Likelihood to Recommend Great for REST API development, if you want a small, fast server that will send and receive JSON structures, CouchDB is hard to beat. Not great for enterprise-level relational database querying (no kidding). While by definition, document-oriented databases are not relational, porting or migrating from relational, and using CouchDB as a backend is probably not a wise move as it's reliable, but It may not always be highly available.
Read full review The most important thing when using ClickHouse is to be clear that the scenarios in which you want to use it really are the right ones. Many users think that when a database is very fast for a specific use case, it can be extrapolated to other contexts (most of the time different) in which a previous analysis has not been carried out.
ClickHouse is an analytical database, as such, it should be used for such purposes, where the information is stored correctly, the data volumes are really large and the queries to be performed are not the typical traditional queries on several columns with multiple aggregations. ClickHouse is not the solution for this.
On the other hand, if your case is not one of the above, it is quite possible that ClickHouse can help you. Where ClickHouse shines is when you are looking for aggregation over a particular column in large volumes of data.
Read full review Pros It can replicate and sync with web browsers via PouchDB. This lets you keep a synced copy of your database on the client-side, which offers much faster data access than continuous HTTP requests would allow, and enables offline usage. Simple Map/Reduce support. The M/R system lets you process terabytes of documents in parallel, save the results, and only need to reprocess documents that have changed on subsequent updates. While not as powerful as Hadoop, it is an easy to use query system that's hard to screw up. Sharding and Clustering support. As of CouchDB 2.0, it supports clustering and sharding of documents between instances without needing a load balancer to determine where requests should go. Master to Master replication lets you clone, continuously backup, and listen for changes through the replication protocol, even over unreliable WAN links. Read full review Their MergeTree table engine provide impressive performance for data insert in bulk Not only data insert but also the way MergeTree engine uses Primary Keys to sort the data and perform data skipping based on the granules its also their secret for ridiculous fast queries Data compression its also great They provide especial table engines that allow you to read data directly from other sources like S3 Since its written with C++ you have very granular data types and especial ones like enum, LowCardinality and etc, they save you a lot of storage since are stored as integer values ClickHouse functions besides the ones that respect ANSI Standards are also awesome and useful Read full review Cons NoSQL DB can become a challenge for seasoned RDBMS users. The map-reduce paradigm can be very demanding for first-time users. JSON format documents with Key-Value pairs are somewhat verbose and consume more storage. Read full review Avro data manipulation Kafka consistency DDL operations errors (by replica configuration) Read full review Likelihood to Renew Because our current solution S3 is working great and CouchDB was a nightmare. The worst is that at first, it seemed fine until we filled it with tons of data and then started to create views and actually delete.
Read full review Usability Couchdb is very simple to use and the features are also reduced but well implemented. In order to use it the way its designed, the ui is adequate and easy. Of course, there are some other task that can't be performed through the admin ui but the minimalistic design allows you to use external libraries to develop custom scripts
Read full review Implementation Rating it support is minimal also hw requirements. Also for development, we can have databases replicated everywhere and the replication is automagical. once you set up the security and the rules for replication, you are ready to go. The absence of a model let you build your app the way you want it
Read full review Alternatives Considered Read full review ClickHouse outperforms, especially in costs, since its compression/indexing engines are so smart, and even with very low computing power, you can already perform huge analyses of the data.
Read full review Return on Investment It has saved us hours and hours of coding. It is has taught us a new way to look at things. It has taught us patience as the first few weeks with CouchDB were not pleasant. It was not easy to pick up like MongoDB. Read full review Queries that used to take more than 2 minutes now take less than 1 second Possibility to analyze use cases in real time (before was impossible) The applications are more complete and the users decisions are better Read full review ScreenShots