A more detailed explanation, that helped me to understand exactly how this works:
All the objects you’ve created throughout this book—Pods,
ReplicationControllers, Services, Secrets and so on—need to be
stored somewhere in a persistent manner so their manifests survive API
server restarts and failures. For this, Kubernetes uses
is a fast, distributed, and consistent key-value store. The only
component that talks to
etcd directly is the Kubernetes API server.
All other components read and write data to etcd indirectly through
the API server.
This brings a few benefits, among them a more robust optimistic
locking system as well as validation; and, by abstracting away the
actual storage mechanism from all the other components, it’s much
simpler to replace it in the future. It’s worth emphasizing that etcd
is the only place Kubernetes stores cluster state and metadata.
Optimistic concurrency control (sometimes referred to as optimistic
locking) is a method where instead of locking a piece of data and
preventing it from being read or updated while the lock is in place,
the piece of data includes a version number. Every time the data is
updated, the version number increases. When updating the data, the
version number is checked to see if it has increased between the time
the client read the data and the time it submits the update. If this
happens, the update is rejected and the client must re-read the new
data and try to update it again. The result is that when two clients
try to update the same data entry, only the first one succeeds.
The result is that when two clients try to update the same data entry,
only the first one succeeds
Marko Luksa, "Kubernetes in Action"
So, all the Kubernetes resources include a
metadata.resourceVersion field, which clients need to pass back to the API server when updating an object. If the version doesn’t match the one stored in
etcd, the API server rejects the update