Kubernetes 1.28: Node podresources API Graduates to GA
The podresources API is an API served by the kubelet locally on the node, which exposes the compute resources exclusively allocated to containers. With the release of Kubernetes 1.28, that API is now Generally Available.
What problem does it solve?
The kubelet can allocate exclusive resources to containers, like CPUs, granting exclusive access to full cores or memory, either regions or hugepages. Workloads which require high performance, or low latency (or both) leverage these features. The kubelet also can assign devices to containers. Collectively, these features which enable exclusive assignments are known as "resource managers".
Without an API like podresources, the only possible option to learn about resource assignment was to read the state files the resource managers use. While done out of necessity, the problem with this approach is the path and the format of these file are both internal implementation details. Albeit very stable, the project reserves the right to change them freely. Consuming the content of the state files is thus fragile and unsupported, and projects doing this are recommended to consider moving to podresources API or to other supported APIs.
Overview of the API
The podresources API was initially proposed to enable device monitoring.
In order to enable monitoring agents, a key prerequisite is to enable introspection of device assignment, which is performed by the kubelet.
Serving this purpose was the initial goal of the API. The first iteration of the API only had a single function implemented, List
,
to return information about the assignment of devices to containers.
The API is used by multus CNI and by
GPU monitoring tools.
Since its inception, the podresources API increased its scope to cover other resource managers than device manager.
Starting from Kubernetes 1.20, the List
API reports also CPU cores and memory regions (including hugepages); the API also
reports the NUMA locality of the devices, while the locality of CPUs and memory can be inferred from the system.
In Kubernetes 1.21, the API gained
the GetAllocatableResources
function.
This newer API complements the existing List
API and enables monitoring agents to determine the unallocated resources,
thus enabling new features built on top of the podresources API like a
NUMA-aware scheduler plugin.
Finally, in Kubernetes 1.27, another function, Get
was introduced to be more friendly with CNI meta-plugins, to make it simpler to access resources
allocated to a specific pod, rather than having to filter through resources for all pods on the node. The Get
function is currently alpha level.
Consuming the API
The podresources API is served by the kubelet locally, on the same node on which is running.
On unix flavors, the endpoint is served over a unix domain socket; the default path is /var/lib/kubelet/pod-resources/kubelet.sock
.
On windows, the endpoint is served over a named pipe; the default path is npipe://\\.\pipe\kubelet-pod-resources
.
In order for the containerized monitoring application consume the API, the socket should be mounted inside the container. A good practice is to mount the directory on which the podresources socket endpoint sits rather than the socket directly. This will ensure that after a kubelet restart, the containerized monitor application will be able to re-connect to the socket.
An example manifest for a hypothetical monitoring agent consuming the podresources API and deployed as a DaemonSet could look like:
apiVersion: apps/v1
kind: DaemonSet
metadata:
name: podresources-monitoring-app
namespace: monitoring
spec:
selector:
matchLabels:
name: podresources-monitoring
template:
metadata:
labels:
name: podresources-monitoring
spec:
containers:
- args:
- --podresources-socket=unix:///host-podresources/kubelet.sock
command:
- /bin/podresources-monitor
image: podresources-monitor:latest # just for an example
volumeMounts:
- mountPath: /host-podresources
name: host-podresources
serviceAccountName: podresources-monitor
volumes:
- hostPath:
path: /var/lib/kubelet/pod-resources
type: Directory
name: host-podresources
I hope you find it straightforward to consume the podresources API programmatically. The kubelet API package provides the protocol file and the go type definitions; however, a client package is not yet available from the project, and the existing code should not be used directly. The recommended approach is to reimplement the client in your projects, copying and pasting the related functions like for example the multus project is doing.
When operating the containerized monitoring application consuming the podresources API, few points are worth highlighting to prevent "gotcha" moments:
- Even though the API only exposes data, and doesn't allow by design clients to mutate the kubelet state, the gRPC request/response model requires
read-write access to the podresources API socket. In other words, it is not possible to limit the container mount to
ReadOnly
. - Multiple clients are allowed to connect to the podresources socket and consume the API, since it is stateless.
- The kubelet has built-in rate limits to mitigate local Denial of Service attacks from misbehaving or malicious consumers. The consumers of the API must tolerate rate limit errors returned by the server. The rate limit is currently hardcoded and global, so misbehaving clients can consume all the quota and potentially starve correctly behaving clients.
Future enhancements
For historical reasons, the podresources API has a less precise specification than typical kubernetes APIs (such as the Kubernetes HTTP API, or the container runtime interface). This leads to unspecified behavior in corner cases. An effort is ongoing to rectify this state and to have a more precise specification.
The Dynamic Resource Allocation (DRA) infrastructure is a major overhaul of the resource management. The integration with the podresources API is already ongoing.
An effort is ongoing to recommend or create a reference client package ready to be consumed.
Getting involved
This feature is driven by SIG Node. Please join us to connect with the community and share your ideas and feedback around the above feature and beyond. We look forward to hearing from you!