A collection within a collection - mongodb

I just wanted to query everyone's best practice for doing this.
User has multiple notebooks within their account. Each of these is a record in the database.
There are multiple users.
The notebook has different sections to fill in. There are also sections which are lists. The user needs to be able to add extra items to these lists (almost as if it were it's own collection).
There may be a lot of users, and I want all their notebooks in the same collection.
How would you approach this? I'm using Simple Schema and Aldeed Collection. I imagine that each list within the notebook would be an array, but how would I make it that the user can set how many items / add new items to the list?
Interested to know people's thoughts!

This is a MongoDB data modeling question primarily (see also schema design), but there are a few things to keep in mind with Meteor:
read up on reactive joins at Discover Meteor and Gentle Node
for reactivity to work at its best, you want collections instead of arrays
that means you'll need to perform the equivalent of joins with MongoDB, so have a look at reactive join packages, this post about evaluating them, and Meteor.publish: publish collection which depends on other collection
Make sure to vote up this card on the Meteor roadmap to get native reactive joins.

Related

Query multiple subcollections firestore flutterfire

Im working on a project using flutter and firebase, currently the database(firestore) has A collection named Projects, each project has an owner(userId) and a subcollection named Sections and each section has an Items collection. Each Item has a list of tags (strings). I wanted to add a search Items by tag feature, but just realized that the nested collections structure makes it hard. Changing the database structure now would be a lot of work. Is there a way to apply a query to multiple subcollections? basically I would need to query all projects owned by the user then query for all in those projects sections and then all todos inside them that contain a certain tag.
I don`t want to do multiple queries and join them with frontend code because I'm using real time functionality and having to deal with multiple streams isn't ideal. Cloud functions aren't an option right now because I'm using the free plan.
You're looking for a so-called collection group query, which searches across all collections with a certain name in one go.

Collection or documents for multiple projects?

I want to manage multiple projects data in mongoDB. Each project contains multiple users from multiple departments with multiple role assigned to them. plus certain task is assigned to each user. Now I am confused about schema, not able to decide which entity should be kept as collection & which one as document ? What is the best efficient way to store ?
should I keep all under single collection as embedded documents or in separate collection ?
Thanks
First of all if you are using mongodb you should know why are you using it. MongoDB is not about normalize stuff. If you are able to create data structure is de-normalize way then and only then go for MongoDB.
I think you should maintain one single document containing all the mentioned things above. But the scenario which you have mentioned above is good for relational database. you need only 3 entities in relational database and your problem is solved.
Still if you want to go for mongodb you can go with one collection only. which contains project details number of users working there and their roles and department.

I wonder if there are a lot of collections

Do many mongodb collections have a big impact on mongodb performance, memory and capacity? I am designing an api with mvc pattern, and a collection is being created for each model. I question the way I am doing now.
MongoDB with the WirdeTiger engine supports an unlimited number of collections. So you are not going to run into any hard technical limitations.
When you wonder if something should be in one collection or in multiple collections, these are some of the considerations you need to keep in mind:
More collections = more maintenance work. Sharding is configured on the collection level. So having a large number of collections will make shard configuration a lot more work. You also need to set up indexes for each collection separately, but this is quite easy to automatize, because createIndex on an index which already exists does nothing.
The MongoDB API is designed in a way that every database query operates on one collection at a time. That means when you need to search for a document in n different collections, you need to perform n queries. When you need to aggregate data stored in multiple collections, you run into even more problems. So any data which is queried together should be stored together in the same collection.
Creating one collection for each class in your model is usually a god rule of thumb, but it is not a golden hammer solution. There are situations where you want to embed object in their parent-object documents instead of putting them into a separate collection. There are also cases where you want to put all objects with the same base-class in the same collection to benefit from MongoDB's ability to handle heterogeneous collections. But that goes beyond the scope of this question.
Why don't you use this and test your application ?
https://docs.mongodb.com/manual/tutorial/evaluate-operation-performance/
By the way your question is not completely clear... is more like a "discussion" rather than question. And you're asking others to evaluate your work instead of searching the web the rigth approach.

Deciding whether to create new collection or put data in existing collection using Mongo DB

I have data coming in from two sources, facebook and twitter. For each source I have multiple handles (pepsi, coke, sprite) and I want to determine the best way to organize my database.
Is it better practice to...
a. make two collections, one for twitter and one for facebook and have all all three handles in both collections?
b. make one collection and put all of that information in that single collection?
Thanks for your help. Mongodb is awesome.
Depends on many factors really, but generally speaking...
If the data is somewhat similar and/or should be queried (aggregated) together then single collection is probably the best choice.
If the data from twitter and fb should be processed in totally different ways then perhaps separated collections is a more appropriate solution.

Relations in Document-oriented database?

I'm interested in document-oriented databases, and I'd like to play with MongoDB. So I started a fairly simple project (an issue tracker), but am having hard times thinking in a non-relational way.
My problems:
I have two objects that relate to each other (e.g. issue = {code:"asdf-11", title:"asdf", reporter:{username:"qwer", role:"manager"}} - here I have a user related to the issue). Should I create another document 'user' and reference it in 'issue' document by its id (like in relational databases), or should I leave all the user's data in the subdocument?
If I have objects (subdocuments) in a document, can I update them all in a single query?
I'm totally new to document-oriented databases, and right now I'm trying to develop sort of a CMS using node.js and mongodb so I'm facing the same problems as you.
By trial and error I found this rule of thumb: I make a collection for every entity that may be a "subject" for my queries, while embedding the rest inside other objects.
For example, comments in a blog entry can be embedded, because usually they're bound to the entry itself and I can't think about a useful query made globally on all comments. On the other side, tags attached to a post might deserve their own collection, because even if they're bound to the post, you might want to reason globally about all the tags (for example making a list of trending topics).
In my mind this is actually pretty simple. Embedded documents can only be accessed via their master document. If you can envision a need to query an object outside the context of the master document, then don't embed it. Use a ref.
For your example
issue = {code:"asdf-11", title:"asdf", reporter:{username:"qwer", role:"manager"}}
I would make issue and reporter each their own document, and reference the reporter in the issue. You could also reference a list of issues in reporter. This way you won't duplicate reporters in issues, you can query them each separately, you can query reporter by issue, and you can query issues by reporter. If you embed reporter in issue, you can only query the one way, reporter by issue.
If you embed documents, you can update them all in a single query, but you have to repeat the update in each master document. This is another good reason to use reference documents.
The beauty of mongodb and other "NoSQL" product is that there isn't any schema to design. I use MongoDB and I love it, not having to write SQL queries and awful JOIN queries! So to answer your two questions.
1 - If you create multiple documents, you'll need make two calls to the DB. Not saying it's a bad thing but if you can throw everything into one document, why not? I recall when I used to use MySQL, I would create a "blog" table and a "comments" table. Now, I append the comments to the record in the same collection (aka table) and keep building on it.
2 - Yes ...
The schema design in Document-oriented DBs can seems difficult at first, but building my startup with Symfony2 and MongoDB I've found that the 80% of the time is just like with a relational DB.
At first, think it like a normal db:
To start, just create your schema as you would with a relational Db:
Each Entity should have his own Collection, especially if you'll need to paginate the documents in it.
(in Mongo you can somewhat paginate nested document arrays, but the capabilities are limited)
Then just remove overly complicated normalization:
do I need a separate category table? (simply write the category in a column/property as a string or embedded doc)
Can I store comments count directly as an Int in the Author collection? (then update the count with an event, for example in Doctrine ODM)
Embedded documents:
Use embedded documents only for:
clearness (nested documents like: addressInfo, billingInfo in the User collection)
to store tags/categories ( eg: [ name: "Sport", parent: "Hobby", page: "/sport"
] )
to store simple multiple values (for eg. in User collection: list of specialties, list of personal websites)
Don't use them when:
the parent Document will grow too large
when you need to paginate them
when you feel the entity is important enough to deserve his own collection
Duplicate values across collection and precompute counts:
Duplicate some columns/attributes values from a Collection to another if you need to do a query with each values in the where conditions. (remember there aren't joins)
eg: In the Ticket collection put also the author name (not only the ID)
Also if you need a counter (number of tickets opened by user, by category, ecc), precompute them.
Embed references:
When you have a One-to-Many or Many-to-Many reference, use an embedded array with the list of the referenced document ids (see MongoDB DB Ref).
You'll need to use an Event again to remove an id if the referenced document get deleted.
(There is an extension for Doctrine ODM if you use it: Reference Integrity)
This kind of references are directly managed by Doctrine ODM: Reference Many
Its easy to fix errors:
If you find late that you have made a mistake in the schema design, its quite simply to fix it with few lines of Javascript to run directly in the Mongo console.
(stored procedures made easy: no need of complex migration scripts)
Waring: don't use Doctrine ODM Migrations, you'll regret that later.
Redid this answer since the original answer took the relation the wrong way round due to reading incorrectly.
issue = {code:"asdf-11", title:"asdf", reporter:{username:"qwer", role:"manager"}}
As to whether embedding some important information about the user (creator) of the ticket is a wise decision or not depends upon the system specifics.
Are you giving these users the ability to login and report issues they find? If so then it is likely you might want to factor that relation off to a user collection.
On the other hand, if that is not the case then you could easily get away with this schema. The one problem I see here is if you wish to contact the reporter and their job role has changed, that's somewhat awkward; however, that is a real world dilemma, not one for the database.
Since the subdocument represents a single one-to-one relation to a reporter you also should not suffer fragmentation problems mentioned in my original answer.
There is one glaring problem with this schema and that is duplication of changing repeating data (Normalised Form stuff).
Let's take an example. Imagine you hit the real world dilemma I spoke about earlier and a user called Nigel wants his role to reflect his new job position from now on. This means you have to update all rows where Nigel is the reporter and change his role to that new position. This can be a lengthy and resource consuming query for MongoDB.
To contradict myself again, if you were to only have maybe 100 tickets (aka something manageable) per user then the update operation would likely not be too bad and would, in fact, by manageable for the database quite easily; plus due to the lack of movement (hopefully) of the documents this would be a completely in place update.
So whether this should be embedded or not depends heavily upn your querying and documents etc, however, I would say this schema isn't a good idea; specifically due to the duplication of changing data across many root documents. Technically, yes, you could get away with it but I would not try.
I would instead split the two out.
If I have objects (subdocuments) in a document, can I update them all in a single query?
Just like the relation style in my original answer, yes and easily.
For example, let's update the role of Nigel to MD (as hinted earlier) and change the ticket status to completed:
db.tickets.update({'reporter.username':'Nigel'},{$set:{'reporter.role':'MD', status: 'completed'}})
So a single document schema does make CRUD easier in this case.
One thing to note, stemming from your English, you cannot use the positional operator to update all subdocuments under a root document. Instead it will update only the first found.
Again hopefully that makes sense and I haven't left anything out. HTH
Original Answer
here I have a user related to the issue). Should I create another document 'user' and reference it in 'issue' document by its id (like in relational databases), or should I leave all the user's data in the subdocument?
This is a considerable question and requires some background knowledge before continuing.
First thing to consider is the size of a issue:
issue = {code:"asdf-11", title:"asdf", reporter:{username:"qwer", role:"manager"}}
Is not very big, and since you no longer need the reporter information (that would be on the root document) it could be smaller, however, issues are never that simple. If you take a look at the MongoDB JIRA for example: https://jira.mongodb.org/browse/SERVER-9548 (as a random page that proves my point) the contents of a "ticket" can actually be quite considerable.
The only way you would gain a true benefit from embedding the tickets would be if you could store ALL user information in a single 16 MB block of contigious sotrage which is the maximum size of a BSON document (as imposed by the mongod currently).
I don't think you would be able to store all tickets under a single user.
Even if you was to shrink the ticket to, maybe, a code, title and a description you could still suffer from the "swiss cheese" problem caused by regular updates and changes to documents in MongoDB, as ever this: http://www.10gen.com/presentations/storage-engine-internals is a good reference for what I mean.
You would typically witness this problem as users add multiple tickets to their root user document. The tickets themselves will change as well but maybe not in a drastic or frequent manner.
You can, of course, remedy this problem a bit by using power of 2 sizes allocation: http://docs.mongodb.org/manual/reference/command/collMod/#usePowerOf2Sizes which will do exactly what it says on the tin.
Ok, hypothetically, if you were to only have code and title then yes, you could store the tickets as subdocuments in the root user without too many problems, however, this is something that comes down to specifics that the bounty assignee has not mentioned.
If I have objects (subdocuments) in a document, can I update them all in a single query?
Yes, quite easily. This is one thing that becomes easier with embedding. You could use a query like:
db.users.update({user_id:uid,'tickets.code':'asdf-1'}, {$set:{'tickets.$.title':'Oh NOES'}})
However, to note, you can only update ONE subdocument at a time using the positional operator. As such this means you cannot, in a single atomic operation, update all ticket dates on a single user to 5 days in the future.
As for adding a new ticket, that is quite simple:
db.users.update({user_id:uid},{$push:{tickets:{code:asdf-1,title:"Whoop"}}})
So yes, you can quite simply, depending on your queries, update the entire users data in a single call.
That was quite a long answer so hopefully I haven't missed anything out, hope it helps.
I like MongoDB, but I have to say that I will use it a lot more soberly in my next project.
Specifically, I have not had as much luck with the Embedded Document facility as people promise.
Embedded Document seems to be useful for Composition (see UML Composition), but not for aggregation. Leaf nodes are great, anything in the middle of your object graph should not be an embedded document. It will make searching and validating your data more of a struggle than you'd want.
One thing that is absolutely better in MongoDB is your many-to-X relationships. You can do a many-to-many with only two tables, and it's possible to represent a many-to-one relationship on either table. That is, you can either put 1 key in N rows, or N keys in 1 row, or both. Notably, queries to accomplish set operations (intersection, union, disjoint set, etc) are actually comprehensible by your coworkers. I have never been satisfied with these queries in SQL. I often have to settle for "two other people will understand this".
If you've ever had your data get really big, you know that inserts and updates can be constrained by how much the indexes cost. You need fewer indexes in MongoDB; an index on A-B-C can be used to query for A, A & B, or A & B & C (but not B, C, B & C or A & C). Plus the ability to invert a relationship lets you move some indexes to secondary tables. My data hasn't gotten big enough to try, but I'm hoping that will help.