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=====================================================================
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Building a JIT: Adding Optimizations -- An introduction to ORC Layers
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=====================================================================
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.. contents::
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:local:
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**This tutorial is under active development. It is incomplete and details may
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change frequently.** Nonetheless we invite you to try it out as it stands, and
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we welcome any feedback.
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Chapter 2 Introduction
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======================
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**Warning: This text is currently out of date due to ORC API updates.**
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**The example code has been updated and can be used. The text will be updated
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once the API churn dies down.**
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Welcome to Chapter 2 of the "Building an ORC-based JIT in LLVM" tutorial. In
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`Chapter 1 <BuildingAJIT1.html>`_ of this series we examined a basic JIT
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class, KaleidoscopeJIT, that could take LLVM IR modules as input and produce
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executable code in memory. KaleidoscopeJIT was able to do this with relatively
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little code by composing two off-the-shelf *ORC layers*: IRCompileLayer and
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ObjectLinkingLayer, to do much of the heavy lifting.
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In this layer we'll learn more about the ORC layer concept by using a new layer,
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IRTransformLayer, to add IR optimization support to KaleidoscopeJIT.
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Optimizing Modules using the IRTransformLayer
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=============================================
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In `Chapter 4 <LangImpl04.html>`_ of the "Implementing a language with LLVM"
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tutorial series the llvm *FunctionPassManager* is introduced as a means for
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optimizing LLVM IR. Interested readers may read that chapter for details, but
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in short: to optimize a Module we create an llvm::FunctionPassManager
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instance, configure it with a set of optimizations, then run the PassManager on
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a Module to mutate it into a (hopefully) more optimized but semantically
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equivalent form. In the original tutorial series the FunctionPassManager was
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created outside the KaleidoscopeJIT and modules were optimized before being
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added to it. In this Chapter we will make optimization a phase of our JIT
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instead. For now this will provide us a motivation to learn more about ORC
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layers, but in the long term making optimization part of our JIT will yield an
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important benefit: When we begin lazily compiling code (i.e. deferring
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compilation of each function until the first time it's run), having
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optimization managed by our JIT will allow us to optimize lazily too, rather
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than having to do all our optimization up-front.
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To add optimization support to our JIT we will take the KaleidoscopeJIT from
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Chapter 1 and compose an ORC *IRTransformLayer* on top. We will look at how the
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IRTransformLayer works in more detail below, but the interface is simple: the
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constructor for this layer takes a reference to the layer below (as all layers
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do) plus an *IR optimization function* that it will apply to each Module that
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is added via addModule:
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.. code-block:: c++
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class KaleidoscopeJIT {
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private:
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std::unique_ptr<TargetMachine> TM;
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const DataLayout DL;
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RTDyldObjectLinkingLayer<> ObjectLayer;
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IRCompileLayer<decltype(ObjectLayer)> CompileLayer;
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using OptimizeFunction =
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std::function<std::shared_ptr<Module>(std::shared_ptr<Module>)>;
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IRTransformLayer<decltype(CompileLayer), OptimizeFunction> OptimizeLayer;
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public:
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using ModuleHandle = decltype(OptimizeLayer)::ModuleHandleT;
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KaleidoscopeJIT()
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: TM(EngineBuilder().selectTarget()), DL(TM->createDataLayout()),
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ObjectLayer([]() { return std::make_shared<SectionMemoryManager>(); }),
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CompileLayer(ObjectLayer, SimpleCompiler(*TM)),
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OptimizeLayer(CompileLayer,
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[this](std::unique_ptr<Module> M) {
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return optimizeModule(std::move(M));
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}) {
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llvm::sys::DynamicLibrary::LoadLibraryPermanently(nullptr);
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}
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Our extended KaleidoscopeJIT class starts out the same as it did in Chapter 1,
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but after the CompileLayer we introduce a typedef for our optimization function.
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In this case we use a std::function (a handy wrapper for "function-like" things)
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from a single unique_ptr<Module> input to a std::unique_ptr<Module> output. With
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our optimization function typedef in place we can declare our OptimizeLayer,
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which sits on top of our CompileLayer.
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To initialize our OptimizeLayer we pass it a reference to the CompileLayer
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below (standard practice for layers), and we initialize the OptimizeFunction
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using a lambda that calls out to an "optimizeModule" function that we will
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define below.
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.. code-block:: c++
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// ...
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auto Resolver = createLambdaResolver(
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[&](const std::string &Name) {
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if (auto Sym = OptimizeLayer.findSymbol(Name, false))
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return Sym;
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return JITSymbol(nullptr);
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},
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// ...
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.. code-block:: c++
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// ...
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return cantFail(OptimizeLayer.addModule(std::move(M),
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std::move(Resolver)));
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// ...
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.. code-block:: c++
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// ...
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return OptimizeLayer.findSymbol(MangledNameStream.str(), true);
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// ...
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.. code-block:: c++
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// ...
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cantFail(OptimizeLayer.removeModule(H));
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// ...
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Next we need to replace references to 'CompileLayer' with references to
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OptimizeLayer in our key methods: addModule, findSymbol, and removeModule. In
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addModule we need to be careful to replace both references: the findSymbol call
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inside our resolver, and the call through to addModule.
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.. code-block:: c++
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std::shared_ptr<Module> optimizeModule(std::shared_ptr<Module> M) {
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// Create a function pass manager.
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auto FPM = llvm::make_unique<legacy::FunctionPassManager>(M.get());
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// Add some optimizations.
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FPM->add(createInstructionCombiningPass());
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FPM->add(createReassociatePass());
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FPM->add(createGVNPass());
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FPM->add(createCFGSimplificationPass());
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FPM->doInitialization();
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// Run the optimizations over all functions in the module being added to
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// the JIT.
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for (auto &F : *M)
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FPM->run(F);
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return M;
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}
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At the bottom of our JIT we add a private method to do the actual optimization:
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*optimizeModule*. This function sets up a FunctionPassManager, adds some passes
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to it, runs it over every function in the module, and then returns the mutated
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module. The specific optimizations are the same ones used in
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`Chapter 4 <LangImpl04.html>`_ of the "Implementing a language with LLVM"
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tutorial series. Readers may visit that chapter for a more in-depth
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discussion of these, and of IR optimization in general.
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And that's it in terms of changes to KaleidoscopeJIT: When a module is added via
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addModule the OptimizeLayer will call our optimizeModule function before passing
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the transformed module on to the CompileLayer below. Of course, we could have
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called optimizeModule directly in our addModule function and not gone to the
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bother of using the IRTransformLayer, but doing so gives us another opportunity
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to see how layers compose. It also provides a neat entry point to the *layer*
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concept itself, because IRTransformLayer turns out to be one of the simplest
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implementations of the layer concept that can be devised:
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.. code-block:: c++
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template <typename BaseLayerT, typename TransformFtor>
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class IRTransformLayer {
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public:
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using ModuleHandleT = typename BaseLayerT::ModuleHandleT;
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IRTransformLayer(BaseLayerT &BaseLayer,
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TransformFtor Transform = TransformFtor())
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: BaseLayer(BaseLayer), Transform(std::move(Transform)) {}
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Expected<ModuleHandleT>
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addModule(std::shared_ptr<Module> M,
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std::shared_ptr<JITSymbolResolver> Resolver) {
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return BaseLayer.addModule(Transform(std::move(M)), std::move(Resolver));
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}
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void removeModule(ModuleHandleT H) { BaseLayer.removeModule(H); }
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JITSymbol findSymbol(const std::string &Name, bool ExportedSymbolsOnly) {
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return BaseLayer.findSymbol(Name, ExportedSymbolsOnly);
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}
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JITSymbol findSymbolIn(ModuleHandleT H, const std::string &Name,
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bool ExportedSymbolsOnly) {
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return BaseLayer.findSymbolIn(H, Name, ExportedSymbolsOnly);
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}
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void emitAndFinalize(ModuleHandleT H) {
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BaseLayer.emitAndFinalize(H);
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}
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TransformFtor& getTransform() { return Transform; }
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const TransformFtor& getTransform() const { return Transform; }
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private:
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BaseLayerT &BaseLayer;
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TransformFtor Transform;
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};
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This is the whole definition of IRTransformLayer, from
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``llvm/include/llvm/ExecutionEngine/Orc/IRTransformLayer.h``, stripped of its
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comments. It is a template class with two template arguments: ``BaesLayerT`` and
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``TransformFtor`` that provide the type of the base layer and the type of the
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"transform functor" (in our case a std::function) respectively. This class is
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concerned with two very simple jobs: (1) Running every IR Module that is added
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with addModule through the transform functor, and (2) conforming to the ORC
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layer interface. The interface consists of one typedef and five methods:
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+------------------+-----------------------------------------------------------+
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| Interface | Description |
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+==================+===========================================================+
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| | Provides a handle that can be used to identify a module |
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| ModuleHandleT | set when calling findSymbolIn, removeModule, or |
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| | emitAndFinalize. |
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+------------------+-----------------------------------------------------------+
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| | Takes a given set of Modules and makes them "available |
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| | for execution. This means that symbols in those modules |
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| | should be searchable via findSymbol and findSymbolIn, and |
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| | the address of the symbols should be read/writable (for |
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| | data symbols), or executable (for function symbols) after |
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| | JITSymbol::getAddress() is called. Note: This means that |
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| addModule | addModule doesn't have to compile (or do any other |
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| | work) up-front. It *can*, like IRCompileLayer, act |
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| | eagerly, but it can also simply record the module and |
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| | take no further action until somebody calls |
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| | JITSymbol::getAddress(). In IRTransformLayer's case |
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| | addModule eagerly applies the transform functor to |
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| | each module in the set, then passes the resulting set |
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| | of mutated modules down to the layer below. |
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+------------------+-----------------------------------------------------------+
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| | Removes a set of modules from the JIT. Code or data |
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| removeModule | defined in these modules will no longer be available, and |
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| | the memory holding the JIT'd definitions will be freed. |
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+------------------+-----------------------------------------------------------+
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| | Searches for the named symbol in all modules that have |
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| | previously been added via addModule (and not yet |
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| findSymbol | removed by a call to removeModule). In |
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| | IRTransformLayer we just pass the query on to the layer |
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| | below. In our REPL this is our default way to search for |
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| | function definitions. |
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+------------------+-----------------------------------------------------------+
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| | Searches for the named symbol in the module set indicated |
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| | by the given ModuleHandleT. This is just an optimized |
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| | search, better for lookup-speed when you know exactly |
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| | a symbol definition should be found. In IRTransformLayer |
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| findSymbolIn | we just pass this query on to the layer below. In our |
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| | REPL we use this method to search for functions |
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| | representing top-level expressions, since we know exactly |
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| | where we'll find them: in the top-level expression module |
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| | we just added. |
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+------------------+-----------------------------------------------------------+
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| | Forces all of the actions required to make the code and |
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| | data in a module set (represented by a ModuleHandleT) |
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| | accessible. Behaves as if some symbol in the set had been |
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| | searched for and JITSymbol::getSymbolAddress called. This |
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| emitAndFinalize | is rarely needed, but can be useful when dealing with |
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| | layers that usually behave lazily if the user wants to |
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| | trigger early compilation (for example, to use idle CPU |
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| | time to eagerly compile code in the background). |
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+------------------+-----------------------------------------------------------+
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This interface attempts to capture the natural operations of a JIT (with some
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wrinkles like emitAndFinalize for performance), similar to the basic JIT API
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operations we identified in Chapter 1. Conforming to the layer concept allows
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classes to compose neatly by implementing their behaviors in terms of the these
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same operations, carried out on the layer below. For example, an eager layer
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(like IRTransformLayer) can implement addModule by running each module in the
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set through its transform up-front and immediately passing the result to the
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layer below. A lazy layer, by contrast, could implement addModule by
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squirreling away the modules doing no other up-front work, but applying the
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transform (and calling addModule on the layer below) when the client calls
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findSymbol instead. The JIT'd program behavior will be the same either way, but
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these choices will have different performance characteristics: Doing work
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eagerly means the JIT takes longer up-front, but proceeds smoothly once this is
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done. Deferring work allows the JIT to get up-and-running quickly, but will
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force the JIT to pause and wait whenever some code or data is needed that hasn't
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already been processed.
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Our current REPL is eager: Each function definition is optimized and compiled as
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soon as it's typed in. If we were to make the transform layer lazy (but not
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change things otherwise) we could defer optimization until the first time we
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reference a function in a top-level expression (see if you can figure out why,
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then check out the answer below [1]_). In the next chapter, however we'll
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introduce fully lazy compilation, in which function's aren't compiled until
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they're first called at run-time. At this point the trade-offs get much more
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interesting: the lazier we are, the quicker we can start executing the first
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function, but the more often we'll have to pause to compile newly encountered
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functions. If we only code-gen lazily, but optimize eagerly, we'll have a slow
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startup (which everything is optimized) but relatively short pauses as each
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function just passes through code-gen. If we both optimize and code-gen lazily
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we can start executing the first function more quickly, but we'll have longer
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pauses as each function has to be both optimized and code-gen'd when it's first
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executed. Things become even more interesting if we consider interproceedural
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optimizations like inlining, which must be performed eagerly. These are
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complex trade-offs, and there is no one-size-fits all solution to them, but by
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providing composable layers we leave the decisions to the person implementing
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the JIT, and make it easy for them to experiment with different configurations.
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`Next: Adding Per-function Lazy Compilation <BuildingAJIT3.html>`_
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Full Code Listing
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=================
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Here is the complete code listing for our running example with an
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IRTransformLayer added to enable optimization. To build this example, use:
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.. code-block:: bash
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# Compile
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clang++ -g toy.cpp `llvm-config --cxxflags --ldflags --system-libs --libs core orcjit native` -O3 -o toy
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# Run
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./toy
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Here is the code:
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.. literalinclude:: ../../examples/Kaleidoscope/BuildingAJIT/Chapter2/KaleidoscopeJIT.h
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:language: c++
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.. [1] When we add our top-level expression to the JIT, any calls to functions
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that we defined earlier will appear to the RTDyldObjectLinkingLayer as
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external symbols. The RTDyldObjectLinkingLayer will call the SymbolResolver
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that we defined in addModule, which in turn calls findSymbol on the
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OptimizeLayer, at which point even a lazy transform layer will have to
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do its work.
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