fix: update grafana dashboards to match new prometheus labels

This commit is contained in:
Stefan Reimer 2021-07-01 12:36:35 +02:00
parent dd867d8e58
commit 62a12b7f79
14 changed files with 1918 additions and 2196 deletions

View File

@ -162,7 +162,7 @@ collectors:
- statefulsets
- storageclasses
- validatingwebhookconfigurations
- verticalpodautoscalers
# - verticalpodautoscalers
- volumeattachments
# Enabling kubeconfig will pass the --kubeconfig argument to the container

View File

@ -8,7 +8,7 @@
"subdir": "grafonnet"
}
},
"version": "55cf4ee53ced2b6d3ce96ecce9fb813b4465be98",
"version": "3082bfca110166cd69533fa3c0875fdb1b68c329",
"sum": "4/sUV0Kk+o8I+wlYxL9R6EPhL/NiLfYHk+NXlU64RUk="
},
{
@ -18,7 +18,7 @@
"subdir": "grafana-builder"
}
},
"version": "970b0dd2fc5b896406eba258cad78b7e0b0f18bf",
"version": "136b7e4fa204d6b4f9f3bfc5d8ace8834d2b4aae",
"sum": "GRf2GvwEU4jhXV+JOonXSZ4wdDv8mnHBPCQ6TUVd+g8="
},
{
@ -28,8 +28,8 @@
"subdir": ""
}
},
"version": "39a9cda705b5201c35105bd1f24c83923fa839ef",
"sum": "8GmlcgCeC46NSHfRBebyqUOJCG1YvqvuGMj98u+Pge4="
"version": "baf5e20d3275ebed214eaa26a0377ec3bf2b8897",
"sum": "U1JPaRwc6xDBkE30bbEpT2j0vAJvrm5GXhCIZqLLLWU="
}
],
"legacyImports": false

View File

@ -134,10 +134,10 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(rate(workqueue_adds_total{cluster=\"$cluster\", job=\"kube-controller-manager\", instance=~\"$instance\"}[5m])) by (instance, name)",
"expr": "sum(rate(workqueue_adds_total{cluster=\"$cluster\", job=\"kube-controller-manager\", instance=~\"$instance\"}[5m])) by (cluster, instance, name)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} {{name}}",
"legendFormat": "{{cluster}} {{instance}} {{name}}",
"refId": "A"
}
],
@ -228,10 +228,10 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(rate(workqueue_depth{cluster=\"$cluster\", job=\"kube-controller-manager\", instance=~\"$instance\"}[5m])) by (instance, name)",
"expr": "sum(rate(workqueue_depth{cluster=\"$cluster\", job=\"kube-controller-manager\", instance=~\"$instance\"}[5m])) by (cluster, instance, name)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} {{name}}",
"legendFormat": "{{cluster}} {{instance}} {{name}}",
"refId": "A"
}
],
@ -322,10 +322,10 @@
"steppedLine": false,
"targets": [
{
"expr": "histogram_quantile(0.99, sum(rate(workqueue_queue_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-controller-manager\", instance=~\"$instance\"}[5m])) by (instance, name, le))",
"expr": "histogram_quantile(0.99, sum(rate(workqueue_queue_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-controller-manager\", instance=~\"$instance\"}[5m])) by (cluster, instance, name, le))",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} {{name}}",
"legendFormat": "{{cluster}} {{instance}} {{name}}",
"refId": "A"
}
],

View File

@ -199,7 +199,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(kube_pod_container_resource_limits{cluster=\"$cluster\", resource=\"cpu\"}) / sum(kube_node_status_allocatable{resource=\"cpu\",cluster=\"$cluster\"})",
"expr": "sum(namespace_cpu:kube_pod_container_resource_limits:sum{cluster=\"$cluster\"}) / sum(kube_node_status_allocatable{resource=\"cpu\",cluster=\"$cluster\"})",
"format": "time_series",
"instant": true,
"intervalFactor": 2,
@ -427,7 +427,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(kube_pod_container_resource_limits{cluster=\"$cluster\", resource=\"memory\"}) / sum(kube_node_status_allocatable{resource=\"memory\",cluster=\"$cluster\"})",
"expr": "sum(namespace_memory:kube_pod_container_resource_limits:sum{cluster=\"$cluster\"}) / sum(kube_node_status_allocatable{resource=\"memory\",cluster=\"$cluster\"})",
"format": "time_series",
"instant": true,
"intervalFactor": 2,
@ -514,7 +514,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\"}) by (namespace)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\"}) by (namespace)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{namespace}}",
@ -759,7 +759,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\"}) by (namespace)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -777,7 +777,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\"}) by (namespace) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", resource=\"cpu\"}) by (namespace)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\"}) by (namespace) / sum(namespace_cpu:kube_pod_container_resource_requests:sum{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -786,7 +786,7 @@
"step": 10
},
{
"expr": "sum(kube_pod_container_resource_limits{cluster=\"$cluster\", resource=\"cpu\"}) by (namespace)",
"expr": "sum(namespace_cpu:kube_pod_container_resource_limits:sum{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -795,7 +795,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\"}) by (namespace) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", resource=\"cpu\"}) by (namespace)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\"}) by (namespace) / sum(namespace_cpu:kube_pod_container_resource_limits:sum{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1139,7 +1139,7 @@
"step": 10
},
{
"expr": "sum(kube_pod_container_resource_requests{cluster=\"$cluster\", resource=\"memory\"}) by (namespace)",
"expr": "sum(namespace_memory:kube_pod_container_resource_requests:sum{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1148,7 +1148,7 @@
"step": 10
},
{
"expr": "sum(container_memory_rss{cluster=\"$cluster\", container!=\"\"}) by (namespace) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", resource=\"memory\"}) by (namespace)",
"expr": "sum(container_memory_rss{cluster=\"$cluster\", container!=\"\"}) by (namespace) / sum(namespace_memory:kube_pod_container_resource_requests:sum{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1157,7 +1157,7 @@
"step": 10
},
{
"expr": "sum(kube_pod_container_resource_limits{cluster=\"$cluster\", resource=\"memory\"}) by (namespace)",
"expr": "sum(namespace_memory:kube_pod_container_resource_limits:sum{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1166,7 +1166,7 @@
"step": 10
},
{
"expr": "sum(container_memory_rss{cluster=\"$cluster\", container!=\"\"}) by (namespace) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", resource=\"memory\"}) by (namespace)",
"expr": "sum(container_memory_rss{cluster=\"$cluster\", container!=\"\"}) by (namespace) / sum(namespace_memory:kube_pod_container_resource_limits:sum{cluster=\"$cluster\"}) by (namespace)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1871,7 +1871,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1947,7 +1947,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -2035,7 +2035,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -2111,7 +2111,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,

View File

@ -46,7 +46,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"})",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"})",
"format": "time_series",
"instant": true,
"intervalFactor": 2,
@ -122,7 +122,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"})",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"})",
"format": "time_series",
"instant": true,
"intervalFactor": 2,
@ -208,7 +208,7 @@
"thresholds": "70,80",
"timeFrom": null,
"timeShift": null,
"title": "Memory Utilization (from requests)",
"title": "Memory Utilisation (from requests)",
"tooltip": {
"shared": false,
"sort": 0,
@ -384,7 +384,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{pod}}",
@ -597,7 +597,7 @@
],
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -615,7 +615,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}) by (pod)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -633,7 +633,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}) by (pod) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}) by (pod)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1608,7 +1608,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1684,7 +1684,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1772,7 +1772,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1848,7 +1848,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -2181,7 +2181,7 @@
"decimals": 2,
"link": true,
"linkTargetBlank": false,
"linkTooltip": "Drill down to containers",
"linkTooltip": "Drill down to pods",
"linkUrl": "./d/6581e46e4e5c7ba40a07646395ef7b23/k8s-resources-pod?var-datasource=$datasource&var-cluster=$cluster&var-namespace=$namespace&var-pod=$__cell",
"pattern": "pod",
"thresholds": [ ],

View File

@ -45,7 +45,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", node=~\"$node\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", node=~\"$node\"}) by (pod)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{pod}}",
@ -242,7 +242,7 @@
],
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", node=~\"$node\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", node=~\"$node\"}) by (pod)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -260,7 +260,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", node=~\"$node\"}) by (pod) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", node=~\"$node\", resource=\"cpu\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", node=~\"$node\"}) by (pod) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", node=~\"$node\", resource=\"cpu\"}) by (pod)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -278,7 +278,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", node=~\"$node\"}) by (pod) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", node=~\"$node\", resource=\"cpu\"}) by (pod)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", node=~\"$node\"}) by (pod) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", node=~\"$node\", resource=\"cpu\"}) by (pod)",
"format": "table",
"instant": true,
"intervalFactor": 2,

View File

@ -64,7 +64,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{namespace=\"$namespace\", pod=\"$pod\", cluster=\"$cluster\"}) by (container)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{namespace=\"$namespace\", pod=\"$pod\", cluster=\"$cluster\"}) by (container)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{container}}",
@ -374,7 +374,7 @@
],
"targets": [
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\"}) by (container)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\"}) by (container)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -392,7 +392,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\"}) by (container) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\", resource=\"cpu\"}) by (container)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\"}) by (container) / sum(kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\", resource=\"cpu\"}) by (container)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -410,7 +410,7 @@
"step": 10
},
{
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\"}) by (container) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\", resource=\"cpu\"}) by (container)",
"expr": "sum(node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\"}) by (container) / sum(kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", pod=\"$pod\", resource=\"cpu\"}) by (container)",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1126,7 +1126,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1203,7 +1203,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1292,7 +1292,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1369,7 +1369,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1615,7 +1615,7 @@
"expr": "ceil(sum by(container) (rate(container_fs_reads_total{container!=\"\", cluster=\"$cluster\",namespace=~\"$namespace\", pod=\"$pod\"}[5m]) + rate(container_fs_writes_total{container!=\"\", cluster=\"$cluster\",namespace=~\"$namespace\", pod=\"$pod\"}[5m])))",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{pod}}",
"legendFormat": "{{container}}",
"legendLink": null,
"step": 10
}
@ -1691,7 +1691,7 @@
"expr": "sum by(container) (rate(container_fs_reads_bytes_total{container!=\"\", cluster=\"$cluster\",namespace=~\"$namespace\", pod=\"$pod\"}[5m]) + rate(container_fs_writes_bytes_total{container!=\"\", cluster=\"$cluster\",namespace=~\"$namespace\", pod=\"$pod\"}[5m]))",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{pod}}",
"legendFormat": "{{container}}",
"legendLink": null,
"step": 10
}
@ -1876,16 +1876,16 @@
"unit": "Bps"
},
{
"alias": "Pod",
"alias": "Container",
"colorMode": null,
"colors": [ ],
"dateFormat": "YYYY-MM-DD HH:mm:ss",
"decimals": 2,
"link": true,
"link": false,
"linkTargetBlank": false,
"linkTooltip": "Drill down to pods",
"linkUrl": "./d/6581e46e4e5c7ba40a07646395ef7b23/k8s-resources-pod?var-datasource=$datasource&var-cluster=$cluster&var-namespace=$namespace&var-pod=$__cell",
"pattern": "pod",
"linkTooltip": "Drill down",
"linkUrl": "",
"pattern": "container",
"thresholds": [ ],
"type": "number",
"unit": "short"

View File

@ -45,7 +45,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{pod}}",
@ -242,7 +242,7 @@
],
"targets": [
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -260,7 +260,7 @@
"step": 10
},
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n/sum(\n kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n/sum(\n kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -278,7 +278,7 @@
"step": 10
},
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n/sum(\n kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n/sum(\n kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n * on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload=\"$workload\", workload_type=\"$type\"}\n) by (pod)\n",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1306,7 +1306,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1382,7 +1382,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1470,7 +1470,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1546,7 +1546,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,

View File

@ -68,7 +68,7 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{workload}} - {{workload_type}}",
@ -320,7 +320,7 @@
"step": 10
},
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -338,7 +338,7 @@
"step": 10
},
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n/sum(\n kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n/sum(\n kube_pod_container_resource_requests{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -356,7 +356,7 @@
"step": 10
},
{
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_rate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n/sum(\n kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"expr": "sum(\n node_namespace_pod_container:container_cpu_usage_seconds_total:sum_irate{cluster=\"$cluster\", namespace=\"$namespace\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n/sum(\n kube_pod_container_resource_limits{cluster=\"$cluster\", namespace=\"$namespace\", resource=\"cpu\"}\n* on(namespace,pod)\n group_left(workload, workload_type) namespace_workload_pod:kube_pod_owner:relabel{cluster=\"$cluster\", namespace=\"$namespace\", workload_type=\"$type\"}\n) by (workload, workload_type)\n",
"format": "table",
"instant": true,
"intervalFactor": 2,
@ -1477,7 +1477,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1553,7 +1553,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1641,7 +1641,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,
@ -1717,7 +1717,7 @@
},
"yaxes": [
{
"format": "Bps",
"format": "pps",
"label": null,
"logBase": 1,
"max": null,

File diff suppressed because it is too large Load Diff

View File

@ -54,14 +54,14 @@
"steppedLine": false,
"targets": [
{
"expr": "(\n sum without(instance, node) (kubelet_volume_stats_capacity_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n -\n sum without(instance, node) (kubelet_volume_stats_available_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n)\n",
"expr": "(\n sum without(instance, node) (topk(1, (kubelet_volume_stats_capacity_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})))\n -\n sum without(instance, node) (topk(1, (kubelet_volume_stats_available_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})))\n)\n",
"format": "time_series",
"intervalFactor": 1,
"legendFormat": "Used Space",
"refId": "A"
},
{
"expr": "sum without(instance, node) (kubelet_volume_stats_available_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n",
"expr": "sum without(instance, node) (topk(1, (kubelet_volume_stats_available_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})))\n",
"format": "time_series",
"intervalFactor": 1,
"legendFormat": "Free Space",
@ -161,7 +161,7 @@
"tableColumn": "",
"targets": [
{
"expr": "max without(instance,node) (\n(\n kubelet_volume_stats_capacity_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"}\n -\n kubelet_volume_stats_available_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"}\n)\n/\nkubelet_volume_stats_capacity_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"}\n* 100)\n",
"expr": "max without(instance,node) (\n(\n topk(1, kubelet_volume_stats_capacity_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n -\n topk(1, kubelet_volume_stats_available_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n)\n/\ntopk(1, kubelet_volume_stats_capacity_bytes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n* 100)\n",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "",
@ -235,14 +235,14 @@
"steppedLine": false,
"targets": [
{
"expr": "sum without(instance, node) (kubelet_volume_stats_inodes_used{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n",
"expr": "sum without(instance, node) (topk(1, (kubelet_volume_stats_inodes_used{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})))\n",
"format": "time_series",
"intervalFactor": 1,
"legendFormat": "Used inodes",
"refId": "A"
},
{
"expr": "(\n sum without(instance, node) (kubelet_volume_stats_inodes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n -\n sum without(instance, node) (kubelet_volume_stats_inodes_used{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n)\n",
"expr": "(\n sum without(instance, node) (topk(1, (kubelet_volume_stats_inodes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})))\n -\n sum without(instance, node) (topk(1, (kubelet_volume_stats_inodes_used{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})))\n)\n",
"format": "time_series",
"intervalFactor": 1,
"legendFormat": " Free inodes",
@ -342,7 +342,7 @@
"tableColumn": "",
"targets": [
{
"expr": "max without(instance,node) (\nkubelet_volume_stats_inodes_used{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"}\n/\nkubelet_volume_stats_inodes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"}\n* 100)\n",
"expr": "max without(instance,node) (\ntopk(1, kubelet_volume_stats_inodes_used{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n/\ntopk(1, kubelet_volume_stats_inodes{cluster=\"$cluster\", job=\"kubelet\", namespace=\"$namespace\", persistentvolumeclaim=\"$volume\"})\n* 100)\n",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "",

View File

@ -134,31 +134,31 @@
"steppedLine": false,
"targets": [
{
"expr": "sum(rate(scheduler_e2e_scheduling_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (instance)",
"expr": "sum(rate(scheduler_e2e_scheduling_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (cluster, instance)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} e2e",
"legendFormat": "{{cluster}} {{instance}} e2e",
"refId": "A"
},
{
"expr": "sum(rate(scheduler_binding_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (instance)",
"expr": "sum(rate(scheduler_binding_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (cluster, instance)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} binding",
"legendFormat": "{{cluster}} {{instance}} binding",
"refId": "B"
},
{
"expr": "sum(rate(scheduler_scheduling_algorithm_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (instance)",
"expr": "sum(rate(scheduler_scheduling_algorithm_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (cluster, instance)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} scheduling algorithm",
"legendFormat": "{{cluster}} {{instance}} scheduling algorithm",
"refId": "C"
},
{
"expr": "sum(rate(scheduler_volume_scheduling_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (instance)",
"expr": "sum(rate(scheduler_volume_scheduling_duration_seconds_count{cluster=\"$cluster\", job=\"kube-scheduler\", instance=~\"$instance\"}[5m])) by (cluster, instance)",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} volume",
"legendFormat": "{{cluster}} {{instance}} volume",
"refId": "D"
}
],
@ -236,31 +236,31 @@
"steppedLine": false,
"targets": [
{
"expr": "histogram_quantile(0.99, sum(rate(scheduler_e2e_scheduling_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (instance, le))",
"expr": "histogram_quantile(0.99, sum(rate(scheduler_e2e_scheduling_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (cluster, instance, le))",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} e2e",
"legendFormat": "{{cluster}} {{instance}} e2e",
"refId": "A"
},
{
"expr": "histogram_quantile(0.99, sum(rate(scheduler_binding_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (instance, le))",
"expr": "histogram_quantile(0.99, sum(rate(scheduler_binding_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (cluster, instance, le))",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} binding",
"legendFormat": "{{cluster}} {{instance}} binding",
"refId": "B"
},
{
"expr": "histogram_quantile(0.99, sum(rate(scheduler_scheduling_algorithm_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (instance, le))",
"expr": "histogram_quantile(0.99, sum(rate(scheduler_scheduling_algorithm_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (cluster, instance, le))",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} scheduling algorithm",
"legendFormat": "{{cluster}} {{instance}} scheduling algorithm",
"refId": "C"
},
{
"expr": "histogram_quantile(0.99, sum(rate(scheduler_volume_scheduling_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (instance, le))",
"expr": "histogram_quantile(0.99, sum(rate(scheduler_volume_scheduling_duration_seconds_bucket{cluster=\"$cluster\", job=\"kube-scheduler\",instance=~\"$instance\"}[5m])) by (cluster, instance, le))",
"format": "time_series",
"intervalFactor": 2,
"legendFormat": "{{instance}} volume",
"legendFormat": "{{cluster}} {{instance}} volume",
"refId": "D"
}
],

View File

@ -20,32 +20,32 @@ binaryData:
cluster-total.json.gz:
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controller-manager.json.gz:
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k8s-resources-cluster.json.gz:
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
k8s-resources-namespace.json.gz:
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
k8s-resources-node.json.gz:
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k8s-resources-pod.json.gz:
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
k8s-resources-workload.json.gz:
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k8s-resources-workloads-namespace.json.gz:
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kubelet.json.gz:
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namespace-by-pod.json.gz:
H4sIAAAAAAAC/+1daW/bOBr+3l8hqN0ixTpTSz6SFAgWObcF2k6mSbvYbQODlmhbiCxpKCpHg+xvH5K6SIqU7CTNMVY/tDVJvSTf8+FLUrp+YRjmaOQFUYJj853x/bSTliD4Z+IhyJWBIAgxwF4Y0MJrUkQKfS/GtAn7ZWSlrGaceD7+EJBKq1OWugCDOEyQA0mFeYTCOcQzmMQm1wYGYOzTeowSyJXPPFdR6jlhsBf6IaIE0XQM1rodw7Ys8tdg0DGsNzzpAMxZxzvlXIzXxo4PERaGgK8i1s4F8WwcAuSaWd0N+/eU/H3DmAJdD0ujNacBxB9cUhIkvp+WIBDNTsLQx15EyruskE5nLwwwCn3K0Anw4/R5T3jW94IzTgoRCCBrn7I8Z7jphL4PohjylIQKt1IzRZ57FJbCTJksCeyC/Lb7XMFlPoHs9xX9nXOnoM3mYBc/y1GfFmUIRhBgbqpc6QcMEROPuvpLeCEwmFXFs/DixMMVzTFxVmjuJQjBABu7IHAvPBfPTLHNsfeTtZsNuYpME1B4kepANseS8cCZwRNvDsOkMhmH6uUucM6mKEwCVyWbEH0DfgLVVTFnWqTspb215fSHvKIyhbd7G0TR7a2O0Se63/1tc0tQ+pduvw96IFfhUgKNxmi60PHmgEmukLk5CdGcCY5wbQ5HMUQe5J6ZgmQKRaWag8t8llaXV565F+QVfDEVpcwRKosZcUiz0Hc/gjEUjUZu8QmgM8j4R1Whop5a1d+SVN+yG1TfqtCeQW86wzyt1Bp65c+AqPc58GV1EU0941wUecH0JNVCS1UuKkk5H87dnVMeGzg0MLzEnGoYWRU3D24mGmIIBNMGYnZJrKJ0RBf2id4dhYQLsagQVB2OiasQ+G5SFrHWn0Lm/4lpBAF0MPFoQpsTOhyJo2EkxqtUfz3ou78rapg1+47I0FQygIQ5ruhUmLYLJyDxsUwsnWw6xfxPR6r3AlGnRIf1ivI8jgAxUKlJEnjMAnejmB/XjTCuTElElUr5cg4RSsPptfhMYUFVLohzy31UGibR2foUQRhI42TK7sLL6iQ5baESE+puOsv0ewV9n7gLbceWtuNBIZY7dI84Paz0bWv73tD0rVUy9mDh8yoGVvqfKIzxxKO9m6ZceEjwRh7lBt1/cPUIVp9hZdpHmB/4RKCF3v9MSEihz1EJi54Cp8Zqfn67I1WExQM1TiSueAlSgs6IA4Wyrfu+iA57BBla1ib5a3OLBktrUwiWE9pzNbBQyjydlIxNwq211RMI8LGrIhuGFQmdZB6IvMYATSGuYSW8jFjfcTJf8wg2gmvEDWJAhoVGBG9ehOiMYHYHeudwNL7CMB5hgnD9a8dPYhJttn+Yr7L//jA7hVvZ/v8Pzsn8MG++v8qD07tXxBGQkVI3efrmjSilegiQmUCMQSB7ZCH+HQIHM44KJmr6cAoD97DoQqRLlJJhP3OnTkEEN8bzmQz3MNVKIVDQ8uOZN8HVCgk8fiG8N8KJsUuZbHxJWe5WAWMKg4piZr68LW3ytsRq620ppCsHc3tBM8rdTKMlsYafs9DupHNsgW4LdMWC5ZBuv0W6LdJtkW6LdFuk2yLdX4J0MRFJPPdwC3UfDuqeZDzHq4F2merWjDAfDEXEmtGwqka0kRNi+NB4qZtaUb0swd16grtLE9yrJ7i3NMH9eoL7SxM8qCd4sDTBw3qCh4sTjEJXQ4vW1Khu8xqGRgABOk84AyTIjLPAhZcFjVs/lmbvZ8BjfRjLezK0MN2C4QesWhYUQLkcShUo0wIDxMZPiEIubhPfChFk0WTihyWEN2MHhYxZwqBoQHsPgcueEGtChEVmEf8gccOFsaMNhyzofITBNJ1xV47v3ORifOXXLXWA74FY7XkYXst4UglF5UJbwvTEy5cR6L/kz/qnT+v7+8b79+/m83exFOy4lbItxjIivCqeyCrKzU9zHxE9NdzwQoTQrNlX5FfDYARIzEGBesoiihdnlgenmee6EmAvlhXkWYSbzbdgerF3WE39rIYI1GFqETEEyXxMTEspBmF1t4QQVKBkpeSw+5hyyAFibgrGEXDOII5XUxR79yuK6Fai4AxitaWx/xSkIRuGsY/CKFpVX3XwRA1ktaVy+JhSOQqfINfFE4a3Yrr7dgNYm93hhgO3+j3Q7wJoD/qD/nBj4Fhbk8nAeXuWEB4GEMN4PUtrecF0nawC/xWi6Qd323qN4ITKYrvXjV+fA7Re5rLKRBarIA9tvxqNHCgnHzlpVxaedxW0jJyriamnvqdtjK+MNcIXfcaPHe3U5PoqWlLJ9dm3y/UJ5WR2Eb/M1tvUo+dNnyQ7d38lO3PljNI4sgr83HsQ9Vwhhu4/pIK6KdBZBb4ePKiirhBjDxsZW0UCd96KOsYA87nuHKCkDNDt4DzejQhrS50WHz6xKxH3ehWCofq9HKOXxy3MMUCVQ0zsbo0qI07Loar5gvsftlDwbwRcDzJ76P6C4/+2Zvtjo9zTYFYldkUYNQ124pPs5pC8BQ/Op4rSfLuyWkNvEh3MI3ylvjP1P7opUqlJD+zIpNJjOnIpoue8jtNTNHJddgpAoh6Txv/J9nfEZZzJXKSCkPLYx83i20j2YttIS5630u3bRJBoIgkL06p/iShJqnZJLGyERflBMLG5fpdK7Q7SEwi/Z+eapHk27TPx50gwiV2VjS7izUkc+5geLxEH+jdYz+lPcCx1TOP6mvRyc3PrFVz9GY7v9xE4s8yj8q5bkcm45s0YIBYRZUNOdz5t2VBHeTTwAtc799wEFAcvbqqnQ+j9x3IAl+DSk5zvOElT1RVvMc9ME4s7f/kZTam12hkVnuX7aWWIV+CybrO11B26MyIqBT2bq8pS+eF0F8SwokWpx600V5yM5OfRiFef0hBzxV5VeFA5NK3DB5stPmjxQYsPnlyGcnUAQr4P1iKEFiE8FYTApWwEr8NnbISK+0vY2JqEzZYiYVOzp6mAN1qIUwdzaqDOYnBHCXlqYY+WoSVT5es7MgZScbfgcK+rvb7DOC1NXoGLFsBGenxUj5EacFI9VtLjJT1masJNemfVgJ/qMFTd9RpZJio8pcdUGlylxVaL4qs6jNWAs+qwVg3eqsdcetzViL1q8Zcag2lxWBMW0+Ix5TWvp7rVuSA4WwCgLQzS6oCaBqzVX2arPWWhBm+1AE7K8ix0AFMF5+ognQbWLQTtqo5EDfE0MK8W6tXBPT3ka/CkVehXnUIVAirtqFTVKFKoqA5r1eGtGsylv1arwV6L3Ph8DlPgbW2xk2YtKqtkpxaHZVYLy1pY1sKypwnLHuXEVIvLFsVljbcxWmjWQrO/PTSrZLMf/pyTbHx3eeHr4yUpe5rdRMtus5T3lKXsN8HhXguHWzjcwuHnkaV8yGPZLSq+bbZSff+yhcYtNG6zli1KU2YtG2Fav4VpLUxrYdozyVq2OO2ZZC9bqNZCtTaL+VhZzAOEKCK8TRLzRTZyM3upCK3tdVNatBn3ibHYmcE5+AZRnI7f2kyL6XsJ85dBp8+RSFlqrVm+0MQsesNwHvmEEcF0kW/GlYhK+e7M7O3jmvdn5rUqcJ1/O45PqKpVrXj5O4eKudryNeu81zX/TCC6Ykqt/KJdyXNLKJ3CS+miNffluaJ7OecrXBTxv3HvFlfeBuFXDwt9fy/jFX+g2wtIIHbhjvqN0WpGzokwPEXznMFZaF+Gu6ynUepQ16i6jUisHXnBJOwYGbk3ar7bTXzPohGvIES7GXPjP/L+TbG2MlBapm6cSTWdCVeRxPAkJaS81aIWtfnbP3kaIGGvEq/cEiLFIydMmBL0unJN6hVNqyvIvsECKc/X4yvC6LnGCvkWSktcRAOJKXuBl7lPUep3OZl40zEK3PjGrPcOgsZLtwVuqfCqTxwsp/K/ZPLLGMmZF31F/vFV4KhueqUmZD0HE5JE94AmNNBZzuAOBtOkwPfkssvVlUaFX+iQH1nM+uliXJ1HyLnT68qgsGQQrdMhaH1vCkSuEYVOGAt3VTcxa6bti1S9UKFPpT8gTOgM5h2B3HMz4eKrQK0VPwbwUrF/WRuusaq+XtP7y2h6f0VUXPqiNEs7FGul4rsy4cV6YfP5p2PSxV35WOQREIDKhzOejfLB8OI1B9w6ktd9wQWbVqnnvM6bFv+j1+VruGucNvd/K/u6wWk+B5p3q6qdvhee8JAnzPdi9/kf3D3tDZcfbz4WgX0/Q5b7NL+e7GXL23zd/bl4P6fx1vicoyhj7Sh04xRLmQnbdjA3xxtgc9yzh+4GGE6sSbdv9/vd4bA33HSGG2CSNj4v1tbdFzd/ATu1gJODfQAA
namespace-by-workload.json.gz:
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persistentvolumesusage.json.gz:
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pod-total.json.gz:
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proxy.json.gz:
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scheduler.json.gz:
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
workload-total.json.gz:
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

View File

@ -155,9 +155,6 @@ kube-prometheus-stack:
default_timezone: UTC
sidecar:
# We require at least 1.12.0 for the SCRIPT and relative folder names
image:
tag: 1.12.0
dashboards:
searchNamespace: ALL
provider:
@ -219,8 +216,8 @@ prometheus-adapter:
default: false
resource:
cpu:
containerQuery: sum(irate(container_cpu_usage_seconds_total{<<.LabelMatchers>>,container!="POD",container!="",pod!=""}[3m])) by (<<.GroupBy>>)
nodeQuery: sum(1 - irate(node_cpu_seconds_total{mode="idle"}[3m]) * on(namespace, pod) group_left(node) node_namespace_pod:kube_pod_info:{<<.LabelMatchers>>}) by (<<.GroupBy>>)
containerQuery: sum(irate(container_cpu_usage_seconds_total{<<.LabelMatchers>>,container!="POD",container!="",pod!=""}[5m])) by (<<.GroupBy>>)
nodeQuery: sum(1 - irate(node_cpu_seconds_total{mode="idle"}[5m]) * on(namespace, pod) group_left(node) node_namespace_pod:kube_pod_info:{<<.LabelMatchers>>}) by (<<.GroupBy>>)
resources:
overrides:
node:
@ -242,7 +239,7 @@ prometheus-adapter:
pod:
resource: pod
containerLabel: container
window: 3m
window: 5m
istio:
grafana: