While Imre's answer is really great and I agree with it in every detail I would like to add more to it but also trying to not duplicate information.
If you plan to migrate your existing C#/EF/SQL project to MongoDB it is a high chance that you shouldn't. It probably works quite well for some time, the team knows it and probably hundreds or more bugs have been already fixed and users are more or less happy with it. This is the real value that you already have. And I mean it. For reasons why you should not replace old code with new code see here:
Also more important than existence of tools for any technology is that it brings value and it works as promised (tooling is secondary).
I do not like the explanation from mongoDB you cited that claims that statically typed language is an issue here. It is true but only on a basic, superficial level. More on this later.
I do not agree that EF Code First Migration is very mature - though it is really great for development and test environments and it is much, much better than previous .NET database-first approaches but still you have to have your own careful approach for production deployments.
Investing in your own tooling should not be a blocker for you. In fact if the engine you choose would be really great it is worthwhile to write some specific tooling around it. I believe that great teams rarely use tooling "off the shelves". They rather choose technologies wisely and then customize tools to their needs or build new tools around it (probably selling the tool a year or two years later).
Where the front line lays
It is not between statically and dynamically typed languages. This difference is highly overrated.
It is more about problem at hand and nature of your schema.
Part of the schema is quite static and it will play nicely both in static and dynamic "world" but other part can be naturally changing with time and it fits better for dynamically typed languages but not in the essence of it.
You can easily write code in C# that has a list of pairs (key, value) and thus have dynamism under control. What dynamically typed languages gives you is impression that you call properties directly while in C# you access it by "key". While being easier and prettier to use for developer it does not save you from bigger problems like deploy schema changes, access different versions of schemas etc.
So static/dynamic languages case is not an issue here at all.
It is rather drawing a line between data that you want to control from your code (that is involved in any logic) and the other part that you do not have to control strictly. The second part do not have to be explicitly and minutely expressed in schema in your code (it can be rather list or dictionary than named fields/properties because maintaining such fields costs you but does not brings any value).
My Use Case
Once upon a time my team has made a project that uses three different databases:
- SQL for "usual" configuration and evidence stuff
- Graph database to make it natural to build wide network of arbitrarily connected objects
- Document database tuned for searching (Elastic Search in fact) to make searching instant and really modern (like dealing with typos or the like)
Of course it is a challenge to deploy such wide technology stack but each part of it brings its best to the whole solution.
The aim of the project is to search through a knowledge base of literally anything (projects, peoples, books, products, documents, simply anything).
That's why SQL is here only to record a list of available "knowledge databases" and users assigned to them. The schema here is obvious, stable and trivial. There is low probability of changes in the future.
Next, graph database allows to literally "throw" anything into the database from different sources around and connect things with each other. The idea, to put it simply, is to have objects accessible by ID.
Next, Elastic search is here to accumulate IDs and a selected subset of properties to make them searchable in the instant. Here the schema contains only ID and list of pairs (key, value).
As the final step, to put it simply, the solution calls Elastic Search, gets Ids and displays details (schema is irrelevant as we treat it as a list of pairs key x value, so GUI is prepared to build screens dynamically).
Though the way to the solution was really painful.
We tested a few graph databases by running concept proofs to find that most of them simply does not work in operations like updating data! (ugh!!!) Finally we have found one good enough DB.
On the other hand finding and using Elastic Search was a great pleasure! Though being great you have to be aware that under pressure of uploading massive data it can break so you have to adjust your tooling to adapt to it.
(so no silver bullet here).
Going into more widely used direction
Apart from my use case which is kind of extreme usually you have sth "in-between".
For example a database for documents.
It can have almost static "header" of fields like ID, name, author, and so on and your code can manage it "traditionally" but all other fields could be managed in a way that it can exists or not and can have different contents or structure.
"The header" is the part you decided to make it relevant for the project and controllable by the project. The rest is rather accompanying than crucial (from the project logic point of view).
I would rather recommend to learn about strengths of particular NoSQL database types, find answers why were they created, why are they popular and useful. Then answer in which way they can bring benefits to your project.
BTW. This is interesting why you have indicated MongoDB?
The other way around would be to answer what are your project's current greatest weaknesses or greatest challenges from technological point of view - being it performance, cost of support changes, need to scale significantly or other. Then try to answer if some NoSQL DB would be great at resolving the issue.
I'm sure you can find benefits of NoSQL databases to your project either by replacing part of it or by bringing new values to users (searching for example?). Either way I would prefer a really good technology that brings what it promises rather than looking if it is fully supported by tools around it.
And also concept proof is a really good tool to check technologies in a scenario that is very simple but at the same time meaningful for you. But the approach should be not to play with technologies but aggressively and quickly prove or disprove quality of them.
There are so much promises and advertises around that we should protect ourselves by focusing of the real things that works.