spark-user mailing list archives

Site index · List index
Message view « Date » · « Thread »
Top « Date » · « Thread »
From András Kolbert <kolbertand...@gmail.com>
Subject Re: Use case advice
Date Thu, 14 Jan 2021 12:54:08 GMT
Thanks, Muru, very helpful suggestion! Delta Lake is amazing, completely
changed a few of my projects!

One question regarding that.
When I use the following statement, all works fine and I can use delta
properly, in the spark context that jupyter initiates automatically.

export PYSPARK_DRIVER_PYTHON=jupyter
export PYSPARK_DRIVER_PYTHON_OPTS='notebook --no-browser --port=8890'

PYSPARK_PYTHON=pyspark \
        --master yarn \
        --deploy-mode client \
        --driver-memory 4g \
        --executor-memory 16G \
        --executor-cores 1 \
        --num-executors 8 \
        --conf
spark.yarn.archive=hdfs://node-master:9000/libs/spark/jars/spark-libs.jar \
        --jars
hdfs://node-master:9000/libs/spark/common/spark-streaming-kafka-0-8-assembly_2.11-2.4.4.jar,hdfs://node-master:9000/libs/spark/common/delta-core_2.11-0.6.1.jar


However, I would like to have a local pyspark initially, and only connect
to YARN when the specific notebook is configured in that way.

1)

export PYSPARK_DRIVER_PYTHON=jupyter
export PYSPARK_DRIVER_PYTHON_OPTS='notebook --no-browser --port=8890'

PYSPARK_PYTHON=pyspark

2)
conf = spark.sparkContext._conf.setAll([
    ('spark.app.name', 'Delta Demo'),
    ('spark.yarn.jars',
'hdfs://node-master:9000/libs/spark/common/delta-core_2.11-0.6.1.jar'),
    ("spark.jars.packages", "io.delta:delta-core_2.11:0.6.1"),
    ("spark.sql.extensions", "io.delta.sql.DeltaSparkSessionExtension"),
    ("spark.sql.catalog.spark_catalog",
"org.apache.spark.sql.delta.catalog.DeltaCatalog")
    ])
spark.sparkContext.stop()

spark = SparkSession \
    .builder \
    .config(conf=conf) \
    .getOrCreate()
sc = spark.sparkContext

spark.sparkContext.addPyFile("hdfs://node-master:9000/libs/spark/common/delta-core_2.11-0.6.1.jar")
from delta.tables import *
delta_path = "/data/delta-table"
data = spark.range(0, 5)
data.show()
data.write.format("delta").mode("overwrite").save(delta_path)


This way, I keep facing with the ' Error: java.lang.ClassNotFoundException:
Failed to find data source: delta. ' error message.

What did I miss in my configuration/env variables?

Thanks
Andras



On Sun, 10 Jan 2021, 3:33 am muru, <mmuru98@gmail.com> wrote:

> You could try Delta Lake or Apache Hudi for this use case.
>
> On Sat, Jan 9, 2021 at 12:32 PM András Kolbert <kolbertandras@gmail.com>
> wrote:
>
>> Sorry if my terminology is misleading.
>>
>> What I meant under driver only is to use a local pandas dataframe
>> (collect the data to the master), and keep updating that instead of dealing
>> with a spark distributed dataframe for holding this data.
>>
>> For example, we have a dataframe with all users and their corresponding
>> latest activity timestamp. After each streaming batch, aggregations are
>> performed and the calculation is collected to the driver to update a subset
>> of users latest activity timestamp.
>>
>>
>>
>> On Sat, 9 Jan 2021, 6:18 pm Artemis User, <artemis@dtechspace.com> wrote:
>>
>>> Could you please clarify what do you mean by 1)? Driver is only
>>> responsible for submitting Spark job, not performing.
>>>
>>> -- ND
>>>
>>> On 1/9/21 9:35 AM, András Kolbert wrote:
>>> > Hi,
>>> > I would like to get your advice on my use case.
>>> > I have a few spark streaming applications where I need to keep
>>> > updating a dataframe after each batch. Each batch probably affects a
>>> > small fraction of the dataframe (5k out of 200k records).
>>> >
>>> > The options I have been considering so far:
>>> > 1) keep dataframe on the driver, and update that after each batch
>>> > 2) keep dataframe distributed, and use checkpointing to mitigate
>>> lineage
>>> >
>>> > I solved previous use cases with option 2, but I am not sure if it is
>>> > the most optimal as checkpointing is relatively expensive. I also
>>> > wondered about HBASE or some sort of quick access memory storage,
>>> > however it is currently not in my stack.
>>> >
>>> > Curious to hear your thoughts
>>> >
>>> > Andras
>>> >
>>>
>>> ---------------------------------------------------------------------
>>> To unsubscribe e-mail: user-unsubscribe@spark.apache.org
>>>
>>>

Mime
View raw message