[llvm-dev] RFC: a practical mechanism for applying Machine Learning for optimization policies in LLVM

Xinliang David Li via llvm-dev llvm-dev at lists.llvm.org
Thu Apr 9 09:56:56 PDT 2020


One suggestion : should we consolidate the discussion into the main thread?
I know some folks are not willing to comment in Google docs.

David

On Wed, Apr 8, 2020 at 7:06 PM Mircea Trofin via llvm-dev <
llvm-dev at lists.llvm.org> wrote:

> +Yundi Qian <yundi at google.com> +Eugene Brevdo <ebrevdo at google.com> , our
> team members from the ML side.
>
> To avoid formatting issues, here is a link to the RFC
> <https://docs.google.com/document/d/1BoSGQlmgAh-yUZMn4sCDoWuY6KWed2tV58P4_472mDE/edit?usp=sharing>,
> open to comments.
>
> Thanks!
>
> On Wed, Apr 8, 2020 at 2:34 PM Mircea Trofin <mtrofin at google.com> wrote:
>
>> Unfortunately I needed to update the links. Here they are, hopefully
>> these work correctly.
>>
>> SPEC2006
>> <https://docs.google.com/spreadsheets/d/e/2PACX-1vQNAcTDfyQvh6Jq7IRdCvK_fuluUFrzrsGL_75Ile29hX3caBSfT6_jHulxeCJ5MXIHp5SB--A_goEi/pubhtml?gid=987260531&single=true>
>>
>> Internal benchmarks, clang, opt
>> <https://docs.google.com/spreadsheets/d/e/2PACX-1vQNAcTDfyQvh6Jq7IRdCvK_fuluUFrzrsGL_75Ile29hX3caBSfT6_jHulxeCJ5MXIHp5SB--A_goEi/pubhtml?gid=0&single=true>
>>
>> Thanks!
>>
>> On Wed, Apr 8, 2020 at 2:23 PM Mircea Trofin <mtrofin at google.com> wrote:
>>
>>> It turns out it's me, sorry. Let me see how I can sort this out. In the
>>> meantime, here is the csv:
>>>
>>> SPEC2006 data:
>>>
>>> binary,base -Oz size,ML -Oz size,ML size shrink by,,perf: base -Oz
>>> scores,perf: ML -Oz scores,ML improvement by
>>> 400.perlbench,2054200,2086776,-1.59%,,2.9,2.9,0.00%
>>> 401.bzip2,1129976,1095544,3.05%,,6.4,6.2,-3.13%
>>> 403.gcc,4078488,4130840,-1.28%,,11.6,11.7,0.86%
>>> 429.mcf,1089368,1054552,3.20%,,2.3,2.4,4.35%
>>> 433.milc,1161336,1129592,2.73%,,0.5,0.5,0.00%
>>> 444.namd,1324824,1290968,2.56%,,4.4,4.3,-2.27%
>>> 445.gobmk,5003096,4992472,0.21%,,3.9,4.1,5.13%
>>> 447.dealII,1003376,975024,2.83%,,162.1,197.8,22.02%
>>> 450.soplex,1359416,1326008,2.46%,,0.1,0.1,0.00%
>>> 453.povray,1921432,1952280,-1.61%,,32.9,32.7,-0.61%
>>> 456.hmmer,1210744,1184632,2.16%,,1.5,1.5,0.00%
>>> 458.sjeng,1185976,1155320,2.58%,,812.9,840.2,3.36%
>>> 462.libquantum,1101144,1066712,3.13%,,12.3,12.2,-0.81%
>>> 464.h264ref,1557176,1593272,-2.32%,,0.3,0.3,0.00%
>>> 470.lbm,1091352,1056664,3.18%,,2.3,2.5,8.70%
>>> 471.omnetpp,1045496,1046664,-0.11%,,27.9,28.4,1.79%
>>> 473.astar,1106680,1071992,3.13%,,2.4,2.6,8.33%
>>> 482.sphinx3,1216600,1182680,2.79%,,16.5,16.3,-1.21%
>>> 483.xalancbmk,4666936,4669112,-0.05%,,9.7,9.6,-1.03%
>>> ,,,,,,,
>>> SIZE SUM,34307616,34061104,0.72%,TOTAL SCORES,5.7,5.8,1.75%
>>>
>>>
>>> various benchmarks:
>>>
>>> binary,base -Oz size,ML -Oz size,ML shrink over base
>>> llvm:opt,66318624,62124256,6.32%
>>> math_1,6181552,5884144,4.81%
>>> event_management_1,4998728,4802696,3.92%
>>> llvm:lcalsBRaw,1270168,1222168,3.78%
>>> llvm:lcalsBLambda,1270232,1222232,3.78%
>>> llvm:lcalsARaw,1276248,1228248,3.76%
>>> llvm:lcalsALambda,1276440,1228504,3.76%
>>> llvm:lcalsCRaw,1278936,1231000,3.75%
>>> llvm:lcalsCLambda,1279064,1231256,3.74%
>>> llvm:Blur,1236888,1191192,3.69%
>>> image_processing_diffusion,1236120,1190488,3.69%
>>> llvm:Interpolation,1237208,1191576,3.69%
>>> llvm:harris,1237208,1191768,3.67%
>>> llvm:Dither,1238232,1192792,3.67%
>>> event_management_2,4741096,4568584,3.64%
>>> hashing_1,5189360,5004176,3.57%
>>> compression_2,5329392,5140496,3.54%
>>> math_2,6072336,5858992,3.51%
>>> crypto_1,4721576,4556008,3.51%
>>> math_4,27720208,26755568,3.48%
>>> math_3,27732496,26767920,3.48%
>>> infra_1,30673232,29630464,3.40%
>>> hashing_2,5834544,5637168,3.38%
>>> image_processing_entropy,5854960,5657008,3.38%
>>> hashing_3,5831088,5634288,3.38%
>>> memory_management_1,4957960,4790632,3.37%
>>> hasing_4,5816048,5619888,3.37%
>>> data_storage_2,5852976,5655792,3.37%
>>> compression_1,5971984,5771120,3.36%
>>> arena_unittest,6672944,6453584,3.29%
>>> data_storage_3,44113232,42710960,3.18%
>>> data_storage_1,22858992,22132960,3.18%
>>> datastructures_1,6362032,6161264,3.16%
>>> infra_2,56828720,55053496,3.12%
>>> datastructures_2,164558704,160790320,2.29%
>>> llvm:clang,77027416,75672088,1.76%
>>> benchmark_infra,20221424,19944432,1.37%
>>> search_1,169475360,167645632,1.08%
>>> protobuf_3,24071504,23895440,0.73%
>>> protobuf_1,24071504,23895504,0.73%
>>> protobuf_2,24071504,23895504,0.73%
>>> protobuf_4,24071504,23895504,0.73%
>>> protobuf_5,24071504,23895504,0.73%
>>> protobuf_6,23982800,23809424,0.72%
>>>
>>> On Wed, Apr 8, 2020 at 2:11 PM Johannes Doerfert <
>>> johannesdoerfert at gmail.com> wrote:
>>>
>>>>
>>>> Cool!
>>>>
>>>> I skipped to the end and tried to access the gdoc and the spreadsheet
>>>> but it did tell me I need permissions. Can you make them accessible or
>>>> am I the problem?
>>>>
>>>> Thanks,
>>>>    Johannes
>>>>
>>>> On 4/8/20 4:04 PM, Mircea Trofin via llvm-dev wrote:
>>>>  > TL;DR; We can improve compiler optimizations driven by heuristics by
>>>>  > replacing those heuristics with machine-learned policies (ML models).
>>>>  > Policies are trained offline and ship as part of the compiler.
>>>> Determinism
>>>>  > is maintained because models are fixed when the compiler is
>>>> operating in
>>>>  > production. Fine-tuning or regressions may be handled by
>>>> incorporating the
>>>>  > interesting cases in the ML training set, retraining the compiler,
>>>> and
>>>>  > redeploying it.
>>>>  >
>>>>  > For a first milestone, we chose inlining for size (-Oz) on X86-64.
>>>> We
>>>> were
>>>>  > able to train an ML model to produce binaries 1.5-6% smaller than
>>>> -Oz of
>>>>  > tip-of-tree. The trained model appears to generalize well over a
>>>> diverse
>>>>  > set of binaries. Compile time is increased marginally (under 5%).
>>>> The
>>>> model
>>>>  > also happens to produce slightly better - performing code under
>>>> SPEC2006 -
>>>>  > total score improvement by 1.75%. As we only wanted to verify there
>>>> is no
>>>>  > significant regression in SPEC, and given the milestone goals, we
>>>> haven’t
>>>>  > dug any deeper into the speed results.
>>>>  >
>>>>  > We see these results as promising, and as a reasonable point for
>>>>  > contributing our current work as a build-time opt-in to LLVM to
>>>> benefit the
>>>>  > community, in the hope of fostering collaboration and learning from
>>>> the
>>>>  > community’s feedback, as we try to better understand the trade-offs
>>>> such an
>>>>  > approach entails, and as we work on expanding the depth and breadth
>>>> of
>>>>  > applying these techniques to compiler optimization problems.
>>>>  >
>>>>  > https://reviews.llvm.org/D77752
>>>>  > Motivation
>>>>  >
>>>>  > Optimization problems, such as inlining or register allocation, are
>>>> hard:
>>>>  > we don’t know of algorithms that are guaranteed to produce the
>>>> optimum
>>>>  > solution in all cases in a timely fashion. Instead, we use
>>>> heuristics:
>>>>  > algorithms that we expect to produce some approximation of the
>>>> optimum,
>>>>  > with some expected degree of generality, in a practical amount of
>>>> time.
>>>>  >
>>>>  > Heuristics have some common characteristics. Taking inlining as a
>>>> case
>>>>  > study, it traverses the problem space in some way (bottom-up
>>>> traversal of
>>>>  > the SCC graph), extracts some properties (let’s call them
>>>> “features”) of
>>>>  > the program being optimized, and combine them with some weights
>>>> (“tune”),
>>>>  > to produce a cost (InlineCost), which allows for trade-off analysis.
>>>> We
>>>>  > validate the effectiveness of a heuristic over some accepted set of
>>>>  > benchmarks. Over time, we react to regressions or pathological cases
>>>>  > observed in the field, by manually analyzing such cases, figuring
>>>> out an
>>>>  > enhancement to the heuristic, and then re-validating over that set of
>>>>  > benchmarks (maybe augmented by adding the newly found cases).
>>>>  >
>>>>  > Because heuristics are code that needs to be maintained, there is
>>>> pressure
>>>>  > to reduce complexity: adding more features means we need to reason
>>>> about
>>>>  > the interactions between the old and new features, which scales
>>>>  > combinatorially. Re-tuning because of the new features adds a
>>>> similar
>>>> kind
>>>>  > of complexity. Potentially, we miss out on optimization improvements
>>>> as a
>>>>  > result.
>>>>  >
>>>>  > Because tuning is manual, there is pressure to keep the number of
>>>>  > benchmarks that can be studied in depth to a humanly-manageable
>>>> size,
>>>> which
>>>>  > potentially affects the generality of a heuristic or heuristic
>>>> tuning.
>>>>  >
>>>>  > The main advantage of manual heuristics is arguably their relatively
>>>> lower
>>>>  > overhead: no additional dependencies and more transparent to human
>>>> analysis
>>>>  > and improvement.
>>>>  >
>>>>  > Machine learning, in particular reinforcement learning, can address
>>>> the
>>>>  > tensions found in manual heuristics: once features are extracted
>>>> from the
>>>>  > program, the way they are combined and tuned can easily be scaled up
>>>>  > through automation, improving effectiveness and generality. A major
>>>>  > drawback, at least at this point in time, of machine learning, is
>>>> that we
>>>>  > don’t yet have a fully developed systematic approach for improving
>>>> policy
>>>>  > effectiveness.
>>>>  > High level design
>>>>  >
>>>>  > We identify two scenarios for a compiler using ML policies:
>>>> development and
>>>>  > release.
>>>>  >
>>>>  > The release scenario is equivalent to the regular compilation we
>>>> have
>>>> today
>>>>  > - the only difference is that it uses a pre-trained model (trained
>>>> in the
>>>>  > development scenario beforehand) to make decisions instead of the
>>>>  > heuristics. Determinism is guaranteed since the model in the release
>>>>  > scenario is fixed. We imagine teams wishing to fine tune the
>>>> effectiveness
>>>>  > of the optimization to their scenarios would train a different model.
>>>>  >
>>>>  > The decision previously evaluated using a human-crafted heuristic is
>>>>  > optionally replaced by:
>>>>  >
>>>>  >    -
>>>>  >
>>>>  >    a compiler-specific component, extracting features from IR (i.e. a
>>>>  >    vector of values)
>>>>  >    -
>>>>  >
>>>>  >    an evaluation of an ML model using those features, to obtain a
>>>> result.
>>>>  >    In ML nomenclature, this is referred to using the model for
>>>> inference (as
>>>>  >    opposed to training it)
>>>>  >
>>>>  > For example, when we replaced the decision of whether to inline a
>>>> callsite,
>>>>  > the ML model produces a boolean (inline/don’t inline) based on a
>>>> features
>>>>  > vector characterizing the call site and some broader module-wide
>>>> context.
>>>>  >
>>>>  > Training/development is more complicated, and happens offline - akin
>>>> to
>>>>  > how, today, attempts to improve an optimizing pass also happen
>>>> offline. A
>>>>  > description of the high level design and the specifics we used for
>>>> the
>>>>  > current scope are given in Appendix.
>>>>  > Current Scope
>>>>  >
>>>>  > The goal of our first milestone was to evaluate end to end an
>>>> integration
>>>>  > of ML with LLVM, and get a first promising result. To that end, we
>>>> chose
>>>>  > inlining for size (-Oz) as a stepping stone, as we perceived it to
>>>> be
>>>> more
>>>>  > likely to require a simpler evaluation setup than
>>>> performance-oriented
>>>>  > optimizations might. At this point, we only train whether a call
>>>> site may
>>>>  > be inlined or not, leaving the SCC traversal order as-is.
>>>>  >
>>>>  > We are proposing an initial change demonstrating the inference
>>>> mechanism
>>>>  > using a pre-trained model, as a build-time opt-in to llvm. The
>>>> compiler
>>>>  > components needed to perform training are also included in this first
>>>>  > change. Subsequent changes would include more training-related
>>>> components.
>>>>  >
>>>>  > At a high level, the changes we are proposing consist of:
>>>>  >
>>>>  >    1.
>>>>  >
>>>>  >    a new module analysis pass, InliningAdvisor. By default, its
>>>>  >    implementation does nothing.
>>>>  >    2.
>>>>  >
>>>>  >    minimal hooks into Inliner.cpp.
>>>>  >    3.
>>>>  >
>>>>  >    the implementation of InliningAdvisor, activated when we opt-in
>>>> ML. This
>>>>  >    is available in Analysis/ML, together with:
>>>>  >    1.
>>>>  >
>>>>  >       Rel/Dev specific ML model handing, also under Analysis/ML
>>>>  >       2.
>>>>  >
>>>>  >       a pre-trained model for inlining for size
>>>>  >       (Analysis/ML/models/inlining)
>>>>  >       3.
>>>>  >
>>>>  >       a pre-trained model for predicting native size from IR
>>>>  >       (Analysis/ML/models/ir_2_native_x86_64), used in Dev mode only.
>>>>  >       4.
>>>>  >
>>>>  >    Some refactorings in PassBuilder, to allow opting into running
>>>> mandatory
>>>>  >    inlining first - some compilation speedup for the ML case,
>>>> minimal,
>>>>  >    noise-like size effect. Also simplifies testing (these would be
>>>> introduced
>>>>  >    as a preliminary patch).
>>>>  >
>>>>  > We discuss ‘rel’ mode here, and ‘dev’ mode in the Appendix, as it is
>>>> more
>>>>  > involved.
>>>>  > Inference Opt-In Mechanism
>>>>  >
>>>>  > The feature is primarily controlled by the cmake flag
>>>>  > LLVM_USE_ML_POLICY={“Rel”|”Dev”}. Each has different dependencies.
>>>> The
>>>>  > “Rel”ease case requires specifying the location of the pip tensorflow
>>>>  > package (currently, that’s tf_nightly, and it should soon be
>>>> available in
>>>>  > tensorflow)
>>>>  >
>>>>  > To opt in the ‘Rel’ case:
>>>>  >
>>>>  >    1.
>>>>  >
>>>>  >    install tensorflow pip package
>>>>  >
>>>>  > pip3 install tf_nightly --user
>>>>  >
>>>>  >    1.
>>>>  >
>>>>  >    configure llvm build
>>>>  >
>>>>  > cmake ../llvm -DLLVM_USE_ML_POLICY=Rel \
>>>>  >
>>>>  >
>>>> -DLLVM_TF_AOT_RUNTIME=~/.local/lib/python3.7/site-packages/tensorflow \
>>>>  >
>>>>  > {-DLLVM_TF_AOT_COMPILER=<path to saved_model_cli tool, if needed -
>>>> it’s
>>>>  > usually in the path>}
>>>>  >
>>>>  >
>>>>  >
>>>>  >    1.
>>>>  >
>>>>  >    build llvm as usual.
>>>>  >    2.
>>>>  >
>>>>  >    pass -mllvm -enable-ml-inliner -mllvm -mandatory-inlinings-first
>>>> to
>>>>  >    clang.
>>>>  >
>>>>  > Details
>>>>  >
>>>>  > The ML model is captured as a TensorFlow ‘saved model’. When
>>>> building
>>>> llvm,
>>>>  > we use TensorFlow’s  XLA native compiler (saved_model_cli) to
>>>> compile the
>>>>  > saved model into a native static library and a header file. Insofar
>>>> as LLVM
>>>>  > is concerned, there are minimal additional runtime requirements,
>>>> packaged
>>>>  > as source within the pip package: C++ wrappers around the compiled
>>>> model.
>>>>  > These will also be statically linked in the LLVM target. The
>>>> compiled
>>>> code
>>>>  > is otherwise just a complex arithmetical computation, with no special
>>>>  > requirements - it is single threaded and runs natively on the
>>>> targeted
>>>>  > architecture. Together with the aforementioned runtime dependencies,
>>>> it
>>>>  > adds ~115KB to the clang binary (0.08% increase)
>>>>  >
>>>>  > Runtime-wise, we observed a ~10% increase in the time spent in the
>>>> inliner,
>>>>  > for a large (33MB) binary IR module; inlining typically consumes
>>>> ~10-15% of
>>>>  > total compilation time, so the overall compile time overhead of the
>>>>  > approach is arguably negligible. This cost is almost in entirety
>>>>  > attributable to feature extraction.
>>>>  >
>>>>  > Memory-wise, the precompiled model has a fixed size buffer for its
>>>> inputs,
>>>>  > and performs a fixed amount of computations, so the memory overhead
>>>>  > inherent to our approach is independent from the program being
>>>> optimized.
>>>>  > Using a small example to avoid effects such as memory use
>>>> differences due
>>>>  > to different inlinings, we observed an 300KB increase in the maximum
>>>>  > resident size.
>>>>  >
>>>>  > A table showing effect on -Oz compiled binaries’ size is given in
>>>> Appendix.
>>>>  > Next directions
>>>>  >
>>>>  > Our next milestone has two main high level goals: detailing a
>>>> systematic
>>>>  > approach to driving policy effectiveness; and exploring in depth the
>>>> type
>>>>  > of features and training algorithms most appropriate for compiler
>>>> problems,
>>>>  > or at least problems like inlining. For the latter, we expect
>>>> embedding
>>>>  > more of the call graph structure to play an important role, as well
>>>> as,
>>>>  > potentially, delegating the problem space traversal to the ML model.
>>>>  >
>>>>  > We plan to include inlining for speed as part of our work on these
>>>> goals.
>>>>  > AppendixTraining - High Level
>>>>  >
>>>>  > We use Reinforcement Learning (RL) to train the Inline-for-size
>>>> model. At a
>>>>  > high level, it is composed of 3 parts: training data collection,
>>>> model
>>>>  > training, and iterative data collection/model training. We use
>>>> TensorFlow
>>>>  > as our ML framework.
>>>>  >
>>>>  > Related, we also needed to learn a separate model to evaluate the
>>>> native
>>>>  > size of a function, given its IR, in order to calculate a more
>>>> precise
>>>>  > reward for the reinforcement learning algorithm (“IR2Native”). We
>>>> evaluated
>>>>  > ‘just counting IR’ and TargetTransformInfo, but they appeared to
>>>> provide
>>>>  > too noisy of a signal for the reward, insofar as the RL training
>>>> algorithm
>>>>  > for the inlining model was concerned. This model is only used during
>>>>  > training.
>>>>  >
>>>>  > RL - Training data collection: the training data we need to feed
>>>> into a
>>>>  > reinforcement learning algorithm are sequences consisting of: state
>>>> of the
>>>>  > problem (i.e. features); action (inline/not inline), and reward
>>>> (native
>>>>  > size shrinkage after inline/not inline, using ir2native). To collect
>>>> the
>>>>  > sequences, we hook the logging infrastructure into LLVM Inliner that
>>>> is
>>>>  > able to produce logs after the inline optimization pass.
>>>>  >
>>>>  > RL - Model training: We use DQN (Deep Q-Network) to train our
>>>>  > inlining-for-size ML policy. On a high level, the DQN algorithm
>>>> trains a
>>>>  > neural network to predict the value of different actions --- the DQN
>>>> policy
>>>>  > then chooses to take the action with the highest predicted value. In
>>>> our
>>>>  > scenario, we have two actions: 1) inline; 2) not inline, so the
>>>> neural
>>>>  > network predicts the size reduction of these two actions based on
>>>> features,
>>>>  > and then decides to conduct inlining if the neural network believes
>>>> doing
>>>>  > inlining leads to higher size reduction. After the training
>>>> finishes, it
>>>>  > produces a TensorFlow SavedModel that takes features as input and
>>>> generates
>>>>  > inline decisions (whether to inline or not) as output.
>>>>  >
>>>>  > The choice of the features and reward are essential in model
>>>> training. The
>>>>  > features are chosen with the consideration of being helpful in
>>>> making the
>>>>  > decision --- the input to the cost model is a good starting point.
>>>> Ideally,
>>>>  > the reward in the inline-for-size problem is the native size
>>>> shrinkage
>>>>  > after inline/not inline. It is difficult to obtain precisely, so we
>>>> use the
>>>>  > estimate as an alternative. This means that, for training, we also
>>>> need a
>>>>  > model (not necessarily machine learned) for estimating rewards.
>>>>  >
>>>>  > RL - Iterative data collection/model training: Reinforcement
>>>> learning is
>>>>  > ideally an iterative model/policy improvement process that: 1) the
>>>> trained
>>>>  > model is deployed to the field to collect new data; 2) newly
>>>> collected data
>>>>  > are used to update the model. Thus, we need to do iterative data
>>>>  > collection/model training. To facilitate data collection (avoid
>>>> complex
>>>>  > build dependencies and time spent before/after the pass being
>>>> trained), we
>>>>  > isolate out IR modules captured right before the optimization we are
>>>>  > interested in, and iterate on them with opt. We bootstrap the
>>>> training from
>>>>  > the current heuristic, and stop the process once we are happy with
>>>> the
>>>>  > outcome.
>>>>  >
>>>>  > IR2Native: We collect IR features (different from the ones used for
>>>>  > inlining) for each function at the end of inlining, right before we
>>>> perform
>>>>  > function simplification passes, and right after. This means we have
>>>> two IR
>>>>  > ‘shapes’ of the same function, and we know no further inlinings will
>>>> be
>>>>  > performed, so whatever changes happen are based on that IR. We then
>>>> extract
>>>>  > the native size at the end of compilation. Together, this data forms
>>>> two
>>>>  > records per function that can be used in supervised learning - the
>>>> features
>>>>  > are those extracted from IR, and the label is the native size.
>>>> Training
>>>>  > IR2Native happens independently from the training of the inliner
>>>> model.
>>>>  > Training support for the current scope
>>>>  >
>>>>  > The initial change includes the logging mechanism, an ir2native model
>>>>  > trained for x86-64, and the means to rapidly iterate over
>>>> development ML
>>>>  > models. For the components that will be included in subsequent
>>>> changes, the
>>>>  > rest of this section describes the mechanisms we employed. These
>>>> components
>>>>  > are detailed further below.
>>>>  >
>>>>  > To build LLVM with the ML policy in ‘Dev’ mode, we need the
>>>> tensorflow C
>>>>  > API library <https://www.tensorflow.org/install/lang_c>. We then
>>>> configure
>>>>  > the build:
>>>>  >
>>>>  > cmake .. -DLLVM_USE_ML_POLICY=Dev \
>>>>  >
>>>>  > -DLLVM_TF_C_LIB=<path to unarchived package> \
>>>>  >
>>>>  > {-DCMAKE_INSTALL_RPATH_USE_LINK_PATH=True, to copy tensorflow shared
>>>>  > library over, if it’s not on LD_LIBRARY_PATH}
>>>>  >
>>>>  >
>>>>  > To extract IR right before inlining, we hacked on top of the ThinLTO
>>>>  > infrastructure, interrupting its pre-link pipeline right before
>>>> inlining.
>>>>  > This means clang produces binary IR files captured at that stage. We
>>>> then
>>>>  > built a large target, obtaining a corpus of ~25K modules. We intend
>>>> to
>>>>  > provide a clean mechanism in a subsequent change.
>>>>  >
>>>>  > To obtain features/labels for training this “IR to Native Size”
>>>> model, we
>>>>  > had to make some changes to the AsmPrinter (to get real native
>>>> sizes) and
>>>>  > llvm-readobj, as well as add an analysis pass for extracting the IR
>>>>  > features for this model. We plan on upstreaming these changes
>>>> subsequently.
>>>>  >
>>>>  > Finally, the infrastructure driving the policy training is currently
>>>> built
>>>>  > on proprietary APIs, as it benefits from a distributed computing
>>>>  > infrastructure. We are currently evaluating options for open
>>>> sourcing it.
>>>>  > In the meantime, we are presenting the high level implementation
>>>> details.
>>>>  >
>>>>  > To train a new model, the infrastructure performs 2 steps:
>>>> extracting the
>>>>  > logs, and using them in a training algorithm.
>>>>  >
>>>>  > Log extraction is highly parallelizable: for each IR module in the
>>>> training
>>>>  > corpus, we need to run opt once (or a few times, when we explore
>>>>  > improvements). Specifically, each run is this invocation:
>>>>  >
>>>>  > opt -passes=scc-oz-module-inliner -ml-inliner-ir2native-model=<path
>>>> to
>>>>  > ir2native> -training-log=<path to training log output>
>>>> -enable-ml-inliner
>>>>  > -mandatory-inlinings-first -o <output> <module.o>
>>>>  >
>>>>  > Then collect the logs, and pass them to the next step.
>>>>  >
>>>>  >
>>>>  > Experimental results
>>>>  >
>>>>  > Experimental results are available as follows:
>>>>  >
>>>>  >
>>>>  >    -
>>>>  >
>>>>  >    SPEC2006
>>>>  >
>>>> <
>>>> https://docs.google.com/spreadsheets/d/e/2PACX-1vQv0bAsUlgnG114zMYy_zKR6x-lTjcXVNt7VEeSwq2-pDr5oTxdASCscPRRg6L7iYLu2AVJ44G2xEkp/pubhtml?gid=1870752756&single=true
>>>> >
>>>>  >    binary sizes (-Oz) and ‘test run’ scores.
>>>>  >    -
>>>>  >
>>>>  >    Size report
>>>>  >
>>>> <
>>>> https://docs.google.com/spreadsheets/d/e/2PACX-1vQv0bAsUlgnG114zMYy_zKR6x-lTjcXVNt7VEeSwq2-pDr5oTxdASCscPRRg6L7iYLu2AVJ44G2xEkp/pubhtml?gid=935959003&single=true
>>>> >
>>>>  >    from some internal benchmarks and binaries, including opt and
>>>> clang
>>>>  >
>>>>  >
>>>>  > _______________________________________________
>>>>  > LLVM Developers mailing list
>>>>  > llvm-dev at lists.llvm.org
>>>>  > https://lists.llvm.org/cgi-bin/mailman/listinfo/llvm-dev
>>>>
>>>> _______________________________________________
> LLVM Developers mailing list
> llvm-dev at lists.llvm.org
> https://lists.llvm.org/cgi-bin/mailman/listinfo/llvm-dev
>
-------------- next part --------------
An HTML attachment was scrubbed...
URL: <http://lists.llvm.org/pipermail/llvm-dev/attachments/20200409/3845593a/attachment-0001.html>


More information about the llvm-dev mailing list