Is there any sense to use mongodb in a system with great amount of entities (50+) connected to each other, for example in CRM. Any "success stories"?
There is a need of intensive writing and fast selection from high number of records for the some kind of analytics system.
It is definitely hard to provide a recommendation with such open question; however, you can analyze some of the advantages of MongoDB over other database, most likely you are considering Mongo as an alternative to a relational database like Oracle or SQL Server.
From http://mongodb.org you can see the main characteristics...
Document Oriented Storage: Which basically means you can have a single or multiple documents representing your data structures. One very important think here is that the schema is dynamic, that is you can add more attributes without having to change your database. Pretty useful for adding flexibility to your system.
Full index support: We wouldn't expect any less than full support for indices, right?
Replication and High availability; Sharding: Very critical elements for availability, disaster recovery, and to guarantee the
ability to grow with your system.
Querying: Again, pretty critical requirement. Need to make sure you account for the dynamic schema. You will need to consider in
your queries that some attributes are not defined for all documents
(remember dynamic schema?).
Map/Reduce: Very useful for
analytics. Recommended for aggregating large amounts of data.
Should be used offline, meaning, you don't run a live query against a
map/reduce function, otherwise you will be sitting for a while
waiting. But it is great to run batch analytics on your system.
GridFS: A great way of storing binary data. Automatically generates MD5's for your files, splits them in chunks, and can add
metadata. Your files will stay with your database.
Also, the Geolocation indices are great. You can define lon,lat attributes and do searches on those.
Now it is up to you to see if these features are good for your needs, or you rather stay with a well know relational system.
Before jumping into a solution you should experiment and build some prototypes. You will see very early what challenges you'll have in your design.
Hope this helps.
Related
I am working on a project were we are batch loading and storing huge volume of data in Oracle database which is constantly getting queried via Hibernate against this 100+ million records table (the reads are much more frequent than writes).
To speed things up we are using Lucene for some of queries (especially geo bounding box queries) and Hibernate second level cache but thats still not enough. We still have bottleneck in Hibernate queries against Oracle (we dont cache 100+ million table entities in Hibernate second level cache due to lack of that much memory).
What additional NoSQL solutions (apart from Lucene) I can leverage in this situation?
Some options I am thinking of are:
Use distributed ehcache (Terracotta) for Hibernate second level to leverage more memory across machines and reduce duplicate caches (right now each VM has its own cache).
To completely use in memory SQL database like H2 but unfortunately those solutions require loading 100+ mln tables into single VM.
Use Lucene for querying and BigTable (or distributed hashmap) for entity lookup by id.
What BigTable implementation will be suitable for this? I was considering HBase.
Use MongoDB for storing data and for querying and lookup by id.
recommending Cassandra with ElasticSearch for a scalable system (100 million is nothing for them). Use cassandra for all your data and ES for ad hoc and geo queries. Then you can kill your entire legacy stack. You may need a MQ system like rabbitmq for data sync between Cass. and ES.
It really depends on your data sets. The number one rule to NoSQL design is to define your query scenarios first. Once you really understand how you want to query the data then you can look into the various NoSQL solutions out there. The default unit of distribution is key. Therefore you need to remember that you need to be able to split your data between your node machines effectively otherwise you will end up with a horizontally scalable system with all the work still being done on one node (albeit better queries depending on the case).
You also need to think back to CAP theorem, most NoSQL databases are eventually consistent (CP or AP) while traditional Relational DBMS are CA. This will impact the way you handle data and creation of certain things, for example key generation can be come trickery.
Also remember than in some systems such as HBase there is no indexing concept. All your indexes will need to be built by your application logic and any updates and deletes will need to be managed as such. With Mongo you can actually create indexes on fields and query them relatively quickly, there is also the possibility to integrate Solr with Mongo. You don’t just need to query by ID in Mongo like you do in HBase which is a column family (aka Google BigTable style database) where you essentially have nested key-value pairs.
So once again it comes to your data, what you want to store, how you plan to store it, and most importantly how you want to access it. The Lily project looks very promising. THe work I am involved with we take a large amount of data from the web and we store it, analyse it, strip it down, parse it, analyse it, stream it, update it etc etc. We dont just use one system but many which are best suited to the job at hand. For this process we use different systems at different stages as it gives us fast access where we need it, provides the ability to stream and analyse data in real-time and importantly, keep track of everything as we go (as data loss in a prod system is a big deal) . I am using Hadoop, HBase, Hive, MongoDB, Solr, MySQL and even good old text files. Remember that to productionize a system using these technogies is a bit harder than installing Oracle on a server, some releases are not as stable and you really need to do your testing first. At the end of the day it really depends on the level of business resistance and the mission-critical nature of your system.
Another path that no one thus far has mentioned is NewSQL - i.e. Horizontally scalable RDBMSs... There are a few out there like MySQL cluster (i think) and VoltDB which may suit your cause.
Again it comes to understanding your data and the access patterns, NoSQL systems are also Non-Rel i.e. non-relational and are there for better suit to non-relational data sets. If your data is inherently relational and you need some SQL query features that really need to do things like Cartesian products (aka joins) then you may well be better of sticking with Oracle and investing some time in indexing, sharding and performance tuning.
My advice would be to actually play around with a few different systems. Look at;
MongoDB - Document - CP
CouchDB - Document - AP
Redis - In memory key-value (not column family) - CP
Cassandra - Column Family - Available & Partition Tolerant (AP)
HBase - Column Family - Consistent & Partition Tolerant (CP)
Hadoop/Hive
VoltDB - A really good looking product, a relation database that is distributed and might work for your case (may be an easier move). They also seem to provide enterprise support which may be more suited for a prod env (i.e. give business users a sense of security).
Any way thats my 2c. Playing around with the systems is really the only way your going to find out what really works for your case.
As you suggest MongoDB (or any similar NoSQL persistence solution) is an appropriate fit for you. We've run tests with significantly larger data sets than the one you're suggesting on MongoDB and it works fine. Especially if you're read heavy MongoDB's sharding and/or distributing reads across replicate set members will allow you to speed up your queries significantly. If your usecase allows for keeping your indexes right balanced your goal of getting close to 20ms queries should become feasable without further caching.
You should also check out the Lily project (lilyproject.org). They have integrated HBase with Solr. Internally they use message queues to keep Solr in sync with HBase. This allows them to have the speed of solr indexing (sharding and replication), backed by a highly reliable data storage system.
you could group requests & split them specific to a set of data & have a single (or a group of servers) process that, here you can have the data available in the cache to improve performance.
e.g.,
say, employee & availability data are handled using 10 tables, these can be handled b a small group of server (s) when you configure hibernate cache to load & handle requests.
for this to work you need a load balancer (which balances load by business scenario).
not sure how much of it can be implemented here.
At the 100M records your bottleneck is likely Hibernate, not Oracle. Our customers routinely have billions of records in the individual fact tables of our Oracle-based data warehouse and it handles them fine.
What kind of queries do you execute on your table?
I currently run a MySQL-powered website where users promote advertisements and gain revenue every time someone completes one. We log every time someone views an ad ("impression"), every time a user clicks an add ("click"), and every time someone completes an ad ("lead").
Since we get so much traffic, we have millions of records in each of these respective tables. We then have to query these tables to let users see how much they have earned, so we end up performing multiple queries on tables with millions and millions of rows multiple times in one request, hundreds of times concurrently.
We're looking to move away from MySQL and to a key-value store or something along those lines. We need something that will let us store all these millions of rows, query them in milliseconds, and MOST IMPORTANTLY, use adhoc queries where we can query any single column, so we could do things like:
FROM leads WHERE country = 'US' AND user_id = 501 (the NoSQL equivalent, obviously)
FROM clicks WHERE ad_id = 1952 AND user_id = 200 AND country = 'GB'
etc.
Does anyone have any good suggestions? I was considering MongoDB or CouchDB but I'm not sure if they can handle querying millions of records multiple times a second and the type of adhoc queries we need.
Thanks!
With those requirements, you are probably better off sticking with SQL and setting up replication/clustering if you are running into load issues. You can set up indexing on a document database so that those queries are possible, but you don't really gain anything over your current system.
NoSQL systems generally improve performance by leaving out some of the more complex features of relational systems. This means that they will only help if your scenario doesn't require those features. Running ad hoc queries on tabular data is exactly what SQL was designed for.
CouchDB's map/reduce is incremental which means it only processes a document once and stores the results.
Let's assume, for a moment, that CouchDB is the slowest database in the world. Your first query with millions of rows takes, maybe, 20 hours. That sounds terrible. However, your second query, your third query, your fourth query, and your hundredth query will take 50 milliseconds, perhaps 100 including HTTP and network latency.
You could say CouchDB fails the benchmarks but gets honors in the school of hard knocks.
I would not worry about performance, but rather if CouchDB can satisfy your ad-hoc query requirements. CouchDB wants to know what queries will occur, so it can do the hard work up-front before the query arrives. When the query does arrive, the answer is already prepared and out it goes!
All of your examples are possible with CouchDB. A so-called merge-join (lots of equality conditions) is no problem. However CouchDB cannot support multiple inequality queries simultaneously. You cannot ask CouchDB, in a single query, for users between age 18-40 who also clicked fewer than 10 times.
The nice thing about CouchDB's HTTP and Javascript interface is, it's easy to do a quick feasibility study. I suggest you try it out!
Most people would probably recommend MongoDB for a tracking/analytic system like this, for good reasons. You should read the „MongoDB for Real-Time Analytics” chapter from the „MongoDB Definitive Guide” book. Depending on the size of your data and scaling needs, you could get all the performance, schema-free storage and ad-hoc querying features. You will need to decide for yourself if issues with durability and unpredictability of the system are risky for you or not.
For a simpler tracking system, Redis would be a very good choice, offering rich functionality, blazing speed and real durability. To get a feel how such a system would be implemented in Redis, see this gist. The downside is, that you'd need to define all the „indices” by yourself, not gain them for „free”, as is the case with MongoDB. Nevertheless, there's no free lunch, and MongoDB indices are definitely not a free lunch.
I think you should have a look into how ElasticSearch would enable you:
Blazing speed
Schema-free storage
Sharding and distributed architecture
Powerful analytic primitives in the form of facets
Easy implementation of „sliding window”-type of data storage with index aliases
It is in heart a „fulltext search engine”, but don't get yourself confused by that. Read the „Data Visualization with ElasticSearch and Protovis“ article for real world use case of ElasticSearch as a data mining engine.
Have a look on these slides for real world use case for „sliding window” scenario.
There are many client libraries for ElasticSearch available, such as Tire for Ruby, so it's easy to get off the ground with a prototype quickly.
For the record (with all due respect to #jhs :), based on my experience, I cannot imagine an implementation where Couchdb is a feasible and useful option. It would be an awesome backup storage for your data, though.
If your working set can fit in the memory, and you index the right fields in the document, you'd be all set. Your ask is not something very typical and I am sure with proper hardware, right collection design (denormalize!) and indexing you should be good to go. Read up on Mongo querying, and use explain() to test the queries. Stay away from IN and NOT IN clauses that'd be my suggestion.
It really depends on your data sets. The number one rule to NoSQL design is to define your query scenarios first. Once you really understand how you want to query the data then you can look into the various NoSQL solutions out there. The default unit of distribution is key. Therefore you need to remember that you need to be able to split your data between your node machines effectively otherwise you will end up with a horizontally scalable system with all the work still being done on one node (albeit better queries depending on the case).
You also need to think back to CAP theorem, most NoSQL databases are eventually consistent (CP or AP) while traditional Relational DBMS are CA. This will impact the way you handle data and creation of certain things, for example key generation can be come trickery.
Also remember than in some systems such as HBase there is no indexing concept. All your indexes will need to be built by your application logic and any updates and deletes will need to be managed as such. With Mongo you can actually create indexes on fields and query them relatively quickly, there is also the possibility to integrate Solr with Mongo. You don’t just need to query by ID in Mongo like you do in HBase which is a column family (aka Google BigTable style database) where you essentially have nested key-value pairs.
So once again it comes to your data, what you want to store, how you plan to store it, and most importantly how you want to access it. The Lily project looks very promising. The work I am involved with we take a large amount of data from the web and we store it, analyse it, strip it down, parse it, analyse it, stream it, update it etc etc. We dont just use one system but many which are best suited to the job at hand. For this process we use different systems at different stages as it gives us fast access where we need it, provides the ability to stream and analyse data in real-time and importantly, keep track of everything as we go (as data loss in a prod system is a big deal) . I am using Hadoop, HBase, Hive, MongoDB, Solr, MySQL and even good old text files. Remember that to productionize a system using these technogies is a bit harder than installing MySQL on a server, some releases are not as stable and you really need to do your testing first. At the end of the day it really depends on the level of business resistance and the mission-critical nature of your system.
Another path that no one thus far has mentioned is NewSQL - i.e. Horizontally scalable RDBMSs... There are a few out there like MySQL cluster (i think) and VoltDB which may suit your cause.
Again it comes to understanding your data and the access patterns, NoSQL systems are also Non-Rel i.e. non-relational and are there for better suit to non-relational data sets. If your data is inherently relational and you need some SQL query features that really need to do things like Cartesian products (aka joins) then you may well be better of sticking with Oracle and investing some time in indexing, sharding and performance tuning.
My advice would be to actually play around with a few different systems. However for your use case I think a Column Family database may be the best solution, I think there are a few places which have implemented similar solutions to very similar problems (I think the NYTimes is using HBase to monitor user page clicks). Another great example is Facebook and like, they are using HBase for this. There is a really good article here which may help you along your way and further explain some points above. http://highscalability.com/blog/2011/3/22/facebooks-new-realtime-analytics-system-hbase-to-process-20.html
Final point would be that NoSQL systems are not the be all and end all. Putting your data into a NoSQL database does not mean its going to perform any better than MySQL, Oracle or even text files... For example see this blog post: http://mysqldba.blogspot.com/2010/03/cassandra-is-my-nosql-solution-but.html
I'd have a look at;
MongoDB - Document - CP
CouchDB - Document - AP
Redis - In memory key-value (not column family) - CP
Cassandra - Column Family - Available & Partition Tolerant (AP)
HBase - Column Family - Consistent & Partition Tolerant (CP)
Hadoop/Hive - Also have a look at Hadoop streaming...
Hypertable - Another CF CP DB.
VoltDB - A really good looking product, a relation database that is distributed and might work for your case (may be an easier move). They also seem to provide enterprise support which may be more suited for a prod env (i.e. give business users a sense of security).
Any way thats my 2c. Playing around with the systems is really the only way your going to find out what really works for your case.
I am working on the high-level design of a web application with the following characteristics:
Millions of records
Heavily indexed/searchable by various criteria
Variable document schema
Regular updates in blocks of 10K - 200K records at a time
Data needs to remain highly available during updates
Must scale horizontally effectively
Today, this application exists in MySQL and we suffer from a few huge problems, particularly that it is challenging to adapt to flexible schema, and that large bulk updates lock the data for 10 - 15 seconds at a time, which is unacceptable. Some of these things can be tackled by better database design within the context of MySQL, however, I am looking for a better "next generation" solution.
I have never used MongoDB, but its feature set seemed to most closely match what I am looking for, so that was my first area of interest. It has some things I am excited about, such as data sharding, the ability to find-update-return in a single statement, and of course the schema flexibility of NoSQL.
There are two things I am not sure about, though, with MongoDB:
I can't seem to find solid
information about the concurrency of
updates with large data sets (see my
use case above) so I have a hard
time understanding how it might
perform.
I do need open text search
That second requirement brought me to Lucene (or possibly to Solr if I kept it external) as a search store. I did read a few cases where Lucene was being used in place of a NoSQL database like MongoDB entirely, which made me wonder if I am over-complicating things by trying to use both in a single app -- perhaps I should just store everything directly in Lucene and run it like that?
Given the requirements above, does it seem like a combination of MongoDB and Lucene would make this work effectively? If not, might it be better to attempt to tackle it entirely in Lucene?
Currently with MongoDB, updates are locking at the server-level. There are a few JIRAs open that address this, planned for v1.9-2.0. I believe the current plan is to yield writes to allow reads to perform better.
With that said, there are plenty of great ways to scale MongoDB for super high concurrency - many of which are simiar for MySQL. One such example is to use RAID 10. Another is to use master-slave where you write to master and read from slave.
You also need to consider if your "written" data needs to be 1) durable and 2) accessible via slaves immediately. The mongodb drivers allow you to specify if you want the data to be written to disk immediately (or hang in memory for the next fsync) and allow you to specify how many slaves the data should be written to. Both of these will slow down MongoDB writing, which as noted above can affect read performance.
MongoDB also does not have nearly the capability for full-text search that Solr\Lucene have and you will likely want to use both together. I am currently using both Solr and MongoDB together and am happy with it.
I have a project that stores several millions of domain names in database and perform search requests to find if domain is present in DB. The only operation I need - check if given value exists. No range queries, no additional information, nothing.
The number of queries that I make to database is rather big, for example 100'000 per one user session.
I have new database once a day and even it's possible to check what records were deleted and what added - I don't think that it's worth it. So, I am importing database to a new table and point script to a new name.
Looking for solution that can make the whole things faster, as I don't use any SQL features. Name search and import time are important for me.
My server can't store this database in memory, even half of it, so I think some NoSQL solution working from hard drive can help me.
Can you suggest something?
A much smaller and faster solution would be to use Berkeley DB with the key-value pair API. Berkeley DB is a database library that links into your application, so there is no client/server overhead nor separate server to install and manage. Berkeley DB is very straightforward and provides, among several APIs, a simple key-value (NoSQL) API that provides all of the basic data management routines that you would expect to find in a much larger, more complex RDBMS (indexing, secondary indexes, foreign keys), but without the overhead of a SQL engine.
Disclaimer: I am the Product Manager for Berkeley DB, so I am a little biased. That said, it was designed to do exactly what you're asking for -- straightforward, fast, scalable key-value data management without unnecessary overhead.
In fact, there are many "database domain" type application services that use Berkeley DB as their primary data store. Most of the open source and/or commercial LDAP implementations use Berkeley DB (including OpenLDAP, Redhat's LDAP, Sun Directory Server, etc.). Cisco, Juniper, AT&T, Alcatel, Mitel, Motorola and many others use Berkeley DB to manage their They use Berkeley DB for their gateway, authentication, and configuration management systems, They use BDB because it does exactly what they need, it's very fast, scalable and reliable.
You could get by quite nicely with just a Bloom filter if you can accept a very small false positive rate (assuming you use a large enough filter).
On the other hand, you could certainly use Cassandra. It makes heavy use of bloom filters, so asking for something that doesn't exist is quick, and you don't have to worry about false positives. It's designed to handle data sets that do not fit into memory, so performance degredation there is quite smooth.
Importing any amount of data should be quick -- on a normal machine, Cassandra can handle about 15k writes per second.
Many options here. Berkeley DB certainly does the job and is probably one of the simplest solutions. Just as simple: store everything in memcached, then you have the option of splitting the cache of the values across several machines if needed (if query load or data size grows).
I'm building a system that tracks and verifies ad impressions and clicks. This means that there are a lot of insert commands (about 90/second average, peaking at 250) and some read operations, but the focus is on performance and making it blazing-fast.
The system is currently on MongoDB, but I've been introduced to Cassandra and Redis since then. Would it be a good idea to go to one of these two solutions, rather than stay on MongoDB? Why or why not?
Thank you
For a harvesting solution like this, I would recommend a multi-stage approach. Redis is good at real time communication. Redis is designed as an in-memory key/value store and inherits some very nice benefits of being a memory database: O(1) list operations. For as long as there is RAM to use on a server, Redis will not slow down pushing to the end of your lists which is good when you need to insert items at such an extreme rate. Unfortunately, Redis can't operate with data sets larger than the amount of RAM you have (it only writes to disk, reading is for restarting the server or in case of a system crash) and scaling has to be done by you and your application. (A common way is to spread keys across numerous servers, which is implemented by some Redis drivers especially those for Ruby on Rails.) Redis also has support for simple publish/subscribe messenging, which can be useful at times as well.
In this scenario, Redis is "stage one." For each specific type of event you create a list in Redis with a unique name; for example we have "page viewed" and "link clicked." For simplicity we want to make sure the data in each list is the same structure; link clicked may have a user token, link name and URL, while the page viewed may only have the user token and URL. Your first concern is just getting the fact it happened and whatever absolutely neccesary data you need is pushed.
Next we have some simple processing workers that take this frantically inserted information off of Redis' hands, by asking it to take an item off the end of the list and hand it over. The worker can make any adjustments/deduplication/ID lookups needed to properly file the data and hand it off to a more permanent storage site. Fire up as many of these workers as you need to keep Redis' memory load bearable. You could write the workers in anything you wish (Node.js, C#, Java, ...) as long as it has a Redis driver (most web languages do now) and one for your desired storage (SQL, Mongo, etc.)
MongoDB is good at document storage. Unlike Redis it is able to deal with databases larger than RAM and it supports sharding/replication on it's own. An advantage of MongoDB over SQL-based options is that you don't have to have a predetermined schema, you're free to change the way data is stored however you want at any time.
I would, however, suggest Redis or Mongo for the "step one" phase of holding data for processing and use a traditional SQL setup (Postgres or MSSQL, perhaps) to store post-processed data. Tracking client behavior sounds like relational data to me, since you may want to go "Show me everyone who views this page" or "How many pages did this person view on this given day" or "What day had the most viewers in total?". There may be even more complex joins or queries for analytic purposes you come up with, and mature SQL solutions can do a lot of this filtering for you; NoSQL (Mongo or Redis specifically) can't do joins or complex queries across varied sets of data.
I currently work for a very large ad network and we write to flat files :)
I'm personally a Mongo fan, but frankly, Redis and Cassandra are unlikely to perform either better or worse. I mean, all you're doing is throwing stuff into memory and then flushing to disk in the background (both Mongo and Redis do this).
If you're looking for blazing fast speed, the other option is to keep several impressions in local memory and then flush them disk every minute or so. Of course, this is basically what Mongo and Redis do for you. Not a real compelling reason to move.
All three solutions (four if you count flat-files) will give you blazing fast writes. The non-relational (nosql) solutions will give you tunable fault-tolerance as well for the purposes of disaster recovery.
In terms of scale, our test environment, with only three MongoDB nodes, can handle 2-3k mixed transactions per second. At 8 nodes, we can handle 12k-15k mixed transactions per second. Cassandra can scale even higher. 250 reads is (or should be) no problem.
The more important question is, what do you want to do with this data? Operational reporting? Time-series analysis? Ad-hoc pattern analysis? real-time reporting?
MongoDB is a good option if you want the ability to do ad-hoc analysis based on multiple attributes within a collection. You can put up to 40 indexes on a collection, though the indexes will be stored in-memory, so watch for size. But the result is a flexible analytical solution.
Cassandra is a key-value store. You define a static column or set of columns that will act as your primary index right up front. All queries run against Cassandra should be tuned to this index. You can put a secondary on it, but that's about as far as it goes. You can, of course, use MapReduce to scan the store for non-key attribution, but it will be just that: a serial scan through the store. Cassandra also doesn't have the notion of "like" or regex operations on the server nodes. If you want to find all customers where the first name starts with "Alex", you'll have to scan through the entire collection, pull the first name out for each entry and run it through a client-side regex.
I'm not familiar enough with Redis to speak intelligently about it. Sorry.
If you are evaluating non-relational platforms, you might also want to consider CouchDB and Riak.
Hope this helps.
Just found this: http://blog.axant.it/archives/236
Quoting the most interesting part:
This second graph is about Redis RPUSH vs Mongo $PUSH vs Mongo insert, and I find this graph to be really interesting. Up to 5000 entries mongodb $push is faster even when compared to Redis RPUSH, then it becames incredibly slow, probably the mongodb array type has linear insertion time and so it becomes slower and slower. mongodb might gain a bit of performances by exposing a constant time insertion list type, but even with the linear time array type (which can guarantee constant time look-up) it has its applications for small sets of data.
I guess everything depends at least on data type and volume. Best advice probably would be to benchmark on your typical dataset and see yourself.
According to the Benchmarking Top NoSQL Databases (download here)
I recommend Cassandra.
If you have the choice (and need to move away from flat fies) I would go with Redis. Its blazingly fast, will comfortably handle the load you're talking about, but more importantly you won't have to manage the flushing/IO code. I understand its pretty straight forward but less code to manage is better than more.
You will also get horizontal scaling options with Redis that you may not get with file based caching.
I can get around 30k inserts/sec with MongoDB on a simple $350 Dell. If you only need around 2k inserts/sec, I would stick with MongoDB and shard it for scalability. Maybe also look into doing something with Node.js or something similar to make things more asynchronous.
The problem with inserts into databases is that they usually require writing to a random block on disk for each insert. What you want is something that only writes to disk every 10 inserts or so, ideally to sequential blocks.
Flat files are good. Summary statistics (eg total hits per page) can be obtained from flat files in a scalable manner using merge-sorty map-reducy type algorithms. It's not too hard to roll your own.
SQLite now supports Write Ahead Logging, which may also provide adequate performance.
I have hand-on experience with mongodb, couchdb and cassandra. I converted a lot of files to base64 string and insert these string into nosql.
mongodb is the fastest. cassandra is slowest. couchdb is slow too.
I think mysql would be much faster than all of them, but I didn't try mysql for my test case yet.