9.3 KiB
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!
See also the guide, which walks through a particular snapshot of rust-analyzer code base.
Yet another resource is this playlist with videos about various parts of the analyzer:
https://www.youtube.com/playlist?list=PL85XCvVPmGQho7MZkdW-wtPtuJcFpzycE
The Big Picture
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 (TODO: actually implement this) and what
dependencies exist between the crates. 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 all input data 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.
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.
Code generation
Some of the components of this repository are generated through automatic processes. These are outlined below:
gen-syntax
: The kinds of tokens that are reused in several places, so a generator is used. We use tera templates to generate the files listed below, based on the grammar described in grammar.ron:- ast/generated.rs in
ra_syntax
based on ast/generated.tera.rs - syntax_kinds/generated.rs in
ra_syntax
based on syntax_kinds/generated.tera.rs
- ast/generated.rs in
Code Walk-Through
crates/ra_syntax
, crates/ra_parser
Rust syntax tree structure and parser. See RFC for some design notes.
- rowan library is used for constructing syntax trees.
grammar
module is the actual parser. It is a hand-written recursive descent parser, which produces a sequence of events like "start node X", "finish not 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.parser_api/parser_impl
bridges the tree-agnostic parser fromgrammar
withrowan
trees. This is the thing that turns a flat list of events into a tree (seeEventProcessor
)ast
provides a type safe API on top of the rawrowan
tree.grammar.ron
RON description of the grammar, which is used to generatesyntax_kinds
andast
modules, usingcargo gen-syntax
command.algo
: generic tree algorithms, includingwalk
for O(1) stack space tree traversal (this is cool) andvisit
for type-driven visiting the nodes (this is double plus cool, if you understand howVisitor
works, you understand the design of syntax trees).
Tests for ra_syntax are mostly data-driven: tests/data/parser
contains 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 cargo gen-tests
will walk the grammar module and collect
all //test test_name
comments into files inside tests/data
directory.
See #93 for an example PR which fixes a bug in the grammar.
crates/ra_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 also can compute derived values using specified functions. The ra_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 ra_db::input
module should be useful:
everything else is strictly derived from those inputs.
crates/ra_hir
HIR provides high-level "object oriented" access to Rust code.
The principal difference between HIR and syntax trees is that HIR is bound to a
particular crate instance. That is, it has cfg flags and features applied (in
theory, in practice this is to be implemented). So, the relation between
syntax and HIR is many-to-one. The source_binder
module is responsible for
guessing a HIR for a particular source position.
Underneath, HIR works on top of salsa, using a HirDatabase
trait.
crates/ra_ide_api
A stateful library for analyzing many Rust files as they change. AnalysisHost
is a mutable entity (clojure's atom) which holds the current state, incorporates
changes and hands out Analysis
--- an immutable and consistent snapshot of
the world state at a point in time, which actually powers analysis.
One interesting aspect of analysis is its support for cancellation. When a
change is applied to AnalysisHost
, first all currently active snapshots are
canceled. Only after all snapshots are dropped the change actually affects the
database.
APIs in this crate are IDE centric: they take text offsets as input and produce
offsets and strings as output. This works on top of rich code model powered by
hir
.
crates/ra_ide_api_light
All IDE features which can be implemented if you only have access to a single
file. ra_ide_api_light
could be used to enhance editing of Rust code without
the need to fiddle with build-systems, file synchronization and such.
In a sense, ra_ide_api_light
is just a bunch of pure functions which take a
syntax tree as input.
The tests for ra_ide_api_light
are #[cfg(test)] mod tests
unit-tests spread
throughout its modules.
crates/ra_lsp_server
An LSP implementation which wraps ra_ide_api
into a langauge server protocol.
ra_vfs
Although hir
and ra_ide_api
don't do any IO, we need to be able to read
files from disk at the end of the day. This is what ra_vfs
does. It also
manages overlays: "dirty" files in the editor, whose "true" contents is
different from data on disk. This is more or less the single really
platform-dependent component, so it lives in a separate repository and has an
extensive cross-platform CI testing.
crates/gen_lsp_server
A language server scaffold, exposing a synchronous crossbeam-channel based API. This crate handles protocol handshaking and parsing messages, while you control the message dispatch loop yourself.
Run with RUST_LOG=sync_lsp_server=debug
to see all the messages.
crates/ra_cli
A CLI interface to rust-analyzer.
Testing Infrastructure
Rust Analyzer has three interesting systems boundaries to concentrate tests on.
The outermost boundary is the ra_lsp_server
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.
The middle, and most important, boundary is ra_ide_api
. Unlike
ra_lsp_server
, which exposes API, ide_api
uses Rust API and is intended to
use by various tools. 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_api
, but the basic testing setup is the same: we
create a database, run some queries, assert result.
For comparisons, we use insta library 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.