4 of 4 changed title

Is it possible to read MongoDB data, process it with Hadoop, and output it into a RDBS(MySQL)?

Summary: Is it possible to:

  1. Import data into Hadoop with the mongodb-hadoop connector
  2. Process it with Hadoop MapReduce
  3. Export it with Sqoop in a single transaction

I am building a web application with mongodb. While Mongodb work well for most of the work, in some parts I need stronger transactional guarantees, for which I use a MySQL database.

My problem is that I want to read a big mongodb collection for data analysis, but the size of the collection means that the analytic job would take too long to process. Unfortunately, MongoDB's built-in map-reduce framework would not work well for this job, so I would prefer to carry out the analysis with Apache Hadoop.

I understand that it is possible read data from Mongodb into Hadoop by using the hadoop-mongodb connector, which reads data from MongoDB, processes it with MapReduce in Hadoop, and finally outputs the results back into a MongoDB database.

The problem is that I want the output of the MapReduce to go into a MySQL database, rather than MongoDB, because the results must be merged with other MySQL tables.

For this purpose I know that Sqoop can export result of a Hadoop MapReduce into MySQL.

Ultimately, I want too read MongoDB data then process it with Hadoop and finally output the result into a MySQL database.

Is this possible? Which tools are available to do this?