There is a microblogging type of application. Two main basic database stores zeroed upon are: MySQL or MongoDB.
I am planning to denormalize lot of data I.e. A vote done
So, to directly answer the questions...
Shall we chose mongodb if half of data is schemaless, and is being stored as JSON if using MySQL?
Schemaless storage is certainly a compelling reason to go with MongoDB, but as you've pointed out, it's fairly easy to store JSON in a RDBMS as well. The power behind MongoDB is in the rich queries against schemaless storage.
If I might point out a small flaw in the illustration about updating a JSON field, it's not simply a matter of getting the current value, updating the document and then pushing it back to the database. The process must all be wrapped in a transaction. Transactions tend to be fairly straightforward, until you start denormalizing your database. Then something as simple as recording an upvote can lock tables all over your schema.
With MongoDB, there are no transactions. But operations can almost always be structured in a way that allow for atomic updates. This usually involves some dramatic shifts from the SQL paradigms, but in my opinion they're fairly obvious once you stop trying to force objects into tables. At the very least, lots of other folks have run into the same problems you'll be facing, and the Mongo community tends to be fairly open and vocal about the challenges they've overcome.
Some of the data like main posts is critical , so it will be saved using safe writes , the counters etc will be saved using unsafe writes. Is this policy based on importance of data, and write intensiveness correct?
By "safe writes" I assume you mean the option to turn on an automatic "getLastError()" after every write. We have a very thin wrapper over a DBCollection that allows us fine grained control over when getLastError() is called. However, our policy is not based on how "important" data is, but rather whether the code following the query is expecting any modifications to be immediately visible in the following reads.
Generally speaking, this is still a poor indicator, and we have instead migrated to findAndModify() for the same behavior. On the occasion where we still explicitly call getLastError() it is when the database is likely to reject a write, such as when we insert() with an _id that may be a duplicate.
How easy is it to monitor,backup and restore Mongodb as compared to mysql? We need to plan periodic backups (say daily), and restore them with ease in case of disaster. What are the best options I have with mongoDb to make it a safe bet for the application?
I'm afraid I can't speak to whether our backup/restore policy is effective as we have not had to restore yet. We're following the MongoDB recommendations for backing up; @mark-hillick has done a great job of summarizing those. We're using replica sets, and we have migrated MongoDB versions as well as introduced new replica members. So far we've had no downtime, so I'm not sure I can speak well to this point.
Stability,backup,snapshots,restoring,wider adoption i.e.database durability are the reasons pointing me to use MySQL as RDBMS+NoSql even though a NoSQL document storage could serve my purpose better.
So, in my experience, MongoDB offers storage of schemaless data with a set of query primitives rich enough that transactions can often be replaced by atomic operations. It's been tough to unlearn 10+ years worth of SQL experience, but every problem I've encountered has been addressed by the community or 10gen directly. We have not lost data or had any downtime that I can recall.
To put it simply, MongoDB is hands down the best data storage ecosystem I have ever used in terms of querying, maintenance, scalability, and reliability. Unless I had an application that was so clearly relational that I could not in good conscience use anything other than SQL, I would make every effort to use MongoDB.
I don't work for 10gen, but I'm very grateful for the folks who do.
One of the disadvantages of a mysql solution with stored json is that you will not be able to efficiently search on the json data. If you store it all in mongodb, you can create indexes and/or queries on all of your data including the json.
Mongo's writes work very well, and really the only thing you lose vs mysql is transaction support, and thus the ability to rollback multipart saves. However, if you are able to commit your changes in atomic operations, then there isn't a data safety issue. If you are replicated, mongo provides an "eventually consistent" promise such that the slaves will eventually mirror the master.
Mongodb doesn't provide native enforcement or cascading of certain db constructs such as foreign keys, so you have to manage those yourself (such as either through composition, which is one of mongo's strenghts), or through use of dbrefs.
If you really need transaction support and robust 'safe' writes, yet still desire the flexibility provided by nosql, you might consider a hybrid solution. This would allow you to use mysql as your main post store, and then use mongodb as your 'schemaless' store. Here is a link to a doc discussing hybrid mongo/rdbms solutions: http://www.10gen.com/events/hybrid-applications The article is from 10gen's site, but you can find other examples simply by doing a quick google search.
Update 5/28/2019
The here have been a number of changes to both MySQL and Mongodb since this answer was posted, so the pros/cons between them have become even blurrier. This update doesn't really help with the original question, but I am doing it to make sure any new readers have a bit more recent information.
MongoDB now supports transactions: https://docs.mongodb.com/manual/core/transactions/
MySql now supports indexing and searching json fields: https://dev.mysql.com/doc/refman/5.7/en/json.html
I'm not going to comment on the comparisons (I work for 10gen and don't feel it's appropriate for me to do so), however, I will answer the specific MongoDB questions so that you can better make your decision.
Back-Up
Documentation here is very thorough, covering many aspects:
Until recently, there is no MongoDB equivalent of mylvmbackup
but a nice guy wrote one :) In his words
Early days so far: it's just a glorified shell script and needs way more error checking. But already it works for me and I figured I'd share the joy. Bug reports, patches & suggestions welcome.
Get yourself a copy from here.
Restores
mongodump
is completely documented here and mongorestore is here.
mongodump
will not contain the indexes but does contain the system.indexes collection so mongorestore can rebuild the indexes when you restore the bson file. The bson file is the actual data whereas mongoexport/mongoimport
are not type-safe so it could be anything (techically speaking) :)
Monitoring
Documented here.
I like Cacti but afaik, the Cacti templates have not kept up with the changes in MongoDB and so rely on old syntax so post 2.0.4, I believe there are issues.
Nagios works well but it's Nagios so you either love or hate it. A lot of folk use Nagios and it seems to provide them with great visiblity.
I've heard of some folk looking at Zappix but I've never used it so can't comment.
Additionally, you can use MMS, which is free and hosted externally. Your MongoDB instances run an agent and one of those agents communicate (using python code) over https to mms.10gen.com. We use MMS to view all performance statistics on the MongoDB instances and it is very beneficial from a high-level wide view as well as offering the ability to drill down. It's simple to install and you don't have to run any hardware for this. Many customers run it and some compliment it with Cacti/Nagios.
Help information on MMS can be found here (it's a very detailed, inclusive document).