HW5: Dataflow Analysis and Optimizations¶
Getting Started¶
To get started, accept the assignment on Github Classroom and clone your team’s repository.
Many of the files in this project are taken from the earlier projects. The
new files (only) and their uses are listed below. Those marked with * are
the only ones you should need to modify while completing this assignment.
bin/datastructures.ml |
set and map modules (enhanced with printing) |
bin/cfg.ml |
“view” of LL control-flow graphs as dataflow graphs |
bin/analysis.ml |
helper functions for propagating dataflow facts |
bin/solver.ml |
|
bin/alias.ml |
|
bin/dce.ml |
|
bin/constprop.ml |
|
bin/liveness.ml |
provided liveness analysis code |
bin/analysistests.ml |
test cases (for liveness, constprop, alias) |
bin/opt.ml |
optimizer that runs dce and constprop |
bin/backend.ml |
|
bin/registers.ml |
collects statistics about register usage |
bin/printanalysis.ml |
a standalone program to print the results of an analysis |
Note
You’ll need to have menhir and clang installed on your system for this assignment. If you have not already done so, follow the provided instructions to install them.
Note
As usual, running oatc --test will run the test suite. oatc
also now supports several new flags having to do with optimizations.
-O1 : runs two iterations of (constprop followed by dce)
--liveness {trivial|dataflow} : select which liveness analysis to use for register allocation
--regalloc {none|greedy|better} : select which register allocator to use
--print-regs : print a histogram of the registers used
Overview¶
The Oat compiler we have developed so far produces very inefficient code, since it performs no optimizations at any stage of the compilation pipeline. In this project, you will implement several simple dataflow analyses and some optimizations at the level of our LLVMlite intermediate representation in order to improve code size and speed.
Provided Code¶
The provided code makes extensive use of modules, module signatures, and functors. These aid in code reuse and abstraction. If you need a refresher on OCaml functors, we recommend reading through the Functors Chapter of Real World OCaml.
In datastructures.ml, we provide you with a number of useful modules,
module signatures, and functors for the assignment, including:
OrdPrintT: A module signature for a type that is both comparable and can be converted to a string for printing. This is used in conjunction with some of our other custom modules described below. Wrapper modulesLblandUidsatisfying this signature are defined later in the file for theLl.lblandLl.uidtypes.
SetS: A module signature that extends OCaml’s built-in set to include string conversion and printing capabilities.
MakeSet: A functor that creates an extended set (SetS) from a type that satisfies theOrdPrintTmodule signature. This is applied to theLblandUidwrapper modules to create a label set moduleLblSand a UID set moduleUidS.
MapS: A module signature that extends OCaml’s built-in maps to include string conversion and printing capabilities. Three additional helper functions are also included:updatefor updating the value associated with a particular key,find_orfor performing a map look-up with a default value to be supplied when the key is not present, andupdate_orfor updating the value associated with a key if it is present, or adding an entry with a default value if not.
MakeMap: A functor that creates an extended map (MapS) from a type that satisfies theOrdPrintTmodule signature. This is applied to theLblandUidwrapper modules to create a label map moduleLblMand a UID map moduleUidM. These map modules have fixed key types, but are polymorphic in the types of their values.
Task I: Dataflow Analysis¶
Your first task is to implement a version of the worklist algorithm for solving dataflow flow equations presented in lecture. Since we plan to implement several analyses, we’d like to reuse as much code as possible between each one. In lecture, we saw that each analysis differs only in the choice of the abstract domain, the flow function, the direction of the analysis, and how to compute the meet of facts flowing into a node. We can take advantage of this by writing a generic solver as an OCaml functor and instantiating it with these parameters.
The Algorithm¶
Assuming only that we have a directed graph where each node is labeled with a dataflow fact and a flow function, we can compute a fixpoint of the flow on the graph as follows:
let w = new set with all nodes
repeat until w is empty
let n = w.pop()
old_out = out[n]
let in = combine(preds[n])
out[n] := flow[n](in)
if (!equal old_out out[n]),
for all m in succs[n], w.add(m)
end
Here equal, combine and flow are abstract operations that will be
instantiated with abstract domain equality, the join operation and the flow
function (e.g., defined by the gen and kill sets of the analysis),
respectively. Similarly, preds and succs are the graph predecessors
and successors in the flow graph, and do not correspond to the control flow
of the program. They can be instantiated appropriately to create a forwards or
backwards analysis.
Note
Don’t try to use OCaml’s polymorphic equality operator (=) to compare
old_out and out[n] – that’s structural equality, not logical
equality. Use the supplied Fact.compare instead.
Getting Started and Testing¶
Be sure to review the comments in the DFA_GRAPH (data flow analysis
graph) and FACT module signatures in solver.ml, which define the
parameters of the solver. Make sure you understand what each declaration the
signature does – your solver will need to use each one (other than the
printing functions)! It will also be helpful for you to understand the way
that cfg.ml connects to the solver. Read the commentary there for more
information.
Now implement the solver¶
Your first task is to fill in the solve function in the Solver.Make
functor in solver.ml. The input to the function is a flow graph labeled
with the initial facts. It should compute the fixpoint and return a graph with
the corresponding labeling. You will find the set datatype from
datastructures.ml useful for manipulating sets of nodes.
To test your solver, we have provided a full implementation of a liveness
analysis in liveness.ml. Once you’ve completed the solver, the liveness
tests in the test suite should all be passing. These tests compare the output
of your solver on a number of programs with pre-computed solutions in
analysistest.ml. Each entry in this file describes the set of uids that
are live-in at a label in a program from ./llprograms. To debug,
you can compare these with the output of the Graph.to_string function on
the flow graphs you will be manipulating.
Note
The stand-alone program printanalysis can print out the results of a
dataflow analysis for a given .ll program. You can build it by doing
make printanalysis. It takes flags for each analysis (run with --h
for a list).
Task II: Alias Analysis and Dead Code Elimination¶
The goal of this task is to implement a simple dead code elimination
optimization that can also remove store instructions when we can prove
that they have no effect on the result of the program. Though we already have
a liveness analysis, it doesn’t give us enough information to eliminate
store instructions: even if we know the UID of the destination pointer is
dead after a store and is not used in a load in the rest of the program, we
can not remove a store instruction because of aliasing. The problem is that
there may be different UIDs that name the same stack slot. There are a number
of ways this can happen after a pointer is returned by alloca:
The pointer is used as an argument to a
getelementptrorbitcastinstructionThe pointer is stored into memory and then later loaded
The pointer is passed as an argument to a function, which can manipulate it in arbitrary ways
Some pointers are never aliased. For example, the code generated by the Oat
frontend for local variables never creates aliases because the Oat language
itself doesn’t have an “address of” operator. We can find such uses of
alloca by applying a simple alias analysis.
Alias Analysis¶
We have provided some code to get you started in alias.ml. You will have
to fill in the flow function and abstract domain operations. The type of
abstract domain elements, fact, is a map from UIDs to symbolic pointers
of type SymPtr.t. Your analysis should compute, at every program point,
the set of UIDs of pointer type that are in scope and, additionally, whether
that pointer is the unique name for a stack slot according to the rules
above. See the comments in alias.ml for details.
Alias.insn_flow: the flow function over instructions
Alias.fact.combine: the combine function for alias facts
Dead Code Elimination¶
Now we can use our liveness and alias analyses to implement a dead code elimination pass. We will simply compute the results of the analysis at each program point, then iterate over the blocks of the CFG removing any instructions that do not contribute to the output of the program.
For all instructions except
storeandcall, the instruction can be removed if the UID it defines is not live-out at the point of definitionA
storeinstruction can be removed if we know the UID of the destination pointer is not aliased and not live-out at the program point of the storeA
callinstruction can never be removed
Complete the dead-code elimination optimization in dce.ml, where you will
only need to fill out the dce_block function that implements these rules.
Task III: Constant Propagation¶
Programmers don’t often write dead code directly. However, dead code is often produced as a result of other optimizations that execute parts of the original program at compile time, for instance constant propagation. In this section you’ll implement a simple constant propagation analysis and constant folding optimization.
Start by reading through the constprop.ml. Constant propagation is similar
to the alias analysis from the previous section. Dataflow facts will be maps
from UIDs to the type SymConst.t, which corresponds to the abstract domain from
the lecture slides. Your analysis will compute the set of UIDs in scope at
each program point, and the integer value of any UID that is computed as a
result of a series of binop and icmp instructions on constant
operands. More specifically:
The flow out of any
binoporicmpwhose operands have been determined to be constants is the incoming flow with the defined UID toConstwith the expected constant valueThe flow out of any
binoporicmpwith aNonConstoperand sets the defined UID toNonConstSimilarly, the flow out of any
binoporicmpwith aUndefConstoperand sets the defined UID toUndefConstA
storeorcallof typeVoidsets the defined UID toUndefConstAll other instructions set the defined UID to
NonConst
(At this point we could also include some arithmetic identities, for instance optimizing multiplication by 0, but we’ll keep the specification simple.) Next, you will have to implement the constant folding optimization itself, which just traverses the blocks of the CFG and replaces operands whose values we have computed with the appropriate constants. The structure of the code is very similar to that in the previous section. You will have to fill in:
Constprop.insn_flowwith the rules defined above
Constprop.Fact.combinewith the combine operation for the analysis
Constprop.cp_block(inside therunfunction) with the code needed to perform the constant propagation transformation
Note
Once you have implemented constant folding and dead-code elimination, the
compiler’s -O1 option will optimize your ll code by doing 2 iterations
of (constant prop followed by dce). See opt.ml. The -O1
optimizations are not used for testing except that they are always
performed in the register-allocation quality tests – these optimizations
improve register allocation (see below).
This coupling means that if you have a faulty optimization pass, it might cause the quality of your register allocator to degrade. And it might make getting a high score harder.
Task IV: Register Allocation¶
The backend implementation that we have given you provides two basic register allocation stragies:
none: spills all uids to the stack;
greedy: uses register and a greedy linear-scan algorithm.
For this task, you will implement a better register allocation strategy
that makes use of the liveness information that you compute in Task I. Most
of the instructions for this part of the assignment are found in
backend.ml, where we have modified the code generation strategy to be able
to make use of liveness information. The task is to implement a single
function better_layout that beats our example “greedy” register allocation
strategy. We recommend familiarizing yourself with the way that the simple
strategies work before attempting to write your own allocator.
The compiler now also supports several additional command-line switches that can be used to select among different analysis and code generation options for testing purposes:
--print-regs prints the register usage statistics for x86 code
--liveness {trivial|dataflow} use the specified liveness analysis
--regalloc {none|greedy|better} use the specified register allocator
Note
The flags above do not imply the -O1 flag (despite the fact that we
always turn on optimization for testing purposes when running with
--test). You should enable it explicitly.
For testing purposes, you can run the compiler with the -v verbose flag
and/or use the --print-regs flag to get more information about how your
algorithm is performing. It is also useful to sprinkle your own verbose
output into the backend.
The goal for this part of the homework is to create a strategy such that code
generated with the --regalloc better --liveness dataflow flags is
“better” than code generated using the simple settings, which are --regalloc
greedy --liveness dataflow. See the discussion about how we compare
register allocation strategies in backend.ml. The “quality” test cases
report the results of these comparisons.
Of course your register allocation strategy should produce correct code, so we still perform all of the correctness tests that we have used in previous version of the compiler. Your allocation strategy should not break any of these tests – and you cannot earn points for the “quality” tests unless all of the correctness tests also pass.
Task V: Experimentation / Validation¶
Of course we want to understand how much of an impact your register allocation strategy has on actual execution time. For the final task, you will create a new Oat program that highlights the difference. There are two parts to this task.
Create a test case¶
Post an Oat program to Ed. This program should exhibit significantly
different performance when compiled using the “greedy” register allocation
strategy vs. using your “better” register allocation strategy with dataflow
information. See the file hw3programs/regalloctest.oat and
hw3programs/regalloctest2.oat and for uninspired examples of such a
program. Yours should be more interesting.
Post your running time¶
Use the unix time command to test the performance of your
register allocation algorithm. This should take the form of a simple table of
timing information for several test cases, including the one you create and
those mentioned below. You should test the performance in several
configurations:
using the
--liveness trivial--regalloc noneflags (baseline)using the
--liveness dataflow--regalloc greedyflags (greedy)using the
--liveness dataflow--regalloc betterflags (better)using the
--clangflags (clang)
And… all of the above plus the -O1 flag.
Test your compiler on at least these three programs:
hw3programs/regalloctest.oat
llprograms/matmul.llyour own test case
Report the processor and OS version that you use to test. For best results, use a “lightly loaded” machine (close all other applications) and average the timing over several trial runs.
The example below shows one interaction used to test the matmul.ll file in
several configurations from the command line:
> ./oatc --liveness trivial --regalloc none llprograms/matmul.ll
> time ./a.out
real 0m1.647s
user 0m1.639s
sys 0m0.002s
> ./oatc --liveness dataflow --regalloc greedy llprograms/matmul.ll
> time ./a.out
real 0m1.127s
user 0m1.123s
sys 0m0.002s
> ./oatc --liveness dataflow --regalloc better llprograms/matmul.ll
> time ./a.out
real 0m0.500s
user 0m0.496s
sys 0m0.002s
> ./oatc --clang llprograms/matmul.ll
> time ./a.out
real 0m0.061s
user 0m0.053s
sys 0m0.004s
Don’t get too discouraged when clang beats your compiler’s performance by many orders of magnitude. It uses register promotion and many other optimizations to get high-quality code!
Grading¶
Projects that do not compile will receive no credit!
- Your team’s grade for this project will be based on:
90 Points: the various automated tests that we provide. Note that the register-allocator quality points cannot be earned with an allocator that generates incorrect code.
5 Points for posting an interesting test case to Ed. (Graded manually.)
5 Points for posting your timing analysis to Ed. (Graded manually.)