Upvotes should be instant to the logged in user who performed the update, and not necessarily realtime to others
The normal way to approach this is to have a redis or memcached layer as your "fast" database, and treat it all as a two layer storage - if it is not in the cache, then hit the db
Most of your reads for a given time frame will go to active questions, so most of them will hit the cache
If you use postgres with a good caching mechanism and well a well written app layer, you will likely not have any issues until far beyond SE's current size
@JBis when I was in high school I wanted to make an entire Dragon Warrior style RPG. I thought that (since I had written some simple programs) it would be easy to do, and started planning out all the maps and monsters and such. Eventually when it came time to actually write it I realized I was in over my head.
I never wrote it because it was too much for me to accomplish by myself
I'm really not the best person to create this. But I really want to work on something and I figure if I beat Codidact and TopAnswers with an initial working prototype people will join.
@JBis The homepage should be like 3 queries at most; logged in user's rep, Select title, tags from questions order by posted desc limit 25; (optional) sidebar list of Qs
@DaveS That's what I do for some of my projects, render a page and stuff it in redis or s3
You can eat up huge traffic spikes with negligible overhead
@Mehdi Tbh, the biggest user facing difference a programmer would notice is that Postgres supports stuff like SELECT DISTINCT ON, FULL OUTER JOIN, mysql doesn't
Postgres had some limitations around sharding by range, making it difficult to rebalance data if one particular range grew too large, or if you wanted to go from append only to random insert modes etc.
But that's mostly been solved in 11 and 12
And honestly, by the time you hit that kind of problem, you have enough resources to deal with it
sharding and the depths of a db system are a black box to me, I've been reading some literature about how databases are built internally, it's madness :D
If you do a query that spans multiple shards, you'd hit more underlying tables
That's one way to do it
Another way is by predicate
So you might put one column in one shard in its entirety, second column in another, and so on
That's more commonly done by graph databases
Where your queries tend to require fast access to all values in a "column" (edge, facet, node-key, etc.)
If you do that in an relational system, you will usually end up duplicating the primary key on each shard
So if your table is id,name,email,dob,dislikes_dave(default=true), then your shards would be id,name,email, and id,dob,dislikes_dave(default=true) since you need to be able to link rows across shards
Yet another way is hash based -> you have a master hashtable of pkey,hash%distribution_function, with hash%distribution_function being the shard id
And then multiple shards of id,data1,data2,etc.
This is similar to the range based sharding, but avoids pitfalls with clustered data
@Mehdi You would usually configure it manually depending on your data distribution
And query pattern
You generally want hot queries to only hit one shard where possible
So based on that, you'd choose between vertical (column, predicate) sharding, horizontal sharding (rows, range based), or vertical+hash, horizontal+hash
If you're looking at Facebook style stuff, where all your shards interact with each other because that's how real life social networks work, then I can't help you
NoSQL has its uses - there are good NoSQL databases out there (SQLite, for instance, makes a great relational, NoSQL, document store, filesystem all in a single embedded library). NoSQL isn't ideal for a lot of usecases, but works just fine for others
@JBis All filesystems use a write cache - when your program writes to a file, you are actually just updating this cache in memory - it is usually only written to disk when the cache is full, or your program releases the file handle. But releasing the file will not always write immediately, it may get queued, and instant power loss can lead to data loss
That's why when you want an atomic file update, you usually write to a temp file, fsync that, then mv the temp file to the actual file, then fsync again
That way, you won't end up with a partially written file
The main issues people claim with NoSQL are inconsistent writes - consecutive read-write-read-write queries might access stale data, or overwrite already updated data with bad values computed based on a stale read
Stuff like postgres has decades worth of performance and integrity work built into the db - if you try to replicate the same queries on mongo or a kv store or whatever, you'll be several orders of magnitude slower
> The reason that SQL has this reputation for being slow, is that processing a complex query on a large dataset, inevitably takes time whereas NoSQL simply doesn’t provide the ability to run slow complex queries in the first place.
Relational data is referential - you will usually see it when a lot of your data references other parts of your data (posts belong to a user, votes belong to a user, deletions belong to many users, flags belong to a user, flag results belong to a mod, etc)
NoSQL is more commonly used in document use cases - instagram, for instance, might store comments, likes, shares in a sql db, but images and their metadata in a NoSQL db
A single image, along with its metadata, is self contained
@JBis When you like a post on instagram, they essentially need to store the facts that JBis liked post 123, post 123 is owned by Dave, post 123 has 20 likes. These all relate to each other -> You're involving a users table, a posts table, a likes table, and a likes_count table - If JBis likes a post, you want all of them to update, or none of them to update. You don't want partial updates or stale data
For the image itself, once it has been created, it is a self contained object - the image and metadata belong only to that image, so you put it in a single unit called a document
If you then resize that image to create 5 different scaled versions for different devices, you can put those in the same document
Updating that image document doesn't require you to update any other data set
likes would just be an array of unique values to prevent the application layer from letting you like something you already did like and return the count of likes
but it wouldn't be good for doing algorithmic sorting on number of likes or anything people use likes for
except a foreign key lets you join data together
you'd have to perform a new query yourself to get the user document from the like ID to do anything with it
it's not a foreign key really in any sense of the SQL context, it's just a key
you can't think about NoSQL in terms of SQL or you're missing the point entirely
We have a middle man API layer for one of our clients, they want to collect the data being returned by our 3rd party api service cheaply
so when the end user hits the API, the responses are stored in a DynamoDB by their ID so we have a relatively accurate copy of all data in the 3rd party API without a costly integration
and we don't need to build any schemas or anything
we just say here is this object, here is the ID, dump all the data at this address
we can then export/work with it later anyway we want
Quickly going back to what you guys said about the SE clone being too complicated...While competing with something as large as SE would be extremely difficult, simply building a clone I don't think is. The basic idea isn't complicated at all.
I think creating a working clone is very realistic even with a single developer.
As Rag pointed out, cost wouldn't be too bad either.
Building a basic functional SE prototype is probably do-able, handling close votes, flags, moderation tools doing it well and doing it at scale is probably beyond the means of an individual developer