I am myself a starter on NoSQL databases. So I am answering this at the expense of potential down votes but it will be a great learning experience for me.
Before trying my best to answer your questions I should say that if MS
SQL Server is working well for you then stick with it. You have not
mentioned any valid reason WHY you want to use MongoDB except the fact
that you learnt about it as a document oriented db. Moreover I see
that you have almost the same set of meta-data you are capturing for
each camera i.e. your schema is dynamic.
- to tell if MongoDB is good for holding such data, which eventually will be queried against time ranges (e.g. retrieve all images of a particular camera between a specified hour)? Any suggestions about Document Based schema design for my case?
MongoDB being a document oriented db, is good at querying within an aggregate (you call it document). Since you already are storing each camera's data in its own table, in MongoDB you will have a separate collection created for each camera. Here is how you perform date range queries.
- What should be the specs of server (CPU, RAM, Disk)? any suggestion?
All NoSQL data bases are built to scale-out on commodity hardware. But by the way you have asked the question, you might be thinking of improving performance by scaling-up. You can start with a reasonable machine and as the load increases, you can keep adding more servers (scaling-out). You no need to plan and buy a high end server.
- Should i consider Sharding/Replication for this scenario (while considering the performance in writing to synch replica sets)?
MongoDB locks the entire db for a single write (but yields for other operations) and is meant for systems which have more reads than writes. So this depends upon how your system is. There are multiple ways of sharding and should be domain specific. A generic answer is not possible. However some examples can be given like sharding by geography, by branches etc.
Also read A plain english introduction to CAP Theorem
Updated with answer to the comment on sharding
According to their documentation, You should consider deploying a sharded cluster, if:
- your data set approaches or exceeds the storage capacity of a single node in your system.
- the size of your system’s active working set will soon exceed the capacity of the maximum amount of RAM for your system.
- your system has a large amount of write activity, a single MongoDB instance cannot write data fast enough to meet demand, and all other
approaches have not reduced contention.
So based upon the last point yes. The auto-sharding feature is built to scale writes. In that case, you have a write lock per shard, not per database. But mine is a theoretical answer. I suggest you take consultation from 10gen.com group.