We are planning to expand our cluster from 2 DC's to 7 DC's.Is there any limit on number of Datacenters to be exist in cluster and How does it impact the performance of the cluster?
Regards,
Mani
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Is there any mbean for cassandra to get the Cross-data center latency metrics.
I have 6 nodes spread across 2 DC 3 node each. I want to monitor the replication between DCs
Sure, you can monitor both overall and DC-specific latencies using the org.apache.cassandra.metrics MBean.
Overall internode latency
JMX in MBean org.apache.cassandra.metrics:
type=Messaging,name=CrossNodeLatency
Internode latency for datacenter with name DC-Name
JMX in MBean org.apache.cassandra.metrics:
type=Messaging,name=<DC-Name>-Latency
You can find these and other useful metrics on this page in the DataStax documentation: https://docs.datastax.com/en/dseplanning/docs/metricsandalerts.html
I am a newbie in Cassandra.
In our production environment three node Cassandra clusters are running and serving production traffic but I have below mentioned doubts:-
1) All nodes are configured in different racks i.e rack 1, rack 2 and rack 3 in the same dc. Is it fine or does this configuration have some drawbacks?
2) We are using rf2 and network topology for all the keyspaces except system tables and these system tables are configured with rf2 and simplestrategy ..is it fine or does this need to be changed? should we increase the replication factor of system_auth? ..please let me know..
3) Now I want to add another node in the same dc, what will be the best procedure to do the same without impacting the live traffic?
Cassandra version is Apache cassandra 3.11.
Thanks in advance..
Ans 1) It seems good to have Cassandra nodes in different racks for availability and fault tolerance .
Ans 2) You must increase RF on system_auth so that you can avoid cqlsh login issue from other nodes.
Ans 3) You can add new node without affecting the live traffic on existing cluster. please follow below procedure.
http://cassandra.apache.org/doc/latest/operating/topo_changes.html
Cassandra is designed as a distributed system. Cassandra’s distributed architecture is specifically tailored for multiple-data center deployment. These features are robust and flexible enough that you can configure the cluster for optimal geographical distribution, for redundancy for fail-over and disaster recovery.
Multiple data center deployments are excellent for global solutions where in some applications are operational in one region and other applications in another region and yet using a single cluster of Cassandra which is working in multiple data centers across regions.
For single region applications, still having multiple data-centers is preferred option because it provides disaster recovery even in case one region goes down.
Ans 1) For a single DC Cassandra cluster , recommendation is to have 4 nodes with RF3. Rack 1 with 2 nodes and Rack 2 with 2 nodes. Remember that nodes in the same rack have faster network than nodes in different racks. With two nodes on the same Rack, queries with LOCAL_QUORUM will be faster as compared to queries on a cluster with all nodes on different racks.
If you are not concerned with the query latency , all nodes in different racks (3 racks) will give better disaster recovery as compared with two RACK deployment. Having said that, it's always recommended to use multi DC deployments for production cluster.
Ans 2) It’s always recommended to increase the replication factor of System_auth keyspace and change the replication class to NetworkTopologyStrategy. Please follow this documentation for more details https://docs.datastax.com/en/security/6.0/security/secSystemKeyspace.html
Ans 3) Yes, You can add a new node to existing cluster with ease without impacting the traffic. Please follow this documentation for more details: https://docs.datastax.com/en/archived/cassandra/3.0/cassandra/operations/opsAddNodeToCluster.html
Hi I have a high level question regarding cluster topology and data replication with respect to cassandra and spark being used together in datastax enterprise.
It was my uderstanding that if there were 6 nodes in a cluster and there is heavy computing (e.g analytics) done then you could have three spark nodes and 3 cassandra nodes if you want. Or you don't need three nodes for analytics but your jobs would not run as fast. The reason you don't want the heavy analytics on the cassandra nodes is because the local memory is already being used up to handle the heavy read/write load of cassandra.
This much is clear, but here are my questions :
How does the replicated data work then?
Are all the cassandra only nodes in one rack, and all the spark nodes in another rack?
Does all the data get replicated to the spark nodes?
How does that work if it does?
What is the recommended configuration steps to make sure the data is replicated properly to the spark nodes?
How does the replicated data work then?
Regular Cassandra replication will operate between nodes and DC's. As far as replication goes this is the same as having a c* only cluster with two data centers.
Are all the cassandra only nodes in one rack, and all the spark nodes in another rack?
With the default DSE Snitch, your C* nodes will be in one DC and the Spark nodes in another DC. They will all be in a default rack. If you want to use multiple racks you will have to configure that yourself by using an advanced snitch. GPFS or PFS are good choices depending on your orchestration mechanisms. Learn more in the DataStax Documentation
Does all the data get replicated to the spark nodes? How does that work if it does?
Replication is controlled at the keyspace level and depends on your replication strategy:
SimpleStrategy will simply ask you the number of replicas you want in your cluster (it is not data center aware so don't use it if you have multiple DC's)
create KEYSPACE test WITH replication = {'class': 'SimpleStrategy', 'replication_factor': 3 }
This assumes you only have one DC and that you'll have 3 copies of each bit of data
NetworkTopology strategy let's you pick number of replicas per DC
create KEYSPACE tst WITH replication = {'class': 'NetworkTopologyStrategy', 'DC1' : 2, 'DC2': 3 }
You can choose to have a different number of replicas per DC.
What is the recommended configuration steps to make sure the data is replicated properly to the spark nodes?
The procedure to update RF is in the datastax documentation. Here it is verbatim:
Updating the replication factor Increasing the replication factor
increases the total number of copies of keyspace data stored in a
Cassandra cluster. If you are using security features, it is
particularly important to increase the replication factor of the
system_auth keyspace from the default (1) because you will not be able
to log into the cluster if the node with the lone replica goes down.
It is recommended to set the replication factor for the system_auth
keyspace equal to the number of nodes in each data center.
Procedure
Update a keyspace in the cluster and change its replication strategy
options. ALTER KEYSPACE system_auth WITH REPLICATION = {'class' :
'NetworkTopologyStrategy', 'dc1' : 3, 'dc2' : 2}; Or if using
SimpleStrategy:
ALTER KEYSPACE "Excalibur" WITH REPLICATION = { 'class' :
'SimpleStrategy', 'replication_factor' : 3 }; On each affected node,
run the nodetool repair command. Wait until repair completes on a
node, then move to the next node.
Know that increasing the RF in your cluster will generate lots of IO and CPU utilization as well as network traffic, while your data gets pushed around your cluster.
If you have a live production workload, you can throttle the impact by using nodetool getstreamthroughput / nodetool setstreamthroughput.
You can also throttle the resulting compactions with nodetool getcompactionthroughput nodetool setcompactionthroughput
How does Cassandra and Spark work together on the analytics nodes and
not fight for resources? If you are not going to limit Cassandra at all in the whole cluster, then what is the point of limiting Spark, just have all the nodes Spark enabled.
The key point is that you won't be pointing your main transactional reads / writes at the Analytics DC (use something like consistency level ONE_LOCAL, or QUORUM_LOCAL to point those requests to the C* DC). Don't worry, your data still arrives at the analytics DC by virtue of replication, but you won't wait for acks to come back from analytics nodes in order to respond to customer requests. The second DC is eventually consistent.
You are right in that cassandra and spark are still running on the same boxes in the analytics DC (this is critical for data locality) and have access to the same resources (and you can do things like control the max spark cores so that cassandra still has breathing room). But you achieve workload isolation by having two Data Centers.
DataStax drivers, by default, will consider the DC of the first contact point they connect with as the local DC so just make sure that your contact point list only includes machines in the local (c* DC).
You can also specify the local datacenter yourself depending on the driver. Here's an example for the ruby driver, check the driver documentation for other languages.
use the :datacenter cluster method: First datacenter found will be
assumed current by default. Note that you can skip this option if you
specify only hosts from the local datacenter in :hosts option.
You are correct, you want to separate your cassandra and your analytics workload.
A typical setup could be:
3 Nodes in one datacenter (name: cassandra)
3 Nodes in second datacenter (name: analytics)
When creating your keyspaces you define them with a NetworkTopologyStrategy and a replication factor defined for each datacenter, like so:
CREATE KEYSPACE myKeyspace WITH replication = {'class': 'NetworkTopologyStrategy', 'cassandra': 2, 'analytics': 2};
With this setup, your data will be replicated twice in each datacenter. This is done automatically by cassandra. So when you insert data in DC cassandra the inserted data will get replicated to DC analytics automatically and vice versa. Note: you can define what data is replicated by using seperate keyspaces for the data you want to be analyzed and the data you don't.
In your cassandra.yaml you should use the GossipingPropertyFileSnitch. With this snitch you can define the DC and the rack of your node in the file cassandra-rackdc.properties. This information then gets propagated via the gossip protocol. So each node learns the topology of your cluster.
What would be the minimal and the highest setup for a 90TB cassandra cluster. Kindly include the spec of processor, switch, hard disks and RAM. The no. of nodes is 5. Datastax's cassandra is gonna be used, so I guess in-memory function requires more amount of RAM.
I found a Document for determining the configurations for the Datastax cassandra nodes. Found here.
http://www.datastax.com/documentation/cassandra/2.0/pdf/cassandra20.pdf
We have a cassandra DSE cluster with 10 nodes for cassandra ring and 10 nodes for hadoop ring. Now the application writes the data to the cassandra ring and cassandra will replicate the data to hadoop ring.
We want to separate the two ring's and make them as two different cluster's and application writes the data to two clusters at the same time.
How to separate the cluster? is that possible?
we have ~600GB of data in the cluster and we cannot delete it.
You should test this first, but this basic procedure should work. It will need some tweaking if you have counters.
Set your application writing to both DCs using LOCAL_QUORUM.
Run repair on the whole cluster. This is to ensure each DC has a copy of the data.
Isolate the clusters so the two DCs can't talk to each other, probably using a firewall.
Assuming your DCs are DC1 and DC2, change your replication factor to be DC2:0 on DC1 and DC1:0 on DC2.
On each DC, run 'nodetool removenode' for each node in the other DC. This will just remove the DOWN nodes from the ring but won't have any affect on the data because the other nodes have replication factor zero.
This should work with zero data loss.