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Let's face it: data warehousing in the traditional sense has been tedious, lacking agility, and slow. Often designed and built around a static set of up front questions, they are basically a big database tailored to the application of populating dashboards. The fact that the volume of data that we need to deal with recently exploded by several order of magnitude isn't improving the situation. It's no surprise that we see a new class of data warehousing setups emerge, using big data technologies en NoSQL stores. A nice side effect is that these solutions are usually not only the domain of the BI crowd, but can also be developer friendly and allow development of more data driven apps. In this talk I will present about experiences using Hadoop and other tools from the Hadoop ecosystem, such as Hive, Pig and bare MapReduce, to handle data that grows tens of GBs per day. We create a system where data is captured, stored and made available to different users and use cases, ranging from end users that write SQL queries to software developers that access the underlying data to create data driven products. I will cover topics like ETL, querying, development and deployment and reporting; using a fully open source stack, of course.
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GoDataDrivenPROUDLY PART OF THE XEBIA GROUP
Building a Big Data DWH
Friso van VollenhovenCTO
Data Warehousing on Hadoop
-- Wikipedia
“In computing, a data warehouse or enterprise data warehouse (DW, DWH, or EDW) is a database used for reporting and data analysis.”
ETL
How to:• Add a column to the facts table?• Change the granularity of dates from day
to hour?• Add a dimension based on some
aggregation of facts?
Schema’s are designed with questions in mind.
Changing it requires to redo the ETL.
Schema’s are designed with questions in mind.
Changing it requires to redo the ETL.
Push things to the facts level.
Keep all source data available all times.
And now?• MPP databases?• Faster / better / more SAN?• (RAC?)
distributed storage
distributed processing
metadata + query engine
EXTRACTTRANSFORM
LOAD
• No JVM startup overhead for Hadoop API usage• Relatively concise syntax (Python)• Mix Python standard library with any Java libs
• Flexible scheduling with dependencies• Saves output• E-mails on errors• Scales to multiple nodes• REST API• Status monitor• Integrates with version control
Deployment
git push jenkins master
•Scheduling•Simple deployment of ETL code•Scalable•Developer friendly
'februari-22 2013'
A: Yes, sometimes as often as 1 in every 10K calls. Or about once a week at 3K files / day.
þ
þ
TSV ==thorn separated values?
þ == 0xFE
or -2, in HiveCREATE TABLE browsers ( browser_id STRING, browser STRING) ROW FORMAT DELIMITED FIELDS TERMINATED BY '-2';
• The format will change• Faulty deliveries will occur• Your parser will break• Records will be mistakingly produced (over-logging)• Other people test in production too (and you get the
data from it)• Etc., etc.
•Simple deployment of ETL code•Scheduling•Scalable• Independent jobs•Fixable data store• Incremental where possible•Metrics
Independent jobs
source (external)
staging (HDFS)
hive-staging (HDFS)
Hive
HDFS upload + move in place
MapReduce + HDFS move
Hive map external table + SELECT INTO
Out of order jobs
• At any point, you don’t really know what ‘made it’ to Hive•Will happen anyway, because some days the data
delivery is going to be three hours late• Or you get half in the morning and the other half
later in the day• It really depends on what you do with the data• This is where metrics + fixable data store help...
Fixable data store
• Using Hive partitions• Jobs that move data from staging create partitions•When new data / insight about the data arrives,
drop the partition and re-insert• Be careful to reset any metrics in this case• Basically: instead of trying to make everything
transactional, repair afterwards• Use metrics to determine whether data is fit for
purpose
Metrics
Metrics service
• Job ran, so may units processed, took so much time• e.g. 10GB imported, took 1 hr• e.g. 60M records transformed, took 10 minutes• Dropped partition• Inserted X records into partition
GoDataDriven
We’re hiring / Questions? / Thank you!
Friso van VollenhovenCTO