This is somewhat of a shallow-level question. However, I perplexed by this trio of services.

I understand that KPL produces fast data and KCL consumes fast data produced by Kinesis. However, what I fail to understand is the if KPL and KCL make up this pair, what do we need AWS Kinesis for?

Another way to look at it: If AWS Kinesis can produce the fast data and KCL can consume it, then what we need KPL for?

Any clarifying answer is greatly appreciated.


AWS Kinesis is a very broad platform. Roughly , you can think of AWS Kinesis as: Kinesis Data Streams + Kinesis Video Streams + Kinesis Firehose + Kinesis Analytics. (Each one has its own purpose).

More detail here: 

Now, lets take Kinesis Data Streams, for example: What if you are a developer and you need feed data to a specific Kinesis Data Stream programatically (i.e. SDK)? This is where KPL comes into play. You use KPL to feed data to THAT stream.

Similar Story with KCL:

If you are a developer and you want get data ("consume") from that DATA STREAM, you use KCL.

In short: AWS Kinesis is huge platform, where KCL and KPL serve specific purposes.


The Kinesis Producer Library (KPL) aggregates small user-formatted records into larger records up to 1 MB to make better use of Amazon Kinesis Data Streams throughput.

While the KCL for Java supports deaggregating these records.

Refer this for more: https://docs.aws.amazon.com/streams/latest/dev/shared-throughput-kcl-consumers.html

One problem, the KCL and KPL are heavily focused on Java, but most of the data scientists love Python. One can always create amazon-kinesis-client-python library on top of Java MultiLangDaemon for interprocess communication, but it is not recommended.

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