If I partition a data set, will it be in the correct order when I read it back? For example, consider the following pyspark code:
# read a csv df = sql_context.read.csv(input_filename) # add a hash column hash_udf = udf(lambda customer_id: hash(customer_id) % 4, IntegerType()) df = df.withColumn('hash', hash_udf(df['customer_id'])) # write out to parquet df.write.parquet(output_path, partitionBy=['hash']) # read back the file df2 = sql_context.read.parquet(output_path)
I am partitioning on a customer_id bucket. When I read back the whole data set, are the partitions guaranteed to be merged back together in the original insertion order?
Right now, I'm not so sure, so I'm adding a sequence column:
df = df.withColumn('seq', monotonically_increasing_id())
However, I don't know if this is redundant.