I have a curious question.

What are some distributed and scalable alternatives to hadoop. Am looking for some distributed file systems like HDFS which can be used as a cheap and effective storage and would like a data processing engine(batch/real-time) on top of it. I know Spark can be a good alternative. But I would like to use this system as a file archive which is distributed,fault tolerant and scalable.Is there any apt solutions ? Suggestions are welcomed. Thanks :)

2 Answers 2


These are some other alternatives to Hadoop and Apache Spark. Cluster Map Reduce, Hydra and Conclusion, they are all relatively good for big data projects. Read more here https://datafloq.com/read/Big-Data-Hadoop-Alternatives/1135

  • Thanks for the reply :) Is there any alternatives other than those mentioned in that article. Basically,I need a file archive which is distributed,fault tolerant and scalable.
    – Sachin
    Aug 17, 2016 at 8:23
  • 1
    Take a look at Sphere and Riak Aug 17, 2016 at 10:50
  • @FrakOdoom Cluster Map Reduce does not qualify since it is an algorithm rather than File System. Apache Spark operates in memory, but flushes to HDFS for persistence reasons.
    – P.M
    Jun 20, 2017 at 4:19

If you still looking into alternatives, this Gigaom article may help: https://gigaom.com/2012/07/11/because-hadoop-isnt-perfect-8-ways-to-replace-hdfs/ By default Spark flushed to HDFS.

Since HDFS is open source alternative to GFS(Google FS), You can use a connector to GFS(Google FS is available via Google Cloud Platform Storage services) ... there is a catch: it is expensive on massive data transfers between nodes/clusters. Hadoop was not designed for realtime data, but less dynamic data. I hope this helps somehow.

All above links are the Gigaom article I shared. I hope this helps somehow.

  • Thank you! But am not looking into this currently!
    – Sachin
    Jun 27, 2017 at 6:43
  • P.M statement about MapR-FS "...but underlying FS is HDFS" is not correct. MapR-FS is a distributed, highly available file system, that is not based on HDFS for its implementation. MapR-FS has its own implementation and way of organizing data on disk. BUT MapR-FS is accessible using the HDFS API, this means that not only you can work with MapR-FS like any distributed storage, but you can also run Hadoop applications on it.
    – Tug Grall
    Jul 28, 2017 at 6:52

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