rustc will use rust-lld by default on x86_64-unknown-linux-gnu on nightly to significantly reduce linking times.rustc will use rust-lld by default on x86_64-unknown-linux-gnu on nightly to significantly reduce linking times.

rust-lld: How It Can Give You Faster Linking Times

TL;DR: rustc will use rust-lld by default on x86_64-unknown-linux-gnu on nightly to significantly reduce linking times.

Some context

Linking time is often a big part of compilation time. When rustc needs to build a binary or a shared library, it will usually call the default linker installed on the system to do that (this can be changed on the command-line or by the target for which the code is compiled).

\ The linkers do an important job, with concerns about stability, backwards-compatibility and so on. For these and other reasons, on the most popular operating systems they usually are older programs, designed when computers only had a single core. So, they usually tend to be slow on a modern machine. For example, when building ripgrep 13 in debug mode on Linux, roughly half of the time is actually spent in the linker.

\ There are different linkers, however, and the usual advice to improve linking times is to use one of these newer and faster linkers, like LLVM's lld or Rui Ueyama's mold.

\ Some of Rust's wasm and aarch64 targets already use lld by default. When using rustup, rustc ships with a version of lld for this purpose. When CI builds LLVM to use in the compiler, it also builds the linker and packages it. It's referred to as rust-lld to avoid colliding with any lld already installed on the user's machine.

\ Since improvements to linking times are substantial, it would be a good default to use in the most popular targets. This has been discussed for a long time, for example in issues #39915 and #71515, and rustc already offers nightly flags to use rust-lld.

\ By now, we believe we've done all the internal testing that we could, on CI, crater, and our benchmarking infrastructure. We would now like to expand testing and gather real-world feedback and use-cases. Therefore, we will enable rust-lld to be the linker used by default on x86_64-unknown-linux-gnu for nightly builds.

Benefits

While this also enables the compiler to use more linker features in the future, the most immediate benefit is much improved linking times.

\ Here are more details from the ripgrep example mentioned above: linking is reduced 7x, resulting in a 40% reduction in end-to-end compilation times.

Before/after comparison of a ripgrep debug build

Most binaries should see some improvements here, but it's especially significant with e.g. bigger binaries, or when involving debuginfo. These usually see bottlenecks in the linker.

\ Here's a link to the complete results from our benchmarks.

\ If testing goes well, we can then stabilize using this faster linker by default for x86_64-unknown-linux-gnu users, before maybe looking at other targets.

Possible drawbacks

From our prior testing, we don't really expect issues to happen in practice. It is a drop-in replacement for the vast majority of cases, but lld is not bug-for-bug compatible with GNU ld.

\ In any case, using rust-lld can be disabled if any problem occurs: use the -Z linker-features=-lld flag to revert to using the system's default linker.

\ Some crates somehow relying on these differences could need additional link args. For example, we saw <20 crates in the crater run failing to link because of a different default about encapsulation symbols: these could require -Clink-arg=-Wl,-z,nostart-stop-gc to match the legacy GNU ld behavior.

\ Some of the big gains in performance come from parallelism, which could be undesirable in resource-constrained environments.

Summary

rustc will use rust-lld on x86_64-unknown-linux-gnu nightlies, for much improved linking times, starting in tomorrow's rustup nightly (nightly-2024-05-18). Let us know if you encounter problems, by opening an issue on GitHub.

\ If that happens, you can revert to the default linker with the -Z linker-features=-lld flag. Either by adding it to the usual RUSTFLAGS environment variable, or to a project's .cargo/config.toml configuration file, like so:

[target.x86_64-unknown-linux-gnu] rustflags = ["-Zlinker-features=-lld"] 

Rémy Rakic on behalf of the compiler performance working group

\ Also published here

\ Photo by Antoine Gravier on Unsplash

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Turn lengthy earnings call transcripts into one-page insights using the Financial Modeling Prep APIPhoto by Bich Tran Earnings calls are packed with insights. They tell you how a company performed, what management expects in the future, and what analysts are worried about. The challenge is that these transcripts often stretch across dozens of pages, making it tough to separate the key takeaways from the noise. With the right tools, you don’t need to spend hours reading every line. By combining the Financial Modeling Prep (FMP) API with Groq’s lightning-fast LLMs, you can transform any earnings call into a concise summary in seconds. The FMP API provides reliable access to complete transcripts, while Groq handles the heavy lifting of distilling them into clear, actionable highlights. In this article, we’ll build a Python workflow that brings these two together. You’ll see how to fetch transcripts for any stock, prepare the text, and instantly generate a one-page summary. 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