So far so good. Then I try to read all partitions of this table into a single DynamicFrame like so (Python), in my dev endpoint (hid the names):
>>> data = gc.create_dynamic_frame.from_catalog(database='database_name', table_name='table_name')
This seems to work, but I cannot do anything with this frame, not even printSchema(). It appears that it could not load all of the S3 partitions correctly, and throws the following when trying to printSchema or convert to a Spark DataFrame:
[Stage 11:> (0 + 3) / 3]18/04/13 16:58:44 WARN TaskSetManager: Lost task 0.0 in stage 11.0 (TID 64, ip-172-31-50-57.us-west-2.compute.internal, executor 4): com.amazonaws.services.glue.util.FatalException: Unable to parse file: xxx_xxx_20170430.txt
I know in regular pyspark, reading nested partitions (folder structure) is annoying and you have to union them together if you want a single dataframe. I thought DynamicFrames would handle this when reading from the catalog since it has all the metadata to where the partitions are. Is there something else I'm missing?
Any help is appreciated!