Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 1 | ============================================== |
| 2 | Kaleidoscope: Adding JIT and Optimizer Support |
| 3 | ============================================== |
| 4 | |
| 5 | .. contents:: |
| 6 | :local: |
| 7 | |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 8 | Chapter 4 Introduction |
| 9 | ====================== |
| 10 | |
| 11 | Welcome to Chapter 4 of the "`Implementing a language with |
| 12 | LLVM <index.html>`_" tutorial. Chapters 1-3 described the implementation |
| 13 | of a simple language and added support for generating LLVM IR. This |
| 14 | chapter describes two new techniques: adding optimizer support to your |
| 15 | language, and adding JIT compiler support. These additions will |
| 16 | demonstrate how to get nice, efficient code for the Kaleidoscope |
| 17 | language. |
| 18 | |
| 19 | Trivial Constant Folding |
| 20 | ======================== |
| 21 | |
| 22 | Our demonstration for Chapter 3 is elegant and easy to extend. |
| 23 | Unfortunately, it does not produce wonderful code. The IRBuilder, |
| 24 | however, does give us obvious optimizations when compiling simple code: |
| 25 | |
| 26 | :: |
| 27 | |
| 28 | ready> def test(x) 1+2+x; |
| 29 | Read function definition: |
| 30 | define double @test(double %x) { |
| 31 | entry: |
| 32 | %addtmp = fadd double 3.000000e+00, %x |
| 33 | ret double %addtmp |
| 34 | } |
| 35 | |
| 36 | This code is not a literal transcription of the AST built by parsing the |
| 37 | input. That would be: |
| 38 | |
| 39 | :: |
| 40 | |
| 41 | ready> def test(x) 1+2+x; |
| 42 | Read function definition: |
| 43 | define double @test(double %x) { |
| 44 | entry: |
| 45 | %addtmp = fadd double 2.000000e+00, 1.000000e+00 |
| 46 | %addtmp1 = fadd double %addtmp, %x |
| 47 | ret double %addtmp1 |
| 48 | } |
| 49 | |
| 50 | Constant folding, as seen above, in particular, is a very common and |
| 51 | very important optimization: so much so that many language implementors |
| 52 | implement constant folding support in their AST representation. |
| 53 | |
| 54 | With LLVM, you don't need this support in the AST. Since all calls to |
| 55 | build LLVM IR go through the LLVM IR builder, the builder itself checked |
| 56 | to see if there was a constant folding opportunity when you call it. If |
| 57 | so, it just does the constant fold and return the constant instead of |
| 58 | creating an instruction. |
| 59 | |
| 60 | Well, that was easy :). In practice, we recommend always using |
| 61 | ``IRBuilder`` when generating code like this. It has no "syntactic |
| 62 | overhead" for its use (you don't have to uglify your compiler with |
| 63 | constant checks everywhere) and it can dramatically reduce the amount of |
| 64 | LLVM IR that is generated in some cases (particular for languages with a |
| 65 | macro preprocessor or that use a lot of constants). |
| 66 | |
| 67 | On the other hand, the ``IRBuilder`` is limited by the fact that it does |
| 68 | all of its analysis inline with the code as it is built. If you take a |
| 69 | slightly more complex example: |
| 70 | |
| 71 | :: |
| 72 | |
| 73 | ready> def test(x) (1+2+x)*(x+(1+2)); |
| 74 | ready> Read function definition: |
| 75 | define double @test(double %x) { |
| 76 | entry: |
| 77 | %addtmp = fadd double 3.000000e+00, %x |
| 78 | %addtmp1 = fadd double %x, 3.000000e+00 |
| 79 | %multmp = fmul double %addtmp, %addtmp1 |
| 80 | ret double %multmp |
| 81 | } |
| 82 | |
| 83 | In this case, the LHS and RHS of the multiplication are the same value. |
| 84 | We'd really like to see this generate "``tmp = x+3; result = tmp*tmp;``" |
| 85 | instead of computing "``x+3``" twice. |
| 86 | |
| 87 | Unfortunately, no amount of local analysis will be able to detect and |
| 88 | correct this. This requires two transformations: reassociation of |
| 89 | expressions (to make the add's lexically identical) and Common |
| 90 | Subexpression Elimination (CSE) to delete the redundant add instruction. |
| 91 | Fortunately, LLVM provides a broad range of optimizations that you can |
| 92 | use, in the form of "passes". |
| 93 | |
| 94 | LLVM Optimization Passes |
| 95 | ======================== |
| 96 | |
| 97 | LLVM provides many optimization passes, which do many different sorts of |
| 98 | things and have different tradeoffs. Unlike other systems, LLVM doesn't |
| 99 | hold to the mistaken notion that one set of optimizations is right for |
| 100 | all languages and for all situations. LLVM allows a compiler implementor |
| 101 | to make complete decisions about what optimizations to use, in which |
| 102 | order, and in what situation. |
| 103 | |
| 104 | As a concrete example, LLVM supports both "whole module" passes, which |
| 105 | look across as large of body of code as they can (often a whole file, |
| 106 | but if run at link time, this can be a substantial portion of the whole |
| 107 | program). It also supports and includes "per-function" passes which just |
| 108 | operate on a single function at a time, without looking at other |
| 109 | functions. For more information on passes and how they are run, see the |
| 110 | `How to Write a Pass <../WritingAnLLVMPass.html>`_ document and the |
| 111 | `List of LLVM Passes <../Passes.html>`_. |
| 112 | |
| 113 | For Kaleidoscope, we are currently generating functions on the fly, one |
| 114 | at a time, as the user types them in. We aren't shooting for the |
| 115 | ultimate optimization experience in this setting, but we also want to |
| 116 | catch the easy and quick stuff where possible. As such, we will choose |
| 117 | to run a few per-function optimizations as the user types the function |
| 118 | in. If we wanted to make a "static Kaleidoscope compiler", we would use |
| 119 | exactly the code we have now, except that we would defer running the |
| 120 | optimizer until the entire file has been parsed. |
| 121 | |
| 122 | In order to get per-function optimizations going, we need to set up a |
Alex Denisov | 596e979 | 2015-12-15 20:50:29 +0000 | [diff] [blame] | 123 | `FunctionPassManager <../WritingAnLLVMPass.html#what-passmanager-doesr>`_ to hold |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 124 | and organize the LLVM optimizations that we want to run. Once we have |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 125 | that, we can add a set of optimizations to run. We'll need a new |
| 126 | FunctionPassManager for each module that we want to optimize, so we'll |
| 127 | write a function to create and initialize both the module and pass manager |
| 128 | for us: |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 129 | |
| 130 | .. code-block:: c++ |
| 131 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 132 | void InitializeModuleAndPassManager(void) { |
| 133 | // Open a new module. |
Mehdi Amini | 03b42e4 | 2016-04-14 21:59:01 +0000 | [diff] [blame] | 134 | Context LLVMContext; |
| 135 | TheModule = llvm::make_unique<Module>("my cool jit", LLVMContext); |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 136 | TheModule->setDataLayout(TheJIT->getTargetMachine().createDataLayout()); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 137 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 138 | // Create a new pass manager attached to it. |
| 139 | TheFPM = llvm::make_unique<FunctionPassManager>(TheModule.get()); |
| 140 | |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 141 | // Provide basic AliasAnalysis support for GVN. |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 142 | TheFPM.add(createBasicAliasAnalysisPass()); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 143 | // Do simple "peephole" optimizations and bit-twiddling optzns. |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 144 | TheFPM.add(createInstructionCombiningPass()); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 145 | // Reassociate expressions. |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 146 | TheFPM.add(createReassociatePass()); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 147 | // Eliminate Common SubExpressions. |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 148 | TheFPM.add(createGVNPass()); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 149 | // Simplify the control flow graph (deleting unreachable blocks, etc). |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 150 | TheFPM.add(createCFGSimplificationPass()); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 151 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 152 | TheFPM.doInitialization(); |
| 153 | } |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 154 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 155 | This code initializes the global module ``TheModule``, and the function pass |
Alex Denisov | 596e979 | 2015-12-15 20:50:29 +0000 | [diff] [blame] | 156 | manager ``TheFPM``, which is attached to ``TheModule``. Once the pass manager is |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 157 | set up, we use a series of "add" calls to add a bunch of LLVM passes. |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 158 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 159 | In this case, we choose to add five passes: one analysis pass (alias analysis), |
| 160 | and four optimization passes. The passes we choose here are a pretty standard set |
| 161 | of "cleanup" optimizations that are useful for a wide variety of code. I won't |
| 162 | delve into what they do but, believe me, they are a good starting place :). |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 163 | |
| 164 | Once the PassManager is set up, we need to make use of it. We do this by |
| 165 | running it after our newly created function is constructed (in |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 166 | ``FunctionAST::codegen()``), but before it is returned to the client: |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 167 | |
| 168 | .. code-block:: c++ |
| 169 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 170 | if (Value *RetVal = Body->codegen()) { |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 171 | // Finish off the function. |
| 172 | Builder.CreateRet(RetVal); |
| 173 | |
| 174 | // Validate the generated code, checking for consistency. |
| 175 | verifyFunction(*TheFunction); |
| 176 | |
| 177 | // Optimize the function. |
| 178 | TheFPM->run(*TheFunction); |
| 179 | |
| 180 | return TheFunction; |
| 181 | } |
| 182 | |
| 183 | As you can see, this is pretty straightforward. The |
| 184 | ``FunctionPassManager`` optimizes and updates the LLVM Function\* in |
| 185 | place, improving (hopefully) its body. With this in place, we can try |
| 186 | our test above again: |
| 187 | |
| 188 | :: |
| 189 | |
| 190 | ready> def test(x) (1+2+x)*(x+(1+2)); |
| 191 | ready> Read function definition: |
| 192 | define double @test(double %x) { |
| 193 | entry: |
| 194 | %addtmp = fadd double %x, 3.000000e+00 |
| 195 | %multmp = fmul double %addtmp, %addtmp |
| 196 | ret double %multmp |
| 197 | } |
| 198 | |
| 199 | As expected, we now get our nicely optimized code, saving a floating |
| 200 | point add instruction from every execution of this function. |
| 201 | |
| 202 | LLVM provides a wide variety of optimizations that can be used in |
| 203 | certain circumstances. Some `documentation about the various |
| 204 | passes <../Passes.html>`_ is available, but it isn't very complete. |
| 205 | Another good source of ideas can come from looking at the passes that |
| 206 | ``Clang`` runs to get started. The "``opt``" tool allows you to |
| 207 | experiment with passes from the command line, so you can see if they do |
| 208 | anything. |
| 209 | |
| 210 | Now that we have reasonable code coming out of our front-end, lets talk |
| 211 | about executing it! |
| 212 | |
| 213 | Adding a JIT Compiler |
| 214 | ===================== |
| 215 | |
| 216 | Code that is available in LLVM IR can have a wide variety of tools |
| 217 | applied to it. For example, you can run optimizations on it (as we did |
| 218 | above), you can dump it out in textual or binary forms, you can compile |
| 219 | the code to an assembly file (.s) for some target, or you can JIT |
| 220 | compile it. The nice thing about the LLVM IR representation is that it |
| 221 | is the "common currency" between many different parts of the compiler. |
| 222 | |
| 223 | In this section, we'll add JIT compiler support to our interpreter. The |
| 224 | basic idea that we want for Kaleidoscope is to have the user enter |
| 225 | function bodies as they do now, but immediately evaluate the top-level |
| 226 | expressions they type in. For example, if they type in "1 + 2;", we |
| 227 | should evaluate and print out 3. If they define a function, they should |
| 228 | be able to call it from the command line. |
| 229 | |
| 230 | In order to do this, we first declare and initialize the JIT. This is |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 231 | done by adding a global variable ``TheJIT``, and initializing it in |
| 232 | ``main``: |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 233 | |
| 234 | .. code-block:: c++ |
| 235 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 236 | static std::unique_ptr<KaleidoscopeJIT> TheJIT; |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 237 | ... |
| 238 | int main() { |
| 239 | .. |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 240 | TheJIT = llvm::make_unique<KaleidoscopeJIT>(); |
| 241 | |
| 242 | // Run the main "interpreter loop" now. |
| 243 | MainLoop(); |
| 244 | |
| 245 | return 0; |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 246 | } |
| 247 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 248 | The KaleidoscopeJIT class is a simple JIT built specifically for these |
| 249 | tutorials. In later chapters we will look at how it works and extend it with |
| 250 | new features, but for now we will take it as given. Its API is very simple:: |
| 251 | ``addModule`` adds an LLVM IR module to the JIT, making its functions |
| 252 | available for execution; ``removeModule`` removes a module, freeing any |
| 253 | memory associated with the code in that module; and ``findSymbol`` allows us |
| 254 | to look up pointers to the compiled code. |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 255 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 256 | We can take this simple API and change our code that parses top-level expressions to |
| 257 | look like this: |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 258 | |
| 259 | .. code-block:: c++ |
| 260 | |
| 261 | static void HandleTopLevelExpression() { |
| 262 | // Evaluate a top-level expression into an anonymous function. |
Lang Hames | 09bf4c1 | 2015-08-18 18:11:06 +0000 | [diff] [blame] | 263 | if (auto FnAST = ParseTopLevelExpr()) { |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 264 | if (FnAST->codegen()) { |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 265 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 266 | // JIT the module containing the anonymous expression, keeping a handle so |
| 267 | // we can free it later. |
| 268 | auto H = TheJIT->addModule(std::move(TheModule)); |
| 269 | InitializeModuleAndPassManager(); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 270 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 271 | // Search the JIT for the __anon_expr symbol. |
| 272 | auto ExprSymbol = TheJIT->findSymbol("__anon_expr"); |
| 273 | assert(ExprSymbol && "Function not found"); |
| 274 | |
| 275 | // Get the symbol's address and cast it to the right type (takes no |
| 276 | // arguments, returns a double) so we can call it as a native function. |
| 277 | double (*FP)() = (double (*)())(intptr_t)ExprSymbol.getAddress(); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 278 | fprintf(stderr, "Evaluated to %f\n", FP()); |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 279 | |
| 280 | // Delete the anonymous expression module from the JIT. |
| 281 | TheJIT->removeModule(H); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 282 | } |
| 283 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 284 | If parsing and codegen succeeed, the next step is to add the module containing |
| 285 | the top-level expression to the JIT. We do this by calling addModule, which |
| 286 | triggers code generation for all the functions in the module, and returns a |
| 287 | handle that can be used to remove the module from the JIT later. Once the module |
| 288 | has been added to the JIT it can no longer be modified, so we also open a new |
| 289 | module to hold subsequent code by calling ``InitializeModuleAndPassManager()``. |
| 290 | |
| 291 | Once we've added the module to the JIT we need to get a pointer to the final |
| 292 | generated code. We do this by calling the JIT's findSymbol method, and passing |
| 293 | the name of the top-level expression function: ``__anon_expr``. Since we just |
| 294 | added this function, we assert that findSymbol returned a result. |
| 295 | |
| 296 | Next, we get the in-memory address of the ``__anon_expr`` function by calling |
| 297 | ``getAddress()`` on the symbol. Recall that we compile top-level expressions |
| 298 | into a self-contained LLVM function that takes no arguments and returns the |
| 299 | computed double. Because the LLVM JIT compiler matches the native platform ABI, |
| 300 | this means that you can just cast the result pointer to a function pointer of |
| 301 | that type and call it directly. This means, there is no difference between JIT |
| 302 | compiled code and native machine code that is statically linked into your |
| 303 | application. |
| 304 | |
| 305 | Finally, since we don't support re-evaluation of top-level expressions, we |
| 306 | remove the module from the JIT when we're done to free the associated memory. |
| 307 | Recall, however, that the module we created a few lines earlier (via |
| 308 | ``InitializeModuleAndPassManager``) is still open and waiting for new code to be |
| 309 | added. |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 310 | |
| 311 | With just these two changes, lets see how Kaleidoscope works now! |
| 312 | |
| 313 | :: |
| 314 | |
| 315 | ready> 4+5; |
| 316 | Read top-level expression: |
| 317 | define double @0() { |
| 318 | entry: |
| 319 | ret double 9.000000e+00 |
| 320 | } |
| 321 | |
| 322 | Evaluated to 9.000000 |
| 323 | |
| 324 | Well this looks like it is basically working. The dump of the function |
| 325 | shows the "no argument function that always returns double" that we |
| 326 | synthesize for each top-level expression that is typed in. This |
| 327 | demonstrates very basic functionality, but can we do more? |
| 328 | |
| 329 | :: |
| 330 | |
| 331 | ready> def testfunc(x y) x + y*2; |
| 332 | Read function definition: |
| 333 | define double @testfunc(double %x, double %y) { |
| 334 | entry: |
| 335 | %multmp = fmul double %y, 2.000000e+00 |
| 336 | %addtmp = fadd double %multmp, %x |
| 337 | ret double %addtmp |
| 338 | } |
| 339 | |
| 340 | ready> testfunc(4, 10); |
| 341 | Read top-level expression: |
| 342 | define double @1() { |
| 343 | entry: |
| 344 | %calltmp = call double @testfunc(double 4.000000e+00, double 1.000000e+01) |
| 345 | ret double %calltmp |
| 346 | } |
| 347 | |
| 348 | Evaluated to 24.000000 |
| 349 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 350 | ready> testfunc(5, 10); |
| 351 | ready> LLVM ERROR: Program used external function 'testfunc' which could not be resolved! |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 352 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 353 | |
| 354 | Function definitions and calls also work, but something went very wrong on that |
| 355 | last line. The call looks valid, so what happened? As you may have guessed from |
| 356 | the the API a Module is a unit of allocation for the JIT, and testfunc was part |
| 357 | of the same module that contained anonymous expression. When we removed that |
| 358 | module from the JIT to free the memory for the anonymous expression, we deleted |
| 359 | the definition of ``testfunc`` along with it. Then, when we tried to call |
| 360 | testfunc a second time, the JIT could no longer find it. |
| 361 | |
| 362 | The easiest way to fix this is to put the anonymous expression in a separate |
| 363 | module from the rest of the function definitions. The JIT will happily resolve |
| 364 | function calls across module boundaries, as long as each of the functions called |
| 365 | has a prototype, and is added to the JIT before it is called. By putting the |
| 366 | anonymous expression in a different module we can delete it without affecting |
| 367 | the rest of the functions. |
| 368 | |
| 369 | In fact, we're going to go a step further and put every function in its own |
| 370 | module. Doing so allows us to exploit a useful property of the KaleidoscopeJIT |
| 371 | that will make our environment more REPL-like: Functions can be added to the |
| 372 | JIT more than once (unlike a module where every function must have a unique |
| 373 | definition). When you look up a symbol in KaleidoscopeJIT it will always return |
| 374 | the most recent definition: |
| 375 | |
| 376 | :: |
| 377 | |
| 378 | ready> def foo(x) x + 1; |
| 379 | Read function definition: |
| 380 | define double @foo(double %x) { |
| 381 | entry: |
| 382 | %addtmp = fadd double %x, 1.000000e+00 |
| 383 | ret double %addtmp |
| 384 | } |
| 385 | |
| 386 | ready> foo(2); |
| 387 | Evaluated to 3.000000 |
| 388 | |
| 389 | ready> def foo(x) x + 2; |
| 390 | define double @foo(double %x) { |
| 391 | entry: |
| 392 | %addtmp = fadd double %x, 2.000000e+00 |
| 393 | ret double %addtmp |
| 394 | } |
| 395 | |
| 396 | ready> foo(2); |
| 397 | Evaluated to 4.000000 |
| 398 | |
| 399 | |
| 400 | To allow each function to live in its own module we'll need a way to |
| 401 | re-generate previous function declarations into each new module we open: |
| 402 | |
| 403 | .. code-block:: c++ |
| 404 | |
| 405 | static std::unique_ptr<KaleidoscopeJIT> TheJIT; |
| 406 | |
| 407 | ... |
| 408 | |
| 409 | Function *getFunction(std::string Name) { |
| 410 | // First, see if the function has already been added to the current module. |
| 411 | if (auto *F = TheModule->getFunction(Name)) |
| 412 | return F; |
| 413 | |
| 414 | // If not, check whether we can codegen the declaration from some existing |
| 415 | // prototype. |
| 416 | auto FI = FunctionProtos.find(Name); |
| 417 | if (FI != FunctionProtos.end()) |
| 418 | return FI->second->codegen(); |
| 419 | |
| 420 | // If no existing prototype exists, return null. |
| 421 | return nullptr; |
| 422 | } |
| 423 | |
| 424 | ... |
| 425 | |
| 426 | Value *CallExprAST::codegen() { |
| 427 | // Look up the name in the global module table. |
| 428 | Function *CalleeF = getFunction(Callee); |
| 429 | |
| 430 | ... |
| 431 | |
| 432 | Function *FunctionAST::codegen() { |
| 433 | // Transfer ownership of the prototype to the FunctionProtos map, but keep a |
| 434 | // reference to it for use below. |
| 435 | auto &P = *Proto; |
| 436 | FunctionProtos[Proto->getName()] = std::move(Proto); |
| 437 | Function *TheFunction = getFunction(P.getName()); |
| 438 | if (!TheFunction) |
| 439 | return nullptr; |
| 440 | |
| 441 | |
| 442 | To enable this, we'll start by adding a new global, ``FunctionProtos``, that |
| 443 | holds the most recent prototype for each function. We'll also add a convenience |
| 444 | method, ``getFunction()``, to replace calls to ``TheModule->getFunction()``. |
| 445 | Our convenience method searches ``TheModule`` for an existing function |
| 446 | declaration, falling back to generating a new declaration from FunctionProtos if |
| 447 | it doesn't find one. In ``CallExprAST::codegen()`` we just need to replace the |
| 448 | call to ``TheModule->getFunction()``. In ``FunctionAST::codegen()`` we need to |
| 449 | update the FunctionProtos map first, then call ``getFunction()``. With this |
| 450 | done, we can always obtain a function declaration in the current module for any |
| 451 | previously declared function. |
| 452 | |
| 453 | We also need to update HandleDefinition and HandleExtern: |
| 454 | |
| 455 | .. code-block:: c++ |
| 456 | |
| 457 | static void HandleDefinition() { |
| 458 | if (auto FnAST = ParseDefinition()) { |
| 459 | if (auto *FnIR = FnAST->codegen()) { |
| 460 | fprintf(stderr, "Read function definition:"); |
| 461 | FnIR->dump(); |
| 462 | TheJIT->addModule(std::move(TheModule)); |
| 463 | InitializeModuleAndPassManager(); |
| 464 | } |
| 465 | } else { |
| 466 | // Skip token for error recovery. |
| 467 | getNextToken(); |
| 468 | } |
| 469 | } |
| 470 | |
| 471 | static void HandleExtern() { |
| 472 | if (auto ProtoAST = ParseExtern()) { |
| 473 | if (auto *FnIR = ProtoAST->codegen()) { |
| 474 | fprintf(stderr, "Read extern: "); |
| 475 | FnIR->dump(); |
| 476 | FunctionProtos[ProtoAST->getName()] = std::move(ProtoAST); |
| 477 | } |
| 478 | } else { |
| 479 | // Skip token for error recovery. |
| 480 | getNextToken(); |
| 481 | } |
| 482 | } |
| 483 | |
| 484 | In HandleDefinition, we add two lines to transfer the newly defined function to |
| 485 | the JIT and open a new module. In HandleExtern, we just need to add one line to |
| 486 | add the prototype to FunctionProtos. |
| 487 | |
| 488 | With these changes made, lets try our REPL again (I removed the dump of the |
| 489 | anonymous functions this time, you should get the idea by now :) : |
| 490 | |
| 491 | :: |
| 492 | |
| 493 | ready> def foo(x) x + 1; |
| 494 | ready> foo(2); |
| 495 | Evaluated to 3.000000 |
| 496 | |
| 497 | ready> def foo(x) x + 2; |
| 498 | ready> foo(2); |
| 499 | Evaluated to 4.000000 |
| 500 | |
| 501 | It works! |
| 502 | |
| 503 | Even with this simple code, we get some surprisingly powerful capabilities - |
| 504 | check this out: |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 505 | |
| 506 | :: |
| 507 | |
| 508 | ready> extern sin(x); |
| 509 | Read extern: |
| 510 | declare double @sin(double) |
| 511 | |
| 512 | ready> extern cos(x); |
| 513 | Read extern: |
| 514 | declare double @cos(double) |
| 515 | |
| 516 | ready> sin(1.0); |
| 517 | Read top-level expression: |
| 518 | define double @2() { |
| 519 | entry: |
| 520 | ret double 0x3FEAED548F090CEE |
| 521 | } |
| 522 | |
| 523 | Evaluated to 0.841471 |
| 524 | |
| 525 | ready> def foo(x) sin(x)*sin(x) + cos(x)*cos(x); |
| 526 | Read function definition: |
| 527 | define double @foo(double %x) { |
| 528 | entry: |
| 529 | %calltmp = call double @sin(double %x) |
| 530 | %multmp = fmul double %calltmp, %calltmp |
| 531 | %calltmp2 = call double @cos(double %x) |
| 532 | %multmp4 = fmul double %calltmp2, %calltmp2 |
| 533 | %addtmp = fadd double %multmp, %multmp4 |
| 534 | ret double %addtmp |
| 535 | } |
| 536 | |
| 537 | ready> foo(4.0); |
| 538 | Read top-level expression: |
| 539 | define double @3() { |
| 540 | entry: |
| 541 | %calltmp = call double @foo(double 4.000000e+00) |
| 542 | ret double %calltmp |
| 543 | } |
| 544 | |
| 545 | Evaluated to 1.000000 |
| 546 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 547 | Whoa, how does the JIT know about sin and cos? The answer is surprisingly |
| 548 | simple: The KaleidoscopeJIT has a straightforward symbol resolution rule that |
| 549 | it uses to find symbols that aren't available in any given module: First |
| 550 | it searches all the modules that have already been added to the JIT, from the |
| 551 | most recent to the oldest, to find the newest definition. If no definition is |
| 552 | found inside the JIT, it falls back to calling "``dlsym("sin")``" on the |
| 553 | Kaleidoscope process itself. Since "``sin``" is defined within the JIT's |
| 554 | address space, it simply patches up calls in the module to call the libm |
| 555 | version of ``sin`` directly. |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 556 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 557 | In the future we'll see how tweaking this symbol resolution rule can be used to |
| 558 | enable all sorts of useful features, from security (restricting the set of |
| 559 | symbols available to JIT'd code), to dynamic code generation based on symbol |
| 560 | names, and even lazy compilation. |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 561 | |
Lang Hames | 2d789c3 | 2015-08-26 03:07:41 +0000 | [diff] [blame] | 562 | One immediate benefit of the symbol resolution rule is that we can now extend |
| 563 | the language by writing arbitrary C++ code to implement operations. For example, |
| 564 | if we add: |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 565 | |
| 566 | .. code-block:: c++ |
| 567 | |
| 568 | /// putchard - putchar that takes a double and returns 0. |
Lang Hames | 59b0da8 | 2015-08-19 18:15:58 +0000 | [diff] [blame] | 569 | extern "C" double putchard(double X) { |
Lang Hames | d76e067 | 2015-08-27 20:31:44 +0000 | [diff] [blame] | 570 | fputc((char)X, stderr); |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 571 | return 0; |
| 572 | } |
| 573 | |
| 574 | Now we can produce simple output to the console by using things like: |
| 575 | "``extern putchard(x); putchard(120);``", which prints a lowercase 'x' |
| 576 | on the console (120 is the ASCII code for 'x'). Similar code could be |
| 577 | used to implement file I/O, console input, and many other capabilities |
| 578 | in Kaleidoscope. |
| 579 | |
| 580 | This completes the JIT and optimizer chapter of the Kaleidoscope |
| 581 | tutorial. At this point, we can compile a non-Turing-complete |
| 582 | programming language, optimize and JIT compile it in a user-driven way. |
| 583 | Next up we'll look into `extending the language with control flow |
| 584 | constructs <LangImpl5.html>`_, tackling some interesting LLVM IR issues |
| 585 | along the way. |
| 586 | |
| 587 | Full Code Listing |
| 588 | ================= |
| 589 | |
| 590 | Here is the complete code listing for our running example, enhanced with |
| 591 | the LLVM JIT and optimizer. To build this example, use: |
| 592 | |
| 593 | .. code-block:: bash |
| 594 | |
| 595 | # Compile |
Eric Christopher | a8c6a0a | 2015-01-08 19:07:01 +0000 | [diff] [blame] | 596 | clang++ -g toy.cpp `llvm-config --cxxflags --ldflags --system-libs --libs core mcjit native` -O3 -o toy |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 597 | # Run |
| 598 | ./toy |
| 599 | |
| 600 | If you are compiling this on Linux, make sure to add the "-rdynamic" |
| 601 | option as well. This makes sure that the external functions are resolved |
| 602 | properly at runtime. |
| 603 | |
| 604 | Here is the code: |
| 605 | |
Logan Chien | 855b17d | 2013-06-08 09:03:03 +0000 | [diff] [blame] | 606 | .. literalinclude:: ../../examples/Kaleidoscope/Chapter4/toy.cpp |
| 607 | :language: c++ |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 608 | |
Wilfred Hughes | 945f43e | 2016-07-02 17:01:59 +0000 | [diff] [blame] | 609 | `Next: Extending the language: control flow <LangImpl05.html>`_ |
Sean Silva | d7fb396 | 2012-12-05 00:26:32 +0000 | [diff] [blame] | 610 | |