I am trying to convert datetime strings with timezone to timestamp using to_timestamp.

Sample dataframe:

df = spark.createDataFrame([("a", '2020-09-08 14:00:00.917+02:00'), 
                            ("b", '2020-09-08 14:00:00.900+01:00')], 
                           ["Col1", "date_time"])

My attempt (with timezone specifier Z):

df = df.withColumn("timestamp",f.to_timestamp(df.date_time, "yyyy-MM-dd HH:mm:ss.SSSZ"))

Actual result:

    |     null|
    |     null|

Wanted result (where timestamp is of type timestamp):

|                timestamp|
|2020-09-08 14:00:00+02:00|
|2020-09-08 14:00:00+01:00|

I have tried many other versions of format as well, but I cannot seem to find the right one.

1 Answer 1


As far as I know, it is not possible to parse the timestamp with timezone and retain its original form directly.

The issue is that to_timestamp() & date_format() functions automatically converts them to local machine's timezone.

I can suggest you to parse the timestamps and convert them into UTC as follows,

df.withColumn('local_ts', date_format(df.date_time, "yyyy-MM-dd HH:mm:ss.SSSX")) \
  .withColumn("timestamp_utc",to_utc_timestamp(to_timestamp(df.date_time, "yyyy-MM-dd HH:mm:ss.SSSX"), 'America/New_York')) \
  .show(10, False) 

# America/New_York is machine's timezone

|Col1|date_time                    |local_ts                  |timestamp_utc          |
|a   |2020-09-08 14:00:00.917+02:00|2020-09-08 08:00:00.917-04|2020-09-08 12:00:00.917|
|b   |2020-09-08 14:00:00.900+01:00|2020-09-08 09:00:00.900-04|2020-09-08 13:00:00.9  |

If you still prefer to retain in its original form, then I guess you suppos to write a custom udf for that.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.