There are some key features in impala that makes its fast.
It does not use map/reduce which are very expensive to fork in separate jvms. It runs separate Impala Daemon which splits the query and runs them in parallel and merge result set at the end.
It does most of its operation in-memory.
It uses hdfs for its storage which is fast for large files. It caches as much as possible from queries to results to data.
It supports new file format like parquet, which is columnar file format. So if you use this format it will be faster for queries where you are accessing only few columns most of the time.
Impala doesn't even use Map-Reduce at all. It simply has daemons running on all your nodes which cache some of the data that is in HDFS, so that these daemons can return data quickly without having to go through a whole Map/Reduce job.
The reason for this is that there is a certain overhead involved in running a Map/Reduce job, so by short-circuiting Map/Reduce altogether you can get some pretty big gain in runtime.
That being said, Impala does not replace Hive, it is good for very different use cases. Impala doesn't provide fault-tolerance compared to Hive, so if there is a problem during your query then it's gone. Definitely for ETL type of jobs where failure of one job would be costly I would recommend Hive, but Impala can be awesome for small ad-hoc queries, for example for data scientists or business analysts who just want to take a look and analyze some data without building robust jobs. Also from my personal experience, Impala is still not very mature, and I've seen some crashes sometimes when the amount of data is larger than available memory.
Impala provides faster response as it uses MPP(massively parallel processing) unlike Hive which uses MapReduce under the hood, which involves some initial overheads (as Charles sir has specified). Massively parallel processing is a type of computing that uses many separate CPUs running in parallel to execute a single program where each CPU has it's own dedicated memory. The very fact that Impala, being MPP based, doesn't involve the overheads of a MapReduce jobs viz. job setup and creation,slot assignment, split creation, map generation etc, which makes it blazingly fast.
But that doesn't mean that Impala is the solution to all your problems. Being highly memory intensive(MPP), it is not a good fit for tasks that require heavy data operations like joins etc, as you just can't fit everything into the meory. This is where Hive is a better fit.
So, if you need real time, ad-hoc queries over a subset of your data go for Impala. And if you have batch processing kinda needs over your BigData go for Hive.
Thank you for your guide to with upgrade information about Hadoop
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