问题
I\'m trying to transpose some columns of my table to row. I\'m using Python and Spark 1.5.0. Here is my initial table:
+-----+-----+-----+-------+
| A |col_1|col_2|col_...|
+-----+-------------------+
| 1 | 0.0| 0.6| ... |
| 2 | 0.6| 0.7| ... |
| 3 | 0.5| 0.9| ... |
| ...| ...| ...| ... |
I would like to have somthing like this:
+-----+--------+-----------+
| A | col_id | col_value |
+-----+--------+-----------+
| 1 | col_1| 0.0|
| 1 | col_2| 0.6|
| ...| ...| ...|
| 2 | col_1| 0.6|
| 2 | col_2| 0.7|
| ...| ...| ...|
| 3 | col_1| 0.5|
| 3 | col_2| 0.9|
| ...| ...| ...|
Does someone know haw I can do it? Thank you for your help.
回答1:
It is relatively simple to do with basic Spark SQL functions.
Python
from pyspark.sql.functions import array, col, explode, struct, lit
df = sc.parallelize([(1, 0.0, 0.6), (1, 0.6, 0.7)]).toDF(["A", "col_1", "col_2"])
def to_long(df, by):
# Filter dtypes and split into column names and type description
cols, dtypes = zip(*((c, t) for (c, t) in df.dtypes if c not in by))
# Spark SQL supports only homogeneous columns
assert len(set(dtypes)) == 1, "All columns have to be of the same type"
# Create and explode an array of (column_name, column_value) structs
kvs = explode(array([
struct(lit(c).alias("key"), col(c).alias("val")) for c in cols
])).alias("kvs")
return df.select(by + [kvs]).select(by + ["kvs.key", "kvs.val"])
to_long(df, ["A"])
Scala:
import org.apache.spark.sql.DataFrame
import org.apache.spark.sql.functions.{array, col, explode, lit, struct}
val df = Seq((1, 0.0, 0.6), (1, 0.6, 0.7)).toDF("A", "col_1", "col_2")
def toLong(df: DataFrame, by: Seq[String]): DataFrame = {
val (cols, types) = df.dtypes.filter{ case (c, _) => !by.contains(c)}.unzip
require(types.distinct.size == 1, s"${types.distinct.toString}.length != 1")
val kvs = explode(array(
cols.map(c => struct(lit(c).alias("key"), col(c).alias("val"))): _*
))
val byExprs = by.map(col(_))
df
.select(byExprs :+ kvs.alias("_kvs"): _*)
.select(byExprs ++ Seq($"_kvs.key", $"_kvs.val"): _*)
}
toLong(df, Seq("A"))
回答2:
The Spark local linear algebra libraries are presently very weak: and they do not include basic operations as the above.
There is a JIRA for fixing this for Spark 2.1 - but that will not help you today.
Something to consider: performing a transpose will likely require completely shuffling the data.
For now you will need to write RDD code directly. I have written transpose
in scala - but not in python. Here is the scala
version:
def transpose(mat: DMatrix) = {
val nCols = mat(0).length
val matT = mat
.flatten
.zipWithIndex
.groupBy {
_._2 % nCols
}
.toSeq.sortBy {
_._1
}
.map(_._2)
.map(_.map(_._1))
.toArray
matT
}
So you can convert that to python for your use. I do not have bandwidth to write/test that at this particular moment: let me know if you were unable to do that conversion.
At the least - the following are readily converted to python
.
zipWithIndex
-->enumerate()
(python equivalent - credit to @zero323)map
-->[someOperation(x) for x in ..]
groupBy
-->itertools.groupBy()
Here is the implementation for flatten
which does not have a python equivalent:
def flatten(L):
for item in L:
try:
for i in flatten(item):
yield i
except TypeError:
yield item
So you should be able to put those together for a solution.
回答3:
Use flatmap. Something like below should work
from pyspark.sql import Row
def rowExpander(row):
rowDict = row.asDict()
valA = rowDict.pop('A')
for k in rowDict:
yield Row(**{'A': valA , 'colID': k, 'colValue': row[k]})
newDf = sqlContext.createDataFrame(df.rdd.flatMap(rowExpander))
回答4:
I took the Scala answer that @javadba wrote and created a Python version for transposing all columns in a DataFrame
. This might be a bit different from what OP was asking...
from itertools import chain
from pyspark.sql import DataFrame
def _sort_transpose_tuple(tup):
x, y = tup
return x, tuple(zip(*sorted(y, key=lambda v_k: v_k[1], reverse=False)))[0]
def transpose(X):
"""Transpose a PySpark DataFrame.
Parameters
----------
X : PySpark ``DataFrame``
The ``DataFrame`` that should be tranposed.
"""
# validate
if not isinstance(X, DataFrame):
raise TypeError('X should be a DataFrame, not a %s'
% type(X))
cols = X.columns
n_features = len(cols)
# Sorry for this unreadability...
return X.rdd.flatMap( # make into an RDD
lambda xs: chain(xs)).zipWithIndex().groupBy( # zip index
lambda val_idx: val_idx[1] % n_features).sortBy( # group by index % n_features as key
lambda grp_res: grp_res[0]).map( # sort by index % n_features key
lambda grp_res: _sort_transpose_tuple(grp_res)).map( # maintain order
lambda key_col: key_col[1]).toDF() # return to DF
For example:
>>> X = sc.parallelize([(1,2,3), (4,5,6), (7,8,9)]).toDF()
>>> X.show()
+---+---+---+
| _1| _2| _3|
+---+---+---+
| 1| 2| 3|
| 4| 5| 6|
| 7| 8| 9|
+---+---+---+
>>> transpose(X).show()
+---+---+---+
| _1| _2| _3|
+---+---+---+
| 1| 4| 7|
| 2| 5| 8|
| 3| 6| 9|
+---+---+---+
回答5:
A very handy way to implement:
from pyspark.sql import Row
def rowExpander(row):
rowDict = row.asDict()
valA = rowDict.pop('A')
for k in rowDict:
yield Row(**{'A': valA , 'colID' : k, 'colValue' : row[k]})
newDf = sqlContext.createDataFrame(df.rdd.flatMap(rowExpander)
回答6:
One way to solve with pyspark sql
using functions create_map
and explode
.
from pyspark.sql import functions as func
#Use `create_map` to create the map of columns with constant
df = df.withColumn('mapCol', \
func.create_map(func.lit('col_1'),df.col_1,
func.lit('col_2'),df.col_2,
func.lit('col_3'),df.col_3
)
)
#Use explode function to explode the map
res = df.select('*',func.explode(df.mapCol).alias('col_id','col_value'))
res.show()
回答7:
To transpose Dataframe in pySpark
, I use pivot
over the temporary created column, which I drop at the end of the operation.
Say, we have a table like this. What we wanna do is to find all users over each listed_days_bin
value.
+------------------+-------------+
| listed_days_bin | users_count |
+------------------+-------------+
|1 | 5|
|0 | 2|
|0 | 1|
|1 | 3|
|1 | 4|
|2 | 5|
|2 | 7|
|2 | 2|
|1 | 1|
+------------------+-------------+
Create new temp column - 'pvt_value'
, aggregate over it and pivot results
import pyspark.sql.functions as F
agg_df = df.withColumn('pvt_value', lit(1))\
.groupby('pvt_value')\
.pivot('listed_days_bin')\
.agg(F.sum('users_count')).drop('pvt_value')
New Dataframe should look like:
+----+---+---+
| 0 | 1 | 2 | # Columns
+----+---+---+
| 3| 13| 14| # Users over the bin
+----+---+---+
来源:https://stackoverflow.com/questions/37864222/transpose-column-to-row-with-spark