Can someone please tell me what the rebalancing algorithm is for Kafka consumers? I would like to understand how partition count and consumer threads affect this.
Ok so there are 2 rebalancing algorithms at the moment -
RoundRobin. They are also called Partition Assignment Strategies.
For the simplicity assume we have a topic
T1 with 10 partitions and we also have 2 consumers with different configurations (for the example to be clearer) -
num.streams set to
num.streams set to
Here's how that would work with
Range lays out available partitions in numeric order and consumer threads in lexicographic order. So in our case the order of partitions will be
0, 1, 2, 3, 4, 5, 6, 7, 8, 9 and order of consumer threads will be
C1-0, C2-0, C2-1. Then the number of partitions is divided by the number of consumer threads to determine how many partitions each consumer thread should own. In our case it doesn't divide equally, so the thread
C1-0 will get one extra partition. The final partition assignment would look like this:
C1-0 gets partitions
0, 1, 2, 3
C2-0 gets partitions
4, 5, 6
C2-1 gets partitions
7, 8, 9
If there would be 11 partitions the partition assignment for these consumers would change a bit:
C1-0 would get partitions
0, 1, 2, 3
C2-0 would get partitions
4, 5, 6, 7
C2-1 would get partitions
8, 9, 10
The same configuration wouldn't work for
RoundRobin strategy as it requires equal
num.streams across all consumers subscribed for this topic, so lets assume both consumers have
num.streams set to 2 now. One major difference compared to
Range strategy here is that you cannot predict what the assignment will be prior to rebalance. Here's how that would work with
First, there are 2 conditions that MUST be satisfied before actual assignment:
a) Every topic has the same number of streams within a consumer instance (that's why I mentioned above that different number of threads per consumer will not work)
b) The set of subscribed topics is identical for every consumer instance within the group (we have one topic here so that's not a problem now).
When these 2 conditions are verified the
topic-partition pairs are sorted by hashcode to reduce the possibility of all partitions of one topic to be assigned to one consumer (if there is more than one topic to be consumed).
And finally, all
topic-partition pairs are assigned in a round-robin fashion to available consumer threads. For example if our topic-partitions will end up sorted like this:
T1-5, T1-3, T1-0, T1-8, T1-2, T1-1, T1-4, T1-7, T1-6, T1-9 and consumer threads are
C1-0, C1-1, C2-0, C2-1 then the assignment will be like this:
T1-5 goes to
T1-3 goes to
T1-0 goes to
T1-8 goes to
At this point no more consumer threads are left, but there are still more topic-partitions, so iteration over consumer threads starts over:
T1-2 goes to
T1-1 goes to
T1-4 goes to
T1-7 goes to
T1-6 goes to
T1-9 goes to
At this point all topic-partitions are assigned and each consumer thread has near-equal number of partitions each.
Hope this helps.
You could read this Kafka docs http://kafka.apache.org/documentation/#impl_brokerregistration about Consumer registration algorithm and Consumer rebalancing algorithm
As it said, each consumer does the following during rebalancing :
1. For each topic T that C<sub>i</sub> subscribes to 2. let P<sub>T</sub> be all partitions producing topic T 3. let C<sub>G</sub> be all consumers in the same group as C<sub>i</sub> that consume topic T 4. sort P<sub>T</sub> (so partitions on the same broker are clustered together) 5. sort C<sub>G</sub> 6. let i be the index position of C<sub>i</sub> in C<sub>G</sub> and let N = size(P<sub>T</sub>)/size(C<sub>G</sub>) 7. assign partitions from i*N to (i+1)*N - 1 to consumer C<sub>i</sub> 8. remove current entries owned by C<sub>i</sub> from the partition owner registry 9. add newly assigned partitions to the partition owner registry (we may need to re-try this until the original partition owner releases its ownership)
And also Notice that:
If there are more consumers than partitions, some consumers won't get any data at all. During rebalancing, we try to assign partitions to consumers in such a way that reduces the number of broker nodes each consumer has to connect to.