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What are the arguments for and against using Greenplum instead of PostgreSQL in a webapp (django) environment?

My gut reaction is to prefer PostgreSQL's open-source approach and huge knowledgebase.

My configuration (though I'd love to hear about any other configuration) is a medium-sized business with 2 web servers and (at the moment) 2 database servers.

Areas to contrast are binary data crunching, number of nodes in the replication and my personal favorite: communitiy support and skilled engineer support.

What are the pros and cons of using Greenplum instead of PostgreSQL?

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Should this be 'community wiki'? –  Michael Easter Mar 15 '11 at 11:57

6 Answers 6

I don't know much about Greenplum, except for quickly skimming the link you send. A data warehouse is not the same thing as a transactional operational data store. The former is for ad hoc queries, statistical analysis, dimensional analysis, read-mostly access to historical data. The latter is for real-time, read/write of operational data. They're complimentary.

I'm guessing that you want PostgreSQL.

Who is pushing Greenplum on you and why? If it's being presented as an alternative, I'd dig deeper and rebut the argument.

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You're right that a data warehouse is not the same thing as a transactional/operational data store, but Greenplum happens to be both. Greenplum's primary feature is that it parallelizes both storage and computation over multiple instances of (a proprietary version of) PostgreSQL on separate physical servers. This provides benefits for both transactional and analytic workloads. GP has additional features for data warehousing (namely columnar storage and compression) as well, but is designed to also handle transactional processing simultaneously. It may, however, still be worse than PostgreSQL. –  goodside Jul 6 '11 at 18:11

Greenplum is an MPP adaption of PostgreSQL. It's optimized for warehousing and/or analytics on large sets of data and would not perform that well in a transactional environment. If you need a large DW environment, look at Greenplum. If you need OLTP or smaller DB sizes (under 10TB) then look at PostgreSQL.

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Since Greenplum utilizes parallel processing, there will be overhead with running lots of tiny read queries as the master node needs to communicate with the underlying data nodes to retrieve an answers to all these queries. For a query taking milliseconds, expect an order of magnitude slower performance for Greenplum.

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If you are looking for a PostgreSQL-based data warehousing solution, I would also look at GridSQL. It is a parallelization layer over multiple PostgreSQL instances, and is free and open source.

Like mentioned in other comments, it will not perform well for many small millisecond queries, but will help you greatly for long running queries. GridSQL also will not include DW optimizations like columnar storage that Greenplum has, but you can take advantage of constraint exclusion partitioning (ex: subtables by date range) combined with parallelism to get your query results faster.

You can also even use it on a single multi-core server, as PostgreSQL will only use a single core when processing a query.

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If any data crunching takes longer than an hour, you'll get linear performance boosts for every core you add. It's not really worth the effort for anything that takes less time to crunch through.

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I think Greenplum takes better advantage of parallel processing. It's based on PostgreSQL, though.

Greenplum has a free community edition. You can always download and test in your own environment.

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