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Architecture
This document describes the high-level architecture of rust-analyzer. If you want to familiarize yourself with the code base, you are just in the right place!
You might also enjoy "Explaining Rust Analyzer" series on YouTube. It goes deeper than what is covered in this document, but will take some time to watch.
See also these implementation-related blog posts:
- https://rust-analyzer.github.io/blog/2019/11/13/find-usages.html
- https://rust-analyzer.github.io/blog/2020/07/20/three-architectures-for-responsive-ide.html
- https://rust-analyzer.github.io/blog/2020/09/16/challeging-LR-parsing.html
- https://rust-analyzer.github.io/blog/2020/09/28/how-to-make-a-light-bulb.html
- https://rust-analyzer.github.io/blog/2020/10/24/introducing-ungrammar.html
For older, by now mostly outdated stuff, see the guide and another playlist.
Bird's Eye View
On the highest level, rust-analyzer is a thing which accepts input source code from the client and produces a structured semantic model of the code.
More specifically, input data consists of a set of test files ((PathBuf, String)
pairs) and information about project structure, captured in the so called CrateGraph
.
The crate graph specifies which files are crate roots, which cfg flags are specified for each crate and what dependencies exist between the crates.
This is the input (ground) state.
The analyzer keeps all this input data in memory and never does any IO.
Because the input data is source code, which typically measures in tens of megabytes at most, keeping everything in memory is OK.
A "structured semantic model" is basically an object-oriented representation of modules, functions and types which appear in the source code. This representation is fully "resolved": all expressions have types, all references are bound to declarations, etc. This is derived state.
The client can submit a small delta of input data (typically, a change to a single file) and get a fresh code model which accounts for changes.
The underlying engine makes sure that model is computed lazily (on-demand) and can be quickly updated for small modifications.
Entry Points
crates/rust-analyzer/src/bin/main.rs
contains the main function which spawns LSP.
This is the entry point, but it front-loads a lot of complexity, so it's fine to just skim through it.
crates/rust-analyzer/src/handlers.rs
implements all LSP requests and is a great place to start if you are already familiar with LSP.
Analysis
and AnalysisHost
types define the main API for consumers of IDE services.
Code Map
This section talks briefly about various important directories and data structures. Pay attention to the Architecture Invariant sections. They often talk about things which are deliberately absent in the source code.
Note also which crates are API Boundaries. Remember, rules at the boundary are different.
xtask
This is rust-analyzer's "build system". We use cargo to compile rust code, but there are also various other tasks, like release management or local installation. They are handled by Rust code in the xtask directory.
editors/code
VS Code plugin.
lib/
rust-analyzer independent libraries which we publish to crates.io. It's not heavily utilized at the moment.
crates/parser
It is a hand-written recursive descent parser, which produces a sequence of events like "start node X", "finish node Y".
It works similarly to
kotlin's parser,
which is a good source of inspiration for dealing with syntax errors and incomplete input.
Original libsyntax parser is what we use for the definition of the Rust language.
TreeSink
and TokenSource
traits bridge the tree-agnostic parser from grammar
with rowan
trees.
Architecture Invariant: the parser is independent of the particular tree structure and particular representation of the tokens.
It transforms one flat stream of events into another flat stream of events.
Token independence allows us to parse out both text-based source code and tt
-based macro input.
Tree independence allows us to more easily vary the syntax tree implementation.
It should also unlock efficient light-parsing approaches.
For example, you can extract the set of names defined in a file (for typo correction) without building a syntax tree.
Architecture Invariant: parsing never fails, the parser produces (T, Vec<Error>)
rather than Result<T, Error>
.
crates/syntax
Rust syntax tree structure and parser. See RFC and ./syntax.md for some design notes.
- rowan library is used for constructing syntax trees.
ast
provides a type safe API on top of the rawrowan
tree.ungrammar
description of the grammar, which is used to generatesyntax_kinds
andast
modules, usingcargo test -p xtask
command.
Tests for ra_syntax are mostly data-driven.
test_data/parser
contains subdirectories with a bunch of .rs
(test vectors) and .txt
files with corresponding syntax trees.
During testing, we check .rs
against .txt
.
If the .txt
file is missing, it is created (this is how you update tests).
Additionally, running the xtask test suite with cargo test -p xtask
will walk the grammar module and collect all // test test_name
comments into files inside test_data/parser/inline
directory.
To update test data, run with UPDATE_EXPECT
variable:
env UPDATE_EXPECT=1 cargo qt
After adding a new inline test you need to run cargo test -p xtask
and also update the test data as described above.
Note api_walkthrough
in particular: it shows off various methods of working with syntax tree.
See #93 for an example PR which fixes a bug in the grammar.
Architecture Invariant: syntax
crate is completely independent from the rest of rust-analyzer. It knows nothing about salsa or LSP.
This is important because it is possible to make useful tooling using only the syntax tree.
Without semantic information, you don't need to be able to build code, which makes the tooling more robust.
See also https://web.stanford.edu/~mlfbrown/paper.pdf.
You can view the syntax
crate as an entry point to rust-analyzer.
syntax
crate is an API Boundary.
Architecture Invariant: syntax tree is a value type. The tree is fully determined by the contents of its syntax nodes, it doesn't need global context (like an interner) and doesn't store semantic info. Using the tree as a store for semantic info is convenient in traditional compilers, but doesn't work nicely in the IDE. Specifically, assists and refactors require transforming syntax trees, and that becomes awkward if you need to do something with the semantic info.
Architecture Invariant: syntax tree is built for a single file. This is to enable parallel parsing of all files.
Architecture Invariant: Syntax trees are by design incomplete and do not enforce well-formedness.
If an AST method returns an Option
, it can be None
at runtime, even if this is forbidden by the grammar.
crates/base_db
We use the salsa crate for incremental and on-demand computation.
Roughly, you can think of salsa as a key-value store, but it can also compute derived values using specified functions.
The base_db
crate provides basic infrastructure for interacting with salsa.
Crucially, it defines most of the "input" queries: facts supplied by the client of the analyzer.
Reading the docs of the base_db::input
module should be useful: everything else is strictly derived from those inputs.
Architecture Invariant: particularities of the build system are not the part of the ground state.
In particular, base_db
knows nothing about cargo.
For example, cfg
flags are a part of base_db
, but feature
s are not.
A foo
feature is a Cargo-level concept, which is lowered by Cargo to --cfg feature=foo
argument on the command line.
The CrateGraph
structure is used to represent the dependencies between the crates abstractly.
Architecture Invariant: base_db
doesn't know about file system and file paths.
Files are represented with opaque FileId
, there's no operation to get an std::path::Path
out of the FileId
.
crates/hir_expand
, crates/hir_def
, crates/hir_ty
These crates are the brain of rust-analyzer. This is the compiler part of the IDE.
hir_xxx
crates have a strong ECS flavor, in that they work with raw ids and directly query the database.
There's little abstraction here.
These crates integrate deeply with salsa and chalk.
Name resolution, macro expansion and type inference all happen here. These crates also define various intermediate representations of the core.
ItemTree
condenses a single SyntaxTree
into a "summary" data structure, which is stable over modifications to function bodies.
DefMap
contains the module tree of a crate and stores module scopes.
Body
stores information about expressions.
Architecture Invariant: these crates are not, and will never be, an api boundary.
Architecture Invariant: these crates explicitly care about being incremental.
The core invariant we maintain is "typing inside a function's body never invalidates global derived data".
i.e., if you change the body of foo
, all facts about bar
should remain intact.
Architecture Invariant: hir exists only in context of particular crate instance with specific CFG flags. The same syntax may produce several instances of HIR if the crate participates in the crate graph more than once.
crates/hir
The top-level hir
crate is an API Boundary.
If you think about "using rust-analyzer as a library", hir
crate is most likely the façade you'll be talking to.
It wraps ECS-style internal API into a more OO-flavored API (with an extra db
argument for each call).
Architecture Invariant: hir
provides a static, fully resolved view of the code.
While internal hir_*
crates compute things, hir
, from the outside, looks like an inert data structure.
hir
also handles the delicate task of going from syntax to the corresponding hir
.
Remember that the mapping here is one-to-many.
See Semantics
type and source_to_def
module.
Note in particular a curious recursive structure in source_to_def
.
We first resolve the parent syntax node to the parent hir element.
Then we ask the hir parent what syntax children does it have.
Then we look for our node in the set of children.
This is the heart of many IDE features, like goto definition, which start with figuring out the hir node at the cursor. This is some kind of (yet unnamed) uber-IDE pattern, as it is present in Roslyn and Kotlin as well.
crates/ide
The ide
crate builds on top of hir
semantic model to provide high-level IDE features like completion or goto definition.
It is an API Boundary.
If you want to use IDE parts of rust-analyzer via LSP, custom flatbuffers-based protocol or just as a library in your text editor, this is the right API.
Architecture Invariant: ide
crate's API is build out of POD types with public fields.
The API uses editor's terminology, it talks about offsets and string labels rather than in terms of definitions or types.
It is effectively the view in MVC and viewmodel in MVVM.
All arguments and return types are conceptually serializable.
In particular, syntax trees and hir types are generally absent from the API (but are used heavily in the implementation).
Shout outs to LSP developers for popularizing the idea that "UI" is a good place to draw a boundary at.
ide
is also the first crate which has the notion of change over time.
AnalysisHost
is a state to which you can transactionally apply_change
.
Analysis
is an immutable snapshot of the state.
Internally, ide
is split across several crates. ide_assists
, ide_completion
and ide_ssr
implement large isolated features.
ide_db
implements common IDE functionality (notably, reference search is implemented here).
The ide
contains a public API/façade, as well as implementation for a plethora of smaller features.
Architecture Invariant: ide
crate strives to provide a perfect API.
Although at the moment it has only one consumer, the LSP server, LSP does not influence its API design.
Instead, we keep in mind a hypothetical ideal client -- an IDE tailored specifically for rust, every nook and cranny of which is packed with Rust-specific goodies.
crates/rust-analyzer
This crate defines the rust-analyzer
binary, so it is the entry point.
It implements the language server.
Architecture Invariant: rust-analyzer
is the only crate that knows about LSP and JSON serialization.
If you want to expose a data structure X
from ide to LSP, don't make it serializable.
Instead, create a serializable counterpart in rust-analyzer
crate and manually convert between the two.
GlobalState
is the state of the server.
The main_loop
defines the server event loop which accepts requests and sends responses.
Requests that modify the state or might block user's typing are handled on the main thread.
All other requests are processed in background.
Architecture Invariant: the server is stateless, a-la HTTP.
Sometimes state needs to be preserved between requests.
For example, "what is the edit
for the fifth completion item of the last completion edit?".
For this, the second request should include enough info to re-create the context from scratch.
This generally means including all the parameters of the original request.
reload
module contains the code that handles configuration and Cargo.toml changes.
This is a tricky business.
Architecture Invariant: rust-analyzer
should be partially available even when the build is broken.
Reloading process should not prevent IDE features from working.
crates/toolchain
, crates/project_model
, crates/flycheck
These crates deal with invoking cargo
to learn about project structure and get compiler errors for the "check on save" feature.
They use crates/path
heavily instead of std::path
.
A single rust-analyzer
process can serve many projects, so it is important that server's current directory does not leak.
crates/mbe
, crates/tt
, crates/proc_macro_api
, crates/proc_macro_srv
These crates implement macros as token tree -> token tree transforms. They are independent from the rest of the code.
tt
crate defined TokenTree
, a single token or a delimited sequence of token trees.
mbe
crate contains tools for transforming between syntax trees and token tree.
And it also handles the actual parsing and expansion of declarative macro (a-la "Macros By Example" or mbe).
For proc macros, the client-server model are used.
We pass an argument --proc-macro
to rust-analyzer
binary to start a separate process (proc_macro_srv
).
And the client (proc_macro_api
) provides an interface to talk to that server separately.
And then token trees are passed from client, and the server will load the corresponding dynamic library (which built by cargo
).
And due to the fact the api for getting result from proc macro are always unstable in rustc
,
we maintain our own copy (and paste) of that part of code to allow us to build the whole thing in stable rust.
Architecture Invariant:
Bad proc macros may panic or segfault accidentally. So we run it in another process and recover it from fatal error.
And they may be non-deterministic which conflict how salsa
works, so special attention is required.
crates/cfg
This crate is responsible for parsing, evaluation and general definition of cfg
attributes.
crates/vfs
, crates/vfs-notify
These crates implement a virtual file system. They provide consistent snapshots of the underlying file system and insulate messy OS paths.
Architecture Invariant: vfs doesn't assume a single unified file system.
i.e., a single rust-analyzer process can act as a remote server for two different machines, where the same /tmp/foo.rs
path points to different files.
For this reason, all path APIs generally take some existing path as a "file system witness".
crates/stdx
This crate contains various non-rust-analyzer specific utils, which could have been in std, as well
as copies of unstable std items we would like to make use of already, like std::str::split_once
.
crates/profile
This crate contains utilities for CPU and memory profiling.
Cross-Cutting Concerns
This sections talks about the things which are everywhere and nowhere in particular.
Stability Guarantees
One of the reasons rust-analyzer moves relatively fast is that we don't introduce new stability guarantees. Instead, as much as possible we leverage existing ones.
Examples:
- The
ide
API of rust-analyzer are explicitly unstable, but the LSP interface is stable, and here we just implement a stable API managed by someone else. - Rust language and Cargo are stable, and they are the primary inputs to rust-analyzer.
- The
rowan
library is published to crates.io, but it is deliberately kept under1.0
and always makes semver-incompatible upgrades
Another important example is that rust-analyzer isn't run on CI, so, unlike rustc
and clippy
, it is actually ok for us to change runtime behavior.
At some point we might consider opening up APIs or allowing crates.io libraries to include rust-analyzer specific annotations, but that's going to be a big commitment on our side.
Exceptions:
rust-project.json
is a de-facto stable format for non-cargo build systems. It is probably ok enough, but was definitely stabilized implicitly. Lesson for the future: when designing API which could become a stability boundary, don't wait for the first users until you stabilize it. By the time you have first users, it is already de-facto stable. And the users will first use the thing, and then inform you that now you have users. The sad thing is that stuff should be stable before someone uses it for the first time, or it should contain explicit opt-in.- We ship some LSP extensions, and we try to keep those somewhat stable. Here, we need to work with a finite set of editor maintainers, so not providing rock-solid guarantees works.
Code generation
Some components in this repository are generated through automatic processes.
Generated code is updated automatically on cargo test
.
Generated code is generally committed to the git repository.
In particular, we generate:
-
API for working with syntax trees (
syntax::ast
, theungrammar
crate). -
Various sections of the manual:
- features
- assists
- config
-
Documentation tests for assists
See the sourcegen
crate for details.
Architecture Invariant: we avoid bootstrapping. For codegen we need to parse Rust code. Using rust-analyzer for that would work and would be fun, but it would also complicate the build process a lot. For that reason, we use syn and manual string parsing.
Cancellation
Let's say that the IDE is in the process of computing syntax highlighting, when the user types foo
.
What should happen?
rust-analyzer
s answer is that the highlighting process should be cancelled -- its results are now stale, and it also blocks modification of the inputs.
The salsa database maintains a global revision counter.
When applying a change, salsa bumps this counter and waits until all other threads using salsa finish.
If a thread does salsa-based computation and notices that the counter is incremented, it panics with a special value (see Canceled::throw
).
That is, rust-analyzer requires unwinding.
ide
is the boundary where the panic is caught and transformed into a Result<T, Cancelled>
.
Testing
Rust Analyzer has three interesting system boundaries to concentrate tests on.
The outermost boundary is the rust-analyzer
crate, which defines an LSP interface in terms of stdio.
We do integration testing of this component, by feeding it with a stream of LSP requests and checking responses.
These tests are known as "heavy", because they interact with Cargo and read real files from disk.
For this reason, we try to avoid writing too many tests on this boundary: in a statically typed language, it's hard to make an error in the protocol itself if messages are themselves typed.
Heavy tests are only run when RUN_SLOW_TESTS
env var is set.
The middle, and most important, boundary is ide
.
Unlike rust-analyzer
, which exposes API, ide
uses Rust API and is intended for use by various tools.
A typical test creates an AnalysisHost
, calls some Analysis
functions and compares the results against expectation.
The innermost and most elaborate boundary is hir
.
It has a much richer vocabulary of types than ide
, but the basic testing setup is the same: we create a database, run some queries, assert result.
For comparisons, we use the expect
crate for snapshot testing.
To test various analysis corner cases and avoid forgetting about old tests, we use so-called marks.
See the marks
module in the test_utils
crate for more.
Architecture Invariant: rust-analyzer tests do not use libcore or libstd. All required library code must be a part of the tests. This ensures fast test execution.
Architecture Invariant: tests are data driven and do not test the API. Tests which directly call various API functions are a liability, because they make refactoring the API significantly more complicated. So most of the tests look like this:
#[track_caller]
fn check(input: &str, expect: expect_test::Expect) {
// The single place that actually exercises a particular API
}
#[test]
fn foo() {
check("foo", expect![["bar"]]);
}
#[test]
fn spam() {
check("spam", expect![["eggs"]]);
}
// ...and a hundred more tests that don't care about the specific API at all.
To specify input data, we use a single string literal in a special format, which can describe a set of rust files.
See the Fixture
its module for fixture examples and documentation.
Architecture Invariant: all code invariants are tested by #[test]
tests.
There's no additional checks in CI, formatting and tidy tests are run with cargo test
.
Architecture Invariant: tests do not depend on any kind of external resources, they are perfectly reproducible.
Performance Testing
TBA, take a look at the metrics
xtask and #[test] fn benchmark_xxx()
functions.
Error Handling
Architecture Invariant: core parts of rust-analyzer (ide
/hir
) don't interact with the outside world and thus can't fail.
Only parts touching LSP are allowed to do IO.
Internals of rust-analyzer need to deal with broken code, but this is not an error condition.
rust-analyzer is robust: various analysis compute (T, Vec<Error>)
rather than Result<T, Error>
.
rust-analyzer is a complex long-running process.
It will always have bugs and panics.
But a panic in an isolated feature should not bring down the whole process.
Each LSP-request is protected by a catch_unwind
.
We use always
and never
macros instead of assert
to gracefully recover from impossible conditions.
Observability
rust-analyzer is a long-running process, so it is important to understand what's going on inside. We have several instruments for that.
The event loop that runs rust-analyzer is very explicit.
Rather than spawning futures or scheduling callbacks (open), the event loop accepts an enum
of possible events (closed).
It's easy to see all the things that trigger rust-analyzer processing, together with their performance
rust-analyzer includes a simple hierarchical profiler (hprof
).
It is enabled with RA_PROFILE='*>50'
env var (log all (*
) actions which take more than 50
ms) and produces output like:
85ms - handle_completion
68ms - import_on_the_fly
67ms - import_assets::search_for_relative_paths
0ms - crate_def_map:wait (804 calls)
0ms - find_path (16 calls)
2ms - find_similar_imports (1 calls)
0ms - generic_params_query (334 calls)
59ms - trait_solve_query (186 calls)
0ms - Semantics::analyze_impl (1 calls)
1ms - render_resolution (8 calls)
0ms - Semantics::analyze_impl (5 calls)
This is cheap enough to enable in production.
Similarly, we save live object counting (RA_COUNT=1
).
It is not cheap enough to enable in prod, and this is a bug which should be fixed.
Configurability
rust-analyzer strives to be as configurable as possible while offering reasonable defaults where no configuration exists yet. There will always be features that some people find more annoying than helpful, so giving the users the ability to tweak or disable these is a big part of offering a good user experience. Mind the code--architecture gap: at the moment, we are using fewer feature flags than we really should.
Serialization
In Rust, it is easy (often too easy) to add serialization to any type by adding #[derive(Serialize)]
.
This easiness is misleading -- serializable types impose significant backwards compatability constraints.
If a type is serializable, then it is a part of some IPC boundary.
You often don't control the other side of this boundary, so changing serializable types is hard.
For this reason, the types in ide
, base_db
and below are not serializable by design.
If such types need to cross an IPC boundary, then the client of rust-analyzer needs to provide custom, client-specific serialization format.
This isolates backwards compatibility and migration concerns to a specific client.
For example, rust-project.json
is it's own format -- it doesn't include CrateGraph
as is.
Instead, it creates a CrateGraph
by calling appropriate constructing functions.