• Stars
    star
    1,072
  • Rank 43,150 (Top 0.9 %)
  • Language
    C++
  • License
    Apache License 2.0
  • Created about 9 years ago
  • Updated 5 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

A low-level build system, used by Xcode and the Swift Package Manager

llbuild

A low-level build system.

llbuild is a set of libraries for building build systems. Unlike most build system projects which focus on the syntax for describing the build, llbuild is designed around a reusable, flexible, and scalable general purpose build engine capable of solving many "build system"-like problems. The project also includes additional libraries on top of that engine which provide support for constructing bespoke build systems (like swift build) or for building from Ninja manifests.

llbuild currently includes:

  • A flexible core engine capable of discovering new work on the fly.

  • Scalability for dependency graphs reaching millions of nodes.

  • Support for building Ninja manifests (e.g., for building LLVM, Clang, and Swift).

  • An llbuild-native build description format designed for extensibility.

  • Library-based design intended to support embedding and reuse.

Usage

The project currently produces three top-level products; llbuild, swift-build-tool, and libllbuild / llbuild.framework.

llbuild Command Line Tool

The llbuild tool provides a command line interface to various feature of the llbuild libraries. It has several subtools available, see llbuild --help for more information. The most important subtool is the Ninja build support:

Ninja Build Support

You can use llbuild to build Ninja-based projects using:

$ llbuild ninja build

This tool supports a subset of the command line arguments supported by Ninja itself, to allow it to be used as a compatible replacement, even by tools like CMake that depend on particular Ninja command line flags during their configuration process.

As a convenience, if you invoke llbuild via a symlink called ninja then it will automatically use this subtool. This supports installing llbuild as ninja into your PATH and then using it as an alternative to Ninja for building arbitrary projects (like LLVM, Clang, and Swift). This is also how we self-host llbuild (via the CMake Ninja generator).

The llbuild ninja subtool also provides additional commands which are primarily only useful for developers interested in working on the Ninja support. These commands allow testing the lexer, parser, and manifest loading components independently and are used as part of the test suite.

If you want to rep your use of llbuild in public, you can proudly leverage our conveniently provided sticker (PSD version adjacent). 😁

I'm not always a ninja, but when I am I'm an llbuild ninja.

Build Trace Files

Inspired by Buck, llbuild ninja supports a --profile PATH option to generate a Chromium trace for visualizing where time is spent during a build. For example, the following graph is for a build of llbuild itself:

llbuild build profile

swift-build-tool Command Line Tool

The swift-build-tool product is the command line interface to the build system used by the Swift Package Manager. It is built as part of the Swift project build and incorporated into the Swift language snapshots.

This tool is built on top of the BuildSystem library.

libllbuild Library

The libllbuild library exposes a C API for the llbuild libraries, which can be used directly by third-parties or to build additional language bindings. See bindings for example Swift and Python bindings that use this library.

This API is what is used, for example, in Xcode as the basis for the new build system introduced in Xcode 9.

Motivation

The design of llbuild is a continuation of the LLVM philosophy of applying library-based design to traditional developer tools. Clang has followed this approach to deliver a high performance compiler and assembler while also enabling new tools like clang-format or the libclang interfaces for code completion and indexing. However, the rigid command line interface between traditional build systems and the compiler still limits the optimizations and features which can be implemented in Clang.

llbuild is designed to allow construction of more feature rich build environments which integrate external tools -- like the compiler -- using APIs instead of command line interfaces. By allowing the build system and tools to communicate directly and to be co-designed, we believe we can unlock additional optimization opportunities and create more robust, easy-to-use build systems.

For more information, see A New Architecture for Building Software from the 2016 LLVM Developer's Conference.

Philosophy

In the abstract, build systems are used to perform a task while also being:

  • Incremental: Outputs should be efficiently rebuilt given a small change to the inputs, by leveraging the ability to save partial outputs from a prior build.

  • Consistent: Equivalent inputs should always produce the same result as building from clean.

  • Persistent: Results should be stored so that builds can be interrupted and resumed after failure without needing to redo the full computation.

  • Parallel & Efficient: It must be possible to perform independent elements of the computation in parallel, in order to compute the result as efficiently as possible.

When viewed in this light, it is clear that the core technology of a build system is applicable to any complex, long-running computation in which it is common for the user to only modify a small portion of the input before wanting the recompute the result. For example, a movie editor application will commonly need to rerender small portions of the overall movie in response to interactive edits in order to support preview of the final result. However, such applications frequently do not take full advantage of the ability to store and partially recompute the results because of the complexity of correctly managing the dependencies between parts of the computation.

Part of the goal in designing llbuild around a general purpose build engine is to allow its use in contexts which are not traditionally thought of as requiring a "build system".

Documentation

Technical documentation is available at llbuild.readthedocs.io.

Bug Reports

Bug reports should be filed in the issue tracker of swift-llbuild repository on GitHub.

Open Projects

llbuild is a work in progress. Some of the more significant open projects which we hope to tackle are:

  • Support for using file signatures instead of timestamps for change detection.

  • Support richer data types for communication between tasks.

    Tasks currently only compute a single scalar value as their result. We would like to support richer data types for tasks results, for example tasks should be able to compute sets of results, and have the engine automatically communicate the addition or removal of individual items in the set to downstream consumers.

  • Support a more sophisticated database implementation.

    The current implementation uses a SQLite3 database for storing build results. This was a pragmatic choice for bring up, but it can be a performance bottleneck for some applications, and we do not need the flexibility of a full SQL database. We would like to evaluate the tradeoffs of designing a custom solution for llbuild.

  • Support transparent distributed builds.

    We would like llbuild to have facilities for transparently distributing a build across an array of worker machines.

  • Support automatic auditing of build consistency.

    Few build systems diagnose problems effectively. Frequently, undeclared inputs or misbehaving tools can cause inconsistent build results. We would like llbuild to automatically diagnose these problems, for example by periodically or speculatively rebuilding items which are not expected to have changed and comparing the results.

  • Performance tuning of core engine queues.

    The core build engine does its work using a number of queues of work items, and locking for the subset which support concurrent manipulation. We would like to investigate moving the shared queues to using a lock-free data structure and to micro-optimize the queues in general, in order to support very fine-grained task subdivisions without negatively impacting performance.

FAQ

Q. Why does llbuild include some parts of LLVM?

A. As a low-level, embeddable component, we want llbuild itself to have a simple build process without any significant build time dependencies. However, we also wanted to take advantage of some of the data structures and support facilities that have been developed for LLVM. For now, our solution is to incorporate some parts of LLVM's Support libraries into the repository, with the hope that over time LLVM will either factor out those libraries in a way that makes it easier to reuse them, or that we will develop our own exclusive set of support data structures and utilities and drop use of the LLVM ones.

Q. Why does llbuild include Ninja support?

A. llbuild includes a Ninja compatibility layer which allows building projects which use Ninja manifests using the llbuild core engine. We developed this support as a proof of concept for the core engine, and as a way to bootstrap ourselves (we develop llbuild using the CMake Ninja generator and llbuild to build itself). This support is also valuable for allowing direct benchmarking comparisons of llbuild.

Our implementation of Ninja support also includes a separate library for programmatically loading Ninja manifests, which may prove useful to other projects wishing to use or manipulate Ninja files.

We intend to continue to maintain the Ninja support to keep compatibility with the main project.

Acknowledgements

llbuild is heavily influenced by modern build systems like Shake, Buck, and Ninja. We would particularly like to thank Neil Mitchell for his work describing the Shake algorithm which provided the inspiration for the mechanism llbuild uses to allow additional work to be discovered on the fly.

For similar projects, see Adapton and Salsa.

License

Copyright (c) 2014 - 2022 Apple Inc. and the Swift project authors. Licensed under Apache License v2.0 with Runtime Library Exception.

See https://swift.org/LICENSE.txt for license information.

See https://swift.org/CONTRIBUTORS.txt for Swift project authors.

More Repositories

1

swift

The Swift Programming Language
C++
66,491
star
2

ml-stable-diffusion

Stable Diffusion with Core ML on Apple Silicon
Python
16,831
star
3

swift-evolution

This maintains proposals for changes and user-visible enhancements to the Swift Programming Language.
Markdown
15,085
star
4

foundationdb

FoundationDB - the open source, distributed, transactional key-value store
C++
14,444
star
5

turicreate

Turi Create simplifies the development of custom machine learning models.
C++
11,197
star
6

darwin-xnu

The Darwin Kernel (mirror). This repository is a pure mirror and contributions are currently not accepted via pull-requests, please submit your contributions via https://developer.apple.com/bug-reporting/
C
10,558
star
7

pkl

A configuration as code language with rich validation and tooling.
Java
10,223
star
8

swift-package-manager

The Package Manager for the Swift Programming Language
Swift
9,637
star
9

ml-ferret

Python
8,415
star
10

swift-nio

Event-driven network application framework for high performance protocol servers & clients, non-blocking.
Swift
7,274
star
11

corenet

CoreNet: A library for training deep neural networks
Jupyter Notebook
6,968
star
12

swift-algorithms

Commonly used sequence and collection algorithms for Swift
Swift
5,885
star
13

swift-corelibs-foundation

The Foundation Project, providing core utilities, internationalization, and OS independence
C
5,269
star
14

swift-protobuf

Plugin and runtime library for using protobuf with Swift
Swift
4,561
star
15

coremltools

Core ML tools contain supporting tools for Core ML model conversion, editing, and validation.
Python
4,401
star
16

password-manager-resources

A place for creators and users of password managers to collaborate on resources to make password management better.
JavaScript
4,144
star
17

ml-mgie

Python
3,853
star
18

tensorflow_macos

TensorFlow for macOS 11.0+ accelerated using Apple's ML Compute framework.
Shell
3,672
star
19

swift-collections

Commonly used data structures for Swift
Swift
3,651
star
20

ml-depth-pro

Depth Pro: Sharp Monocular Metric Depth in Less Than a Second.
Python
3,436
star
21

swift-argument-parser

Straightforward, type-safe argument parsing for Swift
Swift
3,289
star
22

sourcekit-lsp

Language Server Protocol implementation for Swift and C-based languages
Swift
3,160
star
23

swift-syntax

A set of Swift libraries for parsing, inspecting, generating, and transforming Swift source code.
Swift
3,064
star
24

swift-log

A Logging API for Swift
Swift
2,931
star
25

swift-async-algorithms

Async Algorithms for Swift
Swift
2,895
star
26

swift-markdown

A Swift package for parsing, building, editing, and analyzing Markdown documents.
Swift
2,669
star
27

ml-ane-transformers

Reference implementation of the Transformer architecture optimized for Apple Neural Engine (ANE)
Python
2,527
star
28

swift-corelibs-libdispatch

The libdispatch Project, (a.k.a. Grand Central Dispatch), for concurrency on multicore hardware
C
2,467
star
29

HomeKitADK

C
2,456
star
30

swift-format

Formatting technology for Swift source code
Swift
2,341
star
31

swift-foundation

The Foundation project
Swift
2,302
star
32

homebrew-apple

Ruby
2,240
star
33

cups

Apple CUPS Sources
C
1,926
star
34

axlearn

An Extensible Deep Learning Library
Python
1,840
star
35

ml-fastvit

This repository contains the official implementation of the research paper, "FastViT: A Fast Hybrid Vision Transformer using Structural Reparameterization" ICCV 2023
Python
1,826
star
36

ml-cvnets

CVNets: A library for training computer vision networks
Python
1,777
star
37

sample-food-truck

SwiftUI sample code from WWDC22
Swift
1,738
star
38

swift-numerics

Advanced mathematical types and functions for Swift
Swift
1,669
star
39

swift-book

The Swift Programming Language book
Markdown
1,666
star
40

ml-4m

4M: Massively Multimodal Masked Modeling
Python
1,590
star
41

swift-testing

A modern, expressive testing package for Swift
Swift
1,582
star
42

ml-hypersim

Hypersim: A Photorealistic Synthetic Dataset for Holistic Indoor Scene Understanding
Python
1,495
star
43

swift-crypto

Open-source implementation of a substantial portion of the API of Apple CryptoKit suitable for use on Linux platforms.
C
1,441
star
44

swift-openapi-generator

Generate Swift client and server code from an OpenAPI document.
Swift
1,423
star
45

swift-docker

Docker Official Image packaging for Swift
Dockerfile
1,331
star
46

ml-neuman

Official repository of NeuMan: Neural Human Radiance Field from a Single Video (ECCV 2022)
Python
1,256
star
47

swift-system

Low-level system calls and types for Swift
Swift
1,166
star
48

swift-docc

Documentation compiler that produces rich API reference documentation and interactive tutorials for your Swift framework or package.
Swift
1,140
star
49

swift-corelibs-xctest

The XCTest Project, A Swift core library for providing unit test support
Swift
1,138
star
50

swift-atomics

Low-level atomic operations for Swift
Swift
1,050
star
51

servicetalk

A networking framework that evolves with your application
Java
910
star
52

swift-http-types

Version-independent HTTP currency types for Swift
Swift
902
star
53

swift-llvm

LLVM
813
star
54

swift-driver

Swift compiler driver reimplementation in Swift
Swift
784
star
55

swift-protobuf-plugin

Moved to apple/swift-protobuf
755
star
56

unityplugins

C#
721
star
57

swift-embedded-examples

A collection of example projects using Embedded Swift
Swift
713
star
58

ml-mobileone

This repository contains the official implementation of the research paper, "An Improved One millisecond Mobile Backbone".
Swift
709
star
59

ml-aim

This repository provides the code and model checkpoints of the research paper: Scalable Pre-training of Large Autoregressive Image Models
Python
693
star
60

swift-lldb

This is the version of LLDB that supports the Swift programming language & REPL.
C++
674
star
61

swift-clang

C++
672
star
62

ml-gaudi

611
star
63

ml-mobileclip

This repository contains the official implementation of the research paper, "MobileCLIP: Fast Image-Text Models through Multi-Modal Reinforced Training" CVPR 2024
Python
605
star
64

swift-metrics

Metrics API for Swift
Swift
602
star
65

swift-distributed-actors

Peer-to-peer cluster implementation for Swift Distributed Actors
Swift
591
star
66

ARKitScenes

This repo accompanies the research paper, ARKitScenes - A Diverse Real-World Dataset for 3D Indoor Scene Understanding Using Mobile RGB-D Data and contains the data, scripts to visualize and process assets, and training code described in our paper.
Python
589
star
67

device-management

Device management schema data for MDM.
580
star
68

sample-backyard-birds

Swift
544
star
69

ml-facelit

Official repository of FaceLit: Neural 3D Relightable Faces (CVPR 2023)
Python
472
star
70

ccs-calendarserver

The Calendar and Contacts Server.
Python
470
star
71

swift-3-api-guidelines-review

Swift
455
star
72

swift-org-website

Swift.org website
SCSS
450
star
73

GCGC

Jupyter Notebook
438
star
74

ml-mdm

Train high-quality text-to-image diffusion models in a data & compute efficient manner
Python
433
star
75

swift-nio-http2

HTTP/2 support for SwiftNIO
Swift
405
star
76

swift-tools-support-core

Contains common infrastructural code for both SwiftPM and llbuild.
Swift
390
star
77

swift-nio-ssh

SwiftNIO SSH is a programmatic implementation of SSH using SwiftNIO
Swift
389
star
78

swift-playdate-examples

An Embedded Swift game running on Playdate by Panic
Swift
386
star
79

swift-nio-ssl

TLS Support for SwiftNIO, based on BoringSSL.
C
345
star
80

ml-gmpi

[ECCV 2022, Oral Presentation] Official PyTorch implementation of GMPI
Python
339
star
81

example-package-dealer

Example package for use with the Swift Package Manager
Swift
335
star
82

security-pcc

Private Cloud Compute (PCC)
Swift
334
star
83

swift-collections-benchmark

A benchmarking tool for Swift Collection algorithms
Swift
333
star
84

swift-homomorphic-encryption

Homomorphic Encryption library and applications in Swift
Swift
330
star
85

example-package-playingcard

Example package for use with the Swift Package Manager
Swift
323
star
86

indexstore-db

Index database library for use with sourcekit-lsp
C++
315
star
87

swift-docc-render

Web renderer for Swift-DocC documentation.
JavaScript
307
star
88

ml-hierarchical-confusion-matrix

Neo: Hierarchical Confusion Matrix Visualization (CHI 2022)
TypeScript
302
star
89

swift-docc-plugin

Swift Package Manager command plugin for Swift-DocC
Swift
301
star
90

swift-migration-guide

Markdown
294
star
91

ml-sigma-reparam

Python
292
star
92

pfl-research

Simulation framework for accelerating research in Private Federated Learning
Jupyter Notebook
289
star
93

ml-gsn

Python
284
star
94

swift-llbuild2

A fresh take on a low-level build system API.
Swift
281
star
95

swift-source-compat-suite

The infrastructure and project index comprising the Swift source compatibility suite.
Python
280
star
96

swift-xcode-playground-support

Logging and communication to allow Swift toolchains to communicate with Xcode.
Swift
279
star
97

sample-cloudkit-sharing

Swift
275
star
98

swift-experimental-string-processing

An early experimental general-purpose pattern matching engine for Swift.
Swift
270
star
99

swift-matter-examples

An Embedded Swift Matter application running on ESP32-C6
Swift
266
star
100

pkl-go

Pkl bindings for the Go programming language
Go
263
star