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I am currently using memcached with my java app, and overall it's working great.

The features of memcached that are most important to me are:

  • it's fast, since reads and writes are in-memory and don't touch the disk
  • it's just a key/value store (since that's all my app needs)
  • it's distributed
  • it uses memory efficiently by having each object live on exactly one server
  • it doesn't assume that the objects are from a database (since my objects are not database objects)

However, there is one thing that I'd like to do that memcached can't do. I want to periodically (perhaps once per day) save the cache contents to disk. And I want to be able to restore the cache from the saved disk image.

The disk save does not need to be very complex. If a new key/value is added while the save is taking place, I don't care if it's included in the save or not. And if an existing key/value is modified while the save is taking place, the saved value should be either the old value or the new value, but I don't care which one.

Can anyone recommend another caching solution (either free or commercial) that has all (or a significant percentage) of the memcached features that are important to me, and also allows the ability to save and restore the entire cache from disk?

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Just curious, why do you want to save the content and restore back? – Langali Aug 22 '09 at 19:53
Thanks for the responses. I'll probably try Redis first, since it's closest to what I need, but I'll need to do some testing to verify its robustness. We want to do a daily save, which we will almost never use. We will only do a restore from disk if the cache is cleared, which would probably only happen if the server reboots. Restoring from disk is preferable to regenerating the objects because in addition to latency, we would be hitting a third-party server, and regenerating a large number of objects in a short period of time might cause us to exceed a usage cap on the third-party server. – Mike W Aug 24 '09 at 18:00
Minor nitpick: memcache is not really distributed as term is usually used; it is sharded. Distribution usually implies some level of coordination between instances, which mecmached explicitly avoids. – StaxMan Oct 24 '10 at 3:24
@MikeW MIke, how did it go? I would like your input to the tests as I am facing the same situation. It would be nice if you can share your test results and what options did you take. Thanks. – Paulo Pedroso Feb 2 at 14:32

15 Answers 15

up vote 14 down vote accepted

Maybe your problem like mine: I have only a few machines for memcached, but with lots of memory. Even if one of them fails or needs to be rebooted, it seriously affects the performance of the system. According to the original memcached philosophy I should add a lot more machines with less memory each, but that's not cost efficient and not exactly "green IT" ;)

For our solution, we built a interface layer for the Cache system in a way that providers to underlying cache systems can be nested, like you can do with streams, and wrote a cache provider for memcached as well as our own very simple Key-Value-2-disk storage provider. Then we define a weight for cache items that represents how costly it is to rebuild an item if it cannot be retrieved from cache. The nested Disk cache is only used for items with a weight above a certain threshold, maybe around 10% of all items.

When storing an object in the cache, we won't loose time as saving to one or both caches is queued for asynchronous execution anyway. So writing to the disk cache doesn't need to be fast. Same for reads: First we go for memcached, and only if it's not there and it is a "costly" object, then we check the disk cache (which is by magnitudes slower than memcached, but still so much better then recalculating 30 GB of data after a single machine went down).

This way we get the best from both worlds, without replacing memcached by anything new.

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Great approach on caching! Like your weight idea – Industrial May 20 '10 at 20:44

I have never tried it, but what about redis ?
Its homepage says (quoting) :

Redis is a key-value database. It is similar to memcached but the dataset is not volatile, and values can be strings, exactly like in memcached, but also lists and sets with atomic operations to push/pop elements.

In order to be very fast but at the same time persistent the whole dataset is taken in memory and from time to time and/or when a number of changes to the dataset are performed it is written asynchronously on disk. You may lost the last few queries that is acceptable in many applications but it is as fast as an in memory DB (Redis supports non-blocking master-slave replication in order to solve this problem by redundancy).

It seems ot answer some points you talked about, so maybe it might be helpful, in your case ?

If you try it, I'm pretty interested by what you find out, btw ;-)

As a sidenote : if you need to write all this to disk, maybe a cache system is not really what you need... afterall, if you are using memcached as a cache, you should be able to re-populate it on-demand, whenever it is necessary -- still, I admit, there might be some performance problems if you whole memcached cluster falls at once...

So, maybe some "more" key/value store oriented software could help ? Something like CouchDB, for instance ?
It will probably not be as fast as memcached, as data is not store in RAM, but on disk, though...

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EhCache has a "disk persistent" mode which dumps the cache contents to disk on shutdown, and will reinstate the data when started back up again. As for your other requirements, when running in distributed mode it replicates the data across all nodes, rather than storing them on just one. other than that, it should fit your needs nicely. It's also still under active development, which many other java caching frameworks are not.

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I used EhCache to build a set of persistent collections for Java and it works great. – Jonathan Barbero Jan 18 '10 at 18:59
@skaffman Thanks for pointing to EhCache in the current version it is most flexible and satisified my needs. – Nick Weaver Dec 17 '11 at 14:38

I think membase is what you want.

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Try go-memcached - memcache server written in Go. It persists cached data to disk out of the box. Go-memcached is compatible with memcache clients. It has the following features missing in the original memcached:

  • Cached data survive server crashes and/or restarts.
  • Cache size may exceed available RAM size by multiple orders of magnitude.
  • There is no 250 byte limit on key size.
  • There is no 1Mb limit on value size. Value size is actually limited by 2Gb.
  • It is faster than the original memcached. It also uses less CPU when serving incoming requests.

Here are performance numbers obtained via go-memcached-bench:

|            |  go-memcached   | original memcached |
|            |      v1         |      v1.4.13       |
| workerMode ----------------------------------------
|            | Kqps | cpu time |  Kqps  | cpu time  |
| GetMiss    | 648  |    17    |  468   |   33      |
| GetHit     | 195  |    16    |  180   |   17      |
| Set        | 204  |    14    |  182   |   25      |
| GetSetRand | 164  |    16    |  157   |   20      |

Statically linked binaries for go-memcached and go-memcached-bench are available at downloads page.

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are you using this on your production server ? – khizar ansari Mar 27 '13 at 13:06
I successfully use go-memcached in multiple highload projects. – valyala Mar 1 '15 at 13:41

Take a look at the Apache Java Caching System (JCS)

JCS is a distributed caching system written in java. It is intended to speed up applications by providing a means to manage cached data of various dynamic natures. Like any caching system, JCS is most useful for high read, low put applications. Latency times drop sharply and bottlenecks move away from the database in an effectively cached system. Learn how to start using JCS.

The JCS goes beyond simply caching objects in memory. It provides numerous additional features:

* Memory management
* Disk overflow (and defragmentation)
* Thread pool controls
* Element grouping
* Minimal dependencies
* Quick nested categorical removal
* Data expiration (idle time and max life)
* Extensible framework
* Fully configurable runtime parameters
* Region data separation and configuration
* Fine grained element configuration options
* Remote synchronization
* Remote store recovery
* Non-blocking "zombie" (balking facade) pattern
* Lateral distribution of elements via HTTP, TCP, or UDP
* UDP Discovery of other caches
* Element event handling
* Remote server chaining (or clustering) and failover
* Custom event logging hooks
* Custom event queue injection
* Custom object serializer injection
* Key pattern matching retrieval
* Network efficient multi-key retrieval
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In my experience, it is best to write an intermediate layer between the application and the backend storage. This way you can pair up memcached instances and for example sharedanced (basically same key-value store, but disk based). Most basic way to do this is, always read from memcached and fail-back to sharedanced and always write to sharedanced and memcached.

You can scale writes by sharding between multiple sharedance instances. You can scale reads N-fold by using a solution like repcached (replicated memcached).

If this is not trivial for you, you can still use sharedanced as a basic replacement for memcached. It is fast, most of the filesystem calls are eventually cached - using memcached in combination with sharedance only avoids reading from sharedanced until some data expires in memcache. A restart of the memcached servers would cause all clients to read from the sharedance instance atleast once - not really a problem, unless you have extremely high concurrency for the same keys and clients contend for the same key.

There are certain issues if you are dealing with a severely high traffic environment, one is the choice of filesystem (reiserfs performs 5-10x better than ext3 because of some internal caching of the fs tree), it does not have udp support (TCP keepalive is quite an overhead if you use sharedance only, memcached has udp thanks to the facebook team) and scaling is usually done on your aplication (by sharding data across multiple instances of sharedance servers).

If you can leverage these factors, then this might be a good solution for you. In our current setup, a single sharedanced/memcache server can scale up to about 10 million pageviews a day, but this is aplication dependant. We don't use caching for everything (like facebook), so results may vary when it comes to your aplication.

And now, a good 2 years later, Membase is a great product for this. Or Redis, if you need additional functionality like Hashes, Lists, etc.

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What about Terracotta?

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Oracle NoSQL is based on BerkeleyDB (the solution that Bill Karwin pointed to), but adds sharding (partitioning of the data set) and elastic scale-out. See: http://www.oracle.com/technetwork/products/nosqldb/overview/index.html

I think it meets all of the requirements of the original question.

For the sake of full disclosure, I work at Oracle (but not on the Oracle NoSQL product). The opinions and views expressed in this post are my own, and do not necessarily reflect the opinions or views of my employer.

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memcached can be substituted by Couchbase - this is an open source and commercial continuation of this product line. It has data to disk persistence (very efficient and configurable). Also original authors of memcached have been working on Couchbase and its compatible with memcached protocol - so you don't need to change your client application code! Its very performing product and comes with 24/7 clustering and Cross Datacenter Replication (XDCR) built in. See technical paper.

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You could use Tarantool (http://tarantool.org). It is an in-memory database with persistence, master-master replication and scriptable key expiration rules - https://github.com/tarantool/expirationd

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Have you looked at BerkeleyDB?

  • Fast, embedded, in-process data management.
  • Key/value store, non-relational.
  • Persistent storage.
  • Free, open-source.

However, it fails to meet one of your criteria:

  • BDB supports distributed replication, but the data is not partitioned. Each node stores the full data set.
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BDB is used as the basis for the Oracle NoSQL product, which does support partitioning. – cpurdy Feb 14 '14 at 19:47
Cool tip, @cpurdy, thanks. – Bill Karwin Feb 14 '14 at 20:21

We are using OSCache. I think it meets almost all your needs except periodically saving cache to the disk, but you should be able to create 2 cache managers (one memory based and one hdd based) and periodically run java cronjob that goes through all in-memory cache key/value pairs and puts them into hdd cache. What's nice about OSCache is that it is very easy to use.

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You can use GigaSpaces XAP which is a mature commercial product which answers your requirements and more. It is the fastest distributed in-memory data grid (cache++), it is fully distributed, and supports multiple styles of persistence methods.

Guy Nirpaz, GigaSpaces

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Just to complete this list - I just found couchbase. However I haven't tested it yet.

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Oh .. I just saw, that "membase" (mentioned by Benjamin Nitlehoo) is now called "couchbase" – rudi Dec 12 '12 at 7:21

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