I know that a big part of the performance from Couchbase comes from serving in-memory documents and for many of my data types that seems like an entirely reasonable aspiration but considering how user-data scales and is used I'm wondering if it's reasonable to plan for only a small percentage of the user documents to be in memory all of the time. I'm thinking maybe only 10-15% at any given time. Is this a reasonable assumption considering:
At any given time period there will be a only a fractional number of users will be using the system.
In this case, users only access there own data (or predominantly so)
Recently entered data is exponentially more likely to be viewed than historical user documents
UPDATE:
Some additional context:
Let's assume there's a user base of a 1 million customers, that 20% rarely if ever access the site, 40% access it once a week, and 40% access it every day.
At any given moment, only 5-10% of the user population would be logged in
When a user logs in they are like to re-query for certain documents in a single session (although the client does do some object caching to minimise this)
For any user, the most recent records are very active, the very old records very inactive
In summary, I would say of a majority of user-triggered transactional documents are queried quite infrequently but there are a core set -- records produced in the last 24-48 hours and relevant to the currently "logged in" group -- that would have significant benefits to being in-memory.
Two sub-questions are:
Is there a way to indicate a timestamp on a per-document basis to indicate it's need to be kept in memory?
How does couchbase overcome the growing list of document id's in-memory. It is my understanding that all ID's must always be in memory? isn't this too memory intensive for some apps?
First,one of the major benefits to CB is the fact that it is spread across multiple nodes. This also means your queries are spread across multiple nodes and you have a performance gain as a result (I know several other similar nosql spread across nodes - so maybe not relevant for your comparison?).
Next, I believe this question is a little bit too broad as I believe the answer will really depend on your usage. Does a given user only query his data one time, at random? If so, then according to you there will only be an in-memory benefit 10-15% of the time. If instead, once a user is on the site, they might query their data multiple times, there is a definite performance benefit.
Regardless, Couchbase has pretty fast disk-access performance, particularly on SSDs, so it probably doesn't make much difference either way, but again without specifics there is no way to be sure. If it's a relatively small document size, and if it involves a user waiting for one of them to load, then the user certainly will not notice a difference whether the document is loaded from RAM or disk.
Here is an interesting article on benchmarks for CB against similar nosql platforms.
Edit:
After reading your additional context, I think your scenario lines up pretty much exactly how Couchbase was designed to operate. From an eviction standpoint, CB keeps the newest and most-frequently accessed items in RAM. As RAM fills up with new and/or old items, oldest and least-frequently accessed are "evicted" to disk. This link from the Couchbase Manual explains more about how this works.
I think you are on the right track with Couchbase - in any regard, it's flexibility with scaling will easily allow you to tune the database to your application. I really don't think you can go wrong here.
Regarding your two questions:
Not in Couchbase 2.2
You should use relatively small document IDs. While it is true they are stored in RAM, if your document ids are small, your deployment is not "right-sized" if you are using a significant percentage of the available cluster RAM to store keys. This link talks about keys and gives details relevant to key size (e.g. 250-byte limit on size, metadata, etc.).
Basically what you are making a decision point on is sizing the Couchbase cluster for bucket RAM, and allowing a reduced residency ratio (% of document values in RAM), and using Cache Misses to pull from disk.
However, there are caveats in this scenario as well. You will basically also have relatively constant "cache eviction" where "not recently used" values are being removed from RAM cache as you pull cache missed documents from disk into RAM. This is because you will always be floating at the high water mark for the Bucket RAM quota. If you also simultaneously have a high write velocity (new/updated data) they will also need to be persisted. These two processes can compete for Disk I/O if the write velocity exceeds your capacity to evict/retrieve, and your SDK client will receive a Temporary OOM error if you actually cannot evict fast enough to open up RAM for new writes. As you scale horizontally, this becomes less likely as you have more Disk I/O capacity spread across more machines all simultaneously doing this process.
If when you say "queried" you mean querying indexes (i.e. Views), this is a separate data structure on disk that you would be querying and of course getting results back is not subject to eviction/NRU, but if you follow the View Query with a multi-get the above still applies. (Don't emit entire documents into your Index!)
Related
I am evaluating a few different options for powering an analytics application using an open-source technology. One of the options is using ElasticSearch, though I haven't been able to find any examples of companies using it for large-scale implementations of analytics, thus my question here.
For datasets of 1B-10B points, what limitations (if any, or would it be possible?) would ElasticSearch have? For example, in having a feature-set like Google Analytics, with it.
Here's one user who seems to do analytics on largeish amounts of data - https://digitalgov.gov/2015/01/07/elk - plus description of what they do including downsides.
With Elasticsearch there is no black-white answer to a question as open-ended as yours. The amount of records is not everything: how much disk space are we talking about, how many nodes, how many indices, the number of shards for each, what kind of analytics you need, hardware specs etc etc. Two things are certain from the data you mentioned: you need dedicated master nodes and more importantly good client nodes and depending on queries and the concurrent searches count you will need more or less of them.
In Elasticsearch 5 the client node is called coordinating node but it has the same role. One limitation I can think of is the heap/RAM memory of such coordinating node. The heap of an Elasticsearch node shouldn't be set to values larger than ~30GB due to the longer garbage collection cycles of the JVM (larger memory to clean, more time it takes, more unusable the node is). During GC nothing else runs on that JVM. So you could be limited by the size of the memory.
I said that you most likely will need coordinating nodes because heavy aggregations (what will probably be the most used feature in an analytics platform) will use cpu and memory in the final phase of a query where it gathers the results from all shards involved and performs a final sorting and aggregation. Thus it will need more memory than a normal data node would only for aggregations.
I doubt though that a single aggregation will use so many GBs of memory but it could theoretically use it if the query/aggregation being used is built in a reckless way. Depending on how many concurrent searches there are and how much memory they use you might need more or less coordinating nodes so that the GC cycles are not very frequent.
Bottom line: I think this is possible but some common sense is needed (see my comment about reckless aggregations) and some as close to reality as possible estimations regarding the load.
Google Analytics Pros:
Easy to Install
Can be used in multiple environments (e.g. web, mobile, other)
Customized data collection
Google Analytics Cons:
Custom reporting is limited
Upgrading to Premium is expensive
Requires continual traning
Slices data into smaller samples to deal with large sampling issues
ElasticSearch Pros:
Distributed by design
Easier to scale horizontally
Good at full text search
Fast indexing & querying
ElasticSearch Cons:
Not a relational database therefore does not benefit from things like foreign-key constaints
Data consistency can be affected
No built-in authentication or authorization system
Can someone point me to cassandra client code that can achieve a read throughput of at least hundreds of thousands of reads/s if I keep reading the same record (or even a small number of records) over and over? I believe row_cache_size_in_mb is supposed to cache frequently used records in memory, but setting it to say 10MB seems to make no difference.
I tried cassandra-stress of course, but the highest read throughput it achieves with 1KB records (-col size=UNIFORM\(1000..1000\)) is ~15K/s.
With low numbers like above, I can easily write an in-memory hashmap based cache that will give me at least a million reads per second for a small working set size. How do I make cassandra do this automatically for me? Or is it not supposed to achieve performance close to an in-memory map even for a tiny working set size?
Can someone point me to cassandra client code that can achieve a read throughput of at least hundreds of thousands of reads/s if I keep reading the same record (or even a small number of records) over and over?
There are some solution for this scenario
One idea is to use row cache but be careful, any update/delete to a single column will invalidate the whole partition from the cache so you loose all the benefit. Row cache best usage is for small dataset and are frequently read but almost never modified.
Are you sure that your cassandra-stress scenario never update or write to the same partition over and over again ?
Here are my findings: when I enable row_cache, counter_cache, and key_cache all to sizable values, I am able to verify using "top" that cassandra does no disk I/O at all; all three seem necessary to ensure no disk activity. Yet, despite zero disk I/O, the throughput is <20K/s even for reading a single record over and over. This likely confirms (as also alluded to in my comment) that cassandra incurs the cost of serialization and deserialization even if its operations are completely in-memory, i.e., it is not designed to compete with native hashmap performance. So, if you want get native hashmap speeds for a small-working-set workload but expand to disk if the map grows big, you would need to write your own cache on top of cassandra (or any of the other key-value stores like mongo, redis, etc. for that matter).
For those interested, I also verified that redis is the fastest among cassandra, mongo, and redis for a simple get/put small-working-set workload, but even redis gets at best ~35K/s read throughput (largely independent, by design, of the request size), which hardly comes anywhere close to native hashmap performance that simply returns pointers and can do so comfortably at over 2 million/s.
Please bear with me, this is a basic architectural question for my first attempt at a "big data" project, but I believe your answers will be of general interest to anyone who is starting out in this field.
I've googled and read the high-level descriptions of Kafka, Storm, Memcached, MongoDB, etc., but now that I'm ready to dig in to start designing my app, I still need some further insight on how in fact the data should be distributed and shared.
The performance of my app is critical, so one objective is to somehow maximize the locality of the data in the RAM of the machines doing the distributed calculations. I need advice for this part of the design.
If my app had some clear criteria for a priori sharding the data and distributing the calculations (such as geographical regions or company divisions) then the solution would be obvious. But unfortunately my app's data access patterns are dynamic and depend on the results of previous calculations.
My app is an analysis program with distinct stages. In the first stage, all the data is accessed once and a metric is calculated for each data object. In the second stage, a subset of the data objects may be accessed, with the probability of access being proportional to each data object's metric that was calculated in the previous stage. In the final stage, a relatively small subset of data objects will be accessed many times for many calculations.
At all stages, it is required that the calculations be distributed across several servers. The calculations are embarassingly parallel, and each distributed calculation only needs to access a few data objects. It is also required that the number of servers can be specified before the app runs (for example, run on one server, or run on fifty servers).
It seems to me that I need some mechanism that distributes the appropriate data objects to the appropriate compute servers, as opposed to just blindly fetching the data from some database service (whether centralized or distributed). Also, it seems to me that some sort of smart caching system might be appropriate, since the data access pattern depends on the previous calculations and cannot be predicted a priori. But as far as I can tell, Memcached is not such a system because the sharding is determined a priori.
I've read many times that the operating system cache performs better than any monkeying around that we may try. I think the ideal solution is that each compute server's RAM cache somehow captures the data objects' dynamic access patterns, but it's not clear to me how this would work with a NoSQL or Memcached service.
Thanks for bearing with me this far. I realize this is a basic question, but the answer eludes me so far. I can't resolve the dynamic access patterns of my app with the a priori sharding of the NoSQL/Memcached packages. Any advice would be greatly appreciated.
I recommend you to take a look at http://tarantool.org. Shard to maximize locality for the most common data access pattern, use Lua for local computations, and net.box to issue a remote RPC when calculation needs to continue on another node. All data is stored in RAM, if you write your computation code carefully it could take advantage of the Just In Time compiler.
We have a mongodb with 336GB data on it.
Unfortunately there is only 8GB memory on that server.
Is it true to say that this will slow the db down, especially when I try to traverse the entire collection?
What can I do to improve performance?
To get things right, this isn't a "BIG" production setup; it is actually relatively small.
That aside:
Is it true to say that this will slow the db down, especially when I try to traverse the entire collection?
It is true yes. As you iterate the collection MongoDB will need to page in your data, this is true even if you have indexes on the collection.
The exception to this is when you use indexOnly cursors whereby all the data comes only from the index, including the returned document; these are otherwise known as covered queries.
The problem you have here is that your dataset is 42x greater than your RAM amount, assuming you are allowed to use all your RAM (this is not true of course, the OS and other programs will reserve amounts off for themselves). This means that if you expect to iterate the entire collection you will not be able to do it performantly, instead MongoDB could be page thrashing its allocated memory.
What can I do to improve performance?
Get a little more RAM.
You could also try a bit of sharding if getting too much RAM on that one server is a pain.
I would aim for about 20x more data than RAM, that shouldn't be too bad in most cases.
You should index your collection http://docs.mongodb.org/manual/applications/indexes/ to improve performance, but bear in mind that memory is utilised by mongodb when querying indexes so make sure each index you create can fit within the memory you have on your server.
You could also shard your collection but you will need more servers to do this. http://docs.mongodb.org/manual/sharding/
And I know it's obvious but get more memory - its cheap!
Mongodb uses memory-mapped files to map the data in to the systems virtual memory. If you try to access more data than the available memory of the system, the performance will be poor. You'll have to consider other options like sharding, indexing, increasing RAM etc. Indexing may improve the performance but not by much if done on a large data set, because indexes also need memory. A few references:
First 3 questions talk about memory-mapped files: http://docs.mongodb.org/manual/faq/storage/
On sharding: http://docs.mongodb.org/manual/faq/sharding/
Ensuring index fit into the RAM: http://docs.mongodb.org/manual/applications/indexes/#ensure-indexes-fit-ram
The other answers say either "have enough memory to fit your data" or "have enough memory for each index" or "have some multiple of your RAM in data". None of those are very effective nor very precise for capacity planning.
You need to know what your access patterns will be and then decide what indexes you will need to effectively be able to use your data. If all of your indexes fit in available RAM with some room to spare for most recently touched documents, then you should be okay.
When your working set (accessed data + indexes) cannot fit in RAM then your performance will be correlated more with disk access speed than anything else. Depending on how fast your disks are and on your throughput and latency requirements, it may work out okay or it may not.
While there is not enough information to say with certainty whether you will succeed or fail on this particular machine, you should be able to collect enough information to determine that for yourself by analyzing your indexing needs, etc.
How many views per bucket is too much, assuming a large amount of data in the bucket (>100GB, >100M documents, >12 document types), and assuming each view applies only to one document type? Or asked another way, at what point should some document types be split into separate buckets to save on the overhead of processing all views on all document types?
I am having a hard time deciding how to split my data into couchbase buckets, and the performance implications of the views required on the data. My data consists of more than a dozen relational DBs, with at least half with hundreds of millions of rows in a number of tables.
The http://www.couchbase.com/docs/couchbase-manual-2.0/couchbase-views-writing-bestpractice.html doc section "using document types" seems to imply having multiple document types in the same bucket is not ideal because views on specific document types are updated for all documents, even those that will never match the view. Indeed, it suggests separating data into buckets to avoid this overhead.
Yet there is a limit of 10 buckets per cluster for performance reasons. My only conclusion therefore is that each cluster can handle a maximum of 10 large collections of documents efficiently. Is this accurate?
Tug's advice was right on and allow me to add some perspective as well.
A bucket can be considered most closely related to (though not exactly) a "database instantiation" within the RDMS world. There will be multiple tables/schemas within that "database" and those can all be combined within a bucket.
Think about a bucket as a logical grouping of data that all shares some common configuration parameters (RAM quota, replica count, etc) and you should only need to split your data into multiple buckets when you need certain datasets to be controlled separately. Other reasons are related to very different workloads to different datasets or the desire to be able to track the workload to those datasets separately.
Some examples:
-I want to control the caching behavior for one set of data differently than another. For instance, many customers have a "session" bucket that they want always in RAM whereas they may have a larger, "user profile" bucket that doesn't need all the data cached in RAM. Technically these two data sets could reside in one bucket and allow Couchbase to be intelligent about which data to keep in RAM, but you don't have as much guarantee or control that the session data won't get pushed out...so putting it in its own bucket allows you to enforce that. It also gives you the added benefit of being able to monitor that traffic separately.
-I want some data to be replicated more times than others. While we generally recommend only one replica in most clusters, there are times when our users choose certain datasets that they want replicated an extra time. This can be controlled via separate buckets.
-Along the same lines, I only want some data to be replicated to another cluster/datacenter. This is also controlled per-bucket and so that data could be split to a separate bucket.
-When you have fairly extreme differences in workload (especially around the amount of writes) to a given dataset, it does begin to make sense from a view/index perspective to separate the data into a separate bucket. I mention this because it's true, but I also want to be clear that it is not the common case. You should use this approach after you identify a problem, not before because you think you might.
Regarding this last point, yes every write to a bucket will be picked up by the indexing engine but by using document types within the JSON, you can abort the processing for a given document very quickly and it really shouldn't have a detrimental impact to have lots of data coming in that doesn't apply to certain views. If you don't mind, I'm particularly curious at which parts of the documentation imply otherwise since that certainly wasn't our intention.
So in general, we see most deployments with a low number of buckets (2-3) and only a few upwards of 5. Our limit of 10 comes from some known CPU and disk IO overhead of our internal tracking of statistics (the load or lack thereof on a bucket doesn't matter here). We certainly plan to reduce this overhead with future releases, but that still wouldn't change our recommendation of only having a few buckets. The advantages of being able to combine multiple "schemas" into a single logical grouping and apply view/indexes across that still exist regardless.
We are in the process right now of coming up with much more specific guidelines and sizing recommendations (I wrote those first two blogs as a stop-gap until we do).
As an initial approach, you want to try and keep the number of design documents around 4 because by default we process up to 4 in parallel. You can increase this number, but that should be matched by increased CPU and disk IO capacity. You'll then want to keep the number of views within each document relatively low, probably well below 10, since they are each processed in serial.
I recently worked with one user who had an fairly large amount of views (around 8 design documents and some dd's with nearly 20 views) and we were able to drastically bring this down by combining multiple views into one. Obviously it's very application dependent, but you should try to generate multiple different "queries" off of one index. Using reductions, key-prefixing (within the views), and collation, all combined with different range and grouping queries can make a single index that may appear crowded at first, but is actually very flexible.
The less design documents and views you have, the less disk space, IO and CPU resources you will need. There's never going to be a magic bullet or hard-and-fast guideline number unfortunately. In the end, YMMV and testing on your own dataset is better than any multi-page response I can write ;-)
Hope that helps, please don't hesitate to reach out to us directly if you have specific questions about your specific use case that you don't want published.
Perry
As you can see from the Couchbase documentation, it is not really possible to provide a "universal" rules to give you an exact member.
But based on the best practice document that you have used and some discussion(here) you should be able to design your database/views properly.
Let's start with the last question:
YES the reason why Couchbase advice to have a small number of bucket is for performance - and more importantly resources consumption- reason. I am inviting you to read these blog posts that help to understand what's going on "inside" Couchbase:
Sizing 1: http://blog.couchbase.com/how-many-nodes-part-1-introduction-sizing-couchbase-server-20-cluster
Sizing 2: http://blog.couchbase.com/how-many-nodes-part-2-sizing-couchbase-server-20-cluster
Compaction: http://blog.couchbase.com/compaction-magic-couchbase-server-20
So you will see that most of the "operations" are done by bucket.
So let's now look at the original question:
yes most the time your will organize the design document/and views by type of document.
It is NOT a problem to have all the document "types" in a single(few) buckets, this is in fact the way your work with Couchbase
The most important part to look is, the size of your doc (to see how "long" will be the parsing of the JSON) and how often the document will be created/updated, and also deleted, since the JS code of the view is ONLY executed when you create/change the document.
So what you should do:
1 single bucket
how many design documents? (how many types do you have?)
how any views in each document you will have?
In fact the most expensive part is not during the indexing or quering it is more when you have to rebalance the data and indices between nodes (add, remove , failure of nodes)
Finally, but it looks like you already know it, this chapter is quite good to understand how views works (how the index is created and used):
http://www.couchbase.com/docs/couchbase-manual-2.0/couchbase-views-operation.html
Do not hesitate to add more information if needed.