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From Aakash Basu <aakash.spark....@gmail.com>
Subject Re: Multiple Kafka Spark Streaming Dataframe Join query
Date Fri, 16 Mar 2018 16:12:39 GMT
Hi all,

>From the last mail queries in the bottom, query 1's doubt has been
resolved, I was already guessing so, that I resent same columns from Kafka
producer multiple times, hence the join gave duplicates.

Retested with fresh Kafka feed and problem was solved.

But, the other queries still persists, would anyone like to reply? :)

Thanks,
Aakash.

On 16-Mar-2018 3:57 PM, "Aakash Basu" <aakash.spark.raj@gmail.com> wrote:

> Hi all,
>
> The code was perfectly alright, just the package I was submitting had to
> be the updated one (marked green below). The join happened but the output
> has many duplicates (even though the *how *parameter is by default *inner*)
> -
>
> Spark Submit:
>
> /home/kafka/Downloads/spark-2.3.0-bin-hadoop2.7/bin/spark-submit --packages org.apache.spark:spark-sql-kafka-0-10_2.11:2.3.0
/home/aakashbasu/PycharmProjects/AllMyRnD/Kafka_Spark/Stream_Stream_Join.py
>
>
>
> Code:
>
> from pyspark.sql import SparkSession
> import time
> from pyspark.sql.functions import split, col
>
> class test:
>
>
>     spark = SparkSession.builder \
>         .appName("DirectKafka_Spark_Stream_Stream_Join") \
>         .getOrCreate()
>
>     table1_stream = (spark.readStream.format("kafka").option("startingOffsets", "earliest").option("kafka.bootstrap.servers",
"localhost:9092").option("subscribe", "test1").load())
>
>     table2_stream = (spark.readStream.format("kafka").option("startingOffsets", "earliest").option("kafka.bootstrap.servers",
"localhost:9092").option("subscribe", "test2").load())
>
>
>     query1 = table1_stream.select('value')\
>         .withColumn('value', table1_stream.value.cast("string")) \
>         .withColumn("ID", split(col("value"), ",").getItem(0)) \
>         .withColumn("First_Name", split(col("value"), ",").getItem(1)) \
>         .withColumn("Last_Name", split(col("value"), ",").getItem(2)) \
>         .drop('value')
>
>     query2 = table2_stream.select('value') \
>         .withColumn('value', table2_stream.value.cast("string")) \
>         .withColumn("ID", split(col("value"), ",").getItem(0)) \
>         .withColumn("Department", split(col("value"), ",").getItem(1)) \
>         .withColumn("Date_joined", split(col("value"), ",").getItem(2)) \
>         .drop('value')
>
>     joined_Stream = query1.join(query2, "Id")
>
>     a = query1.writeStream.format("console").start()
>     b = query2.writeStream.format("console").start()
>     c = joined_Stream.writeStream.format("console").start()
>
>     time.sleep(10)
>
>     a.awaitTermination()
>     b.awaitTermination()
>     c.awaitTermination()
>
>
> Output -
>
> +---+----------+---------+---------------+-----------+
> | ID|First_Name|Last_Name|     Department|Date_joined|
> +---+----------+---------+---------------+-----------+
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  3|     Tobit|Robardley|     Accounting|   8/3/2006|
> |  5|     Reggy|Comizzoli|Human Resources|  8/15/2012|
> |  5|     Reggy|Comizzoli|Human Resources|  8/15/2012|
> +---+----------+---------+---------------+-----------+
> only showing top 20 rows
>
>
>
>
> *Queries:*
>
> *1) Why even after inner join, the join is doing a outer type?*
>
> *2) Do we need to put awaitTermination on all the streams? Or putting only
> on the input streams would suffice?*
> *3) This code is not optimized, how to generically optimize streaming
> code?*
>
> Thanks,
> Aakash.
>
> On Fri, Mar 16, 2018 at 3:23 PM, Aakash Basu <aakash.spark.raj@gmail.com>
> wrote:
>
>> Hi,
>>
>> *Thanks to Chris and TD* for perpetually supporting my endeavor. I ran
>> the code with a little bit of tweak here and there, *it worked well in
>> Spark 2.2.1* giving me the Deserialized values (I used withColumn in the
>> writeStream section to run all SQL functions of split and cast).
>>
>> But, when I submit the same code in 2.3.0, I get an error which I
>> couldn't find any solution of, on the internet.
>>
>>
>>
>>
>>
>> *Error: pyspark.sql.utils.StreamingQueryException: u'null\n=== Streaming
>> Query ===\nIdentifier: [id = d956096e-42d2-493c-8b6c-125e3137c291, runId =
>> cd25ec61-c6bb-436c-a93e-80814e1436ec]\nCurrent Committed Offsets:
>> {}\nCurrent Available Offsets: {}\n\nCurrent State: INITIALIZING\nThread
>> State: RUNNABLE'*
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>> *Final code (for clearer understanding of where it may go wrong in 2.3.0)
>> -from pyspark.sql import SparkSessionimport timefrom pyspark.sql.functions
>> import split, colclass test: spark = SparkSession.builder \
>> .appName("DirectKafka_Spark_Stream_Stream_Join") \ .getOrCreate()
>> table1_stream = (spark.readStream.format("kafka").option("startingOffsets",
>> "earliest").option("kafka.bootstrap.servers",
>> "localhost:9092").option("subscribe", "test1").load()) query =
>> table1_stream.select('value').withColumn('value',
>> table1_stream.value.cast("string")) \ .withColumn("ID", split(col("value"),
>> ",").getItem(0)) \ .withColumn("First_Name", split(col("value"),
>> ",").getItem(1)) \ .withColumn("Last_Name", split(col("value"),
>> ",").getItem(2)) \ .drop('value').writeStream.format("console").start()
>> time.sleep(10) query.awaitTermination()# Code working in Spark 2.2.1#
>> /home/kafka/Downloads/spark-2.2.1-bin-hadoop2.7/bin/spark-submit --packages
>> org.apache.spark:spark-sql-kafka-0-10_2.11:2.1.0
>> /home/aakashbasu/PycharmProjects/AllMyRnD/Kafka_Spark/Stream_Stream_Join.py#
>> Code not working in Spark 2.3.0#
>> /home/kafka/Downloads/spark-2.3.0-bin-hadoop2.7/bin/spark-submit --packages
>> org.apache.spark:spark-sql-kafka-0-10_2.11:2.1.0
>> /home/aakashbasu/PycharmProjects/AllMyRnD/Kafka_Spark/Stream_Stream_Join.py*
>> 2) I'm getting the below output as expected, from the above code in
>> 2.2.1. My query is, is there a way to get the header of a file being read
>> and ensure header=True? (Or is it that for Structured Streaming, user has
>> to provide headers explicitly all the time, as data shall always come in
>> this structure [for Kafka] - topic, partition, offset, key, value,
>> timestamp, timestampType; if so, then how to remove column headers
>> explicitly from the data, as in the below table) I know it is a stream, and
>> the data is fed in as messages, but still wanted experts to put some more
>> light into it.
>>
>> +---+----------+---------+
>> | ID|First_Name|Last_Name|
>> +---+----------+---------+
>> | Hi|      null|     null|
>> | id|first_name|last_name|
>> |  1|  Kellyann|    Moyne|
>> |  2|     Morty|  Blacker|
>> |  3|     Tobit|Robardley|
>> |  4|    Wilona|    Kells|
>> |  5|     Reggy|Comizzoli|
>> | id|first_name|last_name|
>> |  1|  Kellyann|    Moyne|
>> |  2|     Morty|  Blacker|
>> |  3|     Tobit|Robardley|
>> |  4|    Wilona|    Kells|
>> |  5|     Reggy|Comizzoli|
>> | id|first_name|last_name|
>> |  1|  Kellyann|    Moyne|
>> |  2|     Morty|  Blacker|
>> |  3|     Tobit|Robardley|
>> |  4|    Wilona|    Kells|
>> |  5|     Reggy|Comizzoli|
>> | id|first_name|last_name|
>> +---+----------+---------+
>> only showing top 20 rows
>>
>>
>> Any help?
>>
>> Thanks,
>> Aakash.
>>
>> On Fri, Mar 16, 2018 at 12:54 PM, sagar grover <sagargrover16@gmail.com>
>> wrote:
>>
>>>
>>> With regards,
>>> Sagar Grover
>>> Phone - 7022175584
>>>
>>> On Fri, Mar 16, 2018 at 12:15 AM, Aakash Basu <
>>> aakash.spark.raj@gmail.com> wrote:
>>>
>>>> Awesome, thanks for detailing!
>>>>
>>>> Was thinking the same, we've to split by comma for csv while casting
>>>> inside.
>>>>
>>>> Cool! Shall try it and revert back tomm.
>>>>
>>>> Thanks a ton!
>>>>
>>>> On 15-Mar-2018 11:50 PM, "Bowden, Chris" <chris.bowden@microfocus.com>
>>>> wrote:
>>>>
>>>>> To remain generic, the KafkaSource can only offer the lowest common
>>>>> denominator for a schema (topic, partition, offset, key, value, timestamp,
>>>>> timestampType). As such, you can't just feed it a StructType. When you
are
>>>>> using a producer or consumer directly with Kafka, serialization and
>>>>> deserialization is often an orthogonal and implicit transform. However,
in
>>>>> Spark, serialization and deserialization is an explicit transform (e.g.,
>>>>> you define it in your query plan).
>>>>>
>>>>>
>>>>> To make this more granular, if we imagine your source is registered as
>>>>> a temp view named "foo":
>>>>>
>>>>> SELECT
>>>>>
>>>>>   split(cast(value as string), ',')[0] as id,
>>>>>
>>>>>   split(cast(value as string), ',')[1] as name
>>>>>
>>>>> FROM foo;
>>>>>
>>>>>
>>>>> Assuming you were providing the following messages to Kafka:
>>>>>
>>>>> 1,aakash
>>>>>
>>>>> 2,tathagata
>>>>>
>>>>> 3,chris
>>>>>
>>>>>
>>>>> You could make the query plan less repetitive. I don't believe Spark
>>>>> offers from_csv out of the box as an expression (although CSV is well
>>>>> supported as a data source). You could implement an expression by reusing
a
>>>>> lot of the supporting CSV classes which may result in a better user
>>>>> experience vs. explicitly using split and array indices, etc. In this
>>>>> simple example, casting the binary to a string just works because there
is
>>>>> a common understanding of string's encoded as bytes between Spark and
Kafka
>>>>> by default.
>>>>>
>>>>>
>>>>> -Chris
>>>>> ------------------------------
>>>>> *From:* Aakash Basu <aakash.spark.raj@gmail.com>
>>>>> *Sent:* Thursday, March 15, 2018 10:48:45 AM
>>>>> *To:* Bowden, Chris
>>>>> *Cc:* Tathagata Das; Dylan Guedes; Georg Heiler; user
>>>>>
>>>>> *Subject:* Re: Multiple Kafka Spark Streaming Dataframe Join query
>>>>>
>>>>> Hey Chris,
>>>>>
>>>>> You got it right. I'm reading a *csv *file from local as mentioned
>>>>> above, with a console producer on Kafka side.
>>>>>
>>>>> So, as it is a csv data with headers, shall I then use from_csv on the
>>>>> spark side and provide a StructType to shape it up with a schema and
then
>>>>> cast it to string as TD suggested?
>>>>>
>>>>> I'm getting all of your points at a very high level. A little more
>>>>> granularity would help.
>>>>>
>>>>> *In the slide TD just shared*, PFA, I'm confused at the point where
>>>>> he is casting the value as string. Logically, the value shall consist
of
>>>>> all the entire data set, so, suppose, I've a table with many columns,
*how
>>>>> can I provide a single alias as he did in the groupBy. I missed it there
>>>>> itself. Another question is, do I have to cast in groupBy itself? Can't
I
>>>>> do it directly in a select query? The last one, if the steps are followed,
>>>>> can I then run a SQL query on top of the columns separately?*
>>>>>
>>>>> Thanks,
>>>>> Aakash.
>>>>>
>>>>>
>>>>> On 15-Mar-2018 9:07 PM, "Bowden, Chris" <chris.bowden@microfocus.com>
>>>>> wrote:
>>>>>
>>>>> You need to tell Spark about the structure of the data, it doesn't
>>>>> know ahead of time if you put avro, json, protobuf, etc. in kafka for
the
>>>>> message format. If the messages are in json, Spark provides from_json
out
>>>>> of the box. For a very simple POC you can happily cast the value to a
>>>>> string, etc. if you are prototyping and pushing messages by hand with
a
>>>>> console producer on the kafka side.
>>>>>
>>>>> ________________________________________
>>>>> From: Aakash Basu <aakash.spark.raj@gmail.com>
>>>>> Sent: Thursday, March 15, 2018 7:52:28 AM
>>>>> To: Tathagata Das
>>>>> Cc: Dylan Guedes; Georg Heiler; user
>>>>> Subject: Re: Multiple Kafka Spark Streaming Dataframe Join query
>>>>>
>>>>> Hi,
>>>>>
>>>>> And if I run this below piece of code -
>>>>>
>>>>>
>>>>> from pyspark.sql import SparkSession
>>>>> import time
>>>>>
>>>>> class test:
>>>>>
>>>>>
>>>>>     spark = SparkSession.builder \
>>>>>         .appName("DirectKafka_Spark_Stream_Stream_Join") \
>>>>>         .getOrCreate()
>>>>>     # ssc = StreamingContext(spark, 20)
>>>>>
>>>>>     table1_stream = (spark.readStream.format("kafka").option("startingOffsets",
>>>>> "earliest").option("kafka.bootstrap.servers",
>>>>> "localhost:9092").option("subscribe", "test1").load())
>>>>>
>>>>>     table2_stream = (
>>>>>     spark.readStream.format("kafka").option("startingOffsets",
>>>>> "earliest").option("kafka.bootstrap.servers",
>>>>>
>>>>>             "localhost:9092").option("subscribe",
>>>>>
>>>>>                                      "test2").load())
>>>>>
>>>>>     joined_Stream = table1_stream.join(table2_stream, "Id")
>>>>>     #
>>>>>     # joined_Stream.show()
>>>>>
>>>>>     # query =
>>>>>     table1_stream.writeStream.format("console").start().awaitTermination()
>>>>> # .queryName("table_A").format("memory")
>>>>>     # spark.sql("select * from table_A").show()
>>>>>     time.sleep(10)  # sleep 20 seconds
>>>>>     # query.stop()
>>>>>     # query
>>>>>
>>>>>
>>>>> # /home/kafka/Downloads/spark-2.2.1-bin-hadoop2.7/bin/spark-submit
>>>>> --packages org.apache.spark:spark-sql-kafka-0-10_2.11:2.1.0
>>>>> Stream_Stream_Join.py
>>>>>
>>>>>
>>>>>
>>>>>
>>>>> I get the below error (in Spark 2.3.0) -
>>>>>
>>>>> Traceback (most recent call last):
>>>>>   File "/home/aakashbasu/PycharmProjects/AllMyRnD/Kafka_Spark/Stream_Stream_Join.py",
>>>>> line 4, in <module>
>>>>>     class test:
>>>>>   File "/home/aakashbasu/PycharmProjects/AllMyRnD/Kafka_Spark/Stream_Stream_Join.py",
>>>>> line 19, in test
>>>>>     joined_Stream = table1_stream.join(table2_stream, "Id")
>>>>>   File "/home/kafka/Downloads/spark-2.3.0-bin-hadoop2.7/python/lib/
>>>>> pyspark.zip/pyspark/sql/dataframe.py", line 931, in join
>>>>>   File "/home/kafka/Downloads/spark-2.3.0-bin-hadoop2.7/python/lib/
>>>>> py4j-0.10.6-src.zip/py4j/java_gateway.py", line 1160, in __call__
>>>>>   File "/home/kafka/Downloads/spark-2.3.0-bin-hadoop2.7/python/lib/
>>>>> pyspark.zip/pyspark/sql/utils.py", line 69, in deco
>>>>> pyspark.sql.utils.AnalysisException: u'USING column `Id` cannot be
>>>>> resolved on the left side of the join. The left-side columns: [key, value,
>>>>> topic, partition, offset, timestamp, timestampType];'
>>>>>
>>>>> Seems, as per the documentation, they key and value are deserialized
>>>>> as byte arrays.
>>>>>
>>>>> I am badly stuck at this step, not many materials online, with steps
>>>>> to proceed on this, too.
>>>>>
>>>>> Any help, guys?
>>>>>
>>>>> Thanks,
>>>>> Aakash.
>>>>>
>>>>>
>>>>> On Thu, Mar 15, 2018 at 7:54 PM, Aakash Basu <
>>>>> aakash.spark.raj@gmail.com<mailto:aakash.spark.raj@gmail.com>>
wrote:
>>>>> Any help on the above?
>>>>>
>>>>> On Thu, Mar 15, 2018 at 3:53 PM, Aakash Basu <
>>>>> aakash.spark.raj@gmail.com<mailto:aakash.spark.raj@gmail.com>>
wrote:
>>>>> Hi,
>>>>>
>>>>> I progressed a bit in the above mentioned topic -
>>>>>
>>>>> 1) I am feeding a CSV file into the Kafka topic.
>>>>> 2) Feeding the Kafka topic as readStream as TD's article suggests.
>>>>> 3) Then, simply trying to do a show on the streaming dataframe, using
>>>>> queryName('XYZ') in the writeStream and writing a sql query on top of
it,
>>>>> but that doesn't show anything.
>>>>> 4) Once all the above problems are resolved, I want to perform a
>>>>> stream-stream join.
>>>>>
>>>>> The CSV file I'm ingesting into Kafka has -
>>>>>
>>>>> id,first_name,last_name
>>>>> 1,Kellyann,Moyne
>>>>> 2,Morty,Blacker
>>>>> 3,Tobit,Robardley
>>>>> 4,Wilona,Kells
>>>>> 5,Reggy,Comizzoli
>>>>>
>>>>>
>>>>> My test code -
>>>>>
>>>>>
>>>>> from pyspark.sql import SparkSession
>>>>> import time
>>>>>
>>>>> class test:
>>>>>
>>>>>
>>>>>     spark = SparkSession.builder \
>>>>>         .appName("DirectKafka_Spark_Stream_Stream_Join") \
>>>>>         .getOrCreate()
>>>>>     # ssc = StreamingContext(spark, 20)
>>>>>
>>>>>     table1_stream = (spark.readStream.format("kafka").option("startingOffsets",
>>>>> "earliest").option("kafka.bootstrap.servers",
>>>>> "localhost:9092").option("subscribe", "test1").load())
>>>>>
>>>>>     # table2_stream = (spark.readStream.format("kafka").option("
>>>>> kafka.bootstrap.servers", "localhost:9092").option("subscribe",
>>>>> "test2").load())
>>>>>
>>>>>     # joined_Stream = table1_stream.join(table2_stream, "Id")
>>>>>     #
>>>>>     # joined_Stream.show()
>>>>>
>>>>>     query = table1_stream.writeStream.form
>>>>> at("console").queryName("table_A").start()  # .format("memory")
>>>>>     # spark.sql("select * from table_A").show()
>>>>>     # time.sleep(10)  # sleep 20 seconds
>>>>>     # query.stop()
>>>>>     query.awaitTermination()
>>>>>
>>>>>
>>>>> # /home/kafka/Downloads/spark-2.2.1-bin-hadoop2.7/bin/spark-submit
>>>>> --packages org.apache.spark:spark-sql-kafka-0-10_2.11:2.1.0
>>>>> Stream_Stream_Join.py
>>>>>
>>>>>
>>>>> The output I'm getting (whereas I simply want to show() my dataframe)
-
>>>>>
>>>>> +----+--------------------+-----+---------+------+----------
>>>>> ----------+-------------+
>>>>> | key|               value|topic|partition|offset|
>>>>>  timestamp|timestampType|
>>>>> +----+--------------------+-----+---------+------+----------
>>>>> ----------+-------------+
>>>>> |null|[69 64 2C 66 69 7...|test1|        0|  5226|2018-03-15
>>>>> 15:48:...|            0|
>>>>> |null|[31 2C 4B 65 6C 6...|test1|        0|  5227|2018-03-15
>>>>> 15:48:...|            0|
>>>>> |null|[32 2C 4D 6F 72 7...|test1|        0|  5228|2018-03-15
>>>>> 15:48:...|            0|
>>>>> |null|[33 2C 54 6F 62 6...|test1|        0|  5229|2018-03-15
>>>>> 15:48:...|            0|
>>>>> |null|[34 2C 57 69 6C 6...|test1|        0|  5230|2018-03-15
>>>>> 15:48:...|            0|
>>>>> |null|[35 2C 52 65 67 6...|test1|        0|  5231|2018-03-15
>>>>> 15:48:...|            0|
>>>>> +----+--------------------+-----+---------+------+----------
>>>>> ----------+-------------+
>>>>>
>>>>> 18/03/15 15:48:07 INFO StreamExecution: Streaming query made progress:
>>>>> {
>>>>>   "id" : "ca7e2862-73c6-41bf-9a6f-c79e533a2bf8",
>>>>>   "runId" : "0758ddbd-9b1c-428b-aa52-1dd40d477d21",
>>>>>   "name" : "table_A",
>>>>>   "timestamp" : "2018-03-15T10:18:07.218Z",
>>>>>   "numInputRows" : 6,
>>>>>   "inputRowsPerSecond" : 461.53846153846155,
>>>>>   "processedRowsPerSecond" : 14.634146341463415,
>>>>>   "durationMs" : {
>>>>>     "addBatch" : 241,
>>>>>     "getBatch" : 15,
>>>>>     "getOffset" : 2,
>>>>>     "queryPlanning" : 2,
>>>>>     "triggerExecution" : 410,
>>>>>     "walCommit" : 135
>>>>>   },
>>>>>   "stateOperators" : [ ],
>>>>>   "sources" : [ {
>>>>>     "description" : "KafkaSource[Subscribe[test1]]",
>>>>>     "startOffset" : {
>>>>>       "test1" : {
>>>>>         "0" : 5226
>>>>>       }
>>>>>     },
>>>>>     "endOffset" : {
>>>>>       "test1" : {
>>>>>         "0" : 5232
>>>>>       }
>>>>>     },
>>>>>     "numInputRows" : 6,
>>>>>     "inputRowsPerSecond" : 461.53846153846155,
>>>>>     "processedRowsPerSecond" : 14.634146341463415
>>>>>   } ],
>>>>>   "sink" : {
>>>>>     "description" : "org.apache.spark.sql.executio
>>>>> n.streaming.ConsoleSink@3dfc7990"
>>>>>   }
>>>>> }
>>>>>
>>>>> P.S - If I add the below piece in the code, it doesn't print a DF of
>>>>> the actual table.
>>>>>
>>>>> spark.sql("select * from table_A").show()
>>>>>
>>>>> Any help?
>>>>>
>>>>>
>>>>> Thanks,
>>>>> Aakash.
>>>>>
>>>>> On Thu, Mar 15, 2018 at 10:52 AM, Aakash Basu <
>>>>> aakash.spark.raj@gmail.com<mailto:aakash.spark.raj@gmail.com>>
wrote:
>>>>> Thanks to TD, the savior!
>>>>>
>>>>> Shall look into it.
>>>>>
>>>>> On Thu, Mar 15, 2018 at 1:04 AM, Tathagata Das <
>>>>> tathagata.das1565@gmail.com<mailto:tathagata.das1565@gmail.com>>
>>>>> wrote:
>>>>> Relevant: https://databricks.com/blog/2018/03/13/introducing-stream-st
>>>>> ream-joins-in-apache-spark-2-3.html
>>>>>
>>>>> This is true stream-stream join which will automatically buffer
>>>>> delayed data and appropriately join stuff with SQL join semantics. Please
>>>>> check it out :)
>>>>>
>>>>> TD
>>>>>
>>>>>
>>>>>
>>>>> On Wed, Mar 14, 2018 at 12:07 PM, Dylan Guedes <djmgguedes@gmail.com
>>>>> <mailto:djmgguedes@gmail.com>> wrote:
>>>>> I misread it, and thought that you question was if pyspark supports
>>>>> kafka lol. Sorry!
>>>>>
>>>>> On Wed, Mar 14, 2018 at 3:58 PM, Aakash Basu <
>>>>> aakash.spark.raj@gmail.com<mailto:aakash.spark.raj@gmail.com>>
wrote:
>>>>> Hey Dylan,
>>>>>
>>>>> Great!
>>>>>
>>>>> Can you revert back to my initial and also the latest mail?
>>>>>
>>>>> Thanks,
>>>>> Aakash.
>>>>>
>>>>> On 15-Mar-2018 12:27 AM, "Dylan Guedes" <djmgguedes@gmail.com<mailto:d
>>>>> jmgguedes@gmail.com>> wrote:
>>>>> Hi,
>>>>>
>>>>> I've been using the Kafka with pyspark since 2.1.
>>>>>
>>>>> On Wed, Mar 14, 2018 at 3:49 PM, Aakash Basu <
>>>>> aakash.spark.raj@gmail.com<mailto:aakash.spark.raj@gmail.com>>
wrote:
>>>>> Hi,
>>>>>
>>>>> I'm yet to.
>>>>>
>>>>> Just want to know, when does Spark 2.3 with 0.10 Kafka Spark Package
>>>>> allows Python? I read somewhere, as of now Scala and Java are the languages
>>>>> to be used.
>>>>>
>>>>> Please correct me if am wrong.
>>>>>
>>>>> Thanks,
>>>>> Aakash.
>>>>>
>>>>> On 14-Mar-2018 8:24 PM, "Georg Heiler" <georg.kf.heiler@gmail.com<mai
>>>>> lto:georg.kf.heiler@gmail.com>> wrote:
>>>>> Did you try spark 2.3 with structured streaming? There watermarking
>>>>> and plain sql might be really interesting for you.
>>>>> Aakash Basu <aakash.spark.raj@gmail.com<mailto:
>>>>> aakash.spark.raj@gmail.com>> schrieb am Mi. 14. März 2018 um 14:57:
>>>>> Hi,
>>>>>
>>>>> Info (Using):
>>>>> Spark Streaming Kafka 0.8 package
>>>>> Spark 2.2.1
>>>>> Kafka 1.0.1
>>>>>
>>>>> As of now, I am feeding paragraphs in Kafka console producer and my
>>>>> Spark, which is acting as a receiver is printing the flattened words,
which
>>>>> is a complete RDD operation.
>>>>>
>>>>> My motive is to read two tables continuously (being updated) as two
>>>>> distinct Kafka topics being read as two Spark Dataframes and join them
>>>>> based on a key and produce the output. (I am from Spark-SQL background,
>>>>> pardon my Spark-SQL-ish writing)
>>>>>
>>>>> It may happen, the first topic is receiving new data 15 mins prior to
>>>>> the second topic, in that scenario, how to proceed? I should not lose
any
>>>>> data.
>>>>>
>>>>> As of now, I want to simply pass paragraphs, read them as RDD, convert
>>>>> to DF and then join to get the common keys as the output. (Just for R&D).
>>>>>
>>>>> Started using Spark Streaming and Kafka today itself.
>>>>>
>>>>> Please help!
>>>>>
>>>>> Thanks,
>>>>> Aakash.
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>
>>>>>
>>>
>>
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