It is a bit overwhelming. I'm not an expert myself. But even the bare minimum of understanding gets you a lot more usefulness than the indexing built in to MySQL
you can use it as a straight-up key-value document store
and then roll with the standard tokenizer and indexer on the field you want to search
and it will likely work pretty well
but then unlike the one built into MySQL, when you realize you want to tokenize or index the values pretty easily, you can start to tweak things
The bare minimum understanding will probably take me a week of reading those docs. I looked into it for about an hour and have no idea what this thing is about.
I have no idea what any of that is ;D I'll look into it later.
I always have this problem. There's something fundamental that I don't understand, and I can't understand anything else until I figure out what question I need answered and answer it.
I think that would probably have something to do with mysql..
The picture that got built in my head (probably awfully wrong) is that this thing listens for certain requests to my api and then stores the input/output so it can do stuff with it
"To rebuild the indexes in this case, it is sufficient to do a QUICK repair operation: REPAIR TABLE tbl_name QUICK; Alternatively, use ALTER TABLE with the DROP INDEX and ADD INDEX options to drop and re-create each FULLTEXT index. In some cases, this may be faster than a repair operation."
@m59 there are magical things that exist that can automatically throw new documents from your database table into your Elasticsearch index, but by default, you would have to send documents to Elasticsearch whenever you save them to your database