YAML and TOML suck. Long live the FAMF!
Sure. Why not :))
Why waste the inodes?
What would you do with billions of inodes?
Run out, far more frequently than you would imagine.
That was my first reaction just by reading the title.
Mostly because I learned the hard way what inodes are.
Read the content. I address that issue.
For the record, you mention “the limitations of the number of inodes in Unix-like systems”, but this is not a limit in Unix, but a limit in filesystem formats (which also extends to Windows and other systems).
So it depends more on what the filesystem is rather than the OS. A FAT32 partition can only hold 65,535 files (2^16), but both ext4 and NTFS can have up to 4,294,967,295 (2^32). If using Btrfs then it jumps to 18,446,744,073,709,551,615 (2^64).
I know, I read it because I wanted to know too know if it was addressed
This is also going to make some devs (me) convulse when a PR is like, “small config change. updated 29 files”.
I have one that has 69 (noice) files changed.
Not worse than YAML. 'course nothing is…
Famf is definitely is. Just put yaml there.
I actually quite like this idea.
You can take it a step further and use file extensions to determine the format. For example the parser would first search for
title
, and if it doesn’t exist trytitle.md
title.html
etc and render the content appropriately.That’s a pretty cool idea!
It’s a very interesting idea. I don’t think I’ll use it and I think the downsides outweigh the benefits but it is still an interesting idea.
In all of these cases, the answer is not TOML, YAML or JSON — or FAMF for what it’s worth. It is goddamn database.
I was about to boo and hiss, but if you mean something like sqlite as an application file format I’m more tempted to agree.
I think a more clear name for this would be “filesystem data structures” since the key idea is editing structured data through the filesystem. I can imagine a FUSE driver that can map many types of data to this structure.
Yes. That is indeed a more interesting name. But think of the acronym.
- FDS is not as easy to say FAMF.
- FAMF already has an Urban Dictionary entry.
Lol your second point is irrefutable, I must concede to the choice of FAMF 😹
Yes… “metadata” is becoming an overused term. Not all data is metadata.
My first thought when I read the title was about those
.nfo
files used by Kodi/Jellyfin and other media centers to keep information relative to the media files.
I like this … a lot.
Is it new?
If there isn’t even a todo task manager that handles notes this way, it is. Because man are there myriad implementations of that stuff.
And like you said: all tooling for files works for this … For example I use F2 (highly recommended btw) for bulk editing filenames based on regex patterns. This could easily used to edit metadata in bulk.
Oh goody! F2 is great, but the developers are craaazy! They packages commandline Go application with npm!
I also like vimv and vidir for simpler stuff.
You can easily parse this using awk, sed, fzf,
Well… I would know how to do it easily in C# or Nushell. But those tools? Maybe it’s easy when you’re already intuitively familiar with them. But line/string splitting seems anything but with complex utils like that with many params and a custom syntax.
That quote was in the context of simply separating values with newlines (and the list also included “your language’s
split
orlines
function”).Technically you don’t even need
awk
/sed
/fzf
, just a loop in bash doingread
would allow you to parse the input one line at a time.while read line; do echo $line # or whatever other operation done < whateverfile
Also, those manpages are a lot less complex than the documentation for C# or Nushell (or bash itself), although maybe working with C#/nushell/bash is “easy when you’re already intuitively familiar with them”. I think the point was precisely the fact that doing that is easy in many different contexts because it’s a relatively simple way to separate values.
Yeah, I see they did mention “your languages functions”. It’s just, subjectively, reading awk and sed next to “easily” irritates me. Because I’ve never found it easy to get into those.
Fully committed to directory file structure. Except for value lists. Those are text files you have to parse anyway.
My biggest issue is with how spread out the information will be. You need something other than your standard file and directory explorers. Because you want to see and work with a view across multiple levels of directories and files and their content.
Definitely. But you would need need something other than those for the working with 100 json files as well. The question is, which kinds of things you would like to have as extra. You can go with jq and prettier syntax highlighting or you can go with tree and cat (and dog). It is the matter of taste. But also, I am always right, because my mom told me I am special .
I’m a bit skeptical about the performance penalty. I know there’s a benchmark but I didn’t see any details of what was actually benchmarked and where. Windows (AFAIK) still has notoriously slow directory traversal operations. God forbid you’re using SSHFS or even NFS. I’ve seen things with hundreds of YAML nodes before.
Benchmarking this is also tricky because the OS file cache will almost certainly make the second time faster than the first (and probably by a lot).
Also just the usability… I think opening a file to change one value is extreme. You also still have the problem of documentation… Which sure you can solve by putting that in another file, but… You can also do that with just plain old JSON.
I think in the majority of languages, writing a library to process these files would also be more complicated than writing a JSON parser or using an existing library.
Also how do you handle trailing whitespace inserted by a text editor? Do you drop it? Keep it? It probably doesn’t matter as long as the configuration is just for a particular program. The program just needs to document it… But then you’ve got ambiguities between programs that you just don’t have to worry about with TOML or JSON.
OK so, you are very much right. You should definitely benchmark it using a simulation of what your data might look like. It should not be that hard. Just make script, that creates bunch of files similar to your data. About the trailing white space, when I am in terminal I just use sed to remove the latest ‘\n’ and in rust I just use .trim(), in go I think there is strings.trim(). It is honestly not that hard. The data structure and parser is not formed the same way as the json, where you have to parse the whole thing. So you don’t have to. You just open the files you need read their content. It is a bit more difficult at first since you can’t just translate a whole struct directly, but it pays for itself when you want to migrate the data to a new format. So if your structure never changes, probably those formats are easier.
You should definitely benchmark it using a simulation of what your data might look like. It should not be that hard. Just make script, that creates bunch of files similar to your data.
Right, it’s just kind of a thing to think about. If your program is something that might conceivably be used of sshfs (as an example) … this is probably not a great option for your program’s configuration.
The data structure and parser is not formed the same way as the json, where you have to parse the whole thing. So you don’t have to. You just open the files you need read their content. It is a bit more difficult at first since you can’t just translate a whole struct directly, but it pays for itself when you want to migrate the data to a new format. So if your structure never changes, probably those formats are easier.
Well a very common thing is to create a “config” object that lives in the long running process (and in some cases can be reloaded without restarting the program).
That model also saves you from unnecessary repeated IO operations (without one off caching and reloading mechanisms) and allows you to centralize any validation (which also means you can give configuration errors on start up).
I do wish various formats were more “streaming” friendly, but configuration isn’t really one of them.
In a lot of languages moving between formats is also fairly trivial because the XYZ markup parser parses things into an object map and the ZYK markup writer can write an object map into ZYK format.
Maybe I’m not understanding what you mean by migrating the data to a new format though.
This post misses the entire point of JSON/TOML/YAML and the big advantage it has over databases: readability.
Using a file based approach sounds horrible. Context gets lost very easily, as I need to browse and match outputs of a ton of files to get the full picture, where the traditional methods allow me to see that nearly instantly.
I also chuckled at the exact, horribly confusing example you give: upd_at. A metadata file for an object that already inherently has that metadata. It’s metadata on top of metadata, which makes it all the more confusing what the actual truth for the object is.
I know! right?
Some say thay since you can use ‘tree’ and things like ranger to navigate the files, it should work alright. But I guess if you have one giant metadatafile for all the posts on your blog, it should be much easier to see the whole picture.
As for upd_at, it does not contain information about when the files have been edited, but when the content of the post was meaningfully edited.
So if for example I change the formatting of my times form ISO3339 to another standard, it changes the file metadata, but it does not update the post content, as far as the readers of the blog are concerned with. But I get why you chuckled.
thanks, i hate it
Sure thing! Awesome!