Is there any advantage to putting each database in it's own environment? - berkeley-db-je

Is there any advantage to creating a separate environment for each database? I gather that all databases in an environment are stored in the same chain of log files, in one directory. I was wondering if using separate environments might speed up cleaning, among other things.
thanks

Databases stored in separate environments tend to have better data locality. This can results in faster I/O (both reading and writing) since higher locality rate means better file system caching. Garbage collector (cleaner) can work faster as well, because for each environment it should move less data (which is more local) and it requires less lookups. These advantages might be even more noticeable if separate environments were located on different physical storage devices (HDD, SSD).
Nevertheless, there are some disadvantages. First of all, JE caching will be less efficient. Second, you won't be able to read/update the databases in a single transaction.
So the typical case for storing databases in separate environments is if:
There are no specific requirements for consistency of data stored in different databases, i.e. it can be read/updated more or less successively in several transactions atop of separate environments.
Entire data in all environments doesn't fit in memory, so database operations require some I/O.
Separate environments can be located on separate storage devices.

Related

Is sharing database with multiple serverless functions good practice?

Is sharing database with multiple serverless functions good practice?
Like in a CRUD application, normally the Create, Update, Delete and Read are different operations sharing the same database. If we migrate that idea on serverless, is that still ideal? All of those operations accessing the same database.
My hesitation comes from the idea of sharing databases between different microservices. Since that increases coupling and makes things more fragile.
The answer to this question is dependent on the circumstances of both the database and the operations.
These concerns can be boiled down to the following characteristics of the database:
Can it handle concurrency? This is the number one reason that can stop a network of serverless functions from operating on the database. For example, S3 buckets cannot handle concurrency, so a workaround such as firehose or an SQS would need to be implemented in order for multiple lambdas to operate simultaneously. DynamoDB, on the other hand, can handle concurrency with no problem.
Is it a transactional or analytical database? This would limit how fast reads vs. writes take place, and if they're too slow, your lambdas will get exponentially slower. This means that if, for example, writes are slow, then they should be done in large batches- not in small increments from multiple instances.
What are its limitations for operation frequency? There can be limitations from both sides of the equation. Lambdas on default have a maximum concurrency of 1000 if they all exist in the same region. Databases often also have limitations for how many operations can take place at the same time.
In most cases, the first two bullets are most important, since limitations normally are not reached except for a few rare cases.

Redis: using two instances or just one (caching and storage)?

We need to perform rate limiting for requests to our API. We have a lot of web servers, and the rate limit should be shared between all of them. Also, the rate limit demands a certain amount of ephemeral storage (we want to store the users quota for a certain period of time).
We have a great rate limiting implementation that works with Redis by using SETEX. In this use case we need Redis to also be used a storage (for a short while, according to the expiration set on the SETEX calls). Also, the cache needs to be shared across all servers, and there is no way we could use something like an in-memory cache on each web server for dealing with the rate limiting since the rate limiting is per user - so we expect to have a lot of memory consumed for this purpose. So this process is a great use case for a Redis cluster.
Thing is - the same web server that performs the rate limit, also has some other caching needs. It fetches some stuff from a DB, and then caches the results in two layers: first, in an in-memory LRU-cache (on the actual server) and the second layer is Redis again - this time used as cache-only (no storage). In case the item gets evicted from the in-memory LRU-cache, it is passed on to be saved in Redis (so that even when a cache miss occurs in-memory, there would still be a cache-hit because thanks to Redis).
Should we use the same Redis instance for both needs (rate limiter that needs storage on one hand and cache layer that does not on the other)? I guess we could use a single Redis instance that includes storage (not the cache only option) and just use that for both needs? Would it be better, performance wise, for each server of ours to talk to two Redis instances - one that's used as cache-only and one that also features the storage option?
I always recommend dividing your setup into distinct data roles. Combining them sounds neat but in practice can be a real pain. In your case you ave two distinct "data roles": cached data and stored data. That is two major classes of distinction which means use two different instances.
In your particular case isolating them will be easier from an operational standpoint when things go wrong or need upgrading. You'll avoid intermingling services such that an issue in caching causes issues in your "storage" layer - or the inverse.
Redis usage tends to grow into more areas. If you get in the habit of dedicated Redis endpoints now you'll be better able to grow your usage in the future, as opposed to having to refactor and restructure into it when things get a bit rough.

Memcached vs. Redis? [closed]

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We're using a Ruby web-app with Redis server for caching. Is there a point to test Memcached instead?
What will give us better performance? Any pros or cons between Redis and Memcached?
Points to consider:
Read/write speed.
Memory usage.
Disk I/O dumping.
Scaling.
Summary (TL;DR)
Updated June 3rd, 2017
Redis is more powerful, more popular, and better supported than memcached. Memcached can only do a small fraction of the things Redis can do. Redis is better even where their features overlap.
For anything new, use Redis.
Memcached vs Redis: Direct Comparison
Both tools are powerful, fast, in-memory data stores that are useful as a cache. Both can help speed up your application by caching database results, HTML fragments, or anything else that might be expensive to generate.
Points to Consider
When used for the same thing, here is how they compare using the original question's "Points to Consider":
Read/write speed: Both are extremely fast. Benchmarks vary by workload, versions, and many other factors but generally show redis to be as fast or almost as fast as memcached. I recommend redis, but not because memcached is slow. It's not.
Memory usage: Redis is better.
memcached: You specify the cache size and as you insert items the daemon quickly grows to a little more than this size. There is never really a way to reclaim any of that space, short of restarting memcached. All your keys could be expired, you could flush the database, and it would still use the full chunk of RAM you configured it with.
redis: Setting a max size is up to you. Redis will never use more than it has to and will give you back memory it is no longer using.
I stored 100,000 ~2KB strings (~200MB) of random sentences into both. Memcached RAM usage grew to ~225MB. Redis RAM usage grew to ~228MB. After flushing both, redis dropped to ~29MB and memcached stayed at ~225MB. They are similarly efficient in how they store data, but only one is capable of reclaiming it.
Disk I/O dumping: A clear win for redis since it does this by default and has very configurable persistence. Memcached has no mechanisms for dumping to disk without 3rd party tools.
Scaling: Both give you tons of headroom before you need more than a single instance as a cache. Redis includes tools to help you go beyond that while memcached does not.
memcached
Memcached is a simple volatile cache server. It allows you to store key/value pairs where the value is limited to being a string up to 1MB.
It's good at this, but that's all it does. You can access those values by their key at extremely high speed, often saturating available network or even memory bandwidth.
When you restart memcached your data is gone. This is fine for a cache. You shouldn't store anything important there.
If you need high performance or high availability there are 3rd party tools, products, and services available.
redis
Redis can do the same jobs as memcached can, and can do them better.
Redis can act as a cache as well. It can store key/value pairs too. In redis they can even be up to 512MB.
You can turn off persistence and it will happily lose your data on restart too. If you want your cache to survive restarts it lets you do that as well. In fact, that's the default.
It's super fast too, often limited by network or memory bandwidth.
If one instance of redis/memcached isn't enough performance for your workload, redis is the clear choice. Redis includes cluster support and comes with high availability tools (redis-sentinel) right "in the box". Over the past few years redis has also emerged as the clear leader in 3rd party tooling. Companies like Redis Labs, Amazon, and others offer many useful redis tools and services. The ecosystem around redis is much larger. The number of large scale deployments is now likely greater than for memcached.
The Redis Superset
Redis is more than a cache. It is an in-memory data structure server. Below you will find a quick overview of things Redis can do beyond being a simple key/value cache like memcached. Most of redis' features are things memcached cannot do.
Documentation
Redis is better documented than memcached. While this can be subjective, it seems to be more and more true all the time.
redis.io is a fantastic easily navigated resource. It lets you try redis in the browser and even gives you live interactive examples with each command in the docs.
There are now 2x as many stackoverflow results for redis as memcached. 2x as many Google results. More readily accessible examples in more languages. More active development. More active client development. These measurements might not mean much individually, but in combination they paint a clear picture that support and documentation for redis is greater and much more up-to-date.
Persistence
By default redis persists your data to disk using a mechanism called snapshotting. If you have enough RAM available it's able to write all of your data to disk with almost no performance degradation. It's almost free!
In snapshot mode there is a chance that a sudden crash could result in a small amount of lost data. If you absolutely need to make sure no data is ever lost, don't worry, redis has your back there too with AOF (Append Only File) mode. In this persistence mode data can be synced to disk as it is written. This can reduce maximum write throughput to however fast your disk can write, but should still be quite fast.
There are many configuration options to fine tune persistence if you need, but the defaults are very sensible. These options make it easy to setup redis as a safe, redundant place to store data. It is a real database.
Many Data Types
Memcached is limited to strings, but Redis is a data structure server that can serve up many different data types. It also provides the commands you need to make the most of those data types.
Strings (commands)
Simple text or binary values that can be up to 512MB in size. This is the only data type redis and memcached share, though memcached strings are limited to 1MB.
Redis gives you more tools for leveraging this datatype by offering commands for bitwise operations, bit-level manipulation, floating point increment/decrement support, range queries, and multi-key operations. Memcached doesn't support any of that.
Strings are useful for all sorts of use cases, which is why memcached is fairly useful with this data type alone.
Hashes (commands)
Hashes are sort of like a key value store within a key value store. They map between string fields and string values. Field->value maps using a hash are slightly more space efficient than key->value maps using regular strings.
Hashes are useful as a namespace, or when you want to logically group many keys. With a hash you can grab all the members efficiently, expire all the members together, delete all the members together, etc. Great for any use case where you have several key/value pairs that need to grouped.
One example use of a hash is for storing user profiles between applications. A redis hash stored with the user ID as the key will allow you to store as many bits of data about a user as needed while keeping them stored under a single key. The advantage of using a hash instead of serializing the profile into a string is that you can have different applications read/write different fields within the user profile without having to worry about one app overriding changes made by others (which can happen if you serialize stale data).
Lists (commands)
Redis lists are ordered collections of strings. They are optimized for inserting, reading, or removing values from the top or bottom (aka: left or right) of the list.
Redis provides many commands for leveraging lists, including commands to push/pop items, push/pop between lists, truncate lists, perform range queries, etc.
Lists make great durable, atomic, queues. These work great for job queues, logs, buffers, and many other use cases.
Sets (commands)
Sets are unordered collections of unique values. They are optimized to let you quickly check if a value is in the set, quickly add/remove values, and to measure overlap with other sets.
These are great for things like access control lists, unique visitor trackers, and many other things. Most programming languages have something similar (usually called a Set). This is like that, only distributed.
Redis provides several commands to manage sets. Obvious ones like adding, removing, and checking the set are present. So are less obvious commands like popping/reading a random item and commands for performing unions and intersections with other sets.
Sorted Sets (commands)
Sorted Sets are also collections of unique values. These ones, as the name implies, are ordered. They are ordered by a score, then lexicographically.
This data type is optimized for quick lookups by score. Getting the highest, lowest, or any range of values in between is extremely fast.
If you add users to a sorted set along with their high score, you have yourself a perfect leader-board. As new high scores come in, just add them to the set again with their high score and it will re-order your leader-board. Also great for keeping track of the last time users visited and who is active in your application.
Storing values with the same score causes them to be ordered lexicographically (think alphabetically). This can be useful for things like auto-complete features.
Many of the sorted set commands are similar to commands for sets, sometimes with an additional score parameter. Also included are commands for managing scores and querying by score.
Geo
Redis has several commands for storing, retrieving, and measuring geographic data. This includes radius queries and measuring distances between points.
Technically geographic data in redis is stored within sorted sets, so this isn't a truly separate data type. It is more of an extension on top of sorted sets.
Bitmap and HyperLogLog
Like geo, these aren't completely separate data types. These are commands that allow you to treat string data as if it's either a bitmap or a hyperloglog.
Bitmaps are what the bit-level operators I referenced under Strings are for. This data type was the basic building block for reddit's recent collaborative art project: r/Place.
HyperLogLog allows you to use a constant extremely small amount of space to count almost unlimited unique values with shocking accuracy. Using only ~16KB you could efficiently count the number of unique visitors to your site, even if that number is in the millions.
Transactions and Atomicity
Commands in redis are atomic, meaning you can be sure that as soon as you write a value to redis that value is visible to all clients connected to redis. There is no wait for that value to propagate. Technically memcached is atomic as well, but with redis adding all this functionality beyond memcached it is worth noting and somewhat impressive that all these additional data types and features are also atomic.
While not quite the same as transactions in relational databases, redis also has transactions that use "optimistic locking" (WATCH/MULTI/EXEC).
Pipelining
Redis provides a feature called 'pipelining'. If you have many redis commands you want to execute you can use pipelining to send them to redis all-at-once instead of one-at-a-time.
Normally when you execute a command to either redis or memcached, each command is a separate request/response cycle. With pipelining, redis can buffer several commands and execute them all at once, responding with all of the responses to all of your commands in a single reply.
This can allow you to achieve even greater throughput on bulk importing or other actions that involve lots of commands.
Pub/Sub
Redis has commands dedicated to pub/sub functionality, allowing redis to act as a high speed message broadcaster. This allows a single client to publish messages to many other clients connected to a channel.
Redis does pub/sub as well as almost any tool. Dedicated message brokers like RabbitMQ may have advantages in certain areas, but the fact that the same server can also give you persistent durable queues and other data structures your pub/sub workloads likely need, Redis will often prove to be the best and most simple tool for the job.
Lua Scripting
You can kind of think of lua scripts like redis's own SQL or stored procedures. It's both more and less than that, but the analogy mostly works.
Maybe you have complex calculations you want redis to perform. Maybe you can't afford to have your transactions roll back and need guarantees every step of a complex process will happen atomically. These problems and many more can be solved with lua scripting.
The entire script is executed atomically, so if you can fit your logic into a lua script you can often avoid messing with optimistic locking transactions.
Scaling
As mentioned above, redis includes built in support for clustering and is bundled with its own high availability tool called redis-sentinel.
Conclusion
Without hesitation I would recommend redis over memcached for any new projects, or existing projects that don't already use memcached.
The above may sound like I don't like memcached. On the contrary: it is a powerful, simple, stable, mature, and hardened tool. There are even some use cases where it's a little faster than redis. I love memcached. I just don't think it makes much sense for future development.
Redis does everything memcached does, often better. Any performance advantage for memcached is minor and workload specific. There are also workloads for which redis will be faster, and many more workloads that redis can do which memcached simply can't. The tiny performance differences seem minor in the face of the giant gulf in functionality and the fact that both tools are so fast and efficient they may very well be the last piece of your infrastructure you'll ever have to worry about scaling.
There is only one scenario where memcached makes more sense: where memcached is already in use as a cache. If you are already caching with memcached then keep using it, if it meets your needs. It is likely not worth the effort to move to redis and if you are going to use redis just for caching it may not offer enough benefit to be worth your time. If memcached isn't meeting your needs, then you should probably move to redis. This is true whether you need to scale beyond memcached or you need additional functionality.
Use Redis if
You require selectively deleting/expiring items in the cache. (You need this)
You require the ability to query keys of a particular type. eq. 'blog1:posts:*', 'blog2:categories:xyz:posts:*'. oh yeah! this is very important. Use this to invalidate certain types of cached items selectively. You can also use this to invalidate fragment cache, page cache, only AR objects of a given type, etc.
Persistence (You will need this too, unless you are okay with your cache having to warm up after every restart. Very essential for objects that seldom change)
Use memcached if
Memcached gives you headached!
umm... clustering? meh. if you gonna go that far, use Varnish and Redis for caching fragments and AR Objects.
From my experience I've had much better stability with Redis than Memcached
Memcached is multithreaded and fast.
Redis has lots of features and is very fast, but completely limited to one core as it is based on an event loop.
We use both. Memcached is used for caching objects, primarily reducing read load on the databases. Redis is used for things like sorted sets which are handy for rolling up time-series data.
This is too long to be posted as a comment to already accepted answer, so I put it as a separate answer
One thing also to consider is whether you expect to have a hard upper memory limit on your cache instance.
Since redis is an nosql database with tons of features and caching is only one option it can be used for, it allocates memory as it needs it — the more objects you put in it, the more memory it uses. The maxmemory option does not strictly enforces upper memory limit usage. As you work with cache, keys are evicted and expired; chances are your keys are not all the same size, so internal memory fragmentation occurs.
By default redis uses jemalloc memory allocator, which tries its best to be both memory-compact and fast, but it is a general purpose memory allocator and it cannot keep up with lots of allocations and object purging occuring at a high rate. Because of this, on some load patterns redis process can apparently leak memory because of internal fragmentation. For example, if you have a server with 7 Gb RAM and you want to use redis as non-persistent LRU cache, you may find that redis process with maxmemory set to 5Gb over time would use more and more memory, eventually hitting total RAM limit until out-of-memory killer interferes.
memcached is a better fit to scenario described above, as it manages its memory in a completely different way. memcached allocates one big chunk of memory — everything it will ever need — and then manages this memory by itself, using its own implemented slab allocator. Moreover, memcached tries hard to keep internal fragmentation low, as it actually uses per-slab LRU algorithm, when LRU evictions are done with object size considered.
With that said, memcached still has a strong position in environments, where memory usage has to be enforced and/or be predictable. We've tried to use latest stable redis (2.8.19) as a drop-in non-persistent LRU-based memcached replacement in workload of 10-15k op/s, and it leaked memory A LOT; the same workload was crashing Amazon's ElastiCache redis instances in a day or so because of the same reasons.
Memcached is good at being a simple key/value store and is good at doing key => STRING. This makes it really good for session storage.
Redis is good at doing key => SOME_OBJECT.
It really depends on what you are going to be putting in there. My understanding is that in terms of performance they are pretty even.
Also good luck finding any objective benchmarks, if you do find some kindly send them my way.
If you don't mind a crass writing style, Redis vs Memcached on the Systoilet blog is worth a read from a usability standpoint, but be sure to read the back & forth in the comments before drawing any conclusions on performance; there are some methodological problems (single-threaded busy-loop tests), and Redis has made some improvements since the article was written as well.
And no benchmark link is complete without confusing things a bit, so also check out some conflicting benchmarks at Dormondo's LiveJournal and the Antirez Weblog.
Edit -- as Antirez points out, the Systoilet analysis is rather ill-conceived. Even beyond the single-threading shortfall, much of the performance disparity in those benchmarks can be attributed to the client libraries rather than server throughput. The benchmarks at the Antirez Weblog do indeed present a much more apples-to-apples (with the same mouth) comparison.
I got the opportunity to use both memcached and redis together in the caching proxy that i have worked on , let me share you where exactly i have used what and reason behind same....
Redis >
1) Used for indexing the cache content , over the cluster . I have more than billion keys in spread over redis clusters , redis response times is quite less and stable .
2) Basically , its a key/value store , so where ever in you application you have something similar, one can use redis with bothering much.
3) Redis persistency, failover and backup (AOF ) will make your job easier .
Memcache >
1) yes , an optimized memory that can be used as cache . I used it for storing cache content getting accessed very frequently (with 50 hits/second)with size less than 1 MB .
2) I allocated only 2GB out of 16 GB for memcached that too when my single content size was >1MB .
3) As the content grows near the limits , occasionally i have observed higher response times in the stats(not the case with redis) .
If you ask for overall experience Redis is much green as it is easy to configure, much flexible with stable robust features.
Further , there is a benchmarking result available at this link , below are few higlight from same,
Hope this helps!!
Test. Run some simple benchmarks. For a long while I considered myself an old school rhino since I used mostly memcached and considered Redis the new kid.
With my current company Redis was used as the main cache. When I dug into some performance stats and simply started testing, Redis was, in terms of performance, comparable or minimally slower than MySQL.
Memcached, though simplistic, blew Redis out of water totally. It scaled much better:
for bigger values (required change in slab size, but worked)
for multiple concurrent requests
Also, memcached eviction policy is in my view, much better implemented, resulting in overall more stable average response time while handling more data than the cache can handle.
Some benchmarking revealed that Redis, in our case, performs very poorly. This I believe has to do with many variables:
type of hardware you run Redis on
types of data you store
amount of gets and sets
how concurrent your app is
do you need data structure storage
Personally, I don't share the view Redis authors have on concurrency and multithreading.
Another bonus is that it can be very clear how memcache is going to behave in a caching scenario, while redis is generally used as a persistent datastore, though it can be configured to behave just like memcached aka evicting Least Recently Used items when it reaches max capacity.
Some apps I've worked on use both just to make it clear how we intend the data to behave - stuff in memcache, we write code to handle the cases where it isn't there - stuff in redis, we rely on it being there.
Other than that Redis is generally regarded as superior for most use cases being more feature-rich and thus flexible.
It would not be wrong, if we say that redis is combination of (cache + data structure) while memcached is just a cache.
A very simple test to set and get 100k unique keys and values against redis-2.2.2 and memcached. Both are running on linux VM(CentOS) and my client code(pasted below) runs on windows desktop.
Redis
Time taken to store 100000 values is = 18954ms
Time taken to load 100000 values is = 18328ms
Memcached
Time taken to store 100000 values is = 797ms
Time taken to retrieve 100000 values is = 38984ms
Jedis jed = new Jedis("localhost", 6379);
int count = 100000;
long startTime = System.currentTimeMillis();
for (int i=0; i<count; i++) {
jed.set("u112-"+i, "v51"+i);
}
long endTime = System.currentTimeMillis();
System.out.println("Time taken to store "+ count + " values is ="+(endTime-startTime)+"ms");
startTime = System.currentTimeMillis();
for (int i=0; i<count; i++) {
client.get("u112-"+i);
}
endTime = System.currentTimeMillis();
System.out.println("Time taken to retrieve "+ count + " values is ="+(endTime-startTime)+"ms");
One major difference that hasn't been pointed out here is that Memcache has an upper memory limit at all times, while Redis does not by default (but can be configured to). If you would always like to store a key/value for certain amount of time (and never evict it because of low memory) you want to go with Redis. Of course, you also risk the issue of running out of memory...
Memcached will be faster if you are interested in performance, just even because Redis involves networking (TCP calls). Also internally Memcache is faster.
Redis has more features as it was mentioned by other answers.
The biggest remaining reason is specialization.
Redis can do a lot of different things and one side effect of that is developers may start using a lot of those different feature sets on the same instance. If you're using the LRU feature of Redis for a cache along side hard data storage that is NOT LRU it's entirely possible to run out of memory.
If you're going to setup a dedicated Redis instance to be used ONLY as an LRU instance to avoid that particular scenario then there's not really any compelling reason to use Redis over Memcached.
If you need a reliable "never goes down" LRU cache...Memcached will fit the bill since it's impossible for it to run out of memory by design and the specialize functionality prevents developers from trying to make it so something that could endanger that. Simple separation of concerns.
We thought of Redis as a load-takeoff for our project at work. We thought that by using a module in nginx called HttpRedis2Module or something similar we would have awesome speed but when testing with AB-test we're proven wrong.
Maybe the module was bad or our layout but it was a very simple task and it was even faster to take data with php and then stuff it into MongoDB. We're using APC as caching-system and with that php and MongoDB. It was much much faster then nginx Redis module.
My tip is to test it yourself, doing it will show you the results for your environment. We decided that using Redis was unnecessary in our project as it would not make any sense.
Redis is better.
The Pros of Redis are ,
It has a lot of data storage options such as string , sets , sorted sets , hashes , bitmaps
Disk Persistence of records
Stored Procedure (LUA scripting) support
Can act as a Message Broker using PUB/SUB
Whereas Memcache is an in-memory key value cache type system.
No support for various data type storages like lists , sets as in
redis.
The major con is Memcache has no disk persistence .
Here is the really great article/differences provided by Amazon
Redis is a clear winner comparing with memcached.
Only one plus point for Memcached
It is multithreaded and fast. Redis has lots of great features and is very fast, but limited to one core.
Great points about Redis, which are not supported in Memcached
Snapshots - User can take a snapshot of Redis cache and persist on
secondary storage any point of time.
Inbuilt support for many data structures like Set, Map, SortedSet,
List, BitMaps etc.
Support for Lua scripting in redis

Is it worth creating separate databases in CouchDB for different kinds of data?

If I have two different datasets in CouchDB,
one is infrequently updated (mostly updates to existing documents),
another one is written to very frequently (append-only)
Do I gain any advantage in separating them in separate databases performance-wise? Assume the database is regularly compacted.
From my experience the performance gains are really much dependent on the views when you query the data. I don't see how write performance would increase substantially by separating the db with frequent writes but, as this would impact the size of your database, I would advice to keep them separately. This would allow to run compacts at different times and overall, if you do have an issue with a database, it would allow you to isolate it and address it faster than all in one single database.

Best practices for deploying a high performance Berkeley DB system

I am looking to use Berkeley DB to create a simple key-value storage system. The keys will be SHA-1 hashes, so they are in 160-bit address space. I have a simple server working, that was easy enough thanks to the fairly well written documentation from Berkeley DB website. However, I have some questions about how best to set up such a system, to get good performance and flexibility. Hopefully, someone has had more experience with Berkeley DB and can help me.
The simplest setup is a single process, with a single thread, handling a single DB; inserts and gets are performed on this one DB, using transactions.
Alternative 1: single process, multiple threads, single DB; inserts and gets are performed on this DB, by all the threads in the process.
Does using multiple threads provide much performance improvements? There is one single DB, and therefore it's on one disk, and therefore I am guessing I won't get too much boost. But if Berkeley DB caches a lot of stuff in memory, then perhaps one thread will be able to run and answer from cache while another has blocked waiting for disk? I am using GNU Pth, user level cooperative threading. I am not familiar with the details of Pth, so I am also not sure if with Pth you can have a userlevel thread run while another userlevel thread has blocked.
Alternative 2: single process, one or multiple threads, multiple DBs where each DB covers a fraction of the 160-bit address space for keys.
I see a few advantages in having multiple DBs: we can put them on different disks, less contention, easier to move/partition DBs onto different physical hosts if we want to do that. Does anyone have experience with this setup and see significant benefits?
Alternative 3: multiple processes, each with one thread, each handles a DB that covers a fraction of the 160-bit address space for keys.
This has the advantages of using multiple DBs, but we are using multiple processes. Is this better than the second alternative? I suspect using processes rather than user-level threads to get parallelism will get you better SMP caching behaviors (less invalidates, etc), but will I get killed with all the process overheads and context switches?
I would love to hear if someone has tried the options, and have seen positive or negative results.
Thanks.
Alternative 2 gives you high scalability. You basically partition your database across
multiple servers. If you need a high performance distributed key/value database, I would
suggest looking at membase. I am doing that right now but we need to run on an appliance
and would like to limit dependencies (of membase).
You can use BerkeleyDB replication and have read only copies with servers to serve read/get
requests.

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