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-Your friendly guide to understanding the performance characteristics of this
-crate.
-
-This guide assumes some familiarity with the public API of this crate, which
-can be found here: https://docs.rs/regex
-
-## Theory vs. Practice
-
-One of the design goals of this crate is to provide worst case linear time
-behavior with respect to the text searched using finite state automata. This
-means that, *in theory*, the performance of this crate is much better than most
-regex implementations, which typically use backtracking which has worst case
-exponential time.
-
-For example, try opening a Python interpreter and typing this:
-
- >>> import re
- >>> re.search('(a*)*c', 'a' * 30).span()
-
-I'll wait.
-
-At some point, you'll figure out that it won't terminate any time soon. ^C it.
-
-The promise of this crate is that *this pathological behavior can't happen*.
-
-With that said, just because we have protected ourselves against worst case
-exponential behavior doesn't mean we are immune from large constant factors
-or places where the current regex engine isn't quite optimal. This guide will
-detail those cases and provide guidance on how to avoid them, among other
-bits of general advice.
-
-## Thou Shalt Not Compile Regular Expressions In A Loop
-
-**Advice**: Use `lazy_static` to amortize the cost of `Regex` compilation.
-
-Don't do it unless you really don't mind paying for it. Compiling a regular
-expression in this crate is quite expensive. It is conceivable that it may get
-faster some day, but I wouldn't hold out hope for, say, an order of magnitude
-improvement. In particular, compilation can take any where from a few dozen
-microseconds to a few dozen milliseconds. Yes, milliseconds. Unicode character
-classes, in particular, have the largest impact on compilation performance. At
-the time of writing, for example, `\pL{100}` takes around 44ms to compile. This
-is because `\pL` corresponds to every letter in Unicode and compilation must
-turn it into a proper automaton that decodes a subset of UTF-8 which
-corresponds to those letters. Compilation also spends some cycles shrinking the
-size of the automaton.
-
-This means that in order to realize efficient regex matching, one must
-*amortize the cost of compilation*. Trivially, if a call to `is_match` is
-inside a loop, then make sure your call to `Regex::new` is *outside* that loop.
-
-In many programming languages, regular expressions can be conveniently defined
-and compiled in a global scope, and code can reach out and use them as if
-they were global static variables. In Rust, there is really no concept of
-life-before-main, and therefore, one cannot utter this:
-
- static MY_REGEX: Regex = Regex::new("...").unwrap();
-
-Unfortunately, this would seem to imply that one must pass `Regex` objects
-around to everywhere they are used, which can be especially painful depending
-on how your program is structured. Thankfully, the
-[`lazy_static`](https://crates.io/crates/lazy_static)
-crate provides an answer that works well:
-
- use lazy_static::lazy_static;
- use regex::Regex;
-
- fn some_helper_function(text: &str) -> bool {
- lazy_static! {
- static ref MY_REGEX: Regex = Regex::new("...").unwrap();
- }
- MY_REGEX.is_match(text)
- }
-
-In other words, the `lazy_static!` macro enables us to define a `Regex` *as if*
-it were a global static value. What is actually happening under the covers is
-that the code inside the macro (i.e., `Regex::new(...)`) is run on *first use*
-of `MY_REGEX` via a `Deref` impl. The implementation is admittedly magical, but
-it's self contained and everything works exactly as you expect. In particular,
-`MY_REGEX` can be used from multiple threads without wrapping it in an `Arc` or
-a `Mutex`. On that note...
-
-## Using a regex from multiple threads
-
-**Advice**: The performance impact from using a `Regex` from multiple threads
-is likely negligible. If necessary, clone the `Regex` so that each thread gets
-its own copy. Cloning a regex does not incur any additional memory overhead
-than what would be used by using a `Regex` from multiple threads
-simultaneously. *Its only cost is ergonomics.*
-
-It is supported and encouraged to define your regexes using `lazy_static!` as
-if they were global static values, and then use them to search text from
-multiple threads simultaneously.
-
-One might imagine that this is possible because a `Regex` represents a
-*compiled* program, so that any allocation or mutation is already done, and is
-therefore read-only. Unfortunately, this is not true. Each type of search
-strategy in this crate requires some kind of mutable scratch space to use
-*during search*. For example, when executing a DFA, its states are computed
-lazily and reused on subsequent searches. Those states go into that mutable
-scratch space.
-
-The mutable scratch space is an implementation detail, and in general, its
-mutation should not be observable from users of this crate. Therefore, it uses
-interior mutability. This implies that `Regex` can either only be used from one
-thread, or it must do some sort of synchronization. Either choice is
-reasonable, but this crate chooses the latter, in particular because it is
-ergonomic and makes use with `lazy_static!` straight forward.
-
-Synchronization implies *some* amount of overhead. When a `Regex` is used from
-a single thread, this overhead is negligible. When a `Regex` is used from
-multiple threads simultaneously, it is possible for the overhead of
-synchronization from contention to impact performance. The specific cases where
-contention may happen is if you are calling any of these methods repeatedly
-from multiple threads simultaneously:
-
-* shortest_match
-* is_match
-* find
-* captures
-
-In particular, every invocation of one of these methods must synchronize with
-other threads to retrieve its mutable scratch space before searching can start.
-If, however, you are using one of these methods:
-
-* find_iter
-* captures_iter
-
-Then you may not suffer from contention since the cost of synchronization is
-amortized on *construction of the iterator*. That is, the mutable scratch space
-is obtained when the iterator is created and retained throughout its lifetime.
-
-## Only ask for what you need
-
-**Advice**: Prefer in this order: `is_match`, `find`, `captures`.
-
-There are three primary search methods on a `Regex`:
-
-* is_match
-* find
-* captures
-
-In general, these are ordered from fastest to slowest.
-
-`is_match` is fastest because it doesn't actually need to find the start or the
-end of the leftmost-first match. It can quit immediately after it knows there
-is a match. For example, given the regex `a+` and the haystack, `aaaaa`, the
-search will quit after examining the first byte.
-
-In contrast, `find` must return both the start and end location of the
-leftmost-first match. It can use the DFA matcher for this, but must run it
-forwards once to find the end of the match *and then run it backwards* to find
-the start of the match. The two scans and the cost of finding the real end of
-the leftmost-first match make this more expensive than `is_match`.
-
-`captures` is the most expensive of them all because it must do what `find`
-does, and then run either the bounded backtracker or the Pike VM to fill in the
-capture group locations. Both of these are simulations of an NFA, which must
-spend a lot of time shuffling states around. The DFA limits the performance hit
-somewhat by restricting the amount of text that must be searched via an NFA
-simulation.
-
-One other method not mentioned is `shortest_match`. This method has precisely
-the same performance characteristics as `is_match`, except it will return the
-end location of when it discovered a match. For example, given the regex `a+`
-and the haystack `aaaaa`, `shortest_match` may return `1` as opposed to `5`,
-the latter of which being the correct end location of the leftmost-first match.
-
-## Literals in your regex may make it faster
-
-**Advice**: Literals can reduce the work that the regex engine needs to do. Use
-them if you can, especially as prefixes.
-
-In particular, if your regex starts with a prefix literal, the prefix is
-quickly searched before entering the (much slower) regex engine. For example,
-given the regex `foo\w+`, the literal `foo` will be searched for using
-Boyer-Moore. If there's no match, then no regex engine is ever used. Only when
-there's a match is the regex engine invoked at the location of the match, which
-effectively permits the regex engine to skip large portions of a haystack.
-If a regex is comprised entirely of literals (possibly more than one), then
-it's possible that the regex engine can be avoided entirely even when there's a
-match.
-
-When one literal is found, Boyer-Moore is used. When multiple literals are
-found, then an optimized version of Aho-Corasick is used.
-
-This optimization is in particular extended quite a bit in this crate. Here are
-a few examples of regexes that get literal prefixes detected:
-
-* `(foo|bar)` detects `foo` and `bar`
-* `(a|b)c` detects `ac` and `bc`
-* `[ab]foo[yz]` detects `afooy`, `afooz`, `bfooy` and `bfooz`
-* `a?b` detects `a` and `b`
-* `a*b` detects `a` and `b`
-* `(ab){3,6}` detects `ababab`
-
-Literals in anchored regexes can also be used for detecting non-matches very
-quickly. For example, `^foo\w+` and `\w+foo$` may be able to detect a non-match
-just by examining the first (or last) three bytes of the haystack.
-
-## Unicode word boundaries may prevent the DFA from being used
-
-**Advice**: In most cases, `\b` should work well. If not, use `(?-u:\b)`
-instead of `\b` if you care about consistent performance more than correctness.
-
-It's a sad state of the current implementation. At the moment, the DFA will try
-to interpret Unicode word boundaries as if they were ASCII word boundaries.
-If the DFA comes across any non-ASCII byte, it will quit and fall back to an
-alternative matching engine that can handle Unicode word boundaries correctly.
-The alternate matching engine is generally quite a bit slower (perhaps by an
-order of magnitude). If necessary, this can be ameliorated in two ways.
-
-The first way is to add some number of literal prefixes to your regular
-expression. Even though the DFA may not be used, specialized routines will
-still kick in to find prefix literals quickly, which limits how much work the
-NFA simulation will need to do.
-
-The second way is to give up on Unicode and use an ASCII word boundary instead.
-One can use an ASCII word boundary by disabling Unicode support. That is,
-instead of using `\b`, use `(?-u:\b)`. Namely, given the regex `\b.+\b`, it
-can be transformed into a regex that uses the DFA with `(?-u:\b).+(?-u:\b)`. It
-is important to limit the scope of disabling the `u` flag, since it might lead
-to a syntax error if the regex could match arbitrary bytes. For example, if one
-wrote `(?-u)\b.+\b`, then a syntax error would be returned because `.` matches
-any *byte* when the Unicode flag is disabled.
-
-The second way isn't appreciably different than just using a Unicode word
-boundary in the first place, since the DFA will speculatively interpret it as
-an ASCII word boundary anyway. The key difference is that if an ASCII word
-boundary is used explicitly, then the DFA won't quit in the presence of
-non-ASCII UTF-8 bytes. This results in giving up correctness in exchange for
-more consistent performance.
-
-N.B. When using `bytes::Regex`, Unicode support is disabled by default, so one
-can simply write `\b` to get an ASCII word boundary.
-
-## Excessive counting can lead to exponential state blow up in the DFA
-
-**Advice**: Don't write regexes that cause DFA state blow up if you care about
-match performance.
-
-Wait, didn't I say that this crate guards against exponential worst cases?
-Well, it turns out that the process of converting an NFA to a DFA can lead to
-an exponential blow up in the number of states. This crate specifically guards
-against exponential blow up by doing two things:
-
-1. The DFA is computed lazily. That is, a state in the DFA only exists in
- memory if it is visited. In particular, the lazy DFA guarantees that *at
- most* one state is created for every byte of input. This, on its own,
- guarantees linear time complexity.
-2. Of course, creating a new state for *every* byte of input means that search
- will go incredibly slow because of very large constant factors. On top of
- that, creating a state for every byte in a large haystack could result in
- exorbitant memory usage. To ameliorate this, the DFA bounds the number of
- states it can store. Once it reaches its limit, it flushes its cache. This
- prevents reuse of states that it already computed. If the cache is flushed
- too frequently, then the DFA will give up and execution will fall back to
- one of the NFA simulations.
-
-In effect, this crate will detect exponential state blow up and fall back to
-a search routine with fixed memory requirements. This does, however, mean that
-searching will be much slower than one might expect. Regexes that rely on
-counting in particular are strong aggravators of this behavior. For example,
-matching `[01]*1[01]{20}$` against a random sequence of `0`s and `1`s.
-
-In the future, it may be possible to increase the bound that the DFA uses,
-which would allow the caller to choose how much memory they're willing to
-spend.
-
-## Resist the temptation to "optimize" regexes
-
-**Advice**: This ain't a backtracking engine.
-
-An entire book was written on how to optimize Perl-style regular expressions.
-Most of those techniques are not applicable for this library. For example,
-there is no problem with using non-greedy matching or having lots of
-alternations in your regex.