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Google's Dremel is described here. What's the difference between Dremel and Mapreduce?

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4 Answers 4

up vote 8 down vote accepted

Check this article out. Dremel is the what the future of hive should (and will) be.

The major issue of MapReduce and solutions on top of it, like Pig, Hive etc, is that they have an inherent latency between running the job and getting the answer. Dremel uses a totally novel approach (came out in 2010 in that paper by google) which...

...uses a novel query execution engine based on aggregator trees...

...to run almost realtime , interactive AND adhoc queries both of which MapReduce cannot. And Pig and Hive aren't real time

You should keep an eye on projects coming out of this. Is is pretty new for me too... so any other expert comments are welcome!

Edit: Dremel is what the future of HIVE (and not MapReduce as I mentioned before) should be. Hive right now provides a SQL like interface to run MapReduce jobs. Hive has very high latency, and so is not practical in ad-hoc data analysis. Dremel provides a very fast SQL like interface to the data by using a different technique than MapReduce.

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Ok, but what about Storm software ? –  kirugan Jun 24 '13 at 13:10
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Would like to add to the above details, Look at Apache Drill that is an open source implementation of Google's Dremel. –  Yash Sharma Oct 7 '13 at 12:00

Dremel and MapReduce are not directly comparable, but rather they are complementary technologies.

MapReduce is not specifically designed for analyzing data - rather it's a software framework that allows a collection of nodes to tackle distributed computational problems for large datasets.

Dremel is a data analysis tool designed to quickly run queries on massive, structured datasets (such as log or event files). It supports a SQL-like syntax, but apart from table appends, it is read-only. It doesn't support update or create functions, nor does it feature table indexes. Data is organized in a "columnar" format, which contributes to very fast query speed. Google's BigQuery product is an implementation of Dremel accessible via RESTful API.

Hadoop (an open source implementation of MapReduce) in conjunction with the "Hive" data warehouse software, also allows data analysis for massive datasets using a SQL-style syntax. Hive essentially turns queries into MapReduce functions. In contrast to using a ColumIO format, Hive attempts to make queries quick by using techniques such as table indexing.

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btw, input is read only, but you can materialize output of Dremel queries for future reuse –  Yaroslav Bulatov Jan 30 '12 at 10:37

MapReduce is an abstract algorithm for how to split a problem up, distribute it, and combine the results. Dremel appears to be a specific tool for querying and analyzing datasets.

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MapReduce is a computing pattern (or framework if regarding implementations like Hadoop). It's one of the backbones of Dremel, as without MapReduce Dremel would be nowhere.

Dremel and similar open source attempts (Open Dremel or Apache Drill) are addressing the revisiting problem in data analysis that currently HDFS/MapReduce of Hadoop haven't even considered. When doing data analysis, one usually has to try a lot of different strategies, pretty much like rotating a Rubik's cube with different angles for repeated observations. Such analysis activities are backed by OLAP in relational databases. When dealing with Big Data, the latency of getting the report by a vanilla MapReduce job wouldn't be unsatisfactory if one query to the data is sufficient, which yet can never be the case. So data analysis tasks in the Big Data era intrinsically require the data to be able to be served in a similar way as OLAP for relational databases.

In fact, the way that Dremel is built borrows pretty much from relational database concepts: columnar storage of structured data to increase query locality, and query execution engine to layout and optimize sub-queries. It's right these supplements to HDFS/MapReduce that help facilitate the system response in data analysis tasks.

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This is incorrect. The technology behind Dremel is dependent on MapReduce in anyway. It is superficially related in that it can be used in a distributed environment. –  Michael Manoochehri Jun 25 at 22:07
    
@MichaelManoochehri, could you clarify what 'this' and 'the technology' here exactly means? I didn't take MapR out from Dremel, and just emphasized what Dremel has brought on top of MapR. :D –  lcn Jun 27 at 17:28
    
Sure - you could build an implementation of a Dremel system without using a MapReduce framework. MapReduce is completely different from Dremel. They share similar features superficially, but you don't need MapReduce to support Dremel, nor vice versa. They serve completely different use cases, have different architectures. You don't need to build Dremel "on top" of MapReduce. It's like comparing Node.JS to Nginx. –  Michael Manoochehri Jun 27 at 20:44
    
@MichaelManoochehri, I guess I get your point, and the disagreement happened here is due to the different MapReduce we talked about. Dremel doesn't use the MapReduce framework product, yet it does carry out its queries in a map-reduce way. If the Mapreduce in OP does mean the product (Google's or Hadoop's), then your analogy with Node vs. Nginx does nail it: Dremel and MapReduce all work in a map-reduce way. –  lcn Jun 29 at 3:23
    
That's wrong - Dremel queries are not run in a "MapReduce" way. A MapReduce is comprised of Key/Value Map phase, a shuffle, and a reduce step. Intermediates are generally stored on disk. With Dremel, there is no shuffle sort, nor is there even a "Mapper." This is discussed in the video "Google I/O 2012 - Crunching Big Data with BigQuery" (youtu.be/QI8623HlYd4?t=22m35s). How Dremel works is actually clearly described in the paper "Dremel: Interactive Analysis of Web-Scale Datasets" static.googleusercontent.com/media/research.google.com/en/us/… –  Michael Manoochehri Jun 29 at 3:44

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