This and similar tasks can be solved efficiently with clickhouse-local [1]. Example:
ch --input-format LineAsString --query "SELECT line, count() AS c GROUP BY line ORDER BY c DESC" < data.txt
I've tested it and it is faster than both sort and this Rust code:
time LC_ALL=C sort data.txt | uniq -c | sort -rn > /dev/null
32 sec.
time hist data.txt > /dev/null
14 sec.
time ch --input-format LineAsString --query "SELECT line, count() AS c GROUP BY line ORDER BY c DESC" < data.txt > /dev/null
2.7 sec.
It is like a Swiss Army knife for data processing: it can solve various tasks, such as joining data from multiple files and data sources, processing various binary and text formats, converting between them, and accessing external databases.
It's Apache licenced and you could also install it via your favourite package installer. Given all the crazy supply chain attacks going on, I don't really feel this is any worse than downloading a binary from a distro archive, and specifically this pipe | sh doesn't expect you to run it as root (which a lot of other cut-and-paste installers do).
> I don't really feel this is any worse than downloading a binary from a distro archive
Please don't say that. It denigrates the work of all the packagers that actually keep our supply chains clean. At least in the major distributions such as Red Hat/Fedora and Debian/Ubuntu.
The distro model is far from perfect and there are still plenty of ways to insert malware into the process, but it certainly is far better than running binaries directly from a web page. You have no idea who have access to that page and its mirrors and what their motives are. The binary isn't even signed, let alone reviewed by anyone!
When using clickhouse-local like this, does it build a logical plan and run the optimizer on it? Does it have any kind of code generation, since it knows the query (and physical data layout) ahead of time?
Just noting that in your benchmark (which we know nothing about), your "naive" data point is just 2.29x slower than hist. In their testing it was 27x slower! And it's not quite the same naive shell command, which isn't helpful.
Well, fair in a sense that we'd compare which implementation is more efficient. Surely, ClickHouse is faster, but is it because it's using actually superior algorithms or is it just that it executes stuff in parallel by default? I'd like to believe it's both, but without "user%" it's hard to tell
Not necessarily, that really depends on what you mean by fast. Cars definitely go higher in top speed than bikes do for example. If I'm not mistaken, racing electric cars also accelerate comparable or faster than bikes. A bike can generally go around a track faster than a car, but that only holds true in dry conditions. Etc, many ways to define fast and what you actually mean.
There are going to be very few [*] repeated strings in this 100M line file, since each >seq.X will be unique and there are roughly a trillion random 4-letter (ACGT) strings of length 20. So this is really assessing the performance of how well a hashtable can deal with reallocating after being overloaded.
I did not have enough RAM to run a 100M line benchmark, but the following simple `awk` command performed ~15x faster on a 10M line benchmark (using the same hyperfine setup) versus the naïve `sort | uniq -c`, which isn't bad for something that comes standard with every *nix system.
awk '{ x[$0]++ } END { for(y in x) { print y, x[y] }}' <file> | sort -k2,2nr
The awk script is probably the fastest way to do this still, and it's faster if you use gawk or something similar rather than default awk. Most people also don't need ordering, so you can get away with only the awk part and you don't need the sort.
Was sitting around in meetings today and remembered an old shell script I had to count the number of unique lines in a file. Gave it a shot in rust and with a little bit of (over-engineering)™ I managed to get 25x throughput over the naive approach using coreutils as well as improve over some existing tools.
Some notes on the improvements:
1. using csv (serde) for writing leads to some big gains
2. arena allocation of incoming keys + storing references in the hashmap instead of storing owned values heavily reduced the number of allocations and improves cache efficiency (I'm guessing, I did not measure).
There are some regex functionalities and some table filtering built in as well.
Small semantics nit: it is not overengineered, it is engineered. You wanted more throughput, the collection of coreutils tools was not designed for throughput but flexibility.
It is not difficult to construct scenarios where throughput matters but that IMHO that does not determine engineering vs overengineering. What matters is whether there are requirements that need to be met. Debating the requirements is possible but doesn't take away from whether a solution obtained with reasonable effort meets the spec. Overengineering is about unreasonable effort, which could lead to overshoot the requirements, not about unreasonable requirements.
We had similar thoughts about "premature optimisation" in the games industry. That is it's better to have prematurely optimised things than finding "everything is slow". But I guess in that context there are many many "inner-most loops" to optimise.
The best-practice solution would be to write a barely optimized ugly prototype to make sure the core idea is fun, then throw away the prototype and write the "real" game. But of course that's not always how reality works
yep. The stakeholder (who is paying the money) asks why the prototype can't just be "fixed up" and be sold for money, instead of paying for more dev time to rewrite. There's no answer that they can be satisfied with.
From a causal glance, isn't your code limited by the amount of available memory?
Which could be totally useful in itself, but not even close to what "sort" is doing.
Did you run sort with a buffer size larger than the data? Your specialized one-pass program is likely faster, but at least the numbers would mean something.
That said, I don't see what is over-engineered here. It's pretty straightforward and easy to read.
> using csv (serde) for writing leads to some big gains
Could you explain that, if you have the time? Is that for writing the output lines? Is actual CSV functionality used? That crate says "Fast CSV parsing with support for serde", so I'm especially confused how that helps with writing.
I created "unic" a number of years ago because I had need to get the unique lines from a giant file without losing the order they initially appeared. It achieves this using a Cuckoo Filter so it's pretty dang quick about it, faster than sorting a large file in memory for sure.
Note that by default sort command has a pretty low memory usage and spills to disk. You can improve the throughput quite a bit by increasing the allowed memory usage: --buffer-size=SIZE
Storage, strings, sorting, counting, bioinformatics... I got nerd-sniped! Can't resist a shameless plug here :)
Looking at the code, there are a few things I would consider optimizing. I'd start by trying (my) StringZilla for hashing and sorting.
HashBrown collections under the hood use aHash, which is an excellent hash function, but on both short and long inputs, on new CPUs, StringZilla seems faster [0]:
short long
aHash::hash_one 1.23 GiB/s 8.61 GiB/s
stringzilla::hash 1.84 GiB/s 11.38 GiB/s
A similar story with sorting strings. Inner loops of arbitrary length string comparisons often dominate such workloads. Doing it in a more Radix-style fashion can 4x your performance [1]:
short long
std::sort_unstable_by_key ~54.35 M compares/s 57.70 M compares/s
stringzilla::argsort_permutation ~213.73 M compares/s 74.64 M compares/s
Bear in mind that "compares/s" is a made-up metric here; in reality, I'm comparing from the duration.
People often use sort | uniq when they don't want to load a bunch of lines into memory. That's why it's slow. It uses files and allocates very little memory by default. The pros? You can sort hundreds of gigabytes of data.
This Rust implementation uses hashmap, if you have a lot of unique values, you will need a lot of RAM.
This reminds me of a program I wrote to do the same thing that wc -L does, except a lot faster. I had to run it on a corpus of data that was many gigabytes (terabytes) in size, far too big to fit in RAM. MIT license.
I built something similarly a few years ago for `sort | uniq -d` using sketches. The downside is you need two passes, but still it's overall faster than sorting: https://github.com/mpdn/sketch-duplicates
I use questions around this pipeline in interviews. As soon as people say they'd write a Python program to sort a file, they get rejected.
Arguably, this will result in a slower result in most cases, but the reason for the rejection is wasting developer time (not to mention time to test for correctness) to re-develop something that is already available in the OS.
I'm sure you're doing it in a sensible way, but... the thought that played out in my head went a little like this {apologies, I'm not well today, this might be a fever dream}:
Interviewer: "Welcome to your hammer-stuff interview, hope you're ready to show your hammering skills, we see from your resumé you've been hammering for a while now."
Schmuck: "Yeah, I just love to make my bosses rich by hammering things!"
Interviewer: "Great, let's get right into the hammer use ... here's a screw, show me how you'd hammer that."
Schmuck: (Thinks - "Well, of course, I wouldn't normally hammer those; but I know interviewers like to see weird things hammered! Here goes...")
[Hammering commences]
Interviewer: "Well thanks for flying in, but you've failed the interview. We were very impressed that you demonstrated some of the best hammering we've ever seen. But, of course, wanted to see you use a screwdriver here in your hammering interview at We Hammer All The Things."
One of the cooler Unix command utilities is tsort, which performs a topological sort. Basically you give it a list of items (first word in each line) and their dependencies (subsequent words on each line) and it sorts them accordingly, similar to how, e.g., Make builds a graph of targets and dependencies to run recipes in the correct order. https://en.wikipedia.org/wiki/Tsorthttps://pubs.opengroup.org/onlinepubs/9799919799/utilities/t...
However, I've never found a use for it. Apparently it was written for the Version 7 Unix build system to sort libraries for passing to the linker. And still used.[1][2] But of the few times I've needed a topological sort, it was part of a much larger problem where shell scripting was inappropriate, and implementing it from scratch using a typical sort routine isn't that difficult. Still, I'm waiting for an excuse to use it someday, hopefully in something high visibility so I can blow people's minds.
Your loss, not theirs. Lots of good developers are not expert at unix commands, many of which spend most of their time on Windows. They may be "wasting" 2 minutes on this specific task with their "inefficient" method, but they may perform much better on other tasks, to the point that 2 minutes saved here is nothing.
Not to mention that these days people often ask ChatGPT "what's the best way to do this" before proceeding, and whatever you ask in interviews is completely irrelevant.
It is exactly for these reasons we never ask such questions in our interviews. There are much more important aspects of a candidate to evaluate.
This depends on the context... If a file is pretty small, I would avoid sort pipes when there is a Python codebase. It's only useful when the files are pretty big (1-5GB+)
They are tricky and not very portable. Sorting depends on locales and the GNU tools implementation.
What is the definition of wasting developer time? If a developer takes a 2 hours break to recover mental power and avoid burnout, is it considered time wasted?
The win here might be using HashMap to avoid having to sort all entries. Then sorting at the end instead. What's the ratio of duplicates in the benchmark input?
There is no text encoding processing, so this only works for single byte encodings. That probably speeds it up a little bit.
Depending on the size of the benchmark input, sort(1) may have done disk-based sorting. What's the size of the benchmark input?
To me, the really big win would be _not_ to have to sort at all. Have an option to keep first or last duplicate and remove all others while keeping line order is usually what I need.
I've written this kind of function so many times it's not funny. I usually want something that is fed from an iterator, removes duplicates, and yields values as soon as possible.
That's easy to do if you're keeping the first duplicate. It becomes complex if you're keeping the last duplicate, because every time you find a duplicate you have to go back through your "output" and delete the earlier occurrence.
You could do an annotating pass for learning which of each line is the last one, and then a followup pass for printing (or otherwise echoing) only the lines that are the last of their kind. Technically still faster than sorting.
You could also keep the information on last occurrence of each line in the hash map (that's where it's going to be anyway), and once you're done with the first pass sort the map by earliest last occurrence. That will get you the lines in the right order, but you had to do a sort. If the original input was mostly duplicates, this is probably a better approach.
You could also track last occurrence of each line in a separate self-sorting structure. Now you have slightly more overhead while processing the input, and sorting the output is free.
The first "sort" sorts the input lines lexicographically (which is required for "uniq" to work); the second "sort" sorts the output of "uniq" numerically (so that lines are ordered from most-frequent to least-frequent):
$ echo c a b c | tr ' ' '\n'
c
a
b
c
$ echo c a b c | tr ' ' '\n' | sort
a
b
c
c
$ echo c a b c | tr ' ' '\n' | sort | uniq -c
1 a
1 b
2 c
$ echo c a b c | tr ' ' '\n' | sort | uniq -c | sort -rn
2 c
1 b
1 a
It's something I've done myself in the past. First sort is because it needs to be sorted for uniq -c to count it proper, second sort because uniq doesn't always give the output in the right order.
This and similar tasks can be solved efficiently with clickhouse-local [1]. Example:
I've tested it and it is faster than both sort and this Rust code: It is like a Swiss Army knife for data processing: it can solve various tasks, such as joining data from multiple files and data sources, processing various binary and text formats, converting between them, and accessing external databases.[1] https://clickhouse.com/docs/operations/utilities/clickhouse-...
Disclaimer: the author of the comment is the founder and CTO of ClickHouse
And all their comments are shilling Clickhouse either directly or via a project built on top of it, without disclosure.
Considering that it's an open source tool, I don't know if it's that bad to be shilling for the commons, basically.
Disclosure, not disclaimer.
They want to own the claims made.
Yes, sorry, it should be "disclosure"
I'd not heard of clickhouse before. It does seem interesting, but I just can't get behind a project that says:
> The easiest way to download the latest version is with the following command:
> curl https://clickhouse.com/ | sh
Like, sure, there is some risk downloading a binary or running an arbitrary installer. But this is just nuts.
It's Apache licenced and you could also install it via your favourite package installer. Given all the crazy supply chain attacks going on, I don't really feel this is any worse than downloading a binary from a distro archive, and specifically this pipe | sh doesn't expect you to run it as root (which a lot of other cut-and-paste installers do).
> I don't really feel this is any worse than downloading a binary from a distro archive
Please don't say that. It denigrates the work of all the packagers that actually keep our supply chains clean. At least in the major distributions such as Red Hat/Fedora and Debian/Ubuntu.
The distro model is far from perfect and there are still plenty of ways to insert malware into the process, but it certainly is far better than running binaries directly from a web page. You have no idea who have access to that page and its mirrors and what their motives are. The binary isn't even signed, let alone reviewed by anyone!
>Like, sure, there is some risk downloading a binary or running an arbitrary installer. But this is just nuts.
It's literally exactly the same thing
Chdb is just a binary. You can just grab that. Also pipe to sh is used by a ton of projects
it's used by many projects but still regarded as an anti-pattern and security issue
A ton of people drink and drive too, doesn't make it any more fine.
how is this any less secure than running a binary/installer? the binary could run this inside?
When using clickhouse-local like this, does it build a logical plan and run the optimizer on it? Does it have any kind of code generation, since it knows the query (and physical data layout) ahead of time?
Just noting that in your benchmark (which we know nothing about), your "naive" data point is just 2.29x slower than hist. In their testing it was 27x slower! And it's not quite the same naive shell command, which isn't helpful.
Exactly. I love this and DuckDb and other such amazing tools.
To be more fair you could also add SETTINGS max_threads=1 though?
How is that “more fair”?
Well, fair in a sense that we'd compare which implementation is more efficient. Surely, ClickHouse is faster, but is it because it's using actually superior algorithms or is it just that it executes stuff in parallel by default? I'd like to believe it's both, but without "user%" it's hard to tell
Last time I checked, writing efficient, contention-free and correct parallel code is hard and often harder than pulling an algorithm out of a book.
Would you take half the wheels off a car to compare it to a motorcycle?
Motorcycles are faster than cars though
Not necessarily, that really depends on what you mean by fast. Cars definitely go higher in top speed than bikes do for example. If I'm not mistaken, racing electric cars also accelerate comparable or faster than bikes. A bike can generally go around a track faster than a car, but that only holds true in dry conditions. Etc, many ways to define fast and what you actually mean.
I thought all the land speed records were basically motorcycles.
Jet motorcycles but motorcycles
Musk's roadster is currently going in excess of 10,000 mph. Which bike is faster than that? :)
>I use nucgen to generate a random 100M line FASTQ file and pipe it into different tools to compare their throughput with hyperfine.
This is a strange benchmark [0] -- here is what this random FASTQ looks like:
There are going to be very few [*] repeated strings in this 100M line file, since each >seq.X will be unique and there are roughly a trillion random 4-letter (ACGT) strings of length 20. So this is really assessing the performance of how well a hashtable can deal with reallocating after being overloaded.I did not have enough RAM to run a 100M line benchmark, but the following simple `awk` command performed ~15x faster on a 10M line benchmark (using the same hyperfine setup) versus the naïve `sort | uniq -c`, which isn't bad for something that comes standard with every *nix system.
[0] https://github.com/noamteyssier/hist-rs/blob/main/justfile[*] Birthday problem math says about 250, for 50M strings sampled from a pool of ~1T.
The awk script is probably the fastest way to do this still, and it's faster if you use gawk or something similar rather than default awk. Most people also don't need ordering, so you can get away with only the awk part and you don't need the sort.
Was sitting around in meetings today and remembered an old shell script I had to count the number of unique lines in a file. Gave it a shot in rust and with a little bit of (over-engineering)™ I managed to get 25x throughput over the naive approach using coreutils as well as improve over some existing tools.
Some notes on the improvements:
1. using csv (serde) for writing leads to some big gains
2. arena allocation of incoming keys + storing references in the hashmap instead of storing owned values heavily reduced the number of allocations and improves cache efficiency (I'm guessing, I did not measure).
There are some regex functionalities and some table filtering built in as well.
happy hacking
Small semantics nit: it is not overengineered, it is engineered. You wanted more throughput, the collection of coreutils tools was not designed for throughput but flexibility.
It is not difficult to construct scenarios where throughput matters but that IMHO that does not determine engineering vs overengineering. What matters is whether there are requirements that need to be met. Debating the requirements is possible but doesn't take away from whether a solution obtained with reasonable effort meets the spec. Overengineering is about unreasonable effort, which could lead to overshoot the requirements, not about unreasonable requirements.
We had similar thoughts about "premature optimisation" in the games industry. That is it's better to have prematurely optimised things than finding "everything is slow". But I guess in that context there are many many "inner-most loops" to optimise.
> That is it's better to have prematurely optimised things than finding "everything is slow".
or you found that you've optimized a game that is unfun to play and thus doesn't sell, even tho it runs fast...
The best-practice solution would be to write a barely optimized ugly prototype to make sure the core idea is fun, then throw away the prototype and write the "real" game. But of course that's not always how reality works
> not always how reality works
yep. The stakeholder (who is paying the money) asks why the prototype can't just be "fixed up" and be sold for money, instead of paying for more dev time to rewrite. There's no answer that they can be satisfied with.
From a causal glance, isn't your code limited by the amount of available memory?
Which could be totally useful in itself, but not even close to what "sort" is doing.
Did you run sort with a buffer size larger than the data? Your specialized one-pass program is likely faster, but at least the numbers would mean something.
That said, I don't see what is over-engineered here. It's pretty straightforward and easy to read.
> using csv (serde) for writing leads to some big gains
Could you explain that, if you have the time? Is that for writing the output lines? Is actual CSV functionality used? That crate says "Fast CSV parsing with support for serde", so I'm especially confused how that helps with writing.
Yes, it’s used just for writing
How often is "count the unique lines of a file" a realistic task for others out there, and how big of files do y'all need to process and why?
Reasonably often in ETL type tasks.
I created "unic" a number of years ago because I had need to get the unique lines from a giant file without losing the order they initially appeared. It achieves this using a Cuckoo Filter so it's pretty dang quick about it, faster than sorting a large file in memory for sure.
https://github.com/donatj/unic
Note that by default sort command has a pretty low memory usage and spills to disk. You can improve the throughput quite a bit by increasing the allowed memory usage: --buffer-size=SIZE
Storage, strings, sorting, counting, bioinformatics... I got nerd-sniped! Can't resist a shameless plug here :)
Looking at the code, there are a few things I would consider optimizing. I'd start by trying (my) StringZilla for hashing and sorting.
HashBrown collections under the hood use aHash, which is an excellent hash function, but on both short and long inputs, on new CPUs, StringZilla seems faster [0]:
A similar story with sorting strings. Inner loops of arbitrary length string comparisons often dominate such workloads. Doing it in a more Radix-style fashion can 4x your performance [1]: Bear in mind that "compares/s" is a made-up metric here; in reality, I'm comparing from the duration.[0] https://github.com/ashvardanian/StringWars?tab=readme-ov-fil...
[1] https://github.com/ashvardanian/StringWars?tab=readme-ov-fil...
> I am measuring the performance of equivalent cat <file> | sort | uniq -c | sort -n functionality.
It likely won’t matter much here, but invoking cat is unnecessary.
will do the job just fine. GNU’s sort also has a few flags controlling buffer size and parallelism. Those may matter more (see https://www.gnu.org/software/coreutils/manual/html_node/sort...)People often use sort | uniq when they don't want to load a bunch of lines into memory. That's why it's slow. It uses files and allocates very little memory by default. The pros? You can sort hundreds of gigabytes of data.
This Rust implementation uses hashmap, if you have a lot of unique values, you will need a lot of RAM.
I thought my mmuniq holds the crown!
https://blog.cloudflare.com/when-bloom-filters-dont-bloom/
https://github.com/majek/mmuniq
I believe, given its reliance on the Bloom filter, that it doesn't actually report occurrences count?
This reminds me of a program I wrote to do the same thing that wc -L does, except a lot faster. I had to run it on a corpus of data that was many gigabytes (terabytes) in size, far too big to fit in RAM. MIT license.
https://github.com/JoshRodd/mll
I built something similarly a few years ago for `sort | uniq -d` using sketches. The downside is you need two passes, but still it's overall faster than sorting: https://github.com/mpdn/sketch-duplicates
I use questions around this pipeline in interviews. As soon as people say they'd write a Python program to sort a file, they get rejected.
Arguably, this will result in a slower result in most cases, but the reason for the rejection is wasting developer time (not to mention time to test for correctness) to re-develop something that is already available in the OS.
I'm sure you're doing it in a sensible way, but... the thought that played out in my head went a little like this {apologies, I'm not well today, this might be a fever dream}:
Interviewer: "Welcome to your hammer-stuff interview, hope you're ready to show your hammering skills, we see from your resumé you've been hammering for a while now."
Schmuck: "Yeah, I just love to make my bosses rich by hammering things!"
Interviewer: "Great, let's get right into the hammer use ... here's a screw, show me how you'd hammer that."
Schmuck: (Thinks - "Well, of course, I wouldn't normally hammer those; but I know interviewers like to see weird things hammered! Here goes...")
[Hammering commences]
Interviewer: "Well thanks for flying in, but you've failed the interview. We were very impressed that you demonstrated some of the best hammering we've ever seen. But, of course, wanted to see you use a screwdriver here in your hammering interview at We Hammer All The Things."
One of the cooler Unix command utilities is tsort, which performs a topological sort. Basically you give it a list of items (first word in each line) and their dependencies (subsequent words on each line) and it sorts them accordingly, similar to how, e.g., Make builds a graph of targets and dependencies to run recipes in the correct order. https://en.wikipedia.org/wiki/Tsort https://pubs.opengroup.org/onlinepubs/9799919799/utilities/t...
However, I've never found a use for it. Apparently it was written for the Version 7 Unix build system to sort libraries for passing to the linker. And still used.[1][2] But of the few times I've needed a topological sort, it was part of a much larger problem where shell scripting was inappropriate, and implementing it from scratch using a typical sort routine isn't that difficult. Still, I'm waiting for an excuse to use it someday, hopefully in something high visibility so I can blow people's minds.
[1] https://github.com/openbsd/src/blob/17290de/share/mk/bsd.lib... [2] https://github.com/NetBSD/src/blob/7d8184e/share/mk/bsd.lib....
Sounds like it’s intended to be used to schedule jobs, or complex builds.
Your loss, not theirs. Lots of good developers are not expert at unix commands, many of which spend most of their time on Windows. They may be "wasting" 2 minutes on this specific task with their "inefficient" method, but they may perform much better on other tasks, to the point that 2 minutes saved here is nothing.
Not to mention that these days people often ask ChatGPT "what's the best way to do this" before proceeding, and whatever you ask in interviews is completely irrelevant.
It is exactly for these reasons we never ask such questions in our interviews. There are much more important aspects of a candidate to evaluate.
This depends on the context... If a file is pretty small, I would avoid sort pipes when there is a Python codebase. It's only useful when the files are pretty big (1-5GB+)
They are tricky and not very portable. Sorting depends on locales and the GNU tools implementation.
you can develop just as fast or even faster with python once you develop a good enough utility library for it.
For example my python interpreter imports my custom List and Path classes and I could just do the following to get the same result:
List(List(Path("filepath").read_text_file().splitlines()).group_by_key(lambda x:x).items()).map(lambda x:(len(x[1]),x[0])).sorted()
and if used often enough, it could made an utility method:
Path("filepath").read_sorted_by_most_common()
So I find it shortsighted to reject someone based on that without giving them a chance to explain their reasoning.
I think generally people really underestimate how much more productive you can be with a good utility library.
> For example my python interpreter imports my custom List and Path classes and I could just do the following to get the same result:
... But I don't know why you would, because with builtins and the standard library you can already do > and if used often enough, it could made an utility method:Sure, but you can do that for any functionality in any practical language.
> Wasting developer time
What is the definition of wasting developer time? If a developer takes a 2 hours break to recover mental power and avoid burnout, is it considered time wasted?
why no mention of awk ? awk '!a[$0]++'
It's shame that we normalized sorting twice for these cases.
Somebody, implement `uniq --global` switch already. Put it into your resume, it's a legitimate thing to brag about.
Neat!
Are there any tools that tolerate slight mismatches across lines while combining them (e.g., a timestamp, or only one text word changing)?
I attempted this with a vector DB, but the embeddings calculation for millions of lines is prohibitive, especially on CPU.
Looks like the impl uses a HashMap. I'd be curious about how a trie or some other specialized string data structure would compare here.
I'm curious how much faster this is compared to the rust uutils coreutils ports of sort and uniq
The win here might be using HashMap to avoid having to sort all entries. Then sorting at the end instead. What's the ratio of duplicates in the benchmark input?
There is no text encoding processing, so this only works for single byte encodings. That probably speeds it up a little bit.
Depending on the size of the benchmark input, sort(1) may have done disk-based sorting. What's the size of the benchmark input?
To me, the really big win would be _not_ to have to sort at all. Have an option to keep first or last duplicate and remove all others while keeping line order is usually what I need.
I've written this kind of function so many times it's not funny. I usually want something that is fed from an iterator, removes duplicates, and yields values as soon as possible.
That's easy to do if you're keeping the first duplicate. It becomes complex if you're keeping the last duplicate, because every time you find a duplicate you have to go back through your "output" and delete the earlier occurrence.
You could do an annotating pass for learning which of each line is the last one, and then a followup pass for printing (or otherwise echoing) only the lines that are the last of their kind. Technically still faster than sorting.
You could also keep the information on last occurrence of each line in the hash map (that's where it's going to be anyway), and once you're done with the first pass sort the map by earliest last occurrence. That will get you the lines in the right order, but you had to do a sort. If the original input was mostly duplicates, this is probably a better approach.
You could also track last occurrence of each line in a separate self-sorting structure. Now you have slightly more overhead while processing the input, and sorting the output is free.
Why does this test against sort | uniq | sort? It’s kind of weird to sort twice no?
The first "sort" sorts the input lines lexicographically (which is required for "uniq" to work); the second "sort" sorts the output of "uniq" numerically (so that lines are ordered from most-frequent to least-frequent):
It's something I've done myself in the past. First sort is because it needs to be sorted for uniq -c to count it proper, second sort because uniq doesn't always give the output in the right order.
more precisely, uniq produces output in the same order as the input to it, just collapsing runs / run-length encoding it