43

In pandas, this can be done by column.name.

But how to do the same when its column of spark dataframe?

e.g. The calling program has a spark dataframe: spark_df

>>> spark_df.columns
['admit', 'gre', 'gpa', 'rank']

This program calls my function: my_function(spark_df['rank']) In my_function, I need the name of the column i.e. 'rank'

If it was pandas dataframe, we can use inside my_function

>>> pandas_df['rank'].name
'rank'
79

You can get the names from the schema by doing

spark_df.schema.names

Printing the schema can be useful to visualize it as well

spark_df.printSchema()
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    What I wanted to know is the name of the column which is the input parameter to my function. The calling program will call my_function by my_function(spark_df['rank']) Inside my_function how would I know the name of the column that is passed? – Kaushik Acharya Sep 29 '16 at 4:05
  • You can use pyspark.sql.functions.col to access a column by name. E.g., df.filter( col(var_name) > 1) – ShuaiYuan Sep 29 '16 at 10:17
  • @ShuaiYuan, That's not what I want. Inside my_function(col) how would I know the col name? Calling function calls by my_function(spark_df['rank']) Inside my_function, I want to extract 'rank' as the column name from the input parameter: col – Kaushik Acharya Sep 30 '16 at 4:40
  • That seems like an odd request. But you could change your function to take a string for the name of the column – David Sep 30 '16 at 13:24
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    You can change your functions to myfunc(df, name) then you have access to name in your function. When you need to use that column in the dataframe, do df[name] – ShuaiYuan Sep 30 '16 at 13:58
14

The only way is to go an underlying level to the JVM.

df.col._jc.toString().encode('utf8')

This is also how it is converted to a str in the pyspark code itself.

From pyspark/sql/column.py:

def __repr__(self):
    return 'Column<%s>' % self._jc.toString().encode('utf8')
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    This won't pull out the alias if there is one, unfortunately. – santon Feb 5 '18 at 23:21
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    True. but you can easily parse that out if there's an alias. re.search('AS (\S*)', col.alias('some_alias')._jc.toString()).group(1) -> 'some_alias'. Of course this isn't perfect, since we're doing some regex parsing, but I would hope it's unlikely you have some column name called "AS bad" in it. – numeral Feb 8 '18 at 20:30
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    @numeral does the underlying JVM code expose any kind of parser logic that can be used instead of hand-rolling it? – shadowtalker Jan 7 '19 at 19:49
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    @shadowtalker It doesn't seem like it after checking spark.apache.org/docs/2.2.0/api/java/index.html?org/apache/… – numeral Jan 8 '19 at 20:15
  • The alias can also be extracted without using any regex: str(column).split(' AS ')[1].split('`')[1] – Cesare Iurlaro Nov 29 '20 at 16:42
4

If you want the column names of your dataframe, you can use the pyspark.sql class. I'm not sure if the SDK supports explicitly indexing a DF by column name. I received this traceback:

>>> df.columns['High'] Traceback (most recent call last): File "<stdin>", line 1, in <module> TypeError: list indices must be integers, not str

However, calling the columns method on your dataframe, which you have done, will return a list of column names:

df.columns will return ['Date', 'Open', 'High', 'Low', 'Close', 'Volume', 'Adj Close']

If you want the column datatypes, you can call the dtypes method:

df.dtypes will return [('Date', 'timestamp'), ('Open', 'double'), ('High', 'double'), ('Low', 'double'), ('Close', 'double'), ('Volume', 'int'), ('Adj Close', 'double')]

If you want a particular column, you'll need to access it by index:

df.columns[2] will return 'High'

1
  • Going along the idea: [x[0] for x in df.dtypes] – David C. Jun 12 '20 at 1:56
3

I found the answer is very very simple...

// It is in java, but it should be same in pyspark
Column col = ds.col("colName"); //the column object
String theNameOftheCol = col.toString();

The variable "theNameOftheCol" is "colName"

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    in python it'd be col._jc.toString() – justin cress Aug 1 '19 at 18:19
0

Python

As @numeral correctly said, column._jc.toString() works fine in case of unaliased columns.

In case of aliased columns (i.e. column.alias("whatever") ) the alias can be extracted, even without the usage of regular expressions: str(column).split(" AS ")[1].split("`")[1] .

I don't know Scala syntax, but I'm sure It can be done the same.

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