Fire triggers in replica nodes (cassandra) - cassandra

I am using a Cassandra 4-node cluster with full replication in all nodes.
I have defined a trigger on a table. However, when I update a row in this table, trigger is fired only on the local node.
Is there any way to fire this trigger in all nodes (based on replication)?

Triggers run on the coordinator before they are passed off on be applied. To see it on a per replica the best way is to use CDC (which is also more reliable than triggers) and follow the changes as they are flushed to commitlog.

With CDC you have to solve another problems:
validate order of the pockets, since it is not guaranteed
make tradeoff between single point of failure vs implementing tool for CDC logs duplication checker, let me explain:
You either enable CDC logging on one node and this will become your bottleneck. Or you enable CDC on all nodes and then you have to somehow manage data duplication since leader will send logs to repications.
You can deploy triggers on every node of your cluster. It won't cause any data duplication and works perfectly fine.

Related

How to make Cassandra nodes have the same data?

I have two computers each one being a Cassandra node and they communicate well with each other.
From what I understand Cassandra will replicate the data to each other but will always query certain portions from one of them.
I would like though to have the data being copied to each other so they have the same data but they only use data from the local node. Is that possible?
The background reason is that the application in each node keeps generating and downloading a lot of data and at the same time both are doing some CPU super intensive tasks. What happens is that one node saves the data and suddenly can't find it anymore because it has been saved in the other node which is busy enough to reply with that data.
Technically, you just need to change replication factor to a number of nodes, and set your application to always read from a local node using whitelist load balancing mode. But it may not help you because if your nodes are very busy, replication of data from another node may also not happen, so the query will fail as well. Or replication will add an additional overhead making the situation much worse.
You need to rethink your approach - typically, you need to separate application nodes from database nodes, so application processes doesn't affect database processes.

How does peer to peer architecture work in Cassandra?

How the peer-to-peer Cassandra architecture really works ? I mean :
When the request hits the Cluster, it must hit some machine based on an IP, right ?
So which machine it will hit first ? : one of the nodes, or something in the Cluster who is responsible to balance and redirect the request to the right node ?
Could you describe what it is ? And how this differ from the Master/Folowers architecture ?
For the purposes of my answer, I will use the Java driver as an example since it is the most popular.
When you connect to a cluster using one of the driver, you need to configure it with details of your cluster including:
Contact points - the entry point to your cluster which is a comma-separated list of IPs/hostnames for some of the nodes in your cluster.
Login credentials - username and password if authentication is enabled on your cluster.
SSL/TLS certificate and credentials - if encryption is enabled on your cluster.
When your application starts, a control connection is established with the first available node in the list of contact points. The driver uses this control connection for admin tasks such as:
get topology information about the cluster including node IPs, rack placement, network/DC information, etc
get schema information such as keyspaces and tables
subscribe to metadata changes including topology and schema updates
When you configure the driver with a load-balancing policy (LBP), the policy will determine which node the driver will pick as the coordinator for each and every single query. By default, the Java driver uses a load balancing policy which picks nodes in the local datacenter. If you don't specify which DC is local to the app, the driver will set the local DC to the DC of the first contact point.
Each time a driver executes a query, it generates a query plan or a list of nodes to contact. This list of nodes has the following characteristics:
A query plan is different for each query to balance the load across nodes in the cluster.
A query plan only lists available nodes and does not include nodes which are down or temporarily unavailable.
Nodes in the local DC are listed first and if the load-balancing policy allows it, remote nodes are included last.
The driver tries to contact each node in the query plan in the order they are listed. If the first node is available then the driver uses it as the coordinator. If the first node does not respond (for whatever reason), the driver tries the next node in the query plan and so on.
Finally, all nodes are equal in Cassandra. There is no active-passive, no leader-follower, no primary-secondary and this makes Cassandra a truly high availability (HA) cluster with no single point-of-failure. Any node can do the work of any other node and the load is distributed equally to all nodes by design.
If you're new to Cassandra, I recommend having a look at datastax.com/dev which has lots of free hands-on interactive learning resources. In particular, the Cassandra Fundamentals learning series lets you learn the basic concepts quickly.
For what it's worth, you can also use the Stargate.io data platform. It allows you to connect to a Cassandra cluster using APIs you're already familiar with. It is fully open-source so it's free to use. Here are links to the Stargate tutorials on datastax.com/dev: REST API, Document API, GraphQL API, and more recently gRPC API. Cheers!
Working with Cassandra, we have to remember two very important things: data is partitioned (split into chunks) and data is replicated (each chunk is stored on a few different servers). Partitioning is needed for scalability purposes while Replication serves High Availability. Given that Cassandra is designed to handle petabytes of data under huge pressure (dozens of millions of queries per second), and there is no single server able to handle such the load, each cluster server is responsible only for a range of data, not for the whole dataset. A node storing data you need for a particular query is called a "replica node". Notice that the different queries there will have different replica nodes.
Together, it brings a few implications:
We have to reach multiple servers during a single query to assure the data is consistent (read) / write data to all responsible servers (write).
How do we know which node is right for that particular query? What happens if a query hits a "wrong" node? How do we configure the application so it sends queries to the replica nodes?
Funny enough, as a developer you have to do one and only one thing: understand partitions and partition keys, and then Cassandra will take care of all the potential issues. Simple as that. When you design a table, you have to declare partition keys and the data placement will be based on that - automagically. Next thing, you have to always specify partition keys while doing your queries. That's it, your job is done, get yourself some coffee!
Meanwhile, Cassandra starts her job. Cassandra nodes are smart, they know data placement, they know what servers are responsible for the data you are writing, and they know the partitions - in Cassandra language it's called token-aware. That does not matter which server will receive the query, as literally every server is able to answer it. Any node that got the request (it's called query coordinator because it coordinates the query operations) will find replica nodes based on the placement of the partitions. With that, the query coordinator will execute the query, making proper calls to the replicas - the coordinator knows which nodes to ask because you did your part of the job and specified partition key value in the query, which is used for the routing.
In short, you can ask any of your cluster nodes to write/read your data, Cassandra is decentralized and you'll get it done. But how do we make it better and get directly to the replica to avoid bothering nodes that don't store our data?
So which machine it will hit first ?
The travel of a request starts much earlier than we could think of - when your application starts, a Cassandra driver connects to a cluster and reads information about data placement: which partition is stored on which nodes, It means that driver knows which node has to be contacted for different queries. You got it right, a driver is token-aware too!
Token-aware drivers understand data placement and will route a query to a proper replica node. Answering the question: under normal circumstances, your query will first hit one of the replica nodes, this node will get answers or write data to the other replica nodes and that's it, we are good. In some rare situations, your query may hit a "wrong" non-replica server, but it doesn't really matter as it also will do the job, with just a minor delay - for example, if your Replication Factor = 3 (you have three replicas), and your query got to a "wrong" node, it will have to ask all three replicas while hitting the "right one" still require 2 network operations. It's not a big deal though as all the operations are done in parallel.
how this differ from the Master/Folowers architecture
With leader/follower architecture, you can read from any server but you can write only to a leader server, which gives two issues:
Your app needs to know who is the leader (or you need to have a special proxy)
Single Point of Failure (SPoF) - if the leader is down, you can't write to the DB at all
With Cassandra's peer-to-peer architecture you can write to any of the cluster nodes, even if there are thousands of them. Of course, there is no SPoF.
P.S. Cassandra is an extremely powerful technology, but great power comes with great responsibility, it's quite complex too. If you plan to work with it, you better invest some time into learning to use it properly. I do suggest taking a Developer Path on the academy.datastax.com (it's free!) or at least watch DataStax "Intro to Cassandra" workshop
It is based on the driver that you used to connect to the Cassandraâ„¢ cluster. Again, all nodes in the datacenter are one and same. It would connect to any of the nodes the localdatacenter that you have provided in driver configs based on the contact points configuration (i.e. datastax-java-driver.basic.contact-points in Java Driver).
For example, the Java driver (& most drivers logic will be the same) uses system.peers.rpc-address to connect to newly discovered nodes. For special network topologies, an address translation component can be plugged in.
advanced.address-translator in the configuration.
none by default. Also available: EC2-specific (for deployments that span multiple regions), or write your own.
Each node in the Cassandra cluster is uniquely identified by an IP address that the driver will use to establish connections.
for contact points, these are provided as part of configuring the CqlSession object;
for other nodes, addresses will be discovered dynamically, either by inspecting system.peers on already connected nodes, or via push notifications received on the control connection when new nodes are discovered by gossip.
More info can be found here.
It seems you are asking how specifically Cassandra selects which Node gets hit with data and which ones doesn't.
There are two sides to this: the client and the servers
On the client
When a CQL Connection is established the client (if implemented in the client library and configured) usually also retrieves the Topology from the Cluster. A topology is the information about the token ownership inside the ring as well as information about quorums etc..
So the client itself can already make a decision on the next request what Node to contact for a certain amount of information due to Consistent Hashing of the primary keys in Cassandra. The client is aware who would be the right choice of Node to contact.
But still the client can choose not to use this information and just send the information to any node of the ring - the nodes will then forward the requests to the appropriate token owners -> See the next section.
In the Cluster
The same applies to the nodes themselves. If a client sends a request to a node it will simply look up the owner nodes in it's topology table and forward the request to exactly the nodes that do own this token.
It will always forward it to all of them so the data is consistent across the cluster. Depending on the replication factor it will return a success response to the client if the required replication is acknowledged by the cluster (eg. LOCAL_QUORUM with RF=3 will return a success response when 2 nodes acknowledge the receipt while the 3rd node is still pending).
If a node is detected as down or can't be reached the Command that would have been sent to the node is saved in the local hints table - a buffer that keeps all the operations that haven't been successfully sent to other nodes.
You can read more on Hints in the Cassandra Docs
Compared to a Leader/Follower architecture the Cassandra model is actually simpler and depends mostly on all involved nodes seeing all the mutation commands happening to the data they "own" via the tokens.

Can cassandra datacenters configured to replication receiver only?

Assuming that we have 2 cassandra datacenters.
One of them is productive environment and well-secured, the other one is a test environment and easier to break, hence non-trusted.
We want data replication, but only propagated from the productive environment to test environment, not vice versa.
Is there any way to configure one data-center as a slave: not to receive replication data from the other one, and to revert the untrusted changes? It should be a read-only instance, which only receives data from the other datacenter.
In case somebody breaks the test environment, we do not want to productive environment to receive any manipulated data. Target would be that the test environment changes get reverted to the productive environment during replication.
No, it's not possible directly - in Cassandra changes made to the keyspace are propagated to all sides.
You can try different options by using separate clusters for prod and test:
Implement code to read CDC files, and apply to test cluster - this won't help with deleting the data from test environment, as this approach only apply changes.
Use DataStax advanced replication (that uses similar approach)
periodically replay the data from production to test using SSTableLoader - it will replay all data, so it will help with deletion of data on test. But it could take quite a long time if you have a lot of data.

Is it possible to recover a Cassandra node without a snapshot?

Offsite backups for Cassandra seem like a challenging thing. You basically have to make yet another copy of ALL your data, including the copies of data that exist due to the replication factor. Snapshots make backups easy when you don't mind storing it on the same disk that your node already uses. I'm curious - in the event of a catastrophic failure of this disk, is it possible to recover the node using the nodes that the data was replicated to?
Yes, you can restore data on crashed node using a procedure in documentation - Replacing a dead node or dead seed node. It's for Cassandra 3.x, please pick your Cassandra version from a drop-down menu on the top of the page.
But please note that you still need to do backups if your data is valuable. If you using AWS you can use this project to backup Cassandra to S3 storage.
If you are looking for offsite or off-host backups, you can also look at opscenter from Datastax or Talena software (my company). Both provide you the ability to backup your database locally or to S3. As you may expect, you also have the ability to restore data in case of hardware failures, user errors or logical corruptions which the replicas will not protect you against.
Yes, it is possible. Just execute in terminal "nodetool repair" on the node with missed data. It can take a lot of time. Also I would recommend execute repair operation on each node every month to keep your data always replicated because cassandra does not repairs data automatically (for example after node(s) falling).

Cassandra reads slow with multiple nodes

I have a three node Cassandra cluster with version 2.0.5.
RF=3 and all data is synced to all three nodes.
I read from cqlsh with Consistency=ONE.
When I bring down two of the nodes my reads are twice as fast than when I have the entire cluster up.
Tracing from cqlsh shows that the slow down on the reads with a full cluster up occurs when a request is forwarded to other nodes.
All nodes are local to the same datacenter and there is no other activity on the system.
So, why are requests sometimes forwarded to other nodes?
Even for the exact same key if I repeat the same query multiple times I see that sometimes the query executes on the local node and sometimes it gets forwarded and then becomes very slow.
Assuming that the cluster isn't overloaded, Cassandra should always prefer to do local reads when possible. Can you create a bug report at https://issues.apache.org/jira/browse/CASSANDRA ?
This is due to read repair.
By default read repair is applied for all the read with consistency level quorum or with 10% chance for lower consistency levels, that's why for consistency level one sometimes you see more activity and sometime less activity.

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