Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to answer two questions in a definitive list:

  1. What are the underlying data structures used for Redis?
  2. And what are the main advantages/disadvantages/use cases for each type?

So, I've read the Redis lists are actually implemented with linked lists. But for other types, I'm not able to dig up any information. Also, if someone were to stumble upon this question and not have a high level summary of the pros and cons of modifying or accessing different data structures, they'd have a complete list of when to best use specific types to reference as well.

Specifically, I'm looking to outline all types: string, list, set, zset and hash.

Oh, I've looked at these article, among others, so far:

share|improve this question
5  
How to use a server is trivia? How do I determine when to use one programming structure over another one? This is directly applicable to programming, as I'd use different types for different uses. –  Homer6 Mar 8 '12 at 21:58
2  
How to use a server isn't necessarily trivia, but it's off-topic -- and it's not what you asked. What data structures to use for specific purposes would be topical, but it's not what you asked either. What happened to be used in Redis is trivia, absent additional reasoning about why they used a particular structure in a particular situation -- at which point, we're back to what I already said would be topical, and what Redis happens to do is irrelevant. –  Jerry Coffin Mar 8 '12 at 22:03
5  
The topic clearly states: "What are the data structures and when should you use different types?" How is that off topic? Are you saying that learning about linked lists, hashes and arrays is irrelevant to programming? Because, I would argue that they are directly relevant--especially in a server that is designed primarily for performance. Also, they're relevant because the wrong choice could mean substantially less performance from one application to the next. –  Homer6 Mar 8 '12 at 22:08
17  
antirez's answer redeems this question. close at the detriment of programmers and redis users everywhere. –  Runscope API Tools Mar 8 '12 at 23:01
50  
@JerryCoffin with all due respect, redis is a software development tool and asking questions about software development tools is firmly on topic. The fact that "you can get the answer from the source" is not a close reason ... it would take hours to get the answer from the source. And redis is very widely used so this question is not too localized. Stack Overflow is all about learning about programming and asking what data structure is used by a wildly popular programming tool contributes to that goal. In short I fail to find any reason to close this question. –  Joel Spolsky Mar 9 '12 at 0:34

2 Answers 2

up vote 446 down vote accepted

I'll try to answer your question, but I'll start with something that may look strange at first: if you are not interested in Redis internals you should not care about how data types are implemented internally. This is for a simple reason: for every Redis operation you'll find the time complexity in the documentation and, if you have the set of operations and the time complexity, the only other thing you need is some clue about memory usage (and because we do many optimizations that may vary depending on data, the best way to get these latter figures are doing a few trivial real world tests).

But since you asked, here is the underlying implementation of every Redis data type.

  • Strings are implemented using a C dynamic string library so that we don't pay (asymptotically speaking) for allocations in append operations. This way we have O(N) appends, for instance, instead of having quadratic behavior.
  • Lists are implemented with linked lists.
  • Sets and Hashes are implemented with hash tables.
  • Sorted sets are implemented with skip lists (a peculiar type of balanced trees).

But when lists, sets, and sorted sets are small in number of items and size of the largest values, a different, much more compact encoding is used. This encoding differs for different types, but has the feature that it is a compact blob of data that often forces an O(N) scan for every operation. Since we use this format only for small objects this is not an issue; scanning a small O(N) blob is cache oblivious so practically speaking it is very fast, and when there are too many elements the encoding is automatically switched to the native encoding (linked list, hash, and so forth).

But your question was not really just about internals, your point was What type to use to accomplish what?.

Strings

This is the base type of all the types. It's one of the four types but is also the base type of the complex types, because a List is a list of strings, a Set is a set of strings, and so forth.

A Redis string is a good idea in all the obvious scenarios where you want to store an HTML page, but also when you want to avoid converting your already encoded data. So for instance, if you have JSON or MessagePack you may just store objects as strings. In Redis 2.6 you can even manipulate this kind of object server side using Lua scripts.

Another interesting usage of strings is bitmaps, and in general random access arrays of bytes, since Redis exports commands to access random ranges of bytes, or even single bits. For instance check this good blog post: Fast Easy real time metrics using Redis.

Lists

Lists are good when you are likely to touch only the extremes of the list: near tail, or near head. Lists are not very good to paginate stuff, because random access is slow, O(N). So good uses of lists are plain queues and stacks, or processing items in a loop using RPOPLPUSH with same source and destination to "rotate" a ring of items.

Lists are also good when we want just to create a capped collection of N items where usually we access just the top or bottom items, or when N is small.

Sets

Sets are an unordered data collection, so they are good every time you have a collection of items and it is very important to check for existence or size of the collection in a very fast way. Another cool thing about sets is support for peeking or popping random elements (SRANDMEMBER and SPOP commands).

Sets are also good to represent relations, e.g., "What are friends of user X?" and so forth. But other good data structures for this kind of stuff are sorted sets as we'll see.

Sets support complex operations like intersections, unions, and so forth, so this is a good data structure for using Redis in a "computational" manner, when you have data and you want to perform transformations on that data to obtain some output.

Small sets are encoded in a very efficient way.

Hashes

Hashes are the perfect data structure to represent objects, composed of fields and values. Fields of hashes can also be atomically incremented using HINCRBY. When you have objects such as users, blog posts, or some other kind of item, hashes are likely the way to go if you don't want to use your own encoding like JSON or similar.

However, keep in mind that small hashes are encoded very efficiently by Redis, and you can ask Redis to atomically GET, SET or increment individual fields in a very fast fashion.

Hashes can also be used to represent linked data structures, using references. For instance check the lamernews.com implementation of comments.

Sorted Sets

Sorted sets are the only other data structures, besides lists, to maintain ordered elements. You can do a number of cool stuff with sorted sets. For instance, you can have all kinds of Top Something lists in your web application. Top users by score, top posts by pageviews, top whatever, but a single Redis instance will support tons of insertion and get-top-elements operations per second.

Sorted sets, like regular sets, can be used to describe relations, but they also allow you to paginate the list of items and to remember the ordering. For instance, if I remember friends of user X with a sorted set I can easily remember them in order of accepted friendship.

Sorted sets are good for priority queues.

Sorted sets are like more powerful lists where inserting, removing, or getting ranges from the the middle of the list is always fast. But they use more memory, and are O(log(N)) data structures.

Conclusion

I hope that I provided some info in this post, but it is far better to download the source code of lamernews from http://github.com/antirez/lamernews and understand how it works. Many data structures from Redis are used inside Lamer News, and there are many clues about what to use to solve a given task.

Sorry for grammar typos, it's midnight here and too tired to review the post ;)

share|improve this answer
20  
This is the sole author of Redis. I emailed him and asked him to reply. Thank you very, very, much Salvatore. This is great information. –  Homer6 Mar 8 '12 at 23:02
36  
Thanks, but I'm not the sole big contributor, Pieter Noordhuis provided very large parts of the current implementation :) –  antirez Mar 8 '12 at 23:04
3  
Modest too. Thank you very much for your contributions. :-) –  Homer6 Mar 8 '12 at 23:07
2  
Best answer ever! Pity I can upvote just once –  stecb Mar 8 '12 at 23:39
15  
Thanks @antirez you should ad this to redis.io! –  chrislovecnm Mar 9 '12 at 3:13

Most of the times, you don't need to understand the underlying data structures used by Redis. But a bit of knowledge helps you make CPU v/s Memory trade offs. It also helps you model your data in an efficient manner.

Internally, Redis uses the following data structures :

  1. String
  2. Dictionary
  3. Doubly Linked List
  4. Skip List
  5. Zip List
  6. Int Sets
  7. Zip Maps (deprecated in favour of zip list since redis 2.6)

To find the encoding used by a particualar key, use the command object encoding <key>.

1. Strings

In Redis, Strings are called Simple Dynamic Strings, or SDS. Its a smallish wrapper over a char * that allows you to store the length of the string and number of free bytes as a prefix.

Because the length of the string is stored, strlen is an O(1) operation. Also, because the length is known, Redis strings are binary safe. It is perfectly legal for a string to contain the null character.

Strings are the most versatile data structure available in Redis. A String is all of the following -

  1. A string of characters that can store text. See SET and GET commands.
  2. A byte array that can store binary data
  3. A long that can store numbers. See INCR, DECR, INCRBY and DECRBY commands
  4. An Array (of chars, ints, longs or any other data type) that can allow efficient random access. See SETRANGE and GETRANGE commands
  5. A bit array that allows you to set or get individual bits. See SETBIT and GETBIT commands.
  6. A block of memory that you can use to build other data structures. This is used internally to build ziplists and intsets, which are compact, memory-efficient data structures for small number of elements. More on this below.

2. Dictionary

Redis uses a Dictionary for the following - 1. To map a key to its associated value, where value can be a string, hash, set, sorted set or list 2. To map a key to its expiry timestamp 3. To implement Hash, Set and Sorted Set data types 4. To map redis commands to the functions that handle that command 5. To map a redis key to a list of clients that are blocked on that key. See BLPOP

Redis Dictionaries are implemented using Hash Tables. So instead of explaining the implementation, I will just explain the redis specific things :

  1. Dictionary use a structure called dictType to extend the behaviour of a hash table. This structure has function pointers, and so the following operations are extendable - a) hash function, b) key comparison, c) key destructor, and d) value destructor.
  2. Dictionaries use the murmurhash2. (Previously they use the djb2 hash function, with seed=5381, but then hash function was switched to murmur2. See this question for an explanation of the djb2 hash algorithm.)
  3. Redis uses Incremental Hashing, also known as Incremental Resizing. The dictionary has two hash tables. Every time the dictionary is touched, one bucket is migrated from the first (smaller) hash table to the second. This way, Redis prevents an expensive resize operation.

The Set data structure uses a Dictionary to guarantee there are no duplicates. The Sorted Set uses a dictionary to map an element to its score, which is why ZSCORE is an O(1) operation.

3. Doubly Linked Lists

The list data type is implemented using Doubly Linked Lists. Redis' implementation is straight-from-the-algorithm-textbook. The only change is that redis stores the length in the list data structure. This ensures that LLEN has O(1) complexity.

4. Skip Lists

Redis uses Skip Lists as the underlying data structure for Sorted Sets. Wikipedia has a good introduction. William Pugh's paper Skip Lists: A Probabilistic Alternative to Balanced Trees has more details.

Sorted Sets are composed from a Skip List and a Dictionary. The dictionary stores the score of each element. The skip list stores elements sorted first by score, and next by element (in lexicographical order)

Redis' Skip List implementation is different from the standard implementation in the following ways -

  1. Redis allows duplicate scores. If two nodes have the same score, they are sorted by the element value
  2. Each node has a back pointer at level 0. This allows you to traverse elements in reverse order of the score

5. Zip List

A Zip List is like a doubly linked list, except it does not use pointers and stores the data inline.

Each node in a doubly linked list has at 3 pointers - one forward pointer, one backward pointer and one pointer to reference the data stored at that node. Pointers require memory (8 bytes on a 64 bit system), and so for small lists, a doubly linked list is very inefficient.

A Zip List stores elements sequentially in a Redis String. Each element has a small header that stores the length and data type of the element, the offset to the next element and the offset to the previous element. These offsets replace the forward and backward pointers. Since the data is stored inline, we don't need a data pointer.

The zip list is used to store small lists, sorted sets and hashes. Sorted sets are flattened into a list like [element1, score1, element2, score2, element3, score3] and stored in the zip list. Hashes are flattened into a list like [key1, value1, key2, value2] etc.

With Zip lists, you have the power to make a tradeoff between CPU and Memory. Zip lists are memory-efficient, but they use more CPU than a linked list (or Hash table/Skip List). Finding an element in the skip list O(n). Inserting a new element requires reallocating memory. Because of this, Redis uses this encoding only for small lists, hashes and sorted sets. You can tweak this behaviour by altering the values of <datatype>-max-ziplist-entries and <datatype>-max-ziplist-value> in redis.conf. See Redis Memory Optimization, section "Special encoding of small aggregate data types" for more information.

The comments on ziplist.c are excellent, and you can understand this data structure completely without having to read the code.

6. Int Sets

Int Sets are a fancy name for "Sorted Integer Arrays".

In Redis, sets are usually implemented using hash tables. For small sets, a hash table is inefficient memory wise. When the set is composed of integers only, an array is often more efficient.

An Int Set is a sorted array of integers. To find an element, binary search algorithm is used. This has a complexity of O(log N). Adding new integers to this array may require a memory reallocation, which can become expensive for large integer arrays.

As a further memory optimization, Int Sets come in 3 variants with different integer sizes - 16 bits, 32 bits and 64 bits. Redis is smart enough to use the right variant depending on the size of the elements. When a new element is added and it exceeds the current size, Redis automatically migrates it to the next size. If a string is added, Redis automatically converts the integer set to a regular hashtable based set.

Int Sets are a tradeoff between CPU and Memory. Int Sets are extremely memory efficient, and for small sets they are faster than a hash table. But after a certain number of elements, the log N retrieval time and the cost of reallocating memory become too much. Based on experiments, the optimal threshold to switch over to a regular hash table was found to be 512. However, you can increase this threshold (decreasing doesn't make sense) based on your application's needs. See set-max-intset-entries in redis.conf

7. Zip Maps

Zip Maps are dictionaries flattened and stored in a list. They are very similar to Zip Lists.

Zip Maps have been deprecated since Redis 2.6, and small hashes are stored in zip lists. To learn more about this encoding, refer to the comments in zipmap.c

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.