_threshold If more than this percentage of data is missing and no other class has been identified, classify as SPARSE. Do not attempt to fit a WEEKLY model.
0–100 50 double Global weekly_model_min_days Number of days for which data must be available in order to consider only a WEEKLY seasonality decomposition.
14-90 15 integer CI/Metric daily_model_min_days Number of days for which data must be available in order to consider only a DAILY seasonality decomposition.
2-90 3 integer CI/Metric build_snpm_model Enable/disable building an SNPM data model.
N/A true boolean CI/Metric snpm_minimum_data_count
Minimum number of data points required for building a stationary nonparametric model.
0 – 1e9 5000 integer CI/Metric
The following configuration settings are for internal usage.
Tableau 4. Internal Configuration Settings Name and Description Values Default Data Type Scope anomaly_memory_time_min
Anomaly score calculator parameter: Memory time for abnormal situation.
1–600 45 double CI/Metric excess_z_score
Anomaly score calculator parameter: Minimal anomalousness accumulated for outlier.
0–3 0.8 double CI/Metric linear_accumulator_threshold
Decision Tree Threshold: ACCUMULATOR analysis
0.5–5 1 double Global low_freq_power_threshold
Decision Tree Threshold: WEEKLY analysis
0–100 50 double Global low_variability_threshold
Decision Tree Threshold: TRENDY analysis
0.0000000001–0.001 0.0001 double Global mid_freq_power_threshold
Decision Tree Threshold: WEEKLY analysis
0–100 33 double Global multinomial_count_threshold
Decision Tree Threshold: MULTINOMIAL analysis
1–1000 40 integer Global non_zero_diff_threshold
Decision Tree Threshold: NEAR_CONSTANT analysis
0–100 5 double Global normal_memory_time_min
Anomaly score calculator parameter: Memory time for normal situation.
1–600 1 double CI/Metric normal_probability_ewma_timescale_min
Anomaly score calculator parameter: Normal assessment time-scale.
1–600 15 double CI/Metric normal_probability_weight
Anomaly score calculator parameter: Normal assessment adjustment factor.
0–1 1 double CI/Metric sigmoid_offset
Anomaly score calculator parameter: Anomalousness to score conversion.
0–5 2.1 double CI/Metric sigmoid_weight
Anomaly score calculator parameter: Anomalousness to score conversion.
0–5 1.2 double CI/Metric tiny_variability_threshold
Decision Tree Threshold: NEAR_CONSTANT analysis
0–0.001 0.0000000001 double Global weekly_peak_hi_limit
Decision Tree Threshold: WEEKLY analysis.
7–14 10 double Global weekly_peak_lo_limit
Decision Tree Threshold: Weekly analysis.
0.5–7 0.7 double Global weekly_vs_daily_log_likelihood_threshold
By how much log likelihood of weekly needs to be larger than daily, to be the preferred statistical model.
100–1000 200 double CI/Metric
daily_vs_noisy_log_likelihood_threshold
By how much log likelihood of daily needs to be larger than noisy, to be the preferred statistical model.
20–1000 200 double CI/Metric
weekly_vs_noisy_log_likelihood_treshold
By how much log likelihood of weekly needs to be larger than noisy, to be the preferred statistical model.
100–1000 200 double CI/Metric
trendy_vs_noisy_log_likelihood_threshold
By how much log likelihood of trendy needs to be larger than noisy, to be the preferred statistical model.
10–1000 50 double CI/Metric
seasonal_loess_width_in_hours
Applied to the seasonal component of a weekly or daily model before making a forecast of future behavior. If set to 0, each data point in the seasonal model becomes independent of the rest of the data points.
6–24 12 double CI/Metric
robustness
Affects how outliers contribute to seasonal and trend calculations.
N/A true boolean CI/Metric
snpm_min_value_threshold
Minimum value of data required for building an SNPM model.
-1e9 – 1e9 0 double CI/Metric
snpm_max_observation_interval_in_sec
Maximum expected observation interval required for building an SNPM model.
60 – 600000 120 integer CI/Metric
min_std_jump_fraction
Minimum ratio of locally calculated observation noise level to typical jump size that justifies recalculating a larger observation noise variance.
0.0 – 1.0 0.2 double CI/Metric
dynamic_threshold_error_smoothing
Whether to use exponentially weighted moving average to smooth the residuals in the dynamic threshold analysis.
N/A true boolean CI/Metric
ewma_alpha
The alpha value of the exponentially weighted moving average in dynamic threshold analysis.
1e-15 – 1.0 0.02739726027 double CI/Metric
dynamic_threshold_beginning_smoothing_length
Number of smoothed data points to set to the mean of double the smoothing length.
0 – 10000 250 integer CI/Metric
dynamic_threshold_error_buffer_minutes
Number of data points around each outlier to group together.
1 – 1000 30 integer CI/Metric
dynamic_threshold_search_start
Start value at which the optimal control factor is looked for.
0.5 – 20.0 3.0
double CI/Metric
dynamic_threshold_search_interval
Interval between search values of optimal control factor.
0.1 – 5.0 0.5 double CI/Metric
dynamic_threshold_search_count
Number of values required for searching for optimal control factor.
1 – 50 19 integer CI/Metric
dynamic_threshold_error_sequence_limit
Maximum number of error groups for a particular control factor value when searching.
1 – 20 5 integer CI/Metric
dynamic_threshold_minimum_data_count
Minimum number of raw data points needed before attempting dynamic thresholding.
1 – 10000 5000 integer CI/Metric
linear_seasonal_log_likelihood_threshold
Threshold used in deciding whether to prefer a fitted model with linear seasonality over a model with a periodic component.
10-5000 1000 integer CI/Metric