There has been a lot of talk related to Cassandra lately.

Twitter, Digg, Facebook, etc all use it.

When does it make sense to:

  • use Cassandra,
  • not use Cassandra, and
  • use a RDMS instead of Cassandra.
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    Probably should be CW? This is pretty much just NoSQL vs Relational databases, which is pretty subjective IMO. – Ed James Apr 14 '10 at 13:43
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    I would like to know if is is suitable for messaging system. I assume if Twitter use it then it would be okay, however they might not use it for all of Twitter? – Luke Apr 14 '10 at 13:45
  • techblog.bozho.net/?p=232 – Bozho Sep 14 '10 at 20:28

16 Answers 16


There is nothing like a silver bullet, everything is built to solve specific problems and has its own pros and cons. It is up to you, what problem statement you have and what is the best fitting solution for that problem.

I will try to answer your questions one by one in the same order you asked them. Since Cassandra is based on the NoSQL family of databases, it's important you understand why use a NoSQL database before I answer your questions.

Why use NoSQL

In the case of RDBMS, making a choice is quite easy because all the databases like MySQL, Oracle, MS SQL, PostgreSQL in this category offer almost the same kind of solutions oriented toward ACID properties. When it comes to NoSQL, the decision becomes difficult because every NoSQL database offers different solutions and you have to understand which one is best suited for your app/system requirements. For example, MongoDB is fit for use cases where your system demands a schema-less document store. HBase might be fit for search engines, analyzing log data, or any place where scanning huge, two-dimensional join-less tables is a requirement. Redis is built to provide In-Memory search for varieties of data structures like trees, queues, linked lists, etc and can be a good fit for making real-time leaderboards, pub-sub kind of system. Similarly there are other databases in this category (Including Cassandra) which are fit for different problem statements. Now lets move to the original questions, and answer them one by one.

When to use Cassandra

Being a part of the NoSQL family, Cassandra offers a solution for problems where one of your requirements is to have a very heavy write system and you want to have a quite responsive reporting system on top of that stored data. Consider the use case of Web analytics where log data is stored for each request and you want to built an analytical platform around it to count hits per hour, by browser, by IP, etc in a real time manner. You can refer to this blog post to understand more about the use cases where Cassandra fits in.

When to Use a RDMS instead of Cassandra

Cassandra is based on a NoSQL database and does not provide ACID and relational data properties. If you have a strong requirement for ACID properties (for example Financial data), Cassandra would not be a fit in that case. Obviously, you can make a workaround for that, however you will end up writing lots of application code to simulate ACID properties and will lose on time to market badly. Also managing that kind of system with Cassandra would be complex and tedious for you.

When not to use Cassandra

I don't think it needs to be answered if the above explanation makes sense.

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    The problem with the answer is that it lumps all NoSQL solutions together. See dataconomy.com/sql-vs-nosql-need-know for more info. In the NoSQL landscape the basic divisions are document, key-value, graph and big-table. They have different characteristics for different problems. A solution that is a good match for mongo may not be a good match for cassandra. – Yehosef Feb 8 '16 at 16:12
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    The only way this response "lumps all NoSQL solutions together" is by the category NoSQL; other than that the post does a great job of pointing out that each NoSQL database "offers a different solution" for different problems. I did not get the feeling that the author even slightly hinted that mongo, cassandra, or any other NoSQL database solve the same problems. – Nick Suwyn Mar 7 '16 at 20:35
  • NoSQL database is not a thing. NoSQL is just a term used for modern non-relational databases (see wiki). – eddyP23 Sep 8 '16 at 9:01
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    Also, note that not all NoSQL databases are not ACID. Graph DBs are usually ACID. – eddyP23 Sep 8 '16 at 9:05
  • Cassandra supports row level atomic operation and Atomic and Isolation per partition using Light Weight Transactions. If my requirement is to have ACID at row level can I not use Cassandra? Even for critical data? – TechEnthusiast Oct 11 '17 at 3:25

When evaluating distributed data systems, you have to consider the CAP theorem - you can pick two of the following: consistency, availability, and partition tolerance.

Cassandra is an available, partition-tolerant system that supports eventual consistency. For more information see this blog post I wrote: Visual Guide to NoSQL Systems.

  • When is the last time you saw a partition where both of the partitions were large? See my question stackoverflow.com/questions/7969874/… – Aaron Watters Nov 3 '11 at 12:26
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    Cassandra also apparently lets you specify your consistency requirement at query time, which may be a useful compromise for some use cases – Richard Marr Feb 11 '15 at 14:06

Cassandra is the answer to a particular problem: What do you do when you have so much data that it does not fit on one server ? How do you store all your data on many servers and do not break your bank account and not make your developers insane ? Facebook gets 4 Terabyte of new compressed data EVERY DAY. And this number most likely will grow more than twice within a year.

If you do not have this much data or if you have millions to pay for Enterprise Oracle/DB2 cluster installation and specialists required to set it up and maintain it, then you are fine with SQL database.

However Facebook no longer uses cassandra and now uses MySQL almost exclusively moving the partitioning up in the application stack for faster performance and better control.


The general idea of NoSQL is that you should use whichever data store is the best fit for your application. If you have a table of financial data, use SQL. If you have objects that would require complex/slow queries to map to a relational schema, use an object or key/value store.

Of course just about any real world problem you run into is somewhere in between those two extremes and neither solution will be perfect. You need to consider the capabilities of each store and the consequences of using one over the other, which will be very much specific to the problem you are trying to solve.

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    The schema is unlikely to change, it fits well in a table structure, and lost/inconsistent data could cause real problems. – Tom Clarkson Apr 27 '10 at 0:28
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    I don't understand why inconsistent data can cause real problems with banks. Scenario:You have one bank account, with $100 on above the limit on it, and two bank cards. When you try to withdraw money with the two cards at the same time at 2 different ATMs, you will get 2 times $100, and a letter with an extra fee in your mail box. The bank earns money (the extra fee for being below the limit) by using inconsistent data. It's to hard to connect all ATMs in the world with each other through one large relational database. Can you give an example where inconsistent financial data can be a problem? – Paco Apr 27 '10 at 16:00
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    That stuff is all COBOL and batch processing, and not nearly as well designed/stable as you might think. ATMs do not connect to any sort of unified data store, so are hardly a suitable example. It's like saying SQL isn't suitable for web apps because you can't give everyone on the internet direct access to your database. Besides, I never said anything about banks - think things like orders on an ecommerce site where you don't have to deal with an organization so conservative that SQL is considered new and untrusted. – Tom Clarkson Apr 28 '10 at 2:26
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    @Paco: The first ATM reads your balance($100), and the second ATM does the same. Both ATMs deduct $100 from $100 and write the final balance of $0 back to your account. Result: the bank loses $100. – Seun Osewa May 1 '10 at 21:42
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    @Paco: The point is, without proper transaction isolation, the normal bank won't even know the account has been overdrawn. They won't even know. – Seun Osewa May 3 '10 at 21:40

Besides the answers given above about when to use and when not to use Cassandra, if you do decide to use Cassandra you may want to consider not using Cassandra itself, but one of the its many cousins out there.

Some answers above already pointed to various "NoSQL" systems which share many properties with Cassandra, with some small or large differences, and may be better than Cassandra itself for your specific needs.

Additionally, recently (several years after this question was originally asked), a Cassandra clone called Scylla (see https://en.wikipedia.org/wiki/Scylla_(database)) was released. Scylla is an open-source re-implementation of Cassandra in C++, which claims to have significantly higher throughput and lower latencies than the original Java Cassandra, while being mostly compatible with it (in features, APIs, and file formats). So if you're already considering Cassandra, you may want to consider Scylla as well.


Talking with someone in the midst of deploying Cassandra, it doesn't handle the many-to-many well. They are doing a hack job to do their initial testing. I spoke with a Cassandra consultant about this and he said he wouldn't recommend it if you had this problem set.


Heavy single query vs. gazillion light query load is another point to consider, in addition to other answers here. It's inherently harder to automatically optimize a single query in a NoSql-style DB. I've used MongoDB and ran into performance issues when trying to calculate a complex query. I haven't used Cassandra but I expect it to have the same issue.

On the other hand, if your load is expected to be that of very many small queries, and you want to be able to easily scale out, you could take advantage of eventual consistency that is offered by most NoSql DBs. Note that eventual consistency is not really a feature of a non-relational data model, but it is much easier to implement and to set up in a NoSql-based system.

For a single, very heavy query, any modern RDBMS engine can do a decent job parallelizing parts of the query and take advantage of as much CPU and memory you throw at it (on a single machine). NoSql databases don't have enough information about the structure of the data to be able to make assumptions that will allow truly intelligent parallelization of a big query. They do allow you to easily scale out more servers (or cores) but once the query hits a complexity level you are basically forced to split it apart manually to parts that the NoSql engine knows how to deal with intelligently.

In my experience with MongoDB, in the end because of the complexity of the query there wasn't much Mongo could do to optimize it and run parts of it on multiple data. Mongo parallelizes multiple queries but isn't so good at optimizing a single one.


@Paco Sorry to burst your bubble but especially with financial data, transactional consistency is CRITICAL. As has been highlighted with databases such as Cassandra, a failed script may leave side effects, which may include one table updated and another not. One example: £100 is move from user 1's account to user 2's account. A transaction is recorded against each account, showing it removed from one and added to the other. Of course it depends on your design. In another scenario, a payment is made to the bank. The funds must be removed from one account and added to another. A lack of consistency would leave the potential for money to "go missing" from the system or be double-counted. Either way, the bank finds itself in trouble.

There are many such cases where transactional consistency is critical for business. Either it's handled by the app in a safe and effective manner, or the database must handle it completely itself, the latter being the "safe" option.

Lack of join support via cassandra limits it's usage too, unless suitable other apps are used with it. On that note, so do lacking trigger functions, foreign keys etc. It all ultimately comes down to what you require. If you're a search provider for example and have a huge customer base, Cassandra might be a perfect fit. For OLTP, and some reporting cases on the other hand, or smaller load volumes, it may be a complete mismatch against requirements.

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    My company is currently using Cassandra to model financial data. It's not impossible to do but does require some creative modeling. The above example is not a problem though. There are many times where I have done a purchase but the transaction does not show up on my online banking immediately. The eventually consistent characteristic of Cassandra is sufficient for a lot of cases including many financial data scenarios. – thattolleyguy Dec 9 '13 at 19:16
  • @thattolleyguy Would it be possible to share your experiences on Cassandra in Finance domain as your comment was posted a while back? It will be beneficial for us as we are trying to model financial data with Cassandra. – TechEnthusiast Oct 11 '17 at 3:39
  • Well, now a days Cassandra has very fine grained control over the level of checks and balances it passes before returning data, so for one this issue is really not one anymore. If you are on this degree of validation, simply set your cluster to 'quorum' or a 3 node validation and you'll never get data that is old unless you have some kind of terrible api hitting it with fat-handed queries. We use Cassandra to power the feed system in our social platform and it works like a champion. You just have to structure tables with forethought and learn on a deep level how it works really – Lux.Capacitor Oct 20 '17 at 16:55

Let's read some real world cases:


In this article: http://planetcassandra.org/blog/post/agentis-energy-stores-over-15-billion-records-of-time-series-usage-data-in-apache-cassandra

They elaborated the reason why they didn't choose MySql is because db synchronization is too slow.

(Also due to 2-phrase commit, FK, PK)

Cassandra is based on Amazon Dynamo paper



High availability

Backup performs well

Read and Write is better than HBase, (BigTable clone in java).

wiki http://en.wikipedia.org/wiki/Apache_Cassandra

Their Conclusion is:

We looked at HBase, Dynamo, Mongo and Cassandra. 

Cassandra was simply the best storage solution for the majority of our data.

As of 2018,

I would recommend using ScyllaDB to replace classic cassandra, if you need back support.

Postgres kv plugin is also quick than cassandra. How ever won't have multi-instance scalability.

  • You don't have to settle with only one database technology. You can actually have a combo and use whichever is appropriate for the specific issue. – Pepito Fernandez Oct 12 '17 at 14:16

another situation that makes the choice easier is when you want to use aggregate function like sum, min, max, etcetera and complex queries (like in the financial system mentioned above) then a relational database is probably more convenient then a nosql database since both are not possible on a nosql databse unless you use really a lot of Inverted indexes. When you do use nosql you would have to do the aggregate functions in code or store them seperatly in its own columnfamily but this makes it all quite complex and reduces the performance that you gained by using nosql.

  • CouchdB, for one, allows computing aggregate functions very easily: wiki.apache.org/couchdb/…. Technically, this is "in code" but it's not nearly as "complex" to accomplish as it would be with Cassandra. – user359996 Dec 2 '10 at 19:32
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    Actually I agree that it may take you a day to write aggregate in code, but you can write it to run on a backend server which will use close to 0 cycles of the database. With an SQL database, you'll get the result writing one line which may take you 5 min. but it will slow down the whole database each time you run it. So there are pros and cons both ways. My bank, for example, closes all website accesses in the middle of the night for about 10 to 15 minutes. They most certainly are using COBOL, but that's a very similar problem. – Alexis Wilke Jan 4 '13 at 1:43

If you need a fully consistent database with SQL semantics, Cassandra is NOT the solution for you. Cassandra supports key-value lookups. It does not support SQL queries. Data in Cassandra is "eventually consistent". Concurrent lookups of data may be inconsistent, but eventually lookups are consistent.

If you need strict semantics and need support for SQL queries, choose another solution such as MySQL, PostGres, or combine use of Cassandra with Solr.

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    Cassandra Query Language (CQL) is pretty similar to SQL, though. In fact, I'd say that CQL is an advantage of Cassandra over other NoSQL options for those looking for an SQL-like interface. – arussell84 Mar 9 '17 at 14:40
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    Cassandra is not technically eventually consistent. Cassandra lets you trade off consistency for availability. Cassandra is basically balancing CAP theorem. You can have eventually consistent write, and then read consistently, vice versa, or consistent on both, and this all depends on your replication factor combined with your read/write level. I get the answer did put "eventually consistent" in quotes likely for this reason, but I feel like some clarity is in order. – tsturzl Aug 11 '17 at 16:28

Cassandra is a good choice if:

  1. You don't require the ACID properties from your DB.

  2. There would be massive and huge number of writes on the DB.

  3. There is a requirement to integrate with Big Data, Hadoop, Hive and Spark.

  4. There is a need of real time data analytics and report generations.

  5. There is a requirement of impressive fault tolerant mechanism.

  6. There is a requirement of homogenous system.

  7. There is a requirement of lots of customisation for tuning.


Mongodb has very powerful aggregate functions and an expressive aggregate framework. It has many of the features developers are accustomed to using from the relational database world. It's document data/storage structure allows for more complex data models than Cassandra, for example.

All this comes with trade-offs of course. So when you select your database (NoSQL, NewSQL, or RDBMS) look at what problem you are trying to solve and at your scalability needs. No one database does it all.


According to DataStax, Cassandra is not the best use case when there is a need for

1- High end hardware devices. 2- ACID compliant with no roll back (bank transaction)

  • It does not support complete transaction management across the tables.
  • Secondary Index not supported.
  • Have to rely on Elastic search /Solr for Secondary index and the custom sync component has to be written.
  • Not ACID compliant system.
  • Query support is limited.

Apache cassandra is a distributed database for managing large amounts of structured data across many commodity servers, while providing highly available service and no single point of failure.

The archichecture is purely based on the cap theorem, which is availability , and partition tolerance, and interestingly eventual consistently.

Dont Use it, if your not storing volumes of data across racks of clusters, Dont use if you are not storing Time series data, Dont Use if you not patitioning your servers, Dont use if you require strong Consistency.

  • Strong consistency garantees, a server always takes a write and every read provides the most recent. – Remario Dec 7 '17 at 23:50

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