I have a spark dataframe(input_dataframe), data in this dataframe looks like as below:
id value
1 a
2 x|y|z
3 t|u
I want to have output_dataframe, having pipe separated fields exploded and it should look like below:
id value
1 a
2 x
2 y
2 z
3 t
3 u
Please help me achieving the desired solution using PySpark. Any help will be appreciated
we can first split and then explode the value column using functions as below,
>>> l=[(1,'a'),(2,'x|y|z'),(3,'t|u')]
>>> df = spark.createDataFrame(l,['id','val'])
>>> df.show()
+---+-----+
| id| val|
+---+-----+
| 1| a|
| 2|x|y|z|
| 3| t|u|
+---+-----+
>>> from pyspark.sql import functions as F
>>> df.select('id',F.explode(F.split(df.val,'[|]')).alias('value')).show()
+---+-----+
| id|value|
+---+-----+
| 1| a|
| 2| x|
| 2| y|
| 2| z|
| 3| t|
| 3| u|
+---+-----+
Related
I have two data frames. I need to filter one to only show values that are contained in the other.
table_a:
+---+----+
|AID| foo|
+---+----+
| 1 | bar|
| 2 | bar|
| 3 | bar|
| 4 | bar|
+---+----+
table_b:
+---+
|BID|
+---+
| 1 |
| 2 |
+---+
In the end I want to filter out what was in table_a to only the IDs that are in the table_b, like this:
+--+----+
|ID| foo|
+--+----+
| 1| bar|
| 2| bar|
+--+----+
Here is what I'm trying to do
result_table = table_a.filter(table_b.BID.contains(table_a.AID))
But this doesn't seem to be working. It looks like I'm getting ALL values.
NOTE: I can't add any other imports other than pyspark.sql.functions import col
You can join the two tables and specify how = 'left_semi'
A left semi-join returns values from the left side of the relation that has a match with the right.
result_table = table_a.join(table_b, (table_a.AID == table_b.BID), \
how = "left_semi").drop("BID")
result_table.show()
+---+---+
|AID|foo|
+---+---+
| 1|bar|
| 2|bar|
+---+---+
In case you have duplicates or Multiple values in the second dataframe and you want to take only distinct values, below approach can be useful to tackle such use cases -
Create the Dataframe
df = spark.createDataFrame([(1,"bar"),(2,"bar"),(3,"bar"),(4,"bar")],[ "col1","col2"])
df_lookup = spark.createDataFrame([(1,1),(1,2)],[ "id","val"])
df.show(truncate=True)
df_lookup.show()
+----+----+
|col1|col2|
+----+----+
| 1| bar|
| 2| bar|
| 3| bar|
| 4| bar|
+----+----+
+---+---+
| id|val|
+---+---+
| 1| 1|
| 1| 2|
+---+---+
get all the unique values of val column in dataframe two and take in a set/list variable
df_lookup_var = df_lookup.groupBy("id").agg(F.collect_set("val").alias("val")).collect()[0][1][0]
print(df_lookup_var)
df = df.withColumn("case_col", F.when((F.col("col1").isin([1,2])), F.lit("1")).otherwise(F.lit("0")))
df = df.filter(F.col("case_col") == F.lit("1"))
df.show()
+----+----+--------+
|col1|col2|case_col|
+----+----+--------+
| 1| bar| 1|
| 2| bar| 1|
+----+----+--------+
This should work too:
table_a.where( col(AID).isin(table_b.BID.tolist() ) )
Pyspark newbie here. I have a dataframe, say,
+------------+-------+----+
| id| mode|count|
+------------+------+-----+
| 146360 | DOS| 30|
| 423541 | UNO| 3|
+------------+------+-----+
I want a dataframe with a new column aggregate with count * 2 , when mode is 'DOS' and count * 1 when mode is 'UNO'
+------------+-------+----+---------+
| id| mode|count|aggregate|
+------------+------+-----+---------+
| 146360 | DOS| 30| 60|
| 423541 | UNO| 3| 3|
+------------+------+-----+---------+
Appreciate your inputs and also some pointers to best practices :)
Method 1: using pyspark.sql.functions with when :
from pyspark.sql.functions import when,col
df = df.withColumn('aggregate', when(col('mode')=='DOS', col('count')*2).when(col('mode')=='UNO', col('count')*1).otherwise('count'))
Method 2: using SQL CASE expression with selectExpr:
df = df.selectExpr("*","CASE WHEN mode == 'DOS' THEN count*2 WHEN mode == 'UNO' THEN count*1 ELSE count END AS aggregate")
The result:
+------+----+-----+---------+
| id|mode|count|aggregate|
+------+----+-----+---------+
|146360| DOS| 30| 60|
|423541| UNO| 3| 3|
+------+----+-----+---------+
I think the question is related to: Spark DataFrame: count distinct values of every column
So basically I have a spark dataframe, with column A has values of 1,1,2,2,1
So I want to count how many times each distinct value (in this case, 1 and 2) appears in the column A, and print something like
distinct_values | number_of_apperance
1 | 3
2 | 2
I just post this as I think the other answer with the alias could be confusing. What you need are the groupby and the count methods:
from pyspark.sql.types import *
l = [
1
,1
,2
,2
,1
]
df = spark.createDataFrame(l, IntegerType())
df.groupBy('value').count().show()
+-----+-----+
|value|count|
+-----+-----+
| 1| 3|
| 2| 2|
+-----+-----+
I am not sure if you are looking for below solution:
Here are my thoughts on this. Suppose you have a dataframe like this.
>>> listA = [(1,'AAA','USA'),(2,'XXX','CHN'),(3,'KKK','USA'),(4,'PPP','USA'),(5,'EEE','USA'),(5,'HHH','THA')]
>>> df = spark.createDataFrame(listA, ['id', 'name','country'])
>>> df.show();
+---+----+-------+
| id|name|country|
+---+----+-------+
| 1| AAA| USA|
| 2| XXX| CHN|
| 3| KKK| USA|
| 4| PPP| USA|
| 5| EEE| USA|
| 5| HHH| THA|
+---+----+-------+
I want to know the distinct country code appears in this particular dataframe and should be printed as alias name.
import pyspark.sql.functions as func
df.groupBy('country').count().select(func.col("country").alias("distinct_country"),func.col("count").alias("country_count")).show()
+----------------+-------------+
|distinct_country|country_count|
+----------------+-------------+
| THA| 1|
| USA| 4|
| CHN| 1|
+----------------+-------------+
were you looking something similar to this?
I have two dataframes like following.
val file1 = spark.read.format("csv").option("sep", ",").option("inferSchema", "true").option("header", "true").load("file1.csv")
file1.show()
+---+-------+-----+-----+-------+
| id| name|mark1|mark2|version|
+---+-------+-----+-----+-------+
| 1| Priya | 80| 99| 0|
| 2| Teju | 10| 5| 0|
+---+-------+-----+-----+-------+
val file2 = spark.read.format("csv").option("sep", ",").option("inferSchema", "true").option("header", "true").load("file2.csv")
file2.show()
+---+-------+-----+-----+-------+
| id| name|mark1|mark2|version|
+---+-------+-----+-----+-------+
| 1| Priya | 80| 99| 0|
| 2| Teju | 70| 5| 0|
+---+-------+-----+-----+-------+
Now I am comparing two dataframes and filtering out the mismatch values like this.
val columns = file1.schema.fields.map(_.name)
val selectiveDifferences = columns.map(col => file1.select(col).except(file2.select(col)))
selectiveDifferences.map(diff => {if(diff.count > 0) diff.show})
+-----+
|mark1|
+-----+
| 10|
+-----+
I need to add the extra row into the dataframe, 1 for the mismatch value from the dataframe 2 and update the version number like this.
file1.show()
+---+-------+-----+-----+-------+
| id| name|mark1|mark2|version|
+---+-------+-----+-----+-------+
| 1| Priya | 80| 99| 0|
| 2| Teju | 10| 5| 0|
| 3| Teju | 70| 5| 1|
+---+-------+-----+-----+-------+
I am struggling to achieve the above step and it is my expected output. Any help would be appreciated.
You can get your final dataframe by using except and union as following
val count = file1.count()
import org.apache.spark.sql.expressions._
import org.apache.spark.sql.functions._
file1.union(file2.except(file1)
.withColumn("version", lit(1)) //changing the version
.withColumn("id", (row_number.over(Window.orderBy("id")))+lit(count)) //changing the id number
)
lit, row_number and window functions are used to generate the id and versions
Note : use of window function to generate the new id makes the process inefficient as all the data would be collected in one executor for generating new id
I am having problem figuring this. Here is the problem statement
lets say I have a dataframe, I want to select value for column c where column b value is foo and create a new column D and repeat the vale "3" for all rows
+---+----+---+
| A| B| C|
+---+----+---+
| 4|blah| 2|
| 2| | 3|
| 56| foo| 3|
|100|null| 5|
+---+----+---+
want it to become:
+---+----+---+-----+
| A| B| C| D |
+---+----+---+-----+
| 4|blah| 2| 3 |
| 2| | 3| 3 |
| 56| foo| 3| 3 |
|100|null| 5| 3 |
+---+----+---+-----+
You will have to extract the column C value i.e. 3 with foo in column B
import org.apache.spark.sql.functions._
val value = df.filter(col("B") === "foo").select("C").first()(0)
Then use that value using withColumn to create a new column D using lit function
df.withColumn("D", lit(value)).show(false)
You should get your desired output.