allocation.go 34 KB

123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360361362363364365366367368369370371372373374375376377378379380381382383384385386387388389390391392393394395396397398399400401402403404405406407408409410411412413414415416417418419420421422423424425426427428429430431432433434435436437438439440441442443444445446447448449450451452453454455456457458459460461462463464465466467468469470471472473474475476477478479480481482483484485486487488489490491492493494495496497498499500501502503504505506507508509510511512513514515516517518519520521522523524525526527528529530531532533534535536537538539540541542543544545546547548549550551552553554555556557558559560561562563564565566567568569570571572573574575576577578579580581582583584585586587588589590591592593594595596597598599600601602603604605606607608609610611612613614615616617618619620621622623624625626627628629630631632633634635636637638639640641642643644645646647648649650651652653654655656657658659660661662663664665666667668669670671672673674675676677678679680681682683684685686687688689690691692693
  1. package costmodel
  2. import (
  3. "fmt"
  4. "time"
  5. "github.com/opencost/opencost/pkg/util/timeutil"
  6. "github.com/opencost/opencost/pkg/env"
  7. "github.com/opencost/opencost/pkg/kubecost"
  8. "github.com/opencost/opencost/pkg/log"
  9. "github.com/opencost/opencost/pkg/prom"
  10. )
  11. const (
  12. queryFmtPods = `avg(kube_pod_container_status_running{}) by (pod, namespace, %s)[%s:%s]`
  13. queryFmtPodsUID = `avg(kube_pod_container_status_running{}) by (pod, namespace, uid, %s)[%s:%s]`
  14. queryFmtRAMBytesAllocated = `avg(avg_over_time(container_memory_allocation_bytes{container!="", container!="POD", node!=""}[%s])) by (container, pod, namespace, node, %s, provider_id)`
  15. queryFmtRAMRequests = `avg(avg_over_time(kube_pod_container_resource_requests{resource="memory", unit="byte", container!="", container!="POD", node!=""}[%s])) by (container, pod, namespace, node, %s)`
  16. queryFmtRAMUsageAvg = `avg(avg_over_time(container_memory_working_set_bytes{container!="", container_name!="POD", container!="POD"}[%s])) by (container_name, container, pod_name, pod, namespace, instance, %s)`
  17. queryFmtRAMUsageMax = `max(max_over_time(container_memory_working_set_bytes{container!="", container_name!="POD", container!="POD"}[%s])) by (container_name, container, pod_name, pod, namespace, instance, %s)`
  18. queryFmtCPUCoresAllocated = `avg(avg_over_time(container_cpu_allocation{container!="", container!="POD", node!=""}[%s])) by (container, pod, namespace, node, %s)`
  19. queryFmtCPURequests = `avg(avg_over_time(kube_pod_container_resource_requests{resource="cpu", unit="core", container!="", container!="POD", node!=""}[%s])) by (container, pod, namespace, node, %s)`
  20. queryFmtCPUUsageAvg = `avg(rate(container_cpu_usage_seconds_total{container!="", container_name!="POD", container!="POD"}[%s])) by (container_name, container, pod_name, pod, namespace, instance, %s)`
  21. queryFmtGPUsRequested = `avg(avg_over_time(kube_pod_container_resource_requests{resource="nvidia_com_gpu", container!="",container!="POD", node!=""}[%s])) by (container, pod, namespace, node, %s)`
  22. queryFmtGPUsAllocated = `avg(avg_over_time(container_gpu_allocation{container!="", container!="POD", node!=""}[%s])) by (container, pod, namespace, node, %s)`
  23. queryFmtNodeCostPerCPUHr = `avg(avg_over_time(node_cpu_hourly_cost[%s])) by (node, %s, instance_type, provider_id)`
  24. queryFmtNodeCostPerRAMGiBHr = `avg(avg_over_time(node_ram_hourly_cost[%s])) by (node, %s, instance_type, provider_id)`
  25. queryFmtNodeCostPerGPUHr = `avg(avg_over_time(node_gpu_hourly_cost[%s])) by (node, %s, instance_type, provider_id)`
  26. queryFmtNodeIsSpot = `avg_over_time(kubecost_node_is_spot[%s])`
  27. queryFmtPVCInfo = `avg(kube_persistentvolumeclaim_info{volumename != ""}) by (persistentvolumeclaim, storageclass, volumename, namespace, %s)[%s:%s]`
  28. queryFmtPodPVCAllocation = `avg(avg_over_time(pod_pvc_allocation[%s])) by (persistentvolume, persistentvolumeclaim, pod, namespace, %s)`
  29. queryFmtPVCBytesRequested = `avg(avg_over_time(kube_persistentvolumeclaim_resource_requests_storage_bytes{}[%s])) by (persistentvolumeclaim, namespace, %s)`
  30. queryFmtPVActiveMins = `count(kube_persistentvolume_capacity_bytes) by (persistentvolume, %s)[%s:%s]`
  31. queryFmtPVBytes = `avg(avg_over_time(kube_persistentvolume_capacity_bytes[%s])) by (persistentvolume, %s)`
  32. queryFmtPVCostPerGiBHour = `avg(avg_over_time(pv_hourly_cost[%s])) by (volumename, %s)`
  33. queryFmtNetZoneGiB = `sum(increase(kubecost_pod_network_egress_bytes_total{internet="false", sameZone="false", sameRegion="true"}[%s])) by (pod_name, namespace, %s) / 1024 / 1024 / 1024`
  34. queryFmtNetZoneCostPerGiB = `avg(avg_over_time(kubecost_network_zone_egress_cost{}[%s])) by (%s)`
  35. queryFmtNetRegionGiB = `sum(increase(kubecost_pod_network_egress_bytes_total{internet="false", sameZone="false", sameRegion="false"}[%s])) by (pod_name, namespace, %s) / 1024 / 1024 / 1024`
  36. queryFmtNetRegionCostPerGiB = `avg(avg_over_time(kubecost_network_region_egress_cost{}[%s])) by (%s)`
  37. queryFmtNetInternetGiB = `sum(increase(kubecost_pod_network_egress_bytes_total{internet="true"}[%s])) by (pod_name, namespace, %s) / 1024 / 1024 / 1024`
  38. queryFmtNetInternetCostPerGiB = `avg(avg_over_time(kubecost_network_internet_egress_cost{}[%s])) by (%s)`
  39. queryFmtNetReceiveBytes = `sum(increase(container_network_receive_bytes_total{pod!=""}[%s])) by (pod_name, pod, namespace, %s)`
  40. queryFmtNetTransferBytes = `sum(increase(container_network_transmit_bytes_total{pod!=""}[%s])) by (pod_name, pod, namespace, %s)`
  41. queryFmtNodeLabels = `avg_over_time(kube_node_labels[%s])`
  42. queryFmtNamespaceLabels = `avg_over_time(kube_namespace_labels[%s])`
  43. queryFmtNamespaceAnnotations = `avg_over_time(kube_namespace_annotations[%s])`
  44. queryFmtPodLabels = `avg_over_time(kube_pod_labels[%s])`
  45. queryFmtPodAnnotations = `avg_over_time(kube_pod_annotations[%s])`
  46. queryFmtServiceLabels = `avg_over_time(service_selector_labels[%s])`
  47. queryFmtDeploymentLabels = `avg_over_time(deployment_match_labels[%s])`
  48. queryFmtStatefulSetLabels = `avg_over_time(statefulSet_match_labels[%s])`
  49. queryFmtDaemonSetLabels = `sum(avg_over_time(kube_pod_owner{owner_kind="DaemonSet"}[%s])) by (pod, owner_name, namespace, %s)`
  50. queryFmtJobLabels = `sum(avg_over_time(kube_pod_owner{owner_kind="Job"}[%s])) by (pod, owner_name, namespace ,%s)`
  51. queryFmtPodsWithReplicaSetOwner = `sum(avg_over_time(kube_pod_owner{owner_kind="ReplicaSet"}[%s])) by (pod, owner_name, namespace ,%s)`
  52. queryFmtReplicaSetsWithoutOwners = `avg(avg_over_time(kube_replicaset_owner{owner_kind="<none>", owner_name="<none>"}[%s])) by (replicaset, namespace, %s)`
  53. queryFmtLBCostPerHr = `avg(avg_over_time(kubecost_load_balancer_cost[%s])) by (namespace, service_name, %s)`
  54. queryFmtLBActiveMins = `count(kubecost_load_balancer_cost) by (namespace, service_name, %s)[%s:%s]`
  55. queryFmtOldestSample = `min_over_time(timestamp(group(node_cpu_hourly_cost))[%s:%s])`
  56. queryFmtNewestSample = `max_over_time(timestamp(group(node_cpu_hourly_cost))[%s:%s])`
  57. // Because we use container_cpu_usage_seconds_total to calculate CPU usage
  58. // at any given "instant" of time, we need to use an irate or rate. To then
  59. // calculate a max (or any aggregation) we have to perform an aggregation
  60. // query on top of an instant-by-instant maximum. Prometheus supports this
  61. // type of query with a "subquery" [1], however it is reportedly expensive
  62. // to make such a query. By default, Kubecost's Prometheus config includes
  63. // a recording rule that keeps track of the instant-by-instant irate for CPU
  64. // usage. The metric in this query is created by that recording rule.
  65. //
  66. // [1] https://prometheus.io/blog/2019/01/28/subquery-support/
  67. //
  68. // If changing the name of the recording rule, make sure to update the
  69. // corresponding diagnostic query to avoid confusion.
  70. queryFmtCPUUsageMaxRecordingRule = `max(max_over_time(kubecost_container_cpu_usage_irate{}[%s])) by (container_name, container, pod_name, pod, namespace, instance, %s)`
  71. // This is the subquery equivalent of the above recording rule query. It is
  72. // more expensive, but does not require the recording rule. It should be
  73. // used as a fallback query if the recording rule data does not exist.
  74. //
  75. // The parameter after the colon [:<thisone>] in the subquery affects the
  76. // resolution of the subquery.
  77. // The parameter after the metric ...{}[<thisone>] should be set to 2x
  78. // the resolution, to make sure the irate always has two points to query
  79. // in case the Prom scrape duration has been reduced to be equal to the
  80. // ETL resolution.
  81. queryFmtCPUUsageMaxSubquery = `max(max_over_time(irate(container_cpu_usage_seconds_total{container_name!="POD", container_name!=""}[%s])[%s:%s])) by (container_name, container, pod_name, pod, namespace, instance, %s)`
  82. )
  83. // Constants for Network Cost Subtype
  84. const (
  85. networkCrossZoneCost = "NetworkCrossZoneCost"
  86. networkCrossRegionCost = "NetworkCrossRegionCost"
  87. networkInternetCost = "NetworkInternetCost"
  88. )
  89. // CanCompute should return true if CostModel can act as a valid source for the
  90. // given time range. In the case of CostModel we want to attempt to compute as
  91. // long as the range starts in the past. If the CostModel ends up not having
  92. // data to match, that's okay, and should be communicated with an error
  93. // response from ComputeAllocation.
  94. func (cm *CostModel) CanCompute(start, end time.Time) bool {
  95. return start.Before(time.Now())
  96. }
  97. // Name returns the name of the Source
  98. func (cm *CostModel) Name() string {
  99. return "CostModel"
  100. }
  101. // ComputeAllocation uses the CostModel instance to compute an AllocationSet
  102. // for the window defined by the given start and end times. The Allocations
  103. // returned are unaggregated (i.e. down to the container level).
  104. func (cm *CostModel) ComputeAllocation(start, end time.Time, resolution time.Duration) (*kubecost.AllocationSet, error) {
  105. // If the duration is short enough, compute the AllocationSet directly
  106. if end.Sub(start) <= cm.MaxPrometheusQueryDuration {
  107. return cm.computeAllocation(start, end, resolution)
  108. }
  109. // If the duration exceeds the configured MaxPrometheusQueryDuration, then
  110. // query for maximum-sized AllocationSets, collect them, and accumulate.
  111. // s and e track the coverage of the entire given window over multiple
  112. // internal queries.
  113. s, e := start, start
  114. // Collect AllocationSets in a range, then accumulate
  115. // TODO optimize by collecting consecutive AllocationSets, accumulating as we go
  116. asr := kubecost.NewAllocationSetRange()
  117. for e.Before(end) {
  118. // By default, query for the full remaining duration. But do not let
  119. // any individual query duration exceed the configured max Prometheus
  120. // query duration.
  121. duration := end.Sub(e)
  122. if duration > cm.MaxPrometheusQueryDuration {
  123. duration = cm.MaxPrometheusQueryDuration
  124. }
  125. // Set start and end parameters (s, e) for next individual computation.
  126. e = s.Add(duration)
  127. // Compute the individual AllocationSet for just (s, e)
  128. as, err := cm.computeAllocation(s, e, resolution)
  129. if err != nil {
  130. return kubecost.NewAllocationSet(start, end), fmt.Errorf("error computing allocation for %s: %s", kubecost.NewClosedWindow(s, e), err)
  131. }
  132. // Append to the range
  133. asr.Append(as)
  134. // Set s equal to e to set up the next query, if one exists.
  135. s = e
  136. }
  137. // Populate annotations, labels, and services on each Allocation. This is
  138. // necessary because Properties.Intersection does not propagate any values
  139. // stored in maps or slices for performance reasons. In this case, however,
  140. // it is both acceptable and necessary to do so.
  141. allocationAnnotations := map[string]map[string]string{}
  142. allocationLabels := map[string]map[string]string{}
  143. allocationServices := map[string]map[string]bool{}
  144. // Also record errors and warnings, then append them to the results later.
  145. errors := []string{}
  146. warnings := []string{}
  147. for _, as := range asr.Allocations {
  148. for k, a := range as.Allocations {
  149. if len(a.Properties.Annotations) > 0 {
  150. if _, ok := allocationAnnotations[k]; !ok {
  151. allocationAnnotations[k] = map[string]string{}
  152. }
  153. for name, val := range a.Properties.Annotations {
  154. allocationAnnotations[k][name] = val
  155. }
  156. }
  157. if len(a.Properties.Labels) > 0 {
  158. if _, ok := allocationLabels[k]; !ok {
  159. allocationLabels[k] = map[string]string{}
  160. }
  161. for name, val := range a.Properties.Labels {
  162. allocationLabels[k][name] = val
  163. }
  164. }
  165. if len(a.Properties.Services) > 0 {
  166. if _, ok := allocationServices[k]; !ok {
  167. allocationServices[k] = map[string]bool{}
  168. }
  169. for _, val := range a.Properties.Services {
  170. allocationServices[k][val] = true
  171. }
  172. }
  173. }
  174. errors = append(errors, as.Errors...)
  175. warnings = append(warnings, as.Warnings...)
  176. }
  177. // Accumulate to yield the result AllocationSet. After this step, we will
  178. // be nearly complete, but without the raw allocation data, which must be
  179. // recomputed.
  180. resultASR, err := asr.Accumulate(kubecost.AccumulateOptionAll)
  181. if err != nil {
  182. return kubecost.NewAllocationSet(start, end), fmt.Errorf("error accumulating data for %s: %s", kubecost.NewClosedWindow(s, e), err)
  183. }
  184. if resultASR != nil && len(resultASR.Allocations) == 0 {
  185. return kubecost.NewAllocationSet(start, end), nil
  186. }
  187. if length := len(resultASR.Allocations); length != 1 {
  188. return kubecost.NewAllocationSet(start, end), fmt.Errorf("expected 1 accumulated allocation set, found %d sets", length)
  189. }
  190. result := resultASR.Allocations[0]
  191. // Apply the annotations, labels, and services to the post-accumulation
  192. // results. (See above for why this is necessary.)
  193. for k, a := range result.Allocations {
  194. if annotations, ok := allocationAnnotations[k]; ok {
  195. a.Properties.Annotations = annotations
  196. }
  197. if labels, ok := allocationLabels[k]; ok {
  198. a.Properties.Labels = labels
  199. }
  200. if services, ok := allocationServices[k]; ok {
  201. a.Properties.Services = []string{}
  202. for s := range services {
  203. a.Properties.Services = append(a.Properties.Services, s)
  204. }
  205. }
  206. // Expand the Window of all Allocations within the AllocationSet
  207. // to match the Window of the AllocationSet, which gets expanded
  208. // at the end of this function.
  209. a.Window = a.Window.ExpandStart(start).ExpandEnd(end)
  210. }
  211. // Maintain RAM and CPU max usage values by iterating over the range,
  212. // computing maximums on a rolling basis, and setting on the result set.
  213. for _, as := range asr.Allocations {
  214. for key, alloc := range as.Allocations {
  215. resultAlloc := result.Get(key)
  216. if resultAlloc == nil {
  217. continue
  218. }
  219. if resultAlloc.RawAllocationOnly == nil {
  220. resultAlloc.RawAllocationOnly = &kubecost.RawAllocationOnlyData{}
  221. }
  222. if alloc.RawAllocationOnly == nil {
  223. // This will happen inevitably for unmounted disks, but should
  224. // ideally not happen for any allocation with CPU and RAM data.
  225. if !alloc.IsUnmounted() {
  226. log.DedupedWarningf(10, "ComputeAllocation: raw allocation data missing for %s", key)
  227. }
  228. continue
  229. }
  230. if alloc.RawAllocationOnly.CPUCoreUsageMax > resultAlloc.RawAllocationOnly.CPUCoreUsageMax {
  231. resultAlloc.RawAllocationOnly.CPUCoreUsageMax = alloc.RawAllocationOnly.CPUCoreUsageMax
  232. }
  233. if alloc.RawAllocationOnly.RAMBytesUsageMax > resultAlloc.RawAllocationOnly.RAMBytesUsageMax {
  234. resultAlloc.RawAllocationOnly.RAMBytesUsageMax = alloc.RawAllocationOnly.RAMBytesUsageMax
  235. }
  236. }
  237. }
  238. // Expand the window to match the queried time range.
  239. result.Window = result.Window.ExpandStart(start).ExpandEnd(end)
  240. // Append errors and warnings
  241. result.Errors = errors
  242. result.Warnings = warnings
  243. return result, nil
  244. }
  245. // DateRange checks the data (up to 90 days in the past), and returns the oldest and newest sample timestamp from opencost scraping metric
  246. // it supposed to be a good indicator of available allocation data
  247. func (cm *CostModel) DateRange() (time.Time, time.Time, error) {
  248. ctx := prom.NewNamedContext(cm.PrometheusClient, prom.AllocationContextName)
  249. resOldest, _, err := ctx.QuerySync(fmt.Sprintf(queryFmtOldestSample, "90d", "1h"))
  250. if err != nil {
  251. return time.Time{}, time.Time{}, fmt.Errorf("querying oldest sample: %w", err)
  252. }
  253. oldest := time.Unix(int64(resOldest[0].Values[0].Value), 0)
  254. resNewest, _, err := ctx.QuerySync(fmt.Sprintf(queryFmtNewestSample, "90d", "1h"))
  255. if err != nil {
  256. return time.Time{}, time.Time{}, fmt.Errorf("querying oldest sample: %w", err)
  257. }
  258. newest := time.Unix(int64(resNewest[0].Values[0].Value), 0)
  259. return oldest, newest, nil
  260. }
  261. func (cm *CostModel) computeAllocation(start, end time.Time, resolution time.Duration) (*kubecost.AllocationSet, error) {
  262. // 1. Build out Pod map from resolution-tuned, batched Pod start/end query
  263. // 2. Run and apply the results of the remaining queries to
  264. // 3. Build out AllocationSet from completed Pod map
  265. // Create a window spanning the requested query
  266. window := kubecost.NewWindow(&start, &end)
  267. // Create an empty AllocationSet. For safety, in the case of an error, we
  268. // should prefer to return this empty set with the error. (In the case of
  269. // no error, of course we populate the set and return it.)
  270. allocSet := kubecost.NewAllocationSet(start, end)
  271. // (1) Build out Pod map
  272. // Build out a map of Allocations as a mapping from pod-to-container-to-
  273. // underlying-Allocation instance, starting with (start, end) so that we
  274. // begin with minutes, from which we compute resource allocation and cost
  275. // totals from measured rate data.
  276. podMap := map[podKey]*pod{}
  277. // clusterStarts and clusterEnds record the earliest start and latest end
  278. // times, respectively, on a cluster-basis. These are used for unmounted
  279. // PVs and other "virtual" Allocations so that minutes are maximally
  280. // accurate during start-up or spin-down of a cluster
  281. clusterStart := map[string]time.Time{}
  282. clusterEnd := map[string]time.Time{}
  283. // If ingesting pod UID, we query kube_pod_container_status_running avg
  284. // by uid as well as the default values, and all podKeys/pods have their
  285. // names changed to "<pod_name> <pod_uid>". Because other metrics need
  286. // to generate keys to match pods but don't have UIDs, podUIDKeyMap
  287. // stores values of format:
  288. // default podKey : []{edited podkey 1, edited podkey 2}
  289. // This is because ingesting UID allows us to catch uncontrolled pods
  290. // with the same names. However, this will lead to a many-to-one metric
  291. // to podKey relation, so this map allows us to map the metric's
  292. // "<pod_name>" key to the edited "<pod_name> <pod_uid>" keys in podMap.
  293. ingestPodUID := env.IsIngestingPodUID()
  294. podUIDKeyMap := make(map[podKey][]podKey)
  295. if ingestPodUID {
  296. log.Debugf("CostModel.ComputeAllocation: ingesting UID data from KSM metrics...")
  297. }
  298. // TODO:CLEANUP remove "max batch" idea and clusterStart/End
  299. err := cm.buildPodMap(window, resolution, env.GetETLMaxPrometheusQueryDuration(), podMap, clusterStart, clusterEnd, ingestPodUID, podUIDKeyMap)
  300. if err != nil {
  301. log.Errorf("CostModel.ComputeAllocation: failed to build pod map: %s", err.Error())
  302. }
  303. // (2) Run and apply remaining queries
  304. // Query for the duration between start and end
  305. durStr := timeutil.DurationString(end.Sub(start))
  306. if durStr == "" {
  307. return allocSet, fmt.Errorf("illegal duration value for %s", kubecost.NewClosedWindow(start, end))
  308. }
  309. // Convert resolution duration to a query-ready string
  310. resStr := timeutil.DurationString(resolution)
  311. ctx := prom.NewNamedContext(cm.PrometheusClient, prom.AllocationContextName)
  312. queryRAMBytesAllocated := fmt.Sprintf(queryFmtRAMBytesAllocated, durStr, env.GetPromClusterLabel())
  313. resChRAMBytesAllocated := ctx.QueryAtTime(queryRAMBytesAllocated, end)
  314. queryRAMRequests := fmt.Sprintf(queryFmtRAMRequests, durStr, env.GetPromClusterLabel())
  315. resChRAMRequests := ctx.QueryAtTime(queryRAMRequests, end)
  316. queryRAMUsageAvg := fmt.Sprintf(queryFmtRAMUsageAvg, durStr, env.GetPromClusterLabel())
  317. resChRAMUsageAvg := ctx.QueryAtTime(queryRAMUsageAvg, end)
  318. queryRAMUsageMax := fmt.Sprintf(queryFmtRAMUsageMax, durStr, env.GetPromClusterLabel())
  319. resChRAMUsageMax := ctx.QueryAtTime(queryRAMUsageMax, end)
  320. queryCPUCoresAllocated := fmt.Sprintf(queryFmtCPUCoresAllocated, durStr, env.GetPromClusterLabel())
  321. resChCPUCoresAllocated := ctx.QueryAtTime(queryCPUCoresAllocated, end)
  322. queryCPURequests := fmt.Sprintf(queryFmtCPURequests, durStr, env.GetPromClusterLabel())
  323. resChCPURequests := ctx.QueryAtTime(queryCPURequests, end)
  324. queryCPUUsageAvg := fmt.Sprintf(queryFmtCPUUsageAvg, durStr, env.GetPromClusterLabel())
  325. resChCPUUsageAvg := ctx.QueryAtTime(queryCPUUsageAvg, end)
  326. queryCPUUsageMax := fmt.Sprintf(queryFmtCPUUsageMaxRecordingRule, durStr, env.GetPromClusterLabel())
  327. resChCPUUsageMax := ctx.QueryAtTime(queryCPUUsageMax, end)
  328. resCPUUsageMax, _ := resChCPUUsageMax.Await()
  329. // If the recording rule has no data, try to fall back to the subquery.
  330. if len(resCPUUsageMax) == 0 {
  331. // The parameter after the metric ...{}[<thisone>] should be set to 2x
  332. // the resolution, to make sure the irate always has two points to query
  333. // in case the Prom scrape duration has been reduced to be equal to the
  334. // resolution.
  335. doubleResStr := timeutil.DurationString(2 * resolution)
  336. queryCPUUsageMax = fmt.Sprintf(queryFmtCPUUsageMaxSubquery, doubleResStr, durStr, resStr, env.GetPromClusterLabel())
  337. resChCPUUsageMax = ctx.QueryAtTime(queryCPUUsageMax, end)
  338. resCPUUsageMax, _ = resChCPUUsageMax.Await()
  339. // This avoids logspam if there is no data for either metric (e.g. if
  340. // the Prometheus didn't exist in the queried window of time).
  341. if len(resCPUUsageMax) > 0 {
  342. log.Debugf("CPU usage recording rule query returned an empty result when queried at %s over %s. Fell back to subquery. Consider setting up Kubecost CPU usage recording role to reduce query load on Prometheus; subqueries are expensive.", end.String(), durStr)
  343. }
  344. }
  345. queryGPUsRequested := fmt.Sprintf(queryFmtGPUsRequested, durStr, env.GetPromClusterLabel())
  346. resChGPUsRequested := ctx.QueryAtTime(queryGPUsRequested, end)
  347. queryGPUsAllocated := fmt.Sprintf(queryFmtGPUsAllocated, durStr, env.GetPromClusterLabel())
  348. resChGPUsAllocated := ctx.QueryAtTime(queryGPUsAllocated, end)
  349. queryNodeCostPerCPUHr := fmt.Sprintf(queryFmtNodeCostPerCPUHr, durStr, env.GetPromClusterLabel())
  350. resChNodeCostPerCPUHr := ctx.QueryAtTime(queryNodeCostPerCPUHr, end)
  351. queryNodeCostPerRAMGiBHr := fmt.Sprintf(queryFmtNodeCostPerRAMGiBHr, durStr, env.GetPromClusterLabel())
  352. resChNodeCostPerRAMGiBHr := ctx.QueryAtTime(queryNodeCostPerRAMGiBHr, end)
  353. queryNodeCostPerGPUHr := fmt.Sprintf(queryFmtNodeCostPerGPUHr, durStr, env.GetPromClusterLabel())
  354. resChNodeCostPerGPUHr := ctx.QueryAtTime(queryNodeCostPerGPUHr, end)
  355. queryNodeIsSpot := fmt.Sprintf(queryFmtNodeIsSpot, durStr)
  356. resChNodeIsSpot := ctx.QueryAtTime(queryNodeIsSpot, end)
  357. queryPVCInfo := fmt.Sprintf(queryFmtPVCInfo, env.GetPromClusterLabel(), durStr, resStr)
  358. resChPVCInfo := ctx.QueryAtTime(queryPVCInfo, end)
  359. queryPodPVCAllocation := fmt.Sprintf(queryFmtPodPVCAllocation, durStr, env.GetPromClusterLabel())
  360. resChPodPVCAllocation := ctx.QueryAtTime(queryPodPVCAllocation, end)
  361. queryPVCBytesRequested := fmt.Sprintf(queryFmtPVCBytesRequested, durStr, env.GetPromClusterLabel())
  362. resChPVCBytesRequested := ctx.QueryAtTime(queryPVCBytesRequested, end)
  363. queryPVActiveMins := fmt.Sprintf(queryFmtPVActiveMins, env.GetPromClusterLabel(), durStr, resStr)
  364. resChPVActiveMins := ctx.QueryAtTime(queryPVActiveMins, end)
  365. queryPVBytes := fmt.Sprintf(queryFmtPVBytes, durStr, env.GetPromClusterLabel())
  366. resChPVBytes := ctx.QueryAtTime(queryPVBytes, end)
  367. queryPVCostPerGiBHour := fmt.Sprintf(queryFmtPVCostPerGiBHour, durStr, env.GetPromClusterLabel())
  368. resChPVCostPerGiBHour := ctx.QueryAtTime(queryPVCostPerGiBHour, end)
  369. queryNetTransferBytes := fmt.Sprintf(queryFmtNetTransferBytes, durStr, env.GetPromClusterLabel())
  370. resChNetTransferBytes := ctx.QueryAtTime(queryNetTransferBytes, end)
  371. queryNetReceiveBytes := fmt.Sprintf(queryFmtNetReceiveBytes, durStr, env.GetPromClusterLabel())
  372. resChNetReceiveBytes := ctx.QueryAtTime(queryNetReceiveBytes, end)
  373. queryNetZoneGiB := fmt.Sprintf(queryFmtNetZoneGiB, durStr, env.GetPromClusterLabel())
  374. resChNetZoneGiB := ctx.QueryAtTime(queryNetZoneGiB, end)
  375. queryNetZoneCostPerGiB := fmt.Sprintf(queryFmtNetZoneCostPerGiB, durStr, env.GetPromClusterLabel())
  376. resChNetZoneCostPerGiB := ctx.QueryAtTime(queryNetZoneCostPerGiB, end)
  377. queryNetRegionGiB := fmt.Sprintf(queryFmtNetRegionGiB, durStr, env.GetPromClusterLabel())
  378. resChNetRegionGiB := ctx.QueryAtTime(queryNetRegionGiB, end)
  379. queryNetRegionCostPerGiB := fmt.Sprintf(queryFmtNetRegionCostPerGiB, durStr, env.GetPromClusterLabel())
  380. resChNetRegionCostPerGiB := ctx.QueryAtTime(queryNetRegionCostPerGiB, end)
  381. queryNetInternetGiB := fmt.Sprintf(queryFmtNetInternetGiB, durStr, env.GetPromClusterLabel())
  382. resChNetInternetGiB := ctx.QueryAtTime(queryNetInternetGiB, end)
  383. queryNetInternetCostPerGiB := fmt.Sprintf(queryFmtNetInternetCostPerGiB, durStr, env.GetPromClusterLabel())
  384. resChNetInternetCostPerGiB := ctx.QueryAtTime(queryNetInternetCostPerGiB, end)
  385. var resChNodeLabels prom.QueryResultsChan
  386. if env.GetAllocationNodeLabelsEnabled() {
  387. queryNodeLabels := fmt.Sprintf(queryFmtNodeLabels, durStr)
  388. resChNodeLabels = ctx.QueryAtTime(queryNodeLabels, end)
  389. }
  390. queryNamespaceLabels := fmt.Sprintf(queryFmtNamespaceLabels, durStr)
  391. resChNamespaceLabels := ctx.QueryAtTime(queryNamespaceLabels, end)
  392. queryNamespaceAnnotations := fmt.Sprintf(queryFmtNamespaceAnnotations, durStr)
  393. resChNamespaceAnnotations := ctx.QueryAtTime(queryNamespaceAnnotations, end)
  394. queryPodLabels := fmt.Sprintf(queryFmtPodLabels, durStr)
  395. resChPodLabels := ctx.QueryAtTime(queryPodLabels, end)
  396. queryPodAnnotations := fmt.Sprintf(queryFmtPodAnnotations, durStr)
  397. resChPodAnnotations := ctx.QueryAtTime(queryPodAnnotations, end)
  398. queryServiceLabels := fmt.Sprintf(queryFmtServiceLabels, durStr)
  399. resChServiceLabels := ctx.QueryAtTime(queryServiceLabels, end)
  400. queryDeploymentLabels := fmt.Sprintf(queryFmtDeploymentLabels, durStr)
  401. resChDeploymentLabels := ctx.QueryAtTime(queryDeploymentLabels, end)
  402. queryStatefulSetLabels := fmt.Sprintf(queryFmtStatefulSetLabels, durStr)
  403. resChStatefulSetLabels := ctx.QueryAtTime(queryStatefulSetLabels, end)
  404. queryDaemonSetLabels := fmt.Sprintf(queryFmtDaemonSetLabels, durStr, env.GetPromClusterLabel())
  405. resChDaemonSetLabels := ctx.QueryAtTime(queryDaemonSetLabels, end)
  406. queryPodsWithReplicaSetOwner := fmt.Sprintf(queryFmtPodsWithReplicaSetOwner, durStr, env.GetPromClusterLabel())
  407. resChPodsWithReplicaSetOwner := ctx.QueryAtTime(queryPodsWithReplicaSetOwner, end)
  408. queryReplicaSetsWithoutOwners := fmt.Sprintf(queryFmtReplicaSetsWithoutOwners, durStr, env.GetPromClusterLabel())
  409. resChReplicaSetsWithoutOwners := ctx.QueryAtTime(queryReplicaSetsWithoutOwners, end)
  410. queryJobLabels := fmt.Sprintf(queryFmtJobLabels, durStr, env.GetPromClusterLabel())
  411. resChJobLabels := ctx.QueryAtTime(queryJobLabels, end)
  412. queryLBCostPerHr := fmt.Sprintf(queryFmtLBCostPerHr, durStr, env.GetPromClusterLabel())
  413. resChLBCostPerHr := ctx.QueryAtTime(queryLBCostPerHr, end)
  414. queryLBActiveMins := fmt.Sprintf(queryFmtLBActiveMins, env.GetPromClusterLabel(), durStr, resStr)
  415. resChLBActiveMins := ctx.QueryAtTime(queryLBActiveMins, end)
  416. resCPUCoresAllocated, _ := resChCPUCoresAllocated.Await()
  417. resCPURequests, _ := resChCPURequests.Await()
  418. resCPUUsageAvg, _ := resChCPUUsageAvg.Await()
  419. resRAMBytesAllocated, _ := resChRAMBytesAllocated.Await()
  420. resRAMRequests, _ := resChRAMRequests.Await()
  421. resRAMUsageAvg, _ := resChRAMUsageAvg.Await()
  422. resRAMUsageMax, _ := resChRAMUsageMax.Await()
  423. resGPUsRequested, _ := resChGPUsRequested.Await()
  424. resGPUsAllocated, _ := resChGPUsAllocated.Await()
  425. resNodeCostPerCPUHr, _ := resChNodeCostPerCPUHr.Await()
  426. resNodeCostPerRAMGiBHr, _ := resChNodeCostPerRAMGiBHr.Await()
  427. resNodeCostPerGPUHr, _ := resChNodeCostPerGPUHr.Await()
  428. resNodeIsSpot, _ := resChNodeIsSpot.Await()
  429. resPVActiveMins, _ := resChPVActiveMins.Await()
  430. resPVBytes, _ := resChPVBytes.Await()
  431. resPVCostPerGiBHour, _ := resChPVCostPerGiBHour.Await()
  432. resPVCInfo, _ := resChPVCInfo.Await()
  433. resPVCBytesRequested, _ := resChPVCBytesRequested.Await()
  434. resPodPVCAllocation, _ := resChPodPVCAllocation.Await()
  435. resNetTransferBytes, _ := resChNetTransferBytes.Await()
  436. resNetReceiveBytes, _ := resChNetReceiveBytes.Await()
  437. resNetZoneGiB, _ := resChNetZoneGiB.Await()
  438. resNetZoneCostPerGiB, _ := resChNetZoneCostPerGiB.Await()
  439. resNetRegionGiB, _ := resChNetRegionGiB.Await()
  440. resNetRegionCostPerGiB, _ := resChNetRegionCostPerGiB.Await()
  441. resNetInternetGiB, _ := resChNetInternetGiB.Await()
  442. resNetInternetCostPerGiB, _ := resChNetInternetCostPerGiB.Await()
  443. var resNodeLabels []*prom.QueryResult
  444. if env.GetAllocationNodeLabelsEnabled() {
  445. if env.GetAllocationNodeLabelsEnabled() {
  446. resNodeLabels, _ = resChNodeLabels.Await()
  447. }
  448. }
  449. resNamespaceLabels, _ := resChNamespaceLabels.Await()
  450. resNamespaceAnnotations, _ := resChNamespaceAnnotations.Await()
  451. resPodLabels, _ := resChPodLabels.Await()
  452. resPodAnnotations, _ := resChPodAnnotations.Await()
  453. resServiceLabels, _ := resChServiceLabels.Await()
  454. resDeploymentLabels, _ := resChDeploymentLabels.Await()
  455. resStatefulSetLabels, _ := resChStatefulSetLabels.Await()
  456. resDaemonSetLabels, _ := resChDaemonSetLabels.Await()
  457. resPodsWithReplicaSetOwner, _ := resChPodsWithReplicaSetOwner.Await()
  458. resReplicaSetsWithoutOwners, _ := resChReplicaSetsWithoutOwners.Await()
  459. resJobLabels, _ := resChJobLabels.Await()
  460. resLBCostPerHr, _ := resChLBCostPerHr.Await()
  461. resLBActiveMins, _ := resChLBActiveMins.Await()
  462. if ctx.HasErrors() {
  463. for _, err := range ctx.Errors() {
  464. log.Errorf("CostModel.ComputeAllocation: query context error %s", err)
  465. }
  466. return allocSet, ctx.ErrorCollection()
  467. }
  468. // We choose to apply allocation before requests in the cases of RAM and
  469. // CPU so that we can assert that allocation should always be greater than
  470. // or equal to request.
  471. applyCPUCoresAllocated(podMap, resCPUCoresAllocated, podUIDKeyMap)
  472. applyCPUCoresRequested(podMap, resCPURequests, podUIDKeyMap)
  473. applyCPUCoresUsedAvg(podMap, resCPUUsageAvg, podUIDKeyMap)
  474. applyCPUCoresUsedMax(podMap, resCPUUsageMax, podUIDKeyMap)
  475. applyRAMBytesAllocated(podMap, resRAMBytesAllocated, podUIDKeyMap)
  476. applyRAMBytesRequested(podMap, resRAMRequests, podUIDKeyMap)
  477. applyRAMBytesUsedAvg(podMap, resRAMUsageAvg, podUIDKeyMap)
  478. applyRAMBytesUsedMax(podMap, resRAMUsageMax, podUIDKeyMap)
  479. applyGPUsAllocated(podMap, resGPUsRequested, resGPUsAllocated, podUIDKeyMap)
  480. applyNetworkTotals(podMap, resNetTransferBytes, resNetReceiveBytes, podUIDKeyMap)
  481. applyNetworkAllocation(podMap, resNetZoneGiB, resNetZoneCostPerGiB, podUIDKeyMap, networkCrossZoneCost)
  482. applyNetworkAllocation(podMap, resNetRegionGiB, resNetRegionCostPerGiB, podUIDKeyMap, networkCrossRegionCost)
  483. applyNetworkAllocation(podMap, resNetInternetGiB, resNetInternetCostPerGiB, podUIDKeyMap, networkInternetCost)
  484. // In the case that a two pods with the same name had different containers,
  485. // we will double-count the containers. There is no way to associate each
  486. // container with the proper pod from the usage metrics above. This will
  487. // show up as a pod having two Allocations running for the whole pod runtime.
  488. // Other than that case, Allocations should be associated with pods by the
  489. // above functions.
  490. // At this point, we expect "Node" to be set by one of the above functions
  491. // (e.g. applyCPUCoresAllocated, etc.) -- otherwise, node labels will fail
  492. // to correctly apply to the pods.
  493. var nodeLabels map[nodeKey]map[string]string
  494. if env.GetAllocationNodeLabelsEnabled() {
  495. nodeLabels = resToNodeLabels(resNodeLabels)
  496. }
  497. namespaceLabels := resToNamespaceLabels(resNamespaceLabels)
  498. podLabels := resToPodLabels(resPodLabels, podUIDKeyMap, ingestPodUID)
  499. namespaceAnnotations := resToNamespaceAnnotations(resNamespaceAnnotations)
  500. podAnnotations := resToPodAnnotations(resPodAnnotations, podUIDKeyMap, ingestPodUID)
  501. applyLabels(podMap, nodeLabels, namespaceLabels, podLabels)
  502. applyAnnotations(podMap, namespaceAnnotations, podAnnotations)
  503. podDeploymentMap := labelsToPodControllerMap(podLabels, resToDeploymentLabels(resDeploymentLabels))
  504. podStatefulSetMap := labelsToPodControllerMap(podLabels, resToStatefulSetLabels(resStatefulSetLabels))
  505. podDaemonSetMap := resToPodDaemonSetMap(resDaemonSetLabels, podUIDKeyMap, ingestPodUID)
  506. podJobMap := resToPodJobMap(resJobLabels, podUIDKeyMap, ingestPodUID)
  507. podReplicaSetMap := resToPodReplicaSetMap(resPodsWithReplicaSetOwner, resReplicaSetsWithoutOwners, podUIDKeyMap, ingestPodUID)
  508. applyControllersToPods(podMap, podDeploymentMap)
  509. applyControllersToPods(podMap, podStatefulSetMap)
  510. applyControllersToPods(podMap, podDaemonSetMap)
  511. applyControllersToPods(podMap, podJobMap)
  512. applyControllersToPods(podMap, podReplicaSetMap)
  513. serviceLabels := getServiceLabels(resServiceLabels)
  514. allocsByService := map[serviceKey][]*kubecost.Allocation{}
  515. applyServicesToPods(podMap, podLabels, allocsByService, serviceLabels)
  516. // TODO breakdown network costs?
  517. // Build out the map of all PVs with class, size and cost-per-hour.
  518. // Note: this does not record time running, which we may want to
  519. // include later for increased PV precision. (As long as the PV has
  520. // a PVC, we get time running there, so this is only inaccurate
  521. // for short-lived, unmounted PVs.)
  522. pvMap := map[pvKey]*pv{}
  523. buildPVMap(resolution, pvMap, resPVCostPerGiBHour, resPVActiveMins)
  524. applyPVBytes(pvMap, resPVBytes)
  525. // Build out the map of all PVCs with time running, bytes requested,
  526. // and connect to the correct PV from pvMap. (If no PV exists, that
  527. // is noted, but does not result in any allocation/cost.)
  528. pvcMap := map[pvcKey]*pvc{}
  529. buildPVCMap(resolution, pvcMap, pvMap, resPVCInfo)
  530. applyPVCBytesRequested(pvcMap, resPVCBytesRequested)
  531. // Build out the relationships of pods to their PVCs. This step
  532. // populates the pvc.Count field so that pvc allocation can be
  533. // split appropriately among each pod's container allocation.
  534. podPVCMap := map[podKey][]*pvc{}
  535. buildPodPVCMap(podPVCMap, pvMap, pvcMap, podMap, resPodPVCAllocation, podUIDKeyMap, ingestPodUID)
  536. applyPVCsToPods(window, podMap, podPVCMap, pvcMap)
  537. // Identify PVCs without pods and add pv costs to the unmounted Allocation for the pvc's cluster
  538. applyUnmountedPVCs(window, podMap, pvcMap)
  539. // Identify PVs without PVCs and add PV costs to the unmounted Allocation for the PV's cluster
  540. applyUnmountedPVs(window, podMap, pvMap, pvcMap)
  541. lbMap := make(map[serviceKey]*lbCost)
  542. getLoadBalancerCosts(lbMap, resLBCostPerHr, resLBActiveMins, resolution)
  543. applyLoadBalancersToPods(window, podMap, lbMap, allocsByService)
  544. // Build out a map of Nodes with resource costs, discounts, and node types
  545. // for converting resource allocation data to cumulative costs.
  546. nodeMap := map[nodeKey]*nodePricing{}
  547. applyNodeCostPerCPUHr(nodeMap, resNodeCostPerCPUHr)
  548. applyNodeCostPerRAMGiBHr(nodeMap, resNodeCostPerRAMGiBHr)
  549. applyNodeCostPerGPUHr(nodeMap, resNodeCostPerGPUHr)
  550. applyNodeSpot(nodeMap, resNodeIsSpot)
  551. applyNodeDiscount(nodeMap, cm)
  552. cm.applyNodesToPod(podMap, nodeMap)
  553. // (3) Build out AllocationSet from Pod map
  554. for _, pod := range podMap {
  555. for _, alloc := range pod.Allocations {
  556. cluster := alloc.Properties.Cluster
  557. nodeName := alloc.Properties.Node
  558. namespace := alloc.Properties.Namespace
  559. podName := alloc.Properties.Pod
  560. container := alloc.Properties.Container
  561. // Make sure that the name is correct (node may not be present at this
  562. // point due to it missing from queryMinutes) then insert.
  563. alloc.Name = fmt.Sprintf("%s/%s/%s/%s/%s", cluster, nodeName, namespace, podName, container)
  564. allocSet.Set(alloc)
  565. }
  566. }
  567. return allocSet, nil
  568. }