46

I'm trying to convert Pandas DF into Spark one. DF head:

10000001,1,0,1,12:35,OK,10002,1,0,9,f,NA,24,24,0,3,9,0,0,1,1,0,0,4,543
10000001,2,0,1,12:36,OK,10002,1,0,9,f,NA,24,24,0,3,9,2,1,1,3,1,3,2,611
10000002,1,0,4,12:19,PA,10003,1,1,7,f,NA,74,74,0,2,15,2,0,2,3,1,2,2,691

Code:

dataset = pd.read_csv("data/AS/test_v2.csv")
sc = SparkContext(conf=conf)
sqlCtx = SQLContext(sc)
sdf = sqlCtx.createDataFrame(dataset)

And I got an error:

TypeError: Can not merge type <class 'pyspark.sql.types.StringType'> and <class 'pyspark.sql.types.DoubleType'>
  • 2
    My first assumption is that the file contains both numbers and strings in one column and Spark confuses over it. However, it should be handled by Pandas when importing. – Иван Судос May 29 '16 at 18:21
  • does your DF have column names? – MaxU May 29 '16 at 18:23
  • Yes it has. Should I disable them? – Иван Судос May 29 '16 at 18:31
  • no, but it would be helpful if you would put it to your DF head output. Try to skip the 11-nth column (with NA's) and rerun your code – MaxU May 29 '16 at 18:34
  • 1
    Why don't you use spark-csv? – Alberto Bonsanto May 29 '16 at 19:11
34

You need to make sure your pandas dataframe columns are appropriate for the type spark is inferring. If your pandas dataframe lists something like:

pd.info()
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 5062 entries, 0 to 5061
Data columns (total 51 columns):
SomeCol                    5062 non-null object
Col2                       5062 non-null object

And you're getting that error try:

df[['SomeCol', 'Col2']] = df[['SomeCol', 'Col2']].astype(str)

Now, make sure .astype(str) is actually the type you want those columns to be. Basically, when the underlying Java code tries to infer the type from an object in python it uses some observations and makes a guess, if that guess doesn't apply to all the data in the column(s) it's trying to convert from pandas to spark it will fail.

| improve this answer | |
  • I found this very helpful. Follow-up question: When I went through and followed these steps for my own dataframe, I did not see any change to the pd.info(). How exactly is the dataframe itself changing? How could I check to see the pandas DataFrame has changed after using the .astype(str)? – EntryLevelR Nov 27 '17 at 19:01
38

I made this script, It worked for my 10 pandas Data frames

from pyspark.sql.types import *

# Auxiliar functions
def equivalent_type(f):
    if f == 'datetime64[ns]': return DateType()
    elif f == 'int64': return LongType()
    elif f == 'int32': return IntegerType()
    elif f == 'float64': return FloatType()
    else: return StringType()

def define_structure(string, format_type):
    try: typo = equivalent_type(format_type)
    except: typo = StringType()
    return StructField(string, typo)


# Given pandas dataframe, it will return a spark's dataframe.
def pandas_to_spark(pandas_df):
    columns = list(pandas_df.columns)
    types = list(pandas_df.dtypes)
    struct_list = []
    for column, typo in zip(columns, types): 
      struct_list.append(define_structure(column, typo))
    p_schema = StructType(struct_list)
    return sqlContext.createDataFrame(pandas_df, p_schema)

You can see it also in this gist

With this you just have to call spark_df = pandas_to_spark(pandas_df)

| improve this answer | |
  • 2
    verified this all works, also verified output goes through from pyspark out to parquet and into scala. Thanks Gonzalo. Wouldn't begin to know how, but this seems like a brilliant contribution to the open source community. maybe like pd.to_sparkdf() or something. – Tony Fraser Aug 1 '19 at 17:05
  • 2
    Gonzalo, I just forked your gist to support ArrayType[StringType]. Thanks again. Readers, this is great solution to go from pandas to pyspark and scala spark. – Tony Fraser Aug 2 '19 at 18:50
  • 1
    No problem tony! I'm glad it was useful – Gonzalo Garcia Aug 2 '19 at 19:15
  • 1
    I turned it into a class on the fork. Thanks again! – Tony Fraser Aug 6 '19 at 3:08
  • 1
    This solution is brilliant! Thanks for sharing it, it saved lots of time for me to make this conversion without making lots of adjustment and did work perfectly for conversion to temp table. – Mojgan Mazouchi Sep 13 at 22:48
36

Type related errors can be avoided by imposing a schema as follows:

note: a text file was created (test.csv) with the original data (as above) and hypothetical column names were inserted ("col1","col2",...,"col25").

import pyspark
from pyspark.sql import SparkSession
import pandas as pd

spark = SparkSession.builder.appName('pandasToSparkDF').getOrCreate()

pdDF = pd.read_csv("test.csv")

contents of the pandas data frame:

       col1     col2    col3    col4    col5    col6    col7    col8   ... 
0      10000001 1       0       1       12:35   OK      10002   1      ...
1      10000001 2       0       1       12:36   OK      10002   1      ...
2      10000002 1       0       4       12:19   PA      10003   1      ...

Next, create the schema:

from pyspark.sql.types import *

mySchema = StructType([ StructField("col1", LongType(), True)\
                       ,StructField("col2", IntegerType(), True)\
                       ,StructField("col3", IntegerType(), True)\
                       ,StructField("col4", IntegerType(), True)\
                       ,StructField("col5", StringType(), True)\
                       ,StructField("col6", StringType(), True)\
                       ,StructField("col7", IntegerType(), True)\
                       ,StructField("col8", IntegerType(), True)\
                       ,StructField("col9", IntegerType(), True)\
                       ,StructField("col10", IntegerType(), True)\
                       ,StructField("col11", StringType(), True)\
                       ,StructField("col12", StringType(), True)\
                       ,StructField("col13", IntegerType(), True)\
                       ,StructField("col14", IntegerType(), True)\
                       ,StructField("col15", IntegerType(), True)\
                       ,StructField("col16", IntegerType(), True)\
                       ,StructField("col17", IntegerType(), True)\
                       ,StructField("col18", IntegerType(), True)\
                       ,StructField("col19", IntegerType(), True)\
                       ,StructField("col20", IntegerType(), True)\
                       ,StructField("col21", IntegerType(), True)\
                       ,StructField("col22", IntegerType(), True)\
                       ,StructField("col23", IntegerType(), True)\
                       ,StructField("col24", IntegerType(), True)\
                       ,StructField("col25", IntegerType(), True)])

Note: True (implies nullable allowed)

create the pyspark dataframe:

df = spark.createDataFrame(pdDF,schema=mySchema)

confirm the pandas data frame is now a pyspark data frame:

type(df)

output:

pyspark.sql.dataframe.DataFrame

Aside:

To address Kate's comment below - to impose a general (String) schema you can do the following:

df=spark.createDataFrame(pdDF.astype(str)) 
| improve this answer | |
  • 1
    Is it possible to generalize the schema creation part to just have it create all columns as a certain type? For example, just tell it that all columns as StringType (instead of assigning each column individually) – Kate Jun 4 '19 at 16:13
  • 1
    df=spark.createDataFrame(pdPD.astype(str)) – Grant Shannon Jun 6 '19 at 9:16
  • Hi Grant, in the step where you created 'mySchema', did you have to type all that? Is there a way to extract the schema from an example piece of the pandas dataframe? Thanks. – mel el Aug 11 at 16:21
  • Yes - had to type it all out (copied and pasted and changed where necessary). I've found that trying to get the spark data frame to infer the schema from the pandas data frame (as in the original question above) is too risky. My take is that forcing/imposing the correct schema is the lowest risk strategy. If you cant impose the required schema initially, then the quick and dirty approach would be to impose a string schema on everything (as shown above) and correct the types at a later stage. – Grant Shannon Aug 11 at 23:25
10

I have tried this with your data and it is working :

%pyspark
import pandas as pd
from pyspark.sql import SQLContext
print sc
df = pd.read_csv("test.csv")
print type(df)
print df
sqlCtx = SQLContext(sc)
sqlCtx.createDataFrame(df).show()
| improve this answer | |
  • For my data it takes like forever – luminousmen Mar 14 '18 at 9:07
6

In spark version >= 3 you can convert pandas dataframes to pyspark dataframe in one line

use spark.createDataFrame(pandasDF)

dataset = pd.read_csv("data/AS/test_v2.csv")

sparkDf = spark.createDataFrame(dataset);

if you are confused about spark session variable, spark session is as follows

sc = SparkContext.getOrCreate(SparkConf().setMaster("local[*]"))

spark = SparkSession \
    .builder \
    .getOrCreate()
| improve this answer | |
  • 1
    Thanks for this! I spent a lot of time building a converter between pandas to spark, even started a github repo for it. This sure makes it easy, at least for simple data types. – Tony Fraser Oct 7 at 3:22
0

I received a similar error message once, in my case it was because my pandas dataframe contained NULLs. I will recommend to try & handle this in pandas before converting to spark (this resolved the issue in my case).

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