Hi Fabian and Dian, Thanks for the reply. They make sense.
Best, Yik San On Mon, Apr 19, 2021 at 9:49 AM Dian Fu <dian0511...@gmail.com> wrote: > Hi Yik San, > > It much depends on what you want to do in your Python UDF implementation. > As you know that, for vectorized Python UDF (aka. Pandas UDF), the input > data are organized as columnar format. So if your Python UDF implementation > could benefit from this, e.g. making use of the functionalities provided in > the libraries such as Pandas, Numpy, etc which are columnar oriented, then > vectorized Python UDF is usually a better choice. However, if you have to > operate the input data one row at a time, then I guess that the > non-vectorized Python UDF is enough. > > PS: you could also run some performance test when it’s unclear which one > is better. > > Regards, > Dian > > 2021年4月16日 下午8:24,Fabian Paul <fabianp...@data-artisans.com> 写道: > > Hi Yik San, > > I think the usage of vectorized udfs highly depends on your input and > output formats. For your example my first impression would say that parsing > a JSON string is always an rather expensive operation and the vectorization > has not much impact on that. > > I am ccing Dian Fu who is more familiar with pyflink > > Best, > Fabian > > On 16. Apr 2021, at 11:04, Yik San Chan <evan.chanyik...@gmail.com> wrote: > > The question is cross-posted on Stack Overflow > https://stackoverflow.com/questions/67122265/pyflink-udf-when-to-use-vectorized-vs-scalar > > Is there a simple set of rules to follow when deciding between vectorized > vs scalar PyFlink UDF? > > According to [docs]( > https://ci.apache.org/projects/flink/flink-docs-stable/dev/python/table-api-users-guide/udfs/vectorized_python_udfs.html), > vectorized UDF has advantages of: (1) smaller ser-de and invocation > overhead (2) Vector calculation are highly optimized thanks to libs such as > Numpy. > > > Vectorized Python user-defined functions are functions which are > executed by transferring a batch of elements between JVM and Python VM in > Arrow columnar format. The performance of vectorized Python user-defined > functions are usually much higher than non-vectorized Python user-defined > functions as the serialization/deserialization overhead and invocation > overhead are much reduced. Besides, users could leverage the popular Python > libraries such as Pandas, Numpy, etc for the vectorized Python user-defined > functions implementation. These Python libraries are highly optimized and > provide high-performance data structures and functions. > > **QUESTION 1**: Is vectorized UDF ALWAYS preferred? > > Let's say, in my use case, I want to simply extract some fields from a > JSON column, that is not supported by Flink [built-in functions]( > https://ci.apache.org/projects/flink/flink-docs-stable/dev/table/functions/systemFunctions.html) > yet, therefore I need to define my udf like: > > ```python > @udf(...) > def extract_field_from_json(json_value, field_name): > import json > return json.loads(json_value)[field_name] > ``` > > **QUESTION 2**: Will I also benefit from vectorized UDF in this case? > > Best, > Yik San > > > >