From 36d22d82aa202bb199967e9512281e9a53db42c9 Mon Sep 17 00:00:00 2001 From: Daniel Baumann Date: Sun, 7 Apr 2024 21:33:14 +0200 Subject: Adding upstream version 115.7.0esr. Signed-off-by: Daniel Baumann --- third_party/rust/triple_buffer/README.md | 222 +++++++++++++++++++++++++++++++ 1 file changed, 222 insertions(+) create mode 100644 third_party/rust/triple_buffer/README.md (limited to 'third_party/rust/triple_buffer/README.md') diff --git a/third_party/rust/triple_buffer/README.md b/third_party/rust/triple_buffer/README.md new file mode 100644 index 0000000000..512bd1d574 --- /dev/null +++ b/third_party/rust/triple_buffer/README.md @@ -0,0 +1,222 @@ +# Triple buffering in Rust + +[![On crates.io](https://img.shields.io/crates/v/triple_buffer.svg)](https://crates.io/crates/triple_buffer) +[![On docs.rs](https://docs.rs/triple_buffer/badge.svg)](https://docs.rs/triple_buffer/) +[![Continuous Integration](https://github.com/HadrienG2/triple-buffer/workflows/Continuous%20Integration/badge.svg)](https://github.com/HadrienG2/triple-buffer/actions?query=workflow%3A%22Continuous+Integration%22) +![Requires rustc 1.36+](https://img.shields.io/badge/rustc-1.36+-red.svg) + + +## What is this? + +This is an implementation of triple buffering written in Rust. You may find it +useful for the following class of thread synchronization problems: + +- There is one producer thread and one consumer thread +- The producer wants to update a shared memory value periodically +- The consumer wants to access the latest update from the producer at any time + +The simplest way to use it is as follows: + +```rust +// Create a triple buffer: +let buf = TripleBuffer::new(0); + +// Split it into an input and output interface, to be respectively sent to +// the producer thread and the consumer thread: +let (mut buf_input, mut buf_output) = buf.split(); + +// The producer can move a value into the buffer at any time +buf_input.write(42); + +// The consumer can access the latest value from the producer at any time +let latest_value_ref = buf_output.read(); +assert_eq!(*latest_value_ref, 42); +``` + +In situations where moving the original value away and being unable to +modify it on the consumer's side is too costly, such as if creating a new +value involves dynamic memory allocation, you can use a lower-level API +which allows you to access the producer and consumer's buffers in place +and to precisely control when updates are propagated: + +```rust +// Create and split a triple buffer +use triple_buffer::TripleBuffer; +let buf = TripleBuffer::new(String::with_capacity(42)); +let (mut buf_input, mut buf_output) = buf.split(); + +// Mutate the input buffer in place +{ + // Acquire a reference to the input buffer + let input = buf_input.input_buffer(); + + // In general, you don't know what's inside of the buffer, so you should + // always reset the value before use (this is a type-specific process). + input.clear(); + + // Perform an in-place update + input.push_str("Hello, "); +} + +// Publish the above input buffer update +buf_input.publish(); + +// Manually fetch the buffer update from the consumer interface +buf_output.update(); + +// Acquire a mutable reference to the output buffer +let output = buf_output.output_buffer(); + +// Post-process the output value before use +output.push_str("world!"); +``` + + +## Give me details! How does it compare to alternatives? + +Compared to a mutex: + +- Only works in single-producer, single-consumer scenarios +- Is nonblocking, and more precisely bounded wait-free. Concurrent accesses will + be slowed down by cache contention, but no deadlock, livelock, or thread + scheduling induced slowdown is possible. +- Allows the producer and consumer to work simultaneously +- Uses a lot more memory (3x payload + 3x bytes vs 1x payload + 1 bool) +- Does not allow in-place updates, as the producer and consumer do not access + the same memory location +- Should be slower if updates are rare and in-place updates are much more + efficient than moves, comparable or faster otherwise. + * Mutexes and triple buffering have comparably low overhead on the happy path + (checking a flag), which is systematically taken when updates are rare. In + this scenario, in-place updates can give mutexes a performance advantage. + Where triple buffering shines is when a reader often collides with a writer, + which is handled very poorly by mutexes. + +Compared to the read-copy-update (RCU) primitive from the Linux kernel: + +- Only works in single-producer, single-consumer scenarios +- Has higher dirty read overhead on relaxed-memory architectures (ARM, POWER...) +- Does not require accounting for reader "grace periods": once the reader has + gotten access to the latest value, the synchronization transaction is over +- Does not use the compare-and-swap hardware primitive on update, which is + inefficient by design as it forces its users to retry transactions in a loop. +- Does not suffer from the ABA problem, allowing much simpler code +- Allocates memory on initialization only, rather than on every update +- May use more memory (3x payload + 3x bytes vs 1x pointer + amount of + payloads and refcounts that depends on the readout and update pattern) +- Should be slower if updates are rare, faster if updates are frequent + * The RCU's happy reader path is slightly faster (no flag to check), but its + update procedure is much more involved and costly. + +Compared to sending the updates on a message queue: + +- Only works in single-producer, single-consumer scenarios (queues can work in + other scenarios, although the implementations are much less efficient) +- Consumer only has access to the latest state, not the previous ones +- Consumer does not *need* to get through every previous state +- Is nonblocking AND uses bounded amounts of memory (with queues, it's a choice, + unless you use one of those evil queues that silently drop data when full) +- Can transmit information in a single move, rather than two +- Should be faster for any compatible use case. + * Queues force you to move data twice, once in, once out, which will incur a + significant cost for any nontrivial data. If the inner data requires + allocation, they force you to allocate for every transaction. By design, + they force you to store and go through every update, which is not useful + when you're only interested in the latest version of the data. + +In short, triple buffering is what you're after in scenarios where a shared +memory location is updated frequently by a single writer, read by a single +reader who only wants the latest version, and you can spare some RAM. + +- If you need multiple producers, look somewhere else +- If you need multiple consumers, you may be interested in my related "SPMC + buffer" work, which basically extends triple buffering to multiple consumers +- If you can't tolerate the RAM overhead or want to update the data in place, + try a Mutex instead (or possibly an RWLock) +- If the shared value is updated very rarely (e.g. every second), try an RCU +- If the consumer must get every update, try a message queue + + +## How do I know your unsafe lock-free code is working? + +By running the tests, of course! Which is unfortunately currently harder than +I'd like it to be. + +First of all, we have sequential tests, which are very thorough but obviously +do not check the lock-free/synchronization part. You run them as follows: + + $ cargo test + +Then we have concurrent tests where, for example, a reader thread continuously +observes the values from a rate-limited writer thread, and makes sure that he +can see every single update without any incorrect value slipping in the middle. + +These tests are more important, but also harder to run because one must first +check some assumptions: + +- The testing host must have at least 2 physical CPU cores to test all possible + race conditions +- No other code should be eating CPU in the background. Including other tests. +- As the proper writing rate is system-dependent, what is configured in this + test may not be appropriate for your machine. +- You must test in release mode, as compiler optimizations tend to create more + opportunities for race conditions. + +Taking this and the relatively long run time (~10-20 s) into account, the +concurrent tests are ignored by default. To run them, make sure nothing is +eating CPU in the background and do: + + $ cargo test --release -- --ignored --nocapture --test-threads=1 + +Finally, we have benchmarks, which allow you to test how well the code is +performing on your machine. We are now using `criterion` for said benchmarks, +which seems that to run them, you can simply do: + + $ cargo bench + +These benchmarks exercise the worst-case scenario of `u8` payloads, where +synchronization overhead dominates as the cost of reading and writing the +actual data is only 1 cycle. In real-world use cases, you will spend more time +updating buffers and less time synchronizing them. + +However, due to the artificial nature of microbenchmarking, the benchmarks must +exercise two scenarios which are respectively overly optimistic and overly +pessimistic: + +1. In uncontended mode, the buffer input and output reside on the same CPU core, + which underestimates the overhead of transferring modified cache lines from + the L1 cache of the source CPU to that of the destination CPU. + * This is not as bad as it sounds, because you will pay this overhead no + matter what kind of thread synchronization primitive you use, so we're not + hiding `triple-buffer` specific overhead here. All you need to do is to + ensure that when comparing against another synchronization primitive, that + primitive is benchmarked in a similar way. +2. In contended mode, the benchmarked half of the triple buffer is operating + under maximal load from the other half, which is much more busy than what is + actually going to be observed in real-world workloads. + * In this configuration, what you're essentially measuring is the performance + of your CPU's cache line locking protocol and inter-CPU core data + transfers under the shared data access pattern of `triple-buffer`. + +Therefore, consider these benchmarks' timings as orders of magnitude of the best +and the worst that you can expect from `triple-buffer`, where actual performance +will be somewhere inbetween these two numbers depending on your workload. + +On an Intel Core i3-3220 CPU @ 3.30GHz, typical results are as follows: + +* Clean read: 0.9 ns +* Write: 6.9 ns +* Write + dirty read: 19.6 ns +* Dirty read (estimated): 12.7 ns +* Contended write: 60.8 ns +* Contended read: 59.2 ns + + +## License + +This crate is distributed under the terms of the MPLv2 license. See the LICENSE +file for details. + +More relaxed licensing (Apache, MIT, BSD...) may also be negociated, in +exchange of a financial contribution. Contact me for details at +knights_of_ni AT gmx DOTCOM. -- cgit v1.2.3