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Danila Fedorin 035b98a602
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Compiling a Functional Language Using C++, Part 8 - LLVM 2019-10-30T22:16:22-07:00
C and C++
Functional Languages
Compilers
In this post, we enable our compiler to convert G-machine instructions to LLVM IR, which finally allows us to generate working executables.

We don't want a compiler that can only generate code for a single platform. Our language should work on macOS, Windows, and Linux, on x86_64, ARM, and maybe some other architectures. We also don't want to manually implement the compiler for each platform, dealing with the specifics of each architecture and operating system.

This is where LLVM comes in. LLVM (which stands for Low Level Virtual Machine), is a project which presents us with a kind of generic assembly language, an Intermediate Representation (IR). It also provides tooling to compile the IR into platform-specific instructions, as well as to apply a host of various optimizations. We can thus translate our G-machine instructions to LLVM, and then use LLVM to generate machine code, which gets us to our ultimate goal of compiling our language.

We start with adding LLVM to our CMake project. {{< codelines "CMake" "compiler/08/CMakeLists.txt" 7 7 >}}

LLVM is a huge project, and has many components. We don't need most of them. We do need the core libraries, the x86 assembly generator, and x86 assembly parser. I'm not sure why we need the last one, but I ran into linking errors without them. We find the required link targets for these components using this CMake command:

{{< codelines "CMake" "compiler/08/CMakeLists.txt" 19 20 >}}

Finally, we add the new include directories, link targets, and definitions to our compiler executable:

{{< codelines "CMake" "compiler/08/CMakeLists.txt" 39 41 >}}

Great, we have the infrastructure updated to work with LLVM. It's now time to start using the LLVM API to compile our G-machine instructions into assembly. We start with LLVMContext. The LLVM documentation states:

This is an important class for using LLVM in a threaded context. It (opaquely) owns and manages the core "global" data of LLVM's core infrastructure, including the type and constant uniquing tables.

We will have exactly one instance of such a class in our program.

Additionally, we want an IRBuilder, which will help us generate IR instructions, placing them into basic blocks (more on that in a bit). Also, we want a Module object, which represents some collection of code and declarations (perhaps like a C++ source file). Let's keep these things in our own llvm_context class. Here's what that looks like:

{{< codeblock "C++" "compiler/08/llvm_context.hpp" >}}

We include the LLVM context, builder, and module as members of the context struct. Since the builder and the module need the context, we initialize them in the constructor, where they can safely reference it.

Besides these fields, we added a few others, namely the functions and struct_types maps, and the various llvm::Type subclasses such as stack_type. We did this because we want to be able to call our runtime functions (and use our runtime structs) from LLVM. To generate a function call from LLVM, we need to have access to an llvm::Function object. We thus want to have an llvm::Function object for each runtime function we want to call. We could declare a member variable in our llvm_context for each runtime function, but it's easier to leave this to be an implementation detail, and only have a dynamically created map between runtime function names and their corresponding llvm::Function objects.

We populate the maps and other type-related variables in the two methods, create_functions() and create_types(). To create an llvm::Function, we must provide an llvm::FunctionType, an llvm::LinkageType, the name of the function, and the module in which the function is declared. Since we only have one module (the one we initialized in the constructor) that's the module we pass in. The name of the function is the same as its name in the runtime. The linkage type is a little more complicated - it tells LLVM the "visibility" of a function. "Private" or "Internal" would hide this function from the linker (like static functions in C). However, we want to do the opposite: our generated functions should be accessible from other code. Thus, our linkage type is "External".

The only remaining parameter is the llvm::FunctionType, which is created using code like:

llvm::FunctionType::get(return_type, {param_type_1, param_type_2, ...}, is_variadic)

Declaring all the functions and types in our runtime is mostly just tedious. Here are a few lines from create_functions(), which give a very good idea of the rest of that method:

{{< codelines "C++" "compiler/08/llvm_context.cpp" 47 60 >}}

Similarly, here are a few lines from create_types(), from which you can extrapolate the rest:

{{< codelines "C++" "compiler/08/llvm_context.cpp" 7 11 >}}

We also tell LLVM the contents of our structs, so that we may later reference specific fields. This is just like forward declaration - we can forward declare a struct in C/C++, but unless we also declare its contents, we can't access what's inside. Below is the code for specifying the body of node_base and node_app.

{{< codelines "C++" "compiler/08/llvm_context.cpp" 19 26 >}}

There's still more functionality packed into llvm_context. Let's next take a look into custom_function, and the create_custom_function method. Why do we need these? To highlight the need for the custom class, let's take a look at instruction_pushglobal which occurs at the G-machine level, and then at alloc_global, which will be a function call generated as part of the PushGlobal instruction. instruction_pushglobal's only member variable is name, which stands for the name of the global function it's referencing. However, alloc_global requires an arity argument! We can try to get this information from the llvm::Function corresponding to the global we're trying to reference, but this doesn't get us anywhere: as far as LLVM is concerned, any global function only takes one parameter, the stack. The rest of the parameters are given through that stack, and their number cannot be easily deduced from the function alone.

Instead, we decide to store global functions together with their arity. We thus create a class to combine these two things (custom_function), define a map from global function names to instances of custom_function, and add a convenience method (create_custom_function) that takes care of constructing an llvm::Function object, creating a custom_function, and storing it in the map.

The implementation for custom_function is straightforward:

{{< codelines "C++" "compiler/08/llvm_context.cpp" 234 252 >}}

We create a function type, then a function, and finally initialize a custom_function. There's one thing we haven't seen yet in this function, which is the BasicBlock class. We'll get to what basic blocks are shortly, but for now it's sufficient to know that the basic block gives us a place to insert code.

This isn't the end of our llvm_context class: it also has a variety of other create_* methods! Let's take a look at their signatures. Most return either void, llvm::ConstantInt*, or llvm::Value*. Since llvm::ConstantInt* is a subclass of llvm::Value*, let's just treat it as simply an llvm::Value* while trying to understand these methods.

So, what is llvm::Value? To answer this question, let's first understand how the LLVM IR works.

LLVM IR

An important property of LLVM IR is that it is in Single Static Assignment (SSA) form. This means that each variable can only be assigned to once. For instance, if we use <- to represent assignment, the following program is valid:

x <- 1
y <- 2
z <- x + y

However, the following program is not valid:

x <- 1
x <- x + 1

But what if we do want to modify a variable x? We can declare another "version" of x every time we modify it. For instance, if we wanted to increment x twice, we'd do this:

x <- 1
x1 <- x + 1
x2 <- x1 + 1

In practice, LLVM's C++ API can take care of versioning variables on its own, by auto-incrementing numbers associated with each variable we use.

Assigned to each variable is llvm::Value. The LLVM documentation states:

It is the base class of all values computed by a program that may be used as operands to other values.

It's important to understand that llvm::Value does not store the result of the computation. It rather represents how something may be computed. 1 is a value because it computed by just returning 1. x + 1 is a value because it is computed by adding the value inside of x to 1. Since we cannot modify a variable once we've declared it, we will keep assigning intermediate results to new variables, constructing new values out of values that we've already specified.

This somewhat elucidates what the create_* functions do: create_i8 creates an 8-bit integer value, and create_pop creates a value that is computed by calling our runtime stack_pop function.

Before we move on to look at the implementations of these functions, we need to understand another concept from the world of compiler design: basic blocks. A basic block is a sequence of instructions that are guaranteed to be executed one after another. This means that a basic block cannot have an if/else, jump, or any other type of control flow anywhere except at the end. If control flow could appear inside the basic block, there would be opporunity for execution of some, but not all, instructions in the block, violating the definition. Every time we add an IR instruction in LLVM, we add it to a basic block. Writing control flow involves creating several blocks, with each block serving as the destination of a potential jump. We will see this used to compile the Jump instruction.

Generating LLVM IR

Now that we understand what llvm::Value is, and have a vague understanding of how LLVM is structured, let's take a look at the implementations of the create_* functions. The simplest is create_i8:

{{< codelines "C++" "compiler/08/llvm_context.cpp" 150 152 >}}

Not much to see here. We create an instance of the llvm::ConstantInt class, from the actual integer given to the method. As we said before, llvm::ConstantInt is a subclass of llvm::Value. Next up, let's look at create_pop:

{{< codelines "C++" "compiler/08/llvm_context.cpp" 160 163 >}}

We first retrieve an llvm::Function associated with stack_pop from our map, and then use llvm::IRBuilder::CreateCall to insert a value that represents a function call into the currently selected basic block (the builder's state is what dictates what the "selected basic block" is). CreateCall takes as parameters the function we want to call (stack_pop, which we store into the pop_f variable), as well as the arguments to the function (for which we pass f->arg_begin()).

Hold on. What the heck is arg_begin()? Why do we take a function as a paramter to this method? The answer is fairly simple: this method is used when we are generating a function with signature void f_(struct stack* s) (we discussed the signature in the previous post). The parameter that we give to create_pop is this function we're generating, and arg_begin() gets the value that represents the first parameter to our function - s! Since stack_pop takes a stack, we need to give it the stack we're working on, and so we use f->arg_begin() to access it.

Most of the other functions follow this exact pattern, with small deviations. However, another function uses a more complicated LLVM instruction:

{{< codelines "C++" "compiler/08/llvm_context.cpp" 202 209 >}}

unwrap_num is used to cast a given node pointer to a pointer to a number node, and then return the integer value from that number node. It starts fairly innocently: we ask LLVM for the type of a pointer to a node_num struct, and then use CreatePointerCast to create a value that is the same node pointer we're given, but now interpreted as a number node pointer. We now have to access the value field of our node. CreateGEP helps us with this: given a pointer to a node, and two offsets n and k, it effectively performs the following:

&(num_pointer[n]->kth_field)

The first offset, then, gives an index into the "array" represented by the pointer, while the second offset gives the index of the field we want to access. We want to dereference the pointer (num_pointer[0]), and we want the second field (1, when counting from 0). Thus, we call CreateGEP with these offsets and our pointers.

This still leaves us with a pointer to a number, rather than the number itself. To dereference the pointer, we use CreateLoad. This gives us the value of the number node, which we promptly return.

This concludes our implementation of the llvm_context - it's time to move on to the G-machine instructions.

G-machine Instructions to LLVM IR

Let's now envision a gen_llvm method on the instruction struct, which will turn the still-abstract G-machine instruction into tangible, close-to-metal LLVM IR. As we've seen in our implementation of llvm_context, to access the stack, we need access to the first argument of the function we're generating. Thus, we need this method to accept the function whose instructions are being converted to LLVM. We also pass in the llvm_context, since it contains the LLVM builder, context, module, and a map of globally declared functions.

With these things in mind, here's the signature for gen_llvm:

virtual void gen_llvm(llvm_context&, llvm::Function*) const;

Let's get right to it! instruction_pushint gives us an easy start:

{{< codelines "C++" "compiler/08/instruction.cpp" 17 19 >}}

We create an LLVM integer constant with the value of our integer, and push it onto the stack.

instruction_push is equally terse:

{{< codelines "C++" "compiler/08/instruction.cpp" 37 39 >}}

We simply peek at the value of the stack at the given offset (an integer of the same size as size_t, which we create using create_size). Once we have the result of the peek, we push it onto the stack.

instruction_pushglobal is more involved. Let's take a look:

{{< codelines "C++" "compiler/08/instruction.cpp" 26 30 >}}

First, we retrive the custom_function associated with the given global name. We then create an LLVM integer constant representing the arity of the function, and then push onto the stack the result of alloc_global, giving it the function and arity just like it expects.

instruction_pop is also short, and doesn't require much further explanation:

{{< codelines "C++" "compiler/08/instruction.cpp" 46 48 >}}

Some other instructions, such as instruction_update, instruction_pack, instruction_split, instruction_slide, instruction_alloc and instruction_eval are equally as simple, and we omit them for the purpose of brevity.

What remains are two "meaty" functions, instruction_jump and instruction_binop. Let's start with the former:

{{< codelines "C++" "compiler/08/instruction.cpp" 101 123 >}}

This is the one and only function in which we have to take care of control flow. Conceptually, depending on the tag of the node_data at the top of the stack, we want to pick one of many branches and jump to it. As we discussed, a basic block has to be executed in its entirety; since the branches of a case expression are mutually exclusive (only one of them is executed in any given case), we have to create a separate basic block for each branch. Given these blocks, we then want to branch to the correct one using the tag of the node on top of the stack.

This is exactly what we do in this function. We first peek at the node on top of the stack, and use CreateGEP through unwrap_data_tag to get access to its tag. What we then need is LLVM's switch instruction, created using CreateSwitch. We must provide the switch with a "default" case in case the tag value is something we don't recognize. To do this, we create a "safety" BasicBlock. With this new safety block in hand, we're able to call CreateSwitch, giving it the tag value to switch on, the safety block to default to, and the expected number of branches (to optimize memory allocation).

Next, we create a vector of blocks, and for each branch, we append to it a corresponding block branch_block, into which we insert the LLVM IR corresponding to the instructions of the branch. No matter the branch we take, we eventually want to come back to the same basic block, which will perform the usual function cleanup via Update and Slide. We re-use the safety block for this, and use CreateBr at the end of each branch_block to perform an unconditional jump.

After we create each of the blocks, we use the tag_mappings to add cases to the switch instruction, using addCase. Finally, we set the builder's insertion point to the safety block, meaning that the next instructions will insert their LLVM IR into that block. Since we have all branches jump to the safety block at the end, this means that no matter which branch we take in the case expression, we will still execute the subsequent instructions as expected.

Let's now look at instruction_binop:

{{< codelines "C++" "compiler/08/instruction.cpp" 139 150 >}}

In this instruction, we pop and unwrap two integers from the stack (assuming they are integers). Depending on the type of operation the instruction is set to, we then push the result of the corresponding LLVM instruction. PLUS calls LLVM's CreateAdd to insert addition, MINUS calls CreateSub, and so on. No matter what the operation was, we push the result onto the stack.

That's all for our instructions! We're so very close now. Let's move on to compiling definitions.

Definitions to LLVM IR

As with typechecking, to allow for mutually recursive functions, we need to be able each global function from any other function. We then take the same approah as before, going in two passes. This leads to two new methods for definition:

virtual void gen_llvm_first(llvm_context& ctx) = 0;
virtual void gen_llvm_second(llvm_context& ctx) = 0;

The first pass is intended to register all functions into the llvm_context, making them visible to other functions. The second pass is used to actually generate the code for each function, now having access to all the other global functions. Let's see the implementation for gen_llvm_first for definition_defn:

{{< codelines "C++" "compiler/08/definition.cpp" 58 60 >}}

Since create_custom_function already creates a function and registers it with llvm_context, this is all we need. Note that we created a new member variable for definition_defn which stores this newly created function. In the second pass, we will populate this function with LLVM IR from the definition's instructions.

We actually create functions for each of the constructors of data types, but they're quite special: all they do is pack their arguments! Since they don't need access to the other global functions, we might as well create their bodies then and there:

{{< codelines "C++" "compiler/08/definition.cpp" 101 112 >}}

Like in definition_defn, we use create_custom_function. However, we then use SetInsertPoint to configure our builder to insert code into the newly created function (which already has a BasicBlock, thanks to that one previously unexplained line in create_custom_function!). Since we decided to only include the Pack instruction, we generate a call to it directly using create_pack. We follow this up with CreateRetVoid, which tells LLVM that this is the end of the function, and that it is now safe to return from it.

Great! We now implement the second pass of gen_llvm. In the case of definition_defn, we do almost exactly what we did in the first pass of definition_data:

{{< codelines "C++" "compiler/08/definition.cpp" 62 68 >}}

As for definition_data, we have nothing to do in the second pass. We're done!

Getting Results

We're almost there. Two things remain. The first: our implementation of ast_binop, implement each binary operation as simply a function call: + calls f_plus, and so on. But so far, we have not implemented f_plus, or any other binary operator function. We do this in main.cpp, creating a function gen_llvm_internal_op:

{{< codelines "C++" "compiler/08/main.cpp" 70 83 >}}

We create a simple function body. We then append G-machine instructions that take each argument, evaluate it, and then perform the corresponding binary operation. With these instructions in the body, we insert them into a new function, just like we did in our code for definition_defn and definition_data.

Finally, we write our gen_llvm function that we will call from main:

{{< codelines "C++" "compiler/08/main.cpp" 125 141 >}}

It first creates the functions for +, -, *, and /. Then, it calls the first pass of gen_llvm on all definitions, followed by the second pass. Lastly, it uses LLVM's built-in functionality to print out the generated IR in our module, and then uses a function output_llvm to create an object file ready for linking.

To be very honest, I took the output_llvm function almost entirely from instructional material for my university's compilers course. The gist of it, though, is: we determine the target architecture and platform, specify a "generic" CPU, create a default set of options, and then generate an object file. Here it is:

{{< codelines "C++" "compiler/08/main.cpp" 85 123 >}}

We now add a generate_llvm call to main.

Are we there?

Let's try to compile our first example, works1.txt. The file:

{{< rawblock "compiler/08/examples/works1.txt" >}}

We run the following commands in our build directory:

./compiler < ../examples/work1.txt
gcc -no-pie ../runtime.c program.o
./a.out

Nothing happens. How anticlimactic! Our runtime has no way of printing out the result of the evaluation. Let's change that:

{{< codelines "C++" "compiler/08/runtime.c" 157 183 >}}

Rerunning our commands, we get:

Result: 326

The correct result! Let's try it with works2.txt:

{{< rawblock "compiler/08/examples/works2.txt" >}}

And again, we get the right answer:

Result: 326

This is child's play, though. Let's try with something more complicated, like works3.txt:

{{< rawblock "compiler/08/examples/works3.txt" >}}

Once again, our program does exactly what we intended:

Result: 3

Alright, this is neat, but we haven't yet confirmed that lazy evaluation works. How about we try it with works5.txt:

{{< rawblock "compiler/08/examples/works5.txt" >}}

Yet again, the program works:

Result: 9

At last, we have a working compiler!

While this is a major victory, we are not yet finished with the compiler altogether. While we allocate nodes whenever we need them, we have not once uttered the phrase free in our runtime. Our language works, but we have no way of comparing numbers, no lambdas, no let/in. In the next several posts, we will improve our compiler to properly free unused memory usign a garbage collector, implement lambda functions using lambda lifting, and use our Alloc instruction to implement let/in expressions. We get started on the first of these tasks in [Part 9 - Garbage Collection]({{< relref "09_compiler_garbage_collection.md" >}}).