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apache-kafkaapache-storm

Processing records in order in Storm


I'm new to Storm and I'm having problems to figure out how to process records in order.

I have a dataset which contains records with the following fields:

user_id, location_id, time_of_checking

Now, I would like to identify users which have fulfilled the path I specified (for example, users that went from location A to location B to location C).

I'm using Kafka producer and reading this records from a file to simulate live data. Data is sorted by date.

So, to check if my pattern is fulfilled I need to process records in order. The thing is, due to parallelization (bolt replication) I don't get check-ins of user in order. Because of that patterns won't work.

How to overcome this problem? How to process records in order?


Solution

  • There is no general system support for ordered processing in Storm. Either you use a different system that supports ordered steam processing like Apache Flink (Disclaimer, I am a committer at Flink) or you need to take care of it in your bolt code by yourself.

    The only support Storm delivers is using Trident. You can put tuples of a certain time period (for example one minute) into a single batch. Thus, you can process all tuples within a minute at once. However, this only works if your use case allows for it because you cannot related tuples from different batches to each other. In your case, this would only be the case, if you know that there are points in time, in which all users have reached their destination (and no other use started a new interaction); ie, you need points in time in which no overlap of any two users occurs. (It seems to me, that your use-case cannot fulfill this requirement).

    For non-system, ie, customized user-code based solution, there would be two approaches:

    You could for example buffer up tuples and sort on time stamp within a bolt before processing. To make this work properly, you need to inject punctuations/watermarks that ensure that no tuple with larger timestamp than the punctuation comes after a punctuation. If you received a punctuation from each parallel input substream you can safely trigger sorting and processing.

    Another way would be to buffer tuples per incoming substream in district buffers (within a substream order is preserved) and merge the tuples from the buffers in order. This has the advantage that sorting is avoided. However, you need to ensure that each operator emits tuples ordered. Furthermore, to avoid blocking (ie, if no input is available for a substream) punctuations might be needed, too. (I implemented this approach. Feel free to use the code or adapt it to your needs: https://github.com/mjsax/aeolus/blob/master/queries/utils/src/main/java/de/hub/cs/dbis/aeolus/utils/TimestampMerger.java)