Consume all of a Kafka topic and then immediately disconnect? - java

I'm mostly using Kafka for traditional messaging but I'd also like the ability to consume small topics in a batch fashion, i.e. connect to a topic, consume all the messages and immediately disconnect (not block waiting for new messages). All my topics have a single partition (though they are replicated across a cluster) and I'd like to use the high-level consumer if possible. It's not clear from the docs how I could accomplish such a thing in Scala (or Java). Any advice gratefully received.

The consumer.timeout.ms setting will throw a timeout exception after the specified time if no message is consumed before and this is the only option you have with the high level consumer afaik. Using this you could set it to something like 1 second and disconnect after that if it's an acceptable solution.
If not, you'd have to use the simple consumer and check message offsets.

Related

Preserve messages during unprecedented JVM crash in a high throughput system

I am building a high volume system that will be processing up to a hundred million messages everyday. I have a microservice that is reading from a Kafka topic and doing some basic processing on them before forwarding them to the next microservice.
Kafka Topic -> Normalizer Microservice -> Ordering Microservice
Below is what the processing would look like:
Normalizer would be concurrently picking up messages from the Kafka topic.
Normalizer would read the messages from the topic and post them to an in-memory seda queue from where the message would be subsequently picked up, normalized and validated.
This normalization, validation and processing is expected to take around 1 second per message. Within this one second, the message will be stored to the database and will become persistent in the system.
My concern is that during this processing, if a message has been already read from the topic and posted to the seda queue and has either
not yet been picked up from the seda queue or,
has been picked up from the seda queue and is currently processing and has not yet been persisted to the database
and the Normalizer JVM crashes or is force-killed (kill -9), how do I ensure that I do NOT lose the message?
It is critical that I do NOT drop/lose any messages and even in case of a crash/failure, I should be able to retain the message such that I can trigger re-processing of that message if required.
One naïve approach that comes to mind is to push the message to a cache (which will be a very fast operation).
Read from topic -> Push to cache -> Push to seda queue
Needless to say, the problem still exists, it just makes it less probable that I will lose the message. Also, this is certainly not the smartest solution out there.
Please share your thoughts on how I can design this system such that I can preserve messages on my side once the messages have been read off of the Kafka topic even in the event of the Normalizer JVM crashing.

Can I send a message different topics in kafka at runtime depending on the load?

I have 5 defined topics, my specific question is there any way in the code to know if a kafka topic is free or is still full to be able to balance the load between topics
In the producer I have to do the function .send(Topic1, object) but if the topic to which I am sending the information is busy or already has to load, how can I know it to change the function to .send(Topic2, object) by means of a conditional?
I do not know if this can be done or that otherwise you can know this. Currently, I plan to use ListenableFuture and with future.addCallback to know if this process is already done and reassign the topic but I do not see it viable.
Topics don't have load. Brokers do.
A broker can have leader multiple leader partitions of different topics, which clients cannot control.
Therefore, you cannot guarantee that sending data to a new topic (rather, set of partitions) will have less system/network load than another.
Besides that, if you start sending data to other topics, you lose ordering guarantees in both the produced data and the consumer group for any downstream systems.

Is RabbitMQ or Kafka message queue a 1:1 messaging system?

As mentioned in the answer,
A message queue is a one-way pipe: one process writes to the queue, and another reads the data in the order
SysV message queue is one example
So, my understanding is,
one message queue is used by two processes, where one process(producer) insert an item in the queue and another process(consumer) consumes the item from the queue
1) Is RabbitMQ or Kafka message queue a 1:1 messaging system? used by only two processes, where one process writes and other process reads......
2) after the consumer consume the item, does the item get deleted? If no, why do we need queue data structure? Why not just shared memory?
Kafka is not strictly 1:1 messaging system. Multiple producers can write into a topic and multiple consumers can read from it. Moreover, in Kafka, multiple consumers can be assigned same or different consumer groups. Every message is consumed by only one consumer from every consumer group (load balancing) and all consumer groups receive a copy of every message (of course, if they are subscribed to corresponding topics and no messages are lost). A good description of this process can be found in this article: Scalability of Kafka Messaging using Consumer Groups.
In Kafka all messages are persisted on the disk and stored until the compaction reaps it, or the retention.ms passes, or the log size is exceeded. That's a very high-level point of view and there are a lot of nuances here. Like: the messages are stored in segments, every segment contains multiple messages. When the retention period passes for a message, it is not removed from the segment at that moment, instead Kafka waits until all messages in that segment are expired and delete the whole segment at once. Also, retention could come before the log exceeds the maximum size or vice versa: the log can exceed the size even before the retention period passes. And so on. Just read the docs and pay attention to topics about "log cleaner" and "retention".
After the Kafka consumer reads the message it is neither compacted, nor expired. So, it's not removed from the log and stays there. It also means that every message could be re-read by a consumer if needed (until it is deleted completely). It can be useful if some of your consumers went offline for some reason and were not able to process the messages as they come in. It also allows interesting features like transaction replays and so on. Persistence is one of the Kafka's features.
Shared memory? Well, strictly speaking shared memory is only allowed inside a single process. So you can't generally use "shared memory" when you need to access it from different processes. And there is absolutely no way to have "shared memory" when you app runs on multiple hosts. However, there are in-memory brokers. Like Redis can be used as a message broker, and it's all in-memory. However, if such a broker restarts for some reason you lose everything. Speaking about Redis: it has two persistence configurations specifically to handle the restarts.
I am not sure about RabbitMQ, but it probably deletes messages after the consumer acknowledged them by default. So it's closer to 1:1 mental model. However, RabbitMQ employs disk persistence as well.

Effective strategy to avoid duplicate messages in apache kafka consumer

I have been studying apache kafka for a month now. I am however, stuck at a point now. My use case is, I have two or more consumer processes running on different machines. I ran a few tests in which I published 10,000 messages in kafka server. Then while processing these messages I killed one of the consumer processes and restarted it. Consumers were writing processed messages in a file. So after consumption finished, file was showing more than 10k messages. So some messages were duplicated.
In consumer process I have disabled auto commit. Consumers manually commit offsets batch wise. So for e.g if 100 messages are written to file, consumer commits offsets. When single consumer process is running and it crashes and recovers duplication is avoided in this manner. But when more than one consumers are running and one of them crashes and recovers, it writes duplicate messages to file.
Is there any effective strategy to avoid these duplicate messages?
The short answer is, no.
What you're looking for is exactly-once processing. While it may often seem feasible, it should never be relied upon because there are always caveats.
Even in order to attempt to prevent duplicates you would need to use the simple consumer. How this approach works is for each consumer, when a message is consumed from some partition, write the partition and offset of the consumed message to disk. When the consumer restarts after a failure, read the last consumed offset for each partition from disk.
But even with this pattern the consumer can't guarantee it won't reprocess a message after a failure. What if the consumer consumes a message and then fails before the offset is flushed to disk? If you write to disk before you process the message, what if you write the offset and then fail before actually processing the message? This same problem would exist even if you were to commit offsets to ZooKeeper after every message.
There are some cases, though, where
exactly-once processing is more attainable, but only for certain use cases. This simply requires that your offset be stored in the same location as unit application's output. For instance, if you write a consumer that counts messages, by storing the last counted offset with each count you can guarantee that the offset is stored at the same time as the consumer's state. Of course, in order to guarantee exactly-once processing this would require that you consume exactly one message and update the state exactly once for each message, and that's completely impractical for most Kafka consumer applications. By its nature Kafka consumes messages in batches for performance reasons.
Usually your time will be more well spent and your application will be much more reliable if you simply design it to be idempotent.
This is what Kafka FAQ has to say on the subject of exactly-once:
How do I get exactly-once messaging from Kafka?
Exactly once semantics has two parts: avoiding duplication during data production and avoiding duplicates during data consumption.
There are two approaches to getting exactly once semantics during data production:
Use a single-writer per partition and every time you get a network error check the last message in that partition to see if your last write succeeded
Include a primary key (UUID or something) in the message and deduplicate on the consumer.
If you do one of these things, the log that Kafka hosts will be duplicate-free. However, reading without duplicates depends on some co-operation from the consumer too. If the consumer is periodically checkpointing its position then if it fails and restarts it will restart from the checkpointed position. Thus if the data output and the checkpoint are not written atomically it will be possible to get duplicates here as well. This problem is particular to your storage system. For example, if you are using a database you could commit these together in a transaction. The HDFS loader Camus that LinkedIn wrote does something like this for Hadoop loads. The other alternative that doesn't require a transaction is to store the offset with the data loaded and deduplicate using the topic/partition/offset combination.
I think there are two improvements that would make this a lot easier:
Producer idempotence could be done automatically and much more cheaply by optionally integrating support for this on the server.
The existing high-level consumer doesn't expose a lot of the more fine grained control of offsets (e.g. to reset your position). We will be working on that soon
I agree with RaGe's deduplicate on the consumer side. And we use Redis to deduplicate Kafka message.
Assume the Message class has a member called 'uniqId', which is filled by the producer side and is guaranteed to be unique. We use a 12 length random string. (regexp is '^[A-Za-z0-9]{12}$')
The consumer side use Redis's SETNX to deduplicate and EXPIRE to purge expired keys automatically. Sample code:
Message msg = ... // eg. ConsumerIterator.next().message().fromJson();
Jedis jedis = ... // eg. JedisPool.getResource();
String key = "SPOUT:" + msg.uniqId; // prefix name at will
String val = Long.toString(System.currentTimeMillis());
long rsps = jedis.setnx(key, val);
if (rsps <= 0) {
log.warn("kafka dup: {}", msg.toJson()); // and other logic
} else {
jedis.expire(key, 7200); // 2 hours is ok for production environment;
}
The above code did detect duplicate messages several times when Kafka(version 0.8.x) had situations. With our input/output balance audit log, no message lost or dup happened.
There's a relatively new 'Transactional API' now in Kafka that can allow you to achieve exactly once processing when processing a stream. With the transactional API, idempotency can be built in, as long as the remainder of your system is designed for idempotency. See https://www.baeldung.com/kafka-exactly-once
Whatever done on producer side, still the best way we believe to deliver exactly once from kafka is to handle it on consumer side:
Produce msg with a uuid as the Kafka message Key into topic T1
consumer side read the msg from T1, write it on hbase with uuid as rowkey
read back from hbase with the same rowkey and write to another topic T2
have your end consumers actually consume from topic T2

RabbitMQ grouping messages as one message ie coalescing messages

I'm trying to understand the best way to coalesce or chunk incoming messages in RabbitMQ (using Spring AMQP or the Java client directly).
In other words I would like to take say 100 incoming messages and combine them as 1 and resend it to another queue in a reliable (correctly ACKed way). I believe this is called the aggregator pattern in EIP.
I know Spring Integration provides an aggregator solution but the implementation looks like its not fail safe (that is it looks like it has to ack and consume messages to build the coalesced message thus if you shutdown it down while its doing this you will loose messages?).
I can't comment directly on the Spring Integration library, so I'll speak generally in terms of RabbitMQ.
If you're not 100% convinced by the Spring Integration implementation of the Aggregator and are going to try to implement it yourself then I would recommend avoiding using tx which uses transactions under the hood in RabbitMQ.
Transactions in RabbitMQ are slow and you will definitely suffer performance problems if you're building a high traffic/throughput system.
Rather I would suggest you take a look at Publisher Confirms which is an extension to AMQP implemented in RabbitMQ. Here is an introduction to it when it was new http://www.rabbitmq.com/blog/2011/02/10/introducing-publisher-confirms/.
You will need to tweak the prefetch setting to get the performance right, take a look at http://www.rabbitmq.com/blog/2012/05/11/some-queuing-theory-throughput-latency-and-bandwidth/ for some details.
All the above gives you some background to help solve your problem. The implementation is rather straightforward.
When creating your consumer you will need to ensure you set it so that ACK is required.
Dequeue n messages, as you dequeue you will need to make note of the DeliveryTag for each message (this is used to ACK the message)
Aggregate the messages into a new message
Publish the new message
ACK each dequeued message
One thing to note is that if your consumer dies after 3 and before 4 has completed then those messages that weren't ACK'd will be reprocessed when it comes back to life
If you set the <amqp-inbound-channel-adapter/> tx-size attribute to 100, the container will ack every 100 messages so this should prevent message loss.
However, you might want to make the send of the aggregated message (on the 100th receive) transactional so you can confirm the broker has the message before the ack for the inbound messages.

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