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

You can get the names from the schema by doing


Printing the schema can be useful to visualize it as well

  • 4
    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
  • 1
    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

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


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')
  • 1
    This won't pull out the alias if there is one, unfortunately. – santon Feb 5 '18 at 23:21
  • 1
    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
  • 1
    @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
  • 1
    @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

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'

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

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"

  • 2
    in python it'd be col._jc.toString() – justin cress Aug 1 '19 at 18:19


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.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.