File Handler fork of Resource Consumer
/handler?cmd=<anyapp>/<anycmd>/type/ConsumeCPU/block/1/..
/handler?cmd=<anyapp>/<anycmd>/type/ConsumeMem/..
for example
curl -X POST 172.17.0.4:9100/handler?cmd=a/b/type/ConsumeCPU/millicores/800/durationSec/600/block/1
Resource Consumer is a tool which allows to generate cpu/memory utilization in a container. The reason why it was created is testing kubernetes autoscaling. Resource Consumer can help with autoscaling tests for:
- cluster size autoscaling,
- horizontal autoscaling of pod - changing the size of replication controller,
- vertical autoscaling of pod - changing its resource limits.
Resource Consumer starts an HTTP server and handle sent requests. It listens on port given as a flag (default 8080). Action of consuming resources is send to the container by a POST http request. Each http request creates new process. Http request handler is in file resource_consumer_handler.go
The container consumes specified amount of resources:
- CPU in millicores,
- Memory in megabytes,
- Fake custom metrics.
- suffix "ConsumeCPU",
- parameters "millicores" and "durationSec".
Consumes specified amount of millicores for durationSec seconds. Consume CPU uses "./consume-cpu/consume-cpu" binary (file consume-cpu/consume_cpu.go). When CPU consumption is too low this binary uses cpu by calculating math.sqrt(0) 10^7 times and if consumption is too high binary sleeps for 10 millisecond. One replica of Resource Consumer cannot consume more that 1 cpu.
- suffix "ConsumeMem",
- parameters "megabytes" and "durationSec".
Consumes specified amount of megabytes for durationSec seconds. Consume Memory uses stress tool (stress -m 1 --vm-bytes megabytes --vm-hang 0 -t durationSec). Request leading to consuming more memory then container limit will be ignored.
- suffix "BumpMetric",
- parameters "metric", "delta" and "durationSec".
Bumps metric with given name by delta for durationSec seconds. Custom metrics in Prometheus format are exposed on "/metrics" endpoint.
kubectl run resource-consumer --image=gcr.io/k8s-staging-e2e-test-images/resource-consumer:1.9 --expose --service-overrides='{ "spec": { "type": "LoadBalancer" } }' --port 8080 --requests='cpu=500m,memory=256Mi'
kubectl get services resource-consumer
There are two IPs. The first one is internal, while the second one is the external load-balanced IP. Both serve port 8080. (Use second one)
curl --data "millicores=300&durationSec=600" http://<EXTERNAL-IP>:8080/ConsumeCPU
300 millicores will be consumed for 600 seconds.
Docker image of Resource Consumer can be found in Google Container Registry as gcr.io/k8s-staging-e2e-test-images/resource-consumer:1.9
- Consume more resources on each node that is specified for autoscaler
- Observe that cluster size increased
- Create consuming RC and start consuming appropriate amount of resources
- Observe that RC has been resized
- Observe that usage on each replica decreased
- Create consuming pod and start consuming appropriate amount of resources
- Observed that limits has been increased