Recently NoSQL has gained immense popularity.

What are the advantages of NoSQL over traditional RDBMS?

up vote 113 down vote accepted

Not all data is relational. For those situations, NoSQL can be helpful.

With that said, NoSQL stands for "Not Only SQL". It's not intended to knock SQL or supplant it.

SQL has several very big advantages:

  1. Strong mathematical basis.
  2. Declarative syntax.
  3. A well-known language in Structured Query Language (SQL).

Those haven't gone away.

It's a mistake to think about this as an either/or argument. NoSQL is an alternative that people need to consider when it fits, that's all.

Documents can be stored in non-relational databases, like CouchDB.

Maybe reading this will help.

  • 9
    Could you give some examples of non-relational data? – user496949 Nov 12 '10 at 1:02
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    Documents and images can be stored inside RDBMS too like SQL Server and Oracle? Then why NoSQL? – user496949 Nov 12 '10 at 1:18
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    Semi-structured data is one such class. It contains XML, Emails, JSON, etc. See the wikipedia page on it. The general rule is that the structure is there, but is loosely defined and dynamically extensible (the latter tend to class with the relational model - and while it is not impossible to model, it is definitely cumbersome). Another class is "natural data": A Novel, An Image, both with no meta-data attached. – I GIVE CRAP ANSWERS Nov 12 '10 at 1:21
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    Well, you can't do SELECT blob FROM images WHERE blob CONTAINS('red car'). So while you can store the data raw in the database, you can't search it without attaching metadata. Full-text-search modules in RDBMS systems bridges some of the semi-structural gap. – I GIVE CRAP ANSWERS Nov 12 '10 at 1:24
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    @duffymo: Documents are not "non relational". Documents are often stored in SQL DBMSs and you don't need a NOSQL DBMS for that. In fact NOSQL databases often use data models that are less general and more limited in application than the relational model. Eg graph databases. The type of data being stored doesn't explain any advantage of NOSQL. – sqlvogel Nov 12 '10 at 6:40

The history seem to look like this:

  1. Google needs a storage layer for their inverted search index. They figure a traditional RDBMS is not going to cut it. So they implement a NoSQL data store, BigTable on top of their GFS file system. The major part is that thousands of cheap commodity hardware machines provides the speed and the redundancy.

  2. Everyone else realizes what Google just did.

  3. Brewers CAP theorem is proven. All RDBMS systems of use are CA systems. People begin playing with CP and AP systems as well. K/V stores are vastly simpler, so they are the primary vehicle for the research.

  4. Software-as-a-service systems in general do not provide an SQL-like store. Hence, people get more interested in the NoSQL type stores.

I think much of the take-off can be related to this history. Scaling Google took some new ideas at Google and everyone else follows suit because this is the only solution they know to the scaling problem right now. Hence, you are willing to rework everything around the distributed database idea of Google because it is the only way to scale beyond a certain size.

C - Consistency
A - Availability
P - Partition tolerance
K/V - Key/Value

  • 8
    What is CAP, CP, AP, K/V? – knownasilya Dec 10 '12 at 14:56
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    Look up the CAP Theorem on Wikipedia. CA and CP stems from there. K/V is short for Key/Value, a (distributed) finite mapping from keys into values. – I GIVE CRAP ANSWERS Dec 10 '12 at 16:25
  • Thank you for the quick response! – knownasilya Dec 10 '12 at 16:30
  • "Everyone else realizes what Google just did." lol. Seems like a Scottish answer to me (aka NOT CRAP). – ruffin Aug 2 at 19:51

NoSQL is better than RDBMS because of the following reasons/properities of NoSQL

  1. It supports semi-structured data and volatile data
  2. It does not have schema
  3. Read/Write throughput is very high
  4. Horizontal scalability can be achieved easily
  5. Will support Bigdata in volumes of Terra Bytes & Peta Bytes
  6. Provides good support for Analytic tools on top of Bigdata
  7. Can be hosted in cheaper hardware machines
  8. In-memory caching option is available to increase the performance of queries
  9. Faster development life cycles for developers

EDIT:

To answer "why RDBMS cannot scale", please take a look at RDBMS Overheads pdf written by Stavros Harizopoulos,Daniel J. Abadi,Samuel Madden and Michael Stonebraker

RDBMS's have challenges in handling huge data volumes of Terabytes & Peta bytes. Even if you have Redundant Array of Independent/Inexpensive Disks (RAID) & data shredding, it does not scale well for huge volume of data. You require very expensive hardware.

Logging: Assembling log records and tracking down all changes in database structures slows performance. Logging may not be necessary if recoverability is not a requirement or if recoverability is provided through other means (e.g., other sites on the network).

Locking: Traditional two-phase locking poses a sizeable overhead since all accesses to database structures are governed by a separate entity, the Lock Manager.

Latching: In a multi-threaded database, many data structures have to be latched before they can be accessed. Removing this feature and going to a single-threaded approach has a noticeable performance impact.

Buffer management: A main memory database system does not need to access pages through a buffer pool, eliminating a level of indirection on every record access.

This does not mean that we have to use NoSQL over SQL.

Still, RDBMS is better than NoSQL for the following reasons/properties of RDBMS

  1. Transactions with ACID properties - Atomicity, Consistency, Isolation & Durability
  2. Adherence to Strong Schema of data being written/read
  3. Real time query management ( in case of data size < 1 0 10 Tera bytes )
  4. Execution of complex queries involving join & group by clauses

We have to use RDBMS (SQL) and NoSQL (Not only SQL) depending on the business case & requirements

  • It's worth noting that some NoSQL databases support ACID transactions. – Dave Cassel May 14 at 17:12

NOSQL has no special advantages over the relational database model. NOSQL does address certain limitations of current SQL DBMSs but it doesn't imply any fundamentally new capabilities over previous data models.

NOSQL means only no SQL (or "not only SQL") but that doesn't mean the same as no relational. A relational database in principle would make a very good NOSQL solution - it's just that none of the current set of NOSQL products uses the relational model.

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    It seems that at the recent O'Reilly Strata Conference, Mark Madsen has coined a new interpretation of "NoSQL" in his history of databases in no-tation to supersede "Not Only SQL". It is now: "No, SQL" ;-) – Lukas Eder Dec 14 '13 at 20:11

If you need to process huge amount of data with high performance

OR

If data model is not predetermined

then

NoSQL database is a better choice.

RDBMS focus more on relationship and NoSQL focus more on storage.

You can consider using NoSQL when your RDBMS reaches bottlenecks. NoSQL makes RDBMS more flexible.

The biggest advantage of NoSQL over RDBMS is scalability. NoSQL databases can easily scale-out to many nodes, but for RDBMS it is very hard. Scalability not only gives you more storage space, but also much higher performance since many hosts work at the same time.

From mongodb.com:

NoSQL databases differ from older, relational technology in four main areas:

Data models: A NoSQL database lets you build an application without having to define the schema first unlike relational databases which make you define your schema before you can add any data to the system. No predefined schema makes NoSQL databases much easier to update as your data and requirements change.

Data structure: Relational databases were built in an era where data was fairly structured and clearly defined by their relationships. NoSQL databases are designed to handle unstructured data (e.g., texts, social media posts, video, email) which makes up much of the data that exists today.

Scaling: It’s much cheaper to scale a NoSQL database than a relational database because you can add capacity by scaling out over cheap, commodity servers. Relational databases, on the other hand, require a single server to host your entire database. To scale, you need to buy a bigger, more expensive server.

Development model: NoSQL databases are open source whereas relational databases typically are closed source with licensing fees baked into the use of their software. With NoSQL, you can get started on a project without any heavy investments in software fees upfront.

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