I want to know how to map values in a specific column in a dataframe.
I have a dataframe which looks like:
df = sc.parallelize([('india','japan'),('usa','uruguay')]).toDF(['col1','col2'])
+-----+-------+
| col1| col2|
+-----+-------+
|india| japan|
| usa|uruguay|
+-----+-------+
I have a dictionary from where I want to map the values.
dicts = sc.parallelize([('india','ind'), ('usa','us'),('japan','jpn'),('uruguay','urg')])
The output I want is:
+-----+-------+--------+--------+
| col1| col2|col1_map|col2_map|
+-----+-------+--------+--------+
|india| japan| ind| jpn|
| usa|uruguay| us| urg|
+-----+-------+--------+--------+
I have tried using the lookup function
but it doesn't work. It throws error SPARK-5063. Following is my approach which failed:
def map_val(x):
return dicts.lookup(x)[0]
myfun = udf(lambda x: map_val(x), StringType())
df = df.withColumn('col1_map', myfun('col1')) # doesn't work
df = df.withColumn('col2_map', myfun('col2')) # doesn't work