2

I am working in Pyspark and I have a data frame with the following columns.

Q1 = spark.read.csv("Q1final.csv",header = True, inferSchema = True)
Q1.printSchema()

root
|-- index_date: integer (nullable = true)
|-- item_id: integer (nullable = true)
|-- item_COICOP_CLASSIFICATION: integer (nullable = true)
|-- item_desc: string (nullable = true)
|-- index_algorithm: integer (nullable = true)
|-- stratum_ind: integer (nullable = true)
|-- item_index: double (nullable = true)
|-- all_gm_index: double (nullable = true)
|-- gm_ra_index: double (nullable = true)
|-- coicop_weight: double (nullable = true)
|-- item_weight: double (nullable = true)
|-- cpih_coicop_weight: double (nullable = true)

I need the sum of all the elements in the last column (cpih_coicop_weight) to use as a Double in other parts of my program. How can I do it? Thank you very much in advance!

9

If you want just a double or int as return, the following function will work:

def sum_col(df, col):
    return df.select(F.sum(col)).collect()[0][0]

Then

sum_col(Q1, 'cpih_coicop_weight')

will return the sum. I am new to pyspark so I am not sure why such a simple method of a column object is not in the library.

  • 1
    I totally agree with this statement. Why is it necessary to call an empty groupby to get the sum of a column? This function should be the accepted answer (and probably in the library) – seth127 Dec 3 '18 at 21:24
1

try this :

from pyspark.sql import functions as F
total = Q1.groupBy().agg(F.sum("cpih_coicop_weight")).collect()

In total, you should have your result.

  • Here total is a [Row(sum(cpih_coicop_weight)=xxx] if you want to get the actual scalar value you need to total[0][0] – ecerulm Sep 10 '18 at 21:03
  • Why this is not one of the default method of dataframe object? – Louis Yang Sep 11 '18 at 1:04
0

This can also be tried.

total = Q1.agg(F.sum("cpih_coicop_weight")).collect()

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