I'm trying to use the DataFrame.hint() method to add a Range Join hint to my join.

I have two tables: minutes and events.

The minutes table has the minute_start and minute_end columns that are time in seconds since a fixed moment in time. Naturally, their values are multiples of 60.

The events table has similar event_start and event_end columns, only for events. Events can start and end at any second.

For each event, I need to find all the minutes it overlaps with.

I'm trying this on Databricks (runtime 5.1, Python 3.5):

# from pyspark.sql.types import StructType, StructField, IntegerType

# minutes = spark.sparkContext\
#                .parallelize(((0,  60),
#                              (60, 120)))\
#                .toDF(StructType([
#                          StructField('minute_start', IntegerType()),
#                          StructField('minute_end', IntegerType())
#                        ]))

# events = spark.sparkContext\
#               .parallelize(((12, 33),
#                             (0,  120),
#                             (33, 72),
#                             (65, 178)))\
#               .toDF(StructType([
#                         StructField('event_start', IntegerType()),
#                         StructField('event_end', IntegerType())
#                       ]))

events.hint("range_join", "60")\
            on=[events.event_start   < minutes.minute_end,
                minutes.minute_start < events.event_end])\

Without the hint call, the result is as expected:

|          0|      120|           0|        60|
|          0|      120|          60|       120|
|         12|       33|           0|        60|
|         33|       72|           0|        60|
|         33|       72|          60|       120|
|         65|      178|          60|       120|

With the hint, I get the exception:

AnalysisException: 'Range join hint: invalid arguments Buffer(60);'

When I tried passing the 60 in the hint as a number as opposed to a string, it complained that a parameter of a hint must be a string.

I'm not on Azure, but I expect the outcome would be the same.

Has anyone had a similar issue and found a solution or knows where I'm making a mistake?


(Currently, I'm trying it on Databricks Runtime 6.1, Python 3.7.3, Spark 2.4.4)

I thought I missed that the parameters are expected as an iterable, so I tried again, with events.hint("range_join", [60]). Same complaint about the argument not being a string: TypeError: all parameters should be str, got 60 of type <class 'int'>.

I'm wondering if Databricks' version of Spark is behind.

This is in Spark source code on GitHub:

def hint(self, name, *parameters):
    ... (no checks on `parameters` up to here)

    allowed_types = (basestring, list, float, int)
    for p in parameters:
        if not isinstance(p, allowed_types):
            raise TypeError(
                "all parameters should be in {0}, got {1} of type {2}".format(
                        allowed_types, p, type(p)))

    ... (no checks beyond this point)

so a list of ints should be allowed.

What I'm getting is all parameters should be str, but the GitHub version would say all parameters should be in (basestring, list, float, int) if I passed a parameter of a wrong type.


hint("skew", "col_name") appears to be working.

  • I'm having the same issue. Dec 11, 2019 at 14:53
  • So far I haven't found a solution.
    – Arseny
    Dec 11, 2019 at 22:20
  • I found that instead of using the .hint() you can configure your Spark Session config to use the range join bins if you are using Databricks docs.databricks.com/delta/join-performance/… Dec 12, 2019 at 13:19
  • @MarcusLind Yes, that's one thing I've been using, but it seems to be platform-specific, and I'd like the code to work locally, too. You could also just write it in SQL: spark.sql("SELECT /*+ RANGE_JOIN(events, 60)*/ ... "
    – Arseny
    Dec 13, 2019 at 19:12

1 Answer 1


I checked Spark source code on GitHub.

Version 2.4.4 has this:

def hint(self, name, *parameters):
    ...  # no checks on `parameters` up to here

    for p in parameters:
        if not isinstance(p, str):
            raise TypeError(
                "all parameters should be str, got {0} of type {1}".format(p, type(p)))

    ...  # no checks beyond here

But from version 3.0.0-preview-rc1 on, the source has this:

def hint(self, name, *parameters):
    ...  # no checks on `parameters` up to here

    allowed_types = (basestring, list, float, int)
    for p in parameters:
        if not isinstance(p, allowed_types):
            raise TypeError(
                "all parameters should be in {0}, got {1} of type {2}".format(
                    allowed_types, p, type(p)))

    ...  # no checks beyond here

So it seems as though version 2.4.4 had a bug, that has been fixed in versions starting from 3.0.0-preview-rc1.

  • I also checked 2.4.5, and the bug is still there, so we probably have to wait for 3.0 on Databricks.
    – Arseny
    Mar 26, 2020 at 18:28
  • Created a PR to cherry-pick this back into the 2.4 branch as well: github.com/apache/spark/pull/28238 Apr 17, 2020 at 6:21
  • @FokkoDriesprong, doesn't look like they agree it's a bug because Range Join isn't in the Apache pySpark API docs. Well, I'd argue .hint("range_join", param) raises an exception that does not say that "range_join" is an invalid hint type, but rather says thatparam is merely the wrong type, suggesting that there still exist correct types for param. So basically that allows to use any "hint_type" regardless of whether JVM actually knows how to handle it or not. That feels to me like poor exception handling at best. I realize you can define your own hints, it's open source, but...
    – Arseny
    May 7, 2020 at 0:10
  • @FokkoDriesprong contd... the code never reaches a point when it realizes, "Oh, but this type of hint isn't defined anywhere in your code, so there's your exception now." Though I don't feel strong about pushing this on
    – Arseny
    May 7, 2020 at 0:12

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